{"id":87776,"date":"2025-04-01T16:25:04","date_gmt":"2025-04-01T13:25:04","guid":{"rendered":"https:\/\/intellias.com\/?post_type=blog&p=87776"},"modified":"2025-05-20T13:20:39","modified_gmt":"2025-05-20T10:20:39","slug":"data-governance-banking","status":"publish","type":"blog","link":"https:\/\/intellias.com\/data-governance-banking\/","title":{"rendered":"A Fresh Look at Best Practices in Data Governance for Banking"},"content":{"rendered":"

Data governance in banking was once just another function of the IT department, but it has become a vital component of a modern bank. Back when it was one of the many technical tasks handled behind the scenes, data governance in banking was not a priority. Today, banks better understand the need to set standards to keep data accurate, clean and secure. Effective data governance in banking enables faster decision-making, giving banks a competitive edge. Data governance also provides opportunities for banks to try something new, like offering personalized financial recommendations with the help of generative AI.<\/p>\n

Establishing a data governance framework does not happen overnight. Banks and financial institutions must develop policies and high standards for managing data to ensure data quality, availability and security<\/a>. Data governance also must be scalable to account for changes in the market and business needs. Furthermore, data governance for banks lays the foundation for applying artificial intelligence or machine learning techniques.<\/p>\n

Banks are spending a lot of money on their data initiatives. According to Gartner<\/a>, IT spending on banking and investment services will increase to $1 trillion by 2028. Developing a durable data governance framework will help banks ensure this money does not go to waste.<\/p>\n

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The journey to AI starts with data governance. Let Intellias be your guide with data governance as a service.<\/p>\n

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What is data governance in banking?<\/h2>\n

Data governance in banking refers to the framework of policies, processes and standards that ensure data across a bank is accurate and complies with laws and regulations. A data governance framework includes many ways to manage data<\/a>, including through access controls, data lineage and data risk management.<\/p>\n

Deloitte\u2019s 2024 Banking & Capital Markets Survey<\/a> indicates that US banks allocated over $5 billion to data initiatives in 2023. Yet, surveyed bank leaders cited many roadblocks \u2014 including delays in retrieving data and insufficient technical skills \u2014 that prevented them from fully capitalizing on those initiatives. This demonstrates a need for more robust data governance plans.<\/p>\n

Data governance in banks is a starting point to apply advanced data analytics<\/a> and integrate AI solutions. Creating and training an model during an AI project requires access to high-quality data. A data governance framework makes such data available while preventing data leaks and meeting compliance requirements, including with regard to data privacy.<\/p>\n

Roadblocks to data initiatives \u2014 US banks\u00a0<\/strong><\/p>\n

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Source: Deloitte, 2024 Banking & Capital Markets Survey<\/a><\/em><\/p>\n

Data governance principles<\/h2>\n

A solid data governance framework provides access to data while ensuring the data remains secure, data owners are held accountable, and banks meet regulatory compliance requirements. Such a framework is built on fundamental principles that ensure banks manage data responsibly, help to reduce risk and define standards that improve efficiency and build customer confidence.<\/p>\n

The core principles of data governance are:<\/p>\n