concurrent_programming.md.txt 7.3 KB
Newer Older
1 2 3 4 5 6 7 8 9 10 11 12 13 14
# Design Doc: Concurrent Programming with Fluid

With PaddlePaddle Fluid, users describe a program other than a model.  The program is a [`ProgramDesc`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/framework/framework.proto) protobuf message. TensorFlow/MxNet/Caffe2 applications generate protobuf messages too, but their protobuf messages represent the model, a graph of operators, but not the program that trains/uses the model.   

Many know that when we program TensorFlow, we can specify the device on which each operator runs.  This allows us to create a concurrent/parallel AI application.   An interesting questions is **how does a `ProgramDesc` represents a concurrent program?**  

The answer relies on the fact that a `ProgramDesc` is similar to an abstract syntax tree (AST) that describes a program.  So users just program a concurrent program that they do with any concurrent programming language, e.g., [Go](https://golang.org).

## An Analogy

The following table compares concepts in Fluid and Go

| Go | Fluid |
|----|-------|
15
|user-defined functions | [layers](https://github.com/PaddlePaddle/Paddle/tree/develop/python/paddle/fluid) |
16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163
| control-flow and built-in functions | [intrinsics/operators](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/operators) |
| goroutines, channels | [class ThreadPool](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/framework/thread_pool.h) |
| runtime | [class Executor](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/framework/executor.h) |

## An Example Concurrent Program

To review all above concepts in an example, let us take a simple program and writes its distributed version.

Suppose that we want to parallelize a naive Fluid program (written in Go and calling Fluid's Go binding) that multiplies two tensors.

```go
import "fluid"

func paddlepaddle() {
  X = fluid.read(...)
  W = fluid.Tensor(...)
  Y = fluid.mult(X, W)
}
```

Please be aware that the Fluid's Go binding provides the default `main` function, which calls the `paddlepaddle` function, which, in this case, is defined in above program and creates the following `ProgramDesc` message.

```protobuf
message ProgramDesc {
  block[0] = Block {
    vars = [X, W, Y],
    ops = [
      read(output = X)
      assign(input = ..., output = W)
      mult(input = {X, W}, output = Y)
    ],
  }
}
```

Then, the default `main` function calls `fluid.run()`, which creates an instance of the [`class Executor`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/framework/executor.h) and calls `Executor.Run(block[0])`, where `block[0]` is the first and only block defined in above `ProgramDesc` message.

The default `main` function is defined as follows:

```go
func main() {
  paddlepaddle()
  fluid.run()
}
```

## The Concurrent Version

By parallelizing the above program, we could support very big tensor X by splitting into small pieces {x_1, x_2, ...} and sent each piece to worker process/node for parallel multiplication.

In this case, we can write a transpiler that takes a `ProgramDesc` message that represents the above example program and outputs two `ProgramDesc` messages, one for running on the master process/node, and the other one for worker processes/nodes.

### The Master Program

The master program could look like the following:

```protobuf
message ProgramDesc {
  block[0] = Block {
    vars = [X, L, Y],
    ops = [
      read(output = X)
      kube_get_workers_addrs(output = L)
      Y = tensor_array(len(L))
      parallel_for(input = X, output = Y, 
                   attrs = {L, block_id(1)}) # referring to block 1
    ]
  }
  
  block[1] = Block {
    parent = 0,
    vars = [x, y, index],
    ops = [
      slice(input = [X, index], output = x) # index is initialized by parallel_for
      send(input = x, attrs = L[index])
      recv(outputs = y, attrs = L[index])
      assign(input = y, output = Y[index])
    ]
  }
}
```

The equivalent Fluid program (calling the Go binding) is:

```go
func main() {  //// block 0
  X = fluid.read(...)
  L = fluid.k8s.get_worker_addrs()
  Y = fluid.tensor_array(len(L))
  fluid.parallel_for(X, L, 
                     func(index int) {  //// block 1
                       x = X[index]
                       fluid.send(L[index], x)
                       y = fluid.recv(L[index])
                       Y[index] = y
                     })
}
```

An explanation of the above program:

- `fluid.k8s` is a package that provides access to Kubernetes API.  
- `fluid.k8s.get_worker_addrs` returns the list of IP and ports of all pods of the current job except for the current one (the master pod).  
- `fluid.tensor_array` creates a [tensor array](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/framework/lod_tensor_array.h).  `fluid.parallel_for` creates a `ParallelFor` intrinsic, which, when executed, 

  1. creates `len(L)` scopes, each for the concurrent running of the sub-block (block 1 in this case), and initializes a variable named "index" in the scope to an integer value in the range `[0, len(L)-1]`, and
  2. creates `len(L)` threads by calling into the `ThreadPool` singleton, each thread  
     1. creates an Executor instance, and
     2. calls `Executor.Run(block)`, where `block` is block 1 as explained above.
1. Please be aware that block 1 is a sub-block of block 0, so ops in block 1 could refer to variables defined in block 0.

### The Worker Program

The worker program looks like

```go
func main() {
  W = Tensor(...)
  x = fluid.listen_and_do(
        fluid.k8s.self_addr(),
        func(input Tensor) {
          output = fluid.mult(input, W)
        })
}
```

where

- `fluid.listen_and_do` creates a `ListenAndDo` intrinsic, which, when executed,
  1. listens on the current pod's IP address, as returned by `fliud.k8s.self_addr()`,
  2. once a connection is established,
     1. creates a scope of two parameters, "input" and "output",
     2. reads a [Fluid variable](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/framework/variable.h) and saves it into "input",
     3. creates an Executor instance and calls `Executor.Run(block)`, where the block is generated by running the lambda specified as the second parameter of `fluid.listen_and_do`.

## Summarization

From the above example, we see that:

1. Fluid enables the imperative programming paradigm by:
   1. letting users describe a program, but not a model (a sequence of layers, or a graph of operators), and
   2. call the `fluid.run` function that runs the program implicitly.
1. The program is described as a `ProgramDesc` protobuf message.
2. Function `Executor.Run` takes a block, instead of a `ProgramDesc`, as its parameter.
3. `fluid.run` calls `Executor.Run` to run the first block in the `ProgramDesc` message.
4. `Executor.Run`'s implementation is extremely simple -- it doesn't plan the execution nor create threads; instead, it runs on the current thread and execute intrinsics/operators' `Run` method sequentially as they appear in the `Block.ops` array.
5. Intrinsics/operators' `Run` method might create threads.  For example, the `ListenAndDo` operator creates a thread to handle each incoming request.
6. Threads are not necessarily OS thread; instead, they could be [green threads](https://en.wikipedia.org/wiki/Green_threads) managed by ThreadPool.  Multiple green threads might run on the same OS thread.  An example green threads is Go's [goroutines](https://tour.golang.org/concurrency/1).