tts.cpp 46 KB

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  1. #define _USE_MATH_DEFINES // For M_PI on MSVC
  2. #include "arg.h"
  3. #include "common.h"
  4. #include "sampling.h"
  5. #include "log.h"
  6. #include "llama.h"
  7. #include "json.hpp"
  8. #include <algorithm>
  9. #include <cmath>
  10. #include <cstdio>
  11. #include <fstream>
  12. #include <map>
  13. #include <regex>
  14. #include <string>
  15. #include <thread>
  16. #include <vector>
  17. using json = nlohmann::ordered_json;
  18. enum outetts_version {
  19. OUTETTS_V0_2,
  20. OUTETTS_V0_3,
  21. };
  22. //
  23. // Terminal utils
  24. //
  25. #define SQR(X) ((X) * (X))
  26. #define UNCUBE(x) x < 48 ? 0 : x < 115 ? 1 : (x - 35) / 40
  27. /**
  28. * Quantizes 24-bit RGB to xterm256 code range [16,256).
  29. */
  30. static int rgb2xterm256(int r, int g, int b) {
  31. unsigned char cube[] = {0, 0137, 0207, 0257, 0327, 0377};
  32. int av, ir, ig, ib, il, qr, qg, qb, ql;
  33. av = r * .299 + g * .587 + b * .114 + .5;
  34. ql = (il = av > 238 ? 23 : (av - 3) / 10) * 10 + 8;
  35. qr = cube[(ir = UNCUBE(r))];
  36. qg = cube[(ig = UNCUBE(g))];
  37. qb = cube[(ib = UNCUBE(b))];
  38. if (SQR(qr - r) + SQR(qg - g) + SQR(qb - b) <=
  39. SQR(ql - r) + SQR(ql - g) + SQR(ql - b))
  40. return ir * 36 + ig * 6 + ib + 020;
  41. return il + 0350;
  42. }
  43. static std::string set_xterm256_foreground(int r, int g, int b) {
  44. int x = rgb2xterm256(r, g, b);
  45. std::ostringstream oss;
  46. oss << "\033[38;5;" << x << "m";
  47. return oss.str();
  48. }
  49. const std::vector<std::string> k_colors = {
  50. set_xterm256_foreground(220, 5, 12),
  51. set_xterm256_foreground(232, 96, 28),
  52. set_xterm256_foreground(241, 147, 45),
  53. set_xterm256_foreground(246, 193, 65),
  54. set_xterm256_foreground(247, 240, 86),
  55. set_xterm256_foreground(144, 201, 135),
  56. set_xterm256_foreground( 78, 178, 101),
  57. };
  58. static void print_usage(int, char ** argv) {
  59. LOG("\nexample usage:\n");
  60. LOG("\n %s -m model.gguf -p \"Hello!\"\n", argv[0]);
  61. LOG("\n");
  62. }
  63. struct wav_header {
  64. char riff[4] = {'R', 'I', 'F', 'F'};
  65. uint32_t chunk_size;
  66. char wave[4] = {'W', 'A', 'V', 'E'};
  67. char fmt[4] = {'f', 'm', 't', ' '};
  68. uint32_t fmt_chunk_size = 16;
  69. uint16_t audio_format = 1; // PCM
  70. uint16_t num_channels = 1; // Mono
  71. uint32_t sample_rate;
  72. uint32_t byte_rate;
  73. uint16_t block_align;
  74. uint16_t bits_per_sample = 16;
  75. char data[4] = {'d', 'a', 't', 'a'};
  76. uint32_t data_size;
  77. };
  78. static void save_wav16(const std::string & fname, const std::vector<float> & data, int sample_rate) {
  79. std::ofstream file(fname, std::ios::binary);
  80. if (!file) {
  81. LOG_ERR("%s: Failed to open file '%s' for writing", __func__, fname.c_str());
  82. return;
  83. }
  84. wav_header header;
  85. header.sample_rate = sample_rate;
  86. header.byte_rate = header.sample_rate * header.num_channels * (header.bits_per_sample / 8);
  87. header.block_align = header.num_channels * (header.bits_per_sample / 8);
  88. header.data_size = data.size() * (header.bits_per_sample / 8);
  89. header.chunk_size = 36 + header.data_size;
  90. file.write(reinterpret_cast<const char*>(&header), sizeof(header));
  91. for (const auto & sample : data) {
  92. int16_t pcm_sample = static_cast<int16_t>(std::clamp(sample * 32767.0, -32768.0, 32767.0));
  93. file.write(reinterpret_cast<const char*>(&pcm_sample), sizeof(pcm_sample));
  94. }
  95. file.close();
  96. }
  97. static void fill_hann_window(int length, bool periodic, float * output) {
  98. int offset = -1;
  99. if (periodic) {
  100. offset = 0;
  101. }
  102. for (int i = 0; i < length; i++) {
  103. output[i] = 0.5 * (1.0 - cosf((2.0 * M_PI * i) / (length + offset)));
  104. }
  105. }
  106. // very poor-man fft
  107. static void twiddle(float * real, float * imag, int k, int N) {
  108. float angle = 2 * M_PI * k / N;
  109. *real = cos(angle);
  110. *imag = sin(angle);
  111. }
  112. static void irfft(int n, const float * inp_cplx, float * out_real) {
  113. int N = n / 2 + 1;
  114. std::vector<float> real_input(N);
  115. std::vector<float> imag_input(N);
  116. for (int i = 0; i < N; ++i) {
  117. real_input[i] = inp_cplx[2 * i];
  118. imag_input[i] = inp_cplx[2 * i + 1];
  119. }
  120. std::vector<float> real_output(n);
  121. std::vector<float> imag_output(n);
  122. for (int k = 0; k < n; ++k) {
  123. real_output[k] = 0.0f;
  124. imag_output[k] = 0.0f;
  125. for (int m = 0; m < N; ++m) {
  126. float twiddle_real;
  127. float twiddle_imag;
  128. twiddle(&twiddle_real, &twiddle_imag, k * m, n);
  129. real_output[k] += real_input[m] * twiddle_real - imag_input[m] * twiddle_imag;
  130. imag_output[k] += real_input[m] * twiddle_imag + imag_input[m] * twiddle_real;
  131. }
  132. }
  133. for (int i = 0; i < n; ++i) {
  134. out_real[i] = real_output[i] / N;
  135. }
  136. }
  137. //
  138. // y = torch.nn.functional.fold(
  139. // data, output_size=(1, output_size), kernel_size=(1, self.win_length), stride=(1, self.hop_length),
  140. // )[:, 0, 0, pad:-pad]
  141. //
  142. // data.shape = torch.Size([1, 1280, 261])
  143. // output_size = 84480
  144. // win_length = 1280
  145. // hop_length = 320
  146. // pad = 480
  147. //
  148. static void fold(const std::vector<float> & data, int64_t n_out, int64_t n_win, int64_t n_hop, int64_t n_pad, std::vector<float> & output) {
  149. int64_t output_height = n_out;
  150. int64_t kernel_w = n_win;
  151. int64_t stride_w = n_hop;
  152. int64_t width = n_out;
  153. output.resize(width, 0.0f);
  154. int64_t col_idx = 0;
  155. for (int64_t w_col = 0; w_col < width; ++w_col) {
  156. int64_t start = w_col * stride_w - n_pad;
  157. int64_t end = start + kernel_w;
  158. for (int64_t w_im = start; w_im < end; ++w_im) {
  159. if (w_im >= 0 && w_im < output_height && col_idx < (int64_t) data.size()) {
  160. output[w_im] += data[col_idx];
  161. }
  162. col_idx++;
  163. }
  164. }
  165. output.resize(n_out - 2 * n_pad);
  166. }
  167. // TODO: not optimized at all
  168. static std::vector<float> embd_to_audio(
  169. const float * embd,
  170. const int n_codes,
  171. const int n_embd,
  172. const int n_thread) {
  173. const int n_fft = 1280;
  174. const int n_hop = 320;
  175. const int n_win = 1280;
  176. const int n_pad = (n_win - n_hop)/2;
  177. const int n_out = (n_codes - 1)*n_hop + n_win;
  178. std::vector<float> hann(n_fft);
  179. fill_hann_window(hann.size(), true, hann.data());
  180. int n_spec = n_embd*n_codes;
  181. std::vector<float> E (n_spec);
  182. std::vector<float> S (n_spec);
  183. std::vector<float> ST(n_spec);
  184. for (int l = 0; l < n_codes; ++l) {
  185. for (int k = 0; k < n_embd; ++k) {
  186. E[k*n_codes + l] = embd[l*n_embd + k];
  187. }
  188. }
  189. for (int k = 0; k < n_embd/2; ++k) {
  190. for (int l = 0; l < n_codes; ++l) {
  191. float mag = E[(k )*n_codes + l];
  192. float phi = E[(k + n_embd/2)*n_codes + l];
  193. mag = exp(mag);
  194. if (mag > 1e2) {
  195. mag = 1e2;
  196. }
  197. S[2*(k*n_codes + l) + 0] = mag*cosf(phi);
  198. S[2*(k*n_codes + l) + 1] = mag*sinf(phi);
  199. }
  200. }
  201. for (int l = 0; l < n_codes; ++l) {
  202. for (int k = 0; k < n_embd/2; ++k) {
  203. ST[l*n_embd + 2*k + 0] = S[2*(k*n_codes + l) + 0];
  204. ST[l*n_embd + 2*k + 1] = S[2*(k*n_codes + l) + 1];
  205. }
  206. }
  207. std::vector<float> res (n_codes*n_fft);
  208. std::vector<float> hann2(n_codes*n_fft);
  209. std::vector<std::thread> workers(n_thread);
  210. for (int i = 0; i < n_thread; ++i) {
  211. workers[i] = std::thread([&, i]() {
  212. for (int l = i; l < n_codes; l += n_thread) {
  213. irfft(n_fft, ST.data() + l*n_embd, res.data() + l*n_fft);
  214. for (int j = 0; j < n_fft; ++j) {
  215. res [l*n_fft + j] *= hann[j];
  216. hann2[l*n_fft + j] = hann[j] * hann[j];
  217. }
  218. }
  219. });
  220. }
  221. for (int i = 0; i < n_thread; ++i) {
  222. workers[i].join();
  223. }
  224. std::vector<float> audio;
  225. std::vector<float> env;
  226. fold(res, n_out, n_win, n_hop, n_pad, audio);
  227. fold(hann2, n_out, n_win, n_hop, n_pad, env); // TODO: can be done once
  228. for (size_t i = 0; i < audio.size(); ++i) {
  229. audio[i] /= env[i];
  230. }
  231. return audio;
  232. }
  233. static const std::map<int, std::string> ones = {
  234. {0, "zero"}, {1, "one"}, {2, "two"}, {3, "three"}, {4, "four"},
  235. {5, "five"}, {6, "six"}, {7, "seven"}, {8, "eight"}, {9, "nine"},
  236. {10, "ten"}, {11, "eleven"}, {12, "twelve"}, {13, "thirteen"}, {14, "fourteen"},
  237. {15, "fifteen"}, {16, "sixteen"}, {17, "seventeen"}, {18, "eighteen"}, {19, "nineteen"}
  238. };
  239. static const std::map<int, std::string> tens = {
  240. {2, "twenty"}, {3, "thirty"}, {4, "forty"}, {5, "fifty"},
  241. {6, "sixty"}, {7, "seventy"}, {8, "eighty"}, {9, "ninety"}
  242. };
  243. // Convert a number less than 1000 to words
  244. static std::string convert_less_than_thousand(int num) {
  245. std::string result;
  246. if (num >= 100) {
  247. result += ones.at(num / 100) + " hundred ";
  248. num %= 100;
  249. }
  250. if (num >= 20) {
  251. result += tens.at(num / 10);
  252. if (num % 10 > 0) {
  253. result += "-" + ones.at(num % 10);
  254. }
  255. } else if (num > 0) {
  256. result += ones.at(num);
  257. }
  258. return result;
  259. }
  260. static std::string number_to_words(const std::string & number_str) {
  261. try {
  262. size_t decimal_pos = number_str.find('.');
  263. std::string integer_part = number_str.substr(0, decimal_pos);
  264. int int_number = std::stoi(integer_part);
  265. std::string result;
  266. if (int_number == 0) {
  267. result = "zero";
  268. } else {
  269. if (int_number >= 1000000000) {
  270. int billions = int_number / 1000000000;
  271. result += convert_less_than_thousand(billions) + " billion ";
  272. int_number %= 1000000000;
  273. }
  274. if (int_number >= 1000000) {
  275. int millions = int_number / 1000000;
  276. result += convert_less_than_thousand(millions) + " million ";
  277. int_number %= 1000000;
  278. }
  279. if (int_number >= 1000) {
  280. int thousands = int_number / 1000;
  281. result += convert_less_than_thousand(thousands) + " thousand ";
  282. int_number %= 1000;
  283. }
  284. if (int_number > 0) {
  285. result += convert_less_than_thousand(int_number);
  286. }
  287. }
  288. // Handle decimal part
  289. if (decimal_pos != std::string::npos) {
  290. result += " point";
  291. std::string decimal_part = number_str.substr(decimal_pos + 1);
  292. for (char digit : decimal_part) {
  293. result += " " + ones.at(digit - '0');
  294. }
  295. }
  296. return result;
  297. } catch (const std::exception& e) {
  298. // Skip if fails
  299. return " ";
  300. }
  301. }
  302. static std::string replace_numbers_with_words(const std::string & input_text) {
  303. std::regex number_pattern(R"(\d+(\.\d+)?)");
  304. std::string result;
  305. auto it = std::sregex_iterator(input_text.begin(), input_text.end(), number_pattern);
  306. auto end = std::sregex_iterator();
  307. size_t last_pos = 0;
  308. for (std::sregex_iterator i = it; i != end; ++i) {
  309. const std::smatch& match = *i;
  310. result.append(input_text, last_pos, match.position() - last_pos);
  311. result.append(number_to_words(match.str()));
  312. last_pos = match.position() + match.length();
  313. }
  314. result.append(input_text, last_pos);
  315. return result;
  316. }
  317. // Based on: https://github.com/edwko/OuteTTS/blob/a613e79c489d8256dd657ea9168d78de75895d82/outetts/version/v1/prompt_processor.py#L39
  318. static std::string process_text(const std::string & text, const outetts_version tts_version = OUTETTS_V0_2) {
  319. // For now I skipped text romanization as I am unsure how to handle
  320. // uroman and MeCab implementations in C++
  321. // maybe something like https://github.com/anyascii/anyascii/ could work.
  322. // currently only English would be supported in this function
  323. std::string processed_text = replace_numbers_with_words(text);
  324. std::transform(processed_text.begin(), processed_text.end(),
  325. processed_text.begin(), ::tolower);
  326. std::regex special_chars(R"([-_/,\.\\])");
  327. processed_text = std::regex_replace(processed_text, special_chars, " ");
  328. std::regex non_alpha(R"([^a-z\s])");
  329. processed_text = std::regex_replace(processed_text, non_alpha, "");
  330. std::regex multiple_spaces(R"(\s+)");
  331. processed_text = std::regex_replace(processed_text, multiple_spaces, " ");
  332. processed_text = std::regex_replace(processed_text, std::regex(R"(^\s+|\s+$)"), "");
  333. /*
  334. Replace spaces with the separator token same as in line 365
  335. for (auto & c : prompt_user) {
  336. if (c == ' ') {
  337. prompt_clean += "<|text_sep|>";
  338. */
  339. std::string separator = (tts_version == OUTETTS_V0_3) ? "<|space|>" : "<|text_sep|>";
  340. processed_text = std::regex_replace(processed_text, std::regex(R"(\s)"), separator);
  341. return processed_text;
  342. }
  343. static void prompt_add(llama_tokens & prompt, llama_token token) {
  344. prompt.push_back(token);
  345. }
  346. static void prompt_add(llama_tokens & prompt, const llama_tokens & tokens) {
  347. prompt.insert(prompt.end(), tokens.begin(), tokens.end());
  348. }
  349. static void prompt_add(llama_tokens & prompt, const llama_vocab * vocab, const std::string & txt, bool add_special, bool parse_special) {
  350. auto tmp = common_tokenize(vocab, txt, add_special, parse_special);
  351. prompt_add(prompt, tmp);
  352. }
  353. static void prompt_init(llama_tokens & prompt, const llama_vocab * vocab) {
  354. prompt.clear();
  355. prompt_add(prompt, vocab, "<|im_start|>\n", true, true);
  356. }
  357. static std::vector<llama_token> prepare_guide_tokens(const llama_vocab * vocab, const std::string & str, const outetts_version tts_version = OUTETTS_V0_2) {
  358. const std::string& delimiter = (tts_version == OUTETTS_V0_3 ? "<|space|>" : "<|text_sep|>");
  359. std::vector<llama_token> result;
  360. size_t start = 0;
  361. size_t end = str.find(delimiter);
  362. //first token is always a newline, as it was not previously added
  363. result.push_back(common_tokenize(vocab, "\n", false, true)[0]);
  364. while (end != std::string::npos) {
  365. std::string current_word = str.substr(start, end - start);
  366. auto tmp = common_tokenize(vocab, current_word, false, true);
  367. result.push_back(tmp[0]);
  368. start = end + delimiter.length();
  369. end = str.find(delimiter, start);
  370. }
  371. // Add the last part
  372. std::string current_word = str.substr(start);
  373. auto tmp = common_tokenize(vocab, current_word, false, true);
  374. if (tmp.size() > 0) {
  375. result.push_back(tmp[0]);
  376. }
  377. return result;
  378. }
  379. static json speaker_from_file(const std::string & speaker_file) {
  380. std::ifstream file(speaker_file);
  381. if (!file) {
  382. LOG_ERR("%s: Failed to open file '%s' for reading\n", __func__, speaker_file.c_str());
  383. return json();
  384. }
  385. json speaker = json::parse(file);
  386. return speaker;
  387. }
  388. static outetts_version get_tts_version(llama_model *model, json speaker = json::object()) {
  389. if (speaker.contains("version")) {
  390. std::string version = speaker["version"].get<std::string>();
  391. if (version == "0.2") {
  392. return OUTETTS_V0_2;
  393. } else if (version == "0.3") {
  394. return OUTETTS_V0_3;
  395. } else {
  396. LOG_ERR("%s: Unsupported speaker version '%s'\n", __func__, version.c_str());
  397. }
  398. }
  399. // Also could get version from model itself
  400. const char *chat_template = llama_model_chat_template(model, nullptr);
  401. if (chat_template && std::string(chat_template) == "outetts-0.3") {
  402. return OUTETTS_V0_3;
  403. }
  404. // Use 0.2 as the default version
  405. return OUTETTS_V0_2;
  406. }
  407. static std::string audio_text_from_speaker(json speaker, const outetts_version tts_version = OUTETTS_V0_2) {
  408. std::string audio_text = "<|text_start|>";
  409. if (tts_version == OUTETTS_V0_2 || tts_version == OUTETTS_V0_3) {
  410. std::string separator = (tts_version == OUTETTS_V0_3) ? "<|space|>" : "<|text_sep|>";
  411. for (const auto &word : speaker["words"]) {
  412. audio_text += word["word"].get<std::string>() + separator;
  413. }
  414. }
  415. return audio_text;
  416. }
  417. static std::string audio_data_from_speaker(json speaker, const outetts_version tts_version = OUTETTS_V0_2) {
  418. std::string audio_data = "<|audio_start|>\n";
  419. if (tts_version == OUTETTS_V0_2 || tts_version == OUTETTS_V0_3) {
  420. std::string code_start = (tts_version == OUTETTS_V0_3) ? "" : "<|code_start|>";
  421. std::string code_end = (tts_version == OUTETTS_V0_3) ? "<|space|>" : "<|code_end|>";
  422. for (const auto &word : speaker["words"]) {
  423. std::string word_text = word["word"].get<std::string>();
  424. double duration = word["duration"].get<double>();
  425. std::vector<int> codes = word["codes"].get<std::vector<int>>();
  426. // Create the audio output entry
  427. std::ostringstream word_entry;
  428. word_entry << word_text << "<|t_" << std::fixed << std::setprecision(2)
  429. << duration << "|>" + code_start;
  430. for (const auto &Code : codes) {
  431. word_entry << "<|" << Code << "|>";
  432. }
  433. word_entry << code_end << "\n";
  434. audio_data += word_entry.str();
  435. }
  436. }
  437. return audio_data;
  438. }
  439. int main(int argc, char ** argv) {
  440. common_params params;
  441. params.prompt = "";
  442. params.n_predict = 4096;
  443. params.n_batch = 8192;
  444. params.n_ctx = 8192;
  445. params.sampling.top_k = 4;
  446. params.sampling.samplers = { COMMON_SAMPLER_TYPE_TOP_K, };
  447. if (!common_params_parse(argc, argv, params, LLAMA_EXAMPLE_TTS, print_usage)) {
  448. return 1;
  449. }
  450. const int n_parallel = params.n_parallel;
  451. const int n_predict = params.n_predict;
  452. common_init();
  453. // init LLM
  454. llama_backend_init();
  455. llama_numa_init(params.numa);
  456. llama_model * model_ttc = NULL; // text-to-codes
  457. llama_model * model_cts = NULL; // codes-to-speech
  458. llama_context * ctx_ttc = NULL;
  459. llama_context * ctx_cts = NULL;
  460. common_init_result llama_init_ttc = common_init_from_params(params);
  461. model_ttc = llama_init_ttc.model.get();
  462. ctx_ttc = llama_init_ttc.context.get();
  463. const llama_vocab * vocab = llama_model_get_vocab(model_ttc);
  464. // TODO: refactor in a common struct
  465. params.model = params.vocoder.model;
  466. params.model_url = params.vocoder.model_url;
  467. params.hf_repo = params.vocoder.hf_repo;
  468. params.hf_file = params.vocoder.hf_file;
  469. params.embedding = true;
  470. common_init_result llama_init_cts = common_init_from_params(params);
  471. model_cts = llama_init_cts.model.get();
  472. ctx_cts = llama_init_cts.context.get();
  473. std::vector<common_sampler *> smpl(n_parallel);
  474. for (int i = 0; i < n_parallel; ++i) {
  475. params.sampling.no_perf = (i != 0);
  476. params.sampling.seed = params.sampling.seed + 1;
  477. smpl[i] = common_sampler_init(model_ttc, params.sampling);
  478. }
  479. LOG_INF("sampler seed: %u\n", common_sampler_get_seed(smpl[0]));
  480. LOG_INF("sampler params: \n%s\n", params.sampling.print().c_str());
  481. LOG_INF("sampler chain: %s\n", common_sampler_print(smpl[0]).c_str());
  482. LOG_INF("%s: loading done\n", __func__);
  483. const auto t_main_start = ggml_time_us();
  484. std::vector<llama_token> codes;
  485. std::vector<llama_token> guide_tokens;
  486. // the default speaker profile is from: https://github.com/edwko/OuteTTS/blob/main/outetts/version/v1/default_speakers/en_male_1.json
  487. std::string audio_text = "<|text_start|>the<|text_sep|>overall<|text_sep|>package<|text_sep|>from<|text_sep|>just<|text_sep|>two<|text_sep|>people<|text_sep|>is<|text_sep|>pretty<|text_sep|>remarkable<|text_sep|>sure<|text_sep|>i<|text_sep|>have<|text_sep|>some<|text_sep|>critiques<|text_sep|>about<|text_sep|>some<|text_sep|>of<|text_sep|>the<|text_sep|>gameplay<|text_sep|>aspects<|text_sep|>but<|text_sep|>its<|text_sep|>still<|text_sep|>really<|text_sep|>enjoyable<|text_sep|>and<|text_sep|>it<|text_sep|>looks<|text_sep|>lovely<|text_sep|>";
  488. std::string audio_data = R"(<|audio_start|>
  489. the<|t_0.08|><|code_start|><|257|><|740|><|636|><|913|><|788|><|1703|><|code_end|>
  490. overall<|t_0.36|><|code_start|><|127|><|201|><|191|><|774|><|700|><|532|><|1056|><|557|><|798|><|298|><|1741|><|747|><|1662|><|1617|><|1702|><|1527|><|368|><|1588|><|1049|><|1008|><|1625|><|747|><|1576|><|728|><|1019|><|1696|><|1765|><|code_end|>
  491. package<|t_0.56|><|code_start|><|935|><|584|><|1319|><|627|><|1016|><|1491|><|1344|><|1117|><|1526|><|1040|><|239|><|1435|><|951|><|498|><|723|><|1180|><|535|><|789|><|1649|><|1637|><|78|><|465|><|1668|><|901|><|595|><|1675|><|117|><|1009|><|1667|><|320|><|840|><|79|><|507|><|1762|><|1508|><|1228|><|1768|><|802|><|1450|><|1457|><|232|><|639|><|code_end|>
  492. from<|t_0.19|><|code_start|><|604|><|782|><|1682|><|872|><|1532|><|1600|><|1036|><|1761|><|647|><|1554|><|1371|><|653|><|1595|><|950|><|code_end|>
  493. just<|t_0.25|><|code_start|><|1782|><|1670|><|317|><|786|><|1748|><|631|><|599|><|1155|><|1364|><|1524|><|36|><|1591|><|889|><|1535|><|541|><|440|><|1532|><|50|><|870|><|code_end|>
  494. two<|t_0.24|><|code_start|><|1681|><|1510|><|673|><|799|><|805|><|1342|><|330|><|519|><|62|><|640|><|1138|><|565|><|1552|><|1497|><|1552|><|572|><|1715|><|1732|><|code_end|>
  495. people<|t_0.39|><|code_start|><|593|><|274|><|136|><|740|><|691|><|633|><|1484|><|1061|><|1138|><|1485|><|344|><|428|><|397|><|1562|><|645|><|917|><|1035|><|1449|><|1669|><|487|><|442|><|1484|><|1329|><|1832|><|1704|><|600|><|761|><|653|><|269|><|code_end|>
  496. is<|t_0.16|><|code_start|><|566|><|583|><|1755|><|646|><|1337|><|709|><|802|><|1008|><|485|><|1583|><|652|><|10|><|code_end|>
  497. pretty<|t_0.32|><|code_start|><|1818|><|1747|><|692|><|733|><|1010|><|534|><|406|><|1697|><|1053|><|1521|><|1355|><|1274|><|816|><|1398|><|211|><|1218|><|817|><|1472|><|1703|><|686|><|13|><|822|><|445|><|1068|><|code_end|>
  498. remarkable<|t_0.68|><|code_start|><|230|><|1048|><|1705|><|355|><|706|><|1149|><|1535|><|1787|><|1356|><|1396|><|835|><|1583|><|486|><|1249|><|286|><|937|><|1076|><|1150|><|614|><|42|><|1058|><|705|><|681|><|798|><|934|><|490|><|514|><|1399|><|572|><|1446|><|1703|><|1346|><|1040|><|1426|><|1304|><|664|><|171|><|1530|><|625|><|64|><|1708|><|1830|><|1030|><|443|><|1509|><|1063|><|1605|><|1785|><|721|><|1440|><|923|><|code_end|>
  499. sure<|t_0.36|><|code_start|><|792|><|1780|><|923|><|1640|><|265|><|261|><|1525|><|567|><|1491|><|1250|><|1730|><|362|><|919|><|1766|><|543|><|1|><|333|><|113|><|970|><|252|><|1606|><|133|><|302|><|1810|><|1046|><|1190|><|1675|><|code_end|>
  500. i<|t_0.08|><|code_start|><|123|><|439|><|1074|><|705|><|1799|><|637|><|code_end|>
  501. have<|t_0.16|><|code_start|><|1509|><|599|><|518|><|1170|><|552|><|1029|><|1267|><|864|><|419|><|143|><|1061|><|0|><|code_end|>
  502. some<|t_0.16|><|code_start|><|619|><|400|><|1270|><|62|><|1370|><|1832|><|917|><|1661|><|167|><|269|><|1366|><|1508|><|code_end|>
  503. critiques<|t_0.60|><|code_start|><|559|><|584|><|1163|><|1129|><|1313|><|1728|><|721|><|1146|><|1093|><|577|><|928|><|27|><|630|><|1080|><|1346|><|1337|><|320|><|1382|><|1175|><|1682|><|1556|><|990|><|1683|><|860|><|1721|><|110|><|786|><|376|><|1085|><|756|><|1523|><|234|><|1334|><|1506|><|1578|><|659|><|612|><|1108|><|1466|><|1647|><|308|><|1470|><|746|><|556|><|1061|><|code_end|>
  504. about<|t_0.29|><|code_start|><|26|><|1649|><|545|><|1367|><|1263|><|1728|><|450|><|859|><|1434|><|497|><|1220|><|1285|><|179|><|755|><|1154|><|779|><|179|><|1229|><|1213|><|922|><|1774|><|1408|><|code_end|>
  505. some<|t_0.23|><|code_start|><|986|><|28|><|1649|><|778|><|858|><|1519|><|1|><|18|><|26|><|1042|><|1174|><|1309|><|1499|><|1712|><|1692|><|1516|><|1574|><|code_end|>
  506. of<|t_0.07|><|code_start|><|197|><|716|><|1039|><|1662|><|64|><|code_end|>
  507. the<|t_0.08|><|code_start|><|1811|><|1568|><|569|><|886|><|1025|><|1374|><|code_end|>
  508. gameplay<|t_0.48|><|code_start|><|1269|><|1092|><|933|><|1362|><|1762|><|1700|><|1675|><|215|><|781|><|1086|><|461|><|838|><|1022|><|759|><|649|><|1416|><|1004|><|551|><|909|><|787|><|343|><|830|><|1391|><|1040|><|1622|><|1779|><|1360|><|1231|><|1187|><|1317|><|76|><|997|><|989|><|978|><|737|><|189|><|code_end|>
  509. aspects<|t_0.56|><|code_start|><|1423|><|797|><|1316|><|1222|><|147|><|719|><|1347|><|386|><|1390|><|1558|><|154|><|440|><|634|><|592|><|1097|><|1718|><|712|><|763|><|1118|><|1721|><|1311|><|868|><|580|><|362|><|1435|><|868|><|247|><|221|><|886|><|1145|><|1274|><|1284|><|457|><|1043|><|1459|><|1818|><|62|><|599|><|1035|><|62|><|1649|><|778|><|code_end|>
  510. but<|t_0.20|><|code_start|><|780|><|1825|><|1681|><|1007|><|861|><|710|><|702|><|939|><|1669|><|1491|><|613|><|1739|><|823|><|1469|><|648|><|code_end|>
  511. its<|t_0.09|><|code_start|><|92|><|688|><|1623|><|962|><|1670|><|527|><|599|><|code_end|>
  512. still<|t_0.27|><|code_start|><|636|><|10|><|1217|><|344|><|713|><|957|><|823|><|154|><|1649|><|1286|><|508|><|214|><|1760|><|1250|><|456|><|1352|><|1368|><|921|><|615|><|5|><|code_end|>
  513. really<|t_0.36|><|code_start|><|55|><|420|><|1008|><|1659|><|27|><|644|><|1266|><|617|><|761|><|1712|><|109|><|1465|><|1587|><|503|><|1541|><|619|><|197|><|1019|><|817|><|269|><|377|><|362|><|1381|><|507|><|1488|><|4|><|1695|><|code_end|>
  514. enjoyable<|t_0.49|><|code_start|><|678|><|501|><|864|><|319|><|288|><|1472|><|1341|><|686|><|562|><|1463|><|619|><|1563|><|471|><|911|><|730|><|1811|><|1006|><|520|><|861|><|1274|><|125|><|1431|><|638|><|621|><|153|><|876|><|1770|><|437|><|987|><|1653|><|1109|><|898|><|1285|><|80|><|593|><|1709|><|843|><|code_end|>
  515. and<|t_0.15|><|code_start|><|1285|><|987|><|303|><|1037|><|730|><|1164|><|502|><|120|><|1737|><|1655|><|1318|><|code_end|>
  516. it<|t_0.09|><|code_start|><|848|><|1366|><|395|><|1601|><|1513|><|593|><|1302|><|code_end|>
  517. looks<|t_0.27|><|code_start|><|1281|><|1266|><|1755|><|572|><|248|><|1751|><|1257|><|695|><|1380|><|457|><|659|><|585|><|1315|><|1105|><|1776|><|736|><|24|><|736|><|654|><|1027|><|code_end|>
  518. lovely<|t_0.56|><|code_start|><|634|><|596|><|1766|><|1556|><|1306|><|1285|><|1481|><|1721|><|1123|><|438|><|1246|><|1251|><|795|><|659|><|1381|><|1658|><|217|><|1772|><|562|><|952|><|107|><|1129|><|1112|><|467|><|550|><|1079|><|840|><|1615|><|1469|><|1380|><|168|><|917|><|836|><|1827|><|437|><|583|><|67|><|595|><|1087|><|1646|><|1493|><|1677|><|code_end|>)";
  519. // audio data for 0.3 version
  520. outetts_version tts_version = get_tts_version(model_ttc);
  521. if (tts_version == OUTETTS_V0_3) {
  522. audio_text = std::regex_replace(audio_text, std::regex(R"(<\|text_sep\|>)"), "<|space|>");
  523. audio_data = std::regex_replace(audio_data, std::regex(R"(<\|code_start\|>)"), "");
  524. audio_data = std::regex_replace(audio_data, std::regex(R"(<\|code_end\|>)"), "<|space|>");
  525. }
  526. // load speaker if given
  527. if (!params.vocoder.speaker_file.empty()) {
  528. LOG_INF("%s: loading speaker ..\n", __func__);
  529. json speaker = speaker_from_file(params.vocoder.speaker_file);
  530. if (speaker.empty()) {
  531. LOG_ERR("%s: Failed to load speaker file '%s'\n", __func__, params.vocoder.speaker_file.c_str());
  532. return 1;
  533. }
  534. audio_text = audio_text_from_speaker(speaker, tts_version);
  535. audio_data = audio_data_from_speaker(speaker, tts_version);
  536. }
  537. // process prompt and generate voice codes
  538. {
  539. LOG_INF("%s: constructing prompt ..\n", __func__);
  540. std::vector<llama_token> prompt_inp;
  541. prompt_init(prompt_inp, vocab);
  542. prompt_add(prompt_inp, vocab, audio_text, false, true);
  543. // convert the input text into the necessary format expected by OuteTTS
  544. {
  545. std::string prompt_clean = process_text(params.prompt, tts_version);
  546. if (params.vocoder.use_guide_tokens) {
  547. guide_tokens = prepare_guide_tokens(vocab, prompt_clean, tts_version);
  548. }
  549. LOG_INF("%s: prompt: '%s'\n", __func__, prompt_clean.c_str());
  550. prompt_add(prompt_inp, vocab, prompt_clean, false, true);
  551. }
  552. prompt_add(prompt_inp, vocab, "<|text_end|>\n", false, true);
  553. if (!params.vocoder.speaker_file.empty()) {
  554. prompt_add(prompt_inp, vocab, audio_data, false, true);
  555. } else {
  556. // disabled to save time on tokenizing each time
  557. #if 1
  558. const std::string voice_data = audio_data;
  559. auto tmp = common_tokenize(vocab, voice_data, false, true);
  560. printf("\n\n");
  561. for (size_t i = 0; i < tmp.size(); ++i) {
  562. printf("%d, ", tmp[i]);
  563. }
  564. printf("\n\n");
  565. prompt_add(prompt_inp, tmp);
  566. #else
  567. prompt_add(prompt_inp, llama_tokens {
  568. 151667, 198, 1782, 155780, 151669, 151929, 152412, 152308, 152585,
  569. 152460, 153375, 151670, 198, 74455, 155808, 151669, 151799,
  570. 151873, 151863, 152446, 152372, 152204, 152728, 152229, 152470,
  571. 151970, 153413, 152419, 153334, 153289, 153374, 153199, 152040,
  572. 153260, 152721, 152680, 153297, 152419, 153248, 152400, 152691,
  573. 153368, 153437, 151670, 198, 1722, 155828, 151669, 152607,
  574. 152256, 152991, 152299, 152688, 153163, 153016, 152789, 153198,
  575. 152712, 151911, 153107, 152623, 152170, 152395, 152852, 152207,
  576. 152461, 153321, 153309, 151750, 152137, 153340, 152573, 152267,
  577. 153347, 151789, 152681, 153339, 151992, 152512, 151751, 152179,
  578. 153434, 153180, 152900, 153440, 152474, 153122, 153129, 151904,
  579. 152311, 151670, 198, 1499, 155791, 151669, 152276, 152454,
  580. 153354, 152544, 153204, 153272, 152708, 153433, 152319, 153226,
  581. 153043, 152325, 153267, 152622, 151670, 198, 4250, 155797,
  582. 151669, 153454, 153342, 151989, 152458, 153420, 152303, 152271,
  583. 152827, 153036, 153196, 151708, 153263, 152561, 153207, 152213,
  584. 152112, 153204, 151722, 152542, 151670, 198, 19789, 155796,
  585. 151669, 153353, 153182, 152345, 152471, 152477, 153014, 152002,
  586. 152191, 151734, 152312, 152810, 152237, 153224, 153169, 153224,
  587. 152244, 153387, 153404, 151670, 198, 16069, 155811, 151669,
  588. 152265, 151946, 151808, 152412, 152363, 152305, 153156, 152733,
  589. 152810, 153157, 152016, 152100, 152069, 153234, 152317, 152589,
  590. 152707, 153121, 153341, 152159, 152114, 153156, 153001, 153504,
  591. 153376, 152272, 152433, 152325, 151941, 151670, 198, 285,
  592. 155788, 151669, 152238, 152255, 153427, 152318, 153009, 152381,
  593. 152474, 152680, 152157, 153255, 152324, 151682, 151670, 198,
  594. 32955, 155804, 151669, 153490, 153419, 152364, 152405, 152682,
  595. 152206, 152078, 153369, 152725, 153193, 153027, 152946, 152488,
  596. 153070, 151883, 152890, 152489, 153144, 153375, 152358, 151685,
  597. 152494, 152117, 152740, 151670, 198, 37448, 480, 155840, 151669,
  598. 151902, 152720, 153377, 152027, 152378, 152821, 153207, 153459,
  599. 153028, 153068, 152507, 153255, 152158, 152921, 151958, 152609,
  600. 152748, 152822, 152286, 151714, 152730, 152377, 152353, 152470,
  601. 152606, 152162, 152186, 153071, 152244, 153118, 153375, 153018,
  602. 152712, 153098, 152976, 152336, 151843, 153202, 152297, 151736,
  603. 153380, 153502, 152702, 152115, 153181, 152735, 153277, 153457,
  604. 152393, 153112, 152595, 151670, 198, 19098, 155808, 151669,
  605. 152464, 153452, 152595, 153312, 151937, 151933, 153197, 152239,
  606. 153163, 152922, 153402, 152034, 152591, 153438, 152215, 151673,
  607. 152005, 151785, 152642, 151924, 153278, 151805, 151974, 153482,
  608. 152718, 152862, 153347, 151670, 198, 72, 155780, 151669, 151795,
  609. 152111, 152746, 152377, 153471, 152309, 151670, 198, 19016,
  610. 155788, 151669, 153181, 152271, 152190, 152842, 152224, 152701,
  611. 152939, 152536, 152091, 151815, 152733, 151672, 151670, 198,
  612. 14689, 155788, 151669, 152291, 152072, 152942, 151734, 153042,
  613. 153504, 152589, 153333, 151839, 151941, 153038, 153180, 151670,
  614. 198, 36996, 8303, 155832, 151669, 152231, 152256, 152835,
  615. 152801, 152985, 153400, 152393, 152818, 152765, 152249, 152600,
  616. 151699, 152302, 152752, 153018, 153009, 151992, 153054, 152847,
  617. 153354, 153228, 152662, 153355, 152532, 153393, 151782, 152458,
  618. 152048, 152757, 152428, 153195, 151906, 153006, 153178, 153250,
  619. 152331, 152284, 152780, 153138, 153319, 151980, 153142, 152418,
  620. 152228, 152733, 151670, 198, 9096, 155801, 151669, 151698,
  621. 153321, 152217, 153039, 152935, 153400, 152122, 152531, 153106,
  622. 152169, 152892, 152957, 151851, 152427, 152826, 152451, 151851,
  623. 152901, 152885, 152594, 153446, 153080, 151670, 198, 14689,
  624. 155795, 151669, 152658, 151700, 153321, 152450, 152530, 153191,
  625. 151673, 151690, 151698, 152714, 152846, 152981, 153171, 153384,
  626. 153364, 153188, 153246, 151670, 198, 1055, 155779, 151669,
  627. 151869, 152388, 152711, 153334, 151736, 151670, 198, 1782,
  628. 155780, 151669, 153483, 153240, 152241, 152558, 152697, 153046,
  629. 151670, 198, 5804, 1363, 155820, 151669, 152941, 152764, 152605,
  630. 153034, 153434, 153372, 153347, 151887, 152453, 152758, 152133,
  631. 152510, 152694, 152431, 152321, 153088, 152676, 152223, 152581,
  632. 152459, 152015, 152502, 153063, 152712, 153294, 153451, 153032,
  633. 152903, 152859, 152989, 151748, 152669, 152661, 152650, 152409,
  634. 151861, 151670, 198, 300, 7973, 155828, 151669, 153095, 152469,
  635. 152988, 152894, 151819, 152391, 153019, 152058, 153062, 153230,
  636. 151826, 152112, 152306, 152264, 152769, 153390, 152384, 152435,
  637. 152790, 153393, 152983, 152540, 152252, 152034, 153107, 152540,
  638. 151919, 151893, 152558, 152817, 152946, 152956, 152129, 152715,
  639. 153131, 153490, 151734, 152271, 152707, 151734, 153321, 152450,
  640. 151670, 198, 8088, 155792, 151669, 152452, 153497, 153353,
  641. 152679, 152533, 152382, 152374, 152611, 153341, 153163, 152285,
  642. 153411, 152495, 153141, 152320, 151670, 198, 1199, 155781,
  643. 151669, 151764, 152360, 153295, 152634, 153342, 152199, 152271,
  644. 151670, 198, 43366, 155799, 151669, 152308, 151682, 152889,
  645. 152016, 152385, 152629, 152495, 151826, 153321, 152958, 152180,
  646. 151886, 153432, 152922, 152128, 153024, 153040, 152593, 152287,
  647. 151677, 151670, 198, 53660, 155808, 151669, 151727, 152092,
  648. 152680, 153331, 151699, 152316, 152938, 152289, 152433, 153384,
  649. 151781, 153137, 153259, 152175, 153213, 152291, 151869, 152691,
  650. 152489, 151941, 152049, 152034, 153053, 152179, 153160, 151676,
  651. 153367, 151670, 198, 268, 4123, 480, 155821, 151669, 152350,
  652. 152173, 152536, 151991, 151960, 153144, 153013, 152358, 152234,
  653. 153135, 152291, 153235, 152143, 152583, 152402, 153483, 152678,
  654. 152192, 152533, 152946, 151797, 153103, 152310, 152293, 151825,
  655. 152548, 153442, 152109, 152659, 153325, 152781, 152570, 152957,
  656. 151752, 152265, 153381, 152515, 151670, 198, 437, 155787,
  657. 151669, 152957, 152659, 151975, 152709, 152402, 152836, 152174,
  658. 151792, 153409, 153327, 152990, 151670, 198, 275, 155781,
  659. 151669, 152520, 153038, 152067, 153273, 153185, 152265, 152974,
  660. 151670, 198, 94273, 155799, 151669, 152953, 152938, 153427,
  661. 152244, 151920, 153423, 152929, 152367, 153052, 152129, 152331,
  662. 152257, 152987, 152777, 153448, 152408, 151696, 152408, 152326,
  663. 152699, 151670, 198, 385, 16239, 155828, 151669, 152306, 152268,
  664. 153438, 153228, 152978, 152957, 153153, 153393, 152795, 152110,
  665. 152918, 152923, 152467, 152331, 153053, 153330, 151889, 153444,
  666. 152234, 152624, 151779, 152801, 152784, 152139, 152222, 152751,
  667. 152512, 153287, 153141, 153052, 151840, 152589, 152508, 153499,
  668. 152109, 152255, 151739, 152267, 152759, 153318, 153165, 153349,
  669. 151670,});
  670. #endif
  671. }
  672. // print the prompt token-by-token
  673. LOG("\n");
  674. for (auto id : prompt_inp) {
  675. LOG("%s", common_token_to_piece(ctx_ttc, id).c_str());
  676. }
  677. LOG_INF("%s: prompt size: %d\n", __func__, (int) prompt_inp.size());
  678. LOG("\n");
  679. // create a llama_batch
  680. // we use this object to submit token data for decoding
  681. llama_batch batch = llama_batch_init(std::max(prompt_inp.size(), (size_t) n_parallel), 0, n_parallel);
  682. std::vector<llama_seq_id> seq_ids(n_parallel, 0);
  683. for (int32_t i = 0; i < n_parallel; ++i) {
  684. seq_ids[i] = i;
  685. }
  686. // evaluate the initial prompt
  687. for (size_t i = 0; i < prompt_inp.size(); ++i) {
  688. common_batch_add(batch, prompt_inp[i], i, seq_ids, false);
  689. }
  690. GGML_ASSERT(batch.n_tokens == (int) prompt_inp.size());
  691. // llama_decode will output logits only for the last token of the prompt
  692. batch.logits[batch.n_tokens - 1] = true;
  693. if (llama_decode(ctx_ttc, batch) != 0) {
  694. LOG_ERR("%s: llama_decode() failed\n", __func__);
  695. return 1;
  696. }
  697. if (n_parallel > 1) {
  698. LOG_INF("\n\n%s: generating %d sequences ...\n", __func__, n_parallel);
  699. }
  700. llama_synchronize(ctx_ttc);
  701. LOG_INF("%s: time for prompt: %.3f ms\n\n", __func__, (ggml_time_us() - t_main_start) / 1000.0f);
  702. const auto t_dec_start = ggml_time_us();
  703. // main loop
  704. // remember the batch index of the last token for each parallel sequence
  705. // we need this to determine which logits to sample from
  706. std::vector<int32_t> i_batch(n_parallel, batch.n_tokens - 1);
  707. int n_past = batch.n_tokens;
  708. int n_decode = 0;
  709. bool next_token_uses_guide_token = true;
  710. while (n_decode <= n_predict) {
  711. // prepare the next batch
  712. common_batch_clear(batch);
  713. // sample the next token for each parallel sequence / stream
  714. for (int32_t i = 0; i < n_parallel; ++i) {
  715. if (i_batch[i] < 0) {
  716. // the stream has already finished
  717. continue;
  718. }
  719. llama_token new_token_id = common_sampler_sample(smpl[i], ctx_ttc, i_batch[i]);
  720. //guide tokens help prevent hallucinations by forcing the TTS to use the correct word
  721. if (!guide_tokens.empty() && next_token_uses_guide_token && !llama_vocab_is_control(vocab, new_token_id) && !llama_vocab_is_eog(vocab, new_token_id)) {
  722. llama_token guide_token = guide_tokens[0];
  723. guide_tokens.erase(guide_tokens.begin());
  724. new_token_id = guide_token; //ensure correct word fragment is used
  725. }
  726. //this is the token id that always precedes a new word
  727. next_token_uses_guide_token = (new_token_id == 198);
  728. common_sampler_accept(smpl[i], new_token_id, true);
  729. codes.push_back(new_token_id);
  730. const auto * cands = common_sampler_get_candidates(smpl[i]);
  731. // is it an end of generation? -> mark the stream as finished
  732. if (llama_vocab_is_eog(vocab, new_token_id) || n_decode == n_predict) {
  733. std::string reason;
  734. if (llama_vocab_is_eog(vocab, new_token_id)) {
  735. reason = "eos";
  736. } else {
  737. reason = "n_predict";
  738. }
  739. i_batch[i] = -1;
  740. LOG("\n");
  741. if (n_parallel > 1) {
  742. LOG_CNT("\n");
  743. LOG_INF("%s: stream %d finished at n_past = %d, reason = '%s'\n", __func__, i, n_past, reason.c_str());
  744. }
  745. continue;
  746. }
  747. {
  748. const float p = cands->data[cands->selected].p;
  749. const int col = std::max(0, std::min((int) k_colors.size() - 1, (int) ((3*p)*float(k_colors.size()))));
  750. LOG_CNT("%s%d%s", k_colors[col].c_str(), i, "\033[0m");
  751. //LOG_CNT("%d", i);
  752. }
  753. i_batch[i] = batch.n_tokens;
  754. // push this new token for next evaluation
  755. common_batch_add(batch, new_token_id, n_past, { i }, true);
  756. }
  757. // all streams are finished
  758. if (batch.n_tokens == 0) {
  759. break;
  760. }
  761. n_decode += 1;
  762. n_past += 1;
  763. // evaluate the current batch with the transformer model
  764. if (llama_decode(ctx_ttc, batch)) {
  765. LOG_ERR("%s : failed to eval, return code %d\n", __func__, 1);
  766. return 1;
  767. }
  768. }
  769. llama_batch_free(batch);
  770. LOG("\n");
  771. LOG_INF("%s: time for decoder: %.3f ms\n", __func__, (ggml_time_us() - t_dec_start) / 1000.0f);
  772. }
  773. common_perf_print(ctx_ttc, smpl[0]);
  774. //std::vector<llama_token> codes = {198, 88225, 155856, 151669, 152205,
  775. // 153064, 152537, 153421, 153209, 152524, 151689, 152993, 152438, 152695,
  776. // 153091, 152945, 152829, 152534, 152934, 153020, 151997, 152263, 153010,
  777. // 153146, 152399, 153208, 152496, 151793, 152848, 152263, 152571, 153286,
  778. // 152227, 153300, 152934, 152263, 153208, 152263, 152965, 152430, 152296,
  779. // 153146, 152920, 152376, 152556, 153363, 151775, 152044, 152972, 152690,
  780. // 153379, 152368, 152233, 153422, 152490, 151996, 152022, 151694, 152061,
  781. // 153238, 152539, 153356, 152640, 153021, 153123, 151962, 153094, 151670,
  782. // 198, 20339, 13189, 155824, 151669, 152070, 152007, 152910, 151683,
  783. // 152000, 152373, 152760, 152046, 151735, 152334, 152394, 153073, 152908,
  784. // 151856, 151953, 153247, 153293, 151903, 153480, 153168, 152478, 153359,
  785. // 153429, 151905, 151678, 152567, 152411, 152165, 152556, 153075, 153424,
  786. // 151993, 152999, 153078, 152151, 152088, 153389, 152484, 151874, 151670,
  787. // 198, 285, 155784, 151669, 152226, 152126, 152638, 153215, 151729,
  788. // 152959, 153479, 153059, 151838, 151670, 198, 1782, 155783, 151669,
  789. // 153288, 153055, 153314, 152497, 152962, 152741, 152076, 153253, 151670,
  790. // 198, 471, 16488, 155825, 151669, 152060, 152916, 151893, 153469, 152501,
  791. // 152080, 152743, 151932, 153161, 152096, 152761, 152698, 153401, 153242,
  792. // 153336, 152441, 152838, 153467, 152706, 153496, 153310, 152422, 153360,
  793. // 153115, 152763, 151998, 152373, 153450, 152554, 151968, 153323, 152055,
  794. // 152468, 153111, 153358, 152813, 152010, 151770, 152823, 152960, 151670,
  795. // 198, 22627, 155823, 151669, 152814, 152366, 153484, 152931, 153441,
  796. // 152164, 152877, 152915, 153463, 151692, 152911, 152747, 152776, 151831,
  797. // 153449, 151882, 152975, 152031, 152513, 153150, 152448, 152667, 153133,
  798. // 153189, 152619, 153466, 152054, 152106, 153119, 152277, 152439, 153109,
  799. // 152997, 152141, 153154, 153256, 153311, 151922, 151670, 198, 1055,
  800. // 155781, 151669, 152633, 151850, 153060, 153270, 152560, 153348, 152729,
  801. // 151670, 198, 25312, 155803, 151669, 152521, 153403, 152561, 153337,
  802. // 153383, 152199, 153493, 153326, 151830, 152254, 152248, 152349, 152153,
  803. // 153007, 151823, 153037, 152575, 152457, 152406, 152592, 153116, 153365,
  804. // 153456, 151670, 198, 88225, 155817, 151669, 153271, 151925, 152218,
  805. // 152418, 152253, 153140, 151903, 153151, 152626, 152338, 152647, 153464,
  806. // 152785, 152768, 151711, 152037, 152033, 151804, 152216, 151701, 151855,
  807. // 152348, 152995, 152955, 152905, 152342, 152340, 153391, 153453, 152418,
  808. // 153415, 151990, 153083, 152884, 151670, 198, 151668, 198, 151645};
  809. {
  810. const std::string inp_txt = common_detokenize(ctx_ttc, codes, true);
  811. LOG("\n");
  812. LOG_INF("codes: '%s'\n", inp_txt.c_str());
  813. LOG_INF("%s: codes size: %d\n", __func__, (int) codes.size());
  814. }
  815. // remove all non-audio tokens (i.e. < 151672 || > 155772)
  816. codes.erase(std::remove_if(codes.begin(), codes.end(), [](llama_token t) { return t < 151672 || t > 155772; }), codes.end());
  817. {
  818. const std::string inp_txt = common_detokenize(ctx_ttc, codes, true);
  819. LOG_INF("codes audio: '%s'\n", inp_txt.c_str());
  820. LOG_INF("%s: codes audio size: %d\n", __func__, (int) codes.size());
  821. }
  822. for (auto & token : codes) {
  823. token -= 151672;
  824. }
  825. const auto t_voc_start = ggml_time_us();
  826. const int n_codes = codes.size();
  827. llama_batch batch = llama_batch_init(n_codes, 0, 1);
  828. for (size_t i = 0; i < codes.size(); ++i) {
  829. common_batch_add(batch, codes[i], i, { 0 }, true); // TODO: all logits?
  830. }
  831. GGML_ASSERT(batch.n_tokens == n_codes);
  832. if (llama_decode(ctx_cts, batch) != 0) {
  833. LOG_ERR("%s: llama_decode() failed\n", __func__);
  834. return 1;
  835. }
  836. llama_synchronize(ctx_cts);
  837. LOG_INF("%s: time for vocoder: %.3f ms\n", __func__, (ggml_time_us() - t_voc_start) / 1000.0f);
  838. const auto t_spec_start = ggml_time_us();
  839. #if 1
  840. // spectral operations
  841. const int n_embd = llama_model_n_embd(model_cts);
  842. const float * embd = llama_get_embeddings(ctx_cts);
  843. auto audio = embd_to_audio(embd, n_codes, n_embd, params.cpuparams.n_threads);
  844. #else
  845. // read the spectrogram from a file for debugging purposes
  846. std::vector<float> audio;
  847. {
  848. std::ifstream fin("out.bin", std::ios::binary);
  849. if (!fin) {
  850. LOG_ERR("%s: failed to open file '%s'\n", __func__, "out.bin");
  851. return 1;
  852. }
  853. std::vector<float> embd;
  854. int n_codes;
  855. int n_embd;
  856. fin.read(reinterpret_cast<char *>(&n_codes), sizeof(int));
  857. fin.read(reinterpret_cast<char *>(&n_embd), sizeof(int));
  858. embd.resize(n_codes * n_embd);
  859. fin.read(reinterpret_cast<char *>(embd.data()), n_codes * n_embd * sizeof(float));
  860. fin.close();
  861. LOG_INF("%s: n_codes: %d, n_embd: %d\n", __func__, n_codes, n_embd);
  862. audio = embd_to_audio(embd.data(), n_codes, n_embd, params.cpuparams.n_threads);
  863. }
  864. #endif
  865. const std::string fname = "output.wav";
  866. const int n_sr = 24000; // sampling rate
  867. // zero out first 0.25 seconds
  868. for (int i = 0; i < 24000/4; ++i) {
  869. audio[i] = 0.0f;
  870. }
  871. LOG_INF("%s: time for spectral ops: %.3f ms\n", __func__, (ggml_time_us() - t_spec_start) / 1000.0f);
  872. LOG_INF("%s: total time: %.3f ms\n", __func__, (ggml_time_us() - t_main_start) / 1000.0f);
  873. save_wav16(fname, audio, n_sr);
  874. LOG_INF("%s: audio written to file '%s'\n", __func__, fname.c_str());
  875. llama_backend_free();
  876. return 0;
  877. }