12th International Conference on Data Mining (DaMi 2026)

25th July 2026 – 26th July 2026 , Canada Hybrid 76 days to go 16 views
Browse Conferences by Country
🚨 0 days left! Submission deadline: 9th May 2026
Start Date
25th July 2026
End Date
26th July 2026
Abstract Deadline
9th May 2026
Location
, Canada
Official Website
Organizer
DAMI
Contact Person
sarah
About This Conference
12th International Conference on Data Mining (DaMi 2026) July 25 ~ 26, 2026, Toronto, Canada https://dami2026.org/ Scope 12th International Conference on Data Mining (DaMi 2026) is a premier global forum dedicated to advancing the science, engineering, and practice of data mining and knowledge discovery. As data continues to grow in scale, complexity, and diversity, DaMi 2026 brings together researchers, practitioners, and industry innovators to explore the latest breakthroughs in machine learning, generative AI, large scale analytics, graph intelligence, multimodal mining, and responsible data driven systems. Authors are solicited to contribute to the conference by submitting articles that illustrate research results, projects, surveying works and industrial experiences that describe significant advances in the areas of Data Mining and Knowledge Management Process . Topics of interest include, but are not limited to, the following Foundations of Data Mining and Knowledge Discovery  Theoretical Foundations of Data Mining  Statistical Learning, Probabilistic Modeling and Bayesian Methods  Pattern Discovery, Sequence Mining and Frequent Pattern Mining  Causal Inference, Causal Discovery and Counterfactual Reasoning  Robust Learning from Noisy, Incomplete and Low Quality Data  Feature Engineering, Dimensionality Reduction and Representation Learning  Post processing, Model Interpretation and Knowledge Explanation  Data Centric AI Foundations and Data Quality Theory Machine Learning, Deep Learning and Generative AI  Supervised, Unsupervised and Semi Supervised Learning  Deep Learning Architectures and Representation Learning  Generative AI (GANs, Diffusion Models, Foundation Models)  Retrieval Augmented Generation (RAG) and Knowledge Grounded Models  Self Supervised and Contrastive Learning  Transfer Learning, Domain Adaptation and Multi Task Learning  Reinforcement Learning and Sequential Decision Making  Large Scale ML Systems, Distributed Training and Model Parallelism  Data Mining for LLM Training Pipelines and Dataset Curation Graph, Network and Structured Data Mining  Graph Mining, Network Analysis and Link Prediction  Graph Neural Networks (GNNs) and Graph Transformers  Knowledge Graph Construction, Reasoning and Completion  Temporal, Dynamic and Heterogeneous Graph Mining  Graph Contrastive Learning and Graph Foundation Models  Graph Based Anomaly Detection and Fraud Analytics Multimodal, Text, Web and Social Data Mining  Text Mining, NLP and LLM Driven Analytics  Web Mining, Social Media Mining and Opinion/Sentiment Analysis  Multimedia Mining (Image, Video, Audio, Multimodal Fusion)  Multimodal Foundation Models (Vision Language, Audio Text, Video Text)  Cross Modal Retrieval, Alignment and Multimodal RAG  Spatio Temporal, Mobility and Geographical Data Mining  Event Detection, Trend Analysis and Behavioral Modeling Vector Databases, Embedding Based Retrieval and Semantic Search  Vector Search and Approximate Nearest Neighbor (ANN)  Embedding Based Retrieval and Indexing  Semantic Search Pipelines and Hybrid Retrieval (Symbolic + Vector)  Retrieval Optimization for LLMs and RAG Systems  Large Scale Embedding Management and Drift Detection Streaming, Real Time and Edge Data Mining  Data Stream Mining and Online Learning  Real Time Analytics and Low Latency Inference  Edge Intelligence and On Device Data Mining  Distributed Stream Processing (Flink, Spark Streaming, Ray)  Adaptive Learning in Dynamic Environments  Real Time Event Detection and Monitoring Big Data, Cloud and Distributed Data Mining  Scalable Data Mining Algorithms  Parallel and Distributed Data Mining (Spark, Flink, Ray, Dask)  Cloud Native Data Mining and Serverless Analytics  Data Lakes, Lakehouses and Modern Data Engineering Pipelines  GPU Accelerated Analytics and High Performance Data Mining  Data Integration, Fusion and Multi Source Learning  Data Lineage, Provenance and Versioning Responsible AI, Fairness, Ethics and Governance  Explainable AI (XAI) and Interpretable Models  Fairness, Bias Detection and Algorithmic Accountability  Ethical Data Mining and Responsible AI Practices  Trustworthy AI, Safety and Risk Assessment  Human Centered Data Mining and Decision Support  AI Governance, Compliance and Regulatory Analytics Privacy Preserving and Secure Data Mining  Federated Learning and Collaborative Analytics  Differential Privacy and Privacy Preserving Data Mining  Secure Multi Party Computation and Homomorphic Encryption  Adversarial Attacks, Robustness and Model Security  Cybersecurity Analytics, Threat Detection and Anomaly Mining  AI Safety Data Mining (jailbreak detection, harmful content detection) Data Centric AI and Data Quality Engineering  Data Quality, Cleaning, Labeling and Weak Supervision  Data Validation, Error Detection and Data Debugging  Data Centric AI Pipelines and Automated Data Preparation  Data Valuation, Influence Functions and Data Attribution  Synthetic Data Generation, Simulation and Evaluation  Digital Twins for Data Driven Modeling Interactive, Visual and Human in the Loop Data Mining  Interactive Data Exploration and Visual Analytics  Human in the Loop Learning and Collaborative Mining  Visualization Techniques for Large Scale Data  Interfaces, Tools and Languages for Data Mining  Mixed Initiative Data Mining Systems Knowledge Discovery Frameworks and Processes  KDD Process Models, Workflow Automation and Pipelines  Knowledge Representation, Reasoning and Ontologies  Integration of Data Mining with Knowledge Graphs  Evaluation Metrics, Benchmarking and Reproducibility  Emerging Trends, Opportunities and Future Directions Applications of Data Mining  Bioinformatics, Computational Biology and Precision Medicine  Financial Modeling, Fraud Detection and Risk Analytics  Cybersecurity, Threat Intelligence and Intrusion Detection  Healthcare Analytics and Medical Decision Support  Educational Data Mining and Learning Analytics  Smart Cities, IoT and Sensor Data Mining  E commerce, Marketing, Recommendation Systems and Personalization  Scientific Data Mining and Environmental Analytics  Data Mining for Policy, Governance and Societal Impact Paper Submission Authors are invited to submit papers through the conference Submission System by May 09, 2026. Submissions must be original and should not have been published previously or be under consideration for publication while being evaluated for this conference. The proceedings of the conference will be published by Computer Science Conference Proceedings in Computer Science & Information Technology (CS & IT) series (Confirmed). Selected papers from DaMi 2026, after further revisions, will be published in the special issue of the following journal.  International Journal of Database Management Systems (IJDMS)  International Journal of Data Mining & Knowledge Management Process (IJDKP)  International Journal on Web Service Computing (IJWSC)  Information Technology in Industry (ITII) Important Dates • Submission Deadline : May 09, 2026 • Authors Notification : May 23, 2026 • Registration & Camera-Ready Paper Due : May 30, 2026 Contact Us Here's where you can reach us: dami@dami2026.org (or) damiconf@yahoo.com
Additional Details
Keywords
Data Mining
Venue & Location

Stay Updated on Conferences in Canada

Subscribe free — instant alerts for new Canada conferences, CFP deadlines, and registration openings.

Subscribe Free All Conferences in Canada