Prompt Engineering

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Prompt Engineering

Prompt engineering is the art and science of crafting carefully designed inputs (called prompts) to guide artificial intelligence (AI) models, particularly large language models (LLMs) and image generators, toward generating specific, accurate, and desired responses. 

Course Detail

A prompt engineering coursetrains individuals to effectively communicate with and control AI models, maximizing the quality, accuracy, and relevance of the generated outputs. 

The course typically covers:
Core Concepts: Understanding Large Language Models (LLMs) and the structure of effective prompts.
Techniques: Mastering strategies like few-shot learning, role assignment, and Chain-of-Thought (CoT) prompting to improve AI reasoning and performance.
Practical Application: Hands-on experience integrating AI APIs into applications using Python and frameworks like LangChain, including advanced techniques like Retrieval-Augmented Generation (RAG).
Projects & Ethics: Working on real-world projects and understanding the ethical implications and potential “prompt injection” risks associated with AI systems. 
 

Course Features

  • Instruct led interactive session
  • Access session recordings
  • Access session notes
  • Access E-Material
  • Access E-Materials
  • Periodic Assessment and Test
  • 90 Hours (36 Hours Instrector led)
  • Full Lifetime Access
  • Access on Mobile and TV
  • Certificate of Completion

Course Content

11 sections • 28 lecture • 19h 33m total length

Overview of Artificial Intelligence (AI), Machine Learning (ML), and Natural Language Processing (NLP).

Understanding Large Language Models (LLMs) and how they work.

Definition and importance of prompt engineering.

Anatomy of a prompt: instructions, context, examples, and constraints..

Best Practices: Techniques for clarity, specificity, and tone..

Zero-shot, One-shot, and Few-shot Learning: Learning to provide varying levels of context and examples.

Role-Based Prompting: Assigning a persona to the AI model to guide its tone and style.

Chain-of-Thought (CoT) Prompting: Breaking down complex problems into logical steps for better reasoning.

Tree-of-Thought & Self-Refine: Advanced methods for complex problem solving and iterative improvement.

Prompt Hacking/Injection: Understanding potential risks and defenses against prompt injection attacks.

Image Generation: Crafting prompts for text-to-image models (e.g., DALL-E, Stable Diffusion).

API Integration: Hands-on experience using APIs for models like OpenAI or Hugging Face.

Orchestration Tools: Working with libraries like LangChain or LlamaIndex to build complex AI applications.

Retrieval-Augmented Generation (RAG): Using vector databases and RAG pipelines to provide models with external, up-to-date data for factual accuracy.

Programming Basics (if needed): Introduction to Python for building AI workflows and interacting with APIs.

Final Project: A capstone project where learners apply all skills to a real-world problem to build a strong portfolio. 

Evaluation Metrics: Methods to test and assess the quality, consistency, and reliability of AI outputs.

Ethical Considerations: Addressing bias, fairness, transparency, and safety in AI systems.

Industry Applications: Case studies in healthcare, finance, customer service, and content creation.

For trainees, prompt engineering projects should be hands-on, focus on practical problem-solving, and showcase iterative refinement. The goal is to demonstrate an understanding of how to control AI behavior and integrate AI into functional applications.

Here are some project ideas:

1. Building an AI-Powered Customer Support Chatbot with RAG

This project focuses on designing prompts that guide an AI to answer domain-specific questions accurately.

  • Goal: Create a chatbot that can answer FAQs about a specific topic (e.g., university admissions, a small business’s products, or a specific software tool) by pulling information from a provided knowledge base.
  • Skills Developed: Context management, information extraction, and using the Retrieval-Augmented Generation (RAG) technique.
  • Deliverables: A functional chatbot interface (even a basic one using a framework like Flask and OpenAI’s API) and a case study documenting how prompt iterations improved answer accuracy.

2. Automated Content Generation Workflow System

This project involves chaining together multiple prompts to automate a complex task, demonstrating workflow automation skills.

  • Goal: Develop a system where a user inputs a single topic (e.g., “healthy eating habits”), and the AI outputs a full blog post outline, an introductory paragraph in a specific tone, and a set of social media posts to promote it.
  • Skills Developed: Multi-step prompting (prompt chaining), role assignment, tone/style control, and workflow design.
  • Deliverables: A set of refined “master prompts” that reliably produce high-quality, structured content, along with before/after examples of raw AI output versus refined output.

3. AI Resume Reviewer and Formatter

This project focuses on structured data extraction and personalized feedback generation, which is a common business use case for AI.

  • Goal: Build a tool where a user pastes a resume, and the AI, acting as a career coach, extracts key details (skills, experience, education) and provides specific, actionable feedback based on a target job description.
  • Skills Developed: Data extraction, conditional logic in prompts, persona adoption, and generating structured output.
  • Deliverables: The final prompt structure, the code used to implement it (if a full application is built), and a demonstration of how the AI consistently extracts the correct information and provides useful suggestions.

4. Ethical AI & Bias Mitigation Case Study

This is a research-oriented project that is highly valued by employers as it showcases responsible AI development.

  • Goal: Select a potentially sensitive topic (e.g., generating job descriptions or financial advice) and design prompts to produce fair, unbiased, and objective content.
  • Skills Developed: Ethical reasoning, bias detection, prompt refinement for fairness, and critical thinking about AI limitations.
  • Deliverables: A detailed report or case study on the process, including examples of biased initial outputs, the specific prompt changes made to mitigate bias, and the final, ethically sound results.

Feature Courses:

PROMPT ENGINEERING

Talking to AI for a desired task through code, content or images

Gen AI, Core Prompt Techniques, COT, TOT, RAG, AI Tools and Libray, Testing and Evaluation, LLMOps

₹ 32000

AI FULLSTACK DEVELOPER

Skill set to design, develop, and deploy an entire web application

UI/UX:HTML,CSS,BS,JS,React,Angular Back End: C# – ASP.NET, Python, Java Spring Boot, SQL. AI Tools.

₹62000

Develops goal oriented and self sufficient AI Agents, Autonomos AI

Agent design, LangChain, CrewAI, AutoGen, and LangGraph, RAG, AgentOPs, Ethical AI.

₹124000

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