Machine Learning Engineering on AWS Training in Kazakhstan

  • Learn via: Online Instructor-Led / Classroom Based / Onsite
  • Duration: 3 Days
  • Level: Intermediate
  • Price: Please contact for booking options
  • Upcoming Date:
  • UK & Türkiye Based Global Training Provider

Machine Learning Engineering on AWS is an intermediate-level training program designed for professionals who want to build, deploy, scale, and operationalize machine learning solutions on Amazon Web Services. As organizations increasingly adopt cloud-based artificial intelligence solutions, AWS provides a comprehensive ecosystem for managing the entire machine learning lifecycle—from data preparation and model training to deployment and monitoring.

Throughout this hands-on course, participants gain practical experience using Amazon SageMaker AIAmazon EMRSageMaker Data WranglerSageMaker PipelinesModel RegistryMLOpsCI/CD, and advanced monitoring services to build production-ready machine learning applications.

Combining theoretical knowledge, guided labs, and real-world projects, this training prepares learners to develop secure, scalable, and enterprise-grade machine learning solutions on AWS.

We can organize this training at your preferred date and location. Contact Us!

Prerequisites

Participants are recommended to have:

  • Familiarity with basic Machine Learning concepts
  • Experience with Python programming
  • Knowledge of NumPyPandas, and Scikit-Learn
  • Basic understanding of cloud computing concepts
  • Familiarity with AWS services
  • Experience with Git or other version control systems (beneficial)

Who Should Attend

This course is ideal for:

  • Machine Learning Engineers
  • Data Scientists
  • AI Engineers
  • DevOps Engineers
  • Cloud Engineers
  • SysOps Engineers
  • Software Developers
  • Data Engineers
  • Professionals building ML solutions on AWS

What You Will Learn

By the end of this course, learners will be able to:

  • Build machine learning solutions on AWS.
  • Train and deploy models using Amazon SageMaker AI.
  • Process large-scale datasets with Amazon EMR.
  • Perform data preparation and feature engineering.
  • Select appropriate modeling approaches.
  • Evaluate and optimize model performance.
  • Apply Hyperparameter Tuning techniques.
  • Implement production-grade deployment strategies.
  • Establish MLOps workflows.
  • Monitor model performance and data quality.
  • Design secure AWS machine learning architectures.

Training Outline

Introduction to Machine Learning on AWS

Machine Learning Fundamentals

  • Machine Learning Fundamentals
  • Supervised and unsupervised learning
  • Machine learning lifecycle
  • Translating business problems into ML solutions

Machine Learning on AWS

  • AWS machine learning ecosystem
  • Amazon SageMaker AI
  • AWS ML services overview
  • Cloud-native AI solutions

Responsible AI

  • Ethical AI principles
  • Fairness and bias mitigation
  • Explainable AI
  • Responsible machine learning practices

Analyzing Machine Learning Challenges

Business Problem Evaluation

  • ML use cases
  • Defining business objectives
  • Success criteria and KPIs

Training Approaches

  • Model development strategies
  • Training methodologies
  • Algorithm selection techniques

Data Processing and Preparation

Data Types and Management

  • Structured and unstructured data
  • Data collection processes
  • Data storage strategies

AWS Storage Solutions

  • Amazon S3
  • AWS storage services
  • Choosing the right storage architecture

Exploratory Data Analysis

  • Data exploration techniques
  • Data visualization
  • Data quality assessment

Data Transformation and Feature Engineering

Data Cleaning

  • Handling missing data
  • Correcting inaccurate records
  • Removing duplicate entries

Feature Engineering

  • Feature creation techniques
  • Feature selection strategies
  • Data transformation methods

AWS Data Processing Services

  • Amazon SageMaker Data Wrangler
  • Amazon EMR
  • SageMaker Processing

Choosing a Modeling Approach

SageMaker Built-In Algorithms

  • SageMaker Built-In Algorithms
  • Algorithm selection
  • Business use cases

Amazon SageMaker Autopilot

  • AutoML
  • Automated model development
  • Intelligent model recommendations

Model Selection Considerations

  • Performance evaluation
  • Business alignment
  • Cost optimization

Training Machine Learning Models

Model Training Concepts

  • Training methodologies
  • Training infrastructure
  • Distributed training approaches

Training with Amazon SageMaker

  • SageMaker Training Jobs
  • Resource allocation
  • Training optimization techniques

Model Evaluation and Optimization

Performance Evaluation

  • Evaluation metrics
  • Accuracy and error analysis
  • Model comparison methodologies

Hyperparameter Optimization

  • Hyperparameter Tuning
  • Reducing training time
  • Automated optimization strategies

Model Deployment Strategies

Deployment Approaches

  • Real-time inference
  • Batch inference
  • Edge deployment

Inference Infrastructure

  • Endpoint management
  • Containerized inference
  • Resource optimization

A/B Testing

  • Traffic shifting strategies
  • Model comparison
  • Canary deployment approaches

Securing AWS Machine Learning Resources

Identity and Access Management

  • IAM policies
  • Role-based access controls
  • Secure ML environments

Network Security

  • Network access controls
  • VPC integration
  • Data protection strategies

CI/CD Security

  • Secure deployment pipelines
  • Pipeline protection
  • Security validation controls

MLOps and Automation

MLOps Fundamentals

  • Machine Learning Operations (MLOps)
  • Model lifecycle management
  • Continuous integration and delivery

Amazon SageMaker Pipelines

  • Amazon SageMaker Pipelines
  • Workflow automation
  • Process standardization

Model Registry

  • Amazon SageMaker Model Registry
  • Model versioning
  • Model governance

Monitoring Model Performance and Data Quality

Model Monitoring

  • SageMaker Model Monitor
  • Performance tracking
  • Production observability

Data Drift and Model Drift

  • Detecting data drift
  • Monitoring model degradation
  • Automated remediation strategies

Automated Troubleshooting and Continuous Improvement

  • Anomaly detection
  • Automated corrective actions
  • Performance optimization
  • Operational excellence

Why Choose Us

Experience Machine Learning Engineering on AWS in Kazakhstan through Bilginç IT Academy's live and interactive virtual classroom environment, accessible from your home, office, or any location. Connect with expert trainers in real time and bring the energy of classroom learning into the digital experience.

  • Live Instructor-Led Sessions: Join scheduled training sessions with your instructor and fellow delegates in real time.
  • Interactive Learning Experience: Take part in discussions, practical exercises, group activities, and Q&A sessions throughout the course.
  • Expert Trainer Network: Learn from experienced trainers with strong industry backgrounds and practical field expertise.
  • Over 30 Years of Training Expertise: Benefit from Bilginç IT Academy's long-standing experience in delivering professional training since 1995.
  • Flexible and Scalable Delivery: Access live virtual classrooms from Kazakhstan and worldwide, with flexible planning options for individual and corporate training needs.

Experience Machine Learning Engineering on AWS in a focused classroom environment in Kazakhstan. Bilginç IT Academy's carefully selected training venues provide a professional setting where delegates can interact directly with expert trainers and peers.

  • Experienced Trainers: Learn from specialists with extensive field experience and real-world knowledge.
  • Professional Training Venues: Attend courses in comfortable, well-equipped classrooms designed to support effective learning.
  • Focused Classroom Experience: Benefit from limited class sizes that encourage discussion, interaction, and personalized support.
  • Quality-Driven Learning: Develop practical skills through structured, up-to-date, and professionally designed training content.

Meet your team's training needs with Bilginç IT Academy's onsite Machine Learning Engineering on AWS in Kazakhstan solution, delivered at your office or preferred location. Align your team's development with your business goals through a training experience tailored to your organization.

  • Tailored Course Content: Adapt the training program to your organization's projects, team structure, and specific business requirements.
  • Time and Cost Efficiency: Reduce travel, accommodation, and operational costs while maximizing the value of your training investment.
  • Team-Focused Learning: Help your employees develop around the same knowledge base and strengthen collaboration across your organization.
  • Simplified Planning and Tracking: Manage the training process, participant development, and organizational requirements with greater control.


Contact us for more detail about our trainings and for all other enquiries!

Machine Learning Engineering on AWS Training Course in Kazakhstan Schedule

Join our public courses in our Kazakhstan facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

We can organize this training at your preferred date and location.
09 шілде 2026 (3 Days)
Almaty, Astana, Shymkent
10 шілде 2026 (3 Days)
Almaty, Astana, Shymkent
25 шілде 2026 (3 Days)
Almaty, Astana, Shymkent
06 тамыз 2026 (3 Days)
Almaty, Astana, Shymkent
25 тамыз 2026 (3 Days)
Almaty, Astana, Shymkent
02 қыркүйек 2026 (3 Days)
Almaty, Astana, Shymkent
07 қыркүйек 2026 (3 Days)
Almaty, Astana, Shymkent
10 қыркүйек 2026 (3 Days)
Almaty, Astana, Shymkent

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Kazakhstan stands as the preeminent technological and financial powerhouse of Central Asia, with the dynamic cities of Almaty and Astana serving as global magnets for innovation. The country is home to the Astana Hub, an international tech startup center, and Nazarbayev University, both of which are at the forefront of pioneering research in Artificial Intelligence, Blockchain, and Big Data analytics. Kazakhstan has achieved worldwide recognition for its advancements in digital mining and financial technologies, supported by a national strategy that prioritizes high-quality IT education and continuous professional development. Our comprehensive training programs are strategically designed to empower professionals in Kazakhstan to master complex corporate systems and lead large-scale digital innovation processes. By bridging the gap between local talent and global industry standards, we ensure that the Kazakh workforce remains highly competitive in the rapidly evolving Eurasian digital economy.

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