Setup Mac for Machine Learning with TensorFlow in 13 minutes (works for all M1, M2)
Setup your Apple M1 or M2 (Normal, Pro, Max or Ultra) Mac for data science and machine learning with TensorFlow.
In this video, we install Homebrew and Miniforge3 to create a Conda environment containing pandas, NumPy, Scikit-Learn, Matplotlib, Jupyter and TensorFlow.
We'll also setup TensorFlow to leverage the GPU on the new M1 chips.
Step by step instructions - https://github.com/mrdbourke/m1-machine-learning-test
See M1 machine learning speed test benchmarks - https://youtu.be/JWYsWhR3Pxg
Setup Apple Silicon Mac with PyTorch - https://youtu.be/Zx2MHdRgAIc
Links:
Learn ML (beginner-friendly courses I teach) - https://www.mrdbourke.com/ml-courses/
ML courses/books I recommend - https://www.mrdbourke.com/ml-resources/
Read my novel Charlie Walks - https://www.charliewalks.com
Connect elsewhere:
Web - https://dbourke.link/web
Twitter - https://www.twitter.com/mrdbourke
Twitch - https://www.twitch.tv/mrdbourke
ArXiv channel (past streams) - https://dbourke.link/archive-channel
Get email updates on my work - https://dbourke.link/newsletter
Timestamps:
0:00 - Intro
0:30 - What we're covering
1:00 - All resources are on GitHub
1:25 - Downloading and installing Homebrew
2:45 - Downloading and installing Miniforge3
4:25 - Restart terminal for changes to take effect
4:57 - Creating a directory to test out TensorFlow
5:30 - Creating a Conda environment for machine learning experiments
7:12 - Installing TensorFlow dependencies for Mac from Apple's Conda channel
8:40 - Installing tensorflow-macos
9:15 - Installing tensorflow-metal so you can run TensorFlow on your Mac's GPU
10:30 - Installing tensorflow-datasets (optional)
10:50 - Installing standard data science packages (Jupyter, NumPy, pandas, Matplotlib, Sklearn)
11:15 - Starting a Jupyter Notebook
11:40 - Testing importing different libraries and seeing if TensorFlow has GPU access
#MachineLearning #MacBookPro
Видео Setup Mac for Machine Learning with TensorFlow in 13 minutes (works for all M1, M2) канала Daniel Bourke
In this video, we install Homebrew and Miniforge3 to create a Conda environment containing pandas, NumPy, Scikit-Learn, Matplotlib, Jupyter and TensorFlow.
We'll also setup TensorFlow to leverage the GPU on the new M1 chips.
Step by step instructions - https://github.com/mrdbourke/m1-machine-learning-test
See M1 machine learning speed test benchmarks - https://youtu.be/JWYsWhR3Pxg
Setup Apple Silicon Mac with PyTorch - https://youtu.be/Zx2MHdRgAIc
Links:
Learn ML (beginner-friendly courses I teach) - https://www.mrdbourke.com/ml-courses/
ML courses/books I recommend - https://www.mrdbourke.com/ml-resources/
Read my novel Charlie Walks - https://www.charliewalks.com
Connect elsewhere:
Web - https://dbourke.link/web
Twitter - https://www.twitter.com/mrdbourke
Twitch - https://www.twitch.tv/mrdbourke
ArXiv channel (past streams) - https://dbourke.link/archive-channel
Get email updates on my work - https://dbourke.link/newsletter
Timestamps:
0:00 - Intro
0:30 - What we're covering
1:00 - All resources are on GitHub
1:25 - Downloading and installing Homebrew
2:45 - Downloading and installing Miniforge3
4:25 - Restart terminal for changes to take effect
4:57 - Creating a directory to test out TensorFlow
5:30 - Creating a Conda environment for machine learning experiments
7:12 - Installing TensorFlow dependencies for Mac from Apple's Conda channel
8:40 - Installing tensorflow-macos
9:15 - Installing tensorflow-metal so you can run TensorFlow on your Mac's GPU
10:30 - Installing tensorflow-datasets (optional)
10:50 - Installing standard data science packages (Jupyter, NumPy, pandas, Matplotlib, Sklearn)
11:15 - Starting a Jupyter Notebook
11:40 - Testing importing different libraries and seeing if TensorFlow has GPU access
#MachineLearning #MacBookPro
Видео Setup Mac for Machine Learning with TensorFlow in 13 minutes (works for all M1, M2) канала Daniel Bourke
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
5 free resources to help you get a machine learning jobPyTorch 2.0 is here! Quick tutorial + NVIDIA RTX 4080 giveawaythe day ai went everywhere (GPT-4 & Google PaLM API release)Copying Tesla's data engine, but with food images | nutrify #1Machine Learning Engineer Writes a Novel (without using AI)Learn PyTorch for deep learning in a day. Literally.What a programmer’s desk looks like on SundaySetup Mac for Machine Learning with PyTorch in 11 minutes (works for all M1, M2)The Unofficial PyTorch Optimization Loop SongHand feeding goats at the farmHow to learn data science with Coursera in 2022 (beginner-friendly)Rainy day on the farm (preparing garlic)The most important article on programming you’ll ever readApple's M1 Pro and M1 Max are faster than Google Colab (machine learning speed test)Building a machine learning app | 10 hour coding livestreamHow to code neural networks without math*Is 13 too young to start learning machine learning? | 97,777 Subscriber Livestream Q&A6 Techniques That Help Me Study Machine Learning Five Days Per WeekAI makes you an artist + Tesla's self-driving car updates | Machine Learning Monthly August 2021Reading the first 42 pages of my first novel (Charlie Walks) out loud