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  1. CHANGELOG/CHANGELOG-1.13.md

    - Bumped Dashboard version to v1.10.0 ([#68450](https://github.com/kubernetes/kubernetes/pull/68450), [@jeefy](https://github.com/jeefy))
    - Added env variables to control CPU requests of kube-controller-manager and kube-scheduler. ([#68823](https://github.com/kubernetes/kubernetes/pull/68823), [@loburm](https://github.com/loburm))
    Created: Fri Apr 03 09:05:14 GMT 2026
    - Last Modified: Thu May 05 13:44:43 GMT 2022
    - 273.1K bytes
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  2. .github/workflows/arm-ci-extended-cpp.yml

              CI_DOCKER_BUILD_EXTRA_PARAMS="--build-arg py_major_minor_version=${{ matrix.pyver }} --build-arg is_nightly=${is_nightly} --build-arg tf_project_name=${tf_project_name}" \
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Thu Jan 01 08:09:03 GMT 2026
    - 2.5K bytes
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  3. docs/pt/docs/async.md

    ---
    
    Exemplos comuns de operações limitadas por CPU são coisas que exigem processamento matemático complexo.
    
    Por exemplo:
    
    * **Processamento de áudio** ou **imagem**
    Created: Sun Apr 05 07:19:11 GMT 2026
    - Last Modified: Thu Mar 19 18:20:43 GMT 2026
    - 25.2K bytes
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  4. cmd/peer-rest-server.go

    	if err != nil {
    		return nil, grid.NewRemoteErr(err)
    	}
    	info := getLocalServerProperty(globalEndpoints, &r, metrics)
    	return madminServerProperties.NewJSONWith(&info), nil
    }
    
    // GetCPUsHandler - returns CPU info.
    func (s *peerRESTServer) GetCPUsHandler(_ *grid.MSS) (*grid.JSON[madmin.CPUs], *grid.RemoteErr) {
    	info := madmin.GetCPUs(context.Background(), globalLocalNodeName)
    	return madminCPUs.NewJSONWith(&info), nil
    }
    
    Created: Sun Apr 05 19:28:12 GMT 2026
    - Last Modified: Sun Sep 28 20:59:21 GMT 2025
    - 53.6K bytes
    - Click Count (0)
  5. .github/workflows/arm-cd.yml

              CI_DOCKER_BUILD_EXTRA_PARAMS="--build-arg py_major_minor_version=${{ matrix.pyver }} --build-arg is_nightly=${is_nightly} --build-arg tf_project_name=${tf_project_name}" \
              ./tensorflow/tools/ci_build/ci_build.sh cpu.arm64 bash tensorflow/tools/ci_build/rel/ubuntu/cpu_arm64_test_build.sh
          - name: Upload pip wheel to PyPI
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Thu Jan 01 08:09:03 GMT 2026
    - 3K bytes
    - Click Count (0)
  6. docs/metrics/prometheus/grafana/minio-dashboard.json

              "interval": "",
              "legendFormat": "{{server}}",
              "range": true,
              "refId": "A"
            }
          ],
          "title": "CPU Usage",
          "type": "gauge"
        },
        {
          "datasource": {
            "type": "prometheus",
            "uid": "${DS_PROMETHEUS}"
          },
    Created: Sun Apr 05 19:28:12 GMT 2026
    - Last Modified: Mon Aug 04 01:46:49 GMT 2025
    - 93.1K bytes
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  7. docs/zh-hant/docs/deployment/docker.md

    使用 Kubernetes 或類似的分散式容器管理系統時,使用其內部網路機制可以讓在主「埠口」上監聽的單一「負載平衡器」,把通訊(請求)傳遞給可能的「多個執行你應用的容器」。
    
    每個執行你應用的容器通常只有「單一行程」(例如執行你的 FastAPI 應用的 Uvicorn 行程)。它們都是「相同的容器」,執行相同的東西,但各自擁有自己的行程、記憶體等。如此即可在 CPU 的「不同核心」、甚至是「不同機器」上發揮「平行化」的效益。
    
    而分散式容器系統中的「負載平衡器」會「輪流」把請求分配給各個執行你應用的容器。因此,每個請求都可能由多個「複製的容器」中的其中一個來處理。
    
    通常這個「負載平衡器」也能處理送往叢集中「其他」應用的請求(例如不同網域,或不同 URL 路徑前綴),並把通訊轉送到該「其他」應用對應的容器。
    
    Created: Sun Apr 05 07:19:11 GMT 2026
    - Last Modified: Fri Mar 20 17:05:38 GMT 2026
    - 24.9K bytes
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  8. docs/fr/docs/deployment/server-workers.md

    ## Concepts de déploiement { #deployment-concepts }
    
    Ici, vous avez vu comment utiliser plusieurs workers pour paralléliser l'exécution de l'application, tirer parti de plusieurs cœurs du CPU et être en mesure de servir davantage de requêtes.
    
    Created: Sun Apr 05 07:19:11 GMT 2026
    - Last Modified: Thu Mar 19 18:37:13 GMT 2026
    - 8.7K bytes
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  9. tensorflow/c/c_api_test.cc

      ASSERT_EQ(TF_OK, TF_GetCode(s)) << TF_Message(s);
      TF_DeleteGraph(graph);
      TF_DeleteStatus(s);
    }
    
    // If `device` is non-empty, run Min op on that device.
    // Otherwise run it on the default device (CPU).
    void RunMinTest(const std::string& device, bool use_XLA) {
      TF_Status* s = TF_NewStatus();
      TF_Graph* graph = TF_NewGraph();
    
      // Make a placeholder operation.
      TF_Operation* feed = Placeholder(graph, s);
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Wed Jan 07 04:56:09 GMT 2026
    - 97.3K bytes
    - Click Count (0)
  10. docs/de/docs/async.md

    ---
    
    Typische Beispiele für CPU-lastige Vorgänge sind Dinge, die komplexe mathematische Berechnungen erfordern.
    
    Zum Beispiel:
    
    * **Audio-** oder **Bildbearbeitung**.
    Created: Sun Apr 05 07:19:11 GMT 2026
    - Last Modified: Thu Mar 19 17:58:09 GMT 2026
    - 27.3K bytes
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