Witshaper is the Professional (Computing Skills, English Learning and Soft Skills) Skill Development Training Center. We provide Professional IT Courses and Soft Skill Training in Dehradun to Students, Employees and organization. Who wish to pursue a career in IT Technology. Witshaper is led by a motivated team of IT experts and Soft Skill Professionals. We provide high quality trainings. Our Emphasis is on giving the practical knowledge to the students, so that they will get to know in depth and never forget what they opt, we provide to the students real learning environment. Witshaper prepares students and professionals to be the part of this growing industry. Be a part of Witshaper and get your dreams successful

Wednesday, 13 May 2015

presentation slides (Comparison of Efficient parallel Index Algorithms ) and presentation Moodle Based Skill Development Survey




presentation Moodle Based Skill Development Survey Module Implementation

Moodle is one of the leading web based learning management system with various plugins available for different functionality.This paper proposes the methods to add customized survey modules in Moodle. With this method we tested the  functionality of some soft skills based surveys and their outputs, integrated in Moodle



https://drive.google.com/file/d/0B7SRUSGOtQ9hZFdnY1Aza0JGNG8/view?usp=sharing

Comparison of Efficient parallel Index Algorithms used for RDF data store using Graphical processing unit with CUDA

The exponential growth of semantic web and the resultant generation of large-scale RDF (Resource Description Framework) triples pose new challenges in the domain of RDF-storage and retrieval.Graphical processing units (GPUs) are being actively probed in the area of Big Data study, machine learning, and augmented certainty ever since ,such applications are categorized by massive data spanned and produced over distributed network. GPUs be responsible for a parallel programming agenda using CUDA (Compute Unified Device Architecture) that can be developed to proficiently collected and make inferences on these massive data-sets. 



https://drive.google.com/file/d/0B7SRUSGOtQ9hcGRFaC0weGNOdDg/view?usp=sharing

No comments:

Post a Comment