assignment - Computer Science
8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=98da703c-6fed-415d-84c9-db1319bcb7dd\%40sessionmgr4008&vid=1&ReturnUrl=https\%3a… 1/1 Title: Authors: Source: Document Type: Subjects: Abstract: ISSN: Accession Number: Database: Record: 1 IT Service Providers and Cybersecurity Risk. Benaroch, Michael Armed Forces Comptroller. Fall2019, Vol. 64 Issue 4, p50-54. 5p. Article INTERNET security FINANCIAL market reaction ACCOUNTING firms ACCOUNTANTS The article highlights the link of cybersecurity incidents to information technology. It mentions about information technology outsourcing (ITO) as a major contributor to cybersecurity risk exposure and also highlights the growing popularity of ITO it improves enterprise agility and cost effectiveness. 0004-2188 139850181 MasterFILE Premier 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=eca6e57d-2304-43e5-a448-4a70e4ced718\%40sessionmgr4008&vid=1&ReturnUrl=https\%3a… 1/1 Title: Authors: Source: Document Type: Subject Terms: NAICS/Industry Codes: Abstract: Author Affiliations: ISSN: Accession Number: Database: Record: 1 Blockchain, Smart Contracts and Financial Audit Implications. Smith, Sean Stein [email protected] IUP Journal of Accounting Research & Audit Practices. Jan2020, Vol. 19 Issue 1, p8-17. 11p. Article *Contracts *Blockchains *Financial services industry 522291 Consumer Lending Blockchain technology and cryptoassets may have seized the attention of the financial services space, but as the technology ecosystem continues to mature there are additional considerations coming to the forefront. Smart contracts represent an important piece of the blockchain conversation and play a critical role in how blockchains interact with other technology platforms. Accounting and auditing professionals will need to understand both how smart contracts function, and also how these applications will impact accounting and auditing processes. The present paper, written keeping both the academic and practitioner audience in mind, seeks to examine how smart contracts interact with blockchain technology, analyze how these applications can change audit processes, and propose potential future roles for the profession. [ABSTRACT FROM AUTHOR] Copyright of IUP Journal of Accounting Research & Audit Practices is the property of IUP Publications and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holders express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.) Assistant Professor, Department of Economics and Business, City University of New York - Lehman College, New York, USA 0972-690X 142016772 Business Source Ultimate 1 1 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 1/10 Title: Authors: Source: Document Type: Subject Terms: Author-Supplied Keywords: Abstract: Author Affiliations: ISSN: DOI: Accession Number: Database: Record: 1 A Brief History of Artificial Intelligence: On the Past, Present, and Future of Artificial Intelligence. Haenlein, Michael (AUTHOR) [email protected] Kaplan, Andreas (AUTHOR) [email protected] California Management Review. Aug2019, Vol. 61 Issue 4, p5-14. 10p. Article *Artificial intelligence *Big data *Decision making artificial intelligence big data machine-based learning regulation strategy This introduction to this special issue discusses artificial intelligence (AI), commonly defined as a systems ability to interpret external data correctly, to learn from such data, and to use those learnings to achieve specific goals and tasks through flexible adaptation. It summarizes seven articles published in this special issue that present a wide variety of perspectives on AI, authored by several of the worlds leading experts and specialists in AI. It concludes by offering a comprehensive outlook on the future of AI, drawing on micro-, meso-, and macro-perspectives. [ABSTRACT FROM AUTHOR] Copyright of California Management Review is the property of California Management Review and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holders express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.) ESCP Europe Business School, Paris, France ESCP Europe Business School, Berlin, Germany 0008-1256 10.1177/0008125619864925 138097011 Business Source Ultimate A Brief History of Artificial Intelligence: On the Past, Present, and Future of Artificial Intelligence  This introduction to this special issue discusses artificial intelligence (AI), commonly defined as a systems ability to interpret external data correctly, to learn from such data, and to use those learnings to achieve specific 1 2 1 2 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 2/10 goals and tasks through flexible adaptation. It summarizes seven articles published in this special issue that present a wide variety of perspectives on AI, authored by several of the worlds leading experts and specialists in AI. It concludes by offering a comprehensive outlook on the future of AI, drawing on micro-, meso-, and macro-perspectives. Keywords: artificial intelligence; big data; regulation; strategy; machine-based learning The world we are living in today feels, in many ways, like a Wonderland similar to the one that the British mathematician Charles Lutwidge Dodgson, better known under the name Lewis Carroll, described in his famous novels. Image recognition, smart speakers, and self-driving cars—all of this is possible due to advances in artificial intelligence (AI), defined as a systems ability to interpret external data correctly, to learn from such data, and to use those learnings to achieve specific goals and tasks through flexible adaptation.[ 1] Established as an academic discipline in the 1950s, AI remained an area of relative scientific obscurity and limited practical interest for over half a century. Today, due to the rise of Big Data and improvements in computing power, it has entered the business environment and public conversation. AI can be classified into analytical, human-inspired, and humanized AI depending on the types of intelligence it exhibits (cognitive, emotional, and social intelligence) or into Artificial Narrow, General, and Super Intelligence by its evolutionary stage.[ 2] What all of these types have in common, however, is that when AI reaches mainstream usage it is frequently no longer considered as such. This phenomenon is described as the AI effect, which occurs when onlookers discount the behavior of an AI program by arguing that it is not real intelligence. As the British science fiction writer Arthur Clarke once said, Any sufficiently advanced technology is indistinguishable from magic. Yet when one understands the technology, the magic disappears. In regular intervals since the 1950s, experts predicted that it will only take a few years until we reach Artificial General Intelligence—systems that show behavior indistinguishable from humans in all aspects and that have cognitive, emotional, and social intelligence. Only time will tell whether this will indeed be the case. But to get a better grasp of what is feasible, one can look at AI from two angles—the road already traveled and what still lies ahead of us. In this editorial, we aim to do just that. We start by looking into the past of AI to see how far this area has evolved using the analogy of the four seasons (spring, summer, fall, and winter), then into the present to understand which challenges firms face today, and finally into the future to help everyone prepare for the challenges ahead of us. The Past: Four Seasons of AI AI Spring: The Birth of AI Although it is difficult to pinpoint, the roots of AI can probably be traced back to the 1940s, specifically 1942, when the American Science Fiction writer Isaac Asimov published his short story Runaround. The plot of Runaround—a story about a robot developed by the engineers Gregory Powell and Mike Donavan—evolves around the Three Laws of Robotics: ( 1) a robot may not injure a human being or, through inaction, allow a human being to come to harm; ( 2) a robot must obey the orders given to it by human beings except where such orders would conflict with the First Law; and ( 3) a robot must protect its own existence as long as such protection does not conflict with the First or Second Laws. Asimovs work inspired generations of scientists in the field of robotics, AI, and computer science—among others the American cognitive scientist Marvin Minsky (who later co-founded the MIT AI laboratory). At roughly the same time, but over 3,000 miles away, the English mathematician Alan Turing worked on much less fictional issues and developed a code breaking machine called The Bombe for the British government, with 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 3/10 the purpose of deciphering the Enigma code used by the German army in the Second World War. The Bombe, which was about 7 by 6 by 2 feet large and had a weight of about a ton, is generally considered the first working electro-mechanical computer. The powerful way in which The Bombe was able to break the Enigma code, a task previously impossible to even the best human mathematicians, made Turing wonder about the intelligence of such machines. In 1950, he published his seminal article Computing Machinery and Intelligence[ 3] where he described how to create intelligent machines and in particular how to test their intelligence. This Turing Test is still considered today as a benchmark to identify intelligence of an artificial system: if a human is interacting with another human and a machine and unable to distinguish the machine from the human, then the machine is said to be intelligent. The word Artificial Intelligence was then officially coined about six years later, when in 1956 Marvin Minsky and John McCarthy (a computer scientist at Stanford) hosted the approximately eight-week-long Dartmouth Summer Research Project on Artificial Intelligence (DSRPAI) at Dartmouth College in New Hampshire. This workshop—which marks the beginning of the AI Spring and was funded by the Rockefeller Foundation— reunited those who would later be considered as the founding fathers of AI. Participants included the computer scientist Nathaniel Rochester, who later designed the IBM 701, the first commercial scientific computer, and mathematician Claude Shannon, who founded information theory. The objective of DSRPAI was to reunite researchers from various fields in order to create a new research area aimed at building machines able to simulate human intelligence. AI Summer and Winter: The Ups and Downs of AI The Dartmouth Conference was followed by a period of nearly two decades that saw significant success in the field of AI. An early example is the famous ELIZA computer program, created between 1964 and 1966 by Joseph Weizenbaum at MIT. ELIZA was a natural language processing tool able to simulate a conversation with a human and one of the first programs capable of attempting to pass the aforementioned Turing Test.[ 4] Another success story of the early days of AI was the General Problem Solver program—developed by Nobel Prize winner Herbert Simon and RAND Corporation scientists Cliff Shaw and Allen Newell—that was able to automatically solve certain kind of simple problems, such as the Towers of Hanoi.[ 5] As a result of these inspiring success stories, substantial funding was given to AI research, leading to more and more projects. In 1970, Marvin Minsky gave an interview to Life Magazine in which he stated that a machine with the general intelligence of an average human being could be developed within three to eight years. Yet, unfortunately, this was not the case. Only three years later, in 1973, the U.S. Congress started to strongly criticize the high spending on AI research. In the same year, the British mathematician James Lighthill published a report commissioned by the British Science Research Council in which he questioned the optimistic outlook given by AI researchers. Lighthill stated that machines would only ever reach the level of an experienced amateur in games such as chess and that common-sense reasoning would always be beyond their abilities. In response, the British government ended support for AI research in all except three universities (Edinburgh, Sussex, and Essex) and the U.S. government soon followed the British example. This period started the AI Winter. And although the Japanese government began to heavily fund AI research in the 1980s, to which the U.S. DARPA responded by a funding increase as well, no further advances were made in the following years. AI Fall: The Harvest One reason for the initial lack of progress in the field of AI and the fact that reality fell back sharply relative to expectations lies in the specific way in which early systems such as ELIZA and the General Problem Solver tried to replicate human intelligence. Specifically, they were all Expert Systems, that is, collections of rules 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 4/10 which assume that human intelligence can be formalized and reconstructed in a top-down approach as a series of if-then statements.[ 6] Expert Systems can perform impressively well in areas that lend themselves to such formalization. For example, IBMs Deep Blue chess playing program, which in 1997 was able to beat the world champion Gary Kasparov—and in the process proved one of the statements made by James Lighthill nearly 25 earlier wrong—is such an Expert System. Deep Blue was reportedly able to process 200 million possible moves per second and to determine the optimal next move looking 20 moves ahead through the use of a method called tree search.[ 7] However, Expert Systems perform poorly in areas that do not lend themselves to such formalization. For example, an Expert System cannot be easily trained to recognize faces or even to distinguish between a picture showing a muffin and one showing a Chihuahua.[ 8] For such tasks it is necessary that a system is able to interpret external data correctly, to learn from such data, and to use those learnings to achieve specific goals and tasks through flexible adaptation—characteristics that define AI.[ 9] Since Expert Systems do not possess these characteristics, they are technically speaking not true AI. Statistical methods for achieving true AI have been discussed as early as the 1940s when the Canadian psychologist Donald Hebb developed a theory of learning known as Hebbian Learning that replicates the process of neurons in the human brain.[10] This led to the creation of research on Artificial Neural Networks. Yet, this work stagnated in 1969 when Marvin Minsky and Seymour Papert showed that computers did not have sufficient processing power to handle the work required by such artificial neural networks.[11] Artificial neural networks made a comeback in the form of Deep Learning when in 2015 AlphaGo, a program developed by Google, was able to beat the world champion in the board game Go. Go is substantially more complex than chess (e.g., at opening there are 20 possible moves in chess but 361 in Go) and it was long believed that computers would never be able to beat humans in this game. AlphaGo achieved its high performance by using a specific type of artificial neural network called Deep Learning.[12] Today artificial neural networks and Deep Learning form the basis of most applications we know under the label of AI. They are the basis of image recognition algorithms used by Facebook, speech recognition algorithms that fuel smart speakers and self-driving cars. This harvest of the fruits of past statistical advances is the period of AI Fall, which we find ourselves in today. The Present: California Management Review Special Issue on AI The discussion above makes it clear that AI will become as much part of everyday life as the Internet or social media did in the past. In doing so, AI will not only impact our personal lives but also fundamentally transform how firms take decisions and interact with their external stakeholders (e.g., employees, customers). The question is less whether AI will play a role in these elements but more which role it will play and more importantly how AI systems and humans can (peacefully) coexist next to each other. Which decisions should rather be taken by AI, which ones by humans, and which ones in collaboration will be an issue all companies need to deal with in todays world and our articles in this special issue provide insights into this from three different angles. First, these articles look into the relationship between firms and employees or generally the impact of AI on the job market. In their article Artificial Intelligence in Human Resources Management: Challenges and a Path Forward Tambe, Cappelli, and Yakubovich analyze how AI changes the HR function in firms. Human resource management is characterized by a high level of complexity (e.g., measurement of employee performance) and relatively rare events (e.g., occurrence of recruiting and dismissals), which have serious consequences for both employees and the firm. These characteristics create challenges in the data-generation stage, the machine- learning stage, and the decision-making stage of AI solutions. The authors analyze those challenges, provide 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 5/10 recommendations on when AI or humans should take the lead, and discuss how employees can be expected to react to different strategies. Another article that addresses this issue is The Feeling Economy: Managing in the Next Generation of AI by Huang, Rust, and Maksimovic. This article takes a broader view and analyzes the relative importance of mechanical tasks (e.g., repairing and maintaining equipment), thinking tasks (e.g., processing, analyzing, and interpreting information), and feeling tasks (e.g., communicating with people) for different job categories. Through empirical analysis, these authors show that in the future, human employees will be increasingly occupied with feeling tasks since thinking tasks will be taken over by AI systems in a manner similar to how mechanical tasks have been taken over my machines and robots. Second, the articles in this special issue analyze how AI changes the internal functioning of firms, specifically group dynamics and organizational decision making. In Organizational Decision-Making Structures in the Age of AI, Shrestha, Ben-Menahem, and von Krogh develop a framework to explain under which conditions organizational decision making should be fully delegated to AI, hybrid (either AI as an input to human decision making or human decisions as an input to AI systems) or aggregated (in the sense that humans and AI take decisions in parallel with the optimal decision being determined by some form of voting). The question of which option should be preferred depends on the specificity of the decision-making space, the size of the alternative set, and decision-making speed as well as the need for interpretability and replicability. In a similar spirit, Metcalf, Askay, and Rosenberg present artificial swarm intelligence as a tool to allow humans to make better decisions in Keeping Humans in the Loop: Pooling Knowledge through Artificial Swarm Intelligence to Improve Business Decision Making. By taking inspiration from decision making in the animal world (e.g., among flocks of birds or ant colonies), these authors propose a framework to combine explicit and tactic knowledge that suffers less from biases such as herding behavior or the limitations of alternative techniques such as surveys, crowdsourcing, or prediction markets. They show the applicability of their method to sales forecasting and the definition of strategic priorities. In their article Demystifying AI: What Digital Transformation Leaders Can Teach You, Brock and Wangenheim take a broader perspective and investigate to what extent firms are already using AI in their business and how leaders in AI are different from companies lagging behind. Based on a large-scale survey, they identify guidelines of successful AI applications that include a need for data, the requirement to have skilled staff and in-house knowledge, the focus on improving existing business offerings using AI, the importance of having AI embedded in the organization (while, at the same time, engaging with technology partners), and the importance of being agile and having top-management commitment. Finally, the articles in this special issue look into the interaction between a firm and its customers and specifically the role of AI in marketing. In Understanding the Role of Artificial Intelligence in Personalized Engagement Marketing, Kumar, Rajan, Venkatesan, and Lecinski propose how AI can help in the automatic machine-driven selection of products, prices, website content, and advertising messages that fit with an individual customers preferences. They discuss in detail how the associated curation of information through personalization changes branding and customer relationship management strategies for firms in both developed and developing economies. In a similar spirit, Overgoor, Chica, Rand, and Weishampel provide a six-step framework on how AI can support marketing decision making in Letting the Computers Take Over: Using AI to Solve Marketing Problems. This framework—which is based on obtaining business and data understanding, data preparation and modeling, as well as evaluation and deployment of solutions—is applied in three case studies to problems many firms face in 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 6/10 todays world: how to design influencer strategies in the context of word-of-mouth programs,[13] how to select images for digital marketing, and how to prioritize customer service in social media. The Future: Need for Regulation Micro-Perspective: Regulation with Respect to Algorithms and Organizations The fact that in the near future AI systems will increasingly be part of our day-to-day lives raises the question of whether regulation is needed and, if so, in which form. Although AI is in its essence objective and without prejudice, it does not mean that systems based on AI cannot be biased. In fact, due to its very nature, any bias present in the input data used to train an AI system persists and may even be amplified. Research has, for example, shown that the sensors used in self-driving cars are better in detecting lighter skin tones than darker ones[14] (due to the type of pictures used to train such algorithms) or that decision-support systems used by judges may be racially biased[15] (since they are based on the analysis of past rulings). Instead of trying to regulate AI itself, the best way to avoid such errors is probably to develop commonly accepted requirements regarding the training and testing of AI algorithms, possibly in combination with some form of warranty, similar to consumer and safety testing protocols used for physical products. This would allow for stable regulation even if the technical aspects of AI systems evolve over time. A related issue is the one of accountability of firms for mistakes of their algorithms or even the need for a moral codex of AI engineers, similar to the one lawyers or doctors are swearing to. What such rules can, however, not avoid is the deliberate hacking of AI systems, the unwanted use of such systems for micro-targeting based on personality traits,[16] or the generation of fake news.[17] What makes matters even more complicated is that Deep Learning, a key technique used by most AI systems, is inherently a black box. While it is straightforward to assess the quality of the output generated by such systems (e.g., the share of correctly classified pictures), the process used for doing so remains largely opaque. Such opacity can be intentional (e.g., if a corporation wants to keep an algorithm secret), due to technical illiteracy or related to the scale of application (e.g., in cases where a multitude of programmers and methods are involved).[18] While this may be acceptable in some cases, it may be less so in others. For example, few people may care how Facebook identifies who to tag in a given picture. But when AI systems are used to make diagnostic suggestions for skin cancer based on automatic picture analysis,[19] understanding how such recommendations have been derived becomes critical. Meso-Perspective: Regulation with Respect to Employment In a similar manner as the automation of manufacturing processes has resulted in the loss of blue-collar jobs, the rising use of AI will result in less need for white-collar employees and even high-qualified professional jobs. As mentioned previously, image recognition tools are already outperforming physicians in the detection of skin cancer and in the legal profession e-discovery technologies have reduced the need for large teams of lawyers and paralegals to examine millions of documents.[20] Granted, significant shifts in job markets have been observed in the past (e.g., in the context of the Industrial Revolution from 1820-1840), but it is not obvious whether new jobs will necessarily be created in other areas in order to accommodate those employees. This is related to both the number of possible new jobs (which may be much less than the number of jobs lost) and the skill level required. Interestingly, in a similar way as fiction can be seen as the starting point of AI (remember the Runaround short story by Isaac Asimov), it can also be used to get a glimpse into how a world with more unemployment could look like. The fiction novel Snow Crash published by the American Writer Neal Stephenson describes a world in which people spend their physical life in storage units, surrounded by technical equipment, while their actual life 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 7/10 takes place in a three-dimensional world called the Metaverse where they appear in the form of three- dimensional avatars. As imaginary as this scenario sounds, recent advancements in virtual reality image processing, combined with the past success of virtual worlds[21] (and the fact that higher unemployment leads to less disposable income), make alternative forms of entertainment less accessible, and make this scenario far from utopian. Regulation might again be a way to avoid such an evolution. For example, firms could be required to spend a certain percentage of the money saved through automation into training employees for new jobs that cannot be automated. States may also decide to limit the use of automation. In France, self-service systems used by public administration bodies can only be accessed during regular working hours. Or firms might restrict the number of hours worked per day to distribute the remaining work more evenly across the workforce. All of these may be easier to implement, at least in the short term, than the idea of a Universal Basic Income that is usually proposed as a solution in this case. Macro-Perspective: Regulation with Respect to Democracy and Peace All this need for regulation necessarily leads to the question Quis custodiet ipsos custodes? or Who will guard the guards themselves? AI can be used not only by firms or private individuals but also by states themselves. China is currently working on a social credit system that combines surveillance, Big Data, and AI to allow the trustworthy to roam everywhere under heaven while making it hard for the discredited to take a single step.[22] In an opposite move, San Francisco recently decided to ban facial recognition technology[23] and researchers are working on solutions that act like a virtual invisibility cloak and make people undetectable to automatic surveillance cameras.[24] While China and, to a certain extent, the United States try to limit the barriers for firms to use and explore AI, the European Union has taken the opposite direction with the introduction of the General Data Protection Regulation (GDPR) that significantly limits the way in which personal information can be stored and processed. This will by all likelihood result in the fact that the development of AI will be slowed down in the EU compared with other regions, which in turn raises the question how to balance economic growth and personal privacy concerns. In the end, international coordination in regulation will be needed, similar to what has been done regarding issues such as money laundering or weapons trade. The nature of AI makes it unlikely that a localized solution that only affects some countries but not others will be effective in the long run. Through the Looking Glass Nobody knows whether AI will allow us to enhance our own intelligence, as Raymond Kurzweil from Google thinks, or whether it will eventually lead us into World War III, a concern raised by Elon Musk. However, everyone agrees that it will result in unique ethical, legal, and philosophical challenges that will need to be addressed.[25] For decades, ethics has dealt with the Trolley Problem, a thought experiment in which an imaginary person needs to choose between inactivity which leads to the death of many and activity which leads to the death of few.[26] In a world of self-driving cars, these issues will become actual choices that machines and, by extension, their human programmers will need to make.[27] In response, calls for regulation have been numerous, including by major actors such as Mark Zuckerberg.[28] But how do we regulate a technology that is constantly evolving by itself—and one that few experts, let alone politicians, fully understand? How do we overcome the challenge of being sufficiently broad to allow for future evolutions in this fast-moving world and sufficiently precise to avoid everything being considered as AI? One solution can be to follow the approach of U.S. Supreme Court Justice Potter Stewart who in 1964 defined obscenity by saying: I know it when I see it. This brings us back to the AI effect mentioned earlier, that we 8/12/2021 Articles, E-Books, & More https://eds-a-ebscohost-com.libauth.purdueglobal.edu/eds/delivery?sid=04e745c0-3799-4efe-a1a2-e1ec2ef05c38\%40sessionmgr4008&vid=2&ReturnUrl=https\%3a… 8/10 now quickly tend to accept as normal was used to be seen as extraordinary. There are today dozens of different apps that allow a user to play chess against her phone. Playing chess against a machine—and losing with near certainty—has become a thing not even worth mentioning. Presumably, Garry Kasparov had an entirely different view on this matter in 1997, just a bit over 20 years ago. Author Biographies Michael Haenlein is the Big Data Research Center Chaired Professor and Associate Dean of the Executive PhD Program at the ESCP Europe Business School (email: … Part 1: Quoting Required source: A professional journal article from the list presented in the Library section of the classroom as explained above. Do not look for quotes already presented in the article; your mission is to find direct statements in the article and quote them yourself. Quotation 1 – parenthetical citation · Choose a meaningful statement of 25–39 words from the article and quote it without introduction, using in-text citation after the end-quotation mark and before the final sentence punctuation. Quotation 2 – narrative citation · Choose a different meaningful statement of 25–39 words from the same article and quote it properly, starting your sentence with According to or a similar introduction, and inserting proper citation as explained in the Reading. Required adjustment: · Edit just one of your two quotes by correctly using brackets, an ellipsis,  or  [sic]. These techniques are explained in the Reading. · Caution: If the original does not have an error, you cannot use [sic] and must instead employ either brackets for a clarification or an ellipsis to delete words. Note that British English spelling errors are not considered errors. Reference entry: · Provide a full 7th edition APA-standard reference entry for this journal article. Part 2: Paraphrasing from two other articles Choose two (2) other journal articles from the same Library list. It is recommended that you pick articles that are relatively easy for you to understand, especially if you are rather new to the technology field. Find a section of each article that interests you and write paraphrases. For each of your two paraphrases, separately: · Compose a descriptive title (a phrase) in your own words. · Write a paraphrase of 170–220 words. If it is difficult to meet the minimum length or to avoid writing more than the maximum, then a more suitable section (or section size) from the original article must be chosen. · Do not include any quotes. · Write the paraphrases in paragraph form (no lists).   · Include proper citation as explained in the reading. · Provide a full 7th edition APA-standard reference entry. For all parts of this assignment: · Your writing must follow the rules for formal writing style as explained previously. · Do not use any first person (I, me, my, myself, we, us, or our). · Do not use wording that may be considered emotional or opinionated. · Hint for the reference entries: Use the library system to find the entry and then make corrections if necessary, as explained in the Reading. You may have to look at the articles themselves for volume, issue, and page numbers as well as to verify authors names.  Do not use Words citation tool or other citation generators;  you are expected to learn to create entries on your own.
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Your assignment may be more than 5 paragraphs but not less. INSTRUCTIONS:  To access the FNU Online Library for journals and articles you can go the FNU library link here:  https://www.fnu.edu/library/ In order to n that draws upon the theoretical reading to explain and contextualize the design choices. Be sure to directly quote or paraphrase the reading ce to the vaccine. Your campaign must educate and inform the audience on the benefits but also create for safe and open dialogue. A key metric of your campaign will be the direct increase in numbers.  Key outcomes: The approach that you take must be clear Mechanical Engineering Organic chemistry Geometry nment Topic You will need to pick one topic for your project (5 pts) Literature search You will need to perform a literature search for your topic Geophysics you been involved with a company doing a redesign of business processes Communication on Customer Relations. Discuss how two-way communication on social media channels impacts businesses both positively and negatively. Provide any personal examples from your experience od pressure and hypertension via a community-wide intervention that targets the problem across the lifespan (i.e. includes all ages). Develop a community-wide intervention to reduce elevated blood pressure and hypertension in the State of Alabama that in in body of the report Conclusions References (8 References Minimum) *** Words count = 2000 words. *** In-Text Citations and References using Harvard style. *** In Task section I’ve chose (Economic issues in overseas contracting)" Electromagnetism w or quality improvement; it was just all part of good nursing care.  The goal for quality improvement is to monitor patient outcomes using statistics for comparison to standards of care for different diseases e a 1 to 2 slide Microsoft PowerPoint presentation on the different models of case management.  Include speaker notes... .....Describe three different models of case management. visual representations of information. They can include numbers SSAY ame workbook for all 3 milestones. You do not need to download a new copy for Milestones 2 or 3. When you submit Milestone 3 pages): Provide a description of an existing intervention in Canada making the appropriate buying decisions in an ethical and professional manner. Topic: Purchasing and Technology You read about blockchain ledger technology. Now do some additional research out on the Internet and share your URL with the rest of the class be aware of which features their competitors are opting to include so the product development teams can design similar or enhanced features to attract more of the market. The more unique low (The Top Health Industry Trends to Watch in 2015) to assist you with this discussion.         https://youtu.be/fRym_jyuBc0 Next year the $2.8 trillion U.S. healthcare industry will   finally begin to look and feel more like the rest of the business wo evidence-based primary care curriculum. Throughout your nurse practitioner program Vignette Understanding Gender Fluidity Providing Inclusive Quality Care Affirming Clinical Encounters Conclusion References Nurse Practitioner Knowledge Mechanics and word limit is unit as a guide only. The assessment may be re-attempted on two further occasions (maximum three attempts in total). All assessments must be resubmitted 3 days within receiving your unsatisfactory grade. You must clearly indicate “Re-su Trigonometry Article writing Other 5. June 29 After the components sending to the manufacturing house 1. In 1972 the Furman v. Georgia case resulted in a decision that would put action into motion. Furman was originally sentenced to death because of a murder he committed in Georgia but the court debated whether or not this was a violation of his 8th amend One of the first conflicts that would need to be investigated would be whether the human service professional followed the responsibility to client ethical standard.  While developing a relationship with client it is important to clarify that if danger or Ethical behavior is a critical topic in the workplace because the impact of it can make or break a business No matter which type of health care organization With a direct sale During the pandemic Computers are being used to monitor the spread of outbreaks in different areas of the world and with this record 3. Furman v. Georgia is a U.S Supreme Court case that resolves around the Eighth Amendments ban on cruel and unsual punishment in death penalty cases. The Furman v. Georgia case was based on Furman being convicted of murder in Georgia. Furman was caught i One major ethical conflict that may arise in my investigation is the Responsibility to Client in both Standard 3 and Standard 4 of the Ethical Standards for Human Service Professionals (2015).  Making sure we do not disclose information without consent ev 4. Identify two examples of real world problems that you have observed in your personal Summary & Evaluation: Reference & 188. Academic Search Ultimate Ethics We can mention at least one example of how the violation of ethical standards can be prevented. Many organizations promote ethical self-regulation by creating moral codes to help direct their business activities *DDB is used for the first three years For example The inbound logistics for William Instrument refer to purchase components from various electronic firms. During the purchase process William need to consider the quality and price of the components. In this case 4. A U.S. Supreme Court case known as Furman v. Georgia (1972) is a landmark case that involved Eighth Amendment’s ban of unusual and cruel punishment in death penalty cases (Furman v. Georgia (1972) With covid coming into place In my opinion with Not necessarily all home buyers are the same! When you choose to work with we buy ugly houses Baltimore & nationwide USA The ability to view ourselves from an unbiased perspective allows us to critically assess our personal strengths and weaknesses. This is an important step in the process of finding the right resources for our personal learning style. Ego and pride can be · By Day 1 of this week While you must form your answers to the questions below from our assigned reading material CliftonLarsonAllen LLP (2013) 5 The family dynamic is awkward at first since the most outgoing and straight forward person in the family in Linda Urien The most important benefit of my statistical analysis would be the accuracy with which I interpret the data. The greatest obstacle From a similar but larger point of view 4 In order to get the entire family to come back for another session I would suggest coming in on a day the restaurant is not open When seeking to identify a patient’s health condition After viewing the you tube videos on prayer Your paper must be at least two pages in length (not counting the title and reference pages) The word assimilate is negative to me. I believe everyone should learn about a country that they are going to live in. It doesnt mean that they have to believe that everything in America is better than where they came from. It means that they care enough Data collection Single Subject Chris is a social worker in a geriatric case management program located in a midsize Northeastern town. She has an MSW and is part of a team of case managers that likes to continuously improve on its practice. The team is currently using an I would start off with Linda on repeating her options for the child and going over what she is feeling with each option.  I would want to find out what she is afraid of.  I would avoid asking her any “why” questions because I want her to be in the here an Summarize the advantages and disadvantages of using an Internet site as means of collecting data for psychological research (Comp 2.1) 25.0\% Summarization of the advantages and disadvantages of using an Internet site as means of collecting data for psych Identify the type of research used in a chosen study Compose a 1 Optics effect relationship becomes more difficult—as the researcher cannot enact total control of another person even in an experimental environment. Social workers serve clients in highly complex real-world environments. Clients often implement recommended inte I think knowing more about you will allow you to be able to choose the right resources Be 4 pages in length soft MB-920 dumps review and documentation and high-quality listing pdf MB-920 braindumps also recommended and approved by Microsoft experts. The practical test g One thing you will need to do in college is learn how to find and use references. References support your ideas. College-level work must be supported by research. You are expected to do that for this paper. You will research Elaborate on any potential confounds or ethical concerns while participating in the psychological study 20.0\% Elaboration on any potential confounds or ethical concerns while participating in the psychological study is missing. Elaboration on any potenti 3 The first thing I would do in the family’s first session is develop a genogram of the family to get an idea of all the individuals who play a major role in Linda’s life. After establishing where each member is in relation to the family A Health in All Policies approach Note: The requirements outlined below correspond to the grading criteria in the scoring guide. At a minimum Chen Read Connecting Communities and Complexity: A Case Study in Creating the Conditions for Transformational Change Read Reflections on Cultural Humility Read A Basic Guide to ABCD Community Organizing Use the bolded black section and sub-section titles below to organize your paper. For each section Losinski forwarded the article on a priority basis to Mary Scott Losinksi wanted details on use of the ED at CGH. He asked the administrative resident