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Sharing, Building and Community (Notes from June 24 – 30, 2019) July 16, 2019

Posted by Anthony in Digital, experience, finance, Founders, global, Leadership, medicine, questions, Real estate, social, Strategy, Uncategorized, WomenInWork.
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If you hadn’t noticed or read from the start, you should know that I’ve gone in order from the start on the Twenty Minute VC episodes. Many of the conversations are from 2015 and 2016 so they end up as a bit of a history lesson and window into the mindset surrounding capital / founding at that time. Bubble discussions or higher capital raises are comical when we now know what today looks like – higher, still. Although I’d say geographically, expansion has exponentially grown as it’s become easier and more common for firms to seek out what they really believe is an edge for them. Interestingly enough, people also don’t stay where they were, especially over a few years. As I look them up to refresh and review for these posts, it can be very enlightening to see where they are currently – did they start a new project? Open a new fund? Move on to different industry?

David Teten was one of those switchers, as he was with ff V/C at the time, and now over at HOF Capital. Similar role but perhaps more focused on what he’d like to see. Also, many of the firm founders and partners aren’t heralded for having more than a few roles – some probably for different reasons, but I look at that for myself as a way to stay extremely excited about continuing to learn every day, every week. To believe in yourself to be capable of doing great work, helping to create as much value as possible in the most efficient manner, hopefully. Weird that many people receive flack for multiple positions when many of us strive to follow a few particular, but potentially different, things. For this, I admire David in keeping up with his roles, while keeping us all in the loop of his thoughts, generally, as well.

Next, there were two involved in real estate, housing and construction that were pretty much aligned. What do I mean? Both believed the rising housing (and estate, generally) costs have come as construction costs have increased significantly. This is creating unduly pressure, and making it more difficult for projects to get done. Maggie Coleman went through real estate differences for certain types, while John Rahaim of SF mentioned precautions that are being taken for the coastline and bay.

Then, we had Ryan Hoover, who runs ProductHunt, and is one of my favorite follows. He built what he and his friends wanted – a place to share ideas and products to try. And 5 years later, here he is. I won’t spoil some of the nuggets that he shared, including a few of his favorite books and monetizing once he knew it was real. Not to be outdone, a discussion with Phil Southerland covered how he has built a strong community of athletes born or having diabetes. To demonstrate how they can grow, he helped form a team of all diabetics and professionally rides to bring awareness and improve the lives and conversations surrounding them.

There is important work being done by many people, including ourselves. If we can better someone’s life, it’s likely worth doing it if you’re enjoying it. We can help by just being who we are and doing what we would like to do. I’d love to hear some of your ideas or thoughts regarding the people covered in this week’s notes.

  • David Teten@dteten, Partner at ff Venture Capital, founder and Chairman of HBS (20min VC 095)
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    • Alumni Angels of Greater NY, largest angel group in NY
    • How to Disrupt the Investing Business
    • Grew up in Marin Co, played with computers – consulted and taught Excel as a kid – bah mitzvah on knowledge test
      • Fired when he was 16 from financial services company because they figured out password was pw for admin
    • In college, worked briefly in strategy consulting before investment banking in tech – business school where he started multiple ventures in Israel and US
    • Joined ff VC in 2011 when it was 3 – now 27+ people, as largest headcount seed VC in Canada, Amsterdam, Israel, UK, US
    • Company ff should be generalists – broadest possible but don’t invest in life sciences due to no expertise there yet
      • Can’t predict in advance, so they want companies that are interesting with high growth potential
      • Admires outbound of TA or Summit, but something like SignalFire to look at data for high growth
        • Resources to help founders to reduce write-offs (1 in 6 fail for them) which attracts inbound (2000+ a year)
          • Filters down to ~12 a year to invest
    • Google Ventures / SignalFire and others as algorithmic approaches to source – increasing importance but not validated thesis
    • Loves their model as efficient – frustrations at other vc’s (80% of time with people / co you can’t invest in – partying and not meeting anyone)
      • Nobody at ff has a job as origination, Angelist as disrupting the generalist VCs (those that don’t have added value)
    • Top 3 Important Ways to Support Companies: capital raising, finance acceleration team – CFO acting, recruiting
    • How to determine value add as entrepreneur
      • Reference check
      • Do the math on portfolio: for ff, 60 portfolio co’s (active in 2/3), 24+ ee’s
        • How many people in the team? How many portfolio co’s? How many checks?
          • Use that to determine person-hours you can expect
        • What sort of technology platform to support the company?
      • A16z as huge operational side – finance, marketing, etc…
        • Short list for companies doing this – very capital intensive
      • Believes that there will be some shrinkage in the model in a downturn if it’s not fully thought out
    • Very illiquid asset class (mentioning to LPs) – 12 different academic studies for 18-54% median returns
      • 10+ years for cash returns, lot of institutions aren’t okay with that time range
      • David Swenson (head of Yale endowment) has argued long-lasting liquidity premium for illiquid asset classes
        • Even the most liquid asset classes aren’t liquid when you want them to be (2008, for instance)
    • Indiegogo as seed – crowdfunding space, competitors aren’t invested in – watch Angelist very closely, though
      • Services from Angelist as they look around at different parts of deal flow
      • Encourages member space to get involved in angel investing for next generation of companies – exposure to ecosystem
        • Promote economic growth
    • Research study: Disrupt investing – security, for instance
      • Secure (ID verification), Distill Networks (blocks bots), IONIQ (from Atl, secure cloud usage)
      • New processes and make them efficient: Addapar (Excel/PDF), Earnest Research (nontrad datasets eg: cc info, email receipt mining)
    • VC usage of social media: much more aggressive, judicious but no breakfast tweeting – sell
    • Edward Tufte – Yale prof, must read
    • PandoDaily as top blog – not afraid to make enemies, discuss what they do
    • SkyCatch as most recent – drone tech, set of tools for collecting data via drones – construction use case (Kamatsu client)
      • Monitor exact status of project, imperative they know where everything is
  • Maggie Coleman, MD and Head of Intl Capital at JLL RE (Wharton XM)
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    • Looking at different real estate measures – single family homes, for instance
    • Do different assets in real estate require a different measure to draw attention from foreign investors?
      • Didn’t seem so – would depend on where the capital was coming from (their own environmental basis)
    • Construction costs as outpacing many other costs – affecting many markets

 

  • John Rahaim, Director at SF Planning Dept (Wharton XM)
    • Having to adjust for the changing seaboard – will regulatory measures be taken?
      • No mechanical or living people in commercial buildings on the first floor, for instance
    • Says there are already precautions being taken on the bay – 5-8 feet, for instance
    • Construction costing so much already that it’s been very difficult to get building done post-land acquisition
      • Estimates of $600-800k for this due to inflationary and costs passed from the building companies
      • Said he had some 36? Projects that are being held up
  • Ryan Hoover (@rrhoover), Founder @ ProductHunt (20min VC FF026)
    ph-logo-3

    • Best community builder, Twitter engagement, winner of TC Best New Startup of 2014
    • Just wanted to build a consumer-focused thing to discuss with his friends about app ideas or companies
    • Put it on Quibb and Twitter – manual things initially, set up an email subscription, personal email connecting with people
      • Keep building communities otherwise it peters out
    • First iteration was RoR built over 5 day Thanksgiving holiday – core is the same, people using and community growth
      • Having people tell them and comment on ideas (used it as their new home page)
    • How to plan to go from early adopters to mass market?
      • Eager enough to participate, engage and not necessarily representative of the common users
    • Categorizing Podcasts and putting them on the home page – barrier before, now based on episodes
      • This Week in Startups, Startup Show (by Gimlet founders), Jake Gyllenhaal ep of Mystery Show (Gimlet media) – is he 6′ tall?
    • Worked on Hooked with Nir Eyal, using some in ProductHunt
      • Email digest is the trigger – action is to open / click on something to find inspiration or interesting
        • Built email variability – some consistency, surface different titles and content
      • Follow collection, clicking follow, reward is updates on the collections – permission for emailing to reinforce and come back
    • Ryan’s favorite collections: featured ones, Russ has game collections (browser ones), Julie created bakednight
    • Betaworks kept popping up on their engagement charts – Twitter very active, products (Without, where would he be?)
      • Always tagging the authors and being genuine, personable, funny or light-hearted
    • Monetizing PH – at its core, download/use/purchase products with the right intent
      • Over time, will explore more of this
      • Fundraising: first time for Ryan, different as a side project and growing
    • Quibb as newsfeed other than Twitter and also Crunchies where they announced Shipt but said “Actually, it’s PH”
    • Sunrise as calendar app, Pomodoro – no longer. Favorite book: Art of Game Design by Arty Shell
      • User psychology and game mechanics, how it applies to tech products as well. Game design not always thought about.
  • Brian Solis (@briansolis), author of Lifescale (Wharton XM)
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  • Survey on how social media has changed / warped views for girls
    • Hadn’t fully released yet

 

 

 

  • Phil Southerland (@philsoutherland), CEO of Team Novo Nordisk (Wharton XM)
    novo-nordisk

    • Living with T1 diabetes and bringing awareness
    • T1 and T2 can be helped, dealt with and he’s trying that
    • Cycling team focused on it
      • Full team is athletes with diabetes
        • triathletes, runners and cyclists
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Different Ways to Create (Notes from June 10 – June 16, 2019) July 3, 2019

Posted by Anthony in Digital, experience, finance, Founders, global, Hiring, Leadership, NFL, questions, social, Strategy, training, Uncategorized, WomenInWork.
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3 fantastic sounding women to start. One in VC and finance, discussing the difference between NYC and SF for her. The second compared in-house marketing strategy and outside influence. What’s that look like? How much control is there? Last, but certainly not least, was an author who discusses something that I’ve seen with family and my sister – the challenge of raising a child while balancing some semblance of normalcy in work. What’s expected from yourself? What should be reasonably expected from work? What’s a balance?

Those women: Erin Glenn, Julie Scelzo and Lauren Smith Brody.

A few sportsmen discussed data and capital. Sixers Innovation Lab and former exec for And1 mentioned how they think about growth in Philadelphia and the brand, who can they support in the community that can also help with the team. John Urschel, former Baltimore Raven, is a published mathematician now who discussed the influx of data collection and analysis among all sports and teams. What they can do makes a great athlete experience, fan experience and overall performance improves.

A plethora of rising stars followed, from Kanyi of Collaborative Fund to Sofia Colucci of Coors and the co-founders for SHINE text. Hope you enjoy my notes and you check out the podcast episodes!

  • Erin Glenn (@leeeringlenn), CEO of Quire (20min VC FF025)
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    • Entrepreneur as kid – day business for summer camps, then management consulting, IB and took a company public (econ consulting firm)
    • Got bug to start own thing in 2010 – joined KIXEYE in SF for 4 years, video game company
    • Wanted to go to NYC (as kid in OK) – went to meet w Betaworks, fell in love with Quire
      • Mutual conv to join Quire – loved it – equity crowdfund co
      • Venture-back co’s enabling portion to raise for community & mission
        • Min. investment is $2500 – supporting larger investments as well, up to $250k
    • Likelihood for investors to get taken advantage of – Title III discussion (investors with <$100k income/net worth can invest up to $2k or 5% of income)
    • Mattermark study on investor bases that exist and why people do invest
      • Investor and diversity – minority, gender, big differences in those that follow Mattermark or others
    • Crowd won’t provide scaling / grow money (the $50mil+ rounds), but community can help participation at a lower level
    • Motivation to invest, other than financial incentive – supporting company’s mission + founders, spurring economic growth + innovation
      • Real commitment to realize dreams, grow economy
    • Benefits with crowd investing for company – moral and psychological
      • Supporters of the company can invest, which is reinforcing for doing it – customers that are owners of the business spend more, loyal, etc
    • SF vs NY startup ecosystems and CEO role
      • Had joined Quire with 2 suitcases, dog and air mattress after 2 days there
      • CEO role – really fun and exhilarating with challenges daily, gained confidence at eliciting feedback from ideas
        • Coming up with better solutions and getting them to help because we don’t have all answers
      • Intensity and vibrancy, competitive spirit in NY even though it’s smaller-feeling
        • Want to take on SV and not give up the competitiveness
        • More female founders in NY – fashion, finance, media in senior executives trying new things
    • Favorite book: Magic Mountain ahead of WWII in Europe, Switzerland
    • Favorite blog: Fred Wilson’s and Tim Cook as favorite innovator
    • Gimlet Media (first investment), Kano, Duel as others
  • Julie Scelzo, executive creative director at McGarryBowen (Wharton XM)
    mcgarrybowen-logo-2

    • Talking about marketing difference between in house and outside
      • Going from Creative MD for Pandora to take on MGB AMEX
    • Moving from agency to internal at Facebook – not even a salary bump, but just felt right
      • Worked helping clients was rewarding but she missed creating
  • Lauren Smith Brody, author of The Fifth Trimester (Wharton XM)
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    • Discussion of parental leave in the workplace – if uneven with your partner, mixing it up or staggering
    • First 6 months as crucial for development – how to best alleviate this
      • Every person is different and has different attitudes
      • Nobody can generally be told how something may feel for them
    • Having the partner available in the first 6-9 months provides evidence that they’re capable, and can understand some of processes
    • First day of work being scary – moreso as a parent – train whole life to be in workplace
      • Can be comforting back at work, not so much for first days as a parent
  • Dilip Goswami, Molekule Air Filters (Wharton XM)
    • Being his father’s son, a typical engineer
    • Developing and deciding what part of product to have in house vs outside
      • Hybrid model
    • Having customer support and knowing it worked – shipping and using that as validation
  • Seth Berger, founder and CEO of And1, Sixers Innovation Lab (Wharton XM)
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    • Discussing how coaching basketball to young adults was so helpful
    • Marrying And1 with his passion for basketball and teaching and being around it
    • Sixers Innovation Lab – knew Josh from the 90s working on a failed internet co originally
      • Helping with capital up to $1mn and seeing 10x returns so far
  • John Urschel (@johnCurschel), Former lineman with Ravens, MIT mathematician (Wharton XM)
    • Talking about the lifelong balance of math / football from his memoir
    • Thinking about where analytics may be super exciting in sports – real-time strategy if they’re allowed the computers / data on-field/court
      • Tracking data is so strong, it’d be interesting to see what coaches may do to get there
  • Nathan Furr, Curtis Lefrandt, Innovation Capital author (Wharton XM)
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    • Author discussing how innovation costs resources
    • Talking with Marc Benioff and others for the most innovative leaders

 

 

 

 

  • Sofia Colucci, VP Innovation of Miller Coors (Measured Thoughts, Wharton)
    • Introducing a new brand, Cape Line, into the world
      • Usually a 1.5 – 2 year process for a corp this size
      • Cut it down and released in 2019, dropped the other project (Project Sprint)
    • Had already done market research, wanted a more healthy, alternative to beer for women – cocktails in a can
      • Packaging and what that would look like after tasting
  • Jennifer Pryce (@jennpryce), President CEO of Calvert Impact Capital (Wharton XM)
    • Impact capital and how they grade different companies on the degrees for investment
    • Infrastructure, seeing them surpass $1bn
  • Marah Lidey (@marahml), Naomi Hirabayashi, co-founders of SHINE app (Wharton XM)
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    • SHINE as a wellness app for meditation
      • Gaining ground with their superusers – seeking feedback
    • Self-care platform, weren’t sure how they attracted so many men – but it’s definitely catered to their experiecne
      • Reached out to one of the first superusers that was male to get his input and to have influencers help
    • Product-market fit and development was always based on how they wanted the app to be- what they were searching for
  • Kanyi Maqubela (@km), Partner @ Collaborative Fund (20min VC 094)
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    • From South Africa originally, investments into CodeAcademy, Reddit, AngelList, AltSchool, TaskRabbit
    • Founding employee of Doostang, attended Stanford Uni & worked on Obama campaign in 2008, as well
      • Dropped out of Stanford, compelled by interest to see other part of world – did a startup, $20mil of VC funding for a couple startups
        • Being young, decision to leave was easy but once he’d left, it was tough
        • Making friendships and lasting connections easily in college – some communities outside, in pro world, was rough
      • Met his partner, Craig, while finishing school and doing work in design – convinced him to help him with CF
    • Investors are those that believe in collaborative economy – nodes, peer-to-peer and nodes for networking
      • Every consumer/employee/companies have obligation to align interests and value sets
      • Looking at companies to focus on impact and values – aspirational culture as outcome of collaboration
    • For the fund – stage specialization or theme?
      • Theme may be time-efficient-oriented. Reminder that many of most successful people have skipped on massive wins multiple times over.
        • Altman mentioned about having a point of view and heuristic to drive decisions (whether it’s stage or theme)
    • Being a partner at 30 – GPs with skin in the game
      • As young, have to have been very successful early or came from money to get into the fund
      • Needs to prove himself but as younger, may have been very risk adverse in the sense he wasn’t free-swinging
        • Facebook went public 7 years (quick for industry, but not necessarily quick for a fund) – feedback loop timeframes
      • Million ways to market as investor, drive value as portfolio, data, theme or stage specific
        • Blog as high leverage marketing for himself, writing is how he clarifies his ideas to himself and the public
    • Limits and is very prescriptive for the networking aspect of VC, conferences – wife in medical school so when she’s free, he makes himself free
    • Accelerator / demo days as good for investing – he likes being first institutional round, but thinks demo day to discover is not their best way
      • Sometimes the due diligence for demo days of seeing what’s out there
      • He uses them to talk to other VCs, see source and deal flow – coopetition – high leverage, high marketing channel
      • His best way in is likely the portfolio companies under them – he looks for connections for new places and vouch for them
    • Naming Fidelity markdown of a bunch of companies – saying that private companies are being treated like they’re public companies
      • Realtime prospects that are valued – can go up or down, financing or not
      • Private crowdfunding to create liquidity, getting to cash flows and thinking about dividends, debt, crowdfunding – IPO bar is so painful
    • Fav book: Brothers Karamazov – Dostoevsky as “fiction bible”
    • Union Square Ventures as the one he looks up to – Benchmark, also (Read ebooks)
    • Concept of Founder-friendly – agency from founders holding them responsible, but becomes messy / complicated
    • Most recent investment at that time: CircleUp was series C, crowdfunding platform for CPG – other forms of financing for orgs will be transformed

Innovative Investing (Notes from June 3 – June 9, 2019) June 25, 2019

Posted by Anthony in Automation, cannabis, Digital, education, experience, finance, Founders, global, Leadership, medicine, NFL, questions, social, Strategy, training, Uncategorized, WomenInWork.
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The primary theme of the week seemed to be how data can get pooled together to determine a signal and how to learn to seek the best way we, as individuals or teams, can discern valuable content to motivate actions on that information. Data is plenty – it’s a matter of gathering, curation, analysis and testing before putting it into action. This is done by any number and types of companies nowadays – this is a source of advantage seeking that forward-thinking ones make, in my opinion.

Since my notes were more detailed, I’ll try to keep this brief. The wonder people below hailed from banks (First Republic Bank), funds like Emerson Collective and Womens VCFund, marketing company like BEN or LikeFolio and then David Epstein’s Range, Sinead O’Sullivan’s work on space or the data Rohan Kumar collects with Azure Data.

Create a hypothesis. Test the hypothesis. Put into action, or iterate. Rinse, repeat. Good luck!

  • Samir Kaji, (@samirkaji) MD @ First Republic Bank (20min VC 093)
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    • Leading private bank and wealth management, before at SVB
    • 1999 – “anyone with a pulse could get a job” but he was working selling vacuum cleaners at dept store
      • Was told by family to get a real job – applied to first business SVB, got resume in and interview immediately before starting
      • First couple years were tough – learned a lot, but was 2004 until companies had scaled and were getting bigger
    • First 10 years were tech companies, series A and B and venture debt – post 2009 Lehman / Bear, went to venture group at SVB for 4 years
      • Made the move with a few others from SVB to First Republic, now leading team in micro-VC and early-stage tech co’s
    • Says the micro-VC is more entrepreneurial & collegial compared to extended stage VC’s
      • First fund is that you can get traction for a second or third one, fees as pressure – most likely why many people come from some wealth
        • Writing large checks as GP, as well
      • 2-2.5% management fees initially vs 1 / 25 or 1/30 model
      • 1999 – 2002 distribution was 0.9x and you’d get 10x return (whoops) – very difficult for funds to get 2-3x for LPs
    • Barriers to entry much smaller for $20-25million as compared to $500mln – institutional, etc — he can go to family friends and high net worth
    • Seed over next 5 years: contraction in space (wrong), but said there isn’t enough returns for funds to max it
      • 1100 in the 2000 year and burst
      • Continued prominence of Angelist platforms, maybe an integral part of the ecosystem
      • Starting to see use of data (Mattermark, CBInsights, SignalFire) to more efficiently identify and action at this level
    • Favorite book is Phil Jackson’s – behavioral psychology, Give and Take is another one
    • Really respects the pioneers of the industry and first-time fund-raisers
      • Mike Maples, Michael Deering, Steve Anderson, Jeff Clavier when it wasn’t a thought
    • Habit – reading book or blog post for 20min in the morning before email
      • Disconnect from audio / video devices and reflect for an hour
      • 2 hours a day for family/friends and disconnecting, as well
    • Thomas Redpoint, Mark Suster, Brad Feld, Strictly VC, Ezra at Chicago Ventures
    • Knows awesome fundraisers but terrible at returning capital – didn’t mention any
  • Collectively Driving Change, Laurene Powell Jobs and Ben Horowitz (a16z 5/27/2019)
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    • LPJ – founder, president of Emerson Collective
    • Grew up in NJ – father passed away in a plane accident when she was 3 – 3 children.
      • Mom remarried so there were 6 of them. Wooded area of NJ.
      • Core values and dedication to education to get out of the area.
      • She went to Upenn – first student from her high school that went to Ivy League – ~20% went on to more schools
    • Addressing East Palo Alto school as a volunteer to help – 1st talk, 0 had taken SATs
      • What happens when you’re first to graduate high school? What’s it mean to the information from family?
      • What happens to be first to want to go to college, thrive&complete it?
        • To have the aspiration, can be a leader in the family – translator, get sucked into all problems
      • Started with 25 freshmen – would have to come with friends for responsibility mechanisms – for College Track
        • 3000 high school students, 1000 college, 550 grads
    • Collective of leaders, innovators – education inequities, access and need for enhanced/robust curriculum
    • 10 year time horizons – getting them together is scheduled with Monday all-staff meetings (3×3 matrix of videos)
      • 5 cities, sometimes philanthropic speakers or reports
      • Discussion of reading as you fall behind through third grade before switching to reading to learn – already behind
    • XQ as SuperSchool dream – 17 of 19 will open in August
    • Caring about impact and solving problems, not wealth increasing – wants access to policy or money and not taxes
      • Judged Giving Pledge for not wanting to be more philanthropic
      • Environmental, edtech portfolio, cancer / oncology investments, immigration incubator, new thinking to old problems
    • How do you know when you’re succeeding? Collecting data on everything they do.
      • Example: XQ – schools and districts, state of RI as switching to statewide competition
      • Chicago has good data for fatal/nonfatal deaths (I disagree)
    • Imperiled or important institutions like journalism and media need to be sustained, how many join?
      • Concentrating and following where IQ is migrating (hahaha – what a joke)
  • Data Infrastructure in the Cloud, Rohan Kumar at BUILD conference (Data Skeptic, 5/18/19)
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    • Corp VP of Eng of Azure Data Team at Microsoft – SQL and data services, open source, analytics, etc
    • Trends in data engineering in the cloud, serverless and hyperscale
      • ML and AI and enabling applications – shifting to edge vs cloud – analysts predict 70% will be on edge devices
      • Solutions and private edges – training in the cloud and deploy them on the edge applications
        • Data platform needs to be the right foundation
    • Highlight for him from conference: work they’ve done on relational databases in the cloud – as volumes grow, scalability challenges
      • Hyperscale for Azure and PostgreSQL, as well as MS SQL soon enough – system scales with needs (they’ve tested <= 100TB)
    • Acquired Citus Data, support scaling out the compute layer – strong team, great product, matches in Azure and open-source
    • Releasing serverless option for Azure database – costs designed to stay low and optimized
    • Analytics side: customers wanted to do real-time operational analytics – didn’t want to move them outside of their core product
      • How is data distributed and having compute be co-located with the data to gain Spark efficiency being nearest to node
      • Support Jupyter notebooks across all APIs to modernize to do more predictive analytics
      • Attempting to build out pipelines requires too much scripts, instead have Data Flows in Azure Data Factory – no-code and UI
      • Wrangling data visually and seeing if something can be recognized or learned to repeat across other columns/tables
    • Latency won’t be ideal if compute nodes occur nonlocal to the data changes – can’t do 50,000 nodes all at once
    • Excited for the future: Horizon 1 (next 8-12 months), Horizon 2 (~3 years), Horizon 3 (moonshots)
      • H2: Hardware trends, what do customers want? Pushing boundaries of AI and ML, healthcare, gaming, financial services, retail
  • Wide or Deep? David Epstein, author of Range (Invest like the Best, 5/28/19, ep. 133)
    • First book’s research lead him to get into specialization and finding kernel for next
      • Some countries: turning around national sports teams – why don’t we try other sports? Contrary to 10,000 hour rule.
      • SSAC – debating Gladwell – athletes have a sampling period instead of first gene – delay specialization
        • Used Tiger vs Roger – Roger had tried a ton of sports vs Tiger who was born and was playing golf
    • He was not good at predicting what people/public would attach themselves on to – 10,000 hour rule – race/gender as most talked (but weren’t)
      • 10,000 hour rule were based on 30 violinists in world famous music academy (restriction of range)
      • Height in American population vs points scored in NBA (positive correlation) but if you restrict height to NBA players, negative
    • Finnish cross country skier who has genetic mutation similar to Lance’s boosted
      • Sensitivity to pain and modification to your environment – also sudden cardiac arrest in athletes (what pushed his interests)
      • Book as opposition to Outliers and Talent Code – interpreted a lack of evidence as evidence of absence (genetics matter)
        • First year he read 10 journal articles a day and not writing – they were making conclusions they could not make based on their data
      • Differential responses to training – best talent were missed because we don’t know about training responses
    • Collection and exploration phase – competitive advantage for expansive search function to connect sources or topics
      • Has a statistician on retainer, essentially, to check models or surveys
      • Wanted to know what he was missing – “how come I broke the 800m women’s world record after 2 years of practice? – genetic difference”
        • Racing whippets – 40% had a genetic defect that gave them more muscle and oxygen
    • All of sports as a limited analogy (problem after Sports Gene; now, more tempered)
      • Robin Hogarth addressed “When do people get better with experience?” Don’t know rules, can try to deduce them but can’t know for sure.
      • Kind learning environment: feedback immediate, steps clear, information, goal ahead
      • Wicked learning environment: can’t see all information, don’t wait for others, feedback delayed/inaccurate
    • Study at Air Force on “Impact of Teacher Quality on Cadets”
      • Have to take 3 maths – calc I, II, III (20 kids randomized) – professors best at causing kids to do well (overperforming) systematically undermined their performance thereafter
        • 6th in performance and 7th in student evaluations was dead last in deep learning
        • Narrow curricula were better at the test that they had at the end would be negatively correlated with going forward in performance
      • Teachers that ignored what was on the test taught a broader curriculum (making connections vs procedures)
    • Learning hacks: Testing (wonderful – primed to test ahead of learning), Spacing (deliberate not-practicing, Spanish ex spread 4 hour twice, 8 hours), Mixed practice
      • Ease is bad – known time horizon for when you have forgotten again – interleaving and spacing mixed
    • Passion vs Grit (“Trouble with Too Much Grit” – Angela Duckworth’s research)
      • Duckworth did a study at West Point for East Barracks cadets – candidates score (test + leadership + athletic) was not good prediction of doing this (overall it was good)
        • Grit was a better predictor for making it through East Barracks – she questioned whether it had an independent aspect
        • Variance for grit was probably 1-6%, especially after “flattening” groups – looking at people that had a narrowly defined goal for short periods (cadets or spellers)
      • Cadets were scoring lower on grit at late 20s vs earlier – tried some things, learned others about what they want – grit is poorly constructed
        • Look holistically – if, then signatures (giant rave – introvert, small team – extroverts) right fit looks like grit – developmental trajectory as explosion matching spot
    • Choosing a match for a future them who they don’t know in a world they can’t comprehend – people that find good fits (in practice, not theory)
      • Paul Graham’s “Commencement Speech” that he wrote “Most will tell you to predict what you want in 20 years and march toward it.” (premature optimization)
        • Everything you know is constrained by our previous experiences – limited as a teenager – just expanding and learning as you go forward
    • Gameboy example – with so much specialized information that can be disseminated easier – can take from all types of domains and recombine them
      • System of parallel trenches – can be broader much easier now – hired people for Japanese and German translations
      • Japanese man profiled in his book – technology was changing faster than sun melts ice – didn’t get Tokyo interviews
        • When he got to Kyoto company making playing cards, he was a tinkerer who was maintaining machines – started to mess with them (arms)
        • Turned them into a toy, and it was Nintendo – cartoon-branded noodles (failed), and had toy development
          • Lateral thinking with withered technology – stuff that’s cheap, easily available – takes into other areas
            • Remote control, more features – wanted to democratize this and strips it down – LeftyRX only left-turns
        • Sees calculator from Sharp and Casio and thinks he can do a screen and handheld game – small games
          • Had issues with Newton’s rings so he found other small tech (credit cards embossed) to fix small pieces
      • What it lacked in color, graphics and durability (could dry it out, batteries would be fine, split it up, “app” developers because it was super easy to understand)
      • In areas that next steps were clear, specialists were much better – less clear, generalists were more impactful – depends on the specificity of the problem
        • 3M had a lot of areas for this, “Periodic Table of Technology” – post-it note came from reusable adhesive that had no use for
        • Only Chinese national woman to win Nobel – “Three No’s” (No post-grad, foreign research, membership in academy)
          • Interest in science, history – Chinese medicine for treatments of malaria – world’s most effective treatment from ancient text
  • Greg Isaacs, BEN (Branded Entertainment Network) (Wharton XM, Marketing)
    Print

    • Discussion of getting data from Netflix / Amazon / Hulu / tv to better match brands and advertising
      • Dirty data via a wharton grad who set up a survey style
      • Cohorts and demographics, along with psychographics
    • After getting data, attempting to approach Youtubers / social media influencers, tv spots and channels or shows to get their brands in front of the right people
      • More pointed, depending on what interests are for their cohorts
      • Creative storytelling as the change of cultural mind shift has increased
  • Understanding the Space Economy, Sinead O’Sullivan (@sineados1), entrepreneur fellow at HBS (HBR IdeaCast #684, 5/28/19)
    • Facebook, Amazon (3000), SpaceX (12,000) and other funding like Blue Origin / SpaceX / asteroid mining or travel
    • Global space economy as $1tn by 20 years – currently $325bn so it would need to 3x
      • Breaking apart space resources and otherwise – earth-focused (delivering or existing in space that helps earth)
        • Exploration or creating interplanetary existence
    • Running out of space in space for satellites – comparing to airplane docking / loading
      • $2500 per kg now to launch, used to be $50k / kg
    • Reliance had been on unilateral agreement for space policy – one tech startup launched a satellite that didn’t have permission (but no fall-out)
      • Food / grocery stores, wifi, phone, insurance pricing due to satellite data – reliance on services are increasing as the market increases
      • Thinks that we’re close to seeing the cheapest cost of launching – cites SpaceX, but won’t allow everyone to participate
    • Ultrahigh accuracy will require higher powered satellites – GPS, nonmilitary grade is ~0.5 m – thinks it will prevent autonomous vehicles solution
    • Ton of money going into asteroid mining but thinks it’s better for testing missions to Mars and figuring out the problems for future
      • Looking at Uber at start and say “people won’t get into a stranger’s car” or other cases as how we see the future – going to Mars, etc
    • Earth-focused space technology – 100+ launched satellite start-ups, micronano satellites, relay companies, downstream analytics
      • More touchpoints for everything in this manner
      • SpaceX will increase public and government intervention and within 50 years, maybe see a human launched there
  • Investing w Twitter Sentiment, Andy Swan (@andyswan), LikeFolio (Standard Deviations, 4/25/19)
    logo402x

    • 1700+ tweets examined per minute in LikeFolio – discovering consumer behavior shifts before news
      • Direct partnership with Twitter to create massive database and how they’re talked about to look for mentions
      • Purchase intent, sentiment mentions – trends across product categories or brands
    • Example – Delta (as host is a loyalist) – making adjustments
      • Expectations are the relative part – comparison to the baselines (metrics compared to itself as baseline)
    • Put out a comprehensive report on Apple day after keynote event – September 14, 2018
      • Consumers were unimpressed with iPhone lineup – more price sensitive than maybe they’d considered
      • Apple Watch was the silver lining – stock / sales may struggle over 3-9 months (upgrade cycles)
    • WTW version of keynotes – NYE resolutions – subscribing early to drive revenues the rest of the way
      • Purchasing mentions were only up 30-40% compared to 5 or 7x weekly mentions (big difference)
    • Shelf-life and how to consider the sentiment data – lead time may be binary corp event (same store sales or year)
      • Couple months with Apple, for instance, but with Crocs – resurgence that persisted to current time
    • Set up keyword structure and brand database – “I’m eating an apple” as opposed to an Apple mention – human eyes to ‘label’
      • “Closed my 3 rings” – apple watch but sarcasm / spam that wasn’t caught (estimates at 2-3% of data)
      • If spam / sarcasm are consistent portions of the data, doesn’t really have an effect
    • Twitter Mood Predicts Stock Market – Bollen, Mao, Zeng (88% and 5-6% predictions) – fund closed up shortly
    • Advantage being better than analysts or pricing and codifying sentiment behavior compared to past quarters, data
      • Some consumer trends analyzed as true tipping point or actual movements
      • Public prediction before productizing their modeling – made 40 and were 38-2 (confidence as highest)
      • Investing as very specific, concentrated and holding ammo compared to trading with option spreads and has risk profile built
    • https://arxiv.org/pdf/1010.3003.pdf
    • Diversification as 20-25 stocks, doing it over time and with conviction can be done
    • Starting in Louisville for his fintech company, host in Alabama, for instance
      • Talent can be more difficult to seek out but the world is globally flattening via the internet
      • 70% lower overhead cost than being in SF, for instance – developers would anyhow be in Slack channels / not a big deal
      • Reduction in cost maintains greater control of company since they don’t have to take reduction of equity to gather more
    • Network effects don’t matter if you don’t have a great product or product-market-fit
    • Free association game
      • grapenuts: best cereal (Co’s been around for 100+ years, branding and $ spent and they can’t figure it out)
      • Fintech Future: individualization and customization
      • Victory: most important thing in life, achieved what you set out to do – setting goals and achieving these
      • Bourbon: pappie von winkle – collecting for dust on shelf 10 years ago and now going for $3000
  • Jonathan Abrams, co-founder Nuzzel news (Launch Pad)
    nuzzel

    • Landing hedgehog as the mascot – animal as cute, 99designs and surveying 50 friends – 25 men/women
    • Discussing how VC’s don’t have great advice, especially when general – too hard to be an expert in such a wide range
      • Finds it easier to be very context-driven and providing solutions or action-oriented questions to founders
      • Investing now easier with YC and Angelist, etc…
    • Timing and other mistakes he made – out of control, losing equity part early (but depends on where you are / what you need)
  • Etan Green, professor at Wharton (Wharton Moneyball)
    • Discussion on paper of how sharp money comes in at horse racing tracks
      • Difference between sites – fairground action compared to tracks, and specific to region (New Orleans, Minnesota, for instance)
      • Big sharp money comes in very late, pushing the underdog prices to higher values
        • More expensive to bet while at the track than the APIs enabling higher volume bets
        • Books at the track are incentivized to bring in as much $ as possible, so $0.20 on $1 vs $0.15 rebate on $0.20 for volume
    • Value and differences in how people will bet
  • Edith Dorsen, Women’s VCFund founder, MD (Wharton XM)
    wvcfii_logo

    • Talking about their focus on first fund, approach
    • Opportunity for finding diverse founders, 25% of their fund had a woman founder
    • Starting a second fund
    • Had consumer tech, enterprise and not so much b2b, but trying to increase
      • Hard to say or give advice if one of their partners don’t have expertise in the domain
  • Sophie Lanfear, Silverback Films producer on Netflix “Our Planet” (Wharton XM)
    • Species that are dying, going extinct
    • What we can do about it
  • Aliza Sherman, Ellementa co-founder, CEO (Wharton XM)
    logo

    • Discussion of client talks when she made them aware of her cannabis endeavors
    • How friendly the community is
      • Then knocked the idea that ~30% was female to start before diving off a cliff
    • CBD to mask opioids – does it really do anything from a pain/treatment perspective, though?
      • Anti-chemo because of CBD – really?
    • Sounded too rehearsed – made it sound fake, not genuine
      • Passion/motivation/mission and kept repeating as the best advice she could give – painful

Matching Environment to People (Notes from May 27 – June 2, 2019) June 20, 2019

Posted by Anthony in Automation, Blockchain, Digital, experience, finance, Founders, global, Hiring, Leadership, questions, social, Strategy, Uncategorized, WomenInWork.
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In this particularly busy week, I found the theme of the week to be particularly amusing, but coincidentally or not, the dominoes fell that way. Normally, a theme arises like that because everyone is in finance or the same segment or conference is aligning. I just happened to catch a week where the insight that I drew from each person reflected similarly.

Meredith Golden, a dating consultant of sorts, discussed how she assesses all levels of dating profiles for her clients. She goes through a process that she’s dialed in to obtain her optimum level of clients as well as the right approaches to proceed. Asking herself what she wanted was key in determining how she’s grown her business, especially as an entrepreneur and CEO.

Chief Instigator Matt Charney. Now that’s a fun title. And I won’t ruin it. He goes through his past with Disney and Warner Bros and why/how he moved into the HR tech doing marketing – what he saw and how it’s different now. Fascinating and fun segment.

Part of the fun of being an entrepreneur is deciding who you want to do business with. But when it’s difficult, especially at the start, you’re most excited to get ANYONE to work with (unless you luck into that massive customer to start – rare rare rare). This is Kyle Jones of iCRYO found out. Then he gained traction, quickly, and realized he needed to be a bit more diligent in who he wanted to work with – what was ideal for the business, as well as the brand moving forward.

David Epstein likes throwing wrenches, I imagine. He authored the book Range, testing the generalist vs specialist question. As a generalist masquerading currently as a specialist, I appreciated what he was talking about the strength of generalists. But I do understand the place that specialists have in our society, especially deep tech, research and other exceptional areas.

Deb DeHaas grew up under the tutelage of her mother who fought the idea of being an accountant growing up to learn and adapt to the idea of being told what she could/couldn’t do wasn’t ACTUALLY an assessment of her ability to do those things. Such a simple, fascinating concept. She could totally be an accountant, engineer, as she pleased. Took a lot of perseverance but she had a manager at Andersen (before folding) who was a woman and told her to always chase what she wanted – now she’s leading the Inclusion and Diversity team with Deloitte’s Corp Governance Arm. Quite the story of growing up and what she learned.

Not to be outdone, Kim Wilford, who acted as General Counsel for GoFundMe, discussed how she came into her role in charge of the nonprofit arm, and what they’ve done in growing the company and its donations. How to connect marketing, wearing multiple hats and helping people help others. Inspirational while metric-driven, not just dream-built.

I hope you enjoy the notes – a few I didn’t write extra here but had fascinating insights into Happiness Hacking, investing in founders and how they grew companies such as Vroom and GoodEggs. Let me know what you think!

  • Meredith Golden (@mergoldenSMS), CEO of Spoon Meets Spoon (Wharton XM)
    logo-4-300x187

    • Talking about having 6-7 clients
    • Ghostwriting messages
    • Client work depends – assessing / diagnosing the problem
      • Not matching (pictures), profile, messaging, getting them to meet, etc…
    • Metrics based on what the initial diagnosis was
  • Matt Charney, Executive Editor – Chief instigator at RecruitingDaily (Wharton XM)
    screen-shot-2014-06-22-at-2.46.49-pm

    • Talking about workplace and conspiracies

 

 

  • Kyle Jones, iCRYO Franchises (Wharton XM)
    icryo-cryotherapy-logo-uai-720x433-5-3-300x181

    • Franchising initially – would’ve been a bit pickier when starting but too excited to land first deals
    • Out of 100 franchises, they’ll go with ~5 or so
    • 10 franchises, working on doing a big deal to launch 100+

 

  • David Epstein (@davidepstein), author of Range (Wharton XM)
    43260847

    • Discussed how Nobel laureates and creative types are often generalists that spend a lot of time learning / making
      • Stumble on new ideas or concepts in their work
    • Generalists aren’t bad – allow to see a different perspective and combine ideas
      • Think “The Quants” – relationship between corn prices compared to research on _

 

 

 

  • Deb DeHaas (@deborahdehaas), Chief Inclusion Officer, C4Corp Gov Deloitte (Women at Work)
    gx-global-center-for-corporate-governance-new-promo

    • Discussed her mother, who had passed away at the age of 90 recently, who was told she couldn’t be an accountant
      • Wasn’t her role – she pursued it anyhow and ended up being an engineer before quitting and being a community leader
    • Worked in Gulf Oil’s accounting dept and helped her husband through med school
      • First councilwoman in her town, elder at the church
    • Deb started at Andersen until it folded, worked for only one woman but she was taught there were no barriers
  • Bentley Hall (@bhallca), CEO of Good Eggs (Wharton xm)
  • Mitch Berg, CTO of Vroom (Wharton XM)
    mb_vroom_id_1
  • Alex Salkever (@alexsalkever), Vivek Wadhwa, authors “Your Happiness… Hacked” (Wharton XM)
    • With Stew Friedman, finding the middle ground of tech with children / teenagers and the happy medium
    • How is it that we find some things appealing but others are a burden
    • Facebook being a publishing agency – aren’t they responsible for what the product? “Newsfeed” example.
    • Google Maps or Waze as a hindrance at the local level – dangerous, maybe?
      • Extremely valuable, still, in new places / out of the country, especially
        • Different, maybe, for walking if alternative is talking and communicating with others
    • Problem with Facebook / Whatsapp – Whatsapp unmoderated group chats and only requiring a phone number
      • Encrypted, but what cost? Facebook – for Vivek, just limits to 1-way action
    • Social media as killing people – think India’s problems
  • Ed Sim (@edsim), FP @ Boldstart Ventures (20min VC 092)
    page_55dc6912ed2231e37c556b6d_bsv_logo_v15.3

    • LivePerson, GoToMeeting are 2 of his biggest investments as lead, exited / public
    • Started a fund in 1998, DonTreader Ventures – left in 2010
      • Idea was to bring SV style to NY – VCs would look at financials / models, but they looked at people and product – focus on markets
      • Most investors were corporate but cratered after 2008
    • Started a new seed fund for sticking with what he knew as well as recognizing a shift in 2007 for open source and cloud – consumer-based
    • SaaSify vertical markets with GoToMeeting founders who wanted to do new things – $1mln, $1.5mln
      • Enterprise people were looking to get a market for small ~$1mln investments
    • Hated starting a fund – “Fundraising sucks.” – Could find a great enterprise and tech entrepreneurs at seed stage – got $1mln and made 10 inv
      • First 5-6 investments were less than $5million pre-$, sold 4 by 2012 – had option values for series A or being sold to strategic companies
        • Entrepreneurs wanted to sell in those cases, but with cloud, definitely found that it was reasonable and cheaper to do SaaS
    • First / second generation founders or single vs others – “No single founders”
      • As the first institutional round, they’re first big money in. Last few investments were second or more founders – little bigger rounds
      • If first-gen founders, funding rounds are smaller – deep expertise in their field (and have to be engineers building product)
    • “Enterprise can be fucking hard” – have to know the industry – he has 20 years, partner has 10 and new partner as building 5 companies
      • Why he went this route? Started at JP Morgan as building quant trading models as liaison Business QA between engineers and portfolio managers
        • Derivatives models to real-time pricing models – feeds from Reuters or others, risk metrics and crank out the other side
      • Enterprise was exciting to him
    • Could take enterprise founders and redo or build a new company by changing the pain point – customers can be repeat because new pain point
      • Harder to do that in consumer
    • Leads come from founders – roughly 75% as recommendations from portfolio companies (wants to be first thought or call)
      • Helps founders get their pick and decide where to go – if you have an analyst report, may not be a great market opportunity initially
    • Environment of seed funding: Jeff Clovier of SoftTech as one of few microVC’s and now it’s 400+
      • Just want to be hyper-focused and being nimble – main value add as understanding the cadence (2 founders coding together to selling)
      • Stratification of VC – best ones have gotten so large that they can’t write small checks efficiently
        • Entrepreneurs don’t want $5-10mil immediately out of the gate – mismatch, looking for less for less dilution
      • Deal flow of crowdfunding: says sometimes they will leave $250k after leading for AngelList or building new relationships
    • Jason Calcanis blog Launch Ticker, trend as rise of the developer (multiple people in company using same thing – buying licensing)
      • Messaging as another interesting trend in the enterprise space – his most used app – Slack (SlackLine – private, external channels)
    • Most recent investment – stealth investment in a repeat founder (founded and sold before) – security focused on developer
  • Kim Wilford, General Counsel at GoFundMe (Wharton XM)
    go_fund_me_logo_courtesy_web_t670

    • Talking about joining, hadn’t considered nonprofit space
      • For profit arm and the nonprofit
    • Mentioning pushing marketing and following metrics for raising vs donations
    • Can influence news stations and push for higher engagement
    • Done almost $5bn in funding across 50 million donations

How to Humanize Data for Enhancement (Notes from May 20 – 26, 2019) June 12, 2019

Posted by Anthony in Automation, Blockchain, Digital, experience, finance, Founders, global, Hiring, Leadership, NFL, questions, social, Strategy, Uncategorized, WomenInWork.
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I’m going to keep this brief this week, as I’m trying out an added format of posting. I believe I’m going to test Nuzzel news to connect and share the links of articles I’ve read through the week (maybe once or twice – weekend one out on Monday, and another for the week through Thursday?). This post, concentrating on my week’s podcast or segment listens, will still go out. That’s my goal, though.

The week I listened to these, I was actually on my way to Monterrey with my family, though, so I had a solid 90 minutes each way to go through some longer episodes – thankfully, I found Doug’s take on culture and leading a community with Eat Club very insightful, as well as a blockchain discussion by the a16z squad particularly fun.

With the news and media focused on AI, Bias, Diversity and Ethics of ML and scariness of algorithms, it’s good to hear opinions that are focused, but thoughtful on the premise of what is being proposed. In a vacuum, yes, these can be dangerous. However, that’s not often the case when models are being deployed into production. Some are unintentional or started with a simple question of relationships (think Cambridge Analytica and how it started via Likes research on music at Facebook). That’s not necessarily justification for something that clearly had a large impact, but we’d like to know that teams are improving and have that awareness now more than ever before. That’s a positive.

I believe that these episodes, though, take a bit more of a nuanced approach of mathematics and numbers and attributes a human eye that has acquired the necessary expertise to design better models or come up with a better framework for action. We hear that with Dan Waterhouse of Balderton Capital (of a delightful Applied Math degree), who had to learn to apply more of an operational and human/market behavior investor since he had the metrics focus while learning. Then, a fascinating segment with Laura Edell, a sports fan, who struggled to believe that the metrics that were widely accepted as ‘most accurate’ (re: not necessarily max accuracy) included all components of what could be measurable – made some assumptions to test based on twitter/media analysis and coupled it with the data that was widely acceptable to come up with an excellent Final 4 Model.

To continue the theme, not to be outdone, Geoffrey Batt and Nikos Moraitakis each spoke of differing aspects of metrics that they honed in on and ignored the common threads of why those weren’t valid, despite what they saw as opportunities. Geoffrey as it pertained to Iraq investing and Nikos in the form of starting and building a company in Greece, not exactly the traditional hotbed. However, each persisted and are successful today – so there’s a lesson in doing the things that we want to do.

Remember, ultimately, numbers and averages usually take the aggregate, collection of those that may not have had the timing, willingness or ability to push but with enough persistence and support, some will certainly persevere.

Hope you enjoy!

  • Doug Leeds (@leedsdoug), CEO at Eat Club (Dot Complicated, Wharton XM)
    cropped-logo-highres1

    • Talking about going from Ask.com to Eat Club – other companies, as well
    • Quiz leading in was on different likes/dislikes
      • Harry Potter-themed eating pop-ups
      • Anti-spoiler pin (digital, season and episode to avoid conflict)
        • Anything was good that brings community together
        • Said that there were employees at work that took off Monday after GoT finale since they hadn’t watched
    • Delivery people are employees, not contractors – become regulars at corporate events and a part of the culture
      • Help build the culture of the locations – food and how they match
      • Building culture of Eat Club with improv – ability to improve skills there, as well
    • Eat Club numbers – 1000+ companies served, about 25k lunches provided
      • Regional difference of Indian focus in NorCal, Mexican focus in SoCal
        • Acquired an Indian food provider for new techniques – Intero?
        • Acquired another, as well
  • Five Open Problems Toward Building Blockchain Computer (a16z 5/16/19)
    ah-logo-sm

    • Ali Yahya (@ali01), Frank Chen and looking at crypto
    • New paradigm has to improve upon one or two particular ways for new applications, but likely sucks in most others
      • Mobile phone as enabling behaviors for instagram/uber and such with camera and gps in the phones
      • Have to trust the company currently to do what they claim to be doing – trust Google with so much to have the interactions
      • Now, have a computational fabric that separates the control of human power, self-policing and security bottom-up
    • Difference in communication cost – bounded on the end by speed of light
    • Trying to make networking efficient – miners propogating to other miners – blockchain distribution network
      • 1 MB vs 2 MB blocks but can kill some small miners
      • Agreeing on blocks or updates are final
    • Non-probabilistic vs fast – need to be faster than 60 minutes, for instance
      • Improvements on networking layer with Ethereum 2.0, Cosmo and cost or Proof of Stake (vs Of Work)
        • Who gets to participate? PoW requires everyone to compute an expensive proof of work.
        • PoS – intrinsic token that you have to own in order to buy participation, 2% ownership says 2% of the say to say yay or nay
        • Cost of participating is less expensive because it’s intrinsic
      • Practical for everyday use, small interactions between people and machines or people
      • Trust as the bottleneck to scale
    • 3 Pillars of Computation/Scalability: Throughput, latency, cost per instruction
  • Daniel Waterhouse (@wanderingvc), GP at Balderton Capital (20min VC 091)
    cqis46nlxvy5bkvj15kh

    • Sits on boards of Top10, ROLI, Lovecrafts, TrademarkNow etc
    • Was 5 year partner at Wellington Partners and invested in EyeEm, Hailo, Yplan, Bookatable, SumAll, Readmill (sold to DropBox), Qype (sold to Yelp)
    • Break in 1999 by getting to work at Yahoo for about 10 years before getting to venture in 2009
    • Applied Math background, tend to understand complexity and appreciate solutions in technology – different experience for entrepreneurs
      • Learned to be less metric-driven – less obsessed on numbers and data, more human and market dynamics
    • Operators vs career VCs – successful firms take different skills at different times
      • Exit, raising money, portfolio management, scaling, growing
      • Important to watch how a business is grown, whether it’s yourself or by being a long-term investor or close in other ways
    • Entrepreneurship as a career path and as a global one, investors in similar mindset and ambition – can take it anywhere
    • More seed capital and smaller checks than later in Europe at this time – maybe more competition higher stages
    • Thinks that consumerizing SMB software has a lot of room to grow, as well as enterprise software – easier UI-driven tools
      • Developments in AI – mentioned real-time trademark analysis (TradeMarkNow, for instance)
      • How to give great recommendations after gathering consumer tastes and insights
    • Book: The Brain That Teaches Itself – neuroplasticity of the brain
    • The first $10mln you invest, you’ll lose – advice
    • Overhyped sector: food delivery; Neglected: apply behavioral science to tech problems
    • Favorite blog/sector: longs for better content – thought TC was great when it was started, but now it’s Medium individual articles
    • Most recent investment Curious.ai – made it in 40 minutes & ambition was compelling
  • Geoffrey Batt (@geoffreysbatt), Nature of Transformational Returns (Invest Like the Best, 4/9/19)
    • Iraqi equities – history of asset classes
      • Time and patience is a big factor for how you look for results
      • Japan, for instance, 1950 – 1989 100,000% return but now is still below the peak from 1980
    • May have a decade of not working out return-wise
      • Nothing to show for investments, incredibly challenging, especially now – hedge funds or LPs
        • Reporting weekly or daily basis, long-term investment could be 6 months or 1 year – pulling money after first issue
      • Hard to ride out periods of long-term returns (think: re-rating countries)
    • LPs as agreeing to the time horizon – maybe investment committees that are making decisions on career-risk for institutions
      • Iraq to one of those – not likely to get paid off if it works, but if it doesn’t, get demoted or fired
      • Had to approach HNW and family funds – adjacency risk for people next to seed investors (if one is weighted on fund)
    • As student, he majored in psychology – said there was a guy in the seminar class that was a unique thinker
      • Daniel Cloud had co-founded a fund that invested in post-Soviet Russia before doing his PhD
      • Asked Geoffrey to come work for him and learn investment markets
    • Wanted to find next big thing – first, find a place that everyone thinks is awful (in 2007, this was Iraq)
      • Does perception meet reality? How many people dying in the war every month?
      • Country portrayed as “failed state” but oil production was increasing, CPI was 75% yoy but now 5-10%
        • Currency appreciating against the dollar, now civilian casualties in a month were down to 200 from thousands
      • Normal visit to Baghdad – mundane here, out-of-place was that 2 guys in middle of afternoon were playing tennis, kicking soccer
        • Visit companies, stock exchange, meet executives, go to a restaurant, how easy is it to hail a cab, get around
        • Critical process of infrastructure – are people paying in dollars (bad sign), local currency?
    • News media is just not set up to convey complexity to the audience – alienate, progressivism as a service, readers change
      • Experts don’t have skin in the game so they don’t face career risk – betrayal if you suggest otherwise, likely (even if true)
    • On his first trip, mentions Berkshire – early 1990s where they first invest in Wells Fargo
      • Managerial skill in banking is paramount if levered 20:1 (make 5% mistake and you’re done)
        • Don’t want average banks at great prices – want great banks at slightly unreasonable prices (thought about this in Iraq)
      • CEO of first Iraqi bank – unsecured loans to taxi drivers – less likely to take out the loan “between you and I, I’m a cowboy”
      • Entrepreneurs in these areas have to be better than others because of the instability vs the stable environments
    • Stock and capital guys – stock may trade at 3x earnings or 4-5x FCF, top and bottom lines growing at 20% per year
      • Usually just put there as knowing someone powerful but they can be bigger as allocators
      • 2008-09: Size at the time of the stock market – traded 3 days a week, 10am – 12pm on a white board
        • 60-70 companies, maybe 20 suspended from trading because 0 annual report – $1.8bn, smaller than Palestinian market
      • High growth company that is super opaque – can’t meet or won’t meet with CEO, maybe some others that state-owned enterprises that just want to keep paying salaries; maybe 5-10 companies that are investable
        • Equally weighted these companies initially and was still learning – now, he developed relationships and is on the board for companies
      • Does he want to put more $ and concentrate on the companies that he trusts and follows the guide
    • Largest holding for them – Baghdad Soft Drinks (Pepsi bottling and distribution for Iraq) – mixed-owned enterprise in the 90s
      • Local businessman (Pepsi is the dominating market share – ~70-80% vs elsewhere where it’s split) saw it was mismanaged
      • By 2008-09, were going to default on the loan they were floated – businessman bought the loan, fired management & 2000 ee’s, switched equity
        • Within a year, it was fully certified, tripled production, profitable business
    • Now, 5 days a week but still 2 days a week – had foreign investor interest, $5-6bn, couple IPOs successful
      • One telecom has about $1bn market cap, 14.5% dividend yield, 33%+ FCF yield
      • Foreign money came in 2013 but ISIS scared them off – coming back and interest from banks – arranging trips and momentum
      • Key problem – no 3rd party custodians (compared to Jamaica or even in Africa, HSBC or anything) – working on getting one
        • Makes it difficult to bring in foreign money – exchange is the custodian (which is actually safe)
        • No margins, cash-based market and settlements of t+0, no short selling (can’t sell unless have stock)
      • Oil collapse depressed prices and ISIS issue but has been up over last 2-3+ years, cheaper today than when he invested 11 years ago
    • Multiple expansion is the question for returns – 1x to 25x or 4x to 15x – depends on what they are as compounding
    • Kobe Bryant complimented him after a junior year game in high school – already looked at as a superstar – saw Geoffrey was dejected
  • Nikos Moraitakis (@moraitakis), Founder, CEO Workable (20min VC FF024)
    yawnofc__400x400

    • VP of BD at Upstream, enterprise sales in 40 countries in 4 continents
    • Wanted to start a company with type of what they wanted – centered around product, engineering company, starting in Greece
    • SMB over Fortune 500 because of product-focused and not corporation or enterprise-based
    • Applicant-tracking systems (ATS) – keep track of arcane process, don’t want to touch things – collaborative processes
      • Simple interface to solve problem of recruiting model (which is still 50+ years old)
    • Problems aren’t location-based – they’re conceptual – designing product, PMF
      • Opening with $500k or 50-200k if needing to get started, not necessarily $5-10mln like other markets or tech hubs, industry
      • Hiring engineers that are good in Greece isn’t so much a problem if you have a good company and network to attract talent
      • Moved to US not for VCs (doing good business, VCs pay attention) but they had 50% of customers without having anyone in US
        • Wanted to start customer support infrastructure, services and otherwise
        • Talked about marketing or accounting businesses on tech that taught companies that it may be worth it to update
    • Metrics that he pays attention to: month-to-month above $2mln annual revenue, ratio of new biz and lost biz
      • Not celebrating fundraising – few drinks but says it’s like having new shoes at the start of a marathon
      • Talking about investors and the relationships built to work together
  • Jaz Banga (@jsbanga), cofounder, CEO of Airspace Systems (Wharton XM)
    airspace-metal-crest2x

    • Meeting Earl, cofounder and maker, at Burning Man – drone being annoying above him while he did tai-chi
    • Prototyping the interceptor drones after seeing military request proposals – had an issue with drone over nuclear subs
    • Can place thermal scans and other security or rescue methods
  • The Transformer (Data Skeptic 5/3/19)
    • Encoder/decoder architecture of vector embeddings word2vec into a more contextual use case
    • Keyword lookup may not work (using ex of bank – river bank vs financial)
      • Humans at 95%+ accuracy, computer maybe around 50%
      • Encoding as correct interpretations and weights for context – emulating process
  • Laura Edell (@laura_e_edell) from MS Build 2019, NCAA predictions on Spark (Data Skeptic 5/9/19)
    build-2019-intro

    • Been at Microsoft for 3 years, supporting Azure for all their customers – quantum physics and statistics background from school
    • ML in cloud for customers – don’t know why they want it, just think it will be useful
      • Ex: image recognition (on techs with bodycams), HVAC documentation and augmentation or signal processing in anomalies of wave patterns
        • holoLENS use case
      • Played 2 sounds for Build presentation – her son blowing on her arm vs HVAC system custom sound – training sets and transfer learning
    • Can take a few real image and do a bunch for training: rotating, zoom, Gaussian blur, cut out background
      • Sound – same: take out environment, pauses and silence
      • Can turn 10 images / sounds into 30-50 per class
    • Active learning: model over time that can train itself and then retrain itself
    • Business domain expertise – her Final 4 model
      • #1 feature was wins, 2nd SoS, 3rd home court advantage / location – let machine validate the expertise
      • Validation of revenue drivers from machine – more importantly, if the opposite occurs – revenue doesn’t agree with data features
        • Used statistics to train data from the start in football, sports data – ncaa – teams, tourneys, prior history
          • Brought in her assumption of player-social index where they scraped sentiment and video analysis for team effects
        • Chose to use Azure Databricks (Spark background), store it in Blob and only retraining on Just-in-time in a Docker image
      • ML Flow, set of score for model – training set and .py and score.py or source data gets grouped together in Azure
        • Docker pulls them together easily and image is built, Azure DevOps can do VC

Thinking Through Data (Notes from May 13 – 19, 2019) June 5, 2019

Posted by Anthony in Automation, Blockchain, Digital, education, experience, Founders, global, Hiring, Leadership, medicine, questions, social, Strategy, Uncategorized.
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This week we had a hefty dose of medicine, biotech and data discussions. However, it isn’t just focused on the technology and innovation for these incredible people, but rather the frameworks of the thought process that goes in to their decision-making. We can ask “Where did we go wrong?” or “What assumption do we make that should/would be challenged?”

Annie Duke is excellent in assessing this on the spot, but she sheds light on the steps she takes to get to that level. Much of what we believe / view tends to be outcome-based, which is fine because that’s easiest to see. However, it’s rarely consistent in the path to get to that success point once we change the problem. That’s what we should focus on – consistent thought processes to make strategic decisions. Outcomes are one metric of measuring the decisions, but not an end-all, be-all.

AI mixes with a few of our guests, including Mir Imran and Eric Topol. How does it play a part in how we will progress? What may AI teach us about our historical research? Are there more optimal methods of delivery?

Emily Oster and Hanne Tidnam discussed societal effects of technology and decision-making. With technology becoming more and more ingrained as a part of everyday life, is there a point-of-no-return or is it okay generally? Or, is there a limit? Time will certainly tell – studies / surveys don’t have the information available to give us any insight since the time-scale is so recently biased. Technology has outpaced the level at which we can make data-driven decisions in this manner.

Bruno Goncalves discussed text mapping and language processing for how different dialects of the same language can indicate demographic patterns in various locations (focused initially in Brazil). He mentioned it was interesting to track words / phrases and how they changed throughout history for English, primarily – harder to track Spanish. If there’s more data available (say, mobile text / audio or email?), may be easier to break down by parts of towns/cities, but currently, it was limited to general, larger blocks based on Twitter text (which is sparse, generally, anyway).

Suranga of Balderton Capital discussed his movement from London to San Francisco and what he’d observed as a tech employee, then executive and founder and the difference between the environments. His excitement for the future comes from the societal change that infrastructure of technology may enable. Then there was a darker side when we heard the author of Ghost Work – Mary Gray – as she said there is a larger split of work designed for specificity as we improve the AI / ML models that have been deployed. What is needed work-wise or what can be automated? Are those good? Biased? We’ll see.

I hope you enjoy my notes and hopefully you’ll check out a few that sound interesting! Thanks again to the people that continue to keep me up to date with what I love to learn.

  • Eric Topol (@EricTopol), author of Deep Medicine, cardiologist (Wharton XM)
    deep-medicine-cover
  • Deep AI and medicine – asking how to properly apply deep learning or AI to medicine
  • Yet to have a drug made by AI
  • Bayesian principles failing in medicine community
    • 12% of women get breast cancer, yet we ask them to do 1-2 years mammograms
      • 10 year span, 60% will get a false positive (yikes!)
    • Adopters of Apple Watch and its cardiogram / heart information are treated unilaterally
      • Young, healthy and curious people may not have any arrythmia so any abnormality (totally normal) may be misdiagnosed
        • Signal from heart rhythm from one person may be different from another
    • Says it’s a sign of being behind (3rd industrial vs 4th for the rest) when Stethoscope (invented 200+ years ago) is still sign of industry
      • Analog, no option of recording and is still very subjective to the doctor listening
      • This, despite advances in imaging and scans otherwise
  • Mir Imran, Chairman & CEO of Rani Therapeutics (Bay Area Ventures)
    21bf244196ea49469935c6e51910eec6

    • Talked about the big equity stake his fund took in the company, wanting it to be a big hit
    • Drug development, say, an insulin pill compared to injections (spent 150+ years on solving this)
      • Stomach / pill form in past is only 0.5% or < 1 % efficacy – can’t intake that many pills or cost-effective
    • Designing pill that is pH-shell-dependent to identify intestine pain receptors are limited (can inject no problem)
      • Pill recognizes pH change by dissolving outer shell (to pass thru stomach), then sugar-needle injects
      • 1000s of animal trials and just passing pills
      • Started trials ~18 months ago in Australia for pill traveling (using x-rays every 30 min to track)
        • Then progressed into drug for giantism, along with looking at other biologic diseases / solutions
    • Don’t want to limit biologics to a single buyer (Novartis, Genentech, etc…) – keep it open
      • Investments from Novartis and Google initially ~$150mln worth now
  • Mapping Dialects with Twitter Data (Data Skeptic 4/26/2019)
    • With Bruno Goncalves about work studying language – now @ Morgan Stanley
    • Started with research in CS and Physics, moved eventually to Apache weblogs, email, big router logs, Twitter conversations to study human behavior
      • Turned into looking at Twitter check-ins with the log using longitude and latitude
      • Language used: order maps, areas dominated by specific language (drawing boundary between French and Belgian in Belgium, for instance)
        • Intermingling cities that attract many languages
    • Spanish changing from one areas to another – everyday words, phrases
      • Can use the location data to determine the area of dialects – splitting Brazil, for instance (South, North and then central American)
      • Dividing grid cells into km x km – maybe not determinate of gradients of English vs Spanish since they were testing dialects of Spanish
    • Each row corresponds to each cell and words, but the matrix essentially loses the meaning
      • Ran PCA analysis and K-means on the clustering
    • He’s gathered 10 tb of data from Twitter, corpora and looking at millions of tweets – too few data to look over time
      • Measuring language changes over time was difficult for Spanish, but easier with English
      • Used Google books, for each language and counting bi-grams in how many books – popularity of words
        • Corpus of books published in UK vs US for Google books (1800 – 2010) for reliable data, but further back was less popular
        • Could normalize for words on how American vs British words were (and the mixture)
    • Recently, looking at demographic splits of language now with more digital / online presence
    • Training spellcheck based on dialect or demographic splits
    • Doing this stuff part-time now – how to train a model to detect use of language in this sense
      • Using word embeddings to detect automatic meanings of slang to determine the different meanings
  • Matt Turck with Plaid co-founder, Podcast
  • CSR in Gaming Industry,  (Wharton XM)
    • Discussing how it can be weird to gain competitive advantage and share
    • CSR as large subjective to the person looking in
    • Gaming companies chip in to gambling addiction hotlines / help / etc
    • Particularly in Las Vegas / NV, CSR survey determined that direct opportunities in water conservation, energy and green energy
      • How can they more efficiently run such large operations
    • Survey had about 80% of the gaming industry represented, from servicers to manufacturers to casinos themselves
  • Suranga Chandratillake, GP at Balderton Capital (20min VC 090)
    balderton-capital-logo-1

    • Founded blinkx, intelligent search engine for video/audio content in Cambridge in 2004
      • Lead company for 8 years as CEO through journey to SF, building a profitable biz and going public in London
    • Early ee at Autonomy Corp, engineer in R&D and then CTO when he went to SF
    • Belief in technical person shouldn’t be CEO – idea has been replaced in US (probably split)
      • Jack Dorsey, Zuckerberg (went into Dorsey and the idea 2 companies that aren’t really overlapping)
    • Been impressed by both Gates and Zuckerberg
      • Knowing the code and going through to understand everything
      • Zuckerberg’s acquisition of Instagram (ridiculed for $12bn and how right he was – surpassed Twitter’s users)
    • 2 Things for Tech going forward – changing infrastructure
      • VR and including drones or autonomous vehicles – hardware progression and mobile phones for what CAN be done
      • Societal difference – how we change to gig economy or how we work and spend time each day
    • Changing investments – just announced investment in Curious.ai
      • Shorter term where society is changing (eg: Nutmeg for planning pension plans, cheaper and available)
    • Structure for Balderton as equal partner VC – not sure it’s the most efficient model, but thinks it’s the best
      • Equal partnership where the partners have all the same number of votes, compensation and identical split
        • Removes the politics and impacts the partners and the stakeholders (founders that may be affected)
      • No single group that can carry the vote – hiring becomes very difficult because you need an equal
    • Knowing when to stick and when to switch
      • Deciding when to say “We don’t do that” and pivoting and being right
    • Exciting company for investment that he’s done recently – Cloud9
      • All development being done in the cloud now
  • Nick Leschly, CEO Bluebird Bio (Wharton XM)
    bluebird-bio

    • Purpose Built, 5/14/19

 

 

  • A Guide to Making Decisions (a16z 5/12/19)
    • Emily Oster, Hanne Tidnam discussion
    • Health and personal spaces – “right” thing isn’t a difference for some
      • Cocoa crispies, eggs and the preference for why you eat them, not just health-related
    • Impact of breast feeding vs not and looking against obesity
      • Less likely to be obese if breast feeding
      • Random trial for this is from Belarus in the 1990s where they requested parents to some breast fed
      • Siblings in choice to breast feed – almost no correlation if they did or did not
    • Constrained optimization – money or time
      • As parent, making choices based on preferences but have constraints
      • Recency bias for current literature – only data will be problematic and that it can only support a relation
    • Regression discontinuity as drawing a line and then seeing interventions and how they may change or affect outcomes
    • Screen time as having evidence that’s just very poor
      • Not easy to run randomized trial on – iPad or lifestyle would have to change for trial
      • Apps in short term doesn’t have the info available for results / outcomes
      • Studies currently don’t have any conclusions on phones/tablets – little
      • Bayesian updating on uncertainty – if 2 year old spends 50% of waking hours, that’s bad. Where’s the limit?
    • Last time went to doctor – very concretely made a recommendation of “2 hours max in a day”
      • How does the information get to that level of the system?
      • Conversations occur with doctors where they essentially make the lines that stick, pass on
    • Recommendations go out as arbitrary but now are made as truth – terrible without the decision
      • People that take the recommendations are likely more different or health-conscious
        • Added another layer (vitamin E, for instance) – those that adopted did many other things
    • Just be wrong with confidence – can be right, lots of good options
  • Innovating in Bets (a16z 5/8/19)
    • Annie Duke (@AnnieDuke), Pmarca, smc90
      annie-duke-thinking-in-bets-199x300
    • Every organization and individual makes countless decisions every day, under conditions of uncertainty.
    • Thought experiment: posing Seahawks run the ball and are stopped vs passing and throwing pick
      • Once there’s a result, it’s very difficult to work backwards to assess the decision quality was.
        • Outcome was so bad – it was in the skill bucket. Or – oh, there was uncertainty.
      • Very slow in NFL, for instance, to adopt analytics according to the numbers
      • 4th and 1 – should unanimously go for it since numbers say the other team will get 3, expected
    • As a decision maker, we likely choose the route that keeps us from getting yelled at
      • We allow uncertainty to bubble to surface – conflicted interest – long run vs short term
      • 2×2 matrix of consensus vs nonconsensus and right vs wrong
        • CR fine, NC-R genius, CW – fine (all agreed), NC – W really bad
        • Outcomes are right and wrong – hard to swipe the outcomes away
      • Thinking or allowing uncertainty in human driving and killing a human vs autonomous vehicle
        • Black box not understanding autonomous vs THINKING understanding another human (“Didn’t MEAN to do it”)
    • Anybody in business – process, process, process
      • R/E business – everybody in room after appraisal is 10% lower vs 10% higher (similar analysis)
      • Outcomes come from good process – try to align that an individual’s risk matches with corporation’s
        • Rightest risk – model could be correct (tail result) or risk decision (and deploying resources)
    • Most companies don’t have SITG – how to drive accountability in a process-driven environment so results matter?
      • How do you create balance so outcome caring about is the quality of forecast?
        • State the model of the world, places and what you think. How close are you to the forecast?
      • When you have a bad outcome and you’re in the room?
        • How many times do people say “Should we have lost more? Should we have lost less?”
      • Learning loss – negative direction on how to figure out? Poker example of betting X, X-C or X+C
        • Bet X and get a quick call. Should’ve done X+C (learn, regardless of opposite getting a card)
    • How much can you move an individual to train thinking? Naturally, thinking in forecasts more. Will have reaction and lessons quicker.
      • Getting through facts quickly and having the negative feedback – not robots
      • Improved 2% which is amazing – what are YOU doing to not make it worse?
      • “Results-oriented” as one of worst for intellectual work – need a process.
    • Story of “something is happening” is not a good story. Hard to read journalism now for him because they’re both “non-consensus”.
      • She’s optimistic that people can be equipped to parse narrative to be more rational. Pessimistic of framing and storytelling currently.
      • “Not making a decision” is making a decision but we don’t think of it that way.
        • Really unhappy in a position. Did the time frame thing “Will you be annoyed in 1 year?” – Yes. Nondecision didn’t feel like decision.
      • Mentions not having kids – time, energy, heart and decisions associated with indecision.
    • On individual decision, you have: clear misses, near-misses, clear hits
      • Bias toward missing – don’t want to stick neck out. Have to see it in aggregate. Forecasts.
        • Anti-portfolio / shadow book is really about when you include clear misses vs near-misses.
        • Fear is that the ones that hit are less volatile or less risky will be returning less than shadow portfolio.
      • Says it’s difficult to do with 99:1 turndown vs investments. Sampling.
        • Time traveling with portfolio – bounce out and see if “if this is 1 of 20 in portfolio” vs “invest vs not”
    • Conveying confidence vs certainty
      • I’ve done my analysis. This is my forecast. Is there some piece of information I can find out that would change my forecast?
        • Bake it into the decision. Not modulating the forecast – 60% to 57%. Costs and time differences.
      • Putting confidence interval on earliest dates and another probability, inclusive, on latest day
        • “I can have it to you on Friday 67% of time and by Monday 95% of time.”
        • Terrible to ask “Am I sure?” or others “Are you sure” compared to “How sure are you?”
    • Pre-mortems in decision analysis
      • Positive fantasizing vs negative fantasizing (30% closer to success by thinking of hurdles in front of you)
      • What happens if you ask out crush and they say yes? What happens if you ask out crush and they say no? – No’s more likely.
      • Teams get seen as naysayers – individually write a narrative on pre-mortem – good team-player is how do you fail?
      • After outcome, we overweight regret – don’t need to improve this much. Look out a year and see if it affects you.
  • Mary Gray, author of Ghost Work: How to Stop SV from Building a New Global Underclass (Wharton XM)
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    • Research with coauthor at Microsoft Institute
    • Discussion of the b2b services that run in the background – used Uber’s partner as example for driver verification ID
      • Beard vs no beard on default, for instance – need close to 100% accuracy and algorithms/vision can’t pick that up just yet
    • Humans that run mechanical turk or various tasks on classifications
    • Technology used to be cat vs dog and now it’s species of dog – likely tech will enable more specific classifications but not remove intervention
      • Running with surveys, captioning, translations, transcription, verifying location, beta testing are all tasks
    • Used another example for “chick flick” meaning or 2012 debate with Romney’s “binder full of women” comment
      • Needed humans to assign relevance and to provide or connect proper context (Twitter, for instance)
    • Facebook and its content moderators, most social media companies do this
  • Trends in Blockchain Computing, (A16z, 5/18/19)
    • Get paid for AI data or encrypted data – can still train a model on it but nobody would know exactly what the data is
      • Long term accrual – depends, also, on if it’s on AWS vs open-source
    • Gold farming and ex-protocol websites in WoW, for instance – virtual worlds

Leadership: Data and Strategy (Notes from Week of May 6 – 12, 2019) May 30, 2019

Posted by Anthony in Automation, Digital, experience, finance, global, Leadership, questions, social, Strategy, Uncategorized, WomenInWork.
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This was a very fun week for listening. I caught a ton of material and insights from very creative leaders on how they’ve looked at strategy and building great teams, align companies and progress in a successful manner. Their methodologies or frameworks didn’t always align, which was also refreshing to hear. We often get stuck on the same methods if we hear them repeatedly – I’m under the impression that this becomes dangerous if held as a truism when others may question this way or go away from it – there isn’t a one-size-fits-all to building businesses! Especially when information is plentiful, and people / ideas are a few clicks away.

Zeke Zelker is a super-creator who has pushed the envelope of creating and producing engaging videos, whether it’s marketing material or tv or films. Definitely worth checking out, especially as media content in video / audio has increasingly been the mode of consumption.
Benito Cachinero of the Egon Zehnder Leadership program talked about 4 things he looks for and teaches in leadership. Also, he covered the importance of how to strategically allocate resources when looking for growth or expansion, both in economic and human capital.
A CES overview of consumer tech trends by the a16z squad was intriguing! Alarms, smart home and other products that caught their eye as options to drive the future of homes and how we’ll interact on an everyday basis.

Caryn Seidman-Becker  discussed privacy of data and personal biometrics as the CEO of CLEAR – trying to improve the ease of security while fighting the image that people think of when hearing what it is they do to enable this. Brett Hurt was fascinating – building multiple companies early in life and calling up his friends to start a new one. Deciding the name? Hilarious. All of this before getting into Clarabridge’s sentiment analysis with Ellen Loeshelle. She realized how much different types and ways to look at data / text could help in analyzing a plurality of business cases, across many industries – not just customer data for their clients. Last but certainly not least, Stephanie Cohen needs no introduction – but she discussed how she perceives data for company progress and leading the groups needed to achieve her goals.

I hope you all enjoy!

  • Zeke Zelker, Creative Transmedia Branding (Wharton XM)
    • Talks about his films being cine-experiences, and as a DIY videographer how he can control all aspects
      • Considers business along with creative direction – makes sure to align them
    • 4 phases of content: ignite, sharing short form content, main event, reward
    • iDreamMachine – his prod co. & producing Billboard about 4 people living on a billboard
    • Has 7th most viewed drama on Hulu (InSearchOf) – engaging audiences to become a part of the story
    • Encourages people in the environment to create content, whether it’s a blog or short snippets – become part of the overall story
  • Chris Carosa, author of From Cradle to Retirement: Child IRA (Wharton XM)
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  • Making money as child, pre-teen and then teen
    • Child: golf balls selling – golf course, lemonade stands, etc
    • Preteen: babysitting, lawn mowing, card collecting
    • Teen: W2 eventually, card collecting, babysitting and other types – photography, writing
    • Parents can save $ for child by investing in child IRA ~$1k or up to gift amounts of $6k now as long as W2 income

 

 

  • Benito Cachinero, Egon Zehnder Leadership Solutions (Wharton XM)
    • Previous President HR at DuPont HR
    • Discussing potential ~4 factors for leadership (direct contradiction to measurements in being accurate)
    • Aligning resources for growth strategy in new markets – China vs Midwest, for instance
  • Pulse Check on Consumer Tech Trends (a16z 1/17/2019)
    ah-logo-sm

    • With Benedict Evans, Steven Sinofsky
    • Trends at CES – no consumer product themselves, just a lot of all parts of supply chains / manufacturing
      • Batteries in 10k – 100k, so know what you want
    • TVs were not curved (nobody bought curved) – had 3 ft bar and tv came out above it in 10-15sec
      • Or edgeless Samsung blocks “The Wall” where you could make them as large as you wanted – LCD in any shape/size
      • Sizes could be anything now, amortized supply chain and manufacturing plants vs idling
    • Media content providers and apps
      • Pausing / syncing and Samsung apps with Apple video – clunky or AirPlay hardware
      • NorCal vs SoCal or California vs other states (think Apple phone vs the rest)
    • Easiest product to get alarm from 12+ companies for an hour to plug stuff in and it’s done
      • Proprietary electrical wires until they got low energy Bluetooth and now it’s everywhere
      • Lock or other nuts and bolts having SKU proliferation or new homes
        • Have to know gen contractors, Home Depot, developers and fragmented
    • FirstAlert smoke alarms – mesh wifi since they’re hardwired or battery
      • Put wifi in the alarm (to go to phone, etc…) – lots to do it with insurance or risks
    • Alexa chip supplier to connect everything
      • Apple tried to do Home Kit but eliminated everyone because almost nothing was implemented – wasn’t easy
      • Amazon has leverage for hardware but it has to benefit them for Alexa and being useful
      • If all makers saw HomeKit, could join war for Alexa vs Assistant (now that everything has their discovery appliances / connect)
      • Compare electric toaster to holding bread in front of fire and similar progressions
    • Show about running experiments is CES vs show about finding business value
    • Cultural part of CES – Japanese hand clapper
      • The founder of Ukrainian and employee and others that were hustling
  • Caryn Seidman-Becker, CEO of Clear (Wharton XM)
    kc6vuppj

    • Biometrics and buying Clear
    • Talking about the reactions for people getting to skip lines – make it more efficient
    • Allow TSA agents to work on what is actually important
    • Trying to describe to change customer behavior in the privacy aspect of what they keep
    • Biometric data but encrypted and secure

 

  • Brett Hurt (@databrett), co-founder and CEO of data.world (Wharton XM)
    logo594x144

    • Discussion of Edgecase (Compare Metrics), BazaarVoice (running backend for a lot of ads)
    • How they stumbled onto the data.world site – calling his co-founders of next big idea
  • Rod Hochman, MD and President, CEO of Providence St Joseph Health Leadership (Leadership in Action, WhartonXM)
    • Talking about being a junior member of the board of physicians when he started out
    • Leadership and how he went into the administration side as a young physician
    • Administration for many physicians is beyond the time / scope of many – hard to think of it without doing MBA or taking time
      • Important to combine the two for the expertise and management
    • With this business, how much is going on between clinics or hospitals and the network
  • Sentiment Analysis, Ellen Loeshelle, Dir. of Prod Management at Clarabridge (Data Skeptic 4/20/19)
    clarabridge-analytics

    • How positive or negative a customer may be expressing a review or otherwise, polarity
    • Academically, may have entire text as positive vs negative
    • Clarabridge – helping their clients understand their own customers
      • With hotel experience: could be multiple levels – service, cleanliness, check-in, overall
      • Using a clause, individual tokens, lemmas, parts of speech and how they’re related
    • Dealing with 21 languages natively, and having computational linguists on staff to understand the grammatical syntax or individual contractors
      • Vocabulary can change, but not necessarily syntax (think: sick)
    • Sentiment is rules-based engine as BI tool for her end users – full control / transparency for analysis
      • ML in place with w2vec for tuning rules in the engine since those change based on context/industry
    • Flipping sentiment or negating and modifiers as using the extreme ends of sentiment analysis (-5 to 5 scale)
      • Structured stays similar, but lexicon changes contextually and sarcasm / transcriptions as more difficult unless obvious or explicit
    • Sentiment goes along with their emotion or effort analysis for customers
      • Enterprise tool and APIs for engine on enriching internal systems
      • Considering sentiment analysis as table stakes now – different than when they first started when they were ahead
    • Client in small kitchen appliances used Clarabridge to treat sentiment on competitors, specifically for pressure cookers
      • Eventually saw that the sentiment split for pressure cookers and that pushed them into doing Instapot
  • Stephanie Cohen, Evolution of M&A and Corporate Strategy (a16z 5/7/2019)
    A Goldman Sachs sign is displayed inside the company's post on the floor of the NYSE in New York

    • Stephanie – CSO for Goldman, member of management committee, Was in M&A and investment banking for Goldman
    • M&A is experience-based business, M&A with same people – rarely would be one-and-done – just a method of executing strategy
    • Bad examples of M&A – likely hard to keep up with growth or expectation of growth but tries to buy the growth
    • Her worst example: Fiat Chrysler with government owing, Canada + US and pension
    • Trends: velocity of M&A is greater (cited $1tn of M&A last quarter), amount of private equity has about $1.5tn for buyers (divest vs sell)
      • When she started, needed a strategic buyer – now, just need to provide an answer to how the business is a good alone activity
      • China / Asia as higher volume in general
    • “Anti-trends”: still very analog as M&A, person-to-person; continued evolution may come with digital capabilities
    • Preparing or thinking of selling:
      • Don’t wait too long to sell (assets no longer strategic, more the business will atrophy) – be proactive of business portfolio
      • Build relationships early on with financial or strategic buyers
    • Best M&A banker he’s seen: Tim Ingrassia (analyst originally) – corporations, legal, bankers
      • Friendly, relationships and doing business without ‘playbook’
    • Figuring out strategy, which companies you want to buy and the alternatives (top targets, organic version, next a, b, c plan)
      • What to pay, rumors of what others would pay – what’s it cost to you?
      • Thinking creatively about deal? How to design the right compensation packages? What’s the integration strategy?
      • Clients are thinking of deal with integration people and how to get synergies to work the best
      • “Charm offensive” – ultimately, most sellers make decision on valuation – if you’ve developed best relationships, you get other information
      • Walk-away price
    • Top down vs bottom up strategy – mentions $CAT as shifting toward RR vs sales, and not unique to just financial services
      • Not one instead of the other (fee-based vs recurring) – good deposits bring in other clients
        • Creating and building business with the right economy within various parts of the business
      • Going forward, people running businesses everyday have the best idea of how to exploit markets
        • If client-focused and outwardly-focused, should come up with great ideas together and to push forward
      • Exploration is hard or unnatural – high-energy, client-driven and solving in a creative way
        • Creative and quiet thoughts – leaders need time away, but people have to be exploratory to consider new plans
        • Example for tech and how to have the right conversations based on seeing what other companies are doing
        • She says that with how fast tech is growing, they need to work together and partner
    • Accelerate as trying to push new ideas
      • Committal vs part-time – allowed them to fund and go with their idea, or keep them head of board
    • Belief in fintech for a huge opportunity – have tended to build things on their own, but have pivoted to not do everything
      • What should we buy? What should we build? Want fintech to come and partner with Goldman.
      • Most of life is on phone and it’s almost seamless – but not financial life for mobile
  • Ruth Zukerman, Co-founder of FlyWheel Sports and SoulCycle (Wharton XM)
    • Creative director
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