Adam Ross Nelson on Getting Started in a Data Science Career
On this episode of Data Driven, Frank and Andy interview Adam Ross Nelson. Adam is a consultant, where he provides insights on data science, machine learning and data governance. He recently wrote a book to help people get started in data science careers.
Get the book
How to Become a Data Scientist: A Guide for Established Professionals
Speaker Bio
Adam Ross Nelson is an individual who initially pursued a career in law but ended up making a transition into education. After attending law school and working in administrative and policy roles in colleges and universities for several years, Adam hit a plateau in his career. Despite being a runner-up in national job searches multiple times, he felt that his lack of a PhD hindered his advancement in academia, while his legal background prevented him from being taken seriously by law professionals. Consequently, Adam decided to pursue a PhD in order to overcome this hurdle. During his PhD program, Adam discovered his passion and knack for statistics. His focus shifted towards predictive analytics projects, specifically ones related to identifying students in need of academic support. As he shared his work with friends, family, and coworkers, they began referring to him as a data scientist, a label that Adam initially resisted due to his legal and educational background. However, he eventually embraced the moniker, and even his boss started referring to him as the office’s data scientist, despite HR not recognizing the title.
Show Notes
[00:03:26] Transitioning from law to education administration, plateaued career, runner-up in job searches, pursued PhD, became data scientist.
[00:08:58] Data seen as liability, now asset. Examples: DBA’s OLAP analysis, Walmart’s weather-based inventory management.
[00:12:56] Dotcom crash aftermath: fierce competition for jobs.
[00:22:48] Salespeople have deep-seated insecurities and unique perspective.
[00:29:31] Various classifications of data scientists and career advice.
[00:35:55] “No full-field midfielder, data science is teamwork”
[00:39:23] Navigating job descriptions for transitioning professionals.
[00:42:56] Career coach helps professionals transition into data science.
[00:49:41] First job: English teacher in Budapest, Hungary. Second job: Speaker for Mothers Against Drunk Driving.
[00:56:30] Concerns about reliance on technology, especially AI.
[01:00:22] Food options in lobbying are better in DC & state capitals. Also, check out the funny WY Files YouTube channel.
[01:04:21] You can’t separate them: LLM, bias, internet.
[01:10:23] Ethics in consulting and avoiding dilemmas.
Transcript
On this episode of data driven, Frank and Andy interview,
Speaker:Adam Ross Nelson. Adam is a consultant where
Speaker:he provides insights on data science. machine learning and data
Speaker:governance. He recently wrote a book to help people get
Speaker:started in data science careers.
Speaker:Hello, and welcome back to data driven, the podcast, where we explore the emerging fields
Speaker:of data science artificial intelligence, and, of course, the ever
Speaker:present data engineering. although I would say now that we're in season
Speaker:7, it's not really emerging anymore. You can't go really. You can't
Speaker:walk 50 feet. You can't scroll down any social media
Speaker:platform without hearing about AI and any flavor.
Speaker:I I blame chat GPT. and I've also had a lot of
Speaker:people kind of hit me up on how do I become a data
Speaker:scientist? And, you know, there's a short answer. Right?
Speaker:And there's a long answer. And then there's an answer on how to do
Speaker:it that's written in a book in a book.
Speaker:In a book written by our guest today on the entire book. It's an
Speaker:awesome book. I read parts of it. and,
Speaker:it's the kind of guide I wish I had when I made a transition from
Speaker:software engineering into from well, I I won't just say software
Speaker:engineering. from Silverlight and, Windows 8 application
Speaker:development, right, which is the most embarrassing thing ever. So welcome to the show,
Speaker:Adam. Thank you so much for having me. I'm so glad to hear, to be
Speaker:here. and thanks for the compliments on the book. you you
Speaker:are one of the few folks who had a chance to see
Speaker:handful of pages or many of the pages before it launched.
Speaker:So I'm glad you also had some time to look take a look at that.
Speaker:That's cool. Is this your first book or second book or third?
Speaker:this is the first solo authored book. I have another one that I
Speaker:edited. from my previous career. So actually, that's
Speaker:another topic, like, changing careers. I had a different career in law.
Speaker:So there's a book out there. Okay. Yeah. If you dig deep enough, you'll find
Speaker:a book on school law that I co edited. This is my first solo
Speaker:authored book, thrilled about it. I have another one coming out
Speaker:in a on a different topic coming out in September, that one's with the publisher
Speaker:Kogan page. Interesting. Okay.
Speaker:Interesting. So you're gonna be a multiple book author, which,
Speaker:that's awesome. the the So
Speaker:that's the issue. I didn't know you had transitioned from another career. we had
Speaker:met through Lillian Pearson, and most people know the name Lillian
Speaker:Pearson because she was one of the first people who had a number
Speaker:of LinkedIn learning courses or lynda.com courses. Go back
Speaker:far enough. on how
Speaker:to how to how to transition into data science or or just on data scientists.
Speaker:Yeah. Data science. And she was one of the few for the longest
Speaker:time that was not a mathematician or
Speaker:whatever. So when I so she she had this kind of this private mastermind
Speaker:type thing. So we signed we signed up. We're part of the same cohort, and
Speaker:that's how I met Adam. And, so so tell
Speaker:me tell me how did you get into the law?
Speaker:And then what was that day? Well, okay. Let's we don't have to you know,
Speaker:in the virtual agreement, we're talking about lawyers. Right? But,
Speaker:But, the,
Speaker:what made you decide to leave law? Like, how did how did you kinda, like,
Speaker:start with law and then kinda walk like, realizing, yes. This is for me.
Speaker:Well, I was transitioning into well, in
Speaker:law, I always worked in education. So,
Speaker:in fact, I went to law school thinking I would work,
Speaker:as an attorney for a college of university, most likely.
Speaker:and then I did work for college universities, mostly in
Speaker:administrative roles and policy roles. for our
Speaker:for for many years after a law school.
Speaker:and I had a well, it's an interesting story because Like many
Speaker:people, sometimes you sort of hit that plateau in your career. Yeah. And
Speaker:I had definitely plateaued in education administration
Speaker:with my law degree, I was in about 6 years,
Speaker:5, 6 years. I was runner-up 5 times
Speaker:in national job searches for a new job at a different
Speaker:university. and you know your runner-up because
Speaker:when you get invited to interview on campus for most called university
Speaker:jobs. You go for a whole day, sometimes a day and a half or 2,
Speaker:and then you either get the job or you don't, and they usually only bring
Speaker:two people to campus. So if you go to campus, you know you're a
Speaker:runner-up. and, I I
Speaker:I got to the point where I realized you know, the the really
Speaker:bookish academic folk were not taking me seriously,
Speaker:as seriously as I really wanted to be here. job search
Speaker:process because they didn't have a PhD. And then the
Speaker:law folk weren't taking me as seriously as I needed them to in
Speaker:order to really advance to that next step in the career, because
Speaker:I wasn't then currently working, as a litigator,
Speaker:or as a transactional attorney. Gotcha. So I was sort of in
Speaker:this no man's world, plateauing
Speaker:and that's when I decided to get the PhD. And and
Speaker:I I thought I would get the PhD and go back
Speaker:to education administration but then be able to get
Speaker:past that that hump, that hurdle, that plateau.
Speaker:Yeah. But during the PhD program, I just got really good
Speaker:at stats. so I just
Speaker:I ended up teching up, getting getting good at stats, teching
Speaker:up, and becoming a data scientist And there's a few
Speaker:reasons for that, one of the
Speaker:reasons is I started working on these projects
Speaker:that were predictive analytics We were mostly
Speaker:looking at ways to anticipate which students would need
Speaker:additional academic support. So we're predicting
Speaker:students who would need the help. And, which is a great
Speaker:project, by the way. We should totally come back to that if there's time.
Speaker:And then I was telling my friends about this, my family about this,
Speaker:coworkers, of course, knew about this, and everybody started calling me a
Speaker:data scientist. And I'm like, no. No. No. No. Right.
Speaker:I deflected because I thought, well, that's, like, I did. I w I wasn't trained
Speaker:to be a data. I went to law school. I had this PhD in education.
Speaker:education leadership. and then eventually I just sort of
Speaker:acquiesced, and my boss even started calling me the
Speaker:offices, data scientists, even though HR didn't call me a
Speaker:data scientist, everything else was. Yeah. So finally, I
Speaker:just owned it. And then my first real job.
Speaker:Well, what's a real job? What's not a real job? We have to be very
Speaker:careful with that kind of language. But anyway, my first job where the title
Speaker:was data scientist, was at a national or nonprofit
Speaker:that helped college university or helped students applied to
Speaker:college university. So, again, we were doing I was
Speaker:doing predictive analytics there, just helping students get to
Speaker:college. The biggest project there was we were looking to figure out,
Speaker:for the students who started the application process, but didn't finish.
Speaker:Why? And then, yeah, and then still, it's a predictive
Speaker:problem. Right? So you have the students who start the process. How can
Speaker:we predict which students are gonna finish, which students
Speaker:are at risk of not finishing the application process and then intervene to
Speaker:help those students. There's the value on that. Yeah. So
Speaker:that's how I got into data science. I've never looked back, but I've
Speaker:the point is I've been through a couple different transitions, career
Speaker:transitions, My very first job ever ever was an English teacher as
Speaker:a foreign language. I was teaching English in Hungary,
Speaker:Budapest, hungry, And -- Wow. Yeah. Before the show, I should have
Speaker:mentioned that before the show because we were talking about international travel and things like
Speaker:that. Yeah. So, that's why I wrote
Speaker:the book. This book, one of the distinguishing factors for this book, is it's
Speaker:specifically for I think it'll be useful anybody who wants to become a
Speaker:data scientist, but, this one was
Speaker:really written for established professionals, folks for
Speaker:whom the the job search isn't the first rodeo. Right?
Speaker:You've you've been through one career. You've done well in one career.
Speaker:and now you're ready for one reason or another for a
Speaker:different career. And if you're choosing data science, this is
Speaker:a really a great book. for you. Yeah. Well, it's an interesting topic
Speaker:because we talk to a lot of data people,
Speaker:just, you know, not data scientists, even data engineers,
Speaker:data administrators, data data analysts. And,
Speaker:of course, Yeah. So across the gamut.
Speaker:And what we found is, I I would say just off the
Speaker:cuff frame, More than half. Didn't start in
Speaker:data. Right? I would say easily more than half. I would say that
Speaker:tends to be the the exception. Yeah.
Speaker:and it it it you that leads you to, like, there's an eclectic bunch of
Speaker:people in data. Right? And, obviously, now everybody and
Speaker:their cousin wants to be in this field. Right? Like but Sure. But,
Speaker:I mean, at one point, data was not seen as an asset. It
Speaker:was seen as war liability. We covered that in the previous show. Right?
Speaker:the, but,
Speaker:it was just seen as, like, just You gotta store stuff. You gotta do transactional
Speaker:stuff. Yeah. And I remember I remember the first time
Speaker:the the idea, and this this is gonna age me out, I guess, or in
Speaker:ms of age, out my age. it was:Speaker:I think it was, or:Speaker:there was, She was a DBA. That was
Speaker:her official title, but she was actually really good at doing OLAP cubes and
Speaker:analysis and stuff like that. And at the time, I
Speaker:was, you know, a a young cocky web developer, and I I was like,
Speaker:what does that mean exactly? Because, well, I tried to see
Speaker:if, you know, Kangaroo breeding patterns in
Speaker:Australia have any impact on, you know, rubber
Speaker:prices in Malaysia or something like that. It was like And I
Speaker:just remember looking at her, like, you ever hear something? Like, I saw your eyes
Speaker:light up. Right? Like, I was like, you ever hear something that that is
Speaker:sounds insane? but could also be brilliant, and you're not
Speaker:really sure which one it is. That's how I felt. I was like,
Speaker:I was like, don't ask something.
Speaker:But it was it was, you know, and then at that time, that was I
Speaker:don't think and I don't think the business took anything that she did seriously. I
Speaker:think they kinda It was it was it was years before
Speaker:anyone kinda realized this. And the second time I heard anything about this was about
Speaker:Walmart. how if they detect that the weather is gonna change
Speaker:over a certain threshold in a particular geographic area, that
Speaker:they'll ship more water gatorade and soda. they can lower the price
Speaker:supposedly. This was, like,:Speaker:oh, that's clever. And it was just like, yeah. You know, the the data's already
Speaker:out there. Yeah. And then Yeah. Just put it to work.
Speaker:Just put it to work. Right? And and that's clever because it's not exactly
Speaker:proprietary data. Right? The weather I didn't want to pull the weather
Speaker:data. And, it it it's one of those things where
Speaker:when I was reintroduced to the idea of data science, you know, like,
Speaker:14 years later, I was like, oh, wow. So this really has
Speaker:advanced. Yeah. Yeah. Well,
Speaker:2002 was one of the points I make in in this book and the one
Speaker:in September as well. data science isn't new. Right.
Speaker:Right. But:Speaker:retailers, where Target, made headlines
Speaker:for predicting whether their customers were pregnant.
Speaker:Oh, that was:Speaker:I did not realize that.:Speaker:who don't know, those headlines,
Speaker:is, what we're target really sort of let their
Speaker:AI go off the rails is they ended up predicting
Speaker:teenage shoppers, as pregnant. sending home baby
Speaker:related coupons, parents were getting upset
Speaker:about this. And in some cases, they were predicting
Speaker:customers as the is the the urban legend that's built up
Speaker:around 20 years is. But anyway, in some cases, as the
Speaker:urban legend goes, the Methos goes around this story is Target was predicting
Speaker:customers as pregnant before customers knew they were pregnant. Oh,
Speaker:wow. Right? So Yeah.:Speaker:was, oddly enough, it's a turning point. If you go back and map
Speaker:out headlines,:Speaker:people kinda, like, chilled out over wedge. Okay? Right. And then they
Speaker:were they were ready to start getting back to value.
Speaker:Well, there was also the dotcom crash. I think the hangover from the dotcom crash
Speaker:was starting to clear. You know what I mean? Like and the I mean, that's
Speaker:that's what I remember. you know, it was
Speaker:just that being in technology, you know,
Speaker:you know, in the late nineties was an awesome place to be. After the dot
Speaker:com crash, it kinda like a lot of people kinda washed out because there was
Speaker:no jobs. Like, I I remember part of why I left, New York to
Speaker:move to Richmond, which is how I met Andy.
Speaker:was, part of it was, I mean, there would be,
Speaker:like, one job opening in, like, 60 to 70 applicants. Yeah. Like,
Speaker:it was just ridiculous. And it was just basically, it became, like, the hunger
Speaker:games to get get a just get a job. Like, not even, like, an awesome
Speaker:job to a decent one. It was just and I remember,
Speaker:you know, just clawing at clawing just to get, like, you know, an,
Speaker:an interview, and then it became, like, you know, it became like
Speaker:a reality show of, you know, like, how many rounds of interviews can we force
Speaker:people to go through or, you know, That was really, I think, the origin
Speaker:of the lead code interview, was was that like,
Speaker:I remember one guy gave me a pen and a pencil and said, here, code
Speaker:out, code out a program that does this.
Speaker:Wow. Like, like, by hand? Yeah. Like I don't
Speaker:have, like, a syntax checker. I don't have, like, Right. I don't have a tele
Speaker:sensor, you know, whatever it is. And it was just like, you know, I did
Speaker:it because, you know, I had, you know, rent that needed to
Speaker:be paid. but, you know, and even then, like, you know,
Speaker:that one that took the pull from, like, twenty people. So I was told down
Speaker:to, like, 4 and then I still didn't get the job. So it became kind
Speaker:of this this this but but I mean, it was and and and and with
Speaker:all the the downsizing and the in layoffs and big tech, you know,
Speaker:we're kinda I I don't think it's gonna be who knows. Right?
Speaker:but, I mean, there's definitely definitely I think your book comes at a good time
Speaker:because there are a lot of people out there that are They're probably pondering the
Speaker:next career move. And, you know, data
Speaker:science is a is an awesome field. If you have them, you might my
Speaker:my my opinion, and I tell people, it's like, if you
Speaker:have the stomach for the math. Yep. Yep.
Speaker:Yeah. Yeah. You know, actually, on that point, one of the pet
Speaker:peeves I see is, when somebody says transitioning into data
Speaker:science is easy, it's no. It's
Speaker:not. it's not easy. It's doable. Right. It's
Speaker:doable. but I think easy is the wrong adjective there. And then
Speaker:also there's some posts that say you don't have to know math to transition to
Speaker:data science, which also I think is rubbish. You have to know
Speaker:math. I think maybe the amount of math you have to know can
Speaker:sometimes be exaggerated. Yeah. But,
Speaker:yes, spoiler alert, you do have to learn some math. If you're
Speaker:gonna you're probably it depend unless you are an actuarial,
Speaker:engineer, or an an actual
Speaker:statistic, to transition to data science, you're gonna have to learn some new
Speaker:math. Yeah. Maybe even in those cases too, come to think a bit,
Speaker:because we approach data scientists approach the statistics different than an
Speaker:actuarial, professional, different than a engineer, different than
Speaker:a statistician. That's true. That's true. And but you're right. Like, and
Speaker:and and when you talk to people, I'm very wary of the
Speaker:become a data science kinda courses that have come out, let's say,
Speaker:since:Speaker:There was not a lot of material. Right? Actually, it was Lillian. Lillian was one
Speaker:of the few people that was -- Really? -- not a PhD in mathematics.
Speaker:And, you know, you're a PhD. I I would say this, whether you're a PhD
Speaker:or not. PhDs have a very different viewpoint on the world.
Speaker:Right? Because they they've devoted x number of years
Speaker:to learning a particular discipline. Right? Not everyone can
Speaker:or will devote x number of years to to anything. Right?
Speaker:Like, and all of which should say
Speaker:when I when I would approach existing data scientists, you know, how did you
Speaker:get it? This is keep in mind, this is, some years ago now.
Speaker:you know, they would say, you know, just go back to school. Like, this one
Speaker:was one guy. I was at a Microsoft Research conference and labs. We've talked about
Speaker:this, this, this, this, event. It's it's only available to Microsoft
Speaker:employees. In my opinion, I
Speaker:think part of me wanted to just go back to Microsoft after after I personally
Speaker:was laid off just so I can go back to MLS.
Speaker:Like, it's that good of a conference. but, you
Speaker:know, the one one guy there who's no longer he's he's actually I
Speaker:don't wanna say his name, but he He's actually a chief data
Speaker:officer, chief data scientist at, I wouldn't call him a startup anymore,
Speaker:but it's probably a startup you heard of. And,
Speaker:But it's probably not the one you're thinking. Just okay. No. but,
Speaker:the, It's not
Speaker:OpenAI, basically. Okay. but, anyway, so
Speaker:he, he, he's, like, just turned to me and said,
Speaker:oh, yeah, just go back to school. Like, go get a PhD. Like, it was
Speaker:like, oh, just go get a coffee at the local 7:11. It'll be fun. Like,
Speaker:it doesn't work that way. No. Yeah. So so So but, like, in his
Speaker:defense, right, if you look at his kind of his LinkedIn profile, like, he's been,
Speaker:you know, he got his undergrad at Harvard. I think he got 2 multiple think
Speaker:he actually now has 2 PhDs at MIT. Like, in his circle
Speaker:of friends, that's like me going to to
Speaker:the local supermarket and picking up a thing of milk. Right? Like, I get it.
Speaker:I get it. You know? And and and the so another
Speaker:another person who was also, like, a super duper PhD at this conference.
Speaker:She was super chill. she might actually still be at Microsoft.
Speaker:said, hey. You know, so I asked her. I was like, you know, what should
Speaker:I do? And he goes, she's like, well, take a few courses in
Speaker:it, particularly statistics. if you like it,
Speaker:then your passion for it will will will will finish the job. Like, it'll take
Speaker:you over. You'll find everything else you need. It really was. It was
Speaker:like it was for for me, it was life changing. And she's like, and if
Speaker:you hate it, well, ask yourself this quest. She was also from
Speaker:Europe. Right? So they they have a different Worklife. Okay. philosophy
Speaker:there. She's like and if you hate it, ask yourself the question. Do you really
Speaker:wanna do something you hate. Mhmm. And I kinda walked
Speaker:away from that. And I was like, you know, that's interesting.
Speaker:And, So that was, I mean, that that that was
Speaker:Sage advice, and it turns out that, you know, there were parts of
Speaker:statistics that that I really like, probably because I'm a you
Speaker:know, historically, I've been a lot big baseball fan. and there's parts that I
Speaker:really I really don't like. And
Speaker:But that's like anything. Right? You know, they have to pay you to show
Speaker:up. There's a catch. And, But
Speaker:you're right. So when people ask me, now I have a book, I can recommend
Speaker:them. Right? Like, but, to to if they want tradition to data
Speaker:science, asked me, like, what should I do? And I was like, well, you really
Speaker:should study stats because that's probably
Speaker:about 80% of the lift right there. Sure. Yeah. I
Speaker:I think I agree with that. Yep. And I would say
Speaker:15% is calculus. And
Speaker:the remainder is probably game theory and
Speaker:linear algebra. It'd be kinda how I break it down. Yeah. I
Speaker:would add, and actually in the book,
Speaker:I've, on the advice of a fellow data scientist that I
Speaker:know who works for a big Big Engineering firm that's over a
Speaker:hundred years old based in Minnesota. You probably figure out what that one is. Play
Speaker:this game cap. We're gonna allude to company. He's a
Speaker:data scientist there. He really encouraged me to add a section
Speaker:on contributing to sales and business savvy.
Speaker:Oh, wow. Yeah. For this book. Yeah. and and I
Speaker:see that as a mistake that some folks trying to make that transition
Speaker:from some fields, not at all, but but more of the bookish fields, like the
Speaker:academic folks transitioning into data science,
Speaker:there's there's a
Speaker:there's a diminutive association
Speaker:associated with doing sales. I would I I would say it. I would
Speaker:say it's a flat out stigma. Yeah. It's a stick. That's a better word.
Speaker:Yep. Yep. It's a flat out. And I I I actually just came up the
Speaker:other day in my day job is that, you know,
Speaker:somebody who is a very talented engineer he he's
Speaker:wanting to learn to pitch, like, in how to do sales. Okay. And,
Speaker:like, I think I I don't wanna put thoughts in his head or words in
Speaker:his mouth, but I suspect that that comes from that background wearer. Yeah. He
Speaker:was very hesitant to do that because and I kinda
Speaker:had my revelation with Like, it is it is a process. Right? And
Speaker:and and, you know, Andy and I have talked about the number of sales
Speaker:gurus that we've that we've listened to. I I can recommend Grant
Speaker:Cardone. He is an acquired taste. I'll put that right out there.
Speaker:Right? I mean, the the the putting in context, though, I
Speaker:first heard of this guy, if anyone can remember meerkat.
Speaker:meerkat was an application, that was the live
Speaker:streaming application. Think it came out during a south by southwest
Speaker:It was the 1st, like, live streaming thing you could do on your phone. Now
Speaker:everybody can do it. Right? Yeah. But he was, like, the number
Speaker:one meerkat your cat or your cat? I don't know. He was not one
Speaker:user of it. And, like, I installed the app, and I remember because I had
Speaker:just given up on Windows phone. Right? And I got an iPhone, so I can
Speaker:actually all relapse. And your cat was one of the first things I
Speaker:installed. And I kept seeing these notifications on
Speaker:like Grant Cardone is doing this. And every time I tune in, it was
Speaker:basically him, you know, talking about sales and stuff,
Speaker:being very sales y. Right? Yeah. And and at the time, I thought of that
Speaker:as a pejorative. Yeah. It's easy to think
Speaker:that way. It is easy to think that way. And, I find
Speaker:myself being a sales apologist internally, like, a lot. Like,
Speaker:like, you know, they'd be like, oh, sales people have no attention. No attention span.
Speaker:I'm like, that's not true. They have no attention been because if
Speaker:they and and and it's about, you know, getting
Speaker:other non sales people to thighs with them. Right? As as much as I load
Speaker:the word empathy, and there's a whole story attached to that. The feeling of empathy
Speaker:is awesome. The way that has been mutated and used in
Speaker:this empathy industrial complex is what I have the problem with. Okay.
Speaker:but that's a that's a rant for another day. Okay.
Speaker:But, the, the the
Speaker:the, you know, I was just basically saying, like, you know, if if if you're
Speaker:not in sales. You don't understand what it is. Like, if you don't sell, you
Speaker:don't close, your kids don't eat. Like, it is really it really is
Speaker:that type of thing. And you see all the braggadociousness and all kind of the
Speaker:the the hoopla around it. A lot of that is masking a lot of deep
Speaker:seated insecurities. So you have to kind of but if you ever wanna
Speaker:get a salesperson's attention, show them how you're gonna you're gonna help them make their
Speaker:quota, right? Make their money. Right? And I've kind of done a lot of work
Speaker:in, you know, with with kind of like, you know, oh, they have no attention
Speaker:span. That's not true. They have no patience for nonsense. Right?
Speaker:And that nonsense is kind of like, you know, what you think is an engineer
Speaker:is co I catch myself doing this whole time, right? because I'm a sales engineer.
Speaker:right, where I'll be like, oh, that's really cool. And I kinda have to pull
Speaker:myself back. Thankfully, with the help of, you know, my my manager's kinda mentoring
Speaker:on that. He goes, he just always tells me, do this.
Speaker:anything you do do through a lens of sales. Yeah. And so I always have
Speaker:to kinda pull myself back and like, okay. Yes. That is a cool tech, but
Speaker:how do we use it to sell and solve the solution for customer. Right? That's
Speaker:a hard thing to do. and I don't remember how we ended up in this
Speaker:rabbit hole, but I think it's I think that's a good addition to your book
Speaker:because Yeah. If nothing else, if you're changing careers,
Speaker:particularly people who are changing careers. They need to sell the hiring
Speaker:manager on. Why should I pick you? Yeah. Like, why can't I get
Speaker:Johnny or Jamie or, you know, Bob or Barbara who who
Speaker:who have been doing data stuff for years? Yeah. Why should I take you? Like,
Speaker:you're you you were, I don't know, a lawyer?
Speaker:A lawyer. Right? Like, why should I take you? You were in marketing. or you
Speaker:were in public relations or you were a teacher or you were what?
Speaker:Right? Well, the advice I give in the book is, at the very least, you
Speaker:want to damage rate and awareness of appreciation for and a
Speaker:knowledge of how the company, makes money.
Speaker:Yes. Right. And if you're and and and, and
Speaker:how data science can contribute to that bottom line. And I also speak
Speaker:a little bit about nonprofits in section 2 because there, we're not taught we're not
Speaker:worried about profits, but we but non profits have revenue.
Speaker:So how can data scientists contribute to the revenue?
Speaker:And, one of the thing one of the specific use cases that I'm loving
Speaker:recently, I didn't do talk about this in the book,
Speaker:one of the specific use cases I'm just loving recently is using data
Speaker:science to, hone or refine,
Speaker:basically predict the best ask of a potential
Speaker:donor. So development professionals.
Speaker:Yeah. Fundraising professionals. They'll have their database of potential
Speaker:donors, we can use data science to estimate
Speaker:what's the best ask for that donor. Interesting.
Speaker:And you could and it's a classification problem because there's different kinds of
Speaker:asks. Right? Some people wanna do state giving. Some people
Speaker:wanna just give a one time check and then move on. Some people wanna make
Speaker:pledges for 10 years. so that's a classification problem.
Speaker:And then it's also a regression problem because you have to pick a number.
Speaker:So, anyway, if you're if you're getting for an inter if you're getting ready for
Speaker:an interview, that the level of granularity you need to bring to
Speaker:the interview. You have to make specific suggestions as to how data science
Speaker:can contribute to the company's revenue or bottom line or both.
Speaker:Yeah. That's good advice in any technical interview.
Speaker:Sure. You know, I mean, really, you you definitely wanna you definitely
Speaker:wanna know how the company makes money, and then you wanna know as
Speaker:much as you can about how the department you're applying to
Speaker:contributes to that. and then you can pitch it
Speaker:where you're doing what Frank says. You're gonna go pitch yourself with that
Speaker:role and talk about ideas that you may have. You'd definitely don't wanna
Speaker:give away. Yeah. you know, give away the farm on on any of that.
Speaker:There's an old data joke, where in the
Speaker:first frame, the, the the
Speaker:interview WER is asking, do you
Speaker:know, can you tell me how a deadlock works? and the interviewee
Speaker:says, if you hire me, I will. Yeah.
Speaker:And they just sort of demonstrated a deadlock. right there.
Speaker:Okay. That's a good one. That's a good one. I like that
Speaker:one. Very meta. Very meta. Yeah. You
Speaker:know, Frank, you were talking about, the bread vise, just
Speaker:go to school, just get a degree like you did at coffee. I have a
Speaker:whole chapter on that where I the the
Speaker:subtext is,
Speaker:well, actually, no. Maybe it's not like maybe it's more overt in that chapter I
Speaker:think about it, it's really going through the decision process
Speaker:associated with another degree, a certificate,
Speaker:or or self study or a combination.
Speaker:it the the solution to that is different for every every
Speaker:person is gonna have their own path. There's no rider runway to make
Speaker:the transition. That's true. And and and it's one of those
Speaker:things where part of part of the way through my transition, there was a, YouTube
Speaker:video. I forget who it was. It's not like a famous
Speaker:YouTube or anything like that, but but she's basically had thing
Speaker:where, you know, how I transitioned in 6 months? It's like
Speaker:a TED Talk or TEDx Talk or something like that. And,
Speaker:like, it was like, oh, so it is possible to do it, but do it
Speaker:at speed. It's not easy, but, you know,
Speaker:dual. It is doable. Yep. And that's the thing. Like, you know, I
Speaker:think people who, I'm sorry, cut you off. Yeah. No. I
Speaker:think people people will sell snake oil. Oh, you don't need to learn
Speaker:math. Like, yay. And I would I would
Speaker:I would be kind of, like, I would go a little bit too far the
Speaker:other way maybe. Like, I think, I don't know how many certifications I
Speaker:got that 1st year. I think it was, like, 13 or 14 some
Speaker:odd. Wow. Thank you. and because I just went, like, full
Speaker:on, and it was just kinda like and I'm like, I will read
Speaker:research papers, even though I didn't really have to. Yeah. Right?
Speaker:Just because, like, I knew I would be occasionally and I would
Speaker:tell I would tell, you know, what's this when I was in Microsoft, you know,
Speaker:it comes in handy now too. you know, I may be in the room
Speaker:with mathematicians or hardcore data scientists. You know what I mean? Like, there's
Speaker:different like, my son's played this video game and, like, there's, like, different classes
Speaker:or characters. Right? Like, it's kinda like a dudgers and dragons from back in the
Speaker:day. Right? You have a was a mage a warrior, an
Speaker:elk, an elk, an elk, an elk, and then, like, couple other things. But,
Speaker:like, there's different classifications of data scientists. You know what I'm talking about. Right? you
Speaker:know, there's the PhD ones, like the super heavy math people, and then there's kinda
Speaker:like different levels of, you know, well, they were data engineer, and now they kinda
Speaker:now they're this, or they used to be a developer now they're Like, there's different
Speaker:types of ones. And, like, I would always say, like, the the ones that always
Speaker:carry the most weight in a particular customer account. would probably then
Speaker:be the math, everyone's. And I would always, like, read the crazy math
Speaker:and get into that, you know, as as long as my
Speaker:as as far as my little brain would take me, right, not because because
Speaker:I would say, like, you know, I would say, like, look, I I know I'm
Speaker:not gonna go toe to toe with these people. But if I can step in
Speaker:the ring, I'll lose. That's fine. But at least I look like I belong
Speaker:there, and I think earn a lot of their respect that way. And then sometimes
Speaker:I think I think that's good advice for career stuff too. Like, you know
Speaker:Absolutely. train hard, study hard, you may not win the fight.
Speaker:Right? It's not life's not a rocky movie. Right? But the fact that you you
Speaker:can be in there and look like you belong there. Yeah. is
Speaker:half the battle. Well, I was working with a career coaching client
Speaker:who was comparing themselves to Sebastian Raschka.
Speaker:who, is now he's the kind of data scientist
Speaker:who is inventing new math. Right? Like,
Speaker:he's, like, He's if you don't know Sebastian Raskett, several bugs,
Speaker:professor University of Wisconsin, where I teach also,
Speaker:but he's inventing new math. And I said, hold the phone.
Speaker:Sebastian Raska is a different kind of data scientist. He's inventing
Speaker:new math. You don't need to be able to invent new math to be a
Speaker:data scientist. And in fact, in fact, if you're
Speaker:inventing new math, you're probably gonna be less well positioned
Speaker:in many ways to offer value. because the new math is
Speaker:untested. The new math hasn't been productized. The new
Speaker:math isn't ready for market. What's ready for market, what's been
Speaker:tested, and been productized is good old logistic
Speaker:regression, k nearest neighbors, those
Speaker:support vector machines, those are the that's what
Speaker:brings value because we know the methods. We we've
Speaker:tested them. Right. And people like him are gonna be bored out of their skull
Speaker:on your average job. Oh, yeah. Yeah. He wouldn't run. He I
Speaker:would agree with you. Actually, now I actually, Nick, I wanna see him and be
Speaker:like, Hey. Have you ever just thought about being a K nearest neighbor's engineer? Like,
Speaker:you're trying
Speaker:trying to get smacked off top of the head. That'd be
Speaker:hilarious. Like, you know, but I mean, but I mean, you
Speaker:know, one of the things is, and it wasn't in the chapter I read, but
Speaker:but one of the things that I think is a huge problem in technology jobs
Speaker:overall, not just data science, although I think it's it's written large now in
Speaker:data science now that it's the new hotness. the job requirements and
Speaker:the job descriptions. So weird. That's a that's a
Speaker:topic. I I gotta where are you going with this one? Because this No. No.
Speaker:Like, I mean, like, So so here's a here here's a good example. Right? And
Speaker:I I don't know if you've heard this one before,
Speaker:but I wanna see the look on your face, you know, when when you hear
Speaker:it. I got a call from a recruiter some couple of years ago that they
Speaker:wanted a full stack data scientist. Okay.
Speaker:And the pay -- -- a new word a few years ago? Well, I think
Speaker:the impression was. And I I I kinda pulled the thread on the head recruiter,
Speaker:mostly out of curiosity, not because I had any interest. but I was like, well,
Speaker:when they say, like, full stack data scientists, like, that could mean
Speaker:it leads 1 or 2 things, probably more. But I took that as 1, you
Speaker:take you you you panel the data from ingestion all the way to pushing the
Speaker:model production, which sounds reasonable, I think.
Speaker:ish, reasonable ish. I see Andy -- I'm shaking my head. -- isn't taking my
Speaker:head back. Not not a scalable model. But well, if it's a 7
Speaker:figure saddle, Okay. Then that's reasonable. Right. because you're doing
Speaker:8 jobs. Cho. Also data science is a team sport.
Speaker:It is. Yes. I'm skeptical, I'm skeptical of that, but
Speaker:maybe you could make it work for a little while. But apparently, they wanted someone
Speaker:who would be able to develop the like, they met full stack developer plus data
Speaker:scientist. Yeah. Oh my goodness. That's 2 jobs.
Speaker:Ah, at least. At least. Yeah. which I
Speaker:was kinda like, you want that? And and I look at job requirements, and this
Speaker:is this is this is, pressing down my mind because we're
Speaker:we're, you know, my team probably next calendar year, we'll
Speaker:we'll end up hiring for people. But, you know, we're kind of like,
Speaker:well, what do we want? We obviously need someone who knows open shift,
Speaker:obviously. but we also want someone who's a data science or
Speaker:data engineering background, and also that's kind of a if you draw that
Speaker:Venn diagram, it's a very small subset of people. So it's kinda like We've had
Speaker:this kind of this philosophy of, well, you know, I thought about extreme examples. So,
Speaker:you know, it takes somebody like, you know, like that,
Speaker:professor who's who's inventing new mask play. And he he'd be bored
Speaker:out of his mind. Yeah. Like, you know, in in a job like this. No
Speaker:offense to to to what what I do. Right? Like, but before
Speaker:I have a to be clear. Or or anyone on this call, right? Like, right?
Speaker:Right? Right? So they'd be bored out of their mind. It wouldn't be a challenge.
Speaker:So, like, you know, there's And that's just the same problem I saw it, like,
Speaker:in the early days of the web where you went from where there was a
Speaker:webmaster who did everything to then it kinda broke out into specialties.
Speaker:Yeah. But but I don't but the same problem exists from
Speaker:even before the Internet, you know, imagine those days. but
Speaker:the job requirements were always just like, you
Speaker:know, really intense. This is a longstanding problem in IT.
Speaker:maybe the other fields too, but but what are your thoughts on that? And, like,
Speaker:you know, and as particularly can be intimidating for career transitioners. Right?
Speaker:Like, I'm thinking, you know, well, you're a
Speaker:baseball fan. You told me that earlier -- Yeah. -- on the show.
Speaker:could you imagine a full stack midfielder?
Speaker:That's a joke. Right. It just doesn't exist, right? Or or what about, like, a
Speaker:full field midfielder? Like, there's like, that position
Speaker:doesn't exist. Data science is a team sport. You need to field a
Speaker:team as an organization, you need to feel the team
Speaker:to, implement data scientists or data science
Speaker:work. that's just the way that's the way the world in my view. And
Speaker:maybe that feels extreme to some listeners, but,
Speaker:I'm skeptical of Now, I'm not skeptical
Speaker:of the notion of a full stack data scientist. I think a full
Speaker:stack data scientist can function really well on a
Speaker:team. Right? So maybe there's a data scientist whose
Speaker:job it is to know a little bit of all of the team components,
Speaker:and maybe having has a little bit of experience in all of team components,
Speaker:but there's also a data scientist. There's also a database
Speaker:engineer. There's also a software engineer and then
Speaker:and if you're thinking about more of the phases, there's someone in charge of of
Speaker:extracting, collecting, cleaning, preparing data. There's someone in charge of
Speaker:modeling refining, testing, and then there's someone
Speaker:else in charge of putting into production. And then don't forget you need
Speaker:someone else in charge of of grooming the work to make
Speaker:sure that models don't decay. Right? So, like
Speaker:I said, I I guess maybe my thought are are I'm not
Speaker:skeptical of the notion of a full stack data scientist, but I think a
Speaker:full stack data scientist in a vacuum is not a strategy
Speaker:for success. Right. Right. It's totally not scalable. And
Speaker:and what they were like they ended up the recruiter actually shared with me at
Speaker:the pond. Like, you know, we we're having trouble finding somebody. So is the custom
Speaker:you know, so is the end client. And I'm like, no kidding. Yeah.
Speaker:You know? And, like, And I don't wanna beg on tech recruiters because I think
Speaker:they have gotten better, but, like, I remember hearing. It's a tough
Speaker:job. And and my my neighbor is actually a a tech scruder.
Speaker:And and, you know, HR people I'm gonna
Speaker:I'm gonna play this the the generalization game, but that's okay. I have some
Speaker:stats to back me up you know, IT
Speaker:people tend not to be the most gregarious human
Speaker:beings in the world. Right? That's not crazy. Right? -- crazy talk.
Speaker:they tend not to be. Right? I'm not saying it's impossible, but, you know, but
Speaker:an HR people tend to be
Speaker:They don't know how to re interact, I think, at at at scale yet,
Speaker:like, how to interact with IT people. So how do you get you know, and
Speaker:and I think combined with, like, these ridiculous tech requirements, you know,
Speaker:or or be rex, right? Like, you know, you have to know this. You have
Speaker:to know that. You have to know that. You know? And if you come hold
Speaker:a thread at any of those. Like, well, does your company do that? No. We
Speaker:don't have any of that that techno. Why are you asking for it? You know,
Speaker:like, it is it becomes this kind of it becomes a
Speaker:game, and it's it's it I'm not
Speaker:really sure who's winning at said
Speaker:game, but Yeah. It's not the average kind of,
Speaker:you know, applicant in in IT. Right? Right. I don't know. Like, I
Speaker:just, you know, but I mean, like, is there any advice in the what advice
Speaker:would you give, or or is in the book that to If I'm a
Speaker:career transitional and, you know, all the job requirements is that they
Speaker:have to have 9 to 10 years of experience in you
Speaker:know, working in IT. Right? And my my background is, say, marketing.
Speaker:Right? Like, what what would your advice be?
Speaker:Well, that is one of the the the tougher things
Speaker:to really suss out for transitioners. and one
Speaker:of the things you can do is
Speaker:a job description might be specific and say so for data science, job description say,
Speaker:I
Speaker:want the company wants 5 years of
Speaker:of experience, or the job description might
Speaker:say, I want that employer wants 5 years of experience
Speaker:in data science. And some,
Speaker:some recruiters, job description writers are intentionally
Speaker:writing the former. They're just saying 5 years of
Speaker:experience knowing that people, they're also
Speaker:open to folks transitioning into the field.
Speaker:So, like, well, let's take, well, let's take Lillian, for example.
Speaker:Right? So if I was advising Lillian,
Speaker:And back when she was first transitioning into data science, I think I
Speaker:know enough about her resume, I would say, you're gonna
Speaker:apply for jobs that ask for up to 10
Speaker:years of experience, period, because she had about 10
Speaker:years of experience as an engineer. Right? And
Speaker:then you're gonna you're gonna tread more cautiously on job descriptions
Speaker:that say, they want specific experience in data
Speaker:science. And then that's one of your research tasks
Speaker:on on on informational interviews. Right? A lot of
Speaker:there's sort of a lot of, sort of nonspecific advice on
Speaker:information interviews, but one of the really high
Speaker:value questions to ask in an inter inter informational
Speaker:interview is, this question, when your
Speaker:company makes a job description and says, x
Speaker:number of years of experience, are they typically looking for x number of years of
Speaker:experience in that specific role? or X number of years of experience
Speaker:in general. And and sometimes that can that can be really consistent
Speaker:across an entire organization. Sometimes depending on the branch of the
Speaker:organization, it can differ, but that is one of the most high value
Speaker:questions you can ask in an inter informational interview. It will give you
Speaker:intelligence that will inform your job
Speaker:application decision making process in really important ways.
Speaker:Interesting. That's a really good point. And
Speaker:I I I love where we're I love where we're going. I love everything we've
Speaker:covered. I know, I have as to make up
Speaker:for, being late, I have a hard stop. So,
Speaker:yeah. And we have we have these questions that we like to ask
Speaker:every guest, madam, and I'm gonna kinda pivot into that.
Speaker:I'll start with the first one. How did you find your way
Speaker:into data, and I think you partially answered this at least. Did data find
Speaker:you, or did you find data? Yeah. It I think day
Speaker:initially, data was finding me. I just had jobs at work
Speaker:that recalled for data science So
Speaker:I did data science. I solved the problem that was ahead of me in
Speaker:front of me, even though I wasn't a data scientist. And then
Speaker:eventually, I decided, oh, This data science thing is
Speaker:a thing for me. I decided to become more intentional
Speaker:about it. Yeah. That's how that's that was my path. Good
Speaker:answer. That's cool. Alright. So
Speaker:what's your second question? What's your favorite part of your current gig?
Speaker:But first, what is your current gig? you you mentioned in the virtual green room,
Speaker:you travel, you teach. What what do you consider your gig?
Speaker:what is your favorite part? primarily, I'm a career coach. I
Speaker:help mid and late career professionals, folks who were like me
Speaker:when I transitioned to data science, transition into data
Speaker:science. So folks who have already been successful in at least one other
Speaker:career, and now they're ready to come into data science.
Speaker:and that's why I wrote this book. How do we become a data scientist, a
Speaker:guide for established professionals? I know you have another
Speaker:question coming up. What what when I'm not at work, what do I enjoy
Speaker:doing? That would be teaching. So I mentioned actually,
Speaker:I even on the show. I mentioned, I work at University of Wisconsin,
Speaker:teaching statistics, data management. And then every once in a while, do a
Speaker:semester of education law because they really, really need help with that.
Speaker:hard to find, as you can imagine, people to teach that niche.
Speaker:and it was since it was my former career, I say, yeah, I can do
Speaker:that. So, I
Speaker:stay really fresh. That's one of the ways I stay really fresh is by
Speaker:teaching statistics, data management, to grad
Speaker:students, university of Wisconsin. So that's one of the things I do when I enjoy
Speaker:when I'm when I'm I do for enjoyment when I'm not working,
Speaker:in data science or as a career coach. That's interesting. So have you seen with
Speaker:the rise of, of these technology? Have you seen more interest in that
Speaker:space? Absolutely. the students
Speaker:are are really asking. They are because
Speaker:they know I became a data scientist, and they know my full time work is
Speaker:data science and career coaching. so maybe it's a
Speaker:function of that, but I I've I was getting those kind of
Speaker:questions before I was a full time coach,
Speaker:to yeah, students know. They just know.
Speaker:They're in grad school, and they know that academia
Speaker:is not necessarily what it used to be,
Speaker:and they wanna know how to get into data science. So I'm spending a lot
Speaker:of time right now talking with folks on campus. How can we bring
Speaker:some of the more relevant, skills to the classroom.
Speaker:For example, on college campuses, we spend a lot of
Speaker:time teaching Stata. which, if you don't know, is a fantastic
Speaker:software, but it's really niched into economics
Speaker:or camp college university campuses. So how can
Speaker:we continue our honoring our
Speaker:heritage with stata, which again, great software,
Speaker:but also expose students more to R and
Speaker:Python. For example, this is one of the many examples. Interesting.
Speaker:Interesting. I had not heard of state in, like, 5 years. You're the first person
Speaker:to mention it in, like, 5 years. It is. I I still use it daily.
Speaker:I, like, I'll have data here and Python there, and I go back and
Speaker:forth. Oh, nice. Yeah. Very nice. Well,
Speaker:you answered 2 of the questions. that we, that we had there together.
Speaker:I just I wanted to ask another question since we you've, you've
Speaker:taken one out. The, One of the popular
Speaker:speakers in the Microsoft data circuit probably 10,
Speaker:12 years ago was, David DeWitt, Okay. And
Speaker:I understand he was at university of Wisconsin. At least out of Madison, I
Speaker:think it was. Yep. That's where I live. Sorry. Not take that. Well, take that
Speaker:No. Yeah. He was a teacher there. Wisconsin Madison. And then,
Speaker:I'm just I pulled up Wikipedia while you were chatting. He was I
Speaker:started the Wisconsin database group says, but it needs a citation
Speaker:for that. And it says here he's he moved to MIT. I didn't know that.
Speaker:He was still at u of w when he spoke at
Speaker:the the largest data Microsoft data conference on the planet is called,
Speaker:the Pass Summit. It happens in, Seattle every year.
Speaker:and he did the keynote out there a few years and just blew
Speaker:everybody's mind talking about database theory and some of
Speaker:that. Just curious if you ran into him out there, or if he
Speaker:if he's left, probably no one knows knows him. I haven't.
Speaker:I'm gonna have to add him to my list of folk to try and connect
Speaker:with, the,
Speaker:yeah, the current well, now as soon as I name one
Speaker:person, people I leave out are gonna be really disappointed.
Speaker:You know, it's not for what it's worth, maybe this is just a chance for
Speaker:me to plug. Go badgers. Big 10 University of Wisconsin,
Speaker:Madison. I mean, one of I had statistics with a
Speaker:former member of the White House Council of Economic Advisors as my
Speaker:professor. at Wisconsin. Right? So that's a big deal. Right? And and
Speaker:you can say similar things about other professors teaching stats
Speaker:at other important schools. But it
Speaker:it it surprises me, not at
Speaker:all that a superstar like David Duett was at Wisconsin.
Speaker:Yep. Yep. Cool. Okay. I'll I wanna jump back into our questions here.
Speaker:So another complete this, sentence, is I think the coolest
Speaker:thing in tech today is blank. coolest
Speaker:thing in tech today is Oof. This is the tough
Speaker:one because there's so many choices. I have analysis paralysis
Speaker:and decision paralysis on this one.
Speaker:I you know what? Can we I'm still can we come back to this one?
Speaker:Sure. Absolutely. Yeah. Yeah. Let's come back that one? Well, we haven't gotten feedback that,
Speaker:you know, we should mix up the questions a bit. So, we're doing that right
Speaker:here in real time. Sure. So I'll skip to
Speaker:I look forward to the day when I can use technology to
Speaker:blank. Do nothing. I look forward to the day where I can
Speaker:completely unplug. I I won't have to worry about
Speaker:email anymore. I won't have to worry about text messages anymore.
Speaker:wanting to worry about social media notifications anymore. I look
Speaker:forward to the day where I can completely get away from technology.
Speaker:I mean, it has been my livelihood now for many years,
Speaker:and I'm grateful for the livelihood that technology has provided me.
Speaker:And I will be happy in tech career, probably for the rest
Speaker:of my professional life. but I also
Speaker:do look forward
Speaker:to the day where I can unplug. So maybe there's a configurate
Speaker:answer. I'd be interested if anybody else has given a similar
Speaker:answer on the show. Hi, Dev. I think, a lot of it has been
Speaker:around auto around so they could do more things they would enjoy.
Speaker:Although the idea of an Adam GPT bot that you could
Speaker:email back and forth with and converse with, that would be pretty cool, actually. I
Speaker:could be cool. Sorry. alright.
Speaker:Andy, you wanna take the next one? Yeah. I can do that. or
Speaker:whatever. Yeah. We'll, we'll go to share something different
Speaker:about yourself, but we remind every guest that it's a family
Speaker:podcast. Family show? Yeah. Yeah. I,
Speaker:so my first job, full time,
Speaker:adult job, after high school, but before
Speaker:college, believe it or not, was teacher of English as a foreign language in
Speaker:Budapest, Hungary, really like telling this story
Speaker:because from then on, it was in the late
Speaker:nineties, a little bit older than I look. It was in the late
Speaker:nineties, and, getting that
Speaker:foundation of managing a classroom, planning,
Speaker:you're planning the fates of other people in this constrained
Speaker:way because you're in charge of what they're learning. They're in charge of what they're
Speaker:learning too. It's a collaborative thing. huge
Speaker:professional development opportunity for someone in their late teens, which is
Speaker:what I was. when I did that, One more.
Speaker:here's a fun one. I also was, I did a short
Speaker:stint as a professional speaker for mothers against
Speaker:drunk driving. Really interesting. Okay. I
Speaker:yep. I was the guy who came to your high school. I did middle schools
Speaker:too. We had a different show from middle schools, different talk from middle schools, But
Speaker:I was the guy who came to your show, talked about healthy decisions,
Speaker:a little bit of some life planning, a little bit of relationship
Speaker:stuff, Believe it or not, we didn't touch so much on
Speaker:drugs and alcohol. We talked more about general wellness. And
Speaker:then for, the middle schoolers. We really were in the wellness,
Speaker:in the wellness, topics, to be more age
Speaker:appropriate for the middle schoolers. I spoke to tens
Speaker:of thousands of students at 100 of schools in that -- Wow. --
Speaker:roughly a year. I was with them. So Wow. You were
Speaker:doing coaching even then? Yeah. In a way.
Speaker:Yeah. Although I was doing group coaching sessions, for,
Speaker:I think the smallest group was maybe 50 students at a small
Speaker:school. You know, my largest audience, I think it was
Speaker:the, Oh, god. What was the name of this? National it was a
Speaker:National Association meeting of 1 of the 1 of the high
Speaker:school, Oh, gosh. What was I can't remember the name. Anyway,
Speaker:there were, like,:Speaker:hall. So that was my largest audience ever.
Speaker:that I didn't draw them to the let's be clear. I didn't draw them to
Speaker:the convention center. Motors against what Driving did. but that
Speaker:was also a really powerful experience. I I really enjoyed the time
Speaker:speaking, being a professional speaker. Very cool. That's
Speaker:cool. Yeah. Alright. So we're gonna check-in on that background
Speaker:thread. Have you, thought about what the coolest thing in technology
Speaker:is? You know, I'm gonna go with the low
Speaker:hanging fruit. I'm really trying not to do this, but I gotta go with
Speaker:generative AI. Yeah. Yeah. It's
Speaker:it's really prescient right now.
Speaker:it's pervading everyone's thoughts.
Speaker:coolest thing in technology right now. Could I also give you the
Speaker:most worrying worrisome thing in technology is related
Speaker:It's all of the folks who are resisting
Speaker:generative AI, just
Speaker:absolutely gosh. I I I just,
Speaker:I'm I'm I'm I'm worried that folks are
Speaker:gonna resist generative AI in a way that's going to inhibit our
Speaker:ability to adopt AI in thoughtful
Speaker:humanistic, productive, ethical
Speaker:ways. I'm really worried that that's going to get in the
Speaker:way. Yeah. The knee jerk reactions have been interesting.
Speaker:And and and to be clear, like,
Speaker:It's really around the the text generation. Right? Like -- Yeah. -- you know,
Speaker:the the art generation stuff, you know, there were some dust ups because
Speaker:it won, I think, the Colorado state there. Right? But but nobody
Speaker:flipped the bleep out. Right? and
Speaker:the reason why we we choose the family friendly thing is because I listen to
Speaker:cancel the kids in the car. I'm assuming others will too. So that's why.
Speaker:So they they literally lost everybody lost their lid when
Speaker:you know, when when when in the text generation, I thought that that says something
Speaker:interesting about kind of how we communicate as human beings, personally.
Speaker:you know, obviously people have been kind of you know, biting their fingernails
Speaker:over deep fakes and stuff, but you're right. Like, you know, the knee
Speaker:jerk reaction of the New York City public school system and again, on
Speaker:another rant soapbox I could go on with the the New
Speaker:York City public education system as a as a wouldn't say an alum
Speaker:because I didn't graduate from there because I went to a different school, but,
Speaker:you know, for them to ban it was was kind of I understand the
Speaker:reasoning is kind of over overstepping. Right? It's kind of like if I if I
Speaker:have a mosquito on my arm, I I I slap it away.
Speaker:I don't get a mallet or hammer and just start smacking my my my
Speaker:my my my arm. that's kinda what it was. I think
Speaker:Italy now is is trying to ban it. I think banning things
Speaker:is 1 should really be the option of last
Speaker:resort. Yep. Because, I mean, look at this,
Speaker:look around you. Like, you know, there are a lot of things that are banned.
Speaker:They are specifically illicit narcotics. I wouldn't say
Speaker:they're easy to get, but you can still get them. You -- Well, what I
Speaker:you know, what I think about when I hear stories like that, especially of the
Speaker:of the banning stuff, I'll I'm I'm 59.
Speaker:I'll be 60 in 3 minutes. And so when I went
Speaker:to, went to high school, calculators weren't new,
Speaker:We were about a generation. Yeah. We were a generation
Speaker:beyond the the the ones that were that did that or a
Speaker:fraction of that work, and they were huge. And
Speaker:we didn't have as far as we didn't have graphing calculators at that time, they
Speaker:did show up when I was in in college. But I went
Speaker:to college about 10 years after I graduated, so we had graphic calculator
Speaker:soon. But that that's what I think about it. The teachers would, you know,
Speaker:the it's an old joke. It's all over social media, but it's true. They would
Speaker:say, you know, in calculus class, the teacher would allow us to do later
Speaker:tests with the calculators. Once Once he knew we understood
Speaker:the principles. But before then, it was by hand.
Speaker:Mhmm. I learned how to use a slide rule, but not really well. I just
Speaker:gave. It was kind of like Here's a slide rule, and this is how we
Speaker:used to use them. And, you know, you watch that scene in Apollo 13
Speaker:where he's chained everybody's checking the calculations, and they're all doing the slide rule
Speaker:stuff. So I don't remember how to do slide rules. I didn't do it enough,
Speaker:but the teacher would ask that question. Are you gonna have a calculator with you
Speaker:the rest of your life? And I'm like, You know, now the joke is
Speaker:I am gonna have to get the way it is. And a and a television
Speaker:studio. Yep. Right. Right. Right. You know,
Speaker:it's so I and I wonder how much of it is kinda down
Speaker:at that same vein. And I'm not against that. I mean,
Speaker:You know, I I want people to be able to, to do the
Speaker:math. You know, it's as much as you
Speaker:can because there's something about putting a pencil to the piece
Speaker:of paper and walking through the exercise, and
Speaker:and I'll just I'll just say this. Even though I can't do
Speaker:it, I'll just say this that, you know, type in 6 letters
Speaker:into Excel, with an equal sign in front of it hitting it
Speaker:again per end and having it pop up the parameters is not the same
Speaker:thing. And, you know, we're We're living in an
Speaker:age, and I don't wanna I'm not gonna say I'm not gonna clarify what I'm
Speaker:about to say. I'm gonna be intentionally vague here. But we're living in an age
Speaker:where things may go away. That's not you know,
Speaker:it's more a distinct possibility than it
Speaker:was 10 years ago. And so what if? you
Speaker:know, what if we lose the ability to do, some tech,
Speaker:or we lose it for a while, you know, math is still gonna be a
Speaker:thing that we need to do. So I I agree with the intention,
Speaker:and I I'll say it this way. I respect the intention. That's a better way
Speaker:to say it. And and especially when it comes
Speaker:to to that, I'm and having spoken
Speaker:to a parents, we talked in the, you know, the electronic green
Speaker:room about all all the kids and grandchildren I have. The, you
Speaker:know, I could get it as as that point. I'm but being
Speaker:a data engineer, I don't and don't
Speaker:quite connect all of the dots to banning the, the AI
Speaker:stuff. I don't I don't get it. I understand the fear. I I
Speaker:get that part of it, and I think some of it is is justified. Maybe
Speaker:more than people are, you know, willing to give it credit
Speaker:for. And I'm I'm about to order a t shirt that says
Speaker:I need new conspiracy theories because my things have all come
Speaker:true. Is that from is that from the WIFILs?
Speaker:No. I don't think that I think it's a it's a it's
Speaker:a reporter online. I'm trying to remember which one, but
Speaker:Yeah. That's that's a that's a cool, cool t t
Speaker:shirt that I need to get as well. But, anyway, it's just, you know, I'll
Speaker:I'll stop. I'll re I could ramble, but Awesome. Well, I wanted to say your
Speaker:experience is, the there's a story behind your
Speaker:story. The story behind your story is that Event, yeah,
Speaker:calculators were a controversy when they first became available.
Speaker:but now calculators are integrated into the curriculum.
Speaker:Right. Right. So so I think about this because the PhD again is in education
Speaker:policy. Right. Right. And policy is pedagogy or
Speaker:pedagogy. depending on how you wanna right. But anyway,
Speaker:eventually eventually, it's inevitable generative AI
Speaker:will have to be integrated into the current curriculum. Yeah.
Speaker:and there were districts that banned graphing calculators.
Speaker:Yeah. That's right. There were schools and districts that banned
Speaker:graphing calculators just the way generative AI is now
Speaker:banned in some districts. Yeah. It will pass. Hopefully, it will
Speaker:pass. Yeah. No. I I could see that. And I think that there's
Speaker:I think that one of the things that I
Speaker:learned when I was doing tech policy. And for those in the outside of the
Speaker:Beltway, when we say policy, we're kind of mean lobbying,
Speaker:kind of. Okay. Don't wait. Would you agree with that, Adam? Kind
Speaker:of. Yeah. Well, there's different flavors in the DMV area, but I get it
Speaker:when you say policy and lobbying. your
Speaker:your your working to influence statute and,
Speaker:administrative regulations and funding and granting from
Speaker:all of the science foundations, etcetera. Yeah. Right. It's kind of
Speaker:it's not exactly the same thing, but it's in that same orbit. Right? Okay.
Speaker:Though, I I would say, like, I mean, I certainly the the the the food
Speaker:options in the lobbying, world are much better than
Speaker:than anywhere else I've ever worked. But, but
Speaker:that's a story for another show. but yeah. So
Speaker:but, I mean, this is kind of like just something that you only really see
Speaker:around largely around DC, probably other state capitals
Speaker:and stuff like that. But when we I the other thing I wanna point out
Speaker:is I mentioned the WY Files, the WY Files is a funny
Speaker:YouTube channel. And you have to check it. It's
Speaker:hilarious. Like, they they they the hecklefish is kind
Speaker:of this talking goldfish. which I realize, as I say it out loud,
Speaker:you have to see it. You have to see it. And and there's a pin
Speaker:foil hat on the on on the on on the on the on the fishbowl.
Speaker:Right. It just it's just funny. And, like, he the
Speaker:fact that he talks is act he's he I guess, 8, the the host is
Speaker:from New York or whatever, but, like, the way that the fish talks hounds exactly
Speaker:like my relatives who who lived in Queens, New York sounded. So
Speaker:he's like -- I I had meetings. I I jumped in late, because
Speaker:I had a meeting run long, and I'm wearing my consulting costing. This is what
Speaker:I said. But underneath this, there is a crab cat, a fear of the crab
Speaker:cat t shirt, with a diagram of a crab cat.
Speaker:That is a WAV file's merch. sure. And you can
Speaker:check it out on, on YouTube. And it's kind of a play on the X
Speaker:Files. They do fringey stuff. And what's really interesting
Speaker:about it, though, is he's the the host list. He does his research.
Speaker:and he starts with a bunch of things about some conspiracy theory type
Speaker:thing. And he kind of plays through the
Speaker:conspiracy theory from the conspiracy theorists standpoint.
Speaker:And he doesn't mention -- -- response. He doesn't actually respond yet. -- at the
Speaker:end, he does, like, a debunk. And what's interesting about it
Speaker:is sometimes it's just that. But then other times, he'll get to the end of
Speaker:it and he'll say, you know, I can debug all of this. but I get
Speaker:to this piece and I can't. And and then the other times, he'll
Speaker:get to that. And he'll say, and it changed my mind. I don't now I
Speaker:don't know. And it's he's a first off, he's an interesting character.
Speaker:Are you watching it? No. But -- Oh. -- I I I am googling
Speaker:for while you're telling me about it. This is -- Oh, okay. Yeah. This is
Speaker:great. I also found a data visualization product called
Speaker:WY Files. Oh, interesting. Yeah. So check that out. Now we gotta
Speaker:check that out too. Yeah. So I always love hecklefish. Hecklefish is
Speaker:awesome. Yes.
Speaker:Free free shout out there to Wifi. It's not a sponsor, but maybe
Speaker:one day we'll be. I'm gonna throw this in because we keep forgetting
Speaker:it. where can people learn more about you, Adam, and work
Speaker:that you do? So LinkedIn and Twitter are
Speaker:my most active social media platforms. Please
Speaker:connect with me if you have any inter yeah.
Speaker:I, and the listeners love connecting with new people.
Speaker:the, book is available, how to become a data
Speaker:scientist. is available on Amazon. It barnes and Noble pretty much
Speaker:wherever books are sold. There's an ebook, a hardcover, a paperback,
Speaker:Nice job. And then there's another book coming out in September, which I
Speaker:encourage folks to pre order. You can get that on Amazon. It's called Confident Data
Speaker:Science. Nice. Okay. Adam Ross Nelson, and Covenant
Speaker:Data Science is a tech book. It's -- Cool. -- op code. But the interesting
Speaker:thing about that book, it, you know what? If you'll have me, Well, I should
Speaker:come back and talk about that book too once it comes out because we should
Speaker:set that up. That would be awesome. It it covers the history
Speaker:of the field. the philosophy of of the field, the there's a
Speaker:I I hit ethics really hard in that book. Ice.
Speaker:And I hit culture really hard in that book. so
Speaker:even though it's a technical book, I hit those non
Speaker:tech aspects really hard, because I don't know any other
Speaker:tech book that does that. You can't separate them. I mean, you can't. If
Speaker:you're talking to an LLM, right?
Speaker:And and I see You know, I I keep up with a
Speaker:I keep up with some of this stuff around culture, especially. And I
Speaker:see the the first thing I saw was the thing about bias. And
Speaker:I can't remember that guy's name. I had to I I gifted Frank,
Speaker:a a subscription to his sub stack. And he wrote about that and how
Speaker:it slants. It's it's not skewed. You know, it's not when
Speaker:but he's he's doing a vertical chart on it. He definitely sees a slant in
Speaker:there. And the way he approached it, which I thought
Speaker:was fair, is that this is a reflection of us.
Speaker:So when people talk, I was here 20 years ago when the
Speaker:internet came out, oh, there's all of this bad stuff on the internet. Right. And
Speaker:I'm like, It's us. People, you're looking at
Speaker:us. Get yourself. Wow. I don't know. Reminds me of that South Park
Speaker:episode. The inter the internet didn't invent. Go ahead. Park
Speaker:episode? No. Where they they they they see the architect of
Speaker:Walmart. You ever see that one? I don't know this
Speaker:one. Oh, it's a it's a it's a play on the and basically
Speaker:Walmart. There you go. Air met. Yeah. And it was, and, the Walmart, becomes like
Speaker:this self sentient,
Speaker:like, things takes over all the town and stuff like that. And then the
Speaker:kids go to the back. Sorry, spoiler alert, but the episode's been out 10
Speaker:years. So -- Yeah. -- just for the listeners, And then the the the
Speaker:kids see the kids talk to the Colonel Sanders looking
Speaker:architect, like, from the matrix. And, and he's
Speaker:like, well, here's the secret if you're ready and, like, they open the door and
Speaker:it's a mirror. Right? It's a reflection of themselves.
Speaker:That's good. the kids the kids look each other and say that. And then, like,
Speaker:the architect jumps in a typical song. See, don't you get the symbolism? Don't you
Speaker:get symbolism? It's like, yeah, we do shut up. Like, it was it that was
Speaker:a very soft park moment. But it it's that. And that's good. you
Speaker:you feed in how many, you know, how many how many tons of data and
Speaker:text did chat GPT read to be trained? It
Speaker:was It's seeing us. Right. It's
Speaker:spitting back at us us. Thanks for putting it that way. You
Speaker:know, yes, we're biased. We're we're never gonna be neutral. We're never gonna
Speaker:it's not a 0 sum game. We're never gonna go down the middle. And if
Speaker:you'd had done it a 100 years ago, it would have been slanted the other
Speaker:way. because we were there a 100
Speaker:years ago. different other ways. Right? Like, there are things that Frank, I lost your
Speaker:audio. Oh, no. Maybe it's me. I still have it. Yep. It
Speaker:is me. Okay. And I hate this. No. It's a it's an interesting point because,
Speaker:you know, and and standards change change the team's fault. This is It's not even
Speaker:it's an Andy fault. Every and it it's not because I it happened to me
Speaker:on Zoom earlier. Okay. Now Honey, we hear you. Okay. No. It's interesting because
Speaker:if you look at, like, movies, like, a Mel Brooks movie, a mailbox movie could
Speaker:not be made today. Right? Alright. I didn't hear you.
Speaker:Oh, now I can. Okay. Can you hear me? Yeah. I ended up
Speaker:getting 3 things in my speakers, and they're all the same. They're the same
Speaker:headphone brand. And I'm like, what are you doing? And it does it in
Speaker:zoom, It's not just teams. Oh, okay. So we're not
Speaker:fashion teams? No. No. I mean, it's just, you know, standards change over
Speaker:time. what what constitutes bias or what constitutes the idea of
Speaker:neutral, I think, is is is a moving target.
Speaker:Absolutely. That's a great point. It's,
Speaker:I was gonna make a analogy about Mel Brooks movies, but, you know,
Speaker:like, I think we lost Andy's audio
Speaker:now. No. Am I back? You're back. I was
Speaker:laughing, but but yeah. So so here's a question, Adam. It kinda dovetails nice
Speaker:to our final question. Is there gonna be an audible book audio book
Speaker:version of this? You know, I I, for those who know a little bit about
Speaker:Book Publishing, there's an ESPN for the audio version. Mhmm.
Speaker:So once we get that recorded, we'll we'll, have So you are gonna do it.
Speaker:Cool. Yeah. Are you gonna read it? Yeah. I
Speaker:I I believe so. I just think that's the way to go. I mean --
Speaker:I agree. Yeah. I I audio books read by the
Speaker:authors are just incredible. Although, There are some really good
Speaker:audiobooks out, some new Star Trek that that are in the
Speaker:Bacard, you sub universe of Star Trek, not read by the
Speaker:author. Incredible. oh, and I know you're looking
Speaker:for recommendations, book recommendations. That's probably your next question. Yeah.
Speaker:That's right. Yeah. So I wasn't planning. I did my homework,
Speaker:thought ahead. I wasn't planning on recommending those Star Trek books, but
Speaker:they are absolutely incredible prequels and pickles
Speaker:and post c post quals? What's the, sequels?
Speaker:SQL. There you go. Yeah. To the Picart
Speaker:show. But -- Okay. Oh, wait. I also wanna recommend
Speaker:one of the shows that this this show today's show has really
Speaker:reminded me of is halt and Catch fire. Do you know it? I do. I
Speaker:was a TV show, wasn't it? Yep. Yeah. And on Audible
Speaker:is, follow-up to halt and Catchfire.
Speaker:worth your time. Okay. And then my classic book
Speaker:recommendations, I know these are unaudible, are weapons of
Speaker:math destruction, Kathy O'Neil, algorithms
Speaker:of pre oppression, Sophia Noble, and superintelligence
Speaker:by Nick Bostrom. All three of those are also on audible. And
Speaker:there, as far as I'm concerned, any reference list and data science that
Speaker:doesn't include those three books is incomplete. Nice.
Speaker:Awesome. I love that dovetailing into you now that you're writing about ethics. I
Speaker:I'm really I'm really curious to see, where you
Speaker:come how how you approach Escal AI because having this
Speaker:other background that also involves ethics, the law,
Speaker:Sure. Yeah. I I think you have something to add to that conversation. There may
Speaker:be other stuff. I write extensively about that background in the book as
Speaker:well. Well, not extensively, but I I make sure I mention that because you're right.
Speaker:There's a connection there. we we could do a whole show on
Speaker:ethics, maybe. That'd be awesome. That'd be awesome. Actually, where
Speaker:I really cut my teeth on ethics is is in consulting.
Speaker:Because for those of you who've done consulting work, for the
Speaker:listeners, you know you have these conflicted interests. You
Speaker:have your company you have your client, you have your
Speaker:interests, you get pinched in a way.
Speaker:and, anyway, so I I've got I think some really good maybe that's
Speaker:another book I should put on my to do list. I think I've got some
Speaker:really good advice for consultants who who want to
Speaker:engage specifically proactively
Speaker:avoid ethical dilemma in the
Speaker:consulting setting. So I'll just leave the teaser there. Oh, I like
Speaker:it. Yeah. I do too. Yeah. I'd I'd read that book. I am a consultant.
Speaker:So, we get totally, totally get that. And -- However,
Speaker:you're self employed, so you do have, like, one less character in that. I
Speaker:do. Sure. Yep. -- thing. I mean, it's still I'm sure there's still a dilemma
Speaker:because And it's you know, I it you know, and there's so there's
Speaker:so many as I kinda think about what you could write about,
Speaker:Adam. there are so many places where you can be pinched.
Speaker:There's not it's not just it's not just customer
Speaker:and the consultant. It can be the the consulting
Speaker:company and the consultant. there can be
Speaker:personal things that come into play in you know,
Speaker:conflicts of interest to lower. Mhmm. So, yeah,
Speaker:it's it's a it's a difficult thing, and I I
Speaker:Again, love to write that book as soon as you're done with this one. Okay?
Speaker:Yeah. And I'll definitely I'll definitely provide you a quote for that. So with that,
Speaker:we'll let the nice we'll let Bailey finish the show.
Speaker:Thanks for listening to data driven. Have you checked out data driven
Speaker:magazine yet? We are looking for writers for the autumn
Speaker:2020 3 issue. Please check out data driven
Speaker:magazine.com for more information. Thanks for listening and
Speaker:be sure to rate and review a on whatever podcasting app you are
Speaker:listening to us on.
Speaker:You know, and there's so there's so many as I kinda Think
Speaker:about what you could write about, Adam. There are so many places
Speaker:where you can be pinched. There's not it's not just It's
Speaker:not just customer and the consultant. It can be
Speaker:the the consulting company and the consultant.
Speaker:there can be personal things that come into play
Speaker:and, you know, conflicts of interest go lower. Mhmm.
Speaker:So, yeah, it's It's a it's a difficult, thing.
Speaker:And I'd I'd, again, love to write that book as soon as you're done with
Speaker:this one. Okay? Alright. And I'll definitely I'll definitely provide you a quote for that.
Speaker:So with that, we'll let the nice we'll let Bailey, finish the