![]() The final source-only security fix release for 3.6 was 3.6.15 and the final bugfix release was 3.6.8.Īmong the new major new features in Python 3.6 were: See the downloads page for currently supported versions of Python. I can't compete with PC+NVIDIA and that is costing both time and money - A lot of money in the case of the Macbook Pro M1.Note: The release you are looking at is Python 3.6.2, a bugfix release for the legacy 3.6 series which has now reached end-of-life and is no longer supported. Do you remember what he said after one of the engineers gave a long explanation? It might be worth a look.įor maximum adoption of this platform, it needs to play well with others, especially given the hotbed of research in this area. This reminds me of what Steve said after the Mobile Me debacle. The conflict comes because conda wants to define and control the environment so that there is compatibility between versions of Python and the litany of libraries required. An example of this is using conda to install the environment and using another installer for the metal plugin. There is no published method for installing Tensorflow, the leading ML API, on a Macbook Pro M1 that actually works without breaking something else. Why is this question and its responses marked read only? This given that it is such an important topic affecting the adoption of Macbook Pro M1's. ![]() Normalize_img, num_parallel_calls=tf.)ĭs_train = ds_train.shuffle(ds_examples)ĭs_train = ds_train.prefetch(tf.)ĭs_test = ds_test.prefetch(tf.) Return tf.cast(image, tf.float32) / 255., label """Normalizes images: uint8 -> float32.""" ![]() (ds_train, ds_test), ds_info = tfds.load( Print("Num GPUs Available: ", len(tf._physical_devices('GPU')))įrom import disable_eager_execution ![]() I would appreciate very much any help from Apple support or the developers community. We have more than 50 data scientists in our company and I am leading a research on CoreML and the adoption of the new MacBook Pro as a standard platform to our developers. As a remedy I am now running the same code on Anaconda (Rosetta) and it is taking 50% more time. I have formatted the MacBook several times, followed the instructions on and the problem persists. ![]() I'd been successfully running M1 native Python code on a MacBook Pro (13-inch, M1, 2020) using Jupyter Notebook, but since the notebook kernel dies as soon as the M1 CPU is used intensively. Please, I need help to run M1 native Python again! ![]()
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