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HEAD OF SYSTEMS INTEGRATION- AEROSPACE AND DEFENSE

GENTRIAN
London
7 months ago
Applications closed

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Level 4 Data Analyst Apprentice

Head of Data Engineering

HEAD OF SYSTEMS INTEGRATION- AEROSPACE AND DEFENSE:

Do not wait to apply after reading this description a high application volume is expected for this opportunity.Bullisher is a data-centric fintech solution provider in the aerospace and defense industry for institutional level investors, looking to disrupt and revolutionize a $3 trillion dollar industry. We spearhead an industry-leading Blackbox to facilitate and administer trade agreements pioneered by a vehicle, driven by our new generation benchmark delivering solutions through innovation with uncompromising agility.

JOB DESCRIPTION:

The oversight requires you to tune into in-depth quality of data aggregation techniques from time aggregation, spatial aggregation, to integrate mathematical operations on datasets by utilizing real-time information systems. This role involves processing workloads centrally and managing the explosion of endpoint devices, the volume of data analytics, machine learning, and automation. You will design an architecture to transport massive datasets into intelligent data insights for processing to control real-world infrastructures using complex networks in the Internet of Military Things (IOMT). Areas to cover will include: edge computing, infrastructure, and data intelligence.

MANDATE TO IMPROVE:

Graph partitioning algorithms, data intelligence at the edge, edge data privacy, edge computing architecture, and infrastructure on the edge. You will impose deadlines on real-time information systems producing control responses. Ensure our processes adhere to standards for secure systems design in conformity with

NIST SP 800-160.

As a newly created role, you’ll implement processes for data classification based on type and sensitivity.

ABOUT US:

Our common practice is to separate data in systems into three different levels of risk: low risk, moderate risk, and high risk. Areas to cover will include creating and labeling data classification metrics for risk management, compliance teams, and security teams.

AREAS TO IMPROVE:

Establish an administrative lifecycle hierarchic cryptographic key protocol based scheme, ensuring sensitive operational support and other related operations. Areas requiring attention will include key encryption, identity management, access control, and key management at the edge.

ENVIRONMENT:

This position will operate in the regulatory engineering division,

MULTIDOMAIN DEFENCE DOCK:

Employees must be legally authorized to work in the UK. Verification of employment eligibility will be required at the time of hire. Visa sponsorship is not available for this position.

QUALIFICATION, KEY REQUIREMENTS AND SKILLS SET:

PHD

in Mathematical Cryptography is essential.

10+ years in-depth working knowledge in Cognitive Systems Modeling and

AI

Strong programming skills in C++ and Rust

INTERVIEW PROCESS:

STAGE 1:

Cognitive Ability Test

STAGE 2:

Cognitive Assessment Screening with a 30+ years experienced psychologist

STAGE 3:

Pre-Screening (verification checks & security clearance)

STAGE 4:

Interview with the CEO, CTO & GC

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National AI Awards 2025

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