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How to overcome AI and machine learning adoption barriers – Gigabit Magazine – Technology News, Magazine and Website

Matt Newton, Senior Portfolio Marketing Manager at AVEVA, on how to overcome adoption barriers for AI and machine learning in the manufacturing industry

There has been a considerable amount of hype around Artificial Intelligence (AI) and Machine Learning (ML) technologies in the last five or so years.

So much so that AI has become somewhat of a buzzword full of ideas and promise, but something that is quite tricky to execute in practice.

At present, this means that the challenge we run into with AI and ML is a healthy dose of scepticism.

For example, weve seen several large companies adopt these capabilities, often announcing they intend to revolutionize operations and output with such technologies but then failing to deliver.

In turn, the ongoing evolution and adoption of these technologies is consequently knocked back. With so many potential applications for AI and ML it can be daunting to identify opportunities for technology adoption that can demonstrate real and quantifiable return on investment.

Many industries have effectively reached a sticking point in their adoption of AI and ML technologies.

Typically, this has been driven by unproven start-up companies delivering some type of open source technology and placing a flashy exterior around it, and then relying on a customer to act as a development partner for it.

However, this is the primary problem customers are not looking for prototype and unproven software to run their industrial operations.

Instead of offering a revolutionary digital experience, many companies are continuing to fuel their initial scepticism of AI and ML by providing poorly planned pilot projects that often land the company in a stalled position of pilot purgatory, continuous feature creep and a regular rollout of new beta versions of software.

This practice of the never ending pilot project is driving a reluctance for customers to then engage further with innovative companies who are truly driving digital transformation in their sector with proven AI and ML technology.

A way to overcome these challenges is to demonstrate proof points to the customer. This means showing how AI and ML technologies are real and are exactly like wed imagine them to be.

Naturally, some companies have better adopted AI and ML than others, but since much of this technology is so new, many are still struggling to identify when and where to apply it.

For example, many are keen to use AI to track customer interests and needs.

In fact, even greater value can be discovered when applying AI in the form of predictive asset analytics on pieces of industrial process control and manufacturing equipment.

AI and ML can provide detailed, real-time insights on machinery operations, exposing new insights that humans cannot necessarily spot. Insights that can drive huge impact on businesses bottom line.

AI and ML is becoming incredibly popular in manufacturing industries, with advanced operations analysis often being driven by AI. Many are taking these technologies and applying it to their operating experiences to see where economic savings can be made.

All organisations want to save money where they can and with AI making this possible.

These same organisations are usually keen to invest in further digital technologies. Successfully implementing an AI or ML technology can significantly reduce OPEX and further fuel the digital transformation of an overall enterprise.

Understandably, we are seeing the value of AI and ML best demonstrated in the manufacturing sector in both process and batch automation.

For example, using AI to figure out how to optimize the process to achieve higher production yields and improve production quality. In the food and beverage sectors, AI is being used to monitor production line oven temperatures, flagging anomalies - including moisture, stack height and color - in a continually optimised process to reach the coveted golden batch.

The other side of this is to use predictive maintenance to monitor the behaviour of equipment and improve operational safety and asset reliability.

A combination of both AI and ML is fused together to create predictive and prescriptive maintenance. Where AI is used to spot anomalies in the behavior of assets and recommended solution is prescribed to remediate potential equipment failure.

Predictive and Prescriptive maintenance assist with reducing pressure on O&M costs, improving safety, and reducing unplanned shutdowns.

Both AI, machine learning and predictive maintenance technologies are enabling new connections to be made within the production line, offering new insights and suggestions for future operations.

Now is the time for organisations to realise that this adoption and innovation is offering new clarity on the relationship between different elements of the production cycle - paving the way for new methods to create better products at both faster speeds and lower costs.

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How to overcome AI and machine learning adoption barriers - Gigabit Magazine - Technology News, Magazine and Website

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Canaan’s Kendryte K210 and the Future of Machine Learning – CapitalWatch

Author: CapitalWatch Staff

Canaan Inc. (Nasdaq: CAN) became publicly traded in New York in late November. It raised $90 million in its IPO, which Canaan's founder, chairman, and chief executive officer,Nangeng Zhang modestly called "a good start." Since that time, the company has met significant milestones in its mission to disrupt the supercomputing industry.

Operating since 2013, Hangzhou-based Canaan delivers supercomputing solutions tailored to client needs. The company focuses on the research and development of artificial intelligence (AI) technology specifically, AI chips, AI algorithms, AI architectures, system on a chip (SoC) integration, and chip integration. Canaan is also known as a top manufacturer of mining hardware in China the global leader in digital currency mining.

Since IPO, Canaan has made strides in accomplishing new projects, despite the hard-hit cross-industry crisis Covid-19 has caused worldwide. In a recent announcement, Canaan said it has developed a SaaS product which its partners can use to operate a cloud mining platform. Cloud mining allows users to mine digital currency without having to buy and maintain mining hardware and spend on electricity a trend that has been gaining popularity.

A Chip of the Future

Earlier this year, Canaan participatedat the 2020 International Consumer Electronics Show in Las Vegas, the world's largest tech show that attracts innovators from across the globe. Canaan impressed, showcasing its Kendryte K210 the world's first-ever RISC-V-based edge AI chip. The chip was released in September 2018 and has been in mass-production ever since.

K210 is Canaan's first chip. The AI chip is designed to carry out machine learning. The primary functions of the K210 are machine vision and semantic, which includes the KPU for computing convolutional neural networks and an APU for processing microphone array inputs. KPU is a general-purpose neural network processor with built-in convolution, batch normalization, activation, and pooling operations. The next-generation chip can detect faces and objects in real-time. Despite the high computing power, K210 consumes only 0.3W while other typical devices consume 1W.

More Than Just Chipping Away at Sales

As of September 30, 2019, Canaan has shipped more than 53,000 AI chips and development kits to AI product developers since release.

Currently, the sales of K210 are growing exponentially, according to CEO Zhang .

The company has moved quickly to the commercialization of chips, and developed modules, products and back-end SaaS, offering customers a "full flow of AI solutions."

Based on the first generation of K210, Canaan has formed critical strategic partnerships.

For example, the company launched joint projects with a leading AI algorithm provider, a top agricultural science and technology enterprise, and a well-known global soft drink manufacturer to deliversmart solutionsfor variousindustrialmarkets.

The Booming Blockchain Industry

Currently, Canaan is working under the development strategy of "Blockchain + AI." The company has made several breakthroughs in the blockchain and AI industry, including algorithm development and optimization, standard unit design, low-voltage and high-efficiency operation, high-performance design system and heat dissipation, etc. The company has also accumulated extensive experience in ASIC chip manufacturing, laying the foundation for its future growth.

Canaan released first-generation products based on Samsung's 8nm and SMIC's 14nm technologies in Q4 last year. The former has been shipped in Q1 this year, while the latter will be shipped in Q2. In February, it launched the second generation of the product which is more efficient, more cost-effective and offers better performance.

Currently, TSMC's 5nm technology is under development. This technology will further improve the company's machines' computing power and ensure Canaan's leading position in the blockchain hardware space.

"We are the leader in the industry," says Zhang.

Canaan's Covid-19 Strategy

During the Covid-19 outbreak, Canaan improved the existing face recognition access control system. The new software can detect and identify people wearing masks. At the same time, the intelligent attendance system has been integrated to assist human resource management

Integrating mining machine learning and AI, the K210 chip has been used on Avalon mining machine, which can identify and monitor potential network viruses through intelligent algorithms. The company will explore more innovative integration in the future.

Second-Generation Gem

In terms of AI, the company will launch the second-generation AI chip K510 this year. The design of its architecture has been "greatly" optimized, and the computing power is several times more robust than the K210. Later this year, Canaan will use this tech in areas including smart energy consumption, smart industrial parks, smart driving, smart retail, and smart finance.

Canaan's Cash

In terms of operating costs and R&D, the company's last-year operating cost dropped 13.3% year-on-year. In 2018 and 2019, Canaan recorded R&D expenses of 189.7 million yuan and 169 million yuan, respectively347 million yuan were used to incentivize core R&D personnel.

In addition, the company currently has more than 500 million yuan in cash ($70.5 million), will continue to operate under the "blockchain + AI" strategy, with a continued focus on the commercialization of its AI technology.

A Fruitful Future

Canaan began as a manufacturer of Bitcoin mining machines, but it has become more than that. In the short term, the Bitcoin halving cycle is approaching (Estimated to occur on May 11, 2020 CW); this should promote the sales of company's mining machine, In the long term, now a global leader in ASIC technology, Canaan could be in a unique position to meet supercomputing demand.

"Blockchain is a good start, but we'll go beyond that," says Zhang. "When a seed grows up to be a big tree, it will bear fruit."

So far, it has done just that. Just how high that "tree" can get remains to be seen, but one thing is certain: The Kendryte K210 chip will be the driving force fueling the company's growth.

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Canaan's Kendryte K210 and the Future of Machine Learning - CapitalWatch

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Machine Learning Software Market Growth by Top Companies, Trends by Types and Application, Forecast to 2026 – Cole of Duty

Floyd Labs

Moreover, the Machine Learning Software report offers a detailed analysis of the competitive landscape in terms of regions and the major service providers are also highlighted along with attributes of the market overview, business strategies, financials, developments pertaining as well as the product portfolio of the Machine Learning Software market. Likewise, this report comprises significant data about market segmentation on the basis of type, application, and regional landscape. The Machine Learning Software market report also provides a brief analysis of the market opportunities and challenges faced by the leading service provides. This report is specially designed to know accurate market insights and market status.

By Regions:

* North America (The US, Canada, and Mexico)

* Europe (Germany, France, the UK, and Rest of the World)

* Asia Pacific (China, Japan, India, and Rest of Asia Pacific)

* Latin America (Brazil and Rest of Latin America.)

* Middle East & Africa (Saudi Arabia, the UAE, , South Africa, and Rest of Middle East & Africa)

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Table of Content

1 Introduction of Machine Learning Software Market

1.1 Overview of the Market1.2 Scope of Report1.3 Assumptions

2 Executive Summary

3 Research Methodology

3.1 Data Mining3.2 Validation3.3 Primary Interviews3.4 List of Data Sources

4 Machine Learning Software Market Outlook

4.1 Overview4.2 Market Dynamics4.2.1 Drivers4.2.2 Restraints4.2.3 Opportunities4.3 Porters Five Force Model4.4 Value Chain Analysis

5 Machine Learning Software Market, By Deployment Model

5.1 Overview

6 Machine Learning Software Market, By Solution

6.1 Overview

7 Machine Learning Software Market, By Vertical

7.1 Overview

8 Machine Learning Software Market, By Geography

8.1 Overview8.2 North America8.2.1 U.S.8.2.2 Canada8.2.3 Mexico8.3 Europe8.3.1 Germany8.3.2 U.K.8.3.3 France8.3.4 Rest of Europe8.4 Asia Pacific8.4.1 China8.4.2 Japan8.4.3 India8.4.4 Rest of Asia Pacific8.5 Rest of the World8.5.1 Latin America8.5.2 Middle East

9 Machine Learning Software Market Competitive Landscape

9.1 Overview9.2 Company Market Ranking9.3 Key Development Strategies

10 Company Profiles

10.1.1 Overview10.1.2 Financial Performance10.1.3 Product Outlook10.1.4 Key Developments

11 Appendix

11.1 Related Research

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Machine Learning Software Market Growth by Top Companies, Trends by Types and Application, Forecast to 2026 - Cole of Duty

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Quantzig Launches New Article Series on COVID-19’s Impact – ‘Understanding Why Online Food Delivery Companies Are Betting Big on AI and Machine…

LONDON--(BUSINESS WIRE)--As a part of its new article series that analyzes COVID-19s impact across industries, Quantzig, a premier analytics services provider, today announced the completion of its recent article Why Online Food Delivery Companies are Betting Big on AI and Machine Learning

The article also offers comprehensive insights on:

Human activity has slowed down due to the pandemic, but its impact on business operations has not. We offer transformative analytics solutions that can help you explore new opportunities and ensure business stability to thrive in the post-crisis world. Request a FREE proposal to gauge COVID-19s impact on your business.

With machine learning, you dont need to babysit your project every step of the way. Since it means giving machines the ability to learn, it lets them make predictions and also improve the algorithms on their own, says a machine learning expert at Quantzig.

After several years of being confined to technology labs and the pages of sci-fi books, today artificial intelligence (AI) and big data have become the dominant focal point for businesses across industries. Barely a day passes by without new magazine and paper articles, blog entries, and tweets about such advancements in the field of AI and machine learning. Having said that, its not very surprising that AI and machine learning in the food and beverage industry have played a crucial role in the rapid developments that have taken place over the past few years.

Talk to us to learn how our advanced analytics capabilities combined with proprietary algorithms can support your business initiatives and help you thrive in todays competitive environment.

Benefits of AI and Machine Learning

Want comprehensive solution insights from an expert who decodes data? Youre just a click away! Request a FREE demo to discover how our seasoned analytics experts can help you.

As cognitive technologies transform the way people use online services to order food, it becomes imperative for online food delivery companies to comprehend customer needs, identify the dents, and bridge gaps by offering what has been missing in the online food delivery business. The combination of big data, AI, and machine learning is driving real innovation in the food and beverage industry. Such technologies have been proven to deliver fact-based results to online food delivery companies that possess the data and the required analytics expertise.

At Quantzig, we analyze the current business scenario using real-time dashboards to help global enterprises operate more efficiently. Our ability to help performance-driven organizations realize their strategic and operational goals within a short span using data-driven insights has helped us gain a leading edge in the analytics industry. To help businesses ensure business continuity amid the crisis, weve curated a portfolio of advanced COVID-19 impact analytics solutions that not just focus on improving profitability but help enhance stakeholder value, boost customer satisfaction, and help achieve financial objectives.

Request more information to know more about our analytics capabilities and solution offerings.

About Quantzig

Quantzig is a global analytics and advisory firm with offices in the US, UK, Canada, China, and India. For more than 15 years, we have assisted our clients across the globe with end-to-end data modeling capabilities to leverage analytics for prudent decision making. Today, our firm consists of 120+ clients, including 45 Fortune 500 companies. For more information on our engagement policies and pricing plans, visit: https://www.quantzig.com/request-for-proposal

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Quantzig Launches New Article Series on COVID-19's Impact - 'Understanding Why Online Food Delivery Companies Are Betting Big on AI and Machine...

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Eta Compute Partners with Edge Impulse to Accelerate the Development and Deployment of Machine Learning at the Edge – Yahoo Finance

The partnership will transform the development process from concept to production for embedded machine learning in micropower devices.

Eta Compute and Edge Impulse announce that they are partnering to accelerate the development and deployment of machine learning using Eta Computes revolutionary ECM3532, the worlds lowest power Neural Sensor Processor, and Edge Impulse, the leading online TinyML platform. The partnership will speed the time-to-market for machine learning in billions of IoT consumer and industrial products where battery capacity has been a roadblock.

"Collaborating with Edge Impulse ensures our growing ECM3532 developer community is fully equipped to bring innovative designs in digital health, smart city, consumer, and industrial applications to market quickly and efficiently," said Ted Tewksbury, CEO of Eta Compute. "We believe that our partnership will help companies debut their ground-breaking solutions later in 2020."

Eta Computes ECM3532 ultra-low power Neural Sensor Processor SoC that enables machine learning at the extreme edge, and its ECM3532 EVB evaluation board are now supported by Edge Impulses end-to-end ML development and MLOps platform. Developers can register for free to gain access to advanced Eta Compute machine learning algorithms and development workflows through the Edge Impulse portal.

"Machine learning at the very edge has the potential to enable the use of the 99% of sensor data that is lost today because of cost, bandwidth, or power constraints," said Zach Shelby, CEO and Co-founder of Edge Impulse. "Our online SaaS platform and Eta Computes innovative processor are the ideal combination for development teams seeking to accurately collect data, create meaningful data sets, spin models, and generate efficient ML at a rapidly accelerated pace."

"Trillions of devices are expected to come online by 2035 and many will require some level of machine learning at the edge," said Dennis Laudick, vice president of marketing, Machine Learning Group, Arm. "The combination of Eta Computes TinyML hardware based on Arm Cortex and CMSIS-NN technology, and the SaaS TinyML solutions from Edge Impulse provides developers a complete solution for bringing power efficient, edge, or endpoint ML products to market at the fast pace required for this next era of compute."

For more information or to begin developing, visit EtaCompute.com or EdgeImpulse.com

About Eta Compute

Eta Compute was founded in 2015 with the vision that the proliferation of intelligent devices at the network edge will make daily life safer, healthier, comfortable and more convenient without sacrificing privacy and security. The company delivers the worlds lowest power embedded platform using patented Continuous Voltage Frequency Scaling to deliver unparalleled machine intelligence to energy-constrained products and remove battery capacity as a barrier in consumer and industrial applications. In 2018, the company received the Design Innovation Of The Year and Best Use Of Advanced Technologies awards at Arm TechCon. For more information visit EtaCompute.com or contact the company via email at info@etacompute.com.

About Edge Impulse

Edge Impulse is on a mission to enable developers to create the next generation of intelligent devices using embedded machine learning in industrial, enterprise and human centric applications. Machine learning at the very edge will enable valuable use of the 99% of sensor data that is discarded today due to cost, bandwidth or power constraints. The founders believe that machine learning can enable positive change in society and are dedicated to support applications for good. Sign up for free at edgeimpulse.com.

View source version on businesswire.com: https://www.businesswire.com/news/home/20200512005318/en/

Contacts

Media Contacts: Eta Compute:Phyllis Grabot, 805.341.7269 / phyllis@corridorcomms.com Bonnie Quintanilla, 818.681.5777 / bonnie@corridorcomms.com

Edge Impulse:Zach Shelby, 408.203.9434 / hello@edgeimpulse.com

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Eta Compute Partners with Edge Impulse to Accelerate the Development and Deployment of Machine Learning at the Edge - Yahoo Finance

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Five Strategies for Putting AI at the Center of Digital Transformation – Knowledge@Wharton

Across industries, companies are applying artificial intelligence to their businesses, with mixed results. What separates the AI projects that succeed from the ones that dont often has to do with the business strategies organizations follow when applying AI, writes Wharton professor of operations, information and decisions Kartik Hosanagar in this opinion piece. Hosanagar is faculty director of Wharton AI for Business, a new Analytics at Wharton initiative that will support students through research, curriculum, and experiential learning to investigate AI applications. He also designed and instructs Wharton Onlines Artificial Intelligence for Business course.

While many people perceive artificial intelligence to be the technology of the future, AI is already here. Many companies across a range of industries have been applying AI to improve their businesses from Spotify using machine learning for music recommendations to smart home devices like Google Home and Amazon Alexa. That said, there have also been some early failures, such as Microsofts social-learning chatbot, Tay, which turned anti-social after interacting with hostile Twitter followers, and IBM Watsons inability to deliver results in personalized health care. What separates the AI projects that succeed from the ones that dont often has to do with the business strategies organizations follow when applying AI. The following strategies can help business leaders not only effectively apply AI in their organizations, but succeed in adapting it to innovate, compete and excel.

1. View AI as a tool, not a goal.

One pitfall companies might encounter in the process of starting new AI initiatives is that the concentrated focus and excitement around AI might lead to AI being viewed as a goal in and of itself. But executives should be cautious about developing a strategy specifically for AI, and instead focus on the role AI can play in supporting the broader strategy of the company. A recent report from MIT Sloan Management Review and Boston Consulting Group calls this backward from strategy, not forward from AI.

As such, instead of exhaustively looking for all the areas AI could fit in, a better approach would be for companies to analyze existing goals and challenges with a close eye for the problems that AI is uniquely equipped to solve. For example, machine learning algorithms bring distinct strengths in terms of their predictive power given high-quality training data. Companies can start by looking for existing challenges that could benefit from these strengths, as those areas are likely to be ones where applying AI is not only possible, but could actually disproportionately benefit the business.

The application of machine learning algorithms for credit card fraud detection is one example of where AIs particular strengths make it a very valuable tool in assisting with a longstanding problem. In the past, fraudulent transactions were generally only identified after the fact. However, AI allows banks to detect and block fraud in real time. Because banks already had large volumes of data on past fraudulent transactions and their characteristics, the raw material from which to train machine learning algorithms is readily available. Moreover, predicting whether particular transactions are fraudulent and blocking them in real time is precisely the type of repetitive task that an algorithm can do at a speed and scale that humans cannot match.

2. Take a portfolio approach.

Over the long term, viewing AI as a tool and finding AI applications that are particularly well matched with business strategy will be most valuable. However, I wouldnt recommend that companies pool all their AI resources into a single, large, moonshot project when they are first getting started. Rather, I advocate taking a portfolio approach to AI projects that includes both quick wins and long-term projects. This approach will allow companies to gain experience with AI and build consensus internally, which can then support the success of larger, more strategic and transformative projects later down the line.

Specifically, quick wins are smaller projects that involve optimizing internal employee touch points. For example, companies might think about specific pain points that employees experience in their day-to-day work, and then brainstorm ways AI technologies could make some of these tasks faster or easier. Voice-based tools for scheduling or managing internal meetings or voice interfaces for search are some examples of applications for internal use. While these projects are unlikely to transform the business, they do serve the important purpose of exposing employees, some of whom may initially be skeptics, to the benefits of AI. These projects also provide companies with a low-risk opportunity to build skills in working with large volumes of data, which will be needed when tackling larger AI projects.

The second part of the portfolio approach, long-term projects, is what will be most impactful and where it is important to find areas that support the existing business strategy. Rather than looking for simple ways to optimize the employee experience, long-term projects should involve rethinking entire end-to-end processes and potentially even coming up with new visions for what otherwise standard customer experiences could look like. For example, a long-term project for a car insurance company could involve creating a fully automated claims process in which customers can photograph the damage of their car and use an app to settle their claims. Building systems like this that improve efficiency and create seamless new customer experiences requires technical skills and consensus on AI, which earlier quick wins will help to build.

The skills needed for embarking on AI projects are unlikely to exist in sufficient numbers in most companies, making reskilling particularly important.

3. Reskill and invest in your talent.

In addition to developing skills through quick wins, companies should take a structured approach to growing their talent base, with a focus on both reskilling internal employees in addition to hiring external experts. Focusing on growing the talent base is particularly important given that most engineers in a company would have been trained in computer science before the recent interest in machine learning. As such, the skills needed for embarking on AI projects are unlikely to exist in sufficient numbers in most companies, making reskilling particularly important.

In its early days of working with AI, Google launched an internal training program where employees were invited to spend six months working in a machine learning team with a mentor. At the end of this time, Google distributed these experts into product teams across the company in order to ensure that the entire organization could benefit from AI-related reskilling. There are many new online courses to reskill employees in AI economically.

The MIT Sloan Management Review-BCG report mentioned above also found that, in addition to developing talent in producing AI technologies, an equally important area is that of consuming AI technologies. Managers, in particular, need to have skills to consult AI tools and act on recommendations or insights from these tools. This is because AI systems are unlikely to automate entire processes from the get-go. Rather, AI is likely to be used in situations where humans remain in the loop. Managers will need basic statistical knowledge in order to understand the limitations and capabilities of modern machine learning and to decide when to lean on machine learning models.

4. Focus on the long term.

Given that AI is a new field, it is largely inevitable that companies will experience early failures. Early failures should not discourage companies from continuing to invest in AI. Rather, companies should be aware of, and resist, the tendency to retreat after an early failure.

Historically, many companies have stumbled in their early initiatives with new technologies, such as when working with the internet and with cloud and mobile computing. The companies that retreated, that stopped or scaled back their efforts after initial failures, tended to be in a worse position long term than those that persisted. I anticipate that a similar trend will occur with AI technologies. That is, many companies will fail in their early AI efforts, but AI itself is here to stay. The companies that persist and learn to use AI well will get ahead, while those that avoid AI after their early failures will end up lagging behind.

AI shouldnt be abandoned given that the alternative, human decision-makers, are biased too.

5. Address AI-specific risks and biases aggressively.

Companies should be aware of new risks that AI can pose and proactively manage these risks from the outset. Initiating AI projects without an awareness of these unique risks can lead to unintended negative impacts on society, as well as leave the organizations themselves susceptible to additional reputational, legal, and regulatory risks (as mentioned in my book, A Humans Guide to Machine Intelligence: How Algorithms Are Shaping Our Lives and How We Can Stay in Control).

There have been many recent cases where AI technologies have discriminated against historically disadvantaged groups. For example, mortgage algorithms have been shown to have a racial bias, and an algorithm created by Amazon to assist with hiring was shown to have a gender bias, though this was actually caught by Amazon itself prior to the algorithm being used. This type of bias in algorithms is thought to occur because, like humans, algorithms are products of both nature and nurture. While nature is the logic of the algorithm itself, nurture is the data that algorithms are trained on. These datasets are usually compilations of human behaviors oftentimes specific choices or judgments that human decision-makers have previously made on the topic in question, such as which employees to hire or which loan applications to approve. The datasets are therefore made up of biased decisions from humans themselves that the algorithms learn from and incorporate. As such, it is important to note that algorithms are generally not creating wholly new biases, but rather learning from the historical biases of humans and exacerbating them by applying them on a much larger, and therefore even more damaging, scale.

AI shouldnt be abandoned given that the alternative, human decision-makers, are biased too. Rather, companies should be aware of the kinds of social harms that can result from AI technologies and rigorously audit their algorithms to catch biases before they negatively impact society. Proceeding with AI initiatives without an awareness of these social risks can lead to reputational, legal, and regulatory risks for firms, and most importantly can have extremely damaging impacts on society.

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Five Strategies for Putting AI at the Center of Digital Transformation - Knowledge@Wharton

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Twitter adds former Google VP and A.I. guru Fei-Fei Li to board as it seeks to play catch up with Google and Facebook – CNBC

Twitter has appointed Stanford professor and former Google vice president Fei-Fei Li to its board as an independent director.

The social media platform said that Li's expertise in artificial intelligence (AI) will bring relevant perspectives to the board. Li's appointment may also help Twitter to attract top AI talent from other companies in Silicon Valley.

Li left her role as chief scientist of AI/ML (artificial intelligence/machine learning) at Google Cloud in October 2018 after being criticized for comments she made in relation to the controversial Project Maven initiative with the Pentagon, which saw Google AI used to identify drone targets from blurry drone video footage.

When details of the project emerged, Google employees objected, saying that they didn't want their AI technology used in military drones. Some quit in protest and around 4,000 staff signed a petition that called for "a clear policy stating that neither Google nor its contractors will ever build warfare technology."

While Li wasn't directly involved in the project, a leaked email suggested she was more concerned about what the public would make of Google's involvement in the project as opposed to the ethics of the project itself.

"This is red meat to the media to find all ways to damage Google," she wrote, according to a copy of the emailobtained by the Intercept. "You probably heardElon Muskand his comment about AI causing WW3."

"I don't know what would happen if the media starts picking up a theme that Google is secretly building AI weapons or AI technologies to enable weapons for the Defense industry. Google Cloud has been building our theme on Democratizing AI in 2017, and Diane (Greene, head of Google Cloud) and I have been talking about Humanistic AI for enterprise. I'd be super careful to protect these very positive images."

Up until that point, Li was seen very much as a rising star at Google. In the one year and 10 months she was there, she oversaw basic science AI research, all of Google Cloud's AI/ML products and engineering efforts, and a newGoogle AI lab in China.

While at Google she maintained strong links to Stanford and in March 2019 she launched the Stanford University Human-Centered AI Institute (HAI), which aims to advance AI research, education, policy and practice to benefit humanity.

"With unparalleled expertise in engineering, computer science and AI, Fei-Fei brings relevant perspectives to the board as Twitter continues to utilize technology to improve our service and achieve our long-term objectives," said Omid Kordestani, executive chairman of Twitter.

Twitter has been relatively slow off the mark in the AI race. Itacquired British start-up Magic Pony Technologies in 2016 for up to $150 million as part of an effort to beef up its AI credentials, but its AI efforts remain fairly small compared to other firms. It doesn't have the same reputation as companies like Google and Facebook when it comes to AI and machine-learning breakthroughs.

Today the company uses an AI technique called deep learning to recommend tweets to its users and it also uses AI to identify racist content and hate speech, or content from extremist groups.

Competition for AI talent is fierce in Silicon Valley and Twitter will no doubt be hoping that Li can bring in some big names in the AI world given she is one of the most respected AI leaders in the industry.

"Twitter is an incredible example of how technology can connect the world in powerful ways and I am honored to join the board at such an important time in the company's history," said Li.

"AI and machine learning can have an enormous impact on technology and the people who use it. I look forward to leveraging my experience for Twitter as it harnesses this technology to benefit everyone who uses the service."

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Twitter adds former Google VP and A.I. guru Fei-Fei Li to board as it seeks to play catch up with Google and Facebook - CNBC

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What Are The Best Big Data Cloud Storage Providers? Here Are The Top 6 – Forbes

Unless you have the resources for building and maintaining large amounts of IT infrastructure, the best place for most organizations Big Data these days is in the cloud.

What Are The Best Big Data Cloud Storage Providers? Here Are The Top 6

Using cloud services for your data storage, and increasingly also your analytics and compute, means you are essentially "outsourcing" a lot of the hassle that comes along with storing and managing large amounts of data. Issues such as space, power usage, networking infrastructure, and security become the problem of your cloud service provider, and they are generally well-equipped to deal with them.

Another big advantage of using cloud solutions is that they can be highly scalable. Most offer plans that let you start small, then increase the amount of capacity available for storing data as your demand grows. The big providers also all offer bolt-on services that can take care of your AI, analytics, and data visualization needs without your valuable data ever leaving the safety of the cloud.

Amazon Web Services S3

It makes sense to start with the daddy of corporate cloud service providers. Amazon launched its first platform-as-a-service offering way back in 2006, and it has acted as the model for pretty much every other cloud storage and computing service ever since. In the same year, it also launched Elastic Cloud Compute (EC2), a compute platform that provides virtualized data-processing services that can be quickly scaled up or scaled down as your needs change. Its data lake service goes by the name of Amazon Simple Storage Service (S3) and is used by millions of companies and organizations around the world.

AWS has continued to be the most popular cloud storage solution for big data operations, generating close to $10 billion in revenue for the tech giant in the last quarter of 2019, even as competitors raced to both catch up and add new features to their own services.

Microsoft Azure Data Lake

Microsofts competitor to AWS launched a bit later in 2010 but quickly grew to offer a full suite of tools and services, designed to allow organizations that work with large datasets to carry out all of their operations in the cloud.

Microsoft has experience of running some of the largest-scale processing and analytics operations in the world, including its own Office 360, Skype and Xbox Live. A strength is the enterprise-grade security and governance as well as the integration with advanced analytics tools.

Azures suite of services includes Azure Data Lake, which is specifically built to handle the requirements of businesses and organizations with complex data needs. Data is stored in a data lake in its native format unprocessed and without the need to fit to a standard schema that can be applied to all of the other data.

Google Cloud Storage

Googles cloud platform is built on the same technology that powers its own Big Data-driven services like Youtube and Google Search, with all the scalability and reliability that this implies. It also offers a number of storage and data lake-oriented services under the banner of Google Cloud Storage, designed to be scalable to handle exabytes of data.Different pricing plans are used for different datasets, depending on how frequently they are accessed, so data that is essentially just backup and doesnt need to be accessed by-the-second can be archived to lower your storage cost. You can also choose where in the world it is stored, which will impact access times and ensure it can be served up where it is needed while eliminating costs associated with storing it at locations where it isnt needed. As an added benefit, if you are keen on keeping your carbon emissions down, all of Googles data storage solutions have generated zero net carbon emissions since 2007.

Oracle Cloud

Oracles well-established database platform is available to businesses through its Oracle Cloud service, offering flexible, scalable storage along with its suite of cloud-based analytics and data processing services. The service is highly rated for its strong security features, including real-time encryption of all data sent to the platform. The platform itself uses Oracles own proprietary advanced machine learning processes to help automate many of the data operations you might want to carry out, as well as to reduce errors caused by manual data entry.

IBM Cloud

IBM offers a number of different data lake solutions depending on your needs, all centralized around its IBM Cloud (formerly Bluemix) platform. Like the other solutions mentioned here, you can start small (even with a free tier) and scale up as you begin to generate and store larger amounts of data. With IBM's platform, users choose between object storage, block storage, or file storage, depending on the data structures they are working with. IBM offers cognitive analytical tools in the form of its Watson AI platform that can fully integrate with data stored on IBM cloud services.

Alibaba Cloud

Alibaba Cloud (formerly Aliyun) is not (yet) as popular in western nations as the "Big 3" of Google, AWS, and Microsoft, but it's certainly a growing presence. As the leading Big Data cloud service provider in China, however, it has a huge userbase in Asia and provides the same range of analytics, security, and AI tools as the US-based platforms. It offers pay-as-you-go as well as monthly subscription models. Reviews suggest that the services offered to customers in the US and Europe may lack some of the polish of Alis Silicon Valley rivals, but pricing is highly competitive.

Read more about key technology trends in my new book,Tech Trends in Practice: The 25 Technologies That Are Driving The 4th Industrial Revolution.

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What Are The Best Big Data Cloud Storage Providers? Here Are The Top 6 - Forbes

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Cloud storage needs disruption and Backblaze has delivered the goods – ZDNet

Announced in a blog post this week, the public beta of S3-compatible APIs for B2 cloud storage is now available. If you want the advantages of cloud storage, without breaking the bank with AWS, the Backblaze B2 service may be for you.

While Backblaze has long offered consumer accounts -- I've been a customer for years and currently have about 8TB stored -- the B2 service is aimed at businesses. B2 currently hosts more than an exabyte (1,000,000TB) of client data with over 100,000 customers.

If your organization has data it wants to save at low cost -- back up and archive data; host files online; offload costly NAS, SAN, and other storage systems; replace tape systems; an application store -- B2 could be for you.

Unlike the Byzantine pricing structures of the big cloud vendors, Backblaze strives for simplicity and predictability. The cost for Backblaze B2 is $0.005 per gigabyte per month for data storage and $0.01 per gigabyte to download data.

No cost uploads. And you can download 1GB per day for free, if you're counting pennies.

Compared to Amazon, Microsoft, and Azure, that's about one-fourth of the cost. If you do a lot of downloading, it's even more.

When I left the storage business for the storage analyst business, I felt that most companies were being ripped off.

The 60% to 70% gross margins, the highly commissioned salespeople, the dismal utilization rates, and the fact that most of the improvements came from disk drive vendors, were, to me, symptoms of a sclerotic industry ripe for disruption.

On my now quiescent blog, StorageMojo.com, I focused on the technologies and companies that were doing just that. Cloud storage, SSDs, scale-out, advanced erasure codes, and direct, web-based sales models all merited a mention.

It worked so well that a $15 billion storage company threatened me, a one-man consulting shop, with ruinous litigation. And it wasn't the only bully in the industry -- just the largest.

Despite the fact that Backblaze's co-founder and CEO Gleb Budman never hired me (pooh on him!), I still admire what it has accomplished. Cloud storage needs disruption just as much as storage arrays did 15 years ago.

And Backblaze is providing it.

Comments welcome. What's the best deal you've found in cloud storage?

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Cloud storage needs disruption and Backblaze has delivered the goods - ZDNet

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At Home Access to Adobe Creative Cloud Extended Through July 6 – Webster University Newsroom

May. 11, 2020

Adobe has extended free at home access to Adobe Creative Cloud for actively enrolled students through July 6, 2020. To take advantage of this extended access, students should log on via the Company or School Account option using their full @webster.edu credentials.

Only students who are enrolled in Summer and/or Fall 2020 courses are eligible for this extension. Graduating students will have access no later than May 31, but it is recommended to have all files backed up by May 15,to prevent loss of work.

Students who are currently utilizing a personal device license through JourneyEd should continue to log on as they normally would.

Faculty/Staff should always use theCompany or School Accountlogin option.

As a reminder, it is still important to make sure any files currently saved to Adobe cloud storage are backed up as soon as possible but no later than May 31.

tags: academics, webster today, information technology, students, extended campus, global, faculty,

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