Platform for Development of AI based Network Traffic Analytics
- Project
- 20020 ENTA
- Type
- New service
- Description
Enable fast and focused development/deployment of ML/DL-based solutions. Advantages are: (a) Time savings in Development phase – it includes building blocks that are specific for network traffic and essential for a pipeline to build high quality model development. (b) Benchmark accuracy of developed models – It provides standard ways to compute and evaluate efficacy of models. It becomes easier to compare newly developed ML/DL model performance with existing models. Experimentation with different datasets is easily reproducible. (c) Solution is highly scalable.
- Contact
- Biswajit Nandy
- bnandy@solananetworks.com
- Research area(s)
- Used for AI analytics development for Traffic Classification, Malware detection, Rogue IoT detection, Data Exfiltration, IoT device detection
- Technical features
Some of these are: (i) Network flow feature extraction module from pcap files; (ii) Ability to create datasets in a flexible manner; (iii) Perform hyper-parameter optimization, (iv) Having available various pre-configured templates for ML/DL pipeline creation etc.
- Integration constraints
Environment needs to support for Kubernetes on a Linux platform so that Kubeflow can be run.
- Targeted customer(s)
Solution developers for cyber security tools, Deep Packet Inspection vendors
- Conditions for reuse
Solana Networks will provide the service to enable reuse of this ENTA platform solution in the customer environment during trial period. Licensing agreement for the solution can be arranged after the initial trial period.
- Confidentiality
- Public
- Publication date
- 15-12-2023
- Involved partners
- Solana Networks (CAN)