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update
Browse files- lm_eval/__init__.py +0 -0
- lm_eval/tasks/__init__.py +0 -0
- lm_eval/tasks/halueval/halueval_qa.yaml +32 -0
- lm_eval/tasks/halueval/utils.py +87 -0
- scripts/data/dialogue_data.json.gz +3 -0
- scripts/data/general_data.json.gz +3 -0
- scripts/data/qa_data.json.gz +3 -0
- scripts/data/summarization_data.json.gz +3 -0
- scripts/halueval-upload-cli.py +69 -0
lm_eval/__init__.py
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lm_eval/tasks/__init__.py
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lm_eval/tasks/halueval/halueval_qa.yaml
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task: halueval_qa
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dataset_path: pminervini/HaluEval
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dataset_name: qa_samples
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output_type: generate_until
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training_split: data
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validation_split: data
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doc_to_text: !function utils.doc_to_text_qa
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doc_to_target: !function utils.doc_to_target_qa
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process_results: !function utils.process_results_qa
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fewshot_delimiter: "\n"
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generation_kwargs:
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until:
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- "\n"
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- "."
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- ","
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do_sample: false
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temperature: 0.0
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filter_list:
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- name: remove_whitespace
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filter:
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- function: remove_whitespace
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- function: take_first
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target_delimiter: " "
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metric_list:
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- metric: em
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aggregation: mean
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higher_is_better: true
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- metric: f1
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aggregation: mean
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higher_is_better: true
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metadata:
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- version: 0.0
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lm_eval/tasks/halueval/utils.py
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from itertools import zip_longest
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import transformers.data.metrics.squad_metrics as squad_metrics
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QA_INSTURCTIONS = """I want you act as an answer judge. Given a question and an answer, your objective is to determine if the provided answer contains non-factual or hallucinated information. You SHOULD give your judgement based on the following hallucination types and the world knowledge.
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You are trying to determine if the answer misunderstands the question context and intention.
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#Question#: What is a rare breed of dog that was derived as a variant of Rat Terrier, Shiloh Shepherd dog or American Hairless Terrier?
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#Answer#: American Hairless Terrier
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#Your Judgement#: No
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You are trying to determine if there is a factual contradiction between the answer and the world knowledge. Some information in the answer might be fabricated.
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#Question#: Are the New Orleans Outfall Canals the same length as the Augusta Canal?
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#Answer#: No, the New Orleans Outfall Canals and the Augusta Canal are not the same length. The Orleans Canal is approximately 3.6 miles (5.8 kilometers) long while the Augusta Canal is approximately 7 miles (11.3 kilometers) long.
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#Your Judgement#: Yes
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#Question#: What U.S Highway gives access to Zilpo Road, and is also known as Midland Trail?
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#Answer#: U.S Highway 70
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#Your Judgement#: Yes
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You are trying to determine if the answer is too general or too specific to answer the question at an appropriate level of specificity.
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#Question#: What genre do Superheaven and Oceansize belong to?
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#Answer#: Superheaven and Oceansize belong to the rock genre.
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#Your Judgement#: No
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#Question#: What profession do Kōbō Abe and Agatha Christie share?
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#Answer#: Playwright.
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#Your Judgement#: No
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You are trying to determine if the answer can be correctly inferred from the knowledge.
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#Question#: Which band has more members, Muse or The Raconteurs?
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#Answer#: Muse has more members than The Raconteurs.
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#Your Judgement#: Yes
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#Question#: Which is currently more valuable, Temagami-Lorrain Mine or Meadowbank Gold Mine?
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#Answer#: Meadowbank Gold Mine, since Meadowbank Gold Mine is still producing gold and the TemagamiLorrain Mine has been inactive for years.
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#Your Judgement#: No
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You should try your best to determine if the answer contains non-factual or hallucinated information according to the above hallucination types. The answer you give MUST be \"Yes\" or \"No\""."""
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def doc_to_text_qa(doc: dict[str, str]) -> str:
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doc_text = QA_INSTURCTIONS + "\n\n#Question#: " + doc["question"] + "\n#Answer#: " + doc["answer"] + "\n#Your Judgement#:"
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return doc_text
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def doc_to_target_qa(doc: dict[str, str]) -> str:
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return doc['hallucination']
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def em(gold_list: list[str], predictions: list[str]):
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# tests for exact match and on the normalised answer (compute_exact)
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em_sum = 0.0
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if len(gold_list) > 1:
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for i in range(len(gold_list)):
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gold_answers = gold_list[0:i] + gold_list[i + 1 :]
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# predictions compared against (n) golds and take maximum
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em_sum += max(squad_metrics.compute_exact(a, predictions) for a in gold_answers)
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else:
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em_sum += max(squad_metrics.compute_exact(a, predictions) for a in gold_list)
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return em_sum / max(1, len(gold_list))
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def compute_metrics(gold_list: list[str], predictions: list[str]) -> dict[str, float]:
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f1_sum = 0.0
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em_sum = 0.0
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is_correct_lst = []
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is_exact_lst = []
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if len(gold_list) > 1:
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for i in range(len(gold_list)):
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gold_answers = gold_list[0:i] + gold_list[i + 1 :]
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# predictions compared against (n) golds and take maximum
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em_sum += max(squad_metrics.compute_exact(a, predictions) for a in gold_answers)
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f1_sum += max(squad_metrics.compute_f1(a, predictions) for a in gold_answers)
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else:
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em_sum += max(squad_metrics.compute_exact(a, predictions) for a in gold_list)
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f1_sum += max(squad_metrics.compute_f1(a, predictions) for a in gold_list)
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return {
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"em": em_sum / max(1, len(gold_list)),
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"f1": f1_sum / max(1, len(gold_list)),
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}
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def process_results_qa(doc: dict[str, str], results):
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gold_list = doc_to_target_qa(doc)
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pred = results[0].strip().split("\n")[0]
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scores = compute_metrics(gold_list, pred)
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return scores
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scripts/data/dialogue_data.json.gz
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version https://git-lfs.github.com/spec/v1
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oid sha256:05caf10c3a95b8102a5c8eda093586daa15d7c633658520dfb1ea938172371cc
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size 1861371
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scripts/data/general_data.json.gz
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version https://git-lfs.github.com/spec/v1
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oid sha256:b380d8c981662d5597eaa9bb5a4116971b915a35f1cbae29af9658fc8776f677
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size 1051292
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scripts/data/qa_data.json.gz
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version https://git-lfs.github.com/spec/v1
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oid sha256:b4b67b18c37f19e12b35b4856d983a8d4d9653aaf5e9940862fd27329b92c00a
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size 1995662
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scripts/data/summarization_data.json.gz
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version https://git-lfs.github.com/spec/v1
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oid sha256:b44a4083b14dd647c0ff7f04de0391fd3860befd0e5ca84c8492b08732270eac
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size 16445285
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scripts/halueval-upload-cli.py
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#!/usr/bin/env python3
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import random
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import requests
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from datasets import load_dataset, Dataset, DatasetDict
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path = 'pminervini/HaluEval'
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API_URL = f"https://datasets-server.huggingface.co/splits?dataset={path}"
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response = requests.get(API_URL)
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res_json = response.json()
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gold_splits = {'dialogue', 'qa', 'summarization', 'general'}
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available_splits = {split['config'] for split in res_json['splits']} if 'splits' in res_json else set()
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name_to_ds = dict()
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for name in gold_splits:
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ds = load_dataset("json", data_files={'data': f"data/{name}_data.json"})
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name_to_ds[name] = ds
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# if name not in available_splits:
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ds.push_to_hub(path, config_name=name)
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def list_to_dict(lst: list) -> dict:
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res = dict()
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for entry in lst:
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for k, v in entry.items():
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if k not in res:
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res[k] = []
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res[k] += [v]
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return res
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for name in (gold_splits - {'general'}):
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random.seed(42)
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ds = name_to_ds[name]
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new_entry_lst = []
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for entry in ds['data']:
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is_hallucinated = random.random() > 0.5
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if name in {'qa'}:
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new_entry = {
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'knowledge': entry['knowledge'],
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'question': entry['question'],
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'answer': entry[f'{"hallucinated" if is_hallucinated else "right"}_answer'],
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'hallucination': 'yes' if is_hallucinated else 'no'
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}
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new_entry_lst += [new_entry]
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if name in {'dialogue'}:
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new_entry = {
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'knowledge': entry['knowledge'],
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'dialogue_history': entry['dialogue_history'],
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'response': entry[f'{"hallucinated" if is_hallucinated else "right"}_response'],
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'hallucination': 'yes' if is_hallucinated else 'no'
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}
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if name in {'summarization'}:
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new_entry = {
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'document': entry['document'],
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'summary': entry[f'{"hallucinated" if is_hallucinated else "right"}_summary'],
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'hallucination': 'yes' if is_hallucinated else 'no'
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}
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new_ds_map = list_to_dict(new_entry_lst)
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new_ds = Dataset.from_dict(new_ds_map)
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new_dsd = DatasetDict({'data': new_ds})
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new_dsd.push_to_hub(path, config_name=f'{name}_samples')
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