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
計画する技術 / Planning is Skill
Search
Sponsored
·
Your Podcast. Everywhere. Effortlessly.
Share. Educate. Inspire. Entertain. You do you. We'll handle the rest.
→
Yoshiaki Yoshida
April 14, 2017
Technology
9.8k
13
Share
計画する技術 / Planning is Skill
計画する技術
http://kakakakakku.hatenablog.com/entry/2017/04/14/203459
Yoshiaki Yoshida
April 14, 2017
More Decks by Yoshiaki Yoshida
See All by Yoshiaki Yoshida
技術ブロガーを育てる!ブログメンタリングで何を教えているのか / Passion for Blog Mentoring
kakakakakku
8
38k
プログラミング初心者に教えるときは「身近な比喩」が重要なのだ! / Metaphor is Important for Beginner Programmer
kakakakakku
2
5.8k
プロジェクトの成功を支える ZenHub と モブプログラミング / ZenHub and Mob Programming
kakakakakku
1
5.9k
楽しく!アウトプットを習慣化しよう / Let's Enjoy Output
kakakakakku
3
7k
さぁ!今すぐプロジェクトリーダーに立候補しよう / Be a Project Leader
kakakakakku
3
10k
プロジェクトをリードする技術 (Kyash 社 再演) / Project Leading is Skill for Kyash
kakakakakku
4
2.3k
プロジェクトをリードする技術 / Project Leading is Skill
kakakakakku
45
52k
Mackerel で ECS をどこまでモニタリングできるのか / Monitoring ECS with Mackerel
kakakakakku
0
14k
[2018/01/30] Redash 初心者向けハンズオン / Redash Meetup #0.1
kakakakakku
0
2.5k
Other Decks in Technology
See All in Technology
20260415_生成AIを専属DSに_自動レポート作成_ハンズオン_交通事故データ
doradora09
PRO
0
110
Introduction to Sansan, inc / Sansan Global Development Center, Inc.
sansan33
PRO
0
3k
昔はシンプルだった_AmazonS3
kawaji_scratch
0
300
20年前の「OSS革命」に学ぶ AI時代の生存戦略
samakada
0
190
実践ハーネスエンジニアリング:TAKTで実現するAIエージェント制御 / Practical Harness Engineering: AI Agent Control Enabled by TAKT
nrslib
9
3.9k
ネットワーク運用を楽にするAWS DevOps Agent活用法!! / 20260421 Masaki Okuda
shift_evolve
PRO
2
190
Rebirth of Software Craftsmanship in the AI Era
lemiorhan
PRO
4
1.8k
CDK Insightsで見る、AIによるCDKコード静的解析(+AI解析)
k_adachi_01
2
180
AIペネトレーションテスト・ セキュリティ検証「AgenticSec」ご紹介資料
laysakura
0
3.9k
Snowflake Intelligence導入で 分かった活用のコツ
wonohe
0
110
Eight Engineering Unit 紹介資料
sansan33
PRO
3
7.2k
AWS認定資格は本当に意味があるのか?
nrinetcom
PRO
1
260
Featured
See All Featured
Become a Pro
speakerdeck
PRO
31
5.9k
Sam Torres - BigQuery for SEOs
techseoconnect
PRO
0
240
A brief & incomplete history of UX Design for the World Wide Web: 1989–2019
jct
1
350
The untapped power of vector embeddings
frankvandijk
2
1.7k
DevOps and Value Stream Thinking: Enabling flow, efficiency and business value
helenjbeal
1
160
The SEO Collaboration Effect
kristinabergwall1
0
420
Why Our Code Smells
bkeepers
PRO
340
58k
Six Lessons from altMBA
skipperchong
29
4.2k
Prompt Engineering for Job Search
mfonobong
0
260
The Straight Up "How To Draw Better" Workshop
denniskardys
239
140k
The Web Performance Landscape in 2024 [PerfNow 2024]
tammyeverts
12
1.1k
The Impact of AI in SEO - AI Overviews June 2024 Edition
aleyda
5
790
Transcript
ܭը͢Δٕज़ !LBLBLBLBLLV ࣾษڧձ
ΞδΣϯμ ‣ લఏ ‣ ͳͥܭը͕ॏཁͳͷ͔ʁ ‣ ܭըΛཱͯͯߦ͢Δͱ͖ʹҙ͍ࣝͯ͠Δ͜ͱ ‣ ·ͱΊ
લఏ
લఏ ‣ ࠓ։ൃϓϩηεʹґଘ͠ͳ͍zҰൠతͳzΛ͢Δ ‣ ͷzܭըzܦݧ ‣ େख֎ࢿܥ4*FSʢ##ʣΥʔλʔϑΥʔϧ ‣ 8FCاۀʢ##ʣΞδϟΠϧ ‣
8FCاۀʢ#$ʣܕͳ͠ ‣ ࠓίί $FSUJpFE4DSVN.BTUFS
ͳͥܭը͕ॏཁͳͷ͔ʁ
lແବzΛແͨ͘͢Ί
lແବzΛແͨ͘͢Ί ‣ ࠓΔ͖͜ͱΛࠓΔ ‣ l༏ઌॱҐzΛ໌֬ʹ͢Δ ‣ λεΫͷґଘؔʢ ΫϦςΟΧϧύεʣΛ໌֬ʹ͢Δ
l৴པߴzΛ૿ͨ͢Ί
l৴པߴzΛ૿ͨ͢Ί ‣ ৴པߴΛ૿ͨ͢ΊʹlଋΛकΔz͜ͱ͕ॏཁ ‣ ৄ͘͠ʮͭͷश׳ʯʹॻ͍ͯ͋Δ ‣ lଋΛकΔzͨΊʹlదͳܭըz͕ඞཁ ‣ ʮ͋ͷਓ͕ݴ͏ͳΒޭͦ͠͏ʯײ͕ॏཁ ‣
ͦͷͨΊʹޭମݧΛੵΈ্͍͛ͯ͘
ଋͨ࣌ؒ͠ʹΕͯ͘Δਓ ‣ ʮͳΒྑ͍Ͱ͠ΐʁʯ ‣ ʮ࣌ؒͳΒྑ͍Ͱ͠ΐʁʯ ‣ ʮిंԆ͔ͩΒ͠ΐ͏͕ͳ͍ΑͶʁʯ ‣ ଓ͘ͱʮͲʔͤࠓΕͯ͘ΔΜͩΖ͏ͳʯͱࢥΘΕͯ͠·͏ ‣
l৴པߴθϩzͳঢ়ଶ
ܭըΛཱͯͯߦ͢Δͱ͖ʹ ҙ͍ࣝͯ͠Δ͜ͱ ʘܭݸʗ
λεΫΛzࡉ͔͘zચ͍ग़͢
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ λεΫͷཻ͕େ͖͗͢Δͱߟྀ࿙Ε͕ൃੜ͘͢͠ͳΔ ‣ ʮਐྑ͍Ͱ͢ʯͱݴΘΕͯ৴ጪੑ͕ΠϚΠν ‣ νέοτࡉ͔͘ચ͍ग़͢͜ͱΛҙࣝ͢Δ ‣ dͰऴΘΔ͙Β͍ͷཻ͕ྑ͍ ‣
lখ͞ͳޭzΛੵΈ্͛Δ ƅЧƅ ʮ͜ͷνέοτෳࡶͳͷͰϲֻ݄͔Γͦ͏Ͱ͢ʯ
lྃͷఆٛzΛܾΊΔ
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ ࣮·ͩlগ͠z࡞ۀ͕͋ΔͷʹΫϩʔζͯ͠͠·͏ ‣ ຊʹlগ͠zͳͷʁ ‣ ͦͷ··ޙճ͠ʹͳͬͯlϲ݄ܦաzʁ ‣ Ϋϩʔζ͢ΔlྃͷఆٛzΛܾΊ͓ͯ͘ ƅЧƅ
ʮ΄΅ऴΘͬͨͷͰνέοτΛΫϩʔζ͠·͢ʯ
ઓུతʹzόοϑΝzΛ֬อ͢Δ
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ ࠔͳ͜ͱʹlෆ࣮֬ੑz͕͏ ‣ ಛʹେ͖ͳܭըͩͱlෆ࣮֬ੑz͕ݦஶʹͳΔ ‣ εέδϡʔϧʹόοϑΝΛ֬อ͢Δ ‣ طଘػೳʹো͕ى͖ͨͱ͖ʹ͑Δ ‣
lٕज़తෛ࠴zlෆ࣮֬ੑzʹؚ·ΕΔ ƅЧƅ ʮΫϦςΟΧϧͳߟྀ࿙Ε͕͋ΓશମʹӨڹ͠·͢ʯ
ͲͷΑ͏ʹlόοϑΝzΛ֬อ͢Δ͔ ‣ lϑΟϘφονྻzΛϕʔεʹ͢Δ ‣
‣ ʢҙʣ୯ҐEBZͰͳ͍ ‣ lෆ࣮֬ੑzΛߟྀͨ͠όοϑΝΛ֬อͰ͖Δ ‣ lϓϥϯχϯάϙʔΧʔzಉ͡ࢥͰߦ͏
ඞཁͳͷlෆ࣮֬ੑzΛݮΒ͢͜ͱ ‣ ৗʹlόοϑΝz͕ඞཁͰͳ͍ ‣ lෆ࣮֬ੑzΛ࠷ݶʹ͑ͯܭըͰ͖Δ͜ͱlॏཁͳεΩϧz ‣ ϏδωεϩδοΫʹৄ͍͠ ‣ ΞʔΩςΫνϟʹৄ͍͠ ‣
ٕज़ʹৄ͍͠ ‣ γεςϜӡ༻ʹৄ͍͠ ͜ͷΑ͏ͳਓ͕ܭը͢Δͱ lෆ࣮֬ੑzΛ ࠷ݶʹ͑Δ͜ͱ͕Ͱ͖Δ ˣ ͜ͷΑ͏ͳਓΛ૿ͤΔͱ ։ൃ৫ڧ͘ͳΔ
εʔύʔϚϯҭܭը ‣ ʑͷγεςϜ͍߹ΘͤରԠΛϥϯμϜʹৼΔ ‣ ຖճϥϯμϜʗिϩʔςʔγϣϯʗͦͷଞ ‣ ֤ϝϯόʔ͕όϥϯεྑ͘γεςϜશମΛΔػձʹͳΔ ‣ ৬छϩʔςʔγϣϯ ‣
ఆظతʹผͷ৬छΛܦݧ͢Δ ‣ ΞϓϦέʔγϣϯ୲͕ΠϯϑϥΛ୲ͨ͠ΓʢఋࢠೖΓʣ
ܭըΛzఆظతʹzݟ͢
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ ͔֬ʹຊؾΛग़͞ͳ͍ͱμ ϝͳ໘͋Δ͚Ͳ ‣ ܭըΛݟ͢͜ͱʹΑͬͯམͪண͘͜ͱଟʑ͋Δ ‣ ܭըΠςϨʔςΟϒͳΠϕϯτͱߟ͑Δ ‣ ܭըʹνΣοΫϙΠϯτΛઃ͚Δ͜ͱޮՌత
ƅЧƅ ʮਐѱ͍ͷͰࠓపͰϦΧόϦ͠·͢ʯ
lฒߦλεΫzΛগͳΊʹ͢Δ
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ ฒߦλεΫ͕ଟ͗͢Δͱશͯத్ʹͳͬͯ͠·͏ ‣ ґଘ͍ͯ͠ΔޙଓλεΫશͯࢭ·ͬͯ͠·͏ ‣ l8*1੍ݶzΛઃ͚ͯूத͢Δ ‣ νʔϜݸਓ ƅЧƅ
ʮฒߦͯ͠ਐΊͯΔͨΊશ෦ऴΘ͍ͬͯ·ͤΜʯ IUUQCMPHDSJTQTFIFOSJLLOJCFSH
lѱ͍Βͤz͙͢ʹ͑Δ
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ ઌि·Ͱʮ༧ఆ௨ΓͰ͢ʯͬͯݴͬͯͨͷʹಥવʁ ‣ ͬͱલ͔Βݫ͍͠༧ஹͳ͔ͬͨͷʁ ‣ ʮ(JU)VCͷίϝϯτʹॻ͍͓͍ͯͨΜͰ͚͢Ͳʯ ‣ ࠔ͍ͬͯΔ͜ͱ΄Ͳl͙͢ʹzlޱ಄Ͱz͑ΔΑ͏ʹ͢Δ ƅЧƅ
ʮ໌༧ఆͩͬͨϦϦʔεݫͦ͠͏Ͱ͢ʯ
lίϯςΩετΛݶఆͨ͠z.5(
ҰൠతʹΑ͘ݟΔ෩ܠ ‣ ͘͠ͳΔͱڞ༗͕ޙճ͠ʹͳͬͯ͠·͏߹͋Δ ‣ ՂڥΛܴ͑ͨΒlؔऀʹߜͬͯzຖͤΔΛઃ͚Δ ‣ ݸਓతʹ༦ձʢ࣌ࠒʹ࠷େؒʣ͕൪ྑ͍ ‣ ༦ձ͕͗͢ΔͱlΜͩ··ա͗ͯ͠·͏z͕͋Δ ƅЧƅ
ʮͦ͠͏͔ͩͬͨΒ͑ΒΕͯ·ͤΜͰͨ͠ʯ
·ͱΊ
ܭըεΩϧΛߴΊΑ͏ ‣ ελʔτΞοϓͰܭըඇৗʹॏཁ ‣ lෆ࣮֬ੑzΛ࠷ݶʹ͑ͯܭըͰ͖Δ͜ͱlॏཁͳεΩϧz ‣ ܭըlΠςϨʔςΟϒͳzΠϕϯτ ‣ ܭըΛߦ͢ΔͨΊʹl৴པzͱlରzඞਢ