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# Assignment 3
Hey there! Welcome to Knowledge Lens Intern Training Program.
This Assignment will serve as a quick refresher on the usage of NoSQL and Time-series databases.
There are three tasks in this assignment, on completion of which you'll learn:
* How to interact with Mongo DB
* Using Pandas Dataframe and generating your own excel reports
* Leveraging Kairos Time-series database for data ingestion and querying the same
* Publishing and Consuming messages via MQTT protocol
* Caching mechanism using Redis DB
Happy Coding! :tada:
## :pushpin: Task 1: Working with Mongo - Advanced
### :golf: Areas covered:
- Working with NoSQL
- Working with Pandas
### :books: Description:
You are given with a dataset of a restaurant review in the form of a JSON file. The end goal of the project is to create an API interface that will provide the following:
1. Business name with maximum number of highest average review.
2. Which cuisine has the highest number of restaurants?
3. Generate Excel Report based on Cuisine, Name and borough
Sample Document:
```json
{
"address": {
"building": "120",
"coord": [
-73.9998042,
40.7251256
],
"street": "Prince Street",
"zipcode": "10012"
},
"borough": "Manhattan",
"cuisine": "Bakery",
"grades": [
{
"date": {
"$date": "2014-10-17T00:00:00.000Z"
},
"grade": "A",
"score": 11
},
{
"date": {
"$date": "2013-09-18T00:00:00.000Z"
},
"grade": "A",
"score": 13
},
{
"date": {
"$date": "2013-04-30T00:00:00.000Z"
},
"grade": "A",
"score": 7
},
{
"date": {
"$date": "2012-04-20T00:00:00.000Z"
},
"grade": "A",
"score": 7
},
{
"date": {
"$date": "2011-12-19T00:00:00.000Z"
},
"grade": "A",
"score": 3
}
],
"name": "Olive'S",
"restaurant_id": "40363151"
}
```
Bonus Points: Use Mongo Aggregate framework
### :wrench: Tools to use:
1. Pycharm / VSCode
2. Robo3T / Studio3T / MongoDB Compass
3. PyMongo
### :mag: References:
* [Querying Documents on Mongo](https://www.mongodb.com/docs/manual/tutorial/query-documents/)
* [Quick Summary on Mongo Aggregation Stages](https://www.mongodb.com/docs/manual/reference/operator/aggregation-pipeline/)
* [Generating Excel Sheets from a Pandas Dataframe](https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.to_excel.html)
* [How to return files on FastAPI response](https://fastapi.tiangolo.com/advanced/custom-response/#fileresponse)
* [PyMongo Official Documentation](https://pymongo.readthedocs.io/en/stable/)
_________________________________
## :pushpin: Task 2: Working with Time-series
### :golf: Areas covered:
- Timeseries Operation
- Working with Timeseries
- Working with Pandas
### :books: Description:
You are given with a dataset of weather in the form of a CSV file. The end goal of the project is to create an API interface that will provide the following:
1. Get daily, monthly, weekly and monthly aggregate (min, max, and average) of the data and generate report in Excel format.
Sample Document:
|Datetime |AEP_MW|
|----------------|------|
|31/12/2004 01:00|13478 |
|31/12/2004 02:00|12865 |
### :wrench: Tools to use:
1. Pycharm / VSCode
2. Pandas
3. Kairos
### :mag: References:
* [How to query Kairos DB using Metrics](https://kairosdb.github.io/docs/restapi/QueryMetrics.html)
------------------------------------------------------
## :pushpin: Task 3: Working with MQTT & REDIS
### :golf: Areas covered:
- MQTT Protocol
- Caching using Redis DB
### :books: Description
Data from different sites will be pushed with frequency of 10 seconds for the parameters PM10,PM2.5,SO2,NO2 via mqtt.
data can be of different quality - Good ( 0 ), Maintainance ( 1 ), Error ( 2 )
Based on the quality of data update to different Redis database.
Sample data format:
```json
{
"data" : { "PM10" : 100 , "PM2.5": 23, "SO2":21, "NO2": 32}
"site_id" : "site_100",
"data_quality": 1
}
```
Use Redis for caching/storing information
Create consumer's which consumes data from these topics and store to a Redis db based on data quality.
### :wrench: Tools to use:
1. Pycharm / VSCode
2. MQTT - (PIP package: `paho-mqtt`)
3. REDIS - (PIP package: `redis`)
### :mag: References:
* [Using MQTT in Python](https://www.emqx.com/en/blog/how-to-use-mqtt-in-python)
* [Connection to Redis in Python](https://docs.redis.com/latest/rs/references/client_references/client_python/)
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