- karthikpandian19
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In 1958, Jack Kilby invented the integrated circuit and ushered in the modern computer era. For the first time, using a semiconductor substrate, complete electronic circuits could be miniaturized and mass produced, ultimately leading to the advent of affordable consumer electronics. Unlike discrete circuits, integrated circuits contain a large number of transistors over a relatively small area. A greater number of transistors per circuit allows for faster processing speeds and more memory. Since the early 1960s, advances in photolithography and miniaturization have led to a doubling every two years in the number of transistors that can be cheaply placed on a single integrated circuit. In 1970, a typical integrated circuit could hold around two thousand transistors. In 2008, that number reached two billion. This consistent exponential increase in transistors per circuit and the consequent parallel improvement in computer processing speed and memory has been dubbed "Moore's Law" in honor of computer scientist Gordon Moore, the man who identified the trend.
Perhaps the most marvelous aspect of Moore's Law is its consistency. When Moore and other computer scientists identified the trend in 1965, they believed that the steady doubling of transistors per circuit could not continue much longer than roughly ten years. Instead, the pattern has continued through five decades. Though there have been a number of predictions as to when the trend will finally cease, a broad consensus among engineers and scientists asserts that the trends associated with Moore's Law will finally die out just before 2020. According to these same experts, by then transistors will have become so small as to begin approaching the size of atoms, and at that point will no longer be capable of processing basic logic functions integral to a computer's performance.
Nevertheless, there is reason to believe that Moore's Law may continue decades into the future. Futurist and computer scientist Ray Kurzweil points out that the most important trend identified by Moore's Law is not the increasing number of transistors per integrated circuit, but rather the exponential growth in computing power relative to cost. He argues that even if manufacturers reached a natural physical limit for miniaturized and parallel processing integrated circuits, new technologies, such as quantum computers, could maintain power-to-cost ratio aspect of Moore's Law. Given the number of unexpected new technological paradigms that have invalidated predictions of Moore's Law's demise since the 1960s, there is reason to support such a conclusion.
It can be inferred that computer scientist Gordon Moore, after whom Moore's Law was named, believed that
(A) though there will likely be an upper limit to the number of transistors that can be placed on a single integrated circuit, technological innovation will prolong the trend he identified
(B) the consistent doubling of transistors per integrated circuit will likely end by the year 2020
(C) once transistors are successfully miniaturized to roughly the size of atoms, it will become impossible to further increase the number that can be integrated into a single circuit
(D) discrete circuits were not nearly as capable as integrated circuits in terms of processing speed and memory
(E) the trend he identified, while accurate, was only a temporary phenomena
Perhaps the most marvelous aspect of Moore's Law is its consistency. When Moore and other computer scientists identified the trend in 1965, they believed that the steady doubling of transistors per circuit could not continue much longer than roughly ten years. Instead, the pattern has continued through five decades. Though there have been a number of predictions as to when the trend will finally cease, a broad consensus among engineers and scientists asserts that the trends associated with Moore's Law will finally die out just before 2020. According to these same experts, by then transistors will have become so small as to begin approaching the size of atoms, and at that point will no longer be capable of processing basic logic functions integral to a computer's performance.
Nevertheless, there is reason to believe that Moore's Law may continue decades into the future. Futurist and computer scientist Ray Kurzweil points out that the most important trend identified by Moore's Law is not the increasing number of transistors per integrated circuit, but rather the exponential growth in computing power relative to cost. He argues that even if manufacturers reached a natural physical limit for miniaturized and parallel processing integrated circuits, new technologies, such as quantum computers, could maintain power-to-cost ratio aspect of Moore's Law. Given the number of unexpected new technological paradigms that have invalidated predictions of Moore's Law's demise since the 1960s, there is reason to support such a conclusion.
It can be inferred that computer scientist Gordon Moore, after whom Moore's Law was named, believed that
(A) though there will likely be an upper limit to the number of transistors that can be placed on a single integrated circuit, technological innovation will prolong the trend he identified
(B) the consistent doubling of transistors per integrated circuit will likely end by the year 2020
(C) once transistors are successfully miniaturized to roughly the size of atoms, it will become impossible to further increase the number that can be integrated into a single circuit
(D) discrete circuits were not nearly as capable as integrated circuits in terms of processing speed and memory
(E) the trend he identified, while accurate, was only a temporary phenomena
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Karthik
The source of the questions that i post from JUNE 2013 is from KNEWTON
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Karthik
The source of the questions that i post from JUNE 2013 is from KNEWTON
---If you find my post useful, click "Thank"
---Never stop until cracking GMAT---












