Building Memory for AI Systems with MCP
Connect Claude to Any Tool with Model Context Protocol
Failed to add items
Add to basket failed.
Add to Wish List failed.
Remove from Wish List failed.
Follow podcast failed
Unfollow podcast failed
Buy Now for $27.79
-
Narrated by:
-
Douglas Birk's voice replica
-
By:
-
Dr. Priya Sharma
This title uses a narrator's voice replica
About this listen
Your AI assistant loses all context the moment you close the chat. Your project history, codebase knowledge, and business data? Gone. You're stuck manually rebuilding context in every conversation, turning powerful AI into an expensive notepad.
Model Context Protocol (MCP) changes everything.
Building Memory for AI Systems with MCP shows developers, technical founders, and product builders how to integrate Claude AI with persistent memory systems to maintain context across sessions, access real data, and learn from experience over time.
What You'll Master:
• MCP Architecture & Setup: Configure Claude Desktop with filesystem, database, and cloud storage integrations using standardized protocols that prevent vendor lock-in
• Persistent Data Integration: Connect PostgreSQL, SQLite, Google Drive, GitHub, Slack, and 15+ other systems through practical, security-first implementations
• Vector Databases & Semantic Search: Build retrieval-augmented generation (RAG) systems with Pinecone, Chroma, and Weaviate for intelligent document discovery
• AI Agent Development: Design specialized agents with bounded context, robust error handling, and multi-agent orchestration patterns
• Production Deployment: Implement authentication, audit logging, rate limiting, and monitoring for enterprise-grade AI memory systems
Perfect for:
Developers building AI-powered products beyond basic chatbots
Technical founders automating business operations with persistent AI context
Product teams integrating AI agents into existing tool ecosystems
Anyone ready to move from stateless conversations to intelligent, context-aware AI systems
Why This Book Delivers:
Written by Dr. Priya Sharma, a former ML researcher turned practitioner, who left academia to democratize AI implementation. No theoretical fluff—just proven patterns, reusable templates, and a 60-day roadmap from first integration to production deployment.
©2026 Dr. Priya Sharma (P)2026 Dr. Priya Sharma