Posted:
5/15/2026, 10:31:30 AM
Location(s):
California, United States ⋅ San Francisco, California, United States
Experience Level(s):
Junior ⋅ Mid Level ⋅ Senior
Field(s):
AI & Machine Learning ⋅ Software Engineering
Workplace Type:
Remote
Camus Energy builds software solutions that help new load and generation connect to the grid faster—without sacrificing reliability.
As electricity demand accelerates and clean energy scales, traditional interconnection processes are becoming the bottleneck. Utilities and developers face growing queues, long timelines, and costly upgrades that slow progress across the grid.
Camus enables flexible grid connections that allow new load and generation to connect sooner by planning for and operating within real system constraints. Our platform bridges the gap between grid operators and large load developers, providing a view of time-varying grid capacity for any given new interconnection point.
We combine high-reliability software experience from companies like Google and Meta with deep power systems expertise across the utility sector. If you’re excited to work at the intersection of infrastructure, software, and climate, we’d love to hear from you.
We're looking for a Machine Learning Engineer to own and advance the forecasting and predictive modeling capabilities at the heart of the Camus platform. This is an individual contributor role with real technical depth and product influence; you'll be responsible for the full lifecycle of ML model development, from exploratory analysis and model design through to production deployment and monitoring.
This is not a role where the problem statements are handed to you. You'll work directly with Camus’ teams and external stakeholders to understand their data, define the right questions, and translate messy real-world signals into reliable, production-grade data driven analytics. You'll bring that ground-truth perspective back into product decisions, and work closely within the Engineering team to integrate ML models into our planning and operational workflows.
The forecasting and predictive modeling problems we're solving often don't have off-the-shelf answers. We work as a tight, technical team that moves with urgency but builds with the discipline that production-grade software demands. If you want to do the most technically interesting ML work in the clean energy space while directly shaping how it becomes a product, this is the role.
The expected base salary for this role is $180,000 - $230,000 annually, depending on experience, skills, and qualifications.
Website: https://www.camus.energy/
Headquarter Location: San Francisco, California, United States
Employee Count: 11-50
Year Founded: 2019
IPO Status: Private
Last Funding Type: Series A
Industries: CleanTech ⋅ Cloud Computing ⋅ Data Integration ⋅ Electrical Distribution ⋅ Energy ⋅ Power Grid ⋅ Renewable Energy ⋅ SaaS ⋅ Software