Buffering & Storage
The end-goal of Fluent Bit is to collect, parse, filter and ship logs to a central place. In this workflow there are many phases and one of the critical pieces is the ability to do buffering : a mechanism to place processed data into a temporary location until is ready to be shipped.
By default when Fluent Bit processes data, it uses Memory as a primary and temporary place to store the records, but there are certain scenarios where it would be ideal to have a persistent buffering mechanism based in the filesystem to provide aggregation and data safety capabilities.
Choosing the right configuration is critical and the behavior of the service can be conditioned based in the backpressure settings. Before we jump into the configuration let's make sure we understand the relationship between Chunks, Memory, Filesystem and Backpressure.
Chunks, Memory, Filesystem and Backpressure
Understanding the chunks, buffering and backpressure concepts is critical for a proper configuration. Let's do a recap of the meaning of these concepts.
Chunks
When an input plugin (source) emits records, the engine groups the records together in a Chunk. A Chunk size usually is around 2MB. By configuration, the engine decides where to place this Chunk, the default is that all chunks are created only in memory.
Buffering and Memory
As mentioned above, the Chunks generated by the engine are placed in memory but this is configurable.
If memory is the only mechanism set for the input plugin, it will just store data as much as it can there (memory). This is the fastest mechanism with the least system overhead, but if the service is not able to deliver the records fast enough because of a slow network or an unresponsive remote service, Fluent Bit memory usage will increase since it will accumulate more data than it can deliver.
In a high load environment with backpressure the risks of having high memory usage is the chance of getting killed by the Kernel (OOM Killer). A workaround for this backpressure scenario is to limit the amount of memory in records that an input plugin can register, this configuration property is called mem_buf_limit
. If a plugin has enqueued more than the mem_buf_limit
, it won't be able to ingest more until that data can be delivered or flushed properly. In this scenario the input plugin in question is paused. When the input is paused, records will not be ingested until it is resumed. For some inputs, such as TCP and tail, pausing the input will almost certainly lead to log loss. For the tail input, Fluent Bit can save its current offset in the current file it is reading, and pick back up when the input is resumed.
Look for messages in the Fluent Bit log output like:
The workaround of mem_buf_limit
is good for certain scenarios and environments, it helps to control the memory usage of the service, but at the costs that if a file gets rotated while paused, you might lose that data since it won't be able to register new records. This can happen with any input source plugin. The goal of mem_buf_limit
is memory control and survival of the service.
For full data safety guarantee, use filesystem buffering.
Here is an example input definition:
If this input uses more than 50MB memory to buffer logs, you will get a warning like this in the Fluent Bit logs:
Please note that Mem_Buf_Limit
only applies when storage.type
is set to the default value of memory
. The section below explains the limits that apply when you enable storage.type filesystem
.
Filesystem buffering to the rescue
Filesystem buffering enabled helps with backpressure and overall memory control.
Behind the scenes, Memory and Filesystem buffering mechanisms are not mutually exclusive. Indeed when enabling filesystem buffering for your input plugin (source) you are getting the best of the two worlds: performance and data safety.
When Filesystem buffering is enabled, the behavior of the engine is different. Upon Chunk creation, the engine stores the content in memory and also maps a copy on disk (through mmap(2)). The newly created Chunk is (1) active in memory, (2) backed up on disk, and (3) is called to be up
which means "the chunk content is up in memory".
How does the Filesystem buffering mechanism deal with high memory usage and backpressure? Fluent Bit controls the number of Chunks that are up
in memory.
By default, the engine allows us to have 128 Chunks up
in memory in total (considering all Chunks), this value is controlled by service property storage.max_chunks_up
. The active Chunks that are up
are ready for delivery and the ones that are still receiving records. Any other remaining Chunk is in a down
state, which means that it is only in the filesystem and won't be up
in memory unless it is ready to be delivered. Remember, chunks are never much larger than 2 MB, thus, with the default storage.max_chunks_up
value of 128, each input is limited to roughly 256 MB of memory.
If the input plugin has enabled storage.type
as filesystem
, when reaching the storage.max_chunks_up
threshold, instead of the plugin being paused, all new data will go to Chunks that are down
in the filesystem. This allows us to control the memory usage by the service and also provides a guarantee that the service won't lose any data. By default, the enforcement of the storage.max_chunks_up
limit is best-effort. Fluent Bit can only append new data to chunks that are up
; when the limit is reached chunks will be temporarily brought up
in memory to ingest new data, and then put to a down
state afterwards. In general, Fluent Bit will work to keep the total number of up
chunks at or below storage.max_chunks_up
.
If storage.pause_on_chunks_overlimit
is enabled (default is off), the input plugin will be paused upon exceeding storage.max_chunks_up
. Thus, with this option, storage.max_chunks_up
becomes a hard limit for the input. When the input is paused, records will not be ingested until it is resumed. For some inputs, such as TCP and tail, pausing the input will almost certainly lead to log loss. For the tail input, Fluent Bit can save its current offset in the current file it is reading, and pick back up when the input is resumed.
Look for messages in the Fluent Bit log output like:
Limiting Filesystem space for Chunks
Fluent Bit implements the concept of logical queues: based on its Tag, a Chunk can be routed to multiple destinations. Thus, we keep an internal reference from where a Chunk was created and where it needs to go.
It's common to find cases where if we have multiple destinations for a Chunk, one of the destinations might be slower than the other, or maybe one is generating backpressure and not all of them. In this scenario, how do we limit the amount of filesystem Chunks that we are logically queueing?
Starting from Fluent Bit v1.6, we introduced the new configuration property for output plugins called storage.total_limit_size
which limits the number of Chunks that exist in the filesystem for a certain logical output destination. If one of the destinations reaches the storage.total_limit_size
, the oldest Chunk from its queue for that logical output destination will be discarded.
Configuration
The storage layer configuration takes place in three areas:
Service Section
Input Section
Output Section
The known Service section configures a global environment for the storage layer, the Input sections define which buffering mechanism to use and the output the limits for the logical filesystem queues.
Service Section Configuration
The Service section refers to the section defined in the main configuration file:
Key | Description | Default |
---|---|---|
storage.path | Set an optional location in the file system to store streams and chunks of data. If this parameter is not set, Input plugins can only use in-memory buffering. | |
storage.sync | Configure the synchronization mode used to store the data into the file system. It can take the values normal or full. Using full increases the reliability of the filesystem buffer and ensures that data is guaranteed to be synced to the filesystem even if Fluent Bit crashes. On linux, full corresponds with the | normal |
storage.checksum | Enable the data integrity check when writing and reading data from the filesystem. The storage layer uses the CRC32 algorithm. | Off |
storage.max_chunks_up | If the input plugin has enabled | 128 |
storage.backlog.mem_limit | If storage.path is set, Fluent Bit will look for data chunks that were not delivered and are still in the storage layer, these are called backlog data. Backlog chunks are filesystem chunks that were left over from a previous Fluent Bit run; chunks that could not be sent before exit that Fluent Bit will pick up when restarted. Fluent Bit will check the | 5M |
storage.metrics | If | off |
a Service section will look like this:
that configuration sets an optional buffering mechanism where the route to the data is /var/log/flb-storage/, it will use normal synchronization mode, without running a checksum and up to a maximum of 5MB of memory when processing backlog data.
Input Section Configuration
Optionally, any Input plugin can configure their storage preference, the following table describes the options available:
Key | Description | Default |
---|---|---|
storage.type | Specifies the buffering mechanism to use. It can be memory or filesystem. | memory |
storage.pause_on_chunks_overlimit | Specifies if the input plugin should be paused (stop ingesting new data) when the | off |
The following example configures a service that offers filesystem buffering capabilities and two Input plugins being the first based in filesystem and the second with memory only.
Output Section Configuration
If certain chunks are filesystem storage.type based, it's possible to control the size of the logical queue for an output plugin. The following table describes the options available:
Key | Description | Default |
---|---|---|
storage.total_limit_size | Limit the maximum number of Chunks in the filesystem for the current output logical destination. |
The following example create records with CPU usage samples in the filesystem and then they are delivered to Google Stackdriver service limiting the logical queue (buffering) to 5M:
If for some reason Fluent Bit gets offline because of a network issue, it will continue buffering CPU samples but just keep a maximum of 5M of the newest data.
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