Amazon Data Services, Inc.
Business Intelligence, Business Intel Engineer, Cloud Computing
SrBusinessIntelligenceEngineer
Neural analysis suggests this role is
optimal for Senior candidates.
“Sr Business Intelligence Engineer at Amazon Data Services, Inc.. Skills: Business Intelligence, Data Engineering, Analytics Engineering. Build diagnostic analytics layer. Explain metric deviation”
Industry & Context.
Root cause analysis; Performance gaps; Corrective actions
What They're Looking For.
Must Have
10+ years statistical analysis, Expert SQL skills, Statistical foundation, Build automated pipelines, Proficiency in Python or R, Decompose complex metrics
Nice to Have
Experience with business stakeholders, Experience in operational analytics, Experience with workforce analytics, Build composite metrics, Experience with multivariate analysis, Build decision-support tools, Familiarity with forecasting methods, Build analytical frameworks adopted across teams, Experience with Amazon internal data tools, Experience with data center operations
What You'll Do.
Build diagnostic analytics layer
Explain metric deviation
Decompose performance
Build analytical frameworks
Scope analytical problems
Build decomposition frameworks
How You'll Work.
Team & Collaboration
Partner with operational leaders; VP level audiences
Communication Scope
Written communication; Verbal communication; Present complex analysis
Full Job Description
We are looking for a Senior Business Intelligence Engineer to build the diagnostic analytics layer for Amazon's global data center operations. You will move our analytics capability beyond reporting *what* happened to explaining *why* — identifying which factors drive metric deviation, decomposing performance into attributable components, and building the analytical frameworks that enable operational leaders to take the right action. GDCO operates one of the world's largest physical infrastructure fleets — hundreds of data centers across 20+ countries — with thousands of technicians performing hardware repairs, rack installations, and preventive maintenance daily. We have strong descriptive analytics (dashboards, WBR metrics), but has opportunity in terms of explaining root causes, attribute performance gaps to specific factors, or recommend proven corrective actions. This leader will focus on building that diagnostic layer. This is a high-impact, high-autonomy role. You will scope analytical problems, build decomposition frameworks, partner with operational leaders to validate findings, and deliver insights that directly influence resource allocation, process design, and investment decisions at the VP level. You'll work with rich operational data at scale: millions of repair tickets, rack lifecycle events, parts inventory flows, workforce scheduling data, and hardware validation results. Basic Qualifications: - 10+ years of performing statistical analysis experience - Expert SQL skills — complex analytical queries across large-scale datasets (multi-system joins, window functions, statistical aggregations across petabyte-scale data) - Strong statistical foundation — regression analysis, statistical process control, hypothesis testing, and metric decomposition applied to real business problems - Experience building automated, reproducible analytical pipelines — scheduled systems that serve ongoing business processes at production quality - Proficiency in Python or R
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