User code executors for Backend.AI kernels
Project description
A common base runner for various programming languages.
It manages an internal task queue so that multiple command/code execution requests are processed in the FIFO order, without garbling the console output.
How to write a new computation kernel
Inherit ai.backend.kernel.BaseRunner and implement the following methods:
async def init_with_loop(self)
Called after the asyncio event loop becomes available.
Mostly just pass.
If your kernel supports interactive user input, then put set self.user_input_queue as an asyncio.Queue object. It’s your job to utilize the queue object for waiting for the user input. (See handle_input() method in ai/backend/kernel/python/inproc.py for reference) If it’s not set, then any attempts for getting interactive user input will simply return "<user-input is unsupported>".
async def build_heuristic(self)
(Batch mode) Write a heuristic code to find some build script or run a good-enough build command for your language/runtime.
(Blocking) You don’t have to worry about overlapped execution since the base runner will take care of it.
async def execute_heuristic(self)
(Batch mode) Write a heuristic code to find the main program.
(Blocking) You don’t have to worry about overlapped execution since the base runner will take care of it.
async def query(self, code_text)
(Query mode) Directly run the given code snippet. Depending on the language/runtime, you may need to create a temporary file and execute an external program.
(Blocking) You don’t have to worry about overlapped execution since the base runner will take care of it.
async def complete(self, data)
(Query mode) Take a dict data that includes the current line of code where the user is typing and return a list of strings that can auto-complete it.
(Non-blocking) You should implement this method to run asynchronously with ongoing code execution.
async def interrupt(self)
(Query mode) Send an interruption signal to the running program. The implementation is up to you. The Python runner currently spawns a thread for in-process query-mode execution and use a ctypes hack to throw KeyboardInterrupt exception into it.
(Non-blocking) You should implement this method to run asynchronously with ongoing code execution.
NOTE: Existing codes are good referecnes!
How to use in your Backend.AI computation kernels
Install this package using pip via a RUN instruction in Dockerfile. Then, set the CMD instruction like below:
CMD ["/home/sorna/jail", "-policy", "/home/sorna/policy.yml", \
"/usr/local/bin/python", "-m", "ai.backend.kernel", "<language>"]
where <language> should be one of the supported language names defined in lang_map variable in ai/backend/kernel/__main__.py file.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for backend.ai-kernel-runner-1.1.0.tar.gz
Algorithm | Hash digest | |
---|---|---|
SHA256 | 10c3c4512d0abe19ff504115f77f65a1e35388bf8edfc3a4d76151411fe98b9a |
|
MD5 | e063c32884cb57cb0091c85265021d3c |
|
BLAKE2b-256 | f712dc08b2c47d9490eaabc2b8f5ac96616d5924fe56d791614338a169efc27a |
Hashes for backend.ai_kernel_runner-1.1.0-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 1a64c322d2e0fa3c351d34fb3d02c58414a0083244e2dd1b8faee9b4783cb862 |
|
MD5 | a7b717d23c88ba6b48a6bb0986cc6752 |
|
BLAKE2b-256 | feb4a07000b69a1f01504fc84dbaf485e6616a9f1b2af35b33ee4a15e8d2b1c0 |