• Security risks from GenAI-related threats and poor data mechanisms are among the two biggest concerns in deploying GenAI for networking
  • Inaccurate categorization and labeling, as well as disparate and conflicting data, are some of the most significant gaps in GenAI data collection and processing
  • Nine out of ten vendors are ill-equipped to handle threats related to GenAI
  • Two-thirds of networking vendors will have deployed DPI within the next five years

ipoque, a Rohde & Schwarz company and a leading provider of next-gen deep packet inspection (DPI) software today announced its latest research report ‘Advancing network management with generative AI: The role of DPI-driven traffic intelligence’. The report finds security risks related to GenAI — such as poisoning of training data and query-based data exposure — being the biggest challenge in the adoption of GenAI, affecting 92.0% of vendors. This is followed by poor mechanisms in data collection, classification and analysis which lead to gaps in the data and analytics used in GenAI. This affects 89.3% of vendors, according to the report.

Inaccurate categorization and labeling, conflicting data, and incomplete traffic capture identified as factors contributing to poor network and traffic analytics

Network and traffic insights underpin the adoption of GenAI in network management, where machine-generated configurations, simulations, analyses and other outputs help administrators improve network policies and responses. “Accurate network and traffic analytics are critical in training, testing and fine-tuning generative models such as LLMs, GANs and VAEs, as well as in providing references for models such as RAG. These insights are also important in enhancing user prompts and queries during inferencing,” says Ariana Leena Lavanya, Principal Analyst at The Fast Mode.

The report, based on a survey of 75 leading networking vendors, reveals several concerns related to the reliability of existing network and traffic data sources. Inaccurate categorization and labeling emerge as the biggest concern, followed by disparate and conflicting data. More than half of vendors admit they are impacted by loss of visibility due to new encryption protocols such as TLS 1.3, QUIC, ESNI, and DoX. Other issues cited by vendors include privacy concerns, lack of depth and granularity, incompatible data formats, data lags, and tampered data.  

A lack of traffic visibility exacerbates network performance and security issues arising from GenAI-related vulnerabilities

GenAI workloads are resource-intensive, latency-sensitive and attack-prone, increasing the susceptibility of GenAI-based network functions to performance and reliability issues. According to the survey, close to nine out of ten vendors are unable to fully ascertain how network conditions impact their GenAI workloads, and how these workloads, in turn, affect network performance. Similarly, only one in ten vendors are adequately equipped to handle GenAI-related security attacks. “Without full visibility into traffic flows, we anticipate a higher prevalence of unauthorized access, data exfiltration, code errors, and AI-specific threats such as data poisoning, model inversion, and adversarial attacks,” added Ariana.  

DPI greatly enhances analytics and test and training data used in GenAI-based networking tools.

“Recognizing the need for accurate network and traffic insights, ipoque provides networking vendors with next-gen DPI engines, R&S®PACE2 and R&S®vPACE, designed to meet the demand for real-time application and threat awareness,” said Martin Mieth, Director Network Analysis, ipoque. “We integrate advanced classification techniques, encrypted traffic intelligence—combining machine learning and deep learning techniques to identify traffic flows regardless of encryption, anonymization, or obfuscation—and a rich set of KPIs.”

“Our DPI engines fulfil all three key criteria for GenAI implementations — scalability, real-time analytics, and embeddable into traditional, cloud, and virtualized environments — as identified in the report,” added Martin. The survey reveals that nearly half of vendors have already deployed DPI, with two-thirds expected to do so within the next five years.   

Traffic intelligence from DPI supports GenAI deployments in networks on an end-to-end basis

Highly customized DPI insights ensure that the data that is used to test, train and fine-tune a GenAI model is aligned with the underlying functions (e.g. traffic compression, QoS monitoring, and traffic filtering) and network types (e.g. (W)LAN, (SD)WAN, and cloud networks). These insights also enable vendors to monitor and optimize their CPU, TPU, and GPU clusters, storage devices, DL frameworks, data lakes, and APIs, ensuring efficient and high-performant GenAI architectures and systems. “ipoque’s DPI comes with support for IPFIX reporting formats, allowing network owners to form a unified source of shared intelligence that helps harmonize GenAI-driven network policies and decisions in multi-vendor environments,” said Martin. Additionally, threat awareness from DPI enables network owners to detect malicious, suspicious and irregular traffic flows, mitigating GenAI-related threats.   

The report, conducted in collaboration with The Fast Mode, a leading telecoms/IT publication, delves into various ways advanced network and traffic intelligence powers GenAI-based network functions. It assesses tool options for data gathering and analysis, while highlighting key implementation challenges, including the prevalence of GenAI- threats. Apart from evaluating next-gen DPI’s role in enhancing GenAI deployments, the report also examines its adoption rates and preferred deployment models across vendors.    

The report is available for download at: www.ipoque.com/GenAI-report 

Press contacts:

Europe (headquarters): Dennis-P. Merklinghaus (phone: +49 89 4129 15671; email: press@rohde-schwarz.com)

Australia: Patrick Durrant (phone: +61 400 210 269; email: patrick.durrant@rohde-schwarz.com)

North America: Faride Akretch (phone: +1 503-887-3815; email: faride.akretch@rsa.rohde-schwarz.com)

Asia Pacific: Sze Ming Ng (phone: +603 5569 0011; email: press.apac@rohde-schwarz.com) 

Contact for readers:

www.rohde-schwarz.com/contact

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Über ipoque Gmbh – A Rohde & Schwarz Company

ipoque
ipoque, a Rohde & Schwarz company, is a global leader in network analytics software for the communications industry. We leverage our deep domain expertise to create software solutions that empower customers to transform data into intelligence. Find out more under www.ipoque.com.

Rohde & Schwarz
The Rohde & Schwarz technology group develops, produces and markets innovative communications, information and security products for professional users. The group’s business fields – test and measurement, broadcast and media, aerospace | defense | security, networks and cybersecurity – address many different industry and government-sector market segments. On June 30, 2018, Rohde & Schwarz had approximately 11,500 employees. The independent group achieved a net revenue of approximately EUR 2 billion in the 2017/2018 fiscal year (July to June). The company is headquartered in Munich, Germany. Internationally, it has subsidiaries in more than 70 countries, with regional hubs in Asia and America.

Firmenkontakt und Herausgeber der Meldung:

ipoque Gmbh – A Rohde & Schwarz Company
Augustusplatz 9
04109 Leipzig
Telefon: +49 (341) 59403-0
Telefax: +49 (341) 594030-19
http://www.ipoque.com

Ansprechpartner:
Dennis Merklinghaus
Rohde & Schwarz
Telefon: +491709318944
E-Mail: dennis-peter.merklinghaus@rohde-schwarz.com
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