When it comes to the topic of drug discovery and development, scientists are busy furrowing their lab-goggled brows trying to understand what’s real and what’s hype when it comes to the power and potential of AI.
This *Resonance Test* conversation perfectly dramatizes the situation. In this episode, Emma Eng, VP of Global Data & AI, Development at Novo Nordisk, and scientist and strategist Chris Waller provide a candid view of drug development in the AI era.
“We're standing on a revolution,” says Eng, reminding us that “we've done it so many other times” with the birth of the computer and the birth of the internet. It’s prudent, she cautions, not to rush to judgement guided by either zealots or skeptics.
Waller says, of the articles about AI and leadership in *Harvard Business Review,* one could do “a search and replace ‘AI’ with any other technological change that's happened in the last 30 years. It's the same kind of trend and processes and characteristics that you need in your leadership to implement the technology appropriately to get the outcomes that you're looking for.”
Which means, for pharma, much uncertainty and much experimentation.
“I think experimentation is good,” says Eng, who then adds that we need to always keep track of what is it that we're experimenting on. She says that the word “experimentation” can “sound very fluid” but in fact, “It's a very structured process. You set up some very clear objectives and you either prove or don't prove those objectives.”
Waller references the various revolutions (throughput screening, combinational chemistry, data, and analytics revolutions) that pharma has seen and says: “We've all held out hope for each and every one of these revolutions that the drug discovery process is going to be shrunk by 50% and cost half as much. And every time we turn around, it's still 12 to 15 years, $1.5 to $2 billion.”
Will AI make the big difference, finally?
“Maybe we need to be revolutionized as an industry,” she says. “It can be hard to make much of a difference as long as there are few big players.” Just a few big players, she says, is “the nature of pharma.”
Of course, our scientists are measured in their assessments about industry change. After all, as Waller says, the systems involved—the human body, the regulatory environment, the commercial ecosystems—are all “super-complicated.”
Eng notes that an important side-effect around the AI hype is corporate interest in data. “Now it's much easier to put that topic on the table saying, ‘If you want to do AI, you need to take care of your data and you need to treat it like an asset.’”
Listen on as they test topics such as regional and regulatory challenges in AI adoption, change management, and future tech and long-term impact (watch out for quantum, everyone!).
In the end, Eng returns to the idea of revolutions. “You think you want so much change in the beginning which you don't get because it takes time,” says Eng. This makes us underestimate what will happen later. Having such a farseeing mindset is significant, she says, because “these technology shifts will have a large impact on the long term.”
Host: Alison Kotin
Engineer: Kyp Pilalas
Producer: Ken Gordon
All content for The EPAM Continuum Podcast Network is the property of EPAM Continuum and is served directly from their servers
with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
When it comes to the topic of drug discovery and development, scientists are busy furrowing their lab-goggled brows trying to understand what’s real and what’s hype when it comes to the power and potential of AI.
This *Resonance Test* conversation perfectly dramatizes the situation. In this episode, Emma Eng, VP of Global Data & AI, Development at Novo Nordisk, and scientist and strategist Chris Waller provide a candid view of drug development in the AI era.
“We're standing on a revolution,” says Eng, reminding us that “we've done it so many other times” with the birth of the computer and the birth of the internet. It’s prudent, she cautions, not to rush to judgement guided by either zealots or skeptics.
Waller says, of the articles about AI and leadership in *Harvard Business Review,* one could do “a search and replace ‘AI’ with any other technological change that's happened in the last 30 years. It's the same kind of trend and processes and characteristics that you need in your leadership to implement the technology appropriately to get the outcomes that you're looking for.”
Which means, for pharma, much uncertainty and much experimentation.
“I think experimentation is good,” says Eng, who then adds that we need to always keep track of what is it that we're experimenting on. She says that the word “experimentation” can “sound very fluid” but in fact, “It's a very structured process. You set up some very clear objectives and you either prove or don't prove those objectives.”
Waller references the various revolutions (throughput screening, combinational chemistry, data, and analytics revolutions) that pharma has seen and says: “We've all held out hope for each and every one of these revolutions that the drug discovery process is going to be shrunk by 50% and cost half as much. And every time we turn around, it's still 12 to 15 years, $1.5 to $2 billion.”
Will AI make the big difference, finally?
“Maybe we need to be revolutionized as an industry,” she says. “It can be hard to make much of a difference as long as there are few big players.” Just a few big players, she says, is “the nature of pharma.”
Of course, our scientists are measured in their assessments about industry change. After all, as Waller says, the systems involved—the human body, the regulatory environment, the commercial ecosystems—are all “super-complicated.”
Eng notes that an important side-effect around the AI hype is corporate interest in data. “Now it's much easier to put that topic on the table saying, ‘If you want to do AI, you need to take care of your data and you need to treat it like an asset.’”
Listen on as they test topics such as regional and regulatory challenges in AI adoption, change management, and future tech and long-term impact (watch out for quantum, everyone!).
In the end, Eng returns to the idea of revolutions. “You think you want so much change in the beginning which you don't get because it takes time,” says Eng. This makes us underestimate what will happen later. Having such a farseeing mindset is significant, she says, because “these technology shifts will have a large impact on the long term.”
Host: Alison Kotin
Engineer: Kyp Pilalas
Producer: Ken Gordon
The Resonance Test 92: Lessons from a Maverick with Uma Gopinath and Macy Donaway
The EPAM Continuum Podcast Network
32 minutes 14 seconds
1 year ago
The Resonance Test 92: Lessons from a Maverick with Uma Gopinath and Macy Donaway
“One of the most essential parts of bringing innovation to market is often the most rarely noted,” says host Macy Donaway on the latest Resonance Test podcast. “And it’s those dedicated client leads and sponsors who have political capital built that they can spend to then overcome hurdles.” We call such people mavericks, and Uma Gopinath, the CIO of Porter Airlines and our podcast guest, perfectly embodies that term.
Gopinath has been a highly successful change-maker in numerous companies and industries (she was the CIO of Metrolinx, the Director of Technology and Innovation at Lush, and the AVP of Intelligent Automation at Canadian Tire Corporation). Along the way, she has learned how to thrive in the heavily male-dominated technology industry and shares some of her wisdom in this conversation.
Giving back, in fact, is central to her work. “As a person of privilege, you need to share that privilege with others,” she says, noting that when at Metrolinx, she noticed the diversity of her teams was “in the low teens when we started,” and by the time she exited “We were close to 30-35% in diversity.”
She says that change happens “by intention.” And notes that when a woman didn’t win a particular role, she would ask her colleagues why and was often told, “But she’s the second best.” To this, Gopinath argued that perhaps she was “second best because she's never been given the opportunity to be the first best.”
Fixing systemic bias, she notes: “Calls for courage, calls for some unpopular statements sometimes.”
Courage is a central part of Gopinath’s general ethos, and it takes the shape of a willingness to be curious, to experiment (and experiment at scale: “your denominator has to be big for you to get those useful, successful experiments,” she says). Gopinath talks up the importance of focusing on the customer. Continuously.
Gopinath notes that many organizations brew up a business case and do a project, “but then nobody goes back to effectively evaluate” the outcomes originally projected. Consequently, she says, “We hear lots of stories about how IT projects don’t deliver.”
She adds that sometimes it’s “a small feedback loop that's required” and that doing “a little more to get to that bigger benefit” is something businesses need to do better.
Gopinath ends with some memorable maverick-level inspiration for future leaders: “Enjoy what you're doing. If you’re not having fun, then go be successful somewhere else.”
Now go have fun and listen to the episode!
Host: Alison Kotin
Engineer: Kyp Pilalas
Producer: Ken Gordon
The EPAM Continuum Podcast Network
When it comes to the topic of drug discovery and development, scientists are busy furrowing their lab-goggled brows trying to understand what’s real and what’s hype when it comes to the power and potential of AI.
This *Resonance Test* conversation perfectly dramatizes the situation. In this episode, Emma Eng, VP of Global Data & AI, Development at Novo Nordisk, and scientist and strategist Chris Waller provide a candid view of drug development in the AI era.
“We're standing on a revolution,” says Eng, reminding us that “we've done it so many other times” with the birth of the computer and the birth of the internet. It’s prudent, she cautions, not to rush to judgement guided by either zealots or skeptics.
Waller says, of the articles about AI and leadership in *Harvard Business Review,* one could do “a search and replace ‘AI’ with any other technological change that's happened in the last 30 years. It's the same kind of trend and processes and characteristics that you need in your leadership to implement the technology appropriately to get the outcomes that you're looking for.”
Which means, for pharma, much uncertainty and much experimentation.
“I think experimentation is good,” says Eng, who then adds that we need to always keep track of what is it that we're experimenting on. She says that the word “experimentation” can “sound very fluid” but in fact, “It's a very structured process. You set up some very clear objectives and you either prove or don't prove those objectives.”
Waller references the various revolutions (throughput screening, combinational chemistry, data, and analytics revolutions) that pharma has seen and says: “We've all held out hope for each and every one of these revolutions that the drug discovery process is going to be shrunk by 50% and cost half as much. And every time we turn around, it's still 12 to 15 years, $1.5 to $2 billion.”
Will AI make the big difference, finally?
“Maybe we need to be revolutionized as an industry,” she says. “It can be hard to make much of a difference as long as there are few big players.” Just a few big players, she says, is “the nature of pharma.”
Of course, our scientists are measured in their assessments about industry change. After all, as Waller says, the systems involved—the human body, the regulatory environment, the commercial ecosystems—are all “super-complicated.”
Eng notes that an important side-effect around the AI hype is corporate interest in data. “Now it's much easier to put that topic on the table saying, ‘If you want to do AI, you need to take care of your data and you need to treat it like an asset.’”
Listen on as they test topics such as regional and regulatory challenges in AI adoption, change management, and future tech and long-term impact (watch out for quantum, everyone!).
In the end, Eng returns to the idea of revolutions. “You think you want so much change in the beginning which you don't get because it takes time,” says Eng. This makes us underestimate what will happen later. Having such a farseeing mindset is significant, she says, because “these technology shifts will have a large impact on the long term.”
Host: Alison Kotin
Engineer: Kyp Pilalas
Producer: Ken Gordon