Metadata-Version: 2.1
Name: deep-collections
Version: 0.4.1
Summary: Easy access to items in deep collections.
Home-page: https://github.com/terminal-labs/deep_collections
License: BSD
Keywords: deep,nested,dict,json,data
Author: Joseph Nix
Author-email: nixjdm@terminallabs.com
Requires-Python: >=3.7,<4.0
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: BSD License
Classifier: License :: Other/Proprietary License
Classifier: Natural Language :: English
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3 :: Only
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: Implementation :: CPython
Classifier: Programming Language :: Python :: Implementation :: PyPy
Classifier: Topic :: Software Development
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Project-URL: Repository, https://github.com/terminal-labs/deep_collections
Description-Content-Type: text/markdown

## Deep Collections

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deep_collections is a Python library that provides tooling for easy access to deep collections (dicts, lists, deques, etc), while maintaining a great portion of the collection's original API. The class DeepCollection class will automatically subclass the original collection that is provided, and add several quality of life extensions to make using deep collections much more enjoyable.

Got a bundle of JSON from an API? A large Python object from some data science problem? Some very lengthy set of instructions from some infrastructure as code like Ansible or SaltStack? Explore and modify it with ease.

DeepCollection can take virtually any kind of object including all built-in container types ([dict](https://docs.python.org/3/library/stdtypes.html#dict), [list](https://docs.python.org/3/library/stdtypes.html#list), [set](https://docs.python.org/3/library/stdtypes.html#set), and [tuple](https://docs.python.org/3/library/stdtypes.html#tuple)), everything in the [collections module](https://docs.python.org/3/library/collections.html), and [dotty-dicts](https://github.com/pawelzny/dotty_dict), and all of these nested in any fashion.

### Features

- Path traversal by supplying an list of path components as a key. This works for getting, setting, and deleting.
- Accessing nested components by supply only path fragments.
- Setting paths when parent parts do not exist.
- Path traversal through dict-like collections by dot chaining for getting
- Finding all paths to keys or subpaths
- Finding all values for keys or subpaths, and deduping them.
- Provide all of the above through a class that is:
    - easily instantiable
    - a native subclass of the type it was instantiated with
    - easily subclassable


### Path concept

DeepCollections has a concept of a "path" for nested collections, where a path is a sequence of keys or indices that if followed in order, traverse the deep collection. As a quick example, `{'a': ['b', {'c': 'd'}]}` could be traversed with the path `['a', 1, 'c']` to find the value `'d'`.

DeepCollections natively use paths as well as simple keys and indices. For `dc = DeepCollection(foo)`, items can be retrieved through the familiar `dc[path]` as normal if `path` is a simple key or index, or if it is an non-stringlike iterable path (strings are assumed to be literal keys). This is done with a custom `__getitem__` method. Similarly, `__delitem__` and `__setitem__` also support using a path. The same flexibility exists for the familiar methods like `.get`, which behaves the same as `dict.get`, but can accept a path as well as a key.

### Matching
Path elements are interpretted as patterns to match against keys and indices. By default this is feature is on and uses globbing.

#### Recursion

`"**"` recurses any depth to find the match for the next pattern given. For example:

```python
dc = DeepCollection({"a": {"b": {"c": {"d": 5}}}, "d": 4})
dc["a", "**", "d"] == 5
```

Coupled with another matching style like globbing allows you to do some powerful filtering:

```python
dc = DeepCollection({"a": {"b": {"c": {"xd": {"e": 0}, "yd": {"e": 1}, "zf": {"e": 2}}}}, "e": 3})
dc["a", "**", "?d", "e"] == [0, 1]
```

This feature is independent of other matching patterns. In other words, you could swap globbing out for another matchin style, but `"**"` will remain usable unless disabled on it's own. You might want to use regex through your path but pair that with recursion.

#### Matching numeric keys and indicies

To enable pattern matching (like globbing) to make sense when attempting to match indices and numeric keys, if a path element is a string and appears to use globbing, it will be matched against the stringified index/key. In other words

```python
dc = DeepCollection(["a", "b", "c"])
dc["[0-1]"] == [0, 1]
dc["5"] == DeepCollection([])

dc = DeepCollection({1: 'i', '1': 'j', 'a': 'k'})
dc['*[!1]'] == "k"
```

This is a compromise to afford pattern matching indices and numeric keys. As with deeper path traversal, since we're matching a pattern, 0 hits is not treated as a KeyError or IndexError, but simply returns no results.

The often relied upon KeyError and IndexError are both saved when pattern matching is not detected.

```python
dc = DeepCollection(["a", "b", "c"])
dc[5]
...
IndexError: list index out of range

DeepCollection({})["a"]
...
KeyError: 'a'
```

### Matching Styles

Deep Collections supports the following matching styles:

- glob
- regex (_built in soon_)
- none (_built in soon_)
- custom (_built in soon_)

This can be set with many functions by passing e.g. `match_with="regex"`.

As said above, the special use of `"**"` is independant, and currently always on. Future versions will allow toggling this off as well.

To abandon all matching styles and traverse paths as quickly as possible, use `getitem_by_path_strict`.

#### Matching Style: Globbing

Any given path element is matched with `fnmatchcase` from [the Python stdlib](https://docs.python.org/3/library/fnmatch.html#fnmatch.fnmatchcase). This style is used in the above examples.

### DeepCollection object API

DeepCollections are instantiated as a normal class, optionally with a given initial collection as an arguement.

```python
from deep_collections import DeepCollection

dc = DeepCollection()
# or
dc = DeepCollection({"a": {"b": {"c": "d"}}})
# or
dc = DeepCollection(["a", ["b", ["c", "d"]]])
```

These are the noteworthy methods available on all DCs:

- `__getitem__`
- `__delitem__`
- `__setitem__`
- `get`
- `paths_to_value`
- `paths_to_key`
- `values_for_key`
- `deduped_values_for_key`

There are also corresponding functions availble that can use any native object that could be deep, but is not a `DeepCollection`, like a normal nested `dict` or `list`. This may be a convenient alternative to ad hoc traverse an object you already have, but it is also faster to use because it doesn't come with the initialization cost of a DeepCollection object. So if speed matters, use a function.

### deep_collections function API

All of the useful methods for DeepCollection objects are available as functions that can take a collection as an argument, as well as several other supporting functions, which are made plainly availble.

The core functions are focused on using the same path concept. The available functions and their related DC methods are:

- `getitem_by_path` - `DeepCollection().__getitem__`
- `get_by_path` - `DeepCollection().get`
- `set_by_path` - `DeepCollection().set_by_path`
- `del_by_path` - `DeepCollection().del_by_path`
- `paths_to_value` - `DeepCollection().paths_to_value`
- `paths_to_key` - `DeepCollection().paths_to_key`
- `values_for_key` - `DeepCollection().values_for_key`
- `deduped_values_for_key` - `DeepCollection().deduped_values_for_key`
- `dedupe_items`
- `resolve_path`
- `matched_keys`

