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double32.C
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1/// \file
2/// \ingroup tutorial_io
3/// \notebook -js
4/// Tutorial illustrating use and precision of the Double32_t data type
5/// You should run this tutorial with ACLIC: a dictionary will be automatically
6/// created.
7/// ~~~{.bash}
8/// root > .x double32.C+
9/// ~~~
10/// The following cases are supported for streaming a Double32_t type
11/// depending on the range declaration in the comment field of the data member:
12///
13/// Case | Declaration
14/// -----|------------
15/// A | Double32_t fNormal;
16/// B | Double32_t fTemperature; //[0,100]
17/// C | Double32_t fCharge; //[-1,1,2]
18/// D | Double32_t fVertex[3]; //[-30,30,10]
19/// E | Double32_t fChi2; //[0,0,6]
20/// F | Int_t fNsp;<br>Double32_t* fPointValue; //[fNsp][0,3]
21///
22/// * Case A fNormal is converted from a Double_t to a Float_t
23/// * Case B fTemperature is converted to a 32 bit unsigned integer
24/// * Case C fCharge is converted to a 2 bits unsigned integer
25/// * Case D the array elements of fVertex are converted to an unsigned 10 bits integer
26/// * Case E fChi2 is converted to a Float_t with truncated precision at 6 bits
27/// * Case F the fNsp elements of array fPointvalue are converted to an unsigned 32 bit integer. Note that the range specifier must follow the dimension specifier.
28///
29/// Case B has more precision than case A: 9 to 10 significative digits and 6 to 7 digits respectively.
30/// The range specifier has the general format: [xmin,xmax] or [xmin,xmax,nbits]. Examples
31/// * [0,1]
32/// * [-10,100];
33/// * [-pi,pi], [-pi/2,pi/4],[-2pi,2*pi]
34/// * [-10,100,16]
35/// * [0,0,8]
36/// Note that:
37/// * If nbits is not specified, or nbits <2 or nbits>32 it is set to 32
38/// * If (xmin==0 and xmax==0 and nbits <=14) the double word will be converted to a float and its mantissa truncated to nbits significative bits.
39///
40/// ## IMPORTANT NOTE
41/// Lets assume an original variable double x.
42/// When using the format [0,0,8] (i.e. range not specified) you get the best
43/// relative precision when storing and reading back the truncated x, say xt.
44/// The variance of (x-xt)/x will be better than when specifying a range
45/// for the same number of bits. However the precision relative to the
46/// range (x-xt)/(xmax-xmin) will be worse, and vice-versa.
47/// The format [0,0,8] is also interesting when the range of x is infinite
48/// or unknown.
49///
50/// \macro_image
51/// \macro_code
52///
53/// \author Rene Brun
54
55#include "ROOT/TSeq.hxx"
56#include "TCanvas.h"
57#include "TFile.h"
58#include "TGraph.h"
59#include "TH1.h"
60#include "TLegend.h"
61#include "TMath.h"
62#include "TRandom3.h"
63#include "TTree.h"
64
65class DemoDouble32 {
66private:
67 Double_t fD64; // reference member with full double precision
68 Double32_t fF32; // saved as a 32 bit Float_t
69 Double32_t fI32; //[-pi,pi] saved as a 32 bit unsigned int
70 Double32_t fI30; //[-pi,pi,30] saved as a 30 bit unsigned int
71 Double32_t fI28; //[-pi,pi,28] saved as a 28 bit unsigned int
72 Double32_t fI26; //[-pi,pi,26] saved as a 26 bit unsigned int
73 Double32_t fI24; //[-pi,pi,24] saved as a 24 bit unsigned int
74 Double32_t fI22; //[-pi,pi,22] saved as a 22 bit unsigned int
75 Double32_t fI20; //[-pi,pi,20] saved as a 20 bit unsigned int
76 Double32_t fI18; //[-pi,pi,18] saved as a 18 bit unsigned int
77 Double32_t fI16; //[-pi,pi,16] saved as a 16 bit unsigned int
78 Double32_t fI14; //[-pi,pi,14] saved as a 14 bit unsigned int
79 Double32_t fI12; //[-pi,pi,12] saved as a 12 bit unsigned int
80 Double32_t fI10; //[-pi,pi,10] saved as a 10 bit unsigned int
81 Double32_t fI8; //[-pi,pi, 8] saved as a 8 bit unsigned int
82 Double32_t fI6; //[-pi,pi, 6] saved as a 6 bit unsigned int
83 Double32_t fI4; //[-pi,pi, 4] saved as a 4 bit unsigned int
84 Double32_t fI2; //[-pi,pi, 2] saved as a 2 bit unsigned int
85 Double32_t fR14; //[0, 0, 14] saved as a 32 bit float with a 14 bits mantissa
86 Double32_t fR12; //[0, 0, 12] saved as a 32 bit float with a 12 bits mantissa
87 Double32_t fR10; //[0, 0, 10] saved as a 32 bit float with a 10 bits mantissa
88 Double32_t fR8; //[0, 0, 8] saved as a 32 bit float with a 8 bits mantissa
89 Double32_t fR6; //[0, 0, 6] saved as a 32 bit float with a 6 bits mantissa
90 Double32_t fR4; //[0, 0, 4] saved as a 32 bit float with a 4 bits mantissa
91 Double32_t fR2; //[0, 0, 2] saved as a 32 bit float with a 2 bits mantissa
92
93public:
94 DemoDouble32() = default;
95 void Set(Double_t ref)
96 {
97 fD64 = fF32 = fI32 = fI30 = fI28 = fI26 = fI24 = fI22 = fI20 = fI18 = fI16 = fI14 = fI12 = fI10 = fI8 = fI6 =
98 fI4 = fI2 = fR14 = fR12 = fR10 = fR8 = fR6 = fR4 = fR2 = ref;
99 }
100};
101
102void double32()
103{
104 const auto nEntries = 40000;
105 const auto xmax = TMath::Pi();
106 const auto xmin = -xmax;
107
108 // create a Tree with nEntries objects DemoDouble32
109 TFile::Open("DemoDouble32.root", "recreate");
110 TTree tree("tree", "DemoDouble32");
111 DemoDouble32 demoInstance;
112 auto demoInstanceBranch = tree.Branch("d", "DemoDouble32", &demoInstance, 4000);
113 TRandom3 r;
114 for (auto i : ROOT::TSeqI(nEntries)) {
115 demoInstance.Set(r.Uniform(xmin, xmax));
116 tree.Fill();
117 }
118 tree.Write();
119
120 // Now we can proceed with the analysis of the sizes on disk of all branches
121
122 // Create the frame histogram and the graphs
123 auto branches = demoInstanceBranch->GetListOfBranches();
124 const auto nb = branches->GetEntries();
125 auto br = static_cast<TBranch *>(branches->At(0));
126 const Long64_t zip64 = br->GetZipBytes();
127
128 auto h = new TH1F("h", "Double32_t compression and precision", nb, 0, nb);
129 h->SetMaximum(18);
130 h->SetStats(0);
131
132 auto gcx = new TGraph();
133 gcx->SetName("gcx");
134 gcx->SetMarkerStyle(kFullSquare);
135 gcx->SetMarkerColor(kBlue);
136
137 auto gdrange = new TGraph();
138 gdrange->SetName("gdrange");
139 gdrange->SetMarkerStyle(kFullCircle);
140 gdrange->SetMarkerColor(kRed);
141
142 auto gdval = new TGraph();
143 gdval->SetName("gdval");
144 gdval->SetMarkerStyle(kFullTriangleUp);
145 gdval->SetMarkerColor(kBlack);
146
147 // loop on branches to get the precision and compression factors
148 for (auto i : ROOT::TSeqI(nb)) {
149 auto br = static_cast<TBranch *>(branches->At(i));
150 const auto brName = br->GetName();
151
152 h->GetXaxis()->SetBinLabel(i + 1, brName);
153 const auto cx = double(zip64) / br->GetZipBytes();
154 gcx->SetPoint(i, i + 0.5, cx);
155 if (i == 0 ) continue;
156
157 tree.Draw(Form("(fD64-%s)/(%g)", brName, xmax - xmin), "", "goff");
158 const auto rmsDrange = TMath::RMS(nEntries, tree.GetV1());
159 const auto drange = TMath::Max(0., -TMath::Log10(rmsDrange));
160 gdrange->SetPoint(i-1, i + 0.5, drange);
161
162 tree.Draw(Form("(fD64-%s)/fD64", brName), "", "goff");
163 const auto rmsDVal = TMath::RMS(nEntries, tree.GetV1());
164 const auto dval = TMath::Max(0., -TMath::Log10(rmsDVal));
165 gdval->SetPoint(i-1, i + 0.5, dval);
166
167 tree.Draw(Form("(fD64-%s) >> hdvalabs_%s", brName, brName), "", "goff");
168 auto hdval = gDirectory->Get<TH1F>(Form("hdvalabs_%s", brName));
169 hdval->GetXaxis()->SetTitle("Difference wrt reference value");
170 auto c = new TCanvas(brName, brName, 800, 600);
171 c->SetGrid();
172 c->SetLogy();
173 hdval->DrawClone();
174 }
175
176 auto c1 = new TCanvas("c1", "c1", 800, 600);
177 c1->SetGrid();
178
179 h->Draw();
180 h->GetXaxis()->LabelsOption("v");
181 gcx->Draw("lp");
182 gdrange->Draw("lp");
183 gdval->Draw("lp");
184
185 // Finally build a legend
186 auto legend = new TLegend(0.3, 0.6, 0.9, 0.9);
187 legend->SetHeader(Form("%d entries within the [-#pi, #pi] range", nEntries));
188 legend->AddEntry(gcx, "Compression factor", "lp");
189 legend->AddEntry(gdrange, "Log of precision wrt range: p = -Log_{10}( RMS( #frac{Ref - x}{range} ) ) ", "lp");
190 legend->AddEntry(gdval, "Log of precision wrt value: p = -Log_{10}( RMS( #frac{Ref - x}{Ref} ) ) ", "lp");
191 legend->Draw();
192}
double
ROOT::R::TRInterface & r
Definition Object.C:4
#define c(i)
Definition RSha256.hxx:101
#define h(i)
Definition RSha256.hxx:106
double Double32_t
Definition RtypesCore.h:60
double Double_t
Definition RtypesCore.h:59
long long Long64_t
Definition RtypesCore.h:80
@ kRed
Definition Rtypes.h:66
@ kBlack
Definition Rtypes.h:65
@ kBlue
Definition Rtypes.h:66
@ kFullSquare
Definition TAttMarker.h:51
@ kFullTriangleUp
Definition TAttMarker.h:51
@ kFullCircle
Definition TAttMarker.h:51
#define gDirectory
Definition TDirectory.h:385
float xmin
float xmax
char * Form(const char *fmt,...)
A TTree is a list of TBranches.
Definition TBranch.h:89
Long64_t GetZipBytes(Option_t *option="") const
Return total number of zip bytes in the branch if option ="*" includes all sub-branches of this branc...
Definition TBranch.cxx:2176
The Canvas class.
Definition TCanvas.h:23
static TFile * Open(const char *name, Option_t *option="", const char *ftitle="", Int_t compress=ROOT::RCompressionSetting::EDefaults::kUseCompiledDefault, Int_t netopt=0)
Create / open a file.
Definition TFile.cxx:4025
A TGraph is an object made of two arrays X and Y with npoints each.
Definition TGraph.h:41
1-D histogram with a float per channel (see TH1 documentation)}
Definition TH1.h:575
TAxis * GetXaxis()
Get the behaviour adopted by the object about the statoverflows. See EStatOverflows for more informat...
Definition TH1.h:320
This class displays a legend box (TPaveText) containing several legend entries.
Definition TLegend.h:23
virtual void SetTitle(const char *title="")
Set the title of the TNamed.
Definition TNamed.cxx:164
virtual const char * GetName() const
Returns name of object.
Definition TNamed.h:47
Random number generator class based on M.
Definition TRandom3.h:27
A TTree represents a columnar dataset.
Definition TTree.h:79
return c1
Definition legend1.C:41
tbb::task_arena is an alias of tbb::interface7::task_arena, which doesn't allow to forward declare tb...
TSeq< int > TSeqI
Definition TSeq.hxx:201
Short_t Max(Short_t a, Short_t b)
Definition TMathBase.h:208
constexpr Double_t Pi()
Definition TMath.h:37
Double_t RMS(Long64_t n, const T *a, const Double_t *w=0)
Return the Standard Deviation of an array a with length n.
Definition TMath.h:1117
Double_t Log10(Double_t x)
Definition TMath.h:714
Definition tree.py:1