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Expanding Your AI Deployment
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James Maguire
Q8. The future of enterprise AI? Where will we be in 3-5 years?
Victor Thu
A8: The economy today is a good forcing function for enterprises to stop treating AI like a toy.

In 3 to 5 years, enterprises who pivoted from building their own tools will advance much rapidly as they focus on delivering real results rather than just doing lab research.
Chris Ehrlich
A8: The market and competition will solve ML. Innovators will begin to properly position themselves in the DL and true AI segments.
Bill Corrigan
A8: There is a lot of potential for #AI – especially its predictive capabilities. Additionally, we expect to see AI ethics standards proliferate among the tools & consortia as governance around AI starts to codify.
Rik Chomko
A8: It will certainly grow but it will need to adapt to be more explainable and proactively alert organizations for bias in their models/data.
Ade
A8: My prediction/hope is modest. I think we'll see more standardised practice around MLOps and DataOps. And I think a corollary of that is an easing of the deployment gaps so many orgs are currently grappling with.
James Maguire
@BCorrIoT "governance around AI" -- that's a big topic.....
Ryan Raiker
A8: I guess we will see iRobot come to life… no. No. No! I suspect you will see remote work grow, while production increases. As inflation continues, more companies will be looking for cost savings which AI can deliver. Those who remain stagnant will be beat!
James Maguire
@RyRaiker Good point on inflation driving AI adoption. Clearly yes.
Ade
This is a really good point. I think that governance is both internal and external (i.e. from regulators and civil society-based auditors)
Bill Corrigan
Yes @JamesMaguire we are seeing this in conversation with both private and public sector customers.
Ade
@BCorrIoT This is a really good point. I think that governance is both internal and external (i.e. from regulators and civil society-based auditors)
Ryan Raiker
A8 (continued) I think these AI tools will be driven by the rise and commoditization of process mining which will mean process and data understanding for every business operation and tech stack.
Ade
@BCorrIoT Still on the governance front. I really hope regulation keeps up. I think it's a useful forcing function for building better, more robust AI.
Victor Thu
Exactly @Adewunmi , in fact this is critical for AI to gain wider adoption.
Ryan Raiker
@victorthu but why hasn’t it been seen yet?
Bill Corrigan
@Adewunmi Regulation varies from region to region. For example the EU is getting ahead of this problem right now.
James Maguire
@Adewunmi I'm pessimistic about AI governance. Too much money, too many ways to work around regulators. And what's their authority?
Ade
@RikChomko Yeah, I agree. I think the path to this is a holistic one though. I don't think we'll see tools emerge that do this well i.e. no silver bullet. I think better ML practice is at the root of this and the cost and pain of maintenance may help drive this too.
Ryan Raiker
@Adewunmi the EU has done a really amazing job of looking at these angles https://www.abbyy.com/blog/legal-regulation-of-art...
James Maguire
Q7. What vendors are the leaders in the enterprise AI market, as you see it? Why?
Chris Ehrlich
A7: Specialists that solve a level of the tech — ML, DL, AI — with clear applications and business cases.
Victor Thu
A7: The big cloud guys have built a series of complex tools that require expertise to assemble. Like supermarkets offering just anything as long as you have chefs who knows how to cook.

Instead, the more exciting players are the startups that are providing gourmet meals!
Ryan Raiker
Q7: it might not be who you suspect. But the best way to evaluate leaders is through analyst reports. AI is an umbrella tech that covers a variety of enterprise tech. and it plays a huge role in intelligent process automation.
James Maguire
@victorthu You mean low code no code?
Ade
A7: Well, for obvious reasons I would say Cloudera :). One reason for that is that data is so critical to delivering high-quality AI. Making data ingestion as easy as possible regardless of where that data sits - on prem or in the cloud, is the first step
Ryan Raiker
@RyRaiker on the note of analysts : In RPA for example, Gartner has recognized UiPath, BluePrism and Microsoft as leaders.
Bill Corrigan
A7: @BMCSoftware is a proud leader in this market & deeply committed to #AIOps. Our AIOps solutions apply #ML & predictive capabilities across IT Ops & #DevOps environments for real-time, enterprise-wide observability, insights, & automated remediation. (1/2)
Victor Thu
Not exactly @JamesMaguire. There are tools offered by startups today that allow AI models to go into production quickly without having to assemble your own infrastructure.
Ryan Raiker
@RyRaiker For intelligent document processing, Everest Group has named ABBYY and Automation Anywhere as leaders, and in process mining NelsonHall recognizes ABBYY.
Ade
A7: I also think while the plethora of highly specialised, point solution MLOps tools are exciting, maturity demands consolidation and a platform approach is one of the best ways to do that.
Ryan Raiker
Amazon, Google, and Microsoft all continue to lead in enterprise AI with a large portfolio, often through acquisition or through investing in R&D.
Rik Chomko
A7: It's a large and diverse set of tech and depends on what you want to achieve. Some are good for out of the box regression models for getting started and other are better at more complex uses cases like finding similarities in large sets of data.
James Maguire
@RyRaiker Many would argue that the cloud players will "win" the AI war. But -- there are so many sectors, they can't prevail in all of them.
Bill Corrigan
A7: significant considerations for #AI are cross-domain observability & actionability, parsing out event “noise”, and intelligent alerting & #automation. (2/2)
Ryan Raiker
cloud is a must, but even startups can access and deploy cloud first
Bill Corrigan
Agree, the cloud players provide the infrastructure but not the end-to-end for complex business problems.
Ade
@RyRaiker I think this is true. I also think though that analyst results serve more as a north star. Orgs still have to develop the skills to assess their own needs against the features of the product. That means they have to have the in-house talent, or buy in help, to do so
James Maguire
Q6. What about AI and data analytics? Your sense of this promising union?
Bill Corrigan
A6: One challenge in deploying #AI & #ML for analytics is that the analysis is only as good as the #data & the data science. Applying algorithms on unprepared data is likely to find patterns, but patterns without purpose are not the goal & won't provide value.
Ryan Raiker
A6: #AI with data analytics is a must – it’s how you’ll report on KPIs, know when, where and why human intervention is needed to continuously improve AI models. Peter Drucker said you can’t improve what you don’t measure (or something like that lol) match made!
Ade
A6: I do! I think both data scientists and business analysts are seen as 'end users' of data ops and we are seeing more data engineers in customer orgs asking about how to avoid duplicating effort when it comes to serving them
James Maguire
@RyRaiker Yes, the famous Drucker quote is at the center of AI and data
Chris Ehrlich
A6: AI is critical to getting insight out of big data-level volumes. AI will help well-staffed companies deliver the unmet promise of data analytics.
Ryan Raiker
@RyRaiker marry them and never divorce them, it will only get better! #artificialintelligence
Bill Corrigan
A6: We see #AI & data analytics playing a huge role at the edge as data is parsed and acted upon in settings like smart buildings and factories.
James Maguire
@RyRaiker A marriage made in heaven :)
James Maguire
@BCorrIoT But can the edge devices crunch the data at the needed level? (I think so...)
Ade
A6: Sojust for reasons of efficiency, there'll be at least a union of processes/tools etc. Also, I think the output of these two disciplines are often complementary and ideally should be used together. I think as decision makers get more savvy, they'll do this more
Ryan Raiker
@Adewunmi Well here comes #processmining to solve some of those challenges
Ade
A6: I also think this union speaks to the growing demand for more democratisation of AI
Bill Corrigan
Agree, we are seeing more and more sophistication of both processor, battery and storage in modern-edge devices across industries (eg. computer vision in smart cameras).
James Maguire
@Adewunmi SMBs and citizen developers want more of the democratization of AI.