
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
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Course Overview
- Master ML for 2025: This course specifically prepares you for the demands of the 2025 machine learning landscape, focusing on practical, actionable skills within the R Studio ecosystem. It ensures your expertise remains current and relevant for future career opportunities.
- R Studio at Your Fingertips: Leverage R Studio as your comprehensive integrated development environment for every phase of an ML project, from initial data handling and exploratory analysis to advanced model building, evaluation, and deployment considerations.
- From Concepts to Solutions: Go beyond theoretical understanding to strategically apply diverse ML models, effectively solving complex business problems and empowering you to make data-driven decisions that yield tangible results.
- Structured Learning Path: Benefit from a progressively structured curriculum, meticulously designed to build your expertise from fundamental principles to sophisticated modeling techniques through hands-on practice and real-world case studies.
- Full ML Project Lifecycle: Learn to navigate the entire machine learning project lifecycle, emphasizing iterative development, meticulous model evaluation, and continuous refinement for optimal performance and robust outcomes in various scenarios.
- Building Deployment-Ready Models: Develop models that are robust, interpretable, and structured for potential integration into broader analytical systems or reporting mechanisms, fostering a strong foundational mindset for future MLOps and production environments.
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Requirements / Prerequisites
- Basic Computer Literacy: A fundamental comfort with operating a computer, managing files, and navigating software interfaces is all that’s needed to seamlessly engage with the course material and tools.
- Analytical Mindset: An inquisitive nature and a desire to explore data patterns, question assumptions, and devise solutions to intricate problems will greatly enhance your learning journey and success.
- Foundational Math Concepts: A basic understanding of high-school algebra and elementary statistics (like averages or percentages) will aid in grasping underlying ML logic; deep mathematical proofs are not a requirement.
- Commitment to Practice: Success in machine learning hinges on active engagement with coding exercises, dataset experimentation, and problem-solving to solidify your understanding and build practical expertise.
- RStudio Access: You’ll need a personal computer (Windows, macOS, or Linux) capable of installing and running R and RStudio Desktop, suitable for most modern systems to execute code efficiently.
- Data-Driven Curiosity: A genuine interest in extracting meaningful insights from data and leveraging them for informed decision-making is the primary prerequisite that will fuel your progress and mastery.
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Skills Covered / Tools Used
- Advanced Data Wrangling: Master R’s `dplyr` and `tidyr` packages to transform raw, messy data into clean, analysis-ready formats, a crucial and foundational skill for any successful ML project.
- Exploratory Data Analysis with `ggplot2`: Develop proficiency in creating compelling and insightful data visualizations using `ggplot2`, enabling you to identify trends, outliers, and effectively guide your modeling strategy.
- Feature Engineering Expertise: Learn to craft impactful new features from existing variables to significantly boost model performance and interpretability, alongside various techniques for optimal feature selection.
- Model Performance Evaluation: Understand and apply a full suite of evaluation metrics (R-squared, RMSE, MAE for regression; Accuracy, Precision, Recall, F1-Score, ROC AUC for classification) for robust model comparison.
- Hyperparameter Tuning & Cross-Validation: Implement robust techniques like k-fold cross-validation and grid search to fine-tune model hyperparameters, preventing overfitting and ensuring strong generalization to new data.
- Ethical AI Foundations: Gain an awareness of potential biases in data and algorithms, critically assessing model fairness, transparency, and the broader societal implications of machine learning development.
- R’s ML Ecosystem Mastery: Proficiency with key R packages for streamlined ML development, including `caret` for unified model training, `tidymodels` for a modern workflow, `glmnet` for regularization, `xgboost`, and `randomForest` for ensemble methods.
- Statistical Interpretation: Interpret model coefficients, variable importance, and predictions, gaining deeper insights into data relationships and model behavior beyond just running code.
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Benefits / Outcomes
- Build a Strong ML Portfolio: Develop a collection of practical, well-documented machine learning projects showcasing your ability to solve real-world problems using R.
- Become a Data-Driven Leader: Extract actionable intelligence from data, contributing significantly to strategic planning and operational improvements within any organization.
- Sharpen Analytical Acumen: Enhance your ability to dissect complex problems, formulate hypotheses, and apply appropriate ML techniques to derive meaningful and reliable conclusions.
- Unlock Career Advancement: Position yourself competitively for in-demand roles such as Junior Data Scientist, Machine Learning Analyst, or Business Intelligence Developer across diverse industries.
- Master End-to-End ML: Gain confidence to independently conceptualize, design, execute, and communicate complete machine learning projects.
- Cultivate Lifelong Learning: Establish a strong conceptual and practical ML foundation, empowering you to continuously learn, adapt, and integrate new algorithms and methodologies.
- Effective Communication: Learn to translate complex statistical and algorithmic findings into clear, compelling narratives for both technical peers and non-technical stakeholders.
- Innovative Problem-Solving: Reframe ambiguous business challenges into structured ML problems, providing innovative and data-backed solutions that drive efficiency.
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PROS
- Highly Practical, Hands-On Approach: Emphasis on immediate application through numerous coding exercises and real-world datasets, building tangible skills directly in R Studio.
- Comprehensive R-Centric Ecosystem: Deep dive into R’s powerful libraries and workflows, making you proficient in industry-standard tools for professional data science analysis.
- Expert-Led Instruction: Learn from seasoned professionals who infuse the curriculum with practical industry experience, offering valuable insights and best practices.
- Cutting-Edge Content (2025 Update): Ensures relevance with the latest algorithms, techniques, and R package versions, keeping your skills current in a rapidly evolving field.
- Strong Foundation for Advanced Studies: Provides an excellent springboard for exploring specialized areas like deep learning, MLOps, or more complex statistical modeling.
- Flexible Self-Paced Learning: Allows students to learn at their own pace, revisit challenging topics, and seamlessly integrate the course into their busy schedules.
- Engaged Student Community: Access to a large community for peer support, discussion, and collaborative learning, enhancing the overall educational experience.
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CONS
- Limited Deep Theoretical Coverage: While excellent for practical skills, the course’s focus on hands-on implementation within its duration means exhaustive mathematical derivations or highly advanced theoretical nuances of some algorithms may not be fully covered, potentially requiring supplementary academic study.
Learning Tracks: English,Development,Data Science
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