Metadata-Version: 2.1
Name: pandagg
Version: 0.0.2
Summary: Python package provided to make elasticsearch aggregations and queries easy.
Home-page: https://github.com/alkemics/pandagg
Author: Léonard Binet
Author-email: leonardbinet@gmail.com
License: UNKNOWN
Description: ## What is it?
        
        **pandagg** is a Python package providing a simple interface to manipulate ElasticSearch queries and aggregations.
        
        ***Disclaimer*** *:this is a pre-release version*
        ## Features
        
        - flexible aggregation and search queries declaration
        - query validation based on provided mapping
        - parsing of aggregation results in handy formats: tree with interactive navigation, csv-like tabular breakdown, and others
        - mapping interactive navigation
        
        
        ## Usage
        
        ### Documentation
        Full documentation and user-guide are available [here on read-the-docs](https://pandagg.readthedocs.io/en/latest/).
        
        ### Quick sneak peek 
        **Elasticsearch dict syntax**
        ```
        >>> from pandagg.query import Query
        
        >>> expected_query = {'bool': {'must': [
            {'terms': {'genres': ['Action', 'Thriller']}},
            {'range': {'rank': {'gte': 7}}},
            {'nested': {
                'path': 'roles',
                'query': {'bool': {'must': [
                    {'term': {'roles.gender': {'value': 'F'}}},
                    {'term': {'roles.role': {'value': 'Reporter'}}}]}
                 }
            }}
        ]}}
        >>> q = Query(expected_query)
        >>> q
        <Query>
        bool
        └── must
            ├── nested
            │   ├── path="roles"
            │   └── query
            │       └── bool
            │           └── must
            │               ├── term, field=roles.gender, value="F"
            │               └── term, field=roles.role, value="Reporter"
            ├── range, field=rank, gte=7
            └── terms, field=genres, values=['Action', 'Thriller']
        ```
        
        **DSL syntax**
        ```
        from pandagg.query import Nested, Bool, Query, Range, Term, Terms
        >>> q = Query(
            Bool(must=[
                TermsFilter('genres', terms=['Action', 'Thriller']),
                Range('rank', gte=7),
                Nested(
                    path='roles', 
                    query=Bool(must=[
                        Term('roles.gender', value='F'),
                        Term('roles.role', value='Reporter')
                    ])
                )
            ])
        )
        
        # serialized query is computed by `query_dict` method
        >>> q.query_dict() == expected_query
        True
        ```
        
        **Chained syntax**
        
        ```
        >>> from pandagg.query import Query, Range, Term
        
        >>> q = Query()\
            .query({'terms': {'genres': ['Action', 'Thriller']}})\
            .nested(path='roles', _name='nested_roles', query=Term('roles.gender', value='F'))\
            .query(Range('rank', gte=7))\
            .query(Term('roles.role', value='Reporter'), parent='nested_roles')
        
        >>> q
        <Query>
        bool
        └── must
            ├── nested
            │   ├── path="roles"
            │   └── query
            │       └── bool
            │           └── must
            │               ├── term, field=roles.gender, value="F"
            │               └── term, field=roles.role, value="Reporter"
            ├── range, field=rank, gte=7
            └── terms, field=genres, values=['Action', 'Thriller']
             
        ```
        Notes:
         - both DSL and dict syntaxes are accepted in `Query` compound clauses methods (`query`, `nested`, `must` etc).
         - the last query uses the nested clause `_name` to detect where it should be inserted
        
        ## Installation
        ```
        pip install pandagg
        ```
        
        ## Dependencies
        **Hard dependency**: [ligthtree](https://pypi.org/project/lighttree/): 0.0.2 or higher
        
        **Soft dependency**: to parse aggregation results as tabular dataframe: [pandas](https://github.com/pandas-dev/pandas/)
        
        ## Motivations
        
        `pandagg` only focuses on read operations (queries and aggregations), a 
        high level python client [elasticsearch-dsl](https://github.com/elastic/elasticsearch-dsl-py) already exists for ElasticSearch, 
        but despite many qualities, in some cases its api was not always convenient when dealing with deeply 
        nested queries and aggregations.
        
        The fundamental difference between those libraries is how they deal with the tree structure of aggregation queries
        and their responses.
        
        Suppose we have this aggregation structure: (types of agg don't matter). Let's call all of **A**, **B**, **C**, **D** our aggregation **nodes**, and the whole structure our **tree**.
        ```
        A           (Terms agg)
        └── B       (Filters agg)
            ├── C   (Avg agg)
            └── D   (Sum agg)
        ```
        
        
        Question is who has the charge of storing the **tree structure** (how **nodes** are connected)?
        
        In ***elasticsearch-dsl*** library, each aggregation **node** is responsible of knowing which are its direct children.
        
        In ***pandagg***, all **nodes** are agnostic about which are their parents/children, and a **tree** object is in charge
        of storing this structure. It is thus possible to add/update/remove aggregation **nodes** or **sub-trees** in
        specific locations of the initial **tree**, thus allowing more flexible ways to build your queries.
        
        ## Contributing
        
        All contributions, bug reports, bug fixes, documentation improvements, enhancements and ideas are welcome.
        
        
        ## Roadmap
        
        - implement CI workflow: python2/3 tests, coverage
        - nested fields: automatic handling and validation in `Query` instances
        - `Query.query`, `Agg.agg`, `Agg.groupby` methods: allow passing of `tree` instance, in addition to current `dict` and `node` syntaxes
        - documentation; explain challenges induced by nested `nodes` syntaxes: for instance why are nested query clauses
        saved in `children` attribute before tree deserialization
        - extend test coverage on `named` queries serialization
        - evaluate interest and tradeoffs of using metaclasses like similarly to `elasticsearch-dsl` library to declare `node` classes
        - on aggregation `nodes`, ensure all allowed `fields` are listed
        - on aggregation response `tree`, use `Query` DSL to compute bucket filters
        - package versions for different ElasticSearch versions
        
Keywords: elasticsearch aggregation pandas
Platform: UNKNOWN
Description-Content-Type: text/markdown
Provides-Extra: test
Provides-Extra: pandas
