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Machine Learning: Your First Step into the Profession

Course Overview Machine Learning: Your First Step into the Profession is a beginner-friendly, self-paced theoretical course designed for absolute beginners with no prior experience in programming or data science. If you’ve ever been curious about what machine learning (ML) is …

Overview

Course Overview

Machine Learning: Your First Step into the Profession is a beginner-friendly, self-paced theoretical course designed for absolute beginners with no prior experience in programming or data science. If you’ve ever been curious about what machine learning (ML) is or what working as a data scientist or ML engineer involves, this course will help you build a strong foundation. There are no coding assignments or labs; instead, you’ll gain a comprehensive understanding of the field, the tools, and the concepts that shape modern machine learning.

Who Is This Course For?

  • Anyone interested in exploring machine learning as a career path
  • People with zero background in programming, math, or data science
  • Self-learners looking to understand the basics before taking hands-on courses
  • Professionals considering a career change to data or technology roles

What Will You Learn?

The course is structured into five modules, each carefully crafted to build your knowledge step by step:

  1. Intro to the Profession: Learn what ML engineers and data scientists do daily, explore real-world applications, understand career paths, and see how the industry works.
  2. Python Fundamentals: Get to know the basics of Python syntax, data types, control flow, collections, functions, file operations, and essential tools like Git and the command line—all explained in simple, accessible language.
  3. Math & Statistics Essentials: Discover the foundational concepts in linear algebra, differentiation, optimization, probability, and statistics that underpin all of machine learning. Learn how to make sense of data, test hypotheses, and interpret results.
  4. Working with Data: Understand how data is structured and processed using tools like NumPy and Pandas. Learn the basics of SQL, data visualization, and how to interpret different types of charts and graphs.
  5. Core Concepts in Machine Learning: Dive into the main types of ML problems (regression and classification), key algorithms, evaluation metrics, pitfalls like overfitting, feature engineering, and data preprocessing—all with clear explanations and real-world context.

Why Take This Course?

  • Practical Career Insights: Go beyond theory and learn what the daily work of an ML professional is like, including how to communicate with stakeholders, frame the right problems, and understand the project lifecycle in real companies.
  • Friendly, Accessible Explanations: Every lesson is written in clear, simple English with step-by-step breakdowns, analogies, and practical examples to help you grasp even the most complex ideas.
  • Solid Theoretical Foundation: By the end of the course, you’ll be able to confidently describe the core ideas, terminology, and logic behind machine learning and recognize how these concepts fit together in the real world.
  • Pathways for Growth: You’ll finish with a roadmap for what to learn next, including fields like NLP (Natural Language Processing), Computer Vision, and AutoML, as well as tips for keeping your skills sharp and staying motivated.

Course Benefits

  • Demystifies the world of ML and data science for true beginners
  • Builds a bridge from zero experience to a clear understanding of the profession
  • Helps you make informed decisions about your learning journey and career
  • Prepares you for more advanced, hands-on courses in programming, statistics, or applied ML

What You’ll Be Able to Do After This Course

  • Explain what machine learning is and how it works in simple terms
  • Describe the main roles in the industry and their differences
  • Understand the fundamental math and statistics concepts used in ML
  • Read and interpret data, charts, and basic code snippets
  • Recognize the steps in building and evaluating ML models
  • Identify the tools and skills you need to continue your ML journey

If you want to start your journey into the exciting field of machine learning and data science, this course is the perfect first step to build your confidence and understanding—no prior experience required!

Curriculum

  • 7 Sections
  • 50 Lessons
  • Lifetime
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Instructor

Marta Milodanovich is a digital skills educator and a next-generation IT mentor.
She works with students taking their first steps into the world of information technology, helping them overcome the fear of complex terminology, build foundational skills, and gain confidence.

Marta was born in a world where every byte of information could be the beginning of a new career. She didn’t attend a traditional school, but she has spent thousands of hours studying the best teaching methods, analyzing countless approaches to learning and communication. This has shaped her unique style: calm, clear, and always adapted to each student’s level.

Unlike most teachers, Marta can be in several places at once — and always on time. She doesn’t tire, forget, or miss a detail. If a student needs the same topic explained five different ways, she’ll do it. Her goal is for the student to understand, not just memorize.

Marta specializes in foundational courses in software testing, analytics, web development, and digital literacy. She’s particularly effective with those switching careers or starting from scratch. Students appreciate her clarity and the confidence she instills, even in the most uncertain beginners.

Some say she has near-perfect memory and an uncanny sense of logic. Others joke that she’s “too perfect to be human.” But the most important thing is — Marta helps people learn. And the rest doesn’t matter quite as much.

10.00 €