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pytensor
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560c8ce0
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560c8ce0
authored
5月 21, 2015
作者:
--global
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scan.txt
doc/library/scan.txt
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doc/library/scan.txt
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560c8ce0
...
@@ -53,7 +53,7 @@ The equivalent Theano code would be:
...
@@ -53,7 +53,7 @@ The equivalent Theano code would be:
# compiled function that returns A**k
# compiled function that returns A**k
power = theano.function(inputs=[A,k], outputs=final_result, updates=updates)
power = theano.function(inputs=[A,k], outputs=final_result, updates=updates)
print power(range(10),2)
print power(range(10),2)
print power(range(10),4)
print power(range(10),4)
...
@@ -110,7 +110,7 @@ from a list of its coefficients:
...
@@ -110,7 +110,7 @@ from a list of its coefficients:
test_coefficients = numpy.asarray([1, 0, 2], dtype=numpy.float32)
test_coefficients = numpy.asarray([1, 0, 2], dtype=numpy.float32)
test_value = 3
test_value = 3
print calculate_polynomial(test_coefficients, test_value)
print calculate_polynomial(test_coefficients, test_value)
print 1.0 * (3 ** 0) + 0.0 * (3 ** 1) + 2.0 * (3 ** 2)
print 1.0 * (3 ** 0) + 0.0 * (3 ** 1) + 2.0 * (3 ** 2)
There are a few things to note here.
There are a few things to note here.
...
@@ -137,10 +137,10 @@ Simple accumulation into a scalar, ditching lambda
...
@@ -137,10 +137,10 @@ Simple accumulation into a scalar, ditching lambda
--------------------------------------------------
--------------------------------------------------
Although this example would seem almost self-explanatory, it stresses a
Although this example would seem almost self-explanatory, it stresses a
pitfall to be careful of: the initial output state that is supplied, that is
pitfall to be careful of: the initial output state that is supplied, that is
``outputs_info``, must be of a **shape similar to that of the output variable**
``outputs_info``, must be of a **shape similar to that of the output variable**
generated at each iteration and moreover, it **must not involve an implicit
generated at each iteration and moreover, it **must not involve an implicit
downcast** of the latter.
downcast** of the latter.
.. code-block:: python
.. code-block:: python
...
@@ -284,7 +284,7 @@ function applied at each step) you do not need to pass them as arguments.
...
@@ -284,7 +284,7 @@ function applied at each step) you do not need to pass them as arguments.
Scan will find them on its own and add them to the graph.
Scan will find them on its own and add them to the graph.
However, passing them to the scan function is a good practice, as it avoids
However, passing them to the scan function is a good practice, as it avoids
Scan Op calling any earlier (external) Op over and over. This results in a
Scan Op calling any earlier (external) Op over and over. This results in a
simpler computational graph, which speeds up the optimization and the
simpler computational graph, which speeds up the optimization and the
execution. To pass the shared variables to Scan you need to put them in a list
execution. To pass the shared variables to Scan you need to put them in a list
and give it to the ``non_sequences`` argument. Here is the Gibbs sampling code
and give it to the ``non_sequences`` argument. Here is the Gibbs sampling code
updated:
updated:
...
@@ -298,7 +298,7 @@ updated:
...
@@ -298,7 +298,7 @@ updated:
bhid = theano.shared(bhid_values)
bhid = theano.shared(bhid_values)
trng = T.shared_randomstreams.RandomStreams(1234)
trng = T.shared_randomstreams.RandomStreams(1234)
# OneStep, with explicit use of the shared variables (W, bvis, bhid)
# OneStep, with explicit use of the shared variables (W, bvis, bhid)
def OneStep(vsample, W, bvis, bhid):
def OneStep(vsample, W, bvis, bhid):
hmean = T.nnet.sigmoid(theano.dot(vsample, W) + bhid)
hmean = T.nnet.sigmoid(theano.dot(vsample, W) + bhid)
...
@@ -308,7 +308,7 @@ updated:
...
@@ -308,7 +308,7 @@ updated:
dtype=theano.config.floatX)
dtype=theano.config.floatX)
sample = theano.tensor.vector()
sample = theano.tensor.vector()
# The new scan, with the shared variables passed as non_sequences
# The new scan, with the shared variables passed as non_sequences
values, updates = theano.scan(fn=OneStep,
values, updates = theano.scan(fn=OneStep,
outputs_info=sample,
outputs_info=sample,
...
@@ -425,11 +425,11 @@ will start scaning from ``uvals[4]`` towards the end.
...
@@ -425,11 +425,11 @@ will start scaning from ``uvals[4]`` towards the end.
Conditional ending of Scan
Conditional ending of Scan
--------------------------
--------------------------
Scan can also be used as a ``repeat-until`` block. In such a case scan
Scan can also be used as a ``repeat-until`` block. In such a case scan
will stop when either the maximal number of iteration is reached, or the
will stop when either the maximal number of iteration is reached, or the
provided condition evaluates to True.
provided condition evaluates to True.
For an example, we will compute all powers of two smaller then some provided
For an example, we will compute all powers of two smaller then some provided
value ``max_value``.
value ``max_value``.
.. code-block:: python
.. code-block:: python
...
...
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