| |
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| |
|
| | import argparse
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| | import json
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| | import os
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| | import random
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| | import sqlite3
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| | import subprocess
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| | from time import sleep, time
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| | from typing import Optional, Union
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| |
|
| | import datasets
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| | import logging
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| | import matplotlib.pyplot as plt
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| | import numpy as np
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| | import requests
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| | from tqdm.contrib.concurrent import thread_map
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| |
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| |
|
| | logging.basicConfig(level=logging.INFO, format='%(message)s')
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| | logger = logging.getLogger("server-bench")
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| |
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| |
|
| | def get_prompts_text(dataset_name: str, n_prompts: int) -> Optional[list[str]]:
|
| | ret = []
|
| | if dataset_name.lower() == "mmlu":
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| | logger.info("Loading MMLU dataset...")
|
| | ret = datasets.load_dataset("cais/mmlu", "all")["test"]["question"]
|
| | else:
|
| | return None
|
| | if n_prompts >= 0:
|
| | ret = ret[:n_prompts]
|
| | return ret
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| |
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| |
|
| | def get_prompt_lengths_rng(n_prompts: int, prompt_length_min: int, prompt_length_max: int, seed_offset: int) -> list[int]:
|
| | assert n_prompts >= 0
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| | ret: list[int] = []
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| | for i in range(n_prompts):
|
| | if seed_offset >= 0:
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| | random.seed(3 * (seed_offset + 1000 * i) + 0)
|
| | ret.append(random.randint(prompt_length_min, prompt_length_max))
|
| | return ret
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| |
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| |
|
| | def get_prompts_rng(prompt_lengths: list[int]) -> list[list[int]]:
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| | return [[random.randint(100, 10000) for _ in range(pl)] for pl in prompt_lengths]
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| |
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| |
|
| | def get_server(path_server: str, path_log: Optional[str]) -> dict:
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| | if path_server.startswith("http://") or path_server.startswith("https://"):
|
| | return {"process": None, "address": path_server, "fout": None}
|
| | if os.environ.get("LLAMA_ARG_HOST") is None:
|
| | logger.info("LLAMA_ARG_HOST not explicitly set, using 127.0.0.1")
|
| | os.environ["LLAMA_ARG_HOST"] = "127.0.0.1"
|
| | if os.environ.get("LLAMA_ARG_PORT") is None:
|
| | logger.info("LLAMA_ARG_PORT not explicitly set, using 8080")
|
| | os.environ["LLAMA_ARG_PORT"] = "8080"
|
| | hostname: Optional[str] = os.environ.get("LLAMA_ARG_HOST")
|
| | port: Optional[str] = os.environ.get("LLAMA_ARG_PORT")
|
| | assert hostname is not None
|
| | assert port is not None
|
| | address: str = f"http://{hostname}:{port}"
|
| | logger.info(f"Starting the llama.cpp server under {address}...")
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| |
|
| | fout = open(path_log.format(port=port), "w") if path_log is not None else subprocess.DEVNULL
|
| | process = subprocess.Popen([path_server], stdout=fout, stderr=subprocess.STDOUT)
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| |
|
| | n_failures: int = 0
|
| | while True:
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| | try:
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| | sleep(1.0)
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| | exit_code = process.poll()
|
| | if exit_code is not None:
|
| | raise RuntimeError(f"llama.cpp server exited unexpectedly with exit code {exit_code}{path_log and f', see {path_log.format(port=port)}' or ''}")
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| | response = requests.get(f"{address}/health")
|
| | if response.status_code == 200:
|
| | break
|
| | except requests.ConnectionError:
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| | n_failures += 1
|
| | if n_failures >= 10:
|
| | raise RuntimeError("llama.cpp server is not healthy after 10 seconds")
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| |
|
| | return {"process": process, "address": address, "fout": fout}
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| |
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| |
|
| | def get_prompt_length(data: dict) -> int:
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| | session = data["session"]
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| | server_address: str = data["server_address"]
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| |
|
| | response = session.post(
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| | f"{server_address}/apply-template",
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| | json={"messages": [{"role": "user", "content": data["prompt"], "stream": True}]}
|
| | )
|
| | response.raise_for_status()
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| | prompt: str = json.loads(response.text)["prompt"]
|
| | response = session.post(
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| | f"{server_address}/tokenize",
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| | json={"content": prompt, "add_special": True}
|
| | )
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| | response.raise_for_status()
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| | tokens: list[str] = json.loads(response.text)["tokens"]
|
| | return len(tokens)
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| |
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| |
|
| | def send_prompt(data: dict) -> tuple[float, list[float]]:
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| | session = data["session"]
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| | server_address: str = data["server_address"]
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| |
|
| | t_submit = time()
|
| | if data["external_server"]:
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| | json_data: dict = {
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| | "prompt": data["prompt"], "ignore_eos": True,
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| | "seed": data["seed"], "max_tokens": data["n_predict"], "stream": True}
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| | response = session.post(f"{server_address}/v1/completions", json=json_data, stream=True)
|
| | elif data["synthetic_prompt"]:
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| | json_data: dict = {
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| | "prompt": data["prompt"], "ignore_eos": True, "cache_prompt": False,
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| | "seed": data["seed"], "n_predict": data["n_predict"], "stream": True}
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| | response = session.post(f"{server_address}/completion", json=json_data, stream=True)
|
| | else:
|
| | response = session.post(
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| | f"{server_address}/apply-template",
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| | json={"messages": [{"role": "user", "content": data["prompt"], "stream": True}]}
|
| | )
|
| | response.raise_for_status()
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| | prompt: str = json.loads(response.text)["prompt"]
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| |
|
| | json_data: dict = {"prompt": prompt, "seed": data["seed"], "n_predict": data["n_predict"], "stream": True}
|
| | response = session.post(f"{server_address}/completion", json=json_data, stream=True)
|
| | response.raise_for_status()
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| |
|
| | lines = []
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| | token_arrival_times: list[float] = []
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| | for line in response.iter_lines(decode_unicode=False):
|
| | if not line.startswith(b"data: "):
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| | continue
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| | lines.append(line)
|
| | token_arrival_times.append(time())
|
| | token_arrival_times = token_arrival_times[:-1]
|
| | if len(lines) > 1 and "timings" in json.loads(lines[-2][6:]):
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| | token_arrival_times = token_arrival_times[:-1]
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| |
|
| | return (t_submit, token_arrival_times)
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| |
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| |
|
| | def benchmark(
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| | path_server: str, path_log: Optional[str], path_db: Optional[str], name: Optional[str], prompt_source: str, n_prompts: int,
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| | n_predict: int, n_predict_min: int, seed_offset: int):
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| | external_server: bool = path_server.startswith("http://") or path_server.startswith("https://")
|
| | if os.environ.get("LLAMA_ARG_N_PARALLEL") is None:
|
| | logger.info("LLAMA_ARG_N_PARALLEL not explicitly set, using 32")
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| | os.environ["LLAMA_ARG_N_PARALLEL"] = "32"
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| |
|
| | parallel: int = int(os.environ.get("LLAMA_ARG_N_PARALLEL"))
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| | prompts: Union[None, list[str], list[list[int]]] = get_prompts_text(prompt_source, n_prompts)
|
| | synthetic_prompts: bool = prompts is None
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| | prompt_n = []
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| |
|
| | if synthetic_prompts:
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| | prompt_source_split: list[str] = prompt_source.split("-")
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| | assert len(prompt_source_split) == 3
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| | assert prompt_source_split[0].lower() == "rng"
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| | prompt_length_min: int = int(prompt_source_split[1])
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| | prompt_length_max: int = int(prompt_source_split[2])
|
| | logger.info("Generating random prompts...")
|
| | prompt_n = get_prompt_lengths_rng(n_prompts, prompt_length_min, prompt_length_max, seed_offset)
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| | prompts = get_prompts_rng(prompt_n)
|
| | else:
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| | n_predict_min = n_predict
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| |
|
| | if not external_server and os.environ.get("LLAMA_ARG_CTX_SIZE") is None:
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| | context_per_slot: int = int(1.05 * (n_predict + (np.max(prompt_n) if synthetic_prompts else 2048)))
|
| | context_total: int = context_per_slot * parallel
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| | os.environ["LLAMA_ARG_CTX_SIZE"] = str(context_total)
|
| | logger.info(f"LLAMA_ARG_CTX_SIZE not explicitly set, using {context_total} ({context_per_slot} per slot).")
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| |
|
| | server: Optional[dict] = None
|
| | session = None
|
| | try:
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| | server = get_server(path_server, path_log)
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| | server_address: str = server["address"]
|
| | assert external_server == (server["process"] is None)
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| |
|
| | adapter = requests.adapters.HTTPAdapter(pool_connections=parallel, pool_maxsize=parallel)
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| | session = requests.Session()
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| | session.mount("http://", adapter)
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| | session.mount("https://", adapter)
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| |
|
| | data: list[dict] = []
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| |
|
| | for i, p in enumerate(prompts):
|
| | if seed_offset >= 0:
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| | random.seed(3 * (seed_offset + 1000 * i) + 1)
|
| | data.append({
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| | "session": session, "server_address": server_address, "external_server": external_server, "prompt": p,
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| | "synthetic_prompt": synthetic_prompts, "n_predict": random.randint(n_predict_min, n_predict),
|
| | "seed": (3 * (seed_offset + 1000 * i) + 2) if seed_offset >= 0 else -1})
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| |
|
| | if not synthetic_prompts:
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| | logger.info("Getting the prompt lengths...")
|
| | prompt_n = [get_prompt_length(d) for d in data]
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| |
|
| | logger.info("Starting the benchmark...\n")
|
| | t0 = time()
|
| | results: list[tuple[float, list[float]]] = thread_map(send_prompt, data, max_workers=parallel, chunksize=1)
|
| | finally:
|
| | if server is not None and server["process"] is not None:
|
| | server["process"].terminate()
|
| | server["process"].wait()
|
| | if session is not None:
|
| | session.close()
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| |
|
| | prompt_t = []
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| | token_t = []
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| | depth_sum: int = 0
|
| | for pn, (t_submit, tat) in zip(prompt_n, results):
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| | prompt_t.append(tat[0] - t_submit)
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| | token_t += tat
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| | n_tokens: int = len(tat)
|
| | depth_sum += n_tokens * pn
|
| | depth_sum += n_tokens * (n_tokens + 1) // 2
|
| | assert len(token_t) > 0
|
| | prompt_n = np.array(prompt_n, dtype=np.int64)
|
| | prompt_t = np.array(prompt_t, dtype=np.float64)
|
| | token_t = np.array(token_t, dtype=np.float64)
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| |
|
| | token_t -= t0
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| | token_t_last = np.max(token_t)
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| |
|
| | logger.info("")
|
| | logger.info(f"Benchmark duration: {token_t_last:.2f} s")
|
| | logger.info(f"Request throughput: {n_prompts / token_t_last:.2f} requests/s = {n_prompts / (token_t_last/60):.2f} requests/min")
|
| | logger.info(f"Total prompt length: {np.sum(prompt_n)} tokens")
|
| | logger.info(f"Average prompt length: {np.mean(prompt_n):.2f} tokens")
|
| | logger.info(f"Average prompt latency: {1e3 * np.mean(prompt_t):.2f} ms")
|
| | logger.info(f"Average prompt speed: {np.sum(prompt_n) / np.sum(prompt_t):.2f} tokens/s")
|
| | logger.info(f"Total generated tokens: {token_t.shape[0]}")
|
| | logger.info(f"Average generation depth: {depth_sum / token_t.shape[0]:.2f} tokens")
|
| | logger.info(f"Average total generation speed: {token_t.shape[0] / token_t_last:.2f} tokens/s")
|
| | logger.info(f"Average generation speed per slot: {token_t.shape[0] / (parallel * token_t_last):.2f} tokens/s / slot")
|
| |
|
| | if path_db is not None:
|
| | con = sqlite3.connect(path_db)
|
| | cursor = con.cursor()
|
| | cursor.execute(
|
| | "CREATE TABLE IF NOT EXISTS server_bench"
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| | "(name TEXT, n_parallel INTEGER, prompt_source TEXT, n_prompts INTEGER, "
|
| | "n_predict INTEGER, n_predict_min INTEGER, seed_offset INTEGER, runtime REAL);")
|
| | cursor.execute(
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| | "INSERT INTO server_bench VALUES (?, ?, ?, ?, ?, ?, ?, ?);",
|
| | [name, parallel, prompt_source, n_prompts, n_predict, n_predict_min, seed_offset, token_t_last])
|
| | con.commit()
|
| |
|
| | plt.figure()
|
| | plt.scatter(prompt_n, 1e3 * prompt_t, s=10.0, marker=".", alpha=0.25)
|
| | plt.xlim(0, 1.05e0 * np.max(prompt_n))
|
| | plt.ylim(0, 1.05e3 * np.max(prompt_t))
|
| | plt.title(name or "")
|
| | plt.xlabel("Prompt length [tokens]")
|
| | plt.ylabel("Time to first token [ms]")
|
| | plt.savefig("prompt_time.png", dpi=240)
|
| |
|
| | bin_max = np.ceil(token_t_last) + 1
|
| | plt.figure()
|
| | plt.hist(token_t, np.arange(0, bin_max))
|
| | plt.xlim(0, bin_max + 1)
|
| | plt.title(name or "")
|
| | plt.xlabel("Time [s]")
|
| | plt.ylabel("Num. tokens generated per second")
|
| | plt.savefig("gen_rate.png", dpi=240)
|
| |
|
| |
|
| | if __name__ == "__main__":
|
| | parser = argparse.ArgumentParser(
|
| | description="Tool for benchmarking the throughput of the llama.cpp HTTP server. "
|
| | "Results are printed to console and visualized as plots (saved to current working directory). "
|
| | "To pass arguments such as the model path to the server, set the corresponding environment variables (see llama-server --help). "
|
| | "The reported numbers are the speeds as observed by the Python script and may differ from the performance reported by the server, "
|
| | "particularly when the server is fast vs. the network or Python script (e.g. when serving a very small model).")
|
| | parser.add_argument("--path_server", type=str, default="llama-server", help="Path to the llama.cpp server binary")
|
| | parser.add_argument("--path_log", type=str, default="server-bench-{port}.log", help="Path to the model to use for the benchmark")
|
| | parser.add_argument("--path_db", type=str, default=None, help="Path to an sqlite database to store the benchmark results in")
|
| | parser.add_argument("--name", type=str, default=None, help="Name to label plots and database entries with")
|
| | parser.add_argument(
|
| | "--prompt_source", type=str, default="rng-1024-2048",
|
| | help="How to get the prompts for the benchmark, either 'mmlu' for MMLU questions or "
|
| | "rng-MIN-MAX for synthetic prompts with random lengths in the interval [MIN, MAX]")
|
| | parser.add_argument("--n_prompts", type=int, default=100, help="Number of prompts to evaluate")
|
| | parser.add_argument("--n_predict", type=int, default=2048, help="Max. number of tokens to predict per prompt")
|
| | parser.add_argument(
|
| | "--n_predict_min", type=int, default=1024,
|
| | help="Min. number of tokens to predict per prompt (supported for synthetic prompts only)")
|
| | parser.add_argument("--seed_offset", type=int, default=0, help="Offset for determining the seeds for pseudorandom prompt/generation lengths. "
|
| | "Corelations between seeds can occur when set >= 1000. Negative values mean no seed.")
|
| | args = parser.parse_args()
|
| | benchmark(**vars(args))
|
| |
|