Skip to main content
Home » Artificial Intelligence » AI opportunities and challenges for modern businesses to consider
Future of AI Q2 2024

AI opportunities and challenges for modern businesses to consider

Industry and technology concept. INDUSTRY 4.0 - stock photo
Industry and technology concept. INDUSTRY 4.0 - stock photo
iStock / Getty Images Plus / metamorworks

Lord Tim Clement-Jones

Author of ‘Living with the Algorithm: Servant or Master?: AI Governance and Policy for the Future’

Alyson Hwang

Researcher, Policy Connect

AI promises to transform business models, streamline operations and enhance decision-making. However, this technological revolution also brings challenges that businesses must navigate to harness its full potential.


In the rapidly evolving landscape of artificial intelligence (AI), businesses are finding themselves at a crossroads of unprecedented opportunity and significant risk.

AI innovations driving business transformation

AI’s impact on business is profound and far-reaching. From automating routine tasks to analysing massive datasets for insights, AI is reshaping the way companies operate. Take customer service, for example, where AI-powered chatbots are providing 24/7 assistance, improving operational efficiency and offering round-the-clock service.

Similarly, in marketing, AI algorithms can predict consumer behaviour and tailor marketing strategies, leading to increased engagement and sales. The integration of AI in supply chain management has also led to smarter logistics, with AI systems optimising routes and inventory levels, reducing costs and improving delivery times. These are just a few of the many ways that AI systems have benefited businesses.

AI systems are also only as good as the data they are trained on.

Transparency and data quality challenges and risks

Despite these advancements, the deployment of AI is not without its challenges. One of the primary concerns is the risk associated with automated decision-making systems. These systems, while efficient, can sometimes lack transparency, leading to what is known as the ‘black box’ problem, where decisions are made without clear insight into the data or algorithms used.

AI systems are also only as good as the data they are trained on. Businesses must consider these implications and work towards creating a balance where AI tools augment human workers — not replace them.

Finding balance in automated decision-making

The challenges of automated decision-making in AI are particularly noteworthy. As businesses increasingly rely on AI to make complex decisions, the stakes become higher. The potential for AI to make errors or operate in ways that are not fully understood by its human operators can lead to significant consequences, both ethically and financially.

Ensuring that these systems are not only effective but also transparent is crucial. Businesses must implement rigorous testing and monitoring to ensure AI systems perform as intended without harmful impacts.

Ultimately, AI should complement, not replace, human intuition and decision-making. The objective should be to utilise AI’s analytical and processing strengths while ensuring human oversight and adherence to ethical standards.

Ahead of any government regulation of AI systems — which is, of course, already on the way in the EU — businesses should engage in thorough deliberation and secure industry-wide agreement on governance frameworks that enable them to manage and capitalise on the risks and opportunities.

Next article