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Aws Certified Ai Practitioner Aif-C01 Masterclass - AD-TEAM - 01-14-2025 Aws Certified Ai Practitioner Aif-C01 Masterclass Published 12/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 2.68 GB | Duration: 7h 21m AWS Certified AI Practitioner AIF-C01 Masterclass covering Hands-on, quiz and explanations !! [b]What you'll learn[/b] Gain Knowledge to pass AWS Certified AI Practitioner Exam AIF-C01 Understand AI, ML, and generative AI concepts, methods, and strategies in general and on AWS Understand the appropriate use of AI/ML and generative AI technologies to ask relevant questions within the candidate's organization Determine the correct types of AI/ML technologies to apply to specific use cases. Use AI, ML, and generative AI technologies responsibly. [b]Requirements[/b] Individuals who are familiar with, but do not necessarily build, solutions using AI/ML technologies on AWS [b]Description[/b] Course Description:Unlock the potential of Artificial Intelligence (AI) and Machine Learning (ML) with the AWS Certified AI Practitioner AIF-C01 course. Designed for aspiring AI professionals, this course provides a comprehensive roadmap to mastering AI concepts and preparing for the AWS AI certification exam. Whether you're new to AI or enhancing your existing skills, this course equips you with the knowledge needed to excel in the rapidly evolving AI industry.The course covers five key domains critical to the AWS Certified AI Practitioner examomain 1: Fundamentals of AI and ML (20%) - Understand AI concepts, ML types, and data processing techniques essential for building intelligent solutions.Domain 2: Fundamentals of Generative AI (24%) - Explore generative models, including GPT, and learn how they transform industries through text, image, and code generation.Domain 3: Applications of Foundation Models (28%) - Dive into foundation models like Amazon Bedrock and Hugging Face, gaining insights into real-world applications across various industries.Domain 4: Guidelines for Responsible AI (14%) - Learn AI ethics, fairness, and bias mitigation techniques while ensuring compliance with industry standards.Domain 5: Security, Compliance, and Governance (14%) - Master best practices for securing AI solutions, managing compliance, and adhering to governance policies on AWS.With expert-led tutorials, practical demonstrations, and exam-focused tips, this course ensures you build a solid foundation while preparing confidently for the certification exam. Enroll now to elevate your AI career and become an AWS Certified AI Practitioner! Overview Section 1: Domain 1.1 : Explain basic AI concepts and terminologies. Lecture 1 Introduction to Artificial Intelligence and it's real-life applications Lecture 2 AI, ML, Deep Learning & Generative AI comparison and examples Lecture 3 Artificial Intelligence(AI) v/s Machine Learning (ML) Lecture 4 Typical ML Model building Lecture 5 Understand Deep Learning with interesting example Lecture 6 Different types of data in AI Lecture 7 Define basic AI terms Lecture 8 Different types of Learning in AI Lecture 9 Overfitting and Underfitting Section 2: Domain 1.2: Identify practical use cases for AI Lecture 10 AI/ML Applications Lecture 11 ML Types Lecture 12 AWS Managed AI/ML services - Part 1 Lecture 13 AWS Managed AI/ML services - Part 2 Lecture 14 AWS Managed services Real World examples Section 3: 1.3: Describe the ML development lifecycle Lecture 15 Machine Learning Lifecycle and AWS Sagemaker Lecture 16 Machine Learning Data Processing - Part 1 Lecture 17 Machine Learning Data Processing - Part 2 Lecture 18 Machine Learning training, tunning and evaluating Lecture 19 Machine Learning model Inference Lecture 20 Model Monitoring and MLOps Lecture 21 Model Evaluation Methods - Part 1 Lecture 22 Model Evaluation Methods - Part 2 Section 4: 2.1: Explain concepts of generative AI - Basics Lecture 23 Generative AI - Power of Gen AI Lecture 24 Traditional AI v/s Generative AI Lecture 25 GPT (Generative Pre-Trained Transformer) Lecture 26 Generative AI Timeline - How Gen AI has evolved and role of Google and AWS Lecture 27 Generative AI lifecycle Section 5: 2.2 : Explain concepts of generative AI - Advanced Lecture 28 What is Token and how to easily calculate tokens using tokenizer Lecture 29 Understanding Tokens and Temperature Lecture 30 Embeddings Lecture 31 Vector Database Lecture 32 Generative AI Model training - Compare Fine Tuning, RAG and Few shot learning Lecture 33 Foundational Model Lecture 34 Foundation models, Gen AI & LLMs Lecture 35 Multi-modal GenAI Lecture 36 Transformer Architecture Lecture 37 Generative AI use cases & Limitations Section 6: 2.3: Describe AWS infrastructure and technologies for building generative AI app Lecture 38 AWS Generative AI Layers Lecture 39 AWS Generative AI services Lecture 40 Advantages of AWS Gen AI Services Lecture 41 Amazon Q Lecture 42 AWS Sagemaker Jumpstart - Opensource Generative AI model hosting in AWS Section 7: 2.3 : Amazon Bedrock Focus Lecture 43 Amazon Bedrock - Introduction and Access Hands-on Lecture 44 Amazon Bedrock - UI options Hands-on Lecture 45 Prerequisite for Playground - Inference Parameters - Temperature, Top P, Top K Lecture 46 Amazon Bedrock - Playground - Hands-on Chat, Text and Image Generation Lecture 47 Amazon Bedrock Guardrail - Hands-on to prevent Prompt attack and block content Lecture 48 Prerequisite for Knowledge Bases - RAG (Retrieval-augmented generation) Lecture 49 Amazon Bedrock Knowledge Bases - Hands-on RAG (Retrieval augmented generation) Lecture 50 AWS Bedrock - Architecture and Design of typical Bedrock application Section 8: 3.1: Describe design considerations for applications that use foundation models Lecture 51 Selection Criteria for Pre-Trained Models Section 9: 3.2: Choose effective prompt engineering techniques Lecture 52 Introduction to Prompt Engineering Lecture 53 Few-shot prompting Lecture 54 Prompt Engineering Tips - Part 1 Lecture 55 Prompt Engineering Tips - Part 2 Lecture 56 Popular Prompt Engineering techniques - Part 1 Lecture 57 Popular Prompt Engineering techniques - Part 2 Lecture 58 AWS Prompt Engineering technique example Lecture 59 Risks and Limitations in Prompt Engineering Section 10: 3.3: Describe the training and fine-tuning process for foundation models Lecture 60 Foundation Models Training Section 11: 3.4: Describe methods to evaluate foundation model performance. Lecture 61 Evaluate Foundation Model performance Section 12: 4.1: Explain the development of AI systems that are responsible Lecture 62 Responsible & Ethical AI Lecture 63 Risks and mitigation of Gen AI Section 13: 4.2: Recognize the importance of transparent and explainable models Lecture 64 Transparency in AI Section 14: 5.1: Explain methods to secure AI systems Lecture 65 AWS Shared responsibility and IAM introduction Lecture 66 AWS IAM Policies, Users, Roles, Groups and Identity Center Hands on Lecture 67 IAM features and new account creation Section 15: 5.2: Recognize governance and compliance regulations for AI systems Lecture 68 Governance and compliance in AWS Lecture 69 AWS tools - Audit Manager, Config, Amazon Inspector & Trusted Advisor Hands on Section 16: AWS services Basics Lecture 70 AWS S3 Lecture 71 AWS Lambda Lecture 72 AWS API Gateway Anybody who has interest in AI and AWS RapidGator AlfaFile TurboBit |