Data Analyst Expert

JD.COM
London
3 days ago
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Responsibilities

1. Operational data analysis for international shared services: Understand the operational processes of shared services, comprehensively monitor key performance indicators, promptly detect data fluctuations and conduct in-depth root cause analysis, swiftly identify business anomalies and risk points, and provide solutions;

2. Aggregate international business data: Map existing core operations and product lines across international business units, master current data storage methods and logical frameworks, consolidate international business data, promptly detect fluctuations and conduct root cause analysis;

3. Analyse international cash flow statements: Collaborate with Treasury and Accounting teams to understand JD's capital operations and data sources, produce international cash flow analysis and forecasts, continuously refine and enhance predictive models;

4. Expense Analysis: Collaborate with Procurement to understand JD.com's procurement classifications and data sources, conduct international expense analysis, promptly detect data fluctuations, and conduct in-depth root cause analysis.

5. Data Dashboard Development: Work with the IT Department to transform the above analyses into data dashboards.

6. Complete ad hoc data analysis tasks assigned by management.


Qualifications

1. Full-time bachelor's degree or higher, with 3+ years' experience in financial operations data analysis at large internet companies or multinational corporations;

2. Proficiency in SQL/Hive and other data languages, with fluent use of Microsoft Office (Excel, PowerPoint, Word);

3. Strong logical reasoning, resilience under pressure, data analysis skills, and ability to gather, organise, and synthesise information;

4. Excellent communication skills within and across teams, willingness to embrace challenges, ability to thrive under pressure, and capacity to deliver tasks efficiently within tight deadlines;

5. Demonstrated capability in resource integration and project management.

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