Microsoft Fabric Data Eng (DP-700) Exam Questions Apr - 2025

Microsoft Fabric Data Eng (DP-700) Exam Questions Apr - 2025

Description:

Skills at a glance

  • Implement and manage an analytics solution (30–35%)

  • Ingest and transform data (30–35%)

  • Monitor and optimize an analytics solution (30–35%)

Implement and manage an analytics solution (30–35%)

Configure Microsoft Fabric workspace settings

  • Configure Spark workspace settings

  • Configure domain workspace settings

  • Configure OneLake workspace settings

  • Configure data workflow workspace settings

Implement lifecycle management in Fabric

  • Configure version control

  • Implement database projects

  • Create and configure deployment pipelines

Configure security and governance

  • Implement workspace-level access controls

  • Implement item-level access controls

  • Implement row-level, column-level, object-level, and folder/file-level access controls

  • Implement dynamic data masking

  • Apply sensitivity labels to items

  • Endorse items

  • Implement and use workspace logging

Orchestrate processes

  • Choose between a pipeline and a notebook

  • Design and implement schedules and event-based triggers

  • Implement orchestration patterns with notebooks and pipelines, including parameters and dynamic expressions

Ingest and transform data (30–35%)

Design and implement loading patterns

  • Design and implement full and incremental data loads

  • Prepare data for loading into a dimensional model

  • Design and implement a loading pattern for streaming data

Ingest and transform batch data

  • Choose an appropriate data store

  • Choose between dataflows, notebooks, KQL, and T-SQL for data transformation

  • Create and manage shortcuts to data

  • Implement mirroring

  • Ingest data by using pipelines

  • Transform data by using PySpark, SQL, and KQL

  • Denormalize data

  • Group and aggregate data

  • Handle duplicate, missing, and late-arriving data

Ingest and transform streaming data

  • Choose an appropriate streaming engine

  • Choose between native storage, followed storage, or shortcuts in Real-Time Intelligence

  • Process data by using eventstreams

  • Process data by using Spark structured streaming

  • Process data by using KQL

  • Create windowing functions

Monitor and optimize an analytics solution (30–35%)

Monitor Fabric items

  • Monitor data ingestion

  • Monitor data transformation

  • Monitor semantic model refresh

  • Configure alerts

Identify and resolve errors

  • Identify and resolve pipeline errors

  • Identify and resolve dataflow errors

  • Identify and resolve notebook errors

  • Identify and resolve eventhouse errors

  • Identify and resolve eventstream errors

  • Identify and resolve T-SQL errors

Optimize performance

  • Optimize a lakehouse table

  • Optimize a pipeline

  • Optimize a data warehouse

  • Optimize eventstreams and eventhouses

  • Optimize Spark performance

  • Optimize query performance


Course Fee

$19.99

Discounted Fee

$0.00

Hours

0

Views

53