Demonstrate the breadth and depth of your data science skills by earning all of the Databricks Data Scientist credentials

Overview

Data Scientist Learning Plan

Demonstrate the breadth and depth of your data science skills by earning all of the Databricks Data Scientist credentials.

This learning path consists of several series of self-paced (E-Learning) courses and paid instructor-led courses. If you are interested in ILT, please be sure to search the course catalog for more information.

Learning Plan Structure

  • What is the Databricks Lakehouse Platform?

    This course (formerly Fundamentals of the Databricks Lakehouse Platform) is designed for everyone who is brand new to the Platform and wants to learn more about what it is, why it was developed, what it does, and the components that make it up.

    Our goal is that by the time you finish this course, you’ll have a better understanding of the Platform in general and be able to answer questions like: What is Databricks? Where does Databricks fit into my workflow? How have other customers been successful with Databricks?

    Learning objectives

    • Describe what the Databricks Lakehouse Platform is.
    • Explain the origins of the Lakehouse data management paradigm.
    • Outline fundamental problems that cause most enterprises to struggle with managing and making use of their data.
    • Identify the most popular components of the Databricks Lakehouse - Platform used by data practitioners, depending on their unique role.
    • Give examples of organizations that have used the Databricks Lakehouse Platform to streamline big data processing and analytics.
  • What is Delta Lake?

    Today, many organizations struggle with achieving successful big data and artificial intelligence (AI) projects. One of the biggest challenges they face is ensuring that quality, reliable data is available to data practitioners running these projects. After all, an organization that does not have reliable data will not succeed with AI. To help organizations bring structure, reliability, and performance to their data lakes, Databricks created Delta Lake.

    Delta Lake is an open format storage layer that sits on top of your organization’s data lake. It is the foundation of a cost-effective, highly scalable Lakehouse and is an integral part of the Databricks Lakehouse Platform.

    In this course (formerly Fundamentals of Delta Lake), we’ll break down the basics behind Delta Lake - what it does, how it works, and why it is valuable from a business perspective, to any organization with big data and AI projects.

    Learning objectives

    • Describe how Delta Lake fits into the Databricks Lakehouse Platform.
    • Explain the four elements encompassed by Delta Lake.
    • Summarize high-level Delta Lake functionality that helps organizations solve common challenges related to enterprise-scale data analytics.
    • Articulate examples of how organizations have employed Delta Lake on Databricks to improve business outcomes.
  • What is Databricks SQL?

    Databricks SQL offers SQL users a platform for querying, analyzing, and visualizing data. This course (formerly Fundamentals of Databricks SQL) guides users through the interface and demonstrates many of the tools and features available in the Databricks SQL interface.

    Learning objectives

    • Describe the basics of the Databricks SQL service.
    • Describe the benefits of using Databricks SQL to perform data analyses.
    • Describe how to complete a basic query, visualization, and dashboard workflow using Databricks SQL.
  • What is Databricks Machine Learning?

    Databricks Machine Learning offers data scientists and other machine learning practitioners a platform for completing and managing the end-to-end machine learning lifecycle. This course (formerly Fundamentals of Databricks Machine Learning) guides business leaders and practitioners through a basic overview of Databricks Machine Learning, the benefits of using Databricks Machine Learning, its fundamental components and functionalities, and examples of successful customer use.

    Learning objectives

    • Describe the basic overview of Databricks Machine Learning.
    • Identify how using Databricks Machine Learning benefits data science and machine learning teams.
    • Summarize the fundamental components and functionalities of Databricks Machine Learning.
    • Exemplify successful use cases of Databricks Machine Learning by real Databricks customers.
  • Fundamentals of the Databricks Lakehouse Platform Accreditation

  • Apache Spark Programming with Databricks

  • Certification Overview Course for the Databricks Certified Associate Developer for Apache Spark Exam

  • Getting Started with Databricks Machine Learning

  • Scaling Machine Learning Pipelines

Owner
Trung-Duy Nguyen
Trung-Duy Nguyen
Statsmodels: statistical modeling and econometrics in Python

About statsmodels statsmodels is a Python package that provides a complement to scipy for statistical computations including descriptive statistics an

statsmodels 8k Dec 29, 2022
A probabilistic programming library for Bayesian deep learning, generative models, based on Tensorflow

ZhuSuan is a Python probabilistic programming library for Bayesian deep learning, which conjoins the complimentary advantages of Bayesian methods and

Tsinghua Machine Learning Group 2.2k Dec 28, 2022
A tax calculator for stocks and dividends activities.

Revolut Stocks calculator for Bulgarian National Revenue Agency Information Processing and calculating the required information about stock possession

Doino Gretchenliev 200 Oct 25, 2022
Python scripts aim to use a Random Forest machine learning algorithm to predict the water affinity of Metal-Organic Frameworks

The following Python scripts aim to use a Random Forest machine learning algorithm to predict the water affinity of Metal-Organic Frameworks (MOFs). The training set is extracted from the Cambridge S

1 Jan 09, 2022
pandas: powerful Python data analysis toolkit

pandas is a Python package that provides fast, flexible, and expressive data structures designed to make working with "relational" or "labeled" data both easy and intuitive.

pandas 36.4k Jan 03, 2023
Tools for analyzing data collected with a custom unity-based VR for insects.

unityvr Tools for analyzing data collected with a custom unity-based VR for insects. Organization: The unityvr package contains the following submodul

Hannah Haberkern 1 Dec 14, 2022
Full ELT process on GCP environment.

Rent Houses Germany - GCP Pipeline Project: The goal of the project is to extract data about house rentals in Germany, store, process and analyze it u

Felipe Demenech Vasconcelos 2 Jan 20, 2022
Data Analysis for First Year Laboratory at Imperial College, London.

Data Analysis for First Year Laboratory at Imperial College, London. For personal reference only, and to reference in lab reports and lab books.

Martin He 0 Aug 29, 2022
Visions provides an extensible suite of tools to support common data analysis operations

Visions And these visions of data types, they kept us up past the dawn. Visions provides an extensible suite of tools to support common data analysis

168 Dec 28, 2022
This creates a ohlc timeseries from downloaded CSV files from NSE India website and makes a SQLite database for your research.

NSE-timeseries-form-CSV-file-creator-and-SQL-appender- This creates a ohlc timeseries from downloaded CSV files from National Stock Exchange India (NS

PILLAI, Amal 1 Oct 02, 2022
A Python package for modular causal inference analysis and model evaluations

Causal Inference 360 A Python package for inferring causal effects from observational data. Description Causal inference analysis enables estimating t

International Business Machines 506 Dec 19, 2022
Driver Analysis with Factors and Forests: An Automated Data Science Tool using Python

Driver Analysis with Factors and Forests: An Automated Data Science Tool using Python 📊

Thomas 2 May 26, 2022
This is a repo documenting the best practices in PySpark.

Spark-Syntax This is a public repo documenting all of the "best practices" of writing PySpark code from what I have learnt from working with PySpark f

Eric Xiao 447 Dec 25, 2022
Hg002-qc-snakemake - HG002 QC Snakemake

HG002 QC Snakemake To Run Resources and data specified within snakefile (hg002QC

Juniper A. Lake 2 Feb 16, 2022
Fit models to your data in Python with Sherpa.

Table of Contents Sherpa License How To Install Sherpa Using Anaconda Using pip Building from source History Release History Sherpa Sherpa is a modeli

134 Jan 07, 2023
In this tutorial, raster models of soil depth and soil water holding capacity for the United States will be sampled at random geographic coordinates within the state of Colorado.

Raster_Sampling_Demo (Resulting graph of this demo) Background Sampling values of a raster at specific geographic coordinates can be done with a numbe

2 Dec 13, 2022
In this project, ETL pipeline is build on data warehouse hosted on AWS Redshift.

ETL Pipeline for AWS Project Description In this project, ETL pipeline is build on data warehouse hosted on AWS Redshift. The data is loaded from S3 t

Mobeen Ahmed 1 Nov 01, 2021
Recommendations from Cramer: On the show Mad-Money (CNBC) Jim Cramer picks stocks which he recommends to buy. We will use this data to build a portfolio

Backtesting the "Cramer Effect" & Recommendations from Cramer Recommendations from Cramer: On the show Mad-Money (CNBC) Jim Cramer picks stocks which

Gábor Vecsei 12 Aug 30, 2022
A Big Data ETL project in PySpark on the historical NYC Taxi Rides data

Processing NYC Taxi Data using PySpark ETL pipeline Description This is an project to extract, transform, and load large amount of data from NYC Taxi

Unnikrishnan 2 Dec 12, 2021
Stream-Kafka-ELK-Stack - Weather data streaming using Apache Kafka and Elastic Stack.

Streaming Data Pipeline - Kafka + ELK Stack Streaming weather data using Apache Kafka and Elastic Stack. Data source: https://openweathermap.org/api O

Felipe Demenech Vasconcelos 2 Jan 20, 2022