BOOKS - Computational Imaging and Analytics in Biomedical Engineering Algorithms and ...
Computational Imaging and Analytics in Biomedical Engineering Algorithms and Applications - T.R. Ganesh Babu, U. Saravanakumar, Balachandra Pattanaik 2024 PDF Apple Academic Press/CRC Press BOOKS
ECO~15 kg CO²

1 TON

Views
97921

Telegram
 
Computational Imaging and Analytics in Biomedical Engineering Algorithms and Applications
Author: T.R. Ganesh Babu, U. Saravanakumar, Balachandra Pattanaik
Year: 2024
Pages: 356
Format: PDF
File size: 27.9 MB
Language: ENG



Pay with Telegram STARS
''

You may also be interested in:

Artificial Intelligence Data Analytics and Robot Learning in Practice and Theory
Machine Learning Toolbox for Social Scientists Applied Predictive Analytics with R
Graph Databases Applications on Social Media Analytics and Smart Cities
Enterprise Analytics Optimize Performance, Process, and Decisions Through Big Data
Data Analytics for Intelligent Systems: Techniques and Solutions (Iop Ebooks)
Big Data and Analytics for Infectious Disease Research, Operations, and Policy
Creating Value with Big Data Analytics Making Smarter Marketing Decisions
Big Data Management and Analytics (Future Computing Paradigms and Applications)
Data Analytics for Drilling Engineering: Theory, Algorithms, Experiments, Software
Big Data Analytics for Satellite Image Processing and Remote Sensing
Applying Artificial Intelligence in Cybersecurity Analytics and Cyber Threat Detection
Automated Data Analytics Combining Human Creativity and AI Power Using ChatGPT
Hands-On Prescriptive Analytics Optimizing Your Decisions with Python (Early Release)
Machine Learning Toolbox for Social Scientists: Applied Predictive Analytics with R
Data Analytics for Smart Infrastructure Asset Management and Network Performance
Big Data Analytics in Supply Chain Management Theory and Applications
The Human Element of Big data Issues, Analytics, and Performance
Artificial Intelligence and Computing Logic Cognitive Technology for AI Business Analytics
Embedded Analytics Integrating Analysis With the Business Workflow (Final Release)
Deep Learning Techniques and Optimization Strategies in Big Data Analytics
Business Analytics Data Analysis and Decision Making, Seventh Edition
Data Analytics and Artificial Intelligence for Predictive Maintenance in Smart Manufacturing
Text Analytics: An Introduction to the Science and Applications of Unstructured Information Analysis
Artificial Intelligence for Business Analytics: Algorithms, Platforms and Application Scenarios
Hands-On Prescriptive Analytics Optimizing Your Decisions with Python (Early Release)
Recent Advances in Agent-Based Negotiation: Applications and Competition Challenges (Studies in Computational Intelligence Book 1092)
Policy Decision Modeling with Fuzzy Logic: Theoretical and Computational Aspects (Studies in Fuzziness and Soft Computing, 405)
Trends in Deep Learning Methodologies Algorithms, Applications, and Systems (Hybrid Computational Intelligence for Pattern Analysis and Understanding)
Bioinformatics: A Practical Guide to NCBI Databases and Sequence Alignments (Chapman and Hall CRC Computational Biology Series)
Ocean Energy Modeling and Simulation with Big data Computational Intelligence for System Optimization and Grid Integration
Leading in Analytics The Seven Critical Tasks for Executives to Master in the Age of Big Data
Analytics Engineering with SQL and dbt Building Meaningful Data Models at Scale
Google Analytics 2019 Tutorial Book. Практическое руководство по веб-аналитике
Leading in Analytics The Seven Critical Tasks for Executives to Master in the Age of Big Data
Green Computing for Sustainable Smart Cities A Data Analytics Applications Perspective
Machine Learning with Spark and Python Essential Techniques for Predictive Analytics Second Edition
Why Data Science Projects Fail The Harsh Realities of Implementing AI and Analytics, without the Hype
Machine Learning for Business Analytics: Concepts, Techniques and Applications with JMP Pro
Introduction to NFL Analytics with R (Chapman and Hall CRC Data Science Series)
Integrating Deep Learning Algorithms to Overcome Challenges in Big Data Analytics