Best used with an AI agent

40+ live apps, open data APIs, MCP servers, and 200+ guides - more than anyone wants to click through. Point your AI here and it reads the whole map and does the work: finds the tool, pulls the data, runs the analysis, and hands you the links.

Here for the open-source code? Your agent finds the right repo for you - and can even clone and deploy it.

Prefer to explore on your own? Go right ahead.

Paste this to Claude Code, Codex, or any AI agent:
Go to tigzig.com and read tigzig.com/llms.txt. It is a practitioner toolkit - 40+ analytics apps, open no-auth data APIs, MCP servers, open-source repos (github.com/amararun), and 200+ build guides. Help me [your task]. Surface the exact links; where there is an API or MCP, call it directly; and if I want to self-host, find the repo and help me deploy it.

Google on a roll - launches DSA - Data Science Agent on Colab. First impression = just brilliant.

Published: March 4, 2025

Video thumbnail

Google Colab recently launched Data Science Agent (DSA)-plans and executes multi-step analysis/modeling in one shot. Meanwhile, Mito-AI Copilot (launched earlier this year) offers a seamless coding experience with Cursor-like chat + built-in data science agent.

So, which one's the best?

Both have strengths. I used Colab exclusively, but Mito-AI pulled me back to Jupyter-huge efficiency boost. Plan on using both- depending on the project. Best of both worlds.

Google Colab edge

More powerful agent, code sharing, easy google drive/sheets access, strong processing speeds, free T4-GPU access. Supports in-cell code generation ....but lacks a true copilot with memory.

But Mito-AI wins big in one area: a seamless copilot experience.

It auto-sends all data schemas (df structures + sample rows) to AI + retains conversation history for real-time AI awareness-big difference. Smooth vibe/ voice coding (Win+H / Cmd+H). Just pip install mito-ai mitosheet and you're set. In the video, I demo a live voice coding for file processing automation to create a datamart.

Role of Data Science Agent

Colab DSA is very powerful (https://lnkd.in/g3ub_84D), and great for the right projects-especially to run a full multi-step workflow in one shot. But I can't see using it for every project. Many require validation against tally numbers and business logic at each step before moving forward. At the same time, I do foresee cases where I'd prefer to run the entire workflow at one go and refine later-Colab DSA would be my choice.

Pricing

Colab is free. Mito-AI offers 1 month/500 free chats, then $20/month with unlimited completions and extras. Open-source version available with your own API key.

Insights and Tips

Build AI Co-Analyst Apps for Analytics & Data Science

Explore 15+ open-source AI analytics apps at tigzig.com-including multi-agent workflows, real-time voice AI, and Python/SQL automation. Connect to any database. Free access, no API key needed. Source codes and build guides included.

AI Advanced Analytics App with Multi Agents (Sequential-LangGraph). https://lnkd.in/g8xPQvb8