Using raw numpy arrays is a bit less user-friendly, but can be a lot more efficient memory wise (this articles says 3x less (http://gouthamanbalaraman.com/blog/numpy-vs-pandas-comparison.html)). Otherwise I would suggest working in a batch approach (see also this interesting SO question on the topic(https://stackoverflow.com/questions/14262433/large-data-work-flows-using-pandas)). But for some cases, batch is not really feasible.
And if you're going to work with real big data, consider hopping onto a pyspark cluster and just keep a terrabyte in memory if you really really want to. If you're…