Skip to main content
UP.Labs

Senior Data Scientist - Remote

6w

UP.Labs

Guadalajara, MX · Full-time · MXN 720,000 – MXN 1,200,000

About this role

UPLabs is a dynamic venture studio dedicated to building innovative startup companies from the ground up. We're seeking an applied data scientist who ships data products as an engineer to help launch the next wave of AI-enabled ventures. This is a hands-on role for someone who can take a problem from data to deployed, monitored data product.

In this role you’ll work with large-scale datasets to build scalable machine learning systems and intelligent data platforms. You’ll help define how data is stored, processed, referenced, and utilized across AI workflows and operational systems while contributing to architectural decisions around modern data infrastructure.

You’ll collaborate closely with engineering, operations, and product teams to build production-grade ML solutions. This is a highly hands-on role with strong ownership and technical influence across hybrid data estates that span on-prem operational systems and modern cloud platforms.

Apply statistical and machine learning methods to operationally meaningful problems while building digital twins and predictive models of physical assets and workflows. Run rigorous experimentation using tools like MLflow and develop scalable data pipelines in Snowflake environments.

Requirements

  • 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).
  • Experience working with Snowflake in production data environments.

Responsibilities

  • 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.