Data resilience in the age of AI

October 2024 Infrastructure, AI & Data Analytics

Almost two decades ago, Clive Humby coined the now-infamous phrase “data is the new oil.” With artificial intelligence (AI), we have got the new internal combustion engine. The discourse around AI has reached a fever pitch, but this ‘age of AI’ we have entered is just a chapter in a story that’s been going on for years – digital transformation.

The AI hype gripping every industry right now is understandable. The potential is big, exciting, and revolutionary, but before we run off and start our engines, organisations need to put processes in place to power data resilience and ensure their data is available, accurate, protected, and intelligent so that their business continues to run no matter what happens. Look after your data, and it will look after you.

Take control before shadow sprawl does

It is far easier to manage with training and controls early on when it comes to something as pervasive and ever-changing as a company’s data. You do not want to be left trying to ‘unbake the cake’. The time to start is now. The latest McKinsey Global Survey on AI found that 65% of respondents reported that their organisation regularly uses Gen AI (double from just ten months before). However, the stat that should give IT and security leaders pause is that nearly half of the respondents said they are ‘heavily customising’ or developing their own models.

This is a new wave of ‘shadow IT’ – unsanctioned or unknown use of software, or systems across an organisation. For a large enterprise, keeping track of the tools teams across various business units might be using is already a challenge. Departments or even individuals building or adapting large language models (LLMs) will make it even harder to manage and track data movement and risk across the organisation.

The fact is, it is almost impossible to have complete control over this, but putting processes and training in place around data stewardship, data privacy, and IP will help. If nothing else, having these measures in place makes the company’s position far more defendable if anything goes wrong.

Managing the risk

It is not about being the progress police. AI is a great tool that organisations and departments will get enormous value out of, but as it quickly becomes part of the tech stack, it is vital to ensure these fall within the rest of the business's data governance and protection principles. For most AI tools, it is about mitigating the operational risk of the data that flows through them. Broadly speaking, there are three main risk factors: security (what if an outside party accesses or steals the data?), availability (what if we lose access to the data, even temporarily?), and accuracy (what if what we are working from is wrong?).

This is where data resilience is crucial. As AI tools become integral to your tech stack, you need to ensure visibility, governance, and protection across your entire ‘data landscape’. It comes back to the relatively old-school CIA triad - maintaining confidentiality, integrity, and availability of your data. Rampant or uncontrolled use of AI models across a business could create gaps.

Data resilience is already a priority in most areas of an organisation, and LLMs and other AI tools need to be covered. Across the business, you need to understand your business-critical data and where it lives. Companies might have good data governance and resilience now, but if adequate training is not put in place, uncontrolled use of AI could cause issues. What is worse, is that you might not even know about them.

Building (and maintaining) data resilience

Ensuring data resilience is a big task - it covers the entire organisation, so the whole team needs to be responsible. It is also not a ‘one-and-done’ task, things are constantly moving and changing. The growth of AI is just one example of things that need to be reacted to and adapted to. Data resilience is an all-encompassing mission that covers identity management, device and network security, and data protection principles like backup and recovery. It is a massive de-risking project, but for it to be effective, it requires two things above all else: the already-mentioned visibility, and senior buy-in. Data resilience starts in the boardroom. Without it, projects fall flat, funding limits how much can be done, and protection/availability gaps appear. The fatal ‘NMP’ (“not my problem”) cannot fly anymore.

Do not let the size of the task stop you from starting. You cannot do everything, but you can do something, and that is infinitely better than doing nothing. Starting now will be much easier than starting in a year when LLMs have sprung up across the organisation. Many companies may fall into the same issues as they did with cloud migration all those years ago, you go all-in on the new tech and end up wishing you had planned some things ahead, rather than having to work backwards.

Test your resilience by doing drills – the only way to learn how to swim is by swimming. When testing, make sure you have some realistic worst-case scenarios. Try doing it without your disaster lead (they are allowed to go on vacation, after all). Have a plan B, C, and D. By doing these tests, it is easy to see how prepped you are. The most important thing is to start.




Share this article:
Share via emailShare via LinkedInPrint this page



Further reading:

Hytera supports communication upgrade for Joburg
News & Events Infrastructure Government and Parastatal (Industry)
By equipping Johannesburg’s metro police and emergency services with multimode radios which integrate TETRA and LTE networks, Hytera is bridging coverage gaps and improving response times across the city.

Read more...
Combining TETRA or DMR with 5G broadband
Infrastructure IoT & Automation
As enterprises face rising complexity and connectivity demands, hybrid networks offer a transformative path, combining the proven reliability of TETRA or DMR with the innovation and coverage of 5G broadband.

Read more...
The global generative AI market surpassed $130 billion in 2024
News & Events AI & Data Analytics
According to a new research report from the IoT analyst firm, Berg Insight, the Generative AI (GenAI) market grew substantially in 2024, experiencing triple-digit growth rates in all three major segments: GenAI hardware, foundation models, and development platforms.

Read more...
Questing for the quantum AI advantage
Infrastructure AI & Data Analytics
The clock is ticking down to the realisation of quantum AI and the sought-after ‘quantum advantage’. In many boardrooms, however, quantum remains mysterious; full of promise, but not fully understood.

Read more...
The growing role of hybrid backup
Infrastructure Information Security
As Africa’s digital economy rapidly grows, businesses across the continent are facing the challenge of securing data in an environment characterised by evolving cyberthreats, unreliable connectivity and diverse regulatory frameworks.

Read more...
IoT-driven smart data to stay ahead
IoT & Automation Infrastructure AI & Data Analytics
In a world where uncertainty is constant, the real competitive edge lies in foresight. Businesses that turn real-time data into proactive strategies will not just survive, they will lead.

Read more...
Hydrogen is green but dangerous
Fire & Safety Infrastructure Power Management
Hydrogen infrastructure is developing quickly, but it comes with safety challenges. Hydrogen is flammable, and its small molecular size means it can leak easily. Additionally, fires caused by hydrogen are nearly invisible, making them difficult to detect and respond to.

Read more...
A whole-site solution to crack the data centre market
Fire & Safety Infrastructure Facilities & Building Management
Fire safety consultants and contractors who can offer a comprehensive fire safety solution to the data centre market can establish themselves as a supplier of a key safety features that help guarantee the smooth operation of critical infrastructure.

Read more...
Wireless network security market
Infrastructure
The wireless network security market is experiencing significant growth, driven by the increasing adoption of wireless technologies, a surge in cyberthreats, and rising demand for secure data transmission.

Read more...
SA businesses embrace GenAI, but strategy and skills lag
News & Events AI & Data Analytics
South African enterprises are rapidly integrating Generative AI (GenAI) into their operations, but most are doing so without formal strategies, dedicated leadership, or the infrastructure required to maximise value and minimise risk.

Read more...










While every effort has been made to ensure the accuracy of the information contained herein, the publisher and its agents cannot be held responsible for any errors contained, or any loss incurred as a result. Articles published do not necessarily reflect the views of the publishers. The editor reserves the right to alter or cut copy. Articles submitted are deemed to have been cleared for publication. Advertisements and company contact details are published as provided by the advertiser. Technews Publishing (Pty) Ltd cannot be held responsible for the accuracy or veracity of supplied material.




© Technews Publishing (Pty) Ltd. | All Rights Reserved.