πΉ How to Think Like a Data Scientist
πBy Jo Stichbury
π»So what does it take to become a data scientist? For some pointers on the skills for success, I interviewed Ben Chu, who is a Senior Data Scientist at Refinitiv Labs.
π»Be curious
π»Be scientific
π»Be creative
π»Learn how to code
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πVia: @cedeeplearning
https://www.kdnuggets.com/2020/05/think-like-data-scientist-data-analyst.html
#datascience #machinelearning
#tutorial #roadmap
#python #math #statistics #neuralnetworks
πBy Jo Stichbury
π»So what does it take to become a data scientist? For some pointers on the skills for success, I interviewed Ben Chu, who is a Senior Data Scientist at Refinitiv Labs.
π»Be curious
π»Be scientific
π»Be creative
π»Learn how to code
ββββββ
πVia: @cedeeplearning
https://www.kdnuggets.com/2020/05/think-like-data-scientist-data-analyst.html
#datascience #machinelearning
#tutorial #roadmap
#python #math #statistics #neuralnetworks
KDnuggets
How to Think Like a Data Scientist - KDnuggets
So what does it take to become a data scientist? For some pointers on the skills for success, I interviewed Ben Chu, who is a Senior Data Scientist at Refinitiv Labs.
πΉ Study by - LinkedIn Learning.
some important skills needed by companies for 2020
βββββββ
πVia: @cedeeplearning
πOther social media:https://linktr.ee/cedeeplearning
#skill #python #machinelearning #computerscience #datascience
#tutorial #softskills #hardskills
some important skills needed by companies for 2020
βββββββ
πVia: @cedeeplearning
πOther social media:https://linktr.ee/cedeeplearning
#skill #python #machinelearning #computerscience #datascience
#tutorial #softskills #hardskills
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βͺοΈ Basics of Neural Network Programming
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 14 More Vectorization Examples
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #vectorization
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 14 More Vectorization Examples
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #vectorization
π» Data science roadmap 2020
πΉMathematics
πΉFundamentals
πΉProgramming Language
πΉProbability and Statistics
πΉData Collection and Wrangling
πΉData Visualization
πΉMachine Learning
πΉData Science Competition Participation
πΉResume Creation and Interview Preparation
πΉNeural Network and Deep Learning
πΉBig Data
ββββββββ
πVia: @cedeeplearning
https://medium.com/@ArtisOne/data-science-roadmap-2020-b256fb948404
πΉMathematics
πΉFundamentals
πΉProgramming Language
πΉProbability and Statistics
πΉData Collection and Wrangling
πΉData Visualization
πΉMachine Learning
πΉData Science Competition Participation
πΉResume Creation and Interview Preparation
πΉNeural Network and Deep Learning
πΉBig Data
ββββββββ
πVia: @cedeeplearning
https://medium.com/@ArtisOne/data-science-roadmap-2020-b256fb948404
Medium
DATA SCIENCE ROADMAP 2022
DisclaimerβββEveryone has different question paper in life. Many people fail because they try to copy others. This is true even if youβ¦
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βͺοΈ Basics of Neural Network Programming
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 15 Vectorizing Logistic Regression
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #vectorization
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 15 Vectorizing Logistic Regression
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #vectorization
CSNNs: Unsupervised, Backpropagation-free Convolutional Neural Networks for Representation Learning
[ICMLA]
[Bonifaz Stuhr, JΓΌrgen Brauer]
This work combines Convolutional Neural Networks (CNNs), clustering via Self-Organizing Maps (SOMs) and Hebbian Learning to propose the building blocks of Convolutional Self-Organizing Neural Networks (CSNNs), which learn representations in an unsupervised and Backpropagation-free manner.
paper: https://arxiv.org/abs/2001.10388
π via: https://t.me/cedeeplearning
[ICMLA]
[Bonifaz Stuhr, JΓΌrgen Brauer]
This work combines Convolutional Neural Networks (CNNs), clustering via Self-Organizing Maps (SOMs) and Hebbian Learning to propose the building blocks of Convolutional Self-Organizing Neural Networks (CSNNs), which learn representations in an unsupervised and Backpropagation-free manner.
paper: https://arxiv.org/abs/2001.10388
π via: https://t.me/cedeeplearning
Telegram
Cutting Edge Deep Learning
π Deep learning
π Reinforcement learning
π Machine learning
π Papers - tools - tutorials
π Other Social Media Handles:
https://linktr.ee/cedeeplearning
π Reinforcement learning
π Machine learning
π Papers - tools - tutorials
π Other Social Media Handles:
https://linktr.ee/cedeeplearning
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βͺοΈ Basics of Neural Network Programming
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 16 Vectorizing Logistic Regression's Gradient Computation
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#logistic_regression #gradient_computation
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 16 Vectorizing Logistic Regression's Gradient Computation
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#logistic_regression #gradient_computation
βοΈ Blockchain Developer program with no upfront payment
π Via: @cedeeplearning
#blockchain #machinelearning
#deeplearning #datascience
#job #salary #skill
π Via: @cedeeplearning
#blockchain #machinelearning
#deeplearning #datascience
#job #salary #skill
βοΈ Blockchain has topped the list of skills companies are looking for in employees around the world this year, according to Linkedinβs emerging jobs report 2020.
πΉ A lot of you looking for opportunities to gain some real-world experience combined with knowledge to kickstart your career as a developer and a lot of organisations are looking for interns over full-time employees. Realizing the shortage of skilled Blockchain Developers, we partnered with Zubi to help you land an internship in blockchain technology.
But how? All you have to do is enrol in their three weeks course! Post that, you will get a detailed summary of how you will need to proceed.
πΉ What does the course contain?
ππΌ 30 Hours of Live Online classes.
ππΌ 1-on-1 project mentorship from industry leaders.
ππΌ Experience of building real-world blockchain applications.
ππΌ A certificate of completion.
πΉ What does the course cover?
- Basics of Blockchain.
- Introduction to Ethereum Network.
- Smart Contracts.
- Introduction to Decentralized application development.
- Exploring the way forward.
βͺοΈ What are the different types of internship opportunities you can land after this course?
- Blockchain Developer Intern.
- Ethereum Intern.
- Decentralized Application Intern.
- Smart Contract Intern.
- Hyperledger Intern.
In addition to all this, you donβt have to pay ANYTHING until you land a paid internship! All you need to have is an understanding of ππΌ basic Javascript as pre-requisite to this course.
π Start Date: 25th June.
Registration link: bit.ly/MLI-Blockchain
πΉ They have a small batch size so they can focus on every student and help students build their applications during the course!
Queries? Get in touch with: https://t.me/zubi_io
ββββββββ
π Via: @cedeeplearning
#machinelearning #AI
#deeplearning #blockchain
#neuralnetworks #skill
πΉ A lot of you looking for opportunities to gain some real-world experience combined with knowledge to kickstart your career as a developer and a lot of organisations are looking for interns over full-time employees. Realizing the shortage of skilled Blockchain Developers, we partnered with Zubi to help you land an internship in blockchain technology.
But how? All you have to do is enrol in their three weeks course! Post that, you will get a detailed summary of how you will need to proceed.
πΉ What does the course contain?
ππΌ 30 Hours of Live Online classes.
ππΌ 1-on-1 project mentorship from industry leaders.
ππΌ Experience of building real-world blockchain applications.
ππΌ A certificate of completion.
πΉ What does the course cover?
- Basics of Blockchain.
- Introduction to Ethereum Network.
- Smart Contracts.
- Introduction to Decentralized application development.
- Exploring the way forward.
βͺοΈ What are the different types of internship opportunities you can land after this course?
- Blockchain Developer Intern.
- Ethereum Intern.
- Decentralized Application Intern.
- Smart Contract Intern.
- Hyperledger Intern.
In addition to all this, you donβt have to pay ANYTHING until you land a paid internship! All you need to have is an understanding of ππΌ basic Javascript as pre-requisite to this course.
π Start Date: 25th June.
Registration link: bit.ly/MLI-Blockchain
πΉ They have a small batch size so they can focus on every student and help students build their applications during the course!
Queries? Get in touch with: https://t.me/zubi_io
ββββββββ
π Via: @cedeeplearning
#machinelearning #AI
#deeplearning #blockchain
#neuralnetworks #skill
Telegram
Zubi
Zubi is Indiaβs first emerging technology company, focusing on building an inclusive ecosystem around new-age technologies.
Discord server: https://invite.gg/zubi
Learning Resources: https://zubi.gitbook.io/community-resources
Discord server: https://invite.gg/zubi
Learning Resources: https://zubi.gitbook.io/community-resources
π GPT-3: Language Models are Few-Shot Learners
βͺοΈ Github: https://github.com/openai/gpt-3
πΉPaper: https://arxiv.org/abs/2005.14165v1
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π Via: @cedeeplearning
#machinelearning #math
#deeplearning #neuralnetworks
#datascience #paper #github
βͺοΈ Github: https://github.com/openai/gpt-3
πΉPaper: https://arxiv.org/abs/2005.14165v1
βββββββ
π Via: @cedeeplearning
#machinelearning #math
#deeplearning #neuralnetworks
#datascience #paper #github
GitHub
GitHub - openai/gpt-3: GPT-3: Language Models are Few-Shot Learners
GPT-3: Language Models are Few-Shot Learners. Contribute to openai/gpt-3 development by creating an account on GitHub.
βοΈ Top 12 R packages for ML in 2020
πΉdo not miss out this nice article!
ββββββ
πVia: @cedeeplearning
https://analyticsindiamag.com/top-12-r-packages-for-machine-learning-in-2020/
#machinelearning #AI
#r #R_language #math
#neuralnetworks #skill
#deeplearning #datascience
πΉdo not miss out this nice article!
ββββββ
πVia: @cedeeplearning
https://analyticsindiamag.com/top-12-r-packages-for-machine-learning-in-2020/
#machinelearning #AI
#r #R_language #math
#neuralnetworks #skill
#deeplearning #datascience
Analytics India Magazine
Top 12 R Packages For Machine Learning In 2020
R is one of the most prevalent programming languages for statistical analysis and computing. This article lists down top 12 R packages for ML.
πΉ Fundamentals of Data Analytics
ββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#datasicence #analytics #machinelearning #math #skills #resume #datamining #course
ββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#datasicence #analytics #machinelearning #math #skills #resume #datamining #course
π Data Analytics is rapidly becoming one of the most critical drivers for any decision-making, at an individual or a business level. At the heart of Data analytics, lies the fundamentals of statistics. This course will help you learn basic statistical concepts with practical problem solving and interpretation through application of the theoretical learnings.
πΉ You will learn fundamental statistical concepts, that are widely applicable in data analytics through course lessons and solving business cases.
πΉ You will then apply the knowledge gained to solve business problems through simulations using real data, validate your knowledge by answering quiz questions under each module and finally test your understanding by solving real problems under the Solve section.
πΉ At the end of this course, you should be able to understand data type and their representation, apply descriptive statistical measures to interpret data and make statistical inferences based on the data distribution and use of appropriate statistical tests.
βοΈ Prerequisite: Basic understanding of mathematics, especially algebra.
Sign up today! Link: https://bit.ly/2UUo62z
Answers to FAQs:
π Due to high traffic, you might experience a little delay, but the system is working perfectly fine.
π The field of 'referral code' is optional. You can successfully sign up without it.
π The course is selfpaced.
βββββββ
π Via: @cedeeplearning
πΉ You will learn fundamental statistical concepts, that are widely applicable in data analytics through course lessons and solving business cases.
πΉ You will then apply the knowledge gained to solve business problems through simulations using real data, validate your knowledge by answering quiz questions under each module and finally test your understanding by solving real problems under the Solve section.
πΉ At the end of this course, you should be able to understand data type and their representation, apply descriptive statistical measures to interpret data and make statistical inferences based on the data distribution and use of appropriate statistical tests.
βοΈ Prerequisite: Basic understanding of mathematics, especially algebra.
Sign up today! Link: https://bit.ly/2UUo62z
Answers to FAQs:
π Due to high traffic, you might experience a little delay, but the system is working perfectly fine.
π The field of 'referral code' is optional. You can successfully sign up without it.
π The course is selfpaced.
βββββββ
π Via: @cedeeplearning
Cutting Edge Deep Learning pinned Β«π GPT-3: Language Models are Few-Shot Learners βͺοΈ Github: https://github.com/openai/gpt-3 πΉPaper: https://arxiv.org/abs/2005.14165v1 βββββββ π Via: @cedeeplearning #machinelearning #math #deeplearning #neuralnetworks #datascience #paper #githubΒ»
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βͺοΈ Basics of Neural Network Programming
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 17 Broadcasting in Python
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#broadcasting #python
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 17 Broadcasting in Python
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#broadcasting #python
βοΈ How to Avoid Data Leakage When Performing Data Preparation
πΉA naive approach to preparing data applies the transform on the entire dataset before evaluating the performance of the model. This results in a problem referred to as data leakage, where knowledge of the hold-out test set leaks into the dataset used to train the model. This can result in an incorrect estimate of model performance when making predictions on new data.
ββββββββ
π Via: @cedeeplearnig
https://machinelearningmastery.com/data-preparation-without-data-leakage/
#machinelearning #AI
#neuralnetworks #deeplearning
#datascience #preprocessing
#datamining
πΉA naive approach to preparing data applies the transform on the entire dataset before evaluating the performance of the model. This results in a problem referred to as data leakage, where knowledge of the hold-out test set leaks into the dataset used to train the model. This can result in an incorrect estimate of model performance when making predictions on new data.
ββββββββ
π Via: @cedeeplearnig
https://machinelearningmastery.com/data-preparation-without-data-leakage/
#machinelearning #AI
#neuralnetworks #deeplearning
#datascience #preprocessing
#datamining
MachineLearningMastery.com
How to Avoid Data Leakage When Performing Data Preparation - MachineLearningMastery.com
Data preparation is the process of transforming raw data into a form that is appropriate for modeling. A naive approach to preparing data applies the transform on the entire dataset before evaluating the performance of the model. This results in a problemβ¦
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βͺοΈ Basics of Neural Network Programming
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 18 A Note on Python Numpy Vectors
Neural Networks and Deep Learning
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πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#numpy #python
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 18 A Note on Python Numpy Vectors
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#numpy #python
Cutting Edge Deep Learning pinned Β«βοΈ How to Avoid Data Leakage When Performing Data Preparation πΉA naive approach to preparing data applies the transform on the entire dataset before evaluating the performance of the model. This results in a problem referred to as data leakage, where knowledgeβ¦Β»
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βͺοΈ Basics of Neural Network Programming
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 19 Quick Tour of Jupyter iPython Notebooks
Neural Networks and Deep Learning
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πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#jupyter #ipython
βοΈ by prof. Andrew Ng
πΉSource: Coursera
π Lecture 19 Quick Tour of Jupyter iPython Notebooks
Neural Networks and Deep Learning
ββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#jupyter #ipython
πΉThe 5 Basic Statistics Concepts Data Scientists Need to Know
Statistics can be a powerful tool when performing the art of Data Science (DS). From a high-level view, statistics is the use of mathematics to perform technical analysis of data. A basic visualisation such as a bar chart might give you some high-level information, but with statistics we get to operate on the data in a much more information-driven and targeted way. The math involved helps us form concrete conclusions about our data rather than just guesstimating.
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πVia: @cedeeplearning
link: https://towardsdatascience.com/the-5-basic-statistics-concepts-data-scientists-need-to-know-2c96740377ae
#statistics #datascience
#machinelearning
#tutorial #AI #python
#deeplearning
Statistics can be a powerful tool when performing the art of Data Science (DS). From a high-level view, statistics is the use of mathematics to perform technical analysis of data. A basic visualisation such as a bar chart might give you some high-level information, but with statistics we get to operate on the data in a much more information-driven and targeted way. The math involved helps us form concrete conclusions about our data rather than just guesstimating.
βββββββ
πVia: @cedeeplearning
link: https://towardsdatascience.com/the-5-basic-statistics-concepts-data-scientists-need-to-know-2c96740377ae
#statistics #datascience
#machinelearning
#tutorial #AI #python
#deeplearning
Medium
The 5 Basic Statistics Concepts Data Scientists Need to Know
Statistics can be a powerful tool when performing the art of Data Science (DS). From a high-level view, statistics is the use ofβ¦