Melissa Slater

Lead Analyst at Experian Consumer Services
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Location
Manchester Area, United Kingdom, UK

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Tony Pearson

Melissa is an absolute joy to work with and has the capability to analyse, diagnose and fix problems very quickly. Very cool under pressure, she combines this analytical excellence with a wonderful work ethic and an always positive attitude. At the 2014 FIFA World Cup, Melissa made her job seem very easy when it was anything but that. Rudyard Kipling's 'If' comes to mind when alongside her. I would recommend her without hesitation for any position she was interested in.

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Experience

    • United States
    • Technology, Information and Internet
    • 700 & Above Employee
    • Lead Analyst
      • Oct 2021 - Present

    • Senior Data Modeling Analyst
      • Dec 2018 - Oct 2021

    • United Kingdom
    • Advertising Services
    • 1 - 100 Employee
    • Senior Data Analyst
      • Sep 2017 - Dec 2018

      - Testing of association measures (Substitution, Yules Q) and hierarchical cluster linkage methods to develop customer decision hierarchies within product categories - Store clustering using K-means, including data preparation using dimension reduction/principal component analysis and Random Forests - Customer insight analysis to inform range and space decisions including developing methodology for defining minimal credible range within store Software: R, SQL, Excel - Testing of association measures (Substitution, Yules Q) and hierarchical cluster linkage methods to develop customer decision hierarchies within product categories - Store clustering using K-means, including data preparation using dimension reduction/principal component analysis and Random Forests - Customer insight analysis to inform range and space decisions including developing methodology for defining minimal credible range within store Software: R, SQL, Excel

    • Canada
    • Capital Markets
    • 200 - 300 Employee
    • Graduate Analyst
      • Sep 2015 - Sep 2017
    • Senior Quota Analyst
      • Sep 2012 - Sep 2014
    • Wellness and Fitness Services
    • 1 - 100 Employee
    • Data Analyst
      • Dec 2011 - Jul 2012

Education

  • Manchester Business School
    Master of Science (M.Sc.), Business Analytics: Operational Research and Risk Analysis
    2014 - 2015
  • The University of Manchester
    2:1, Mathematics, Management
    2007 - 2010

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