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=====================
Jython Course Outline
=====================

:Author: Dave Kuhlman
:address: dkuhlman@rexx.com
    http://www.rexx.com/~dkuhlman

:revision: 1.0a
:date: June 30, 2006

:copyright: Copyright (c) 2006 Dave Kuhlman. All Rights Reserved.
    This software is subject to the provisions of the MIT License
    http://www.opensource.org/licenses/mit-license.php.

:abstract: This document provides an outline of an introductory
    course on programming in Jython.

.. sectnum::

.. contents::



Introductions Etc
=================

Introductions

Practical matters

Starting the Python interactive interpreter. Also look at IPython.

Running scripts

Editors -- Choose an editor which you can configure so that it uses indent 4
spaces, not tab characters. For a list of editors for Python,
see: http://wiki.python.org/moin/PythonEditors.

Interactive interpreters:

- ``jython``

- ``python``

- `ipython <http://ipython.scipy.org/>`_: http://ipython.scipy.org/

- `Jython Console with Code Completion
  <http://don.freeshell.org/jython/>`_

- The mini-IDE in `Python for Windows Extensions
  <http://starship.python.net/crew/mhammond/win32/>`_


Resources
---------

Where else to get help:

- `The Python home page <http://www.python.org>`_

- `The Jython home page <http://www.jython.org/>`_

- Python standard documentation -- http://www.python.org/doc/.

  You will also find links to tutorials there.

- FAQs -- http://www.python.org/doc/faq/.

- Special interest groups (SIGs) -- http://www.python.org/sigs/

- The Jython email list --
  http://lists.sourceforge.net/lists/listinfo/jython-users

- USENET -- comp.lang.python

- `The Python Wiki <http://wiki.python.org/moin/>`_

- `Python editors <http://wiki.python.org/moin/PythonEditors>`_ -- A
  list of editors suitable for editing Jython/Python code.


What is Python?
===============

A general description of Python:

- A scripting language

- Interpreted, but also compiled to byte-code. Modules are
  automatically compiled (to .pyc) when imported, but may also be
  explicitly compiled.

- Access to interactive command line and interpreter. In fact, there
  are several interactive interfaces to Python.

- Dynamic -- For example:

  - Types are bound to values, not to variables.

  - Function and method lookup is done at runtime.

  - Values are inspect-able.

  - There is an interactive interpreter, more than one, in fact.

  - You can list the methods supported by any given object.

- Reasonably high level -- High level built-in data types; high
  level structures (for walking lists and iterators, for example).

- Object-oriented -- Simple object definition. Data hiding by
  agreement. Multiple inheritance. Interfaces by convention.

- Highly structured -- Statements, functions, classes, modules,
  and packages enable us to write large, well-structured
  applications. Why structure? Readability, locate-ability,
  modifiability.

- Explicitness

- First-class objects:

  - Definition: Can (1) pass to function; (2) return from function;
    (3) stuff into a data structure.

  - Operators can be applied to *values*. Example: ``f(x)[3]``

- Indented block structure -- "Python is pseudo-code that runs."

- Embedding and extending Python -- Python provides a
  well-documented and supported way (1) to embed the Python
  interpreter in C/C++ applications and (2) to extend Python with
  modules and objects implemented in C/C++.

  - In some cases, SWIG can generate wrappers for existing C/C++
    code automatically (see http://www.swig.org/).

  - Pyrex enables us to generate C code from Python (see
    http://www.cosc.canterbury.ac.nz/~greg/python/Pyrex/).

  - To embed and extend Python with Java, there is Jython (see
    http://www.jython.org/).

- Also see `The Zen of Python
  <http://www.python.org/peps/pep-0020.html>`_.


What is Jython?
===============

Jython is Python:

- Jython has Python lexical conventions, syntax, statements, etc.

- Jython has Python's built-in data types, for example, strings,
  ints, floats, tuples, list, dictionaries, etc.

- Jython is interpreted, compiled to byte-code, interactive,
  dynamic, and can also be used for large applications.

Jython is Java:

- Jython is Python implemented on top of the Java VM.

- Jython can be embedded into a Java application. The Jython
  interpreter can be embedded into a Java application. Scripts
  written by end-users of the Java application can be run from within
  the Java application.

- Jython code can use Java classes. Jython can be thought of as a
  Python harness for testing, running, and controlling Java
  classes and applications.

- Jython code can be compiled to Java source (``.java``) and Java
  class (``.class``) files. Jython can be used as an extension
  language for Java.

- Java code can be written in a way that makes its use from Jython
  more convenient and "Jython-ic". For example: (1) we can emulate
  and extend built-in Jython data types (dictionaries, lists, etc);
  (2) we can add doc strings; (3) we can make an object respond to
  Python/Jython operators.

Why and when we should use Jython -- Use Jython, instead of
Python, when:

- You need to use Java classes.

- You want to embed a scripting language into a Java application.

- You want to be able to "extend" Java with classes written in
  Python. Jython/Python classes are arguably easier to write than
  Java classes. Why?

- You want a high-level scripting language from which to call,
  use, and control Java code.


How Jython compares with Java:

- Jython/Python has a simple syntax. Jython/Python is
  "pseudo-code that runs".

- Jython/Python uses dynamic typing. Java uses strict typing.

- Jython is interpreted. So is Java, but Jython can compile
  "on-the-fly". When a file is imported, it compiles to a Java
  ``.class`` file.

How Jython compares with Python:

- Jython code runs on top of the JVM (Java virtual machine).
  Standard (C)Python runs on top of the Python virtual machine.

- Jython does not have all the features of the latest Python
  language. *But*, the new alpha version (2.2a) is very close.

- Jython is slower than Python, *but* when Jython is used to call
  into Java code, that code runs at the speed of Java. Three
  levels: (1) Jython code, (2) Java code generated by ``jythonc``,
  (3) Java code.

A comparison of Java and Python is here:
`Python & Java: a Side-by-Side Comparison
<http://www.ferg.org/projects/python_java_side-by-side.html>`_.


Differences between Jython and CPython
======================================

- Jython runs on the Java virtual machine (JVM). CPython runs on
  the Python VM, which is written in C.

- Jython can call Java. And, no wrappers are required. CPython can
  only do this with difficulty.

- Python can call code written in C/C++ (and even FORTRAN) **if**
  that code has been wrapped for Python.

- Jython can use only Python modules that are implemented in
  *pure* Python, i.e. that are not implemented in C and do not
  call modules implemented in C. See the following for modules
  in the Python standard library that are available for Jython.

- Jython 2.1 is roughly equivalent to Python 2.1.

- Jython 2.2 is roughly equivalent to Python 2.2 +.

- Some things that are missing from Jython 2.1, but which are in
  Python 2.4:

  - New-style classes -- The unification of classes and built-in
    types; ability to sub-class built-in types; properties;
    ``staticmethod``; ...

  - List comprehensions

  - Iterators, generators, ...

  Some of these features are in Jython 2.2a. But, in some cases, you
  will need to use something like the following::

      from __future__ import generators


Lexical matters
===============

Lines
-----

- Python does what you want it to do *most* of the time so that you
  only have to add extra characters *some* of the time.

- Statement separator is a semicolon, but is only needed when
  there is more than one statement on a line.

- Continuation lines -- Use a back-slash at the end of the line. But,
  note that an opening bracket (or parenthesis) make the back-slash
  unnecessary.

- Comments -- Everything after "#" on a line is ignored. No block
  comments, but doc strings are a comment in triple quotes at the
  beginning of a module, class, method or function.


Names and tokens
----------------

- Allowed characters: a-z A-Z 0-9 underscore, and must begin with a
  letter or underscore.

- Case is significant in names and identifiers.

- Identifiers can be of unlimited length.

- Special names, customizing, etc. -- Usually begin and end in
  double underscores.

- Special name classes -- Single and double underscores.

  - Leading double underscores -- Name mangling for method names.

  - Leading single underscore -- Suggests a "private" method name.
    Not imported by "from module import \*".

- Naming conventions -- Not rigid, but:

  - Modules and packages -- All lower case.

  - Globals and constants -- All upper case.

  - Classes -- Bumpy caps with initial upper.

  - Methods and functions -- All lower case with words separated by
    underscores.

  - Local variables -- Lower case or bumpy caps with initial lower or
    your choice.


Blocks and indentation
----------------------

Python represents block structure and nested block structure with
indentation, not with begin and end brackets.

Benefits of the use of indentation to indicate structure:

- Reduces the need for a coding standard. Only need to specify that
  indentation is 4 spaces and no hard tabs.

- Reduces inconsistency. Code from different sources follow the
  same indentation style. They have to.

- Reduces work. Only need to get the indentation correct, not
  *both* indentation and brackets.

- Reduces clutter. Eliminates all those curly brackets.

- If it looks correct, it is correct. Indentation cannot fool
  the reader.

Editor considerations -- The standard is 4 spaces (no tabs) for each
indentation level. You will need a text editor that helps you respect
that. There is a list of suitable text editors at:
`PythonEditors <http://wiki.python.org/moin/PythonEditors>`_.


Doc strings
-----------

Doc strings are like comments, but they are carried with executing
code. Doc strings can be viewed with several tools, e.g. ``help()``
(standard Python only?), ``obj.__doc__``, and, in IPython, ``?``.

We can use triple-quoting to create doc strings that span multiple
lines.

There are also tools that extract and format doc strings, for example:

- `5.1 pydoc -- Documentation generator and online help system
  <http://docs.python.org/lib/module-pydoc.html>`_

- `epydoc`_


Program structure
-----------------

- Statements, data structures, functions, classes, modules,
  packages.

- Execution -- def, class, etc are executable statements that add
  something to the current name-space. Modules can be both
  executable and import-able.


Operators
---------

- See: http://docs.python.org/ref/operators.html. Python defines
  the following operators::

    + - * ** / // %

    << >> & | ^ ~

    < > <= >= == != <>

  The comparison operators ``<>`` and ``!=`` are alternate spellings of
  the same operator. ``!=`` is the preferred spelling; ``<>`` is
  obsolescent.

- Since these operators can be defined in each object type and class,
  the meaning of each operator depends on the type of the object to
  which it is applied.

- There are also (1) the dot operator, (2) the subscript
  operator ``[]``, and the function/method call operator ``()``.

- Here is a demonstration of the relationship between some of the
  operators and the methods that define them::

      class B:
          def __init__(self):
              self.val = 'aaa'
          def __add__(self, val1):
              """Operator: + """
              return '%s||%s' % (self.val, val1,)
          def __neg__(self):
              """Operator: - """
              return 'neg<%s>' % self.val
          def __pow__(self, p):
              """Operator: ** """
              return 'pow<%s||%s>' % (self.val, p, )
          def __invert__(self):
              """Operator: ~ """
              return 'invert<%s>' % self.val
          def __lshift__(self, count):
              """Operator: << """
              return 'lshift<%s||%s>' % (self.val, count, )
          def __and__(self, x):
              """Operator: & """
              return 'and<%s||%s>' % (self.val, x, )
          def __or__(self, x):
              """Operator: | """
              return 'or<%s||%s>' % (self.val, x, )
          def __xor__(self, x):
              """Operator: ^ """
              return 'xor<%s||%s>' % (self.val, x, )
          def __mod__(self, x):
              """Operator: % """
              return 'mod<%s||%s>' % (self.val, x, )
          def __contains__(self, x):
              """Operator: in """
              if len(x) == len(self.val):
                  return True
              else:
                  return False


      def test():
          b = B()
          print b + 'bbb' # __add__ Addition
          print - b # __neg__ Negation
          print b ** 'ccc' # __pow__ Power (a raised to the power b)
          print ~ b # __invert__ Bitwise invert
          print b << 3 # __lshift__ Left shift
          print b & 3 # __and__ Bitwise and
          print b | 3 # __or__ Bitwise or
          print b ^ 3 # __xor__ Exclusive bitwise or
          print b % 3 # __xor__ a modulo b
          print 'abc' in b # __contains__ b in a (note reversed operands)
          print 'ab' in b

      test()

  Running the above code produces the following output::

      aaa||bbb
      neg<aaa>
      pow<aaa||ccc>
      invert<aaa>
      lshift<aaa||3>
      and<aaa||3>
      or<aaa||3>
      xor<aaa||3>
      mod<aaa||3>
      True
      False



Later, we will see how these operators can be emulated in classes
that you define yourself.


Code evaluation
---------------

Creating names/variables -- The following all create names
(variables): (1) assignment, (2) function definition, (3) class
definition, (4) module import, ...

First class objects -- Almost all objects in Python are first class.
Definition: An object is first class if: (1) we can put it in a
structured object; (2) we can pass it to a function; (3) we can return
it from a function.

References -- Objects (or references to them) can be shared.
What does this mean?

- The object(s) satisfy the identity test operator ``is``.

- The built-in function ``id()`` returns the same value.

- The consequences for mutable objects are different from those for
  immutable objects.

- ``del()`` -- The built-in function ``del()`` removes a reference,
  not (necessarily) the object itself.


Built-in datatypes
==================

Numeric types
-------------

The numeric types are:

- Plain integers -- Same precision as a C long, usually a 32-bit
  binary number.

- Long integers -- Define with ``100L``. But, plain integers are
  automatically promoted when needed.

- Floats -- Implemented as a C double. Precision depends on your
  machine.

- Complex numbers -- Define with, for example, ``3j`` or
  ``complex(3.0, 2.0)``.

See `2.3.4 Numeric Types -- int, float, long, complex
<http://docs.python.org/lib/typesnumeric.html>`_.

Python does mixed arithmetic.

Integer division truncates.



Tuples and lists
----------------

Tuples and lists are sequences.

Tuple constructor -- ``()``.

List constructor -- ``[]``.

Tuples are like lists, but are not mutable.

Notes on sequence constructors:

- To construct a tuple with a single element, use ``(x,)``; a
  tuple with a single element requires a comma.

- You can spread elements across multiple lines (and no need for
  continuation character "\").

- A comma can follow the last element.

Length -- Get the length of a sequence with the built-in function
``len()``.

Subscription:

- Indexing into a sequence

- Negative indexes -- Effectively, length of sequence plus index.

- Slicing -- Example: ``data[2:5]``.

- Slicing with strides -- Example: ``data[::2]``.

Operations on tuples -- No operations that change the tuple, since
tuples are immutable. We can do iteration. And, we can do
subscription (access only).

Operations on lists -- Operations similar to tuples plus:

- Insert -- ``mylist.insert(index, newitem)``.
  
- Append -- ``mylist.append(newitem)``.

- Remove -- ``mylist.remove(item)`` and ``mylist.pop()``. Note
  that ``append()`` together with ``pop()`` implements a stack.

- Delete -- ``del mylist[index]``.

Use the built-in function ``len()`` to get the length of a sequence.
It works on tuples, lists, strings, dictionaries, etc.

Exercises:

- Create an empty list. Append 4 strings to the list. Then pop
  one item off the end of the list. Solution::

      In [25]: a = []
      In [26]: a.append('aaa')
      In [27]: a.append('bbb')
      In [28]: a.append('ccc')
      In [29]: a.append('ddd')
      In [30]: print a
      ['aaa', 'bbb', 'ccc', 'ddd']
      In [31]: a.pop()
      Out[31]: 'ddd'


- Use the ``for`` statement to print the items in the list.
  Solution::

      In [32]: for item in a:
         ....: print item
         ....:
      aaa
      bbb
      ccc

- Use the string ``join`` operation to concatenate the items in
  the list. Solution::

      In [33]: '||'.join(a)
      Out[33]: 'aaa||bbb||ccc'


Strings
-------

Strings are sequences. They are immutable. They are indexable.

Constructors/literals:

- Quotes: single and double. Escape quotes and other special
  characters with a back-slash.

- Triple quoting -- Multi-line quotes.

- ``str()`` -- The constructor and the name of the type/class.

- String escape sequences: ``\t``, ``\n``, ``\'``, ``\"``, ``\ooo``
  (octal), ``\xhh`` (hex), etc. For more escape sequences, see `2.4.1
  String literals <http://docs.python.org/ref/strings.html>`_:
  http://docs.python.org/ref/strings.html.

String methods:

- To list the string methods, type the following at the Jython
  interactive prompt::

      >>> dir("".__class__)

- For documentation on string methods, see `2.3.6.1 String Methods
  <http://www.python.org/doc/lib/string-methods.html>`_:
  http://www.python.org/doc/lib/string-methods.html in the
  "Library Reference".

String formatting -- See: `2.3.6.2 String Formatting Operations
<http://docs.python.org/lib/typesseq-strings.html>`_:
http://docs.python.org/lib/typesseq-strings.html. Examples::

    In [18]: name = 'dave'
    In [19]: size = 25
    In [20]: factor = 3.45
    In [21]: print 'Name: %s Size: %d Factor: %3.4f' % (name, size, factor, )
    Name: dave Size: 25 Factor: 3.4500
    In [25]: print 'Name: %s Size: %d Factor: %08.4f' % (name, size, factor, )
    Name: dave Size: 25 Factor: 003.4500

If the right-hand argument to the formatting operator is a
dictionary, then you can (actually, must) use the names of keys in
the dictionary in your format strings. Examples::

    In [115]: values = {'vegetable': 'chard', 'fruit': 'nectarine'}
    In [116]: 'I love %(vegetable)s and I love %(fruit)s.' % values
    Out[116]: 'I love chard and I love nectarine.'

Also consider using the right justify and left justify operations.
Examples: ``mystring.rjust(20)``, ``mystring.ljust(20, ':')``.

Exercises:

- Use a literal to create a string containing (1) a single quote,
  (2) a double quote, (3) both a single and double quote.
  Solutions::
  
      "Some 'quoted' text."
      'Some "quoted" text.'
      'Some "quoted" \'extra\' text.'

- Write a string literal that spans multiple lines. Solution::

      """This string
      spans several lines
      because it is a little long.
      """

- Use the string ``join`` operation to create a string that
  contains a colon as a separator. Solution::


      >>> content = []
      >>> content.append('finch')
      >>> content.append('sparrow')
      >>> content.append('thrush')
      >>> content.append('jay')
      >>> contentstr = ':'.join(content)
      >>> print contentstr
      finch:sparrow:thrush:jay

- Use string formatting to produce a string containing your last
  and first names, separated by a comma. Solution::

      >>> first = 'Dave'
      >>> last = 'Kuhlman'
      >>> full = '%s, %s' % (last, first, )
      >>> print full
      Kuhlman, Dave

Incrementally building up large strings from lots of small strings
-- Since strings in Python are immutable, appending to a string
requires a reallocation. So, it is faster to append to a list,
then use ``join``. Example::

    In [25]: strlist = []
    In [26]: strlist.append('Line #1')
    In [27]: strlist.append('Line #2')
    In [28]: strlist.append('Line #3')
    In [29]: str = '\n'.join(strlist)
    In [30]: print str
    Line #1
    Line #2
    Line #3


Dictionaries
------------

A dictionary is a sequence, whose values are accessible by key.
Another view: A dictionary is a set of name-value pairs.

Keys may be any *non-mutable* type.

The order of elements in a dictionary is undefined. But, we can
iterate over (1) the keys, (2) the values, and (3) the items
(key-value pairs) in a dictionary.

Literals for constructing dictionaries::

    {key1: value1, key2: value2, }

Constructor for dictionaries: ``dict()`` (Jython 2.2 and later).

For operations on dictionaries, see
http://docs.python.org/lib/typesmapping.html or use::

    >>> help({}) # Python, but not Jython.

Or::

    >>> dir({})

Some of the operations produce the keys, the values, and the items
(name-value pairs) in a dictionary. Examples::

    >>> d = {'aa': 111, 'bb': 222}
    >>> d.keys()
    ['aa', 'bb']
    >>> d.values()
    [111, 222]
    >>> d.items()
    [('aa', 111), ('bb', 222)]


Exercises:

- Write a literal that defines a dictionary using both string
  literals and variables containing strings. Solution::

      >>> first = 'Dave'
      >>> last = 'Kuhlman'
      >>> name_dict = {first: last, 'Elvis': 'Presley'}
      >>> print name_dict
      {'Dave': 'Kuhlman', 'Elvis': 'Presley'}

- Write statements that iterate over (1) the keys, (2) the values,
  and (3) the items in a dictionary. (Note: Requires introduction
  of the ``for`` statement.) Solutions::

      >>> d = {'aa': 111, 'bb': 222, 'cc': 333}
      >>> for key in d.keys():
      ... print key
      ...
      aa
      cc
      bb
      >>> for value in d.values():
      ... print value
      ...
      111
      333
      222
      >>> for item in d.items():
      ... print item
      ...
      ('aa', 111)
      ('cc', 333)
      ('bb', 222)
      >>> for key, value in d.items():
      ... print key, '::', value
      ...
      aa :: 111
      cc :: 333
      bb :: 222

Additional notes on dictionaries:

- Iterators are supported Jython 2.2a, but not by Jython 2.1.

- You can use ``iterkeys()``, ``itervalues()``, iteritems()`` to
  obtain iterators over keys, values, and items.

  In Jython 2.1, use ``mydict.keys()``, ``mydict.values()``, and
  ``mydict.items()``.

- A dictionary itself is iterable: it iterates over its keys. So,
  the following two lines are equivalent::

    for k in myDict: print k
    for k in myDict.iterkeys(): print k

  But, in Jython 2.1, use::

    for k in myDict.keys(): print k

- The ``in`` operator tests for a key in a dictionary (but not in
  Jython 2.1). Example::

      In [52]: mydict = {'peach': 'sweet', 'lemon': 'tangy'}
      In [53]: key = 'peach'
      In [54]: if key in mydict:
         ....: print mydict[key]
         ....:
      sweet

  In Jython 2.1, use ``mydict.has_key(key)``.


Files
-----

Open a file with the ``open`` factory method. Example::

    In [28]: f = open('mylog.txt', 'w')
    In [29]: f.write('message #1\n')
    In [30]: f.write('message #2\n')
    In [31]: f.write('message #3\n')
    In [32]: f.close()
    In [33]: f = open('mylog.txt', 'r')
    In [34]: for line in f:
       ....: print line,
       ....:
    message #1
    message #2
    message #3
    In [35]: f.close()

Notes:

- A file object supports the iterator protocol and, therefore, can
  be used in a ``for`` statement. This is true of Jython 2.2a1, but
  in Jython 2.1 you will need to use ``myfile.readlines()``.

- You will sometimes see the use of ``file()`` instead of ``open()``.
  The newer form is ``file``. But, ``open`` is still recommended.
  With built-in types, we can use the type name as the constructor.

- Lines read from a text file have a newline character. Strip it off
  with something like: ``b.rstrip('\n')``.

- Learn more about file objects and the methods they provide at:
  `2.3.9 File Objects
  <http://docs.python.org/lib/bltin-file-objects.html>`_.

You can also append to an existing file. In order to do so, open the
file in "append" mode. Example::

    In [39]: f = open('mylog.txt', 'a')
    In [40]: f.write('message #4\n')
    In [41]: f.close()
    In [42]: f = open('mylog.txt', 'r')
    In [43]: for line in f:
       ....: print line,
       ....:
    message #1
    message #2
    message #3
    message #4
    In [44]: f.close()

Exercises:

- Read all of the lines of a file into a list. Print the 3rd and
  5th lines in the file/list. Solution::

      In [55]: f = file('tmp1.txt', 'r')
      In [56]: lines = f.readlines()
      In [57]: f.close()
      In [58]: lines
      Out[58]: ['the\n', 'big\n', 'brown\n', 'dog\n', 'had\n', 'long\n', 'hair\n']
      In [59]: print lines[2]
      brown

      In [61]: print lines[4]
      had

More notes:

- Strip newlines (and other whitespace) from a string with methods
  ``strip()``, ``lstrip()``, and ``rstrip()``.


Statements Part 1
=================

Assignment
----------

Form -- ``target = expression``.

Possible targets:

- Identifier

- Tuple or list -- Can be nested. Left and right sides must have
  equivalent structure. Example::

      >>> x, y, z = 11, 22, 33
      >>> [x, y, z] = 111, 222, 333

  This feature can be used to simulate an enum::

      In [22]: LITTLE, MEDIUM, LARGE = range(1, 4)
      In [23]: LITTLE
      Out[23]: 1
      In [24]: MEDIUM
      Out[24]: 2

- Subscription of a sequence, dictionary, etc. Example::

      >>> x = range(5)
      >>> print x
      [0, 1, 2, 3, 4]
      >>> x[2] = 10
      >>> print x
      [0, 1, 10, 3, 4]

- A slice of a sequence -- Note that the sequence must be mutable.
  Example::

      >>> x = range(5)
      >>> print x
      [0, 1, 2, 3, 4]
      >>> x[2:4] = (11, 12)
      >>> print x
      [0, 1, 11, 12, 4]

- Attribute reference -- Example::

      >>> class MyClass:
      ... pass
      ...
      >>> anObj = MyClass()
      >>> anObj.desc = 'pretty'
      >>> print anObj.desc
      pretty


There is also augmented assignment. Examples::

    >>> index = 0
    >>> index += 1
    >>> index += 5
    >>> index += f(x)
    >>> index -= 1
    >>> index *= 3

Things to note:

- Assignment creates a new variable (if it does not exist in the
  namespace) and a binding. Specifically, it binds a value to the
  (possibly new) name. Calling a function also does this to the
  (formal) parameters.

- In Python, a language with dynamic typing, the data type is
  associated with the value, not the variable, as in statically
  typed languages.

- Assignment can also cause sharing of an object. Example::

      >>> obj1 = A()
      >>> obj2 = obj1

  Check to determine that the same object is shared with
  ``id(obj)``.

- You can also do multiple assignment in a single statement.
  Example::

      a = b = 3

- Jython/Python does not have the concept of constants. Use global
  variables and assignment instead. Examples::

      NOCOLOR, RED, GREEN, BLUE = range(4)
      DEFAULT_CONFIG_NAME = 'defaults.config'


import
------

Make module available.

What ``import`` does:

- Evaluate the content of a module.

- Likely to create variables in the local (module) namespace.

- Evaluation only happens once during a given run of the program.

- A module is evaluated from top to bottom. Later statements can
  replace values created earlier. This is true of functions and
  classes, as well as (other) variables.

- Which statements are evaluated? Assignment, ``class``, ``def``,
  ...

Where ``import`` looks for modules:

- The current directory.

- CPython (not Jython): directories in PYTHONPATH environment
  variable.

- Jython (not Python): directories in ``python.path`` in the Jython
  registry.

- ``sys.path`` shows where it looks. A script can modify and add to
  ``sys.path``, but that is *usually* not the way to make directories
  available to ``import``.

- Packages need a file named ``__init__.py``. If a directory is not
  directly in ``sys.path`` but is *under* a directory in sys.path,
  then it will need a ``__init__.py`` so that modules can be imported
  from it.


Forms of the ``import`` statement:

- ``import A`` -- Names in the local (module) namespace are
  accessible with the dot operator.

- ``import A1, A2`` -- Not recommended

- ``from A import B``

- ``from A import B1, B2``

- ``from A import B as C``

- ``from A import *`` -- Not recommended: mixes name-spaces.

- ``from A import B as C``

The import statement and packages -- ``__init__.py``. What is
made available when you do ``import aPackage``?

The use of ``if __name__ == "__main__":`` -- Makes a module both
import-able and executable.

Exercises:

- Import a module from the standard library, for example ``re``.

- Import an element from a module from the standard library, for
  example import ``compile`` from the ``re`` module.

- Create a simple Python package with a single module in it.
  Solution:

  1. Create a directory in the current directory.

  2. Create an (empty) ``__init__.py`` in the new directory.

  3. Create an ``simple.py`` in the new directory.

  4. Add a simple function or class in ``simple.py``.

Jython can import Java "modules" from jar files. The jar file must be
on your classpath.

CPython can import modules stored in a Zip file. Here are a few
notes:

- Add modules to a zip file with any zip tool.

- The zip file can contain other file types in addition to
  Jython/Python modules.

- Add the zip file to ``PYTHONPATH`` or to ``sys.path``. Example::

      import sys
      sys.path.append('~/Modules/myzippedmodules.zip')

- Import the module in the normal way.

- See `3.22 zipimport -- Import modules from Zip archives
  <http://docs.python.org/lib/module-zipimport.html>`_. The
  functionality described there is built-in to Jython and Python.


print
-----

Arguments to ``print``:

- Multiple items -- Separated by commas.

- End with comma to suppress carriage return.

- Use string formatting for more control over output.

- Also see various "pretty-printing" functions and methods, in
  particular, ``pprint``. See
  http://docs.python.org/lib/module-pprint.html.

String formatting -- Arguments are a tuple. Reference:
http://docs.python.org/lib/typesseq-strings.html.

Can also use ``sys.stdout``. Note that a carriage return is *not*
automatically added. Example::

    >>> import sys
    >>> sys.stdout.write('hello\n')

Controlling the destination and format of print -- Replace
``sys.stdout`` with an instance of any class that implements the
method ``write`` taking one parameter. Example::

    import sys

    class Writer:
        def __init__(self, file_name):
            self.out_file = file(file_name, 'a')
        def write(self, msg):
            self.out_file.write('[[%s]]' % msg)
        def close(self):
            self.out_file.close()

    def test():
        writer = Writer('outputfile.txt')
        save_stdout = sys.stdout
        sys.stdout = writer
        print 'hello'
        print 'goodbye'
        writer.close()
        # Show the output.
        tmp_file = file('outputfile.txt')
        sys.stdout = save_stdout
        content = tmp_file.read()
        tmp_file.close()
        print content

    test()

See the documentation on ``sys.stdout`` and ``sys.stdin``:
`3.1 sys -- System-specific parameters and functions
<http://docs.python.org/lib/module-sys.html>`_
(http://docs.python.org/lib/module-sys.html).


if: elif: else:
---------------

Conditions -- Expressions -- Anything that returns a value.
Compare with ``eval()`` and ``exec``.

Truth values:

- False -- ``False``, None, numeric zero, the empty string, an
  empty list or tuple.

- True -- ``True`` and everything else.

Operators:

- ``and`` and ``or``

- ``not``

- ``is`` -- The identical object. Cf. ``a is b`` and
  ``id(a) == id(b)``. Useful to test for ``None``, for example::

      if x is None:
          ...

- ``in`` -- Test for existence in a container and in particular in a
  dictionary. Example::

      >>> a = {'aa': 11, 'bb': 22}
      >>> 'bb' in a
      1
      >>> if 'aa' in a and a['aa']:
      ... print 'good'
      ...
      good

  Note that Jython/Python uses short-circuit evaluation in
  conditions. See `5.10 Boolean operations
  <http://docs.python.org/ref/Booleans.html>`_
  (http://docs.python.org/ref/Booleans.html).


Exercises:

- Write an ``if`` statement with an ``and`` operator.

- Write an ``if`` statement with an ``or`` operator.

- Write an ``if`` statement containing both ``and`` and ``or``
  operators.


try: except:
------------

Caught and un-caught exceptions.

The ``try:`` statement catches an exception.

Tracebacks -- Also see the ``traceback`` module:
http://docs.python.org/lib/module-traceback.html

Exceptions are classes. They are sub-classes of class ``Exception``.

Exception classes -- Sub-classing, args.

An exception class in an ``except:`` clause catches instances of
that exception class and all sub-classes, but *not* super-classes.

Built-in exception classes -- See:

- Module ``exceptions``.

- Built-in exceptions -- http://docs.python.org/lib/module-exceptions.html.

User defined exception classes -- Sub-classes of ``Exception``.

Example::

    try:
        raise RuntimeError('this silly error')
    except RuntimeError, e:
        print "[[[%s]]]" % e

Reference: http://docs.python.org/lib/module-exceptions.html

Why would you define your own exception class? One answer: You
want a user of your code to catch your exception and no others.

Exercises:

- Write a *very* simple, empty exception sub-class. Solution::

      class MyE(Exception):
          pass

- Write a ``try:except:`` statement that raises your exception and
  also catches it. Solution::

      try:
          raise MyE('hello there dave')
      except MyE, e:
          print e


raise
-----

Throw or raise an exception.

Forms:

- ``raise instance``

- ``raise MyExceptionClass, value``

- ``raise MyExceptionClass(value)``

The ``raise`` statement takes:

- An instance of class ``Exception`` or

- An instance of a built-in sub-class of class ``Exception`` or

- An instance of a user-defined sub-class of class ``Exception`` or

- One of the above classes and (optionally) a value (for example,
  a string or a tuple).

A few examples::

    In [29]: class MyException(Exception):
       ....: pass
       ....:
    In [30]: raise MyException, 'this is a test'
    ------------------------------------------------------------
    Traceback (most recent call last):
      File "<ipython console>", line 1, in ?
    MyException: this is a test


See http://docs.python.org/ref/raise.html.

For a list of built-in exceptions, see
http://docs.python.org/lib/module-exceptions.html.

The following example defines an exception sub-class and throws an
instance of that sub-class. It also shows how to pass and catch
multiple arguments to the exception::

    class NotsobadError(Exception):
        pass

    def test(x):
        try:
            if x == 0:
                raise NotsobadError('a moderately bad error', 'not too bad')
        except NotsobadError, e:
            print 'Error args: %s' % (e.args, )

    test(0)

The following example does a small amount of processing of the
arguments::

    class NotsobadError(Exception):
        """An exception class.
        """
        def get_args(self):
            return '::::'.join(self.args)

    def test(x):
        try:
            if x == 0:
                raise NotsobadError('a moderately bad error', 'not too bad')
        except NotsobadError, e:
            print 'Error args: {{{%s}}}' % (e.get_args(), )

    test(0)


Statements Part 2
=================

for
---

Iterate over a sequence or an "iterator" object.

Form -- ``for x in y:``.

**Note:** Iterators are supported by Jython 2.2a, but *not* Jython 2.1.

Iterators:

- Sequences are iterators.

- Instances of classes that obey the iterator protocol are
  iterators. See http://docs.python.org/lib/typeiter.html.

- Can create an iterator with ``iter()``.

- An iterable implements the iterator interface and satisfies the
  iterator protocol. The
  iterator protocol: ``__iter__()`` and ``next()`` methods. See
  `2.3.5 Iterator Types
  <http://docs.python.org/lib/typeiter.html>`_.

Some ways to produce iterators (see
http://docs.python.org/lib/built-in-funcs.html):

- ``iter()``

- ``enumerate()``

- ``some_dict.iterkeys()``, ``some_dict.itervalues()``,
  ``some_dict.iteritems()``.

- Sequences are iterable, for example, lists, tuples,
  dictionaries, strings,

- Generator expressions -- Latest Python only. Syntactically like
  list comprehensions (surrounded by parens instead of square
  brackets), but use lazy evaluation.


Helpful functions with ``for``:

- ``enumerate(iterable)`` -- Returns an iterable that produces a
  pair (tuple) containing count and value. Example::


      for count, value in enumerate([11,22,33]):
          print count, value

- ``range([start,] stop[, step])`` and ``xrange([start,] stop[, step])``.


List comprehensions revisited -- Since list comprehensions create
lists, they are useful in ``for`` statements, although you should
consider using a generator expression instead. Two forms:

- ``[f(x) for x in iterable]``

- ``[f(x) for x in iterable if t(x)]``

Exercises:

- Write a list comprehension that returns all the keys in a
  dictionary whose associated values are greater than zero.

  - The dictionary: ``{'aa': 11, 'cc': 33, 'dd': -55, 'bb': 22}``

  - Solution: ``[x[0] for x in my_dict.iteritems() if x[1] > 0]``

- Write a list comprehension that produces even integers from 0 to
  10. Use a ``for`` statement to iterate over those values.
  Solution::

      for x in [y for y in range(10) if y % 2 == 0]:
          print 'x: %s' % x

But, note that in the previous exercise, a generator expression
would be better. A generator expression is like a list
comprehension, except that, instead of creating the entire list,
it produces a generator that can be used to produce all the
elements.


while
-----

Form::

    while condition:
        block

Exercises:

- Write a ``while`` statement that prints integers from zero to 5.
  Solution::

      count = 0
      while count < 5:
          count += 1
          print count



continue and break
------------------

The ``break`` statement exits from a loop.

The ``continue`` statement causes execution to immediately
continue at the start of the loop.

Can be used in ``for`` and ``while``.

Exercises:

- Using ``break``, write a ``while`` statement that prints
  integers from zero to 5. Solution::

      count = 0
      while True:
          count += 1
          if count > 5:
              break
          print count


- Using ``continue``, write a ``while`` statement that processes
  only even integers from 0 to 10. Note: ``%`` is the modulo
  operator. Solution::

      count = 0
      while count < 10:
          count += 1
          if count % 2 == 0:
              continue
          print count


del
---

What ``del`` does:

- Removes names from namespace.

- Removes an item from a collection, for example, a list or
  dictionary.

- Remove an attribute from on object.

If name is listed in a ``global`` statement, then ``del`` removes
name from the global namespace.

Names can be a (nested) list. Examples::

    >>> del a
    >>> del a, b, c

We can also delete items from a list or dictionary. Examples::

    In [9]:d = {'aa': 111, 'bb': 222, 'cc': 333}
    In [10]:print d
    {'aa': 111, 'cc': 333, 'bb': 222}
    In [11]:del d['bb']
    In [12]:print d
    {'aa': 111, 'cc': 333}
    In [13]:
    In [13]:a = [111, 222, 333, 444]
    In [14]:print a
    [111, 222, 333, 444]
    In [15]:del a[1]
    In [16]:print a
    [111, 333, 444]

And, we can delete an attribute from an instance. Example::

    In [17]:class A:
       ....: pass
       ....:
    In [18]:a = A()
    In [19]:a.x = 123
    In [20]:dir(a)
    Out[20]:['__doc__', '__module__', 'x']
    In [21]:print a.x
    123
    In [22]:del a.x
    In [23]:dir(a)
    Out[23]:['__doc__', '__module__']
    In [24]:print a.x
    ----------------------------------------------
    exceptions.AttributeError Traceback (most recent call last)

    /home/dkuhlman/a1/Python/Test/<console>

    AttributeError: A instance has no attribute 'x'


Functions
=========

Arguments
---------

Default values -- Example::

    In [53]: def t(max=5):
       ....: for val in range(max):
       ....: print val
       ....:
       ....:
    In [54]: t(3)
    0
    1
    2
    In [55]: t()
    0
    1
    2
    3
    4

Note: If a function has an argument with a default value, then all
subsequent arguments for that function must have default values.

List arguments -- ``*args``. It's a tuple. Example::

    >>> def f(x, *args):
    ... print 'x:', x
    ... print 'args:', args
    ...
    >>> f(11,22,33,44)
    x: 11
    args: (22, 33, 44)


Keyword arguments and default values -- ``**kwargs``. It's a
dictionary::

    >>> def f(x, **kwargs):
    ... print 'x:', x
    ... print 'kwargs:', kwargs
    ...
    >>> f(11, arg1=22, arg2=33, arg3=44)
    x: 11
    kwargs: {'arg3': 44, 'arg2': 33, 'arg1': 22}

Passing lists to a function as multiple arguments --
``some_func(*aList)``. Effectively, this syntax causes Python to
unroll the arguments. Example::

    >>> def f(x, *rest):
    ... print 'x:', x
    ... print 'rest:', rest
    ...
    >>>
    >>>
    >>> f(11, a)
    x: 11
    rest: ([0, 1, 2, 3, 4],)
    >>> f(11, *a)
    x: 11
    rest: (0, 1, 2, 3, 4)


Return values:

- The default return value, if no return statement is executed, is
  ``None``.

- Use the ``return`` statement to return with a value.

- You can return multiple values. A tuple is handy for this.
  Example::

    >>> def split_name(fullname):
    ... names = fullname.split()
    ... firstname = names[0]
    ... lastname = names[1]
    ... return firstname, lastname
    ...
    >>>
    >>> first, last = split_name('Dave Kuhlman')
    >>> print first
    Dave
    >>> print last
    Kuhlman

Local variables:

- Creating local variables. Contrast with accessing a variable.

- Variable look-up.

- The ``global`` statement -- Must use ``global`` when we want to
  *set* the value of a global variable.

Things to know about functions:

- Functions are first-class -- You can store them in a structure,
  pass them to a function, and return them from a function.

- Functions can take keyword arguments.

- You can "capture" remaining arguments with ``*args``, and
  ``**kwargs``.

- A function that does not explicitly return a value, returns
  ``None``.

- In order to *set* the value of a global variable, declare the
  variable with ``global``.

Exercises:

- Write a function that takes a single argument, prints the value
  of the argument, and returns the argument as a string. Solution::

      >>> def t(x):
      ... print 'x: %s' % x
      ... return '[[%s]]' % x
      ...
      >>> t(3)
      x: 3
      '[[3]]'

- Write a function that takes a variable number of arguments and
  prints them all. Solution::

      >>> def t(*args):
      ... for arg in args:
      ... print 'arg: %s' % arg
      ...
      >>> t('aa', 'bb', 'cc')
      arg: aa
      arg: bb
      arg: cc

- Write a function that prints the names and values of keyword
  arguments passed to it. Solution::

      >>> def t(**kwargs):
      ... for key in kwargs.keys():
      ... print 'key: %s value: %s' % (key, kwargs[key], )
      ...
      >>> t(arg1=11, arg2=22)
      key: arg1 value: 11
      key: arg2 value: 22


Global variables and the global statement
-----------------------------------------

By default, assignment in a function or method creates local
variables.

Reference (not assignment) to a variable, accesses a local
variable if it has already been created, else accesses a global
variable.

In order to assign a value to a global variable, declare the
variable as global at the beginning of the function or method.

If in a function or method, you both reference and assign to a
variable, then you must either:

1. Assign to the variable first, or

2. Declare the variable as global.

The ``global`` statement declares one or more variables, separated
by commas, to be global.


Some examples::

    ->> X = 3
    />> def t():
    |.. print X
    \__
    ->> t()
    3
    #
    # No effect on global X.
    />> def s():
    |.. X = 4
    \__
    ->> s()
    ->> t()
    3
    />> def u():
    |.. global X
    |.. X = 5
    \__
    ->> u()
    ->> t()
    5
    #
    # Error
    # Must assign value before reference or declare as global.
    />> def v():
    |.. x = X
    |.. X = 6
    |.. return x
    \__
    ->> v()
    Traceback (most recent call last):
      File "<input>", line 2, in ?
      File "<input>", line 3, in v
    UnboundLocalError: local variable 'X' referenced before assignment
    #
    # This time, declare X as global.
    />> def w():
    |.. global X
    |.. x = X
    |.. X = 7
    |.. return x
    \__
    ->> w()
    5
    ->> X
    7


Doc strings for functions
.........................

Add docstrings as a triple-quoted string beginning with the first line
of a function or method. Access the documentation for a function
through the ``__doc__`` attribute. Example::

    >>> def w():
    ... """This is documentation on w.
    ... It is simple.
    ... """
    ... print 'hi'
    ...
    >>> w()
    hi
    >>> print w.__doc__
    This is documentation on w.
        It is simple.

See `epydoc`_ for a suggested format.



lambda
------

Use a lambda, as a convenience, when you need a function that both:

- is anonymous and

- contains only an expression and no statements.

Suggestion: In some cases, a lambda may be useful as an event
handler.

Example::

    class Test:
        def __init__(self, first='', last=''):
            self.first = first
            self.last = last
        def test(self, formatter):
            """
            Test for lambdas.
            formatter is a function taking 2 arguments, first and last
              names. It should return the formatted name.
            """
            msg = 'My name is %s' % (formatter(self.first, self.last),)
            print msg

    def test():
        t = Test('Dave', 'Kuhlman')
        t.test(lambda first, last: '%s %s' % (first, last, ))
        t.test(lambda first, last: '%s, %s' % (last, first, ))

    test()

Reference: http://docs.python.org/ref/lambdas.html


Iterators and generators
------------------------

Concepts:

iterator
    And iterator is something that satisfies the iterator protocol.

generator
    A generator is a class or function that implements an
    iterator, i.e. that implements the iterator protocol.

the iterator protocol
    An object satisfies the iterator protocol if it does the
    following:

    - It implements a ``__iter__`` method, which returns an iterator
      object.

    - It implements a ``next`` function, which returns the next item
      from the collection, sequence, stream, etc of items to be
      iterated over

    - It raises the ``StopIteration`` exception when the items are
      exhausted and the ``next()`` method is called.

For more information on iterators, see `the section on iterator
types in the Python Library Reference
<http://docs.python.org/lib/typeiter.html>`_.

A function or method containing a ``yield`` statement implements a
generator. Adding the ``yield`` statement to a function or method
turns that function or method into one which, when called, returns
a generator, i.e. an object that implements the iterator protocol.

An instance of a class which implements the ``__iter__`` method,
returning an iterator, is iterable. For example, it can be used
in a ``for`` statement or in a list comprehension, or in a
generator expression, or as an argument to the ``iter()`` built-in
method. But, notice that the class most likely implements a
generator method which can be called directly.

Examples -- The following code implements an iterator that
produces all the objects in a tree of objects::

    class Node:
        def __init__(self, data, children=None):
            self.initlevel = 0
            self.data = data
            if children is None:
                self.children = []
            else:
                self.children = children
        def set_initlevel(self, initlevel): self.initlevel = initlevel
        def get_initlevel(self): return self.initlevel
        def addchild(self, child):
            self.children.append(child)
        def get_data(self):
            return self.data
        def get_children(self):
            return self.children
        def show_tree(self, level):
            self.show_level(level)
            print 'data: %s' % (self.data, )
            for child in self.children:
                child.show_tree(level + 1)
        def show_level(self, level):
            print ' ' * level,
        #
        # Generator method #1
        # This generator turns instances of this class into iterable objects.
        #
        def walk_tree(self, level):
            yield (level, self, )
            for child in self.get_children():
                for level1, tree1 in child.walk_tree(level+1):
                    yield level1, tree1
        def __iter__(self):
            return self.walk_tree(self.initlevel)


    #
    # Generator method #2
    # This generator uses a support function (walk_list) which calls
    # this function to recursively walk the tree.
    # If effect, this iterates over the support function, which
    # iterates over this function.
    #
    def walk_tree(tree, level):
        yield (level, tree)
        for child in walk_list(tree.get_children(), level+1):
            yield child

    def walk_list(trees, level):
        for tree in trees:
            for tree in walk_tree(tree, level):
                yield tree


    #
    # Generator method #3
    # This generator is like method #2, but calls itself (as an iterator),
    # rather than calling a support function.
    #
    def walk_tree_recur(tree, level):
        yield (level, tree,)
        for child in tree.get_children():
            for level1, tree1 in walk_tree_recur(child, level+1):
                yield (level1, tree1, )


    def show_level(level):
        print ' ' * level,


    def test():
        a7 = Node('777')
        a6 = Node('666')
        a5 = Node('555')
        a4 = Node('444')
        a3 = Node('333', [a4, a5])
        a2 = Node('222', [a6, a7])
        a1 = Node('111', [a2, a3])
        initLevel = 2
        a1.show_tree(initLevel)
        print '=' * 40
        for level, item in walk_tree(a1, initLevel):
            show_level(level)
            print 'item:', item.get_data()
        print '=' * 40
        for level, item in walk_tree_recur(a1, initLevel):
            show_level(level)
            print 'item:', item.get_data()
        print '=' * 40
        a1.set_initlevel(initLevel)
        for level, item in a1:
            show_level(level)
            print 'item:', item.get_data()
        iter1 = iter(a1)
        print iter1
        print iter1.next()
        print iter1.next()
        print iter1.next()
        print iter1.next()
        print iter1.next()
        print iter1.next()
        print iter1.next()
    ## print iter1.next()
        return a1

    if __name__ == '__main__':
        test()

Notes:

- An instance of class ``Node`` is "iterable". It can be used
  directly in a ``for`` statement, a list comprehension, etc. So,
  for example, when an instance of ``Node`` is used in a ``for``
  statement, it produces an iterator.

- We could also call the ``Node.walk_method`` directly to obtain
  an iterator.

- Method ``Node.walk_tree`` and functions ``walk_tree`` and
  ``walk_tree_recur`` are generators. When called, they return an
  iterator. They do this because they each contain a ``yield``
  statement.

- These methods/functions are recursive. They call themselves.
  Since they are generators, they must call themselves in a context
  that uses an iterator, for example in a ``for`` statement.



Classes
=======

Classes model the behavior of objects in the "real" world. Methods
implement the behaviors of these types of objects. Member
variables hold (current) state.

A simple class
--------------

::

    In [104]: class A:
       .....: pass
       .....:
    In [105]: a = A()


Creating instances
------------------

Call the class as though it were a function. Apply the function call
operator ``()`` to the class. Example::

    >>> anObj = MyNewClass()

You will need to add parameters to match the signature of the
constructor. See below.


Defining methods
----------------

A method is a function defined in class scope and with first
parameter ``self``::

    In [106]: class B:
       .....: def show(self):
       .....: print 'hello from B'
       .....:
    In [107]: b = B()
    In [108]: b.show()
    hello from B


The constructor
---------------

The constructor is a method named ``__init__``.

Exercise: Define a class with a member variable ``name`` and a
``show`` method. Use ``print`` to show the name. Solution::

    In [109]: class A:
       .....: def __init__(self, name):
       .....: self.name = name
       .....: def show(self):
       .....: print 'name: "%s"' % self.name
       .....:
    In [111]: a = A('dave')
    In [112]: a.show()
    name: "dave"

Notes:

- The ``self`` variable is explicit.


Member variables
----------------

Defining member variables -- Member variables are created with
assignment. Example::

    class A:
        def __init__(self, name):
            self.name = name

A small gotcha -- Do this::


    In [28]: class A:
       ....: def __init__(self, items=None):
       ....: if items is None:
       ....: self.items = []
       ....: else:
       ....: self.items = items

Do *not* do this::

    In [29]: class B:
       ....: def __init__(self, items=[]): # wrong. list ctor evaluated only once.
       ....: self.items = items

In the second example, the ``def`` statement and the list
constructor are evaluated only once. Therefore, the item member
variable of all instances of class B, will share the same value,
which is most likely *not* what you want.


Methods
-------

Defining methods -- Define methods as functions nested inside a
class. The first argument is always ``self``.

Calling methods:

- Use the instance and the dot operator.

- Calling a method defined in the same class or a super-class. Same
  class: use ``self``. Super-class: use the class (name). Examples::

      >>> self.calculate(maximum)
      >>> MySuperClass.calculate(maximum)


Adding inheritance
------------------

Referencing super-classes -- Use the name of the super-class, for
example::

      In [39]: class B(A):
         ....: def __init__(self, name, size):
         ....: A.__init__(self, name)
         ....: self.self = size


Note how we call the constructor of the super-class.

You can also use multiple inheritance. Example::

      class C(A, B):
          ...

Python searches super-classes in left-to-right depth-first order.

For more information on inheritance, see the tutorial in the
standard Python documentation set: `9.5 Inheritance
<http://docs.python.org/tut/node11.html#SECTION0011500000000000000000>`_
and `9.5.1 Multiple Inheritance
<http://docs.python.org/tut/node11.html#SECTION0011510000000000000000>`_.

Watch out for problems with inheriting from classes that have a
common base class.


Class variables
---------------

- All instances of a class share the same class variable and its
  value.

- Also called static data.

- Define at class level with assignment. Example::

      class A:
          size = 5
          def get_size(self):
              return A.size

- Reference with ``classname.variable``.

- Caution: ``self.variable = x`` creates a new member variable.

Class methods
-------------

- Also called static methods.

An alternative way to implement static methods (without new-style
classes). Use a "plain", module-level function. For example::

    >>> class A:
    ... count = 0
    ...
    >>> def inc_count():
    ... A.count = A.count + 1
    ...
    >>> def dec_count():
    ... A.count = A.count - 1
    ...
    >>> a = A()
    >>> a.count
    0
    >>> inc_count()
    >>> a.count
    1
    >>> b = A()
    >>> b.count
    1
    >>> inc_count()
    >>> inc_count()
    >>> inc_count()
    >>> a.count
    4
    >>> b.count
    4



Interfaces
----------

- Interfaces are not enforced.

- A class does not have to implement *all* of an interface.

- Use a class definition with methods that each have a doc string but
  no executable code as a means of documenting an interface.

- For more notes on interfaces see:
  `Interfaces
  <http://www.rexx.com/~dkuhlman/python_comments.html#interfaces>`_:
  http://www.rexx.com/~dkuhlman/python_comments.html#interfaces.

Other special names/methods -- __call__(), __getitem__(),
setitem(), __cmp__(), __le__(), etc. See
http://docs.python.org/ref/specialnames.html.


New-style classes
-----------------

Not yet available in Jython 2.1.

For information on new style classes see:
`Introduction To New-Style Classes In Python
<http://www.geocities.com/foetsch/python/new_style_classes.htm>`_:
http://www.geocities.com/foetsch/python/new_style_classes.htm.



Doc strings
-----------

Add docstrings as a triple-quoted string beginning with the first
executable line of a module, class, method, or function. See
`epydoc`_ for a suggested format.

.. _`epydoc`: http://epydoc.sourceforge.net/



Modules, Packages, and Debugging
================================

Modules
-------

A module is a Python source code file.

A module can be imported.

A module can be run.

To make a module both import-able and run-able, use the following
idiom (at the end of the module)::

    def main():
        o
        o
        o

    if __name__ == '__main__':
        main()


Doc strings for functions
.........................

Add docstrings as a triple-quoted string at or near the top of the
file. See `epydoc`_ for a suggested format.



Packages
--------

A package is a directory on the file system which contains a file
named ``__init__.py``.

The ``__init__.py`` file:

- Why is it there? -- It makes modules in the directory
  "import-able".

- Can ``__init__.py`` be empty? -- Yes. Or, just include a
  comment.

- When is it evaluated? -- It is evaluated the first time that an
  application imports anything from that directory/package.

- What can you do with it? -- Any code that should be executed
  exactly once and during import. For example:

  - Perform initialization needed by the package.

  - Make variables, functions, classes, etc available. For
    example, when the *package* is imported rather than modules in
    the package. You can also expose objects defined in modules
    contained in the package.

- Define a variable named ``__all__`` to specify the list of names
  that will be imported by ``from my_package import *``. For
  example, if the following is present in
  ``my_package/__init__.py``::

      __all__ = ['func1', 'func2',]

  Then, ``from my_package import *`` will import ``func1`` and
  ``func2``, but not other names defined in ``my_package``.

  Note that ``__all__`` can be used at the module level, as well
  as at the package level.
  

Debugging tools
---------------

``pdb`` -- The Python debugger:

- Start the debugger by running an expression::

      pdb.run('expression')

  Example::

      import pdb
      pdb.run('main()')

- Start up the debugger at a specific location with the following::

      import pdb; pdb.set_trace()

- Get help from within the debugger. For example::

      (Pdb) help
      (Pdb) help next


Miscellaneous tools:

- ``id(obj)``

- ``globals()``, ``locals()``.

- ``type(obj)``

- ``dir(obj)`` -- Returns interesting names, but list is not
  necessarily complete.

- ``cls.__bases__``

- ``obj.__class__``

- ``obj.__doc__``

- ``obj.__class__.__doc__``

- Customize the representation of your class. Define the
  following methods in your class:


  - ``__repr__()`` -- Called by (1) ``repr()``, (2) interactive
    interpreter when representation is needed.

  - ``__str__()`` -- Called by (1) ``str()``, (2) string
    formatting.



Special Tasks
=============

File input and output
----------------------

Create a file object. Use ``file()`` (or ``open()`` in Jython
prior to Jython 2.2). However, ``open`` is a factory function, and,
according to some, is preferred over ``file``.

This example reads and prints each line of a file::

    def test():
        f = file('tmp.py', 'r')
        for line in f:
            print 'line:', line.rstrip()
        f.close()

    test()

Notes:

- A text file is an iterable (Jython 2.2a or later). It iterates over
  the lines in a file. The following is a common idiom::

      infile = file(filename, 'r')
      for line in infile:
          process_a_line(line)
      infile.close()

- ``string.rstrip()`` strips new-line and other whitespace from
  the right side of each line. To strip new-lines only, but not
  other whitespace, try ``rstrip('\n')``.

- Other ways of reading from a file/stream object:
  ``my_file.read()``, ``my_file.readline()``, ``my_file.readlines()``,

This example writes lines of text to a file::

    def test():
        f = file('tmp.txt', 'w')
        for ch in 'abcdefg':
            f.write(ch * 10)
            f.write('\n')
        f.close()

    test()

Notes:

- The ``write`` method, unlike the ``print`` statement, does not
  automatically add new-line characters.

- Must close file in order to flush output. Or, use
  ``my_file.flush()``.


Unit tests
----------

For more information, see `5.3 unittest -- Unit testing framework
<http://docs.python.org/lib/module-unittest.html>`_
(http://docs.python.org/lib/module-unittest.html).


Here is a simple example::

    #!/usr/bin/env python

    import sys, popen2
    import getopt
    import unittest


    class GenTest(unittest.TestCase):

        def test_1_generate(self):
            cmd = 'python ../generateDS.py -f -o out2sup.py -s out2sub.py people.xsd'
            outfile, infile = popen2.popen2(cmd)
            result = outfile.read()
            outfile.close()
            infile.close()
            self.failUnless(len(result) == 0)

        def test_2_compare_superclasses(self):
            cmd = 'diff out1sup.py out2sup.py'
            outfile, infile = popen2.popen2(cmd)
            outfile, infile = popen2.popen2(cmd)
            result = outfile.read()
            outfile.close()
            infile.close()
            #print 'len(result):', len(result)
            # Ignore the differing lines containing the date/time.
            #self.failUnless(len(result) < 130 and result.find('Generated') > -1)
            self.failUnless(check_result(result))

        def test_3_compare_subclasses(self):
            cmd = 'diff out1sub.py out2sub.py'
            outfile, infile = popen2.popen2(cmd)
            outfile, infile = popen2.popen2(cmd)
            result = outfile.read()
            outfile.close()
            infile.close()
            # Ignore the differing lines containing the date/time.
            #self.failUnless(len(result) < 130 and result.find('Generated') > -1)
            self.failUnless(check_result(result))


    def check_result(result):
        flag1 = 0
        flag2 = 0
        lines = result.split('\n')
        len1 = len(lines)
        if len1 <= 5:
            flag1 = 1
        s1 = '\n'.join(lines[:4])
        if s1.find('Generated') > -1:
            flag2 = 1
        return flag1 and flag2


    # Make the test suite.
    def suite():
        # The following is obsolete. See Lib/unittest.py.
        #return unittest.makeSuite(GenTest)
        loader = unittest.TestLoader()
        # or alternatively
        # loader = unittest.defaultTestLoader
        testsuite = loader.loadTestsFromTestCase(GenTest)
        return testsuite


    # Make the test suite and run the tests.
    def test():
        testsuite = suite()
        runner = unittest.TextTestRunner(sys.stdout, verbosity=2)
        runner.run(testsuite)


    USAGE_TEXT = """
    Usage:
        python test.py [options]
    Options:
        -h, --help Display this help message.
    Example:
        python test.py
    """

    def usage():
        print USAGE_TEXT
        sys.exit(-1)


    def main():
        args = sys.argv[1:]
        try:
            opts, args = getopt.getopt(args, 'h', ['help'])
        except:
            usage()
        relink = 1
        for opt, val in opts:
            if opt in ('-h', '--help'):
                usage()
        if len(args) != 0:
            usage()
        test()


    if __name__ == '__main__':
        main()
        #import pdb
        #pdb.run('main()')


Notes:

- ``GenTest`` is our test suite class. It inherits from
  ``unittest.TestCase``.

- Each method in ``GenTest`` whose name begins with "test" will be
  run as a test.

- The tests are run in alphabetic order by method name.

- Defaults in class ``TestLoader`` for the test name prefix and
  sort comparison function can be overridden. See
  `5.3.8 TestLoader Objects
  <http://docs.python.org/lib/testloader-objects.html>`_.

- A test case class may also implement methods named ``setUp()``
  and ``tearDown()`` to be run before and after tests. See
  `5.3.5 TestCase Objects
  <http://docs.python.org/lib/testcase-objects.html>`_.
  Actually, the first test method in our example should, perhaps,
  be a ``setUp()`` method.

- The tests use calls such as ``self.failUnless()`` to report
  errors. These are inherited from class ``TestCase``. See
  `5.3.5 TestCase Objects
  <http://docs.python.org/lib/testcase-objects.html>`_.

- Function ``suite()`` creates an instance of the test suite.

- Function ``test()`` runs the tests.

Why should we use unit tests? Many reasons, including:

- Without unit tests, corner cases may not be checked. This is
  especially important, since Python does relatively little
  compile time error checking.

- Unit tests facilitate a frequent and short design and implement
  and release development cycle. See `ONLamp.com -- Extreme Python
  <http://www.onlamp.com/pub/a/python/2001/03/28/pythonnews.html>`_
  and `What is XP <http://www.xprogramming.com/what_is_xp.htm>`_.

- Designing the tests before writing the code is "a good idea".


doctest
-------

For simple test harnesses, consider using ``doctest``. With
``doctest`` you can (1) run a test at the Python interactive
prompt, then (2) copy and paste that test into a doc string in
your module, and then (3) run the tests automatically from within
your module under ``doctest``.

There are examples and explanation in the standard Python
documentation set: `5.2 doctest -- Test interactive Python
examples <http://docs.python.org/lib/module-doctest.html>`_.

A simple way to use ``doctest`` in your module:

1. Run several tests in the Python interactive interpreter. Note that
   because ``doctest`` looks for the interpreter's ">>>" prompt, you
   must use the standard python interpreter or an interpreter that
   produces the same prompts. Note that IPython does *not* produce
   those prompts by default, but can be configured to do so. Also,
   make sure that you include a line with the ">>>" prompt after each
   set of results; this enables ``doctest`` to determine the extent of
   the test results.

2. Use copy and paste, to insert the tests and their results from
   your interactive session into the docstrings.

3. Add code similar to the following at the bottom of your module::

       def _test():
           import doctest
           doctest.testmod()

       if __name__ == "__main__":
           _test()


Installing Python packages
--------------------------

Python packages
...............

Simple::

    $ python setup.py build
    $ python setup.py install # as root

More complex:

- Look for a ``README`` or ``INSTALL`` file at the root of the
  package.

- Type the following for help::

      $ python setup.py cmd --help
      $ python setup.py --help-commands
      $ python setup.py --help [cmd1 cmd2 ...]

- And, for even more details, see `Installing Python Modules
  <http://docs.python.org/inst/inst.html>`_.


Jython packages
...............

Some Jython packages will be distributed as a Java jar file. If that
is the case, add the jar file somewhere on your classpath.

If the package is distributed as a standard Python package with a
``setup.py`` installer file and *if* there are no C/C++ files in the
package, then you might try something like the following::

    $ python setup.py install --prefix /path/to/install/directory

And, then put that install directory on your classpath.


More Python Features and Exercises
==================================

[As time permits, explain more features and do more exercises as
requested by class members.]


Installing and Running Jython
=============================

Install Python
--------------

If it is not already installed on your system, you are likely to
want Python. It is *not* necessary for running Jython code. But,
you are likely to want to do at least some of your work and tests
with Python.


MS Windows
..........

You can find the latest Python at http://www.python.org.
Currently, the latest is Python 2.4.2.

If you are on MS Windows, you will likely also want to install
`Python for Windows Extensions
<http://starship.python.net/crew/mhammond/win32/>`_.



Install Jython
--------------

You will need Java installed, of course. And, since you are like to
want to use Jython class libraries from Jython, it is also likely that
you will want the Java SDK. **Important**: If more than one version
of Java is installed on your machine, make sure that when you install
Jython using the version of Java for which the SDK is installed and
the version of Java that you will be using when you run Jython.

Follow the instructions at http://www.jython.org/install.html.

To install Jython 2.1 from the Java class file:

1. Download ``jython_21.class``: `Download Jython
   <http://www.jython.org/download.html>`_.

2. Follow the installation instructions: `Installing Jython
   <http://www.jython.org/install.html>`_
   (http://www.jython.org/install.html).
   You are likely to do something like this::

       $ java -cp . jython_21 -o Jython-2.1

   Where ``java`` runs the version of Java that you will be using when
   you run Jython.

Jython 2.1 is the latest stable version. Jython 2.2a is also
available, and seems quite usable and stable to me. To install it,
first down-load it from http://www.jython.org/. Then use something
like the following (depending on the version)::

    $ java -jar jython_Release_2_2alpha1.jar

Command line editing and command line history -- Note that at the time
of this writing, on Linux, the Jython 2.2a interactive shell does not
have readline support (command-line editing, command history) built
in. (Some versions of Jython 2.1 have it.) But, on UNIX/Linux
machines, ``rlwrap`` will fill this need. You can get ``rlwrap`` here:

- http://www.maumae.net/yorick/doc/environ.php
- http://www.maumae.net/yorick/rlwrap-0.18.tar.gz

In order to build ``rlwrap``, you will need `The GNU Readline
Library
<http://cnswww.cns.cwru.edu/php/chet/readline/rltop.html>`_. For
Linux, there are likely to be binary installers for ``rlwrap`` for
specific Linux platform.

Run ``rlwrap`` with the following::

    $ rlwrap -r path-to-jython/jython

The ``-r`` command-line flag gives some word completion (using the
TAB key) for previously seen words.

There is also a FAQ entry. Visit `Jython FAQ Index
<http://www.jython.org/cgi-bin/faqw.py?req=index>`_
(http://www.jython.org/cgi-bin/faqw.py?req=index) and then look for
"2.4. Why no command-line history in Jython?". The suggestion to use
``Demo/swing/Console.py`` in the Jython distribution is a fairly
useful one.

Also, there is `JythonConsole
<http://don.freeshell.org/jython/>`_
(http://don.freeshell.org/jython/),
which, in addition to command line history and editing, provides
additional features such as code completion and method (tip)
information.

For more on consoles and interactive shells for Jython, see the
Wiki page: `ReadlineSetup
<http://wiki.python.org/jython/ReadlineSetup>`_
(http://wiki.python.org/jython/ReadlineSetup).


Configuration
-------------

There are several places to configure Jython.

Command-line options
....................

To display the options for ``jython``, type::

    $ jython --help

And::

    $ jythonc --help


Jython configuration files
..........................

For explanation of configuration options and values, see:

- The comments in the (default) registry file.

- `The Jython Registry
  <http://www.jython.org/docs/registry.html>`_
  (http://www.jython.org/docs/registry.html).


Checking configuration values
.............................

From within the Jython interactive interpreter or from within your
Jython application, you can display the values of configuration
properties.

To get the system properties as a dictionary-like object, do::

    >>> from java.lang import System
    >>> props = System.getProperties()

Of particular interest are the following:

- ``props['java.class.path']`` -- Location of the Jython jar file.

- ``props['java.library.path']`` -- Locations of Java class libraries.

Other properties are in sys.registry::

    >>> import sys
    >>> r = sys.registry
    >>> for k in r:
    ... print k, r[k]

Here is a script that you may find useful when interactively
inspecting system properties::

    >>> from java.lang import System
    >>> props = System.getProperties()
    >>> names = []
    >>> for name in props.keys():
    ... names.append(name)
    ...
    >>> names.sort() # now you can list the keys in alpha order
    >>> for val in props['java.class.path'].split(':'):
    ... print val
    ...
    /home/dkuhlman/a1/Python/Jython/Tmp1/Jython-2.1/jython.jar
    /usr/share/jython/jython.jar


Classpath and python path
.........................

Jython can pick up Java class files from locations on either the
Jython/Python path (see ``sys.path``) or the Java classpath. Set
these with the following:

- The Python/Jython path can be set in your registry file. See
  registry variable ``python.path``.

  Or, at runtime, you could do::

      >>> import sys
      >>> sys.path.append('/path/to/module')

  But, you must do the above *before* trying to import the module.

- Set the classpath by setting the CLASSPATH environment variable.
  Note that (on my Linux machine, at least) the CLASSPATH environment
  variable is picked up and added to the Java ``-classpath`` flag.

A few rules about CLASSPATH and python.path:

- ``sys.path`` in the registry file -- Add here to enable importing
  from Java classes (.java), Java class libraries (.jar), and
  Jython/Python (.py).

- CLASSPATH -- Add here to enable importing from Java classes (.java)
  and Java class libraries (.jar), but not Jython/Python (.py).


Running Jython
--------------

The Jython interactive, command-line interpreter: ``jython``.

Jython IDEs (interactive development environments) -- There is a
Jython plug-in for Eclipse. See: http://pydev.sourceforge.net/.

Exercise -- Start the Jython interpreter. Then do each of the
following:

- Print "hello".

- Define an empty class.

- Import a Python/Jython file containing a class definition.
  Create an instance of that class.

- Import a module from the standard Python/Jython library, for
  example, ``re`` or ``os.path``. Use a method from that module.

- Import a Java class, for example, ``java.util.Vector``. Create
  and use an instance of that class.

Running Jython scripts:

- From the command line, run a script with ``jython``. For
  example::

      $ jython myscript.py

- For help, run::

      $ jython --help

- For debugging, use something similar to the following::

      import pdb
      pdb.run('main()')

  Or::
      import pdb
      pdb.set_trace()

  For example::

      def main():
          util101()

      if __name__ == '__main__':
          import pdb; pdb.set_trace()
          main()

- To "set a breakpoint" in your code so that it will drop into
  debugger, either (1) use the ``b`` command at the ``pdb`` prompt
  or (2) add the following to your code at the location where you
  wish to drop into the debugger::

      import pdb; pdb.set_trace()

  For more information on the Python debugger, see `The Python
  Debugger <http://docs.python.org/lib/module-pdb.html>`_ in the
  Python standard documentation.

- To make a script both "run-able" and "import-able", use the
  following idiom::

      if __name__ == '__main__':
          main()
          #import pdb
          #pdb.run('main()')

Don't forget to include a doc string at the top of your module for
documentation.

Exercise -- Create a small Jython script:

- Include a class in your script that creates an instance of
  ``java.util.Vector``.

- Make the script both "run-able" and "import-able".

- From the Jython interpreter, import the script and create an instance
  of the class.

- Import ``pdb``, then use it to debug and run your script.

- From the command line, use ``jython`` to run the script.

- Add ``pdb`` debugging to your script. Run the script again from
  the command line. Step through several lines of code.


Running jythonc
---------------


``jythonc`` is the Jython compiler. It compiles Jython code to
Java byte-code for the JVM.

What jythonc does:

- Generates ``.java`` source code files.

- Compiles: ``.java`` --> ``.class``.

The class files generated by ``jythonc`` can be used from standard
Java. But, must also make the Jython jar file available.

Learn more about ``jythonc`` in the section
`Compiling Jython to and for Java`_.



Calling Java from Jython
========================

Calling existing Java code
--------------------------

Import the Java module and call functions and objects in it. It
works the way you would hope and expect it to. Here is an example::

    >>> from java.util import Vector
    >>> v = Vector()
    >>> dir(v)
    ['__init__', 'add', 'addAll', 'addElement', 'capacity', 'class', 'clear', 'clone', 'contains', 'containsAll', 'copyInto', 'elementAt', 'elements', 'empty', 'ensureCapacity', 'equals', 'firstElement', 'get', 'getClass', 'hashCode', 'indexOf', 'insertElementAt', 'isEmpty', 'iterator', 'lastElement', 'lastIndexOf', 'listIterator', 'notify', 'notifyAll', 'remove', 'removeAll', 'removeAllElements', 'removeElement', 'removeElementAt', 'retainAll', 'set', 'setElementAt', 'setSize', 'size', 'subList', 'toArray', 'toString', 'trimToSize', 'wait']
    >>>
    >>> v.add('aaa')
    1
    >>> v.add('bbb')
    1
    >>> for val in v:
    ... print val
    ...
    aaa
    bbb


In some cases you will need to pass Java objects to Java methods.

Special treatment for some overloaded Java methods -- Explicitly
create and pass Jython objects.

Often you can use Python/Jython style and idioms to process Java
objects. For example: the Jython ``for`` statement can be applied
to Java collection objects.

Exercise -- Use the class ``java.util.Hashtable`` to create a
dictionary with several keys and values, then print out the keys
and their values. Solution::

    >>> from java.util import Hashtable
    >>> impl_language = Hashtable()
    >>> impl_language.put('jython', 'java')
    >>> impl_language.put('python', 'c')
    >>> for key in impl_language.keys():
    ... print '%s is implemented in %s' % (key, impl_language[key])
    ...
    python is implemented in c
    jython is implemented in java



Preparing Java code to be called from Jython
--------------------------------------------

Another view: Java is the extension language for Jython.

No special work is required. Jython can call normal Java classes.

Need to pay attention to data types, for example, on the Jython
side. Use an explicit cast, for example, ``float(5)``.

For additional help, see:

- `Overview of Jython Documentation <http://www.jython.org/docs/index.html>`_

- The Jython API
  `with frames <http://www.jython.org/docs/javadoc/index.html>`_ or
  `without frames <http://www.jython.org/docs/javadoc/overview-summary.html>`_.


A simple class, doc strings, etc
................................

A first, simple example::

    // Showme.java

    import org.python.core.*;

    public class ShowMe
    {
        public static PyString __doc__ =
            new PyString("Simple Jython extension #1");

        public String name;

        public ShowMe(String newName)
        {
            name = newName;
        }
        public static PyString __doc__set_name = new PyString(
            "Set the name attribute");
        public void set_name(String newName)
        {
            name = newName;
        }
        public static PyString __doc__get_name = new PyString(
            "Get the name attribute");
        public String get_name()
        {
            return name;
        }

        public static PyString __doc__Show = new PyString(
            "Show the name attribute");
        public void Show()
        {
            System.out.println("My name is \"" + name + "\".");
        }
    }


Notes:

- Doc strings for the class and methods are defined with public
  static Strings. You can, alternatively, use PyString.

- For more complex control over doc strings (for example, in a
  Java files that contains multiple classes) your class can
  implement the ``ClassDictInit`` interface and implement the
  ``classDictInit`` method. See "Jython for Java Programmers",
  pp. 276 ff.


Working with Jython arguments
.............................

The ``ArgParser`` class helps us handle Jython keyword arguments.
If helps us support the analog of Jython's ``*args`` and
``**kwargs`` in Java methods.

How to do it -- And overview:

1. Define your Java method with the following prototype::

       public PyObject foo(PyObject[] args, String[] keywords);

2. Parse the arguments with class ``ArgParser``.

3. Access individual arguments with ``ArgParser`` methods
   ``getInt()``, ``getString()``, ``getList()``, and
   ``getPyObject()``.

4. Since both ``args`` and ``keywords`` are arrays, check the
   number of arguments actually passed with ``args.length`` and
   ``keywords.length``.

For more information, see: `org.python.core Class ArgParser
<http://www.jython.org/docs/javadoc/org/python/core/ArgParser.html>`_.

Exercise -- (1) Write a Java class containing a method that
prints all its arguments and all the keyword arguments passed to
it. (2) Then call that method from Jython.

Solution::

    // DemoArgs.java

    import org.python.core.*;

    public class DemoArgs
    {
        public static PyString __doc__ =
            new PyString("Demonstrate the use of complex arguments.");

        public String name;
        public String value;

        public DemoArgs(String newName, String newValue)
        {
            name = newName;
            value = newValue;
        }

        public static PyString __doc__set_name = new PyString(
            "Set the name attribute");
        public void set_name(PyObject[] args, String[] kwargs)
        {
            System.out.println("length(args): " +
                String.valueOf(args.length) +
                " length(kwargs): " +
                String.valueOf(kwargs.length)
                );
            ArgParser ap = new ArgParser("set_name", args, kwargs,
                new String[] {"name", "value"});
            String newName = ap.getString(0, "");
            String newValue = ap.getString(1, "<empty>");
            if (newName.compareTo("") != 0)
            {
                name = newName;
            }
            value = newValue;
        }
        public static PyString __doc__get_name = new PyString(
            "Get the name attribute");
        public String get_name()
        {
            return name;
        }

        public static PyString __doc__get_value = new PyString(
            "Get the value attribute");
        public String get_value()
        {
            return value;
        }

        public static PyString __doc__Show = new PyString(
            "Show the name and value attributes");
        public void Show()
        {
            System.out.println("My name is \"" + name +
                "\" and my value is \"" + value + "\".");
        }
    }


Compile the above file with ``javac`` or some other Java compiler. To
do so, you will need to add ``jython.jar`` to your ``CLASSPATH``.

Notes:

- Use class ``ArgParser`` to capture the arguments.

- Use ``ArgParser`` methods ``getInt``, ``getString``,
  ``getPyObject``, and ``getList`` to retrieve arguments.

- Notice that in method ``get_name``, we print the length of the
  args and kwargs. This demonstrates that you can check the
  length of these arrays and can throw an exception if, for
  example, too few arguments are passed.


Sub-classing a Java class
.........................

Notice that, in Jython, we can extend a class written in Java::

    import DemoArgs

    class Fancy(DemoArgs):
        def __init__(self, name, value):
            DemoArgs.__init__(self, name, value)
        def ShowFancy(self):
            print "I'm fancy and my name is %s and my value is %s" % \
                (self.name, self.value)

    def test():
        f = Fancy('dave', 'funny')
        f.ShowFancy()
        f.set_name('daniel', 'cute')
        f.ShowFancy()

    test()

When you run the above, you should see something like the following::

    $ jython tmp.py
    I'm fancy and my name is dave and my value is funny
    length(args): 2 length(kwargs): 0
    I'm fancy and my name is daniel and my value is cute


Emulating Jython Dictionaries, Sequences, Etc.
..............................................

Extend class org.python.core.PyObject and its sub-classes. See:
`org.python.core Class PyObject
<http://www.jython.org/docs/javadoc/org/python/core/PyObject.html>`_.

Implement the following methods::

    __getitem__()
    __finditem()
    __setitem__()
    __delitem__()
    ...

``getitem()`` vs. ``finditem()``:

- If the index is not found or out of range, ``finditem()``
  returns null, whereas ``__getitem()`` should throw an exception.

- The Jython API documentation says to override ``finditem()`` and
  not ``getitem()``. See: `org.python.core Class PyObject
  <http://www.jython.org/docs/javadoc/org/python/core/PyObject.html>`_.

See `3.3.5 Emulating container types
<http://docs.python.org/ref/sequence-types.html>`_ in the Python
Reference Manual for more information on customizing dictionaries
and sequences.

Exercise -- (1) Write a Java class that emulates or imitates a
Jython dictionary. (2) In addition, each access method should
print a message. (3) Test your Java class from Jython by creating
an instance of it, then setting and retrieving a key-value pair.

Solution #1 -- This solution is for educational purposes only (see
solution #2)::

    // TestDict.java

    import org.python.core.*;
    import java.util.*;

    public class TestDict
    {
     public Hashtable data;
     
     public TestDict()
     {
      data = new Hashtable();
     }
     public void __setitem__(String key, String value)
     {
      data.put(key, value);
      System.out.println("Added key \"" + key + "\" value: \"" +
             value + "\"");
     }
     public String __getitem__(String key)
     {
      if (data.containsKey(key))
      {
       String value = (String)data.get(key);
       System.out.println("Found key \"" + key + "\" value: \"" +
             value + "\"");
       return value;
      }
      else
      {
       throw new PyException(Py.KeyError, "The key does not exit.");
      }
     }
     public boolean __contains__(String key)
     {
      if (data.containsKey(key))
      {
       System.out.println("Found key \"" + key + "\"");
       return true;
      }
      else
      {
       System.out.println("Did not find key \"" + key + "\"");
       return false;
      }
     }
    }

Notes:

- The above class implements a limited part of the Jython
  dictionary protocol, in particular ``__setitem__``,
  ``__getitem__``, and ``__contains__``.

- This above solution also illustrates how to throw ("raise" in
  Jython terms) an exception from Java that can be caught in
  Jython. Here is an example of catching that exception on the
  Jython side::

      >>> try:
      ... x = b['xyz']
      ... except KeyError, e:
      ... print '*** error: %s' % e
      ...
      *** error: The key does not exit.

Solution #2 -- This solution shows how you most likely would start
if you wanted to extend the dictionary type or implement a custom
dictionary type::

    // TestDictSub.java

    import org.python.core.*;
    import java.util.*;

    public class TestDictSub extends PyDictionary
    {
        public void __setitem__(PyObject key, PyObject value)
        {
            super.__setitem__(key, value);
            System.out.println("Added key \"" + key + "\" value: \"" +
                               value + "\"");
        }
        public PyObject __getitem__(PyObject key)
        {
            if (super.has_key(key))
            {
                PyObject value = super.__getitem__(key);
                System.out.println("Found key \"" + key + "\" value: \"" +
                               value + "\"");
                return value;
            }
            else
            {
                throw new PyException(Py.KeyError, "The key does not exit.");
            }
        }
    }

Notes:

- This class inherits the methods in the PyDictionary class. It
  overrides several of those methods, specifically ``__setitem__``
  and ``__getitem__``.

- The Java class could also extend the dictionary type by
  implementing additional, new methods.


Emulating Jython object attribute access
........................................

We can implement and override object attribute access in a Java
class:

Extend class org.python.core.PyObject and its sub-classes.

Implement the following methods::

    __findattr__()
    __setattr__()
    __delattr__()

``__findattr__()`` is called *only if* an attribute is not found
in an object.

Exercise -- (1) Write a Java class class that supports access to
attributes. (2) In addition, each access method should print a
message. (3) Test your Java class from Jython by creating an
instance of it, then setting and getting an attribute.

Solution::

    // TestDictSub.java

    import org.python.core.*;
    import java.util.*;

    public class TestDictAttr extends PyDictionary
    {
        public PyObject __findattr__(String key)
        {
            PyString objkey = new PyString(key);
            if (super.has_key(objkey))
            {
                PyObject value = super.__getitem__(objkey);
                System.out.println("Found attr \"" + key + "\" value: \"" +
                               value + "\"");
                return value;
            }
            else
            {
                throw new PyException(Py.KeyError, "The attr does not exit.");
            }
        }
    }

Notes:

- Test this solution with the following::

      $ rlwrap -r ./jython
      Jython 2.2a1 on java1.4.2 (JIT: null)
      Type "copyright", "credits" or "license" for more information.
      >>>
      >>> import TestDictAttr
      >>> a = TestDictAttr()
      >>> print a.dave
      Traceback (innermost last):
        File "<console>", line 1, in ?
      KeyError: The attr does not exit.
      >>> a['dave'] = 'some little value'
      >>> print a.dave
      Found attr "dave" value: "some little value"
      some little value

- Arguments to ``__findattr__`` and ``__finditem__`` must be
  interned strings. Literal strings are automatically interned.
  For other strings, use ``intern(s)``.


Compiling Jython to and for Java
================================

Another view: Jython is the extension language for Java.

Use ``jythonc``.

You can extend Java classes.

You can add (J)Python protocols to Java classes.

You will need to describe the signature of methods in order to
make them callable from Java (in addition to Jython).

What ``jythonc`` does -- ``jythonc`` translates ``.py`` files into
``.java`` source code files, then compiles these to ``.class``
files.

With ``jythonc``, you can also:

- Compile Jython (.py) to Java class files (.class).

- Compile Jython to Java source, then stop without compiling to
  ``.class`` files.

- Use a Java compiler different from the default: ``javac``. See
  the help from ``jythonc``::

    --compiler path
    -C path
        Use a different compiler than `standard' javac. If this is set to
        `NONE' then compile ends with .java. Alternatively, you can set the
        property python.jpythonc.compiler in the registry.

  This option can also be set in your Jython registry file.

Java compatible classes - In order to implement a Java compatible
class (that is, one that acts like a native Java class and can be
called from Java), your Jython code must follow these rules:

- Inherit from a Java class or interface.

- Include only one class per module.

- Give the Jython class and the source file that contains it the same
  name.

- Place all code inside that Jython class.

- Include method signature hints (called sig-strings) -- Add a ``@sig``
  line in the doc-string for each method.

How to use jythonc:

- Type ``jythonc --help`` for help.

- Compile your Jython code with::

      jythonc mymodule.py

- To get help for ``jythonc``, type::

      $ jythonc --help

Some notes:

- When your run ``jythonc``, by default, the ``.java`` files are placed
  in a sub-directory ``./jpywork``. You can override this with the
  ``--workdir`` command line option. From ``jythonc --help``::

      --workdir directory
      -w directory
          Specify working directory for compiler (default is ./jpywork)

- When you run this resulting code from Java, the directory
  ``./jpywork`` and the Jython jar file must be on your classpath.


Example -- The following Jython code extends a Java class.
Compile it with ``jythonc``::

    # Foo.py

    import java

    class Foo(java.util.Date):
        def __init__(self):
            self.count = 0
        def bar(self, incr=1):
            """@sig void bar(int incr)"""
            self.count += incr
            return self.count
        def toString(self):
            cnt = self.bar()
            return "Foo[" + java.util.Date.toString(self) + " " + `cnt` + "]"

Example, continued -- Here is Java code to test the above.
Compile it with ``javac`` and run it::

    // FooTest.java

    import Foo;

    public class FooTest {
         public static void main(String[] args) {
             Foo foo = new Foo();
             System.out.println(foo);
             foo.bar();
             foo.bar(43);
             System.out.println(foo);
         }
    }

Notes:

- Compile and run::

      $ javac FooTest.java
      $ java FooTest

- You will need ``jpywork`` on your classpath. So, you can
  compile and run it as follows::

      $ ../../Jython-2.2a/jythonc Foo.py
      $ javac -classpath ../../Jython-2.2a/jython.jar:./jpywork FooTest.java
      $ java -classpath ../../Jython-2.2a/jython.jar:./jpywork FooTest

In order to implement a Java compatible class (that is, one that acts
like a native Java class and can be called from Java), your Jython
code must follow these rules:

- Inherit from a Java class or interface.

- Include method signature hints (called sig-strings).

- Give the Jython class and the source file it is in the same name.


Here is another simple example::

    """simpleclass.py

    This is a simple class to demonstrate the use of jythonc.
    """

    import java.lang.Object

    class simpleclass(java.lang.Object):
        def __init__(self, name='The Horse With No Name'):
     """public simpleclass(String name)
     """
     self.name = name
     self.size = -1
        def set_name(self, name):
            """@sig public void set_name(String name)
            """
            self.name = name
        def set_size(self, size):
            """@sig public void set_size(int size)
            """
            self.size = size
        def show(self):
            """@sig public String show()
            """
            return 'name: %s size: %s' % (self.name, self.size, )


And, a Java test harness for this simple example::

    // simpleclasstest.java

    import simpleclass;

    public class simpleclasstest {
        public static void main(String[] args) {
     String s1;
     simpleclass sc = new simpleclass();
     s1 = sc.show();
     System.out.println("1. " + s1);
     sc.set_name("dave");
     sc.set_size(4321);
     s1 = sc.show();
     System.out.println("2. " + s1);
        }
    }


Notes:

- In order to produce a Java compatible class, our Jython class must
  inherit from a Java class. In this case, we use
  ``java.lang.Object``, because we do not need to inherit any behavior.

- The methods ``set_name``, ``set_size``, and ``show`` each have
  sig-strings.

Put ``jpywork`` on your ``CLASSPATH``, then use the following to
compile and test the above::

    $ jythonc simpleclass.py
    $ javac simpleclasstest.java
    $ java simpleclasstest
    1. name: The Horse With No Name size: -1
    2. name: dave size: 4321


In the following example, we create a stand-alone Jar file, that is,
one that can be executed as a script on a machine where Jython is not
installed. Here is the Jython script::

    # test_jythonc.py

    import sys

    def test(words):
        msgs = ['hi', 'bye']
        for word in words:
            msgs.append(word)
        for msg in msgs:
            print msg

    def main():
        args = sys.argv[1:]
        test(args)

    if __name__ == '__main__':
        main()


Compile and build a Jar file with the following::

    $ jythonc --all --jar mytest.jar test_jythonc.py

Run it as follows::

    $ java -jar mytest.jar hello goodbye
    hi
    bye
    hello
    goodbye

Notes:

- Note that our Jython script contains no class. ``jythonc`` will
  create a public class and a public static main function for us.

- The ``--jar`` flag tells ``jythonc`` that we want the results placed
  in a Jar file (as opposed to placing it in the work directory
  ``./jpywork``).

- The ``--all`` flag tells ``jythonc`` to include all Jython support
  in the Jar file, making it stand-alone. This enables us to run it
  on a system where Java is installed but Jython is not.


Calling Jython Code from Jython
-------------------------------

From Jython, you can run Jython and Python code. When you do so,
you may run *Java* code that is in a super-class or is used by the
Jython code.

But, notice that, from Jython, you cannot call Python code that
has been extended with C.



Calling Jython Code from Java
-----------------------------

Must compile Jython/Python to Java with ``jythonc``.

Must pay attention to method signatures. Define method signature
in Jython in a doc string with ``@sig``. Then look at the
generated ``.java`` file.

Other things to be aware of:

- Must set classpath to include ``jpywork``.

- Must write a Java compatible class. See above.


Another example -- Jython-2.2a/Demo/javaclasses
-----------------------------------------------

What this example shows:

- How to write a class that can be compiled (with ``jythonc``) and
  then called from Java.

- How to write method signatures for Jython methods.

- How to compile the the Jython code and the Java code.

For example, I compiled and ran the example in
Jython-2.2a/Demo/javaclasses with the following::

    $ rm -rf jpywork/
    $ ../../jythonc --package pygraph Graph.py
    $ javac -classpath .:../../jython.jar pygraph/PythonGraph.java
    $ java -classpath .:../../jython.jar:jpywork pygraph.PythonGraph

For more information, see Jython-2.2a/Demo/javaclasses/readme.txt.


Embedding the Jython Interpreter
================================

It's simple
-----------

Embedding the Jython interpreter can be as simple as this::

    // File: SimpleEmbedded.java
    import org.python.util.PythonInterpreter;
    import org.python.core.*;
    import java.io.*;

    public class SimpleEmbedded
    {
        public static void main (String[]args) throws PyException, IOException
        {
            BufferedReader terminal;
            PythonInterpreter interp;
            terminal = new BufferedReader (new InputStreamReader (System.in));
            System.out.println ("Hello");
            interp = new PythonInterpreter ();
            interp.exec ("import sys");
            interp.exec ("print sys");
            interp.set ("a", new PyInteger (42));
            interp.exec ("print a");
            interp.exec ("x = 2+2");
            PyObject x = interp.get ("x");
            System.out.println ("x: " + x);
            PyObject localvars = interp.getLocals ();
            interp.set ("localvars", localvars);
            String codeString = "";
            String prompt = ">> ";
            while (true)
            {
                System.out.print (prompt);
                try
                {
                    codeString = terminal.readLine ();
                    if (codeString.compareTo ("exit") == 0)
                    {
                        System.exit (0);
                        break;
                    }
                    interp.exec (codeString);
                }
                catch (IOException e)
                {
                    e.printStackTrace ();
                }
            }
            System.out.println ("Goodbye");
        }
    }


But, there are a few complexities
---------------------------------

You will want to *selectively* expose capabilities in your
application to scripts run by/on the embedded Jython interpreter.

You will want to protect your application from malicious or
erroneous scripts.

Here are a few suggestions:

- Describe your possible classes of users (those who will write
  scripts) with respect to (1) trusted vs. untrusted and (2) error
  tolerant vs. non-tolerant.

- For users who are trusted and error tolerant, provide
  transparent objects from your application.

- For users who are trusted and not error tolerant, provide opaque
  objects, i.e. wrappers for real objects from your application.

- For users who are not trusted, implement a security policy, *or*
  do not expose a scripting interface at all.


Exposing transparent objects
----------------------------

Java application objects and values can be passed through to
scripts executed or evaluated by the embedded interpreter.


Some mechanisms for passing objects:

- ``set`` and ``get`` -- Use these to set or retrieve values in
  the local namespace for the scripts that your embedded
  interpreter will run or has run.

- ``setLocals`` and ``getLocals`` -- Using these methods, you can
  pass or retrieve the entire namespace. If you are inserting
  values to be used (or shared) by scripts, you may want to
  retrieve and, possibly, copy the initial namespace. Remember
  that is a Jython dictionary, so modifying it without copying may
  affect other scripts running in the same interpreter.


Exposing opaque objects
-----------------------

This is similar to the strategy for transparent objects, except
that you must implement wrapper classes, then provide instances of
these classes instead of instances of transparent objects.


Type conversion
---------------

Mostly, Jython takes care of this for you.

However, at times it may help to know what conversions are
performed.

And, you can also perform explicit conversions.


Embedding and Extending -- A Summary
====================================

Here is what we have learned to do:

- Implement a class in Jython/Python. Compile the class to Java
  and to a Java class file. Use the class in Java code. The Java
  code uses the code generated by ``jythonc``.

- Extend a Java class in Jython.

- Import and use the Jython class in Java code compiled with
  javac. We are actually calling into the .java/.class file
  generated and compiled by ``jythonc``.

- Import and use the Jython class in Jython code. We are actually
  calling into the Jython/Python code, which extends the Java class.

- Import and use a Jython class in Jython code. The Jython
  class uses code written in Java.


Advanced Topics
===============

Event handling
--------------

Events are easy in Jython.

Here is an example taken from "An Introduction to Jython"
(http://www.javalobby.org/articles/jython/)::

    from javax.swing import *

    def hello(event):
        print "Hello. I'm an event."

    def test():
        frame = JFrame("Hello Jython")
        button = JButton("Hello", actionPerformed = hello)
        frame.add(button)
        frame.setDefaultCloseOperation(JFrame.EXIT_ON_CLOSE)
        frame.setSize(300, 300)
        frame.show()

    test()


XML
---

jaxp
....

Note: Tested with jython-2.2a.

Example::

    """

    To run this example, set your CLASSPATH with something like the following:

        export CLASSPATH=\
        ${path-to-xerces}/xerces-2_8_0/xercesImpl.jar:\
        ${path-to-xerces}/xerces-2_8_0/xml-apis.jar


    """


    import sys
    import java.lang.Boolean
    from javax.xml.parsers import DocumentBuilderFactory


    def test(infilename):
        """Parse XML document and show attributes and names.
        """
        dbf = DocumentBuilderFactory.newInstance()
        t = java.lang.Boolean(1)
        dbf.setNamespaceAware(t)
        db = dbf.newDocumentBuilder();
        doc = db.parse(infilename)
        # print dir(doc)
        node = doc.getDocumentElement()
        print 'Attributes:'
        show_attrs(node)
        print 'Names:'
        show_names(node)


    def show_attrs(node):
        """Show the attributes and their values.
        """
        node = node.getFirstChild()
        while node:
            if node.getNodeType() == node.ELEMENT_NODE:
                print ' %s:' % (node.getTagName(), )
                attrs = node.getAttributes()
                count = attrs.getLength()
                for idx in range(count):
                    attr = attrs.item(idx)
                    print ' %s: %s' % (
                        attr.getNodeName(), attr.getNodeValue(), )
            node = node.getNextSibling()


    def show_names(node):
        """Show the value of the name element for each person element.
        """
        node = node.getFirstChild()
        while node:
            if (node.getNodeType() == node.ELEMENT_NODE and
                node.getTagName() == 'person'):
                    show_person_name(node)
            node = node.getNextSibling()


    def show_person_name(node):
        node = node.getFirstChild()
        while node:
            if (node.getNodeType() == node.ELEMENT_NODE and
                node.getTagName() == 'name'):
                    show_text('name: ', node)
            node = node.getNextSibling()


    def show_text(msg, node):
        """Show a message and the value of a text node.
        """
        node = node.getFirstChild()
        while node:
            if node.getNodeType() == node.TEXT_NODE:
                print ' %s %s' % (msg, node.getNodeValue(), )
            node = node.getNextSibling()


    def usage():
        print 'Usage: jython test_jaxp.py <infilename>'
        sys.exit(-1)


    def main():
        args = sys.argv[1:]
        if len(args) != 1:
            usage()
        test(args[0])


    if __name__ == '__main__':
        main()



Resources:

- `jaxp: JAXP Reference Implementation
  <https://jaxp.dev.java.net/>`_
  (https://jaxp.dev.java.net/).

- `Java API for XML Processing (JAXP)
  <http://java.sun.com/webservices/jaxp/index.jsp>`_
  (http://java.sun.com/webservices/jaxp/index.jsp).


Xerces
......

Xerces is an implementation of XML parsers and a lot more. The JAXP
API is also implemented in Xerces2.

Obtain Xerces here: http://xerces.apache.org/xerces2-j/download.cgi.

Installation instructions are here: `Installation Instructions
<http://xerces.apache.org/xerces2-j/install.html>`_.

Set-up -- Set your CLASSPATH. After unpacking the Xerces
distribution, add the following jar files to your CLASSPATH:

- xercesImpl.jar

- xml-apis.jar

Here is an example that uses the Xerces DOM parser to parse an XML
document, then print out information about the top level nodes in the
document::

    from org.apache.xerces.parsers import DOMParser as dp

    def test():
        parser = dp()
        parser.parse('people.xml')
        doc = parser.getDocument()
        node = doc.getFirstChild()
        node = node.getFirstChild()
        while node:
            if node.getNodeType() == node.ELEMENT_NODE:
                print node.getTagName()
                attrs = node.getAttributes()
                count = attrs.getLength()
                for idx in range(count):
                    attr = attrs.item(idx)
                    print ' %s: %s' % (attr.getNodeName(), attr.getNodeValue(),)
            node = node.getNextSibling()

    if __name__ == '__main__':
        test()


Here is another example. This one also prints out the text values of
the ``name`` elements::

    """

    To run this example, set your CLASSPATH with something like the following:

        export CLASSPATH=\
        ${path-to-jython2.2a}/jython.jar:\
        ${path-to-xerces}/xerces-2_8_0/xercesImpl.jar:\
        ${path-to-xerces}/xerces-2_8_0/xml-apis.jar


    """


    import sys
    from org.apache.xerces.parsers import DOMParser as dp


    def test(infilename):
        """Parse XML document and show attributes and names.
        """
        parser = dp()
        parser.parse(infilename)
        doc = parser.getDocument()
        node = doc.getFirstChild()
        print 'Attributes:'
        show_attrs(node)
        print 'Names:'
        show_names(node)


    def show_attrs(node):
        """Show the attributes and their values.
        """
        node = node.getFirstChild()
        while node:
            if node.getNodeType() == node.ELEMENT_NODE:
                print ' %s:' % (node.getTagName(), )
                attrs = node.getAttributes()
                count = attrs.getLength()
                for idx in range(count):
                    attr = attrs.item(idx)
                    print ' %s: %s' % (
                        attr.getNodeName(), attr.getNodeValue(), )
            node = node.getNextSibling()


    def show_names(node):
        """Show the value of the name element for each person element.
        """
        node = node.getFirstChild()
        while node:
            if (node.getNodeType() == node.ELEMENT_NODE and
                node.getTagName() == 'person'):
                    show_person_name(node)
            node = node.getNextSibling()


    def show_person_name(node):
        node = node.getFirstChild()
        while node:
            if (node.getNodeType() == node.ELEMENT_NODE and
                node.getTagName() == 'name'):
                    show_text('name: ', node)
            node = node.getNextSibling()


    def show_text(msg, node):
        """Show a message and the value of a text node.
        """
        node = node.getFirstChild()
        while node:
            if node.getNodeType() == node.TEXT_NODE:
                print ' %s %s' % (msg, node.getNodeValue(), )
            node = node.getNextSibling()


    def usage():
        print 'Usage: jython test_xerces.py <infilename>'
        sys.exit(-1)


    def main():
        args = sys.argv[1:]
        if len(args) != 1:
            usage()
        test(args[0])


    if __name__ == '__main__':
        main()


Notes:

- Except for the parser set-up (in function ``test``), this example
  is almost the same as the JAXP example. For the most part, it
  uses the same API.

Resources:

- `Xerces Java Parser <http://xerces.apache.org/xerces2-j/>`_

- `Introduction to XML and XML With Java
  <http://totheriver.com/learn/xml/xmltutorial.html>`_


dom4j
.....

Example::


    """

    To run this example, add the following to your CLASSPATH:

        ${path-to-dom4j}/dom4j-1.6.1.jar


    """


    import sys
    from org.dom4j.io import SAXReader

    def show_indent(level):
        return ' ' * level

    def show_node(node, level):
        """Display one node in the DOM tree.
        """
        if node.getNodeType() == node.ELEMENT_NODE:
            name = node.getName()
            print '%sNode: %s' % (show_indent(level), name, )
            attrs = node.attributes()
            for attr in attrs:
                aName = attr.getQualifiedName()
                aValue = attr.getValue()
                print ' %sAttr -- %s: %s' % (show_indent(level), aName, aValue,)
        if node.getName() == 'interest':
            val = node.getText()
            print '%sinterest: "%s"' % (show_indent(level+1), val, )
        elif node.getName() == 'name':
            val = node.getText()
            print '%sname : "%s"' % (show_indent(level+1), val, )
        #
        # Note that there are *no* TEXT_NODE's.
        # dom4j does not seem to produce any.
        #
        if node.getNodeType() == node.TEXT_NODE:
            print '**** text node'


    def show_tree(node, level):
        show_node(node, level)
        level1 = level + 1
        children = node.elements()
        for child in children:
            show_tree(child, level1)

    def test():
        print 'Version: %s' % (sys.version, )
        reader = SAXReader()
        doc = reader.read('file:///home/dkuhlman/a1/Python/Jython/Test/people.xml')
        root = doc.getRootElement()
        show_tree(root, 0)

    def main():
        test()

    if __name__ == '__main__':
        #import pdb; pdb.set_trace()
        main()


Resources:

- http://www.dom4j.org/

- http://www.dom4j.org/dom4j-1.4/apidocs/index.html



Database access
---------------

JDBC
....

JDBC is Java classes. It is, therefore, usable from Jython.

You will need JDBC driver/adapters for your database.

But, JDBC is not very Pythonic.


zxJDBC
......

zxJDBC *is* Pythonic. zxJDBC implements the Python DB API on top
of JDBC. For more on the Python DB API, see
`SIG on Tabular Databases in Python
<http://python.org/sigs/db-sig/>`_ and
`Python Database API Specification v2.0
<http://python.org/peps/pep-0249.html>`_.


If zxJDBC is not already in your installed version of Jython, then
you can:

1. Downloading the source from
   http://sourceforge.net/projects/zxjdbc.

2. Creating a directory (e.g. ``zxJDBC``), then un-rolling it.

3. Add ``zxJDBC/lib/zxJDBC.jar`` to your ``CLASSPATH``

You can get documentation on zxJDBC by:

1. Downloading the source from
   http://sourceforge.net/projects/zxjdbc.

2. Creating a directory (e.g. ``zxJDBC``), then un-rolling it.

3. Pointing your browser at ``zxJDBC/doc/index.html``.

Example -- The following example opens a connection to a
PostgreSQL database, then prints out the rows in a table in that
database. In order to make this example work, I put the following
jar files on my ``CLASSPATH``:

- ``zxJDBC.jar`` -- Not needed for Jython 2.2, and possibly not
  needed for the version of Jython 2.1 on your machine. JDBC
  support has been folded into Jython 2.1 and Jython 2.2a.

- ``postgresql-8.1-407.jdbc3.jar`` -- You will need a suitable
  driver for your database and version.

Here is the example implementation::

    """

    For this test, add the JDBC driver to your CLASSPATH. For example,
    in my case I added:

        postgresql-8.1-407.jdbc3.jar

    """

    from com.ziclix.python.sql import zxJDBC

    def test():
        d, u, p, v = (
            "jdbc:postgresql://thrush:5432/test", # ... host, port, database
            "postgres", # user name
            "mypassword", # pass word
            "org.postgresql.Driver", # driver
            )
        db = zxJDBC.connect(d, u, p, v, CHARSET='iso_1')
        cur = db.cursor()
        cur.execute('select * from plant_db')
        rows = cur.fetchall()
        s1 = '%s %s %s' % (
            'Name'.ljust(12),
            'Description'.ljust(24),
            'Rating'.ljust(10),
            )
        print s1
        s1 = '%s %s %s' % (
            '===='.ljust(12),
            '==========='.ljust(24),
            '======'.ljust(10),
            )
        print s1
        for row in rows:
            rating = str(row[2])
            print '%s %s %s' % (
                row[0].ljust(12), row[1].ljust(24), rating.ljust(10), )
        cur.close()
        db.close()

    if __name__ == '__main__':
        test()


Which, when connected to my trivial, little database, prints out
the following::

    Name Description Rating
    ==== =========== ======
    tomato red and tasty 8
    peach sweet and succulent 8
    tangerine sweet but tart 7


Resources:

- Python Tabular Databases SIG: Status
  <http://www.python.org/community/sigs/current/db-sig/status/>`_
  (http://www.python.org/community/sigs/current/db-sig/status/).

- The Python `Database Topic Guide
  <http://www.python.org/doc/topics/database/>`_
  (http://www.python.org/doc/topics/database/).

- More information on zxJDBC:
  http://sourceforge.net/projects/zxjdbc

- The JDBC driver for PostgreSQL: http://jdbc.postgresql.org/

- The JDBC driver for MySQL:
  http://www.mysql.com/products/connector/j/


Additional Exercises
====================

[To be added.]


References and Sources
======================

Introductory articles:

- `An Introduction to Jython`_: An introductory article on Jython

- `alt.lang.jre: Get to know Jython`_: An introduction to Jython
  that includes a summary of Jython features.

- `Use Jython to Exercise Java APIs Without Compiling`_: Another
  introduction with an emphasis on the use of Java classes.

- `Charming Jython`_: Yet another introductory article.

- `Scripting Languages For Java`_: A comparison of scripting
  languages for Java.

.. _`An Introduction to Jython`:
    http://www.javalobby.org/articles/jython/

.. _`alt.lang.jre: Get to know Jython`:
    http://www-128.ibm.com/developerworks/library/j-alj07064/index.html

.. _`Use Jython to Exercise Java APIs Without Compiling`:
    http://www.devx.com/Java/Article/27571/1954?pf=true

.. _`Charming Jython`:
    http://www-128.ibm.com/developerworks/java/library/j-jython.html

.. _`Scripting Languages For Java`:
    http://www.ociweb.com/jnb/archive/jnbMar2001.html

Thanks to David Goodger for the following list or references. His
"Code Like a Pythonista: Idiomatic Python"
(http://python.net/~goodger/projects/pycon/2007/idiomatic/) is worth
a careful reading:

- "Python Objects", Fredrik Lundh,
  http://www.effbot.org/zone/python-objects.htm

- "How to think like a Pythonista", Mark Hammond,
  http://python.net/crew/mwh/hacks/objectthink.html

- "Python main() functions", Guido van Rossum,
  http://www.artima.com/weblogs/viewpost.jsp?thread=4829

- "Python Idioms and Efficiency",
  http://jaynes.colorado.edu/PythonIdioms.html

- "Python track: python idioms",
  http://www.cs.caltech.edu/courses/cs11/material/python/misc/python_idioms.html

- "Be Pythonic", Shalabh Chaturvedi,
  http://shalabh.infogami.com/Be_Pythonic2

- "Python Is Not Java", Phillip J. Eby,
  http://dirtsimple.org/2004/12/python-is-not-java.html

- "What is Pythonic?", Martijn Faassen,
  http://faassen.n--tree.net/blog/view/weblog/2005/08/06/0

- "Sorting Mini-HOWTO", Andrew Dalke,
  http://wiki.python.org/moin/HowTo/Sorting

- "Python Idioms", http://www.gungfu.de/facts/wiki/Main/PythonIdioms

- "Python FAQs", http://www.python.org/doc/faq/







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CategoryJep

LearningJython (last edited 2018-03-07 21:17:20 by JeffAllen)