model-evaluator / app.py
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import inspect
import os
import uuid
from pathlib import Path
import pandas as pd
import streamlit as st
from datasets import get_dataset_config_names
from dotenv import load_dotenv
from evaluate import load
from huggingface_hub import list_datasets, list_metrics
from tqdm import tqdm
from evaluation import filter_evaluated_models
from utils import (
format_col_mapping,
get_compatible_models,
get_key,
get_metadata,
http_get,
http_post,
)
if Path(".env").is_file():
load_dotenv(".env")
HF_TOKEN = os.getenv("HF_TOKEN")
AUTOTRAIN_USERNAME = os.getenv("AUTOTRAIN_USERNAME")
AUTOTRAIN_BACKEND_API = os.getenv("AUTOTRAIN_BACKEND_API")
DATASETS_PREVIEW_API = os.getenv("DATASETS_PREVIEW_API")
TASK_TO_ID = {
"binary_classification": 1,
"multi_class_classification": 2,
# "multi_label_classification": 3, # Not fully supported in AutoTrain
"entity_extraction": 4,
"extractive_question_answering": 5,
"translation": 6,
"summarization": 8,
}
TASK_TO_DEFAULT_METRICS = {
"binary_classification": ["f1", "precision", "recall", "auc", "accuracy"],
"multi_class_classification": [
"f1",
"precision",
"recall",
"accuracy",
],
"entity_extraction": ["precision", "recall", "f1", "accuracy"],
"extractive_question_answering": [],
"translation": ["sacrebleu"],
"summarization": ["rouge1", "rouge2", "rougeL", "rougeLsum"],
}
SUPPORTED_TASKS = list(TASK_TO_ID.keys())
@st.cache
def get_supported_metrics():
metrics = [metric.id for metric in list_metrics()]
supported_metrics = []
for metric in tqdm(metrics):
# TODO: this currently requires all metric dependencies to be installed
# in the same environment. Refactor to avoid needing to actually load
# the metric.
try:
metric_func = load(metric)
except Exception as e:
print(e)
print("Skipping the following metric, which cannot load:", metric)
continue
argspec = inspect.getfullargspec(metric_func.compute)
if "references" in argspec.kwonlyargs and "predictions" in argspec.kwonlyargs:
# We require that "references" and "predictions" are arguments
# to the metric function. We also require that the other arguments
# besides "references" and "predictions" have defaults and so do not
# need to be specified explicitly.
defaults = True
for key, value in argspec.kwonlydefaults.items():
if key not in ("references", "predictions"):
if value is None:
defaults = False
break
if defaults:
supported_metrics.append(metric)
return supported_metrics
supported_metrics = get_supported_metrics()
#######
# APP #
#######
st.title("Evaluation on the Hub")
st.markdown(
"""
Welcome to Hugging Face's automatic model evaluator! This application allows
you to evaluate πŸ€— Transformers
[models](https://huggingface.co/models?library=transformers&sort=downloads)
across a wide variety of datasets on the Hub -- all for free! Please select
the dataset and configuration below. The results of your evaluation will be
displayed on the [public
leaderboard](https://huggingface.co/spaces/autoevaluate/leaderboards).
"""
)
all_datasets = [d.id for d in list_datasets()]
query_params = st.experimental_get_query_params()
default_dataset = all_datasets[0]
if "dataset" in query_params:
if len(query_params["dataset"]) > 0 and query_params["dataset"][0] in all_datasets:
default_dataset = query_params["dataset"][0]
selected_dataset = st.selectbox(
"Select a dataset",
all_datasets,
index=all_datasets.index(default_dataset),
help="""Datasets with metadata can be evaluated with 1-click. Check out the \
[documentation](https://huggingface.co/docs/hub/datasets-cards) to add \
evaluation metadata to a dataset.""",
)
st.experimental_set_query_params(**{"dataset": [selected_dataset]})
metadata = get_metadata(selected_dataset)
print(metadata)
if metadata is None:
st.warning("No evaluation metadata found. Please configure the evaluation job below.")
with st.expander("Advanced configuration"):
# Select task
selected_task = st.selectbox(
"Select a task",
SUPPORTED_TASKS,
index=SUPPORTED_TASKS.index(metadata[0]["task_id"]) if metadata is not None else 0,
)
# Select config
configs = get_dataset_config_names(selected_dataset)
selected_config = st.selectbox("Select a config", configs)
# Select splits
splits_resp = http_get(
path="/splits",
domain=DATASETS_PREVIEW_API,
params={"dataset": selected_dataset},
)
if splits_resp.status_code == 200:
split_names = []
all_splits = splits_resp.json()
for split in all_splits["splits"]:
if split["config"] == selected_config:
split_names.append(split["split"])
if metadata is not None:
eval_split = metadata[0]["splits"].get("eval_split", None)
else:
eval_split = None
selected_split = st.selectbox(
"Select a split",
split_names,
index=split_names.index(eval_split) if eval_split is not None else 0,
)
# Select columns
rows_resp = http_get(
path="/rows",
domain=DATASETS_PREVIEW_API,
params={
"dataset": selected_dataset,
"config": selected_config,
"split": selected_split,
},
).json()
col_names = list(pd.json_normalize(rows_resp["rows"][0]["row"]).columns)
st.markdown("**Map your data columns**")
col1, col2 = st.columns(2)
# TODO: find a better way to layout these items
# TODO: need graceful way of handling dataset <--> task mismatch for datasets with metadata
col_mapping = {}
if selected_task in ["binary_classification", "multi_class_classification"]:
with col1:
st.markdown("`text` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`target` column")
with col2:
text_col = st.selectbox(
"This column should contain the text you want to classify",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "text")) if metadata is not None else 0,
)
target_col = st.selectbox(
"This column should contain the labels you want to assign to the text",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "target")) if metadata is not None else 0,
)
col_mapping[text_col] = "text"
col_mapping[target_col] = "target"
elif selected_task == "entity_extraction":
with col1:
st.markdown("`tokens` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`tags` column")
with col2:
tokens_col = st.selectbox(
"This column should contain the array of tokens",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "tokens")) if metadata is not None else 0,
)
tags_col = st.selectbox(
"This column should contain the labels to associate to each part of the text",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "tags")) if metadata is not None else 0,
)
col_mapping[tokens_col] = "tokens"
col_mapping[tags_col] = "tags"
elif selected_task == "translation":
with col1:
st.markdown("`source` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`target` column")
with col2:
text_col = st.selectbox(
"This column should contain the text you want to translate",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "source")) if metadata is not None else 0,
)
target_col = st.selectbox(
"This column should contain an example translation of the source text",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "target")) if metadata is not None else 0,
)
col_mapping[text_col] = "source"
col_mapping[target_col] = "target"
elif selected_task == "summarization":
with col1:
st.markdown("`text` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`target` column")
with col2:
text_col = st.selectbox(
"This column should contain the text you want to summarize",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "text")) if metadata is not None else 0,
)
target_col = st.selectbox(
"This column should contain an example summarization of the text",
col_names,
index=col_names.index(get_key(metadata[0]["col_mapping"], "target")) if metadata is not None else 0,
)
col_mapping[text_col] = "text"
col_mapping[target_col] = "target"
elif selected_task == "extractive_question_answering":
if metadata is not None:
col_mapping = metadata[0]["col_mapping"]
# Hub YAML parser converts periods to hyphens, so we remap them here
col_mapping = format_col_mapping(col_mapping)
with col1:
st.markdown("`context` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`question` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`answers.text` column")
st.text("")
st.text("")
st.text("")
st.text("")
st.markdown("`answers.answer_start` column")
with col2:
context_col = st.selectbox(
"This column should contain the question's context",
col_names,
index=col_names.index(get_key(col_mapping, "context")) if metadata is not None else 0,
)
question_col = st.selectbox(
"This column should contain the question to be answered, given the context",
col_names,
index=col_names.index(get_key(col_mapping, "question")) if metadata is not None else 0,
)
answers_text_col = st.selectbox(
"This column should contain example answers to the question, extracted from the context",
col_names,
index=col_names.index(get_key(col_mapping, "answers.text")) if metadata is not None else 0,
)
answers_start_col = st.selectbox(
"This column should contain the indices in the context of the first character of each answers.text",
col_names,
index=col_names.index(get_key(col_mapping, "answers.answer_start")) if metadata is not None else 0,
)
col_mapping[context_col] = "context"
col_mapping[question_col] = "question"
col_mapping[answers_text_col] = "answers.text"
col_mapping[answers_start_col] = "answers.answer_start"
# Select metrics
st.markdown("**Select metrics**")
st.markdown("The following metrics will be computed")
html_string = " ".join(
[
'<div style="padding-right:5px;padding-left:5px;padding-top:5px;padding-bottom:5px;float:left">'
+ '<div style="background-color:#D3D3D3;border-radius:5px;display:inline-block;padding-right:5px;'
+ 'padding-left:5px;color:white">'
+ metric
+ "</div></div>"
for metric in TASK_TO_DEFAULT_METRICS[selected_task]
]
)
st.markdown(html_string, unsafe_allow_html=True)
selected_metrics = st.multiselect(
"(Optional) Select additional metrics",
list(set(supported_metrics) - set(TASK_TO_DEFAULT_METRICS[selected_task])),
)
st.info(
"""Note: user-selected metrics will be run with their default arguments. \
Check out the [available metrics](https://huggingface.co/metrics) for more details."""
)
with st.form(key="form"):
compatible_models = get_compatible_models(selected_task, selected_dataset)
selected_models = st.multiselect(
"Select the models you wish to evaluate",
compatible_models,
help="""Don't see your model in this list? Add the dataset and task it was trained to the \
[model card metadata.](https://huggingface.co/docs/hub/models-cards#model-card-metadata)""",
)
print("Selected models:", selected_models)
if len(selected_models) > 0:
selected_models = filter_evaluated_models(
selected_models,
selected_task,
selected_dataset,
selected_config,
selected_split,
)
print("Selected models:", selected_models)
submit_button = st.form_submit_button("Evaluate models")
if submit_button:
if len(selected_models) > 0:
project_id = str(uuid.uuid4())[:8]
payload = {
"username": AUTOTRAIN_USERNAME,
"proj_name": f"eval-project-{project_id}",
"task": TASK_TO_ID[selected_task],
"config": {
"language": "en"
if selected_task != "translation"
else "en2de", # Need this dummy pair to enable translation
"max_models": 5,
"instance": {
"provider": "aws",
"instance_type": "ml.g4dn.4xlarge",
"max_runtime_seconds": 172800,
"num_instances": 1,
"disk_size_gb": 150,
},
"evaluation": {
"metrics": selected_metrics,
"models": selected_models,
},
},
}
print(f"Payload: {payload}")
project_json_resp = http_post(
path="/projects/create",
payload=payload,
token=HF_TOKEN,
domain=AUTOTRAIN_BACKEND_API,
).json()
print(project_json_resp)
if project_json_resp["created"]:
payload = {
"split": 4, # use "auto" split choice in AutoTrain
"col_mapping": col_mapping,
"load_config": {"max_size_bytes": 0, "shuffle": False},
}
data_json_resp = http_post(
path=f"/projects/{project_json_resp['id']}/data/{selected_dataset}",
payload=payload,
token=HF_TOKEN,
domain=AUTOTRAIN_BACKEND_API,
params={
"type": "dataset",
"config_name": selected_config,
"split_name": selected_split,
},
).json()
print(data_json_resp)
if data_json_resp["download_status"] == 1:
train_json_resp = http_get(
path=f"/projects/{project_json_resp['id']}/data/start_process",
token=HF_TOKEN,
domain=AUTOTRAIN_BACKEND_API,
).json()
print(train_json_resp)
if train_json_resp["success"]:
st.success(f"βœ… Successfully submitted evaluation job with project ID {project_id}")
st.markdown(
f"""
Evaluation takes appoximately 1 hour to complete, so grab a β˜• or 🍡 while you wait:
πŸ“Š Click [here](https://hf.co/spaces/autoevaluate/leaderboards?dataset={selected_dataset}) \
to view the results from your submission
"""
)
else:
st.error("πŸ™ˆ Oh no, there was an error submitting your evaluation job!")
else:
st.warning("⚠️ No models were selected for evaluation!")