正在加载视频...

视频加载失败

This "AI Software Engineer" is doing something different to everyone else: Databutton specializes in building full-stack applications using React in the front end and Python in the back end. That's it. I think this gives them a huge advantage: They can fine-tune their models on a very focused tech...

49,379 次观看 • 1 年前 •via X (Twitter)

10 条评论

Santiago 的头像
Santiago1 年前

There's also something I haven't seen before: you can show the tool images and ask it to implement something similar to that. You can sign up here: They have a bunch of templates from which you can start. Thanks to the @DatabuttonHQ team for all their support and for collaborating with me on this post.

Jeff Weishaupt 的头像
Jeff Weishaupt1 年前

Focused tech stack seems real smart

Santiago 的头像
Santiago1 年前

Agreed

Universal Basic Autistic 的头像
Universal Basic Autistic1 年前

Cool will check this out

Logan Thorneloe 的头像
Logan Thorneloe1 年前

This is pretty cool. I wonder how necessary training on a specific tech stack will be once generalized models get even better.

MIKAEL 的头像
MIKAEL1 年前

As a non coder who wants to build data based websites, this is exactly what I needed. Thank you!

Santiago 的头像
Santiago1 年前

Cool! Hope it helps!

Dr. Daniel Bender 的头像
Dr. Daniel Bender1 年前

Makes sense to niche down the used frameworks for development. A bit like it is done by many humans who are an expert in one or two programming languages.

Angel 的头像
Angel1 年前

Narrowing the tech stack makes the product more reliable and the experience seamless.

ModestMike 的头像
ModestMike1 年前

It is this very tool that has enabled me to build out a fully functioning, complex app idea in a matter of days. The only thing getting in my way is my ambitions to add more and more given the possibilities available with @DatabuttonHQ 😂

相关视频

99% of AI applications are cool-looking demos. Impressive, but don't get fooled by the hype. It takes a lot to build enterprise-grade products that deliver real value. I have at least three weekly conversations with companies that want to use a Large Language Model with their data. The demand is huge! Here is one idea about what you can do to help. The use cases that most of these companies want to solve are similar: They have an extensive knowledge base and want to build a simple application that uses that information to answer questions. In other words, they need help building Retrieval Augmented Generation (RAG) applications they can use in many different scenarios: 1. To train new employees 2. To help their support team 3. To search old meetings and documents 4. To help with their research However, building these systems is not straightforward. Yes, there's a lot of information online, but there aren't enough people who know how to create solutions that work. Here is the idea: Today, you can build an enterprise-grade RAG application without writing code. A couple of MIT PhDs with 10+ years of experience building AI applications created . It's a no-code platform for building applications using Large Language Models. They are partnering with me on this post. You can use Stack AI to create, test, and deploy an end-to-end production-ready AI system. It's SOC-2, HIPAA, and GDPR compliant and offers SSO, role management, access control, and on-premise deployments. Of course, you can use the platform with any LLM on the market now. It's the whole nine yards for building AI applications. Check them out here: 2023 was about models. 2024 is about the tools using these models to build production-ready applications. That's where I'd start.

Santiago

197,675 次观看 • 2 年前