Senior Data Analytics Analyst

McCabe & Barton
London
1 month ago
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Overview

This range is provided by McCabe & Barton. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Compensation

Base pay range: Up to £90k base + bonus + benefits

Location & Employment

London, United Kingdom. Permanent, 4 days in office.

About the role

Our client is one of the global investment management companies. They are looking for a Senior Data & Analytics Analyst to join the teams in London.

Primary Responsibilities
  • Partner with business units to understand investment management data needs and deliver impactful analytics solutions.
  • Collect, analyze, and interpret large datasets using SQL and advanced data analysis techniques.
  • Design and develop dashboards and reports in Tableau and Power BI to communicate insights clearly to stakeholders.
  • Create data-driven recommendations to enhance portfolio management, risk assessment, and operational efficiency.
Technical Agility
  • Independently analyze business processes, identify improvement opportunities, and propose data-driven solutions.
  • Establish and promote best practices in SQL development, dashboard design, and analytics workflows.
  • Ensure data integrity, accuracy, and compliance with industry standards in investment management.
  • Lead initiatives to improve data literacy across teams, including training on analytics tools and visualization best practices.
  • Manage analytics roadmaps and prioritize projects that deliver high business impact.
Skills & Qualifications
  • Technical Skills: Tableau, Power BI, SQL, advanced Excel, data modeling, data transformation, statistical analysis.
  • Domain Expertise: deep understanding of the asset management industry, investment operations business model, and investment process, data, and systems flow.
  • Able to help shape a vision for transforming existing capabilities leveraging understanding of industry trends, understanding of the IO business and technology tools to advance organizational goals.
  • Proficient in using various data, technologies and analytical tools. Stays updated with the emerging technological trends and best practices to drive business transformation.
  • Strong problem-solving, strategic thinking, and data storytelling abilities.
  • Excellent interpersonal skills to influence and engage stakeholders at all levels.
  • Proven ability to work in agile, fast-paced environments.
Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Analyst
Industries
  • Investment Management, Investment Banking, and Financial Services


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