import glob import json import os import shutil from trainer import get_last_checkpoint from tests import get_device_id, get_tests_output_path, run_cli from TTS.config.shared_configs import BaseDatasetConfig from TTS.tts.configs.vits_config import VitsConfig config_path = os.path.join(get_tests_output_path(), "test_model_config.json") output_path = os.path.join(get_tests_output_path(), "train_outputs") dataset_config_en = BaseDatasetConfig( formatter="ljspeech", meta_file_train="metadata.csv", meta_file_val="metadata.csv", path="tests/data/ljspeech", language="en", ) dataset_config_pt = BaseDatasetConfig( formatter="ljspeech", meta_file_train="metadata.csv", meta_file_val="metadata.csv", path="tests/data/ljspeech", language="pt-br", ) config = VitsConfig( batch_size=2, eval_batch_size=2, num_loader_workers=0, num_eval_loader_workers=0, text_cleaner="english_cleaners", use_phonemes=True, phoneme_language="en-us", phoneme_cache_path="tests/data/ljspeech/phoneme_cache/", run_eval=True, test_delay_epochs=-1, epochs=1, print_step=1, print_eval=True, test_sentences=[ ["Be a voice, not an echo.", "ljspeech", None, "en"], ["Be a voice, not an echo.", "ljspeech", None, "pt-br"], ], datasets=[dataset_config_en, dataset_config_pt], ) # set audio config config.audio.do_trim_silence = True config.audio.trim_db = 60 # active multilingual mode config.model_args.use_language_embedding = True config.use_language_embedding = True # active multispeaker mode config.model_args.use_speaker_embedding = True config.use_speaker_embedding = True # deactivate multispeaker d-vec mode config.model_args.use_d_vector_file = False config.use_d_vector_file = False # duration predictor config.model_args.use_sdp = False config.use_sdp = False # active language sampler config.use_language_weighted_sampler = True config.save_json(config_path) # train the model for one epoch command_train = ( f"CUDA_VISIBLE_DEVICES='{get_device_id()}' python TTS/bin/train_tts.py --config_path {config_path} " f"--coqpit.output_path {output_path} " "--coqpit.test_delay_epochs 0" ) run_cli(command_train) # Find latest folder continue_path = max(glob.glob(os.path.join(output_path, "*/")), key=os.path.getmtime) # Inference using TTS API continue_config_path = os.path.join(continue_path, "config.json") continue_restore_path, _ = get_last_checkpoint(continue_path) out_wav_path = os.path.join(get_tests_output_path(), "output.wav") speaker_id = "ljspeech" languae_id = "en" continue_speakers_path = os.path.join(continue_path, "speakers.json") continue_languages_path = os.path.join(continue_path, "language_ids.json") # Check integrity of the config with open(continue_config_path, "r", encoding="utf-8") as f: config_loaded = json.load(f) assert config_loaded["characters"] is not None assert config_loaded["output_path"] in continue_path assert config_loaded["test_delay_epochs"] == 0 # Load the model and run inference inference_command = f"CUDA_VISIBLE_DEVICES='{get_device_id()}' tts --text 'This is an example.' --speaker_idx {speaker_id} --speakers_file_path {continue_speakers_path} --language_ids_file_path {continue_languages_path} --language_idx {languae_id} --config_path {continue_config_path} --model_path {continue_restore_path} --out_path {out_wav_path}" run_cli(inference_command) # restore the model and continue training for one more epoch command_train = f"CUDA_VISIBLE_DEVICES='{get_device_id()}' python TTS/bin/train_tts.py --continue_path {continue_path} " run_cli(command_train) shutil.rmtree(continue_path)