Data Strategy Consulting - Senior Manager - Financial Services Advisory and Technology Solution[...]

Miryco Consultants Ltd
London
1 month ago
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Data Strategy Consulting – Senior Manager, Financial Services

Miryco Consultants is working with a leading financial services advisory and technology solutions firm. They are looking to add a Senior Manager to their Data & AI advisory practice. You will partner with asset managers, banks and insurers to deliver strategic data solutions.

Responsibilities
  • Work directly with the Director of Data & AI to build out data platform capabilities.
  • Lead key client engagements to consolidate and grow position in the market.
  • Assume a leadership role, mentor, and build out the team.
  • Deliver complex data transformation projects.
  • Collaborate with business development teams.
Experience
  • Demonstrable experience in data platforms, data engineering and data strategy.
  • Significant consulting experience within financial services.
  • Strong leadership skills; management experience preferable.
  • Experience implementing modern data stack solutions (eg. Snowflake, Databricks, dbt, Airflow, cloud-native tooling).

Location: London

Hybrid policy: 4 days in office

For sponsorship information, please note that the client is unable to offer sponsorship for this opportunity. If you are not contacted within five working days of submitting your application, you may not be shortlisted. We will be in touch should there be other opportunities suitable to your skills.

For similar roles, please visit miryco.com.


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