Data Analyst

Ebro Electronic GmbH
Nottingham
1 month ago
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Xylem ist ein Fortune 500 Wassertechnologieunternehmen mit global 23.000 Mitarbeitenden in über 100 Ländern und einer Mission: unseren Kunden durch innovative Technologielösungen und unser Fachwissen bei der Lösung von Wasserproblemen und -herausforderungen zu helfen. Wir sind der weltweit führende Anbieter effizienter, innovativer und nachhaltiger Wassertechnologien, die dafür sorgen, dass unser Wasser nachhaltig genutzt, optimal verwaltet, erhalten und wiederverwendet wird.Data Analyst****Location: Nottingham (Hybrid)The RoleWe’re looking for a commercially minded Data Analyst who can turn complex data into clear, actionable insight that drives better decisions. This role sits at the intersection of data, business performance, and stakeholder influence — ideal for someone who enjoys solving real problems rather than building models in isolation.You’ll work closely with cross-functional teams to understand business questions, analyse data from multiple sources, and communicate insights through compelling visualisations and storytelling. While exposure to predictive techniques is valuable, this is primarily an insight-led analytics role, not a pure data science position.Key ResponsibilitiesData Analysis & Insight Analyse structured datasets to identify trends, risks, and opportunities Translate business questions into analytical approaches and meaningful outputs Apply statistical and analytical techniques to support operational and strategic decisionsReporting & Visualisation** Design and maintain dashboards and reports using modern BI tools* Present insights clearly to non-technical stakeholders, focusing on “so what” and impact* Partner with stakeholders to refine metrics, KPIs, and reporting standardsData Quality & Governance* Validate, clean, and reconcile data from multiple sources* Support data integrity through quality checks and documentation* Contribute to the development of consistent definitions, metrics, and data standardsBusiness Partnering* Work with teams across finance, operations, sales, and leadership to drive insight* Proactively identify opportunities where data can improve performance or efficiency* Support evidence-based decision making across the organisationContinuous Improvement* Stay current with analytics best practice, tools, and techniques* Recommend improvements to reporting, automation, and analytical processes* Share knowledge and coach others on effective use of dataWhat We’re Looking ForEssential Proven experience as a Data Analyst or in a similar analytics role Strong SQL capability and experience working with relational data sources* Experience with BI and visualisation tools (e.g. Power BI, Tableau, Looker)* Solid analytical thinking with the ability to interpret and explain data clearly* Strong stakeholder engagement and communication skillsDesirable*** Experience using Python or R for analysis or automation* Exposure to forecasting, trend analysis, or basic predictive techniques* Experience working in a commercial, operational, or fast-paced environmentQualifications* Degree in Data Science, Statistics, Mathematics, Computer Science, Engineering, or a related discipline — or equivalent practical experience* Typically 3–6 years’ experience in a data analytics or insight roleWhat You’ll Bring* A pragmatic, results-driven approach to analytics* Curiosity and healthy scepticism — you question the data, not just report it* Confidence to challenge assumptions and influence decisions with evidence* A collaborative mindset and genuine interest in helping the business perform better* Meaningful work where your insights directly influence decisions* A modern analytics environment with scope to shape how data is used* Hybrid working and a Nottingham-based team culture* Clear opportunities to grow into senior or specialist analytics rolesWerden Sie Teil des globalen Xylem-Teams und gestalten Sie innovative Technologielösungen mit, die die Nutzung, Verfügbarkeit, den Schutz und die nachhaltige Verwendung von Wasser sicherstellen. Unsere Produkte kommen in der öffentlichen Versorgung, der Industrie, im Wohnbereich und in gewerblichen Gebäuden zum Einsatz – mit dem Ziel, intelligente Maschinen, Anlagen, Messsysteme, Netzwerktechnologien und fortschrittliche Analysen für Wasser-, Strom- und Gasversorger sowie die Industrie bereitzustellen. Arbeiten Sie mit uns an einer Welt, in der die aktuellen und kommenden Wasserherausforderungen mit Kreativität und Engagement gelöst werden und in der Inklusion und Zugehörigkeit als Treiber für Innovation erkannt werden, um unsere Wettbewerbsfähigkeit weltweit zu stärken.
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