From Algorithms to AI: A 25-Year Journey of Human Advancement

A facial recognition system using AI. Getty
A facial recognition system using AI. Getty
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From Algorithms to AI: A 25-Year Journey of Human Advancement

A facial recognition system using AI. Getty
A facial recognition system using AI. Getty

Over the past 25 years, technological innovation has accelerated unprecedentedly, transforming societies worldwide. Historically, technologies like electricity and the telephone took decades to reach 25% of US households—46 and 35 years respectively. In stark contrast, the internet did so in just seven years. Platforms like Facebook gained 50 million users in two years, Netflix redefined media consumption rapidly, and ChatGPT attracted over a million users in merely five days. This rapid adoption underscores both technological advancements and a societal shift in embracing innovation.

Leading this wave was Google, a startup founded in a garage. In 1998, Google introduced the PageRank algorithm, revolutionizing web information organization. Unlike traditional search engines focusing on keyword frequency, PageRank assessed page importance by analyzing interlinking, treating hyperlinks as votes of confidence and capturing collective internet wisdom. Finding relevant information became faster and more intuitive, making Google’s search engine indispensable globally.

Amid the data revolution, a new computing paradigm emerged: machine learning. Developers began creating algorithms that learn from data and improve over time, moving away from explicit programming. Netflix exemplified this shift with its 2006 prize offering $1 million for a 10% improvement in its recommendation algorithm. In 2009, BellKor’s Pragmatic Chaos succeeded using advanced machine learning, highlighting the power of adaptive algorithms.

Researchers then delved into deep learning, a subset of machine learning involving algorithms learning from vast unstructured data. In 2011, IBM’s Watson showcased deep learning’s power on “Jeopardy!” Competing against champions Brad Rutter and Ken Jennings, Watson demonstrated an ability to understand complex language nuances, puns, and riddles, securing victory. This significant demonstration of AI’s language processing paved the way for numerous natural language processing applications.

In 2016, Google DeepMind’s AlphaGo achieved a historic milestone by defeating Go world champion Lee Sedol. Go, known for its complexity and intuitive thinking, had been beyond AI’s reach. AlphaGo’s victory astonished the world, signaling that AI could tackle problems requiring strategic thinking through neural networks.

As AI capabilities grew, businesses began integrating these technologies to innovate. Amazon revolutionized retail by harnessing AI for personalized shopping. By analyzing customers’ habits, Amazon’s algorithms recommended products accurately, streamlined logistics, and optimized inventory. Personalization became a cornerstone of Amazon’s success, setting new customer service expectations.

In the automotive sector, Tesla led in integrating AI into consumer products. With Autopilot, Tesla offered a glimpse into transportation’s future. Initially, Autopilot used AI to process data from cameras and sensors, enabling adaptive cruise control, lane centering, and self-parking. By 2024, Full Self-Driving (FSD) allowed cars to navigate with minimal human intervention. This leap redefined driving and accelerated efforts to develop self-driving vehicles like Waymo’s.

Healthcare also witnessed AI’s transformative impact. Researchers developed algorithms detecting patterns in imaging data imperceptible to humans. For example, an AI system analyzed mammograms to identify subtle changes predictive of cancer, enabling earlier interventions and potentially saving lives.

In 2020, DeepMind’s AlphaFold achieved a breakthrough: accurately predicting protein structures from amino acid sequences—a challenge that had eluded scientists for decades. Understanding protein folding is crucial for drug discovery and disease research. DeepMind’s spin-off, Isomorphic Labs, is leveraging the latest AlphaFold models and partnering with major pharmaceutical companies to accelerate biomedical research, potentially leading to new treatments at an unprecedented pace.

The finance industry quickly embraced AI. PayPal implemented advanced algorithms to detect and prevent fraud in real time, building trust in digital payments. High-frequency trading firms utilized algorithms executing trades in fractions of a second. Companies like Renaissance Technologies used machine learning for trading strategies, achieving remarkable returns. Algorithmic trading now accounts for a significant portion of trading volume, increasing efficiency but raising concerns about market stability, as seen in the 2010 Flash Crash.

In 2014, Ian Goodfellow and colleagues developed Generative Adversarial Networks (GANs), consisting of two neural networks—the generator and discriminator—that compete against each other. This dynamic enabled creating highly realistic synthetic data, including images and videos. GANs have generated lifelike human faces, created art, and assisted in medical imaging by producing synthetic data for training, enhancing diagnostic models’ robustness.

In 2017, Transformer architectures introduced a significant shift in AI methodology, fundamentally changing natural language processing. Developed by Google Brain researchers, Transformers moved away from traditional recurrent and convolutional neural networks. They rely entirely on attention mechanisms to capture global dependencies, allowing efficient parallelization and handling longer contexts.

Building on this, OpenAI developed the Generative Pre-trained Transformer (GPT) series. GPT-3, released in 2020, demonstrated unprecedented capabilities in generating human-like text and understanding context. Unlike previous models requiring task-specific training, GPT-3 could perform a wide range of language tasks with minimal fine-tuning, showcasing the power of large-scale unsupervised pre-training and few-shot learning. Businesses began integrating GPT models into applications from content creation and code generation to customer service. Currently, multiple models are racing to achieve “artificial general intelligence” (AGI) that understands, reasons, and creates content superior to humans.

The journey from algorithms to AI over the past 25 years is a testament to the seemingly limitless human curiosity, creativity, and relentless pursuit of progress. We’ve moved from basic algorithms to sophisticated AI systems that understand language, interpret complex data, and exhibit creativity. Exponential growth in computational power, big data, and breakthroughs in machine learning have accelerated AI development at an unimaginable pace.

Looking ahead, predicting the next 25 years is challenging. As AI advances, it may unlock solutions to challenges we perceive as insurmountable—from curing diseases and solving energy problems to mitigating climate change and exploring deep space. AI’s potential to revolutionize every aspect of our lives is vast. While the exact trajectory is uncertain, the fusion of human ingenuity and AI promises a future rich with possibilities. One wonders when and where the next Google or OpenAI may emerge and what significant good it may bring to the world!



KAUST Scientists Develop AI-Generated Data to Improve Environmental Disaster Tracking

King Abdullah University of Science and Technology (KAUST) logo
King Abdullah University of Science and Technology (KAUST) logo
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KAUST Scientists Develop AI-Generated Data to Improve Environmental Disaster Tracking

King Abdullah University of Science and Technology (KAUST) logo
King Abdullah University of Science and Technology (KAUST) logo

King Abdullah University of Science and Technology (KAUST) and SARsatX, a Saudi company specializing in Earth observation technologies, have developed computer-generated data to train deep learning models to predict oil spills.

According to KAUST, validating the use of synthetic data is crucial for monitoring environmental disasters, as early detection and rapid response can significantly reduce the risks of environmental damage.

Dean of the Biological and Environmental Science and Engineering Division at KAUST Dr. Matthew McCabe noted that one of the biggest challenges in environmental applications of artificial intelligence is the shortage of high-quality training data.

He explained that this challenge can be addressed by using deep learning to generate synthetic data from a very small sample of real data and then training predictive AI models on it.

This approach can significantly enhance efforts to protect the marine environment by enabling faster and more reliable monitoring of oil spills while reducing the logistical and environmental challenges associated with data collection.


Uber, Lyft to Test Baidu Robotaxis in UK from Next Year 

A sign of Baidu is pictured at the company's headquarters in Beijing, China March 16, 2023. (Reuters)
A sign of Baidu is pictured at the company's headquarters in Beijing, China March 16, 2023. (Reuters)
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Uber, Lyft to Test Baidu Robotaxis in UK from Next Year 

A sign of Baidu is pictured at the company's headquarters in Beijing, China March 16, 2023. (Reuters)
A sign of Baidu is pictured at the company's headquarters in Beijing, China March 16, 2023. (Reuters)

Uber Technologies and Lyft are teaming up with Chinese tech giant Baidu to try out driverless taxis in the UK next year, marking a major step in the global race to commercialize robotaxis.

It highlights how ride-hailing platforms are accelerating autonomous rollout through partnerships, positioning London as an early proving ground for large-scale robotaxi services ‌in Europe.

Lyft, meanwhile, plans ‌to deploy Baidu's ‌autonomous ⁠vehicles in Germany ‌and the UK under its platform, pending regulatory approval. Both companies have abandoned in-house development of autonomous vehicles and now rely on alliances to accelerate adoption.

The partnerships underscore how global robotaxi rollouts are gaining momentum. ⁠Alphabet's Waymo said in October it would start ‌tests in London this ‍month, while Baidu ‍and WeRide have launched operations in the ‍Middle East and Switzerland.

Robotaxis promise safer, greener and more cost-efficient rides, but profitability remains uncertain. Public companies like Pony.ai and WeRide are still loss-making, and analysts warn the economics of expensive fleets could pressure margins ⁠for platforms such as Uber and Lyft.

Analysts have said hybrid networks, mixing robotaxis with human drivers, may be the most viable model to manage demand peaks and pricing.

Lyft completed its $200 million acquisition of European taxi app FreeNow from BMW and Mercedes-Benz in July, marking its first major expansion beyond North America and ‌giving the US ride-hailing firm access to nine countries across Europe.


Italy Fines Apple Nearly 100m Euros over App Privacy Feature

An Apple logo hangs above the entrance to the Apple store on 5th Avenue in the Manhattan borough of New York City, July 21, 2015. REUTERS/Mike Segar/File Photo Purchase Licensing Rights
An Apple logo hangs above the entrance to the Apple store on 5th Avenue in the Manhattan borough of New York City, July 21, 2015. REUTERS/Mike Segar/File Photo Purchase Licensing Rights
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Italy Fines Apple Nearly 100m Euros over App Privacy Feature

An Apple logo hangs above the entrance to the Apple store on 5th Avenue in the Manhattan borough of New York City, July 21, 2015. REUTERS/Mike Segar/File Photo Purchase Licensing Rights
An Apple logo hangs above the entrance to the Apple store on 5th Avenue in the Manhattan borough of New York City, July 21, 2015. REUTERS/Mike Segar/File Photo Purchase Licensing Rights

Italy's competition authority said Monday it had fined US tech giant Apple 98 million euros ($115 million) for allegedly abusing its dominant position in the mobile app market.

According to AFP, the AGCM said in a statement that Apple had violated privacy regulations for third-party developers in a market where it "holds a super-dominant position through its App Store".

The body said its investigation had established the "restrictive nature" of the "privacy rules imposed by Apple... on third-party developers of apps distributed through the App Store".

The rules of Apple's App Tracking Transparency (ATT) "are imposed unilaterally and harm the interests of Apple's commercial partners", according to the AGCM statement.

French antitrust authorities earlier this year handed Apple a 150-million euro fine over its app tracking privacy feature.

Authorities elsewhere in Europe have also opened similar probes over ATT, which Apple promotes as a privacy safeguard.

The feature, introduced by Apple in 2021, requires apps to obtain user consent through a pop-up window before tracking their activity across other apps and websites.

If they decline, the app loses access to information on that user which enables ad targeting.

Critics have accused Apple of using the system to promote its own advertising services while restricting competitors.