# SnowConn
This repository is a wrapper around the [snowflake SQLAlchemy](https://docs.snowflake.net/manuals/user-guide/sqlalchemy.html)
library. It manages the creation of connections and provides a few convenience functions that should be good enough
to cover most use cases yet be flexible enough to allow additional wrappers to be written around to serve more specific
use cases for different teams.
## Installation
To install latest version released to pypi with pip:
```bash
pip install snowconn
```
To install the latest version directly from the repo:
```bash
pip install 'git+ssh://[email protected]/Daltix/SnowConn.git@master#egg=snowconn'
```
## Connection
Everything is implemented in a single `SnowConn` class. To import it is always the same:
```py
from snowconn import SnowConn
```
### (1) Connection using your own personal creds
Install [snowsql](https://docs.snowflake.net/manuals/user-guide/snowsql-install-config.html)
and then configure the `~/.snowsql/config` as per the instructions. You can test that it is correctly installed
by then executing `snowsql` from the command line.
*WARNING* Be sure to configure your account name like the following:
```
accountname = eq94734.eu-west-1
```
If you don't include the `eu-west-1` part, it will hang for about a minute and then give you a permission denied.
Now that you are able to execute `snowsql` to successfully connect, you are ready to use the `SnowConn.connect` function:
```py
conn = SnowConn.connect()
```
That's it you are connected! You can connect to a specific schema / database with the following:
```py
conn = SnowConn.connect('daltix_prod', 'public')
```
### (2) Connection using aws secrets manager
You need to have boto3 installed which you can do so with the following:
```
pip install boto3
```
Now you must satisfy the folloing requirements:
1. Have a secret stored in an accessable aws account
1. The secret must have the following keys:
- `USERNAME`
- `PASSWORD`
- `ACCOUNT`
- `ROLE`
For this example, we will assume the `price_plotter` is the secret manager that we will be using.
Now that you know the name of the secret, you MUST be sure that the context in which it is running has access to read
that secret. Once this is done, you can now execute the following code:
```py
conn = SnowConn.credsman_connect('price_plotter')
```
And you are connected! You can also pass the database and schema along
```py
conn = SnowConn.credsman_connect('price_plotter', 'daltix_prod', 'public')
```
An example of a policy that gives access to the `price_plotter` looks like this:
```
{
"Version": "2012-10-17",
"Statement": [
{
"Sid": "VisualEditor0",
"Effect": "Allow",
"Action": [
"secretsmanager:GetResourcePolicy",
"secretsmanager:GetSecretValue",
"secretsmanager:DescribeSecret",
"secretsmanager:ListSecretVersionIds"
],
"Resource": "arn:aws:secretsmanager:eu-west-1:<your-account-number>:secret:price_plotter-AdcNpp"
}
]
}
```
And an example of this in a serverless.yml looks like this:
```
iamRoleStatements:
- Effect: Allow
Action:
- secretsmanager:DescribeSecret
- secretsmanager:List*
Resource:
- "*"
- Effect: Allow
Action:
- secretsmanager:*
Resource:
- { Fn::Sub: "arn:aws:secretsmanager:${AWS::Region}:${AWS::AccountId}:secret:price_plotter-??????" }
```
## API
Now that you're connected, there are a few low-level functions that you can use to programatically interact with
the snowflake tables that you have access to.
The rest of these examples assume that you have used one of the above methods to connect and have access to the
`daltix_prod.public.price` table.
### execute_simple
The exc_simple function is used for when you have a single statement to execute and the result set can fit into memory. It
takes a single argument which a string of the SQL statement that you with to execute. Take the following for example:
```py
>>> conn.execute_simple('select * from price limit 1;')
[{'DALTIX_ID': '0d3c30353035a6ab5747237a1f2600bbf5ddd27401372c5effe0f2790a88ad56', 'SHOP': 'ahed', 'COUNTRY': 'de', 'PRODUCT_ID': '616846.0', 'LOCATION': 'base', 'PRICE': 37.99, 'PROMO_PRICE': None, 'PRICE_STD': None, 'PROMO_PRICE_STD': None, 'UNIT': None, 'UNIT_STD': None, 'IS_MAIN': True, 'VENDOR': None, 'VENDOR_STD': None, 'DOWNLOADED_ON': datetime.datetime(2018, 11, 18, 0, 0, 1), 'DOWNLOADED_ON_LOCAL': datetime.datetime(2018, 11, 18, 1, 0, 1), 'DOWNLOADED_ON_DATE': datetime.date(2018, 11, 18), 'IS_LATEST_PRICE': False}]
```
### execute_string
If you have multiple sql statements in a single string that you want to execute or the resultset is larger than
will fit into memory, this is the function that you want to use. It returns a list of cursors that are a result
of each of the statements that are contained in the string. See [here](https://docs.snowflake.net/manuals/user-guide/python-connector-api.html#execute_string) for the full documentation.
```py
>>> conn.execute_string('create temporary table price_small as (select * from price limit 1); select * from price_small;')
[<snowflake.connector.cursor.SnowflakeCursor object at 0x10f537898>, <snowflake.connector.cursor.SnowflakeCursor object at 0x10f52c588>]
```
### execute_file
If you have the contents of an sql file that you want to execute, you can use this function. For example:
```bash
echo "select * from price limit 1;" > query.sql
```
```py
>>> conn.execute_file('query.sql')
>>> [<snowflake.connector.cursor.SnowflakeCursor object at 0x1188d6390>]
```
This also returns a list of cursors the same as `execute_string` does. In fact, this function is nothing more than a very
simple wrapper around `execute_string`.
### read_df
Use this function to read the results of a query into a dataframe. Note that pandas is NOT a dependency of this repo so
if you want to use it you must satisfy this dependency yourself.
It takes one sql string as an argument and returns a dataframe.
```bash
>>> conn.read_df('select daltix_id, downloaded_on, price from price limit 5;')
daltix_id downloaded_on price
0 0d3c30353035a6ab5747237a1f2600bbf5ddd27401372c 2018-11-18 00:00:01 37.99
1 f5be8a5da3bde2da6a63fcad4e5c30823027324092234c 2018-11-18 00:00:02 9.99
2 f5be8a5da3bde2da6a63fcad4e5c30823027324092234c 2018-11-18 00:00:02 0.40
3 807e2a7706b8c515264fa55bed3891d5685ac5ee0148f0 2018-11-18 00:00:04 3.70
4 1e56339f99dc866cd4b87679aa686556a5ad2398d00c95 2018-11-18 00:00:06 3.76
>>>
```
### write_df
Use this to write a dataframe to Snowflake. This is a very thin wrapper around the pandas [DataFrame.to_sql()](https://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.to_sql.html) function.
Unfortunately, it doesn't play nice with dictionaries and arrays so the use cases are quite limited. Hopefully
we will improve upon this in the future.
### get_current_role
Returns the current role.
### close
Use this to cleanly close all connections that have ever been associated with this instance of SnowConn. If you don't
use this your process will hang for a while without saying anything before it actually exits.
## Accessing the connection objects directly
These functions are mostly wrappers around 2 connection libraries:
- [The snowflake python connector](https://docs.snowflake.net/manuals/user-guide/python-connector-api.html)
- [The snowflake SQLAlchemy library](https://docs.snowflake.net/manuals/user-guide/sqlalchemy.html)
Should you need to use either of these yourself, you can ask for the connections yourself with the following
functions:
### get_raw_connection
This will return the instance of a snowflake connector which is documented [here](https://docs.snowflake.net/manuals/user-guide/python-connector-api.html#connect). It is a good choice if you have ve
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