Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am new to machine learning. I would like to set a machine on my server and using a database for storing data learnt.

var colorClassifier = new NeuralNetwork();

    {input: { r: 0.03, g: 0.7, b: 0.5 }, output: 0},  // black
    {input: { r: 0.16, g: 0.09, b: 0.2 }, output: 1}, // white
    {input: { r: 0.5, g: 0.5, b: 1.0 }, output: 1}   // white

console.log(colorClassifier.classify({ r: 1, g: 0.4, b: 0 }));  // 0.99 - almost 

The codes for machine learning frameworks are something like this, but i want that 'colorClassifies' is logically stored in my Database and not in the memory, so that i can train this machine during time without losing old data about old trains. I don't really know how these frameworks internally work, but i think it's possible to do something like what i am asking for. thank you

share|improve this question
What do you want to achieve? Persist the trained model on disk? –  ziggystar Jun 23 '14 at 20:09
yes, this is my purpose @ziggystar –  Morrisda Jun 24 '14 at 10:47

1 Answer 1

up vote 2 down vote accepted

"I don't really know how these frameworks internally work"

However the framework works, training a classifier means finding a set a weight values such that the classifier works well (usually this means minimizing the sum of squared errors). So, a trained classifier is essentially a set of real numbers. To persist the classifier you need to store these numbers to your database.

Each weight can be described by four numbers:

  • The layer number (integer): The first layer is the input, the rest are the hidden layers (usually one or two), in the order they appear.
  • From, to (integers): Since each weight connects two nodes, the serial number of these nodes inside each layer
  • The value of the weight (usually real number)

If, for example, you have a weight with value 5.8 going from the 3rd node of the 2nd layer to the 5th node of the next layer, you can store it in a table

layer: 2 from_node: 3 to_node: 5 value: 5.8

By repeating this for all weights (a simple for loop) you can store the trained network in a simple table. I don't know how your framework works, but normally there will be a member function that returns the weights of the trained network in list or hashmap format

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.