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dask.py
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dask.py
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# coding: utf-8
"""Distributed training with LightGBM and Dask.distributed.
This module enables you to perform distributed training with LightGBM on Dask.Array and Dask.DataFrame collections.
It is based on dask-xgboost package.
"""
import logging
import socket
from collections import defaultdict
from typing import Dict, Iterable
from urllib.parse import urlparse
import numpy as np
import pandas as pd
from dask import array as da
from dask import dataframe as dd
from dask import delayed
from dask.distributed import Client, default_client, get_worker, wait
from .basic import _LIB, _safe_call
from .sklearn import LGBMClassifier, LGBMRegressor
import scipy.sparse as ss
logger = logging.getLogger(__name__)
def _find_open_port(worker_ip: str, local_listen_port: int, ports_to_skip: Iterable[int]) -> int:
"""Find an open port.
This function tries to find a free port on the machine it's run on. It is intended to
be run once on each Dask worker, sequentially.
Parameters
----------
worker_ip : str
IP address for the Dask worker.
local_listen_port : int
First port to try when searching for open ports.
ports_to_skip: Iterable[int]
An iterable of integers referring to ports that should be skipped. Since multiple Dask
workers can run on the same physical machine, this method may be called multiple times
on the same machine. ``ports_to_skip`` is used to ensure that LightGBM doesn't try to use
the same port for two worker processes running on the same machine.
Returns
-------
result : int
A free port on the machine referenced by ``worker_ip``.
"""
max_tries = 1000
out_port = None
found_port = False
for i in range(max_tries):
out_port = local_listen_port + i
if out_port in ports_to_skip:
continue
try:
with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
s.bind((worker_ip, out_port))
found_port = True
break
# if unavailable, you'll get OSError: Address already in use
except OSError:
continue
if not found_port:
msg = "LightGBM tried %s:%d-%d and could not create a connection. Try setting local_listen_port to a different value."
raise RuntimeError(msg % (worker_ip, local_listen_port, out_port))
return out_port
def _find_ports_for_workers(client: Client, worker_addresses: Iterable[str], local_listen_port: int) -> Dict[str, int]:
"""Find an open port on each worker.
LightGBM distributed training uses TCP sockets by default, and this method is used to
identify open ports on each worker so LightGBM can reliable create those sockets.
Parameters
----------
client : dask.distributed.Client
Dask client.
worker_addresses : Iterable[str]
An iterable of addresses for workers in the cluster. These are strings of the form ``<protocol>://<host>:port``
local_listen_port : int
First port to try when searching for open ports.
Returns
-------
result : Dict[str, int]
Dictionary where keys are worker addresses and values are an open port for LightGBM to use.
"""
lightgbm_ports = set()
worker_ip_to_port = {}
for worker_address in worker_addresses:
port = client.submit(
func=_find_open_port,
workers=[worker_address],
worker_ip=urlparse(worker_address).hostname,
local_listen_port=local_listen_port,
ports_to_skip=lightgbm_ports
).result()
lightgbm_ports.add(port)
worker_ip_to_port[worker_address] = port
return worker_ip_to_port
def _concat(seq):
if isinstance(seq[0], np.ndarray):
return np.concatenate(seq, axis=0)
elif isinstance(seq[0], (pd.DataFrame, pd.Series)):
return pd.concat(seq, axis=0)
elif isinstance(seq[0], ss.spmatrix):
return ss.vstack(seq, format='csr')
else:
raise TypeError('Data must be one of: numpy arrays, pandas dataframes, sparse matrices (from scipy). Got %s.' % str(type(seq[0])))
def _train_part(params, model_factory, list_of_parts, worker_address_to_port, return_model,
time_out=120, **kwargs):
local_worker_address = get_worker().address
machine_list = ','.join([
'%s:%d' % (urlparse(worker_address).hostname, port)
for worker_address, port
in worker_address_to_port.items()
])
network_params = {
'machines': machine_list,
'local_listen_port': worker_address_to_port[local_worker_address],
'time_out': time_out,
'num_machines': len(worker_address_to_port)
}
params.update(network_params)
# Concatenate many parts into one
parts = tuple(zip(*list_of_parts))
data = _concat(parts[0])
label = _concat(parts[1])
weight = _concat(parts[2]) if len(parts) == 3 else None
try:
model = model_factory(**params)
model.fit(data, label, sample_weight=weight, **kwargs)
finally:
_safe_call(_LIB.LGBM_NetworkFree())
return model if return_model else None
def _split_to_parts(data, is_matrix):
parts = data.to_delayed()
if isinstance(parts, np.ndarray):
assert (parts.shape[1] == 1) if is_matrix else (parts.ndim == 1 or parts.shape[1] == 1)
parts = parts.flatten().tolist()
return parts
def _train(client, data, label, params, model_factory, weight=None, **kwargs):
"""Inner train routine.
Parameters
----------
client: dask.Client - client
X : dask array of shape = [n_samples, n_features]
Input feature matrix.
y : dask array of shape = [n_samples]
The target values (class labels in classification, real numbers in regression).
params : dict
model_factory : lightgbm.LGBMClassifier or lightgbm.LGBMRegressor class
sample_weight : array-like of shape = [n_samples] or None, optional (default=None)
Weights of training data.
"""
# Split arrays/dataframes into parts. Arrange parts into tuples to enforce co-locality
data_parts = _split_to_parts(data, is_matrix=True)
label_parts = _split_to_parts(label, is_matrix=False)
if weight is None:
parts = list(map(delayed, zip(data_parts, label_parts)))
else:
weight_parts = _split_to_parts(weight, is_matrix=False)
parts = list(map(delayed, zip(data_parts, label_parts, weight_parts)))
# Start computation in the background
parts = client.compute(parts)
wait(parts)
for part in parts:
if part.status == 'error':
return part # trigger error locally
# Find locations of all parts and map them to particular Dask workers
key_to_part_dict = dict([(part.key, part) for part in parts])
who_has = client.who_has(parts)
worker_map = defaultdict(list)
for key, workers in who_has.items():
worker_map[next(iter(workers))].append(key_to_part_dict[key])
master_worker = next(iter(worker_map))
worker_ncores = client.ncores()
if 'tree_learner' not in params or params['tree_learner'].lower() not in {'data', 'feature', 'voting'}:
logger.warning('Parameter tree_learner not set or set to incorrect value '
'(%s), using "data" as default', params.get("tree_learner", None))
params['tree_learner'] = 'data'
# find an open port on each worker. note that multiple workers can run
# on the same machine, so this needs to ensure that each one gets its
# own port
local_listen_port = params.get('local_listen_port', 12400)
worker_address_to_port = _find_ports_for_workers(
client=client,
worker_addresses=worker_map.keys(),
local_listen_port=local_listen_port
)
# Tell each worker to train on the parts that it has locally
futures_classifiers = [client.submit(_train_part,
model_factory=model_factory,
params={**params, 'num_threads': worker_ncores[worker]},
list_of_parts=list_of_parts,
worker_address_to_port=worker_address_to_port,
time_out=params.get('time_out', 120),
return_model=(worker == master_worker),
**kwargs)
for worker, list_of_parts in worker_map.items()]
results = client.gather(futures_classifiers)
results = [v for v in results if v]
return results[0]
def _predict_part(part, model, proba, **kwargs):
data = part.values if isinstance(part, pd.DataFrame) else part
if data.shape[0] == 0:
result = np.array([])
elif proba:
result = model.predict_proba(data, **kwargs)
else:
result = model.predict(data, **kwargs)
if isinstance(part, pd.DataFrame):
if proba:
result = pd.DataFrame(result, index=part.index)
else:
result = pd.Series(result, index=part.index, name='predictions')
return result
def _predict(model, data, proba=False, dtype=np.float32, **kwargs):
"""Inner predict routine.
Parameters
----------
model :
data : dask array of shape = [n_samples, n_features]
Input feature matrix.
proba : bool
Should method return results of predict_proba (proba == True) or predict (proba == False)
dtype : np.dtype
Dtype of the output
kwargs : other parameters passed to predict or predict_proba method
"""
if isinstance(data, dd._Frame):
return data.map_partitions(_predict_part, model=model, proba=proba, **kwargs).values
elif isinstance(data, da.Array):
if proba:
kwargs['chunks'] = (data.chunks[0], (model.n_classes_,))
else:
kwargs['drop_axis'] = 1
return data.map_blocks(_predict_part, model=model, proba=proba, dtype=dtype, **kwargs)
else:
raise TypeError('Data must be either Dask array or dataframe. Got %s.' % str(type(data)))
class _LGBMModel:
def _fit(self, model_factory, X, y=None, sample_weight=None, client=None, **kwargs):
"""Docstring is inherited from the LGBMModel."""
if client is None:
client = default_client()
params = self.get_params(True)
model = _train(client, X, y, params, model_factory, sample_weight, **kwargs)
self.set_params(**model.get_params())
self._copy_extra_params(model, self)
return self
def _to_local(self, model_factory):
model = model_factory(**self.get_params())
self._copy_extra_params(self, model)
return model
@staticmethod
def _copy_extra_params(source, dest):
params = source.get_params()
attributes = source.__dict__
extra_param_names = set(attributes.keys()).difference(params.keys())
for name in extra_param_names:
setattr(dest, name, attributes[name])
class DaskLGBMClassifier(_LGBMModel, LGBMClassifier):
"""Distributed version of lightgbm.LGBMClassifier."""
def fit(self, X, y=None, sample_weight=None, client=None, **kwargs):
"""Docstring is inherited from the LGBMModel."""
return self._fit(LGBMClassifier, X, y, sample_weight, client, **kwargs)
fit.__doc__ = LGBMClassifier.fit.__doc__
def predict(self, X, **kwargs):
"""Docstring is inherited from the lightgbm.LGBMClassifier.predict."""
return _predict(self.to_local(), X, dtype=self.classes_.dtype, **kwargs)
predict.__doc__ = LGBMClassifier.predict.__doc__
def predict_proba(self, X, **kwargs):
"""Docstring is inherited from the lightgbm.LGBMClassifier.predict_proba."""
return _predict(self.to_local(), X, proba=True, **kwargs)
predict_proba.__doc__ = LGBMClassifier.predict_proba.__doc__
def to_local(self):
"""Create regular version of lightgbm.LGBMClassifier from the distributed version.
Returns
-------
model : lightgbm.LGBMClassifier
"""
return self._to_local(LGBMClassifier)
class DaskLGBMRegressor(_LGBMModel, LGBMRegressor):
"""Docstring is inherited from the lightgbm.LGBMRegressor."""
def fit(self, X, y=None, sample_weight=None, client=None, **kwargs):
"""Docstring is inherited from the lightgbm.LGBMRegressor.fit."""
return self._fit(LGBMRegressor, X, y, sample_weight, client, **kwargs)
fit.__doc__ = LGBMRegressor.fit.__doc__
def predict(self, X, **kwargs):
"""Docstring is inherited from the lightgbm.LGBMRegressor.predict."""
return _predict(self.to_local(), X, **kwargs)
predict.__doc__ = LGBMRegressor.predict.__doc__
def to_local(self):
"""Create regular version of lightgbm.LGBMRegressor from the distributed version.
Returns
-------
model : lightgbm.LGBMRegressor
"""
return self._to_local(LGBMRegressor)