Files
BiPy/main.cpp
T
2026-04-29 02:05:59 +07:00

196 lines
7.0 KiB
C++

#include <iostream>
#include <vector>
#include <string>
#include <iomanip>
#include <sstream>
#include <fstream>
#include <algorithm>
#include "Xenith/core.h"
#include "Xenith/token/token.h"
// Глобальные настройки
std::string currentSystemPrompt = "я робот";
void printParameterCount(LayerStructure_t layers[], int numLayers) {
long long totalParams = 0;
for (int i = 0; i < numLayers - 1; i++) {
long long weights = (long long)layers[i].size * layers[i + 1].size;
long long biases = (long long)layers[i + 1].size;
totalParams += (weights + biases);
}
std::cout << "--- Xenith AI (Model Size: ";
if (totalParams >= 1000000000000LL)
std::cout << std::fixed << std::setprecision(1) << (double)totalParams / 1000000000000.0 << "t";
else if (totalParams >= 1000000000LL)
std::cout << std::fixed << std::setprecision(1) << (double)totalParams / 1000000000.0 << "b";
else if (totalParams >= 1000000LL)
std::cout << std::fixed << std::setprecision(1) << (double)totalParams / 1000000.0 << "m";
else if (totalParams >= 1000LL)
std::cout << std::fixed << std::setprecision(1) << (double)totalParams / 1000.0 << "k";
else
std::cout << totalParams;
std::cout << " parameters) ---" << std::endl;
}
std::vector<double> buildNetInput(const std::vector<int>& tokens, Embedder& emb) {
std::vector<double> netInput;
netInput.reserve(MAX_CONTEXT * EMBED_DIM);
int start = (int)tokens.size() - MAX_CONTEXT;
if (start < 0) start = 0;
int count = 0;
for (int i = start; i < (int)tokens.size(); i++) {
std::vector<double> v = emb.get(tokens[i]);
netInput.insert(netInput.end(), v.begin(), v.end());
count++;
}
while (count < MAX_CONTEXT) {
for (int d = 0; d < EMBED_DIM; d++) netInput.push_back(0.0);
count++;
}
return netInput;
}
void trainOnSequence(NeuralNetwork& nn, Tokenizer& tok, Embedder& emb, const std::string& dataset, int epochs, double lr) {
std::vector<int> allTokens = tok.textToTokens(dataset);
if (allTokens.size() < 2) {
std::cout << "Error: Sequence too short for training." << std::endl;
return;
}
std::cout << "Training logic: Next Token Prediction..." << std::endl;
for (int e = 1; e <= epochs; e++) {
double totalLoss = 0;
for (size_t i = 1; i < allTokens.size(); i++) {
std::vector<int> context;
for (size_t j = 0; j < i; j++) context.push_back(allTokens[j]);
std::vector<double> target(MAX_VOCAB, 0.0);
target[allTokens[i]] = 1.0;
totalLoss += nn.train(buildNetInput(context, emb), target, lr);
}
std::cout << "\rEpoch " << e << "/" << epochs << " | Loss: " << std::fixed << std::setprecision(6) << totalLoss << std::flush;
}
std::cout << "\nDone!" << std::endl;
}
int main() {
Tokenizer tok;
Embedder emb(MAX_VOCAB, EMBED_DIM);
LayerStructure_t layers[] = {
{MAX_CONTEXT * EMBED_DIM, SIGMOID},
{16, SIGMOID},
{MAX_VOCAB, SIGMOID}
};
int numLayers = sizeof(layers) / sizeof(layers[0]);
NeuralNetwork nn(layers, numLayers);
printParameterCount(layers, numLayers);
std::cout << "\n--- MENU ---" << std::endl;
std::cout << "/train\n/trainFile\n/help\n/exit\n";
while (true) {
std::cout << "\nxentith~$ ";
std::string cmdIn;
std::getline(std::cin, cmdIn);
if (cmdIn == "/exit") break;
if (cmdIn == "/train") {
int epochs;
double lr;
std::cout << "--- Training Setup ---\n";
std::cout << "Enter number of epochs: ";
std::string epStr; std::getline(std::cin, epStr);
epochs = std::stoi(epStr);
std::cout << "Enter learning rate (e.g. 0.1): ";
std::string lrStr; std::getline(std::cin, lrStr);
lr = std::stod(lrStr);
std::cout << "\n--- Example Content ---\n";
std::cout << "User: ";
std::string userPart;
std::getline(std::cin, userPart);
std::cout << "AI: ";
std::string aiPart;
std::getline(std::cin, aiPart);
std::string finalData = "[SYS]" + currentSystemPrompt +
"[USER]" + userPart +
"[AI]" + aiPart + "<EOS>";
std::cout << "\nTraining logic: Pattern Recognition..." << std::endl;
trainOnSequence(nn, tok, emb, finalData, epochs, lr);
}
else if (cmdIn == "/trainFile") {
std::string content;
std::cout << "Enter filename: ";
std::string filename;
std::getline(std::cin, filename);
std::ifstream file(filename);
if (file.is_open()) {
std::stringstream buffer;
buffer << file.rdbuf();
content = buffer.str();
std::cout << "Loaded " << content.length() << " characters from file." << std::endl;
} else {
std::cout << "Could not open file!" << std::endl;
continue;
}
int epochs;
double lr;
std::cout << "Enter number of epochs: ";
std::string epStr; std::getline(std::cin, epStr);
epochs = std::stoi(epStr);
std::cout << "Enter learning rate (e.g. 0.1): ";
std::string lrStr; std::getline(std::cin, lrStr);
lr = std::stod(lrStr);
std::string finalData = "[SYS]" + currentSystemPrompt + content + "<EOS>";
trainOnSequence(nn, tok, emb, finalData, epochs, lr);
} else if (cmdIn == "/sysPrompt") {
std::cout << "Current System Prompt: " << currentSystemPrompt << std::endl;
std::cout << "Enter new System Prompt: ";
std::getline(std::cin, currentSystemPrompt);
std::cout << "System Prompt updated!" << std::endl;
} else if (cmdIn == "/help") {
std::cout << "\n--- MENU ---" << std::endl;
std::cout << "/train\n/trainFile\n/sysPrompt\n/help\n/exit\n";
} else {
std::string prompt = "[SYS]" + currentSystemPrompt + "[USER]" + cmdIn + "[AI]";
std::vector<int> currentTokens = tok.textToTokens(prompt);
std::cout << "AI: ";
for (int g = 0; g < 30; g++) {
std::vector<double> out = nn.feedForward(buildNetInput(currentTokens, emb));
int bestId = 0;
for (int i = 0; i < MAX_VOCAB; i++) {
if (out[i] > out[bestId]) bestId = i;
}
if (bestId == 0) break;
std::string word = tok.getWord(bestId);
std::cout << word << std::flush;
currentTokens.push_back(bestId);
}
std::cout << std::endl;
}
}
return 0;
}