SlideShare a Scribd company logo
Rorotika’s Self-Organizing Network
solution, with all the intelligence needed
to automate a radio network environment,
reduce faults and increase revenues.
Rorotika’s SON
                                                                                         Self-Organising Network Solution
                                                 Operators need to analyse data from several different network interfaces, systems and
                                                 departments in order to optimise their network infrastructure and expenditure, while
                                                 growing ARPU, profitability and market share. Such systems include Performance
                                                 Management, Configuration Management, Fault Management, Customer Experience
SON Features                                     Management and the Charging System.

                                                 Operators face the following challenges:
                                                     Isolation of network subsystems thwarts data analysis
Multi: Vendor, Technology, Node, Handset
                                                     Fault reporting is dispersed across systems, resulting in low visibility and accountability
Expert-driven inference engine
                                                     Root cause analysis requires manual data correlation efforts across multiple systems
Revenue-driven fault costing and ranking
                                                     Isolated systems have ineffective methods of prioritising faults and alarms
Discrepancy resolution or recommendation
reporting                                            Lack of revenue data correlation hides valuable information about the cost of faults
                                                     and hinders effective prioritisation.
Correlation of network-based (PM)          vs
handset-based (CEM) fault information                Lack of CEM data correlation hides valuable information about the problems being
                                                     experienced on the ground, and their exact locations.
Geo-accurate fault detection and root-cause
analysis                                         Rorotika’s SON is a centralised analytics and data correlation engine with the following key
                                                 components.
Route tracing, B-number analysis, policy
management, site value and upgrade /
downgrade reporting
Seamless integration between SON products
Cost-effective technologies                                   Netcm
Strategy-based BI & reporting (Revenue vs KPI)   In a complex multi-vendor and multi-technology environment, NetCM provides a brand
                                                 new, automated, repeatable and independent review of the status of network parameters.
GIS interface for easy navigation                This web-based product is unique in its ability to manage core parameters, analyse
                                                 B-numbers, identify routing problems, and determine BSS parameter faults. NetCM
Configuration of new and existing sites and
                                                 automatically processes the parameter information, highlights inconsistencies and
NodeBs
                                                 pinpoints key areas where settings do not conform to OEM best practice or to
Simultaneous node command execution              operator-specific policies. MML scripts are generated to fix inconsistencies, as well as
                                                 manage planned activities. NetCM works toward consolidating all vendor technologies on
                                                 one platform.
WWW
          MSC
        GGSN
      STP
     SGSN
                                                                      HANDSET
    HLR
   MGW
  BSC
  RNC      Netcm           CM                     Event
                          Data                    Data

                                        SON

                                                                                                                    SON Components
                            PM Data         CDR Data
                                                                                         Key components of Rorotika’s SON, a centralised
                                                                                                  analytics and data correlation engine
       BSC
        RNC           Netpm                   Netrevenue
           OMC                                                   IN
             MSC




             Netpm
NetPM is Rorotika’s multi-vendor, multi-technology performance management solution. Built on proven mission-critical ETL technology, NetPM
provides a powerful, web-based interface to your network performance. Built on a PostgreSQL database and OLAP processing engine, NetPM aims to
keep unnecessary costs down while providing an attractive web-based interface for effective reporting and analysis. NetPM leverages off Rorotika’s
wealth of knowledge and experience in the MNO performance and optimisation arena to bring expert driven reports and content to the user.




                                                                                            Netrevenue
The NetTrax CEM tool from RanWorx fully integrates with the Rorotika            NetRevenue is a bulk revenue data acquisition, summarisation and
SON solution to provide a comprehensive view of handset-based                   reporting solution.
events, recurring network faults and problematic routes with
pinpoint accuracy. NetTrax provides a feature-rich web-based                    NetRevenue is built on technology which has been vigorously
interface with powerful reporting, drill-down capabilities and                  load-tested and commercially proven in tier-1 networks in populous
subscriber event-tracking capabilities. NetTrax also supports Network           environments such as Nigeria and Bangladesh.
Initiated Logging (NIL) which allows an operator to analyse custom              NetRevenue provides an extremely robust interface to the IN CDR
test routes and interval reports for target handsets in a specified area.       platform, extracting valuable information about site value and revenue
Handset software resides on standard commercially available smart               trends at site level. This information allows for fault costing and
phones, running Windows Mobile OS, Android, Blackberry and                      cost-priority fault management.
Symbian.
Rorotika SON

More Related Content

Viewers also liked

Pattern of diffusion of the UNE 166002 innovation management standard: an exp...
Pattern of diffusion of the UNE 166002 innovation management standard: an exp...Pattern of diffusion of the UNE 166002 innovation management standard: an exp...
Pattern of diffusion of the UNE 166002 innovation management standard: an exp...
Moises Mir
 
Rorotika VAS products
Rorotika VAS productsRorotika VAS products
Rorotika VAS products
Frans_Joubert
 
Sms country profile 1
Sms country profile 1Sms country profile 1
Sms country profile 1
Manish Dubey
 
Rorotika son booklet - online
Rorotika   son booklet - onlineRorotika   son booklet - online
Rorotika son booklet - online
Frans_Joubert
 
Rorotika Self-Organising Network Solution (SON)
Rorotika Self-Organising Network Solution (SON)Rorotika Self-Organising Network Solution (SON)
Rorotika Self-Organising Network Solution (SON)
Frans_Joubert
 
IW:LEARN 7 Years of Plone
IW:LEARN 7 Years of PloneIW:LEARN 7 Years of Plone
IW:LEARN 7 Years of Plone
Christian Ledermann
 

Viewers also liked (6)

Pattern of diffusion of the UNE 166002 innovation management standard: an exp...
Pattern of diffusion of the UNE 166002 innovation management standard: an exp...Pattern of diffusion of the UNE 166002 innovation management standard: an exp...
Pattern of diffusion of the UNE 166002 innovation management standard: an exp...
 
Rorotika VAS products
Rorotika VAS productsRorotika VAS products
Rorotika VAS products
 
Sms country profile 1
Sms country profile 1Sms country profile 1
Sms country profile 1
 
Rorotika son booklet - online
Rorotika   son booklet - onlineRorotika   son booklet - online
Rorotika son booklet - online
 
Rorotika Self-Organising Network Solution (SON)
Rorotika Self-Organising Network Solution (SON)Rorotika Self-Organising Network Solution (SON)
Rorotika Self-Organising Network Solution (SON)
 
IW:LEARN 7 Years of Plone
IW:LEARN 7 Years of PloneIW:LEARN 7 Years of Plone
IW:LEARN 7 Years of Plone
 

Similar to Rorotika SON

Rorotika Self Organising Network (SON) Solution
Rorotika Self Organising Network (SON) SolutionRorotika Self Organising Network (SON) Solution
Rorotika Self Organising Network (SON) Solution
Rorotika Technologies (Pty) Ltd
 
Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...
Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...
Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...
Petr Nemec
 
Mindtree's expertise in machine to machine (M2M).
Mindtree's expertise in machine to machine (M2M).Mindtree's expertise in machine to machine (M2M).
Mindtree's expertise in machine to machine (M2M).
Mindtree Ltd.
 
5G Multi-Access Edge Compute
5G Multi-Access Edge Compute5G Multi-Access Edge Compute
5G Multi-Access Edge Compute
Michelle Holley
 
Software Defined Networking – Virtualization of Traffic Engineering
Software Defined Networking – Virtualization of Traffic EngineeringSoftware Defined Networking – Virtualization of Traffic Engineering
Software Defined Networking – Virtualization of Traffic Engineering
QuEST Global (erstwhile NeST Software)
 
Programmable WAN Networking is SFW
Programmable WAN Networking is SFWProgrammable WAN Networking is SFW
Programmable WAN Networking is SFW
Open Networking Summits
 
Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...
Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...
Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...
Eurotech
 
Network Monitoring Tools
Network Monitoring ToolsNetwork Monitoring Tools
Network Monitoring Tools
Prince JabaKumar
 
NMS Projects and POCs completed and ongoing for OSS NAM v 1.5 Linkedin
NMS Projects and POCs completed and ongoing for OSS NAM v 1.5 LinkedinNMS Projects and POCs completed and ongoing for OSS NAM v 1.5 Linkedin
NMS Projects and POCs completed and ongoing for OSS NAM v 1.5 Linkedin
Javier Guillermo, MBA, MSc, PMP
 
IoT and the Oil & Gas industry at M2M Oil & Gas 2014 in London
IoT and the Oil & Gas industry at M2M Oil & Gas 2014 in LondonIoT and the Oil & Gas industry at M2M Oil & Gas 2014 in London
IoT and the Oil & Gas industry at M2M Oil & Gas 2014 in London
Eurotech
 
Guard Era Corp Brochure 2008
Guard Era Corp Brochure 2008Guard Era Corp Brochure 2008
Guard Era Corp Brochure 2008
GuardEra Access Solutions, Inc.
 
Champion Analytics Soln A4
Champion Analytics Soln A4Champion Analytics Soln A4
Champion Analytics Soln A4
Senthil Rajendran
 
ioT and Machine 2 Machine Computing
ioT and Machine 2 Machine ComputingioT and Machine 2 Machine Computing
ioT and Machine 2 Machine Computing
Vikram Nandini
 
Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...
Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...
Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...
Embarcados
 
ServicePilot NBA for z/OS Datasheet [EN]
ServicePilot NBA for z/OS Datasheet [EN]ServicePilot NBA for z/OS Datasheet [EN]
ServicePilot NBA for z/OS Datasheet [EN]
ServicePilot
 
Cisco Multi Domain Service Optimization
Cisco Multi Domain Service Optimization Cisco Multi Domain Service Optimization
Cisco Multi Domain Service Optimization
Dmitry Orzhehovsky
 
NFV SDN for carriers
NFV SDN for carriersNFV SDN for carriers
NFV SDN for carriers
Marie-Paule Odini
 
Tx broadnet pages
Tx broadnet pagesTx broadnet pages
Tx broadnet pages
arichardson1906
 
Software Defined Networking/ Networking/ Traditional Networking/ SDN Benefits
Software Defined Networking/ Networking/ Traditional Networking/ SDN BenefitsSoftware Defined Networking/ Networking/ Traditional Networking/ SDN Benefits
Software Defined Networking/ Networking/ Traditional Networking/ SDN Benefits
Mehak Azeem
 
Work Experiences in ChinaTMN
Work Experiences in ChinaTMNWork Experiences in ChinaTMN
Work Experiences in ChinaTMN
Zhijie Li
 

Similar to Rorotika SON (20)

Rorotika Self Organising Network (SON) Solution
Rorotika Self Organising Network (SON) SolutionRorotika Self Organising Network (SON) Solution
Rorotika Self Organising Network (SON) Solution
 
Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...
Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...
Whitepaper: Mobile Networks in a smart digital future - deploying a platform ...
 
Mindtree's expertise in machine to machine (M2M).
Mindtree's expertise in machine to machine (M2M).Mindtree's expertise in machine to machine (M2M).
Mindtree's expertise in machine to machine (M2M).
 
5G Multi-Access Edge Compute
5G Multi-Access Edge Compute5G Multi-Access Edge Compute
5G Multi-Access Edge Compute
 
Software Defined Networking – Virtualization of Traffic Engineering
Software Defined Networking – Virtualization of Traffic EngineeringSoftware Defined Networking – Virtualization of Traffic Engineering
Software Defined Networking – Virtualization of Traffic Engineering
 
Programmable WAN Networking is SFW
Programmable WAN Networking is SFWProgrammable WAN Networking is SFW
Programmable WAN Networking is SFW
 
Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...
Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...
Addressing the Complexity and Risks of M2M Projects - M2M World Congress Apri...
 
Network Monitoring Tools
Network Monitoring ToolsNetwork Monitoring Tools
Network Monitoring Tools
 
NMS Projects and POCs completed and ongoing for OSS NAM v 1.5 Linkedin
NMS Projects and POCs completed and ongoing for OSS NAM v 1.5 LinkedinNMS Projects and POCs completed and ongoing for OSS NAM v 1.5 Linkedin
NMS Projects and POCs completed and ongoing for OSS NAM v 1.5 Linkedin
 
IoT and the Oil & Gas industry at M2M Oil & Gas 2014 in London
IoT and the Oil & Gas industry at M2M Oil & Gas 2014 in LondonIoT and the Oil & Gas industry at M2M Oil & Gas 2014 in London
IoT and the Oil & Gas industry at M2M Oil & Gas 2014 in London
 
Guard Era Corp Brochure 2008
Guard Era Corp Brochure 2008Guard Era Corp Brochure 2008
Guard Era Corp Brochure 2008
 
Champion Analytics Soln A4
Champion Analytics Soln A4Champion Analytics Soln A4
Champion Analytics Soln A4
 
ioT and Machine 2 Machine Computing
ioT and Machine 2 Machine ComputingioT and Machine 2 Machine Computing
ioT and Machine 2 Machine Computing
 
Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...
Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...
Webinar: Synergy turbinado com o SSP1.4: criptografia elíptica, vídeo pela US...
 
ServicePilot NBA for z/OS Datasheet [EN]
ServicePilot NBA for z/OS Datasheet [EN]ServicePilot NBA for z/OS Datasheet [EN]
ServicePilot NBA for z/OS Datasheet [EN]
 
Cisco Multi Domain Service Optimization
Cisco Multi Domain Service Optimization Cisco Multi Domain Service Optimization
Cisco Multi Domain Service Optimization
 
NFV SDN for carriers
NFV SDN for carriersNFV SDN for carriers
NFV SDN for carriers
 
Tx broadnet pages
Tx broadnet pagesTx broadnet pages
Tx broadnet pages
 
Software Defined Networking/ Networking/ Traditional Networking/ SDN Benefits
Software Defined Networking/ Networking/ Traditional Networking/ SDN BenefitsSoftware Defined Networking/ Networking/ Traditional Networking/ SDN Benefits
Software Defined Networking/ Networking/ Traditional Networking/ SDN Benefits
 
Work Experiences in ChinaTMN
Work Experiences in ChinaTMNWork Experiences in ChinaTMN
Work Experiences in ChinaTMN
 

Recently uploaded

National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
Quotidiano Piemontese
 
HCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAUHCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAU
panagenda
 
AI 101: An Introduction to the Basics and Impact of Artificial Intelligence
AI 101: An Introduction to the Basics and Impact of Artificial IntelligenceAI 101: An Introduction to the Basics and Impact of Artificial Intelligence
AI 101: An Introduction to the Basics and Impact of Artificial Intelligence
IndexBug
 
GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...
GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...
GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...
Neo4j
 
Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1
DianaGray10
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
Zilliz
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
Matthew Sinclair
 
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Speck&Tech
 
GenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizationsGenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizations
kumardaparthi1024
 
Infrastructure Challenges in Scaling RAG with Custom AI models
Infrastructure Challenges in Scaling RAG with Custom AI modelsInfrastructure Challenges in Scaling RAG with Custom AI models
Infrastructure Challenges in Scaling RAG with Custom AI models
Zilliz
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
shyamraj55
 
Presentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of GermanyPresentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of Germany
innovationoecd
 
How to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For FlutterHow to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For Flutter
Daiki Mogmet Ito
 
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
Neo4j
 
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdfUni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems S.M.S.A.
 
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
SOFTTECHHUB
 
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdfUnlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Malak Abu Hammad
 
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
名前 です男
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
danishmna97
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
Kari Kakkonen
 

Recently uploaded (20)

National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
 
HCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAUHCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAU
 
AI 101: An Introduction to the Basics and Impact of Artificial Intelligence
AI 101: An Introduction to the Basics and Impact of Artificial IntelligenceAI 101: An Introduction to the Basics and Impact of Artificial Intelligence
AI 101: An Introduction to the Basics and Impact of Artificial Intelligence
 
GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...
GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...
GraphSummit Singapore | Enhancing Changi Airport Group's Passenger Experience...
 
Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
 
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
 
GenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizationsGenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizations
 
Infrastructure Challenges in Scaling RAG with Custom AI models
Infrastructure Challenges in Scaling RAG with Custom AI modelsInfrastructure Challenges in Scaling RAG with Custom AI models
Infrastructure Challenges in Scaling RAG with Custom AI models
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
 
Presentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of GermanyPresentation of the OECD Artificial Intelligence Review of Germany
Presentation of the OECD Artificial Intelligence Review of Germany
 
How to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For FlutterHow to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For Flutter
 
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
 
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdfUni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdf
 
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
 
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdfUnlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
 
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
 

Rorotika SON

  • 1. Rorotika’s Self-Organizing Network solution, with all the intelligence needed to automate a radio network environment, reduce faults and increase revenues.
  • 2. Rorotika’s SON Self-Organising Network Solution Operators need to analyse data from several different network interfaces, systems and departments in order to optimise their network infrastructure and expenditure, while growing ARPU, profitability and market share. Such systems include Performance Management, Configuration Management, Fault Management, Customer Experience SON Features Management and the Charging System. Operators face the following challenges: Isolation of network subsystems thwarts data analysis Multi: Vendor, Technology, Node, Handset Fault reporting is dispersed across systems, resulting in low visibility and accountability Expert-driven inference engine Root cause analysis requires manual data correlation efforts across multiple systems Revenue-driven fault costing and ranking Isolated systems have ineffective methods of prioritising faults and alarms Discrepancy resolution or recommendation reporting Lack of revenue data correlation hides valuable information about the cost of faults and hinders effective prioritisation. Correlation of network-based (PM) vs handset-based (CEM) fault information Lack of CEM data correlation hides valuable information about the problems being experienced on the ground, and their exact locations. Geo-accurate fault detection and root-cause analysis Rorotika’s SON is a centralised analytics and data correlation engine with the following key components. Route tracing, B-number analysis, policy management, site value and upgrade / downgrade reporting Seamless integration between SON products Cost-effective technologies Netcm Strategy-based BI & reporting (Revenue vs KPI) In a complex multi-vendor and multi-technology environment, NetCM provides a brand new, automated, repeatable and independent review of the status of network parameters. GIS interface for easy navigation This web-based product is unique in its ability to manage core parameters, analyse B-numbers, identify routing problems, and determine BSS parameter faults. NetCM Configuration of new and existing sites and automatically processes the parameter information, highlights inconsistencies and NodeBs pinpoints key areas where settings do not conform to OEM best practice or to Simultaneous node command execution operator-specific policies. MML scripts are generated to fix inconsistencies, as well as manage planned activities. NetCM works toward consolidating all vendor technologies on one platform.
  • 3. WWW MSC GGSN STP SGSN HANDSET HLR MGW BSC RNC Netcm CM Event Data Data SON SON Components PM Data CDR Data Key components of Rorotika’s SON, a centralised analytics and data correlation engine BSC RNC Netpm Netrevenue OMC IN MSC Netpm NetPM is Rorotika’s multi-vendor, multi-technology performance management solution. Built on proven mission-critical ETL technology, NetPM provides a powerful, web-based interface to your network performance. Built on a PostgreSQL database and OLAP processing engine, NetPM aims to keep unnecessary costs down while providing an attractive web-based interface for effective reporting and analysis. NetPM leverages off Rorotika’s wealth of knowledge and experience in the MNO performance and optimisation arena to bring expert driven reports and content to the user. Netrevenue The NetTrax CEM tool from RanWorx fully integrates with the Rorotika NetRevenue is a bulk revenue data acquisition, summarisation and SON solution to provide a comprehensive view of handset-based reporting solution. events, recurring network faults and problematic routes with pinpoint accuracy. NetTrax provides a feature-rich web-based NetRevenue is built on technology which has been vigorously interface with powerful reporting, drill-down capabilities and load-tested and commercially proven in tier-1 networks in populous subscriber event-tracking capabilities. NetTrax also supports Network environments such as Nigeria and Bangladesh. Initiated Logging (NIL) which allows an operator to analyse custom NetRevenue provides an extremely robust interface to the IN CDR test routes and interval reports for target handsets in a specified area. platform, extracting valuable information about site value and revenue Handset software resides on standard commercially available smart trends at site level. This information allows for fault costing and phones, running Windows Mobile OS, Android, Blackberry and cost-priority fault management. Symbian.