Description
Whether you are targeting to get a job or simply want to enhance your knowledge, this course will help you confidently navigate the world of Prompt Engineering.
What You Will Learn?
Concepts + Practice = Mastery
This course goes beyond theory, giving you ample opportunity to test your knowledge through real-world practice scenarios. You’ll learn how to construct and fine-tune prompts for both simple and complex tasks.
Concept with Hands-on: Through the practice tests, you will develop a strong grasp of the concepts and explore an ample amount of prompt examples to enhance your prompting skills.
Diverse Question Types:
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Concept-Based Questions: Test your foundational knowledge in prompt engineering.
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Scenario-Based Questions: Apply your skills to real-world situations, from optimizing responses to addressing AI model failures.
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Single-Select Questions: Focus on key concepts with questions requiring a single correct answer.
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Multi-Select Questions: Tackle more complex scenarios that demand a deeper understanding and the identification of multiple correct answers.
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Deep dive into prompt engineering principles.
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Solve practice test questions that simulate real-world challenges.
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Understand the refinement in designing prompts for various use cases.
Wide Range of Topics:
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Introduction to Prompt Engineering
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Overview of Prompt Engineering: Its definition, significance, and applications in AI.
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History and Evolution: How prompt engineering has evolved with AI advancements.
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Understanding Language Models
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Basics of models like GPT-3, GPT-4, and others.
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Training Process: How language models are trained and fine-tuned.
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Comparison of language models: GPT, BERT, T5, etc.
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Core Principles of Prompt Design
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Effective prompt structure and components.
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Tokenization’s impact on interpretation.
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Importance of contextual relevance for accurate responses.
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Techniques for Effective Prompt Engineering
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Chain-of-Thought prompting: Breaking complex tasks into simpler prompts.
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Zero-shot, few-shot, multi-shot learning techniques.
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Prompt tuning and optimization for tailored outputs.
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Advanced Prompting Strategies
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In-context learning to guide model behavior.
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Prompt cascading: Using a sequence of prompts for complex outcomes.
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Dynamic prompting: Adapting prompts based on AI responses.
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Ethics and Bias in Prompt Engineering
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How prompts can introduce or mitigate bias.
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Ethical considerations and real-world bias mitigation strategies.
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Use Cases and Applications
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Business applications: Customer support, content creation.
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Creative tasks: Writing, art generation.
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Scientific research: Data analysis, hypothesis generation.
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Tools and Platforms for Prompt Engineering
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AI platforms like OpenAI, ChatGPT, Google Gemini, Microsoft Copilot, Cluade AI etc.
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API integration for prompt-based applications.
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Automating prompt testing with scripts and tools.
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Case Studies and Real-World Examples
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Success stories and failure analysis in prompt design.
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Hands-on projects to apply knowledge practically.
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Best Practices and Common Pitfalls
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Do’s and Don’ts of prompt engineering.
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Debugging and refinement techniques.
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Future of Prompt Engineering
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Emerging trends and innovations in AI.
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Discussions on the role of prompt engineering in AGI (Artificial General Intelligence).
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Interactive Labs and Exercises
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Opportunities for real-time prompt testing and feedback.
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Certification and Career Pathways
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Guidance on industry certifications and job roles in prompt engineering.
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Additional focus on below topics:
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Prompt Structure & Design: Learn how to build effective and efficient prompts.
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Contextual Prompting: Understand how context improves response accuracy.
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Prompt Tuning & Optimization: Fine-tune prompts for advanced use cases.
Practice Makes Perfect:
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Comprehensive Practice Tests: Challenge yourself with a wide range of practice questions.
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Detailed Explanations: Get in-depth explanation for each question to ensure you understand both correct and incorrect answers and the concept behind it.
Why Take This Course?
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Interview Ready: Practice prompt engineering interviews with carefully created practice questions.
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Practical Approach: Hands-on tests reflect real-world scenarios you will encounter in your job or projects.
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Continuous Learning: Stay updated with evolving AI trends and prompt optimization techniques.
Who Should Enroll?
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AI professionals and enthusiasts wanting to enhance their skills.
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Job seekers aiming to crack interviews in the AI domain.
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Students and developers looking to level up their knowledge in prompt engineering.
By the end of this course, you will have a strong understanding of both theoretical concepts and practical tools needed to excel in Prompt Engineering. Whether you want to develop creative AI applications or optimize AI-driven systems for your organization, this course will give you the knowledge and hands-on experience to succeed.
Here are some sample questions:
Q#1. You need the AI to explain a complex medical procedure to a general audience. Which of the following prompts would work best?
A) “Explain open-heart surgery in simple terms.”
B) “Tell me something about heart surgery.”
C) “Describe open-heart surgery with detailed medical terms.”
D) “Give a brief statement on heart-related surgery.”
Answer: A
Explanation:
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Option A (Correct): This prompt specifies the procedure (open-heart surgery) and asks for an explanation in simple terms, making it suitable for a general audience.
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Option B (Incorrect): This prompt is vague and does not specify what aspect of heart surgery to explain or the audience’s knowledge level.
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Option C (Incorrect): While this prompt asks for detailed information, it does not cater to a general audience, as it asks for medical terms.
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Option D (Incorrect): This prompt is too broad and will likely generate a superficial response that may not meet the requirement for explanation.
Q#2. A user asks an AI for medical advice on treatment of a cold. Which of the following would provide the most accurate and helpful response? (Multi-Select)
A) “Give me a list of cold medications.”
B) “Provide a general overview of cold symptoms and management options, including over-the-counter medications and home remedies.”
C) “Explain the science behind the common cold.”
D) “What should I take for my cold?”
Answer: B, D
Explanation:
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Option B (Correct): This prompt ensures a comprehensive response, including symptoms and a range of management options.
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Option D (Correct): Asking what to take for a cold would lead to a more specific recommendation.
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Option A (Incorrect): A simple list of medications may not provide enough context for effective management.
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Option C (Incorrect): Understanding the science behind a cold is interesting but does not provide practical management advice.
Q#3. Which of the following is an effective prompt using In-Context Learning?
A) “Translate: ‘Hola’ → ‘Hello.’ Now, translate: ‘Gracias.'”
B) “Write a sentence in Spanish.”
C) “Translate: ‘Goodbye’ → ‘Adiós.'”
D) “Describe the translation process.”
Answer:
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Correct: A
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Incorrect: B, C, D
Explanation:
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Correct (A): In-Context Learning uses a prompt that includes prior examples to guide the new task.
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Incorrect (B, C, D): These options do not provide in-context examples to guide the model.
Q#4. Which hands-on project would be ideal for students to practice prompt engineering?
A) Creating a chatbot to generate responses based on user questions using varied prompts.
B) Developing an e-commerce platform using JavaScript and Node.js.
C) Building a machine learning pipeline for image classification.
D) Writing a thesis on quantum computing advancements.
Answer: A) Creating a chatbot to generate responses based on user questions using varied prompts.
Explanation:
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Correct: A) A chatbot using varied prompts is a practical and hands-on way to practice prompt engineering techniques.
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Incorrect:
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B) This focuses on full-stack development rather than prompt engineering.
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C) This is related to machine learning but not prompt generation.
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D) Writing a thesis is an academic exercise, not a hands-on prompt project.
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Q#5. You are tasked with automating the process of testing multiple prompts for an AI-driven customer service tool. Which of the following actions would be helpful?
A) Creating a script to test prompts in bulk
B) Manually testing each prompt one by one
C) Monitoring the success rate of prompt outputs
D) Adjusting the script to optimize poor-performing prompts
Answer: A) Creating a script to test prompts in bulk,
C) Monitoring the success rate of prompt outputs,
D) Adjusting the script to optimize poor-performing prompts
Explanation:
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A is correct because bulk testing through scripts speeds up the testing process.
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C is correct as monitoring success rates helps in identifying which prompts need improvement.
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D is correct since automating adjustments can enhance prompt performance.
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B is incorrect as manual testing defeats the purpose of automation.
Who this course is for:
- Anyone Exploring AI-Powered Tools: Perfect for tech enthusiasts who want to explore the growing field of AI tools such as ChatGPT, Google Gemini, Claude AI, and Microsoft Copilot by mastering prompt crafting.
- Business Leaders and Decision Makers: Designed for executives seeking to integrate AI into their businesses, allowing them to design prompts that improve business operations and customer engagement.
- Students and Educators in AI: Suitable for those studying or teaching AI-related subjects, helping them understand how prompt engineering improves the outputs of AI models.
- Content Creators and Marketers: This course is for digital marketers, writers, and creative professionals aiming to use AI to generate engaging, automated content for their audience.
- Professionals in AI-Driven Fields: A great fit for data scientists, machine learning engineers, or developers who wish to optimize their workflows through effective prompt design and AI interaction.
- Beginners in AI and Machine Learning: Ideal for individuals with little to no experience in AI, looking to understand prompt engineering and its role in AI-driven applications and tools.
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