• We just launched and are currently in beta. Join us as we build and grow the community.

Data Pipelines With Snowflake And Streamlit

Pigeons

Binary Exploit Developer
P Rep
0
0
0
Rep
0
P Vouches
0
0
0
Vouches
0
Posts
144
Likes
155
Bits
2 MONTHS
2 2 MONTHS OF SERVICE
LEVEL 1 300 XP
38ae3238e18df725bfc3fcf9a65291a9.jpg


Data Pipelines With Snowflake And Streamlit
Published 9/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.97 GB | Duration: 5h 18m

Using Snowflake to data engineer Kaggle and Google Trends data with Python procedures and tasks

What you'll learn

Setup Snowflake and AWS Accounts

Work with Kaggle and SerpAPI

Download and manipulate data with Jupyter Notebooks on VS Code

Work with External Access Integration and Storage Integration on Snowflake

Create Snowflake Python based procedures

Create Snowflake tasks

Create Streamlit apps inside of Snowflake

Requirements

Proficient knowledge on SQL and basic knowledge on Snowflake database

Basic knowledge on data modeling and engineering

Proficient Python knowledge

Description

This course focuses on building a data engineering pipeline that integrates multiple data sources, including Kaggle datasets and Google Trends data (fetched via SerpAPI), to analyze the relationship between Netflix show releases and the popularity of actors. You'll learn to gather and combine data on Netflix actors and their trends on Google, particularly in the weeks following a show's release.You will use Kaggle as a source for the Netflix shows and actors dataset and Google Trends (accessed via SerpAPI) to fetch real-time search data for the actors. This data will be stored and processed within the Snowflake database, leveraging its cloud-native architecture for optimal scalability and performance.Technical Stack Overview:Snowflake Database: The central repository for storing and querying data.Streamlit in Snowflake: A web app framework to visualize the data directly inside Snowflake.AWS S3: For data storage and retrieval, particularly for intermediate datasets.Snowflake Python Procedures: Automating data manipulation and pipeline processes.Snowflake External Access & Storage Integrations: Managing secure access to external services and storage.By the end of the course, you'll have a fully functional data pipeline that processes and combines streaming data, cloud storage, and APIs for trend analysis, visualized through an interactive Streamlit app within Snowflake.

RapidGator



You must upgrade your account or reply in the thread to view hidden text.


Download Udemy_Data_Pipelines_with_Snowflake_and_Streamlit.part1.rar fast and secure rapidgator.net


You must upgrade your account or reply in the thread to view hidden text.


Download Udemy_Data_Pipelines_with_Snowflake_and_Streamlit.part2.rar fast and secure rapidgator.net
 

432,645

312,569

312,578

Top