Databases and question engines, together with Amazon Redshift, usually depend on totally different statistics concerning the underlying knowledge to find out the handiest method to execute a question, such because the variety of distinct values and which values have low selectivity. When Amazon Redshift receives a question, corresponding to
the question planner makes use of statistics to make an informed guess on the simplest technique to load and course of knowledge from storage. Extra statistics concerning the underlying knowledge can usually assist a question planner choose a plan that results in the most effective question efficiency, however this could require a tradeoff among the many value of computing, storing, and sustaining statistics, and may require further question planning time.
Information lakes are a strong structure to arrange knowledge for analytical processing, as a result of they let builders use environment friendly analytical columnar codecs like Apache Parquet, whereas letting them proceed to change the form of their knowledge as their functions evolve with open desk codecs like Apache Iceberg. One problem with knowledge lakes is that they don’t all the time have statistics about their underlying knowledge, making it tough for question engines to find out the optimum execution path. This could result in points, together with gradual queries and surprising modifications in question efficiency.
In 2024, Amazon Redshift clients queried over 77 EB (exabytes) of information residing in knowledge lakes. Given this utilization, the Amazon Redshift staff works to innovate on knowledge lake question efficiency to assist clients effectively entry their open knowledge to get close to real-time insights to make essential enterprise selections. In 2024, Amazon Redshift launched a number of options that enhance question efficiency for knowledge lakes, together with quicker question instances when a knowledge lake doesn’t have statistics. With Amazon Redshift patch 190, the TPC-DS 3TB benchmark confirmed an general 2x question efficiency enchancment on Apache Iceberg tables with out statistics, together with TPC-DS Question #72, which improved by 125 instances from 690 seconds to five.5 seconds.
On this put up, we first briefly overview how planner statistics are collected and what affect they’ve on queries. Then, we focus on Amazon Redshift options that ship optimum plans on Iceberg tables and Parquet knowledge even with the dearth of statistics. Lastly, we overview some instance queries that now execute quicker due to these newest Amazon Redshift improvements.
Stipulations
The benchmarks on this put up have been run utilizing the next atmosphere:
- Amazon Redshift Serverless with a base capability of 88 RPU (Amazon Redshift processing unit)
- The Cloud Information Warehouse Benchmark derived from the TPC-DS 3TB dataset. The next tables have been partitioned on this dataset (the remaining have been unpartitioned):
catalog_returns
oncr_returned_date_sk
catalog_sales
oncs_sold_date_sk
store_returns
onsr_returned_date_sk
store_sales
onss_sold_date_sk
web_returns
onwr_returned_date_sk
web_sales
onws_sold_date_sk
stock
oninv_date_sk
For extra info on loading the Cloud Information Warehouse Benchmark into your Amazon Redshift Serverless workgroup, see the Cloud Information Warehouse Benchmark documentation.
Now, let’s overview how database statistics work and the way they affect question efficiency.
Overview of the affect of planner statistics on question efficiency
To know why database statistics are necessary, first let’s overview what a question planner does. A question planner is the mind of a database: if you ship a question to a database, the question planner should decide probably the most environment friendly method to load and compute all the knowledge required to reply the question. Having details about the underlying dataset, corresponding to statistics concerning the variety of rows in a dataset, or the distribution of information, may help the question planner generate an optimum plan for retrieving the info. Amazon Redshift makes use of statistics concerning the underlying knowledge in tables and columns statistics to find out learn how to construct an optimum question execution path.
Let’s see how this works in an instance. Take into account the next question to find out the highest 5 gross sales dates in December 2024 for shops in North America:
On this question, the question planner has to contemplate a number of components, together with:
- Which desk is bigger,
shops
orreceipts
? Am I capable of question the smaller desk first to cut back the quantity of looking on the bigger desk? - Which returns extra rows,
receipts.insert_date BETWEEN '2024-12-01' AND '2024-12-31'
orshops.area = 'NAMER'
? - Is there any partitioning on the tables? Can I search over a smaller set of information to hurry up the question?
Having details about the underlying knowledge may help to generate an optimum question plan. For instance, shops.area = 'NAMER'
may solely return a number of rows (that’s, it’s extremely selective), which means it’s extra environment friendly to execute that step of the question first earlier than filtering via the receipts
desk. What helps a question planner make this resolution is the statistics obtainable on columns and tables.
Desk statistics (also referred to as planner statistics) present a snapshot of the info obtainable in a desk to assist the question planner make an knowledgeable resolution on execution methods. Databases acquire desk statistics via sampling, which includes reviewing a subset of rows to find out the general distribution of information. The standard of statistics, together with the freshness of information, can considerably affect a question plan, which is why databases will reanalyze and regenerate statistics after a sure threshold of the underlying knowledge modifications.
Amazon Redshift helps a number of desk and column degree statistics to help in constructing question plans. These embrace:
Statistic | What it’s | Influence | Question plan affect |
Variety of rows (numrows) | Variety of rows in a desk | Estimates the general dimension of question outcomes and JOIN sizes | Choices on JOIN ordering and algorithms, and useful resource allocation |
Variety of distinct values (NDV) | Variety of distinctive values in a column | Estimates selectivity, that’s, what number of rows can be returned from predicates (for instance, WHERE clause) and the dimensions of JOIN outcomes | Choices on JOIN ordering and algorithms |
NULL depend | Variety of NULL values in a column | Estimates variety of rows eradicated by IS NULL or IS NOT NULL | Choices on filter pushdown (that’s, what nodes execute a question) and JOIN methods |
Min/max values | Smallest and largest values in a column | Helps range-based optimizations (for instance, WHERE x BETWEEN 10 AND 20) | Choices on JOIN order and algorithms, and useful resource allocation |
Column dimension | Complete dimension of column knowledge in reminiscence | Estimates general dimension of scans (studying knowledge), JOINs, and question outcomes | Choices on JOIN algorithms and ordering |
Open codecs corresponding to Apache Parquet don’t have any of the previous statistics by default and desk codecs like Apache Iceberg have a subset of the previous statistics corresponding to variety of rows, NULL depend and min/max values. This could make it difficult for question engines to plan environment friendly queries. Amazon Redshift has added improvements that enhance general question efficiency on knowledge lake knowledge saved in Apache Iceberg and Apache Parquet codecs even when all or partial desk or column-level statistics are unavailable. The following part critiques options in Amazon Redshift that assist enhance question efficiency on knowledge lakes even when desk statistics aren’t current or are restricted.
Amazon Redshift options when knowledge lakes don’t have statistics for Iceberg tables and Parquet
As talked about beforehand, there are various instances the place tables saved in knowledge lakes lack statistics, which creates challenges for question engines to make knowledgeable selections on selecting the right question plan. Nevertheless, Amazon Redshift has launched a sequence of improvements that enhance efficiency for queries on knowledge lakes even when there aren’t desk statistics obtainable. On this part, we overview a few of these enhancements and the way they affect your question efficiency.
Dynamic partition elimination via distributed joins
Dynamic partition elimination is a question optimization approach that enables Amazon Redshift to skip studying knowledge unnecessarily throughout question execution on a partitioned desk. It does this by figuring out which partitions of a desk are related to a question and solely scanning these partitions, considerably lowering the quantity of information that must be processed.
For instance, think about a schema that has two tables:
gross sales
(reality desk) with columns:sale_id
product_id
sale_amount
sale_date
merchandise
(dimension desk) with columns:product_id
product_name
class
The gross sales desk is partitioned by product_id
. Within the following instance, you wish to discover the entire gross sales quantity for merchandise within the Electronics class in December 2024.
SQL question:
How Amazon Redshift improves this question:
- Filter on dimension desk:
- The question filters the merchandise desk to solely embrace merchandise within the
Electronics
class.
- The question filters the merchandise desk to solely embrace merchandise within the
- Establish related partitions:
- With the brand new enhancements, Amazon Redshift analyzes this filter and determines which partitions of the gross sales desk have to be scanned.
- It appears on the
product_id
values within the merchandise desk that match theElectronics
class and solely scans these particular partitions within the gross sales desk. - As a substitute of scanning the whole gross sales desk, Amazon Redshift solely scans the partitions that comprise gross sales knowledge for electronics merchandise.
- This considerably reduces the quantity of information Amazon Redshift must course of, making the question quicker.
Beforehand, this optimization was solely utilized on broadcast joins when all youngster joins beneath the be part of have been additionally broadcast joins. The Amazon Redshift staff prolonged this functionality to work on all broadcast joins, regardless if the kid joins beneath them are broadcast. This permits extra queries to learn from dynamic partition elimination, corresponding to TPC-DS Q64 and Q75 for Iceberg tables, and TPC-DS Q25 in Parquet.
Metadata caching for Iceberg tables
The Iceberg open desk format employs a two-layer construction: a metadata layer and a knowledge layer. The metadata layer has three ranges of recordsdata (metadata.json
, manifest lists, and manifests), which permits for efficiency options corresponding to quicker scan planning and superior knowledge filtering. Amazon Redshift makes use of the Iceberg metadata construction to effectively determine the related knowledge recordsdata to scan, utilizing partition worth ranges and column-level statistics and eliminating pointless knowledge processing.
The Amazon Redshift staff noticed that Iceberg metadata is often fetched a number of instances each inside and throughout queries, resulting in potential efficiency bottlenecks. We applied an in-memory LRU (least just lately used) cache for parsed metadata, manifest checklist recordsdata, and manifest recordsdata. This cache retains probably the most just lately used metadata in order that we keep away from fetching them repeatedly from Amazon Easy Storage Service (Amazon S3) throughout queries. This caching has helped with general efficiency enhancements of as much as 2% in a TPC-DS 3TB workload. We observe greater than 90% cache hits for these metadata constructions, lowering the iceberg metadata processing instances significantly.
Stats inference for Iceberg tables
As talked about beforehand, the Apache Iceberg file format comes with some statistics corresponding to variety of rows, variety of nulls, column min/max values and column storage dimension within the metadata recordsdata referred to as manifest recordsdata. Nevertheless, they don’t all the time present all of the statistics that we’d like particularly common width which is necessary for the cost-based optimizer utilized by Amazon Redshift.
We delivered a function to estimate common width for variable size columns corresponding to string and binary from Iceberg metadata. We do that by utilizing the column storage dimension and the variety of rows, and we regulate for column compression when vital. By inferring these further statistics, our optimizer could make extra correct value estimates for various question plans. This stats inference function, launched in Amazon Redshift patch 186, provides as much as a 7% enchancment within the TPC-DS benchmarks. We’ve additionally enhanced Amazon Redshift optimizer’s value mannequin. The enhancements embrace planner optimizations that enhance the estimations of the totally different be part of distribution methods to keep in mind the networking value of distributing the info between the nodes of an Amazon Redshift cluster. The enhancements additionally embrace enhancements to Amazon Redshift question optimizer. These enhancements, that are a fruits of a number of years of analysis, testing, and implementation demonstrated as much as a forty five% enchancment in a set of TPC-DS benchmarks.
Instance: TPC-DS benchmark highlights on Amazon Redshift no stats queries on knowledge lakes
One method to measure knowledge lake question efficiency for Amazon Redshift is utilizing the TPC-DS benchmark. The TPC-DS benchmark is a standardized benchmark designed to check resolution help methods, particularly concurrently accessed methods the place queries can vary from shorter analytical queries (for instance, reporting, dashboards) to longer working ETL-style queries for transferring and remodeling knowledge into a distinct system. For these exams, we used the Cloud Information Warehouse Benchmark derived from the TPC-DS 3TB to align our testing with many frequent analytical workloads, and supply a typical set of comparisons to measure enhancements to Amazon Redshift knowledge lake question efficiency.
We ran these exams throughout knowledge saved each within the Apache Parquet knowledge format, along with Apache Iceberg tables with knowledge in Apache Parquet recordsdata. As a result of we targeted these exams on out-of-the-box efficiency, none of those knowledge units had any desk statistics obtainable. We carried out these exams utilizing the desired Amazon Redshift patch variations within the following desk, and used Amazon Redshift Serverless with 88 RPU with none further tuning. The next outcomes characterize a energy run, which is the sum of how lengthy it took to run all of the exams, from a heat run, that are the outcomes of the facility run after no less than one execution of the workload:
P180 (12/2023) | P190 (5/2025) | |
Apache Parquet (solely numrows) | 7,796 | 3,553 |
Apache Iceberg (out-of-the-box, no tuning) | 4,411 | 1,937 |
We noticed notable enhancements in a number of question run instances. For this put up, we give attention to the enhancements we noticed in question 82:
On this question, we’re looking for the highest 100 promoting manufacturers from a particular supervisor in December 2002, which represents a sometimes dashboard-style analytical question. In our energy run, we noticed a discount in question time from 512 seconds to 18.1 seconds for Apache Parquet knowledge, or a 28.2x enchancment in efficiency. The accelerated question efficiency for this question in a heat run is as a result of enhancements to the cost-based optimizer and dynamic partition elimination.
We noticed question efficiency enhancements throughout most of the queries discovered within the Cloud Information Warehouse Benchmark derived from the TPC-DS take a look at suite. We encourage you to strive your individual efficiency exams utilizing Amazon Redshift Serverless in your knowledge lake knowledge to see what efficiency good points you may observe.
Cleanup
In the event you ran these exams by yourself and don’t want the sources anymore, you’ll have to delete your Amazon Redshift Serverless workgroup. See Shutting down and deleting a cluster. In the event you don’t have to retailer the Cloud Information Warehouse Benchmark knowledge in your S3 bucket anymore, see Deleting Amazon S3 objects.
Conclusion
On this put up, you discovered how cost-based optimizers for databases work, and the way statistical details about your knowledge may help Amazon Redshift execute queries extra effectively. You may optimize question efficiency for Iceberg tables by robotically gathering Puffin statistics, which lets Amazon Redshift use these current improvements to extra effectively question your knowledge. Giving extra data to your question planner—the mind of Amazon Redshift—helps to supply extra predictable efficiency and lets you additional scale the way you work together together with your knowledge in your knowledge lakes and knowledge lakehouses.
In regards to the authors
Martin Milenkoski is a Software program Improvement Engineer on the Amazon Redshift staff, at present specializing in knowledge lake efficiency and question optimization. Martin holds an MSc in Pc Science from the École Polytechnique Fédérale de Lausanne.
Kalaiselvi Kamaraj is a Sr. Software program Improvement Engineer on the Amazon Redshift staff. She has labored on a number of tasks inside the Amazon Redshift Question processing staff and at present specializing in efficiency associated tasks for Amazon Redshift DataLake and question optimizer.
Jonathan Katz is a Principal Product Supervisor – Technical on the AWS Analytics staff and is predicated in New York. He’s a Core Staff member of the open-source PostgreSQL undertaking and an energetic open-source contributor, together with to the pgvector undertaking.