andearlierthisyearwejustsoldThiopolioandwhichiswhere I ambuildingouttheproduct, scalingitonDDE, adaptingtheproducttotheirclientbase.
Gotit?
Mindif I askhowmuchdidyouget?
I sellitforWell, it's publicforpeoplewhowantThio.
Nomindif I domyresearchandputinmyvideo?
I guess I guess I canjusttellyoubecauseyou'regonnaputthatinanywayWaysoldfor 60 millionBeforewecontinuethisvideo, I justwanttosaythankyou, BrilliantforsponsoringthisvideoEverydayBrilliantpublishesdailychallengesonmanystemtopicslikemath, scienceandcomputerscience.
Backthen, wewantedtocreatewillingtosecuritizerealestateassets, basicallycreate a anexchangeandallowingpeoplewith a smalleramountofcapitaltotakentakepositionsinrealestateassets.
Ifyouthinkaboutitrightnow, tobuy a house, youhavetohave, youknow, especiallyinSiliconValley, youhavetohave, like, 200 K 300 k justtoputitputdown a deposit.
Theway I seeitsufferengineeringisthecoreskill, andthenthere's likeMLengineeringthatthatgivesyou a bitmoredomainknowledgeintohowtobuildproductsaremalemodels.
I thinkintermsofresearch, wouldbeinvestigatingthelatestalgorithmsandlikeunderstandingwhytheywork, whytheydon't tryingtofencethatbitofsetsonthesenewalgorithms.
A lotofthethingsthatyou'veseenouttherelikeGanz, likegenerativeadversarialnetworksyoumakelikefunkyimages.
Styletransferslikethesewereallinvestigations.
Andwhydoconvolutionallnetworksworkastheydo?
Andthat's theresearch, right?
Andthat's notit's notprimarilythose.
Thosethingswerenotbuiltprimarilyforbusiness.
God.
Andofcourse, Lisaisanayeayeforleasing.
TheoneoftheproblemsthatpeoplehadwaslikeWhenyouputyour, uh, yourapartmentforonZilloworsomethinglikethat, youget a tonofinbound, youhave e mails, youhavetextmessagesandphonecallslike, Yes, it's veryfragmented, thethingsthatyougetandyouhavetotakeallofthatinboundcoordinateshowings, takecareofapplications, and I threwallthatmovingprocess.
So, Lisa, whatwedecidedtodowasthioautomatetheresponses, textmessages, e mails, phonecallsandontheotherside, wejustproducesshowingpeoplejusthadtoshowupandatleasttheleasingagentsjusthavetoshowupandsell, selltheproperty.
Theydidn't havetocoordinateanddoallthatstuffon.
Thatwasthemain, themainfocus.
I think a lotofpeoplelikedhowyouknow, theirphonesstoppedringingaftertheyusedTheystartedusing a buddysocool.
Awesome.
Sowhataboutyou?
Whatdidyoudo?
Dynasty?
Youworkedonme, So I guess, Yeah, ofcourse.
Uh, So, originally I washiredfortodosomeresearchbecause, youknow, I was a researcher, blah, blah, blah, but, youknow, nothingturnsoutasweplanitand I decidedtow, takethatopportunityto, uh, diveinto M L.
I mean, I hadsomeMLexperiencesbackincollegeand a littlebitbackinmypreviousjob, butneverdeeply.
So I decidedtobuildouttheMLcomponents, gotintodeeplearning, learnaboutNLP, whichisnaturallanguageprocessing.
Soalthoughwecanreplyveryquickly, sometimeswewait a minuteortwobeforedoingso.
That's interesting.
Soanotherpartthatmadeussuccessful, I think, wasthefact.
Well, I thinkthebiggest, thebiggestsuccesswasthemarketvalidationthatwasdonepriortothepivot.
Butthataside, anotherthingwasourwillingnesstojustbuildwhatwasneeded, likenotfocusontechnologytoomuchandjustgetsomethingoutoutthere, getitinfrontofpeopleilliterateandbilleditassimplyaspossiblesothatwedon't wastetoomuchenergytrying, tow, optimize a systemthatwasnotgoingtoexistlike a weeklaterAndalsothesedays, eh, I productsarelikevery, veryhot.
A lotofpeoplespend a lotoftimeoptimizingthatsmall, smallcomponentwhichit, inretrospect, like I couldhavespentmoretimeonthat.
Butif I didthat, I wouldn't haveusedmytimeThiobuildouttheproductintermsofthesufferengineeringpartright, DecidingThiosayOkay, that's goodenoughandworkon, uh, likethemostimportantpartforthebusinesswassomethingwaswassparedthatlikeeverybodyhadAfghanistan.
I thinkthatreally, youknow, pushedusbeyondtheedge.
Gaveme a concreteexampleofthatthingyoujustdescribewhatcouldhaveyouoptimizedonlike, howdidyouremailsystemworkas a whole?
Andyoujusthappen, hesaid, thatit's kindoflike a layerinbetweenthem.
That's reallycooluntiltheygettotheshowing, which I don't wanttousetheirhumanspecialtyduetosellWell, I meanonedayyoucanbuildrobotsandjustreplacethattoo.
Cool.
Okay, sonowthatwehave a goodoverview, let's gobackto, um, whatarethe M o partsdiverspecific?
Ittakestimeforacademicliteraturetoomatureforbusinessand a lotofah, a lotofliteratureissometimesnotreproducible, andit's a commonproblem.
Esolikeinvestingtoomuchthere.
We'llwaste a lotoftimeandas a startifwedon't have a lotoftime.
I heard a lotofpeoplesayingthatintheory, thepapersoundsgreatanditworkswiththeirdataset.
Butapplyingitis a wholedifferentstoryapplyingyouhavetoe.
Sofinding a waytoapplymlto a businessenvironmentisdifficultbecauseyouhavetospecificallyknowwhichproblemlikebusinessanditselfislikemany, manyproblems, andyouhavetocarveoutonespecificproblemforML.
Ithastobeworthitworththetimeofresearch.
Youhavetobeabletofind a processthatwillgeneratedataforthatproblem.
Sothere's a lotofstuffthathappensaroundthatisnosmallmlcomponents.
Sofromwhat I understand, itseemslikeit's bettertoebuildoutofyoursystem, understandingwhatyouhavetodo, howtodoeverythingandthenidentifywhatorderspotsthatneedML.
Andit's offered a ratherthansomeothercompanieswithidentify, maybeeven a Nemoproblemandthenbuildout a solutionlikeeverythingelse, whichultimatelymaybethatsolutionwasn't eventhatusefulforthemarketanyways.
Right?
Okay, Awesome.
SodoyouwantYeah, I think I thinkanother, uh, pitfallwouldbetryingtosolvetoomuchwithml.
TherewasAh, youknow, there's a fewcompaniesouttherethatwantedto, uh, buildpersonalassistance.
Intricaciesinin a simplequestion, justaslike, whatistherent?
And I alsoknowit's quitedifficultbecause I'm tryingtohire a rielpersonalassistant, andthatisstillveryhard.
So I'm guessing, youknow, becauseifyoucan't evensolvemyproblemswith a realhuman, I don't knowhowtostartsolvingoffwithin, like, machinerymodel.
Becauseusually I thinkifsomethingiseasytosolvemanually, like a replicapelletofrepetitionandyoucankindofreplaceitwith a I, butyeah, yes, that's actuallyoneoftheguidelinesthatwehave.
IfwewantThiocaraboutsomethingfortheforMLfirst, solveitwithhumans, seehowitworks, Seehowitworksifit's reallyrepetitiveandlikepeoplemake, don't make a lotofmistakes, right?
Someheuristics, notevenmlandrunRunwithitfor a while.