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
Data Wrangling: Transforming Data for Analysis
Graph Chatbot
Related lectures (32)
Introduction to Spark Runtime Architecture
Covers the Spark runtime architecture, including RDDs, transformations, actions, and caching for performance optimization.
Collaborative Data Science: Tools and Techniques
Introduces collaborative data science tools like Git and Docker, emphasizing teamwork and practical exercises for effective learning.
Data Management Challenges: Hardware and Query Optimization
Explores hardware changes, query optimization, workload distribution, and effective strategies for academia and work-life balance.
Feature Engineering: Polynomial Regression
Covers fitting linear regression on features of the original predictors for flexible feature representation.
Big Data: Processing and Dimensions
Explores Big Data generation, storage, processing, and dimensions, along with challenges in data analytics, cloud computing elasticity, and security.
Data Science: Python for Engineers - Part II
Explores data wrangling, numerical data handling, and scientific visualization using Python for engineers.
Data Wrangling: Structuring and Cleaning Data
Explores data wrangling techniques, error detection, functional dependencies, denial constraints, and data temporality.
Data Visualization: Principles and Practices
Emphasizes the importance of data visualization techniques and practices for effective data analysis and communication.
Data Modeling: Concepts and Applications
Introduces data modeling concepts, SQL usage, and Pandas library applications for efficient data processing.
Elements of Collaborative Data Science
Introduces collaborative data science tools like Jupyter notebooks, Docker, and Git, emphasizing data versioning and containerization.
Data Accuracy: Assessing Faithfulness and Error Detection
Explores data accuracy through faithfulness assessment, error detection, outlier handling, correlations, functional dependencies, violation detection, denial constraints, and data repairing techniques.
Data-Intensive Applications and Systems: Overview
Covers the exponential growth of data, challenges in processing technology, data variety, cleaning, approximate query processing, multi-query analytics, and hybrid transaction processing.
Previous
Page 2 of 2
Next