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A modular framework for evaluating and optimizing RAG pipelines.

Project description

Ragmint

Python License Tests Optuna Status

Ragmint (Retrieval-Augmented Generation Model Inspection & Tuning) is a modular, developer-friendly Python library for evaluating, optimizing, and tuning RAG (Retrieval-Augmented Generation) pipelines.

It provides a complete toolkit for retriever selection, embedding model tuning, automated RAG evaluation, and config-driven prebuilding of pipelines with support for Optuna-based Bayesian optimization, Auto-RAG tuning, chunking, and explainability through Gemini or Claude.


✨ Features

  • Automated hyperparameter optimization (Grid, Random, Bayesian via Optuna).
  • 🤖 Auto-RAG Tuner — dynamically recommends retriever–embedding pairs based on corpus size and document statistics, suggests multiple chunk sizes with overlaps, and can test configurations to identify the best-performing RAG setup.
  • 🧠 Explainability Layer — interprets RAG performance via Gemini or Claude APIs.
  • 🏆 Leaderboard Tracking — stores and ranks experiment runs via JSON or external DB.
  • 🔍 Built-in RAG evaluation metrics — faithfulness, recall, BLEU, ROUGE, latency.
  • 📦 Chunking system — automatic or configurable chunk_size and overlap for documents with multiple suggested pairs.
  • ⚙️ Retrievers — FAISS, Chroma, scikit-learn.
  • 🧩 Embeddings — Hugging Face.
  • 💾 Caching, experiment tracking, and reproducibility out of the box.
  • 🧰 Clean modular structure for easy integration in research and production setups.
  • 🏗️ Langchain Prebuilder — prepares pipelines, applies chunking, embeddings, and vector store creation automatically.
  • ⚙️ Config Adapter (LangchainConfigAdapter) — normalizes configuration, fills defaults, validates retrievers.

🚀 Quick Start

1️⃣ Installation

git clone https://github.com/andyolivers/ragmint.git
cd ragmint
pip install -e .

The -e flag installs Ragmint in editable (development) mode.
Requires Python ≥ 3.9.


2️⃣ Run a RAG Optimization Experiment

python ragmint/main.py --config configs/default.yaml --search bayesian

Example configs/default.yaml:

retriever: faiss
embedding_model: text-embedding-3-small
chunk_size: 500
overlap: 100
reranker:
  mode: mmr
  lambda_param: 0.5
optimization:
  search_method: bayesian
  n_trials: 20

3️⃣ Manual Pipeline Usage

from ragmint.prebuilder import PreBuilder
from ragmint.tuner import RAGMint

# Prebuild pipeline (chunking, embeddings, vector store)
prebuilder = PreBuilder(
    docs_path="data/docs/",
    config_path="configs/default.yaml"
)
pipeline = prebuilder.build_pipeline()

# Initialize RAGMint with prebuilt components
rag = RAGMint(pipeline=pipeline)

# Run optimization
best, results = rag.optimize(validation_set=None, metric="faithfulness", trials=3)
print("Best configuration:", best)

🧩 Embeddings and Retrievers

Ragmint supports a flexible set of embeddings and retrievers, allowing you to adapt easily to various RAG architectures.


🧩 Chunking System

  • Automatically splits documents into chunks with chunk_size and overlap parameters.
  • Supports default values if not provided in configuration.
  • Optimized for downstream retrieval and embeddings.
  • Enables adaptive chunking strategies in future releases.

🧩 Langchain Config Adapter

  • Ensures consistent configuration across pipeline components.
  • Normalizes retriever and embedding names (e.g., faiss, sentence-transformers/...).
  • Adds default chunk parameters when missing.
  • Validates retriever backends and raises clear errors for unsupported options.

🧩 Langchain Prebuilder

Automates pipeline preparation:

  1. Reads documents
  2. Applies chunking
  3. Creates embeddings
  4. Initializes retriever / vector store
  5. Returns ready-to-use pipeline** for RAGMint or custom usage.

🔤 Available Embeddings (Hugging Face)

You can select from the following models:

  • sentence-transformers/all-MiniLM-L6-v2lightweight, general-purpose
  • sentence-transformers/all-mpnet-base-v2higher accuracy, slower
  • BAAI/bge-base-en-v1.5multilingual, dense embeddings
  • intfloat/multilingual-e5-base — ideal for multilingual corpora

Configuration Example

Use the following format in your config file to specify the embedding model:

embedding_model: sentence-transformers/all-MiniLM-L6-v2

🔍 Available Retrievers

Ragmint integrates multiple retrieval backends to suit different needs:

Retriever Description
FAISS Fast vector similarity search; efficient for dense embeddings
Chroma Persistent vector DB; works well for incremental updates
scikit-learn (NearestNeighbors) Lightweight, zero-dependency local retriever

Configuration Example

To specify the retriever in your configuration file, use the following format:

retriever: faiss

🧪 Dataset Options

Ragmint can automatically load evaluation datasets for your RAG pipeline:

Mode Example Description
🧱 Default validation_set=None Uses built-in experiments/validation_qa.json
📁 Custom File validation_set="data/my_eval.json" Load your own QA dataset (JSON or CSV)
🌐 Hugging Face Dataset validation_set="squad" Automatically downloads benchmark datasets (requires pip install datasets)

Example

from ragmint.tuner import RAGMint

ragmint = RAGMint(
    docs_path="data/docs/",
    retrievers=["faiss", "chroma"],
    embeddings=["text-embedding-3-small"],
    rerankers=["mmr"],
)

# Use built-in default
ragmint.optimize(validation_set=None)

# Use Hugging Face benchmark
ragmint.optimize(validation_set="squad")

# Use your own dataset
ragmint.optimize(validation_set="data/custom_qa.json")

🧠 Auto-RAG Tuner

The AutoRAGTuner automatically analyzes your corpus and recommends retriever–embedding combinations based on corpus statistics (size and average document length). It also suggests multiple chunk sizes with overlaps to improve retrieval performance.

Beyond recommendations, it can run full end-to-end testing of the suggested configurations and identify the best-performing RAG setup for your dataset.

from ragmint.autotuner import AutoRAGTuner

# Initialize with your documents
tuner = AutoRAGTuner(docs_path="data/docs/")

# Recommend configurations and suggest chunk sizes
recommendation = tuner.recommend(num_chunk_pairs=5)
print("Initial recommendation:", recommendation)

# Run full auto-tuning on validation set
best_config, results = tuner.auto_tune(validation_set="data/validation.json", trials=5)
print("Best configuration after testing:", best_config)
print("All trial results:", results)

🏆 Leaderboard Tracking

Track and visualize your best experiments across runs.

from ragmint.leaderboard import Leaderboard

lb = Leaderboard("experiments/leaderboard.json")
lb.add_entry({"trial": 1, "faithfulness": 0.87, "latency": 0.12})
lb.show_top(3)

🧠 Explainability with Gemini / Claude

Compare two RAG configurations and receive natural language insights on why one performs better.

from ragmint.explainer import explain_results

config_a = {"retriever": "FAISS", "embedding_model": "OpenAI"}
config_b = {"retriever": "Chroma", "embedding_model": "SentenceTransformers"}

explanation = explain_results(config_a, config_b, model="gemini")
print(explanation)

Set your API keys in a .env file or via environment variables:

export GEMINI_API_KEY="your_gemini_key"
export ANTHROPIC_API_KEY="your_claude_key"

🧩 Folder Structure

ragmint/
├── core/
│   ├── pipeline.py
│   ├── retriever.py
│   ├── reranker.py
│   ├── embeddings.py
│   ├── chunking.py
│   └── evaluation.py
├── integration/
│   ├── config_adapter.py
│   └── langchain_prebuilder.py
├── autotuner.py
├── explainer.py
├── leaderboard.py
├── tuner.py
├── utils/
├── configs/
├── experiments/
├── tests/
└── main.py

🧪 Running Tests

pytest -v

To include integration tests with Gemini or Claude APIs:

pytest -m integration

⚙️ Configuration via pyproject.toml

Your pyproject.toml includes all required dependencies:

[project]
name = "ragmint"
version = "0.1.0"
dependencies = [
  # Core ML + Embeddings
  "numpy<2.0.0",
  "pandas>=2.0",
  "scikit-learn>=1.3",
  "sentence-transformers>=2.2.2",

  # Retrieval backends
  "chromadb>=0.4",
  "faiss-cpu; sys_platform != 'darwin'",       # For Linux/Windows
  "faiss-cpu==1.7.4; sys_platform == 'darwin'", # Optional fix for macOS MPS
  "rank-bm25>=0.2.2",                          # For BM25 retriever

  # Optimization & evaluation
  "optuna>=3.0",
  "tqdm",
  "colorama",

  # RAG evaluation and data utils
  "pyyaml",
  "python-dotenv",

  # Explainability and LLM APIs
  "openai>=1.0.0",
  "google-generativeai>=0.8.0",
  "anthropic>=0.25.0",

  # Integration / storage
  "supabase>=2.4.0",

  # Testing
  "pytest",

  # LangChain integration layer
  "langchain>=0.2.5",
  "langchain-community>=0.2.5",
  "langchain-text-splitters>=0.2.1"
]

📊 Example Experiment Workflow

  1. Define your retriever, embedding, and reranker setup
  2. Launch optimization (Grid, Random, Bayesian) or AutoTune
  3. Compare performance with explainability
  4. Persist results to leaderboard for later inspection

🧬 Architecture Overview

flowchart TD
    A[Query] --> B[Chunking / Preprocessing]
    B --> C[Embedder]
    C --> D[Retriever]
    D --> E[Reranker]
    E --> F[Generator]
    F --> G[Evaluation]
    G --> H[AutoRAGTuner / Optuna]
    H --> I[Suggested Configs & Chunk Sizes]
    I --> J[Best Configuration]
    J -->|Update Params| C

📘 Example Output

[INFO] Starting Auto-RAG Tuning
[INFO] Suggested retriever=Chroma, embedding_model=sentence-transformers/all-MiniLM-L6-v2
[INFO] Suggested chunk-size candidates: [(380, 80), (420, 100), (350, 70), (400, 90), (360, 75)]
[INFO] Running full evaluation on validation set with 5 trials
[INFO] Trial 1 finished: faithfulness=0.82, latency=0.40s
[INFO] Trial 2 finished: faithfulness=0.85, latency=0.44s
...
[INFO] Best configuration after testing: {'retriever': 'Chroma', 'embedding_model': 'sentence-transformers/all-MiniLM-L6-v2', 'chunk_size': 400, 'overlap': 90, 'strategy': 'sentence'}

🧠 Why Ragmint?

  • Built for RAG researchers, AI engineers, and LLM ops
  • Works with LangChain, LlamaIndex, or standalone setups
  • Designed for extensibility — plug in your own retrievers, models, or metrics
  • Integrated explainability and leaderboard modules for research and production

⚖️ License

Licensed under the Apache License 2.0 — free for personal, research, and commercial use.


👤 Author

André Oliveira
andyolivers.com
Data Scientist | AI Engineer

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