TL;DR
Data Scientist (AI): Building data-driven solutions for personalised healthcare experiences with an accent on applied modelling, production AI systems and analytical thinking. Focus on translating ideas into prototypes and production-ready insights, contributing to the full data science lifecycle from exploring datasets to evaluating models.
Location: Hybrid
Company
hirify.global is a digital healthcare company focused on weight management and preventative health.
What you will do
- Develop and validate statistical and machine learning models to support product features and decision-making.
- Collaborate with data and ML engineers to move experiments into production and ensure reliability and interpretability.
- Conduct exploratory analyses to identify patterns, generate hypotheses, and shape model or product directions.
- Partner with product teams to run A/B tests or pilots, and translate results into actionable insights.
- Present results clearly to technical and non-technical audiences.
Requirements
- 2–4 years of experience in data science, applied analytics, or machine learning.
- Strong Python and SQL skills, with experience using data science libraries such as pandas, scikit-learn, or PyTorch.
- Experience exploring and cleaning large datasets.
- A working knowledge of ML concepts.
- Familiarity with cloud-based data tools (e.g. BigQuery, Vertex AI, or similar).
- Excellent communication skills.
Culture & Benefits
- Get mentorship from leaders across Australia, the UK, Germany, and Japan.
- Access learning budgets, conferences, certifications, peer shadowing, and a global knowledge-sharing culture.
- Equity for everyone means you share in our success.
- Experience catered wellness talks, exercise classes and free barista coffees.
- Benefit from parental and miscarriage leave, health, professional development, and personal days.
- Use state-of-the-art tools and contribute to impactful solutions in healthcare.
Будьте осторожны: если вас просят войти в iCloud/Google, прислать код/пароль, запустить код/ПО, не делайте этого - это мошенники. Обязательно жмите "Пожаловаться" или пишите в поддержку. Подробнее в гайде →