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20 Solved End-to-End Big Data Projects with Source Code

ProjectPro

Ace your big data interview by adding some unique and exciting Big Data projects to your portfolio. This blog lists over 20 big data projects you can work on to showcase your big data skills and gain hands-on experience in big data tools and technologies.

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Top 20 Data Analytics Projects for Students to Practice in 2023

ProjectPro

Microsoft Excel: A successful Excel spreadsheet helps to organize raw data into a more readable format. With more complex data, Excel allows customization of fields and functions that can make calculations based on the data in the excel spreadsheet. Topic modelling can also be used to classify large datasets of emails.

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100+ Big Data Interview Questions and Answers 2023

ProjectPro

Big data operations require specialized tools and techniques since a relational database cannot manage such a large amount of data. Big data enables businesses to gain a deeper understanding of their industry and helps them extract valuable information from the unstructured and raw data that is regularly collected.

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Apache Kafka Architecture and Its Components-The A-Z Guide

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The Keystone Data Pipeline of Netflix processes over 500 billion events a day. These events include error logs, data on user viewing activities, and troubleshooting events, among other valuable datasets. These processing pipelines create channels of real-time data. Spotify uses Kafka as part of its log delivery system.

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Top 6 Big Data and Business Analytics Companies to Work For in 2023

ProjectPro

It provides the first purpose-built Adaptive Data Preparation Solution(launched in 2013) for data scientist, IT teams, data curators, developers, and business analysts -to integrate, cleanse and enrich raw data into meaningful analytic ready big data that can power operational, predictive , ad-hoc and packaged analytics.