From traditional manufacturing companies using AI in robots to build smart factories to tech startups developing automated customer service and chatbots, AI is becoming pervasive across industries.
“AI is no longer just in assistant mode, but is now playing autonomous roles in robotics, driving, knowledge generation, simulating our hands, feet, and brains,” says Lan Guan, global lead for data and AI at Accenture.
This episode is part of our “Building the future” podcast series. It’s a multi-episode series focusing on how organizations, researchers, and innovators are meeting our evolving global challenges. We understand the importance of inclusive conversations and have chosen to highlight the work of women on the cutting edge of technological innovation, and business excellence.
Researchers are similarly unlocking the value of AI through machine learning and robots that are developed to augment rather than replace human capabilities across manufacturing, health care, and space exploration. The robots of the past were kept in cages on factory floors and in labs, but this new era of AI-enabled robotics allows humans to work interdependently with robots to boost productivity, increase quality of work, and enable greater flexibility, says Julie Shah, professor in the department of aeronautics at MIT. Shah is also the co-lead of the Work of the Future Initiative at MIT.
“Sometimes it can feel as though the emergence of these technologies is just going to sort of steamroll and work and jobs are going to change in some predetermined way because the technology now exists,” says Shah. “But we know from the research that the data doesn’t bear that out actually.”
Although there are longstanding concerns about AI taking jobs and vastly changing workforces across the globe, Guan and Shah paint a picture of a future where AI empowers and supports human innovation. Taking a human-centered approach enables human invention and ingenuity to be augmented by AI and AI-enabled technologies. A critical question Shah asks throughout her research is: “How do we develop these technologies such that we’re maximally leveraging our human capability to innovate and improve how we do our work?”
With more and better collected data, researchers and organizations alike have the opportunity to learn from the future when deploying AI and robotics. From ethics to varied use cases, the AI landscape is constantly shifting and decisions that academics and enterprises make now can have long term ramifications. A strategic practice of foresight offers a solution of envisioning multiple futures and forming strategies in the present.
“I’m very optimistic about all these amazing aspects of flexibility, resilience, specialization, and also generating more economic profit, economic growth for the society aspect of AI,” says Guan. “As long as we walk into this with eyes wide open so that we understand some of the existing limitations, I’m sure we can do both of them.”
This episode of Business Lab is sponsored.
A new era of generative AI for everyone, Accenture
Laurel Ruma: From MIT Technology Review, I’m Laurel Ruma, and this is Business Lab, the show that helps business leaders make sense of new technologies coming out of the lab and into the marketplace. This episode is part of our “Building the future” series. We’re focusing on how organizations, researchers, and innovators are meeting our evolving global challenges. We understand the importance of inclusive conversations and have chosen to highlight the work of women on the cutting edge of technological innovation and business excellence.
Our topic today is artificial intelligence. Advances in AI and robotics help not just explore the unknown but surface new possibilities and innovations. And with more and better data, AI, and robotics, researchers and organizations have an opportunity to learn from the future. But for the near term, enterprises are taking advantage of current capabilities and technologies to be smarter from manufacturing to beyond.
Two words for you: smart robots.
My guests are Lan Guan, who is the global lead for data and AI at Accenture. Julie Shah is a professor in the Department of Aeronautics and Astronautics at the Massachusetts Institute of Technology. She also co-leads the Work of the Future Initiative at MIT.
This episode of Business Lab is sponsored.
Welcome Lan and Julie.
Julie Shah: Thank you so much.
Lan Guan: Thank you for having us.
Laurel: Lan, let’s start off with you. How would you describe the current state of AI? How are Accenture’s customers using it?
Lan: Sure. Let me start by giving you lay of the land of what’s happening in artificial intelligence the more in the enterprise and industry kind of context. I think from my perspective, AI has been making significant headlines within the last two, three years, right? And the recent advances in machine learning and deep learning have made it possible to build models, I mean gigantic models, that are capable of automating a variety of human tasks including what we call using AI for perceptual data, right? Perceptual data meaning speech and vision recognition, natural language processing, or even doing reasoning. So, it’s just incredible to see some of these models perform at levels higher than what humans are capable of. So, I think that’s pretty amazing.
Also, another thing that I’m seeing: AI is no longer just in assistant mode, but is now playing autonomous roles in robotics, driving, knowledge generation, simulating our hands, feet, and brains. I think that AI has become very pervasive. And then playing these autonomous roles, this is something that I’ve seen across different industries. But we also recognize AI is still young and data hungry. There’s still so much more to be done to make it more robust, explainable and fair, responsible in many, many different ways. Additionally, there’s still so many challenges, right? Limitations for business leaders to overcome before we can achieve true artificially generated intelligence where a machine can actually perform any intellectual task that a human can.
So, I’ve seen many clients from basically all industries with different maturities approach us to implement or advance their AI journey, some in experimentation and others who are actually already high achievers in AI. Let me give you one example. In traditional industries like manufacturing, companies are adopting AI in robots to build smart factories. One digital native client in e-commerce has asked us to help them provide ultra-personalized experiences to meet growing customer taste and demands. We have even delved into animal precision health with the client where we created models to monitor cows’ lactation cycles, predict their milk production based on their genetics, and even project how fast they can reproduce through natural and artificial insemination.
So very quickly, I gave you examples of how AI has become pervasive and very autonomous across multiple industries. This is a kind of trend that I am super excited about because I believe this brings enormous opportunities for us to help businesses across different industries to get more value out of this amazing technology.
Laurel: Julie, your research focuses on that robotic side of AI, specifically building robots that work alongside humans in various fields like manufacturing, healthcare, and space exploration. How do you see robots helping with those dangerous and dirty jobs?
Julie: Yeah, that’s right. So, I’m an AI researcher at MIT in the Computer Science & Artificial Intelligence Laboratory (CSAIL), and I run a robotics lab. The vision for my lab’s work is to make machines, these include robots. So computers become smarter, more capable of collaborating with people where the intention is to be able to augment rather than replace human capability. And so we focus on developing and deploying AI-enabled robots that are capable of collaborating with people in physical environments, working alongside people in factories to help build planes and build cars. We also work in intelligent decision support to support expert decision makers doing very, very challenging tasks, tasks that many of us would never be good at no matter how long we spent trying to train up in the role. So, for example, supporting nurses and doctors and running hospital units, supporting fighter pilots to do mission planning.
The vision here is to be able to move out of this sort of prior paradigm. In robotics, you could think of it as… I think of it as sort of “era one” of robotics where we deployed robots, say in factories, but they were largely behind cages and we had to very precisely structure the work for the robot. Then we’ve been able to move into this next era where we can remove the cages around these robots and they can maneuver in the same environment more safely, do work in the same environment outside of the cages in proximity to people. But ultimately, these systems are essentially staying out of the way of people and are thus limited in the value that they can provide.
You see similar trends with AI, so with machine learning in particular. The ways that you structure the environment for the machine are not necessarily physical ways the way you would with a cage or with setting up fixtures for a robot. But the process of collecting large amounts of data on a task or a process and developing, say a predictor from that or a decision-making system from that, really does require that when you deploy that system, the environments you’re deploying it in look substantially similar, but are not out of distribution from the data that you’ve collected. And by and large, machine learning and AI has previously been developed to solve very specific tasks, not to do sort of the whole jobs of people, and to do those tasks in ways that make it very difficult for these systems to work interdependently with people.
So the technologies my lab develops both on the robot side and on the AI side are aimed at enabling high performance and tasks with robotics and AI, say increasing productivity, increasing quality of work, while also enabling greater flexibility and greater engagement from human experts and human decision makers. That requires rethinking about how we draw inputs and leverage, how people structure the world for machines from these sort of prior paradigms involving collecting large amounts of data, involving fixturing and structuring the environment to really developing systems that are much more interactive and collaborative, enable people with domain expertise to be able to communicate and translate their knowledge and information more directly to and from machines. And that is a very exciting direction.
It’s different than developing AI robotics to replace work that’s being done by people. It’s really thinking about the redesign of that work. This is something my colleague and collaborator at MIT, Ben Armstrong and I, we call positive-sum automation. So how you shape technologies to be able to achieve high productivity, quality, other traditional metrics while also realizing high flexibility and centering the human’s role as a part of that work process.
Laurel: Yeah, Lan, that’s really specific and also interesting and plays on what you were just talking about earlier, which is how clients are thinking about manufacturing and AI with a great example about factories and also this idea that perhaps robots aren’t here for just one purpose. They can be multi-functional, but at the same time they can’t do a human’s job. So how do you look at manufacturing and AI as these possibilities come toward us?
Lan: Sure, sure. I love what Julie was describing as a positive sum gain of this is exactly how we view the holistic impact of AI, robotics type of technology in asset-heavy industries like manufacturing. So, although I’m not a deep robotic specialist like Julie, but I’ve been delving into this area more from an industry applications perspective because I personally was intrigued by the amount of data that is sitting around in what I call asset-heavy industries, the amount of data in IoT devices, right? Sensors, machines, and also think about all kinds of data. Obviously, they are not the typical kinds of IT data. Here we’re talking about an amazing amount of operational technology, OT data, or in some cases also engineering technology, ET data, things like diagrams, piping diagrams and things like that. So first of all, I think from a data standpoint, I think there’s just an enormous amount of value in these traditional industries, which is, I believe, truly underutilized.
And I think on the robotics and AI front, I definitely see the similar patterns that Julie was describing. I think using robots in multiple different ways on the factory shop floor, I think this is how the different industries are leveraging technology in this kind of underutilized space. For example, using robots in dangerous settings to help humans do these kinds of jobs more effectively. I always talk about one of the clients that we work with in Asia, they’re actually in the business of manufacturing sanitary water. So in that case, glazing is actually the process of applying a glazed slurry on the surface of shaped ceramics. It’s a century-old kind of thing, a technical thing that humans have been doing. But since ancient times, a brush was used and hazardous glazing processes can cause disease in workers.
Now, glazing application robots have taken over. These robots can spray the glaze with three times the efficiency of humans with 100% uniformity rate. It’s just one of the many, many examples on the shop floor in heavy manufacturing. Now robots are taking over what humans used to do. And robots and humans work together to make this safer for humans and at the same time produce better products for consumers. So, this is the kind of exciting thing that I’m seeing how AI brings benefits, tangible benefits to the society, to human beings.
Laurel: That’s a really interesting kind of shift into this next topic, which is how do we then talk about, as you mentioned, being responsible and having ethical AI, especially when we’re discussing making people’s jobs better, safer, more consistent? And then how does this also play into responsible technology in general and how we’re looking at the entire field?
Lan: Yeah, that’s a super hot topic. Okay, I would say as an AI practitioner, responsible AI has always been at the top of the mind for us. But think about the recent advancement in generative AI. I think this topic is becoming even more urgent. So, while technical advancements in AI are very impressive like many examples I’ve been talking about, I think responsible AI is not purely a technical pursuit. It’s also about how we use it, how each of us uses it as a consumer, as a business leader.
So at Accenture, our teams strive to design, build, and deploy AI in a manner that empowers employees and business and fairly impacts customers and society. I think that responsible AI not only applies to us but is also at the core of how we help clients innovate. As they look to scale their use of AI, they want to be confident that their systems are going to perform reliably and as expected. Part of building that confidence, I believe, is ensuring they have taken steps to avoid unintended consequences. That means making sure that there’s no bias in their data and models and that the data science team has the right skills and processes in place to produce more responsible outputs. Plus, we also make sure that there are governance structures for where and how AI is applied, especially when AI systems are using decision-making that affects people’s life. So, there are many, many examples of that.
And I think given the recent excitement around generative AI, this topic becomes even more important, right? What we are seeing in the industry is this is becoming one of the first questions that our clients ask us to help them get generative AI ready. And simply because there are newer risks, newer limitations being introduced because of the generative AI in addition to some of the known or existing limitations in the past when we talk about predictive or prescriptive AI. For example, misinformation. Your AI could, in this case, be producing very accurate results, but if the information generated or content generated by AI is not aligned to human values, is not aligned to your company core values, then I don’t think it’s working, right? It could be a very accurate model, but we also need to pay attention to potential misinformation, misalignment. That’s one example.
Second example is language toxicity. Again, in the traditional or existing AI’s case, when AI is not producing content, language of toxicity is less of an issue. But now this is becoming something that is top of mind for many business leaders, which means responsible AI also needs to cover this new set of a risk, potential limitations to address language toxicity. So those are the couple thoughts I have on the responsible AI.
Laurel: And Julie, you discussed how robots and humans can work together. So how do you think about changing the perception of the fields? How can ethical AI and even governance help researchers and not hinder them with all this great new technology?
Julie: Yeah. I fully agree with Lan’s comments here and have spent quite a fair amount of effort over the past few years on this topic. I recently spent three years as an associate dean at MIT, building out our new cross-disciplinary program and social and ethical responsibilities of computing. This is a program that has involved very deeply, nearly 10% of the faculty researchers at MIT, not just technologists, but social scientists, humanists, those from the business school. And what I’ve taken away is, first of all, there’s no codified process or rule book or design guidance on how to anticipate all of the currently unknown unknowns. There’s no world in which a technologist or an engineer sits on their own or discusses or aims to envision possible futures with those within the same disciplinary background or other sort of homogeneity in background and is able to foresee the implications for other groups and the broader implications of these technologies.
The first question is, what are the right questions to ask? And then the second question is, who has methods and insights to be able to bring to bear on this across disciplines? And that’s what we’ve aimed to pioneer at MIT, is to really bring this sort of embedded approach to drawing in the scholarship and insight from those in other fields in academia and those from outside of academia and bring that into our practice in engineering new technologies.
And just to give you a concrete example of how hard it is to even just determine whether you’re asking the right question, for the technologies that we develop in my lab, we believed for many years that the right question was, how do we develop and shape technologies so that it augments rather than replaces? And that’s been the public discourse about robots and AI taking people’s jobs. “What’s going to happen 10 years from now? What’s happening today?” with well-respected studies put out a few years ago that for every one robot you introduced into a community, that community loses up to six jobs.
So, what I learned through deep engagement with scholars from other disciplines here at MIT as a part of the Work of the Future task force is that that’s actually not the right question. So as it turns out, you just take manufacturing as an example because there’s very good data there. In manufacturing broadly, only one in 10 firms have a single robot, and that’s including the very large firms that make high use of robots like automotive and other fields. And then when you look at small and medium firms, those are 500 or fewer employees, there’s essentially no robots anywhere. And there’s significant challenges in upgrading technology, bringing the latest technologies into these firms. These firms represent 98% of all manufacturers in the US and are coming up on 40% to 50% of the manufacturing workforce in the U.S. There’s good data that the lagging, technological upgrading of these firms is a very serious competitiveness issue for these firms.
And so what I learned through this deep collaboration with colleagues from other disciplines at MIT and elsewhere is that the question isn’t “How do we address the problem we’re creating about robots or AI taking people’s jobs?” but “Are robots and the technologies we’re developing actually doing the job that we need them to do and why are they actually not useful in these settings?”. And you have these really exciting case stories of the few cases where these firms are able to bring in, implement and scale these technologies. They see a whole host of benefits. They don’t lose jobs, they are able to take on more work, they’re able to bring on more workers, those workers have higher wages, the firm is more productive. So how do you realize this sort of win-win-win situation and why is it that so few firms are able to achieve that win-win-win situation?
There’s many different factors. There’s organizational and policy factors, but there are actually technological factors as well that we now are really laser focused on in the lab in aiming to address how you enable those with the domain expertise, but not necessarily engineering or robotics or programming expertise to be able to program the system, program the task rather than program the robot. It’s a humbling experience for me to believe I was asking the right questions and engaging in this research and really understand that the world is a much more nuanced and complex place and we’re able to understand that much better through these collaborations across disciplines. And that comes back to directly shape the work we do and the impact we have on society.
And so we have a really exciting program at MIT training the next generation of engineers to be able to communicate across disciplines in this way and the future generations will be much better off for it than the training those of us engineers have received in the past.
Lan: Yeah, I think Julie you brought such a great point, right? I think it resonated so well with me. I don’t think this is something that you only see in academia’s kind of setting, right? I think this is exactly the kind of change I’m seeing in industry too. I think how the different roles within the artificial intelligence space come together and then work in a highly collaborative kind of way around this kind of amazing technology, this is something that I’ll admit I’d never seen before. I think in the past, AI seemed to be perceived as something that only a small group of deep researchers or deep scientists would be able to do, almost like, “Oh, that’s something that they do in the lab.” I think that’s kind of a lot of the perception from my clients. That’s why in order to scale AI in enterprise settings has been a huge challenge.
I think with the recent advancement in foundational models, large language models, all these pre-trained models that large tech companies have been building, and obviously academic institutions are a huge part of this, I’m seeing more open innovation, a more open collaborative kind of way of working in the enterprise setting too. I love what you described earlier. It’s a multi-disciplinary kind of thing, right? It’s not like AI, you go to computer science, you get an advanced degree, then that’s the only path to do AI. What we are seeing also in business setting is people, leaders with multiple backgrounds, multiple disciplines within the organization come together is computer scientists, is AI engineers, is social scientists or even behavioral scientists who are really, really good at defining different kinds of experimentation to play with this kind of AI in early-stage statisticians. Because at the end of the day, it’s about probability theory, economists, and of course also engineers.
So even within a company setting in the industries, we are seeing a more open kind of attitude for everyone to come together to be around this kind of amazing technology to all contribute. We always talk about a hub and spoke model. I actually think that this is happening, and everybody is getting excited about technology, rolling up their sleeves and bringing their different backgrounds and skill sets to all contribute to this. And I think this is a critical change, a culture shift that we have seen in the business setting. That’s why I am so optimistic about this positive sum game that we talked about earlier, which is the ultimate impact of the technology.
Laurel: That’s a really great point. Julie, Lan mentioned it earlier, but also this access for everyone to some of these technologies like generative AI and AI chatbots can help everyone build new ideas and explore and experiment. But how does it really help researchers build and adopt those kinds of emerging AI technologies that everyone’s keeping a close eye on the horizon?
Julie: Yeah. Yeah. So, talking about generative AI, for the past 10 or 15 years, every single year I thought I was working in the most exciting time possible in this field. And then it just happens again. For me the really interesting aspect, or one of the really interesting aspects, of generative AI and GPT and ChatGPT is, one, as you mentioned, it’s really in the hands of the public to be able to interact with it and envision multitude of ways it could potentially be useful. But from the work we’ve been doing in what we call positive-sum automation, that’s around these sectors where performance matters a lot, reliability matters a lot. You think about manufacturing, you think about aerospace, you think about healthcare. The introduction of automation, AI, robotics has indexed on that and at the cost of flexibility. And so a part of our research agenda is aiming to achieve the best of both those worlds.
The generative capability is very interesting to me because it’s another point in this space of high performance versus flexibility. This is a capability that is very, very flexible. That’s the idea of training these foundation models and everybody can get a direct sense of that from interacting with it and playing with it. This is not a scenario anymore where we’re very carefully crafting the system to perform at very high capability on very, very specific tasks. It’s very flexible in the tasks you can envision making use of it for. And that’s game changing for AI, but on the flip side of that, the failure modes of the system are very difficult to predict.
So, for high stakes applications, you’re never really developing the capability of doing some specific task in isolation. You’re thinking from a systems perspective and how you bring the relative strengths and weaknesses of different components together for overall performance. The way you need to architect this capability within a system is very different than other forms of AI or robotics or automation because you have a capability that’s very flexible now, but also unpredictable in how it will perform. And so you need to design the rest of the system around that, or you need to carve out the aspects or tasks where failure in particular modes are not critical.
So chatbots for example, by and large, for many of their uses, they can be very helpful in driving engagement and that’s of great benefit for some products or some organizations. But being able to layer in this technology with other AI technologies that don’t have these particular failure modes and layer them in with human oversight and supervision and engagement becomes really important. So how you architect the overall system with this new technology, with these very different characteristics I think is very exciting and very new. And even on the research side, we’re just scratching the surface on how to do that. There’s a lot of room for a study of best practices here particularly in these more high stakes application areas.
Lan: I think Julie makes such a great point that’s super resonating with me. I think, again, always I’m just seeing the exact same thing. I love the couple keywords that she was using, flexibility, positive-sum automation. I think there are two colors I want to add there. I think on the flexibility frame, I think this is exactly what we are seeing. Flexibility through specialization, right? Used with the power of generative AI. I think another term that came to my mind is this resilience, okay? So now AI becomes more specialized, right? AI and humans actually become more specialized. And so that we can both focus on things, little skills or roles, that we’re the best at.
In Accenture, we just recently published our point of view, “A new era of generative AI for everybody.” Within the point of view, we laid out this, what I call the ACCAP framework. It basically addresses, I think, similar points that Julie was talking about. So basically advice, create, code, and then automate, and then protect. If you link all these five, the first letter of these five words together is what I call the ACCAP framework (so that I can remember those five things). But I think this is how different ways we are seeing how AI and humans working together manifest this kind of collaboration in different ways.
For example, advising, it’s pretty obvious with generative AI capabilities. I think the chatbot example that Julie was talking about earlier. Now imagine every role, every knowledge worker’s role in an organization will have this co-pilot, running behind the scenes. In a contact center’s case it could be, okay, now you’re getting this generative AI doing auto summarization of the agent calls with customers at the end of the calls. So the agent doesn’t have to be spending time and doing this manually. And then customers will get happier because customer sentiment will get better detected by generative AI, creating obviously the numerous, even consumer-centric kind of cases around how human creativity is getting unleashed.
And there’s also business examples in marketing, in hyper-personalization, how this kind of creativity by AI is being best utilized. I think automating—again, we’ve been talking about robotics, right? So again, how robots and humans work together to take over some of these mundane tasks. But even in generative AI’s case is not even just the blue-collar kind of jobs, more mundane tasks, also looking into more mundane routine tasks in knowledge worker spaces. I think those are the couple examples that I have in mind when I think of the word flexibility through specialization.
And by doing so, new roles are going to get created. From our perspective, we’ve been focusing on prompt engineering as a new discipline within the AI space—AI ethics specialist. We also believe that this role is going to take off very quickly simply because of the responsible AI topics that we just talked about.
And also because all this business processes have become more efficient, more optimized, we believe that new demand, not just the new roles, each company, regardless of what industries you are in, if you become very good at mastering, harnessing the power of this kind of AI, the new demand is going to create it. Because now your products are getting better, you are able to provide a better experience to your customer, your pricing is going to get optimized. So I think bringing this together is, which is my second point, this will bring positive sum to the society in economics kind of terms where we’re talking about this. Now you’re pushing out the production possibility frontier for the society as a whole.
So, I’m very optimistic about all these amazing aspects of flexibility, resilience, specialization, and also generating more economic profit, economic growth for the society aspect of AI. As long as we walk into this with eyes wide open so that we understand some of the existing limitations, I’m sure we can do both of them.
Laurel: And Julie, Lan just laid out this fantastic, really a correlation of generative AI as well as what’s possible in the future. What are you thinking about artificial intelligence and the opportunities in the next three to five years?
Julie: Yeah. Yeah. So, I think Lan and I are very largely on the same page on just about all of these topics, which is really great to hear from the academic and the industry side. Sometimes it can feel as though the emergence of these technologies is just going to sort of steamroll and work and jobs are going to change in some predetermined way because the technology now exists. But we know from the research that the data doesn’t bear that out actually. There’s many, many decisions you make in how you design, implement, and deploy, and even make the business case for these technologies that can really sort of change the course of what you see in the world because of them. And for me, I really think a lot about this question of what’s called lights out in manufacturing, like lights out operation where there’s this idea that with the advances and all these capabilities, you would aim to be able to run everything without people at all. So, you don’t need lights on for the people.
And again, as a part of the Work of the Future task force and the research that we’ve done visiting companies, manufacturers, OEMs, suppliers, large international or multinational firms as well as small and medium firms across the world, the research team asked this question of, “So these high performers that are adopting new technologies and doing well with it, where is all this headed? Is this headed towards a lights out factory for you?” And there were a variety of answers. So some people did say, “Yes, we’re aiming for a lights out factory,” but actually many said no, that that was not the end goal. And one of the quotes, one of the interviewees stopped while giving a tour and turned around and said, “A lights out factory. Why would I want a lights out factory? A factory without people is a factory that’s not innovating.”
I think that’s the core for me, the core point of this. When we deploy robots, are we caging and sort of locking the people out of that process? When we deploy AI, is essentially the infrastructure and data curation process so intensive that it really locks out the ability for a domain expert to come in and understand the process and be able to engage and innovate? And so for me, I think the most exciting research directions are the ones that enable us to pursue this sort of human-centered approach to adoption and deployment of the technology and that enable people to drive this innovation process. So a factory, there’s a well-defined productivity curve. You don’t get your assembly process when you start. That’s true in any job or any field. You never get it exactly right or you optimize it to start, but it’s a very human process to improve. And how do we develop these technologies such that we’re maximally leveraging our human capability to innovate and improve how we do our work?
My view is that by and large, the technologies we have today are really not designed to support that and they really impede that process in a number of different ways. But you do see increasing investment and exciting capabilities in which you can engage people in this human-centered process and see all the benefits from that. And so for me, on the technology side and shaping and developing new technologies, I’m most excited about the technologies that enable that capability.
Laurel: Excellent. Julie and Lan, thank you so much for joining us today on what’s been a really fantastic episode of The Business Lab.
Julie: Thank you so much for having us.
Lan: Thank you.
Laurel: That was Lan Guan of Accenture and Julie Shah of MIT who I spoke with from Cambridge, Massachusetts, the home of MIT and MIT Technology Review overlooking the Charles River.
That’s it for this episode of Business Lab. I’m your host, Laurel Ruma. I’m the director of Insights, the custom publishing division of MIT Technology Review. We were founded in 1899 at the Massachusetts Institute of Technology. You can find us in print, on the web, and at events each year around the world. For more information about us and the show, please check out our website at technologyreview.com.
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