Data Quality & BI Analyst

MSC Mediterranean Shipping Company
Ipswich
1 week ago
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We are looking for a Data Quality Analyst to join our Fleet, Network & Terminal Efficiency team in Ipswich, supporting Global HQ during a major digital transformation. You will carry out data quality investigations, analysis and reporting across global systems, working closely with IT and business teams to ensure trusted, scalable platforms.

How you will help us and what you can expect

Data Quality & Investigation:

  • Investigate technical data quality issues across multiple BI products and source systems
  • Analyse data anomalies and inconsistencies, working with IT and business teams to identify root causes
  • Support the development and maintenance of data quality monitoring tools and dashboards
  • Proactively identify recurring issues and improvement opportunities

BI & Data Analysis

  • Support the development and enhancement of Power BI reports, with a strong focus on data validation and quality
  • Perform ad-hoc data analysis using Power BI and Excel to support investigations and decision-making
  • Assist with report testing, validation and release activities
  • Contribute to the consolidation, redesign and optimisation of existing BI reports as-well as creation of new ones

Requirements & Stakeholder Support

  • Support requirements gathering and refinement with business users and IT teams
  • Assist with translating business questions into analytical or reporting solutions
  • Provide structured input into specifications, testing scenarios, and feature validation
  • Support documentation of BI products, data sources, usage guidelines

Operational Support

  • Assist with recurring operational tasks, report checks, technical monitoring and data quality follow-up actions
  • Support training sessions and user assistance during global rollouts
  • Maintain clear, accurate and up-to-date documentation for reports, data sources and processes
Skills and experience you’ll bring to us
  • Data Quality & Investigation: Strong analytical and investigative mindset with a logical, systems-thinking approach. Proven ability to analyse and identify data anomalies, inconsistencies and root causes across complex datasets, interconnected processes and multiple source systems.
  • Power BI / Excel: Proficient in Excel (Formulas / Pivot Tables), with advanced user experience in Power BI. Basic experienced building BI reports is desirable.
  • Collaboration: Ability to work cross-functionally with business stakeholders and IT teams, supporting investigations, requirements, testing and related activities.
  • Communication: Strong written and verbal communication skills, with the ability to document findings, support training and explain data related topics to non-technical users.
  • Shipping Industry Knowledge: Ideally 2+ years of experience in the shipping or logistics industry, with an understanding of related business processes and MSC systems.
What we offer
  • Private Health Care for everyone from day 1 (non-contractual)
  • Life Assurance – 4x salary
  • 22 days + a day to take on Christmas Eve or New Year’s Eve
  • Free parking
  • Discounted gym membership
  • Cycle to work scheme
  • Flu vaccines and eye care vouchers
  • Buy or sell holiday scheme
  • Christmas club saving
  • MSC Cruises friends and family discount
  • Full induction day and training provided
  • Learning and development opportunities
  • Dress for the day policy/modern office environment
WHAT WORKING FOR US MEANS

We pride ourselves on being the employer of choice within our industry. We are a family company and our family values feed into everything we do. We are passionate about what we do, we challenge ourselves to achieve excellence and we are tenacious in overcoming obstacles. Through working together with passion and enthusiasm, we provide a unique experience for our customers.

We are in continuous evolution. We strive for the most innovative solutions to embrace change, always respecting safety, and the environment.

Our mission is to provide our people with personal fulfilment and enrichment. We are committed to sharing our knowledge, delivering training and support; enabling our people’s professional growth. We ensure fair opportunities through providing long-term career development, embracing diversity, and valuing all cultures. Diversity bringing strengths through different viewpoints, experiences & approaches.


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