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
Devlove関西_プロジェクトマネジメントの勘所
Search
Sponsored
·
Your Podcast. Everywhere. Effortlessly.
Share. Educate. Inspire. Entertain. You do you. We'll handle the rest.
→
KASUYA, Daisuke
February 09, 2017
Business
4
2.4k
Devlove関西_プロジェクトマネジメントの勘所
KASUYA, Daisuke
February 09, 2017
Tweet
Share
More Decks by KASUYA, Daisuke
See All by KASUYA, Daisuke
エンジニアリングマネージャーの成長の道筋とキャリア / Developers Summit 2025 KANSAI
daiksy
7
5.7k
はてなの開発20年史と DevOpsの歩み / DevOpsDays Tokyo 2025 Keynote
daiksy
6
4.1k
わたしがEMとして入社した「最初の100日」の過ごし方 / EMConfJp2025
daiksy
22
14k
はてなのチーム開発一巡り / Hatena Engineer Seminar 30
daiksy
0
880
ふりかえりカンファレンスLT/Get Wild
daiksy
0
2k
スクラムマスターの採用事情 / scrum fest fukuoka 2023
daiksy
1
3k
スクラムのスケールとチームトポロジー / Scaled Scrum and Team Topologies
daiksy
1
1.5k
Scrum@Scaleの理論と実装 / RSGT2022
daiksy
2
11k
リモートワークに最適なスクラムチームの人数についての仮説 / Kyoto Agile 2021
daiksy
0
300
Other Decks in Business
See All in Business
クリヤマホールディングス㈱採用資料
uemura2024
0
6.9k
Crisp Code inc.|わたしたちの事例 / 実績 - Works
so_kotani
0
1.9k
Staffing and Procurement for Fast Flow
mploed
1
110
株式会社カウシェ Company Deck
kauche
2
220k
第47期 中間期決算説明会資料
tsuchihashi
0
500
今いい感じのチーム構成と営み2025冬 〜Scrumっぽいけどチョット違う形〜
sasakendayo
0
380
フルカイテン株式会社 採用資料
fullkaiten
0
84k
ログラス会社紹介資料 / Loglass Company Deck
loglass2019
15
510k
株式会社IDOM_FACT BOOK 2026
idompr
0
2k
クリヤマジャパン㈱採用資料
uemura2024
0
6.5k
TECTURE 採用資料 / We are hiring
tecture
1
6.5k
「事業目線」の正体 〜3つのフェーズのCTO経験から見えてきた、EMが持つべき視点 @ EMConf JP 2026
sotarok
7
4.5k
Featured
See All Featured
Code Review Best Practice
trishagee
74
20k
The AI Search Optimization Roadmap by Aleyda Solis
aleyda
1
5.5k
A better future with KSS
kneath
240
18k
Music & Morning Musume
bryan
47
7.1k
Large-scale JavaScript Application Architecture
addyosmani
515
110k
Practical Tips for Bootstrapping Information Extraction Pipelines
honnibal
25
1.8k
Bridging the Design Gap: How Collaborative Modelling removes blockers to flow between stakeholders and teams @FastFlow conf
baasie
0
490
Exploring anti-patterns in Rails
aemeredith
2
300
The Cost Of JavaScript in 2023
addyosmani
55
9.8k
Jess Joyce - The Pitfalls of Following Frameworks
techseoconnect
PRO
1
120
Believing is Seeing
oripsolob
1
99
What the history of the web can teach us about the future of AI
inesmontani
PRO
1
500
Transcript
৺ཧత҆શΛอূ͞Εͨ νʔϜͮ͘Γ 2017-02-09 DevLOVEؔ ϓϩδΣΫτϚωδϝϯτͷצॴ
ࣗݾհ പ୩େี(@daiksy) ▸ גࣜձࣾ ͯͳ ▸ MackerelνʔϜαϒσΟϨΫλʔ ▸ ScalaMatsuriελοϑ ▸
ScalaؔSummitελοϑ ▸ Web+DB Press vol.96
ࣗݾհ Mackerel
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શʹ͍ͭͯ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ SIerͰۀγεςϜͷडୗ։ൃ ▸ ։ൃνʔϜϦʔμʔ ▸ ମҭձܥͳงғؾͷձࣾͰɺ࣌ͷ্࢘ମҭձܥͩͬͨ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ యܕతͳϚΠΫϩϚωδϝϯτ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ యܕతͳϚΠΫϩϚωδϝϯτ ▸ ຖਐḿใࠂձٞ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ యܕతͳϚΠΫϩϚωδϝϯτ ▸ ຖਐḿใࠂձٞ ▸ ίʔυϨϏϡʔͰݫ͍ࣤ͠
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ యܕతͳϚΠΫϩϚωδϝϯτ ▸ ຖਐḿใࠂձٞ ▸ ίʔυϨϏϡʔͰݫ͍ࣤ͠ ▸ ϛεΛඞཁҎ্ʹࣤΔ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ యܕతͳϚΠΫϩϚωδϝϯτ ▸ ຖਐḿใࠂձٞ ▸ ίʔυϨϏϡʔͰݫ͍ࣤ͠ ▸ ϛεΛඞཁҎ্ʹࣤΔ
▸ ࣭ʹରͯ͠ʮͦΜͳ͜ͱΘ͔Βͳ͍ͷ͔ʯ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ ͦͷ݁Ռ…
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ ͦͷ݁Ռ… ▸ ͍ੜ࢈ੑ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ ͦͷ݁Ռ… ▸ ͍ੜ࢈ੑ ▸ Ӆṭ͞ΕΔਐḿͷΕ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ ͦͷ݁Ռ… ▸ ͍ੜ࢈ੑ ▸ Ӆṭ͞ΕΔਐḿͷΕ ▸ ϛε͕͘͢ใࠂ͞Εͳ͍
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ ͦͷ݁Ռ… ▸ ͍ੜ࢈ੑ ▸ Ӆṭ͞ΕΔਐḿͷΕ ▸ ϛε͕͘͢ใࠂ͞Εͳ͍
▸ ࠷ѱͷϚωδϝϯτ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ ▸ ͦͷ݁Ռ… ▸ ͍ੜ࢈ੑ ▸ Ӆṭ͞ΕΔਐḿͷΕ ▸ ϛε͕͘͢ใࠂ͞Εͳ͍
▸ ࠷ѱͷϚωδϝϯτ ▸ ࠓৼΓฦΔͱɺϝϯόʔΛ৴པ͍ͯ͠ͳ͔ͬͨ ▸ ͕ࣗͬͨํ͕͍ɺΈ͍ͨͳ৽Ϧʔμʔʹ͋Γ͕ͪͳ᠘
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ Gitlab.com ͷࣄྫ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ Gitlab.com ͷࣄྫ ▸ ΦϖϛεͰDB͕ඈͿ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ Gitlab.com ͷࣄྫ ▸ ෮چ࡞ۀΛyoutubeͰ৴
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ Gitlab.com ͷࣄྫ ▸ ͳͥ͜Μͳ͜ͱ͕Ͱ͖Δͷ͔ʁ
৺ཧత҆શ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣦഊஊ͔Βͷল ▸ ਐḿใࠂ -> ݟੵΓͱͿΕΔͷ ▸ ίʔυϨϏϡʔ -> ਓʹΑͬͯॻ͖ํߟ͑ํҧ͏
▸ ϛε -> ਓؒඞͣϛεΛ͢Δ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ιϑτΣΞ։ൃʹϛε͖ͭͷ ▸ αʔόʔϥοΫͰ͏͔ͬΓLANέʔϒϧൈ͍ͯ͠·͏… ▸ ຊ൪DBΛফͯ͠͠·͏… ▸ όοΫΞοϓͷࣦഊ…
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ιϑτΣΞ։ൃʹϛε͖ͭͷ ▸ ͳΜͰϝϯόʔ͜ΜͳϛεΛ͢ΔΜͩΖ͏ɻɻɻ ▸ աڈ1ϲ݄ΛৼΓฦͬͯΈͯɺࣗҰϛεΛ͠ͳ ͔͔ͬͨʁ ▸ ϛε୭ͰΔ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ιϑτΣΞ։ൃʹϛε͖ͭͷ ▸ ϛεΛࣤΓ͚ͭΔɾࣤ͢Δ ▸ ౖΒΕͨ͘ͳ͍ ▸ Ӆͨ͠Γɺ͝·͔ͨ͠Γ͢Δ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શΛอূ͠Α͏ ▸ ϛε୭ʹͰى͜Γ͏Δ ▸ ϝϯόʔͰڠྗͯ͠ϦΧόϦ͠Α͏ ▸ ݸਓͷ͍ͤͰͳ͘νʔϜͷͰରॲ͠Α͏ ▸ ૬ஊ͍͢͠งғؾͮ͘Γ
▸ ϛεͷӨڹΛগͳ͘͢ΔΈͮ͘Γ ▸ ϖΞΦϖϨʔγϣϯ ▸ ఆܗ࡞ۀͷࣗಈԽ ▸ εςʔδϯάڥͰͷࣄલݕূ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શ͕อূ͞Ε͍ͯͳ͍νʔϜ ▸ ϛεΛͨ͠ΒౖΒΕΔ ▸ ·ΘΓʹ૬ஊͮ͠Β͍ ▸ ਐḿใࠂ͕ͭΒ͍ ▸ ϛεΕΛӅͨ͠Γ͝·͔͢
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શ͕อূ͞Ε͍ͯΔνʔϜ ▸ ϛεϝϯόશһͰϦΧόϦ ▸ ࠔΓ͝ͱؾܰʹ૬ஊ ▸ ਐḿ͕ΕͨΒνʔϜͰରॲ ▸ ϛεΕૣ͍ஈ֊Ͱใࠂͨ͠ํ͕ಘ
▸ ϝϯόʔ͕ॿ͚ͯ͘ΕΔ ▸ ݁Ռతʹੜ࢈ੑ͕͋Δ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣄྫ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣄྫ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ࣄྫ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શ͕อূ͞Ε͍ͯΔνʔϜ ▸ ΞΠσΞΛग़͍͢͠νʔϜͷงғؾ ▸ BtoBαʔϏεͱ͍͑Ϣʔβ͞ΜͷརศੑΛଛͳΘͳ͍ൣ ғͰଟগͷ༡ͼ৺ڐ͞ΕΔͩΖ͏ͱ͍͏ҙݟʹΑͬͯޙ ԡ͠ ▸ ݁ՌతʹϢʔβମݧΛ্͢Δػೳͱൃల
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શͱ͵Δ·౬ ▸ ϛεΛڐ༰͢Δ ▸ ਐḿ͕ΕͯΊͳ͍ ▸ Θ͔Βͳ͚ΕͳΜͰ૬ஊ͢Δ ▸ ೳྗ͕͍͜ͱΛڐ༰͢Δ͜ͱʹͳΒͳ͍͔ʁ
▸ ͨͩͷ͵Δ·౬ͳͷͰʁ
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શͱ ▸ ࣄʹ͕͏ ▸ ৺ཧత҆શΛอূ͢Δ͕ɺ࣋ͬͯΒ͏ ▸ ҆શͳڥͰɺࣗͷࣄʹରͯ͠ͷΛ࣋ͭ ▸ ࣗͷλεΫΛྃͤ͞ΔͨΊʹશྗΛਚ͘͢
▸ ϛεΕࣗͷΛશ͏͢ΔͨΊʹνʔϜʹ૬ஊ͢Δ ▸ ࣗͷࣄΛऴΘΒͤΔͨΊʹ࣭Λ܁Γฦ͢
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ৺ཧత҆શʹकΒΕͨ׆͖׆͖ͱͨ͠ νʔϜΛͭ͘Ζ͏
৺ཧత҆શΛอূ͞ΕͨνʔϜͮ͘Γ ͝ਗ਼ௌ͋Γ͕ͱ͏͍͟͝·ͨ͠