Skip to main Content

Test / Eksamen: Microsoft Fabric Data Engineer Associate Exam (DP-700)

  • Pris: Ring venligst
  • Kode: DP-700

Ring venligst

Beskrivelse

Top

As a candidate for this exam, you should have subject matter expertise with data loading patterns, data architectures, and orchestration processes. Your responsibilities for this role include:

- Ingesting and transforming data.
- Securing and managing an analytics solution.
- Monitoring and optimizing an analytics solution.

You work closely with analytics engineers, architects, analysts, and administrators to design and deploy data engineering solutions for analytics.

You should be skilled at manipulating and transforming data by using Structured Query Language (SQL), PySpark, and Kusto Query Language (KQL)

Yderligere Information

Top

 

Målsætning

Top

You will be assessed on the following:

  • Implementing and managing an analytics solution
  • Ingesting and transforming data
  • Monitoring and optimizing an analytics solution

Indhold

Top
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, mirrored 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

Forudsætninger

Top

It is recommended that students have attended the following course before attempting the exam:

  • Implement data engineering solutions using Microsoft Fabric- DP700