Ejemplo n.º 1
0
class zipkin_span(object):
    """Context manager/decorator for all of your zipkin tracing needs.

    Usage #1: Start a trace with a given sampling rate

    This begins the zipkin trace and also records the root span. The required
    params are service_name, transport_handler, and sample_rate.

    # Start a trace with do_stuff() as the root span
    def some_batch_job(a, b):
        with zipkin_span(
            service_name='my_service',
            span_name='my_span_name',
            transport_handler=some_handler,
            port=22,
            sample_rate=0.05,
        ):
            do_stuff()

    Usage #2: Trace a service call.

    The typical use case is instrumenting a framework like Pyramid or Django. Only
    ss and sr times are recorded for the root span. Required params are
    service_name, zipkin_attrs, transport_handler, and port.

    # Used in a pyramid tween
    def tween(request):
        zipkin_attrs = some_zipkin_attr_creator(request)
        with zipkin_span(
            service_name='my_service,'
            span_name='my_span_name',
            zipkin_attrs=zipkin_attrs,
            transport_handler=some_handler,
            port=22,
        ) as zipkin_context:
            response = handler(request)
            zipkin_context.update_binary_annotations_for_root_span(
                some_binary_annotations)
            return response

    Usage #3: Log a span within the context of a zipkin trace

    If you're already in a zipkin trace, you can use this to log a span inside. The
    only required param is service_name. If you're not in a zipkin trace, this
    won't do anything.

    # As a decorator
    @zipkin_span(service_name='my_service', span_name='my_function')
    def my_function():
        do_stuff()

    # As a context manager
    def my_function():
        with zipkin_span(service_name='my_service', span_name='do_stuff'):
            do_stuff()
    """
    def __init__(
            self,
            service_name,
            span_name='span',
            zipkin_attrs=None,
            transport_handler=None,
            annotations=None,
            binary_annotations=None,
            port=0,
            sample_rate=None,
            include=('client', 'server'),
            add_logging_annotation=False,
    ):
        """Logs a zipkin span. If this is the root span, then a zipkin
        trace is started as well.

        :param service_name: The name of the called service
        :type service_name: string
        :param span_name: Optional name of span, defaults to 'span'
        :type span_name: string
        :param zipkin_attrs: Optional set of zipkin attributes to be used
        :type zipkin_attrs: ZipkinAttrs
        :param transport_handler: Callback function that takes a message parameter
                                    and handles logging it
        :type transport_handler: function
        :param annotations: Optional dict of str -> timestamp annotations
        :type annotations: dict of str -> int
        :param binary_annotations: Optional dict of str -> str span attrs
        :type binary_annotations: dict of str -> str
        :param port: The port number of the service. Defaults to 0.
        :type port: int
        :param sample_rate: Rate at which to sample; 0.0 - 100.0. If passed-in
            zipkin_attrs have is_sampled=False and the sample_rate param is > 0,
            a new span will be generated at this rate. This means that if you
            propagate sampling decisions to downstream services, but still have
            sample_rate > 0 in those services, the actual rate of generated
            spans for those services will be > sampling_rate.
        :type sample_rate: float
        :param include: which annotations to include
            can be one of {'client', 'server'}
            corresponding to ('cs', 'cr') and ('ss', 'sr') respectively
        :type include: iterable
        :param add_logging_annotation: Whether to add a 'start_logging'
            annotation when py_zipkin starts logging spans
        :type add_logging_annotation: boolean
        """
        self.service_name = service_name
        self.span_name = span_name
        self.zipkin_attrs = zipkin_attrs
        self.transport_handler = transport_handler
        self.annotations = annotations or {}
        self.binary_annotations = binary_annotations or {}
        self.port = port
        self.logging_context = None
        self.sample_rate = sample_rate
        self.include = include
        self.add_logging_annotation = add_logging_annotation

        # Validation checks
        if self.zipkin_attrs or self.sample_rate is not None:
            if self.transport_handler is None:
                raise ZipkinError(
                    'Root spans require a transport handler to be given')

        if self.sample_rate is not None and not (0.0 <= self.sample_rate <=
                                                 100.0):
            raise ZipkinError('Sample rate must be between 0.0 and 100.0')

        if not set(include).issubset(STANDARD_ANNOTATIONS_KEYS):
            raise ZipkinError('Only %s are supported as annotations' %
                              STANDARD_ANNOTATIONS_KEYS)
        else:
            # get a list of all of the mapped annotations
            self.annotation_filter = set()
            for include_name in include:
                self.annotation_filter.update(
                    STANDARD_ANNOTATIONS[include_name])

    def __call__(self, f):
        @functools.wraps(f)
        def decorated(*args, **kwargs):
            with zipkin_span(
                    service_name=self.service_name,
                    span_name=self.span_name,
                    zipkin_attrs=self.zipkin_attrs,
                    transport_handler=self.transport_handler,
                    annotations=self.annotations,
                    binary_annotations=self.binary_annotations,
                    port=self.port,
                    sample_rate=self.sample_rate,
                    include=self.include,
            ):
                return f(*args, **kwargs)

        return decorated

    def __enter__(self):
        return self.start()

    def start(self):
        """Enter the new span context. All annotations logged inside this
        context will be attributed to this span. All new spans generated
        inside this context will have this span as their parent.

        In the unsampled case, this context still generates new span IDs and
        pushes them onto the threadlocal stack, so downstream services calls
        made will pass the correct headers. However, the logging handler is
        never attached in the unsampled case, so the spans are never logged.
        """
        self.do_pop_attrs = False
        # If zipkin_attrs are passed in or this span is doing its own sampling,
        # it will need to actually log spans at __exit__.
        self.perform_logging = self.zipkin_attrs or self.sample_rate is not None

        if self.sample_rate is not None:
            # This clause allows for sampling this service independently
            # of the passed-in zipkin_attrs.
            if self.zipkin_attrs and not self.zipkin_attrs.is_sampled:
                self.zipkin_attrs = create_attrs_for_span(
                    sample_rate=self.sample_rate,
                    trace_id=self.zipkin_attrs.trace_id,
                )
            elif not self.zipkin_attrs:
                self.zipkin_attrs = create_attrs_for_span(
                    sample_rate=self.sample_rate, )

        if not self.zipkin_attrs:
            # This span is inside the context of an existing trace
            existing_zipkin_attrs = get_zipkin_attrs()
            if existing_zipkin_attrs:
                self.zipkin_attrs = ZipkinAttrs(
                    trace_id=existing_zipkin_attrs.trace_id,
                    span_id=generate_random_64bit_string(),
                    parent_span_id=existing_zipkin_attrs.span_id,
                    flags=existing_zipkin_attrs.flags,
                    is_sampled=existing_zipkin_attrs.is_sampled,
                )

        # If zipkin_attrs are not set up by now, that means this span is not
        # configured to perform logging itself, and it's not in an existing
        # Zipkin trace. That means there's nothing else to do and it can exit
        # early.
        if not self.zipkin_attrs:
            return self

        push_zipkin_attrs(self.zipkin_attrs)
        self.do_pop_attrs = True

        self.start_timestamp = time.time()

        # Set up logging if this is the root span
        if self.perform_logging:
            # Don't set up any logging if we're not sampling
            if not self.zipkin_attrs.is_sampled:
                return self

            endpoint = create_endpoint(self.port, self.service_name)
            self.log_handler = ZipkinLoggerHandler(self.zipkin_attrs)
            self.logging_context = ZipkinLoggingContext(
                self.zipkin_attrs,
                endpoint,
                self.log_handler,
                self.span_name,
                self.transport_handler,
                self.binary_annotations,
                add_logging_annotation=self.add_logging_annotation,
            )
            self.logging_context.start()
            return self
        else:
            # In the sampled case, patch the ZipkinLoggerHandler.
            if self.zipkin_attrs.is_sampled:
                # Be defensive about logging setup. Since ZipkinAttrs are local to
                # the thread, multithreaded frameworks can get in strange states.
                # The logging is not going to be correct in these cases, so we set
                # a flag that turns off logging on __exit__.
                if len(zipkin_logger.handlers) > 0:
                    # Put span ID on logging handler. Assume there's only a single
                    # handler, since all logging should be set up in this package.
                    self.log_handler = zipkin_logger.handlers[0]
                    # Store the old parent_span_id, probably None, in case we have
                    # nested zipkin_spans
                    self.old_parent_span_id = self.log_handler.parent_span_id
                    self.log_handler.parent_span_id = self.zipkin_attrs.span_id

            return self

    def __exit__(self, _exc_type, _exc_value, _exc_traceback):
        self.stop(_exc_type, _exc_value, _exc_traceback)

    def stop(self, _exc_type=None, _exc_value=None, _exc_traceback=None):
        """Exit the span context. Zipkin attrs are pushed onto the
        threadlocal stack regardless of sampling, so they always need to be
        popped off. The actual logging of spans depends on sampling and that
        the logging was correctly set up.
        """
        # Always remove the stored zipkin_attrs
        if self.do_pop_attrs:
            pop_zipkin_attrs()

        # Exit early if this request is not being sampled
        if not self.zipkin_attrs or not self.zipkin_attrs.is_sampled:
            return

        # If this is the root span, exit the context (which will handle logging)
        if self.logging_context:
            self.logging_context.stop()
            self.logging_context = None
            return

        end_timestamp = time.time()

        # Put the old parent_span_id back on the handler
        self.log_handler.parent_span_id = self.old_parent_span_id

        # To get a full span we just set cs=sr and ss=cr.
        full_annotations = {
            'cs': self.start_timestamp,
            'sr': self.start_timestamp,
            'ss': end_timestamp,
            'cr': end_timestamp,
        }
        # But we filter down if we only want to emit some of the annotations
        filtered_annotations = {
            k: v
            for k, v in full_annotations.items() if k in self.annotation_filter
        }
        self.annotations.update(filtered_annotations)

        # Store this span on the logging handler object.
        self.log_handler.store_client_span(
            span_name=self.span_name,
            service_name=self.service_name,
            annotations=self.annotations,
            binary_annotations=self.binary_annotations,
            span_id=self.zipkin_attrs.span_id,
        )

    def update_binary_annotations_for_root_span(self, extra_annotations):
        """Updates the binary annotations for the root span of the trace.

        If this trace is not being sampled then this is a no-op.
        """
        if not self.zipkin_attrs.is_sampled:
            return
        if not self.logging_context:
            raise ZipkinError('No logging context available')
        self.logging_context.binary_annotations_dict.update(extra_annotations)
Ejemplo n.º 2
0
class zipkin_span(object):
    """Context manager/decorator for all of your zipkin tracing needs.

    Usage #1: Start a trace with a given sampling rate

    This begins the zipkin trace and also records the root span. The required
    params are service_name, transport_handler, and sample_rate.

    # Start a trace with do_stuff() as the root span
    def some_batch_job(a, b):
        with zipkin_span(
            service_name='my_service',
            span_name='my_span_name',
            transport_handler=some_handler,
            port=22,
            sample_rate=0.05,
        ):
            do_stuff()

    Usage #2: Trace a service call.

    The typical use case is instrumenting a framework like Pyramid or Django. Only
    ss and sr times are recorded for the root span. Required params are
    service_name, zipkin_attrs, transport_handler, and port.

    # Used in a pyramid tween
    def tween(request):
        zipkin_attrs = some_zipkin_attr_creator(request)
        with zipkin_span(
            service_name='my_service,'
            span_name='my_span_name',
            zipkin_attrs=zipkin_attrs,
            transport_handler=some_handler,
            port=22,
        ) as zipkin_context:
            response = handler(request)
            zipkin_context.update_binary_annotations_for_root_span(
                some_binary_annotations)
            return response

    Usage #3: Log a span within the context of a zipkin trace

    If you're already in a zipkin trace, you can use this to log a span inside. The
    only required param is service_name. If you're not in a zipkin trace, this
    won't do anything.

    # As a decorator
    @zipkin_span(service_name='my_service', span_name='my_function')
    def my_function():
        do_stuff()

    # As a context manager
    def my_function():
        with zipkin_span(service_name='my_service', span_name='do_stuff'):
            do_stuff()
    """

    def __init__(
        self,
        service_name,
        span_name='span',
        zipkin_attrs=None,
        transport_handler=None,
        annotations=None,
        binary_annotations=None,
        port=0,
        sample_rate=None,
    ):
        """Logs a zipkin span. If this is the root span, then a zipkin
        trace is started as well.

        :param service_name: The name of the called service
        :type service_name: string
        :param span_name: Optional name of span, defaults to 'span'
        :type span_name: string
        :param zipkin_attrs: Optional set of zipkin attributes to be used
        :type zipkin_attrs: ZipkinAttrs
        :param transport_handler: Callback function that takes a message parameter
                                    and handles logging it
        :type transport_handler: function
        :param annotations: Optional dict of str -> timestamp annotations
        :type annotations: dict of str -> int
        :param binary_annotations: Optional dict of str -> str span attrs
        :type binary_annotations: dict of str -> str
        :param port: The port number of the service. Defaults to 0.
        :type port: int
        :param sample_rate: Custom sampling rate (between 100.0 and 0.0) if
                            this is the root of the trace
        :type sample_rate: float
        """
        self.service_name = service_name
        self.span_name = span_name
        self.zipkin_attrs = zipkin_attrs
        self.transport_handler = transport_handler
        self.annotations = annotations or {}
        self.binary_annotations = binary_annotations or {}
        self.port = port
        self.logging_context = None
        self.sample_rate = sample_rate

        # Validation checks
        if self.zipkin_attrs or self.sample_rate is not None:
            if self.transport_handler is None:
                raise ZipkinError(
                    'Root spans require a transport handler to be given')

        if self.sample_rate is not None and not (0.0 <= self.sample_rate <= 100.0):
            raise ZipkinError('Sample rate must be between 0.0 and 100.0')

    def __call__(self, f):
        @functools.wraps(f)
        def decorated(*args, **kwargs):
            with self:
                return f(*args, **kwargs)
        return decorated

    def __enter__(self):
        """Enter the new span context. All annotations logged inside this
        context will be attributed to this span. All new spans generated
        inside this context will have this span as their parent.

        In the unsampled case, this context still generates new span IDs and
        pushes them onto the threadlocal stack, so downstream services calls
        made will pass the correct headers. However, the logging handler is
        never attached in the unsampled case, so the spans are never logged.
        """
        self.do_pop_attrs = False
        # If this span is the first span to be recorded for a service, then
        # logging will need to be set up.
        self.is_root = False

        if self.zipkin_attrs:
            self.is_root = True
        if self.sample_rate is not None:
            self.is_root = True

            if self.zipkin_attrs and not self.zipkin_attrs.is_sampled:
                self.zipkin_attrs = create_attrs_for_span(
                    sample_rate=self.sample_rate,
                    trace_id=self.zipkin_attrs.trace_id,
                )
            else:
                self.zipkin_attrs = create_attrs_for_span(
                    sample_rate=self.sample_rate,
                )

        if not self.zipkin_attrs:
            # This span is inside the context of an existing trace
            existing_zipkin_attrs = get_zipkin_attrs()
            if existing_zipkin_attrs:
                self.zipkin_attrs = ZipkinAttrs(
                    trace_id=existing_zipkin_attrs.trace_id,
                    span_id=generate_random_64bit_string(),
                    parent_span_id=existing_zipkin_attrs.span_id,
                    flags=existing_zipkin_attrs.flags,
                    is_sampled=existing_zipkin_attrs.is_sampled,
                )

        # Don't do anything if zipkin attributes are not set up
        if not self.zipkin_attrs:
            return self

        push_zipkin_attrs(self.zipkin_attrs)
        self.do_pop_attrs = True

        self.start_timestamp = time.time()

        # Set up logging if this is the root span
        if self.is_root:
            # Don't set up any logging if we're not sampling
            if not self.zipkin_attrs.is_sampled:
                return self

            endpoint = create_endpoint(self.port, self.service_name)
            self.log_handler = ZipkinLoggerHandler(self.zipkin_attrs)
            self.logging_context = ZipkinLoggingContext(
                self.zipkin_attrs,
                endpoint,
                self.log_handler,
                self.span_name,
                self.transport_handler,
                self.binary_annotations,
            )
            self.logging_context.__enter__()
            return self
        else:
            # In the sampled case, patch the ZipkinLoggerHandler.
            if self.zipkin_attrs.is_sampled:
                # Be defensive about logging setup. Since ZipkinAttrs are local to
                # the thread, multithreaded frameworks can get in strange states.
                # The logging is not going to be correct in these cases, so we set
                # a flag that turns off logging on __exit__.
                if len(zipkin_logger.handlers) > 0:
                    # Put span ID on logging handler. Assume there's only a single
                    # handler, since all logging should be set up in this package.
                    self.log_handler = zipkin_logger.handlers[0]
                    # Store the old parent_span_id, probably None, in case we have
                    # nested zipkin_spans
                    self.old_parent_span_id = self.log_handler.parent_span_id
                    self.log_handler.parent_span_id = self.zipkin_attrs.span_id

            return self

    def __exit__(self, _exc_type, _exc_value, _exc_traceback):
        """Exit the span context. Zipkin attrs are pushed onto the
        threadlocal stack regardless of sampling, so they always need to be
        popped off. The actual logging of spans depends on sampling and that
        the logging was correctly set up.
        """
        # Always remove the stored zipkin_attrs
        if self.do_pop_attrs:
            pop_zipkin_attrs()

        # Exit early if this request is not being sampled
        if not self.zipkin_attrs or not self.zipkin_attrs.is_sampled:
            return

        # If this is the root span, exit the context (which will handle logging)
        if self.logging_context:
            self.logging_context.__exit__(_exc_type, _exc_value, _exc_traceback)
            self.logging_context = None
            return

        end_timestamp = time.time()

        # Put the old parent_span_id back on the handler
        self.log_handler.parent_span_id = self.old_parent_span_id

        # To get a full span we just set cs=sr and ss=cr.
        self.annotations.update({
            'cs': self.start_timestamp,
            'sr': self.start_timestamp,
            'ss': end_timestamp,
            'cr': end_timestamp,
        })

        # Store this span on the logging handler object.
        self.log_handler.store_client_span(
            span_name=self.span_name,
            service_name=self.service_name,
            annotations=self.annotations,
            binary_annotations=self.binary_annotations,
            span_id=self.zipkin_attrs.span_id,
        )

    def update_binary_annotations_for_root_span(self, extra_annotations):
        """Updates the binary annotations for the root span of the trace.

        If this trace is not being sampled then this is a no-op.
        """
        if not self.zipkin_attrs.is_sampled:
            return
        if not self.logging_context:
            raise ZipkinError('No logging context available')
        self.logging_context.binary_annotations_dict.update(extra_annotations)