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d3b7f73bcf
* Update view api page * simplify * update * changes * changes * updated info * formatting * changes * fixes * save * moved * remove test input * tweaks * formatting * add raw * serialize * fixes * refactor * fixes * fixes * Fetch api * lower case * view api * fix tests * format * rough design * readme * api docs * examples * format * formatting * format * version * client changes * formatting * update client * more example inputs * api docs fixes * remove notebook * fix demo * demo notebook * styling on code snippet * formatting * fix audio, model3d * format * fix tests * version * cleanup * format * format * format * fixes * version * fix tests * version * format * test * format * changelog * changelog --------- Co-authored-by: freddyaboulton <alfonsoboulton@gmail.com> Co-authored-by: aliabd <ali.si3luwa@gmail.com>
119 lines
4.2 KiB
Python
119 lines
4.2 KiB
Python
'''
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A script that benchmarks the queue performance, can be used to compare the performance
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of the queue on a given branch vs the main branch. By default, runs 100 jobs in batches
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of 20 and prints the average time per job. The inference time for each job (without the
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network overhead of sending/receiving the data) is 0.5 seconds. Each job sends one of:
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a text, image, audio, or video input and the output is the same as the input.
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Navigate to the root directory of the gradio repo and run:
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>> python scripts/benchmark_queue.py
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You can specify the number of jobs to run and the batch size with the -n parameter:
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>> python scripts/benchmark_queue.py -n 1000
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The results are printed to the console, but you can specify a path to save the results
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to with the -o parameter:
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>> python scripts/benchmark_queue.py -n 1000 -o results.json
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'''
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import argparse
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import asyncio
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import json
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import random
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import time
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import pandas as pd
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import websockets
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import gradio as gr
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from gradio_client import media_data
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def identity_with_sleep(x):
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time.sleep(0.5)
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return x
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with gr.Blocks() as demo:
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with gr.Row():
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with gr.Column():
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input_txt = gr.Text()
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output_text = gr.Text()
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submit_text = gr.Button()
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submit_text.click(identity_with_sleep, input_txt, output_text, api_name="text")
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with gr.Column():
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input_img = gr.Image()
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output_img = gr.Image()
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submit_img = gr.Button()
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submit_img.click(identity_with_sleep, input_img, output_img, api_name="img")
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with gr.Column():
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input_audio = gr.Audio()
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output_audio = gr.Audio()
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submit_audio = gr.Button()
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submit_audio.click(identity_with_sleep, input_audio, output_audio, api_name="audio")
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with gr.Column():
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input_video = gr.Video()
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output_video = gr.Video()
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submit_video = gr.Button()
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submit_video.click(identity_with_sleep, input_video, output_video, api_name="video")
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demo.queue(max_size=50, concurrency_count=20).launch(prevent_thread_lock=True, quiet=True)
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FN_INDEX_TO_DATA = {
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"text": (0, "A longish text " * 15),
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"image": (1, media_data.BASE64_IMAGE),
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"audio": (2, media_data.BASE64_AUDIO),
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"video": (3, media_data.BASE64_VIDEO)
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}
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async def get_prediction(host):
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async with websockets.connect(host) as ws:
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completed = False
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name = random.choice(["image", "text", "audio", "video"])
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fn_to_hit, data = FN_INDEX_TO_DATA[name]
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start = time.time()
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while not completed:
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msg = json.loads(await ws.recv())
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if msg["msg"] == "send_data":
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await ws.send(json.dumps({"data": [data], "fn_index": fn_to_hit}))
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if msg["msg"] == "send_hash":
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await ws.send(json.dumps({"fn_index": fn_to_hit, "session_hash": "shdce"}))
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if msg["msg"] == "process_completed":
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completed = True
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end = time.time()
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return {"fn_to_hit": name, "duration": end - start}
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async def main(host, n_results=100):
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results = []
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while len(results) < n_results:
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batch_results = await asyncio.gather(*[get_prediction(host) for _ in range(20)])
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for result in batch_results:
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if result:
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results.append(result)
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data = pd.DataFrame(results).groupby("fn_to_hit").agg({"mean"})
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data.columns = data.columns.get_level_values(0)
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data = data.reset_index()
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data = {"fn_to_hit": data["fn_to_hit"].to_list(), "duration": data["duration"].to_list()}
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return data
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if __name__ == "__main__":
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parser = argparse.ArgumentParser(description="Upload a demo to a space")
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parser.add_argument("-n", "--n_jobs", type=int, help="number of jobs", default=100, required=False)
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parser.add_argument("-o", "--output", type=str, help="path to write output to", required=False)
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args = parser.parse_args()
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host = f"{demo.local_url.replace('http', 'ws')}queue/join"
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data = asyncio.run(main(host, n_results=args.n_jobs))
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data = dict(zip(data["fn_to_hit"], data["duration"]))
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print(data)
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if args.output:
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print("Writing results to:", args.output)
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json.dump(data, open(args.output, "w"))
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