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uSoftware

smino is a fast‑growing SaaS platform used by architects, planners, and construction companies to manage projects from planning to handover. The product supports seamless communication, documentation, and task management across all stakeholders in a construction project. The platform is collaborative, mobile, and designed to streamline workflows in a traditionally complex industry.

Senior MLOps Engineer

Location

United States

Posted

71 days ago

Salary

0

Seniority

Senior

Job Description

Senior MLOps Engineer

uSoftware

Role Description We are looking for a Senior / Strong Middle MLOps Engineer to own ML infrastructure, model deployment, and data pipelines across the platform. This is a hands-on role at the intersection of MLOps, DevOps, and Data Engineering, focused on scaling AI systems and bringing models into stable, cost-efficient production. Responsibilities - Build and maintain scalable ML infrastructure for training and inference - Deploy and optimize ML models (batch and real-time) - Work with embeddings pipelines and vector databases - Optimize performance and cost of model deployments - Manage Kubernetes environments (EKS/GKE or similar) - Implement Infrastructure as Code (Terraform) - Build and maintain ETL/ELT pipelines - Optimize database performance (Postgres, large-scale data) - Improve CI/CD pipelines and deployment workflows - Implement monitoring and observability (Prometheus, Grafana) - Collaborate with AI engineers to productionize models Qualifications - 3–5+ years in MLOps / DevOps / Data Engineering - Strong Python skills - Hands-on Kubernetes experience - Experience with AWS or similar cloud - Experience deploying ML models to production - Solid CI/CD and Docker experience - Strong SQL and database experience (PostgreSQL) - Experience with Terraform or other IaC tools Requirements - Experience with large-scale inference or embeddings pipelines - Performance and cost optimization of ML systems - Experience with Airflow, MLFlow, Spark, or DBT - Experience with vector DBs and RAG systems - Exposure to LLM-based systems (LangChain, OpenAI, etc.) Benefits - Experience with AI-first or agent-based platforms - Experience with multi-tenant SaaS architectures - Multi-cloud experience (AWS + GCP) Key Competencies - Strong ownership and hands-on mindset - Ability to work across MLOps, DevOps, and Data domains - Focus on performance, scalability, and cost optimization - Comfortable working in fast-paced startup environment

Job Requirements

  • 3–5+ years in MLOps / DevOps / Data Engineering
  • Strong Python skills
  • Hands-on Kubernetes experience
  • Experience with AWS or similar cloud
  • Experience deploying ML models to production
  • Solid CI/CD and Docker experience
  • Strong SQL and database experience (PostgreSQL)
  • Experience with Terraform or other IaC tools
  • Experience with large-scale inference or embeddings pipelines
  • Performance and cost optimization of ML systems
  • Experience with Airflow, MLFlow, Spark, or DBT
  • Experience with vector DBs and RAG systems
  • Exposure to LLM-based systems (LangChain, OpenAI, etc.)

Benefits

  • Experience with AI-first or agent-based platforms
  • Experience with multi-tenant SaaS architectures
  • Multi-cloud experience (AWS + GCP)
  • Key Competencies
  • Strong ownership and hands-on mindset
  • Ability to work across MLOps, DevOps, and Data domains
  • Focus on performance, scalability, and cost optimization
  • Comfortable working in fast-paced startup environment

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