Instrument Caches
Learn how to manually instrument your code to use Sentry's Caches module.
A cache can be used to speed up data retrieval, thereby improving application performance. Because instead of getting data from a potentially slow data layer, your application will be getting data from memory (in a best case scenario). Caching can speed up read-heavy workloads for applications like Q&A portals, gaming, media sharing, and social networking.
Sentry offers a cache-monitoring dashboard that can be auto-instrumented for popular Python caching setups (like Django, Redis, and memcached (coming soon)).
If you're using a custom caching solution that doesn't have auto instrumentation, you can manually instrument it and use Sentry to get a look into how your caching solution is performing by following the setup instructions below.
To make it possible for Sentry to give you an overview of your cache performance, you'll need to create two spans - one indicating that something is being put into the cache, and a second one indicating that something is being fetched from the cache.
Make sure that there's a transaction running when you create the spans. If you're using a web framework those transactions will be created for you automatically. See Tracing for more information.
For detailed information about which data can be set, see the Cache Module Developer Specification.
If you're using anything other than Django, Redis, memcached (coming soon), you'll need to manually instrument the Cache Module by following the steps below.
If the cache you’re using isn’t supported by auto instrumentation mentioned above, you can use the custom instrumentation instructions below to emit cache spans:
- Set the cache value with whatever cache library you happen to be using.
- Wrap the part of your application that uses the cached value with
with sentry_sdk.start_span(...)
- Set
op
tocache.put
. - Set
cache.item_size
to an integer representing the size of the cached item.
(The steps described above are documented in the snippet.)
import my_caching
import sentry_sdk
key = "myCacheKey123"
value = "The value I want to cache."
with sentry_sdk.start_span(op="cache.put") as span:
# Set a key in your caching using your custom caching solution
my_caching.set(key, value)
# Describe the cache server you are accessing
span.set_data("network.peer.address", "cache.example.com/supercache")
span.set_data("network.peer.port", 9000)
# Add the key(s) you want to set
span.set_data("cache.key", [key])
# Add the size of the value you stored in the cache
span.set_data("cache.item_size", len(value)) # Warning: if value is very big this could use lots of memory
If the cache you’re using isn’t supported by auto instrumentation mentioned above, you can use the custom instrumentation instructions below to emit cache spans:
- Fetch the cached value from whatever cache library you happen to be using.
- Wrap the part of your application that uses the cached value with
with sentry_sdk.start_span(...)
- Set
op
tocache.get
. - Set
cache.hit
to a boolean value representing whether the value was successfully fetched from the cache or not. - Set
cache.item_size
to an integer representing the size of the cached item.
(The steps described above are documented in the snippet.)
import my_caching
import sentry_sdk
key = "myCacheKey123"
value = None
with sentry_sdk.start_span(op="cache.get") as span:
# Get a key from your caching solution
value = my_caching.get(key)
# Describe the cache server you are accessing
span.set_data("network.peer.address", "cache.example.com/supercache")
span.set_data("network.peer.port", 9000)
# Add the key(s) you just retrieved from the cache
span.set_data("cache.key", [key])
if value is not None:
# If you retrieved a value, the cache was hit
span.set_data("cache.hit", True)
# Optionally also add the size of the value you retrieved
span.set_data("cache.item_size", len(value))
else:
# If you could not retrieve a value, it was a miss
span.set_data("cache.hit", False)
You should now have the right spans in place. Head over to the Cache dashboard to see how your cache is performing.
Our documentation is open source and available on GitHub. Your contributions are welcome, whether fixing a typo (drat!) or suggesting an update ("yeah, this would be better").