Provided by: rrdtool_1.7.2-4.1ubuntu3_amd64 bug

NAME

       rrdcreate - Set up a new Round Robin Database

SYNOPSIS

       rrdtool create filename [--start|-b start time] [--step|-s step] [--template|-t template-file]
       [--source|-r source-file] [--no-overwrite|-O] [--daemon|-d address] [DS:ds-name[=mapped-ds-name[[source-
       index]]]:DST:dst arguments] [RRA:CF:cf arguments]

DESCRIPTION

       The create function of RRDtool lets you set up new Round Robin Database (RRD) files.  The file is created
       at its final, full size and filled with *UNKNOWN* data, unless one or more source RRD files have been
       specified and they hold suitable data to "pre-fill" the new RRD file.

   filename
       The name of the RRD you want to create. RRD files should end with the extension .rrd. However, RRDtool
       will accept any filename.

   --start|-b start time (default: now - 10s)
       Specifies the time in seconds since 1970-01-01 UTC when the first value should be added to the RRD.
       RRDtool will not accept any data timed before or at the time specified.

       See also "AT-STYLE TIME SPECIFICATION" in rrdfetch for other ways to specify time.

       If one or more source files is used to pre-fill the new RRD, the --start option may be omitted. In that
       case, the latest update time among all source files will be used as the last update time of the new RRD
       file, effectively setting the start time.

   --step|-s step (default: 300 seconds)
       Specifies the base interval in seconds with which data will be fed into the RRD.  A scaling factor may be
       present as a suffix to the integer; see "STEP, HEARTBEAT, and Rows As Durations".

   --no-overwrite|-O
       Do not clobber an existing file of the same name.

   --daemon|-d address
       Address of the rrdcached daemon.  For a list of accepted formats, see the -l option in the rrdcached
       manual.

        rrdtool create --daemon unix:/var/run/rrdcached.sock /var/lib/rrd/foo.rrd I<other options>

   [--template|-t template-file]
       Specifies a template RRD file to take step, DS and RRA definitions from. This allows one to base the
       structure of a new file on some existing file. The data of the template file is NOT used for pre-filling,
       but it is possible to specify the same file as a source file (see below).

       Additional DS and RRA definitions are permitted, and will be added to those taken from the template.

   --source|-r source-file
       One or more source RRD files may be named on the command line. Data from these source files will be used
       to prefill the created RRD file. The output file and one source file may refer to the same file name.
       This will effectively replace the source file with the new RRD file. While there is the danger to loose
       the source file because it gets replaced, there is no danger that the source and the new file may be
       "garbled" together at any point in time, because the new file will always be created as a temporary file
       first and will only be moved to its final destination once it has been written in its entirety.

       Prefilling is done by matching up DS names, RRAs and consolidation functions and choosing the best
       available data resolution when doing so. Prefilling may not be mathematically correct in all cases (e.g.
       if resolutions have to change due to changed stepping of the target RRD and old and new resolutions do
       not match up with old/new bin boundaries in RRAs).

       In other words: A best effort is made to preserve data during prefilling.  Also, pre-filling of RRAs may
       only be possible for certain kinds of DS types. Prefilling may also have strange effects on Holt-Winters
       forecasting RRAs. In other words: there is no guarantee for data-correctness.

       When "pre-filling" a RRD file, the structure of the new file must be specified as usual using DS and RRA
       specifications as outlined below. Data will be taken from source files based on DS names and types and in
       the order the source files are specified in. Data sources with the same name from different source files
       will be combined to form a new data source. Generally, for any point in time the new RRD file will cover
       after its creation, data from only one source file will have been used for pre-filling. However, data
       from multiple sources may be combined if it refers to different times or an earlier named source file
       holds unknown data for a time where a later one holds known data.

       If this automatic data selection is not desired, the DS syntax allows one to specify a mapping of target
       and source data sources for prefilling. This syntax allows one to rename data sources and to restrict
       prefilling for a DS to only use data from a single source file.

       Prefilling currently only works reliably for RRAs using one of the classic consolidation functions, that
       is one of: AVERAGE, MIN, MAX, LAST. It might also currently have problems with COMPUTE data sources.

       Note that the act of prefilling during create is similar to a lot of the operations available via the
       tune command, but using create syntax.

   DS:ds-name[=mapped-ds-name[[source-index]]]:DST:dst arguments
       A single RRD can accept input from several data sources (DS), for example incoming and outgoing traffic
       on a specific communication line. With the DS configuration option you must define some basic properties
       of each data source you want to store in the RRD.

       ds-name is the name you will use to reference this particular data source from an RRD. A ds-name must be
       1 to 19 characters long in the characters [a-zA-Z0-9_].

       DST defines the Data Source Type. The remaining arguments of a data source entry depend on the data
       source type. For GAUGE, COUNTER, DERIVE, DCOUNTER, DDERIVE and ABSOLUTE the format for a data source
       entry is:

       DS:ds-name:{GAUGE | COUNTER | DERIVE | DCOUNTER | DDERIVE | ABSOLUTE}:heartbeat:min:max

       For COMPUTE data sources, the format is:

       DS:ds-name:COMPUTE:rpn-expression

       In order to decide which data source type to use, review the definitions that follow. Also consult the
       section on "HOW TO MEASURE" for further insight.

       GAUGE
           is for things like temperatures or number of people in a room or the value of a RedHat share.

       COUNTER
           is  for  continuous  incrementing  counters like the ifInOctets counter in a router. The COUNTER data
           source assumes that the counter never  decreases,  except  when  a  counter  overflows.   The  update
           function  takes  the  overflow  into  account.   The counter is stored as a per-second rate. When the
           counter overflows, RRDtool checks if the overflow happened at the 32bit  or  64bit  border  and  acts
           accordingly by adding an appropriate value to the result.

       DCOUNTER
           the  same  as COUNTER, but for quantities expressed as double-precision floating point number.  Could
           be used to track quantities that increment by non-integer numbers, i.e. number of seconds  that  some
           routine  has  taken  to  run,  total  weight  processed  by  some technology equipment etc.  The only
           substantial difference is that DCOUNTER can either be upward counting or downward counting,  but  not
           both  at  the same time.  The current direction is detected automatically on the second non-undefined
           counter update and any further change in the direction is considered a reset.  The new  direction  is
           determined and locked in by the second update after reset and its difference to the value at reset.

       DERIVE
           will  store  the  derivative of the line going from the last to the current value of the data source.
           This can be useful for gauges, for example, to measure the rate of people entering or leaving a room.
           Internally, derive works exactly like COUNTER but without overflow checks. So if  your  counter  does
           not reset at 32 or 64 bit you might want to use DERIVE and combine it with a MIN value of 0.

       DDERIVE
           the same as DERIVE, but for quantities expressed as double-precision floating point number.

           NOTE on COUNTER vs DERIVE

           by Don Baarda <don.baarda@baesystems.com>

           If you cannot tolerate ever mistaking the occasional counter reset for a legitimate counter wrap, and
           would  prefer  "Unknowns"  for all legitimate counter wraps and resets, always use DERIVE with min=0.
           Otherwise, using COUNTER with a suitable max will return correct values for  all  legitimate  counter
           wraps,  mark  some  counter resets as "Unknown", but can mistake some counter resets for a legitimate
           counter wrap.

           For a 5 minute step and 32-bit counter, the probability of mistaking a counter reset for a legitimate
           wrap is arguably about 0.8% per 1Mbps of maximum bandwidth. Note that this equates to 80% for 100Mbps
           interfaces, so for high bandwidth interfaces and a 32bit  counter,  DERIVE  with  min=0  is  probably
           preferable.  If  you  are  using  a  64bit  counter,  just  about  any max setting will eliminate the
           possibility of mistaking a reset for a counter wrap.

       ABSOLUTE
           is for counters which get reset upon reading. This is used for fast counters which tend to  overflow.
           So  instead  of reading them normally you reset them after every read to make sure you have a maximum
           time available before the next overflow. Another usage  is  for  things  you  count  like  number  of
           messages since the last update.

       COMPUTE
           is  for storing the result of a formula applied to other data sources in the RRD. This data source is
           not supplied a value on update, but rather its Primary Data Points (PDPs) are computed from the  PDPs
           of the data sources according to the rpn-expression that defines the formula. Consolidation functions
           are  then applied normally to the PDPs of the COMPUTE data source (that is the rpn-expression is only
           applied to generate PDPs). In database software, such data sets  are  referred  to  as  "virtual"  or
           "computed" columns.

       heartbeat  defines  the  maximum  number of seconds that may pass between two updates of this data source
       before the value of the data source is assumed to be *UNKNOWN*.

       min and max define the expected range values for data supplied by a data source. If min  and/or  max  are
       specified  any  value outside the defined range will be regarded as *UNKNOWN*. If you do not know or care
       about min and max, set them to U for unknown. Note that min and max always refer to the processed  values
       of  the  DS.  For a traffic-COUNTER type DS this would be the maximum and minimum data-rate expected from
       the device.

       If information on minimal/maximal expected values is available, always set the min and/or max properties.
       This will help RRDtool in doing a simple sanity check on the data supplied when running update.

       rpn-expression defines the formula used to compute the PDPs of a COMPUTE  data  source  from  other  data
       sources  in the same <RRD>. It is similar to defining a CDEF argument for the graph command. Please refer
       to that manual page for a list and description of RPN operations supported. For COMPUTE data sources, the
       following RPN operations are not supported: COUNT, PREV, TIME, and LTIME. In addition,  in  defining  the
       RPN  expression,  the COMPUTE data source may only refer to the names of data source listed previously in
       the create command. This is similar to the restriction that CDEFs must  refer  only  to  DEFs  and  CDEFs
       previously defined in the same graph command.

       When  pre-filling  the  new  RRD  file  using  one  or more source RRDs, the DS specification may hold an
       optional mapping after the DS name. This takes the form of an equal sign followed by a mapped-to DS  name
       and an optional source index enclosed in square brackets.

       For example, the DS

        DS:a=b[2]:GAUGE:120:0:U

       specifies  that  the DS named a should be pre-filled from the DS named b in the second listed source file
       (source indices are 1-based).

   RRA:CF:cf arguments
       The purpose of an RRD is to store data in the round robin archives (RRA). An archive consists of a number
       of data values or statistics for each of the defined data-sources (DS) and is defined with an RRA line.

       When data is entered into an RRD, it is first fit into time slots of  the  length  defined  with  the  -s
       option, thus becoming a primary data point.

       The  data  is  also  processed  with  the  consolidation  function (CF) of the archive. There are several
       consolidation functions that consolidate primary data points via an  aggregate  function:  AVERAGE,  MIN,
       MAX, LAST.

       AVERAGE
           the average of the data points is stored.

       MIN the smallest of the data points is stored.

       MAX the largest of the data points is stored.

       LAST
           the last data points is used.

       Note  that  data  aggregation inevitably leads to loss of precision and information. The trick is to pick
       the aggregate function such that the interesting properties of your data is kept across  the  aggregation
       process.

       The format of RRA line for these consolidation functions is:

       RRA:{AVERAGE | MIN | MAX | LAST}:xff:steps:rows

       xff  The  xfiles  factor defines what part of a consolidation interval may be made up from *UNKNOWN* data
       while the consolidated value is still regarded as known. It is given as the ratio  of  allowed  *UNKNOWN*
       PDPs to the number of PDPs in the interval. Thus, it ranges from 0 to 1 (exclusive).

       steps  defines  how  many  of these primary data points are used to build a consolidated data point which
       then goes into the archive.  See also "STEP, HEARTBEAT, and Rows As Durations".

       rows defines how many generations of data values are kept in an RRA.  Obviously, this has to  be  greater
       than zero.  See also "STEP, HEARTBEAT, and Rows As Durations".

Aberrant Behavior Detection with Holt-Winters Forecasting

       In  addition  to the aggregate functions, there are a set of specialized functions that enable RRDtool to
       provide data smoothing (via the Holt-Winters forecasting algorithm), confidence bands, and  the  flagging
       aberrant behavior in the data source time series:

       •   RRA:HWPREDICT:rows:alpha:beta:seasonal period[:rra-num]

       •   RRA:MHWPREDICT:rows:alpha:beta:seasonal period[:rra-num]

       •   RRA:SEASONAL:seasonal period:gamma:rra-num[:smoothing-window=fraction]

       •   RRA:DEVSEASONAL:seasonal period:gamma:rra-num[:smoothing-window=fraction]

       •   RRA:DEVPREDICT:rows:rra-numRRA:FAILURES:rows:threshold:window length:rra-num

       These  RRAs  differ  from  the  true consolidation functions in several ways.  First, each of the RRAs is
       updated once for every primary data point.  Second, these RRAs are interdependent. To generate  real-time
       confidence bounds, a matched set of SEASONAL, DEVSEASONAL, DEVPREDICT, and either HWPREDICT or MHWPREDICT
       must  exist.  Generating smoothed values of the primary data points requires a SEASONAL RRA and either an
       HWPREDICT or MHWPREDICT RRA. Aberrant behavior detection requires FAILURES,  DEVSEASONAL,  SEASONAL,  and
       either HWPREDICT or MHWPREDICT.

       The  predicted,  or  smoothed,  values  are  stored  in  the  HWPREDICT  or MHWPREDICT RRA. HWPREDICT and
       MHWPREDICT are actually two variations on the Holt-Winters method. They are interchangeable. Both attempt
       to decompose data into three components: a baseline, a trend, and a seasonal coefficient.  HWPREDICT adds
       its seasonal coefficient to the baseline to form a prediction, whereas MHWPREDICT multiplies its seasonal
       coefficient by the baseline to form a prediction. The difference is noticeable when the baseline  changes
       significantly  in  the course of a season; HWPREDICT will predict the seasonality to stay constant as the
       baseline changes, but MHWPREDICT will predict the seasonality to grow or  shrink  in  proportion  to  the
       baseline.  The  proper  choice  of method depends on the thing being modeled. For simplicity, the rest of
       this discussion will refer to HWPREDICT, but MHWPREDICT may be substituted in its place.

       The predicted deviations are stored in DEVPREDICT (think a standard deviation  which  can  be  scaled  to
       yield a confidence band). The FAILURES RRA stores binary indicators. A 1 marks the indexed observation as
       failure;  that is, the number of confidence bounds violations in the preceding window of observations met
       or exceeded a specified threshold. An example of using these RRAs to graph confidence bounds and failures
       appears in rrdgraph.

       The SEASONAL and DEVSEASONAL RRAs store  the  seasonal  coefficients  for  the  Holt-Winters  forecasting
       algorithm  and  the  seasonal deviations, respectively.  There is one entry per observation time point in
       the seasonal cycle. For example, if primary data points are generated every five minutes and the seasonal
       cycle is 1 day, both SEASONAL and DEVSEASONAL will have 288 rows.

       In order to simplify the creation for the novice user, in addition to supporting explicit creation of the
       HWPREDICT, SEASONAL, DEVPREDICT, DEVSEASONAL, and FAILURES RRAs,  the  RRDtool  create  command  supports
       implicit  creation  of the other four when HWPREDICT is specified alone and the final argument rra-num is
       omitted.

       rows specifies the length of the  RRA  prior  to  wrap  around.  Remember  that  there  is  a  one-to-one
       correspondence  between  primary data points and entries in these RRAs. For the HWPREDICT CF, rows should
       be larger than the seasonal period. If the DEVPREDICT RRA is implicitly created, the  default  number  of
       rows  is the same as the HWPREDICT rows argument. If the FAILURES RRA is implicitly created, rows will be
       set to the seasonal period argument of the HWPREDICT RRA.  Of  course,  the  RRDtool  resize  command  is
       available  if these defaults are not sufficient and the creator wishes to avoid explicit creations of the
       other specialized function RRAs.

       seasonal period specifies the number of primary  data  points  in  a  seasonal  cycle.  If  SEASONAL  and
       DEVSEASONAL  are  implicitly  created,  this  argument  for  those RRAs is set automatically to the value
       specified by HWPREDICT. If they are explicitly created, the creator should verify that all three seasonal
       period arguments agree.

       alpha is the  adaption  parameter  of  the  intercept  (or  baseline)  coefficient  in  the  Holt-Winters
       forecasting algorithm. See rrdtool for a description of this algorithm. alpha must lie between 0 and 1. A
       value  closer  to  1  means that more recent observations carry greater weight in predicting the baseline
       component of the forecast. A value closer to  0  means  that  past  history  carries  greater  weight  in
       predicting the baseline component.

       beta is the adaption parameter of the slope (or linear trend) coefficient in the Holt-Winters forecasting
       algorithm.  beta  must lie between 0 and 1 and plays the same role as alpha with respect to the predicted
       linear trend.

       gamma is the adaption parameter of the seasonal coefficients in the  Holt-Winters  forecasting  algorithm
       (HWPREDICT)  or the adaption parameter in the exponential smoothing update of the seasonal deviations. It
       must lie between 0 and 1. If the SEASONAL and DEVSEASONAL RRAs are created  implicitly,  they  will  both
       have  the  same  value for gamma: the value specified for the HWPREDICT alpha argument. Note that because
       there is one seasonal coefficient (or deviation) for each time  point  during  the  seasonal  cycle,  the
       adaptation  rate  is much slower than the baseline. Each seasonal coefficient is only updated (or adapts)
       when the observed value occurs at the offset in the seasonal cycle corresponding to that coefficient.

       If SEASONAL and DEVSEASONAL RRAs are created explicitly, gamma need not be the same for both.  Note  that
       gamma can also be changed via the RRDtool tune command.

       smoothing-window  specifies  the  fraction  of  a  season  that  should be averaged around each point. By
       default, the value of smoothing-window is 0.05, which means each value in SEASONAL and  DEVSEASONAL  will
       be  occasionally  replaced  by  averaging  it with its (seasonal period*0.05) nearest neighbors.  Setting
       smoothing-window to zero will disable the running-average smoother altogether.

       rra-num provides the links between related RRAs. If HWPREDICT is specified alone and the other  RRAs  are
       created  implicitly,  then there is no need to worry about this argument. If RRAs are created explicitly,
       then carefully pay attention to this argument. For each RRA which includes  this  argument,  there  is  a
       dependency  between  that  RRA and another RRA. The rra-num argument is the 1-based index in the order of
       RRA creation (that is, the order they appear in the create command).  The  dependent  RRA  for  each  RRA
       requiring the rra-num argument is listed here:

       •   HWPREDICT rra-num is the index of the SEASONAL RRA.

       •   SEASONAL rra-num is the index of the HWPREDICT RRA.

       •   DEVPREDICT rra-num is the index of the DEVSEASONAL RRA.

       •   DEVSEASONAL rra-num is the index of the HWPREDICT RRA.

       •   FAILURES rra-num is the index of the DEVSEASONAL RRA.

       threshold  is  the  minimum number of violations (observed values outside the confidence bounds) within a
       window that constitutes a failure. If the FAILURES RRA is implicitly created, the default value is 7.

       window length is the number of time points in the window. Specify an integer greater than or equal to the
       threshold and less than or equal to 28.  The time interval this window represents depends on the interval
       between primary data points. If the FAILURES RRA is implicitly created, the default value is 9.

STEP, HEARTBEAT, and Rows As Durations

       Traditionally RRDtool specified PDP intervals in seconds, and most other values as either seconds or  PDP
       counts.  This made the specification for databases rather opaque; for example

        rrdtool create power.rrd \
          --start now-2h --step 1 \
          DS:watts:GAUGE:300:0:24000 \
          RRA:AVERAGE:0.5:1:864000 \
          RRA:AVERAGE:0.5:60:129600 \
          RRA:AVERAGE:0.5:3600:13392 \
          RRA:AVERAGE:0.5:86400:3660

       creates  a database of power values collected once per second, with a five minute (300 second) heartbeat,
       and four RRAs: ten days of one second, 90 days of one minute, 18 months of one hour, and ten years of one
       day averages.

       Step, heartbeat, and PDP counts and rows may also be specified as durations, which are positive  integers
       with  a single-character suffix that specifies a scaling factor.  See "rrd_scaled_duration" in librrd for
       scale factors of the supported suffixes: "s" (seconds), "m"  (minutes),  "h"  (hours),  "d"  (days),  "w"
       (weeks), "M" (months), and "y" (years).

       Scaled  step  and  heartbeat  values  (which  are natively durations in seconds) are used directly, while
       consolidation function row arguments are divided by their step to produce the number of rows.

       With this feature the same specification as above can be written as:

        rrdtool create power.rrd \
          --start now-2h --step 1s \
          DS:watts:GAUGE:5m:0:24000 \
          RRA:AVERAGE:0.5:1s:10d \
          RRA:AVERAGE:0.5:1m:90d \
          RRA:AVERAGE:0.5:1h:18M \
          RRA:AVERAGE:0.5:1d:10y

The HEARTBEAT and the STEP

       Here is an explanation by Don Baarda on the inner workings of RRDtool.  It may help you to sort  out  why
       all this *UNKNOWN* data is popping up in your databases:

       RRDtool  gets  fed samples/updates at arbitrary times. From these it builds Primary Data Points (PDPs) on
       every "step" interval. The PDPs are then accumulated into the RRAs.

       The "heartbeat" defines the maximum acceptable interval between samples/updates. If the interval  between
       samples  is  less  than "heartbeat", then an average rate is calculated and applied for that interval. If
       the interval between samples is  longer  than  "heartbeat",  then  that  entire  interval  is  considered
       "unknown".  Note  that there are other things that can make a sample interval "unknown", such as the rate
       exceeding limits, or a sample that was explicitly marked as unknown.

       The known rates during a PDP's "step" interval are used to calculate an average rate for that PDP. If the
       total "unknown" time accounts for more than half the "step", the entire PDP is marked as "unknown".  This
       means  that a mixture of known and "unknown" sample times in a single PDP "step" may or may not add up to
       enough "known" time to warrant a known PDP.

       The "heartbeat" can be short (unusual) or long (typical) relative to the "step" interval between PDPs.  A
       short  "heartbeat"  means  you  require  multiple samples per PDP, and if you don't get them mark the PDP
       unknown. A long heartbeat can span multiple "steps", which means it is acceptable to have  multiple  PDPs
       calculated  from  a  single  sample.  An  extreme  example  of  this might be a "step" of 5 minutes and a
       "heartbeat" of one day, in which case a single sample every day will result in  all  the  PDPs  for  that
       entire day period being set to the same average rate. -- Don Baarda <don.baarda@baesystems.com>

              time|
              axis|
        begin__|00|
               |01|
              u|02|----* sample1, restart "hb"-timer
              u|03|   /
              u|04|  /
              u|05| /
              u|06|/     "hbt" expired
              u|07|
               |08|----* sample2, restart "hb"
               |09|   /
               |10|  /
              u|11|----* sample3, restart "hb"
              u|12|   /
              u|13|  /
        step1_u|14| /
              u|15|/     "swt" expired
              u|16|
               |17|----* sample4, restart "hb", create "pdp" for step1 =
               |18|   /  = unknown due to 10 "u" labeled secs > 0.5 * step
               |19|  /
               |20| /
               |21|----* sample5, restart "hb"
               |22|   /
               |23|  /
               |24|----* sample6, restart "hb"
               |25|   /
               |26|  /
               |27|----* sample7, restart "hb"
        step2__|28|   /
               |22|  /
               |23|----* sample8, restart "hb", create "pdp" for step1, create "cdp"
               |24|   /
               |25|  /

       graphics by vladimir.lavrov@desy.de.

HOW TO MEASURE

       Here are a few hints on how to measure:

       Temperature
           Usually  you  have  some  type  of meter you can read to get the temperature.  The temperature is not
           really connected with a time. The only connection is that  the  temperature  reading  happened  at  a
           certain  time. You can use the GAUGE data source type for this. RRDtool will then record your reading
           together with the time.

       Mail Messages
           Assume you have a method to count the number of messages transported by your mail server in a certain
           amount of time, giving you data like '5 messages in the last 65 seconds'. If you look at the count of
           5 like an ABSOLUTE data type you can simply update the RRD with the number 5 and the end time of your
           monitoring period. RRDtool will then record the number of messages per second. If at some later stage
           you want to know the number of messages transported in a day, you can get the  average  messages  per
           second  from RRDtool for the day in question and multiply this number with the number of seconds in a
           day. Because all math is run with Doubles, the precision should be acceptable.

       It's always a Rate
           RRDtool stores rates in amount/second for COUNTER, DERIVE, DCOUNTER, DDERIVE and ABSOLUTE data.  When
           you plot the data, you will get on the y axis amount/second which you might be tempted to convert  to
           an  absolute  amount  by  multiplying  by the delta-time between the points. RRDtool plots continuous
           data, and as such is not appropriate for plotting absolute amounts as for example "total bytes"  sent
           and  received in a router. What you probably want is plot rates that you can scale to bytes/hour, for
           example, or plot absolute amounts with another tool that draws bar-plots,  where  the  delta-time  is
           clear  on  the plot for each point (such that when you read the graph you see for example GB on the y
           axis, days on the x axis and one bar for each day).

EXAMPLE

        rrdtool create temperature.rrd --step 300 \
         DS:temp:GAUGE:600:-273:5000 \
         RRA:AVERAGE:0.5:1:1200 \
         RRA:MIN:0.5:12:2400 \
         RRA:MAX:0.5:12:2400 \
         RRA:AVERAGE:0.5:12:2400

       This sets up an RRD called temperature.rrd which accepts one temperature value every 300 seconds.  If  no
       new  data  is  supplied  for  more  than  600  seconds,  the  temperature becomes *UNKNOWN*.  The minimum
       acceptable value is -273 and the maximum is 5'000.

       A few archive areas are also defined. The first stores the temperatures supplied for 100 hours  (1'200  *
       300  seconds  =  100 hours). The second RRA stores the minimum temperature recorded over every hour (12 *
       300 seconds = 1 hour), for 100 days (2'400 hours). The third and the fourth RRA's do  the  same  for  the
       maximum and average temperature, respectively.

EXAMPLE 2

        rrdtool create monitor.rrd --step 300        \
          DS:ifOutOctets:COUNTER:1800:0:4294967295   \
          RRA:AVERAGE:0.5:1:2016                     \
          RRA:HWPREDICT:1440:0.1:0.0035:288

       This  example  is  a  monitor of a router interface. The first RRA tracks the traffic flow in octets; the
       second RRA generates the specialized functions RRAs for aberrant behavior detection. Note that  the  rra-
       num argument of HWPREDICT is missing, so the other RRAs will implicitly be created with default parameter
       values.  In  this example, the forecasting algorithm baseline adapts quickly; in fact the most recent one
       hour of observations (each at 5 minute intervals) accounts for 75% of the baseline prediction. The linear
       trend forecast adapts much more slowly. Observations made during the last day (at  288  observations  per
       day)  account for only 65% of the predicted linear trend. Note: these computations rely on an exponential
       smoothing formula described in the LISA 2000 paper.

       The seasonal cycle is one day (288 data points at  300  second  intervals),  and  the  seasonal  adaption
       parameter  will  be  set  to  0.1.  The  RRD  file will store 5 days (1'440 data points) of forecasts and
       deviation predictions before wrap around. The file will store 1 day (a seasonal cycle) of 0-1  indicators
       in the FAILURES RRA.

       The  same  RRD  file  and  RRAs  are  created  with  the  following command, which explicitly creates all
       specialized function RRAs using "STEP, HEARTBEAT, and Rows As Durations".

        rrdtool create monitor.rrd --step 5m \
          DS:ifOutOctets:COUNTER:30m:0:4294967295 \
          RRA:AVERAGE:0.5:1:2016 \
          RRA:HWPREDICT:5d:0.1:0.0035:1d:3 \
          RRA:SEASONAL:1d:0.1:2 \
          RRA:DEVSEASONAL:1d:0.1:2 \
          RRA:DEVPREDICT:5d:5 \
          RRA:FAILURES:1d:7:9:5

       Of course, explicit creation need not replicate implicit create, a number of arguments could be changed.

EXAMPLE 3

        rrdtool create proxy.rrd --step 300 \
          DS:Requests:DERIVE:1800:0:U  \
          DS:Duration:DERIVE:1800:0:U  \
          DS:AvgReqDur:COMPUTE:Duration,Requests,0,EQ,1,Requests,IF,/ \
          RRA:AVERAGE:0.5:1:2016

       This example is monitoring the average request  duration  during  each  300  sec  interval  for  requests
       processed  by  a web proxy during the interval.  In this case, the proxy exposes two counters, the number
       of requests processed since boot and the total cumulative duration of  all  processed  requests.  Clearly
       these  counters  both  have  some rollover point, but using the DERIVE data source also handles the reset
       that occurs when the web proxy is stopped and restarted.

       In the RRD, the first data source stores the requests per second rate during  the  interval.  The  second
       data  source  stores the total duration of all requests processed during the interval divided by 300. The
       COMPUTE data source divides each PDP of the AccumDuration by the corresponding PDP of  TotalRequests  and
       stores the average request duration. The remainder of the RPN expression handles the divide by zero case.

SECURITY

       Note  that  new  rrd files will have the permission 0644 regardless of your umask setting. If a file with
       the same name previously exists, its permission settings will be copied to the new file.

AUTHORS

       Tobias Oetiker <tobi@oetiker.ch>, Peter Stamfest <peter@stamfest.at>

1.7.2                                              2024-03-31                                       RRDCREATE(1)