enterprise information management · business users can see information as if it came from a single...
TRANSCRIPT
Enterprise Information Management
© CITIA BTC, 2010
© CITIA BTC, 2010
2
Введение в EIM от SAP
SAP Data Services – Архитектура
SAP Data Services – Параллельная обработка данных
SAP Data Services – Контроль качества данных
SAP Data Services – Очистка данных
ERP DW RDBMS OLAP EmailDocs NotesWebXML
Structured Data Unstructured Data
Deliver to any target system
ERP, SRM, CRM
Applications PerformanceManagement
BusinessIntelligence
Access and profile data from any source
Manage Master Data
Quality
Consolidate
Report
© CITIA BTC, 2010
3
Operational EIM
© CITIA BTC, 2010
4
Analytical EIM
© CITIA BTC, 2010
5
Data migration – Designed to help you transfer source data into adesired application or system more quickly and easily
Data quality management – Cleanse, profile, and standardize datafrom SAP and other packaged or custom applications
Data integration – Combine disparate data sources to support anenterprise data warehouse strategy, or use data federation forquick integration without physically moving the data
Data lineage – Enable users to drill down and track data back to itsoriginal source
Consolidated metadata – Integrate data sources and systems intoan open, relational repository
Поддерживаемые бизнес-процессы и функции EIM
© CITIA BTC, 2010
6
Data Services – Use this unified data integration and data quality management solution to consolidate, improve, and deliver data anywhere
Data Integrator – Extract, transform, and load data from data applications, databases, or other data stores to create a complete view of enterprise information that can be delivered to any application tool in your enterprise
Data Federator – Create a real-time view of multiple data sources with virtual data integration so that business users can see information as if it came from a single source
Rapid Marts – Use pre-packaged data marts for SAP, Oracle, Peoplesoft and Siebel applications to accelerate the delivery of analytic or BI data
Text Analysis – Extract information from unstructured text sources and analyze text to learn about customer sentiments, market trends, service issues, and so on
Metadata Management – Consolidate and edit metadata from various data sources into a single repository to provide a semantic view of data to analyze usage, change, and data lineage
Data Insight – Enable data stewards to profile data to identify errors and fix data quality issues
Data Quality Management – Define a best record strategy, set match criteria, reduce duplicates, cleanse, validate addresses, and enrich data with geographic attributes to improve data quality
Postalsoft – Improve mailing operations with address correction and encoding, data and list management, mail preparation, and shipping discounts
SAP BusinessObjects EIM solutions
© CITIA BTC, 2010
7
© CITIA BTC, 2010
8
Введение в EIM от SAP
SAP Data Services – Архитектура
SAP Data Services – Параллельная обработка данных
SAP Data Services – Контроль качества данных
SAP Data Services – Очистка данных
Data Services единая платформа
интеграции и анализа данных
Data Integration
Data Quality
© CITIA BTC, 2010
9
Масштабируемость и доступность
© CITIA BTC, 2010
10
Поддерживаемые источники данных
© CITIA BTC, 2010
11
Распределенная архитектураData Services
© CITIA BTC, 2010
12
© CITIA BTC, 2010
13
Консоль управления
© CITIA BTC, 2010
14
Окно дизайнера
© CITIA BTC, 2010
15
Пакетные задачи (Batch Jobs),планирование
© CITIA BTC, 2010
16
Задачи реального времени, события(Real-time Jobs)
© CITIA BTC, 2010
17
Рабочие потоки (Work Flows) и потоки данных (Data Flows)
© CITIA BTC, 2010
18
Управление ходом выполнения задач
Условие Цикл
Исключение
© CITIA BTC, 2010
19
Скрипты, функции и переменные
© CITIA BTC, 2010
20
Конфигурация источников данных
© CITIA BTC, 2010
21
Слежение за выполнением задачи(в режиме реального времени)
© CITIA BTC, 2010
22
© CITIA BTC, 2010
23
Введение в EIM от SAP
SAP Data Services – Архитектура
SAP Data Services – Параллельная обработка данных
SAP Data Services – Контроль качества данных
SAP Data Services – Очистка данных
Уровень распределения задачи
• Job level• Data flow level• Sub data flow level
© CITIA BTC, 2010
24
Степень параллельности
© CITIA BTC, 2010
25
Количество загрузчиков
© CITIA BTC, 2010
26
Поддержка партиций
© CITIA BTC, 2010
27
© CITIA BTC, 2010
28
Введение в EIM от SAP
SAP Data Services – Архитектура
SAP Data Services – Параллельная обработка данных
SAP Data Services – Контроль качества данных
SAP Data Services – Очистка данных
Анализ происхождения и влияния данных(Linage and Impact)
© CITIA BTC, 2010
29
Интеграция с BusinessObjects
© CITIA BTC, 2010
30
Профилирование данных(Profiling)
© CITIA BTC, 2010
31
Аудит данных(Audit)
© CITIA BTC, 2010
32
Проверка значений(Validation)
© CITIA BTC, 2010
33
Контроль ошибок и обновления данныхво время загрузки
© CITIA BTC, 2010
34
Восстановление с точки сбоя
© CITIA BTC, 2010
35
Отладка данных, точки прерывания
© CITIA BTC, 2010
36
© CITIA BTC, 2010
37
Введение в EIM от SAP
SAP Data Services – Архитектура
SAP Data Services – Параллельная обработка данных
SAP Data Services – Контроль качества данных
SAP Data Services – Очистка данных
Очистка данных
© CITIA BTC, 2010
38
Пример очистки данных
© CITIA BTC, 2010
39
Пример сопоставления данных
© CITIA BTC, 2010
40
Удаление дубликатов
© CITIA BTC, 2010
41
Заполнение пустых полей
© CITIA BTC, 2010
42
© CITIA BTC, 2010