Invest in the world's largest AI community. Earn bonus shares before October 20, 2024.
Back

How to build AI Agents with Claude 3 API in Python

Price
Paid
Tried by
152

About How to build AI Agents with Claude 3 API in Python course

This comprehensive course is designed to equip you with the knowledge and skills to build cutting-edge AI applications using state-of-the-art techniques and tools. You'll delve into the fundamentals of artificial intelligence, explore the power of large language models (LLMs), and learn how to create intelligent systems that can understand, process, and generate human-like text.

Course Highlights:

Understanding AI Foundations: Gain a solid grasp of the core concepts of artificial intelligence and its applications in various industries. Large Language Models (LLMs): Discover the capabilities and inner workings of LLMs, the driving force behind many AI-powered solutions. Transformers: Uncover the revolutionary architecture that powers LLMs and understand how they process and generate text. RAG, Fine-Tuning, Prompting: Master advanced techniques like Retrieval Augmented Generation (RAG), fine-tuning, and few-shot prompting to optimize model performance and create tailored AI applications. Prompt Engineering: Learn the art of crafting effective prompts to elicit accurate and relevant responses from AI models. Claude API Overview: Explore the Claude API, a powerful tool for building AI applications. Understand its model differences, pricing structure, and available client libraries. AI Application Architecture: Design and implement robust architectures for AI applications, considering rate limits and performance optimization. Building a RAG System: Learn how to build a RAG system from scratch, including context retrieval and reranking for improved results. AI Agents: Discover the concept of AI agents and their role in creating interactive and autonomous AI applications. By the end of this course, you will be able to:

Explain the core concepts of artificial intelligence and LLMs.

Utilize transformer architectures and understand their role in language processing. Apply advanced techniques like RAG, fine-tuning, and few-shot prompting to optimize AI model performance. Develop expertise in prompt engineering to elicit desired responses from AI models. Leverage the Claude API to build AI applications, understanding model variations, pricing, and client libraries. Design and implement effective AI application architectures, considering rate limits and performance optimization. Build a RAG system from scratch, incorporating context retrieval and reranking. Understand the concept of AI agents and their role in creating interactive and intelligent systems.

Whether you're a beginner or an experienced developer, this course will provide you with the foundation and practical skills to build innovative AI applications that can transform industries and improve lives. Join us on this exciting journey into the world of AI development!

Company
Udemy
Resources

More gallery

Similar courses

Artificial Intelligence for Beginners - A Curriculum
Explore the world of Artificial Intelligence (AI) with Microsoft's 12-week, 24-lesson curriculum! Dive into Symbolic AI, Neural Networks, Computer Vision, Natural Language Processing, and more. Hands-on lessons, quizzes, and labs enhance your learning. Perfect for beginners, this comprehensive guide, designed by experts, covers TensorFlow, PyTorch, and ethical AI principles. Start your AI journey today!" In this curriculum, you will learn: - Different approaches to Artificial Intelligence, including the "good old" symbolic approach with Knowledge Representation and reasoning (GOFAI). - Neural Networks and Deep Learning, which are at the core of modern AI. We will illustrate the concepts behind these important topics using code in two of the most popular frameworks - TensorFlow and PyTorch. - Neural Architectures for working with images and text. We will cover recent models but may lack a little bit on the state-of-the-art. - Less popular AI approaches, such as Genetic Algorithms and Multi-Agent Systems. What we will not cover in this curriculum: - Business cases of using AI in Business. Consider taking Introduction to AI for business users learning path on Microsoft Learn, or AI Business School, developed in cooperation with INSEAD. - Classic Machine Learning, which is well described in our Machine Learning for Beginners Curriculum. - Practical AI applications built using Cognitive Services. For this, we recommend that you start with modules Microsoft Learn for vision, natural language processing, Generative AI with Azure OpenAI Service and others. - Specific ML Cloud Frameworks, such as Azure Machine Learning, Microsoft Fabric, or Azure Databricks. Consider using Build and operate machine learning solutions with Azure Machine Learning and Build and Operate Machine Learning Solutions with Azure Databricks learning paths. - Conversational AI and Chat Bots. There is a separate Create conversational AI solutions learning path, and you can also refer to this blog post for more detail. - Deep Mathematics behind deep learning. For this, we would recommend Deep Learning by Ian Goodfellow, Yoshua Bengio and Aaron Courville, which is also available online at https://www.deeplearningbook.org/. For a gentle introduction to AI in the Cloud topics you may consider taking the Get started with artificial intelligence on Azure Learning Path. Go to github course page
by Genai Works

Last Reviews

Add review
Review *
Oops! It looks like you need to sign up
Before leaving a review you need to create an account. Don't worry, it only takes a moment and gives you access to exclusive content and updates. Ready to get started?
Menu
Join us on
All rights reserved © 2024 Genai Works