Senior MLOps Engineer

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Das ist der Job

You treat monitoring as a first-class deliverable, not an afterthought Reliability rigor.

Darum lohnt es sich

About the Role We're hiring a Senior MLOps Engineer to be the data team's owner of production ML operations. When there isn't active MLOps work, you'll also contribute to data engineering and machine learning work across the team.

About the Team The Data team today is five people: one data scientist, two data engineers, one data analyst, and one product manager. You'll be the senior MLOps voice inside the team and the operational bridge to HAL, the platform team that runs Clutch's agent runtime.

Expect tight feedback loops, real autonomy, and a team that values pragmatism over purity.

What You'll Do Within 3 months, you will: Take ownership of the ML serving API that serves NBA recommendations, partnering with the data engineer who's been building it, and harden it for low-latency production traffic Build the first repeatable deployment pipeline: model artifact → versioned, deployable, rollback-able production service, with infrastructure defined as code Stand up the monitoring foundation: latency/error/drift dashboards, alerting, and audit/trace visibility across models and agents Build a working relationship with HAL and become the data team's go-to on ML serving and reliability decisions Within 6 months, you will: Be the primary owner (with data engineer support) of the ML serving platform and deployment pipelines for NBA and our ML models Have at least one production model and one production agent fully instrumented — versioning, monitoring, alerting, and multi-tenant gating in place Define the data team's playbook for shipping a new ML model to production, end-to-end Drive architectural decisions across APIs, processing pipelines, distributed compute, storage, search, observability, cloud infrastructure, and model-serving workflows Mentor the data engineers on MLOps patterns so they can confidently support and extend the systems you own Within 9 months, you will: Operate as the technical lead within the data team for NBA production ML operations — the person other teams come to when they want to understand how Clutch ships and runs ML reliably Have measurably improved cost and latency Be shaping the data team's roadmap for the next generation of ML infrastructure, in partnership with the PM and data scientist Help us decide what to hire next as the team scales What You'll Bring Required 8+ years of experience in software, data, or ML engineering, with 4–5+ years running ML systems in production — you've taken models from prototype to production and own what happens after deploy Strong Python — most of the work (serving API, pipelines, tooling, data pipelines) is in Python, and you're comfortable in production codebases, not just notebooks.

Unforgettable Off-Sites: Twice a year, bond with colleagues in exciting destinations, fostering teamwork and fresh ideas. Home Office Setup: Create your ideal workspace with a dedicated budget for home office essentials.

You'll build the pipelines that take models from prototype to production, own the low-latency serving API behind our Next Best Action (NBA) engine, and stand up the monitoring, alerting, and reliability layer that keeps NBA models — and the LLM agents that consume them — healthy in production.

This is a builder's role at a builder's moment: NBA is going live, the production ML platform is being shaped now, and you'll define how Clutch ships and operates AI for years to come. We're small, ambitious, and shipping fast — ML models heading to production, a serving API being built, and AI agents in active development.

Some TypeScript is involved for integration with our agent runtime — you don't need to be an expert, comfort with a second language is enough CI/CD & deployment discipline. You build training and deploy pipelines that take a model artifact to a versioned, deployable, rollback-able production service, with automated testing and reproducible builds.

You've implemented CI/CD for ML and built and maintained CI/CD pipelines (GitHub Actions, Bamboo, GitLab CI, or similar) Infrastructure as code. You manage cloud infrastructure (AWS Lambda, ECS) with Terraform or equivalent — no click-ops, everything reviewable and reproducible Monitoring & observability discipline.

You instrument serving systems for latency, error rates, drift, and cost; you read audit rows and distributed traces; you set up alerting so regressions are caught before users feel them. You design for failure: structured error handling, graceful degradation, rollback paths, and runbooks.

You have a story about a production incident you handled and how you hardened the system afterward Experience building and operating low-latency production APIs (FastAPI, BentoML, or equivalent), with opinions on serving, batching, and caching Comfortable in AWS (Lambda especially), containers (Docker), and GitHub-based workflows Security & governance.

You ensure security and governance across systems: IAM, KMS, access policies, and Secrets Manager/SSM DevOps / infrastructure knowledge, plus data manipulation and feature engineering Solid understanding of ML concepts: models, pipelines, metrics, and supervised/unsupervised learning Integrate and optimize AI/ML services with the company's other systems You use AI tooling actively in your engineering workflow — not as a novelty, but as a default.

You'll be expected to demonstrate this during the technical evaluation Databricks, PySpark Desired Production agent observability: reading audit rows, distributed traces, per-tool latency and error metrics Cost and latency tradeoff intuition in production ML/agent systems — has measurably reduced per-inference or per-conversation cost or P95 latency on a live system Familiarity with an agent runtime framework (Vercel AI SDK, LangChain, LlamaIndex, or equivalent) from a serving/operations angle Multi-tenant agent gating experience Agentic AI operations experience: Agent Ops, LLM Ops Prior SaaS and/or FinTech experience What's In It For You?

Remote Flexibility: Enjoy the freedom of remote work from anywhere, balancing life and career seamlessly. Paid Time Off and National Holidays: Enjoy 20 PTO days yearly and the National Holidays for relaxation and rejuvenation.

Stock Options: Joining us means having a stake in our success, so you'll receive stock options as part of your compensation package. Work Trip Budget: Grow personally and professionally with a budget for work-related trips and co-working. #J-18808-Ljbffr

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