AI+ Context Engineering™

# AP 3309

Master AI+ Context Engineering for Production-Grade AI Systems
  • Context Strategy & Architecture: Learn how to design robust context architectures that go beyond prompts—managing instructions, memory, tools, and knowledge for reliable AI behavior across sessions and workflows.
  • Building Context-Aware AI Systems: Gain hands-on skills in implementing context pipelines, RAG architecture, and memory systems that ensure grounded, accurate, and cost-efficient AI outputs.
  • Context Management & Optimization: Master the Write-Select-Compress-Isolate (W-S-C-I) framework to control relevance, reduce hallucinations, optimize token usage, and scale AI systems effectively.
  • Enterprise-Grade Context Integration: Learn how to integrate AI safely into enterprise environments with role-based access, compliance guardrails, secure memory, and conflict-free context orchestration.
  • Future-Ready Agent & Workflow Design: Prepare for the next wave of AI by designing multi-agent systems, automated workflows, and context-driven architectures that remain reliable as models, tools, and scale evolve.

$195.00

High-Quality Video, E-book & Audiobook
Modules Quizzes
AI Mentor
Access for Tablet & Phone
Online Proctored Exam with One Free Retake
Hands-on Practices

Prerequisites

  • Basic Programming Knowledge: Familiarity with Python, Java, or similar languages.
  • Understanding of AI Concepts: Basic knowledge of machine learning and AI.
  • Data Handling Skills: Ability to work with datasets and preprocessing techniques.
  • Experience with IoT: Familiarity with Internet of Things applications.
  • Familiarity with Cloud Platforms: Basic knowledge of cloud-based AI services

Exam Details

Exam Blueprint

ModulesPercentage
Foundations of Context Engineering7
Context Management Patterns & Techniques 15
The Context Pipeline, RAG, and Grounding Architecture 15
Optimization, Scaling, and Enterprise Readiness15
Context Flow Design for Business Users (No-Code AI)12
Real-World Industry Context Applications12
Multi-Agent Orchestration & The Future12
Capstone Project12

Self Study Materials Included

Videos
Engaging visual content to enhance understanding and learning experience.
Podcasts
Insightful audio sessions featuring expert discussions and real-world cases.
E-Books
Comprehensive digital guides offering in-depth knowledge and learning support.
Audiobooks
Listen and learn anytime with convenient audio-based knowledge sharing.
Module Wise Quizzes
Interactive assessments to reinforce learning and test conceptual clarity.
Additional Resources
Supplementary references and list of tools to deepen knowledge and practical application.
Hands-on
Practical experience through real-world exercises, case studies, and applied learning.

Tools You'll Master

LangChain and LangGraph
LlamaIndex
Vector Databases (Pinecone, Chroma)
n8n, Zapier, Make.com
Embedding Models and RAG Pipelines
No-Code Automation Platforms
Enterprise Data and API Integrations

What Will You Learn?

Context Engineering Foundations (Beyond Prompting)
Understand how to design, manage, and optimize AI context at runtime—moving past naive prompt engineering to systematic control of instructions, memory, tools, and state for reliable AI behavior.
Context Management Strategies (W-S-C-I Framework)
Master the four core strategies—Write, Select, Compress, and Isolate—to control relevance, accuracy, cost, and safety in production AI systems.
Memory Architecture for AI Systems
Learn how to design short-term and long-term memory using vector databases, summarization, and feedback loops to enable continuity, personalization, and long-horizon reasoning.
Retrieval-Augmented Generation (RAG) & Grounding
Build grounded AI systems using RAG pipelines, embedding models, and vector databases to eliminate hallucinations and ensure responses are verifiable and domain-accurate.
Context Pipelines & Orchestration
Design end-to-end context pipelines—from user input to retrieval, compression, assembly, response, and memory updates—using tools like LangChain, LangGraph, and LlamaIndex.

Certification Modules

Module 1: Foundations of Context Engineering – Introduction
  1. 1.1 What is Context Engineering (Beyond Prompt Engineering)
  2. 1.2 From Prompting to Context Pipelines: The 2025 Paradigm Shift
  3. 1.3 The Four Building Blocks of Context: Instructions, Knowledge, Tools, State
  4. 1.4 Short-Term vs Long-Term Memory in LLM Systems
  5. 1.5 Benefits of Context Engineering: Grounding, Relevance, Continuity, Cost Control
  6. 1.6 Use Case: Context-Aware AI Travel Assistant
  7. 1.7 Hands-on: Designing System Instructions and Memory State for a Role-Based AI Agent
Module 2: Context Management Patterns & Techniques
  1. 2.1 The W-S-C-I Framework: Write, Select, Compress, Isolate
  2. 2.2 WRITE Strategy: Agent Identity, Persona, Guardrails, and State
  3. 2.3 SELECT Strategy: Precision Retrieval & Metadata Filtering
  4. 2.4 COMPRESS Strategy: Summarization, Token Optimization, Auto-Compaction
  5. 2.5 ISOLATE Strategy: Context Boundaries, Safety, and Focus
  6. 2.6 Advanced Retrieval Patterns: Hybrid Search, Semantic Chunking
  7. 2.7 Case Study: ChatGPT & Claude Memory Systems
  8. 2.8 Hands-on: Implement Context Selection & Compression Using LangChain / LlamaIndex
Module 3: Context Pipelines, RAG & Grounding Architecture
  1. 3.1 The End-to-End Context Pipeline (Input → Retrieval → Compression → Assembly → Response → Update)
  2. 3.2 Retrieval-Augmented Generation (RAG) Architecture Deep Dive
  3. 3.3 Vector Databases: Pinecone, Chroma & Embedding Models
  4. 3.4 Grounding Failures: Hallucinations, Context Poisoning, Distraction
  5. 3.5 Mitigation Techniques: Rerankers, Provenance, Context Forensics
  6. 3.6 Case Study: Anthropic’s Multi-Agent Researcher (MAR)
  7. 3.7 Hands-on: Build a RAG Pipeline with Vector Search and Grounded Responses
Module 4: Optimization, Scaling & Enterprise Readiness
  1. 4.1 Token Economy & Cost Optimization in Context Pipelines
  2. 4.2 Context Scaling & the Model Context Protocol (MCP)
  3. 4.3 Security & Compliance: PII Filtering, Redaction, Role-Based Access
  4. 4.4 Conflict Resolution & Context Consistency
  5. 4.5 Multi-Modal Context: Text, Tables, PDFs, Video Transcripts
  6. 4.6 Case Studies: Walmart “Ask Sam” & Morgan Stanley Knowledge Assistant
  7. 4.7 Hands-on: Implement Role-Based Context Filtering and Secure Retrieval
Module 5: Context Flow Design for Business Users (No-Code AI)
  1. 5.1 Translating Business Processes into AI-Ready Context Flows
  2. 5.2 Context Flow Diagrams (CFDs) & Automated Workflow Architecture (AWA)
  3. 5.3 Implementing W-S-C-I Visually Using No-Code Tools (n8n / Make / Zapier)
  4. 5.4 Context Templates for Consistency & Structured Outputs
  5. 5.5 Use Case: Dynamic Customer Onboarding Assistant
  6. 5.6 Case Studies: Airbnb Support Automation & HSBC SME Lending
  7. 5.7 Hands-on: Build a Context Flow Using No-Code Orchestration
Module 6: Real-World Industry Context Applications
  1. 6.1 Context Engineering in Regulated Domains
  2. 6.2 Healthcare: Clinical Decision Support & PHI Isolation
  3. 6.3 Finance: Market Analysis, Compliance Summarization & Tool-Based Context
  4. 6.4 Legal & Education: Precision Retrieval & Personalized Learning Context
  5. 6.5 Risk Mitigation: Context Poisoning & Context Clash
  6. 6.6 Advanced Agent Memory for Long-Horizon Tasks
  7. 6.7 Case Studies: Activeloop (Legal/IP) & Five Sigma (Insurance)
Module 7: Multi-Agent Orchestration & the Future
  1. 7.1 Why Monolithic Agents Fail: Context Explosion
  2. 7.2 Multi-Agent Systems (MAS) & Context Isolation
  3. 7.3 Agent Roles: Router, Planner, Executor
  4. 7.4 Agent-to-Agent Context Compression
  5. 7.5 Guardrails, Governance & Inter-Agent Safety
  6. 7.6 Ethics, Bias Mitigation & Source Traceability
  7. 7.7 Case Studies: IBM Watson Orchestrate & Enterprise Context Orchestrators
  8. 7.8 Career Pathways: Context Architect & AI Governance Roles
Module 8: Capstone Project & Certification
  1. 8.1 Capstone Overview: Multi-Agent Context-Aware System
  2. 8.2 Build: Query Router with Financial Calculations & Policy RAG (n8n)
  3. 8.3 Presentation, Review & Feedback
  4. 8.4 Final Evaluation & AI+ Context Engineering Certification

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Frequently Asked Questions

Yes. You’ll learn production-ready patterns for context, memory, RAG pipelines, and multi-agent workflows—skills you can apply right away.
It focuses on reliable AI systems, not just models or prompts—covering context management (W-S-C-I), grounding, tooling, governance, security, and cost control.
You’ll build and design RAG + context pipelines, context flows (no-code), enterprise guardrails, and a multi-agent capstone with policy RAG and tool-based routing.
Modules progress from foundations → patterns → architecture → optimization → real-world deployment, reinforced with case studies and hands-on builds.
It prepares you for roles like Context Architect, RAG/AI Systems Architect, and AI Governance/Reliability Lead by teaching scalable, compliant, production AI design.
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