The `Executable` and `ExecutablePool` table engines allow you to define a table whose rows are generated from a script that you define (by writing rows to **stdout**). The executable script is stored in the `users_scripts` directory and can read data from any source.
-`Executable` tables: the script is run on every query
You can optionally include one or more input queries that stream their results to **stdin** for the script to read.
## Creating an Executable Table
The `Executable` table engine requires two parameters: the name of the script and the format of the incoming data. You can optionally pass in one or more input queries:
Here are the relevant settings for an `Executable` table:
-`send_chunk_header`
- Description: Send the number of rows in each chunk before sending a chunk to process. This setting can help to write your script in a more efficient way to preallocate some resources
- Default value: false
-`command_termination_timeout`
- Description: Command termination timeout in seconds
- Default value: 10
-`command_read_timeout`
- Description: Timeout for reading data from command stdout in milliseconds
- Default value: 10000
-`command_write_timeout`
- Description: Timeout for writing data to command stdin in milliseconds
Let's look at an example. The following Python script is named `my_script.py` and is saved in the `user_scripts` folder. It reads in a number `i` and prints `i` random strings, with each string preceded by a number that is separated by a tab:
The following `my_executable_table` is built from the output of `my_script.py`, which will generate 10 random strings every time you run a `SELECT` from `my_executable_table`:
Creating the table returns immediately and does not invoke the script. Querying `my_executable_table` causes the script to be invoked:
```sql
SELECT * FROM my_executable_table
```
```response
┌─x─┬─y──────────┐
│ 0 │ BsnKBsNGNH │
│ 1 │ mgHfBCUrWM │
│ 2 │ iDQAVhlygr │
│ 3 │ uNGwDuXyCk │
│ 4 │ GcFdQWvoLB │
│ 5 │ UkciuuOTVO │
│ 6 │ HoKeCdHkbs │
│ 7 │ xRvySxqAcR │
│ 8 │ LKbXPHpyDI │
│ 9 │ zxogHTzEVV │
└───┴────────────┘
```
## Passing Query Results to a Script
Users of the Hacker News website leave comments. Python contains a natural language processing toolkit (`nltk`) with a `SentimentIntensityAnalyzer` for determining if comments are positive, negative, or neutral - including assigning a value between -1 (a very negative comment) and 1 (a very positive comment). Let's create an `Executable` table that computes the sentiment of Hacker News comments using `nltk`.
This example uses the `hackernews` table described [here](https://clickhouse.com/docs/en/engines/table-engines/mergetree-family/invertedindexes/#full-text-search-of-the-hacker-news-dataset). The `hackernews` table includes an `id` column of type `UInt64` and a `String` column named `comment`. Let's start by defining the `Executable` table:
```sql
CREATE TABLE sentiment (
id UInt64,
sentiment Float32
)
ENGINE = Executable(
'sentiment.py',
TabSeparated,
(SELECT id, comment FROM hackernews WHERE id > 0 AND comment != '' LIMIT 20)
);
```
Some comments about the `sentiment` table:
- The file `sentiment.py` is saved in the `user_scripts` folder (the default folder of the `user_scripts_path` setting)
- The `TabSeparated` format means our Python script needs to generate rows of raw data that contain tab-separated values
- The query selects two columns from `hackernews`. The Python script will need to parse out those column values from the incoming rows
- For this to work, you will need to run `nltk.downloader.download('vader_lexicon')`. This could have been placed in the script, but then it would have been downloaded every time a query was executed on the `sentiment` table - which is not efficient
- The incoming row is tab-separated, so we parse out the `id` and `comment` using the Python `split` function
- The result of `polarity_scores` is a JSON object with a handful of values. We decided to just grab the `compound` value of this JSON object
- Recall that the `sentiment` table in ClickHouse uses the `TabSeparated` format and contains two columns, so our `print` function separates those columns with a tab
Every time you write a query that selects rows from the `sentiment` table, the `SELECT id, comment FROM hackernews WHERE id > 0 AND comment != '' LIMIT 20` query is executed and the result is passed to `sentiment.py`. Let's test it out: