Category Archives: Applications

MACOM Technology Solutions Holdings, Inc. (NASDAQ: MTSI) (“MACOM”), a supplier of high-performance RF, microwave, millimeterwave and lightwave semiconductor products, and STMicroelectronics (NYSE: STM) today announced an agreement to develop GaN (Gallium Nitride) on Silicon wafers to be manufactured by ST for MACOM’s use across an array of RF applications. While expanding MACOM’s source of supply, the agreement also grants to ST the right to manufacture and sell its own GaN on Silicon products in RF markets outside of mobile phone, wireless basestation and related commercial telecom infrastructure applications.

Through this agreement, MACOM expects to access increased Silicon wafer manufacturing capacity and improved cost structure that could displace incumbent Silicon LDMOS and accelerate the adoption of GaN on Silicon in mainstream markets. ST and MACOM have been working together for several years to bring GaN on Silicon production up in ST’s CMOS wafer fab. As currently scheduled, sample production from ST is expected to begin in 2018.

“This agreement punctuates our long journey of leading the RF industry’s conversion to GaN on Silicon technology. To date, MACOM has refined and proven the merits of GaN on Silicon using rather modest compound semiconductor factories, replicating and even exceeding the RF performance and reliability of expensive GaN on SiC alternative technology,” said John Croteau, President and CEO, MACOM. “We expect this collaboration with ST to bring those GaN innovations to bear in a Silicon supply chain that can ultimately service the most demanding customers and applications.”

“ST’s scale and operational excellence in Silicon wafer manufacturing aims to unlock the potential to drive new RF power applications for MACOM and ST as it delivers the economic breakthroughs necessary to expand the market for GaN on Silicon,” said Marco Monti, President of the Automotive and Discrete Product Group, STMicroelectronics. “While expanding the opportunities for existing RF applications is appealing, we’re even more excited about using GaN on Silicon in new RF Energy applications, especially in automotive applications, such as plasma ignition for more efficient combustion in conventional engines, and in RF lighting applications, for more efficient and longer-lasting lighting systems.”

“Once the $0.04/watt barrier for high power RF semiconductor devices is crossed, significant opportunities for the RF energy market may open up,” said Eric Higham, Director Advanced Semiconductor Applications Service at Strategy Analytics. Higham continued, “Potential RF energy device shipments could be in the hundreds of millions for applications including commercial microwave cooking, automotive lighting and ignition, and plasma lighting, with sales reaching into the billions of dollars.”

Market shares of top semiconductor equipment manufacturers for the full year 2017 indicate large gains by Tokyo Electron and Lam Research while top supplier Applied Materials dropped, according to the report “Global Semiconductor Equipment: Markets, Market Shares, Market Forecasts,” recently published by The Information Network, a New Tripoli-based market research company.

The chart below shows shares for the entire years of 2016 and 2017. Market shares are for equipment only, excluding service and spare parts, and have been converted for revenues of foreign companies to U.S. dollars on a quarterly exchange rate.

market shares

Market leader Applied Materials lost 1.8 share points among the top seven companies, dropping from 28.8% in 2016 to 27.0% in 2017. Gaining share are Tokyo Electron Ltd., which gained 2.1 share points while rising from 17.4% in 2016 to 19.1% in 2017, and Lam Research, which gained 1.5 share points and grew from a 19.4% share in 2016 to a 20.9% share in 2017.

In third place ASML gained 0.6 share points, growing from an 18.8% share in 2016 to a 19.4% share in 2017.

Fifth place KLA-Tencor is the dominant supplier in the process control sector (inspection and metrology) and competes against Applied Materials and Hitachi High-Technologies, as well as several other companies including Nanometrics, Nova Measuring Instruments, and Rudolph Technologies. KLA-Tencor gained market share against each of its competitors in this sector in 2017.

Much of the equipment revenue growth was attributed to strong growth in the DRAM and NAND sectors, as equipment was installed in memory manufacturers Intel, Micron Technology, Samsung Electronics, SK Hynix, Toshiba, and Western Digital. The memory sector is expected to have grown 60.1% in 2017 and another 9.3% in 2018 according to industry consortium WSTS (World Semiconductor Trade Statistics).

Following the strong growth in the semiconductor equipment market, The Information Network projects another 11% growth in 2018. for semiconductor equipment.

Texas Instruments (TI) (NASDAQ: TXN) today introduced the industry’s smallest operational amplifier (op amp) and low-power comparators at 0.64 mm2. As the first amplifiers in the compact X2SON package, the TLV9061 op amp and TLV7011 family of comparators enable engineers to reduce their system size and cost, while maintaining high performance in a variety of Internet of Things (IoT), personal electronics and industrial applications, including mobile phones, wearables, optical modules, motor drives, smart grid and battery-powered systems.

With a high gain bandwidth (GBW) of 10 MHz, fast slew rate at 6.5 V/µs and low-noise spectral density of 10 nV/√Hz, the TLV9061 op amp is designed for use in wide-bandwidth, high-performance systems. The TLV7011 family of nanopower comparators delivers a faster response time with propagation delays down to 260 ns, while consuming 50 percent less power than competitive comparators. Additionally, both devices support rail-to-rail inputs with low-voltage operation down to 1.8 V, enabling ease-of-use in battery-powered applications.

Achieve high performance in tiny spaces with the TLV9061 operational amplifier

  • Reduces system size and cost: In addition to its tiny size, the TLV9061 op amp also features integrated EMI filtering inputs. This helps provide resilient performance for systems prone to RF noise, while significantly reducing the need for external discrete circuitry.
  • Greater DC accuracy: Two times lower offset drift and typical input bias across a full temperature range, -40 to 125 degrees Celsius, creates a more precise signal chain solution compared to other small devices.

Lower power, faster response with the tiny TLV7011 family of comparators

  • Smaller footprint, extra features: No phase reversal and integrated internal hysteresis for overdriven inputs increase design flexibility and reduce the need for external components.
  • Fifty percent less power consumption: With power as low as 335 nA and fast propagation delay down to 260 ns, the TLV7011 family of nanopower comparators enable low-power systems to monitor signals and respond quickly.

These new devices join TI’s small-size amplifier portfolio which enables engineers to design smaller systems, while maintaining high performance, with industry-leading package options and many of the world’s smallest op amps and comparators.

Tools and support to speed design
Designers can download the TINA-TI™ SPICE model to simulate their designs and predict circuit behavior when using the TLV9061 op amp and TLV7011 family of comparators. Engineers can jump-start their small brushed DC servo drive designs using the TLV9061 op amp with the 10.8-V/15-W, >90% Efficiency, 2.4-cm2, Power Stage Reference Design. Also, they can quickly and easily evaluate the TLV7011 comparators with the DIP adapter evaluation module, available today for US$5.00 from the TI store and authorized distributors.

Package, availability and pricing
Preproduction samples of the TLV9061 op amp and volume quantities of the TLV7011 family of comparators are now available through the TI store and authorized distributors in a 5-pin extra small outline no-lead (X2SON) package, measuring 0.8 mm x 0.8 mm x 0.4 mm. Pricing starts at US$0.19 and US$0.25 in 1,000-unit quantities, respectively. Learn more about the family of comparators in the table below.

Product

Supply
voltage (Vcc)

DC input
offset (Vios)

Propagation
delay (tpd)

Supply
current (Icc)

TLV7011

1.6 – 5.5 V

0.5 mV

260 ns

5 µA

TLV7021

1.6 – 5.5 V

0.5 mV

260 ns

5 µA

TLV7031

1.6 – 6.5 V

0.1 mV

3 µs

335 nA

TLV7041

1.6 – 6.5 V

0.1 mV

3 µs

335 nA

The Semiconductor Industry Association (SIA), representing U.S. leadership in semiconductor manufacturing, design, and research, today announced the global semiconductor industry posted sales totaling $412.2 billion in 2017, the industry’s highest-ever annual sales and an increase of 21.6 percent compared to the 2016 total. Global sales for the month of December 2017 reached $38.0 billion, an increase of 22.5 percent over the December 2016 total and 0.8 percent more than the previous month’s total. Fourth-quarter sales of $114.0 billion were 22.5 percent higher than the total from the fourth quarter of 2016 and 5.7 percent more than the third quarter of 2017. Global sales during the fourth quarter of 2017 and during December 2017 were the industry’s highest-ever quarterly and monthly sales, respectively. All monthly sales numbers are compiled by the World Semiconductor Trade Statistics (WSTS) organization and represent a three-month moving average.

Worldwide semiconductor revenues, year-to-year percent change

Worldwide semiconductor revenues, year-to-year percent change

“As semiconductors have become more heavily embedded in an ever-increasing number of products – from cars to coffee makers – and nascent technologies like artificial intelligence, virtual reality, and the Internet of Things have emerged, global demand for semiconductors has increased, leading to landmark sales in 2017 and a bright outlook for the long term,” said John Neuffer, SIA president and CEO. “The global market experienced across-the-board growth in 2017, with double-digit sales increases in every regional market and nearly all major product categories. We expect the market to grow more modestly in 2018.”

Several semiconductor product segments stood out in 2017. Memory was the largest semiconductor category by sales with $124.0 billion in 2017, and the fastest growing, with sales increasing 61.5 percent. Within the memory category, sales of DRAM products increased 76.8 percent and sales of NAND flash products increased 47.5 percent. Logic ($102.2 billion) and micro-ICs ($63.9 billion) – a category that includes microprocessors – rounded out the top three product categories in terms of total sales. Other fast-growing product categories in 2017 included rectifiers (18.3 percent), diodes (16.4 percent), and sensors and actuators (16.2 percent). Even without sales of memory products, sales of all other products combined increased by nearly 10 percent in 2017.

Annual sales increased substantially across all regions: the Americas (35.0 percent), China (22.2 percent), Europe (17.1 percent), Asia Pacific/All Other (16.4 percent), and Japan (13.3 percent). The Americas market also led the way in growth for the month of December 2017, with sales up 41.4 percent year-to-year and 2.1 percent month-to-month. Next were Europe (20.2 percent/-1.6 percent), China (18.1 percent/1.0 percent), Asia Pacific/All Other (17.4 percent/0.2 percent), and Japan (14.0 percent/0.9 percent).

“A strong semiconductor industry is foundational to America’s economic strength, national security, and global technology leadership,” said Neuffer. “We urge Congress and the Trump Administration to enact polices in 2018 that promote U.S. innovation and allow American businesses to compete on a more level playing field with our counterparts overseas. We look forward to working with policymakers in the year ahead to further strengthen the semiconductor industry, the broader tech sector, and our economy.”

Driven by the need for intelligent connected devices in industrial and commercial applications, the number of connected Internet of Things (IoT) devices globally will grow to more than 31 billion in 2018, according to new analysis from business information provider IHS Markit (Nasdaq: INFO). The commercial and industrial sector, powered by building automation, industrial automation and lighting, is forecast to account for about half of all new connected devices between 2018 and 2030.

“The IoT is not a recent phenomenon, but what is new is it’s now working hand in hand with other transformative technologies like artificial intelligence and the cloud,” said Jenalea Howell, research director for IoT connectivity and smart cities at IHS Markit. “This is fueling the convergence of verticals such as industrial IoT, smart cities and buildings, and the connected home, and it’s increasing competitiveness.”

In its latest IoT Trend Watch report, IHS Markit identifies four key drivers and the trends that will impact the IoT this year and beyond:

Innovation and competitiveness

  • The IoT opportunity has attracted numerous duplicative and overlapping wireless solutions such as Bluetooth, Wi-Fi, 5G, NB-IoT, LoRa and Sigfox. Standards consolidation lies ahead, but confusion and fragmentation will dominate in the near term.
  • Enterprises are leveraging the location of data as a competitive advantage — and as a result, a hybrid approach to cloud and data center management is taking hold. More and more companies will employ both on-premises data centers and off-premises cloud services to manage their IT infrastructure.

Business models

  • 5G builds upon earlier investments in M2M (machine-to-machine) and traditional IoT applications, enabling significant increases in economies of scale that drive adoption and utilization across all sectors of industry. Improved low-power requirements, the ability to operate on licensed and unlicensed spectrum, and better coverage will drive significantly lower costs across the IoT.
  • Cellular IoT gateways, which facilitate WAN connectivity, will be integral to edge computing deployments. 2018 will bring increased focus on compute capabilities and enhanced security for cellular IoT gateways.

Standardization and security

  • Cybersecurity is a leading concern for IoT adopters. IoT deployments face critical cybersecurity risks because there are potentially many more IoT devices to secure compared to traditional IT infrastructure devices, presenting increased risk to traditional communications and computing systems, as well as physical health and safety.
  • Despite the promise it holds, blockchain — a technology for securely storing and transferring data — is not a panacea. Initially, IoT applications for blockchain technology will focus on asset tracking and management.

Wireless technology innovation

  • IoT platforms are becoming more integrated. Currently, there are more than 400 IoT platform providers. Many vendors are using integration to compete more effectively, providing highly integrated functionality for IoT application developers and adopters.
  • Significant innovation will occur when IoT app developers can leverage data from myriad deployed sensors, machines and data stores. A key inflection point for the IoT will be the gradual shift from the current “Intranets of Things” deployment model to one where data can be exposed, discovered, entitled and shared with third-party IoT application developers.

IHS Markit provides insight and analysis for more than 25 connectivity technologies in 34 application segments used for the IoT.

Microprocessors, which first appeared in the early 1970s as 4-bit computing devices for calculators, are among the most complex integrated circuits on the market today.  During the past four decades, powerful microprocessors have evolved into highly parallel multi-core 64-bit designs that contain all the functions of a computer’s central processing unit (CPU) as well as a growing number of system-level functions and accelerator blocks for graphics, video, and emerging artificial intelligence (AI) applications.  MPUs are the “brains” of personal computers, servers, and large mainframes, but they can also be used for embedded processing in a wide range of systems, such as networking gear, computer peripherals, medical and industrial equipment, cars, televisions, set-top boxes, video-game consoles, wearable products and Internet of Things applications.  The recently released 2018 edition of IC Insights’ McClean Report shows that the fastest growing types of microprocessors in the last five years have been mobile system-on-chip (SoC) designs for tablets and data-handling cellphones and MPUs used in embedded-processing applications (Figure 1).

Figure 1

Figure 1

The McClean Report also forecasts that 52% of 2018 MPU sales will come from sales of all types of microprocessors used as CPUs in standard PCs, servers, and large computers.  As shown in Figure 2, only about 16% of MPU sales are expected from embedded applications in 2018, with the rest coming from mobile application processors used in tablets (4%) and cellphones (28%).  Cellphone and tablet MPUs exclude baseband processors, which handle modem transmissions in cellular networks and are counted in the wireless communications segment of the special-purpose logic IC product category. A little over half of 2018 microprocessor sales are expected to come from x86 MPUs for computer CPUs sold by Intel and rival Advanced Micro Devices.

Figure 2

Figure 2

Cellphone and tablet SoC processors were the main growth drivers in microprocessors during the first half of this decade, but slowdowns have hit both of these MPU categories since 2015.  Market saturation and the maturing of the smartphone segment have stalled unit growth in cellular handsets.  Cellphone application processor shipments were flat in 2016 and 2017 and are forecast to rise just 0.3% in 2018 to reach a record high of nearly 1.8 billion units in the year.

The microprocessor business continues to be dominated by the world’s largest IC maker, Intel (Samsung was the world’s largest semiconductor supplier in 2017). Intel’s share of total MPU sales had been more than 75% during most of the last decade, but that percentage is now slightly less than 60% because of stronger growth in cellphones and tablets that contain ARM-based SoC processors.  For nearly 20 years, Intel’s huge MPU business for personal computers has primarily competed with just one other major x86 processor supplier—AMD—but increases in the use of smartphones and tablets to access the Internet for a variety of applications has caused a paradigm shift in personal computing, which is often characterized as the “Post-PC era.”

This year, AMD looks to continue its aggressive comeback effort in x86-based server processors that it started in 2017 with the rollout of highly parallel MPUs built with the company’s new Zen microarchitecture. Intel has responded by increasing the number of 64-bit x86 CPUs in its Xeon processors. Intel, AMD, Nvidia, Qualcomm, and others are also increasing emphasis of processors and co-processor accelerators for machine-learning AI in servers, personal computing platforms, smartphones and embedded processing.

The 2018 McClean Report shows that the total MPU market is forecast to rise 4% to $74.5 billion in 2018, following market growth of 5% in 2017 and 9% in 2016.  Through 2022, total MPU sales are expected to increase at a compound annual growth rate of 3.4%.  Total microprocessor units are expected to rise 2% in 2018, the same growth rate as 2017, to 2.6 billion units.  Through the forecast period, total MPU units are forecast to rise by a CAGR of 2.1%.

By Emmy Yi, SEMI Taiwan 

Driven by emerging technologies like Artificial Intelligence (AI), Internet of Things (IoT), machine learning and big data, the digital transformation has become an irreversible trend for the electronics manufacturing industry. The global market for smart manufacturing and smart factory technologies is expected to reach US$250 billion in 2018.

“The semiconductor manufacturing process has reached its downscaling limit, making outstanding manufacturing capabilities indispensable for corporations to stay competitive,” said Ana Li, Director of Outreach and Member Service at SEMI. “Advances in cloud computing, data processing, and system integration technologies will be key to driving the broad adoption of smart manufacturing.”

ompany representatives shared insights and successes in manufacturing digitalization.

ompany representatives shared insights and successes in manufacturing digitalization.

To help semiconductor manufacturing companies navigate the digital transformation, SEMI recently held the AI and Smart Manufacturing Forum, a gathering of industry professionals from Microsoft, Stark Technology, Advantech, ISCOM, and Tectura to examine technology trends and smart manufacturing opportunities and challenges. The nearly 100 guests at the forum also included industry veterans from TSMC, ASE, Siliconware, Micron, and AUO. Following are key takeaways from the forum:

1)    Smart manufacturing is the key for digital transformation
Industry 4.0 is all about using automation to better understand customer needs and help drive efficiency improvements that enable better strategic manufacturing decisions. For electronics manufacturers, thriving in the digital transformation should begin with research and development focused on optimizing processes, developing innovative business models, and analyzing data in ways that support their customers’ business values and objectives. Digitization is also crucial for manufacturers to target the right client base, increase productivity, optimize operations and create new revenue opportunities.

2)    Powerful data analysis capabilities will enable manufacturing digitalization

As product development focuses more on smaller production volumes, companies need a powerful data analysis software to accelerate decision-making and problem-solving processes, enhance integration across different types of equipment, and improve management efficiency across enterprise resources including business operations, marketing, and customer service.

3)    The digital transformation will fuel revenue growth
Connectivity and data analysis, the two essential concepts of smart manufacturing, are not only essential for companies to improve facility management efficiency and production line planning but also key for maintaining healthy revenue growth.

“With our more than 130 semiconductor manufacturers and long fab history, Taiwan is in a strong position to help the industry evolve manufacturing to support the explosion of new data-intensive technologies,” said Chen-Wei Chiang, the Senior Specialist at the Taichung City Government’s Economic Development Bureau. “We look forward to working with SEMI to help manufacturers realize the full potential of smart manufacturing.”

With the advent of new data-intensive technologies including AI and IoT, advanced manufacturing processes that improve product yield rates and reduce production costs will become even more important for manufacturers to remain competitive. SEMI Taiwan will continue to assemble representatives from the industry, government, academia and research to examine critical topics in smart manufacturing. To learn more, please contact Emmy Yi, SEMI Taiwan, at
[email protected] or +886.3.560.1777 #205.

 

When it comes to processing power, the human brain just can’t be beat.

Packed within the squishy, football-sized organ are somewhere around 100 billion neurons. At any given moment, a single neuron can relay instructions to thousands of other neurons via synapses — the spaces between neurons, across which neurotransmitters are exchanged. There are more than 100 trillion synapses that mediate neuron signaling in the brain, strengthening some connections while pruning others, in a process that enables the brain to recognize patterns, remember facts, and carry out other learning tasks, at lightning speeds.

Researchers in the emerging field of “neuromorphic computing” have attempted to design computer chips that work like the human brain. Instead of carrying out computations based on binary, on/off signaling, like digital chips do today, the elements of a “brain on a chip” would work in an analog fashion, exchanging a gradient of signals, or “weights,” much like neurons that activate in various ways depending on the type and number of ions that flow across a synapse.

In this way, small neuromorphic chips could, like the brain, efficiently process millions of streams of parallel computations that are currently only possible with large banks of supercomputers. But one significant hangup on the way to such portable artificial intelligence has been the neural synapse, which has been particularly tricky to reproduce in hardware.

Now engineers at MIT have designed an artificial synapse in such a way that they can precisely control the strength of an electric current flowing across it, similar to the way ions flow between neurons. The team has built a small chip with artificial synapses, made from silicon germanium. In simulations, the researchers found that the chip and its synapses could be used to recognize samples of handwriting, with 95 percent accuracy.

The design, published today in the journal Nature Materials, is a major step toward building portable, low-power neuromorphic chips for use in pattern recognition and other learning tasks.

The research was led by Jeehwan Kim, the Class of 1947 Career Development Assistant Professor in the departments of Mechanical Engineering and Materials Science and Engineering, and a principal investigator in MIT’s Research Laboratory of Electronics and Microsystems Technology Laboratories. His co-authors are Shinhyun Choi (first author), Scott Tan (co-first author), Zefan Li, Yunjo Kim, Chanyeol Choi, and Hanwool Yeon of MIT, along with Pai-Yu Chen and Shimeng Yu of Arizona State University.

Too many paths

Most neuromorphic chip designs attempt to emulate the synaptic connection between neurons using two conductive layers separated by a “switching medium,” or synapse-like space. When a voltage is applied, ions should move in the switching medium to create conductive filaments, similarly to how the “weight” of a synapse changes.

But it’s been difficult to control the flow of ions in existing designs. Kim says that’s because most switching mediums, made of amorphous materials, have unlimited possible paths through which ions can travel — a bit like Pachinko, a mechanical arcade game that funnels small steel balls down through a series of pins and levers, which act to either divert or direct the balls out of the machine.

Like Pachinko, existing switching mediums contain multiple paths that make it difficult to predict where ions will make it through. Kim says that can create unwanted nonuniformity in a synapse’s performance.

“Once you apply some voltage to represent some data with your artificial neuron, you have to erase and be able to write it again in the exact same way,” Kim says. “But in an amorphous solid, when you write again, the ions go in different directions because there are lots of defects. This stream is changing, and it’s hard to control. That’s the biggest problem — nonuniformity of the artificial synapse.”

A perfect mismatch

Instead of using amorphous materials as an artificial synapse, Kim and his colleagues looked to single-crystalline silicon, a defect-free conducting material made from atoms arranged in a continuously ordered alignment. The team sought to create a precise, one-dimensional line defect, or dislocation, through the silicon, through which ions could predictably flow.

To do so, the researchers started with a wafer of silicon, resembling, at microscopic resolution, a chicken-wire pattern. They then grew a similar pattern of silicon germanium — a material also used commonly in transistors — on top of the silicon wafer. Silicon germanium’s lattice is slightly larger than that of silicon, and Kim found that together, the two perfectly mismatched materials can form a funnel-like dislocation, creating a single path through which ions can flow.

The researchers fabricated a neuromorphic chip consisting of artificial synapses made from silicon germanium, each synapse measuring about 25 nanometers across. They applied voltage to each synapse and found that all synapses exhibited more or less the same current, or flow of ions, with about a 4 percent variation between synapses — a much more uniform performance compared with synapses made from amorphous material.

They also tested a single synapse over multiple trials, applying the same voltage over 700 cycles, and found the synapse exhibited the same current, with just 1 percent variation from cycle to cycle.

“This is the most uniform device we could achieve, which is the key to demonstrating artificial neural networks,” Kim says.

Writing, recognized

As a final test, Kim’s team explored how its device would perform if it were to carry out actual learning tasks — specifically, recognizing samples of handwriting, which researchers consider to be a first practical test for neuromorphic chips. Such chips would consist of “input/hidden/output neurons,” each connected to other “neurons” via filament-based artificial synapses.

Scientists believe such stacks of neural nets can be made to “learn.” For instance, when fed an input that is a handwritten ‘1,’ with an output that labels it as ‘1,’ certain output neurons will be activated by input neurons and weights from an artificial synapse. When more examples of handwritten ‘1s’ are fed into the same chip, the same output neurons may be activated when they sense similar features between different samples of the same letter, thus “learning” in a fashion similar to what the brain does.

Kim and his colleagues ran a computer simulation of an artificial neural network consisting of three sheets of neural layers connected via two layers of artificial synapses, the properties of which they based on measurements from their actual neuromorphic chip. They fed into their simulation tens of thousands of samples from a handwritten recognition dataset commonly used by neuromorphic designers, and found that their neural network hardware recognized handwritten samples 95 percent of the time, compared to the 97 percent accuracy of existing software algorithms.

The team is in the process of fabricating a working neuromorphic chip that can carry out handwriting-recognition tasks, not in simulation but in reality. Looking beyond handwriting, Kim says the team’s artificial synapse design will enable much smaller, portable neural network devices that can perform complex computations that currently are only possible with large supercomputers.

“Ultimately we want a chip as big as a fingernail to replace one big supercomputer,” Kim says. “This opens a stepping stone to produce real artificial hardware.”

This research was supported in part by the National Science Foundation.

Silicon chips from STMicroelectronics (NYSE: STM) have enabled new zForce AIR(TM) touch-sensing modules from Neonode (NASDAQ: NEON), the optical sensor technology company.

Neonode’s compact, low-power, and easy-to-use modules add touch interaction to any USB- or I2C-connected object and work with any type of display or surface, including steel, wood, plastic, glass, skin, or even nothing, able to detect touch interactions in mid-air. The innovative approach uses laser-generated infrared light to track touch or gesture control, combining millimeter precision with ultra-fast response. The non-visible-spectrum light doesn’t impact display quality, add glare, or shift colors.

The new Neonode family of touch-sensors uses a programmable mixed-signal custom System-on-Chip (SoC) and an STM32 Arm® Cortex® microcontroller from ST for scanning laser diodes and IR beams to determine the exact position and movements of fingers, hands, or other reflective objects in the light path. Multiple objects can be tracked simultaneously and interpreted as touches or gestures with extreme accuracy: the coordinates are relayed up to 500 times per second with virtually zero delay.

“ST’s leading-edge chip-design capabilities and manufacturing processes have enabled us to build an innovative, high-performance optical-sensor system that is highly complex yet cost-competitive,” said Andreas Bunge, CEO of Neonode. “The advanced mixed-signal SoC and STM32 microcontroller at the heart of our new zForce AIR modules deliver the right combination of touch-control precision in real-time, low power consumption, and configurability.”

“This innovative sensing technology can make any object, surface, or space touch- interactive, bringing complete freedom of design,” said Iain Currie, Vice President North Europe Sales, STMicroelectronics. “Neonode’s decision to use ST technologies confirms our enabling role in the development of advanced applications that break new ground in man-machine interaction.”

Now available for immediate shipment worldwide through Digi-Key Electronics, the zForce AIR(TM) Touch Sensor modules will be displayed on ST’s stand at Embedded World 2018 (February 27 – March 1, Nuremberg).

Leti, a research institute at CEA Tech, has invented a lens-free microscope technology that provides point-of-care diagnosis for spinal meningitis. Outlined in a paper presented at Photonics West, the new technology provides immediate results and eliminates errors in counting white blood cells (leukocytes) in cerebrospinal fluid, which is required to diagnose the infection.

Spinal meningitis is an acute inflammation of the membranes covering the brain and spinal cord, which can be fatal within 24 hours. Until now, early diagnosis of the infection required an operator using an optical microscope to manually count white blood cells in cerebrospinal fluid.

“Until now, this process has been operator dependent, which limits where it can be used and increases the likelihood of errors in counting blood cells,” said Sophie NhuAn Morel, a co-author of the paper. “In our study, manual counts produced different results among five doctors.”

The bulky equipment and intensive human involvement, which can take 5-20 minutes to make a proper cell counting, make the traditional procedure unsuited for point-of-care diagnosis. As a result, meningitis cannot be diagnosed in emergencies or operating rooms, or during routine medical care in developing countries.

Reported in a paper titled “Lens-free Microscopy of Cerebrospinal Fluid for the Laboratory Diagnosis of Meningitis”, Leti’s lens-free, operator-free technology requires fewer than 10 microliters of cerebrospinal fluid to differentiate between white blood cells (leukocytes) and red blood cells (erythrocytes) in a point-of-care environment, using very small equipment.

“Leti’s lens-free technology can count leukocytes and erythrocytes almost in real-time and can be used in many different environments outside the lab,” Morel said.

The lens-free microscope was tested on 200 patients at Marseille Timone Hospital in France to detect or confirm spinal meningitis. A blind lens-free microscopic analysis of 116 cerebrospinal fluid specimens, including six cases of microbiologicallyconfirmed infectious meningitis, yielded a 100 percent sensitivity and a 79 percent specificity. Adapted lens-free microscopy is thus emerging as an operator-independent technique for rapidly counting leukocytes and erythrocytes in cerebrospinal fluid. In particular, this technique is well suited to the rapid diagnosis of meningitis at point-of-care labs.

In the near future, the reconstruction of both the magnitude and phase images from the raw diffraction pattern will allow the classification and numeration of all the blood cells in less than two minutes.

Leti, a technology research institute at CEA Tech, is a global leader in miniaturization technologies enabling smart, energy-efficient and secure solutions for industry.