Misconceptions about Machine Learning and Cybersecurity - DATAVERSITY
They continue, "(2) Speed and Scale Matter. In order to analyze, swiftly and accurately, billions of events in real-time, machine learning models require a level of computational power and scalability that cannot be accomplished using old-school on-premise architecture and conventional database methods. Cloud-based architectures can significantly augment the efficacy of machine learning. Algorithms can be infused with the collective knowledge of a crowdsourced community where threat intelligence is aggregated and updated instantly. Identified attacks can then be turned into a new detection and learned by the algorithm, and shared with others within the cloud network to prevent the attack – sending the bad actors back to the drawing board."
May-19-2016, 06:06:16 GMT
- Industry:
- Information Technology > Security & Privacy (0.40)
- Government > Military
- Cyberwarfare (0.40)
- Technology: