Big Data

Authors

  • Tejashree Bhong SY Students, Department of Computer Engineering, Sahakar Maharshi Shankarrao Mohite Patil Institute of Technology and Research, Akluj, Solapur, Maharashtra Author
  • Poonam Jadhav SY Students, Department of Computer Engineering, Sahakar Maharshi Shankarrao Mohite Patil Institute of Technology and Research, Akluj, Solapur, Maharashtra Author
  • Janhavi Tupe SY Students, Department of Computer Engineering, Sahakar Maharshi Shankarrao Mohite Patil Institute of Technology and Research, Akluj, Solapur, Maharashtra Author
  • Vaishnavi Pawar SY Students, Department of Computer Engineering, Sahakar Maharshi Shankarrao Mohite Patil Institute of Technology and Research, Akluj, Solapur, Maharashtra Author
  • Swati Mane SY Students, Department of Computer Engineering, Sahakar Maharshi Shankarrao Mohite Patil Institute of Technology and Research, Akluj, Solapur, Maharashtra Author
  • Mr. Godase R C. Lecturer, Department of Computer Engineering, Sahakar Maharshi Shankarrao Mohite Patil Institute of Technology and Research, Akluj, Solapur, Maharashtra Author

DOI:

https://doi.org/10.29070/cd09yz64

Keywords:

Data, Comprehend, Innovative

Abstract

Big data is explained as huge amounts of data that processing unit and traditional datastorage can't store and process and it is a term that has become recently popular. Data in Petabytes canbe considered as big data. big data, according to gartner means – ―Big data‖ is velocity, high-volume, orvariety information assets that demand low cost, innovative forms of information processing forenhanced insight and decision making.‖ However, this huge amount of data offers useful statistics fororganizations when assessed appropriately with modern equipment, so that it can help them to makebetter decisions to improve their business.

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References

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Published

2022-03-01