martinstronis65
U P L O A D E R
Ai - Prompt Engineering Techniques
Published 1/2025
Created by Adnan Waheed
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Beginner | Genre: eLearning | Language: English | Duration: 21 Lectures ( 2h 37m ) | Size: 1.33 GB
Fundamentals, Hands-on practice, Zero-shot, chains, langChain, openAI on prompt engineering
What you'll learn
Understand the Fundamentals of Prompt Engineering
Implement Zero-Shot and Few-Shot Learning Techniques
Master Multi-Step Reasoning with Chain of Thought (CoT) Prompting
Apply In-Context Learning Approaches
Design Custom Workflows Using Python and LangChain
Evaluate and Optimize Prompts for Different Use Cases
Leverage Advanced Prompting Techniques
Requirements
No programming experience is needed
Willing to learn more...
Description
Are you ready to revolutionize the way you interact with AI? This course, Prompt Engineering Using Python, is your ultimate guide to mastering the art and science of crafting effective prompts that maximize the potential of OpenAI's GPT models. Whether you're solving complex problems, building AI-powered applications, or enhancing workflows, this course is packed with actionable techniques and real-world examples to take your skills to the next level!From zero-shot learning to advanced chain-of-thought (CoT) reasoning, this course dives deep into the nuances of prompt engineering. You'll explore few-shot learning, in-context learning, and multi-step reasoning, using cutting-edge tools like Python and the LangChain library. With hands-on projects and best practices, you'll gain the confidence to apply these techniques to real-world scenarios.You will learn the following and more in this PRACTICAL COURSE1. Introduction to Prompt EngineeringWhat is prompt engineering, and why does it matter?The principles of crafting effective prompts.Introduction to OpenAI's GPT models and their capabilities.2. Zero-Shot and Few-Shot LearningOverview of zero-shot and few-shot learning techniques.Practical implementation in Python using real-world examples.Best practices for example selection in few-shot learning.3. In-Context LearningUnderstanding in-context learning and its applications.Designing prompts with contextual examples to improve model responses.Real-world scenarios for in-context learning.4. Chain of Thought (CoT) PromptingBreaking down complex problems with CoT reasoning.Comparing CoT performance against standard prompts.Advanced CoT techniques for multi-step problem-solving.5. Python and LangChain IntegrationIntroduction to the LangChain library for prompt engineering workflows.Building interactive applications with LangChain and OpenAI models.Automating and scaling prompt-based tasks in Python.6. Evaluation and OptimizationHow to test and refine prompts for accuracy and relevance.Performance evaluation: Comparing results across use cases.Tips for optimizing prompts for specific industries or challenges.7. Hands-On ProjectsDesign AI workflows for real-world problems (content creation, coding assistants, customer support, etc.).Build and deploy an AI-powered application using LangChain and Python.Are you ready to become a master in prompt engineering? This is more than just a course-it's your gateway to building intelligent, impactful AI applications. Gain practical skills, learn industry-leading techniques, and join a growing community of AI innovators. Don't wait-enroll now and start shaping the future with AI! Click Join Now to begin your journey to AI Prompt Engineering mastery!
Who this course is for
Want to master on "How to talk" to large language models
Individuals interested in understanding and leveraging the power of AI and OpenAI's GPT models.
Professionals who want to enhance their AI workflows by mastering few-shot learning, in-context learning, and multi-step reasoning.
Creatives who want to utilize AI for generating content, ideas, or solutions in innovative ways.
Developers looking to integrate prompt engineering techniques into their Python projects and applications.
Homepage
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!