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Time Series Datasets

Time series datasets are a crucial component of data science and analytics, especially in fields where understanding trends, patterns, and temporal dynamics is essential. A time series is a sequence of data points collected or recorded at specific time intervals. These datasets are omnipresent across various domains such as finance, economics, climate science, healthcare, and more. The importance of time series data lies in its ability to help predict future events based on past trends, making it invaluable for decision-making processes.

Time series analysis involves various techniques to model and interpret temporal data, aiming to uncover underlying patterns, forecast future values, and understand the structure of the data over time. These techniques can be applied to a multitude of real-world problems, including stock price prediction, weather forecasting, sales forecasting, anomaly detection in industrial equipment, and monitoring of environmental conditions.

Time Series Datasets List

1. M4 Competition Dataset

Description: The M4 dataset includes 100,000 time series from various domains such as demographics, finance, economics, and industry.

2. UCI Machine Learning Repository – Household Power Consumption

Description: This dataset contains measurements of electric power consumption in one household over a period of almost 4 years.

3. Yahoo Finance Stock Prices

Description: This dataset provides historical stock prices of various companies listed on the stock market.

4. FRED Economic Data

Description: Federal Reserve Economic Data (FRED) provides thousands of time series datasets on various economic indicators.

5. NASA’s Earth Data

Description: This includes various time series datasets related to Earth science such as temperature, precipitation, and other atmospheric conditions.

6. NOAA Global Historical Climatology Network

Description: This dataset provides historical daily and monthly climatological data.

7. Kaggle Time Series Datasets

Description: Kaggle hosts numerous time series datasets across various domains such as retail sales, weather data, and financial metrics.

8. Rossmann Store Sales

Description: This dataset contains historical sales data for Rossmann stores, including sales, customers, and promotions.

9. Wind Turbine SCADA Dataset

Description: This dataset consists of SCADA data collected from wind turbines, including various sensor readings over time.

10. Bitcoin Historical Data

Description: This dataset provides historical data of Bitcoin prices and trading volumes.

11. Google Trends

Description: Google Trends provides time series data on the popularity of search queries in Google across various regions and languages.

12. Air Quality Data

Description: This dataset includes air quality measurements from various locations around the world.




Reffered: https://www.geeksforgeeks.org


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