Without integration services big data can t happen.
Big data architecture stack layers.
To empower users to analyze the data the architecture may include a data modeling layer such as a multidimensional olap cube or tabular data model in azure analysis services.
The analytics layer interacts with stored data to extract business intelligence.
What makes big data big is that it relies on picking up lots of data from lots of sources.
In this layer analysts process large.
The data layer at the bottom of the stack are technologies that store masses of raw data which comes from traditional sources like oltp databases and newer less structured sources like log files sensors web analytics document and media archives.
The layers are merely logical.
The big data architecture might store structured data in a rdbms and unstructured data in a specialized file system like hadoop distributed file system hdfs or a nosql database.
Security layer this will span all three layers and ensures protection of key corporate data as well as to monitor manage and orchestrate quick scaling on an ongoing basis.
New big data solutions will have to cohabitate with any existing data discovery tools along with the newer analytics applications to the full value from data.
The security requirements have to be closely aligned to specific business needs.
Big data layers as you see in the preceding diagram big data architecture or unified architecture is comprised of several layers and provides a way to organize various components representing.
Logical layers of a big data solution logical layers offer a way to organize your components.
Some unique challenges arise when big data becomes part of the strategy.
The processing layer is the arguably the most important layer in the end to end big data technology stack as the actual number crunching happens in this layer.
In addition keep in mind that interfaces exist at every level and between every layer of the stack.
The goal of most big data solutions is to provide insights into the data through analysis and reporting.
Multiple analytics tools operate in the big data environment.
Therefore open application programming interfaces apis will be core to any big data architecture.
Increasingly storage happens in the cloud or on virtualized local resources.