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WWDC動画鑑賞会📹🍱を支える技術 / WWDC Video Lunch
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WorldDownTown
October 04, 2018
Technology
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WWDC動画鑑賞会📹🍱を支える技術 / WWDC Video Lunch
WWDC開催時期にキャッチアップするために、ランチを食べながらWWDCの動画を観る習慣を作っていく話
WorldDownTown
October 04, 2018
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Transcript
88%$ಈըؑձ Λࢧ͑Δٕज़ 5IV CJU'MZFS%SJOL.FFUVQGPSJ04ΤϯδχΞ ঙ࢘ܒี!8PSME%PXO5PXO 1
࣍ w ʰ88%$ϏσΦؑձʱͱ w ϋʔυϧΛԼ͛ΔͨΊͷ w ಈըͷબఆ w ӡӦͷίπ w
ҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ w ಘΒΕͨϝϦοτ !2
wʰ88%$ϏσΦؑձʱͱ wϋʔυϧΛԼ͛ΔͨΊͷ wಈըͷબఆ wӡӦͷίπ wҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ wಘΒΕͨϝϦοτ !3
ʰ88%$ϏσΦؑձʱͱ w ࠓͷ88%$ͷ࣌ʹΩϟονΞοϓ͢ΔͨΊʹ࢝Ίͨ w िճɺϥϯν࣌ʹห৯ͳ͕ΒಈըΛݟΔ w ʮ͋ͱͰݟΔʯ͖ͬͱݟͳ͍ !4
ʰ88%$ϏσΦؑձʱͱ !5 Ҿ༻ಈըͰֶͿϞμϯͳJ04"OESPJEΞϓϦ։ൃٕज़cBJOBNFͷه IUUQTBJOBNFIBUFCMPKQFOUSZ
wʰ88%$ϏσΦؑձʱͱ wϋʔυϧΛԼ͛ΔͨΊͷ wಈըͷબఆ wӡӦͷίπ wҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ wಘΒΕͨϝϦοτ !6
"4$**XXED !7 IUUQTBTDJJXXEDDPN
"4$**XXED !8
w 88%$ͯ͢ͷηογϣϯͷॻ͖ى͜͠ w ΩʔϫʔυͰݕࡧͰ͖Δ w "MGSFEQMVHJO w IUUQTHJTUHJUIVCDPNNBUUU !9 "4$**XXED
ຊޠࣈນ w ͔Β֤ηογϣϯͰຊޠࣈນ͕ݟΕΔΑ͏ʹ w ͨͩ͠88%$͔Β͔݄ !10
wʰ88%$ϏσΦؑձʱͱ wϋʔυϧΛԼ͛ΔͨΊͷ wಈըͷબఆ wӡӦͷίπ wҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ wಘΒΕͨϝϦοτ !11
88%$ !12
"QQMF/FX'FBUVSFT !13
J04%$ !14
Ͳ͏ͬͯબͿ͔ !15 w 4MBDLͷ4JNQMF1PMM w બΕͳ͔ͬͨͷ ࣍ճʹ࣋ͪӽ͠
wʰ88%$ϏσΦؑձʱͱ wϋʔυϧΛԼ͛ΔͨΊͷ wಈըͷબఆ wӡӦͷίπ wҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ wಘΒΕͨϝϦοτ !16
ӡӦͷίπ w ू·Γ͕ѱͯ͘ڧߦ͢Δ w ࣈນΛେ͖͘͢ΔͨΊʹղ૾ΛԼ͛Δ w ࠓͷಈըʹͩ͜ΘΒͳ͍ w ࠷͙Β͍ͷಈը͕ྑ͍
!17
ӡӦͷίπ w Θ͔Βͳ͍ͱ͜ΖࢭΊΔ w ͍͠༰܁Γฦ͠ݟ͍͍ͯ w ऴΘͬͨΒײٙΛ͠߹͏ !18
େࣄͳͷଓ͚Δ͜ͱ♻ !19
wʰ88%$ϏσΦؑձʱͱ wϋʔυϧΛԼ͛ΔͨΊͷ wಈըͷબఆ wӡӦͷίπ wҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ wಘΒΕͨϝϦοτ !20
.FBTVSJOH1FSGPSNBODF 6TJOH-PHHJOH !21 88%$4FTTJPO ύϑΥʔϚϯεܭଌͷͨΊͷPTTJHOQPTUͷ͍ํ
%FWFMPQJOH$PNQMJDBUJPOT GPS"QQMF8BUDI4FSJFT !22 "QQMF8BUDI4FSJFTͷ৽͍͠XBUDIGBDFͷ$PNQMJDBUJPOͷ࣮
"EWBODFE4DSPMMWJFXTBOE 5PVDI)BOEMJOH5FDIOJRVFT !23 88%$4FTTJPO 6*4DSPMM7JFX6*(FTUVSF3FDPHOJ[FSΛݶք·ͰΧελϚΠζ͍ͯ͠Δ
wʰ88%$ϏσΦؑձʱͱ wϋʔυϧΛԼ͛ΔͨΊͷ wಈըͷબఆ wӡӦͷίπ wҙ֎ͱΒΕͯͳͦ͞͏ͳ͓͢͢ΊϏσΦ wಘΒΕͨϝϦοτ !24
J04ͷ৽ػೳΛ࣮Ͱ͖ͨ !25 ϩάΠϯϖʔδ ΞΧϯτύεϫʔυࣗಈೖྗ 88%$4FTTJPO *NQMFNFOUJOH"VUP'JMM $SFEFOUJBM1SPWJEFS&YUFOTJPOT
ࣗಈతʹΩϟονΞοϓ !26 w ෳਓͰश׳Խͨ͜͠ͱͰҰਓͰΔΑΓଓ͘ w ॏ͍ࠊΛ্͛ͣʹࣗಈతʹֶΜͰ͍Δײ͡
·ͱΊ w 88%$ͷಈըຊޠԽ͞Ε͍ͯΔͷͰ߅ͳ͍ͣ w ແཧͳ͘ଓ͚ΒΕΔΈͱڥΛ࡞Δ͜ͱ͕େࣄ w ޫͷ͍ͨͬͯͳ͍ྑ͍ಈը͕·ͩ·ͩͨ͘͞Μ͋Δ !27
͋Γ͕ͱ͏͍͟͝·ͨ͠ !28