Machine Learning And Data Science With Langchain And Llms
Published 9/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 831.49 MB | Duration: 2h 22m
Master LangChain & LLMs: Build AI-Powered Data Science Solutions with Machine Learning, NLP, and Data Analysis
[b]What you'll learn[/b]
Understand the fundamentals of Machine Learning and Data Science.
Learn the basics of Large Language Models (LLMs) and their applications.
Gain proficiency in using LangChain for building advanced AI workflows.
Implement data processing and analysis techniques using LangChain.
Develop skills in integrating LLMs into Data Science projects.
Build custom Machine Learning models with LangChain.
Explore how to fine-tune LLMs for specific data science tasks.
Learn to use LangChain for natural language processing (NLP) tasks.
Design and create automated data pipelines using LangChain.
Implement real-world Machine Learning solutions using LLMs and LangChain.
Understand best practices for deploying LLMs in data science projects.
Master techniques for evaluating and optimizing LLM-based models.
Use LangChain to build and deploy AI-driven data science applications.
Apply LLMs to perform complex data analysis and insights extraction.
Gain hands-on experience in using LangChain for end-to-end AI and ML solutions.
[b]Requirements[/b]
No experience is required. A bit of Python will come in handy.
[b]Description[/b]
Welcome to "Machine Learning and Data Science with LangChain and LLMs"! This comprehensive course is designed to equip you with the skills and knowledge needed to harness the power of LangChain and Large Language Models (LLMs) for advanced data science and machine learning tasks.In today's data-driven world, the ability to process, analyze, and extract insights from large volumes of data is crucial. Language models like GPT have transformed how we interact with and utilize data, allowing for more sophisticated natural language processing (NLP) and machine learning applications. LangChain is an innovative framework that enables you to build applications around these powerful LLMs. This course dives deep into the integration of LLMs within the data science workflow, offering hands-on experience with real-world projects.What You Will Learn?Throughout this course, you will gain a thorough understanding of how LangChain can be utilized in various data science applications, along with the practical knowledge of how to apply LLMs in different scenarios. Starting with the basics of machine learning and data science, we gradually explore the core concepts of LLMs and how LangChain can enhance data-driven solutions.Key Learning Areas:1. Introduction to Machine Learning and Data Science: Begin your journey by understanding the core principles of machine learning and data science, including the types of data, preprocessing techniques, and model-building strategies.2. Exploring Large Language Models (LLMs): Learn what LLMs are, how they function, and their applications in various domains. This section covers the latest advancements in language models, including their architecture and capabilities in text generation, classification, and more.3. LangChain Fundamentals: Discover the potential of LangChain as a tool for developing robust AI applications. Understand the fundamental components of LangChain and how it can simplify the integration and use of LLMs in your data science projects.4. Building AI Workflows: Learn how to leverage LangChain to construct end-to-end AI workflows. This includes setting up automated data pipelines, creating machine learning models, and utilizing LLMs for advanced NLP tasks like sentiment analysis, summarization, and question-answering.5. Hands-on Data Analysis with LangChain: Dive into practical data analysis using LangChain. We guide you through real-world examples, teaching you how to preprocess and analyze data efficiently. By the end of this module, you'll be able to apply various data science techniques using LangChain and LLMs.6. Model Building and Fine-tuning: Gain hands-on experience in building machine learning models and fine-tuning LLMs for specific data science tasks. Learn how to optimize these models for better performance and accuracy, ensuring they provide valuable insights from data.7. NLP and Text Processing: Explore how to use LangChain for natural language processing tasks. From text classification to sentiment analysis and language translation, you'll learn to build and deploy NLP models that can handle complex language data.8. Deploying and Integrating LLMs: Understand best practices for deploying LLMs within your projects. Learn how to seamlessly integrate LLMs into existing data workflows, build AI-driven applications, and create automated solutions for complex data challenges.9. Real-world Projects and Applications: Put your learning into practice with hands-on projects. This course includes real-world case studies and practical examples, helping you apply what you've learned to solve genuine data science problems using LangChain and LLMs.Who Should Enroll?This course is perfect for data scientists, machine learning engineers, AI enthusiasts, developers, students, researchers, and professionals looking to transition into AI and machine learning fields. A basic understanding of Python programming is recommended, but the course is structured to be accessible to both beginners and those with some experience in data science and machine learning.Why Take This Course?By the end of this course, you will have a strong foundation in using LangChain and LLMs for data science and machine learning tasks. You will be able to build AI-powered applications, deploy advanced data analysis models, and tackle complex natural language processing challenges. Whether you are looking to upskill, change your career path, or simply stay at the forefront of AI technology, this course will provide you with the practical skills and knowledge needed to succeed.Enroll now and embark on your journey to mastering LangChain and Large Language Models for machine learning and data science!
Overview
Section 1: Introduction
Lecture 1 Sequence Modeling
Lecture 2 Recurrent Neural Networks
Lecture 3 Elman RNN
Lecture 4 Continuing from Last Lecture
Lecture 5 Classifying Surname Nationality Using a Character RNN
Lecture 6 Vectorization Data Structures
Lecture 7 END-OF-SEQUENCE and SurnameVectorizer
Lecture 8 Continuing from Last Lecture
Lecture 9 Unconditioned SurnameGenerationModel
Lecture 10 Continuing from Last Lecture
Lecture 11 Conditioned SurnameGenerationModel
Lecture 12 Training Routine and Results
Lecture 13 Continuing from Last Lecture
Lecture 14 Machine Translation Dataset
Lecture 15 Vectorization Pipeline for NMT
Lecture 16 Continuing from Last Lecture
Lecture 17 Encoding and Decoding
Lecture 18 NMTDecoder constructs
Professionals looking to enhance their knowledge of LLMs and integrate LangChain into their data science and machine learning projects.,Individuals with a keen interest in natural language processing and AI who want to leverage LangChain for building and deploying LLM-based applications.,Those with a background in programming who are eager to explore how LangChain can be used for creating AI-driven data solutions.,Learners in academia studying AI, machine learning, or data science who wish to understand the latest trends in LLMs and their practical implementations using LangChain.,IT professionals, analysts, or business intelligence specialists looking to pivot into AI and machine learning with a focus on LLMs and data science.
https://ddownload.com/sohu39l3pkhe/.Machine.Learning.and.Data.Science.with.LangChain.and.LLMs.rar
https://rapidgator.net/file/b164ffbaf58deb2da81a28bc60a9f900/.Machine.Learning.and.Data.Science.with.LangChain.and.LLMs.rar
https://turbobit.net/s0kfzlakt324/.Machine.Learning.and.Data.Science.with.LangChain.and.LLMs.rar.html