Research Area
Computational Discovery and Intelligent Systems (CDIS)
Publisher: Scientific Innovation Research Group (SIRG)
Computational Discovery and Intelligent Systems (CDIS) publishes high-quality research that advances theory, methodology, and applications in computational intelligence, intelligent systems, and data-driven scientific discovery. The journal welcomes interdisciplinary contributions that integrate artificial intelligence, machine learning, mathematical modeling, and computational optimization with real-world scientific, industrial, and engineering challenges.
CDIS particularly encourages submissions in the following research areas:
1. Artificial Intelligence & Machine Learning
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Deep learning architectures
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Graph neural networks and graph computation
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Reinforcement learning and decision-making systems
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Generative AI and foundation models
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Explainable and interpretable AI
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Machine learning for small, sparse, or complex datasets
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AI reliability, robustness, and model verification
2. Data Science, Analytics & Knowledge Discovery
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Predictive analytics and pattern recognition
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High-dimensional data analysis
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Feature engineering and dimensionality reduction
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Data fusion, integration, and preprocessing techniques
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Automated machine learning (AutoML)
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Uncertainty quantification and probabilistic modeling
3. Computational Modeling & Simulation
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Scientific computing and numerical modeling
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Multi-scale and multi-physics simulations
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Computational chemistry and computational biology
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Simulation-based optimization
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Digital twins and virtual system modeling
4. Intelligent Systems & Autonomous Technologies
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Intelligent control and adaptive systems
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Autonomous robots, vehicles, and agents
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Smart manufacturing and Industry 4.0 technologies
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Human–machine interaction and intelligent interfaces
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Cognitive systems and knowledge-based systems
5. Optimization, Operations Research & Decision Systems
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Metaheuristics and evolutionary algorithms
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Mathematical optimization and convex/non-convex methods
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Multi-objective optimization
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Scheduling, resource allocation, and logistics systems
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Decision-support systems for complex environments
6. Computational Discovery in Physical, Biological, and Environmental Sciences
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Drug discovery and computational pharmacology
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Bioinformatics and health informatics
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Materials discovery using AI and ML
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Climate modeling and environmental analytics
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Remote sensing, satellite data analysis, and geospatial computation
7. Smart Algorithms & Applications
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Algorithm design, evaluation, and benchmarking
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Hybrid AI models and ensemble learning
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Intelligent signal, image, and video processing
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Applied machine learning for engineering systems
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Computer vision, pattern analysis, and recognition
8. High-Performance Computing & Scalable AI
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GPU/TPU-based acceleration
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Distributed and parallel computing
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Edge and fog computing for intelligent applications
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Optimization of large-scale AI workloads
9. Security, Privacy & Trust in Intelligent Systems
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AI for cybersecurity
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Secure computation and privacy-preserving modeling
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Blockchain for intelligent systems
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Robustness against adversarial attacks
10. Interdisciplinary & Emerging Areas
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AI for healthcare, education, economics, and social systems
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Computational law, ethics, and responsible AI
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Smart cities and intelligent infrastructure
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Quantum machine learning and quantum optimization