
LEAD INTERDISCIPLINARY COMPUTER ENGINEER/ELECTRONICS ENGINEER/COMPUTER SCIENTIST
Naval Air Systems CommandYou will serve as either a
LEAD COMPUTER
ENGINEER,
LEAD ELECTRONICS
ENGINEER, or a
LEAD COMPUTER SCIENTIST
in the
MISSION SYSTEMS
GROUP,
SOFTWARE ENGINEERING DEPARTMENT
of NAVAIRWARCENAC DIV.You will communicate to the team the software engineering assignments, projects, problems to be solved, actionable events, milestones, and deadlines and time frames for completion.You will prepare reports and maintain records of work accomplishments, as required, and coordinate the preparation, presentation and communication of work-related information to the leadership.You will represent the team in dealings with leadership to obtain resources (e.g., computer hardware and software, use of overtime or compensatory time), and secure information or decisions from leadership on major work problems or issues that arise.You will research, learn and apply a wide range of qualitative and/or quantitative methods to identify, assess, analyze and improve team effectiveness, efficiency and work products.You will rearchitect and/or evaluate legacy software code and legacy designs/architectures for improved performance and sustainability.
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