Generative AI’s potential for companies is well-known, but the technology can create new risks if it is not powered by original and trustworthy data sources. In the second blog in our ‘RAGs to Riches’...
Generative AI is widely predicted to transform almost every industry and use case, and companies spent more than $20 billion on the technology last year. But it also exposes these firms to new risks if...
Adverse media screening has become an essential part of a company’s risk management process, both while onboarding third parties and customers and throughout the relationship. In recent years, technological...
Generative Artificial Intelligence (GenAI) stands as a transformative force in the digital landscape, promising innovative solutions and creative approaches to data synthesis. However, GenAI faces its...
In a recent LinkedIn post , data and technology transformation consultant Tommy Tang writes, “Generative AI has emerged as a potent tool across various domains, from content creation to bolstering decision...
Struggling to keep up with the growing regulatory and reputational risks you face? See how adding data for risk management accelerates your workflow.
Risk management has never been easy. In recent years, however, the challenge has grown exponentially. The good news? Risk management professionals are gaining visibility and influence. According to a McKinsey survey on behalf of the Federation of European Risk Management Associations (FERMA), more than 50% of risk managers said that “The global pandemic has made risk and resilience significantly more important to their organisations.” How can organisations support resilience moving forward? Survey respondents say that better risk data aggregation, reporting, and prediction will be critical to their success.
Use of internal data for risk management is a widespread practice, such as analysing transaction data to identify signs of fraud, money laundering or terrorist financing. But complementing internal data with outside sources is critical when it comes to comprehensive risk management.
In an interview, IBM director of enterprise risk management Stuart Horn, said, “Using data, being able to leverage it, aggregate it, make sense of it and then apply it in a smart way so you get what is actually pertinent to you, is really what’s at the core of using big data for risk management. The companies that are leveraging big data, analytics and artificial intelligence are the ones that are better at managing risks and getting better performance.”
All data sources are not equal. The sheer volume of data can be overwhelming to sift through, and that’s after you’ve gone to multiple sources to gather relevant datasets. On top of that, big data can be more challenging to ingest and use because of disparate formats. Choosing the right DaaS provider is crucial for success. What should you look for?
Check out our whitepaper on data for risk management for examples of how big data is helping organisations protect and grow their business.
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