채용
Role Description
Dropbox is looking for a Staff Data Engineer to join our Analytics Data Engineering (ADE) team within Data Science & AI Platform. You will be responsible for solving cross-cutting data challenges that span multiple lines of business while driving standardization in how we build, deploy, and govern analytics pipelines across Dropbox.
This is not a maintenance role. We are modernizing our analytics platform, upgrading orchestration infrastructure, building shared and reusable data models with conformed dimensions, establishing a certified metrics framework, and laying the foundation for AI-native data development. You will partner closely with Data Science, Data Infrastructure, Product Engineering, and Business Intelligence teams to make this happen.
You will play a crucial role in establishing analytics engineering standards, designing scalable data models, and driving cross-functional alignment on data governance. You will get substantial exposure to senior leadership, shape the technical direction of analytics infrastructure at Dropbox, and directly influence how data powers product and business decisions.
Our Engineering Career Framework is viewable by anyone outside the company and describes what’s expected for our engineers at each of our career levels. Check out our blog post on this topic and more here.
Responsibilities
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Lead the design and implementation of shared, reusable data models, defining shared fact tables, conformed dimensions, and a semantic/metrics layer that serves as the single source of truth across analytics functions
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Drive standardization of data engineering practices across ADE and functional analytics teams, including pipeline patterns, CI/CD workflows, naming conventions, and data modeling standards
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Partner with Data Infrastructure to modernize orchestration, improve pipeline decomposition, and establish secure dev/test environments with production data access
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Architect and implement a shift-left data governance strategy, working with upstream data producers to establish data contracts, SLOs, and code-enforced quality gates that catch issues before production
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Collaborate with Data Science leads and Product Management to translate metric definitions into reliable, certified data pipelines that power executive dashboards, WBR reporting, and growth measurement
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Reduce operational burden by improving pipeline granularity, observability, and failure recovery, establishing runbooks and alerting standards that make on-call sustainable
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Evaluate and integrate AI-native tooling into the data development lifecycle, enabling conversational data exploration with guardrails and AI-assisted pipeline development
On-call work may be necessary occasionally to help address bugs, outages, or other operational issues, with the goal of maintaining a stable and high-quality experience for our customers.
Requirements
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BS degree in Computer Science or related technical field, or equivalent technical experience
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12+ years of experience in data engineering or analytics engineering with increasing scope and technical leadership
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12+ years of SQL experience, including complex analytical queries, window functions, and performance optimization at scale (Spark SQL)
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8+ years of Python development experience, including building and maintaining production data pipelines
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Deep expertise in dimensional data modeling, schema design, and scalable data architecture, with hands-on experience building shared data models across multiple business domains
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Strong experience with orchestration tools (Airflow strongly preferred) and dbt, including pipeline design, scheduling strategies, and failure recovery patterns
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Demonstrated ability to drive cross-team technical alignment, establishing standards, influencing without authority, and working across Data Engineering, Data Science, Data Infrastructure, and Product Engineering boundaries
Preferred Qualifications
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Experience with Databricks (Unity Catalog, Delta Lake) and modern lakehouse architectures
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Experience leading orchestration or platform modernization efforts at scale
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Familiarity with data governance and observability tools such as Atlan, Monte Carlo, Great Expectations, or similar
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Experience building or contributing to a metrics/semantic layer (dbt MetricFlow, Databricks Metric Views, or equivalent)
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Track record of establishing data engineering standards and best practices in a federated analytics organization
총 조회수
0
총 지원 클릭 수
0
모의 지원자 수
0
스크랩
0
비슷한 채용공고
Dropbox 소개

Dropbox
PublicA smart workspace company that provides secure file sharing, collaboration, and storage solutions.
1,001-5,000
직원 수
San Francisco
본사 위치
$8B
기업 가치
리뷰
4.0
10개 리뷰
워라밸
3.8
보상
4.0
문화
4.2
커리어
2.8
경영진
3.5
72%
친구에게 추천
장점
Flexible work hours and remote options
Great team culture and collaborative environment
Good benefits and compensation
단점
Limited career advancement and growth opportunities
High workload and pressure leading to burnout
Communication issues between teams
연봉 정보
49개 데이터
Mid/L4
Mid/L4 · RPD Developer, Oracle Analytics
2개 리포트
$151,840
총 연봉
기본급
$131,600
주식
-
보너스
-
$151,840
$151,840
면접 경험
2개 면접
난이도
4.0
/ 5
소요 기간
14-28주
경험
긍정 0%
보통 50%
부정 50%
면접 과정
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Onsite/Virtual Interviews
5
Writing Sample
6
Final Interview
자주 나오는 질문
Coding/Algorithm
System Design
Behavioral/STAR
Technical Knowledge
Past Experience
뉴스 & 버즈
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News
·
2d ago
Dropbox Stock Performance & Outlook: Billings Decline, Valuation Risk - News and Statistics - IndexBox
IndexBox
News
·
3d ago
Dropbox (NASDAQ: DBX) CAO sells 1,415 shares under Rule 10b5-1 plan - Stock Titan
Stock Titan
News
·
3d ago
Dropbox launches three apps inside ChatGPT for work - IT Brief UK
IT Brief UK
News
·
3d ago




