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Certified Associate Generative AI LLMs (NCA– GENL) Course

   Author: Baturi   |   24 March 2026   |   Comments icon: 0


Free Download Certified Associate Generative AI LLMs (NCA– GENL) Course
Published 2/2026
Created by Big Data Landscape
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All Levels | Genre: eLearning | Language: English | Duration: 25 Lectures ( 3h 6m ) | Size: 1.1 GB


Master LLMs, RAG, Transformers, RLHF, Vector Databases & Pass Your Generative AI Associate Certification on First Attemp

What you'll learn


✓ Pass the NCA-GENL Generative AI certification exam on your first attempt with comprehensive preparation covering all 5 exam sections and official objectives
✓ Build production-ready LLM applications including RAG pipelines, chatbots, and summarizers using vector databases, embeddings, and modern AI frameworks
✓ Master transformer architecture, attention mechanisms, RLHF training, and the complete lifecycle of large language models from pre-training to deployment
✓ Implement trustworthy AI practices including bias detection, fairness metrics, model explainability, and safety guardrails for responsible AI development

Requirements


● Basic Python programming knowledge (variables, functions, loops) - no advanced coding required
● Familiarity with fundamental machine learning concepts is helpful but not mandatory - we review the essentials
● No prior certification experience needed - this course starts from the fundamentals and builds up systematically
● A computer with internet access to watch videos and take practice tests

Description


This course contains the use of artificial intelligence.
Are you ready to prove your Generative AI expertise with an industry-recognized certification?
The NCA-GENL (Generative AI LLM Associate) certification is one of the most sought-after credentials in artificial intelligence today. But preparing for this exam can be overwhelming — information is scattered across dozens of technical papers, documentation pages, and online resources. Most candidates spend weeks just figuring out what to study.
This course changes everything.
I've analyzed every exam objective, studied all the official resources, and distilled everything into one comprehensive, easy-to-follow program. No more guessing. No more wasted time. Just a clear, proven path to certification success.
WHAT'S INSIDE THIS COURSE:Complete Coverage of All 5 Exam Sections
Core Machine Learning & AI Knowledge (20% of exam)
• Supervised, unsupervised, and reinforcement learning fundamentals
• Neural network architectures: CNNs, RNNs, LSTMs, GRUs
• Transformer architecture and self-attention mechanisms
• Large Language Models (LLMs): GPT, BERT, T5, and beyond
• Tokenization, embeddings, and positional encoding
• Pre-training vs fine-tuning strategies
Data Analysis & Preparation (14% of exam)
• Data preprocessing and cleaning techniques
• Feature engineering for ML pipelines
• Handling imbalanced datasets
• Data augmentation strategies
• ETL pipelines and data versioning
• Working with structured and unstructured data
Experimentation & Evaluation (22% of exam)
• Experimental design and A/B testing
• Cross-validation techniques: K-Fold, Stratified, Time Series
• Model evaluation metrics for classification, regression, and NLP
• NLP benchmarks: GLUE, SuperGLUE, MMLU, HellaSwag
• Zero-shot and few-shot learning evaluation
• Hallucination detection and mitigation
• RLHF: Reinforcement Learning from Human Feedback (3-stage process)
• Inference optimization and quantization
Software Development for AI (24% of exam - LARGEST SECTION)
• Python NLP packages: spaCy, NumPy, pandas
• Deep learning frameworks: PyTorch, TensorFlow, Keras
• Vector databases: Pinecone, Milvus, ChromaDB, FAISS
• Building LLM applications: RAG pipelines, chatbots, summarizers
• BERT implementation and fine-tuning
• HuggingFace Transformers and Datasets libraries
• Model deployment with Triton Inference Server
• TensorRT optimization for production
• Distributed training: NCCL, AllReduce, data parallelism
• Quantization-aware training (QAT)
Trustworthy AI & Ethics (10% of exam)
• Six pillars: Fairness, Transparency, Privacy, Safety, Accountability, Robustness
• AI bias types: selection, measurement, algorithmic, historical
• Bias detection and mitigation strategies
• Data privacy, consent, and GDPR compliance
• NeMo Guardrails for LLM safety
• Explainability techniques: SHAP, LIME, Model Cards
2 COMPLETE PRACTICE EXAMS INCLUDED
Knowing the material is one thing. Being confident on exam day is another.
That's why I've created two full-length practice exams that mirror the real test
• Same question format and difficulty level
• All five sections covered proportionally
• Detailed explanations for every single answer
• Understand not just WHAT is correct, but WHY
By the time you complete this course, you'll walk into your exam knowing exactly what to expect.

Who this course is for


■ AI and Machine Learning engineers who want to validate their Generative AI expertise with an industry-recognized certification and advance their careers
■ Data scientists expanding into Generative AI
■ Technical professionals seeking career advancement
■ Anyone wanting to validate their LLM and GenAI knowledge
■ Students and researchers entering the AI field

Homepage


https://www.udemy.com/course/certified-associate-generative-ai-llms-nca-genl


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