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EXTRACTTA | Informações que geram Soluções
Machine Learning Engineer – Senior
Location
Brazil
Posted
124 days ago
Salary
0
Seniority
Senior
Job Description
Machine Learning Engineer – Senior
Extractta
• Design and implement ML pipelines (training, validation, deployment, and inference) with a focus on scalability and cost. • Deploy models to production using MLOps practices (versioning, reproducibility, automation, and performance/drift monitoring). • Build and maintain inference services (batch and/or real-time), APIs, and integrations with internal systems. • Collaborate with data scientists, analysts, and product teams to translate business needs into solutions. • Ensure quality (testing, code reviews, documentation), security, and engineering best practices. • Track operational and outcome metrics (SLA, latency, cost, accuracy, business impact).
Job Requirements
- Hands-on experience deploying models to production (end-to-end).
- Strong programming skills (primarily Python) and software engineering fundamentals (APIs, testing, clean code).
- Applied ML knowledge (classification, regression, ranking, NLP/LLMs when applicable) and best practices in validation.
- Experience with data pipelines (SQL and/or orchestration) and integration with data platforms.
- Experience with cloud and managed services (primarily AWS) and containers (Docker).
- Familiarity with observability (logs, metrics, and tracing) and model monitoring.
- Experience with Kubernetes and scalable inference architectures.
- MLOps tools (e.g., MLflow, feature stores, model registry) and CI/CD.
- Experience with NLP/LLMs, RAG, and evaluation/observability of model-driven applications.
- Knowledge of data/AI governance (LGPD, audit trails, explainability when required).
- Experience in the financial sector (risk, fraud, credit, customer behavior).
Benefits
- Meal allowance and/or food voucher
- Agreement with Sesi and Sesc, providing access to health, wellness, and leisure services
- Partnerships with educational institutions offering exclusive discounts on courses and programs
- Opportunities for career growth within the company and participation in strategic projects
- Opportunity to work at a rapidly expanding company in the market.
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