
Topic
- Computing and Processing
- Components, Circuits, Devices and Systems
- Communication, Networking and Broadcast Technologies
- Power, Energy and Industry Applications
- Signal Processing and Analysis
- Robotics and Control Systems
- General Topics for Engineers
- Fields, Waves and Electromagnetics
- Engineered Materials, Dielectrics and Plasmas
- Bioengineering
- Transportation
- Photonics and Electrooptics
- Engineering Profession
- Aerospace
- Geoscience
- Nuclear Engineering
- Career Development
- Emerging Technologies
- Telecommunications
- English for Technical Professionals
Vaibhav Arora
Affiliation
Department of Computer Science, University of California Santa Barbara, Santa Barbara, California
Topic
Data Storage,Multiple Representations,Benchmark,Columnar,Copies Of The Data,Data Management,Data Processing,Graph Database,Ingestion,Internet Of Things,Internet Of Things Applications,Internet Of Things Devices,Load Data,Metadata,Multiple Sensors,Multiple Servers,Query Analysis,Read Operation,Transaction Processing,Aggregation Function,Aggregation Operators,Application Requirements,Average Delay,Batch Mode,Batch Size,Challenge For Applications,Cloud Database,Cloud Datastore,Cockroach,Computing Nodes,Continuous Data Processing,Continuous Monitoring,Continuous Process,Data Management System,Data Processing Architecture,Data Transfer,Data Version,Delay Increases,Delay Values,Dependency Graph,Deterministic Strategy,Development Of Applications,Diverse Data,Dynamic Allocation,Event Detection,Friendship Relations,Global Version,Graph Processing,Graph-based Algorithm,Graphical Representation,
Biography
Vaibhav Arora received the BTech degree in computer science from the
National Institute of Technology, Tiruchirappalli (Nit Trichy), and the MS degree in computer science from the
University of California, Santa Barbara. He is working toward the doctoral degree in computer science with the
University of California, Santa Barbara. His current research interests include the areas of data management in cloud
computing environments, scalable real-time data analytics, and heterogeneous data processing.