Data Architecture For Data Scientists

Posted By: Sigha

Data Architecture For Data Scientists
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English (US) | Size: 473.48 MB | Duration: 2h 15m

Datawarehouse, Data Lake, Data Lakehouse, Data Mesh, Kafka, Lambda & Kappa architecture, Feature Store, Vector DB & more

What you'll learn
Data Architecture in general, to be able to navigate your organizations data landscape
Develop understanding of topics like Data Lake, Datawarehousing and even Data Lakehouse to be able to communicate with data engineering teams
Understand the pricinciples of data governance topics like Data Mesh to better navigate the data governance paradigm
Get introduced to technologies related to machine learning specific data infrastructure like feature stores and vector databases
What is data architecture? What is a data warehouse (DWH) ? What is data lake? What is data lakehouse? What is data mesh?
How is streaming data used in data science? What is a feature store? How is a feature store used in machine learning? What are vector databases??

Requirements
Basic understanding of data science project workflow like model training and model deployment
Basic understanding of why data is needed for training and deploying models
Understanding of the difference between batch and real time use cases

Description
Machine learning models are only as good as the data they are trained on, which is why understanding data architecture is critical for data scientists building machine learning models.This course will teach you:The fundamentals of data architectureA refresher on data types, including structured, unstructured, and semi-structured dataDataWarehouse FundamentalsData Lake FundamentalsThe differences between data warehouses and data lakesDataLakehouse FundamentalsData Mesh fundamentals for decentralized governance of data including topics like data catalog, data contracts and data fabric.The challenges of incorporating streaming data in data scienceSome machine learning-specific data infrastructure, such as feature stores and vector databasesThe course will help you:Make informed decisions about the architecture of your data infrastructure to improve the accuracy and effectiveness of your modelsAdopt modern technologies and practices to improve workflowsDevelop a better understanding and empathy for data engineersImprove your reputation as an all-around data scientistThink of data architecture as the framework that supports the construction of a machine learning model. Just as a building needs a strong framework to support its structure, a machine learning model needs a solid data architecture to support its accuracy and effectiveness. Without a strong framework, the building is at risk of collapsing, and without a strong data architecture, machine learning models are at risk of producing inaccurate or biased results. By understanding the principles of data architecture, data scientists can ensure that their data infrastructure is robust, reliable, and capable of supporting the training and deployment of accurate and effective machine learning models.By the end of this course, you'll have the knowledge to help guide your team and organization in creating the right data architecture for deploying data science use cases.

Who this course is for:
Data Scientists who are transitioning from academia or business domains,Junior data scientists who would like to understand the topics surrounding data infrastructure,Citizen data scientists who wish to deploy machine learning models in production,Anyone who wishes to learn the basics of data architecture in a very short time,BI Analysts and BI developers who would like a quick overview of the enterprise data landscape,Folks who wish to get a quick overview of data architecture components in an enterprise.




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