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
draft for devsummi
Search
gaopin
November 28, 2018
Technology
160
0
Share
draft for devsummi
gaopin
November 28, 2018
More Decks by gaopin
See All by gaopin
XCTestを目的別で分けるすすめ
gaopin1534
0
3.5k
The swifter way of A/B testing implementation
gaopin1534
2
1.6k
静的解析の話
gaopin1534
0
180
RxSwiftってどうなってるの?
gaopin1534
1
310
Drag'n'Drop'n'iPhone
gaopin1534
0
140
OBJ-C戦線異常なし@DevLOVE 199
gaopin1534
1
140
Other Decks in Technology
See All in Technology
Data Hubグループ 紹介資料
sansan33
PRO
0
2.9k
Zero Data Loss Autonomous Recovery Service サービス概要
oracle4engineer
PRO
5
14k
クラウドネイティブな開発 ~ 認知負荷に立ち向かうためのコンテナ活用
literalice
0
100
2026年、知っておくべき最新 サーバレスTips10選/serverless-10-tips
slsops
13
5k
AI駆動1on1〜AIに自分を育ててもらう〜
yoshiakiyasuda
0
110
AI時代にデータ基盤が持つべきCapabilityを考える + Snowflake Data Superheroやっていき宣言 / Considering the Capabilities Data Platforms Should Have in the AI Era + Declaration of Commitment as a Snowflake Data Superhero
civitaspo
0
110
最新の脅威動向から考える、コンテナサプライチェーンのリスクと対策
kyohmizu
1
650
Introduction to Sansan Meishi Maker Development Engineer
sansan33
PRO
0
390
Rapid Start: Faster Internet Connections, with Ruby's Help
kazuho
2
150
Master Dataグループ紹介資料
sansan33
PRO
1
4.6k
Introduction to Sansan for Engineers / エンジニア向け会社紹介
sansan33
PRO
6
74k
JOAI2026講評会資料(近藤佐介)
element138
1
160
Featured
See All Featured
The Organizational Zoo: Understanding Human Behavior Agility Through Metaphoric Constructive Conversations (based on the works of Arthur Shelley, Ph.D)
kimpetersen
PRO
0
310
Beyond borders and beyond the search box: How to win the global "messy middle" with AI-driven SEO
davidcarrasco
3
110
Why You Should Never Use an ORM
jnunemaker
PRO
61
9.8k
Facilitating Awesome Meetings
lara
57
6.8k
Responsive Adventures: Dirty Tricks From The Dark Corners of Front-End
smashingmag
254
22k
Thoughts on Productivity
jonyablonski
76
5.1k
Building a A Zero-Code AI SEO Workflow
portentint
PRO
0
450
Visualizing Your Data: Incorporating Mongo into Loggly Infrastructure
mongodb
49
9.9k
Sharpening the Axe: The Primacy of Toolmaking
bcantrill
46
2.8k
How to make the Groovebox
asonas
2
2.1k
A better future with KSS
kneath
240
18k
We Analyzed 250 Million AI Search Results: Here's What I Found
joshbly
1
1.2k
Transcript
How To Work With Members Working Abroad(draft) Kouhei Takamatsu
Agenda • എܠ • Կ͕େมʁʁʁ • Ͳ͏ղܾͨ͠ͷ͔ • ·ͱΊ
For • ࣌ࠩʹۤ͠ΉνʔϜͰಇ͍ͯΔਓ • ີͳίϛϡχέʔγϣϯ͕औΕͳ͍ڥͰಇ ͍͍ͯΔਓ • ίϛϡχέʔγϣϯͷͰखΓ͕ଟ͘ൃ ੜͯ͠Δਓ
tl;dr ಉظΛऔΒͳͯ͋͘Δఔ அͰ͖ΔஅثΛ࡞Ζ͏
എܠ
ϕϧϦϯʹ͋Δࢠձࣾͷ MVPΛ࡞Δ͜ͱʹͳͬͨ
۩ମతʹ • ॾʑࠐΈ2ϲ݄ • ϕϧϦϯ(༷࠷ऴܾఆ)ͱि2ճ1࣌ؒͣ ͭͷϛʔςΟϯάͷΈ • ৯ࣄϨϏϡʔαΠτͷߏங
۩ମతʹ • ॾʑࠐΈ2ϲ݄ • ϕϧϦϯ(༷࠷ऴܾఆ)ͱि2ճ1࣌ؒͣ ͭͷϛʔςΟϯάͷΈ • ৯ࣄϨϏϡʔαΠτͷߏங
۩ମతʹ • ॾʑࠐΈ2ϲ݄ • ϕϧϦϯ(༷࠷ऴܾఆ)ͱि2ճ1࣌ؒͣ ͭͷϛʔςΟϯάͷΈ • ৯ࣄϨϏϡʔαΠτͷߏங ͭΒ͍
Կ͕ਏ͍ʁ ࡞ۀ TOKIO Berlin Meeting Meeting ࡞ۀ Meeting ͜Μͳײ͡ ͜Μͳײ͡
͜Μͳײ͡
Կ͕ਏ͍ʁ ࡞ۀ TOKIO Berlin Meeting Meeting ࡞ۀ Meeting ͜Μͳײ͡ ͜Μͳײ͡
͜Μͳײ͡ ͜͜Ͳ͏͢ ΔΜʁ
Կ͕ਏ͍ʁ ࡞ۀ TOKIO Berlin Meeting Meeting ࡞ۀ Meeting ͜Μͳײ͡ ͜Μͳײ͡
͜Μͳײ͡ ͜͜Ͳ͏͢ ΔΜʁ ԿΒ͔ͷҙࢥܾఆൃੜ࣌
Կ͕ਏ͍ʁ ࡞ۀ TOKIO Berlin Meeting Meeting ࡞ۀ Meeting ͜Μͳײ͡ ͜Μͳײ͡
͜Μͳײ͡ ͜͜Ͳ͏͢ ΔΜʁ ಉظλΠϛϯά·Ͱࢭ·Δ stop…..
OR
Կ͕ਏ͍ʁ ࡞ۀ TOKIO Berlin Meeting Meeting Γ͠࡞ۀ Meeting ͜Μͳײ͡ ͦΕҧ͏Α
͜Μͳײ͡ ͜͜Ͳ͏͢ ΔΜʁ େʹखΔ ࡞ۀ ͜Μͳײ͡ Ζ
νϟοτͰฉ͍ͯ ಉظͪ0ʹͳΒͳ͍
͕࣌ࠩ͋Δ߹ͷΈͰͳ͘ ඇಉظ࡞ۀ͕࣌ؒ͋Δ߹ ීวͷ
How To Avoid This?
ಉظ͕ඞཁͳ͍͘Β͍ ༷ΛܾΊࠐΉ
ಉظ͕ඞཁͳ͍͘Β͍ ༷ΛܾΊࠐΉ μϝ
ҰिؒυΠπʹߦͬͯେ·͔ ʹܾΊͨͷΈ
ࡉ͔͍༷ FIXͯ͠ͳ͍ ચ͍ग़ͤͯͳ͍
ಉظඞཁ
Possible Approach 1
࡞ۀ TOKIO Berlin Meeting Meeting ࡞ۀ Meeting ͜Μͳײ͡ ͜Μͳײ͡ ͜Μͳײ͡
͜͜Ͳ͏͢ ΔΜʁ STOPΛڐ༰ stop…..
Pros • खΓͷൃੜ0 • ༷ʹඞ࣮ͣͳ࣮ʹͳΔ
Cons • ࡞ۀͷఀ • ࡞ۀͷ༧ଌੑͷԼ
Possible Approach 2
࡞ۀ TOKIO Berlin Meeting Meeting Γ͠࡞ۀ Meeting ͜Μͳײ͡ ͦΕҧ͏Α ͜Μͳײ͡
͜͜Ͳ͏͢ ΔΜʁ खΓΛڐ༰ ࡞ۀ ͜Μͳײ͡ Ζ
Pros • ༷͕Ұகͨ͠߹࡞ۀʹΕ͕ग़ͳ͍ • ަবʹΑ༷ͬͯΛ͢Γ߹ΘͤΔ༨͕͋Δ
Cons • खΓͷऔΓ͠ʹΑΔSTOPڐ༰Ҏ্ͷ࡞ۀ ޮͷԼ • όοΫϩά͔Βফ͑ͳ͍࡞ۀ܈͕ੜ·ΕΔ
গͳ͘ͱ࡞ۀ͕ࢭ·Δ͜ͱ ͳ͘ͳΔ ೝࣝᴥᴪʹΑΔखΓΛগͳ ͍͚ͯͩ͘͘͠
Pros • ༷͕Ұகͨ͠߹࡞ۀʹΕ͕ग़ͳ͍ • ަবʹΑ༷ͬͯΛ͢Γ߹ΘͤΔ༨͕͋Δ
ҙࢥܾఆऀͷఆ͢Δ݁Ռͱ ͷဃ͕গͳ͚Ε खΓແ͘or গͳ͘͢Δࣄ͕ Ͱ͖Δ
அͷͨΊͷج४ͷ࡞ (அث)
ෳͷ࣮͕ߟ͑ΒΕΔ߹ ޮ༻ʹґΒ࣮ͣίετ͕͍ํΛऔΔ ~ʹؔͯ͠ػೳ࣮ߦ͏͕ɺੑೳཁ݅ ઃఆ͠ͳ͍ ػೳʹؔ͠ͳ͍ͱ͜Ζͷ࣮ʹ͍ͭͯ ɺ։ൃνʔϜͷಠஅͰܾఆͯ͠ྑ͍ ~ؔ࿈ͷཁ݅ʹ͍ͭͯ։ൃνʔϜ͕ࡉ͔ ͍༷ܾఆΛͯ͠ྑ͍ͷͱ͢Δ
அثʹ͍ͭͯͷΈ߹ҙͯ͠ ͓͘
அثʹ͍ͭͯ߹ҙ͓ͯ͘͠ͱ • ಉظ࣌ʹجຊʮஅثʹଇܾͬͨఆͰ͋Δʯ ͜ͱͷઆ໌͚ͩ͢ΕΑ͍ • ൃੜͨ͠ͱܾͯ͠ఆʹର͢Δ૬ஊɺ߹ʹ ΑͬͯඍখͳखΓ͕ൃੜ͢ΔͷΈͰ͋Δ
݁Ռ • 2ϲ݄ͰࢼݧؚΊશྃ • ظؒதେ͖ͳखΓແ͠(খ͍͞ͷ͋Γ)
݁ہͷॴ
ؔऀؒͰೝࣝΛ߹ΘͤΔ͜ ͱͰ͔͠ͳ͍
ͦͷϑϨʔϜϫʔΫͱͯ͠ͷ அث ಉظճΛ͘͢ΔޮՌ͋ Δ