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Alibaba Unveils Forecast of Top 10 Leading Tech Trends
January 11, 2022 News


Alibaba DAMO Academy (“DAMO”), the global research initiative by Alibaba Group, has bared its forecast of the leading trends that would shape the tech industry in the year ahead.

By analysing millions of public papers and patent filings over the past three years and conducting interviews with nearly 100 scientists, DAMO provides the top 10 technology trends for the next two to five years that we are expected to accelerate breakthroughs and make an impact across sectors in the economy and the society at large.

“Over the past century, the evolution of digital technologies has accelerated technological progress and industrial development. The boundary of technologies is extended from the physical world to mixed reality, while more and more cutting-edge technologies find their way to industrial applications”, said Jeff Zhang, Head at Alibaba DAMO Academy.

“Digital technology plays an important role in powering a green and sustainable future, whether it is applied in industries such as green data centres and energy-efficient manufacturing, or in day-to-day activities like paperless offices. With technology, we will create a better future.”

In the next two years, we expect to see a surge of applications running on top of the new computing system:

Trend 1: Cloud-Network-Device Convergence

The rapid development of new network technologies will fuel the evolution of cloud computing towards a new computing system: cloud-network-device convergence. In this new system, clouds, networks and devices have a more clearly defined division of labour. Cloud-network-device convergence is the catalyst that will drive the emergence of new applications to fulfill more demanding tasks, such as high-precision industrial simulation, real-time industrial quality inspection, and mixed reality. In the next two years, we expect to see a surge of applications running on top of the new computing system.

In the next three years, we expect to see Artificial Intelligence (AI) broadly applied in the research process of applied science, the widespread use of silicon photonic chips in large-scale data centres, AI paving the way for integration of renewable energy sources into the power grid, people-centric precision medicine becoming a major trend, groundbreaking improvements in the performance and interpretability of privacy-preserving computation, as well as a new generation of XR glasses.

Trend 2: AI for Science

In the past hundreds of years, the scientific community had two basic paradigms: experimental science and theoretical science. Today, the advancement of AI is making new scientific paradigms possible. Machine Learning can process massive amounts of multidimensional and multimodal data and solve complex scientific problems, allowing scientific exploration to flourish in areas previously thought impossible. Artificial Intelligence will not only accelerate the speed of scientific research, but also help discover new scientific laws. In the next three years, we expect that AI will be broadly applied in the research process of applied science and be used as a production tool in some basic sciences.

Trend 3: Silicon Photonic Chips

As the size of transistors approaches physical limits, the speed of electronic chip development can no longer meet the increasing data throughput demand brought by the rise of high-performance computing. Unlike electronic chips, silicon photonic chips use photons instead of electrons to transmit data. Photons do not directly interact with each other and can travel longer distances, and, therefore, silicon photonic chips can provide higher computing density and energy efficiency. The rise of cloud computing and AI drives the rapid development of silicon photonics technology. In the next three years, we can expect to see the widespread use of silicon photonic chips in high-speed data transmission in large-scale data centers.

Trend 4: AI for Renewable Energy

The rapid development of technology in renewable energy such as wind and solar power in recent years has made renewables a tempting energy source to add to the power grid. However, issues such as difficulty in grid integration, low energy utilisation rate and storage of excess energy are major roadblocks along the way. Due to the unpredictable natures of renewable energy power generation, integrating renewable energy sources into the power grid presents challenges that affect the safety and reliability of the grid. The application of AI in the industry is pivotal in improving the efficiency and automation of electric power systems, maximizing resource usage and stability. This will be conducive to achieving carbon neutrality. In the next three years, AI is expected to pave the way for integration of renewable energy sources into the power grid and contribute to the safe, efficient, and reliable operation of the power grid.

Trend 5: High-precision Medicine

Medicine is a field that is highly dependent on individual expertise, often involves a lot of trial and error, and may ultimately have varying efficacies from patient to patient. The convergence of AI and precision medicine is expected to boost the integration of expertise and new auxiliary diagnostic technologies and serve as a high-precision compass for clinical medicine. With this compass, doctors can diagnose diseases and make medical decisions as quickly and accurately as possible. These advances will allow us to quantify, compute, predict, and prevent severe diseases. In the next three years, we expect to see people-centric precision medicine become a major trend that will span multiple fields of healthcare, including disease prevention, diagnosis and treatment. AI will become synonymous with a highly precise compass that allows us to pinpoint diseases and their treatments.

Trend 6: Privacy-preserving Computation

For a long time, the application of privacy-preserving computation has been limited to a narrow scope of small-scale computation due to performance bottlenecks, lack of confidence in the technology and standardisation issues. However, as more and more integrated technologies, such as dedicated chips, cryptographic algorithms, whitebox implementation and data trusts, are emerging, privacy-preserving computation will be adopted in scenarios such as processing massive amounts of data and integrating data from all domains, which is the headway made from processing small amounts of data and data from private domains. The adoption will boost new productivity that is powered by data from all domains. In the next three years, we will witness groundbreaking improvements in the performance and interpretability of privacy-preserving computation, and witness the emergence of data trust entities that provide data sharing services based on the technology.

Trend 7: Extended Reality (XR)

The development of technologies such as cloud-edge computing, network communications and digital twins brings XR into full bloom. Extended Reality glasses promise to make immersive mixed reality internet a reality. This technology plants the seed that will sprout into a new industrial ecosystem that encompasses electronic components, devices, operating systems and applications. They will reshape digital applications and revolutionise the way people interact with technology in scenarios such as entertainment, social networking, office, shopping, education and healthcare. In the next three years, we expect to see a new generation of XR glasses that have an indistinguishable look and feel from ordinary glasses entering the market and serving as a key entry point to the next generation of Internet.

Trend 8: Perceptive Soft Robotics

Unlike conventional robots, perceptive soft robots are robots with physically flexible bodies and enhanced perceptibility towards pressure, vision and sound. These robots take advantage of state-of-the-art technologies such as flexible electronics, pressure adaptive materials and AI, which allow them to perform highly specialised and complex tasks and deform to adapt to different physical environments. The emergence of perceptive soft robotics will change the course of the manufacturing industry, from the mass production of standardised products towards specialised, small-batch products. In the next five years, perceptive soft robotics will replace conventional robots in the manufacturing industry and pave the way for wider adoption of service robots in our daily life.

Trend 9: Satellite-Terrestrial Integrated Computing

Terrestrial networks and computing systems provide digital services for densely populated areas, while no service is available in sparsely inhabited areas such as deserts, seas and space. Satellite-terrestrial integrated computing connects high-Earth orbit (HEO) and low-Earth orbit (LEO) satellites and terrestrial mobile communications networks, achieving seamless and multidimensional coverage. It also creates a computing system that integrates satellites, satellite networks, terrestrial communications systems and cloud computing technologies. This way, digital services can be more accessible and inclusive across the globe. In the next five years, satellites and terrestrial systems will work as computing nodes to constitute an integrated network system providing ubiquitous connectivity.

Trend 10: Co-Evolution of Large- and Small-Scale AI Models

The large-scale pre-training models, also known as the foundation models, are the grounding breakthrough technique from weak AI to general AI, which relatively boosts performance of various applications using conventional Deep Learning. However, the merit in the higher performance and the drawback in the power consumption are not well balanced, limiting the exploration of large-scale models. The future AI is shifting from the race on the scalability of foundation models to the co-evolution of large- and small-scale models via clouds, edges and devices, which is more useful in practice.

For more detailed information, please visit the full report here: