Amazon.com Services LLC

Technology

DataEngineer

$170–230k New York, New York, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Senior candidates.

The Brief

“Data Engineer at Amazon.com Services LLC. Skills: Data engineering, ETL pipelines, Data warehousing, Dimensional modeling. Set technical direction for data warehouse. Set technical direction for ETL pipelines”

Industry & Context.

Technology
Problems you'll solve

Turn open-ended questions into data products

What They're Looking For.

Must Have

5+ years of data engineering experience, Experience with data modeling, Experience with warehousing, Experience building ETL pipelines, Experience with SQL, Experience in at least one modern scripting or programming language, Experience mentoring team members on best practices

Nice to Have

Experience with big data technologies, Experience operating large data warehouses, Experience communicating with users, Experience communicating with other technical teams, Experience communicating with management, Experience collecting requirements, Experience describing data modeling decisions, Experience describing data engineering strategy

What You'll Do.

Set technical direction for data warehouse

Set technical direction for ETL pipelines

Set technical direction for reporting layer

Architect Datanet/ETLM jobs

Operate Datanet/ETLM jobs

Architect Cradle profiles

Operate Cradle profiles

Architect Andes datasets

Operate Andes datasets

Deliver on OP1/OP2 cycles

Deliver on MBR/QBR rhythms

Deliver on ad-hoc executive asks

Turn messy data into dimensional models

Set data quality standards

Set pipeline reliability standards

How You'll Work.

Team & Collaboration

Finance Managers; PM-Ts; Scientists; Engineering

Communication Scope

Executive asks

Full Job Description

This is a ground-up, greenfield build — Finance for one of Amazon Ads' newest bets in the agentic space. No legacy pipelines, no inherited dashboards, no pattern to follow. If you're energized by shaping data infrastructure from zero to one inside a fast-moving org, keep reading. What we're building: - A finance data platform powering the FAIM org (Full-Funnel Agentic Intelligence & Models) — the team building the next generation of agentic AI advertising products - Pipelines and models that turn raw data into decisions for greenfield products - Self-service reporting that scales spanning Engineering, Science, PM-T, and Design across multiple AI native advertising products This is a startup team within Amazon Ads Finance with an ambitious vision and the runway to build it right the first time. We're looking for a senior Data Engineer who brings: - Deep SQL fluency and 5+ years architecting and operating production ETL on Redshift, Andes, or equivalent at scale - Hands-on depth with the Amazon data stack — Datanet/ETLM, Cradle, Andes 3.0, Redshift Spectrum, EDX, and QuickSight (SPICE) - Strong dimensional data modeling judgment — fact/dim design, SCDs, and the experience to make the right denormalization, partitioning, and lifecycle calls without supervision - Python (or equivalent) for orchestration, data quality automation, and pipeline tooling beyond SQL - A willingness to set the bar — define data quality, lineage, SLA, and reliability standards for the org and hold the line on them - The ability to operate in ambiguity — turn open-ended finance and program questions into durable data products with minimal scoping help - Excitement about leading the data partnership with Finance Managers, PM-Ts, Scientists, and Engineering, and mentoring more junior engineers as the team grows - AI-native experience for automation and defect/opportunity identification using tools such as Kiro, Claude Code, or equivalent Key job responsibilities - Own it end-to-end — set the techn

Free ATS check

Applying for this Data Engineer role?

Most applicants get filtered before a human reads their resume. See if yours makes the cut.

ANONYMOUS · UNFILTERED

What do employees actually say about Amazon.com Services LLC?

Real rants from real employees. Read before you apply.

Read Company Rants →