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	* Use isort with Black profile * isort all the things * Fix import cycles as a result of import sorting * Add DOCBIN_ALL_ATTRS type definition * Add isort to requirements * Remove isort from build dependencies check * Typo
		
			
				
	
	
		
			243 lines
		
	
	
		
			8.7 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			243 lines
		
	
	
		
			8.7 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
import itertools
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from pathlib import Path
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from typing import Any, Dict, Optional
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import typer
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from thinc.api import (
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    Model,
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    data_validation,
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    fix_random_seed,
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    set_dropout_rate,
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    set_gpu_allocator,
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)
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from wasabi import msg
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from spacy.training import Example
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from spacy.util import resolve_dot_names
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from .. import util
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from ..schemas import ConfigSchemaTraining
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from ..util import registry
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from ._util import (
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    Arg,
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    Opt,
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    debug_cli,
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    parse_config_overrides,
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    setup_gpu,
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    show_validation_error,
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    string_to_list,
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)
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@debug_cli.command(
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    "model",
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    context_settings={"allow_extra_args": True, "ignore_unknown_options": True},
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)
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def debug_model_cli(
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    # fmt: off
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    ctx: typer.Context,  # This is only used to read additional arguments
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    config_path: Path = Arg(..., help="Path to config file", exists=True, allow_dash=True),
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    component: str = Arg(..., help="Name of the pipeline component of which the model should be analysed"),
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    layers: str = Opt("", "--layers", "-l", help="Comma-separated names of layer IDs to print"),
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    dimensions: bool = Opt(False, "--dimensions", "-DIM", help="Show dimensions"),
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    parameters: bool = Opt(False, "--parameters", "-PAR", help="Show parameters"),
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    gradients: bool = Opt(False, "--gradients", "-GRAD", help="Show gradients"),
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    attributes: bool = Opt(False, "--attributes", "-ATTR", help="Show attributes"),
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    P0: bool = Opt(False, "--print-step0", "-P0", help="Print model before training"),
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    P1: bool = Opt(False, "--print-step1", "-P1", help="Print model after initialization"),
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    P2: bool = Opt(False, "--print-step2", "-P2", help="Print model after training"),
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    P3: bool = Opt(False, "--print-step3", "-P3", help="Print final predictions"),
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    use_gpu: int = Opt(-1, "--gpu-id", "-g", help="GPU ID or -1 for CPU")
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    # fmt: on
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):
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    """
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    Analyze a Thinc model implementation. Includes checks for internal structure
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    and activations during training.
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    DOCS: https://spacy.io/api/cli#debug-model
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    """
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    setup_gpu(use_gpu)
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    layers = string_to_list(layers, intify=True)
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    print_settings = {
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        "dimensions": dimensions,
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        "parameters": parameters,
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        "gradients": gradients,
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        "attributes": attributes,
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        "layers": layers,
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        "print_before_training": P0,
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        "print_after_init": P1,
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        "print_after_training": P2,
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        "print_prediction": P3,
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    }
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    config_overrides = parse_config_overrides(ctx.args)
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    with show_validation_error(config_path):
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        raw_config = util.load_config(
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            config_path, overrides=config_overrides, interpolate=False
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        )
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    config = raw_config.interpolate()
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    allocator = config["training"]["gpu_allocator"]
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    if use_gpu >= 0 and allocator:
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        set_gpu_allocator(allocator)
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    with show_validation_error(config_path):
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        nlp = util.load_model_from_config(raw_config)
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        config = nlp.config.interpolate()
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        T = registry.resolve(config["training"], schema=ConfigSchemaTraining)
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    seed = T["seed"]
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    if seed is not None:
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        msg.info(f"Fixing random seed: {seed}")
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        fix_random_seed(seed)
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    pipe = nlp.get_pipe(component)
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    debug_model(config, T, nlp, pipe, print_settings=print_settings)
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def debug_model(
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    config,
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    resolved_train_config,
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    nlp,
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    pipe,
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    *,
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    print_settings: Optional[Dict[str, Any]] = None,
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):
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    if not hasattr(pipe, "model"):
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        msg.fail(
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            f"The component '{pipe}' does not specify an object that holds a Model.",
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            exits=1,
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        )
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    model = pipe.model
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    if not isinstance(model, Model):
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        msg.fail(
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            f"Requires a Thinc Model to be analysed, but found {type(model)} instead.",
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            exits=1,
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        )
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    if print_settings is None:
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        print_settings = {}
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    # STEP 0: Printing before training
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    msg.info(f"Analysing model with ID {model.id}")
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    if print_settings.get("print_before_training"):
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        msg.divider(f"STEP 0 - before training")
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        _print_model(model, print_settings)
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    # STEP 1: Initializing the model and printing again
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    with data_validation(False):
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        try:
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            dot_names = [resolved_train_config["train_corpus"]]
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            with show_validation_error():
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                (train_corpus,) = resolve_dot_names(config, dot_names)
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                nlp.initialize(lambda: train_corpus(nlp))
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            msg.info("Initialized the model with the training corpus.")
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            examples = list(itertools.islice(train_corpus(nlp), 5))
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        except ValueError:
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            try:
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                _set_output_dim(nO=7, model=model)
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                with show_validation_error():
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                    examples = [Example.from_dict(x, {}) for x in _get_docs()]
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                    nlp.initialize(lambda: examples)
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                msg.info("Initialized the model with dummy data.")
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            except Exception:
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                msg.fail(
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                    "Could not initialize the model: you'll have to provide a valid 'train_corpus' argument in the config file.",
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                    exits=1,
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                )
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    if print_settings.get("print_after_init"):
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        msg.divider(f"STEP 1 - after initialization")
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        _print_model(model, print_settings)
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    # STEP 2: Updating the model and printing again
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    set_dropout_rate(model, 0.2)
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    # ugly hack to deal with Tok2Vec/Transformer listeners
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    upstream_component = None
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    if model.has_ref("tok2vec") and "tok2vec-listener" in model.get_ref("tok2vec").name:
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        upstream_component = nlp.get_pipe("tok2vec")
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    if (
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        model.has_ref("tok2vec")
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        and "transformer-listener" in model.get_ref("tok2vec").name
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    ):
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        upstream_component = nlp.get_pipe("transformer")
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    for e in range(3):
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        if upstream_component:
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            upstream_component.update(examples)
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        pipe.update(examples)
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    if print_settings.get("print_after_training"):
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        msg.divider(f"STEP 2 - after training")
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        _print_model(model, print_settings)
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    # STEP 3: the final prediction
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    prediction = model.predict([ex.predicted for ex in examples])
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    if print_settings.get("print_prediction"):
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        msg.divider(f"STEP 3 - prediction")
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        msg.info(str(prediction))
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    msg.good(f"Succesfully ended analysis - model looks good.")
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def _sentences():
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    return [
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        "Apple is looking at buying U.K. startup for $1 billion",
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        "Autonomous cars shift insurance liability toward manufacturers",
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        "San Francisco considers banning sidewalk delivery robots",
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        "London is a big city in the United Kingdom.",
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    ]
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def _get_docs(lang: str = "en"):
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    nlp = util.get_lang_class(lang)()
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    return list(nlp.pipe(_sentences()))
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def _set_output_dim(model, nO):
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    # simulating dim inference by directly setting the nO argument of the model
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    if model.has_dim("nO") is None:
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        model.set_dim("nO", nO)
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    if model.has_ref("output_layer"):
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        if model.get_ref("output_layer").has_dim("nO") is None:
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            model.get_ref("output_layer").set_dim("nO", nO)
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def _print_model(model, print_settings):
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    layers = print_settings.get("layers", "")
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    parameters = print_settings.get("parameters", False)
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    dimensions = print_settings.get("dimensions", False)
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    gradients = print_settings.get("gradients", False)
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    attributes = print_settings.get("attributes", False)
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    for i, node in enumerate(model.walk()):
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        if not layers or i in layers:
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            msg.info(f"Layer {i}: model ID {node.id}: '{node.name}'")
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            if dimensions:
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                for name in node.dim_names:
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                    msg.info(f" - dim {name}: {node.maybe_get_dim(name)}")
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            if parameters:
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                for name in node.param_names:
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                    if node.has_param(name):
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                        print_value = _print_matrix(node.get_param(name))
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                        msg.info(f" - param {name}: {print_value}")
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                    else:
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                        msg.info(f" - param {name}: {node.has_param(name)}")
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            if gradients:
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                for name in node.param_names:
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                    if node.has_grad(name):
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                        print_value = _print_matrix(node.get_grad(name))
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                        msg.info(f" - grad {name}: {print_value}")
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                    else:
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                        msg.info(f" - grad {name}: {node.has_grad(name)}")
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            if attributes:
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                attrs = node.attrs
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                for name, value in attrs.items():
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                    msg.info(f" - attr {name}: {value}")
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def _print_matrix(value):
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    if value is None or isinstance(value, bool):
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        return value
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    result = str(value.shape) + " - sample: "
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    sample_matrix = value
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    for d in range(value.ndim - 1):
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        sample_matrix = sample_matrix[0]
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    sample_matrix = sample_matrix[0:5]
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    result = result + str(sample_matrix)
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    return result
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