How to become an expert in NLP in 2019 (1)
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https://medium.com/@kushajreal/how-to-become-an-expert-in-nlp-in-2019-1-945f4e9073c0
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https://medium.com/@kushajreal/how-to-become-an-expert-in-nlp-in-2019-1-945f4e9073c0
Medium
How to become an expert in NLP in 2019 (1)
Complete list of resources that will provide you with all the theoretical background in the latest NLP research and techniques.
On Choosing a Deep Reinforcement Learning Library
As Deep Reinforcement Learning is becoming one of the most hyped strategies to achieve AGI (aka Artificial General Intelligence) more and more libraries are developed.
And choosing the best for your needs can be a daunting task…
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https://medium.com/data-from-the-trenches/choosing-a-deep-reinforcement-learning-library-890fb0307092
As Deep Reinforcement Learning is becoming one of the most hyped strategies to achieve AGI (aka Artificial General Intelligence) more and more libraries are developed.
And choosing the best for your needs can be a daunting task…
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https://medium.com/data-from-the-trenches/choosing-a-deep-reinforcement-learning-library-890fb0307092
Medium
Choosing a Deep Reinforcement Learning Library
In recent years, we’ve seen an acceleration of innovations in Deep Reinforcement learning. Examples include beating the champion of the…
DeepMind & Google Graph Matching Network Outperforms GNN
DeepMind and Google researchers have proposed a powerful new graph matching network (GMN) model for the retrieval and matching of graph structured objects. GMN uses similarity learning for graph structured objects and outperforms graph neural network (GNN) models on graph similarity learning (GSL) tasks.
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https://medium.com/syncedreview/deepmind-google-graph-matching-network-outperforms-gnn-c277d3ca6f75
DeepMind and Google researchers have proposed a powerful new graph matching network (GMN) model for the retrieval and matching of graph structured objects. GMN uses similarity learning for graph structured objects and outperforms graph neural network (GNN) models on graph similarity learning (GSL) tasks.
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@DeepLearning_AI
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https://medium.com/syncedreview/deepmind-google-graph-matching-network-outperforms-gnn-c277d3ca6f75
Medium
DeepMind & Google Graph Matching Network Outperforms GNN
DeepMind and Google researchers have proposed a powerful new graph matching network (GMN) model for the retrieval and matching of graph…
Algorithms online Course from PRINCETON UNIVERSITY
About this Course
This course covers the essential information that every serious programmer needs to know about algorithms and data structures, with emphasis on applications and scientific performance analysis of Java implementations. Part I covers elementary data structures, sorting, and searching algorithms. Part II focuses on graph- and string-processing algorithms.
All the features of this course are available for free. It does not offer a certificate upon completion
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https://www.coursera.org/learn/algorithms-part1?ranMID=40328&ranEAID=SAyYsTvLiGQ&ranSiteID=SAyYsTvLiGQ-ayH4CcL5jMTprP4tidKo4g&siteID=SAyYsTvLiGQ-ayH4CcL5jMTprP4tidKo4g&utm_content=10&utm_medium=partners&utm_source=linkshare&utm_campaign=SAyYsTvLiGQ
About this Course
This course covers the essential information that every serious programmer needs to know about algorithms and data structures, with emphasis on applications and scientific performance analysis of Java implementations. Part I covers elementary data structures, sorting, and searching algorithms. Part II focuses on graph- and string-processing algorithms.
All the features of this course are available for free. It does not offer a certificate upon completion
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@DeepLearning_AI
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https://www.coursera.org/learn/algorithms-part1?ranMID=40328&ranEAID=SAyYsTvLiGQ&ranSiteID=SAyYsTvLiGQ-ayH4CcL5jMTprP4tidKo4g&siteID=SAyYsTvLiGQ-ayH4CcL5jMTprP4tidKo4g&utm_content=10&utm_medium=partners&utm_source=linkshare&utm_campaign=SAyYsTvLiGQ
Coursera
Algorithms, Part I
Offered by Princeton University. This course covers the ... Enroll for free.
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Diving into Deep Convolutional Semantic Segmentation Networks and Deeplab_V3
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@DeepLearning_AI
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https://sthalles.github.io/deep_segmentation_network/
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@DeepLearning_AI
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https://sthalles.github.io/deep_segmentation_network/
sthalles.github.io
Deeplab Image Semantic Segmentation Network - Thalles' blog
Not just another GAN paper — SAGAN – Towards Data Science
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@DeepLearning_AI
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https://towardsdatascience.com/not-just-another-gan-paper-sagan-96e649f01a6b
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@DeepLearning_AI
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https://towardsdatascience.com/not-just-another-gan-paper-sagan-96e649f01a6b
Medium
Not just another GAN paper — SAGAN
Today I am going to discuss a recent paper which I read and presented to some of my friends. I found the idea of the paper so simple that I…
Deep Learning lecture
The full deck of (600+) slides, by Gilles Louppe:
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@DeepLearning_AI
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https://glouppe.github.io/info8010-deep-learning/pdf/lec-all.pdf
The full deck of (600+) slides, by Gilles Louppe:
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@DeepLearning_AI
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https://glouppe.github.io/info8010-deep-learning/pdf/lec-all.pdf
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Stanford Machine Learning
Content
01 and 02: Introduction, Regression Analysis and Gradient Descent
03: Linear Algebra - review
04: Linear Regression with Multiple Variables
05: Octave[incomplete]
06: Logistic Regression
07: Regularization
08: Neural Networks - Representation
09: Neural Networks - Learning
10: Advice for applying machine learning techniques
11: Machine Learning System Design
12: Support Vector Machines
13: Clustering
14: Dimensionality Reduction
15: Anomaly Detection
16: Recommender Systems
17: Large Scale Machine Learning
18: Application Example - Photo OCR
19: Course Summary
http://www.holehouse.org/mlclass/
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@DeepLearning_AI
Content
01 and 02: Introduction, Regression Analysis and Gradient Descent
03: Linear Algebra - review
04: Linear Regression with Multiple Variables
05: Octave[incomplete]
06: Logistic Regression
07: Regularization
08: Neural Networks - Representation
09: Neural Networks - Learning
10: Advice for applying machine learning techniques
11: Machine Learning System Design
12: Support Vector Machines
13: Clustering
14: Dimensionality Reduction
15: Anomaly Detection
16: Recommender Systems
17: Large Scale Machine Learning
18: Application Example - Photo OCR
19: Course Summary
http://www.holehouse.org/mlclass/
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@DeepLearning_AI
👍3
Few-Shot Adversarial Learning of Realistic Neural Talking Head Models
paper — arxiv👇👇👇
https://arxiv.org/pdf/1905.08233.pdf
video — youtube👇👇👇
https://www.youtube.com/watch?v=p1b5aiTrGzY
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@DeepLearning_AI
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paper — arxiv👇👇👇
https://arxiv.org/pdf/1905.08233.pdf
video — youtube👇👇👇
https://www.youtube.com/watch?v=p1b5aiTrGzY
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@DeepLearning_AI
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YouTube
Few-Shot Adversarial Learning of Realistic Neural Talking Head Models
Statement regarding the purpose and effect of the technology
(NB: this statement reflects personal opinions of the authors and not of their organizations)
We believe that telepresence technologies in AR, VR and other media are to transform the world in the…
(NB: this statement reflects personal opinions of the authors and not of their organizations)
We believe that telepresence technologies in AR, VR and other media are to transform the world in the…
Diving deeper into Reinforcement Learning with Q-Learning
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https://medium.com/free-code-camp/diving-deeper-into-reinforcement-learning-with-q-learning-c18d0db58efe
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@DeepLearning_AI
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https://medium.com/free-code-camp/diving-deeper-into-reinforcement-learning-with-q-learning-c18d0db58efe
Medium
Diving deeper into Reinforcement Learning with Q-Learning
We launched a new free, updated, Deep Reinforcement Learning Course from beginner to expert, with Hugging Face 🤗
Decoding the Best Papers from ICLR 2019 – Neural Networks are Here to Rule
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https://www.analyticsvidhya.com/blog/2019/05/best-papers-iclr-2019/
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https://www.analyticsvidhya.com/blog/2019/05/best-papers-iclr-2019/
Analytics Vidhya
Decoding the Best Papers from ICLR 2019 - Neural Networks are Here to Rule
We break down the best papers from ICLR 2019 in an easy-to-understand manner that every data scientist should know!
SEVEN NEW COURSES that cover Python, R, and SQL. First up is Analyzing Business Data in SQL, where you’ll learn how to write SQL queries to calculate key business metrics and produce report-ready results. Plus our Introduction to Text Analysis in R course, where you’ll learn how to wrangle and visualize text, perform sentiment analysis, and run and interpret topic models.
Courses :
1. Writing Functions and Stored Procedures in SQL Server
2. Analyzing Business Data in SQL
3. Feature Engineering for Machine Learning in Python
4. Introduction to Seaborn (in Python)
5. Advanced Dimensionality Reduction in R
6. Introduction to Text Analysis in R
7. Intermediate Interactive Data Visualization with plotly in R
1. https://www.datacamp.com/courses/writing-functions-and-stored-procedures-in-sql-server?utm_medium=email&utm_source=customerio&utm_campaign=course_7996
2. https://www.datacamp.com/courses/analyzing-business-data-in-sql?utm_medium=email&utm_source=customerio&utm_campaign=course_15268
3. https://www.datacamp.com/courses/feature-engineering-for-machine-learning-in-python?utm_medium=email&utm_source=customerio&utm_campaign=course_14336
4. https://www.datacamp.com/courses/introduction-to-seaborn?utm_medium=email&utm_source=customerio&utm_campaign=course_15192
5. https://www.datacamp.com/courses/advanced-dimensionality-reduction-in-r?utm_medium=email&utm_source=customerio&utm_campaign=course_10590
6. https://www.datacamp.com/courses/introduction-to-text-analysis-in-r?utm_medium=email&utm_source=customerio&utm_campaign=course_14290
7. https://www.datacamp.com/courses/intermediate-interactive-data-visualization-with-plotly-in-r?utm_medium=email&utm_source=customerio&utm_campaign=course_7193
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Courses :
1. Writing Functions and Stored Procedures in SQL Server
2. Analyzing Business Data in SQL
3. Feature Engineering for Machine Learning in Python
4. Introduction to Seaborn (in Python)
5. Advanced Dimensionality Reduction in R
6. Introduction to Text Analysis in R
7. Intermediate Interactive Data Visualization with plotly in R
1. https://www.datacamp.com/courses/writing-functions-and-stored-procedures-in-sql-server?utm_medium=email&utm_source=customerio&utm_campaign=course_7996
2. https://www.datacamp.com/courses/analyzing-business-data-in-sql?utm_medium=email&utm_source=customerio&utm_campaign=course_15268
3. https://www.datacamp.com/courses/feature-engineering-for-machine-learning-in-python?utm_medium=email&utm_source=customerio&utm_campaign=course_14336
4. https://www.datacamp.com/courses/introduction-to-seaborn?utm_medium=email&utm_source=customerio&utm_campaign=course_15192
5. https://www.datacamp.com/courses/advanced-dimensionality-reduction-in-r?utm_medium=email&utm_source=customerio&utm_campaign=course_10590
6. https://www.datacamp.com/courses/introduction-to-text-analysis-in-r?utm_medium=email&utm_source=customerio&utm_campaign=course_14290
7. https://www.datacamp.com/courses/intermediate-interactive-data-visualization-with-plotly-in-r?utm_medium=email&utm_source=customerio&utm_campaign=course_7193
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Datacamp
Writing Functions and Stored Procedures in SQL Server Course
Master SQL Server programming by learning to create, update, and execute functions and stored procedures.
👍1
TOP 15 PYTHON RESOURCES
1) Learn Python the Hard Way (free ebook)
https://learnpythonthehardway.org/book/
2)Codecademy (free code tutorials)
https://www.codecademy.com/learn/learn-python
3)Google's Python class
https://developers.google.com/edu/python/
4)A Byte of Python (free ebook)
https://python.swaroopch.com
5)TutsPlus tutorial
https://code.tutsplus.com/articles/the-best-way-to-learn-python--net-26288
6)LEARN PYTHON ONLINE: BEST PYTHON
https://mikkegoes.com/learn-python-online-best-resources/
7)Best Python Resources for Beginners and Professionals
https://pythontips.com/2013/09/01/best-python-resources/amp/
8)TutorialsPoint
http://www.tutorialspoint.com/python/
9)Learning Python
https://docs.python-guide.org/intro/learning/
10)Full Stack Python
https://www.fullstackpython.com/best-python-resources.html
11)Python For Beginners
https://www.python.org/about/gettingstarted/
12)Codementor community
https://www.codementor.io/community/topic/python
13)How should I start learning Python?
https://www.quora.com/How-should-I-start-learning-Python-1
14)Codeconquest
https://www.codeconquest.com/blog/the-50-best-websites-to-learn-python/
15)Python for Beginners
https://www.pythonforbeginners.com
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1) Learn Python the Hard Way (free ebook)
https://learnpythonthehardway.org/book/
2)Codecademy (free code tutorials)
https://www.codecademy.com/learn/learn-python
3)Google's Python class
https://developers.google.com/edu/python/
4)A Byte of Python (free ebook)
https://python.swaroopch.com
5)TutsPlus tutorial
https://code.tutsplus.com/articles/the-best-way-to-learn-python--net-26288
6)LEARN PYTHON ONLINE: BEST PYTHON
https://mikkegoes.com/learn-python-online-best-resources/
7)Best Python Resources for Beginners and Professionals
https://pythontips.com/2013/09/01/best-python-resources/amp/
8)TutorialsPoint
http://www.tutorialspoint.com/python/
9)Learning Python
https://docs.python-guide.org/intro/learning/
10)Full Stack Python
https://www.fullstackpython.com/best-python-resources.html
11)Python For Beginners
https://www.python.org/about/gettingstarted/
12)Codementor community
https://www.codementor.io/community/topic/python
13)How should I start learning Python?
https://www.quora.com/How-should-I-start-learning-Python-1
14)Codeconquest
https://www.codeconquest.com/blog/the-50-best-websites-to-learn-python/
15)Python for Beginners
https://www.pythonforbeginners.com
join👇👇👇
@DeepLearning_AI
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Codecademy
Learn Python 2 | Codecademy
Learn the basics of the world's fastest growing and most popular programming language used by software engineers, analysts, data scientists, and machine learning engineers alike.
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