| **Caution:** Starting with Android 12, the RenderScript APIs are deprecated. They will continue to function, but we expect that device and component manufacturers will stop providing hardware acceleration support over time. To take full advantage of GPU acceleration, we recommend [migrating away from RenderScript](https://developer.android.com/guide/topics/renderscript/migrate).   
|
| Following the deprecation of RenderScript in the Android platform, we are also removing support for RenderScript in the Android Gradle plugin. Starting with Android Gradle plugin 7.2, the RenderScript APIs are deprecated. They will continue to function, but will invoke warnings, and will be completely removed in future versions of AGP. For more information, see [Migrate from Renderscript](https://developer.android.com/guide/topics/renderscript/migrate).

RenderScript is a framework for running computationally intensive tasks at high performance on
Android. RenderScript is primarily oriented for use with data-parallel computation, although serial
workloads can benefit as well. The RenderScript runtime parallelizes
work across processors available on a device, such as multi-core CPUs and GPUs. This allows
you to focus on expressing algorithms rather than scheduling work. RenderScript is
especially useful for applications performing image processing, computational photography, or
computer vision.

To begin with RenderScript, there are two main concepts you should understand:

- The *language* itself is a C99-derived language for writing high-performance compute code. [Writing a RenderScript Kernel](https://developer.android.com/guide/topics/renderscript/compute#writing-an-rs-kernel) describes how to use it to write compute kernels.
- The *control API* is used for managing the lifetime of RenderScript resources and controlling kernel execution. It is available in three different languages: Java, C++ in Android NDK, and the C99-derived kernel language itself. [Using RenderScript from Java Code](https://developer.android.com/guide/topics/renderscript/compute#using-rs-from-java) and [Single-Source RenderScript](https://developer.android.com/guide/topics/renderscript/compute#single-source-rs) describe the first and the third options, respectively.

## Writing a RenderScript Kernel

A RenderScript kernel typically resides in a `.rs` file in the
`<project_root>/src/rs` directory; each `.rs` file is called a
*script*. Every script contains its own set of kernels, functions, and variables. A script can
contain:

- A pragma declaration (`#pragma version(1)`) that declares the version of the RenderScript kernel language used in this script. Currently, 1 is the only valid value.
- A pragma declaration (`#pragma rs java_package_name(com.example.app)`) that declares the package name of the Java classes reflected from this script. Note that your `.rs` file must be part of your application package, and not in a library project.
- Zero or more ***invokable functions***. An invokable function is a single-threaded RenderScript function that you can call from your Java code with arbitrary arguments. These are often useful for initial setup or serial computations within a larger processing pipeline.
- Zero or more ***script globals*** . A script global is similar to a global variable in C. You can
  access script globals from Java code, and these are often used for parameter passing to RenderScript
  kernels. Script globals are explained in more detail [here](https://developer.android.com/guide/topics/renderscript/compute#script-globals).

- Zero or more ***compute kernels*** . A compute kernel is a function
  or collection of functions that you can direct the RenderScript runtime to execute in parallel
  across a collection of data. There are two kinds of compute
  kernels: *mapping* kernels (also called *foreach* kernels)
  and *reduction* kernels.

  A *mapping kernel* is a parallel function that operates on a collection of [Allocations](https://developer.android.com/reference/android/renderscript/Allocation) of the same dimensions. By default, it executes
  once for every coordinate in those dimensions. It is typically (but not exclusively) used to
  transform a collection of input [Allocations](https://developer.android.com/reference/android/renderscript/Allocation) to an
  output [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) one [Element](https://developer.android.com/reference/android/renderscript/Element) at a
  time.
  - Here is an example of a simple **mapping kernel**:

    ```c++
    uchar4 RS_KERNEL invert(uchar4 in, uint32_t x, uint32_t y) {
      uchar4 out = in;
      out.r = 255 - in.r;
      out.g = 255 - in.g;
      out.b = 255 - in.b;
      return out;
    }
    ```

    In most respects, this is identical to a standard C
    function. The [`RS_KERNEL`](https://developer.android.com/guide/topics/renderscript/compute#RS_KERNEL) property applied to the
    function prototype specifies that the function is a RenderScript mapping kernel instead of an
    invokable function. The `in` argument is automatically filled in based on the
    input [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) passed to the kernel launch. The
    arguments `x` and `y` are
    discussed [below](https://developer.android.com/guide/topics/renderscript/compute#special-arguments). The value returned from the kernel is
    automatically written to the appropriate location in the output [Allocation](https://developer.android.com/reference/android/renderscript/Allocation). By default, this kernel is run across its entire input
    [Allocation](https://developer.android.com/reference/android/renderscript/Allocation), with one execution of the kernel function per [Element](https://developer.android.com/reference/android/renderscript/Element) in the [Allocation](https://developer.android.com/reference/android/renderscript/Allocation).

    A mapping kernel may have one or more input [Allocations](https://developer.android.com/reference/android/renderscript/Allocation), a single output [Allocation](https://developer.android.com/reference/android/renderscript/Allocation), or both. The
    RenderScript runtime checks to ensure that all input and output Allocations have the same
    dimensions, and that the [Element](https://developer.android.com/reference/android/renderscript/Element) types of the input and output
    Allocations match the kernel's prototype; if either of these checks fails, RenderScript
    throws an exception.

    **NOTE:** Before Android 6.0 (API level 23), a mapping kernel may
    not have more than one input [Allocation](https://developer.android.com/reference/android/renderscript/Allocation).

    If you need more input or output [Allocations](https://developer.android.com/reference/android/renderscript/Allocation) than
    the kernel has, those objects should be bound to `rs_allocation` script globals
    and accessed from a kernel or invokable function
    via `rsGetElementAt_`*type*`()` or `rsSetElementAt_`*type*`()`.

    **NOTE:** `RS_KERNEL` is a macro
    defined automatically by RenderScript for your convenience:  

    ```c++
    #define RS_KERNEL __attribute__((kernel))
    ```

  A *reduction kernel* is a family of functions that operates on a collection of input
  [Allocations](https://developer.android.com/reference/android/renderscript/Allocation) of the same dimensions. By default,
  its [accumulator function](https://developer.android.com/guide/topics/renderscript/compute#accumulator-function) executes once for every
  coordinate in those dimensions. It is typically (but not exclusively) used to "reduce" a
  collection of input [Allocations](https://developer.android.com/reference/android/renderscript/Allocation) to a single
  value.
  - Here is an example of a simple **reduction
    kernel** that adds up the [Elements](https://developer.android.com/reference/android/renderscript/Element) of its
    input:

    ```c++
    #pragma rs reduce(addint) accumulator(addintAccum)

    static void addintAccum(int *accum, int val) {
      *accum += val;
    }
    ```

    A reduction kernel consists of one or more user-written functions.
    `#pragma rs reduce` is used to define the kernel by specifying its name
    (`addint`, in this example) and the names and roles of the functions that make
    up the kernel (an `accumulator` function `addintAccum`, in this
    example). All such functions must be `static`. A reduction kernel always
    requires an `accumulator` function; it may also have other functions, depending
    on what you want the kernel to do.

    A reduction kernel accumulator function must return `void` and must have at least
    two arguments. The first argument (`accum`, in this example) is a pointer to
    an *accumulator data item* and the second (`val`, in this example) is
    automatically filled in based on the input [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) passed to
    the kernel launch. The accumulator data item is created by the RenderScript runtime; by
    default, it is initialized to zero. By default, this kernel is run across its entire input
    [Allocation](https://developer.android.com/reference/android/renderscript/Allocation), with one execution of the accumulator function per
    [Element](https://developer.android.com/reference/android/renderscript/Element) in the [Allocation](https://developer.android.com/reference/android/renderscript/Allocation). By
    default, the final value of the accumulator data item is treated as the result of the
    reduction, and is returned to Java. The RenderScript runtime checks to ensure that the [Element](https://developer.android.com/reference/android/renderscript/Element) type of the input Allocation matches the accumulator function's
    prototype; if it does not match, RenderScript throws an exception.

    A reduction kernel has one or more input [Allocations](https://developer.android.com/reference/android/renderscript/Allocation) but no output [Allocations](https://developer.android.com/reference/android/renderscript/Allocation).

    Reduction kernels are explained in more detail [here](https://developer.android.com/guide/topics/renderscript/compute#reduction-in-depth).

    Reduction kernels are supported in Android 7.0 (API level 24) and later.

  A mapping kernel function or a reduction kernel accumulator function may access the coordinates
  of the current execution using the special arguments `x`,
  `y`, and `z`, which must be of type `int` or `uint32_t`.
  These arguments are optional.

  A mapping kernel function or a reduction kernel accumulator
  function may also take the optional special argument
  `context` of type [rs_kernel_context](https://developer.android.com/guide/topics/renderscript/reference/rs_for_each#android_rs:rs_kernel_context).
  It is needed by a family of runtime APIs that are used to query
  certain properties of the current execution -- for example, [rsGetDimX](https://developer.android.com/guide/topics/renderscript/reference/rs_for_each#android_rs:rsGetDimX).
  (The `context` argument is available in Android 6.0 (API level 23) and later.)
- An optional `init()` function. The `init()` function is a special type of invokable function that RenderScript runs when the script is first instantiated. This allows for some computation to occur automatically at script creation.
- Zero or more ***static script globals and functions*** . A static script global is equivalent to a script global except that it cannot be accessed from Java code. A static function is a standard C function that can be called from any kernel or invokable function in the script but is not exposed to the Java API. If a script global or function does not need to be accessed from Java code, it is highly recommended that it be declared `static`.

#### Setting floating point precision

You can control the required level of floating point precision in a script. This is useful if
full IEEE 754-2008 standard (used by default) is not required. The following pragmas can set a
different level of floating point precision:

- `#pragma rs_fp_full` (default if nothing is specified): For apps that require floating point precision as outlined by the IEEE 754-2008 standard.
- `#pragma rs_fp_relaxed`: For apps that don't require strict IEEE 754-2008 compliance and can tolerate less precision. This mode enables flush-to-zero for denorms and round-towards-zero.
- `#pragma rs_fp_imprecise`: For apps that don't have stringent precision requirements. This mode enables everything in `rs_fp_relaxed` along with the following:
  - Operations resulting in -0.0 can return +0.0 instead.
  - Operations on INF and NAN are undefined.

Most applications can use `rs_fp_relaxed` without any side effects. This may be very
beneficial on some architectures due to additional optimizations only available with relaxed
precision (such as SIMD CPU instructions).

## Accessing RenderScript APIs from Java

When developing an Android application that uses RenderScript, you can access its API from Java in
one of two ways:

- **[android.renderscript](https://developer.android.com/reference/android/renderscript/package-summary)** - The APIs in this class package are available on devices running Android 3.0 (API level 11) and higher.
- **[android.support.v8.renderscript](https://developer.android.com/reference/android/support/v8/renderscript/package-summary)** - The APIs in this package are available through a [Support
  Library](https://developer.android.com/tools/support-library/features#v8), which allows you to use them on devices running Android 2.3 (API level 9) and higher.

Here are the tradeoffs:

- If you use the Support Library APIs, the RenderScript portion of your application will be compatible with devices running Android 2.3 (API level 9) and higher, regardless of which RenderScript features you use. This allows your application to work on more devices than if you use the native (**[android.renderscript](https://developer.android.com/reference/android/renderscript/package-summary)**) APIs.
- Certain RenderScript features are not available through the Support Library APIs.
- If you use the Support Library APIs, you will get (possibly significantly) larger APKs than if you use the native (**[android.renderscript](https://developer.android.com/reference/android/renderscript/package-summary)**) APIs.

### Using the RenderScript Support Library APIs

In order to use the Support Library RenderScript APIs, you must configure your development
environment to be able to access them. The following Android SDK tools are required for using
these APIs:

- Android SDK Tools revision 22.2 or higher
- Android SDK Build-tools revision 18.1.0 or higher

Note that starting from Android SDK Build-tools 24.0.0, Android 2.2
(API level 8) is no longer supported.

You can check and update the installed version of these tools in the
[Android SDK Manager](https://developer.android.com/tools/help/sdk-manager).

To use the Support Library RenderScript APIs:

1. Make sure you have the required Android SDK version installed.
2. Update the settings for the Android build process to include the RenderScript settings:
   - Open the `build.gradle` file in the app folder of your application module.
   - Add the following RenderScript settings to the file:  

     ### Groovy

     ```groovy
             android {
                 compileSdkVersion 33

                 defaultConfig {
                     minSdkVersion 9
                     targetSdkVersion 19

                     renderscriptTargetApi 18
                     renderscriptSupportModeEnabled true
                 }
             }
             
     ```

     ### Kotlin

     ```kotlin
             android {
                 compileSdkVersion(33)

                 defaultConfig {
                     minSdkVersion(9)
                     targetSdkVersion(19)

                     renderscriptTargetApi = 18
                     renderscriptSupportModeEnabled = true
                 }
             }
             
     ```

     The settings listed above control specific behavior in the Android build process:
     - `renderscriptTargetApi` - Specifies the bytecode version to be generated. We recommend you set this value to the lowest API level able to provide all the functionality you are using and set `renderscriptSupportModeEnabled` to `true`. Valid values for this setting are any integer value from 11 to the most recently released API level. If your minimum SDK version specified in your application manifest is set to a different value, that value is ignored and the target value in the build file is used to set the minimum SDK version.
     - `renderscriptSupportModeEnabled` - Specifies that the generated bytecode should fall back to a compatible version if the device it is running on does not support the target version.
3. In your application classes that use RenderScript, add an import for the Support Library classes:  

   ### Kotlin

   ```kotlin
   import android.support.v8.renderscript.*
   ```

   ### Java

   ```java
   import android.support.v8.renderscript.*;
   ```

## Using RenderScript from Java or Kotlin Code

Using RenderScript from Java or Kotlin code relies on the API classes located in the
[android.renderscript](https://developer.android.com/reference/android/renderscript/package-summary) or the [android.support.v8.renderscript](https://developer.android.com/reference/android/support/v8/renderscript/package-summary) package. Most
applications follow the same basic usage pattern:

1. **Initialize a RenderScript context.** The [RenderScript](https://developer.android.com/reference/android/renderscript/RenderScript) context, created with [create(Context)](https://developer.android.com/reference/android/renderscript/RenderScript#create(android.content.Context)), ensures that RenderScript can be used and provides an object to control the lifetime of all subsequent RenderScript objects. You should consider context creation to be a potentially long-running operation, since it may create resources on different pieces of hardware; it should not be in an application's critical path if at all possible. Typically, an application will have only a single RenderScript context at a time.
2. **Create at least one [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) to be passed to a
   script.** An [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) is a RenderScript object that provides storage for a fixed amount of data. Kernels in scripts take [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) objects as their input and output, and [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) objects can be accessed in kernels using `rsGetElementAt_`*type*`()` and `rsSetElementAt_`*type*`()` when bound as script globals. [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) objects allow arrays to be passed from Java code to RenderScript code and vice-versa. [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) objects are typically created using [createTyped()](https://developer.android.com/reference/android/renderscript/Allocation#createTyped(android.renderscript.RenderScript, android.renderscript.Type)) or [createFromBitmap()](https://developer.android.com/reference/android/renderscript/Allocation#createFromBitmap(android.renderscript.RenderScript, android.graphics.Bitmap)).
3. **Create whatever scripts are necessary.** There are two types of scripts available to you when using RenderScript:
   - **ScriptC** : These are the user-defined scripts as described in [*Writing a RenderScript Kernel*](https://developer.android.com/guide/topics/renderscript/compute#writing-an-rs-kernel) above. Every script has a Java class reflected by the RenderScript compiler in order to make it easy to access the script from Java code; this class has the name `ScriptC_`*filename*. For example, if the mapping kernel above were located in `invert.rs` and a RenderScript context were already located in `mRenderScript`, the Java or Kotlin code to instantiate the script would be:  

     ### Kotlin

     ```kotlin
     val invert = ScriptC_invert(renderScript)
     ```

     ### Java

     ```java
     ScriptC_invert invert = new ScriptC_invert(renderScript);
     ```
   - **ScriptIntrinsic** : These are built-in RenderScript kernels for common operations, such as Gaussian blur, convolution, and image blending. For more information, see the subclasses of [ScriptIntrinsic](https://developer.android.com/reference/android/renderscript/ScriptIntrinsic).
4. **Populate Allocations with data.** Except for Allocations created with [createFromBitmap()](https://developer.android.com/reference/android/renderscript/Allocation#createFromBitmap(android.renderscript.RenderScript, android.graphics.Bitmap)), an Allocation is populated with empty data when it is first created. To populate an Allocation, use one of the "copy" methods in [Allocation](https://developer.android.com/reference/android/renderscript/Allocation). The "copy" methods are [synchronous](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).
5. **Set any necessary [script globals](https://developer.android.com/guide/topics/renderscript/compute#script-globals).** You may set globals using methods in the same `ScriptC_`*filename* class named `set_`*globalname*. For example, in order to set an `int` variable named `threshold`, use the Java method `set_threshold(int)`; and in order to set an `rs_allocation` variable named `lookup`, use the Java method `set_lookup(Allocation)`. The `set` methods are [asynchronous](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).
6. **Launch the appropriate kernels and invokable functions.**

   Methods to launch a given kernel are
   reflected in the same `ScriptC_`*filename* class with methods named
   `forEach_`*mappingKernelName*`()`
   or `reduce_`*reductionKernelName*`()`.
   These launches are [asynchronous](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).
   Depending on the arguments to the kernel, the
   method takes one or more Allocations, all of which must have the same dimensions. By default, a
   kernel executes over every coordinate in those dimensions; to execute a kernel over a subset of those coordinates,
   pass an appropriate [Script.LaunchOptions](https://developer.android.com/reference/android/renderscript/Script.LaunchOptions) as the last argument to the `forEach` or `reduce` method.

   Launch invokable functions using the `invoke_`*functionName* methods
   reflected in the same `ScriptC_`*filename* class.
   These launches are [asynchronous](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).
7. **Retrieve data from [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) objects
   and *[javaFutureType](https://developer.android.com/guide/topics/renderscript/compute#javaFutureType)* objects.** In order to access data from an [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) from Java code, you must copy that data back to Java using one of the "copy" methods in [Allocation](https://developer.android.com/reference/android/renderscript/Allocation). In order to obtain the result of a reduction kernel, you must use the *javaFutureType*`.get()` method. The "copy" and `get()` methods are [synchronous](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).
8. **Tear down the RenderScript context.** You can destroy the RenderScript context with [destroy()](https://developer.android.com/reference/android/renderscript/RenderScript#destroy()) or by allowing the RenderScript context object to be garbage collected. This causes any further use of any object belonging to that context to throw an exception.

### Asynchronous execution model

The reflected `forEach`, `invoke`, `reduce`,
and `set` methods are asynchronous -- each may return to Java before completing the
requested action. However, the individual actions are serialized in the order in which they are launched.

The [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) class provides "copy" methods to copy data to
and from Allocations. A "copy" method is synchronous, and is serialized with respect to any
of the asynchronous actions above that touch the same Allocation.

The reflected *[javaFutureType](https://developer.android.com/guide/topics/renderscript/compute#javaFutureType)* classes provide
a `get()` method to obtain the result of a reduction. `get()` is
synchronous, and is serialized with respect to the reduction (which is asynchronous).

## Single-Source RenderScript

Android 7.0 (API level 24) introduces a new programming feature called *Single-Source
RenderScript* , in which kernels are launched from the script where they are defined, rather than
from Java. This approach is currently limited to mapping kernels, which are simply referred to as "kernels"
in this section for conciseness. This new feature also supports creating allocations of type
[`rs_allocation`](https://developer.android.com/guide/topics/renderscript/reference/rs_object_types#android_rs:rs_allocation) from inside the script. It is now possible to
implement a whole algorithm solely within a script, even if multiple kernel launches are required.
The benefit is twofold: more readable code, because it keeps the implementation of an algorithm in
one language; and potentially faster code, because of fewer transitions between Java and
RenderScript across multiple kernel launches.

In Single-Source RenderScript, you write kernels as described in [Writing a RenderScript Kernel](https://developer.android.com/guide/topics/renderscript/compute#writing-an-rs-kernel). You then write an invokable function that calls
[`rsForEach()`](https://developer.android.com/guide/topics/renderscript/reference/rs_for_each#android_rs:rsForEach) to launch them. That API takes a kernel function as the first
parameter, followed by input and output allocations. A similar API
[`rsForEachWithOptions()`](https://developer.android.com/guide/topics/renderscript/reference/rs_for_each#android_rs:rsForEachWithOptions) takes an extra argument of type
[`rs_script_call_t`](https://developer.android.com/guide/topics/renderscript/reference/rs_for_each#android_rs:rs_script_call_t), which specifies a subset of the elements from the input and
output allocations for the kernel function to process.

To start RenderScript computation, you call the invokable function from Java.
Follow the steps in [Using RenderScript from Java Code](https://developer.android.com/guide/topics/renderscript/compute#using-rs-from-java).
In the step [launch the appropriate kernels](https://developer.android.com/guide/topics/renderscript/compute#launching_kernels), call
the invokable function using `invoke_`*function_name*`()`, which will start the
whole computation, including launching kernels.

Allocations are often needed to save and pass
intermediate results from one kernel launch to another. You can create them using
[rsCreateAllocation()](https://developer.android.com/guide/topics/renderscript/reference/rs_allocation_create#android_rs:rsCreateAllocation). One easy-to-use form of that API is `
rsCreateAllocation_<T><W>(...)`, where *T* is the data type for an
element, and *W* is the vector width for the element. The API takes the sizes in
dimensions X, Y, and Z as arguments. For 1D or 2D allocations, the size for dimension Y or Z can
be omitted. For example, `rsCreateAllocation_uchar4(16384)` creates a 1D allocation of
16384 elements, each of which is of type `uchar4`.

Allocations are managed by the system automatically. You
do not have to explicitly release or free them. However, you can call
[`rsClearObject(rs_allocation* alloc)`](https://developer.android.com/guide/topics/renderscript/reference/rs_object_info#android_rs:rsClearObject) to indicate you no longer need the handle
`alloc` to the underlying allocation,
so that the system can free up resources as early as possible.

The [Writing a RenderScript Kernel](https://developer.android.com/guide/topics/renderscript/compute#writing-an-rs-kernel) section contains an example
kernel that inverts an image. The example below expands that to apply more than one effect to an image,
using Single-Source RenderScript. It includes another kernel, `greyscale`, which turns a
color image into black-and-white. An invokable function `process()` then applies those two kernels
consecutively to an input image, and produces an output image. Allocations for both the input and
the output are passed in as arguments of type
[`rs_allocation`](https://developer.android.com/guide/topics/renderscript/reference/rs_object_types#android_rs:rs_allocation).  

```c++
// File: singlesource.rs

#pragma version(1)
#pragma rs java_package_name(com.android.rssample)

static const float4 weight = {0.299f, 0.587f, 0.114f, 0.0f};

uchar4 RS_KERNEL invert(uchar4 in, uint32_t x, uint32_t y) {
  uchar4 out = in;
  out.r = 255 - in.r;
  out.g = 255 - in.g;
  out.b = 255 - in.b;
  return out;
}

uchar4 RS_KERNEL greyscale(uchar4 in) {
  const float4 inF = rsUnpackColor8888(in);
  const float4 outF = (float4){ dot(inF, weight) };
  return rsPackColorTo8888(outF);
}

void process(rs_allocation inputImage, rs_allocation outputImage) {
  const uint32_t imageWidth = rsAllocationGetDimX(inputImage);
  const uint32_t imageHeight = rsAllocationGetDimY(inputImage);
  rs_allocation tmp = rsCreateAllocation_uchar4(imageWidth, imageHeight);
  rsForEach(invert, inputImage, tmp);
  rsForEach(greyscale, tmp, outputImage);
}
```

You can call the `process()` function from Java or Kotlin as follows:  

### Kotlin

```kotlin
val RS: RenderScript = RenderScript.create(context)
val script = ScriptC_singlesource(RS)
val inputAllocation: Allocation = Allocation.createFromBitmapResource(
        RS,
        resources,
        R.drawable.image
)
val outputAllocation: Allocation = Allocation.createTyped(
        RS,
        inputAllocation.type,
        Allocation.USAGE_SCRIPT or Allocation.USAGE_IO_OUTPUT
)
script.invoke_process(inputAllocation, outputAllocation)
```

### Java

```java
// File SingleSource.java

RenderScript RS = RenderScript.create(context);
ScriptC_singlesource script = new ScriptC_singlesource(RS);
Allocation inputAllocation = Allocation.createFromBitmapResource(
    RS, getResources(), R.drawable.image);
Allocation outputAllocation = Allocation.createTyped(
    RS, inputAllocation.getType(),
    Allocation.USAGE_SCRIPT | Allocation.USAGE_IO_OUTPUT);
script.invoke_process(inputAllocation, outputAllocation);
```

This example shows how an algorithm that involves two kernel launches can be implemented completely
in the RenderScript language itself. Without Single-Source
RenderScript, you would have to launch both kernels from the Java code, separating kernel launches
from kernel definitions and making it harder to understand the whole algorithm. Not only is the
Single-Source RenderScript code easier to read, it also eliminates the transitioning
between Java and the script across kernel launches. Some iterative algorithms may launch kernels
hundreds of times, making the overhead of such transitioning considerable.

## Script Globals

A *script global* is an ordinary non-`static`
global variable in a script (`.rs`) file. For a script
global named *var* defined in the
file *filename*`.rs`, there will be a
method `get_`*var* reflected in the
class `ScriptC_`*filename*. Unless the global
is `const`, there will also be a
method `set_`*var*.

A given script global has two separate values -- a *Java*
value and a *script* value. These values behave as follows:

- If *var* has a static initializer in the script, it specifies the initial value of *var* in both Java and the script. Otherwise, that initial value is zero.
- Accesses to *var* within the script read and write its script value.
- The `get_`*var* method reads the Java value.
- The `set_`*var* method (if it exists) writes the Java value immediately, and writes the script value [asynchronously](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).

**NOTE:** This means that except for any
static initializer in the script, values written to a global from
within a script are not visible to Java.

## Reduction Kernels in Depth

*Reduction* is the process of combining a collection of data into a single
value. This is a useful primitive in parallel programming, with applications such as the
following:

- computing the sum or product over all the data
- computing logical operations (`and`, `or`, `xor`) over all the data
- finding the minimum or maximum value within the data
- searching for a specific value or for the coordinate of a specific value within the data

In Android 7.0 (API level 24) and later, RenderScript supports *reduction kernels* to allow
efficient user-written reduction algorithms. You may launch reduction kernels on inputs with
1, 2, or 3 dimensions.


An example above shows a simple [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint) reduction kernel.
Here is a more complicated findMinAndMax reduction kernel
that finds the locations of the minimum and maximum `long` values in a
1-dimensional [Allocation](https://developer.android.com/reference/android/renderscript/Allocation):  

```c++
#define LONG_MAX (long)((1UL << 63) - 1)
#define LONG_MIN (long)(1UL << 63)

#pragma rs reduce(findMinAndMax) \
  initializer(fMMInit) accumulator(fMMAccumulator) \
  combiner(fMMCombiner) outconverter(fMMOutConverter)

// Either a value and the location where it was found, or https://developer.android.com/guide/topics/renderscript/compute#INITVAL.
typedef struct {
  long val;
  int idx;     // -1 indicates https://developer.android.com/guide/topics/renderscript/compute#INITVAL
} IndexedVal;

typedef struct {
  IndexedVal min, max;
} MinAndMax;

// In discussion below, this initial value { { LONG_MAX, -1 }, { LONG_MIN, -1 } }
// is called INITVAL.
static void fMMInit(MinAndMax *accum) {
  accum->min.val = LONG_MAX;
  accum->min.idx = -1;
  accum->max.val = LONG_MIN;
  accum->max.idx = -1;
}

//----------------------------------------------------------------------
// In describing the behavior of the accumulator and combiner functions,
// it is helpful to describe hypothetical functions
//   IndexedVal min(IndexedVal a, IndexedVal b)
//   IndexedVal max(IndexedVal a, IndexedVal b)
//   MinAndMax  minmax(MinAndMax a, MinAndMax b)
//   MinAndMax  minmax(MinAndMax accum, IndexedVal val)
//
// The effect of
//   IndexedVal min(IndexedVal a, IndexedVal b)
// is to return the IndexedVal from among the two arguments
// whose val is lesser, except that when an IndexedVal
// has a negative index, that IndexedVal is never less than
// any other IndexedVal; therefore, if exactly one of the
// two arguments has a negative index, the min is the other
// argument. Like ordinary arithmetic min and max, this function
// is commutative and associative; that is,
//
//   min(A, B) == min(B, A)               // commutative
//   min(A, min(B, C)) == min((A, B), C)  // associative
//
// The effect of
//   IndexedVal max(IndexedVal a, IndexedVal b)
// is analogous (greater . . . never greater than).
//
// Then there is
//
//   MinAndMax minmax(MinAndMax a, MinAndMax b) {
//     return MinAndMax(min(a.min, b.min), max(a.max, b.max));
//   }
//
// Like ordinary arithmetic min and max, the above function
// is commutative and associative; that is:
//
//   minmax(A, B) == minmax(B, A)                  // commutative
//   minmax(A, minmax(B, C)) == minmax((A, B), C)  // associative
//
// Finally define
//
//   MinAndMax minmax(MinAndMax accum, IndexedVal val) {
//     return minmax(accum, MinAndMax(val, val));
//   }
//----------------------------------------------------------------------

// This function can be explained as doing:
//   *accum = minmax(*accum, IndexedVal(in, x))
//
// This function simply computes minimum and maximum values as if
// INITVAL.min were greater than any other minimum value and
// INITVAL.max were less than any other maximum value.  Note that if
// *accum is INITVAL, then this function sets
//   *accum = IndexedVal(in, x)
//
// After this function is called, both accum->min.idx and accum->max.idx
// will have nonnegative values:
// - x is always nonnegative, so if this function ever sets one of the
//   idx fields, it will set it to a nonnegative value
// - if one of the idx fields is negative, then the corresponding
//   val field must be LONG_MAX or LONG_MIN, so the function will always
//   set both the val and idx fields
static void fMMAccumulator(MinAndMax *accum, long in, int x) {
  IndexedVal me;
  me.val = in;
  me.idx = x;

  if (me.val <= accum->min.val)
    accum->min = me;
  if (me.val >= accum->max.val)
    accum->max = me;
}

// This function can be explained as doing:
//   *accum = minmax(*accum, *val)
//
// This function simply computes minimum and maximum values as if
// INITVAL.min were greater than any other minimum value and
// INITVAL.max were less than any other maximum value.  Note that if
// one of the two accumulator data items is INITVAL, then this
// function sets *accum to the other one.
static void fMMCombiner(MinAndMax *accum,
                        const MinAndMax *val) {
  if ((accum->min.idx < 0) || (val->min.val < accum->min.val))
    accum->min = val->min;
  if ((accum->max.idx < 0) || (val->max.val > accum->max.val))
    accum->max = val->max;
}

static void fMMOutConverter(int2 *result,
                            const MinAndMax *val) {
  result->x = val->min.idx;
  result->y = val->max.idx;
}
```

**NOTE:** There are more example reduction
kernels [here](https://developer.android.com/guide/topics/renderscript/compute#more-example).

In order to run a reduction kernel, the RenderScript runtime creates *one or more*
variables called ***accumulator data
items*** to hold the state of the reduction process. The RenderScript runtime
picks the number of accumulator data items in such a way as to maximize performance. The type
of the accumulator data items (*accumType* ) is determined by the kernel's *accumulator
function* -- the first argument to that function is a pointer to an accumulator data
item. By default, every accumulator data item is initialized to zero (as if
by `memset`); however, you may write an *initializer function* to do something
different.

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint)
kernel, the accumulator data items (of type `int`) are used to add up input
values. There is no initializer function, so each accumulator data item is initialized to
zero.

**Example:** In
the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, the accumulator data items
(of type `MinAndMax`) are used to keep track of the minimum and maximum values
found so far. There is an initializer function to set these to `LONG_MAX` and
`LONG_MIN`, respectively; and to set the locations of these values to -1, indicating that
the values are not actually present in the (empty) portion of the input that has been
processed.

RenderScript calls your accumulator function once for every coordinate in the
input(s). Typically, your function should update the accumulator data item in some way
according to the input.

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint)
kernel, the accumulator function adds the value of an input Element to the accumulator
data item.

**Example:** In
the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, the accumulator function
checks to see whether the value of an input Element is less than or equal to the minimum
value recorded in the accumulator data item and/or greater than or equal to the maximum
value recorded in the accumulator data item, and updates the accumulator data item
accordingly.

After the accumulator function has been called once for every coordinate in the input(s),
RenderScript must **combine** the [accumulator
data items](https://developer.android.com/guide/topics/renderscript/compute#accumulator-data-items) together into a single accumulator data item. You may write a *combiner
function* to do this. If the accumulator function has a single input and
no [special arguments](https://developer.android.com/guide/topics/renderscript/compute#special-arguments), then you do not need to write a combiner
function; RenderScript will use the accumulator function to combine the accumulator data
items. (You may still write a combiner function if this default behavior is not what you
want.)

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint)
kernel, there is no combiner function, so the accumulator function will be used. This is
the correct behavior, because if we split a collection of values into two pieces, and we
add up the values in those two pieces separately, adding up those two sums is the same as
adding up the entire collection.

**Example:** In
the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, the combiner function
checks to see whether the minimum value recorded in the "source" accumulator data
item `*val` is less than the minimum value recorded in the "destination"
accumulator data item `*accum`, and updates `*accum`
accordingly. It does similar work for the maximum value. This updates `*accum`
to the state it would have had if all of the input values had been accumulated into
`*accum` rather than some into `*accum` and some into
`*val`.

After all of the accumulator data items have been combined, RenderScript determines
the result of the reduction to return to Java. You may write an *outconverter
function* to do this. You do not need to write an outconverter function if you want
the final value of the combined accumulator data items to be the result of the reduction.

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint) kernel,
there is no outconverter function. The final value of the combined data items is the sum of
all Elements of the input, which is the value we want to return.

**Example:** In
the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, the outconverter function
initializes an `int2` result value to hold the locations of the minimum and
maximum values resulting from the combination of all of the accumulator data items.

### Writing a reduction kernel

`#pragma rs reduce` defines a reduction kernel by
specifying its name and the names and roles of the functions that make
up the kernel. All such functions must be
`static`. A reduction kernel always requires an `accumulator`
function; you can omit some or all of the other functions, depending on what you want the
kernel to do.  

```c++
#pragma rs reduce(kernelName) \
  initializer(initializerName) \
  accumulator(accumulatorName) \
  combiner(combinerName) \
  outconverter(outconverterName)
```

The meaning of the items in the `#pragma` is as follows:

- `reduce(`*kernelName*`)` (mandatory): Specifies that a reduction kernel is being defined. A reflected Java method `reduce_`*kernelName* will launch the kernel.
- `initializer(`*initializerName*`)` (optional): Specifies the name of the
  initializer function for this reduction kernel. When you launch the kernel, RenderScript calls
  this function once for each [accumulator data item](https://developer.android.com/guide/topics/renderscript/compute#accumulator-data-items). The
  function must be defined like this:

  ```c++
  static void initializerName(accumType *accum) { ... }
  ```

  `accum` is a pointer to an accumulator data item for this function to
  initialize.

  If you do not provide an initializer function, RenderScript initializes every accumulator
  data item to zero (as if by `memset`), behaving as if there were an initializer
  function that looks like this:  

  ```c++
  static void initializerName(accumType *accum) {
    memset(accum, 0, sizeof(*accum));
  }
  ```
- accumulator(*accumulatorName*)
  (mandatory): Specifies the name of the accumulator function for this
  reduction kernel. When you launch the kernel, RenderScript calls
  this function once for every coordinate in the input(s), to update an
  accumulator data item in some way according to the input(s). The function
  must be defined like this:

  ```c++
  static void accumulatorName(accumType *accum,
                              in1Type in1, ..., inNType inN
                              [, specialArguments]) { ... }
  ```

  `accum` is a pointer to an accumulator data item for this function to
  modify. `in1` through `in`*N* are one *or more* arguments that
  are automatically filled in based on the inputs passed to the kernel launch, one argument
  per input. The accumulator function may optionally take any of the [special arguments](https://developer.android.com/guide/topics/renderscript/compute#special-arguments).

  An example kernel with multiple inputs is [`dotProduct`](https://developer.android.com/guide/topics/renderscript/compute#dot-product).
- combiner(*combinerName*)

  (optional): Specifies the name of the combiner function for this
  reduction kernel. After RenderScript calls the accumulator function
  once for every coordinate in the input(s), it calls this function as many
  times as necessary to combine all accumulator data items into a single
  accumulator data item. The function must be defined like this:  

  ```c++
  static void combinerName(accumType *accum, const accumType *other) { ... }
  ```

  `accum` is a pointer to a "destination" accumulator data item for this
  function to modify. `other` is a pointer to a "source" accumulator data item
  for this function to "combine" into `*accum`.

  **NOTE:** It is possible
  that `*accum`, `*other`, or both have been initialized but have never
  been passed to the accumulator function; that is, one or both have never been updated
  according to any input data. For example, in
  the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, the combiner
  function `fMMCombiner` explicitly checks for `idx < 0` because that
  indicates such an accumulator data item, whose value is [INITVAL](https://developer.android.com/guide/topics/renderscript/compute#INITVAL).

  If you do not provide a combiner function, RenderScript uses the accumulator function in its
  place, behaving as if there were a combiner function that looks like this:  

  ```c++
  static void combinerName(accumType *accum, const accumType *other) {
    accumulatorName(accum, *other);
  }
  ```

  A combiner function is mandatory if the kernel has more than one input, if the input data
  type is not the same as the accumulator data type, or if the accumulator function takes one
  or more [special arguments](https://developer.android.com/guide/topics/renderscript/compute#special-arguments).
- outconverter(*outconverterName*)
  (optional): Specifies the name of the outconverter function for this
  reduction kernel. After RenderScript combines all of the accumulator
  data items, it calls this function to determine the result of the
  reduction to return to Java. The function must be defined like
  this:

  ```c++
  static void outconverterName(resultType *result, const accumType *accum) { ... }
  ```

  `result` is a pointer to a result data item (allocated but not initialized
  by the RenderScript runtime) for this function to initialize with the result of the
  reduction. *resultType* is the type of that data item, which need not be the same
  as *accumType* . `accum` is a pointer to the final accumulator data item
  computed by the [combiner function](https://developer.android.com/guide/topics/renderscript/compute#combiner-function).

  If you do not provide an outconverter function, RenderScript copies the final accumulator
  data item to the result data item, behaving as if there were an outconverter function that
  looks like this:  

  ```c++
  static void outconverterName(accumType *result, const accumType *accum) {
    *result = *accum;
  }
  ```

  If you want a different result type than the accumulator data type, then the outconverter function is mandatory.

Note that a kernel has input types, an accumulator data item type, and a result type,
none of which need to be the same. For example, in
the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, the input
type `long`, accumulator data item type `MinAndMax`, and result
type `int2` are all different.

#### What can't you assume?

You must not rely on the number of accumulator data items created by RenderScript for a
given kernel launch. There is no guarantee that two launches of the same kernel with the
same input(s) will create the same number of accumulator data items.

You must not rely on the order in which RenderScript calls the initializer, accumulator, and
combiner functions; it may even call some of them in parallel. There is no guarantee that
two launches of the same kernel with the same input will follow the same order. The only
guarantee is that only the initializer function will ever see an uninitialized accumulator
data item. For example:

- There is no guarantee that all accumulator data items will be initialized before the accumulator function is called, although it will only be called on an initialized accumulator data item.
- There is no guarantee on the order in which input Elements are passed to the accumulator function.
- There is no guarantee that the accumulator function has been called for all input Elements before the combiner function is called.

One consequence of this is that the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax)
kernel is not deterministic: If the input contains more than one occurrence of the same
minimum or maximum value, you have no way of knowing which occurrence the kernel will
find.

#### What must you guarantee?

Because the RenderScript system can choose to execute a kernel [in many
different ways](https://developer.android.com/guide/topics/renderscript/compute#assume), you must follow certain rules to ensure that your kernel behaves the
way you want. If you do not follow these rules, you may get incorrect results,
nondeterministic behavior, or runtime errors.

The rules below often say that two accumulator data items must have "the
same value". What does this mean? That depends on what you want the kernel to do. For
a mathematical reduction such as [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint), it usually makes sense
for "the same" to mean mathematical equality. For a "pick any" search such
as [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) ("find the location of minimum and
maximum input values") where there might be more than one occurrence of identical input
values, all locations of a given input value must be considered "the same". You could write
a similar kernel to "find the location of *leftmost* minimum and maximum input values"
where (say) a minimum value at location 100 is preferred over an identical minimum value at location
200; for this kernel, "the same" would mean identical *location* , not merely
identical *value* , and the accumulator and combiner functions would have to be
different than those for [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax).
**The initializer function must create an *identity value*.** That is, if *I* and *A* are accumulator data items initialized by the initializer function, and *I* has never been passed to the accumulator function (but *A* may have been), then

- *combinerName* `(&`*A* `, &`*I*`)` must leave *A* [the same](https://developer.android.com/guide/topics/renderscript/compute#the-same)
- *combinerName* `(&`*I* `, &`*A*`)` must leave *I* [the same](https://developer.android.com/guide/topics/renderscript/compute#the-same) as *A*

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint)
kernel, an accumulator data item is initialized to zero. The combiner function for this
kernel performs addition; zero is the identity value for addition.  
**Example:** In the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax)
kernel, an accumulator data item is initialized
to [`INITVAL`](https://developer.android.com/guide/topics/renderscript/compute#INITVAL).

- `fMMCombiner(&`*A* `, &`*I*`)` leaves *A* the same, because *I* is `INITVAL`.
- `fMMCombiner(&`*I* `, &`*A*`)` sets *I* to *A*, because *I* is `INITVAL`.


Therefore, `INITVAL` is indeed an identity value.

**The combiner function must be *commutative*.** That is,
if *A* and *B* are accumulator data items initialized
by the initializer function, and that may have been passed to the accumulator function zero
or more times, then *combinerName* `(&`*A* `, &`*B*`)` must
set *A* to [the same value](https://developer.android.com/guide/topics/renderscript/compute#the-same)
that *combinerName* `(&`*B* `, &`*A*`)`
sets *B*.

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint)
kernel, the combiner function adds the two accumulator data item values; addition is
commutative.  

**Example:** In the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel,
`fMMCombiner(&`*A* `, &`*B*`)` is the same as
*A*` = minmax(`*A* `, `*B*`)`, and `minmax` is commutative, so
`fMMCombiner` is also.

**The combiner function must be *associative*.** That is,
if *A*, *B*, and *C* are
accumulator data items initialized by the initializer function, and that may have been passed
to the accumulator function zero or more times, then the following two code sequences must
set *A* to [the same value](https://developer.android.com/guide/topics/renderscript/compute#the-same):

-

  ```c++
  combinerName(&A, &B);
  combinerName(&A, &C);
  ```
-

  ```c++
  combinerName(&B, &C);
  combinerName(&A, &B);
  ```

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint) kernel, the
combiner function adds the two accumulator data item values:

-

  ```c++
  A = A + B
  A = A + C
  // Same as
  //   A = (A + B) + C
  ```
-

  ```c++
  B = B + C
  A = A + B
  // Same as
  //   A = A + (B + C)
  //   B = B + C
  ```

Addition is associative, and so the combiner function is also.  
**Example:** In the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel,  

```c++
fMMCombiner(&A, &B)
```
is the same as  

```c++
A = minmax(A, B)
```
So the two sequences are

-

  ```c++
  A = minmax(A, B)
  A = minmax(A, C)
  // Same as
  //   A = minmax(minmax(A, B), C)
  ```
-

  ```c++
  B = minmax(B, C)
  A = minmax(A, B)
  // Same as
  //   A = minmax(A, minmax(B, C))
  //   B = minmax(B, C)
  ```


`minmax` is associative, and so `fMMCombiner` is also.

**The accumulator function and combiner function together must obey the *basic
folding rule*.** That is, if *A*
and *B* are accumulator data items, *A* has been
initialized by the initializer function and may have been passed to the accumulator function
zero or more times, *B* has not been initialized, and *args* is
the list of input arguments and special arguments for a particular call to the accumulator
function, then the following two code sequences must set *A*
to [the same value](https://developer.android.com/guide/topics/renderscript/compute#the-same):

-

  ```c++
  accumulatorName(&A, args);  // statement 1
  ```
-

  ```c++
  initializerName(&B);        // statement 2
  accumulatorName(&B, args);  // statement 3
  combinerName(&A, &B);       // statement 4
  ```

**Example:** In the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint) kernel, for an input value *V*:

- Statement 1 is the same as `A += `*V*
- Statement 2 is the same as `B = 0`
- Statement 3 is the same as `B += `*V*, which is the same as `B = `*V*
- Statement 4 is the same as `A += B`, which is the same as `A += `*V*


Statements 1 and 4 set *A* to the same value, and so this kernel obeys the
basic folding rule.  
**Example:** In the [findMinAndMax](https://developer.android.com/guide/topics/renderscript/compute#example-findMinAndMax) kernel, for an input
value *V* at coordinate *X*:

- Statement 1 is the same as `A = minmax(A, IndexedVal(`*V* `, `*X*`))`
- Statement 2 is the same as `B = `[INITVAL](https://developer.android.com/guide/topics/renderscript/compute#INITVAL)
- Statement 3 is the same as  

  ```c++
  B = minmax(B, IndexedVal(V, X))
  ```
  which, because *B* is the initial value, is the same as  

  ```c++
  B = IndexedVal(V, X)
  ```
- Statement 4 is the same as  

  ```c++
  A = minmax(A, B)
  ```
  which is the same as  

  ```c++
  A = minmax(A, IndexedVal(V, X))
  ```


Statements 1 and 4 set *A* to the same value, and so this kernel obeys the
basic folding rule.

### Calling a reduction kernel from Java code

For a reduction kernel named *kernelName* defined in the
file *filename*`.rs`, there are three methods reflected in the
class `ScriptC_`*filename*:  

### Kotlin

```kotlin
// Function 1
fun reduce_kernelName(ain1: Allocation, ...,
                               ainN: Allocation): javaFutureType

// Function 2
fun reduce_kernelName(ain1: Allocation, ...,
                               ainN: Allocation,
                               sc: Script.LaunchOptions): javaFutureType

// Function 3
fun reduce_kernelName(in1: https://developer.android.com/guide/topics/renderscript/compute#devec, ...,
                               inN: https://developer.android.com/guide/topics/renderscript/compute#devec): javaFutureType
```

### Java

```java
// Method 1
public javaFutureType reduce_kernelName(Allocation ain1, ...,
                                        Allocation ainN);

// Method 2
public javaFutureType reduce_kernelName(Allocation ain1, ...,
                                        Allocation ainN,
                                        Script.LaunchOptions sc);

// Method 3
public javaFutureType reduce_kernelName(https://developer.android.com/guide/topics/renderscript/compute#devec[] in1, …,
                                        https://developer.android.com/guide/topics/renderscript/compute#devec[] inN);
```

Here are some examples of calling the [addint](https://developer.android.com/guide/topics/renderscript/compute#example-addint) kernel:  

### Kotlin

```kotlin
val script = ScriptC_example(renderScript)

// 1D array
//   and obtain answer immediately
val input1 = intArrayOf(...)
val sum1: Int = script.reduce_addint(input1).get()  // Method 3

// 2D allocation
//   and do some additional work before obtaining answer
val typeBuilder = Type.Builder(RS, Element.I32(RS)).apply {
    setX(...)
    setY(...)
}
val input2: Allocation = Allocation.createTyped(RS, typeBuilder.create()).also {
    populateSomehow(it) // fill in input Allocation with data
}
val result2: ScriptC_example.result_int = script.reduce_addint(input2)  // Method 1
doSomeAdditionalWork() // might run at same time as reduction
val sum2: Int = result2.get()
```

### Java

```java
ScriptC_example script = new ScriptC_example(renderScript);

// 1D array
//   and obtain answer immediately
int input1[] = ...;
int sum1 = script.reduce_addint(input1).get();  // Method 3

// 2D allocation
//   and do some additional work before obtaining answer
Type.Builder typeBuilder =
  new Type.Builder(RS, Element.I32(RS));
typeBuilder.setX(...);
typeBuilder.setY(...);
Allocation input2 = createTyped(RS, typeBuilder.create());
populateSomehow(input2);  // fill in input Allocation with data
ScriptC_example.result_int result2 = script.reduce_addint(input2);  // Method 1
doSomeAdditionalWork(); // might run at same time as reduction
int sum2 = result2.get();
```

**Method 1** has one input [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) argument for
every input argument in the kernel's [accumulator
function](https://developer.android.com/guide/topics/renderscript/compute#accumulator-function). The RenderScript runtime checks to ensure that all of the input Allocations
have the same dimensions and that the [Element](https://developer.android.com/reference/android/renderscript/Element) type of each of
the input Allocations matches that of the corresponding input argument of the accumulator
function's prototype. If any of these checks fail, RenderScript throws an exception. The
kernel executes over every coordinate in those dimensions.

**Method 2** is the same as Method 1 except that Method 2 takes an additional
argument `sc` that can be used to limit the kernel execution to a subset of the
coordinates.

**Method 3** is the same as Method 1 except that
instead of taking Allocation inputs it takes Java array inputs. This is a convenience that
saves you from having to write code to explicitly create an Allocation and copy data to it
from a Java array. *However, using Method 3 instead of Method 1 does not increase the
performance of the code* . For each input array, Method 3 creates a temporary
1-dimensional Allocation with the appropriate [Element](https://developer.android.com/reference/android/renderscript/Element) type and
[setAutoPadding(boolean)](https://developer.android.com/reference/android/renderscript/Allocation#setAutoPadding(boolean)) enabled, and copies the array to the
Allocation as if by the appropriate `copyFrom()` method of [Allocation](https://developer.android.com/reference/android/renderscript/Allocation). It then calls Method 1, passing those temporary
Allocations.

**NOTE:** If your application will make multiple kernel calls with
the same array, or with different arrays of the same dimensions and Element type, you may improve
performance by explicitly creating, populating, and reusing Allocations yourself, instead of
by using Method 3.

***javaFutureType*** ,
the return type of the reflected reduction methods, is a reflected
static nested class within the `ScriptC_`*filename*
class. It represents the future result of a reduction
kernel run. To obtain the actual result of the run, call
the `get()` method of that class, which returns a value
of type *javaResultType* . `get()` is [synchronous](https://developer.android.com/guide/topics/renderscript/compute#asynchronous-model).  

### Kotlin

```kotlin
class ScriptC_filename(rs: RenderScript) : ScriptC(...) {
    object javaFutureType {
        fun get(): javaResultType { ... }
    }
}
```

### Java

```java
public class ScriptC_filename extends ScriptC {
  public static class javaFutureType {
    public javaResultType get() { ... }
  }
}
```

***javaResultType*** is determined from the *resultType* of the
[outconverter function](https://developer.android.com/guide/topics/renderscript/compute#outconverter-function). Unless *resultType* is an
unsigned type (scalar, vector, or array), *javaResultType* is the directly corresponding
Java type. If *resultType* is an unsigned type and there is a larger Java signed type,
then *javaResultType* is that larger Java signed type; otherwise, it is the directly
corresponding Java type. For example:

- If *resultType* is `int`, `int2`, or `int[15]`, then *javaResultType* is `int`, `Int2`, or `int[]`. All values of *resultType* can be represented by *javaResultType*.
- If *resultType* is `uint`, `uint2`, or `uint[15]`, then *javaResultType* is `long`, `Long2`, or `long[]`. All values of *resultType* can be represented by *javaResultType*.
- If *resultType* is `ulong`, `ulong2`, or `ulong[15]`, then *javaResultType* is `long`, `Long2`, or `long[]`. There are certain values of *resultType* that cannot be represented by *javaResultType*.

***javaFutureType*** is the future result type corresponding
to the *resultType* of the [outconverter
function](https://developer.android.com/guide/topics/renderscript/compute#outconverter-function).

- If *resultType* is not an array type, then *javaFutureType* is `result_`*resultType*.
- If *resultType* is an array of length *Count* with members of type *memberType* , then *javaFutureType* is `resultArray`*Count* `_`*memberType*.

For example:  

### Kotlin

```kotlin
class ScriptC_filename(rs: RenderScript) : ScriptC(...) {

    // for kernels with int result
    object result_int {
        fun get(): Int = …
    }

    // for kernels with int[10] result
    object resultArray10_int {
        fun get(): IntArray = …
    }

    // for kernels with int2 result
    //   note that the Kotlin type name "Int2" is not the same as the script type name "int2"
    object result_int2 {
        fun get(): Int2 = …
    }

    // for kernels with int2[10] result
    //   note that the Kotlin type name "Int2" is not the same as the script type name "int2"
    object resultArray10_int2 {
        fun get(): Array<Int2> = …
    }

    // for kernels with uint result
    //   note that the Kotlin type "long" is a wider signed type than the unsigned script type "uint"
    object result_uint {
        fun get(): Long = …
    }

    // for kernels with uint[10] result
    //   note that the Kotlin type "long" is a wider signed type than the unsigned script type "uint"
    object resultArray10_uint {
        fun get(): LongArray = …
    }

    // for kernels with uint2 result
    //   note that the Kotlin type "Long2" is a wider signed type than the unsigned script type "uint2"
    object result_uint2 {
        fun get(): Long2 = …
    }

    // for kernels with uint2[10] result
    //   note that the Kotlin type "Long2" is a wider signed type than the unsigned script type "uint2"
    object resultArray10_uint2 {
        fun get(): Array<Long2> = …
    }
}
```

### Java

```java
public class ScriptC_filename extends ScriptC {
  // for kernels with int result
  public static class result_int {
    public int get() { ... }
  }

  // for kernels with int[10] result
  public static class resultArray10_int {
    public int[] get() { ... }
  }

  // for kernels with int2 result
  //   note that the Java type name "Int2" is not the same as the script type name "int2"
  public static class result_int2 {
    public Int2 get() { ... }
  }

  // for kernels with int2[10] result
  //   note that the Java type name "Int2" is not the same as the script type name "int2"
  public static class resultArray10_int2 {
    public Int2[] get() { ... }
  }

  // for kernels with uint result
  //   note that the Java type "long" is a wider signed type than the unsigned script type "uint"
  public static class result_uint {
    public long get() { ... }
  }

  // for kernels with uint[10] result
  //   note that the Java type "long" is a wider signed type than the unsigned script type "uint"
  public static class resultArray10_uint {
    public long[] get() { ... }
  }

  // for kernels with uint2 result
  //   note that the Java type "Long2" is a wider signed type than the unsigned script type "uint2"
  public static class result_uint2 {
    public Long2 get() { ... }
  }

  // for kernels with uint2[10] result
  //   note that the Java type "Long2" is a wider signed type than the unsigned script type "uint2"
  public static class resultArray10_uint2 {
    public Long2[] get() { ... }
  }
}
```

If *javaResultType* is an object type (including an array type), each call
to *javaFutureType*`.get()` on the same instance will return the same
object.

If *javaResultType* cannot represent all values of type *resultType* , and a
reduction kernel produces an unrepresentible value,
then *javaFutureType*`.get()` throws an exception.

#### Method 3 and *devecSiInXType*

***devecSiInXType*** is the Java type corresponding to
the *inXType* of the corresponding argument of
the [accumulator function](https://developer.android.com/guide/topics/renderscript/compute#accumulator-function). Unless *inXType* is an
unsigned type or a vector type, *devecSiInXType* is the directly corresponding Java
type. If *inXType* is an unsigned scalar type, then *devecSiInXType* is the
Java type directly corresponding to the signed scalar type of the same
size. If *inXType* is a signed vector type, then *devecSiInXType* is the Java
type directly corresponding to the vector component type. If *inXType* is an unsigned
vector type, then *devecSiInXType* is the Java type directly corresponding to the
signed scalar type of the same size as the vector component type. For example:

- If *inXType* is `int`, then *devecSiInXType* is `int`.
- If *inXType* is `int2`, then *devecSiInXType* is `int`. The array is a *flattened* representation: It has twice as many *scalar* Elements as the Allocation has 2-component *vector* Elements. This is the same way that the `copyFrom()` methods of [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) work.
- If *inXType* is `uint`, then *deviceSiInXType* is `int`. A signed value in the Java array is interpreted as an unsigned value of the same bitpattern in the Allocation. This is the same way that the `copyFrom()` methods of [Allocation](https://developer.android.com/reference/android/renderscript/Allocation) work.
- If *inXType* is `uint2`, then *deviceSiInXType* is `int`. This is a combination of the way `int2` and `uint` are handled: The array is a flattened representation, and Java array signed values are interpreted as RenderScript unsigned Element values.

Note that for [Method 3](https://developer.android.com/guide/topics/renderscript/compute#reduce-method-3), input types are handled differently
than result types:

- A script's vector input is flattened on the Java side, whereas a script's vector result is not.
- A script's unsigned input is represented as a signed input of the same size on the Java side, whereas a script's unsigned result is represented as a widened signed type on the Java side (except in the case of `ulong`).

### More example reduction kernels

```c++
#pragma rs reduce(dotProduct) \
  accumulator(dotProductAccum) combiner(dotProductSum)

// Note: No initializer function -- therefore,
// each accumulator data item is implicitly initialized to 0.0f.

static void dotProductAccum(float *accum, float in1, float in2) {
  *accum += in1*in2;
}

// combiner function
static void dotProductSum(float *accum, const float *val) {
  *accum += *val;
}
```  

```c++
// Find a zero Element in a 2D allocation; return (-1, -1) if none
#pragma rs reduce(fz2) \
  initializer(fz2Init) \
  accumulator(fz2Accum) combiner(fz2Combine)

static void fz2Init(int2 *accum) { accum->x = accum->y = -1; }

static void fz2Accum(int2 *accum,
                     int inVal,
                     int x /* special arg */,
                     int y /* special arg */) {
  if (inVal==0) {
    accum->x = x;
    accum->y = y;
  }
}

static void fz2Combine(int2 *accum, const int2 *accum2) {
  if (accum2->x >= 0) *accum = *accum2;
}
```  

```c++
// Note that this kernel returns an array to Java
#pragma rs reduce(histogram) \
  accumulator(hsgAccum) combiner(hsgCombine)

#define BUCKETS 256
typedef uint32_t Histogram[BUCKETS];

// Note: No initializer function --
// therefore, each bucket is implicitly initialized to 0.

static void hsgAccum(Histogram *h, uchar in) { ++(*h)[in]; }

static void hsgCombine(Histogram *accum,
                       const Histogram *addend) {
  for (int i = 0; i < BUCKETS; ++i)
    (*accum)[i] += (*addend)[i];
}

// Determines the mode (most frequently occurring value), and returns
// the value and the frequency.
//
// If multiple values have the same highest frequency, returns the lowest
// of those values.
//
// Shares functions with the histogram reduction kernel.
#pragma rs reduce(mode) \
  accumulator(hsgAccum) combiner(hsgCombine) \
  outconverter(modeOutConvert)

static void modeOutConvert(int2 *result, const Histogram *h) {
  uint32_t mode = 0;
  for (int i = 1; i < BUCKETS; ++i)
    if ((*h)[i] > (*h)[mode]) mode = i;
  result->x = mode;
  result->y = (*h)[mode];
}
```

## Additional code samples

The [BasicRenderScript](https://github.com/android/renderscript-samples/tree/main/BasicRenderScript/),
[RenderScriptIntrinsic](https://github.com/android/renderscript-samples/tree/main/RenderScriptIntrinsic/),
and [Hello Compute](https://github.com/aosp-mirror/platform_development/tree/master/samples/RenderScript/HelloCompute)
samples further demonstrate the use of the APIs covered on this page.