まずは作ってみる! プロトタイプ開発に役立つ AWS の始め方 AWS Autotech Forum 2020 #1

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まずは作ってみる! プロトタイプ開発に役立つ AWS の始め方 AWS Autotech Forum 2020 #1 まずは作ってみる! プロトタイプ開発に役立つ AWS の始め方 AWS Autotech Forum 2020 #1 アマゾン ウェブ サービス ジャパン株式会社 部長/シニアソリューションアーキテクト 岡本 京 ([email protected]) 2020/08/07 © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 自己紹介 岡本 京(おかもと ひろし) • 所属と職種 • 部長/シニアソリューションアーキテクト • 製造、自動車業界のお客様を担当 • 経歴 • 前職はネットワークメーカーの プリセールスエンジニア • 好きな AWS サービス • AWS Hyperplane © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 本セッションの対象者 • MaaS、データ活用など社内外の新しいビジネスやサービスを 企画、開発されている方 本セッションのゴール • 自分で動くものを作ることのメリットをご理解頂く • AWS がプロトタイプ開発に役立つことをご理解頂く • AWS を試してみよう、という気持ちを持って頂く © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 目次 • なぜプロトタイプ開発が重要か • なぜ AWS がプロトタイプ開発に役立つのか • どうやって始めるか • まとめ © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. なぜプロトタイプ開発が重要か © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 新しいビジネスで成功をつかむには? 正解は誰にもわからないが… Amazon の考え方を紹介します © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 失敗を受け入れ、実験を繰り返す 我々が他より際立っているところは失敗についてだと 思う。我々は世界一失敗している企業であるし、実例 を挙げるとキリがない。 失敗と発明は切っても切り離せないものだ。発明のた めには実験が必要だが、何が正解かやる前からわかっ ているようなものなどを実験とは言わない。 大企業の多くは発明を有り難がるが、 それを達成す るために経験しなければならない一連の失敗で苦しみ たいとは考えない。 © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 実験 = 仮説検証の進め方 ※ 技術/システム面のみに着目 Proof Minimum 机上検討 of Prototype Viable Concept Product ユーザー価値と 構想のキーとなる ユーザー体験のフローが 最低限必要な機能が備わった 体験の明確化 技術要素の検証 一通り実現されたプロダクト 本番品質のプロダクト 数日~ 数週間~ 数ヶ月~ © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon における仮説の具現化プロセス 5 つの質問に回答する プレスリリースを書いてひたすら洗練 © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. さて、PoC、Prototype… 技術的専門性 (学習コスト) PoC PoC Prototype 学習することが多すぎて 時間が足りない… PoC PoC Prototype 必要な作業が多すぎて 自分ができる範囲 時間が足りない… 開発規模 (作業工数) © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. さて、PoC、Prototype… 技術的専門性 (学習コスト) PoC PoC Prototype 技術的/工数的に自分ではできない、と諦めていませんか? 学習することが多すぎて 時間が足りない… AWS がお手伝いできます!PoC PoC Prototype 必要な作業が多すぎて 自分ができる範囲 時間が足りない… 開発規模 (作業工数) © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. なぜ AWS がプロトタイプ開発に役立つのか © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 「差別化に繋がらない重労働」の排除 オンプレミス クラウド アプリケーション作成 アプリケーション作成 アプリケーション作成 スケールアウト設計 スケールアウト設計 スケールアウト設計 定形運用設計 定形運用設計 定形運用設計 ミドルウェアパッチ ミドルウェアパッチ ミドルウェアパッチ ミドルウェア導入 ミドルウェア導入 ミドルウェア導入 OSパッチ OSパッチ OSパッチ OS導入 OS導入 OS導入 HWメンテナンス HWメンテナンス HWメンテナンス ラッキング ラッキング ラッキング 電源・ネットワーク 電源・ネットワーク 電源・ネットワーク 仮想サーバー マネージドサービス お客様が担当 AWS が担当 © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 175 を超えるサービス群 Compute Media Services Blockchain Security, Identity and Compliance Robotics Business Applications Mobile Management & Governance Application Integration AR & VR Analytics Networking & Content Delivery Game Tech Developer Tools Customer Engagement Database Migration and Transfer Machine Learning AWS Cost Management AWS Cost Management Storage © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. これらを組み合わせて「アーキテクティング」 各 AWS サービスは単一の 目的に沿った機能を持つ それを組み合わせて自身が 実現したいサービスのアー キテクチャを構成する よく使う AWS サービスは 一度習得すれば知識の使い 回しができる © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. AWS サービスができることは日々増えてゆく 1957 新サービス/機能のリリース数は年々増大 これまで開発を伴っていた部分が不要になるケースも 1430 1017 722 516 280 159 24 48 61 82 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 補足: 数字は累積ではありません AWS を活用すれば 専門領域だけスタートアップ と協業してみよう 技術的専門性 (学習コスト) PoC インフラは自社で作って、 アプリの開発は協力会社に依頼しよう PoC Prototype 自分ができる範囲 + AWS に任せられる範囲 PoC PoC Prototype 開発規模 (作業工数) © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 自分でプロトタイプ開発ができると • 仮説検証のスピードが圧倒的に向上 • 自信を持って関連部門やパイロット ユーザーと議論できる • 動くものに向き合うことで顧客価値 を更に深く考えてブラッシュアップ できる なにより、手を動かして作る のは楽しい! © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. どうやって始めるか? © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 「無料」「自習」「動かす」を重視した学習パス シナリオに沿って 少し複雑な アカウント AWS シンプルなシステム 完成済みシステム PoC/Prototype を準備する アーキテクティング を動かしてみる を動かしてみる 気になった AWS サービス を深掘りする © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 「無料」「自習」「動かす」を重視した学習パス AWS Hands-on for Beginners シナリオに沿って 少し複雑な アカウント AWS シンプルなシステム 完成済みシステム PoC/Prototype を準備する アーキテクティング を動かしてみる を動かしてみる 気になった AWS サービス を深掘りする © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. AWS Hands-on for Beginners • 手を動かして AWS の基礎を学 ぶことができるシナリオ集 • 好きな時に視聴可能 • 短い動画でステップ毎に説明 • 継続的にシナリオを追加中! https://aws.amazon.com/jp/aws-jp-introduction/aws-jp-webinar-hands-on/ © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. ハンズオンはじめの一歩:アカウントの作り方& IAM 基本のキ ※ AWS アカウント作成は社内で発行できるプロセスがあるかどうかも確認ください © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. オリジナル API の作成を通してサーバーレスの基本を学ぼう © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. AWS Lambda と AWS AI Services を組み合わせて作る 音声文字起こし & 感情分析パイプライン © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 「無料」「自習」「動かす」を重視した学習パス AWS Hands-on for Beginners シナリオに沿って 少し複雑な アカウント AWS シンプルなシステム 完成済みシステム PoC/Prototype を準備する アーキテクティング を動かしてみる を動かしてみる 気になった AWS サービス AWS Black Belt Online Seminar を深掘りする © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. AWS Black Belt Online Seminar • AWS サービス単体やカテゴリに 関してスペシャリストが詳しく 説明する Webinar のアーカイブ • PDF と動画が公開 • 生放送も是非ご覧ください! • 火曜 12:00-, 水曜 18:00- https://aws.amazon.com/jp/aws-jp-introduction/aws-jp-webinar-service-cut/ © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 「無料」「自習」「動かす」を重視した学習パス AWS Hands-on for Beginners AWS Solutions シナリオに沿って 少し複雑な アカウント AWS シンプルなシステム 完成済みシステム PoC/Prototype を準備する アーキテクティング を動かしてみる を動かしてみる 気になった AWS サービス AWS Black Belt Online Seminar を深掘りする © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. AWS Solutions • 目的に応じて構成された完成済 みアーキテクチャのテンプレー ト群 • ベストプラクティスに沿って運 用効率、セキュリティ、コスト 効率なども考慮して設計 • ガイドも併せて公開(英語のみ もあり) https://aws.amazon.com/jp/solutions/ © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 機械学習を利用した予知保全 • 機械学習モデルにより設備、部品の残 り寿命を予測 • NASA が提供するターボファンエンジ ン劣化シミュレーションのオープンデ ータを利用 • キーサービス: Amazon SageMaker • 車両部品の予知保全をご検討の方 • 時系列データの活用をご検討の方 におすすめ! https://aws.amazon.com/jp/solutions/implementations/predictive-maintenance-using-machine-learning/?nc1=h_ls © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. スマートプロダクトソリューション • コネクテッドデバイスの典型的なユー スケースをカバー • データの蓄積と可視化 • デバイス管理/操作用 Web コンソール • E メールや SMS のプッシュ通知 • デバイスセキュリティ設定の監査 • キーサービス: AWS IoT Core • 車両とスマートホームデバイス、スマ ートフォンの連携をご検討の方 におすすめ! https://aws.amazon.com/jp/solutions/implementations/smart-product-solution/?nc1=h_ls © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Auto Check-In App • 写真を撮影すると顔画像が画像認識 API に送信され顔認証が実施される • マネージドサービスによりお客様が学 習処理を行うことなく実現 • キーサービス: Amazon Rekognition • パーソナライズドエクスペリエンスの 実装をご検討の方 におすすめ! https://aws.amazon.com/jp/solutions/implementations/auto-check-in-app/?nc1=h_ls © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 「無料」「自習」「動かす」を重視した学習パス AWS Hands-on for Beginners AWS Solutions シナリオに沿って 少し複雑な アカウント AWS シンプルなシステム 完成済みシステム PoC/Prototype を準備する アーキテクティング を動かしてみる を動かしてみる 気になった AWS サービス AWS Black Belt Online Seminar を深掘りする © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 次のステップ 作りたいものが見えてきたら • ホワイトボーディング、アーキテクティング • AWS Solutions Architect にご相談ください! さらに本番化に向け MVP を検討する際には • AWS Well-Architected Framework による非機能要件のレビュー • AWS Solutions Architect にご相談ください! © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. その他のリソース 公式ドキュメント 先人の知恵も借りましょう! 仕様だけでなく ベストプラクティスもカバー https://docs.aws.amazon.com/ja_jp/ © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. 最後に Builder としての一歩を踏み出しましょう! © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. アンケートへのご協力をお願いします お客様へのよりよい情報提供に 努めてまいりますので、ぜひ 皆さまの声をお聞かせくださ い。 アンケート回答後の最終ページ で、本日の資料のダウンロード サイトURLが表示されます。 https://bit.ly/2DykTzF © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Thank you! © 2020, Amazon Web Services, Inc. or its Affiliates. All rights reserved. .
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