- Develop data models and mapping rules to transform raw data into actionable insights and reports. - Design and implement a semantic layer that integrates analytics data from multiple sources in an efficient and effective manner. - Collaborate with the analytics and data science teams to understand their requirements and deliver solutions that meet their needs. - Play an active role in the development and maintenance of user documentation, including data models, mapping rules, and data dictionaries. - Ensure data quality and accuracy by developing data validation and reconciliation processes. - Build and maintain data pipelines for ingesting, processing, and transforming unstructured data sources, such as customer feedback, social media data, or sales call recordings. - Develop data quality monitoring and validation processes specifically for AIML datasets, including identifying and addressing data bias. - Work with data scientists to understand data requirements for AIML model training and deployment, ensuring data is available in the appropriate format and quality. - Implement data governance policies and procedures to ensure the responsible and ethical use of data in AIML applications.