Hi Todd, Are you saying that your earlier comment below is not longer valid with Impala 2.11 and if I replicate a table to all our Kudu nodes Impala can benefit from this?
" *It's worth noting that, even if your table is replicated, Impala's planner is unaware of this fact and it will give the same plan regardless. That is to say, rather than every node scanning its local copy, instead a single node will perform the whole scan (assuming it's a small table) and broadcast it from there within the scope of a single query. So, I don't think you'll see any performance improvements on Impala queries by attempting something like an extremely high replication count.* *I could see bumping the replication count to 5 for these tables since the extra storage cost is low and it will ensure higher availability of the important central tables, but I'd be surprised if there is any measurable perf impact.* " On Mon, Jul 23, 2018 at 9:46 AM Todd Lipcon <[email protected]> wrote: > Are you on the latest release of Impala? It switched from using Thrift for > RPC to a new implementation (actually borrowed from kudu) which might help > broadcast performance a bit. > > Todd > > On Mon, Jul 23, 2018, 6:43 AM Boris Tyukin <[email protected]> wrote: > >> sorry to revive the old thread but I am curious if there is a good way to >> speed up requests to frequently used tables in Kudu. >> >> On Thu, Apr 12, 2018 at 8:19 AM Boris Tyukin <[email protected]> >> wrote: >> >>> bummer..After reading your guys conversation, I wish there was an easier >>> way...we will have the same issue as we have a few dozens of tables which >>> are used very frequently in joins and I was hoping there was an easy way to >>> replicate them on most of the nodes to avoid broadcasts every time >>> >>> On Thu, Apr 12, 2018 at 7:26 AM, Clifford Resnick < >>> [email protected]> wrote: >>> >>>> The table in our case is 12x hashed and ranged by month, so the >>>> broadcasts were often to all (12) nodes. >>>> >>>> On Apr 12, 2018 12:58 AM, Mauricio Aristizabal <[email protected]> >>>> wrote: >>>> Sorry I left that out Cliff, FWIW it does seem to have been broadcast.. >>>> >>>> >>>> >>>> Not sure though how a shuffle would be much different from a broadcast >>>> if entire table is 1 file/block in 1 node. >>>> >>>> On Wed, Apr 11, 2018 at 8:52 PM, Cliff Resnick <[email protected]> >>>> wrote: >>>> >>>>> From the screenshot it does not look like there was a broadcast of the >>>>> dimension table(s), so it could be the case here that the multiple smaller >>>>> sends helps. Our dim tables are generally in the single-digit millions and >>>>> Impala chooses to broadcast them. Since the fact result cardinality is >>>>> always much smaller, we've found that forcing a [shuffle] dimension join >>>>> is >>>>> actually faster since it only sends dims once rather than all to all >>>>> nodes. >>>>> The degenerative performance of broadcast is especially obvious when the >>>>> query returns zero results. I don't have much experience here, but it does >>>>> seem that Kudu's efficient predicate scans can sometimes "break" Impala's >>>>> query plan. >>>>> >>>>> -Cliff >>>>> >>>>> On Wed, Apr 11, 2018 at 5:41 PM, Mauricio Aristizabal < >>>>> [email protected]> wrote: >>>>> >>>>>> @Todd not to belabor the point, but when I suggested breaking up >>>>>> small dim tables into multiple parquet files (and in this thread's >>>>>> context >>>>>> perhaps partition kudu table, even if small, into multiple tablets), it >>>>>> was >>>>>> to speed up joins/exchanges, not to parallelize the scan. >>>>>> >>>>>> For example recently we ran into this slow query where the 14M record >>>>>> dimension fit into a single file & block, so it got scanned on a single >>>>>> node though still pretty quickly (300ms), however it caused the join to >>>>>> take 25+ seconds and bogged down the entire query. See highlighted >>>>>> fragment and its parent. >>>>>> >>>>>> So we broke it into several small files the way I described in my >>>>>> previous post, and now join and query are fast (6s). >>>>>> >>>>>> -m >>>>>> >>>>>> >>>>>> >>>>>> >>>>>> >>>>>> On Fri, Mar 16, 2018 at 3:55 PM, Todd Lipcon <[email protected]> >>>>>> wrote: >>>>>> >>>>>>> I suppose in the case that the dimension table scan makes a >>>>>>> non-trivial portion of your workload time, then yea, parallelizing the >>>>>>> scan >>>>>>> as you suggest would be beneficial. That said, in typical analytic >>>>>>> queries, >>>>>>> scanning the dimension tables is very quick compared to scanning the >>>>>>> much-larger fact tables, so the extra parallelism on the dim table scan >>>>>>> isn't worth too much. >>>>>>> >>>>>>> -Todd >>>>>>> >>>>>>> On Fri, Mar 16, 2018 at 2:56 PM, Mauricio Aristizabal < >>>>>>> [email protected]> wrote: >>>>>>> >>>>>>>> @Todd I know working with parquet in the past I've seen small >>>>>>>> dimensions that fit in 1 single file/block limit parallelism of >>>>>>>> join/exchange/aggregation nodes, and I've forced those dims to spread >>>>>>>> across 20 or so blocks by leveraging SET PARQUET_FILE_SIZE=8m; or >>>>>>>> similar >>>>>>>> when doing INSERT OVERWRITE to load them, which then allows these >>>>>>>> operations to parallelize across that many nodes. >>>>>>>> >>>>>>>> Wouldn't it be useful here for Cliff's small dims to be partitioned >>>>>>>> into a couple tablets to similarly improve parallelism? >>>>>>>> >>>>>>>> -m >>>>>>>> >>>>>>>> On Fri, Mar 16, 2018 at 2:29 PM, Todd Lipcon <[email protected]> >>>>>>>> wrote: >>>>>>>> >>>>>>>>> On Fri, Mar 16, 2018 at 2:19 PM, Cliff Resnick <[email protected]> >>>>>>>>> wrote: >>>>>>>>> >>>>>>>>>> Hey Todd, >>>>>>>>>> >>>>>>>>>> Thanks for that explanation, as well as all the great work you're >>>>>>>>>> doing -- it's much appreciated! I just have one last follow-up >>>>>>>>>> question. >>>>>>>>>> Reading about BROADCAST operations (Kudu, Spark, Flink, etc. ) it >>>>>>>>>> seems the >>>>>>>>>> smaller table is always copied in its entirety BEFORE the predicate >>>>>>>>>> is >>>>>>>>>> evaluated. >>>>>>>>>> >>>>>>>>> >>>>>>>>> That's not quite true. If you have a predicate on a joined column, >>>>>>>>> or on one of the columns in the joined table, it will be pushed down >>>>>>>>> to the >>>>>>>>> "scan" operator, which happens before the "exchange". In addition, >>>>>>>>> there is >>>>>>>>> a feature called "runtime filters" that can push dynamically-generated >>>>>>>>> filters from one side of the exchange to the other. >>>>>>>>> >>>>>>>>> >>>>>>>>>> But since the Kudu client provides a serialized scanner as part >>>>>>>>>> of the ScanToken API, why wouldn't Impala use that instead if it >>>>>>>>>> knows that >>>>>>>>>> the table is Kudu and the query has any type of predicate? Perhaps >>>>>>>>>> if I >>>>>>>>>> hash-partition the table I could maybe force this (because that >>>>>>>>>> complicates >>>>>>>>>> a BROADCAST)? I guess this is really a question for Impala but >>>>>>>>>> perhaps >>>>>>>>>> there is a more basic reason. >>>>>>>>>> >>>>>>>>> >>>>>>>>> Impala could definitely be smarter, just a matter of programming >>>>>>>>> Kudu-specific join strategies into the optimizer. Today, the optimizer >>>>>>>>> isn't aware of the unique properties of Kudu scans vs other storage >>>>>>>>> mechanisms. >>>>>>>>> >>>>>>>>> -Todd >>>>>>>>> >>>>>>>>> >>>>>>>>>> >>>>>>>>>> -Cliff >>>>>>>>>> >>>>>>>>>> On Fri, Mar 16, 2018 at 4:10 PM, Todd Lipcon <[email protected]> >>>>>>>>>> wrote: >>>>>>>>>> >>>>>>>>>>> On Fri, Mar 16, 2018 at 12:30 PM, Clifford Resnick < >>>>>>>>>>> [email protected]> wrote: >>>>>>>>>>> >>>>>>>>>>>> I thought I had read that the Kudu client can configure a scan >>>>>>>>>>>> for CLOSEST_REPLICA and assumed this was a way to take advantage >>>>>>>>>>>> of data >>>>>>>>>>>> collocation. >>>>>>>>>>>> >>>>>>>>>>> >>>>>>>>>>> Yea, when a client uses CLOSEST_REPLICA it will read a local one >>>>>>>>>>> if available. However, that doesn't influence the higher level >>>>>>>>>>> operation of >>>>>>>>>>> the Impala (or Spark) planner. The planner isn't aware of the >>>>>>>>>>> replication >>>>>>>>>>> policy, so it will use one of the existing supported JOIN >>>>>>>>>>> strategies. Given >>>>>>>>>>> statistics, it will choose to broadcast the small table, which >>>>>>>>>>> means that >>>>>>>>>>> it will create a plan that looks like: >>>>>>>>>>> >>>>>>>>>>> >>>>>>>>>>> +-------------------------+ >>>>>>>>>>> | | >>>>>>>>>>> +---------->build JOIN | >>>>>>>>>>> | | | >>>>>>>>>>> | | probe | >>>>>>>>>>> +--------------+ +-------------------------+ >>>>>>>>>>> | | | >>>>>>>>>>> | Exchange | | >>>>>>>>>>> +----+ (broadcast | | >>>>>>>>>>> | | | | >>>>>>>>>>> | +--------------+ | >>>>>>>>>>> | | >>>>>>>>>>> +---------+ | >>>>>>>>>>> | | >>>>>>>>>>> +-----------------------+ >>>>>>>>>>> | SCAN | | >>>>>>>>>>> | >>>>>>>>>>> | KUDU | | SCAN (other side) >>>>>>>>>>> | >>>>>>>>>>> | | | >>>>>>>>>>> | >>>>>>>>>>> +---------+ >>>>>>>>>>> +-----------------------+ >>>>>>>>>>> >>>>>>>>>>> (hopefully the ASCII art comes through) >>>>>>>>>>> >>>>>>>>>>> In other words, the "scan kudu" operator scans the table once, >>>>>>>>>>> and then replicates the results of that scan into the JOIN >>>>>>>>>>> operator. The >>>>>>>>>>> "scan kudu" operator of course will read its local copy, but it >>>>>>>>>>> will still >>>>>>>>>>> go through the exchange process. >>>>>>>>>>> >>>>>>>>>>> For the use case you're talking about, where the join is just >>>>>>>>>>> looking up a single row by PK in a dimension table, ideally we'd be >>>>>>>>>>> using >>>>>>>>>>> an altogether different join strategy such as nested-loop join, >>>>>>>>>>> with the >>>>>>>>>>> inner "loop" actually being a Kudu PK lookup, but that strategy >>>>>>>>>>> isn't >>>>>>>>>>> implemented by Impala. >>>>>>>>>>> >>>>>>>>>>> -Todd >>>>>>>>>>> >>>>>>>>>>> >>>>>>>>>>> >>>>>>>>>>>> If this exists then how far out of context is my understanding >>>>>>>>>>>> of it? Reading about HDFS cache replication, I do know that Impala >>>>>>>>>>>> will >>>>>>>>>>>> choose a random replica there to more evenly distribute load. But >>>>>>>>>>>> especially compared to Kudu upsert, managing mutable data using >>>>>>>>>>>> Parquet is >>>>>>>>>>>> painful. So, perhaps to sum thing up, if nearly 100% of my >>>>>>>>>>>> metadata scan >>>>>>>>>>>> are single Primary Key lookups followed by a tiny broadcast then >>>>>>>>>>>> am I >>>>>>>>>>>> really just splitting hairs performance-wise between Kudu and >>>>>>>>>>>> HDFS-cached >>>>>>>>>>>> parquet? >>>>>>>>>>>> >>>>>>>>>>>> From: Todd Lipcon <[email protected]> >>>>>>>>>>>> Reply-To: "[email protected]" <[email protected]> >>>>>>>>>>>> Date: Friday, March 16, 2018 at 2:51 PM >>>>>>>>>>>> >>>>>>>>>>>> To: "[email protected]" <[email protected]> >>>>>>>>>>>> Subject: Re: "broadcast" tablet replication for kudu? >>>>>>>>>>>> >>>>>>>>>>>> It's worth noting that, even if your table is replicated, >>>>>>>>>>>> Impala's planner is unaware of this fact and it will give the same >>>>>>>>>>>> plan >>>>>>>>>>>> regardless. That is to say, rather than every node scanning its >>>>>>>>>>>> local copy, >>>>>>>>>>>> instead a single node will perform the whole scan (assuming it's a >>>>>>>>>>>> small >>>>>>>>>>>> table) and broadcast it from there within the scope of a single >>>>>>>>>>>> query. So, >>>>>>>>>>>> I don't think you'll see any performance improvements on Impala >>>>>>>>>>>> queries by >>>>>>>>>>>> attempting something like an extremely high replication count. >>>>>>>>>>>> >>>>>>>>>>>> I could see bumping the replication count to 5 for these tables >>>>>>>>>>>> since the extra storage cost is low and it will ensure higher >>>>>>>>>>>> availability >>>>>>>>>>>> of the important central tables, but I'd be surprised if there is >>>>>>>>>>>> any >>>>>>>>>>>> measurable perf impact. >>>>>>>>>>>> >>>>>>>>>>>> -Todd >>>>>>>>>>>> >>>>>>>>>>>> On Fri, Mar 16, 2018 at 11:35 AM, Clifford Resnick < >>>>>>>>>>>> [email protected]> wrote: >>>>>>>>>>>> >>>>>>>>>>>>> Thanks for that, glad I was wrong there! Aside from >>>>>>>>>>>>> replication considerations, is it also recommended the number of >>>>>>>>>>>>> tablet >>>>>>>>>>>>> servers be odd? >>>>>>>>>>>>> >>>>>>>>>>>>> I will check forums as you suggested, but from what I read >>>>>>>>>>>>> after searching is that Impala relies on user configured caching >>>>>>>>>>>>> strategies >>>>>>>>>>>>> using HDFS cache. The workload for these tables is very light >>>>>>>>>>>>> write, maybe >>>>>>>>>>>>> a dozen or so records per hour across 6 or 7 tables. The size of >>>>>>>>>>>>> the tables >>>>>>>>>>>>> ranges from thousands to low millions of rows so so >>>>>>>>>>>>> sub-partitioning would >>>>>>>>>>>>> not be required. So perhaps this is not a typical use-case but I >>>>>>>>>>>>> think it >>>>>>>>>>>>> could work quite well with kudu. >>>>>>>>>>>>> >>>>>>>>>>>>> From: Dan Burkert <[email protected]> >>>>>>>>>>>>> Reply-To: "[email protected]" <[email protected]> >>>>>>>>>>>>> Date: Friday, March 16, 2018 at 2:09 PM >>>>>>>>>>>>> To: "[email protected]" <[email protected]> >>>>>>>>>>>>> Subject: Re: "broadcast" tablet replication for kudu? >>>>>>>>>>>>> >>>>>>>>>>>>> The replication count is the number of tablet servers which >>>>>>>>>>>>> Kudu will host copies on. So if you set the replication level to >>>>>>>>>>>>> 5, Kudu >>>>>>>>>>>>> will put the data on 5 separate tablet servers. There's no >>>>>>>>>>>>> built-in >>>>>>>>>>>>> broadcast table feature; upping the replication factor is the >>>>>>>>>>>>> closest >>>>>>>>>>>>> thing. A couple of things to keep in mind: >>>>>>>>>>>>> >>>>>>>>>>>>> - Always use an odd replication count. This is important due >>>>>>>>>>>>> to how the Raft algorithm works. Recent versions of Kudu won't >>>>>>>>>>>>> even let >>>>>>>>>>>>> you specify an even number without flipping some flags. >>>>>>>>>>>>> - We don't test much much beyond 5 replicas. It *should* >>>>>>>>>>>>> work, but you may run in to issues since it's a relatively rare >>>>>>>>>>>>> configuration. With a heavy write workload and many replicas you >>>>>>>>>>>>> are even >>>>>>>>>>>>> more likely to encounter issues. >>>>>>>>>>>>> >>>>>>>>>>>>> It's also worth checking in an Impala forum whether it has >>>>>>>>>>>>> features that make joins against small broadcast tables better? >>>>>>>>>>>>> Perhaps >>>>>>>>>>>>> Impala can cache small tables locally when doing joins. >>>>>>>>>>>>> >>>>>>>>>>>>> - Dan >>>>>>>>>>>>> >>>>>>>>>>>>> On Fri, Mar 16, 2018 at 10:55 AM, Clifford Resnick < >>>>>>>>>>>>> [email protected]> wrote: >>>>>>>>>>>>> >>>>>>>>>>>>>> The problem is, AFIK, that replication count is not >>>>>>>>>>>>>> necessarily the distribution count, so you can't guarantee all >>>>>>>>>>>>>> tablet >>>>>>>>>>>>>> servers will have a copy. >>>>>>>>>>>>>> >>>>>>>>>>>>>> On Mar 16, 2018 1:41 PM, Boris Tyukin <[email protected]> >>>>>>>>>>>>>> wrote: >>>>>>>>>>>>>> I'm new to Kudu but we are also going to use Impala mostly >>>>>>>>>>>>>> with Kudu. We have a few tables that are small but used a lot. >>>>>>>>>>>>>> My plan is >>>>>>>>>>>>>> replicate them more than 3 times. When you create a kudu table, >>>>>>>>>>>>>> you can >>>>>>>>>>>>>> specify number of replicated copies (3 by default) and I guess >>>>>>>>>>>>>> you can put >>>>>>>>>>>>>> there a number, corresponding to your node count in cluster. The >>>>>>>>>>>>>> downside, >>>>>>>>>>>>>> you cannot change that number unless you recreate a table. >>>>>>>>>>>>>> >>>>>>>>>>>>>> On Fri, Mar 16, 2018 at 10:42 AM, Cliff Resnick < >>>>>>>>>>>>>> [email protected]> wrote: >>>>>>>>>>>>>> >>>>>>>>>>>>>>> We will soon be moving our analytics from AWS Redshift to >>>>>>>>>>>>>>> Impala/Kudu. One Redshift feature that we will miss is its ALL >>>>>>>>>>>>>>> Distribution, where a copy of a table is maintained on each >>>>>>>>>>>>>>> server. We >>>>>>>>>>>>>>> define a number of metadata tables this way since they are used >>>>>>>>>>>>>>> in nearly >>>>>>>>>>>>>>> every query. We are considering using parquet in HDFS cache for >>>>>>>>>>>>>>> these, and >>>>>>>>>>>>>>> Kudu would be a much better fit for the update semantics but we >>>>>>>>>>>>>>> are worried >>>>>>>>>>>>>>> about the additional contention. I'm wondering if having a >>>>>>>>>>>>>>> Broadcast, or >>>>>>>>>>>>>>> ALL, tablet replication might be an easy feature to add to Kudu? >>>>>>>>>>>>>>> >>>>>>>>>>>>>>> -Cliff >>>>>>>>>>>>>>> >>>>>>>>>>>>>> >>>>>>>>>>>>>> >>>>>>>>>>>>> >>>>>>>>>>>> >>>>>>>>>>>> >>>>>>>>>>>> -- >>>>>>>>>>>> Todd Lipcon >>>>>>>>>>>> Software Engineer, Cloudera >>>>>>>>>>>> >>>>>>>>>>>> >>>>>>>>>>> >>>>>>>>>>> >>>>>>>>>>> -- >>>>>>>>>>> Todd Lipcon >>>>>>>>>>> Software Engineer, Cloudera >>>>>>>>>>> >>>>>>>>>> >>>>>>>>>> >>>>>>>>> >>>>>>>>> >>>>>>>>> -- >>>>>>>>> Todd Lipcon >>>>>>>>> Software Engineer, Cloudera >>>>>>>>> >>>>>>>> >>>>>>>> >>>>>>>> >>>>>>>> -- >>>>>>>> *MAURICIO ARISTIZABAL* >>>>>>>> Architect - Business Intelligence + Data Science >>>>>>>> [email protected](m)+1 323 309 4260 <(323)%20309-4260> >>>>>>>> 223 E. De La Guerra St. | Santa Barbara, CA 93101 >>>>>>>> <https://maps.google.com/?q=223+E.+De+La+Guerra+St.+%7C+Santa+Barbara,+CA+93101&entry=gmail&source=g> >>>>>>>> >>>>>>>> Overview <http://www.impactradius.com/?src=slsap> | Twitter >>>>>>>> <https://twitter.com/impactradius> | Facebook >>>>>>>> <https://www.facebook.com/pages/Impact-Radius/153376411365183> | >>>>>>>> LinkedIn <https://www.linkedin.com/company/impact-radius-inc-> >>>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> -- >>>>>>> Todd Lipcon >>>>>>> Software Engineer, Cloudera >>>>>>> >>>>>> >>>>>> >>>>>> >>>>>> -- >>>>>> Mauricio Aristizabal >>>>>> Architect - Data Pipeline >>>>>> *M * 323 309 4260 >>>>>> *E *[email protected] | *W * https://impact.com >>>>>> <https://www.linkedin.com/company/608678/> >>>>>> <https://www.facebook.com/ImpactMarTech/> >>>>>> <https://twitter.com/impactmartech> >>>>>> >>>>> >>>>> >>>> >>>> >>>> -- >>>> Mauricio Aristizabal >>>> Architect - Data Pipeline >>>> *M * 323 309 4260 >>>> *E *[email protected] | *W * https://impact.com >>>> <https://www.linkedin.com/company/608678/> >>>> <https://www.facebook.com/ImpactMarTech/> >>>> <https://twitter.com/impactmartech> >>>> >>> >>>
