Use Cases and Practices for Intent-Based Networking
draft-kdj-nmrg-ibn-usecases-00
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| Authors | Kehan Yao , Danyang Chen , Jaehoon Paul Jeong , Qin Wu , Chungang Yang , Luis M. Contreras | ||
| Last updated | 2024-07-08 | ||
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draft-kdj-nmrg-ibn-usecases-00
Internet Research Task Force K. Yao, Ed.
Internet-Draft D. Chen, Ed.
Intended status: Informational China Mobile
Expires: 9 January 2025 J. Jeong, Ed.
Sungkyunkwan University
Q. Wu
Huawei
C. Yang
Xidian University
L. Contreras
Telefonica
8 July 2024
Use Cases and Practices for Intent-Based Networking
draft-kdj-nmrg-ibn-usecases-00
Abstract
This document proposes several use cases of Intent-Based Networking
(IBN) and the methodologies to differ each use case by following the
lifecycle of a real IBN system. It includes the initial system
awareness and data collection for the IBN system, the construction of
the IBN system, the IBN system integration and deployment, and the
evaluation and optimization of the IBN system. Practice learnings
are also summarized to instruct the construction of next generation
network management systems with the integration of IBN techniques.
Requirements Language
The key words "MUST", "MUST NOT", "REQUIRED", "SHALL", "SHALL NOT",
"SHOULD", "SHOULD NOT", "RECOMMENDED", "MAY", and "OPTIONAL" in this
document are to be interpreted as described in RFC 2119 [RFC2119].
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). Note that other groups may also distribute
working documents as Internet-Drafts. The list of current Internet-
Drafts is at https://datatracker.ietf.org/drafts/current/.
Internet-Drafts are draft documents valid for a maximum of six months
and may be updated, replaced, or obsoleted by other documents at any
time. It is inappropriate to use Internet-Drafts as reference
material or to cite them other than as "work in progress."
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This Internet-Draft will expire on 9 January 2025.
Copyright Notice
Copyright (c) 2024 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 (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. Introduction . . . . . . . . . . . . . . . . . . . . . . . . 3
2. Methodologies for Building IBN Systems . . . . . . . . . . . 3
2.1. System Awareness and Data Collection . . . . . . . . . . 3
2.2. Construction of IBN Systems . . . . . . . . . . . . . . . 5
3. IBN Use Cases . . . . . . . . . . . . . . . . . . . . . . . . 10
3.1. IBN for Routing and Path Selection . . . . . . . . . . . 10
3.1.1. IBN for Service Function Chaining . . . . . . . . . . 10
3.1.2. IBN for SRv6 Networks . . . . . . . . . . . . . . . . 12
3.2. IBN for SLA Guarantee . . . . . . . . . . . . . . . . . . 14
3.2.1. Clustered Alternate-Marking Methodology . . . . . . . 15
3.3. IBN for Cloud-Based Security Service Management . . . . . 17
3.4. IBN for IoT Device Management . . . . . . . . . . . . . . 18
3.5. IBN for Sofware-Defined Vehicle Management . . . . . . . 19
3.6. IBN for Interconnection . . . . . . . . . . . . . . . . . 22
3.7. IBN for IETF Network Slices . . . . . . . . . . . . . . . 23
4. Practice Learnings . . . . . . . . . . . . . . . . . . . . . 25
4.1. Difficulties and Challenges . . . . . . . . . . . . . . . 25
4.2. Future Research Directions . . . . . . . . . . . . . . . 26
5. Other Considerations . . . . . . . . . . . . . . . . . . . . 27
6. Security Considerations . . . . . . . . . . . . . . . . . . . 27
7. IANA Considerations . . . . . . . . . . . . . . . . . . . . . 27
8. Contributors . . . . . . . . . . . . . . . . . . . . . . . . 27
9. References . . . . . . . . . . . . . . . . . . . . . . . . . 28
9.1. Normative References . . . . . . . . . . . . . . . . . . 28
9.2. Informative References . . . . . . . . . . . . . . . . . 29
Acknowledgments . . . . . . . . . . . . . . . . . . . . . . . . . 31
Authors' Addresses . . . . . . . . . . . . . . . . . . . . . . . 31
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1. Introduction
[RFC9315] gives the concepts and definition of Intent-Based
Networking (IBN), and [RFC9316] proposes a comprehensive taxonomy of
the intent classifications. Although the intent life cycle has been
defined, including all the core functional components like intent
ingestion, intent translation, policy generation, and intent
assurance. However, there is still a gap between defining these
high-level functionality and building realistic IBN systems. This
document proposes several IBN use cases and summarizes the
methodologies and practice learnings when building these IBN systems.
Main objectives of this document is to instruct future research
directions of IBN and other related network management technologies.
2. Methodologies for Building IBN Systems
This section summarizes the methodologies to build an IBN system.
These methodologies refer to the modelling of IBN life cycle and
those high-level core functional components, as well as the specific
solutions to implement those components. The methodologies are
essential to build a real IBN system, beyond the definition in
[RFC9315]. The methodologies to an IBN system are composed of
several important parts, including the system awareness and data
collection, construction of IBN systems, integration and deployment,
evaluation, optimization, and reconfiguration of intents and
policies.
2.1. System Awareness and Data Collection
System awareness requires the collection of various network status
indicators, like network traffic and resources. Building a valuable
dataset is essential for IBN systems. A comprehensive data
collection depends on suitable methods and tools, appropriate
sampling metrics, and reasonable granularity for data collection.
1. Methods and Tools
* There are many existing ways to collect network data which can
be primarily classified into two types, active measurement and
passive measurement. Active measurement like In-band network
telemetry (INT) can grab networking information by inserting
timestamps into programmable field of on-path packets.
Passive measurement, on the other hand, uses some tools like
Tcpdump or wireshark to collect data at specific targets, like
endpoint servers. IBN systems need both of the ways to
collect data, depending on what scenarios they might be
applied to.
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2. Metrics
* Metrics include traffic-related and network-related
information. Traffic-related metrics are performance
indicators, such as latency, throughput, and traffic
congestion signals. Network-related information includes
network device information, like the number and health status
of ports, and network topology information, such as link
connectivity and structures. To meet a specific user
intention, such as load balancing and congestion elimination
on the entire network, IBN systems need to collect and process
traffic and device related information.
3. Granularity
* Network Traffic. Network traffic is usually collected in
various forms, such as per-packet and per-flow, and these are
two most typical types of data collection. Per-packet means
that each packet is tracked, which is very accurate, but it
also means greater monitoring overhead and state maintenance
overhead. In contrast, per-flow tracking does not need to
maintain too much state, and it generally uses five-tuples to
identify each flow, which often brings good observation
results. Other collection methods are like per-cell and per-
flowlet. Per-cell is to track each cell unit whose length
remains unchangeable, which is more friendly to system
management and control. This method is often applied to
Artificial Intelligent (AI) data center network monitoring.
The per-flowlet mode cuts a flow into several small flows at a
certain interval, which is more suitable for implementing
refined load balancing scenarios. The IBN system should
select an appropriate traffic collection granularity.
* Time granularity. Time granularity means that the data
acquisition needs to adopt the appropriate time interval for
data sampling. In the extreme case, data is collected without
interruption. For example, the status information of each
data packet is reported to the monitoring module without
interruption. This collection method often brings too much
redundant information, which leads to a lot of storage and
computing overhead to the system. However, the method of
sampling without interruption or at a very low time interval
can better observe micro-bursts of the networking system. A
micro-burst occurs when a large amount of burst data is
received in milliseconds. For some black-box network systems
and some high-concurrency network systems, it is necessary to
sacrifice a certain amount of storage and computing costs to
collect data in a finer granularity time slot, so as to make
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better trade-offs between system overhead and data acquisition
accuracy. By analyzing the historical behavior of IBN
systems, a reasonable time interval can be selected for data
acquisition.
* Spatial granularity. Spatial granularity indicates that it is
necessary to select an appropriate physical scope of a network
for data collection. In some cases, the information
collection method based on the whole network and the whole
domains may not be suitable for all situations, and sometimes
the results obtained from the processing and analysis of the
collected data may not be accurate (e.g., RTT-based congestion
control in data center networking) or incur too much overhead
(e.g., hop-by-hop performance monitoring over the Internet).
The best way is to match the most appropriate spatial
granularity for user intents. For example, in wide-area data
transmission, users need to select an optimal path. In this
case, sampling is not required for all paths from a source to
a destination. Only partial sampling is required for certain
path segments which share endpoints, to ensure the correctness
of decision makings on path setup in a scenario of multi-path
data transmission.
2.2. Construction of IBN Systems
In the construction of an IBN system, intent translation module,
policy generation and mapping module, and intent verification module
play an important role. The different construction methods and
different construction tools used in these modules may affect the
advantages of realizing the intention. For different modules, we
summarize the methods and tools that have been used and may be used.
1. Intent Translation
* Translating and refining intents require the system to explore
and exploit the semantic relationships of different service
intents, and thus it is necessary to build a general model to
extract these key semantic information from the service
intents in different representation forms. In the intent
translation module, several possible intent expression and
translation methods are as follows:
- A limited range of templates are preset in advance, and
users can only express corresponding intentions by filling
in or selecting templates. The advantage of this method is
that the requirements for users and translation are very
low, and all users can use it without learning. The
disadvantage is that there are many restrictions, which can
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only be achieved through the preset template, but the
preset template is limited, and cannot really meet the
flexible and diverse needs of users;
- Using natural language processing (NLP), such as BERT, for
intent translation is another possible approach. First,
natural language processing is used to convert a user
intent into a text intent, and then the key parameters of
text intent are extracted to form the corresponding intent
expression. The advantage of this method is high
flexibility, users can directly express their intentions in
a natural language according to their own needs, without
being limited by templates. The disadvantage is that it is
difficult to implement and has high requirements for the
intent translation module, which needs to be able to
accurately identify the real intent of users, and different
intents expression paradigms will affect the generation of
subsequent policies, so it is necessary to formalize
normative intent expression grammars.
- On the basis of the above natural language-based approach,
with the development of AI technologies such as deep
learning in the field of text processing, key information
in sentences can be extracted by AI model detection.
Therefore, based on different AI models, the translation
method of category detection and key information extraction
of intent representation statements is another approach to
intent translation. The advantage of this method is that
the expression of the user's intention is more flexible,
and the real intention of the user can be mined to a
certain extent. The disadvantage is in the deployment
cost. Selecting an appropriate AI model to complete the
model training is costly.
- In addition, there are some pre-set expression languages
for IBN networks, such as Nile, and NEMO. In the design of
these language expressions, most of them consider the
flexibility of expression, which can be extended and
adjusted according to the intention scenario of the
business under consideration. However, these language
designs have some disadvantages (e.g., the capability of
intent expression). Most of the users are network
practitioners, requiring users to have certain network
knowledge background.
2. Policy Generation and Mapping
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* In the intent based network, the generation of the
corresponding network policy needs to consider both the input
intent and the network state, that is, the policy needs to
satisfy the user's intent and ensure that the network can be
executed to satisfy the requested intent. The policy
generation module can be implemented by setting up a
repository of “intent” - “policy”, and new mapping
relationship should be stored and updated as knowledge
according to various intents and dynamic network state
telemetry. Similar to different ways of expressing an intent,
there are different approaches for policy generation and
mapping.
- As opposed to the default template-based representation in
the intent representation module, the simplest approach to
policy generation is based on a default template or rule-
based provisioning. After the user completes the
corresponding intention expression through the graphical
interface (e.g., a web-based graphical user
interface(GUI)), the user can select the corresponding
policy according to the preset template in the policy
generation and matching a module or associate the
corresponding rules in the constructed rule-based policy
generator. Similar to the above analysis, this approach
has the advantage of being very simple to implement, but
the disadvantage is that it is too restrictive and only a
limited number of preset strategies can be selected.
- The second common method of policy generation and mapping
is inference-based generation, such as reasoning based on
keywords or keywords in an intention expression,
associating keywords with policies, and using circular
reasoning to generate policies. This method is more
flexible than the template class description method, but
the precision of policy generation is more related to the
keyword extraction, and there is some uncertainty. In
addition, there are policy generation methods based on
network service description, which are widely used in
service function chaining (SFC), network slicing or network
functions virtualization (NFV). In essence, this approach
can also be seen as inference-based strategy generation
- In addition to the above methods, AI technology-based
strategy generation methods have also emerged in recent
years, such as machine learning technology, which selects
corresponding strategies through model training according
to keywords extracted from an intention expression. With
the development of AI technology, in addition to selecting
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preset strategies, for example, based on deep reinforcement
learning, reasonable reward functions are set to generate
strategies that consider user intentions and network
status.
3. Intent Deployment
* - The intent translator delivers a policy with detailed
configurations or commands to an intent renderer which
deploys the policy into target network entities (e.g.,
switch, router, firewall, web filter, and DDoS-attack
mitigator).
- The intent renderer delivers the policy to the target
network entities with a policy delivery protocol such as
NETCONF [RFC6241], RESTCONF [RFC8040], or REST API [REST].
4. Intent Verification
* Intent verification includes intent conflict detection and
checking whether intents meet a specific user's requirements
or not.
- The intent conflict detection includes two types: the
conflicts between different intents themselves and the
conflicts between policies and network states of the target
network to perform the requested intent. The conflict of
intentions may be due to the conflict between the network
states that different users want to obtain. The simplest
example is that both users A and B request to increase the
bandwidth of 10Gbps, but the network bandwidth of the
shared network for users A and B is less than 20Gbps. This
conflict caused by different user requirements can be
resolved by checking whether the intents can be deployed in
practice, that is, you can choose to execute only the
intents that can be executed according to the preset rules,
and reject other intents. If the generated policy
conflicts with the network state, the network state must be
detected when the generated policy is generated to ensure
that the generated policy can be executed by the target
network. If the generated policy cannot be executed, the
policy needs to be re-generated. Otherwise, the policy
generation of the intent should be reported of a failure to
the intent user.
- In terms of whether the user's intent is satisfied or not,
the first way is to feedback the result to the user, and
the user judges whether it is satisfied. This way the
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execution result can be presented through a graphical
interface. The second way is to use AI methods such as
deep reinforcement learning to determine whether the
results meet the needs.
5. Evaluation
* Evaluation is to judge whether an intent is satisfied by
network entities (e.g., switch, router, firewall, web filter,
and DDoS-attack mitigator) or not. The intent is translated
into a policy with detailed configurations or commands by an
intent translator. The policy may have goals in terms of
performance (e.g., throughput and delay) and services (e.g.,
firewall, web filter, and DDoS-attak mitigator).
- An evaluation entity (e.g., analyzer) needs to collect
monitoring data from the network entities and check whether
the required goals for each intent are met with specific
metrics from the monitoring data or not. This checking can
be performed by Artificial Intelligence (AI) and Machine
Learning (ML) algorithms.
- Evaluation results need to be delivered to an optimizer
which can augment the existing policy or generate a new
policy.
6. Optimization
* Optimization is to augment the existing policy or generate a
new policy to meet the goals of the requested intent. With
the evaluation results, an optimization entity (e.g.,
optimizer) performs optimization for each registered intent.
- There are two kinds of optimization, such as Quality of
Service (QoS) and Service Provisioning. First, the
optimizer for QoS deals with the improvement of performance
metrics (e.g., throughput and delay). Second, the
optimizer for service provisioning handles the service
requirements (e.g., firewall filtering, web filtering, and
DDoS-attack mitigation). For each optimization, the
optimizer augments the existing policy or generates a new
policy. It delivers the policy to the intent renderer so
that the rendered can enforce the augmented or generated
policy into the target network entities.
- Thus, the steps from Intent Deployment to Optimization
construct a closed-loop control to guarantee the goals of
the requested intent in a target network.
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3. IBN Use Cases
In this Section, we will describe several scenarios where IBN can be
applied. These use cases can reflect the aforementioned
methodologies of IBN systems from different perspectives.
3.1. IBN for Routing and Path Selection
IBN can be applied in building network path and generating routing
policies according to network administrators' requests.
3.1.1. IBN for Service Function Chaining
We use the intent-based dynamic SFC as an example to solve the
network management challenges (e.g., cross-domain orchestration and
service functions are tightly coupled with the underlying equipment).
At the same time, we developed an Openstack-based IBNM platform. The
system architecture is shown as Fig 1, which includes the application
layer, the intent-enabled layer and the infrastructure layer. The
application layer collects intents from various users and
applications, and provides a number of programmable network
management services. The intent-enabled layer consists of the intent
translation module, intelligent policy mapping module, and intent
guarantee module, whose functions are to build a bridge between the
application layer and the infrastructure layer. Heterogeneous
physical devices are deployed in the infrastructure layer. This
layer can execute management instructions from the intent-enabled
layer and upload underlying network situation information to the
intent-enabled layer. Information interaction between different
layers is done through different interfaces, such as the northbound
and southbound interfaces.
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+----------------------------------------+
| Application Layer |
+-------------+---------^----------------+
Intent Ingestion| | Northbound Interface
+-------------+---------v----------------+
| | Intent-enabled Layer|
| +-----------+-------+ +-------------+ |
| | | | | | |
| | +--------v----+ | | | |
| | | Translation | | | | |
| | +-------------+ | | | |
| | | | Intelligent | |
| | +-------------+ | | | |
| | | Verification| | | Guarantee | |
| | +-------------+ | | | |
| |Intent Translation | | Module | |
| | Module | | | |
| +-------------------+ | | |
| | | |
| +-------------------+ | | |
| |Intelligent Policy | | | |
| | Mapping Module | | | |
| +-------------------+ +-------------+ |
| |
+--------------------^-------------------+
| Southbound Interface
+--------------------v-------------------+
| Infrastructure Layer |
+----------------------------------------+
Figure 1: The Architecture of IBNM
The system demonstration implements the whole process from intent
input to intent translation to intent policy generation to intent
deployment, and the details are as follows.
The user input cross-domain link-building requests (intent) in
natural language at the web-page: Transfer a common-level video
service from user A in Beijing to user B in Nanjing while
constraining the execution time of the intent. The intent
translation module outputs a conflict-free translation result, which
indicates that the external input and the translation platform have
been communicated. The translation results are intent tuples, which
are displayed on the front-end interface in the form of name-value
pairs. After the intent translation module, the translation results
will be converted to JavaScript Object Notation (JSON) and
transmitted to the intelligent policy mapping module. The
intelligent policy mapping module divides the JSON request into an
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SFC: service function 1 (network address translation) service
function 2 (firewall), and constructs the SFC request (name,
tenant_id, description, service requirements, etc.). Then query
whether there is an atomic policy combination that satisfies the
current intent requirements in the policy repository. Following
that, SFC is constructed based on the SFC interface, which is
extended by Neutron. OpenStack schedules network resources,
constructs sub-nets and ports, and generates two-dimensional space
topology. Meanwhile, during the SFC construction process, the intent
guarantee module monitors and manages network resource utilization as
well as network failures in real time. Overall, IBNM achieves the
decoupling of service application and network, and cross-domain
network orchestration, while reducing the complexity of network
management.
3.1.2. IBN for SRv6 Networks
For the automation of configuration and monitoring of Segment Routing
version six (SRv6) routers, an IBN-based secure network management is
proposed by [I-D.park-nmrg-ibn-network-management-srv6]. The
proposed Intent-Based Network Management (IBNM) framework consists of
system components and interfaces, as shown in Figure 2. This
framework builds on the framework for Interface to Network Security
Functions (I2NSF) [RFC8329].
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+-------------+ +-----------------------------+
| IBN User | | Global Distributed Database |
+-------------+ +-----------------------------+
^ ^
| Consumer-Facing Software Update |
| Interface Interface (Up) |
v v
+-------------------+ Registration +-----------------------+
| IBN Controller |<-------------------->| Vendor's Mgmt System |
+-------------------+ Interface +-----------------------+
^ ^ ^
| | Software Update Interface |
| | (Down) |
| | Analytics Interface +----------------+ |
| +------------------------>| IBN Analyzer | |
| +----------------+ |
| NSF-Facing Interface ^ |
| | |
| +---------------------+ |
| | Monitoring Interface |
| | |
+---------+------------------+--------------------------------+----+
| v v SRv6 Nodes v |
| +-----------------+ +---------------+ +---------------+ |
| | NSF-1 |--| NSF-2 | ....... | NSF-n | |
| |(Network Exposure| |(Policy Control| | (Application | |
| | Function, NEF) | | Function, PCF)| | Function, AF)| |
| +-----------------+ +---------------+ +---------------+ |
+------------------------------------------------------------------+
Figure 2: Intent-Based Network Management in SRv6 Networks
A high-level network policy for SRv6 routers is constructed by the
IBN Consumer-Facing Interface YANG data model. On the other hand, a
low-level network policy is constructed by the IBN NSF-Facing
Interface YANG data model.
To automate Network Policy Translation (NPT), IBN Controller needs a
network policy translator performing the translation of a high-level
network policy into the corresponding low-level network policy (i.e.,
SRv6 policy [RFC9256]). For this automatic NPT service, the IBN
framework needs to associate a high-level YANG data model and a low-
level YANG data model in an automatic manner, like a data model
mapper [I-D.ietf-spring-sr-policy-yang],
[I-D.yang-i2nsf-security-policy-translation].
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3.2. IBN for SLA Guarantee
Taking Network Service-Level Agreement (SLA) performance metrics
(e.g., delay measurement), the simple schematic diagram is as
follows. Different thresholds, warning value, and alert value should
be set for network delay in advance. When the delay value is below
warning, the network is normal and the business is normal. When the
delay is between warning value and alert value, the network
fluctuation is abnormal, but the business is normal. When the delay
exceeds the alert value, both the network and business are abnormal.
For delay in different thresholds, different measurement strategies
should be adopted:
* When the network delay exceeds the alert value, or when the
historical data predict that the delay will exceed the alert
value, passive measurement requires 100% sampling of business
data, and the transmission frequency of active measurement is
modulated to the maximum. At the same time, the log and alarm
data of the whole network equipment are collected to realize the
most fine-grained measurement of the network, locate the root
cause of the problem and repair the network in time.
* When the network delay exceeds warning value but is lower than
alert value, passive measurement samples 60% of business data, and
the transmission message frequency of the active measurement is
adjusted to the median value, and the running state data of some
key devices in the network is collected synchronously.
* When the network delay is less than warning value, passive
measurement data is sampled at 20%, and active measurement message
frequency is adjusted to the lowest, and the network equipment
running state of key nodes can be collected as needed.
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^ms
|
|
| XX
| X X Sampling Rate 100%
| XX X
alert +--------------------------------------------------------+
| X X Sampling Rate 60%
| X XX
| X X XX
| XX X X XXX
| XXX X X X X
| XX X X X X XX
| X XX X X XX XX X XX
warning +-------------------------------------------------------+
| X XX X XX X XX X XX XX
| XX X X X X XX XX X X
| XX X X X X X XX XXX X
| X XX XXX X XX X
| X XX XX X
| X XX Sampling Rate 20%
|
+----------------------------------------------------------->
Figure 3: Network SLA Performance Metric
The desired approach is to accurately measure the network state,
especially when there are some issues affecting the service, but at
the same time, reduce the resources to be employed to achieve the
desired accuracy.
3.2.1. Clustered Alternate-Marking Methodology
The Clustered Alternate-Marking framework RFC 9342 [RFC9342] adds
flexibility to Performance Measurement (PM), because it can reduce
the order of magnitude of the packet counters. This allows the NMI
Orchestration and pre-Verification module to supervise, control, and
manage PM in large networks.
RFC 9342 [RFC9342] introduces the concept of cluster partition of a
network. The monitored network can be considered as a whole or split
into clusters that are the smallest subnetworks (group-to-group
segments), maintaining the packet loss property for each subnetwork.
The clusters can be combined in new connected subnetworks at
different levels, forming new clusters, depending on the level of
detail to achieve.
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The clustered performance measurement intent represents the spatial
accuracy, that is the size of the subnetworks to consider for the
monitoring. It is possible to start without examining in depth and,
in case of necessity, the "network zooming" approach can be used.
This approach called "network zooming" and can be performed in two
different ways:
1. change the traffic filter and select more detailed flows;
2. activate new measurement points by defining more specified
clusters.
The network-zooming approach implies that some filters, rules or flow
identifiers are changed. But these changes must be done in a way
that do not affect the performance. Therefore there could be a
transient time to wait once the new network configuration takes
effect. Anyway, if the performance issue is relevant, it is likely
to last for a time much longer than the transient time.
The concrete steps of the clustered performance measurement intent
are as follows:
* In NMI Recognition and Acquisition, the clustered performance
measurement intent is recognized. Then the NMI Recognition and
Acquisition module inputs the clustered performance measurement
intent into the NMI Translation module.
* The NMI Translation module analyzes the clustered performance
measurement intent and outputs the executable measurement policy,
such as network partition and the spatial accuracy for the
monitoring.
* The NMI Orchestration and pre-Verification module arranges and
calibrates the measurement with the specific configuration to
split the whole network into clusters at different levels. Note
that, for the configuration, the YANG Data Model for the Alternate
Marking Method [I-D.ydt-ippm-alt-mark-yang] can be used.
* The Data Collection and Analysis module collects the measurement
data from the different clusters, and then send these data to the
NMI Compliance Assessment module. It verifies the performance for
each cluster and send the measurement results to the user. Note
that, for the collection of the measurement data, the On-path
Telemetry YANG Data Model [I-D.fz-ippm-on-path-telemetry-yang] or
the IPFIX Alternate-Marking Information
[I-D.gfz-opsawg-ipfix-alt-mark] can be used.
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* The NMI Compliance Assessment module, in case a cluster is
experiencing a packet loss or the delay is high, notifies the NMI
Orchestration and pre-Verification module to modify the cluster
partition of the network for further investigation. The network
configuration can be immediately modified in order to perform a
new partition of the network but only for the cluster with bad
performance. In this way, the problem can be localized with
successive approximation up to a flow detailed analysis. This is
the so-called "closed loop" performance management.
3.3. IBN for Cloud-Based Security Service Management
A Cloud-Based Security Service Management is proposed in
[I-D.jeong-i2nsf-security-management-automation]. It describes
Security Management Automation (SMA) of cloud-based security services
in the framework of Interface to Network Security Functions (I2NSF)
[RFC8329]. The security management automation deals with closed-loop
security control, security policy translation, and security audit.
To support these three features in SMA, an augmented architecture of
the I2NSF framework is proposed by introducing new system components
and new interfaces.
+------------+
| I2NSF User |
+------------+
^
| Consumer-Facing Interface
v
+-------------------+ Registration +-----------------------+
|Security Controller|<-------------------->|Developer's Mgmt System|
+-------------------+ Interface +-----------------------+
^ ^
| |
| | Analytics Interface +-----------------------+
| +------------------------>| I2NSF Analyzer |
| +-----------------------+
| NSF-Facing Interface ^ ^ ^
| | | |
| | | |
| +------------------------------+ | |
| | +-----------------------+ |
| | | Monitoring Interface |
v v v v
+----------------+ +---------------+ +-----------------------+
| NSF-1 |-| NSF-2 |...| NSF-n |
| (Firewall) | | (Web Filter) | |(DDoS-Attack Mitigator)|
+----------------+ +---------------+ +-----------------------+
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Figure 4: Security Management Automation in I2NSF Framework
Figure 4 shows an IBN-driven I2NSF framework for Security Management
Automation (called SMA) of cloud-based security service management.
I2NSF User composes a high-level security policy (as an intent) and
delivers it to Security Controller. Security Controller translates
the high-level security policy into the corresponding low-level
security policy that is understandable to Network Security Functions
(NSFs) for actual security services. Security Controller has a
Security Policy Translator (SPT) for this security policy translation
[I-D.yang-i2nsf-security-policy-translation].
As shown in Figure 4, for closed-loop security control, this I2NSF
framework has Monitoring Interface and Analytics Interface along with
I2NSF Analyzer. I2NSF Analyzer collects monitoring data from NSFs
via Monitoring Interface. It analyzes the monitoring data using
Artificial Intelligence (AI) and Machine Learning (ML). I2NSF
Analyzers delivers a policy re-configuration message (e.g., defense
against a new security attack ) or feedback information message
(e.g., action for handling computing and communication resources) to
Security Controller. Security Controller receives the message and
takes an appropriate action for the message, such as a security
policy re-configuration for target NSFs and remedy action for the
feedback information.
Therefore, with a security policy translator and a closed-loop
security control, we can provide service customers with IBN-based
security services.
3.4. IBN for IoT Device Management
A Network Management Automation (NMA) can be provided for cellular
network services in 5G networks
[I-D.jeong-nmrg-ibn-network-management-automation]. This NMA is
feasible on top of an IBN-empowered framework. It deals with a
closed-loop network control, network intent translator, and network
management audit. To support these three features in NMA, it
specifies an architectural framework with system components and
interfaces. Also, this framework can support the use cases of NMA in
5G networks such as the data aggregation of Internet of Things (IoT)
devices, network slicing, and the Quality of Service (QoS) in
Vehicle-to-Everything (V2X).
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+------------+
| IBN User |
+------------+
^
| Consumer-Facing Interface (Intent)
v
+-------------------+ Registration +-----------------------+
| IBN Controller |<-------------------->| Vendor's Mgmt System |
+-------------------+ Interface +-----------------------+
^ ^
| |
| | Analytics Interface +-----------------------+
| +------------------------>| IBN Analyzer (NWDAF) |
| +-----------------------+
| NSF-Facing Interface (Policy) ^ ^ ^
| | | |
| | | |
| +------------------------------+ | |
| | +-----------------------+ |
| | | Monitoring Interface |
v v v v
+---------------+ +---------------+ +---------------+
| NSF-1 |--| NSF-2 |........| NSF-n |
|(Net Exposure | |(Policy Control| | (IoT Device) |
| Function, NEF)| | Function, PCF)| | |
+---------------+ +---------------+ +---------------+
Figure 5: Network Management Automation in IBN Framework for 5G
Networks
Figure 5 shows an IBN framework for Network Management Automation in
5G networks. This framework is an I2NSF framework for cloud-based
security services. Like the framework for Security Management
Automation (called SMA) of cloud-based security services, this
framework supports an intent translation with a Network Intent
Translator (NIT) and a closed-loop control mechanism, it realizes an
IBN-based IoT device management in 5G networks.
3.5. IBN for Sofware-Defined Vehicle Management
Software-Defined Vehicle (SDV) is an electrical vehicle with a
software platform (e.g., AUTOSAR and Eclipse SDV) towards autonomous
vehicles in Intelligent Transportation Systems (ITS). An SDV is
constructed by a software platform having a cloud-native system
(e.g., Kubernetes) and has its internal network (e.g., a giga-bit
Ethernet). For facilitating the easy and efficient configuration of
networks, security, and applications in the SDV'S in-vehicle
networks, an intent-based management is required. An intent-based
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management framework for SDVs is proposed by
[I-D.jeong-opsawg-intent-based-sdv-framework]. This framework lets
SDVs be configured and monitored by a vehicular cloud in terms of
networks, security, and applications in SDVs. In this framework,
SDVs can communicate with other SDVs and infrastructure nodes for
safe driving and infotainment services in ITS.
SDV User : Translation/ : Network Ops/ Space : IBS Space :
App Space Fulfill : : +----------+ : +------------+ +------------+ :
+-----------+ |Recognize/|---->| Translate/ |-->| Learn/
|-->| Configure/| | Generate | : | Refine | | Plan/ | : |
Provision | | Intent |<----| | | Render | : | | +----------+ :
+------------+ +------------+ : +-----------+ ^ : ^ : |
............|..................................|................|.....
| : +----------+ : v | : | Validate | : +----------+ | :
+----^-----+<----| Monitor/ | Assure | : | : | Observe |
+--------+ : +----------+ +----------+<----| | | Report
|<-----| Abstract |<-----| Analyze/ | : +----------+
+--------+ : +----------+ | Aggregate| : : +----------+ :
Figure 6: The Life Cycle of IBS for SDV Management
According to the life cycle of IBN in [RFC9315], as shown in
Figure 6, the life cycle of an intent-based system (IBS) can be
enforced for SDV management. The life cycle consists of three
spaces, namely SDV User Space, Translation & IBS Space, and Network
Operations (Ops) & Application (App) Space. These spaces are divided
into two sections in the life cycle space, such as fulfillment and
assurance. The fulfillment section pipelines the steps for an intent
enforcement, such as intent input, translation/refinement,
learning/planning/rendering, and configuration/provisioning toward
the final SFs (e.g., network functions (NFs) and applications in
SDVs). On the other hand, the assurance section performs the steps
for an Intent assurance and optimization by collecting final results
of the intent fulfillment, and validating and analyzing the resulted
NFs and applications for SDVs. If an action for the found problem is
needed, the life cycle inserts a reconfigured policy into the
fulfillment section or report a required action to SDV User.
<Vehicular Cloud (VC)>
+---------------------------------------------------------------------+
| +------------------+ +--------------------+ |
| | SDV User | +---------->| SDV Database | |
| +------------------+ | +--------------------+ |
| ^ | ^ |
| | | Database | Database |
| | | Interface | Interface |
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| | Consumer-Facing | V |
| | Interface (Intent) | +--------------------+ |
| | | +-------->| Cloud Analyzer |<-+ |
| | | | +--------------------+ | |
| V | |Analytics | |
| +------------------+<---------+ |Interface | |
| | Cloud Controller |<-----------+ +--------------------+ | |
| +------------------+<-------------------->|Vendor's Mgmt System| | |
| ^ Registration Interface +--------------------+ | |
| | ^ | |
+----------|------------------------------------------|-------------|-+
| Controller-Facing Interface VMS-Facing | Analyzer- |
| (High-level Policy) Interface | Facing |
| | Interface |
+----------|------------------------------------------|-------------|-+
| | | | |
| v v | |
| +------------------+ Registration +--------------------+ | |
| | SDV Controller |<-------------------->| SDV Vendor's | | |
| +------------------+ Interface | Mgmt System | | |
| ^ ^ +--------------------+ | |
| | | | |
| | | | |
| | | Analytics Interface +--------------------+ | |
| | +------------------------>| SDV Analyzer |<-+ |
| | +--------------------+ |
| | SF-Facing Interface ^ |
| | (Low-level Policy) | |
| | | |
| | | |
| | +--------------+----------------------+---+ |
| | | | Monitoring Interface | |
| v v v v |
| +---------------+ +---------------+ +---------------+ |
| | SF-1 | | SF-2 |........| SF-n | |
| | (Router) | | (Firewall) | | (Navigator) | |
| +---------------+ +---------------+ +---------------+ |
+---------------------------------------------------------------------+
<Software-Defined Vehicle (SDV)>
Figure 7: Intent-Based Management Framework for Software-Defined
Vehicles
Figure 7 shows a framework of intent-based management for SDVs. The
framework consists of a vehicular cloud and SDVs. The two parts of
the vehicular cloud and SDV borrow the components and interfaces of
the I2NSF framework and customize their components and interfaces for
IBN-based SDV management.
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3.6. IBN for Interconnection
New network capabilities based on programmability and virtualization
are producing service situations where a connectivity-only approach
is not sufficient. The increasing availability of computing
capabilities internal to the networks, or attached to them, enable
new scenarios where those capabilities can be consumed through the
advertisement or exposure of these execution environments (i.e., in
terms of compute, storage and associated networking resources). In
addition or complementary to that, even services or network functions
could be advertised in order to make them available for
interconnection. An intent-based evolved interconnection framework
is proposed by [I-D.contreras-nmrg-interconnection-intents].
Figure 8 captures the intent procedure for the fulfillment phase.
User Space : Translation / IBS : Network Ops
: Space : Space
: :
+----------+ : +----------+ +-----------+ : +-----------+
Fulfill |recognize/|---> |translate/|-->| learn/ |-->| configure/|
|generate | | | | plan/ | | provision |
|intent |<--- | refine | | render | : | |
+----------+ : +----------+ +-----------+ : +-----------+
: :
.........................................................................
Provider A : Provider B
---------- : ----------
:
- Select interconn. : - Mapping of intent types to : - Establishment of
intent type : protocols / APIs for : protocol sessions
- Specify targeted : coveying targeted resources : or API requests
resources (i.e., : - Parametrization of that : for configure or
routes, compute : protocols / APIs, e.g. : provisioning
quotes, service : leveraging on data models : targeted resources
functions, etc.) : :
: :
Figure 8: Fulfillment phase of the Interconnection Intent
Similarly, Figure 9 sketches the intent procedure for the assurance
phase.
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: +--------+ :
: |validate| : +----------+
: +----^---+ <----| monitor/ |
Assure +-------+ : +---------+ +-----+---+ : | observe/ |
|report | <---- |abstract |<---| analyze | <----| |
+-------+ : +---------+ |aggregate| : +----------+
: +---------+ :
.....................................................................
Provider A : Provider B
---------- : ----------
:
- Analysis of the : - Checking of monitored data : - Collection of
reported metrics : for internal closed loops : telemetry info
against the intent : to ensure commited SLOs : related to
request : (inner closed loop) : allocated
- Trigger of actions : - Aggregation of data : resources (i.e.,
if needed, e.g., : producing an abstracted view: routes, compute
new intent (outer : fitted to the intent request: quotes, service
closed loop) : : functions, etc.)
Figure 9: Assurance phase of the Interconnection Intent
Both Fulfillment and Assurance phases are integral part of the
interconnection intent.
3.7. IBN for IETF Network Slices
Network slicing is emerging as the future model for service offering
in telecom operator networks. Conceptually, network slicing provides
a customer with an apparent dedicated network built on top of logical
(i.e. virtual) and/or physical functions and resources supported by a
shared infrastructure, provided by one or more telecom operators. As
part of an end-to-end network slice it is expected to have a number
of network slices at transport level (referred as IETF network
slices) providing the necessary connectivity to the rest of
components of the end-to-end slice, e.g., mobile packet core slice.
With this respect, the GSMA has been developing a universal blueprint
that can be used by any vertical customer to request the deployment
of a network slice instance (NSI) based on a specific set of service
requirements. Such a blueprint is a network slice descriptor called
Generic Slice Template (GST). The GST contains multiple attributes
that can be used to characterize a network slice. A particular
template filled with values generates a specific Network Slice Type
(NEST).
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The previous slice templates provide a number of parameters that
functionally characterizes the behavior of the network slice as
expected by the slice customer. However, apart from the slice
characteristics, further information is needed in order to request
the realization of a slice towards the IETF Network Slice controller,
such as identification of the slice endpoints, information about the
virtual network topology expected to form the requested IETF Network
Slice, etc.
An intent-based evolved interconnection framework is proposed by
[I-D.contreras-nmrg-transport-slice-intent].
Figure 10 captures the intent procedure for the fulfillment phase.
User Space : Translation / IBS : Network Ops
: Space : Space
: :
+----------+ : +----------+ +-----------+ : +-----------+
Fulfill |recognize/|---> |translate/|-->| learn/ |-->| configure/|
|generate | | | | plan/ | | provision |
|intent |<--- | refine | | render | : | |
+----------+ : +----------+ +-----------+ : +-----------+
: :
.......................................................................
Slice Customer : Slice Provider
-------------- : --------------
:
- Customized Slice : - Identification of IETF : - Slice request
Templates : network slice endpoints : to IETF NSC
- Service SLOs as : and connectivity pattern : by using slice
understood by : - Derivation of network SLOs : NBI YANG model
slice customer : and SLEs from high-level :
: Customer Service SLOs :
: :
Figure 10: Fulfillment phase of the IETF Network Slice service Intent
Similarly, Figure 11 sketches the intent procedure for the assurance
phase.
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: +--------+ :
: |validate| : +----------+
: +----^---+ <----| monitor/ |
Assure +-------+ : +---------+ +-----+---+ : | observe/ |
|report | <---- |abstract |<---| analyze | <----| |
+-------+ : +---------+ |aggregate| : +----------+
: +---------+ :
.....................................................................
Slice Customer : Slice Provider
-------------- : --------------
:
- Analysis of the : - Checking of monitored data : - Collection of
reported metrics : for internal closed loops : monitoring info
against the slice : to ensure commited SLOs and : related to the
request : SLEs (inner closed loop) : slice (i.e.,
- Trigger of actions : - Aggregation of data : SLOs and SLEs of
if needed, e.g., : producing an abstracted view: connectivity
slice modification : fitted to the slice request : constructs, sdp,
(outer closed loop): : etc.)
Figure 11: Assurance phase of the IETF Network Slice service Intent
Both Fulfillment and Assurance phases are integral part of the
interconnection intent.
4. Practice Learnings
4.1. Difficulties and Challenges
Some key learnings and takeaways can be extracted from the practices
and implementation of IBN systems in different use cases. Commonly,
there involve the following technical challenges in building IBN
systems, incluing handling the dynamic and time variant nature of the
network, the efficient management of cross-domain resources, and the
reliability of automatic configuration, etc. Take Service Function
Chaining as an example to show these challenges.
1. Stability in Dynamic Network Environments:
For instance, in the space-terrestrial networks where the network
topology is with frequent changes, it is essential to design
efficient service function chain reconstruction and service recovery
mechanisms. But how to guarantee the effectiveness of the chaining
rule in these scenarios is still a challenge.
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2. Collaborative Management of Cross-domain SFC:
To ensure the network intents across multi-domain networks, intent-
based networks should be designed with a cross-domain orchestration
and management framework to ensure an end-to-end optimization of
Quality of Service.
3. Deployment under Resource-constrained Conditions:
It is important to consider how to effectively deploy and manage
these service function chains within limited resources. Methods such
as intent negotiation can be introduced to optimize resource
allocation.
4.2. Future Research Directions
Although there have been extensive research achievements from
academic, industrial, and standardization fields, there are the
following future research considerations.
1. Generic Intent model for Full Life-Cycle Assurance:
It is necessary to construct an intent model for the full life-cycle
from both top-to-down and down-to-top perspectives, including the
intent input state, the intent execution state, and the intent
completion state, etc, merged in a generic logic model. It makes
sense of ensuring the end-to-end guaranteed implementation of any
network intent and verifying the intent state through consistent
mathematical logic.
2. Autonomous End-to-End Network Policy Generation:
Intent-based networks should provide the network configuration
policies to always well understand network service in time, in
particular towards various dynamic on-demand service requirements.
Therefore, intent-based networks should make the network quality of
service satisfy the users’ quality of experience from a vertical
perspective of the network protocol or the different intent holders.
Meanwhile, current network is based on domain-specific policy local
optimization, and it is hard to ensure an end-to-end quality of
service guarantee, in particular a cross-domain global optimization.
Therefore, intent-based networks should provide an end-to-end
optimization policies across multi-domain networking applications.
3. Intent Implementation with Large language Models (LLMs):
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Large language models(LLMs) will play an important role in enhancing
the accuracy of intent refinement, resulting from the powerful
understanding capabilities of LLMs and the entity relationships in
knowledge graphs. It is also beneficial to network policy generation
according to the network status. Although we have involved different
kinds of artificial intelligence models at each intent-based
networks’ stages, there still lack of generality and accuracy.
Meanwhile, human interference is still in the full life-cycle of
intent-based networks, and in the future the knowledge graph assisted
LLMs can further reduce the human intervention, and even make the
human completely be out of the full life-cycle of the intent-based
networks.
5. Other Considerations
The Integration of IBN and Network Digital Twin.(TBD)
The Integration of IBN, AI and Green.(TBD)
6. Security Considerations
TBD.
7. IANA Considerations
This document has no requests to IANA.
8. Contributors
The following people have substantially contributed to this document
as co-authors:
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Hongwei Yang
China Mobile
Email: yanghongwei@chinamobile.com
Giuseppe Fioccola
Huawei
Email: giuseppe.fioccola@huawei.com
Yiwen Shen
Sungkyunkwan University
Email: chrisshen@skku.edu
Yoseop Ahn
Sungkyunkwan University
Email: ahnjs124@skku.edu
Mose Gu
Sungkyunkwan University
Email: rna0415@skku.edu
Jung-Soo Park
Electronics and Telecommunications Research Institute
Email: pjs@etri.re.kr
Yun-Chul Choi
Electronics and Telecommunications Research Institute
Email: cyc79@etri.re.kr
9. References
9.1. Normative References
[RFC2119] Bradner, S., "Key words for use in RFCs to Indicate
Requirement Levels", BCP 14, RFC 2119,
DOI 10.17487/RFC2119, March 1997,
<https://www.rfc-editor.org/info/rfc2119>.
[RFC6241] Enns, R., Ed., Bjorklund, M., Ed., Schoenwaelder, J., Ed.,
and A. Bierman, Ed., "Network Configuration Protocol
(NETCONF)", RFC 6241, DOI 10.17487/RFC6241, June 2011,
<https://www.rfc-editor.org/info/rfc6241>.
[RFC8040] Bierman, A., Bjorklund, M., and K. Watsen, "RESTCONF
Protocol", RFC 8040, DOI 10.17487/RFC8040, January 2017,
<https://www.rfc-editor.org/info/rfc8040>.
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[RFC8329] Lopez, D., Lopez, E., Dunbar, L., Strassner, J., and R.
Kumar, "Framework for Interface to Network Security
Functions", RFC 8329, DOI 10.17487/RFC8329, February 2018,
<https://www.rfc-editor.org/info/rfc8329>.
[RFC9256] Filsfils, C., Talaulikar, K., Ed., Voyer, D., Bogdanov,
A., and P. Mattes, "Segment Routing Policy Architecture",
RFC 9256, DOI 10.17487/RFC9256, July 2022,
<https://www.rfc-editor.org/info/rfc9256>.
[RFC9315] Clemm, A., Ciavaglia, L., Granville, L. Z., and J.
Tantsura, "Intent-Based Networking - Concepts and
Definitions", RFC 9315, DOI 10.17487/RFC9315, October
2022, <https://www.rfc-editor.org/info/rfc9315>.
[RFC9316] Li, C., Havel, O., Olariu, A., Martinez-Julia, P., Nobre,
J., and D. Lopez, "Intent Classification", RFC 9316,
DOI 10.17487/RFC9316, October 2022,
<https://www.rfc-editor.org/info/rfc9316>.
[RFC9342] Fioccola, G., Ed., Cociglio, M., Sapio, A., Sisto, R., and
T. Zhou, "Clustered Alternate-Marking Method", RFC 9342,
DOI 10.17487/RFC9342, December 2022,
<https://www.rfc-editor.org/info/rfc9342>.
9.2. Informative References
[I-D.contreras-nmrg-interconnection-intents]
Contreras, L. M., Lucente, P., and T. H. Velivassaki,
"Interconnection Intents", Work in Progress, Internet-
Draft, draft-contreras-nmrg-interconnection-intents-05, 8
July 2024,
<https://datatracker.ietf.org/api/v1/doc/document/draft-
contreras-nmrg-interconnection-intents/>.
[I-D.contreras-nmrg-transport-slice-intent]
Contreras, L. M., Demestichas, P., and J. Tantsura, "IETF
Network Slice Intent", Work in Progress, Internet-Draft,
draft-contreras-nmrg-transport-slice-intent-07, 8 July
2024, <https://datatracker.ietf.org/api/v1/doc/document/
draft-contreras-nmrg-transport-slice-intent/>.
[I-D.fz-ippm-on-path-telemetry-yang]
Fioccola, G. and T. Zhou, "On-path Telemetry YANG Data
Model", Work in Progress, Internet-Draft, draft-fz-ippm-
on-path-telemetry-yang-00, 19 June 2024,
<https://datatracker.ietf.org/doc/html/draft-fz-ippm-on-
path-telemetry-yang-00>.
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[I-D.gfz-opsawg-ipfix-alt-mark]
Graf, T., Fioccola, G., Zhou, T., Milan, F., and M. Nilo,
"IPFIX Alternate-Marking Information", Work in Progress,
Internet-Draft, draft-gfz-opsawg-ipfix-alt-mark-01, 24
April 2024, <https://datatracker.ietf.org/doc/html/draft-
gfz-opsawg-ipfix-alt-mark-01>.
[I-D.ietf-spring-sr-policy-yang]
Raza, S. K., Saleh, T., Shunwan, Z., Voyer, D., Durrani,
M., Matsushima, S., and V. P. Beeram, "YANG Data Model for
Segment Routing Policy", Work in Progress, Internet-Draft,
draft-ietf-spring-sr-policy-yang-03, 4 March 2024,
<https://datatracker.ietf.org/doc/html/draft-ietf-spring-
sr-policy-yang-03>.
[I-D.jeong-i2nsf-security-management-automation]
Jeong, J. P., Lingga, P., Jung-Soo, J., Lopez, D., and S.
Hares, "Security Management Automation of Cloud-Based
Security Services in I2NSF Framework", Work in Progress,
Internet-Draft, draft-jeong-i2nsf-security-management-
automation-07, 7 February 2024,
<https://datatracker.ietf.org/doc/html/draft-jeong-i2nsf-
security-management-automation-07>.
[I-D.jeong-nmrg-ibn-network-management-automation]
Jeong, J. P., Ahn, Y., Kim, Y., and J. Jung-Soo, "Intent-
Based Network Management Automation in 5G Networks", Work
in Progress, Internet-Draft, draft-jeong-nmrg-ibn-network-
management-automation-04, 22 April 2024,
<https://datatracker.ietf.org/doc/html/draft-jeong-nmrg-
ibn-network-management-automation-04>.
[I-D.jeong-opsawg-intent-based-sdv-framework]
Jeong, J. P. and Y. Shen, "An Intent-Based Management
Framework for Software-Defined Vehicles in Intelligent
Transportation Systems", Work in Progress, Internet-Draft,
draft-jeong-opsawg-intent-based-sdv-framework-02, 24 June
2024, <https://datatracker.ietf.org/doc/html/draft-jeong-
opsawg-intent-based-sdv-framework-02>.
[I-D.park-nmrg-ibn-network-management-srv6]
Jung-Soo, J., Choi, Y., and J. P. Jeong, "Intent-Based
Network Management in SRv6 Networks", Work in Progress,
Internet-Draft, draft-park-nmrg-ibn-network-management-
srv6-02, 24 June 2024,
<https://datatracker.ietf.org/doc/html/draft-park-nmrg-
ibn-network-management-srv6-02>.
Yao, et al. Expires 9 January 2025 [Page 30]
Internet-Draft Network Working Group July 2024
[I-D.yang-i2nsf-security-policy-translation]
Jeong, J. P., Lingga, P., and J. Yang, "Guidelines for
Security Policy Translation in Interface to Network
Security Functions", Work in Progress, Internet-Draft,
draft-yang-i2nsf-security-policy-translation-16, 7
February 2024, <https://datatracker.ietf.org/doc/html/
draft-yang-i2nsf-security-policy-translation-16>.
[I-D.ydt-ippm-alt-mark-yang]
Graf, T., Wang, M., Fioccola, G., Zhou, T., Min, X., Jun,
G., Nilo, M., and L. Han, "A YANG Data Model for the
Alternate Marking Method", Work in Progress, Internet-
Draft, draft-ydt-ippm-alt-mark-yang-02, 4 July 2024,
<https://datatracker.ietf.org/doc/html/draft-ydt-ippm-alt-
mark-yang-02>.
[REST] Fielding, R. and R. Taylor, "Principled Design of the
Modern Web Architecture", ACM Transactions on Internet
Technology, Vol. 2, Issue 2,,
Available: https://dl.acm.org/doi/10.1145/514183.514185,
May 2002.
Acknowledgments
This work of Jaehoon Paul Jeong is supported by Institute of
Information & Communications Technology Planning & Evaluation (IITP)
grant funded by the Korea government, Ministry of Science and ICT
(MSIT) (No. RS-2024-00398199).
The work of Luis M. Contreras has been partially funded by the
European Union under Horizon Europe project NEMO (NExt generation
Meta Operating system) grant number 101070118.
Authors' Addresses
Kehan Yao (editor)
China Mobile
Beijing
100053
China
Email: yaokehan@chinamobile.com
Danyang Chen (editor)
China Mobile
Beijing
100053
China
Yao, et al. Expires 9 January 2025 [Page 31]
Internet-Draft Network Working Group July 2024
Email: chendanyang@chinamobile.com
Jaehoon Paul Jeong (editor)
Department of Computer Science and Engineering
Sungkyunkwan University
2066 Seobu-Ro, Jangan-Gu
Suwon
Gyeonggi-Do
16419
Republic of Korea
Phone: +82 31 299 4957
Email: pauljeong@skku.edu
URI: http://iotlab.skku.edu/people-jaehoon-jeong.php
Qin Wu
Huawei
Email: bill.wu@huawei.com
Chungang Yang
Xidian University
Email: cgyang@xidian.edu.cn
Luis M. Contreras
Telefonica
Email: luismiguel.contrerasmurillo@telefonica.com
Yao, et al. Expires 9 January 2025 [Page 32]