[P] Open-source agentic AI that reasons through data science workflows — looking for bugs & feedback
Hey everyone,
I’m building an open-source agent-based system for end-to-end data science and would love feedback from this community.
Instead of AutoML pipelines, the system uses multiple agents that mirror how senior data scientists work:
- EDA (distributions, imbalance, correlations)
- Data cleaning & encoding
- Feature engineering (domain features, interactions)
- Modeling & validation
- Insights & recommendations
The goal is reasoning + explanation, not just metrics.
It’s early-stage and imperfect — I’m specifically looking for:
- 🐞 bugs and edge cases
- ⚙️ design or performance improvements
- 💡 ideas from real-world data workflows
Demo: https://pulastya0-data-science-agent.hf.space/
Repo: https://github.com/Pulastya-B/DevSprint-Data-Science-Agent
Happy to answer questions or discuss architecture choices.
submitted by /u/Resident-Ad-3952
[link] [comments]
Like
0
Liked
Liked