Exact(1)
We developed a robust 8-amplicon sequencinguencing strategy that regularly produces complete, forensic-quality mtGenome haplotypes in the first pass of data generation.
Similar(59)
They can be implemented on any distributed-memory parallel machine which allows for message-passing of data between independently executing processors.
The data_flow_direction specifies the passing of data elements from a block-task instance to the corresponding sub-workflow that defines its implementation.
Firstly, those that focus on standard mobile devices and take advantage of standard mobile networks for the transmission of data (e.g., using SMS to pass text messages, as in RapidSMS or richer form-based data in EpiSurveyor (now Magpi) ) and, secondly, those that take advantage of mobile data networks to enable the passing of data via the web (e.g., ODK and EpiCollect ).
Quality indices using simple criteria are given for ages and magnitudes as a first pass assessment of data reliability (Crosweller et al. 2012).
would be identified and included in a 'first pass' of the data.
These networks were used to build related word lists encapsulating conceptual connections (e.g. church tower related to clock) so that during a secondary pass of the data, related network segments could be merged.
As a first pass of the data we focussed on gains occurring in a very high proportion of cases which included regions of chromosomes 3, 7, 8 and 20.
We have developed a high-throughput amplification and sequencing strategy that regularly produces redundant sequence coverage across the entire mtGenome in the first pass of automated data generation.
The strategy produces redundant sequence coverage across the entire mtGenome in the first pass of automated data generation, and generates high-quality sequences from a range of DNA input quantities and from samples representing diverse mtDNA haplogroups.
Many applications need online prediction models which can evolve automatically with data distribution drift and algorithms which can support single-pass processing of data, which are still faced with many challenges.
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