Robust financial controls made easy
ML Engineer
Location
Serbia
Posted
9 days ago
Salary
0
Seniority
Senior
Job Description
ML Engineer
ApprovalMax
• Investigate why documents fail at population scale • Own and evolve the accuracy measurement framework • Design fixes for pipeline logic errors • Collaborate with AI team on model architecture and ML best practices • Build an embedding-based entity matching service and an OCR correction layer • Set up ML pipeline orchestration and MLOps practices
Job Requirements
- 3+ years of experience in ML engineering or forensic data investigation
- Strong SQL (PostgreSQL, complex analytical queries) and Python (pandas, NumPy, scikit-learn) skills
- Hands-on experience with structured document processing, OCR output correction
- Understanding of how OCR engines work
- Ability to work collaboratively with cross-functional teams
- Comfortable reading and tracing C# / .NET code
- Nice to have: Financial document or accounting domain knowledge, experience with managed OCR services, experience building LLM-as-judge or LLM-as-corrector evaluation systems
Benefits
- 26 days of paid time off
- Remote office assistance
- Service-years recognition financial reward
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