
Sign up to save your podcasts
Or


An A.I. the model is similar to a boat in that it needs constant maintenance to perform. The reality is A.I. models need adjusted boundaries and guidelines to remain efficient. And when you live in a world where everyone is trying to get bigger and faster and have a certain edge, Scott Clark is helping make that possible with his finely-tuned A.I. modeling techniques.
“As you're building up these rules and constructs for how that system will even learn itself, there's a lot of parameters that you need to set and tune. There's all these magical numbers that go into these systems. If you don't have a system of record for this, if you're just throwing things against the wall and seeing what sticks, and then only checking the best one, and you don't have a system of what you tried, what the trade-offs were, which parameters were the most important, and how it traded off different metrics it can seem like a very opaque process. At least that hyper parameter optimization and neural architecture search and kind of tuning part of the process can be a little bit more explainable, a little bit more repeatable and a little bit more optimal.”
More explainable, and more optimal, but most importantly scaleable and reproducible. On this episode of IT Visionaries, Scott, the CEO and Co-founder of SigOpt, a company that’s on a mission to empower modeling systems to reach their fullest potential, explains the basic steps that go into successful models, how his team tweaks and optimizes those models to build more efficient processes. Plus, Scott touches on the future of algorithmic models — including how they will improve and where they struggle. Enjoy this episode.
Main Takeaways
---
IT Visionaries is brought to you by the Salesforce Platform - the #1 cloud platform for digital transformation of every experience. Build connected experiences, empower every employee, and deliver continuous innovation - with the customer at the center of everything you do. Learn more at salesforce.com/platform
--
This episode of IT Visionaries is brought to you by Meter - the company building better networks. Businesses today are frustrated with outdated providers, rigid pricing, and fragmented tools. Meter changes that with a single integrated solution that covers everything wired, wireless, and even cellular networking. They design the hardware, write the firmware, build the software, and manage it all so your team doesn't have to.
That means you get fast, secure, and scalable connectivity without the complexity of juggling multiple providers. Thanks to meter for sponsoring. Go to meter.com/itv to book a demo.
---
IT Visionaries is made by the team at Mission.org. Learn more about our media studio and network of podcasts at mission.org.
Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.
By Mission4.6
170170 ratings
An A.I. the model is similar to a boat in that it needs constant maintenance to perform. The reality is A.I. models need adjusted boundaries and guidelines to remain efficient. And when you live in a world where everyone is trying to get bigger and faster and have a certain edge, Scott Clark is helping make that possible with his finely-tuned A.I. modeling techniques.
“As you're building up these rules and constructs for how that system will even learn itself, there's a lot of parameters that you need to set and tune. There's all these magical numbers that go into these systems. If you don't have a system of record for this, if you're just throwing things against the wall and seeing what sticks, and then only checking the best one, and you don't have a system of what you tried, what the trade-offs were, which parameters were the most important, and how it traded off different metrics it can seem like a very opaque process. At least that hyper parameter optimization and neural architecture search and kind of tuning part of the process can be a little bit more explainable, a little bit more repeatable and a little bit more optimal.”
More explainable, and more optimal, but most importantly scaleable and reproducible. On this episode of IT Visionaries, Scott, the CEO and Co-founder of SigOpt, a company that’s on a mission to empower modeling systems to reach their fullest potential, explains the basic steps that go into successful models, how his team tweaks and optimizes those models to build more efficient processes. Plus, Scott touches on the future of algorithmic models — including how they will improve and where they struggle. Enjoy this episode.
Main Takeaways
---
IT Visionaries is brought to you by the Salesforce Platform - the #1 cloud platform for digital transformation of every experience. Build connected experiences, empower every employee, and deliver continuous innovation - with the customer at the center of everything you do. Learn more at salesforce.com/platform
--
This episode of IT Visionaries is brought to you by Meter - the company building better networks. Businesses today are frustrated with outdated providers, rigid pricing, and fragmented tools. Meter changes that with a single integrated solution that covers everything wired, wireless, and even cellular networking. They design the hardware, write the firmware, build the software, and manage it all so your team doesn't have to.
That means you get fast, secure, and scalable connectivity without the complexity of juggling multiple providers. Thanks to meter for sponsoring. Go to meter.com/itv to book a demo.
---
IT Visionaries is made by the team at Mission.org. Learn more about our media studio and network of podcasts at mission.org.
Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

31,967 Listeners

1,285 Listeners

1,642 Listeners

1,092 Listeners

622 Listeners

156 Listeners

111 Listeners

302 Listeners

332 Listeners

235 Listeners

179 Listeners

220 Listeners

168 Listeners

40 Listeners

76 Listeners

275 Listeners

59 Listeners

38 Listeners

87 Listeners

9,946 Listeners

136 Listeners

501 Listeners

139 Listeners

23 Listeners

18 Listeners

620 Listeners

28 Listeners

58 Listeners