Enabling Exploratory Analysis with SQL & Python
Autoencoders and methods like ACF and PACF effectively identify seasonality in time series data, enhancing business forecasting.
Data preprocessing refines raw data for accurate analysis by handling missing values, normalizing and processing data.
Stationarity, crucial for reliable time series analysis, is confirmed through tests like ADF and KPSS, facilitating easier modeling and interpretation.
The article uses a mock AirPassengers dataset to visually demonstrate trends and seasonal patterns in the airline industry.
Why and how to clean data
Compare, k-means, DBSCAN and Hierarchical Clustering
Learn how Fastcluster, Apache Spark, and GPU-accelerated solutions can help.
Sift through the noise and categorize datasets into actionable segments
Learn how to prevent overfitting from impacting your model.
Learn how to use autoencoders which are a class of artificial neural networks for data compression and reconstruction.
Learn to ensure the validity, reliability, and accuracy of your model.
Learn how to describe, summarize, and find patterns in the data from a single variable.
See interactive examples of what you can do with Hex, from complex ML forecasting to critical business dashboards.