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Master AI System Architecture RAG, MCP, A2A, Agents, etc
Published 5/2026
Created by Apex Digital AI Consulting
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch Level: Intermediate | Genre: eLearning | Language: English | Duration: 59 Lectures ( 4h 41m ) | Size: 3.2 GB
The Complete Guide to AI System Design, Inference and Agent Architecture What you'll learn Design scalable AI system architectures that integrate machine learning models, cloud infrastructure, APIs, and distributed computing environments. Understand and implement networking concepts essential for AI systems, including client-server communication, load balancing, latency optimization, and secure d Deploy and manage AI applications using modern infrastructure tools such as containers, microservices, virtualization, and cloud platforms. Build reliable and secure AI pipelines by applying best practices in networking security, system monitoring, fault tolerance, and performance optimization. Analyze real-world AI infrastructure challenges and develop end-to-end solutions for enterprise-grade AI systems, from data ingestion to model deployment and ne Requirements An interest in artificial intelligence, technology, or modern digital systems will help learners get the most from the course. A willingness to explore new concepts and practical AI technologies is the only essential requirement for success in this course. Basic understanding of programming concepts, is recommended. Foundational knowledge of operating systems and cloud computing basics, is recommended Familiarity with fundamental computer networking concepts such as IP addressing, protocols, and client-server architecture will be helpful. Description
AI System Architecture - Build Scalable AI Applications & Agentic Systems
Master the architecture behind modern AI applications - from LLMs and Transformers to RAG, MCP, A2A, vector databases, memory systems, inference infrastructure, and autonomous AI agents.
This course is designed for software engineers, AI engineers, architects, technical leaders, and developers who want to understand how production-grade AI systems are actually designed and deployed at scale.
You'll learn the core building blocks that power today's intelligent applications, including Neural Network Transformer Architecture Large Language Models (LLMs) Vs Small Language Model (SLMs) Retrieval-Augmented Generation (RAG) Vector Search & Embeddings Tool Calling Systems KV Cache AI Memory Architectures Network and Security Considerations MCP (Model Context Protocol) A2A (Agent-to-Agent Communication) MCP + A2A Integration AI Security Patterns AI Inference Infrastructure Multi-Agent Systems Architecture Anti Patterns Enterprise AI System Design
Throughout the course, you'll explore high-level architecture diagrams, real-world AI workflows, scalable deployment patterns, and modern design principles used in enterprise AI platforms.
By the end of this course, you will be able to Design end-to-end AI system architectures Understand how modern LLM applications work internally Build scalable agentic AI workflows Architect RAG pipelines using vector databases Design AI memory and context systems Implement MCP and A2A communication models Understand inference optimization and token streaming Create production-ready AI application architectures Evaluate AI infrastructure tradeoffs and scalability patterns
This course focuses on practical architecture thinking rather than just theory - helping you understand how real AI products are engineered in modern companies.
Whether you are building AI copilots, enterprise assistants, autonomous agents, intelligent search systems, or next-generation AI platforms, this course will give you the architectural foundation needed to design modern AI systems with confidence. Who this course is for This course is primarily designed for networking professionals and systems architects who want to understand how AI systems are designed, deployed, connected, and managed within modern enterprise environments. It is especially valuable for professionals involved in infrastructure design, cloud architecture, networking, systems engineering, and digital transformation initiatives. The course is also suitable for IT professionals, technical managers, solution architects, and technology enthusiasts who are interested in learning how AI systems operate and how different architectural components work together to support scalable and reliable AI applications. In addition, anyone curious about AI systems, networking integration, cloud-based AI infrastructure, and modern intelligent application design will benefit from the practical concepts and real-world architectural insights covered throughout the course. Homepage
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