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Aryia-Behroziuan/Other-sources

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They work, but they work by brute force." (p. 198.) Domingos, Pedro, "Our Digital Doubles: AI will serve our species, not control it", Scientific American, vol. 319, no. 3 (September 2018), pp. 88–93. Gopnik, Alison, "Making AI More Human: Artificial intelligence has staged a revival by starting to incorporate what we know about how children learn", Scientific American, vol. 316, no. 6 (June 2017), pp. 60–65. Johnston, John (2008) The Allure of Machinic Life: Cybernetics, Artificial Life, and the New AI, MIT Press. Koch, Christof, "Proust among the Machines", Scientific American, vol. 321, no. 6 (December 2019), pp. 46–49. Christof Koch doubts the possibility of "intelligent" machines attaining consciousness, because "[e]ven the most sophisticated brain simulations are unlikely to produce conscious feelings." (p. 48.) According to Koch, "Whether machines can become sentient [is important] for ethical reasons. If computers experience life through their own senses, they cease to be purely a means to an end determined by their usefulness to... humans. Per GNW [the Global Neuronal Workspace theory], they turn from mere objects into subjects... with a point of view.... Once computers' cognitive abilities rival those of humanity, their impulse to push for legal and political rights will become irresistible – the right not to be deleted, not to have their memories wiped clean, not to suffer pain and degradation. The alternative, embodied by IIT [Integrated Information Theory], is that computers will remain only supersophisticated machinery, ghostlike empty shells, devoid of what we value most: the feeling of life itself." (p. 49.) Marcus, Gary, "Am I Human?: Researchers need new ways to distinguish artificial intelligence from the natural kind", Scientific American, vol. 316, no. 3 (March 2017), pp. 58–63. A stumbling block to AI has been an incapacity for reliable disambiguation. An example is the "pronoun disambiguation problem": a machine has no way of determining to whom or what a pronoun in a sentence refers. (p. 61.) E McGaughey, 'Will Robots Automate Your Job Away? Full Employment, Basic Income, and Economic Democracy' (2018) SSRN, part 2(3) Archived 24 May 2018 at the Wayback Machine. George Musser, "Artificial Imagination: How machines could learn creativity and common sense, among other human qualities", Scientific American, vol. 320, no. 5 (May 2019), pp. 58–63. Myers, Courtney Boyd ed. (2009). "The AI Report" Archived 29 July 2017 at the Wayback Machine. Forbes June 2009 Raphael, Bertram (1976). The Thinking Computer. W.H.Freeman and Company. ISBN 978-0-7167-0723-3. Archived from the original on 26 July 2020. Retrieved 22 August 2020. Scharre, Paul, "Killer Apps: The Real Dangers of an AI Arms Race", Foreign Affairs, vol. 98, no. 3 (May/June 2019), pp. 135–44. "Today's AI technologies are powerful but unreliable. Rules-based systems cannot deal with circumstances their programmers did not anticipate. Learning systems are limited by the data on which they were trained. AI failures have already led to tragedy. Advanced autopilot features in cars, although they perform well in some circumstances, have driven cars without warning into trucks, concrete barriers, and parked cars. In the wrong situation, AI systems go from supersmart to superdumb in an instant. When an enemy is trying to manipulate and hack an AI system, the risks are even greater." (p. 140.) Serenko, Alexander (2010). "The development of an AI journal ranking based on the revealed preference approach" (PDF). Journal of Informetrics. 4 (4): 447–459. doi:10.1016/j.joi.2010.04.001. Archived (PDF) from the original on 4 October 2013. Retrieved 24 August 2013. Serenko, Alexander; Michael Dohan (2011). "Comparing the expert survey and citation impact journal ranking methods: Example from the field of Artificial Intelligence" (PDF). Journal of Informetrics. 5 (4): 629–649. doi:10.1016/j.joi.2011.06.002. Archived (PDF) from the original on 4 October 2013. Retrieved 12 September 2013. Sun, R. & Bookman, L. (eds.), Computational Architectures: Integrating Neural and Symbolic Processes. Kluwer Academic Publishers, Needham, MA. 1994. Tom Simonite (29 December 2014). "2014 in Computing: Breakthroughs in Artificial Intelligence". MIT Technology Review. Tooze, Adam, "Democracy and Its Discontents", The New York Review of Books, vol. LXVI, no. 10 (6 June 2019), pp. 52–53, 56–57. "Democracy has no clear answer for the mindless operation of bureaucratic and technological power. We may indeed be witnessing its extension in the form of artificial intelligence and robotics. Likewise, after decades of dire warning, the environmental problem remains fundamentally unaddressed.... Bureaucratic overreach and environmental catastrophe are precisely the kinds of slow-moving existential challenges that democracies deal with very badly.... Finally, there is the threat du jour: corporations and the technologies they promote." (pp. 56–57.)

⭐ 34 | 🍴 8
GitHub

mishtudeep/Face-Recognition-Based-Attendance-Moniroeing-System

Facial recognition could soon jump from your smartphone to your workplace with employers using it to mark attendance and gauge the mood of the workforce.Every day, corporate offices and institutes are working to increase the productive working hours in a day. When the current system of clocking in daily using a fingerprint scanner is a time-consuming and inefficient use of time. I have planned to design a Voice Interactive Face Detection Based Smart Attendance management and behavior analysis to ensure a better work culture and environment,efficiency in a secure manner using Intel dev cloud. Currently, we have fingerprint and Smart-card Based entries in nearly all offices and a few schools and colleges. These system then automates the calculation of salary or attendance percentage.But fingerprint scanning and smart card barcode entries tend to take up time and prove to also be imperfect. In contrast, Face Recognition method provides a unique feature for every individual which is stored in a central database and can be retrieved during recognition and validation. The system includes an embedded application deployed in a SCB( Single Board Computer) which can interact with the users in real time. It will take down in and out time of every employee and monitor their working behavior(future scope) and notify the corresponding employee and the authority at times. We are aiming to analyze people's behavior,mood and emotions by monitoring and studying their actions in real time which in turn will help the organization know about the physical and mental status of the employees. This process of direct integration of physical world into computer vision based systems will indeed result in efficiency improvements, economic benefits and reduced human exertions. As of now I have developed a basic voice interactive attendance monitoring using Jupyter Notebook on Intel dev cloud. The in and out time (including mid in and out) will be monitored in Google spreadsheet and the system will calculate how many hours an employee has spent in office premises. The system won’t allow employees to step into the office after a certain time and won’t consider the attendance if the total hours spent is less than four hours. Everyday a mail will be sent to the admin containing the attendance details of the employees. In future, I would like to implement behavior and mood analysis of the employees and the staff on the office premises which in turn will help the concerned staff provide with solutions to get over the listless mood or erratic behavior.

⭐ 22 | 🍴 5
GitHub

AyushmanTyagi/Decentralized-Finance-It-s-use-cases

Decentralized Finance & It's use cases- DeFi (Decentralized Finance) Another open-world approach to the current financial system. Products that allow you to borrow, save, invest, trade, and more. Based on open source technology anyone can plan with. DeFi is an open and global financial system that has been built for years - another way of being a sharp, tightly managed, and cohesive system of decades-old infrastructure and processes. It gives you more control and visibility than your money. It gives you exposure to global markets and other options for your local currency or banking options. DeFi products open financial services to anyone with an internet connection and are highly managed and maintained by their users. To date, tens of billions of dollars worth of crypto have gone through DeFi applications and is growing every day. What is DeFi? DeFi is an integrated name for financial products and services accessible to anyone who can use Ethereum - anyone with an Internet connection. With DeFi, markets remain open and no central authorities can block payments or deny you access to anything. Services that used to be slow and vulnerable to human error are now automated and secure as they are governed by a code that anyone can check and evaluate. There is a thriving crypto-economy out there, where you can borrow, borrow, length / short, earn interest, and more. Crypto-savvy Argentinians have used DeFi to escape inflation. Companies have begun distributing their pay to their employees in real-time. Some people even withdraw and repay loans worth millions of dollars without the need for personal information. DeFi vs Traditional Finance One of the best ways to see the power of DeFi is to understand the problems that exist today. Some people are not given access to setting up a bank account or using financial services. Lack of access to financial services can prevent people from being employed. Financial services can prevent you from paying. Hidden payment for financial services is your data. Governments and private institutions can close markets at will. Trading hours are usually limited to one-hour business hours. Transfers may take days due to personal processes. There is a premium for financial services because mediation institutions require their cutting. DeFi Use Cases DeFi has revolutionized the financial world over the past few years. This new approach to financial planning can transcend asset systems through efficiency and security. It is true that there are certain dangers in DeFi but those are within the concrete limits. Let's take a look at the most effective DeFi usage cases - Asset Management One of DeFi's biggest effects is that users can now enjoy more control over their assets. Many DeFi projects provide solutions that allow users to manage their assets, including - buying, selling, and transferring digital assets. Therefore, users can also earn interest on their digital assets. Contrary to the traditional financial system, DeFi allows users to maintain the privacy of their sensitive information. Think of the secret keys or passwords of your financial accounts - you should have shared that information with the appropriate organizations beforehand. Now, different DeFi projects, such as Metamask, Argent, or Gnosis Safe help users encrypt and store those pieces of information on their devices. This ensures that only users have access to their accounts and can manage their assets. Therefore, asset management is one of the most widely used financial services cases for users. Compliance with AML and CFT Rates through the KYT Mechanism Traditional financial systems focus heavily on Know-Your-Customer (KYC) agreements. KYC Guidelines are its major law enforcement tool for using Anti-Money Laundering (AML) and Countering-the-Financing-of-Terrorism (CFT) standards. However, KYC guidelines often conflict with DeFi's privacy efforts. DeFi responds to this problem with a new concept called the Know-Your-Transaction (KYT) mechanism. This approach suggests that low-level infrastructure will focus on ethical behavior for digital addresses rather than user considerations. Therefore, KYT solves two issues simultaneously - monitoring real-time operations and ensuring user privacy. This makes KYT one of the biggest gaps in low-cost cases. Non-Governmental Organizations or DAOs The DAOs are partners of the central financial institutions of DeFi - making it one of the pillars of low-income finance cases. In the traditional system, central financial institutions play a major role. These organizations operate as administrative institutions that regulate basic financial operations, such as monetization, asset management, administrative utilization, etc. The Ethereum blockchain echerestem has introduced empowered organizations to achieve the same goals. However, DAOs are naturally empowered and do not conform to the limits set by central governments or authorities. Analysis and Risk Tools Transparency and redistribution of world power have opened the way for the discovery and analysis of unprecedented user data. With access to this information, users can make informed business decisions, discover new financial opportunities, and implement better risk management strategies. A new type of data analytics with useful blockchain tools and dashboards has emerged in this industry trend. DeFi projects such as DeFi Pulse or CoDeFi Data bring an impressive amount of analytics and risk management tool. Now, businesses are moving faster as they enjoy unpredictable competitive advantages. This is certainly one of the most widely used financial cases. Receivables and Manufacturing Goods Smart contracts allow for the receipt of token receipts and have become one of the most distinctive scenarios for DeFi use. Making a token further means setting a contract value based on the underlying financial asset or set of assets. This underlying financial asset acts as a security measure, which means it can include - bonds, fiat currencies, commodities, market indicators, interest rates, or stock prices. Now, the issuance of outgoing tokens is a secondary security and their value varies with the number of key securities (bonds or fiat money). Thus, the output actually creates artificial goods. Synthetix and dYdX are some of the leading DeFi projects focused on token acquisitions. Network Infrastructure Effect In a DeFi ecosystem, objects within the system can connect and interact. This design feature is known as integration and serves as a protocol for infrastructure development. As a result, DeFi projects are continuously integrated with the network result. Infrastructure tools for use of DeFi applications are remarkable. Various DeFi projects, such as TruffleSuite or InfuraAPI, are good examples in this case. Enhanced Digital ID Blockchain-based identity system systems are already gaining a lot of attention in recent times. Pairing DeFi programs with these patent systems can help people access the global economic system. The traditional method rewards personal income or assets collected as credit providers. With digital identity paired with DeFi, you may be looking for other practical attributes, such as - financial services or professional ability. This new type of digital ID can help the poor to access DeFi apps from any internet connection. It can certainly be one of the cases of possible use. Insurance Insurance is one of the largest financial institutions and has already been proven to be one of the biggest charges for using DeFi. The current insurance system is crowded with paperwork, old audit plans, and bureaucratic insurance claim processes. With the successful implementation of smart contracts, all these problems with the current system can be solved. Many DeFi projects (Nexus Mutual, Opyn, and VouchForMe) provide blockchain access to insurance against DeFi or contract risk. P2P borrowing and borrowing As DeFi bids farewell to traditional banking systems, a space for the lending and lending market has emerged. Therefore, borrowing and lending is one of the most important aspects of using DeFi. However, the DeFi ecosystem is well suited for peer-to-peer (P2P) borrowing and lending efforts. Many DeFi projects have already entered the market focusing on this particular application case. Among these programs, Compound and PoolTogether are two well-known names. These projects have independent policies for lending and lending. Payment Solutions One of DeFi's top drivers was serving non-bankers or understated banks from the get-go. DeFi's natural features make it ideal for solving the problems of current global payment systems. DeFi provides fast, secure, and transparent solutions compared to asset systems. As DeFi lowers the demand for intermediaries, making payments easier and more transparent, DeFi-based blockchain-based payment solutions can appeal to non-bankers.

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GitHub

Exampl33/Sovereign-Wealth-US

Economically Inclusive Models encourage the participation of local community labor through a holistic approach that includes skill development and the foundations of resource management which develops quality of life through wealth creation and the expansion of markets. Raw material is returned to the people in the form of new products. Throughout the course of human history, it has frequently become necessary for nations to dissolve and or restructure economic systems and adjust strategies which have proven to be ineffective in stimulating development, growth and economic prosperity as economies and times change technologically. When the policies are and continually becoming increasingly oppressive in nature and exist against the natural law and the psychology of human inspiration, and are only enforced through deception and the use of force by indoctrinated constituencies, they begin to separate people from their natural desires to achieve, thrive, and prosper. Often economic development and social programs are implemented under the guise of prosperity only to be concealing the true intent of enslavement for the populace and a theft of resources. This is in defiance of the power of truth which is based on the laws of nature and of nature's right to full expression of humanity, which God entitles to all men and women. This deception is fraudulent and criminal in nature and is the equivalent of murder, for it robs humanity of its right to self-actualization, cognizant development and the realization of self-worth. The main principle behind the current economic agenda being implanted throughout the world in an effort to bring about a new economic world order, is a belief that the effective use of force and the stringent control of natural resources is the key to creating and maintaining economic power and further serves to manipulate markets by creating fictional gaps in supply and demand. This 'order out of chaos' model has been a standard for centuries. The problem is that it is based on the principles of suppression and oppression, which are implemented and maintained using force and highly supported with deception through disinformation, propaganda and oppressive operations aimed at reducing the natural expression of humanity, freedom, and independence. This is a sign of fear and incompetence stemming from the conditioning of the past age of scarcity by those in power because it is inconsistent with natural law, which supports full expression as a means of achievement. Natural power relies on truth and does not require deception to be maintained. It stands on its own accord. Power encourages a population to achieve self-actualization and economic prosperity which is reflective of a strong middle class, economic and social growth as well as development. It is a natural spiritual expression in alignment with truth and does not require manipulation to be maintained. On the other hand, there is no positive natural expression for force as it is inherently weaker and short term, its goal is to hinder the natural power of the people from being fully expressed. This is a lower spiritual form of thought and achievement that is inherently inferior to just power and is only sustained through deceptive practices. It essentially further weakens its followers & leaders and subsequently results in wide disparities of wealth and the elimination of the middle class that is necessary to maintain stability and economic growth, especially in a consumer based economy. The belief that people need to be largely suppressed is highly limiting to a society and ensures a lower expression of associated economic achievement inhibiting humanities growth and development on all levels. More specifically it inhibits the development of free creative minds, their contributions of intellectual property and innovation. The irresponsible use of natural resources is equally discouraging. We are blessed with an abundance of agricultural land, potential energy sources from wind, solar, geothermal, wave & or tidal power and vast basic materials such as cement, brick, wood, and rock that would easily address any structural and infrastructural needs. What is lacking is proper accounting and utilization of the vast natural resources readily available and the reliance on utilizing goods and services that could easily be provided in the local market rather than relying on imports. Years of war and internal conflict have created a gap in productive and practical knowledge in many regions of the world. This knowledge gap can be reconciled through the incorporation of trade schools that emphasize the reduction of imports through the utilization of what is natural to the region, while cognizant of unintended environmental consequences (such as those of using good farming topsoil for mud bricks). Building and architecturally designing structures as well as much needed infrastructure with the concept of maximum utilization of the natural resources native to the region offering a common-sense solution to the vast imbalance of trade challenges in agriculture, materials, labor, management, and expertise. This would also allow for the use of mineral profits to be used to barter for higher goods that would enhance the quality of life rather than being allocated to provide for mere survival and resulting in continued dependence. The global economy although growing extensively in a number of sectors and regions is still oppressive in nature with significant barriers to entry and managed by an overburdened government and economic system that primarily operates to diminish the prospects of the peoples growth and focuses gains and bailouts on only a few elite. The means of gaining economic control through manipulative programing of the masses is essentially killing humanities best prospects for a shared prosperous future. It is equally discouraging to find education not matching the needs of the emerging technological environment. In regions, largely in a development mode, it is necessary to focus the majority of educational emphasis on developing trade schools that can instantly impact job growth and prosperity. Affecting positively these educational concerns in developing nations now, will yield significantly improved outcomes locally, regionally and beyond, further improving psychological perceptions globally. The idea that people need to be controlled and oppressed through negative conditioning that simply thwarts achievement and ambitions is a system doomed to fail. Nothing can be achieved in the current economic system described except for chaos and the limited order maintained through fear, deception, propaganda and the manipulation of the herd or collective mentality / perception. As a result of these policies that have been implemented worldwide, we now have a world that is largely a police state and unaware of truth or its own power due to a constant flow of manipulative disinformation and propaganda. This is a grand reflection of the use of force, deception, and oppression and we see its expression in the deterioration of our economic systems and basic freedoms inherent from God. Highlights The following demonstrates the financial projections of our five primary business models. Estimates do not take into account possibilities of above average returns with many investment options that we currently have at our disposal. 1. Logistics to include shipping, security, courier service and inclusive A to B deployment of human and other resources or assets. 2. Financial to include international developmental finance, banking & credit unions, insurance and brokerage of securities. 3. Commodities to include strategic minerals (rare earths), lumber, etc... 4. Consulting to include strategic government, intelligence, business and educational. 5. Investments to include unique platforms, vehicles, traditional models, land, infrastructure, research and development. ECONOMIC STIMULUS PLAN The Economic Stimulus plan - build... Further expansion of and clarity continues to be encouraged.

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