funasr-wss-server.cpp 20 KB

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  1. /**
  2. * Copyright FunASR (https://github.com/alibaba-damo-academy/FunASR). All Rights
  3. * Reserved. MIT License (https://opensource.org/licenses/MIT)
  4. */
  5. /* 2022-2023 by zhaomingwork */
  6. // io server
  7. // Usage:funasr-wss-server [--model_thread_num <int>] [--decoder_thread_num <int>]
  8. // [--io_thread_num <int>] [--port <int>] [--listen_ip
  9. // <string>] [--punc-quant <string>] [--punc-dir <string>]
  10. // [--vad-quant <string>] [--vad-dir <string>] [--quantize
  11. // <string>] --model-dir <string> [--] [--version] [-h]
  12. #include "websocket-server.h"
  13. #ifdef _WIN32
  14. #include "win_func.h"
  15. #else
  16. #include <unistd.h>
  17. #endif
  18. #include <fstream>
  19. #include "util.h"
  20. // hotwords
  21. std::unordered_map<std::string, int> hws_map_;
  22. int fst_inc_wts_=20;
  23. float global_beam_, lattice_beam_, am_scale_;
  24. using namespace std;
  25. void GetValue(TCLAP::ValueArg<std::string>& value_arg, string key,
  26. std::map<std::string, std::string>& model_path) {
  27. model_path.insert({key, value_arg.getValue()});
  28. LOG(INFO) << key << " : " << value_arg.getValue();
  29. }
  30. int main(int argc, char* argv[]) {
  31. try {
  32. google::InitGoogleLogging(argv[0]);
  33. FLAGS_logtostderr = true;
  34. TCLAP::CmdLine cmd("funasr-wss-server", ' ', "1.0");
  35. TCLAP::ValueArg<std::string> download_model_dir(
  36. "", "download-model-dir",
  37. "Download model from Modelscope to download_model_dir",
  38. false, "/workspace/models", "string");
  39. TCLAP::ValueArg<std::string> model_dir(
  40. "", MODEL_DIR,
  41. "default: /workspace/models/asr, the asr model path, which contains model_quant.onnx, config.yaml, am.mvn",
  42. false, "/workspace/models/asr", "string");
  43. TCLAP::ValueArg<std::string> model_revision(
  44. "", "model-revision",
  45. "ASR model revision",
  46. false, "v1.2.1", "string");
  47. TCLAP::ValueArg<std::string> quantize(
  48. "", QUANTIZE,
  49. "true (Default), load the model of model_quant.onnx in model_dir. If set "
  50. "false, load the model of model.onnx in model_dir",
  51. false, "true", "string");
  52. TCLAP::ValueArg<std::string> vad_dir(
  53. "", VAD_DIR,
  54. "default: /workspace/models/vad, the vad model path, which contains model_quant.onnx, vad.yaml, vad.mvn",
  55. false, "/workspace/models/vad", "string");
  56. TCLAP::ValueArg<std::string> vad_revision(
  57. "", "vad-revision",
  58. "VAD model revision",
  59. false, "v1.2.0", "string");
  60. TCLAP::ValueArg<std::string> vad_quant(
  61. "", VAD_QUANT,
  62. "true (Default), load the model of model_quant.onnx in vad_dir. If set "
  63. "false, load the model of model.onnx in vad_dir",
  64. false, "true", "string");
  65. TCLAP::ValueArg<std::string> punc_dir(
  66. "", PUNC_DIR,
  67. "default: /workspace/models/punc, the punc model path, which contains model_quant.onnx, punc.yaml",
  68. false, "/workspace/models/punc",
  69. "string");
  70. TCLAP::ValueArg<std::string> punc_revision(
  71. "", "punc-revision",
  72. "PUNC model revision",
  73. false, "v1.1.7", "string");
  74. TCLAP::ValueArg<std::string> punc_quant(
  75. "", PUNC_QUANT,
  76. "true (Default), load the model of model_quant.onnx in punc_dir. If set "
  77. "false, load the model of model.onnx in punc_dir",
  78. false, "true", "string");
  79. TCLAP::ValueArg<std::string> itn_dir(
  80. "", ITN_DIR,
  81. "default: thuduj12/fst_itn_zh, the itn model path, which contains "
  82. "zh_itn_tagger.fst, zh_itn_verbalizer.fst",
  83. false, "thuduj12/fst_itn_zh", "string");
  84. TCLAP::ValueArg<std::string> itn_revision(
  85. "", "itn-revision", "ITN model revision", false, "v1.0.1", "string");
  86. TCLAP::ValueArg<std::string> listen_ip("", "listen-ip", "listen ip", false,
  87. "0.0.0.0", "string");
  88. TCLAP::ValueArg<int> port("", "port", "port", false, 10095, "int");
  89. TCLAP::ValueArg<int> io_thread_num("", "io-thread-num", "io thread num",
  90. false, 8, "int");
  91. TCLAP::ValueArg<int> decoder_thread_num(
  92. "", "decoder-thread-num", "decoder thread num", false, 8, "int");
  93. TCLAP::ValueArg<int> model_thread_num("", "model-thread-num",
  94. "model thread num", false, 1, "int");
  95. TCLAP::ValueArg<std::string> certfile("", "certfile",
  96. "default: ../../../ssl_key/server.crt, path of certficate for WSS connection. if it is empty, it will be in WS mode.",
  97. false, "../../../ssl_key/server.crt", "string");
  98. TCLAP::ValueArg<std::string> keyfile("", "keyfile",
  99. "default: ../../../ssl_key/server.key, path of keyfile for WSS connection",
  100. false, "../../../ssl_key/server.key", "string");
  101. TCLAP::ValueArg<float> global_beam("", GLOB_BEAM, "the decoding beam for beam searching ", false, 3.0, "float");
  102. TCLAP::ValueArg<float> lattice_beam("", LAT_BEAM, "the lattice generation beam for beam searching ", false, 3.0, "float");
  103. TCLAP::ValueArg<float> am_scale("", AM_SCALE, "the acoustic scale for beam searching ", false, 10.0, "float");
  104. TCLAP::ValueArg<std::string> lm_dir("", LM_DIR,
  105. "the LM model path, which contains compiled models: TLG.fst, config.yaml ", false, "damo/speech_ngram_lm_zh-cn-ai-wesp-fst", "string");
  106. TCLAP::ValueArg<std::string> lm_revision(
  107. "", "lm-revision", "LM model revision", false, "v1.0.1", "string");
  108. TCLAP::ValueArg<std::string> hotword("", HOTWORD,
  109. "the hotword file, one hotword perline, Format: Hotword Weight (could be: 阿里巴巴 20)",
  110. false, "/workspace/resources/hotwords.txt", "string");
  111. TCLAP::ValueArg<std::int32_t> fst_inc_wts("", FST_INC_WTS,
  112. "the fst hotwords incremental bias", false, 20, "int32_t");
  113. // add file
  114. cmd.add(hotword);
  115. cmd.add(fst_inc_wts);
  116. cmd.add(global_beam);
  117. cmd.add(lattice_beam);
  118. cmd.add(am_scale);
  119. cmd.add(certfile);
  120. cmd.add(keyfile);
  121. cmd.add(download_model_dir);
  122. cmd.add(model_dir);
  123. cmd.add(model_revision);
  124. cmd.add(quantize);
  125. cmd.add(vad_dir);
  126. cmd.add(vad_revision);
  127. cmd.add(vad_quant);
  128. cmd.add(punc_dir);
  129. cmd.add(punc_revision);
  130. cmd.add(punc_quant);
  131. cmd.add(itn_dir);
  132. cmd.add(itn_revision);
  133. cmd.add(lm_dir);
  134. cmd.add(lm_revision);
  135. cmd.add(listen_ip);
  136. cmd.add(port);
  137. cmd.add(io_thread_num);
  138. cmd.add(decoder_thread_num);
  139. cmd.add(model_thread_num);
  140. cmd.parse(argc, argv);
  141. std::map<std::string, std::string> model_path;
  142. GetValue(model_dir, MODEL_DIR, model_path);
  143. GetValue(quantize, QUANTIZE, model_path);
  144. GetValue(vad_dir, VAD_DIR, model_path);
  145. GetValue(vad_quant, VAD_QUANT, model_path);
  146. GetValue(punc_dir, PUNC_DIR, model_path);
  147. GetValue(punc_quant, PUNC_QUANT, model_path);
  148. GetValue(itn_dir, ITN_DIR, model_path);
  149. GetValue(lm_dir, LM_DIR, model_path);
  150. GetValue(hotword, HOTWORD, model_path);
  151. GetValue(model_revision, "model-revision", model_path);
  152. GetValue(vad_revision, "vad-revision", model_path);
  153. GetValue(punc_revision, "punc-revision", model_path);
  154. GetValue(itn_revision, "itn-revision", model_path);
  155. GetValue(lm_revision, "lm-revision", model_path);
  156. global_beam_ = global_beam.getValue();
  157. lattice_beam_ = lattice_beam.getValue();
  158. am_scale_ = am_scale.getValue();
  159. // Download model form Modelscope
  160. try{
  161. std::string s_download_model_dir = download_model_dir.getValue();
  162. std::string s_vad_path = model_path[VAD_DIR];
  163. std::string s_vad_quant = model_path[VAD_QUANT];
  164. std::string s_asr_path = model_path[MODEL_DIR];
  165. std::string s_asr_quant = model_path[QUANTIZE];
  166. std::string s_punc_path = model_path[PUNC_DIR];
  167. std::string s_punc_quant = model_path[PUNC_QUANT];
  168. std::string s_itn_path = model_path[ITN_DIR];
  169. std::string s_lm_path = model_path[LM_DIR];
  170. std::string python_cmd = "python -m funasr.utils.runtime_sdk_download_tool --type onnx --quantize True ";
  171. if(vad_dir.isSet() && !s_vad_path.empty()){
  172. std::string python_cmd_vad;
  173. std::string down_vad_path;
  174. std::string down_vad_model;
  175. if (access(s_vad_path.c_str(), F_OK) == 0){
  176. // local
  177. python_cmd_vad = python_cmd + " --model-name " + s_vad_path + " --export-dir ./ " + " --model_revision " + model_path["vad-revision"];
  178. down_vad_path = s_vad_path;
  179. }else{
  180. // modelscope
  181. LOG(INFO) << "Download model: " << s_vad_path << " from modelscope: ";
  182. python_cmd_vad = python_cmd + " --model-name " + s_vad_path + " --export-dir " + s_download_model_dir + " --model_revision " + model_path["vad-revision"];
  183. down_vad_path = s_download_model_dir+"/"+s_vad_path;
  184. }
  185. int ret = system(python_cmd_vad.c_str());
  186. if(ret !=0){
  187. LOG(INFO) << "Failed to download model from modelscope. If you set local vad model path, you can ignore the errors.";
  188. }
  189. down_vad_model = down_vad_path+"/model_quant.onnx";
  190. if(s_vad_quant=="false" || s_vad_quant=="False" || s_vad_quant=="FALSE"){
  191. down_vad_model = down_vad_path+"/model.onnx";
  192. }
  193. if (access(down_vad_model.c_str(), F_OK) != 0){
  194. LOG(ERROR) << down_vad_model << " do not exists.";
  195. exit(-1);
  196. }else{
  197. model_path[VAD_DIR]=down_vad_path;
  198. LOG(INFO) << "Set " << VAD_DIR << " : " << model_path[VAD_DIR];
  199. }
  200. }else{
  201. LOG(INFO) << "VAD model is not set, use default.";
  202. }
  203. if(model_dir.isSet() && !s_asr_path.empty()){
  204. std::string python_cmd_asr;
  205. std::string down_asr_path;
  206. std::string down_asr_model;
  207. if (access(s_asr_path.c_str(), F_OK) == 0){
  208. // local
  209. python_cmd_asr = python_cmd + " --model-name " + s_asr_path + " --export-dir ./ " + " --model_revision " + model_path["model-revision"];
  210. down_asr_path = s_asr_path;
  211. }else{
  212. size_t found = s_asr_path.find("speech_paraformer-large-vad-punc_asr_nat-zh-cn-16k-common-vocab8404");
  213. if (found != std::string::npos) {
  214. model_path["model-revision"]="v1.2.4";
  215. }
  216. found = s_asr_path.find("speech_paraformer-large-contextual_asr_nat-zh-cn-16k-common-vocab8404");
  217. if (found != std::string::npos) {
  218. model_path["model-revision"]="v1.0.5";
  219. }
  220. found = s_asr_path.find("speech_paraformer-large_asr_nat-en-16k-common-vocab10020");
  221. if (found != std::string::npos) {
  222. model_path["model-revision"]="v1.0.0";
  223. s_itn_path="";
  224. s_lm_path="";
  225. }
  226. // modelscope
  227. LOG(INFO) << "Download model: " << s_asr_path << " from modelscope: ";
  228. python_cmd_asr = python_cmd + " --model-name " + s_asr_path + " --export-dir " + s_download_model_dir + " --model_revision " + model_path["model-revision"];
  229. down_asr_path = s_download_model_dir+"/"+s_asr_path;
  230. }
  231. int ret = system(python_cmd_asr.c_str());
  232. if(ret !=0){
  233. LOG(INFO) << "Failed to download model from modelscope. If you set local asr model path, you can ignore the errors.";
  234. }
  235. down_asr_model = down_asr_path+"/model_quant.onnx";
  236. if(s_asr_quant=="false" || s_asr_quant=="False" || s_asr_quant=="FALSE"){
  237. down_asr_model = down_asr_path+"/model.onnx";
  238. }
  239. if (access(down_asr_model.c_str(), F_OK) != 0){
  240. LOG(ERROR) << down_asr_model << " do not exists.";
  241. exit(-1);
  242. }else{
  243. model_path[MODEL_DIR]=down_asr_path;
  244. LOG(INFO) << "Set " << MODEL_DIR << " : " << model_path[MODEL_DIR];
  245. }
  246. }else{
  247. LOG(INFO) << "ASR model is not set, use default.";
  248. }
  249. if (!s_itn_path.empty()) {
  250. std::string python_cmd_itn;
  251. std::string down_itn_path;
  252. std::string down_itn_model;
  253. if (access(s_itn_path.c_str(), F_OK) == 0) {
  254. // local
  255. python_cmd_itn = python_cmd + " --model-name " + s_itn_path +
  256. " --export-dir ./ " + " --model_revision " +
  257. model_path["itn-revision"] + " --export False ";
  258. down_itn_path = s_itn_path;
  259. } else {
  260. // modelscope
  261. LOG(INFO) << "Download model: " << s_itn_path
  262. << " from modelscope : ";
  263. python_cmd_itn = python_cmd + " --model-name " +
  264. s_itn_path +
  265. " --export-dir " + s_download_model_dir +
  266. " --model_revision " + model_path["itn-revision"]
  267. + " --export False ";
  268. down_itn_path =
  269. s_download_model_dir +
  270. "/" + s_itn_path;
  271. }
  272. int ret = system(python_cmd_itn.c_str());
  273. if (ret != 0) {
  274. LOG(INFO) << "Failed to download model from modelscope. If you set local itn model path, you can ignore the errors.";
  275. }
  276. down_itn_model = down_itn_path + "/zh_itn_tagger.fst";
  277. if (access(down_itn_model.c_str(), F_OK) != 0) {
  278. LOG(ERROR) << down_itn_model << " do not exists.";
  279. exit(-1);
  280. } else {
  281. model_path[ITN_DIR] = down_itn_path;
  282. LOG(INFO) << "Set " << ITN_DIR << " : " << model_path[ITN_DIR];
  283. }
  284. } else {
  285. LOG(INFO) << "ITN model is not set, not executed.";
  286. }
  287. if (!s_lm_path.empty() && s_lm_path != "NONE" && s_lm_path != "none") {
  288. std::string python_cmd_lm;
  289. std::string down_lm_path;
  290. std::string down_lm_model;
  291. if (access(s_lm_path.c_str(), F_OK) == 0) {
  292. // local
  293. python_cmd_lm = python_cmd + " --model-name " + s_lm_path +
  294. " --export-dir ./ " + " --model_revision " +
  295. model_path["lm-revision"] + " --export False ";
  296. down_lm_path = s_lm_path;
  297. } else {
  298. // modelscope
  299. LOG(INFO) << "Download model: " << s_lm_path
  300. << " from modelscope : ";
  301. python_cmd_lm = python_cmd + " --model-name " +
  302. s_lm_path +
  303. " --export-dir " + s_download_model_dir +
  304. " --model_revision " + model_path["lm-revision"]
  305. + " --export False ";
  306. down_lm_path =
  307. s_download_model_dir +
  308. "/" + s_lm_path;
  309. }
  310. int ret = system(python_cmd_lm.c_str());
  311. if (ret != 0) {
  312. LOG(INFO) << "Failed to download model from modelscope. If you set local lm model path, you can ignore the errors.";
  313. }
  314. down_lm_model = down_lm_path + "/TLG.fst";
  315. if (access(down_lm_model.c_str(), F_OK) != 0) {
  316. LOG(ERROR) << down_lm_model << " do not exists.";
  317. exit(-1);
  318. } else {
  319. model_path[LM_DIR] = down_lm_path;
  320. LOG(INFO) << "Set " << LM_DIR << " : " << model_path[LM_DIR];
  321. }
  322. } else {
  323. LOG(INFO) << "LM model is not set, not executed.";
  324. model_path[LM_DIR] = "";
  325. }
  326. if(punc_dir.isSet() && !s_punc_path.empty()){
  327. std::string python_cmd_punc;
  328. std::string down_punc_path;
  329. std::string down_punc_model;
  330. if (access(s_punc_path.c_str(), F_OK) == 0){
  331. // local
  332. python_cmd_punc = python_cmd + " --model-name " + s_punc_path + " --export-dir ./ " + " --model_revision " + model_path["punc-revision"];
  333. down_punc_path = s_punc_path;
  334. }else{
  335. // modelscope
  336. LOG(INFO) << "Download model: " << s_punc_path << " from modelscope: ";
  337. python_cmd_punc = python_cmd + " --model-name " + s_punc_path + " --export-dir " + s_download_model_dir + " --model_revision " + model_path["punc-revision"];
  338. down_punc_path = s_download_model_dir+"/"+s_punc_path;
  339. }
  340. int ret = system(python_cmd_punc.c_str());
  341. if(ret !=0){
  342. LOG(INFO) << "Failed to download model from modelscope. If you set local punc model path, you can ignore the errors.";
  343. }
  344. down_punc_model = down_punc_path+"/model_quant.onnx";
  345. if(s_punc_quant=="false" || s_punc_quant=="False" || s_punc_quant=="FALSE"){
  346. down_punc_model = down_punc_path+"/model.onnx";
  347. }
  348. if (access(down_punc_model.c_str(), F_OK) != 0){
  349. LOG(ERROR) << down_punc_model << " do not exists.";
  350. exit(-1);
  351. }else{
  352. model_path[PUNC_DIR]=down_punc_path;
  353. LOG(INFO) << "Set " << PUNC_DIR << " : " << model_path[PUNC_DIR];
  354. }
  355. }else{
  356. LOG(INFO) << "PUNC model is not set, use default.";
  357. }
  358. } catch (std::exception const& e) {
  359. LOG(ERROR) << "Error: " << e.what();
  360. }
  361. std::string s_listen_ip = listen_ip.getValue();
  362. int s_port = port.getValue();
  363. int s_io_thread_num = io_thread_num.getValue();
  364. int s_decoder_thread_num = decoder_thread_num.getValue();
  365. int s_model_thread_num = model_thread_num.getValue();
  366. asio::io_context io_decoder; // context for decoding
  367. asio::io_context io_server; // context for server
  368. std::vector<std::thread> decoder_threads;
  369. std::string s_certfile = certfile.getValue();
  370. std::string s_keyfile = keyfile.getValue();
  371. // hotword file
  372. std::string hotword_path;
  373. hotword_path = model_path.at(HOTWORD);
  374. fst_inc_wts_ = fst_inc_wts.getValue();
  375. LOG(INFO) << "hotword path: " << hotword_path;
  376. funasr::ExtractHws(hotword_path, hws_map_);
  377. bool is_ssl = false;
  378. if (!s_certfile.empty()) {
  379. is_ssl = true;
  380. }
  381. auto conn_guard = asio::make_work_guard(
  382. io_decoder); // make sure threads can wait in the queue
  383. auto server_guard = asio::make_work_guard(
  384. io_server); // make sure threads can wait in the queue
  385. // create threads pool
  386. for (int32_t i = 0; i < s_decoder_thread_num; ++i) {
  387. decoder_threads.emplace_back([&io_decoder]() { io_decoder.run(); });
  388. }
  389. server server_; // server for websocket
  390. wss_server wss_server_;
  391. server* server = nullptr;
  392. wss_server* wss_server = nullptr;
  393. if (is_ssl) {
  394. LOG(INFO)<< "SSL is opened!";
  395. wss_server_.init_asio(&io_server); // init asio
  396. wss_server_.set_reuse_addr(
  397. true); // reuse address as we create multiple threads
  398. // list on port for accept
  399. wss_server_.listen(asio::ip::address::from_string(s_listen_ip), s_port);
  400. wss_server = &wss_server_;
  401. } else {
  402. LOG(INFO)<< "SSL is closed!";
  403. server_.init_asio(&io_server); // init asio
  404. server_.set_reuse_addr(
  405. true); // reuse address as we create multiple threads
  406. // list on port for accept
  407. server_.listen(asio::ip::address::from_string(s_listen_ip), s_port);
  408. server = &server_;
  409. }
  410. WebSocketServer websocket_srv(
  411. io_decoder, is_ssl, server, wss_server, s_certfile,
  412. s_keyfile); // websocket server for asr engine
  413. websocket_srv.initAsr(model_path, s_model_thread_num); // init asr model
  414. LOG(INFO) << "decoder-thread-num: " << s_decoder_thread_num;
  415. LOG(INFO) << "io-thread-num: " << s_io_thread_num;
  416. LOG(INFO) << "model-thread-num: " << s_model_thread_num;
  417. LOG(INFO) << "asr model init finished. listen on port:" << s_port;
  418. // Start the ASIO network io_service run loop
  419. std::vector<std::thread> ts;
  420. // create threads for io network
  421. for (size_t i = 0; i < s_io_thread_num; i++) {
  422. ts.emplace_back([&io_server]() { io_server.run(); });
  423. }
  424. // wait for theads
  425. for (size_t i = 0; i < s_io_thread_num; i++) {
  426. ts[i].join();
  427. }
  428. // wait for theads
  429. for (auto& t : decoder_threads) {
  430. t.join();
  431. }
  432. } catch (std::exception const& e) {
  433. LOG(ERROR) << "Error: " << e.what();
  434. }
  435. return 0;
  436. }