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CSOUND

RANDOM

This chapter is in three parts. Part I provides a general introduction to the concepts behind random numbers and how to work with them in Csound. Part II focusses on a more mathematical approach. Part III introduces a number of opcodes for generating random numbers, functions and distributions and demonstrates their use in musical examples.

I. GENERAL INTRODUCTION

Random is Different

The term random derives from the idea of a horse that is running so fast it becomes 'out of control' or 'beyond predictability'.1  Yet there are different ways in which to run fast and to be out of control; therefore there are different types of randomness.

We can divide types of randomness into two classes. The first contains random events that are independent of previous events. The most common example for this is throwing a die. Even if you have just thrown three '1's in a row, when thrown again, a '1' has the same probability as before (and as any other number). The second class of random number involves random events which depend in some way upon previous numbers or states. Examples here are Markov chains and random walks.

 

The use of randomness in electronic music is widespread. In this chapter, we shall try to explain how the different random horses are moving, and how you can create and modify them on your own. Moreover, there are many pre-built random opcodes in Csound which can be used out of the box (see the overview in the Csound Manual). The final section of this chapter introduces some musically interesting applications of them.

Random Without History

A computer is typically only capable of computation. Computations are deterministic processes: one input will always generate the same output, but a random event is not predictable. To generate something which looks like a random event, the computer uses a pseudo-random generator.

The pseudo-random generator takes one number as input, and generates another number as output. This output is then the input for the next generation. For a huge amount of numbers, they look as if they are randomly distributed, although everything depends on the first input: the seed. For one given seed, the next values can be predicted.

Uniform Distribution

The output of a classical pseudo-random generator is uniformly distributed: each value in a given range has the same likelihood of occurence. The first example shows the influence of a fixed seed (using the same chain of numbers and beginning from the same location in the chain each time) in contrast to a seed being taken from the system clock (the usual way of imitating unpredictability). The first three groups of four notes will always be the same because of the use of the same seed whereas the last three groups should always have a different pitch.

   EXAMPLE 01D01_different_seed.csd

<CsoundSynthesizer>
<CsOptions>
-d -odac -m0
</CsOptions>
<CsInstruments>
sr = 44100
ksmps = 32
nchnls = 2
0dbfs = 1

instr generate
 ;get seed: 0 = seeding from system clock
 ;          otherwise = fixed seed
           seed       p4
 ;generate four notes to be played from subinstrument
iNoteCount =          0
 until iNoteCount == 4 do
iFreq      random     400, 800
           event_i    "i", "play", iNoteCount, 2, iFreq
iNoteCount +=         1 ;increase note count
 enduntil
endin

instr play
iFreq      =          p4
           print      iFreq
aImp       mpulse     .5, p3
aMode      mode       aImp, iFreq, 1000
aEnv       linen      aMode, 0.01, p3, p3-0.01
           outs       aEnv, aEnv
endin
</CsInstruments>
<CsScore>
;repeat three times with fixed seed
r 3
i "generate" 0 2 1
;repeat three times with seed from the system clock
r 3
i "generate" 0 1 0
</CsScore>
</CsoundSynthesizer>
;example by joachim heintz

Note that a pseudo-random generator will repeat its series of numbers after as many steps as are given by the size of the generator. If a 16-bit number is generated, the series will be repeated after 65536 steps. If you listen carefully to the following example, you will hear a repetition in the structure of the white noise (which is the result of uniformly distributed amplitudes) after about 1.5 seconds in the first note.2  In the second note, there is no perceivable repetition as the random generator now works with a 31-bit number.

   EXAMPLE 01D02_white_noises.csd 

<CsoundSynthesizer>
<CsOptions>
-d -odac
</CsOptions>
<CsInstruments>
sr = 44100
ksmps = 32
nchnls = 2
0dbfs = 1

instr white_noise
iBit       =          p4 ;0 = 16 bit, 1 = 31 bit
 ;input of rand: amplitude, fixed seed (0.5), bit size
aNoise     rand       .1, 0.5, iBit
           outs       aNoise, aNoise
endin

</CsInstruments>
<CsScore>
i "white_noise" 0 10 0
i "white_noise" 11 10 1
</CsScore>
</CsoundSynthesizer>
;example by joachim heintz

Two more general notes about this:

  1. The way to set the seed differs from opcode to opcode. There are several opcodes such as rand featured above, which offer the choice of setting a seed as input parameter. For others, such as the frequently used random family, the seed can only be set globally via the seed statement. This is usually done in the header so a typical statement would be:
    <CsInstruments>
    sr = 44100
    ksmps = 32
    nchnls = 2
    0dbfs = 1
    seed = 0 ;seeding from current time
    

    ...

  2. Random number generation in Csound can be done at any rate. The type of the output variable tells you whether you are generating random values at i-, k- or a-rate. Many random opcodes can work at all these rates, for instance random:
    1) ires  random  imin, imax
    2) kres  random  kmin, kmax
    3) ares  random  kmin, kmax
    
    In the first case, a random value is generated only once, when an instrument is called, at initialisation. The generated value is then stored in the variable ires. In the second case, a random value is generated at each k-cycle, and stored in kres. In the third case, in each k-cycle as many random values are stored as the audio vector has in size, and stored in the variable ares. Have a look at example 03A12_Random_at_ika.csd to see this at work. Chapter 03A tries to explain the background of the different rates in depth, and how to work with them.  

Other Distributions

The uniform distribution is the one each computer can output via its pseudo-random generator. But there are many situations you will not want a uniformly distributed random, but any other shape. Some of these shapes are quite common, but you can actually build your own shapes quite easily in Csound. The next examples demonstrate how to do this. They are based on the chapter in Dodge/Jerse3  which also served as a model for many random number generator opcodes in Csound.4

Linear

A linear distribution means that either lower or higher values in a given range are more likely:


 


To get this behaviour, two uniform random numbers are generated, and the lower is taken for the first shape. If the second shape with the precedence of higher values is needed, the higher one of the two generated numbers is taken. The next example implements these random generators as User Defined Opcodes. First we hear a uniform distribution, then a linear distribution with precedence of lower pitches (but longer durations), at least a linear distribution with precedence of higher pitches (but shorter durations).

   EXAMPLE 01D03_linrand.csd  

<CsoundSynthesizer>
<CsOptions>
-d -odac -m0
</CsOptions>
<CsInstruments>
sr = 44100
ksmps = 32
nchnls = 2
0dbfs = 1
seed 0

;****DEFINE OPCODES FOR LINEAR DISTRIBUTION****

opcode linrnd_low, i, ii
 ;linear random with precedence of lower values
iMin, iMax xin
 ;generate two random values with the random opcode
iOne       random     iMin, iMax
iTwo       random     iMin, iMax
 ;compare and get the lower one
iRnd       =          iOne < iTwo ? iOne : iTwo
           xout       iRnd
endop

opcode linrnd_high, i, ii
 ;linear random with precedence of higher values
iMin, iMax xin
 ;generate two random values with the random opcode
iOne       random     iMin, iMax
iTwo       random     iMin, iMax
 ;compare and get the higher one
iRnd       =          iOne > iTwo ? iOne : iTwo
           xout       iRnd
endop


;****INSTRUMENTS FOR THE DIFFERENT DISTRIBUTIONS****

instr notes_uniform
           prints     "... instr notes_uniform playing:\n"
           prints     "EQUAL LIKELINESS OF ALL PITCHES AND DURATIONS\n"
 ;how many notes to be played
iHowMany   =          p4
 ;trigger as many instances of instr play as needed
iThisNote  =          0
iStart     =          0
 until iThisNote == iHowMany do
iMidiPch   random     36, 84 ;midi note
iDur       random     .5, 1 ;duration
           event_i    "i", "play", iStart, iDur, int(iMidiPch)
iStart     +=         iDur ;increase start
iThisNote  +=         1 ;increase counter
 enduntil
 ;reset the duration of this instr to make all events happen
p3         =          iStart + 2
 ;trigger next instrument two seconds after the last note
           event_i    "i", "notes_linrnd_low", p3, 1, iHowMany
endin

instr notes_linrnd_low
           prints     "... instr notes_linrnd_low playing:\n"
           prints     "LOWER NOTES AND LONGER DURATIONS PREFERRED\n"
iHowMany   =          p4
iThisNote  =          0
iStart     =          0
 until iThisNote == iHowMany do
iMidiPch   linrnd_low 36, 84 ;lower pitches preferred
iDur       linrnd_high .5, 1 ;longer durations preferred
           event_i    "i", "play", iStart, iDur, int(iMidiPch)
iStart     +=         iDur
iThisNote  +=         1
 enduntil
 ;reset the duration of this instr to make all events happen
p3         =          iStart + 2
 ;trigger next instrument two seconds after the last note
           event_i    "i", "notes_linrnd_high", p3, 1, iHowMany
endin

instr notes_linrnd_high
           prints     "... instr notes_linrnd_high playing:\n"
           prints     "HIGHER NOTES AND SHORTER DURATIONS PREFERRED\n"
iHowMany   =          p4
iThisNote  =          0
iStart     =          0
 until iThisNote == iHowMany do
iMidiPch   linrnd_high 36, 84 ;higher pitches preferred
iDur       linrnd_low .3, 1.2 ;shorter durations preferred
           event_i    "i", "play", iStart, iDur, int(iMidiPch)
iStart     +=         iDur
iThisNote  +=         1
 enduntil
 ;reset the duration of this instr to make all events happen
p3         =          iStart + 2
 ;call instr to exit csound
           event_i    "i", "exit", p3+1, 1
endin


;****INSTRUMENTS TO PLAY THE SOUNDS AND TO EXIT CSOUND****

instr play
 ;increase duration in random range
iDur       random     p3, p3*1.5
p3         =          iDur
 ;get midi note and convert to frequency
iMidiNote  =          p4
iFreq      cpsmidinn  iMidiNote
 ;generate note with karplus-strong algorithm
aPluck     pluck      .2, iFreq, iFreq, 0, 1
aPluck     linen      aPluck, 0, p3, p3
 ;filter
aFilter    mode       aPluck, iFreq, .1
 ;mix aPluck and aFilter according to MidiNote
 ;(high notes will be filtered more)
aMix       ntrpol     aPluck, aFilter, iMidiNote, 36, 84
 ;panning also according to MidiNote
 ;(low = left, high = right)
iPan       =          (iMidiNote-36) / 48
aL, aR     pan2       aMix, iPan
           outs       aL, aR
endin

instr exit
           exitnow
endin

</CsInstruments>
<CsScore>
i "notes_uniform" 0 1 23 ;set number of notes per instr here
;instruments linrnd_low and linrnd_high are triggered automatically
e 99999 ;make possible to perform long (exit will be automatically)
</CsScore>
</CsoundSynthesizer>
;example by joachim heintz

Triangular

In a triangular distribution the values in the middle of the given range are more likely than those at the borders. The probability transition between the middle and the extrema are linear:


The algorithm for getting this distribution is very simple as well. Generate two uniform random numbers and take the mean of them. The next example shows the difference between uniform and triangular distribution in the same environment as the previous example.

   EXAMPLE 01D04_trirand.csd   

<CsoundSynthesizer>
<CsOptions>
-d -odac -m0
</CsOptions>
<CsInstruments>
sr = 44100
ksmps = 32
nchnls = 2
0dbfs = 1
seed 0

;****UDO FOR TRIANGULAR DISTRIBUTION****
opcode trirnd, i, ii
iMin, iMax xin
 ;generate two random values with the random opcode
iOne       random     iMin, iMax
iTwo       random     iMin, iMax
 ;get the mean and output
iRnd       =          (iOne+iTwo) / 2
           xout       iRnd
endop

;****INSTRUMENTS FOR UNIFORM AND TRIANGULAR DISTRIBUTION****

instr notes_uniform
           prints     "... instr notes_uniform playing:\n"
           prints     "EQUAL LIKELINESS OF ALL PITCHES AND DURATIONS\n"
 ;how many notes to be played
iHowMany   =          p4
 ;trigger as many instances of instr play as needed
iThisNote  =          0
iStart     =          0
 until iThisNote == iHowMany do
iMidiPch   random     36, 84 ;midi note
iDur       random     .25, 1.75 ;duration
           event_i    "i", "play", iStart, iDur, int(iMidiPch)
iStart     +=         iDur ;increase start
iThisNote  +=         1 ;increase counter
 enduntil
 ;reset the duration of this instr to make all events happen
p3         =          iStart + 2
 ;trigger next instrument two seconds after the last note
           event_i    "i", "notes_trirnd", p3, 1, iHowMany
endin

instr notes_trirnd
           prints     "... instr notes_trirnd playing:\n"
           prints     "MEDIUM NOTES AND DURATIONS PREFERRED\n"
iHowMany   =          p4
iThisNote  =          0
iStart     =          0
 until iThisNote == iHowMany do
iMidiPch   trirnd     36, 84 ;medium pitches preferred
iDur       trirnd     .25, 1.75 ;medium durations preferred
           event_i    "i", "play", iStart, iDur, int(iMidiPch)
iStart     +=         iDur
iThisNote  +=         1
 enduntil
 ;reset the duration of this instr to make all events happen
p3         =          iStart + 2
 ;call instr to exit csound
           event_i    "i", "exit", p3+1, 1
endin


;****INSTRUMENTS TO PLAY THE SOUNDS AND EXIT CSOUND****

instr play
 ;increase duration in random range
iDur       random     p3, p3*1.5
p3         =          iDur
 ;get midi note and convert to frequency
iMidiNote  =          p4
iFreq      cpsmidinn  iMidiNote
 ;generate note with karplus-strong algorithm
aPluck     pluck      .2, iFreq, iFreq, 0, 1
aPluck     linen      aPluck, 0, p3, p3
 ;filter
aFilter    mode       aPluck, iFreq, .1
 ;mix aPluck and aFilter according to MidiNote
 ;(high notes will be filtered more)
aMix       ntrpol     aPluck, aFilter, iMidiNote, 36, 84
 ;panning also according to MidiNote
 ;(low = left, high = right)
iPan       =          (iMidiNote-36) / 48
aL, aR     pan2       aMix, iPan
           outs       aL, aR
endin

instr exit
           exitnow
endin

</CsInstruments>
<CsScore>
i "notes_uniform" 0 1 23 ;set number of notes per instr here
;instr trirnd will be triggered automatically
e 99999 ;make possible to perform long (exit will be automatically)
</CsScore>
</CsoundSynthesizer>
;example by joachim heintz

More Linear and Triangular

Having written this with some very simple UDOs, it is easy to emphasise the probability peaks of the distributions by generating more than two random numbers. If you generate three numbers and choose the smallest of them, you will get many more numbers near the minimum in total for the linear distribution. If you generate three random numbers and take the mean of them, you will end up with more numbers near the middle in total for the triangular distribution.

If we want to write UDOs with a flexible number of sub-generated numbers, we have to write the code in a slightly different way. Instead of having one line of code for each random generator, we will use a loop, which calls the generator as many times as we wish to have units. A variable will store the results of the accumulation. Re-writing the above code for the UDO trirnd would lead to this formulation:

opcode trirnd, i, ii
iMin, iMax xin
 ;set a counter and a maximum count
iCount     =          0
iMaxCount  =          2
 ;set the accumulator to zero as initial value
iAccum     =          0
 ;perform loop and accumulate
 until iCount == iMaxCount do
iUniRnd    random     iMin, iMax
iAccum     +=         iUniRnd
iCount     +=         1
 enduntil
 ;get the mean and output
iRnd       =          iAccum / 2
           xout       iRnd
endop

To get this completely flexible, you only have to get iMaxCount as input argument. The code for the linear distribution UDOs is quite similar. -- The next example shows these steps:

  1. Uniform distribution.
  2. Linear distribution with the precedence of lower pitches and longer durations, generated with two units.
  3. The same but with four units.
  4. Linear distribution with the precedence of higher pitches and shorter durations, generated with two units.
  5. The same but with four units.
  6. Triangular distribution with the precedence of both medium pitches and durations, generated with two units.
  7. The same but with six units.

Rather than using different instruments for the different distributions, the next example combines all possibilities in one single instrument. Inside the loop which generates as many notes as desired by the iHowMany argument, an if-branch calculates the pitch and duration of one note depending on the distribution type and the number of sub-units used. The whole sequence (which type first, which next, etc) is stored in the global array giSequence. Each instance of instrument "notes" increases the pointer giSeqIndx, so that for the next run the next element in the array is being read. If the pointer has reached the end of the array, the instrument which exits Csound is called instead of a new instance of "notes".

       EXAMPLE 01D05_more_lin_tri_units.csd    

    <CsoundSynthesizer>
    <CsOptions>
    -d -odac -m0
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    nchnls = 2
    0dbfs = 1
    seed 0
    
    ;****SEQUENCE OF UNITS AS ARRAY****/
    giSequence[] array 0, 1.2, 1.4, 2.2, 2.4, 3.2, 3.6
    giSeqIndx = 0 ;startindex
    
    ;****UDO DEFINITIONS****
    opcode linrnd_low, i, iii
     ;linear random with precedence of lower values
    iMin, iMax, iMaxCount xin
     ;set counter and initial (absurd) result
    iCount     =          0
    iRnd       =          iMax
     ;loop and reset iRnd
     until iCount == iMaxCount do
    iUniRnd    random     iMin, iMax
    iRnd       =          iUniRnd < iRnd ? iUniRnd : iRnd
    iCount     +=         1
     enduntil
               xout       iRnd
    endop
    
    opcode linrnd_high, i, iii
     ;linear random with precedence of higher values
    iMin, iMax, iMaxCount xin
     ;set counter and initial (absurd) result
    iCount     =          0
    iRnd       =          iMin
     ;loop and reset iRnd
     until iCount == iMaxCount do
    iUniRnd    random     iMin, iMax
    iRnd       =          iUniRnd > iRnd ? iUniRnd : iRnd
    iCount     +=         1
     enduntil
               xout       iRnd
    endop
    
    opcode trirnd, i, iii
    iMin, iMax, iMaxCount xin
     ;set a counter and accumulator
    iCount     =          0
    iAccum     =          0
     ;perform loop and accumulate
     until iCount == iMaxCount do
    iUniRnd    random     iMin, iMax
    iAccum     +=         iUniRnd
    iCount     +=         1
     enduntil
     ;get the mean and output
    iRnd       =          iAccum / iMaxCount
               xout       iRnd
    endop
    
    ;****ONE INSTRUMENT TO PERFORM ALL DISTRIBUTIONS****
    ;0 = uniform, 1 = linrnd_low, 2 = linrnd_high, 3 = trirnd
    ;the fractional part denotes the number of units, e.g.
    ;3.4 = triangular distribution with four sub-units
    
    instr notes
     ;how many notes to be played
    iHowMany   =          p4
     ;by which distribution with how many units
    iWhich     =          giSequence[giSeqIndx]
    iDistrib   =          int(iWhich)
    iUnits     =          round(frac(iWhich) * 10)
     ;set min and max duration
    iMinDur    =          .1
    iMaxDur    =          2
     ;set min and max pitch
    iMinPch    =          36
    iMaxPch    =          84
    
     ;trigger as many instances of instr play as needed
    iThisNote  =          0
    iStart     =          0
    iPrint     =          1
    
     ;for each note to be played
     until iThisNote == iHowMany do
    
      ;calculate iMidiPch and iDur depending on type
      if iDistrib == 0 then
               printf_i   "%s", iPrint, "... uniform distribution:\n"
               printf_i   "%s", iPrint, "EQUAL LIKELIHOOD OF ALL PITCHES AND DURATIONS\n"
    iMidiPch   random     iMinPch, iMaxPch ;midi note
    iDur       random     iMinDur, iMaxDur ;duration
      elseif iDistrib == 1 then
               printf_i    "... linear low distribution with %d units:\n", iPrint, iUnits
               printf_i    "%s", iPrint, "LOWER NOTES AND LONGER DURATIONS PREFERRED\n"
    iMidiPch   linrnd_low iMinPch, iMaxPch, iUnits
    iDur       linrnd_high iMinDur, iMaxDur, iUnits
      elseif iDistrib == 2 then
               printf_i    "... linear high distribution with %d units:\n", iPrint, iUnits
               printf_i    "%s", iPrint, "HIGHER NOTES AND SHORTER DURATIONS PREFERRED\n"
    iMidiPch   linrnd_high iMinPch, iMaxPch, iUnits
    iDur       linrnd_low iMinDur, iMaxDur, iUnits
      else
               printf_i    "... triangular distribution with %d units:\n", iPrint, iUnits
               printf_i    "%s", iPrint, "MEDIUM NOTES AND DURATIONS PREFERRED\n"
    iMidiPch   trirnd     iMinPch, iMaxPch, iUnits
    iDur       trirnd     iMinDur, iMaxDur, iUnits
      endif
    
     ;call subinstrument to play note
               event_i    "i", "play", iStart, iDur, int(iMidiPch)
    
     ;increase start tim and counter
    iStart     +=         iDur
    iThisNote  +=         1
     ;avoid continuous printing
    iPrint     =          0
     enduntil
    
     ;reset the duration of this instr to make all events happen
    p3         =          iStart + 2
    
     ;increase index for sequence
    giSeqIndx  +=         1
     ;call instr again if sequence has not been ended
     if giSeqIndx < lenarray(giSequence) then
               event_i    "i", "notes", p3, 1, iHowMany
     ;or exit
     else
               event_i    "i", "exit", p3, 1
     endif
    endin
    
    
    ;****INSTRUMENTS TO PLAY THE SOUNDS AND EXIT CSOUND****
    instr play
     ;increase duration in random range
    iDur       random     p3, p3*1.5
    p3         =          iDur
     ;get midi note and convert to frequency
    iMidiNote  =          p4
    iFreq      cpsmidinn  iMidiNote
     ;generate note with karplus-strong algorithm
    aPluck     pluck      .2, iFreq, iFreq, 0, 1
    aPluck     linen      aPluck, 0, p3, p3
     ;filter
    aFilter    mode       aPluck, iFreq, .1
     ;mix aPluck and aFilter according to MidiNote
     ;(high notes will be filtered more)
    aMix       ntrpol     aPluck, aFilter, iMidiNote, 36, 84
     ;panning also according to MidiNote
     ;(low = left, high = right)
    iPan       =          (iMidiNote-36) / 48
    aL, aR     pan2       aMix, iPan
               outs       aL, aR
    endin
    
    instr exit
               exitnow
    endin
    
    </CsInstruments>
    <CsScore>
    i "notes" 0 1 23 ;set number of notes per instr here
    e 99999 ;make possible to perform long (exit will be automatically)
    </CsScore>
    </CsoundSynthesizer>
    ;example by joachim heintz
    

    With this method we can build probability distributions which are very similar to exponential or gaussian distributions.5  Their shape can easily be formed by the number of sub-units used.

    Scalings

    Random is a complex and sensible context. There are so many ways to let the horse go, run, or dance -- the conditions you set for this 'way of moving' are much more important than the fact that one single move is not predictable. What are the conditions of this randomness?

    • Which Way. This is what has already been described: random with or without history, which probability distribution, etc. 
    • Which Range. This is a decision which comes from the composer/programmer. In the example above I have chosen pitches from Midi Note 36 to 84 (C2 to C6), and durations between 0.1 and 2 seconds. Imagine how it would have been sounded with pitches from 60 to 67, and durations from 0.9 to 1.1 seconds, or from 0.1 to 0.2 seconds. There is no range which is 'correct', everything depends on the musical idea.
    • Which Development. Usually the boundaries will change in the run of a piece. The pitch range may move from low to high, or from narrow to wide; the durations may become shorter, etc.
    • Which Scalings. Let us think about this more in detail.

    In the example above we used two implicit scalings. The pitches have been scaled to the keys of a piano or keyboard. Why? We do not play piano here obviously ... -- What other possibilities might have been instead? One would be: no scaling at all. This is the easiest way to go -- whether it is really the best, or simple laziness, can only be decided by the composer or the listener.

    Instead of using the equal tempered chromatic scale, or no scale at all, you can use any other ways of selecting or quantising pitches. Be it any which has been, or is still, used in any part of the world, or be it your own invention, by whatever fantasy or invention or system.

    As regards the durations, the example above has shown no scaling at all. This was definitely laziness...

    The next example is essentially the same as the previous one, but it uses a pitch scale which represents the overtone scale, starting at the second partial extending upwards to the 32nd partial. This scale is written into an array by a statement in instrument 0. The durations have fixed possible values which are written into an array (from the longest to the shortest) by hand. The values in both arrays are then called according to their position in the array.

       EXAMPLE 01D06_scalings.csd     

    <CsoundSynthesizer>
    <CsOptions>
    -d -odac -m0
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    nchnls = 2
    0dbfs = 1
    seed 0
    
    
    ;****POSSIBLE DURATIONS AS ARRAY****
    giDurs[]   array      3/2, 1, 2/3, 1/2, 1/3, 1/4
    giLenDurs  lenarray   giDurs
    
    ;****POSSIBLE PITCHES AS ARRAY****
     ;initialize array with 31 steps
    giScale[]  init       31
    giLenScale lenarray   giScale
     ;iterate to fill from 65 hz onwards
    iStart     =          65
    iDenom     =          3 ;start with 3/2
    iCnt       =          0
     until iCnt = giLenScale do
    giScale[iCnt] =       iStart
    iStart     =          iStart * iDenom / (iDenom-1)
    iDenom     +=         1 ;next proportion is 4/3 etc
    iCnt       +=         1
     enduntil
    
    ;****SEQUENCE OF UNITS AS ARRAY****
    giSequence[] array    0, 1.2, 1.4, 2.2, 2.4, 3.2, 3.6
    giSeqIndx  =          0 ;startindex
    
    ;****UDO DEFINITIONS****
    opcode linrnd_low, i, iii
     ;linear random with precedence of lower values
    iMin, iMax, iMaxCount xin
     ;set counter and initial (absurd) result
    iCount     =          0
    iRnd       =          iMax
     ;loop and reset iRnd
     until iCount == iMaxCount do
    iUniRnd    random     iMin, iMax
    iRnd       =          iUniRnd < iRnd ? iUniRnd : iRnd
    iCount += 1
    enduntil
               xout       iRnd
    endop
    
    opcode linrnd_high, i, iii
     ;linear random with precedence of higher values
    iMin, iMax, iMaxCount xin
     ;set counter and initial (absurd) result
    iCount     =          0
    iRnd       =          iMin
     ;loop and reset iRnd
     until iCount == iMaxCount do
    iUniRnd    random     iMin, iMax
    iRnd       =          iUniRnd > iRnd ? iUniRnd : iRnd
    iCount += 1
    enduntil
               xout       iRnd
    endop
    
    opcode trirnd, i, iii
    iMin, iMax, iMaxCount xin
     ;set a counter and accumulator
    iCount     =          0
    iAccum     =          0
     ;perform loop and accumulate
     until iCount == iMaxCount do
    iUniRnd    random     iMin, iMax
    iAccum += iUniRnd
    iCount += 1
    enduntil
     ;get the mean and output
    iRnd       =          iAccum / iMaxCount
               xout       iRnd
    endop
    
    ;****ONE INSTRUMENT TO PERFORM ALL DISTRIBUTIONS****
    ;0 = uniform, 1 = linrnd_low, 2 = linrnd_high, 3 = trirnd
    ;the fractional part denotes the number of units, e.g.
    ;3.4 = triangular distribution with four sub-units
    
    instr notes
     ;how many notes to be played
    iHowMany   =          p4
     ;by which distribution with how many units
    iWhich     =          giSequence[giSeqIndx]
    iDistrib   =          int(iWhich)
    iUnits     =          round(frac(iWhich) * 10)
    
     ;trigger as many instances of instr play as needed
    iThisNote  =          0
    iStart     =          0
    iPrint     =          1
    
     ;for each note to be played
     until iThisNote == iHowMany do
    
      ;calculate iMidiPch and iDur depending on type
      if iDistrib == 0 then
               printf_i   "%s", iPrint, "... uniform distribution:\n"
               printf_i   "%s", iPrint, "EQUAL LIKELINESS OF ALL PITCHES AND DURATIONS\n"
    iScaleIndx random     0, giLenScale-.0001 ;midi note
    iDurIndx   random     0, giLenDurs-.0001 ;duration
      elseif iDistrib == 1 then
               printf_i   "... linear low distribution with %d units:\n", iPrint, iUnits
               printf_i   "%s", iPrint, "LOWER NOTES AND LONGER DURATIONS PREFERRED\n"
    iScaleIndx linrnd_low 0, giLenScale-.0001, iUnits
    iDurIndx   linrnd_low 0, giLenDurs-.0001, iUnits
      elseif iDistrib == 2 then
               printf_i   "... linear high distribution with %d units:\n", iPrint, iUnits
               printf_i   "%s", iPrint, "HIGHER NOTES AND SHORTER DURATIONS PREFERRED\n"
    iScaleIndx linrnd_high 0, giLenScale-.0001, iUnits
    iDurIndx   linrnd_high 0, giLenDurs-.0001, iUnits
               else
               printf_i   "... triangular distribution with %d units:\n", iPrint, iUnits
               printf_i   "%s", iPrint, "MEDIUM NOTES AND DURATIONS PREFERRED\n"
    iScaleIndx trirnd     0, giLenScale-.0001, iUnits
    iDurIndx   trirnd     0, giLenDurs-.0001, iUnits
      endif
    
     ;call subinstrument to play note
    iDur       =          giDurs[int(iDurIndx)]
    iPch       =          giScale[int(iScaleIndx)]
               event_i    "i", "play", iStart, iDur, iPch
    
     ;increase start time and counter
    iStart     +=         iDur
    iThisNote  +=         1
     ;avoid continuous printing
    iPrint     =          0
    enduntil
    
     ;reset the duration of this instr to make all events happen
    p3         =          iStart + 2
    
     ;increase index for sequence
    giSeqIndx += 1
     ;call instr again if sequence has not been ended
     if giSeqIndx < lenarray(giSequence) then
               event_i    "i", "notes", p3, 1, iHowMany
     ;or exit
               else
               event_i    "i", "exit", p3, 1
     endif
    endin
    
    
    ;****INSTRUMENTS TO PLAY THE SOUNDS AND EXIT CSOUND****
    instr play
     ;increase duration in random range
    iDur       random     p3*2, p3*5
    p3         =          iDur
     ;get frequency
    iFreq      =          p4
     ;generate note with karplus-strong algorithm
    aPluck     pluck      .2, iFreq, iFreq, 0, 1
    aPluck     linen      aPluck, 0, p3, p3
     ;filter
    aFilter    mode       aPluck, iFreq, .1
     ;mix aPluck and aFilter according to freq
     ;(high notes will be filtered more)
    aMix       ntrpol     aPluck, aFilter, iFreq, 65, 65*16
     ;panning also according to freq
     ;(low = left, high = right)
    iPan       =          (iFreq-65) / (65*16)
    aL, aR     pan2       aMix, iPan
               outs       aL, aR
    endin
    
    instr exit
               exitnow
    endin
    </CsInstruments>
    <CsScore>
    i "notes" 0 1 23 ;set number of notes per instr here
    e 99999 ;make possible to perform long (exit will be automatically)
    </CsScore>
    </CsoundSynthesizer>
    ;example by joachim heintz
    

    Random With History

    There are many ways a current value in a random number progression can influence the next. Two of them are used frequently. A Markov chain is based on a number of possible states, and defines a different probability for each of these states. A random walk looks at the last state as a position in a range or field, and allows only certain deviations from this position.

    Markov Chains

    A typical case for a Markov chain in music is a sequence of certain pitches or notes. For each note, the probability of the following note is written in a table like this:

     

    This means: the probability that element a is repeated, is 0.2; the probability that b follows a is 0.5; the probability that c follows a is 0.3. The sum of all probabilities must, by convention, add up to 1. The following example shows the basic algorithm which evaluates the first line of the Markov table above, in the case, the previous element has been 'a'.

       EXAMPLE 01D07_markov_basics.csd      

    <CsoundSynthesizer>
    <CsOptions>
    -ndm0
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    0dbfs = 1
    nchnls = 1
    seed 0
    
    instr 1
    iLine[]    array      .2, .5, .3
    iVal       random     0, 1
    iAccum     =          iLine[0]
    iIndex     =          0
     until iAccum >= iVal do
    iIndex     +=         1
    iAccum     +=         iLine[iIndex]
     enduntil
               printf_i   "Random number = %.3f, next element = %c!\n", 1, iVal, iIndex+97
    endin
    </CsInstruments>
    <CsScore>
    r 10
    i 1 0 0
    </CsScore>
    </CsoundSynthesizer>
    ;example by joachim heintz
    

    The probabilities are 0.2 0.5 0.3. First a uniformly distributed random number between 0 and 1 is generated. An acculumator is set to the first element of the line (here 0.2). It is interrogated as to whether it is larger than the random number. If so then the index is returned, if not, the second element is added (0.2+0.5=0.7), and the process is repeated, until the accumulator is greater or equal the random value. The output of the example should show something like this:

    Random number = 0.850, next element = c!
    Random number = 0.010, next element = a!
    Random number = 0.805, next element = c!
    Random number = 0.696, next element = b!
    Random number = 0.626, next element = b!
    Random number = 0.476, next element = b!
    Random number = 0.420, next element = b!
    Random number = 0.627, next element = b!
    Random number = 0.065, next element = a!
    Random number = 0.782, next element = c!

    The next example puts this algorithm in an User Defined Opcode. Its input is a Markov table as a two-dimensional array, and the previous line as index (starting with 0). Its output is the next element, also as index. -- There are two Markov chains in this example: seven pitches, and three durations. Both are defined in two-dimensional arrays: giProbNotes and giProbDurs. Both Markov chains are running independently from each other.

       EXAMPLE 01D08_markov_music.csd

    <CsoundSynthesizer>
    <CsOptions>
    -dnm128 -odac
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    0dbfs = 1
    nchnls = 2
    seed 0
    
    ;****USER DEFINED OPCODES FOR MARKOV CHAINS****
      opcode Markov, i, i[][]i
    iMarkovTable[][], iPrevEl xin
    iRandom    random     0, 1
    iNextEl    =          0
    iAccum     =          iMarkovTable[iPrevEl][iNextEl]
     until iAccum >= iRandom do
    iNextEl    +=         1
    iAccum     +=         iMarkovTable[iPrevEl][iNextEl]
     enduntil
               xout       iNextEl
      endop
      opcode Markovk, k, k[][]k
    kMarkovTable[][], kPrevEl xin
    kRandom    random     0, 1
    kNextEl    =          0
    kAccum     =          kMarkovTable[kPrevEl][kNextEl]
     until kAccum >= kRandom do
    kNextEl    +=         1
    kAccum     +=         kMarkovTable[kPrevEl][kNextEl]
     enduntil
               xout       kNextEl
      endop
    
    ;****DEFINITIONS FOR NOTES****
     ;notes as proportions and a base frequency
    giNotes[]  array      1, 9/8, 6/5, 5/4, 4/3, 3/2, 5/3
    giBasFreq  =          330
     ;probability of notes as markov matrix:
      ;first -> only to third and fourth
      ;second -> anywhere without self
      ;third -> strong probability for repetitions
      ;fourth -> idem
      ;fifth -> anywhere without third and fourth
      ;sixth -> mostly to seventh
      ;seventh -> mostly to sixth
    giProbNotes[][] init  7, 7
    giProbNotes array     0.0, 0.0, 0.5, 0.5, 0.0, 0.0, 0.0,
                          0.2, 0.0, 0.2, 0.2, 0.2, 0.1, 0.1,
                          0.1, 0.1, 0.5, 0.1, 0.1, 0.1, 0.0,
                          0.0, 0.1, 0.1, 0.5, 0.1, 0.1, 0.1,
                          0.2, 0.2, 0.0, 0.0, 0.2, 0.2, 0.2,
                          0.1, 0.1, 0.0, 0.0, 0.1, 0.1, 0.6,
                          0.1, 0.1, 0.0, 0.0, 0.1, 0.6, 0.1
    
    ;****DEFINITIONS FOR DURATIONS****
     ;possible durations
    gkDurs[]    array     1, 1/2, 1/3
     ;probability of durations as markov matrix:
      ;first -> anything
      ;second -> mostly self
      ;third -> mostly second
    gkProbDurs[][] init   3, 3
    gkProbDurs array      1/3, 1/3, 1/3,
                          0.2, 0.6, 0.3,
                          0.1, 0.5, 0.4
    
    ;****SET FIRST NOTE AND DURATION FOR MARKOV PROCESS****
    giPrevNote init       1
    gkPrevDur  init       1
    
    ;****INSTRUMENT FOR DURATIONS****
      instr trigger_note
    kTrig      metro      1/gkDurs[gkPrevDur]
     if kTrig == 1 then
               event      "i", "select_note", 0, 1
    gkPrevDur  Markovk    gkProbDurs, gkPrevDur
     endif
      endin
    
    ;****INSTRUMENT FOR PITCHES****
      instr select_note
     ;choose next note according to markov matrix and previous note
     ;and write it to the global variable for (next) previous note
    giPrevNote Markov     giProbNotes, giPrevNote
     ;call instr to play this note
               event_i    "i", "play_note", 0, 2, giPrevNote
     ;turn off this instrument
               turnoff
      endin
    
    ;****INSTRUMENT TO PERFORM ONE NOTE****
      instr play_note
     ;get note as index in ginotes array and calculate frequency
    iNote      =          p4
    iFreq      =          giBasFreq * giNotes[iNote]
     ;random choice for mode filter quality and panning
    iQ         random     10, 200
    iPan       random     0.1, .9
     ;generate tone and put out
    aImp       mpulse     1, p3
    aOut       mode       aImp, iFreq, iQ
    aL, aR     pan2       aOut, iPan
               outs       aL, aR
      endin
    
    </CsInstruments>
    <CsScore>
    i "trigger_note" 0 100
    </CsScore>
    </CsoundSynthesizer>
    ;example by joachim heintz 
    

     

    Random Walk

    In the context of movement between random values, 'walk' can be thought of as the opposite of 'jump'. If you jump within the boundaries A and B, you can end up anywhere between these boundaries, but if you walk between A and B you will be limited by the extent of your step - each step applies a deviation to the previous one. If the deviation range is slightly more positive (say from -0.1 to +0.2), the general trajectory of your walk will be in the positive direction (but individual steps will not necessarily be in the positive direction). If the deviation range is weighted negative (say from -0.2 to 0.1), then the walk will express a generally negative trajectory.

    One way of implementing a random walk will be to take the current state, derive a random deviation, and derive the next state by adding this deviation to the current state. The next example shows two ways of doing this.

    The pitch random walk starts at pitch 8 in octave notation. The general pitch deviation gkPitchDev is set to 0.2, so that the next pitch could be between 7.8 and 8.2. But there is also a pitch direction gkPitchDir which is set to 0.1 as initial value. This means that the upper limit of the next random pitch is 8.3 instead of 8.2, so that the pitch will move upwards in a greater number of steps. When the upper limit giHighestPitch has been crossed, the gkPitchDir variable changes from +0.1 to -0.1, so after a number of steps, the pitch will have become lower. Whenever such a direction change happens, the console reports this with a message printed to the terminal.

    The density of the notes is defined as notes per second, and is applied as frequency to the metro opcode in instrument 'walk'. The lowest possible density giLowestDens is set to 1, the highest to 8 notes per second, and the first density giStartDens is set to 3. The possible random deviation for the next density is defined in a range from zero to one: zero means no deviation at all, one means that the next density can alter the current density in a range from half the current value to twice the current value. For instance, if the current density is 4, for gkDensDev=1 you would get a density between 2 and 8. The direction of the densities gkDensDir in this random walk follows the same range 0..1. Assumed you have no deviation of densities at all (gkDensDev=0), gkDensDir=0 will produce ticks in always the same speed, whilst gkDensDir=1 will produce a very rapid increase in speed. Similar to the pitch walk, the direction parameter changes from plus to minus if the upper border has crossed, and vice versa.

       EXAMPLE 01D09_random_walk.csd

    <CsoundSynthesizer>
    <CsOptions>
    -dnm128 -odac
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    0dbfs = 1
    nchnls = 2
    seed 1 ;change to zero for always changing results
    
    ;****SETTINGS FOR PITCHES****
     ;define the pitch street in octave notation
    giLowestPitch =     7
    giHighestPitch =    9
     ;set pitch startpoint, deviation range and the first direction
    giStartPitch =      8
    gkPitchDev init     0.2 ;random range for next pitch
    gkPitchDir init     0.1 ;positive = upwards
    
    ;****SETTINGS FOR DENSITY****
     ;define the maximum and minimum density (notes per second)
    giLowestDens =      1
    giHighestDens =     8
     ;set first density
    giStartDens =       3
     ;set possible deviation in range 0..1
     ;0 = no deviation at all
     ;1 = possible deviation is between half and twice the current density
    gkDensDev init      0.5
     ;set direction in the same range 0..1
     ;(positive = more dense, shorter notes)
    gkDensDir init      0.1
    
    ;****INSTRUMENT FOR RANDOM WALK****
      instr walk
     ;set initial values
    kPitch    init      giStartPitch
    kDens     init      giStartDens
     ;trigger impulses according to density
    kTrig     metro     kDens
     ;if the metro ticks
     if kTrig == 1 then
      ;1) play current note
              event     "i", "play", 0, 1.5/kDens, kPitch
      ;2) calculate next pitch
       ;define boundaries according to direction
    kLowPchBound =      gkPitchDir < 0 ? -gkPitchDev+gkPitchDir : -gkPitchDev
    kHighPchBound =     gkPitchDir > 0 ? gkPitchDev+gkPitchDir : gkPitchDev
       ;get random value in these boundaries
    kPchRnd   random    kLowPchBound, kHighPchBound
       ;add to current pitch
    kPitch += kPchRnd
      ;change direction if maxima are crossed, and report
      if kPitch > giHighestPitch && gkPitchDir > 0 then
    gkPitchDir =        -gkPitchDir
              printks   " Pitch touched maximum - now moving down.\n", 0
      elseif kPitch < giLowestPitch && gkPitchDir < 0 then
    gkPitchDir =        -gkPitchDir
              printks   "Pitch touched minimum - now moving up.\n", 0
      endif
      ;3) calculate next density (= metro frequency)
       ;define boundaries according to direction
    kLowDensBound =     gkDensDir < 0 ? -gkDensDev+gkDensDir : -gkDensDev
    kHighDensBound =    gkDensDir > 0 ? gkDensDev+gkDensDir : gkDensDev
       ;get random value in these boundaries
    kDensRnd  random    kLowDensBound, kHighDensBound
       ;get multiplier (so that kDensRnd=1 yields to 2, and kDens=-1 to 1/2)
    kDensMult =         2 ^ kDensRnd
       ;multiply with current duration
    kDens *= kDensMult
       ;avoid too high values and too low values
    kDens     =         kDens > giHighestDens*1.5 ? giHighestDens*1.5 : kDens
    kDens     =         kDens < giLowestDens/1.5 ? giLowestDens/1.5 : kDens
       ;change direction if maxima are crossed
      if (kDens > giHighestDens && gkDensDir > 0) || (kDens < giLowestDens && gkDensDir < 0) then
    gkDensDir =         -gkDensDir
       if kDens > giHighestDens then
              printks   " Density touched upper border - now becoming less dense.\n", 0
              else
              printks   " Density touched lower border - now becoming more dense.\n", 0
       endif
      endif
     endif
      endin
    
    ;****INSTRUMENT TO PLAY ONE NOTE****
      instr play
     ;get note as octave and calculate frequency and panning
    iOct       =          p4
    iFreq      =          cpsoct(iOct)
    iPan       ntrpol     0, 1, iOct, giLowestPitch, giHighestPitch
     ;calculate mode filter quality according to duration
    iQ         ntrpol     10, 400, p3, .15, 1.5
     ;generate tone and throw out
    aImp       mpulse     1, p3
    aMode      mode       aImp, iFreq, iQ
    aOut       linen      aMode, 0, p3, p3/4
    aL, aR     pan2       aOut, iPan
               outs       aL, aR
      endin
    
    </CsInstruments>
    <CsScore>
    i "walk" 0 999
    </CsScore>
    </CsoundSynthesizer>
    ;example by joachim heintz 
    

    II. SOME MATHS PERSPECTIVES ON RANDOM

    Random Processes  

    The relative frequency of occurrence of a random variable can be described by a probability function (for discrete random variables) or by density functions (for continuous random variables). 

    When two dice are thrown simultaneously, the sum x of their numbers can be 2, 3, ...12. The following figure shows the probability function p(x) of these possible outcomes. p(x) is always less than or equal to 1. The sum of the probabilities of all possible outcomes is 1.   

         

    For continuous random variables the probability of getting a specific value x is 0. But the probability of getting a value within a certain interval can be indicated by an area that corresponds to this probability. The function f(x) over these areas is called the density function. With the following density the chance of getting a number smaller than 0 is 0, to get a number between 0 and 0.5 is 0.5, to get a number between 0.5 and 1 is 0.5 etc. Density functions f(x) can reach values greater than 1 but the area under the function is 1.

            

    Generating Random Numbers With a Given Probability or Density  

    Csound provides opcodes for some specific densities but no means to produce random number with user defined probability or density functions. The opcodes rand_density and rand_probability (see below) generate random numbers with probabilities or densities given by tables. They are realized by using the so-called rejection sampling method.

    Rejection Sampling:  

    The principle of rejection sampling is to first generate uniformly distributed random numbers in the range required and to then accept these values corresponding to a given density function (or otherwise to reject them). Let us demonstrate this method using the density function shown in the next figure. (Since the rejection sampling method uses only the "shape" of the function, the area under the function need not be 1). We first generate uniformly distributed random numbers rnd1 over the interval [0, 1]. Of these we accept a proportion corresponding to f(rnd1). For example, the value 0.32 will only be accepted in the proportion of f(0.32) = 0.82. We do this by generating a new random number rand2 between 0 and 1 and accept rnd1 only if rand2 < f(rnd1); otherwise we reject it. (see Signals, Systems and Sound Synthesis chapter 10.1.4.4)

            

    rejection sampling 

    EXAMPLE 01D10_Rejection_Sampling.csd

    <CsoundSynthesizer>
    <CsOptions>
    -odac
    </CsOptions>
    <CsInstruments>
    ;example by martin neukom
    sr = 44100
    ksmps = 10
    nchnls = 1
    0dbfs = 1
    
    ; random number generator to a given density function
    ; kout	random number; k_minimum,k_maximum,i_fn for a density function
    
    opcode	rand_density, k, kki		
    
    kmin,kmax,ifn	xin
    loop:
    krnd1		random		0,1
    krnd2		random		0,1
    k2		table		krnd1,ifn,1	
    		if	krnd2 > k2	kgoto loop			
    		xout		kmin+krnd1*(kmax-kmin)
    endop
    
    ; random number generator to a given probability function
    ; kout	random number
    ; in: i_nr number of possible values
    ; i_fn1 function for random values
    ; i_fn2 probability functionExponential: Generate a uniformly distributed number between 0 and 1 and take its natural logarithm.
    
    opcode	rand_probability, k, iii		
    
    inr,ifn1,ifn2	xin
    loop:
    krnd1		random		0,inr
    krnd2		random		0,1
    k2		table		int(krnd1),ifn2,0	
    		if	krnd2 > k2	kgoto loop	
    kout		table		krnd1,ifn1,0		
    		xout		kout
    endop
    
    instr 1
    
    krnd		rand_density	400,800,2
    aout		poscil		.1,krnd,1
    		out		aout
    
    endin
    
    instr 2
    
    krnd		rand_probability p4,p5,p6
    aout		poscil		.1,krnd,1
    		out		aout
    
    endin
    
    </CsInstruments>
    <CsScore>
    ;sine
    f1 0 32768 10 1
    ;density function
    f2 0 1024 6 1 112 0 800 0 112 1
    ;random values and their relative probability (two dice)
    f3 0 16 -2 2 3 4 5 6 7 8 9 10 11 12
    f4 0 16  2 1 2 3 4 5 6 5 4  3  2  1
    ;random values and their relative probability
    f5 0 8 -2 400 500 600 800
    f6 0 8  2 .3  .8  .3  .1
    
    i1	0 10		
    
    ;i2 0 10 4 5 6
    </CsScore>
    </CsoundSynthesizer>
    

    Random Walk 

    In a series of random numbers the single numbers are independent upon each other. Parameter (left figure) or paths in the room (two-dimensional trajectory in the right figure) created by random numbers wildly jump around.

    Example 1 

    Table[RandomReal[{-1, 1}], {100}]; 

        

    We get a smoother path, a so-called random walk, by adding at every time step a random number r to the actual position x (x += r).

    Example 2 

    x = 0; walk = Table[x += RandomReal[{-.2, .2}], {300}]; 

       

    The path becomes even smoother by adding a random number r to the actual velocity v. 

    v += r

    x += v


    The path can by bounded to an area (figure to the right) by inverting the velocity if the path exceeds the limits (min, max): 


    vif(x < min || x > max) v *= -1


    The movement can be damped by decreasing the velocity at every time step by a small factor d

     v *= (1-d) 

    Example 3 

    x = 0; v = 0; walk = Table[x += v += RandomReal[{-.01, .01}], {300}]; 

       

    The path becomes again smoother by adding a random number r to the actual acelleration a, the change of the aceleration, etc.


    a += r

    v += a

    x += v

    Example 4 

    x = 0; v = 0; a = 0; 

    Table[x += v += a += RandomReal[{-.0001, .0001}], {300}]; 

      

     (see Martin Neukom, Signals, Systems and Sound Synthesis chapter 10.2.3.2)

    EXAMPLE 01D11_Random_Walk2.csd

    <CsoundSynthesizer>
    <CsInstruments>
    ;example by martin neukom
    
    sr = 44100
    ksmps = 128
    nchnls = 1
    0dbfs = 1
    
    ; random frequency
    instr 1
    
    kx 	random 	-p6, p6
    kfreq 	= 	p5*2^kx
    aout 	oscil 	p4, kfreq, 1
    out 	aout
    
    endin
    
    ; random change of frequency
    instr 2
    
    kx 	init 	.5
    kfreq 	= 	p5*2^kx
    kv 	random 	-p6, p6
    kv 	= 	kv*(1 - p7)
    kx 	= 	kx + kv
    aout 	oscil 	p4, kfreq, 1
    out 	aout
    
    endin
    
    ; random change of change of frequency
    instr 3
    kv	init	0
    kx 	init 	.5
    kfreq 	= 	p5*2^kx
    ka 	random 	-p7, p7
    kv 	= 	kv + ka
    kv 	= 	kv*(1 - p8)
    kx 	= 	kx + kv
    kv 	= 	(kx < -p6 || kx > p6?-kv : kv)
    aout 	oscili 	p4, kfreq, 1
    out 	aout
    
    endin
    
    </CsInstruments>
    <CsScore>
    
    f1 0 32768 10 1
    ; i1 	p4 	p5 	p6
    ; i2 	p4 	p5 	p6 	p7
    ; 	amp 	c_fr 	rand 	damp
    ; i2 0 20 	.1 	600 	0.01 	0.001
    ; 	amp 	c_fr 	d_fr 	rand 	damp
    ; 	amp 	c_fr 	rand
    ; i1 0 20 	.1 	600 	0.5
    ; i3 	p4 	p5 	p6 	p7 	p8
    i3 0 20 	.1 	600 	1 	0.001 	0.001
    </CsScore>
    </CsoundSynthesizer>
    

    III. MISCELLANEOUS EXAMPLES

    Csound has a range of opcodes and GEN routine for the creation of various random functions and distributions. Perhaps the simplest of these is random which simply generates a random value within user defined minimum and maximum limit and at i-time, k-rate or a-rate accroding to the variable type of its output:

    ires random imin, imax
    kres random kmin, kmax
    ares random kmin, kmax
    

    Values are generated according to a uniform random distribution, meaning that any value within the limits has equal chance of occurence. Non-uniform distributions in which certain values have greater chance of occurence over others are often more useful and musical. For these purposes, Csound includes the betarand, bexprand, cauchy, exprand, gauss, linrand, pcauchy, poisson, trirand, unirand and weibull random number generator opcodes. The distributions generated by several of these opcodes are illustrated below.

     

     




    In addition to these so called 'x-class noise generators' Csound provides random function generators, providing values that change over time a various ways.

    randomh generates new random numbers at a user defined rate. The previous value is held until a new value is generated, and then the output immediately assumes that value.

    The instruction:

    kmin   =         -1
    kmax   =         1
    kfreq  =         2
    kout   randomh   kmin,kmax,kfreq

    will produce and output something like:


    randomi is an interpolating version of randomh. Rather than jump to new values when they are generated, randomi interpolates linearly to the new value, reaching it just as a new random value is generated. Replacing randomh with randomi in the above code snippet would result in the following output:

    In practice randomi's angular changes in direction as new random values are generated might be audible depending on the how it is used. rsplsine allows us to specify not just a single frequency but a minimum and a maximum frequency, and the resulting function is a smooth spline between the minimum and maximum values and these minimum and maximum frequencies. The following input:

    kmin     =         -0.95
    kmax     =         0.95
    kminfrq  =         1
    kmaxfrq  =         4
    asig     jspline   kmin, kmax, kminfrq, kmaxfrq
    

    would generate an output something like:

     

    We need to be careful with what we do with rspline's output as it can exceed the limits set by kmin and kmax. Minimum and maximum values can be set conservatively or the limit opcode could be used to prevent out of range values that could cause problems.

    The following example uses rspline to 'humanise' a simple synthesiser. A short melody is played, first without any humanising and then with humanising. rspline random variation is added to the amplitude and pitch of each note in addition to an i-time random offset.

    EXAMPLE 01D12_humanising.csd

    <CsoundSynthesizer>
    <CsOptions>
    -odac
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    nchnls = 2
    0dbfs = 1
    seed 0
    
    giWave  ftgen  0, 0, 2^10, 10, 1,0,1/4,0,1/16,0,1/64,0,1/256,0,1/1024
    
      instr 1 ; an instrument with no 'humanising'
    inote =       p4
    aEnv  linen   0.1,0.01,p3,0.01
    aSig  poscil  aEnv,cpsmidinn(inote),giWave
          outs    aSig,aSig
      endin
    
      instr 2 ; an instrument with 'humanising'
    inote   =       p4
    
    ; generate some i-time 'static' random paramters
    iRndAmp random	-3,3   ; amp. will be offset by a random number of decibels
    iRndNte random  -5,5   ; note will be offset by a random number of cents
    
    ; generate some k-rate random functions
    kAmpWob rspline -1,1,1,10   ; amplitude 'wobble' (in decibels)
    kNteWob rspline -5,5,0.3,10 ; note 'wobble' (in cents)
    
    ; calculate final note function (in CPS)
    kcps    =        cpsmidinn(inote+(iRndNte*0.01)+(kNteWob*0.01))
    
    ; amplitude envelope (randomisation of attack time)
    aEnv    linen   0.1*ampdb(iRndAmp+kAmpWob),0.01+rnd(0.03),p3,0.01
    aSig    poscil  aEnv,kcps,giWave
            outs    aSig,aSig
      endin
    
    </CsInstruments>
    
    <CsScore>
    t 0 80
    #define SCORE(i) #
    i $i 0 1   60
    i .  + 2.5 69
    i .  + 0.5 67
    i .  + 0.5 65
    i .  + 0.5 64
    i .  + 3   62
    i .  + 1   62
    i .  + 2.5 70
    i .  + 0.5 69
    i .  + 0.5 67
    i .  + 0.5 65
    i .  + 3   64 #
    $SCORE(1)  ; play melody without humanising
    b 17
    $SCORE(2)  ; play melody with humanising
    e
    </CsScore>
    </CsoundSynthesizer>
    ;example by Iain McCurdy
    

    The final example implements a simple algorithmic note generator. It makes use of GEN17 to generate histograms which define the probabilities of certain notes and certain rhythmic gaps occuring.

    EXAMPLE 01D13_simple_algorithmic_note_generator.csd

    <CsoundSynthesizer>
    <CsOptions>
    -odac -dm0
    </CsOptions>
    <CsInstruments>
    sr = 44100
    ksmps = 32
    nchnls = 1
    0dbfs = 1
    
    giNotes	ftgen	0,0,-100,-17,0,48, 15,53, 30,55, 40,60, 50,63, 60,65, 79,67, 85,70, 90,72, 96,75
    giDurs	ftgen	0,0,-100,-17,0,2, 30,0.5, 75,1, 90,1.5
    
      instr 1
    kDur  init        0.5             ; initial rhythmic duration
    kTrig metro       2/kDur          ; metronome freq. 2 times inverse of duration
    kNdx  trandom     kTrig,0,1       ; create a random index upon each metro 'click'
    kDur  table       kNdx,giDurs,1   ; read a note duration value
          schedkwhen  kTrig,0,0,2,0,1 ; trigger a note!
      endin
    
      instr 2
    iNote table     rnd(1),giNotes,1                 ; read a random value from the function table
    aEnv  linsegr	0, 0.005, 1, p3-0.105, 1, 0.1, 0 ; amplitude envelope
    iPlk  random	0.1, 0.3                         ; point at which to pluck the string
    iDtn  random    -0.05, 0.05                      ; random detune
    aSig  wgpluck2  0.98, 0.2, cpsmidinn(iNote+iDtn), iPlk, 0.06
          out       aSig * aEnv
      endin
    </CsInstruments>
    
    <CsScore>
    i 1 0    300  ; start 3 long notes close after one another
    i 1 0.01 300
    i 1 0.02 300
    e
    </CsScore>
    </CsoundSynthesizer>
    ;example by Iain McCurdy
    

    1. cf http://www.etymonline.com/index.php?term=random^
    2. Because the sample rate is 44100 samples per second. So a repetition after 65536 samples will lead to a repetition after 65536/44100 = 1.486 seconds.^
    3. Charles Dodge and Thomas A. Jerse, Computer Music, New York 1985, Chapter 8.1, in particular page 269-278.^
    4. Most of them have been written by Paris Smaragdis in 1995: betarnd, bexprnd, cauchy, exprnd, gauss, linrand, pcauchy, poisson, trirand, unirand and weibull.^
    5. According to Dodge/Jerse, the usual algorithms for exponential and gaussian are:
      Exponential: Generate a uniformly distributed number between 0 and 1 and take its natural logarithm.
      Gauss: Take the mean of uniformly distributed numbers and scale them by the standard deviation. ^

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