What’s been your biggest challenge in implementing practical AI solutions was it data quality, stakeholder buy-in, integration with legacy systems, or something else entirely?

2.7k viewscircle icon2 Upvotescircle icon7 Comments
Sort by:
Director of IT in Retaila month ago

Scaling the compliance and governance processes to AI - oversight teams like legal are typically small compared to the large numbers of use cases popping up into the minds of product teams

Lightbulb on2
VP of ITa month ago

Identifying the right use case to implement a practical AI Solution followed by figuring out ROI. A business problem / opportunity can be addressed in multiple ways but is it the right fit for an AI solution to be implemented (what and the why followed by how)? The next challenge we had to solve is identifying data, ownership and quality. 

Lightbulb on2 circle icon1 Reply
no titlea month ago

Agreed, identifying the right use cases (with good ROI) for AI proof of concept should be the key challenge.

Lightbulb on2
Director in Manufacturing2 months ago

Similar to SAP data ownership…. Nobody wants to be a data owner and nobody wants to own accuracy of AI answers

Lightbulb on1
Director of Data2 months ago

For us broadly in the UK public sector-  data quality, unstructured data and data silos are the biggest challenges.

Lightbulb on1
Director of IT in Healthcare and Biotech2 months ago

One of our biggest challenges is proper scoping. It's easy to say "use AI" but defining what that actually means and implementing appropriately can be difficult. It's important to fully understand the use case before sourcing or building a solution. AI can be a great tool, but it's not always the best tool for the job.

Lightbulb on1 circle icon1 Reply
no title2 months ago

Agreed CIndy with your point of view.

Lightbulb on1

Content you might like

>20%16%

16-20%43%

11-15%11%

5-10%6%

<5%23%

View Results

Yes85%

No14%