提交 f5bad301 authored 作者: Razvan Pascanu's avatar Razvan Pascanu

typos reported by Ivo Danihelka

上级 93ffd843
......@@ -98,7 +98,7 @@ package, so what does Theano do that Python and numpy do not?
parts your expression graph into CPU or GPU instructions, which run
much faster than pure Python.
- *symbolic differentiation*: Theano can automatic build symbolic graphs
- *symbolic differentiation*: Theano can automatically build symbolic graphs
for computing gradients.
- *stability optimizations*: Theano can recognize [some] numerically unstable
......
......@@ -45,7 +45,7 @@ How do I print a graph (before or after compilation)?
----------------------------------------------------------
Theano provides two functions (:func:`theano.pp` and
:func:`theano.debugprint`) to print a graph to the terminal before or after
:func:`theano.printing.debugprint`) to print a graph to the terminal before or after
compilation. These two functions print expression graphs in different ways:
:func:`pp` is more compact and math-like, :func:`debugprint` is more verbose.
Theano also provides :func:`pydotprint` that creates a png image of the function.
......
......@@ -223,7 +223,7 @@ internal state, and returns the old state value.
>>> accumulator = function([inc], state, updates=[(state, state+inc)])
This code introduces a few new concepts. The ``shared`` function constructs
so-called :term:shared variables:. These are hybrid symbolic and non-symbolic
so-called :term:`shared variables`. These are hybrid symbolic and non-symbolic
variables. Shared variables can be used in symbolic expressions just like
the objects returned by ``dmatrices(...)`` but they also have a ``.value``
property that defines the value taken by this symbolic variable in *all* the
......
......@@ -48,7 +48,7 @@ expressions or new optimizations) to run your code using the DebugMode
do several self-checks and assertations that can help to diagnose
possible programming errors that can lead to incorect output. Note that
``DEBUG_MODE`` is much slower then ``FAST_RUN`` or ``FAST_COMPILE`` so
use it only during development (not when you luch 1000 process on a
use it only during development (not when you lunch 1000 process on a
cluster!).
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......@@ -21,7 +21,7 @@ Matrix conventions for machine learning
Rows are horizontal and columns are vertical.
Every row is an example. Therefore, inputs[10,5] is a matrix of 10 examples
where each example has dimension 5. If this would be the input of a
neural network then the weights from the input the the first hidden
neural network then the weights from the input to the first hidden
layer would represent a matrix of size (5, #hid).
If I have an array:
......
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