Data Scientist, Clinical Data Science (CDS) R&D Team - QuantHealth
- חברה: QuantHealth
- מיקום: תל אביב - יפו
- טכנולוגיות: Strong Python skills, pandas, NumPy, scikit-learn, PyTorch, SQL, Spark
תיאור המשרה
MSc or PhD in data science, computer science, computational biology, or a related quantitative field.
4+ years of hands-on experience in applied data science, machine learning, or algorithm development.
Strong Python skills and practical experience with common data science and ML libraries such as pandas, NumPy, scikit-learn, PyTorch, SQL, and Spark.
Proven experience building end-to-end data science solutions, from raw data processing to model development, evaluation, and implementation.
Experience working with large, messy, real-world datasets and transforming them into reliable analytical or machine learning pipelines.
Strong understanding of machine learning concepts, model evaluation, statistical analysis, and experimental design.
Experience with cloud-based computing environments and scalable data processing pipelines.
Strong analytical and problem-solving skills, with attention to details and scientific rigor.
Strong research mindset and ability to independently learn new domains, methods, and technologies.
Excellent communication skills and ability to collaborate effectively across clinical, product, engineering, and data science teams.
Experience working with biomedical, healthcare (RWD/EHR), pharmaceutical, biomedical ontologies, or real-world patient data.
Experience developing LLM-based workflows or agentic pipelines.
Experience with knowledge graphs, graph embeddings, GNNs, or graph-based ML.
Experience with PySpark, PyTorch, PyGeometric, MLflow, or similar ML engineering tools.
Experience creating interactive data applications, dashboards, or internal tools.
Familiarity with clinical trial design, drug development, computational/system biology, or translational medicine.
תחומי אחריות
As a Data Scientist in the CDS R&D team , you will play a key role in researching, developing, and productionizing advanced data science solutions that power QuantHealth’s clinical simulation and prediction capabilities.
This role is designed for a strong applied data scientist who enjoys solving complex, ambiguous problems end-to-end: from data exploration and feature engineering, through model development and validation, to building scalable pipelines and AI-driven workflows. You will work closely with clinical experts, product, delivery, engineering, and other data science teams to translate challenging clinical and biomedical questions into robust data-driven solutions.
The ideal candidate brings several years of hands-on experience in applied data science, machine learning, and data pipeline development. Additional qualities we look at in candidates are scientific thinking, project ownership, and the ability to independently learn and operate in complex domains. Experience with biomedical or clinical data is a strong advantage.
This position involves working with a modern Python-based data science stack, building predictive models, developing data and ML pipelines, and contributing to the continuous improvement of QuantHealth’s clinical trial simulation product. The role requires curiosity, strong self-learning abilities, research orientation, and rigorous analytical thinking.
דרישות
MSc or PhD in data science, computer science, computational biology, or a related quantitative field.
4+ years of hands-on experience in applied data science, machine learning, or algorithm development.
Strong Python skills and practical experience with common data science and ML libraries such as pandas, NumPy, scikit-learn, PyTorch, SQL, and Spark.
Proven experience building end-to-end data science solutions, from raw data processing to model development, evaluation, and implementation.
Experience working with large, messy, real-world datasets and transforming them into reliable analytical or machine learning pipelines.
Strong understanding of machine learning concepts, model evaluation, statistical analysis, and experimental design.
Experience with cloud-based computing environments and scalable data processing pipelines.
Strong analytical and problem-solving skills, with attention to details and scientific rigor.
Strong research mindset and ability to independently learn new domains, methods, and technologies.
Excellent communication skills and ability to collaborate effectively across clinical, product, engineering, and data science teams.
Experience working with biomedical, healthcare (RWD/EHR), pharmaceutical, biomedical ontologies, or real-world patient data.
Experience developing LLM-based workflows or agentic pipelines.
Experience with knowledge graphs, graph embeddings, GNNs, or graph-based ML.
Experience with PySpark, PyTorch, PyGeometric, MLflow, or similar ML engineering tools.
Experience creating interactive data applications, dashboards, or internal tools.
Familiarity with clinical trial design, drug development, computational/system biology, or translational medicine.