iPhone Moment For AI Has Happened | Arvind Mathur | AWS | Simulted Reality | AIM TV
Zusammenfassung
TLDRThe episode explores the advancements in generative AI and its transformative potential in various industries. The discussion compares generative AI's rise to the advent of smartphones, emphasizing its consumerization before corporatization. Leaders are advised to support employees in leveraging AI and dispel fears regarding job security. The conversation addresses misconceptions related to data privacy and AI costs. Significant opportunities for AI in education and healthcare are also highlighted, predicting substantial improvements in personalized learning and patient care over the next decade.
Mitbringsel
- 📱 Generative AI is compared to the iPhone moment, highlighting its rapid consumer acceptance.
- ⚙️ Organizations need to integrate AI thoughtfully into their operations for maximum benefit.
- 💼 Leaders should empower employees to leverage AI for growth rather than fear job loss.
- 🔍 Misconceptions about AI include concerns over data privacy and cost-effectiveness.
- 📈 AI has the potential to revolutionize education by offering personalized learning experiences.
- 🏥 In healthcare, AI can lead to earlier disease detection and improved patient outcomes.
Zeitleiste
- 00:00:00 - 00:05:00
The emergence of generative AI is compared to the iPhone moment, highlighting how it has rapidly become integral in both personal and business contexts. The speaker emphasizes the shift from corporate to consumer use, with a call for organizations to adopt this technology.
- 00:05:00 - 00:10:00
Generative AI, akin to the internal combustion engine, needs a supportive environment including proper use cases and implementation strategies to be effective. Leaders are encouraged to think of the technology as just one part of a larger 'vehicle' that must be designed for specific purposes.
- 00:10:00 - 00:15:00
Corporate leaders are urged to empower employees to embrace generative AI as a tool that enhances career growth rather than a threat to job security. By leveraging existing experiences with AI, employees can find new opportunities within their roles, transforming traditional jobs into new positions within the evolving tech landscape.
- 00:15:00 - 00:20:00
Concerns about job displacement are common, especially among junior employees. However, the speaker argues that while generative AI may reduce the number of developers needed, the overall demand for software will significantly increase, presenting new job opportunities in the long run.
- 00:20:00 - 00:26:31
Myths about AI, including fears of data theft and high costs, often stem from misunderstandings about the technology's design and application. Leaders should recognize AI as a tool that, when used correctly, enhances efficiency rather than posing inherent risks.
Mind Map
Video-Fragen und Antworten
What significant changes have occurred in AI recently?
Generative AI has become popular across various demographics, making it an essential topic in businesses, similar to the iPhone's impact.
How can organizations effectively implement generative AI?
Organizations should focus on understanding the purpose of AI and tailor its use to specific business needs, while also considering the supporting structures required.
What common misconceptions about AI should industry leaders be aware of?
Common misconceptions include the belief that AI steals data and that it is too expensive.
How can corporate leaders empower employees with generative AI?
Leaders should encourage curiosity and experimentation with AI, highlighting its potential benefits for career growth.
Will AI lead to job displacement?
While there may be fewer jobs needed per unit of code, the overall demand for software will likely increase.
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- 00:00:00with generative ai ai has been
- 00:00:04consumerized before it's been certied I
- 00:00:06call it the iPhone moment for AI has
- 00:00:09happened how and in which ways can
- 00:00:11organizations go about implementing it
- 00:00:14what has happened with generative AI or
- 00:00:16llms in general is I almost call like
- 00:00:18the invention of something as
- 00:00:20significant as the internal combustion
- 00:00:21engines how can corporate leaders go
- 00:00:23about empowering their employees in the
- 00:00:25best possible way that they are using
- 00:00:27generative AI tools for their work
- 00:00:29generative is just another in a line of
- 00:00:33disruptive technologies that shake up
- 00:00:35how our personalized and our business
- 00:00:38lives
- 00:00:38work as an industry leader yourself have
- 00:00:41you ever heard this from Junior
- 00:00:43employees colleagues that sir is our job
- 00:00:45in danger because of
- 00:00:48AI what are some of the common AI
- 00:00:51misconceptions that industry leaders
- 00:00:53should be aware of
- 00:00:56[Music]
- 00:01:07arvind welcome to this episode of
- 00:01:09simulated Reality by a media house how
- 00:01:11are you how have you been I'm doing
- 00:01:13great exciting to be here in India
- 00:01:15lovely to have you here I want to
- 00:01:17straight away jump to the very first
- 00:01:20question something that I myself have
- 00:01:21had in my mind for quite some time now
- 00:01:24artificial intelligence is not brand new
- 00:01:26it's been there so much so that in the
- 00:01:28'90s Steven Spielberg made a movie
- 00:01:29called artificial intelligence what on
- 00:01:31Earth happened in the last 2 three years
- 00:01:34with AI and with generative AI that it
- 00:01:36is in every which way the talk of the
- 00:01:38top that is such an amazing question I
- 00:01:40think we're all trying to figure this
- 00:01:42out the I think what's really happened
- 00:01:45is that with generative
- 00:01:48ai ai has been
- 00:01:51consumerized before it's been
- 00:01:53corporatized and I explain what that
- 00:01:54means I call it the iPhone moment for AI
- 00:01:57has happened why because if you if you
- 00:02:00go back 10 15 years before smartphones
- 00:02:03were a thing a lot of us in corporate it
- 00:02:06were trying to explain to Business
- 00:02:09Leaders that there's an opportunity to
- 00:02:10create consumer applications and engage
- 00:02:12people Etc it wasn't quite cutting
- 00:02:15through but when the iPhone happened
- 00:02:17suddenly they were using it their kids
- 00:02:18were using it their Grandmom were using
- 00:02:20it they all had this gut feel oh my God
- 00:02:22this is going to change my business and
- 00:02:25they invested in it and built a lot of
- 00:02:27apps and look how the world has changed
- 00:02:29because of that
- 00:02:30and I think same thing was has been
- 00:02:32happening for the last 10 plus years
- 00:02:34before the chat GPD moment happened that
- 00:02:37we were all talking about big data and
- 00:02:39this Ai and that and it was some
- 00:02:42progress was happening but when chat gbd
- 00:02:45dropped again it it consumerized it
- 00:02:48everyone was using it the Business
- 00:02:50Leaders the kids the grand moms and
- 00:02:53again they got this strong sense of in
- 00:02:57their gut that this is going to change
- 00:02:58my business it's going to create
- 00:03:00efficiency it's going to create consumer
- 00:03:02experience improvements it's going to
- 00:03:04create new business models and therefore
- 00:03:06they just want to they want to move
- 00:03:08forward with this everyone gets it you
- 00:03:10don't have to explain it and there is
- 00:03:13therefore this pull and demand for it in
- 00:03:16businesses as well as in our personal
- 00:03:18lives which is just unprecedented this
- 00:03:20is one of those 15 once in a 15 years
- 00:03:22things you mentioned the massive demand
- 00:03:24for it in businesses as well Rising by
- 00:03:27the Year by the month by the fortnite to
- 00:03:29be honest
- 00:03:30how and in which ways can organizations
- 00:03:33go about implementing it in their
- 00:03:35day-to-day culture in their work a day
- 00:03:37culture in the best way
- 00:03:39possible i' I'd like to use a analogy in
- 00:03:42this case to explain I think how we
- 00:03:44should think about about uh generative
- 00:03:48AI what has happened with generative AI
- 00:03:51or llms in general is I almost call like
- 00:03:53the invention of something as
- 00:03:55significant as the internal combustion
- 00:03:57engine so an engine has been in ented
- 00:04:00right and now you don't sit on an engine
- 00:04:03and go somewhere right you need you need
- 00:04:06an engine to have wheels and
- 00:04:08transmission and gearbox and accelerator
- 00:04:11and brakes and Lane assist and rear VI
- 00:04:14mirror all of those
- 00:04:15things so to your question I think what
- 00:04:19what is important to understand is that
- 00:04:21this fabulous new engine has been
- 00:04:24created and the big tech companies are
- 00:04:27investing a lot of money to build better
- 00:04:29and and better and more powerful engines
- 00:04:31but the engine by itself is not
- 00:04:34sufficient and that's why we also see a
- 00:04:36lot of these stories about the kind of
- 00:04:38things going out of control for folks
- 00:04:40because those are examples of people
- 00:04:42just sitting on an engine and trying to
- 00:04:43go somewhere it doesn't quite work that
- 00:04:45way you need the rest of the of the
- 00:04:48environment the chassis and the and the
- 00:04:51and the control systems that create a
- 00:04:54vehicle to to go somewhere another
- 00:04:57aspect of the same analogy is you got to
- 00:04:59be really clear about what are you
- 00:05:00trying to do are you going to commute to
- 00:05:02work or are you taking kids to the game
- 00:05:05or are you trying to transport you know
- 00:05:0850 people uh somewhere the engine that
- 00:05:11you use the kind of chasc that you use
- 00:05:14all of those things have to be fit for
- 00:05:17purpose again one of the challenges we
- 00:05:19see is people are trying to use the same
- 00:05:23kind of engine to do EV all kinds of
- 00:05:27purposes without fully thinking through
- 00:05:29what
- 00:05:30is a use case or the application needs
- 00:05:33uh and therefore what what we end up
- 00:05:35talking a lot with folks is is think
- 00:05:38about the purpose first what are you
- 00:05:40trying to do what engine with what cost
- 00:05:44to Performance to weight ratios are best
- 00:05:48for your situation and and what is the
- 00:05:50rest of the environment that's needed to
- 00:05:52make it work for your situation and
- 00:05:54there'll be all of those there'll be a
- 00:05:57million different kinds of vehicles that
- 00:05:59that can we run with an internal
- 00:06:00combustion engine and all of those have
- 00:06:03to be created over time so so I that's
- 00:06:06the piece which I think we've got to
- 00:06:08figure out Beyond just the excitement
- 00:06:11about the llm itself it's all of the
- 00:06:12other stuff that puts it to use you've
- 00:06:16been in a leading position for multiple
- 00:06:17years now as a leader yourself I want to
- 00:06:20ask you how can corporate leaders go
- 00:06:22about empowering their employees in the
- 00:06:25best possible way that they are using
- 00:06:27generative AI tools for their work but
- 00:06:29without the fear of job displacement see
- 00:06:32the way I think of this and way I
- 00:06:33encourage everyone to think about this
- 00:06:35is generative AI is just another Inner
- 00:06:40Line of disruptive technologies that
- 00:06:43shake up how our personaliz and our
- 00:06:45business lives work right and this is
- 00:06:47not the first one it's not going to be
- 00:06:48the last one there have been quite a few
- 00:06:51the important thing really is to is to
- 00:06:53figure out a way
- 00:06:55to get people to recognize that this
- 00:07:00if they figure out how to use it well
- 00:07:02it's a huge Advantage for them this is
- 00:07:05something that will drive their careers
- 00:07:07forward and create new opportunities for
- 00:07:09them uh but if if
- 00:07:13they but also that this will also create
- 00:07:17disruptions right so in an environment
- 00:07:20like that which one do you want to be do
- 00:07:22you want to be the person who takes
- 00:07:24advantage of something like this and
- 00:07:27uses this as a propellent for their for
- 00:07:29the careers uh and opportunities for
- 00:07:32themselves or not so therefore it's
- 00:07:33important to be curious about this to
- 00:07:37learn about it to experiment with it to
- 00:07:39see what works what doesn't work uh and
- 00:07:42kind of put yourself in a position where
- 00:07:44your previous experience pregenerative
- 00:07:47AI which is the kind of the new thing
- 00:07:49now uh but your experiences before that
- 00:07:52came into the scene becomes why someone
- 00:07:55wants you to be part of the process to
- 00:07:58leverage gentiv in that situation and
- 00:08:00I'll take an example for that one of the
- 00:08:01previous companies I work with uh we
- 00:08:04were it was an insurance company and we
- 00:08:05were transforming a customer service uh
- 00:08:07Center this is pre gen even right uh and
- 00:08:10we had a a customer service center that
- 00:08:13supported calls coming in and we were
- 00:08:16always struggling with that the number
- 00:08:17of calls were far too many we couldn't
- 00:08:19service all of them we were being
- 00:08:20selective what only being able to
- 00:08:22support our biggest
- 00:08:25customers uh and even there we were not
- 00:08:27really serving them in a way that was
- 00:08:29sufficient so we put in an AI capability
- 00:08:32to improve to first of all to help
- 00:08:36answer the simpler questions
- 00:08:37automatically and then for the more
- 00:08:39complex one gives a lot of support to
- 00:08:41the agents so they can answer those
- 00:08:42questions more easily and in situation
- 00:08:45like that it was interesting there were
- 00:08:46there were a group of people who leaned
- 00:08:48into this and said hey I know how to
- 00:08:50train this thing I can help you pick the
- 00:08:54relevant historical data that will help
- 00:08:56train this model to be more effective uh
- 00:08:59and those are the folks who therefore
- 00:09:01got into the center of this they got
- 00:09:03they learned a lot from it and I mean
- 00:09:05there were a few of our customer support
- 00:09:07agents who became chatbot trainers and
- 00:09:11this is not just a onetime thing they
- 00:09:12they were involved on a weekly basis
- 00:09:14analyzing what kind of questions are
- 00:09:16coming in which ones are being answered
- 00:09:18uh early and and in a high quality way
- 00:09:21which ones need more training what data
- 00:09:22can we pull out and that became their
- 00:09:24new career so it was just a great
- 00:09:26example and as Leaders therefore it was
- 00:09:29important for us to even though they
- 00:09:32knew nothing about the AI to say you
- 00:09:35know about the business process we want
- 00:09:37you to learn how AI can make this
- 00:09:40process better rather than bringing
- 00:09:41someone from outside to do this to you
- 00:09:44so we created the those opportunities
- 00:09:46not everyone lean into it but the ones
- 00:09:48that did got a lot of support and
- 00:09:50training and then very importantly and
- 00:09:52my message to leaders is when you do see
- 00:09:55situations like that amplify it make an
- 00:09:58example out of that so we actually went
- 00:10:00we we did newspaper articles about this
- 00:10:03individual who had progressed from being
- 00:10:04a customer support agent to being a
- 00:10:07chatbot trainer and that created this
- 00:10:09energy around this this whole Trend and
- 00:10:11many more people came forward and said
- 00:10:13hey for your next project I want to be
- 00:10:15the one who who plays a role like this
- 00:10:17so I think that's really important for
- 00:10:18leaders to take that position I that was
- 00:10:20a very fascinating story especially
- 00:10:22about the fact where we got to know
- 00:10:24where somebody who has been working for
- 00:10:25so many years then ended up training
- 00:10:27chat Bots themselves great great story I
- 00:10:30want to ask you because there's a
- 00:10:31question that has come to me as well we
- 00:10:33have talked about this question multiple
- 00:10:34times as an industry leader yourself
- 00:10:36have you ever heard this from Junior
- 00:10:38employees colleagues that sir is our job
- 00:10:40in danger because of
- 00:10:43AI it is happening a lot of people are
- 00:10:46having this in their mind even if
- 00:10:47they're not vocalizing it but I want to
- 00:10:49tell you a very personal story on this
- 00:10:50one so my older son is in second year of
- 00:10:54college learning computer science and
- 00:10:56he's a geek he's he's he's trying to get
- 00:10:58into programming
- 00:11:00and we've had more than one occasions
- 00:11:02where he said did I make a mistake going
- 00:11:04into this field because I don't see a
- 00:11:05future for myself ouch right so so here
- 00:11:09is how I think about it okay and there's
- 00:11:12a longer term view to this and there's a
- 00:11:13shorter term view to it the longer the
- 00:11:15the slightly longer term view to this I
- 00:11:17see it is if you think about it software
- 00:11:21development is
- 00:11:22still like an artisanal craft okay every
- 00:11:27piece of software that is created has
- 00:11:29someone's personal energy and thinking
- 00:11:33in it it is like we still making shoes
- 00:11:36by hand is how the software industry
- 00:11:39works the thing which I'm excited about
- 00:11:42is that with generative Ai and coding
- 00:11:46assistants
- 00:11:47Etc this is the opportunity for software
- 00:11:50development to go from an artisanal
- 00:11:52craft to an
- 00:11:54industrialized production model right
- 00:11:58what that will do is that in the short
- 00:12:00in in the immediate term you may think
- 00:12:01oh my God that means massive job losses
- 00:12:04but in there's another dimension this
- 00:12:06which is the unit cost of software will
- 00:12:08go down dramatically and if you look at
- 00:12:11Industries and I've been a CIO for so
- 00:12:12many years the reality is although we
- 00:12:14have a lot of technology in
- 00:12:16organizations I would say 50% of the
- 00:12:18work still happens in Excel and emails
- 00:12:20and slack messages right why is that the
- 00:12:23case is because there is not sufficient
- 00:12:27software actually out there that touches
- 00:12:29all of the business scenarios and cases
- 00:12:32and humans are still intervening and and
- 00:12:34connecting the dots so many places what
- 00:12:38reduced unit cost of software will do is
- 00:12:41lead to an explosion in the demand for
- 00:12:44software because it will be much easier
- 00:12:45to create and even more importantly to
- 00:12:47maintain and modify software to match
- 00:12:50the evolving needs of businesses we are
- 00:12:53not even scratching that surface of that
- 00:12:55of that opportunity so yes the unit cost
- 00:12:58will go down the number of software
- 00:13:00developers needed per million lines of
- 00:13:02code will go down but the number of
- 00:13:04millions and billions of line of code
- 00:13:06that will actually start existing will
- 00:13:09explode and that will create a large
- 00:13:12amount of employment as well I think so
- 00:13:16I think you know it all depends on how
- 00:13:18soon we get to that but there are these
- 00:13:20two opposing forces one that's reducing
- 00:13:22the number of people needed per unit per
- 00:13:24per line of code but the number of lines
- 00:13:27of code are exploding so in the long
- 00:13:29long term I think there is a going to be
- 00:13:30a huge demand for people to run these
- 00:13:33industrialized production shops for
- 00:13:35software and much more software to
- 00:13:38happen so that's what makes me uh very
- 00:13:41very optimistic about this this is about
- 00:13:43software but in other fields as well
- 00:13:45there's a similar CH challenge with
- 00:13:47creative fields and people creating copy
- 00:13:49for
- 00:13:50advertising I think there'll be a lot
- 00:13:52more personalized advertising out there
- 00:13:55so we it remains to be seen how the
- 00:13:57balance of this will be but I feel this
- 00:13:59is just like many other innovations that
- 00:14:01have happened in the past I think for
- 00:14:03Humanity this is a positive force I hope
- 00:14:07that the Elder son was also satisfied
- 00:14:09with the answer no he was not he wasn't
- 00:14:12not at all that's too far out I care
- 00:14:15about the job scene two years from now
- 00:14:17so I nobody can predict that we'll see
- 00:14:19we'll see uh you mentioned the job scene
- 00:14:21uh I want to ask you a question which
- 00:14:23pertains to something that is talked
- 00:14:24about so often and that is performance
- 00:14:27review start starting from your first
- 00:14:29interview to your 10th interview
- 00:14:31performance review is something that is
- 00:14:33talked about I want to ask you as an
- 00:14:34industry leader yourself when industry
- 00:14:36leaders are doing as simp in simple
- 00:14:39words they're doing a performance review
- 00:14:40of their employees in which Best Way can
- 00:14:43this differentiation be done as to how
- 00:14:46much of the performance results were AI
- 00:14:48driven and how much of it was the
- 00:14:50employee herself or himself okay my my
- 00:14:54my thinking on this
- 00:14:56is do you today in your performance
- 00:14:59evaluation say so much of my performance
- 00:15:01was because I had access
- 00:15:04to Office Solutions true or laptops or a
- 00:15:09phone or I had a mobile phone we don't
- 00:15:13right to me AI is just another one of
- 00:15:15those
- 00:15:16tools so I don't think we need to
- 00:15:19separate that out I don't think so what
- 00:15:22matters end of the days at an individual
- 00:15:25level what impact am I making on
- 00:15:27business and the
- 00:15:31smarter folks and the ones who will be
- 00:15:34rewarded more are the ones who figur out
- 00:15:36all of the tools that are available to
- 00:15:37me and make good use of that at the
- 00:15:39right time for the right
- 00:15:41problems so end of the day it's still
- 00:15:43what it boils down to is what impact am
- 00:15:45I making not how much of that was
- 00:15:48because of this tool or that tool this
- 00:15:50just a tool you know what you said
- 00:15:52instantly reminds me of this one quote
- 00:15:54that I read on the first day that I
- 00:15:56joined aim media house in one of the
- 00:15:59desks there's this quote written where
- 00:16:01your job will not be replaced by AI but
- 00:16:05maybe somebody who uses AI better
- 00:16:07absolutely I completely agree with that
- 00:16:10absolutely I want to ask you what are
- 00:16:12some of the common AI misconceptions
- 00:16:15that industry leaders should be aware of
- 00:16:18so and and maybe we'll focus on gen
- 00:16:21because there's a lot of that going
- 00:16:22around right now uh but for example one
- 00:16:25of the biggest ones is that uh that
- 00:16:30somehow this is going to steal your data
- 00:16:32I think that is something which which
- 00:16:34which is a which is a going around a lot
- 00:16:37and and the reality is what I would go
- 00:16:40back to is the conversation we had
- 00:16:41earlier that end of the day this is an
- 00:16:43engine and there's a whole set of other
- 00:16:46supporting environment around that that
- 00:16:48turns it into a usable vehicle right now
- 00:16:53some of those Vehicles would be designed
- 00:16:54in a way that that use that data but
- 00:16:57that's what the chat gpds or the World
- 00:16:59potentially could be right but the
- 00:17:01reality is that that's not an inherent
- 00:17:03feature of all AI it is how you design
- 00:17:06your AI do you design your AI in a way
- 00:17:09that every piece of data it observes and
- 00:17:12is also uses to train itself that's not
- 00:17:15the norm that's the exception right so
- 00:17:18so that's that's one misconception which
- 00:17:20is really holding people back right uh
- 00:17:23if you
- 00:17:24create if you deploy llms in your own
- 00:17:28envir environment and you design that
- 00:17:30environment in the way that it only uses
- 00:17:32that to provide recommendation but does
- 00:17:34not use that to somehow leak information
- 00:17:37then it won't do that right uh and
- 00:17:39therefore you need those uh those kind
- 00:17:42of setups the Bedrock to create your
- 00:17:46solution in a way that doesn't doesn't
- 00:17:49make that possible so that's one which
- 00:17:50is very commonly heard another very
- 00:17:52common Mis uh sort of concern I hear is
- 00:17:55that it's too expensive right and the
- 00:17:58reason why that that happens is because
- 00:18:00again we end up using the wrong engine
- 00:18:03in the wrong car it is like putting the
- 00:18:04engine for a truck in a small sports car
- 00:18:08it doesn't fit of course it'll consume
- 00:18:10too much fuel because you're just using
- 00:18:13something uh that's not fit for purpose
- 00:18:17so with llms there are so many llms now
- 00:18:20with very different price performance
- 00:18:22ratio equations so if you're trying to
- 00:18:24do document summarization don't use the
- 00:18:27most complex and EXP expensive uh llm
- 00:18:30use one that is very lightweight and all
- 00:18:34you need is the linguistic capabilities
- 00:18:37not the inherent knowledge of the llm
- 00:18:39right so those are some examples couple
- 00:18:41of of of them which these are the two
- 00:18:43biggest ones I come across all the time
- 00:18:46you know uh in the last few days and
- 00:18:49weeks I've got the chance to speak to a
- 00:18:51lot of Industry leaders so many of them
- 00:18:54working at AWS itself uh a couple of
- 00:18:57days back itself in Bangalore I was
- 00:18:58talking to your colleague at AWS ishit
- 00:19:00yeah and we got to talking about a lot
- 00:19:03of the very very fascinating stuff
- 00:19:05fascinating work fascinating projects
- 00:19:07that is going on hand inhand with AWS
- 00:19:10and gen and other companies one of them
- 00:19:12being F1 the latest car so you have had
- 00:19:15about uh 9 months at AWS up until now so
- 00:19:19if you can talk about some of those
- 00:19:20really exciting projects that you've got
- 00:19:21to know and some that are lined up as
- 00:19:23well so uh I I I talked about the fact
- 00:19:27that I spent some time in in Insurance
- 00:19:29in the
- 00:19:30past uh so I'll talk about that story we
- 00:19:32were trying to to transform the whole
- 00:19:34claims process and historically the way
- 00:19:36it was done was you get these hospital
- 00:19:38bills some people type it in then some
- 00:19:42then a claims assessor figures out
- 00:19:43whether this is payable or not six seven
- 00:19:45years ago I I did this project to
- 00:19:48transform that whole process and use
- 00:19:51what you would call traditional AI to do
- 00:19:53that okay OCR and uh models uh which
- 00:19:57were doing mathematical statistical
- 00:20:00models
- 00:20:01mostly it was so difficult to do that at
- 00:20:04that point in time because OCR needed to
- 00:20:07be exactly designed for different
- 00:20:10hospital builds and even a small place
- 00:20:12like Singapore with relatively limited
- 00:20:14number of hospitals we ran into hundreds
- 00:20:16and probably thousands of different
- 00:20:18templates that had to be maintained all
- 00:20:19the time now with Gen we now working
- 00:20:22with some insurance companies where
- 00:20:24there's no need for a templatized
- 00:20:25approach you take any hospital bill and
- 00:20:28it can extract the relevant information
- 00:20:31from them so this just a very simple
- 00:20:33example of how things have improved
- 00:20:35dramatically now with gen versus the
- 00:20:38earlier ways we used to do these things
- 00:20:40I mean I can just think of the top of my
- 00:20:41head all the information that is that
- 00:20:44gen is taking from that one hospital
- 00:20:46bill and then converting it into Data
- 00:20:48makes the followup meetings with the
- 00:20:51doctors and the follow-up appointments
- 00:20:52at the hospital is just so much easier
- 00:20:53for the people dramatically easier
- 00:20:55absolutely and the decision- making
- 00:20:57process you can figure out which
- 00:20:58hospital was this from what was the
- 00:21:00diagnosis what treatment was done and
- 00:21:02then you can provide that that
- 00:21:04structured data to other models that
- 00:21:07figure out whether this is a payable uh
- 00:21:10uh sickness is a treatment covered is
- 00:21:14there any exception Etc so it makes
- 00:21:16Downstream processing so much easier now
- 00:21:19with uh with this Arin before we almost
- 00:21:22towards the end of the podcast before we
- 00:21:23end I want to ask you one question that
- 00:21:25is pretty similar to the first question
- 00:21:28that I ask you that was about what has
- 00:21:30happened in the last 2 three years how
- 00:21:32did this happen but now I want to ask
- 00:21:34you say if you want to look at the
- 00:21:36future not very distant future slightly
- 00:21:38near future the next half a decade the
- 00:21:40next decade what roles what do you think
- 00:21:43is possible how much can happen when it
- 00:21:45comes to generative AI in the workplace
- 00:21:48you you really called the next decade
- 00:21:49short-term future half a decade half a
- 00:21:53deade okay good see we we talked about
- 00:21:56that this is the the iPhone moment for
- 00:21:59AI right now think about that over the
- 00:22:02years over the decade since iPhone came
- 00:22:04out how has this changed our lives right
- 00:22:07today you you connect with your friends
- 00:22:10and family on the smartphone you order
- 00:22:13your food you learn you um you know plan
- 00:22:18your holidays everything it's changed
- 00:22:21our lives we could not even imagine all
- 00:22:23of that stuff when the phone was
- 00:22:26launched right I think that's kind of
- 00:22:28what will happen over the next half a
- 00:22:29decade or decade like you ask me we
- 00:22:32cannot even imagine right now but here
- 00:22:33are a few things that that excite me
- 00:22:35I'll take two which absolutely blow my
- 00:22:38mind the first one is in the yeara of
- 00:22:40Education okay I'm sure you will have
- 00:22:43you will remember that teacher from your
- 00:22:45fifth grade or seventh grade who was
- 00:22:47really special who took an interest in
- 00:22:49you understood you gave you exactly the
- 00:22:52the stuff that that made a difference to
- 00:22:54your learning and interest in that
- 00:22:55subject and that's why you love whatever
- 00:22:57that subject was math or
- 00:22:59right but it's very rare why is it so
- 00:23:02rare because education is a scale
- 00:23:06problem right there are great teachers
- 00:23:08but none of them have the capacity to
- 00:23:10understand every student at that level
- 00:23:12of granularity it just sometimes the
- 00:23:14chemistry happens and that happens it's
- 00:23:16special with Gen and the wayi is
- 00:23:20developing I think every teacher can be
- 00:23:23like that special teacher for you why
- 00:23:27because through data and through
- 00:23:29extraction of this understanding they'll
- 00:23:32every teacher will be able to understand
- 00:23:34what your special interests are what
- 00:23:37your talents are what little nudges and
- 00:23:40training input you need to develop in
- 00:23:44that particular area imagine how that
- 00:23:47will change the lives of students who
- 00:23:49entering the education system now this
- 00:23:51is a very special point I predict that
- 00:23:55students kids who are entering the
- 00:23:57system now will have a completely
- 00:23:59different experience every teacher every
- 00:24:02subject every grade they will have that
- 00:24:04special experience and I believe that
- 00:24:08human potential will completely
- 00:24:09transform because people will be able to
- 00:24:12go in the direction that they're really
- 00:24:14good at where their natural abilities
- 00:24:17are and they will have all of the
- 00:24:19support and nourish nourishment that
- 00:24:22that's needed to develop into the areas
- 00:24:24that they're they're specially inclined
- 00:24:25towards I think that's that's one area
- 00:24:28which completely blows my mind right
- 00:24:30another one is Healthcare yeah right
- 00:24:32which we kind of touched on earlier as
- 00:24:34well imagine today same challenge right
- 00:24:36doctors just don't have the capacity to
- 00:24:39understand all of the Dynamics and all
- 00:24:40the history of every patient and they're
- 00:24:42trying to see patient every 2 minutes so
- 00:24:45if the doctor can very quickly
- 00:24:48understand all of the history and be in
- 00:24:50touch with every piece of research that
- 00:24:52is coming out and be able to recommend
- 00:24:55the right thing based on the latest
- 00:24:57research for every
- 00:25:00individual patient imagine the impact
- 00:25:03this will have on Healthcare right so
- 00:25:05two examples I think in the next 5 years
- 00:25:07for sure 10 years
- 00:25:10guaranteed Healthcare and education will
- 00:25:12be a totally different space I mean it's
- 00:25:13great that this is the second time that
- 00:25:14you mentioned Healthcare I just want to
- 00:25:16mention this one thing I was talking to
- 00:25:18doctors very senior doctors from as at
- 00:25:20the global partnership on artificial
- 00:25:21intelligence in Delhi earlier this year
- 00:25:24and they were showing us models and they
- 00:25:26were showing us uh products that they
- 00:25:27have created
- 00:25:28where with the help of AI they are being
- 00:25:31able to detect breast cancer at the
- 00:25:33earliest of stages and they said the
- 00:25:35earlier the detection the better the
- 00:25:37chances of cure and they're doing that
- 00:25:39in other forms of cancer as well right
- 00:25:40now so yes healthare and and we can go
- 00:25:43down this in a lot of uh drug research
- 00:25:46is being improved uh patient histories
- 00:25:49are being improved preventive healthare
- 00:25:52is being improved so across the entire
- 00:25:54spectrum of healthare I think this just
- 00:25:56incredible opportunity incredible
- 00:25:58opportunity indeed AWS themselves doing
- 00:26:01such pathbreaking work in so many of
- 00:26:02these industries Arin it was an absolute
- 00:26:05absolute pleasure to talk to you today
- 00:26:07to get your time thank you so much how
- 00:26:09was the podcast for you wonderful
- 00:26:10chatting with you thank you thank you so
- 00:26:12much Arin guys do leave in the comments
- 00:26:15how did you like this podcast episode of
- 00:26:17simulated Reality by a media house this
- 00:26:19is me your friend korak see you in the
- 00:26:21next one
- 00:26:25[Music]
- Generative AI
- AI Implementation
- Job Displacement
- Misconceptions
- Corporate Leaders
- Education
- Healthcare
- Technology
- Employee Empowerment
- AI Benefits