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I recently started studying deep learning and other ML techniques, and I started searching for frameworks that simplify the process of build a net and training it, then I found TensorFlow, having little experience in the field, for me, it seems that speed is a big factor for making a big ML system even more if working with deep learning, so why python was chosen by Google to make TensorFlow? Wouldn't it be better to make it over an language that can be compiled and not interpreted?

What are the advantages of using Python over a language like C++ for machine learning?

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    Minor nitpick: Compilation and interpretation are not opposites. Additionally, any programming language may be implemented with a compiler or with an interpreter, or both. There's a nice answer about the distinction over on Software Engineering.
    – 8bittree
    May 17, 2017 at 23:11

4 Answers 4

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The most important thing to realize about TensorFlow is that, for the most part, the core is not written in Python: It's written in a combination of highly-optimized C++ and CUDA (Nvidia's language for programming GPUs). Much of that happens, in turn, by using Eigen (a high-performance C++ and CUDA numerical library) and NVidia's cuDNN (a very optimized DNN library for NVidia GPUs, for functions such as convolutions).

The model for TensorFlow is that the programmer uses "some language" (most likely Python!) to express the model. This model, written in the TensorFlow constructs such as:

h1 = tf.nn.relu(tf.matmul(l1, W1) + b1)
h2 = ...

is not actually executed when the Python is run. Instead, what's actually created is a dataflow graph that says to take particular inputs, apply particular operations, supply the results as the inputs to other operations, and so on. This model is executed by fast C++ code, and for the most part, the data going between operations is never copied back to the Python code.

Then the programmer "drives" the execution of this model by pulling on nodes -- for training, usually in Python, and for serving, sometimes in Python and sometimes in raw C++:

sess.run(eval_results)

This one Python (or C++ function call) uses either an in-process call to C++ or an RPC for the distributed version to call into the C++ TensorFlow server to tell it to execute, and then copies back the results.

So, with that said, let's re-phrase the question: Why did TensorFlow choose Python as the first well-supported language for expressing and controlling the training of models?

The answer to that is simple: Python is probably the most comfortable language for a large range of data scientists and machine learning experts that's also that easy to integrate and have control a C++ backend, while also being general, widely-used both inside and outside of Google, and open source. Given that with the basic model of TensorFlow, the performance of Python isn't that important, it was a natural fit. It's also a huge plus that NumPy makes it easy to do pre-processing in Python -- also with high performance -- before feeding it in to TensorFlow for the truly CPU-heavy things.

There's also a bunch of complexity in expressing the model that isn't used when executing it -- shape inference (e.g., if you do matmul(A, B), what is the shape of the resulting data?) and automatic gradient computation. It turns out to have been nice to be able to express those in Python, though I think in the long term they'll probably move to the C++ backend to make adding other languages easier.

(The hope, of course, is to support other languages in the future for creating and expressing models. It's already quite straightforward to run inference using several other languages -- C++ works now, someone from Facebook contributed Go bindings that we're reviewing now, etc.)

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    How are you defining 'inference' in It's already quite straightforward to run inference using several other languages Being a Prolog programmer it just doesn't fit for me; it seems like a word out of place.
    – Guy Coder
    Feb 28, 2016 at 13:08
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    Running just the forward pass of the model. Applying it to data vs training.
    – dga
    Feb 28, 2016 at 16:46
  • With regards to shape inference. I am converting some neural networks to a statically typed language just for learning use only and the Duck typing in Ptyhon definitely makes that part of the code much easier to write. On the filp side, writing Python code with out the types makes it much harder when learning Ptyhon to get the types right before running. I see many more run time errors using Ptyhon than the other language which is F#. It might be worth noting Duck typing in the answer.
    – Guy Coder
    Feb 28, 2016 at 17:57
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    While that's true, I think python's typing was an indirect reason. Of the languages commonly used in Google --- quora.com/… --- Python's the best match for the average machine learning Ph.D. The only other real choice would have been C++ (I don't know a lot of people who use Lua, the language Torch uses), and C++ is pretty far from the ML toolbox comfort zone. A lot of ML folks come from a matlab background, with numpy increasingly popular. Duck typing probably underlies is popularity, of course, but that's beyond my scope.
    – dga
    Feb 29, 2016 at 5:10
  • Thanks, nice summary. Guy Coder---as to the sense of "inference" in play, see the Wikipedia article on statistical inference. It's inductive inference as opposed to the deductive type performed by Prolog. Jul 18, 2018 at 22:42
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TF is not written in python. It is written in C++ (and uses high-performant numerical libraries and CUDA code) and you can check this by looking at their github. So the core is written not in python but TF provide an interface to many other languages (python, C++, Java, Go)

enter image description here

If you come from a data analysis world, you can think about it like numpy (not written in python, but provides an interface to Python) or if you are a web-developer - think about it as a database (PostgreSQL, MySQL, which can be invoked from Java, Python, PHP)


Python frontend (the language in which people write models in TF) is the most popular due to many reasons. In my opinion the main reason is historical: majority of ML users already use it (another popular choice is R) so if you will not provide an interface to python, your library is most probably doomed to obscurity.


But being written in python does not mean that your model is executed in python. On the contrary, if you written your model in the right way Python is never executed during the evaluation of the TF graph (except of tf.py_func(), which exists for debugging and should be avoided in real model exactly because it is executed on Python's side).

This is different from for example numpy. For example if you do np.linalg.eig(np.matmul(A, np.transpose(A)) (which is eig(AA')), the operation will compute transpose in some fast language (C++ or fortran), return it to python, take it from python together with A, and compute a multiplication in some fast language and return it to python, then compute eigenvalues and return it to python. So nonetheless expensive operations like matmul and eig are calculated efficiently, you still lose time by moving the results to python back and force. TF does not do it, once you defined the graph your tensors flow not in python but in C++/CUDA/something else.

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Python allows you to create extension modules using C and C++, interfacing with native code, and still getting the advantages that Python gives you.

TensorFlow uses Python, yes, but it also contains large amounts of C++.

This allows a simpler interface for experimentation with less human-thought overhead with Python, and add performance by programming the most important parts in C++.

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The latest ratio you can check from here shows inside TensorFlow C++ takes ~50% of code, and Python takes ~40% of code.

Both C++ and Python are the official languages at Google so there is no wonder why this is so. If I would have to provide fast regression where C++ and Python are present...

C++ is inside the computational algebra, and Python is used for everything else including for the testing. Knowing how ubiquitous the testing is today it is no wonder why Python code contributes that much to TF.

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