Notes - MIECT
Comunicações Móveis
Notes - MIECT
Comunicações Móveis
  • Comunicações Móveis
  • The Communication Network
    • The Phone Network
    • The Internet
    • The Mobile Network
  • Wireless Systems
    • Wireless Systems
    • Mobile Hassles
    • Device Issues
    • Why is mobile hard?
  • Physical Layer
    • Classifications of Transmission Media
    • Wireless
    • Radio Transmission Impairments
    • Time-Domain View
    • Propagation Degrades
    • Propagation Mechanisms
    • Redundancy
  • Satellite Networks
    • Satellites
    • Satellite Networks
      • GEO - Geostationary Orbit
      • NGSO - Non Geostationary Orbits
    • Routing
  • Mobile Networks
    • Connections and structures
    • Cell
    • Wireless networks
    • 802.11
    • Infrastructure vs Ad Hoc Mode
    • Data Flow Examples
    • Physical layer
    • MAC
      • Multi-bit Rate
      • MAC Layer
      • Carrier Sense Multiple Access
      • Some More MAC Features
    • How does a station connect to an Access Point?
      • IEEE 802.11 Mobility
    • How to extend range in Wi- Fi?
      • IEEE 1905.1 standard, Convergent Digital Home Network for Heterogeneous Technologies
  • Bluetooth, Wireless Sensor Networks, ZigBee
    • Bluetooth
      • Piconets
        • Device Discovery Illustrated
        • Paging
      • Scatternet
      • Bluetooth Stack
        • Baseband in Bluetooth
        • Adaptation protocols
      • Profiles and security
        • Bluetooth
        • Link keys in a piconet
      • 802.15.x
        • Bluetooth Networking Encapsulation Protocol
        • Bluetooth 4.0: Low Energy
          • Device Modes
          • Link Layer Connection
          • How low can the energy get?
          • BLE and GAP
    • Wireless Sensor Networks
      • MIoT and HIoT are different
      • Types of Wireless Networks
      • Wireless Sensor Network
      • 802.15.4 and Zigbee
      • 802.15.4 / ZigBee Architecture
        • IEEE 802.15.4 MAC
        • Channel Access Mechanism
        • Association procedures
        • ZigBee
        • ZigBee and BLE
  • Cellular Networks
    • Wireless cellular network
    • Wide Area Wireless Sensor Networks (WWSN)
      • LTE-M
      • NB-IoT
      • Spectrum & Access
      • Cellular technologies
      • LoRa
      • The Things Network
    • Technological waves
    • 1G - Mobile voice
    • 2G - Global System for Mobile Communications (GSM)
    • 2.5G - General Packet Radio Service (GPRS)
    • 3G - Universal Mobile Telecommunication System
      • Multiplexing mechanisms
      • SIP Protocol
      • Services in IMS
    • 4G - Long Term Evolution/Evolved Packet Core (LTE/EPC)
      • Long Term Evolution (LTE)
    • 5G
      • Example of verticals
      • 3GPP Releases detail
      • Technologies
      • New Radio is required
      • System architecture
      • Non-stand Alone (NSA)
      • Networks deployment
      • Protocol stacks
      • Procedures
      • QoS Model
      • Mobility in 5G
      • Distributed cloud: Edge Computing and 5G
      • Slicing
    • 6G
  • Software and Virtualization Technologies in Mobile Communication Networks
    • Network Function Virtualization
    • Management and Orchestration
    • Software Defined Networking
      • How to “direct” the controller?
      • Emulation
      • Programming Protocol-Independent Packet Processors (P4)
    • OpenRAN
    • Multi-access Edge Computing
    • Network Automation
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On this page
  • AI application to networks
  • A self-driving network
  • How can this become true?
  • Telemetry
  • The Aggregation Scenario
  • The Actuating (Control) Stream
  • Network Automation
  • Declarative Intent
  • Decision Making
  • Rule-based learning
  • Machine learning
  • A transformation of the skillset
  • Network automation
  • Closing the Closed Loops
  1. Software and Virtualization Technologies in Mobile Communication Networks

Network Automation

AI application to networks

Accelerates service provisioning.

  • Makes networks understand service intentions.

Reduces the probability of human errors.

  • Automates complex networks.

Predicts and quickly rectifies faults.

  • Enables networks to optimize themselves.

Improves efficiency of detecting threats.

  • Enables networks to predict threats.

A self-driving network

A network that:

  • Accepts guidelines from the network operator.

  • Self-discovers the components.

  • Organizes and configures itself.

  • Monitors itself using probes and other techniques.

  • Auto-detects and auto-enables new customers.

  • Automatically monitors and updates service delivery.

  • Diagnoses itself using machine learning and heals itself.

  • Periodically reports by itself.

How can this become true?

  • Telemetry.

  • Multidimensional views.

  • Automation.

  • Declarative intent.

  • Decision making.

Telemetry

  • Obtain information from the network, the data, services, etc.

  • Real-time vs. Statistical.

  • Raw vs. pre-processed.

  • Key Performance Indicators.

The Aggregation Scenario

Support the integration of different data flows.

  • Open.

  • Automated.

  • Secure.

  • Scalable.

Deal with heterogeneity at all levels.

  • Data sources.

  • Data consumers.

  • Data models.

  • Deployment styles.

  • Supporting infrastructures.

Not just data

  • Metadata becomes essential, including semantic mappings.

  • What seems to claim for a data stream ontology.

  • Not that far away: data modeling is a first step.

The Actuating (Control) Stream

OAM actions at a wide variety of different domains

  • Challenging, given the current state-of-the-art.

Initial strategies.

  • Domain-specific.

  • Recommendation systems.

  • Autonomic protocols.

SBA approaches and capability models.

  • Reusable functionality description.

  • Abstractions of network element functionalities usable as building blocks.

  • Combined to provide more powerful features.

  • Registration mechanisms to support CI/CD.

  • Inter-domain collaboration for E2E management.

Network Automation

Declarative Intent

Decision Making

Rule-based learning

  • If ‘X’ happens, do ‘Y’

  • Pros

    • Straightforward programming.

    • Easy to predict and refine.

  • Cons

    • Slow work.

    • At scale, hard to manage.

Machine learning

  • Models, learning, percentage.

  • Pros

    • Can become creative.

    • Fastest way to learn complex behavior.

  • Cons

    • Can come to strange conclusions.

    • Hard to know what it knows.

A transformation of the skillset

Network engineering → Service design.

Network knowhow → Algorithm development.

The networks get out of the way.

  • SLAs are automatically met.

Networks adapt, react, anticipate.

  • Security becomes Good Guy ‘Bot vs Bad Guy‘ Bot.

Network automation

Remove human from the loop of usual network management tasks.

  • Provisioning.

  • Detection.

  • Diagnosis.

  • Remediation.

In reality, is not to fully remove the humans, but remove them from the low-level painful tasks.

Why?

  • Humans are expensive.

  • Reliable?

  • How to scale?

Closing the Closed Loops

The use of closed loops is common everywhere.

  • Automatics have been around for a long time.

  • An essential aspect of industrial processes.

Not only about offering network data.

  • An integral monitoring data substrate.

Well-defined data flow semantics.

  • Data models for sources and consumers.

  • Registry, discovery and dynamic orchestration.

  • Full data sovereignty.

Going beyond.

  • Key-Value Indicators distillation.

  • Network-hosted AI and learning mechanisms.

  • Support for serverless in-network computing.

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Last updated 2 years ago