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import datetime
import json
import sys
import requests
from confluent_kafka import Consumer, KafkaException, Producer, TopicPartition
from requests.adapters import HTTPAdapter
# unclear why pylint chokes on this import. Recent 'requests' and 'urllib3' are
# in Pipenv.lock, and there are no errors in QA
from requests.packages.urllib3.util.retry import Retry # pylint: disable=import-error
# Used for parsing ISO date format (YYYY-MM-DD)
DATE_FMT = "%Y-%m-%d"
def requests_retry_session(
retries=10, backoff_factor=3, status_forcelist=(500, 502, 504), session=None
):
"""
From: https://www.peterbe.com/plog/best-practice-with-retries-with-requests
"""
session = session or requests.Session()
retry = Retry(
total=retries,
read=retries,
connect=retries,
backoff_factor=backoff_factor,
status_forcelist=status_forcelist,
)
adapter = HTTPAdapter(max_retries=retry)
session.mount("http://", adapter)
session.mount("https://", adapter)
return session
class HarvestState:
"""
First version of this works with full days (dates)
General concept is to have harvesters serialize state when they make
progress and push to kafka. On startup, harvesters are given a task (extend
of work), and consume the full history to see what work remains to be done.
The simplest flow is:
- harvester is told to collect last N days of updates
- creates an to_process set
- for each update, pops date from in_progress (if exits)
NOTE: this thing is sorta over-engineered... but might grow in the future
NOTE: should this class manage the state topic as well? Hrm.
"""
def __init__(self, start_date=None, end_date=None, catchup_days=14):
self.to_process = set()
self.completed = set()
if catchup_days or start_date or end_date:
self.enqueue_period(start_date, end_date, catchup_days)
def __str__(self):
return "<HarvestState to_process={}, completed={}>".format(
len(self.to_process), len(self.completed)
)
def enqueue_period(self, start_date=None, end_date=None, catchup_days=14):
"""
This function adds a time period to the "TODO" list, unless the dates
have already been processed.
By default the period is "<catchup_days> ago until yesterday"
"""
today_utc = datetime.datetime.utcnow().date()
if start_date is None:
# bootstrap to N days ago
start_date = today_utc - datetime.timedelta(days=catchup_days)
if end_date is None:
# bootstrap to yesterday (don't want to start on today until it's over)
end_date = today_utc - datetime.timedelta(days=1)
current = start_date
while current <= end_date:
if current not in self.completed:
self.to_process.add(current)
current += datetime.timedelta(days=1)
def next_span(self, continuous=False):
"""
Gets next timespan (date) to be processed, or returns None if completed.
If 'continuous' arg is True, will try to enqueue recent possibly valid
timespans; the idea is to call next_span() repeatedly, and it will return a
new timespan when it becomes "available".
"""
if continuous:
# enqueue yesterday
self.enqueue_period(
start_date=datetime.datetime.utcnow().date() - datetime.timedelta(days=1)
)
if not self.to_process:
return None
return sorted(list(self.to_process))[0]
def update(self, state_json):
"""
Merges a state JSON object into the current state.
This is expected to be used to "catch-up" on previously serialized
state stored on disk or in Kafka.
"""
state = json.loads(state_json)
if "completed-date" in state:
date = datetime.datetime.strptime(state["completed-date"], DATE_FMT).date()
self.complete(date)
def complete(self, date, kafka_topic=None, kafka_config=None):
"""
Records that a date has been processed successfully.
Updates internal state and returns a JSON representation to be
serialized. Will publish to a kafka topic if passed as an argument.
kafka_topic should be a string. A producer will be created and destroyed.
"""
try:
self.to_process.remove(date)
except KeyError:
pass
self.completed.add(date)
state_json = json.dumps(
{
"in-progress-dates": [str(d) for d in self.to_process],
"completed-date": str(date),
}
).encode("utf-8")
if kafka_topic:
assert kafka_config
def fail_fast(err, msg):
if err:
raise KafkaException(err)
print("Committing status to Kafka: {}".format(kafka_topic), file=sys.stderr)
producer_conf = kafka_config.copy()
producer_conf.update(
{
"delivery.report.only.error": True,
"default.topic.config": {
"request.required.acks": -1, # all brokers must confirm
},
}
)
producer = Producer(producer_conf)
producer.produce(kafka_topic, state_json, on_delivery=fail_fast)
producer.flush()
return state_json
def initialize_from_kafka(self, kafka_topic, kafka_config):
"""
kafka_topic should have type str
TODO: this method does not fail if client can't connect to host.
"""
if not kafka_topic:
return
print("Fetching state from kafka topic: {}".format(kafka_topic), file=sys.stderr)
def fail_fast(err, msg):
if err:
raise KafkaException(err)
conf = kafka_config.copy()
conf.update(
{
"group.id": "dummy_init_group", # should never be committed
"enable.auto.commit": False,
"auto.offset.reset": "earliest",
"session.timeout.ms": 10000,
}
)
consumer = Consumer(conf)
# this watermark fetch is mostly to ensure we are connected to broker and
# fail fast if not, but we also confirm that we read to end below.
hwm = consumer.get_watermark_offsets(
TopicPartition(kafka_topic, 0), timeout=5.0, cached=False
)
if not hwm:
raise Exception(
"Kafka consumer timeout, or topic {} doesn't exist".format(kafka_topic)
)
consumer.assign([TopicPartition(kafka_topic, 0, 0)])
c = 0
while True:
msg = consumer.poll(timeout=2.0)
if not msg:
break
if msg.error():
raise KafkaException(msg.error())
# sys.stdout.write('.')
self.update(msg.value().decode("utf-8"))
c += 1
consumer.close()
# verify that we got at least to HWM
assert c >= hwm[1]
print("... got {} state update messages, done".format(c), file=sys.stderr)
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