hdinsight-migration

tarafından microsoft

Güncelleme Kontrolü — OTURUM BAŞINA BİR KEZ (zorunlu) Bu beceri bir oturumda ilk kez kullanıldığında, devam etmeden önce check-updates becerisini çalıştırın.

npx skills add https://github.com/microsoft/skills-for-fabric --skill hdinsight-migration

Update Check — ONCE PER SESSION (mandatory) The first time this skill is used in a session, run the check-updates skill before proceeding.

  • GitHub Copilot CLI / VS Code: invoke the check-updates skill.
  • Claude Code / Cowork / Cursor / Windsurf / Codex: compare local vs remote package.json version.
  • Skip if the check was already performed earlier in this session.

CRITICAL NOTES

  1. To find workspace details (including its ID) from a workspace name: list all workspaces, then use JMESPath filtering
  2. To find item details (including its ID) from workspace ID, item type, and item name: list all items of that type in that workspace, then use JMESPath filtering
  3. HDInsight has no mssparkutils or dbutils equivalent — notebookutils is net-new capability being introduced
  4. HiveContext and SQLContext are legacy Spark 1.x/2.x APIs — Fabric uses Spark 3.x SparkSession exclusively
  5. wasb:// paths are deprecated and require a Storage Account key or SAS — replace with OneLake shortcuts

HDInsight → Microsoft Fabric Migration

Prerequisite Knowledge

Read these companion documents before executing migration tasks:

  • COMMON-CORE.md — Fabric REST API patterns, authentication, token audiences, item discovery
  • COMMON-CLI.mdaz rest, az login, token acquisition, Fabric REST via CLI
  • SPARK-AUTHORING-CORE.md — Notebook deployment, lakehouse creation, Spark job execution

For notebook and Lakehouse creation, see spark-authoring-cli. For Fabric Warehouse DDL/DML authoring, see sqldw-authoring-cli.


Table of Contents

TopicReference
Migration Workload Map§ Migration Workload Map
SparkSession & Context API Changes§ SparkSession API Changes
WASB / ABFS → OneLake Path Migrationpath-migration.md
Hive DDL → Delta Lake / Lakehouse Schemashive-to-delta.md
Oozie → Fabric Pipelines§ Oozie → Fabric Pipelines
Introducing notebookutils§ Introducing notebookutils
Before/After Code Patternscode-patterns.md
Spark Configuration Differences§ Spark Configuration Differences
Must / Prefer / Avoid§ Must / Prefer / Avoid
Authentication & Token AcquisitionCOMMON-CORE.md § Authentication
Lakehouse ManagementSPARK-AUTHORING-CORE.md § Lakehouse Management

Migration Workload Map

HDInsight ComponentFabric TargetNotes
Spark cluster (notebooks, scripts)Fabric Spark (Lakehouse / Notebooks / SJD)No persistent cluster — Starter Pool or Custom Pool provides on-demand Spark
Hive / HiveServer2Lakehouse SQL Endpoint + Lakehouse schemasDelta Lake replaces Hive metastore; schemas provide namespace equivalent
HBaseFabric Warehouse or Azure Cosmos DB (separate from Fabric)HBase has no direct Fabric equivalent — assess workload access patterns
Oozie workflowsFabric Data PipelinesMap Oozie actions to Fabric activities; see § Oozie → Fabric Pipelines
YARN Resource ManagerFabric Spark monitoring (Spark UI, Monitoring Hub)No YARN — Fabric manages compute automatically
AmbariFabric Monitoring Hub + Admin PortalCluster health, capacity, and job monitoring
WASB / ABFS storageOneLake Shortcutsabfss://[email protected]/See path-migration.md
Ranger policiesFabric workspace roles + OneLake data access rolesMap Ranger row/column filters to Lakehouse row-level security
Livy REST serverFabric Livy APICompatible endpoint — see SPARK-AUTHORING-CORE.md

SparkSession & Context API Changes

HDInsight Spark clusters often use legacy Spark 1.x / 2.x API styles. Replace all of these with the unified SparkSession:

Legacy HDInsight PatternFabric Spark 3.x Replacement
from pyspark import SparkContext; sc = SparkContext()Not needed — sc = spark.sparkContext (pre-instantiated)
from pyspark.sql import HiveContext; hc = HiveContext(sc)Not needed — spark session has Hive-compatible SQL support via Delta schemas
from pyspark.sql import SQLContext; sqlc = SQLContext(sc)Not needed — use spark.sql(...) directly
SparkSession.builder.enableHiveSupport().getOrCreate()Not needed in Fabric — spark is pre-built and available
sc.textFile("wasb://[email protected]/path")spark.read.text("abfss://[email protected]/lh.Lakehouse/Files/path")
sqlContext.sql("CREATE TABLE ... STORED AS ORC")See hive-to-delta.md for Delta DDL equivalent

In Fabric notebooks, spark (SparkSession) and sc (SparkContext) are pre-instantiated — do not call SparkContext() or SparkSession.builder...getOrCreate() at the top of migrated notebooks.


Oozie → Fabric Pipelines

Map Oozie workflow actions to Fabric Data Pipeline activities:

Oozie Action TypeFabric Pipeline ActivityNotes
<spark> actionNotebook activity or Spark Job Definition activityPass parameters via notebook cell parameters or SJD arguments
<hive> actionScript activity (SQL) against Lakehouse SQL EndpointConvert HiveQL to Spark SQL or Delta SQL
<shell> actionAzure Function activity or Web activityShell scripts must be refactored; no direct shell execution in Fabric Pipelines
<java> actionAzure Batch activity (external) or refactor to PySparkJava MapReduce jobs must be rewritten
<sqoop> actionCopy Data activity (Fabric Data Factory connector)Sqoop import/export maps to Fabric Copy Data with JDBC source/sink
<coordinator> (time-based schedule)Pipeline schedule triggerSet recurrence in pipeline trigger; supports cron-like expressions
<coordinator> (data-triggered)Storage Event triggerTrigger on OneLake file arrival

Delegate to spark-authoring-cli for notebook and SJD creation after mapping pipeline activities.


Introducing notebookutils

HDInsight Spark had no built-in utility framework equivalent to mssparkutils or dbutils. When migrating to Fabric, introduce notebookutils for common operations:

OperationOld HDInsight Approachnotebookutils Equivalent
List filesdbutils (N/A) / HDFS CLInotebookutils.fs.ls("abfss://...")
Copy fileHDFS API / shutilnotebookutils.fs.cp(src, dest)
Read secretAzure Key Vault REST callnotebookutils.credentials.getSecret(keyVaultUrl, secretName)
Get notebook contextNot availablenotebookutils.runtime.context — returns workspace ID, notebook ID, etc.
Run child notebookNot availablenotebookutils.notebook.run("notebook_name", timeout, {"param": "value"})
Exit notebook with valuesys.exit()notebookutils.notebook.exit("value")
Mount storageWASB config in spark-defaults.confOneLake Shortcut (no runtime mount needed)

Spark Configuration Differences

HDInsight ConceptFabric Spark EquivalentMigration Action
spark-defaults.conf (cluster-wide)Fabric Spark Workspace Settings + Environment itemMove config properties to Environment or use %%configure in notebooks
%%configure magic%%configure magic — identicalNo change needed
YARN queue / resource allocationFabric Spark pool node size and autoscale settingsMap queue SLAs to Custom Pool configuration
Ambari service configs (HDFS, YARN tuning)Not applicable — Fabric manages infrastructureRemove; focus on application-level Spark configs
HDI Spark version (e.g., Spark 2.4)Fabric Runtime 1.3 = Spark 3.5 (latest)Test for deprecated API removals (e.g., HiveContext, RDD-style ML)
Conda environment / bootstrap.shFabric Environment item with custom librariesRecreate conda/pip dependencies in a Fabric Environment
hive-site.xml (metastore connection)Not needed — Delta Lake IS the metastore in FabricRemove metastore config; use Lakehouse schemas for namespace organization

Must / Prefer / Avoid

MUST DO

  • Replace all wasb:// / wasbs:// paths with OneLake abfss:// paths or OneLake Shortcuts — wasb:// requires storage account keys which are not the Fabric-preferred auth model
  • Replace HiveContext, SQLContext, and standalone SparkContext() — use the pre-instantiated spark session in Fabric notebooks
  • Migrate Hive DDL (STORED AS ORC, LOCATION, TBLPROPERTIES) to Delta Lake DDL — see hive-to-delta.md
  • Introduce notebookutils for file system operations, secret retrieval, and child notebook orchestration where HDInsight used custom scripts or direct API calls
  • Replace Oozie XML workflows with Fabric Data Pipelines — see § Oozie → Fabric Pipelines
  • Align library management to Fabric Environments — remove bootstrap.sh, conda envs, and runtime %pip install patterns for production workloads

PREFER

  • OneLake Shortcuts over copying data — mount existing ADLS Gen2 containers as shortcuts to avoid re-ingestion during migration
  • Delta Lake for all tables migrated from Hive ORC/Parquet — ACID guarantees, time travel, and schema enforcement improve data quality
  • Fabric Starter Pool for initial migration validation — no pool configuration overhead, fast session startup
  • Lakehouse schemas (database namespaces) for organizing migrated Hive databases — one schema per Hive database within a single Lakehouse
  • Medallion architecture for restructuring migrated data layers during migration — align Bronze/Silver/Gold with raw Hive → validated Delta → serving Gold patterns

AVOID

  • Do not use SparkContext() or HiveContext() constructors in Fabric notebooks — they conflict with the pre-instantiated spark session and will raise errors
  • Do not use hive-site.xml or external Hive metastore configuration — Fabric's Delta Lake-backed Lakehouse IS the metastore
  • Do not assume YARN queue mappings translate to Fabric pools — re-design resource allocation based on Fabric Spark pool SLAs
  • Do not attempt to run Oozie shell actions or Java MapReduce jobs directly in Fabric — these must be refactored (see § Oozie → Fabric Pipelines)
  • Do not use %sh magic for file system operations in production notebooks — use notebookutils.fs.* for portability and OneLake token-based auth

Examples

See code-patterns.md for full before/after examples. Key quick references:

Legacy context → Fabric pre-instantiated session

# HDInsight (remove entirely)
from pyspark.sql import HiveContext
hc = HiveContext(sc)

# Fabric — use pre-instantiated spark directly
df = spark.sql("SELECT * FROM sales.fact_orders")

WASB path → OneLake path (after shortcut creation)

# HDInsight
df = spark.read.parquet("wasb://[email protected]/orders/")

# Fabric
df = spark.read.parquet("Files/raw/orders/")

Hive DDL → Delta DDL

-- HDInsight
CREATE TABLE sales_db.fact_orders (...) STORED AS ORC LOCATION 'wasb://...';

-- Fabric
CREATE SCHEMA IF NOT EXISTS sales_db;
CREATE TABLE sales_db.fact_orders (...) USING DELTA;

microsoft tarafından daha fazla skill

oss-growth
microsoft
OSS büyüme korsanı kişiliği
official
microsoft-foundry
microsoft
Foundry ajanlarını uçtan uca dağıtın, değerlendirin ve yönetin: Docker build, ACR push, barındırılan/prompt ajan oluşturma, konteyner başlatma, toplu değerlendirme, sürekli değerlendirme, prompt optimizer iş akışları, agent.yaml, izlerden veri kümesi oluşturma. ŞUNUN İÇİN KULLANIN: ajanı Foundry'ye dağıtma, barındırılan ajan, ajan oluşturma, ajanı çağırma, ajanı değerlendirme, toplu değerlendirme çalıştırma, sürekli değerlendirme, sürekli izleme, sürekli değerlendirme durumu, prompt optimize etme, prompt iyileştirme, prompt optimizer
officialdevelopmentdevops
azure-ai
microsoft
Azure AI için kullanılır: Arama, Konuşma, OpenAI, Belge Zekası. Arama, vektör/karma arama, konuşmadan metne, metinden konuşmaya, transkripsiyon, OCR konularında yardımcı olur. NE ZAMAN: AI Arama, sorgu arama, vektör arama, karma arama, anlamsal arama, konuşmadan metne, metinden konuşmaya, transkribe etme, OCR, metni konuşmaya dönüştürme.
officialdevelopmentapi
azure-deploy
microsoft
Halihazırda .azure/deployment-plan.md ve altyapı dosyaları bulunan, ÖNCEDEN HAZIRLANMIŞ uygulamalar için Azure dağıtımlarını gerçekleştirir. Kullanıcı yeni bir uygulama OLUŞTURMAK istediğinde bu beceriyi KULLANMAYIN — bunun yerine azure-prepare kullanın. Bu beceri, yerleşik hata kurtarma ile azd up, azd deploy, terraform apply ve az deployment komutlarını çalıştırır. azure-prepare'dan .azure/deployment-plan.md ve azure-validate'dan onaylanmış durum gerektirir. NE ZAMAN: "azd up çalıştır", "azd deploy çalıştır", "dağıtımı gerçekleştir",...
officialdevopsaws
azure-storage
microsoft
Azure Storage Services dahil olmak üzere Blob Storage, File Shares, Queue Storage, Table Storage ve Data Lake. Depolama erişim katmanları (hot, cool, cold, archive), her katmanın ne zaman kullanılacağı ve katman karşılaştırması hakkında soruları yanıtlar. Nesne depolama, SMB dosya paylaşımları, eşzamansız mesajlaşma, NoSQL anahtar-değer ve büyük veri analitiği sağlar. Yaşam döngüsü yönetimini içerir. KULLANIM AMACI: blob depolama, dosya paylaşımları, kuyruk depolama, tablo depolama, data lake, dosya yükleme, blob indirme, depolama hesapları, erişim katmanları,...
officialdevelopmentdatabase
azure-diagnostics
microsoft
Azure üretim sorunlarını AppLens, Azure Monitor, kaynak durumu ve güvenli triyaj kullanarak hata ayıklayın. NE ZAMAN: üretim sorunlarını hata ayıklama, uygulama servisini sorun giderme, uygulama servisi yüksek CPU, uygulama servisi dağıtım hatası, konteyner uygulamalarını sorun giderme, işlevleri sorun giderme, AKS sorun giderme, kubectl bağlanamıyor, kube-system/CoreDNS hataları, pod beklemede, crashloop, düğüm hazır değil, yükseltme hataları, günlükleri analiz etme, KQL, içgörüler, görüntü çekme hataları, soğuk başlatma sorunları, durum yoklaması
officialdevopsdevelopment
azure-prepare
microsoft
Azure uygulamalarını dağıtıma hazırlayın (altyapı Bicep/Terraform, azure.yaml, Dockerfiles). Oluşturma/modernize etme veya oluşturma+dağıtma için kullanın; çapraz bulut geçişi için kullanmayın (azure-cloud-migrate kullanın). ŞUNLAR İÇİN KULLANMAYIN: copilot-sdk uygulamaları (azure-hosted-copilot-sdk kullanın). ŞU DURUMLARDA: "uygulama oluştur", "web uygulaması oluştur", "API oluştur", "sunucusuz HTTP API oluştur", "ön uç oluştur", "arka uç oluştur", "hizmet oluştur", "uygulamayı modernize et", "uygulamayı güncelle",
officialdevelopmentdevops
azure-validate
microsoft
Azure dağıtım öncesi hazırlık doğrulaması. Dağıtım öncesinde yapılandırma, altyapı (Bicep veya Terraform), RBAC rol atamaları, yönetilen kimlik izinleri ve ön koşullar üzerinde derin kontroller gerçekleştirir. NE ZAMAN: uygulamamı doğrula, dağıtım hazırlığını kontrol et, ön kontrolleri çalıştır, yapılandırmayı doğrula, dağıtıma hazır olup olmadığını kontrol et, azure.yaml dosyasını doğrula, Bicep'i doğrula, dağıtım öncesi test et, dağıtım hatalarını gider, Azure Functions'ı doğrula, function uygulamasını doğrula, sunucusuz do
officialdevopstesting