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2025 AI Engineer Salary Guide by City

Detailed salary data for AI/ML engineers across major tech hubs. Includes base salary, bonuses, equity, and total compensation breakdowns.

Marcus Johnson
March 12, 2025
12 min read
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The artificial intelligence and machine learning engineering field continues to command premium compensation in 2025, with significant variations across cities, experience levels, and specializations. This comprehensive guide breaks down exactly what AI/ML engineers can expect to earn, backed by data from levels.fyi (50,000+ verified salaries), Glassdoor, and LinkedIn Salary Insights.

Understanding your market value is critical for career planning and negotiation. Whether you're just starting out or considering a senior role, this guide provides the data you need to make informed decisions about your career trajectory and compensation expectations.

National Salary Overview

Before diving into city-specific data, let's establish the national baselines for AI/ML engineer compensation in 2025. These figures represent base salaries only - total compensation with equity and bonuses is significantly higher.

By Experience Level:

- Entry Level (0-2 years)

Important Note:

These are base salaries. Total compensation packages at major tech companies typically run 1.5-2x higher when including stock options, RSUs, and bonuses. A senior engineer with a $200k base might see $350k-$400k in total annual compensation.

San Francisco Bay Area

The Bay Area remains the undisputed leader in AI/ML compensation, driven by intense competition among tech giants and well-funded AI startups.

Base Salary Ranges:

- Entry Level

Total Compensation (Base + Equity + Bonus):

- Entry Level

Key Factors:

- Cost of living is 45% above national average - Top employers include OpenAI, Google AI, Meta AI Research, Anthropic, Scale AI, Apple, and numerous well-funded AI startups - Stock options at startups can potentially provide life-changing returns, though high-risk - Average rent for 1-bedroom: $3,200/month

Real Example:

A Senior ML Engineer at OpenAI with 7 years experience reports: $240k base + $180k/year in RSUs + $50k signing bonus + $30k annual performance bonus = $500k total first-year compensation.

Seattle

Seattle offers competitive compensation, particularly for those willing to work at Amazon or Microsoft, with a cost of living about 20% lower than San Francisco.

Base Salary Ranges:

- Entry Level

Total Compensation:

- Entry Level

Top Employers:

Amazon (AWS AI, Alexa), Microsoft (Azure AI, Research), Meta (Reality Labs), and growing AI startup scene

Advantage:

No state income tax in Washington, effectively adding 5-10% to take-home pay compared to California

New York City

NYC's financial technology sector drives strong AI/ML demand, with hedge funds and trading firms often matching or exceeding FAANG compensation.

Base Salary Ranges:

- Entry Level

Total Compensation:

- Entry Level

Top Employers:

Two Sigma, Jane Street, Citadel, Bloomberg, Google NYC, Meta, and financial institutions (JPMorgan AI, Goldman Sachs)

Note:

Quantitative trading firms often pay 20-40% premiums for ML engineers with strong math/stats backgrounds.

Boston

Boston's combination of strong universities (MIT, Harvard) and growing tech scene creates consistent demand for AI talent.

Base Salary Ranges:

- Entry Level

Top Employers:

HubSpot, Wayfair, DraftKings, iRobot, Boston Dynamics, and numerous biotech companies using AI

Advantage:

Lower cost of living than SF/NYC (about 15-20% lower), strong startup ecosystem

Austin

Austin has emerged as a major tech hub with no state income tax and significantly lower cost of living.

Base Salary Ranges:

- Entry Level

Top Employers:

Tesla (Autopilot, Optimus), Oracle, Apple, Amazon, and fast-growing startups

Key Benefit:

No state income tax + 30-40% lower housing costs = significantly higher effective compensation

Remote Positions

Remote AI/ML roles typically pay 10-20% less than San Francisco rates but often exceed local market rates for most US cities.

Typical Ranges:

- Entry Level

Considerations:

- Geographic arbitrage opportunity: SF salary in low-cost city - Some companies (GitLab, Zapier) pay same regardless of location - Others adjust based on local market (Google, Facebook) - Best for: Living in lower-cost areas while earning tech salaries

Compensation Components Beyond Base Salary

Understanding total compensation is crucial - base salary is often less than half of what you'll actually earn.

### Stock Options and RSUs

Big Tech RSUs:

- Entry: $20,000 - $60,000/year - Mid: $50,000 - $120,000/year - Senior: $100,000 - $200,000/year - Staff+: $150,000 - $400,000+/year

Typically vest over 4 years with annual refreshers.

Startup Equity:

- Early employee (1-20): 0.25% - 1.0% - Mid-stage (21-100): 0.05% - 0.25% - Late-stage (100+): 0.01% - 0.10%

Note:

Startup equity is high-risk, high-reward. Most startups fail, but successful ones can generate $1M+ returns.

### Annual Bonuses

- **Entry/Mid:** 10-20% of base - **Senior:** 15-25% of base - **Staff+:** 20-30% of base - **Hedge Funds/Trading:** 50-200% of base (performance-dependent)

### Signing Bonuses

Common when switching companies: - **Entry:** $10,000 - $30,000 - **Mid:** $20,000 - $50,000 - **Senior:** $30,000 - $100,000 - **Staff+:** $50,000 - $150,000+

Often used to compensate for unvested equity left at previous employer.

### Benefits Package Value

Don't overlook benefits - they add $15,000-$35,000 in annual value: - Health insurance: $10,000 - $20,000 - 401(k) match (3-6%): $6,000 - $15,000 - Food/meals: $3,000 - $8,000 - Commuter benefits: $1,500 - $3,000 - Learning stipend: $1,000 - $5,000 - Home office budget (remote): $1,000 - $3,000

Specialization Premiums

Not all AI/ML roles pay the same. Certain specializations command premiums:

Natural Language Processing (NLP) Engineers:

+5-10% - High demand due to LLM boom (ChatGPT, Claude, etc.) - Requires linguistics + ML expertise - Top companies: OpenAI, Anthropic, Cohere, Hugging Face

Computer Vision Engineers:

+5-10% - Autonomous vehicles, robotics, medical imaging - Requires understanding of CNNs, transformers for vision - Top companies: Tesla, Waymo, Cruise, Boston Dynamics

Reinforcement Learning Engineers:

+10-15% - Gaming AI, robotics control, autonomous systems - Rare skill set, high demand - Top companies: DeepMind, OpenAI, game studios

ML Research Scientists:

+15-25% - PhD typically required - Publishing in top conferences (NeurIPS, ICML, CVPR) - Push state-of-the-art forward - Top companies: DeepMind, FAIR, OpenAI, Google Brain

Industry Comparison

Different industries pay differently for the same skills:

Big Tech (FAANG/MANGA):

- Entry: $130k-$160k base - Mid: $180k-$230k base - Senior: $250k-$320k base - Staff+: $350k-$500k base - Pros

AI-First Startups:

- Entry: $110k-$140k base - Mid: $150k-$200k base - Senior: $210k-$280k base - Staff+: $300k-$450k base - Pros

Finance (Hedge Funds, Trading Firms):

- Entry: $120k-$150k base - Mid: $160k-$210k base - Senior: $220k-$300k base - Staff+: $320k-$450k base - Pros

Healthcare/Biotech:

- Entry: $100k-$130k base - Mid: $140k-$180k base - Senior: $190k-$250k base - Staff+: $270k-$380k base - Pros

Negotiation Strategies

Armed with this data, here's how to maximize your compensation:

**1. Always Negotiate (10-30% increase possible)** - Companies expect negotiation - First offer is rarely the best offer - Have specific numbers based on market data

**2. Get Multiple Offers** - Competing offers provide leverage - Even if you prefer one company, get 2-3 offers - "Company X offered $Y" is powerful

**3. Know Your Market Value** - Use levels.fyi, Blind, Glassdoor - Talk to recruiters (they know real numbers) - Consider your specialization, location, experience

**4. Consider Total Compensation** - Don't fixate on base salary alone - Calculate 4-year total: base + equity + bonuses - Account for vesting schedules

**5. Negotiate All Components** - Base salary - Signing bonus - Equity/RSUs - Annual bonus % - Relocation package - Start date (negotiate for unvested equity)

**6. Ask About Raise Cycles** - How often are raises given? - What's the promotion timeline? - Performance review process? - Typical % increases?

Example Negotiation:

- Initial offer: $150k base + $50k equity/yr - Your counter: $170k base + $70k equity/yr + $30k signing - Final: $165k base + $65k equity/yr + $25k signing - Result

Salary Growth Trajectory

Here's what typical career progression looks like:

**Years 0-2: Baseline** - Learn the ropes - Build foundational skills - Starting salary: $100k-$130k

Years 3-5: +40-60% from start - Become productive contributor - Lead small projects - Salary: $140k-$180k - Key milestone:

First major promotion

Years 6-10: +100-150% from start - Senior engineer level - Lead large projects/teams - Salary: $200k-$280k - Key milestone:

Staff/principal promotion potential

Years 10+: +200-400% from start - Staff, Principal, or management - Strategic technical decisions - Salary: $300k-$500k+ - Key milestone:

Industry thought leader

Real Example Path:

- Year 1: $120k (entry-level, mid-size city) - Year 4: $170k (mid-level, moved to better company) - Year 7: $240k (senior, moved to FAANG) - Year 11: $380k (staff engineer, total comp $650k+)

Key Takeaways

1. **Location matters significantly:** SF pays 30-45% more than national average, but cost of living is also 45% higher. Consider effective purchasing power.

2. **Total comp often 1.5-2x base:** Don't just look at salary. At big tech, equity and bonuses are massive.

3. **Specialization adds value:** NLP, computer vision, RL, and research roles pay 5-25% premiums.

4. **Remote is increasingly viable:** Get SF-level pay while living in low-cost areas, but expect 10-20% discount from pure SF rates.

5. **Negotiation works:** Companies expect it and build room into initial offers. 10-30% increases are common.

6. **Startup equity is lottery ticket:** Most worth $0, but successful ones can generate $1M-$10M+ returns. Diversify your career risk.

7. **Growth is exponential:** From $120k at entry to $400k+ at staff level over 10-12 years is achievable.

8. **Industry differences:** Finance pays highest bonuses, big tech pays highest total comp, startups offer highest upside.

Next Steps

If you're currently job searching:

1. Use this data to set your salary expectations 2. Get 2-3 competing offers for negotiation leverage 3. Calculate total 4-year compensation, not just year 1 4. Consider location arbitrage opportunities

If you're currently employed:

1. Assess if you're being paid fairly for your market 2. If underpaid by 15%+, time to job search or negotiate 3. Document your achievements for performance reviews 4. Plan your next career move strategically

**Ready to make a move?** - Browse our [AI/ML job listings](#) with verified salary ranges - Take our [skills assessment](#) to determine your level - Read our [salary negotiation guide](#) for tactics - Check our [interview prep resources](#) to ace the process

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Data Sources:

levels.fyi (50,000+ verified salaries), Glassdoor, LinkedIn Salary Insights, Blind, January 2025 data

Methodology:

Salaries represent median values for each range. Total compensation includes base salary + equity (RSUs/options valued at grant) + annual bonuses. Cost of living data from Numbeo. All figures in USD.

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