SlideShare uma empresa Scribd logo
1 de 18
Baixar para ler offline
Email: mnnitpawan@gmail.com
Contact: 09651323357
Currently: Data Analyst (R Programmer)
Previously: Assistant
Professor(Mathematics)
Latest Degree: M.S Mathematics & Scientific
Computing
From:
Motilal Nehru National Institute Of Technology Allahabad
Bachelor of Science from Allahabad University major in Mathematics and
Physics.
Intermediate from Kendriya Vidyalaya A.F.S Memaura Lucknow in Science.
High School from Kendriya Vidyalaya A.F.S Memaura Lucknow .
• Present:-
Data Mining
Engineer at
Bloomingfeld
Ltd
• Assistant
Professor
Mathematics
at
LDC ITS
Engineering
• Lecturer
Mathematics
at
Lovely
Professional
University
Web Analytic Tools-
Ongoing
In this project I was involved for the analysis of web log files and its
graphical representations.
For analysis I used R programming and its packages. Mainly I focused
on the graphical representation, data manipulation and data cleaning of
log files.
Main packages I used for the analysis and representation of Log files
are:
1: Lattice
2: Ggplot
3: GoogleVis
4: R markdown (R Studio)
5: Polyr
6: RMySQl, RSQLite and RODBC
7: Shiny (R Studio)
Task Management
System
 In this project I implemented the algorithm
for the determination of efficiency and
workload of unique user, project leader and
training manager.
 I have created the graphical algorithm to
represent the data on website for ROR
users.
 I called the database in R by using R
packages and did the basic analysis for the
presentation on web pages.
During the job in Bloomingfeld Ltd I have learnt a lot to
explore me and my interest in Data Analysis. Here, I am
giving the glimpse what I have explored and learnt.
 R programming:- I have been introduced with this
programming language which has given me the strength to
deploy my mathematical and statistical skills into the practice.
In R, I have learnt so many packages and methods that are
widely useful for the analysis, generating reports and
graphical representation on website like
shiny, googleVis, Gt2k, lavaan, SEM and RMySQL etc…
 Big Data Insight: This is the major area wherein I am very
much interested to involve. I did survey over this area and its
practices. I have found myself very much indulge with
hadoop, hive, Pig and of course Map Reduce methods. I am
looking more over this field and deployment of these tools
with R.
 Strong logical, assessment and interpretation skills
 Good experience in deployment of statistical technique.
 Good ability to simulate mathematical model with modern
technique.
 Eager to learn new statistical and mathematical software and
methods.
Role and Description at LDC ITS Engineering
College and Lovely Professional University
Role: Assistant Professor at LDC Engineering College.
Lecturer at Lovely Professional University.
Subject Taught:
 Engineering Mathematics: Differential Calculus, Integral
Calculus, Vector Calculus, Multiple Integral , Fourier
transformation, Laplace transformation and Z transformation.
 Operation Research.
 Complex Analysis.
 Linear Algebra.
 ODE’s and PDE’s.
 Numerical Mathematics.
 Probability and Statistics.
Task Handled
 Academic Planner of Mathematics course of Biotechnology
Department.
 In charge of the Document and ID card section in CAD
(Centre of Admission).
 Given workshops on Matlab and Singular software to the
faculties and students.
Recognized Works:
 Involved in the Robotics clubs.
 Founder of Student Activity Organization.
 Given talks on mathematical and statistical software.
 Crystal clear understanding of the underlying principles of the
subject and its relevancy to other domains
 In-depth knowledge of various techniques and approaches applied
at a research
 Perfect knowledge about the common job duties of a lecturer and
ability to perform them efficiently
 A little familiarity with the general administrative environment at
educational institutes and idea about their practices
Programming Language:
EXPERT IN
Good command over integrated knowledge of
MySQL and R
BASIC IN
Software Skills:
EXPERT IN
BASIC IN
INTERMEDIATE IN
Operating System:
Kr Pawan
Kr Pawan

Mais conteúdo relacionado

Mais procurados

function (mal120) By Wakil Kumar
function (mal120) By Wakil Kumarfunction (mal120) By Wakil Kumar
function (mal120) By Wakil KumarWakil Kumar
 
Contextual Definition Generation
Contextual Definition GenerationContextual Definition Generation
Contextual Definition GenerationSergey Sosnovsky
 
SE-IT DSA LAB SYLLABUS
SE-IT DSA LAB SYLLABUSSE-IT DSA LAB SYLLABUS
SE-IT DSA LAB SYLLABUSnikshaikh786
 
Li Cheng WUSTL resume(Amazon)
Li Cheng WUSTL resume(Amazon)Li Cheng WUSTL resume(Amazon)
Li Cheng WUSTL resume(Amazon)Li Cheng
 
Data Structures
Data Structures Data Structures
Data Structures Cnu Vasu
 
Analysis results-of-multiple-choice-tests
Analysis results-of-multiple-choice-testsAnalysis results-of-multiple-choice-tests
Analysis results-of-multiple-choice-testsyousra_zarli
 
Software Programs for Data Analysis
Software Programs for Data AnalysisSoftware Programs for Data Analysis
Software Programs for Data Analysisunmgrc
 
Analysis computerscience disciplines
Analysis computerscience disciplinesAnalysis computerscience disciplines
Analysis computerscience disciplinesManuela Aparicio
 
Bibliometrics in Practice - evaluating REF
Bibliometrics in Practice - evaluating REFBibliometrics in Practice - evaluating REF
Bibliometrics in Practice - evaluating REFAlan Dix
 
8. Graph - Data Structures using C++ by Varsha Patil
8. Graph - Data Structures using C++ by Varsha Patil8. Graph - Data Structures using C++ by Varsha Patil
8. Graph - Data Structures using C++ by Varsha Patilwidespreadpromotion
 
application of numerical method
application of numerical methodapplication of numerical method
application of numerical methodShaikat Saha
 
7. Tree - Data Structures using C++ by Varsha Patil
7. Tree - Data Structures using C++ by Varsha Patil7. Tree - Data Structures using C++ by Varsha Patil
7. Tree - Data Structures using C++ by Varsha Patilwidespreadpromotion
 
Using Microsoft Excel
Using Microsoft ExcelUsing Microsoft Excel
Using Microsoft Excelcxevans
 

Mais procurados (20)

Resume_xuezhi
Resume_xuezhiResume_xuezhi
Resume_xuezhi
 
resume
resumeresume
resume
 
function (mal120) By Wakil Kumar
function (mal120) By Wakil Kumarfunction (mal120) By Wakil Kumar
function (mal120) By Wakil Kumar
 
Resume
ResumeResume
Resume
 
Contextual Definition Generation
Contextual Definition GenerationContextual Definition Generation
Contextual Definition Generation
 
SE-IT DSA LAB SYLLABUS
SE-IT DSA LAB SYLLABUSSE-IT DSA LAB SYLLABUS
SE-IT DSA LAB SYLLABUS
 
Li Cheng WUSTL resume(Amazon)
Li Cheng WUSTL resume(Amazon)Li Cheng WUSTL resume(Amazon)
Li Cheng WUSTL resume(Amazon)
 
On e-Assessment
On e-AssessmentOn e-Assessment
On e-Assessment
 
Spreadsheets Chapter 8
Spreadsheets Chapter 8Spreadsheets Chapter 8
Spreadsheets Chapter 8
 
Data Structures
Data Structures Data Structures
Data Structures
 
Analysis results-of-multiple-choice-tests
Analysis results-of-multiple-choice-testsAnalysis results-of-multiple-choice-tests
Analysis results-of-multiple-choice-tests
 
Educational satistics
Educational satisticsEducational satistics
Educational satistics
 
real life application in numerical method
real life application in numerical methodreal life application in numerical method
real life application in numerical method
 
Software Programs for Data Analysis
Software Programs for Data AnalysisSoftware Programs for Data Analysis
Software Programs for Data Analysis
 
Analysis computerscience disciplines
Analysis computerscience disciplinesAnalysis computerscience disciplines
Analysis computerscience disciplines
 
Bibliometrics in Practice - evaluating REF
Bibliometrics in Practice - evaluating REFBibliometrics in Practice - evaluating REF
Bibliometrics in Practice - evaluating REF
 
8. Graph - Data Structures using C++ by Varsha Patil
8. Graph - Data Structures using C++ by Varsha Patil8. Graph - Data Structures using C++ by Varsha Patil
8. Graph - Data Structures using C++ by Varsha Patil
 
application of numerical method
application of numerical methodapplication of numerical method
application of numerical method
 
7. Tree - Data Structures using C++ by Varsha Patil
7. Tree - Data Structures using C++ by Varsha Patil7. Tree - Data Structures using C++ by Varsha Patil
7. Tree - Data Structures using C++ by Varsha Patil
 
Using Microsoft Excel
Using Microsoft ExcelUsing Microsoft Excel
Using Microsoft Excel
 

Semelhante a Kr Pawan

ChenXin_Daniel_Han
ChenXin_Daniel_HanChenXin_Daniel_Han
ChenXin_Daniel_HanDaniel Han
 
co-po-example of bloomy taxonomy to grade your teaching methods
co-po-example of bloomy taxonomy to grade your teaching methodsco-po-example of bloomy taxonomy to grade your teaching methods
co-po-example of bloomy taxonomy to grade your teaching methodseurokidsThaneBhayend
 
An interdisciplinary course_in_digital_image_processing
An interdisciplinary course_in_digital_image_processingAn interdisciplinary course_in_digital_image_processing
An interdisciplinary course_in_digital_image_processingSyed Muhammad Hammad
 
313 IDS _Course_Introduction_PPT.pptx
313 IDS _Course_Introduction_PPT.pptx313 IDS _Course_Introduction_PPT.pptx
313 IDS _Course_Introduction_PPT.pptxsameernsn1
 
Santosh Sahu_MTech_CSE
Santosh Sahu_MTech_CSESantosh Sahu_MTech_CSE
Santosh Sahu_MTech_CSESantosh Sahu
 
fINAL Lesson_1_Course_Introduction_v1.pptx
fINAL Lesson_1_Course_Introduction_v1.pptxfINAL Lesson_1_Course_Introduction_v1.pptx
fINAL Lesson_1_Course_Introduction_v1.pptxdataKarthik
 
R18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdf
R18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdfR18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdf
R18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdfNaveen Kumar
 
Oral Defense presentation
Oral Defense presentationOral Defense presentation
Oral Defense presentationDwayne Squires
 
What is the difference between Data Science and Data Analytics.pdf
What is the difference between Data Science and Data Analytics.pdfWhat is the difference between Data Science and Data Analytics.pdf
What is the difference between Data Science and Data Analytics.pdfRoshni Sharma
 
Lecture_01.1.pptx
Lecture_01.1.pptxLecture_01.1.pptx
Lecture_01.1.pptxRockyIslam5
 
CS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdf
CS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdfCS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdf
CS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdfTitoMido1
 
Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...
Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...
Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...Pieter Heyvaert
 
DILEEP DATA SCIERNCES PROJECT POWERPOINT PPT
DILEEP DATA SCIERNCES PROJECT POWERPOINT PPTDILEEP DATA SCIERNCES PROJECT POWERPOINT PPT
DILEEP DATA SCIERNCES PROJECT POWERPOINT PPTPatnalaVeenamadhuri
 
Designing Object Oriented Software - lecture slides 2013
Designing Object Oriented Software - lecture slides 2013Designing Object Oriented Software - lecture slides 2013
Designing Object Oriented Software - lecture slides 2013Jouni Smed
 

Semelhante a Kr Pawan (20)

Btsdsb2018
Btsdsb2018Btsdsb2018
Btsdsb2018
 
ChenXin_Daniel_Han
ChenXin_Daniel_HanChenXin_Daniel_Han
ChenXin_Daniel_Han
 
Lecture 1.pptx
Lecture 1.pptxLecture 1.pptx
Lecture 1.pptx
 
co-po-example of bloomy taxonomy to grade your teaching methods
co-po-example of bloomy taxonomy to grade your teaching methodsco-po-example of bloomy taxonomy to grade your teaching methods
co-po-example of bloomy taxonomy to grade your teaching methods
 
An interdisciplinary course_in_digital_image_processing
An interdisciplinary course_in_digital_image_processingAn interdisciplinary course_in_digital_image_processing
An interdisciplinary course_in_digital_image_processing
 
Resume
ResumeResume
Resume
 
313 IDS _Course_Introduction_PPT.pptx
313 IDS _Course_Introduction_PPT.pptx313 IDS _Course_Introduction_PPT.pptx
313 IDS _Course_Introduction_PPT.pptx
 
Santosh Sahu_MTech_CSE
Santosh Sahu_MTech_CSESantosh Sahu_MTech_CSE
Santosh Sahu_MTech_CSE
 
DataScience_RoadMap_2023.pdf
DataScience_RoadMap_2023.pdfDataScience_RoadMap_2023.pdf
DataScience_RoadMap_2023.pdf
 
fINAL Lesson_1_Course_Introduction_v1.pptx
fINAL Lesson_1_Course_Introduction_v1.pptxfINAL Lesson_1_Course_Introduction_v1.pptx
fINAL Lesson_1_Course_Introduction_v1.pptx
 
R18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdf
R18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdfR18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdf
R18B.Tech.CSE(DataScience)IIIIVYearTentativeSyllabus.pdf
 
Oral Defense presentation
Oral Defense presentationOral Defense presentation
Oral Defense presentation
 
What is the difference between Data Science and Data Analytics.pdf
What is the difference between Data Science and Data Analytics.pdfWhat is the difference between Data Science and Data Analytics.pdf
What is the difference between Data Science and Data Analytics.pdf
 
Lecture_01.1.pptx
Lecture_01.1.pptxLecture_01.1.pptx
Lecture_01.1.pptx
 
C++chapter2671
C++chapter2671C++chapter2671
C++chapter2671
 
CS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdf
CS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdfCS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdf
CS251 Intro. to SE [Lec. 0 - Course Introduction & Plan] Spring 2022.pdf
 
Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...
Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...
Ontology-Based Data Access Mapping Generation using Data, Schema, Query, and ...
 
DILEEP DATA SCIERNCES PROJECT POWERPOINT PPT
DILEEP DATA SCIERNCES PROJECT POWERPOINT PPTDILEEP DATA SCIERNCES PROJECT POWERPOINT PPT
DILEEP DATA SCIERNCES PROJECT POWERPOINT PPT
 
keerthana gl resume.docx
keerthana gl resume.docxkeerthana gl resume.docx
keerthana gl resume.docx
 
Designing Object Oriented Software - lecture slides 2013
Designing Object Oriented Software - lecture slides 2013Designing Object Oriented Software - lecture slides 2013
Designing Object Oriented Software - lecture slides 2013
 

Último

Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Kaya Weers
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
Landscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfLandscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfAarwolf Industries LLC
 
QMMS Lesson 2 - Using MS Excel Formula.pdf
QMMS Lesson 2 - Using MS Excel Formula.pdfQMMS Lesson 2 - Using MS Excel Formula.pdf
QMMS Lesson 2 - Using MS Excel Formula.pdfROWELL MARQUINA
 
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...BookNet Canada
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Mark Goldstein
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Farhan Tariq
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPathCommunity
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfIngrid Airi González
 
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesAssure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesThousandEyes
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesKari Kakkonen
 
All These Sophisticated Attacks, Can We Really Detect Them - PDF
All These Sophisticated Attacks, Can We Really Detect Them - PDFAll These Sophisticated Attacks, Can We Really Detect Them - PDF
All These Sophisticated Attacks, Can We Really Detect Them - PDFMichael Gough
 
React Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkReact Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkPixlogix Infotech
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxAna-Maria Mihalceanu
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integrationmarketing932765
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfpanagenda
 
Microservices, Docker deploy and Microservices source code in C#
Microservices, Docker deploy and Microservices source code in C#Microservices, Docker deploy and Microservices source code in C#
Microservices, Docker deploy and Microservices source code in C#Karmanjay Verma
 
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality AssuranceInflectra
 
Digital Tools & AI in Career Development
Digital Tools & AI in Career DevelopmentDigital Tools & AI in Career Development
Digital Tools & AI in Career DevelopmentMahmoud Rabie
 
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...panagenda
 

Último (20)

Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
Landscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfLandscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdf
 
QMMS Lesson 2 - Using MS Excel Formula.pdf
QMMS Lesson 2 - Using MS Excel Formula.pdfQMMS Lesson 2 - Using MS Excel Formula.pdf
QMMS Lesson 2 - Using MS Excel Formula.pdf
 
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to Hero
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdf
 
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesAssure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examples
 
All These Sophisticated Attacks, Can We Really Detect Them - PDF
All These Sophisticated Attacks, Can We Really Detect Them - PDFAll These Sophisticated Attacks, Can We Really Detect Them - PDF
All These Sophisticated Attacks, Can We Really Detect Them - PDF
 
React Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkReact Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App Framework
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance Toolbox
 
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS:  6 Ways to Automate Your Data IntegrationBridging Between CAD & GIS:  6 Ways to Automate Your Data Integration
Bridging Between CAD & GIS: 6 Ways to Automate Your Data Integration
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
 
Microservices, Docker deploy and Microservices source code in C#
Microservices, Docker deploy and Microservices source code in C#Microservices, Docker deploy and Microservices source code in C#
Microservices, Docker deploy and Microservices source code in C#
 
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
 
Digital Tools & AI in Career Development
Digital Tools & AI in Career DevelopmentDigital Tools & AI in Career Development
Digital Tools & AI in Career Development
 
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
 

Kr Pawan

  • 2. Currently: Data Analyst (R Programmer) Previously: Assistant Professor(Mathematics)
  • 3. Latest Degree: M.S Mathematics & Scientific Computing From: Motilal Nehru National Institute Of Technology Allahabad Bachelor of Science from Allahabad University major in Mathematics and Physics. Intermediate from Kendriya Vidyalaya A.F.S Memaura Lucknow in Science. High School from Kendriya Vidyalaya A.F.S Memaura Lucknow .
  • 4. • Present:- Data Mining Engineer at Bloomingfeld Ltd • Assistant Professor Mathematics at LDC ITS Engineering • Lecturer Mathematics at Lovely Professional University
  • 5.
  • 6. Web Analytic Tools- Ongoing In this project I was involved for the analysis of web log files and its graphical representations. For analysis I used R programming and its packages. Mainly I focused on the graphical representation, data manipulation and data cleaning of log files. Main packages I used for the analysis and representation of Log files are: 1: Lattice 2: Ggplot 3: GoogleVis 4: R markdown (R Studio) 5: Polyr 6: RMySQl, RSQLite and RODBC 7: Shiny (R Studio)
  • 7.
  • 8. Task Management System  In this project I implemented the algorithm for the determination of efficiency and workload of unique user, project leader and training manager.  I have created the graphical algorithm to represent the data on website for ROR users.  I called the database in R by using R packages and did the basic analysis for the presentation on web pages.
  • 9. During the job in Bloomingfeld Ltd I have learnt a lot to explore me and my interest in Data Analysis. Here, I am giving the glimpse what I have explored and learnt.  R programming:- I have been introduced with this programming language which has given me the strength to deploy my mathematical and statistical skills into the practice. In R, I have learnt so many packages and methods that are widely useful for the analysis, generating reports and graphical representation on website like shiny, googleVis, Gt2k, lavaan, SEM and RMySQL etc…  Big Data Insight: This is the major area wherein I am very much interested to involve. I did survey over this area and its practices. I have found myself very much indulge with hadoop, hive, Pig and of course Map Reduce methods. I am looking more over this field and deployment of these tools with R.
  • 10.  Strong logical, assessment and interpretation skills  Good experience in deployment of statistical technique.  Good ability to simulate mathematical model with modern technique.  Eager to learn new statistical and mathematical software and methods.
  • 11. Role and Description at LDC ITS Engineering College and Lovely Professional University Role: Assistant Professor at LDC Engineering College. Lecturer at Lovely Professional University. Subject Taught:  Engineering Mathematics: Differential Calculus, Integral Calculus, Vector Calculus, Multiple Integral , Fourier transformation, Laplace transformation and Z transformation.  Operation Research.  Complex Analysis.  Linear Algebra.  ODE’s and PDE’s.  Numerical Mathematics.  Probability and Statistics.
  • 12. Task Handled  Academic Planner of Mathematics course of Biotechnology Department.  In charge of the Document and ID card section in CAD (Centre of Admission).  Given workshops on Matlab and Singular software to the faculties and students. Recognized Works:  Involved in the Robotics clubs.  Founder of Student Activity Organization.  Given talks on mathematical and statistical software.
  • 13.  Crystal clear understanding of the underlying principles of the subject and its relevancy to other domains  In-depth knowledge of various techniques and approaches applied at a research  Perfect knowledge about the common job duties of a lecturer and ability to perform them efficiently  A little familiarity with the general administrative environment at educational institutes and idea about their practices
  • 14. Programming Language: EXPERT IN Good command over integrated knowledge of MySQL and R BASIC IN
  • 15. Software Skills: EXPERT IN BASIC IN INTERMEDIATE IN