Telstra and Ericsson Trial AI-Powered EACC rApp, Advancing Autonomous Network Innovation

In a global first, Telstra and Ericsson trialed the AI-powered EACC rApp on Telstra’s live network via the Ericsson Intelligent Automation Platform (EIAP). This AI-driven solution enhances network automation by ensuring configuration consistency in real time, helping Telstra advance toward fully autonomous networks. With AI capabilities for self-optimization and self-correction, the EACC rApp improves network efficiency and reliability, offering valuable insights into the potential of AI in telecom to elevate performance and customer experience.
Telstra and Ericsson Trial AI-Powered EACC rApp, Advancing Autonomous Network Innovation
Image Credit: Ericsson and Telstra
Telstra and Ericsson Pioneer Live Network Trial of Automated Configuration Consistency (EACC) rApp, Paving the Way for Autonomous Networks

In a pioneering achievement, Telstra and Ericsson have completed a groundbreaking trial of Ericsson’s Automated Configuration Consistency (EACC) rApp on a live commercial network. This successful test, conducted on Telstra’s network via Ericsson’s Intelligent Automation Platform (EIAP), underscores both companies’ commitments to advancing autonomous network technologies and improving network efficiency and reliability.

Transforming Network Management with AI-Powered Ericsson EIAP


The trial marks a significant step forward in network automation. Ericsson’s Intelligent Automation Platform (EIAP) acts as a Service Management and Orchestration (SMO) solution, designed to centralize and automate network management functions across RAN, core, and edge. By utilizing the EIAP, Telstra is exploring innovative ways to simplify network complexity, improve consistency, and streamline its operations.

Through advanced orchestration and machine learning capabilities, EIAP enables Telstra to manage configuration settings across its network efficiently. This platform allows Communication Service Providers (CSPs) like Telstra to oversee their networks in real time, monitor configurations for inconsistencies, and automate adjustments to maintain optimal performance. As a result, Telstra can deliver faster, more reliable network services that align with today’s demand for high-speed connectivity and low latency.

AI-Powered EACC rApp: Ensuring Network Configuration Reliability

The EACC rApp deployed in this trial is a specialized automation application that identifies and addresses configuration consistency issues within the Radio Access Network (RAN). The rApp’s capabilities extend to detecting and correcting errors in real time, with rollback features that allow Telstra to restore previous configurations if Key Performance Indicators (KPIs) are affected. This functionality is crucial for ensuring that network issues are resolved quickly without compromising service quality.

The EACC rApp trial is a first-of-its-kind deployment in a live network environment, which showcases the importance of real-time network configuration management in enhancing performance, stability, and resilience. For Telstra, this technology promises a path to reducing operational complexity, improving resource allocation, and strengthening its ability to deliver high-quality services.

Meeting High-Speed Demands through AI-Driven Network Automation

Today’s digital consumers increasingly expect reliable, high-speed connectivity to support data-intensive applications, from streaming and gaming to virtual meetings. However, maintaining such performance standards requires CSPs to address network configuration challenges proactively. This is where Ericsson’s EIAP and EACC rApp play pivotal roles. By enabling intelligent automation, these technologies help Telstra consistently meet customer expectations for speed, reliability, and minimal latency.

The trial demonstrates how advanced automation combined with AI-driven optimizations can elevate user experiences by providing seamless connectivity. With platforms like EIAP, Telstra can offer a more consistent quality of service, allowing customers to enjoy data-rich experiences without interruptions – a significant competitive advantage in a data-driven world.

Creating an Open AI-Powered rApp Ecosystem with Ericsson’s EIAP

Ericsson’s EIAP is more than just a tool for CSPs; it’s also a hub for collaborative innovation. The platform supports a growing open ecosystem, enabling developers to create and deploy rApps – modular automation applications designed to automate specific network functions. With resources such as the Software Development Kit (SDK) and Developer Portal, CSPs can access tools that support rapid rApp development, testing, and deployment.

Telstra’s participation in this open ecosystem is a testament to its commitment to adopting the latest innovations in network automation. By developing and implementing custom rApps, Telstra can continually evolve its network management strategies, delivering enhanced services while reducing operational overheads. This collaborative approach to innovation also facilitates advancements across network domains, including deployment, optimization, and self-healing functionalities powered by AI.

AI-Driven Path to Self-Optimizing Autonomous Networks at Telstra

Telstra’s trial of the EACC rApp aligns with its broader vision of developing autonomous networks. The ultimate goal is to establish a network that can self-optimize, self-heal, and self-assure with minimal human intervention. Achieving this level of automation enables Telstra to streamline network operations, improve utilization of resources, and focus more on enhancing customer experience.

The intent-driven model that Telstra aspires to achieve will leverage advanced AI and machine learning technologies to automate routine tasks, allowing network operators to monitor performance proactively and adapt to changing demands seamlessly. This approach holds promise not only for reducing operational costs but also for ensuring that Telstra’s network can respond quickly to usage spikes, outages, or performance drops, all while maintaining consistent service quality.

AI Innovations in Network Automation: Telstra and Ericsson Lead the Way

The trial’s success highlights both Telstra’s and Ericsson’s leadership in exploring cutting-edge network automation solutions. Sri Amirthalingam, Telstra’s Network Engineering Executive, emphasized the company’s dedication to customer-centric innovations, stating, “Our collaboration with Ericsson underscores our goal of enhancing customer experiences and ensuring the quality of our network services. Automating configuration management with rApps enables us to deliver consistent network performance, a key milestone on our journey toward autonomous networks.”

Emilio Romeo, Head of Ericsson Australia and New Zealand, expressed a similar sentiment, noting that “the integration of AI and machine learning in EIAP empowers CSPs to achieve superior network automation and efficiency, advancing the future of autonomous networks.” Romeo added that the trial “reinforces our commitment to providing reliable, seamless connectivity for users, ultimately helping CSPs like Telstra meet the demands of modern digital experiences.”

A New Era of Autonomous Networks and Open Innovation

The successful trial of the EACC rApp on Telstra’s live network serves as a foundational achievement for the future of autonomous networks. As more CSPs explore automation and AI-driven solutions, innovations like EIAP and the EACC rApp illustrate how technology can enhance network performance, consistency, and resilience.

Telstra’s efforts, alongside Ericsson’s, signal a move toward fully automated network management, providing valuable insights and solutions that can be adopted by CSPs globally. The rApp ecosystem offers an open innovation model, enabling developers to bring new applications to market quickly, while the EIAP platform provides the infrastructure to deploy these innovations seamlessly.

For those interested in exploring the possibilities of Ericsson’s rApp technology, additional information is available in the newly launched rApp Directory from Ericsson, which offers insights into the latest applications shaping the future of automated, intelligent network management. For more details on the Ericsson Automated Configuration Consistency rApp and other rApps, visit the recently launched rApp Directory from Ericsson.


Recent Content

AI is playing a key role in telecom security by strengthening threat detection, fraud prevention, and regulatory compliance. As 5G, IoT, and edge computing expand, telecom networks face cyber threats such as AI-specific attacks, network intrusions, and data breaches. AI-powered security solutions provide automated threat response, anomaly detection, and AI lifecycle protection, helping telecom providers maintain a secure and resilient network infrastructure.
Broadband leaders and utility companies, including CTA, NCTA, and PG&E, have extended the Voluntary Agreement for Small Network Equipment through 2028. The initiative has already improved home internet device energy efficiency by 89% since 2015, and new targets aim for an additional 10% reduction by 2026. With compliance from major ISPs and device manufacturers, this industry-led effort is making home broadband more sustainable while enhancing performance.
AI is transforming the relationship between telcos and hyperscalers like AWS, Google Cloud, and Microsoft Azure. With AI-driven automation, cloud-native networks, and edge computing, telecom operators are optimizing efficiency, reducing costs, and unlocking new revenue streams. As AI-powered innovations reshape 5G, cybersecurity, and digital services, these strategic partnerships are set to redefine the future of telecom.
Recent advancements in artificial intelligence training methodologies are challenging traditional assumptions about computational requirements and efficiency. Researchers have discovered an “Occam’s Razor” characteristic in neural network training, where models favor simpler solutions over complex ones, leading to superior generalization capabilities. This trend towards efficient training is expected to democratize AI development, reduce environmental impact, and lead to market restructuring, with a shift from hardware to software focus. The emergence of efficient training patterns and distributed training approaches is likely to have significant implications for companies like NVIDIA, which could face valuation adjustments despite strong fundamentals.
Rule-based AI agents operate on predefined rules, ensuring predictable and transparent decision-making, while LLM-based AI agents leverage deep learning for flexible, context-aware responses. This article compares their key features, advantages, and use cases to help you choose the best AI solution for your needs.
AI agents are transforming industries by automating tasks, improving decision-making, and enabling intelligent interactions. This article explores the five core components of AI agents—perception, learning, reasoning, action, and communication—detailing their functions, technologies, and real-world applications across finance, healthcare, retail, and more.

Download Magazine

With Subscription

Currently, no free downloads are available for related categories. Search similar content to download:

  • Reset

It seems we can't find what you're looking for.

Subscribe To Our Newsletter

Scroll to Top