# Design Doc: Asynchronous Update With Distributed Training
## Background
For the typical synchronous distributed training, some significant steps are as follows:
1. A Trainer will compute the gradients and SEND them to the Parameter
Server(PServer) nodes.
1. After the PServer node received gradients came from all the Trainers, it would apply the gradient to the respective variables, and using an optimize algorithms(SGD,
Momentment...) to update the parameters.
1. The Trainer would wait for the PServers finished the optimize stage, and GET the parameters from PServer, so all the Trainers would get the same parameters.
In the synchronously distributed training, there should be a `Barrier` to synchronise the
parameters after the optimizing stage. The performance of a distributed training job
depends on the lowest node, if there were hundreds or thousand training nodes in a Job,
the performance of synchronously distributed training might be very slow because of
the slow node. So this design doc would introduce an approach to implement
*asynchronously* distributed training in PaddlePaddle Fluid.
## Design
As the figure above, we describe a global view of asynchronously update process and use
the parameter `w1` as an example to introduce the steps:
1. For each gradient variables, they may distribute on different GPU card and aggregate
them while they are all calculated.
1. Split the gradient variable into multiple blocks according to the number of PServer
instances and sent them.
1. PServer would run an `Optimize Block` to use a specified optimize algorithm to update
the specified parameter, such as `w1`.
1. The trainer will fetch the latest parameter after PServer finished the optimize stage.
1. Broadcast the received variable into multiple GPU cards and continue to run the next
mini-batch.
### Trainer
- We need a new Operator named `RemoteOptimize` to send gradients to multiple PServer
instances and fetch the latest parameter.
- There could be a large number of gradient variables to be sent, so we need to use another
thread pool(IO Threadpool) which number of the schedulable threads is larger than the
computing thread pool to avoid competitive the thread resources with computing.
### Parameter Server
- There should be multiple trainer instances want to optimize the same parameter at
the same time, to avoid the pollution, we need one `BlockingQueue` for each gradient
variable to process them one by one.
- We need a `Map` structure to map a gradient variable name to the `OptimizeBlock` which
can optimize the respective parameter.