db51375bb7
Shave around 94 million instructions and 10 million branches off of execution trace of example4 if the sigmoid activation function is resolved at link-time. Before (`make`): ``` Performance counter stats for './example4': 98.988806 task-clock (msec) # 0.998 CPUs utilized 1 context-switches # 0.010 K/sec 0 cpu-migrations # 0.000 K/sec 79 page-faults # 0.798 K/sec 312,298,260 cycles # 3.155 GHz 1,094,183,752 instructions # 3.50 insn per cycle 212,007,732 branches # 2141.734 M/sec 62,774 branch-misses # 0.03% of all branches 0.099228100 seconds time elapsed ``` After: `make`: ``` Performance counter stats for './example4': 97.335180 task-clock (msec) # 0.998 CPUs utilized 0 context-switches # 0.000 K/sec 0 cpu-migrations # 0.000 K/sec 82 page-faults # 0.842 K/sec 306,722,357 cycles # 3.151 GHz 1,065,669,644 instructions # 3.47 insn per cycle 214,256,601 branches # 2201.225 M/sec 60,154 branch-misses # 0.03% of all branches 0.097577079 seconds time elapsed ``` `make sigmoid`: ``` Performance counter stats for './example4': 92.629610 task-clock (msec) # 0.997 CPUs utilized 0 context-switches # 0.000 K/sec 0 cpu-migrations # 0.000 K/sec 78 page-faults # 0.842 K/sec 291,863,801 cycles # 3.151 GHz 1,000,931,204 instructions # 3.43 insn per cycle 202,465,800 branches # 2185.757 M/sec 50,949 branch-misses # 0.03% of all branches 0.092889789 seconds time elapsed ``` Signed-off-by: Andrew Jeffery <andrew@aj.id.au> |
||
---|---|---|
doc | ||
example | ||
.travis.yml | ||
example1.c | ||
example2.c | ||
example3.c | ||
example4.c | ||
genann.c | ||
genann.h | ||
LICENSE | ||
Makefile | ||
minctest.h | ||
README.md | ||
test.c |
Genann
Genann is a minimal, well-tested library for training and using feedforward artificial neural networks (ANN) in C. Its primary focus is on being simple, fast, reliable, and hackable. It achieves this by providing only the necessary functions and little extra.
Features
- ANSI C with no dependencies.
- Contained in a single source code and header file.
- Simple.
- Fast and thread-safe.
- Easily extendible.
- Implements backpropagation training.
- Compatible with alternative training methods (classic optimization, genetic algorithms, etc)
- Includes examples and test suite.
- Released under the zlib license - free for nearly any use.
Building
Genann is self-contained in two files: genann.c
and genann.h
. To use Genann, simply add those two files to your project.
Example Code
Four example programs are included with the source code.
example1.c
- Trains an ANN on the XOR function using backpropagation.example2.c
- Trains an ANN on the XOR function using random search.example3.c
- Loads and runs an ANN from a file.example4.c
- Trains an ANN on the IRIS data-set using backpropagation.
Quick Example
We create an ANN taking 2 inputs, having 1 layer of 3 hidden neurons, and providing 2 outputs. It has the following structure:
We then train it on a set of labeled data using backpropagation and ask it to predict on a test data point:
#include "genann.h"
/* Not shown, loading your training and test data. */
double **training_data_input, **training_data_output, **test_data_input;
/* New network with 2 inputs,
* 1 hidden layer of 3 neurons each,
* and 2 outputs. */
genann *ann = genann_init(2, 1, 3, 2);
/* Learn on the training set. */
for (i = 0; i < 300; ++i) {
for (j = 0; j < 100; ++j)
genann_train(ann, training_data_input[j], training_data_output[j], 0.1);
}
/* Run the network and see what it predicts. */
double const *prediction = genann_run(ann, test_data_input[0]);
printf("Output for the first test data point is: %f, %f\n", prediction[0], prediction[1]);
genann_free(ann);
This example is to show API usage, it is not showing good machine learning techniques. In a real application you would likely want to learn on the test data in a random order. You would also want to monitor the learning to prevent over-fitting.
Usage
Creating and Freeing ANNs
genann *genann_init(int inputs, int hidden_layers, int hidden, int outputs);
genann *genann_copy(genann const *ann);
void genann_free(genann *ann);
Creating a new ANN is done with the genann_init()
function. Its arguments
are the number of inputs, the number of hidden layers, the number of neurons in
each hidden layer, and the number of outputs. It returns a genann
struct pointer.
Calling genann_copy()
will create a deep-copy of an existing genann
struct.
Call genann_free()
when you're finished with an ANN returned by genann_init()
.
Training ANNs
void genann_train(genann const *ann, double const *inputs,
double const *desired_outputs, double learning_rate);
genann_train()
will preform one update using standard backpropogation. It
should be called by passing in an array of inputs, an array of expected outputs,
and a learning rate. See example1.c for an example of learning with
backpropogation.
A primary design goal of Genann was to store all the network weights in one
contigious block of memory. This makes it easy and efficient to train the
network weights using direct-search numeric optimizion algorthims,
such as Hill Climbing,
the Genetic Algorithm, Simulated
Annealing, etc.
These methods can be used by searching on the ANN's weights directly.
Every genann
struct contains the members int total_weights;
and
double *weight;
. *weight
points to an array of total_weights
size which contains all weights used by the ANN. See example2.c for
an example of training using random hill climbing search.
Saving and Loading ANNs
genann *genann_read(FILE *in);
void genann_write(genann const *ann, FILE *out);
Genann provides the genann_read()
and genann_write()
functions for loading or saving an ANN in a text-based format.
Evaluating
double const *genann_run(genann const *ann, double const *inputs);
Call genann_run()
on a trained ANN to run a feed-forward pass on a given set of inputs. genann_run()
will provide a pointer to the array of predicted outputs (of ann->outputs
length).
Hints
- All functions start with
genann_
. - The code is simple. Dig in and change things.
Extra Resources
The comp.ai.neural-nets FAQ is an excellent resource for an introduction to artificial neural networks.
If you're looking for a heavier, more opinionated neural network library in C, I recommend the FANN library. Another good library is Peter van Rossum's Lightweight Neural Network, which despite its name, is heavier and has more features than Genann.