- Remove some unused code
- Use `is_multiple_of()` instead of '%'
- Collapse consecuative "if let" statements
- Elided lifetime fixes
It is enough just to review the code of your team
## Problem
close LKB-753. `test_pageserver_metrics_removed_after_offload` is
unstable and it sometimes leave the metrics behind after tenant
offloading. It turns out that we triggered an image compaction before
the offload and the job was stopped after the offload request was
completed.
## Summary of changes
Wait all background tasks to finish before checking the metrics.
---------
Signed-off-by: Alex Chi Z <chi@neon.tech>
There were a few uses of these already, so collect them to the
compatibility header to avoid the repetition and scattered #ifdefs.
The definition of MyProcNumber is a little different from what was used
before, but the end result is the same. (PGPROC->pgprocno values were
just assigned sequentially to all PGPROC array members, see
InitProcGlobal(). That's a bit silly, which is why it was removed in
v17.)
## Problem
When tenants have a lot of timelines, the number of tenants that a
pageserver can comfortably handle goes down. Branching is much more
widely used in practice now than it was when this code was written, and
we generally run pageservers with a few thousand tenants (where each
tenant has many timelines), rather than the 10k-20k we might have done
historically.
This should really be something configurable, or a more direct proxy for
resource utilization (such as non-archived timeline count), but this
change should be a low effort improvement.
## Summary of changes
* Change the target shard count (MAX_SHARDS) to 2500 from 5000 when
calculating pageserver utilization (i.e. a 200% overcommit now
corresponds to 5000 shards, not 10000 shards)
Co-authored-by: John Spray <john.spray@databricks.com>
## Problem
The test for logical replication used the year-old versions of
ClickHouse and Debezium so that we may miss problems related to
up-to-date versions.
## Summary of changes
The ClickHouse version has been updated to 24.8.
The Debezium version has been updated to the latest stable one,
3.1.3Final.
Some problems with locally running the Debezium test have been fixed.
---------
Co-authored-by: Alexey Masterov <alexey.masterov@databricks.com>
Co-authored-by: Alexander Bayandin <alexander@neon.tech>
Exposes metrics for caches. LKB-2594
This exposes a high level namespace, `cache`, that all cache metrics can
be added to - this makes it easier to make library panels for the caches
as I understand it.
To calculate the current cache fill ratio, you could use the following
query:
```
(
cache_inserted_total{cache="node_info"}
- sum (cache_evicted_total{cache="node_info"}) without (cause)
)
/ cache_capacity{cache="node_info"}
```
To calculate the cache hit ratio, you could use the following query:
```
cache_request_total{cache="node_info", outcome="hit"}
/ sum (cache_request_total{cache="node_info"}) without (outcome)
```
## Problem
For certificate auth, we need to configure pg_hba and pg_ident for it to
work.
HCC needs to mount this config map to all pg compute pod.
## Summary of changes
Create `databricks_pg_hba` and `databricks_pg_ident` to configure where
the files are located on the pod. These configs are pass down to
`compute_ctl`. Compute_ctl uses these config to update `pg_hba.conf` and
`pg_ident.conf` file.
We append `include_if_exists {databricks_pg_hba}` to `pg_hba.conf` and
similarly to `pg_ident.conf`. So that it will refer to databricks config
file without much change to existing pg default config file.
---------
Co-authored-by: Jarupat Jisarojito <jarupat.jisarojito@databricks.com>
Co-authored-by: William Huang <william.huang@databricks.com>
Co-authored-by: HaoyuHuang <haoyu.huang.68@gmail.com>
Before this PR, getpage requests wouldn't hold the
`applied_gc_cutoff_lsn` guard until they were done.
Theoretical impact: if we’re not holding the `RcuReadGuard`, gc can
theoretically concurrently delete reconstruct data that we need to
reconstruct the page.
I don't think this practically occurs in production because the odds of
it happening are quite low, especially for primary read_write computes.
But RO replicas / standby_horizon relies on correct
`applied_gc_cutofff_lsn`, so, I'm fixing this as part of the work ok
replacing standby_horizon propagation mechanism with leases (LKB-88).
The change is feature-gated with a feature flag, and evaluated once when
entering `handle_pagestream` to avoid performance impact.
For observability, we add a field to the `handle_pagestream` span, and a
slow-log to the place in `gc_loop` where it waits for the in-flight
RcuReadGuard's to drain.
refs
- fixes https://databricks.atlassian.net/browse/LKB-2572
- standby_horizon leases epic:
https://databricks.atlassian.net/browse/LKB-2572
---------
Co-authored-by: Christian Schwarz <Christian Schwarz>
## Problem
Monitoring dashboards show aggregates of all proxy instances, including
terminating ones. This can skew the results or make graphs less
readable. Also, alerts must be tuned to ignore certain signals from
terminating proxies.
## Summary of changes
Add a `service_info` metric currently with one label, `state`, showing
if an instance is in state `init`, `running`, or `terminating`. The
metric can be joined with other metrics to filter the presented time
series.
## Problem
test_ps_unavailable_after_delete is flaky. All test failures I've looked
at are because of ERROR log messages in pageserver, which happen because
storage controller tries runs a reconciliations during the graceful
shutdown of the pageserver.
I wasn't able to reproduce it locally, but I think stopping PS
immediately instead of gracefully should help. If not, we might just
silence those errors.
- Closes: https://databricks.atlassian.net/browse/LKB-745
## Problem
We need the set the following Postgres GUCs to the correct value before
starting Postgres in the compute instance:
```
databricks.workspace_url
databricks.enable_databricks_identity_login
databricks.enable_sql_restrictions
```
## Summary of changes
Plumbed through `workspace_url` and other GUC settings via
`DatabricksSettings` in `ComputeSpec`. The spec is sent to the compute
instance when it starts up and the GUCs are written to `postgresql.conf`
before the postgres process is launched.
---------
Co-authored-by: Jarupat Jisarojito <jarupat.jisarojito@databricks.com>
Co-authored-by: William Huang <william.huang@databricks.com>
## Problem
Copy certificate and key from secret mount directory to `pgdata`
directory where `postgres` is the owner and we can set the key
permission to 0600.
## Summary of changes
- Added new pgparam `pg_compute_tls_settings` to specify where k8s
secret for certificate and key are mounted.
- Added a new field to `ComputeSpec` called `databricks_settings`. This
is a struct that will be used to store any other settings that needs to
be propagate to Compute but should not be persisted to `ComputeSpec` in
the database.
- Then when the compute container start up, as part of `prepare_pgdata`
function, it will copied `server.key` and `server.crt` from k8s mounted
directory to `pgdata` directory.
## How is this tested?
Add unit tests.
Manual test via KIND
Co-authored-by: Jarupat Jisarojito <jarupat.jisarojito@databricks.com>
## Problem
We saw the following in the field:
Context and observations:
* The storage controller keeps track of the latest generations and the
pageserver that issued the latest generation in the database
* When the storage controller needs to proxy a request (e.g. timeline
creation) to the pageservers, it will find use the pageserver that
issued the latest generation from the db (generation_pageserver).
* pageserver-2.cell-2 got into a bad state and wasn't able to apply
location_config (e.g. detach a shard)
What happened:
1. pageserver-2.cell-2 was a secondary for our shard since we were not
able to detach it
2. control plane asked to detach a tenant (presumably because it was
idle)
a. In response storcon clears the generation_pageserver from the db and
attempts to detach all locations
b. it tries to detach pageserver-2.cell-2 first, but fails, which fails
the entire reconciliation leaving the good attached location still there
c. return success to cplane
3. control plane asks to re-attach the tenant
a. In response storcon performs a reconciliation
b. it finds that the observed state matches the intent (remember we did
not detach the primary at step(2))
c. skips incrementing the genration and setting the
generation_pageserver column
Now any requests that need to be proxied to pageservers and rely on the
generation_pageserver db column fail because that's not set
## Summary of changes
1. We do all non-essential location config calls (setting up
secondaries,
detaches) at the end of the reconciliation. Previously, we bailed out
of the reconciliation on the first failure. With this patch we attempt
all of the RPCs.
This allows the observed state to update even if another RPC failed for
unrelated reasons.
2. If the overall reconciliation failed, we don't want to remove nodes
from the
observed state as a safe-guard. With the previous patch, we'll get a
deletion delta to process, which would be ignored. Ignoring it is not
the right thing to do since it's out of sync with the db state.
Hence, on reconciliation failures map deletion from the observed state
to the uncertain state. Future reconciliation will query the node to
refresh their observed state.
Closes LKB-204
Verify that gRPC `GetPageRequest` has been sent to the shard that owns
the pages. This avoid spurious `NotFound` errors if a compute misroutes
a request, which can appear scarier (e.g. data loss).
Touches [LKB-191](https://databricks.atlassian.net/browse/LKB-191).
## Problem
The Dockerfile for build tools has some small issues that are easy to
fix to make it follow some of docker best practices
## Summary of changes
Apply some small quick wins on the Dockerfile for build tools
- Usage of apt-get over apt
- usage of --no-cache-dir for pip install
## Problem
LKB-2502 The garbage collection of the project info cache is garbage.
What we observed: If we get unlucky, we might throw away a very hot
entry if the cache is full. The GC loop is dependent on getting a lucky
shard of the projects2ep table that clears a lot of cold entries. The GC
does not take into account active use, and the interval it runs at is
too sparse to do any good.
Can we switch to a proper cache implementation?
Complications:
1. We need to invalidate by project/account.
2. We need to expire based on `retry_delay_ms`.
## Summary of changes
1. Replace `retry_delay_ms: Duration` with `retry_at: Instant` when
deserializing.
2. Split the EndpointControls from the RoleControls into two different
caches.
3. Introduce an expiry policy based on error retry info.
4. Introduce `moka` as a dependency, replacing our `TimedLru`.
See the follow up PR for changing all TimedLru instances to use moka:
#12726.
Follow up to #12701, which introduced a new regression. When profiling
locally I noticed that writes have the tendency to always reallocate. On
investigation I found that even if the `Connection`'s write buffer is
empty, if it still shares the same data pointer as the `Client`'s write
buffer then the client cannot reclaim it.
The best way I found to fix this is to just drop the `Connection`'s
write buffer each time we fully flush it.
Additionally, I remembered that `BytesMut` has an `unsplit` method which
is allows even better sharing over the previous optimisation I had when
'encoding'.
## Problem
While configuring or reconfiguring PG due to PageServer movements, it's
possible PG may get stuck if PageServer is moved around after fetching
the spec from StorageController.
## Summary of changes
To fix this issue, this PR introduces two changes:
1. Fail the PG query directly if the query cannot request configuration
for certain number of times.
2. Introduce a new state `RefreshConfiguration` in compute tools to
differentiate it from `RefreshConfigurationPending`. If compute tool is
already in `RefreshConfiguration` state, then it will not accept new
request configuration requests.
## How is this tested?
Chaos testing.
Co-authored-by: Chen Luo <chen.luo@databricks.com>
## Problem
In our experience running the system so far, almost all of the "hang
compute" situations are due to the compute (postgres) pointing at the
wrong pageservers. We currently mainly rely on the promethesus exporter
(PGExporter) running on PG to detect and report any down time, but these
can be unreliable because the read and write probes the PGExporter runs
do not always generate pageserver requests due to caching, even though
the real user might be experiencing down time when touching uncached
pages.
We are also about to start disk-wiping node pool rotation operations in
prod clusters for our pageservers, and it is critical to have a
convenient way to monitor the impact of these node pool rotations so
that we can quickly respond to any issues. These metrics should provide
very clear signals to address this operational need.
## Summary of changes
Added a pair of metrics to detect issues between postgres' PageStream
protocol (e.g. get_page_at_lsn, get_base_backup, etc.) communications
with pageservers:
* On the compute node (compute_ctl), exports a counter metric that is
incremented every time postgres requests a configuration refresh.
Postgres today only requests these configuration refreshes when it
cannot connect to a pageserver or if the pageserver rejects its request
by disconnecting.
* On the pageserver, exports a counter metric that is incremented every
time it receives a PageStream request that cannot be handled because the
tenant is not known or if the request was routed to the wrong shard
(e.g. secondary).
### How I plan to use metrics
I plan to use the metrics added here to create alerts. The alerts can
fire, for example, if these counters have been continuously increasing
for over a certain period of time. During rollouts, misrouted requests
may occasionally happen, but they should soon die down as
reconfigurations make progress. We can start with something like raising
the alert if the counters have been increasing continuously for over 5
minutes.
## How is this tested?
New integration tests in
`test_runner/regress/test_hadron_ps_connectivity_metrics.py`
Co-authored-by: William Huang <william.huang@databricks.com>
## Problem
Currently PG backpressure parameters are enforced globally. With tenant
splitting, this makes it hard to balance small tenants and large
tenants. For large tenants with more shards, we need to increase the
lagging because each shard receives total/shard_count amount of data,
while doing so could be suboptimal to small tenants with fewer shards.
## Summary of changes
This PR makes these parameters to be enforced at the shard level, i.e.,
PG will compute the actual lag limit by multiply the shard count.
## How is this tested?
Added regression test.
Co-authored-by: Chen Luo <chen.luo@databricks.com>
## Problem
This is a follow-up to TODO, as part
of the effort to rewire the compute reconfiguration/notification
mechanism to make it more robust. Please refer to that commit or ticket
BRC-1778 for full context of the problem.
## Summary of changes
The previous change added mechanism in `compute_ctl` that makes it
possible to refresh the configuration of PG on-demand by having
`compute_ctl` go out to download a new config from the control
plane/HCC. This change wired this mechanism up with PG so that PG will
signal `compute_ctl` to refresh its configuration when it suspects that
it could be talking to incorrect pageservers due to a stale
configuration.
PG will become suspicious that it is talking to the wrong pageservers in
the following situations:
1. It cannot connect to a pageserver (e.g., getting a network-level
connection refused error)
2. It can connect to a pageserver, but the pageserver does not return
any data for the GetPage request
3. It can connect to a pageserver, but the pageserver returns a
malformed response
4. It can connect to a pageserver, but there is an error receiving the
GetPage request response for any other reason
This change also includes a minor tweak to `compute_ctl`'s config
refresh behavior. Upon receiving a request to refresh PG configuration,
`compute_ctl` will reach out to download a config, but it will not
attempt to apply the configuration if the config is the same as the old
config is it replacing. This optimization is added because the act of
reconfiguring itself requires working pageserver connections. In many
failure situations it is likely that PG detects an issue with a
pageserver before the control plane can detect the issue, migrate
tenants, and update the compute config. In this case even the latest
compute config won't point PG to working pageservers, causing the
configuration attempt to hang and negatively impact PG's
time-to-recovery. With this change, `compute_ctl` only attempts
reconfiguration if the refreshed config points PG to different
pageservers.
## How is this tested?
The new code paths are exercised in all existing tests because this
mechanism is on by default.
Explicitly tested in `test_runner/regress/test_change_pageserver.py`.
Co-authored-by: William Huang <william.huang@databricks.com>
## Problem
We don't have a well-documented, periodic benchmark for TPC-C like OLTP
workload.
## Summary of changes
# Benchbase TPC-C-like Performance Results
Runs TPC-C-like benchmarks on Neon databases using
[Benchbase](https://github.com/cmu-db/benchbase).
Docker images are built
[here](https://github.com/neondatabase-labs/benchbase-docker-images)
We run the benchmarks at different scale factors aligned with different
compute sizes we offer to customers.
For each scale factor, we determine a max rate (see Throughput in warmup
phase) and then run the benchmark at a target rate of approx. 70 % of
the max rate.
We use different warehouse sizes which determine the working set size -
it is optimized for LFC size of the respected pricing tier.
Usually we should get LFC hit rates above 70 % for this setup and quite
good, consistent (non-flaky) latencies.
## Expected performance as of first testing this
| Tier | CU | Warehouses | Terminals | Max TPS | LFC size | Working set
size | LFC hit rate | Median latency | p95 latency |
|------------|------------|---------------|-----------|---------|----------|------------------|--------------|----------------|-------------|
| free | 0.25-2 | 50 - 5 GB | 150 | 800 | 5 GB | 6.3 GB | 95 % | 170 ms
| 600 ms |
| serverless | 2-8 | 500 - 50 GB | 230 | 2000 | 26 GB | ?? GB | 91 % |
50 ms | 200 ms |
| business | 2-16 | 1000 - 100 GB | 330 | 2900 | 51 GB | 50 GB | 72 % |
40 ms | 180 ms |
Each run
- first loads the database (not shown in the dashboard).
- Then we run a warmup phase for 20 minutes to warm up the database and
the LFC at unlimited target rate (max rate) (highest throughput but
flaky latencies).
The warmup phase can be used to determine the max rate and adjust it in
the github workflow in case Neon is faster in the future.
- Then we run the benchmark at a target rate of approx. 70 % of the max
rate for 1 hour (expecting consistent latencies and throughput).
## Important notes on implementation:
- we want to eventually publish the process how to reproduce these
benchmarks
- thus we want to reduce all dependencies necessary to run the
benchmark, the only thing needed are
- docker
- the docker images referenced above for benchbase
- python >= 3.9 to run some config generation steps and create diagrams
- to reduce dependencies we deliberatly do NOT use some of our python
fixture test infrastructure to make the dependency chain really small -
so pls don't add a review comment "should reuse fixture xy"
- we also upload all generator python scripts, generated bash shell
scripts and configs as well as raw results to S3 bucket that we later
want to publish once this benchmark is reviewed and approved.
## Problem
* Fixes LKB-743
We get regular assertion failures on staging caused by a race with chaos
injector. If chaos injector decides to migrate a tenant shard between
the background optimisation planning and applying optimisations then we
attempt to migrate and already migrated shard and hit an assertion
failure.
## Summary of changes
@VladLazar fixed a variant of this issue by
adding`validate_optimization` recently, however it didn't validate the
specific property this other assertion requires. Fix is just to update
it to cover all the expected properties.
## Problem
Compiling `neon-pg-ext-v17` results in these linker warnings for
`libcommunicator.a`:
```
$ make -j`nproc` -s neon-pg-ext-v17
Installing PostgreSQL v17 headers
Compiling PostgreSQL v17
Compiling neon-specific Postgres extensions for v17
ld: warning: object file (/Users/erik.grinaker/Projects/neon/target/debug/libcommunicator.a[1159](25ac62e5b3c53843-curve25519.o)) was built for newer 'macOS' version (15.5) than being linked (15.0)
ld: warning: object file (/Users/erik.grinaker/Projects/neon/target/debug/libcommunicator.a[1160](0bbbd18bda93c05b-aes_nohw.o)) was built for newer 'macOS' version (15.5) than being linked (15.0)
ld: warning: object file (/Users/erik.grinaker/Projects/neon/target/debug/libcommunicator.a[1161](00c879ee3285a50d-montgomery.o)) was built for newer 'macOS' version (15.5) than being linked (15.0)
[...]
```
## Summary of changes
Set `MACOSX_DEPLOYMENT_TARGET` to the current local SDK version (15.5 in
this case), which links against object files for that version.
## Problem
Compute retries are finite (e.g. 5x in a basebackup) -- with a 50%
failure rate we have pretty good chance of exceeding that and the test
failing.
Fixes: https://databricks.atlassian.net/browse/LKB-2278
## Summary of changes
- Turn connection error rate down to 20%
Co-authored-by: John Spray <john.spray@databricks.com>
## Problem
We have been dealing with a number of issues with the SC compute
notification mechanism. Various race conditions exist in the
PG/HCC/cplane/PS distributed system, and relying on the SC to send
notifications to the compute node to notify it of PS changes is not
robust. We decided to pursue a more robust option where the compute node
itself discovers whether it may be pointing to the incorrect PSs and
proactively reconfigure itself if issues are suspected.
## Summary of changes
To support this self-healing reconfiguration mechanism several pieces
are needed. This PR adds a mechanism to `compute_ctl` called "refresh
configuration", where the compute node reaches out to the control plane
to pull a new config and reconfigure PG using the new config, instead of
listening for a notification message containing a config to arrive from
the control plane. Main changes to compute_ctl:
1. The `compute_ctl` state machine now has a new State,
`RefreshConfigurationPending`. The compute node may enter this state
upon receiving a signal that it may be using the incorrect page servers.
2. Upon entering the `RefreshConfigurationPending` state, the background
configurator thread in `compute_ctl` wakes up, pulls a new config from
the control plane, and reconfigures PG (with `pg_ctl reload`) according
to the new config.
3. The compute node may enter the new `RefreshConfigurationPending`
state from `Running` or `Failed` states. If the configurator managed to
configure the compute node successfully, it will enter the `Running`
state, otherwise, it stays in `RefreshConfigurationPending` and the
configurator thread will wait for the next notification if an incorrect
config is still suspected.
4. Added various plumbing in `compute_ctl` data structures to allow the
configurator thread to perform the config fetch.
The "incorrect config suspected" notification is delivered using a HTTP
endpoint, `/refresh_configuration`, on `compute_ctl`. This endpoint is
currently not called by anyone other than the tests. In a follow up PR I
will set up some code in the PG extension/libpagestore to call this HTTP
endpoint whenever PG suspects that it is pointing to the wrong page
servers.
## How is this tested?
Modified `test_runner/regress/test_change_pageserver.py` to add a
scenario where we use the new `/refresh_configuration` mechanism instead
of the existing `/configure` mechanism (which requires us sending a full
config to compute_ctl) to have the compute node reload and reconfigure
its pageservers.
I took one shortcut to reduce the scope of this change when it comes to
testing: the compute node uses a local config file instead of pulling a
config over the network from the HCC. This simplifies the test setup in
the following ways:
* The existing test framework is set up to use local config files for
compute nodes only, so it's convenient if I just stick with it.
* The HCC today generates a compute config with production settings
(e.g., assuming 4 CPUs, 16GB RAM, with local file caches), which is
probably not suitable in tests. We may need to add another test-only
endpoint config to the control plane to make this work.
The config-fetch part of the code is relatively straightforward (and
well-covered in both production and the KIND test) so it is probably
fine to replace it with loading from the local config file for these
integration tests.
In addition to making sure that the tests pass, I also manually
inspected the logs to make sure that the compute node is indeed
reloading the config using the new mechanism instead of going down the
old `/configure` path (it turns out the test has bugs which causes
compute `/configure` messages to be sent despite the test intending to
disable/blackhole them).
```test
2024-09-24T18:53:29.573650Z INFO http request{otel.name=/refresh_configuration http.method=POST}: serving /refresh_configuration POST request
2024-09-24T18:53:29.573689Z INFO configurator_main_loop: compute node suspects its configuration is out of date, now refreshing configuration
2024-09-24T18:53:29.573706Z INFO configurator_main_loop: reloading config.json from path: /workspaces/hadron/test_output/test_change_pageserver_using_refresh[release-pg16]/repo/endpoints/ep-1/spec.json
PG:2024-09-24 18:53:29.574 GMT [52799] LOG: received SIGHUP, reloading configuration files
PG:2024-09-24 18:53:29.575 GMT [52799] LOG: parameter "neon.extension_server_port" cannot be changed without restarting the server
PG:2024-09-24 18:53:29.575 GMT [52799] LOG: parameter "neon.pageserver_connstring" changed to "postgresql://no_user@localhost:15008"
...
```
Co-authored-by: William Huang <william.huang@databricks.com>
PR #12431 set initial lease deadline = 0s for tests.
This turned test_hot_standby_gc flaky because it now runs GC: it started
failing with `tried to request a page version that was garbage
collected`
because the replica reads below applied gc cutoff.
The leading theory is that, we run the timeline_gc() before the first
standby_horizon push arrives at PS. That is definitively a thing that
can happen with the current standby_horizon mechanism, and it's now
tracked as such in https://databricks.atlassian.net/browse/LKB-2499.
We don't have logs to confirm this theory though, but regardless,
try the fix in this PR and see if it stabilizes things.
Refs
- flaky test issue: https://databricks.atlassian.net/browse/LKB-2465
## Problem
## Summary of changes
Another go at #12341. LKB-2497
We now only need 1 connect mechanism (and 1 more for testing) which
saves us some code and complexity. We should be able to remove the final
connect mechanism when we create a separate worker task for
pglb->compute connections - either via QUIC streams or via in-memory
channels.
This also now ensures that connect_once always returns a ConnectionError
type - something simple enough we can probably define a serialisation
for in pglb.
* I've abstracted connect_to_compute to always use TcpMechanism and the
ProxyConfig.
* I've abstracted connect_to_compute_and_auth to perform authentication,
managing any retries for stale computes
* I had to introduce a separate `managed` function for taking ownership
of the compute connection into the Client/Connection pair
## Problem
`postgres_exporter` has database collector enabled by default and it
doesn't filter out invalid databases, see
06a553c816/collector/pg_database.go (L67)
so if it hits one, it starts spamming logs
```
ERROR: [NEON_SMGR] [reqid d9700000018] could not read db size of db 705302 from page server at lsn 5/A2457EB0
```
## Summary of changes
We don't use `pg_database_size_bytes` metric anyway, see
5e19b3fd89/apps/base/compute-metrics/scrape-compute-pg-exporter-neon.yaml (L29)
so just turn it off by passing `--no-collector.database`.
## Problem
A large insert or a large row will cause the codec to allocate a large
buffer. The codec never shrinks the buffer however. LKB-2496
## Summary of changes
1. Introduce a naive GC system for codec buffers
2. Try and reduce copies as much as possible
## Problem
Tenant split test revealed another bug with PG backpressure throttling
that under some cases PS may never report its progress back to SK (e.g.,
observed when aborting tenant shard where the old shard needs to
re-establish SK connection and re-ingest WALs from a much older LSN). In
this case, PG may get stuck forever.
## Summary of changes
As a general precaution that PS feedback mechanism may not always be
reliable, this PR uses the previously introduced WAL write rate limit
mechanism to slow down write rates instead of completely pausing it. The
idea is to introduce a new
`databricks_effective_max_wal_bytes_per_second`, which is set to
`databricks_max_wal_mb_per_second` when no PS back pressure and is set
to `10KB` when there is back pressure. This way, PG can still write to
SK, though at a very low speed.
The PR also fixes the problem that the current WAL rate limiting
mechanism is too coarse grained and cannot enforce limits < 1MB. This is
because it always resets the rate limiter after 1 second, even if PG
could have written more data in the past second. The fix is to introduce
a `batch_end_time_us` which records the expected end time of the current
batch. For example, if PG writes 10MB of data in a single batch, and max
WAL write rate is set as `1MB/s`, then `batch_end_time_us` will be set
as 10 seconds later.
## How is this tested?
Tweaked the existing test, and also did manual testing on dev. I set
`max_replication_flush_lag` as 1GB, and loaded 500GB pgbench tables.
It's expected to see PG gets throttled periodically because PS will
accumulate 4GB of data before flushing.
Results:
when PG is throttled:
```
9500000 of 3300000000 tuples (0%) done (elapsed 10.36 s, remaining 3587.62 s)
9600000 of 3300000000 tuples (0%) done (elapsed 124.07 s, remaining 42523.59 s)
9700000 of 3300000000 tuples (0%) done (elapsed 255.79 s, remaining 86763.97 s)
9800000 of 3300000000 tuples (0%) done (elapsed 315.89 s, remaining 106056.52 s)
9900000 of 3300000000 tuples (0%) done (elapsed 412.75 s, remaining 137170.58 s)
```
when PS just flushed:
```
18100000 of 3300000000 tuples (0%) done (elapsed 433.80 s, remaining 78655.96 s)
18200000 of 3300000000 tuples (0%) done (elapsed 433.85 s, remaining 78231.71 s)
18300000 of 3300000000 tuples (0%) done (elapsed 433.90 s, remaining 77810.62 s)
18400000 of 3300000000 tuples (0%) done (elapsed 433.96 s, remaining 77395.86 s)
18500000 of 3300000000 tuples (0%) done (elapsed 434.03 s, remaining 76987.27 s)
18600000 of 3300000000 tuples (0%) done (elapsed 434.08 s, remaining 76579.59 s)
18700000 of 3300000000 tuples (0%) done (elapsed 434.13 s, remaining 76177.12 s)
18800000 of 3300000000 tuples (0%) done (elapsed 434.19 s, remaining 75779.45 s)
18900000 of 3300000000 tuples (0%) done (elapsed 434.84 s, remaining 75489.40 s)
19000000 of 3300000000 tuples (0%) done (elapsed 434.89 s, remaining 75097.90 s)
19100000 of 3300000000 tuples (0%) done (elapsed 434.94 s, remaining 74712.56 s)
19200000 of 3300000000 tuples (0%) done (elapsed 498.93 s, remaining 85254.20 s)
19300000 of 3300000000 tuples (0%) done (elapsed 498.97 s, remaining 84817.95 s)
19400000 of 3300000000 tuples (0%) done (elapsed 623.80 s, remaining 105486.76 s)
19500000 of 3300000000 tuples (0%) done (elapsed 745.86 s, remaining 125476.51 s)
```
Co-authored-by: Chen Luo <chen.luo@databricks.com>
This GUC will become useful for temporarily disabling Lakebase-specific
features during the code merge.
Signed-off-by: Tristan Partin <tristan.partin@databricks.com>
https://github.com/neondatabase/cloud/issues/19011
- Accept `ComputeSpec` in `/promote` instead of just passing safekeepers
and LSN. Update API spec
- Add corner case tests for promotion when promotion or perwarm fails
(using failpoints)
- Print root error for prewarm and promotion in status handlers
## Problem
There has been some inconsistencies of providing tenant config via
`tenant_create` and via other tenant config APIs due to how the
properties are processed: in `tenant_create`, the test framework calls
neon-cli and therefore puts those properties in the cmdline. In other
cases, it's done via the HTTP API by directly serializing to a JSON.
When using the cmdline, the program only accepts serde bool that is
true/false.
## Summary of changes
Convert Python bool into `true`/`false` when using neon-cli.
Signed-off-by: Alex Chi Z <chi@neon.tech>
## Problem
OTel 0.28+ by default uses blocking operations in a dedicated thread and
doesn't start a tokio runtime. Reqwest as currently configured wants to
spawn tokio tasks.
## Summary of changes
Use blocking reqwest.
This PR just mitigates the current issue.
Session variables can be set during one sql-over-http query and observed
on another when that pooled connection is re-used. To address this we
can use `RESET ALL;` before re-using the connection. LKB-2495
To be on the safe side, we can opt for a full `DISCARD ALL;`, but that
might have performance regressions since it also clears any query plans.
See pgbouncer docs
https://www.pgbouncer.org/config.html#server_reset_query.
`DISCARD ALL` is currently defined as:
```
CLOSE ALL;
SET SESSION AUTHORIZATION DEFAULT;
RESET ALL;
DEALLOCATE ALL;
UNLISTEN *;
SELECT pg_advisory_unlock_all();
DISCARD PLANS;
DISCARD TEMP;
DISCARD SEQUENCES;
```
I've opted to keep everything here except the `DISCARD PLANS`. I've
modified the code so that this query is executed in the background when
a connection is returned to the pool, rather than when taken from the
pool.
This should marginally improve performance for Neon RLS by removing 1
(localhost) round trip. I don't believe that keeping query plans could
be a security concern. It's a potential side channel, but I can't
imagine what you could extract from it.
---
Thanks to
https://github.com/neondatabase/neon/pull/12659#discussion_r2219016205
for probing the idea in my head.
## Problem
LKB-197, #9516
To make sure the migration path is smooth.
The previous plan is to store new relations in new keyspace and old ones
in old keyspace until it gets dropped. This makes the migration path
hard as we can't validate v2 writes and can't rollback. This patch gives
us a more smooth migration path:
- The first time we enable reldirv2 for a tenant, we copy over
everything in the old keyspace to the new one. This might create a short
spike of latency for the create relation operation, but it's oneoff.
- After that, we have identical v1/v2 keyspace and read/write both of
them. We validate reads every time we list the reldirs.
- If we are in `migrating` mode, use v1 as source of truth and log a
warning for failed v2 operations. If we are in `migrated` mode, use v2
as source of truth and error when writes fail.
- One compatibility test uses dataset from the time where we enabled
reldirv2 (of the original rollout plan), which only has relations
written to the v2 keyspace instead of the v1 keyspace. We had to adjust
it accordingly.
- Add `migrated_at` in index_part to indicate the LSN where we did the
initialize.
TODOs:
- Test if relv1 can be read below the migrated_at LSN.
- Move the initialization process to L0 compaction instead of doing it
on the write path.
- Disable relcache in the relv2 test case so that all code path gets
fully tested.
## Summary of changes
- New behavior of reldirv2 migration flags as described above.
---------
Signed-off-by: Alex Chi Z <chi@neon.tech>
## Problem
> bullseye-backports has reached end-of-life and is no longer supported
or updated
From: https://backports.debian.org/Instructions/
This causes the compute-node image build to fail with the following
error:
```
0.099 Err:5 http://deb.debian.org/debian bullseye-backports Release
0.099 404 Not Found [IP: 146.75.122.132 80]
...
1.293 E: The repository 'http://deb.debian.org/debian bullseye-backports Release' does not have a Release file.
```
## Summary of changes
- Use archive version of `bullseye-backports`
Second attempt at #12130, now with a smaller diff.
This allows us to skip allocating for things like parameter status and
notices that we will either just forward untouched, or discard.
LKB-2494
## Problem
With safekeeper migration in mind, we can now pull/exclude the timeline
multiple times within the same safekeeper. To avoid races between out of
order requests, we need to ignore the pull/exclude requests if we have
already seen a higher generation.
- Closes: https://github.com/neondatabase/neon/issues/12186
- Closes: [LKB-949](https://databricks.atlassian.net/browse/LKB-949)
## Summary of changes
- Annotate timeline tombstones in safekeeper with request generation.
- Replace `ignore_tombstone` option with `mconf` in
`PullTimelineRequest`
- Switch membership in `pull_timeline` if the existing/pulled timeline
has an older generation.
- Refuse to switch membership if the timeline is being deleted
(`is_canceled`).
- Refuse to switch membership in compute greeting request if the
safekeeper is not a member of `mconf`.
- Pass `mconf` in `PullTimelineRequest` in safekeeper_service
---------
Co-authored-by: Arpad Müller <arpad-m@users.noreply.github.com>