Weather Prediction Using Neural Networks

NEURAL NETWORKS: A RAPID PROTOTYPING.
Neural Network Predictions

In order that we understand holistically the nature, of some problems which can or cannot be solved, using traditional computing but instead (solely on demands of pragmatism) are practically and undeniably solvable if and only where concepts of neural computing are applied. There is every need to solidly grasp the idea behind neural networks and indeed rapid prototyping. Ben Coppin (2004), states: “the claim that the human brain is a computer is an interesting one. Upon it is based the idea of neural networks. By combining the processing power of individual neurons, we are able to produce artificial neural networks that are capable of solving extremely complex problems, such as recognizing faces”. Unsurprisingly, rapid prototyping (RP) is strictly hinged both, on the idea of communication and for the purpose of design testing. The term rapid prototyping according to William Palm (1998), is described as, “a class of technologies that can automatically construct physical models from computer – aided design (CAD) data. Such models have numerous uses. They make excellent aids for communicating ideas with co-workers or customers and most appropriately researchers. In addition, designers have always utilised prototypes, RP allows them to be made faster and less expensively”. It is in essence more time and cost saving.

Source: mege01

Physica-Verlag HD Lectures on Soft Computing and Fuzzy Logic (Advances in Intelligent and Soft Computing)
Book (Physica-Verlag HD)

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To all businesses offering to teach you to trade

2009-03-31 21:29:08 by proioxis

You are frauds. Charging someone $3500 to teach them basic technical analysis they could learn from a book from is atrocious. Then you take their money to set up an account (another, what, $5000?) and offer them leverage so they can lose the money faster.
I'll give you a hint: jumping in and out of stocks all day is not the way to make money.
As for all you so called "trading firms," go find a convenient hole to crawl into. Preferably to die.

Adding daytrading to resume??

2006-10-16 17:57:09 by jason56789

Can anyone suggest a few bulletpoints to add daytrading to my resume?
I'm not sure how to "sell" my daytrading experience on the resume so that it will be meaningful to resume screeners, or a potential employer.
I can explain more, but in general I use a combination of technical and fundamental analysis to identify trades or longer term investments. I favor smallcap stocks, ususally in the biotech or others "technical" sectors. I also look at special situations, like companies that are in bankruptcy that have a decent shot at a successful restructuring.
Many thanks in advance!

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