--- license: cc-by-nc-4.0 task_categories: - question-answering language: - en tags: - finance - indian-finance - benchmark - financial-qa - llm-evaluation pretty_name: IndFin-Bench size_categories: - n<1K --- # IndFin-Bench: A Benchmark Grounded in Indian Financial Filings **IndFin-Bench** is a benchmark of 100 hand-curated questions sourced from the corporate filings of Indian listed companies. It is designed to evaluate how accurately LLMs can retrieve and reason over India-specific financial data. Existing financial benchmarks like [FinBen](https://github.com/The-FinAI/FinBen) and [FinQA](https://github.com/czyssrs/FinQA) are built on US market data — SEC filings, 10-K reports, and earnings calls from American corporations. **IndFin-Bench fills this gap for the Indian market**, covering the Ind AS accounting landscape, SEBI disclosure formats, and cross-company reasoning over BSE/NSE-listed equities. --- ## Dataset Summary | | | |---|---| | **Questions** | 100 | | **Companies** | 100+ Indian listed firms | | **Coverage** | FY23 - FY26 | | **Source** | Annual reports, quarterly filings, investor presentations, BSE/NSE disclosures | | **License** | CC-BY-NC 4.0 (with additional restrictions; see below) | --- ## Schema | Field | Description | |---|---| | `Question_Num` | Unique identifier for the question | | `Question` | Natural-language financial query grounded in official filings | | `Complexity_Category` | 4-tier taxonomy from single-company single-fact to multi-company multi-fact | | `Atomic_Fact` | Verified ground truth answer, sourced directly from official filings | --- ## Complexity Levels | Category | Questions | What it tests | |---|---|---| | Single-Company, Single Fact | 38 | Retrieve one specific figure from one company's filing | | Single-Company, Multiple Facts | 33 | Retrieve and synthesise multiple data points from a single company | | Multi-Company, Multiple Facts | 20 | Compare or derive metrics across multiple companies | | Multi-Company, Single Fact | 9 | Retrieve comparable figures across companies and perform comparison | --- ## Usage ```python from datasets import load_dataset ds = load_dataset("CompoundingAI/IndFin-Bench") ``` --- ## Ground Truth Each question has a corresponding **Atomic Fact** — a precise, minimal statement of the correct answer derived directly from official company filings. Every atomic fact has been manually verified against primary filings. --- ## Intended Use & Restrictions This dataset is released under the **Creative Commons Attribution-NonCommercial 4.0 (CC BY-NC 4.0)** license. **IndFin-Bench is strictly intended for evaluation and benchmarking of language models on Indian financial data.** Typical allowed use cases include: - Evaluating LLM performance on financial question answering - Benchmarking retrieval-augmented generation (RAG) systems - Comparing model accuracy across different complexity tiers **Use of this dataset implies agreement with the following restrictions:** - The dataset **must not be used for training, fine-tuning, or improving** any machine learning or AI models. - This includes (but is not limited to): - Supervised training - Fine-tuning or instruction tuning - Reinforcement learning (RL / RLHF) - Retrieval-augmented training pipelines - Synthetic data generation derived from this dataset - The dataset must be used **only for evaluation purposes and not as a training corpus**. --- ## Citation If you use IndFin-Bench in your work, please cite: ``` @dataset{compoundingai2026indfinbench, title={IndFin-Bench: A Pioneering Benchmark Grounded in Indian Financial Filings}, author={CompoundingAI}, year={2026}, url={https://huggingface.co/datasets/CompoundingAI/IndFin-Bench}, license={CC-BY-NC-4.0} } ``` ## Links - [Blog Post](https://compoundingai.in/benchmark) - [CompoundingAI](https://compoundingai.in)