open_llm_leaderboard_two / src /load_from_hub.py
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Duplicate from HuggingFaceH4/open_llm_leaderboard
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import json
import os
import pandas as pd
from huggingface_hub import Repository
from transformers import AutoConfig
from src.assets.hardcoded_evals import baseline, gpt4_values, gpt35_values
from src.display_models.get_model_metadata import apply_metadata
from src.display_models.read_results import get_eval_results_dicts, make_clickable_model
from src.display_models.utils import AutoEvalColumn, EvalQueueColumn, has_no_nan_values
IS_PUBLIC = bool(os.environ.get("IS_PUBLIC", True))
def get_all_requested_models(requested_models_dir: str) -> set[str]:
depth = 1
file_names = []
for root, _, files in os.walk(requested_models_dir):
current_depth = root.count(os.sep) - requested_models_dir.count(os.sep)
if current_depth == depth:
file_names.extend([os.path.join(root, file) for file in files])
return set([file_name.lower().split("eval-queue/")[1] for file_name in file_names])
def load_all_info_from_hub(QUEUE_REPO: str, RESULTS_REPO: str, QUEUE_PATH: str, RESULTS_PATH: str) -> list[Repository]:
eval_queue_repo = None
eval_results_repo = None
requested_models = None
print("Pulling evaluation requests and results.")
eval_queue_repo = Repository(
local_dir=QUEUE_PATH,
clone_from=QUEUE_REPO,
repo_type="dataset",
)
eval_queue_repo.git_pull()
eval_results_repo = Repository(
local_dir=RESULTS_PATH,
clone_from=RESULTS_REPO,
repo_type="dataset",
)
eval_results_repo.git_pull()
requested_models = get_all_requested_models("eval-queue")
return eval_queue_repo, requested_models, eval_results_repo
def get_leaderboard_df(
eval_results: Repository, eval_results_private: Repository, cols: list, benchmark_cols: list
) -> pd.DataFrame:
if eval_results:
print("Pulling evaluation results for the leaderboard.")
eval_results.git_pull()
if eval_results_private:
print("Pulling evaluation results for the leaderboard.")
eval_results_private.git_pull()
all_data = get_eval_results_dicts()
if not IS_PUBLIC:
all_data.append(gpt4_values)
all_data.append(gpt35_values)
all_data.append(baseline)
apply_metadata(all_data) # Populate model type based on known hardcoded values in `metadata.py`
df = pd.DataFrame.from_records(all_data)
df = df.sort_values(by=[AutoEvalColumn.average.name], ascending=False)
df = df[cols].round(decimals=2)
# filter out if any of the benchmarks have not been produced
df = df[has_no_nan_values(df, benchmark_cols)]
return df
def get_evaluation_queue_df(
eval_queue: Repository, eval_queue_private: Repository, save_path: str, cols: list
) -> list[pd.DataFrame]:
if eval_queue:
print("Pulling changes for the evaluation queue.")
eval_queue.git_pull()
if eval_queue_private:
print("Pulling changes for the evaluation queue.")
eval_queue_private.git_pull()
entries = [entry for entry in os.listdir(save_path) if not entry.startswith(".")]
all_evals = []
for entry in entries:
if ".json" in entry:
file_path = os.path.join(save_path, entry)
with open(file_path) as fp:
data = json.load(fp)
data[EvalQueueColumn.model.name] = make_clickable_model(data["model"])
data[EvalQueueColumn.revision.name] = data.get("revision", "main")
all_evals.append(data)
elif ".md" not in entry:
# this is a folder
sub_entries = [e for e in os.listdir(f"{save_path}/{entry}") if not e.startswith(".")]
for sub_entry in sub_entries:
file_path = os.path.join(save_path, entry, sub_entry)
with open(file_path) as fp:
data = json.load(fp)
data[EvalQueueColumn.model.name] = make_clickable_model(data["model"])
data[EvalQueueColumn.revision.name] = data.get("revision", "main")
all_evals.append(data)
pending_list = [e for e in all_evals if e["status"] in ["PENDING", "RERUN"]]
running_list = [e for e in all_evals if e["status"] == "RUNNING"]
finished_list = [e for e in all_evals if e["status"].startswith("FINISHED")]
df_pending = pd.DataFrame.from_records(pending_list, columns=cols)
df_running = pd.DataFrame.from_records(running_list, columns=cols)
df_finished = pd.DataFrame.from_records(finished_list, columns=cols)
return df_finished[cols], df_running[cols], df_pending[cols]
def is_model_on_hub(model_name: str, revision: str) -> bool:
try:
AutoConfig.from_pretrained(model_name, revision=revision, trust_remote_code=False)
return True, None
except ValueError:
return (
False,
"needs to be launched with `trust_remote_code=True`. For safety reason, we do not allow these models to be automatically submitted to the leaderboard.",
)
except Exception as e:
print(f"Could not get the model config from the hub.: {e}")
return False, "was not found on hub!"