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NTT DATA is a $30 billion business and technology services leader, serving 75% of the Fortune Global 100. We are committed to accelerating client success and positively impacting society through responsible innovation. We are one of the world's leading AI and digital infrastructure providers, with unmatched capabilities in enterprise-scale AI, cloud, security, connectivity, data centers, and application services. Our consulting and Industry solutions help organizations and society move confidently and sustainably into the digital future. As a Global Top Employer, we have experts in more than 50 countries. We also offer clients access to a robust ecosystem of innovation centers as well as established and start-up partners. NTT DATA is a part of NTT Group, which invests over $3 billion each year in R&D.
Data Engineer Advisor
Location
India
Posted
41 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Engineer Advisor
NTT DATA Services
Role Description We are currently seeking a Data Engineer Advisor to join our team in Remote, Karnātaka (IN-KA), India. Job Duties: Key Responsibilities - Develop and maintain data models - Logical and Physical, to support business needs ensuring data integrity for Insurance domains. - Design models aligned to Databricks medallion architecture by translating the requirements of underwriting, delegated authority, reinsurance, actuarial, claims, and finance. - Implement and maintain modelling standards, naming conventions, metadata, and documentation working closely with data analysts, data engineers, and associates in the data office. - Review existing models and propose simplification, standardisation, and target state improvements across projects and for wider requirements. - Lead the evolution of requirements, refine and translate the specifications into data models to enable the development phase. - Ensure the models accurately reflect Insurance processes and data elements before handing it over to engineering. Qualifications - Experience delivering data models for P&C, Specialty insurance projects with exposure to Lloyd’s/London Market and Syndicate data structures is required. - Understanding of insurance domain concepts and proficiency with data modelling tools (e.g., Erwin). - Expertise in enterprise data modelling, including conceptual, logical, and physical models for transactional domains. - Experience in data modelling using Dimensional Star/Snowflake, Data Vault, and 3NF methodologies. - Knowledge of data warehousing and ETL/ELT pipelines. - Experience with Azure Data Factory and Databricks, designing data pipelines can be advantageous. - Understanding and knowledge of system development life cycle methodologies (such as agile software development). - Excellent collaboration and communication skills to deal with senior leaders, stakeholders, and technical teams is required. - Flexibility and bringing a curious and creative mindset, open to new things and able to propose innovative ideas. Company Description NTT DATA is a $30 billion business and technology services leader, serving 75% of the Fortune Global 100. We are committed to accelerating client success and positively impacting society through responsible innovation. - One of the world's leading AI and digital infrastructure providers. - Unmatched capabilities in enterprise-scale AI, cloud, security, connectivity, data centers, and application services. - Consulting and Industry solutions help organizations and society move confidently and sustainably into the digital future. - A Global Top Employer with experts in more than 50 countries. - Access to a robust ecosystem of innovation centers as well as established and start-up partners. - Part of NTT Group, which invests over $3 billion each year in R&D.
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