* Salário: R$ 11.000 a R$ 20.000 por mês (estimado)
* O valor exibido é uma estimativa calculada com base em dados públicos e referências do mercado. Não garantimos que este seja o salário oferecido para esta vaga específica.
Área: Tecnologia da Informação
Nível: Senior
Company:
Confidencial (Apenas para Cadastrados)Description:
What can you expect?
- Be part of a small, high-impact team working at the intersection of data engineering and data science.
- Design and deliver scalable data pipelines, production ML models, and data products that drive measurable business outcomes.
- Work with semi- and unstructured data, including LLMs and NLP techniques.
- Collaborate closely with product managers, senior engineers, and business stakeholders.
What is in it for you?
- Opportunity for technical and career growth by working end-to-end on ML and data projects.
- Hands-on experience with ELT/ETL pipelines, modeling, deployment, and production monitoring (MLOps).
- Exposure to cloud platforms and modern ML frameworks.
- Chance to deliver data products that influence business decisions and results.
We will count on you to:
- Implement and maintain scalable ELT/ETL data pipelines.
- Contribute to the development, validation, and deployment of ML models with a focus on reproducible training and CI/CD.
- Apply MLOps best practices for model packaging, deployment, and monitoring.
- Build and maintain data models and feature stores to ensure data integrity and quality.
- Deliver data products (APIs, dashboards, notebooks) that translate models and analytics into actionable outcomes.
- Evaluate performance, scalability, and cost-efficiency of data and ML systems in cloud environments.
- Define and maintain operational standards, including logging, alerting, and documentation.
- Collaborate with stakeholders to define requirements and success metrics.
What you need to have:
- Professional experience in data engineering, data science, or ML engineering (including internships).
- Degree in Computer Science, Engineering, Statistics, Mathematics, or a related quantitative field — or equivalent experience.
- Proficiency in Python and SQL.
- Familiarity with unit, integration, and data quality testing.
- Knowledge of data transformation frameworks (e.g., dbt).
- Experience with core ML frameworks (e.g., scikit-learn, PyTorch, transformers).
- Exposure to or strong interest in MLOps concepts (CI/CD for ML, model deployment, production monitoring).
- Interest in NLP and text-based ML tools (regular expressions, NLTK, spaCy).
What makes you stand out:
- Experience with cloud data platforms (Databricks, Snowflake, BigQuery).
- Demonstrated experience deploying ML models to production.
- Prior experience on a data team in technology, consulting, or startup environments.
- Domain knowledge or strong interest in insurance/reinsurance analytics and risk products.
- Familiarity with BI tools (Looker, Tableau, Power BI).
- Experience with data-labeling frameworks (e.g., LabelStudio).
- Understanding of ETL/ELT patterns and REST APIs.
