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Mansoor AK

Member since 2026

Bronze League

2768 points
Model Armor:保護您部署的 AI 應用程式 Earned Apr 29, 2026 EDT
AI 世界的安全防護簡介 Earned Apr 29, 2026 EDT
開發人員的負責任 AI 技術:隱私權與安全性 Earned Apr 29, 2026 EDT
開發人員的負責任 AI 技術:公平性與偏誤 Earned Apr 29, 2026 EDT
開發人員的負責任 AI 技術:可解釋性與透明度 Earned Apr 29, 2026 EDT
Arcade Voyage: Modern Application Development Earned Apr 29, 2026 EDT
機器學習運作 (MLOps) 與 Vertex AI:模型評估 Earned Apr 28, 2026 EDT
生成式 AI 適用的機器學習運作 (MLOps) Earned Apr 28, 2026 EDT
Dialogue Design Earned Apr 28, 2026 EDT
Arcade Trail: Data Migration Earned Apr 28, 2026 EDT
Arcade Adventure: GKE Operations and Networking Earned Apr 27, 2026 EDT

本課程將複習 Model Armor 的基本安全功能,讓您具備使用這項服務的能力。您將瞭解 LLM 的相關安全風險,以及 Model Armor 如何保護 AI 應用程式。

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人工智慧 (AI) 帶來轉型可能,但全新資安挑戰也隨著出現。本課程介紹資料安全和保護的策略,可幫助相關領域的領導者,在企業內部安全地管理 AI。您可以瞭解如何建立框架,主動辨別和減輕 AI 特有的風險、保護機密資料、確實法規遵循,並打造堅韌的 AI 基礎架構。我們提供四個不同產業的案例,帶您探索如何實際應用這些策略。

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本課程涵蓋「AI 隱私權」和「AI 安全性」這兩個重要主題。我們將介紹實用的方法和工具,協助您運用 Google Cloud 產品和開放原始碼工具,導入 AI 隱私權和安全性的建議做法。

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本課程旨在說明負責任 AI 技術的概念和 AI 開發原則,同時介紹各項技術,在實務上找出公平性和偏誤,減少 AI/機器學習做法上的偏誤。我們也將探討實用方法和工具,透過 Google Cloud 產品和開放原始碼工具,導入負責任 AI 技術的最佳做法。

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本課程旨在說明 AI 的可解釋性和透明度概念、探討 AI 透明度對開發人員和工程師的重要性。課程中也會介紹實務方法和工具,有助於讓資料和 AI 模型透明且可解釋。

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On Google Cloud, building an app usually means handling more than just the code. You’ll need to deploy it, connect services, and keep things running properly. In this voyage, you’ll host a web app, set up a deployment pipeline, and build a REST API with Cloud Run. You’ll also try out Flutter and set up a Python development environment. You’ll work with VPC networks, load balancing, and clean up unused resources along the way. It’s a practical set of tasks that reflects how apps are actually run on Google Cloud.

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本課程針對評估生成式和預測式 AI 模型,向機器學習從業人員介紹相關的基礎工具、技術和最佳做法。模型評估是機器學習的重要領域,確保這類系統能在正式環境中提供可靠、準確且成效優異的結果。 學員將深入瞭解多種評估指標與方法,以及適用於不同模型類型和工作的應用方式。此外,也會特別介紹生成式 AI 模型帶來的獨特難題,並提供有效的應對策略。透過 Google Cloud Vertex AI 平台,學員將瞭解在模型挑選、最佳化和持續監控方面,該如何導入穩健的評估程序。

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本課程旨在提供必要的知識和工具,協助您探索機器學習運作團隊在部署及管理生成式 AI 模型時面臨的獨特挑戰,並瞭解 Vertex AI 如何幫 AI 團隊簡化機器學習運作程序,打造成效非凡的生成式 AI 專案。

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78%—or nearly 8 in 10—business leaders say Google Cloud helps them stay ahead in the age of AI. A big part of that comes down to how teams build and connect intelligent systems. Here, you’ll build and manage conversational agents, and use speech-to-text and translation APIs to handle different types of input. You’ll also move from monolithic apps to microservices on GKE, connect workflows using webhooks, and use observability tools to keep track of what’s happening. IAM comes in as well to manage access where needed. It’s a practical look at how these pieces are used together in real setups.

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A lot of cloud work comes down to moving data, managing access, and making sense of what’s happening behind the scenes. In this trail, you’ll migrate a MySQL database to Google Cloud, work with IAM permissions using gcloud, and analyze network traffic with VPC Flow Logs. You’ll also store and manage media files, prepare data with Dataprep, and build reports using Looker Studio and LookML. There’s even a lab on measuring Speech-to-Text accuracy. It’s a mix of tasks that shows how data is handled, monitored, and used across different parts of Google Cloud.

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Google Kubernetes Engine (GKE) is all about running and managing containerized applications without worrying too much about the underlying setup. In this adventure, you’ll get hands-on with how things actually work—managing workloads, debugging issues, and trying out autoscaling. You’ll also explore Autopilot, run load tests, and work with private clusters and network access. By the end, you’ll have a clearer sense of how GKE setups are put together and handled in practice.

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