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avazu_data_processer.py
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411 lines (334 loc) · 11.4 KB
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import sys
import csv
import cPickle
import argparse
import numpy as np
from utils import logger, TaskMode
parser = argparse.ArgumentParser(description="PaddlePaddle CTR example")
parser.add_argument(
'--data_path', type=str, required=True, help="path of the Avazu dataset")
parser.add_argument(
'--output_dir', type=str, required=True, help="directory to output")
parser.add_argument(
'--num_lines_to_detect',
type=int,
default=500000,
help="number of records to detect dataset's meta info")
parser.add_argument(
'--test_set_size',
type=int,
default=10000,
help="size of the validation dataset(default: 10000)")
parser.add_argument(
'--train_size',
type=int,
default=100000,
help="size of the trainset (default: 100000)")
args = parser.parse_args()
'''
The fields of the dataset are:
0. id: ad identifier
1. click: 0/1 for non-click/click
2. hour: format is YYMMDDHH, so 14091123 means 23:00 on Sept. 11, 2014 UTC.
3. C1 -- anonymized categorical variable
4. banner_pos
5. site_id
6. site_domain
7. site_category
8. app_id
9. app_domain
10. app_category
11. device_id
12. device_ip
13. device_model
14. device_type
15. device_conn_type
16. C14-C21 -- anonymized categorical variables
We will treat the following fields as categorical features:
- C1
- banner_pos
- site_category
- app_category
- device_type
- device_conn_type
and some other features as id features:
- id
- site_id
- app_id
- device_id
The `hour` field will be treated as a continuous feature and will be transformed
to one-hot representation which has 24 bits.
This script will output 3 files:
1. train.txt
2. test.txt
3. infer.txt
all the files are for demo.
'''
feature_dims = {}
categorial_features = ('C1 banner_pos site_category app_category ' +
'device_type device_conn_type').split()
id_features = 'id site_id app_id device_id _device_id_cross_site_id'.split()
def get_all_field_names(mode=0):
'''
@mode: int
0 for train, 1 for test
@return: list of str
'''
return categorial_features + ['hour'] + id_features + ['click'] \
if mode == 0 else []
class CategoryFeatureGenerator(object):
'''
Generator category features.
Register all records by calling `register` first, then call `gen` to generate
one-hot representation for a record.
'''
def __init__(self):
self.dic = {'unk': 0}
self.counter = 1
def register(self, key):
'''
Register record.
'''
if key not in self.dic:
self.dic[key] = self.counter
self.counter += 1
def size(self):
return len(self.dic)
def gen(self, key):
'''
Generate one-hot representation for a record.
'''
if key not in self.dic:
res = self.dic['unk']
else:
res = self.dic[key]
return [res]
def __repr__(self):
return '<CategoryFeatureGenerator %d>' % len(self.dic)
class IDfeatureGenerator(object):
def __init__(self, max_dim, cross_fea0=None, cross_fea1=None):
'''
@max_dim: int
Size of the id elements' space
'''
self.max_dim = max_dim
self.cross_fea0 = cross_fea0
self.cross_fea1 = cross_fea1
def gen(self, key):
'''
Generate one-hot representation for records
'''
return [hash(key) % self.max_dim]
def gen_cross_fea(self, fea1, fea2):
key = str(fea1) + str(fea2)
return self.gen(key)
def size(self):
return self.max_dim
class ContinuousFeatureGenerator(object):
def __init__(self, n_intervals):
self.min = sys.maxint
self.max = sys.minint
self.n_intervals = n_intervals
def register(self, val):
self.min = min(self.minint, val)
self.max = max(self.maxint, val)
def gen(self, val):
self.len_part = (self.max - self.min) / self.n_intervals
return (val - self.min) / self.len_part
# init all feature generators
fields = {}
for key in categorial_features:
fields[key] = CategoryFeatureGenerator()
for key in id_features:
# for cross features
if 'cross' in key:
feas = key[1:].split('_cross_')
fields[key] = IDfeatureGenerator(10000000, *feas)
# for normal ID features
else:
fields[key] = IDfeatureGenerator(10000)
# used as feed_dict in PaddlePaddle
field_index = dict((key, id)
for id, key in enumerate(['dnn_input', 'lr_input', 'click']))
def detect_dataset(path, topn, id_fea_space=10000):
'''
Parse the first `topn` records to collect meta information of this dataset.
NOTE the records should be randomly shuffled first.
'''
# create categorical statis objects.
logger.warning('detecting dataset')
with open(path, 'rb') as csvfile:
reader = csv.DictReader(csvfile)
for row_id, row in enumerate(reader):
if row_id > topn:
break
for key in categorial_features:
fields[key].register(row[key])
for key, item in fields.items():
feature_dims[key] = item.size()
feature_dims['hour'] = 24
feature_dims['click'] = 1
feature_dims['dnn_input'] = np.sum(
feature_dims[key] for key in categorial_features + ['hour']) + 1
feature_dims['lr_input'] = np.sum(feature_dims[key]
for key in id_features) + 1
return feature_dims
def load_data_meta(meta_path):
'''
Load dataset's meta infomation.
'''
feature_dims, fields = cPickle.load(open(meta_path, 'rb'))
return feature_dims, fields
def concat_sparse_vectors(inputs, dims):
'''
Concaterate more than one sparse vectors into one.
@inputs: list
list of sparse vector
@dims: list of int
dimention of each sparse vector
'''
res = []
assert len(inputs) == len(dims)
start = 0
for no, vec in enumerate(inputs):
for v in vec:
res.append(v + start)
start += dims[no]
return res
class AvazuDataset(object):
'''
Load AVAZU dataset as train set.
'''
def __init__(self,
train_path,
n_records_as_test=-1,
fields=None,
feature_dims=None):
self.train_path = train_path
self.n_records_as_test = n_records_as_test
self.fields = fields
# default is train mode.
self.mode = TaskMode.create_train()
self.categorial_dims = [
feature_dims[key] for key in categorial_features + ['hour']
]
self.id_dims = [feature_dims[key] for key in id_features]
def train(self):
'''
Load trainset.
'''
logger.info("load trainset from %s" % self.train_path)
self.mode = TaskMode.create_train()
with open(self.train_path) as f:
reader = csv.DictReader(f)
for row_id, row in enumerate(reader):
# skip top n lines
if self.n_records_as_test > 0 and row_id < self.n_records_as_test:
continue
rcd = self._parse_record(row)
if rcd:
yield rcd
def test(self):
'''
Load testset.
'''
logger.info("load testset from %s" % self.train_path)
self.mode = TaskMode.create_test()
with open(self.train_path) as f:
reader = csv.DictReader(f)
for row_id, row in enumerate(reader):
# skip top n lines
if self.n_records_as_test > 0 and row_id > self.n_records_as_test:
break
rcd = self._parse_record(row)
if rcd:
yield rcd
def infer(self):
'''
Load inferset.
'''
logger.info("load inferset from %s" % self.train_path)
self.mode = TaskMode.create_infer()
with open(self.train_path) as f:
reader = csv.DictReader(f)
for row_id, row in enumerate(reader):
rcd = self._parse_record(row)
if rcd:
yield rcd
def _parse_record(self, row):
'''
Parse a CSV row and get a record.
'''
record = []
for key in categorial_features:
record.append(self.fields[key].gen(row[key]))
record.append([int(row['hour'][-2:])])
dense_input = concat_sparse_vectors(record, self.categorial_dims)
record = []
for key in id_features:
if 'cross' not in key:
record.append(self.fields[key].gen(row[key]))
else:
fea0 = self.fields[key].cross_fea0
fea1 = self.fields[key].cross_fea1
record.append(
self.fields[key].gen_cross_fea(row[fea0], row[fea1]))
sparse_input = concat_sparse_vectors(record, self.id_dims)
record = [dense_input, sparse_input]
if not self.mode.is_infer():
record.append(list((int(row['click']), )))
return record
def ids2dense(vec, dim):
return vec
def ids2sparse(vec):
return ["%d:1" % x for x in vec]
detect_dataset(args.data_path, args.num_lines_to_detect)
dataset = AvazuDataset(
args.data_path,
args.test_set_size,
fields=fields,
feature_dims=feature_dims)
output_trainset_path = os.path.join(args.output_dir, 'train.txt')
output_testset_path = os.path.join(args.output_dir, 'test.txt')
output_infer_path = os.path.join(args.output_dir, 'infer.txt')
output_meta_path = os.path.join(args.output_dir, 'data.meta.txt')
with open(output_trainset_path, 'w') as f:
for id, record in enumerate(dataset.train()):
if id and id % 10000 == 0:
logger.info("load %d records" % id)
if id > args.train_size:
break
dnn_input, lr_input, click = record
dnn_input = ids2dense(dnn_input, feature_dims['dnn_input'])
lr_input = ids2sparse(lr_input)
line = "%s\t%s\t%d\n" % (' '.join(map(str, dnn_input)),
' '.join(map(str, lr_input)), click[0])
f.write(line)
logger.info('write to %s' % output_trainset_path)
with open(output_testset_path, 'w') as f:
for id, record in enumerate(dataset.test()):
dnn_input, lr_input, click = record
dnn_input = ids2dense(dnn_input, feature_dims['dnn_input'])
lr_input = ids2sparse(lr_input)
line = "%s\t%s\t%d\n" % (' '.join(map(str, dnn_input)),
' '.join(map(str, lr_input)), click[0])
f.write(line)
logger.info('write to %s' % output_testset_path)
with open(output_infer_path, 'w') as f:
for id, record in enumerate(dataset.infer()):
dnn_input, lr_input = record
dnn_input = ids2dense(dnn_input, feature_dims['dnn_input'])
lr_input = ids2sparse(lr_input)
line = "%s\t%s\n" % (' '.join(map(str, dnn_input)),
' '.join(map(str, lr_input)), )
f.write(line)
if id > args.test_set_size:
break
logger.info('write to %s' % output_infer_path)
with open(output_meta_path, 'w') as f:
lines = [
"dnn_input_dim: %d" % feature_dims['dnn_input'],
"lr_input_dim: %d" % feature_dims['lr_input']
]
f.write('\n'.join(lines))
logger.info('write data meta into %s' % output_meta_path)