According to Grand View Research, the AI-driven network automation market was valued at 8.67 billion USD in 2023. It is expected to reach 60.60 billion USD by 2030, with an average annual growth rate of 32.5%. At the same time, Ericsson reported that nearly 48% of telecom service providers worldwide have already used AI in their network operations. These numbers show that AI-driven network automation is becoming a natural trend. Let’s explore how this technology is changing modern IT systems in the article below.
AI-driven network automation means using artificial intelligence in network management to handle tasks like traffic monitoring, problem detection and performance tuning. By combining machine learning, Big Data analytics and predictive models, the system can learn from real data, forecast risks, and flexibly adjust operations. This helps improve the experience for end users.

As the need for connection, security, and smooth operations grows, AI-driven network automation becomes the solution that helps businesses stay ready.
Increased network reliability
AI-driven network automation keeps monitoring the network, spots unusual signs early, and can redirect or balance traffic when needed. This reduces failures and cuts downtime.
Improved performance for AI workloads
AI workloads often need high bandwidth, low latency and fast data transfer. Network automation can prioritise important data flows, balance traffic and optimise paths. This ensures AI models and apps like chatbots, video analytics, and machine learning training run without delays or congestion.
Scalability for growing AI needs
When businesses deploy more AI apps (on edge, in cloud, or on devices), the amount of data and connected devices grows fast. AI-driven network automation allows the network to expand flexibly without heavy manual setup, keeping the system stable while scaling.
Enhanced security and compliance
Many AI systems handle sensitive data such as personal information, internal algorithms, or customer records. Network automation helps keep device settings updated, tracks abnormal activity, and manages access control consistently.
Reduced IT workload and human error
Manual network management requires much effort, from setup and configuration to monitoring and troubleshooting. AI-driven network automation automates repeated tasks like manual checks or late responses to alerts. This lowers the risk of mistakes, allows IT teams to focus on strategies, and keeps the network more stable.

AI-driven network automation has been widely applied across many industries:
AI is changing how healthcare works, from patient care to data management. Key use cases include:
Example: The mCare solution by TMA is a strong case. It connects with more than 40 devices and processes real-time data using OCR. Hospitals and families can track patients continuously, spot risks early, and shorten reaction time.
The finance industry uses AI to automate workflows and reduce risks. Typical applications include:
Example: In the project Enhance Credit Risk Analysis With AI/ML Technologies, TMA built a risk assessment model using AI and Machine Learning algorithms. The outcome was higher accuracy in classifying high-risk customers, leading to faster and more reliable credit evaluation.
Telecom providers use AI to optimise infrastructure and keep services stable. Key examples include:
Example: At its Telecom Solution Center, TMA has developed solutions such as Seamless Handover, Adaptive Wi-Fi Connection and 5G Network Slicing Apps. These solutions keep connections stable while users move, improve internet quality in crowded areas, and allocate network resources fairly for each service (for example, video calls or AR/VR).
AI is shaping smart factories by streamlining processes and reducing failures. Typical use cases are:
Example: TMA built an AI Sound-Based Fault Detection system to monitor machines through audio sensors. The system records and analyses noise, vibrations and sound frequencies. When unusual patterns are detected, it instantly sends alerts to the maintenance team.

To give a clearer view, the table below compares AI-driven network automation and traditional network automation based on key factors in IT infrastructure management.
Factors | Traditional Network Automation | AI-Driven Network Automation |
Adaptability | It only works on a fixed set of rules, so it is hard to adapt when the system changes or new scenarios appear. | It uses machine learning algorithms to self-adjust, detect anomalies, and adapt to changes in real-time. |
Responsiveness | It reacts based on predefined triggers and rules; unexpected situations often require manual intervention by engineers. | It can predict issues and respond faster by analysing data and making proactive decisions. |
Scalability | It can scale, but the process is complex. Each expansion needs new rules and configurations, which can be labour-intensive. | It scales easily, as AI can process large data and optimise resources without constant manual adjustments. |
Reliability | It is stable in environments with little change and works well for repeated tasks, but errors often occur when conditions shift. | It offers higher reliability, as the system learns from data and reduces errors when network conditions change. |
Security | Security depends on human-defined rules; if rules are wrong or missing, the system is easy to exploit. | It can detect anomalies, prevent security risks proactively and support continuous safety monitoring. |
Cost | Low initial cost for simple tasks, but maintenance and scaling become expensive over time. | It requires upfront investment in AI and infrastructure, but over time it lowers operating costs through smart automation. |

To apply AI-driven network automation successfully, businesses should follow these steps:
Step 1: Check current setup
First, review the entire network infrastructure, from devices and architecture to the APIs in use. The IT team must assess data collection ability and AI/ML skills. If there are gaps, fill them with training or new hires before starting the project.
Step 2: Define clear goals
Set clear objectives such as reducing incident response time, keeping the network stable, improving performance for key apps or lowering operating costs. Each goal should have measurable indicators to track progress and results.
Step 3: Choose tools and technologies
Consider AIOps for network data analysis, cloud or hybrid cloud for scalability, and HPC or edge computing for intensive processing. Make sure tools support API integration, have high reliability and match long-term strategy.
Step 4: Build a scalable data infrastructure
A solid data foundation is key for AI. Companies need continuous data collection, centralised and scalable storage, and standardised and encrypted data. Once data is clean and secure, AI models can provide accurate insights.
Step 5: Run small tests
Instead of rolling out the whole system at once, start with a limited network area. Automate simple tasks like traffic adjustment or fixing common errors. After testing, record real results, compare them with goals and learn before scaling up.
Step 6: Make automation event-driven
Set up scenarios where AI reacts instantly when network events happen. This includes access control, anomaly monitoring, data encryption and regular audits. Also, follow data protection rules like GDPR or HIPAA.
Step 7: Measure, repeat, and improve
Build performance tracking to compare results with goals. Keep fine-tuning AI models with new data. Encourage technology trials, invest in AI/ML training for staff, and maintain flexibility to stay competitive long-term.
To deploy AI-driven network automation successfully, the implementation team needs strong and deep knowledge in several areas:
Reasons why TMA is the right partner for businesses:

AI-driven network automation not only creates many current challenges but also opens important trends for the future.
During the implementation of AI-driven network automation, businesses may face several key challenges, such as:
Data issues and integrating legacy systems
Network data is often scattered, inconsistent, and difficult to synchronise. Legacy systems usually do not support open APIs or real-time data, which makes AI integration complicated. This problem slows down the process of using data and limits the ability to operate automation based on AI.
Initial investment costs and ROI
The initial cost of AI-driven networking is often very high, from hardware infrastructure and software licences to staff training. Businesses find it hard to define a clear ROI if they do not have strong baseline data. This leads to concerns about payback time and the risk of spending beyond the planned budget.
Ensuring security and regulatory compliance
Applying AI in networks expands the attack surface and increases the risk of data leaks. The system also has to meet strict regulatory and security standards. If these requirements are not fulfilled, organisations may face legal risks, financial penalties and a loss of customer trust.
Needs better wording & coherence
AI-driven automation requires staff with deep knowledge of networking, data, and software. Many organisations lack people with enough cross-disciplinary skills. The difficulty lies in the need to adapt quickly while technology keeps changing, which makes the skills gap even bigger.
Along with the challenges, AI-driven network automation also opens important trends for the future, such as:
Emerging technology trends (Intent-based networking, AIOps)
New trends like Intent-based Networking and AIOps are shaping the future of AI-driven networking. They promise to improve performance and upgrade the way networks are managed, as business goals can be translated into automatic policies and big data can be processed in a smarter way.
The impact of AI-driven networking on the labor market
AI-driven networking not only changes technology infrastructure but also affects the labor market. Applying AI in network management transforms business operations, which leads to a shift in workforce demand.
Forecasting the development and wide adoption of AI in Network Management
The rapid growth of AI shows that AI-driven networking will become more and more common. In the future, this technology will not only be widely used but may also become an essential part of modern network management.

1 - Which AI tool is best for networking?
In fact, there is no single “best” AI tool. The right choice depends on your goals. For IT network infrastructure, platforms like Juniper Mist or Cisco DNA Center can be used for management and automation. For professional connections, Crystal Knows and NetworkAI help analyse profiles, while Poised supports real-time communication skill improvement.
2 - Does AI-driven automation replace human network engineers?
AI-driven automation does not fully replace network engineers. It mainly handles repetitive tasks such as monitoring, log analysis and anomaly detection. Human experts are still essential for designing architecture, making strategic decisions, and solving complex cases that AI cannot yet automate.
AI-driven network automation is becoming a key foundation in modern IT infrastructure management. Although challenges remain in cost, data, and workforce skills, its rapid growth shows that this technology will soon be an effective solution for helping businesses keep their competitive edge in the digital era.
If you want to bring AI-driven network automation into your IT infrastructure, contact TMA Solutions today to get a tailored deployment roadmap.
Contact information:
TMA SOLUTIONS - The leading network AI company in Vietnam Email: sales@tmasolutions.com Website: https://staging.tmasolutions.com/ Linkedin: TMA Solutions TMA Tower address: Street #10, Quality Tech Solution Complex (QTSC), Trung My Tay Ward, Ho Chi Minh City. |
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