tensor-safe
is a dependently typed framework to define deep learning models whose structure is verified at
compilation time. If the models are valid, these can be compiled to external frameworks, such as Keras framework in Python or JavaScript.
-
Install
tensor-safe
executable withcabal new-install
cabal new-install tensor-safe
-
Install
tensor-safe
librarycabal new-install tensor-safe --lib
-
Install
ghc-mod
,hpack
andstylish-haskell
withstack install
cd ~ stack install ghc-mod hpack stylish-haskell
-
Run
stack build
in project folder -
Install
Intero
Run
stack build intero
in the project folderRef:https://gitlab /vannnns/haskero/blob/master/client/doc/installation.md
Runhpack
in the root of the project and the filetensor-safe.cabal
will be generated
Models can be defined as a type using theMkINetwork
type function. TheMkINetwork
defines a
valid instance of a Network model given a list ofLayers
and a spected input and iutputShapes
.
Here's an example of how to define a simple model for theMNIST
dataset, usingDense
layers:
typeMNIST=MkINetwork
'[
Flatten,
Dense78442,
Relu,
Dense4210,
Sigmoid
]
('D328281)--Input
('D110)--Output
After that, variable with the model type can be verified with the functionmkINetwork
like this:
mnist::MNIST
mnist=mkINetwork
You can nest networks definitions easily by adding the networks as layers. For example, in the case of theMNIST
model defined above, we can abstract the use of Dense and a activation function like this:
typeDenseReluio=
MkINetwork'[Denseio,Relu] ('D1i) ('D1o)
typeDenseSigmoidio=
MkINetwork'[Denseio,Sigmoid] ('D1i) ('D1o)
typeMNIST=MkINetwork
'[
Flatten,
DenseRelu78442,
DenseSigmoid4210
]
('D328281)--Input
('D110)--Output
Since this library only implements a subset of features that Keras implement, it's likely that for new projects you'll need to add new layers. Due to the modularization of the library, this can be done by adding the layer definitions in specific locations of the project:
- First, add a new auxiliary layer entry for the data type
DLayer
inTensorSafe.Compile.Expr
. This will make possible the compilation of the layer for all instances ofGenerator
.Also, add to theLayerGenerator
entry for the newly added layer. - Secondly, add the layer definition to the
TensorSafe/Layers
folder. You can copy the definitions from the currently defined layers. - Then, import and expose your layer definition in the
TensorSafe.Layers
module. - Finally, declare how your layer transforms a specific Shape in the
Out
type function.
This interface will change in the near future
You can installtensor-safe
command line tool by runningstack build
.Then you can use it by usingstack exec tensor-safe -- check --path./path-to-model.hs
orstack exec tensor-safe -- compile --path./path-to-model.hs --module-name SomeModule
.
Add as development dependency the packagesbabel-plugin-tensor-safe
andeslint-plugin-tensor-safe
.These can be found in theextra/javascript
folder in this project.
You can add them directly from this project like this:
yarn add --dev file/:<path-to-tensor-safe>/extra/javascript/babel-plugin-tensor-safe
yarn add --dev file/:<path-to-tensor-safe>/extra/javascript/eslint-plugin-tensor-safe
Then add to the.eslintrc.js
file in your JavaScript project the plugintensor-safe
and the ruletensor-safe-model-invalid
like this:
module.exports={
plugins:[
...
"tensor-safe"
],
...
rules:{
...
"tensor-safe/invalid-model":1
...
}
};
And for the Babel plugin add"@babel/plugin-tensor-safe"
to the plugins list in the.babelrc
file inside your JavaScript project.
Then, you can write your deep learning model inside your JS files as in the following example:
functioncreateConvModel(){
safeModel`
'[
Conv2D 1 16 3 3 1 1,
Relu,
MaxPooling 2 2 2 2,
Conv2D 16 32 3 3 1 1,
Relu,
MaxPooling 2 2 2 2,
Conv2D 32 32 3 3 1 1,
Relu,
Flatten,
Dense 288 64,
Sigmoid,
Dense 64 10,
Sigmoid
]
('D3 28 28 1) -- Input
('D1 10) -- Output
`;
returnmodel;
}
This project was highly influenced byGrenade💣. Grenade is a cool library to define deep neural networks which are validated using dependent types. What differences TensorSafe from Grenade the most is that TensorSafe doesn't run nor train the models, instead, it compiles the model to external languages that are capable of performing all computations – like Keras for Python or JavaScript. Also, TensorSafe doesn't need to specifically declare all Shapes transformations for all the model layers, instead, it just needs the input and output Shapes to validate the model.
Another worth looking library isTensorFlow for Haskell. This library has all bindings for TensorFlow in C. The issue with this is that it doesn't perform a lot of type checkings at compilation time. However, there's an open branch that uses dependent types to solve many of these issues:https://github /helq/tensorflow-haskell-deptyped,but the solution still seems rather complicated for real use.