Difference between revisions of "CE37/Canonical"

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|Solution=Digital
 
|Solution=Digital
 
|Title=Genesys Predictive Engagement
 
|Title=Genesys Predictive Engagement
|Subtitle=Use machine learning powered journey analytics to observe website activity, predict visitor outcomes, and proactively engage with prospects and customers via agent-assisted chat, content offer or chatbot.
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|Subtitle=Use AI powered journey analytics to observe website activity, predict visitor outcomes, and proactively engage with prospects and customers via agent-assisted chat, content offer or chatbot.
 
}}
 
}}
 
{{SMART Canonical
 
{{SMART Canonical
|BuyerPersonas=Chief Digital Officer, Head of Contact Center(s), Head of Customer Experience, Head of Customer Service
 
|QualifyingQuestions=# What insights do you have about the behaviors that determine whether someone on your website is lost or unable to complete a service task?
 
# How do you know when to engage with online customers to provide support and assistance?
 
# Which channels of engagement can you use today to proactively to engage customers on your website?
 
|DataSheetImage=SL09 - genesys predictive engagement for sales - header (2).png
 
 
|PlatformChallenge=It’s challenging to identify the right individual, the best moments, and the optimal ways to offer assistance online. Companies want to shape their customers’ journeys and drive them towards desirable outcomes, but it’s hard to utilize all of the available data in a way that is meaningful and actionable. In addition, consumers expect fast answers, but it's expensive to always engage an agent.
 
|PlatformChallenge=It’s challenging to identify the right individual, the best moments, and the optimal ways to offer assistance online. Companies want to shape their customers’ journeys and drive them towards desirable outcomes, but it’s hard to utilize all of the available data in a way that is meaningful and actionable. In addition, consumers expect fast answers, but it's expensive to always engage an agent.
 
|PlatformSolution=Proactively lead customers to successful journeys on your website. Apply machine learning, dynamic personas, and outcome probabilities to identify the right moments for proactive engagement via a web chat or help content screen-pop.
 
|PlatformSolution=Proactively lead customers to successful journeys on your website. Apply machine learning, dynamic personas, and outcome probabilities to identify the right moments for proactive engagement via a web chat or help content screen-pop.
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*Proactively engage with customers via a chatbot if this score drops below a defined threshold while on the website
 
*Proactively engage with customers via a chatbot if this score drops below a defined threshold while on the website
 
*Deflect from live agent contact by proactively displaying additional information or offering the most cost-effective channel
 
*Deflect from live agent contact by proactively displaying additional information or offering the most cost-effective channel
|HighLevelFlowLucid=https://www.lucidchart.com/documents/edit/e1dbefe6-cdd0-4ea9-9f29-7ef2106bfada/0
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|HighLevelFlowLucid=e1dbefe6-cdd0-4ea9-9f29-7ef2106bfada
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|BuyerPersonas=Chief Digital Officer, Head of Contact Center(s), Head of Customer Experience, Head of Customer Service
 +
|QualifyingQuestions=# What insights do you have about the behaviors that determine whether someone on your website is lost or unable to complete a service task?
 +
# How do you know when to engage with online customers to provide support and assistance?
 +
# Which channels of engagement can you use today to proactively to engage customers on your website?
 +
|DataSheetImage=SL09 - genesys predictive engagement for sales - header (2).png
 
}}
 
}}
 
{{SMART DataSheetFlow
 
{{SMART DataSheetFlow
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{{SMART Benefits
 
{{SMART Benefits
 
|CanonicalBenefitID=Improved Employee Productivity
 
|CanonicalBenefitID=Improved Employee Productivity
|CanonicalBenefit=Representatives are empowered with real time customer journey data from your website which allows them to personalize and prioritize engagements with prospective and existing customers. Productivity is improved when reps interact when they have the most likely impact on the sale or customer service
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|CanonicalBenefit=Representatives are empowered with real time customer journey data which allows them to personalize and prioritize engagements with prospective and existing customers.
 
}}
 
}}
 
{{SMART Benefits
 
{{SMART Benefits
 
|CanonicalBenefitID=Increased Revenue
 
|CanonicalBenefitID=Increased Revenue
|CanonicalBenefit=Accelerate sales and conversion rates by engaging online shoppers in real time at the right time as they browse your website. Grow customer lifetime value through more proactive and personalized service and cross-selling and upselling customers on products or services of greatest value to them.
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|CanonicalBenefit=Accelerate sales and conversion rates by engaging online shoppers in real time at the right time as they browse your website. Grow customer lifetime value through more proactive and personalized service.
 
}}
 
}}
 
{{SMART Benefits
 
{{SMART Benefits
|CanonicalBenefitID=Reduced Volume of Interactions
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|CanonicalBenefitID=Reduced Handle Time
|CanonicalBenefit=Improve self-service rates by providing customers with the right information at the right time or proactively offering a chatbot to automate the conversation and prevent contact with an agent.
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|CanonicalBenefit=When the engagement requires escalation from self-service to assisted service, the agent is provided context of the journey.
 
}}
 
}}

Latest revision as of 15:27, March 31, 2021

Important
This information is shared by CE37 use cases across all offerings.

Administration Dashboard

Go back to admin dashboard to create and manage platform-specific use cases in the system:

Titles and Taxonomy

Main Title Subtitle Taxonomy Product Category Draft Published Edit

Genesys Predictive Engagement

Use AI powered journey analytics to observe website activity, predict visitor outcomes, and proactively engage with prospects and customers via agent-assisted chat, content offer or chatbot.

Customer Engagement

Digital

No draft


Canonical Information

Platform Challenge and Solution

Platform Challenge: It’s challenging to identify the right individual, the best moments, and the optimal ways to offer assistance online. Companies want to shape their customers’ journeys and drive them towards desirable outcomes, but it’s hard to utilize all of the available data in a way that is meaningful and actionable. In addition, consumers expect fast answers, but it's expensive to always engage an agent.

Platform Solution: Proactively lead customers to successful journeys on your website. Apply machine learning, dynamic personas, and outcome probabilities to identify the right moments for proactive engagement via a web chat or help content screen-pop.

Platform Benefits

The following benefits are based on benchmark information captured from Genesys customers and may vary based on industry or lines of business:

Canonical Benefit Explanation
Improved Employee Productivity Representatives are empowered with real time customer journey data which allows them to personalize and prioritize engagements with prospective and existing customers.
Increased Revenue Accelerate sales and conversion rates by engaging online shoppers in real time at the right time as they browse your website. Grow customer lifetime value through more proactive and personalized service.
Reduced Handle Time When the engagement requires escalation from self-service to assisted service, the agent is provided context of the journey.

High Level Flow

High Level Flow Steps

  1. A customer is browsing a website
  2. Their online journey is tracked to monitor if they need assistance
  3. The system predicts the right moment to engage with the customer
  4. The customer is offered chat via a chatbot or a help content screen pop
  5. If required, the customer can be transferred to an agent chat screen
  6. The customer is connected to an agent

Data Sheet Image

SL09 - genesys predictive engagement for sales - header (2).png

Canonical Sales Content

Personas

  • Chief Digital Officer
  • Head of Contact Center(s)
  • Head of Customer Experience
  • Head of Customer Service


Qualifying Questions

  1. What insights do you have about the behaviors that determine whether someone on your website is lost or unable to complete a service task?
  2. How do you know when to engage with online customers to provide support and assistance?
  3. Which channels of engagement can you use today to proactively to engage customers on your website?

Pain Points (Business Context)

  • Low self-service rate on website leading to high number of contacts into contact center
  • Inability to see, understand and engage with customers during service journeys across channels in real time
  • Website user journeys not optimized for efficient engagement through self-service

Desired State - How to Fix It

  • Use journey analytics to detect where customers struggle on a website and use this information to improve their service journeys
  • Identify the user’s persona, monitor their web behavior, and predict their outcome score related to the customer service process
  • Use machine learning to profile behavior, predict outcomes and allow organizations to define rules on when to intervene
  • Proactively engage with customers via a chatbot if this score drops below a defined threshold while on the website
  • Deflect from live agent contact by proactively displaying additional information or offering the most cost-effective channel


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