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Inteligência Artificial para Acessibilidade Digital
Senior Full Stack MLOps
Location
Brazil
Posted
130 days ago
Salary
0
Seniority
Senior
Job Description
Senior Full Stack MLOps
Hand Talk
• Design, develop, and maintain robust backend applications and services to serve ML inference (FastAPI, Flask, or Node.js); • Build and optimize pipelines for real-time or batch inference processing; • Monitor and optimize model performance in production, ensuring low latency and high availability; • Design distributed systems capable of supporting intensive Machine Learning workloads; • Work closely with data scientists and ML engineers to translate research models into production-ready services; • Identify and integrate emerging technologies to improve system performance and the end-user experience.
Job Requirements
- Proven experience deploying ML models to production environments with a focus on accuracy and scalability;
- Experience with PyTorch, ONNX, and OpenVINO for model optimization and execution;
- Knowledge of Docker, Kubernetes, and CI/CD pipeline integration;
- Proven experience with AWS, consuming REST/GraphQL APIs, and data processing strategies (text, image, and metadata);
- Familiarity with Infrastructure as Code (Terraform) and standards for production rollout;
- Proficiency in Python, JavaScript/TypeScript, and frameworks such as React and Node.js;
- Advanced conversational English.
Benefits
- CLT employment contract: Your job security and all statutory rights guaranteed from day one.
- Caju Benefits Card (R$ 1,160.00): Flexibility to use your balance as you wish: meals, groceries, home office, culture, and mobility.
- Remote work — work from anywhere in Brazil! Enjoy flexibility and comfort.
- SulAmérica Health Plan
- SulAmérica Dental Plan
- SulAmérica Life Insurance
- Online doctor consultations via Conexa Saúde – telemedicine at your fingertips.
- Wellhub: Resources to help you be your best at work.
- Extended year-end break: Celebrate the holidays with extra time to recharge with family and friends.
- Birthday day off: A special day off during your birthday month.
- Extended parental leave: Support and quality time for growing your family.
- Continuous Professional Development: Access leading platforms such as LinkedIn Learning, plus an annual allowance for courses and training in your field.
- University partnerships: Support through discounts and giveaways.
- Libras training (Brazilian Sign Language): Learn an important language for our community.
- English learning support: We encourage language learning through partner programs.
- Work equipment provided as part of your onboarding kit.
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