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Senior Machine Learning Engineer

Indeed
Full-time
Onsite
No experience limit
No degree limit
79Q22222+22
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Description

Job Summary: We are seeking Senior Machine Learning Engineers to develop and orchestrate ML pipelines, automate model training, and monitor models in a dynamic environment. Key Highlights: 1. Remote work (anywhere office) 2. Continuous learning and challenges in large-scale projects 3. Values diversity and personal connections We are passionate about technology, creativity, and challenges. If you enjoy challenges, constant learning, and value personal connections, join us! \# We value diversity and believe it is fundamental to innovation and delivering value to our clients. All our positions are open to everyone, with or without disabilities, regardless of age, gender, sexual orientation, ethnicity, religion, or any other characteristic. If you identify with this role, come join our team! **WHAT ARE WE LOOKING FOR?** We seek a **Senior Machine Learning Engineer** who wants to work with us in a relaxed and dynamic environment, with continuous learning while developing large-scale projects alongside major national and international clients. We have offices in Maringá, São Paulo, and Chicago (USA), but our operations are fully remote—we prefer to call it *anywhere office*. **WHAT WILL THIS PROFESSIONAL DO?** * **Develop and orchestrate Machine Learning pipelines**, using Vertex AI Pipelines, Kubeflow, Airflow, Prefect, or similar tools. * **Version models and datasets**, ensuring reproducibility and traceability of experiments (MLflow, DVC, Vertex AI Model Registry). * **Automate model training, validation, and deployment** in production environments, including batch and online inference. * **Monitor models in production**, detecting drift, performance degradation, and latency issues. * Implement and manage **CI/CD for pipelines and models**, integrating Cloud Build, GitHub Actions, or GitLab CI. * **Prepare and transform data (feature engineering)** to feed ML models. * **Apply statistical modeling and ML algorithms**, both supervised and unsupervised, according to the problem. * **Evaluate models** using appropriate metrics and propose improvements. * Develop and maintain scalable **data pipelines**, using Dataflow, Apache Beam, or Spark. * Work with **Google Cloud Platform services**, especially Vertex AI and Dataflow, to train, serve, and monitor models. **WHAT IS REQUIRED FOR THIS POSITION?** * Experience with **ML pipeline orchestration** (Vertex AI Pipelines, Kubeflow, Airflow, Prefect, or similar). * **Model and dataset versioning** (MLflow, Vertex AI Model Registry, DVC). * **Automation** of model training, validation, and **deployment**. * **Production model monitoring** (drift, performance, latency). * Experience with **CI/CD tools** (Cloud Build, GitHub Actions, GitLab CI). * Knowledge of **feature engineering**. * Understanding of **statistical modeling** and supervised/unsupervised ML. * Knowledge of **model evaluation metrics**. * Experience with **model deployment**, both batch and online. * Experience with **data pipelines**, using Dataflow, Apache Beam, or Apache Spark. * Hands-on experience with **Google Cloud Platform**, especially Vertex AI and Dataflow. **WHAT WOULD BE A PLUS?** * Experience with **Kubernetes** and **Docker** for model deployment. * Knowledge of **monitoring and observability** (Prometheus, Grafana). * **Google Cloud certifications** (ML Engineer or Data Engineer). * Experience with **Infrastructure as Code (Terraform)**. * Experience with **Generative AI (LLMs, RAG).** **HIRING PROCESS STEPS:** * Application submission * Cultural fit interview * Technical interview * Client interview * Offer

Source:  indeed View original post
João Silva
Indeed · HR

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