Sending Metrics to GraphOS
Learn how to report operation and field usage metrics to GraphOS
GraphOS Studio offers visualizations of metrics like request rate, latency, and more to help you analyze your supergraph's performance. Studio also lets you analyze how clients are using individual fields in your GraphQL requests. To analyze operation metrics and field usage in Studio, you first need to report them to GraphOS.
- Reporting metrics from Apollo Server or a monograph requires an Enterprise or legacy Team plan.
- Connecting a self-hosted router to GraphOS requires an Enterprise plan.
Reporting operation metrics
How you report operation metrics to GraphOS depends on whether you're using the GraphOS Router or Apollo Server or whether you're using a third-party server.
From GraphOS Router or Apollo Server
Both the GraphOS Router and Apollo Server use the same mechanism to enable operation metrics reporting to GraphOS:
Obtain a graph API key from GraphOS Studio.
ⓘ NOTE
The graph API key you use must have at least the Contributor role to report metrics for a non-protected variant, and either an Org Admin or Graph Admin role to report metrics for a protected variant.
Obtain the graph ref for the graph and variant you want to report metrics for. You can find your variant's graph ref at the top of the variant's README page in Studio. It has the format
graph-id@variant-name
(such asmy-graph@staging
).Use the obtained values to set the following environment variables in your environment before starting up your router/server:
export APOLLO_KEY=<YOUR_GRAPH_API_KEY>export APOLLO_GRAPH_REF=<YOUR_GRAPH_REF>
ⓘ NOTE
Consult your production environment's documentation to learn how to set its environment variables.
Now, when your router or server starts up, it automatically begins reporting operation metrics to GraphOS.
Enhanced reporting with the GraphOS Router
If you use the GraphOS Router to report operation metrics, you can configure enhanced operation signature normalization and extended reference reporting for more comprehensive insights and operation checks.
From a third-party server (advanced)
You can set up a reporting agent in your GraphQL server to push metrics to GraphOS. The agent is responsible for:
- Translating operation details into the correct reporting format
- Implementing a default signature function to identify each executed operation
- Emitting batches of traces and metrics to the GraphOS reporting endpoint
- Optionally defining plugins to enable advanced reporting features
Apollo Server defines its agent for performing these tasks in the usage reporting plugin.
ⓘ NOTE
If you're interested in collaborating with Apollo on creating a dedicated integration for your GraphQL server, please contact us at support@apollographql.com.
Reporting format
The GraphOS reporting endpoint accepts batches of traces and metrics that are encoded in protocol buffer format. Each trace corresponds to the execution of a single GraphQL operation, including a breakdown of the timing and error information for each field that's resolved as part of the operation. The schema for this protocol buffer is defined as the Report
message in the protobuf schema.
The protobuf schema document describes how to create a report whose tracesPerQuery
objects consist solely of a list of detailed execution traces in the trace
array. GraphOS now allows your server to describe usage as a mix of detailed execution traces and pre-aggregated metrics (released in Apollo Server 2.24), which leads to much more efficient reports. This document doesn't describe how to generate these metrics. Nor does it describe how to report the number of requests for a particular operation shown in the Clients & Operations table on the Insights page.
ⓘ NOTE
We strongly encourage developers to contact Apollo support at support@apollographql.com to discuss their use case before building their own reporting agent using this module.
As a starting point, we recommend implementing an extension to the GraphQL execution that creates a report with a single trace, as defined in the Trace
message of the protobuf schema. Then, you can batch multiple traces into a single report. We recommend sending batches approximately every 20 seconds and limiting each batch to a reasonable size (~4 MB).
Many server runtimes already support emitting tracing information as a GraphQL extension. Such extensions are available for Node, Ruby, Scala, Java, Elixir, and .NET. If you're working on adding metrics reporting functionality for one of these languages, reading through that tracing instrumentation is a good place to start. For other languages, we recommend consulting the Apollo Server usage reporting plugin.
Operation signing
For GraphOS Studio to correctly group GraphQL queries, your reporting agent should define a function to generate an operation signature for each distinct operation. This can be challenging because two structurally different operations can be functionally equivalent. For instance, all the following queries request the same information:
query AuthorForPost($foo: String!) {post(id: $foo) {author}}query AuthorForPost($bar: String!) {post(id: $bar) {author}}query AuthorForPost {post(id: "my-post-id") {author}}query AuthorForPost {post(id: "my-post-id") {writer: author}}
It's important to decide how to group such queries when tracking metrics. The TypeScript reference implementation does the following to every query before generating its signature to better group functionally equivalent operations:
- Drop unused fragments and/or operations
- Hide string literals
- Ignore aliases
- Sort the tree deterministically
- Ignore differences in whitespace.
We recommend using the same default signature method for consistency across different server runtimes.
Sending metrics to the reporting endpoint
After your GraphQL server prepares a batch of traces, it should send them to the Studio reporting endpoint at the following URL:
https://usage-reporting.api.apollographql.com/api/ingress/traces
Each batch should be sent as an HTTP POST request. The body of the request can be one of the following:
- A binary serialization of a
Report
message - A gzipped binary serialization of a
Report
message
To authenticate with Studio, each request must include either:
- An
X-Api-Key
header with a valid API key for your graph - An
authtoken
cookie with a valid API key for your graph
Only graph-level API keys (starting with the prefix service:
) are supported.
The request can also optionally include a Content-Type
header with value application/protobuf
, but this is not required.
⚠️ CAUTION
The reporting endpoint rejects reports that are older than 50 minutes. If you see an error like Rejecting report from service {your service} with skewed timestamp
, ensure your traces are current and that your timestamp calculations are accurate.
For a reference implementation, see the sendReport()
function in the TypeScript reference agent.
Tuning reporting behavior
We recommend implementing retries with backoff when you encounter 5xx
responses or networking errors when communicating with the reporting endpoint. Additionally, implement a shutdown hook to ensure you push all pending reports before your server initiates a stable shutdown.
Implementing additional reporting features
The reference TypeScript implementation includes several features that you might want to include in your implementation. All these features are implemented in the usage reporting plugin itself and are documented in the plugin's API reference.
For example, you can restrict which information is sent to GraphOS, particularly to avoid reporting personal data. Because personal data most commonly appears in variables and headers, the TypeScript agent offers options to sendVariablesValues
and sendHeaders
.
Reporting field usage metrics
Your GraphQL router or server can report one or both of the following field usage metrics:
- Requests: How many times an operation that requests a particular field has been observed
- Executions: How many times the resolver for a particular field has been executed
How you report these metrics to GraphOS depends on whether you're using the GraphOS Router or Apollo Server.
From GraphOS Router
If you have a cloud or self-hosted supergraph, you only need to configure your router to send operation metrics to GraphOS, and field usage will be automatically reported. Subgraphs should not send any metrics to GraphOS directly. Instead, they can include trace data in their responses to the router. The router then includes that data in its own reports to GraphOS.
ⓘ NOTE
Subgraphs send field tracing and error data to the router using the federated tracing implementation. This means your subgraphs must support federated tracing and that it is enabled for your environment before you start seeing error details in GraphOS for a supergraph.
From Apollo Server
Apollo Server automatically reports field usage metrics as long as you follow these prerequisites:
You must first configure your server to send operation metrics to GraphOS.
To report requests:
- Your GraphQL server must run Apollo Server 3.6 or later.
- If you have a federated graph, your gateway must run Apollo Server 3.6 or later, but there are no requirements for your subgraphs.
To report executions:
- Your GraphQL server can run any recent version of Apollo Server 2.x or 3.x.
- If you have a federated graph, your subgraphs must support federated tracing. For compatible libraries, see the
FEDERATED TRACING
entry for libraries in this table.
ⓘ NOTE
If some of your subgraphs support federated tracing and others don't, only executions in compatible subgraphs are reported to Apollo.
Disabling execution metrics
In Apollo Server 3.6 and later, you can turn off field-level instrumentation for some or all operations by providing the fieldLevelInstrumentation
option to ApolloServerPluginUsageReporting
.
Turning off field-level instrumentation for a particular request has the following effects:
- The request does not contribute to the "executions" statistic on the Insights page in Studio.
- The request does not contribute to field-level execution timing hints that can be displayed in the GraphOS Studio Explorer and VS Code.
- The request does not produce a trace that can be viewed in the Traces section of the Insights page in Studio.
These requests still contribute to most features of Studio, such as schema checks, the Insights page, and the "Request" metrics on the Insights page.
To turn off field-level instrumentation for all requests, pass () => false
as the fieldLevelInstrumentation
option:
new ApolloServer({plugins: [ApolloServerPluginUsageReporting({fieldLevelInstrumentation: () => false})]// ...});
If you do this, execution metrics do not appear on the Insights page.
Fractional sampling
You can enable field-level instrumentation for a fixed fraction of all requests by passing a number between 0
and 1
as the fieldLevelInstrumentation
option:
new ApolloServer({plugins: [ApolloServerPluginUsageReporting({fieldLevelInstrumentation: 0.01})]// ...});
If you do so, Apollo Server randomly chooses to enable field-level instrumentation for each request according to the given probability.
⚠️ CAUTION
Make sure to pass a number (like 0.01
), not a function that always returns the same number (like () => 0.01
), which has a different effect.
In this case, whenever field-level instrumentation is enabled for a particular request, Apollo Server reports it to Studio with a weight based on the given probability. The "executions" statistic on the Insights page (along with execution timing hints) is scaled by this weight.
For example, if you pass 0.01
, your server enables field-level execution for approximately 1% of requests, and every observed execution is counted as 100 executions on the Insights page. (The actual observed execution count is available in a tooltip in the table.)
Custom sampling
You can decide whether to enable field-level instrumentation (and what the weight should be) on a per-operation basis by passing a function as the value of fieldLevelInstrumentation
.
For example, you might want to enable field-level instrumentation more often for rare operations and less often for common operations. For details, see the usage reporting plugin docs.
Performance considerations
Calculating execution metrics can affect performance for large queries or high-traffic graphs. This is especially true for federated graphs because a subgraph includes each operation's full trace data in its response.