Data Analyst / Business Partner

Salem Area Chamber of Commerce
Hounslow
1 month ago
Applications closed

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Data Analyst / Business Partner | Middlesex | Full Time | £30,000 per annum

Our client's focus is on growing the business. They've built their operational model with customer-centricity at its core and personal service at its heart. Their vision is to be the most dynamic and flexible provider of smart supply chain solutions to their clients, both domestically and internationally.


Are you the right person for the job?

  • Data analytics skills (Big Data) and understanding of billing methodology
  • Collating data from our WMS systems (JAIMS and Domo)
  • Merging data while troubleshooting inventory/serial number issues
  • Creating simulations/formulas
  • Developing customer MI packs, including SLA data points
  • Assisting with managing rate cards and tariffs
  • Analysing customer spending patterns
  • Deep dive into stock integrity problem-solving
  • Knowledge of financial tools and systems, including Power BI, SQL & Domo
  • Excellent written and verbal communication skills
  • Ability to work well in a team and collaborate with IT teams to build data flows
  • Proficiency with spreadsheet and accounting software programs
  • Advanced Excel skills (PivotTables, VLOOKUPs, and other similar advanced formulas)
  • Strong organisational and interpersonal skills
  • Extensive experience in the courier/logistics sector or a related industry (preferred but not essential)
  • Positive attitude, high numeracy, and strong analytical abilities
  • Ability to work both independently and as part of a team
  • Self-motivated with the ability to work with minimal supervision
  • Strong problem-solving mindset and ability to overcome obstacles
  • Consistent drive, energy, and flexibility in approach
  • Professional and well-prepared image at all times

What will your role look like?

  • Take systems ownership with reference to data capture, costs and related revenue generation opportunities analysis (AIMS / JAIMS / BOLT / DOMO)
  • Ensure surcharges are picked up, tariffs are correctly applied, and systems are properly configured
  • Monitor and report product/client volumes and activity both weekly and monthly, identifying trends and variances, and providing commentary and analysis where required.
  • Undertake yield management analysis (e.g., revenue per square meter, high/low-value clients, stock rotation)
  • Produce, report, and analyse Group performance on a micro level (e.g., marginal cost/revenue, contribution by client, agent, service)
  • Use Microsoft Office (Excel, Word, Outlook, PowerPoint) and Xero for invoice reconciliation

What can you expect in return?

  • Life insurance
  • The potential to qualify for a discretionary bonus
  • Statutory holiday entitlement
  • Pension

What's next? It's easy! Click “APPLY” now! We can't wait to hear from you!

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