1 min readfrom Machine Learning

Thesis: an agent-native workspace for running and tracking ML experiments [P]

Thesis: an agent-native workspace for running and tracking ML experiments [P]
Thesis: an agent-native workspace for running and tracking ML experiments [P]

Hi everyone,

We built Thesis, a workspace for running and tracking ML experiments with an agent in the loop. It can inspect datasets, launch training runs, monitor metrics, and help iterate on experiments from a single interface.

We're aiming to make model development less fragmented by combining experiment orchestration, run tracking, and agent-driven analysis in one place.

Curious what this community thinks: where would this actually save time in your workflow, and where would you still prefer notebooks or scripts?

Demo: https://x.com/eigentopology/status/2044438094653558864

https://preview.redd.it/ni5g8i9zqfvg1.png?width=3454&format=png&auto=webp&s=bd1e75dfb1cde649f3db13337fabab196868b2d6

submitted by /u/thefuturespace
[link] [comments]

Want to read more?

Check out the full article on the original site

View original article

Tagged with

#generative AI for data analysis
#rows.com
#Excel alternatives for data analysis
#natural language processing for spreadsheets
#AI-native spreadsheets
#cloud-native spreadsheets
#conversational data analysis
#AI-driven spreadsheet solutions
#real-time data collaboration
#financial modeling with spreadsheets
#real-time collaboration
#workflow automation
#data analysis tools
#ML experiments
#agent-native workspace
#experiment tracking
#model development
#experiment orchestration
#run tracking
#agent-driven analysis