BOOKS - NATURAL SCIENCES - The Big Data Agenda Data Ethics and Critical Data Studies
The Big Data Agenda Data Ethics and Critical Data Studies - Annika Richterich 2018 PDF University of Westminster Press BOOKS NATURAL SCIENCES
ECO~12 kg CO²

1 TON

Views
86851

Telegram
 
The Big Data Agenda Data Ethics and Critical Data Studies
Author: Annika Richterich
Year: 2018
Pages: 156
Format: PDF
File size: 3.6 MB
Language: ENG



Pay with Telegram STARS
''

You may also be interested in:

Deep Learning Innovations and Their Convergence With Big Data
Intensional First-Order Logic: From AI to New SQL Big Data
Big Data Analytics A Social Network Approach
Python for Finance Analyze Big Financial Data
Big Data for Twenty-First-Century Economic Statistics
Augmenting Customer Retention Through Big Data Analytics
Augmenting Customer Retention Through Big Data Analytics
Big Data Analytics A Practical Guide for Managers
Data Structures and Algorithms Made Easy in Java Data Structure and Algorithmic Puzzles, 5th Edition
Delta Lake The Definitive Guide Modern Data Lakehouse Architectures with Data Lakes (Final Release)
Predictive Data Modelling for Biomedical Data and Imaging (River Publishers Series in Biotechnology and Medical Research)
Good, the Bad, and the Data: Shane the Lone Ethnographer|s Basic Guide to Qualitative Data Analysis
Delta Lake The Definitive Guide Modern Data Lakehouse Architectures with Data Lakes (Final Release)
Avoiding Data Pitfalls How to Steer Clear of Common Blunders When Working with Data and Presenting Analysis and Visualizations
Data Science and Analytics with Python (Chapman and Hall CRC Data Mining and Knowledge Discovery Series)
Tableau for Salesforce: Visualise data and generate insights with the leading platforms for data analytics (English Edition)
Hands-on Data Analysis and Visualization with Pandas Engineer, Analyse and Visualize Data, Using Powerful Python Libraries
Beginning Mathematica and Wolfram for Data Science: Applications in Data Analysis, Machine Learning, and Neural Networks
Recent Advances in Hybrid Metaheuristics for Data Clustering (The Wiley Series in Intelligent Signal and Data Processing)
Graph Data Science with Python and Neo4j Hands-on Projects on Python and Neo4j Integration for Data Visualization and Analysis Using Graph Data Science for Building Enterprise Strategies
Graph Data Science with Python and Neo4j Hands-on Projects on Python and Neo4j Integration for Data Visualization and Analysis Using Graph Data Science for Building Enterprise Strategies
Data Engineering with dbt: A practical guide to building a cloud-based, pragmatic, and dependable data platform with SQL
Statistics, Data Mining and Machine Learning in Astronomy A Practical Python Guide for the Analysis of Survey Data, Updated Ed
Qlik Sense: Advanced Data Visualization for Your Organization: Create smart data visualizations and predictive analytics solutions
Exploratory Data Analysis with Python Cookbook: Over 50 recipes to analyze, visualize, and extract insights from structured and unstructured data
Advanced Data Science and Analytics with Python (Chapman and Hall CRC Data Mining and Knowledge Discovery Series)
Essential Math for Data Science Take Control of Your Data with Fundamental Linear Algebra, Probability, and Statistics (Third Early Release)
Proceedings of Data Analytics and Management: ICDAM 2021, Volume 1 (Lecture Notes on Data Engineering and Communications Technologies, 90)
Python Data Science The Ultimate Crash Course, Tips, and Tricks to Learn Data Analytics, Machine Learning, and Their Application
Azure Data Engineer Associate Certification Guide: Ace the DP-203 exam with advanced data engineering skills
Probability and statistics for data science math + R + data
Data Science Fundamentals with R, Python, and Open Data
Predictive Data Modelling for Biomedical Data and Imaging
Data Engineering and Data Science: Concepts and Applications
Data Science Fundamentals with R, Python, and Open Data
Data Mesh: Delivering Data-Driven Value at Scale
Data Engineering and Data Science Concepts and Applications
Predictive Data Modelling for Biomedical Data and Imaging
Data Science and Data Analytics Opportunities and Challenges
Supervised and Unsupervised Data Engineering for Multimedia Data