Struttura del corso
1. Module-1 : Case studies of how Telecom Regulators have used Big Data Analytics for imposing compliance :
- TRAI ( Telecom Regulatory Authority of India)
- Turkish Telecom regulator : Telekomünikasyon Kurumu
- FCC -Federal Communication Commission
- BTRC – Bangladesh Telecommunication Regulatory Authority
2. Module-2 : Reviewing Millions of contract between CSPs and its users using unstructured Big data analytics
- Elements of NLP ( Natural Language Processing )
- Extracting SLA ( service level agreements ) from millions of Contracts
- Some of the known open source and licensed tool for Contract analysis ( eBravia, IBM Watson, KIRA)
- Automatic discovery of contract and conflict from Unstructured data analysis
3. Module -3 : Extracting Structured information from unstructured Customer Contract and map them to Quality of Service obtained from IPDR data & Crowd Sourced app data. Metric for Compliance. Automatic detection of compliance violations.
4. Module- 4 : USING app approach to collect compliance and QoS data- release a free regulatory mobile app to the users to track & Analyze automatically. In this approach regulatory authority will be releasing free app and distribute among the users-and the app will be collecting data on QoS/Spams etc and report it back in analytic dashboard form :
- Intelligent spam detection engine (for SMS only) to assist the subscriber in reporting
- Crowdsourcing of data about offending messages and calls to speed up detection of unregistered telemarketers
- Updates about action taken on complaints within the App
- Automatic reporting of voice call quality ( call drop, one way connection) for those who will have the regulatory app installed
- Automatic reporting of Data Speed
5. Module-5 : Processing of regulatory app data for automatic alarm system generation (alarms will be generated and emailed/sms to stake holders automatically) :
Implementation of dashboard and alarm service
- Microsoft Azure based dashboard and SNS alarm service
- AWS Lambda Service based Dashboard and alarming
- AWS/Microsoft Analytic suite to crunch the data for Alarm generation
- Alarm generation rules
6. Module-6 : Use IPDR data for QoS and Compliance-IPDR Big data analytics:
- Metered billing by service and subscriber usage
- Network capacity analysis and planning
- Edge resource management
- Network inventory and asset management
- Service-level objective (SLO) monitoring for business services
- Quality of experience (QOE) monitoring
- Call Drops
- Service optimization and product development analytics
7. Module-7 : Customer Service Experience & Big Data approach to CSP CRM :
- Compliance on Refund policies
- Subscription fees
- Meeting SLA and Subscription discount
- Automatic detection of not meeting SLAs
8. Module-8 : Big Data ETL for integrating different QoS data source and combine to a single dashboard alarm based analytics:
- Using a PAAS Cloud like AWS Lambda, Microsoft Azure
- Using a Hybrid cloud approach
Requisiti
There are no specific requirements needed to attend this course.
Recensioni (5)
how the trainor shows his knowledge in the subject he's teachign
john ernesto ii fernandez - Philippine AXA Life Insurance Corporation
Corso - Data Vault: Building a Scalable Data Warehouse
Le esercitazioni pratiche guidate.
Randy
Corso - Apache NiFi for Developers
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I liked that it was practical. Loved to apply the theoretical knowledge with practical examples.
Aurelia-Adriana - Allianz Services Romania
Corso - Python and Spark for Big Data (PySpark)
This is one of the best hands-on with exercises programming courses I have ever taken.
Laura Kahn
Corso - Artificial Intelligence - the most applied stuff - Data Analysis + Distributed AI + NLP
Un sacco di esempi pratici, modi diversi di affrontare lo stesso problema, e a volte trucchi non così ovvi su come migliorare la soluzione attuale
Rafał - Nordea
Corso - Apache Spark MLlib
Traduzione automatica