PaddlePaddle Fluid is targeting the autodiff without tape, which, however, is very challenging and we are still way from there. DyNet and PyTorch provide a good design idea, the *tape*, that significantly eases the challenge. Also, DyNet provides a C++ API that is as convenient as Python but with higher efficiency and could conveniently integrate with industrial/production systems. This package, `tape`, combines the good of
PaddlePaddle Fluid is targeting the autodiff without tape, which, however, is very
challenging and we are still way from there. DyNet and PyTorch provide a good design
idea, the *tape*, that significantly eases the challenge. Also, DyNet provides
a C++ API that is as convenient as Python but with higher efficiency and could
conveniently integrate with industrial/production systems. This package, `tape`,
combines the good of
1. tape from PyTorch and DyNet
2. C++ API and core from DyNet
...
...
@@ -8,8 +13,8 @@ PaddlePaddle Fluid is targeting the autodiff without tape, which, however, is ve
## Overview
We can implement Dynet-like Tape(See this survey) by wrapping Paddle Fluid's `Operator`
and `Variable`.
We can implement Dynet-like Tape(See this [survey](https://github.com/PaddlePaddle/Paddle/blob/develop/doc/survey/dynamic_graph.md))
by wrapping Paddle Fluid's `Operator`and `Variable`.