Udemy Coupon for Learn LangChain, Pinecone, OpenAI and Google’s Gemini Models. Find Out Other LangChain Courses and Tutorials from Udemy Learning with Discount Coupon Codes. Hands-On Applications with LangChain, Pinecone, OpenAI, and Google’s Gemini Pro. Build Web Apps with Streamlit.
Top LangChain Course on Udemy -Update (2024)
Learn LangChain, Pinecone, OpenAI and Google’s Gemini Models
** Fully updated in 2024 for the latest versions of LangChain, OpenaAI, Google’s Gemini and Pinecone. **
Master LangChain, Pinecone, OpenAI and Google’s Gemini. Build hands-on generative LLM-powered applications with LangChain. Create powerful web-based front-ends for your generative apps using Streamlit. The AI revolution is here and it will change the world! In a few years, the entire society will be reshaped by artificial intelligence.
By the end of this course, you will have a solid understanding of the fundamentals of LangChain, Pinecone, OpenAI and Google’s Gemini Pro and Pro Vision. You’ll also be able to create modern front-ends using Streamlit in pure Python.
This LangChain course is the 2nd part of “OpenAI API with Python Bootcamp”. It is not recommended for complete beginners as it requires some essential Python programming experience. Currently, the effort, knowledge, and money of major technology corporations worldwide are being invested in AI. In this course, you’ll learn how to build state-of-the-art LLM-powered applications with LangChain.
About LangChain
LangChain is an open-source framework that allows developers working with AI to combine large language models (LLMs) like GPT-4 with external sources of computation and data. It makes it easy to build and deploy AI applications that are both scalable and performant.
It also facilitates entry into the AI field for individuals from diverse backgrounds and enables the deployment of AI as a service.
In this course, we’ll go over LangChain components, LLM wrappers, Chains, and Agents. We’ll dive deep into embeddings and vector databases such as Pinecone.
This will be a learning-by-doing experience. We’ll build together, step-by-step, line-by-line, real-world LLM applications with Python, LangChain, and OpenAI. The applications will be complete and we’ll also contain a modern web app front-end using Streamlit.
We will develop an LLM-powered question-answering application using LangChain, Pinecone, and OpenAI for custom or private documents. This opens up an infinite number of practical use cases.
We will also build a summarization system, which is a valuable tool for anyone who needs to summarize large amounts of text. This includes students, researchers, and business professionals.
I will continue to add new projects that solve different problems. This course, and the technologies it covers, will always be under development and continuously updated.
In this LangChain Course you’ll will learn
- How to Use LangChain, Pinecone, and OpenAI to Build LLM-Powered Applications.
- Learn about LangChain components, including LLM wrappers, prompt templates, chains, and agents.
- Learn about using multimodal Google’s Gemini Pro Vision
- How to integrate Google’s Gemini Pro and Pro Vision AI models with LangChain
- Learn about the different types of chains available in LangChain, such as stuff, map_reduce, refine, and LangChain agents.
- Acquire a solid understanding of embeddings and vector data stores.
- Learn how to use embeddings and vector data stores to improve the performance of your LangChain applications.
- Deep Dive into Pinecone.
- Learn about Pinecone Indexes and Similarity Search.
- Project: Build an LLM-powered question-answering app with a modern web-based front-end for custom or private documents.
- Project: Build a summarization system for large documents using various methods and chains: stuff, map_reduce, refine, or LangChain Agents.
- This will be a Learning-by-Doing Experience. We’ll Build Together, Step-by-Step, Line-by-Line, Real-World Applications (including front-ends using Streamlit).
- You’ll learn how to create web interfaces (front-ends) for your LLM and generative AI apps using Streamlit.
- Streamlit: main concepts, widgets, session state, callbacks.
- Learn how to use Jupyter AI efficiently.
Learn LangChain, Pinecone, OpenAI and Google’s Gemini Models
- Instructor: Andrei Dumitrescu and Crystal Mind Academy
- Duration: 10 hours 50 minutes
- Language: English [Auto], French [Auto], German [Auto], Korean [Auto], Portuguese [Auto], Simplified Chinese [Auto], Spanish [Auto]
- Source: Udemy