When More Website Visitors Hurt Your Business - Are You Ready For Peak Traffic

Post on 15-May-2015

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Sometimes more web traffic hurts. What happens when more visitors cause poor Web performance? As a marketer, ecommerce manager or IT professional, your responsibility is to maximize online revenue, protect your brand, and ensure customer loyalty by providing consistent quality Web experiences at all times. But did you know that a lack of readiness resulting in poor web performance during peak traffic times significantly impacts your business results? A new survey of retail, travel and financial services online consumers found that customers spend a significant percentage of their budgets during peak traffic times, and 67% expect websites to work well regardless of the number of visitors. Moreover, 72% stated that their expectations were not met during 2009 peak traffic periods, and this is what they did about it: •78% went to a competitor’s site due to poor performance at peak traffic times •88% were less likely to return to a website •47% left with a negative perception of the company •42% discussed it either with friends or online Want to know more about how to protect revenue, brand and customer loyalty during peak traffic periods?

Transcript of When More Website Visitors Hurt Your Business - Are You Ready For Peak Traffic

Contents

ExecutiveSummary Pg4‐5

CustomersSpendBigDuringPeakTrafficTimes,andWon’tToleratePoorWebPerformance Pg7‐11

UserExpectationsWereNotMetin2009DuringPeakTrafficPeriods Pg13‐16

PoorExperiencesDuringPeakTrafficTimesDirectlyImpactBusinessResults Pg18‐23

BestPracticesforManagingPeakTrafficTimes Pg25‐26

AppendixI–Methodology Pg28

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  PeakOnlineTrafficPeriodsarecriticalsincemoreWebvisitorsmeanmorerevenueopportunities.Yetwhatareconsumers'expectationsduringpeaktraffictimes,andhowdotheybehavewhentheyexperiencepoorwebperformance?

 Tofindout,GomezcommissionedEquationResearchtoconductastudyofconsumerInternetusageexperiencesduringpeaktraffictimes  1,538respondentinterviewswerecarriedoutbetweenDec16–22,2009  Studywasconductedacross3verticals:Retail,TravelandFinancial

 ExamplesofPeakTrafficPeriods:  HolidayShoppingSeason,Valentine’sDay,Mother’sday,4thofJuly,Summer,TaxSeason,FinancialMarketMeltdowns,BacktoSchoolShopping.Thanksgiving,Xmastoendoftheyear...

Introduction

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KeyFinding1 Customersspendbigduringpeaktraffictimes,andwon’ttoleratepoorwebperformance  51%spendasignificantpercentageoftheirretailbudgetduringpeaktimes  67%expectwebsitestoworkwellregardlessofhowmanyvisitorsthesitegetsduringpeaktraffictimes

KeyFinding2 Userexpectationswerenotmetduring2009peaktrafficperiods

  72%experiencedslowerwebsitesmorefrequentlyduringpeaktraffictimesthanatothertimes

KeyFinding3 Poorexperiencesduringpeaktraffictimesdirectlyimpactbusinessresults

  78%wenttoacompetitor’ssiteduetopoorperformanceatpeaktimes  Afterapoorexperience…

 88%arelesslikelytoreturntoawebsite 47%leftwithanegativeperceptionofthecompany 42%discussediteitherwithfriendsoronline

ExecutiveSummary

4

ExecutiveSummaryAcrossIndustryVerticals

Vertical KeyFindings

Retail

•  51%spendasignificantpercentageoftheirbudgetduringpeaktimes

•  41%wouldabandonaretailer’sWebsiteatpeaktimesandshopsomewhereelseafteronlyoneortwobadexperiences

•  33%hadabadexperienceonaretailWebsitethis2009HolidayShoppingSeason

Travel

•  35%makeasignificantpercentageoftheirtravelbookingsduringpeaktimes

•  53%wouldabandonatravelWebsiteatpeaktraffictimesandbooksomewhereelseafteronlyoneortwobadexperiences

•  24%hadanegativeexperienceonatravelWebsiteduring2009peaktravelseason

FinancialServices

•  51%offinancialserviceusers&65%ofonlinestocktradershadpoorWebexperiencesduringpeakusagetimesin2009

•  42%offinancialserviceusers&57%ofonlinestocktraderswouldswitchtoacompetitorifdissatisfiedwiththeirfinancialprovider’sWebsite

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Key Finding 1 Customers Spend Big During Peak Traffic

Times and Won’t Tolerate Poor Web Performance

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51%SpendaSignificantPercentageofTheirRetailBudgetDuringPeakTrafficTimes

9%

40%

37%

14%Most

Asignificantpercentage

Alittle

None

51%

RetailFindings

Figure2:Percentageofretailonlinespendingthatoccursduringpeaktraffictimes

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35%MakeaSignificantPercentageofTheirTravelBookingsDuringPeakTrafficTimes

TravelFindings

17%

48%

28%

7%Most

Asignificantpercentage

Alittle

None

35%

Figure3:Percentageofonlinetravelbookingsdoneduringpeaktraffictimes

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67%ofOnlineConsumersExpectWebsitestoWorkWellRegardlessofHowManyVisitorstheSiteGetsDuringPeakTrafficTimes

67%

26%

4%

Iexpectwebsitestoworknomatterhowmanyvisitorstheyhave

Iunderstandthatmorevisitorswillslowwebsitesdown

Nospecificexpectations

Figure4:Onlineconsumers'expectationsduringpeaktraffictimes

Customers are just as demanding during peak traffic times

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Cross‐VerticalFindings

41%WouldAbandonaRetailer’sWebsiteatPeakTrafficTimes&ShopSomewhereElseAfterOnlyOneorTwoBadExperiences

10%wouldgotoacompetitivesiteafteronlyonebadexperience

10%

31%

33%

11%

6%

10%

None,I'dleaveafterthefirstbadexperience

2

3

4

5ormore

PoorexperienceswillnotimpactthewebsitesIusetoshop

41%

Figure5:Numberofpoorwebexperiencestoleratedduringpeaktraffictimesbeforeshoppingsomewhereelse

RetailFindings

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• Onlineconsumersarelesstolerantwithtravelsitesthanretailsites• 17%wouldgotoacompetitivesiterightaway

TravelFindings

53%WouldAbandonaTravelWebsiteatPeakTrafficTimes&BookSomewhereElseAfterOnlyOneorTwoBadExperiences

17%

36%

26%

7%

4%

10%

None,I'dleaveafterthefirstbadexperience

2

3

4

5ormore

PoorexperienceswillnotimpactthewebsitesIusefortravel

Figure6:Numberofpoorwebexperiencestoleratedatpeaktraffictimesbeforebookingtravelsomewhereelse

53%

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Key Finding 2 User Expectations Were Not Met in 2009

During Peak Traffic Periods

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72%ofOnlineConsumersExperiencedPoorPerformanceMoreFrequentlyDuringPeakTrafficPeriodsthanatOtherTimes

51%

58%

72%

ProblemsCompletingTransactions

ErrorsonWebPages

SlowerWebSites

Figure1:Typeofissuesencounteredmorefrequentlyduring2009peaktrafficperiods

SlowerWebSiteswastheproblemmostcommonlyencountered

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Cross‐VerticalFindings

33%HadaBadExperienceonaRetailWebsitethis2009HolidayShoppingSeason

15%foundproblemsencounteredduringthe2009HolidayShoppingSeasontobe‘unacceptable’

15%

18%

67%

Yes‐anditisunacceptable

Yes‐butitdoesn'tbotherme

No‐Ihaven'thadabadexperience

33% Had a bad experience?

Figure8:PoorwebexperiencesencounteredonaretailWebsitethis2009HolidayShoppingSeason

RetailFindings

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24%HadaNegativeExperienceonaTravelWebsiteDuring2009PeakTravelSeason

Slowloadtimewasthemostfrequentlycitedissueat18%

18%

11%

10%

1%

Slowloadtime

Problemscompletingtransactions

Errorsonwebpages

Other(specify)

Figure9:PoorExperiencesEncounteredonTravelWebsitesDuring2009PeakTrafficTimes(SummerandThanksgiving/Decemberseasons)

TravelFindings

24%

76%

Yes

No

Had a bad experience?

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51%ofFinancialServiceUsers&65%ofOnlineStockTradersHadPoorWebExperiencesDuringPeakUsageTimesin2009

43%

23%

20%

2%

Slowloadtime

Problemscompletingtransactions

Errorsonwebpages

Other(specify)

58%

28%

31%

1%

Slowloadtime

Problemscompletingtransactions

Errorsonwebpages

Other(specify)

Figure10:PoorExperiencesEncounteredonaFinancialWebsiteDuring2009PeakUsageTimes

FinancialFindings

51% financial service users reported these problems

65% online traders reported these problems

Slowloadtimewastheproblemmostcommonlyencountered

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Key Finding 3 Poor Experiences During Peak Traffic

Times Directly Impact Business Results

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• 78%havegonetoacompetitor’ssiteduetopoorperformanceatpeaktimes

Afterapoorexperience..

• 88%arelesslikelytoreturntoasite• 47%leftwithalesspositiveperceptionofthecompany

• 42%havediscusseditwithfamily,friends,peersoronline

PoorWebExperiencesDuringPeakTrafficTimesDirectlyImpactBusinessResults

Brand

CustomerLoyalty

Poorwebexperiencesimpactsrevenue,brand&loyalty

18

Cross‐VerticalFindings

78%HaveGonetoaCompetitiveSiteBecauseofPoorPerformanceDuringPeakTrafficTimes

30%havegonetoacompetitivesiterightawayduetopoorperformanceduringpeaktrafficperiods

22%

48%

30%Yes‐Ihavelittlepatienceforpoorwebsiteperformance

Yes‐butonlyafterseveralbadexperiences

Noimpact

78%

Figure11:PercentageofconsumersthatswitchedtoacompetitiveWebsiteafterapoorWebexperienceduringpeaktraffictimes

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Cross‐VerticalFindings

88%AreLessLikelytoReturnAfteraPoorWebExperience

28%haveverylittletoleranceforpoorperformanceandarelesslikelytogivethewebsiteanotherchance

13%

60%

28%I'mlesslikelytoreturn‐Ihavelittlepatienceforpoorwebsiteperformance

I'mlesslikelytoreturn‐butonlyafterseveralbadexperiences

Noimpact

Figure12:PercentageofconsumerslesslikelytoreturnafterapoorWebexperience

88%

20

Cross‐VerticalFindings

AfteraPoorWebExperience,47%LeftwithaNegativePerception

47%

34%

8%

Leftwithalesspositiveperceptionofthecompany

Toldfriends,familyorcolleaguesabouttheexperience

WroteabouttheexperienceonFacebook,Twitter,ablogora

forum

Figure12:Impactonbrand&actionstakenafterapoorWebexperience

42%

42% Discussed poor experiences either with friends or online

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Cross‐VerticalFindings

52%ofFinancialServiceUsersand68%ofOnlineStockTradersTookSomeNegativeActionasaResultofaBadWebExperience

29%

17%

13%

7%

Lesslikelytopurchaseadditionalservicesfromthem

Tellmyfriends/family/peersorwriteaboutitonthe

Internet

Useanotherfinancialprovider'ssite

Closemyaccount

40%

29%

27%

14%

Lesslikelytopurchaseadditionalservicesfrom

them

Tellmyfriends/family/peersorwriteaboutitonthe

Internet

Useanotherfinancialprovider'ssite

Closemyaccount

FinancialFindings

Figure13:Actionstakenasaresultofpoorfinancialwebsiteexperiences

52% financial service users took these actions after a poor Web experience

68% online stock traders took these actions after a poor Web experience

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42%ofFinancialServiceUsers&57%ofOnlineStockTradersWouldSwitchtoaCompetitorifDissatisfiedWithTheirFinancialProvider’sWebsite

42%

58%

Yes

No 57%

43%

Financial Service Users Online Stock Traders

Figure14:WouldSwitchtoacompetitorasaresultofabadexperienceonafinancialprovider’sWebsite

FinancialFindings

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Best Practices for Managing Peak Traffic Times

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BestPracticesforManagingPeakTrafficTimes

LoadTestingistheonlywaytoknowhowanapplicationwillperformunderpeaktrafficconditions:

•  End‐UserExperience:WillweprovidequalityuserexperienceswhenwehavemoreWebsitevisitors,orwillcustomersencountermoreWeberrorsorproblemscompletingtransactions?

•  WebPerformance:Willthewebsiterespondfastenough?

•  Scalability:Willtheapplicationhandletheexpecteduserloadandbeyond? –beforeitgets“slow”? –beforeitstopsworking? –willitsustain?

•  Stability:Istheapplicationstableunderexpectedandunexpecteduserloads?Whatif….

–therearemoreusersthanweexpect? –alltheusersdothesamething? –wegettoomanyorders?25

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Best Practices for Managing Peak Traffic Times (Cont’d)

1.  Getready‐plantoloadtestwheneverthereisachange  Launchingmarketingandsalescampaigns  RollingoutnewWebsites,applicationsandfeatures

  Planningforseasonalandholidayspikesinwebtraffic  Upgradingorvirtualizinginfrastructures

2.  Adoptan“outside‐in”customerpointofview

  Test&monitoryourwebperformancefromtheInternet,whereyourcustomersare

  Focusonkeygeographies(newmarkets,mostvisitors,toprevenue‐generatingregions,…)

3.  EnsurethatyourbusinessgoalsaresupportedbyIT  Discussupcomingplans&eventswithyourITcounterparts

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Appendix

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DesignandMethodology

Overview

•  GomezInc.engagedEquationResearchtoconductanonlinestudytounderstandconsumerInternetusageexperienceduringpeaktraffictimes

•  InterviewsconductedfromDecember16‐22,2009

Methodology

•  RespondentsrecruitedfromEquation’snationallyrepresentativepanel

•  Surveyresultsmayhaveamarginoferrorofplusorminusthreepercentata95percentlevelofconfidence

Sample:1,538totalrespondents•  N=500respondentswhohaveboughtaproductorserviceonlineinthepast9months•  N=506respondentswhohavebookedtravelinthepast9months

•  N=532respondentswhohaveperformedafinancialtransactioninthepast9months(includingn=183respondentswhobought/soldstockonline)

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