Interview Guide · 2026

Google Senior Data Engineer Interview in Seattle (L5)

Hiring for Senior Data Engineer at Google (L5) runs Classic CS fundamentals with a Googleyness round and a hiring committee making the final call. The hiring bar is independent technical leadership and cross-team influence; the median candidate brings 5-8 years of DE experience. Details on the Seattle office (Seattle / Bellevue, WA) follow, including compensation calibrated to the local market.

Compensation

$193K–$239K base • $377K–$534K total (L5)

Loop duration

4.8 hours onsite

Rounds

6 rounds

Location

Seattle / Bellevue, WA

Compensation

Google Senior Data Engineer in Seattle total comp

Across 26 samples

Offer-report aggregate, 2023-2026. Level mapped: L5. Typical experience: 8-13 years (median 10).

25th percentile

$323K

Median total comp

$357K

75th percentile

$419K

Median base salary

$211K

Median annual equity

$126K

Practice problems

Google senior data engineer practice set

4 problems

Interview problems predicted for Google senior data engineers based on their actual job descriptions. Click any problem to work it in a live coding environment.

Try itRolling 7-day active users

Count distinct users active in the trailing 7 days for each date. Product analytics staple.

rolling_7dau.sql
Click Run to execute. Edit the code above to experiment.

Seattle / Bellevue, WA

Google in Seattle

No state income tax. AWS and Azure anchor the DE market, with dense mid-to-senior hiring across Amazon, Microsoft, and their ecosystem.

Seattle comp lands about 8% below the reference band in line with local market rates. The Seattle office's interview loop mirrors the global loop structure; team assignment and comp-band negotiation are the main local variables.

The loop

How the interview actually runs

01Recruiter screen

30 min

Level calibration and team matching. Google hires at a level and then matches you to a team post-offer, so the loop is generic even if the recruiter names a specific team.

  • Be flexible about team. Google teams are assigned after offer
  • Ask about the 'generalist pool' vs specific-team interview path
  • Have specific examples of scale: queries per second, petabytes, users served

02Technical phone screen

45 min

Coding problem in a shared doc. DE candidates see SQL + a small algo problem. The algo problem tests CS fundamentals, not LeetCode hard.

  • Practice SQL on Google-scale schemas: ad impressions, search logs, YouTube view events
  • For the algo portion, arrays/strings/hash maps cover 80%, trees and graphs are rarer for DEs
  • Explain time/space complexity explicitly

03Onsite: SQL + coding

45 min

Two interviewers, usually split between SQL deep-dive and algorithms. DE loops weight SQL heavier than SWE loops.

  • Explicit about indexing and query-plan assumptions even though Google uses BigQuery, not indexed databases
  • Know window functions cold. Google SQL loves them
  • For algorithms, think out loud about brute force first, then optimize

04Onsite: Data infrastructure design

45 min

Design a large-scale data system. BigQuery, Dataflow, Spanner, Pub/Sub are common prompts. Google loves asking you to design a subset of their own infrastructure.

  • Know Google's own stack at high level: BigQuery, Dataflow, Spanner, Colossus, Bigtable, Borg
  • Discuss consistency, partition tolerance, and latency explicitly
  • Cost and scalability framing land well. Google interviewers think at planet scale

05System design (pipeline architecture)

60 min

Design a production pipeline end-to-end: ingestion, transformation, storage, consumers, SLAs, failure modes, backfill strategy, and cost trade-offs. At senior level, you drive the conversation without prompting. Expect follow-ups about scale, cross-team coordination, and operational load.

  • Anchor on the SLA and data shape before diagramming
  • Discuss idempotency, partitioning, and backfill explicitly
  • Estimate cost: 'This pipeline will cost roughly $X/month at this volume'

06Googleyness + leadership

45 min

Behavioral round testing collaboration, humility, comfort with ambiguity, and user focus. The hiring committee weights this round heavily.

  • Googleyness is not a joke, humility and collaborative stories outrank hero-mode stories
  • Prepare examples of navigating ambiguity and working cross-functionally
  • Have a user-obsession story, even if your 'user' is another internal team

Level bar

What Google expects at Senior Data Engineer

Independent technical leadership

Senior DEs drive pipeline designs without engineering manager involvement. Interviewers probe whether you can decompose ambiguous requirements, make architecture trade-offs, and defend your choices under scrutiny.

Cross-team coordination

Senior scope regularly spans multiple teams. Expect scenarios about a downstream team missing an SLA because of a change you made, or negotiating a schema migration with the team that owns the upstream source.

Production operational rigor

Fluent in on-call, alerting, data quality checks, and incident response. Dive-deep stories at this level should include correlating a metric drop to a specific commit or a timezone bug or a subtle ordering issue, not 'I looked at the logs.'

Google-specific emphasis

Google's loop is characterized by: Classic CS fundamentals with a Googleyness round and a hiring committee making the final call. Calibrate your preparation to that, generic FAANG prep will not close the gap on company-specific expectations.

Behavioral

How Google frames behavioral rounds

Googleyness

A cultural fit signal for collaboration, humility, and openness. Heavily weighted by the hiring committee.

Tell me about a time you received critical feedback and acted on it.

Navigating ambiguity

Google problems are rarely well-specified. They want engineers who can decompose vague goals into concrete milestones without hand-holding.

Describe a project where the requirements were unclear and you had to define them.

User focus

Even for internal DE work, Google expects candidates to think about the downstream user (an analyst, a product team, a consumer).

Tell me about a time a stakeholder's request didn't match their actual need.

Collaboration across teams

Google scale means every DE project touches multiple teams. Stories about influence without authority score high.

Describe a situation where you worked with another team that had a different priority than yours.

Prep timeline

Week-by-week preparation plan

8-10 weeks out
01

Foundations and gap analysis

  • ·Do 10 medium SQL problems. Note which patterns feel slow
  • ·Write out 2-3 behavioral stories per value, Google weights this round heavily
  • ·Read Google's public engineering blog for recent architecture patterns
  • ·Review your prior production work, pick 3-5 projects you can discuss in depth
6 weeks out
02

SQL and coding fluency

  • ·Practice window functions until DENSE_RANK, ROW_NUMBER, LAG, LEAD are reflex
  • ·Do 20+ Google-style problems in their domain
  • ·Time yourself: 25 min per medium, 35 min per hard
  • ·Record yourself narrating approach aloud, communication is graded
4 weeks out
03

Pipeline system design

  • ·Design 5 pipelines on paper: daily aggregation, clickstream, CDC, ML feature store, real-time alerting
  • ·For each, write SLA, partition strategy, backfill plan, and cost estimate
  • ·Practice with a friend, senior-level system design is 50% driving the conversation
  • ·Review Google's open-source and engineering blog for in-house patterns
2 weeks out
04

Behavioral polish and mock loops

  • ·Rehearse every story out loud. Cut to 2-3 minutes each
  • ·Run 2 full mock loops with a senior DE or coach
  • ·Identify your 3 weakest behavioral areas and draft additional stories
  • ·Review recent Google news or earnings call for fresh talking points
Week of
05

Taper and logistics

  • ·No new content. Review your notes only
  • ·Sleep. Mental energy matters more than one more practice problem
  • ·Confirm logistics: laptop charged, shared-doc tool tested, snack and water nearby
  • ·Remember: the loop is rooting for you to raise the bar, not to fail

FAQ

Common questions

What level is Senior Data Engineer at Google?
At Google, Senior Data Engineer corresponds to the L5 level. The bar emphasizes independent technical leadership and cross-team influence without people-management responsibilities.
How much does a Google Senior Data Engineer in Seattle make?
Looking at 26 sampled offers from 2023-2026, Google Senior Data Engineer in Seattle total comp comes in at $357K median, ranging from $323K to $419K, median base $211K and median annual equity $126K. Typical experience range: 8-13 years..
Does Google actually hire data engineers in Seattle?
Yes, Google maintains a Seattle office and hires Senior Data Engineer data engineers there. Team assignment may be office-locked or global; confirm with the recruiter before the loop.
How is the Senior Data Engineer loop different from other levels at Google?
The format of the loop matches other levels; difficulty and evaluation shift to independent technical leadership and cross-team influence, and questions at this level dig into independent system design and cross-team influence.
How long should I prepare for the Google Senior Data Engineer interview?
Most working DEs find 8-10 weeks is about right. The technical prep scales with experience; the behavioral story bank is where candidates underestimate time.
Does Google interview data engineers differently than software engineers?
Yes, the DE track at Google emphasizes SQL depth, warehouse and pipeline design, and real production data experience (late data, backfills, quality checks), which generalist SWE loops don't test.

Continue your prep

Data Engineer Interview Prep, explore the full guide

50+ guides covering every round, company, role, and technology in the data engineer interview loop. Grounded in 2,817 verified interview reports across 929 companies, collected from real candidates.