spaCy/spacy/cli/debug_config.py
Paul O'Leary McCann b4e457d9fe
Accept multiple code files in all CLI commands (#12101)
* Add support for multiple code files to all relevant commands

Prior to this, only the package command supported multiple code files.

* Update docs

* Add debug data test, plus generic fixtures

One tricky thing here: it's tempting to create the config by creating a
pipeline in code, but that requires declaring the custom components
here. However the CliRunner appears to be run in the same process or
otherwise have access to our registry, so it works even without any
code arguments. So it's necessary to avoid declaring the components in
the tests.

* Add debug config test and restructure

The code argument imports the provided file. If it adds item to the
registry, that affects global state, which CliRunner doesn't isolate.
Since there's no standard way to remove things from the registry, this
instead uses subprocess.run to run commands.

* Use a more generic, parametrized test

* Add output arg for assemble and pretrain

Assemble and pretrain require an output argument. This commit adds
assemble testing, but not pretrain, as that requires an actual trainable
component, which is not currently in the test config.

* Add evaluate test and some cleanup

* Mark tests as slow

* Revert argument name change

* Apply suggestions from code review

Co-authored-by: Adriane Boyd <adrianeboyd@gmail.com>

* Format API CLI docs

* isort

* Fix imports in tests

* isort

* Undo changes to package CLI help

* Fix python executable and lang code in test

* Fix executable in another test

---------

Co-authored-by: Adriane Boyd <adrianeboyd@gmail.com>
Co-authored-by: Raphael Mitsch <r.mitsch@outlook.com>
2023-08-01 15:24:02 +02:00

114 lines
4.5 KiB
Python

from pathlib import Path
from typing import Any, Dict, List, Optional, Union
import typer
from thinc.api import Config
from thinc.config import VARIABLE_RE
from wasabi import msg, table
from .. import util
from ..schemas import ConfigSchemaInit, ConfigSchemaTraining
from ..util import registry
from ._util import (
Arg,
Opt,
debug_cli,
import_code_paths,
parse_config_overrides,
show_validation_error,
)
@debug_cli.command(
"config",
context_settings={"allow_extra_args": True, "ignore_unknown_options": True},
)
def debug_config_cli(
# fmt: off
ctx: typer.Context, # This is only used to read additional arguments
config_path: Path = Arg(..., help="Path to config file", exists=True, allow_dash=True),
code_path: str = Opt("", "--code", "-c", help="Comma-separated paths to Python files with additional code (registered functions) to be imported"),
show_funcs: bool = Opt(False, "--show-functions", "-F", help="Show an overview of all registered functions used in the config and where they come from (modules, files etc.)"),
show_vars: bool = Opt(False, "--show-variables", "-V", help="Show an overview of all variables referenced in the config and their values. This will also reflect variables overwritten on the CLI.")
# fmt: on
):
"""Debug a config file and show validation errors. The command will
create all objects in the tree and validate them. Note that some config
validation errors are blocking and will prevent the rest of the config from
being resolved. This means that you may not see all validation errors at
once and some issues are only shown once previous errors have been fixed.
Similar as with the 'train' command, you can override settings from the config
as command line options. For instance, --training.batch_size 128 overrides
the value of "batch_size" in the block "[training]".
DOCS: https://spacy.io/api/cli#debug-config
"""
overrides = parse_config_overrides(ctx.args)
import_code_paths(code_path)
debug_config(
config_path, overrides=overrides, show_funcs=show_funcs, show_vars=show_vars
)
def debug_config(
config_path: Path,
*,
overrides: Dict[str, Any] = {},
show_funcs: bool = False,
show_vars: bool = False,
):
msg.divider("Config validation")
with show_validation_error(config_path):
config = util.load_config(config_path, overrides=overrides)
nlp = util.load_model_from_config(config)
config = nlp.config.interpolate()
msg.divider("Config validation for [initialize]")
with show_validation_error(config_path):
T = registry.resolve(config["initialize"], schema=ConfigSchemaInit)
msg.divider("Config validation for [training]")
with show_validation_error(config_path):
T = registry.resolve(config["training"], schema=ConfigSchemaTraining)
dot_names = [T["train_corpus"], T["dev_corpus"]]
util.resolve_dot_names(config, dot_names)
msg.good("Config is valid")
if show_vars:
variables = get_variables(config)
msg.divider(f"Variables ({len(variables)})")
head = ("Variable", "Value")
msg.table(variables, header=head, divider=True, widths=(41, 34), spacing=2)
if show_funcs:
funcs = get_registered_funcs(config)
msg.divider(f"Registered functions ({len(funcs)})")
for func in funcs:
func_data = {
"Registry": f"@{func['registry']}",
"Name": func["name"],
"Module": func["module"],
"File": f"{func['file']} (line {func['line_no']})",
}
msg.info(f"[{func['path']}]")
print(table(func_data).strip())
def get_registered_funcs(config: Config) -> List[Dict[str, Optional[Union[str, int]]]]:
result = []
for key, value in util.walk_dict(config):
if not key[-1].startswith("@"):
continue
# We have a reference to a registered function
reg_name = key[-1][1:]
registry = getattr(util.registry, reg_name)
path = ".".join(key[:-1])
info = registry.find(value)
result.append({"name": value, "registry": reg_name, "path": path, **info})
return result
def get_variables(config: Config) -> Dict[str, Any]:
result = {}
for variable in sorted(set(VARIABLE_RE.findall(config.to_str()))):
path = variable[2:-1].replace(":", ".")
value = util.dot_to_object(config, path)
result[variable] = repr(value)
return result