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Sunday, May 17, 2026

Widespread media processing operations with Jetpack Media3 Transformer



Posted by Nevin Mital – Developer Relations Engineer, and Kristina Simakova – Engineering Supervisor

Android customers have demonstrated an growing want to create, personalize, and share video content material on-line, whether or not to protect their reminiscences or to make individuals snigger. As such, media modifying is a cornerstone of many partaking Android apps, and traditionally builders have typically relied on exterior libraries to deal with operations corresponding to Trimming and Resizing. Whereas these options are highly effective, integrating and managing exterior library dependencies can introduce complexity and result in challenges with managing efficiency and high quality.

The Jetpack Media3 Transformer APIs supply a local Android resolution that streamline media modifying with quick efficiency, in depth customizability, and broad system compatibility. On this weblog put up, we’ll stroll by way of a few of the commonest modifying operations with Transformer and talk about its efficiency.

Getting arrange with Transformer

To get began with Transformer, take a look at our Getting Began documentation for particulars on tips on how to add the dependency to your challenge and a fundamental understanding of the workflow when utilizing Transformer. In a nutshell, you’ll:

    • Create one or many MediaItem situations out of your video file(s), then
    • Apply item-specific edits to them by constructing an EditedMediaItem for every MediaItem,
    • Create a Transformer occasion configured with settings relevant to the entire exported video,
    • and eventually begin the export to save lots of your utilized edits to a file.

Apart: You may as well use a CompositionPlayer to preview your edits earlier than exporting, however that is out of scope for this weblog put up, as this API remains to be a piece in progress. Please keep tuned for a future put up!

Right here’s what this seems to be like in code:

val mediaItem = MediaItem.Builder().setUri(mediaItemUri).construct()
val editedMediaItem = EditedMediaItem.Builder(mediaItem).construct()
val transformer = 
  Transformer.Builder(context)
    .addListener(/* Add a Transformer.Listener occasion right here for completion occasions */)
    .construct()
transformer.begin(editedMediaItem, outputFilePath)

Transcoding, Trimming, Muting, and Resizing with the Transformer API

Let’s now check out 4 of the most typical single-asset media modifying operations, beginning with Transcoding.

Transcoding is the method of re-encoding an enter file right into a specified output format. For this instance, we’ll request the output to have video in HEVC (H265) and audio in AAC. Beginning with the code above, listed below are the traces that change:

val transformer = 
  Transformer.Builder(context)
    .addListener(...)
    .setVideoMimeType(MimeTypes.VIDEO_H265)
    .setAudioMimeType(MimeTypes.AUDIO_AAC)
    .construct()

Lots of chances are you’ll already be conversant in FFmpeg, a preferred open-source library for processing media information, so we’ll additionally embrace FFmpeg instructions for every instance to function a useful reference. Right here’s how one can carry out the identical transcoding with FFmpeg:

$ ffmpeg -i $inputVideoPath -c:v libx265 -c:a aac $outputFilePath

The following operation we’ll strive is Trimming.

Particularly, we’ll set Transformer as much as trim the enter video from the three second mark to the 8 second mark, leading to a 5 second output video. Beginning once more from the code within the “Getting arrange” part above, listed below are the traces that change:

// Configure the trim operation by including a ClippingConfiguration to
// the media merchandise
val clippingConfiguration =
   MediaItem.ClippingConfiguration.Builder()
     .setStartPositionMs(3000)
     .setEndPositionMs(8000)
     .construct()
val mediaItem =
   MediaItem.Builder()
     .setUri(mediaItemUri)
     .setClippingConfiguration(clippingConfiguration)
     .construct()

// Transformer additionally has a trim optimization characteristic we will allow.
// It will prioritize Transmuxing over Transcoding the place potential.
// See extra about Transmuxing additional down on this put up.
val transformer = 
  Transformer.Builder(context)
    .addListener(...)
    .experimentalSetTrimOptimizationEnabled(true)
    .construct()

With FFmpeg:

$ ffmpeg -ss 00:00:03 -i $inputVideoPath -t 00:00:05 $outputFilePath

Subsequent, we will mute the audio within the exported video file.

val editedMediaItem = 
  EditedMediaItem.Builder(mediaItem)
    .setRemoveAudio(true)
    .construct()

The corresponding FFmpeg command:

$ ffmpeg -i $inputVideoPath -c copy -an $outputFilePath

And for our ultimate instance, we’ll strive resizing the enter video by scaling it right down to half its unique peak and width.

val scaleEffect = 
  ScaleAndRotateTransformation.Builder()
    .setScale(0.5f, 0.5f)
    .construct()
val editedMediaItem =
  EditedMediaItem.Builder(mediaItem)
    .setEffects(
      /* audio */ Results(emptyList(), 
      /* video */ listOf(scaleEffect))
    )
    .construct()

An FFmpeg command may seem like this:

$ ffmpeg -i $inputVideoPath -filter:v scale=w=trunc(iw/4)*2:h=trunc(ih/4)*2 $outputFilePath

After all, you can too mix these operations to use a number of edits on the identical video, however hopefully these examples serve to reveal that the Transformer APIs make configuring these edits easy.

Transformer API Efficiency outcomes

Listed below are some benchmarking measurements for every of the 4 operations taken with the Stopwatch API, operating on a Pixel 9 Professional XL system:

(Be aware that efficiency for operations like these can depend upon quite a lot of causes, corresponding to the present load the system is below, so the numbers under ought to be taken as tough estimates.)

Enter video format: 10s 720p H264 video with AAC audio

  • Transcoding to H265 video and AAC audio: ~1300ms
  • Trimming video to 00:03-00:08: ~2300ms
  • Muting audio: ~200ms
  • Resizing video to half peak and width: ~1200ms

Enter video format: 25s 360p VP8 video with Vorbis audio

  • Transcoding to H265 video and AAC audio: ~3400ms
  • Trimming video to 00:03-00:08: ~1700ms
  • Muting audio: ~1600ms
  • Resizing video to half peak and width: ~4800ms

Enter video format: 4s 8k H265 video with AAC audio

  • Transcoding to H265 video and AAC audio: ~2300ms
  • Trimming video to 00:03-00:08: ~1800ms
  • Muting audio: ~2000ms
  • Resizing video to half peak and width: ~3700ms

One method Transformer makes use of to hurry up modifying operations is by prioritizing transmuxing for fundamental video edits the place potential. Transmuxing refers back to the means of repackaging video streams with out re-encoding, which ensures high-quality output and considerably quicker processing occasions.

When not potential, Transformer falls again to transcoding, a course of that entails first decoding video samples into uncooked information, then re-encoding them for storage in a brand new container. Listed below are a few of these variations:

Transmuxing

    • Transformer’s most well-liked strategy when potential – a fast transformation that preserves elementary streams.
    • Solely relevant to fundamental operations, corresponding to rotating, trimming, or container conversion.
    • No high quality loss or bitrate change.

Transmux

Transcoding

    • Transformer’s fallback strategy in instances when Transmuxing is not potential – Entails decoding and re-encoding elementary streams.
    • Extra in depth modifications to the enter video are potential.
    • Loss in high quality on account of re-encoding, however can obtain a desired bitrate goal.

Transcode

We’re constantly implementing additional optimizations, such because the just lately launched experimentalSetTrimOptimizationEnabled setting that we used within the Trimming instance above.

A trim is normally carried out by re-encoding all of the samples within the file, however since encoded media samples are saved chronologically of their container, we will enhance effectivity by solely re-encoding the group of images (GOP) between the beginning level of the trim and the primary keyframes at/after the beginning level, then stream-copying the remaining.

Since we solely decode and encode a set portion of any file, the encoding latency is roughly fixed, no matter what the enter video length is. For lengthy movies, this improved latency is dramatic. The optimization depends on having the ability to sew a part of the enter file with newly-encoded output, which implies that the encoder’s output format and the enter format should be suitable.

If the optimization fails, Transformer robotically falls again to regular export.

What’s subsequent?

As a part of Media3, Transformer is a local resolution with low integration complexity, is examined on and ensures compatibility with all kinds of units, and is customizable to suit your particular wants.

To dive deeper, you’ll be able to discover Media3 Transformer documentation, run our pattern apps, or learn to complement your media modifying pipeline with Jetpack Media3. We’ve already seen app builders profit drastically from adopting Transformer, so we encourage you to strive them out your self to streamline your media modifying workflows and improve your app’s efficiency!

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