
James Maguire34












Q4. What advice would you give companies to help expand their AI deployment?
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Bill Corrigan
A4: An audit can help pre-determine what a successful #AIOps implementation looks like for an organization. This includes aligning your AIOps initiative to address current needs such as more effective event noise reduction & faster probable cause analysis.

Victor Thu
A4: Start with the fundamental. What business problem are you trying to solve and why AI. Some business challenges may not require sophisticated AI models.

Ade
A4: This is a little counterintuitive but I would say don’t focus on just AI deployment. Take a holistic approach and assess your entire machine learning lifecycle. Think MLOps alongside questions of how can I deploy more quickly and effectively.

Bill Corrigan
@victorthu I agree. Just because you have a AI hammer, doesn't mean every problem is an AI nail.

Ryan Raiker
A4: Data drives change! Organizations need to look at how processes are actually occurring. This is done by looking at the timeline of events in a process. It can also find blind spots and common bottlenecks prime for AI fixes

Chris Ehrlich
A4: Invest in DL and true AI now as a differentiator, as ML know-how and execution will become more standard and buyable.
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James Maguire
@Adewunmi It's true that AI strategy has to consider the whole. It's not a stand alone project.

Ryan Raiker
@BCorrIoT I always love this saying. People think they solved it all with one tool - they say it takes a village and it does, it truly does

James Maguire
@RyRaiker " Data drives change!" Basically the motto of our era.

Victor Thu
And the other thing is, don't fall in love with super high accuracy with your models. Sometimes the actual business results between 80% accuracy and 90% accuracy is not material. It's better to just deploy them!

Ryan Raiker
beyond all that .. maybe “keep it simple” - You know … “hey team let us not try to boil the ocean” even small AI wins can make a major impact on the enterprise

Ade
Yes, and that means data ingestion, it means recognising and planning for differences between the conditions in your development environment versus production. It also means taking a more cross-functional team approach to developing AI solutions

Victor Thu
Exactly @RyRaiker!! You can definitely get AI wins starting with taking smaller bites.


