In this example tutorial, we will show you how to train a Pytorch RNN MNIST neural network model with Bacalhau. PyTorch is a framework developed by Facebook AI Research for deep learning, featuring both beginner-friendly debugging tools and a high level of customization for advanced users, with researchers and practitioners using it across companies like Facebook and Tesla. Applications include computer vision, natural language processing, cryptography, and more.
Running any type of Pytorch model with Bacalhau
To get started, you need to install the Bacalhau client, see more information here
To train our model locally, we will start by cloning the Pytorch examples repo
Install the following
Next, we run the command below to begin the training of the mnist_rnn model. We added the --save-model
flag to save the model
Next, the downloaded MNIST dataset is saved in the data
folder.
Now that we have downloaded our dataset, the next step is to upload it to IPFS. The simplest way to upload the data to IPFS is to use a third-party service to "pin" data to the IPFS network, to ensure that the data exists and is available. To do this you need an account with a pinning service like web3.storage or Pinata or NFT.Storage. Once registered you can use their UI or API or SDKs to upload files.
Once you have uploaded your data, you'll be finished copying the CID. Here is the dataset we have uploaded https://gateway.pinata.cloud/ipfs/QmdeQjz1HQQdT9wT2NHX86Le9X6X6ySGxp8dfRUKPtgziw/?filename=data
After the repo image has been pushed to Docker Hub, we can now use the container for running on Bacalhau. To submit a job, run the following Bacalhau command:
bacalhau docker run
: call to bacalhau
--gpu 1
: Request 1 GPU to train the model
pytorch/pytorch
: Using the official pytorch Docker image
-i ipfs://QmdeQjz1HQQd.....
: Mounting the uploaded dataset to the path
-i https://raw.githubusercontent.com/py..........
: Mounting our training script we will use the URL to this Pytorch example
-w /outputs:
Our working directory is /outputs. This is the folder where we will save the model as it will automatically get uploaded to IPFS as outputs
python ../inputs/main.py --save-model
: URL script gets mounted to the /inputs folder in the container.
When a job is submitted, Bacalhau prints out the related job_id
. We store that in an environment variable so that we can reuse it later on.
Job status: You can check the status of the job using bacalhau list
.
When it says Completed
, that means the job is done, and we can get the results.
Job information: You can find out more information about your job by using bacalhau describe
.
Job download: You can download your job results directly by using bacalhau get
. Alternatively, you can choose to create a directory to store your results. In the command below, we created a directory and downloaded our job output to be stored in that directory.
After the download has finished you should see the following contents in the results directory
To view the file, run the following command: