Welcome to the official Python library for RunPod API & SDK.
- Table of Contents
- π» | Installation
- β‘ | Serverless Worker (SDK)
- π | API Language Library (GraphQL Wrapper)
- π | Directory
- π€ | Community and Contributing
# Install the latest release version
pip install runpod
# or
# Install the latest development version (main branch)
pip install git+https://github.com/runpod/runpod-python.git
Python 3.8 or higher is required to use the latest version of this package.
This python package can also be used to create a serverless worker that can be deployed to RunPod as a custom endpoint API.
Create a python script in your project that contains your model definition and the RunPod worker start code. Run this python code as your default container start command:
# my_worker.py
import runpod
def is_even(job):
job_input = job["input"]
the_number = job_input["number"]
if not isinstance(the_number, int):
return {"error": "Silly human, you need to pass an integer."}
if the_number % 2 == 0:
return True
return False
runpod.serverless.start({"handler": is_even})
Make sure that this file is ran when your container starts. This can be accomplished by calling it in the docker command when you set up a template at runpod.io/console/serverless/user/templates or by setting it as the default command in your Dockerfile.
See our blog post for creating a basic Serverless API, or view the details docs for more information.
You can also test your worker locally before deploying it to RunPod. This is useful for debugging and testing.
python my_worker.py --rp_serve_api
When interacting with the RunPod API you can use this library to make requests to the API.
import runpod
runpod.api_key = "your_runpod_api_key_found_under_settings"
You can interact with RunPod endpoints via a run
or run_sync
method.
endpoint = runpod.Endpoint("ENDPOINT_ID")
run_request = endpoint.run(
{"your_model_input_key": "your_model_input_value"}
)
# Check the status of the endpoint run request
print(run_request.status())
# Get the output of the endpoint run request, blocking until the endpoint run is complete.
print(run_request.output())
endpoint = runpod.Endpoint("ENDPOINT_ID")
run_request = endpoint.run_sync(
{"your_model_input_key": "your_model_input_value"}
)
# Returns the job results if completed within 90 seconds, otherwise, returns the job status.
print(run_request )
import runpod
runpod.api_key = "your_runpod_api_key_found_under_settings"
# Get all my pods
pods = runpod.get_pods()
# Get a specific pod
pod = runpod.get_pod(pod.id)
# Create a pod
pod = runpod.create_pod("test", "runpod/stack", "NVIDIA GeForce RTX 3070")
# Stop the pod
runpod.stop_pod(pod.id)
# Resume the pod
runpod.resume_pod(pod.id)
# Terminate the pod
runpod.terminate_pod(pod.id)
.
βββ docs # Documentation
βββ examples # Examples
βββ runpod # Package source code
β βββ api_wrapper # Language library - API (GraphQL)
β βββ cli # Command Line Interface Functions
β βββ endpoint # Language library - Endpoints
β βββ serverless # SDK - Serverless Worker
βββ tests # Package tests
We welcome both pull requests and issues on GitHub. Bug fixes and new features are encouraged, but please read our contributing guide first.