SoSafe logo
SoSafe

Turn on your human firewall!

Staff IT Engineer (Automation & AI-native transformation)

QA Automation EngineerQA Automation EngineerFull TimeRemoteLeadTeam 201-500H1B No SponsorCompany SiteLinkedIn

Location

Germany

Posted

8 days ago

Salary

0

Seniority

Lead

No structured requirement data.

Job Description

Staff IT Engineer (Automation & AI-native transformation)

SoSafe

Role Description SoSafe has the ambition to become the leading human risk management provider in Europe. Our award-winning awareness platform triggers behavioural change by providing effective and engaging training and simulations on cybersecurity and data protection. Cybercrime is costing the world >$10 trillion annually and growing by 15% p.a. - we invite you to be part of the solution! Are you a visionary Staff Engineer, excited about pushing the boundaries of automation and artificial intelligence deployed across a whole company? We're seeking an exceptional candidate to join our IT Engineering team to build the foundation for our AI-native future, in one of the industry's fastest growing SaaS scale-ups. Here's how you'll make a difference: - Test-bed: Architect, build and iterate a toolchain fusing traditional automation tools (n8n, etc) with spec-driven design and agentic working, test out on IT and Security. - Iterate: Advocate, mentor and enable other early adopter teams to use our platforms, get value, provide feedback, iterate the platform. - Standardise: Build self-sustaining cultural practices across the organisation, enable whole departments, scale the platform for everyone. - Drive the evolution of IT operations towards an all-encompassing *-as-code infrastructure model through hands-on architecture and design. - Contribute to the IT/Sec Operating System as we move wholesale to build-not-buy teams. - Mentor and level up the existing IT engineering team, then whole departments, serving as a technical guide to accelerate skills transfer and foster a strong, collaborative engineering culture. - Champion and advocate for our shared automation and AI platforms and methodologies, driving cross-departmental adoption to break down operational silos. Qualifications - Demonstrated experience operating at a Staff or Principal Engineer level, ideally within an established, successful, cloud-native hypergrowth SaaS environment. - Hands-on builder and systems thinker. - A background that includes hands-on coding, ideally in a platform or SRE team. IT experience is secondary, we need builders who can help others build better. - A track record of successful AI-native adoption, showcasing how you've successfully moved workflows beyond experimental prompts into robust, production-grade automated workflows or agents. - Deep technical mastery of at least some of: infrastructure-as-code, modern CI/CD systems (e.g., GitHub Actions) and enterprise-grade workflow orchestration (e.g., n8n, Zapier). - A pragmatic engineering mindset: You understand that while agentic working is fast and flexible, it brings significant utilization costs; you know how to design hybrid architectures that balance speed with financial efficiency. - Great leadership and communication skills: The biggest challenge is always people, not technology. You treat internal teams as your customers and excel at explaining complex technical concepts to non-technical "citizen coders" and executive stakeholders alike. Requirements - A mandate from the CEO to massively accelerate our AI-native transformation in every role, actually solving the AI-related questions that we’re all asking, at speed and scale. - A company comfortable with rapid change and iterative development - We love experiments that fail, as long as we learn from them. - Collaborative and highly supportive IT and Security team around you - We prize a safe and enjoyable working environment, good work-life balance and solid mental health above all other things. - Close relationships with super-smart, highly engaged peers across G&A, GTM and Product Engineering. Benefits - Work/Life balance: Flexible hours, 33 vacation days. - Wellbeing and financial support: Access to Open Up, corporate discounts. - Connection & community: Virtual events, collaborative team activities, and opportunities for local meet-ups. - And the list goes on: Tech equipment, referral bonuses, dog-friendly HQ. Company Description At SoSafe, we’re on a mission to make the digital world safer by addressing the human factor in cybersecurity. As one of the fastest-growing security awareness scale-ups worldwide, we leverage behavioural science and data-driven learning to empower people against cyber threats. Our Human Risk Management approach helps organisations turn their employees into their strongest line of defence. Backed by leading VCs like Highland Europe and Global Founders Capital, we’re rapidly expanding across the globe. We’re looking for team players who want to drive meaningful change in cybersecurity, take ownership of their work, and grow with us. If you thrive in a vibrant, purpose-driven environment that values innovation, diversity, and collaboration, then this is the place for you!

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