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Data Science Full Course - 12 Hours | Data Science For Beginners | Data Science Tutorial | Edureka

This Edureka Data Science Full Course video will help you understand and learn Data Science Algorithms in detail. This Data Science Tutorial is ideal for both beginners as well as professionals who want to master Data Science Algorithms.


โœ… Free Online Course
๐Ÿƒโ€โ™‚๏ธ Self paced
Duration โฐ : 11-12 hours long
Source: Edureka

๐Ÿ”— COURSE LINK


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Modern Data Scientist

What the industry needs?

Rating โญ๏ธ: 4.5 out 5
Students ๐Ÿ‘จโ€๐ŸŽ“ : 3158
Duration โฐ : 1hr 40 min of on-demand video
Created by ๐Ÿ‘จโ€๐Ÿซ: Prof Poornachandra Sarang, Ph.D.

๐Ÿ”— Course Link

#datascience #programming
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Data Pipeline Overview
The four V's of big data
Probability for Data Science

Covers the probability concepts essential for data science

Rating โญ๏ธ: 4.7 out 5
Students ๐Ÿ‘จโ€๐ŸŽ“ : 2917
Duration โฐ : 1hr 56min of on-demand video
Created by ๐Ÿ‘จโ€๐Ÿซ: Anand Seetharam

๐Ÿ”— Course Link

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storytelling with data

by Cole Nussbaumer Knaflic


๐Ÿ“„ 284 pages

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Forwarded from AI Revolution
Leap Learning

LEAP by Thoughtjumper is an intelligent learning tool designed to enhance the learning experience. It aims to guide individuals in effective learning across various domains such as business, data science, technology, design, and more.

The tool offers learning quests in a wide range of subjects, allowing users to select their desired topics such as web development, digital marketing, data science, finance, and more.LEAP is focused on helping users learn faster and better.

It provides an intelligent guidance system that adapts to individual learning preferences. By decluttering distractions, LEAP allows users to solely focus on their learning, leading to a more immersive experience.

๐Ÿ’ฐPrice: Free

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9 types of data visualization

In this article, I will guide you through the wonderful world of data visualization and expand your knowledge about the way you can display your data and how to tell your data story to your specific audience.

Letโ€™s start with data visualization in its most basic form; the (static) chart. Charts are used to display large amounts of data in a condensed and easy-to-understand manner. They are graphical representations of data which makes it easy and fast to digest by the brain. Moreover, charts make it apparent to find hidden information and insights that are otherwise hard to find from a table with data.

There are a lot of types of charts, each with its own function. The most commonly known charts are the bar chart, the line chart, and the pie chart. Charts form the basis for all types of data visualizations I will discuss in this blog.

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Ocean Data in Canada

Learn what ocean data are, how they're being used, and the ways in which you can access open ocean data.

Rating โญ๏ธ: 4.7 out 5
Students ๐Ÿ‘จโ€๐ŸŽ“ : 1368
Duration โฐ : 49min of on-demand video
Created by ๐Ÿ‘จโ€๐Ÿซ: Katherine Luber, Jacob Thompson, Shayla Fitzsimmons

๐Ÿ”— Course Link

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Latex Cheat Sheet of data sceince.pdf
1.4 MB
Latex Cheat Sheet of data science
Your Ultimate guide to Permutations

Have you ever marveled at how many ways you can arrange a set of items when the order truly matters? In this article, I will explain permutations, exploring how they help determine the number of possible arrangements in a set.

If you find my articles interesting, donโ€™t forget to clap and follow ๐Ÿ‘๐Ÿผ, these articles take times and effort to do!

Permutations

โ€œA permutation is a mathematical technique that determines the number of possible arrangements in a set when the order of the arrangements matters. Common mathematical problems involve choosing only several items from a set of items in a certain order. โ€œ[1]

Types of permutations

1 / Permutations Without Repetition : used when each item in the set can only appear once in each arrangement.

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How Data Science Is Helping in Robotics and Artificial Intelligence
Data Science Core Concepts 2023

Data Science Core Concepts

Rating โญ๏ธ: 4.8 out 5
Students ๐Ÿ‘จโ€๐ŸŽ“ : 1551
Duration โฐ : 1hr 49min of on-demand video
Created by ๐Ÿ‘จโ€๐Ÿซ: Python Only Geeks

๐Ÿ”— Course Link

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Ray

Ray is a unified framework for scaling AI and Python applications. Ray consists of a core distributed runtime and a set of AI Libraries for accelerating ML workloads.

Creator: ray-project
Stars โญ๏ธ: 33.3k
Forked By: 5.6k
https://github.com/ray-project/ray

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Data Science Minimum: 10 Essential Skills You Need to Know to Start Doing Data Science
Data Science : Definition, Challenges and Use cases
Mastering Probability and Combinatorics

"Mastering the Essentials: Probability and Combinatorics Explained"

Rating โญ๏ธ: 4.0 out 5
Students ๐Ÿ‘จโ€๐ŸŽ“ : 1,129
Duration โฐ : 1hr 24min of on-demand video
Created by ๐Ÿ‘จโ€๐Ÿซ: Akhil Vydyula

๐Ÿ”— Course Link

#probability
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Data Science Portfolios, Speeding Up Python, KANs, and Other May Must-Reads

Python One Billion Row Challenge โ€” From 10 Minutes to 4 Seconds
With a longstanding reputation for slowness, youโ€™d think that Python wouldnโ€™t stand a chance at doing well in the popular โ€œone billion rowโ€ challenge. Dario Radeฤiฤ‡โ€™s viral post aims to show that with some flexibility and outside-the-box thinking, you can still squeeze impressive time savings out of your code.

N-BEATS โ€” The First Interpretable Deep Learning Model That Worked for Time Series Forecasting
Anyone who enjoys a thorough look into a modelโ€™s inner workings should bookmark Jonte Danckerโ€™s excellent explainer on N-BEATS, the โ€œfirst pure deep learning approach that outperformed well-established statistical approachesโ€ for time-series forecasting tasks.

Build a Data Science Portfolio Website with ChatGPT: Complete Tutorial
In a competitive job market, data scientists canโ€™t afford to be coy about their achievements and expertise. A portfolio website can be a powerful way to showcase both, and Natassha Selvarajโ€™s patient guide demonstrates how you can build one from scratch with the help of generative-AI tools.

A Complete Guide to BERT with Code
Why not take a step back from the latest buzzy model to learn about those precursors that made todayโ€™s innovations possible? Bradney Smith invites us to go all the way back to 2018 (or several decades ago, in AI time) to gain a deep understanding of the groundbreaking BERT (Bidirectional Encoder Representations from Transformers) model.

Why LLMs Are Not Good for Coding โ€” Part II
Back in the present day, we keep hearing about the imminent obsolescence of programmers as LLMs continue to improve. Andrea Valenzuelaโ€™s latest article serves as a helpful โ€œnot so fast!โ€ interjection, as she focuses on their inherent limitations when it comes to staying up-to-date with the latest libraries and code functionalities.

PCA & K-Means for Traffic Data in Python
What better way to round out our monthly selection than with a hands-on tutorial on a core data science workflow? In her debut TDS post, Beth Ou Yang walks us through a real-world exampleโ€”traffic data from Taiwan, in this caseโ€”of using principle component analysis (PCA) and K-means clustering.
Data Analysis Skills
2024/11/16 08:46:18
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