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Data Science vs Software Engineering - Significant Differences

Knowledge Hut

Data Science is a field of study that handles large volumes of data using technological and modern techniques. This field uses several scientific procedures to understand structured, semi-structured, and unstructured data. Both data science and software engineering rely largely on programming skills.

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Data Quality Platform: Benefits, Key Features, and How to Choose

Databand.ai

Data quality platforms can be standalone solutions or integrated into broader data management ecosystems, such as data integration, business intelligence (BI), or data analytics tools. In this article: Why Do You Need a Data Quality Platform?

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Data Lake Explained: A Comprehensive Guide to Its Architecture and Use Cases

AltexSoft

Unstructured data sources. This category includes a diverse range of data types that do not have a predefined structure. Examples of unstructured data can range from sensor data in the industrial Internet of Things (IoT) applications, videos and audio streams, images, and social media content like tweets or Facebook posts.

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What is data processing analyst?

Edureka

Data processing analysts are experts in data who have a special combination of technical abilities and subject-matter expertise. They are essential to the data lifecycle because they take unstructured data and turn it into something that can be used.

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Real-World Use Cases of Big Data That Drive Business Success

Knowledge Hut

Sentiment Analysis and Natural Language Processing (NLP): AI and ML algorithms can process and analyze unstructured data, like text and speech, to better understand consumer sentiments. AWS (Amazon Web Services) offers a range of services and tools for managing and analyzing big data.

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Top ETL Use Cases for BI and Analytics:Real-World Examples

ProjectPro

If you're wondering how the ETL process can drive your company to a new era of success, this blog will help you discover what use cases of ETL make it a critical component in many data management and analytic systems. Business Intelligence - ETL is a key component of BI systems for extracting and preparing data for analytics.

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Data Analyst Interview Questions to prepare for in 2023

ProjectPro

As a data analyst , I would retrain the model as quick as possible to adjust with the changing behaviour of customers or change in market conditions. 5) What is data cleansing? Mention few best practices that you have followed while data cleansing. How to run a basic RNN model using Pytorch?