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
はじめてのプログラミングにGo
Search
michiru shirakawa
October 28, 2019
Programming
2
1.7k
はじめてのプログラミングにGo
Go Conference 2019 Autumn LT
michiru shirakawa
October 28, 2019
Tweet
Share
More Decks by michiru shirakawa
See All by michiru shirakawa
2025年予言の書
mishirakawa
1
360
あらゆる変化を受け入れながら 働きつづける - 介護・学業編
mishirakawa
3
3.7k
まだまだ楽しい!あらゆる変化を受け入れながら 働きつづけるコツ
mishirakawa
0
1.6k
技術書典のネタづくり
mishirakawa
0
560
Go の並行処理を体験してみよう
mishirakawa
1
160
VimConf の効用
mishirakawa
0
41
Lose Weight with Vim and Go
mishirakawa
0
210
Introduction of Women Who Go Tokyo
mishirakawa
2
3.1k
Vim が全然身につかない自分がなんとかなりそうな?唯一の方法
mishirakawa
0
1.4k
Other Decks in Programming
See All in Programming
TipKitTips
ktcryomm
0
170
モジュラモノリスにおける境界をGoのinternalパッケージで守る
magavel
0
3.6k
AHC061解説
shun_pi
0
380
PostgreSQL を使った快適な go test 環境を求めて
otakakot
0
560
Ruby x Terminal
a_matsuda
7
600
RAGでハマりがちな"Excelの罠"を、データの構造化で突破する
harumiweb
9
2.9k
Ruby and LLM Ecosystem 2nd
koic
1
900
文字コードの話
qnighy
44
17k
Docコメントで始める簡単ガードレール
keisukeikeda
1
120
Claude Codeログ基盤の構築
giginet
PRO
7
3.4k
仕様漏れ実装漏れをなくすトレーサビリティAI基盤のご紹介
orgachem
PRO
0
110
ベクトル検索のフィルタを用いた機械学習モデルとの統合 / python-meetup-fukuoka-06-vector-attr
monochromegane
2
470
Featured
See All Featured
Game over? The fight for quality and originality in the time of robots
wayneb77
1
140
Context Engineering - Making Every Token Count
addyosmani
9
750
Data-driven link building: lessons from a $708K investment (BrightonSEO talk)
szymonslowik
1
980
Everyday Curiosity
cassininazir
0
160
Keith and Marios Guide to Fast Websites
keithpitt
413
23k
Getting science done with accelerated Python computing platforms
jacobtomlinson
2
140
Principles of Awesome APIs and How to Build Them.
keavy
128
17k
First, design no harm
axbom
PRO
2
1.1k
VelocityConf: Rendering Performance Case Studies
addyosmani
333
24k
Mobile First: as difficult as doing things right
swwweet
225
10k
Deep Space Network (abreviated)
tonyrice
0
92
Conquering PDFs: document understanding beyond plain text
inesmontani
PRO
4
2.5k
Transcript
͡Ίͯͷϓϩάϥϛϯάʹ Women Who Go Tokyo micchie (P$POGFSFODF`"VUVNO
!NJDDIJFCFBS • 8PNFO8IP(P5PLZP • HJSMTWJN • 1SPKFDU.BOBHFS &OHJOFFS!-*/& • (P
(PPHMF$MPVE1MBUGPSN 7JN • ,FZCPBSE #FBS #FFS $ZDMJOH • γχΞͷΩϟϦΞ ϓϩάϥϛϯάڭҭ
8PNFO8IP(P 8PNFO8IP(Pɺʹαϯϑϥϯ γείͰɺঁੑɾδΣϯμʔϚΠϊϦςΟͷํ ͷͨΊͷ (PͷάϩʔόϧίϛϡχςΟͱͯ͠ ઃཱ͞Ε·ͨ͠ɻ IUUQTXXXXPNFOXIPHPPSH
8PNFO8IP(P5PLZP 8PNFO8IP(P5PLZPɺ݄ʹຊͰ ॳΊͯͷ 8PNFO8IP(PͷίϛϡχςΟͱͯ͠ઃཱ ͞Ε·ͨ͠ɻ IUUQTXPNFOXIPHPUPLZPHJUIVCJP
(P Λ৮ͬͯΈ͍ͨʂͰͲ͏ͨ͠Βʁ ଞͷݴޠܦݧࡁΈʂ • ͲΜͲΜࣗͯ͠ਐΊΔɻ • ࣭ؾܰʹͰ͖·͢ɻ ϓϩάϥϛϯά͕͡Ίͯʂ • جૅ͔Βઆ໌Λ͠·͢ɻ
• ࣗͰखΛಈ͔ͤ·͢ɻ ղ ܾ
͡Ίͯͷϓϩάϥϛϯάʹ
None
(Pͷಛ B ॻ͖ํ͕γϯϓϧ C ڧ͍ܕ͕͋Δ D ඪ४ϥΠϒϥϦ͕ͨ͘͞Μ E ศརπʔϧ͕ͨ͘͞Μ F
(P 1MBZHSPVOEͷศར͞
(Pͷಛ B ॻ͖ํ͕γϯϓϧ C ڧ͍ܕ͕͋Δ D ඪ४ϥΠϒϥϦ͕ͨ͘͞Μ E ศརπʔϧ͕ͨ͘͞Μ F
(P 1MBZHSPVOEͷศར͞ ਖ਼ղ͕Θ͔Γ͍͢ ؒҧ͍ʹؾ͖͍ͮ͢ (PΛೖΕΕಈ͘ ։ൃʹඞཁͳศརπʔϧ ڥߏங͠ͳͯ͘ࢼͤΔ
• ਖ਼ղ͕Θ͔Βͳ͍ɻ • ؒҧ͍ͬͯΔ͚ΕͲͳΜͱͳ͘ಈ͘ɻ • ඞཁͳՃύοέʔδɺԿΛબ͍͍͔Θ͔Βͳ͍ɻ • πʔϧ্هͱಉ͡ཧ༝ɺΘ͔Βͳ͍ɻ • ͦͦڥߏஙΛ͍ͯ͠Δؒʹ৺ંΕΔɻ
͡Ίͯͷ᠘
ͦ͏ͩʂ (P Λ͡ΊΑ͏ʂ
͘͘ձɾϋϯζΦϯɾॻ੶ • ࣮ࡍʹखΛಈ͔͢ɻ • ϦΞϧͳ༰ɾԿΛ͍ͭͬͯ͘Δͷ͔͕͔Δɻ • ࣌ؒͰՌɾ݁Ռ͕ग़ΔΑ͏ͳΈɻ • ਖ਼͍͠ใʹ͋ͨΔΑ͏ʹ͚Δɻ •
ͳͥͦ͏ͳͷ͔ɺઆ໌Λ͢Δɻ ͡ΊͯͷਓͷͨΊʹؾΛ͚͍ͭͯΔ͜ͱ
͡Ίͯʹඞཁͳͷ 1$ खΛಈ͔ͨ͢Ίʹඞਢʂ ϝʔϧΞυϨε (NBJM͋ͨΓͰऔಘͯ͠Β͍·͢ɻ (JU)VCΞΧϯτ ιʔείʔυͷΓऔΓʹඞཁͱ͍ͯ͠·͢ɻ ։ൃڥ ڥͷͳ͍ํʹɺ (PPHMF$MPVE4IFMMΛར༻ͯ͠Β͍ͬͯ·͢ɻ
(Pͷ։ൃΛ͢Δ্ͰඞཁͳͷҰ௨Γଗ͍ͬͯ·͢ɻ ςΩετΤσΟλ ڥͷͳ͍ํʹɺ (PPHMF$MPVEͷιʔεΤσΟλΛར༻ͯ͠Β͍ͬͯ·͢ɻ ͖ͪ ͳΜͱ͔ͯ͠ϓϩάϥϜΛॻ͖͍ͨɾΓ͍ͨؾ࣋ͪɻ
͜Μͳ͜ͱ͕Ͱ͖ΔΑ͏ʹͳΔʂ • -*/&#PU͕࡞ΕΔʂ • 4MBDL#PU͕࡞ΕΔʂ • 7JN ͱ࿈ܞͨ͠Γ • େྔͷσʔλΛऔΓ·ͱΊͨΓ
• "1*ΫϥΠΞϯτΛͭͬͨ͘Γ • 7JNͱ࿈ܞͨ͠Γ ͋ ͦ ͼ ͠ ͝ ͱ
ͦ͏ɺ(P ͳΒͶɻ