tahoe-lafs/src/allmydata/client.py

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import os, stat, time, re
from allmydata.interfaces import RIStorageServer
from allmydata import node
from zope.interface import implements
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from twisted.internet import reactor
from twisted.application.internet import TimerService
from foolscap import Referenceable
from foolscap.logging import log
from pycryptopp.publickey import rsa
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import allmydata
from allmydata.storage import StorageServer
from allmydata.upload import Uploader
from allmydata.download import Downloader
from allmydata.checker import Checker
from allmydata.offloaded import Helper
from allmydata.control import ControlServer
from allmydata.introducer import IntroducerClient
from allmydata.util import hashutil, base32, testutil
from allmydata.filenode import FileNode
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from allmydata.dirnode import NewDirectoryNode
from allmydata.mutable import MutableFileNode, MutableWatcher
stats: add a simple stats gathering system We have a desire to collect runtime statistics from multiple nodes primarily for server monitoring purposes. This implements a simple implementation of such a system, as a skeleton to build more sophistication upon. Each client now looks for a 'stats_gatherer.furl' config file. If it has been configured to use a stats gatherer, then it instantiates internally a StatsProvider. This is a central place for code which wishes to offer stats up for monitoring to report them to, either by calling stats_provider.count('stat.name', value) to increment a counter, or by registering a class as a stats producer with sp.register_producer(obj). The StatsProvider connects to the StatsGatherer server and provides its provider upon startup. The StatsGatherer is then responsible for polling the attached providers periodically to retrieve the data provided. The provider queries each registered producer when the gatherer queries the provider. Both the internal 'counters' and the queried 'stats' are then reported to the gatherer. This provides a simple gatherer app, (c.f. make stats-gatherer-run) which prints its furl and listens for incoming connections. Once a minute, the gatherer polls all connected providers, and writes the retrieved data into a pickle file. Also included is a munin plugin which knows how to read the gatherer's stats.pickle and output data munin can interpret. this plugin, tahoe-stats.py can be symlinked as multiple different names within munin's 'plugins' directory, and inspects argv to determine which data to display, doing a lookup in a table within that file. It looks in the environment for 'statsfile' to determine the path to the gatherer's stats.pickle. An example plugins-conf.d file is provided.
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from allmydata.stats import StatsProvider
from allmydata.interfaces import IURI, INewDirectoryURI, IStatsProducer, \
IReadonlyNewDirectoryURI, IFileURI, IMutableFileURI, RIStubClient
KiB=1024
MiB=1024*KiB
GiB=1024*MiB
TiB=1024*GiB
PiB=1024*TiB
class StubClient(Referenceable):
implements(RIStubClient)
def _make_secret():
return base32.b2a(os.urandom(hashutil.CRYPTO_VAL_SIZE)) + "\n"
class Client(node.Node, testutil.PollMixin):
implements(IStatsProducer)
PORTNUMFILE = "client.port"
STOREDIR = 'storage'
NODETYPE = "client"
SUICIDE_PREVENTION_HOTLINE_FILE = "suicide_prevention_hotline"
# we're pretty narrow-minded right now
OLDEST_SUPPORTED_VERSION = allmydata.__version__
# this is a tuple of (needed, desired, total, max_segment_size). 'needed'
# is the number of shares required to reconstruct a file. 'desired' means
# that we will abort an upload unless we can allocate space for at least
# this many. 'total' is the total number of shares created by encoding.
# If everybody has room then this is is how many we will upload.
DEFAULT_ENCODING_PARAMETERS = {"k": 3,
"happy": 7,
"n": 10,
"max_segment_size": 128*KiB,
}
def __init__(self, basedir="."):
node.Node.__init__(self, basedir)
self.started_timestamp = time.time()
self.logSource="Client"
self.nickname = self.get_config("nickname")
if self.nickname is None:
self.nickname = "<unspecified>"
self.init_introducer_client()
stats: add a simple stats gathering system We have a desire to collect runtime statistics from multiple nodes primarily for server monitoring purposes. This implements a simple implementation of such a system, as a skeleton to build more sophistication upon. Each client now looks for a 'stats_gatherer.furl' config file. If it has been configured to use a stats gatherer, then it instantiates internally a StatsProvider. This is a central place for code which wishes to offer stats up for monitoring to report them to, either by calling stats_provider.count('stat.name', value) to increment a counter, or by registering a class as a stats producer with sp.register_producer(obj). The StatsProvider connects to the StatsGatherer server and provides its provider upon startup. The StatsGatherer is then responsible for polling the attached providers periodically to retrieve the data provided. The provider queries each registered producer when the gatherer queries the provider. Both the internal 'counters' and the queried 'stats' are then reported to the gatherer. This provides a simple gatherer app, (c.f. make stats-gatherer-run) which prints its furl and listens for incoming connections. Once a minute, the gatherer polls all connected providers, and writes the retrieved data into a pickle file. Also included is a munin plugin which knows how to read the gatherer's stats.pickle and output data munin can interpret. this plugin, tahoe-stats.py can be symlinked as multiple different names within munin's 'plugins' directory, and inspects argv to determine which data to display, doing a lookup in a table within that file. It looks in the environment for 'statsfile' to determine the path to the gatherer's stats.pickle. An example plugins-conf.d file is provided.
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self.init_stats_provider()
self.init_lease_secret()
self.init_storage()
self.init_control()
run_helper = self.get_config("run_helper")
if run_helper:
self.init_helper()
self.init_client()
self._key_generator = None
key_gen_furl = self.get_config('key_generator.furl')
if key_gen_furl:
self.init_key_gen(key_gen_furl)
# ControlServer and Helper are attached after Tub startup
hotline_file = os.path.join(self.basedir,
self.SUICIDE_PREVENTION_HOTLINE_FILE)
if os.path.exists(hotline_file):
age = time.time() - os.stat(hotline_file)[stat.ST_MTIME]
self.log("hotline file noticed (%ds old), starting timer" % age)
hotline = TimerService(1.0, self._check_hotline, hotline_file)
hotline.setServiceParent(self)
webport = self.get_config("webport")
if webport:
self.init_web(webport) # strports string
def init_introducer_client(self):
self.introducer_furl = self.get_config("introducer.furl", required=True)
ic = IntroducerClient(self.tub, self.introducer_furl,
self.nickname,
str(allmydata.__version__),
str(self.OLDEST_SUPPORTED_VERSION))
self.introducer_client = ic
ic.setServiceParent(self)
# nodes that want to upload and download will need storage servers
ic.subscribe_to("storage")
stats: add a simple stats gathering system We have a desire to collect runtime statistics from multiple nodes primarily for server monitoring purposes. This implements a simple implementation of such a system, as a skeleton to build more sophistication upon. Each client now looks for a 'stats_gatherer.furl' config file. If it has been configured to use a stats gatherer, then it instantiates internally a StatsProvider. This is a central place for code which wishes to offer stats up for monitoring to report them to, either by calling stats_provider.count('stat.name', value) to increment a counter, or by registering a class as a stats producer with sp.register_producer(obj). The StatsProvider connects to the StatsGatherer server and provides its provider upon startup. The StatsGatherer is then responsible for polling the attached providers periodically to retrieve the data provided. The provider queries each registered producer when the gatherer queries the provider. Both the internal 'counters' and the queried 'stats' are then reported to the gatherer. This provides a simple gatherer app, (c.f. make stats-gatherer-run) which prints its furl and listens for incoming connections. Once a minute, the gatherer polls all connected providers, and writes the retrieved data into a pickle file. Also included is a munin plugin which knows how to read the gatherer's stats.pickle and output data munin can interpret. this plugin, tahoe-stats.py can be symlinked as multiple different names within munin's 'plugins' directory, and inspects argv to determine which data to display, doing a lookup in a table within that file. It looks in the environment for 'statsfile' to determine the path to the gatherer's stats.pickle. An example plugins-conf.d file is provided.
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def init_stats_provider(self):
gatherer_furl = self.get_config('stats_gatherer.furl')
if gatherer_furl:
self.stats_provider = StatsProvider(self, gatherer_furl)
stats: add a simple stats gathering system We have a desire to collect runtime statistics from multiple nodes primarily for server monitoring purposes. This implements a simple implementation of such a system, as a skeleton to build more sophistication upon. Each client now looks for a 'stats_gatherer.furl' config file. If it has been configured to use a stats gatherer, then it instantiates internally a StatsProvider. This is a central place for code which wishes to offer stats up for monitoring to report them to, either by calling stats_provider.count('stat.name', value) to increment a counter, or by registering a class as a stats producer with sp.register_producer(obj). The StatsProvider connects to the StatsGatherer server and provides its provider upon startup. The StatsGatherer is then responsible for polling the attached providers periodically to retrieve the data provided. The provider queries each registered producer when the gatherer queries the provider. Both the internal 'counters' and the queried 'stats' are then reported to the gatherer. This provides a simple gatherer app, (c.f. make stats-gatherer-run) which prints its furl and listens for incoming connections. Once a minute, the gatherer polls all connected providers, and writes the retrieved data into a pickle file. Also included is a munin plugin which knows how to read the gatherer's stats.pickle and output data munin can interpret. this plugin, tahoe-stats.py can be symlinked as multiple different names within munin's 'plugins' directory, and inspects argv to determine which data to display, doing a lookup in a table within that file. It looks in the environment for 'statsfile' to determine the path to the gatherer's stats.pickle. An example plugins-conf.d file is provided.
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self.add_service(self.stats_provider)
self.stats_provider.register_producer(self)
stats: add a simple stats gathering system We have a desire to collect runtime statistics from multiple nodes primarily for server monitoring purposes. This implements a simple implementation of such a system, as a skeleton to build more sophistication upon. Each client now looks for a 'stats_gatherer.furl' config file. If it has been configured to use a stats gatherer, then it instantiates internally a StatsProvider. This is a central place for code which wishes to offer stats up for monitoring to report them to, either by calling stats_provider.count('stat.name', value) to increment a counter, or by registering a class as a stats producer with sp.register_producer(obj). The StatsProvider connects to the StatsGatherer server and provides its provider upon startup. The StatsGatherer is then responsible for polling the attached providers periodically to retrieve the data provided. The provider queries each registered producer when the gatherer queries the provider. Both the internal 'counters' and the queried 'stats' are then reported to the gatherer. This provides a simple gatherer app, (c.f. make stats-gatherer-run) which prints its furl and listens for incoming connections. Once a minute, the gatherer polls all connected providers, and writes the retrieved data into a pickle file. Also included is a munin plugin which knows how to read the gatherer's stats.pickle and output data munin can interpret. this plugin, tahoe-stats.py can be symlinked as multiple different names within munin's 'plugins' directory, and inspects argv to determine which data to display, doing a lookup in a table within that file. It looks in the environment for 'statsfile' to determine the path to the gatherer's stats.pickle. An example plugins-conf.d file is provided.
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else:
self.stats_provider = None
def get_stats(self):
return { 'node.uptime': time.time() - self.started_timestamp }
def init_lease_secret(self):
secret_s = self.get_or_create_private_config("secret", _make_secret)
self._lease_secret = base32.a2b(secret_s)
def init_storage(self):
# should we run a storage server (and publish it for others to use)?
provide_storage = (self.get_config("no_storage") is None)
if not provide_storage:
return
readonly_storage = (self.get_config("readonly_storage") is not None)
storedir = os.path.join(self.basedir, self.STOREDIR)
sizelimit = None
data = self.get_config("sizelimit")
if data:
m = re.match(r"^(\d+)([kKmMgG]?[bB]?)$", data)
if not m:
log.msg("SIZELIMIT_FILE contains unparseable value %s" % data)
else:
number, suffix = m.groups()
suffix = suffix.upper()
if suffix.endswith("B"):
suffix = suffix[:-1]
multiplier = {"": 1,
"K": 1000,
"M": 1000 * 1000,
"G": 1000 * 1000 * 1000,
}[suffix]
sizelimit = int(number) * multiplier
discard_storage = self.get_config("debug_discard_storage") is not None
ss = StorageServer(storedir, sizelimit,
discard_storage, readonly_storage,
self.stats_provider)
self.add_service(ss)
d = self.when_tub_ready()
# we can't do registerReference until the Tub is ready
def _publish(res):
furl_file = os.path.join(self.basedir, "private", "storage.furl")
furl = self.tub.registerReference(ss, furlFile=furl_file)
ri_name = RIStorageServer.__remote_name__
self.introducer_client.publish(furl, "storage", ri_name)
d.addCallback(_publish)
d.addErrback(log.err, facility="tahoe.init", level=log.BAD)
def init_client(self):
helper_furl = self.get_config("helper.furl")
convergence_s = self.get_or_create_private_config('convergence', _make_secret)
self.convergence = base32.a2b(convergence_s)
self.add_service(Uploader(helper_furl, self.stats_provider))
self.add_service(Downloader(self.stats_provider))
self.add_service(Checker())
self.add_service(MutableWatcher(self.stats_provider))
def _publish(res):
# we publish an empty object so that the introducer can count how
# many clients are connected and see what versions they're
# running.
sc = StubClient()
furl = self.tub.registerReference(sc)
ri_name = RIStubClient.__remote_name__
self.introducer_client.publish(furl, "stub_client", ri_name)
d = self.when_tub_ready()
d.addCallback(_publish)
d.addErrback(log.err, facility="tahoe.init", level=log.BAD)
def init_control(self):
d = self.when_tub_ready()
def _publish(res):
c = ControlServer()
c.setServiceParent(self)
control_url = self.tub.registerReference(c)
self.write_private_config("control.furl", control_url + "\n")
d.addCallback(_publish)
d.addErrback(log.err, facility="tahoe.init", level=log.BAD)
def init_helper(self):
d = self.when_tub_ready()
def _publish(self):
h = Helper(os.path.join(self.basedir, "helper"), self.stats_provider)
h.setServiceParent(self)
# TODO: this is confusing. BASEDIR/private/helper.furl is created
# by the helper. BASEDIR/helper.furl is consumed by the client
# who wants to use the helper. I like having the filename be the
# same, since that makes 'cp' work smoothly, but the difference
# between config inputs and generated outputs is hard to see.
helper_furlfile = os.path.join(self.basedir,
"private", "helper.furl")
self.tub.registerReference(h, furlFile=helper_furlfile)
d.addCallback(_publish)
d.addErrback(log.err, facility="tahoe.init", level=log.BAD)
def init_key_gen(self, key_gen_furl):
d = self.when_tub_ready()
def _subscribe(self):
self.tub.connectTo(key_gen_furl, self._got_key_generator)
d.addCallback(_subscribe)
d.addErrback(log.err, facility="tahoe.init", level=log.BAD)
def _got_key_generator(self, key_generator):
self._key_generator = key_generator
key_generator.notifyOnDisconnect(self._lost_key_generator)
def _lost_key_generator(self):
self._key_generator = None
def init_web(self, webport):
self.log("init_web(webport=%s)", args=(webport,))
from allmydata.webish import WebishServer
nodeurl_path = os.path.join(self.basedir, "node.url")
ws = WebishServer(webport, nodeurl_path)
if self.get_config("webport_allow_localfile") is not None:
ws.allow_local_access(True)
self.add_service(ws)
def _check_hotline(self, hotline_file):
if os.path.exists(hotline_file):
mtime = os.stat(hotline_file)[stat.ST_MTIME]
if mtime > time.time() - 20.0:
return
else:
self.log("hotline file too old, shutting down")
else:
self.log("hotline file missing, shutting down")
reactor.stop()
def get_all_peerids(self):
return self.introducer_client.get_all_peerids()
def get_permuted_peers(self, service_name, key):
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"""
@return: list of (peerid, connection,)
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"""
assert isinstance(service_name, str)
assert isinstance(key, str)
return self.introducer_client.get_permuted_peers(service_name, key)
def get_encoding_parameters(self):
return self.DEFAULT_ENCODING_PARAMETERS
def connected_to_introducer(self):
if self.introducer_client:
return self.introducer_client.connected_to_introducer()
return False
def get_renewal_secret(self):
return hashutil.my_renewal_secret_hash(self._lease_secret)
def get_cancel_secret(self):
return hashutil.my_cancel_secret_hash(self._lease_secret)
def debug_wait_for_client_connections(self, num_clients):
"""Return a Deferred that fires (with None) when we have connections
to the given number of peers. Useful for tests that set up a
temporary test network and need to know when it is safe to proceed
with an upload or download."""
def _check():
current_clients = list(self.get_all_peerids())
return len(current_clients) >= num_clients
d = self.poll(_check, 0.5)
d.addCallback(lambda res: None)
return d
# these four methods are the primitives for creating filenodes and
# dirnodes. The first takes a URI and produces a filenode or (new-style)
# dirnode. The other three create brand-new filenodes/dirnodes.
def create_node_from_uri(self, u):
# this returns synchronously.
u = IURI(u)
if IReadonlyNewDirectoryURI.providedBy(u):
# new-style read-only dirnodes
return NewDirectoryNode(self).init_from_uri(u)
if INewDirectoryURI.providedBy(u):
# new-style dirnodes
return NewDirectoryNode(self).init_from_uri(u)
if IFileURI.providedBy(u):
# CHK
return FileNode(u, self)
assert IMutableFileURI.providedBy(u), u
return MutableFileNode(self).init_from_uri(u)
def notify_publish(self, p):
self.getServiceNamed("mutable-watcher").notify_publish(p)
def notify_retrieve(self, r):
self.getServiceNamed("mutable-watcher").notify_retrieve(r)
def create_empty_dirnode(self):
n = NewDirectoryNode(self)
d = n.create(self._generate_pubprivkeys)
d.addCallback(lambda res: n)
return d
def create_mutable_file(self, contents=""):
n = MutableFileNode(self)
d = n.create(contents, self._generate_pubprivkeys)
d.addCallback(lambda res: n)
return d
def _generate_pubprivkeys(self, key_size):
if self._key_generator:
d = self._key_generator.callRemote('get_rsa_key_pair', key_size)
def make_key_objs((verifying_key, signing_key)):
v = rsa.create_verifying_key_from_string(verifying_key)
s = rsa.create_signing_key_from_string(signing_key)
return v, s
d.addCallback(make_key_objs)
return d
else:
# RSA key generation for a 2048 bit key takes between 0.8 and 3.2 secs
signer = rsa.generate(key_size)
verifier = signer.get_verifying_key()
return verifier, signer
def upload(self, uploadable):
uploader = self.getServiceNamed("uploader")
return uploader.upload(uploadable)
def list_all_uploads(self):
uploader = self.getServiceNamed("uploader")
return uploader.list_all_uploads()
def list_active_uploads(self):
uploader = self.getServiceNamed("uploader")
return uploader.list_active_uploads()
def list_recent_uploads(self):
uploader = self.getServiceNamed("uploader")
return uploader.list_recent_uploads()
def list_all_downloads(self):
downloader = self.getServiceNamed("downloader")
return downloader.list_all_downloads()
def list_active_downloads(self):
downloader = self.getServiceNamed("downloader")
return downloader.list_active_downloads()
def list_recent_downloads(self):
downloader = self.getServiceNamed("downloader")
return downloader.list_recent_downloads()
def list_all_publish(self):
watcher = self.getServiceNamed("mutable-watcher")
return watcher.list_all_publish()
def list_active_publish(self):
watcher = self.getServiceNamed("mutable-watcher")
return watcher.list_active_publish()
def list_recent_publish(self):
watcher = self.getServiceNamed("mutable-watcher")
return watcher.list_recent_publish()
def list_all_retrieve(self):
watcher = self.getServiceNamed("mutable-watcher")
return watcher.list_all_retrieve()
def list_active_retrieve(self):
watcher = self.getServiceNamed("mutable-watcher")
return watcher.list_active_retrieve()
def list_recent_retrieve(self):
watcher = self.getServiceNamed("mutable-watcher")
return watcher.list_recent_retrieve()
def list_active_helper_statuses(self):
try:
helper = self.getServiceNamed("helper")
except KeyError:
return []
return helper.get_active_upload_statuses()
def list_recent_helper_statuses(self):
try:
helper = self.getServiceNamed("helper")
except KeyError:
return []
return helper.get_recent_upload_statuses()