Software Engineer I

Verimatrix
Glasgow
3 weeks ago
Applications closed

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As a Software Engineer, you build the products we sell to customers.

You are a problem solver able to turn requirements or designs into an operational, high-quality product.

At this level, you primarily focus on a single product area or set of features, with potential involvement in cross-team collaborations.

You welcome input and feedback from peers and other roles in the organization and accept change as inevitable.

You handle ambiguous requirements with moderate guidance and seek help or clarification when needed.  Daily Software Engineer responsibilities include:  Design and develop software for Verimatrix’s security products  Collaborate on software for other teams’ products as needed  Ensure quality by creating unit tests, following Verimatrix’s Secure Development Lifecycle  Develop and optimize code in C, C++, Assembly  Utilize tools such as Xcode, TestFlight, Visual Studio, and other development and deployment platforms  Contribute to reverse engineering and debugging of mobile apps to identify vulnerabilities and test protection solutions  Implement features to prevent reverse engineering, tampering, and unauthorized access using techniques like obfuscation, encryption, and code hardening  Analyze mobile app vulnerabilities and propose security solutions  Provide help to customer technical support in case of an escalation  Document all aspects of applications you are responsible for  Share technical knowledge and skills throughout the department  Proactively suggest changes to products, processes, or internal tools to improve performance, security, and operability, and to reduce costs  Raise technical risks to engineering management  Mentor junior engineers on a limited basis  Participate in interviews for new software and automation engineers  Contribute to software designs and specifications under the guidance of senior engineers or architects  Stay up-to-date with emerging threats, security vulnerabilities, and industry trends  Minimum qualifications  Bachelor’s degree in computer science or any engineering area with exposure to software engineering  Ability to execute tasks with moderate supervision  Ability to interpret design inputs into an actionable execution plan  Strong communication skills, including documentation  Solid understanding of software development processes  Familiarity with architectural software patterns  Understanding of business requirements and how they affect software  Certifications in cybersecurity (e.g., CISSP, CEH, OSCP) are a plus  Knowledge of machine learning or AI techniques applied to security solutions is a plus  Technical Skills  Strong proficiency in C++ (or C), and Assembly programming languages  Demonstrated understanding of mobile app security principles and secure coding practices  Familiarity with reverse engineering and debugging tools such as IDA Pro, Ghidra, or Frida are a plus  Good analytical and problem-solving skills  Experience in Android development and associated tools (e.g., Android Studio, Kotlin) is a plus  By submitting this form, I agree to the processing of my personal data for the purpose of processing my job application and replying to my request, in compliance with Verimatrix’s privacy notice Powered by JazzHR

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