Data Analyst and Continuous Improvement Lead

Core-Asset Consulting Ltd
Edinburgh
5 days ago
Create job alert
Overview

Core-Asset Consulting is supporting a financial services firm in the recruitment of a Continuous Improvement Lead to join their team in Edinburgh.

Essential Skills / Experience
  • Experience working in Continuous Improvement, Operational Excellence or a similar role.
  • Strong process mapping and analytical problem-solving skills.
  • Experience facilitating improvement workshops and structured improvement activities.
  • Ability to interpret data and translate insights into actionable improvements.
  • Strong communication and stakeholder engagement skills.
  • Analytical mindset with a passion for driving operational improvements.
Core Responsibilities
  • Analyse end-to-end customer and operational journeys to identify inefficiencies, delays and improvement opportunities.
  • Lead structured improvement activities including Lean workshops, journey mapping and root cause analysis.
  • Develop improvement plans and ensure initiatives are monitored and sustained.
  • Maintain clear and accurate process documentation, standards and controls.
  • Assess barriers and operational bottlenecks to support prioritisation of improvement activities.
  • Translate insight into clear and practical recommendations for teams and leadership.
  • Work closely with data specialists to validate issues and measure performance outcomes.
  • Support teams through change, helping embed new processes and ways of working.
  • Build strong relationships with stakeholders and present insights.
Benefits
  • A highly competitive salary
  • Wider Benefits package

Core-Asset Consulting is an equal opportunities recruiter, and we welcome applications from everyone irrespective of age, disability, gender, gender identity or expression, race, colour, ethnic or national origin, sexual orientation, religion or belief, marital/civil partner status or pregnancy.

Job reference: (16254)

To apply for this vacancy applicants must be eligible to work in the UK in accordance with the Immigration, Asylum and Nationality Act 2006.

At Core-Asset, we\'re committed to protecting and respecting your privacy.Our privacy statement explains when and why we collect personal information about people who engage with our services, how we use it, the conditions under which we may disclose it to others, and how we keep it secure.We may change this policy from time to time, so please check this policy occasionally to ensure that you\'re happy with any changes.

By engaging with us (either by applying for a job we\'re advertising, registering through our website, or getting in touch with our business) you\'re agreeing to be bound by this policy.

Core-Asset Consulting is committed to protecting the privacy of our candidates, clients and website users.For further information, please refer to our full Privacy Statement available on our website http://www.core-asset.co.uk/about-core-asset/privacy-statement

Core-Asset Consulting offers specialist recruitment services to asset management, accounting & finance, asset servicing, legal and the wider financial services sector in Scotland.

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