2025-07-12 13:22:55
A Mad Max economy, where your hard-earned expertise trades at commodity prices, is a plausible future of work. One type of AI automation deployment could move millions into low-paid service roles even as employment survives on paper.
However, that same technology could also have the opposite effect. It could turn scarce, high-paying jobs into mass-market opportunities. Furthermore, create jobs that don’t yet exist.
MIT economists David Autor and Neil Thompson explore what is at stake in their landmark study. After analyzing four decades of data across 303 US occupations, they found that AI’s wage effects hinge on one crucial factor. That factor is what gets automated. Not whether firms adopt AI, but which tasks they hand over to machines.
Let’s look into this further.
When firms automate the complex bits of a role—say, the knowledge or judgment-heavy tasks—wages tend to fall, while employment increases. Autor and Thompson's data shows that a one-standard-deviation drop in task expertise over a decade is linked to an approximate 18% wage decline while employment roughly doubles.
Telephone operators from 1980-2018 are the canonical case, where technical simplification made it easier for more people to enter, but at a lower pay.
And Uber is a modern parallel. By breaking the stranglehold that medallion owners once held over New York’s taxi market, the mix of GPS routing and app-based matching opened ride-hailing to a far broader pool of drivers and passengers. Between 2014 and 2024 the city’s total ride market, measured by fares, expanded 228%, while the number of active drivers nearly doubled from 44,000 to 95,000. This greater supply cut average earnings – after allowing for roughly 32% inflation, a typical yellow-cab driver earned 10-15% less in real terms. Notably, about two-thirds of former taxi drivers left the sector altogether, with some transitioning to drive for Uber and others pursuing alternative employment.
The other path looks very different.
Several major firms are now embracing routine-task automation, targeting predictable and codified tasks like call handling, screening, scheduling. The outcome flips: employment shrinks, but wages rise for those who remain. BT plans to cut up to 55,000 jobs – about 40% of its workforce – by 2030, as fibre roll-out and generative AI take over routine customer service work. Recruit Holdings, which owns Indeed and Glassdoor, just cut 1,300 recruiting and HR roles after embedding large-language models across its platforms. At Amazon, where robots already outnumber human staff, CEO Andy Jassy admits that generative “agents” will eliminate some job families even as they create new technical ones. In each case, automation strips out low-complexity work. Headcount contracts, the skills bar rises and the wage ladder steepens. This may already be the case for AI coding roles, with sky-high salaries for super-coders, widening the gap between them and the average coder.
Yet this outcome isn’t inevitable.
2025-07-11 19:43:28
Nvidia became the first company in history to surpass a $4 trillion market valuation, but it may not be the most valuable of the AI era. Its position as the indispensable supplier of AI infrastructure is secure. But history shows that the first giant of every general-purpose technology boom sees its dominance fade as innovation spreads. In each previous wave, the early choke-point – be it steel, gasoline, operating systems or now AI accelerators – saw its margins migrate downstream as complementary layers matured. In the electricity era, U.S. Steel and AT&T scaled with the grid before profits migrated downstream to appliance makers. Mass production and the interstate-highway system lifted GM and the oil majors. That was until oil shocks, emissions rules and global rivals eventually rebalanced the field. Likewise, Microsoft saw its core OS margins plateau as value shifted to cloud infrastructure and SaaS.
But this market might be different. Unlike steel and oil, Nvidia has a massive software ecosystem. We’re in the early stages of AI innovation, Nvidia may have enough runway to innovate into new markets or move vertically up the stack. And finally, unlike steel and oil, there is no chance someone will happen upon a cache of high-end AI accelerators buried in the wilderness. Capital requirements to be at the cutting edge are real barriers to entry. (Bloomberg) #Hardware
A 30-second scan of four secondary signals that hint at where the curve is bending.
Cloudflare’s new anti-scraping tool blocks most data crawlers but can’t block Google’s, since its crawler is essential for search indexing. That loophole gives Google privileged access to the open web while locking out rivals, deepening a data asymmetry that tilts the AI race in its favor. (The Information) #AI
Helsing joins Anduril to adapt its AI software for unmanned fighter jets but remains years from deployment. Anduril’s in-house design, built from scratch, leads the race to market. Drone warfare has revolutionized ground combat and is making inroads in naval operations. How soon before the sky becomes no-man’s land? (FT, CBS News) #Defense
Amazon Web Services will launch an AI agent marketplace next week, with Anthropic as a key partner. We’re seeing a shift toward agents, not just models, as the next commercial platform layer. Unlike the GPT Store, whose prompt-based tools saw limited uptake, these modular agents require orchestration, context engineering, and API integration, raising the potential for monetization. (TechCrunch) #AIApplications #Agents
The US is borrowing from China’s own playbook as it takes a 15% stake in MP Materials, its largest rare-earth miner, to rebuild a domestic supply chain for critical magnets. The move comes after China curbed rare-earth exports, exposing a vulnerability the US can’t ignore. Alongside AI chips, critical minerals have become one of the two defining economic levers in 21st-century power politics. (WSJ) #Politics
A pulse-check on the ideas shaping our long-term trajectory.
MIT researchers boosted the CO₂-capturing efficiency of a bacterial variant of Rubisco, Earth’s most abundant but sluggish enzyme, by up to 25% using directed evolution. If applied in crops, this could unlock major gains in photosynthesis, increasing yields and easing pressure on arable land in a warming world. (ScienceDaily)
Autonomous AI system SPARKS has independently discovered two novel protein-design principles. Unlike typical models, SPARKS completes the full scientific loop (hypothesis generation, simulation, critique, and manuscript drafting) without prompts or human oversight. (LinkedIn)
Meta’s new SecAlign model is the first LLM with openly available model weights to include built-in defences against prompt-injection attacks—a common security vulnerability in AI systems. The model achieves state-of-the-art security performance comparable to commercial, closed-source rivals. (arXiv)
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2025-07-11 00:24:25
We’re resending the latest email with a correction. The version we sent out earlier was missing one part of the prompt that makes the workflow tick as intended. This email includes the correction. Thanks for your patience and happy building! EV Team
Hi, it’s Azeem.
Two weeks ago I asked the question of can AI finally clean my inbox? I imagined an assistant inspired by the Eisenhower Matrix that could do ruthless triage on my behalf: deflect distractions, protect focus time and act on urgent matters with minimal input from me.
A few days later, my colleague had a working prototype for me.
Today, he’s sharing the full step-by-step guide so you can build your own AI assistant – no code required and in under 15 minutes. If you’re an Exponential View member, you’ll also get free access to the tools we used.
Enjoy!
⚡️ NEW: GET TOP AI TOOLS WITH YOUR EXPONENTIAL VIEW MEMBERSHIP
We’re launching a new perk: exclusive access to some of the best AI tools we use ourselves. Annual members now get $1,250+ worth of AI products right away, including Perplexity Pro for research, Lindy and Wordware for agentic workflows, Julius for data analysis.
Already an annual member? Claim your bundle.
By
Last Sunday, I opened my laptop to find 73 new email threads, six Slack pings and a calendar resembling the final stages of a Tetris game. Just as I was absorbing the chaos, Azeem’s post on the AI agent he *really* wants appeared in my inbox.
His aspiration for an AI solution was this:
The QuadrantGuardian would operate on three principles. First, ruthless triage. I get about a thousand inbound requests a year, even spending as little as two minutes on each one eats up a workweek. Not so with QG, it would classify every incoming request in milliseconds. The trivial would vanish into the ether. Genuine urgencies would make it through. The precious important-but-not-urgent tasks would nestle into protected focus blocks, safe from interruption.
I immediately realised that many of the items on his wishlist were already doable without needing to know any code, inside an AI tool called Lindy. I knew that Azeem already used Lindy so I set up a flow for him.
By the end of this post, you’ll learn how to build this exact flow to help you declutter your workspace.
And if you’re an EV member on the annual plan, you’ll get access to the Exponential AI Bundle where you can unlock Lindy Pro with an extended free trial and more tokens to run deeper flows like this one.
When I first set out to build this workflow, I considered the usual suspects: Zapier and Make. Both have moved fast to add agentic AI features, balancing innovation with the needs of their long-time users. But in any new tech category, fresh entrants have a chance to rethink the experience from the ground up without compromise. They can focus on doing one thing exceptionally well.
Emerging tools like Lindy AI, Wordware and n8n come with trade-offs. Their integrations are still growing (though accelerated by coding assistants and MCPs), and their interfaces may feel unfamiliar to non-early adopters – unless they’ve nailed the UX.
For this workflow, I chose to work with Lindy. This walkthrough will help you build a working agent to declutter your comms, but I invite you to notice what makes this feel different from building a traditional workflow. Along the way, we might even uncover what sets truly agentic products apart.
Sign up or Log into Lindy (If signing up, remember to use your EV Bundle promo code)
Sidebar ➜ + New Lindy ➜ Start from Scratch
When create, at the top, click on the default name eg. New Lindy 1 and rename it to 📧→🤖 Inbox‑to‑Action Bot.
In the empty canvas click + Select Trigger ➜ choose Gmail.
Trigger type Email Received
Click back onto the main canvas.
Click Save in the top right hand corner.
Click + under the Gmail trigger node ➜ Enter AI Agent
Title the node Summarise email (On the node, click the 3 dots on the left > Rename).
Paste prompt below.
🔥Hot tip: I asked ChatGPT to create this prompt and you can ask it to better define what urgent means to you and use that prompt instead.
You are reviewing an email thread from Gmail.
Summarise the thread in ≤60 words, focusing on the main action or decision required.
Extract the following structured data:
- **owner**: The person responsible for taking action (use sender name if unclear, and avoid assigning 'me' unless the sender is explicitly asking the user to do something).
- **due_date**: Any specific or implied deadline (include exact date if mentioned, or estimate based on phrases like "by end of day", "next week", etc.; otherwise use null).
- **sentiment**: One of [urgent, normal], based on language, tone, deadlines, and escalation phrases (e.g. "asap", "important", "no rush", etc.).
- **short_title**: A ≤6‑word calendar-style heading summarising the key action or topic.
Respond only in JSON with keys summary, short_title, owner, due_date, sentiment.
In the top right hand corner, click Test ➜ you’ll see a JSON preview. (If Gmail has no matching email yet, forward yourself one and re‑test. You may need to re-test by re-adding the first gmail step)
Click back onto the main canvas.
Click Save in the top right hand corner.
On this step, you’ll receive the Slack DM that there’s an urgent email with a title and summary. You will be able to reply to this email, from Slack or alternatively ask your agent to book in a 30 minute slot when you’re next available so you can tackle it with focus.
+ Action again ➜ Slack → Send Direct message.
For User, select the Manually option and enter the email of your slack account.
For Message, select the Prompt AI option and enter the below (be sure to customize how you like).
🔥 Urgent: {{short_title}} - {{summary}}
Link: {thread_url}}
Reply to me with a message to send back on gmail (put it within single-quotes eg. ' '), or ask me to set a next available 30 minute focus slot in your diary.
Click Save in the top right hand corner.
Hover beneath the Slack node, under the After reply received’ tab ➜ click + Add Step → Condition.
On the right‑hand panel you’ll see Condition 1 and an empty text box. Let’s handle the quick gmail reply first. Paste:
the user wants to reply to the email
Scroll a bit on the right hand pane and, click + Add Condition → Condition 2 appears. Paste:
the user wants to create a 30 minute calendar slot to focus
Now you’ve set up your two conditional branches. Rename the node title to Follow-up choice so it’s easy to read in the flow.
After the conditional path: the user wants to reply to the email
+ Action ➜ Gmail → Send Reply. (It may prompt you to grant further permissions on the right)
Body: (Be sure to select the ‘Prompt AI’ option on the field settings).
Use the reply from the slack message from the user. The message to use will be provided within single quotes eg. ' '.
In the Signature section, you may want to remove the default, ‘Sent via [Lindy](https://lindy.ai)’ message when it sends the invite to you.
Click Save in the top right hand corner.
After the conditional path: the user wants to create a 30 minute calendar slot to focus
+ Action ➜ Google Calendar → Create event. (It may prompt you to grant further permissions on the right)
Name: {{short_title}}. (Be sure to select the ‘Prompt AI’ option on the field settings).
Description: (Be sure to select the ‘Prompt AI’ option on the field settings).
Hit the ‘Test’ button on the top right to run through your flow before turning it on.
Top‑right blue button Turn on
If Lindy prompts “Run on historical emails?” Choose No for now.
↓↓ Pro tips & automation steps below — unlock premium Lindy with more tokens to run deeper flows, Perplexity Pro & other AI tools ↓↓
2025-07-10 23:21:19
Hi, it’s Azeem.
Two weeks ago I asked the question of can AI finally clean my inbox? I imagined an assistant inspired by the Eisenhower Matrix that could do ruthless triage on my behalf: deflect distractions, protect focus time and act on urgent matters with minimal input from me.
A few days later, my colleague had a working prototype for me.
Today, he’s sharing the full step-by-step guide so you can build your own AI assistant – no code required and in under 15 minutes. If you’re an Exponential View member, you’ll also get free access to the tools we used.
Enjoy!
A note: The original email version of this post was missing part of a critical prompt. This web version includes the complete content as intended. Thank you for your understanding.
⚡️ NEW: GET TOP AI TOOLS WITH YOUR EXPONENTIAL VIEW MEMBERSHIP
We’re launching a new perk: exclusive access to some of the best AI tools we use ourselves. Annual members now get $1,250+ worth of AI products right away, including Perplexity Pro for research, Lindy and Wordware for agentic workflows, Julius for data analysis.
Already an annual member? Here’s how to claim your bundle.
By
Last Sunday, I opened my laptop to find 73 new email threads, six Slack pings and a calendar resembling the final stages of a Tetris game. Just as I was absorbing the chaos, Azeem’s post on the AI agent he *really* wants appeared in my inbox.
His aspiration for an AI solution was this:
The QuadrantGuardian would operate on three principles. First, ruthless triage. I get about a thousand inbound requests a year, even spending as little as two minutes on each one eats up a workweek. Not so with QG, it would classify every incoming request in milliseconds. The trivial would vanish into the ether. Genuine urgencies would make it through. The precious important-but-not-urgent tasks would nestle into protected focus blocks, safe from interruption.
I immediately realised that many of the items on his wishlist were already doable without needing to know any code, inside an AI tool called Lindy. I knew that Azeem already used Lindy so I set up a flow for him.
By the end of this post, you’ll learn how to build this exact flow to help you declutter your workspace.
And if you’re an EV member on the annual plan, you’ll get access to the Exponential AI Bundle where you can unlock Lindy Pro with an extended free trial and more tokens to run deeper flows like this one.
When I first set out to build this workflow, I considered the usual suspects: Zapier and Make. Both have moved fast to add agentic AI features, balancing innovation with the needs of their long-time users. But in any new tech category, fresh entrants have a chance to rethink the experience from the ground up without compromise. They can focus on doing one thing exceptionally well.
Emerging tools like Lindy AI, Wordware and n8n come with trade-offs. Their integrations are still growing (though accelerated by coding assistants and MCPs), and their interfaces may feel unfamiliar to non-early adopters – unless they’ve nailed the UX.
For this workflow, I chose to work with Lindy. This walkthrough will help you build a working agent to declutter your comms, but I invite you to notice what makes this feel different from building a traditional workflow. Along the way, we might even uncover what sets truly agentic products apart.
Sign up or Log into Lindy (If signing up, remember to use your EV Bundle promo code)
Sidebar ➜ + New Lindy ➜ Start from Scratch
When create, at the top, click on the default name eg. New Lindy 1 and rename it to 📧→🤖 Inbox‑to‑Action Bot.
In the empty canvas click + Select Trigger ➜ choose Gmail.
Trigger type Email Received
Click back onto the main canvas.
Click Save in the top right hand corner.
Click + under the Gmail trigger node ➜ Enter AI Agent
Title the node Summarise email (On the node, click the 3 dots on the left > Rename).
Paste prompt below.
🔥Hot tip: I asked ChatGPT to create this prompt and you can ask it to better define what urgent means to you and use that prompt instead.
You are reviewing an email thread from Gmail.
Summarise the thread in ≤60 words, focusing on the main action or decision required.
Extract the following structured data:
- **owner**: The person responsible for taking action (use sender name if unclear, and avoid assigning 'me' unless the sender is explicitly asking the user to do something).
- **due_date**: Any specific or implied deadline (include exact date if mentioned, or estimate based on phrases like "by end of day", "next week", etc.; otherwise use null).
- **sentiment**: One of [urgent, normal], based on language, tone, deadlines, and escalation phrases (e.g. "asap", "important", "no rush", etc.).
- **short_title**: A ≤6‑word calendar-style heading summarising the key action or topic.
Respond only in JSON with keys summary, short_title, owner, due_date, sentiment.
In the top right hand corner, click Test ➜ you’ll see a JSON preview. (If Gmail has no matching email yet, forward yourself one and re‑test. You may need to re-test by re-adding the first gmail step)
Click back onto the main canvas.
Click Save in the top right hand corner.
On this step, you’ll receive the slack DM that there’s an urgent email with a title and summary. You will be able to reply to this email, from Slack or alternatively ask your agent to book in a 30 minute slot when you’re next available so you can tackle it with focus.
+ Action again ➜ Slack → Send Direct message.
For User, select the Manually option and enter the email of your slack account.
For Message, select the Prompt AI option and enter the below (be sure to customize how you like).
🔥 Urgent: {{short_title}} - {{summary}}
Link: {thread_url}}
Reply to me with a message to send back on gmail (put it within single-quotes eg. ' '), or ask me to set a next available 30 minute focus slot in your diary.
Click Save in the top right hand corner.
Hover beneath the Slack node, under the After reply received’ tab ➜ click + Add Step → Condition.
On the right‑hand panel you’ll see Condition 1 and an empty text box. Let’s handle the quick gmail reply first. Paste:
the user wants to reply to the email
Scroll a bit on the right hand pane and, click + Add Condition → Condition 2 appears. Paste:
the user wants to create a 30 minute calendar slot to focus
Now you’ve set up your two conditional branches. Rename the node title to Follow-up choice so it’s easy to read in the flow.
After the conditional path: the user wants to reply to the email
+ Action ➜ Gmail → Send Reply. (It may prompt you to grant further permissions on the right)
Body: (Be sure to select the ‘Prompt AI’ option on the field settings).
Use the reply from the slack message from the user. The message to use will be provided within single quotes eg. ' '.
In the Signature section, you may want to remove the default, ‘Sent via [Lindy](
https://lindy.ai)’ message when it sends the invite to you.
Click Save in the top right hand corner.
After the conditional path: the user wants to create a 30 minute calendar slot to focus
+ Action ➜ Google Calendar → Create event. (It may prompt you to grant further permissions on the right)
Name: {{short_title}}. (Be sure to select the ‘Prompt AI’ option on the field settings).
Description: (Be sure to select the ‘Prompt AI’ option on the field settings).
Hit the ‘Test’ button on the top right to run through your flow before turning it on.
Top‑right blue button Turn on
If Lindy prompts “Run on historical emails?” Choose No for now.
↓↓ Pro tips & automation steps below — unlock premium Lindy with more tokens to run deeper flows, Perplexity Pro & other AI tools ↓↓
2025-07-10 19:25:57
The AI browser wars have started. Three launches define this new front: Dia in June, Comet from Perplexity yesterday and a rumored OpenAI browser expected in the coming weeks.
Dia was first out of the gate. You can chat with AI using the info from all your tabs. Comet builds on the same foundations. Its main addition is the ability to take actions across your tabs. In theory, Comet can interact with spreadsheets or edit Figma files. In practice, its ability to do so reliably is flawed. OpenAI’s rumored browser may go further, embedding its excellent tool-using agents for reliable actions.
The victor will win a huge prize. The company that owns the browser owns the user session, gaining access to valuable behavioral data and the ability to steer the revenue funnel. Whoever captures the front door to the web gets to watch, and eventually automate, everything we do online. Until, of course, AI-native devices hit the mainstream. [TechCrunch; YahooFinance; BensBites] #AIapplications
A 30-second scan of four secondary signals that hint at where the curve is bending.
xAI has released Grok 4, said to be the most powerful model in the world according to the demanding Humanity’s Last Exam and ARC-AGI benchmarks. The company achieved this by increasing reasoning-focused training tenfold compared with Grok 3. Scaling laws still have room to run. (X) #AImodel
Hugging Face has unveiled Reachy Mini, a fully open-source desktop robot. For just $299 you get a Python-programmable device with full compatibility with Hugging Face models and datasets, inviting hands-on experimentation with embodied AI. It democratizes access to robotics, much like the Sinclair ZX81 did for me and many others in 1981, when it opened the door to personal computing. [VentureBeat] #Robotics
A China-linked consortium, including JD.com and Ant Group, is exploring a renminbi-based stablecoin aimed at settling trade outside SWIFT. If successful, it could erode the dollar’s leverage in emerging-market commerce. [Financial Times] #Economics
Mistral AI is poised to secure a $1 billion raise led by Abu Dhabi’s $100 billion MGX fund. This would be Europe’s largest private AI funding round and would finance a 10,000-GPU “Mistral Compute” cluster, made of H200s. While massive for Europe, the cluster is still an order of magnitude below that of leading US AI labs. [The Information] #Infrastructure
Last week I checked in on my start-of-year predictions. Here is an excerpt on one of those predictions that there would be no ‘AI wall’: the idea that scaling would eventually hit diminishing returns.
On the Frontier Math test, which GPT-4 used to score 2% on, o3 got 25%, and if you’re using the tools, you have noticed they’ve got better, although, as people also know, they’re really, really quite unstable.
Grok 4’s release, as mentioned earlier, further emphasises that there is no wall. The graph below shows Grok’s performance on the Humanities Last Exam, which, as the name suggests, is an extraordinarily difficult benchmark. The more training time, the better the performance.
Watch the full episode on YouTube. I go live on Substack every Friday at 5 pm UK time | 12 pm Eastern | 9 am Pacific.
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2025-07-09 20:05:31
The US Department of Energy warns that by 2030, the risk of blackouts in the US could increase a hundredfold as power demand grows partly because of AI. It quantifies an urgent need for roughly 100 GW of new peak supply by 2030. Then the report becomes ideological pushing the administration’s recidivist love of thermal coal.
As we (and others) have long-argued, resilient grids are possible in the short term without coal or oil, and in the medium term without natural gas. CrusoeAI recently demonstrated a data center that ran around the clock on solar power and batteries, showing that continuous renewable supply is technically feasible. Carbon Briefing found that near-constant solar power can be delivered in many cities for about $100 per megawatt-hour—cheaper than new coal plants or nuclear power—and those costs are still falling. Time to build is also double the speed for renewables than fossil plants. Although renewables alone cannot meet one hundred percent of demand, dispatchable gas plays a necessary role; framing this as a failure of renewables misrepresents the true challenge of grid flexibility and investment.
Ultimately, the US remains reliant on 19th-century fuels at a time when the rest of the world is building energy systems for the 21st century. Policy should be focused on building a balanced mix of clean power and dispatchable resources, rather than nostalgia for coal. US Department of Energy #Energy
A 30-second scan of four secondary signals that hint at where the curve is bending.
Google-backed Isomorphic Labs is gearing up to start human trials of a drug discovered by AlphaFold3. It will be the first time DeepMind’s breakthrough drug-discovery system is applied in actual patients. While AI is accelerating early discovery, Phase I–III trials still typically take six or more years, so the real payoff from today’s breakthroughs will likely emerge next decade. Fast Company #AIapplications
An impostor posing as Secretary of State Marco Rubio used AI-generated voice and text to contact at least five senior officials via Signal and SMS. It took as little as 15 to 20 seconds of audio to clone Rubio’s voice. Washington Post #Society
Global startup funding hit $91 billion in Q2 2025—down 20% from Q1’s spike but still up 11% year-on-year. Nearly $40 billion went to AI, and just 16 mega-rounds soaked up a third of all capital. VC is rebounding, but the money is piling into a few big, AI-heavy bets. Crunchbase #Economics
Meta has acquired a €3 billion stake in EssilorLuxottica, the maker of Ray-Ban. Mark Zuckerberg appears to be doubling down on his belief that the future AI form factor will be spectacles. Bloomberg #Devices
David Autor—one of the world’s most-cited labour economists at MIT—and Neil Thompson, director of MIT’s FutureTech group, analyse how different kinds of task automation ripple through wages and head-counts.
Automating high-skill tasks can democratise access to well-paid jobs, but at the cost of compressing wage differentials and eroding expert rents. But automating routine tasks, increases wages for specialists while reducing employment. A one-standard-deviation decline in the complexity of an occupations tasks1 — equivalent to the decline in expertise required by a telephone operator from 1980 to 2018 — is linked to an 18 % wage decline and a 40 % increase in employment per decade; the mirror image holds when expertise rises.2 They back this with 40 years of task data across 303 US occupations (1980–2018).
Firms deciding where to deploy AI need to choose: widen the talent pool (automate the hard bits) or deepen specialist capability (automate the drudge). Education and re-training must target the remaining task mix, not broad occupational labels—which speaks to a need for greater coordination between firms and educational systems.
The real question is not “will AI kill this job” but “which tasks will AI impact and how will that move the expertise bar?”
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Autor and Thompson quantify expertise using a Standard Frequency Index (SFI). Each task’s written description is scored by combining the rarity of its words (how infrequently they appear across all task descriptions) with their predictability in context (how well language models anticipate them). High-SFI tasks, such as “design and architect a distributed database,” demand specialist knowledge, while low-SFI tasks, such as “enter customer data,” are routine and generic.
Although the largest increase in an occupations expertise was only 0.5 standard deviations.