Graduate Technical Consultant- January 2025 starts

Graduate Recruitment Bureau
Surrey
9 months ago
Applications closed

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Our client is a rapidly expanding management and technical consultancy specialising in helping government and public sectors deliver complex projects to challenging timescales. Areas of specialism include cyber security, mission-critical communications, analytics and agile processes.

Start dates are early 2025.

This hugely successful and rapidly expanding consultancy specialise in business and technical transformation, helping government and public sector clients deliver complex projects to challenging timescales.

Their areas of specialism include cyber-security and defence, data science, digital delivery and technical solutions delivery. As a graduate you will get the chance to work across projects in multiple areas – you must be happy to do this and not just want to focus on one area.

The Job:

Working as a consultant for this client you could find yourself involved in:

Developing strategies for future delivery of ICT services Supporting large ICT procurements, including developing procurement strategies and documentation and evaluating bids; Providing technical assurance that proposed solutions are fit for purpose; Explaining to risk owners and other stakeholders the causes, likelihood and potential business impacts of information risks throughout the information system life-cycle They work with some key areas of the government as well as, emergency services, law enforcement and criminal justice as well as health, education, energy and utilities sectors amongst others

They have several entry level consulting roles available to start throughout 2024. Their offices are based in Surrey, however they offer a very flexible approach to working from home and office; as well as working on client sites (which could be UK wide) when needed.

As you progress in your career you will be encouraged to hone your skills and take on responsibilities in areas such as:

Cyber-security and information risk assurance Technical, enterprise or security architecture solutions Data science Digital delivery Management consulting

About You: 

The client is keen to hire exceptional candidates with a science, engineering analytical, or technical degree You will be an excellent problem solver adopting a proactive approach to analysing problems and have a strong academic record You must have an interest in technology and the importance that it plays in today's business world which will be clearly demonstrated on your CV To be able to work for this firm you must be eligible to obtain UK Govt security clearance

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