
Linear & Logistic Regression, Decision Trees, XGBoost, SVM & other ML models in R programming language – R studio
β±οΈ Length: 12.0 total hours
β 4.48/5 rating
π₯ 268,554 students
π September 2025 update
Add-On Information:
Noteβ Make sure your ππππ¦π² cart has only this course you're going to enroll it now, Remove all other courses from the ππππ¦π² cart before Enrolling!
- Course Overview
- This course delivers a practical, in-depth Machine Learning experience using R programming and RStudio, comprehensively updated for 2025 relevance.
- It uniquely bridges theoretical ML concepts with hands-on application, enabling robust predictive model building for data professionals.
- You’ll master the entire ML pipeline: data understanding, preprocessing, advanced model implementation, evaluation, and interpretation in R.
- Emphasis is on real-world problem-solving, equipping you with the critical thinking skills for strategic ML application and impactful insights.
- Build a strong, actionable ML foundation, translating complex statistical ideas into practical, high-performance R-based solutions.
- Follows a structured, step-by-step path from core ML principles to sophisticated analytical techniques, ensuring comprehensive mastery.
- Requirements / Prerequisites
- Basic programming logic is helpful, though extensive prior coding in R isn’t strictly mandatory.
- Familiarity with RStudio IDE is beneficial; comprehensive setup guidance and basic navigation are covered.
- No prior Machine Learning knowledge needed; the course begins with a thorough exploration of fundamentals.
- Access to a personal computer capable of running R and RStudio effectively is essential for all practical exercises.
- A foundational understanding of high-school level algebra will significantly aid in comprehending algorithmic mechanics.
- A strong commitment to consistent practice and hands-on experimentation is crucial for achieving complete skill mastery.
- Skills Covered / Tools Used
- Master advanced data manipulation and transformation techniques using essential R packages like
dplyrandtidyr. - Conduct in-depth Exploratory Data Analysis (EDA) and visualize data insights effectively with
ggplot2for clear communication. - Implement various model selection strategies, including robust hyperparameter tuning and cross-validation methodologies.
- Interpret a wide array of model evaluation metrics for both classification and regression tasks to assess performance objectively.
- Apply robust validation methods like k-fold cross-validation to ensure model generalization and prevent overfitting issues.
- Learn feature engineering principles to significantly enhance your Machine Learning models’ predictive power and accuracy.
- Develop expertise in handling diverse data types and complex data structures effectively within the versatile R environment.
- Translate technical model outputs and statistical summaries into clear, actionable business recommendations for stakeholders.
- Gain conceptual understanding of model deployment considerations, providing a roadmap for transitioning models to production.
- Utilize the
caretpackage for streamlined model training, hyperparameter tuning, and comprehensive evaluation processes. - Hands-on experience with specific high-performance R libraries:
glmnet,xgboost,randomForest,e1071(SVM), andrpart.
- Master advanced data manipulation and transformation techniques using essential R packages like
- Benefits / Outcomes
- Gain the capability to independently conceptualize and execute end-to-end Machine Learning projects using R.
- Build a robust portfolio of practical R-based ML projects, showcasing your analytical and technical skills to employers.
- Prepare for various roles in data science, machine learning, and advanced analytics, equipped with highly marketable R expertise.
- Develop confidence in clearly articulating complex ML solutions and insights to diverse technical and non-technical audiences.
- Acquire an adaptable skillset to stay current with evolving Machine Learning trends and R ecosystem updates effectively.
- Master the design, implementation, and rigorous validation of high-performing, reliable ML models for real-world scenarios.
- Cultivate enhanced problem-solving skills, applying a structured, data-driven methodology to complex real-world challenges.
- Achieve proficiency in leveraging R’s powerful statistical and Machine Learning capabilities for a competitive advantage.
- Effectively translate abstract business problems into concrete, solvable Machine Learning initiatives with clear objectives.
- PROS
- Exceptional hands-on learning: Focused heavily on practical application within RStudio for immediate skill development and retention.
- Comprehensive model coverage: Explores both fundamental and advanced ML algorithms, ensuring a broad and versatile skill set.
- Future-proof content: Updated for “ML for 2025,” integrating modern practices and relevant industry insights for sustained relevance.
- Leverages R’s power: Utilizes R’s robust statistical capabilities and rich package ecosystem for deep and advanced analytics.
- Proven quality instruction: High 4.48/5 rating from over 268,000 students attests to its effectiveness, value, and student satisfaction.
- Flexible learning pace: On-demand format allows convenient integration into busy professional or academic schedules, optimizing learning.
- Clear learning path: Guides learners systematically from basic concepts to advanced practical implementations with confidence.
- Boosts analytical thinking: Develops critical evaluation skills for model interpretation, performance assessment, and data-driven decision-making.
- Enhances career prospects: Provides in-demand R-based ML skills, offering a significant competitive edge in the current data science job market.
- CONS
- Fast-paced for absolute beginners: The 12-hour duration for extensive topics may demand significant additional self-study for those entirely new to programming or statistics to fully grasp.
Learning Tracks: English,Development,Data Science
Found It Free? Share It Fast!