Loading video...

Video Failed to Load

Go Home

New course with Hugging Face! Building Generative AI Applications with Gradio, taught by Apolinário Passos apolinário, shows you how to quickly create demos of your machine learning applications to test and iterate/share with others. Check it out!

413,191 views • 2 years ago •via X (Twitter)

9 Comments

Healthcare AI Guy's profile picture
Healthcare AI Guy2 years ago

@huggingface @apolinariosteps Andrew, how have the recent developments in AI, such as @OpenAI's ChatGPT help support your ideology for Universal Basic Income (UBI)?

Amit's profile picture
Amit2 years ago

@huggingface @apolinariosteps Page not found.

Abubakar Abid's profile picture
Abubakar Abid2 years ago

@huggingface @apolinariosteps Check out @Gradio on Twitter to learn more!

Joey Ricard 💎's profile picture
Joey Ricard 💎2 years ago

@huggingface @apolinariosteps This is awesome. I’ve seen a couple. I love the free one you dropped. This looks solid.

Squee's profile picture
Squee2 years ago

That's fantastic news, @huggingface and @apolinariosteps! Such courses are pivotal in expanding the horizons of AI application. At #Squee, we're already leveraging the power of #AI and #MachineLearning to redefine productivity - making it more intuitive, efficient, and even delightful. By integrating this cutting-edge technology, we're not just changing what productivity looks like, but how it feels. Looking forward to gleaning insights from your course to further enhance our efforts!

Cristiano De Nobili's profile picture
Cristiano De Nobili2 years ago

@huggingface @apolinariosteps Thanks! Just share to all @picampusschool fellows!

lang tang's profile picture
lang tang2 years ago

@huggingface @apolinariosteps Thanks

Rufus's profile picture
Rufus2 years ago

@huggingface @apolinariosteps Wonderful, I really enjoyed the short course on building LLMs with Langchain.

JharanaRaniRabha's profile picture
JharanaRaniRabha2 years ago

@huggingface @apolinariosteps Sir, is there any hope to join Your Startup @AndrewYNg

Related Videos

Build and customize complex AI applications with a flexible framework in this new short course, Building AI Applications with Haystack. Created in collaboration with deepset, makers of Haystack, and taught by Tuana, who is the developer relations lead for Haystack at deepset. Generative AI technology is changing rapidly and it can be challenging to integrate APIs from different LLMs, vector databases, and various tools such as web search. In this course, you will learn how to use the Haystack framework to make your development process more modular, allowing you to manage complexity and focus more on building your application. In detail, you’ll: - Build a RAG pipeline using Haystack’s main building blocks – components, pipelines, and document stores. - Create custom components in your pipeline by building a Hacker News summarizer that extends your app’s ability to access APIs. - Use conditional routing to create a branching pipeline with a fallback to web search mechanism when the LLM does not have the necessary context to respond to the user's query. - Build a self-reflecting agent for named entity recognition that loops using an output validator custom component. - Create a chat agent using OpenAI's function-calling capabilities which allow you to provide Haystack pipelines as tools to the LLM, enhancing that agent's capabilities. By the end of this course, you will learn a high-level orchestration framework that can help make your applications flexible, extendible, and maintainable, even as the technology stack changes, new user needs arise, and you add new features to your application. Please sign up here:

Andrew Ng

53,788 views • 1 year ago

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 views • 2 years ago