lablab.ai logo - Community innovating and building with artificial intelligence
AI HackathonsAI AppsAI TechAI TutorialsAI ArticlesSurgeSponsor

Footer navigation

Community innovating and building with artificial intelligence

Unlocking state-of-the-art artificial intelligence and building with the world's talent

  • Instagram
  • Reddit
  • Twitter/X
  • GitHub
  • Discord
  • HackerNoon

Other group brands:

https://nativelyai.comhttps://surge.lablab.ai/
Links
  • AI Tech
  • AI Hackathons
  • AI Tutorials
  • AI Applications
  • Surge
  • AI Articles
lablab
  • About
  • Brand
  • Hackathon Guidelines
  • Terms of Use
  • Code of Conduct
  • Privacy Policy
Get in touch
  • Discord
  • Sponsor
  • Cooperation
  • Contribute
  • [email protected]

Ā© 2026 NativelyAI Inc. All rights reserved.

2.2.0

Miyamura80

Eito Miyamura@Miyamura80

3

Events attended

1

Submissions made

5+ years of experience

Socials

šŸ¤ Top Collaborators

manuj28 img

Manuj Mishra

šŸ¤“ Latest Submissions

    AutoML Jupyter

    AutoML Jupyter

    Many ML researchers are unhappy with their development process. Coding from scratch is laborious since the process for developing and testing new models is largely the same each time but no-code and low-code platforms do not provide enough granularity to tweak models, loss functions, and training processes. Most ML researchers experiment in Jupyter notebooks. They are quick, composable, and easy to present.However, even with the help of LLMs: - Copy-pasting code between web-interfaces and notebooks is slow - Errors in generated code are difficult to detect and fix - Writing the appropriate prompt to generate correct boilerplate code is still repetitive Our solution takes existing data and a natural language prompt and uses it to build a model that is compatible with the shape and types of the data. It also uses recursive API calls to fix any errors in the generated code by passing them back to the LLM. In the future, this product could be extended to generate code for the full build, train, test, and measure cycle so that researchers can ask for a set of models to be tested, tweak the generated code as needed, and rapidly evaluate the best model for their needs.

    Hackathon link

    10 Jul 2023

šŸ‘Œ Attended Hackathons

    The monday.com AI app hackathon

    The monday.com AI app hackathon

    šŸ”„ 3 days to create your app 🌐 Join the hack in London, Tel Aviv and virtual on lablab.ai šŸ¤ Build alone, or create your team on lablab.ai šŸš€ Have the opportunity to go-to-market and grow your product on the monday app marketplace šŸ“Œ Each team member must register individually. Please note that space is limited for our in-person hackathons. Spots will be allocated on a first-come, first-approved basis.

    Google Vertex AI Hackathon

    Google Vertex AI Hackathon

    šŸš€šŸ’» Be the first to build an AI App on Google's models! Hackathon on July 7-10. šŸ”¬šŸŒ Try new Vertex AI features from Google Cloud Platform. šŸ¤šŸŒ Learn from AI leaders and connect with like-minded people. šŸ› ļøšŸ“± Build apps with the world's best AI tools! šŸ’”šŸŒ Solve real-world problems with Generative AI models

    WebGPU Hackathon

    WebGPU Hackathon

    šŸ”“ An advanced-level hackathon ā± The one-day challenge šŸ§‘ā€šŸ’» Build with the next-gen technology šŸ Complete your app by the end!

šŸ“ Certificates

    Google Vertex AI Hackathon

    Google Vertex AI Hackathon | Certificate

    View Certificate