Artificial intelligence and machine learning are hard, and most building these systems don’t know what they are doing. Here’s how to avoid AI/ML failures. Credit: Thinkstock Rackspace Technology just announced the results of a global survey that reveals that the majority of organizations lack the internal resources to support critical AI and machine learning initiatives. Indeed, 34% of respondents reported artificial intelligence projects that failed. The larger issue is the misapplication of AI and ML for applications where these particular technologies are contraindicated. This has been a problem since the advent of neural networks and AI, which is much longer than you think. AI on public clouds is just too easy and cheap not to leverage, so it’s being used with business applications where the process of learning or finding patterns is not a requirement. When AI is the shiny new hammer, every application looks like a nail. Applications that are good candidates for AI or ML are those that need to determine and assign meaning to patterns. Think of the systems employed now on factory floors to determine product quality using image recognition and automation, or fraud detection programs in banking that look at transaction data. A second problem is the lack of training data to support the use of AI and ML. Data teaches the AI engine to assign meaning to patterns, and your AI engine is only as good as the training data available. These days enterprises often don’t understand where the training data is located, what the single source of truth is, or what the data means. Data is everything in the world of AI; knowledge is derived from data. If you don’t have a solid data source, and you don’t have an excellent understanding of the meaning of the data, AI won’t work for you. Finally, as the study calls out, many enterprises don’t have the skills to select the right tools, build the right applications, and deploy AI and ML systems effectively. I get that talent is tough to find. It’s actually a pretty involved skill set: cloud services, cloud databases, cloud AI and ML systems, and most importantly, the ability to configure the right technology to meet the needs of the business applications. This technology is powerful—a game changer for many businesses—considering its potential. However, organizations need to focus on the proper purpose, understand their own data, and go after the right skills. Related content analysis Generative AI won’t fix cloud migration You’ve probably heard how generative AI will solve all cloud migration problems. It’s not that simple. Generative AI could actually make it harder and more costly. By David Linthicum Jul 12, 2024 5 mins Generative AI Artificial Intelligence Cloud Computing analysis All the brilliance of AI on minimalist platforms Buy all the processing and storage you can or go with a minimum viable platform? AI developers and designers are dividing into two camps. By David Linthicum Jul 09, 2024 5 mins Generative AI Cloud Architecture Artificial Intelligence analysis The next 10 years for cloud computing Despite AI's explosive growth, the industry still needs to face facts that customers are unhappy about costs and vendor lock-in. By David Linthicum Jul 05, 2024 5 mins Amazon Web Services Google Cloud Platform Microsoft Azure analysis Serverless cloud technology fades away Serverless was a big deal for a hot minute, but now it seems old-fashioned, even though its basic elements, agility and scalability, are still relevant. By David Linthicum Jul 02, 2024 4 mins Serverless Computing Cloud Computing Software Development Resources Videos