azure-pricing

oleh github

We need to translate the given English text to Bahasa Indonesia. The text describes an agent skill for Azure pricing. We must preserve the name "azure-pricing" but it's not in the text, so we don't include it. We translate the description. No extra commentary, no labels. Just the translation. The text: "Real-time Azure service pricing lookup and Copilot Studio agent credit cost estimation. Queries the Azure Retail Prices API to fetch current pricing for compute, storage, networking, databases, AI, and all other Azure service families across regions and SKUs Supports filtering by service name, region, SKU, price type (consumption, reservation, spot), and savings plan options with OData syntax Includes cost estimation formulas for monthly and annual workload projections based on usage" We need to translate accurately, preserving technical terms like "Azure", "Copilot Studio", "Azure Retail Prices API", "SKUs", "OData", etc. Also numbers and formulas. Let's translate: "Pencarian harga layanan Azure secara real-time dan estimasi biaya kredit ag

npx skills add https://github.com/github/awesome-copilot --skill azure-pricing

Azure Pricing Skill

Use this skill to retrieve real-time Azure retail pricing data from the public Azure Retail Prices API. No authentication is required.

When to Use This Skill

  • User asks about the cost of an Azure service (e.g., "How much does a D4s v5 VM cost?")
  • User wants to compare pricing across regions or SKUs
  • User needs a cost estimate for a workload or architecture
  • User mentions Azure pricing, Azure costs, or Azure billing
  • User asks about reserved instance vs. pay-as-you-go pricing
  • User wants to know about savings plans or spot pricing

API Endpoint

GET https://prices.azure.com/api/retail/prices?api-version=2023-01-01-preview

Append $filter as a query parameter using OData filter syntax. Always use api-version=2023-01-01-preview to ensure savings plan data is included.

Step-by-step Instructions

If anything is unclear about the user's request, ask clarifying questions to identify the correct filter fields and values before calling the API.

  1. Identify filter fields from the user's request (service name, region, SKU, price type).
  2. Resolve the region: the API requires armRegionName values in lowercase with no spaces (e.g. "East US" → eastus, "West Europe" → westeurope, "Southeast Asia" → southeastasia). See references/REGIONS.md for a complete list.
  3. Build the filter string using the fields below and fetch the URL.
  4. Parse the Items array from the JSON response. Each item contains price and metadata.
  5. Follow pagination via NextPageLink if you need more than the first 1000 results (rarely needed).
  6. Calculate cost estimates using the formulas in references/COST-ESTIMATOR.md to produce monthly/annual estimates.
  7. Present results in a clear summary table with service, SKU, region, unit price, and monthly/annual estimates.

Filterable Fields

FieldTypeExample
serviceNamestring (exact, case-sensitive)'Functions', 'Virtual Machines', 'Storage'
serviceFamilystring (exact, case-sensitive)'Compute', 'Storage', 'Databases', 'AI + Machine Learning'
armRegionNamestring (exact, lowercase)'eastus', 'westeurope', 'southeastasia'
armSkuNamestring (exact)'Standard_D4s_v5', 'Standard_LRS'
skuNamestring (contains supported)'D4s v5'
priceTypestring'Consumption', 'Reservation', 'DevTestConsumption'
meterNamestring (contains supported)'Spot'

Use eq for equality, and to combine, and contains(field, 'value') for partial matches.

Example Filter Strings

# All consumption prices for Functions in East US
serviceName eq 'Functions' and armRegionName eq 'eastus' and priceType eq 'Consumption'

# D4s v5 VMs in West Europe (consumption only)
armSkuName eq 'Standard_D4s_v5' and armRegionName eq 'westeurope' and priceType eq 'Consumption'

# All storage prices in a region
serviceName eq 'Storage' and armRegionName eq 'eastus'

# Spot pricing for a specific SKU
armSkuName eq 'Standard_D4s_v5' and contains(meterName, 'Spot') and armRegionName eq 'eastus'

# 1-year reservation pricing
serviceName eq 'Virtual Machines' and priceType eq 'Reservation' and armRegionName eq 'eastus'

# Azure AI / OpenAI pricing (now under Foundry Models)
serviceName eq 'Foundry Models' and armRegionName eq 'eastus' and priceType eq 'Consumption'

# Azure Cosmos DB pricing
serviceName eq 'Azure Cosmos DB' and armRegionName eq 'eastus' and priceType eq 'Consumption'

Full Example Fetch URL

https://prices.azure.com/api/retail/prices?api-version=2023-01-01-preview&$filter=serviceName eq 'Functions' and armRegionName eq 'eastus' and priceType eq 'Consumption'

URL-encode spaces as %20 and quotes as %27 when constructing the URL.

Key Response Fields

{
  "Items": [
    {
      "retailPrice": 0.000016,
      "unitPrice": 0.000016,
      "currencyCode": "USD",
      "unitOfMeasure": "1 Execution",
      "serviceName": "Functions",
      "skuName": "Premium",
      "armRegionName": "eastus",
      "meterName": "vCPU Duration",
      "productName": "Functions",
      "priceType": "Consumption",
      "isPrimaryMeterRegion": true,
      "savingsPlan": [
        { "unitPrice": 0.000012, "term": "1 Year" },
        { "unitPrice": 0.000010, "term": "3 Years" }
      ]
    }
  ],
  "NextPageLink": null,
  "Count": 1
}

Only use items where isPrimaryMeterRegion is true unless the user specifically asks for non-primary meters.

Supported serviceFamily Values

Analytics, Compute, Containers, Data, Databases, Developer Tools, Integration, Internet of Things, Management and Governance, Networking, Security, Storage, Web, AI + Machine Learning

Tips

  • serviceName values are case-sensitive. When unsure, filter by serviceFamily first to discover valid serviceName values in the results.
  • If results are empty, try broadening the filter (e.g., remove priceType or region constraints first).
  • Prices are always in USD unless currencyCode is specified in the request.
  • For savings plan prices, look for the savingsPlan array on each item (only in 2023-01-01-preview).
  • See references/SERVICE-NAMES.md for a catalog of common service names and their correct casing.
  • See references/COST-ESTIMATOR.md for cost estimation formulas and patterns.
  • See references/COPILOT-STUDIO-RATES.md for Copilot Studio billing rates and estimation formulas.

Troubleshooting

IssueSolution
Empty resultsBroaden the filter — remove priceType or armRegionName first
Wrong service nameUse serviceFamily filter to discover valid serviceName values
Missing savings plan dataEnsure api-version=2023-01-01-preview is in the URL
URL errorsCheck URL encoding — spaces as %20, quotes as %27
Too many resultsAdd more filter fields (region, SKU, priceType) to narrow down

Copilot Studio Agent Usage Estimation

Use this section when the user asks about Copilot Studio pricing, Copilot Credits, or agent usage costs.

When to Use This Section

  • User asks about Copilot Studio pricing or costs
  • User asks about Copilot Credits or agent credit consumption
  • User wants to estimate monthly costs for a Copilot Studio agent
  • User mentions agent usage estimation or the Copilot Studio estimator
  • User asks how much an agent will cost to run

Key Facts

  • 1 Copilot Credit = $0.01 USD
  • Credits are pooled across the entire tenant
  • Employee-facing agents with M365 Copilot licensed users get classic answers, generative answers, and tenant graph grounding at zero cost
  • Overage enforcement triggers at 125% of prepaid capacity

Step-by-step Estimation

  1. Gather inputs from the user: agent type (employee/customer), number of users, interactions/month, knowledge %, tenant graph %, tool usage per session.
  2. Fetch live billing rates — use the built-in web fetch tool to download the latest rates from the source URLs listed below. This ensures the estimate always uses the most current Microsoft pricing.
  3. Parse the fetched content to extract the current billing rates table (credits per feature type).
  4. Calculate the estimate using the rates and formulas from the fetched content:
    • total_sessions = users × interactions_per_month
    • Knowledge credits: apply tenant graph grounding rate, generative answer rate, and classic answer rate
    • Agent tools credits: apply agent action rate per tool call
    • Agent flow credits: apply flow rate per 100 actions
    • Prompt modifier credits: apply basic/standard/premium rates per 10 responses
  5. Present results in a clear table with breakdown by category, total credits, and estimated USD cost.

Source URLs to Fetch

When answering Copilot Studio pricing questions, fetch the latest content from these URLs to use as context:

URLContent
https://learn.microsoft.com/en-us/microsoft-copilot-studio/requirements-messages-managementBilling rates table, billing examples, overage enforcement rules
https://learn.microsoft.com/en-us/microsoft-copilot-studio/billing-licensingLicensing options, M365 Copilot inclusions, prepaid vs pay-as-you-go

Fetch at least the first URL (billing rates) before calculating. The second URL provides supplementary context for licensing questions.

See references/COPILOT-STUDIO-RATES.md for a cached snapshot of rates, formulas, and billing examples (use as fallback if web fetch is unavailable).

Lebih banyak skill dari github

console-rendering
github
Instruksi untuk menggunakan sistem rendering konsol berbasis tag struct di Go
official
acquire-codebase-knowledge
github
Gunakan keterampilan ini ketika pengguna secara eksplisit meminta untuk memetakan, mendokumentasikan, atau mempelajari basis kode yang sudah ada. Aktifkan untuk perintah seperti "petakan basis kode ini", "dokumentasikan…
official
acreadiness-assess
github
Run the AgentRC readiness assessment on the current repository and produce a static HTML dashboard at reports/index.html. Wraps `npx github:microsoft/agentrc…
official
acreadiness-generate-instructions
github
Menghasilkan file instruksi agen AI yang disesuaikan melalui perintah instruksi AgentRC. Menghasilkan .github/copilot-instructions.md (default, direkomendasikan untuk Copilot di VS…
official
acreadiness-policy
github
Bantu pengguna memilih, menulis, atau menerapkan kebijakan AgentRC. Kebijakan menyesuaikan penilaian kesiapan dengan menonaktifkan pemeriksaan yang tidak relevan, mengganti dampak/tingkat, mengatur…
official
add-educational-comments
github
Tambahkan komentar edukatif ke file kode untuk mengubahnya menjadi sumber belajar yang efektif. Menyesuaikan kedalaman penjelasan dan nada dengan tiga tingkat pengetahuan yang dapat dikonfigurasi: pemula, menengah, dan mahir. Secara otomatis meminta file jika tidak ada yang disediakan, dengan pencocokan daftar bernomor untuk pemilihan cepat. Memperluas file hingga 125% hanya menggunakan komentar edukatif (batas keras: 400 baris baru; 300 untuk file di atas 1.000 baris). Mempertahankan encoding file, gaya indentasi, kebenaran sintaks, dan...
official
adobe-illustrator-scripting
github
Menulis, men-debug, dan mengoptimalkan skrip otomatisasi Adobe Illustrator menggunakan ExtendScript (JavaScript/JSX). Gunakan saat membuat atau memodifikasi skrip yang memanipulasi…
official
agent-governance
github
Kebijakan deklaratif, klasifikasi intensi, dan jejak audit untuk mengontrol akses dan perilaku alat agen AI. Kebijakan tata kelola yang dapat dikomposisikan mendefinisikan alat yang diizinkan/diblokir, filter konten, batas kecepatan, dan persyaratan persetujuan — disimpan sebagai konfigurasi, bukan kode. Klasifikasi intensi semantik mendeteksi perintah berbahaya (eksfiltrasi data, eskalasi hak istimewa, injeksi perintah) sebelum eksekusi alat menggunakan sinyal berbasis pola. Dekorator tata kelola tingkat alat memberlakukan kebijakan pada fungsi...
official