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RFC1404 - A Model for Common Operational Statistics

王朝other·作者佚名  2008-05-31
窄屏简体版  字體: |||超大  

Network Working Group B. Stockman

Request for Comments: 1404 NORDUnet/SUNET

January 1993

A Model for Common Operational Statistics

Status of the Memo

This memo provides information for the Internet community. It does

not specify an Internet standard. Distribution of this memo is

unlimited.

Abstract

This memo describes a model for operational statistics in the

Internet. It gives recommendations for metrics, measurements,

polling periods, storage formats and presentation formats.

Acknowledgements

The author would like to thank the members of the Operational

Statistics Working Group of the IETF whose efforts made this memo

possible.

Table of Contents

1. IntrodUCtion ............................................. 2

2. The Model ................................................ 5

2.1 Metrics and Polling Periods .............................. 5

2.2 Format for Storing Collected Data ........................ 6

2.3 Reports .................................................. 6

2.4 Security Issues .......................................... 6

3. Categorization of Metrics ................................ 7

3.1 Overview ................................................. 7

3.2 Categorization of Metrics Based on Measurement Areas ..... 7

3.2.1 Utilization Metrics ...................................... 7

3.2.2 Performance Metrics ...................................... 7

3.2.3 Availability Metrics ..................................... 7

3.2.4 Stability Metrics ........................................ 8

3.3 Categorization Based on Availability of Metrics .......... 8

3.3.1 Per Interface Variables Already in Standard MIB .......... 8

3.3.2 Per Interface Variables in Private Enterprise MIB ........ 9

3.3.3 Per interface Variables Needing High Resolution Polling .. 9

3.3.4 Per Interface Variables not in any MIB ................... 9

3.3.5 Per Node Variables ....................................... 9

3.3.6 Metrics not being Retrievable with SNMP ................. 10

3.4 Recommended Metrics ..................................... 10

3.4.1 Chosen Metrics .......................................... 10

4. Polling Frequencies ..................................... 11

4.1 Variables Needing High Resolution Polling ............... 11

4.2 Variables not Needing High Resolution Polling ........... 11

5. Pre-Processing of Raw Statistical Data .................. 12

5.1 Optimizing and Concentrating Data to Resources .......... 12

5.2 Aggregation of Data ..................................... 12

6. Storing of Statistical Data ............................. 13

6.1 The Storage Format ...................................... 13

6.1.1 The Label Section ....................................... 14

6.1.2 The Device Section ...................................... 14

6.1.3 The Data Section ........................................ 16

6.2 Storage Requirement Estimations ......................... 17

7. Report Formats .......................................... 18

7.1 Report Types and Contents ............................... 18

7.2 Contents of the Reports ................................. 18

7.2.1 Offered Load by Link .................................... 18

7.2.2 Offered Load by Customer ................................ 18

7.2.3 Resource Utilization Reporting .......................... 19

7.2.3.1 Utilization as Maximum Peak Behavior .................... 19

7.2.3.2 Utilization as Frequency Distribution of Peaks .......... 19

8. Considerations for Future Development ................... 20

8.1 A Client/Server Based Statistical Exchange System ....... 20

8.2 Inclusion of Variables not in the Internet Standard MIB . 20

8.3 Detailed Resource Utilization Statistics ................ 20

Appendix A Some formulas for statistical aggregation ........... 21

Appendix B An example .......................................... 24

Security Considerations ......................................... 27

Author's Address ................................................ 27

1. Introduction

Today it is not uncommon for many network administrations to collect

and archive network management metrics that indicate network

utilization, growth, and outages. The primary goal is to facilitate

near-term problem isolation and longer-term network planning within

the organization. There is also the larger goal of cooperative

problem isolation and network planning between network

administrations. This larger goal is likely to become increasingly

important as the Internet continues to grow.

There exist a variety of network management tools for the collection

and presentation of network management metrics. However, different

kinds of measurement and presentation techniques makes it difficult

to compare data between networks. Plus, there is not common

agreement on what metrics should be regularly collected or how they

should be displayed.

There needs to be an agreed-upon model for

1) A minimal set of common network management metrics to satisfy the

goals stated above.

2) Tools for collecting these metrics.

3) A common storage format to facilitate the usage of these data by

common presentation tools.

4) Common presentation formats.

Under this Operational Statistics model, collection tools will

collect and store data in a given format to be retrieved later by

presentation tools displaying the data in a predefined way. (See

figure below.)

The Operational Statistics Model

(Collection of common metrics, by commonly available tools, stored in

a common format, displayed in common formats by commonly available

presentation tools.)

!-----------------------!

! Network !

!---+---------------+---!

/ / / --------+------ ----+---------

! New ! ! Old !

! Collection ! ! Collection !

! Tool ! ! Tool !

!---------+---! !------+-----!

\ !

\ !-------+--------!

\ ! Post-Processor !

\ !--+-------------!

\ /

\ /

\ /

!--+-------+---!

! Common !

! Statistics !

! Database !

!-+--------+---!

/ / / / !-+-------------!

/ ! Pre-Processor !

/ !-------+-------!

!-----------+--! !

! New ! !-------+-------!

! Presentation ! ! Old !

! Tool ! ! Presentation !

!---------+----! ! Tool !

\ !--+------------!

\ /

\ /

!-+---------------+-!

! Graphical Output !

! (e.g., to paper !

! or X-window) !

!-------------------!

This memo gives an overview of this model for common operational

statistics. The model defines the gathering, storing and presentation

of network operational statistics and classifies the types of

information that should be available at each network operation center

conforming to this model.

The model defines a minimal set of metrics, how these metrics should

gathered and stored. Finally the model gives recommendations on the

content and the layout of statistical reports making it possible to

easily compare networks statistics between NOCs.

The primary purpose of this model is to define ways and methods on

how NOCs could most effectively share their operational statistics.

One intention with this model is to specify a baseline capability

that NOCs conforming to the this model may support with a minimal

development effort and a minimal ongoing effort.

2. The Model

The model defines three areas of interest on which all underlying

concepts are based.

1. The definition of a minimal set of metrics to be gathered

2. The definition of a format for storing collected statistical

data.

3. The definition of methods and formats for generating

reports.

The model indicates that old tools used today could be retrofitted

into the new paradigm. This could be done by providing conversion-

filters between the old and the new environment tools. In this sense

this model intends to advocate the development of public domain

software for use by participating NOCs.

One basic idea with the model is that statistical data stored at one

place could be retrieved and displayed at some other place.

2.1 Metrics and Polling Periods

The intention here is to define a minimal set of metrics that easily

could be gathered using standard SNMP based network management tools.

These metrics should hence be available as variables in the Internet

Standard MIB.

If the Internet Standard MIB is changed also this minimal set of

metrics could be reconsidered as there are many metrics viewed as

important but currently not being defined in the standard MIB. For

some metrics being highly desirable to collect there are currently no

way to get them into the Internet Standard MIB as these metrics

probably are not possible to retrieve using SNMP. Tools and methods

in gathering such metrics should be eXPlicitly defined if such

metrics are to be considered. This is, however, outside of the scope

of this memo.

2.2 Format for Storing Collected Data

A format for storing data is defined. The intention is to minimize

redundant information by using a single header structure where all

information relevant to a certain set of statistical data is stored.

This header section will give information on when and where the

corresponding statistical data where collected.

2.3 Reports

Some basic classes of reports are suggested with regards to different

views of network behavior. For this reason reports on totals of

octets and packets over some period in time are regarded as essential

to give an overall view of the traffic flows in a network.

Differentiation between application and protocols to give ideas on

which type of traffic is dominant is regarded as needed. Finally

reports on resource utilization are recommended..

Depending on the intention with a report the timeperiod over which it

spans may vary. For capacity planning there may be a need for longer

term reports while in engineering and operation there may be

sufficient with reports on weekly or daily basis.

2.4 Security Issues

There are legal, ethical and political concerns of data sharing.

People are concerned about showing data that may make one of the

networks look bad.

For this reason there is a need to insure integrity, conformity and

confidentiality of the shared data. To be useful, the same data must

be collected from all of the involved sites and it must be collected

at the same interval. To prevent vendors from getting an unfair

performance information, certain data must not be made available.

3. Categorization of Metrics

3.1 Overview

This section gives a classification of metrics with regard to scope

and easiness of retrieve. A recommendation of a minimal set of

metrics is given. The section also gives some hints on metrics to be

considered for future inclusion when available in the network

management environment. Finally some thoughts on storage requirements

are presented.

3.2 Categorization of Metrics Based on Measurement Areas

The metrics used in evaluating network traffic could be classified

into (at least) four major categories:

- Utilization metrics

- Performance metrics

- Availability metrics

- Stability metrics

3.2.1. Utilization Metrics

These category describes different ASPects of the total traffic being

forwarded through the network. Possible metrics are:

- Total input and output packets and octets.

- Various peak metrics.

- Per protocol and per application metrics.

3.2.2 Performance Metrics

These metrics describes the quality of service such as delays and

congestion situations. Possible metrics are:

- RTT metrics on different protocol layers.

- Number of collisions on a bus network

- Number of ICMP Source Quench messages.

- Number of packets dropped.

- etc.

3.2.3 Availability Metrics

This could be considered as the long term Accessibility metrics on

different protocol layers. Possible metrics are:

- Line availability as percentage uptime.

- Route availability

- Application availability

3.2.4 Stability Metrics

These metrics describes short term fluctuations in the network which

degrades the service level. Also changes in traffic patterns could be

recognized using these metrics. Possible metrics are:

- Number of fast line status transitions

- Number of fast route changes (also known as route flapping)

- Number of routes per interface in the tables

- Next hop count stability.

- Short term ICMP behaviors.

3.3 Categorization Based on Availability of Metrics

To be able to retrieve metrics the corresponding variables must be

possible to access at every network object being part of the

management domain for which statistics are being collected.

Some metrics are easily retrievable as being defined as variables in

the Internet Standard MIB while other metrics may be retrievable as

being part of some vendor's private enterprise MIB suBTree. Finally

some metrics are considered as impossible to retrieve due to not

being possible to include in the SNMP concept or that the actual

measurement of these metrics would require extensive polling and

hence download the network with management traffic.

The metrics being categorized below could each be judged as an

important metric in evaluating network behaviors. This list may

serve for reconsider the decisions on which metric to be regarded as

reasonable and desirable to collect. If the availability of below

metrics changes these decisions may change.

3.3.1 Per Interface Variables Already in Internet Standard MIB

(thus easy to retrieve)

ifInUcastPkts (unicast packet in)

ifOutUcastPkts (unicast packet out)

ifInNUcastPkts (non-unicasts packet in

ifOutNUcastPkts (non-unicast packet out)

ifInOctets (octets in)

ifOutOctets (octets out)

ifOperStatus (line status)

3.3.2 Per Interface Variables in Internet Private Enterprise MIB

(thus could sometimes be possible to retrieve)

discarded packets in

discarded packets out

congestion events in

congestion events out

aggregate errors

interface resets

3.3.3 Per Interface Variables Needing High Resolution Polling

(which is hard due to resulting network load)

interface queue length

seconds missing stats

interface unavailable

route changes

interface next hop count

3.3.4 Per Interface Variables not in any MIB

(thus impossible to retrieve using SNMP but possible to include

in a MIB).

link layer packets in

link layer packets out

link layer octets in

link layer octets out

packet interarrival times

packet size distribution

3.3.5 Per Node Variables

(not categorized here)

per protocol packets in

per protocol packets out

per protocol octets in

per protocol octets out

packets discarded in

packets discarded out

packet size distribution

sys uptime

poll delta time

reboot count

3.3.6 Metrics not being Retrievable with SNMP

delays (RTTs) on different protocol layers

application layer availabilities

peak behavior metrics

3.4 Recommended Metrics

A large amount of metrics could be regarded for gathering in the

process of doing network statistics. To facilitate for this model to

reach general consensus there is a need to define a minimal set of

metrics that are both essential and also possible to retrieve in a

majority of today network objects. As an indication of being

generally retrievable the presence in the Internet Standard MIB is

regarded as a mandatory requirement.

3.4.1 Chosen Metrics

The following metrics were chosen as desirable and reasonable being

part of the Internet Standard MIB:

For each interface:

ifInOctets (octets in)

ifOutOctets (octets out)

ifInUcastPkts (unicast packets in)

ifOutUcastPkts (unicast packets out)

ifInNUcastPkts (non-unicast packets in)

ifOutNUcastPkts (non-unicast packets out)

ifInDiscards (in discards)

ifOutDiscards (out discards)

ifOperStatus (line status)

For each node:

ipForwDatagrams (IP forwards)

ipInDiscards (IP in discards)

sysUpTime (system uptime)

All of the above metrics are available in the Internet Standard MIB.

However, there also other metrics which could be recommended such as

the RTT metric which probably never will be in any MIB. For such

metrics other collection tools than SNMP have to be explicitly

defined. The specification of such tools are outside scope of this

memo.

4. Polling Frequencies

The reason for the polling is to achieve statistics to serve as base

for trend and capacity planning. From the operational data it shall

be possible to derive engineering and management data. It shall be

noted that all polling and saving values below are recommendation and

not mandatory.

4.1 Variables Needing High Resolution Polling

To be able to detect peak behaviors it is recommended that a period

of maximum 1 minute (60 seconds) is used in the gathering of traffic

data. The metrics to be gathered at this frequency is:

for each interface

ifInOctets (octets in)

ifOutOctets (octets out)

ifInUcastPkts (unicast packets in)

ifOutUcastPkts (unicast packets out)

If not possible to gather data at this high polling frequency, it is

recommended that an even multiple of 60 seconds is used. The initial

polling frequency value will be part of the stored statistical data

as described in section 4 below.

4.2 Variables not Needing High Resolution Polling

The other part of the recommended variables to be gathered, i.e.,

For each interface:

ifInNUcastPkts (non-unicast packets in)

ifOutNUcastPkts (non-unicast packets out)

ifInDiscards (in discards)

ifOutDiscards (out discards)

ifOperStatus (line status)

and for each node:

ipForwDatagrams (IP forwards)

ipInDiscards (IP in discards)

sysUpTime (system uptime)

These variables could be gathered at a lower polling rate. No

specific polling rate is mentioned but it is recommended that the

period chosen is an even multiple of 60 seconds.

5. Pre-Processing of Raw Statistical Data

5.1 Optimizing and Concentrating Data to Resources

To avoid redundant data being stored in commonly available storage

there is a need for processing the raw data. For example if a link is

down there is no need to continuous store a counter that is not

changing. Using variables such as sysUpTime and Line Status there is

the possibility of not continuously storing data collected from links

and nodes where no traffic have been transmitted over some period of

time.

Another aspect of processing is to decouple the data from the raw

interface being polled. The intention should be to convert such data

into the resource being of interest as for example the traffic on a

given link. Changes of interface in a gateway for a given link should

not be visible in the provided data.

5.2 Aggregation of Data

A polling period of 1 minute will create the need of aggregating

stored data. Aggregation here means that over a period with logged

entries, a new aggregated entry is created by taking the first and

last of the previously logged entries over some aggregation period

and compute a new entry.

Not to loose information on the peak values the aggregation also

means that the peak value of the previous aggregation period is

calculated and stored.

This gives below layout of aggregated entries

It is foreseen that over a relatively short period, polled data will

be logged at the tightest polling period (1 minute). Regularly these

data will be pre-processed into the actual files being provided.

Suggestions for aggregation periods:

Over a

24 hour period aggregate to 15 minutes,

1 month period aggregate to 1 hour,

1 year period aggregate to 1 day

Aggregation is the computation of new average and maximum values for

the aggregation period based on the previous aggregation period data.

For each aggregation period the maximum, and average values are

computed and stored. Also other aggregation period could be chosen

when needed. The chosen aggregation period value will be stored

together with the aggregated data as described below.

6. Storing of Statistical Data

This section describes a format for storing of statistical data. The

goal is to facilitate for a common set of tools for the gathering,

storing and analysis of statistical data. The format is defined with

the intention to minimize redundant information and by this minimize

required storage. If a client server based model for retrieving

remote statistical data is later being developed, the specified

storage format should be possible to used as the transmission

protocol.

The format is built up by three different sections within the

statistical storage, a label section, a device section and a data

section. The label section gives the start and end times for a given

data section as well as the file where the actual data is stored.

The device section specifies what is being logged in the

corresponding data section.

To facilitate for multiple data sections within one log-file, label

sections, device sections and data sections may occur more than once.

Each section type is delimited by a BEGIN-END pair. Label and device

sections could either be stored directly in the data-file or as

separate files where the corresponding data-file is pointed out by

the data-file entry in the label section.

A data section must correspond to exactly one label section and one

device section. If more label sections and device sections each data

section will belong to the label section and device section

immediately prepending the data section if these sections are stored

within the data-file. How files are physically arranged is outside

the scope of the document.

6.1 The Storage Format

stat-data ::=

<label-section><FS><device-section><FS><data-section><FS>

[<device-section><FS><data-section><FS>]

FS ::= "," <LF> <LF> # any text here <LF>

The file must start with a label specification followed by a device

specification followed by a data section. If the storing of logged

data is for some reason interrupted a new label specification should

be inserted when the storing is restarted. If the device being logged

is changed this should be indicated as a new label and a new device

specification.

It shall here be noted that the actual physical storage of data is a

local decision and can vary a lot. There can be one data-file per

interface or multiple interfaces logged within the same data-file.

Label and device sections may be stored in a separate file as well as

within the data-file.

6.1.1 The Label Section

label-section ::= "BEGIN_LABEL" <FS>

<start_time> <FS>

<stop_time> <FS>

<data_file> <FS>

"END_LABEL"

start-time ::= <time-string>

end-time ::= <time-string>

file-name ::= <ascii-string>

time-string ::= <year><month><day><hour><minute><second>

year ::= <digit><digit><digit><digit>

month ::= 01 ... 12

hour ::= 00 ... 23

minute ::= 00 ... 59

second ::= 00 ... 59

digit ::= 0 ... 9

ascii-string ::= same as MIB II definition of <ascii-string>

The times defines start and stop times for the related set of logged

data. The time is in UTC.

6.1.2 The Device Section

device-section ::= "BEGIN_DEVICE" <FS>

<device-field> <FS>

"END_DEVICE"

device-field ::= <networkname><FS><routername><FS><linkname><FS>

<bw-value><FS><bw-sort><FS><proto-type><FS>

<proto-addr><FS><time-zone><FS><tag-table>

[<tag-table>]

networkname ::= <ascii-string>

routername ::= <fully qualified domain name>

linkname ::= <ascii-string>

bw-value ::= <actual bandwidth value>

bw-sort ::= "bps" "Kbps" "Mbps" "Gbps" "Tbps"

proto-type ::= "IP" "DECNET" "X.25" "CLNS"

proto-addr ::= <network-address depending on proto-type>

timezone ::= <"+" "-"><00 ... 12><00 30>

tag-table ::= <tag><FS><tag-class><FS><variable-field>

[<FS><variable-field>]

tag-class ::= "total" "peak"

variable-field ::= <variable-name> <FS> <initial-polling-period><FS>

<aggregation-period>

tag ::= <ascii-string>

variable-name ::= <ascii-string>

initial-polling-period ::= <digit>[<digit>]

aggregation-period ::= <digit>[<digit>]

The network name is a human readable string indicating to which

network the logged data belong.

The routername is the fully qualified name relevant for the network

architecture where the router is installed.

The linkname is a human readable string indicating the the

connectivity of the link where from the logged data is gathered.

The bandwidth should be the numerical value followed by the sort

being used. Valid sorts are bps, Kbps, Mbps, Tbps.

The prototype filed describes to which network architecture the

interface being logged is connected. Valid types are IP, DECNET, X.25

and CLNP.

The network address is the unique numeric address of the interface

being logged. The actual form of this address is dependent of the

protocol type as indicated in the proto-type field. For Internet

connected interfaces the "three-dot" notation should be used.

The time-zone indicates the timedifference that should be added to

the timestamp in the datasection to give the local time for the

logged interface.

The tag-table lists all the variables being polled. Variable names

are the fully qualified Internet MIB names. The table may contain

multiple tags. Each tag must be associated with only one polling and

aggregation period. If variables are being polled or aggregated at

different periods one separate tag in the table has to be used for

each period.

As variables may be polled with different polling periods within the

same set of logged data, there is a need to explicitly associate a

polling period with each variable. After being processed the actual

period covered may have changed as compared to the initial polling

period and this should be noted in the aggregation period field. The

initial polling period and aggregation period should be given in

seconds.

As aggregation also means the computation of the max value for the

previously polled data, the aggregation process have to extend the

tag table to include these maximum values. This could be done in

different ways. The variable field for the aggregated variables is

extended to also include the peak values from the previous period.

Another possibility is to create new tags for the peak values. To be

able to differentiate between polled raw data, aggregated total and

aggregated peak values some kind of unique naming of such entities

has to be implemented.

6.1.3 The Data Section

data-section ::= "BEGIN_DATA"<FS>

<data-field><LF>

"END_DATA"

data-field ::= <timestamp><FS><tag><FS>

<poll-delta><FS><delta-val>

[<FS><delta-val>]

poll-delta ::= <digit> [<digit>]

tag ::= <ascii-string>

delta-value ::= <digit> [<digit>]

timestamp ::= <year><month><day><hour><minute><second>

year ::= <digit><digit><digit><digit>

month ::= 01 ... 12

hour ::= 00 ... 23

minute ::= 00 ... 59

second ::= 00 ... 59

digit ::= 0 ... 9

The datafield contains the polled data from a set of variables as

defined by the corresponding tag field. Each data field begins with

the timestamp for this poll followed by the tag defining the polled

variables followed by a polling delta value giving the period of time

in seconds since the previous poll. The variable values are stored as

delta values for counters and as absolute values for non-counter

values such as OperStatus. The timestamp is in UTC and the time-zone

field in the device section is used to compute the local time for the

device being logged.

6.2 Storage Requirement Estimations

The header sections are not counted in this example. Assuming the

the maximum polling intensity is used for all the 12 recommended

variables and assuming the size in ascii of each variable is 8 bytes

will give the below calculations based on one year of storing and

aggregating statistical data.

Assuming that data is saved according to the below scheme

1 minute non-aggregated saved 1 day.

15 minute aggregation period saved 1 week.

1 hour aggregation period saved 1 month.

1 day aggregation period saved 1 year.

this will give:

Size of one entry for each aggregation period:

Aggregation periods

1 min 15 min 1 hour 1 day

Timestamp 14 14 14 14

Tag 5 5 5 5

Poll-Delta 2 3 4 5

Total values 96 96 96 96

Peak values 0 96 192 288

Field separators 14 28 42 56

Total entry size 131 242 353 464

For each day 60*24 = 1440 entries with a total size of 1440*131 = 187

Kbytes.

For each weak 4*24*7 = 672 entries are stored with a total size of

672*242 = 163 Kbytes

For each month 24*30 = 720 entries are stored with a total size of

720*353 = 254 Kbytes

For each year 365 entries are stored with a total size of 365*464 =

169 Kbytes.

Grand total estimated storage for during one year = 773 Kbytes.

7. Report Formats

This section suggest some report formats and defines the metrics to

be used in such reports.

7.1 Report Types and Contents

There is the longer term needs for monthly and yearly reports showing

the long term tendencies in the network. There are the short term

weekly reports giving indications on the medium term changes in the

network behavior which could serve as input in the medium term

engineering approach. Finally there is the daily reports giving

instantaneous overviews needed in the daily operations of a network.

These reports should give information on:

Offered Load Total traffic at external interfaces.

Offered Load Segmented by "Customer".

Offered Load Segmented protocol/application.

Resource Utilization Link/Router.

7.2 Contents of the Reports

7.2.1 Offered Load by Link

Metric categories: input octets per external interface

output octets per external interface

input packets per external interface

output packets per external interface

The intention is to visualize the overall trend of network traffic on

each connected external interface. This could be done as a bar-chart

giving the totals for each of the four metric categories. Based on

the time period selected this could be done on a hourly, daily,

monthly or yearly basis.

7.2.2 Offered Load by Customer

Metric categories: input octets per customer

output octets per customer

input packets per customer

output packets per customer

The recommendation is here to sort the offered load (in decreasing

order) by customer. Plot the function F(n), where F(n) is percentage

of total traffic offered to the top n customers or the function f(n)

where f is the percentage of traffic offered by the n'th ranked

customers.

The definition of what should be meant by a customer has to be done

locally at the site where the statistics are being gathered.

The cumulative could be useful as an overview of how the traffic is

distributed among users since it enables to quickly pick off what

fraction of of the traffic comes from what number of "users."

A method of displaying both average and peak-behaviors in the same

bar-diagram is to compute both the average value over some period and

the peak value during the same period. The average and peak values

are then displayed in the same bar.

7.2.3 Resource Utilization Reporting

7.2.3.1 Utilization as Maximum Peak Behavior

The link utilization is used to capture information on network

loading. The polling interval must be small enough to be significant

with respect to variations in human activity since this is the

activity that drives loading in network variation. On the other hand,

there is no need to make it smaller than an interval over which

excessive delay would notably impact productivity. For this reason 30

minutes is a good estimate the time at which people remain in one

activity and over which prolonged high delay will affect their

productivity. To track 30 minute variations, there is a need to

sample twice as frequently, i.e., every 15 minutes. Using above

recommended polling period of 10 minutes this will hence be

sufficient to capture variations in utilizations.

A possible format for reporting utilizations seen as peak behaviors

is to use a method of combining averages and peak measurements onto

the same diagram. Compare for example peak-meters on audio-equipment.

If for example a diagram contains the daily totals for some period,

then the peaks would be the most busy hour during each day. If the

diagram was totals on hourly basis then the peak would be the maximum

10 minutes period for each hour.

By combining the average and the maximum values for a certain

timeperiod it will be possible to detect line utilization and

bottlenecks due to temporary high loads.

7.2.3.2 Utilization Visualized as a Frequency Distribution of Peaks

Another way of visualizing line utilization is to put the 10 minutes

samples in a histogram showing the relative frequency among the

samples vs. the load.

8. Considerations for Future Development

This memo is the first effort in formalizing a common basis for

operational statistics. One major guideline in this work has been to

keep the model simple to facilitate for vendors and NOCs to easily

integrate this model in their operational tools.

There are, however, some ideas that could be progressed further to

expand the scope and usability of the model.

8.1 A Client/Server Based Statistical Exchange System

A possible way of development could be the definition of a

client/server based architecture for providing Internet access to

operational statistics. Such an architecture envisions that each NOC

should install a server who provides locally collected information in

a variety of forms for clients.

Using a query language the client should be able to define the

network object, the interface, the metrics and the time period to be

provided. Using a TCP based protocol the server will transmit the

requested data. Once these data is received by the client they could

be processed and presented by a variety of tools needed. One

possibility is to have an X-Window based tool that displays defined

diagrams from data, supporting such types of diagrams being feed into

the X-window tool directly from the statistical server. Another

complementary method would be to generate PostScript output to be

able to print the diagrams. In all cases there should be the

possibility to store the retrieved data locally for later processing.

8.2 Inclusion of Variables not in the Internet Standard MIB

As has been pointed out above in the categorization of metrics there

are metrics which certainly could have been recommended if being

available in the Internet Standard MIB. To facilitate for such

metrics to be part of the set of recommended metrics it will be

necessary to specify a subtree in the Internet Standard MIB

containing variables judged necessary in the scope of performing

operational statistics.

8.3 Detailed Resource Utilization Statistics

One area of interest not covered in the above description of metrics

and presentation formats is to present statistics on detailed views

of the traffic flows. Such views could include statistics on a per

application basis and on a per protocol basis. Today such metrics are

not part of the Internet Standard MIB. Tools like the NSF NNStat are

being used to gather information of this kind. A possible way to

achieve such data could be to define a NNStat MIB or to include such

variables in the above suggested operational statistics MIB subtree.

APPENDIX A

Some formulas for statistical aggregation

The following naming conventions are being used:

For poll values poll(n)_j

n = Polling or aggregation period

j = Entry number

poll(900)_j is thus the 15 minute total value.

For peak values peak(n,m)_j

n = Period over which the peak is calculated

m = The peak period length

j = Entry number

peak(3600,900)_j is thus the maximum 15 minute period calculated

over 1 hour.

Assume a polling over 24 hour period giving 1440 logged entries.

=========================

Without any aggregation we have

poll(60)_1

......

poll(60)_1439

========================

15 minute aggregation will give 96 entries of total values

poll(900)_1

....

poll(900)_96

j=(n+14)

poll(900)_k = SUM poll(60)_j n=1,16,31,...1425

j=n k=1,2,....,96

There will also be 96 1 minute peak values.

j=(n+14)

peak(900,60)_k = MAX poll(60)_000j n=1,16,31,....,1425

j=n k=1,2,....,96

=======================

Next aggregation step is from 15 minute to 1 hour.

This gives 24 totals

j=(n+3)

poll(3600)_k = SUM poll(900)_j n=1,5,9,.....,93

j=n k=1,2,....,24

and 24 1 minute peaks calculated over each hour.

j=(n+3)

peak (3600,60)_k = MAX peak(900,60)_j n=1,5,9,.....,93

j=n k=1,2,....24

and finally 24 15 minute peaks calculated over each hour.

j=(n+3)

peak (3600,900) = MAX poll(900)_j n=1,5,9,.....,93

j=n

===================

Next aggregation step is from 1 hour to 24 hour

For each day with 1440 entries as above this will give

j=(n+23)

poll(86400)_k = SUM poll(3600)_j n=1,25,51,.......

j=n k=1,2............

j=(n+23)

peak(86400,60)_k = MAX peak(3600,60)_j n=1,25,51,....

j=n k=1,2.........

which gives the busiest 1 minute period over 24 hours.

j=(n+23)

peak(86400,900)_k = MAX peak(3600,900)_j n=1,25,51,....

j=n k=1,2,........

which gives the busiest 15 minute period over 24 hours.

j=(n+23)

peak(86400,3600)_k = MAX poll(3600)_j n=1,25,51,....

j=n k=1,2,........

which gives the busiest 1 hour period over 24 hours.

===================

There will probably be a difference between the three peak values in

the final 24 hour aggregation. Smaller peak period will give higher

values than longer, i.e., if adjusted to be numerically comparable.

poll(86400)/3600 < peak(86400,3600) < peak(86400,900)*4

< peak(86400,60)*60

APPENDIX B

An example

Assuming below data storage:

BEGIN_DEVICE

....

UNI-1,total,ifInOctet, 60, 60,ifOutOctet, 60, 60

BRD-1,total,ifInNUcastPkts,300,300,ifOutNUcastPkts,300,300

....

which gives

BEGIN_DATA

19920730000000,UNI-1,60, val1-1,val2-1

19920730000060,UNI-1,60, val1-2,val2-2

19920730000120,UNI-1,60, val1-3,val2-3

19920730000180,UNI-1,60, val1-4,val2-4

19920730000240,UNI-1,60, val1-5,val2-5

19920730000300,UNI-1,60, val1-6,val2-6

19920730000300,BRD-1,300, val1-7,val2-7

19920730000360,UNI-1,60, val1-8,val2-8

...

Aggregation to 15 minutes gives

BEGIN_DEVICE

....

UNI-1,total,ifInOctet, 60,900,ifOutOctet, 60,900

BRD-1,total,ifInNUcastPkts,300,900,ifOutNUcastPkts,300,900

UNI-2,peak, ifInOctet, 60,900,ifOutOctet, 60,900

BRD-2,peak, ifInNUcastPkts,300,900,ifOutNUcastPkts,300,900

....

where UNI-1 is the 15 minute total

BRD-1 is the 15 minute total

UNI-2 is the 1 minute peak over 15 minute (peak = peak(1))

BRD-2 is the 5 minute peak over 15 minute (peak = peak(1))

which gives

BEGIN_DATA

19920730000900,UNI-1,900, tot-val1,tot-val2

19920730000900,BRD-1,900, tot-val1,tot-val2

19920730000900,UNI-2,900, peak(1)-val1,peak(1)-val2

19920730000900,BRD-2,900, peak(1)-val1,peak(1)-val2

19920730001800,UNI-1,900, tot-val1,tot-val2

19920730001800,BRD-1,900, tot-val1,tot-val2

19920730001800,UNI-2,900, peak(1)-val1,peak(1)-val2

19920730001800,BRD-2,900, peak(1)-val1,peak(1)-val2

......

Next aggregation step to 1 hour generates:

BEGIN_DEVICE

....

UNI-1,total,ifInOctet, 60,3600,ifOutOctet, 60,3600

BRD-1,total,ifInNUcastPkts,300,3600,ifOutNUcastPkts,300,3600

UNI-2,peak,ifInOctet, 60,3600,ifOutOctet, 60,3600

BRD-2,peak,ifInNUcastPkts, 300, 900,ifOutNUcastPkts,300, 900

UNI-3,peak,ifInOctet, 900,3600,ifOutOctet, 900,3600

BRD-3,peak,ifInNUcastPkts, 900,3600,ifOutNUcastPkts,900,3600

where

UNI-1 is the one hour total

BRD-1 is the one hour total

UNI-2 is the 1 minute peak over 1 hour (peak of peak = peak(2))

BRD-2 is the 5 minute peak over 1 hour (peak of peak = peak(2))

UNI-3 is the 15 minute peak over 1 hour (peak = peak(1))

BRD-3 is the 15 minute peak over 1 hour (peak = peak(1))

which gives

BEGIN_DATA

19920730003600,UNI-1,3600, tot-val1,tot-val2

19920730003600,BRD-1,3600, tot-val1,tot-val2

19920730003600,UNI-2,3600, peak(2)-val1,peak(2)-val2

19920730003600,BRD-2,3600, peak(2)-val1,peak(2)-val2

19920730003600,UNI-3,3600, peak(1)-val1,peak(1)-val2

19920730003600,BRD-3,3600, peak(1)-val1,peak(1)-val2

19920730007200,UNI-1,3600, tot-val1,tot-val2

19920730007200,BRD-1,3600, tot-val1,tot-val2

19920730007200,UNI-2,3600, peak(2)-val1,peak(2)-val2

19920730007200,BRD-2,3600, peak(2)-val1,peak(2)-val2

19920730007200,UNI-3,3600, peak(1)-val1,peak(1)-val2

19920730007200,BRD-3,3600, peak(1)-val1,peak(1)-val2

......

Finally aggregation step to 1 day generates:

UNI-1,total,ifInOctet,60,86400,ifOutOctet,60,86400

BRD-1,total,ifInNUcastPkts,300,86400,ifOutNUcastPkts,300,86400

UNI-2,peak,ifInOctet,60,86400,ifOutOctet,60,86400

BRD-2,peak,ifInNUcastPkts,300,900,ifOutNUcastPkts,300,900

UNI-3,peak,ifInOctet,900,86400,ifOutOctet,900,86400

BRD-3,peak,ifInNUcastPkts,900,86400,ifOutNUcastPkts,900,86400

UNI-4,peak,ifInOctet,3600,86400,ifOutOctet,3600,86400

BRD-4,peak,ifInNUcastPkts,3600,86400,ifOutNUcastPkts,3600,86400

where

UNI-1 is the 24 hour total

BRD-1 is the 24 hour total

UNI-2 is the 1 minute peak over 24 hour

(peak of peak of peak = peak(3))

UNI-3 is the 15 minute peak over 24 hour (peak of peak = peak(2))

UNI-4 is the 1 hour peak over 24 hour (peak = peak(1))

BRD-2 is the 5 minute peak over 24 hour

(peak of peak of peak = peak(3))

BRD-3 is the 15 minute peak over 24 hour (peak of peak = peak(2))

BRD-4 is the 1 hour peak over 24 hour (peak = peak(1))

which gives

BEGIN_DATA

19920730086400,UNI-1,86400, tot-val1,tot-val2

19920730086400,BRD-1,86400, tot-val1,tot-val2

19920730086400,UNI-2,86400, peak(3)-val1,peak(3)-val2

19920730086400,BRD-2,86400, peak(3)-val1,peak(3)-val2

19920730086400,UNI-3,86400, peak(2)-val1,peak(2)-val2

19920730086400,BRD-3,86400, peak(2)-val1,peak(2)-val2

19920730086400,UNI-4,86400, peak(1)-val1,peak(1)-val2

19920730086400,BRD-4,86400, peak(1)-val1,peak(1)-val2

19920730172800,UNI-1,86400, tot-val1,tot-val2

19920730172800,BRD-1,86400, tot-val1,tot-val2

19920730172800,UNI-2,86400, peak(3)-val1,peak(3)-val2

19920730172800,BRD-2,86400, peak(3)-val1,peak(3)-val2

19920730172800,UNI-3,86400, peak(2)-val1,peak(2)-val2

19920730172800,UNI-3,86400, peak(2)-val1,peak(2)-val2

19920730172800,UNI-4,86400, peak(1)-val1,peak(1)-val2

19920730172800,BRD-4,86400, peak(1)-val1,peak(1)-val2

......

Security Considerations

Security issues are discussed in Section 2.4.

Author's Address

Bernhard Stockman

NORDUnet/SUNET NOC

Royal Institute of Technology

Drottning Kristinas Vag 37B

S-100 44 Stockholm, Sweden

Phone: +46 8 790-6519

Fax : +46 8 241-179

Email: boss@sunet.se

 
 
 
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