[New] SnowFlake Data Engineer Practice 2021 Exams --> 3 Set - CouponED
Skip to content Skip to sidebar Skip to footer

[New] SnowFlake Data Engineer Practice 2021 Exams --> 3 Set


[New] SnowFlake Data Engineer Practice 2021 Exams --> 3 Set

 [New] SnowFlake Data Engineer Practice 2021 Exams --> 3 Set. Get Ready for your SnowPro Data Engineer Exam!! Hot & New.


**Created in December, 2021**

The SnowPro Advanced Data Engineer Practices test are carefully designed to Advance your Snowflake Skills

This Course featured..

  • All Important questions are covered with Correct Answers & detailed explanation.
  • Quickest way to learn all important concepts of SnowFlake Advanced.
  • Uniqueness & Concepts coverage of snowflake subject is the key part of this learning program.
  • Get Fully prepared for your SnowPro Advanced Data Engineer in this learning program.
  • Practice these set of questions helps you to understand SnowFlake Advanced.
  • With due course of time, will keep on updating this program with more resources.
  • For any concepts related doubts/issue,Feel free to contact.
  • NetApp Certified Data Administrator Practice Exam (NS0-162)

The SnowPro Advanced: Data Engineer tests advanced knowledge and skills used to apply comprehensive data engineering principles using Snowflake. This certification will test the ability to: • Source data from Data Lakes, APIs, and on-premises • Transform, replicate, and share data across cloud platforms • Design end-to-end near real-time streams • Design scalable compute solutions for DE workloads • Evaluate performance metrics

This exam guide includes test domains, weightings, and objectives. The table below lists the main content domains and their weighting ranges.

Domain                             Estimated Percentage Range of Exam Questions

1.0 Data Movement                                 35-40%

2.0 Performance Optimization                 20-25%

3.0 Storage and Data Protection             10-15%

4.0 Security                                              10-15%

5.0 Data Transformation                          15-20%

Number of Questions: 65

Question Types: Multiple Select, Multiple Choice, True/False

Passing Score: 750 + on Scaled Scoring from 0 - 1000


1.0 Domain: Data Movement
1.1 Given a data set, load data into Snowflake.

• Outline considerations for data loading

• Define data loading features and potential impact

1.2 Ingest data of various formats through the mechanics of Snowflake.

• Required data formats

• Outline Stages

1.3 Troubleshoot data ingestion.
1.4 Design, build and troubleshoot continuous data pipelines.

• Design a data pipeline that forces uniqueness but is not unique.

• Stages

• Tasks

• Streams


• Auto ingest as compared to Rest API

1.5 Analyze and differentiate types of data pipelines.
1.6 Install, configure, and use connectors to connect to Snowflake.
1.7 Design and build data sharing solutions.

• Implement a data share

• Create a secure view

• Implement row level filtering

1.8 Outline when to use an External Table and define how they work.

• Partitioning external tables

• Materialized views

• Partitioned data unloading

2.0 Domain: Performance Optimization
2.1 Troubleshoot underperforming queries.

• Identify underperforming queries

• Outline telemetry around the operation

• Increase efficiency

• Identify the root cause

2.2 Given a scenario, configure a solution for the best performance.

• Scale out vs. scale in

• Cluster vs. increase warehouse size

• Query complexity

• Micro partitions and the impact of clustering

• Materialized views

• Search optimization

2.3 Outline and use caching features.

Page 7

2.4 Monitor continuous data pipelines.


• Stages

• Tasks

• Streams

3.0 Domain: Storage & Data Protection
3.1 Implement data recovery features in Snowflake.

• Time Travel

• Fail-safe

3.2 Outline the impact of Streams on Time Travel.

3.3 Use System Functions to analyze Micro-partitions.

• Clustering depth

• Cluster keys

3.4 Use Time Travel and Cloning to create new development environments.

• Backup databases

• Test changes before deployment

Page 8

• Rollback

4.0 Domain: Security

4.1 Outline Snowflake security principles.

• Authentication methods (Single Sign On, Key Authentication,

Username/Password, MFA)

• Role Based Access Control (RBAC)

4.2 Outline the System Defined Roles and when they should be applied.

• The purpose of each of the System Defined Roles including best

practices usage in each case

• The primary differences between SECURITYADMIN and USERADMIN


• The difference between the purpose and usage of the


4.3 Outline Column Level Security.

• Explain the options available to support column level security including

Dynamic Data Masking and External Tokenization

DDL required to manage Dynamic Data Masking

• Methods and best practices for creating and applying masking policies on


5.0 Domain: Data Transformation

5.1 Define User-Defined Functions (UDFs) and outline how to use them.

• Secure UDFs


• JavaScript UDFs

• Returning Table Value vs. Scalar Value

5.2 Define and create External Functions.

• Secure External Functions

5.3 Design, Build, and Leverage Stored Procedures.

• Transaction management

5.4 Handle and transform semi-structured data.

• Traverse and transform semi-structured data to structured data

• Transform structured to semi-structured data

5.5 Outline different data schemas.

• Star

• Data lake

• Data vault

Get Udemy On

Online Course CoupoNED based Analytics Education Company and aims at Bringing Together the analytics companies and interested Learners.

Post a Comment for "[New] SnowFlake Data Engineer Practice 2021 Exams --> 3 Set"