A lightweight http client library for communicating with Nvidia Triton Inference Server (with Pyodide support in the browser)
Project description
Triton HTTP Client for Pyodide
A Pyodide python http client library and utilities for communicating with Triton Inference Server (based on tritonclient from NVIDIA).
This is a simplified implemetation of the triton client from NVIDIA, it works both in the browser with Pyodide Python or the native Python. It only implement the http client, and most of the API remains the similar but changed into async and with additional utility functions.
Installation
To use it in native CPython, you can install the package by running:
pip install pyotritonclient
For Pyodide-based Python environment, for example: JupyterLite or Pyodide console, you can install the client by running the following python code:
import micropip
micropip.install("pyotritonclient")
Usage
Basic example
To execute the model, we provide utility functions to make it much easier:
import numpy as np
from pyotritonclient import execute
# create fake input tensors
input0 = np.zeros([2, 349, 467], dtype='float32')
# run inference
results = await execute(inputs=[input0, {"diameter": 30}], server_url='https://ai.imjoy.io/triton', model_name='cellpose-python')
The above example assumes you are running the code in a jupyter notebook or an environment supports top-level await, if you are trying the example code in a normal python script, please wrap the code into an async function and run with asyncio as follows:
import asyncio
import numpy as np
from pyotritonclient import execute
async def run():
results = await execute(inputs=[np.zeros([2, 349, 467], dtype='float32'), {"diameter": 30}], server_url='https://ai.imjoy.io/triton', model_name='cellpose-python')
print(results)
loop = asyncio.get_event_loop()
loop.run_until_complete(run())
You can access the lower level api, see the test example.
You can also find the official client examples demonstrate how to use the
package to issue request to triton inference server. However, please notice that you will need to
change the http client code into async style. For example, instead of doing client.infer(...)
, you need to do await client.infer(...)
.
The http client code is forked from triton client git repo since commit b3005f9db154247a4c792633e54f25f35ccadff0.
Using the sequence executor with stateful models
To simplify the manipulation on stateful models with sequence, we also provide the SequenceExecutor
to make it easier to run models in a sequence.
from pyotritonclient import SequenceExcutor
seq = SequenceExcutor(
server_url='https://ai.imjoy.io/triton',
model_name='cellpose-train',
sequence_id=100
)
inputs = [
image.astype('float32'),
labels.astype('float32'),
{"steps": 1, "resume": True}
]
for (image, labels, info) in train_samples:
result = await seq.step(inputs)
result = await seq.end(inputs)
Note that above example called seq.end()
by sending the last inputs again to end the sequence. If you want to specify the inputs for the execution, you can run result = await se.end(inputs)
.
For a small batch of data, you can also run it like this:
from pyotritonclient import SequenceExcutor
seq = SequenceExcutor(
server_url='https://ai.imjoy.io/triton',
model_name='cellpose-train',
sequence_id=100
)
# a list of inputs
inputs_batch = [[
image.astype('float32'),
labels.astype('float32'),
{"steps": 1, "resume": True}
] for (image, labels, _) in train_samples]
def on_step(i, result):
"""Function called on every step"""
print(i)
results = await seq(inputs_batch, on_step=on_step)
Server setup
Since we access the server from the browser environment which typically has more security restrictions, it is important that the server is configured to enable browser access.
Please make sure you configured following aspects:
- The server must provide HTTPS endpoints instead of HTTP
- The server should send the following headers:
Access-Control-Allow-Headers: Inference-Header-Content-Length,Accept-Encoding,Content-Encoding,Access-Control-Allow-Headers
Access-Control-Expose-Headers: Inference-Header-Content-Length,Range,Origin,Content-Type
Access-Control-Allow-Methods: GET,HEAD,OPTIONS,PUT,POST
Access-Control-Allow-Origin: *
(This is optional depending on whether you want to support CORS)
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