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Social Mentions as Performance KPI 
@jeroentjepkema 
#SMC036, 1 October 2014
Key question: 
Is the performance of my website hurting my business?
Waiting = Engagement
Mobile moments?
โ€œBoth offline and online consumers 
associate long wait times with 
poor customer serviceโ€
Click away slide Performance tolerance
100 
90 
80 
70 
60 
50 
40 
30 
20 
10 
0 
Bouncerate per pagetype/session 
0 1 2 3 4 5 6 7 8 9 10 
Bouncerate (%) 
Page load time (sec.) 
Median Campaign Product search 
Real User Monitoring data collected by MeasureWorks for several eCommerce webshops, anonymized and grouped per pagetype
100 
90 
80 
70 
60 
50 
40 
30 
20 
10 
0 
Bouncerate per pagetype/session 
0 1 2 3 4 5 6 7 8 9 10 
Bouncerate (%) 
Page load time (sec.) 
Median Campaign Product search 
Real User Monitoring data collected by MeasureWorks for several eCommerce webshops, anonymized and grouped per pagetype
Purpose vs. Context
Online users often lack context for delays...
...and see no other option than to click away
Social = Performance??
First, understand your data
Every website has goals
Offer 
Upselling 
Purchase step 1 
Purchase step 2 
Conversion 
Enrolment 
Abondenment) 
Organic Search 
Campaigns 
Ad Network 
Visitor 
Reach 
Mailing, 
alerts, 
promotions 
Disengagement) 
โ‚ฌ" 
โ‚ฌ" 
โ‚ฌ" 
โ‚ฌ" 
โ‚ฌ" 
Impact)on)site) 
โ‚ฌ" Negative โ‚ฌ" Positive 
Transactional site
Targeted 
embedded add 
Enrolment 
โ‚ฌ" 
Departure( 
Impact(on(site( 
โ‚ฌ" Negative โ‚ฌ" Positive 
Media site 
Add Network 
Advertiser site 
Visitor 
โ‚ฌ" 
โ‚ฌ" 
โ‚ฌ"
Analytics measures the movement 
towards these goals
X 
A simple online business model: 
Marketing Conversion Optimization Revenue 
New 
visitors 
Bounce 
rate 
Conversion 
rate 
Order 
value 
Growth 
Loss 
Time on 
site 
Pages per 
visit 
Number of 
visits 
Search 
Tweets 
Mentions 
ADs seen
Why did customers drop off? 
โ€ฃ Price 
โ€ฃ Functional errors? 
โ€ฃ Performance issues?
Why did customers drop off? 
โ€ฃ Price 
โ€ฃ Functional errors? 
โ€ฃ Performance issues? 
Whatโ€™s the business impact? 
โ€ฃ Lost customers? 
โ€ฃ Revenue risked? 
โ€ฃ In Euros?
Buy this book:
Web Analytics 
(what did they 
do on the site?) 
Performance 
(could they do what 
they wanted to?) 
VoC 
(what were their 
motivations?) 
Usability 
(how did they 
interact with it?) 
Complete Web Monitoring 
Competition 
(what are they up 
to?) 
Social Media 
(what were they 
saying?)
Web Analytics 
(what did they 
do on the site?) 
Competition 
(what are they up 
to?) 
Performance 
(could they do what 
they wanted to?) 
VoC 
(what were their 
motivations?) 
Usability 
(how did they 
interact with it?) 
Social Media 
(what were they 
saying?) 
Complete Web Monitoring 
โ€œSoftโ€ data 
โ€œHardโ€ data
Context!
Web Analytics 
(what did they 
do on the site?) 
Competition 
(what are they up 
to?) 
Performance 
(could they do what 
they wanted to?) 
VoC 
(what were their 
motivations?) 
Usability 
(how did they 
interact with it?) 
Complete Web Monitoring 
โ€œSoftโ€ data 
โ€œHardโ€ data 
Social Media 
(what were they 
saying?)
Social Optimization
Twinkle100: How fast are we? 
(Twinkle100 represents the top100 eretailers and top30 travel companies 
in the Netherlands in terms of annual revenue)
1,49Mb 
average 
pagesize 
Twinkle100 data collected with webpagetest.org with Chrome, IE11, Firefox & Safari (10Mbs down/1,5Mbs up) 
4.59s 
average 
page load time 
130 
requests on 
average 
86% 
slower than 
3 sec. 
Desktop Performance
1,2Mb 
average 
pagesize 
4.27s 
via wifi 
8.57s 
via 3G 
Mobile Performance 
41% of 
Twinkle100 have 
optimized site 
Twinkle100 data colelcted with webpagetest.org on both Android & iPhone (WiFi (10Mbs down/1,5Mbs up) & 3G (2000Kbps Down, 764Kbps Up))
Year over year performance (baseline = 2011) 
-3% 
25% 
3% 5% 
30% 
17% 
10% 
Data collected with webpagetest.org on Crome, Firefox, IE11, Android & iPhone (WiFi (10Mbs down/1,5Mbs up) & 3G (2000Kbps Down, 764Kbps Up)) 
8% 
4% 
2012 2013 2014 
2012 2013 2014 
2012 2013 2014 
0 
Avg. Speed Avg. Size Avg. # Request
Click away slide Impact of performance?
Complaints Top 5 topics 
21% 
6% 
41% 
32% 
Delivery Ordering UX Other 
Downtime 
Mobile 
Speed 
Login 
Forms 5% 
6% 
21% 
19% 
36% 
Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
40 
30 
20 
10 
0 
0.00 2.00 4.00 6.00 8.00 10.00 12.00 14.00 16.00 18.00 20.00 22.00 24.00 
Time of day (hours) 
# of tweets) 
Complaints per branche/day 
Retail100 
Travel30 
Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
Downtime 
Mobile 
Top 5 topics 
Speed 
Login 
Forms 5% 
6% 
21% 
19% 
36% 
Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
Downtime 
Mobile 
Top 5 topics 
Speed 
Login 
Forms 5% 
6% 
21% 
19% 
36% 
18% 
16% 
28% 
26% 
12% 
Mobile 
Inchecken 
Readiness 
Contact 
Vodafone 
Abonnement 
Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
Downtime 
Mobile 
Top 5 topics 
Speed 
Login 
Forms 5% 
6% 
21% 
19% 
36% 
18% 
16% 
28% 
26% 
12% 
Mobile 
Check-in 
Readiness 
Contact 
Vodafone 
Subscription 
33% 
44% 
23% 
Forms 
Empty fields 
Mobile 
Repeat task 
Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
Long term effect?
Performance Engagement Report 
Page 1 
Page 2 
Page 3 
Page 4 
Page 11 
Source: 
Availability: Gomez 
Sentiment: Twitter, Facebook 
1200 
400 
0 
-400 
-800 
-1200 
Availability (%) 
100 
80 
60 
40 
20 
0 
1200 
800 
Mentions (#) 
Positive Messages Negative Messages Availability 
Data collected from ING.nl Messages from Twitter & Facebook, collected with Coosto
Predicting Downtime
All systems green?
Or not?
2 examples
Challenge: Can we predict downtime?
60 
45 
30 
15 
0 
0 5 10 15 20 25 30 35 40 45 50 55 60 
# pageviews 
Example downtime pattern 
Min/Hour
60 
45 
30 
15 
0 
Regular operations 
0 5 10 15 20 25 30 35 40 45 50 55 60 
# pageviews 
Example downtime pattern 
Min/Hour
60 
45 
30 
15 
0 
Regular operations News 
papers 
0 5 10 15 20 25 30 35 40 45 50 55 60 
# pageviews 
Example downtime pattern 
Min/Hour
60 
45 
30 
15 
0 
Regular operations News 
papers Alerts? 
0 5 10 15 20 25 30 35 40 45 50 55 60 
# pageviews 
Example downtime pattern 
Min/Hour
60 
45 
30 
15 
0 
Regular operations News 
papers Alerts? Downtime 
0 5 10 15 20 25 30 35 40 45 50 55 60 
# pageviews 
Example downtime pattern 
Min/Hour
Context ;-)
Min/Hour 
# pageviews 
60 
45 
30 
15 
0 
Example downtime pattern 
Regular operations News 
papers Alerts? Downtime 
0 5 10 15 20 25 30 35 40 45 50 55 60 
This is where we need to be!
Example downtime pattern 
2. 
Social 
Media 
1. 
Click 
Behavior 
Regular operations News 
Min/Hour 
# pageviews 
60 
45 
30 
15 
0 
papers Alerts? Downtime 
0 5 10 15 20 25 30 35 40 45 50 55 60 
This is where we need to be! 
Min/Hour
Step 1: Profiling
Clickpath prediction
Step 2: Detection
How fast do I need to be?
Step 3: Creating context
Sentiment Behavior 
60 
45 
+ 30 
= Predicting downtime? 
15 
0 
0 5 10 15 20 25 30 35 40 45 50 55 60
Test results 
(Data derived from incident analysis of 3 websites, across a period of 4 months. 
Data points matched (manually) over time period, per incident)
60 
45 
30 
15 
0 
0 5 10 15 20 25 30 35 40 45 50 55 60 
# pageviews 
Example downtime pattern 
Min/Hour
Example downtime pattern 
Change in click behavior 
Time period in which we can detect a persistent 
change in pattern per type of monitoring 
60 
45 
30 
15 
0 
Performance 
alerting 
Social Alerting 
0 5 10 15 20 25 30 35 40 45 50 55 60
Your mileage may vary... for now, type of incident 
determines predictive nature
Questions so far?
Real 
time Day Week Month Quarter 
Relevance for Application Life Cycle Keywords: 
Alerting 
Incident driven 
MTTR 
Keywords: 
Business impact 
Front End Optimization 
Capacity Management 
Data required 
Keywords: 
Error focused 
Root Cause 
Object driven information 
Keywords: 
User experience 
Conversion metrics 
Volume/Trends 
Data cycle
Real 
time Day Week Month Quarter 
Relevance for Application Life Cycle Keywords: 
Alerting 
Incident driven 
MTTR 
Keywords: 
Business impact 
Front End Optimization 
Capacity Management 
Data required 
Keywords: 
Error focused 
Root Cause 
Object driven information 
Keywords: 
User experience 
Conversion metrics 
Volume/Trends 
Data cycle Optimization, depending on 
release cycle
Real 
time Day Week Month Quarter 
Relevance for Application Life Cycle Keywords: 
Alerting 
Incident driven 
MTTR 
Keywords: 
Business impact 
Front End Optimization 
Capacity Management 
Data required 
Keywords: 
Error focused 
Root Cause 
Object driven information 
Keywords: 
User experience 
Conversion metrics 
Volume/Trends 
Keywords: 
Real users 
Contextual data 
Trend, Velocity 
Prevent 
Data cycle Optimization, depending on 
release cycle
Turning data into insights
Create patterns
Understand behavior
Contextual data
Listen!
Thanks! More questions? 
M: jtjepkema@measureworks.nl 
T: @jeroentjepkema 
W: www.measureworks.nl

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MeasureWorks - Social Mentions as a Performance KPI

  • 1. Social Mentions as Performance KPI @jeroentjepkema #SMC036, 1 October 2014
  • 2.
  • 3.
  • 4. Key question: Is the performance of my website hurting my business?
  • 6.
  • 7.
  • 8.
  • 9.
  • 10.
  • 11.
  • 12.
  • 14.
  • 15.
  • 16.
  • 17.
  • 18.
  • 19.
  • 20. โ€œBoth offline and online consumers associate long wait times with poor customer serviceโ€
  • 21. Click away slide Performance tolerance
  • 22. 100 90 80 70 60 50 40 30 20 10 0 Bouncerate per pagetype/session 0 1 2 3 4 5 6 7 8 9 10 Bouncerate (%) Page load time (sec.) Median Campaign Product search Real User Monitoring data collected by MeasureWorks for several eCommerce webshops, anonymized and grouped per pagetype
  • 23. 100 90 80 70 60 50 40 30 20 10 0 Bouncerate per pagetype/session 0 1 2 3 4 5 6 7 8 9 10 Bouncerate (%) Page load time (sec.) Median Campaign Product search Real User Monitoring data collected by MeasureWorks for several eCommerce webshops, anonymized and grouped per pagetype
  • 25. Online users often lack context for delays...
  • 26. ...and see no other option than to click away
  • 30.
  • 31. Offer Upselling Purchase step 1 Purchase step 2 Conversion Enrolment Abondenment) Organic Search Campaigns Ad Network Visitor Reach Mailing, alerts, promotions Disengagement) โ‚ฌ" โ‚ฌ" โ‚ฌ" โ‚ฌ" โ‚ฌ" Impact)on)site) โ‚ฌ" Negative โ‚ฌ" Positive Transactional site
  • 32.
  • 33. Targeted embedded add Enrolment โ‚ฌ" Departure( Impact(on(site( โ‚ฌ" Negative โ‚ฌ" Positive Media site Add Network Advertiser site Visitor โ‚ฌ" โ‚ฌ" โ‚ฌ"
  • 34. Analytics measures the movement towards these goals
  • 35. X A simple online business model: Marketing Conversion Optimization Revenue New visitors Bounce rate Conversion rate Order value Growth Loss Time on site Pages per visit Number of visits Search Tweets Mentions ADs seen
  • 36.
  • 37.
  • 38. Why did customers drop off? โ€ฃ Price โ€ฃ Functional errors? โ€ฃ Performance issues?
  • 39. Why did customers drop off? โ€ฃ Price โ€ฃ Functional errors? โ€ฃ Performance issues? Whatโ€™s the business impact? โ€ฃ Lost customers? โ€ฃ Revenue risked? โ€ฃ In Euros?
  • 41. Web Analytics (what did they do on the site?) Performance (could they do what they wanted to?) VoC (what were their motivations?) Usability (how did they interact with it?) Complete Web Monitoring Competition (what are they up to?) Social Media (what were they saying?)
  • 42. Web Analytics (what did they do on the site?) Competition (what are they up to?) Performance (could they do what they wanted to?) VoC (what were their motivations?) Usability (how did they interact with it?) Social Media (what were they saying?) Complete Web Monitoring โ€œSoftโ€ data โ€œHardโ€ data
  • 44. Web Analytics (what did they do on the site?) Competition (what are they up to?) Performance (could they do what they wanted to?) VoC (what were their motivations?) Usability (how did they interact with it?) Complete Web Monitoring โ€œSoftโ€ data โ€œHardโ€ data Social Media (what were they saying?)
  • 46. Twinkle100: How fast are we? (Twinkle100 represents the top100 eretailers and top30 travel companies in the Netherlands in terms of annual revenue)
  • 47. 1,49Mb average pagesize Twinkle100 data collected with webpagetest.org with Chrome, IE11, Firefox & Safari (10Mbs down/1,5Mbs up) 4.59s average page load time 130 requests on average 86% slower than 3 sec. Desktop Performance
  • 48. 1,2Mb average pagesize 4.27s via wifi 8.57s via 3G Mobile Performance 41% of Twinkle100 have optimized site Twinkle100 data colelcted with webpagetest.org on both Android & iPhone (WiFi (10Mbs down/1,5Mbs up) & 3G (2000Kbps Down, 764Kbps Up))
  • 49. Year over year performance (baseline = 2011) -3% 25% 3% 5% 30% 17% 10% Data collected with webpagetest.org on Crome, Firefox, IE11, Android & iPhone (WiFi (10Mbs down/1,5Mbs up) & 3G (2000Kbps Down, 764Kbps Up)) 8% 4% 2012 2013 2014 2012 2013 2014 2012 2013 2014 0 Avg. Speed Avg. Size Avg. # Request
  • 50. Click away slide Impact of performance?
  • 51. Complaints Top 5 topics 21% 6% 41% 32% Delivery Ordering UX Other Downtime Mobile Speed Login Forms 5% 6% 21% 19% 36% Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
  • 52. 40 30 20 10 0 0.00 2.00 4.00 6.00 8.00 10.00 12.00 14.00 16.00 18.00 20.00 22.00 24.00 Time of day (hours) # of tweets) Complaints per branche/day Retail100 Travel30 Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
  • 53.
  • 54. Downtime Mobile Top 5 topics Speed Login Forms 5% 6% 21% 19% 36% Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
  • 55. Downtime Mobile Top 5 topics Speed Login Forms 5% 6% 21% 19% 36% 18% 16% 28% 26% 12% Mobile Inchecken Readiness Contact Vodafone Abonnement Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
  • 56. Downtime Mobile Top 5 topics Speed Login Forms 5% 6% 21% 19% 36% 18% 16% 28% 26% 12% Mobile Check-in Readiness Contact Vodafone Subscription 33% 44% 23% Forms Empty fields Mobile Repeat task Research from MeasureWorks, Social and More & Obi4Wan. Social mentions collected about Twinkle100 webshops only between March 1 - August 31 2014
  • 58. Performance Engagement Report Page 1 Page 2 Page 3 Page 4 Page 11 Source: Availability: Gomez Sentiment: Twitter, Facebook 1200 400 0 -400 -800 -1200 Availability (%) 100 80 60 40 20 0 1200 800 Mentions (#) Positive Messages Negative Messages Availability Data collected from ING.nl Messages from Twitter & Facebook, collected with Coosto
  • 60.
  • 61.
  • 62.
  • 66. Challenge: Can we predict downtime?
  • 67. 60 45 30 15 0 0 5 10 15 20 25 30 35 40 45 50 55 60 # pageviews Example downtime pattern Min/Hour
  • 68. 60 45 30 15 0 Regular operations 0 5 10 15 20 25 30 35 40 45 50 55 60 # pageviews Example downtime pattern Min/Hour
  • 69. 60 45 30 15 0 Regular operations News papers 0 5 10 15 20 25 30 35 40 45 50 55 60 # pageviews Example downtime pattern Min/Hour
  • 70. 60 45 30 15 0 Regular operations News papers Alerts? 0 5 10 15 20 25 30 35 40 45 50 55 60 # pageviews Example downtime pattern Min/Hour
  • 71. 60 45 30 15 0 Regular operations News papers Alerts? Downtime 0 5 10 15 20 25 30 35 40 45 50 55 60 # pageviews Example downtime pattern Min/Hour
  • 73. Min/Hour # pageviews 60 45 30 15 0 Example downtime pattern Regular operations News papers Alerts? Downtime 0 5 10 15 20 25 30 35 40 45 50 55 60 This is where we need to be!
  • 74. Example downtime pattern 2. Social Media 1. Click Behavior Regular operations News Min/Hour # pageviews 60 45 30 15 0 papers Alerts? Downtime 0 5 10 15 20 25 30 35 40 45 50 55 60 This is where we need to be! Min/Hour
  • 76.
  • 79. How fast do I need to be?
  • 80. Step 3: Creating context
  • 81. Sentiment Behavior 60 45 + 30 = Predicting downtime? 15 0 0 5 10 15 20 25 30 35 40 45 50 55 60
  • 82. Test results (Data derived from incident analysis of 3 websites, across a period of 4 months. Data points matched (manually) over time period, per incident)
  • 83. 60 45 30 15 0 0 5 10 15 20 25 30 35 40 45 50 55 60 # pageviews Example downtime pattern Min/Hour
  • 84. Example downtime pattern Change in click behavior Time period in which we can detect a persistent change in pattern per type of monitoring 60 45 30 15 0 Performance alerting Social Alerting 0 5 10 15 20 25 30 35 40 45 50 55 60
  • 85. Your mileage may vary... for now, type of incident determines predictive nature
  • 87. Real time Day Week Month Quarter Relevance for Application Life Cycle Keywords: Alerting Incident driven MTTR Keywords: Business impact Front End Optimization Capacity Management Data required Keywords: Error focused Root Cause Object driven information Keywords: User experience Conversion metrics Volume/Trends Data cycle
  • 88. Real time Day Week Month Quarter Relevance for Application Life Cycle Keywords: Alerting Incident driven MTTR Keywords: Business impact Front End Optimization Capacity Management Data required Keywords: Error focused Root Cause Object driven information Keywords: User experience Conversion metrics Volume/Trends Data cycle Optimization, depending on release cycle
  • 89. Real time Day Week Month Quarter Relevance for Application Life Cycle Keywords: Alerting Incident driven MTTR Keywords: Business impact Front End Optimization Capacity Management Data required Keywords: Error focused Root Cause Object driven information Keywords: User experience Conversion metrics Volume/Trends Keywords: Real users Contextual data Trend, Velocity Prevent Data cycle Optimization, depending on release cycle
  • 90. Turning data into insights
  • 95. Thanks! More questions? M: jtjepkema@measureworks.nl T: @jeroentjepkema W: www.measureworks.nl