Metadata-Version: 2.1
Name: snowmobile
Version: 0.1.3
Summary: A simple set of modules for streamlined interaction with the Snowflake Database
Home-page: https://github.com/GEM7318/Snowmobile
Author: Grant Murray
Author-email: gmurray203@gmail.com
License: MIT
Project-URL: Documentation, https://snowmobile.readthedocs.io/en/latest/index.html
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        [![License: MIT](https://img.shields.io/badge/License-MIT-blue.svg)](https://github.com/GEM7318/Snowmobile/blob/master/LICENSE.txt)
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        # snowmobile
        
        `snowmobile` is a simple set of modules for streamlined interaction with the Snowflake Database for Data Scientists and Business Analysts.
        
        As such the included codes are intended to be used for the execution of raw SQL or with native DataFrames and don't make use of an ORM to 
        map Python objects to tabular Snowflake counterparts. 
        
        A quick overview of simplified usage is outlined below.
        
        ---
        ## Basic usage
        1. Install with `pip install snowmobile`
        
        2. Create file called *snowflake_credentials.json* following the below structure with as many sets of credentials
        as desired and store anywhere on local file system
            ```json
            {
                "Connection1": {
                "username":	"",
                "password":	"",
                "role": "",
                "account": "",
                "warehouse": "warehouse #1",
                "database":	"database #1",
                "schema": "schema #1"
              },
                "SANDBOX": {
                "username":	"",
                "password":	"",
                "role": "",
                "account": "",
                "warehouse": "warehouse #1",
                "database":	"database #1",
                "schema": "SANDBOX"
              }
            }
            ```
           
        3. Import desired modules and execute a statement to test connection
            ```python
            # bundled authentication & statement-execution module  
            from snowmobile import snowquery
              
            # Instantiate an instance of a connection
            sf = snowquery.Connector(conn_name='SANDBOX')
              
            # Execute statements on that connection 
            sample_table = sf.execute_query('SELECT * FROM SAMPLE_TABLE')
            ```
        
        # Modules
        
        ## Overview
        
        All modules are included in the build for transparency & flexibility purposes, although the majority of use cases will run on the front-end modules that make use of the others along the way.
        
        #### Front-end / primary utilities 
        - `snowquery` instantiates a connection and provides an `execute_query()` method for executing statements against and querying data from the warehouse
        - `snowloader` flexibly loads data from a local DataFrame into a table within the warehouse in the form of a `df_to_snowflake()` function, bundling a variety of utilities that standardize column names pre-loading, check DataFrame's structure compared to the table to be loaded into, and executes 
        DDL in absence of a pre-existing table 
        - `snowscripter` parses and instantiates components of raw .sql scripts into Python objects for much easier interaction, particularly particularly as it relates to single-statement execution and rendering statements as markdown when executed in IPython environments as well as easy execution of full .sql files
        
        
        #### Back-end / supporting
        - `snowcreds` locates the credentials file on a user's local file system
        - `snowconn` establishes a connection to the database and returns a **conn** object
        
        A more in-depth description of of each module and its usage outlined below.
        
        ---
        # snowquery
        
        ### Description
        `snowquery` simplifies the execution of sql statements against the database via an `execute_query()` 
        method, using [pandas'](https://pandas.pydata.org/) `pd.read_sql` function to execute the SQL and  returning results from the DataBase as a [dataframe](https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.html) by default.
        
        **please note**: `snowquery` is intended to streamline execution of sql that is typed *within* a Python script
        and is better-suited for ad-hoc statements whereas `snowscripter` imports an external .sql file & extracts its components into Python objects that come with cleaner methods for execution.
        
        
        ### Usage
        Its usage to query via set of credentials stored in _snowflake_credentials.json_ labeled **SANDBOX** is as follows.
        
        ```python
        In[1]:
        from snowmobile import snowquery
        
        # Establishes snowquery.Connector() object with which statements can be excuted 
        sf = snowquery.Connector(conn_name='SANDBOX')
        
        # Executing a simple sql string
        sample = sf.execute_query('select * from sample_sandbox_table')
        
        # Verifying returned object
        type(sample)
        ```
        ```
        Out[1]
        pandas.core.frame.DataFrame
        ```
        
        ---
        # snowscripter
        
        ## Description
        
        `snowscripter` imports an external .sql file & transforms it into Python objects on which methods can be called to perform a variety of actions.
        
        The `Script` object is instantiated with the following three arguments, of which only `path` is required for successful instantiation.
        
        ```python
            def __init__(self, path: str, pattern: str = r"/\*-(\w.*)-\*/",
                         snowflake: snowquery.Connector = ''):
                """Instantiating an instance of 'script' by calling Script class on a
                full path to a sql script.
        
                Args:
                    path: Full path to SQL script including .sql extension
                    pattern: Regex pattern that SQL statement headers are wrapped in
                    snowflake: Instantiated snowquery.Connector instance to use in the
                    execution of Script or Statement objects
                """ 
        ```
        
        The usage for this module is broken up into **script-level** and **statement-level** usage below, the latter of which contains the majority of application.
        
        ---
        ## Usage (script-level)
        
        In its simplest form, users can instantiate an instance of `script` by running the below where _path_ is a full file path to a .sql file.
        
        ```python
        script = snowscripter.Script(path)
        ```
        
        This will return a Script object on which the `.run()` method can be called to execute an entire script  sequentially statement by statement.
        
        ---
        ## Usage (statement-level)
        
        #### Background
        The real benefit of `snowscripter` comes from the use of 'header' tags within the sql script that form a link between a specified name and an individual statement - these identified in the parser by the regex pattern contained in the `pattern` argument of the object's instantiation.
        
        The pattern's default is '**/\\\*-(\\w.*)-\\\*/**'  and will return all text between a standard sql block-comment whose contents are wrapped in an additional '-', such as:
        
        ```mysql
        /*-sample_statement_header-*/
        select 
           a.*
        from...
        ```
        
        To make this more clear, below is a walk-through usage illustration in which a sample table is created and then `scriptparser` is used to parse a few sql statements and execute them against the table.
        
        ### Working Example
        
        The following Python snippet creates a dummy DataFrame and loads it to the warehouse for use during the exercise.
        
        *Setup / creating dummy data*
        
        ```python
        # Up-front setup for snowscripter usage
        import numpy as np
        import pandas as pd
        from snowmobile import snowloader, snowquery
        
        # Creating dummy df 
        df = pd.DataFrame({f"col{i}": 
                           np.random.normal(0, 1, 1000) for i in range(0, 10)}).reset_index()
        
        # Instantiating instance of a specified connection to run on for demo 
        demo_conn = snowquery.Connector('demo')
        
        # Loading into a table called SAMPLE_TABLE
        snowloader.df_to_snowflake(df, table_name='SAMPLE_TABLE', force_recreate=True, snowflake=demo_conn)
        ```
        
        
        #### Local .sql file
        
        Now that we have a sample table to query against, consider two statements stored in the .sql file
        below.
        
        ```mysql
        --snowscripter_sample.sql
        
        /*-contrived_example_aggregation-*/
        create or replace temp table index_agg as with
        contrived_1 as (
          select
            index
            ,sum(col1) as col1
          from SAMPLE_TABLE
          group by 1
        ),
        contrived_2 as (
          select
            index
            ,sum(col1) as col2
          from SAMPLE_TABLE
          group by 1
        )
          select
            a.*
            ,b.col2
          from contrived_1 a
          inner join contrived_2 b
            on a.index = b.index;
        
        /*-verify_contrived_join-*/
        SELECT
          index
        	,count(*)
        		as cnt_all
        FROM index_agg
        group by 1
        having count(*) <> 1;
        ```
        
        #### Instantiating parsed script object
        
        In Python, we can instantiate a `scriptparser.Script` object from this file with:
        ```python
        from snowmobile import snowscripter
          
        # path_to_script = full path to .sql file
        script = snowscripter.Script(path_to_script, snowflake=demo_conn)
        ```
        
        
        #### Accessing & executing statements
        
        Now instantiated, we can work with different parts of our script either through the `script` object or extracting individual `Statement` objects & associated methods from `script`.
        
        A few different examples of this are as follows
        
        1. Accessing a single statement from the `script` object's namespace as a string (**not** recommended)
        
            ```python
           sample1 = script.statement.get('contrived_example_aggregation')
           type(sample1)  # str
           ```
           
           
           
        2. Accessing a single statement as a `Statement` object via the `.fetch()` method on the `script` object (**recommended**)
        
           ```python
           sample_statement_obj = script.fetch('contrived_example_aggregation')
           type(sample_statement_obj)  # snowmobile.snowscripter.Statement
           ```
           This method is preferred because the `snowmobile.snowscripter.Statement` object comes with the following three methods:
           - `.execute()` which executes the statement
           - `.render()` which renders the syntactic-code as a markdown in IPython environments 
           - `.raw()` which renders the raw sql as a string similarly to Option 1 above
        
           
        
        3. To access these methods for all statements, the `.get_statements()` method call on the `script` object will return an itterable containing instantiated `Statement` objects for all statements in the script
        
           ```python
           itterable_statements = script.get_statements()
           for statement_header, statement in iterable_statements.items():
              # statement_header will iterative through [contrived_example_aggregation, verify_contrived_join]
              # statement will be Statement objects from associated sql with access to .execute(), .render(), .raw()
           ```
        
        
        
        
        #### Executing and rendering statements simultaneously
        
        Lastly, it's often helpful to execute a statement as well as render the sql behind it.
        
        To avoid having multiple method calls in these instances, the `.execute()` method comes with arguments for executing without returning results, rendering the underlying sql, and printing out a description of the returned results if desired.
        
        Below is a screenshot of what this looks like from within a notebook.
        
        <img src="Usage/snowscripter/SAMPLE_execute_render_describe.PNG" alt="Example: execute w/ render and description"  />
        
        ---
        # snowloader
        `snowloader` streamlines the bulk-loading protocol outlined in the [Snowflake documentation](https://docs.snowflake.com/en/user-guide/data-load-overview.html)
        in the form of a `df_to_snowflake()` function and is intended to be a one-stop solution for the quick loading of data.
        
        Its main features are:
        - Standardizing of DataFrame's columns prior to loading into the warehouse
        - DDL creation & execution if a pre-defined table to load data into doesn't exist 
        - Parameter-based flexibility to append DataFrame's contents or replace pre-existing contents
        - Returns a boolean indicating whether or not a load was successful for exception-handling when iteratively loading/appending multiple files
        into a single table.
        
        Continuing on the example above, the below will convert all columns in the _sample_table_ DataFrame to floats and re-load it into the warehouse,
        executing new-DDL to create the table with float data types and loading all data back into the table.
        
        ```python
        import numpy as np
        import pandas as pd
        from snowmobile import snowloader, snowquery
        
        # Creating dummy df 
        df = pd.DataFrame({f"col{i}": 
                           np.random.normal(0, 1, 1000) for i in range(0, 10)}).reset_index()
        
        # Instantiating instance of a specified connection to run on for demo 
        demo_conn = snowquery.Connector('demo')
        
        # Option 1 
        snowloader.df_to_snowflake(df=df, table_name='SAMPLE_TABLE', force_recreate=True,
                                    snowflake=demo_conn)
        
        # Option 2 
        snowloader.df_to_snowflake(df=df, table_name='SAMPLE_TABLE', force_recreate=True)
        ```
        
        In the above,
        - *Option 1* will load the data back into Snowflake on the same connection that was established in the
          `sf = snowquery.Snowflake(conn_name='SANDBOX')` statement by use of the `snowflake=sf` parameter
        - In *Option 2* this argument is omitted and the function will instantiate a new connection based on the first set of credentials in **snowflake_credentials.json**
        
        
        In general and particularly when iteratively loaded multiple files into the database, it will be faster to instantiate a single instance of `snowquery`
        that's passed into the `df_to_snowflake()` function so that it does not need to find, read-in and parse the credentials file each time its called.
        
        ---
        # snowcreds
        
        ### Description
        
        `snowcreds` is a single class intentionally extracted for easier evolving along with security standards, 
        its instantiation of `Credentials()` accepts the below two arguments and associated defaults
        ```python
        def __init__(self, config_file: str = 'snowflake_credentials.json',
                         conn_name: str = '') -> None:
                """Instantiates an instance of credentials file.
                
                Args:
                    config_file: Name of .json configuration file following the
                    format of connection_credentials_SAMPLE.json.
                    conn_name: Name of connection within json file to use, will
                    use first set of credentials in the file if no argument is passed.
                """
                self.config_file = config_file
                self.conn_name = conn_name
        ```
        
        It contains a single `.get()` method that will traverse a user's file system from the bottom-up until it finds a filename
        that matches the `config_file` parameter and unless specified otherwise via the `conn_name` parameter will return the first set of credentials
        stored in the **.json** file.  
        
        *The .json file itself is assumed to store its credentials following [this](https://github.com/GEM7318/Snowmobile/blob/master/connection_credentials_SAMPLE.json) format*
        <br></br>
        
        ### Usage
        
        **Note**: The instantiation of `snowcreds` is somewhat verbose and has been left us such for the time being as it is a back-end utility and not intended
        to be called by the users explicitly
        
        ```python
        In[1]:
        from snowmobile import snowcreds
        creds = snowcreds.Credentials(config_file='sample_credentials.json').get()
        ```
        ```
        Out[1]:
        Locating & importing credentials..
        	<1 of 4> Searching for sample_credentials.json in local file system..
        	<2 of 4> Located & loaded sample_credentials.json from:
        		C:\User\Desktop\sample_credentials.json
        	<3 of 4> No explicit connection passed, fetching 'Connection1' credentials by default
        	<4 of 4> Successfully imported credentials for conn_name='Connection1'
        ```
        
        ---
        # snowconn
        
        ### Description
        `snowconn` is also comprised of a single class, `Connection()`, that inherits `Credentials()` to retrieve a set of credentials with which to establish a connection to the database.
        
        Its instantiation and usage is very similar to `snowcreds` as it inherits the `config_file` and `conn_name` attributes and includes a `.get_conn()` method will authenticate using the credentials
        returned by `snowcreds.get()`
        
        ### Usage
        
        The below codes instantiate an instance of Connection used in higher-level modules.
        
        ```python
        In[1]:
        from snowmobile import snowconn
        creds = snowconn.Connection().get_conn()
        type(creds)
        ```
        ```
        Out[1]:
        snowflake.connector.connection.SnowflakeConnection
        ```
        
        ---
        ---
        
        # Appendix
        
        # snowscripter
        
        The below outputs all the attributes and methods associated with an instantiated `script` object
        
        
        ```python
        In[1]:
        attrs = {k: v for k, v in script.__dict__.items()}
        
        print("---------/Attributes/---------")
        for i, (k, v) in enumerate(attrs.items(), start=1):
            print(f"<a{i}> {k}:\n\t{type(v)}")
            
        
        print("\n----------/Methods/---------")
        for i2, k in enumerate(script.__dir__(), start=1):
            if str(k) not in list(attrs.keys()) and '__' not in str(k):
                print(f"<m{i2-18}> .{k}()")
            else:
                i2 -= 1
        ```
        ```
        Out[1]:
        ---------/Attributes/---------
        <a1> sql:
        	<class 'snowmobile.snowscripter.Script'>
        <a2> snowflake:
        	<class 'snowmobile.snowquery.Connector'>
        <a3> pattern:
        	<class 're.Pattern'>
        <a4> source:
        	<class 'str'>
        <a5> name:
        	<class 'str'>
        <a6> script_txt:
        	<class 'str'>
        <a7> list_of_statements:
        	<class 'list'>
        <a8> statement:
        	<class 'str'>
        <a9> statement_names:
        	<class 'list'>
        <a10> statements:
        	<class 'dict'>
        <a11> spans:
        	<class 'dict'>
        <a12> ordered_statements:
        	<class 'list'>
        <a13> header_statements:
        	<class 'list'>
        <a14> full_sql:
        	<class 'str'>
        <a15> returned:
        	<class 'dict'>
        
        ----------/Methods/---------
        <m1> .reload_source()
        <m2> .run()
        <m3> .get_statements()
        <m4> .fetch()
        <m5> .render()
        <m6> .raw()
        <m7> .execute()
        ```
Platform: any
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Requires-Python: >=3.7.
Description-Content-Type: text/markdown
Provides-Extra: testing
