Implementation of an Efficient MongoDB NoSQL Explorer for Big Data Visualization
ثبت نشده
چکیده
With the emergence of Big Data, the use of NoSQL (Not only SQL) has increased among internet companies and other enterprises. Benefits include horizontal scaling, finer control over availability and simplicity of design. NoSQL databases are considered as an alternative to relational databases, as its schema less data model is considered to be better for handling the large volumes of structured and unstructured data. This paper aims to introduce the concepts behind NoSQL and provide arguments for and against adopting NoSQL. A small library application has been developed to assess the stated benefits of NoSQL and NOSQL and compare its performance with the existing systems like MySQL/ Oracle and a re-usable tool called Mongo-sight is developed to visualize the data stored in it. Keywords— NOSQL, SQL, Databases, structured data, unstructured data, Big Data, Mongo-Sight, MongoDB. flexibility and more closely follows modern concepts like
منابع مشابه
Apply Uncertainty in Document-Oriented Database (MongoDB) Using F-XML
As moving to big data world where data is increasing in unstructured way with high velocity, there is a need of data-store to store this bundle amount of data. Traditionally, relational databases are used which are now not compatible to handle this large amount of data, so it is needed to move on to non-relational data-stores. In the current study, we have proposed an extension of the Mongo...
متن کاملApply Uncertainty in Document-Oriented Database (MongoDB) Using F-XML
As moving to big data world where data is increasing in unstructured way with high velocity, there is a need of data-store to store this bundle amount of data. Traditionally, relational databases are used which are now not compatible to handle this large amount of data, so it is needed to move on to non-relational data-stores. In the current study, we have proposed an extension of the Mongo...
متن کاملExploratory Implementation of Stream Clustering Algorithm using MongoDB
In the recent years, Big Data has become ubiquitous and various big data tools are greatly in use to accelerate the computing and analytics in various fields. Various algorithms in Computer Science use large and heterogeneous data sets; and hence could be explored with Big Data platforms. One such class of algorithms is stream clustering algorithms; dealing with large scale processing of increm...
متن کاملProviding R-Tree Support for MongoDB
Supporting large amounts of spatial data is a significant characteristic of modern databases. However, unlike some mature relational databases, such as Oracle and PostgreSQL, most of current burgeoning NoSQL databases are not well designed for storing geospatial data, which is becoming increasingly important in various fields. In this paper, we propose a novel method to provide R-tree index, as...
متن کاملFrom Relational Databases to NoSQL Databases: Performance Evaluation
In nowadays applications, the amount of data in the database grows exponentially. So, the DBMS must process these huge amounts of data as fast as possible. The main aim of this study is to prove that NoSQL databases process big data faster than relational database. The changing in applications, user and infrastructure characteristics, mostly of the Web 2.0 domain and cloud platform, led to expl...
متن کامل