Senior Machine Learning Engineer - Geospatial & ML Framework Parity

blue bear capital • United State
Remote
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AI Summary

Evolve ML capabilities, close feature gaps vs. common frameworks, ensure predictable behavior at scale. Collaborate cross-functionally to anticipate customer needs.

Key Highlights
Close feature gaps vs. common ML frameworks
Ensure predictable ML behavior at scale
Collaborate with product, architects, and customer-facing teams
Key Responsibilities
Design and implement ML features for production customer workflows
Identify and close feature and behavior gaps vs. common ML frameworks
Proactively evaluate semantic differences, defaults, and edge cases
Partner with teams to anticipate upcoming customer needs and gaps
Investigate and resolve issues where ML behavior diverges from user expectations
Contribute to other ML initiatives and improve existing ML code performance
Technical Skills Required
Machine Learning Python Geospatial Analytics
Benefits & Perks
USD 165k-190k / year
Nice to Have
Experience comparing or validating behavior across multiple ML frameworks
Familiarity with large-scale data systems or analytical databases
Understanding of spherical geometry and its application to geospatial analytics

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Senior Software Engineer - Machine Learning & Geospatial

Ocient

Software Engineering, Data Science

United States

  • Remote

USD 165k-190k / year

Posted on Jun 21, 2026

Apply now

Job Title: Senior Software Engineer - Machine Learning & Geospatial Location: 100% Remote (US Based Only) We cannot sponsor or transfer any visas, of any kind, at this time* Hiring Manager: Senior Engineering Manager Estimated salary range: $165,000 to $190,000 The salary offered for this position will be based on a candidate’s experience and skill demonstrated during interviews and other evaluations Job Description: We’re looking for a Senior Software Engineer to help evolve our Machine Learning capabilities, with a particular focus on closing feature gaps and behavioral differences relative to widely used ML frameworks (e.g., Spark ML, scikit-learn), while continuing to deliver new ML functionality. This role is ideal for someone who enjoys working across model behavior, system design, and customer expectations — ensuring that ML features behave predictably, perform well at scale, and align with how users expect industry-standard tools to work. Responsibilities: Design and implement machine learning features used in production customer workflows. Help identify and close feature and behavior gaps between our ML capabilities and common frameworks (e.g., Spark ML, scikit-learn). Proactively evaluate semantic differences, defaults, and edge cases that could surprise customers. Partner with product, architects, and customer-facing teams to anticipate upcoming customer needs and gaps. Investigate and resolve issues where ML behavior diverges from user expectations (e.g., model output, metrics, configuration semantics). Contribute to other ML initiatives including new models, metrics, performance improvements, and infrastructure work. Analyze and improve the performance of existing ML code, balancing correctness and stability with customer facing latency. Write clear design docs, tests, and documentation to make behavior explicit and prevent regressions. Ideal Qualifications: 5+ years of experience building production software systems. Strong proficiency in at least one backend or systems language (e.g., C++, Java, Scala). Experience implementing or integrating machine learning models in production. Familiarity with ML libraries or frameworks such as Spark ML, scikit-learn, XGBoost, or similar. Strong instincts around correctness, edge cases, and behavioral consistency. Ability to work across teams and codebases to turn ambiguous requirements into concrete solutions. An Exceptional Candidate Will Have: Experience comparing or validating behavior across multiple ML frameworks. Experience with large-scale data systems or analytical databases. Familiarity with distributed execution, performance tuning, or numerical stability. Understanding of spherical geometry and its application to geospatial analytics. What success looks like: Customers see fewer surprises when using ML features compared to familiar frameworks. ML behavior, defaults, and limitations are well-documented and intentional. Feature gaps are identified early, not discovered under customer pressure. You deliver across parity work and broader ML initiatives, balancing short-term needs with long-term quality.

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