Due to their great ability to parallelize at a very high integration level, Multi-Processors Systems-on-Chip (MPSoCs) are good candidates for systems and applications such as multimedia. Memory is becoming a key player for significant improvements in these applications (power, performance and area). The large amount of data manipulated by these applications requires high-capacity computing and memory. Lately, new programming models have been introduced. This leads to the need of new optimization and mapping techniques suitable for embedded systems and their programming models. This article presents novel approaches for combining memory optimization with mapping of data-driven applications while considering anti-dependence conflicts. Two different approaches are studied and integrated with existing mapping algorithms. The first approach (based on heuristic algorithms) keeps the graph transformation for memory optimization stage from the mapping stage and enables their combination in a design flow. The second approach (based on evolutionary algorithms) combines these two stages and integrates them in a unique stage. Some significant improvements are obtained for memory gain, communication load and physical links.
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