backend / src /backend /run_eval_suite_lighteval.py
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debug inference endpoint launch and requirements
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import json
import argparse
import logging
from datetime import datetime
from lighteval.main_accelerate import main, EnvConfig, create_model_config, load_model
from src.envs import RESULTS_REPO, CACHE_PATH, TOKEN
from src.backend.manage_requests import EvalRequest
from src.logging import setup_logger
logging.getLogger("openai").setLevel(logging.WARNING)
logger = setup_logger(__name__)
def run_evaluation(eval_request: EvalRequest, task_names: str, batch_size: int, local_dir: str, accelerator: str, region: str, vendor: str, instance_size: str, instance_type: str, limit=None):
if limit:
logger.info("WARNING: --limit SHOULD ONLY BE USED FOR TESTING. REAL METRICS SHOULD NOT BE COMPUTED USING LIMIT.")
args_dict = {
# Endpoint parameters
"endpoint_model_name":eval_request.model,
"accelerator": accelerator,
"vendor": vendor,
"region": region,
"instance_size": instance_size,
"instance_type": instance_type,
"reuse_existing": False,
"model_dtype": eval_request.precision,
"revision": eval_request.revision,
# Save parameters
"push_results_to_hub": True,
"save_details": True,
"push_details_to_hub": True,
"public_run": False,
"cache_dir": CACHE_PATH,
"results_org": RESULTS_REPO,
"output_dir": local_dir,
"job_id": str(datetime.now()),
# Experiment parameters
"override_batch_size": batch_size,
"custom_tasks": "custom_tasks.py",
"tasks": task_names,
"max_samples": limit,
"use_chat_template": False,
"system_prompt": None,
# Parameters which would be set to things by the kwargs if actually using argparse
"inference_server_address": None,
"model_args": None,
"num_fewshot_seeds": None,
"delta_weights": False,
"adapter_weights": False
}
args = argparse.Namespace(**args_dict)
try:
results = main(args)
results["config"]["model_dtype"] = eval_request.precision
results["config"]["model_name"] = eval_request.model
results["config"]["model_sha"] = eval_request.revision
dumped = json.dumps(results, indent=2)
logger.info(dumped)
except Exception: # if eval failed, we force a cleanup
env_config = EnvConfig(token=TOKEN, cache_dir=args.cache_dir)
model_config = create_model_config(args=args, accelerator=accelerator)
model, _ = load_model(config=model_config, env_config=env_config)
model.cleanup()
return results