eDiscovery Manager

London
7 months ago
Applications closed

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eDiscovery Manager -London

We are seeking an experienced e-Discovery Manager/or Sr Manager, the role is with a leading international firm with an excellent reputation going through a period of growth and development in their Digital Services offer.

The role requires

  • Complete understanding of the legal framework of eDiscovery (exchange protocols and best practices across the full EDRM model).

  • High level experience in consulting and using advanced eDiscovery tools (GenAI, Continuous Active Learning (CAL)/TAR workflows, clustering, and search term analysis).

  • An ability to manage multiple eDiscovery matters, managing priorities and identifying the most efficient workflow.

  • Ability to work in a team collaboratively in a fast paced, solutions focused environment to deadlines.

  • Strong verbal and written communication skills, specifically the ability communicate technical solutions to a non-technical audience clearly.

  • Attention to detail, and ability to develop quality assurance practices into work.

  • Experience leading teams and coaching junior team members.

  • Proven ability to troubleshoot technical and non-technical issues and assist in implementing clear and repeatable solutions.

  • Proficient with multiple document review platforms such as Relativity, Nuix Discover, and Reveal etc.

  • Relativity Custom Development experience is an advantage

  • Also desirable is a high levels of IT skills and competence with a knowledge of Cloud/M365 administration etc.

  • Experience in undertaking data scoping and data collection exercises in accordance with industry best practice, including related certifications would be beneficial.

  • Some knowledge of eDiscovery functionality in M365 and Google Workspace also helpful.

    #eDiscoveryjobs, #eDiscoveryjobsLondon, #eDiscoveryjobshybrid, #eDiscoverypmjobs, #eDiscoveryjobsLondon, #eDiscoveryManagerjobs, #eDiscoveryConsultantjobs, #eDiscoveryseniormanagerjobs, eDisclosurejobs

    About Brimstone Consulting: We specialise in finding highly qualified staff in the following areas: Forensic Accounting & Fraud - (AML/CTF, Investigation, CFE’s etc.); Legal and LegalTech (E-Discovery, Digital Forensics, EDRM); Big Data and Data Analytics- (MI/BI/CI); InfoSec and Cyber Crime; Audit; Accountancy and Finance; FinTech (Payments etc.); Risk - (Credit, Regulatory, Liquidity, Market, Analysts-SAS, SPSS etc.); Compliance/Corporate Governance; IT- (full SDLC- BA’s PM’s , Architects, Developers etc.);

    Brimstone Consulting acts as an employment agency (permanent) and as an employment business (temporary) - a free and confidential service to candidates. Brimstone Consulting is an equal opportunities employer. Due to time constraints we can only reply to applicants that match our clients’ specifications. We may store applications in our cloud storage facilities that may include dropbox.

    *end

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