Learn Features Of Ai : Complete Prompt Engineering Bootcamp
Last updated 10/2025
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Language: English | Duration: | Size: 343 MB
Master Practical Prompt Engineering for ChatGPT, API to Build Smarter AI Workflows and Real-World Applications
What you'll learn
Understand how prompt design influences ChatGPT outputs
Master key LLM controls (system messages, temperature, top_p, max_tokens, penalties).
Learn the different types of prompts (instruction, few-shot, chain-of-thought, role, etc.).
Grasp tokens, cost, and latency trade-offs for efficiency.
Design, test, and iterate prompts across multiple use-cases (summarization, coding, data extraction, customer support, content generation).
Build a library of reusable prompt templates.
Apply chaining methods to connect multiple AI steps into workflows.
Use tools and APIs (ChatGPT Playground, LangChain, PromptLayer) to automate workflows.
Measure prompts with qualitative and quantitative metrics (accuracy, F1, BLEU/ROUGE, user satisfaction).
Run A/B testing to compare prompt variations.
Optimize for cost and latency in real deployments.
understand why hallucinations happen and how to mitigate them.
Implement guardrails (refusal prompts, style constraints, profanity/PII filters).
Apply legal, privacy, and safety considerations when deploying AI in production.
Add logging, caching, and observability for scaling.
Plan failover strategies and human-in-loop safeguards.
Optimize tokens and examples for efficiency.
Explore prompt tuning vs. instruction tuning.
Learn retrieval-augmented generation (RAG) basics.
Experiment with multimodal prompts (text + image).
Get an intro to RLHF and future LLM research directions.
Requirements
Basic computer literacy - comfortable with using web apps, browsers, and online tools.
Familiarity with ChatGPT (or similar LLMs) - at least basic experience asking questions and reading outputs.
English proficiency - since prompts and outputs are in English, learners should be able to write clear instructions.
Introductory programming knowledge (optional but helpful) - understanding JSON, variables, or simple Python/JavaScript will help in API and automation lessons, but not mandatory.
Curiosity and problem-solving mindset - willingness to experiment, iterate, and think critically about outputs.
Description
Prompt Engineering & LLM Production Master the practical craft of prompt engineering and learn how to design, test, and deploy reliable AI-driven workflows that power real products. This immersive, hands-on course walks you from first principles to production-ready systems, with a focus on reproducible practices, measurable improvements, and real-world integrations. Whether you want to build smarter content pipelines, automated customer support, or code-generation assistants, this course teaches the exact skills, patterns, and guardrails you'll use every day as an AI prompt engineering practitioner.What this course is (straight, no fluff)This is a pragmatic, exercise-first course on prompt engineering for people who want results - not just theory. You'll learn how to craft prompts that produce consistent outputs, control model behavior (temperature, top_p, tokens, penalties), evaluate and A/B-test prompt variants, chain prompts into multi-step pipelines, and move from manual experimentation into reliable automation using APIs and tooling like LangChain and PromptLayer. The course emphasizes safety, cost-efficiency, and measurable outcomes so you can deploy prompt-based features in production with confidence.Key skills you'll walk away withExpert-level chatgpt prompt engineering techniques: system/user/assistant role design, few-shot teaching, and format enforcement.Robust experiment practices: hypothesis design, A/B testing, logging, and quantitative metrics (accuracy, F1 proxies, user satisfaction).Production patterns: prompt chaining, map-reduce strategies, validation layers, caching, and failover/human-in-the-loop design.Cost & performance optimization: token compression, reuse strategies, and measurable latency/cost tradeoffs.Safety & compliance: anti-hallucination patterns, refusal design, PII handling, and legal/privacy considerations.Tool integration: how to operationalize prompts via API, Playground, LangChain, and prompt logging/versioning with PromptLayer.Who this course is forThis course is built for a broad set of learners who want practical impact from AI
Who this course is for
Aspiring Traders & Investors
Content Creators & YouTubers
AI & Automation Enthusiasts
Entrepreneurs & Side Hustlers
Students & Professionals
Lifelong Learners
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