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
TT

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!



India Eyes $200B in Data Center Investments as It Ramps Up Its AI Hub Ambitions

FILE -Google CEO Sundar Pichai, right, interacts with India's Minister for Information and Technology Ashwini Vaishnaw during Google for India 2022 event in New Delhi, Dec. 19, 2022. (AP Photo/Manish Swarup), File)
FILE -Google CEO Sundar Pichai, right, interacts with India's Minister for Information and Technology Ashwini Vaishnaw during Google for India 2022 event in New Delhi, Dec. 19, 2022. (AP Photo/Manish Swarup), File)
TT

India Eyes $200B in Data Center Investments as It Ramps Up Its AI Hub Ambitions

FILE -Google CEO Sundar Pichai, right, interacts with India's Minister for Information and Technology Ashwini Vaishnaw during Google for India 2022 event in New Delhi, Dec. 19, 2022. (AP Photo/Manish Swarup), File)
FILE -Google CEO Sundar Pichai, right, interacts with India's Minister for Information and Technology Ashwini Vaishnaw during Google for India 2022 event in New Delhi, Dec. 19, 2022. (AP Photo/Manish Swarup), File)

India is hoping to garner as much as $200 billion in investments for data centers over the next few years as it scales up its ambitions to become a hub for artificial intelligence, the country’s minister for electronics and information technology said Tuesday.

The investments underscore the reliance of tech titans on India as a key technology and talent base in the global race for AI dominance. For New Delhi, they bring in high-value infrastructure and foreign capital at a scale that can accelerate its digital transformation ambitions.

The push comes as governments worldwide race to harness AI's economic potential while grappling with job disruption, regulation and the growing concentration of computing power in a few rich countries and companies.

“Today, India is being seen as a trusted AI partner to the Global South nations seeking open, affordable and development-focused solutions,” Ashwini Vaishnaw told The Associated Press in an email interview, as New Delhi hosts a major AI Impact Summit this week drawing participation from at least 20 global leaders and a who’s who of the tech industry.

In October, Google announced a $15 billion investment plan in India over the next five years to establish its first artificial intelligence hub in the South Asian country. Microsoft followed two months later with its biggest-ever Asia investment announcement of $17.5 billion to advance India’s cloud and artificial intelligence infrastructure over the next four years.

Amazon too has committed $35 billion investment in India by 2030 to expand its business, specifically targeting AI-driven digitization. The cumulative investments are part of $200 billion in investments that are in the pipeline and New Delhi hopes would flow in.

Vaishnaw said India’s pitch is that artificial intelligence must deliver measurable impacts at scale rather than remain an elite technology.

“A trusted AI ecosystem will attract investment and accelerate adoption,” he said, adding that a central pillar of India’s strategy to capitalize on the use of AI is building infrastructure.

The government recently announced a long-term tax holiday for data centers as it hopes to provide policy certainty and attract global capital.

Vaishnaw said the government has already operationalized a shared computing facility with more than 38,000 graphics processing units, or GPUs, allowing startups, researchers and public institutions to access high-end computing without heavy upfront costs.

“AI must not become exclusive. It must remain widely accessible,” he said.

Alongside the infrastructure drive, India is backing the development of sovereign foundational AI models trained on Indian languages and local contexts. Some of these models meet global benchmarks and in certain tasks rival widely used large language models, Vaishnaw said.

India is also seeking a larger role in shaping how AI is built and deployed globally as the country doesn’t see itself strictly as a “rule maker or rule taker,” according to Vaishnaw, but an active participant in setting practical, workable norms while expanding its AI services footprint worldwide.

“India will become a major provider of AI services in the near future,” he said, describing a strategy that is “self-reliant yet globally integrated” across applications, models, chips, infrastructure and energy.

Investor confidence is another focus area for New Delhi as global tech funding becomes more cautious.

Vaishnaw said the technology’s push is backed by execution, pointing to the Indian government's AI Mission program which emphasizes sector specific solutions through public-private partnerships.

The government is also betting on reskilling its workforce as global concerns grow that AI could disrupt white collar and technology jobs. New Delhi is scaling AI education across universities, skilling programs and online platforms to build a large AI-ready talent pool, the minister said.

Widespread 5G connectivity across the country and a young, tech-savvy population are expected to help with the adoption of AI at a faster pace, he added.

Balancing innovation with safeguards remains a challenge though, as AI expands into sensitive sectors such as governance, health care and finance.

Vaishnaw outlined a fourfold strategy that includes implementable global frameworks, trusted AI infrastructure, regulation of harmful misinformation and stronger human and technical capacity to hedge the impact.

“The future of AI should be inclusive, distributed and development-focused,” he said.


Report: SpaceX Competing to Produce Autonomous Drone Tech for Pentagon 

The SpaceX logo is seen in this illustration taken, March 10, 2025. (Reuters)
The SpaceX logo is seen in this illustration taken, March 10, 2025. (Reuters)
TT

Report: SpaceX Competing to Produce Autonomous Drone Tech for Pentagon 

The SpaceX logo is seen in this illustration taken, March 10, 2025. (Reuters)
The SpaceX logo is seen in this illustration taken, March 10, 2025. (Reuters)

Elon Musk's SpaceX and its wholly-owned subsidiary xAI are competing in a secret new Pentagon contest to produce voice-controlled, autonomous drone swarming technology, Bloomberg News reported on Monday, citing people familiar with the matter.

SpaceX, xAI and the Pentagon's defense innovation unit did not immediately respond to requests for comment. Reuters could not independently verify the report.

Texas-based SpaceX recently acquired xAI in a deal that combined Musk's major space and defense contractor with the billionaire entrepreneur's artificial intelligence startup. It occurred ahead of SpaceX's planned initial public offering this year.

Musk's companies are reportedly among a select few chosen to participate in the $100 million prize challenge initiated in January, according to the Bloomberg report.

The six-month competition aims to produce advanced swarming technology that can translate voice commands into digital instructions and run multiple drones, the report said.

Musk was among a group of AI and robotics researchers who wrote an open letter in 2015 that advocated a global ban on “offensive autonomous weapons,” arguing against making “new tools for killing people.”

The US also has been seeking safe and cost-effective ways to neutralize drones, particularly around airports and large sporting events - a concern that has become more urgent ahead of the FIFA World Cup and America250 anniversary celebrations this summer.

The US military, along with its allies, is now racing to deploy the so-called “loyal wingman” drones, an AI-powered aircraft designed to integrate with manned aircraft and anti-drone systems to neutralize enemy drones.

In June 2025, US President Donald Trump issued the Executive Order (EO) “Unleashing American Drone Dominance” which accelerated the development and commercialization of drone and AI technologies.


SVC Develops AI Intelligence Platform to Strengthen Private Capital Ecosystem

The platform offers customizable analytical dashboards that deliver frequent updates and predictive insights- SPA
The platform offers customizable analytical dashboards that deliver frequent updates and predictive insights- SPA
TT

SVC Develops AI Intelligence Platform to Strengthen Private Capital Ecosystem

The platform offers customizable analytical dashboards that deliver frequent updates and predictive insights- SPA
The platform offers customizable analytical dashboards that deliver frequent updates and predictive insights- SPA

Saudi Venture Capital Company (SVC) announced the launch of its proprietary intelligence platform, Aian, developed in-house using Saudi national expertise to enhance its institutional role in developing the Kingdom’s private capital ecosystem and supporting its mandate as a market maker guided by data-driven growth principles.

According to a press release issued by the SVC today, Aian is a custom-built AI-powered market intelligence capability that transforms SVC’s accumulated institutional expertise and detailed private market data into structured, actionable insights on market dynamics, sector evolution, and capital formation. The platform converts institutional memory into compounding intelligence, enabling decisions that integrate both current market signals and long-term historical trends, SPA reported.

Deputy CEO and Chief Investment Officer Nora Alsarhan stated that as Saudi Arabia’s private capital market expands, clarity, transparency, and data integrity become as critical as capital itself. She noted that Aian represents a new layer of national market infrastructure, strengthening institutional confidence, enabling evidence-based decision-making, and supporting sustainable growth.

By transforming data into actionable intelligence, she said, the platform reinforces the Kingdom’s position as a leading regional private capital hub under Vision 2030.

She added that market making extends beyond capital deployment to shaping the conditions under which capital flows efficiently, emphasizing that the next phase of market development will be driven by intelligence and analytical insight alongside investment.

Through Aian, SVC is building the knowledge backbone of Saudi Arabia’s private capital ecosystem, enabling clearer visibility, greater precision in decision-making, and capital formation guided by insight rather than assumption.

Chief Strategy Officer Athary Almubarak said that in private capital markets, access to reliable insight increasingly represents the primary constraint, particularly in emerging and fast-scaling markets where disclosures vary and institutional knowledge is fragmented.

She explained that for development-focused investment institutions, inconsistent data presents a structural challenge that directly impacts capital allocation efficiency and the ability to crowd in private investment at scale.

She noted that SVC was established to address such market frictions and that, as a government-backed investor with an explicit market-making mandate, its role extends beyond financing to building the enabling environment in which private capital can grow sustainably.

By integrating SVC’s proprietary portfolio data with selected external market sources, Aian enables continuous consolidation and validation of market activity, producing a dynamic representation of capital deployment over time rather than relying solely on static reporting.

The platform offers customizable analytical dashboards that deliver frequent updates and predictive insights, enabling SVC to identify priority market gaps, recalibrate capital allocation, design targeted ecosystem interventions, and anchor policy dialogue in evidence.

The release added that Aian also features predictive analytics capabilities that anticipate upcoming funding activity, including projected investment rounds and estimated ticket sizes. In addition, it incorporates institutional benchmarking tools that enable structured comparisons across peers, sectors, and interventions, supporting more precise, data-driven ecosystem development.