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AI Governance

NRF Summit takes a deep dive into legal world of Artificial Intelligence

There is still much that organisations need to figure out when it comes to implementing AI



artificial intelligence

There is still much that organizations need to figure out when it comes to how best to implement Artificial Intelligence (AI)  a technology that has or will impact them all, whether they like it or not.

The advances have been staggering, with ChatGPT and generative AI leading the charge, contends national Canadian law firm Norton Rose Fulbright Canada LLP (NRF), who earlier this month held a virtual summit revolving around a litany of AI-centric issues.

“AI and machine learning,” it stated, “have the potential to outperform humans – but at what cost?

“But it’s not all bad; AI has significantly impacted the healthcare system, helping revolutionize diagnosis, treatment and disease prevention. AI algorithms can be leveraged to scan and protect against financial fraud, with the potential to beef up a company’s cybersecurity. Conversely, AI is being used by bad actors to attack companies and penetrate state-of-the-art security.

“And there is a myriad of other legal questions: Who owns the knowledge? Who is liable for a breach of privacy? How will AI impact the insurance industry? How do governments regulate this borderless system? How do companies protect their data and copyright?”

What is certain, for now at least, is that there are far more questions than answers, as witnessed by one session that delved into identifying and managing the legal risk associated with AI.

Among the speakers was Handol Kim, co-founder and chief executive officer (CEO) of Variational AI, a Vancouver firm that has developed a platform based on generative AI (GenAI) and machine learning advances that the company says, redefines “the economics of drug development.”

Speaking specifically about the ChatGPT craze, he said, there is a “tremendous amount of hype in popular culture about GenAI, and I think a lot of that stems from the fact large language models (LLMs) operate in the realm of language. As human beings, that’s how we relate to one another and that is how we judge intelligence. If someone can write or speak well, and use language, in a very advanced sense, we perceive them to be intelligent.

“The question then becomes, are these actually intelligent? No, because that’s actually real AI, that’s not machine learning and that is still very far away.”

An LLM, he said, can only understand language, but does not understand the context that the word or the structure relates to: “(It) does seem intelligent, because that’s how we humans gauge that intelligence.

“However, I would say that, given some time, that they’ll continue to get better and better and better. And the disruption will continue to accelerate, both for beneficial opportunities that will come about in the business landscape, but there is also going to be quite a bit of disruption in terms of the status quo and how we do things today.”

Following Kim’s presentation, moderator Jesse Beatson, an associate with NRF Canada’s Toronto office, asked Justine Gauthier, director of corporate and legal affairs with Mila – Quebec Artificial Intelligence Institute, to discuss what risks AI could bring to an organization.

One area where there are not only many questions being asked, but a lot of uncertainties, revolves around intellectual property, and who owns the content used to train an AI system, she said.

“For example, can content that was generated using an AI system be protected by copyright or be patented. There is a wide array of lawsuits right now, especially in the United States, against certain companies that have trained these huge AI models using data that can be found, virtually everywhere on the internet, but that is protected by copyright.

“There are a lot of unanswered questions in that regard as to knowing whether training an AI system with copyrighted data or copyrighted works is actually copyright infringement or not.”

Prior to the session, Imran Ahmad, a partner with the firm and its Canadian head of technology and co-head of information governance, privacy and cybersecurity, held a fireside chat with Marcus Brown..

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AI Governance

Mapping AI Ethics Landscape in United Kingdom

AI Ethics examines the moral and ethical implications of AI systems and their use in a responsible manner



ai ethics

Mapping the AI Ethics Landscape and Authorities in the UK: An Introduction to the Key Issues and Considerations in AI Ethics, from Bias and Fairness to Transparency and Accountability


AI Ethics involves examining the moral and ethical implications of AI systems, ensuring that they are developed, implemented and used in a responsible and fair manner. This article aims to provide an introduction to the key issues and considerations in AI ethics, ranging from bias and fairness to transparency and accountability.

In the fast paced world of technology, artificial intelligence (AI) has emerged as a powerful force with the potential to revolutionise various industries. However, with great power comes great responsibility and that is where AI ethics steps in.

The Landscape and Authorities

The scope and importance of AI ethics cannot be overstated. As AI systems become more prevalent and influential in our lives, it is crucial to address the ethical implications they pose. The Office for Artificial Intelligence, a division of the UK government, has played a vital role in shaping AI policy, recognising the significance of this field in ensuring the responsible development and use of AI technologies.

To understand the current landscape of AI ethics, it is essential to delve into its historical context and evolution. From the early days of simple algorithms to the complex neural networks of today, AI has come a long way. Milestones such as the development of ethical guidelines and the establishment of institutions dedicated to AI ethics have significantly influenced our understanding of the ethical implications of AI.

One of the most pressing issues in AI ethics is bias and fairness. AI systems are built on data, and if that data contains biases, it can lead to discriminatory outcomes. Defining bias in AI and examining its impacts on various societal sectors is crucial to ensure fair and unbiased decision-making. The Ada Lovelace Institute has been at the forefront of advancing strategies for fairness in AI, providing valuable insights into this important aspect.

Transparency is another key consideration in AI ethics. It is vital to understand how AI systems make decisions to build trust and ensure accountability. However, achieving transparency in AI systems poses several challenges. The Alan Turing Institute, a renowned research institution, has been actively exploring these challenges and working towards creating more transparent AI systems.

In the realm of AI ethics, accountability and responsibility play a vital role. Determining who should be held accountable for AI decisions and understanding the legal and ethical responsibilities involved is crucial. This ensures that AI is used in a manner that prioritises the well-being and rights of individuals and society as a whole.

As AI systems rely on vast amounts of data, privacy concerns are of utmost importance. Striking the right balance between AI advancement and user privacy is a delicate task. The Information Commissioner’s Office (ICO) provides guidelines on data protection and privacy in AI, offering valuable insights into protecting personal information while leveraging AI technologies.

While ethical considerations are essential, AI also presents numerous opportunities for social good. AI applications can be harnessed to address societal challenges and deliver positive impacts. However, it is crucial to ensure that these applications are designed and implemented ethically, taking into account potential unintended consequences. Ethical considerations should guide the development and implementation of AI for social good.

The field of AI ethics is not limited to national boundaries; it requires a global perspective. Different cultural and regional approaches to AI ethics exist, and understanding these perspectives is crucial for fostering international collaboration. The Nuffield Council on Bioethics has been a proponent of international collaboration, emphasizing the need for diverse voices and perspectives in shaping AI ethics.

Looking to the future, emerging trends and challenges in AI ethics need to be anticipated. As AI technologies continue to evolve, new ethical dilemmas will arise. Education and policy have a crucial role to play in shaping the future of ethical AI, ensuring that developers, users, and policymakers are equipped with the necessary knowledge and tools to navigate the ethical landscape.


In summary, mapping the AI ethics landscape is vital for ensuring the responsible and ethical development and use of AI technologies. This introduction has explored key issues such as bias and fairness, transparency, accountability, privacy concerns, opportunities for social good, global perspectives, and future trends.

It is essential to integrate ethics into AI development to safeguard against unintended consequences and to create AI systems that benefit society as a whole. As technology continues to advance, the ongoing journey of ethical AI reminds us of the importance of continuously evaluating and addressing the ethical implications of our rapidly evolving technological landscape.

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AI Governance

AI Governance: What are the Latest Global Initiatives?

Learn about recent AI governance initiatives in the European Union, United Kingdom and worldwide.



ai governance

Why AI Governance?

As Artificial Intelligence rapidly evolves with increasing power, there are serious concerns about the potential downsides like job losses, bias, discrimination and misuse. AI Governance aims to mitigate these risks and ensure AI benefits everyone. Lets explore some of the latest developments here.

AI Governance in European Union

The European Union’s recent AI Act aims to regulate the development and use of AI, with a focus on high-risk systems. It requires more transparency in how AI models are developed and holds companies accountable for any harms resulting from their use. The Act mandates that companies must assess and mitigate risks, ensure system security, and report serious incidents and energy consumption. Notably, the EU is also working on the AI Liability Directive, which would enable financial compensation for those harmed by AI technology​​.

AI Governance in United Kingdom

The UK has taken a more hands-off approach compared to the European Union. The UK, home to significant AI research and development, including Google DeepMind, has indicated that it does not plan to regulate AI in the short term. However, companies operating in the UK will still need to comply with EU regulations if they wish to do business within the European Union.

This situation reflects the “Brussels effect,” where the EU’s regulatory standards tend to set a de facto global standard, as seen previously with the General Data Protection Regulation (GDPR). The UK’s approach suggests a balance between fostering innovation in AI and the need for regulatory oversight, with an eye on developments in the EU and other regions​​.

The UK’s approach to AI governance as of 2024 is encapsulated in the Artificial Intelligence (Regulation) Bill introduced to the UK Parliament. Key aspects of this bill include:

Creation of an AI Authority

This body will evaluate the regulatory framework’s effectiveness in fostering innovation and managing AI risks. It will engage in horizon scanning, collaborate with the AI industry, accredit independent AI auditors, and educate businesses and individuals about AI. It will also align with international AI regulatory standards​​.

Appointment of AI Officers

Certain organizations will be required to appoint an AI officer, responsible for ensuring safe, ethical, and unbiased use of AI within the business. This includes guaranteeing that data used in AI technologies is unbiased​​.

Reporting Requirements for Third-Party Data and IP

All parties involved in AI training must submit detailed records of any third-party data and IP utilized during training to the AI Authority. Entities providing AI-based products or services must inform customers about any health risks, include explicit labels, and offer opportunities for consent​​.

Principles-based Regulatory Approach

The UK’s regulatory framework proposed in a White Paper is underpinned by five broad principles: safety, security, robustness; appropriate transparency and explainability; fairness; accountability and governance; and contestability and redress. This framework is expected to be issued on a non-statutory basis initially, with a statutory duty on regulators to have “due regard” to these principles in the future​​.

Empowering Existing Regulators

Instead of creating a new AI regulator, the UK Government plans to support existing regulators to apply these principles using their available powers and resources. This approach aims to provide clear and consistent guidance for businesses operating under multiple regulators​​.

Centralized Function Support

The UK Government proposes creating central functions to support the AI regulatory framework, including developing a central monitoring, evaluation, and risk assessment framework, and offering a multi-regulator AI sandbox​​.

Focus on Generative AI

The UK Government plans to clarify the relationship between intellectual property law and Generative AI and to establish a regulatory sandbox for AI innovations covering multiple sectors​​.

This bill is at its early stage in the legislative process and is subject to change following consultations. However, businesses should be developing robust AI governance programs to ensure responsible development, deployment, and use of AI systems in anticipation of these regulations.

AI Governance in China

AI regulation in China has been more fragmented, with individual legislation for different AI applications (e.g., algorithmic recommendation services, deepfakes, generative AI). However, China plans to introduce a comprehensive AI law covering all aspects of AI, similar to the EU’s approach. This law would include a national AI office, annual social responsibility reports for foundation models, and a negative list of high-risk AI areas requiring government approval for research​​.

AI Governance in California

the California Privacy Protection Agency (CPPA) has proposed regulations on automated decision-making under the California Consumer Privacy Act (CCPA). This includes rights for consumers to receive notice and opt out of certain automated decisions. The U.S. Securities and Exchange Commission (SEC) has also proposed rules to address conflicts of interest posed by AI use in financial services​​. The U.S. AI Executive Order calls for testing and reporting rules for AI tools, focusing on cybersecurity and privacy risks​​.

World Health Organisation

The WHO released guidance on the Ethics and Governance of large multi modal models (LMMs) in healthcare, outlining over 40 recommendations for governments, technology companies, and healthcare providers. These guidelines focus on the appropriate use of LMMs to promote health and protect populations from potential risks​​.

Global Efforts

These developments reflect a growing global effort to regulate AI technologies, addressing ethical, legal, and societal concerns. The EU’s proactive stance is particularly influential, potentially setting a de facto global standard for AI governance, similar to its impact with the General Data Protection Regulation (GDPR).

More than 37 countries, including India and Japan, have proposed AI-related legal frameworks. The United Nations has established an AI advisory board to create global agreements on AI governance. The Bletchley Declaration, signed by representatives from the EU, U.S., U.K., China, and other countries, emphasizes trustworthy AI and calls for international cooperation​​.


In summary, AI governance is becoming increasingly important as artificial intelligence continues to advance. The rapid evolution of AI brings immense opportunities but also serious concerns about job displacement, bias, discrimination and misuse with different parts of the globe including the EU, United Kingdom, China and United States taking different approaches to regulate and address these concerns.

The EU is leading the way with the AI Act, which focuses on high-risk AI systems, transparency, and accountability. The UK is adopting a principles based regulatory approach with the Artificial Intelligence (Regulation) Bill, emphasizing safety, fairness, and accountability. China is working on comprehensive AI legislation, and the United States is proposing regulations for automated decision-making and AI use in financial services.

Clearly there is much in motion but even more so on the way with global AI Governance development in 2024.

KASBA.AI is an Expert hub for AI tool reviews, latest news, AI governance and learning resources on ChatGPT Store.

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Can Artificial Intelligence Replace Humans?

In a world dominated by economic value and increased automation, there is a growing worry about whether AI will replace humans.



Can Artificial Intelligence Replace Humans? An Engineering Perspective

In a world dominated by economic value and increased automation, there is a growing worry about whether Artificial Intelligence will replace humans. Yet, many believe that instead of taking jobs away, AI is transforming how we work, unlocking human potential and changing how we innovate and boost productivity. In engineering, it’s crucial to identify roles susceptible to AI and automation, as well as those resilient to change. In this piece, we’ll navigate the dynamic landscape and dive into the impact of artificial intelligence on engineering and related disciplines.

AI Robots Are On The Rise

It was expected that robots would replace low skilled labour, particularly in monotonous and dangerous tasks on factory floors. In reality, human labour remains more cost effective than investing in purchasing and programming robots for most facilities. In addition to robotics hardware, the cost of training is substantial: every time you make a change to the process—traditional robots must be re-trained.

Only in large-scale production, such as smartphone assembly, has robotics become practical due to the high volume. A big breakthrough is on the horizon, though: The latest robotics systems with computer vision and artificial intelligence can train themselves and follow generic commands in natural language. When you can “ask” a robot to separate red “things” and green “things” in plain English, robotics automation has tremendous potential.

AI Algorithmic Copywriting

Copywriting became popular because people realized that persuasive content makes a big impact in grabbing the audience’s attention. Whether it’s on websites, press releases or various media platforms, effective text plays a vital role in conveying official information and engaging with potential customers.

Presently, the work of copywriters may be greatly facilitated by artificial intelligence. While it won’t disappear entirely, AI may empower engineers with specialized knowledge to write compelling articles without hiring other people. AI cannot completely replace copywriters, as the importance of high taste and the quality of the text are crucial factors that AI may struggle to replicate. Nonetheless, the significance of particular knowledge in specific domains is also starting to emerge.

AI Designer

While graphic designers are all-in on adopting AI tech, the realm of Industrial Design clings to manual processes. However, it doesn’t imply that industrial designers are barred from, or should refrain from, the power of AI. For instance, they can extract valuable insights by hiring AI to generate multiple product concepts faster. Alternatively, they can task AI to generate a substantially broader range of product sketches, enhancing the exploration of design possibilities.

At present, AI-generated product renders often fall short of perfection or don’t account for manufacturing limitations. Nevertheless, continuous refinement through iterative prompts is feasible. This process might result in renders and sketches at a reasonable pace, potentially faster than starting from scratch, yet it may not revolutionize the field. While generative AI can assist less skilled designers and expedite the design process, high-end professionals rely on their processes and creativity.

AI 10x Engineers

The hot conversation in Silicon Valley revolves around whether AI can replace large software engineering staff. Big tech companies hire tens of thousands of engineers to write generic and not always ground breaking software. Should programmers be worried about their jobs? It depends.

Website designers are at risk: AI tools can create great-looking web pages with simple prompts. Further customization, such as changing fonts or adding buttons, is even easier than asking your programmer friend.

More advanced systems are developed by hundreds of programmers. Following the 80/20 rule, even before AI, some key members created the most value. Who is a “10x engineer?” A person who can write ten times more lines of code than an average programmer. With AI, 10x engineers can drive even more value. Shall we say 100 lines of code? This way, a team of 10 programmers, together with an AI copilot, a system that engineers can “ask” to write a piece of code—will do more than their entire organization did before.

AI Electronics Engineers

Electrical engineers develop physical products. Every headphone or camera developed in the U.S. was designed by a team of engineers, each earning $150,000 or more per year. This drives the total development cost into several million dollars. Can AI design a new product for a startup? The short answer is NO.

However, it can augment and expedite development. For instance, AI could generate a diagram outlining the major components of a specific device. Engineers spend a lot of time manually selecting components and discussing them with manufacturers. An AI co-pilot may compile a list of the top 10 manufacturers, find their contact info and draft email requests for pricing and documentation. AI can also help perform calculations and solve math problems. After component selection, engineers connect all parts on the Printed Circuit Board (PCB). While it remains a mainly manual process, CAD software is incorporating more and more AI tools to expedite the development.

AI Mechanical Engineers

The development process unfolds as our designer crafts the initial design, and our electronics team translates it into a functional PCB. At a certain point, the design is handed over to Mechanical Engineers, who transform it into a manufacturable enclosure. Integration of electronics and mechanics is a meticulous, hands-on affair. Currently, no AI software exists to seamlessly handle the complexities of developing mechanical devices. Even sophisticated tools fall short, and the integration process remains a manual craft. The limited AI involvement may extend to highlighting potential conflicts or identifying areas where design aesthetics could be improved, but the bulk of the work is done by skilled hands.

AI No One Likes To Dwell On Limitations

Our world is and should be evolving, but technology is far from being able to fully replace highly skilled engineers. Key qualities such as creativity, effective communication and the ability to devise innovative solutions remain invaluable. While AI can complement and enhance certain aspects of work, it is unlikely to completely overshadow the expertise and capabilities of skilled specialists. The reliance on the human touch remains irreplaceable.

Forbes Technology Council is an invitation-only community for world-class CIOs, CTOs and technology executives.

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