Local: Rio de Janeiro - Rio de Janeiro, Brazil, TELECOMMUTE, Rio de Janeiro, State of Rio de Janeiro, Brazil Formato: Remoto At Zyte , we make the world's web data accessible to everyone.
Local
Rio de Janeiro - RJ
Remoto
Responsabilidades
- Develop and deploy ML models for anomaly detection, schema drift, and content validation
- Build and improve data quality pipelines leveraging modern data and MLOps tools
- Design and optimize embeddings and GenAI models to enhance data consistency
- Collaborate with engineers to integrate AI systems into production workflows
- Conduct experiments, evaluate performance, and iterate for continuous improvement
- Stay up to date on AI/ML and GenAI research to guide innovation within Zyte
Requisitos
- Required 3+ years of experience in Machine Learning / Data Science / AI Engineering
- Strong Python skills and experience with ML frameworks (PyTorch, TensorFlow, scikit-learn)
- Experience with data validation, anomaly detection, or data quality systems
- Familiarity with data pipelines (Airflow, Spark, or similar)
- Understanding of model evaluation, metrics, and deployment best practices
- Excellent problem-solving, communication, and collaboration skills
- Preferred Experience with LangChain, LlamaIndex, or GenAI model orchestration
- Familiarity with data labeling tools and active learning approaches
- Contributions to open-source or public ML projects
- Experience working in a remote, cross-functional team environment
Diferenciais
- Benefícios 35 days of paid time off Health & wellness support Inclusive and supportive team environment Attend conferences and meet with team members from across the globe.
- Work with cutting-edge open source technologies and tools
Sobre a empresa
At Zyte, we make the world's web data accessible to everyone.
Our technology powers data extraction at scale, helping businesses and researchers unlock the full potential of the web.
We're a remote-first, multicultural team of engineers, data scientists, and innovators who believe in curiosity, collaboration, and continuous learning.
Benefícios
- 35 dias de folga remunerada
- Suporte à saúde e bem-estar
- Ambiente de equipe inclusivo e de apoio
- Participar de conferências e conhecer membros da equipe de todo o mundo