As a senior machine learning engineer, your responsibilities will include:
- Leading the transformation of data science into a standardized and rigorous discipline, bridging the gap between traditional data science and production systems.
- Driving the development of tools, processes, and pipelines to streamline experimentation, modeling, and analysis, ensuring these are accessible and efficient for the data science team.
- Using your knowledge of Python and machine learning frameworks (XGBoost, CatBoost, scikit-learn, TensorFlow, PyTorch, Keras, etc.) to architect and put machine learning models into production, including inference, monitoring, and alerting.
- Demonstrating exceptional leadership and communication skills, guiding and managing a team to achieve high-quality results.
- Creating user-friendly libraries and resources to facilitate ease of use for data scientists within the organization.
Your required experience includes:
- Advanced proficiency in Python and other relevant programming languages commonly used in machine learning.
- Proven experience in bringing machine learning models into production with tangible accomplishments in this domain.
- Expertise in a machine learning framework such as XGBoost, CatBoost, scikit-learn, TensorFlow, PyTorch, Keras, etc., demonstrating a deep understanding of their intricacies.
- Demonstrated leadership experience in a similar role or capacity, with a track record of successful team management.
- A history of developing accessible and user-friendly libraries or tools for data science and machine learning practitioners.
- Previous responsibilities involve bridging the gap between data science and production systems, showcasing your commitment to closing this critical divide.
As a person, you:
- Have a passion for standardization and rigor in data science, and a relentless drive to elevate the field within the organization.
- Thrive in a leadership role, taking ownership of projects and making data-driven decisions.
- Communicate effectively with team members, fostering collaboration and knowledge sharing.
- Exhibit a proactive and adaptable work style, staying up-to-date with evolving machine learning technologies and methods to maintain the organization's competitive edge.
- Are obsessed with making data science work easy while maintaining good engineering practices.