# Modal Modal is a serverless GPU provider. By leveraging Modal, your Tabby instance will run on demand. When there are no requests to the Tabby server for a certain amount of time, Modal will schedule the container to sleep, thereby saving GPU costs. ## Setup First we import the components we need from `modal`. ```python from modal import Image, Mount, Secret, Stub, asgi_app, gpu, method ``` Next, we set the base docker image version, which model to serve, taking care to specify the GPU configuration required to fit the model into VRAM. ```python MODEL_ID = "TabbyML/StarCoder-1B" GPU_CONFIG = gpu.T4() ``` ## Define the container image We want to create a Modal image which has the Tabby model cache pre-populated. The benefit of this is that the container no longer has to re-download the model - instead, it will take advantage of Modal’s internal filesystem for faster cold starts. ### Download the weights ```python def download_model(): import subprocess subprocess.run( [ "/opt/tabby/bin/tabby", "download", "--model", MODEL_ID, ] ) ``` ### Image definition We’ll start from a image by tabby, and override the default ENTRYPOINT for Modal to run its own which enables seamless serverless deployments. Next we run the download step to pre-populate the image with our model weights. Finally, we install the `asgi-proxy-lib` to interface with modal's asgi webserver over localhost. ```python image = ( Image.from_registry( "tabbyml/tabby:0.3.1", add_python="3.11", ) .dockerfile_commands("ENTRYPOINT []") .run_function(download_model) .pip_install("asgi-proxy-lib") ) ``` ### The app function The endpoint function is represented with Modal's `@stub.function`. Here, we: 1. Launch the Tabby process and wait for it to be ready to accept requests. 2. Create an ASGI proxy to tunnel requests from the Modal web endpoint to the local Tabby server. 3. Specify that each container is allowed to handle up to 10 requests simultaneously. 4. Keep idle containers for 2 minutes before spinning them down. ```python @stub.function( gpu=GPU_CONFIG, allow_concurrent_inputs=10, container_idle_timeout=120, timeout=360, ) @asgi_app() def app(): import socket import subprocess import time from asgi_proxy import asgi_proxy launcher = subprocess.Popen( [ "/opt/tabby/bin/tabby", "serve", "--model", MODEL_ID, "--port", "8000", "--device", "cuda", ] ) # Poll until webserver at 127.0.0.1:8000 accepts connections before running inputs. def tabby_ready(): try: socket.create_connection(("127.0.0.1", 8000), timeout=1).close() return True except (socket.timeout, ConnectionRefusedError): # Check if launcher webserving process has exited. # If so, a connection can never be made. retcode = launcher.poll() if retcode is not None: raise RuntimeError(f"launcher exited unexpectedly with code {retcode}") return False while not tabby_ready(): time.sleep(1.0) print("Tabby server ready!") return asgi_proxy("http://localhost:8000") ``` ### Serve the app Once we deploy this model with `modal serve app.py`, it will output the url of the web endpoint, in a form of `https://--tabby-server-starcoder-1b-app-dev.modal.run`, it can be used as tabby server url in tabby editor extensions! See [app.py](https://github.com/TabbyML/tabby/blob/main/website/docs/installation/modal/app.py) for a complete example.