Instance Sizing

When sizing LogScale, your choice depends on your usage patterns, so we recommend first doing an example setup to see how LogScale works with your data. The following provides some examples. For clustered setups, and/or setups with data replication, we currently recommend contacting LogScale Technical Support for specific suggestions.

Examples of recommended deployment configurations are documented in Instance Sizing.


With LogScale, the limiting factor is usually query speed, not ingest capacity. Query speed depends upon the number of CPUs, available RAM, and disk speed. The following numbers are all general recommendations; your exact circumstances may be different.

A running LogScale instance will use something like 10-20% of available RAM — the rest of available memory is used for OS-level file system cache. If you're, for example, on an AWS i3.8xlarge (244 GB RAM, 32 vCPUs, 4 x 1,900 NVMe SSD), then you would typically see ~32 GB used for running LogScale, and the rest is available for file system caches. i3.8xlarge has fast NVMe disks. In that case data can be read fast enough from disk to keep the CPUs busy. In case of slower disks memory is important for the file system cache.

Data is typically compressed 10-20x, depending on what it is. Your mileage may vary, but short log lines (HTTP access logs, syslog) compress better than longish JSON logs (such as those coming from Metricbeat).

For data available on fast NVMe disks or as compressed data in the OS-level cache, LogScale generally provides query speed at 0.5 GB/s/vCPU, or 0.5 GB/s/hyperthread. So, on a i3.8xlarge instance with 32 vCPUs, you observe ~16GB/s queries. This is the search speed when all data needs to be scanned. In many cases our hash indexes will improve the search speed significantly.

In cloud environments, like Google and Amazon, we recommend using fast ephemeral NVMe disks for good search performance. We do not recommend EBS storage as it will be slow and expensive (IOPS). Setup LogScale with Bucket storage to keep data durable. Bucket storage stores data in Amazon S3 or Google Cloud Storage. ZooKeeper and Kafka should not be run on ephemeral disks! It is important to keep that data durable.

Searches going beyond what fits in fast disks or the OS-level file system caches can be significantly slower, as they depend on disk I/O performance. If you have sufficiently fast NVME-drives or similar that can deliver the compressed data as fast as the CPU cores can decompress them, then there is virtually no penalty for doing searches that extend beyond the size of the page cache. We built LogScale to run on local SSDs, so it is not (presently) optimized to run on high-latency EBS storage or slow spinning disks. But it will work, especially if most searches are "live" or within the page cache. LogScale reads files using "read ahead" instructions to the Linux kernel, which allows for file systems on spinning disks to read continuous ranges of blocks rather than random blocks.

Sizing Basics

There are some basics to consider when sizing an instance. First, one vCPU per hyperthread can ingest 250 GB/day. Search speed is 0.5 GB per vCPU per hyperthread — for data on fast disks or in RAM. Note, that a vCPU can do only one of the above at any point in time. Search speed is thus influenced by time spent on ingest.

Another factor to consider is the compression ratio times the amount of RAM is how much data can be kept in memory, using OS-level file system cache. However, fast SSDs can achieve as good search speeds as when data is in RAM. For better performance, the disk subsystem should be able to read data at at least 150 MB/s/core when not cached. For a very general rule of thumb, we recommend one i3.8xlarge per TB/day data. This depends on the scenario: how many users are using the system and how much data is being searched and so forth.

For example, assume that data compresses 10 times. Test your setup to be sure precisely; better compression means better performance. You want enough hyper threads/vCPUs, each giving you 0.5 GB/s search. You need this to be able to search 24 hours of data in less than 10 seconds. You will need disk space to hold your compressed data. Never fill your disk more than 80%.

Based on the above, your machine has 64 GB of RAM, 16 hyper threads (8 cores), and 256GB NVMe storage. In this case that means that 10 seconds worth of query time will run through 80 GB of data. So this machine fits an 80 GB/day ingest, with 1 months of data available for fast querying. You can store 2 TB of data before your disk is 80% full.

AWS Single Instance LogScale

For AWS, we recommend starting with these instance types:

Instance Type RAM vCPUs
i3.16xlarge 488 64 (2 CPUs)
i3.8xlarge 244 32 (2 CPUs)
i3.4xlarge 122 16
i3.2xlarge 61 8

For instance, an i3.4xlarge would be suitable for 150 GB/day ingest, holding 5 days of data in cache, and because of the SSDs this would be avoiding the "cliff" when the cache runs full. The 3.8 TB SSD would hold ~150 days of ingest data.

Live Queries & Dashboards

Running many live queries/dashboards is less of an issue with LogScale than most other similar products, because these are kept in-memory as a sort of in-memory materialized view. The time spent on updating them is part of the ingest flow and thus having many live queries increases the CPU usage for the ingest process. When initializing such queries, it does need to run a historic query to fill in past data, and that can take some time in particular if it extends beyond what fits within the compressed-data in memory horizon.

Testing Disk Performance

FIO is a great tool for testing the IO performance of your system. You may have to install it on your server, though. Run fio either with all options on the command-line or through a jobfile.

$ fio --filename=/data/fio-test.tmp --filesize=1Gi  \
    --bs=256K -rw=read --time_based --runtime=5s  \
    --name=read_bandwidth_test --numjobs=8 --thread --direct=1

Here are a sample contents for a jobfile that somewhat mimics how LogScale reads from the file system. Make sure to modify the file path to where your humio-data would be located, once installed.



Once that's done, run the fio command from the command-line like so:

$ fio --bandwidth-log ./humio-read-test.fio
$ rm /data/fio-tmp-dir/read8.?.?

The second line here will remove the temporary files generated by fio. When executing the first line, look for the lines at the bottom of the very detailed report similar to this:

Run status group 0 (all jobs):
   READ: bw=3095MiB/s (3245MB/s), 387MiB/s-431MiB/s
   (406MB/s-452MB/s), io=8192MiB (8590MB), run=2375-2647msec

This example is an NVME providing ~3 GB per second read performance. This allows for searching up to (9*3) GB per second of uncompressed data if the system has sufficient number of CPU cores according as suggested earlier. This NVME is well matched to a CPU with 32 hyper-threads (16 hardware cores.)