Exam Readiness: AWS Certified Machine Learning – Specialty

Course code: AWSCMLSPEC

The AWS Certified Machine Learning – Specialty exam validates a candidate’s ability to design, implement, deploy, and maintain machine learning (ML) or deep learning (DL) solutions for given business problems. People with one to two years of experience developing, architecting, or running ML/DL workloads on the AWS cloud should join this workshop to learn how to prepare to successfully pass the exam. The workshop explores the exam’s topic areas, shows how they relate to machine learning on AWS, and also maps them to machine learning and deep learning foundational areas for future self-study.

It includes sample exam questions from each domain and discussions of concepts being tested to help test-takers better eliminate incorrect responses. Topics in the course will address each of the exam’s four subject domains. 1. Data Engineering 2. Exploratory Data Analysis 3. Modeling 4. Machine Learning Implementation and Operations.

Professional
and certified lecturers

Internationally
recognized certifications

Wide range of technical
and soft skills courses

Great customer
service

Making courses
exactly to measure your needs

Course dates

Starting date: Individual

Type: Virtual

Course duration: 1 day

Language: en

Price without VAT: 400 EUR

Register

Starting
date
Place
Type Course
duration
Language Price without VAT
Individual Virtual 1 day en 400 EUR Register
G Guaranteed course

Didn't find a suitable date?

Write to us about listing an alternative tailor-made date.

Contact

Course description

This course is designed to teach you how to:

  • Identify their strengths and weaknesses in each of the exam domains.
  • Create a subsequent study plan to prepare for the exam.
  • Describe the technical topics and concepts making up each of the exam domains.
  • Summarize the logistics and mechanics of the certification exam and its questions.
  • Identify effective test taking strategies that can be used to answer exam questions.

Target group

This course is intended for:

  • Machine learning practitioners preparing to take the AWS Certified Machine Learning – Specialty exam

Course structure

Module 0: Course Introduction

Module 1: Exam Overview and Test-taking Strategies

  • Exam overview, logistics, scoring, and user interface
  • Question mechanics and design
  • Test-taking strategies

Module 2: Domain 1: Data Engineering

  • Domain 1.1: Data Repositories for machine learning
  • Domain 1.2: Identify and implement a data-ingestion solution
  • Domain 1.3: Identify and implement a data-transformation solution
  • Walkthrough of study questions
  • Domain 1 quiz

Module 3: Domain 2: Exploratory Data Analysis

  • Domain 2.1: Sanitize and prepare data for modeling
  • Domain 2.2: Perform featuring engineering
  • Domain 2.3: Analyze and visualize data for ML
  • Walkthrough of study questions
  • Domain 2 quiz

Module 4: Domain 3: Modeling

  • Domain 3.1: Frame business problems as machine learning (ML) problems
  • Domain 3.2: Select the appropriate model(s) for a given ML problem
  • Domain 3.3: Train ML models
  • Domain 3.4 Perform hyperparameter optimization
  • Domain 3.5 Evaluate ML models
  • Walkthrough of study questions
  • Domain 3 quiz

Module 5: ML Implementation and Operations

  • Domain 4.1: Build ML solutions for performance, availability, scalability, resiliency, and fault tolerance
  • Domain 4.2: Recommend and implement the appropriate ML services and features for a given problem
  • Domain 4.3: Apply basic AWS security practices to ML solutions
  • Domain 4.4: Deploy and operationalize ML solutions
  • Walkthrough of study questions
  • Domain 4 quiz

Module 6: Comprehensive study questions

Module 7: Study Material

Module 8: Wrap-up

Prerequisites

We recommend that attendees of this course to have:

  • One or two years of hands-on experience developing, architecting, or running ML/deep learning workloads on the AWS cloud.
  • Proficiency at expressing the intuition behind basic ML algorithms and performing basic hyperparameter optimization
  • Understanding of complete ML pipeline and its components
  • Experience with ML and deep learning frameworks
  • Understanding and applying model training, deployment and operational best practices

Do you need advice or a tailor-made course?

daniel

Daniel Šťastný

product support

ComGate payment gateway MasterCard Logo Visa logo