Photo: Arvin Hsu |
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In fact, your smartphone has a lot more AI in it than your local call center operator terminal. In a recent Forrester survey among technology and business professionals, 58 percent responded that their organizations are researching AI technology; however, only 12 percent are now using AI systems at work.
Why the gap between interest and implementation? For many organizations, the bottleneck lies in machine learning platforms that are designed to maximize ease of use and value for data scientists and not day-to-day business users. As a result, predictions, recommendations, and any actionable insights end up siloed in the data and analytics departments or executive reports, denying business users the insights they need to do their jobs more effectively and efficiently. But that has begun to change.
A Tale of Two Users
Even if an enterprise is fortunate enough to have its own team of data scientists, it still faces a gap between its AI and machine learning capabilities and the needs of business users.
On one end of the spectrum we have the data scientists. While these experts possess a deep understanding of how data works and a high level of dexterity in using data platforms, they lack experience in the front-line business cases where data can best serve the organization. They also lack the time that would be needed to interact one-on-one with business users and deliver customized solutions to meet each user’s needs.
At the other end of the spectrum are the business users. They have first-hand knowledge of the challenges that arise in their domain on a daily basis, but they lack understanding of how data can help address those problems. Even if they have access to AI-powered data platforms, they’re often saddled with the task of not only navigating a byzantine user experience, but also figuring out the connection between the data and their workflows.
How to Bridge the Gap
For a data platform to effectively meet the needs of business users, it must achieve three objectives:
- Present the data in context, with a clear connection to users’ day-to-day tasks and decisions;
- Deliver the data at the point of work, so that business users can leverage data-driven insights within their current workflows (instead of having to log on to a separate application) and;
- Move from data discovery and one-off model building to continuously updated model productionalization. To make the business users’ jobs easier, the model needs to be productionalized into a repeatable, self-updating system that provides continuous recommendations for routine decisions or by automating those simple decisions altogether.
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Source: BetaNews