Developer Tools / AI Workbench / Research Agent

OpenScience

OpenScience is an open-source AI workbench for scientific research. It can read papers, plan hypotheses, write and run code, manage experiments, query scientific databases, and present results in a browser-based workspace.

Clear24/30
Useful27/30
Specific19/20
Complete20/20
OpenScience screenshot

Why it was accepted

The page gives strong evidence of a real AI product with a defined workflow for scientific research, clear install and quickstart steps, and concrete features like agent modes, scientific connectors, browser workspace, and SDK/extensibility support. It is useful for researchers and AI builders looking for a model-agnostic research agent environment.

Weakness

The snapshot does not show the full docs, screenshots, release history, or enough detail on current maintenance and production readiness. It also does not fully clarify the limits of the Atlas managed platform versus the open-source local workflow.

Review status

just now #19 ↓ -2

Last evaluated just now. Current rank #19. Down 2 spots in the rankings.

Score history

90

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