Pemantauan lingkungan lintas project dengan Terraform

Cloud Composer 1 | Cloud Composer 2

Halaman ini menunjukkan cara menerapkan dasbor pemantauan terintegrasi untuk beberapa lingkungan Cloud Composer di seluruh project yang dipilih dalam organisasi yang sama.

Ringkasan

Solusi yang dijelaskan dapat membantu tim platform perusahaan pusat mendukung lingkungan Cloud Composer yang digunakan oleh tim lain. Implementasi ini dapat digunakan untuk memantau semua lingkungan Cloud Composer, bahkan yang tidak dibuat menggunakan Terraform.

Panduan ini menerapkan dasbor Cloud Monitoring di Cloud Composer bersama dengan kebijakan pemberitahuan yang terus melaporkan metrik utama lingkungan Cloud Composer dan meningkatkan insiden jika terjadi masalah. Dasbor ini akan otomatis memindai semua lingkungan Cloud Composer dalam project yang dipilih untuk pemantauan ini. Implementasi ini bergantung pada Terraform.

Model ini menggunakan project Google Cloud yang bertindak sebagai Project Monitoring, yang digunakan untuk memantau lingkungan Cloud Composer (hanya baca) yang di-deploy di beberapa Project yang Dipantau. Dasbor pusat menggunakan metrik Cloud Monitoring dari Project yang Dipantau untuk merender kontennya.

Diagram yang menunjukkan project pemantauan, yang berisi dasbor pemantauan, dan tiga project yang dipantau yang masing-masing berisi lingkungan composer. Setiap project yang dipantau memiliki panah yang mengarah ke project yang dipantau berlabel 'metrik'

Dasbor ini memantau dan membuat pemberitahuan untuk beberapa metrik, termasuk kondisi lingkungan:

Screenshot dasbor pemantauan yang menampilkan Kesehatan Lingkungan, Kesehatan Database, Kesehatan Webserver, dan Scheduler Heartbeat

atau metrik CPU:

Screenshot dasbor pemantauan yang menampilkan CPU Database, CPU Scheduler, CPU Pekerja, dan CPU Webserver

Tahan kursor ke garis tertentu untuk melihat lingkungan yang diwakilinya. Kemudian, dasbor akan menampilkan resource dan nama project:

Screenshot dasbor pemantauan yang menampilkan pop-up saat Anda mengarahkan kursor ke garis. Jendela pop-up akan menampilkan empat resource, salah satunya sesuai dengan garis.

Jika metrik melebihi nilai minimum yang telah ditentukan, insiden akan dipicu dan masing-masing pemberitahuan akan ditampilkan dalam diagram yang sesuai dengan metrik ini:

Screenshot tampilan insiden terbuka yang menunjukkan dua insiden terbuka. Setiap insiden yang tercantum memiliki link untuk melihat detailnya.

Daftar metrik yang dipantau

Daftar lengkap metrik yang dipantau:

  • Kondisi lingkungan Cloud Composer (berdasarkan Monitoring DAG)
  • Kesehatan database
  • Kesehatan Server Web
  • Heartbeat Scheduler
  • Pemakaian CPU dan Memori untuk semua Pekerja
  • Pemakaian CPU dan Memori untuk database Airflow
  • Pemakaian CPU dan Memori untuk Server Web (hanya tersedia di Cloud Composer 2)
  • Pemakaian CPU dan Memori untuk Penjadwal Airflow
  • Proporsi tugas yang Antrean, Dijadwalkan, dalam Antrean, atau Dijadwalkan di lingkungan (berguna untuk menemukan masalah konfigurasi serentak Airflow)
  • Waktu penguraian DAG
  • Jumlah Pekerja saat ini versus minimal - berguna untuk memahami masalah stabilitas Pekerja atau masalah penskalaan
  • Penghapusan Pod Pekerja
  • Jumlah error yang ditampilkan di Log oleh Pekerja, Penjadwal, Server Web, atau komponen lainnya (masing-masing diagram)

Sebelum memulai

Untuk menggunakan Cloud Composer dan Cloud Monitoring, Anda harus membuat project Google Cloud dan mengaktifkan penagihan. Project harus berisi lingkungan Cloud Composer. Project ini disebut sebagai Monitoring Project dalam panduan ini.

  1. Login ke akun Google Cloud Anda. Jika Anda baru menggunakan Google Cloud, buat akun untuk mengevaluasi performa produk kami dalam skenario dunia nyata. Pelanggan baru juga mendapatkan kredit gratis senilai $300 untuk menjalankan, menguji, dan men-deploy workload.
  2. Di konsol Google Cloud, pada halaman pemilih project, pilih atau buat project Google Cloud.

    Buka pemilih project

  3. Pastikan penagihan telah diaktifkan untuk project Google Cloud Anda.

  4. Di konsol Google Cloud, pada halaman pemilih project, pilih atau buat project Google Cloud.

    Buka pemilih project

  5. Pastikan penagihan telah diaktifkan untuk project Google Cloud Anda.

  6. Instal Terraform jika belum terinstal.
  7. Konfigurasi cakupan metrik project Anda. Secara default, project hanya dapat menampilkan atau memantau data deret waktu yang disimpannya. Jika Anda ingin menampilkan data atau memantau data yang disimpan di beberapa project, konfigurasikan cakupan metrik project. Untuk mengetahui informasi selengkapnya, lihat Ringkasan cakupan metrik.

Langkah-langkah implementasi

  1. Di komputer lokal tempat Anda menjalankan Terraform, tetapkan variabel lingkungan GOOGLE_CLOUD_PROJECT ke ID pada Monitoring Project Anda:

    export GOOGLE_CLOUD_PROJECT=MONITORING_PROJECT_ID
    
  2. Pastikan penyedia Google Terraform Anda telah diautentikasi dan memiliki akses ke izin berikut:

    • Izin roles/monitoring.editor di Monitoring Project
    • roles/monitoring.viewer, roles/logging.viewer di semua Project yang Dipantau
  3. Salin file main.tf berikut ke komputer lokal tempat Anda menjalankan Terraform.

    Klik untuk memperluas

    #   Monitoring for multiple Cloud Composer environments
    #
    #   Usage:
    #       1. Create a new project that you will use for monitoring of Cloud Composer environments in other projects
    #       2. Replace YOUR_MONITORING_PROJECT with the name of this project in the "metrics_scope" parameter that is part of the "Add Monitored Projects to the Monitoring project" section
    #       3. Replace the list of projects to monitor with your list of projects with Cloud Composer environments to be monitored in the "for_each" parameter of the "Add Monitored Projects to the Monitoring project" section
    #       4. Set up your environment and apply the configuration following these steps: https://cloud.google.com/docs/terraform/basic-commands. Your GOOGLE_CLOUD_PROJECT environment variable should be the new monitoring project you just created.
    #
    #   The script creates the following resources in the monitoring project:
    #           1. Adds monitored projects to Cloud Monitoring
    #           2. Creates Alert Policies
    #           3. Creates Monitoring Dashboard
    #
    
    #######################################################
    #
    # Add Monitored Projects to the Monitoring project
    #
    ########################################################
    
    resource "google_monitoring_monitored_project" "projects_monitored" {
      for_each      = toset(["YOUR_PROJECT_TO_MONITOR_1", "YOUR_PROJECT_TO_MONITOR_2", "YOUR_PROJECT_TO_MONITOR_3"])
      metrics_scope = join("", ["locations/global/metricsScopes/", "YOUR_MONITORING_PROJECT"])
      name          = each.value
    }
    
    #######################################################
    #
    # Create alert policies in Monitoring project
    #
    ########################################################
    
    resource "google_monitoring_alert_policy" "environment_health" {
      display_name = "Environment Health"
      combiner     = "OR"
      conditions {
        display_name = "Environment Health"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| {metric 'composer.googleapis.com/environment/dagbag_size'",
            "| group_by 5m, [value_dagbag_size_mean: if(mean(value.dagbag_size) > 0, 1, 0)]",
            "| align mean_aligner(5m)",
            "| group_by [resource.project_id, resource.environment_name],    [value_dagbag_size_mean_aggregate: aggregate(value_dagbag_size_mean)];  ",
            "metric 'composer.googleapis.com/environment/healthy'",
            "| group_by 5m,    [value_sum_signals: aggregate(if(value.healthy,1,0))]",
            "| align mean_aligner(5m)| absent_for 5m }",
            "| outer_join 0",
            "| group_by [resource.project_id, resource.environment_name]",
            "| value val(2)",
            "| align mean_aligner(5m)",
            "| window(5m)",
            "| condition val(0) < 0.9"
          ])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "database_health" {
      display_name = "Database Health"
      combiner     = "OR"
      conditions {
        display_name = "Database Health"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/database_health'",
            "| group_by 5m,",
            "    [value_database_health_fraction_true: fraction_true(value.database_health)]",
            "| every 5m",
            "| group_by 5m,",
            "    [value_database_health_fraction_true_aggregate:",
            "       aggregate(value_database_health_fraction_true)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_database_health_fraction_true_aggregate_aggregate:",
            "       aggregate(value_database_health_fraction_true_aggregate)]",
          "| condition val() < 0.95"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "webserver_health" {
      display_name = "Web Server Health"
      combiner     = "OR"
      conditions {
        display_name = "Web Server Health"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/web_server/health'",
            "| group_by 5m, [value_health_fraction_true: fraction_true(value.health)]",
            "| every 5m",
            "| group_by 5m,",
            "    [value_health_fraction_true_aggregate:",
            "       aggregate(value_health_fraction_true)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_health_fraction_true_aggregate_aggregate:",
            "       aggregate(value_health_fraction_true_aggregate)]",
          "| condition val() < 0.95"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "scheduler_heartbeat" {
      display_name = "Scheduler Heartbeat"
      combiner     = "OR"
      conditions {
        display_name = "Scheduler Heartbeat"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/scheduler_heartbeat_count'",
            "| group_by 10m,",
            "    [value_scheduler_heartbeat_count_aggregate:",
            "      aggregate(value.scheduler_heartbeat_count)]",
            "| every 10m",
            "| group_by 10m,",
            "    [value_scheduler_heartbeat_count_aggregate_mean:",
            "       mean(value_scheduler_heartbeat_count_aggregate)]",
            "| every 10m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_scheduler_heartbeat_count_aggregate_mean_aggregate:",
            "       aggregate(value_scheduler_heartbeat_count_aggregate_mean)]",
          "| condition val() < 80"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "database_cpu" {
      display_name = "Database CPU"
      combiner     = "OR"
      conditions {
        display_name = "Database CPU"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/database/cpu/utilization'",
            "| group_by 10m, [value_utilization_mean: mean(value.utilization)]",
            "| every 10m",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val() > 0.8"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "scheduler_cpu" {
      display_name = "Scheduler CPU"
      combiner     = "OR"
      conditions {
        display_name = "Scheduler CPU"
        condition_monitoring_query_language {
          query = join("", [
            "fetch k8s_container",
            "| metric 'kubernetes.io/container/cpu/limit_utilization'",
            "| filter (resource.pod_name =~ 'airflow-scheduler-.*')",
            "| group_by 10m, [value_limit_utilization_mean: mean(value.limit_utilization)]",
            "| every 10m",
            "| group_by [resource.cluster_name],",
            "    [value_limit_utilization_mean_mean: mean(value_limit_utilization_mean)]",
          "| condition val() > 0.8"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "worker_cpu" {
      display_name = "Worker CPU"
      combiner     = "OR"
      conditions {
        display_name = "Worker CPU"
        condition_monitoring_query_language {
          query = join("", [
            "fetch k8s_container",
            "| metric 'kubernetes.io/container/cpu/limit_utilization'",
            "| filter (resource.pod_name =~ 'airflow-worker.*')",
            "| group_by 10m, [value_limit_utilization_mean: mean(value.limit_utilization)]",
            "| every 10m",
            "| group_by [resource.cluster_name],",
            "    [value_limit_utilization_mean_mean: mean(value_limit_utilization_mean)]",
          "| condition val() > 0.8"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "webserver_cpu" {
      display_name = "Web Server CPU"
      combiner     = "OR"
      conditions {
        display_name = "Web Server CPU"
        condition_monitoring_query_language {
          query = join("", [
            "fetch k8s_container",
            "| metric 'kubernetes.io/container/cpu/limit_utilization'",
            "| filter (resource.pod_name =~ 'airflow-webserver.*')",
            "| group_by 10m, [value_limit_utilization_mean: mean(value.limit_utilization)]",
            "| every 10m",
            "| group_by [resource.cluster_name],",
            "    [value_limit_utilization_mean_mean: mean(value_limit_utilization_mean)]",
          "| condition val() > 0.8"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
    
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "parsing_time" {
      display_name = "DAG Parsing Time"
      combiner     = "OR"
      conditions {
        display_name = "DAG Parsing Time"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/dag_processing/total_parse_time'",
            "| group_by 5m, [value_total_parse_time_mean: mean(value.total_parse_time)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val(0) > cast_units(30,\"s\")"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "database_memory" {
      display_name = "Database Memory"
      combiner     = "OR"
      conditions {
        display_name = "Database Memory"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/database/memory/utilization'",
            "| group_by 10m, [value_utilization_mean: mean(value.utilization)]",
            "| every 10m",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val() > 0.8"])
          duration = "0s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "scheduler_memory" {
      display_name = "Scheduler Memory"
      combiner     = "OR"
      conditions {
        display_name = "Scheduler Memory"
        condition_monitoring_query_language {
          query = join("", [
            "fetch k8s_container",
            "| metric 'kubernetes.io/container/memory/limit_utilization'",
            "| filter (resource.pod_name =~ 'airflow-scheduler-.*')",
            "| group_by 10m, [value_limit_utilization_mean: mean(value.limit_utilization)]",
            "| every 10m",
            "| group_by [resource.cluster_name],",
            "    [value_limit_utilization_mean_mean: mean(value_limit_utilization_mean)]",
          "| condition val() > 0.8"])
          duration = "0s"
          trigger {
            count = "1"
          }
        }
      }
      documentation {
        content = join("", [
          "Scheduler Memory exceeds a threshold, summed across all schedulers in the environment. ",
        "Add more schedulers OR increase scheduler's memory OR reduce scheduling load (e.g. through lower parsing frequency or lower number of DAGs/tasks running"])
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "worker_memory" {
      display_name = "Worker Memory"
      combiner     = "OR"
      conditions {
        display_name = "Worker Memory"
        condition_monitoring_query_language {
          query = join("", [
            "fetch k8s_container",
            "| metric 'kubernetes.io/container/memory/limit_utilization'",
            "| filter (resource.pod_name =~ 'airflow-worker.*')",
            "| group_by 10m, [value_limit_utilization_mean: mean(value.limit_utilization)]",
            "| every 10m",
            "| group_by [resource.cluster_name],",
            "    [value_limit_utilization_mean_mean: mean(value_limit_utilization_mean)]",
          "| condition val() > 0.8"])
          duration = "0s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "webserver_memory" {
      display_name = "Web Server Memory"
      combiner     = "OR"
      conditions {
        display_name = "Web Server Memory"
        condition_monitoring_query_language {
          query = join("", [
            "fetch k8s_container",
            "| metric 'kubernetes.io/container/memory/limit_utilization'",
            "| filter (resource.pod_name =~ 'airflow-webserver.*')",
            "| group_by 10m, [value_limit_utilization_mean: mean(value.limit_utilization)]",
            "| every 10m",
            "| group_by [resource.cluster_name],",
            "    [value_limit_utilization_mean_mean: mean(value_limit_utilization_mean)]",
          "| condition val() > 0.8"])
          duration = "0s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "scheduled_tasks_percentage" {
      display_name = "Scheduled Tasks Percentage"
      combiner     = "OR"
      conditions {
        display_name = "Scheduled Tasks Percentage"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/unfinished_task_instances'",
            "| align mean_aligner(10m)",
            "| every(10m)",
            "| window(10m)",
            "| filter_ratio_by [resource.project_id, resource.environment_name], metric.state = 'scheduled'",
          "| condition val() > 0.80"])
          duration = "300s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "queued_tasks_percentage" {
      display_name = "Queued Tasks Percentage"
      combiner     = "OR"
      conditions {
        display_name = "Queued Tasks Percentage"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/unfinished_task_instances'",
            "| align mean_aligner(10m)",
            "| every(10m)",
            "| window(10m)",
            "| filter_ratio_by [resource.project_id, resource.environment_name], metric.state = 'queued'",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val() > 0.95"])
          duration = "300s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "queued_or_scheduled_tasks_percentage" {
      display_name = "Queued or Scheduled Tasks Percentage"
      combiner     = "OR"
      conditions {
        display_name = "Queued or Scheduled Tasks Percentage"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/unfinished_task_instances'",
            "| align mean_aligner(10m)",
            "| every(10m)",
            "| window(10m)",
            "| filter_ratio_by [resource.project_id, resource.environment_name], or(metric.state = 'queued', metric.state = 'scheduled' )",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val() > 0.80"])
          duration = "120s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "workers_above_minimum" {
      display_name = "Workers above minimum (negative = missing workers)"
      combiner     = "OR"
      conditions {
        display_name = "Workers above minimum"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| { metric 'composer.googleapis.com/environment/num_celery_workers'",
            "| group_by 5m, [value_num_celery_workers_mean: mean(value.num_celery_workers)]",
            "| every 5m",
            "; metric 'composer.googleapis.com/environment/worker/min_workers'",
            "| group_by 5m, [value_min_workers_mean: mean(value.min_workers)]",
            "| every 5m }",
            "| outer_join 0",
            "| sub",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val() < 0"])
          duration = "0s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "pod_evictions" {
      display_name = "Worker pod evictions"
      combiner     = "OR"
      conditions {
        display_name = "Worker pod evictions"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'composer.googleapis.com/environment/worker/pod_eviction_count'",
            "| align delta(1m)",
            "| every 1m",
            "| group_by [resource.project_id, resource.environment_name]",
          "| condition val() > 0"])
          duration = "60s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "scheduler_errors" {
      display_name = "Scheduler Errors"
      combiner     = "OR"
      conditions {
        display_name = "Scheduler Errors"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'logging.googleapis.com/log_entry_count'",
            "| filter (metric.log == 'airflow-scheduler' && metric.severity == 'ERROR')",
            "| group_by 5m,",
            "    [value_log_entry_count_aggregate: aggregate(value.log_entry_count)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_log_entry_count_aggregate_max: max(value_log_entry_count_aggregate)]",
          "| condition val() > 50"])
          duration = "300s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "worker_errors" {
      display_name = "Worker Errors"
      combiner     = "OR"
      conditions {
        display_name = "Worker Errors"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'logging.googleapis.com/log_entry_count'",
            "| filter (metric.log == 'airflow-worker' && metric.severity == 'ERROR')",
            "| group_by 5m,",
            "    [value_log_entry_count_aggregate: aggregate(value.log_entry_count)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_log_entry_count_aggregate_max: max(value_log_entry_count_aggregate)]",
          "| condition val() > 50"])
          duration = "300s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "webserver_errors" {
      display_name = "Web Server Errors"
      combiner     = "OR"
      conditions {
        display_name = "Web Server Errors"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'logging.googleapis.com/log_entry_count'",
            "| filter (metric.log == 'airflow-webserver' && metric.severity == 'ERROR')",
            "| group_by 5m,",
            "    [value_log_entry_count_aggregate: aggregate(value.log_entry_count)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_log_entry_count_aggregate_max: max(value_log_entry_count_aggregate)]",
          "| condition val() > 50"])
          duration = "300s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    resource "google_monitoring_alert_policy" "other_errors" {
      display_name = "Other Errors"
      combiner     = "OR"
      conditions {
        display_name = "Other Errors"
        condition_monitoring_query_language {
          query = join("", [
            "fetch cloud_composer_environment",
            "| metric 'logging.googleapis.com/log_entry_count'",
            "| filter",
            "    (metric.log !~ 'airflow-scheduler|airflow-worker|airflow-webserver'",
            "     && metric.severity == 'ERROR')",
            "| group_by 5m, [value_log_entry_count_max: max(value.log_entry_count)]",
            "| every 5m",
            "| group_by [resource.project_id, resource.environment_name],",
            "    [value_log_entry_count_max_aggregate: aggregate(value_log_entry_count_max)]",
          "| condition val() > 10"])
          duration = "300s"
          trigger {
            count = "1"
          }
        }
      }
      # uncomment to set an auto close strategy for the alert
      #alert_strategy {
      #    auto_close = "30m"
      #}
    }
    
    #######################################################
    #
    # Create Monitoring Dashboard
    #
    ########################################################
    
    resource "google_monitoring_dashboard" "Composer_Dashboard" {
      dashboard_json = <<EOF
    {
      "category": "CUSTOM",
      "displayName": "Cloud Composer - Monitoring Platform",
      "mosaicLayout": {
        "columns": 12,
        "tiles": [
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "MARKDOWN"
              },
              "title": "Health"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 0
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.environment_health.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 1
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.database_health.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 1
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.webserver_health.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 5
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.scheduler_heartbeat.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 5
          },
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "RAW"
              },
              "title": "Airflow Task Execution and DAG Parsing"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 9
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.scheduled_tasks_percentage.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 10
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.queued_tasks_percentage.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 10
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.queued_or_scheduled_tasks_percentage.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 14
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.parsing_time.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 14
          },
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "RAW"
              },
              "title": "Workers presence"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 18
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.workers_above_minimum.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 19
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.pod_evictions.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 19
          },
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "RAW"
              },
              "title": "CPU Utilization"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 23
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.database_cpu.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 24
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.scheduler_cpu.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 24
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.worker_cpu.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 28
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.webserver_cpu.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 28
          },
    
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "RAW"
              },
              "title": "Memory Utilization"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 32
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.database_memory.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 33
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.scheduler_memory.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 33
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.worker_memory.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 37
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.webserver_memory.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 37
          },
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "RAW"
              },
              "title": "Airflow component errors"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 41
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.scheduler_errors.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 42
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.worker_errors.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 42
          },
                {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.webserver_errors.name}"
              }
            },
            "width": 6,
            "xPos": 0,
            "yPos": 48
          },
          {
            "height": 4,
            "widget": {
              "alertChart": {
                "name": "${google_monitoring_alert_policy.other_errors.name}"
              }
            },
            "width": 6,
            "xPos": 6,
            "yPos": 48
          },
          {
            "height": 1,
            "widget": {
              "text": {
                "content": "",
                "format": "RAW"
              },
              "title": "Task errors"
            },
            "width": 12,
            "xPos": 0,
            "yPos": 52
          }
        ]
      }
    }
    EOF
    }
  4. Edit blok "google_monitoring_monitored_project" resource:

    1. Ganti daftar project di blok for_each dengan Project yang Dipantau.
    2. Ganti "YOUR_MONITORING_PROJECT" di metrics_scope dengan nama Monitoring Project Anda.
  5. Tinjau konfigurasi dan pastikan bahwa resource yang dibuat atau diperbarui oleh Terraform sesuai dengan ekspektasi Anda. Lakukan koreksi jika perlu.

    terraform plan
    
  6. Terapkan konfigurasi Terraform dengan menjalankan perintah berikut dan memasukkan ya pada perintah:

    terraform apply
    
  7. Di konsol Google Cloud Monitoring Project, buka halaman Monitoring Dashboard:

    Buka Monitoring Dashboard

  8. Temukan dasbor kustom Anda dengan nama Cloud Composer - Monitoring Platform di tab Custom.

Langkah selanjutnya