I'm intending to create a demographic feature store from the ABS 2016 census data packs to use for various machine learning and analysis tasks. Across all packs, the census data contains a total of approx. 15,000 columns (features) containing float values. I've managed to get the data as one wide table in parquet format. I've tried loading and processing the data in Spark, but Spark throws different exceptions every time I run some analysis job so I guess these are too many columns.
What would be the best way to model the data across multiple tables perhaps to process these features effectively in Spark? The use cases for using this feature store would be to find top 100-200 features most correlated/having highest NMI with a given internal company metric and use them for predictive or descriptive analytics.