About Monte Carlo
Monte Carlo is the agent trust platform that unifies data and agent observability to monitor, troubleshoot, and improve production AI systems. As enterprises prepare to deploy thousands of agents across business-critical use cases, Monte Carlo provides the reliability infrastructure to support them along this AI transformation, from human-guided agents to fully autonomous operations. Founded in 2019 and backed by leading investors, Monte Carlo empowers data and AI teams to ship trusted AI at scale. Learn more at montecarlodata.com.
The RoleMarketing teams are drowning in manual workflows while AI tools proliferate — and almost no one is building the actual infrastructure to connect them. Monte Carlo is hiring an AI Marketing Manager to change that: a builder who designs, ships, and owns AI-powered agents and automations that run our marketing function. This role sits inside Marketing but operates like an engineer — you ship production systems, not PowerPoints.
What You'll DoDesign and ship AI agents that replace high-volume manual marketing workflows — lead routing, contract handling, follow-up sequences, and campaign execution
Rebuild marketing operations infrastructure with predictive lead scoring, lifecycle management, and agent-forward workflows that increase business efficiency
Wire together the marketing stack — Salesforce, HubSpot, Qualified, Clay, ZoomInfo, and our data warehouse — so the right data reaches the right system at the right time
Build personalization and testing tools that improve campaign performance at scale
Own the systems you ship: monitor them, build fallback logic, instrument for observability, iterate on results
Work directly with marketing leadership, RevOps, and sales to identify the highest-leverage problems and translate them into working software
LLM Engineering — You've built real systems on top of LLM APIs (Claude, OpenAI, or similar) — not just wrappers or chatbots, but agents wired into production workflows. You understand context management, tool use, prompt reliability, and when AI creates real leverage vs. when it adds noise.
B2B Marketing Stack — You have deep, hands-on familiarity with Salesforce, HubSpot, Qualified, Clay, and ZoomInfo. You know how data flows between these systems and what breaks when it doesn't.
Production Code — You write Python (or equivalent) to build and own custom integrations and automations. You don't hand work off to engineering — you ship it and maintain it yourself.
Systems Thinking — You treat the tools you build like products. That means fallback logic, monitoring, iteration loops, and knowing when to rebuild vs. patch.
Stakeholder Judgment — You can work across marketing, RevOps, and sales, absorb messy requirements, and turn them into clean, scoped builds. You push back when scope creep threatens quality.
This Is Not For You IfYou want to recommend AI tools, not build them
You expect engineering to own deployment and maintenance after you design
You need a lot of structure and hand-holding — this role is self-directed from day one
You haven't shipped anything with an LLM API beyond a side project
You're looking for a traditional marketing ops or marketing analytics role
Monte Carlo's marketing team has the mandate to build AI-powered infrastructure that most companies are still theorizing about — and the data platform to back it up
You'll have end-to-end ownership: problem identification, build, deployment, iteration — no handoffs, no committees
The company is the data observability category leader and actively expanding into AI agent reliability — this role sits at that intersection
Small, high-trust marketing team that moves fast and values output over process
Competitive compensation, equity, and a remote-first environment.
#LI-REMOTE
#BI-REMOTE
Come As You Are
Equality is a core tenet of Monte Carlo's culture. We are committed to building an inclusive global team that represents a variety of backgrounds, perspectives, beliefs, and experiences.
Monte Carlo is an equal-opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.
We are proud to be recognized for our world-class employee experience:
Monte Carlo Named 2025 Databricks Data Governance Partner of the Year
We were recently recognized as the #1 Data Observability Platform by G2 for the 4th consecutive quarter. See our G2 reviews here!
Monte Carlo Named to G2's Best Software Products of 2026
Monte Carlo was featured on Database Trends and Applications (DBTA’s) Trend-Setting Products for 2025!
We are super proud to be named the 2026 Best Place to Work by Built In!
Beware of Imposter Recruiters and Job Scams
All official communication from our recruiting team will come from an @montecarlodata.com email address.
We will never ask candidates to provide sensitive personal information (such as bank details, social security numbers, or payment) at any stage of the recruitment process.
We will never request payment for equipment, training, or application processing.
Our open positions are always listed on our official careers page: https://jobs.ashbyhq.com/montecarlodata.
If you are contacted by someone claiming to represent Monte Carlo but you’re unsure of their legitimacy, please reach out to us directly at [email protected] before sharing any personal information.
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