Data Analyst

Proxima
Cardiff
3 weeks ago
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As part of the global leader Bain & Company, Proxima is an award-winning management consultancy specialising in procurement and supply chain. With vibrant offices in London, Leeds, Cardiff, Düsseldorf, Chicago, Singapore, Hong Kong, Kuala Lumpur, Sydney and Melbourne, we offer a dynamic hybrid working model that blends time on client sites, at home, and in your local office.


We are experiencing growth across all categories, but specifically within Advanced Analytics. This would be an exciting time to join a team of exceptional people driven to influencing and shaping Analytics outcomes for our clients.


Responsibilities of the Data Analyst

  • Support the analysis of commercial bids as part of a procurement tender process
  • Analyse spend data
  • Utilise client data to identify cost-saving and optimisation opportunities
  • Assist consultants in identifying cost-saving and optimisation opportunities in procurement
  • Collate supplier responses through scenario-based tools and scorecards for consultants to compare cost-savings available
  • Create data visualisation tools to support clients, automate and solve business problems and processes
  • Other pertinent data activities, such as data collation and transformation, creation of data visualisation for PowerPoint decks, and optimisation of files

Criteria for the Data Analyst position

  • Must have a minimum of 6 months experience in a similar role
  • Knowledge of Excel and comfortable with Pivot Tables, Charts, Conditional Formatting and advanced formulae
  • Strong problem-solving and analytical skills
  • Strong attention to detail
  • Creative flair and ability to visualise data
  • Work well under pressure and manage ambiguous requirements
  • Confident communication skills
  • Skilled at organisation and managing several tasks at once
  • Willingness to take constructive feedback and learnAdaptable to changing business demands
  • Accountable and take pride in their output

Benefits of becoming a Data Analyst at Proxima

  • Hybrid working model
  • Career progression
  • Mentorship program
  • Continuous training
  • Great company culture
  • Work with a variety of clients & industries
  • Be part of a fast expanding, global company

And more!


If you believe yourself to be a great fit for this Data Analyst role, please apply!


Our culture at Proxima is unique and is what makes us stand out. We are a fun and inclusive company, combining a fast-paced professional environment with a flat structure. Our culture is collaborative and open, where we welcome and support each other’s professional growth. You would have the ability to shape and quickly grow your career at Proxima, and we actively progress and promote our people throughout the year. Our people are the driving force of our success and rapid growth. We offer a competitive salary, with an Employee Profit Share bonus and numerous benefits. We also offer flexible working and offer support towards personal learning and development course(s) or training.


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