Overview
120k - 140k
Full Time
Skills
Modeling
Scratch
Cloud Computing
Ensemble
Deep Learning
Startups
Adaptability
Management
Customer Experience
Unstructured Data
Python
Communication
Data Science
Machine Learning (ML)
Collaboration
SAP BASIS
Job Details
We're growing our Data Science team to come help shape the future of our platform. Based in Kitchener, we're a fast-moving software company building a category-defining product powered by cutting edge security. Our team is solving complex engineering and data science related problems at scale. As a Data scientist here, this role blends hands-on modeling with production ML engineering. You'll build models (often from scratch) and deploy them to the cloud, while also shaping the ML engine itself in Python. We're looking for around 5+ years industry experience, strength in non-deep learning methods (tree-based, ensemble, probabilistic), with the ability to apply deep learning to raw, non-textual data when needed. A startup mindset-adaptable and collaborative-is key. If you want to design models from the ground up and see them running in the wild, this is that role. If you love working with data in a product-first environment, and want to have a direct impact on what we ship and how our customers experience it-we'd love to talk. **This is an onsite role - five days a week in Kitchener** Required Skills & Experience
#LI-ST1
- 5+ years of experience as a Data Scientist or equivalent.
- Experience working with raw unstructured data
- Very strong Python OOP experience
- Strong and confident communication skills
- Experience working within a product-based software company
- 100% Data science and ML
- 80% Hands on development
- 20% Team collaboration
- Competitive salary
- Stock Options
- Benefits
- Flexible weeks vacation
#LI-ST1
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