LiveBench / src /display_models /get_model_metadata.py
Nathan Habib
Fix search bar by not filtered models with unknown model type
f485a37
raw
history blame
6.71 kB
import glob
import json
import os
import re
import pickle
from typing import List
import huggingface_hub
from huggingface_hub import HfApi
from tqdm import tqdm
from transformers import AutoModel, AutoConfig
from accelerate import init_empty_weights
from src.display_models.model_metadata_flags import DO_NOT_SUBMIT_MODELS, FLAGGED_MODELS
from src.display_models.model_metadata_type import MODEL_TYPE_METADATA, ModelType, model_type_from_str
from src.display_models.utils import AutoEvalColumn, model_hyperlink
api = HfApi(token=os.environ.get("H4_TOKEN", None))
def get_model_infos_from_hub(leaderboard_data: List[dict]):
# load cache from disk
try:
with open("model_info_cache.pkl", "rb") as f:
model_info_cache = pickle.load(f)
except (EOFError, FileNotFoundError):
model_info_cache = {}
try:
with open("model_size_cache.pkl", "rb") as f:
model_size_cache = pickle.load(f)
except (EOFError, FileNotFoundError):
model_size_cache = {}
for model_data in tqdm(leaderboard_data):
model_name = model_data["model_name_for_query"]
if model_name in model_info_cache:
model_info = model_info_cache[model_name]
else:
try:
model_info = api.model_info(model_name)
model_info_cache[model_name] = model_info
except huggingface_hub.utils._errors.RepositoryNotFoundError:
print("Repo not found!", model_name)
model_data[AutoEvalColumn.license.name] = None
model_data[AutoEvalColumn.likes.name] = None
if model_name not in model_size_cache:
model_size_cache[model_name] = get_model_size(model_name, None)
model_data[AutoEvalColumn.params.name] = model_size_cache[model_name]
model_data[AutoEvalColumn.license.name] = get_model_license(model_info)
model_data[AutoEvalColumn.likes.name] = get_model_likes(model_info)
if model_name not in model_size_cache:
model_size_cache[model_name] = get_model_size(model_name, model_info)
model_data[AutoEvalColumn.params.name] = model_size_cache[model_name]
# save cache to disk in pickle format
with open("model_info_cache.pkl", "wb") as f:
pickle.dump(model_info_cache, f)
with open("model_size_cache.pkl", "wb") as f:
pickle.dump(model_size_cache, f)
def get_model_license(model_info):
try:
return model_info.cardData["license"]
except Exception:
return "?"
def get_model_likes(model_info):
return model_info.likes
size_pattern = re.compile(r"(\d\.)?\d+(b|m)")
def get_model_size(model_name, model_info):
# In billions
try:
return round(model_info.safetensors["total"] / 1e9, 3)
except AttributeError:
try:
config = AutoConfig.from_pretrained(model_name, trust_remote_code=False)
with init_empty_weights():
model = AutoModel.from_config(config, trust_remote_code=False)
return round(sum(p.numel() for p in model.parameters() if p.requires_grad) / 1e9, 3)
except (EnvironmentError, ValueError, KeyError): # model config not found, likely private
try:
size_match = re.search(size_pattern, model_name.lower())
size = size_match.group(0)
return round(float(size[:-1]) if size[-1] == "b" else float(size[:-1]) / 1e3, 3)
except AttributeError:
return 0
def get_model_type(leaderboard_data: List[dict]):
for model_data in leaderboard_data:
request_files = os.path.join(
"eval-queue",
model_data["model_name_for_query"] + "_eval_request_*" + ".json",
)
request_files = glob.glob(request_files)
# Select correct request file (precision)
request_file = ""
if len(request_files) == 1:
request_file = request_files[0]
elif len(request_files) > 1:
request_files = sorted(request_files, reverse=True)
for tmp_request_file in request_files:
with open(tmp_request_file, "r") as f:
req_content = json.load(f)
if (
req_content["status"] == "FINISHED"
and req_content["precision"] == model_data["Precision"].split(".")[-1]
):
request_file = tmp_request_file
try:
with open(request_file, "r") as f:
request = json.load(f)
model_type = model_type_from_str(request["model_type"])
model_data[AutoEvalColumn.model_type.name] = model_type.value.name
model_data[AutoEvalColumn.model_type_symbol.name] = model_type.value.symbol # + ("🔺" if is_delta else "")
except Exception:
if model_data["model_name_for_query"] in MODEL_TYPE_METADATA:
model_data[AutoEvalColumn.model_type.name] = MODEL_TYPE_METADATA[
model_data["model_name_for_query"]
].value.name
model_data[AutoEvalColumn.model_type_symbol.name] = MODEL_TYPE_METADATA[
model_data["model_name_for_query"]
].value.symbol # + ("🔺" if is_delta else "")
else:
model_data[AutoEvalColumn.model_type.name] = ModelType.Unknown.value.name
model_data[AutoEvalColumn.model_type_symbol.name] = ModelType.Unknown.value.symbol
def flag_models(leaderboard_data: List[dict]):
for model_data in leaderboard_data:
if model_data["model_name_for_query"] in FLAGGED_MODELS:
issue_num = FLAGGED_MODELS[model_data["model_name_for_query"]].split("/")[-1]
issue_link = model_hyperlink(
FLAGGED_MODELS[model_data["model_name_for_query"]],
f"See discussion #{issue_num}",
)
model_data[
AutoEvalColumn.model.name
] = f"{model_data[AutoEvalColumn.model.name]} has been flagged! {issue_link}"
def remove_forbidden_models(leaderboard_data: List[dict]):
indices_to_remove = []
for ix, model in enumerate(leaderboard_data):
if model["model_name_for_query"] in DO_NOT_SUBMIT_MODELS:
indices_to_remove.append(ix)
for ix in reversed(indices_to_remove):
leaderboard_data.pop(ix)
return leaderboard_data
def apply_metadata(leaderboard_data: List[dict]):
leaderboard_data = remove_forbidden_models(leaderboard_data)
get_model_type(leaderboard_data)
get_model_infos_from_hub(leaderboard_data)
flag_models(leaderboard_data)