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""" |
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Evaluation with objective metrics for the pretrained AudioGen models. |
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This grid takes signature from the training grid and runs evaluation-only stage. |
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When running the grid for the first time, please use: |
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REGEN=1 dora grid audiogen.audiogen_pretrained_16khz_eval |
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and re-use the REGEN=1 option when the grid is changed to force regenerating it. |
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Note that you need the proper metrics external libraries setup to use all |
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the objective metrics activated in this grid. Refer to the README for more information. |
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""" |
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import os |
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from ..musicgen._explorers import GenerationEvalExplorer |
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from ...environment import AudioCraftEnvironment |
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from ... import train |
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def eval(launcher, batch_size: int = 32): |
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opts = { |
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'dset': 'audio/audiocaps_16khz', |
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'solver/audiogen/evaluation': 'objective_eval', |
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'execute_only': 'evaluate', |
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'+dataset.evaluate.batch_size': batch_size, |
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'+metrics.fad.tf.batch_size': 32, |
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} |
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metrics_opts = { |
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'metrics.fad.tf.bin': '/data/home/jadecopet/local/usr/opt/google-research' |
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} |
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opt1 = {'generate.lm.use_sampling': True, 'generate.lm.top_k': 250, 'generate.lm.top_p': 0.} |
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opt2 = {'transformer_lm.two_step_cfg': True} |
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sub = launcher.bind(opts) |
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sub.bind_(metrics_opts) |
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sub(opt1, opt2) |
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@GenerationEvalExplorer |
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def explorer(launcher): |
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partitions = AudioCraftEnvironment.get_slurm_partitions(['team', 'global']) |
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launcher.slurm_(gpus=4, partition=partitions) |
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if 'REGEN' not in os.environ: |
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folder = train.main.dora.dir / 'grids' / __name__.split('.', 2)[-1] |
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with launcher.job_array(): |
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for sig in folder.iterdir(): |
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if not sig.is_symlink(): |
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continue |
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xp = train.main.get_xp_from_sig(sig.name) |
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launcher(xp.argv) |
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return |
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audiogen_base = launcher.bind(solver="audiogen/audiogen_base_16khz") |
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audiogen_base.bind_({'autocast': False, 'fsdp.use': True}) |
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audiogen_base_medium = audiogen_base.bind({'continue_from': '//pretrained/facebook/audiogen-medium'}) |
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audiogen_base_medium.bind_({'model/lm/model_scale': 'medium'}) |
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eval(audiogen_base_medium, batch_size=128) |
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