Memory Augmented Recursive Neural Networks
Arabshahi et al.:
https://arxiv.org/abs/1911.01545
#ArtificialIntelligence #MachineLearning #NeuralNetworks
❇️ @AI_Python_EN
Arabshahi et al.:
https://arxiv.org/abs/1911.01545
#ArtificialIntelligence #MachineLearning #NeuralNetworks
❇️ @AI_Python_EN
Visualizing an AI model’s blind spots
http://bit.ly/2CosFZn
#DataScience #MachineLearning #ArtificialIntelligence
❇️ @AI_PYTHON_EN
http://bit.ly/2CosFZn
#DataScience #MachineLearning #ArtificialIntelligence
❇️ @AI_PYTHON_EN
"SEMINAL DEBATE : YOSHUA BENGIO | GARY MARCUS" This Is The Debate The AI World Has Been Waiting For LIVE STREAMING :
https://www.eventbrite.ca/e/seminal-debate-yoshua-bengio-gary-marcus-live-streaming-tickets-81620778947
Date and Time : December 23, 2019 | 7:00 PM – 8:30 PM EST
#ArtificialIntelligence
❇️ @AI_Python_EN
https://www.eventbrite.ca/e/seminal-debate-yoshua-bengio-gary-marcus-live-streaming-tickets-81620778947
Date and Time : December 23, 2019 | 7:00 PM – 8:30 PM EST
#ArtificialIntelligence
❇️ @AI_Python_EN
A free linear algebra #textbook with solutions by Jim Hefferon. This knowledge will be very useful for understanding #machinelearning and beyond.
http://joshua.smcvt.edu/linearalgebra/#current_version
#book
❇️ @AI_Python_EN
http://joshua.smcvt.edu/linearalgebra/#current_version
#book
❇️ @AI_Python_EN
Part of the communication challenges between data scientists and the business result from thinking one methodology is going to solve two problems. Illustrative example: The biz asks for a highly predictive churn model (this could be extended to many different use cases, but we're keeping it simple here). In reality, the biz wants to be able to:
1. Accurately identify customers with a high risk of churn so that they can implement some type of corrective measures.
2. They also want recommendations (based on data) that will inform what corrective measures could potentially have the biggest impact on reducing churn. To give the biz what they're expecting, it's possible that you'll need to build two separate models. (one that is highly predictive, the other that is easily interpretable). Bonus, once you've already collected the data, it's not that much incremental effort to build multiple models.
Agree or Disagree? And if you agree, are you already approaching things this way?
❇️ @AI_Python_EN
1. Accurately identify customers with a high risk of churn so that they can implement some type of corrective measures.
2. They also want recommendations (based on data) that will inform what corrective measures could potentially have the biggest impact on reducing churn. To give the biz what they're expecting, it's possible that you'll need to build two separate models. (one that is highly predictive, the other that is easily interpretable). Bonus, once you've already collected the data, it's not that much incremental effort to build multiple models.
Agree or Disagree? And if you agree, are you already approaching things this way?
❇️ @AI_Python_EN
Teaching a neural network to use a calculator.
https://reiinakano.com/2019/11/12/solving-probability.html
#ArtificialIntelligence #DeepLearning #MachineLearning
❇️ @AI_Python_EN
https://reiinakano.com/2019/11/12/solving-probability.html
#ArtificialIntelligence #DeepLearning #MachineLearning
❇️ @AI_Python_EN
Machine ignoring = underfitting
Machine learning = optimal fitting
Machine memorization = overfitting
#datascience #machinelearning
❇️ @AI_Python_EN
Machine learning = optimal fitting
Machine memorization = overfitting
#datascience #machinelearning
❇️ @AI_Python_EN
How to Read Articles That Use Machine Learning Users’ Guides to the Medical Literature
https://jamanetwork.com/journals/jama/article-abstract/2754798
#machinelearning #paper #ArtificialIntelligence
❇️ @AI_Python_EN
https://jamanetwork.com/journals/jama/article-abstract/2754798
#machinelearning #paper #ArtificialIntelligence
❇️ @AI_Python_EN
A must read document for deep learning & machine learning practitioners
https://www.deeplearningbook.org/contents/guidelines.html
#deeplearning #machinelearning
❇️ @AI_Python_EN
https://www.deeplearningbook.org/contents/guidelines.html
#deeplearning #machinelearning
❇️ @AI_Python_EN
74 Summaries of Machine Learning and NLP Research Marek Rei :
http://www.marekrei.com/blog/74-summaries-of-machine-learning-and-nlp-research/
#ArtificialIntelligence #DeepLearning #MachineLearning
❇️ @AI_Python_EN
http://www.marekrei.com/blog/74-summaries-of-machine-learning-and-nlp-research/
#ArtificialIntelligence #DeepLearning #MachineLearning
❇️ @AI_Python_EN
Looking for Masters and PhD level students for Paylocity's data science internship program! Students must be in their penultimate year of school, with strong knowledge of machine learning and software engineering. You'll work with Paylocity's incredible talented Product Owners to translate our customers' business needs into data science needs and deliver features that enable next generation HR analytics.
https://2000recruiting.paylocity.com/recruiting/jobs/Details/2767/Paylocity/Data-Scientist-Intern---Summer-2020
❇️ @AI_Python_EN
https://2000recruiting.paylocity.com/recruiting/jobs/Details/2767/Paylocity/Data-Scientist-Intern---Summer-2020
❇️ @AI_Python_EN
Scaling Robot Supervision to Hundreds of Hours with RoboTurk: Robotic Manipulation Dataset through Human Reasoning and Dexterity
Mandlekar et al.:
https://lnkd.in/fG9PGJK
Blog:
https://lnkd.in/fUjqAgH
Webpage:
https://lnkd.in/f5Vx6um
#Robotics #HumanComputerInteraction #MachineLearning
❇️ @AI_Python_EN
Mandlekar et al.:
https://lnkd.in/fG9PGJK
Blog:
https://lnkd.in/fUjqAgH
Webpage:
https://lnkd.in/f5Vx6um
#Robotics #HumanComputerInteraction #MachineLearning
❇️ @AI_Python_EN
Decoding the Black Box: An Important Introduction to Interpretable Machine Learning Models in…
#machinelearning
https://bit.ly/2N5QFb3
❇️ @AI_PYTHON_EN
#machinelearning
https://bit.ly/2N5QFb3
❇️ @AI_PYTHON_EN
Mish is now even supported on YOLO v3 backend. Couldn't have been more elated with how rewarding this project has been. Link to repository -
https://github.com/digantamisra98/Mish
#neuralnetworks #mathematics #algorithms #deeplearning #machinelearning
❇️ @AI_Python_EN
https://github.com/digantamisra98/Mish
#neuralnetworks #mathematics #algorithms #deeplearning #machinelearning
❇️ @AI_Python_EN
Experience-Embedded Visual Foresight
Yen-Chen et al.:
https://arxiv.org/abs/1911.05071
Demo:
http://yenchenlin.me/evf/
#DeepLearning #MachineLearning #Robotics
❇️ @AI_Python_EN
Yen-Chen et al.:
https://arxiv.org/abs/1911.05071
Demo:
http://yenchenlin.me/evf/
#DeepLearning #MachineLearning #Robotics
❇️ @AI_Python_EN
Grid search vs randomized search?
💡 What are the pros and cons of grid search? Pros: • Grid search is great when you need to fine-tune hyperparameters over a small search space automatically. • For example, if you have 100 different datasets that you expect to be similar (e.g. solving the same problem repeatedly with different populations), you can use grid search to automatically fine-tune the hyperparameters for each model. Cons: • Grid search is computationally expensive and inefficient, often searching over parameter space that has very little chance of being useful, resulting it being extremely slow. It's especially slow if you need to search a large space since it's complexity increases exponentially as more hyperparameters are optimized.
💡 What are the pros and cons of randomized search? Pros: • Randomized search does a good job finding near-optimal hyperparameters over a very large search space relatively quickly and doesn't suffer from the same exponential scaling problem as grid search. Cons: • Randomized search does not fine-tune the results as much as grid search does since it typically does not test every possible combination of parameters.
#datascience
👉 Free training -> http://bit.ly/dsdj-webinar
❇️ @AI_Python_EN
💡 What are the pros and cons of grid search? Pros: • Grid search is great when you need to fine-tune hyperparameters over a small search space automatically. • For example, if you have 100 different datasets that you expect to be similar (e.g. solving the same problem repeatedly with different populations), you can use grid search to automatically fine-tune the hyperparameters for each model. Cons: • Grid search is computationally expensive and inefficient, often searching over parameter space that has very little chance of being useful, resulting it being extremely slow. It's especially slow if you need to search a large space since it's complexity increases exponentially as more hyperparameters are optimized.
💡 What are the pros and cons of randomized search? Pros: • Randomized search does a good job finding near-optimal hyperparameters over a very large search space relatively quickly and doesn't suffer from the same exponential scaling problem as grid search. Cons: • Randomized search does not fine-tune the results as much as grid search does since it typically does not test every possible combination of parameters.
#datascience
👉 Free training -> http://bit.ly/dsdj-webinar
❇️ @AI_Python_EN
Machine Learning w.r.t meditation routine.
Machine before meditation = underfitting
Machine after meditation = optimal fitting
Planning of meditation = overfitting
#datascience
❇️ @AI_Python_EN
Machine before meditation = underfitting
Machine after meditation = optimal fitting
Planning of meditation = overfitting
#datascience
❇️ @AI_Python_EN
Trying the online demo of GPT-2 based text generator.
https://transformer.huggingface.co/doc/gpt2-large
#deeperlearning #machinelearning
❇️ @AI_Python_EN
https://transformer.huggingface.co/doc/gpt2-large
#deeperlearning #machinelearning
❇️ @AI_Python_EN
Four keys to #machinelearning on the edge
Machine learning is hard. Moving your ML model to embedded devices can be even harder.
https://bit.ly/2KjUEh6
❇️ @AI_Python_EN
Machine learning is hard. Moving your ML model to embedded devices can be even harder.
https://bit.ly/2KjUEh6
❇️ @AI_Python_EN