renat-abbyazov / demo-bert

This is a BERT large language model starter template from Banana.dev that allows on-demand serverless GPU inference.

Home Page:https://www.banana.dev

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Banana.dev BERT LLM starter template

This is a BERT large language model starter template from Banana.dev that allows on-demand serverless GPU inference.

You can fork this repository and deploy it on Banana as is, or customize it based on your own needs.

Running this app

Deploying on Banana.dev

  1. Fork this repository to your own Github account.
  2. Connect your Github account on Banana.
  3. Create a new model on Banana from the forked Github repository.

Running after deploying

  1. Wait for the model to build after creating it.
  2. Make an API request to it using one of the provided snippets in your Banana dashboard.

For more info, check out the Banana.dev docs.

Testing locally

Using Docker

Build the model as a Docker image. You can change the banana-bert part to anything.

docker build -t banana-bert .

Run the Potassium server

docker run --publish 8000:8000 -it banana-bert

In another terminal, run inference after the above is built and running.

curl -X POST -H 'Content-Type: application/json' -d '{"prompt": "Software developers start with a \"Hello, [MASK]!\" script."}' http://localhost:8000

Without Docker

You could also install and run it without Docker.

Just make sure that the pip dependencies in the Docker file (and torch) are installed in your Python virtual environment.

Run the Potassium app in one terminal window.

python3 app.py

Call the model in another terminal window with the Potassium app still running from the previous step.

curl -X POST -H 'Content-Type: application/json' -d '{"prompt": "Software developers start with a \"Hello, [MASK]!\" script."}' http://localhost:8000

About

This is a BERT large language model starter template from Banana.dev that allows on-demand serverless GPU inference.

https://www.banana.dev


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Language:Python 72.4%Language:Dockerfile 27.6%