LLM Mastery: ChatGPT, Gemini, Claude, Llama3, OpenAI & APIs
- Описание
- Учебная программа
- FAQ
- Отзывы
Have you ever thought about how Large Language Models (LLMs) are transforming the world and creating unprecedented opportunities?
«AI won’t take your job, but someone who knows how to use AI might,» says Richard Baldwin.
Are you ready to master the intricacies of LLMs and leverage their full potential for various applications, from data analysis to the creation of chatbots and AI agents?
Then this course is for you!
Dive into ‘LLM Mastery: ChatGPT, Gemini, Claude, Llama3, OpenAI & APIs‘—where you will explore the fundamental and advanced concepts of LLMs, their architectures, and practical applications. Transform your understanding and skills to lead in the AI revolution.
This course is perfect for developers, data scientists, AI enthusiasts, and anyone who wants to be at the forefront of LLM technology. Whether you want to understand neural networks, fine-tune AI models, or develop AI-driven applications, this course offers everything you need.
What to expect in this course:
Comprehensive Knowledge of LLMs:
-
Understanding LLMs: Learn about parameters, weights, inference, and neural networks.
-
Neural Networks: Understand how neural networks function with tokens in LLMs.
-
Transformer Architecture: Explore the Transformer architecture and Mixture of Experts.
-
Fine-Tuning: Understand the fine-tuning process and the development of the Assistant model.
-
Reinforcement Learning (RLHF): Dive into reinforcement learning with human feedback.
Advanced Techniques and Future Trends:
-
Scaling Laws: Learn about the scaling laws of LLMs, including GPU and data improvements.
-
Future of LLMs: Discover the capabilities and future developments in LLM technology.
-
Multimodal Processing: Understand multimodality and visual processing with LLMs, inspired by movies like «Her.»
Practical Skills and Applications:
-
Tool Utilization: Use tools with LLMs like calculators and Python libraries.
-
Systems Thinking: Dive into systems thinking and future perspectives for LLMs.
-
Self-Improvement: Learn self-improvement methods inspired by AlphaGo.
-
Optimization Techniques: Enhance LLM performance with prompts, RAG, function calling, and customization.
Prompt Engineering:
-
Advanced Prompts: Master techniques like Chain of Thought and Tree of Thoughts prompting.
-
Customization: Customize LLMs with system prompts and personalize with ChatGPT memory.
-
Long-Term Memory: Implement RAG and GPTs for long-term memory capabilities.
API and Integration Skills:
-
API Basics: Understand the basics of API usage, including OpenAI API, Google Gemini, and Claude APIs.
-
Microsoft and GitHub Copilot: Utilize Microsoft Copilot in 365 and GitHub Copilot for programming.
-
OpenAI API Mastery: Explore functionalities, pricing models, and app creation with the OpenAI API.
AI App Development:
-
Google Colab: Learn API calls to OpenAI with Google Colab.
-
AI Agents: Create AI agents for various tasks in LangChain frameworks like Langgraph, Langflow, Vectorshift, Autogen, CrewAI, Flowise, and more.
-
Security: Ensure security with methods to prevent jailbreaks and prompt injections.
Comparative Insights:
-
Comparing Top LLMs: Compare the best LLMs, including Google Gemini, Claude, and more.
-
Open-Source Models: Explore and utilize open-source models like Llama 3, Mixtral, and Command R+ with the possibility of running everything locally on your PC for maximum security.
Practical Applications:
-
Embedding and Vector Databases: Implement embeddings for RAG.
-
Zapier Integration: Integrate Zapier actions into GPTs.
-
Open-Source LLMs: Install and use LM Studio for local open-source LLMs for maximum security.
-
Model Fine-Tuning: Fine-tune open-source models with Huggingface.
-
API-Based App Development: Create apps with DALL-E, Whisper, GPT-4o, Vision, and more in Google Colab.
Innovative Tools and Agents:
-
Microsoft Autogen: Use Microsoft Autogen for developing AI agents.
-
CrewAI: Develop AI agents with CrewAI.
-
LangChain: Understand the framework with divisions like LangGraph, LangFlow, and more.
-
Flowise: Implement Flowise with function calls and open-source LLM as a chatbot.
Ethical and Security Considerations:
-
LLM Security: Understand and apply security measures to prevent hacking.
-
Future of LLMs: Explore the potential of LLMs as operating systems in robots and PCs.
This course is ideal for anyone looking to delve deeper into the world of LLMs—from developers and creatives to entrepreneurs and AI enthusiasts.
Harness the transformative power of LLM technology to develop innovative solutions and expand your understanding of their diverse applications.
By the end of ‘LLM Mastery: ChatGPT, Gemini, Claude, Llama3, OpenAI & APIs‘ you will have a comprehensive understanding of LLMs, their applications, and the skills to harness their power for various purposes. If you are ready to embark on a transformative journey into AI and position yourself at the forefront of this technological revolution, this course is for you.
Enroll today and start your journey to becoming an expert in the world of Large Language Models!
-
6What This Section Is About?Видео урок
-
7An LLM Consists of Only Two Files Parameter File and a Few Lines of CodeВидео урок
-
8How Are the Parameters Created Pretraining (Initial Training of the LLM)Видео урок
-
9What Is a Neural Network and how it works?Видео урок
-
10How a Neural Network Works in an LLM with TokensВидео урок
-
11The Transformer Architecture Is Not Fully Understood (Yet?)Видео урок
-
12Other Possibilities of the Transformer Architecture: Mixture of Experts ExplaiedВидео урок
-
13After Pretraining Comes Finetuning: The Assistant Model Is CreatedВидео урок
-
14The Final Step: Reinforcement Learning (RLHF)Видео урок
-
15LLM Scaling Laws: To Improve LLM, We Only Need Two Things, GPU & DataВидео урок
-
16Review: What Have You Learned So FarВидео урок
-
17What This Section Is AboutВидео урок
-
18LLMs Can Use Various Tools, Like Calculators, Python Libraries, etc.Видео урок
-
19Multimodality, Visual Processing (Vision), and Image RecognitionВидео урок
-
20Multimodality with Language Like in the Movie "Her"Видео урок
-
21What Could Happen in the Future? Systems Thinking! [Thinking Fast and Slow]Видео урок
-
22Self-Improvement Inspired by AlphaGoВидео урок
-
23Further Ways to Improve LLMs: Prompts, RAG, Customization/System PromptsВидео урок
-
24LLMs as the New Operating System: What the Future Could Look LikeВидео урок
-
25Review: What Have You Learned in This SectionВидео урок
-
26What This Section Is About and the Interface of LLMsВидео урок
-
27What is the Token Limit and why is it importantВидео урок
-
28Why Is Prompt Engineering Important? An Example!Видео урок
-
29Prompt Engineering Basics: Semantic AssociationВидео урок
-
30Prompt Engineering for LLMs: The Simplest Strategies (Structured Prompts)Видео урок
-
313 Important "hacks" for Prompt Engineering and the Instruction PormptingВидео урок
-
32Role Prompting in ChatGPT and other LLMsВидео урок
-
33Shot Prompting: Zero-Shot, One-Shot und Few-ShotВидео урок
-
34Reverse Prompt Engineering and the "OK" TrickВидео урок
-
35Chain of Thought Prompting: Step by Step to the GoalВидео урок
-
36Tree of Thoughts (ToT) PromptingВидео урок
-
37The Combination of Prompting ConceptsВидео урок
-
38Real-World Use Cases for Large Language ModelsВидео урок
-
39Review and a bit of HomeworkВидео урок
-
40What This Section Is AboutВидео урок
-
41The Simplest Form of Personalization: ChatGPT MemoryВидео урок
-
42Customization Through System Prompts and Custom InstructionsВидео урок
-
43In-Context Learning: Short-Term Memory as Simple as PossibleВидео урок
-
44In-Context Learning: "The Short-Term Memory" but Efficient with SPRВидео урок
-
45Embeddings and Vector Databases for RAG: A Detailed ExplanationВидео урок
-
46Long-Term Memory with RAG: As Simple as Possible with GPTs & RAGВидео урок
-
47The GPT Store: Everything You Need to Know & Testing of GPTs for Code, PDFs & YTВидео урок
-
48Three ways to make Money with GPTsВидео урок
-
49First: You need a Builder Profile to generate Leads from GPTsВидео урок
-
50Create a GPT with Knowledge that can generate Leads and makes UpsellsВидео урок
-
51What is a API?Видео урок
-
52Zapier Actions in GPTs: Automate Gmail, Google Docs, & more with the Zapir APIВидео урок
-
53How to Integrate Every API in your GPTВидео урок
-
54Summary: What You Have Learned in This SectionВидео урок
-
55Open-Source vs. Closed-Source LLMsВидео урок
-
56What is the difference: Parameters, Architecture, Pretraining size & moreВидео урок
-
57Google Gemini in the Standard Interface: Everything you need to knowВидео урок
-
58Google Labs with NotebookLM: The Best Method to Learn BooksВидео урок
-
59Claude by Anthropic: An OverviewВидео урок
-
60The Leading Companies Are OpenAI, Google & Anthropic: Many Are Building on ThemВидео урок
-
61Perplexity: Advantages and Disadvantages, and ApplicationsВидео урок
-
62Poe, The Versatile All-in-One PlatformВидео урок
-
63What is the Microsoft Copilot: How it works and is my Data Save?Видео урок
-
64Using Microsoft Copilot in the Web InterfaceВидео урок
-
65Microsoft Copilot PCsВидео урок
-
66Microsoft 365: Differences Between Free and Paid SubscriptionВидео урок
-
67The Right Copilot Subscription and a Free Alternative.Видео урок
-
68Copilot in Microsoft Word: Write Faster Than EverВидео урок
-
69Copilot in Microsoft PowerPoint: The Quick PresentationВидео урок
-
70Copilot in Microsoft Outlook: Write and Reply to Your Emails FasterВидео урок
-
71Copilot in Microsoft Excel: Big Possibilities but Still a Bit EarlyВидео урок
-
72Microsoft Copilot GPT: Create your own personalized ChatBotsВидео урок
-
73GitHub Copilot: The AI Solution for ProgrammersВидео урок
-
74Conclusion on Microsoft CopilotВидео урок
-
75Review of the Closed-Source LLMsВидео урок
-
76What Is This About? APIs of Closed-Source LLMsВидео урок
-
77Overview of the OpenAI APIВидео урок
-
78Pricing Models of the OpenAI APIВидео урок
-
79Important: OpenAI Playground overview and Billing AccountВидео урок
-
80The OpenAI Playgroundin actionВидео урок
-
81The Google Gemini API: Video Analysis and Other FeaturesВидео урок
-
82The Anthropic API for the Claude ModelsВидео урок
-
83Summary of the Closed-Source APIsВидео урок