Placeholder Image

字幕表 動画を再生する

  • [MUSIC PLAYING]

  • ALEXANDRE PASSOS: I'm Alex, and I'm here

  • to tell you about how you're going to build graphs

  • in TensorFlow 2.0.

  • And this might make you a little uncomfortable,

  • because we already spent quite some time earlier today

  • telling you that in TensorFlow 2.0,

  • we use eager execution by default.

  • So why am I taking that away from you?

  • And I'm not.

  • You still have your eager execution by default,

  • but graphs are useful for quite a few things.

  • The two ones that I care the most about personally

  • are that some hardware, like our TPUs,

  • really benefit from the kind of full program optimization

  • that we can get if we have graphs.

  • And if you have graphs, you can take your model

  • and deploy it on servers and deploy it on mobile devices

  • and deploy it on whatever thing you want,

  • make it available to as many people as you can think of.

  • So at this point, you're probably, eh, I

  • remember TensorFlow 1.0.

  • I remember the kind of code I had to write to use graphs,

  • and I wasn't proud of it.

  • Is he just going to tell me that I have to keep doing that?

  • And no.

  • One of the biggest changes we're doing with TensorFlow 2.0

  • is we're fundamentally changing the programming

  • model with which you build graphs in TensorFlow.

  • We're removing that model where you first add

  • a bunch of nodes to a graph and then rely on session.run

  • to prune things out of the graph,

  • to figure out the precise things you want

  • to run in the correct order and replacing it

  • with a much simpler model based on this notion of a function.

  • We're calling it tf.function, because that's the main API

  • entry point for you to use it.

  • And I'm here to tell you that with tf.function,

  • many things that you're used to are going to go away.

  • And I dearly hope you're not going to miss them.

  • The first one that goes away that I really

  • think no one in this room is going to miss

  • is that you'll never have to use session.run anymore.

  • [APPLAUSE]

  • So if you've TensorFlow with eager execution,

  • you know how it works.

  • You have your tensors and you have your operations,

  • and you pass your tensors to your operations,

  • and the operations execute.

  • And this is all very simple and straightforward.

  • And tf.function is just like an operation except one

  • that you get to define using a composition

  • of the other operations in TensorFlow however you wish.

  • Once you have your tf.function, you can call it.

  • You can call it inside another function.

  • You can take its gradient.

  • You can run it on the GPU, on the TPU, on the CPU,

  • on distributed things, just like how

  • you would do with any other TensorFlow operation.

  • So really, the way you should think about tf.function

  • is we're letting you define your own operations in Python

  • and making it as easy as possible for you to do this

  • and trying to preserve as many of the semantics of the Python

  • programming language that you already know and love

  • and when you execute these functions in a graph.

  • So obviously, the first thing you would think

  • is that is it actually faster?

  • And if you look at models that are

  • large convolutions or big matrix multiplications,

  • large reductions, it's not actually any faster,

  • because you get executions plenty fast.

  • But as your models get small, and as the operations in them

  • get small, you can actually measure

  • the difference in performance.

  • And here, I show that for this tiny lstm_cell with 10 units,

  • there is actually a tenfold speed up

  • if we used tf.function versus if you don't use tf.function

  • to execute it.

  • And as I was saying, we really try to preserve as much

  • of the Python semantics as we can

  • to make this code easy to use.

  • So if you've seen TensorFlow graphs,

  • you know that they are very much not polymorphic.

  • If you built a graph for float64,

  • you cannot use it for float32 or, God forbid, float16.

  • But tf.function-- but Python code

  • tends to be very free into the types of things it accepts.

  • With tf.function, we do the same.

  • So under the hood, when you call a tf.function,

  • we look at the tensors you're passing as inputs

  • and then try to see, have we already made

  • a function graph that is compatible with those inputs?

  • If not, we make a new one.

  • And we hide this from you so that you can just

  • use your tf.function as you would use normal TensorFlow

  • operation.

  • And eventually, you'll get all the graphs you need built up,

  • and your code will run blazingly fast.

  • And this is not completely hidden.

  • If you want to have access to the graphs

  • that we're generating, you can get them.

  • We expose them to you.

  • So if you need to manipulate these graphs somehow or do

  • weird things to them that I do not approve,

  • you can still do it.

  • But really, the main reason why we changed this model is not

  • to replace session.run with tf.function,

  • it's that by changing the promise for what

  • we do to your code, we can do so much more for you

  • than we could do before.

  • With the model where you add a bunch of notes to a graph

  • and then prune them, it's very hard for the TensorFlow runtime

  • to know what order do you want those operations to be executed

  • in.

  • Almost every TensorFlow operation is stateless

  • so that doesn't matter.

  • But for the few ones where it does matter,

  • you probably had to use control dependencies

  • and other complicated things to make it work.

  • So again, I'm here to tell you that you will never

  • have to use control dependencies again

  • if you're using tf.function.

  • And how can I make this claim happen?

  • So the premise behind tf.function

  • is that you write code that you'd like to run eagerly,

  • we take it and we make it fast.

  • So as we trace your Python code to generate a graph,

  • we look at the operations you run,

  • and every time we see a stateful operation,

  • we add the minimum necessary set of control dependencies

  • to ensure that all the resources accessed

  • by those stateful operations are accessed in the order you

  • want them to be.

  • So if you have two variables and you're updating them,

  • we'll do that in parallel.

  • When you have one variable and you're updating it many times,

  • we'll order those updates so that you're not

  • surprised by them happening out of order or something

  • like that.

  • So there's really no crazy surprises

  • and weird, undefined behavior.

  • And really, you should never need

  • to explicitly add control dependencies to your code.

  • But you'll still get the ability of knowing

  • what order things execute.

  • And if you want something to execute before somebody else,

  • just put that line of code above that other line of code.

  • You know, how you do in a normal program.

  • Another thing that we can dramatically

  • simplify in tf.function is how you

  • use variables in TensorFlow.

  • And I'm sure you've all used variables before.

  • And you know that while they're very useful--

  • they allow you to share state across devices,

  • they let you persist, checkpoint,

  • do all those things, it can be a little finicky.

  • Things like initializing them is very hard, especially

  • if you're using your variables of any kind

  • of non-trivial initialization.

  • So another thing that we're removing from TensorFlow

  • is the need to manually initialize variables yourself.

  • And the story for variables is a little complicated,

  • though, because as you try to make

  • code compatible with both eager execution and graph semantics,

  • you very quickly find examples where

  • it's unclear what we should do.

  • My favorite one is this one--

  • if you run this code in TensorFlow 1.x,

  • and you session.run repeatedly, the result,

  • you're going to get a series of numbers that goes up.

  • But if you run this code eagerly,

  • every time you run it, you're going

  • to get the same number back, because we're

  • creating a new variable, updating it, and then

  • destroying it.

  • So if I wanted to turn this code-- wrap

  • this code with tf.function-- which one should it do?

  • Should it follow the 1.x behavior or the eager behavior?

  • And I think if I took a poll, I would probably

  • find that you don't agree with each other.

  • I don't agree with myself, so this is an error.

  • Nonambiguous at creating variables,

  • though, is perfectly OK.

  • So as you've seen in an earlier slide,

  • you can create the variable and capture it

  • by closure in a function.

  • That's a way a lot of TensorFlow code gets written.

  • This just works.

  • Another way you can do is like write your function such

  • that it only creates variables the first time it's called.

  • This is incidentally what most libraries in TensorFlow

  • do under the hood.

  • This is how Keras layers are implemented,

  • how the TF 1.x layer is implemented,

  • Sonnet, and all sorts of other libraries

  • that use TensorFlow variables.

  • They try to take care to not create variables

  • every time they're called, otherwise you're

  • creating way too many variables, and you're not actually

  • training anything.

  • So code that behaves well just gets turned into function,

  • and it's fine.

  • And if you've seen this, I didn't actually

  • need to call the initializer for this variable

  • that I'm creating, and it's even better.

  • I can make the initializer depend

  • on the value of the arguments to the function

  • or the value of other variables in arbitrarily

  • complicated ways.

  • And because we control--

  • we add the necessary control dependencies

  • to ensure that the state updates happen in the way you

  • want them to happen.

  • There is no need for you to worry about this.

  • You can just create your variables,

  • like how you would use in a normal programming language.

  • And things will behave the way you want them to behave.

  • Another thing that I'm really happy about tf.function

  • is our autograph integration.

  • And if anyone here has used Control Flow in TensorFlow,

  • you probably know that it can be awkward.

  • And I'm really happy to tell you that with Autograph,

  • we're finally breaking up with tf.cond and tf.while_loop.

  • And now, you can just write code that looks like this--

  • so if you see here, I have a while loop,

  • where the predicate depends on the value of a tf.reduce_sum

  • on a tensor.

  • This is probably the worst way to make a tensor

  • sum to 1 that I could think of.

  • But it fits in a slide.

  • So yay.

  • If you put this in a tf.function,

  • we'll create a graph and we'll execute it.

  • And this is nice.

  • This is great.

  • But how does it work?

  • Under the hood, things like tf.cond and tf with our while

  • loop are still there, but we wrote this Python compiler

  • called Autograph that rewrites Control Flow expressions

  • into something that looks like this--

  • yes.

  • Something that looks like this, which is not

  • like how you would want to write code.

  • And this then can be taken by TensorFlow

  • and turned into fast dynamic graph code.

  • So how does this work?

  • To explain that, I like to take a step back and think about

  • how does anything in TensorFlow work?

  • So you can have a tensor, and you

  • can do tensor plus tensor times other tensor, et cetera.

  • Just use a tensor as you'd use a normal Python integer

  • or floating point number.

  • And how do we do that?

  • I'm sure you all know this, but Python

  • has a thing called operator overloading that

  • lets us change the behavior of standard Python operators

  • when applied on our custom data types, like tensors.

  • So we can override the __add, __sub, et cetera,

  • and change how TensorFlow does addition,

  • subtraction of tensors.

  • This is all fine and dandy, but Python does not let us override

  • __if.

  • Indeed, that's not an operator in Python.

  • It makes me very sad.

  • But if you think about it for a few seconds,

  • you can probably come up with rewrite rules that would let

  • us, like, lower to byte code that would have __if

  • overwritable.

  • So for example, if code looks like this, if condition

  • a else b, you could conceptually write this

  • as condition.if a and b.

  • You would need to do some fiddling with the scopes,

  • because I'm sure you know that Python's lexical scoping is not

  • really as lexical as you would think,

  • and names can leak out of scopes.

  • And it's kind of a little messy, but that's also

  • a mechanical transformation.

  • So if this is potentially a mechanical transformation,

  • let's do this mechanical transformation.

  • So we wrote this Python to TensorFlow compiler

  • called Autograph that does this--

  • it takes your Python code, and it rewrites it in a form that

  • lets us call __if, __while, et cetera on tensors.

  • This is all it does, but this just

  • unlocks a lot of the power of native Python Control Flow

  • into your TensorFlow graphs.

  • And you got to choose.

  • So for example, on this function here, I have two loops.

  • One, it's a static Python loop, because I write for i in range.

  • I is an integer, because a range returns integers.

  • Autograph sees this, leaves it untouched.

  • So you've still got to use Python Control

  • Flow to choose how many layers a network's going to have

  • and constructing dynamically or iterate over

  • a sequential, et cetera.

  • But when your Control Flow does depend

  • on the properties of tensors, like in the second loop for i

  • in tf.range, then Autograph sees it and turns it

  • into a dynamic tf.while loop.

  • This means that you can implement

  • something like a dynamic or an n in TensorFlow

  • in 10 lines of code, just like how

  • you would use in a normal language, which is pretty nice.

  • And anything really that you can do in a TensorFlow graph,

  • you can make happen dynamically.

  • So you can make your prints and assertions happen dynamically

  • if you want to debug.

  • But just use in tf.print and tf.Assert.

  • And notice here that I don't need

  • to add control dependencies to ensure that they happen

  • in the right order, because of the thing

  • that we were talking earlier.

  • We already do this, like, we've tried these control

  • dependencies automatically for you

  • to try to really make your code look

  • and behave the same as Python code would look like.

  • But all that we're doing here is converting Control Flow.

  • We're not actually compiling Python to TensorFlow graph,

  • because the TensorFlow runtime right now is not really

  • powerful enough to support everything that Python can do.

  • So for example, if you're manipulating

  • lists of tensors at runtime, you should still

  • use a tensor array.

  • It's a perfectly fine data structure.

  • It works very well.

  • It compiles down to very efficient TensorFlow code

  • and CPUs, GPUs, TPUs.

  • But you no longer need to write a lot of the boilerplate

  • associated with it.

  • So this is how you stack a bunch of tensors together in a loop.

  • So wrapping up, I think we've changed

  • a lot in TF 2.0, how we build graphs,

  • how we use those graphs.

  • And I think you'll all agree that these changes are

  • very big.

  • But I hope you'll agree with me that those changes are

  • worth it.

  • And I'll just quickly walk you through a diff

  • of what your code is going to look

  • like before and after this.

  • So session.run goes away.

  • Control dependencies go away.

  • Variable initialization goes away.

  • Combed and while loop go away, and you just use functions,

  • like how you would use in a normal programming language.

  • So thank you, and welcome to TF 2.0.

  • [APPLAUSE]

  • All the examples on these slides, they run.

  • If you go on tensorflow.org/alpha and you

  • dig it a little, you'll find a colab notebook that has these

  • and a lot more, which will play around with tf.function

  • and Autograph.

  • [MUSIC PLAYING]

[MUSIC PLAYING]

字幕と単語

ワンタップで英和辞典検索 単語をクリックすると、意味が表示されます

B1 中級

tf.functionとAutograph (TF Dev Summit '19) (tf.function and Autograph (TF Dev Summit ‘19))

  • 1 0
    林宜悉 に公開 2021 年 01 月 14 日
動画の中の単語