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This investor in both gold and bitcoin says only one offers real long-term safety – MarketWatch

Spoileralert: I own both gold and Bitcoin in my portfolio.

As a longtime participant and observer of the shifting currents of monetary policy and financial markets, I believe both can play vital roles as repositories of value, especially in a world plagued by economic and political uncertainty.

But although they share some similarities, there are important differences that persuade me that contrary to growing opinion, bitcoin BTCUSD, +0.83% will not supplant gold GC00, -1.38% as the choice of investors seeking long-term safety.

Admittedly, bitcoin advocates have some momentum on their side, as its price hit a record above $40,500 in early January. After a recent pullback, bitcoin still trades around $30,000. Prominent institutional investors have become bitcoin fans; BlackRock, the worlds largest money manager, called it a durable mechanism that could take the place of gold to a large extent.

Yet, to paraphrase Mark Twain, the reports of golds demise have been greatly exaggerated. Bitcoin is certainly a legitimate asset and has the potential to be a true store of value joining a select group of assets, commodities and currencies that can be saved, retrieved and exchanged without deteriorating in value.

However, gold has at least a 2,500-year head start as a widely-accepted, global medium of exchange and value. Compared to bitcoin, the gold market enjoys great depth and liquidity. The total amount of physical gold held by investors and central banks is an estimated $3.7 trillion. Thats nearly seven times the market capitalization of all bitcoin created. Both gold and bitcoin enjoy highly liquid markets, but golds average daily volume in 2020 was $125.3 billion, or 30 times bitcoins daily spot volume of $4.1 billion.

I own gold for insurance to offset the effects of inflation and as a safe haven to offset any steep losses in other parts of my portfolio. Bitcoins role in my portfolio is that of a speculative asset, rather than to protect wealth. I became interested while I was director of the U.S. Mint and wanted to understand cryptocurrencies, and the best way was to try it. Since leaving government service, I have become an investor in bitcoin.

While both gold and bitcoin can be seen as islands of security in an ocean of financial turbulence, we must understand their similarities and significant differences.

In both cases, their value is supported, in part, by scarcity. Gold is limited by physical supply and the difficulty of extraction, while bitcoin creation is capped at 21 million by its source code. These qualities, as well as the deep, liquid markets I noted earlier, mean that both gold and bitcoin have the potential to retain value, and in fact appreciate, during difficult economic cycles.

And unlike government-made currencies like the U.S. dollar, whose value derived from confidence in the issuing government and laws requiring citizens to accept it, gold and bitcoin have other uses, and the markets generally determine their value.

Gold, however, has an unmatched long-term record as a store of value. Economists have shown that, over the past 50 years, gold more than held its own in times of low inflation and rallied strongly during periods of high inflation. Since bitcoin has only existed since 2009 and its active trading market is even more recent, it is too soon to tell how its value will hold up over time.

The differences between gold and bitcoin are meaningful. For one, bitcoin is volatile, having fallen more than 20% from its Jan. 8 high. Over the same period, gold declined about 3%. This lack of volatility is one reason investors gravitate toward gold.

The run-up in bitcoin over the last year may largely be due to a new class of investors, attracted to a more transparent regulatory environment. Many new bitcoin owners are institutions, including private-equity firms, hedge funds, insurance companies, pension funds and endowments. Once this initial institutional surge of buying normalizes, bitcoins price escalation may not be sustainable.

Another advantage of gold is that one can take physical delivery, while digital currency exists as an electronic ledger entry. Weve heard about the British investor claiming to have accidentally thrown away a hard drive containing a cryptographic key to about $300 million in bitcoin that may now reside in a trash dump in South Wales. Its hard to imagine misplacing that amount of gold coins or bars. By holding physical gold, the investor owns its full value and has no counterparty risk.

Furthermore, despite expectations that Bitcoin would be used for everyday transactions, that degree of wide acceptance has not yet occurred. Bitcoin is more likely to be used as money in countries where there is little confidence in government currency and will take longer to be widely accepted as money in economies where government money is generally trusted, like in the U.S., Japan and across Europe.

While these differences explain why bitcoin wont entirely replace gold, both make sense in a well-managed portfolio. The continuing economic uncertainties wrought by COVID-19, the lower-for-longer interest rate policies of central banks, and the volatility of the highly valued equity market make a strong case for owning assets whose value is not tied to economic vagaries or government policies.

As an investor, why should I have to choose between the two? I think there advantages to owning both.

Edmund C. Moy was the 38th director of the United States Mint and is now chief market strategist at Valaurum, a company that enables investors to buy gold in small, more affordable increments.

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16.4M transactions in a block! Bitcoin SV breaks another record – CoinGeek

We like big blocks. Bitcoins transaction capacity just keep getting bigger, and this weeks record is 16,415,525 transactions in a single blockthe highest number on any blockchain, ever. Bitcoins Scaling Test Network (STN) broke it with block #14287 on February 3rd, 2021, which also happened to be almost 3.15 GB in size.

The block also earned its miner 32.38 BSV in fees. Although it happened on the test network (meaning those arent bitcoins that can actually be used as money) its an indication of how much a transaction processor could earn by confirming blocks that size on a regular basis.

Just a year ago, a 1GB block on a previous incarnation of the STN was headline news. That block contained 5,449,866 transactions. All this demonstrates the BSV blockchain is getting ready for big data, enterprise-tier applications. These applications would operate on a global scale and could include financial applications, IoT data, government and property records, exchanges, health data, contracts, and a wide range of tokenized assets representing anything from loyalty points to other currencies.

Bear in mind, this is all utilizing the existing Bitcoin protocol, Bitcoin SV Node. Within a few years developers at nChain are looking to launch Teranode, an even higher capacity protocol aimed at enterprise, which will someday subsume SV Nodes operations (while maintaining Bitcoins original set in stone rules and economic incentives).

No blockchain can hope to gain widespread adoption and usage without this kind of capacity. And it needs to happen on-chain, or theres no point having a blockchain at all. Thats why the original Bitcoin, as BSV, focuses on on-chain speed and capacity to build a more useful (and secure) global network. Whatever the Internet can do now, BSV aims to do on its blockchainin a way that isnt as broken and insecure as todays Internet is.

Putting things into perspective

Although 16,415,525 transactions in a single block is a record for now, the STN homepage says: It is not too difficult to produce a single block with a large number of transactions, it is much more difficult to sustain this rate over a period of time. Just last week, the STN for a short period reached over 9,000 transactions per second, which was also a large jump.

Bitcoins Scaling Test Network has similar technical capabilities to the BSV mainnet, so processing transactions at that kind of volume is technically possible thanks to improvements in the software. However there are other issues to consider before unleashing this sort of power on the mainnet.

These include the size and makeup of the mainnet. Its much larger than the STN for starters in terms of numbers of nodes, and also in its variety of physical locations, systems, and independent operators. The STN, which is the fourth incarnation of the BSV testnet, is designed to model the real world mainnet, in order to see whats possible under ideal conditions.

The STN developers also note that Bitcoin, like the real-world economy, should expect to have peak and regular intervals of activity on a daily basis. Its goal is to show what can be achieved and sustained for longer periods of time, rather than break records with single blocks. A block with far fewer transactions could also be larger in (data) size too.

Even so, 16.4 million transactions in a block is a huge amount. Its beyond the capabilities of other blockchain networks, whether theyre data processing-oriented or single purpose. Its yet another demonstration of what Bitcoin really is, what it aims to do, and what it hopes to be used for in the future.

New to Bitcoin? Check out CoinGeeksBitcoin for Beginnerssection, the ultimate resource guide to learn more about Bitcoinas originally envisioned by Satoshi Nakamotoand blockchain.

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OKEx to integrate the Bitcoin Lightning Network, enabling cheaper and faster transactions for users – PR Newswire India

VICTORIA, Seychelles, Feb. 2, 2021 /PRNewswire/ -- OKEx (www.okex.com), a world-leading cryptocurrency spot and derivatives exchange, is thrilled to announce the integration of the Bitcoin Lightning Network, a second-layer scaling solution based on the Bitcoin blockchain, in the coming quarter. This major development will dramatically decrease transaction fees and times, improving user experience on the exchange. Lightning integration also highlights OKEx's deep commitment to deep commitment to bringing the most advanced Bitcoin technology to the world and furthering the development of the Bitcoin ecosystem.

Originally proposed by Joseph Poon and Thaddeus Dryja in 2015 as a Layer 2 scaling solution, the Lightning Network is a decentralized network that uses smart contracts on Bitcoin's blockchain to facilitate instant payments across the network. An off-chain scalability solution to Bitcoin's network congestion, the Lightning Network acts as a payment protocol on top of the Bitcoin blockchain, routing payments through participating nodes through a peer-to-peer system that greatly reduces transaction fees and times.

As BTC adoption becomes increasingly widespread and more users interact with the Bitcoin blockchain, the cost of transactions rises significantly, while transaction speed is greatly reduced. Currently, the average BTC on-chain fee is more than $10 and takes between 10 to 30 minutes to complete, discouraging many users from interacting with the network. Integrating Lightning with the OKEx platform will allow users to send and receive BTC in near real-time at next-to-no cost.

As OKEx becomes a participant node in the Lightning Network, users will be able to select the Lightning Network option when depositing and withdrawing BTC.

"OKEx is extremely proud to be one of the first major exchanges to integrate the Lightning Network. We are always looking for new ways of decreasing user transaction fees and times. By integrating Layer 2 payment protocols like the Lightning Network, we can offer more competitive products to our users and, at the same time, openly demonstrate our support for the Bitcoin network by increasing the number of participant nodes in the Lightning Network," commented OKEx CEO Jay Hao.

"OKEx's Lightning integration marks a big step for its users and the bitcoin community as a whole, enabling instant, global, low fee transactions. OKEx's leadership in adopting Lightning will help bring bitcoin to the next billion people around the world," said Elizabeth Stark, CEO and Co-Founder at Lightning Labs.

About OKEx

A world-leading cryptocurrency spot and derivatives exchange, OKEx offers the most diverse marketplace where global crypto traders, miners and institutional investors come to manage crypto assets, enhance investment opportunities and hedge risks. We provide spot and derivatives trading including futures, perpetual swap and options of major cryptocurrencies, offering investors flexibility in formulating their strategies to maximize gains and mitigate risks.

Logo - https://mma.prnewswire.com/media/751455/20180925182721_Logo.jpg

http://www.okex.com

SOURCE OKEx

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How to Get an Affordable Business Analytics Master’s Online – Southern New Hampshire University

For you, data is more than a bunch of numbers. Its stories waiting to be discovered, potential solutions to problems your organization is experiencing and, perhaps, a guide to future trends that can inform business decisions today. Thanks to the rapid advancement of technology, data is increasingly trackable and available for professionals to analyze and use to steer their organizations toward success.

If this excites you, you might consider earning a masters degree in business analytics. With a bit of research, you can find an online program that fits your goals, schedule and budget.

A masters in business analyticsis a graduate degree for people interested in synthesizing data to inform business strategies. Whether youre a career-changer or a business professional looking to advance, a masters in business analytics will introduce you to various tools and software needed to organize, interpret and present data.

Data comes in a range of forms, including numbers, text, audio and video, according to Dr. Tej Dhakar, a professor of management science at Southern New Hampshire University (SNHU), and its up to business analysts to draw insights from it.

We are witnessing a huge explosion of data creation, especially since the beginning of this century, Dhakar said. New data is being generated constantly by ubiquitous smartphones, emails, streaming, web surfing, social media, sensors, point-of-sale systems and many more devices and activities.

Business analytics courses will teach you how to navigate these different data types and draw meaningful conclusions from them.

Because business analytics careers rely so much on data analysis and general business knowledge, people with a background in business, math or statistics often gravitate toward it, said Jennifer Oquist, the director of new learning models at SNHU. They typically have the analytical tendencies needed to connect data to the big picture.

But, through practice, you can learn appropriate methods, tools and questions to ask that can help you develop an analytical mindset and approach to data. Generally speaking, anyone with basic quantitative, computer and analytical skills coupled with an interest in data analysis and willingness to learn can succeed in this program, Dhakar said. Add interpersonal and teamwork skills to the mix, and you will have what it takes to succeed in a career in business analytics.

Dhakar said there are three types of business analytics that a masters program will discuss:

Its also important that you develop business, technical and communication skillsbeyond data interpretation too. Students should learn business strategy and financial modeling, data visualization, analytics tools and techniques and how to communicate business insights to a variety of stakeholders, Oquist said.

A masters program should help you practice your communication skills because your job wont stop after the analysis is done. Once youve made sense of the information, youll need to share your findings with those involved. (Business analytics) involves storytelling with compelling narratives and appropriate data visualizations so that leaders can make better decisions, Dr. Candace Sleeman, technical program facilitator for business analytics at SNHU, said. According to Sleeman, developing project management, research, organizational and programming skills are also essential.

Some of the areas youll have an opportunity to focus on in a degree program are:

Since the profession is continually growing and changing, your degree should not just teach you how business analytics works today. It should also equip you with the skills to adapt and stay relevant in an ever-changing workforce, according to Sleeman.

Finding an online business analytics program that fits your life is important. Be sure to consider factors including affordability, timing, relevancy and faculty in your decision-making.

Additionally, looking at your short- and long-term career goalscan help you determine when you want to have your diploma in hand. Typical masters programs can take a couple of years to complete, but some are fast-tracked. You might be able to finish in just over 12 months, helping you achieve your goals in less time while also saving you money.

All business analytics programs are not created equal, Dhakar said. ... When selecting a masters program in business analytics, look for how closely the courses in the programs relate to analytics. Also, look for what skills you will acquire through the programs.

Working with data management software including Excel, Tableau, SAS and Microsoft Project are good indicators that your courses can help prepare you for conducting business analytics in the professional world, as will courses that spend time on languages such as SQL, JavaScript, Python and R, Dhakar said.

Programs that emphasize hands-on experiences allow you to put theory to practice even before you receive a diploma. Hands-on experiences using real-world data sets and business problems are the best preparation for the workplace, Oquist said. Some data sets SNHU students have explored, for example, include national organizations such as Multiple Sclerosis Society and Heroes for Hire as well as local nonprofits like City Year New Hampshire.

Finding programs that establish collaborative settings from the start is also beneficial. Working with others is not only reflective of real-world challenges, but it also develops a learning community that can help you succeed in and out of the classroom. Youre not on your own, Oquist said. You have classmates to work with on projects, to support and encourage you as you learn new skills and to network with as you gain new professional contacts.

Faculty should be industry veterans with recent experience, Oquist said. Not only should faculty know what they are talking about, but they should also be immersed in the career themselves. Thats because they can give you the most up-to-date information about a role that undergoes frequent changes as technology advances. They know what employers are likely looking for perhaps as employers themselves and can help you gain the knowledge and skills needed to pursue your goals.

With a masters degree in business analytics, you can be a valuable member of teams that focus on marketing, finance, human resources and other business operations. Whatever your interests are, theres likely an analyst position in both the public and private sectors that aligns well.

Quantitative skills and data literacy are increasingly important to roles that range from data management to financial modeling, social media analysis, surveys, skills mapping and recommendations to customers, Sleeman said.

Some job titles you might encounter in your search, as reported by the U.S. Bureau of Labor Statistics (BLS) and O*NET OnLine, include:

While most entry-level analyst positions require at least a bachelors degree, earning your masters may give you the knowledge, skills and authority needed to take you and your organization to the next level.

The demand for business analysts is growing and growing fast. As long as businesses ask hard, critical questions, there will be opportunities for talented business analysts to add value, Oquist said.

The projects you will work on as a business analytics student will help you grow your portfolio and demonstrate to employers that you have experience handling different challenges, ultimately helping you stand out as a job candidate.

(Earning the master's degree) indicates a deeper understanding of business problems and a more robust skill set that will enable advancement into a variety of roles, Sleeman said. "It enables consideration for more technical and quantitative roles and a competitive advantage in a rapidly changing marketplace.

Rebecca LeBoeuf 18 is a writer at Southern New Hampshire University. Connect with her on LinkedIn.

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Explore COVID-19 Pre and Post Impact Analysis on Healthcare Cognitive Computing Market Updated Research Forecast, 2020-2030 KSU | The Sentinel…

Market Overview

Cognitive computing in healthcare merges the working of human beings brains and machines to enhance the decision-making process. It involves automatic systems that use the data mining approach, pattern identification, natural language & human senses processing, and system improvements based on real-time procurement of patient and other information. In other words, these systems mimic the way the human brain works and continue to learn. It makes diagnosis and treatment easy. Cognitive computing has unveiled great favorable prospects in the healthcare sector in present times and is quickly changing the delivery of medical facilities all across the globe. Cognitive computing systems imitate the way humans think using a digital model. Doctors and students in different parts of the world are rapidly embracing cognitive systems to make a quick and more efficient selection, improve patient results, and refine the gross quality of healthcare. Moreover, cognitive computing has strengthened patient involvement and upgrades to the use of services. Researchers and students are utilizing the potential of cognitive systems to make clinical try-outs more inclusive and practical, opening a vast amount of interesting opportunities in the healthcare market.

Market Highlights

GlobalHealthcare Cognitive Computing Market is anticipated to exceed USD XXXX million by 2030 from USD XXXX million in 2019 at a CAGR of XX% throughout the forecast period, i.e., 2020-30. The Healthcare Cognitive Computing Market is estimated to grow on the back of the following reasons. Rapid data surge of structured and unstructured information, growing medical burden due to prevalence of long-term diseases, technological innovations, rising concern of governments and healthcare providers globally, and increased demand for personalized healthcare services are some of the major factors driving the healthcare cognitive computing market. Due to personalization and supportive regulations, abundant patient data is projected to be collected and the demand for big data and cognitive computing analytics is anticipated to be very high during the forecast period. However, security and privacy concerns relating to the health of the patient may obstruct the growth of the smart home healthcare market during the forecast period.

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Top Market Players

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GlobalHealthcare Cognitive Computing Market: Segments

Automated Reasoning segment to fuel the market growth during the forecast period

Based on technology, the healthcare cognitive computing market is segmented into Natural Language Processing, Machine Learning, Automated Reasoning, Data Extraction, Interpretation, Language Processing, and Language Training, Automated Planning, Computer Vision, Optical Character Recognition and Speech Recognition. The natural language processing segment accounted for the largest share of XX% in 2019 owing to the simplification of the search process and better patient care as compared to other technologies. Though, the automated reasoning segment is anticipated to grow at a faster CAGR during the forecast period, owing to high investments in this segment.

Cloud Computing modelto boost the market

Based on the deployment model, the healthcare cognitive computing market is categorized into cloud and on-premise models. The cloud computing segment accounted for a major market share in 2019 and is projected to grow at a CAGR of XX% during the forecast period. The cloud computing segment is directed by its capacity to store abundant data, cost-effective, permitting even smaller medical care to use the details they need to offer the best medical facilities.

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Based on end-user, the market is segmented into Healthcare Providers, Pharmaceuticals companies, Medical Device Companies, Insurance, and Others. The pharmaceuticals company segment is expected to grow at the highest CAGR and capture the largest market share during the forecast period owing to increasing patient pool, growing demand for personalized medicine, gene-specific treatments, increasing oncology cases, and patient health account management.

GlobalHealthcare Cognitive Computing Market: Drivers and Restraints

Drivers: Improving the overall demand for e-health facilities

Rising demand for personalized medication and improving healthcare amenities in developing countries are the factors extending enormous growth scenarios to the players functioning in the healthcare cognitive computing market. Moreover, improving the standard of living due to rising disposable income of the population in the developing countries, which is further enhancing the accessibility to advanced treatment options to the patients? This has facilitated the hospitals and other care providers to centralize their resources on the selection of several technologies to provide advanced medical facilities.

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Restraints: Increasing Security and Safety Concerns

Major factors restricting the growth of the healthcare cognitive computing market are the increasing safety and security concerns, increased capital spending, conservation prerequisite, and lack of awareness about healthcare cognitive computing technologies in emerging economies. Moreover, the lack of technical experts is also creating an adverse impact on the growth of the market.

GlobalHealthcare Cognitive Computing Market: Region

North America to grow at the highest CAGR during the forecast period

Global Healthcare Cognitive Computing Market is segmented on the basis of regional analysis into five major regions. These include North America, Latin America, Europe, Asia-Pacific, and Middle-East & Africa. Geographically, North America is likely to dominate the market due to increasing research and development in drugs by key players, increased public and private healthcare expenditure, rapidly increasing geriatric population, a growing number of hospitals, and rapid usage of information technology to decrease healthcare expenditure and improve patient care. Moreover, increasing government policies to support health initiatives, paired with information outbursts in the fields of cancer and other diseases is expected to propel the overall market growth.

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MST Global on the rise of remote operating centres in mining – International Mining

The spread of COVID-19 has seen renewed interest in remote operating centres (ROCs) and how they can be better managed to maximise efficiencies and reduce the number of personnel required on a mine site at a time, according to MST Global.

Rio Tinto was one of the early adopters of ROCs, introducing the worlds first fully autonomous haul trucks at its Pilbara iron ore operations in 2008 followed by the launch of an automated hub in Perth, Western Australia, in June 2010, which controlled its rail systems, infrastructure facilities and port operations, 1,500 km away from site.

In July 2013, BHP followed suit, opening an automated ROC in Perth for its seven Pilbara mines. Today, all the major players globally have introduced similar ROCs to their operations.

As an underground mining technology provider, it has been an exciting time to be a part of the industry as we develop hardware and software solutions that help our mining partners through this digital transition, MST Global said.

In a recent report, McKinsey & Company confirmed MSTs observations, citing, in the middle of the COVID-19 pandemic, mining executives had shown a greater interest in ROCs to unlock further value for their operations.

As mining companies seek to mitigate the impact of the COVID-19 pandemic and act to safeguard employees, some have started to relocate around 15-20% of their on-site workforce by setting up control towers to facilitate remote working (especially for non-frontline roles like subject-matter experts), McKinsey & Company stated.

This is helping the industry develop more resilient, responsive and flexible operating models suited to an increasingly uncertain environment.

MST Global says it has seen this first-hand, with many existing and new clients reaching out to the mining tech provider to assist in streamlining their operations, and looking at ways to effectively increase remote work capabilities.

MST Global CEO, Haydn Roberts, said the discussion has also centred on the transition to a smart mine, where systems and processes in place on site work together to unlock greater value for ROCs.

COVID has really focused our minds on the importance of having enough bandwidth underground and adopting IoT and digitalisation strategies so we can have a smart mine where our sensors and video cameras are connected, and we can operate in a remote way, Roberts said.

Remote operation centres have become really key because of all those things, so thats driving the change.

Mining companies are admittedly still in the early stages of their digital transformation, continuously looking at ways to improve to deliver on objectives.

McKinsey & Company said: Some companies have implemented cloud-based systems that aggregate site data into a single data lake that can be accessed, analysed, and visualised for decision support, creating a room of screens; other companies manage and actively control plant automation systems, fleet management systems, and remote-controlled machines from the ROC.

The most sophisticated companies manage all these functions on a larger geographic scale, covering the value chain from end to end, optimising post-processed ore logistics and port facilities used by multiple mine sites within a region, with regional parts and supply warehouses monitored across multiple assets for supply-chain optimisation.

McKinsey said while the technology adoption was the easy part, its research revealed a common challenge: insufficient emphasis on and investment in developing a robust change-management strategy and subsequent implementation.

It highlighted the importance for leaders to set clear expectations of bottom-line impacts from ROCs to measure value and the need for a new decision-making structure to allow ROCs to reach their full potential.

Without a new mandate, a new way of working, and a new decision-making structure, the ROC staff will struggle to capture the frontline teams attention, the report stated. And, although the ROC is implemented and functional, it never reaches full potential for value. Without a conscious focus on organisation, a ROC can be counterproductive, creating redundant organisational structures.

It added careful consideration must also be given to data and systems reliability, location of primary physical storage infrastructure, back-up systems and having a robust cybersecurity approach to protect ROCs from potential threats.

These decisions can impact connectivity, bandwidth, and latency, each of which must be sufficient to enable the ROC to effectively control on-site operations in real-time: for example, adjustment of plant processing parameters or remote control of mobile equipment and process optimisation tools, such as machine-learning algorithms, it stated.

With the right technology foundation, the ROC can function as the analytical centre of excellence, setting data standards, creating and updating analytical optimisation models, building analytics capability and driving partnerships to co-develop solutions aligned with the new planning process for optimising site-level profit. Such actions can move the organisation toward new ways of thinking about hierarchy, decision rights, and ways of working.

There was also the issue of jobs, and how transitioning to autonomous operations and ROCs will impact workers on site.

MST Globals Roberts said from his experience, so far with ROCs, this wasnt something the industry should be too concerned about.

I know some people talk about a fear that were going to take people out of mining and people will lose jobs, he said. I actually see the exact opposite of that. I think it is going to bring more people together in more meaningful work, more productive relationships.

Well focus on things that will bring a new lease of life to mines. Yes, we will remove people out of harms way and perhaps machines, but the amount of upside there is to actually work with these solutions, from AI to big data analysis to automating and adopting more smart sensors, this is going to create a more interesting future for a lot of people.

Mining is not going away. We obviously have to adapt it and change it to these new technologies and solutions that we have available. The people that were bringing into this industry expect that.

MST Global concluded: At MST Global, we are proud to be helping our mining partners globally embrace the transition to the smart mine and ROCs no matter where they are at in their journey through our leading software and hardware solutions.

Our brand-new software platform HELIX helps underground miners create a complete digital ecosystem underground, connecting all their hardware and third-party integrations into one single platform that provides real-time data anywhere, anytime, on-site or thousands of kilometres away in a ROC.

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Outlook on the Automated Guided Vehicle Global Market to 2027 – by Type, Product, Battery Type, Component, Navigation Technology, Application,…

DUBLIN, Feb. 2, 2021 /PRNewswire/ -- The "Automated Guided Vehicle (AGV) - Global Market Outlook (2019-2027)" report has been added to ResearchAndMarkets.com's offering.

According to the report, the Global Automated Guided Vehicle (AGV) Market accounted for $2.1 billion in 2019 and is expected to reach $4.95 billion by 2027, growing at a CAGR of 11.3% during the forecast period.

Growing demand for automation in material handling processes, the rising popularity of e-commerce and an increase in demand for electronics and retail products are some of the factors propelling the growth of the market. However, high initial investment, installation cost, and present financial crisis are restraining the growth of the market.

Automated guided vehicles are material handling automated machines that are programmed to move pallets, carts, and trays, among others, between different manufacturing and warehousing facilities without any permanent conveying system or manual intervention. Automated guided vehicles are installed by these facilities to enhance efficiency, which results in increased output, thereby increasing the profit margin of the company.

Based on the navigation technology, the laser guidance segment is anticipated to hold considerable market share during the forecast period as it acts as an electronic eye to skip the obstacles within the path and this technology is the most flexible system for vehicle movement and offers accurate navigation. By geography, Asia-Pacific is expected to grow at a significant market share during the forecast period owing to the rapidly developing e-commerce industry in several countries including China, India, and Japan and various initiatives by governments of several countries to support the development of the regional manufacturing sector or industry, providing lucrative opportunities for market expansion.

Some of the key players profiled in the Automated Guided Vehicle (AGV) Market include Uncease Automation, Toyota Industries, AGV International, SSI Schaefer, Denbach Robot, Hyster-Yale, Rocla, Oceaneering, Meiden America, KUKA, Addverb Technologies, Tompkins Robotics, Murata Machinery, JBT, KION, Hit Robot Group (HRG), Grenzebach, E&K Automation, Scott Automation, Daifuku, Seegrid Corporation, and KNAPP.

What the report offers:

Key Topics Covered:

1 Executive Summary

2 Preface2.1 Abstract2.2 Stake Holders2.3 Research Scope2.4 Research Methodology2.4.1 Data Mining2.4.2 Data Analysis2.4.3 Data Validation2.4.4 Research Approach2.5 Research Sources2.5.1 Primary Research Sources2.5.2 Secondary Research Sources2.5.3 Assumptions

3 Market Trend Analysis3.1 Introduction3.2 Drivers3.3 Restraints3.4 Opportunities3.5 Threats3.6 Product Analysis3.7 Technology Analysis3.8 Application Analysis3.9 End-user Analysis3.10 Emerging Markets3.11 Impact of COVID-19

4 Porters Five Forces Analysis4.1 Bargaining Power of Suppliers4.2 Bargaining Power of Buyers4.3 Threat of Substitutes4.4 Threat of New Entrants4.5 Competitive Rivalry

5 Global Automated Guided Vehicle (AGV) Market, By Type5.1 Introduction5.2 Unit Load Carriers5.3 Heavy Burden Carrier5.4 Tow/Tugger Vehicles5.5 Pallet Trucks5.6 Mobile Robots5.7 Light Load Transporters5.8 Underride/ Tunneling Vehicles5.9 Forklift Vehicles5.10 Driverless Trains5.11 Assembly Line Vehicles5.12 Other Types5.12.1 Hybrid AGVs5.12.2 Customized/ Special Purpose5.12.3 Automated Carts

6 Global Automated Guided Vehicle (AGV) Market, By Product6.1 Introduction6.2 Silica Aerogels6.3 Metal Oxide Aerogels6.4 Carbon Aerogels

7 Global Automated Guided Vehicle (AGV) Market, By Battery Type7.1 Introduction7.2 Nickel-Based Battery7.3 Lithium-Ion Battery7.4 Lead Battery7.5 Other Battery Types7.5.1 Ultracapacitors7.5.2 Hydrogen Fuel Cells

8 Global Automated Guided Vehicle (AGV) Market, By Component8.1 Introduction8.2 Software8.3 Service & Support8.4 Hardware

9 Global Automated Guided Vehicle (AGV) Market, By Navigation Technology9.1 Introduction9.2 Traditional Guidance9.3 Optical Tape Guidance9.4 Natural Navigation9.5 Magnetic Guidance9.6 Laser Guidance9.7 Inductive/Wire Guidance9.8 Global Positioning System (GPS)9.9 3D Vision Guidance9.10 Infrared Guidance9.11 Heat Map9.12 Other Navigation Technologies9.12.1 Inertial Guidance9.12.2 Dead Reckoning Guidance9.12.3 Beacon Guidance

10 Global Automated Guided Vehicle (AGV) Market, By Application10.1 Introduction10.2 Trailer Loading & Unloading10.3 Storage & Assembly10.4 Raw Material Handling10.5 Packaging10.6 Logistics and Warehousing10.6.1 Cross-Docking10.6.2 Transportation10.6.3 Distribution10.6.4 Cold Storage10.7 Work-in-Process Activities10.8 Waste Handling10.9 Trash Removal10.10 Staging/Sortation10.11 Roll Handling10.12 Replenishment10.13 Parts-To-Line10.14 Kitting/Picking10.15 End-of-Line Transport10.16 Clamp Handling10.17 Shop Floor Control

11 Global Automated Guided Vehicle (AGV) Market, By End-user11.1 Introduction11.2 Semiconductors & Electronics11.3 Oil & Gas11.4 Metals & Heavy Machinery11.5 Healthcare11.6 Food & Beverages11.7 Construction11.8 3PL (Third-Party Logistics)11.9 Manufacturing11.9.1 Tissue11.9.2 Plastics & Polymers11.9.3 Automotive11.9.4 Pharmaceuticals11.9.5 Fast-Moving Consumer Goods (FMCG)11.9.6 Defense11.9.7 Chemical11.9.8 Aerospace/Aviation11.10 Wholesale and Distribution11.10.1 Retail Chains/Conveyance Stores11.10.2 Hotels & Restaurants11.10.3 Grocery Stores11.10.4 E-commerce11.11 Other End-users11.11.1 Textiles and Clothing11.11.2 Printing and Paper11.11.3 General Manufacturing11.11.4 Electrical

12 Global Automated Guided Vehicle (AGV) Market, By Vehicle Type12.1 Introduction12.2 Standard12.3 Compact12.4 Hybrid

13 Global Automated Guided Vehicle (AGV) Market, By Geography13.1 Introduction13.2 North America13.2.1 US13.2.2 Canada13.2.3 Mexico13.3 Europe13.3.1 Germany13.3.2 UK13.3.3 Italy13.3.4 France13.3.5 Spain13.3.6 Rest of Europe13.4 Asia-Pacific13.4.1 Japan13.4.2 China13.4.3 India13.4.4 Australia13.4.5 New Zealand13.4.6 South Korea13.4.7 Rest of Asia-Pacific13.5 South America13.5.1 Argentina13.5.2 Brazil13.5.3 Chile13.5.4 Rest of South America13.6 Middle East & Africa13.6.1 Saudi Arabia13.6.2 UAE13.6.3 Qatar13.6.4 South Africa13.6.5 Rest of Middle East & Africa

14 Key Developments14.1 Agreements, Partnerships, Collaborations and Joint Ventures14.2 Acquisitions & Mergers14.3 New Product Launches14.4 Expansions14.5 Other Key Strategies

15 Company Profiling15.1 Uncease Automation15.2 Toyota Industries15.3 AGV International15.4 SSI Schaefer15.5 Denbach Robot15.6 Hyster-Yale15.7 Rocla15.8 Oceaneering15.9 Meiden America15.10 KUKA15.11 Addverb Technologies15.12 Tompkins Robotics15.13 Murata Machinery15.14 JBT15.15 Hit Robot Group (HRG)15.16 Grenzebach15.17 E&K Automation15.18 Scott Automation15.19 Daifuku15.20 Seegrid Corporation

For more information about this report visit https://www.researchandmarkets.com/r/4nots7

Media Contact:

Research and Markets Laura Wood, Senior Manager [emailprotected]

For E.S.T Office Hours Call +1-917-300-0470 For U.S./CAN Toll Free Call +1-800-526-8630 For GMT Office Hours Call +353-1-416-8900

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What You Need to Know About Advanced Analytics – 1redDrop

While many companies currently have Business Intelligence (BI) solutions, there is a real need to lean into an entirely new generation of analytics to truly get the value from their data. The advanced data analytics software available to organizations today gives users more control over their usage by leveraging Artificial Intelligence (AI) to maximize the breadth of insight brought to light.

Heres more on what features advanced analytics brings to the table and what enterprises need to know about getting the most from their data analytics endeavors.

Key Advanced Analytics Features

As Gartner defines, analytics must autonomously (or semi-autonomously) explore data using tools beyond the scope of traditional BI to be considered advanced. So, its useful to think of this tech in terms of a collection of cutting-edge features that transcend the limitations of legacy self-service BI.

AI data mining

Data mining involves scouring huge repositories of data, seeking out useful insights hidden within. In other words, its like mining for gold in a mountain of rock and dirt. AI algorithms can sift through huge quantities of data more quickly than human analysts can, which helps companies discover potentially useful patterns, relationships and occurrences humans can use to inform decisions. Side note: Rather than making analysts obsolete, AI data mining frees them from one of the more tedious and time-consuming manual aspects of their jobs so they can work on higher-level projects instead.

Machine learning

Machine learning goes hand in hand with AI data mining allowing algorithms to learn from data findings/results so as to automatically improve relevancy and accuracy over time. This facet of advanced analytics eliminates the need for data scientists to manually train algorithms.

Predictive analytics

The predictive component of advanced analytics utilizes past and present data to understand performance changes over time to forecast what should happen in the future. The speed at which advanced analytics can crunch numbers, provide real-time performance analytics and forecast gives enterprises a better idea of present and future outcomes particularly when you compare these capabilities with the limitations of the legacy BI outlined above.

Natural Language Generation (NLG)

Instead of just getting an alert that product X has gone up by 30%, youll get an alert its gone up by 30% because a marketing promotion is more effective than usual and seeing 50% more conversion than other campaigns.

Natural language processing (NLP)

In part, NLP allows users to query data by typing or speaking naturally, and ensures data visualization models come back understandable to human users. Not only does this feature make search-based analytics tools easier for people to use up front, but also aids with the interpretation of results. The ability to provide an intuitive search experience, as well as understandable results, plays a major role in motivating people to adopt analytics tools and in helping them beneficially understand and act upon their findings.Advanced analytics address the limitations of traditional BI and then some, with features like AI-driven data mining, machine learning, predictive capabilities, interactive graphs, and natural language processing. However, advanced analytics also needs to avoid falling into the same trap that befell BI AA needs to be accessible and usable by businesspeople, otherwise, the same bottlenecks that broke BI will break AA.

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Facebook and Twitter should not be in the censorship business – MarketWatch

Facebook and Twittersuspending former President Donald Trumps accountsin the wake of a mob storming the Capitol raises yet again the issue of the discretion that federal law affords internet platforms to regulate speech and Big Techs monopoly power.

Bigness is not necessarily a problem and can be an asset. Facebook FB, +2.29% is a leader in artificial intelligence research, Google GOOG, +1.92% gave us Android, Amazon AMZN, +2.20% pioneered cloud computing, and Apple AAPL, +0.59% pioneered the modern smartphone.

Facebook may have a monopoly by providing a substantially differentiated digital bulletin board, but it is a free service, making questionable the economicharm to consumersthesine qua nonof modern antitrust enforcement.

In the advertising market,Google has the largest market share. And it is noteworthy that the Justice Departmentdid not charge Facebookin its suit against Google for manipulating the ad-marketing algorithms.

In this previous column, I argued that the Federal Trade Commission suit against Facebook is wrongheaded. It could be interpreted as an attempt to rein in the company owing to gross data privacy misdeeds going back to theCambridge Analyticaaffairand enablingRussian meddling in the 2016presidential campaign. And for the complaints ofDemocratic and Republican politiciansabout editorial abuses at both Twitter TWTR, +3.34% and Facebook.

Forcing Facebook to divest Instagram and WhatsApp, as the FTC seeks, wont solve the data-mining and privacy problemsthat would require legislation similar to theEuropean Union General Data Regulationthat mandates users be informed, understand and consent to the data collected about them and how it will be used.

Section 230of the Communications Decency Act provides Twitter, Facebook and other internet platforms with expansive legal immunity for the statements and other material that users post. It exempts service providers from civil liability for actions taken in good faith to restrict access to or availability of material the provider or user considers to be obscene, lewd, lascivious, filthy, excessively violent, harassing, or otherwise objectionable. And for providing users with tools to restrict access to such materials.

As a candidatePresident Joe Biden called for revoking those protectionsand permitting the websites to be sued. More generally Democrats would like Twitter, Facebook and others to remove what they view as false information, whereas Republicans believe the two platforms exhibit ananticonservative bias.

All sides appear to miss even bigger problems.

Justice Clarence Thomas argues that lower courts apply Section 230 too expansively. Internet platforms have been found exempt from liability even when they know the content or activity it enables is illegalfor example, child pornography, human trafficking, and terrorism.

With millions of daily posts, it is impossible for Twitter and Facebook to catch everything, but they could be compelledor be held criminally or civilly libelto remove material they know is illegal or facilitates crimes. And for failing to pre-emptively screen material that could incite civil unrest until the full context of an incident is determined and accurately portrayed.

As for political and other speech, Twitter and other platforms have been accused of anticonservative bias in the content they exclude and promote. This is broadly protected, because the First Amendment applies to restrictions that may be applied by government entities, not private actors. And thecourts do not treat internet platforms as public squares where viewpoint discrimination is impermissible.

Absolute neutrality is impossible but the ruminations of politiciansas long as their posts are not illegal and do not incite illegal assembly, destruction of property or violenceshould be left to the intelligence of voters. After all, what is true and not true is often in the eyes of the beholder.

They may be technology wizards, but Jack Dorsey and other internet magnates should not be exercising broad censorship powers.

European officials were shocked by the recent Facebook and Twitter bans on Trump andsuggested such decisions should be left to elected officials to arbitrate.

Importantly, Twitter, Facebook and other social media have become so pervasive that they have become the public squareand legally should be treated as such. Neutral arbitration panelswith equal representation chosen by Republican and Democratic leadersshould oversee editorial decisions to ensure some measure of objectivity.

Its not perfect but if you want perfection you will have to wait for the hereafterSt. Peter wont be facing a primary challenge anytime soon.

PeterMoriciis an economist and emeritus business professor at the University of Maryland, and a national columnist.

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AI startup founders highlight the main pain points of running an AI business – Information Age

Founders from 16 of the UK's leading AI startups and scaleups have revealed to Information Age the main pain points of running an AI business

There are a number of unique challenges that AI startup founders encounter when setting up and growing their business.

Running and growing an AI startup comes with its own unique set of challenges compared to other sectors, ranging from; talent acquisition, how to implement the technology, busting the AI hype around what it is and its capabilities, the accessibility of trusted or secure data and a lack of AI expertise in industries.

In the first article of a three part series focusing on what founders are doing to navigate the fast growth AI industry, Information Age spoke to the founders of some the UKs leading AI startups to understand the ten main pain points of running an AI business.

A major challenge for any growing AI startup, as well other technology-focused roles (like cyber security), is talent acquisition. In these industries there is often a talent shortfall compared to the number of jobs available.

Miriam Cha, co-founder and COO of Rahko a quantum machine learning company focused on the discovery of new drugs and materials, explains that attracting the best people from relatively scarce talent pools is a major hurdle.

As an AI startup you compete with much larger companies who have much deeper pockets than you so you need to offer something more important than salary. At Rahko, we have a friendly, fun team, but far and away the most attractive thing about joining us is how absolutely cutting edge our work is if our work was boring we would have a very hard time convincing anyone to join us, she says.

Darko Matovski, CEO and co-founder of causaLens an AI platform that helps businesses improve KPIs, agrees that asan emerging discipline, attracting top people with a diverse skill set to ensure we not only develop our scientific capabilities and products, but also provide the best service to our customers is a major paint point.

There is a high demand for AI expertise, so hiring in this sector is very competitive, he adds.

However, Matovski suggests AI startups should view this as an opportunity. The best talent will only want to work in an environment with an altruistic working culture and shared goals.

Chris Ganje, CEO and founder at AMPLYFI which uses AI analytics to mitigate emerging threats as they happen, suggests the challenge lies in the range of skills required at an AI startup.

He says: It is not enough to lock some AI experts in a room. Engineering, data mining, user experience, design, digital marketing a range of skills are required in the mix to really achieve a meaningful solution and value.

Safe Hammad, CTO and co-founder at Arctic Shores which improves the hiring process through behaviour-based assessment, agrees and says he has struggled to hire software engineers because theyre in such high demand.

However, he goes one step further. Its not enough to find talented people were looking for those who truly align with our values too, he adds.

The introduction of AI into a business strategy or product is still at a relatively early stage. And, while the potential benefits are clear speeding up process or leveraging smart data for customer success the challenge is pinpointing precisely how, where and why youre going to implement the technology for optimum results, according to Dr Alex Young, founder and CEO at Virti the enterprise AI learning solution.

He advises businesses must be clear on what outcomes they want to achieve, before incorporating AI into a business strategy or product.

Ky Nichol, CEO at Cutover the work orchestration and observability platform, explains that this AI implementation pain point comes from some parts of a business that dont have ahealthy consideration of human/machine collaboration, and so adoption of automation can often be tricky. It remains fairly well understood by technical teams, but as it moves across organisational requirements, there can be knowledge gaps between adoption and implementation.

He continues: As organisations design strategies to unlock this potential and complement automation with existing technology infrastructure, there will always be challenges to leverage existing investments too. The challenge now is to join up tools and build processes and flows of work across them.

Ganje from AMPLYFI suggests that some companies and their infrastructure is simply not ready for AI presenting another challenge for AI startups.

He says there is a need for mature digital leadership to really exploit the benefits of AI in an organisation[but] some leaders and companies are just not ready to use machines to enhance their decision making.

As an extension to the above, one of the main pain points for AI startups in delivering their solution to market is a lack of AIexpertise in the many industries that are trying to implement AI.

Because AI has clear limitations that different industries are not familiar with, they view it as this all mighty capability that you can just turn on. The problems come in as they are not familiar with the foundations needed to run AI properly in their business. They are also not set up correctly to adapt to these requirements, explains Ofri Ben-Porat, CEO at Edgify a company that trains deep learning models at the edge.

Matthew Hodgson, CEO and founder of Mosaic Smart Data a startup that delivers the insight and real-time intelligence for the financial industry, highlights the irony that data resemblesboth the biggest challenge and most integral component to deploying AI effectively for any startup or business.

Looking specifically at financial institutions, Hodgson says that they must ensure that their data foundations are fit for purpose.

Data is the raw material of our industry, and without it, the benefits and potential of AI are stunted and capped before the system even gets switched on. Many financial institutions already sit atop mountains of their own data in addition to buying more from vendors yet they do not have the time, the resources or the staff expertise to sift through it, Hodgson explains.

Dr Richard Ahlfeld, founder and CEO at Monolith AI a startup that builds new machine learning software to help engineers to improve the product development process, echoes this view.

He says: Any pain points tend to boil down to the data: getting the data, ensuring data security, making sure that you can trust the data.

Theres no standardisation of what makes data valuable across the industry either, and not all engineers follow the same protocols and practices. For example, deciding what data to keep can be tricky as its hard to anticipate what might or might not be useful to have in the future. Even saving data from failed ventures (a practice which is often overlooked) can have its value, as it acts as a reference for future experiments.

While true artificial intelligence is some way off, businesses are taking advantage of intelligent automation, like machine learning, to improve business operations, drive innovation and improve the customer experience. Read here

One of the main pain points in running an AI business is counteracting misunderstandings people may have around AI and its capabilities, says Mark Nicholson, CEO, Vivacity Labs which improves traffic lights with artificial intelligence.

There is an inherent distrust in the technology and overcoming the negative perceptions that some people have when it comes to AI, especially among a more traditional demographic, is a significant challenge according to Philip Marshman, founder and CEO at Sentai a startup using advanced AI to support informal caregivers look after the elderly.

To overcome this, Nicholson and Marshman have put data privacy and trust at the heart of their companys product development and that should be the first thing entrepreneurs consider when setting up a tech/AI company, according to Nicholson.

In 2019, London-based investment firm MMC Ventures, in association with Barclays, analysed 2,830 AI start-ups in Europe and based their findings on public information and interviews with executives. It found that 40% of these companies did not actually use AI ahuge problem for startups is the amount of AI hype in the market.

Cha from Rahko explains that tempering expectations through hype is always going to be tricky.

While fundamental advances in AI are always exciting and important, a lot of the critical work in graduating from hype is in making things work in the real world, which comes with its own set of challenges. This is doubly true for quantum computing. Quantum computing captures peoples imaginations which makes for a field that is very prone to wild hype. We are extremely excited about the powerful new capabilities that quantum computing will bring, but like with AI, we do not focus on technological advances that do not strongly seem like they will be able to solve a real, currently intractable problem.

Hammad from Arctic Shores agrees and says that its all too easy to create a product thats great in theory but doesnt have its users at heart. One challenge is to constantly keep the customers challenges in mind which problems are you solving?

AI is a fast growing industry and competition is fierce.

Daniel Cooper, managing director at Lolly Co the digital transformation partner, sees the increasing amounts of competition on the web a significant pain point for AI startups.

SEO has becomehyper-competitive, even when factoring in individual niches. Getting noticed on the internet isbecoming increasingly difficult, and is driving a return to more traditional PR methods to grabGoogles attention. Simply put, there is always someone who is getting higher traffic than you, he says.

Every industry, even AI has been disrupted by Covid-19.

From a technology perspective, AI businesses have had to learn and adapt quickly to ensure their technology can be implemented with minimal disruption, and while the pandemic was unexpected, adapting to these challenges has allowed many tech businesses to thrive, says Tim Weil, CEO, Navenio the indoor location solution.

Tom Reiss, CEO at Roby AI the autonomous machine that empowers property managers, also says the pandemic has created a number of challenges for his company because of the impact on the sector that it serves real estate. Like many businesses, weve had to adapt quickly to our customers needs and the changing pace of the market, he says.

Both Ben-Porat from Edgify and Hammad from Arctic Shores agree that focus is a challenge for any AI startup.

Ben-Porat explains: Since AI seems like magic to most low-tech industries (for example, retail, manufacturing, automotive, etcetera) it is difficult for them to focus on one key pain point that they are trying to solve with AI. In most cases, they also just want to say that they are using AI across the board, rather than focusing on one use case where they will be using AI to solve a specific problem.

Hammad agrees but from a different angle. He argues its far too easy to get sidetracked from building and improving your core product, either by darting from one product avenue to the next, or by trying to fit your product to a particular client. Do one thing, and do it well.

AI has the potential to produce radical change in any organisation, if used correctly.

Pointing to the HR industry,Dr Alan Bourne, CEO and founder at Sova the AI recruitment service, explains that businesses can make huge long-term gains by automating elements of the recruitment process, like CV scanning and interview bookings. The biggest impact AI can bring to the HR industry is overhauling the fairness and accuracy of how people are selected for a job, by eliminating elements of inherent bias that hamper traditional, human led recruitment processes.

However, he suggests that making radical changes using AI carries an inevitable risk versus payoff quandary.

The stakes of challenging the status quo are huge, making the expectations much higher for the new solution to significantly outperform the original offering. Guiding people through the change process here needs to be based on genuine and thorough rigour, in order to offset decision makers risk levels.

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