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BardeenAgent literally destroyed OpenAI Operator and Claude Computer Use in web scraping benchmarks 🔥🔥 Key stats: - Recall: 66% (double the state-of-the-art) - Cost: 3x cheaper per extracted row Here's the comparison video and method they used and research paper details 👇 1/5 Bardeen vs OpenAI Operator

19,076 次观看 • 1 年前 •via X (Twitter)

12 条评论

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

2/5 Bardeen Agent was 6X Faster and gave 18X more info compare to Claude Computer use for given task here.

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

3/5 How it works: Instead of step-by-step execution prone to errors on large lists, Bardeen Agent uses a two-phase approach. 1. Record: Learns from the first item extracted. 2. Replay: Generates a program using CSS selectors to extract the rest systematically. This avoids compounding errors seen in other agents on scaled tasks.

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

4/5 Research paper “WebLists: Extracting Structured Information From Complex Interactive Websites Using Executable LLM Agents” some authors @arth_bohra, @gcampax, and @saroyanmare active here on X .

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

BardeenAgent is part of the used on Bardeen AI platform: - What it is: AI workflow automation for GTM teams (Sales, Marketing, CS). - How it works: Automates tasks, connects tools (CRMs, comms), runs in your browser. - AI Features: Uses "Playbooks" for lead discovery, data sync, reporting, outreach. - Goal: Acts as an AI assistant to streamline daily GTM work. Try here :

Rainmaker 的头像
Rainmaker2 年前

Which Machine Learning model delivers stronger trading results? Check out this free Substack post where I compare several powerful models that beat the market and show yearly returns of over 20%.

Arth Bohra 的头像
Arth Bohra1 年前

Thank you for the feature!

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

Congrats to you and the team. I was going through the research paper this afternoon and loved the approach of learn, and replay.

Robert 的头像
Robert1 年前

I'm curious how Index will compare, pretty sure will be faster and more reliable with gemini 2.5 pro

Dave Lalande 的头像
Dave Lalande1 年前

This rocks.

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

web agent as extension is my fav always

Michael 的头像
Michael1 年前

This is crazy.

AshutoshShrivastava 的头像
AshutoshShrivastava1 年前

OpenAI Operator was always overrated

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