Legal Senior Associate - Data Governance

Anthony Collins
Birmingham
3 days ago
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Overview

Are you ready to provide senior IGDP advice and help shape our growing data protection offering?

As a legally qualified Senior Associate, you will deliver high‑quality IGDP guidance, build trusted client relationships, and support growth across our core sectors. Working closely with the Data Protection Legal Director and the wider GFC team, you will integrate quickly and guide junior colleagues as the workstream develops.

Responsibilities
  • Deliver senior IGDP advice and supervise junior colleagues.
  • Build strong client relationships through excellent service delivery.
  • Support development of the IGDP workstream with the Data Protection Legal Director.
  • Contribute to training and internal awareness of IGDP.
  • Assist in shaping and delivering growth‑focused plans.
Qualifications
  • Qualified legal professional.
  • Strong technical experience in IGDP.
  • Ability to mentor and guide junior team members.
  • Skilled at client relationship building.
  • Confident delivering high‑quality advice.
  • Proactive approach to business development.
Benefits
  • Birmingham, located roles, we have a newly refurbished office in the City centre with an on-site café and free use of Gym facilities
  • Hybrid working
  • 25 days holiday, 2 gift days at Christmas.
  • The opportunity to give back and have 3 days available for social purpose volunteering.
  • All IT equipment and support for effective home working
  • An excellent development training programme and opportunities to grow sector expertise

Anthony Collins Solicitors is a specialist law firm with a clear purpose – to improve lives, communities and society. For over 50 years, we have combined market-leading legal expertise with strong values and long-term relationships. We are proud to attract people who are motivated by our purpose and values, and who want to make a positive contribution to the communities and society we serve. Anthony Collins Solicitors is a committed Equal Opportunities employer and advocate of social mobility. We believe talent exists everywhere and are committed to providing fair access, opportunity and progression for all, regardless of background.


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