Machine learning is no longer exclusive to developers. This course gives you the hands-on skills to build, evaluate, and optimize regression and classification models using Orange Data Mining — a powerful visual ML platform — without writing a single line of code.

Applied Machine Learning Without Coding
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Applied Machine Learning Without Coding
This course is part of No-Code Data Science and Machine Learning Specialization

Instructor: Edureka
Included with
Recommended experience
What you'll learn
Explain fundamental machine learning concepts, mathematical foundations, and the role of no-code tools in building analytical workflows.
Apply Orange Data Mining to build regression and classification models using visual, no-code workflows.
Analyze model performance using appropriate evaluation metrics to compare, select, and improve machine learning models.
Evaluate and optimize machine learning solutions by tuning parameters and designing end-to-end predictive workflows for real-world data.
Details to know

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March 2026
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There are 4 modules in this course
Build a strong foundation in no-code data science by learning how to use Orange for visual data mining while developing core machine learning and mathematical concepts. Explore the Orange interface, widgets and workflow design, then strengthen your understanding of linear algebra, probability and optimization fundamentals. Gain conceptual clarity on machine learning types, model evaluation strategies and common pitfalls like overfitting, preparing you for practical modeling workflows in later modules.
What's included
10 videos5 readings4 assignments
Develop practical regression modeling skills by progressing from linear regression fundamentals to advanced algorithms such as Support Vector Machines and Random Forests. Learn how to select features, build and compare regression models in Orange and evaluate performance using industry-standard metrics like RMSE, MAE and R². Strengthen your ability to optimize models through hyperparameter tuning and residual analysis to produce accurate, reliable predictions.
What's included
11 videos4 readings4 assignments
Master classification techniques by building, evaluating and tuning models for categorical prediction problems. Start with core classification concepts and algorithms such as logistic regression, decision trees, KNN and Naive Bayes, then advance to SVM and Random Forest classifiers. Learn to interpret confusion matrices, ROC curves and performance metrics while applying hyperparameter tuning to select the best-performing models for real-world classification tasks.
What's included
9 videos4 readings4 assignments
Consolidate your learning by revisiting the complete no-code data science workflow, from data exploration and mathematical foundations to regression and classification modeling. Reinforce key concepts, modeling decisions, and evaluation techniques while demonstrating your ability to build end-to-end machine learning solutions using Orange through a final assessment.
What's included
1 video1 reading2 assignments
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Frequently asked questions
This course is designed for aspiring data analysts, machine learning beginners, students, business analysts, and non-technical professionals who want to learn machine learning using a no-code, visual approach with Orange.
The course covers Orange Data Mining fundamentals, basic mathematics for machine learning, regression and classification modeling, model evaluation, and hyperparameter tuning using visual workflows.
No. The course is fully no-code and does not require any prior programming or machine learning experience.
More questions
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¹ Some assignments in this course are AI-graded. For these assignments, your data will be used in accordance with Coursera's Privacy Notice.



