Introduction to Anomaly Detection in R
Learn statistical tests for identifying outliers and how to use sophisticated anomaly scoring algorithms.
Suivez de courtes vidéos animées par des instructeurs experts, puis mettez en pratique ce que vous avez appris avec des exercices interactifs dans votre navigateur.
Learn statistical tests for identifying outliers and how to use sophisticated anomaly scoring algorithms.
Use C++ to dramatically boost the performance of your R code.
Master the essential skills of data manipulation in Julia. Learn how to inspect, transform, group, and visualize DataFrames using real-world datasets.
Continue learning with purrr to create robust, clean, and easy to maintain iterative code.
Learn mixture models: a convenient and formal statistical framework for probabilistic clustering and classification.
Learn to create animated graphics and linked views entirely in R with plotly.
Learn to bring data into Microsoft Fabric, covering Pipelines, Dataflows, Shortcuts, Semantic Models, security, and model refresh.
Learn how to write scalable code for working with big data in R using the bigmemory and iotools packages.
Learn to predict labels of nodes in networks using network learning and by extracting descriptive features from the network
Apply fundamental concepts in network analysis to large real-world datasets in 4 different case studies.
Use generative AI to tackle data cleaning, fixing duplicates, nulls, and formatting for consistent, accurate datasets.
Test a chatbot that matches customers with ideal skincare products using your prompting skills for personalized results.
Create a go-to-market strategy with generative AI: target industries, generate leads, and optimize website keywords.
Build real-world applications with Python—practice using OOP and software engineering principles to write clean and maintainable code.