BOOKS - PROGRAMMING - Data Parallel C++ Mastering DPC++ for Programming of Heterogene...
Data Parallel C++ Mastering DPC++ for Programming of Heterogeneous Systems using C++ and SYCL, 2nd Edition - James Reinders, Ben Ashbaugh, James Brodman, Michael Kinsner 2023 PDF | EPUB Apress BOOKS PROGRAMMING
ECO~23 kg CO²

2 TON

Views
32474

Telegram
 
Data Parallel C++ Mastering DPC++ for Programming of Heterogeneous Systems using C++ and SYCL, 2nd Edition
Author: James Reinders, Ben Ashbaugh, James Brodman, Michael Kinsner
Year: 2023
Pages: 648
Format: PDF | EPUB
File size: 57.8 MB
Language: ENG



Pay with Telegram STARS
''

You may also be interested in:

Agile Data Science Building Data Analytics Applications with Hadoop
Network Security through Data Analysis From Data to Action, 2nd Edition
The Visual Organization Data Visualization, Big Data, and the Quest for Better Decisions
SQL for Data Analysis: Advanced Techniques for Transforming Data into Insights
I Heart Logs Event Data, Stream Processing, and Data Integration
Python Data Science Handbook Essential Tools for Working with Data
Data Mesh Delivering Data-Driven Value at Scale (Third Early Release)
Data Visualisation A Handbook for Data Driven Design 2nd Edition
Introduction to Data Science Data Wrangling and Visualization with R, 2nd Edition
The Shape of Data: Geometry-Based Machine Learning and Data Analysis in R
Multi-dimensional Urban Sensing Using Crowdsensing Data (Data Analytics)
Data and AI Driving Smart Cities (Studies in Big Data, 128)
R for Data Science Import, Tidy, Transform, Visualize, and Model Data
The Real Work of Data Science Turning data into information, better decisions, and stronger organizations
Training Data for Machine Learning Human Supervision from Annotation to Data Science (Final)
Data Mesh Principles, Patterns, Architecture, and Strategies for Data-Driven Decision Making
Big Data and Analytics for Beginners: Navigating the World of Data-Driven Decision Making
Learning Data Science Data Wrangling, Exploration, Visualization, and Modeling with Python (Final)
Data Mesh Principles, Patterns, Architecture, and Strategies for Data-Driven Decision Making
Agile Data Science 2.0 Building Full-Stack Data Analytics Applications with Spark
Univariate, Bivariate, and Multivariate Statistics Using R Quantitative Tools for Data Analysis and Data Science
The Data Preparation Journey: Finding Your Way with R (Chapman and Hall CRC Data Science Series)
SQL for Data Analysis Advanced Techniques for Transforming Data into Insights (Early Release)
Python for Data Analysis Data Wrangling with Pandas, NumPy, and IPython, 2nd Edition
Learning Data Science Data Wrangling, Exploration, Visualization, and Modeling with Python (Final)
R Graphics Essentials for Great Data Visualization +200 Practical Examples You Want to Know for Data Science
Behavioral Data Analysis with R and Python Customer-Driven Data for Real Business Results
Practical Data Science with SAP Machine Learning Techniques for Enterprise Data, First Edition
Big Data, Small Devices Investigating the Natural World Using Real-Time Data
Humanities Data in R Exploring Networks, Geospatial Data, Images, and Text, 2nd Edition
Data Governance The Definitive Guide People, Processes, and Tools to Operationalize Data Trustworthiness
Humanizing Big Data: Marketing at the Meeting of Data, Social Science and Consumer Insight
Effective Data Science Infrastructure How to make data scientists productive (MEAP Version 7)
The Self-Service Data Roadmap Democratize Data and Reduce Time to insight (Early Release)
Data Universe: Organizational Insights with Python: Embracing Data Driven Decision Making
Big Data, Data Mining, and Machine Learning Value Creation for Business Leaders and Practitioners
Training Data for Machine Learning Human Supervision from Annotation to Data Science (Final)
Tableau for Salesforce Visualise data and generate insights with the leading platforms for data analytics
Data Science Essentials with R Learn with focus on data manipulation, visualization, and machine learning
Behavioral Data Analysis with R and Python: Customer-Driven Data for Real Business Results