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
Dine流、出会いのCS術
Search
Sponsored
·
Your Podcast. Everywhere. Effortlessly.
Share. Educate. Inspire. Entertain. You do you. We'll handle the rest.
→
Dine
February 28, 2018
Business
0
650
Dine流、出会いのCS術
2018年2月22日開催のCS Hack用資料
Dine
February 28, 2018
Tweet
Share
Other Decks in Business
See All in Business
akippa株式会社|Company Deck
akippa
0
610
イークラウド会社紹介 ~挑戦で、つながる社会へ~
ecrowd
1
4.7k
本気で解かれるべき 課題を創る(アジェンダ・セッティング)
hik0107
2
280
YassLab (株) サービス紹介 / Introduction of YassLab
yasslab
PRO
3
41k
jinjer recruiting pitch
jinjer_official
0
150k
会社説明資料
xinghr
0
170
サステナビリティレポート2025
hamayacorp
0
190
採用サイト 中途ページ添付資料
naomichinishihama
0
290
2026年3月7日(土)放射性金属がやってくるか 廃炉原発等のクリアランスについて
atsukomasano2026
0
170
続・もっと!「契約交渉よりも顧客との協調を」 〜成果報酬型やってみた結果とその先の挑戦〜
sasakendayo
1
1.8k
株式会社Gizumo_会社紹介資料(2026.1更新)
gizumo
0
570
会社紹介資料202601.pdf
gmofh_hr_team
0
1.6k
Featured
See All Featured
How to build a perfect <img>
jonoalderson
1
4.9k
How to Grow Your eCommerce with AI & Automation
katarinadahlin
PRO
0
110
Designing Experiences People Love
moore
144
24k
Lightning Talk: Beautiful Slides for Beginners
inesmontani
PRO
1
440
Leading Effective Engineering Teams in the AI Era
addyosmani
9
1.6k
Mobile First: as difficult as doing things right
swwweet
225
10k
Ecommerce SEO: The Keys for Success Now & Beyond - #SERPConf2024
aleyda
1
1.8k
職位にかかわらず全員がリーダーシップを発揮するチーム作り / Building a team where everyone can demonstrate leadership regardless of position
madoxten
57
50k
My Coaching Mixtape
mlcsv
0
47
Visualizing Your Data: Incorporating Mongo into Loggly Infrastructure
mongodb
49
9.9k
Avoiding the “Bad Training, Faster” Trap in the Age of AI
tmiket
0
75
Docker and Python
trallard
47
3.7k
Transcript
1 %JOFྲྀ ग़ձ͍ͷ$4ज़
2 KEISUKE KAMIJO ্ᑍܠհදऔక$&0 ౦ژେֶֶ෦ଔۀɻେֶࡏֶதʹϒϩάʮ͕ΜΕɺੜڠͷനੴ͞Μʂʯ Λ։ઃɻॻ੶Խ͞Εͨಉ࡞ൃߦ෦ສ෦ͷେώοτͱͳΔɻɺ גࣜձࣾσΟʔɾΤψɾΤʔʹೖࣾɻʹࣾ৽نࣄۀཱҊ੍Ͱ༏উࣾ͠ ࣨʹଐɻιʔγϟϧήʔϜࣄۀͷ্ཱͪ͛ʹࢀՃ͠ɺ%F/"ॳͷήʔϜ ʮւτϨδϟʔʯΛϦϦʔεɻͦͷޙɺΧφμελδΦ্ཱͪ͛ͷͨΊόϯ Ϋʔόʔʹෝɻɺ%F/"Λୀ৬͠ɺגࣜձࣾ.SL$PΛڞಉۀɻ
TAKASHI MORIOKA Ԭਸऔక$50 ౦ژେֶେֶӃ৽ྖҬՊֶݚڀՊम࢜՝ఔଔۀɻɺגࣜձࣾ σΟʔɾΤψɾΤʔʹೖࣾɻಉࣾʹͯιʔγϟϧήʔϜࣄۀͷ্ཱͪ͛ʹࢀՃ͠ɺ ࣾձతϒʔϜͱͳͬͨιʔγϟϧήʔϜʮո౪ϩϫΠϠϧʯΛ։ൃɻɺ ಉࣾΛୀ৬͠ಠཱɻɺגࣜձࣾ.SL$PΛڞಉۀɻ ੜڠͷനੴ͞Μ✕ո౪ϩϫΠϠϧɺͷ্ཱͪ͛ਓ ܦӦਞུྺ
3 %JOFͱʁ ୈੈͷ ϚονϯάΞϓϦ
4 ถࠃͷϚονϯάαʔϏεࢢ
5 ถࠃͷϚονϯάαʔϏεࢢ
6 ถࠃͷࠗ׆ࣄ Offline 65.1% Other Online 19.2% Online Dating 15.7%
ʹ݁ࠗͨ͠ ถࠃਓΧοϓϧͷ ग़ձ͍ͷ͖͔͚ͬ Source: Marital satisfaction and break-ups differ across on-line and off-line meeting venues ग़ձ͍ͷ͖͔͚ͬҐ͕ϚονϯάαʔϏε ҐɹϚονϯάαʔϏε Ґɹ৬ Ґɹ༑ਓͷհ Ґɹ4/4 Ґɹֶߍ
7 ถࠃͷϚονϯάαʔϏεࢢ
8 ถࠃͷϚονϯάαʔϏεࢢ ୈੈ
9 ʹϩʔϯνͨ͠5JOEFSҰؾʹτοϓϓϨΠϠʔʹ ച্Ґ ."6ઍສਓ ถࠃͷϚονϯάαʔϏεࢢ
10 ࠗ׆Ҏ֎ͷత͕ϝΠϯͰɺਅʹग़ձ͑ͳ͍ ୈੈɿ5JOEFSͷ༻త ҐɿΤϯλϝɺҐɿΧδϡΞϧσʔτɺҐɿΤΰϒʔετ ୈੈʹର͢Δෆຬ <ୈੈ> <ୈੈ>
11 ୈੈͷෆຬΛղܾ͢Δͷ͕ɺୈੈͷσʔτ݁ܕ ୈੈͷొ ୈੈ ݕࡧܕϚονϯά ୈੈ ΧδϡΞϧϚονϯά ୈੈ σʔτ݁ܕϚονϯά ݕࡧ
໘͍͘͞ ϝοηʔδ ໘͍͘͞ ࠓίί
12 %JOFͱʁ ถࠃൃɺσʔτʹίϛοτ͢ΔɺσʔτηοςΟϯάΞϓϦ
13 ຊͷϚονϯάαʔϏεࢢ
14 ຊͷϚονϯάαʔϏεࢢ
15 ຊͷϚονϯάαʔϏεࢢ ग़ձ͍ܥ
16 ຊͷϚονϯάαʔϏεࢢ ʙ
17 ຊͷϚονϯάαʔϏεࢢ
18 %JOFͷ$4Ϛʔέઓུ தͷਓ͕ݟ͑Δ$4 ݸͷ࣌ͷϚʔέςΟϯά
19 %JOFͷ$4Ϛʔέઓུ ͓͍߹Θͤʹɺ$&0ͷ্ᑍ͕ࣗΒରԠ
20 %JOFͷ$4Ϛʔέઓུ 5XJUUFSͰੵۃతʹབྷΈʹߦ͖·͢
21 %JOFͷ$4Ϛʔέઓུ σʔτੵۃతʹ͓ࢧ͍ʹߦ͖·͢
22 %JOFͷ$4Ϛʔέઓུ தͷਓ͕ݟ͑Δ ৴པײ ۙײ
23 ࠓޙͷຊͷϚονϯάαʔϏεࢢ ୈҰੈ ݕࡧܕϚονϯά ୈೋੈ ΧδϡΞϧϚονϯά ୈࡾੈ σʔτ݁ܕϚονϯά