DevOps, MLOps & Security Engineering Lead

KlearNow.aiCalifornia, CA
$140,000 - $170,000Hybrid

About The Position

KlearNow is building AI-native technology that transforms how global trade moves. In this role, you will lead the strategy and delivery of DevOps, MLOps, and security engineering — protecting our infrastructure, software supply chain, and AI systems while enabling the team to ship with speed and confidence. You will manage a cross-functional team of security and DevOps engineers, partner closely with Product and Engineering leadership, and embed a security-first culture across everything we build.

Requirements

  • A proven engineering leader with hands-on depth in DevSecOps, capable of growing and inspiring a high-performing team
  • Strong hands-on knowledge of AWS and GCP — including compute, networking, IAM, managed Kubernetes (EKS/GKE), cloud-native security tooling, and cost-efficient resource management across both platforms
  • Deep experience managing AI infrastructure — GPU/TPU provisioning, distributed training environments, model serving platforms (e.g. SageMaker, Vertex AI), and inference optimization at scale
  • Strong knowledge of cloud security, infrastructure security, and modern CI/CD platforms across hybrid, multi-cloud environments
  • Proficient in scripting and development — Python, Bash, Go, or Java
  • A confident communicator who can translate priorities clearly across developers, stakeholders, and executives
  • Background in Computer Science, Information Security, or equivalent practical experience

Nice To Haves

  • Familiarity with AI-assisted security — threat detection, anomaly detection, intelligent vulnerability triage — is a strong advantage

Responsibilities

  • Own the design and governance of CI/CD pipelines — including automated testing, SAST/DAST scanning, dependency checks, and secrets detection.
  • Lead infrastructure-as-code and container orchestration practices, and drive automation initiatives that reduce manual effort and improve consistency at scale.
  • Apply engineering rigor to ML training pipelines, model serving infrastructure, and data supply chains.
  • Design and manage the AI infrastructure layer — including GPU/compute resource provisioning, model registry operations, experiment tracking, and inference scaling — across AWS and GCP.
  • Ensure AI systems are built, deployed, and monitored to the same reliability and security standards as core product services.
  • Lead end-to-end security across cloud, infrastructure, and product — spanning cloud posture management, API protection, runtime security, network segmentation, and secrets management across AWS and GCP environments.
  • Define and enforce security policies, standards, and best practices that balance delivery speed with a strong compliance posture.
  • Anticipate operational risks, drive preventative measures, and lead rapid incident response across environments.
  • Translate security and engineering requirements into actionable roadmaps.
  • Define and track KPIs that demonstrate delivery effectiveness and inform prioritization.
  • Act as a trusted security advisor to engineering squads and leadership alike.

Benefits

  • Comprehensive medical, dental, and vision insurance
  • Equity participation
  • Flexible time off
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