RAGChecker Paper | Tutorial (English) | 中文教程
RAGChecker is an advanced automatic evaluation framework designed to assess and diagnose Retrieval-Augmented Generation (RAG) systems. It provides a comprehensive suite of metrics and tools for in-depth analysis of RAG performance.
-
Holistic Evaluation: RAGChecker offers
Overall Metrics
for an assessment of the entire RAG pipeline. -
Diagnostic Metrics:
Diagnostic Retriever Metrics
for analyzing the retrieval component.Diagnostic Generator Metrics
for evaluating the generation component. These metrics provide valuable insights for targeted improvements. -
Fine-grained Evaluation: Utilizes
claim-level entailment
operations for fine-grained evaluation. -
Benchmark Dataset: A comprehensive RAG benchmark dataset with 4k questions covering 10 domains (upcoming).
-
Meta-Evaluation: A human-annotated preference dataset for evaluating the correlations of RAGChecker's results with human judgments.
RAGChecker empowers developers and researchers to thoroughly evaluate, diagnose, and enhance their RAG systems with precision and depth.
- [08/16/2024] RAGChecker paper is on arXiv: https://arxiv.org/pdf/2408.08067
RAGChecker paper: https://arxiv.org/pdf/2408.08067
If you use RAGChecker in your work, please cite us:
@misc{ru2024ragcheckerfinegrainedframeworkdiagnosing,
title={RAGChecker: A Fine-grained Framework for Diagnosing Retrieval-Augmented Generation},
author={Dongyu Ru and Lin Qiu and Xiangkun Hu and Tianhang Zhang and Peng Shi and Shuaichen Chang and Jiayang Cheng and Cunxiang Wang and Shichao Sun and Huanyu Li and Zizhao Zhang and Binjie Wang and Jiarong Jiang and Tong He and Zhiguo Wang and Pengfei Liu and Yue Zhang and Zheng Zhang},
year={2024},
eprint={2408.08067},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2408.08067},
}
pip install ragchecker
python -m spacy download en_core_web_sm
Please process your own data with the same format as examples/checking_inputs.json. The only required annotation for each query is the ground truth answer (gt_answer)
.
{
"results": [
{
"query_id": "<query id>", # string
"query": "<input query>", # string
"gt_answer": "<ground truth answer>", # string
"response": "<response generated by the RAG generator>", # string
"retrieved_context": [ # a list of retrieved chunks by the retriever
{
"doc_id": "<doc id>", # string, optional
"text": "<content of the chunk>" # string
},
...
]
},
...
]
}
If you are using AWS Bedrock version of Llama3 70B for the claim extractor and checker, use the following command to run the checking pipeline, the checking results as well as intermediate results will be saved to --output_path
:
ragchecker-cli \
--input_path=examples/checking_inputs.json \
--output_path=examples/checking_outputs.json \
--extractor_name=bedrock/meta.llama3-1-70b-instruct-v1:0 \
--checker_name=bedrock/meta.llama3-1-70b-instruct-v1:0 \
--batch_size_extractor=64 \
--batch_size_checker=64 \
--metrics all_metrics \
# --disable_joint_check # uncomment this line for one-by-one checking, slower but slightly more accurate
Please refer to RefChecker's guidance for setting up the extractor and checker models.
It will output the values for the metrics like follows:
Results for examples/checking_outputs.json:
{
"overall_metrics": {
"precision": 73.3,
"recall": 62.5,
"f1": 67.3
},
"retriever_metrics": {
"claim_recall": 61.4,
"context_precision": 87.5
},
"generator_metrics": {
"context_utilization": 87.5,
"noise_sensitivity_in_relevant": 22.5,
"noise_sensitivity_in_irrelevant": 0.0,
"hallucination": 4.2,
"self_knowledge": 25.0,
"faithfulness": 70.8
}
}
from ragchecker import RAGResults, RAGChecker
from ragchecker.metrics import all_metrics
# initialize ragresults from json/dict
with open("examples/checking_inputs.json") as fp:
rag_results = RAGResults.from_json(fp.read())
# set-up the evaluator
evaluator = RAGChecker(
extractor_name="bedrock/meta.llama3-1-70b-instruct-v1:0",
checker_name="bedrock/meta.llama3-1-70b-instruct-v1:0",
batch_size_extractor=32,
batch_size_checker=32
)
# evaluate results with selected metrics or certain groups, e.g., retriever_metrics, generator_metrics, all_metrics
evaluator.evaluate(rag_results, all_metrics)
print(rag_results)
"""Output
RAGResults(
2 RAG results,
Metrics:
{
"overall_metrics": {
"precision": 76.4,
"recall": 62.5,
"f1": 68.3
},
"retriever_metrics": {
"claim_recall": 61.4,
"context_precision": 87.5
},
"generator_metrics": {
"context_utilization": 87.5,
"noise_sensitivity_in_relevant": 19.1,
"noise_sensitivity_in_irrelevant": 0.0,
"hallucination": 4.5,
"self_knowledge": 27.3,
"faithfulness": 68.2
}
}
)
"""
Please refer to data/meta_evaluation on meta-evaluation for the effectiveness of RAGChecker.
RAGChecker now integrates with LlamaIndex, providing a powerful evaluation tool for RAG applications built with LlamaIndex. For detailed instructions on how to use RAGChecker with LlamaIndex, please refer to the LlamaIndex documentation on RAGChecker integration. This integration allows LlamaIndex users to leverage RAGChecker's comprehensive metrics to evaluate and improve their RAG systems.
See CONTRIBUTING for more information.
This project is licensed under the Apache-2.0 License.