Processor hardware has been architected with the assumption that most data access patterns would be linearly spatial in nature. But, most applications involve algorithms that are designed with optimal efficiency in mind, which results in non-spatial, multi-dimensional data access. Moreover, this data view or access pattern changes dynamically in different program phases. This results in a mismatch between the processor hardware\u27s view of data and the algorithmic view of data, leading to significant memory access bottlenecks. This variation in data views is especially more pronounced in applications involving large datasets, leading to significantly increased latency and user response times. Previous attempts to tackle this problem were p...