Certification Industry: Cloud
Certificate Name: AWS Specialty Machine Learning
Certificate Issuing Authority: Amazon Web Services(AWS)
Certification Price: 300 USD
Certificate Validity: 3 years
The AWS Certified Machine Learning - Specialty certification is intended for those individuals who perform a Development or Data Science role. It validates a candidate's ability to design, implement, deploy, and maintain machine learning solutions for given business problems. exam is intended for individuals who perform a Development or Data Science role. This exam validates an examinee’s ability to build, train, tune, and deploy machine-learning (ML) models using the AWS Cloud. Below are the abilities Validated by the Certification:
Recommended AWS Knowledge:
Exam Format - Multiple-choice, multiple-answer
Exam Time - 170 minutes
Exam Language - Available in English, Japanese, Korean, and Simplified Chinese
Passing Criteria - AWS Certification passing scores are set by using statistical analysis and are subject to change. AWS does not publish exam passing scores because exam questions and passing scores are updated to reflect changes in test forms as the content is updated.
For recertification for the Specialty certification, take the Current Specialty exam. For example, if you are an AWS Certified Security – Specialist, you can retake the current AWS Certified Security – Specialty exam to recertify.
AWS Certified Machine Learning preparation guide
I recently took the AWS Certified Machine Learning –Specialty and wanted to share my preparation with anyone planning to certify. In my opinion, this is the second most difficult AWS exam with the most challenging being the Solution Architect Professional exam.
There are 65 questions on the exam and you are expected to complete the exam within 3 hours. The exam is quite unique in the sense that it is the only AWS exam that have non-related AWS questions. There are mainly three kinds of questions on the exam: general ML questions, questions on SageMaker and questions on other AWS services.
You need hands-on ML experience as well as knowledge of Amazon SageMaker and AWS ML services to pass the exam. Having data analytics experience is a plus.
According to the exam guide for Machine Learning Specialty, the candidate should have experience developing, architecting, or running ML/deep learning workloads on the AWS Cloud, along with:
The exam is made up of 4 domains. These are Data engineering, Exploratory Data Analysis, Modeling and Machine Learning Implementation and Operations.
Data Engineering - 20%
The Data Engineering domain deals with data lakes, ingesting and transforming data. Services that are tested in this domain include the Kinesis family of services, S3, Database Migration Service, IoT, EMR (Spark), Glue, Athena, Step Functions and AWS Batch.
Consider the below topics for this domain:
Exploratory Data Analysis - 24%
This domain focuses on cleaning data, preparing and visualizing data. Services in this domain include Glue, EMR, QuickSight, SageMaker Ground Truth and Mechanical Turk,
Consider the below topics for this domain:
Modelling - 36%
This domain has the most questions on the exam as well as some general ML concepts. It deals with identifying ML solutions for business problems, training models, hyperparameter optimization and evaluating machine learning models.
Consider the below topics for this domain:
Machine Learning Implementation & Operations - 20%
The final domain tests the candidate on deploying models and identifying AWS AI services for business use cases. It also covers monitoring and security of ML solutions.
Consider the below topics for this domain:
Conclusion
I have tried to list as many topics as possible but this exam is non-exhausted. I suggest you access your skills and spend more time on areas you identify as your weakness.
My target score for this exam was 950 but I scored 881. Most importantly, I passed.
Resources Used
Preparation Courses:
Linux Academy
Frank Kane & Stephane Maarek - Udemy
ACloudGuru
Practice Test:
Whizlabs
AWS Training & Certification Digital courses
The Elements of Data Science
Exam Readiness: AWS Certified Machine Learning – Specialty
Developing Machine Learning Applications
Process Model: CRISP-DM on the AWS Stack
Speaking Of: Machine Translation and Natural Language Processing (NLP)
Build a Text Classification Model with AWS Glue and Amazon SageMaker
Deep Dive on Amazon Rekognition: Building Computer Visions Based Smart Applications
Machine Learning Terminology and Process
AWS Whitepapers
Deep Learning on AWS
Power Machine Learning at scale - Mapping Parallelized Modeling-to-HPC Infrastructure on AWS
Other Resources
Evaluating Machine Learning Models by Alice Zheng
Towards Data Science - Quick Start to Multi GPU Deep Learning on AWS SageMaker Using TF Distribute
Towards Data Science - Various Ways To Evaluate a Machine Learning Model's Performance
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