2024-12-20 08:00:00
Every year I make a list of predictions & score last year’s predictions.
Here are my predictions for 2025.
Here are my predictions from last year.
The IPO market remains closed through the first 6 months of the year. But a few mega issuances, especially Stripe & Databricks in the summer or fall, re-open it for others. The Fed cuts rates, which helps.
Score: 0. Only 3 IPOs! Maybe next year!
M&A accelerates throughout the year. The anticipation of a rate change drives fear of target acquisition valuations. In the last two years, M&A has totaled about $49b & it surges to above $60b driven by AI acquisitions. PE becomes an important buyer of companies growing 10-25%, as it did in 2018, driven by lower debt costs.
Score: 0.9. M&A was up $10b y/y but not so much by AI.
AI & data continue to dominate the funding landscape as founders & investors seek novel applications of the technology. A handful of companies achieve record-setting growth rates.
Score: 1. AI funding is now half of all VC funding. Companies are attaining record growth rates.
The share of AI-enabled web searches approaches 50% of all consumer search as consumer behavior patterns evolve, especially on mobile.
Score: 1. Most GenZ & Millennials default to AI search, & for many Google.com search, an AI Overview graces the top of the page.
The BTC ETF drives a resurgence in interest in web3 financing. The winter forced many companies to evolve from open-source projects to revenue-generating businesses. We see the first broadly successful tokens with dividends (likely outside the US). This innovation reinvigorates very early-stage IPOs. We also see more ARR-based web3 businesses achieving scale. Record inflows into tokens fuel all-time highs in Bitcoin, Solana, & higher performance L1s who offer better price/performance to market.
Score: 1.0. BTC at $100k & the ETF is the fastest growing ETF in history.
US VC investment falls from $275b in 2022 to $200b in 2023 & sustains at about $200-220b in 2024 as LP interest in venture attenuates after the euphoria in 2020 & 2021. Valuations remain relatively steady except for AI businesses, which command a premium to market of about 10-25%.
Score: 0.7. US VC investment totaled $210b in 2024. AI premiums are closer to 2-5x.
The discussion around AI regulation becomes a critical topic in the US during the election because machine-generated content exacerbates international meddling in US politics. But the overwhelming desire for the US to continue to lead the innovation wave it started creates safe harbors, the same provisions which enabled the web to flourish, are applied to AI.
Score: 0.5. Yes, AI regulation was a hot topic. But the election impact didn’t materialize as expected.
Companies & startups in particular begin to report meaningful improvements in productivity from AI, reducing their headcount growth, but growing revenue just as much as projected. ARR per employee increases 10%, twice the decade long average.
Score: 0.7. Microsoft, ServiceNow, & Salesforce all report productivity gains from AI measured in the hundreds of millions of dollars.
Data lakes become the dominant data architecture across business intelligence & observability workloads as more startups leverage Amazon S3 free replication. Cloudflare R2’s architecture for very large data sets drives a meaningful growth in its usage, predominantly for AI.
Score: 0.5. The narrative in data has certainly become the data lake. The R2 architecture hasn’t materialized.
Total : 6.3/10
Down from 4.0/5.0 last year! But it was an election year so I’m cutting myself some slack.
2024-12-17 08:00:00
From the pit lanes of Formula One to the secretive world of commodities trading, from the championship poker tables to storytelling competitions, I enjoyed a wide range of different books this year. Here are my favorites :
Send me your recommendations for 2024!
2024-12-16 08:00:00
Remember the first time you touched a computer screen instead of typing commands?
We’ve lived through distinct epochs of human-computer interaction: the cryptic beauty of command lines, the intuitive dance of graphical interfaces, & the ubiquity of browser-based computing in the SaaS era.
It’s different now. When I manage spreadsheets, I don’t want to manipulate formulas anymore. Instead, I want to instruct the computer as I would explain to a colleague : “run the correlations on these variables to see if anything meaningful pops out, then plot it, & add it to the deck.”
When I parse research reports, I don’t want to read them line by line ; I want to ask for summaries & surprising conclusions.
When I program computers, I don’t want to work at the level of lines & functions & arguments, but the style of a webpage like this blog’s theme.
When I read an email, I want to command an AI to follow up on this in a week, or research the new prompt engineering technique in this newsletter & send it to my Kindle so I can read it that night, or compare the revenue multiples on health care records companies to horizontal CRM.
So, I’ve taken to keeping an AI open on a separate monitor. That’s step one.
But I’m starting to run models on my laptop so I can fire all kinds of questions at its feet & watch it dance. Can it draft an email, or critique a blog post well?
Running Llama3.3 on my computer is the nearly same as asking any of the major alternatives - but more private & a bit slower - which for the moment works for me. It buys me time to read the AI’s output and reflect on this new working relationship.
Talking to the computer using the transcription program I built (that I’ll soon share), reinforces the sense of collaboration.
I can see a world where I’m not flipping between applications. Instead, I’m telling the AI to send an email or research multiples & that’s my interface - that’s my OS. Not the command line, not the desktop, not the browser.
The AI choreographs all that work underneath.
2024-12-13 08:00:00
If you needed proof that every software company is an AI company, here’s the evidence. 46% of all US venture financings in dollar terms in 2024 were AI.
This revolution breeds in every corner of the startup ecosystem :
37% of Seeds, 35% of Series As, 67% of Series Bs, 24% of Series Cs, & 47% of Series Ds were AI companies. Within a year, half of software companies are AI companies.
By next year, if this trajectory holds, we’ll struggle to find software that doesn’t think, learn, and evolve.
What isn’t captured in this data is that the way companies are built is also changing. AI is in the product but AI is also writing software, crafting marketing company, & drafting design documents.
AI is more than a market trend - we’re watching the software industry undergo a cognitive reimagining of how we build software, they way we work & what is possible with software.
2024-12-10 08:00:00
“Feel Good Fun Mix” tops my recommendations on Spotify. Spotify has created over 6,000 such labels by hand.
Amazon and Netflix attributed 35% and 75% of their revenue to their recommendation systems. This is a profound & counterintuitive shift in how we think about marketing.
In a recent case study led by Aampe, an AI agent with this type of segmentation sent far fewer messages than traditional systems while achieving better results.
Even more striking, the AI agent learned to offer smaller discounts (15% vs. 35%) to users showing higher purchase intent, automatically optimizing for both conversion and profit margin. Streak marketing, urging users to read a few pages each day, for example, works wonders too.
Today’s marketers are limited in their ability to construct a vast number of user segments - for example, the midnight snacker who prefers to receive texts very late on a weekday isn’t an obvious cluster. A barber booking app found nearly 400 different user segments in their population.
Aampe is building the future of marketing - agentic marketing.
Aampe creates an agent for each user. The agent understands point of sale history (buying a coffee every morning at 745am), mobile app usage (does she pre-order before she arrives?), and engagement with previous messages.
By combining all this - ad engagement, surveys, & core business outcomes - Aampe produces effects on performance that are significant & sustained.
At the core of the product, reinforcement learning explores what a person likes - the message, the medium (email/text/notification/GIF), when they like to receive it & how these change with time - something not possible with the marketing canvases of today.
This emerging approach empowers teams to create personalized lifecycle journeys for each user across millions of users. They serve more than 50m monthly today. We’re announcing our partnership with Aampe by leading their Series A.
Led by a team of human behavior researchers at Harvard, US Army, & NATO, Aampe publishes their learning about agentic marketing here.
2024-12-09 08:00:00
How often do you use AI? I tracked my Sunday workday to find out. Between 4:30-9:00 PM (with a dinner break), I monitored every AI interaction while handling emails, analyzing data, & writing.
If the average American picks up their mobile phone 144 times per day & we call that addiction, I am using AI about a hundred times per hour. Is AI ten times more valuable than a phone?
Speech
Dictation activity is bursty with breaks for dinner. But looking at 7pm & later, I’m hitting the speech API at least once every 2 minutes but closer to every 90 seconds on average. Around 8:00 PM is when I started to email - massive activity spike.
Field | Value |
---|---|
Timestamps | 110 |
Total Word count | 1998 |
Average Words per Call | 18 |
Calls per Hour | 51 |
On average, the typical transcription contains about 18 words, but more than a quarter of them contain more than 50 words. Those longer tracts are typically entire email responses dictated in one shot.
Dictation is 3 times faster than typing, so it saves me an enormous amount of time.
Two AIs process my voice : initially a dictation AI and a language AI that edits for brevity & clarity (both of these run on my laptop).
Coding
Field | Value |
---|---|
Venture Industry Analysis, lines of code | 267 |
Speech analysis, lines of code | 121 |
AI Chats | 12 |
Estimated AI Calls per Hour | 32 |
Publishing data-driven blog post analysis is a key part from formatting the data to analyzing it using R and then publishing charts. All of this is now predominantly handled with prompts to an AI.
I can generate several hundred lines of code in 5-10 minutes. With the newer models, I expect this to collapse to 1-2 minutes.
In fact, I find myself growing reliant on the AI to the extent that I no longer remember some of the R syntax, A sign of working at a higher level of abstraction : one of the promises of AI.
Fully focused on work, I’m employing AI roughly 50-100 times per hour.
Within the last 24 months it’s clear that AI has become an essential coworker, perhaps at least as important as a mobile phone, but very likely more critical.