Snowpro Specialty: Snowpark Certification Exam (Sps-B01)
Published 12/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.04 GB | Duration: 6h 46m
Published 12/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.04 GB | Duration: 6h 46m
Course and Practice Exams, to help you become a Snowpark Specialist with a new Snowflake certification
What you'll learn
How to pass the new SnowPro Snowpark Specialist certification exam, issued recently by Snowflake
How to get your first advanced Specialized certification in Snowflake AI Data Cloud
How to acquire a hard specialized certification in Snowflake AI Data Cloud programming
Master Snowpark Python for yourself at the programming level
Requirements
The SnowPro Core certification is a pre-requisite for this specialty certification
Basic Python and SQL programming skills
Optional PySpark programming skills
Optional prior knowledge of Pandas
Optional data science and machine learning experience
Description
Who this course is forPeople trying to pass the new SnowPro Snowpark Specialist certification exam issued recently by Snowflake.Snowflake experts trying to improve their programming skills learning Snowpark.Python developers willing to acquire a certification in Snowflake AI Data Cloud programming.Data Engineers and AI or ML Engineers.Data Scientists and Data Application Developers.Data Analysts with some Python and SQL programming experience.This is not an introduction to Snowflake, as you should already have some rather advanced knowledge on this platform. Passing the SnowPro Core certification exam is also a requirement for this SnowPro Specialty: Snowpark Certification Exam (SPS-B01) advanced specialty exam.About your InstructorMy name is Cristian Scutaru and I’m a world-class expert in Snowflake, SnowPro SME (Subject Matter Expert) and former Snowflake Data Superhero.For several years, I helped Snowflake create many of the exam questions out there. Many of the Advanced exam questions and answers from the SnowPro exams have been indeed created by me.I passed over the years 5 out of the 6 SnowPro exams myself, all from the first attempt. In the last 3-4 years alone, I passed over 40 paid proctored certification exams overall. And I still never failed one, I was lucky so far.The course also contains one high-quality practice test with 30 exam-like questionsAll questions are closely emulated from those currently found in the actual SnowPro Specialty: Snowpark certification exam.All questions are curated and very similar to the actual Snowpark Specialist exam questions.Many exam questions are long and scenario-based.Most exam questions include long portions of code, as this certification is targeted in particular for Python developers.Detailed explanations with external references for any possible choice, in each practice test question.Quiz question types are mostly multi-choice and multi-select.Specifics of the real examAnnounced on Oct 21, 2024Between 65 and 80 questions (80 for the beta exam)Less than 2 hours time limit (115 minutes for the beta exam)Passing score of around 75% (must be estimated later on)$112 US fee per attempt for the beta exam (until Dec 20, 2024)or $225 US fee per attempt when going live (since Jan 2025)What the exam will test you forSpecialized knowledge, skills, and best practices used to build Snowpark DataFrame data solutions in Snowflake.Key Snowflake concepts, features, and programming constructs.Perform data transformations using Snowpark DataFrame functions.Query data sources as Snowpark DataFrame objects.Connect to Snowflake using a Snowpark Session object.Process results client-side or persist results in Snowflake through Snowpark DataFrame actions.Design a sequence of operations or conditional logic with Snowpark stored procedures.What the typical candidate may have1+ years of Snowpark experience with Snowflake, in an enterprise environment.Knowledge of the Snowpark API for Python and Snowpark’s client-side and server-side capabilities.Some experience with data migration.Advanced proficiency writing code in Python and/or PySpark.Exam domain breakdown (from the Study Guide)Snowpark Concepts - 15%Snowpark API for Python - 30%Snowpark for Data Transformations - 35%Snowpark Performance Optimization - 20%
Overview
Section 1: Introduction
Lecture 1 Course Structure and Content
Lecture 2 About the SnowPro Snowpark Certification
Lecture 3 About your Instructor
Lecture 4 How to Benefit Most from this Course
Lecture 5 Environment Setup
Lecture 6 Frequently Asked Questions
Section 2: Snowpark DataFrame Transformations
Lecture 7 Introduction to Snowpark DataFrame Transformations
Lecture 8 Snowpark DataFrame API Overview
Lecture 9 DataFrame Selections and Actions
Lecture 10 Filter and Transform Data
Lecture 11 Joins and Sets on DataFrames
Lecture 12 Clean and Sample Data with DataFrames
Lecture 13 DataFrame Aggregations
Lecture 14 Window Functions in Snowpark
Section 3: Snowpark DataFrame Integrations
Lecture 15 Introduction to Snowpark DataFrame Integrations
Lecture 16 Snowpark vs Pandas DataFrames
Lecture 17 Create Snowpark DataFrames
Lecture 18 Persist the Results of Snowpark DataFrames
Lecture 19 DML Operations using Snowpark DataFrames
Lecture 20 Process Semi-Structured Data from DataFrames
Section 4: Procedures and Functions in Snowpark
Lecture 21 Introduction to Procedures and Functions in Snowpark
Lecture 22 Create Procedures and Functions in SQL
Lecture 23 Call Procedures and Functions in Snowpark
Lecture 24 Python Worksheets
Lecture 25 Create Stored Procedures in Snowpark
Lecture 26 Create User-Defined Functions in Snowpark
Lecture 27 Vectorized User-Defined Functions
Lecture 28 Secure Stored Procedures and Functions
Lecture 29 Stages and File Operations
Lecture 30 Packages and Imports
Lecture 31 Run Stored Procedures in Snowpark
Section 5: Snowpark Configuration and Environments
Lecture 32 Introduction to Snowpark Configuration and Environments
Lecture 33 Snowpark-Optimized Warehouses
Lecture 34 Snowflake APIs
Lecture 35 Snowpark Sessions and Setup
Lecture 36 Observability in Snowpark
Lecture 37 Snowpark Test Environments
Lecture 38 Snowpark for Machine Learning
Section 6: Wrapping Up
Lecture 39 Sample Questions with Answers
Lecture 40 Congratulations, You Made It!
Lecture 41 Bonus Lecture
Data Engineers and AI or ML Engineers,Data Scientists and Data Application Developers,Data Analysts with some Python and SQL programming experience