Main Reference PaperLS-Join: Local Similarity Join on String Collections, IEEE Transactions on Knowledge and Data Engineering, March 2017 [Java].
  • Efficient local similarity verification method LS-JOIN is proposed to locate matching gram pair and longest similar substring pair for two local similar string. Two pruning techniques and an incremental method are proposed to improve the efficiency further.

+ Description
  • Efficient local similarity verification method LS-JOIN is proposed to locate matching gram pair and longest similar substring pair for two local similar string. Two pruning techniques and an incremental method are proposed to improve the efficiency further.

  • To do efficient local similarity join using LS-JOIN.

  • To carefully choose matching gram pair using local count filtering technique.

+ Aim & Objectives
  • To do efficient local similarity join using LS-JOIN.

  • To carefully choose matching gram pair using local count filtering technique.

  • Local similarity join with other similarity functions are explored.

+ Contribution
  • Local similarity join with other similarity functions are explored.

  • Java JDK 1.8, MySQL 5.5.40.

  • Netbeans 8.0.1, & J2SE.

+ Software Tools & Technologies
  • Java JDK 1.8, MySQL 5.5.40.

  • Netbeans 8.0.1, & J2SE.

  • M.E / M.Tech / MS / Ph.D.- Customized according to the client requirements.

+ Project Recommended For
  • M.E / M.Tech / MS / Ph.D.- Customized according to the client requirements.

  • No Readymade Projects-Depending on the complexity of the project and requirements.

+ Order To Delivery
  • No Readymade Projects-Depending on the complexity of the project and requirements.

Professional Ethics: We S-Logix would appreciate the students those who willingly contribute with atleast a line of thinking of their own while preparing the project with us. It is advised that the project given by us be considered only as a model project and be applied with confidence to contribute your own ideas through our expert guidance and enrich your knowledge.