HOW TO IMPROVE YOUR SKILL ON TEXT DATA?
Rubens Zimbres, PhD compile amazing resources on Machine Learning, NLP, and Computer Vision. On NLP Side he cover pretty much every common topic on NLP, this is very useful because as data scientist we often dealing with text data.
Yo can see the repository here https://lnkd.in/fyyvZYt
#repository #machinelearning #patternrecognition #artificialintellegence
β΄οΈ @AI_Python_EN
Rubens Zimbres, PhD compile amazing resources on Machine Learning, NLP, and Computer Vision. On NLP Side he cover pretty much every common topic on NLP, this is very useful because as data scientist we often dealing with text data.
Yo can see the repository here https://lnkd.in/fyyvZYt
#repository #machinelearning #patternrecognition #artificialintellegence
β΄οΈ @AI_Python_EN
Here are some #statistics and research #journals I can recommend:
- Statistical Analysis and Data Mining (ASA)ο»Ώ
- Analytics Journal (DMA)
- The American Statistician (ASA)
- Journal of the American Statistical Association (ASA)
- Statistics in Biopharmaceutical Research (ASA)ο»Ώ
- Journal of Agricultural, Biological, and Environmental Statistics (ASA)
- Journal of Statistics Education (ASA)
- Statistics and Public Policy (ASA)
- Journal of Survey Statistics and Methodology (AAPOR and ASA)ο»Ώ
- Journal of Educational and Behavioral Statisticsο»Ώ (ASA)ο»Ώ
- British Journal of Mathematical and Statistical Psychology (Wiley)ο»Ώ
- Statistics Surveys (IMS)ο»Ώ
- Stata Journal (StataCorp)ο»Ώ
- The R Journal (R Project)
- Structural Equation Modeling: A Multidisciplinary Journal (Routledge)
- Journal of Business & Economic Statistics (ASA)
- Journal of Marketing Research (AMA)
- Journal of Computational and Graphical Statistics (ASA)
ο»Ώ- Journal of Artificial General Intelligence (AGIS)
These are not purely theoretical publications and provide plenty of examples I can adapt for my own work. I try to read them as regularly as I can.
There's so much innovation happening in analytics that it's hard to keep up!
β΄οΈ @AI_Python_EN
- Statistical Analysis and Data Mining (ASA)ο»Ώ
- Analytics Journal (DMA)
- The American Statistician (ASA)
- Journal of the American Statistical Association (ASA)
- Statistics in Biopharmaceutical Research (ASA)ο»Ώ
- Journal of Agricultural, Biological, and Environmental Statistics (ASA)
- Journal of Statistics Education (ASA)
- Statistics and Public Policy (ASA)
- Journal of Survey Statistics and Methodology (AAPOR and ASA)ο»Ώ
- Journal of Educational and Behavioral Statisticsο»Ώ (ASA)ο»Ώ
- British Journal of Mathematical and Statistical Psychology (Wiley)ο»Ώ
- Statistics Surveys (IMS)ο»Ώ
- Stata Journal (StataCorp)ο»Ώ
- The R Journal (R Project)
- Structural Equation Modeling: A Multidisciplinary Journal (Routledge)
- Journal of Business & Economic Statistics (ASA)
- Journal of Marketing Research (AMA)
- Journal of Computational and Graphical Statistics (ASA)
ο»Ώ- Journal of Artificial General Intelligence (AGIS)
These are not purely theoretical publications and provide plenty of examples I can adapt for my own work. I try to read them as regularly as I can.
There's so much innovation happening in analytics that it's hard to keep up!
β΄οΈ @AI_Python_EN
Not everyone knows but my #book has its Github repository where all #Python code used to build illustrations is gathered.
So, while reading the book, you can actually run the described #algorithms, play with hyperparameters and #datasets, and generate your versions of illustrations.
https://github.com/aburkov/theMLbook
β΄οΈ @AI_Python_EN
So, while reading the book, you can actually run the described #algorithms, play with hyperparameters and #datasets, and generate your versions of illustrations.
https://github.com/aburkov/theMLbook
β΄οΈ @AI_Python_EN
Welcome to Word Vector Space (visualization)
Demo: https://lnkd.in/eWTHCEd
Blog: https://lnkd.in/e4WM8qy
#machinelearning #word2vec #nlp
β΄οΈ @AI_Python_EN
Demo: https://lnkd.in/eWTHCEd
Blog: https://lnkd.in/e4WM8qy
#machinelearning #word2vec #nlp
β΄οΈ @AI_Python_EN
Prior-aware Neural Network for Partially-Supervised Multi-Organ Segmentation
Researchers: Yuyin Zhou, Zhe Li, Song Bai, Chong Wang, Xinlei Chen, Mei Han, Elliot Fishman, Alan Yuille
Paper: http://ow.ly/IdmR50qiURd
#technology #artificialinteligence #machineleaning #bigdata #machinelearning #deeplearning
β΄οΈ @AI_Python_EN
Researchers: Yuyin Zhou, Zhe Li, Song Bai, Chong Wang, Xinlei Chen, Mei Han, Elliot Fishman, Alan Yuille
Paper: http://ow.ly/IdmR50qiURd
#technology #artificialinteligence #machineleaning #bigdata #machinelearning #deeplearning
β΄οΈ @AI_Python_EN
CS294-158 Deep Unsupervised Learning
Ilya Sutskever guest lecture on GPT-2: https://lnkd.in/eNUSMTY
#DeepLearning #MachineLearning #UnsupervisedLearning
β΄οΈ @AI_Python_EN
Ilya Sutskever guest lecture on GPT-2: https://lnkd.in/eNUSMTY
#DeepLearning #MachineLearning #UnsupervisedLearning
β΄οΈ @AI_Python_EN
Big but Imperceptible Adversarial Perturbations via Semantic Manipulation
Researchers: Anand Bhattad, Min Jin Chong, Kaizhao Liang, Bo Li, David A. Forsyth
Paper: http://ow.ly/1aDn50qiU7G
#machinelearning #artificialintelligence #bigdata #deeplearning
β΄οΈ @AI_Python_EN
Researchers: Anand Bhattad, Min Jin Chong, Kaizhao Liang, Bo Li, David A. Forsyth
Paper: http://ow.ly/1aDn50qiU7G
#machinelearning #artificialintelligence #bigdata #deeplearning
β΄οΈ @AI_Python_EN
My reflection for today: it is okay to dream, but it is more important to focus on the present and polish the current skill even if you think the skill is irrelevant. For example, when I was at school, I was a statistics TA who did not like statistics, because I wanted to be an engineer. Statistics department was kind enough to give me a job because the engineering department did not have open positions at the time. Then I was hired as a Data Scientist, but I liked the reservoir simulation better because I dreamt to be an engineer, which led to my lay off. Then I wanted to be a Data Scientist, but I was a Spotfire Engineer. Again, this Data Science passion did not work out well with my Spotfire Engineer job. Now I think if I would focus on all current skills at the time, I would become a Data Scientist anyways and would have better-polished skills since data visualization and statistics are both needed in this job.
So the moral of the story is: excel at your current job and use it as a foundation for your dream. Do your job well. And learn things even though they seem irrelevant at the time - you never know what future holds - it turns out you will need them. While dreaming about the future, stay grounded and in the present. Every single opportunity is a gift.
β΄οΈ @AI_Python_EN
So the moral of the story is: excel at your current job and use it as a foundation for your dream. Do your job well. And learn things even though they seem irrelevant at the time - you never know what future holds - it turns out you will need them. While dreaming about the future, stay grounded and in the present. Every single opportunity is a gift.
β΄οΈ @AI_Python_EN
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Transition guide from Excelβs analyst to Python Programming for Data Analysis
1. From Excel to Pandas https://lnkd.in/fnU5apw
2. Communication & Data Storytelling https://lnkd.in/eqf5gUV
3. Data Manipulation with Python https://lnkd.in/g4DFNpJ
4. Data Visualization with Python (Matplotlib/Seaborn): https://lnkd.in/g_3fx_6
5. Advanced Pandas https://lnkd.in/fZWGp9B
6. Tricks on Pandas by Real Python https://lnkd.in/fXc9XSp
7. Becoming Efficient with Pandas https://lnkd.in/f64hU-Y
8. Pandas Advances Tips https://lnkd.in/fGyBc4c
9. Jupyter Notebook (Beginner) https://lnkd.in/fTFinFi
10. Jupyter Notebook (Advanced) https://lnkd.in/fFufePv
#datavisualization #python #programming #pydata #datasets #pandas #datasets
β΄οΈ @AI_Python_EN
1. From Excel to Pandas https://lnkd.in/fnU5apw
2. Communication & Data Storytelling https://lnkd.in/eqf5gUV
3. Data Manipulation with Python https://lnkd.in/g4DFNpJ
4. Data Visualization with Python (Matplotlib/Seaborn): https://lnkd.in/g_3fx_6
5. Advanced Pandas https://lnkd.in/fZWGp9B
6. Tricks on Pandas by Real Python https://lnkd.in/fXc9XSp
7. Becoming Efficient with Pandas https://lnkd.in/f64hU-Y
8. Pandas Advances Tips https://lnkd.in/fGyBc4c
9. Jupyter Notebook (Beginner) https://lnkd.in/fTFinFi
10. Jupyter Notebook (Advanced) https://lnkd.in/fFufePv
#datavisualization #python #programming #pydata #datasets #pandas #datasets
β΄οΈ @AI_Python_EN
Liveness Detection with OpenCV - PyImageSearch
http://bit.ly/2VI91j6 #AI #DataScience #MachineLearning #DataScience
β΄οΈ @AI_Python_EN
http://bit.ly/2VI91j6 #AI #DataScience #MachineLearning #DataScience
β΄οΈ @AI_Python_EN
Stack Deep Learning Bootcamp
(Most of) Lectures of Day 1: https://lnkd.in/eei67vp
Happy learning!
#ArtificialIntelligence #DeepLearning #MachineLearning
β΄οΈ @AI_Python_EN
(Most of) Lectures of Day 1: https://lnkd.in/eei67vp
Happy learning!
#ArtificialIntelligence #DeepLearning #MachineLearning
β΄οΈ @AI_Python_EN
Whether youβre a:
- data scientist
- data analyst
- data engineer
- statistician
- BI Specialist
- business analyst
- software engineer
- research scientist
- machine learning engineer
At the end of the day, youβre a problem solver.
#datascience #machinelearning #analytics
β΄οΈ @AI_Python_EN
- data scientist
- data analyst
- data engineer
- statistician
- BI Specialist
- business analyst
- software engineer
- research scientist
- machine learning engineer
At the end of the day, youβre a problem solver.
#datascience #machinelearning #analytics
β΄οΈ @AI_Python_EN
Numerical Linear Algebra course is wonderful. https://github.com/fastai/numerical-linear-algebra β¦
GitHub
GitHub - fastai/numerical-linear-algebra: Free online textbook of Jupyter notebooks for fast.ai Computational Linear Algebra course
Free online textbook of Jupyter notebooks for fast.ai Computational Linear Algebra course - fastai/numerical-linear-algebra
Automated theorem prover driven by deep reinforcement learning: DeepHOL. Comes with a benchmark suite of 29,462 theorems to be proven. It can already prove 58% of them using 41"tactics".
PDF: https://arxiv.org/pdf/1904.03241.pdf
β΄οΈ @AI_Python_EN
PDF: https://arxiv.org/pdf/1904.03241.pdf
β΄οΈ @AI_Python_EN
I wanna be a data scientist, but⦠how!?
https://link.medium.com/CUDoPvMOEV
#DataScience #ArtificialIntelligence #MachineLearning #DeepLearning #DataScientist
β΄οΈ @AI_Python_EN
https://link.medium.com/CUDoPvMOEV
#DataScience #ArtificialIntelligence #MachineLearning #DeepLearning #DataScientist
β΄οΈ @AI_Python_EN
A thread of research that I've been particularly excited about lately is the linearized training of neural networks and the Neural Tangent Kernel. To that end, we're releasing code - written in JAX - that we've been using for our research:
https://github.com/google/neural-tangents
β΄οΈ @AI_Python_EN
https://github.com/google/neural-tangents
β΄οΈ @AI_Python_EN
A great GitHub repository with tutorials on getting started with #PyTorch and TorchText for #sentimentanalysis in #Jupyter Notebooks. What a great resource!
https://github.com/bentrevett/pytorch-sentiment-analysis
β΄οΈ @AI_Python_EN
https://github.com/bentrevett/pytorch-sentiment-analysis
β΄οΈ @AI_Python_EN
#Datascience needs to move beyond #research to actually make a real impact in the #AI economy.
Agree?
#DeepLearning #artificialintelligence #machinelearning
β΄οΈ @AI_Python_EN
Agree?
#DeepLearning #artificialintelligence #machinelearning
β΄οΈ @AI_Python_EN
Here is a list of handy tools to keep in your #DataScience toolbox:
- - -
β€ Data Science Platform (All-in-one Packages & IDE)
Anaconda - https://lnkd.in/gWHY_ij
β€ Programming Languages (Python, R, and SQL)
Python Zero-to-Hero
https://lnkd.in/gEyZd5W
SQL for Data Science
https://lnkd.in/gjvgdhZ
(https://lnkd.in/fZxEF-g)
β€ Data Science Libraries
Top 15 Python Libraries (SciKit-Learn, TensorFlow, NLTK, matplotlib, etc..)
https://lnkd.in/gw_f3Ga
β€ Distributed Systems (Spark, Hadoop, Kafka)
Spark - https://lnkd.in/gC92A64
Hadoop - https://lnkd.in/gKuxgwx
Kafka - https://lnkd.in/gBB9Ja7
β€ Version Control (Git)
https://lnkd.in/g5sJj2H
β€ Reproducibility and Virtual Machines (Docker)
https://lnkd.in/gzYjuuA
β€ Cloud Services (AWS, Google Cloud, Microsoft Azure)
https://lnkd.in/gBJeQuY
β€ Serverless Architecture (Firebase)
https://lnkd.in/gbB6eeM
Data Warehouse and Data Lake
https://lnkd.in/gepNRMw
- - -
This list contains a high-level overview of the many tools out there that can be used for Data Science.
It's always great to refer back to your tools and keep things in check.
Hope this helps π
β΄οΈ @AI_Python_EN
- - -
β€ Data Science Platform (All-in-one Packages & IDE)
Anaconda - https://lnkd.in/gWHY_ij
β€ Programming Languages (Python, R, and SQL)
Python Zero-to-Hero
https://lnkd.in/gEyZd5W
SQL for Data Science
https://lnkd.in/gjvgdhZ
(https://lnkd.in/fZxEF-g)
β€ Data Science Libraries
Top 15 Python Libraries (SciKit-Learn, TensorFlow, NLTK, matplotlib, etc..)
https://lnkd.in/gw_f3Ga
β€ Distributed Systems (Spark, Hadoop, Kafka)
Spark - https://lnkd.in/gC92A64
Hadoop - https://lnkd.in/gKuxgwx
Kafka - https://lnkd.in/gBB9Ja7
β€ Version Control (Git)
https://lnkd.in/g5sJj2H
β€ Reproducibility and Virtual Machines (Docker)
https://lnkd.in/gzYjuuA
β€ Cloud Services (AWS, Google Cloud, Microsoft Azure)
https://lnkd.in/gBJeQuY
β€ Serverless Architecture (Firebase)
https://lnkd.in/gbB6eeM
Data Warehouse and Data Lake
https://lnkd.in/gepNRMw
- - -
This list contains a high-level overview of the many tools out there that can be used for Data Science.
It's always great to refer back to your tools and keep things in check.
Hope this helps π
β΄οΈ @AI_Python_EN