Cloud platforms offer unparalleled scalability, allowing organizations to easily scale their computing resources up or down to meet the demanding requirements of training and deploying complex AI models.
"The ability to spin up and down resources on-demand has been a game-changer for our AI development efforts," says Stuart Millar, Principal AI Engineer at Rapid7. "We can quickly provision the necessary compute power during peak training periods, then scale back down to optimize costs when those resources are no longer needed."
Cloud environments also provide a cost-effective way to develop AI models, with usage-based pricing models that avoid large upfront investments in hardware and infrastructure. Additionally, major cloud providers offer access to cutting-edge AI hardware and pre-built tools and services, such as Amazon SageMaker, Azure Machine Learning, and Google Cloud AI Platform, which can accelerate development and deployment cycles.
Challenges and Risks of Cloud-Based AI Development
While the cloud offers numerous advantages for AI development, it also introduces unique challenges that organizations must navigate. Limited visibility into complex data flows and model updates can create blind spots for security teams, leaving them unable to effectively monitor for potential threats or anomalies.
In their AI Threat Landscape Report, HiddenLayer highlighted that 98% of all the companies surveyed identified that elements of their AI models were crucial to their business success, and 77% identified breaches to their AI in the past year. Additionally, multi-cloud and hybrid deployments bring monitoring, governance, and reporting challenges, making it difficult to assess AI/ML risk in context across different cloud environments.