submission-form / app.py
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Add dataset card for submissions
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import json
import os
import shutil
from datetime import datetime
from pathlib import Path
import jsonlines
import streamlit as st
from dotenv import load_dotenv
from huggingface_hub import HfApi, Repository
from utils import http_post, validate_json
if Path(".env").is_file():
load_dotenv(".env")
HF_TOKEN = os.getenv("HF_TOKEN")
AUTONLP_USERNAME = os.getenv("AUTONLP_USERNAME")
HF_AUTONLP_BACKEND_API = os.getenv("HF_AUTONLP_BACKEND_API")
LOCAL_REPO = "submission_repo"
LOGS_REPO = "submission-logs"
## TODO ##
# 1. Add check that fields are nested under `tasks` field correctly
# 2. Add check that names of tasks and datasets are valid
MARKDOWN = """---
benchmark: gem
type: prediction
submission_name: {submission_name}
tags:
- evaluation
- benchmark
---
# GEM Submission
Submission name: {submission_name}
"""
def generate_dataset_card(submission_name):
"""
Generate dataset card for the submission
"""
markdown = MARKDOWN.format(
submission_name=submission_name,
)
with open(os.path.join(LOCAL_REPO, "README.md"), "w") as f:
f.write(markdown)
###########
### APP ###
###########
st.title("GEM Submissions")
st.markdown(
"""
Welcome to the [GEM benchmark](https://gem-benchmark.com/)! GEM is a benchmark
environment for Natural Language Generation with a focus on its Evaluation, both
through human annotations and automated Metrics.
GEM aims to:
- measure NLG progress across many NLG tasks across languages.
- audit data and models and present results via data cards and model robustness
reports.
- develop standards for evaluation of generated text using both automated and
human metrics.
Use this page to submit your system's predictions to the benchmark.
"""
)
with st.form(key="form"):
# Flush local repo
shutil.rmtree(LOCAL_REPO, ignore_errors=True)
submission_errors = 0
uploaded_file = st.file_uploader("Upload submission.json file", type=["json"])
if uploaded_file:
if uploaded_file.name != "submission.json":
st.error(f"β›” Invalid filename. Please upload a submission.json file.")
submission_errors += 1
else:
data = str(uploaded_file.read(), "utf-8")
json_data = json.loads(data)
is_valid, message = validate_json(json_data)
if is_valid:
st.success(message)
else:
st.error(message)
submission_errors += 1
with st.expander("Submission format"):
st.markdown(
"""
Please follow this JSON format for your `submission.json` file:
```json
{
"submission_name": "An identifying name of your system",
"param_count": 123, # The number of parameters your system has.
"description": "An optional brief description of the system that will be shown on the results page",
"tasks":
{
"dataset_identifier": {
"values": ["output-0", "output-1", "..."], # A list of system outputs.
"keys": ["gem_id-0", "gem_id-1", ...] # A list of GEM IDs.
}
}
}
```
Here, `dataset_identifier` is the identifier of the dataset followed by
an identifier of the set the outputs were created from, for example
`_validation` or `_test`. For example, the `mlsum_de` test set has the
identifier `mlsum_de_test`. The `keys` field is needed to avoid
accidental shuffling that will impact your metrics. Simply add a list of
IDs from the `gem_id` column of each evaluation dataset in the same
order as your values. Please see the sample submission below:
"""
)
with open("sample-submission.json", "r") as f:
example_submission = json.load(f)
st.json(example_submission)
user_name = st.text_input("Enter your πŸ€— Hub username")
submit_button = st.form_submit_button("Make Submission")
if submit_button and submission_errors == 0:
with st.spinner("⏳ Preparing submission for evaluation ..."):
submission_name = json_data["submission_name"]
submission_name_formatted = submission_name.lower().replace(" ", "-").replace("/", "-")
submission_time = str(int(datetime.now().timestamp()))
# Create submission dataset under benchmarks ORG
submission_repo_id = f"{user_name}__{submission_name_formatted}__{submission_time}"
dataset_repo_url = f"https://huggingface.co/datasets/GEM-submissions/{submission_repo_id}"
repo = Repository(
local_dir=LOCAL_REPO,
clone_from=dataset_repo_url,
repo_type="dataset",
private=False,
use_auth_token=HF_TOKEN,
)
generate_dataset_card(submission_name)
with open(f"{LOCAL_REPO}/submission.json", "w", encoding="utf-8") as f:
json.dump(json_data, f)
# TODO: add informative commit msg
commit_url = repo.push_to_hub()
if commit_url is not None:
commit_sha = commit_url.split("/")[-1]
else:
commit_sha = repo.git_head_commit_url().split("/")[-1]
submission_id = submission_name + "__" + commit_sha + "__" + submission_time
payload = {
"username": AUTONLP_USERNAME,
"dataset": "GEM/references",
"task": 1,
"model": "gem",
"submission_dataset": f"GEM-submissions/{submission_repo_id}",
"submission_id": submission_id,
"col_mapping": {},
"split": "test",
"config": None,
}
json_resp = http_post(
path="/evaluate/create", payload=payload, token=HF_TOKEN, domain=HF_AUTONLP_BACKEND_API
).json()
logs_repo_url = f"https://huggingface.co/datasets/GEM-submissions/{LOGS_REPO}"
logs_repo = Repository(
local_dir=LOGS_REPO,
clone_from=logs_repo_url,
repo_type="dataset",
private=True,
use_auth_token=HF_TOKEN,
)
json_resp["submission_name"] = submission_name
with jsonlines.open(f"{LOGS_REPO}/logs.jsonl") as r:
lines = []
for obj in r:
lines.append(obj)
lines.append(json_resp)
with jsonlines.open(f"{LOGS_REPO}/logs.jsonl", mode="w") as writer:
for job in lines:
writer.write(job)
logs_repo.push_to_hub(commit_message=f"Submission with job ID {json_resp['id']}")
if json_resp["status"] == 1:
st.success(
f"βœ… Submission {submission_name} was successfully submitted for evaluation with job ID {json_resp['id']}"
)
st.markdown(
f"""
Evaluation takes appoximately 1-2 hours to complete, so grab a β˜• or 🍡 while you wait:
* πŸ“Š Click [here](https://huggingface.co/spaces/GEM/results) to view the results from your submission
* πŸ’Ύ Click [here]({dataset_repo_url}) to view your submission file on the Hugging Face Hub
"""
)
else:
st.error("πŸ™ˆ Oh noes, there was an error submitting your submission! Please contact the organisers")
# Flush local repos
shutil.rmtree(LOCAL_REPO, ignore_errors=True)
shutil.rmtree(LOGS_REPO, ignore_errors=True)