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Enabling big data analytics in the hybrid cloud using iterative MapReduce

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Academic year: 2020

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Figure

Fig. 1. Hybrid IaaS OpenStack cloud example: one fat node on-premise and two fat nodes off-premise
Fig. 2. TestDFIO micro-calibration: rebalance progress for 20 GB total data
Fig. 3. K-Means: iterative clustering (10 iterations) of a 20 GB dataset.
Fig. 4. IGrep: iterative text analysis (10 iterations) of a 20 GB dataset.

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