

# Retrieving metrics with the Performance Insights API for Aurora
<a name="USER_PerfInsights.API"></a>

When Performance Insights is turned on, the API provides visibility into instance performance. Amazon CloudWatch Logs provides the authoritative source for vended monitoring metrics for AWS services. 

Performance Insights offers a domain-specific view of database load measured as average active sessions (AAS). This metric appears to API consumers as a two-dimensional time-series dataset. The time dimension of the data provides DB load data for each time point in the queried time range. Each time point decomposes overall load in relation to the requested dimensions, such as `SQL`, `Wait-event`, `User`, or `Host`, measured at that time point.

Amazon RDS Performance Insights monitors your Amazon Aurora cluster so that you can analyze and troubleshoot database performance. One way to view Performance Insights data is in the AWS Management Console. Performance Insights also provides a public API so that you can query your own data. You can use the API to do the following:
+ Offload data into a database
+ Add Performance Insights data to existing monitoring dashboards
+ Build monitoring tools

To use the Performance Insights API, enable Performance Insights on one of your Amazon RDS DB instances. For information about enabling Performance Insights, see [Turning Performance Insights on and off for Aurora](USER_PerfInsights.Enabling.md). For more information about the Performance Insights API, see the [Amazon RDS Performance Insights API Reference](https://docs.aws.amazon.com/performance-insights/latest/APIReference/Welcome.html).

The Performance Insights API provides the following operations.


****  

|  Performance Insights action  |  AWS CLI command  |  Description  | 
| --- | --- | --- | 
|  [https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_CreatePerformanceAnalysisReport.html](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_CreatePerformanceAnalysisReport.html)  |  [https://docs.aws.amazon.com/cli/latest/reference/pi/CreatePerformanceAnalysisReport.html](https://docs.aws.amazon.com/cli/latest/reference/pi/CreatePerformanceAnalysisReport.html)  |  Creates a performance analysis report for a specific time period for the DB instance. The result is `AnalysisReportId` which is the unique identifier of the report.  | 
|  [https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_DeletePerformanceAnalysisReport.html](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_DeletePerformanceAnalysisReport.html)  |  [https://docs.aws.amazon.com/cli/latest/reference/pi/DeletePerformanceAnalysisReport.html](https://docs.aws.amazon.com/cli/latest/reference/pi/DeletePerformanceAnalysisReport.html)  |  Deletes a performance analysis report.  | 
|  [https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_DescribeDimensionKeys.html](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_DescribeDimensionKeys.html)  |  [https://docs.aws.amazon.com/cli/latest/reference/pi/describe-dimension-keys.html](https://docs.aws.amazon.com/cli/latest/reference/pi/describe-dimension-keys.html)  |  Retrieves the top N dimension keys for a metric for a specific time period.  | 
|  [https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetDimensionKeyDetails.html](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetDimensionKeyDetails.html)  |  [https://docs.aws.amazon.com/cli/latest/reference/pi/get-dimension-key-details.html](https://docs.aws.amazon.com/cli/latest/reference/pi/get-dimension-key-details.html)  |  Retrieves the attributes of the specified dimension group for a DB instance or data source. For example, if you specify a SQL ID, and if the dimension details are available, `GetDimensionKeyDetails` retrieves the full text of the dimension `db.sql.statement` associated with this ID. This operation is useful because `GetResourceMetrics` and `DescribeDimensionKeys` don't support retrieval of large SQL statement text.   | 
|  [https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetPerformanceAnalysisReport.html](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetPerformanceAnalysisReport.html)  |  [https://docs.aws.amazon.com/cli/latest/reference/pi/GetPerformanceAnalysisReport.html](https://docs.aws.amazon.com/cli/latest/reference/pi/GetPerformanceAnalysisReport.html)  |  Retrieves the report including the insights for the report. The result includes the report status, report ID, report time details, insights, and recommendations.  | 
| [GetResourceMetadata](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetResourceMetadata.html) |  [https://docs.aws.amazon.com/cli/latest/reference/pi/get-resource-metadata.html](https://docs.aws.amazon.com/cli/latest/reference/pi/get-resource-metadata.html)  |  Retrieve the metadata for different features. For example, the metadata might indicate that a feature is turned on or off on a specific DB instance.   | 
|  [https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetResourceMetrics.html](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_GetResourceMetrics.html)  |  [https://docs.aws.amazon.com/cli/latest/reference/pi/get-resource-metrics.html](https://docs.aws.amazon.com/cli/latest/reference/pi/get-resource-metrics.html)  |  Retrieves Performance Insights metrics for a set of data sources over a time period. You can provide specific dimension groups and dimensions, and provide aggregation and filtering criteria for each group.  | 
| [ListAvailableResourceDimensions](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_ListAvailableResourceDimensions.html) |  [https://docs.aws.amazon.com/cli/latest/reference/pi/list-available-resource-dimensions.html](https://docs.aws.amazon.com/cli/latest/reference/pi/list-available-resource-dimensions.html)  |  Retrieve the dimensions that can be queried for each specified metric type on a specified instance.   | 
| [ListAvailableResourceMetrics](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_ListAvailableResourceMetrics.html) |  [https://docs.aws.amazon.com/cli/latest/reference/pi/list-available-resource-metrics.html](https://docs.aws.amazon.com/cli/latest/reference/pi/list-available-resource-metrics.html)  |  Retrieve all available metrics of the specified metric types that can be queried for a specified DB instance.  | 
|  `[ListPerformanceAnalysisReports](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_ListPerformanceAnalysisReports.html)` |  [https://docs.aws.amazon.com/cli/latest/reference/pi/list-performance-analysis-reports.html](https://docs.aws.amazon.com/cli/latest/reference/pi/list-performance-analysis-reports.html)  | Retrieves all the analysis reports available for the DB instance. The reports are listed based on the start time of each report. | 
|  `[ListTagsForResource](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_ListTagsForResource.html)` |  [https://docs.aws.amazon.com/cli/latest/reference/pi/list-tags-for-resource.html](https://docs.aws.amazon.com/cli/latest/reference/pi/list-tags-for-resource.html)  |  Lists all the metadata tags added to the resource. The list includes the name and value of the tag.  | 
|  `[TagResource](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_TagResource.html)` |  [https://docs.aws.amazon.com/cli/latest/reference/pi/tag-resource.html](https://docs.aws.amazon.com/cli/latest/reference/pi/tag-resource.html)  |  Adds metadata tags to the Amazon RDS resource. The tag includes a name and a value.  | 
|  `[UntagResource](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_UntagResource.html)` |  [https://docs.aws.amazon.com/cli/latest/reference/pi/untag-resource.html](https://docs.aws.amazon.com/cli/latest/reference/pi/untag-resource.html)  |  Removes the metadata tag from the resource.  | 

For more information about retrieving time-series metrics and AWS CLI examples for Performance Insights, see the following topics.

**Topics**
+ [Retrieving time-series metrics for Performance Insights](USER_PerfInsights.API.TimeSeries.md)
+ [AWS CLI examples for Performance Insights](USER_PerfInsights.API.Examples.md)

# Retrieving time-series metrics for Performance Insights
<a name="USER_PerfInsights.API.TimeSeries"></a>

The `GetResourceMetrics` operation retrieves one or more time-series metrics from the Performance Insights data. `GetResourceMetrics` requires a metric and time period, and returns a response with a list of data points. 

For example, the AWS Management Console uses `GetResourceMetrics` to populate the **Counter Metrics** chart and the **Database Load** chart, as seen in the following image.

![\[Counter Metrics and Database Load charts\]](http://docs.aws.amazon.com/AmazonRDS/latest/AuroraUserGuide/images/perf-insights-api-charts.png)


All metrics returned by `GetResourceMetrics` are standard time-series metrics, with the exception of `db.load`. This metric is displayed in the **Database Load** chart. The `db.load` metric is different from the other time-series metrics because you can break it into subcomponents called *dimensions*. In the previous image, `db.load` is broken down and grouped by the waits states that make up the `db.load`.

**Note**  
`GetResourceMetrics` can also return the `db.sampleload` metric, but the `db.load` metric is appropriate in most cases.

For information about the counter metrics returned by `GetResourceMetrics`, see [Performance Insights counter metrics](USER_PerfInsights_Counters.md).

The following calculations are supported for the metrics:
+ Average – The average value for the metric over a period of time. Append `.avg` to the metric name.
+ Minimum – The minimum value for the metric over a period of time. Append `.min` to the metric name.
+ Maximum – The maximum value for the metric over a period of time. Append `.max` to the metric name.
+ Sum – The sum of the metric values over a period of time. Append `.sum` to the metric name.
+ Sample count – The number of times the metric was collected over a period of time. Append `.sample_count` to the metric name.

For example, assume that a metric is collected for 300 seconds (5 minutes), and that the metric is collected one time each minute. The values for each minute are 1, 2, 3, 4, and 5. In this case, the following calculations are returned:
+ Average – 3
+ Minimum – 1
+ Maximum – 5
+ Sum – 15
+ Sample count – 5

For information about using the `get-resource-metrics` AWS CLI command, see [https://docs.aws.amazon.com/cli/latest/reference/pi/get-resource-metrics.html](https://docs.aws.amazon.com/cli/latest/reference/pi/get-resource-metrics.html).

For the `--metric-queries` option, specify one or more queries that you want to get results for. Each query consists of a mandatory `Metric` and optional `GroupBy` and `Filter` parameters. The following is an example of a `--metric-queries` option specification.

```
{
   "Metric": "string",
   "GroupBy": {
     "Group": "string",
     "Dimensions": ["string", ...],
     "Limit": integer
   },
   "Filter": {"string": "string"
     ...}
```

# AWS CLI examples for Performance Insights
<a name="USER_PerfInsights.API.Examples"></a>

In the following sections, learn more about the AWS Command Line Interface (AWS CLI) for Performance Insights and use AWS CLI examples.

**Topics**
+ [Built-in help for the AWS CLI for Performance Insights](#USER_PerfInsights.API.CLI)
+ [Retrieving counter metrics](#USER_PerfInsights.API.Examples.CounterMetrics)
+ [Retrieving the DB load average for top wait events](#USER_PerfInsights.API.Examples.DBLoadAverage)
+ [Retrieving the DB load average for top SQL](#USER_PerfInsights.API.Examples.DBLoadAverageTop10SQL)
+ [Retrieving the DB load average filtered by SQL](#USER_PerfInsights.API.Examples.DBLoadAverageFilterBySQL)
+ [Retrieving the full text of a SQL statement](#USER_PerfInsights.API.Examples.GetDimensionKeyDetails)
+ [Creating a performance analysis report for a time period](#USER_PerfInsights.API.Examples.CreatePerfAnalysisReport)
+ [Retrieving a performance analysis report](#USER_PerfInsights.API.Examples.GetPerfAnalysisReport)
+ [Listing all the performance analysis reports for the DB instance](#USER_PerfInsights.API.Examples.ListPerfAnalysisReports)
+ [Deleting a performance analysis report](#USER_PerfInsights.API.Examples.DeletePerfAnalysisReport)
+ [Adding tag to a performance analysis report](#USER_PerfInsights.API.Examples.TagPerfAnalysisReport)
+ [Listing all the tags for a performance analysis report](#USER_PerfInsights.API.Examples.ListTagsPerfAnalysisReport)
+ [Deleting tags from a performance analysis report](#USER_PerfInsights.API.Examples.UntagPerfAnalysisReport)

## Built-in help for the AWS CLI for Performance Insights
<a name="USER_PerfInsights.API.CLI"></a>

You can view Performance Insights data using the AWS CLI. You can view help for the AWS CLI commands for Performance Insights by entering the following on the command line.

```
aws pi help
```

If you don't have the AWS CLI installed, see [Installing the AWS CLI](https://docs.aws.amazon.com/cli/latest/userguide/installing.html) in the *AWS CLI User Guide *for information about installing it.

## Retrieving counter metrics
<a name="USER_PerfInsights.API.Examples.CounterMetrics"></a>

The following screenshot shows two counter metrics charts in the AWS Management Console.

![\[Counter Metrics charts.\]](http://docs.aws.amazon.com/AmazonRDS/latest/AuroraUserGuide/images/perf-insights-api-counters-charts.png)


The following example shows how to gather the same data that the AWS Management Console uses to generate the two counter metric charts.

For Linux, macOS, or Unix:

```
aws pi get-resource-metrics \
   --service-type RDS \
   --identifier db-ID \
   --start-time 2018-10-30T00:00:00Z \
   --end-time   2018-10-30T01:00:00Z \
   --period-in-seconds 60 \
   --metric-queries '[{"Metric": "os.cpuUtilization.user.avg"  },
                      {"Metric": "os.cpuUtilization.idle.avg"}]'
```

For Windows:

```
aws pi get-resource-metrics ^
   --service-type RDS ^
   --identifier db-ID ^
   --start-time 2018-10-30T00:00:00Z ^
   --end-time   2018-10-30T01:00:00Z ^
   --period-in-seconds 60 ^
   --metric-queries '[{"Metric": "os.cpuUtilization.user.avg"  },
                      {"Metric": "os.cpuUtilization.idle.avg"}]'
```

You can also make a command easier to read by specifying a file for the `--metrics-query` option. The following example uses a file called query.json for the option. The file has the following contents.

```
[
    {
        "Metric": "os.cpuUtilization.user.avg"
    },
    {
        "Metric": "os.cpuUtilization.idle.avg"
    }
]
```

Run the following command to use the file.

For Linux, macOS, or Unix:

```
aws pi get-resource-metrics \
   --service-type RDS \
   --identifier db-ID \
   --start-time 2018-10-30T00:00:00Z \
   --end-time   2018-10-30T01:00:00Z \
   --period-in-seconds 60 \
   --metric-queries file://query.json
```

For Windows:

```
aws pi get-resource-metrics ^
   --service-type RDS ^
   --identifier db-ID ^
   --start-time 2018-10-30T00:00:00Z ^
   --end-time   2018-10-30T01:00:00Z ^
   --period-in-seconds 60 ^
   --metric-queries file://query.json
```

The preceding example specifies the following values for the options:
+ `--service-type` – `RDS` for Amazon RDS
+ `--identifier` – The resource ID for the DB instance
+ `--start-time` and `--end-time` – The ISO 8601 `DateTime` values for the period to query, with multiple supported formats

It queries for a one-hour time range:
+ `--period-in-seconds` – `60` for a per-minute query
+ `--metric-queries` – An array of two queries, each just for one metric.

  The metric name uses dots to classify the metric in a useful category, with the final element being a function. In the example, the function is `avg` for each query. As with Amazon CloudWatch, the supported functions are `min`, `max`, `total`, and `avg`.

The response looks similar to the following.

```
{
    "Identifier": "db-XXX",
    "AlignedStartTime": 1540857600.0,
    "AlignedEndTime": 1540861200.0,
    "MetricList": [
        { //A list of key/datapoints 
            "Key": {
                "Metric": "os.cpuUtilization.user.avg" //Metric1
            },
            "DataPoints": [
                //Each list of datapoints has the same timestamps and same number of items
                {
                    "Timestamp": 1540857660.0, //Minute1
                    "Value": 4.0
                },
                {
                    "Timestamp": 1540857720.0, //Minute2
                    "Value": 4.0
                },
                {
                    "Timestamp": 1540857780.0, //Minute 3
                    "Value": 10.0
                }
                //... 60 datapoints for the os.cpuUtilization.user.avg metric
            ]
        },
        {
            "Key": {
                "Metric": "os.cpuUtilization.idle.avg" //Metric2
            },
            "DataPoints": [
                {
                    "Timestamp": 1540857660.0, //Minute1
                    "Value": 12.0
                },
                {
                    "Timestamp": 1540857720.0, //Minute2
                    "Value": 13.5
                },
                //... 60 datapoints for the os.cpuUtilization.idle.avg metric 
            ]
        }
    ] //end of MetricList
} //end of response
```

The response has an `Identifier`, `AlignedStartTime`, and `AlignedEndTime`. B the `--period-in-seconds` value was `60`, the start and end times have been aligned to the minute. If the `--period-in-seconds` was `3600`, the start and end times would have been aligned to the hour.

The `MetricList` in the response has a number of entries, each with a `Key` and a `DataPoints` entry. Each `DataPoint` has a `Timestamp` and a `Value`. Each `Datapoints` list has 60 data points because the queries are for per-minute data over an hour, with `Timestamp1/Minute1`, `Timestamp2/Minute2`, and so on, up to `Timestamp60/Minute60`. 

Because the query is for two different counter metrics, there are two elements in the response `MetricList`.

## Retrieving the DB load average for top wait events
<a name="USER_PerfInsights.API.Examples.DBLoadAverage"></a>

The following example is the same query that the AWS Management Console uses to generate a stacked area line graph. This example retrieves the `db.load.avg` for the last hour with load divided according to the top seven wait events. The command is the same as the command in [Retrieving counter metrics](#USER_PerfInsights.API.Examples.CounterMetrics). However, the query.json file has the following contents.

```
[
    {
        "Metric": "db.load.avg",
        "GroupBy": { "Group": "db.wait_event", "Limit": 7 }
    }
]
```

Run the following command.

For Linux, macOS, or Unix:

```
aws pi get-resource-metrics \
   --service-type RDS \
   --identifier db-ID \
   --start-time 2018-10-30T00:00:00Z \
   --end-time   2018-10-30T01:00:00Z \
   --period-in-seconds 60 \
   --metric-queries file://query.json
```

For Windows:

```
aws pi get-resource-metrics ^
   --service-type RDS ^
   --identifier db-ID ^
   --start-time 2018-10-30T00:00:00Z ^
   --end-time   2018-10-30T01:00:00Z ^
   --period-in-seconds 60 ^
   --metric-queries file://query.json
```

The example specifies the metric of `db.load.avg` and a `GroupBy` of the top seven wait events. For details about valid values for this example, see [DimensionGroup](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_DimensionGroup.html) in the *Performance Insights API Reference.*

The response looks similar to the following.

```
{
    "Identifier": "db-XXX",
    "AlignedStartTime": 1540857600.0,
    "AlignedEndTime": 1540861200.0,
    "MetricList": [
        { //A list of key/datapoints 
            "Key": {
                //A Metric with no dimensions. This is the total db.load.avg
                "Metric": "db.load.avg"
            },
            "DataPoints": [
                //Each list of datapoints has the same timestamps and same number of items
                {
                    "Timestamp": 1540857660.0, //Minute1
                    "Value": 0.5166666666666667
                },
                {
                    "Timestamp": 1540857720.0, //Minute2
                    "Value": 0.38333333333333336
                },
                {
                    "Timestamp": 1540857780.0, //Minute 3
                    "Value": 0.26666666666666666
                }
                //... 60 datapoints for the total db.load.avg key
            ]
        },
        {
            "Key": {
                //Another key. This is db.load.avg broken down by CPU
                "Metric": "db.load.avg",
                "Dimensions": {
                    "db.wait_event.name": "CPU",
                    "db.wait_event.type": "CPU"
                }
            },
            "DataPoints": [
                {
                    "Timestamp": 1540857660.0, //Minute1
                    "Value": 0.35
                },
                {
                    "Timestamp": 1540857720.0, //Minute2
                    "Value": 0.15
                },
                //... 60 datapoints for the CPU key
            ]
        },
        //... In total we have 8 key/datapoints entries, 1) total, 2-8) Top Wait Events
    ] //end of MetricList
} //end of response
```

In this response, there are eight entries in the `MetricList`. There is one entry for the total `db.load.avg`, and seven entries each for the `db.load.avg` divided according to one of the top seven wait events. Unlike in the first example, because there was a grouping dimension, there must be one key for each grouping of the metric. There can't be only one key for each metric, as in the basic counter metric use case.

## Retrieving the DB load average for top SQL
<a name="USER_PerfInsights.API.Examples.DBLoadAverageTop10SQL"></a>

The following example groups `db.wait_events` by the top 10 SQL statements. There are two different groups for SQL statements:
+ `db.sql` – The full SQL statement, such as `select * from customers where customer_id = 123`
+ `db.sql_tokenized` – The tokenized SQL statement, such as `select * from customers where customer_id = ?`

When analyzing database performance, it can be useful to consider SQL statements that only differ by their parameters as one logic item. So, you can use `db.sql_tokenized` when querying. However, especially when you're interested in explain plans, sometimes it's more useful to examine full SQL statements with parameters, and query grouping by `db.sql`. There is a parent-child relationship between tokenized and full SQL, with multiple full SQL (children) grouped under the same tokenized SQL (parent).

The command in this example is the similar to the command in [Retrieving the DB load average for top wait events](#USER_PerfInsights.API.Examples.DBLoadAverage). However, the query.json file has the following contents.

```
[
    {
        "Metric": "db.load.avg",
        "GroupBy": { "Group": "db.sql_tokenized", "Limit": 10 }
    }
]
```

The following example uses `db.sql_tokenized`.

For Linux, macOS, or Unix:

```
aws pi get-resource-metrics \
   --service-type RDS \
   --identifier db-ID \
   --start-time 2018-10-29T00:00:00Z \
   --end-time   2018-10-30T00:00:00Z \
   --period-in-seconds 3600 \
   --metric-queries file://query.json
```

For Windows:

```
aws pi get-resource-metrics ^
   --service-type RDS ^
   --identifier db-ID ^
   --start-time 2018-10-29T00:00:00Z ^
   --end-time   2018-10-30T00:00:00Z  ^
   --period-in-seconds 3600 ^
   --metric-queries file://query.json
```

This example queries over 24 hours, with a one hour period-in-seconds.

The example specifies the metric of `db.load.avg` and a `GroupBy` of the top seven wait events. For details about valid values for this example, see [DimensionGroup](https://docs.aws.amazon.com/performance-insights/latest/APIReference/API_DimensionGroup.html) in the *Performance Insights API Reference.*

The response looks similar to the following.

```
{
    "AlignedStartTime": 1540771200.0,
    "AlignedEndTime": 1540857600.0,
    "Identifier": "db-XXX",

    "MetricList": [ //11 entries in the MetricList
        {
            "Key": { //First key is total
                "Metric": "db.load.avg"
            }
            "DataPoints": [ //Each DataPoints list has 24 per-hour Timestamps and a value
                {
                    "Value": 1.6964980544747081,
                    "Timestamp": 1540774800.0
                },
                //... 24 datapoints
            ]
        },
        {
            "Key": { //Next key is the top tokenized SQL  
                "Dimensions": {
                    "db.sql_tokenized.statement": "INSERT INTO authors (id,name,email) VALUES\n( nextval(?)  ,?,?)",
                    "db.sql_tokenized.db_id": "pi-2372568224",
                    "db.sql_tokenized.id": "AKIAIOSFODNN7EXAMPLE"
                },
                "Metric": "db.load.avg"
            },
            "DataPoints": [ //... 24 datapoints 
            ]
        },
        // In total 11 entries, 10 Keys of top tokenized SQL, 1 total key 
    ] //End of MetricList
} //End of response
```

This response has 11 entries in the `MetricList` (1 total, 10 top tokenized SQL), with each entry having 24 per-hour `DataPoints`.

For tokenized SQL, there are three entries in each dimensions list:
+ `db.sql_tokenized.statement` – The tokenized SQL statement.
+ `db.sql_tokenized.db_id ` – Either the native database ID used to refer to the SQL, or a synthetic ID that Performance Insights generates for you if the native database ID isn't available. This example returns the `pi-2372568224` synthetic ID.
+ `db.sql_tokenized.id` – The ID of the query inside Performance Insights.

  In the AWS Management Console, this ID is called the Support ID. It's named this because the ID is data that AWS Support can examine to help you troubleshoot an issue with your database. AWS takes the security and privacy of your data extremely seriously, and almost all data is stored encrypted with your AWS KMS key. Therefore, nobody inside AWS can look at this data. In the example preceding, both the `tokenized.statement` and the `tokenized.db_id` are stored encrypted. If you have an issue with your database, AWS Support can help you by referencing the Support ID.

When querying, it might be convenient to specify a `Group` in `GroupBy`. However, for finer-grained control over the data that's returned, specify the list of dimensions. For example, if all that is needed is the `db.sql_tokenized.statement`, then a `Dimensions` attribute can be added to the query.json file.

```
[
    {
        "Metric": "db.load.avg",
        "GroupBy": {
            "Group": "db.sql_tokenized",
            "Dimensions":["db.sql_tokenized.statement"],
            "Limit": 10
        }
    }
]
```

## Retrieving the DB load average filtered by SQL
<a name="USER_PerfInsights.API.Examples.DBLoadAverageFilterBySQL"></a>

![\[Filter by SQL chart.\]](http://docs.aws.amazon.com/AmazonRDS/latest/AuroraUserGuide/images/perf-insights-api-filter-chart.png)


The preceding image shows that a particular query is selected, and the top average active sessions stacked area line graph is scoped to that query. Although the query is still for the top seven overall wait events, the value of the response is filtered. The filter causes it to take into account only sessions that are a match for the particular filter.

The corresponding API query in this example is similar to the command in [Retrieving the DB load average for top SQL](#USER_PerfInsights.API.Examples.DBLoadAverageTop10SQL). However, the query.json file has the following contents.

```
[
 {
        "Metric": "db.load.avg",
        "GroupBy": { "Group": "db.wait_event", "Limit": 5  }, 
        "Filter": { "db.sql_tokenized.id": "AKIAIOSFODNN7EXAMPLE" }
    }
]
```

For Linux, macOS, or Unix:

```
aws pi get-resource-metrics \
   --service-type RDS \
   --identifier db-ID \
   --start-time 2018-10-30T00:00:00Z \
   --end-time   2018-10-30T01:00:00Z \
   --period-in-seconds 60 \
   --metric-queries file://query.json
```

For Windows:

```
aws pi get-resource-metrics ^
   --service-type RDS ^
   --identifier db-ID ^
   --start-time 2018-10-30T00:00:00Z ^
   --end-time   2018-10-30T01:00:00Z ^
   --period-in-seconds 60 ^
   --metric-queries file://query.json
```

The response looks similar to the following.

```
{
    "Identifier": "db-XXX", 
    "AlignedStartTime": 1556215200.0, 
    "MetricList": [
        {
            "Key": {
                "Metric": "db.load.avg"
            }, 
            "DataPoints": [
                {
                    "Timestamp": 1556218800.0, 
                    "Value": 1.4878117913832196
                }, 
                {
                    "Timestamp": 1556222400.0, 
                    "Value": 1.192823803967328
                }
            ]
        }, 
        {
            "Key": {
                "Metric": "db.load.avg", 
                "Dimensions": {
                    "db.wait_event.type": "io", 
                    "db.wait_event.name": "wait/io/aurora_redo_log_flush"
                }
            }, 
            "DataPoints": [
                {
                    "Timestamp": 1556218800.0, 
                    "Value": 1.1360544217687074
                }, 
                {
                    "Timestamp": 1556222400.0, 
                    "Value": 1.058051341890315
                }
            ]
        }, 
        {
            "Key": {
                "Metric": "db.load.avg", 
                "Dimensions": {
                    "db.wait_event.type": "io", 
                    "db.wait_event.name": "wait/io/table/sql/handler"
                }
            }, 
            "DataPoints": [
                {
                    "Timestamp": 1556218800.0, 
                    "Value": 0.16241496598639457
                }, 
                {
                    "Timestamp": 1556222400.0, 
                    "Value": 0.05163360560093349
                }
            ]
        }, 
        {
            "Key": {
                "Metric": "db.load.avg", 
                "Dimensions": {
                    "db.wait_event.type": "synch", 
                    "db.wait_event.name": "wait/synch/mutex/innodb/aurora_lock_thread_slot_futex"
                }
            }, 
            "DataPoints": [
                {
                    "Timestamp": 1556218800.0, 
                    "Value": 0.11479591836734694
                }, 
                {
                    "Timestamp": 1556222400.0, 
                    "Value": 0.013127187864644107
                }
            ]
        }, 
        {
            "Key": {
                "Metric": "db.load.avg", 
                "Dimensions": {
                    "db.wait_event.type": "CPU", 
                    "db.wait_event.name": "CPU"
                }
            }, 
            "DataPoints": [
                {
                    "Timestamp": 1556218800.0, 
                    "Value": 0.05215419501133787
                }, 
                {
                    "Timestamp": 1556222400.0, 
                    "Value": 0.05805134189031505
                }
            ]
        }, 
        {
            "Key": {
                "Metric": "db.load.avg", 
                "Dimensions": {
                    "db.wait_event.type": "synch", 
                    "db.wait_event.name": "wait/synch/mutex/innodb/lock_wait_mutex"
                }
            }, 
            "DataPoints": [
                {
                    "Timestamp": 1556218800.0, 
                    "Value": 0.017573696145124718
                }, 
                {
                    "Timestamp": 1556222400.0, 
                    "Value": 0.002333722287047841
                }
            ]
        }
    ], 
    "AlignedEndTime": 1556222400.0
} //end of response
```

In this response, all values are filtered according to the contribution of tokenized SQL AKIAIOSFODNN7EXAMPLE specified in the query.json file. The keys also might follow a different order than a query without a filter, because it's the top five wait events that affected the filtered SQL.

## Retrieving the full text of a SQL statement
<a name="USER_PerfInsights.API.Examples.GetDimensionKeyDetails"></a>

The following example retrieves the full text of a SQL statement for DB instance `db-10BCD2EFGHIJ3KL4M5NO6PQRS5`. The `--group` is `db.sql`, and the `--group-identifier` is `db.sql.id`. In this example, *my-sql-id* represents a SQL ID retrieved by invoking `pi get-resource-metrics` or `pi describe-dimension-keys`.

Run the following command.

For Linux, macOS, or Unix:

```
aws pi get-dimension-key-details \
   --service-type RDS \
   --identifier db-10BCD2EFGHIJ3KL4M5NO6PQRS5 \
   --group db.sql \
   --group-identifier my-sql-id \
   --requested-dimensions statement
```

For Windows:

```
aws pi get-dimension-key-details ^
   --service-type RDS ^
   --identifier db-10BCD2EFGHIJ3KL4M5NO6PQRS5 ^
   --group db.sql ^
   --group-identifier my-sql-id ^
   --requested-dimensions statement
```

In this example, the dimensions details are available. Thus, Performance Insights retrieves the full text of the SQL statement, without truncating it.

```
{
    "Dimensions":[
    {
        "Value": "SELECT e.last_name, d.department_name FROM employees e, departments d WHERE e.department_id=d.department_id",
        "Dimension": "db.sql.statement",
        "Status": "AVAILABLE"
    },
    ...
    ]
}
```

## Creating a performance analysis report for a time period
<a name="USER_PerfInsights.API.Examples.CreatePerfAnalysisReport"></a>

The following example creates a performance analysis report with the `1682969503` start time and `1682979503` end time for the `db-loadtest-0` database.

```
aws pi create-performance-analysis-report \
        --service-type RDS \
        --identifier db-loadtest-0 \
        --start-time 1682969503 \
        --end-time 1682979503 \
        --region us-west-2
```

The response is the unique identifier `report-0234d3ed98e28fb17` for the report.

```
{
   "AnalysisReportId": "report-0234d3ed98e28fb17"
}
```

## Retrieving a performance analysis report
<a name="USER_PerfInsights.API.Examples.GetPerfAnalysisReport"></a>

The following example retrieves the analysis report details for the `report-0d99cc91c4422ee61` report.

```
aws pi get-performance-analysis-report \
--service-type RDS \
--identifier db-loadtest-0 \
--analysis-report-id report-0d99cc91c4422ee61 \
--region us-west-2
```

The response provides the report status, ID, time details, and insights.

```
        {
    "AnalysisReport": {
        "Status": "Succeeded", 
        "ServiceType": "RDS", 
        "Identifier": "db-loadtest-0", 
        "StartTime": 1680583486.584, 
        "AnalysisReportId": "report-0d99cc91c4422ee61", 
        "EndTime": 1680587086.584, 
        "CreateTime": 1680587087.139, 
        "Insights": [
           ... (Condensed for space)
        ]
    }
}
```

## Listing all the performance analysis reports for the DB instance
<a name="USER_PerfInsights.API.Examples.ListPerfAnalysisReports"></a>

The following example lists all the available performance analysis reports for the `db-loadtest-0` database.

```
aws pi list-performance-analysis-reports \
--service-type RDS \
--identifier db-loadtest-0 \
--region us-west-2
```

The response lists all the reports with the report ID, status, and time period details.

```
{
    "AnalysisReports": [
        {
            "Status": "Succeeded", 
            "EndTime": 1680587086.584, 
            "CreationTime": 1680587087.139, 
            "StartTime": 1680583486.584, 
            "AnalysisReportId": "report-0d99cc91c4422ee61"
        }, 
        {
            "Status": "Succeeded", 
            "EndTime": 1681491137.914, 
            "CreationTime": 1681491145.973, 
            "StartTime": 1681487537.914, 
            "AnalysisReportId": "report-002633115cc002233"
        }, 
        {
            "Status": "Succeeded", 
            "EndTime": 1681493499.849, 
            "CreationTime": 1681493507.762, 
            "StartTime": 1681489899.849, 
            "AnalysisReportId": "report-043b1e006b47246f9"
        }, 
        {
            "Status": "InProgress", 
            "EndTime": 1682979503.0, 
            "CreationTime": 1682979618.994, 
            "StartTime": 1682969503.0, 
            "AnalysisReportId": "report-01ad15f9b88bcbd56"
        }
    ]
}
```

## Deleting a performance analysis report
<a name="USER_PerfInsights.API.Examples.DeletePerfAnalysisReport"></a>

The following example deletes the analysis report for the `db-loadtest-0` database.

```
aws pi delete-performance-analysis-report \
--service-type RDS \
--identifier db-loadtest-0 \
--analysis-report-id report-0d99cc91c4422ee61 \
--region us-west-2
```

## Adding tag to a performance analysis report
<a name="USER_PerfInsights.API.Examples.TagPerfAnalysisReport"></a>

The following example adds a tag with a key `name` and value `test-tag` to the `report-01ad15f9b88bcbd56` report.

```
aws pi tag-resource \
--service-type RDS \
--resource-arn arn:aws:pi:us-west-2:356798100956:perf-reports/RDS/db-loadtest-0/report-01ad15f9b88bcbd56 \
--tags Key=name,Value=test-tag \
--region us-west-2
```

## Listing all the tags for a performance analysis report
<a name="USER_PerfInsights.API.Examples.ListTagsPerfAnalysisReport"></a>

The following example lists all the tags for the `report-01ad15f9b88bcbd56` report.

```
aws pi list-tags-for-resource \
--service-type RDS \
--resource-arn arn:aws:pi:us-west-2:356798100956:perf-reports/RDS/db-loadtest-0/report-01ad15f9b88bcbd56 \
--region us-west-2
```

The response lists the value and key for all the tags added to the report:

```
{
    "Tags": [
        {
            "Value": "test-tag", 
            "Key": "name"
        }
    ]
}
```

## Deleting tags from a performance analysis report
<a name="USER_PerfInsights.API.Examples.UntagPerfAnalysisReport"></a>

The following example deletes the `name` tag from the `report-01ad15f9b88bcbd56` report.

```
aws pi untag-resource \
--service-type RDS \
--resource-arn arn:aws:pi:us-west-2:356798100956:perf-reports/RDS/db-loadtest-0/report-01ad15f9b88bcbd56 \
--tag-keys name \
--region us-west-2
```

After the tag is deleted, calling the `list-tags-for-resource` API doesn't list this tag.