Malicious cyber activity is ubiquitous and its harmful effects have dramatic and often irreversible impacts on society. Given the shortage of cybersecurity professionals, the ever-evolving adversary, the massive amounts of data which could contain evidence of an attack, and the speed at which defensive actions must be taken, innovations which enable autonomy in cybersecurity must continue to expand, in order to move away from a reactive defense posture and towards a more proactive one. The challenges in this space are quite different from those associated with applying AI in other domains such as computer vision. The environment suffers from an incredibly high degree of uncertainty, stemming from the intractability of ingesting all the available data, as well as the possibility that malicious actors are manipulating the data. Another unique challenge in this space is the dynamism of the adversary causes the indicators of compromise to change frequently and without warning. In spite of these challenges, machine learning has been applied to this domain and has achieved some success in the realm of detection. While this aspect of the problem is far from solved, a growing part of the commercial sector is providing ML-enhanced capabilities as a service. Many of these entities also provide platforms which facilitate the deployment of these automated solutions. Academic research in this space is growing and continues to influence current solutions, as well as strengthen foundational knowledge which will make autonomous agents in this space a possibility.
翻译:由于网络安全专业人员短缺、不断演变的对手、大量数据可能包含攻击的证据,以及必须迅速采取防御行动,使得网络安全自主的创新必须继续扩大,以便摆脱被动的防御态势,走向更积极主动的状态。这一空间的挑战与在计算机愿景等其他领域应用AI的挑战大不相同。环境受到不确定性的极大影响,原因是所有现有数据的可摄取不易,以及恶意行为者操纵数据的可能性。这一空间的另一个独特挑战是敌人的活力导致妥协指标经常和无预警地发生变化。尽管存在这些挑战,机器学习已经应用于这一领域,并在探测领域取得了一些成功。虽然这一问题的这个方面还远远没有解决,但商业部门日益扩大的一部分正在提供ML增强的能力,作为服务。许多实体还提供空间研究平台,作为这种空间解决方案的自主基础,不断加强空间研究的自主基础。这些实体还将继续提供空间研究平台,作为这种空间解决方案的自主基础,并不断增强空间研究的基础。