Lead Data Analytics Engineer - Global Technology Analytics, Insights and MetricsJ.P. Morgan • London, England, United Kingdom
Lead Data Analytics Engineer - Global Technology Analytics, Insights and Metrics
J.P. Morgan
- London, England, United Kingdom
- London, England, United Kingdom
Über
Insights, Communications and Reporting
Define, create, deliver, establish and maintain a metrics framework and complementary visuals aligned to CTO and technology leadership decision needs. Your framework will be inclusive of many different technology initiatives, including emerging capabilities such as Artificial Intelligence (AI), Software Engineering, Portfolio Management and more. Build strong relationships across various GT functions. Communicate statistical findings effectively to technical and non-technical audiences without oversimplification or false precision. Narratives and analyses need to be clear. They need to articulate what is happening, why it is happening, and how confident the conclusions are. Work closely to JPMC key strategic programs and initiatives, while providing continuous analysis & insights to support their priority outcomes, all with sound statistical measures. Your insights must explain performance, trends, variability, and drivers across all of GT. Statistical Analysis and Data Interpretation
Continuously refine analytical approaches as technology strategy, architecture, and delivery practices evolve. Support technology leadership in understanding trade-offs, risks, opportunities, and uncertainty. Conclusions provided must sound, statistically and contextually valid and based on actual engineering and business ecosystems. Collaborate closely with engineering, platform, architecture, and AI enablement teams to understand delivery practices, workflows and constraints Perform hands-on statistical analysis using appropriate descriptive, inferential, and exploratory techniques. Apply those techniques and reasoning to assess variability, confidence, uncertainty, statistical significance, and margin of error where appropriate. Evaluate distributions, trends, and changes over time while accounting for structural differences in teams, systems, and delivery models. Be able to distinguish correlation from causation and clearly communicate analytical limitations, assumptions, and confidence levels. Operations, Measurements and Instrumentation
Identify required data points needed to answer key analytical and statistical questions, then define requirements for instrumenting data at the source. Ensure metrics are compatible with different engineering flows, including feature branch development, trunk-based development, and integrated delivery. Improve data quality, consistency, and traceability over time. Maintain clear documentation of metric definitions, statistical methods, and calculation logic. Ensure reporting supports informed decision-making rather than metric consumption without context. Required qualifications, capabilities, and skills:
Degree in Mathematics, Statistics, Data Science, Engineering, Computer Science or equivalent 5+ years applicable work experience. 7+ years experience performing statistical analytics, data science, or performance measurement roles. Practical experience working with technology, delivery, portfolio, financial, or AI-related data Demonstrated experience applying statistical methods to real-world, imperfect datasets and evolving delivery practices. Strong familiarity with concepts such as statistical significance, confidence intervals, variability, and margin of error, and when their use is appropriate. Proficiencies in a modern data stack. Excel, Python, R Studio, Power BI, Tableau, Qlik, SQL, Python, dbt, Databricks, Snowflake, and Microsoft Fabric, alongside specialized portfolio and spend analytics tools like Apptio. Demonstrated proficiency in software applications and technical processes within a technical discipline (e.g., cloud, artificial intelligence, machine learning, mobile, etc.) Preferred qualifications, capabilities, and skills
Desire and ability to mentor peers through statistical expertise and engineering domain knowledge. Strong formal training in statistics. Intellectual curiosity and commitment to statistical rigor. Respect for the complexity and variability of software delivery systems within a large enterprise. Practical cloud native experience. Proficient in all aspects of the Software Development Life Cycle. Proficiency in automation and continuous delivery methods (CI/CD pipelines). Practical understanding of software engineering delivery models, including but not limited to feature branch, trunk-based, and integrated delivery.
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Sprachkenntnisse
- English
Hinweis für Nutzer
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