SlideShare une entreprise Scribd logo
1  sur  8
Enterprise Search Scenario II.  Query management I.  Data provision Load too high for source systems Direct access is too time-consuming Get. Sources SAP Exchange CRM DB …
Enterprise Search Scenario Get. II.  Query management I.  Data provision Sources SAP Exchange CRM DB … Server Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 Agent Crawler Timing
Enterprise Search Scenario Get. II.  Query management I.  Data provision Sources Server BEPL Engine Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords  3 Information is already being linked at this point 4 Employ ee Client Order Agent Crawler
Enterprise Search Scenario Get. II.  Query management I.  Data provision Sources Server BEPL Engine Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords  3 Information is already being linked at this point 4 Agent Crawler 5 Search index is created from copied databases Index
Enterprise Search Scenario Get. II.  Query management I.  Data provision Sources Server BEPL Engine Query Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords  3 Information is already being linked at this point 4 Agent Crawler 5 Search index is created from copied databases Index Query is started 6
Enterprise Search Scenario Get. II.  Query management I.  Data provision Sources Server BEPL Engine Query Client BEPL Engine Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords  3 Information is already being linked at this point 4 Agent Crawler 5 Search index is created from copied databases Index Query is started 6 7 BEPL engine controls the interpretation of the query
Enterprise Search Scenario Get. II.  Query management I.  Data provision Sources Server Query Client Cache Query and  Result Set Cache Credentials Cache Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords  3 Information is already being linked at this point 4 BEPL Engine Agent Crawler 5 Search index is created from copied databases Index Query is started 6 7 BEPL engine controls the interpretation of the query  8 Cache relieves the system and manages user rights BEPL Engine
 

Contenu connexe

Similaire à eccenca Enterprise Search Scenario

213 event processingtalk-deviewkorea.key
213 event processingtalk-deviewkorea.key213 event processingtalk-deviewkorea.key
213 event processingtalk-deviewkorea.key
NAVER D2
 
Introduction to PowerShell for DBA's
Introduction to PowerShell for DBA'sIntroduction to PowerShell for DBA's
Introduction to PowerShell for DBA's
John Sterrett
 
DP-203T00 Microsoft Azure Data Engineering-08.pptx
DP-203T00 Microsoft Azure Data Engineering-08.pptxDP-203T00 Microsoft Azure Data Engineering-08.pptx
DP-203T00 Microsoft Azure Data Engineering-08.pptx
ssuser45b0e7
 

Similaire à eccenca Enterprise Search Scenario (20)

PowerPivot for DBAs
PowerPivot for DBAsPowerPivot for DBAs
PowerPivot for DBAs
 
Context is Critical: How Richer Data Yields Richer Results in AIOps | Bhanu S...
Context is Critical: How Richer Data Yields Richer Results in AIOps | Bhanu S...Context is Critical: How Richer Data Yields Richer Results in AIOps | Bhanu S...
Context is Critical: How Richer Data Yields Richer Results in AIOps | Bhanu S...
 
Database Fundamental Concepts - Series 2 Monitoring plan
Database Fundamental Concepts - Series 2 Monitoring planDatabase Fundamental Concepts - Series 2 Monitoring plan
Database Fundamental Concepts - Series 2 Monitoring plan
 
An Extensible Framework to Validate and Build Dataset Profiles
An Extensible Framework to Validate and Build Dataset ProfilesAn Extensible Framework to Validate and Build Dataset Profiles
An Extensible Framework to Validate and Build Dataset Profiles
 
Антон Бойко "Azure Web Apps deep dive"
Антон Бойко "Azure Web Apps deep dive"Антон Бойко "Azure Web Apps deep dive"
Антон Бойко "Azure Web Apps deep dive"
 
213 event processingtalk-deviewkorea.key
213 event processingtalk-deviewkorea.key213 event processingtalk-deviewkorea.key
213 event processingtalk-deviewkorea.key
 
ABD217_From Batch to Streaming
ABD217_From Batch to StreamingABD217_From Batch to Streaming
ABD217_From Batch to Streaming
 
Apinizer - Full API Lifecycle and Integration Platform
Apinizer - Full API Lifecycle and Integration Platform Apinizer - Full API Lifecycle and Integration Platform
Apinizer - Full API Lifecycle and Integration Platform
 
Event driven architecure
Event driven architecureEvent driven architecure
Event driven architecure
 
Introduction to PowerShell for DBA's
Introduction to PowerShell for DBA'sIntroduction to PowerShell for DBA's
Introduction to PowerShell for DBA's
 
Netflix API - Separation of Concerns
Netflix API - Separation of ConcernsNetflix API - Separation of Concerns
Netflix API - Separation of Concerns
 
Dive into Streams with Brooklin
Dive into Streams with BrooklinDive into Streams with Brooklin
Dive into Streams with Brooklin
 
DP-203T00 Microsoft Azure Data Engineering-08.pptx
DP-203T00 Microsoft Azure Data Engineering-08.pptxDP-203T00 Microsoft Azure Data Engineering-08.pptx
DP-203T00 Microsoft Azure Data Engineering-08.pptx
 
ETL Testing
ETL TestingETL Testing
ETL Testing
 
Document 1533918.1 bpa gbpa
Document 1533918.1 bpa gbpaDocument 1533918.1 bpa gbpa
Document 1533918.1 bpa gbpa
 
5 Key Metrics to Release Better Software Faster
5 Key Metrics to Release Better Software Faster5 Key Metrics to Release Better Software Faster
5 Key Metrics to Release Better Software Faster
 
Analyzing Mixpanel Data into Amazon Redshift
Analyzing Mixpanel Data into Amazon RedshiftAnalyzing Mixpanel Data into Amazon Redshift
Analyzing Mixpanel Data into Amazon Redshift
 
PuppetConf 2016: Site Launch Automation: From Days to Minutes – Kristen Crawf...
PuppetConf 2016: Site Launch Automation: From Days to Minutes – Kristen Crawf...PuppetConf 2016: Site Launch Automation: From Days to Minutes – Kristen Crawf...
PuppetConf 2016: Site Launch Automation: From Days to Minutes – Kristen Crawf...
 
NLS Banking Solutions - NLS-CRB System
NLS Banking Solutions - NLS-CRB SystemNLS Banking Solutions - NLS-CRB System
NLS Banking Solutions - NLS-CRB System
 
Apply MLOps at Scale
Apply MLOps at ScaleApply MLOps at Scale
Apply MLOps at Scale
 

Plus de brox IT Solutions GmbH (6)

Infos Zum Thema Reifegradentwicklung V1 1
Infos Zum Thema Reifegradentwicklung V1 1Infos Zum Thema Reifegradentwicklung V1 1
Infos Zum Thema Reifegradentwicklung V1 1
 
Eccenca Einstieg Kurz
Eccenca Einstieg KurzEccenca Einstieg Kurz
Eccenca Einstieg Kurz
 
eDiscoverer Quick User Guide
eDiscoverer Quick User GuideeDiscoverer Quick User Guide
eDiscoverer Quick User Guide
 
Ita Oktober 09 Automotive It
Ita Oktober 09 Automotive ItIta Oktober 09 Automotive It
Ita Oktober 09 Automotive It
 
eccenca Eco System
eccenca Eco Systemeccenca Eco System
eccenca Eco System
 
eccenca Basic
eccenca Basiceccenca Basic
eccenca Basic
 

Dernier

Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
UXDXConf
 
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
panagenda
 

Dernier (20)

The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?
 
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
 
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
 
Long journey of Ruby Standard library at RubyKaigi 2024
Long journey of Ruby Standard library at RubyKaigi 2024Long journey of Ruby Standard library at RubyKaigi 2024
Long journey of Ruby Standard library at RubyKaigi 2024
 
Introduction to FIDO Authentication and Passkeys.pptx
Introduction to FIDO Authentication and Passkeys.pptxIntroduction to FIDO Authentication and Passkeys.pptx
Introduction to FIDO Authentication and Passkeys.pptx
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch Tuesday
 
How Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdf
How Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdfHow Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdf
How Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdf
 
Easier, Faster, and More Powerful – Notes Document Properties Reimagined
Easier, Faster, and More Powerful – Notes Document Properties ReimaginedEasier, Faster, and More Powerful – Notes Document Properties Reimagined
Easier, Faster, and More Powerful – Notes Document Properties Reimagined
 
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
 
Portal Kombat : extension du réseau de propagande russe
Portal Kombat : extension du réseau de propagande russePortal Kombat : extension du réseau de propagande russe
Portal Kombat : extension du réseau de propagande russe
 
Overview of Hyperledger Foundation
Overview of Hyperledger FoundationOverview of Hyperledger Foundation
Overview of Hyperledger Foundation
 
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfWhere to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
 
Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoftOauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoft
 
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & Ireland
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
Event-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingEvent-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream Processing
 

eccenca Enterprise Search Scenario

  • 1. Enterprise Search Scenario II. Query management I. Data provision Load too high for source systems Direct access is too time-consuming Get. Sources SAP Exchange CRM DB …
  • 2. Enterprise Search Scenario Get. II. Query management I. Data provision Sources SAP Exchange CRM DB … Server Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 Agent Crawler Timing
  • 3. Enterprise Search Scenario Get. II. Query management I. Data provision Sources Server BEPL Engine Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords 3 Information is already being linked at this point 4 Employ ee Client Order Agent Crawler
  • 4. Enterprise Search Scenario Get. II. Query management I. Data provision Sources Server BEPL Engine Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords 3 Information is already being linked at this point 4 Agent Crawler 5 Search index is created from copied databases Index
  • 5. Enterprise Search Scenario Get. II. Query management I. Data provision Sources Server BEPL Engine Query Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords 3 Information is already being linked at this point 4 Agent Crawler 5 Search index is created from copied databases Index Query is started 6
  • 6. Enterprise Search Scenario Get. II. Query management I. Data provision Sources Server BEPL Engine Query Client BEPL Engine Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords 3 Information is already being linked at this point 4 Agent Crawler 5 Search index is created from copied databases Index Query is started 6 7 BEPL engine controls the interpretation of the query
  • 7. Enterprise Search Scenario Get. II. Query management I. Data provision Sources Server Query Client Cache Query and Result Set Cache Credentials Cache Crawler "sucks" data in the initial run 1 Agents control updates, which are carried out daily 2 BEPL engine interprets information in queue and stores it with its corresponding keywords 3 Information is already being linked at this point 4 BEPL Engine Agent Crawler 5 Search index is created from copied databases Index Query is started 6 7 BEPL engine controls the interpretation of the query 8 Cache relieves the system and manages user rights BEPL Engine
  • 8.