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KnowBe4 has developed a platform that provides its clients with security awareness training and simulated phishing. As an employer, the company strives to build
Senior Software Engineer – AI Engineering
Location
United States
Posted
159 days ago
Salary
$140K - $180K / year
Seniority
Senior
Job Description
Senior Software Engineer – AI Engineering
KnowBe4
• Design and deliver AI-driven systems that power features used by millions of users • Build scalable AI systems that connect models, data, and products • Turn research prototypes into reliable, production-ready services • Build pipelines and serving layers that power adaptive, real-time features • Collaborate with other engineering teams to ensure performance and reliability • Create reusable SDKs and libraries that accelerate AI adoption
Job Requirements
- 5+ years of experience building and operating large-scale, cloud-native or SaaS systems
- Proficiency in Python and modern API frameworks such as FastAPI or Flask
- Hands-on experience with CI/CD pipelines (we use GitLab) and infrastructure-as-code (we use Terraform)
- Practical experience delivering AI/ML features in production
- Commitment to engineering quality
Benefits
- company-wide bonuses based on monthly sales targets
- employee referral bonuses
- adoption assistance
- tuition reimbursement
- certification reimbursement
- certification completion bonuses
- modern, high-tech, and fun work environment
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