About Us
AccuLine is a medical device startup founded with the vision of saving millions of lives worldwide by preventing the next heart attack. AccuLine is developing CORA, an accurate and user-friendly system for the early detection of coronary artery disease, aiming to replace stress test exams. CORA comprises a console, ECG and SpO2 sensors, and cloud-based ML/DL analysis of these bio-signal measurements.
AccuLine has received grants from the Israeli Innovation Authority and Google, and among our investors are eHealth Ventures, Maccabi Healthcare Services, and Mayo Clinic.
This is a unique opportunity to join the company at its early stages, where you will be entrusted with the crucial task and resources to shape the creation of a game-changing product with the potential to positively impact millions of lives.
Position Overview
AccuLine is seeking an experienced and driven individual to join our team as a Data Scientist. In this role, you will develop ML/DL models for the detection of coronary artery disease as part of the core technology of CORA.
Key Responsibilities
- Feature engineering based on existing literature and internal research efforts.
- Development of ML/DL classifiers for CAD detection and prediction from time-series biological data, according to well-defined business goals.
- Participate in the initiation and maintenance of the complete data pipeline.
- Collaborate with cross-functional teams, including clinical, regulatory, and product teams.
Necessary Qualifications
- A PhD or MSc in Computer Science, Electrical Engineering, Data Science, or a related field.
- 3+ years of proven coding experience (ideally in Python).
- Strong expertise in ML techniques for the complete lifecycle of data analysis: preprocessing, feature engineering, feature extraction, classical ML model training, and validation (using packages like Scikit-learn, AutoML packages, etc.).
- Strong expertise in DL architectures (such as CNN, RNN, foundation models) and frameworks (such as PyTorch and TensorFlow), specifically for time-series data.
- Hands-on experience with electrophysiological signals (ECG, EEG, EMG).
Strong Advantages
- In-depth knowledge of DSP techniques for biological signals (specifically ECG, SpO2, respiratory).
- Familiarity with data science metrics for clinical domains (sensitivity, specificity, etc.).
- Experience with AWS or other cloud platforms for data management, model training, and deployment.
- Proficiency in using data science management tools such as MLFlow, DVC, or ClearML.
- Experience in containerization of data pipelines.
Desired Qualities
- Ability to work collaboratively with a “can-do” attitude.
- Highly organized, detail-oriented, and analytical.
- Multi-tasking capabilities.
- Self-motivated.