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Claude AI
Start Here & FAQs
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Start Here: Claude AI
Quick Links: Helpful Resources
2604(April)/2605 (May) Weekend - Course Schedule
2606(June) / 2607(July) Weekend - Course Schedule
Claude: 5 Products (Offerings)
Claude Cowork vs Claude Code
FAQ's: Claude for Agentic AI (SDLC) Program
Q/A: Where is Python (Live & Recording) & Bonuses
2605 - Live Session Recordings
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💡Quizzes
📢 Weekly Recap Announcement Post
Day 1 & Day 2 Recap: Calude for Agentic AI
260516- Day 1 - Foundations of Claude & Agentic AI
260517 - Day 2 - Enterprise Environment Setup
260523 - Day 3 - Scalable Agentic Architectures
260524 - Day 4 - Reliable Agent Prompts
260531 - Day 5 - AI Code Gen & Standards
Module 1: Foundations of Claude and Agentic AI
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L1: Overview of Claude 3.5 Sonnet & Claude 4
L2: What Is Claude? LLMs Explained for Developers
L3: Role of Agents in GenAI Workflows & SDLC
L4: Agentic Loop Lifecycle and Correct Termination
Module 2: Setup Environment & Enterprise
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L1: Your First Claude API Call
L2: Claude Code — What It Is
L3: Setup for UI, Backend & Knowledge Base
L4: API/Platform Access, Integrations & Secret
Lab 2.1: Create & Setup Claude Account
Lab 2.2: Setup VS Code
Lab 2.3: Install & Setup Git, Node.js, Claude Code
Lab 2.4: Install Chrome Extension for Claude
Lab 2.5: Interactive Workspace in Claude Artifact
Module 3 — Designing Scalable Agentic Architecture
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L1: Modular Architecture & The Agent SDK
L2: Task Decomposition and Chaining
L3: Multi-Agent Orchestration
L4: Tool Distribution Across Agents
L5: Writing Tool Descriptions
L6: MCP Patterns for Real Workflows
Lab 1: Task decomposition,Planning,Implementation
Lab 2: Build Multi-Agent Pipelines with Claude
Module 4 — Prompt Engineering for Reliable Agent
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L1: Explicit Criteria and Instruction Design
L2: Few-Shot Prompting for Consistency
L3: Context Optimization
L4: Escalation Patterns and Reliable Decision
Lab 4.1: Design and test basic prompts for Claude
Lab 4.2: Structure prompts for relevant answers.
Lab 4.3: Implement context retention systems
Lab 4.4: Simulate edge cases & test robustness
Module 5 — AI Powered Code Gen & Engg Standards
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L1: Backend and Frontend Standards
L2: API Design (REST/GraphQL)
L3: Tool Use for Reliable Structured Output
L4: CLAUDE.md Configuration Hierarchy
L5: Custom Slash Commands and Skills
L6: Plan Mode and Iterative Refinement
L7: Structured Error Responses
Lab 5.1: Working with Claude Skills
Lab 5.2: Generate backend API code (CRUD, Auth).
Lab 5.3: Generate frontend components & UI element
Lab 5.4: Generate and design RESTful/GraphQL APIs.
Lab 5.5: Finetune Claude for context assistance
Module 6 — UI and Experience Generation with AI
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L1: Figma and HTML Integration
L2: Design Systems and AI-Driven Scaffoldings
L3: Accessibility and Responsiveness Constrain
Lab 1: Generate a UI design system in Figma
Lab 2: Automatically generate HTML/CSS based
Module 7 — Automated Testing and Quality Engg'ing
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L1: Unit & Integration Test Generation
L2: Validation-Retry Loops
L3: Multi-Pass Review Strategies
L4: Coverage and Quality Metrics
Lab 1: Generate unit tests & validate correctness
Lab 2: Write integration tests for multiple system
Lab 3: Assess test coverage and generate coverage
Module 8 — AI-Driven Documentation & Visualization
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L1: Mermaid and Swimlane Diagrams
L2: Technical Documentation Generation
L3: BRD to Requirement Traceability
Lab 1: Create flowcharts/Mermaid diagrams
Lab 2: Automatically generate tech docs
Lab 3: Generate a Business Requirements Document
Module 9 — Enterprise Integration & DevOps Align
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L1: Rally Integration & Excel Export
L2: GitHub Structure, Commit Standards
L3: CI/CD Integration and Session Isolation
L4: MCP Server Configuration
Lab 1: Integrate Rally with Claude
Lab 2: Integrate Claude with GitHub
Lab 3: Design a CI/CD pipeline using Claude
Module 10 — Debugging, Optimization & Improvement
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L1: Troubleshooting Common Issues
L2: Context Degradation in Extended Sessions
L3: Performance Tuning
L4: Feedback Loops
Lab 1: Intentionally introduce bugs to test Claude
Lab 2: Optimize code for memory management, speed
Lab 3: Implement feedback loops
Module 11 — Governance, Security & Responsible AI
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L1: Coding Standards, & Ethical AI Practices
L2: Hooks and Programmatic Enforcement
L3: Human Review, Provenance
L4: Version Control and Audit Trails
Lab 1: Implement a security/compliance checklist
Lab 2: Setup version control tracking for AI model
Lab 3: Test outputs for bias and implement filters
Module 12 — Labs & Real-World Agentic Workflows
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L1: IAG Booking (Iberia Pilot) Overview
L2: Custom Agent Creation for Niche Workflows
L3: Collaborative Development Scenarios
Lab 1: Design real-world agentic workflows
Lab 2: Hands-on multi-agent workflow
Module 13 — Wrap-Up and Next Steps
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L1: Q&A and Feedback Collection
L2: Exam Strategy and Certification Overview
Bonus Labs: Cluade + AWS
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Bonus Lab: Automate AWS Diagrams using Kiro AI
Lab: Claude Code on Amazon Bedrock
Lab: Claude Design Lab
Lab: Claude on AWS Platform
What's Next
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What's Next After Claude AI ?
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Claude AI
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Start Here & FAQs
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Q/A: Where is Python (Live & Recording) & Bonuses
← FAQ's: Claude for Agentic AI (SDLC) Program
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Q/A: Where is Python (Live & Recording) & Bonuses
Q/A: Where is Python (Live & Recording) & Bonuses
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