Breaking 09:30 FIFA and Netflix team up to launch official World Cup 2026 video game 09:15 Bengio warns world is building uncontrollable artificial intelligence systems 09:09 Trump’s “Crazy” remark deepens strain with Netanyahu at sensitive political moment 08:54 Google rolls out Gemini avatar for AI video clones 08:19 Microsoft pushes in-house AI as Anthropic costs come under scrutiny 07:53 Anthropic warns AI may soon build its own successors 07:36 Engine shortages ground hundreds of aircraft worldwide 07:30 Petro criticizes U.S. support for rival candidate ahead of Colombia’s presidential runoff 07:19 Bitcoin outperforms Nasdaq despite sharp correction, says Raoul Pal 07:19 Spielberg returns to sci-fi with alien thriller Disclosure Day 07:15 United States expands sanctions against Cuban president and Castro family members 12:45 T-Mobile launches new tech center in India, plans nearly 1,000 jobs by 2027 12:15 United States considers new tariffs targeting Morocco over forced labor allegations 11:45 Amazon unveils new AI warehouse robot as part of $12 billion expansion in Europe 11:05 Bankless cofounder exits ether positions after thesis shift 11:00 Netanyahu says US and Israel ready for renewed Iran strikes 11:00 One killed and three injured in shooting during graduation ceremony at California high school 10:57 Zakaria El Ouahdi left behind in Morocco after visa issue delays World Cup 2026 travel 10:00 Broadcom falls after revenue miss raises doubts over AI Boom expectations 09:41 Gold edges higher as dollar weakens on Iran talks hopes

Artificial Intelligence: The Enigmatic Foe of Your Privacy

Friday 07 June 2024 - 13:00
Artificial Intelligence: The Enigmatic Foe of Your Privacy

In the realm of technological advancements, the rise of artificial intelligence (AI) unveils a captivating panorama of possibilities. However, this sophisticated technology harbors an unsettling potential to gravely compromise the confidentiality of personal data.

AI and machine learning have transformed a myriad of domains, spanning computing, finance, medical research, automatic translation, and more, expanding with each passing month. Yet, these strides are accompanied by a recurring inquiry: what is the impact of these technologies on our privacy and data confidentiality? Regardless of the AI model in question, their development is fueled by ingesting an astronomical quantity of data, some of which could be highly sensitive.

The Retention of Secrets by AI

One of the principal challenges faced by enterprises training artificial intelligences lies in the inherent capacity of these technologies to learn and memorize intricate patterns derived from their training data. This characteristic, while advantageous for enhancing model accuracy (preventing hallucinations, for instance), poses a significant risk to privacy.

Machine learning models, comprising algorithms or systems that enable AI to learn from data, can encompass billions of parameters, akin to GPT-3 with its staggering 175 billion parameters. These models leverage this vast expanse of data to minimize prediction errors. Therein lies the crux of the issue: during the process of adjusting their parameters, they may inadvertently retain specific information, including sensitive data.

For illustration, if models are trained on medical or genomic data, they could memorize private information that could be extracted through targeted queries, thereby jeopardizing the confidentiality of the individuals concerned. Envision a scenario where a cyberattack or an accidental data breach occurs within the organization possessing these models; malicious entities could potentially disclose this sensitive information.

AI and the Prediction of Sensitive Information

AI models can also harness seemingly innocuous data to deduce sensitive information. A striking example is that of the Target retail chain, which successfully predicted pregnancies by analyzing customers' purchasing habits. By cross-referencing data such as the purchase of dietary supplements or unscented lotions, the model could identify potentially pregnant customers and target them with specific advertisements. This case demonstrates that even mundane data can unveil highly personal aspects of one's privacy.

Despite efforts to limit data memorization, most current methods have proven ineffective. However, there is one technique presently considered the most promising for ensuring a degree of confidentiality during model training: differential privacy. But as you will see, it is far from miraculous.

Differential Privacy: An Imperfect Solution?

To explain differential privacy in simple terms, consider this example: imagine participating in a survey, but you disagree with someone being aware of your participation or responses. Differential privacy introduces a small amount of "noise" or randomness into the survey data, so that even if someone accesses the results, they cannot be certain of your specific responses. It anonymizes the data while allowing for analysis without compromising your privacy.

This method has been adopted by industry titans like Apple and Google. However, even with this protection, AI models can still draw conclusions or make predictions about personal or private information. To prevent such violations, the only solution is to protect the entire dataset transmitted to the organization, an approach known as local differential privacy.

Despite its advantages, differential privacy is not without its limitations. Its primary drawback is that it can induce a significant decrease in the performance of machine learning methods. Consequently, models may be less accurate, providing erroneous information, and are much slower and costlier to train.

Therefore, a compromise must be struck between achieving satisfactory results and providing sufficient protection for individuals' privacy. A delicate balance must be found and, more importantly, maintained as the AI sector continues to expand. While AI can assist you in your daily life, whether for professional, personal, or academic purposes, do not consider it an ally of your confidentiality, far from it.

In summary, AI models can retain sensitive information during training, and even innocuous data can lead them to draw conclusions that compromise privacy. The differential privacy method is employed to limit this phenomenon, but it is far from perfect.


  • Fajr
  • Sunrise
  • Dhuhr
  • Asr
  • Maghrib
  • Isha

Read more

This website, walaw.press, uses cookies to provide you with a good browsing experience and to continuously improve our services. By continuing to browse this site, you agree to the use of these cookies.