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	<title>Artificial Intelligence</title>
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		<title>Casino Discussion Forum</title>
		<link>http://www.aiproject.org/casino-discussion-forum</link>
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		<pubDate>Wed, 09 Dec 2009 15:29:26 +0000</pubDate>
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		<description><![CDATA[Online casino is a popular game with latest technology. Unfortunately, some people don’t understand it well and even they are cheated by the technology. The impact they take is they loose their money without demand at all. Moreover, they face bankruptcy and in the end they don’t trust with this kind of system.
To avoid this [...]]]></description>
			<content:encoded><![CDATA[<p style="text-align: justify;">Online casino is a popular game with latest technology. Unfortunately, some people don’t understand it well and even they are cheated by the technology. The impact they take is they loose their money without demand at all. Moreover, they face bankruptcy and in the end they don’t trust with this kind of system.</p>
<p style="text-align: justify;">To avoid this kind of problem, they have to find more info about online casino. Finding <a href="http://www.onlinecasinobluebook.com/forum/showthread.php?t=99">more info</a> is not only from the official site but we can find it through discussion. In fact, discussion is also an effective way to know more about online casino. One reference that can I give to you concerning to online casino discussion is OnlineCasinoBlueBook.Com. From this site we can start a new topic about online casino and later the other browsers can give a comment on it. The simple example is about poker online game.</p>
<p style="text-align: justify;">Most people want to play poker but they know how to play it safely and better. By visiting this site, you can read and give your experience about <a href="http://www.onlinecasinobluebook.com/forum/showthread.php?t=149">poker tips</a>. Of course, it will be more useful because the information is based on the fact from the previous players. The <a href="http://www.onlinecasinobluebook.com/forum/">forum</a> is the place to discuss anything about online casino from the basic things until the complicated things.</p>
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		<title>Artificial Intelligence and Intuition</title>
		<link>http://www.aiproject.org/artificial-intelligence-and-intuition</link>
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		<pubDate>Thu, 29 Oct 2009 07:07:04 +0000</pubDate>
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		<category><![CDATA[Intuition]]></category>

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		<description><![CDATA[Roger Penrose considered it impossible. Thinking could never imitate a computer process. He said as much in his book, The Emperor&#8217;s New Mind. But, a new book, The Intuitive Algorithm, (IA), suggested that intuition was a pattern recognition process. Intuition propelled information through many neural regions like a lightning streak. Data moved from input to [...]]]></description>
			<content:encoded><![CDATA[<p style="text-align: justify;">Roger Penrose considered it impossible. Thinking could never imitate a computer process. He said as much in his book, The Emperor&#8217;s New Mind. But, a new book, The Intuitive Algorithm, (IA), suggested that intuition was a pattern recognition process. Intuition propelled information through many neural regions like a lightning streak. Data moved from input to output in a reported 20 milliseconds. The mind saw, recognized, interpreted and acted. In the blink of an eye. Myriad processes converted light, sound, touch and smell instantly into your nerve impulses. A dedicated region recognized those impulses as objects and events. The limbic system, another region, interpreted those events to generate emotions. A fourth region responded to those emotions with actions. The mind perceived, identified, evaluated and acted. Intuition got you off the hot stove in a fraction of a second. And it could be using a simple algorithm. <span id="more-40"></span></p>
<p>Is instant holistic evaluation impossible?</p>
<p>The system, with over a hundred billion neurons, processed the information from input to output in just half a second. All your knowledge was evaluated. Walter Freeman, the famous neurobiologist, defined this amazing ability. &#8220;The cognitive guys think it&#8217;s just impossible to keep throwing everything you&#8217;ve got into the computation every time. But, that is exactly what the brain does. Consciousness is about bringing your entire history to bear on your next step, your next breath, and your next moment.&#8221; The mind was holistic. It evaluated all its knowledge for the next activity. How could so much information be processed so quickly? Where could such knowledge be stored?</p>
<p>Exponential growth of the search path</p>
<p>Unfortunately, the recognition of subtle patterns posed formidable problems for computers. The difficulty was an exponential growth of the recognition search path. The problems in the diagnosis of diseases was typical. Normally, many shared symptoms were presented by a multitude of diseases. For example, pain, or fever could be indicated for many diseases. Each symptom pointed to several diseases. The problem was to recognize a single pattern among many overlapping patterns. When searching for the target disease, the first selected ailment with the first presented symptom could lack the second symptom. This meant back and forth searches, which expanded exponentially as the database of diseases increased in size. That made the process absurdly long drawn – theoretically, even years of search, for extensive databases. So, in spite of their incredible speed, rapid pattern recognition on computers could never be imagined.</p>
<p>Instant pattern recognition</p>
<p>IA was proved in practice. It had powered Expert Systems acting with the speed of a simple recalculation on a spreadsheet, to recognize a disease, identify a case law or diagnose the problems of a complex machine. It was instant, holistic, and logical. If several parallel answers could be presented, as in the multiple parameters of a power plant, recognition was instant. For the mind, where millions of parameters were simultaneously presented, real time pattern recognition was practical. And elimination was the key.</p>
<p>Elimination = Switching off</p>
<p>Elimination was switching off &#8211; inhibition. Nerve cells were known to extensively inhibit the activities of other cells to highlight context. With access to millions of sensory inputs, the nervous system instantly inhibited – eliminated trillions of combinations to zero in on the right pattern. The process stoutly used &#8220;No&#8221; answers. If a patient did not have pain, thousands of possible diseases could be ignored. If a patient could just walk into the surgery, a doctor could overlook a wide range of illnesses. But, how could this process of elimination be applied to nerve cells? Where could the wealth of knowledge be stored?</p>
<p>Combinatorial coding</p>
<p>The mind received kaleidoscopic combinations of millions of sensations. Of these, smells were reported to be recognized through a combinatorial coding process, where nerve cells recognized combinations. If a nerve cell had dendritic inputs, identified as A, B, C and so on to Z, it could then fire, when it received inputs at ABC, or DEF. It recognized those combinations. The cell could identify ABC and not ABD. It would be inhibited for ABD. This recognition process was recently reported by science for olfactory neurons. In the experiment scientists reported that even slight changes in chemical structure activated different combinations of receptors. Thus, octanol smelled like oranges, but the similar compound octanoic acid smelled like sweat. A Nobel Prize acknowledged that discovery in 2004.</p>
<p>Galactic nerve cell memories</p>
<p>Combinatorial codes were extensively used by nature. The four &#8220;letters&#8221; in the genetic code – A, C, G and T – were used in combinations for the creation of a nearly infinite number of genetic sequences. IA discusses the deeper implications of this coding discovery. Animals could differentiate between millions of smells. Dogs could quickly sniff a few footprints of a person and determine accurately which way the person was walking. The animal&#8217;s nose could detect the relative odour strength difference between footprints only a few feet apart, to determine the direction of a trail. Smell was identified through remembered combinations. If a nerve cell had just 26 inputs from A to Z, it could receive millions of possible combinations of inputs. The average neuron had thousands of inputs. For IA, millions of nerve cells could give the mind galactic memories for combinations, enabling it to recognize subtle patterns in the environment. Each cell could be a single member of a database, eliminating it (becoming inhibited) for unrecognized combinations of inputs.</p>
<p>Elimination the key</p>
<p>Elimination was the special key, which evaluated vast combinatorial memories. Medical texts reported that the mind had a hierarchy of intelligences, which performed dedicated tasks. For example, there was an association region, which recognized a pair of scissors using the context of its feel. If you injured this region, you could still feel the scissors with your eyes closed, but you would not recognize it as scissors. You still felt the context, but you would not recognize the object. So, intuition could enable nerve cells in association regions to use perception to recognize objects. Medical research reported many such recognition regions.</p>
<p>Serial processing</p>
<p>A pattern recognition algorithm, intuition enabled the finite intelligences in the minds of living things to respond holistically within the 20 millisecond time span. These intelligences acted serially. The first intelligence converted the kaleidoscopic combinations of sensory perceptions from the environment into nerve impulses. The second intelligence recognized these impulses as objects and events. The third intelligence translated the recognized events into feelings. A fourth translated feelings into intelligent drives. Fear triggered an escape drive. A deer bounded away. A bird took flight. A fish swam off. While the activities of running, flying and swimming differed, they achieved the same objective of escaping. Inherited nerve cell memories powered those drives in context.</p>
<p>The mind – seamless pattern recognition</p>
<p>Half a second for a 100 billion nerve cells to use context to eliminate irrelevance and deliver motor output. The time between the shadow and the scream. So, from input to output, the mind was a seamless pattern recognition machine, powered by the key secret of intuition – contextual elimination, from massive acquired and inherited combinatorial memories in nerve cells.</p>
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		<title>General Information on Spy Cameras</title>
		<link>http://www.aiproject.org/general-information-on-spy-cameras</link>
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		<pubDate>Tue, 27 Oct 2009 11:00:13 +0000</pubDate>
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		<category><![CDATA[Spy]]></category>

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		<description><![CDATA[Spy cameras at first referred to the tiny James Bond style cameras that might be hidden in a pen or a tie. Even though the word still can be helpful to those types of cameras, more and more people are using &#8220;spy cameras&#8221; to signify hidden video surveillance cameras such as nanny cameras.
A lot of [...]]]></description>
			<content:encoded><![CDATA[<p>Spy cameras at first referred to the tiny James Bond style cameras that might be hidden in a pen or a tie. Even though the word still can be helpful to those types of cameras, more and more people are using &#8220;spy cameras&#8221; to signify hidden video surveillance cameras such as nanny cameras.</p>
<p>A lot of people are making use of video surveillance as assets for their house safety measures plan. Spy cameras single-handedly are not sufficient to keep thief out, but they are capable to be used in combination like<span id="more-37"></span></p>
<p>• Rock-solid door and window with modernized locks • Window and door sensor • An alarm arrangement turned on using a remote. If you be able to pay for it, a system observed by a remote safekeeping monitoring company is also a superior idea.</p>
<p>A lot of people prefer to make use of these miniature cameras so as to lookout in opposition to burglary from identified visitors. You may possibly as well be paying attention in inspecting somebody who is taking care of your children or an elderly family member to make sure the be worried is up to snuff. As well, it&#8217;s an additional bit of piece of mind; If for hardly any reason a thief pass over your home safety system, they might not observe the hidden camera that is activated to start recording when it senses movement in the room&#8230;</p>
<p>At present, it&#8217;s a little risky as to whether to use or not to use spy camera recording is permissible as proof in a court of law, but advance in technology that are improving the accurateness and feature of these tiny spy cameras will almost certainly start giving them superior trustworthiness as facts.</p>
<p>Step up of technology over the last 10 years have lend a hand to reduce the dimension of spy cameras while the resolution and correctness of their recording has augmented. Nowadays spy cameras are able to be concealed in approximately several household items, although it&#8217;s most excellent to utilize somewhat that previously has a power cord</p>
<p>That way, you be able to maintain the camera operating 24/7 with no disturbance. It&#8217;s also simple for you to shift the camera from position to position with no necessity of drill holes into the wall.</p>
<p>This is in general a enhanced method to go for than putting a spy camera in a soft toy or additional stuffed animal as it would moreover necessitate to be battery operated or you would be limited .The price of spy cameras has as well drop down considerably. Whereas once video surveillance was merely something huge business or well-off consumers might pay for, at present it is reasonably priced. A spy camera system is able to be set of connections with as small as a web cam and a home PC.</p>
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		<title>I, Robot [Blu-ray]</title>
		<link>http://www.aiproject.org/i-robot-blu-ray</link>
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		<pubDate>Sun, 11 Oct 2009 12:55:48 +0000</pubDate>
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				<category><![CDATA[Product Review]]></category>
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			<content:encoded><![CDATA[<p style="text-align: justify;"><div class="wp-caption alignleft" style="width: 150px">&#8220;]<a href="http://aiproject.org/ArtificialIntelligenceMovie-284507-B0012GVKVY-I_Robot_Blu_ray.html"><img title="I, Robot [Blu-ray]" src="http://ecx.images-amazon.com/images/I/51fmi82JuqL._SL160_.jpg" alt="I, Robot [Blu-ray]" width="140" height="160" /></a><p class="wp-caption-text">I, Robot [Blu-ray</p></div>Superstar Will Smith rages against the machines in this mind-blowing, sci-fi action thriller! In the year 2035, technology and robots are a trusted part of everyday life. But that trust is broken when a scientist (James Cromwell) is found dead and a cynical detective (Smith) believes that an advanced robot may be responsible.</p>
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		<title>Scope of Artificial Intelligence in Business</title>
		<link>http://www.aiproject.org/scope-of-artificial-intelligence-in-business-2</link>
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		<pubDate>Tue, 08 Sep 2009 16:49:55 +0000</pubDate>
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		<description><![CDATA[
Scope of artificial Intelligence in Business
 
Introduction
 
Business applications utilize the specific technologies mentioned earlier to try and make better sense of potentially enormous variability (for example, unknown patterns/relationships in sales data, customer buying habits, and so on). However, within the corporate world, AI is widely used for complex problem-solving and decision-support techniques in real-time [...]]]></description>
			<content:encoded><![CDATA[<p style="text-align: justify;">
<div id="attachment_33" class="wp-caption alignleft" style="width: 239px"><img class="size-medium wp-image-33" title="artificial.intelligence" src="http://www.aiproject.org/wp-content/uploads/2009/09/artificial.intelligence-229x300.jpg" alt="artificial.intelligence" width="229" height="300" /><p class="wp-caption-text">artificial.intelligence</p></div>
<p>Scope of artificial Intelligence in Business<br />
<strong> <span style="text-decoration: underline;"><br />
Introduction<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
Business applications utilize the specific technologies mentioned earlier to try and make better sense of potentially enormous variability (for example, unknown patterns/relationships in sales data, customer buying habits, and so on). However, within the corporate world, AI is widely used for complex problem-solving and decision-support techniques in real-time business applications. The business applicability of AI techniques is spread across functions ranging from finance management to forecasting and production. <span id="more-32"></span><br />
In the fiercely competitive and dynamic market scenario, decision-making has become fairly complex and latency is inherent in many processes. In addition, the amount of data to be analyzed has increased substantially. AI technologies help enterprises reduce latency in making business decisions, minimize fraud and enhance revenue opportunities.<br />
<strong> <span style="text-decoration: underline;"><br />
Definition of AI<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
AI is a broad discipline that promises to simulate numerous innate human skills such as automatic programming, case-based reasoning, neural networks, decision-making, expert systems, natural language processing, pattern recognition and speech recognition etc. AI technologies bring more complex data-analysis features to existing applications.<br />
There are many definitions that attempt to explain what Artificial Intelligence (AI) is. I like to think of AI as a science that investigates knowledge and intelligence, possibly the intelligent application of knowledge. Knowledge and Intelligence are as fundamental as the universe within which they exist, it may turn out that they are more fundamental.<br />
One of the aims of AI is said to be the investigation of human cognition and AI is part of Cognitive Science. AI is really an investigation into the creation of intelligence and that there is no reason for the intelligence that is created to be exactly the same as human intelligence.<br />
<strong> <span style="text-decoration: underline;"><br />
Importance of AI<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
Enterprises that utilize AI-enhanced applications are expected to become more diverse, as the needs for the ability to analyze data across multiple variables, fraud detection and customer relationship management emerge as key business drivers to gain competitive advantage.<br />
Artificial Intelligence is a branch of Science which deals with helping machines, finds solutions to complex problems in a more human-like fashion. This generally involves borrowing characteristics from human intelligence, and applying them as algorithms in a computer friendly way. A more or less flexible or efficient approach can be taken depending on the requirements established, which influences how artificial the intelligent behavior appears.<br />
AI is generally associated with Computer Science, but it has many important links with other fields such as Maths, Psychology, Cognition, Biology and Philosophy, among many others. Our ability to combine knowledge from all these fields will ultimately benefit our progress in the quest of creating an intelligent artificial being.<br />
<strong> <span style="text-decoration: underline;"><br />
Emergence of AI in business<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
Artificial Intelligence (AI) has been used in business applications since the early eighties. As with all technologies, AI initially generated much interest, but failed to live up to the hype. However, with the advent of web-enabled infrastructure and rapid strides made by the AI development community, the application of AI techniques in real-time business applications has picked up substantially in the recent past.<br />
Computers are fundamentally well suited to performing mechanical computations, using fixed programmed rules. This allows artificial machines to perform simple monotonous tasks efficiently and reliably, which humans are ill-suited to. For more complex problems, things get more difficult&#8230; Unlike humans, computers have trouble understanding specific situations, and adapting to new situations. Artificial Intelligence aims to improve machine behavior in tackling such complex tasks.<br />
Together with this, much of AI research is allowing us to understand our intelligent behavior. Humans have an interesting approach to problem-solving, based on abstract thought, high-level deliberative reasoning and pattern recognition. Artificial Intelligence can help us understand this process by recreating it, then potentially enabling us to enhance it beyond our current capabilities.<br />
<strong> <span style="text-decoration: underline;"><br />
Applications of AI<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
The potential applications of Artificial Intelligence are abundant. They stretch from the military for autonomous control and target identification, to the entertainment industry for computer games and robotic pets, to the big establishments dealing with huge amounts of information such as hospitals, banks and insurances, we can also use AI to predict customer behavior and detect trends.<br />
AI is a broad discipline that promises to simulate numerous innate human skills such as automatic programming, case-based reasoning, decision-making, expert systems, natural language processing, pattern recognition and speech recognition etc. AI technologies bring more complex data-analysis features to existing applications.<br />
Business applications utilize the specific technologies mentioned earlier to try and make better sense of potentially enormous variability (for example, unknown patterns/relationships in sales data, customer buying habits, and so on). However, within the corporate world, AI is widely used for complex problem-solving and decision-support techniques in real-time business applications. The business applicability of AI techniques is spread across functions ranging from finance management to forecasting and product<br />
<strong> <span style="text-decoration: underline;"><br />
Artificial Neural Networks<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
An artificial neural network (ANN), often just called a &#8220;neural network&#8221; (NN), is a mathematical model or computational model based on biological neural networks. It consists of an interconnected group of artificial neurons and processes information using a connectionist approach to computation. In most cases an ANN is an adaptive system that changes its structure based on external or internal information that flows through the network during the learning phase. In more practical terms neural networks are non-linear statistical data modeling tools. They can be used to model complex relationships between inputs and outputs or to find patterns in data.</p>
<p><strong> <span style="text-decoration: underline;"><br />
Real life applications of ANN<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
The tasks to which artificial neural networks are applied tend to fall within the following broad categories:<br />
•	Function approximation, or regression analysis, including time series prediction and modeling.<br />
•	Classification, including pattern and sequence recognition, novelty detection and sequential decision making.<br />
•	Data processing, including filtering, clustering, blind source separation and compression.<br />
Application areas include system identification and control (vehicle control, process control), game-playing and decision making (backgammon, chess, racing), pattern recognition (radar systems, face identification, object recognition and more), sequence recognition (gesture, speech, handwritten text recognition), medical diagnosis, financial applications (automated trading systems), data mining (or knowledge discovery in databases, &#8220;KDD&#8221;), visualization and e-mail spam filtering.<br />
The proven success of Artificial Neural Networks (ANN) and expert systems has helped AI gain widespread adoption in enterprise business applications. In some instances, such as fraud detection, the use of AI has already become the most preferred method. In addition, neural networks have become a well-established technique for pattern recognition, particularly of images, data streams and complex data sources and, in turn, have emerged as a modeling backbone for a majority of data-mining tools available in the market. Some of the key business applications of AI/ANN include fraud detection, cross-selling, customer relationship management analytics, demand prediction, failure prediction, and non-linear control.<br />
A majority of the enterprises adopt horizontal or vertical solutions that embed neural networks such as insurance risk assessment or fraud-detection tools, or data-mining tools that include neural networks (for instance, from SAS, IBM and SPSS) as one of the modeling options.<br />
Artificial Intelligence in Manufacturing<br />
As the manufacturing industry becomes increasingly competitive, sophisticated technology has emerged to improve productivity. Artificial Intelligence in manufacturing can be applied to a variety of systems. It can recognize patterns, plus perform time consuming and mentally challenging tasks. Artificial Intelligence can optimize your production schedule and production runs. In order for organizations to meet ever increasing customer demands, and to be able to survive in an environment where change is inevitable, it is crucial that they offer more reliable delivery dates and control their costs by analyzing them on a continual basis. For businesses, being capable of delivering high quality goods at low costs and short delivery times is akin to operating in a whirlpool environment like the Devil&#8217;s Triangle, and this is no easy task for any organization. Managing so that production takes place at the right time, on the right equipment, and using the right tools will minimize any deviations in delivery dates promised to the customer. Utilizing equipment, personnel and tools to their maximal efficiency will no doubt improve any organization&#8217;s competitive strength. In return, proper utilization of these capabilities will result in lower costs for the organization<br />
Optimal scheduling of jobs on equipment, without the use of computer software, is a truly difficult undertaking. Performing planning using the &#8220;Deterministic Simulation Method&#8221; will provide you with schedules that will indicate job loads per equipment. Even in the case limited to a single piece of equipment, as the number of jobs to schedule on that equipment increases, finding the right solution in the &#8220;Possible Solutions Set&#8221; becomes next to impossible. And in the real world, the difficulties arising from the large size of the solutions set due to the recipes formed by jobs, equipment and products, and shaped by the technological restrictions, as well as the complexity in finding a close to ideal solution, are readily apparent.<br />
Research and studies are being conducted worldwide on the subject of scheduling. Software vendors working in this area follow developments closely, and they are coming out with new products to better meet demands. &#8220;Genetic Algorithms&#8221;, &#8220;Artificial Intelligence&#8221;, and &#8220;Neural Networks&#8221; are some of the technologies being used for scheduling<br />
<strong> <span style="text-decoration: underline;"><br />
Advantages<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
•	View your best product runs and the corresponding settings.<br />
•	Increase efficiency and quality by using optimal settings from past production.<br />
•	Artificial Intelligence can optimize your schedule beyond normal human capabilities.<br />
•	Increase productivity by eliminating downtime due to unpredictable changes in the schedule.</p>
<p><strong> <span style="text-decoration: underline;"><br />
Artificial Intelligence in Financial services<br />
</span></strong><span style="text-decoration: underline;"> </span><br />
AI has found a home in financial services and is recognized as a valuable addition to numerous business applications. Sophisticated technologies encompassing neural networks and business rules along with AI-based techniques are yielding positive results in transaction-oriented scenarios for financial services. AI has been widely adopted in such areas of risk management, compliance, and securities trading and monitoring, with an extension into customer relationship management (CRM). Tangible benefits of AI adoption include reduced risk of fraud, increased revenues from existing customers due to newer opportunities, avoidance of fines stemming from non-compliance and averted securities trade exceptions that could result in delayed settlement, if not detected.<br />
Warren Buffet is known as the ultimate investor in this age. So good is he, in fact, that artificial intelligence software developed in Carnegie Mellon that predicts stock movements was named after him by. But can machines really take the place of human traders, much less surpass them? When Deep Blue defeated Chess Grandmaster Kasparov in 1997, AI was propelled into the limelight. Indeed, if a machine can whiz through the intricacies of the ultimate game of strategy, why not beat man in other fields as well – thereby facilitating work, decreasing costs and errors and increasing productivity and quality. This study focuses on applying AI in Finance, particularly in stock trading. In the field of Finance, artificial intelligence has long been used. Some applications of Artificial Intelligence are<br />
•	Credit authorization screening<br />
•	Mortgage risk assessment<br />
•	Project management and bidding strategy<br />
•	Financial and economic forecasting<br />
•	Risk rating of exchange-traded, fixed income investments<br />
•	Detection of regularities in security price movements<br />
•	Prediction of default and bankruptcy<br />
•	Security/and or Asset Portfolio Management<br />
Artificial intelligence types used in finance include neural networks, fuzzy logic, genetic algorithms, expert systems and intelligent agents. They are often used in combination with each other. When AI first appeared a decade ago, it generated mass media hype but delivered inconsistent results. A number of those who praised its ability were paralyzed in the end. One such case is Fidelity Investments. In this paper, we set the stage by describing how traditional stock trading differs from AI-powered stock trading. We define the various AI systems available and also explore the various solutions available in the market, their IT foundations and how salient they are. Then, we move into how AI systems for stock trading will affect traders, companies and individuals. Benefits, risks and competitive strategy will be defined and real-world examples cited, as grounding for our recommendations in the end. Recommendations include getting management buy-in, implementing the system and managing the whole structure to succeed.</p>
<p><strong> <span style="text-decoration: underline;"><br />
Artificial Intelligence in Marketing<br />
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Advances in artificial intelligence (AI) eventually could turbo-boost customer analytics to give companies speedier insights into individual buying patterns and a host of other consumer habits.<br />
Artificial intelligence functions are made possible by computerized neural networks that simulate the same types of connections that are made in the human brain to generate thought. Currently, the technology is used mostly to analyze data for genetics, pharmaceutical and other scientific research. It&#8217;s seeing little use in CRM right now, though it has tremendous potential in the future<br />
AI-enhanced analytics programs also provide survival modeling capabilities &#8212; suggesting changes to products based on use. For example, customer patterns are analyzed to learn ways to extend the life of light bulbs or to help decide the correct dosage for medications.<br />
High-tech data mining can give companies a precise view of how particular segments of the customer base react to a product or service and propose changes consistent with those findings. In addition to further exploring customers&#8221; buying patterns, analytics could help companies react much more quickly to the marketplace.<br />
According to Meta Group vice president Liz Shahnam, intelligent agents could let companies make real-time changes to marketing campaigns. &#8220;New technologies would have the model refreshed on the fly based on each new incoming piece of customer information &#8212; reaction to the campaign &#8212; for a more targeted offer,&#8221;<br />
<strong> <span style="text-decoration: underline;"><br />
Artificial Intelligence in HR<br />
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It is widely believed that the role of managers is becoming a key determinant for enterprises&#8217; competitiveness in today&#8217;s knowledge economy era. Owing to fast development of information technologies (ITs), corporations are employed to enhance the capability of human resource management, which is called human resource information system (HRIS). Recently, due to promising results of artificial neural networks (ANNs) and fuzzy theory in engineering, they have also become candidates for HRIS. The artificial intelligence (AT) field can play a role in this, especially; in assuring that the fuzzy neural network has the characteristics and functions of training, learning, and simulation to make an optimal and accurate judgment according to the human thinking model. The main purposes of the study are to discuss the appointment of managers in enterprises through fuzzy neural network, to construct a new model for evaluation of managerial talent, and accordingly to develop a decision support system in human resource selection. Therefore, the research methods of reviewing literature, in-depth interview, questionnaire survey, and fuzzy neural network are used in the study. The fuzzy neural network is used to train the concrete database, based on 191 questionnaires from experts, for getting the best network model in different training conditions. In order to let decision-makers adjust weighted values and obtain decisive results of each phase&#8217;s scores, we adopted the simple additive weighting (SAW) and fuzzy analytic hierarchy process (FAHP) methods in the study. Finally, the human resource selection system of Java user interface has been constructed by FNN in the study.</p>
<p><strong> <span style="text-decoration: underline;"><br />
Conclusion<br />
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It is difficult for business to see general relevance from AI. This is probably one of the reasons for the compartmentalization of AI into things like Knowledge Based Systems, Neural Networks, and Genetic Algorithms etc. Some of these separate sub topics have been shown to be very useful in solving certain difficult business and industrial problems and consequently funding bodies influence research directions by encouraging work on these more application based areas. This can have a positive effect for business benefit and has lead to some very useful systems that have found their way into the heart of business activity. Business should not lose sight of where AI could go because there are many potential benefits to current and new businesses of future research. The idea of robotic domestic workers is still far fetched but companies are making progress even here. There is already a Robot Vacuum Cleaner marketed by Electrolux and doubtless improved systems with better functionality will follow. .<br />
I would like to close by quoting from Tom Peters, a leading management guru: &#8220;When you think you&#8217;ve reached the top, tear down everything and do it all over again. If you don&#8217;t, your competitor will.&#8221; To this, I would like to add my own: &#8220;If your competitor won&#8217;t, new investors will enter the market segment who will do the same job better.&#8221;</p>
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