Amazon Junior Data Engineer Interview in Dublin (L4)
At Amazon, the (L4) Junior Data Engineer interview is characterized by Leadership Principles woven into every round, with a Bar Raiser holding veto power. To clear this bar you need foundational SQL fluency and a willingness to learn production systems, built on 0-2 years of production DE work. Below we dig into how this runs out of the Dublin office (Dublin, Ireland), with cost-of-living-adjusted compensation.
Compensation
$75K–$96K base • $102K–$132K total (L4)
Loop duration
3.8 hours onsite
Rounds
5 rounds
Location
Dublin, Ireland
Compensation
Amazon Junior Data Engineer in Dublin total comp
Offer-report aggregate, 2021-2025. Level mapped: L4. Typical experience: 2-9 years (median 7).
25th percentile
$105K
Median total comp
$122K
75th percentile
$157K
Median base salary
$95K
Median annual equity
$12K
1 currently open junior data engineer postings in Dublin.
Round focus
Domain concentration by round
Amazon's round-by-round focus, inferred from 1 active junior data engineer job descriptions. Use this to calibrate which domains to drill for each round.
Online Assessment
Phone Screen
Onsite Loop
Practice problems
Amazon junior data engineer practice set
Problems the Amazon junior data engineer loop tends to ask, surfaced from signals in current job descriptions. Click any to start practicing.
The Coin Vault
Given a target amount and a list of coin denominations, return the minimum coins needed using a greedy strategy: repeatedly take the largest coin that does not exceed the remaining amount. Return -1 if the greedy approach cannot make exact change.
Employee Application Time Tracking
We need to track how much time employees spend in each application. HR wants daily summaries of time-per-employee-per-application, and wants to flag any employee spending more than 10 hours/day in a single application. Design the schema to capture this data.
Data Platform IaC with Semantic Layer
Our company is starting fresh with Databricks as the core data platform. We have six data sources that need to be ingested, transformed, and exposed through a consistent semantic layer for business analysts. Design the end-to-end platform architecture - including infrastructure-as-code configuration for each source, the orchestration DAG, and how the semantic layer sits on top.
Housing Marketplace Analytics
We run a housing marketplace. Sellers list properties, buyers view listings and submit leads. We need to measure conversion rate from view to lead by location and property type. Design the data model.
Classic DE round opener. Window function + partition. Edit to tweak the threshold.
Dublin, Ireland
Amazon in Dublin
European HQ for Meta, Google, Microsoft, LinkedIn, Stripe. Tax-advantaged for employers; compensation tilts toward base + RSUs.
Amazon pays about 40% less in Dublin than its reference band; this maps to local market compensation norms. Amazon sponsors visas for junior data engineer hires in Dublin as a matter of course. The interview loop itself is identical to Amazon's global process in Dublin; local variation shows up in team and compensation.
The loop
How the interview actually runs
01Recruiter screen
30 minLogistics, team fit, and a light Leadership Principle question. Recruiters confirm seniority expectations before booking the loop. Misalignment here can downlevel the loop.
- →Have a 60-second pitch that names 2-3 concrete data systems you've built
- →Confirm the team. Amazon has hundreds of DE teams across AWS, Retail, Ads, Alexa, Prime Video, Pharmacy
- →Ask about the comp band early to avoid end-of-loop misalignment
02Technical phone screen
60 minOne SQL problem, one Python or pipeline design problem, and 10-15 min of Leadership Principle questions. The SQL is harder than the Online Assessment, expect multi-step window functions or self-joins.
- →Narrate approach before writing code. Amazon grades process, not just the final answer
- →Name the LP before telling the story
- →Prepare at least 2 stories per LP; follow-ups probe a third story on the same theme
03Onsite: SQL deep-dive
60 minTwo to three SQL problems with escalating difficulty, usually in Amazon contexts (seller performance, order fulfillment, inventory). Ends with 10 min of LP questions.
- →Practice window functions across large partition cardinalities
- →Be ready to rewrite correlated subqueries as joins and vice versa
- →When asked about optimization, mention partition pruning and columnar storage
04Onsite: Bar Raiser
60 minAn interviewer from outside the hiring team with veto power. Heaviest on Leadership Principles, with one harder technical problem. Tests whether you raise Amazon's hiring bar.
- →Bring a story where you were wrong and had to change course
- →Quantify impact: cost saved, latency reduced, users affected
- →If you don't know something, say so. Fabricating kills the loop faster than any technical gap
Level bar
What Amazon expects at Junior Data Engineer
SQL foundations
Junior rounds weight SQL the heaviest. Expect multi-table joins, aggregations, window functions, and one harder query involving self-joins or recursive CTEs. You do not need to design systems at this level, but you do need SQL to be reflexive.
Learning orientation
Interviewers probe how you pick up new tools. A strong story about learning a new stack in a prior role (even an internship or side project) can outweigh gaps in production experience.
Basic pipeline awareness
You should know what ETL vs ELT means, what a data warehouse is, and why idempotency matters, even if you have not built a production pipeline yourself.
Amazon-specific emphasis
Amazon's loop is characterized by: Leadership Principles woven into every round, with a Bar Raiser holding veto power. Calibrate your preparation to that, generic FAANG prep will not close the gap on company-specific expectations.
Behavioral
How Amazon frames behavioral rounds
Dive Deep
The most relevant LP for data engineers. Amazon wants DEs who trace anomalies through 3+ layers of the stack instead of patching symptoms.
Ownership
You built it, you own it, including on-call and long-term maintenance. Ownership extends beyond your explicit scope when dependencies break.
Bias for Action
Speed beats perfection. Amazon wants DEs who ship V1 in 2 weeks rather than a perfect solution in 3 months.
Earn Trust
Trust comes from delivery and transparency. Bar Raisers test whether you can admit mistakes and communicate setbacks without spinning.
Prep timeline
Week-by-week preparation plan
Foundations and gap analysis
- ·Do 10 medium SQL problems. Note which patterns feel slow
- ·Write out 2-3 behavioral stories per value, Amazon weights this round heavily
- ·Read Amazon's public engineering blog for recent architecture patterns
- ·Shore up data engineering foundations: SQL, Python, one warehouse (Snowflake/BigQuery/Redshift)
SQL and coding fluency
- ·Practice window functions until DENSE_RANK, ROW_NUMBER, LAG, LEAD are reflex
- ·Do 20+ Amazon-style problems in their domain
- ·Time yourself: 25 min per medium, 35 min per hard
- ·Record yourself narrating approach aloud, communication is graded
Pipeline awareness and behavioral depth
- ·Review pipeline architecture basics: idempotency, partitioning, backfill
- ·Practice explaining a pipeline you've worked on end-to-end in 5 minutes
- ·Refine behavioral stories based on mock feedback
- ·Do 10 more SQL problems at medium difficulty
Behavioral polish and mock loops
- ·Rehearse every story out loud. Cut to 2-3 minutes each
- ·Run 2 full mock loops with a mid-level DE or coach
- ·Identify your 3 weakest behavioral areas and draft additional stories
- ·Review recent Amazon news or earnings call for fresh talking points
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: interviewers want to find reasons to hire you, not to reject you
See also
Related pages on Amazon's loop
FAQ
Common questions
- What level is Junior Data Engineer at Amazon?
- On Amazon's ladder, Junior Data Engineer sits at L4. Expectations center on foundational SQL fluency and a willingness to learn production systems.
- How much does a Amazon Junior Data Engineer in Dublin make?
- Across 12 offer samples from 2021-2025, Amazon Junior Data Engineer in Dublin total compensation lands at $105K (P25), $122K (median), and $157K (P75), median base $95K and median annual equity $12K. Typical experience range: 2-9 years..
- Does Amazon actually hire data engineers in Dublin?
- Yes, Amazon maintains a Dublin office and hires Junior Data Engineer data engineers there. Team assignment may be office-locked or global; confirm with the recruiter before the loop.
- How is the Junior Data Engineer loop different from other levels at Amazon?
- Round structure is shared across levels; what changes is what each round tests. For Junior Data Engineer the emphasis is foundational SQL fluency and a willingness to learn production systems, with particular attention to SQL fundamentals, learning orientation, and basic pipeline awareness.
- How long should I prepare for the Amazon Junior Data Engineer interview?
- 6-8 weeks of focused prep is typical for candidates already working as a DE. Less than 4 weeks is tight; the behavioral story bank usually takes longer than candidates expect.
- Does Amazon interview data engineers differently than software engineers?
- Yes. DE loops at Amazon weight SQL heavier, include pipeline/system-design rounds tuned to data workloads, and probe for production data experience (ingestion patterns, data quality, backfill) that generalist SWE loops skip.
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.
Interview Rounds
By Company
- Stripe Data Engineer Interview
- Airbnb Data Engineer Interview
- Uber Data Engineer Interview
- Netflix Data Engineer Interview
- Databricks Data Engineer Interview
- Snowflake Data Engineer Interview
- Lyft Data Engineer Interview
- DoorDash Data Engineer Interview
- Instacart Data Engineer Interview
- Robinhood Data Engineer Interview
- Pinterest Data Engineer Interview
- Twitter/X Data Engineer Interview
By Role
- Senior Data Engineer Interview
- Staff Data Engineer Interview
- Principal Data Engineer Interview
- Junior Data Engineer Interview
- Entry-Level Data Engineer Interview
- Analytics Engineer Interview
- ML Data Engineer Interview
- Streaming Data Engineer Interview
- GCP Data Engineer Interview
- AWS Data Engineer Interview
- Azure Data Engineer Interview