welcome: please sign in
location: Diff for "FrontPage"
Differences between revisions 34 and 35
Revision 34 as of 2020-01-14 20:19:48
Size: 2392
Comment:
Revision 35 as of 2021-10-11 05:52:20
Size: 3161
Comment:
Deletions are marked like this. Additions are marked like this.
Line 4: Line 4:
=== Parallel Computing ===
 * Parallel algorithms in numerical analysis, optimization, evolutionary computing, data mining, computational geometry, and computer graphics
=== Cloud Computing, High Performance Computing, and Internet of Things ===
 * Exascale Data Processing
 * Monitoring data-intensive applications
 * Portability in Clouds and open source Platform as a Service
 * Cloud resources management and self-organization in heterogeneous cloud
 * Data-intensive applications
 * Ontologies for Cloud services
 * Cloud governance
 * HPC service exposure in the Cloud
 * Empirical software engineering for cloud-based applications
                  
=== Big Data Applications and Data Analysis ===
Line 7: Line 17:
 * Applications of parallel computing to computational fluid dynamics in crystal growing or airfoil design, Web or medical data mining

 * Scheduling techniques and scalability for HPC

=== Distributed Computing ===
Line 14: Line 19:
 * Building Web and Grid services platforms  * Accelerating applications on clouds and HPC
  * Graph processing
  * Astronomy image processing and object detection
  * Satellite-based image processing
  * Smart grids
Line 16: Line 25:
 * Applications of distributed computing to image processing in Earth observation, and to symbolic computing  * Hybrid processing on clouds, IoT, and HPC
  * Mixing GPUCPU, edge devices, and clouds for optimizing execution of large scale distributed applications
Line 18: Line 28:
 * Cloud computing and sensor networks  * Scheduling algorithms for distributed systems
  * Optimal and suboptimal heuristics with energy, cost and execution constraints
Line 20: Line 31:
 * Workflow design and execution
Line 22: Line 32:
 * Task scheduling === Artificial Intelligence and Machine Learning ===
Line 24: Line 34:
=== Artificial Intelligence ===
 * Multi-agent approaches and recommender systems:
  * health monitoring and healthcare systems
  * customer-relationship management

 * Machine learning techniques for:
  * knowledge extraction from data (medical, biological, financial)
  * intrusion and anomaly detection
  * prediction for auto-scaling of resources in distributed systems
 
 * Metaheuristic algorithms for:
  * scalable cloud resource allocation
  * model inference and parameter estimation in biological systems

 * Explainable Artificial Intelligence
  * Signal and image processing using deep neural networks
Line 26: Line 51:
  * Uncertainty in deep neural networks
Line 27: Line 53:
 * Intelligent systems === Applications of Machine Learning in Earth Observation ===
([[http://www.sage.ieat.ro/|EO+ML Research Group]])
 * Application of advanced computational techniques for Earth Observation problems
 * Big Data Processing platforms (processing of massive Earth observation data)
 * Machine Learning algorithms in Remote Sensing
Line 29: Line 59:
 * Multi-agent systems
Line 31: Line 60:
 * Knowledge discovery

 * Recommender systems

 * Automated reasoning

 * Intelligent ambient

 * Applications of artificial intelligence to e-commerce, scientific computing and medicine

 * Self-adapting and self-healing systems

=== Computational Intelligence and Nature Inspired Metaheuristics ===
 * Evolutionary algorithms in optimization and data mining

 * Other nature inspired meta-heuristics: ant systems, particle swarm optimization etc.

 * Neural Networks

=== Theoretical Computer Science ===
=== Theory of Computing ===
Line 54: Line 64:
 * Probabilistic methods and algorithms
 * Applications of game theory to theoretical computer science and multiagent systems.
 * Interconnections of physics (mostly complex systems) and theory of computing
 * Logic and its interconnections with symbolic computing and computational complexity
 * Automated theorem proving
 * Formal languages and its interrelation with XML processing
 * Agent-based models, game theory and complex networks
 * Symbolic computation
 * Unification and matching
 * Constraint logic programming
 * Proof-based algorithm synthesis
Line 61: Line 70:
=== Computational Mathematics ===
 * Numerical methods for nonlinear equations
Line 64: Line 71:
 * Estimation of stability domains

 * Mathematical models in crystals growth and nano-technology

 * Computational methods in flight control

 * Mathematics of neural networks

 * Mathematical models in biology
=== Computational and Applied Mathematics ===
 * Qualitative and quantitative aspects of Dynamical Systems (time-delayed systems, impulsive systems, fractional-order systems)
 * Simulation of fractional-order systems using HPC
 * Analysis of nonlinear and chaotic phenomena in: fractional-order neural networks models, complex-valued neural networks
 * Applications of the theory of dynamical systems to: medicine, neuroscience, aerodynamics, economy

Research Center in Computer Science

The center groups researchers and PhD students working in one of the following directions:

Cloud Computing, High Performance Computing, and Internet of Things

  • Exascale Data Processing
  • Monitoring data-intensive applications
  • Portability in Clouds and open source Platform as a Service
  • Cloud resources management and self-organization in heterogeneous cloud
  • Data-intensive applications
  • Ontologies for Cloud services
  • Cloud governance
  • HPC service exposure in the Cloud
  • Empirical software engineering for cloud-based applications

Big Data Applications and Data Analysis

(Group - Cloud Enhancing Research on Big Data and Applications)

  • Accelerating applications on clouds and HPC
    • Graph processing
    • Astronomy image processing and object detection
    • Satellite-based image processing
    • Smart grids
  • Hybrid processing on clouds, IoT, and HPC
    • Mixing GPUCPU, edge devices, and clouds for optimizing execution of large scale distributed applications
  • Scheduling algorithms for distributed systems
    • Optimal and suboptimal heuristics with energy, cost and execution constraints

Artificial Intelligence and Machine Learning

  • Multi-agent approaches and recommender systems:
    • health monitoring and healthcare systems
    • customer-relationship management
  • Machine learning techniques for:
    • knowledge extraction from data (medical, biological, financial)
    • intrusion and anomaly detection
    • prediction for auto-scaling of resources in distributed systems
  • Metaheuristic algorithms for:
    • scalable cloud resource allocation
    • model inference and parameter estimation in biological systems
  • Explainable Artificial Intelligence
    • Signal and image processing using deep neural networks

(Group - Signal, Image and Machine Learning)

  • Uncertainty in deep neural networks

Applications of Machine Learning in Earth Observation

(EO+ML Research Group)

  • Application of advanced computational techniques for Earth Observation problems
  • Big Data Processing platforms (processing of massive Earth observation data)
  • Machine Learning algorithms in Remote Sensing

Theory of Computing

(TCS Research Group)

  • Algorithms and Computational Complexity
  • Agent-based models, game theory and complex networks
  • Symbolic computation
  • Unification and matching
  • Constraint logic programming
  • Proof-based algorithm synthesis

Computational and Applied Mathematics

  • Qualitative and quantitative aspects of Dynamical Systems (time-delayed systems, impulsive systems, fractional-order systems)
  • Simulation of fractional-order systems using HPC
  • Analysis of nonlinear and chaotic phenomena in: fractional-order neural networks models, complex-valued neural networks
  • Applications of the theory of dynamical systems to: medicine, neuroscience, aerodynamics, economy

FrontPage (last edited 2023-07-17 15:12:14 by DanielaZaharie)