Learn by Doing.
Become an AI Engineer.
Taught by Best-Selling Author Ali Aminian
Meet Your Instructor
Ali Aminian
Ali Aminian is a best-selling author of multiple books on machine learning and generative AI. With over a decade of experience at leading tech companies, he has built AI systems that are intelligent, safe, and efficient. He also contributes to AI courses at Stanford University, combining technical expertise with a passion for teaching.
Course Outline (Project-Based Learning)
Project 1
Build an LLM Playground
LLM Overview and Foundations
Pre-Training
- Data collection (manual crawling, Common Crawl)
- Data cleaning (RefinedWeb, Dolma, FineWeb)
- Tokenization (e.g., BPE)
- Architecture (neural networks, Transformers, GPT family, Llama family)
- Text generation (greedy and beam search, top-k, top-p)
Post-Training
- SFT
- RL and RLHF (verifiable tasks, reward models, PPO, etc.)
Evaluation
- Traditional metrics
- Task-specific benchmarks
- Human evaluation and leaderboards
Chatbots’ Overall Design
Project 2
Build a Customer Support Chatbot using RAGs and Prompt Engineering
Overview of Adaptation Techniques
Finetuning
- Parameter-efficient fine-tuning (PEFT)
- Adapters and LoRA
Prompt Engineering
- Few-shot and zero-shot prompting
- Chain-of-thought prompting
- Role-specific and user-context prompting
RAGs Overview
Retrieval
- Document parsing (rule-based, AI-based) and chunking strategies
- Indexing (keyword, full-text, knowledge-based, vector-based, embedding models)
Generation
- Search methods (exact and approximate nearest neighbor)
- Prompt engineering for RAGs
RAFT: Training technique for RAGs
Evaluation (context relevance, faithfulness, answer correctness)
RAGs’ Overall Design
Project 3
Build an “Ask-the-Web” Agent similar to Perplexity with Tool calling
Agents Overview
- Agents vs. agentic systems vs. LLMs
- Agency levels (e.g., workflows, multi-step agents)
Workflows
- Prompt chaining
- Routing
- Parallelization (sectioning, voting)
- Reflection
- Orchestration-worker
Tools
- Tool calling
- Tool formatting
- Tool execution
- MCP
Multi-Step Agents
- Planning autonomy
- ReACT
- Reflexion, ReWOO, etc.
- Tree search for agents
Multi-Agent Systems (challenges, use-cases, A2A protocol)
Evaluation of agents
Project 4
Build “Deep Research” Capability with Web Search and Reasoning Models
Reasoning and Thinking LLMs
- Overview of reasoning models like OpenAI’s “o” family and DeepSeek-R1
Inference-time Techniques
- Inferece-time scaling
- CoT prompting
- Self-consistency
- Sequential revision
- Tree of Thoughts (ToT)
- Search against a verifier
Training-time techniques
- SFT on reasoning data (e.g., STaR)
- Reinforcement learning with a verifier
- Reward modeling (ORM, PRM)
- Self-refinement
- Internalizing search (e.g., Meta-CoT)
Project 5
Build a Multi-modal Generation Agent
Overview of Image and Video Generation
- VAE
- GANs
- Auto-regressive models
- Diffusion models
Text-to-Image (T2I)
- Data preparation
- Diffusion architectures (U-Net, DiT)
- Diffusion training (forward process, backward process)
- Diffusion sampling
- Evaluation (image quality, diversity, image-text alignment, IS, FID, and CLIP score)
Text-to-Video (T2V)
- Latent-diffusion modeling (LDM) and compression networks
- Data preparation (filtering, standardization, video latent caching)
- DiT architecture for videos
- Large-scale training challenges
- T2V’s overall system
Project 6
Capstone Project
- Choose your own idea
- Build with techniques from the course
- Get real-time feedback from the instructor as you build
- Demo + feedback session
Is this course for you?
If you want to start learning Al from scratch,
this is for you!
If you’ve learned some concepts but still feel confused,
this is for you!
If you want to build a few neural
network models and agents quickly,
this is for you!
If you are tired of learning
Al alone,
this is for you!
Course Highlights
1Structured, Systematic Learning Path
2Intuitive, Visual Explanations
3Project-Based Learning That Sticks
4Beginner-Friendly Code that You can Run
5Learn the ‘Why’ Behind the ‘How’
What You’ll Get

Live & Interactive Sessions
Learn directly from Ali Aminian in real time. Ask questions, get feedback, and stay engaged.

Lifetime Access to Course Content
Revisit lessons, recordings, and other resources anytime.

Peer Community
Stay motivated and accountable with a group of peers who are learning alongside you.

Certificate of Completion
Showcase your achievement on LinkedIn. Proof that you’ve leveled up with real-world skills.

The ByteByteGo Guarantee
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