eshmu

3.5K posts

eshmu

eshmu

@eshmu

Co-founder and CEO @anomalo_hq. Product and Growth leader @Instacart @Wealthfront @LinkedIn and more. Opinions are my own.

San Francisco, CA เข้าร่วม Aralık 2007
178 กำลังติดตาม5.2K ผู้ติดตาม
eshmu
eshmu@eshmu·
@joshelman The best schools now have technology / CS programs. Finance definitely still missing and Economics programs are too theoretical to fill most important gap.
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Josh Elman
Josh Elman@joshelman·
The benefits of taking chemistry, biology, and physics in high school are so that we understand the fundamental building blocks of the world even if we don’t work on or use these topics daily. How have computer science (and now AI) and finance not made the cut?
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eshmu
eshmu@eshmu·
@villi The rock stars go to John Varvatos (or at least they did back when I last got a suit).
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villi
villi@villi·
It is time that I grow up and buy a suit. I have blocked my calendar for 2 hours next Thursday. Where does one go to buy a suit in SF?
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Patrick Collison
Patrick Collison@patrickc·
Interviewed Alain Bertaud at Stripe this morning, and he said something that I quite enjoyed (paraphrasing): "Part of the purpose of innovation is to avoid the Solzhenitsyn experience in The Life of Denisovich... where every day is predictable. That is the definition of inhumanity. As humans, we need change." I hadn't really thought about the idea of non-predictability as a positive good.
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Percy Liang
Percy Liang@percyliang·
Most leaderboards just give you scores, leaving one wondering: what does 76.8% mean? In HELM, we are committed to full transparency, meaning clicking on a score will reveal the full set of instances, and you can even inspect the exact prompt (which we know makes a big difference). Check it out at crfm.stanford.edu/helm!
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eshmu
eshmu@eshmu·
Yes -->
Aaron Levie@levie

One of the most common concerns about AI is the risk that it takes a meaningful portion of jobs that humans currently do, leading to major economic dislocation. Often these headlines come out of economic studies that look at various job functions and estimate the impact that AI could have on these roles, and then extrapolates the resulting labor impact. What these reports generally get wrong is the analysis is done in a vacuum, explicitly ignoring the decisions that companies actually make when presented with productivity gains introduced by a new technology -- especially given the competitive nature of most industries. The thinking generally goes that if a company could, say, be 50% more productive in a particular function, it would mean a commensurate reduction of jobs in that area. For instance, if a certain function (like engineering or sales) required 10 units of labor before, then with a 50% gain in productivity, in the future that same function would now only need ~7 units of labor. The challenge with this type of thinking is that it assumes that companies have maximized the amount of labor they wish they had for a particular function, when in reality many functions are only staffed at the level the company can afford. Further, it assumes that a company is not in a competitive field, and that the company would be complacent and happy about generating the same output as before, just with less costs. Finally, it ignores the fact that productivity gains in a market will lead to increased response from competition, which companies equally have to respond to with more productivity not necessarily more profit. Time and time again this is the type of flawed thinking that we tend to get out of broad economic studies on the labor needs in the economy. To break this down and make it practical, I thought I'd illustrate the point with the example of an engineering function -- one that already is seeing the benefits of AI starting to roll out. The numbers will all be kept simple, but you can change almost any variable and the point will remain the same. The key to thinking through job impacts is to think through what happens a step or two *after* the productivity gain of AI is experienced. So, imagine you're a software company that can afford to employee 10 engineers based on your current revenue. By default, those 10 engineers produce a certain amount of output of product that you then sell to customers. If you're like almost any company on the planet, the list of things your customers want from your product far exceeds your ability to deliver those features any time soon with those 10 engineers. But the challenge, again, is that you can only afford those 10 engineers at today's revenue level. So, you decide to implement AI, and the absolute best case scenario happens: each engineer becomes magically 50% more productive. Overnight, you now have the equivalent of 15 engineers working in your company, for the previous cost of 10. Finally, you can now build the next set of things on your product roadmap that your customers have been asking for. We can't assume it will be 50% more because there are new points of friction and coordination tax that emerge as you have 15 equivalent engineers, but let's say your output goes up meaningfully. Assuming you're acting in your best interests as a company, the features you build make your product that much more compelling, which means at some point (sooner or later) they should result in an incremental gain in revenue. Let's be somewhat conservative on what impact these new features will have on your product, but let's say they generate an incremental 10% of revenue over time or keep customers retained at a 10% greater rate (roughly the same financial benefit). Now let's assess the downstream impact. Firstly, any growth of revenue will often lead to some functions in the business growing as well to support these new customers, which will directly create new jobs. But further, the company now has to decide whether it remains satisfied with its 10 engineers that have the output of 15, or with their incremental revenue should they hire even more engineers to build the *next* set of features that will make them even more compelling to customers. Unless this company is in some rare monopoly position, they likely will want to build the next set of features even faster than the last set to grow even more quickly. This then means AI has caused the company --counterintuitively-- to hire more engineers than before, because the productivity of each engineer is much higher, allowing them to generate more return per engineer, and thus more revenue. What's interesting is this analogy works similarly for most functions in a business. In sales, if you could make sales reps 10% more productive (i.e. they sell 10% more of your products/services for the same cost), almost every company in the world would prefer to hire even more sales reps, instead of merely banking the incremental profit. That incremental sales productivity again would lead to downstream implications, like the need to deliver more features to customers, and thus more R&D hiring! Even back-office functions that don't as directly tie to revenue growth, often are a bottleneck to growth . If you can reduce the bottleneck -- say lawyers reviewing contracts, or people processing invoices-- cycle time in businesses accelerates, which almost always lets you serve more customers faster or grow more quickly, again letting a company reinvest those dollars. In the end, when you step out of the vacuum of just the specific productivity gain of a particular job function, and look at how the whole system will adapt and improve due to that productivity gain, a very different picture of AI's impact on jobs will emerge. Yes there will absolutely be changes to what jobs become more or less in demand in the future, but the competitive nature of companies inevitably ensures that across the whole system companies will be focused on leveraging AI to become more productive.

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SignalFire
SignalFire@SignalFire·
It’s crazy that more data was created in the week it took to write this blog post than in all of 2011. As AI explodes, it’s obvious that we need better tools to keep clean and organized. signalfire.com/blog/anomalo-i… Despite enterprises spending $66 BILLION last year on data infrastructure, errors still run rampant and quality control is the #1 bottleneck to further AI adoption. But AI will also help solve this problem. The first generation of data hygiene was rules-based, and the second focused on metrics-driven data observability. But a company called @anomalo_hq is pioneering third-gen AI-based data quality tools that can sniff out red flag data points that indicate larger accuracy issues. That’s why we're excited to share that @SignalFire is leading Anomalo’s $33M Series B, alongside @Databricks, @NorwestVP, @FoundationCap, and @TwoSigmaVC to fix data anomalies for the world’s largest organizations. We’re bringing its data luminary founders @eshmu (former Chief Growth Officer of @Instacart), and @jeremystan (former VP Data Science of Instacart) together with SignalFire Executive-in-Residence @douglasmerritt (former CEO of @Splunk), and SignalFire Partner Chris Scoggins (who scaled DataLogix to its sale to @Oracle). Here’s more on how they’re building the future of #AI #data quality at scale.
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eshmu
eshmu@eshmu·
Fun times with the @anomalo_hq NYC crew this morning! A huge thanks to all the Anomallamas who made this possible.
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Anomalo
Anomalo@anomalo_hq·
🚀 Anomalo secures $33M Series B funding to bring AI-based data quality monitoring to every enterprise 🎉💻 Huge thanks to our amazing team, investors, customers, and partners for making this possible. 📈🔍 #SeriesBFunding #EnterpriseAI #AnomalyDetection #DataQuality #DataOps
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eshmu
eshmu@eshmu·
@a16z You're missing Anomalo (@anomalo_hq ) from the Data Observability box. Also Outlier (from Augmented Data) doesn't exist anymore and Streamlit (from App Frameworks) is now part of Snowflakd.
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a16z
a16z@a16z·
Core data processing systems remain relatively stable, but supporting tools are multiplying rapidly. Our hypothesis for this quick growth: It may lie in data platforms. i1.wp.com/a16z.com/wp-co…
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