



Internet Engineering Task Force                                    H. Yu
Internet-Draft             Huazhong University of Science and Technology
Intended status: Experimental                              19 March 2026
Expires: 20 September 2026


       Network Traffic Analysis and Network Modal Mapping Method
           draft-traffic-analysis-and-network-mode-mapping-02

Abstract

   This document presents a framework for network traffic classification
   and modality mapping based on large language models (LLMs),
   addressing the inefficiencies of traditional methods in dynamic
   network environments.  The proposed approach automates multi-
   dimensional traffic feature extraction and intelligent decision-
   making to achieve precise alignment between traffic patterns and
   computing-storage-transmission requirements.  The framework comprises
   two phases: pre-training (generating multi-modal traffic
   representations from pcap data) and mapping (dynamically formulating
   resource allocation strategies).  It supports anomaly detection, QoS
   assurance, and multi-service collaboration, thereby significantly
   enhancing resource utilization efficiency and network service
   performance.

Status of This Memo

   This Internet-Draft is submitted in full conformance with the
   provisions of BCP 78 and BCP 79.

   Internet-Drafts are working documents of the Internet Engineering
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   This Internet-Draft will expire on 20 September 2026.

Copyright Notice

   Copyright (c) 2026 IETF Trust and the persons identified as the
   document authors.  All rights reserved.





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   This document is subject to BCP 78 and the IETF Trust's Legal
   Provisions Relating to IETF Documents (https://trustee.ietf.org/
   license-info) in effect on the date of publication of this document.
   Please review these documents carefully, as they describe your rights
   and restrictions with respect to this document.  Code Components
   extracted from this document must include Revised BSD License text as
   described in Section 4.e of the Trust Legal Provisions and are
   provided without warranty as described in the Revised BSD License.

Table of Contents

   1.  Status of This Memo . . . . . . . . . . . . . . . . . . . . .   2
   2.  Copyright Notice  . . . . . . . . . . . . . . . . . . . . . .   2
   3.  Introduction  . . . . . . . . . . . . . . . . . . . . . . . .   3
   4.  Scope . . . . . . . . . . . . . . . . . . . . . . . . . . . .   3
     4.1.  Requirements Language . . . . . . . . . . . . . . . . . .   3
   5.  Terms and Definitions . . . . . . . . . . . . . . . . . . . .   3
   6.  Abbreviations . . . . . . . . . . . . . . . . . . . . . . . .   5
   7.  Framework Overview  . . . . . . . . . . . . . . . . . . . . .   5
   8.  Use Cases . . . . . . . . . . . . . . . . . . . . . . . . . .   6
     8.1.  Dynamic Resource Allocation . . . . . . . . . . . . . . .   6
     8.2.  Anomaly Detection . . . . . . . . . . . . . . . . . . . .   6
     8.3.  Application-Aware Networking  . . . . . . . . . . . . . .   6
   9.  Security Considerations . . . . . . . . . . . . . . . . . . .   7
   10. IANA Considerations . . . . . . . . . . . . . . . . . . . . .   7
   11. References  . . . . . . . . . . . . . . . . . . . . . . . . .   7
     11.1.  Normative References . . . . . . . . . . . . . . . . . .   7
   Authors' Addresses  . . . . . . . . . . . . . . . . . . . . . . .   7
   Author's Address  . . . . . . . . . . . . . . . . . . . . . . . .   7

1.  Status of This Memo

   This Internet-Draft is submitted in full conformance with the
   provisions of BCP 78 and BCP 79.  Internet-Drafts are working
   documents of the Internet Engineering Task Force (IETF).  This draft
   will expire on 15 July 2025.

2.  Copyright Notice

   Copyright (c) 2025 IETF Trust and the persons identified as the
   document authors.  All rights reserved.  This document is subject to
   BCP 78 and the IETF Trust's Legal Provisions Relating to IETF
   Documents.








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3.  Introduction

   This document presents a novel framework that employs Large Language
   Models (LLMs) to automate network traffic classification and resource
   mapping.  As network traffic experiences exponential growth,
   infrastructure complexity increases, and vertical industries exhibit
   converged requirements for storage, transmission, and computing
   resources in intelligent computing applications, traditional
   approaches relying on manual feature engineering and static
   classification methods have become inefficient and inadequate for
   dynamic network environments.

   The proposed framework addresses these challenges through the
   following methodology: Raw pcap traffic data is first transformed
   into multi-dimensional feature representations.  These features are
   then processed by LLMs to generate adaptive traffic classification
   models capable of recognizing diverse network flow patterns.
   Subsequently, the framework performs intelligent resource allocation
   by mapping classified traffic types to corresponding network
   requirements (e.g., bandwidth, latency, reliability).  Finally, the
   framework establishes accurate and dynamic mappings between network
   traffic patterns and their corresponding resource requirements
   through continuous learning and optimization mechanisms.

4.  Scope

   This framework applies to network operators and service providers
   requiring dynamic Quality of Service(QoS) management, anomaly
   detection, and application-aware resource allocation.  It defines
   methodologies for integrating LLMs into traffic analysis pipelines
   and mapping multi-dimensional SFC features to network modalities.

4.1.  Requirements Language

   The key words "MUST", "MUST NOT", "REQUIRED", "SHALL", "SHALL NOT",
   "SHOULD", "SHOULD NOT", "RECOMMENDED", "NOT RECOMMENDED", "MAY", and
   "OPTIONAL" in this document are to be interpreted as described in BCP
   14 [RFC2119] [RFC8174] when, and only when, they appear in all
   capitals, as shown here.

5.  Terms and Definitions

   Pre-training: Pre-training refers to the initial training process of
   a model on large-scale unsupervised data, aiming to learn general
   features and patterns within the data.  This stage typically adopts
   self-supervised learning methods, such as masked language modeling
   (MLM) or autoregressive language modeling (AR).




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   Fine-tuning: Fine-tuning involves training a pre-trained model on
   supervised data specific to a particular task, allowing it to adapt
   to specialized datasets and improve performance for specific
   applications.

   Pcap: A file format used to store network traffic data for analysis.
   Pcap files record packets transmitted in a network, including source
   and destination addresses, protocol types, payload content, and other
   key information.

   CSV: A file format used for storing structured tabular data.  CSV
   files use commas to separate fields, making them suitable for data
   analysis, machine learning training datasets, and information
   exchange between different applications.

   Large Language Model-A deep learning model with billions or even
   trillions of parameters capable of processing and generating natural
   language text.  LLMs are trained on large-scale text datasets and
   possess abilities such as comprehension, summarization, translation,
   and reasoning.  They are widely used in question-answering systems,
   dialogue generation, text summarization, and other natural language
   processing tasks.

   Multi-level Flow Representation-A method for representing and
   processing network traffic data by extracting features at multiple
   levels, such as packet level, flow level, and session level.  MFR
   enables a more comprehensive analysis of network traffic
   characteristics.

   Low-Rank Adaptation-An efficient fine-tuning method for LLMs that
   introduces low-rank matrices in the parameter space of a pre-trained
   model.  LoRA reduces computational and storage costs while
   maintaining model performance.

   Quality of Service-A network mechanism that ensures performance
   metrics such as throughput, latency, jitter, and packet loss rate
   during data transmission.  QoS is critical for applications that
   require stable and predictable network performance.

   Guaranteed Bit Rate-A QoS mechanism that ensures a minimum bit rate
   for a specific data flow.  GBR is used in applications requiring
   stable bandwidth allocation, such as voice calls and video
   conferencing, to maintain consistent service quality.

   Non-Guaranteed Bit Rate-A QoS mechanism where no minimum bit rate is
   guaranteed for data flows.  Non-GBR is suitable for applications with
   flexible bandwidth needs, such as web browsing and social media.




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   5G QoS Identifier-A QoS identifier in 5G networks used to
   differentiate various types of traffic and define QoS requirements
   for different services. 5QI helps ensure appropriate network resource
   allocation for applications like high-definition video streaming,
   cloud gaming, and industrial automation.

6.  Abbreviations

   LLM: Large Language Model

   MFR: Multi-level Flow Representation

   LoRA: Low-Rank Adaptation

   Qos: Quality of Service

   GBR: Guaranteed Bit Rate

   Non-GBR: Non-Guaranteed Bit Rate

   5QI: 5G QoS Identifier

7.  Framework Overview

   The framework operates in two phases:

   1.  Pre-training Phase: Converts raw pcap data into byte streams, CSV
       features, MFR matrices, and traffic graphs.  Fine-tunes an LLM
       using LoRA to generate a traffic classification model.

   2.  Demand Mapping Phase: Applies the model to classify live traffic
       and maps categories to network modalities via predefined rules.
       Continuously optimizes configurations based on real-time
       feedback.

















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+-------------+   +-------------------------+  +---------------------+    +--------------------------+
| Raw Traffic | --> | Byte Stream CSV Features | --> | Large Language Model |  --> | Traffic Classification Model |
| Data     |       |  MFR Matrix Traffic Graph |   | (Low-Rank Adaptation) |     +--------------------------+
+-------------+  +--------------------------+  +---------------------+
          |                             |
          V                            V
+-----------------------------+          +----------------------+
| Pre-collected Knowledge Base |           | Modal Network Demand |
| Traffic Characteristics      |     -->   | Mapping Rules        |
+-----------------------------+          +----------------------+
                        |
                        V
+------------------+  +------------------+    +-----------------------+  +--------------------------+
| Demand Mapping  | <--| Traffic Classification |    | Byte Stream, CSV Features | <-- | Raw  Traffic Data |
| Configuration   |   |   Model                |    | MFR Matrix Traffic Graph  |   +--------------------------+
+------------------+  +------------------+    +------------------------+
                                                    |
                                                    V
+-----------------------+     +---------------------------+     +----------------------+
| Based on User Demand  |      | Traffic Analysis Storage |     | Network Verification |
| Estimation            |  +   | Transmission Computation |     +----------------------+
+-----------------------+     +----------------------------+

                               Figure 1

8.  Use Cases

8.1.  Dynamic Resource Allocation

   Prioritizes high-QoS traffic (e.g., video conferencing) by allocating
   guaranteed bandwidth via GBR, while deprioritizing Non-GBR traffic
   (e.g., file downloads).

8.2.  Anomaly Detection

   Identifies deviations from learned traffic patterns (e.g., DDoS
   attacks) and triggers alerts for mitigation.

8.3.  Application-Aware Networking

   Maps application-specific traffic (e.g., streaming video) to
   predefined 5QI profiles for optimized QoS.









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9.  Security Considerations

   Implementations MUST anonymize pcap data to prevent leakage of
   sensitive information.  LLM models and knowledge bases SHOULD be
   protected against unauthorized access.  Real-time monitoring is
   RECOMMENDED to detect adversarial inputs.

10.  IANA Considerations

   This document makes no requests to IANA.

11.  References

11.1.  Normative References

   [RFC2119]  Bradner, S., "Key words for use in RFCs to Indicate
              Requirement Levels", RFC 2119, March 1997,
              <https://www.rfc-editor.org/info/rfc2119>.

   [RFC8174]  Leiba, B., "Ambiguity of Uppercase vs Lowercase in RFC
              2119 Key Words", RFC 8174, May 2017,
              <https://www.rfc-editor.org/info/rfc8174>.

Authors' Addresses

   Hui Yu Huazhong University of Science and Technology Wuhan, China
   Email: hui_yu@hust.edu.cn

Author's Address

   Hui Yu
   Huazhong University of Science and Technology
   Wuhan
   China
   Email: hui_yu@hust.edu.cn
















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