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A high-performance CLI tool to convert local data science workspaces into LLM-ready context.

Project description

Data2Prompt Banner

PyPI version License Python 3.10+ Status

High-performance codebase-to-prompt orchestration for Data Science workflows and data-heavy projects.

data2prompt is a CLI tool designed to bridge the gap between local data-heavy projects and Large Language Model (LLM) context windows. Unlike generic code-packagers, it provides an intelligent,optimized output for LLM attention mechanism, token-aware representation of a project's structure and content.

📝 Important Note

Data2prompt is purpose-built for data-heavy projects (.csv, .sql, .xlsx, .ipynb), not large pure-code repositories. It intelligently samples and truncates data files to prevent context window explosion while preserving semantic structure.

🎯 Why Data2Prompt?

Generic code-to-prompt tools choke on data files—they either skip them entirely or dump raw CSVs that waste 90% of your context window. Data2Prompt solves this with intelligent sampling, schema extraction, and LLM-optimized formatting specifically designed for data science workflows.

Data2Prompt Comparison

✨ Core Features

  • Smart Jupyter Parsing: Intelligently extracts code, markdown, and text outputs from .ipynb files while stripping heavy Base64 images and raw HTML to preserve context.
  • Multi-Format Sampling: Advanced sampling strategies for CSV, SQL, and Excel files to preserve schema and data context which reduces the data size significantly while extracting the needed context for llm.
  • Stats-Aware Metadata: Each table is annotated with a metadata block — column dtypes, missing counts/percentages, and a describe() summary — all computed on the full dataset (not the sample), so the LLM sees true data quality. Toggle with --no-stats-summary.
  • Schema-Only Mode: --schema-only emits just the structure (columns + dtypes) of your data files, dropping rows entirely — ideal for sharing a project's data shape cheaply.
  • Secret-Safe .env Handling: .env files are surfaced as variable names with redacted values (KEY=<redacted>) so the LLM understands the project's configuration without ever leaking secrets. Disable with --no-env-keys.
  • Direct Clipboard Output: --clipboard copies the generated prompt straight to your system clipboard (no file), using native OS tools with a graceful file fallback.
  • Aggressive truncations: To preserve context, long lines are truncated to neutralize line injections and avoid exploding the context windows, if a tabular data was still to large after sampling it will get truncated to a certain amount, also if a raw text file of unhandled type was too large it will get truncated to a certain amount.
  • Defensive Processing: Automatic binary detection (Null-byte checks), Checks if a file is binary by looking for a Null byte in the first 1024 bytes.
  • Optimized LLM attention: The default output format is markdown with well structured schema and another option is xml output with xml style tags to enhance LLM anchoring for complex analysis and large context windows
  • Token-Aware Output: Real-time token estimation using tiktoken (o200k_base) to ensure prompts fit target LLMs (Claude 3.5, GPT-4o, Gemini 1.5) and advanced offline token counting via regex.
  • Professional TUI: A high-fidelity terminal interface built with Rich, featuring a Matrix-style startup animation and interactive, scrollable reports on Windows.
  • Dynamic Markdown Wrapping: Uses intelligent backtick depth to ensure robust nesting of code blocks in the final output.
  • Gitignore aware: Respects the .gitignore rules by default and you can turn this feature off with cli argument(--no-gitignore) if needed.

🏗️ Architecture & Engineering Standards

This project is a portfolio-grade implementation of the Modular Functional Orchestration (MFO) pattern, reflecting senior-level engineering maturity:

  • Registry & Strategy Patterns: Uses a ParserRegistry for extensible file handling and an OutputGenerator strategy for multiple formats (Markdown, XML).
  • Centralized Configuration: All core logic, magic numbers, and default ignore lists reside in src/data2prompt/constants.py.
  • Strict Type Hinting: Fully typed function signatures (PEP 484) across all modules.
  • UI Encapsulation: All terminal feedback is handled by a dedicated UIHandler, ensuring a clean separation between logic and presentation.

For a deep dive into the system design, see the Architecture Documentation.

🚀 Quick Start

Installation

Ensure you have Python 3.10+ installed.

Recommended — using pipx (installs as a global CLI tool):

Don't have pipx? Install it first:

pip install pipx
pipx ensurepath

Then install data2prompt:

pipx install data2prompt

Alternative — using pip (requires an active virtual environment):

pip install data2prompt

Update to the latest version:

# with pipx
pipx upgrade data2prompt

# with pip
pip install --upgrade data2prompt

Install from the source

# Clone the repository
git clone https://github.com/arianmokhtariha/data2prompt.git
cd data2prompt

# Install normally
pip install .

# Or Install in editable mode
pip install -e .

Usage

Run data2prompt in your project root to generate a structured prompt:

# Basic usage (defaults to markdown output)
data2prompt

# Custom output with xml format and specific sampling
data2prompt --output my_analysis --format xml --csv-sample-size 50 --ignore-folders venv .pytest_cache

CLI Arguments

Argument Description Default
-o, --output Base name of the generated file PROMPT
-f, --format Output format (xml or markdown) markdown
-s, --csv-sample-size Number of random rows to sample from CSVs 15
--max-lines Max lines of text output per notebook cell 40
--max-file-size Max file size in KB to read entirely 70
-c, --clipboard Copy the output to the system clipboard instead of writing a file off
--schema-only Emit only the schema (columns + dtypes) of data files, no rows off
--no-stats-summary Disable the per-table stats block (dtypes, missing %, describe()) on
--no-env-keys Skip .env files entirely instead of listing redacted variable names on

See the CLI Reference for a full list of arguments.

📚 Documentation

Explore the detailed documentation for more information:

🛠️ Developer Setup

To contribute or run tests:

pip install -e .[dev]
pytest

🌟 Show Your Support

If Data2Prompt saves you token costs or speeds up your workflow, consider:

  • ⭐ Starring the repo
  • 🐛 Reporting issues or suggesting features
  • 🔀 Contributing parsers for new file types

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