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How AI is Redefining Network Management and Optimization - Neural Technologies
Neural Technologies5 min read

How AI is Redefining Network Management and Optimization

How AI is Redefining Network Management and Optimization for MNOs

The expansion of 5G, IoT devices, and hyperconnected ecosystems has transformed mobile networks into highly dynamic and intricate systems. As a result, Mobile Network Operators (MNOs) face mounting challenges, including exponential data growth, unpredictable traffic surges, heightened security threats, and stringent low-latency requirements. 

Conventional rule-based network management frameworks, designed for static environments, are becoming increasingly ineffective in handling these complexities. To address these demands, AI and machine learning (ML) are emerging as critical enablers, allowing MNOs to shift from reactive, manual interventions to intelligent, self-optimizing networks that enhance efficiency, resilience, and real-time adaptability.

The AI Advantage: From Predictive Insights to Autonomous Networks 

AI's significance comes from its ability to transform raw network data into actionable intelligence. By analyzing terabytes of data from devices, cells, and user interactions, AI models uncover patterns invisible to human operators. 

Here’s how MNOs can harness AI to future-proof their operations:

  1. Predictive Maintenance: Minimizing Downtime Before It Happens
    Network outages cost MNOs millions in lost revenue and reputational damage. AI-powered predictive analytics uses historical performance data, weather patterns, and equipment telemetry to forecast hardware failures or capacity bottlenecks weeks in advance. For example, AI models can predict cell tower degradation by correlating temperature fluctuations with signal quality trends. This allows operators to schedule maintenance during off-peak hours, avoiding costly unplanned downtime.

  2. Dynamic Resource Allocation: Balancing Efficiency and Performance
    With the advent of 5G, network slicing and edge computing demand real-time resource management. AI-powered algorithms continuously analyze traffic patterns, dynamically adjusting bandwidth allocation and prioritizing latency-sensitive applications such as autonomous vehicles and remote surgery. These intelligent systems can also anticipate congestion and proactively reroute traffic, ensuring seamless connectivity while optimizing overall network management efficiency.

  3. Anomaly Detection: Securing Networks in the Age of Sophisticated Threats
    The rise of IoT devices and interconnected systems has made telecom networks prime targets for cyberattacks. Traditional security solutions, reliant on predefined signatures, struggle to detect zero-day exploits and evolving threats. AI-driven anomaly detection builds a dynamic behavioral profile of network traffic, instantly identifying deviations that signal potential threats, whether it’s a DDoS attack, SIM box fraud, or unauthorized access attempts. This real-time threat detection strengthens security, reducing risks before they escalate into major breaches.

  4. Enhancing Customer Experience Through AI-Driven Insights
    Customer dissatisfaction often stems from undetected service disruptions. AI enhances user experience by correlating network performance metrics (latency and packet loss) with customer complaints to uncover root causes. For example, if multiple users in a specific region report dropped calls, AI can pinpoint overloaded backhaul links or interference issues, enabling operators to take targeted corrective actions. The proactive service management reduces churn and enhances overall customer satisfaction.

  5. Future-Proofing with Self-Learning Networks in the 5G-to-6G Evolution
    As networks become increasingly complex, static machine learning models quickly lose relevance. Next-generation AI systems incorporate reinforcement learning (RL), where algorithms continuously refine decision-making based on real-world feedback. Looking ahead to 6G, AI-driven networks will take automation even further with cognitive intelligence, enabling ultra-dynamic spectrum sharing, AI-native air interfaces, and self-optimizing service orchestration. These enhancements will allow networks to anticipate demand spikes, proactively allocate resources, and autonomously maintain near-zero latency for mission-critical applications. 

Key Challenges of AI in Mobile Network Operations

AI solutions are transforming Mobile Network Operations, from enhancing fault detection to enabling real-time adjustments. However, for successful implementation, telecom leaders must tackle challenges that could impede the effective scaling of AI-driven systems.

  • Data Fragmentation and Quality Issues

AI models rely on high-quality, unified data to deliver accurate insights. However, MNOs often struggle with siloed data from OSS, BSS, and IoT devices, as well as inconsistent data formats and missing values. Poor data quality can lead to unreliable predictions and suboptimal decision-making.

  • Explainability and Trust

Many AI models, especially deep learning systems, operate as "black boxes", making it difficult for operators to understand how decisions are made. The lack of transparency can hinder trust and adoption, particularly in critical use cases like fraud detection or network management and optimization.

  • Scalability and Real-Time Processing

Telecom networks generate vast amounts of data daily, requiring AI systems to process and analyze information in real-time. Many off-the-shelf AI solutions struggle to scale efficiently, leading to latency issues and missed opportunities.

  • Integration with Legacy Systems

Many telecom networks continue to rely on legacy systems that often struggle to integrate with modern AI tools. This incompatibility can necessitate significant modifications, which can be both time-consuming and costly.

  • Talent and Expertise Gaps

Building and maintaining AI systems requires specialized skills in data science, ML engineering, and industry-specific knowledge. Many organizations lack the in-house expertise needed to effectively develop and deploy AI solutions.

 

Overcoming Barriers to AI Adoption in Telecom with ActivML

Neural Technologies’ ActivML solution is a powerful AI and machine learning platform, featuring an extensive suite of advanced models and AI-driven explainability analysis, tailored to meet the unique needs of telecommunications operations.

One of the biggest obstacles in AI adoption is the shortage of skilled professionals. ActivML solution overcomes this challenge with its MLOps capabilities, enabling business users and non-experts to effortlessly build, train, and deploy AI/ML models. This makes it easier for telecommunications companies to seamlessly integrate AI and machine learning into their workflows. 

Key features and benefits of the ActivML solution include:

  • Business-Enabled Automated Model Building, Training and Deployment

Empowers business users and non-specialized experts to build, train, and deploy AI/ML models, allowing telecommunications companies to integrate AI and machine learning easily into their operations.

  • Self-Learning Structured Analytical Profiling

Continuously adapts to evolving network conditions, autonomously refining predictions to minimize lost revenue and enterprise risk.

  • Unconstrained Anomaly Detection

Identifies both known and unknown threats, ensuring proactive risk mitigation in dynamic telecom environments.

  • Predictive Classification for Fraud Prevention

Advanced modeling techniques detect fraudulent patterns before they cause revenue leakage.

  • Real-Time Predictive Modeling

AI-driven risk and fraud analytics operate in near real-time, allowing MNOs to respond instantly to network disruptions and security threats.

  • In-Depth Explanation Analytics

Offers transparent, graphical insights with flexible, GUI-based configurability, fostering trust in AI-driven decision-making.

Future-Proofing with AI: The Road to 6G

While AI is already transforming 5G networks, its role will become even more critical in the 6G era, where ultra-fast speeds, near-zero latency, and intelligent automation will define network capabilities. By leveraging the autonomous learning capabilities of AI-Machine Learning tools (e.g. ActivML), MNOs can build a future-ready network foundation, ensuring smooth evolution from 5G to 6G while minimizing disruptions and maximizing efficiency.

Embrace AI-powered network intelligence today. Contact us to learn more about ActivML.