DataScience-Squad
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Data Science Squad Roadmap
βΆ Data Science Squad Roadmap
π βWe are in CIS try to give you advice about How to start in Data Science. This Document for who are interested in Data Scienceβ
βΆWhat is Data Science?
π Data science is the field of study that combines domain expertise, programming skills, and knowledge of mathematics and statistics to extract meaningful insights from data. Data science practitioners apply machine learning algorithms to numbers, text, images, video, audio, and more to produce artificial intelligence (AI) systems to perform tasks that ordinarily require human intelligence. In turn, these systems generate insights which analysts and business users can translate into tangible business value.
βΆWhy Data Science is Important?
Data is valuable, and so is the science in decoding it. Zillions of bytes of data are being generated, and now its value has surpassed oil as well. The role of a data scientist is and will be of paramount importance for organizations across many verticals.
Data without science is nothing. Data needs to be read and analyzed. This calls out for the requirement of having a quality of data and understanding how to read it and make data-driven discoveries.
Data will help to create better customer experiences. For goods and products, data science will be leveraging the power of machine learning to enable companies to create and produce products that customers will adore. For example, for an eCommerce company, a great recommendation system can help them discover their customer personas by looking at their purchase history.
Data will be used across verticals. Data science is not limited to only consumer goods or tech or healthcare. There will be a high demand to optimize business processes using data science from banking and transport to manufacturing. So anyone who wants to be a data scientist will have a whole new world of opportunities open out there. The future is data.
βΆWhat are we going to learn?
π Basic sciences you will need
βββ Mathematics and statistics are the heart of data science. Because this is the basis by which you will understand the data and understand how to build machine learning Algorithms and how to work with them.
π Data Analysis
βββ In this part, you will start by learning the tools and techniques and applying statistics and mathematics that you have learned in order to understand the data, extract useful information from it, and communicate an impact to the owner who can understand and make important decisions
πMachine Learning
βββ Learn foundational machine learning algorithms, starting with data cleaning and supervised models. Then, move on to exploring deep and unsupervised learning. Also Learn advanced machine learning techniques and algorithms and how to package and deploy your models to a production environment.
βΆβΆ This track is divided into 3 Levels
π Beginner: you get a basic understanding of data analysis, tools and techniques.
π Intermediate: dive deeper in more complex topics of ML, Math and data engineering.
π Advanced: where we learn more advanced Math, DL and Deployment.
βΆ Beginner
π Descriptive Stats.
βββ Intro to Descriptive Statistics
βββ Intro to Descriptive Statistics Article 1 or Article 2
βββ Arabic Course
βββ One resource is very enough
π Probability
βββ Khan Academy
βββ Arabic Course
βββ One resource is very enough
π Python
βββ Introduction to Python Programming
βββ
OOP
βββ
Arabic Course
π Pandas
βββ Kaggle
βββ Playlist-Youtube
βββ Arabic Course
βββ One resource is very enough
π Numpy
βββ Kaggle
βββ Arabic Course
π Scipy
βββ Tutorial
βββ Docs
π Data Cleaning
βββ Read this To know the importance of Data Cleaning
βββ Kaggle to Cleaning data
βββ Introduction to Data Science in Python
βββ Arabic video but not enough
βββ Cleaning Data in Python
π Data Visualization
βββ Kaggle to Data Visualization with Seaborn
βββ Intermediate Data Visualization with Seaborn
βββ Playlist-Youtube
π EDA
βββ IBM
πSQL and DataBase
βββ Intro to SQL or IBM
βββ Intro to Relational Databases in SQL
βββ Arabric Course
π Time Series Analysis
βββ Track
βββ Book
βββ fbprohet
βββ Arabic Source Video1 & Video2
Do not forget to apply what you have learned periodically.
βΆIntermediate.
π Math for Machine Learning
βββ Mathematics for Machine Learning Specialization
π Machine Learning
βββ Andrew Ng
βββ IBM ML with Python
βββ Hands on ML book
βββ Arabic Course
π Feature Engineering
βββ Kaggle or Article
βββ Book
βββ Playlist-Youtube
π Tableau
βββ Tutorial
βββ Specialization
βΆβΆ Other topics related to all of the above
π Web Scraping&APIs
βββ course
βββ intro2
βββ Tutorial
βββ book for both topics
π APIs
βββ Tutorial
βββ Article
βββ Tutorial
π Stats.
βββ This stats. book
βββ Think Bayes
π Advanced SQL
βββ course
βββ joins
After finishing this level apply to 2 or 3 good-sized projects.
βΆ Advanced
we will improve and add more!
π Deep Learning
βββ Specialization (Andrew Ng)
βββ Book
βββ Arabic Course
π Tensorflow & Keras
βββ Specialization
βββ Arabic Course
π Machine Learning Engineering for Production (MLOps)
βββ Specialization
π Practical Data Science
βββ Specialization
more to be added here..