Data Scientist analyzing fast-changing consumer goods data. Developing and improving ML models based on client feedback and innovative data insights.
Responsibilities
In Data Science we work with the data from fast changing consumer goods world. Data comes both from standardized databases and from online retail channels in various forms like semi-structured text in various languages, images or precise numeric values.
Currently we are looking for a new colleague to join the team and assist developing new and improving existing ML models according to our client feedback and suggest new ways looking at the data which would result in new product
Requirements
Formulating hypotheses and developing proof-of-concept ML models for NLP, Image Processing,
Supervised/Unsupervised Learning tasks
Translating Industry specific knowledge into proper models
Monitoring and ensuring data quality
Communicating insights effectively in both written and visual way
Background in Mathematics/Physics/Natural Sciences or Engineering fields, relevant working experience of 2+ years;
Advanced knowledge of Python/R/SQL, understanding of merge-request git flow, basic scripting including CI/CD, regular expressions, shell commands, HTML/JavaScript and basic webapp development skills.
Good coding habits such as proper documentation, linting, styling, reproducibility, code review best practices, and test-driven development.
Skills to maintain ML models: measure performance, add/remove classes, create effective labelling batches, retrain with assessment of the impact.
Ability to suggest model improvements, propose working solutions for business problems, ensure the model works with existing models, track model experiments and keep model documentation updated.
Skills to clearly communicate problem status, actions taken, conclusions, improvements and limitations.
Experience creating and using cloud resources, familiarity with notebooks, SQL instances, buckets, secrets, VMs, and service accounts, understanding and contributing to pipelines, applying model scaling practices and cloud cost awareness.
Understanding of which visualizations to use with different data types, comfortable with at least one visualization framework, and capable of creating shareable/dynamic reports/apps.
Proficiency in applying EDA principles, classical supervised/unsupervised learning techniques, main NLP techniques, a good understanding of deep-learning techniques and awareness of model and computational complexity.
Benefits
Professional Development: Grow your career with opportunities within a consultative and professional environment
Flexible Work Schedule: Achieve a healthy work-life balance with our flexible work schedule options, including remote work opportunities and flexible hours
Positive Work Environment: Join a collaborative and inclusive workplace culture where your ideas are valued, diversity is celebrated, and teamwork is encouraged
Community Involvement: Make a positive impact in the community through our volunteer programs, charitable initiatives, and corporate social responsibility efforts
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