Skip to content

The goal of this library is to generate more helpful exception messages for matrix algebra expressions for numpy, pytorch, jax, tensorflow, keras, fastai.

License

Notifications You must be signed in to change notification settings

parrt/tensor-sensor

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Tensor Sensor

See article Clarifying exceptions and visualizing tensor operations in deep learning code and TensorSensor implementation slides (PDF).

(As of September 2021, M1 macs experience illegal instructions in many of the tensor libraries installed via Anaconda, so you should expect TensorSensor to work only on Intel-based Macs at the moment. PyTorch appears to work.)

One of the biggest challenges when writing code to implement deep learning networks, particularly for us newbies, is getting all of the tensor (matrix and vector) dimensions to line up properly. It's really easy to lose track of tensor dimensionality in complicated expressions involving multiple tensors and tensor operations. Even when just feeding data into predefined Tensorflow network layers, we still need to get the dimensions right. When you ask for improper computations, you're going to run into some less than helpful exception messages.

To help myself and other programmers debug tensor code, I built this library. TensorSensor clarifies exceptions by augmenting messages and visualizing Python code to indicate the shape of tensor variables (see figure to the right for a teaser). It works with Tensorflow, PyTorch, JAX, and Numpy, as well as higher-level libraries like Keras and fastai.

TensorSensor is currently at 1.0 (December 2021).

Visualizations

For more, see examples.ipynb at colab. (The github rendering does not show images for some reason: examples.ipynb.)

import numpy as np

n = 200         # number of instances
d = 764         # number of instance features
n_neurons = 100 # how many neurons in this layer?

W = np.random.rand(d,n_neurons)
b = np.random.rand(n_neurons,1)
X = np.random.rand(n,d)
with tsensor.clarify() as c:
    Y = W @ X.T + b

Displays this in a jupyter notebook or separate window:

Instead of the following default exception message:

ValueError: matmul: Input operand 1 has a mismatch in its core dimension 0, with gufunc signature (n?,k),(k,m?)->(n?,m?) (size 764 is different from 100)

TensorSensor augments the message with more information about which operator caused the problem and includes the shape of the operands:

Cause: @ on tensor operand W w/shape (764, 100) and operand X.T w/shape (764, 200)

You can also get the full computation graph for an expression that includes all of the sub-expression shapes.

W = torch.rand(size=(2000,2000), dtype=torch.float64)
b = torch.rand(size=(2000,1), dtype=torch.float64)
h = torch.zeros(size=(1_000_000,), dtype=int)
x = torch.rand(size=(2000,1))
z = torch.rand(size=(2000,1), dtype=torch.complex64)

tsensor.astviz("b = W@b + (h+3).dot(h) + z", sys._getframe())

yields the following abstract syntax tree with shapes:

Install

pip install tensor-sensor             # This will only install the library for you
pip install tensor-sensor[torch]      # install pytorch related dependency
pip install tensor-sensor[tensorflow] # install tensorflow related dependency
pip install tensor-sensor[jax]        # install jax, jaxlib
pip install tensor-sensor[all]        # install tensorflow, pytorch, jax

which gives you module tsensor. I developed and tested with the following versions

$ pip list | grep -i flow
tensorflow                         2.5.0
tensorflow-estimator               2.5.0
$ pip list | grep -i numpy
numpy                              1.19.5
numpydoc                           1.1.0
$ pip list | grep -i torch
torch                              1.10.0
torchvision                        0.10.0
$ pip list | grep -i jax
jax                                0.2.20
jaxlib                             0.1.71

Graphviz for tsensor.astviz()

For displaying abstract syntax trees (ASTs) with tsensor.astviz(...), you need the dot executable from graphviz, not just the python library.

On Mac, do this before or after tensor-sensor install:

brew install graphviz

On Windows, apparently you need

conda install python-graphviz  # Do this first; get's dot executable and py lib
pip install tensor-sensor      # Or one of the other installs

Limitations

I rely on parsing lines that are assignments or expressions only so the clarify and explain routines do not handle methods expressed like:

def bar(): b + x * 3

Instead, use

def bar():
	b + x * 3

watch out for side effects! I don't do assignments, but any functions you call with side effects will be done while I reevaluate statements.

Can't handle \ continuations.

With Python threading package, don't use multiple threads calling clarify(). multiprocessing package should be fine.

Also note: I've built my own parser to handle just the assignments / expressions tsensor can handle.

Deploy (parrt's use)

$ python setup.py sdist upload 

Or download and install locally

$ cd ~/github/tensor-sensor
$ pip install .

TODO

  • can i call pyviz in debugger?