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Deduplication Strategies

Deduplication refers to the process of removing duplicate rows of a dataset. In an OLTP database, this is done easily because each row has a unique primary key-but at the cost of slower inserts. Every inserted row needs to first be searched for and, if found, needs to be replaced.

ClickHouse is built for speed when it comes to data insertion. The storage files are immutable and ClickHouse does not check for an existing primary key before inserting a row-so deduplication involves a bit more effort. This also means that deduplication is not immediate-it is eventual, which has a few side effects:

  • At any moment in time your table can still have duplicates (rows with the same sorting key)
  • The actual removal of duplicate rows occurs during the merging of parts
  • Your queries need to allow for the possibility of duplicates
Cassandra logoClickHouse provides free training on deduplication and many other topics. The Deleting and Updating Data training module is a good place to start.

Options for deduplication

Deduplication is implemented in ClickHouse using the following table engines:

  1. ReplacingMergeTree table engine: with this table engine, duplicate rows with the same sorting key are removed during merges. ReplacingMergeTree is a good option for emulating upsert behavior (where you want queries to return the last row inserted).

  2. Collapsing rows: the CollapsingMergeTree and VersionedCollapsingMergeTree table engines use a logic where an existing row is "canceled" and a new row is inserted. They are more complex to implement than ReplacingMergeTree, but your queries and aggregations can be simpler to write without worrying about whether or not data has been merged yet. These two table engines are useful when you need to update data frequently.

We walk through both of these techniques below. For more details, check out our free on-demand Deleting and Updating Data training module.

Using ReplacingMergeTree for Upserts

Let's look at a simple example where a table contains Hacker News comments with a views column representing the number of times a comment was viewed. Suppose we insert a new row when an article is published and upsert a new row once a day with the total number of views if the value increases:

CREATE TABLE hackernews_rmt (
id UInt32,
author String,
comment String,
views UInt64
)
ENGINE = ReplacingMergeTree
PRIMARY KEY (author, id)

Let's insert two rows:

INSERT INTO hackernews_rmt VALUES
(1, 'ricardo', 'This is post #1', 0),
(2, 'ch_fan', 'This is post #2', 0)

To update the views column, insert a new row with the same primary key (notice the new values of the views column):

INSERT INTO hackernews_rmt VALUES
(1, 'ricardo', 'This is post #1', 100),
(2, 'ch_fan', 'This is post #2', 200)

The table now has 4 rows:

SELECT *
FROM hackernews_rmt
┌─id─┬─author──┬─comment─────────┬─views─┐
│ 2 │ ch_fan │ This is post #2 │ 0 │
│ 1 │ ricardo │ This is post #1 │ 0 │
└────┴─────────┴─────────────────┴───────┘
┌─id─┬─author──┬─comment─────────┬─views─┐
│ 2 │ ch_fan │ This is post #2 │ 200 │
│ 1 │ ricardo │ This is post #1 │ 100 │
└────┴─────────┴─────────────────┴───────┘

The separate boxes above in the output demonstrate the two parts behind-the-scenes - this data has not been merged yet, so the duplicate rows have not been removed yet. Let's use the FINAL keyword in the SELECT query, which results in a logical merging of the query result:

SELECT *
FROM hackernews_rmt
FINAL
┌─id─┬─author──┬─comment─────────┬─views─┐
│ 2 │ ch_fan │ This is post #2 │ 200 │
│ 1 │ ricardo │ This is post #1 │ 100 │
└────┴─────────┴─────────────────┴───────┘

The result only has 2 rows, and the last row inserted is the row that gets returned.

Note

Using FINAL works OK if you have a small amount of data. If you are dealing with a large amount of data, using FINAL is probably not the best option. Let's discuss a better option for finding the latest value of a column…

Avoiding FINAL

Let's update the views column again for both unique rows:

INSERT INTO hackernews_rmt VALUES
(1, 'ricardo', 'This is post #1', 150),
(2, 'ch_fan', 'This is post #2', 250)

The table has 6 rows now, because an actual merge hasn't happened yet (only the query-time merge when we used FINAL).

SELECT *
FROM hackernews_rmt
┌─id─┬─author──┬─comment─────────┬─views─┐
│ 2 │ ch_fan │ This is post #2 │ 200 │
│ 1 │ ricardo │ This is post #1 │ 100 │
└────┴─────────┴─────────────────┴───────┘
┌─id─┬─author──┬─comment─────────┬─views─┐
│ 2 │ ch_fan │ This is post #2 │ 0 │
│ 1 │ ricardo │ This is post #1 │ 0 │
└────┴─────────┴─────────────────┴───────┘
┌─id─┬─author──┬─comment─────────┬─views─┐
│ 2 │ ch_fan │ This is post #2 │ 250 │
│ 1 │ ricardo │ This is post #1 │ 150 │
└────┴─────────┴─────────────────┴───────┘

Instead of using FINAL, let's use some business logic - we know that the views column is always increasing, so we can select the row with the largest value using the max function after grouping by the desired columns:

SELECT
id,
author,
comment,
max(views)
FROM hackernews_rmt
GROUP BY (id, author, comment)
┌─id─┬─author──┬─comment─────────┬─max(views)─┐
│ 2 │ ch_fan │ This is post #2 │ 250 │
│ 1 │ ricardo │ This is post #1 │ 150 │
└────┴─────────┴─────────────────┴────────────┘

Grouping as shown in the query above can actually be more efficient (in terms of query performance) than using the FINAL keyword.

Our Deleting and Updating Data training module expands on this example, including how to use a version column with ReplacingMergeTree.

Using CollapsingMergeTree for Updating Columns Frequently

Updating a column involves deleting an existing row and replacing it with new values. As you have already seen, this type of mutation in ClickHouse happens eventually - during merges. If you have a lot of rows to update, it can actually be more efficient to avoid ALTER TABLE..UPDATE and instead just insert the new data alongside the existing data. We could add a column that denotes whether or not the data is stale or new… and there is actually a table engine that already implements this behavior very nicely, especially considering that it deletes the stale data automatically for you. Let's see how it works.

Suppose we track the number of views that a Hacker News comment has using an external system and every few hours, we push the data into ClickHouse. We want the old rows deleted and the new rows to represent the new state of each Hacker News comment. We can use a CollapsingMergeTree to implement this behavior.

Let's define a table to store the number of views:

CREATE TABLE hackernews_views (
id UInt32,
author String,
views UInt64,
sign Int8
)
ENGINE = CollapsingMergeTree(sign)
PRIMARY KEY (id, author)

Notice the hackernews_views table has an Int8 column named sign which is referred to as the sign column. The name of the sign column is arbitrary, but the Int8 data type is required, and notice the column name was passed in to the constructor of the CollapsingMergeTree table.

What is the sign column of a CollapsingMergeTree table? It represents the state of the row, and the sign column can only be 1 or -1. Here is how it works:

  • If two rows have the same primary key (or sort order if that is different than the primary key), but different values of the sign column, then the last row inserted with a +1 becomes the state row and the other rows cancel each other
  • Rows that cancel each other out are deleted during merges
  • Rows that do not have a matching pair are kept

Let's add a row to the hackernews_views table. Since it is the only row for this primary key, we set its state to 1:

INSERT INTO hackernews_views VALUES
(123, 'ricardo', 0, 1)

Now suppose we want to change the views column. You insert two rows: one that cancels the existing row, and one that contains the new state of the row:

INSERT INTO hackernews_views VALUES
(123, 'ricardo', 0, -1),
(123, 'ricardo', 150, 1)

The table now has 3 rows with the primary key (123, 'ricardo'):

SELECT *
FROM hackernews_views
┌──id─┬─author──┬─views─┬─sign─┐
│ 123 │ ricardo │ 0 │ -1 │
│ 123 │ ricardo │ 150 │ 1 │
└─────┴─────────┴───────┴──────┘
┌──id─┬─author──┬─views─┬─sign─┐
│ 123 │ ricardo │ 0 │ 1 │
└─────┴─────────┴───────┴──────┘

Notice adding FINAL returns the current state row:

SELECT *
FROM hackernews_views
FINAL
┌──id─┬─author──┬─views─┬─sign─┐
│ 123 │ ricardo │ 150 │ 1 │
└─────┴─────────┴───────┴──────┘

But of course, using FINAL is not recommended for large tables.

Note

The value passed in for the views column in our example is not really needed, nor does it have to match the current value of views of the old row. In fact, you can cancel a row with just the primary key and a -1:

INSERT INTO hackernews_views(id, author, sign) VALUES
(123, 'ricardo', -1)

Real-time Updates from Multiple Threads

With a CollapsingMergeTree table, rows cancel each other using a sign column, and the state of a row is determined by the last row inserted. But this can be problematic if you are inserting rows from different threads where rows can be inserted out of order. Using the "last" row does not work in this situation.

This is where VersionedCollapsingMergeTree comes in handy - it collapses rows just like CollapsingMergeTree, but instead of keeping the last row inserted, it keeps the row with the highest value of a version column that you specify.

Let's look at an example. Suppose we want to track the number of views of our Hacker News comments, and the data is updated frequently. We want reporting to use the latest values without forcing or waiting for merges. We start with a table similar to CollapsedMergeTree, except we add a column to store the version of the state of the row:

CREATE TABLE hackernews_views_vcmt (
id UInt32,
author String,
views UInt64,
sign Int8,
version UInt32
)
ENGINE = VersionedCollapsingMergeTree(sign, version)
PRIMARY KEY (id, author)

Notice the table uses VersionsedCollapsingMergeTree as the engine and passes in the sign column and a version column. Here is the table works:

  • It deletes each pair of rows that have the same primary key and version and different sign
  • The order that rows were inserted does not matter
  • Note that if the version column is not a part of the primary key, ClickHouse adds it to the primary key implicitly as the last field

You use the same type of logic when writing queries - group by the primary key and use clever logic to avoid rows that have been canceled but not deleted yet. Let's add some rows to the hackernews_views_vcmt table:

INSERT INTO hackernews_views_vcmt VALUES
(1, 'ricardo', 0, 1, 1),
(2, 'ch_fan', 0, 1, 1),
(3, 'kenny', 0, 1, 1)

Now we update two of the rows and delete one of them. To cancel a row, be sure to include the prior version number (since it is a part of the primary key):

INSERT INTO hackernews_views_vcmt VALUES
(1, 'ricardo', 0, -1, 1),
(1, 'ricardo', 50, 1, 2),
(2, 'ch_fan', 0, -1, 1),
(3, 'kenny', 0, -1, 1),
(3, 'kenny', 1000, 1, 2)

We will run the same query as before that cleverly adds and subtracts values based on the sign column:

SELECT
id,
author,
sum(views * sign)
FROM hackernews_views_vcmt
GROUP BY (id, author)
HAVING sum(sign) > 0
ORDER BY id ASC

The result is two rows:

┌─id─┬─author──┬─sum(multiply(views, sign))─┐
│ 1 │ ricardo │ 50 │
│ 3 │ kenny │ 1000 │
└────┴─────────┴────────────────────────────┘

Let's force a table merge:

OPTIMIZE TABLE hackernews_views_vcmt

There should only be two rows in the result:

SELECT *
FROM hackernews_views_vcmt
┌─id─┬─author──┬─views─┬─sign─┬─version─┐
│ 1 │ ricardo │ 50 │ 1 │ 2 │
│ 3 │ kenny │ 1000 │ 1 │ 2 │
└────┴─────────┴───────┴──────┴─────────┘

A VersionedCollapsingMergeTree table is quite handy when you want to implement deduplication while inserting rows from multiple clients and/or threads.

Why aren’t my rows being deduplicated?

One reason inserted rows may not be deduplicated is if you are using a non-idempotent function or expression in your INSERT statement. For example, if you are inserting rows with the column createdAt DateTime64(3) DEFAULT now(), your rows are guaranteed to be unique because each row will have a unique default value for the createdAt column. The MergeTree / ReplicatedMergeTree table engine will not know to deduplicate the rows as each inserted row will generate a unique checksum.

In this case, you can specify your own insert_deduplication_token for each batch of rows to ensure that multiple inserts of the same batch will not result in the same rows being re-inserted. Please see the documentation on insert_deduplication_token for more details about how to use this setting.