재무 관리 CRM Analytics 앱의 클라이언트 이탈 위험 예측을 설치하려고 시도할 때 다음과 같은 오류가 발생할 수 있습니다:
'Successfully created folder [Predict - Risk for Wealth Man] with id [00lV40000005xCLIAY]
Successfully created dataset [FSC_Account_ED].
Dataflow connector sync complete
Successfully created resource type [workflow], label [Predict - Risk for Wealth Man ED Dataflow ].
Dataflow plan [0ePV40000017f2fMAA] completed with status [Success].
wave.template.AssemblyValidationException: Discovery Story Extension failed to parse ErrorMessage: 500 서버 오류 "java.util.Map.get(Object)" 의 반환값이 null이기 때문에 "java.util.Map.get(Object)"을(를) 호출할 수 없음 url: /v58.0/discovery/datasets/0FbV4000000YkZtKAK/0FcV4000008MMN4KAO/setup , payload: {"template":{"outcome":{"type":"text","name":"Is_Churn","displayName":"Is_Churn","success":"True","failure":"False","goal":"Minimize"},"fields":[{"type":"text","name":"FinServ__InvestmentExperience__c"},{"type":"text","name":"FinServ__InvestmentObjectives__c"},{"type":"text","name":"FinServ__MarketingSegment__c"},{"type":"text","name":"FinServ__ReviewFrequency__c"},{"type":"text","name":"FinServ__RiskTolerance__c"},{"type":"text","name":"FinServ__TimeHorizon__c"},{"type":"number","name":"FinServ__AUM__c"},{"type":"number","name":"FA.Performance1Yr"},{"type":"number","name":"FA.Performance3Yr"},{"type":"number","name":"FA.PerformanceMTD"},{"type":"number","name":"FA.PerformanceQTD"...
애플리케이션 생성 [예측 - Wealth Man 위험]에 실패했습니다.'
앱을 성공적으로 설치하려면, 검토 빈도 필드에 값이 채워진 계정 레코드가 100개 이상 있어야 합니다 (API 이름: FinServ__ReviewFrequency__c).
전제 조건을 충족하면 다음 단계를 수행하십시오:
1. 앱 시작 관리자로 이동하여 'Analytics Studio' 앱을 검색합니다.
2. 연결로 이동합니다.
3. 계정 개체에 대한 데이터 동기화를 실행합니다.
4. 동기화가 성공한 후, 재무 관리 CRM Analytics 앱의 클라이언트 이탈 위험 예측 설치를 시도해 보세요.
003876598

We use three kinds of cookies on our websites: required, functional, and advertising. You can choose whether functional and advertising cookies apply. Click on the different cookie categories to find out more about each category and to change the default settings.
Privacy Statement
Required cookies are necessary for basic website functionality. Some examples include: session cookies needed to transmit the website, authentication cookies, and security cookies.
Functional cookies enhance functions, performance, and services on the website. Some examples include: cookies used to analyze site traffic, cookies used for market research, and cookies used to display advertising that is not directed to a particular individual.
Advertising cookies track activity across websites in order to understand a viewer’s interests, and direct them specific marketing. Some examples include: cookies used for remarketing, or interest-based advertising.