Analyst - Acoustics

Gold Group Ltd
High Wycombe
1 year ago
Applications closed

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Job Title:Analyst - Acoustics

Location:West London / High Wycombe / Dorset

Salary:£DOE - We are booking interviews for the New Year! Please call or email for a slot

Key Skills:Acoustics, Analysis, Modelling, Design, Support, Trials, Reporting, MATLAB, Python, Algorithm Development, Artificial Intelligence, Sonar, Radar

As part of our ongoing growth, we are seeking an experienced and motivated Analyst to join our dynamic team. This is an exciting opportunity for a talented professional to lead projects, mentor junior engineers, and shape the mechanical engineering strategies for high-profile projects.

As an Acoustics Analyst, you will be part of and take the lead in delivering technically complex solutions working closely with cross-functional teams, clients, and stakeholders to ensure the successful completion of projects from concept to delivery. Your expertise will be key in developing innovative solutions and maintaining the highest standards of quality, efficiency, and safety.

The Role:

So, what will you be doing as an Acoustics Analyst?

  • Conduct in-depth analysis of Sonar Systems using established methodologies.
  • Develop appropriate models and analysis based on performance requirements collaboratively defined with the system design team, aligning with customer specifications.
  • Model perf...

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