Education and Experience Requirements:
- Undergraduate or advanced degree in Mathematics, Statistics, Computer Science, or a related field.
- Knowledge and experience in applying statistical and machine learning methods including regression, classification, clustering, decision trees, and neural networks.
- 3-5 years’ experience in developing, deploying, and managing analytical and machine learning models in a production environment.
- Proven track record of successfully leading data science projects from conception to completion.
Required Knowledge, Skills and Abilities:
- Natural sense of curiosity; being able to self-motivate and proactively find unique or actionable insights and solutions leveraging data.
- Ability to understand business needs and become a leader in enabling data driven business decisions while also having the ability to work successfully in a team environment.
- Extensive experience with machine learning frameworks and libraries (e.g., Scikit-learn, XGBoost).
- Extensive experience in a statistical programming language such as Python.
- Experience with building machine learning and AI models in a cloud environment preferably using Databricks and Azure Foundry.
- Excellent problem-solving skills and the ability to think critically and strategically.
- Comfortable working in a dynamic environment with multiple concurrent projects.
- Ability to visualize in advance rough requirements and process necessary to implement new production data science applications.
- Strong communication skills with ability to present ideas and concepts to diverse audiences.
- Familiarity and experience working with relational databases and SQL.
Preferred Knowledge, Skills and Abilities:
- Data science experience in the financial/banking sector.
- Experience with development tools including Jupyter, PyCharm, VS Code, OpenAI/ChatGPT, Azure DevOps, Jenkins, and Docker.
- Experience with Microsoft Azure cloud environment leveraging ADLS, SQL Server, Cosmos, Azure Foundry, Copilot, Cognitive Search, Databricks, and AKS.
- Experience with notable packages/technologies including LLaVA, XGBoost, scikit-learn, Pandas, Spark and GraphQL.
- Familiarity with building data pipelines using unstructured and non-relational data stores.
- Experience writing SQL and developing REST APIs.