Legal Data Analytics Manager

London
3 months ago
Applications closed

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Legal Data Analytics Manager
Location: London
Permanent role.
Primary skills
Data statistics & Analysis; Client Dashboards;To extract Data, consolidate and analyse it; Create automation solutions including AI solutions; Quantitative analytics (e.g. offer calculations for claims); Analysis for Decision making; Modelling of quantum exposure; Record Data breach analytics
The Data Analytics Manager will focus on building internal client relationships and on the delivery of day-to-day matter work in the data analytics team.
Management of people ensuring the appropriate resourcing of matters, training, reporting and you will work closely with the Senior Manager, Data Analytics.
The Data Analytics Manager will be responsible for providing expertise, advising on any issues within the team or with cases and taking the lead on resolving them, also supporting more junior members of the team. The role will ensure the overall provision of high quality services and will play a key part through effective consultancy in building the reputation of the Data Analytics Team, both internally and externally to clients.
Responsibilities:
With the Head of Data Analytics you’ll be part of the design, development and ongoing evolution of dashboards. Tracking of client metrics etc.
Supporting to help build relationships with partners and clients in London, selling the data analytics offerings.
Translate data into presentable content, for matter insights reporting.
Incorporating Gen AI based solutions into deliverables where appropriate.
Converting data into different formats to suit matter delivery e.g. log file format conversion for data breach analytics.
Create Legal Transformation dashboards for stakeholders and ensuring they understand there functionality.
Manipulating and presenting numerical data in formats that are easily understood by a broad range of stakeholders, providing narratives to back up the numbers and there meanings.
Qualifications, Skills & Experience

  • Demonstrates analytical reasoning, interpretation and evaluation of complex information, with the ability to exercise judgment and resolve issues independently.
  • A strategic, analytical mindset to solve complex problems by developing insights from data
  • Advanced technical experience building and maintaining tools and reports
  • Ability to design impactful slide decks and dashboards
  • Excellent storytelling skills to communicate insights to key stakeholders within the business
  • Advanced Excel, PowerBI, or similar
  • Foundational knowledge of data querying languages such as SQL, Python
  • Familiarity with SharePoint, Power Automate and MS Fabric
  • Tertiary study in a related area (Data Science, Economics or Mathematics) beneficial
  • Advanced MS Office suite skills (ie Word, Excel, Visio, PowerPoint)
  • High level of attention to detail, excellent organisational skills and ability to prioritise
  • Ability to work effectively within an agile, activity based environment
    #dataanalytics #Legaldataanalytics #PowerBI #SQL #ClientDashboards #Legaldashboards #Quant
    #DataAnalyticsjosbs #DataAnalyticsLondon #London #Belfast
    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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