Explore
Explore
Orbyt's 2026 salary data puts the median for 687 AI-classified roles at $168,000 versus $154,000 for 2,758 non-AI tech roles: a $14,000, 9% premium. The highest-paying AI job is Principal AI Research Scientist at $350,000 median. City choice moves the same role by 77%, from San Jose (1.38x) to Charleston, WV (0.78x).
TL;DR: Orbyt's 2026 salary data puts the median base salary for 687 AI-classified roles at $168,000, versus $154,000 for the other 2,758 roles in the dataset. That's a $14,000 gap and a 9% premium. The highest-paying AI job is Principal AI Research Scientist at a $350,000 median. City choice moves the same role by 77%: San Jose (1.38x) pays 77% more than Charleston, WV (0.78x). All figures computed June 2026 from 3,445 published role medians across 81 US cities.
Two numbers carry this whole post. The 687 AI-classified roles in Orbyt's 2026 dataset: $168,000 median base. The other 2,758 roles: $154,000. A $14,000 gap. A 9% premium. Computed June 2026, from a published dataset anyone can check. That 9% is the AI salary premium over non-AI tech roles and every other non-AI role in the dataset, measured at the median.
Those two medians are the spine of this post, so here's exactly what sits behind them. The AI classification comes from Orbyt's open role taxonomy: 687 roles assigned to 13 AI hubs, out of 3,445 total roles. Every role median is public on the salary directory. It's the broadest checkable map of US tech salaries in 2026 that anyone publishes. You don't have to trust my arithmetic. Open any role and check the inputs yourself.
You've probably seen a much bigger number. PwC's 2025 Global AI Jobs Barometer reported a 56% wage premium for workers with AI skills. That figure is real, and it answers a different question. PwC measures skill premiums within occupations, derived from job postings. Orbyt measures role-level base-salary medians across a published dataset. One asks what an AI skill adds to an individual worker's wage. The other asks what the median AI role pays versus the median non-AI tech role.
I'll take the smaller number. It's the conservative one, and it's the one you can check. A 9% premium at the median isn't a gold rush. It's a real, measurable edge.
On the direct AI vs software engineer salary comparison: the dataset's AI Engineer median is $175,000 versus $135,000 for Software Engineer, a 30% gap at matched titles.
The rest of this post shows where that edge concentrates: which roles, which hubs, which cities.
The highest-paying AI job in 2026 is Principal AI Research Scientist, at a $350,000 median base salary. The full top 10, with the published low and high bands:
| Rank | Role | Median | Low | High |
|---|---|---|---|---|
| 1 | Principal AI Research Scientist | $350,000 | $273,000 | $455,000 |
| 2 | Principal AI Agent Architect | $324,000 | $253,000 | $421,000 |
| 3 | Principal AI Safety Engineer | $324,000 | $253,000 | $421,000 |
| 4 | Principal AI Compiler Engineer | $315,000 | $246,000 | $410,000 |
| 5 | Chief AI Officer | $310,000 | $230,000 | $400,000 |
| 6 | Staff AI Research Scientist | $310,000 | $242,000 | $403,000 |
| 7 | Principal AI Agent Engineer | $306,000 | $239,000 | $398,000 |
| 8 | Principal AI Engineer | $298,000 | $232,000 | $387,000 |
| 9 | Principal LLM Engineer | $298,000 | $232,000 | $387,000 |
| 10 | Chief Data & AI Officer | $295,000 | $220,000 | $385,000 |
Three pairs tie on median: $324,000 at ranks 2 and 3, $310,000 at ranks 5 and 6, and $298,000 at ranks 8 and 9. Ties break alphabetically by slug, nothing deeper than that. Seven of the ten are AI jobs that pay over $300k at the median, before any city multiplier is applied.
Look at who's on it. 8 of the 10 are senior individual-contributor titles, principal or staff. Only 2 are executive roles: Chief AI Officer and Chief Data & AI Officer. In AI, the IC track tops out near the C-suite. Principal beats Chief in this table.
And Principal AI Research Scientist at $350,000 isn't just the highest AI median. It's the highest median in the entire 3,445-role dataset. The single best-paid role Orbyt tracks is an AI role.
One caveat before you quote any of these: they're national base-salary medians. The city multipliers covered below move every one of them up or down.
The hub you attach your AI skills to moves your median by up to $95,000. Orbyt's taxonomy groups the 687 AI roles into 13 hubs. All 13, ranked by median base salary:
| Hub | Roles | Median base salary |
|---|---|---|
| AI Executive Roles | 31 | $240,000 |
| AI Healthcare Roles | 23 | $195,000 |
| AI Research Roles | 39 | $192,000 |
| AI Finance Roles | 25 | $185,000 |
| AI Operations Roles | 53 | $175,000 |
| AI Security Roles | 26 | $175,000 |
| AI Product Roles | 18 | $169,000 |
| AI Engineering Roles | 321 | $160,000 |
| AI Industrial Roles | 42 | $158,000 |
| AI Legal & Policy Roles | 29 | $158,000 |
| AI Consumer & Commerce Roles | 37 | $150,000 |
| AI Design Roles | 20 | $146,500 |
| AI Creative Roles | 23 | $145,000 |
The counts sum to 687. The spread from top to bottom is $95,000: AI Executive at $240,000, AI Creative at $145,000.
Two findings here surprised me. AI Healthcare, at $195,000, out-medians AI Research at $192,000. Applying AI to a regulated domain pays slightly better than building the science itself. Not by much, but the direction is the story. The frontier labs get the headlines. The hospital systems pay the median.
And AI Engineering, the hub everyone means when they say "AI job," is by far the biggest at 321 of 687 roles. It sits mid-table at $160,000, below Finance, Operations, and Security. The volume is in engineering. The higher medians are in executive and domain-application hubs.
For the most-searched single title: the Machine Learning Engineer salary in 2026 sits at a $155,000 median ($120,000 to $200,000) in this dataset, with Senior Machine Learning Engineer at $211,000.
If you're picking a lane, that's the takeaway: the same AI skills priced into different hubs produce medians $95,000 apart.
The widest pay bands in AI belong to the highest-paying roles. Uncertainty scales with seniority. Here are the five widest low-to-high spreads among the 687 AI roles.
| Role | Low | High | Span | Span vs median |
|---|---|---|---|---|
| Principal AI Research Scientist | $273,000 | $455,000 | $182,000 | 52% of $350,000 |
| Chief AI Officer | $230,000 | $400,000 | $170,000 | 55% of $310,000 |
| Principal AI Agent Architect | $253,000 | $421,000 | $168,000 | 52% of $324,000 |
| Principal AI Safety Engineer | $253,000 | $421,000 | $168,000 | 52% of $324,000 |
| Chief Data & AI Officer | $220,000 | $385,000 | $165,000 | 56% of $295,000 |
Read that last column again. At principal and chief level, the band is more than half the median. The market hasn't converged on what these roles are worth, so employers quote wide and decide case by case.
That band is where the money actually is. Where you land inside $182,000 is a six-figure question, and it gets decided in one conversation. The company knows the band. Most candidates don't. Walking in with the published median and band closes that information gap before the conversation starts.
If you're heading into that conversation, two resources: how to turn a band into an offer, and word-for-word negotiation scripts for the counter itself.
San Jose, CA carries the highest cost-of-labor multiplier across all 81 cities in Orbyt's 2026 data: 1.38. Charleston, WV carries the lowest: 0.78. Divide one by the other: San Jose pays 77% more than Charleston for the same role.
Worked example. Take a role with a $150,000 national median. In San Jose it prices at $207,000. In Charleston it prices at $117,000. Same title, same band, $90,000 apart. Location is the single biggest lever in this dataset that has nothing to do with your skills.
The distribution surprised me more than the extremes. Of the 81 cities, 34 sit above the 1.0 national baseline, 1 sits exactly at it, and 46 sit below. Most tracked cities pay below the national number. So when someone quotes you a national median without naming a city, treat it as an overestimate for most of the map.
One caveat: the live role-by-city pages apply a deterministic per-role-and-city variance of up to plus or minus 4%, so a specific page can differ from the straight multiplier math. The numbers above are the clean multiplier math.
To price an AI engineer salary by city in 2026, or any of the 3,445 roles against any of the 81 cities, run the salary calculator.
Here's what the data doesn't show: AI roles dominating the top of the pay distribution. In the full dataset, 672 of 3,445 roles, 20%, carry a median of $200,000 or more. Of those 672, 150 are AI-classified. That's 22% of the top bracket, versus AI's 19.9% share of the whole dataset. Mildly overrepresented. Nothing more.
The reason is boring and important. The non-AI tail of this dataset includes medicine, law, and executive roles, and those professions also clear $200,000 and up. AI didn't displace them at the top of the pay distribution. It joined them.
The AI premium lives at the median: $14,000, 9%. The top bracket was already taken.
For context, the whole 3,445-role distribution looks like this: median $155,000, 10th percentile $100,000, 90th percentile $225,000, full range $33,000 to $350,000. The mean is $160,000, above the median, so the distribution is right-skewed. A long tail of high-paying roles pulls the average up, which is one more reason to quote medians and not averages.
If you need the average AI salary for the United States: the mean across the 687 AI role medians is $173,540, above the $168,000 median because the distribution is right-skewed. Quote the median.
Every figure in this post comes from Orbyt's published salary dataset: 3,445 roles across 81 US cities, with role-level base-salary medians synthesized from public sources under Orbyt's public methodology. The AI classification comes from Orbyt's open role taxonomy, 687 roles across 13 hubs, released under CC BY 4.0. This post is the premium analysis. The full State of AI Salaries 2026 report carries the quarterly tables.
I computed every aggregate here on June 11, 2026, from the published dataset, and the computation is deterministic. Run it again and you get the same numbers.
Why do AI salary numbers disagree so much across sites? Because most sources are one of two things: self-reported, like Glassdoor and Levels.fyi, which aggregate user-submitted compensation data, or gated reports that don't publish their sample. Self-reported data captures real individual offers. A synthesized median can't. I'm trading that for the opposite property: every number here is checkable, and none of it depends on who happened to fill out a form.
The limitations:
If you write about AI salaries, cite this as Orbyt's 2026 salary data and link the role page you used. The taxonomy is CC BY 4.0. Attribution is the whole ask.
The median is your anchor. The band is your negotiation. If you're job searching in AI right now, three steps:
If you're weighing more than one offer, the accept, counter, or walk away framework covers the decision itself, not just the negotiation.
And if you want one place to track every application, offer, and negotiation, a free Orbyt account gives you the pipeline.
Walk into the offer conversation with a specific number from published data and you anchor it. Walk in without one and you react to it. The recruiter has a band on their screen. You should have one too.
In Orbyt's 2026 data, AI-classified roles carry a median base salary of $168,000. The core AI Engineer title sits at a $175,000 median. Principal AI Engineer specifically sits at $298,000, with a band of $232,000 to $387,000. City multipliers run 0.78 to 1.38 across the 81 tracked cities, so location moves these figures by tens of thousands of dollars in either direction.
Principal AI Research Scientist, with a median base salary of $350,000 and a band of $273,000 to $455,000. It's also the highest-paying role in Orbyt's entire 3,445-role dataset, AI or not. The next tier, Principal AI Agent Architect and Principal AI Safety Engineer, sits at $324,000.
At the median, yes. AI-classified roles pay $168,000 versus $154,000 for the 2,758 non-AI roles in Orbyt's 2026 data, a $14,000 or 9% premium. To be precise, the comparison baseline is every non-AI role in the dataset, which includes medicine, law, and executive roles, not software engineers specifically.
San Jose, CA leads at 1.38 times the national baseline, the highest multiplier across all 81 cities in Orbyt's 2026 data. That's 77% above the lowest, Charleston, WV, at 0.78. Only 34 of 81 tracked cities sit above the national baseline; 46 sit below it.
The role-level data shows a 9% median premium for AI-classified roles. PwC's 2025 AI Jobs Barometer separately found a 56% wage premium for AI-skilled workers within occupations. Different methods, same direction. If you want to build the skills instead of just reading about them, start with practical AI skill paths.
Track applications, manage contacts, and protect your mental health. All in one place.
Get started