楽天、Codex導入で問題解決速度を2倍に
楽天はOpenAIのコーディングエージェント「Codex」を活用し、ソフトウェア開発のMTTRを50%削減、CI/CDレビューを自動化、フルスタックビルドを数週間で実現することで、より速く安全なソフトウェア提供を実現している。
キーポイント
開発速度の大幅向上
Codexの導入により、ソフトウェアの平均修復時間(MTTR)を50%削減し、問題解決速度を2倍に高速化した。
CI/CDプロセスの自動化
継続的インテグレーション・継続的デリバリー(CI/CD)のレビューを自動化し、開発フローの効率化を実現している。
フルスタック開発の迅速化
フルスタックのビルドを数週間で完了できるようになり、従来よりも大幅に開発期間を短縮している。
実用的なAI活用事例
大規模企業におけるAI支援開発ツールの具体的な導入成果を示す実証ケースとなっている。
影響分析・編集コメントを表示
影響分析
この記事は、AI支援開発ツールが大規模企業の実務で具体的な成果を上げていることを示す重要な事例である。特にMTTR50%削減という定量的な効果は、AIツールの実用性を証明しており、企業の開発プロセス変革の参考となる。
編集コメント
大企業の実務でAI支援開発ツールが具体的な成果を出している事例は、業界全体の導入促進に影響を与える可能性がある。定量的な効果(MTTR50%削減)が示されている点が説得力を持つ。
Rakutenは、OpenAIのコーディングエージェント「Codex」を活用し、ソフトウェアのリリースをより迅速かつ安全に行っています。これにより、MTTR(平均修復時間)を50%短縮し、CI/CD(継続的インテグレーション/継続的デリバリー)のレビューを自動化。さらに、数週間でのフルスタックビルドの提供を実現しています。
原文を表示
Rakuten(opens in a new window) is a global innovation company operating across e-commerce, fintech, and mobile communications, serving both consumers and merchants at massive scale. With 30,000 employees worldwide, its engineering teams ship across a large, complex product ecosystem where both speed and reliability are essential.That’s why Yusuke Kaji, General Manager of AI for Business at Rakuten, has spent the past year pushing agentic workflows deeper into how teams plan, build, and validate software. Codex—the coding agent from OpenAI—has become a core part of Rakuten’s engineering stack, especially where the company needs to move faster without compromising security.Over the past year, Rakuten engineers have used Codex across operations and software delivery to compress incident response (including a ~50% reduction in mean time to recovery, or MTTR), strengthen CI/CD with automated code review and vulnerability checks, and support more autonomous development on complex projects.“We don’t just care about generating code quickly. We care about shipping safely. Speed without safety is not success.”—Yusuke Kaji, General Manager of AI for BusinessInside Rakuten’s engineering team, their AI agenda is crisp and intentionally operational. Kaji frames the work around three priorities that teams rally behind:Build faster (“Speed!! Speed!! Speed!!”): Teams use Codex in operational workflows, including KQL-based monitoring and diagnosis, to accelerate root-cause analysis and remediation, helping compress MTTR by up to 50%.Build safer (“Get things done”): Codex is invoked in CI/CD for code review and vulnerability checks, applying internal standards automatically so teams can ship quickly with guardrails.Operate smarter (“AI-nization”): Codex drives larger, ambiguous projects forward from specification toward working implementations, reducing dependence on perfectly-defined requirements, enabling more autonomous execution, and ultimately compressing quarter-long efforts into weeks.Codex maps directly to each priority as a dependable agent in a broader toolkit, showing up where speed, safety, and autonomy create compounding value.Speed at Rakuten includes recovery time, not just development velocity.Teams use KQL (Azure’s query system for logs and telemetry) to monitor APIs and analyze signals. Codex works alongside these workflows to help identify root causes and suggest fixes, reducing the time between alert and resolution.From a site reliability engineering (SRE) perspective, this shortens the path from detection to remediation. Instead of manually stitching together queries, logs, and patches, engineers can focus on validating and deploying fixes.Rakuten estimates this approach can reduce MTTR by approximately 50% when issues occur. Or more simply put: Rakuten has used Codex to fix problems twice as fast when something breaks.As shipping accelerates, review and deployment can become bottlenecks. Rakuten addresses this by integrating Codex directly in its CI/CD pipeline.Codex conducts code review and vulnerability checks before changes reach production. Rakuten feeds internal coding principles and standards into these workflows so reviews align with company expectations.“We provide our internal coding principles to Codex,” Kaji says. “Using the same principles, it reviews whether the code aligns with our standards.”The result: safety checks happen consistently and automatically, enabling teams to move faster without lowering standards.Rakuten’s third priority—AI-nization—focuses on autonomy. Codex is used not only for review and maintenance, but also for executing larger, ambiguous projects end-to-end. Instead of requiring perfectly defined specifications, Codex can move forward from partial requirements and produce usable artifacts.“The latest Codex models can read between the lines,” Kaji says. “Even if the requirements are not perfectly defined, it understands what we’re trying to build.”One example: building a mobile app version of an existing web-based AI agent service. Codex implemented the entire specification, involving a full stack implementation with a Python/FastAPI backend and a Swift/SwiftUI iOS app, including all the backend APIs, without step-by-step human instruction. Codex cut the development time for this project from one quarter to weeks.As Codex takes on more code generation work, Rakuten is shifting the engineer’s role to writing clearer specifications and verifying outputs against measurable standards. “Our role is not to check every line of code anymore,” Kaji says. “Our role is to define clearly what we want and establish how to verify it.”Rakuten has supported this shift through hands-on workshops across engineering, product, and non-technical teams—contributing to Codex playing a central role in helping teams ship faster, operate more safely, and scale autonomous development across the organization.
関連記事
今日のまとめ
AI日報で今日の重要ニュースをまとめ読み