Senior Data Scientist
Royal Bank of Canada View all jobs
- Toronto, ON
- Permanent
- Full-time
- Lead full life-cycle Data Science solutions from beginning to model deployment and monitoring and partner with the engineering team to ensure best practices for ML model deployment.
- Apply knowledge of statistics, machine learning, programming, data modeling, simulation, and advanced mathematics to recognize patterns, identify opportunities, pose business questions, and make valuable discoveries leading to prototype development and product improvement.
- Experience in (Python, Apache Spark, PySpark, R, Scala, SQL, NoSQL, etc.) to obtain, integrate, manipulate, and analyze data from multiple sources.
- Expertise in statistical data analysis (e.g. univariate/bivariate analysis) and data quality assessment.
- Build Machine Learning, Deep Learning and statistical models to solve specific business problems.
- Developing predictive data models, anomaly detection model, quantitative analyses and visualization of targeted big data sources.
- Leading data exploration and analytic projects and providing on-going coaching of big data topics (visualization, data mining, analytic techniques).
- Exploring and implementing semantic data capabilities through NLP, text mining and machine learning techniques.
- Overseeing the acquisitions and ingestions of data from structured and unstructured sources, while ensuring quality and comprehensiveness of data.
- Utilizing APIs to collect data from various products into the Data Warehouse Database.
- 5+ years of industry experience required working on real-world problems. University, Master or Ph.D. degree in an analytical field of study (e.g. Computer Science, Engineering, Mathematics, Statistics, or related quantitative field).
- Experienced with AI/ML infrastructure and model deployment for Gen AI applications in production environments and supporting enterprise-scale use cases
- Strong foundation in ML and AI basics, knowledge of Inferencing, fine-tuning, model architectures, Embeddings. Hands-on experience implementing solutions using modern ML and Deep Learning frameworks, such as PyTorch, TensorFlow, Scikit-Learn, or Hugging Face Transformers
- Hands-on experience designing graph data models and working with graph databases (Neo4j, Amazon Neptune, TigerGraph) and/or knowledge graph frameworks (RDF/OWL, property graphs, SPARKQL)
- Familiar with software engineering industry best practices, including coding standards, testing methods, code reviews, and version control
- Experience working with technical and non-technical project stakeholders to scope, formulate, deploy, and maintain data science systems.
- Self-driven problem solver, able to adapt and thrive in a dynamic, ambiguous, and customer-faced environment.
- Familiarity with GIT (GitHub)
- Strong communication, collaboration, and problem-solving skills.
- Ability to prioritize work and manage multiple work streams concurrently.
- In-depth knowledge in machine learning and deep learning algorithms.
- Excellent working with structured and non-structured data. Excellent knowledge in Python, PySpark, SQL.
- Experience with cloud-based data platforms such as Azure or AWS. Experience with data visualization tools such as Tableau, Looker, and Power BI.
- Experience architecting large scale ML systems.
- Experience working knowledge of Reinforcement learning (DynaQ/Q+, SARSA, TD, Monte Carlo).
- Experience with GenAI LLM models.
- Experience with MLOps workflow.
- Knowledge in AIOps domain.
- Knowledge of IT Operation Monitoring Tools (Dynatrace, Moog, GEM, Pager Duty, etc )
- A comprehensive Total Rewards Program including bonuses and flexible benefits, competitive compensation, commissions, and stock where applicable
- Leaders who support your development through coaching and managing opportunities
- Ability to make a difference and lasting impact
- Work in a dynamic, collaborative, progressive, and high-performing team
- A world-class training program in financial services
- Opportunities to do challenging work. Opportunities to take on progressively greater accountabilities. Opportunities to building close relationships with clients
- Access to a variety of job opportunities across business and geographies.