defmodule Nx.Serving do
@moduledoc """
Serving encapsulates client and server work to perform batched requests.
Servings can be executed on the fly, without starting a server, but most
often they are used to run servers that batch requests until a given size
or timeout is reached.
More specifically, servings are a mechanism to apply a computation on a
`Nx.Batch`, with hooks for preprocessing input from and postprocessing
output for the client. Thus we can think of an instance of `Nx.Serving.t()`
(a serving) as something that encapsulates batches of Nx computations.
## Inline/serverless workflow
First, let's define a simple numerical definition function:
defmodule MyDefn do
import Nx.Defn
defnp print_and_multiply(x) do
print_value({:debug, x})
x * 2
end
end
The function prints the given tensor and doubles its contents.
We can use `new/1` to create a serving that will return a JIT
or AOT compiled function to execute on batches of tensors:
iex> serving = Nx.Serving.new(fn opts -> Nx.Defn.jit(&print_and_multiply/1, opts) end)
iex> batch = Nx.Batch.stack([Nx.tensor([1, 2, 3])])
iex> Nx.Serving.run(serving, batch)
{:debug, #Nx.Tensor<
s64[1][3]
[
[1, 2, 3]
]
>}
#Nx.Tensor<
s64[1][3]
[
[2, 4, 6]
]
>
We started the serving by passing a function that receives
compiler options and returns a JIT or AOT compiled function.
We called `Nx.Defn.jit/2` passing the options received as
argument, which will customize the JIT/AOT compilation.
You should see two values printed. The former is the result of
`Nx.Defn.Kernel.print_value/1`, which shows the tensor that was
actually part of the computation and how it was batched.
The latter is the result of the computation.
When defining a `Nx.Serving`, we can also customize how the data is
batched by using the `client_preprocessing` as well as the result by
using `client_postprocessing` hooks. Let's give it another try:
iex> serving = (
...> Nx.Serving.new(fn opts -> Nx.Defn.jit(&print_and_multiply/1, opts) end)
...> |> Nx.Serving.client_preprocessing(fn input -> {Nx.Batch.stack(input), :client_info} end)
...> |> Nx.Serving.client_postprocessing(&{&1, &2, &3})
...> )
iex> Nx.Serving.run(serving, [Nx.tensor([1, 2]), Nx.tensor([3, 4])])
{:debug, #Nx.Tensor<
s64[2][2]
[
[1, 2],
[3, 4]
]
>}
{#Nx.Tensor<
s64[2][2]
[
[2, 4],
[6, 8]
]
>,
:server_info,
:client_info}
You can see the results are a bit different now. First of all, notice that
we were able to run the serving passing a list of tensors. Our custom
`client_preprocessing` function stacks those tensors into a batch of two
entries and returns a tuple with a `Nx.Batch` struct and additional client
information which we represent as the atom `:client_info`. The default
client preprocessing simply enforces a batch was given and returns no client
information.
Then the result is a triplet tuple, returned by the client
postprocessing function, containing the result, the server information
(which we will later learn how to customize), and the client information.
From this, we can infer the default implementation of `client_postprocessing`
simply returns the result, discarding the server and client information.
So far, `Nx.Serving` has not given us much. It has simply encapsulated the
execution of a function. Its full power comes when we start running our own
`Nx.Serving` process. That's when we will also learn why we have a `client_`
prefix in some of the function names.
## Stateful/process workflow
`Nx.Serving` allows us to define an Elixir process to handle requests.
This process provides several features, such as batching up to a given
size or time, partitioning, and distribution over a group of nodes.
To do so, we need to start a `Nx.Serving` process with a serving inside
a supervision tree:
children = [
{Nx.Serving,
serving: Nx.Serving.new(Nx.Defn.jit(&print_and_multiply/1)),
name: MyServing,
batch_size: 10,
batch_timeout: 100}
]
Supervisor.start_child(children, strategy: :one_for_one)
Now you can send batched runs to said process:
iex> batch = Nx.Batch.stack([Nx.tensor([1, 2, 3]), Nx.tensor([4, 5, 6])])
iex> Nx.Serving.batched_run(MyServing, batch)
{:debug, #Nx.Tensor<
s64[2][3]
[
[1, 2, 3],
[4, 5, 6]
]
>}
#Nx.Tensor<
s64[2][3]
[
[2, 4, 6],
[8, 10, 12]
]
>
In the example, we pushed a batch of 2 and eventually got a reply.
The process will wait for requests from other processes, for up to
100 milliseconds or until it gets 10 entries. Then it merges all
batches together and once the result is computed, it slices and
distributes those responses to each caller.
If there is any `client_preprocessing` function, it will be executed
before the batch is sent to the server. If there is any `client_postprocessing`
function, it will be executed after getting the response from the
server.
### Partitioning
You can start several partitions under th same serving by passing
`partitions: true` when starting the serving. The number of partitions
will be determined according your compiler and for which host it is
compiling.
For example, when creating the serving, you may pass the following
`defn_options`:
Nx.Serving.new(computation, compiler: EXLA, client: :cuda)
Now when booting up the serving:
children = [
{Nx.Serving,
serving: serving,
name: MyServing,
batch_size: 10,
batch_timeout: 100,
partitions: true}
]
If you have two GPUs, `batched_run/3` will now gather batches and send
them to the GPUs as they become available to process requests.
### Distribution
All `Nx.Serving`s are distributed by default. If the current machine
does not have an instance of `Nx.Serving` running, `batched_run/3` will
automatically look for one in the cluster. The nodes do not need to run
the same code and applications. It is only required that they run the
same `Nx` version.
The load balancing between servings is done randomly, however, the number
of partitions are considered if the `partitioned: true` option is also given.
For example, if you have a node with 2 GPUs and another with 4, the latter
will receive the double of requests compared to the former.
`batched_run/3` receives an optional `distributed_preprocessing` callback as
third argument for preprocessing the input for distributed requests. When
using libraries like EXLA or Torchx, the tensor is often allocated in memory
inside a third-party library so it is necessary to either transfer or copy
the tensor to the binary backend before sending it to another node.
This can be done by passing either `Nx.backend_transfer/1` or `Nx.backend_copy/1`
as third argument:
Nx.Serving.batched_run(MyDistributedServing, input, &Nx.backend_copy/1)
Use `backend_transfer/1` if you know the input will no longer be used.
Similarly, the serving has a `distributed_postprocessing` callback which can do
equivalent before sending the reply to the caller.
The servings are dispatched using Erlang Distribution. You can use
`Node.connect/1` to manually connect nodes. In a production setup, this is
often done with the help of libraries like [`libcluster`](https://github.com/bitwalker/libcluster).
## Advanced notes
### Module-based serving
In the examples so far, we have been using the default version of
`Nx.Serving`, which executes the given function for each batch.
However, we can also use `new/2` to start a module-based version of
`Nx.Serving` which gives us more control over both inline and process
workflows. A simple module implementation of a `Nx.Serving` could look
like this:
defmodule MyServing do
@behaviour Nx.Serving
defnp print_and_multiply(x) do
print_value({:debug, x})
x * 2
end
@impl true
def init(_inline_or_process, :unused_arg, [defn_options]) do
{:ok, Nx.Defn.jit(&print_and_multiply/1, defn_options)}
end
@impl true
def handle_batch(batch, 0, function) do
{:execute, fn -> {function.(batch), :server_info} end, function}
end
end
It has two functions. The first, `c:init/3`, receives the type of serving
(`:inline` or `:process`) and the serving argument. In this step,
we capture `print_and_multiply/1`as a jitted function.
The second function is called `handle_batch/3`. This function
receives a `Nx.Batch` and returns a function to execute.
The function itself must return a two element-tuple: the batched
results and some server information. The server information can
be any value and we set it to the atom `:server_info`.
Now let's give it a try by defining a serving with our module and
then running it on a batch:
iex> serving = Nx.Serving.new(MyServing, :unused_arg)
iex> batch = Nx.Batch.stack([Nx.tensor([1, 2, 3])])
iex> Nx.Serving.run(serving, batch)
{:debug, #Nx.Tensor<
s64[1][3]
[
[1, 2, 3]
]
>}
#Nx.Tensor<
s64[1][3]
[
[2, 4, 6]
]
>
From here on, you use `start_link/1` to start this serving in your
supervision and even customize `client_preprocessing/1` and
`client_postprocessing/1` callbacks to this serving, as seen in the
previous sections.
Note in our implementation above assumes it won't run partitioned.
In partitioned mode, `c:init/3` may receive multiple `defn_options`
as the third argument and `handle_batch/3` may receive another partition
besides 0.
"""
@doc false
@enforce_keys [:module, :arg]
defstruct [
:module,
:arg,
:client_preprocessing,
:client_postprocessing,
distributed_postprocessing: &Function.identity/1,
process_options: [],
defn_options: []
]
@type metadata() :: term()
@type client_info() :: term()
@type client_preprocessing() :: (term() -> {Nx.Batch.t(), client_info()})
@type client_postprocessing() :: (Nx.Container.t(), metadata(), client_info() -> term())
@type distributed_preprocessing() :: (term() -> term())
@type distributed_postprocessing() :: (term() -> term())
@type t :: %__MODULE__{
module: atom(),
arg: term(),
client_preprocessing: client_preprocessing(),
client_postprocessing: client_postprocessing(),
distributed_postprocessing: distributed_postprocessing(),
process_options: keyword(),
defn_options: keyword()
}
@axis 0
@doc """
The callback used to initialize the serving.
The first argument reveals if the serving is executed inline,
such as by calling `run/2`, by started with the process.
The second argument is the serving argument given to `new/2`.
The third argument option is a list of compiler options to be
used to compile each partition the serving will run.
It must return `{:ok, state}`, where the `state` can be any term.
"""
@callback init(type :: :inline | :process, arg :: term(), [defn_options :: keyword]) ::
{:ok, state :: term()}
@doc """
Receives a batch, a partition, and returns a function to execute the batch.
In case of serving processes, the function is executed is an
separate process.
"""
@callback handle_batch(Nx.Batch.t(), partition :: non_neg_integer(), state) ::
{:execute, (() -> {Nx.Container.t(), metadata()}), state}
when state: term()
@doc """
Creates a new function serving.
It expects a function that receives the compiler options and
returns a JIT (via `Nx.Defn.jit/2`) or AOT compiled (via
`Nx.Defn.compile/3`) one-arity function as argument.
The function will be called with the arguments returned by the
`client_preprocessing` callback.
"""
def new(function, defn_options \\ [])
def new(function, defn_options)
when is_function(function, 1) and is_list(defn_options) do
new(Nx.Serving.Default, function, defn_options)
end
def new(function, process_options)
when is_function(function, 0) and is_list(process_options) do
IO.warn(
"passing a zero-arity function to Nx.Serving.new is deprecated, " <>
"please pass a single arity function that will receive the compiler options"
)
new(Nx.Serving.Default, fn _ -> function.() end, [])
|> process_options(process_options)
end
def new(module, arg) when is_atom(module) do
new(module, arg, [])
end
@doc """
Creates a new module-based serving.
It expects a module and an argument that is given to its `init`
callback.
A third optional argument called `defn_options` are additional
compiler options which will be given to the module. Those options
will be merged into `Nx.Defn.default_options/0`.
"""
def new(module, arg, defn_options) when is_atom(module) and is_list(defn_options) do
defn_options = Keyword.merge(Nx.Defn.default_options(), defn_options)
%Nx.Serving{module: module, arg: arg, defn_options: defn_options}
end
@doc """
Sets the client preprocessing function.
The default implementation creates a single element batch
with the given argument and is equivalent to `&Nx.Batch.stack([&1])`.
"""
def client_preprocessing(%Nx.Serving{} = serving, function)
when is_function(function, 1) or is_nil(function) do
%{serving | client_preprocessing: function}
end
@doc """
Sets the client postprocessing function.
The default implementation returns the first element given
to the function.
"""
def client_postprocessing(%Nx.Serving{} = serving, function)
when is_function(function, 3) or is_nil(function) do
%{serving | client_postprocessing: function}
end
@doc """
Sets the distributed postprocessing function.
The default implementation is `Function.identity/1`.
"""
def distributed_postprocessing(%Nx.Serving{} = serving, function)
when is_function(function, 1) do
%{serving | distributed_postprocessing: function}
end
@doc """
Sets the process options of this serving.
These are the same options as supported on `start_link/1`,
except `:name` and `:serving` itself.
"""
def process_options(%Nx.Serving{} = serving, process_options) when is_list(process_options) do
%{serving | process_options: process_options}
end
@doc """
Sets the defn options of this serving.
These are the options supported by `Nx.Defn.default_options/1`.
"""
def defn_options(%Nx.Serving{} = serving, defn_options) when is_list(defn_options) do
%{serving | defn_options: defn_options}
end
@doc """
Runs `serving` with the given `input` inline with the current process.
"""
def run(%Nx.Serving{} = serving, input) do
%{
module: module,
arg: arg,
client_preprocessing: preprocessing,
client_postprocessing: postprocessing,
defn_options: defn_options
} = serving
{:ok, state} = handle_init(module, :inline, arg, [defn_options])
{%{size: size} = batch, info} = handle_preprocessing(preprocessing, input)
{:execute, function, _} = handle_batch(module, batch, 0, state)
{output, metadata} =
:telemetry.span([:nx, :serving, :execute], %{module: module}, fn ->
{output, metadata} = handle_executed(module, function.())
{{output, metadata}, %{metadata: metadata, module: module}}
end)
output = Nx.Defn.Composite.traverse(output, &Nx.slice_along_axis(&1, 0, size, axis: @axis))
handle_postprocessing(postprocessing, output, metadata, info)
end
## Process API
@doc false
def child_spec(opts) when is_list(opts) do
name = opts[:name]
if name == nil or not is_atom(name) do
raise ArgumentError, ":name option is expected when starting Nx.Serving and must be an atom"
end
opts[:serving] ||
raise ArgumentError, ":serving option is expected when starting Nx.Serving"
%{
id: name,
start: {__MODULE__, :start_link, [opts]},
type: :supervisor
}
end
@doc """
Starts a `Nx.Serving` process to batch requests to a given serving.
## Options
* `:name` - an atom with the name of the process
* `:serving` - a `Nx.Serving` struct with the serving configuration
* `:batch_size` - the maximum batch size. A value is first read
from the `Nx.Serving` struct and then it falls back to this option
(which defaults to `1`)
* `:batch_timeout` - the maximum time to wait, in milliseconds,
before executing the batch. A value is first read from the `Nx.Serving`
struct and then it falls back to this option (which defaults to `100`ms)
* `:partitions` - when `true`, starts several partitions under this serving.
The number of partitions will be determined according to your compiler
and for which host it is compiling. See the module docs for more information
* `:shutdown` - the maximum time for the serving to shutdown. This will
block until the existing computation finishes (defaults to `30_000`ms)
* `:hibernate_after` and `:spawn_opt` - configure the underlying serving
workers (see `GenServer.start_link/3`)
"""
def start_link(opts) do
name = Keyword.fetch!(opts, :name)
{%Nx.Serving{process_options: process_options} = serving, opts} = Keyword.pop!(opts, :serving)
opts =
Keyword.merge(process_options, opts, fn
k, v1, v2 when k == :batch_size and v1 != v2 ->
raise ArgumentError,
"#{inspect(k)} has been set when starting an Nx.Serving process (#{inspect(v2)}) " <>
"but a conflicting value was already set on the Nx.Serving struct (#{inspect(v1)}). " <>
"Please remove the option given to the Nx.Serving process"
_k, _v1, v2 ->
v2
end)
{shutdown, opts} = Keyword.pop(opts, :shutdown, 30_000)
{partitions, opts} = Keyword.pop(opts, :partitions, false)
{batch_size, opts} = Keyword.pop(opts, :batch_size, 1)
{batch_timeout, opts} = Keyword.pop(opts, :batch_timeout, 100)
supervisor = Module.concat(name, "Supervisor")
task_supervisor = Module.concat(name, "TaskSupervisor")
arg = {name, serving, partitions, batch_size, batch_timeout, task_supervisor}
children = [
{Task.Supervisor, name: task_supervisor},
%{
id: __MODULE__,
start: {GenServer, :start_link, [__MODULE__, arg, opts]},
shutdown: shutdown
}
]
Supervisor.start_link(children, strategy: :one_for_all, max_restarts: 0, name: supervisor)
end
@doc """
Runs the given `input` on the serving process given by `name`.
`name` is either an atom representing a local or distributed
serving process. First it will attempt to dispatch locally, then it
falls back to the distributed serving. You may specify
`{:local, name}` to force a local lookup or `{:distributed, name}`
to force a distributed one.
The `client_preprocessing` callback will be invoked on the `input`
which is then sent to the server. The server will batch requests
and send a response either when the batch is full or on timeout.
Then `client_postprocessing` is invoked on the response. See the
module documentation for more information. In the distributed case,
the callbacks are invoked in the distributed node, but still outside of
the serving process.
Note that you cannot batch an `input` larger than the configured
`:batch_size` in the server.
## Distributed mode
To run in distributed mode, the nodes do not need to run the same
code and applications. It is only required that they run the
same `Nx` version.
If the current node is running a serving given by `name` locally
and `{:distributed, name}` is used, the request will use the same
distribution mechanisms instead of being handled locally, which
is useful for testing locally without a need to spawn nodes.
This function receives an optional `distributed_preprocessing` callback as
third argument for preprocessing the input for distributed requests. When
using libraries like EXLA or Torchx, the tensor is often allocated in memory
inside a third-party library so it is necessary to either transfer or copy
the tensor to the binary backend before sending it to another node.
This can be done by passing either `Nx.backend_transfer/1` or `Nx.backend_copy/1`
as third argument:
Nx.Serving.batched_run(MyDistributedServing, input, &Nx.backend_copy/1)
Use `backend_transfer/1` if you know the input will no longer be used.
Similarly, the serving has a `distributed_postprocessing` callback which can do
equivalent before sending the reply to the caller.
"""
def batched_run(name, input, distributed_preprocessing \\ &Function.identity/1)
def batched_run(name, input, distributed_preprocessing) when is_atom(name) do
if pid = Process.whereis(name) do
local_batched_run!(pid, name, input)
else
distributed_batched_run!(name, input, distributed_preprocessing)
end
end
def batched_run({:local, name}, input, _distributed_preprocessing) when is_atom(name) do
pid =
Process.whereis(name) || exit({:noproc, {__MODULE__, :local_batched_run, [name, input]}})
local_batched_run!(pid, name, input)
end
def batched_run({:distributed, name}, input, distributed_preprocessing) when is_atom(name) do
distributed_batched_run!(name, input, distributed_preprocessing)
end
defp local_batched_run!(pid, name, input) do
case local_batched_run(pid, name, input) do
{:ok, result} -> result
{:DOWN, reason} -> exit({reason, {__MODULE__, :local_batched_run, [name, input]}})
end
end
defp local_batched_run(pid, name, input) do
%{
preprocessing: preprocessing,
postprocessing: postprocessing,
limit: limit
} = :persistent_term.get(persistent_key(name))
{batch, info} = handle_preprocessing(preprocessing, input)
if batch.size > limit do
raise ArgumentError,
"batch size (#{batch.size}) cannot exceed Nx.Serving server batch size of #{limit}"
end
# Use Process.monitor/2 on Elixir v1.15+
ref = :erlang.monitor(:process, pid, alias: :demonitor)
Process.send(pid, {__MODULE__, :batched_run, ref, batch}, [:noconnect])
case receive_batched(batch.size, ref, [], nil, name, input) do
{:ok, tensor, metadata} ->
{:ok, handle_postprocessing(postprocessing, tensor, metadata, info)}
{:DOWN, reason} ->
{:DOWN, reason}
end
end
defp receive_batched(0, ref, acc, {template, metadata}, _name, _input) do
Process.demonitor(ref, [:flush])
tensors =
acc
|> Enum.reverse()
|> Enum.zip_with(&Nx.concatenate(&1, axis: @axis))
{output, []} =
Nx.Defn.Composite.traverse(template, tensors, fn _template, [tensor | tensors] ->
{tensor, tensors}
end)
{:ok, output, metadata}
end
defp receive_batched(total_size, ref, acc, _template_metadata, name, input) do
receive do
{^ref, {start, size, output, metadata}} ->
# If we have a single response, slice and return immediately.
# Otherwise we collect their contents and build the concatenated result later.
if acc == [] and size == total_size do
Process.demonitor(ref, [:flush])
output =
Nx.Defn.Composite.traverse(output, &Nx.slice_along_axis(&1, start, size, axis: @axis))
{:ok, output, metadata}
else
funs =
output
|> Nx.Defn.Composite.reduce(
[],
&[Nx.slice_along_axis(&1, start, size, axis: @axis) | &2]
)
|> Enum.reverse()
receive_batched(total_size - size, ref, [funs | acc], {output, metadata}, name, input)
end
{:DOWN, ^ref, _, _, reason} ->
# We fake monitor messages, so still demonitor and flush.
Process.demonitor(ref, [:flush])
{:DOWN, reason}
end
end
defp distributed_batched_run!(name, input, distributed_callback) do
distributed_batched_run_with_retries!(name, distributed_callback.(input), 3)
end
defp distributed_batched_run_with_retries!(name, input, 0) do
exit({:noproc, {__MODULE__, :distributed_batched_run, [name, input, [retries: 0]]}})
end
defp distributed_batched_run_with_retries!(name, input, retries) do
case :pg.get_members(Nx.Serving.PG, __MODULE__) do
[] ->
exit({:noproc, {__MODULE__, :distributed_batched_run, [name, input, [retries: retries]]}})
entries ->
pid = Enum.random(entries)
ref = make_ref()
args = [ref, name, input]
{_, monitor_ref} =
Node.spawn_monitor(node(pid), __MODULE__, :__distributed_batched_run__, args)
receive do
{:DOWN, ^monitor_ref, _, _, {^ref, result}} ->
result
{:DOWN, _, _, _, :noproc} ->
distributed_batched_run_with_retries!(name, input, retries - 1)
{:DOWN, _, _, _, reason} ->
exit(
{reason, {__MODULE__, :distributed_batched_run, [name, input, [retries: retries]]}}
)
end
end
end
@doc false
def __distributed_batched_run__(ref, name, input) do
pid = Process.whereis(name) || exit(:noproc)
case local_batched_run(pid, name, input) do
{:ok, result} ->
result = :persistent_term.get(persistent_key(name)).distributed_postprocessing.(result)
exit({ref, result})
{:DOWN, reason} ->
exit(reason)
end
end
## Process callbacks
require Logger
@behaviour GenServer
@empty_stack {[], 0}
@empty_queue :queue.new()
@timeout_message {__MODULE__, :timeout}
@impl true
def init({name, serving, partitions, batch_size, batch_timeout, task_supervisor}) do
Process.flag(:trap_exit, true)
partitions = serving_partitions(serving, partitions)
partitions_count = length(partitions)
{:ok, module_state} = handle_init(serving.module, :process, serving.arg, partitions)
:persistent_term.put(
persistent_key(name),
%{
limit: batch_size,
preprocessing: serving.client_preprocessing,
postprocessing: serving.client_postprocessing,
distributed_postprocessing: serving.distributed_postprocessing
}
)
:pg.join(Nx.Serving.PG, __MODULE__, List.duplicate(self(), partitions_count))
# We keep batches in a stack. Once the stack is full
# or it times out, we either execute or enqueue it.
state = %{
module: serving.module,
module_state: module_state,
stack: @empty_stack,
limit: batch_size,
timeout: batch_timeout,
timer: :none,
in_queue: @empty_queue,
out_queue: Enum.reduce(0..(partitions_count - 1), :queue.new(), &:queue.in/2),
tasks: [],
task_supervisor: task_supervisor
}
{:ok, state}
end
defp serving_partitions(%Nx.Serving{defn_options: defn_options}, true) do
compiler = Keyword.get(defn_options, :compiler, Nx.Defn.Evaluator)
compiler.__partitions_options__(defn_options)
end
defp serving_partitions(%Nx.Serving{defn_options: defn_options}, false) do
[defn_options]
end
@impl true
def handle_info({__MODULE__, :batched_run, ref, %Nx.Batch{} = batch}, state) do
%{limit: limit, stack: {_, count}} = state
state =
cond do
# Single entry takes the whole batch.
# Execute what we have (if any) and execute a new one.
batch.size == limit ->
state
|> server_execute()
|> server_stack(ref, batch)
|> server_execute()
# First entry in batch.
count == 0 ->
state
|> server_timer()
|> server_stack(ref, batch)
# We don't exceed the limit.
batch.size + count < limit ->
server_stack(state, ref, batch)
# We go over the limit.
batch.size + count > limit ->
{current, next} = Nx.Batch.split(batch, limit - count)
state
|> server_stack(ref, current)
|> server_execute()
|> server_timer()
|> server_stack(ref, next)
# Exact match.
true ->
state
|> server_stack(ref, batch)
|> server_execute()
end
{:noreply, state}
end
def handle_info(@timeout_message, state) do
{:noreply, server_timeout(state)}
end
def handle_info({ref, reply}, %{tasks: tasks, module: module} = state) do
case Enum.split_with(tasks, &(elem(&1, 0).ref == ref)) do
{[{_task, partition, ref_sizes}], tasks} ->
server_reply_ok(module, ref, reply, ref_sizes)
{:noreply, server_task_done(state, tasks, partition)}
_ ->
{:noreply, state}
end
end
def handle_info({:DOWN, ref, :process, _process, reason}, %{tasks: tasks} = state) do
case Enum.split_with(tasks, &(elem(&1, 0).ref == ref)) do
{[{_task, partition, ref_sizes}], tasks} ->
server_reply_down(reason, ref_sizes)
{:noreply, server_task_done(state, tasks, partition)}
_ ->
{:noreply, state}
end
end
def handle_info(msg, state) do
Logger.warning("Unknown message in Nx.Serving: #{inspect(msg)}")
{:noreply, state}
end
@impl true
def terminate(_reason, %{module: module, tasks: tasks, in_queue: in_queue, stack: {stack, _}}) do
# Emulate the process is gone for entries in the queue
for {_batch, ref_sizes} <- :queue.to_list(in_queue) do
server_reply_down(:noproc, ref_sizes)
end
# As well as for entries in the stack
for {ref, _batch} <- stack do
send(ref, {:DOWN, ref, :process, self(), :noproc})
end
# And wait until all current tasks are processed
for {%Task{ref: ref}, _partition, ref_sizes} <- tasks do
receive do
{^ref, reply} -> server_reply_ok(module, ref, reply, ref_sizes)
{:DOWN, ^ref, :process, _, reason} -> server_reply_down(reason, ref_sizes)
end
end
:ok
end
defp server_reply_ok(module, ref, reply, ref_sizes) do
Process.demonitor(ref, [:flush])
{output, metadata} = handle_executed(module, reply)
for {ref, start, size} <- ref_sizes do
send(ref, {ref, {start, size, output, metadata}})
end
end
defp server_reply_down(reason, ref_sizes) do
for {ref, _start, _size} <- ref_sizes do
send(ref, {:DOWN, ref, :process, self(), reason})
end
end
defp server_stack(%{stack: {stack, count}, limit: limit} = state, ref, batch)
when batch.size + count <= limit do
%{state | stack: {[{ref, batch} | stack], count + batch.size}}
end
defp server_timer(%{timeout: timeout, timer: :none} = state),
do: %{state | timer: Process.send_after(self(), @timeout_message, timeout)}
defp server_execute(%{stack: @empty_stack} = state), do: state
defp server_execute(state) do
%{stack: {stack, count}, timer: timer} = state
if is_reference(timer) do
Process.cancel_timer(timer)
receive do
@timeout_message -> :ok
after
0 -> :ok
end
end
{ref_sizes, batches, _} =
Enum.reduce(stack, {[], [], count}, fn {ref, batch}, {ref_sizes, batches, ending} ->
size = batch.size
{[{ref, ending - size, size} | ref_sizes], [batch | batches], ending - size}
end)
state = %{state | timer: :none, stack: @empty_stack}
server_task_or_enqueue(state, Nx.Batch.merge(batches), ref_sizes)
end
defp server_task_or_enqueue(%{out_queue: out_queue} = state, batch, ref_sizes) do
case :queue.out(out_queue) do
{:empty, _out_queue} ->
%{state | in_queue: :queue.in({batch, ref_sizes}, state.in_queue)}
{{:value, partition}, out_queue} ->
%{module: module, module_state: module_state} = state
{:execute, function, module_state} = handle_batch(module, batch, partition, module_state)
wrapped_function = fn ->
:telemetry.span([:nx, :serving, :execute], %{module: module}, fn ->
{output, metadata} = function.()
{{output, metadata}, %{metadata: metadata, module: module}}
end)
end
task = Task.Supervisor.async_nolink(state.task_supervisor, wrapped_function)
tasks = [{task, partition, ref_sizes} | state.tasks]
%{state | module_state: module_state, tasks: tasks, out_queue: out_queue}
end
end
defp server_task_done(%{in_queue: in_queue, out_queue: out_queue} = state, tasks, partition) do
out_queue = :queue.in(partition, out_queue)
case :queue.out(in_queue) do
# The timer expired while the task was processing, so execute the current batch.
{:empty, _in_queue} when state.timer == :done ->
server_execute(%{state | tasks: tasks, out_queue: out_queue})
# Nothing to do.
{:empty, _in_queue} ->
%{state | tasks: tasks, out_queue: out_queue}
# Execute the next one in queue.
{{:value, {batch, ref_sizes}}, in_queue} ->
state = %{state | tasks: tasks, out_queue: out_queue, in_queue: in_queue}
server_task_or_enqueue(state, batch, ref_sizes)
end
end
# It timed out, the in queue is empty and out queue is not empty, execute it now.
defp server_timeout(%{out_queue: out_queue, in_queue: @empty_queue} = state)
when out_queue != @empty_queue,
do: server_execute(%{state | timer: :done})
# Otherwise continue batching until the queue is empty or it is full.
defp server_timeout(state),
do: %{state | timer: :done}
## Shared helpers
defp persistent_key(name) when is_atom(name) do
{__MODULE__, name}
end
defp handle_init(module, type, arg, [_ | _] = partitions) do
case module.init(type, arg, partitions) do
{:ok, _} = pair ->
pair
other ->
raise "#{inspect(module)}.init/3 must return {:ok, state}. Got: #{inspect(other)}"
end
end
defp handle_batch(module, batch, partition, state) do
case module.handle_batch(batch, partition, state) do
{:execute, function, _} = pair when is_function(function, 0) ->
pair
other ->
raise "#{inspect(module)}.handle_batch/3 must return {:execute, function, state}, " <>
"where function is a function that receives no arguments and returns a tuple. " <>
"Got: #{inspect(other)}"
end
end
defp handle_executed(module, result) do
case result do
{output, metadata} ->
{output, metadata}
other ->
raise "the function returned by #{inspect(module)}.handle_batch/3 must return {output, metadata}. " <>
"Got: #{inspect(other)}"
end
end
defp handle_preprocessing(nil, input) do
case input do
%Nx.Batch{} ->
{no_empty_batch!(input), :client_info}
_ ->
raise ArgumentError,
"the default client_preprocessing expects a `Nx.Batch` as input. " <>
"Give a batch or use a custom preprocessing"
end
end
defp handle_preprocessing(preprocessing, input) do
meta = %{input: input}
:telemetry.span([:nx, :serving, :preprocessing], meta, fn ->
case preprocessing.(input) do
{%Nx.Batch{} = batch, info} ->
{{no_empty_batch!(batch), info}, Map.put(meta, :info, info)}
other ->
raise "client_preprocessing function #{inspect(preprocessing)} must return a two element tuple " <>
"where the first element is a Nx.Batch and the second is any value. Got: #{inspect(other)}"
end
end)
end
defp no_empty_batch!(%{size: 0}), do: raise(ArgumentError, "cannot run with empty Nx.Batch")
defp no_empty_batch!(%{size: _} = batch), do: batch
defp handle_postprocessing(nil, output, _metadata, _info), do: output
defp handle_postprocessing(postprocessing, output, metadata, info) do
meta = %{info: info, metadata: metadata, output: output}
:telemetry.span([:nx, :serving, :postprocessing], meta, fn ->
output = postprocessing.(output, metadata, info)
{output, %{meta | output: output}}
end)
end
end
defmodule Nx.Serving.Default do
@moduledoc false
@behaviour Nx.Serving
@impl true
def init(_type, fun, partitions) do
batch_funs =
for defn_options <- partitions do
case fun.(defn_options) do
batch_fun when is_function(batch_fun, 1) ->
batch_fun
other ->
raise "anonymous function given to Nx.Serving.new/2 should return an AOT or " <>
"JIT compiled function that expects one argument. Got: #{inspect(other)}"
end
end
{:ok, batch_funs}
end
@impl true
def handle_batch(batch, partition, batch_funs) do
batch_fun = Enum.fetch!(batch_funs, partition)
{:execute, fn -> {batch_fun.(batch), :server_info} end, batch_funs}
end
end