Consultant / Senior Consultant, Data Analytics

Pembroke Communications
City of London
1 month ago
Applications closed

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This is a unique opportunity for a motivated Consultant / Senior Consultant to join the fast-growing Data Analytics practice of Teneo, the global CEO advisory firm. Our team provides data analytics and modelling services across the full breadth of Teneo’s service offering; helping FTSE 100 and Fortune 500 firms, key public-sector organisations, and leading private equity houses solve some of their most complex and challenging business problems.

The successful candidate will be a driven data analytics professional who is seeking to join an exciting new team which offers unparalleled opportunities for personal growth and promotion. They should exhibit an entrepreneurial spirit with a genuine desire to provide quality, independent advice and insight to Teneo’s blue chip client base.

Key Responsibilities

As a Data Analytics Consultant / Senior Consultant, you will have the opportunity to:

  • Solve complex client problems using a variety of data analytics technologies and techniques including but not limited to: data processing and engineering, statistical analysis, data visualisation, machine learning, simulation and optimisation techniques
  • Develop solid and insightful analytics products using data engineering and data science techniques across a variety of industries and business problems
  • Lead the development of analytical work packages directly with Manager, Director or Managing Director support
  • Support the development of complex data analytics tools and analysis’ across the whole analytics project life cycle: Scoping, Design, Develop, Test and Deliver
  • Work within a team of data analytics experts and collaborating closely with a range of industry leading specialists across different teams
  • Preparing of client presentations of conclusions and analytical results under the guidance of a Manager, Director or Managing Director
  • Preparing training materials and training clients in the use of the analytical tools developed
  • Build on client relationships and actively coach junior team members.

Key Skills & Experience

  • Data analytics experience in a consulting or corporate environment; preferably gained at a Strategy or Management Consulting firm, Big 4 or corporate internal consulting function
  • Strong problem solving skills with hands-on experience of using data analytics to solve complex, real world business problems
  • Strong technical expertise across a number of technologies and techniques, covering at least 3 of the following
  • Data Manipulation and ETL
  • Data visualisation technology such as PowerBi, Tableau or Qlik
  • Statistical analysis, AI and machine learning techniques
  • Simulation and mathematical optimisation techniques
  • Hands-on coding experience preferably with SQL, Python or R
  • Cloud development expertise, preferably Microsoft Azure or AWS
  • Ambitious, with a desire to succeed in an entrepreneurial culture
  • Ability to work under minimal supervision, plan work and managing own time
  • Ability to communicate complex ideas and data analytics approaches effectively, both verbally and in writing
  • Ability to handle day-to-day liaison with client team, empathising with client issues and escalating concerns where appropriate

What can we offer you?

New joiners are supported by a week-long induction programme, and continuous improvement is achieved through a structured and tailored programme that suits your career development.

As well as this we offer a whole host of benefits and reward including.

  • 28 days holiday
  • Discretionary Bonus Scheme
  • Cash benefits allowance
  • Extensive investment in personal development & learning
  • Enhanced maternity and paternity leave (depending on length of service) and shared parental leave
  • Private medical insurance
  • Group Income protection
  • Life assurance
  • Cycle to work schemes
  • Regular social, cultural and charitable activities

About Teneo

Teneo is the global CEO advisory firm. We partner with our clients globally to do great things for a better future.

Drawing upon our global team and expansive network of senior advisors, we provide advisory services across our five business segments on a stand-alone or fully integrated basis to help our clients solve complex business challenges. Our clients include a significant number of the Fortune 100 and FTSE 100, as well as other corporations, financial institutions, and organizations.

Our full range of advisory services includes strategic communications, investor relations, financial transactions and restructuring, management consulting, physical and cyber risk, organizational design, board and executive search, geopolitics and government affairs, corporate governance, ESG and DE&I.

The firm has more than 1,600 employees located in 40+ offices around the world.

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