Difference between revisions of "Parallel Computing"

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==Description:==
==Description:==
Aging population is the driving force which for example is driving Europe to accept Turkey into the EU. With the advances in medicine the population of the world is living longer which means that the world needs more resources to support this population. Alhtough the birth rate is diminishing around the world. Resources are limited and therefore one day they will end.
Exploration of parallelism is far from just a question of scientific significance. Even the building of ancient pyramids involved concurrent cooperations, work load balancing, pipelining and resource scheduling, which all fell into the pocket of giant parallelism. This is yet another evidence that computer has fallen behind human intelligence when carrying out computation tasks one by one devotionally. However proud we may be about this, if any, computers are catching up, especially when pushed by a large number of scientific scholars who are more and more discontented for long program execution time and distribued data intensive computations. Parallel computing is the savior for those ancious scientists: it provides enormous computing power, very large scale distributed data warehouses support, high performance and efficiency. It does these by multithread of control and by sharing of both heterogeneous and homogeneous resources. There are mainly three aspects of parallel computing: algorithms and application; programming methods, languages and environments; parallel machines and architectures. The future of parallel computing is very prosperous, expecially after the emergence of Grid technology, which provides a middle ware layer on top of which parallel programs can run and communicate with each other directly and transparently. However, there are still some problems remaining to be solved, such as efficient scheduling algorithms and automatic parallelism, etc. Hope that one day everyone could rely solely on his and his friends' I386 machine (if still any) to do all kinds of complex computation within seconds, without knowing a whole world working, cooperating and communicating behind scence.


==Enablers:==
==Enablers:==

Revision as of 21:41, 16 March 2005

Description:

Exploration of parallelism is far from just a question of scientific significance. Even the building of ancient pyramids involved concurrent cooperations, work load balancing, pipelining and resource scheduling, which all fell into the pocket of giant parallelism. This is yet another evidence that computer has fallen behind human intelligence when carrying out computation tasks one by one devotionally. However proud we may be about this, if any, computers are catching up, especially when pushed by a large number of scientific scholars who are more and more discontented for long program execution time and distribued data intensive computations. Parallel computing is the savior for those ancious scientists: it provides enormous computing power, very large scale distributed data warehouses support, high performance and efficiency. It does these by multithread of control and by sharing of both heterogeneous and homogeneous resources. There are mainly three aspects of parallel computing: algorithms and application; programming methods, languages and environments; parallel machines and architectures. The future of parallel computing is very prosperous, expecially after the emergence of Grid technology, which provides a middle ware layer on top of which parallel programs can run and communicate with each other directly and transparently. However, there are still some problems remaining to be solved, such as efficient scheduling algorithms and automatic parallelism, etc. Hope that one day everyone could rely solely on his and his friends' I386 machine (if still any) to do all kinds of complex computation within seconds, without knowing a whole world working, cooperating and communicating behind scence.

Enablers:

- Technogical adavnces in medicine - Better conditions of living in the Developing world - More health awareness

Inhibitors:

- Extending the retirement age to another 10 years so people will have to work more

Paradigms:

There has been enormous concern about the consequences of human population growth for the environment and for social and economic development. But this growth is likely to come to an end in the foreseeable future.

Experts:

United Nations US Department of Health and Human Services

Timing:

Improving on earlier methods of probabilistic forecasting, here we show that there is around an 85 per cent chance that the world's population will stop growing before the end of the century. There is a 60 per cent probability that the world's population will not exceed 10 billion people before 2100, and around a 15 per cent probability that the world's population at the end of the century will be lower than it is today. For different regions, the date and size of the peak population will vary considerably.

Web Resources:

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