Exemple #1
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def generate_running_count_stats_panel(
    name: str,
    cloudwatch_data_source: str,
    cluster_name: str,
    grid_pos: GridPos,
) -> Stat:
    """
    Generate running count stats panel
    """

    targets = [
        CloudwatchMetricsTarget(
            alias="Desired",
            namespace=CONTAINER_INSIGHTS_NAMESPACE,
            statistics=["Maximum"],
            metricName="DesiredTaskCount",
            dimensions={
                "ServiceName": name,
                "ClusterName": cluster_name
            },
        ),
        CloudwatchMetricsTarget(
            alias="Pending",
            namespace=CONTAINER_INSIGHTS_NAMESPACE,
            statistics=["Maximum"],
            metricName="PendingTaskCount",
            dimensions={
                "ServiceName": name,
                "ClusterName": cluster_name
            },
        ),
        CloudwatchMetricsTarget(
            alias="Running",
            namespace=CONTAINER_INSIGHTS_NAMESPACE,
            statistics=["Maximum"],
            metricName="RunningTaskCount",
            dimensions={
                "ServiceName": name,
                "ClusterName": cluster_name
            },
            refId=ALERT_REF_ID,
        ),
    ]

    return Stat(
        title="Task Count",
        dataSource=cloudwatch_data_source,
        targets=targets,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        colorMode="background",
        alignment="center",
        reduceCalc="lastNotNull",
        thresholds=[{
            "color": "blue"
        }],
        gridPos=grid_pos,
    )
Exemple #2
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def lambda_generate_memory_utilization_graph(
    name: str,
    cloudwatch_data_source: str,
    lambda_insights_namespace: str,
    *args,
    **kwargs,
) -> Graph:
    """
    Generate lambda graph
    """

    targets = [
        CloudwatchMetricsTarget(
            alias="used_memory_max",
            namespace=lambda_insights_namespace,
            statistics=["Maximum"],
            metricName="used_memory_max",
            dimensions={"function_name": name},
        ),
        CloudwatchMetricsTarget(
            alias="allocated_memory",
            namespace=lambda_insights_namespace,
            statistics=["Maximum"],
            metricName="total_memory",
            dimensions={"function_name": name},
        ),
    ]

    yAxes = YAxes(YAxis(format="decmbytes"), )

    seriesOverrides = [
        {
            "alias": "used_memory_max",
            "points": False,
            "color": colors.GREEN,
        },
        {
            "alias": "allocated_memory",
            "points": False,
            "color": colors.RED,
            "fill": 0
        },
    ]

    alert = None

    return Graph(
        title="Lambda Memory Utilization",
        dataSource=cloudwatch_data_source,
        targets=targets,
        seriesOverrides=seriesOverrides,
        yAxes=yAxes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        alert=alert,
        alertThreshold=ALERT_THRESHOLD,
        # gridPos=GridPos(8,12,12,0)
    ).auto_ref_ids()
Exemple #3
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def generate_req_count_graph(
    cloudwatch_data_source: str,
    loadbalancer: str,
    target_group: str,
    grid_pos: GridPos,
) -> Graph:
    """
    Generate req graph
    """

    request_count_alias = "RequestCount Per Service"
    request_count_per_target_alias = "RequestCount Per Container"

    targets = [
        CloudwatchMetricsTarget(
            alias=request_count_alias,
            namespace="AWS/ApplicationELB",
            statistics=["Sum"],
            metricName="RequestCount",
            dimensions={
                "LoadBalancer": loadbalancer,
                "TargetGroup": target_group
            },
        ),
        CloudwatchMetricsTarget(
            alias=request_count_per_target_alias,
            namespace="AWS/ApplicationELB",
            statistics=["Sum"],
            metricName="RequestCountPerTarget",
            dimensions={
                "LoadBalancer": loadbalancer,
                "TargetGroup": target_group
            },
        ),
    ]

    seriesOverrides = [
        {
            "alias": request_count_alias,
            "color": colors.YELLOW,
            "fill": 0
        },
        {
            "alias": request_count_per_target_alias,
            "color": colors.GREEN,
            "fill": 0
        },
    ]

    return Graph(
        title="Requests",
        dataSource=cloudwatch_data_source,
        targets=targets,
        seriesOverrides=seriesOverrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        gridPos=grid_pos,
    ).auto_ref_ids()
Exemple #4
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def generate_elasticache_redis_swap_and_memory_usage_graph(
        cache_cluster_id: str, cloudwatch_data_source: str) -> Graph:
    """
    Generate ElastiCache Redis graph
    """

    y_axes = single_y_axis(format=BYTES)
    aliases = {
        "bytes": "Bytes used for cache",
        "swap": "Swap Usage",
    }

    targets = [
        CloudwatchMetricsTarget(
            alias=aliases["bytes"],
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={"CacheClusterId": cache_cluster_id},
            metricName="BytesUsedForCache",
        ),
        CloudwatchMetricsTarget(
            alias=aliases["swap"],
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={"CacheClusterId": cache_cluster_id},
            metricName="SwapUsage",
        ),
    ]

    series_overrides = [
        {
            "alias": aliases["swap"],
            "color": colors.BLUE,
            "lines": True,
            "bars": False,
        },
        {
            "alias": aliases["bytes"],
            "color": colors.GREEN,
            "lines": True,
            "bars": False,
        },
    ]

    return Graph(
        title="Memory and Swap usage",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        seriesOverrides=series_overrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=True,
        lines=False,
    ).auto_ref_ids()
Exemple #5
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def generate_rds_network_throughput_graph(name: str,
                                          cloudwatch_data_source: str):
    """
    Generate rds graph
    """

    y_axes = single_y_axis(format=BYTES_SEC, min=None)

    targets = [
        CloudwatchMetricsTarget(
            alias="RX",
            metricName="NetworkReceiveThroughput",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
        CloudwatchMetricsTarget(
            alias="TX",
            metricName="NetworkTransmitThroughput",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
    ]

    series_overrides = [
        {
            "alias": "TX",
            "color": colors.GREEN,
            "transform": "negative-Y",
            "fillGradient": 10,
        },
        {
            "alias": "RX",
            "color": colors.YELLOW,
            "fillGradient": 10
        },
    ]

    return Graph(
        title="Network throughput",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=False,
        lines=True,
        seriesOverrides=series_overrides,
    ).auto_ref_ids()
Exemple #6
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def generate_rds_database_connections_graph(name: str,
                                            cloudwatch_data_source: str):
    """
    Generate rds graph
    """

    y_axes = single_y_axis(format=SHORT_FORMAT)
    min_alias = "min"
    max_alias = "max"
    mean_alias = "mean"

    targets = [
        CloudwatchMetricsTarget(
            alias=max_alias,
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            metricName="DatabaseConnections",
            statistics=["Maximum"],
            period="1m",
            refId=ALERT_REF_ID,
        ),
        CloudwatchMetricsTarget(
            alias=mean_alias,
            metricName="DatabaseConnections",
            statistics=["Average"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
        CloudwatchMetricsTarget(
            alias=min_alias,
            metricName="DatabaseConnections",
            statistics=["Minimum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
    ]

    series_overrides = get_series_overrides(min_alias, mean_alias, max_alias)

    return Graph(
        title="Database connections",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        seriesOverrides=series_overrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=False,
        lines=True,
    ).auto_ref_ids()
Exemple #7
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    def test_should_generate_deployment_graph(self):
        name = "service-1"
        cloudwatch_data_source = "prod"
        cluster_name = "cluster-1"
        grid_pos = GridPos(1, 2, 3, 4)
        panel = generate_deployment_graph(
            name=name,
            cloudwatch_data_source=cloudwatch_data_source,
            cluster_name=cluster_name,
            grid_pos=grid_pos,
        )

        panel.should.be.a(TimeSeries)
        panel.title.should.eql("Deployments")
        panel.dataSource.should.eql(cloudwatch_data_source)
        panel.targets.should.have.length_of(1)
        panel.targets[0].should.eql(
            CloudwatchMetricsTarget(
                alias="Deployment",
                namespace="ECS/ContainerInsights",
                statistics=["Maximum"],
                metricName="DeploymentCount",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
            )
        )
        panel.gridPos.should.eql(grid_pos)
Exemple #8
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    def test_should_generate_pending_count_graph(self):
        name = "service-1"
        cloudwatch_data_source = "prod"
        cluster_name = "cluster-1"
        grid_pos = GridPos(1, 2, 3, 4)
        notifications = []

        panel = generate_pending_count_graph(
            name=name,
            cloudwatch_data_source=cloudwatch_data_source,
            cluster_name=cluster_name,
            grid_pos=grid_pos,
            notifications=notifications,
        )

        panel.should.be.a(Graph)
        panel.title.should.eql("Pending Tasks")
        panel.dataSource.should.eql(cloudwatch_data_source)
        panel.targets.should.have.length_of(1)
        panel.targets[0].should.eql(
            CloudwatchMetricsTarget(
                alias="Containers",
                namespace="ECS/ContainerInsights",
                statistics=["Maximum"],
                metricName="PendingTaskCount",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
                refId="A",
            )
        )
        panel.gridPos.should.eql(grid_pos)
Exemple #9
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def generate_deployment_graph(
    name: str,
    cloudwatch_data_source: str,
    cluster_name: str,
    grid_pos: GridPos,
) -> TimeSeries:
    """
    Generate deployment graph
    """

    targets = [
        CloudwatchMetricsTarget(
            alias="Deployment",
            namespace=CONTAINER_INSIGHTS_NAMESPACE,
            statistics=["Maximum"],
            metricName="DeploymentCount",
            dimensions={
                "ServiceName": name,
                "ClusterName": cluster_name
            },
        ),
    ]

    return TimeSeries(
        title="Deployments",
        dataSource=cloudwatch_data_source,
        targets=targets,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        axisPlacement="hidden",
        tooltipMode="none",
        gridPos=grid_pos,
    )
Exemple #10
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    def test_should_generate_lambda_memory_utilization_percentage_graph_with_alert_notifications(
        self, ):
        lambda_name = "lambda-1"
        cloudwatch_data_source = "cloudwatch"
        lambda_insights_namespace = "insights"
        notifications = ["lorem", "ipsum"]

        expected_alert_query = CloudwatchMetricsTarget(
            alias="Avg",
            namespace=lambda_insights_namespace,
            statistics=["Average"],
            metricName="memory_utilization",
            dimensions={"function_name": lambda_name},
            refId="A",
        )

        generated_lambda_graph = lambda_generate_memory_utilization_percentage_graph(
            name=lambda_name,
            cloudwatch_data_source=cloudwatch_data_source,
            lambda_insights_namespace=lambda_insights_namespace,
            notifications=notifications,
        )
        generated_lambda_graph.should.have.property("alert").be.a(Alert)
        generated_lambda_graph.alert.executionErrorState.should.eql("alerting")
        generated_lambda_graph.alert.noDataState.should.eql("no_data")
        generated_lambda_graph.alert.alertConditions.should.have.length_of(1)
        generated_lambda_graph.alert.alertConditions[0].should.be.a(
            AlertCondition)
        generated_lambda_graph.alert.alertConditions[0].target.should.eql(
            Target(refId="A"))
        generated_lambda_graph.targets.should.contain(expected_alert_query)
Exemple #11
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    def test_should_create_lambda_sqs_dlq_fifo_graph(self):
        lambda_name = "lambda-1"
        sqs_dlq_name = lambda_name + "-dlq"
        cloudwatch_data_source = "influxdb"
        notifications = ["lorem"]

        expected_alert_query = CloudwatchMetricsTarget(
            alias="Approximate number of messages available",
            namespace="AWS/SQS",
            statistics=["Maximum"],
            metricName="ApproximateNumberOfMessagesVisible",
            dimensions={"QueueName": sqs_dlq_name + ".fifo"},
            refId="A",
        )
        generated_lambda_graph = create_lambda_sqs_dlq_graph(
            name=sqs_dlq_name,
            cloudwatch_data_source=cloudwatch_data_source,
            notifications=notifications,
            fifo=True,
        )
        generated_lambda_graph.should.be.a(Graph)
        generated_lambda_graph.should.have.property("title").with_value.equal(
            "SQS Dead Letter Queue: {}.fifo".format(sqs_dlq_name))
        generated_lambda_graph.should.have.property(
            "dataSource").with_value.equal(cloudwatch_data_source)
        generated_lambda_graph.should.have.property("targets")
        generated_lambda_graph.targets.should.have.length_of(1)
        generated_lambda_graph.targets[0].should.eql(expected_alert_query)
        generated_lambda_graph.should.have.property("alert").be.a(Alert)
        generated_lambda_graph.alert.executionErrorState.should.eql("alerting")
        generated_lambda_graph.alert.noDataState.should.eql("no_data")
Exemple #12
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def create_lambda_sqs_graph(name: str, cloudwatch_data_source: str,
                            fifo: bool):
    """Create SQS graph"""

    if fifo:
        name += ".fifo"

    targets = [
        CloudwatchMetricsTarget(
            alias="Number of messages sent to the queue",
            namespace="AWS/SQS",
            statistics=["Sum"],
            metricName="NumberOfMessagesSent",
            dimensions={"QueueName": name},
        )
    ]

    yAxes = single_y_axis(format=SHORT_FORMAT)

    return Graph(
        title="SQS: {}".format(name),
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=yAxes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
    ).auto_ref_ids()
Exemple #13
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    def test_should_create_lambda_sqs_fifo_graph(self):
        lambda_name = "lambda-1"
        sqs_name = lambda_name + ".fifo"
        cloudwatch_data_source = "cloudwatch"

        expected_query = CloudwatchMetricsTarget(
            alias="Number of messages sent to the queue",
            namespace="AWS/SQS",
            statistics=["Sum"],
            metricName="NumberOfMessagesSent",
            dimensions={"QueueName": sqs_name},
            refId="A",
        )
        generated_lambda_graph = create_lambda_sqs_graph(
            name=lambda_name,
            cloudwatch_data_source=cloudwatch_data_source,
            fifo=True)
        generated_lambda_graph.should.be.a(Graph)
        generated_lambda_graph.should.have.property("title").with_value.equal(
            "SQS: {}".format(sqs_name))
        generated_lambda_graph.should.have.property(
            "dataSource").with_value.equal(cloudwatch_data_source)
        generated_lambda_graph.should.have.property("targets")
        generated_lambda_graph.targets.should.have.length_of(1)
        generated_lambda_graph.targets[0].should.eql(expected_query)
Exemple #14
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def generate_rds_free_storage_space_graph(name: str,
                                          cloudwatch_data_source: str):
    """
    Generate rds graph
    """

    y_axes = single_y_axis(format=BYTES)

    targets = [
        CloudwatchMetricsTarget(
            alias="Free storage",
            metricName="FreeStorageSpace",
            statistics=["Minimum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
            refId=ALERT_REF_ID,
        ),
    ]

    return Graph(
        title="Free storage",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=False,
        lines=True,
    ).auto_ref_ids()
Exemple #15
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    def test_should_generate_proper_api_gateway_requests_graph_with_notifications(self):
        apig_name = "apig-1"
        cloudwatch_data_source = "prod"
        lambda_insights_namespace = "insights"
        notifications = ["foo-1", "foo-2"]

        targets = [
            CloudwatchMetricsTarget(
                alias="5xx",
                namespace="AWS/ApiGateway",
                statistics=["Sum"],
                metricName="5XXError",
                dimensions={"ApiName": apig_name},
                refId="A",
            ),
            CloudwatchMetricsTarget(
                alias="requests",
                namespace="AWS/ApiGateway",
                dimensions={"ApiName": apig_name},
                statistics=["Sum"],
                metricName="Count",
                refId="B",
            ),
            CloudwatchMetricsTarget(
                alias="requests",
                namespace="AWS/ApiGateway",
                dimensions={"ApiName": apig_name},
                statistics=["Sum"],
                metricName="4XXError",
                refId="C",
            ),
        ]

        generated_graph = generate_api_gateway_requests_graph(
            name=apig_name,
            cloudwatch_data_source=cloudwatch_data_source,
            lambda_insights_namespace=lambda_insights_namespace,
            notifications=notifications,
        )
        generated_graph.should.be.a(Graph)
        generated_graph.title.should.match(r"API Gateway Requests")
        generated_graph.dataSource.should.eql(cloudwatch_data_source)
        generated_graph.alert.should.be.a(Alert)
        generated_graph.alert.alertConditions.should.have.length_of(1)
        generated_graph.alert.alertConditions[0].target.should.equal(Target(refId="A"))
        generated_graph.targets[0].should.eql(targets[0])
Exemple #16
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 def test_should_generate_lambda_duration_graph(self):
     lambda_name = "lambda-1"
     cloudwatch_data_source = "cloudwatch"
     lambda_insights_namespace = "insights"
     expected_targets = [
         CloudwatchMetricsTarget(
             alias="Min",
             namespace="AWS/Lambda",
             statistics=["Minimum"],
             metricName="Duration",
             dimensions={"FunctionName": lambda_name},
             refId="A",
         ),
         CloudwatchMetricsTarget(
             alias="Avg",
             namespace="AWS/Lambda",
             statistics=["Average"],
             metricName="Duration",
             dimensions={"FunctionName": lambda_name},
             refId="B",
         ),
         CloudwatchMetricsTarget(
             alias="Max",
             namespace="AWS/Lambda",
             statistics=["Maximum"],
             metricName="Duration",
             dimensions={"FunctionName": lambda_name},
             refId="C",
         ),
     ]
     generated_lambda_graph = lambda_generate_duration_graph(
         name=lambda_name,
         cloudwatch_data_source=cloudwatch_data_source,
         lambda_insights_namespace=lambda_insights_namespace,
         notifications=[],
     )
     generated_lambda_graph.should.be.a(Graph)
     generated_lambda_graph.should.have.property("title").with_value.equal(
         "Lambda Invocation Duration")
     generated_lambda_graph.should.have.property(
         "dataSource").with_value.equal(cloudwatch_data_source)
     generated_lambda_graph.should.have.property("alert").with_value.equal(
         None)
     generated_lambda_graph.should.have.property("targets")
     generated_lambda_graph.targets.should.have.length_of(3)
     generated_lambda_graph.targets.should.equal(expected_targets)
Exemple #17
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def generate_elasticsearch_status_red_alert_graph(
        name: str, client_id: str, cloudwatch_data_source: str,
        notifications: List[str]) -> Graph:
    """
    Generate Elasticsearch graph
    """

    y_axes = YAxes(
        YAxis(format=SHORT_FORMAT),
        YAxis(format=SHORT_FORMAT),
    )

    targets = [
        CloudwatchMetricsTarget(
            alias="Red status",
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={
                "DomainName": name,
                "ClientId": client_id
            },
            metricName="ClusterStatus.red",
        ),
    ]

    alert = None

    if notifications:
        alert = Alert(
            name="Elasticsearch is in status red",
            message="Elasticsearch is in status red",
            executionErrorState="alerting",
            alertConditions=[
                AlertCondition(
                    Target(refId=ALERT_REF_ID),
                    timeRange=TimeRange("5m", "now"),
                    evaluator=GreaterThan(0),
                    reducerType=RTYPE_MAX,
                    operator=OP_OR,
                ),
            ],
            frequency="2m",
            gracePeriod="2m",
            notifications=notifications,
        )

    return Graph(
        title="Status RED alerts",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=True,
        lines=False,
        alert=alert,
    ).auto_ref_ids()
Exemple #18
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    def test_should_generate_running_count_stats_panel(self):
        name = "service-1"
        cloudwatch_data_source = "prod"
        cluster_name = "cluster-1"
        grid_pos = GridPos(1, 2, 3, 4)

        expected_targets = [
            CloudwatchMetricsTarget(
                alias="Desired",
                namespace="ECS/ContainerInsights",
                statistics=["Maximum"],
                metricName="DesiredTaskCount",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
            ),
            CloudwatchMetricsTarget(
                alias="Pending",
                namespace="ECS/ContainerInsights",
                statistics=["Maximum"],
                metricName="PendingTaskCount",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
            ),
            CloudwatchMetricsTarget(
                alias="Running",
                namespace="ECS/ContainerInsights",
                statistics=["Maximum"],
                metricName="RunningTaskCount",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
                refId="A",
            ),
        ]

        panel = generate_running_count_stats_panel(
            name=name,
            cloudwatch_data_source=cloudwatch_data_source,
            cluster_name=cluster_name,
            grid_pos=grid_pos,
        )
        panel.should.be.a(Stat)
        panel.title.should.eql("Task Count")
        panel.dataSource.should.eql(cloudwatch_data_source)
        panel.gridPos.should.eql(grid_pos)
        panel.colorMode.should.eql("background")
        panel.alignment.should.eql("center")
        panel.targets.should.have.length_of(3)
        panel.targets.should.eql(expected_targets)
Exemple #19
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def generate_rds_disk_ops_graph(name: str, cloudwatch_data_source: str):
    """
    Generate rds graph
    """

    y_axes = single_y_axis(format=SHORT_FORMAT, min=None)

    targets = [
        CloudwatchMetricsTarget(
            alias="write iops",
            metricName="WriteIOPS",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
        CloudwatchMetricsTarget(
            alias="read iops",
            metricName="ReadIOPS",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
        CloudwatchMetricsTarget(
            alias="disk queue depth",
            metricName="DiskQueueDepth",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
    ]

    return Graph(
        title="Disk iops",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=False,
        lines=True,
    ).auto_ref_ids()
Exemple #20
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    def test_should_generate_sfn_execution_duration_graph(self):
        sfn_name = "arn:aws:states:eu-west-1:1234567890:stateMachine:sfn-1"
        cloudwatch_data_source = "prod"
        notifications = []

        expected_targets = [
            CloudwatchMetricsTarget(
                alias="Min",
                namespace="AWS/States",
                metricName="ExecutionTime",
                statistics=["Minimum"],
                dimensions={"StateMachineArn": sfn_name},
                refId="A",
            ),
            CloudwatchMetricsTarget(
                alias="Avg",
                namespace="AWS/States",
                metricName="ExecutionTime",
                statistics=["Average"],
                dimensions={"StateMachineArn": sfn_name},
                refId="B",
            ),
            CloudwatchMetricsTarget(
                alias="Max",
                namespace="AWS/States",
                metricName="ExecutionTime",
                statistics=["Maximum"],
                dimensions={"StateMachineArn": sfn_name},
                refId="C",
            ),
        ]

        generated_graph = generate_sfn_execution_duration_graph(
            name=sfn_name,
            cloudwatch_data_source=cloudwatch_data_source,
            notifications=notifications,
        )
        generated_graph.should.be.a(Graph)
        generated_graph.title.should.match(r"Step function execution duration")
        generated_graph.dataSource.should.equal(cloudwatch_data_source)
        generated_graph.targets.should.have.length_of(3)
        generated_graph.targets.should.equal(expected_targets)
        generated_graph.alert.should.be(None)
Exemple #21
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    def test_should_generate_cpu_utilization_graph(self):
        name = "service-1"
        cloudwatch_data_source = "prod"
        cluster_name = "cluster-1"
        grid_pos = GridPos(1, 2, 3, 4)
        panel = generate_cpu_utilization_graph(
            name=name,
            cloudwatch_data_source=cloudwatch_data_source,
            cluster_name=cluster_name,
            grid_pos=grid_pos,
        )

        expected_targets = [
            CloudwatchMetricsTarget(
                alias="Min",
                namespace="AWS/ECS",
                statistics=["Minimum"],
                metricName="CPUUtilization",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
            ),
            CloudwatchMetricsTarget(
                alias="Avg",
                namespace="AWS/ECS",
                statistics=["Average"],
                metricName="CPUUtilization",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
            ),
            CloudwatchMetricsTarget(
                alias="Max",
                namespace="AWS/ECS",
                statistics=["Maximum"],
                metricName="CPUUtilization",
                dimensions={"ServiceName": name, "ClusterName": cluster_name},
            ),
        ]
        panel.should.be.a(Graph)
        panel.title.should.eql("CPU Utilization Percentage")
        panel.dataSource.should.eql(cloudwatch_data_source)
        panel.targets.should.have.length_of(3)
        panel.targets.should.eql(expected_targets)
        panel.gridPos.should.eql(grid_pos)
Exemple #22
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def generate_desired_count_graph(
    name: str,
    cluster_name: str,
    max: int,
    cloudwatch_data_source: str,
    notifications: List[str],
    grid_pos: GridPos,
):
    targets = [
        CloudwatchMetricsTarget(
            alias="Containers",
            namespace=CONTAINER_INSIGHTS_NAMESPACE,
            statistics=["Maximum"],
            metricName="DesiredTaskCount",
            dimensions={
                "ServiceName": name,
                "ClusterName": cluster_name
            },
            refId=ALERT_REF_ID,
        ),
    ]

    alert = None
    if notifications and max > 1:
        alert = Alert(
            name="{} Desired count of containers nearing the max".format(name),
            message="{} is having Desired count of containers nearing the max".
            format(name),
            executionErrorState="alerting",
            alertConditions=[
                AlertCondition(
                    Target(refId=ALERT_REF_ID),
                    timeRange=TimeRange("15m", "now"),
                    evaluator=GreaterThan(0.9 * max),  # 90% of max
                    reducerType=RTYPE_MAX,
                    operator=OP_AND,
                )
            ],
            gracePeriod="1m",
            notifications=notifications,
        )

    return Graph(
        title="Desired Tasks",
        dataSource=cloudwatch_data_source,
        targets=targets,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        alert=alert,
        gridPos=grid_pos,
        alertThreshold=ALERT_THRESHOLD,
    ).auto_ref_ids()
Exemple #23
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def generate_rds_transaction_id_graph(name: str, cloudwatch_data_source: str,
                                      notifications: List[str]):
    """
    Generate rds graph
    """

    y_axes = single_y_axis(format=SHORT_FORMAT)

    targets = [
        CloudwatchMetricsTarget(
            alias="Transaction ids used",
            metricName="MaximumUsedTransactionIDs",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
            refId=ALERT_REF_ID,
        ),
    ]

    alert = None

    if notifications:
        alert = Alert(
            name="{} transaction ids used Errors".format(name),
            message="{} is having transaction ids used errors".format(name),
            executionErrorState="alerting",
            alertConditions=[
                AlertCondition(
                    Target(refId=ALERT_REF_ID),
                    timeRange=TimeRange("5m", "now"),
                    evaluator=GreaterThan(1000000000),
                    reducerType=RTYPE_MAX,
                    operator=OP_AND,
                )
            ],
            gracePeriod="2m",
            frequency="2m",
            notifications=notifications,
        )

    return Graph(
        title="Transaction ids used",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=False,
        lines=True,
        alert=alert,
    ).auto_ref_ids()
Exemple #24
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def create_lambda_sqs_dlq_graph(name: str, cloudwatch_data_source: str,
                                fifo: bool, notifications: List[str]):
    """Create SQS Deadletter graph"""

    if fifo:
        name += ".fifo"

    targets = [
        CloudwatchMetricsTarget(
            alias="Approximate number of messages available",
            namespace="AWS/SQS",
            statistics=["Maximum"],
            metricName="ApproximateNumberOfMessagesVisible",
            dimensions={"QueueName": name},
            refId=ALERT_REF_ID if notifications else None,
        )
    ]

    yAxes = single_y_axis(format=SHORT_FORMAT)
    alert = None

    # https://docs.aws.amazon.com/AWSSimpleQueueService/latest/SQSDeveloperGuide/sqs-monitoring-using-cloudwatch.html
    # https://aws.amazon.com/about-aws/whats-new/2019/12/amazon-sqs-now-supports-1-minute-cloudwatch-metrics/
    if notifications:
        alert = Alert(
            name="{} messages".format(name),
            message="{} is having messages".format(name),
            executionErrorState="alerting",
            alertConditions=[
                AlertCondition(
                    Target(refId=ALERT_REF_ID),
                    timeRange=TimeRange("5m", "now"),
                    evaluator=GreaterThan(0),
                    reducerType=RTYPE_MAX,
                    operator=OP_AND,
                ),
            ],
            gracePeriod="5m",
            notifications=notifications,
        )

    return Graph(
        title="SQS Dead Letter Queue: {}".format(name),
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=yAxes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        alert=alert,
        alertThreshold=ALERT_THRESHOLD,
    ).auto_ref_ids()
Exemple #25
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 def test_should_generate_lambda_memory_utilization_percentage_graph(self):
     lambda_name = "lambda-1"
     cloudwatch_data_source = "cloudwatch"
     lambda_insights_namespace = "insights"
     expected_targets = [
         CloudwatchMetricsTarget(
             alias="used_memory_max",
             namespace=lambda_insights_namespace,
             statistics=["Maximum"],
             metricName="used_memory_max",
             dimensions={"function_name": lambda_name},
             refId="A",
         ),
         CloudwatchMetricsTarget(
             alias="allocated_memory",
             namespace=lambda_insights_namespace,
             statistics=["Maximum"],
             metricName="total_memory",
             dimensions={"function_name": lambda_name},
             refId="B",
         ),
     ]
     generated_lambda_graph = lambda_generate_memory_utilization_graph(
         name=lambda_name,
         cloudwatch_data_source=cloudwatch_data_source,
         lambda_insights_namespace=lambda_insights_namespace,
         notifications=[],
     )
     generated_lambda_graph.should.be.a(Graph)
     generated_lambda_graph.should.have.property("title").with_value.equal(
         "Lambda Memory Utilization")
     generated_lambda_graph.should.have.property(
         "dataSource").with_value.equal(cloudwatch_data_source)
     generated_lambda_graph.should.have.property("alert").with_value.equal(
         None)
     generated_lambda_graph.should.have.property("targets")
     generated_lambda_graph.targets.should.have.length_of(2)
     generated_lambda_graph.targets.should.equal(expected_targets)
Exemple #26
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def generate_rds_disk_latency_graph(name: str, cloudwatch_data_source: str):
    """
    Generate rds graph
    """

    y_axes = single_y_axis(format=SECONDS)

    targets = [
        CloudwatchMetricsTarget(
            alias="read latency",
            metricName="ReadLatency",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
        CloudwatchMetricsTarget(
            alias="write latency",
            metricName="WriteLatency",
            statistics=["Maximum"],
            namespace=NAMESPACE,
            dimensions={"DBInstanceIdentifier": name},
            period="1m",
        ),
    ]

    return Graph(
        title="Disk latency",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=False,
        lines=True,
    ).auto_ref_ids()
Exemple #27
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def generate_elasticache_redis_connections_graph(
        cache_cluster_id: str, cloudwatch_data_source: str) -> Graph:
    """
    Generate ElastiCache Redis graph
    """

    y_axes = single_y_axis(format=SHORT_FORMAT)
    aliases = {
        "current": "Current connections",
    }

    targets = [
        CloudwatchMetricsTarget(
            alias=aliases["current"],
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={"CacheClusterId": cache_cluster_id},
            metricName="CurrConnections",
            refId=ALERT_REF_ID,
        ),
    ]

    series_overrides = [
        {
            "alias": aliases["current"],
            "color": colors.GREEN,
            "lines": True,
            "bars": False,
        },
    ]

    return Graph(
        title="Current connections",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        seriesOverrides=series_overrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=True,
        lines=False,
    ).auto_ref_ids()
Exemple #28
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def generate_elasticache_redis_latency_graph(
        cache_cluster_id: str, cloudwatch_data_source: str) -> Graph:
    """
    Generate ElastiCache Redis graph
    """

    y_axes = single_y_axis(format=MILLISECONDS_FORMAT)

    aliases = {
        "latency": "String based CMDs latency",
    }

    targets = [
        CloudwatchMetricsTarget(
            alias=aliases["latency"],
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={"CacheClusterId": cache_cluster_id},
            metricName="StringBasedCmdsLatency",
        ),
    ]

    series_overrides = [
        {
            "alias": aliases["latency"],
            "color": colors.GREEN,
            "lines": True,
            "bars": False,
        },
    ]

    return Graph(
        title="Latency",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        seriesOverrides=series_overrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=True,
        lines=False,
    ).auto_ref_ids()
Exemple #29
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def generate_elasticache_redis_network_out_graph(
        cache_cluster_id: str, cloudwatch_data_source: str) -> Graph:
    """
    Generate ElastiCache Redis graph
    """

    y_axes = single_y_axis(format=BYTES)
    aliases = {
        "out": "Network bytes out",
    }

    targets = [
        CloudwatchMetricsTarget(
            alias=aliases["out"],
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={"CacheClusterId": cache_cluster_id},
            metricName="NetworkBytesOut",
        ),
    ]

    series_overrides = [
        {
            "alias": aliases["out"],
            "color": colors.RED,
            "lines": False,
            "bars": True,
        },
    ]

    return Graph(
        title="Network out",
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        seriesOverrides=series_overrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=True,
        lines=False,
    ).auto_ref_ids()
Exemple #30
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def generate_elasticsearch_cpu_graph(name: str, client_id: str,
                                     cloudwatch_data_source: str) -> Graph:
    """
    Generate Elasticsearch graph
    """

    y_axes = single_y_axis(format=PERCENT_FORMAT)
    alias = "CPU utilization"

    targets = [
        CloudwatchMetricsTarget(
            alias=alias,
            namespace=NAMESPACE,
            period="1m",
            statistics=["Maximum"],
            dimensions={
                "DomainName": name,
                "ClientId": client_id
            },
            metricName="CPUUtilization",
        )
    ]

    series_overrides = [{
        "alias": alias,
        "color": colors.GREEN,
        "lines": True,
        "bars": False,
    }]

    return Graph(
        title=alias,
        dataSource=cloudwatch_data_source,
        targets=targets,
        yAxes=y_axes,
        seriesOverrides=series_overrides,
        transparent=TRANSPARENT,
        editable=EDITABLE,
        bars=True,
        lines=False,
    ).auto_ref_ids()