http://injection-molding-machine.tayu.cn/injection_molding_machine/527.html
Large injection molding machine to make good use confidential data, we need to break through the core technology categories
The first is how the injection molding machine data management problems.
 After the massive injection molding machine machine type data such as 
time series, spatial and temporal high-speed data acquisition is 
complete, it needs to survive, this relates to data valid packing, 
compression, issue placed. Data survive it is to be used, which requires
 support queries to quickly locate the data application requirements, 
which in turn is an example of how to establish efficient spatiotemporal
 data indexing problems.
Better manage data stored, the next question is how to support a variety
 of analysis. Did people know the actual analysis, the analysis is much 
more than a bunch of algorithm development issues. Algorithm is only a 
small part of the work, most of the work is based on the understanding 
of the business problem to select the data needed to understand the 
characteristics of the data, and then design an appropriate model and 
algorithm based on the characteristics. This understanding of the 
characteristics of intermediate data big machine data is very difficult.
 Because the machine data can not be an intuitive understanding of the 
human need to interact with feature projects. In addition, from the 
perspective of models and algorithms, machine data is often a physical 
world system of perception results, and the physical world there are 
many mechanistic principles exist, such as mechanical fields of 
mechanics, metallurgy fields of chemistry, so the injection molding 
machine analysis of large-scale machine data requires an organic 
combination of mechanistic models and statistical models. Another often 
overlooked issue is data quality problem - how to grasp the quality of 
the data, how to fix data quality.
Angle talk application, how to more easily access and use of data 
analysis, especially for experts in the field. In the multi-source 
heterogeneous data, mask data integration problems associated with such 
experts in the field do not need to understand the complexity of big 
data technology and programming.
 
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