Team:Groningen/modeling results
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The Cumulus system allows for large speedups by parallelization through both the cloud and added machines. We tried this with some typical cloud intances and some local machines in the lab, the results are listed below. The benchmarking was done the the Pbad characterization task described above. | The Cumulus system allows for large speedups by parallelization through both the cloud and added machines. We tried this with some typical cloud intances and some local machines in the lab, the results are listed below. The benchmarking was done the the Pbad characterization task described above. | ||
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Revision as of 12:11, 21 September 2011
Results
Fitting
In its most simple use the Cumulus system can be used to characterize promoters. The example below shows how this can be done for the Pbad Promoter with flowcytometry data. The measurements points in this case are generated by comparing as measurement of an unknown part against two measurements from a well characterized one.
movie
Visulisation of out model
Because we did not manage to finish our model we decided to try to model our system in the Cumulus system. One of the main problems in assembling our system seemed to be the defective hybB promoter. For this reason in this model we replaced it with a LacI promoter. In order to operate our system we also assume that we can remove both arabinose and IPTG from the medium in an effcient way.
Speedup
The Cumulus system allows for large speedups by parallelization through both the cloud and added machines. We tried this with some typical cloud intances and some local machines in the lab, the results are listed below. The benchmarking was done the the Pbad characterization task described above.