Hype over reality – AI Washing

Background for Artificial Intelligence Washing

  • The release of OpenAI’s ChatGPT in 2022 sparked an explosion of news and interest in generative AI.
  • Many tech companies and startups are now marketing AI products, claiming they will revolutionise consumer behaviour.
  • Rise in pitch by Startups: Startups mentioning AI in their pitches increased from 10% in 2022 to over 25% in 2023.
  • AI and earnings: According to a report by NBC News: Over 50% of S&P 500 companies referenced AI in their earnings calls last year.

Artificial intelligence(AI):

  • It is a branch of computer science dealing with the simulation of intelligent behavior in computers.
  • It describes the action of machines accomplishing tasks that have historically required human intelligence.
  • It includes technologies like machine learning, pattern recognition, big data, neural networks, self algorithms etc.
  • Eg: Facebook’s facial recognition software which identifies faces in the photos we post, the voice recognition software that translates commands we give to Alexa, etc are some of the examples of AI already around us.

Generative AI:

  • Generative AI industry projected to increase global GDP by as much as $7 to $10 trillion, the development of generative AI solutions
  • It is a cutting-edge technological advancement that utilizes machine learning and artificial intelligence to create new forms of media, such as text, audio, video, and animation.
  • With the advent of advanced machine learning capabilities: It is possible to generate new and creative short and long-form content, synthetic media, and even deep fakes with simple text, also known as prompts.

AGI vs. AI

AGI is a subcategory of AI, and the former can be seen as an upgraded version of the latter:

Artificial intelligence is often trained on data to perform specific tasks or a range of tasks limited to a single context. Many forms of AI rely on algorithms or pre-programmed rules to guide their actions and learn how to operate in a certain environment.

Artificial general intelligence, on the other hand, is able to reason and adapt to new environments and different types of data. So instead of depending on predetermined rules to function, AGI embraces a problem-solving and learning approach — similar to humans. Because of its flexibility, AGI is capable of handling more tasks in different industries and sectors.

 

AI innovations:

  1. GANs (Generative Adversarial Networks)
  2. LLMs (Large Language Models)
  3. GPT (Generative Pre-trained Transformers)
  4. Image Generation to experiment
  5. Create commercial offerings like DALL-E for image generation
  6. ChatGPT for text generation.
  7. It can write blogs, computer code, and marketing copies and even generate results for search queries.

Judgments touching  AI:

  1. Christian Louboutin Sas vs Nakul Bajaj and Ors (2018): Delhi High Court held that safe harbor protection applies solely to “passive” intermediaries referring to entities functioning as mere conduits or passive transmitters of information.
  2. Puttaswamy judgment (2017): established a foundation for privacy jurisprudence in the country, leading to the enactment of the Digital Personal Data Protection Act, 2023 (DPDP).
  • The DPDP Act introduces the “right to erasure“as well as “right to be forgotten”.
  • Once a GAI model is trained on a dataset, it cannot truly “unlearn” the information it has already absorbed.

Concept of AI Washing

  • AI washing is a deceptive marketing tactic companies employ to exaggerate the amount of Artificial Intelligence (AI) technology they use in their products.
  • Goal of AI Washing: The goal of AI washing is to make a company’s offerings seem more advanced than they are and capitalise on the growing interest in AI technology.
  • Derived from: AI washing is a term derived from greenwashing, where companies exaggerate their environmental friendliness to appeal to customers.

Some Components of AI Washing:

  • False Claims of AI Integration: Businesses claiming to have integrated AI into their products while using less sophisticated technology.
  • Misleading Advertisements: Advertisements that overstate the capabilities of a company’s AI tools.
  • Misleading consumers about features that are not yet operational in their AI products.

Coined by: It is unclear who coined the term AI washing, it was popularised by the US Securities and Exchange Commission (SEC) when it levied fines against investment advisory firms Global Predictions and Delphia in March 2024.

The securities regulator found that the companies had made false statements to their clients about providing ‘expert AI-driven forecasts’ and using machine learning to manage retail client portfolios.

Reasons for AI Washing

  1. Pressure to Advance Quickly: The rapid advancement and vast potential of AI have pushed many companies, including a few tech giants, to cut corners when it comes to rolling out their AI-based products.
  2. Capitalise the AI rush: The rush to be branded as an AI business follows a long pattern of companies looking to capitalise on the hype surrounding new and emerging technologies.
  3. Raising Funds: AI washing often stems from the desire to raise funds by exaggerating AI capabilities to attract investors who view AI as a promising sector.

Reality of AI adoption

  • Discrepancy Between Claims and Practice:
  • AI adoption often reveals a significant gap between what companies claim and what they actually implement.
  • Many businesses tout AI integration in their operations but struggle to fully implement or utilise AI technologies effectively.
  • A US Census Bureau survey in November last year found only 4.4% of American businesses were actually using AI to produce goods and services.

AI washing a Concern

  • AI washing has multidimensional repercussions as it not only erodes trust and transparency in technological claims but also distorts market perceptions.
  1. Diversion of Resources: AI washing redirects management attention and resources away from genuine AI innovation.
  2. Misguided Investments: Companies may prioritise superficial AI enhancements over developing meaningful capabilities.
  3. Slowed Progress: The focus on superficial AI could hinder real technological advancements.
  4. Impact on Consumers: Misleading AI claims can lead to disillusionment and distrust among consumers.
  5. Industry Implications: AI washing undermines the credibility and progress of the broader tech industry in AI development, and subpar AI technology could pose data security and privacy risk
  6. Complicate decision making: AI washing can complicate decision making for businesses that are genuinely looking for valuable AI solutions. This can hinder their digital transformation efforts, stifle innovation, and jeopardise performance.

Guidelines to Avoid AI Washing

There are several guidelines issued to avoid AI Washing. Some of them by the Federal Trade Commission (FTC) and Securities and Exchange Board of India (SEBI) are as follows:

Federal Trade Commission (FTC) Recommendations:

  • Assessment:
  1. Businesses should assess if they are exaggerating their AI product’s capabilities.
  2. They should avoid claiming superiority over non-AI products unless substantiated.
  3. Verification is essential to confirm if the product genuinely utilises AI technology.
  • Clarification on AI Labelling: Merely using AI tools in development does not qualify a product as AI-powered.

Securities and Exchange Board of India (SEBI) Circular:

  • Issued Caution: SEBI’s 2019 circular cautions companies about the risks associated with AI washing.
  • Transparency requirements: Companies are advised to ensure transparency and accuracy in their AI-related claims.
  • Financial gains from AI in financial products should be accurately represented: Artificial Intelligence( AI)/Machine Learning (ML) systems are often opaque, making it hard to understand their behaviour.
  • Financial gains from AI in financial products should be accurately represented to avoid misleading investors.
  • Intermediaries must be clear about what AI can and cannot do in their financial offerings to maintain trust and clarity.

Examples of AI Washing in real life

  • Google: Last year, Google unveiled Gemini with a video demonstrating its multimodal AI chatbot’s ability to recognize pictures and objects.
  • In the video, Gemini correctly guesses a drawn animal as a duck.
  • However, Google later confirmed that the video was not shot in real time but was created using text prompts and stitched still frames.
  • Amazon: Amazon reportedly removed its cashier-less checkout systems from many grocery stores after Business Insider discovered that the ‘Just Walk Out’ technology, which claimed to use AI and sensors, actually relied on employees in India to review transactions.
  • Misleading Apps: There has also been a wave of AI apps that boast of chatbot functionalities when in reality they are just ChatGPT wrappers, meaning that the underlying technology powering the apps is not theirs but belongs to OpenAI.

    In India, Ola founder Bhavesh Agarwal’s startup released a beta version of Krutim AI which was touted as being a homegrown ChatGPT rival. However, many users started questioning if Krutim AI was a ChatGPT wrapper after the chatbot purportedly confirmed to them that it was “created by OpenAI.

 



POSTED ON 04-07-2024 BY ADMIN
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