ClickHouse/docs/tools/output.md
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# What is ClickHouse? {#what-is-clickhouse}
ClickHouse is a column-oriented database management system (DBMS) for
online analytical processing of queries (OLAP).
In a “normal” row-oriented DBMS, data is stored in this order:
Row WatchID JavaEnable Title GoodEvent EventTime
----- ------------- ------------ -------------------- ----------- ---------------------
\#0 89354350662 1 Investor Relations 1 2016-05-18 05:19:20
\#1 90329509958 0 Contact us 1 2016-05-18 08:10:20
\#2 89953706054 1 Mission 1 2016-05-18 07:38:00
\#N ... ... ... ... ...
In other words, all the values related to a row are physically stored
next to each other.
Examples of a row-oriented DBMS are MySQL, Postgres, and MS SQL Server.
{: .grey }
In a column-oriented DBMS, data is stored like this:
Row: \#0 \#1 \#2 \#N
------------- --------------------- --------------------- --------------------- -----
WatchID: 89354350662 90329509958 89953706054 ...
JavaEnable: 1 0 1 ...
Title: Investor Relations Contact us Mission ...
GoodEvent: 1 1 1 ...
EventTime: 2016-05-18 05:19:20 2016-05-18 08:10:20 2016-05-18 07:38:00 ...
These examples only show the order that data is arranged in. The values
from different columns are stored separately, and data from the same
column is stored together.
Examples of a column-oriented DBMS: Vertica, Paraccel (Actian Matrix and
Amazon Redshift), Sybase IQ, Exasol, Infobright, InfiniDB, MonetDB
(VectorWise and Actian Vector), LucidDB, SAP HANA, Google Dremel, Google
PowerDrill, Druid, and kdb+. {: .grey }
Different orders for storing data are better suited to different
scenarios. The data access scenario refers to what queries are made, how
often, and in what proportion; how much data is read for each type of
query rows, columns, and bytes; the relationship between reading and
updating data; the working size of the data and how locally it is used;
whether transactions are used, and how isolated they are; requirements
for data replication and logical integrity; requirements for latency and
throughput for each type of query, and so on.
The higher the load on the system, the more important it is to customize
the system set up to match the requirements of the usage scenario, and
the more fine grained this customization becomes. There is no system
that is equally well-suited to significantly different scenarios. If a
system is adaptable to a wide set of scenarios, under a high load, the
system will handle all the scenarios equally poorly, or will work well
for just one or few of possible scenarios.
## Key Properties of the OLAP scenario {#key-properties-of-the-olap-scenario}
- The vast majority of requests are for read access.
- Data is updated in fairly large batches (\> 1000 rows), not by
single rows; or it is not updated at all.
- Data is added to the DB but is not modified.
- For reads, quite a large number of rows are extracted from the DB,
but only a small subset of columns.
- Tables are “wide,” meaning they contain a large number of columns.
- Queries are relatively rare (usually hundreds of queries per server
or less per second).
- For simple queries, latencies around 50 ms are allowed.
- Column values are fairly small: numbers and short strings (for
example, 60 bytes per URL).
- Requires high throughput when processing a single query (up to
billions of rows per second per server).
- Transactions are not necessary.
- Low requirements for data consistency.
- There is one large table per query. All tables are small, except for
one.
- A query result is significantly smaller than the source data. In
other words, data is filtered or aggregated, so the result fits in a
single servers RAM.
It is easy to see that the OLAP scenario is very different from other
popular scenarios (such as OLTP or Key-Value access). So it doesnt make
sense to try to use OLTP or a Key-Value DB for processing analytical
queries if you want to get decent performance. For example, if you try
to use MongoDB or Redis for analytics, you will get very poor
performance compared to OLAP databases.
## Why Column-Oriented Databases Work Better in the OLAP Scenario {#why-column-oriented-databases-work-better-in-the-olap-scenario}
Column-oriented databases are better suited to OLAP scenarios: they are
at least 100 times faster in processing most queries. The reasons are
explained in detail below, but the fact is easier to demonstrate
visually:
**Row-oriented DBMS**
![Row-oriented](images/row_oriented.gif#)
**Column-oriented DBMS**
![Column-oriented](images/column_oriented.gif#)
See the difference?
### Input/output {#inputoutput}
1. For an analytical query, only a small number of table columns need
to be read. In a column-oriented database, you can read just the
data you need. For example, if you need 5 columns out of 100, you
can expect a 20-fold reduction in I/O.
2. Since data is read in packets, it is easier to compress. Data in
columns is also easier to compress. This further reduces the I/O
volume.
3. Due to the reduced I/O, more data fits in the system cache.
For example, the query “count the number of records for each advertising
platform” requires reading one “advertising platform ID” column, which
takes up 1 byte uncompressed. If most of the traffic was not from
advertising platforms, you can expect at least 10-fold compression of
this column. When using a quick compression algorithm, data
decompression is possible at a speed of at least several gigabytes of
uncompressed data per second. In other words, this query can be
processed at a speed of approximately several billion rows per second on
a single server. This speed is actually achieved in practice.
<details markdown="1">
<summary>Example</summary>
$ clickhouse-client
ClickHouse client version 0.0.52053.
Connecting to localhost:9000.
Connected to ClickHouse server version 0.0.52053.
:) SELECT CounterID, count() FROM hits GROUP BY CounterID ORDER BY count() DESC LIMIT 20
SELECT
CounterID,
count()
FROM hits
GROUP BY CounterID
ORDER BY count() DESC
LIMIT 20
┌─CounterID─┬──count()─┐
│ 114208 │ 56057344 │
│ 115080 │ 51619590 │
│ 3228 │ 44658301 │
│ 38230 │ 42045932 │
│ 145263 │ 42042158 │
│ 91244 │ 38297270 │
│ 154139 │ 26647572 │
│ 150748 │ 24112755 │
│ 242232 │ 21302571 │
│ 338158 │ 13507087 │
│ 62180 │ 12229491 │
│ 82264 │ 12187441 │
│ 232261 │ 12148031 │
│ 146272 │ 11438516 │
│ 168777 │ 11403636 │
│ 4120072 │ 11227824 │
│ 10938808 │ 10519739 │
│ 74088 │ 9047015 │
│ 115079 │ 8837972 │
│ 337234 │ 8205961 │
└───────────┴──────────┘
20 rows in set. Elapsed: 0.153 sec. Processed 1.00 billion rows, 4.00 GB (6.53 billion rows/s., 26.10 GB/s.)
:)
</details>
### CPU {#cpu}
Since executing a query requires processing a large number of rows, it
helps to dispatch all operations for entire vectors instead of for
separate rows, or to implement the query engine so that there is almost
no dispatching cost. If you dont do this, with any half-decent disk
subsystem, the query interpreter inevitably stalls the CPU. It makes
sense to both store data in columns and process it, when possible, by
columns.
There are two ways to do this:
1. A vector engine. All operations are written for vectors, instead of
for separate values. This means you dont need to call operations
very often, and dispatching costs are negligible. Operation code
contains an optimized internal cycle.
2. Code generation. The code generated for the query has all the
indirect calls in it.
This is not done in “normal” databases, because it doesnt make sense
when running simple queries. However, there are exceptions. For example,
MemSQL uses code generation to reduce latency when processing SQL
queries. (For comparison, analytical DBMSs require optimization of
throughput, not latency.)
Note that for CPU efficiency, the query language must be declarative
(SQL or MDX), or at least a vector (J, K). The query should only contain
implicit loops, allowing for optimization.
[Original article](https://clickhouse.tech/docs/en/) <!--hide-->