senzelden / twitter_data_pipeline
Sentiment Analysis of tweets about car manufacturers. Complete Docker Pipeline with ETL job that is managed through Airflow.
☆8Updated 4 years ago
Related projects ⓘ
Alternatives and complementary repositories for twitter_data_pipeline
- My Udacity Data Engineer Nano Degree Projects aka Udacity DEND☆16Updated 4 years ago
- Portofolio repository for Udacity Data Scientist Nanodegree☆38Updated 4 years ago
- Simple ETL pipeline using Python☆20Updated last year
- Segmented customers based on Recency,Frequency & Monetary Value (RFM) metrics using K-means clustering algorithm☆9Updated 4 years ago
- Predict life expectancy of a country or a geographical area based on socioeconomic factors.☆32Updated 5 years ago
- ☆18Updated 10 months ago
- Project - Data Processing and Analysis in Python Course☆41Updated 6 years ago
- Jupyter Notebook from Selenium Tutorial: Scraping Glassdoor.com"☆93Updated last year
- ☆57Updated 3 years ago
- Customer Analytics for a FMCG company (K-means clustering, PCA, logistic regression, linear regression)☆16Updated 3 years ago
- Architecture of Streaming Twitter Data into Apache Kafka cluster, performing simple sentiment analysis with afinn module, storing the dat…☆20Updated 4 years ago
- Customer & Purchase Analytics using Segmentation, Targeting, Positioning, Marketing Mix, Price Elasticity☆41Updated 3 years ago
- ☆27Updated 11 months ago
- Here I will be exploring various tools and methods that are used in data engineering process with Python.☆22Updated 3 years ago
- This repo is meant to make it really easy to analyze the interplays between health and social media use.☆41Updated 2 years ago
- Classwork projects and home works done through Udacity data engineering nano degree☆74Updated 11 months ago
- PySpark functions and utilities with examples. Assists ETL process of data modeling☆99Updated 3 years ago
- Projects done in the Data Engineer Nanodegree Program by Udacity.com☆94Updated last year
- Deployment Heroku☆56Updated 5 months ago
- Data Engineering Capstone Project: ETL Pipelines and Data Warehouse Development