- Promoted by: Anonymous
- Platform: Udemy
- Category: IT Certifications
- Language: English
- Instructor: SkillBoost Learning LLC
- Duration:
- Student(s): 383
- Rate 0 Of 5 From 0 Votes
- Expires on: 2025/12/14
-
Price:
94.990
Covers data preparation, feature engineering, model training, tuning, deployment, monitoring, and ML security
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for the "AWS Machine Learning Engineer - (MLA-C01): 1500 Questions" course by SkillBoost Learning LLC on Udemy.
This course, boasting a 0.0-star rating from 0 reviews
and with 383 enrolled students, provides comprehensive training in IT Certifications.
Spanning approximately
, this course is delivered in English
and we updated the information on December 10, 2025.
To get your free access, find the coupon code at the end of this article. Happy learning!
The AWS Machine Learning Engineer – Associate (MLA-C01): 1500 Qs course is built to give you a clear, end-to-end path through data preparation, feature engineering, model training, tuning, deployment, monitoring and ML security. All questions are framed as realistic ML engineering scenarios, so you practice thinking like someone who designs, ships and operates ML systems on AWS.
This course contains 1,500 questions divided into six sections of 250 questions each, aligned with the lifecycle of a practical ML solution.
You begin with Data Understanding, Sourcing & Preparation on AWS — 250 Questions, where you focus on data profiling, quality checks and preparation flows, making sure that your datasets are ready for feature work and training.
The second section, Feature Engineering, Data Quality & Representation Strategies — 250 Questions, dives into feature design, encoding, scaling and representation choices, helping you turn raw inputs into reliable, expressive features.
In the third section, Model Framing, Selection, Training & Evaluation on AWS — 250 Questions, you work on choosing problem types, interpreting metrics and structuring training and evaluation, so model performance actually reflects real-world goals.
The fourth section, Hyperparameter Tuning, Experimentation & Performance Optimization — 250 Questions, strengthens your ability to run structured experiments, tune hyperparameters and compare candidates, balancing cost, time and accuracy.
The fifth section, Deployment Patterns, Inference Architectures & MLOps Integration — 250 Questions, moves into deployment and inference patterns, showing how to expose models through online and batch architectures and integrate them into pipeline-driven MLOps workflows.
Finally, the sixth section, Monitoring, Drift Detection, ML Security & Responsible Operations — 250 Questions, connects monitoring, drift, security and governance, so you treat ML systems as live services that must remain accurate, safe and auditable over time.
Each practice test can be retaken as many times as you need, helping you track and enhance your progress, reinforce weaker stages of the ML lifecycle and build structured confidence as an AWS ML engineer.