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testgroup
pytensor
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c7ecdb3f
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c7ecdb3f
authored
3月 19, 2009
作者:
Joseph Turian
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差异文件
Moved doc from type and op to graph structures
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8e961238
隐藏空白字符变更
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4 个修改的文件
包含
72 行增加
和
80 行删除
+72
-80
op.txt
doc/advanced_tutorial/ex1/op.txt
+0
-18
type.txt
doc/advanced_tutorial/ex1/type.txt
+0
-37
graphstructures.txt
doc/advanced_tutorial/graphstructures.txt
+71
-24
theano_vs_python.txt
doc/advanced_tutorial/theano_vs_python.txt
+1
-1
没有找到文件。
doc/advanced_tutorial/ex1/op.txt
浏览文件 @
c7ecdb3f
...
...
@@ -7,24 +7,6 @@ Now that we have a ``double`` type, we have yet to use it to perform
computations. We'll start by defining multiplication.
What is an Op?
==============
An :ref:`op` in Theano defines a certain computation on some types of
inputs, producing some types of outputs. It is equivalent to a
function definition in most programming languages. From a list of
input :ref:`Results <result>` and an Op, you can build an :ref:`apply`
node representing the application of the Op to the inputs.
It is important to understand the distinction between an Op (the
definition of a function) and an Apply node (the application of a
function). If you were to interpret the Python language using Theano's
structures, code going like ``def f(x): ...`` would produce an Op for
``f`` whereas code like ``a = f(x)`` or ``g(f(4), 5)`` would produce an
Apply node involving the ``f`` Op.
Op's contract
=============
...
...
doc/advanced_tutorial/ex1/type.txt
浏览文件 @
c7ecdb3f
...
...
@@ -5,43 +5,6 @@ Making the double type
======================
What is a Type?
===============
A :ref:`type` in Theano represents a set of constraints on potential
data objects. These constraints allow Theano to tailor C code to handle
them and to statically optimize the computation graph. For instance,
the :ref:`irow <predefinedtypes>` type in the ``theano.tensor`` package
gives the following constraints on the data the Results of type ``irow``
may contain:
#. Must be an instance of ``numpy.ndarray``: ``isinstance(x, numpy.ndarray)``
#. Must be an array of 32-bit integers: ``str(x.dtype) == 'int32'``
#. Must have a shape of 1xN: ``len(x.shape) == 2 and x.shape[0] == 1``
Knowing these restrictions, Theano may generate C code for addition, etc.
that declares the right data types and that contains the right number
of loops over the dimensions.
Note that a Theano :ref:`type` is not equivalent to a Python type or
class. Indeed, in Theano, :ref:`irow <predefinedtypes>` and :ref:`dmatrix
<predefinedtypes>` both use ``numpy.ndarray`` as the underlying type
for doing computations and storing data, yet they are different Theano
Types. Indeed, the constraints set by ``dmatrix`` are:
#. Must be an instance of ``numpy.ndarray``: ``isinstance(x, numpy.ndarray)``
#. Must be an array of 64-bit floating point numbers: ``str(x.dtype) == 'float64'``
#. Must have a shape of MxN, no restriction on M or N: ``len(x.shape) == 2``
These restrictions are different from those of ``irow`` which are listed above.
There are cases in which a Type can fully correspond to a Python type,
such as the ``double`` Type we will define here which corresponds to
Python's ``float``. But, it's good to know that this is not necessarily
the case. Unless specified otherwise, when we say "Type" we mean a
Theano Type.
Type's contract
===============
...
...
doc/advanced_tutorial/graphstructures.txt
浏览文件 @
c7ecdb3f
...
...
@@ -182,28 +182,6 @@ An Apply instance has three important fields:
applied here.
.. index::
single: Constant
single: graph construct; Constant
.. _constant:
--------
Constant
--------
A constant is a :ref:`Result` with one extra field, *data* (only
settable once). When used in a computation graph as the input of an
:ref:`Op` :ref:`application <Apply>`, it is assumed that said input
will *always* take the value contained in the constant's data
field. Furthermore, it is assumed that the :ref:`Op` will not under
any circumstances modify the input. This means that a constant is
eligible to participate in numerous optimizations: constant inlining
in C code, constant folding, etc.
A constant does not need to be specified in a :ref:`function`'s list
of inputs.
.. index::
...
...
@@ -212,6 +190,8 @@ of inputs.
.. _result:
------
Result
------
...
...
@@ -263,6 +243,28 @@ A Result ``r`` contains four important fields:
Result has one special subclass: :ref:`constant <constant>`.
.. index::
single: Constant
single: graph construct; Constant
.. _constant:
Constant
^^^^^^^^
A constant is a :ref:`Result` with one extra field, *data* (only
settable once). When used in a computation graph as the input of an
:ref:`Op` :ref:`application <Apply>`, it is assumed that said input
will *always* take the value contained in the constant's data
field. Furthermore, it is assumed that the :ref:`Op` will not under
any circumstances modify the input. This means that a constant is
eligible to participate in numerous optimizations: constant inlining
in C code, constant folding, etc.
A constant does not need to be specified in a :ref:`function`'s list
of inputs.
.. index::
...
...
@@ -275,7 +277,20 @@ Result has one special subclass: :ref:`constant <constant>`.
Op
--
WRITEME
An :ref:`op` in Theano defines a certain computation on some types of
inputs, producing some types of outputs. It is equivalent to a
function definition in most programming languages. From a list of
input :ref:`Results <result>` and an Op, you can build an :ref:`apply`
node representing the application of the Op to the inputs.
It is important to understand the distinction between an Op (the
definition of a function) and an Apply node (the application of a
function). If you were to interpret the Python language using Theano's
structures, code going like ``def f(x): ...`` would produce an Op for
``f`` whereas code like ``a = f(x)`` or ``g(f(4), 5)`` would produce an
Apply node involving the ``f`` Op.
...
...
@@ -289,5 +304,37 @@ WRITEME
Type
----
WRITEME
A :ref:`type` in Theano represents a set of constraints on potential
data objects. These constraints allow Theano to tailor C code to handle
them and to statically optimize the computation graph. For instance,
the :ref:`irow <predefinedtypes>` type in the ``theano.tensor`` package
gives the following constraints on the data the Results of type ``irow``
may contain:
#. Must be an instance of ``numpy.ndarray``: ``isinstance(x, numpy.ndarray)``
#. Must be an array of 32-bit integers: ``str(x.dtype) == 'int32'``
#. Must have a shape of 1xN: ``len(x.shape) == 2 and x.shape[0] == 1``
Knowing these restrictions, Theano may generate C code for addition, etc.
that declares the right data types and that contains the right number
of loops over the dimensions.
Note that a Theano :ref:`type` is not equivalent to a Python type or
class. Indeed, in Theano, :ref:`irow <predefinedtypes>` and :ref:`dmatrix
<predefinedtypes>` both use ``numpy.ndarray`` as the underlying type
for doing computations and storing data, yet they are different Theano
Types. Indeed, the constraints set by ``dmatrix`` are:
#. Must be an instance of ``numpy.ndarray``: ``isinstance(x, numpy.ndarray)``
#. Must be an array of 64-bit floating point numbers: ``str(x.dtype) == 'float64'``
#. Must have a shape of MxN, no restriction on M or N: ``len(x.shape) == 2``
These restrictions are different from those of ``irow`` which are listed above.
There are cases in which a Type can fully correspond to a Python type,
such as the ``double`` Type we will define here which corresponds to
Python's ``float``. But, it's good to know that this is not necessarily
the case. Unless specified otherwise, when we say "Type" we mean a
Theano Type.
doc/advanced_tutorial/theano_vs_python.txt
浏览文件 @
c7ecdb3f
...
...
@@ -12,7 +12,7 @@ analogue in Python:
Theano Python
=============== ===========================================================
Apply function application / function call
Result function data
Result function data
/ variable
Op operations carried out in computation / function definition
Type data types
Module ??? class?
...
...
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