Neural Network Trading Software
PingCOPA Network Monitoring Software is an aid for network engineers when monitoring and diagnosing IP network problems. Speech output is provided to enable you to work on cables and hardware without looking at the computer monitor when testing IP network
NetDMZ network management software was designed for LAN monitoring. You can find every detail about your employees' PC and Internet usage on server.
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Neural network classification results live view (like a movie). Free software for playing with neural networks classification.
Day Trading Software Primer for those interested in day trading online.
IPSentry Network Monitoring Software is a centralized Windows based network monitoring software package used by thousands of Information System specialists, system administrators, and IT solution providers around the world for over 10 years.
iSNS is an interactive neural network simulator written in Java/Java3D.
OLSOFT Neural Network Library is the class to create, learn and use Back Propagation neural networks and SOFM (Self-Organizing Feature Map). The library makes integration of neural networks' functionality into your own applications easy and seamless.
Artificial Neural System Component is designed for researchers in the fields of machine learning, it can be used to construct Back Propagation Neural Network and to train it with provided samples, then finally recall it with appropriate data. This
Network diagnostic software enables user to customize general discovery behavior, network and color options, size and number of the nodes in the map or email and sound alerts. Download Network viewing tool to alert events with beeps or music.
Create artificial neural networks. Artificial Neural Network demonstrate artificial intelligence. Taking advantage of serialization, there are two parts of the network. The actual network, and then training data.