Data Analyst

F4P Recruit
Hayes
3 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

The Data Analysis Executive supports the collection, validation, and transformation of data from Salesforce, SAP Business ByDesign, Qlik Sense, and other internal systems. The role provides accurate, timely insights that support operational and commercial decision-making across EMEA. This mid-level role is ideal for candidates with 35 years experience in data analysis or business intelligence. MUST BE ABLE TO WORK IN THE OFFICE 3 DAYS A WEEK. MUST HAVE RELEVANT ELIGIBILTY TO WORK - no sponsorship available.
Key Responsibilities
Extract, clean, and maintain datasets from Qlik Sense, Salesforce, and SAP ByDesign.
Develop dashboards and reports on revenue, pipeline, forecasting, and regional/product performance.
Analyse customer trends, pricing, and profitability to support sales and marketing strategies.
Measure marketing campaign effectiveness and ROI.
Maintain high data-quality standards and resolve inconsistencies across systems.
Automate recurring reports (Qlik Sense, Excel Power Query).
Manage Inventory and POS data; track configuration changes.
Configure Qlik Sense security rules, roles, and section access.
Support forecasting, budgeting, and business case preparation with accurate data.
Essential Skills
Degree in Data Analytics, Business, Mathematics, or related field.
35 years experience in data analysis, BI, or sales operations.
Strong Qlik Sense administration skills (single-node & multi-node environments).
Proficient in Salesforce reporting and SAP ByDesign (or similar ERP).
Advanced Excel skills (pivot tables, Power Query, formulas).
Experience with BI/visualisation tools, especially Qlik Sense.
Strong analytical skills, attention to detail, and clear communication.
Experience in dashboard development and basic server management.
Desirable
Experience in B2B electronics/technology.
Ability to analyse Qlik logs for troubleshooting.
Knowledge of CRMERP data integration and data quality processes.
Basic SQL or Python.
Experience with sales forecasting or commercial modelling.
Understanding of EMEA market structures and channels.
Benefits package including
Base salary of £50,000
6 mnthly bonus up to 25%,
flexi working hours (35 hrs) and 3 days in office, 2 from home,
25 days holiday, free parking, breakfast, lunch subsidy,
pension, healthcare, life insurance
This client does not offer sponsorship.
Requirements added by the job poster
Bachelor's Degree
Commute to this jobs location
3+ years of work experience with Qlik Sense - MUST HAVE!
3+ years of work experience with Salesforce Analytics
3+ years of work experience with Data Analysis

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