Director – Data Science Operations
Posted on 12/8/2022
INACTIVE
Tempus

1,001-5,000 employees

AI-driven precision medicine through clinical and molecular data analysis
Company Overview
Tempus Labs, Inc. is a leader in precision medicine, leveraging artificial intelligence to analyze vast clinical and molecular data, enabling physicians to deliver personalized, data-driven care. The company's advanced machine learning platform and unique solution sets facilitate the discovery, development, and delivery of optimized therapeutic options for patients. With a focus on extensive molecular profiling, Tempus has developed a robust pan-cancer tumor organoid platform and validated a liquid biopsy assay, demonstrating their commitment to transforming personalized patient care and their position at the forefront of the healthcare industry.
Data & Analytics
AI & Machine Learning

Company Stage

Series G

Total Funding

$1.3B

Founded

2015

Headquarters

Chicago, Illinois

Growth & Insights
Headcount

6 month growth

7%

1 year growth

27%

2 year growth

51%
Locations
Chicago, IL, USA
Experience Level
Entry
Junior
Mid
Senior
Expert
Desired Skills
Python
Jupyter
Data Science
R
Git
BigQuery
SQL
Docker
Pandas
NumPy
Linux/Unix
CategoriesNew
AI & Machine Learning
Data & Analytics
Requirements
  • MS/PhD degree in a quantitative discipline (e.g. statistical genetics, cancer genetics, machine learning, bioinformatics, statistics, computational biology, biomedical informatics, or similar)
  • 5+ years of supervisory experience
  • 5+ years of related experience. Experience with genomic (e.g., DNA-seq, RNA-seq) or clinical (survival data, trials, real world evidence, claims) data, and familiarity with methods for time to event analysis (Kaplan-Meier, Cox regression) desirable
  • Strong programming skills and experience with the python clinical+molecular data science stack: Pandas, NumPy, SciPy, Scikit-learn, lifelines, and Jupyter. Experience with R is desirable
  • Strong database and SQL skills (BigQuery, dbt)
  • Experience with engineering best practices for research computing (docker, git, code review, workflow managers, linux, cloud computing)
  • Demonstrated experience in building pragmatic solutions and long-term scalable designs
  • Thrive in a fast-paced environment and able to shift priorities seamlessly
  • Strong attention to detail, specifically in the realm of clinical data models, data quality, consistency, etc
  • Excellent communication skills with demonstrated ability to influence stakeholders and collaborators from a broad range of backgrounds (medical/scientific/engineering, etc.)
  • Demonstrated ability to successfully navigate ambiguity and complexity
  • Team player mindset and ability to work in an interdisciplinary team
  • Goal orientation, self motivation, and drive to make a positive impact in healthcare
Responsibilities
  • Lead initiatives around benchmarking and improving data quality that impact AI/DS
  • Serve as VOC on cross-functional teams and develop strong relationships with Alliance Management, RWD Engineering and peers in AI/DS
  • Lead standardization of cohort provisioning (i.e., patient selection) for retrospective studies using Tempus database
  • Develop and mentor a team of direct reports