πŸ€– New Era Course

Building Agentic AI Systems
That Actually Work in Production

Go beyond ChatGPT wrappers. Learn to architect, build and interview-ready yourself on multi-agent systems, RAG pipelines, LangGraph, CrewAI and AutoGen β€” the skills top AI companies hire for right now.

Live online classes English medium Lifetime recordings Project portfolio
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Who This Is For

  • Software engineers transitioning into AI engineering roles
  • Backend/full-stack devs who want to build real agent products
  • Engineers targeting AI roles at GCC, Singapore & FAANG companies
  • Anyone interviewing for Agentic AI / LLM engineer positions
  • Founders building AI-powered products and startups
Book Free Session β†’

No commitment Β· 30-min assessment call

500+
Engineers Trained
10+
Countries Reached
95%
Placement Rate
Why Now?

The Agentic AI Wave Is Here β€” Are You Ready?

Companies across GCC, Singapore and globally are desperately hiring engineers who can build autonomous AI systems. This is 2024's version of "knowing cloud" β€” a must-have, not a nice-to-have.

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Beyond Prompt Engineering

Prompt engineers are a dime a dozen. Engineers who can build tool-calling, memory-aware, multi-step agent pipelines are rare and command 2–3Γ— salary.

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Huge Demand in GCC & Singapore

Noon, Careem, Talabat, ADNOC, and dozens of GCC AI startups are actively hiring Agentic AI engineers. We know exactly what they test in interviews.

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Production-Grade, Not Theory

You'll build real projects: an autonomous research agent, a multi-agent customer service system, a RAG-powered code reviewer β€” projects you can demo in interviews.

Curriculum

What You'll Master

A battle-tested curriculum built around what AI companies actually interview for

Module 1: LLM Foundations for Engineers Week 1
  • Transformer architecture internals (what engineers need to know)
  • Token limits, context windows, embeddings & similarity search
  • OpenAI / Anthropic / Gemini API β€” structured outputs, function calling
  • Prompt engineering patterns used in production systems
Module 2: LangChain & LangGraph Deep Dive Week 2
  • Chains, agents, tools, callbacks β€” end-to-end LangChain mastery
  • LangGraph: stateful multi-step agent graphs with conditional routing
  • Human-in-the-loop patterns and interrupt handling
  • Persistence, checkpointing and long-running agent sessions
Module 3: RAG β€” Retrieval Augmented Generation Week 3
  • Vector databases: Pinecone, Weaviate, ChromaDB, pgvector
  • Chunking strategies, embedding models, re-ranking
  • Hybrid search (BM25 + semantic), HyDE, parent-child retrieval
  • Evaluation: RAGAS metrics, hallucination detection
Module 4: Tool Use & Function Calling Week 4
  • Designing tool schemas that LLMs call reliably
  • Code interpreter, web search, database query tools
  • Tool error handling and retry logic in agentic loops
  • MCP (Model Context Protocol) β€” the new standard
Module 5: Multi-Agent Orchestration Week 5
  • CrewAI: roles, tasks, process types (sequential / hierarchical)
  • AutoGen: conversation patterns, group chat, nested chats
  • Agent routing, handoffs and supervisor patterns
  • When to use single-agent vs multi-agent architectures
Module 6: Memory & Long-Term Context Week 6
  • Short-term (in-context) vs long-term (external store) memory
  • Episodic, semantic and procedural memory patterns
  • Mem0, Zep, Memgpt β€” production memory frameworks
  • Summarisation agents and memory compaction strategies
Module 7: Production Deployment & Observability Week 7
  • LangSmith / LangFuse tracing β€” debugging agentic runs
  • Latency, cost optimisation and caching strategies
  • FastAPI + async for serving agent endpoints
  • Safety guardrails, content filtering, rate limiting
Module 8: AI Engineering Interviews Week 8
  • System design for AI systems: architecture walkthroughs
  • Live mock interviews replicating Careem, FAANG formats
  • Common AI engineer interview questions with model answers
  • Portfolio project review and presentation coaching
Real Projects

Portfolio Projects You'll Build

These go directly on your resume and GitHub β€” not toy examples

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Autonomous Research Agent

Multi-step agent that searches the web, reads papers, synthesises findings and generates reports

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RAG-Powered Codebase Q&A

Index a large codebase, answer questions, explain functions and suggest refactors

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Multi-Agent Customer Support

Triage agent β†’ specialist agents β†’ escalation agent β€” full production pipeline

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Data Analysis Agent

Natural language β†’ SQL β†’ chart generation β†’ insight summary pipeline with LangGraph

Reviews

What Engineers Say

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"Anurag's mentorship has been truly invaluable. His deep understanding of software engineering and AI, combined with his genuine willingness to help, enabled me to land a great opportunity abroad."

Vaibhav
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"Anurag is an excellent mentor with deep expertise in software engineering and the AI domain. His guidance was instrumental in helping me secure a great job abroad."

Pallavi
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"He gave me honest feedback about job market in GCC, Singapore, Riyadh. Also we delved into technical details. I would say he is the go-to person for a mentor for GCC."

Suryasis Paul
Limited Seats

Ready to Become an AI Engineer?

Book a free 30-minute discovery call. We'll assess your current level, explain exactly what the course covers, and tell you if it's the right fit.

Book Free 30-Min Call

No pressure Β· No credit card Β· Just a conversation