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Mackerel in さくらのクラウド
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Tatsuhiko Kubo
August 14, 2025
Technology
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Mackerel in さくらのクラウド
「国産サービスで実践するオブザーバビリティ入門」の発表資料
https://mackerelio.connpass.com/event/361275/
Tatsuhiko Kubo
August 14, 2025
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Transcript
͘͞ΒΠϯλʔωοτΫϥυࣄۀຊ෦ςΫϊϩδʔࣨ43&άϧʔϓ ϓϦϯγύϧΤϯδχΞٱอୡ .BDLFSFMJO͘͞ΒͷΫϥυ
ࣗݾհ w ٱอୡ !UBLVCPTBLVSB w ͘͞ΒΠϯλʔωοτ w Ϋϥυࣄۀຊ෦ςΫϊϩδʔࣨ w
ීஈͷ͓ࣄ w NBOVBMTBLVSBBEKQͷϝϯςφϯε w Τϯϋϯευ-#ͷ։ൃӡ༻ w FUD
.BDLFSFMJO͘͞ΒͷΫϥυ
.BDLFSFMJO͘͞ΒͷΫϥυ w ϏδωεϓϥϯΛར༻ w IUUQTKBNBDLFSFMJPIJHIFSQMBO w ར༻͍ͯ͠ΔओͳαʔϏεγεςϜ Ұ෦ൈਮ w
Τϯϋϯευ-# w γϯϓϧ.2 w "1*ήʔτΣΠ w *BB4ج൫ w FUD w ҎલςΫϊϩδʔࣨ چ43&ࣨ ͕ΦʔφʔγοϓΛ࣋ͭαʔϏεγεςϜͰͷ࠾༻͕ओͩͬͨ ͕ɺݱࡏଞνʔϜͰͷ࠾༻૿͍͑ͯΔ
.BDLFSFMͷϢʔβཧ w Ϣʔβͷ͕ͦΕͳΓʹଟ͍ͷͰࣗಈԽඞਢ w 4".-࿈ܞΛಋೖ w IUUQTNBDLFSFMJPKBEPDTFOUSZBEWBODFETBNMBVUIFOUJDBUJPO w +*51SPWJTJPOJOHʹΑΓαΠϯΞοϓͱಉ࣌ʹΞΧϯτ࡞͕Մೳ w
.BDLFSFMʹͭͷϢʔβʔݖݶ͕͋Δ w ΦʔφʔɺཧऀɺҰൠϢʔβʔɺӾཡऀ w ֤ݖݶͰͰ͖Δ͜ͱͰ͖ͳ͍͜ͱΛཧղ͓ͯ͘͠ w IUUQTNBDLFSFMJPKBEPDTFOUSZTQFDBVUIPSJUZ
*B$GPS.BDLFSFM w Πϝʔδͱͯ͠ˣͷΑ͏ͳྲྀΕ w (JU)VCͰ13Λ࡞ w 13࡞ΛτϦΨʔʹ$*$% (JU)VC"DUJPOT ͰUFSSBGPSNQMBO w
ϨϏϡʔޙɺ13͕Ϛʔδ͞ΕͨΒUFSSBGPSNBQQMZBVUPBQQSPWF w .BDLFSFMͷઃఆߋ৽جຊతʹ͜ͷྲྀΕͰߦ͏ ྫ֎͋ΓFHΧελϜμο γϡϘʔυ
*B$GPS.BDLFSFM
ϦϙδτϦϨΠΞτ Πϝʔδ
$0%&08/&34ʹΑΔݖݶҕৡ
5FSSBGPSNԽ͢ΔϦιʔε w μογϡϘʔυɿNBDLFSFM@EBTICPBSE w έʔεόΠέʔε w ϞχλʔɿNBDLFSFM@NPOJUPS w νϟϯωϧɿNBDLFSFM@DIBOOFM w
௨άϧʔϓɿNBDLFSFM@OPUJ fi DBUJPO@HSPVQ w αʔϏεɿNBDLFSFM@TFSWJDF
.BDLFSFMʹ֎ܗࢹΛՃCZ8FCίϯιʔϧ
.BDLFSFMʹ֎ܗࢹΛՃCZ5FSSBGPSN tfcmt -config .tfcmt.yml plan -— terraform plan tfcmt -config
.tfcmt.yml plan -— terraform apply -auto-approve
֎ܗࢹʹؔ͢Δখωλ w .BDLFSFM͕༻͢Δ*1ΞυϨεͷൣғΛ+40/ͰऔಘͰ͖ΔΑ͏ʹͳͬͨ w IUUQTNBDLFSFMJPNFUBJQSBOHFTKTPO w Ҏલˣͷϖʔδ͔Βίϐϖ͢Δඞཁ͕͋ͬͨ w IUUQTTVQQPSUNBDLFSFMJPIDKBBSUJDMFT w
ࣗಈԽ͕ḿΔWJB"OTJCMF 5FSSBGPSN
0QFO5FMFNFUSZରԠ w .BDLFSFMͱͷ࿈ܞʹ͍ͭͯ*BB4ج൫νʔϜΛத৺ʹऔΓΈத w ͘͞Βͷ*BB4ج൫ͷϞχλϦϯάͱ0QFO5FMFNFUSZɿIUUQT LOPXMFEHFTBLVSBBEKQ w ͘͞ΒͷΫϥυ͚ͷ0QFO5FMFNFUSZ$PMMFDUPSΛ044Ͱެ։͍ͯ͠·͢ w IUUQTHJUIVCDPNTBDMPVETBDMPVEPUFMDPMMFDUPS
.BDLFSFMͷར༻ʹؔ͢Δ՝ײ w 5FSSBGPSNະରԠͷϦιʔε͕݁ߏ͋Δ w 0SHBOJ[BUJPOɺ6TFS ͱ"VUIPSJUZ ɺFUD w ܖ͕0SHBOJ[BUJPO୯Ґ w
ؾܰʹ0SHBOJ[BUJPOΛ࡞͢Δͷ͕͍͠ w "1*Ωʔͷݖݶ͕ڧ͍ "MM3FBE8SJUFͷΈ w "DUJWJUZ-PH
͘͞ΒͷΫϥυͱ0CTFSWBCJMJUZ
ϞχλϦϯάεΠʔτ w ͘͞ΒͷΫϥυ͕ఏڙ͢Δ0CTFSWBCJMJUZͷͨΊͷϓϥοτϑΥʔϜ w Ќ൛ػೳػೳͱͯ͠ఏڙத w IUUQTNBOVBMTBLVSBBEKQDMPVEBQQMJBODFNPOJUPSJOHTVJUFJOEFYIUNM w ΤϯϋϯευϩʔυόϥϯαͰϞχλϦϯάεΠʔτ࿈ܞΛ։࢝͠·ͨ͠
w IUUQTDMPVETBLVSBBEKQOFXTFOIBODFEMCNPOJUPSJOHTVJUF w ਵ࣌ଞαʔϏεͱͷ࿈ܞΛਐΊ͍͖ͯ·͢
͘͞Βࣾʹ͓͚Δ0CTFSWBCJMJUZվળʹؔ͢ΔऔΓΈ w ͚ࣾʹ0CTFSWBCJMJUZʹؔ͢Δษڧձ.BDLFSFMͷϋϯζΦϯΛ։࠵ w ӡ༻ʹؔ͢ΔΨΠυϥΠϯͷඋ w FHఆظόονδϣϒ TZTUFNEUJNFS DSPOͳͲ ͷཧํɾΨΠυϥΠϯ
w ಛఆͷϝϯόʔνʔϜ͚͕ͩ0CTFSWBCJMJUZͷվળʹऔΓΉͷͰͳ͘ɺ֤ ։ൃऀͷͱͯ͠औΓΉମ੍