Join a team at the heart of ML innovation !
The Knowledge team is responsible for developing ML algorithms and features around transaction enrichment and user knowledge.
It combines real-time NLP ML model inference and batch processing for marketing targeting, at-scale on large volumes of transactional data in our data warehouse.
As a Data Scientist within the Knowledge team, you will:
Develop, enhance, and deploy machine learning models for banking transaction contextualization with a focus on accuracy, performance, and scalability
Work at the intersection of data science, MLOps and research to design advanced NLP models, recommendation systems, and real-time inference systems
Build and maintain our ML model training pipelines, feature engineering workflows, and model monitoring systems
Create tools and automation for model evaluation, A/B testing, and performance tracking
Develop technical frameworks for ML experimentation, model versioning, and deployment
Actively contribute to model quality, data quality, and research reproducibility
Technical skills
Machine learning: 2-3 years of professional experience (excluding studies, internships, and apprenticeships)
Python: confirmed level (main language)
Deep Learning frameworks (TensorFlow/PyTorch): confirmed level
Data manipulation (Pandas/Polars): beginner to confirmed
SQL (PostgreSQL or other relational DBMS): beginner to confirmed
MLOps tools and practices: beginner level
Git/Linux/Docker: confirmed level
Mindset
Autonomous and able to take initiative
Research-oriented with an appetite for experimentation and innovation
Team player who enjoys collaborating and sharing, and works towards collective success
Builder rather than power-user: you enjoy creating and filling gaps in a growing scale-up ecosystem
Open source contributions or personal projects are welcome!
Experience in these areas can make the difference:
Python / PyTorch
Polars / Pandas
PostgreSQL
RabbitMQ / Kafka
GitLab
Clickhouse
Dagster
dbt
MLflow / Weights & Biases
Initial discussion with the CTO and Head of Data (30 min)
Technical test assignment
Technical discussion around the test with the team (1h30)
Final interview (30min)
Attractive compensation package!
Meal vouchers (Swile card)
Sustainable Mobility allowance combinable with Navigo Pass reimbursement
“Remote friendly” work environment (possibility to work from home 2 days per week)
Offices in central Paris, 9th district
Participation in tech events (internal or external)
Support for publishing technical content
Bi-monthly All hands meetings in Paris followed by an evening event
Annual multi-day company offsite
Opportunity to participate in Paylead hiking trips
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