Logo
AI Specialization

AI+ Telecommunications™

  • Foundational Insights: Explore AI technologies enhancing telecom networks, from predictive maintenance to network optimization and customer service automation. 
  • Advanced Applications: Master AI in 5G deployment, anomaly detection, and real-time resource management for improved network performance. 
  • Specialized Expertise: Learn AI solutions for cybersecurity, fraud detection, and efficient IoT integration to ensure network reliability. 
  • Capstone Project: Develop AI-driven solutions for real-world telecom challenges like network optimization and intelligent service delivery. 

All prices are in NZD, ex GST (15%).

At a Glance: Course + Exam Overview

Category AI Specialization
AI Technical
Program Name: AI+ Telecommunications™
Exam Format 50 questions, 70% passing, 90 Minutes Duration:
  • Instructor-Led: 5 Day
  • Self-Paced: 40 hours of content

🤝 You’re never on your own — Parasol Concierge Support provides integration guidance and expert VA assistance so you can focus on mastering skills while we handle the setup details.

WHAT You'll Learn

AI and Telecommunications Integration

Learn how AI integrates with telecom technologies to optimize network performance and improve customer experience.

Python for Telecom Applications

Master Python for network optimization, predictive maintenance, and telecom data analysis.

Data Analysis and Network Optimization

Understand how to process telecom data and apply AI for enhanced network reliability and resource management.

AI-Driven Network Management

Apply AI techniques for intelligent traffic management, resource allocation, and real-time network monitoring

CERTIFICATION Modules

  1. 1.1 AI Fundamentals in Telecommunications
  2. 1.2 AI Technologies for Telecom
  3. 1.3 Emerging Trends in AI for Telecommunications
  4. 1.4 Case Study
  5. 1.5 Hands-on

  1. 2.1 Foundation of Telecom Data Engineering
  2. 2.2 Designing and Managing the Telecom Data Pipeline
  3. 2.3 Data Engineering tools and Technology
  4. 2.4 Case Study: SK Telecom’s Big Data Analytics with Metatron Discovery
  5. 2.5  Hands on Exercise

  1. 3.1 Introduction to 5G
  2. 3.2 AI Applications in 5G
  3. 3.3 Enhancing Network Management with AI
  4. 3.4 Case Study
  5. 3.5 Hands-on

  1. 4.1 Predictive Network Management
  2. 4.2 Performance Enhancement Techniques
  3. 4.3 Traffic Management Strategies
  4. 4.4 Case Study
  5. 4.5 Hands-on

  1. 5.1 Security Threats in Telecom
  2. 5.2 AI Security Solutions
  3. 5.3 Advanced Security Frameworks
  4. 5.4 Case Study
  5. 5.5 Hands-on

  1. 6.1 Personalized Customer Service
  2. 6.2 Service Quality Improvement
  3. 6.3 Enhancing Customer Engagement
  4. 6.4 Case Study
  5. 6.5 Hands-on

  1. 7.1 IoT Fundamentals
  2. 7.2 Managing IoT Security Challenges
  3. 7.3 Enhancing Operational Efficiency with IoT
  4. 7.4 Case Study
  5. 7.5 Hands-on

  1. 8.1 Transitioning to AI-driven NOCs
  2. 8.2 Automating escalations and root cause analyses
  3. 8.3 Closed-loop automation with AI and SDN integration
  4. 8.4 Designing AI-ready network architectures
  5. 8.5 Change management strategies for AI rollouts in operations
  6. 8.6 Case Study: Implementation of AI assistants in NOCs

  1. 9.1 Ethical Implications of Using Artificial Intelligence
  2. 9.2 Responsible Deployment Practices
  3. 9.3 Emerging Trends and Challenges
  4. 9.4 Case Study
  5. 9.5 Hands-on

Industry opportunities

Telecom AI Consultant

    Advise telecom companies on integrating AI solutions to optimize network performance, customer experience, and service delivery.

5G Network Manager

    Oversee the development and deployment of AI-powered 5G networks, ensuring enhanced connectivity and network efficiency.

AI Network Architect

    Design and implement AI-driven network systems for predictive maintenance, QoS monitoring, and real-time resource management in telecom.

Telecom Operations Manager (AI-driven)

    Manage telecom operations using AI tools to optimize network performance, reduce costs, and improve customer satisfaction.

Chief Telecom Officer (CTO)

    Lead the adoption of AI technologies across telecom infrastructure, driving innovation, scalability, and improved service delivery.

FREQUENTLY ASKED QUESTIONS

Yes, you’ll gain practical, hands-on experience to immediately apply AI and BI skills in real-world business scenarios through case studies and a capstone project.

This course combines AI with telecommunications, teaching Python, machine learning, and network management, focusing on 5G, IoT, and predictive maintenance.

You’ll work on projects like network optimization, predictive maintenance, QoS, and resource management, culminating in a real telecom capstone.

You’ll work on projects like network optimization, predictive maintenance, QoS, and resource management, culminating in a real telecom capstone.

You’ll gain expertise in AI and telecom technologies, with hands-on experience and a capstone preparing you for roles in telecom networks and 5G deployment.

PREREQUISITES

  • Telecommunications Knowledge: Basic understanding of telecommunications concepts, including networks, 5G, and IoT.
  • Programming Skills: Familiarity with programming, preferably in Python.
  • Data Analysis: Basic knowledge of data analysis techniques is beneficial.
  • AI Familiarity: Prior experience with AI is helpful but not required for enrollment in this course.

EXAM DETAILS

Duration

90 Minutes

Passing Score

70%

Format

50 multiple-choice/multiple-response questions

EXAM BLUEPRINT

Introduction to Al in Telecommunications 6%
Data Engineering for Telecom Al 10%
Al for 5G Networks 10%
Al in Network Optimization 10%
Al for Network Security 10%
Enhancing Customer Experience with Al 11%
IoT Integration with Telecommunications 11%
Al-Integrated Network Operations Centers (NOCs) 11%
Ethical Considerations in Artificial Intelligence 11%
Capstone Project 10%

Instructor-Led (Live Virtual/Classroom)

Request Virtual Training

TECHNOLOGIES USED

TensorFlow
TensorFlow
Keras
Keras
Matplotlib
Matplotlib