Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Taxi Trajectory Management
Graph Chatbot
Related lectures (32)
Data Warehouses: Introduction and Challenges
Covers the introduction and challenges of data warehouses, including integrating data, managing metadata, and optimizing query performance.
Headline Analysis: Language Impact & Success
Explores the influence of language on headline success through real-world data analysis and statistical testing.
Advanced Pandas Functions
Focuses on advanced pandas functions for data manipulation, exploration, and visualization with Python, emphasizing the importance of understanding and preparing data.
Digital Urban History: QGIS Practical Session
Covers the practical use of QGIS for spatial data analysis and visualization, including georeferencing historical maps and manipulating vector data.
Data Warehousing: Overview and Challenges
Introduces data warehousing fundamentals, challenges, and the innovative concept of a 'lakehouse'.
Data Science Visualization with Pandas
Covers data manipulation and exploration using Python with a focus on visualization techniques.
Introduction to Spark Runtime Architecture
Introduces Apache Spark, covering its architecture, RDDs, transformations, actions, fault tolerance, deployment options, and practical exercises in Jupyter notebooks.
Data Visualization: Techniques and Applications
Explores data visualization techniques, design impact, and interactive applications for effective information communication.
Air Pollution Data Analysis
Covers the analysis of air pollution data, focusing on R basics, visualizing time series, and creating summaries of pollutant concentrations.
LabVIEW: Data Processing and Visualization
Introduces LabVIEW for data processing and visualization, covering topics like waveform synchronization and color lookup tables.
Introduction to Machine Learning: Course Overview and Basics
Introduces the course structure and fundamental concepts of machine learning, including supervised learning and linear regression.
Machine Learning Basics
Introduces the basics of machine learning, covering supervised and unsupervised learning, linear regression, and data understanding.
Previous
Page 2 of 2
Next