Call for Papers
All Accepted and presented Papers will be submitted to IEEE Xplore for consideration. IEEE Conference #48062, ISBN No. 978-1-7281-4392-7
Advances in High Performance Computing
Algorithms:
- Algorithmic Techniques to Improve Energy and Power Efficiency
- Quantum and Bio-Inspired Algorithms
- Resilient and Fault Tolerant Algorithms
- Parallel Algorithms for Numerical Linear Algebra
- Concurrent Algorithms and Data Structures
- Load Balancing, Scheduling and Resource Management
- Large Scale Graph Analytics
- Streaming Algorithms
Architectures:
- Interconnection Networks and Architectures
- Cache/Memory Architecture for High Performance Computing
- High Performance/Scalable Storage Systems
- Power-Efficient and Reconfigurable Architectures
- Quantum and Bio-Inspired Architectures
- Software Support and Advanced Micro-architecture Techniques
- Resilient and Fault Tolerant Architectures
Applications:
- Big Data Computing and Applications
- Cross-Cutting Methods such as Co-Design of Parallel Algorithms, Software, and Architectures
- Emerging Applications such as Biotechnology, IoT, and Nanotechnology
- Hardware Acceleration for Parallel Applications
- Parallelism in Scientific Data Visualization and Visual Analytics
- Scientific/Engineering/Industrial Applications and Workloads
- Scalable Graph and other Irregular Applications
- Design of Simulation Applications and Peta- and Exascale Applications
Systems Software:
- Big Data Analytics Systems and Software Architectures
- Compiler Technologies for High-Performance Computing
- Exascale Computing, Cloud Platforms, Data Center Architectures and Services
- Parallel Languages, Programming Environments and Performance Assessment
- Operating Systems for Scalable High Performance Computing
- Hybrid Parallel Programming with GPUs and Accelerators
- Dealing with Uncertainties, Resilient/Fault-Tolerant Systems
Advances in Machine Learning
Model Selection:
- Learning using Ensemble and Boosting Strategies
- Active Machine Learning
- Manifold Learning
- Fuzzy Learning
- Kernel Based Learning
- Genetic Learning
- Hybrid Models
Evolutionary Parameter Estimation:
- Fuzzy Approaches to Parameter Estimation
- Genetic Optimization
- Bayesian Estimation Approaches
- Boosting Approaches to Transfer Learning
- Heterogeneous Information Networks
- Recurrent Neural Networks
- Influence Maximization
- Co-evolution of time sequences
Graphs and Social Networks:
- Social Group Evolution - Dynamic Modelling
- Adaptive and Dynamic Shrinking
- Pattern Summarization
- Graph Embeddings
- Graph Mining Methods
- Structure Preserving Embedding
- Non-Parametric
- Models for Sparse Networks
- Forecasting
- Nested Multi-Instance Learning
Large Scale Machine Learning:
- Large Scale Item Categorization
- Machine Learning over the Cloud
- Anomaly Detection in Streaming Heterogeneous Datasets
- Signal Analysis
- Learning Paradigms
- Clustering, Classification and Regression Methods
- Supervised, Semi-Supervised and Unsupervised Learning
- Algebra, Calculus, Matrix and Tensor Methods in Context of Machine Learning
- Reinforcement Learning
- Optimization Methods
- Parallel and Distributed Learning
Advances in Deep Learning
- Inference Dependencies on Multi-Layered Networks
- Recurrent Neural Networks and its Applications
- Tensor Learning
- Higher Order Tensors
- Graph Wavelets
- Spectral Graph Theory
- Self Organizing Networks
- Multi-Scale Learning
- Unsupervised Feature Learning
- Recommender Systems
- Automated Response
- Conversational Recommender Systems
- Collaborative Deep Learning
- Trust Aware Collaborative Learning
- Cold-Start Recommendation Systems
- Multi-Contextual Behaviours of Users
- Applications
- Bioinformatics and Biomedical Informatics
- Healthcare and Clinical Decision Support
- Collaborative Filtering
- Computer Vision
- Human Activity Recognition
- Information Retrieval
- Cybersecurity
- Natural Language Processing
- Web Search
- Evaluation of Learning Systems
- Computational Learning Theory
- Experimental Evaluation
- Knowledge Refinement and Feedback Control
- Scalability Analysis
- Statistical Learning Theory
- Computational Metrics
Advances in Data Science
Foundations:
- Mathematical, Probabilistic and Statistical Models and Theories
- Machine Learning Theories, Models and Systems
- Knowledge Discovery Theories, Models and Systems
- Manifold and Metric Learning
- Deep Learning and Deep Analytics
- Scalable Analysis and Learning
- Heterogeneous Data/Information Integration
- Data Pre-Processing, Sampling and Reduction
- Dimensionality Reduction
- Feature Selection, Transformation and Construction
- Large Scale Optimization
- High Performance Computing for Data Analytics
- Architecture, Management and Process for Data Science
- Data Analytics, Machine Learning and Knowledge Discovery
Learning for Streaming Data:
- Learning for Structured and Relational Data
- Latent Semantics and Insight Learning
- Mining Multi-Source and Mixed-Source Information
- Mixed-Type and Structure Data Analytics
- Cross-Media Data Analytics
- Big Data Visualization, Modeling and Analytics
- Multimedia/Stream/Text/Visual Analytics
- Relation, Coupling, Link and Graph Mining
- Personalization Analytics and Learning
- Web/Online/Social/Network Mining and Learning
- Structure/Group/Community/Network Mining
- Cloud Computing and Service Data Analysis
Management, Storage, Retrieval and Search:
- Cloud Architectures and Cloud Computing
- Data Warehouses and Large-Scale Databases
- Memory, Disk and Cloud-based Storage and Analytics
- Distributed Computing and Parallel Processing
- High Performance Computing and Processing
- Information and Knowledge Retrieval, and Semantic Search
- Web/Social/Databases Query and Search
- Personalized Search and Recommendation
- Human-Machine Interaction and Interfaces
- Crowdsourcing and Collective Intelligence
Social Issues:
- Data Science Meets Social Science
- Security, Trust and Risk in Big Data
- Data Integrity, Matching and Sharing
- Privacy and Protection Standards and Policies
- Privacy Preserving Big Data Access/Analytics
- Social Impact and Social Good
Advances in Algorithms
Sequential, Parallel and Distributed Algorithms and Data Structures:
- Approximation and Randomized Algorithms
- Graph Algorithms and Graph Drawing
- On-Line and Streaming Algorithms
- Analysis of Algorithms and Computational Complexity
- Algorithm Engineering
- Web Algorithms
- Exact and Parameterized Computation
- Algorithmic Game Theory
- Computational Biology
- Foundations of Communication Networks
- Computational Geometry
- Discrete Optimization
Advances In Computing
Advances in Communications and Networking:
- Adhoc Networks
- Network Security
- Social Media and Networking
- Wireless communications
- Sensor Networks
- Internet of things
- Smart sensors and MEMS
- RF and Microwave Communications
Circuits and Systems in Computing
- Embedded Computing
- Micro and Nano Electronics
- Mixed-Signal SoC Applications
- Distribution System Planning
- Reliability for System Planning, Operation, Control and protection
- Electrical System Modeling and Simulation
- Transients, Propagation, Measurement and Modeling
- Smart Grid
- Advanced Control Systems
- Intelligent Instrumentation
- Process Control
- System Analytics
- Virtual Instrumentation
- Micro Grid
Signal, Image and Multimedia Processing:
- Statistical Learning and Pattern Recognition
- Advanced Signal Processing
- Multimedia Signal Processing
- Multi-Core Processing
- Image and Video Processing
- Audio and Speech Processing
- Biomedical Signal Processing
- Signal Processing of Applications of Power Electronics and Drives
- Power Quality
Databases and Data Management:
- Clustering
- Databases and Data Mining Applications
- Database Tuning
- Distributed Databases
- Feature Selection and Feature Extraction
- High Performance Data Mining Algorithms
- Information Retrieval
- Knowledge Discovery in Database
- Knowledge Management
- Query Optimization
- Search Engine Optimization
- Data Mining
Software Engineering:
- Verification and Validation
- Software Construction
- Testing Techniques
- Process Models
- Software Reuse
- Software Repositories
- Software Metrics
- Software Project Management
- Component/Aspect Based Software Engineering
- Knowledge Based Software Engineering
- Other Advance topics of Software Engineering
This is a blind peer-reviewed conference. Authors are cordially invited to submit papers through on line paper submission process (Easy Chair submission system) before 15th August, 2019.
Instructions For Authors
Authors are requested to submit their file in the format specified in the IEEE Paper Template.
Prospective authors are invited to submit original technical papers for publication in the IACC 2019.
Important: IEEE Policy Announcement The IEEE reserves the right to exclude a paper from distribution after the conference (including its removal from IEEE Xplore) if the paper is not presented at the conference.
Papers are reviewed on the basis that they do not contain plagiarized material and have not been submitted to any other conference at the same time (double submission). These matters are taken very seriously and the IEEE will take action against any author who engages in either practice.
Follow these links to learn more:
- IEEE Policy on Plagiarism
- IEEE Policy on Double Submission
An author of an accepted paper is required to register for the conference and present the paper at the conference. All accepted papers will be submitted in IEEE Xplore for consideration. Non-refundable registration fees must be paid prior to the due date of registration. For authors with multiple accepted papers, one registration for each paper is required.
Paper Submission:
Prospective authors are invited to submit papers of five (5) to eight (8) A4 pages (including tables, figures and references) in standard IEEE double-column format (it is absolutely necessary to respect the Styleguide for Papers). A blind peer-review process will be used to evaluate all submitted papers. Each full registration for the conference will cover a maximum of one paper; each student registration will cover a single paper only. Extra paper, 2nd paper and onwards, must be registered separately.
The format instructions in the template must be followed, it is notably important to use the right paper format: A4 to have the right margins not to use page numbering (page footer must be empty). The IEEE Citation Reference may help you with the references in your paper. Get the list of IEEE recommended keywords from https://www.ieee.org/documents/taxonomy_v101.pdfor send an empty e-mail to keywords@ieee.org with "IEEE Keywords" in the subject line.
All submissions should be written in English with a maximum paper length of eight (8) printed pages including figures, without incurring additional page charges. One (1) additional page is allowed with a charge of USD 20, if accepted.
Note: Registration fees is unrefundable.