We’re looking for a Staff Applied ML Engineer to join Procore’s AI & Frontier Models organization. In this role, you’ll act as the hands‑on technical leader for applied machine learning systems that extract spatial intelligence from construction drawings, BIM, and project data. The primary goal of this role is to design and deliver reliable, scalable ML systems that reduce design risk, improve constructability, and expand the range of spatial problems Procore teams can solve.
As a Staff Applied ML Engineer, you’ll partner with ML engineers, software engineers, product managers, and construction domain experts to lead day‑to‑day technical execution for spatial intelligence initiatives. Use your expertise in applied machine learning, software architecture, and system design to translate complex, ambiguous problems into high‑quality production systems. This is an opportunity to remain deeply hands‑on while shaping technical direction and raising the engineering bar for the team—join us and help define how spatial intelligence shows up in real construction workflows. Apply today.
This position reports into an Engineering Manager within Procore AI and will be based in our San Francisco office. We’re looking for someone to join us immediately.
Act as the day‑to‑day technical lead for applied ML projects within the Frontier Models & Spatial Intelligence team.
Design, implement, and iterate on machine learning systems that analyze 2D drawings and BIM data to detect clashes, inconsistencies, and constructability risks.
Lead hands‑on development of model training, evaluation, and inference pipelines in close collaboration with other engineers.
Drive proof‑of‑concept and exploratory work to reduce ambiguity and rapidly validate technical approaches.
Ensure the long‑term health, performance, and maintainability of the team’s ML codebases and supporting systems.
Set and uphold engineering quality standards through code reviews, mentorship, and technical guidance.
Collaborate with partner teams to ensure spatial intelligence systems integrate cleanly into Procore’s broader platform and workflows.
Proactively identify technical risks, architectural gaps, or operational concerns and address or escalate them appropriately.
Bachelor’s, Master’s, or PhD in Computer Science, Engineering, Machine Learning, or a related field, or equivalent practical experience.
8+ years of professional experience building production software systems, including applied machine learning components.
Strong experience designing, training, and deploying ML models using Python and modern ML frameworks.
Solid foundation in computer science fundamentals, including data structures, algorithms, and system design.
Experience working with complex or high‑dimensional data such as images, documents, or structured technical datasets.
Demonstrated ability to lead technically through direct contribution, mentorship, and architectural decision‑making.
Strong system‑level thinking, with an understanding of reliability, scalability, cost, and operational constraints.
Clear communication skills and the ability to explain technical decisions and tradeoffs to cross‑functional stakeholders.
Nice to have experience with technologies such as:
ML & Data: PyTorch, TensorFlow, NumPy, Pandas, HuggingFace, self‑supervised or multimodal learning workflows
Computer Vision & Spatial Data: OpenCV, document understanding pipelines, geometric or graph‑based representations, 2D/3D spatial reasoning
Data & Training Infrastructure: Distributed training, experiment tracking, dataset versioning, large‑scale annotation workflows
Backend & Systems: Python‑based services, REST or gRPC APIs, batch and streaming data pipelines
Cloud & DevOps: Containerized ML services, Kubernetes, cloud compute and storage (AWS, GCP, or equivalent)
Quality & Operations: Model evaluation frameworks, monitoring and alerting, performance and cost optimization in production
Base Pay Range:
227,332.00 - 312,581.50 USD AnnualThis role may also be eligible for Equity Compensation and/or Bonus Incentive Compensation. Procore is committed to offering competitive, fair, and commensurate compensation. Actual compensation will be based on a candidate’s job-related skills, experience, education or training, and location.
Procore will consider for employment all qualified applicants, including those with arrest or conviction records, in accordance with the requirements of applicable federal, state, and local laws, including the City of Los Angeles’ Fair Chance Initiative for Hiring Ordinance, the Los Angeles County Fair Chance Ordinance for Employers, and the California Fair Chance Act.
A criminal history may have a direct, adverse, and negative relationship on the following job duties, potentially resulting in the withdrawal of the conditional offer of employment: 1. appropriately managing, accessing, and handling confidential information including proprietary and trade secret information, as well as accessing Procore's information technology systems and platforms; 2. interacting with and occasionally having unsupervised contact with internal/external customers, stakeholders, and/or colleagues; and 3. exercising sound judgment.
Procore Technologies is building the software that builds the world. We provide cloud-based construction management software that helps clients more efficiently build skyscrapers, hospitals, retail centers, airports, housing complexes, and more. At Procore, we have worked hard to create and maintain a culture where you can own your work and are encouraged and given resources to try new ideas. Check us out on Glassdoor to see what others are saying about working at Procore.
We are an equal-opportunity employer and welcome builders of all backgrounds. We thrive in a dynamic and inclusive environment. We do not tolerate discrimination against candidates or employees on the basis of gender, sex, national origin, civil status, family status, sexual orientation, religion, age, disability, race, traveler community, status as a protected veteran or any other classification protected by law.
Alternative methods of applying for employment are available to individuals unable to submit an application through this site because of a disability. Contact our People Crew here to discuss reasonable accommodations.
At Procore, we believe in supporting our employees to help them thrive both personally and professionally. We offer a comprehensive range of benefits and perks for full-time employees, including generous paid time off and leave options, healthcare coverage, and career development programs. Discover more about our offerings and how we empower our global team to succeed.
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