AWS Certified Machine Learning Specialty 2024 - Hands On!
Offered By: Udemy
Course Description
Overview
What you'll learn:
- What to expect on the AWS Certified Machine Learning Specialty exam
- Amazon SageMaker's built-in machine learning algorithms (XGBoost, BlazingText, Object Detection, etc.)
- Feature engineering techniques, including imputation, outliers, binning, and normalization
- High-level ML services: Comprehend, Translate, Polly, Transcribe, Lex, Rekognition, and more
- Data engineering with S3, Glue, Kinesis, and DynamoDB
- Exploratory data analysis with scikit_learn, Athena, Apache Spark, and EMR
- Deep learning and hyperparameter tuning of deep neural networks
- Automatic model tuning and operations with SageMaker
- L1 and L2 regularization
- Applying security best practices to machine learning pipelines
Updated for the latest SageMaker features, and Generative AI(LLM's / Bedrock). Happy learning!
Nervous about passing the AWSCertifiedMachine Learning - Specialty exam (MLS-C01)? You should be! There's no doubt it's one of the most difficult and coveted AWS certifications. A deep knowledge of AWS and SageMakerisn't enough to pass this one - you also need deep knowledge of machine learning, and the nuances of feature engineering and model tuning that generally aren't taught in books or classrooms. You just can't prepare enough for this one.
This certification prep course is taught by Frank Kane, who spent nine years working at Amazon itself in the field of machine learning. Frank took and passed this exam on the first try, and knows exactly what it takes for you to pass it yourself. Joining Frank in this course is Stephane Maarek, an AWS expert and popular AWS certification instructor on Udemy.
In addition to the 15-hour video course, a 30-minute quick assessment practice exam is included that consists of the same topics and style as the real exam. You'll also get four hands-on labs that allow you to practice what you've learned, and gain valuable experience in model tuning, feature engineering, and data engineering.
This course is structured into the four domains tested by this exam: data engineering, exploratory data analysis, modeling, and machine learning implementation and operations. Just some of the topics we'll cover include:
How generative AI and large language models (LLM's) work, including the Transformer architecture (GPT)and attention-based neural networks (masked self-attention)
Amazon's newest generative AI services:Bedrock, SageMaker JumpStart forGenerativeAI,CodeWhisperer, andSageMakerFoundationModels
S3 data lakes
AWSGlue and Glue ETL
Kinesis data streams, firehose, and video streams
DynamoDB
Data Pipelines, AWSBatch, and StepFunctions
Using scikit_learn
Data science basics
Athena and Quicksight
Elastic MapReduce (EMR)
ApacheSpark and MLLib
Feature engineering (imputation, outliers, binning, transforms, encoding, and normalization)
Ground Truth
Deep Learning basics
Tuning neural networks and avoiding overfitting
Amazon SageMaker, including SageMaker Studio, SageMaker Model Monitor, SageMakerAutopilot, and SageMaker Debugger.
Regularization techniques
Evaluating machine learning models (precision, recall, F1, confusion matrix, etc.)
High-level MLservices: Comprehend, Translate, Polly, Transcribe, Lex, Rekognition, and more
Building recommender systems with Amazon Personalize
Monitoring industrial equipment with Lookout and Monitron
Security best practices with machine learning on AWS
Machine learning is an advanced certification, and it's best tackled by students who have already obtained associate-level certification in AWS and have some real-world industry experience. This exam is not intended for AWS beginners.
If there's a more comprehensive prep course for the AWSCertified Machine Learning -Specialty exam, we haven't seen it. Enroll now, and gain confidence as you walk into that testing center.
Instructor
My name is Stéphane Maarek,I am passionate about Cloud Computing, and I will be your instructor in this course. I teach about AWS certifications, focusing on helping my students improve their professional proficiencies in AWS.
I have already taught 2,500,000+ students and gotten 800,000+ reviews throughout my career in designing and delivering these certifications and courses!
With AWS becoming the centerpiece of today's modern IT architectures, I have decided it is time for students to learn how to be an AWS Machine Learning Professional. So, let’s kick start the course! You are in good hands!
Instructor
Hey, I'm Frank Kane, and I'm also instructing this course. I spent nine years working for Amazon from the inside as a senior engineer and senior manager, where my specialty was recommender systems and machine learning. As an instructor,I'm best known for my top-selling courses in "big data", data analytics, machine learning, Apache Spark, system design, technical management and career growth, and Elasticsearch.
I've been teaching on Udemy since 2015, where I've reached over 850,00 students all around the world!
I've worked hard to keep this course up to date with the latest developments in AWS machine learning, and to make sure you're prepared for the latest version of this exam. Let's dive in and get you ready!
This course also comes with:
Lifetime access to all future updates
A responsive instructor in the Q&A Section
Udemy Certificate of Completion Ready for Download
A 30 Day "No Questions Asked" Money Back Guarantee!
Join us in this course if you want to prepare for the AWS Machine Learning Certification and master the AWS platform!
Taught by
Sundog Education by Frank Kane, Stephane Maarek | AWS Certified Solutions Architect & Developer Associate and Frank Kane
Related Courses
FinTech for Finance and Business LeadersACCA via edX Accounting Data Analytics
University of Illinois at Urbana-Champaign via Coursera Advanced AI on Microsoft Azure: Ethics and Laws, Research Methods and Machine Learning
Cloudswyft via FutureLearn Ethics, Laws and Implementing an AI Solution on Microsoft Azure
Cloudswyft via FutureLearn Post Graduate Certificate in Advanced Machine Learning & AI
Indian Institute of Technology Roorkee via Coursera