Zaap Visualization of web traffic from http server logs.

Slides:



Advertisements
Similar presentations
Web Mining.
Advertisements

Google Chrome & Search C Chapter 18. Objectives 1.Use Google Chrome to navigate the Word Wide Web. 2.Manage bookmarks for web pages. 3.Perform basic keyword.
SIUG Annual Meeting 2010 UNC Charlotte January 28, 2010 SIUG Annual Meeting 2010 Web Logs: Finally! Now What Do We Do With Them? Dan Pfohl, UNC Wilmington.
© 2006 KDnuggets [16/Nov/2005:16:32: ] "GET /jobs/ HTTP/1.1" "
Social Media Remarketing Making the Most of Your Traffic.
Workloads Experimental environment prototype real sys exec- driven sim trace- driven sim stochastic sim Live workload Benchmark applications Micro- benchmark.
Measuring Success: SES London 2007 An Introduction to Web Analytics ● Types of Tracking ● Why You Need Analytics ● How to Employ Tracking Data ● Specific.
GETTING USER FEEDBACK USER-CENTERED DESIGN. AGENDA Focus groups In-lab studies A/B testing Card sorting Traffic analysis.
COMP106 Assignment 2 – A new interface design Proposal 6.
Like any machine, a website is the sum of its parts. Web analytics are the tools used to transform ordinary sites into high performance money making machines.
Do you think this site violates anyone’s privacy? Why or Why Not? No we do not think it violates anyone's privacy since it shows nothing more than if.
The Web is perhaps the single largest data source in the world. Due to the heterogeneity and lack of structure, mining and integration are challenging.
Automatic Data Collection: Server Logs As with all methods, have to ask: What are the goals for your system? –What constitutes success, or good quality.
Quality Assurance CS 615. Mission Statement The Quality Assurance team will provide assurance to stakeholders in CS-615/616 projects that their projects.
Business Blogs TEC 204 Data Management in Organizations.
12/11/01 Matt Bridges Advisor: Ralph Morelli. What is Web Analytics? In traditional commerce, store owners can observe their customers habits: What time.
Performance Assessment Min Song, Ph.D. Is 465. LEARNING OUTCOMES 4.1 Compare efficiency IT metrics and effectiveness IT metrics 4.2 List and describe.
Insight on Google Analytics Features - Suresh. K.
Microsoft Dynamics NAV 2009 RoleTailored Client Terminology May 2010.
E-insights, LLC © 2000 All rights reserved. Understanding Web Traffic Michael Whelan Part 1 of 2.
]. Website Must-Haves Know your audience Good design Clear navigation Clear messaging Web friendly content Good marketing strategy.
Web Design Process CMPT 281. Outline How do we know good sites from bad sites? Web design process Class design exercise.
WEB ANALYTICS Prof Sunil Wattal. Business questions How are people finding your website? What pages are the customers most interested in? Is your website.
Network and Active Directory Performance Monitoring and Troubleshooting NETW4008 Lecture 8.
The Art of Debugging Shlomy Gantz 02/13/01MDCFUG.
Server tools. Site server tools can be utilised to build, host, track and monitor transactions on a business site. There are a wide range of possibilities.
© 2008 Thomson, a part of the Thomson Corporation. Thomson, the Star logo, and Atomic Dog are trademarks used herein under license. All rights reserved.
Chapter 9 Site Traffic By : Eyad Almassri 1 E-commerce.
© 2006 KDnuggets [16/Nov/2005:16:32: ] "GET /jobs/ HTTP/1.1" "
Project Proposal Interface Design Website Coding Website Testing & Launching Website Maintenance.
Bayu Priyambadha, S.Kom Teknik Informatika Universitas Brawijaya.
Nilsa Polanco CMP 230 LA01 Meta Search Engine Presentation.
Web Metrics 1. Overview Introduction What ARE “web metrics”? Why Use Them? Server Logs Other Data Sources Wrap-up 2.
10 Reasons to Use Google Analytics By: Errett Cord
Web Analytics Unit 4-1(2005 Fall) Managing the Digital Enterprise By Professor Michael Rappa.
What is ? Free service offered by Google The most widely used website statistics service* Provides statistics and reports about visitors and transactions.
©2010 John Wiley and Sons Chapter 12 Research Methods in Human-Computer Interaction Chapter 12- Automated Data Collection.
Chapter 6 SAS ® OLAP Cube Studio. Section 6.1 SAS OLAP Cube Studio Architecture.
An Empirical Study of Visual Security Cues to Prevent the SSLstripping Attack Dongwan Shin and Rodrigo Lopes In Proc. 27 th Annual Computer Security Applications.
Designing & Testing Information Systems Notes Information Systems Design & Development: Purpose, features functionality, users & Testing.
Log files presented to : Sir Adnan presented by: SHAH RUKH.

Lecture 6 Title: Web Planning, Designing, Developing for E-Marketing By: Mr Hashem Alaidaros MKT 445.
What’s New for Web Developers in ASP.NET and Visual Studio 2008 Kate Gregory Microsoft Regional Director
Srivastava J., Cooley R., Deshpande M, Tan P.N.
Network Management Protocols and Applications Cliff Leach Mike Looney Danny Mar Monty Maughon.
MSF Design Example Conceptual Design Logical Design Physical Design.
Software Engineering User Interface Design Slide 1 User Interface Design.
EVALUATE YOUR SITE’S PERFORMANCE. Web site statistics Affiliate Sales Figures.
Is Your E-commerce Site Losing Customers? Sharon Taylor.
Web-Mining …searching for the knowledge on the Internet… Marko Grobelnik Institut Jožef Stefan.
© 2006 KDnuggets [16/Nov/2005:16:32: ] "GET /jobs/ HTTP/1.1" "
Glossary of Terms Sessions - (old name: Visits) Users - (old name: Unique Visitors) Pageviews Pages/Session Avg. Session Duration Bounce Rate %New Sessions.
Web Measurement. The Web is Different from other Commuication Media More precise measurement of activity on Web sites is available More precise measurement.
Information Design Trends Unit Five: Delivery Channels Lecture 2: Portals and Personalization Part 2.
Secondary Evidence for User Satisfaction With Community Information Systems Gregory B. Newby University of North Carolina at Chapel Hill ASIS Midyear Meeting.
Web Analytics and Reporting Michal Neuwirth Product Manager – Kentico Software.
Cool CF Debugging Shlomy Gantz 07/29/01CF_ODYSSEY.
The richest experience on the web Web Slices Accelerators Visual Search InPrivate Users Develop, test and debug without leaving the browser Built-in developer.
Web Analytics Fundamentals Presented by Tejaswi, Chandrika, Sunil.
Data mining in web applications
Rich Media Platform.
Adobe Digital Marketing
PIWIK JUNIOR TIDAL ASSOCIATE PROF., WEB SERVICES & MULTIMEDIA LIBRARIAN NEW YORK CITY COLLEGE OF TECHNOLOGY, CUNY.
IBM Tivoli Web Site Analyzer Training Document
W3 Status Analyzer.
Chapter 12: Automated data collection methods
Rahul Bansal, Lisa Kirch, Joe Morales, and Christopher Walker
Prototype using PowerPoint
CMP Creating Your Personal and Small Business Web Sites
Presentation transcript:

Zaap Visualization of web traffic from http server logs

Target Users  Web Developers Identify problems Collect statistics on users browsers  Site owners Evaluate return on investment  Marketing departments Track traffic sources Evaluate ad campaigns View traffic trends

Tasks  View traffic patterns over time  Filter display by many variables Date Page Browser Entry page Error codes User statistics Purchasing behavior Referral page / Search terms

Data  Automatic web server logs analyzed to identify patterns.  Example: revitupracing [25/Apr/2006:10:33: ] "GET /stylesheet.css HTTP/1.1" " "Mozilla/4.0 (compatible; MSIE 6.0; Windows NT 5.1; SV1;.NET CLR ;.NET CLR )"

Scenario of use  Joe Corp. just launched some new products on their website and they want to know how that launch is effecting the traffic that views their existing products.

Evaluation  Define detailed tasks  Create paper prototypes for those tasks  Observe users interacting with the paper prototype. Looking specifically for: Ease of use Accuracy User satisfactions Unforeseen applications that we might want to support

Risks  Because of the complexity of our data set we may not be able to base our paper prototypes on real data, we may have to simulate typical data instead.  Hypothermia

Design ideas  Graphical display of traffic over time. Bar graph or something similar  Filter the data with sliders bar grams based on the variables identified before.  Option to toggle display of traffic between different metrics Page views Bandwidth usage etc.