Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
Google BigQuery の話 #gcpja
Search
Sponsored
·
Ship Features Fearlessly
Turn features on and off without deploys. Used by thousands of Ruby developers.
→
Naoya Ito
September 17, 2014
Technology
17
5.8k
Google BigQuery の話 #gcpja
gcp ja night で話した BigQuery のスライド。YAPC::Asia のものに数枚だけスライドを追加したもので、ほぼ同じです。
Naoya Ito
September 17, 2014
Tweet
Share
More Decks by Naoya Ito
See All by Naoya Ito
Haskell を武器にして挑む競技プログラミング ─ 操作的思考から意味モデル思考へ
naoya
8
2.4k
Haskell でアルゴリズムを抽象化する / 関数型言語で競技プログラミング
naoya
21
7.4k
Functional TypeScript
naoya
18
6.6k
TypeScript 関数型スタイルでバックエンド開発のリアル
naoya
76
37k
シェルの履歴とイクンリメンタル検索を使う
naoya
16
6.5k
20230227-engineer-type-talk.pdf
naoya
91
84k
関数型プログラミングと型システムのメンタルモデル
naoya
63
110k
TypeScript による GraphQL バックエンド開発
naoya
29
37k
フロントエンドのパラダイムを参考にバックエンド開発を再考する / TypeScript による GraphQL バックエンド開発
naoya
67
25k
Other Decks in Technology
See All in Technology
学生・新卒・ジュニアから目指すSRE
hiroyaonoe
2
760
AIエージェントに必要なのはデータではなく文脈だった/ai-agent-context-graph-mybest
jonnojun
1
250
Claude Code for NOT Programming
kawaguti
PRO
1
100
Codex 5.3 と Opus 4.6 にコーポレートサイトを作らせてみた / Codex 5.3 vs Opus 4.6
ama_ch
0
210
AIが実装する時代、人間は仕様と検証を設計する
gotalab555
1
380
SREが向き合う大規模リアーキテクチャ 〜信頼性とアジリティの両立〜
zepprix
0
480
StrandsとNeptuneを使ってナレッジグラフを構築する
yakumo
1
130
20260204_Midosuji_Tech
takuyay0ne
1
160
こんなところでも(地味に)活躍するImage Modeさんを知ってるかい?- Image Mode for OpenShift -
tsukaman
1
170
Amazon Bedrock Knowledge Basesチャンキング解説!
aoinoguchi
0
160
配列に見る bash と zsh の違い
kazzpapa3
3
170
Cosmos World Foundation Model Platform for Physical AI
takmin
0
970
Featured
See All Featured
The Curious Case for Waylosing
cassininazir
0
240
The Pragmatic Product Professional
lauravandoore
37
7.1k
ReactJS: Keep Simple. Everything can be a component!
pedronauck
666
130k
Bioeconomy Workshop: Dr. Julius Ecuru, Opportunities for a Bioeconomy in West Africa
akademiya2063
PRO
1
56
The World Runs on Bad Software
bkeepers
PRO
72
12k
sira's awesome portfolio website redesign presentation
elsirapls
0
150
技術選定の審美眼(2025年版) / Understanding the Spiral of Technologies 2025 edition
twada
PRO
117
110k
How STYLIGHT went responsive
nonsquared
100
6k
Improving Core Web Vitals using Speculation Rules API
sergeychernyshev
21
1.4k
Save Time (by Creating Custom Rails Generators)
garrettdimon
PRO
32
2.1k
Unlocking the hidden potential of vector embeddings in international SEO
frankvandijk
0
170
Speed Design
sergeychernyshev
33
1.5k
Transcript
(PPHMF#JH2VFSZͷ /BPZB*UP ,"*;&/QMBUGPSN*OD HDQKBOJHIU
ΞδΣϯμ • #JH2VFSZ֓؍ • #JH2VFSZͷ෦ • ,"*;&/QMBUGPSN*ODͰͷ͍Ͳ͜Ζ
#JH2VFSZ֓؍
(PPHMF#JH2VFSZ
None
#JH2VFSZͱ • ڊେͳσʔλͷ42- ͳͲ ΛඵͰ࣮ߦ͢ΔΫϥυαʔϏε – ԯϨίʔυΛඵ ˞ –
8FCΠϯλʔϑΣʔε͓Αͼ3&45"1* • (PPHMFࣾͰΘΕ͖ͯͨ%SFNFMΛαʔϏεԽ – ݄$MPTFEϦϦʔε – ݄Ұൠެ։ – ܧଓతʹόʔδϣϯΞοϓ – ݄#JH2VFSZ4USFBNJOH ˞(PPHMFͷދͷࢠʮ#JH2VFSZʯΛ'MVFOUEϢʔβʔ͕Θͳ͍ཧ༝͕ͳ͘ͳͬͨཧ༝ IUUQRJJUBDPNLB[VOPSJJUFNTBDBDCCBBBG
ͲΜͳ͜ͱʹΘΕΔ͔ • Ϣʔεέʔε – ϩάղੳ – %BUBXBSF)PVTF – • ͍ͯͳ͍༻్ – ۀ%# ͍3%#.4Ͱ
ͳ͍Αɺͱ͍͏͜ͱ
#JH2VFSZͳ͍͔ͥ • جຊɺϑϧεΩϟϯͰ͕ΜΔ – 3%#.4ͷ#5SFFΠϯσοΫεͱ͔ͳ͍ • 42-Λࢄॲཧ – .11 .BTTJWFMZ1BSBMMFM1SPDFTTJOH
2VFSZ&OHJOF %SFNFM • ઍͷσΟεΫͱߴωοτϫʔΫͰεέʔϧΞτ – 5#ͷσʔλΛඵͰϦʔυ͢Δ*0
ͨͩ͠ • ͍3%#.4Ͱͳ͍ • େਓͰҰʹ͏ͷͰͳ͍ – ओʹόονॲཧʹ͏ • εΩʔϚϨεͰͳ͍ 5#نσʔλͰઢܗҎ ԼͰεέʔϧ͢Δ͕ɺٯ
ʹখ͞ͳσʔλͰඵ ͷΦʔόʔϔου͕͋Δ ͷͰ
BigQuery読書会、@harukasan 資料より引用
ଞͷྨࣅ࣮ͱͷϙδγϣχϯά • -BSHF#BUDI – ҆ఆͯ͠ڊେͳόονΛ࣮ߦͰ͖Δ – ΫΤϦ࣮ߦ࣌ͷΦʔόʔϔου͕େ͖͍ ेඵʙे –
.BQ3FEVDFɺ)BEPPQ )JWF • 4IPSU#BUDI – ΫΤϦ࣮ߦ࣌ͷΦʔόʔϔου͕NTʙඵ – ΞυϗοΫΫΤϦʹ͍͍ͯΔ – .112VFSZ&OHJOF1SFTUPɺ*NQBMBɺ#JH2VFSZ %SFNFM • 4USFBN1SPDFTTJOH – όον࣮ߦͰ͖ͳ͍͕ετϦʔϜʹରͯ͠ϦΞϧλΠϜॲཧͰ͖Δ – /PSJLSBɺ"QBDIF,BGLBɺ5XJUUFS4UPSNFUD "NB[PO3FETIJGU 4IPSU#BUDI ৄ͘͠ ͳ͍ͷͰলུ cf. Batch processing and Stream processing by SQL h;p://www.slideshare.net/tagomoris/hcj2014-‐sql
Ձ֨ • ྉۚ – σʔλอ(#݄ – ΫΤϦ5# εΩϟϯͨ͠σʔλͷαΠ ζ "NB[PO4ΑΓ࣮
͍҆ νέοτΒ͍·ͨ͠
#JH2VFSZͷ෦ ͚ͩ͢͜͠
(PPHMF#JH%BUB4UBDL • ʰ(PPHMFΛࢧ͑Δٕज़ʱ – #JH%BUB4UBDL – ('4ɺ#JH5BCMFɺ.BQ3FEVDFFUD • #JH%BUB4UBDL –
#JH%BUB4UBDLͷ্ʹߏங͞Εͨɺͷ՝Λղফ͢Δ࣮܈ – $PMPTTVT .FHBTUPSF 4QBOOFS 'MVNF+BWB %SFNFM طʹ(PPHMFࣾ #JH%BUB4UBDLͩ ͱ͔͍͏ͪΒ΄Β
#JH2VFSZͷٕज़ελοΫ (PPHMF'JMF4ZTUFN ('4 $PMPTTVT'JMF4ZTUFN $'4 $PMVNO*0 %SFNFM ࢄ'4
('4ͷվྑܕ'4 ৄࡉඇެ։ #JH2VFSZͷͨΊͷྻࢦϑΝΠϧ ϑΥʔϚοτ ฒྻ42-࣮ߦΤϯδϯ σʔληϯλʔΛ·͍ͨͰ ࢄ͞ΕͯΔσʔλΛฒྻ ͔ͭߴʹऔಘͰ͖ΔΒ͠ ͍
$PMVNO*0 Dremel: InteracIve Analysis of Web-‐Scale Datasets h;p://research.google.com/pubs/archive/36632.pdf ߦͰͳ͘ྻ୯ҐͰɻಛ
ఆྻΛγʔέϯγϟϧʹ ಡΊΔͭ$PMPTTVT ͰฒྻಡΈࠐΈ
%SFNFM Dremel: InteracIve Analysis of Web-‐Scale Datasets h;p://research.google.com/pubs/archive/36632.pdf
Root Mixer Mixer 1 Shard 0-‐8 Mixer 1
Shard 9-‐16 Mixer 1 Shard 17-‐24 Shard 0 Shard 10 Shard 12 Shard 20 Shard 24 Distributed Storage (e.g., CFS) Dremel serving tree Google BigQuery AnalyIcs P.284 Chapter 9 Understanding Query ExecuIon ࢄ
Root Mixer Mixer 1 Shard 0-‐8 Mixer 1
Shard 9-‐16 Mixer 1 Shard 17-‐24 Shard 0 Shard 10 Shard 12 Shard 20 Shard 24 Distributed Storage (e.g., CFS) Dremel serving tree Google BigQuery AnalyIcs P.284 Chapter 9 Understanding Query ExecuIon $'4 $PMVNO*0Ͱಛ ఆྻͷσʔλ͕Ұ෦ฦͬ ͯ͘Δ ࢄ ू
Root Mixer Mixer 1 Shard 0-‐8 Mixer 1
Shard 9-‐16 Mixer 1 Shard 17-‐24 Shard 0 Shard 10 Shard 12 Shard 20 Shard 24 Distributed Storage (e.g., CFS) Dremel serving tree Google BigQuery AnalyIcs P.284 Chapter 9 Understanding Query ExecuIon $'4 $PMVNO*0Ͱಛ ఆྻͷσʔλ͕Ұ෦ฦͬ ͯ͘Δ ྻΛॱ൪ʹಡΈߦ Λऔಘɻ8)&3&۟ͳ ͲΛݟͯඞཁͳߦͷΈ ʹߜΓϝϞϦͰอ࣋ ࢄ ू
Root Mixer Mixer 1 Shard 0-‐8 Mixer 1
Shard 9-‐16 Mixer 1 Shard 17-‐24 Shard 0 Shard 10 Shard 12 Shard 20 Shard 24 Distributed Storage (e.g., CFS) Dremel serving tree Google BigQuery AnalyIcs P.284 Chapter 9 Understanding Query ExecuIon $'4 $PMVNO*0Ͱಛ ఆྻͷσʔλ͕Ұ෦ฦͬ ͯ͘Δ ྻΛॱ൪ʹಡΈߦ Λऔಘɻ8)&3&۟ͳ ͲΛݟͯඞཁͳߦͷΈ ʹߜΓϝϞϦͰอ࣋ ֤TIBSE͔ΒσʔλΛू ɻྫ͑ιʔτ-*.*5 ͷߜΓࠐΈͳͲ͢Δ ࢄ ू
Root Mixer Mixer 1 Shard 0-‐8 Mixer 1
Shard 9-‐16 Mixer 1 Shard 17-‐24 Shard 0 Shard 10 Shard 12 Shard 20 Shard 24 Distributed Storage (e.g., CFS) Dremel serving tree Google BigQuery AnalyIcs P.284 Chapter 9 Understanding Query ExecuIon $'4 $PMVNO*0Ͱಛ ఆྻͷσʔλ͕Ұ෦ฦͬ ͯ͘Δ ྻΛॱ൪ʹಡΈߦ Λऔಘɻ8)&3&۟ͳ ͲΛݟͯඞཁͳߦͷΈ ʹߜΓϝϞϦͰอ࣋ ֤TIBSE͔ΒσʔλΛू ɻྫ͑ιʔτ-*.*5 ͷߜΓࠐΈͳͲ͢Δ ूͨ݁͠Ռ ΛDBMMFSʹฦ͢ ࢄ ू
#JH2VFSZͷ͍͢͝ॴ • ΧϥϜܕ*0ɺ42-ͷׂ౷࣏ – Ͱ͜Εɺ.11తʹ͘͠ͳ͍ • ͡Ό͋ɺ#JH2VFSZͷԿ͕͍͔͢͝ – (PPHMFͷͰ͔͍Πϯϑϥ
ׂͱ֖ͳ͍ŋŋŋ
͜ΜͳΫιΫΤϦͰඵɺ̐ඵͩ
,"*;&/QMBUGPSN*OD Ͱͷ͍Ͳ͜Ζ
Ϣʔεέʔε • ΞΫηεϩάͷอଘௐࠪ • ΞϓϦέʔγϣϯϩάͷղੳ %BUBXBSF )PVTF • "#ςετͷ༗ҙࠩఆ
ΞΫηεϩά
ΞΫηεϩά #JH2VFSZ • /HJOYͷϩάΛqVFOUQMVHJOCJHRVFSZͰ ૹΓଓ͚Δ – &&Ͱ҉߸Խ͞ΕͯΔΑ • Կ͔༻͕͋ͬͨΒ42-Ͱղੳ –
%BJMZ8FFLMZ.POUIMZ17 – ϓϩμΫγϣϯͷσόοά
qVFOUQMVHJOCJHRVFSZ • CZUBHPNPSJT͞ΜɺZVHVJ͞Μଞ • ઌ͔Β,"*;&/QMBUGPSN*OD͕ϝ ϯςφʹ – ࣮࣭ɺԶ QBUDIFTXFMDPNF Ͱ͢
ΞϓϦέʔγϣϯͷϩάղੳ
ϩάΛඈ͢ • 3BJMT͔ΒUEMPHHFSSVCZͰqVFOUE • qVFOUEQMVHJOCJHRVFSZͰ#2ʹඈ͢
ϩάΛඈ͢ܖػ • ϦΫΤετຖ – "QQMJDBUJPO$POUSPMMFS – ϩάΠϯϢʔβͷଐੑΛඈ͢ˠ%"6."6ͷ ࢉग़ʹ • Ϟσϧͷঢ়ଶมߋ࣌
– "DUJWF3FDPSE0CTFSWFS – ϞσϧຖʹదͳଐੑΛݟસͬͯඈ͢ – #JH2VFSZෳࡶͳ42-Ͱී௨ʹԠ͢Δ㱺ϓ ϩμΫτϚωʔδϟ͕ؾܰʹ42-ॻ͍ͯΔ
ਖ਼نԽ͋·Γ͠ͳ͍ • ελʔεΩʔϚ – %8)ͷఆ൪ͷϞσϦϯά • ϑΝΫτςʔϒϧŋŋŋϩά • ࣍ݩςʔϒϧŋŋŋϚελʔσʔλ ސ٬໊ͱ͔
– ਖ਼نԽ͠ͳ͍ͷ͕ηΦϦʔ
"#ςετ༗ҙࠩఆ • "#ςετͷαʔϏεͳͷͰ͆ • ৄࡉൿີ • SFRTFDͱ͔qVUFOEͰૹͬͯΔ ͚ͲͬͪΌΒ͞ – ˞SFRTFDͷ)551SFRVFTUqVFOUE͕όοϑΝϦϯά͢ΔͷͰ
#JH2VFSZͷ"1*ίʔϧͣͬͱগͳ͍
֎෦πʔϧͱͷଓ • ΤΫηϧ – #JH2VFSZ$POOFDUPSGPS&YDFMCZ(PPHMF – ϐϘοτੳʹ • %0.0 #*
– FYQFSJNFOUBMͳ#JH2VFSZΠϯλϑΣʔε ͋ͬͨ – 5BCMFBVϝδϟʔͲ͜ΖରԠ࢝͠ΊͯΔ
໘ͳͱ͜Ζ • qVFOUEQMVHJOCJHRVFSZ͕εΩʔϚϑΝΠϧΛཁٻ ͢Δ – ͕͔ͩ͠͠IBLPCFSB͞Μ͕QBUDIΛॻ͍ͯ͘Εͨ – W͔ΒGFUDI@TDIFNBػೳ͕͑ΔΑ • ࣍ݩςʔϒϧͷߋ৽
– 61%"5&Ͱ͖ͳ͍ͷͰ – ؒͱ͔ʹҰճফͯ͠࡞ΔɺΈ͍ͨͳ – 1SFTUPΈ͍ͨʹҧ͏σʔλιʔεΛ+0*/Ͱ͖ͨΓ͢Δͱخ ͍͠ͷ͕ͩŋŋŋ
࢛ํࢁͦͷ • 42-ͱ͍ͬͯඪ४42-͡Όͳ͍Α – 3&(&91@."5$) ͱ͔3&(&91@&953"$5 ͱ͔+40/ ͱ ͔501 ͱ͔
• ʮͲ͏ͤϑϧεΩϟϯͯ͠Δ͠ʯͱ͍͏લఏʹཱͭͱΑ ͍ – -&'5 '03."5@65$@64&$ UJNF BTEBZ (3061#:EBZͱ͔ – 3&(&91@&953"$5 UJUMF S aX BTGSBHNFOU(3061#: GSBHNFOU03%&3#:GSBHNFOU@DPVOUEFTDͱ͔ – αϒΫΤϦ7JFX
࢛ํࢁͦͷ • 61%"5&%&-&5&ͳ͍ – ཁΒͳ͍ΧϥϜʹOVMM • ΧϥϜܕ͔ͩΒOVMMͳΒ༰ྔ৯Θͳ͍ – εΩʔϚՃ؆୯ • ߋ৽جຊআͯ͠࡞Γ͠
࢛ํࢁͦͷ • (PPHMF"OBMZUJDT #JH2VFSZศརͦ͏ – ("ͷੜϩάΛ#JH2VFSZͰղੳͰ͖ΔΦϓγϣϯ – ͨͩ͠("ͷ༗ྉαʔϏε • Ͱ͔͍σʔλͷΠϯϙʔτ
– (PPHMF%BUB4UPSFʹஔ͍͔ͯΒΠϯϙʔτ͢Δͱߴ • 5BCMF%FDPSBUPST – σʔλͷ࣌ؒൣғΛࢦఆͯ͠ΫΤϦɻεΩϟϯରͷσʔλ͕খ͘͞ͳ ΔͷͰΫΤϦඅ༻ΛઅͰ͖Δ • +0*/੍ݶ.#ੲͷ – +0*/&"$)Λ͏ͱ.BQ3FEVDFͷTIV⒐FΈ͍ͨͳॲཧͰڊ େͳ+0*/ ԯYԯͱ͔ŋŋŋ ͯ͘͠ΕΔΑ
·ͱΊ • #JH2VFSZϑϧεΩϟϯͰͰ͔͍σʔλͷ 42-͕ඵͳαʔϏε • ΫιΫΤϦྗۀͰॲཧͪ͠Ό͏ΧοίΠΠ • ׂ౷࣏ (PPHMFͷ%$نͰ֖ͳ͍ ฒྻॲཧܥ
• όονɺϩάղੳͳΜ͔ʹ͑·͢ • ࢲ(PPHMFࣾͷճ͠ऀͰ͍͟͝·ͤΜ
5IBOLT ֆCZ͋ΘΏ͖