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6 changed files with 909 additions and 17 deletions
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@ -8,3 +8,293 @@ figure_9/*.parquet/
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figure_9/?_task_count/
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figure_9/?_machine_locality/
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table_iii/*.parquet/
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## Core latex/pdflatex auxiliary files:
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*.aux
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*.lof
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*.log
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*.lot
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*.fls
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*.out
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*.toc
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*.fmt
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*.fot
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*.cb
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*.cb2
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.*.lb
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## Intermediate documents:
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*.dvi
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*.xdv
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*-converted-to.*
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# these rules might exclude image files for figures etc.
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# *.ps
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# *.eps
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# *.pdf
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## Generated if empty string is given at "Please type another file name for output:"
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.pdf
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## Bibliography auxiliary files (bibtex/biblatex/biber):
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||||
*.bbl
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||||
*.bcf
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||||
*.blg
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*-blx.aux
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||||
*-blx.bib
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*.run.xml
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## Build tool auxiliary files:
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*.fdb_latexmk
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||||
*.synctex
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*.synctex(busy)
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*.synctex.gz
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*.synctex.gz(busy)
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*.pdfsync
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## Build tool directories for auxiliary files
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# latexrun
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latex.out/
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## Auxiliary and intermediate files from other packages:
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# algorithms
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*.alg
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*.loa
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# achemso
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acs-*.bib
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# amsthm
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*.thm
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# beamer
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*.nav
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*.pre
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*.snm
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*.vrb
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# changes
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*.soc
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# comment
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*.cut
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# cprotect
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*.cpt
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# elsarticle (documentclass of Elsevier journals)
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*.spl
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# endnotes
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*.ent
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# fixme
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*.lox
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# feynmf/feynmp
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*.mf
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*.mp
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*.t[1-9]
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*.t[1-9][0-9]
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*.tfm
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#(r)(e)ledmac/(r)(e)ledpar
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*.end
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*.?end
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*.[1-9]
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*.[1-9][0-9]
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*.[1-9][0-9][0-9]
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*.[1-9]R
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*.[1-9][0-9]R
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*.[1-9][0-9][0-9]R
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*.eledsec[1-9]
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*.eledsec[1-9]R
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*.eledsec[1-9][0-9]
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*.eledsec[1-9][0-9]R
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*.eledsec[1-9][0-9][0-9]
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*.eledsec[1-9][0-9][0-9]R
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# glossaries
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*.acn
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*.acr
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*.glg
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*.glo
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*.gls
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*.glsdefs
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*.lzo
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*.lzs
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# uncomment this for glossaries-extra (will ignore makeindex's style files!)
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# *.ist
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# gnuplottex
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*-gnuplottex-*
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# gregoriotex
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*.gaux
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*.glog
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*.gtex
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# htlatex
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*.4ct
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*.4tc
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*.idv
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*.lg
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*.trc
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*.xref
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# hyperref
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*.brf
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# knitr
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*-concordance.tex
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# TODO Uncomment the next line if you use knitr and want to ignore its generated tikz files
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# *.tikz
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*-tikzDictionary
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# listings
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*.lol
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# luatexja-ruby
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*.ltjruby
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# makeidx
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*.idx
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*.ilg
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*.ind
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# minitoc
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*.maf
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*.mlf
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*.mlt
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*.mtc[0-9]*
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*.slf[0-9]*
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*.slt[0-9]*
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*.stc[0-9]*
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# minted
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_minted*
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*.pyg
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# morewrites
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*.mw
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# newpax
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*.newpax
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# nomencl
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*.nlg
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*.nlo
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*.nls
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# pax
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*.pax
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# pdfpcnotes
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*.pdfpc
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# sagetex
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*.sagetex.sage
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*.sagetex.py
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*.sagetex.scmd
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# scrwfile
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*.wrt
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# sympy
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*.sout
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*.sympy
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sympy-plots-for-*.tex/
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# pdfcomment
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*.upa
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*.upb
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# pythontex
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*.pytxcode
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pythontex-files-*/
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# tcolorbox
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*.listing
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# thmtools
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*.loe
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# TikZ & PGF
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*.dpth
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*.md5
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*.auxlock
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# todonotes
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*.tdo
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# vhistory
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*.hst
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*.ver
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# easy-todo
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*.lod
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# xcolor
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*.xcp
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# xmpincl
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*.xmpi
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# xindy
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*.xdy
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# xypic precompiled matrices and outlines
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*.xyc
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*.xyd
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# endfloat
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*.ttt
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*.fff
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# Latexian
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TSWLatexianTemp*
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## Editors:
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# WinEdt
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*.bak
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*.sav
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# Texpad
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.texpadtmp
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# LyX
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*.lyx~
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# Kile
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*.backup
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# gummi
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.*.swp
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# KBibTeX
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*~[0-9]*
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# TeXnicCenter
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*.tps
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# auto folder when using emacs and auctex
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./auto/*
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*.el
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# expex forward references with \gathertags
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*-tags.tex
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# standalone packages
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*.sta
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# Makeindex log files
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*.lpz
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# xwatermark package
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*.xwm
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# REVTeX puts footnotes in the bibliography by default, unless the nofootinbib
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# option is specified. Footnotes are the stored in a file with suffix Notes.bib.
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# Uncomment the next line to have this generated file ignored.
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#*Notes.bib
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@ -1 +0,0 @@
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,maggicl,Apple2gs.local,16.05.2021 14:55,file:///Users/maggicl/Library/Application%20Support/LibreOffice/4;
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@ -52,7 +52,17 @@ header-includes:
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## Rosà et al. 2015 DSN paper
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**TBD**
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In 2015, Dr. Andrea Rosà, Lydia Y. Chen, Prof. Walter Binder published a
|
||||
research paper titled "Understanding the Dark Side of Big Data Clusters:
|
||||
An Analysis beyond Failures" performing several analysis on Google's 2011
|
||||
Borg cluster traces. The salient conclusion of that research is that lots of
|
||||
computation performed by Google would eventually fail, leading to large amounts
|
||||
of computational power being wasted.
|
||||
|
||||
Our aim with this thesis is to repeat the analysis performed in 2015 on the new
|
||||
2019 dataset to find similarities and differences with the previous analysis,
|
||||
and ulimately find if computational power is indeed wasted in this new workload
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as well.
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## Google Borg
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|
@ -162,22 +172,30 @@ This approach is discussed with further detail in the following section.
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**TBD**
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## Overview on challenging aspects of analysis (data size, schema, avaliable computation resources)
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**TBD**
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|
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## Introduction on Apache Spark
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**TBD**
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Apache Spark is a unified analytics engine for large-scale data processing. In
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layman's terms, Spark is really useful to parallelize computations in a fast and
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streamlined way.
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## General workflow description of apache spark workflow
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In the scope of this thesis, Spark was used essentially as a Map-Reduce
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framework for computing aggregated results on the various tables. Due to the
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sharded nature of table "files", Spark is able to spawn a thread per file and
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run computations using all processors on the server machines used to run the
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analysis.
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**TBD** (extract from the notes sent to Filippo shown below)
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Spark is also quite powerful since it provides automated thread pooling
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services, and it is able to efficiently store and cache intermediate computation
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on secondary storage without any additional effort required from the data
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engineer. This feature was especially useful due to the sheer size of the
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analyzed data, since the computations required to store up to 1TiB of
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intermediate data on disk.
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The Google 2019 Borg cluster traces analysis were conducted by using Apache
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Spark and its Python 3 API (pyspark). Spark was used to execute a series of
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queries to perform various sums and aggregations over the entire dataset
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provided by Google.
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The chosen programming language for writing analysis scripts was Python. Spark
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has very powerful native Python bindings in the form of the _PySpark_ API, which
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were used to implement the various queries.
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## Query architecture
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In general, each query follows a general Map-Reduce template, where traces are
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first read, parsed, filtered by performing selections, projections and computing
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@ -202,10 +220,10 @@ memory during the query, a projection is often applied to the data by the means
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of a .map() operation over the entire trace set, performed using Spark's RDD
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API.
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Another operation that is often necessary to perform prior to the Map-Reduce core of
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each query is a record filtering process, which is often motivated by the
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presence of incomplete data (i.e. records which contain fields whose values is
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unknown). This filtering is performed using the .filter() operation of Spark's
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Another operation that is often necessary to perform prior to the Map-Reduce
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core of each query is a record filtering process, which is often motivated by
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the presence of incomplete data (i.e. records which contain fields whose values
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is unknown). This filtering is performed using the .filter() operation of Spark's
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RDD API.
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The core of each query is often a groupBy followed by a map() operation on the
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@ -222,6 +240,8 @@ compute and save intermediate results beforehand.
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## General Query script design
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**TBD**
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## Ad-Hoc presentation of some analysis scripts
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Binary file not shown.
583
report/Claudio_Maggioni_report.tex
Normal file
583
report/Claudio_Maggioni_report.tex
Normal file
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@ -0,0 +1,583 @@
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\documentclass{usiinfbachelorproject}
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\title{Understanding and Comparing Unsuccessful Executions in Large Datacenters}
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\author{Claudio Maggioni}
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\usepackage{amsmath}
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\usepackage{subcaption}
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\usepackage{booktabs}
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\usepackage{graphicx}
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\captionsetup{labelfont={bf}}
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%\subtitle{The (optional) subtitle}
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\versiondate{\today}
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\begin{committee}
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\advisor[Universit\`a della Svizzera Italiana,
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Switzerland]{Prof.}{Walter}{Binder}
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\assistant[Universit\`a della Svizzera Italiana,
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Switzerland]{Dr.}{Andrea}{Ros\'a}
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\end{committee}
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\abstract{The project aims at comparing two different traces coming from large
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datacenters, focusing in particular on unsuccessful executions of jobs and
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tasks submitted by users. The objective of this project is to compare the
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resource waste caused by unsuccessful executions, their impact on application
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performance, and their root causes. We will show the strong negative impact on
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CPU and RAM usage and on task slowdown. We will analyze patterns of
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unsuccessful jobs and tasks, particularly focusing on their interdependency.
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Moreover, we will uncover their root causes by inspecting key workload and
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system attributes such asmachine locality and concurrency level.}
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\begin{document}
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\tableofcontents
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\newpage
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\hypertarget{introduction-including-motivation}{%
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\section{Introduction (including
|
||||
Motivation)}\label{introduction-including-motivation}}
|
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|
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\hypertarget{state-of-the-art}{%
|
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\section{State of the Art}\label{state-of-the-art}}
|
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|
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\hypertarget{introduction}{%
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\subsection{Introduction}\label{introduction}}
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|
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\textbf{TBD}
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\hypertarget{rosuxe0-et-al.-2015-dsn-paper}{%
|
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\subsection{Rosà et al.~2015 DSN
|
||||
paper}\label{rosuxe0-et-al.-2015-dsn-paper}}
|
||||
|
||||
In 2015, Dr.~Andrea Rosà, Lydia Y. Chen, Prof.~Walter Binder published a
|
||||
research paper titled ``Understanding the Dark Side of Big Data
|
||||
Clusters: An Analysis beyond Failures'' performing several analysis on
|
||||
Google's 2011 Borg cluster traces. The salient conclusion of that
|
||||
research is that lots of computation performed by Google would
|
||||
eventually fail, leading to large amounts of computational power being
|
||||
wasted.
|
||||
|
||||
Our aim with this thesis is to repeat the analysis performed in 2015 on
|
||||
the new 2019 dataset to find similarities and differences with the
|
||||
previous analysis, and ulimately find if computational power is indeed
|
||||
wasted in this new workload as well.
|
||||
|
||||
\hypertarget{google-borg}{%
|
||||
\subsection{Google Borg}\label{google-borg}}
|
||||
|
||||
Borg is Google's own cluster management software. Among the various
|
||||
cluster management services it provides, the main ones are: job queuing,
|
||||
scheduling, allocation, and deallocation due to higher priority
|
||||
computations.
|
||||
|
||||
The data this thesis is based on is from 8 Borg ``cells''
|
||||
(i.e.~clusters) spanning 8 different datacenters, all focused on
|
||||
``compute'' (i.e.~computational oriented) workloads. The data collection
|
||||
timespan matches the entire month of May 2019.
|
||||
|
||||
In Google's lingo a ``job'' is a large unit of computational workload
|
||||
made up of several ``tasks'', i.e.~a number of executions of single
|
||||
executables running on a single machine. A job may run tasks
|
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sequentially or in parallel, and the condition for a job's succesful
|
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termination is nontrivial.
|
||||
|
||||
Both tasks and jobs lifecyles are represented by several events, which
|
||||
are encoded and stored in the trace as rows of various tables. Among the
|
||||
information events provide, the field ``type'' provides information on
|
||||
the execution status of the job or task. This field can have the
|
||||
following values:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
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\textbf{QUEUE}: The job or task was marked not eligible for scheduling
|
||||
by Borg's scheduler, and thus Borg will move the job/task in a long
|
||||
wait queue;
|
||||
\item
|
||||
\textbf{SUBMIT}: The job or task was submitted to Borg for execution;
|
||||
\item
|
||||
\textbf{ENABLE}: The job or task became eligible for scheduling;
|
||||
\item
|
||||
\textbf{SCHEDULE}: The job or task's execution started;
|
||||
\item
|
||||
\textbf{EVICT}: The job or task was terminated in order to free
|
||||
computational resources for an higher priority job;
|
||||
\item
|
||||
\textbf{FAIL}: The job or task terminated its execution unsuccesfully
|
||||
due to a failure;
|
||||
\item
|
||||
\textbf{FINISH}: The job or task terminated succesfully;
|
||||
\item
|
||||
\textbf{KILL}: The job or task terminated its execution because of a
|
||||
manual request to stop it;
|
||||
\item
|
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\textbf{LOST}: It is assumed a job or task is has been terminated, but
|
||||
due to missing data there is insufficent information to identify when
|
||||
or how;
|
||||
\item
|
||||
\textbf{UPDATE\_PENDING}: The metadata (scheduling class, resource
|
||||
requirements, \ldots) of the job/task was updated while the job was
|
||||
waiting to be scheduled;
|
||||
\item
|
||||
\textbf{UPDATE\_RUNNING}: The metadata (scheduling class, resource
|
||||
requirements, \ldots) of the job/task was updated while the job was in
|
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execution;
|
||||
\end{itemize}
|
||||
|
||||
Figure \ref{fig:eventTypes} shows the expected transitions between event
|
||||
types.
|
||||
|
||||
\begin{figure}
|
||||
\centering
|
||||
\includegraphics{./figures/event_types.png}
|
||||
\caption{Typical transitions between task/job event types according to
|
||||
Google \label{fig:eventTypes}}
|
||||
\end{figure}
|
||||
|
||||
\hypertarget{traces-contents}{%
|
||||
\subsection{Traces contents}\label{traces-contents}}
|
||||
|
||||
The traces provided by Google contain mainly a collection of job and
|
||||
task events spanning a month of execution of the 8 different clusters.
|
||||
In addition to this data, some additional data on the machines'
|
||||
configuration in terms of resources (i.e.~amount of CPU and RAM) and
|
||||
additional machine-related metadata.
|
||||
|
||||
Due to Google's policy, most identification related data (like job/task
|
||||
IDs, raw resource amounts and other text values) were obfuscated prior
|
||||
to the release of the traces. One obfuscation that is noteworthy in the
|
||||
scope of this thesis is related to CPU and RAM amounts, which are
|
||||
expressed respetively in NCUs (\emph{Normalized Compute Units}) and NMUs
|
||||
(\emph{Normalized Memory Units}).
|
||||
|
||||
NCUs and NMUs are defined based on the raw machine resource
|
||||
distributions of the machines within the 8 clusters. A machine having 1
|
||||
NCU CPU power and 1 NMU memory size has the maximum amount of raw CPU
|
||||
power and raw RAM size found in the clusters. While RAM size is measured
|
||||
in bytes for normalization purposes, CPU power was measured in GCU
|
||||
(\emph{Google Compute Units}), a proprietary CPU power measurement unit
|
||||
used by Google that combines several parameters like number of
|
||||
processors and cores, clock frequency, and architecture (i.e.~ISA).
|
||||
|
||||
\hypertarget{overview-of-traces-format}{%
|
||||
\subsection{Overview of traces'
|
||||
format}\label{overview-of-traces-format}}
|
||||
|
||||
The traces have a collective size of approximately 8TiB and are stored
|
||||
in a Gzip-compressed JSONL (JSON lines) format, which means that each
|
||||
table is represented by a single logical ``file'' (stored in several
|
||||
file segments) where each carriage return separated line represents a
|
||||
single record for that table.
|
||||
|
||||
There are namely 5 different table ``files'':
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
\texttt{machine\_configs}, which is a table containing each physical
|
||||
machine's configuration and its evolution over time;
|
||||
\item
|
||||
\texttt{instance\_events}, which is a table of task events;
|
||||
\item
|
||||
\texttt{collection\_events}, which is a table of job events;
|
||||
\item
|
||||
\texttt{machine\_attributes}, which is a table containing (obfuscated)
|
||||
metadata about each physical machine and its evolution over time;
|
||||
\item
|
||||
\texttt{instance\_usage}, which contains resource (CPU/RAM) measures
|
||||
of jobs and tasks running on the single machines.
|
||||
\end{itemize}
|
||||
|
||||
The scope of this thesis focuses on the tables
|
||||
\texttt{machine\_configs}, \texttt{instance\_events} and
|
||||
\texttt{collection\_events}.
|
||||
|
||||
\hypertarget{remark-on-traces-size}{%
|
||||
\subsection{Remark on traces size}\label{remark-on-traces-size}}
|
||||
|
||||
While the 2011 Google Borg traces were relatively small, with a total
|
||||
size in the order of the tens of gigabytes, the 2019 traces are quite
|
||||
challenging to analyze due to their sheer size. As stated before, the
|
||||
traces have a total size of 8 TiB when stored in the format provided by
|
||||
Google. Even when broken down to table ``files'', unitary sizes still
|
||||
reach the single tebibyte mark (namely for \texttt{machine\_configs},
|
||||
the largest table in the trace).
|
||||
|
||||
Due to this constraints, a careful data engineering based approach was
|
||||
used when reproducing the 2015 DSN paper analysis. Bleeding edge data
|
||||
science technologies like Apache Spark were used to achieve efficient
|
||||
and parallelized computations. This approach is discussed with further
|
||||
detail in the following section.
|
||||
|
||||
\hypertarget{project-requirements-and-analysis}{%
|
||||
\section{Project requirements and
|
||||
analysis}\label{project-requirements-and-analysis}}
|
||||
|
||||
\textbf{TBD} (describe our objective with this analysis in detail)
|
||||
|
||||
\hypertarget{analysis-methodology}{%
|
||||
\section{Analysis methodology}\label{analysis-methodology}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\hypertarget{introduction-on-apache-spark}{%
|
||||
\subsection{Introduction on Apache
|
||||
Spark}\label{introduction-on-apache-spark}}
|
||||
|
||||
Apache Spark is a unified analytics engine for large-scale data
|
||||
processing. In layman's terms, Spark is really useful to parallelize
|
||||
computations in a fast and streamlined way.
|
||||
|
||||
In the scope of this thesis, Spark was used essentially as a Map-Reduce
|
||||
framework for computing aggregated results on the various tables. Due to
|
||||
the sharded nature of table ``files'', Spark is able to spawn a thread
|
||||
per file and run computations using all processors on the server
|
||||
machines used to run the analysis.
|
||||
|
||||
Spark is also quite powerful since it provides automated thread pooling
|
||||
services, and it is able to efficiently store and cache intermediate
|
||||
computation on secondary storage without any additional effort required
|
||||
from the data engineer. This feature was especially useful due to the
|
||||
sheer size of the analyzed data, since the computations required to
|
||||
store up to 1TiB of intermediate data on disk.
|
||||
|
||||
The chosen programming language for writing analysis scripts was Python.
|
||||
Spark has very powerful native Python bindings in the form of the
|
||||
\emph{PySpark} API, which were used to implement the various queries.
|
||||
|
||||
\hypertarget{query-architecture}{%
|
||||
\subsection{Query architecture}\label{query-architecture}}
|
||||
|
||||
In general, each query follows a general Map-Reduce template, where
|
||||
traces are first read, parsed, filtered by performing selections,
|
||||
projections and computing new derived fields. Then, the trace records
|
||||
are often grouped by one of their fields, clustering related data
|
||||
toghether before a reduce or fold operation is applied to each grouping.
|
||||
|
||||
Most input data is in JSONL format and adheres to a schema Google
|
||||
profided in the form of a protobuffer specification\footnote{\href{https://github.com/google/cluster-data/blob/master/clusterdata_trace_format_v3.proto}{Google
|
||||
2019 Borg traces Protobuffer specification on Github}}.
|
||||
|
||||
On of the main quirks in the traces is that fields that have a ``zero''
|
||||
value (i.e.~a value like 0 or the empty string) are often omitted in the
|
||||
JSON object records. When reading the traces in Apache Spark is
|
||||
therefore necessary to check for this possibility and populate those
|
||||
zero fields when omitted.
|
||||
|
||||
Most queries use only two or three fields in each trace records, while
|
||||
the original records often are made of a couple of dozen fields. In
|
||||
order to save memory during the query, a projection is often applied to
|
||||
the data by the means of a .map() operation over the entire trace set,
|
||||
performed using Spark's RDD API.
|
||||
|
||||
Another operation that is often necessary to perform prior to the
|
||||
Map-Reduce core of each query is a record filtering process, which is
|
||||
often motivated by the presence of incomplete data (i.e.~records which
|
||||
contain fields whose values is unknown). This filtering is performed
|
||||
using the .filter() operation of Spark's RDD API.
|
||||
|
||||
The core of each query is often a groupBy followed by a map() operation
|
||||
on the aggregated data. The groupby groups the set of all records into
|
||||
several subsets of records each having something in common. Then, each
|
||||
of this small clusters is reduced with a .map() operation to a single
|
||||
record. The motivation behind this computation is often to analyze a
|
||||
time series of several different traces of programs. This is implemented
|
||||
by groupBy()-ing records by program id, and then map()-ing each program
|
||||
trace set by sorting by time the traces and computing the desired
|
||||
property in the form of a record.
|
||||
|
||||
Sometimes intermediate results are saved in Spark's parquet format in
|
||||
order to compute and save intermediate results beforehand.
|
||||
|
||||
\hypertarget{general-query-script-design}{%
|
||||
\subsection{General Query script
|
||||
design}\label{general-query-script-design}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\hypertarget{ad-hoc-presentation-of-some-analysis-scripts}{%
|
||||
\subsection{Ad-Hoc presentation of some analysis
|
||||
scripts}\label{ad-hoc-presentation-of-some-analysis-scripts}}
|
||||
|
||||
\textbf{TBD} (with diagrams)
|
||||
|
||||
\hypertarget{analysis-and-observations}{%
|
||||
\section{Analysis and observations}\label{analysis-and-observations}}
|
||||
|
||||
\hypertarget{overview-of-machine-configurations-in-each-cluster}{%
|
||||
\subsection{Overview of machine configurations in each
|
||||
cluster}\label{overview-of-machine-configurations-in-each-cluster}}
|
||||
|
||||
\input{figures/machine_configs}
|
||||
|
||||
Refer to figure \ref{fig:machineconfigs}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
machine configurations are definitely more varied than the ones in the
|
||||
2011 traces
|
||||
\item
|
||||
some clusters have more machine variability
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{analysis-of-execution-time-per-each-execution-phase}{%
|
||||
\subsection{Analysis of execution time per each execution
|
||||
phase}\label{analysis-of-execution-time-per-each-execution-phase}}
|
||||
|
||||
\input{figures/machine_time_waste}
|
||||
|
||||
Refer to figures \ref{fig:machinetimewaste-abs} and
|
||||
\ref{fig:machinetimewaste-rel}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
Across all cluster almost 50\% of time is spent in ``unknown''
|
||||
transitions, i.e. there are some time slices that are related to a
|
||||
state transition that Google says are not ``typical'' transitions.
|
||||
This is mostly due to the trace log being intermittent when recording
|
||||
all state transitions.
|
||||
\item
|
||||
80\% of the time spent in KILL and LOST is unknown. This is
|
||||
predictable, since both states indicate that the job execution is not
|
||||
stable (in particular LOST is used when the state logging itself is
|
||||
unstable)
|
||||
\item
|
||||
From the absolute graph we see that the time ``wasted'' on non-finish
|
||||
terminated jobs is very significant
|
||||
\item
|
||||
Execution is the most significant task phase, followed by queuing time
|
||||
and scheduling time (``ready'' state)
|
||||
\item
|
||||
In the absolute graph we see that a significant amount of time is
|
||||
spent to re-schedule evicted jobs (``evicted'' state)
|
||||
\item
|
||||
Cluster A has unusually high queuing times
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{task-slowdown}{%
|
||||
\subsection{Task slowdown}\label{task-slowdown}}
|
||||
|
||||
\input{figures/task_slowdown}
|
||||
|
||||
Refer to figure \ref{fig:taskslowdown}
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
Priority values are different from 0-11 values in the 2011 traces. A
|
||||
conversion table is provided by Google;
|
||||
\item
|
||||
For some priorities (e.g.~101 for cluster D) the relative number of
|
||||
finishing task is very low and the mean slowdown is very high (315).
|
||||
This behaviour differs from the relatively homogeneous values from the
|
||||
2011 traces.
|
||||
\item
|
||||
Some slowdown values cannot be computed since either some tasks have a
|
||||
0ns execution time or for some priorities no tasks in the traces
|
||||
terminate successfully. More raw data on those exception is in
|
||||
Jupyter.
|
||||
\item
|
||||
The \% of finishing jobs is relatively low comparing with the 2011
|
||||
traces.
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{reserved-and-actual-resource-usage-of-tasks}{%
|
||||
\subsection{Reserved and actual resource usage of
|
||||
tasks}\label{reserved-and-actual-resource-usage-of-tasks}}
|
||||
|
||||
\input{figures/spatial_resource_waste}
|
||||
|
||||
Refer to figures \ref{fig:spatialresourcewaste-actual} and
|
||||
\ref{fig:spatialresourcewaste-requested}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
Most (mesasured and requested) resources are used by killed job, even
|
||||
more than in the 2011 traces.
|
||||
\item
|
||||
Behaviour is rather homogeneous across datacenters, with the exception
|
||||
of cluster G where a lot of LOST-terminated tasks acquired 70\% of
|
||||
both CPU and RAM
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{correlation-between-task-events-metadata-and-task-termination}{%
|
||||
\subsection{Correlation between task events' metadata and task
|
||||
termination}\label{correlation-between-task-events-metadata-and-task-termination}}
|
||||
|
||||
\input{figures/figure_7}
|
||||
|
||||
Refer to figures \ref{fig:figureVII-a}, \ref{fig:figureVII-b}, and
|
||||
\ref{fig:figureVII-c}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
No smooth curves in this figure either, unlike 2011 traces
|
||||
\item
|
||||
The behaviour of curves for 7a (priority) is almost the opposite of
|
||||
2011, i.e. in-between priorities have higher kill rates while
|
||||
priorities at the extremum have lower kill rates. This could also be
|
||||
due bt the inherent distribution of job terminations;
|
||||
\item
|
||||
Event execution time curves are quite different than 2011, here it
|
||||
seems there is a good correlation between short task execution times
|
||||
and finish event rates, instead of the U shape curve in 2015 DSN
|
||||
\item
|
||||
In figure \ref{fig:figureVII-b} cluster behaviour seems quite uniform
|
||||
\item
|
||||
Machine concurrency seems to play little role in the event termination
|
||||
distribution, as for all concurrency factors the kill rate is at 90\%.
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{correlation-between-task-events-resource-metadata-and-task-termination}{%
|
||||
\subsection{Correlation between task events' resource metadata and task
|
||||
termination}\label{correlation-between-task-events-resource-metadata-and-task-termination}}
|
||||
|
||||
\hypertarget{correlation-between-job-events-metadata-and-job-termination}{%
|
||||
\subsection{Correlation between job events' metadata and job
|
||||
termination}\label{correlation-between-job-events-metadata-and-job-termination}}
|
||||
|
||||
\input{figures/figure_9}
|
||||
|
||||
Refer to figures \ref{fig:figureIX-a}, \ref{fig:figureIX-b}, and
|
||||
\ref{fig:figureIX-c}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
Behaviour between cluster varies a lot
|
||||
\item
|
||||
There are no ``smooth'' gradients in the various curves unlike in the
|
||||
2011 traces
|
||||
\item
|
||||
Killed jobs have higher event rates in general, and overall dominate
|
||||
all event rates measures
|
||||
\item
|
||||
There still seems to be a correlation between short execution job
|
||||
times and successfull final termination, and likewise for kills and
|
||||
higher job terminations
|
||||
\item
|
||||
Across all clusters, a machine locality factor of 1 seems to lead to
|
||||
the highest success event rate
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{mean-number-of-tasks-and-event-distribution-per-task-type}{%
|
||||
\subsection{Mean number of tasks and event distribution per task
|
||||
type}\label{mean-number-of-tasks-and-event-distribution-per-task-type}}
|
||||
|
||||
\input{figures/table_iii}
|
||||
|
||||
Refer to figure \ref{fig:tableIII}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
The mean number of events per task is an order of magnitude higher
|
||||
than in the 2011 traces
|
||||
\item
|
||||
Generally speaking, the event type with higher mean is the termination
|
||||
event for the task
|
||||
\item
|
||||
The \# evts mean is higher than the sum of all other event type means,
|
||||
since it appears there are a lot more non-termination events in the
|
||||
2019 traces.
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{mean-number-of-tasks-and-event-distribution-per-job-type}{%
|
||||
\subsection{Mean number of tasks and event distribution per job
|
||||
type}\label{mean-number-of-tasks-and-event-distribution-per-job-type}}
|
||||
|
||||
\input{figures/table_iv}
|
||||
|
||||
Refer to figure \ref{fig:tableIV}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
Again the mean number of tasks is significantly higher than the 2011
|
||||
traces, indicating a higher complexity of workloads
|
||||
\item
|
||||
Cluster A has no evicted jobs
|
||||
\item
|
||||
The number of events is however lower than the event means in the 2011
|
||||
traces
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{probability-of-task-successful-termination-given-its-unsuccesful-events}{%
|
||||
\subsection{Probability of task successful termination given its
|
||||
unsuccesful
|
||||
events}\label{probability-of-task-successful-termination-given-its-unsuccesful-events}}
|
||||
|
||||
\input{figures/figure_5}
|
||||
|
||||
Refer to figure \ref{fig:figureV}.
|
||||
|
||||
\textbf{Observations}:
|
||||
|
||||
\begin{itemize}
|
||||
\tightlist
|
||||
\item
|
||||
Behaviour is very different from cluster to cluster
|
||||
\item
|
||||
There is no easy conclusion, unlike in 2011, on the correlation
|
||||
between succesful probability and \# of events of a specific type.
|
||||
\item
|
||||
Clusters B, C and D in particular have very unsmooth lines that vary a
|
||||
lot for small \# evts differences. This may be due to an uneven
|
||||
distribution of \# evts in the traces.
|
||||
\end{itemize}
|
||||
|
||||
\hypertarget{potential-causes-of-unsuccesful-executions}{%
|
||||
\subsection{Potential causes of unsuccesful
|
||||
executions}\label{potential-causes-of-unsuccesful-executions}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\hypertarget{implementation-issues-analysis-limitations}{%
|
||||
\section{Implementation issues -- Analysis
|
||||
limitations}\label{implementation-issues-analysis-limitations}}
|
||||
|
||||
\hypertarget{discussion-on-unknown-fields}{%
|
||||
\subsection{Discussion on unknown
|
||||
fields}\label{discussion-on-unknown-fields}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\hypertarget{limitation-on-computation-resources-required-for-the-analysis}{%
|
||||
\subsection{Limitation on computation resources required for the
|
||||
analysis}\label{limitation-on-computation-resources-required-for-the-analysis}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\hypertarget{other-limitations}{%
|
||||
\subsection{Other limitations \ldots{}}\label{other-limitations}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\hypertarget{conclusions-and-future-work-or-possible-developments}{%
|
||||
\section{Conclusions and future work or possible
|
||||
developments}\label{conclusions-and-future-work-or-possible-developments}}
|
||||
|
||||
\textbf{TBD}
|
||||
|
||||
\end{document}
|
BIN
status.ods
BIN
status.ods
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Reference in a new issue