Amir Berman on Making Construction Smarter with AI and Analytics
In this episode, host Frank La Vigne is joined by Amir Berman, VP of Industry Transformation at Buildots, to explore how AI, computer vision, and cutting-edge analytics are revolutionizing the construction industry. Forget everything you thought you knew about dusty blueprints and endless delays—Amir shares how technology is helping build smarter, safer, and more efficient job sites. From real-time progress tracking with 360° cameras to predictive analytics that keep billion-dollar projects on schedule, this conversation uncovers how digital transformation is reshaping one of the world’s oldest industries. Whether you’re a tech fanatic, data enthusiast, or just curious about how skyscrapers go from chaos to code, this episode builds a compelling case for the power of AI in construction. Grab your virtual safety goggles—let’s get hands-on with the future of building.
Links
Timestamps
00:00 Construction’s Digital Transformation Insights
09:15 Tech Vendors: Respect Contractors’ Limits
14:23 “Technology Enhances Construction Oversight”
17:03 “Rewiring Minds: Tech Enhances Performance”
27:25 Predictive Analytics Exposes Construction Delays
28:19 Proactive Problem-Solving in Construction
38:31 Tech-Enhanced Workforce Retention Strategy
40:28 AI for Pipeline Problem Mitigation
45:14 “From Flash to Data Analytics”
52:24 The Innovator’s Dilemma Explained
54:56 Embracing AI After Windows Mobile Flop
01:00:29 “Smart Construction with Computer Vision”
Transcript
Welcome to another episode of Data Driven where we put the hard hat on
Speaker:data and get our hands digitally dirty. Today, Frank
Speaker:dives into the world of construction. Yes, actual buildings with
Speaker:Amir Berman, VP of industry transformation at
Speaker:Builderts. If you thought construction was all bricks and
Speaker:backaches, think again. Amir reveals how computer vision
Speaker:and data analytics are transforming job sites from chaos to
Speaker:code. Think. Fewer delays, more precision, and slightly less
Speaker:swearing at blueprints. So grab your virtual safety
Speaker:goggles because this episode builds a strong case for AI in
Speaker:hard hats.
Speaker:Hello, and welcome back to Data Driven, the podcast where we
Speaker:explore the emergent fields of data science, artificial
Speaker:intelligence, and of course, without data engineering, really not going
Speaker:to get very far. And speaking of data
Speaker:engineering, my favorite data engineer is not able to make the call today,
Speaker:but we've already scheduled this poor guest a couple of times and I don't want
Speaker:to push it back another time. So it's just going to be me
Speaker:today welcoming Amir Berman,
Speaker:VP of industry transformation at Bill Dots. And
Speaker:this is going to be really cool because it's really about. He has
Speaker:a passion for digitally transforming the
Speaker:construction industry. Now, I know the term digital transformation has
Speaker:probably left a bad taste in some people's mouth, but I think there's real opportunities
Speaker:in the construction space to leverage
Speaker:tools from as mundane as predictive maintenance all
Speaker:the way to fancy computer vision stuff.
Speaker:Welcome to the show, Amir. Thank you. Thanks for having me.
Speaker:Cool. And if you, you know, we're going casual today. If you're
Speaker:watching this on video, we're both kind of in. One's in a black shirt, one's
Speaker:in a gray shirt. And I kind of joked, like, too bad this isn't like
Speaker:a hacker call. Like, you know, gray hat, black hat, Andy
Speaker:could show up with the white hat. But. But I digress.
Speaker:So I remember seeing a video
Speaker:from, like, build:Speaker:at Microsoft, big Microsoft conference, where they showed a construction site in
Speaker:computer vision where it basically said, you know, hey, where's the
Speaker:jackhammer? Oh, jackhammer's here and it's in a dangerous position.
Speaker:It's about to fall down. Or Tommy picks up
Speaker:the jackhammer and he's not authorized to do it. It'll send an alert to the
Speaker:construction manager and it actually sends an SMS and it becomes this
Speaker:whole chat thing. Keep in mind, this is pre, like, chatgpt big
Speaker:bang moment. Tell me, how far away is that
Speaker:vision? You're nodding along, so you may have seen
Speaker:this demo. So how far away is the vision of
Speaker:a smart construction site? I would say it's pretty
Speaker:close because we're practically there. Like you know, for some
Speaker:of the audience, I'm pretty sure it's gonna sound like a sci fi
Speaker:movie. But bear in mind that
Speaker:for once, construction is probably one of the biggest and the
Speaker:wealthiest industries out there. I mean if there's like a cool
Speaker:tech out there, you've got to be sure that it's being used
Speaker:or has been used in this industry. Like personally, I remember
Speaker:I've been dealing with augmented reality for
Speaker:construction sites back in:Speaker:so even then. And we were not alone. I mean we were like a few
Speaker:startups back in, back in:Speaker:I want to say:Speaker:augmented reality apps for the job site and
Speaker:practically Microsoft was one of our design partners back then
Speaker:randomly. So if
Speaker:it's, if it's sci fi or if it's like today.
Speaker:So it is pretty much like the, the present
Speaker:I would say. But I also, but I also think though, like construction
Speaker:sites I think are also the ultimate kind of
Speaker:test bed for technology. Right. Like you, you're in
Speaker:these if you have to wear a hard hat.
Speaker:Clearly, clearly it's a, it's a rugged, you have to have a ruggedized
Speaker:equipment. You have to have, it has to be reliable. Right. Because
Speaker:if, if the system goes down. Right. You have an entire crew of people that
Speaker:are billing but not working. Yes.
Speaker:So it has to work. Right. So like that's always, I think has that been
Speaker:a tension between like, you know, we have this augmented
Speaker:reality technology and I understand, I remember seeing the demos too.
Speaker:We're probably have seen a lot of the same kind of marketing
Speaker:material. Right. Where you know, you put on the headset and like this is where
Speaker:the pipes are going to go and this is where the wall's going to go.
Speaker:So you know, whoever's on site saying like, oh well you know, we need to
Speaker:adjust this, how do we adjust this? But I also
Speaker:know like, you know, it's always cool to
Speaker:have the new gadget, but that gadget has to work. And it seems like
Speaker:construction could be a high pressure environment.
Speaker:Yeah. Now whenever we talk about construction, I mean
Speaker:people have like tons of different kind of examples running through their head.
Speaker:Anything like I've buil a shed. Like
Speaker:personally I can guarantee you that I've not built a shed
Speaker:that's not in my sweet spot. But whenever we talk about,
Speaker:you know, construction. So people have those all sorts of different examples.
Speaker:It start by building a shed or like we renovated our house
Speaker:or you know, three stories high kind of building
Speaker:somewhere downtown, all the way to 40 story
Speaker:high, you know, hotel, you know, let's say Austin or
Speaker:a data center which is like, I know 2 million square foot or an oil
Speaker:rig. Construction is pretty, pretty vast. So
Speaker:the cool thing about construction is that the cost
Speaker:of running a construction operation is so high, it's like
Speaker:ridiculously high. People don't get it like how prices like construction,
Speaker:especially like the major projects and at the same time these
Speaker:guys and these companies are running like razor thin margins, you
Speaker:know, would you, do you want to take a guess? Like what's the margin on
Speaker:construction project? I guess it would
Speaker:depend on who it is. If it's the real estate developer versus
Speaker:the contractor that's pouring concrete versus the guy that's doing the electrical
Speaker:or the girl that's doing the plumbing. But I would say, I would say
Speaker:probably on a low end, probably like maybe 2%, 1%.
Speaker:You're freakishly kind of accurate. I would say like if you're a
Speaker:contractor, like a top tier contractor that does like you know, a major
Speaker:construction, you're looking at single digits. It really depends on the
Speaker:continent, like in the States versus like Europe versus APAC and so on.
Speaker:But you're looking at single digits like and if you're saying like let's say
Speaker:that we're building a half a billion dollar like
Speaker:healthcare facility, right. So 3%
Speaker:margins means that you don't have a lot of leeway for R and D.
Speaker:Right. That's fair bearing mind. So you have like folks which are like the most
Speaker:talented, most devoted people I've ever met. This is like the best industry to
Speaker:work for in my opinion. Personally. People are devoted,
Speaker:people are like mission driven people like you know, salt of the earth.
Speaker:But at the same time, you know, no matter like how good and how solid
Speaker:your technologies, you have very little opportunity to prove it
Speaker:to them. That's true. Yeah.
Speaker:The margins are that thin. Like you have to have a solid story,
Speaker:right. Like I don't know what the final price of the HoloLens was, but it
Speaker:was something like three, $4,000. Yeah, right. And if I'm, I
Speaker:mean if I'm on, if I'm talking to a business owner that has a single
Speaker:digit, you know, profit margin number, let's say 2%.
Speaker:I have to come in with a really good explanation
Speaker:of you buy this and you're not just buying one, right?
Speaker:You buy this, it's going to save you X amount of
Speaker:money. Yeah, yeah, right. It's you need to
Speaker:come with a few things. First of all, at some point we'll need to probably
Speaker:educate our, you know, our audience because we're not doing augmented reality.
Speaker:You know, we're doing something completely. Right, right, right. I'm just, I don't want to,
Speaker:I don't want to get fixed. I don't want to fixate on that. But. No,
Speaker:no, no, don't worry, don't worry. I just wanted to make sure that the audience
Speaker:are not meeting us instead of the. In case. But I mean, I, I would
Speaker:imagine that, I guess that depending on what solution you're selling. Let's,
Speaker:let's. Sorry about that. This is what happens, kids, when you have too much
Speaker:coffee in the morning.
Speaker:I mean, obviously predictive maintenance is probably
Speaker:an easy sell for the construction industry.
Speaker:I don't know if it's an easy sell. Like, nothing is easy.
Speaker:Nothing is easy. Let's go back a few steps. So we said
Speaker:it's like a high volume kind of, you
Speaker:know, monetary wise. Like it's, it's capital dense, right?
Speaker:Margins are super low and all the capital in
Speaker:constructions are in within construction projects.
Speaker:I mean, headquarters do not have a lot of money, not a lot of capital.
Speaker:Why is that? Because all of their capital projects are yielding like low
Speaker:margins, you know, let alone like, we're not talking about developers. Developers are doing
Speaker:a whole different kind of ballgame. But let's say that you're a general contractor,
Speaker:top tier general contractor in the states. You don't have a lot of, you know,
Speaker:free money to throw an R and D. And at the same time, because
Speaker:construction is such a vast and, you know, major
Speaker:industry which has that kind of vibe of
Speaker:being late to the party, even though it's not late for the party. From tech
Speaker:stack perspective, it means that if I'm coming from a
Speaker:contractor side and if I'm the person, you know, if I'm the CIO
Speaker:or the person responsible for developing and implementing technology,
Speaker:I'm being bombarded by people pitching me constantly.
Speaker:So it's not a case where the industry is underserved, but we need
Speaker:to have that responsibility as technology vendors that whenever we're
Speaker:hitting the market with something, we need to be responsible and respect
Speaker:the fact that the other side doesn't have a lot of margin
Speaker:to invest in R and D. They do not have a lot of time. They
Speaker:need to deliver project asap. So it means that we need to come to the
Speaker:market really, really mature and we need to make sure that our
Speaker:solutions actually work. And when they do it's terrific. It's
Speaker:like magic. It's amazing. Right. I think of that old
Speaker:triangle, you know, good, fast and cheap. Right. Like yeah,
Speaker:time and money are both constraints, it sounds like in the construction industry.
Speaker:So it has to be good, right?
Speaker:It has to be good. Money is not always an issue. I
Speaker:mean there's some money to invest just because capital
Speaker:is huge and the opportunity to gain something
Speaker:is vast. I mean if you can take a gc, like a gc, sorry for
Speaker:the audience, short for General Contractors.
Speaker:So if you're taking a GC and you can kind of help them pave
Speaker:the way to break away from the single digits like
Speaker:margin, the opportunity is endless. I mean
Speaker:those companies are making billions of dollars in revenue, not,
Speaker:not profits revenue. So if you can turn like a, let's
Speaker:say theoretically take a 5 digit, a 5,
Speaker:5% margin company and make it like a 6 or 7%,
Speaker:that's, that's tremendous. They're going to be leaders.
Speaker:Huge. Yeah, they're going to be leaders in their industry with that type of,
Speaker:you know, so, so
Speaker:our decisions in the field obviously built a
Speaker:construction. So I, I had done some home renovations. My wife is always
Speaker:knocking down walls or doing something. So I kind of know
Speaker:I would not call myself a construction expert but when we did call in somebody
Speaker:to build on an addition to our old house,
Speaker:I saw how much that would cost and it was, it was only three stories,
Speaker:right. It wasn't like a, you know, a skyscraper or, or data center which I
Speaker:would imagine data centers are completely different animal in a lot of
Speaker:ways. But are decisions based on
Speaker:intuition, right? Because somebody, somebody has a plan,
Speaker:right. They have the blueprint, right. And the blueprint seems like,
Speaker:you know, if everything works out perfectly but where the rubber meets the
Speaker:road, so to speak, is going to be on, on the job site.
Speaker:So I mean I would imagine that a lot of the decisions
Speaker:historically have been like, you know, the foreman
Speaker:or the GC
Speaker:superintendent has kind of like an intuition. But like are there
Speaker:ways to use data, capture data and make the
Speaker:decisions, you know, know where the
Speaker:problems are going to be as well as making it more, less intuition based
Speaker:and more data, data, dare I say data driven
Speaker:type approach. What sorts of tools are there for that?
Speaker:Now I think you're hitting the nail on the head because like, you know,
Speaker:I think it was like one of my last flights. The reason we
Speaker:postponed the, you know, the episode from earlier this week because I caught
Speaker:yet another fluke which I'm constantly catching on planes came
Speaker:back from London And I think it wasn't that flight, but the previous flight I
Speaker:read Thinking fast and thinking Slow. Have you read?
Speaker:Yeah, I have, yeah. Yeah, really good stuff. Shout out to. Who
Speaker:am I to shout out like Daniel Kahneman. But you know, if you haven't read
Speaker:it, go and purchase this either online or read the paperback.
Speaker:But you know, he talks in the, in the, in the
Speaker:book about, you know, system one, system two, right? Like two kind of system within
Speaker:your human brain. I'm far from being expert, but basically you're
Speaker:talking about intuition, like the way that we manage ourselves using intuition.
Speaker:And what does it mean to have an intuition versus like a deep kind of
Speaker:line of thinking and you know, the way that you typically
Speaker:would analyze the more complicated, slow thinking process.
Speaker:So if you take this back, like this system one to
Speaker:construction projects, what does it mean to run based on intuition or
Speaker:hunch? Let's take your veteran superintendent, superintendent,
Speaker:like the person who really runs the job on the job site
Speaker:from the general contractor side, and let's say that he
Speaker:or she will have like 20, 25 years of experience. These
Speaker:guys can, you know, can sniff, can sense that
Speaker:something is wrong. But in reality, you know, without having the technology
Speaker:on their side, typically what will happen is that their intuition
Speaker:will kick in when it's a bit too late. Why is that?
Speaker:Because let's say that you're doing like a 20 story high, you know,
Speaker:let's take that 40 story high somewhere building in Austin, Texas, right?
Speaker:That's going to be, I don't know, half a million square foot
Speaker:of a building. I'm going to have a crew of in between 10 to 20
Speaker:people from the contractor side. And there's
Speaker:literally hundreds of people working on my building
Speaker:installing ductwork, electrical wiring and you know, drywall and
Speaker:Sheetrock and you know, you name it and everything changes
Speaker:each and every day. And you as a superintendent, even though that you
Speaker:have the best kind of experience ever in the job and you have a really
Speaker:good intuition, your threshold, right, to
Speaker:noticing that something is off, you're only human, so it's
Speaker:natural for you to sense that something is off at some point. But what
Speaker:technology can bring to the table, and sorry for the very long explanation but
Speaker:technology can do, is to lower the threshold for you to be
Speaker:sensing that something is off. Let me give you an example. Let's say that
Speaker:in, within that same building, you have a crew of people that installing
Speaker:ductwork, you know, there's going to be, let's give it like
Speaker:an even number just for the example. I'd say like 100,000
Speaker:of linear footage of, you know, duck work.
Speaker:And they need to do it at a certain pace and to work at a
Speaker:certain sequence. And let's say that they're like, by week two or
Speaker:week five, they're off by 7%,
Speaker:right? They should have done like X and they've done like X minus 7%.
Speaker:What is the probability of that veteran super to
Speaker:kind of miss that? There's a high chance for them
Speaker:to be missing that point. Why is that? Because someone else is yelling. Because
Speaker:someone else is like, hasn't been delivering as they should
Speaker:be. And the gap is not 7%. They're missing by 50%. Or
Speaker:there's a truckload that was supposed to get to the job site that day and
Speaker:it hasn't gone there. Or like there's like a design change. There's so many
Speaker:moving pieces on the job site and for them to be missing
Speaker:the fact that that team is lacking like 7%
Speaker:and the week after it's going to be 8%. So you're looking at the kind
Speaker:of a snowball effect. So at some point, I know
Speaker:by week 20, if, if the ship is like off track,
Speaker:right, someone will notice it. But the trick is that you're
Speaker:noticing too late. Using
Speaker:technology is like, you can combine the system one, the intuition,
Speaker:which is basically intuition if you don't know it. Intuition is like experience,
Speaker:his knowledge, expertise. It's like how your brain is being, you know,
Speaker:rewired as time goes by. But if you combine that
Speaker:intuition with technology, that lowers the threshold all of a sudden. You
Speaker:don't need to wait until week 20 to sense that you're off by 7%.
Speaker:On the second or fifth week, I'm going to say like, hey, you know what,
Speaker:you've been doing tremendous work, but bear in mind that you're under delivering by just
Speaker:like a tiny bit. Let's go to the root cause of that and figure out
Speaker:what we can do together as a team in order to get better, back on
Speaker:track before it's being too late. And what I sense that the biggest
Speaker:opportunity for construction with technology is exactly that is
Speaker:like one of the opportunities is like lower the threshold so we can
Speaker:let humans do what they do best and we can let technology do what they
Speaker:do best, which is like the heavy lifting, the long tail, like the all that
Speaker:kind of boring, quote unquote analysis of this
Speaker:situation so that the pros can be like, you know,
Speaker:do whatever they do best. Right. And I would imagine too,
Speaker:like, I mean, it's Probably a lot easier to, you
Speaker:know, once it gets to 7%, right. It's probably
Speaker:one level of effort, but if you catch it at 3% or 2%, it's probably
Speaker:a lot, you know, like if a concrete shipment, I don't
Speaker:know, you know, misses its deadline or is late,
Speaker:the downstream effects probably AI is better
Speaker:at figuring that out than a person would be. And it's not a, it's
Speaker:not, it's just you. Every human on earth is limited by
Speaker:human perception. Right. The gateways of that. Right. And, and not that.
Speaker:That's. I think, I think you said it best. Like I'm a, I'm a big
Speaker:believer in the idea that AI is meant to be an augmentation technology
Speaker:for humans because there's things that AI can do better
Speaker:and it's, you know,
Speaker:and there's things obviously that humans are going to do better than machines for the
Speaker:foreseeable future. Right. But I think
Speaker:it's interesting is that when you think about, you know, AI and construction, right.
Speaker:It's probably, you know, everyone I, you know, immediately like I went to the
Speaker:computer vision demo, right. From a few years back, right. But
Speaker:it's probably this is. It sounds to me that construction is a very logistics,
Speaker:heavy business, right. I need to get people in a place, I need to get
Speaker:gear, I need to get equipment, I need to get
Speaker:material there and that. And there's probably a certain timing of it, right. It's
Speaker:probably very heavy on the waterfall process where you can't put
Speaker:ductwork if there's no, you know, I guess the iron skeleton
Speaker:on the building or whatever technique, right. If there's no floor, you can't put the
Speaker:flooring down. If there's no walls, can't paint them. Right. I mean, it's like from.
Speaker:It kind of goes this and I would imagine
Speaker:that that creates a very complicated
Speaker:web of interconnectedness that.
Speaker:Just thinking about it gives me a headache. Oh yeah, yeah.
Speaker:I think you, you're exactly right. Like it's the knockoff kind of
Speaker:cascading effect because everything in construction is sequence. Like
Speaker:the most, you know, the easiest kind of example is like you need to do
Speaker:the groundwork in order to do, to, to erect the structure. Right.
Speaker:And once you have the structure, you can start pouring the slabs, which are the
Speaker:concrete kind of floors and ceilings. And once you have the structure in place, you
Speaker:can start, you know, to, to install all the fit out, you know, all the
Speaker:internals. So that would be like the facades and windows and
Speaker:externals and guess what? You need the building to be
Speaker:what we call wet ready before you can install
Speaker:elements which are sensitive to weather. Right. I wouldn't go install
Speaker:my precious kind of sanitary work before
Speaker:I know that no damage will be caused by weather. And, you
Speaker:know, when we're talking about mechanical and electrical and plumbing
Speaker:equipment, there's a certain sequence. If you look up, you know the audience. If you
Speaker:look up and you have those kind of.
Speaker:You can see the ceiling scheme. You know, in office areas, you would
Speaker:see that there's, like, a certain pattern in your overhead. Mechanical,
Speaker:electrical, and plumbing equipment. Typically, there's going to be high
Speaker:difference. So, you know, ductwork, which are the biggest kind of pieces, will
Speaker:go first and then sprinklers and then, you know, and so on and so on.
Speaker:Mechanical piping, electrical conduits, you typically will go
Speaker:last because they're the most flexible. So you're right. There's a certain
Speaker:sequence, and once you have kind of a delay or a
Speaker:problem in one element, there's going to be a knockout effect to the
Speaker:rest of the pieces. And you want to make sure that one. You keep the
Speaker:right sequence. And if there's something that isn't ticking the
Speaker:right way, you need to fix that asap, because everything that will
Speaker:follow will be impacted. And not only that,
Speaker:sorry. You want to make sure that you
Speaker:keep a certain flow. Like, it's funny, but in
Speaker:construction, it shares, like, a bit of, you know, Zen kind of.
Speaker:Right, right. Elements. Because bear in mind, there's like,
Speaker:dozens of different trades and contractors and supply chain elements that are
Speaker:working together seamlessly, and one depends on the other.
Speaker:And if I come trade number one, let's say I'm doing ductwork,
Speaker:and the next one after me will be the sprinklers guy. If I'm
Speaker:late, that's going to affect the other team. And if they cannot
Speaker:pull their people to the job, guess what? At some point, they're going to pull
Speaker:them off from the job and you, you know, divert them to the next one.
Speaker:And me, as a superintendent, is like, the current project will suffer from that.
Speaker:So you want to make sure that everyone is working according to pace, according to
Speaker:their sequence at a certain flow. And it's really hard.
Speaker:It's really hard because, like, you plan your job perfectly
Speaker:on day one, right. But the minute you started, you're being thrown with
Speaker:everything possible, like weather, supply chain issues. The
Speaker:owner will change the design because of reason. You know, the
Speaker:marvel that, you know, you kind of. You
Speaker:wanted to get from Italy, stuck in somewhere in the ocean, like Everything
Speaker:will be thrown at you. And you need to have that really
Speaker:good data collection system that, you know, keep
Speaker:tracks of everything for you so it can raise up all the risks
Speaker:and all the kind of flags you need in order to make the right decision.
Speaker:So this is kind of the story. You really want to make sure that you
Speaker:keep up with the sequence because every kind of grain of, you know, dust that
Speaker:goes into that mechanism will
Speaker:probably. You know, it seems
Speaker:like you can, you can, like you said, like a Zen thing, like it has
Speaker:to exist in a certain flow state and the universe is going
Speaker:to conspire to make you get out of that flow state.
Speaker:Right. I, I imagine weather probably plays into it, you know,
Speaker:and, and it always fascinated me to see when people would
Speaker:build homes. I used to live in this big suburban development
Speaker:in New Jersey. As they were building it, we had these huge blizzards
Speaker:that winter. And I just remember seeing like the entire frame of the building
Speaker:was exposed to, you know, the snow and the ice. And I'm thinking
Speaker:to myself, how is that going to impact, you know,
Speaker:you know, in a one story townhouse or building? It probably is not that big
Speaker:of a deal. But like, I just wonder like, how do the bigger projects deal
Speaker:with this, right? If it's a hurricane, if it's this, if it's that. And
Speaker:I could just imagine a logistics nightmare, especially the bigger the project, because
Speaker:the bigger the project, the bigger the mart. I mean, the bigger the,
Speaker:the crews and the bigger all of this. And, and I think you're
Speaker:right. Like if, if the ductwork guy gets delayed by a couple of days,
Speaker:I would imagine like the sprinkler contractors, the
Speaker:plumbing and all that, they probably have, are working multiple
Speaker:jobs, right? Like, so they're probably like, oh, I have, and I have
Speaker:Bob and Tony working on that. But if you're for this week, but
Speaker:if you're delayed by a week, I got them over here now that screws up
Speaker:your schedule even further because you can't get those people. And I would imagine
Speaker:it's logistics nightmare. Yeah, it is, it is,
Speaker:it is. But, but to be honest, I would say, you know, that industry, this
Speaker:is how it operates. So it knows how to handle the
Speaker:unpredictability and how to kind of
Speaker:change plans at the floor level and
Speaker:adjust itself. But the key is, and I think that
Speaker:what's really happening over the past few years, and it's
Speaker:not just because of AI and technology, I think it's mostly about data structuring
Speaker:and ability to really represent the project
Speaker:digitally. So you can represent it
Speaker:digitally, all the moving pieces. So you can start simulating, you can
Speaker:start predicting using predictive analytics and so on.
Speaker:What it offers is, like, it offers. Like, the.
Speaker:People on the project to kind of work with different options and say, like,
Speaker:hey, you know what if I'm 7% late? You know, that previous example
Speaker:on the ductwork, what does it mean for me? Like, what's the end
Speaker:date for me for that activity? Let's say that I need to have all the
Speaker:ductwork installed by, I know, December this year.
Speaker:That's my plan. That's my schedule. Now I'm off by 7%. If you
Speaker:extrapolate and say, you know, if we continue the same pace, you know,
Speaker:relatively the same pace, am I going to finish that
Speaker:on January or February or, you know, what's. What's the knockout
Speaker:effect? Because once you know that, you can start plan the remedy, and
Speaker:you can say, all right, you know what. What happened? So far, it's in
Speaker:the past, but we need to get our, you know, our stuff together. You know,
Speaker:sorry, keeping my language and, you know, back on track. Sorry, I was
Speaker:almost there. And you can start having, like an adult conversation with your
Speaker:supply chain and say, like, hey, you know what, guys, let's go to the root
Speaker:cause of that. We need to amp our game by,
Speaker:you know, by that amount. Do we have enough labor on
Speaker:site? Do we have enough materials? Like, can you. Can you increase
Speaker:manufacturing of the missing ducts? Maybe? Can I change my
Speaker:sequence? You know, I have, like, the most amazing example from, you know, a
Speaker:year and a half ago, we
Speaker:launched a new product, a new feature about 18 months ago, which
Speaker:is like a predictive analytics for delays, which is tremendous for
Speaker:a job site. I remember launching it. And like
Speaker:everything in life, when we launch a product, we, first of all,
Speaker:you develop it in the background and you
Speaker:have early versions of it. And I remember working with
Speaker:mine, my. My first kind of beta
Speaker:user for that, one of the projects in the uk, And I told
Speaker:him, like, hey, there's a coming conference, you know, how about we get on stage
Speaker:and present together that example from back in the day? And he was like, you
Speaker:know what, I'm all good, you know, presenting with you, but I have a
Speaker:new example. I was like, what are you talking about? He was like, you know,
Speaker:he just released a feature using predictive analytics. And we noticed that my
Speaker:electrician, he's actually six weeks behind schedule, and it makes zero
Speaker:sense because he has his whole crew on site every
Speaker:day. I was like, how the hell are you kind of six week behind schedule.
Speaker:And the electrician, you know what he tells him, he was like, you know what?
Speaker:I'm waiting for the elevated floors, right? If you know
Speaker:what I'm talking about. Those like, elevated floors. I'm waiting for the elevated
Speaker:floors trade to be finishing in that area for me to getting on there
Speaker:with my, you know, ramps and everything to be working. And they
Speaker:stayed together. And I think he was telling me like, why the hell are
Speaker:we waiting for the elevated flows to be completed? Can we just like have the
Speaker:electrician go there instead? You know, change the sequence. That's it. And
Speaker:they change it immediately. And the only reason they could have, you
Speaker:know, add their kind of experience saying, like, you
Speaker:know, we just change the sequence. That's it. The only reason they could have done
Speaker:this because something raised that flag and said, like, hey, you know what? You're
Speaker:going to be six weeks behind schedule electrical work if you don't
Speaker:do something right now. So it's, you know, once you're off
Speaker:track and once you miss something, it's not the end of the world
Speaker:as long as you kind of address it.
Speaker:I just, I just love that story because it represents so much of
Speaker:the industry and its ability to make the best, like,
Speaker:decision in the split of a second. No,
Speaker:I think that's a good example of the AI flag something and people kind of
Speaker:like sat down and talked through and I guess one of the other things
Speaker:you kind of said was the ability to represent a building
Speaker:digitally. I would imagine it helps a lot to
Speaker:have that and then test out different scenarios. Like if
Speaker:we switch the order this way we'll save two days, right? We'll get back two
Speaker:days. We change it this way, we'll get back four days. Right. Or,
Speaker:or something like that. And again, I think the, I think the
Speaker:construction industry has always had to be resilient for a number of reasons,
Speaker:right. I think that's something
Speaker:I don't think people would necessarily appreciate from the outset. Right? Because you always
Speaker:see, like people always notice when something goes wrong, right? Like, oh yeah,
Speaker:that building. That building was supposed to go up, you know, in the spring.
Speaker:Here it is the fall. Or, you know, God forbid there's some kind of
Speaker:collapse. Like there was. Was it Thailand? I think it was
Speaker:Thailand. A building collapsed, unfortunately.
Speaker:So does the sequence of things or the normal sequence of things
Speaker:change by region? Like is. Is the
Speaker:US going to have a different order of things or. And like, how
Speaker:much does zoning affect that? Right. Like, you know, do you have a thing where
Speaker:you know, well, the local government, the local county or state says you can't
Speaker:do this before that. Like is that, is that a thing?
Speaker:Generally, I don't know. I'm pretty sure that there is a zoning kind of thing,
Speaker:but it's not my. Okay, I was just. But I would say, you
Speaker:know, think about this one. No building, like most buildings are
Speaker:not kind of cookie cutter. This is kind of another challenge in
Speaker:construction. It's like someone, I'm
Speaker:quoting someone, I can't remember who said it, but it's like you're building
Speaker:a one time thing, thing, factory. Like you're building a
Speaker:factory, right? The factory is like the team and the job site that need to
Speaker:kind of build that building. But it's, it's, it's a factory that
Speaker:you're going to use once, right? And that factory
Speaker:needs to build the building. And no building is the same as
Speaker:the other, right. One will have like a
Speaker:lowered suspended ceiling, the other one will not. And even like
Speaker:simple thing like you know, like drywall, like Sheetrock.
Speaker:Some of them will have insulation, some of them not. Some of them will
Speaker:have like the two coats of paint. Some of them
Speaker:will only one. Some of them will have glass walls, some of
Speaker:them will have brick walls. Nothing is the same. So
Speaker:sequence changes and varies according to the building that
Speaker:you're building. Not talking about different verticals.
Speaker:The healthcare facility is like completely different thing from
Speaker:residential project. It's a different thing from
Speaker:an airport or a hotel or data center or an oil reg.
Speaker:It's like comparing like the, you know, the F1 or in the
Speaker:NASCAR kind of car to my lousy vehicle that I'm driving
Speaker:my, my day to day. It's like a completely different animal.
Speaker:So there's going to be a lot of variations and differences. And this
Speaker:is like one of the challenges because you only have one shot on
Speaker:making that building on time and on budget. That's it. You
Speaker:only have one time. Interesting.
Speaker:Super challenging. Super challenging. That is industry.
Speaker:Maybe it's a good example because you know, I promise like the audience just like,
Speaker:you know, I'll give it like a really short kind of explanation of what we're
Speaker:doing and then maybe we circle back because like
Speaker:I think we kept the audience like in the dark for a bit.
Speaker:Mysterious, like I'm serious about what we're doing. So build outs,
Speaker:like simplistic. What we do is use computer
Speaker:vision, right? We use computer vision to Compare
Speaker:visuals from 360 cameras to your plans
Speaker:and schedule. Right. Oh, the result is that what we do
Speaker:is that we analyze the results from the computer vision and we can
Speaker:programmatically provide you progress
Speaker:data, like, compared to analytics, like progress
Speaker:data for your job site. So at any given moment in time, I
Speaker:can tell you precisely how well are you progressing against
Speaker:your plans and against your schedule. And it goes down from the very
Speaker:top level, saying like, you know what, you should have been like 80% so
Speaker:far in your project altogether. And you just like 75. Or if you're
Speaker:doing really well, like you're 82 or 80. And it goes down
Speaker:layer by layer all the way down to the very specific
Speaker:conduit and specific wiring. Right. You break it down by the
Speaker:different activities and trades. So Electrical will be
Speaker:70% out of 75. Ductwork will be so. And so goes
Speaker:all the way to. On that very floor. It's going to be that percentage
Speaker:complete and going down to that specific
Speaker:element type. So it's going to be drywall versus block work or versus
Speaker:concrete walls and specific wall pieces and
Speaker:specific floor and so on. And everything is backed by
Speaker:photos because it's computer vision.
Speaker:And I'll finish by that. Because the way that we run this
Speaker:product is that every time you start a new project,
Speaker:we're going to obtain two things. Your
Speaker:schedule, which is like a simple Gantt chart. It's far from being simple, but
Speaker:imagine a Gantt chart. Every major construction
Speaker:project has a schedule. And the other thing is that
Speaker:we taking the 3D models, believe it or not, for people who are not part
Speaker:of the industry. The blueprint that you remember from, you know,
Speaker:movies, by the way, my first impression of blueprint, have you. Do you
Speaker:know Die Hard? Yes. You remember him pulling
Speaker:the blueprints. So there's still blueprints, like in
Speaker:2D these days. Everything is like still working in 2D, but
Speaker:major construction and even lower than that are being designed
Speaker:in 3D, which is tremendous, right? Pretty cool. So we take the
Speaker:3D models and schedule and we create something that called 4D.
Speaker:4D model. 4D is like the 3D model that has that
Speaker:time kind of factor to it. And all of a sudden we have a
Speaker:digital representation of the project that you're building. Let's say a healthcare
Speaker:facility somewhere in Jersey. Right. So we know how the
Speaker:project should be looking like, should behave. Like, what's the sequence?
Speaker:Who are the trades working there, how many walls, how many pieces of ductworks,
Speaker:electrical conduits and sockets and so on. And every time,
Speaker:every time someone takes a walk on the job site with
Speaker:a hard hat and a 360 camera mounted to the top of it.
Speaker:Turn the video on and just walk the job. You
Speaker:walk the job. You then finish it. You upload the video
Speaker:to our computer, like our servers to our platform. And
Speaker:we use computer vision to do two things. One,
Speaker:we precisely locate each and every frame in the video.
Speaker:You don't need to tell us where have you worked, just walk the job.
Speaker:We'll figure out the exact positioning of each and every frame in the video.
Speaker:We're accurately positioning it against the model and against your
Speaker:plans. The second part is that we use computer vision to
Speaker:automatically annotate and extract data from
Speaker:that frame. Let's say that you walk across
Speaker:a block kind of wall that has an opening. So we know that
Speaker:that walls in your camera, in your footage kind of is
Speaker:compared to that wall in the model. Right. We can mark this
Speaker:as done and we can know whether it was like it has
Speaker:plaster in that, whether it was coated and so on, so on, so on. So
Speaker:this is basically what we provide. We provide progress
Speaker:data, which is equivalent to analytics to the people on the job
Speaker:site. So that that super. Remember from the previous example,
Speaker:they know on each and every day whether they're on track or
Speaker:not. And if not, like, what is the reason for that? Which trades
Speaker:are behind schedule, what activities are problematic, do they have any quality
Speaker:issue, what's the predictive analytics says about the end date and what should
Speaker:they change and to what extent in order to get back on
Speaker:track and finish the project on time and on budget and
Speaker:obviously as safe as possible. That's interesting. So
Speaker:you have this computer vision solution that can be very granular.
Speaker:It's almost like you have like. What
Speaker:did you call the person who's in charge of the project? It wasn't foreman, it
Speaker:was superintendent. Superintendent, yeah. If you're typically.
Speaker:It's like you have that person on every floor at
Speaker:all times paying attention to everything all at once, right?
Speaker:Yeah. And you know what? You can't have this.
Speaker:You can't have. People are people. People are people.
Speaker:Yeah. But to be more fair than that is that one. Remember
Speaker:that 3% or 5% margin, I don't have money
Speaker:to have enough superintendents on each and every
Speaker:part. Is that there's a huge shortage
Speaker:in professional
Speaker:sophisticated talent in this industry.
Speaker:The industry is lacking so many people, like all of
Speaker:the people in the industry are extremely talented, really
Speaker:smart, really voted. But there's not enough people out there.
Speaker:And the sad news is that more and more young
Speaker:professionals are leaving the industry. So you're not only fighting
Speaker:to recruit people, but also to retain them because
Speaker:it's a hard physical labor job.
Speaker:So I wish we could have had like so many superintendents on the job
Speaker:site, but honestly we can't. But
Speaker:it's not the end of the world because if you harness technology, you
Speaker:know, when you combine that technology with the system, one kind of, you know, those
Speaker:people, all of a sudden you turn them like to, to be more
Speaker:superhuman in a way. They control more square, square footage
Speaker:of project. They can know more. They can be,
Speaker:God forbid, live, you know, early, you know, to be. Right, right, right, right.
Speaker:To keep their kind of mental health in place because really
Speaker:kind of it's, it's a hard job. I mean, you need to respect those
Speaker:people. They working so hard. It seems like it would be very stressful
Speaker:job, like, especially if when things go wrong and it sounds like things
Speaker:almost always go wrong a little bit. Yeah, I
Speaker:would say it's not for me to be speaking about this because I'm. Even though
Speaker:I've been serving the industry for the past more than a decade, I'm
Speaker:excellent. So I don't have, I haven't heard. Earned the rights to talk
Speaker:about this. Right, right, right. Yes. It is known in the industry
Speaker:that, you know, mental health is an issue. And I think
Speaker:that if we technology vendor can help just a bit, you know, to
Speaker:let them go back, spend time with their family and you know, to
Speaker:decompress for a bit and to be less stressful over the weekend and over,
Speaker:you know, nights and everything. That's. I would love
Speaker:that for it to happen. No, I think that's really cool. I think
Speaker:it's an important. People don't people, I think
Speaker:under underestimate mental health and things like that. And
Speaker:to your point, like if there's going to be a
Speaker:skill shortage. Right. Even if we solve the skill
Speaker:shortage today. Right. To get that level of experience
Speaker:that a seasoned like superintendent would have is
Speaker:going to take. I mean, even if we fix the pipeline today, the
Speaker:downstream effects and the shortage in the pipeline are going to
Speaker:cause problems for, you know, a generation potentially. Right.
Speaker:So how do you, how do you, how do you mitigate that? And I think
Speaker:this seems like it'd be one way to mitigate that where you could have,
Speaker:you know, and it's really using AI, I think,
Speaker:where it's good at. Right. Paying attention to every detail at all times,
Speaker:everywhere at scale, and then collating
Speaker:that data and getting to the point where, you
Speaker:know, AI does a really good job
Speaker:of, you know, doing the Slow thinking system very quickly.
Speaker:Right. Like so I think, you know, if we, if we kind of
Speaker:leverage it that way, I think it's. And I also think too like it's a
Speaker:very practical use of computer vision. Oh yeah, right.
Speaker:And I would imagine as time goes on, you'll learn more
Speaker:about what you said would happen in your system versus
Speaker:what actually happens. So you have like that training loop probably in place.
Speaker:There's this training loop and I
Speaker:would even say, and this is something we're doing already. So
Speaker:one thing is to optimize the existing project at hand. Right.
Speaker:Go back to that half a billion healthcare facility
Speaker:in Jersey. Right. About the next one. I mean
Speaker:one thing that we've been doing because our computer vision
Speaker:generates so much data about plan
Speaker:versus actual, about how actual progress happens on the job
Speaker:site versus how it was planned. What we're doing right
Speaker:now is that we look at future jobs and we look at their schedules
Speaker:and their models and their plans and we can say, well, what is
Speaker:the probability of different types of risk to happen
Speaker:on that scheme based on previous historical data that we
Speaker:have? So let's say that we're not building a healthcare facility in Jersey,
Speaker:but rather like in, I know, in Indiana. Right, right.
Speaker:And how many healthcare facilities have we built so far?
Speaker:How much information have we gained in order to
Speaker:validate future plans and to de. Risk future plans. Right.
Speaker:And to build. Right. For the first time. And this is the other example of
Speaker:how technology and AI can, you know, can kick in because we're not just looking
Speaker:at the one time factory that we're trying to build, but rather
Speaker:optimize all the current and future pipeline of our business, which is
Speaker:tremendous. And all of a sudden you can schedule better. Right?
Speaker:Because if you look at project scheduling, just to give you like an example,
Speaker:I've seen construction project schedules with
Speaker:more than 2 million rows. Right. Think about
Speaker:a project schedule that has 2 million rows. I've never
Speaker:seen anything like that personally in my job, you know, for tech company.
Speaker:So it's beyond human scale. So if you use
Speaker:historical data and again AI and computer vision and everything
Speaker:else to kick in to do the stuff that is really hard for human to
Speaker:do. How did you say it? Like allow computers to do system
Speaker:two things really fast. Which by the way, I would buy that
Speaker:T shirt if you get this. I think I'll make that T shirt
Speaker:make it black.
Speaker:So all of a sudden you can, you can leverage technology to do other things
Speaker:as well, like better planning, better scheduling and look at all the other
Speaker:parts which are heavy lifting tasks that we can
Speaker:kind of take it from humans not because we want to replace
Speaker:them, but rather we want to keep their abilities and experience
Speaker:to do the really hard reasoning and decision making
Speaker:and, you know, what if
Speaker:scenarios and so on, and to let technology to kind
Speaker:of lead the way on the repetitive kind
Speaker:of hard job. So it's not just about project
Speaker:control analytics, it's about predictive analytics and better schedulings and
Speaker:better planning and better kind of de risking for the entire industry, which is pretty
Speaker:cool. Cool. How did you get into this? How did you get into
Speaker:it and construction? Oh, that's, you
Speaker:know what I've, I just 40 about a month ago
Speaker:and I've been playing with my, you know, lifelong
Speaker:decisions for the past few years, you know, thinking I'm happy with everything
Speaker:that I have. But you know, I have been thinking about stuff. So originally I
Speaker:came from technology, you know, pretty young, about 20 something.
Speaker:Started in advertising tech back in the day, which then. Still cool.
Speaker:Yeah. My first kind of role, I remember
Speaker:I was a product manager for an advertising tool, believe
Speaker:it or not, as an add on for Flash. Wow.
Speaker:Yeah, I was like doing some product management for an add on for
Speaker:Flash and at some point I kind of fell in love
Speaker:with data analytics. That was my sweet spot, kind of. I know why.
Speaker:I love numbers, I love reasoning, I love logic. And
Speaker:I worked in a company called Datorama, which later on was
Speaker:acquired by Salesforce, which is pretty cool.
Speaker:Not a lot of credit for me in the acquisition obviously, but you know, it's
Speaker:just a part of the team. And then I remember getting
Speaker:a phone call from a friend and that's pretty cool. He was like, you know
Speaker:what, there's a young startup in
Speaker:construction tech, you know, looking for the first product manager. Do you want to join?
Speaker:Believe it or not, my first response was like, no, forget about it.
Speaker:There's nothing to do there. You know, it's probably going to be boring. But I
Speaker:took the meeting and you know, eventually I joined the team.
Speaker:And I remember the first few months I was flying like hell. I was
Speaker:flying to, you know, Indiana and Boston and New York and Turkey
Speaker:and Thailand and you know, the UK and France.
Speaker:And the reason I fell in love with it was people.
Speaker:Eventually you meet that superintendent and you meet that foreman and you
Speaker:can see everything in their eyes. It's not just, you know, you're not optimizing
Speaker:that additional impression on that Google
Speaker:search ad or whatever, full of respect or everything
Speaker:dealing with this. But that's not my cup of Tea. I'm a people
Speaker:person. And you remember, you know, you could have seen everything on their eyes. And
Speaker:I remember that, like, you know, back in the day, working in the augmented reality
Speaker:kind of app that I told you about, I was working in a project, not
Speaker:working. I was like, you know, demonstrating a technology app in.
Speaker:I think it was Lebanon, Indiana, if no one
Speaker:knows where it is. They were building a veteran
Speaker:healthcare facility. I was, like, demoing the app, and
Speaker:I can't remember why, but I think it was like, they told me that everything
Speaker:that they build in Diana is built in swampland, that
Speaker:they need to dig a well into the basement. Like, I know
Speaker:70ft of well and need to constantly pump the water.
Speaker:And remember I'm holding, like, a device with augmented reality. And they tell me,
Speaker:like, hey, can you. Can you come in for a second? I was like, yeah,
Speaker:sure. And they were telling me, like, hey, you know what? We
Speaker:believe there's a problem with our well. Maybe it's dislocated or
Speaker:something. I was like, all right, let's check with the app. Obviously,
Speaker:spoiler alert. It wasn't working perfectly.
Speaker:And I'm trying to locate the well, you know, in the model,
Speaker:in the. In the. In the. In the plans. And
Speaker:I couldn't see anything. But I had a weird
Speaker:intuition. I told them, like, guys, what's the probability? What's.
Speaker:Is it possible that the well is positioned well, but the
Speaker:diameter is different? Maybe, maybe. Maybe the diameter thing is wrong.
Speaker:Because they were trying to kind of coordinate the position
Speaker:of a wall against that well, a kind of a pit in the floor.
Speaker:I was like, maybe the diameter is wrong, so this is why the wall is
Speaker:not working against it. And they checked it, and I
Speaker:don't know how I had this intuition, but I got it right. And the diameter
Speaker:and the story is that I remember the face of that superintendent.
Speaker:It turned white immediately. And I
Speaker:could see that everything is personal. Everything is, like, very human. You're dealing
Speaker:with, eventually with human that devote their life to. To this industry.
Speaker:And I just fell in love with this. So I know I'm sold for
Speaker:the industry. And looking back at my childhood, my
Speaker:parents, they had this family kind of business for printing 2D
Speaker:sheets for construction. So my.
Speaker:All of my summers from age six, probably, I was spending, you know,
Speaker:folding huge 2D sheets for construction. So maybe, maybe
Speaker:if, you know, you're looking psychologically, maybe like it's kind of
Speaker:something that brings me there, but that's definitely my passion. This
Speaker:is how I got there. So it's A mixture of data analytics, AI and
Speaker:construction. That's cool. That's cool. Obviously
Speaker:you mentioned thinking fast and thinking slow.
Speaker:Audible is a sponsor and there is an audiobook version. So if you go to
Speaker:thedatadrivenbook.com, you'll get one free audiobook
Speaker:on us. And if you
Speaker:get a subscription we'll, we'll get a little bit of
Speaker:kickback and help support the show. Any other
Speaker:audiobooks you recommend? I'm not an audiobook
Speaker:person. I tried it once. Are you doing audio or paper?
Speaker:I kind of like, I have printed books, I have audio books
Speaker:and I also recently got a Kindle Scribe which I actually kind of like.
Speaker:I like it. I like it. If you look at a lot of the.
Speaker:I've been a big tablet PC fan, like pen computing fan since like
Speaker:Windows pen in the 90s and even I had an
Speaker:Apple Newton if you. That's really. Oh yeah, yeah. So I've been a
Speaker:big believer in that tech for a while. So my,
Speaker:I saw there's something called the Books which is
Speaker:basically the actual E ink screen
Speaker:is A4 size. Oh. So you can drop
Speaker:PDFs into it and it's like you know, PDF books and it's like
Speaker:perfect but it's like 6,
Speaker:$700. So I was like, I don't know if I like it but
Speaker:I look at the remarkable because I want to be able to take notes in
Speaker:meetings without being distracted by notifications.
Speaker:But when I saw the Kindle scribe I was like well I need a reader
Speaker:and I need a note taking platform and it happens to be the least
Speaker:expensive of the three. So I'm going to try it out and I like
Speaker:it. What I really like about it is the
Speaker:screen's bigger than my other Kindle. Right. I like
Speaker:the E Ink display because it feels there's no glare, there's no
Speaker:nonsense like that. I also not staying awake
Speaker:until like 2:00am or something. Exactly. And you don't have to light on
Speaker:because it's backlit. You can read it outside but also you can take
Speaker:notes in the margins. You can open up a different notebook and
Speaker:kind of write out, sketch out ideas. Yeah, I mean
Speaker:I'm, I'm a big fan if you're not a big.
Speaker:And I already have a lot of stuff in the Kindle ecosystem so like it's
Speaker:not a big loss. I know some people militantly hate the Kindle ecosystem
Speaker:and that's why like they would go with remarkable or books or something like that.
Speaker:But you know, which I probably Will end up getting one
Speaker:if you know when the price comes down. And I go
Speaker:everywhere now with this little like Kindle and I've only had it like almost a
Speaker:week and a half. I should probably buy one because I fly
Speaker:a lot and. Yeah, if you fly a lot. Yeah, I fly a lot and
Speaker:I, I love reading on planes. This is like the best time usage
Speaker:ever. You know, if you don't need to work in presentation or to work on
Speaker:planes, read on plane because it makes you fall asleep faster. Now
Speaker:that's true. One, another kind of recommendation that I can
Speaker:give to the audience. First of all, read books, kids. It's important.
Speaker:Two, have you read the Innovator's Dilemma? No.
Speaker:So the Innovator Dilemma is like Innovators Dilemma is kind of
Speaker:one of the best kind of business startup books in my opinion.
Speaker:It's written by, sorry if I'm not pronouncing it right, I think it was
Speaker:Clayton Christensen. Look it back. It talks
Speaker:about why do large enterprises
Speaker:are late in adopting new technology and
Speaker:should, should they adopt the new thing
Speaker:on tech or should they wait? And why are they late
Speaker:in adopting certain technology? And don't want to give you spoilers but you know,
Speaker:every time you hear about something new, you know, choose your
Speaker:current hype, whether it's like vibe coding, I know mcp,
Speaker:whatever, you know, knocks you out. But sometimes
Speaker:you think about like why do, why don't Amazon or Google
Speaker:or you know, Apple or you know, all your top hundred
Speaker:Fortune 500 companies do not adopt it immediately? You know, why is
Speaker:that? And there is a certain dilemma. Should they adopt it really
Speaker:fast before the market, you know, demands it, or should they wait? And
Speaker:I don't want to spoiler read the book. It's tremendous. It
Speaker:goes through like research from the 80s and
Speaker:90s and explained flawlessly like the dilemma of
Speaker:developing and adopting a new technology right away or should they
Speaker:wait? There's kind of balance in the middle. I
Speaker:really recommend it. Awesome.
Speaker:Awesome. I will definitely check that out. What
Speaker:about you? What good recommendation do you have that you
Speaker:read? There's a really good audiobook I'm listening
Speaker:to now called like 48 days to work. You love
Speaker:the work you love of
Speaker:and it's basically idea. I like my job but like you know, it, it, it
Speaker:really, it's. Anyone from work is listening. No, I
Speaker:actually do like my job. But like there's like, you know, as you get, you
Speaker:know, because I'm. I turned 50 not that long ago. Right. And like every time
Speaker:you have a Birthday with a zero on it. You always have this kind of
Speaker:how am I doing? You know, tell me about this.
Speaker:And you know, when I turned 40, I had this crazy idea I was going
Speaker:to become a documentary filmmaker and long
Speaker:story, and I went and I really studied up how to do
Speaker:filmmaking and stuff like that. And then I
Speaker:realized like how little documentary filmmakers make.
Speaker:Oh yeah. And I realized, you know, maybe I should because
Speaker:I was, you know, I was very invested in the Windows
Speaker:Mobile, Windows phone platform, Windows 8. And then when that kind
Speaker:of hit was a thud, I kind of realized like, you know,
Speaker:whatever, you work in technology and like a particular field
Speaker:kind of flops, you know, that particular niche that you're in kind of flops,
Speaker:you kind of reevaluate. How did I get here? Right? And it
Speaker:was almost by chance that I attended a
Speaker:Microsoft research conference like
Speaker:over 10, 10ish years ago
Speaker:where, you know, they were talking about,
Speaker:you know, AI and like what this is. And at that point I just thought
Speaker:of, you know, data as SQL and you know, Power BI
Speaker:dashboards. Like that was my, that was my impression of it. But
Speaker:when, when I saw that there was an actual engineering discipline to it and
Speaker:math that will make you go crazy. Like it was
Speaker:a good technical challenge to get into. And you
Speaker:know, at the time I was at Microsoft and they were talking about how they're
Speaker:y Microsoft product, which in:Speaker:Yeah, right now, I mean now we see it and like
Speaker:everybody's adding everything to AI, even if it needs it. Whether or not it needs
Speaker:it is not really a concern. But
Speaker:it's, I don't know, like I just. And you know, fortunately that
Speaker:was the right choice. Obviously people thought I was crazy because I was, you know,
Speaker:walking away from, you know, years of
Speaker:like front end development on Windows into a completely
Speaker:new space and everyone thought I was crazy. But I'm like, nah, there's
Speaker:something here. And it's, it's fun, it's challenging, it's exciting
Speaker:and that's that. That kind of explains my current fascination with
Speaker:quantum computing. Right. Like it's like, you know, it's, it's not quite
Speaker:there. It's not quite there yet. Right. And people will
Speaker:argue. Jensen Wong says it'll take 20 years, Bill Gates says
Speaker:shorter. Some people say three years, five years. It's such in
Speaker:an stage of a technology development that
Speaker:we're really barely at the transistor stage. Oh yeah,
Speaker:here, right. So like it's really like an opportunity to get in and the Math
Speaker:is hard. The math will give you headaches for sure. But
Speaker:you don't have to understand all of it to build systems on top of it.
Speaker:Right. Like, and to understand the impact it's going to have on the industry.
Speaker:And like, everything. And like everything, the. The smart people will build the
Speaker:infrastructure layer, and on top of that, you'll have the operation system, the application
Speaker:layer. And, you know, before you know it, you will build application in an
Speaker:abstract way without knowing everything that's, you know, underneath the surface. A
Speaker:hundred percent. You know, at one point, if you were building a computer, you needed
Speaker:to have an, you know, electrical engineers on staff. Oh, yeah, right. And you
Speaker:needed to really use those bytes, you know. Well. Right. And how.
Speaker:How, you know, memory works and how, you know, everything. Efficiency work.
Speaker:There was one of the mythbuster guys, had
Speaker:a thing where he talks about a bit from an early computer, and it's about
Speaker:the size of this water bottle. No way. Something like that. It was. It
Speaker:was a little smaller than that, but I mean, it was like. And he was
Speaker:like, you know, it was about that big, and it was somewhere between the size
Speaker:of this and a spark plug, but it was big. Right. So, like, if you
Speaker:just think about that, like, and then. Then some other YouTuber did this whole visualization
Speaker:of what does this look like? What would this look like to have a gigabyte
Speaker:with those? And it was turned out to be like a skyscraper size thing.
Speaker:And it was, I don't know, like, to your point. You're
Speaker:right. Like, the infrastructure layers that we're used to in technology today
Speaker:are not there yet in quantum. Right. But that also means an
Speaker:enormous opportunity for those to get in at this level.
Speaker:You know, whether or not it'll pay off in five years, 10 years, 20,
Speaker:I can't really say, but it's definitely. I know. It's definitely happening.
Speaker:Yeah. Well, fun fact. The audience know I know zero about.
Speaker:Right, right, right. Well, every time I think I understand it, I learned there's a
Speaker:whole other thing behind it which is both fascinating and, you know,
Speaker:fun and annoying, but shameless. Plug. I do have another
Speaker:podcast called Impact Quantum, where we do take.
Speaker:We do take a look at what Quantum is, where it's at and how it
Speaker:means, what it means for people's careers and stuff like that. Who knows, Maybe
Speaker:we'll meet again in decades, talking about. Absolutely. Machinery and construction. There
Speaker:you go. Well, we'd love to have you back on the show if you're interested,
Speaker:and maybe talk more about the individual solution, but I really enjoyed our
Speaker:conversation. Me too. It was a pleasure. Like, thanks for having
Speaker:me. Thanks for the audience for staying until now. The people who
Speaker:stayed. Oh, no problem. Oh, one last thing. Where can people
Speaker:find your company? It's called Bill dots. Yeah. So
Speaker:buildups.com. like, go to our website, go through everything
Speaker:that we offer. There's tons of education,
Speaker:you know, case studies, webinars, you know, we're talking, we're all
Speaker:the way in social media. Go through LinkedIn to either build
Speaker:out's profile or to my profile. We're happy to chat
Speaker:and we're happy to geek out. I mean, eventually we're construction
Speaker:geeks. Love talking about technology, love talking about
Speaker:construction. So reach out. We'll have to chat. Awesome.
Speaker:And it's build. Ots.com, right?
Speaker:No, it's Build. Like a build. Like to build something. Dots.
Speaker:Oh, build dots. So two Ds. Yeah. Yeah. So it's got.
Speaker:I'll make sure that the correct link is in the, in the
Speaker:description and thanks for your time. And we'll let our AI
Speaker:finish the show. And that brings us to the end of another episode
Speaker:of Data Driven, where today we learned that even construction
Speaker:sites can be smarter than your average smart fridge. Huge thanks
Speaker:to Amir Berman from Builderts for showing us how computer vision isn't
Speaker:just for spotting cats on the Internet. It's for keeping billion dollar projects
Speaker:on track. If your idea of a digital twin was a dodgy sci
Speaker:fi plotline, well, now you know better. Don't forget
Speaker:to like, share, subscribe, and maybe send this episode to
Speaker:the construction manager in your life. Until next time,
Speaker:stay Data Driven and maybe wear a helmet just in case.