In This Role, You Will
- Apply statistical and machine learning methods to operationally meaningful problems.
- Build and refine digital twins and predictive models of physical assets, processes, and operational workflows.
- Work across hybrid data estates that span on-prem operational systems and modern cloud platforms.
- Use modern ML frameworks (PyTorch, TensorFlow) where they earn their place, and simpler tools where they don't.
- Run rigorous, reproducible experimentation using tools like MLflow.
- Work with large-scale structured and unstructured datasets in Snowflake environments
- Develop and maintain scalable data pipelines, ETL/ELT workflows, and ML infrastructure
- Design systems for storing, processing, and managing ML outputs, embeddings, and AI-generated data
- Collaborate with cross-functional teams to translate business problems into scalable data solutions
Required Skills & Expertise
- Hands-on experience in Data Science, Machine Learning, or ML Engineering roles in Big Data environments
- Strong applied statistics: experimental design, inference, uncertainty quantification, and a working sense of when a result is real versus an artifact of the data.
- Strong Python and SQL fluency, including comfort with modern distributed SQL engines (e.g., Trino, Spark SQL, or similar).
- Comfort working across hybrid data environments spanning on-prem operational sources and modern cloud platforms (AWS, Azure, or GCP).
- Experience with the full ML lifecycle: ingestion, transformation, feature engineering, training, evaluation, deployment, and monitoring.
- Practical experience with modern ML frameworks (PyTorch or TensorFlow) and experiment tracking tooling (MLflow or comparable).
- Strong problem-solving skills and ability to work in fast-paced startup environments
- Experience working with Snowflake in production data environments.
Nice to Have
- Experience delivering models as containerized services like Docker and Kubernetes
- Direct experience with digital twins or applied modeling of physical / operational systems.
- Time-series, sensor, or streaming data at production scale.
- Open lakehouse formats (Iceberg, Delta, Hudi) and table-format-aware workflows.
- Causal inference, A/B testing, or sequential evaluation
- Edge or hybrid model deployment patterns.
- Experience with Databricks or comparable platforms.
UP.Labs Summary
Skills Required
- Hands-on experience in Data Science, Machine Learning, or ML Engineering roles in Big Data environments
- Strong applied statistics: experimental design, inference, uncertainty quantification
- Strong Python and SQL fluency
- Experience with the full ML lifecycle: ingestion, transformation, feature engineering, training, evaluation, deployment, and monitoring
- Practical experience with modern ML frameworks (PyTorch or TensorFlow)
What We Do
We work with global corporate partners to identify the most pressing challenges that they, and broader society, face. Inspired by these complex problems, we launch startups built by proven entrepreneurs, product leaders and technologists that use their agility and talent to develop transformative solutions. After these companies have matured and proven market fit, our corporate partners are able to acquire them, reaping strategic value while enriching their culture and core business. We believe this to be the shortest road to a faster, cleaner, safer, and more accessible future.
Why Work With Us
We launch and innovate 6-8 portfolio organizations a year where no day is the same.
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