the-events-calendar
domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init
action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home3/aijournc/public_html/wp-includes/functions.php on line 6114rocket
domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init
action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home3/aijournc/public_html/wp-includes/functions.php on line 6114pods
domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init
action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home3/aijournc/public_html/wp-includes/functions.php on line 6114In recent years, the context in which businesses operate has been deeply transformed by the conjunction of various forces, including climate change, social justice movements, and shareholder activism. Furthermore, the Covid-19 global pandemic has aggravated underlying and longstanding failures regarding equal access to employment opportunities.<\/p>\n\n\n\n
These forces have put pressure on companies to favour long-term, sustainable value creation for the benefit of all stakeholders, employees, consumers, and citizens at large; effectively moving away from a short-term, narrow focus on shareholders. This development has been accelerated by the rapid adoption of Environmental, Social, and Corporate Governance (ESG) performance indicators by investors to measure the sustainability impact of their investments. In 2021 alone, ESG funds attracted<\/a> nearly $120 billion in flows. As a result, it has become imperative for business executives to create strong ESG propositions.<\/p>\n\n\n\n In parallel, the adoption of artificial intelligence (AI) is gathering pace across a variety of business functions<\/a> from production through to service operations, marketing, sales, human resources, and risk management. While AI adoption is highest in the tech, telecom, financial services, and manufacturing sectors, according to the McKinsey Global Survey<\/a> 2021 there has been an increase in nearly every industry, with a significant uptake at companies headquartered in emerging markets (e.g. China, North Africa, and the Middle East).<\/p>\n\n\n\n The combination of both trends \u2013 heightened ESG pressure and the growing impact of AI on business and society \u2013 suggests that effective AI governance should be a key component of any strong ESG proposition. A concrete example of this is the CEO Action for Diversity & Inclusion (D&I) Pledge<\/a> \u2013 the largest CEO-driven business commitment to advance diversity and inclusion within the workplace \u2013 which has been signed by 2000 CEOs and includes most Fortune 500 companies. These same companies are also increasingly<\/a> using AI to support their workforce decisions \u2013 from recruitment and talent management to high-performing employee retention. Therefore to deliver on their commitments, these executives must ensure that deployed AI solutions are purposely designed and continuously monitored to effectively enhance workplace D&I.<\/p>\n\n\n\n The same reasoning applies to environmental concerns. For instance, utility companies are increasingly deploying AI solutions for demand forecasting and power grids optimisation \u2013 partly in the hope of reducing electric power greenhouse gas emissions, which account<\/a> for almost 25 percent of total greenhouse gas emissions worldwide. However, this ambition can only be realised if the AI solutions deployed actually perform as expected. That\u2019s where things can become tricky.<\/p>\n\n\n\n For all the progress that AI has made in the last decade, scaling robust and trustworthy AI solutions still remains challenging. For one thing, AI systems evolve with data and use, which makes their behaviours hard to anticipate; and when they underperform, they are harder to debug and maintain than classic software. This can be particularly problematic when they are deployed in a rapidly changing environment such as a global pandemic. Indeed, massive market volatility and abrupt consumer behavior changes have led to significant drops in AI models’ performance<\/a> across the retail, manufacturing, and financial services industries. Considering how electricity demand also oscillated<\/a> between cycles of quick drop and fast rebound in line with lockdown measures, it would not be surprising to observe a similar phenomenon in this sector.<\/p>\n\n\n\n Second, without proper oversight, AI may replicate or even exacerbate human bias. This is particularly problematic in high-stake domains like recruitment where incidents have been reported. In 2015, a study<\/a> demonstrated that women are less likely to be shown ads for high-paid jobs on Google. Three years later, Amazon reportedly removed<\/a> an internal AI-recruiting tool that was biased against female candidates.<\/p>\n\n\n\n These controversies have fueled concerns over AI bias in employment and led to intensified policy activity. The NYC Council has passed legislation<\/a> that requires vendors of AI-powered hiring tools to obtain annual third-party \u201cbias audits\u201d while the EU AI Act<\/a>, a comprehensive regulatory proposal from the European Commission,has identified this area as high-risk and thus subject to quality management and conformity assessment procedures. This development demonstrates how AI risks have become material risks.<\/p>\n\n\n\n In this context, executives are facing a new challenge: how can they make their companies more sustainable while maximizing the benefits of AI?<\/p>\n\n\n\n The short answer is by implementing sound AI Quality frameworks. Here the term \u201cAI Quality\u201d refers to the set of observable<\/em> attributes of an AI system that allows one to assess over time the system’s real world success. Real world success includes the value and risk from the AI system to both the organisation and the broader society.<\/p>\n\n\n\n The dimensions of an AI Quality framework may vary at the margin but at its core, it must include four key categories:<\/p>\n\n\n\nEffective AI governance should be a key component of any strong ESG proposition<\/strong><\/strong><\/h2>\n\n\n\n
AI creates unique governance challenges<\/strong><\/h2>\n\n\n\n
The need for AI Quality frameworks<\/strong><\/h2>\n\n\n\n