Generative AI: A Powerful Tool That Demands Our Utmost Ethical Consideration

Generative AI

Not so long ago, we couldn’t have thought about an intelligent system that could tell stories, make art, or even comprehend complicated data like legal and medical documents. For the majority of us, it was confined to science fiction that appeared improbable. However, the onset of the era of generative AI has completely rewritten our notion of what is possible for an intelligent system. 

Getting to Know Generative AI in Detail 

A complex area of artificial intelligence called “generative AI” has enabled computers to create new content by using already-existing text, audio, video, and even code. According to Gartner, generative AI is one of the most significant and quickly developing technologies that has the potential to boost one’s productivity.  

It’s an emerging reality that has sparked creative applications transforming various industries. A few examples include marketing in retail, enhancing and personalising healthcare treatment, and facilitating adaptive learning and education. 

According to Tad Roselund, managing director and senior partner at consulting firm BCG, “many of the risks posed by generative AI… are enhanced and more concerning than others.” Because of these concerns, a complete strategy incorporating responsible AI, solid governance, and a well-defined strategy is necessary. When embracing generative AI ethics, a company must consider several factors for appropriately using the gen-AI model. 

What are the Ethical Concerns of Generative AI 

It’s impressive how quickly these new-age Gen-AI models are coming onto the market. However, when OpenAI CEO Sam Altman cautions us about the risks associated with language models, we should heed his advice and use this powerful technology wisely because the dangers and AI ethical issues are real. 

1. Misinformation And Deepfakes 

It is concerning because generative AI can create information that conflates fact and fiction. These works, which range from edited films to fake news stories, can sway public opinion, support misinformation, and negatively affect people and organisations. Any company discovered to have participated, directly or indirectly, in disseminating false information faces a steep price in the form of a damaged reputation. In addition to a damaged reputation, consider a situation in which a stock price collapses overnight due to a deepfake video allegedly capturing a CEO making contentious remarks. 

To overcome this issue, one must invest in creating and utilising tools to detect fraudulent content. Additionally, launching user awareness programmes can help stop the disseminating of false information. For example, businesses like Facebook have started developing programmes to identify deepfakes. Businesses that purchase these tools can also collaborate with outside fact-checkers to ensure that any content suspected of being deceptive is examined and, if required, taken down. 

2. Bias and Discrimination 

The data provided to generative models is reflected in them. As such, if trained on biassed datasets, they will unintentionally reinforce prejudices. AI that unintentionally reinforces or even magnifies societal biases may face backlash from the public, legal implications, and harm to its reputation. Consider facial recognition software, which can incorrectly identify people due to prejudice and result in legal disputes or disastrous PR situations.  

First, diversity in training datasets should be prioritised, and regular audits should be conducted to look for biases that weren’t intended. Organisations such as OpenAI emphasise diverse training data. Businesses can form alliances with these groups, guaranteeing that their generative models undergo stringent external audits and bias checks. 

3. Copyright and Intellectual Property 

When generative AI creates stuff that looks precisely like already-published copyrighted materials, there are serious legal issues. Infringements of intellectual property may lead to expensive legal disputes and harm one’s reputation. Think about the music business, where a generative AI’s musical composition that sounds a lot like a copyrighted song by an artist could result in pricey legal action and adverse public reaction. 

Ensure the training materials are licenced and clearly explain the production process for generated content. Metadata tagging can ensure transparency and accountability by tracking the origins of training content. Jukin Media, for instance, provides a platform for obtaining permissions and rights for user content. Adopting such procedures can protect against inadvertent violations. 

4. Privacy and Data Security 

Generative models, especially those trained on personal data, are associated with privacy hazards. There is serious concern about the misuse of this data or the creation of uncannily accurate artificial profiles. Violating user privacy or improperly using data may result in legal repercussions and damage user confidence. An AI trained on individual medical histories can unintentionally create a synthetic profile that resembles a genuine patient, raising privacy issues and perhaps violating the Health Insurance Portability and Accountability Act (HIPAA).  

When training models, err on anonymisation and support data security protocols to guarantee user data safety. For instance, the GDPR’s data minimisation principle states that only required data should be processed. Businesses should follow similar guidelines, deleting all non-essential personal data before training and using robust encryption techniques when storing data. 

5. Accountability 

The complex pipeline in constructing and deploying generative AI makes taking responsibility more difficult. An unclear accountability framework can lead to finger-pointing, complicated legal situations, and diminished brand credibility in the event of an incident. Review previous disputes with AI chatbots that displayed offensive or hateful messages—brand damage results from an intensified blame game without unambiguous accountability. 

Create clear guidelines outlining the appropriate application of generative AI. Businesses can utilise policies similar to X’s guidelines for synthetic and modified media as a model. These guidelines clearly define and set boundaries for the usage and distribution of such information. In addition, feedback loops—which allow users to report dubious outputs—can be pretty helpful. 

Looking from the Business Perspective

In addition to the ethical and societal ramifications, businesses that ignore these problems run real dangers. Stakeholders include a brand image, user trust, and financial stability. Overlooking the moral aspects of generative AI is immoral and puts businesses in danger. 

The first stage is awareness. Acknowledge and comprehend the ethical risks related to generative artificial intelligence. After they have been recognised, proactively design procedures, policies, and tactics that encourage responsible use. Finally, promote openness and cultivate an ethical AI culture inside and outside the company. 

It matters not only what we can produce in this exciting new field of generative AI but also how we create it. Businesses leading this transition have a great deal of responsibility. It demands thoughtful reflection, moral responsibility, and creativity. Let’s face the situation head-on. 

What We Have Learned Till Now 

The quality of AI models is contingent upon the quality of the training data. If the training data reflects societal biases, the model will act biasedly. According to a recent study published by Bloomberg, these models’ bias is even worse than that of the real-world data on which they are trained and, most importantly, AI development services

When the report states that “white male CEOs run the world according to Stable Diffusion,” it exposes a grim reality. Rarely do women work as judges, solicitors, or doctors. While women with dark skin flip hamburgers, guys with dark skin commit crimes. The data must reflect the egalitarian nature of the world by incorporating various teams and viewpoints at every stage of the model creation process. 

Hence, a Gen-AI model should overcome these biases, focus on producing results that are true to the world, and adhere to the policies and guidelines laid down by the regulators. 

Chahat bhateja
Blockchain Strategy Consultant at WebMob Software Solutions

Chahat has a deep passion for leveraging blockchain technology to drive innovation and transformation. With over seven years of experience, she has been instrumental in guiding WebMob through the complexities of blockchain adoption. Her expertise and forward-thinking approach make her a key thought leader in the blockchain space, paving the way for a modern decentralized industry.

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