Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Aws Certified Machine Learning Engineer - Associate Mla-C01

    Posted By: ELK1nG
    Aws Certified Machine Learning Engineer - Associate Mla-C01

    Aws Certified Machine Learning Engineer - Associate Mla-C01
    Published 9/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 9.75 GB | Duration: 25h 51m

    The ONLY course you need to PASS the AWS Certified Machine Learning Engineer Exam | MLA-C01 | Incl. FULL Practice Exam!

    What you'll learn

    PASS the AWS Certified Machine Learning Engineer Associate Exam (MLA-C01)

    Full Practice Exam incl. Full Explanations to ACE the exam

    All Slides available as downloadable PDFs

    All Topics Covered & 100% up-to-date

    Hands-on Demos with Real-World Scenarios

    Start your Machine Learning Career

    Build, Train & Deploy Machine Learning Models in Amazon SageMaker

    Data Ingestion and Preprocessing with SageMaker Data Wrangler

    Full Machine Learning Pipelines with SageMaker & Much More

    Master the Full Machine Learning Lifecycle with Real-World Skills

    Requirements

    No previous experience with AWS or Machine Learning is needed!

    Description

    The ONLY course you need to prepare and PASS the AWS Certified Machine Learning Engineer – Associate exam (MLA-C01) and become an AWS Certified Machine Learning Engineer – Associate!Make your exam preparation and learning Machine Learning on AWS fun, easy, and highly effective with real-life hands-on projects, quizzes, and a full practice exam!This course teaches you every single topic you need to master the exam with ease.Why is this the ONLY course you need to pass the AWS Certified Machine Learning Engineer exam?Every single topic is covered in depth100% up-to-date!Hands-On & PracticalFull practice exam including all explanationsPractical & Real-World SkillsTips for successThis course guides you step-by-step to prepare in the best possible way for the examDon’t waste your time but focuses on what really matters to master the exam!This course guides you step-by-step to prepare in the best possible way for the exam and start your successful career in machine learning!Your InstructorHi, my name is Nikolai, and I am AWS Certified and I teach AWS and data analytics in over 200 countries. My mission with this course is to take the stress out of your exam prep, make it fun but very effective to maximize your preparation time. I want to make sure you have the best chances of succeeding and moving your career forward with the AWS Machine Learning Engineer certification in your professional journey.Enroll Now and Get:Lifetime Access including all future updatesHigh quality video contentAll slides & project files as downloadable resourcesFull practice exam with explanationsTipps for success & expert-level support30-day money-back guarantee (no-questions-asked!)Become an Expert & Learn the Full Machine Learning Lifecycle in AWS:PASS the AWS Certified Machine Learning Engineer examMaster Machine Learning on AWS and become an expertBuild, train, and deploy machine learning models with SageMakerOrchestrate ML workflows with SageMaker PipelinesPerform data ingestion and transformation with SageMaker Data Wrangler and AWS GlueUse SageMaker Feature Store for feature engineeringDeploy models using real-time, batch, and serverless inferenceMonitor models in production with SageMaker Model MonitorDebug and optimize models with SageMaker Debugger and ProfilerImplement responsible AI practices with SageMaker ClarifyUnderstand AWS storage and data processing services relevant to MLSecure your ML workflows with IAM, KMS, and VPCsImplement CI/CD pipelines for ML using SageMaker and AWS CodePipelineOptimize costs and monitor ML workloads with CloudWatch and AWS Cost Management toolsAnd much more!Whether you’re new to machine learning or looking to expand your AWS expertise, this course offers everything you need—practical labs, a full practice exam, and up-to-date content that covers every aspect of Machine Learning on AWS.Take this chance today — this can be your first step into a successful machine learning engineering career!Looking forward to seeing you inside the course!

    Overview

    Section 1: Introduction

    Lecture 1 Welcome!

    Lecture 2 About the exam & this course

    Lecture 3 Important tips for this course

    Lecture 4 All Slides

    Section 2: SageMaker: Basics & Setup

    Lecture 5 AWS Free Tier Account ML

    Lecture 6 SageMaker Overview

    Lecture 7 SageMaker Notebooks

    Lecture 8 Setting Up SageMaker Notebook Instance

    Lecture 9 Basic Operations in SageMaker Notebook Instance

    Lecture 10 SageMaker Studio Setting Up Domain & Users

    Lecture 11 SageMaker Studio Overview

    Lecture 12 AWS Budgets Machine Learning

    Section 3: SageMaker: Data Ingestion & Feature Engineering

    Lecture 13 Data Preparation with Data Wrangler

    Lecture 14 Import data using Data Wrangler

    Lecture 15 Data Wrangler - Get Insights

    Lecture 16 Data Wrangler Transform Data

    Lecture 17 Export Data in Data Wrangler

    Lecture 18 Stop Running Instances

    Lecture 19 Understanding Feature Engineering

    Lecture 20 SageMaker Feature Store

    Lecture 21 Feature Store - Creating Features & Feature Group

    Lecture 22 SageMaker Notebooks- Setting up Features

    Lecture 23 SageMaker Ground Truth

    Lecture 24 Create Labeling Jobs in Groud Truth

    Lecture 25 Setting up Groud Truth Workforce

    Lecture 26 Ground Truth Plus

    Section 4: SageMaker: Training & Hyperparameter Tuning

    Lecture 27 Training with Built-in Algorithms

    Lecture 28 SageMaker JumpStart

    Lecture 29 Deploy a Model Using JumpStart

    Lecture 30 Training Models - Potential Paths

    Lecture 31 Prepare The Training Of The Model

    Lecture 32 Train Model

    Lecture 33 Reviewing the Trained Model

    Lecture 34 Model Tuning & Hyperparameters

    Lecture 35 Hyperparamter Optimization Techniques

    Lecture 36 Hyperparameter Tuning in Notebooks

    Lecture 37 Hyperparameter Tuning in the UI

    Lecture 38 SageMaker Canvas

    Lecture 39 SageMaker Canvas Using AutoML

    Lecture 40 SageMaker Canvas Predict & Deploy

    Lecture 41 Custom Training Script

    Lecture 42 Custom Docker Containers

    Lecture 43 Distributed Training

    Section 5: SageMaker: Experiment Tracking & Debugging

    Lecture 44 SageMaker Experiments

    Lecture 45 MLflow Setting Up Tracking Server

    Lecture 46 MLflow Setup Experiment

    Lecture 47 MLflow Track & Record Experiments

    Lecture 48 SageMaker Neo

    Section 6: SageMaker: Clarify & Responsible AI

    Lecture 49 Challenges of Responsible Al

    Lecture 50 Strategies Against Bias & Variance

    Lecture 51 SageMaker Clarify

    Lecture 52 SageMaker Clarify Pre-Training Analysis

    Lecture 53 SageMaker Clarify Review Pre-Training Analysis

    Lecture 54 SageMaker Clarify Model Bias Analysis

    Lecture 55 SageMaker Clarify Explainability Report

    Section 7: SageMaker: Debugging & Deployment

    Lecture 56 SageMaker Debugger

    Lecture 57 SageMaker Debugger (Hands-on)

    Lecture 58 Model Deployment Strategies in SageMaker

    Lecture 59 Deploy Real-Time Inference Endpoint

    Lecture 60 Deploying Endpoint using Model Artifact

    Lecture 61 Serverless Inference Endpoint

    Lecture 62 Deploy Using Batch Transform

    Lecture 63 Deploy as Asynchronous Inference Endpoint

    Lecture 64 Multi-Model & Multi-Container Endpoints in SageMaker

    Lecture 65 Deploying a Multi-Model Endpoint

    Section 8: SageMaker: Monitoring Models

    Lecture 66 Monitoring Models

    Lecture 67 SageMaker Model Monitor

    Lecture 68 Monitoring Data Quality in SageMaker

    Lecture 69 Monitor Model Quality with SageMaker

    Lecture 70 Model Monitoring Create a Baseline

    Lecture 71 SageMaker Monitor Create a Schedule

    Section 9: SageMaker: Pipelines & Model Registry

    Lecture 72 SageMaker Pipelines

    Lecture 73 SageMaker Pipelines (Hands-on)

    Lecture 74 Model Registry

    Lecture 75 SageMaker Model Registry

    Section 10: Machine Learning Concepts

    Lecture 76 Understanding Machine Learning Models

    Lecture 77 Supervised Learning

    Lecture 78 Unsupervised Learning

    Lecture 79 Text Analysis Algorithms

    Lecture 80 Image Classification

    Lecture 81 Reinforcement Learning

    Lecture 82 Reinforcement Learning with SageMaker

    Lecture 83 Model Evaluation Concepts

    Lecture 84 Performance Evaluation Metrics

    Lecture 85 Machine Learning Development Lifecycle

    Lecture 86 MLOps

    Section 11: AWS Machine Learning Services

    Lecture 87 What is Amazon Bedrock?

    Lecture 88 Amazon Bedrock - Architecture

    Lecture 89 Amazon Bedrock - Use Cases

    Lecture 90 Hands-on: Exploring Amazon Bedrock

    Lecture 91 Hands-on: Installing Visual Studio Code

    Lecture 92 Hands-on: Setting up Visual Studio Code

    Lecture 93 Hands-on: Invoking Amazon Titan Model

    Lecture 94 Hands-on: Image Generation in Bedrock

    Lecture 95 Amazon Personalize

    Lecture 96 Hands-on: Dataset Group (Amazon Personalize)

    Lecture 97 Hands-on: Training Dataset (Amazon Personalize)

    Lecture 98 Hands-on: Train Model (Amazon Personalize)

    Lecture 99 Hands-on: Make Predictions (Amazon Personalize)

    Lecture 100 Amazon Fraud Detector

    Lecture 101 Setup & Event Type (Amazon Fraud Detector)

    Lecture 102 Build & Train Model (Amazon Fraud Detector)

    Lecture 103 Evaluate our Model (Amazon Fraud Detector)

    Lecture 104 Create Detector & Make Predictions (Amazon Fraud Detector)

    Lecture 105 Cleaning up Resources (Amazon Fraud Detector)

    Lecture 106 Amazon Augmented AI

    Lecture 107 Amazon Comprehend

    Lecture 108 Hands-on: Amazon Comprehend

    Lecture 109 Amazon Comprehend Medical Hands on

    Lecture 110 Amazon Rekognition

    Lecture 111 Hands-on: Amazon Rekognition

    Lecture 112 Hands-on: Using Rekognition in Lambda Function

    Lecture 113 Amazon Textract

    Lecture 114 Hands-on: Amazon Textract

    Lecture 115 Amazon Kendra

    Lecture 116 Hands-on: Create an Index & Sync (Amazon Kendra)

    Lecture 117 Hands-on: Create Experience (Amazon Kendra)

    Section 12: Data Ingestion

    Lecture 118 AWS S3 - Basics

    Lecture 119 Create a Bucket in S3 (Hands-on)

    Lecture 120 Uploading files to S3 (Hands-on)

    Lecture 121 Streaming vs Batch Ingestion

    Lecture 122 AWS Glue

    Lecture 123 Setting Up Crawlers (Hands-on)

    Section 13: Querying with Athena

    Lecture 124 AWS Athena - Overview

    Lecture 125 Query data using Athena (Hands-on)

    Lecture 126 Federated Queries

    Lecture 127 Performance & Cost

    Lecture 128 Workgroups

    Lecture 129 Workgroups (Hands-on)

    Section 14: AWS Data Processing Services

    Lecture 130 Glue Costs

    Lecture 131 Run Glue ETL Jobs (Hands-on)

    Lecture 132 Scheduling Crawlers & ETL Jobs (Hands-on)

    Lecture 133 Stateful vs Stateless

    Lecture 134 Stateless Data Ingestion in Glue (Hands-on)

    Lecture 135 Stateful Ingestion with Bookmarks (Hands-on)

    Lecture 136 Glue Transformations (ETL)

    Lecture 137 Glue Data Quality (Hands-on)

    Lecture 138 Glue Workflows

    Lecture 139 Glue Workflows - (Hands-on)

    Lecture 140 Glue Job Types

    Lecture 141 Glue Job Types (Hands-on)

    Lecture 142 Partitioning

    Lecture 143 AWS Glue DataBrew

    Lecture 144 AWS Glue DataBrew - Transformations

    Lecture 145 AWS Glue DataBrew (Hands-On)

    Lecture 146 AWS Lambda

    Lecture 147 Event-Driven Ingestion with AWS Lambda (Hands-on)

    Lecture 148 Lambda Layers

    Lecture 149 Replayability

    Lecture 150 Amazon Kinesis for Streaming Data

    Lecture 151 Amazon Kinesis Data Streams

    Lecture 152 Throughput and Latency

    Lecture 153 Creating a Data Stream (Hands-on)

    Lecture 154 Enhanced Fan-Out for Kinesis Consumers

    Lecture 155 Pull and Consume Data From Stream (Hands-on)

    Lecture 156 Calling a Lambda Function From Amazon Kinesis (Hands-on)

    Lecture 157 Common Issues & Troubleshooting

    Lecture 158 Kinesis Firehose

    Lecture 159 Creating Data Firehose Stream (Hands-on)

    Lecture 160 Data Firehose - Transformations with Lambda (Hands-on)

    Lecture 161 Amazon Managed Service for Apache Flink

    Lecture 162 Amazon MSK

    Lecture 163 MSK Connect & MSK Serverless

    Lecture 164 Amazon EMR

    Lecture 165 AWS EMR Cluster Types & Storage

    Lecture 166 AWS EMR Storage & Scaling

    Lecture 167 AWS EMR Deployment Options

    Section 15: AWS Storage Solutions

    Lecture 168 Importance of Partitioning

    Lecture 169 Partitioning with Glue (Hands-on)

    Lecture 170 Lifecycle Management & Storage Classes

    Lecture 171 Using Lifecycle Rules

    Lecture 172 Storage Classes (Hands-on)

    Lecture 173 Intelligent Tiering (Hands-on)

    Lecture 174 Lifecycle Rules (Hands-on)

    Lecture 175 Versioning in S3

    Lecture 176 Versioning (Hands-on)

    Lecture 177 Replication

    Lecture 178 Replication (Hands-on)

    Lecture 179 Security in S3

    Lecture 180 Security (Hands-on)

    Lecture 181 Bucket Policies

    Lecture 182 Access Points in S3

    Lecture 183 Object Lambda

    Lecture 184 S3 Event Notifications

    Lecture 185 S3 Event Notifications (Hands-on)

    Lecture 186 S3 Select & Glacier Select

    Lecture 187 S3 Select (Hands-on)

    Lecture 188 Data Mesh

    Lecture 189 Data Exchange

    Lecture 190 Amazon Elastic Block Store (EBS)

    Lecture 191 EBS Provisioning

    Lecture 192 EBS Volumes (Hands-on)

    Lecture 193 Amazon Elastic File System (EFS)

    Section 16: AWS Security and Compliance

    Lecture 194 IAM Overview

    Lecture 195 IAM Users, Groups & Role

    Lecture 196 IAM Policies

    Lecture 197 IAM Create User (Hands-on)

    Lecture 198 IAM Policies (Hands-on)

    Lecture 199 IAM Create Groups & Roles (Hands-on)

    Lecture 200 AWS KMS Overview

    Lecture 201 AWS KMS Key Management & Pricing

    Lecture 202 AWS KMS Cross-Region & Cross-Account

    Lecture 203 AWS Macie

    Lecture 204 AWS Secrets

    Lecture 205 AWS Secrets (Hands-on)

    Lecture 206 AWS Shield

    Lecture 207 Virtual Private Cloud & Subnets

    Lecture 208 Gateways

    Lecture 209 VPN & VPC Peering

    Lecture 210 Security Groups & NACLs

    Lecture 211 Additional VPC features

    Lecture 212 AWS CloudTrail

    Lecture 213 AWS CloudTrail Lake

    Lecture 214 AWS Config

    Lecture 215 AWS Config (Hands-on)

    Lecture 216 AWS Well-Architected Framework

    Lecture 217 AWS Well-Architected Tool

    Section 17: AWS Deployment and Orchestration Services

    Lecture 218 AWS CloudFormation

    Lecture 219 AWS CloudFormation (Hands-on)

    Lecture 220 Docker Containers

    Lecture 221 Amazon ECS

    Lecture 222 Amazon ECS - Launch Types

    Lecture 223 Amazon ECS - IAM Roles

    Lecture 224 Amazon ECR

    Lecture 225 Amazon EKS

    Section 18: AWS Monitoring and Cost Management Tools

    Lecture 226 Amazon CloudWatch Overview

    Lecture 227 Amazon CloudWatch Metrics (Hands-on)

    Lecture 228 Amazon CloudWatch Metrics Stream

    Lecture 229 Amazon CloudWatch Alarms

    Lecture 230 CloudWatch Alarms (Hands-on)

    Lecture 231 Amazon CloudWatch Logs

    Lecture 232 CloudWatch Logs (Hands-on)

    Lecture 233 Amazon CloudWatch Log Filtering & Subscription

    Lecture 234 Amazon CloudWatch Logs Agent

    Section 19: AWS AI Services

    Lecture 235 What is Amazon Q Business

    Lecture 236 Hands-on: Create Amazon Q Business Application

    Lecture 237 Hands-on: Assign Users & Test Application

    Lecture 238 Hands-on: Using Global Controls

    Lecture 239 Hands-on: Blocking Words

    Lecture 240 Hands-on: Topic Controls

    Lecture 241 Amazon Transcribe

    Lecture 242 Hands-on: Amazon Transcribe

    Lecture 243 Amazon Polly

    Lecture 244 Hands-on: Pricing & Models (Amazon Polly)

    Lecture 245 Hands-on: Text-to-Speech (Amazon Polly)

    Lecture 246 Hands-on: SSML to modify speech output (Amazon Polly)

    Lecture 247 Hands-on: Real-time translation (Amazon Translate)

    Lecture 248 Hands-on: Batch job translation (Amazon Translate)

    Section 20: Practice Exam, Exam Tips & Scheduling

    Lecture 249 Exam Signup & Get 30min more time!

    Lecture 250 Final Exam Tips

    Aspiring Machine Learning Engineers looking to get certified and kickstart their ML careers,Data Scientists, Data Engineers, Developers, and IT Professionals,Professionals seeking to expand their knowledge of Machine Learning on AWS