dataset: training: [ ] validation: [ ] noise: [ ] speaker_name_getter: "lambda p: f'{p.parts[-3]}_{p.parts[-2]}'" use_hdf5: True hdf5_flag: r validate: True workers: 4 cache: True phones_range: [4, 512] duration_range: [1.0, 24.0] random_utterance: 1.0 max_prompts: 3 prompt_duration: 3.0 sample_type: speaker tasks_list: ["tts"] # ["tts", "ns", "sr", "tse", "cse", "nse", "tts"] models: _max_levels: 8 _models: - name: "ar" size: "full" resp_levels: 1 prom_levels: 2 tasks: 8 arch_type: "retnet" - name: "nar" size: "full" resp_levels: 3 prom_levels: 4 tasks: 8 arch_type: "retnet" hyperparameters: batch_size: 32 gradient_accumulation_steps: 4 gradient_clipping: 100 optimizer: AdamW learning_rate: 1.0e-6 scheduler_type: "" #scheduler_type: OneCycle #scheduler_params: # cycle_first_step_size: 10_000 # cycle_first_stair_count: 10_000 # cycle_second_step_size: 15_000 # cycle_second_stair_count: 15_000 # decay_step_size: 5_000 # cycle_min_lr: 2.5e-4 # 1.0e-5 # cycle_max_lr: 2.5e-4 # 1.0e-4 # decay_lr_rate: 0.0 # cycle_min_mom: 0.90 # cycle_max_mom: 0.99 # decay_mom_rate: 0.0 evaluation: batch_size: 64 frequency: 500 size: 64 steps: 300 ar_temperature: 0.95 nar_temperature: 0.25 trainer: iterations: 1_000_000 save_tag: step save_on_oom: True save_on_quit: True save_frequency: 25 keep_last_checkpoints: 2 aggressive_optimizations: False load_state_dict: True strict_loading: False #load_tag: "9500" #load_states: False #restart_step_count: True gc_mode: None # "global_step" weight_dtype: bfloat16 backend: deepspeed deepspeed: zero_optimization_level: 2 use_compression_training: True inference: use_vocos: True normalize: False weight_dtype: float32 bitsandbytes: enabled: False injects: True linear: True embedding: True