Skip to content

Latest commit

 

History

History
288 lines (227 loc) · 7.83 KB

metrics.md

File metadata and controls

288 lines (227 loc) · 7.83 KB

Metrics on Model Server

Contents of this Document

Introduction

MMS collects system level metrics in regular intervals, and also provides an API for custom metrics to be collected. Metrics collected by metrics are logged and can be aggregated by metric agents. The system level metrics are collected every minute. Metrics defined by the custom service code, can be collected per request or a batch of requests. MMS logs these two sets of metrics to different log files. Metrics are collected by default at:

  • System metrics - log_directory/mms_metrics.log
  • Custom metrics - log directory/model_metrics.log

The location of log files and metric files can be configured at log4j2.xml file.

System Metrics

Metric Name Dimension Unit Semantics
CPUUtilization host percentage cpu utillization on host
DiskAvailable host GB disk available on host
DiskUsed host GB disk used on host
DiskUtilization host percentage disk used on host
MemoryAvailable host MB memory available on host
MemoryUsed host MB memory used on host
MemoryUtilization host percentage memory used on host
Requests2XX host count total number of requests that responded in 200-300 range
Requests4XX host count total number of requests that responded in 400-500 range
Requests5XX host count total number of requests that responded above 500

Formatting

The metrics emitted into log files by default, is in a StatsD like format.

CPUUtilization.Percent:0.0|#Level:Host|#hostname:my_machine_name
MemoryUsed.Megabytes:13840.328125|#Level:Host|#hostname:my_machine_name    

To enable metric logging in JSON format, we can modify the log formatter in log4j2.xml, This is explained in the logging document.

Once enabled the format emitted to logs, will look as follows

{ 
  "MetricName": "DiskAvailable",
  "Value": "108.15547180175781",
  "Unit": "Gigabytes",
  "Dimensions": [
    { 
      "Name": "Level",
      "Value": "Host"
    }
  ],
  "HostName": "my_machine_name"
}
{ 
  "MetricName": "DiskUsage",
  "Value": "124.13163757324219",
  "Unit": "Gigabytes",
  "Dimensions": [
    {
      "Name": "Level",
      "Value": "Host"
    }
  ],
  "HostName": "my_machine_name"
}

Custom Metrics API

MMS enables the custom service code to emit metrics, that are then logged by the system

The custom service code is provided with a context of the current request.

Which has metrics object.

# Access context metrics as follows
metrics = context.metrics

All metrics collected with in the context

Creating dimension object(s)

Dimensions for metrics can be defined as objects

from mms.metrics import dimension

# Dimensions are name value pairs
dim1 = Dimension(name, value)
dim2 = Dimension(some_name, some_value)
.
.
.
dimN= Dimension(name_n, value_n)

NOTE: Metric functions below accept a list of dimensions

Add generic metrics

One can add metrics with generic units using the following function.

Function API

    def add_metric(name, value, idx=None, unit=None, dimensions=None):
        """
        Add a metric which is generic with custom metrics

        Parameters
        ----------
        name : str
            metric name
        value: int, float
            value of metric
        idx: int
            request_id index in batch
        unit: str
            unit of metric
        dimensions: list
            list of dimensions for the metric
        """
# Add Distance as a metric
# dimensions = [dim1, dim2, dim3, ..., dimN]
# Assuming batch size is 1 for example
metrics.add_metric('DistanceInKM', distance, 'km', dimensions)

Add Time based metrics

Time based metrics can be added by invoking the following method

Function API

    def add_time(name, value, idx=None, unit='ms', dimensions=None):
        """
        Add a time based metric like latency, default unit is 'ms'

        Parameters
        ----------
        name : str
            metric name
        value: int
            value of metric
        idx: int
            request_id index in batch
        unit: str
            unit of metric,  default here is ms, s is also accepted
        dimensions: list
            list of dimensions for the metric
        """

Note that the default unit in this case is 'ms'

Supported units: ['ms', 's']

To add custom time based metrics

# Add inference time
# dimensions = [dim1, dim2, dim3, ..., dimN]
# Assuming batch size  is 1 for example
metrics.add_time('InferenceTime', end_time-start_time, None, 'ms', dimensions)

Add Size based metrics

Size based metrics can be added by invoking the following method

Function API

    def add_size(name, value, idx=None, unit='MB', dimensions=None):
        """
        Add a size based metric

        Parameters
        ----------
        name : str
            metric name
        value: int, float
            value of metric
        idx: int
            request_id index in batch
        unit: str
            unit of metric, default here is 'MB', 'kB', 'GB' also supported
        dimensions: list
            list of dimensions for the metric
        """

Note that the default unit in this case is 'ms'

Supported units: ['MB', 'kB', 'GB']

To add custom size based metrics

# Add Image size as a metric
# dimensions = [dim1, dim2, dim3, ..., dimN]
# Assuming batch size is 1 for example
metrics.add_size('SizeOfImage', img_size, None, 'MB', dimensions)

Add Percentage based metrics

Percentage based metrics can be added by invoking the following method

Function API

    def add_percent(name, value, idx=None, dimensions=None):
        """
        Add a percentage based metric

        Parameters
        ----------
        name : str
            metric name
        value: int, float
            value of metric
        idx: int
            request_id index in batch
        dimensions: list
            list of dimensions for the metric
        """

To add custom percentage based metrics

# Add MemoryUtilization as a metric
# dimensions = [dim1, dim2, dim3, ..., dimN]
# Assuming batch size  is 1 for example
metrics.add_percent('MemoryUtilization', utilization_percent, None, dimensions)

Add Counter based metrics

Percentage based metrics can be added by invoking the following method

Function API

    def add_counter(name, value, idx=None, dimensions=None):
        """
        Add a counter metric or increment an existing counter metric

        Parameters
        ----------
        name : str
            metric name
        value: int
            value of metric
        idx: int
            request_id index in batch
        dimensions: list
            list of dimensions for the metric
        """

To create , increment and decrement counter based metrics we can use the following calls

# Add Loop Count as a metric
# dimensions = [dim1, dim2, dim3, ..., dimN]
# Assuming batch size is 1 for example

# Create a counter with name 'LoopCount' and dimensions, initial value
metrics.add_counter('LoopCount', 1, None, dimensions)

# Increment counter by 2 
metrics.add_counter('LoopCount', 2 , None, dimensions)

# Decrement counter by 1
metrics.add_counter('LoopCount', -1, None, dimensions)

# Final counter value in this case is 2