Data Science
Data Science Fundamentals — Learn the core concepts, mathematical principles, and essential tools to start your journey in data science.
Data Science Fundamentals
Go from beginner to confident practitioner by mastering essential algorithms, data preprocessing, and model evaluation techniques through structured written lessons.
Data Science Fundamentals
Grasp the core concepts and essential algorithms to start building your practical data science skills from scratch.
Data Science Fundamentals
Build and deploy predictive models for business insights using automated machine learning tools without writing a single line of code.
Data Science Fundamentals
Master technical computing by learning to manipulate matrices, visualize data, and build custom applications for engineering and scientific analysis.
Data Science Fundamentals
Transition from research to production by learning how to package, test, and deploy machine learning models through robust pipelines.
Data Science Fundamentals
Learn to process massive datasets and build scalable machine learning pipelines using Scala and Spark, starting from the absolute basics of programming.
Data Science Fundamentals
Demystify core concepts of artificial intelligence, machine learning, and deep learning to start your journey in the high-demand field of data science.
Data Science Fundamentals
Master the essential linear algebra, probability, calculus, and statistics required to understand modern machine learning algorithms and generative AI models.
Data Science Fundamentals
Master scientific computing and data analysis by translating complex formulas into efficient code for engineering, physics, and research.
Data Science Fundamentals
Learn how to navigate the data science job market, explore key career paths, and master technical interview questions covering statistics, machine learning, and SQL.
Data Science Fundamentals
Master the core concepts of regression, classification, clustering, and modern AI models through clear, jargon-free explanations designed for beginners.
Data Science Fundamentals
Master the essential calculus concepts behind optimization and neural networks to transition from copying code to truly understanding machine learning algorithms.
Data Science Fundamentals
Build, train, and deploy production-ready machine learning models on AWS using SageMaker, AutoPilot, and Canvas with zero prior cloud experience.
Data Science Fundamentals
Learn how to design, train, and deploy production-ready machine learning models using Python, version control, and modern MLOps principles.
Data Science Fundamentals
Learn to import data, run natural language queries, and build predictive visualizations to uncover automated insights without complex coding.
Data Science Fundamentals
Master the core principles of linear algebra, calculus, and probability to understand and build intelligent algorithms using Python and R.
Data Science Fundamentals
Learn to process large-scale datasets, build data pipelines, and apply machine learning algorithms using Scala and Spark.
Data Science Fundamentals
Develop a professional portfolio by building and deploying machine learning and data science applications using Python and modern cloud environments.
Data Science Fundamentals
Learn to build, train, and deploy predictive models using cloud-based tools and automated machine learning workflows.
Data Science Fundamentals
Learn the essential matrix and vector mathematics needed to understand modern machine learning algorithms, neural networks, and data science workflows.
Data Science Fundamentals
A practical guide for data professionals to build predictive models using only the SQL they already know.
Data Science Fundamentals
Master the essential mathematical concepts, from vectors and matrices to dimensionality reduction, to deeply understand how modern AI and machine learning algorithms work.
Data Science Fundamentals
Build a solid grounding in data analysis, supervised regression, classification, and unsupervised clustering using modern Python tools and workflows.
Data Science Fundamentals
Learn to segment data and find hidden patterns using hierarchical and K-means clustering with step-by-step programming guides in SAS and R.
Showing 24 of 244 courses