Compensation
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Job description
Compa is a venture-backed AI startup revolutionizing the future of compensation.
In a dynamic job market with hiring challenges accountability and the rise of AI companies need the best data to stay ahead of industry changes competition and costs. Compa has developed the premier real-time compensation data platform delivering top-tier compensation intelligence to leading enterprise teams.
Compa is a compensation intelligence company built to augment enterprise compensation teams in the era of AI.
Our customers include the world’s biggest companies: NVIDIA Stripe DoorDash Open AI TMobile Moderna Workday Ulta Target and more.
Locations:
Compa headquarters are located in Irvine California with growing sites in Denver Colorado and San Francisco California. We’re a collaborative curious and driven team that values transparency ownership and continuous learning and prioritizing in person work where possible.
The Role:
As an Applied AI Engineer on Compa’s newly formed Applied AI team you will own and lead projects across Compa’s product suite internal operations and be part of a team that takes a commercialized ML service from 0 to 1.
In this role you will:
Ship ML features and services that enable the world’s best companies to make smarter pay decisions
Lead ML-based projects from end-to-end: scoping and planning data collection and feature engineering model training and deployment backend implementation and online experimentation
Prototype ML solutions in close collaboration with product and engineering teams iterating rapidly based on customer feedback and business requirements
Build Compa’s ML infrastructure from the ground up: develop models establish deployment pipelines and manage production systems that serve enterprise customers as well as internal operations
Drive technical excellence and establish ML best practices across the team
Minimum Qualifications:
4+ years of industry experience building and deploying ML models to solve real-world problems and deliver measurable business value
Hands-on experience with classification embeddings natural language processing and large language models
Proficiency in Python SQL Git and common ML frameworks (scikit-learn XGBoost PyTorch or similar)
Gumption — experience working at early-stage startups
Preferred Qualifications:
Experience with NLP techniques such as sentence transformers or semantic similarity
Experience with model serving frameworks (FastAPI or similar)
Familiarity with experiment tracking tools (MLflow or similar)
Experience with data pipeline technologies (Prefect or similar)
Experience with cloud platforms (AWS GCP Azure etc.)
Comfortable with Docker and basic CI/CD workflows
Top Skills
What We Do
Compa is a venture-backed SaaS startup revolutionizing the future of compensation. In a dynamic job market with hiring challenges accountability and the rise of AI companies need the best data to stay ahead of industry changes competition and costs. Compa has developed the premier real-time compensation data platform delivering top-tier compensation intelligence to leading enterprise teams. Compa is a compensation intelligence company built to augment enterprise compensation teams in the era of AI. Our customers include the world’s biggest companies: Apple NVIDIA Tesla Mastercard T-Mobile Sanofi Moderna Gilead Sciences and more.
Why Work With Us
Compa is reimagining how companies win with pay—building tools that make compensation more fair transparent and data-driven. You’ll join a mission-driven remote-first team that values ownership low ego and real impact. If you want to shape the future of work this is the place.
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Compa Offices
Hybrid Workspace
Employees engage in a combination of remote and on-site work.
Compa headquarters are located in Irvine California with growing sites in Denver Colorado and San Francisco California. We’re a collaborative curious and driven team that values transparency ownership and continuous learning.
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