Est. Reading Time: 20 Mins Prereq: Python Basics
Intelligent Systems TrackAI & Automation: Roadmap
Tagline: Intelligence Over Information.
Bridging the gap between raw data and agentic intelligence. Focus: LLMs, Retrieval Augmented Generation (RAG), and AI Infrastructure.
Foundation
Level 100: LLM Fundamentals
- Model Architectures: Transformers, BERT, and GPT logic.
- Prompt Engineering: Chain-of-Thought and Few-shotting.
- API Integration: Building with OpenAI, Anthropic, and Llama.
Architect’s Verdict: AI is not a feature; it is a new layer of the architectural stack.
Intermediate
Level 200: RAG Systems
- Vector Databases: Pinecone, Milvus, and Weaviate.
- Data Ingestion: Chunking strategies and embeddings.
- Retrieval Logic: Hybrid search and semantic reranking.
Workbench Utility Free Tool
RAG Cost Estimator →Architect’s Verdict: An LLM without your data is just a smart stranger; RAG makes it a specialized expert.
Advanced
Level 300: Agentic Ops
- Agent Frameworks: LangGraph, CrewAI, and AutoGen.
- AI Orchestration: Tool-calling and stateful memory.
- Deployment: GPU provisioning and inference scaling.
Workbench Utility Free Tool
GPU Load Balancer Config →Architect’s Verdict: True AI maturity is reached when the agent can reliably orchestrate the infrastructure.
