Data Scientist II, Tissue Engineering
About Us
Valo Health is a human-centric, AI-enabled biotechnology company working to make new drugs for patients faster. The company’s Opal Computational Platform transforms drug discovery and development through a unique combination of real-world data, AI, human translational models and predictive chemistry.
Our talented team of biologists, chemists and engineers, armed with advanced AI/ML tools, work together to break down traditional R&D silos and accelerate the speed and scale of drug discovery and development.
Valo is committed to hiring diverse talent, prioritizing growth and development, fostering an inclusive environment, and creating opportunities to bring together a group of different experiences, backgrounds, and voices to work together. We embrace new ways of learning, solve complex problems and welcome diverse perspectives that can help us advance patient-centric innovation.
Valo is headquartered in Lexington, MA, with additional offices in New York, NY and Tel Aviv, Israel. To learn more, visit www.valohealth.com.
About the Role
Join a growing in vitro modelling team as a data scientist supporting our efforts in data science, tissue engineering, and drug discovery. As a data scientist you will use your skills and experience to advance the engineering of human tissue models, focusing on cardiac and skeletal muscle models.
You will be part of a team responsible for developing and building computational models, engineered tissue assays, statistical models, and machine learning based tools for use throughout our drug discovery pipeline. A major focus will be on optimizing our in vitro analysis platforms and experimentation.
Successful candidates will work with a diverse set of scientists, engineers, and domain experts in ways that cut across traditional industry boundaries, building powerful computational tools to advance the discovery and development of new medicines.
What You'll Do...
- Collaborate with biologists and computational scientists to visualize, preprocess, and analyze datasets generated from human tissue models and bioengineering experiments.
- Create clear and informative data visualizations and statistical summaries to communicate findings to technical and non-technical colleagues, including collaboratively designing and building out user interfaces.
- Development of predictive models and algorithms to identify factors impacting the development, manufacturing, and use of tissue models.
- Work with scientists and engineers to optimize experimental conditions and model in-vitro phenotypic responses to chemical and genetic perturbations to better understand complex biological systems in pursuit of optimal drug candidates.
- Build models utilizing large & diverse datasets to explain experimental variability and inform scientists how to optimize experiments and engineered tissue production using multivariate analyses, time series data processing, and other statistical and machine learning modelling.
What You Bring...
- A Ph.D. + 1-2 years of experience or Master’s degree + 3-4 years of experience, or comparable experience in a relevant computational science field (e.g., computational biology, bioengineering, biostatistics).
- Strong background in data processing and analysis.
- Familiarity with statistics as well as machine learning techniques and tools, such as neural networks, generative models, ensemble learning, regression, classification, and regularization.
- Proficient in Python and experience using data analysis libraries, such as Pandas, NumPy, SciPy, Scikit-learn, and TensorFlow/PyTorch.
- Familiarity with version control for code, such as Gitlab or Github.
- Familiarity with bioengineering principles and human tissue models , and with how computational biology can be applied to support their development and use for drug discovery.
- Strong communication skills for effective collaboration and results presentation.
Remote Salary Range
$133,000 - $163,000 USD
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