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No-Code Predictive Analytics with Orange Platform

No-Code Predictive Analytics with Orange Platform is a practical and beginner-friendly course that teaches how to build powerful machine learning ... Show more
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Course details
Lectures 21
Quizzes 7
Level Intermediate

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Working hours

Monday 9:30 am - 6.00 pm
Tuesday 9:30 am - 6.00 pm
Wednesday 9:30 am - 6.00 pm
Thursday 9:30 am - 6.00 pm
Friday 9:30 am - 5.00 pm
Saturday Closed
Sunday Closed
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  • Description
  • Curriculum
  • Reviews

No-Code Predictive Analytics with Orange Platform is a comprehensive, hands-on course designed to help learners understand and apply machine learning for predictive analytics without writing code. This course focuses on building real-world machine learning workflows using the Orange visual programming platform, making advanced data science concepts accessible to beginners, students, and professionals from non-programming backgrounds.

The course begins with the fundamentals of predictive analytics, explaining why predictions are important and how machine learning systems use historical data to forecast future outcomes. Learners will gradually build a strong conceptual foundation in machine learning, evaluation metrics, and model validation techniques.

As the course progresses, students are introduced to key machine learning concepts such as regression, classification, and unsupervised learning. Each concept is explained through practical, no-code workflows inside Orange, allowing learners to visually build and understand machine learning pipelines.

A major focus of this course is on model evaluation and performance measurement, where learners explore important concepts such as RMSE, accuracy, train-test split, cross-validation, and benchmark performance. These topics ensure that learners not only build models but also understand how to evaluate and improve them effectively.

The course also includes practical case studies where learners apply complete machine learning workflows using Orange, helping them understand how real-world predictive analytics projects are structured from start to finish.

In addition to building models, learners are trained to think critically about when machine learning should and should not be used, ensuring they develop strong analytical and decision-making skills rather than blindly applying algorithms.

By the end of this course, learners will be able to confidently design, build, and evaluate machine learning models using a no-code approach, and will have a strong foundation in predictive analytics, data-driven decision-making, and modern AI workflows.


What You Will Learn

  • Fundamentals of predictive analytics and machine learning
  • How predictions are made using data
  • Model evaluation techniques (RMSE, accuracy, validation methods)
  • Train-test split and cross-validation concepts
  • Benchmarking and model comparison
  • Regression, classification, and unsupervised learning
  • Building workflows using Orange (no-code ML platform)
  • End-to-end machine learning case studies
  • Real-world applications of predictive analytics
  • When NOT to use machine learning

Skills You Will Gain

  • Predictive analytics thinking
  • Machine learning workflow design
  • No-code ML model building using Orange
  • Model evaluation and performance analysis
  • Data interpretation and decision-making
  • Classification and regression understanding
  • Clustering and pattern discovery
  • Analytical and problem-solving skills
  • Practical AI/ML project understanding

Who This Course Is For?

  • Beginners in Data Science and Machine Learning
  • Students with no programming background
  • Business analysts and decision-makers
  • Professionals exploring AI and analytics
  • Freelancers entering data science field
  • Anyone interested in no-code AI tools
  • Learners preparing for AI/ML careers

Course Structure Overview

  • Introduction to Predictive Analytics
  • Understanding Machine Learning Fundamentals
  • Model Evaluation Techniques
  • Regression and Classification Models
  • Unsupervised Learning Concepts
  • Building ML Models in Orange Platform
  • Hands-on Case Studies
  • Best Practices and Limitations of ML

Course Outcome

After completing this course, learners will be able to confidently understand and apply predictive analytics using machine learning concepts without writing code. They will be able to build, evaluate, and interpret machine learning models using Orange, work with real-world datasets, and make data-driven decisions.

Most importantly, learners will develop the ability to think like a data scientist—understanding not only how machine learning works, but also when and why to use it effectively in real-world scenarios.

1. Making Predictions with Machine Learning for Future Readiness
2. Building Machine Learning models using Orange