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LangChain For Developers: Using OpenAI LLMs in Python

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Ingenium Academy

2:05:04

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  • 1 - What is Langchain.mp4
    02:27
  • 2 - Understanding LLMs.mp4
    06:56
  • 3 - Installing Langchain & Hello World Example.mp4
    03:29
  • 3 - langchain-install-and-helloworld.zip
  • 4 - Different Types of Supported Models.mp4
    02:29
  • 5 - Working with LLM Models.mp4
    04:15
  • 6 - Chat Models In Langchain.mp4
    04:24
  • 7 - What Are Embeddings.mp4
    02:54
  • 8 - Using OpenAI Text Embeddings to Analyze Sentiment.mp4
    05:13
  • 9 - Google Colab Notebook For Langchain Models.html
  • 9 - langchain-models.zip
  • 10 - Prompting Best Practices Formatting Few Shot Prompting & CoT.mp4
    14:36
  • 10 - prompting-best-practices.zip
  • 11 - Using Langchains Builtin Prompt Templates.mp4
    03:14
  • 12 - Output Parsers in Langchain.mp4
    03:55
  • 13 - Google Colab Notebook for Prompt Templates & Output Parsers.html
  • 13 - langchain-prompts-output-parsers.zip
  • 14 - Managing Chatbot Memory in Langchain.mp4
    04:29
  • 14 - memory.zip
  • 15 - What is Chaining.mp4
    01:55
  • 16 - How To Build Chains in Langchain.mp4
    05:35
  • 16 - chaining.zip
  • 17 - Langchain Document Loaders & Vectorstores.mp4
    04:56
  • 17 - articles.csv
  • 17 - langchain-indexes.zip
  • 18 - What are Langchain Agents.mp4
    02:00
  • 19 - Working With Langchain Agents.mp4
    03:21
  • 20 - Building An Arxiv Summarizer Agent.mp4
    01:46
  • 21 - Google Colab Notebook for Langchain Agents.html
  • 21 - langchain-agents.zip
  • 22 - Document Loaders For Different Data Types & Sources.mp4
    05:12
  • 22 - langchain-documentloading.zip
  • 22 - reviews-data.csv
  • 23 - Document Splitting Exploring Different Methods.mp4
    07:36
  • 23 - langchain-documentloading.zip
  • 24 - Recap on Vector Stores.mp4
    04:32
  • 24 - embedding-data-using-vectorstores.zip
  • 25 - Advanced Retrieval Methods.mp4
    07:05
  • 25 - advanced-retrieval-methods.zip
  • 26 - Querying Your Data with Chat Models.mp4
    06:56
  • 26 - talking-about-your-data.zip
  • 27 - Scaling Up Our Arxiv Research Bot.mp4
    07:18
  • 27 - arxiv-research-bot.zip
  • 28 - Utilizing YouTube as a Data Source for Chatbot Models.mp4
    04:45
  • 29 - Hooking Up Our Chatbot to Wikipedia.mp4
    03:46
  • 29 - wikipedia-chatbot.zip
  • Description


    Learn how to connect LangChain to OpenAI to work with LLMs in Python through practical examples.

    What You'll Learn?


    • Learn how to work with Langchain in Python
    • Learn how to build Langchain Agents
    • Learn how embeddings work and how to work with a vector store in Langchain
    • Understand how large language models (LLMs) & embeddings work
    • Learn how to connect Langchain to OpenAI's API suite

    Who is this for?


  • Beginner developers looking to advance their knowledge of LLMs and Langchain
  • Data Scientists looking to learn how to build with Langchain & LLMs
  • What You Need to Know?


  • Little programming experience. This course is for beginners
  • More details


    Description

    This course is designed to empower developers, this comprehensive guide provides a practical approach to integrating LangcChain with OpenAI and effectively using Large Language Models (LLMs) in Python.

    In the course's initial phase, you'll gain a robust understanding of what Langchain is, its functionalities and components, and how it synergizes with data sources and LLMs. We'll briefly dive into understanding LLMs, their architecture, training process, and various applications. We'll set up your environment with a hands-on installation guide and a 'Hello World' example using Google Colab.

    Subsequently, we'll explore the LangChain Models, covering different types such as LLMs, Chat Models, and Embeddings. We'll guide you through loading the OpenAI Chat Model, connecting LangChain to Huggingface Hub models, and leveraging OpenAI's Text Embeddings.

    The course advances to the essential aspect of Prompting & Parsing in LangChain, focusing on best practices, delimiters, structured formats, and effective use of examples and Chain of Though Reasoning (CoT).

    The following sections focus on the concepts of Memory, Chaining, and Indexes in LangChain, enabling you to handle complex interactions with ease. We will study how you can adjust the memory of a chatbot, the significance of Chaining, and the utility of Document Loaders & Vector Stores.

    Finally, you'll delve into the practical implementation of LangChain Agents, with a demonstration of a simple agent and a walkthrough of building an Arxiv Summarizer Agent.

    By the end of this course, you'll have become proficient in using LangChain with OpenAI LLMs in Python, marking a significant leap in your developer journey. Ready to power up your LLM applications? Join us in this comprehensive course!

    Who this course is for:

    • Beginner developers looking to advance their knowledge of LLMs and Langchain
    • Data Scientists looking to learn how to build with Langchain & LLMs

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    Ingenium Academy
    Ingenium Academy
    Instructor's Courses
    Ingenium Academy was founded to solve the problem of there being 1 single go-to resource for math & science education. We believe that education is available but it is disparate and if a person wants to learn an entire subject fully they would need to go to different sources to get a comprehensive education.Ingenium is here to provide a larger breadth & depth of educational content than any other source.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 26
    • duration 2:05:04
    • Release Date 2023/09/04