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2487951b
编写于
7月 16, 2018
作者:
X
Xin Pan
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## Motivation
There is a
```gap```
between the
```Program```
defined by
user and the
```Executable```
that can be scheduled
efficiently on heterogeneous hardware, either locally
or distributedly.
Usually, the
```gap```
is bridged by
*
A serious transformations with defined order.
*
The transformations usually invovle
```
insert, delete, clustering, split, dependency analysis```.
* Has a simple way to verify and debug each transformation.
* Flexible to add, remove or customize transformations to fit
the requirements of various algorithms (models) and hardware secenarios.
Some other events also push us to a better unified pattern.
* The deep learning framework is built around the concepts of graphs.
To leverage tools such as compilation (e.g. TVM and nGraph) or
cross-framework conversion (e.g. ONNX), we also need a intermediate
representation that can be connected to the rest of the ecosystem.
We need a unified pattern to naturally support the requirements
described above. The pattern should fit both training, inference
and other offline serielized model transformations.
Learned from LLVM and other deep learning framework, we draft the
design below.
## Design
### Major Concepts
#### Node
```
Node
``` represents an operation that performs some computation or
a variable that is input or output of operation.
```
Node
```s are connected to other ```
Node
```s via inputs and outputs.
#### Graph
```
Graph
``` contains a list of ```
Node
```s.
TODO: Better definitions for the graph.
```
Graph
``` can also contain ```
Attribute
```s. ```
Attribute
```s
can be ``any`` thing. For example, it can be a list of "wraper"
nodes. The ```
wrapper
``` nodes compose ```
Node
```s and provide
helper method for execution. ```
Attribute
``` can also contain
other things that describe some properties of the ```
Graph
```.
#### Pass
```
Pass
``` represents a transformation of ```
Graph
```. Its input
is a ```
Graph
``` and its output is also a ```
Graph
```. For example,
a ```
Pass
``` can simply print out the ```
Graph
```. A ```
Pass
```
can also fuse some ```
Graph
```'s ```
Node
```s.
#### Optimize
```
Optimize
``` contains a series of ```
Pass
``` with defined order.
```
Optimize
``` transforms a ```
Graph
``` that only contains raw
modeling logic to a ```
Graph
```
that can be run efficiently while
maintaining the original modeling logic.
### Workflow
*
Program is first converted to Graph.
*
Graph goes through a series of Pass
*
Graph is transformed from raw model logic to a
form that is efficient to execute.
Graph->Pass1->Graph->Pass2->Graph->Pass3->Executor
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