There are various tools for analyzing the data from software like simple spreadsheets, RDBMS, Hadoop, DWHs, NoSQL databases on the basis of data complexity. The small and structured dataset can be analyzed with spread sheets, but when this dataset grows beyond the size then it can be analyzed using RDBMS. The semi and unstructured data is tough to be analyzed with spread sheets and RDBMS. The problem gets aggravated with massive size of dataset. Hadoop and NoSQL technologies help to overcome these issues. The Hadoop and its ecosystem components like Hive, Pig solves the problem in batch oriented manner whereas NoSQL technologies like Cassandra, HBase, MongoDB provides real time environment for data analysis.
The big data mainly involves techniques like machine learning, statistical modeling, natural language processing, etc.
References:
- TeraData Vs Hadoop
- Statistical Model
- Statistical Inference
- Nonlinear Systems
- Descriptive Statistics
- Big Data
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