Status | Authors | Coach | DRIs | Owning Stage | Created |
---|---|---|---|---|---|
ongoing |
@grzesiek
|
@grzesiek
|
@cheryl.li
@jreporter
| devops verify | 2021-01-21 |
CI/CD Scaling
Summary
GitLab CI/CD is one of the most data and compute intensive components of GitLab. Since its initial release in 2012, the CI/CD subsystem has evolved significantly. It was integrated into GitLab in September 2015 and has become one of the most beloved CI/CD solutions.
GitLab CI/CD has come a long way since the initial release, but the design of
the data storage for pipeline builds remains almost the same since 2012. We
store all the builds in PostgreSQL in ci_builds
table, and because we are
creating more than 5 million builds each day on GitLab.com we are reaching
database limits that are slowing our development velocity down.
On February 1st, 2021, GitLab.com surpassed 1 billion CI/CD builds created. In February 2022 we reached 2 billion of CI/CD build stored in the database. The number of builds continues to grow exponentially.
The screenshot below shows our forecast created at the beginning of 2021, that turned out to be quite accurate.
Goals
Enable future growth by making processing 20M builds in a day possible.
Challenges
The current state of CI/CD product architecture needs to be updated if we want to sustain future growth.
We were running out of the capacity to store primary keys: DONE
The primary key in ci_builds
table is an integer value, generated in a sequence.
Historically, Rails used to use integer
type when creating primary keys for a table. We did use the default when we
created the ci_builds
table in 2012.
The behavior of Rails has changed
since the release of Rails 5. The framework is now using bigint
type that is 8
bytes long, however we have not migrated primary keys for ci_builds
table to
bigint
yet.
In early 2021 we had estimated that would run out of the capacity of the integer
type to store primary keys in ci_builds
table before December 2021. If it had
happened without a viable workaround or an emergency plan, GitLab.com would go
down. ci_builds
was just one of many tables that were running out of the
primary keys available in Int4 sequence.
Before October 2021, our Database team had managed to migrate all the risky tables’ primary keys to big integers.
See the related Epic for more details.
Some CI/CD database tables are too large: IN PROGRESS
There is more than two billion rows in ci_builds
table. We store many
terabytes of data in that table, and the total size of indexes is measured in
terabytes as well.
This amount of data contributes to a significant number of performance problems we experience on our CI PostgreSQL database.
Most of the problems are related to how PostgreSQL database works internally,
and how it is making use of resources on a node the database runs on. We are at
the limits of vertical scaling of the CI primary database nodes and we
frequently see a negative impact of the ci_builds
table on the overall
performance, stability, scalability and predictability of the CI database
GitLab.com depends on.
The size of the table also hinders development velocity because queries that seem fine in the development environment may not work on GitLab.com. The difference in the dataset size between the environments makes it difficult to predict the performance of even the most simple queries.
Team members and the wider community members are struggling to contribute the
Verify area, because we restricted the possibility of extending ci_builds
even further. Our static analysis tools prevent adding more columns to this
table. Adding new queries is unpredictable because of the size of the dataset
and the amount of queries executed using the table. This significantly hinders
the development velocity and contributes to incidents on the production
environment.
We also expect a significant, exponential growth in the upcoming years.
One of the forecasts done using Facebook’s Prophet shows that in the first half of 2024 we expect seeing 20M builds created on GitLab.com each day. In comparison to around 5M we see created today. This is 10x growth from numbers we saw in 2021.
Status: As of October 2021 we reduced the growth rate of ci_builds
table
by writing build options and variables to ci_builds_metadata
table. We are
also working on partitioning the largest CI/CD database tables using
time decay pattern.
Queuing mechanisms were using the large table: DONE
Because of how large the table is, mechanisms that we used to build queues of
pending builds (there is more than one queue), were not very efficient. Pending
builds represented a small fraction of what we store in the ci_builds
table,
yet we needed to find them in this big dataset to determine an order in which we
wanted to process them.
This mechanism was very inefficient, and it had been causing problems on the production environment frequently. This usually resulted in a significant drop of the CI/CD Apdex score, and sometimes even caused a significant performance degradation in the production environment.
There were multiple other strategies that we considered to improve performance and reliability. We evaluated using Redis queuing, or a separate table that would accelerate SQL queries used to build queues. We decided to proceed with the latter.
In October 2021 we finished shipping the new architecture of builds queuing on GitLab.com. We then made the new architecture generally available.
Moving big amounts of data is challenging: IN PROGRESS
We store a significant amount of data in ci_builds
table. Some of the columns
in that table store a serialized user-provided data. Column ci_builds.options
stores more than 600 gigabytes of data, and ci_builds.yaml_variables
more
than 300 gigabytes (as of February 2021).
It is a lot of data that needs to be reliably moved to a different place. Unfortunately, right now, our background migrations are not reliable enough to migrate this amount of data at scale. We need to build mechanisms that will give us confidence in moving this data between columns, tables, partitions or database shards.
Effort to improve background migrations will be owned by our Database Team.
Status: In progress. We plan to ship further improvements that will be described in a separate architectural blueprint.
Proposal
Below you can find the original proposal made in early 2021 about how we want to move forward with CI Scaling effort:
Making GitLab CI/CD product ready for the scale we expect to see in the upcoming years is a multi-phase effort.
First, we want to focus on things that are urgently needed right now. We need to fix primary keys overflow risk and unblock other teams that are working on database partitioning and sharding.
We want to improve known bottlenecks, like builds queuing mechanisms that is using the large table, and other things that are holding other teams back.
Extending CI/CD metrics is important to get a better sense of how the system performs and to what growth should we expect. This will make it easier for us to identify bottlenecks and perform more advanced capacity planning.
Next step is to better understand how we can leverage strong time-decay characteristic of CI/CD data. This might help us to partition CI/CD dataset to reduce the size of CI/CD database tables.
Iterations
Work required to achieve our next CI/CD scaling target is tracked in the CI/CD Scaling epic.
- ✓ Migrate primary keys to big integers on GitLab.com.
- ✓ Implement the new architecture of builds queuing on GitLab.com.
- ✓ Make the new builds queuing architecture generally available.
- Partition CI/CD data using time-decay pattern.
Status
Created at 21.01.2021, approved at 26.04.2021.
Status: In progress.
Who
Proposal:
Role | Who |
---|---|
Author | Grzegorz Bizon |
Architecture Evolution Coach | Kamil Trzciński |
Engineering Leader | Cheryl Li |
Product Manager | Jackie Porter |
Domain Expert / Verify | Fabio Pitino |
Domain Expert / Database | Jose Finotto |
Domain Expert / PostgreSQL | Nikolay Samokhvalov |
DRIs:
Role | Who |
---|---|
Leadership | Cheryl Li |
Product | Jackie Porter |
Engineering | Grzegorz Bizon |
Domain experts:
Area | Who |
---|---|
Domain Expert / Verify | Fabio Pitino |
Domain Expert / Verify | Marius Bobin |
Domain Expert / Database | Jose Finotto |
Domain Expert / PostgreSQL | Nikolay Samokhvalov |