Explore our resources and client stories to discover why great companies are built on clean data.
Building Trust in AI: The Foundation of Data Quality
Data quality is pivotal for the efficacy and dependability of AI and ML models. In sectors where precision is paramount, like healthcare and finance, the calibre of data can make or break the predictive power of these technologies.
The Age of AI and ML: Potential application in Data Quality Management
While AI and ML are transformative, they are not a replacement for established data quality best practices and tools. It is crucial to understand their capabilities, potential, and limitations, and to approach them as complementary tools rather than replacements. Using AI/ML as the only solution for data quality is akin to patching a boat's leak with tape – it helps but will not solve everything.
Key Data Lifecycle Stages (Infographic)
2023 has seen several trends emerge in the realm of data quality and management that organisations who rely on accurate data, such as the financial industry need to know.
While some organisations are increasingly focused on data privacy and the adoption of machine learning and AI, regulators are placing greater emphasis on data governance.
Here are the five key data management practices you need embed in your organisation.
5 Key Data Management Practices To Embed In Your Organisation To Accelerate Growth
2023 has seen several trends emerge in the realm of data quality and management that organisations who rely on accurate data, such as the financial industry need to know.
While some organisations are increasingly focused on data privacy and the adoption of machine learning and AI, regulators are placing greater emphasis on data governance.
Here are the five key data management practices you need embed in your organisation.
How to ensure you can trust your data
Your organisation may be collecting large volumes of raw data, but it is only useful if it is of high quality.
Can you imagine the consequences of investing millions of dollars to train your AI and ML models, but your data was unreliable?
Building trust in the quality of your data allows for optimal service outcomes and provides benefits that extend far beyond increased data quality. However, the first step in this process is investing in automating your data validation.
9 Steps To Achieving Data Quality Success In Your Organisation - Downloadable Infographic
Anyone that has tried appreciates that achieving good data across an organisation is not easy. For many organisations, getting to the point where data quality is seen as a “non-negotiable” will take commitment, effort, and investment.
For regulated organisations in financial services sectors such as superannuation, banking, insurance and wealth management, poor data can also result in breaches, potential fines, and reputation loss
5 Key Strategies To Tackle Data Quality Challenges In Your Organisation - Downloadable Infographic
For many organisations, getting to the point where data quality is seen as a “non-negotiable” will take commitment, effort, and investment. Here are 5 key strategies that will help overcome challenges in Data Quality.
Optus data breach and the ancillary impact it may have on your members
There has never been more reliance and importance on data to provide administration of consumer products effectively and efficiently and in turn, organisations need to have robust Governance and security in place to safeguard information. The recent Optus data breach has demonstrated how far reaching and significant an impact compromised data can have to consumers.