Housing
Housing dominates monthly expenses at $2,033, with downtown apartments averaging $1,667 for a one-bedroom. Utilities add $239 for basics and internet runs $73 monthly, making housing roughly 84% of total living costs in this Dallas suburb.
Market ranges & how to evaluate your offer
Most offers in Plano fall between $0k–$0k depending on seniority, location, and role scope.
Local vs National
Plano
Salary data is self-reported and varies by scope, company, and location. Use ranges, not single numbers.
Compare your total comp for Machine Learning Engineer — pick seniority, enter an offer, and preview the layout. Percentiles use your selected seniority when market data is available.
Cost of living breakdown for Plano, TX market.
Estimated monthly costs for this basket are about 99% of our comparable national baseline—day-to-day spending tends to go further here.
How the estimated monthly cost bundle splits across categories for a typical Machine Learning Engineer earner.
$2,421.70/ mo
HOUSING
$2,033.32 USD (84.0% of est. monthly costs)
FOOD
$217.28 USD (9.0% of est. monthly costs)
TRANSPORT
$80.00 USD (3.3% of est. monthly costs)
LIFESTYLE
$91.10 USD (3.8% of est. monthly costs)
Housing dominates monthly expenses at $2,033, with downtown apartments averaging $1,667 for a one-bedroom. Utilities add $239 for basics and internet runs $73 monthly, making housing roughly 84% of total living costs in this Dallas suburb.
Food costs remain reasonable at $217 monthly, with restaurant meals around $15 and grocery staples like milk ($0.92/liter) and eggs ($3.56/dozen) tracking below typical major metro prices. Dining and grocery spending combined represents less than 10% of total monthly expenses.
Public transit costs $80 monthly for a regular pass, though many Plano professionals likely rely on cars given the suburban layout and commuting patterns to Dallas-area employment centers.
Discretionary spending stays modest at $91 monthly, with gym memberships at $20 and movie tickets at $12. Coffee runs about $4.71 for a cappuccino, keeping entertainment and fitness costs well under other major expense categories.
Salary data only matters if you land the interview. Get a free AI-powered resume review and see how yours stacks up.
Machine Learning Engineer remote compensation varies significantly based on company pay philosophy and location adjustments. Tech giants like Google and Meta typically offer location-adjusted salaries, paying SF/NYC rates around $180-250K base while adjusting Austin or Denver roles to $150-200K base. However, many AI startups and remote-first companies like Hugging Face or Weights & Biases offer national pay bands, providing equal compensation regardless of location to attract top ML talent.
The hybrid work trend has created tiered compensation structures for Machine Learning Engineers, with many companies offering 90-100% of office pay for hybrid roles and 80-95% for fully remote positions. When negotiating, emphasize your ability to collaborate on distributed ML teams and experience with remote model development workflows. Companies value ML engineers who can effectively communicate complex technical concepts across time zones and manage distributed training experiments.
Moving from high-cost metros like San Francisco ($200K+ typical) to lower-cost areas while maintaining remote ML work can dramatically improve purchasing power. A $180K remote ML engineer salary in Austin or Raleigh provides equivalent lifestyle to $250K+ in the Bay Area, while cities like Denver or Nashville offer strong tech communities with 30-40% lower living costs than coastal hubs.
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Practical steps that move the number without damaging the relationship.
Start your ask above the median. You'll rarely be offered more than you ask, so anchor high and let the employer negotiate you down.
Stronger approach:
Say 'market data puts this role at $X–$Y' — not 'I was hoping for more'. External benchmarks are harder to argue against than personal expectations.
Stronger approach:
When base is stuck, negotiate equity vesting schedule, signing bonus, or accelerated refresh grants. Total comp has more levers than base alone.
Stronger approach:
Ask for 48 hours to review. This creates time to counter and signals that you take offers seriously — not that you are uncertain.
Stronger approach:
Generate an aware negotiation email using Google market positioning data.
Mock interviews tailored to Google's process and evaluation criteria.
Common questions about Machine Learning Engineer compensation.
Tools built for professionals evaluating offers and preparing for interviews.
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