Complete Generative AI Course With Langchain and Huggingface
Complete Generative AI Course With Langchain and Huggingface, available at $54.99, has an average rating of 4.69, with 203 lectures, based on 1547 reviews, and has 15541 subscribers.
You will learn about Learn to create advanced generative AI applications leveraging the Langchain framework and Huggingface's state-of-the-art models. Understand the architecture and design patterns for building robust generative AI systems. Gain hands-on experience in deploying generative AI models to various environments, including cloud platforms and on-premise servers. Explore different deployment strategies, ensuring scalability and reliability of AI applications. Develop Retrieval-Augmented Generation (RAG) pipelines to enhance the performance and accuracy of generative models by integrating retrieval mechanisms. Learn to seamlessly incorporate Huggingface's pre-trained models into Langchain applications, leveraging their powerful NLP capabilities. Customize and fine-tune Huggingface models to fit specific application requirements and use cases. Work on real-world projects that illustrate the application of generative AI in various domains, such as chatbots, content generation, and data augmentation. This course is ideal for individuals who are Individuals passionate about AI and ML who want to expand their knowledge and skills in generative AI applications. or Professionals looking to enhance their expertise in building and deploying generative AI models, particularly using Langchain and Huggingface. or Developers interested in integrating advanced AI capabilities into their applications and learning about the deployment and optimization of AI models. It is particularly useful for Individuals passionate about AI and ML who want to expand their knowledge and skills in generative AI applications. or Professionals looking to enhance their expertise in building and deploying generative AI models, particularly using Langchain and Huggingface. or Developers interested in integrating advanced AI capabilities into their applications and learning about the deployment and optimization of AI models.
Enroll now: Complete Generative AI Course With Langchain and Huggingface
Summary
Title: Complete Generative AI Course With Langchain and Huggingface
Price: $54.99
Average Rating: 4.69
Number of Lectures: 203
Number of Published Lectures: 203
Number of Curriculum Items: 203
Number of Published Curriculum Objects: 203
Original Price: $19.99
Quality Status: approved
Status: Live
What You Will Learn
- Learn to create advanced generative AI applications leveraging the Langchain framework and Huggingface's state-of-the-art models.
- Understand the architecture and design patterns for building robust generative AI systems.
- Gain hands-on experience in deploying generative AI models to various environments, including cloud platforms and on-premise servers.
- Explore different deployment strategies, ensuring scalability and reliability of AI applications.
- Develop Retrieval-Augmented Generation (RAG) pipelines to enhance the performance and accuracy of generative models by integrating retrieval mechanisms.
- Learn to seamlessly incorporate Huggingface's pre-trained models into Langchain applications, leveraging their powerful NLP capabilities.
- Customize and fine-tune Huggingface models to fit specific application requirements and use cases.
- Work on real-world projects that illustrate the application of generative AI in various domains, such as chatbots, content generation, and data augmentation.
Who Should Attend
- Individuals passionate about AI and ML who want to expand their knowledge and skills in generative AI applications.
- Professionals looking to enhance their expertise in building and deploying generative AI models, particularly using Langchain and Huggingface.
- Developers interested in integrating advanced AI capabilities into their applications and learning about the deployment and optimization of AI models.
Target Audiences
- Individuals passionate about AI and ML who want to expand their knowledge and skills in generative AI applications.
- Professionals looking to enhance their expertise in building and deploying generative AI models, particularly using Langchain and Huggingface.
- Developers interested in integrating advanced AI capabilities into their applications and learning about the deployment and optimization of AI models.
Unlock the full potential of Generative AI with our comprehensive course, “Complete Generative AI Course with Langchain and Huggingface.” This course is designed to take you from the basics to advanced concepts, providing hands-on experience in building, deploying, and optimizing AI models using Langchain and Huggingface. Perfect for AI enthusiasts, developers, and professionals, this course offers a practical approach to mastering Generative AI.
What You Will Learn:
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Introduction to Generative AI:
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Understand the fundamentals of Generative AI and its applications.
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Explore the differences between traditional AI models and generative models.
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Getting Started with Langchain:
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Learn the basics of Langchain and its role in AI development.
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Set up your development environment and tools.
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Huggingface Integration:
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Integrate Huggingface’s state-of-the-art models into your Langchain projects.
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Customize and fine-tune Huggingface models for specific applications.
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Building Generative AI Applications:
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Step-by-step tutorials on creating advanced generative AI applications.
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Real-world projects such as chatbots, content generators, and data augmentation tools.
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Deployment Strategies:
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Learn various deployment strategies for AI models.
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Deploy your models to cloud platforms and on-premise servers for scalability and reliability.
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RAG Pipelines:
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Develop Retrieval-Augmented Generation (RAG) pipelines to enhance AI performance.
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Combine generative models with retrieval systems for improved information access.
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Optimizing AI Models:
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Techniques for monitoring and optimizing deployed AI models.
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Best practices for maintaining and updating AI systems.
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End-to-End Projects:
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Hands-on projects that provide real-world experience.
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Build, deploy, and optimize AI applications from scratch.
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Who Should Take This Course:
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AI and Machine Learning Enthusiasts
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Data Scientists and Machine Learning Engineers
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Software Developers and Engineers
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NLP Practitioners
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Students and Academics
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Technical Entrepreneurs and Innovators
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AI Hobbyists
By the end of this course, you will have the knowledge and skills to build, deploy, and optimize generative AI applications, leveraging the power of Langchain and Huggingface. Join us on this exciting journey and become a master in Generative AI!
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction-What We will Learn In This Course
Lecture 2: Course Materials
Lecture 3: Getting Started With VS Code
Lecture 4: Different Ways Of creating Python Environment
Lecture 5: Solve-Conda Not Recognized Issue
Lecture 6: Python Basics-Syntax And Semantics
Lecture 7: Variables In Python
Lecture 8: Basics DataTypes In Python
Lecture 9: Operators In Python
Chapter 2: Python Control Flow
Lecture 1: Conditional Statements (if, elif, else)
Lecture 2: Loops In Python
Chapter 3: Data Structures Using Python
Lecture 1: Lists and List Comprehension In Python
Lecture 2: Tuples In Python
Lecture 3: Dictionaries In Python
Lecture 4: Real World Use cases Of List
Chapter 4: Functions In Python
Lecture 1: Getting Started With Functions
Lecture 2: More Coding Examples With Functions
Lecture 3: Lambda Function In Python
Lecture 4: Map Function In Python
Lecture 5: Filter Functions In Python
Chapter 5: Importing, Creating Modules And Packages
Lecture 1: Import Modules And Packages In Python
Lecture 2: Standard Libraries Overview In Python
Chapter 6: File Handling In Python
Lecture 1: File Operations With Python
Lecture 2: Working with File Paths
Chapter 7: Exception Handling
Lecture 1: Exceptiion Handling With try except else and finally blocks
Chapter 8: OOPS Classes And Objects
Lecture 1: Classes And Objects In Python
Lecture 2: Single And Multiple Inheritance
Lecture 3: Polymorphism In OOPS
Lecture 4: Encapulation In OOPS
Lecture 5: Abstraction In OOPS
Lecture 6: Magic Methods In Python
Lecture 7: Operator Overloading In Python
Chapter 9: Streamlit With Python
Lecture 1: Getting Started With Streamlit
Lecture 2: Example Of ML APP With Streamlit
Chapter 10: Machine Learning For NLP (Prerequisites)
Lecture 1: Roadmap To Learn NLP
Lecture 2: Practical Usecases Of NLP
Lecture 3: Tokenization and Basic Terminologies
Lecture 4: Tokenization Practicals
Lecture 5: Text Preprocessing Stemming Uing NLTK
Lecture 6: Text Preprocessing Lemmatization
Lecture 7: Text Preprocessing Stopwords
Lecture 8: Parts Of Speech Tagging Using NLTK
Lecture 9: Named Entity Recognition
Lecture 10: Whats Next
Lecture 11: One Hot Encoding
Lecture 12: Advantages and Disadvantages of OHE
Lecture 13: Bag Of Words Intuition
Lecture 14: Advantages and Disadvantages Of BOW
Lecture 15: BOW Implementation Using NLTK
Lecture 16: N Grams
Lecture 17: N gram Implementation USing NLTK
Lecture 18: TF-IDF Intuition
Lecture 19: Advantages and Disadvanatges OF TFidf
Lecture 20: TFIDF Practical Implementation
Lecture 21: Word Embeddings
Lecture 22: Word2vec Intuition
Lecture 23: Word2vec CBOW Detailed Explanation
Lecture 24: SkipGram Indepth Intuition
Lecture 25: Advantages OF Word2vec
Lecture 26: Word2vec Practical Implementation
Chapter 11: Deep Learning For NLP(Prerequisites)
Lecture 1: Introduction To NLP In Deep Learning
Lecture 2: ANN VS RNN
Chapter 12: Simple RNN Indepth Intuition
Lecture 1: RNN Forward Propogation With Time
Lecture 2: Simple RNN Backward Propogation
Lecture 3: Problems With RNN
Chapter 13: ANN Project Implementation
Lecture 1: Discussing Classification Problem Statement And Setting Up Vs Code
Lecture 2: Feature Transformation Using Sklearn With ANN
Lecture 3: Step By Step Training With ANN With Optimizer and Loss Functions
Lecture 4: Prediction With Trained ANN Model
Lecture 5: Integrating ANN Model With Streamlit Web APP
Lecture 6: Deploying Streamlit web app with ANN Model
Lecture 7: ANN Regression Practical Implementation
Lecture 8: Finding Optimal Hidden Layers And Hidden Neurons In ANN
Chapter 14: End To End Deep Learning Projects With Simple RNN
Lecture 1: Problem Statement
Lecture 2: Getting Started With Embedding Layers
Lecture 3: Implementing Word Embedding With Keras Tensorflow
Lecture 4: Loading And Understanding IMDB Datatset And Feature Engineering
Lecture 5: Training Simple RNN With Embedding Layers
Lecture 6: Prediction From Trained Simple RNN
Lecture 7: End To End Streamlit Web App Integrated With RNN And Deployment
Chapter 15: LSTM RNN Indepth Intuition
Lecture 1: Why LSTM RNN
Lecture 2: LSTM RNN Architecture
Lecture 3: Forget Gate In LSTM RNN
Lecture 4: Input Gate And Candidate Memory In LSTM RNN
Lecture 5: Output Gate In LSTM RNN
Instructors
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Krish Naik
Chief AI Engineer -
KRISHAI Technologies Private Limited
Artificial intelligence and machine learning engineer
Rating Distribution
- 1 stars: 8 votes
- 2 stars: 14 votes
- 3 stars: 62 votes
- 4 stars: 470 votes
- 5 stars: 993 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
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