Page 57 - Big data - Concept and application for telecommunications
P. 57

Big data - Concept and application for telecommunications                       1


                    NOTE  2  –  Data  license  policy  is  used  to  set  up  application  conditions,  period  of  validity  and
                    authentication method for different licenses.
                    NOTE 3 – Data price policy is used to set reasonable prices according to data volume, data sources
                    and other conditions. In some cases, data prices should be set by negotiating with data users.
            –       the ability to check and delete useless policies. For example, if a data policy is updated, obsolete
                    ones need to be deleted;
            –       the ability to apply data policies to the process of data collection, data processing, data preservation,
                    data storage, etc.
                    NOTE 4 – Data preservation policy is used to protect and prolong the existence and authenticity of
                    data and its metadata.

            7.3.3.3  Data catalogue functional component

            The data catalogue functional component is mainly responsible for registering data catalogue, and it also
            supports searching data by browsing data catalogue. This functional component is a sub-function of the
            service catalogue functional component defined in [ITU-T Y.3502].
            This functional component provides:

            –       registering a data catalogue to cloud service partner (CSP) for searching the appropriate data. Data
                    catalogue provides data access methods, data use policy, etc.;
            –       data searching capability that allows browsing of data catalogue and searching data with keywords,
                    application domain, specific data fields, etc.

            7.3.3.4  Resource orchestration functional component for big data
            BDaaS  services  are  provisioned  and  maintained  over  underlying  resources  which  belong  to  the  cloud
            computing infrastructure, including processing resources, storage resources and network resources. The
            resource orchestration functional component for big data is  responsible for binding, load balancing and
            scheduling resources provided by service providers (e.g., CSP: big data infrastructure provider (BDIP)) and
            requested by CSC: BDSU.
            This functional component provides:

            –       resource binding that supports allocating resources related to data processing, data storage and
                    data analysis;
            –       resource load balancing that enables automated resource movement as workload requirements
                    change;
            –       resource scheduling that allocates resources to tasks required by big data services, and schedules
                    the start- and end-time of each task according to resource availability.


            8       Cross-cutting aspects for BDaaS
            Cross-cutting aspects can be shared and can impact multiple roles, cloud computing activities and functional
            components, as described in [ITU-T Y.3502]. This clause defines cross-cutting aspects for BDaaS.

            8.1     Data redundancy

            Data  redundancy  refers  to  the  repeated  occurrence  of  the  same  data  in  the  system.  For  example,  in  a
            relational database, data redundancy mainly refers to the repeated storage of the same data in the relational
            database, including repetition of tables, attributes, tuples, and attribute values. Necessary data redundancy
            can  improve  the  anti-interference  ability  of  data,  thus  preventing  data  loss  and  errors.  For  example,
            redundantly encoding data by adding several bits based on the length of the original binary code, to prevent
            key data loss and errors.







                                                                                    Basics of Big data     49
   52   53   54   55   56   57   58   59   60   61   62