Li cas tshuab kawm yuav txhim khu kev ruaj ntseg?

Machine learning can improve security

Li cas tshuab kawm yuav txhim khu kev ruaj ntseg?

Txheej txheem cej luam

The cyber security landscape has been constantly evolving. Kab tias ntawm ib pace sai dua imagination. Ib feature ntawm cov evolving toj roob hauv pes evolving lawm ruaj ntseg ntshai heev txawm. Novel threats have been giving organizations sleepless nights because of their dynamism and penetrative abilities. Organizations are struggling to find ways to manage threats while more breaches are reported. Obviously, traditional or existing systems have been proving inadequate. Machine learning can potentially help manage such threats more efficiently. kev kawm tshuab can help manage threats originating from new sources such as Internet ntawm tej yam (IoT); monitor huge volumes of information exchanges; identify potential zero-day threats and analyze huge volumes of historical data which may be extremely difficult with traditional methods.

Described below are a few ways machine learning can help improve security.

IoT-related threats

Internet-enabled devices have been proliferating fast which, in a sense, also opens doors to new threat types. Many of these devices are vulnerable which can potentially lead to serious security issues. Monitoring and analyzing data from so many devices is not possible manually. kev kawm tshuab can analyze and identify abnormalities or deviations from the device data.








Information exchange threats

In organizations, colleagues tend to share a lot of data. Data exchanges and the systems facilitating the exchanges are vulnerable because there are scant resources to monitor or analyze. Machine learning can monitor and analyze information exchange. There is this limitation of over alertness and too many false positives, but it is believed that the problem will resolve eventually as the systems adapt.

Zero-day threats

Zero-day threats do not manifest until after a long time which can be gold mine for hackers. Unknown software vulnerabilities are identified and subject to planned attacks. kev kawm tshuab systems can analyze unmonitored data in the TOR networks and provide valuable inputs on not only plugging hitherto unknown loopholes but also preventing attacks.

Threat prediction based management

Machine learning systems can analyze historic data in your organization and provide unique insights. Rau cov uas, organization security systems also need to integrate with the machine learning systems.

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It is not feasible to counter emerging threats with traditional methods alone, however efficient. kev kawm tshuab – both supervised and unsupervised – needs to take stage. Txawm li cas los, it must be complemented by traditional security systems in the form of integration. It also needs to be noted that machine learning is still being worked out.

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