Smart Non Redundant Data Extraction for Efficient Testing
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
www.ijsr.net | Open Access | Fully Refereed | Peer Reviewed International Journal

ISSN: 2319-7064

Views: 125 , Downloads: 110 | CTR: 88 % | Weekly Popularity: ⮙6

Research Paper | Computer Science & Engineering | India | Volume 7 Issue 9, September 2018

Smart Non Redundant Data Extraction for Efficient Testing

Anurag Sahu

This paper presents a framework for improving effectiveness of automated trying out in the absence of specs. The framework supports a fixed of associated techniques. First, it consists of a redundant-check detector for detecting redundant checks among mechanically generated take a look at inputs. These redundant tests boom testing time with out growing the potential to detect faults or growing our self belief inside the software. Second, the framework consists of a non-redundant-check generator that employs country-exploration techniques to generate non-redundant tests within the first location and makes use of symbolic execution techniques to in addition improve the effectiveness of take a look at generation. Third, because it is infeasible for builders to inspect the execution of a massive range of generated check inputs, the framework consists of a test selector that selects a small subset of take a look at inputs for inspection, those selected take a look at inputs exercise new program behavior that has no longer been exercised with the aid of manually created exams. Fourth, the framework consists of a test or that produces succinct state transition diagrams for inspection, these diagrams summary and summarize the behaviour exercised via the generated check inputs. Finally, the framework includes a software-spectra comparator that compares the internal software behaviour exercised by means of regression assessments executed on software versions, exposing behavioural differences past specific software outputs. The framework has been carried out and empirical consequences have shown that the evolved techniques inside the framework improve the effectiveness of computerized testing by using detecting high percentage of redundant exams among test inputs generated with the aid of current gear, generating non-redundant check inputs to obtain high structural coverage, lowering inspection efforts for detecting problems inside the software, and exposing extra behavioural differences for the duration of regression trying out

Keywords: Software Testing, ANFIS

Edition: Volume 7 Issue 9, September 2018

Pages: 1248 - 1253

Share this Article

How to Cite this Article?

Anurag Sahu, "Smart Non Redundant Data Extraction for Efficient Testing", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=ART2019679, Volume 7 Issue 9, September 2018, 1248 - 1253

125 PDF Views | 110 PDF Downloads

Download Article PDF



Similar Articles with Keyword 'Software Testing'

Views: 101 , Downloads: 64 | CTR: 63 % | Weekly Popularity: ⮙2

Research Paper, Computer Science & Engineering, India, Volume 9 Issue 12, December 2020

Pages: 1334 - 1337

Mutation Testing Techniques in Software Testing: A Review

Dushyant Singh, Parulpreet Singh

Share this Article

Views: 127 , Downloads: 107 | CTR: 84 % | Weekly Popularity: ⮙4

Survey Paper, Computer Science & Engineering, India, Volume 3 Issue 7, July 2014

Pages: 1109 - 1114

A Novel Approach to Metric Assessment, Productivity

Kishore K, Naresh E, Vijaya Kumar B P

Share this Article

Views: 125 , Downloads: 110 | CTR: 88 % | Weekly Popularity: ⮙6

Research Paper, Computer Science & Engineering, India, Volume 7 Issue 9, September 2018

Pages: 1248 - 1253

Smart Non Redundant Data Extraction for Efficient Testing

Anurag Sahu

Share this Article

Views: 133 , Downloads: 112 | CTR: 84 % | Weekly Popularity: ⮙2

Research Paper, Computer Science & Engineering, India, Volume 3 Issue 6, June 2014

Pages: 995 - 998

Test Data Generation for Basis Path Testing Using Genetic Algorithm and Clonal Selection Algorithm

Poonam Saini, Sanjay Tyagi

Share this Article

Views: 142 , Downloads: 112 | CTR: 79 % | Weekly Popularity: ⮙4

Review Papers, Computer Science & Engineering, India, Volume 3 Issue 10, October 2014

Pages: 1000 - 1002

Software Testing - Principles, Lifecycle, Limitations and Methods

Anupriya, Ajeta

Share this Article

Similar Articles with Keyword 'ANFIS'

Views: 125 , Downloads: 110 | CTR: 88 % | Weekly Popularity: ⮙6

Research Paper, Computer Science & Engineering, India, Volume 7 Issue 9, September 2018

Pages: 1248 - 1253

Smart Non Redundant Data Extraction for Efficient Testing

Anurag Sahu

Share this Article

Views: 132 , Downloads: 117 | CTR: 89 %

M.Tech / M.E / PhD Thesis, Computer Science & Engineering, India, Volume 5 Issue 6, June 2016

Pages: 1077 - 1083

Data Mining Application in Diabetes Diagnosis using Biomedical Records of Pathological Attribute

Naila, Anuradha Sharma

Share this Article

Views: 141 , Downloads: 119 | CTR: 84 % | Weekly Popularity: ⮙4

M.Tech / M.E / PhD Thesis, Computer Science & Engineering, India, Volume 6 Issue 1, January 2017

Pages: 1488 - 1492

Iris Recognition System Using ANFIS Classifier

Neelam Sharma, Preeti Singh

Share this Article

Views: 137 , Downloads: 122 | CTR: 89 % | Weekly Popularity: ⮙3

Research Paper, Computer Science & Engineering, India, Volume 4 Issue 10, October 2015

Pages: 721 - 723

Test Suite optimization Using Artificial Bee Colony and Adaptive Neural Fuzzy Inference System

Gurcharan Kaur, Bhupender Yadav

Share this Article

Views: 125 , Downloads: 122 | CTR: 98 % | Weekly Popularity: ⮙2

Research Paper, Computer Science & Engineering, Vietnam, Volume 6 Issue 12, December 2017

Pages: 1271 - 1276

A Method for Training a Fuzzy Constraint Network

Huy-Khoi Do, Thi-Xuan Tran, Van-Nui Nguyen

Share this Article
Top