Applied Generative AI
for Engineers.
Five days. From first principles to deploying a robust, evaluated, production-grade system. Heavy on labs.
Who it's for
Software engineers ready to ship LLM features.
Backend engineers, ML engineers, and senior developers building production systems who need to add generative AI capabilities responsibly.
Five-day syllabus
What you'll build.
Foundations & prompt engineering
A practical mental model of how an LLM produces text — and the controls you actually have.
- Tokenisation, context windows, attention — what changes when you change them
- Decoding strategies: temperature, top-p, top-k, beam — when each matters
- System / user / assistant message contracts; structured outputs
- Few-shot, chain-of-thought, and prompt patterns that survive model updates
Tools, function calling, and agent loops
Move beyond chatbots: have the model take actions in your systems, safely.
- Function calling across providers (OpenAI, Anthropic, local) — common ground
- Tool schemas, argument validation, sandboxing, and audit trails
- Agent loop architectures: ReAct, plan-and-execute, when not to agentise
- Cost, latency, and failure-mode analysis for multi-turn agents
Retrieval-augmented generation in practice
The most common production pattern — done with the rigour it deserves.
- Embedding models compared; when fine-tuned embeddings actually help
- Chunking strategies: fixed, semantic, hierarchical — and how to evaluate them
- Hybrid search (BM25 + dense), reranking, and metadata filtering
- Citation discipline: forcing the model to ground answers in retrieved passages
Evaluation, observability, and cost control
The discipline that separates a demo from a system you can put your name on.
- Building golden datasets that survive prompt and model changes
- LLM-as-judge: when it works, when it lies, and how to keep it honest
- Tracing and observability: spans, prompts, costs, latencies, and replay
- Caching layers, prompt compression, and choosing the right model per task
Safety, governance, and capstone
The realities you cannot ship without addressing.
- Prompt injection & indirect injection; defences that actually work
- PII detection and redaction in inputs and outputs
- Abuse detection, rate limiting, and per-tenant isolation
- Mapping your system to EU AI Act risk categories — practical exercise
Lead instructor
Shady Ali
Shady Ali
Co-Director · Sadiqoon Technologies
AI architect with deep production experience designing and operating sovereign LLM infrastructure for regulated industries. Teaches the patterns he ships.
What's included
Inclusions.
- 35 hours of live, instructor-led tuition
- Full lab environment + cloud credits for the week
- Printed bilingual workbook + digital code repository
- Daily lunch & refreshments at the venue
- Welcome dinner on Day 1; cohort dinner on Day 4
- UK visa support letter on confirmed registration
- 30 days of post-course Q&A access to the instructor
- Sadiqoon Institute Certificate of Completion
Register
Reserve your seat.
Submit the form below and we will respond within two working days with a formal proforma invoice and the full registration pack.