🔹Laying the Groundwork for the Production of Your Machine Learning Models
link: https://www.rocketsource.co/blog/machine-learning-models/
#machinelearning
#modle
#hierarcy
via: @cedeeplearning
link: https://www.rocketsource.co/blog/machine-learning-models/
#machinelearning
#modle
#hierarcy
via: @cedeeplearning
Cutting Edge Deep Learning
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✅10 must-read books for ml and data science
1️⃣ Python Data Science Handbook
By Jake VanderPlas
The book introduces the core libraries essential for working with data in Python: particularly IPython, NumPy, Pandas, Matplotlib, Scikit-Learn, and related packages. Familiarity with Python as a language is assumed.
2️⃣ Neural Networks and Deep Learning
By Michael Nielsen
Neural Networks and Deep Learning is a free online book. The book will teach you about: Neural networks, Deep learning
3️⃣ Think Bayes
By Allen B. Downey
Think Bayes is an introduction to Bayesian statistics using computational methods.
4️⃣ Machine Learning & Big Data
By Kareem Alkaseer
The purpose behind it is to have a balance between theory and implementation for the software engineer to implement machine learning models comfortably without relying too much on libraries.
5️⃣ Statistical Learning with Sparsity: The Lasso and Generalizations
By Trevor Hastie, Robert Tibshirani, Martin Wainwright
This book descibes the important ideas in these areas in a common conceptual framework.
6️⃣ Statistical inference for data science
By Brian Caffo
This book is written as a companion book to the Statistical Inference Coursera class as part of the Data Science Specialization.
7️⃣ Convex Optimization
By Stephen Boyd and Lieven Vandenberghe
This book is about convex optimization, a special class of mathematical optimization problems, which includes least-squares and linear programming problems.
8️⃣ Natural Language Processing with Python
By Steven Bird, Ewan Klein, and Edward Loper
This is a book about Natural Language Processing. The book is based on the Python programming language together with an open source library called the Natural Language Toolkit (NLTK).
9️⃣ Automate the Boring Stuff with Python
By Al Sweigart
In Automate the Boring Stuff with Python, you'll learn how to use Python to write programs that do in minutes what would take you hours to do by hand-no prior programming experience required.
🔟 Social Media Mining: An Introduction
By Reza Zafarani, Mohammad Ali Abbasi and Huan Liu
Social Media Mining integrates social media, social network analysis, and data mining to provide a convenient and coherent platform for students, practitioners, researchers, and project managers to understand the basics and potentials of social media mining.
——————————————
Via: @cedeeplearning
Credit goes to: https://www.kdnuggets.com/author/matt-mayo
also check our other social media handles:
https://linktr.ee/cedeeplearning
#MachineLearning #DataScience #Course #DeepLearning #BigData #AI
1️⃣ Python Data Science Handbook
By Jake VanderPlas
The book introduces the core libraries essential for working with data in Python: particularly IPython, NumPy, Pandas, Matplotlib, Scikit-Learn, and related packages. Familiarity with Python as a language is assumed.
2️⃣ Neural Networks and Deep Learning
By Michael Nielsen
Neural Networks and Deep Learning is a free online book. The book will teach you about: Neural networks, Deep learning
3️⃣ Think Bayes
By Allen B. Downey
Think Bayes is an introduction to Bayesian statistics using computational methods.
4️⃣ Machine Learning & Big Data
By Kareem Alkaseer
The purpose behind it is to have a balance between theory and implementation for the software engineer to implement machine learning models comfortably without relying too much on libraries.
5️⃣ Statistical Learning with Sparsity: The Lasso and Generalizations
By Trevor Hastie, Robert Tibshirani, Martin Wainwright
This book descibes the important ideas in these areas in a common conceptual framework.
6️⃣ Statistical inference for data science
By Brian Caffo
This book is written as a companion book to the Statistical Inference Coursera class as part of the Data Science Specialization.
7️⃣ Convex Optimization
By Stephen Boyd and Lieven Vandenberghe
This book is about convex optimization, a special class of mathematical optimization problems, which includes least-squares and linear programming problems.
8️⃣ Natural Language Processing with Python
By Steven Bird, Ewan Klein, and Edward Loper
This is a book about Natural Language Processing. The book is based on the Python programming language together with an open source library called the Natural Language Toolkit (NLTK).
9️⃣ Automate the Boring Stuff with Python
By Al Sweigart
In Automate the Boring Stuff with Python, you'll learn how to use Python to write programs that do in minutes what would take you hours to do by hand-no prior programming experience required.
🔟 Social Media Mining: An Introduction
By Reza Zafarani, Mohammad Ali Abbasi and Huan Liu
Social Media Mining integrates social media, social network analysis, and data mining to provide a convenient and coherent platform for students, practitioners, researchers, and project managers to understand the basics and potentials of social media mining.
——————————————
Via: @cedeeplearning
Credit goes to: https://www.kdnuggets.com/author/matt-mayo
also check our other social media handles:
https://linktr.ee/cedeeplearning
#MachineLearning #DataScience #Course #DeepLearning #BigData #AI
GitHub
GitHub - jakevdp/PythonDataScienceHandbook: Python Data Science Handbook: full text in Jupyter Notebooks
Python Data Science Handbook: full text in Jupyter Notebooks - jakevdp/PythonDataScienceHandbook
What does a #DataScientist need to consider on a machine learning project?
Via: @cedeeplearning
Credit goes to: http://blog.bidmotion.com
also check our other social media handles:
https://linktr.ee/cedeeplearning
Via: @cedeeplearning
Credit goes to: http://blog.bidmotion.com
also check our other social media handles:
https://linktr.ee/cedeeplearning
Cutting Edge Deep Learning pinned «✅10 must-read books for ml and data science 1️⃣ Python Data Science Handbook By Jake VanderPlas The book introduces the core libraries essential for working with data in Python: particularly IPython, NumPy, Pandas, Matplotlib, Scikit-Learn, and related packages.…»
🔹Coding Deep Learning For Beginners
https://towardsdatascience.com/coding-deep-learning-for-beginners-types-of-machine-learning-b9e651e1ed9d
via: @cedeeplearning
https://towardsdatascience.com/coding-deep-learning-for-beginners-types-of-machine-learning-b9e651e1ed9d
via: @cedeeplearning
#Supervised ML VS #Unsupervised ML
In Supervised learning, you #train the machine using data which is well #"labeled." Unsupervised learning is a machine learning technique, where you do not need to supervise the model. Supervised learning allows you to collect data or produce a data output from the previous experience.
via: @cedeeplearning
In Supervised learning, you #train the machine using data which is well #"labeled." Unsupervised learning is a machine learning technique, where you do not need to supervise the model. Supervised learning allows you to collect data or produce a data output from the previous experience.
via: @cedeeplearning
🔹R vs Python: Which One is Better for Data Science?
link: https://statanalytica.com/blog/r-vs-python/
#R
#Python
#Data_science
via: @cedeeplearning
link: https://statanalytica.com/blog/r-vs-python/
#R
#Python
#Data_science
via: @cedeeplearning
🔹Machine Learning tips and tricks #cheatsheet
Bias: The #bias of a model is the difference between the expected #prediction and the correct model that we try to predict for given data points.
Variance: The #variance of a model is the variability of the model prediction for given data points.
Bias/variance #tradeoff: The simpler the model, the higher the bias, and the more complex the model, the higher the variance.
from: stanford.edu
via: @cedeeplearning
Bias: The #bias of a model is the difference between the expected #prediction and the correct model that we try to predict for given data points.
Variance: The #variance of a model is the variability of the model prediction for given data points.
Bias/variance #tradeoff: The simpler the model, the higher the bias, and the more complex the model, the higher the variance.
from: stanford.edu
via: @cedeeplearning
🔹Deep Learning #Cheatsheet
Activation function: #Activation functions are used at the end of a hidden unit to introduce #non-linear #complexities to the model. Here are the most common ones
from: stanford.edu
via: @cedeeplearning
Activation function: #Activation functions are used at the end of a hidden unit to introduce #non-linear #complexities to the model. Here are the most common ones
from: stanford.edu
via: @cedeeplearning
🔹What is Data Mining?
#Data_mining is a process of extracting the hidden #predictive information from the extensive database. Data mining is used by the organization to turn #raw_data into useful information.
link: https://statanalytica.com/data-mining-assignment-help
via: @cedeeplearning
#Data_mining is a process of extracting the hidden #predictive information from the extensive database. Data mining is used by the organization to turn #raw_data into useful information.
link: https://statanalytica.com/data-mining-assignment-help
via: @cedeeplearning
🔹Top 10 Guidelines for a Successful Business Intelligence Strategy in 2020
📌 Via: @cedeeplearning
link: https://www.predictiveanalyticstoday.com/top-guidelines-for-a-successful-business-intelligence/
#business_intelligence
#Strategy
#implementation
#insight
📌 Via: @cedeeplearning
link: https://www.predictiveanalyticstoday.com/top-guidelines-for-a-successful-business-intelligence/
#business_intelligence
#Strategy
#implementation
#insight
🔹Understanding the Data Science Lifecycle
📌 Via: @cedeeplearning
link: http://sudeep.co/data-science/Understanding-the-Data-Science-Lifecycle/
#data_science
#life_cycle
#machinelearning
📌 Via: @cedeeplearning
link: http://sudeep.co/data-science/Understanding-the-Data-Science-Lifecycle/
#data_science
#life_cycle
#machinelearning
🔻How Does a Data Management Platform Work?
More than half of marketing organizations have deployed a marketing data management platform, yet confusion remains about what these solutions do — and what they don’t.
📌 Via: @cedeeplearning
link: https://www.gartner.com/en/marketing/insights/articles/how-does-a-data-management-platform-work
#data_management
#platform
#DMP
More than half of marketing organizations have deployed a marketing data management platform, yet confusion remains about what these solutions do — and what they don’t.
📌 Via: @cedeeplearning
link: https://www.gartner.com/en/marketing/insights/articles/how-does-a-data-management-platform-work
#data_management
#platform
#DMP
🔹85 Incredible
Data Visualization Examples
Although all kinds of these plots can be made using python or BI Tools like Power BI as well.
📌 Via: @cedeeplearning
link: https://piktochart.com/data-visualization-examples/
#visualisation
#matplotlib
#python
#powerbi
Data Visualization Examples
Although all kinds of these plots can be made using python or BI Tools like Power BI as well.
📌 Via: @cedeeplearning
link: https://piktochart.com/data-visualization-examples/
#visualisation
#matplotlib
#python
#powerbi
🔹Statistics Vs. Machine Learning
As an organization’s information infrastructure matures, the most appropriate next step is to begin adding advanced analytics. We use the specific term advanced analytics with purpose in this context for two few reasons:
🔻It assumes migration from historical analytics into current and future based analytics
🔻It encompasses statistical analysis as well as machine learning
📌 Via: @cedeeplearning
link: https://www.rocketsource.co/blog/machine-learning-models/
#statistics
#machinelearning
#modeling
As an organization’s information infrastructure matures, the most appropriate next step is to begin adding advanced analytics. We use the specific term advanced analytics with purpose in this context for two few reasons:
🔻It assumes migration from historical analytics into current and future based analytics
🔻It encompasses statistical analysis as well as machine learning
📌 Via: @cedeeplearning
link: https://www.rocketsource.co/blog/machine-learning-models/
#statistics
#machinelearning
#modeling
🔹Successfully Deploying Machine Learning Models
There are various opinions and assertions out there regarding the end-to-end process of building and deploying predictive models. We strongly assert that the deployment process is not a process at all — it’s a lifecycle. Why? It’s an infinite process of iterations and improvements. Model deployment is in no way synonymous with model completion.
📌 Via: @cedeeplearning
link: https://www.rocketsource.co/blog/machine-learning-models/
#end_to_end
#deployment
#machine_learning
There are various opinions and assertions out there regarding the end-to-end process of building and deploying predictive models. We strongly assert that the deployment process is not a process at all — it’s a lifecycle. Why? It’s an infinite process of iterations and improvements. Model deployment is in no way synonymous with model completion.
📌 Via: @cedeeplearning
link: https://www.rocketsource.co/blog/machine-learning-models/
#end_to_end
#deployment
#machine_learning