6th International Conference on Big Data, IoT and Machine Learning (BIOM 2026)
May 23 ~ 24, 2026, Vancouver, Canada
Hybrid — Registered authors can present their work online or face to face.
Scope & Topics
6th International Conference on Big Data, IoT and Machine Learning (BIOM 2026) serves as a premier global forum for presenting innovative ideas, research developments and emerging trends in the rapidly evolving fields of Big Data, the Internet of Things (IoT) and Machine Learning. As data driven intelligence, connected systems and AI powered technologies continue to transform industries and society, BIOM 2026 aims to bring together researchers, practitioners and industry experts to exchange knowledge, discuss challenges and explore breakthroughs shaping the next generation of intelligent systems.
The conference encourages contributions that advance the state of the art in large scale data processing, distributed and federated learning, edge intelligence, 5G/6G enabled IoT, trustworthy and robust AI, digital twins, data centric AI and emerging technologies such as quantum machine learning and block chain based analytics. BIOM 2026 particularly welcomes work that bridges theory and practice, addresses real world deployment challenges and demonstrates the impact of Big Data, IoT and ML in complex, data intensive environments.
Authors are invited to submit original research articles, project reports, survey papers and industrial case studies that illustrate significant advances in the field. Submissions may address any of the conference themes, including, but not limited to, the topics listed below.
Topics of interest include, but are not limited to, the following
- Big Data Systems, Infrastructure and Platforms
- Distributed and Cloud Native Data Platforms
- Data Lakes, Lake houses and Modern Data Architectures
- Large Scale Data Processing Systems (Spark, Flink, Ray)
- High Performance and Parallel Computing for Big Data
- Edge to Cloud Data Pipelines and Streaming Architectures
- Large Scale Data Mining and Knowledge Discovery
- Graph Mining, Network Science and Graph Based Analytics
- Spatiotemporal and Geospatial Data Analytics
- Real Time and Streaming Data Analytics
- Domain Driven Analytics (Healthcare, Finance, Climate, etc.)
- Data Integration, Cleaning and Wrangling
- Data Governance, Lineage and Compliance
- Data Quality, Bias Detection and Fairness
- Metadata Management and Semantic Technologies
- Datacentric AI and Data Quality Engineering
- Big Data Security, Privacy and Trust
- Differential Privacy and Privacy Preserving Analytics
- Secure Multiparty Computation and Homomorphic Encryption
- Federated Security and Secure Data Sharing
- Zero Trust Architectures for IoT and Edge Systems
- Scalable Machine Learning Algorithms
- Distributed, Federated and Split Learning
- Deep Learning Architectures and Optimization
- Foundation Models and Large Scale Pretraining
- Multimodal Learning (Vision Language Sensor Fusion)
- AutoML, Neural Architecture Search and Model Compression
- Causal Inference and Causal Machine Learning
- Adversarial Machine Learning and Robustness
- Safe and Reliable ML Systems
- ML under Distribution Shift
- Explainable and Interpretable ML
- ML Risk Assessment and Governance
- Scalable Training and Inference Systems
- ML Model Deployment, Monitoring and Drift Detection
- ML Observability and Lifecycle Management
- Data/Model Versioning and Reproducibility
- RealTime ML and Online Learning
- IoT Architectures, Protocols and Standards
- Edge and Fog Computing for IoT
- 5G/6GEnabled IoT and Ultra Reliable Low Latency IoT
- IoT Interoperability and Large Scale IoT Platforms
- Resource Efficient IoT Systems
- Industrial IoT (IIoT) and Industry 4.0
- Environmental Monitoring and Precision Agriculture
- Wearables, Healthcare IoT and Remote Sensing
- Autonomous Systems and Cyber Physical Systems
- Sensor Fusion and Intelligent Sensing
- Lightweight Cryptography for IoT
- Secure Firmware, OTA Updates and Device Hardening
- Intrusion Detection for IoT and Edge Systems
- Resilient IoT Architectures and Fault Tolerance
- Edge AI and On Device Machine Learning
- Collaborative and Federated Edge Intelligence
- Resource Efficient ML for Edge and IoT Devices
- Low Latency AI and Real Time Inference
- 5G/6G Networks for Data Intensive Applications
- Network Slicing and QoS for IoT and ML Workloads
- Software Defined Networking (SDN) and Network Virtualization
- Data Driven Network Optimization
- Digital Twins for IoT, Smart Infrastructure and CPS
- Data Driven Simulation and Predictive Modeling
- Blockchain for IoT, Data Integrity and Secure Analytics
- Quantum Machine Learning and Quantum Data Processing
- Generative AI for IoT and Big Data Applications
- Federated Data Mining and Knowledge Discovery
- Cross Device and Cross Silo Analytics
- Privacy Preserving Collaborative Computation
- Green AI and Energy Efficient ML
- Carbon Aware Data Processing
- Sustainable IoT and Edge Systems
- Experimental Results and Deployment Scenarios
- Large Scale System Benchmarking and Performance Evaluation
- Industrial Applications and Technology Transfer
Big Data Analytics, Mining and Applications
Data Management, Governance and Quality
Security, Privacy and Trust in Data Driven Systems
Machine Learning and AI for Big Data
Trustworthy, Robust and Safe Machine Learning
ML Systems, Deployment and MLOps
IoT Systems, Architectures and Connectivity
IoT Applications, Sensing and Cyber Physical Systems
Advanced IoT Security and Resilience
Edge Intelligence and Distributed AI
Networking for Big Data, IoT and ML
Digital Twins and Emerging Technologies
Federated Analytics and Collaborative Intelligence
Sustainable AI and Data Systems
Real World Deployments, Benchmarks and Case Studies
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 (H index 46) in Computer Science & Information Technology (CS & IT) series (Confirmed).
Selected papers from BIOM 2026, after further revisions, will be published in the special issue of the following journals.
- International Journal of Data Mining & Knowledge Management Process (IJDKP)
- International Journal of Database Management Systems (IJDMS)
- Machine Learning and Applications: An International Journal (MLAIJ)
- Advances in Vision Computing: An International Journal (AVC)
- International Journal of Grid Computing & Applications (IJGCA)
- International Journal of Ambient Systems and Applications (IJASA)
- International Journal on Web Service Computing (IJWSC)
Important Dates
| Submission Deadline | : | May 09, 2026 |
| Authors Notification | : | May 16, 2026 |
| Final Manuscript Due | : | May 19, 2026 |
Co – Located Event
- 15th International Conference on Artificial Intelligence and Soft Computing (AISO 2026)
- 15th International Conference on Signal & Image Processing (SIP 2026)
- 13th International Conference on Wireless and Mobile Network (WiMNeT 2026)
- 6th International Conference on NLP & Data Mining (NLDM 2026)
- 6th International Conference on Cryptography and Blockchain (CRBL 2026)
- 10th International Conference on Computer Science and Information Technology (COMIT 2026)
- 5th International Conference on Education, Pedagogy and Technology (EDUPT 2026)
- 5th International Conference on Software Engineering Advances and Formal Methods (SOFTFM 2026)
***** The invited talk proposals can be submitted to biom@crbl2026.org