Metadata-Version: 2.1
Name: jello
Version: 1.3.6
Summary: Filter JSON and JSON Lines data with Python syntax.
Home-page: https://github.com/kellyjonbrazil/jello
Author: Kelly Brazil
Author-email: kellyjonbrazil@gmail.com
License: MIT
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Topic :: Utilities
Requires-Python: >=3.6
Description-Content-Type: text/markdown
Requires-Dist: Pygments (>=2.4.2)

![Tests](https://github.com/kellyjonbrazil/jello/workflows/Tests/badge.svg?branch=master)
![Pypi](https://img.shields.io/pypi/v/jello.svg)

> Try the new `jello` [web demo](https://jello-web-demo.herokuapp.com/)!

> `jello` now supports dot notation!

# jello
Filter JSON and JSON Lines data with Python syntax

`jello` is similar to `jq` in that it processes JSON and JSON Lines data except `jello` uses standard python dict and list syntax.

JSON or JSON Lines can be piped into `jello` (JSON Lines are automatically slurped into a list of dictionaries) and are available as the variable `_`. Processed data can be output as JSON, JSON Lines, bash array lines, or a grep-able schema.

For more information on the motivations for this project, see my [blog post](https://blog.kellybrazil.com/2020/03/25/jello-the-jq-alternative-for-pythonistas/).

## Install
You can install `jello` via `pip`, via OS Package Repository, MSI installer for Windows, or by downloading the correct binary for your architecture and running it anywhere on your filesystem.

### Pip (macOS, linux, unix, Windows)
For the most up-to-date version and the most cross-platform option, use `pip` or `pip3` to download and install `jello` directly from [PyPi](https://pypi.org/project/jello/):

![Pypi](https://img.shields.io/pypi/v/jello.svg)

```bash
pip3 install jello
```

### Packages and Binaries
See the [Jello Packaging](https://kellyjonbrazil.github.io/jello-packaging/) site for MSI packages and binaries.

### Usage
```
cat data.json | jello [OPTIONS] [QUERY]
``` 
`QUERY` is optional and can be most any valid python code. `_` is the sanitized JSON from STDIN presented as a python dict or list of dicts. If `QUERY` is omitted then the original JSON input will simply be pretty printed. You can use dot notation or traditional python bracket notation to access key names.

> Note: Reserved key names that cannot be accessed using dot notation can be accessed via standard python dictionary notation. (e.g. _.foo["get"] instead of _.foo.get)


A simple query:
```bash
cat data.json | jello _.foo
```
or
```bash
cat data.json | jello '_["foo"]'
```

#### Options
- `-c` compact print JSON output instead of pretty printing
- `-i` initialize environment with a custom config file
- `-l` lines output (suitable for bash array assignment)
- `-m` monochrome output
- `-n` print selected `null` values
- `-r` raw output of selected strings (no quotes)
- `-s` print the JSON schema in grep-able format
- `-h` help
- `-v` version info

#### Simple Examples
`jello` simply pretty prints the JSON if there are no options passed:
```bash
echo '{"foo":"bar","baz":[1,2,3]}' | jello

{
  "foo": "bar",
  "baz": [
    1,
    2,
    3
  ]
}
```

If you prefer compact output, use the `-c` option:
```bash
echo '{"foo":"bar","baz":[1,2,3]}' | jello -c

{"foo":"bar","baz":[1,2,3]}
```

Use the `-l` option to convert lists/arrays into lines:
```bash
echo '{"foo":"bar","baz":[1,2,3]}' | jello -l _.baz

1
2
3
```

You can also create [JSON Lines](https://jsonlines.org/) with the `-l` option:
```bash
echo '[{"foo":"bar","baz":[1,2,3]},{"foo":"bar","baz":[1,2,3]}]' | jello -l

{"foo":"bar","baz":[1,2,3]}
{"foo":"bar","baz":[1,2,3]}
```

You can also print a grep-able schema by using the `-s` option:
```bash
echo '{"foo":"bar","baz":[1,2,3]}' | jello -s

.foo = "bar";
.baz[0] = 1;
.baz[1] = 2;
.baz[2] = 3;
```

#### Assigning Results to a Bash Array

Use the `-l` option to print JSON array output in a manner suitable to be assigned to a bash array. The `-r` option can be used to remove quotation marks around strings. If you want `null` values to be printed as `null`, use the `-n` option, otherwise they are skipped.

Bash variable:
```
variable=($(cat data.json | jello -rl _.foo))
```

Bash array variable:
```
variable=()
while read -r value; do
    variable+=("$value")
done < <(cat data.json | jello -rl _.foo)
```

Here is more [advanced usage](https://github.com/kellyjonbrazil/jello/blob/master/ADVANCED_USAGE.md) information.

## Examples:
### Printing the Grep-able Schema
```bash
jc -a | jello -s

.name = "jc";
.version = "1.10.2";
.description = "jc cli output JSON conversion tool";
.author = "Kelly Brazil";
.author_email = "kellyjonbrazil@gmail.com";
.parser_count = 50;
.parsers[0].name = "airport";
.parsers[0].argument = "--airport";
.parsers[0].version = "1.0";
.parsers[0].description = "airport -I command parser";
.parsers[0].author = "Kelly Brazil";
.parsers[0].author_email = "kellyjonbrazil@gmail.com";
.parsers[0].compatible[0] = "darwin";
.parsers[0].magic_commands[0] = "airport -I";
.parsers[1].name = "airport_s";
.parsers[1].argument = "--airport-s";
.parsers[1].version = "1.0";
...
```
### Lambda Functions and Math
```bash
echo '{"t1":-30, "t2":-20, "t3":-10, "t4":0}' | jello '\
keys = _.keys()
vals = _.values()
cel = list(map(lambda x: (float(5)/9)*(x-32), vals))
dict(zip(keys, cel))'

{
  "t1": -34.44444444444444,
  "t2": -28.88888888888889,
  "t3": -23.333333333333336,
  "t4": -17.77777777777778
}

```

```bash
jc -a | jello 'len([entry for entry in _.parsers if "darwin" in entry.compatible])'

45
```

### For Loops
Output as JSON array
```bash
jc -a | jello '\
result = []
for entry in _.parsers:
  if "darwin" in entry.compatible:
    result.append(entry.name)
result'

[
  "airport",
  "airport_s",
  "arp",
  "crontab",
  "crontab_u",
  ...
]
```
Output as bash array
```bash
jc -a | jello -rl '\
result = []
for entry in _.parsers:
  if "darwin" in entry.compatible:
    result.append(entry.name)
result'

airport
airport_s
arp
crontab
crontab_u
...
```
### List and Dictionary Comprehension
Output as JSON array
```bash
jc -a | jello '[entry.name for entry in _.parsers if "darwin" in entry.compatible]'

[
  "airport",
  "airport_s",
  "arp",
  "crontab",
  "crontab_u",
  ...
]
```

Output as bash array
```bash
jc -a | jello -rl '[entry.name for entry in _.parsers if "darwin" in entry.compatible]'

airport
airport_s
arp
crontab
crontab_u
...
```

### Environment Variables
```bash
echo '{"login_name": "joeuser"}' | jello '\
True if os.getenv("LOGNAME") == _.login_name else False'

true
```

### Using 3rd Party Modules
You can import and use your favorite modules to manipulate the data.  For example, using `glom`:
```bash
jc -a | jello '\
from glom import *
glom(_, ("parsers", ["name"]))'

[
  "airport",
  "airport_s",
  "arp",
  "blkid",
  "crontab",
  "crontab_u",
  "csv",
  ...
]
```

### Advanced JSON Manipulation
The data from this example comes from https://programminghistorian.org/assets/jq_twitter.json

Under **Grouping and Counting**, Matthew describes an advanced `jq` filter against a sample Twitter dataset that includes JSON Lines data. There he describes the following query:

> "We can now create a table of users. Let’s create a table with columns for the user id, user name, followers count, and a column of their tweet ids separated by a semicolon."

https://programminghistorian.org/en/lessons/json-and-jq

Here is a simple solution using `jello`:
```bash
cat jq_twitter.json | jello -l '\
user_ids = set()
for tweet in _:
    user_ids.add(tweet.user.id)
result = []
for user in user_ids:
    user_profile = {}
    tweet_ids = []
    for tweet in _:
        if tweet.user.id == user:
            user_profile.update({
                "user_id": user,
                "user_name": tweet.user.screen_name,
                "user_followers": tweet.user.followers_count})
            tweet_ids.append(str(tweet.id))
    user_profile["tweet_ids"] = ";".join(tweet_ids)
    result.append(user_profile)
result'

...
{"user_id": 2696111005, "user_name": "EGEVER142", "user_followers": 1433, "tweet_ids": "619172303654518784"}
{"user_id": 42226593, "user_name": "shirleycolleen", "user_followers": 2114, "tweet_ids": "619172281294655488;619172179960328192"}
{"user_id": 106948003, "user_name": "MrKneeGrow", "user_followers": 172, "tweet_ids": "501064228627705857"}
{"user_id": 18270633, "user_name": "ahhthatswhy", "user_followers": 559, "tweet_ids": "501064204661850113"}
{"user_id": 14331818, "user_name": "edsu", "user_followers": 4220, "tweet_ids": "615973042443956225;618602288781860864"}
{"user_id": 2569107372, "user_name": "SlavinOleg", "user_followers": 35, "tweet_ids": "501064198973960192;501064202794971136;501064214467731457;501064215759568897;501064220121632768"}
{"user_id": 22668719, "user_name": "nodehyena", "user_followers": 294, "tweet_ids": "501064222772445187"}
...
```

