![]() |
Udemy - Aws Certified Ai Practitioner - Aif-C01 - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Udemy - Aws Certified Ai Practitioner - Aif-C01 (/Thread-Udemy-Aws-Certified-Ai-Practitioner-Aif-C01) |
Udemy - Aws Certified Ai Practitioner - Aif-C01 - OneDDL - 02-26-2025 ![]() Free Download Udemy - Aws Certified Ai Practitioner - Aif-C01 Published: 2/2025 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 4.12 GB | Duration: 7h 58m Prepare yourself for the AWS Certified AI Practitioner certification exam What you'll learn Students will gain a strong foundation knowledge on Machine Learning and Artificial Intelligence. Students will get lots of hands-on view onto using services on AWS for Machine Learning and Artificial Intelligence Students will familiarize with services such as Amazon SageMaker, Bedrock and other services related to the field of Machine Learning and AI Students will gain foundation knowledge when it comes to Generative AI. Students will be better prepared to attempt the AWS Certified AI Practitioner exam. Requirements No prior knowledge is needed on Machine Learning and Artificial Intelligence. We will cover all core concepts in this course. No prior knowledge is needed on AWS. We will learn in the course itself on how to use the services when it comes to Machine Learning and Artificial Intelligence. Description Few words have been spoken more often than 'Generative AI' in today's world. We are witnessing an extraordinary transformation, and it's crucial that we stay prepared and up-to-date with advancements in Artificial Intelligence.The AWS Certified AI Practitioner exam is an excellent starting point. This exam covers the foundational aspects of Machine Learning and AI services offered on AWS, providing a solid foundation for anyone looking to enter the AI field.So what all are we going to cover in this courseFirst and foremost we'll cover the foundational aspects of Machine Learning - We'll learn about the Machine Learning process, how data plays an important role.Then we move into using tools such as Amazon SageMaker Canvas, Data Wrangler to create our Machine Learning model. We'll see how to perform classification and regression from a no-coding aspect.When it comes to Machine Learning, we'll also go through important aspects such as Responsible AI, MLOps, Machine Learning Lifecycle - AWS Well-Architected Framework etc.Then we will move onto learning about the different AWS Managed AI services. This includes the Amazon Comprehend, Amazon Rekognition and other AWS Managed AI services.Then we'll push into learning about Generative AI. We will first have a quick Overview on the different foundation models such as OpenAI GPT, Anthropic Claude etc.Next, we'll move onto using Amazon Bedrock on AWS. Will look into using the foundation models available on Amazon Bedrock. Look at the ever important aspect of Prompt Engineering.Next will dive into Security, Governance and Security. We will understand how services like AWS CloudWatch, AWS CloudTrail and many others can supplement the security aspect of our AI-based applications.Finally we have a Practice Test Section - As part of this course, you will have free access to two practice tests. These will allow you to assess your understanding and gauge how well you've grasped the key concepts covered throughout the course.It's the future and its now. Start your path into the world of Artificial Intelligence. Overview Section 1: Introduction Lecture 1 How has the course been structured Lecture 2 Introduction to Cloud Computing Lecture 3 Using Amazon Web Services as a cloud service Lecture 4 Lab - Creating an AWS Account Lecture 5 Accessing your AWS Account Lecture 6 Our first AWS service - Amazon S3 Lecture 7 Lab - Working with Amazon S3 Lecture 8 Review of Amazon S3 Section 2: Let's work on Machine Learning Lecture 9 Understanding different terms Lecture 10 Considering Machine Learning Lecture 11 Broad-level understanding of the Machine Learning process Lecture 12 Data - The star of the show Lecture 13 Different types of data Lecture 14 Different types of Machine Learning tasks Lecture 15 Amazon SageMaker AI Lecture 16 Quick Intro on different compute options Lecture 17 Lab - Building an EC2 Instance Lecture 18 Lab - Connecting to the EC2 Instance Lecture 19 A note on the costing aspect Lecture 20 Lab - Creating an Amazon SageMaker domain Lecture 21 Quick tour of Amazon SageMaker Studio Lecture 22 Our data set Lecture 23 Lab - Launching SageMaker Canvas Lecture 24 Lab - Amazon Canvas - Data Wrangler - Ingesting our data Lecture 25 Lab - Amazon Canvas - Data Wrangler - Data Insights Lecture 26 Lab - Amazon Canvas - Data Wrangler - Transforming data Lecture 27 Lab - Amazon Canvas - Training the Model Lecture 28 Lab - Amazon Canvas - Making predictions Lecture 29 Amazon Canvas - Analyzing results Lecture 30 Amazon SageMaker feature store Lecture 31 Gotcha's when using training data Lecture 32 Amazon SageMaker - Using the ready-to-use models Lecture 33 Amazon SageMaker Jumpstart Lecture 34 Amazon SageMaker Clarify Lecture 35 Amazon SageMaker Ground Truth Lecture 36 Synthetic data Lecture 37 Different use cases for usage of Machine Learning Lecture 38 Principles of Response AI Lecture 39 Overview on MLOps Lecture 40 Machine Learning Lifecycle - AWS Well-Architected Framework Section 3: AWS Managed AI services Lecture 41 Using the inbuilt AWS AI services Lecture 42 Amazon Comprehend Lecture 43 Lab - Using the Amazon Comprehend service Lecture 44 Amazon Textract Lecture 45 Lab - Using the Amazon Textract service Lecture 46 Amazon Transcribe Lecture 47 Lab - Using Amazon Transcribe Lecture 48 Amazon Rekognition Lecture 49 Lab - Using Amazon Rekognition Lecture 50 Amazon Polly Lecture 51 Lab - Using Amazon Polly Lecture 52 Amazon Translate Lecture 53 Lab - Amazon Translate Lecture 54 Amazon Forecast Lecture 55 Amazon Lex Lecture 56 Lab - Using Amazon Lex Lecture 57 Amazon Personalize Lecture 58 Amazon Comprehend Medical Lecture 59 Amazon Kendra Section 4: Generative AI Lecture 60 Large Language Models Lecture 61 What is a Foundation Model Lecture 62 Introduction to Generative AI Lecture 63 A look at using ChatGPT Lecture 64 Anthropic Claude Lecture 65 Stable Diffusion Lecture 66 Hugging Face Lecture 67 Meta Llama Lecture 68 What is Amazon Bedrock Lecture 69 Lab - Amazon Bedrock - Requesting access to models Lecture 70 Amazon Bedrock - Using Amazon Titan Model Lecture 71 Amazon Bedrock - Using Amazon Titan Image Generator Lecture 72 Amazon Bedrock - Inference parameters Lecture 73 Prompt Engineering Lecture 74 Prompt Engineering - Be clear Lecture 75 Prompt Engineering - Different types of prompts Lecture 76 Prompt Engineering - Using system prompts Lecture 77 Prompt Engineering - Passing data and instructions Lecture 78 Prompt Engineering - Prompt Templates Lecture 79 Prompt Engineering - Resources Lecture 80 When to choose what model Lecture 81 Evaluating Foundation Models Lecture 82 Customizing foundation models Lecture 83 Amazon Q Developer Lecture 84 Lab - Amazon RDS Aurora - Launching an instance Lecture 85 Lab - Amazon RDS Aurora - Connecting to the database Lecture 86 Lab - Amazon RDS Aurora - Connecting to the database - Resources Lecture 87 What is Amazon OpenSearch Lecture 88 What is RAG - Retrieval Augmented Generation Lecture 89 Amazon Bedrock - Knowledge base - Chat with your document Lecture 90 Lab - Amazon Bedrock - Knowledge Base - Implementation Overview Lecture 91 Lab - Amazon Bedrock - Knowledge Base - Creating an IAM user Lecture 92 Lab - Amazon Bedrock - Knowledge Base - Implementation Lecture 93 Challenges on using Generative-AI Lecture 94 Amazon Bedrock Guardrails Lecture 95 Lab - Amazon Bedrock Guardrails Lecture 96 Amazon Bedrock Agents Lecture 97 More on Amazon Bedrock pricing Section 5: Security and Monitoring on AWS Lecture 98 Identity and Access Management Lecture 99 IAM Users and Groups Lecture 100 AWS Key Management service and Amazon Bedrock Lecture 101 What is Amazon CloudWatch Lecture 102 Amazon Bedrock and Amazon CloudWatch Lecture 103 Lab - Amazon Bedrock and Amazon CloudWatch Lecture 104 What is AWS CloudTrail Lecture 105 Amazon Bedrock - AWS PrivateLink Lecture 106 Amazon SageMaker and network isolation Lecture 107 Amazon Macie Lecture 108 AWS Config Lecture 109 AWS Artifact Lecture 110 AWS Audit Manager Lecture 111 AWS Trusted Advisor Lecture 112 Quick note on the design of a conversational chatbot Lecture 113 Securing your Gen-AI applications Lecture 114 Generative AI Security Scoping Matrix Section 6: Practice Tests This course is for students who wants to enter the world of Machine Learning, Artificial Intelligence and Gen-AI. This course will teach students on how to use services on AWS when it comes to Machine Learning, Artificial Intelligence and Gen-AI. This course is meant for students who wants to give the AWS Certified AI Practitioner exam.,This course will teach students on how to use services on AWS when it comes to Machine Learning, Artificial Intelligence and Gen-AI.,This course is meant for students who want to give the AWS Certified AI Practitioner exam. Homepage: Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |