Abstract:
Deploying Machine Learning (ML) models in Next Generation Network (NGN) presents significant challenges, particularly in managing the entire lifecycle of model creation, ...Show MoreMetadata
Abstract:
Deploying Machine Learning (ML) models in Next Generation Network (NGN) presents significant challenges, particularly in managing the entire lifecycle of model creation, deployment, and operation. Traditional methods lack integrated pipelines that address the diverse and complex nature of the network, leading to inefficiencies and delays. The NEMI framework employs MLOps pipelines designed to streamline the ML lifecycle in NGN environments. The pipeline facilitates efficient data collection, model generation, and deployment, towards ensuring scalability, automation, and continuous integration. The approach in this article showcases the pipeline’s potential to enhance performance and reliability in NGN domains, emphasizing the critical role of advanced MLOps pipelines in optimizing ML operations within complex network environments. Using anomaly detection in a core network (Open5GCore) as a practical example, we demonstrate the pipeline’s features.
Date of Conference: 25-27 November 2024
Date Added to IEEE Xplore: 27 January 2025
ISBN Information:
ISSN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Machine Learning ,
- Anomaly Detection ,
- Machine Learning Pipeline ,
- Scalable ,
- Learning Models ,
- Streamline ,
- Machine Learning Models ,
- Core Network ,
- Entire Life Cycle ,
- Continuous Integration ,
- Efficient Data Collection ,
- Learning Algorithms ,
- Functional Networks ,
- Long Short-term Memory ,
- Multilayer Perceptron ,
- Hyperparameter Tuning ,
- Batch Mode ,
- Machine Learning Applications ,
- Semi-supervised Learning ,
- Machine Learning Systems ,
- User Equipment ,
- Real-world Case Study ,
- Multilayer Perceptron Model ,
- Radio Access Network ,
- Central Lake ,
- Semi-supervised Model
- Author Keywords
- NEMI ,
- Open5GCore ,
- Anomaly detection ,
- ML ,
- DL ,
- MLOps
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Machine Learning ,
- Anomaly Detection ,
- Machine Learning Pipeline ,
- Scalable ,
- Learning Models ,
- Streamline ,
- Machine Learning Models ,
- Core Network ,
- Entire Life Cycle ,
- Continuous Integration ,
- Efficient Data Collection ,
- Learning Algorithms ,
- Functional Networks ,
- Long Short-term Memory ,
- Multilayer Perceptron ,
- Hyperparameter Tuning ,
- Batch Mode ,
- Machine Learning Applications ,
- Semi-supervised Learning ,
- Machine Learning Systems ,
- User Equipment ,
- Real-world Case Study ,
- Multilayer Perceptron Model ,
- Radio Access Network ,
- Central Lake ,
- Semi-supervised Model
- Author Keywords
- NEMI ,
- Open5GCore ,
- Anomaly detection ,
- ML ,
- DL ,
- MLOps