Uncover the Possibilities of AI and Machine Learning With This Bundle – Interesting Engineering

If you want to be competitive in an increasingly data-driven world, you need to have at least a baseline understanding of AI and machine learningthe driving forces behind some of todays most important technologies.

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AFTAs 2019: Best New Technology Introduced Over the Last 12 MonthsAI, Machine Learning and AnalyticsActiveViam – www.waterstechnology.com

Following the global financial crisis, the banking industry has had to deal with more stringent risk capital requirements that demand agility, flexibility, speed, and ease of communication across traditionally siloed departments. Banks also needed a firm grasp of their enterprise-wide data to meet regulatory requirements, and also to ensure a return on capital. It is for this reason that Allen Whipple, co-founder and managing director at ActiveViam, says it makes sense for any regulatory solution to pivot from prescriptive to predictive analytics.

ActiveViam topped this category at this years AFTAs due to its FRTB Accelerator, part of a suite of Accelerator products that it launched in the past year. The products contain all the source code and formulae to meet a particular set of regulations and/or business requirements. In this case, it was those needed for the standardized approach (SA) and the internal model approach (IMA) risk framework, which stems from the Basel Committee on Banking Supervisions Fundamental Review of the Trading Book (FRTB).

The FRTB Accelerator includes capabilities such as the capital decomposition tool, which provides clients with the ability to deploy capital across an organization more precisely. This allows a client to take risk management a step further and perform predictive analysis, which can be applied to broader internal market risk scenarios, Whipple explains. He adds that banks can perform limit-monitoring and back-testing, which allows them to stay within the scope of their IMA status.

Looking ahead, ActiveViam will add a product for Python notebooks to facilitate data science work, reducing the time it takes to move from data to insight. Quants will no longer need to switch between notebooks, data visualization tools, and end-user business intelligence applications. Using the ActiveViam Python Library, they will be able to create dashboards and share them within the same environment. Coders can do everything in Jupyteror a Python notebook of choicefrom beginning to end, Whipple says.

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AFTAs 2019: Best New Technology Introduced Over the Last 12 MonthsAI, Machine Learning and AnalyticsActiveViam - http://www.waterstechnology.com

ML Conference Singapore very early bird offer ends January 23 – JAXenter

ML Conference gives you the opportunity to learn about the latest machine learning tools and technologies, including TensorFlow 2.0, machine learning in the browser, deep learning and NLP. Seasoned ML experts will share insights on how to understand your data, optimize your models and more. The very early bird discount for ML Conference Singapore ends on January 23, so why not take a look?

ML Conference Singapore will take place from March 24-26, 2020. While the very early bird offer still stands, you can save up to $310 USD and get a free gift with your 3-day pass as well as a 10% team discount for registering 3+ colleagues.

This year, ML Conference will take place three times in different locations across the world. The usual suspects Munich and Berlin will of course be on the agenda, but now Singapore is also on the cards, meaning were bringing ML Conference to a second continent in 2020.

Check out the conference page for more information.

MLCon very early bird discount offers savings up to $310.Very early bird registration ends on January 23, 2020.Plus, theres also a few great extras included for those who strike while the iron is hot!

The tracks are:

The full program is not yet annnounced, but you can take a look at some of the highlights that are already online:

Machine Learning in the BrowserAthan Reines

Predictive Maintenance how does Data Science revolutionize the World of Machines? Victoriya Kalmanovich

Playing Doom with TF-Agents and TensorFlow 2.0 Andreas Eberle

Using Neural Networks for Natural Language Processing Christoph Henkelmann

Applying Machine Learning online at ScaleJon Bratseth

Theres still more to come, so stay tuned! Keep an eye on mlconference.ai for more.

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ML Conference Singapore very early bird offer ends January 23 - JAXenter

Artificial Intelligence Chip Market to 2027 – Global Analysis and Forecasts by Segment ; Type ; and Industry Vertical – Yahoo Finance

NEW YORK, Jan. 21, 2020 /PRNewswire/ -- The global artificial intelligence chip market was valued at US$ 5,658.1 Mn in 2018 and is expected to reach US$ 83,252.7 Mn by 2027 with a CAGR growth rate of 35.0% in the forecast period from 2019 to 2027.

Read the full report: https://www.reportlinker.com/p05774487/?utm_source=PRN

In last few years, Artificial intelligence and its applications such as Machine Learning (ML), Natural Language Processing (NLP), Expert Systems, Automated Speech Recognition, AI Planning, and Computer Vision have gained considerable traction in terms of both R&D as well as use cases across the globe.Several industry verticals have implemented AI technology for numerous use cases to utilize real-time analytics with self-learning technology in order to gain useful business insights.

The Artificial Intelligence chip market has enormous potential in industries such as Retail, BFSI, Automotive, IT and Telecom among many others.

North America is the leading region in the global Artificial Intelligence chip market followed by Europe.Due to the willingness to spend and adopt artificial intelligence powered solutions and services by all the verticals, the artificial intelligence chip market in North America contributes the largest market share during the forecast period.

The growing need for digitalization and smart technological solutions to implement intelligent business decisions have contributed substantially towards the growth of artificial intelligence chip market in North America. Other factors such as the surge in demand for smartphones, industrial automation, internet of things (IoT), smart cities, smart homes, robotic process automation are also boosting the growth of artificial intelligence chip market in this region.

The global artificial intelligence chip market is bifurcated on the basis of the segment into the Data Centre and Edge.Based on type, the AI chip market is segmented into CPU, GPU, ASIC, FPGA, and others.

The others section include SoC Accelerators and other application specific custom & hybrid chips.Based on industry vertical, the artificial intelligence chip market is further segmented into BFSI, Retail, IT & Telecom, Automotive & Transportation, Healthcare, Media & Entertainment, and others.

The others section in industry vertical includes education, utilities, oil & gas, mining, etc. (this section will vary with various geographic regions). Geographically, the market is divided into five regions including North America, Europe, Asia-Pacific, Middle East & Africa, and South America.

The overall artificial intelligence chip market size has been derived using both primary and secondary sources.The research process begins with exhaustive secondary research using internal and external sources to obtain qualitative and quantitative information related to the artificial intelligence chip market.

Also, multiple primary interviews were conducted with industry participants and commentators in order to validate data and analysis. The participants who typically take part in such a process include industry expert such as VPs, business development managers, market intelligence managers, and national sales managers, and external consultants such as valuation experts, research analysts, and key opinion leaders specializing in the artificial intelligence technology.

Read the full report: https://www.reportlinker.com/p05774487/?utm_source=PRN

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Artificial Intelligence to Improve Resolution of Brain Magnetic Resonance Imaging – Lab Manager Magazine

The method, designed by researchers of the UMA, enables the detection of pathologies with increased accuracy and definition, without additional tests.University of Malaga

Researchers of the ICAI GroupComputational Intelligence and Image Analysisof the University of Malaga (UMA) have designed an unprecedented method that is capable of improving brain images obtained through magnetic resonance imaging using artificial intelligence.

This new model manages to increase image quality from low resolution to high resolution without distorting the patients' brain structures, using a deep learning artificial neural networka model that is based on the functioning of the human brainthat "learns" this process.

"Deep learning is based on very large neural networks, and so is its capacity to learn, reaching the complexity and abstraction of a brain", explains researcher Karl Thurnhofer, main author of this study, who adds that, thanks to this technique, the activity of identification can be performed alone, without supervision; an identification effort that the human eye would not be capable of doing.

Researchers of the ICAI GroupComputational Intelligence and Image Analysisof the University of Malaga (UMA) have designed an unprecedented method that is capable of improving brain images obtained through magnetic resonance imaging using artificial intelligence.Credit: University of Malaga

Published in the scientific journalNeurocomputing, this study represents a scientific breakthrough, since the algorithm developed by the UMA yields more accurate results in less time, with clear benefits for patients. "So far, the acquisition of quality brain images has depended on the time the patient remained immobilized in the scanner; with our method, image processing is carried out later on the computer," explains Thurnhofer.

According to the experts, the results will enable specialists to identify brain-related pathologies, like physical injuries, cancer or language disorders, among others, with increased accuracy and definition, because image details are thinner, thus avoiding the performance of additional tests when diagnoses are uncertain.

Nowadays, the ICAI Group of the UMA, led by professor Ezequiel Lpez, co-author of this study, is a benchmark for neurocomputing, computational learning and artificial intelligence. Enrique Domnguez and Rafael Luque, both professors in the Department of Computer Science and Programming Languages, as well as researcher Nria Ro-Vellv, also participated in this study.

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Artificial Intelligence to Improve Resolution of Brain Magnetic Resonance Imaging - Lab Manager Magazine

Department of Homeland Security Funds Synapse Technology to Develop Artificial Intelligence Technology – PR Web

Applying the artificial intelligence platform to CT machines is the natural evolution of the Syntech ONE product line.

PALO ALTO, Calif. (PRWEB) January 21, 2020

Artificial intelligence security and defense company Synapse Technology Corporation today announced that the Department of Homeland Security (DHS) Science and Technology Directorate (S&T) awarded the company a contract to develop artificial intelligence algorithms for computed tomography (CT) machines at airports across the United States.

To date, Synapse Technology has deployed its technology on security X-ray machines at sites ranging from courthouses to airports on a global scale. The artificial intelligence algorithms automatically identify threats in baggage and alert human operators, adding an additional layer of security at these checkpoints. This new DHS contract represents an opportunity for the company to adapt the technology to new 3D CT scanning machines that are being broadly deployed.

Our artificial intelligence platform has been designed to be adaptable across machine types. Applying the AI system to CT machines is the natural evolution of the product weve built over the last several years, said Ian Cinnamon, President of Synapse Technology.

Synapse Technology looks forward to collaborating closely with the Department of Homeland Security to deploy artificial intelligence technology on the newest security checkpoint scanning machines being installed across the country.

About Synapse TechnologySynapse Technologys AI platform Syntech ONE integrates with new and existing X-ray machines used at security checkpoints. Instead of security screeners relying solely on human cognitive abilities to identify threats like guns and knives, Syntech ONE augments and automates the detection of these dangerous items. Syntech ONE has already been widely deployed, having processed over 24,000,000 passenger bags at security checkpoints in four countries. The US Department of Homeland Security (DHS) recognizes the value of Syntech ONE and has granted Synapse Technology Corporation a SAFETY Act award for its technology platform.

The research in this press release is being conducted under contract with the US Department of Homeland Security (DHS) Science and Technology (S&T) Directorate (https://www.dhs.gov/science-and-technology), contract 70RSAT20T00000014. The opinions contained herein are those of the contractors and do not necessarily reflect those of DHS S&T

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To mitigate the impact of artificial intelligence we must harness the power of emotional intelligence – The HR Director Magazine

One of the most recognised interpretationsof emotional intelligence (EI) is that of the American author and sciencejournalist, Daniel Goleman. He describes EI as how we use a combination ofself-awareness, self-management and empathy to build and maintain successfulrelationships. Goleman suggests that EI accounts for 67% of the abilitiesneeded to be a successful leader and that it is twice as important as technicalproficiency or IQ.

Why EI is so importantThe most successful leaders enjoy positive relationships with other people. They are able to do this because they are aware of and understand what they feel and why. This awareness and understanding helps them make good decisions and develop a sound moral compass.

As well as understanding theiremotions, successful leaders can manage them and channel how they feel inpositive ways. They understand how other peoples emotions affect their ownfeelings and behaviour. And they bring all this together into how they manage theirrelationships with other people.

Of course, EI has always beenimportant, for all of us. But the impact of technology today is making it essential.83% of executives interviewed by Capgemini in 2019 said a highly emotionallyintelligent workforce will be a prerequisite for success in years to come. And76% said their employees need to develop their EI so they can adapt to newroles and take on tasks that cant be automated.

Claudia Crummenerl, global practicelead, people and organisation at Capgemini Invent said, Companies areincreasingly aware of the need for emotional intelligence skills but are notmoving quickly enough to invest in them.

Why the need for EI is growingToday, were talking to each other less and less while algorithms and AI are influencing us more and more. As a result were losing our ability to connect, to have empathy and to understand. Our EI is suffering.

The more we depend on technologythe more we impair our EI. To counter this we must preserve and capitalize on thethings we can do that technology cant. And we must recognise and value ourimportance as people, as more than simply cogs in a corporate machine.

The value of high EIPeople with high EI, understand their emotions and use them to guide how they act. They know their own strengths and weaknesses, can handle constructive feedback and use it to improve their performance and that of the people they manage.

People with high EI are better atcoping with and managing change. They are more likely to hire people whoperform well in areas they struggle with themselves, and in doing so improvetheir organisations performance.

And people with high EI understandothers and so can motivate them. This makes them more comfortable taking on aleadership role. Because they can manage their own and others emotions, theyare able to create a positive working environment.

These strengths are also thestrengths of people who in my business we call innovative communicators. Andits why we base our communications training firmly in EI.

What high EI means for communicationThe more we interact with other people, the more we learn to understand our own motivations and behaviours. And the more we interact with other people, the more we learn to understand their motivations and behaviours.

So the more we communicate withothers, the more emotionally intelligent we become. And as we become moreemotionally intelligent, so we become better or innovative communicators.

Innovative communication is not afunction, something you delegate to your human resources or communicationsteam. Its a set of qualities anyone can develop to help them lead withconfidence and drive growth. It depends on behaviours such as adaptiveleadership, collaboration and delegation, all of which contribute to high EI.So its impossible to separate high EI from effective communication skills. Thebest communicators will all have high EI because the two are co-dependent.

This means when you train people incommunication skills you need to look at the whole human and base the trainingin EI. Its not about internal comms, external comms, PR, HR or marketing. Itsabout human beings talking to other human beings and the wide range of skillsand personality traits it takes to do that effectively particularly todaywhen we are so influenced by technology and social media.

The time to act is nowThe demand for people with high EI and innovative communication skills is set to soar so you should prepare your business by training your teams now. In 2019, IBMs Institute for Business Value found that, over the next three years, more than 120 million workers worldwide will need retraining in behavioural skills such as communication, teamwork, adaptability, ethics and integrity. All of which are firmly rooted in EI.

Our rhetoric, our politics and our economies are becoming increasingly divisive. Which is why there has never been a better time for people in business to reconnect through meaningful communication, to what matters most to them and to each other, and for the greater good.

Miti Ampoma,Founder and DirectorMiticom Communications Training

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Emotion Artificial Intelligence Market Research 2020: Currently Trending Market Strategies of Production and Applications by 2025 – Dagoretti News

The report presents authentic and accurate research study on the global Emotion Artificial Intelligence Market on the basis of qualitative and quantitative assessment done by the leading industry experts. The report throws light on the present market scenario and how is it anticipated to change in the coming future. Growth determinants, micro and macroeconomic indicators, opportunities, developments, and key market trends are scrutinized in this report that are likely to have a major influence on the global Emotion Artificial Intelligence Market Growth.

Market Overview

The global Emotion Artificial Intelligence market size is expected to gain market growth in the forecast period of 2020 to 2025, with a CAGR of % in the forecast period of 2020 to 2025 and will expected to reach USD million by 2025, from USD million in 2019.

The Emotion Artificial Intelligence Market report provides a detailed analysis of global market size, regional and country-level market size, segmentation market growth, market share, competitive Landscape, sales analysis, impact of domestic and global market players, value chain optimization, trade regulations, recent developments, opportunities analysis, strategic market growth analysis, product launches, area marketplace expanding, and technological innovations.

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Emotion Artificial Intelligence Market is split by Type and by Application. For the period 2015-2025, the growth among segments provides accurate calculations and forecasts for sales by Type and by Application in terms of volume and value. This analysis can help you expand your business by targeting qualified niche markets.

By Type, Emotion Artificial Intelligence market has been segmented into:

By Application, Emotion Artificial Intelligence has been segmented into:

Regions and Countries Level Analysis

Regional analysis is another highly comprehensive part of the research and analysis study of the global Emotion Artificial Intelligence Market presented in the report. This section sheds light on the sales growth of different regional and country-level Emotion Artificial Intelligence markets. For the historical and forecast period 2015 to 2025, it provides detailed and accurate country-wise volume analysis and region-wise market size analysis of the global Emotion Artificial Intelligence market.

The report offers in-depth assessment of the growth and other aspects of the Emotion Artificial Intelligence market in important countries (regions), including:

Competitive Landscape and Emotion Artificial Intelligence Market Share Analysis

Emotion Artificial Intelligence competitive landscape provides details by vendors, including company overview, company total revenue (financials), market potential, global presence, Emotion Artificial Intelligence sales and revenue generated, market share, price, production sites and facilities, SWOT analysis, product launch. For the period 2015-2020, this study provides the Emotion Artificial Intelligence sales, revenue and market share for each player covered in this report.

The major players covered in Emotion Artificial Intelligence are:

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3 ASX shares for exposure to the artificial intelligence industry – Motley Fool Australia

According to market research, the artificial intelligence (AI) market was valued at US$16.06 billion in 2017 and is expected to reach US$190.61 billion by 2025, with a compound annual growth rate of 36.6%.

Investing in AI is a form of thematic investing; that is, gaining exposure to a niche that is expected to grow significantly over time.

According to market research, the artificial intelligence (AI) market was valued at US$16.06 billion in 2017 and is expected to reach US$190.61 billion by 2025, with a compound annual growth rate of 36.6%.

Investing in AI is a form of thematic investing; that is, gaining exposure to a niche that is expected to grow significantly over time.

AI refers to intelligence demonstrated by machines. It is a wide-ranging branch of computer science focused on building smart machines capable of performing tasks that have typically required human intelligence. AI makes it possible for machines to learn from experience, adjust to new inputs, and perform tasks that previously required human input.

Advances in machine learning, deep learning, and natural language processing have enabled rapid advances in AI over the last decade. Examples include smart assistants such as Siri and Alexa, song and TV show recommendations from Spotify and Netflix, and spam filters on email. AI is also used to provide 24/7 customer service via chatbots, to write news stories, and in self-driving cars.

Here are 3 ASX shares involved in the AI sector.

Appen provides data for use in machine learning and AI. It collects and labels images, text, speech, audio, and video data used to build and improve artificial intelligence systems at some of the worlds biggest tech companies.

Appen listed on the ASX in 2015 and has grown exponentially since then. Total profit for the year ended 31 December 2014 was $1.615 million. Total profit for the year ended 31 December 2018 was $49 million. Appens share price has increased from 56 cents in early 2015 to more than $24 currently.

Brainchip is a provider of neuromorphic computing solutions, a type of AI inspired by the biology of the human neuron. In 2018, Brainchip announced the release of the Akida Neuromorphic System-On-Chip. The Akida is small, low cost, and low power, making it well suited for applications such as autonomous vehicles, drones, and machine vision systems.

The Akida IP was released for sale as a license in mid 2019 and has received a positive response from customers. Brainchip has some revenues, however these are currently not sufficient to cover its expenses for R&D, marketing, etcetera. The company ended the September 2019 quarter with US$9.5 million in cash. Significant reductions in planned expenses in 2020 have been initiated.

This ETF tracks the ROBO Global Robotics and Automation Index. The Index is made up of shares in companies in the global value chain of robotics, automation, and artificial intelligence. The ETF has provided returns of 29.50% in the year to 31 December.

Management fees are 0.69% per annum and distributions are made annually. The ETF has 91 holdings spread across 13 countries with a weighted price-to-earnings ratio of 30.7.

The AI industry will only grow over the coming years. Whether that means Brainchip and Appen will also grow remains to be seen. In my view, the least risky choice of the 3 is likely ROBO, given the diversification it provides.

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Motley Fool contributor Kate O'Brien has no position in any of the stocks mentioned. The Motley Fool Australia owns shares of Appen Ltd. We Fools may not all hold the same opinions, but we all believe that considering a diverse range of insights makes us better investors. The Motley Fool has a disclosure policy. This article contains general investment advice only (under AFSL 400691). Authorised by Scott Phillips.

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3 ASX shares for exposure to the artificial intelligence industry - Motley Fool Australia

Google claims to have invented a quantum computer, but IBM begs to differ – The Conversation CA

On Oct. 23, 2019, Google published a paper in the journal Nature entitled Quantum supremacy using a programmable superconducting processor. The tech giant announced its achievement of a much vaunted goal: quantum supremacy.

This perhaps ill-chosen term (coined by physicist John Preskill) is meant to convey the huge speedup that processors based on quantum-mechanical systems are predicted to exhibit, relative to even the fastest classical computers.

Googles benchmark was achieved on a new type of quantum processor, code-named Sycamore, consisting of 54 independently addressable superconducting junction devices (of which only 53 were working for the demonstration).

Each of these devices allows the storage of one bit of quantum information. In contrast to the bits in a classical computer, which can only store one of two states (0 or 1 in the digital language of binary code), a quantum bit qbit can store information in a coherent superposition state which can be considered to contain fractional amounts of both 0 and 1.

Sycamore uses technology developed by the superconductivity research group of physicist John Martinis at the University of California, Santa Barbara. The entire Sycamore system must be kept cold at cryogenic temperatures using special helium dilution refrigeration technology. Because of the immense challenge involved in keeping such a large system near the absolute zero of temperature, it is a technological tour de force.

The Google researchers demonstrated that the performance of their quantum processor in sampling the output of a pseudo-random quantum circuit was vastly better than a classical computer chip like the kind in our laptops could achieve. Just how vastly became a point of contention, and the story was not without intrigue.

An inadvertent leak of the Google groups paper on the NASA Technical Reports Server (NTRS) occurred a month prior to publication, during the blackout period when Nature prohibits discussion by the authors regarding as-yet-unpublished papers. The lapse was momentary, but long enough that The Financial Times, The Verge and other outlets picked up the story.

A well-known quantum computing blog by computer scientist Scott Aaronson contained some oblique references to the leak. The reason for this obliqueness became clear when the paper was finally published online and Aaronson could at last reveal himself to be one of the reviewers.

The story had a further controversial twist when the Google groups claims were immediately countered by IBMs quantum computing group. IBM shared a preprint posted on the ArXiv (an online repository for academic papers that have yet to go through peer review) and a blog post dated Oct. 21, 2019 (note the date!).

While the Google group had claimed that a classical (super)computer would require 10,000 years to simulate the same 53-qbit random quantum circuit sampling task that their Sycamore processor could do in 200 seconds, the IBM researchers showed a method that could reduce the classical computation time to a mere matter of days.

However, the IBM classical computation would have to be carried out on the worlds fastest supercomputer the IBM-developed Summit OLCF-4 at Oak Ridge National Labs in Tennessee with clever use of secondary storage to achieve this benchmark.

While of great interest to researchers like myself working on hardware technologies related to quantum information, and important in terms of establishing academic bragging rights, the IBM-versus-Google aspect of the story is probably less relevant to the general public interested in all things quantum.

For the average citizen, the mere fact that a 53-qbit device could beat the worlds fastest supercomputer (containing more than 10,000 multi-core processors) is undoubtedly impressive. Now we must try to imagine what may come next.

The reality of quantum computing today is that very impressive strides have been made on the hardware front. A wide array of credible quantum computing hardware platforms now exist, including ion traps, superconducting device arrays similar to those in Googles Sycamore system and isolated electrons trapped in NV-centres in diamond.

These and other systems are all now in play, each with benefits and drawbacks. So far researchers and engineers have been making steady technological progress in developing these different hardware platforms for quantum computing.

What has lagged quite a bit behind are custom-designed algorithms (computer programs) designed to run on quantum computers and able to take full advantage of possible quantum speed-ups. While several notable quantum algorithms exist Shors algorithm for factorization, for example, which has applications in cryptography, and Grovers algorithm, which might prove useful in database search applications the total set of quantum algorithms remains rather small.

Much of the early interest (and funding) in quantum computing was spurred by the possibility of quantum-enabled advances in cryptography and code-breaking. A huge number of online interactions ranging from confidential communications to financial transactions require secure and encrypted messages, and modern cryptography relies on the difficulty of factoring large numbers to achieve this encryption.

Quantum computing could be very disruptive in this space, as Shors algorithm could make code-breaking much faster, while quantum-based encryption methods would allow detection of any eavesdroppers.

The interest various agencies have in unbreakable codes for secure military and financial communications has been a major driver of research in quantum computing. It is worth noting that all these code-making and code-breaking applications of quantum computing ignore to some extent the fact that no system is perfectly secure; there will always be a backdoor, because there will always be a non-quantum human element that can be compromised.

More appealing for the non-espionage and non-hacker communities in other words, the rest of us are the possible applications of quantum computation to solve very difficult problems that are effectively unsolvable using classical computers.

Ironically, many of these problems emerge when we try to use classical computers to solve quantum-mechanical problems, such as quantum chemistry problems that could be relevant for drug design and various challenges in condensed matter physics including a number related to high-temperature superconductivity.

So where are we in the wonderful and wild world of quantum computation?

In recent years, we have had many convincing demonstrations that qbits can be created, stored, manipulated and read using a number of futuristic-sounding quantum hardware platforms. But the algorithms lag. So while the prospect of quantum computing is fascinating, it will likely be a long time before we have quantum equivalents of the silicon chips that power our versatile modern computing devices.

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