Software Engineer

Glasgow
10 months ago
Applications closed

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Software Engineer

Glasgow

Permanent - Up to £55,000

  • Bonus & Benefits

    We are looking for a Software Engineer who will develop high-quality products and solutions.

    Key Responsibilities:



Design, develop, and optimise software in C, C++, and Assembly

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Ensure quality through unit testing and secure coding practices

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Use tools like Xcode, TestFlight, and Visual Studio for development and deployment

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Reverse engineer and debug mobile apps to identify vulnerabilities

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Implement security features to prevent reverse engineering, tampering, and unauthorised access

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Analyse mobile app vulnerabilities and propose solutions

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Support technical teams with escalated issues

Minimum Qualifications:

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Bachelors degree in computer science or related field

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Ability to work with moderate supervision

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Strong problem-solving and communication skills

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Understanding of software development processes and architectural patterns

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Awareness of business requirements and their impact on software

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Cybersecurity certifications (e.g., CISSP, CEH, OSCP) are a plus

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Knowledge of AI and machine learning in security is a plus

Technical Skills:

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Strong proficiency in C++, C, and Assembly

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Experience with secure coding practices and mobile app security

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Familiarity with reverse engineering and debugging tools (e.g., IDA Pro, Ghidra, Frida) is a plus

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Experience with Android development (e.g., Android Studio, Kotlin) is a plus

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