- How does CH compare with the recent announcements made by Databricks Reyden...
- I discovered ClickHouse around 2017-18 and built a PoC to replace Elasticsearch: 5x better storage and qps, in a couple of weeks.
Managers rejected it because it wasn't well known and was seen as "some database made by Russians."
On a personal level, it's quite sad to have seen that train coming so early and not been able to get on board.
- I had the same experience recently. Turns out ClickHouse would reduce our DB operations by 60%, remove the need for a TSDB, and reduce query times from ~300-500ms (and sometimes ~3s) to roughly ~75ms. Lastly, and most impressively we were already seeing a ridiculous level of compression and our storage cost benchmarks were reduced to the cost of S3. This took a $2-3M storage layer down to one measured in the single thousands per month.
ClickHouse is no panacea but if you understand how your data is accessed and thus how to arrange it you will get so many miles out of it.
- Were you using it for simple grep search or actually required advanced searching for eg: BM25. Clickhouse will only help you with grep like search from what I understand.
- Actually, there was no search, only on-the-fly aggregations/filtering over "big data". ES was kind of famous at the time, although not the best tool for that job.
afaik CH introduced FTS rececently.
- Off topic: IMHO, everything that's been happening over the past few years is a self-fulfilling prophecy in no small part due to attitudes like this. Der Fuhrer did not have to put in much effort to convince the population when even those exposed to the outside world have met with enough suspicion and contempt to "know" (whether it's true or not) that most westerners have never seen us as equals, or even any sort of positive force.
Most probably don't even realize it. I see it as something similar to what racial minorities in the US go through: ask a random stranger on the street if he's racist, and he will honestly say no, even if he actually simply does not realize it, while it deeply affects how he sees the world.
I've also been seeing similar attitudes in relation to the Chinese. People avoiding excellent projects because they were written by some Chinese guy, including things where supply chain security is of no concern. Again apparently not realizing that these days a large part of the work on the Linux kernel is committed by paid employees of several large Chinese companies, all of them tightly intertwined with the government. Forget talking about who is building the hardware we all use.
Whatever, the internet is fracturing and balkanizing at full speed anyway, and the borders are slowly closing. Won't be long before we won't be able exchange anything non-destructive anymore. It was good while it lasted.
- >ask a random stranger on the street if he's racist, and he will honestly say no, even if he actually simply does not realize it
My lord you people are beyond patronizing.
When people refer to "the Chinese" or "the Russians", we are taking about the nation state, not the people. And there are legitimate security concerns. Whether we should be adversial is another question. But we are.
- I am wary of any supply chain attack and more so if the project is maintained by people with relationships in adversarial countries. The risk of exploitation outweighs the convenience.
- I agree about the legitimate security concerns, but not with "we're talking about the nation state, not the people". If life has taught me anything in the last few years, it's that normies are incapable of making this distinction, at least in the Old World.
- Google was created by some Russian guys. Current american president was Russian agent (that is why he won 2016 elections).
I think US is very tolerant when it comes to people from Russia.
- yes and the proof was the spam email phoning home to russia. or, whatever other hoaxes they cooked up along the way. strangely most of them didnt make it into the trial where he was acquitted.
- Given that american ignorance is a cultural thing (with many people deliberately electing the way grandpa did it) is it not kind of racist to generalize americans as unknowingly racist?
You said, "ask a random stranger...and he will honestly say no" not "ask a random stanger...and he will probably honestly say no".
Most of most people are racist, it's just different groups. Americans obviously have less distrust of americans, but then I am just as certain that there are many many humans who would proudly share their "dumb american" stories as if that is not every bit as prejudicial to those of us who do not fit the description as any other "weak french" or "commie russian" or "sister fucking indian" or whatever else.
- > but then I am just as certain that there are many many humans who would proudly share their "dumb american" stories as if that is not every bit as prejudicial to those of us who do not fit the description as any other "weak french" or "commie russian" or "sister fucking indian" or whatever else.
Racism is about race (i.e. phenotypical or genotypical properties), while being US-American/French/Russian/Indian/... is about nationality. So, these stories are not about racism (since they are not about race), but about prejudices against other nations/nationalities.
- Can clickhouse to search? If not why did you seek to replace elastic with it
- I used to keep all of OnlineOrNot's timeseries data entirely in a hot postgres db with the rest of the relational data.
Used to take a few seconds to get a week's uptime data and do some useful analysis.
Since moving to Clickhouse I think I can grab a full year's data in around 200ms (probably less if I try optimising it). Still completely blows my mind everyday.
- For our metrics and autoscaling engine at Cloud 66, we went through 5 iterations before settling on Clickhouse: 1. Redis 2. Cassandra 3. Handrolled: Ruby + RabbitMQ 4. Handrolled: Go + RabbitMQ 5. Clickhouse
Every time we reached some limit or huge optimization burdens that were unfeasible. Clickhouse has been rock solid for the past 4 years.
- ClickHouse recently has been a breath of fresh air compared to using timescaledb for a long time. Although psql is the greatest there is and I really enjoyed the fact that I could rely on a single database system to run everything, when it came to migration maintenance and deployment it's really a pain and it also feels like development on timescaledb is a bit wishy washy with all the structural changes from version to version and it really feels like an alpha product sometimes.
- I was using TimescaleDB some very long time ago, things have changed quite a lot since (it's now even named differently).
In my current setup I was thinking on doing both: upgrading postgresql to timescaledb (to archive old data etc.), and to deploy ClickHouse in parallel. I'm still considering whether to go big on PeerDB to get ClickHouse mirror or just deploy it separately without additional fragility layer.
Would you not recommend using timescaledb at all? I definitely want to avoid alpha-quality software pain, since PostgreSQL is one of the most rock-solid parts of the stack at the moment.
- In my (minor) experience Timescale works fine. The developer experience is good and it is very convenient to be able to JOIN against your hypertables. My only real complaints are operational (no logical replication, normal postgres update complaints), but man Clickhouse is really slick. I wrote some small reviews of the two in my submission history if you want a bit more detail.
- I would just run both and decomission the old one when a) all data is migrated, b) old data is no longer relevant and can be archived
- Worked on peerdb. If you're able to batch changes on your end & push to both postgres & clickhouse, do that. Only move to peerdb when you know you need cdc
- Just looked up PeerDB expecting a Db as per its name.
But it’s a ETl tool. Stupid naming
- I know I know. Some people have loved it as it captures what it does (peering dbs) and some haven't because of the exact reason you called out. So we get it! :)
- It's interesting that the blog post places SQLite and Ladybird on the spectrum, but omits it's chief open source rival: DuckDB.
Agree that Level 3 is what inspires confidence. But we need to invent new business models to sustain in the era of vibe-coded databases.
- while ClickHouse can scale down to compete with duckdb, I dont believe (but happy to be corrected) that duckdb can scale up like ClickHouse can.
most people dont have that scale problems, but when you do...
- > You can open a pull request as an experiment, without aiming for it to be merged - it will be tested with the same level of scrutiny as production releases. Found a new memory allocator, a new compression library, a new hash table, a data format, or a sorting algorithm? - bring it to ClickHouse, and it will expose it inside-out
Wow
- ClickHouse dev here, but this is true. ClickHouse contributed finding several bugs on our third-party libs (jemalloc, librdkafka for 100%, there much more, but I only worked on these), in linux kernel and basically everywhere. We have very rigorous fuzzers (yes, multiple fuzzers on multiple levels), running tests in insane number of configurations. I think the last number I heard a year ago is around 400 hours for a complete CI run for a single commit (not PR, but commit). So yeah, pretty insane, in the good way.
- ClickHouse replacing Loki finally made our observability stack feel 'right'. It really is a powerhouse for logs and general analytical queries.
- How do you use it for visualization? Do you use ClickStack? or something else?
- Still via Grafana. I ran it side-by-side with Loki and despite trying to optimise Loki and using ClickHouse out of the box - it really was shocking how much faster ClickHouse was for every single query (e.g. in the last 12 hours give my the frequency of logs with a particular JSON event or even "find this log entry, then join back and find the number of times a different entry appears within the same correlation_id)
- What does the layout in click house look like? Do the input logs need to have a very defined structure?
- Not really, ClickHouse is super forgiving so you can do something like:
ClickHouse is extremely performant even in the cases of e.g.: SELECT count(*) FROM `events` WHERE `raw` LIKE '%hello world%'CREATE TABLE default.events ( `timestamp` DateTime `event` String -- e.g. 'product.updated' or empty/null `message` -- human readable message `raw` -- the raw message - this is very useful when pushing logs that aren't JSON - you just let the `event` be null and dump the entire message here ) ENGINE = MergeTree PARTITION BY toDate(timestamp) ORDER BY (timestamp, event) TTL timestamp + toIntervalMonth(6)Of course, the more columns you splat out (e.g. like correlation_id, user_id, order_id, etc) the better you can index and expect those queries to perform but in general I don't bother outside the obvious core domain ones (exampled above), the performance is so good that unindexed queries are significantly faster than indexed queries in Loki. I have reached the point where I JSON extract on-the-fly for the WHERE clause with very large queries with no meaningful performance issues.
- Interesting, so you can bind a Clickhouse table as an extension to Grafana? Would you make a little Gist / post about it to show?
- You only need the plugin: https://clickhouse.com/docs/observability/grafana - then you get basically everything natively.
- I have used SigNoz https://signoz.io/ for that
- Worth noting both hyperdx and maple too for other observability on clickhouse options. https://www.hyperdx.io/ https://maple.dev/
- It is sad they are afraid to mention on the page that "data processing for a web analytics system ... similar to Google Analytics" was actually something used in Yandex.
- Elsewhere on the page, they avoid mentioning Yandex. In fact, do they ever mention Yandex?
That’s probably not to advertise for that company. I don’t see why it’s sad?
- Clickhouse has been a game changer for some of the companies i have worked in the past. This reminds me of this podcast episode (1) from the Rust in Production pod about their Rust adoption.
- I've been using clickhouse for the last year for in-house analytics and found it a really pleasant experience, thanks for all the progress you've made
- Same. We replicated some data from Postgres, it was easy to set up, similar enough that the transition was trivial, and really good performance out of the box. One of those good "use the right tool for the job" experiences.
- We use Clickhouse in a rails app for our customer facing dashboard analytics, logging, and datalake type stuff where Postgres is too heavy and expensive. The web admin panel they built is great and we’ve had solid performance.
- clickhouse is the low key amazing tech people are busy using instead of posting about. keep it up!
- If your data is too big for postgres, it seems like moving straight to Clickhouse is the best option. We have been through an whole array of distributed database technologies, and Clickhouse might be first one that doesn't have too many compromises.
- What do you mean?
Postrgesql is a relational and row based db, ClickHouse is columnar
Clickhouse doesn’t replace postgresql:
- This is a extremely common issue that happens in growing firms.
You start off with everything in Postgres, it makes the most sense. Soon you realize some tables are growing really huge - usually some sort of time-series or log data reaching 10TB+. You can no longer fit it in one node. You can try you luck with some sharding extensions, but they add complexity to upgrades.
In that case it makes total sense to move these large tables off Postgres, and I think Clickhouse is a straight up replacement here. You can still keep your relational heavy tables in Postgres.
Yes it affects you ability to cleanly join data, and guarantee 100% consistency. With some smart application code, and schema design, you can replace parts of Postgres with Clickhouse for the big data problem.
- Sai from ClickHouse here. Totally with you here, ClickHouse isn't a replacement for Postgres. Most use-cases are co-existence - Postgres for OLTP and ClickHouse for OLAP, basically right tool for the right job situation. Both are purpose-built technologies with a similar OSS ethos/story. Btw on an interesting co-incidence, Postgres turned 30 this year and ClickHouse turned 10.
Above is exactly why we are embracing the Postgres + ClickHouse stack and are investing heavily to make workflows across both these DBs very easy for developers - PeerDB for native CDC, pg_clickhouse extension for querying CH from PG, pg_stat_ch for query PG observability from ClickHouse and more such are planned for future. And recently we also announced ClickHouse Managed Postgres which pacakages this entire stack as a fully managed service https://clickhouse.com/cloud/postgres
- You can keep "columnar" data in a row based database like postgres, it's just more expensive. But with little data that's fine and reduces infrastructural complexity. When you reach too much data it gets to a point where you then actually want to use the correct database for your usecase.
- Not to mention ACID and CAP and all that. I use clickhouse AND postgres. Clickhouse is not a replacement for postgres at all.
- 10 Years! quite a long journey, specailly observeability part is need of hour
- Clickhouse is *really* gatekeeping the "zero copy replication" where you store data on object-storage and have high availability from the open source version.
- This is the main driver for their cloud ;-)
- I think that is just the nature of the open core business - but like most such businesses, they're not very clear about how that is what they are, pretending to be open source business instead.
- Vc funded with recent rounds so 10 years hasn’t been enough time to make money
- How? Have you tried contributing a reasonable implementation with test coverage and it was rejected?
- what are you guys using it for other than collecting analytics?
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- The query speed deserves the praise, but the JSON ingestion path has quiet footguns nobody mentions here. Every numeric column comes back as a string over JSONEachRow, so a forgotten Number() cast silently turns arithmetic into string concatenation, and with input_format_skip_unknown_fields enabled a single typo in a column name drops that field with no error at all. Worth wiring an assertion that inserts a row and reads it back into CI before trusting the dashboards.
- We’ve done our JSON ingestion by keeping a schema in the app for all the types we expect, and injecting the types into the query builder.
Then as needed we have materialized columns on our different tables.
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