{"id":265,"url":"https://github.com/margaretmz/awesome-tensorflow-lite","last_synced_at":"2025-10-05T12:32:22.250Z","repository":{"id":39997744,"uuid":"237012805","full_name":"margaretmz/awesome-tensorflow-lite","owner":"margaretmz","description":"An awesome list of TensorFlow Lite models, samples, tutorials, tools and learning resources.","archived":false,"fork":false,"pushed_at":"2022-03-01T02:42:46.000Z","size":12221,"stargazers_count":1333,"open_issues_count":0,"forks_count":184,"subscribers_count":63,"default_branch":"main","last_synced_at":"2025-09-28T10:02:12.633Z","etag":null,"topics":["android","awesome","awesome-list","computer-vision","deep-learning","flutter","ios","keras-tutorials","mediapipe","mlkit","mobile","model-zoo","sample-app","tensorflow","tensorflow-keras","tensorflow-lite","tensorflow-models","tfhub","tflite","tflite-models"],"latest_commit_sha":null,"homepage":"","language":null,"has_issues":true,"has_wiki":null,"has_pages":null,"mirror_url":null,"source_name":null,"license":"apache-2.0","status":null,"scm":"git","pull_requests_enabled":true,"icon_url":"https://github.com/margaretmz.png","metadata":{"files":{"readme":"README.md","changelog":null,"contributing":"CONTRIBUTING.md","funding":null,"license":"LICENSE","code_of_conduct":null,"threat_model":null,"audit":null,"citation":null,"codeowners":null,"security":null,"support":null}},"created_at":"2020-01-29T15:15:22.000Z","updated_at":"2025-09-26T08:03:52.000Z","dependencies_parsed_at":"2022-07-18T12:19:10.390Z","dependency_job_id":null,"html_url":"https://github.com/margaretmz/awesome-tensorflow-lite","commit_stats":null,"previous_names":["margaretmz/awesome-tflite"],"tags_count":0,"template":false,"template_full_name":null,"purl":"pkg:github/margaretmz/awesome-tensorflow-lite","repository_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/margaretmz%2Fawesome-tensorflow-lite","tags_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/margaretmz%2Fawesome-tensorflow-lite/tags","releases_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/margaretmz%2Fawesome-tensorflow-lite/releases","manifests_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/margaretmz%2Fawesome-tensorflow-lite/manifests","owner_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/owners/margaretmz","download_url":"https://codeload.github.com/margaretmz/awesome-tensorflow-lite/tar.gz/refs/heads/main","sbom_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/margaretmz%2Fawesome-tensorflow-lite/sbom","scorecard":{"id":618837,"data":{"date":"2025-08-11","repo":{"name":"github.com/margaretmz/awesome-tensorflow-lite","commit":"d20e763afa1912a82056a75f2a97fa1d97c10e79"},"scorecard":{"version":"v5.2.1-40-gf6ed084d","commit":"f6ed084d17c9236477efd66e5b258b9d4cc7b389"},"score":3.6,"checks":[{"name":"Token-Permissions","score":-1,"reason":"No tokens found","details":null,"documentation":{"short":"Determines if the project's workflows follow the principle of least privilege.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#token-permissions"}},{"name":"Code-Review","score":4,"reason":"Found 7/16 approved changesets -- score normalized to 4","details":null,"documentation":{"short":"Determines if the project requires human code review before pull requests (aka merge requests) are merged.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#code-review"}},{"name":"Packaging","score":-1,"reason":"packaging workflow not detected","details":["Warn: no GitHub/GitLab publishing workflow detected."],"documentation":{"short":"Determines if the project is published as a package that others can easily download, install, easily update, and uninstall.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#packaging"}},{"name":"Binary-Artifacts","score":10,"reason":"no binaries found in the repo","details":null,"documentation":{"short":"Determines if the project has generated executable (binary) artifacts in the source repository.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#binary-artifacts"}},{"name":"Dangerous-Workflow","score":-1,"reason":"no workflows found","details":null,"documentation":{"short":"Determines if the project's GitHub Action workflows avoid dangerous patterns.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#dangerous-workflow"}},{"name":"Maintained","score":0,"reason":"0 commit(s) and 0 issue activity found in the last 90 days -- score normalized to 0","details":null,"documentation":{"short":"Determines if the project is \"actively maintained\".","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#maintained"}},{"name":"Pinned-Dependencies","score":-1,"reason":"no dependencies found","details":null,"documentation":{"short":"Determines if the project has declared and pinned the dependencies of its build process.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#pinned-dependencies"}},{"name":"CII-Best-Practices","score":0,"reason":"no effort to earn an OpenSSF best practices badge detected","details":null,"documentation":{"short":"Determines if the project has an OpenSSF (formerly CII) Best Practices Badge.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#cii-best-practices"}},{"name":"Security-Policy","score":0,"reason":"security policy file not detected","details":["Warn: no security policy file detected","Warn: no security file to analyze","Warn: no security file to analyze","Warn: no security file to analyze"],"documentation":{"short":"Determines if the project has published a security policy.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#security-policy"}},{"name":"Fuzzing","score":0,"reason":"project is not fuzzed","details":["Warn: no fuzzer integrations found"],"documentation":{"short":"Determines if the project uses fuzzing.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#fuzzing"}},{"name":"License","score":10,"reason":"license file detected","details":["Info: project has a license file: LICENSE:0","Info: FSF or OSI recognized license: Apache License 2.0: LICENSE:0"],"documentation":{"short":"Determines if the project has defined a license.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#license"}},{"name":"Vulnerabilities","score":10,"reason":"0 existing vulnerabilities detected","details":null,"documentation":{"short":"Determines if the project has open, known unfixed vulnerabilities.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#vulnerabilities"}},{"name":"Signed-Releases","score":-1,"reason":"no releases found","details":null,"documentation":{"short":"Determines if the project cryptographically signs release artifacts.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#signed-releases"}},{"name":"Branch-Protection","score":0,"reason":"branch protection not enabled on development/release branches","details":["Warn: branch protection not enabled for branch 'main'"],"documentation":{"short":"Determines if the default and release branches are protected with GitHub's branch protection settings.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#branch-protection"}},{"name":"SAST","score":0,"reason":"SAST tool is not run on all commits -- score normalized to 0","details":["Warn: 0 commits out of 21 are checked with a SAST tool"],"documentation":{"short":"Determines if the project uses static code analysis.","url":"https://github.com/ossf/scorecard/blob/f6ed084d17c9236477efd66e5b258b9d4cc7b389/docs/checks.md#sast"}}]},"last_synced_at":"2025-08-21T04:43:27.960Z","repository_id":39997744,"created_at":"2025-08-21T04:43:27.960Z","updated_at":"2025-08-21T04:43:27.960Z"},"host":{"name":"GitHub","url":"https://github.com","kind":"github","repositories_count":277542374,"owners_count":25836109,"icon_url":"https://github.com/github.png","version":null,"created_at":"2022-05-30T11:31:42.601Z","updated_at":"2022-07-04T15:15:14.044Z","status":"online","status_checked_at":"2025-09-29T02:00:09.175Z","response_time":84,"last_error":null,"robots_txt_status":"success","robots_txt_updated_at":"2025-07-24T06:49:26.215Z","robots_txt_url":"https://github.com/robots.txt","online":true,"can_crawl_api":true,"host_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub","repositories_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories","repository_names_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repository_names","owners_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/owners"}},"keywords":["android","awesome","awesome-list","computer-vision","deep-learning","flutter","ios","keras-tutorials","mediapipe","mlkit","mobile","model-zoo","sample-app","tensorflow","tensorflow-keras","tensorflow-lite","tensorflow-models","tfhub","tflite","tflite-models"],"created_at":"2024-01-05T20:12:50.509Z","updated_at":"2025-10-05T12:32:21.851Z","avatar_url":"https://github.com/margaretmz.png","language":null,"funding_links":[],"categories":["Data Science","Computer Science","Uncategorized","Others","Live Site:   [searchAwesome](https://search-awesome.vercel.app/)","**Other Insightful Lists**","Other Lists","Themed Directories"],"sub_categories":["Uncategorized","TeX Lists","Updated more than a year ago"],"readme":"\u003cp align=\"center\"\u003e\n    \u003cimg src=\"images/awesome-tflite.png\" alt=\"awesome tflite\" width=\"500\"\u003e\n\u003c/p\u003e\n\n\u003c!-- omit in toc --\u003e\n# Awesome TensorFlow Lite [![Awesome](https://awesome.re/badge.svg)](https://awesome.re) [![PRs Welcome](https://img.shields.io/badge/PRs-welcome-brightgreen.svg?style=flat-square)](http://makeapullrequest.com) [![Twitter](https://img.shields.io/badge/Twitter-%40margaretmz-blue)](https://twitter.com/margaretmz)\n\n[TensorFlow Lite](https://www.tensorflow.org/lite) is a set of tools that help convert and optimize TensorFlow models to run on mobile and edge devices. It's currently running on more than 4 billion devices! With TensorFlow 2.x, you can train a model with tf.Keras, easily convert a model to .tflite and deploy it; or you can download a pretrained TensorFlow Lite model from the model zoo.\n\nThis is an awesome list of TensorFlow Lite models with sample apps, helpful tools and learning resources -\n* Showcase what the community has built with TensorFlow Lite\n* Put all the samples side-by-side for easy reference\n* Share knowledge and learning resources\n\nPlease submit a PR if you would like to contribute and follow the guidelines [here](CONTRIBUTING.md).\n\n\u003c!-- omit in toc --\u003e\n ## Contents\n- [Past announcements:](#past-announcements)\n- [Models with samples](#models-with-samples)\n  - [Computer vision](#computer-vision)\n    - [Classification](#classification)\n    - [Detection](#detection)\n    - [Segmentation](#segmentation)\n    - [Style Transfer](#style-transfer)\n    - [Generative](#generative)\n    - [Post estimation](#post-estimation)\n    - [Other](#other)\n  - [Text](#text)\n  - [Speech](#speech)\n  - [Recommendation](#recommendation)\n  - [Game](#game)\n- [Model zoo](#model-zoo)\n  - [TensorFlow Lite models](#tensorflow-lite-models)\n  - [TensorFlow models](#tensorflow-models)\n- [Ideas and Inspiration](#ideas-and-inspiration)\n- [ML Kit examples](#ml-kit-examples)\n- [Plugins and SDKs](#plugins-and-sdks)\n- [Helpful links](#helpful-links)\n- [Learning resources](#learning-resources)\n  - [Blog posts](#blog-posts)\n  - [Books](#books)\n  - [Videos](#videos)\n  - [Podcasts](#podcasts)\n  - [MOOCs](#moocs)\n\n## Past announcements:\nHere are some past feature annoucements of TensorFlow Lite:\n* [Announcement of the new converter](https://groups.google.com/a/tensorflow.org/d/msg/tflite/Z_h7706dt8Q/sNrjPj4yGgAJ) - [MLIR](https://medium.com/tensorflow/mlir-a-new-intermediate-representation-and-compiler-framework-beba999ed18d)-based and enables conversion of new classes of models such as Mask R-CNN and Mobile BERT etc., supports functional control flow and better error handling during conversion. Enabled by default in the nightly builds\\.\n* [Android Support Library](https://github.com/tensorflow/tflite-support/tree/master/tensorflow_lite_support/java) - Makes mobile development easier ([Android](https://github.com/tensorflow/examples/blob/master/lite/examples/image_classification/android/EXPLORE_THE_CODE.md) sample code).\n* [Model Maker](https://www.tensorflow.org/lite/guide/model_maker) - Create your custom [image \u0026 text](https://github.com/tensorflow/examples/tree/master/tensorflow_examples/lite/model_maker) classification models easily in a few lines of code. See below the Icon Classifier for a tutorial by the community.\n* [On-device training](https://blog.tensorflow.org/2019/12/example-on-device-model-personalization.html) - It is finally here! Currently limited to transfer learning for image classification only but it's a great start. See the official [Android](https://github.com/tensorflow/examples/blob/master/lite/examples/model_personalization/README.md) sample code and another one from the community ([Blog](https://aqibsaeed.github.io/on-device-activity-recognition) | [Android](https://github.com/aqibsaeed/on-device-activity-recognition)).\n* [Hexagon delegate](https://github.com/tensorflow/tensorflow/blob/master/tensorflow/lite/g3doc/performance/hexagon_delegate.md) - How to use the Hexagon Delegate to speed up model inference on mobile and edge devices. Also see blog post  [Accelerating TensorFlow Lite on Qualcomm Hexagon DSPs](https://blog.tensorflow.org/2019/12/accelerating-tensorflow-lite-on-qualcomm.html).\n* [Model Metadata](https://www.tensorflow.org/lite/convert/metadata) - Provides a standard for model descriptions which also enables [Code Gen and Android Studio ML Model Binding](https://www.tensorflow.org/lite/inference_with_metadata/codegen).\n\n## Models with samples\nHere are the TensorFlow Lite models with app / device implementations, and references.\nNote: pretrained TensorFlow Lite models from MediaPipe are included, which you can implement with or without MediaPipe.\n\n### Computer vision\n\n#### Classification\n\n| Task                            | Model                                                                                                                                                             | App \\| Reference                                                                                                                                                                                                                                                                                                                                                                                                       | Source             |\n| ------------------------------- |-------------------------------------------------------------------------------------------------------------------------------------------------------------------| ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------       | -------------------|\n| Classification                  | MobileNetV1 ([download](https://storage.googleapis.com/download.tensorflow.org/models/tflite/mobilenet_v1_1.0_224_quant_and_labels.zip))                          | [Android](https://github.com/tensorflow/examples/tree/master/lite/examples/image_classification/android) \\| [iOS](https://github.com/tensorflow/examples/tree/master/lite/examples/image_classification/ios) \\| [Raspberry Pi](https://github.com/tensorflow/examples/tree/master/lite/examples/image_classification/raspberry_pi) \\| [Overview](https://www.tensorflow.org/lite/models/image_classification/overview) | tensorflow.org     |\n| Classification                  | MobileNetV2                                                                                                                                                       | Recognize Flowers on Android [Codelab](https://codelabs.developers.google.com/codelabs/recognize-flowers-with-tensorflow-on-android/#0) \\| [Android](https://github.com/tensorflow/examples/tree/master/lite/codelabs/flower_classification/android)                                                                                                                                                                   | TensorFlow team    |\n| Classification                  | MobileNetV2                                                                                                                                                       | Skin Lesion Detection [Android](https://github.com/AakashKumarNain/skin_cancer_detection/tree/master/demo)                                                                                                                                                                                                                                                                                                             | Community          |\n| Classification                  | MobileNetV2                                                                                                                                                       | American Sign Language Detection \\| [Colab Notebook](https://colab.research.google.com/drive/1xsunX7Qj_XWBZwcZLyjsKBg4RI0DNo2-?usp=sharing) \\| [Android](https://github.com/sayannath/American-Sign-Language-Detection)                                                                                                                                                                                                                                                                                                       | Community          |\n| Classification                  | CNN + Quantisation Aware Training                                                                                                                                                       | Stone Paper Scissor Detection [Colab Notebook](https://colab.research.google.com/drive/1Wdso2N_76E8Xxniqd4C6T1sV5BuhKN1o?usp=sharing) \\| [Flutter](https://github.com/sayannath/American-Sign-Language-Detection)                                                                                                                                                                                                                                                                                                            | Community          |\n| Classification                  | EfficientNet-Lite0 ([download](https://github.com/margaretmz/icon-classifier/blob/master/ml-code/icons-50.tflite))                                                | Icon Classifier [Colab \u0026 Android](https://github.com/margaretmz/icon-classifier) \\| [tutorial 1](https://medium.com/swlh/icon-classifier-with-tflite-model-maker-9263c0021f72) \\| [tutorial 2](https://medium.com/@margaretmz/icon-classifier-android-app-1fc0b727f761)                                                                                                                                                | Community          |\n\n#### Detection\n| Task | Model | App \\| Reference | Source |\n| -|-|-|-|\n| Object detection                | Quantized COCO SSD MobileNet v1 ([download](https://storage.googleapis.com/download.tensorflow.org/models/tflite/coco_ssd_mobilenet_v1_1.0_quant_2018_06_29.zip)) | [Android](https://github.com/tensorflow/examples/tree/master/lite/examples/object_detection/android) \\| [iOS](https://github.com/tensorflow/examples/tree/master/lite/examples/object_detection/ios) \\| [Overview](https://www.tensorflow.org/lite/models/object_detection/overview#starter_model)                                                                                                                     | tensorflow.org     |\n| Object detection                | YOLO                                                                                                                                                              | [Flutter](https://blog.francium.tech/real-time-object-detection-on-mobile-with-flutter-tensorflow-lite-and-yolo-android-part-a0042c9b62c6) \\| [Paper](https://arxiv.org/abs/1506.02640)    | Community          |\n| Object detection                             | [YOLOv5](https://tfhub.dev/neso613/lite-model/yolo-v5-tflite/tflite_model/1)     | [Yolov5 Inference ](https://github.com/neso613/yolo-v5-tflite-model)  | Community   |\n| Object detection                | MobileNetV2 SSD ([download](https://github.com/google/mediapipe/tree/master/mediapipe/models/ssdlite_object_detection.tflite))                                    | [Reference](https://github.com/google/mediapipe/blob/master/mediapipe/models/object_detection_saved_model/README.md)                                                                                                                                                                                                                                                                                                   | MediaPipe          |\n| Object detection                | MobileDet ([Paper](https://arxiv.org/abs/2004.14525))                                    | [Blog post (includes the TFLite conversion process)](https://sayak.dev/mobiledet-optimization/)                                                                                                                                                                                                                                                                                                   | MobileDet is from University of Wisconsin-Madison and Google and the blog post is from the Community          |\n| License Plate detection         | SSD MobileNet [(download)](https://github.com/ariG23498/Flutter-License/blob/master/assets/detect.tflite)                                                         | [Flutter](https://github.com/ariG23498/Flutter-License)                                                                                                                                                                                                                                                                                                                                                                | Community          |\n| Face detection                  | BlazeFace ([download](https://github.com/google/mediapipe/tree/master/mediapipe/models/face_detection_front.tflite))                                              | [Paper](https://sites.google.com/corp/view/perception-cv4arvr/blazeface)                                                                                                                                                                                                                                                                                                                                               | MediaPipe          |\n| Face Authentication                  | [FaceNet](https://arxiv.org/pdf/1503.03832.pdf)                                            | [Flutter](https://github.com/sayannath/Face-Authentication-App)                                                                                                                                                                                                                                                                                                                                               | Community          |\n| Hand detection \u0026 tracking       | Palm detection \u0026 hand landmarks ([download](https://github.com/google/mediapipe/tree/master/mediapipe/models#hand-detection-and-tracking))                        | [Blog post](https://mediapipe.page.link/handgoogleaiblog) \\| [Model card](https://mediapipe.page.link/handmc) \\|  [Android](https://github.com/supremetech/mediapipe-demo-hand-detection)                                                                                                                                                                                                                                                                                                         | MediaPipe \u0026 Community         |\n\n#### Segmentation\n| Task | Model | App \\| Reference | Source |\n| -|-|-|-|\n| Segmentation                    | DeepLab V3 ([download](https://storage.googleapis.com/download.tensorflow.org/models/tflite/gpu/deeplabv3_257_mv_gpu.tflite))                                     | [Android \u0026 iOS](https://github.com/tensorflow/examples/tree/master/lite/examples/image_segmentation/) \\| [Overview](https://www.tensorflow.org/lite/models/segmentation/overview) \\| Flutter [Image](https://github.com/kshitizrimal/Flutter-TFLite-Image-Segmentation) \\| [Realtime](https://github.com/kshitizrimal/tflite-realtime-flutter) \\| [Paper](https://arxiv.org/abs/1706.05587)                            | tf.org \u0026 Community |\n| Segmentation                    | Different variants of [DeepLab V3 models](https://github.com/tensorflow/models/blob/master/research/deeplab/g3doc/model_zoo.md)                                   |  Models on [TF Hub](https://tfhub.dev/s?module-type=image-segmentation\u0026publisher=sayakpaul) with Colab Notebooks                                                                                                                                                                                                                                                                                                       | Community          |\n| Segmentation                    | [DeepLab V3 model](https://tfhub.dev/tensorflow/lite-model/deeplabv3/1/metadata/2?lite-format=tflite)                                   |  [Android](https://github.com/farmaker47/Update_image_segmentation) \\| [Tutorial](https://farmaker47.medium.com/use-camerax-with-image-segmentation-android-project-d8656f35cea3)                                                                                                                                                                                                                                                                                                      | Community          |\n| Hair Segmentation               | [Download](https://github.com/google/mediapipe/tree/master/mediapipe/models/hair_segmentation.tflite)                                                             | [Paper](https://sites.google.com/corp/view/perception-cv4arvr/hair-segmentation)                                                                                                                                                                                                                                                                                                                                       | MediaPipe          |\n\n#### Style Transfer\n| Task | Model | App \\| Reference | Source |\n| -|-|-|-|\n| Style transfer                  | [Arbitrary image stylization](https://github.com/tensorflow/magenta/tree/master/magenta/models/arbitrary_image_stylization)                                       | [Overview](https://www.tensorflow.org/lite/models/style_transfer/overview) \\| [Android](https://github.com/tensorflow/examples/tree/master/lite/examples/style_transfer/android) \\| [Flutter](https://github.com/PuzzleLeaf/flutter_tflite_style_transfer)                                                                                                                                                             | tf.org \u0026 Community |\n| Style transfer                  | Better-quality style transfer models in .tflite                                                                                                                   |  Models on [TF Hub](https://tfhub.dev/sayakpaul/lite-model/arbitrary-image-stylization-inceptionv3/dr/predict/1) with Colab Notebooks                                                                                                                                                                                                                                                                                  | Community          |\n| Video Style Transfer            | Download: \u003cbr\u003e [Dynamic range models](https://tfhub.dev/sayakpaul/lite-model/arbitrary-image-stylization-inceptionv3-dynamic-shapes/dr/transfer/1))               | [Android](https://github.com/farmaker47/video_style_transfer) \\| [Tutorial](https://medium.com/@farmaker47/android-implementation-of-video-style-transfer-with-tensorflow-lite-models-9338a6d2a3ea)                                                                                                                                                                                                                    | Community          |\n| Segmentation \u0026 Style transfer   | DeepLabV3 \u0026 Style Transfer [models](https://github.com/margaretmz/segmentation-style-transfer/tree/master/ml)                                                     | [Project repo](https://github.com/margaretmz/segmentation-style-transfer)  \\| [Android](https://github.com/margaretmz/segmentation-style-transfer/tree/master/android) \\| [Tutorial](https://medium.com/google-developer-experts/image-background-stylizer-part-1-project-intro-d68c4547e7e3)                                                                                                                          | Community          |\n#### Generative\n| Task | Model | App \\| Reference | Source |\n| -|-|-|-|\n| GANs                            | [U-GAT-IT](https://github.com/taki0112/UGATIT) (Selfie2Anime)                                                                                                     | [Project repo](https://github.com/margaretmz/selfie2anime-with-tflite) \\| [Android](https://github.com/margaretmz/selfie2anime-with-tflite/tree/master/android) \\| [Tutorial](https://medium.com/google-developer-experts/selfie2anime-with-tflite-part-1-overview-f97500800ffe)                                                                                                                                       | Community          |\n| GANs                            | [White-box CartoonGAN](https://github.com/SystemErrorWang/White-box-Cartoonization) ([download](https://tfhub.dev/sayakpaul/lite-model/cartoongan/dr/1))          | [Project repo](https://github.com/margaretmz/Cartoonizer-with-TFLite) \\| [Android](https://github.com/margaretmz/Cartoonizer-with-TFLite/tree/master/android) \\| [Tutorial](https://blog.tensorflow.org/2020/09/how-to-create-cartoonizer-with-tf-lite.html)                                                                                                                                                           | Community          |\n| GANs - Image Extrapolation | Boundless on [TF Hub](https://tfhub.dev/sayakpaul/lite-model/boundless-quarter/dr/1)                                                     | [Colab Notebook](https://colab.research.google.com/github/sayakpaul/Adventures-in-TensorFlow-Lite/blob/master/Boundless_TFLite.ipynb)  \\| [Original Paper](https://arxiv.org/pdf/2003.06792v2.pdf)                                                                                                                           | Community          |\n#### Post estimation\n| Task | Model | App \\| Reference | Source |\n| -|-|-|-|\n| Pose estimation                 | Posenet ([download](https://storage.googleapis.com/download.tensorflow.org/models/tflite/posenet_mobilenet_v1_100_257x257_multi_kpt_stripped.tflite))             | [Android](https://github.com/tensorflow/examples/tree/master/lite/examples/posenet/android) \\| [iOS](https://github.com/tensorflow/examples/tree/master/lite/examples/posenet/ios) \\| [Overview](https://www.tensorflow.org/lite/models/pose_estimation/overview)                                                                                                                                                      | tensorflow.org     |\n| Pose Classification based Video Game Control             | MoveNet Lightning ([download](https://github.com/NSTiwari/Video-Game-Control-using-Pose-Classification-and-TensorFlow-Lite/blob/main/movenet_lightning.tflite))             | [Project Repository](https://github.com/NSTiwari/Video-Game-Control-using-Pose-Classification-and-TensorFlow-Lite)                                                                                                                                               | Community     |\n\n\n#### Other\n| Task | Model | App \\| Reference | Source |\n| -|-|-|-|\n| Low-light image enhancement   | [Models on TF Hub](https://tfhub.dev/sayakpaul/mirnet-fixed/1)                                                     | [Project repo](https://github.com/sayakpaul/MIRNet-TFLite)  \\| [Original Paper](https://arxiv.org/pdf/2003.06792v2.pdf) \\| [Flutter](https://github.com/sayannath/MIRNet-Flutter)|                                                                                                                           | Community          |\n| OCR                             |[Models on TF Hub](https://tfhub.dev/tulasiram58827/lite-model/keras-ocr/dr/2)     | [Project Repository](https://github.com/tulasiram58827/ocr_tflite)  | Community\n\n\n### Text\n| Task                | Model                                                                                                                           | Sample apps                                                                                                                                                                                                                                       | Source             |\n| ------------------- |---------------------------------------------------------------------------------------------------------------------------------| ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | ------------------ |\n| Question \u0026 Answer   | DistilBERT                                                                                                                      | [Android](https://github.com/huggingface/tflite-android-transformers/blob/master/bert)                                                                                                                                                            | Hugging Face       |\n| Text Generation     | GPT-2 / DistilGPT2                                                                                                              | [Android](https://github.com/huggingface/tflite-android-transformers/blob/master/gpt2)                                                                                                                                                            | Hugging Face       |\n| Text Classification | [Download](https://storage.googleapis.com/download.tensorflow.org/models/tflite/text_classification/text_classification.tflite) | [Android](https://github.com/tensorflow/examples/tree/master/lite/examples/text_classification/android) \\|[iOS](https://github.com/khurram18/TextClassafication) \\| [Flutter](https://github.com/am15h/tflite_flutter_plugin/tree/master/example) | tf.org \u0026 Community |\n| Text Detection                  | CRAFT Text Detector ([Paper](https://arxiv.org/pdf/1904.01941))                          |[Download](https://github.com/tulasiram58827/craft_tflite/blob/main/models/craft_float_800.tflite?raw=true) \\| [Project Repository](https://github.com/tulasiram58827/craft_tflite/)  \\| [Blog1-Conversion to TFLite](https://tulasi.dev/craft-in-tflite) \\| [Blog2-EAST vs CRAFT](https://sayak.dev/optimizing-text-detectors/) \\| [Models on TF Hub](https://tfhub.dev/tulasiram58827/lite-model/craft-text-detector/dr/1)   \\| Android (Coming Soon)                                 | Community          |\n| Text Detection                  | EAST Text Detector ([Paper](https://arxiv.org/abs/1704.03155))                          |[Models on TF Hub](https://tfhub.dev/sayakpaul/lite-model/east-text-detector/dr/1) \\| [Conversion and Inference Notebook](https://colab.research.google.com/github/sayakpaul/Adventures-in-TensorFlow-Lite/blob/master/EAST_TFLite.ipynb)  | Community          |\n\n### Speech\n| Task               | Model                              | App \\| Reference                                                                      | Source       |\n| ------------------ |------------------------------------| ------------------------------------------------------------------------------------- | ------------ |\n| Speech Recognition | DeepSpeech                         | [Reference](https://github.com/mozilla/DeepSpeech/tree/master/native_client/java)     | Mozilla      |\n| Speech Recognition | CONFORMER                          | [Inference](https://github.com/neso613/ASR_TFLite)  [Android](https://github.com/windmaple/tflite-asr) | Community |\n| Speech Synthesis   | Tacotron-2, FastSpeech2, MB-Melgan | [Android](https://github.com/TensorSpeech/TensorflowTTS/tree/master/examples/android) | TensorSpeech |\n| Speech Synthesis(TTS)   | Tacotron2, FastSpeech2, MelGAN, MB-MelGAN, HiFi-GAN, Parallel WaveGAN | [Inference Notebook](https://github.com/tulasiram58827/TTS_TFLite/blob/main/End_to_End_TTS.ipynb)      \\| [Project Repository](https://github.com/tulasiram58827/TTS_TFLite/)  | Community  |\n\n### Recommendation\n| Task               | Model                              | App \\| Reference                                                                      | Source       |\n| ------------------ |------------------------------------| ------------------------------------------------------------------------------------- | ------------ |\n| On-device Recommendation | [Dual-Encoder](https://github.com/tensorflow/examples/tree/master/lite/examples/recommendation/ml)                 | [Android](https://github.com/tensorflow/examples/tree/master/lite/examples/recommendation/android) \\| [iOS](https://github.com/zhuzilin/on-device_recommendation_tflite) \\| [Reference](https://blog.tensorflow.org/2020/09/introduction-to-tflite-on-device-recommendation.html)     | tf.org \u0026 Community      |\n\n### Game\n| Task               | Model                              | App \\| Reference                                                                      | Source       |\n| ------------------ |------------------------------------| ------------------------------------------------------------------------------------- | ------------ |\n| Game agent | Reinforcement learning                 | [Flutter](https://github.com/windmaple/planestrike-flutter) \\| [Tutorial](https://windmaple.medium.com/)     | Community      |\n\n\n\n## Model zoo\n\n### TensorFlow Lite models\nThese are the TensorFlow Lite models that could be implemented in apps and things:\n* [MobileNet](https://github.com/tensorflow/models/blob/master/research/slim/nets/mobilenet/README.md) - Pretrained MobileNet v2 and v3 models.\n* TensorFlow Lite models\n  * [TensorFlow Lite models](https://www.tensorflow.org/lite/models) - With official Android and iOS examples.\n  * [Pretrained models](https://www.tensorflow.org/lite/guide/hosted_models) - Quantized and floating point variants.\n  * [TensorFlow Hub](https://tfhub.dev/) - Set \"Model format = TFLite\" to find TensorFlow Lite models.\n\n### TensorFlow models\nThese are TensorFlow models that could be converted to .tflite and then implemented in apps and things:\n* [TensorFlow models](https://github.com/tensorflow/models/tree/master/official) - Official TensorFlow models.\n* [Tensorflow detection model zoo](https://github.com/tensorflow/models/blob/master/research/object_detection/g3doc/tf2_detection_zoo.md) - Pre-trained on COCO, KITTI, AVA v2.1, iNaturalist Species datasets.\n\n## Ideas and Inspiration\n* [E2E TFLite Tutorials](https://github.com/ml-gde/e2e-tflite-tutorials) - Checkout this repo for sample app ideas and seeking help for your tutorial projects. Once a project gets completed, the links of the TensorFlow Lite model(s), sample code and tutorial will be added to this awesome list.\n\n## ML Kit examples\n[ML Kit](https://developers.google.com/ml-kit) is a mobile SDK that brings Google's ML expertise to mobile developers.\n* 2019-10-01 [ML Kit Translate demo](https://codelabs.developers.google.com/codelabs/mlkit-android-translate/#0) - A tutorial with material design [Android](https://github.com/googlecodelabs/mlkit-android/tree/master/translate) (Kotlin) sample - recognize, identify Language and translate text from live camera with ML Kit for Firebase.\n* 2019-03-13 [Computer Vision with ML Kit - Flutter In Focus](https://youtu.be/ymyYUCrJnxU).\n* 2019-02-09 [Flutter + MLKit: Business Card Mail Extractor](https://medium.com/flutter-community/flutter-mlkit-8039ec66b6a)  - A blog post with a [Flutter](https://github.com/DaemonLoki/Business-Card-Mail-Extractor) sample code.\n* 2019-02-08 [From TensorFlow to ML Kit: Power your Android application with machine learning](https://speakerdeck.com/jinqian/from-tensorflow-to-ml-kit-power-your-android-application-with-machine-learning) - A talk with [Android](https://github.com/xebia-france/magritte) (Kotlin) sample code.\n* 2018-08-07 [Building a Custom Machine Learning Model on Android with TensorFlow Lite](https://medium.com/over-engineering/building-a-custom-machine-learning-model-on-android-with-tensorflow-lite-26447e53abf2).\n* 2018-07-20 [ML Kit and Face Detection in Flutter](https://flatteredwithflutter.com/ml-kit-and-face-detection-in-flutter/).\n* 2018-07-27 [ML Kit on Android 4: Landmark Detection](https://medium.com/google-developer-experts/exploring-firebase-mlkit-on-android-landmark-detection-part-four-5e86b8deac3a).\n* 2018-07-28 [ML Kit on Android 3: Barcode Scanning](https://medium.com/google-developer-experts/exploring-firebase-mlkit-on-android-barcode-scanning-part-three-cc6f5921a108).\n* 2018-05-31 [ML Kit on Android 2: Face Detection](https://medium.com/google-developer-experts/exploring-firebase-mlkit-on-android-face-detection-part-two-de7e307c52e0).\n* 2018-05-22 [ML Kit on Android 1: Intro](https://medium.com/google-developer-experts/exploring-firebase-mlkit-on-android-introducing-mlkit-part-one-98fcfedbeee0).\n\n## Plugins and SDKs\n* [Edge Impulse](https://www.edgeimpulse.com/) - Created by [@EdgeImpulse](https://twitter.com/EdgeImpulse) to help you to train TensorFlow Lite models for embedded devices in the cloud.\n* [MediaPipe](https://github.com/google/mediapipe) - A cross platform (mobile, desktop and Edge TPUs) AI pipeline by Google AI. (PM [Ming Yong](https://twitter.com/realmgyong)) | [MediaPipe examples](https://mediapipe.readthedocs.io/en/latest/examples.html).\n* [Coral Edge TPU](https://coral.ai/) - Edge hardware by Google. [Coral Edge TPU examples](https://coral.ai/examples/).\n* [TensorFlow Lite Flutter Plugin](https://github.com/am15h/tflite_flutter_plugin/) - Provides a dart API similar to the TensorFlow Lite Java API for accessing TensorFlow Lite interpreter and performing inference in flutter apps. [tflite_flutter on pub.dev](https://pub.dev/packages/tflite_flutter).\n\n## Helpful links\n* [Netron](https://github.com/lutzroeder/netron) - A tool for visualizing models.\n* [AI benchmark](http://ai-benchmark.com/tests.html) - A website for benchmarking computer vision models on smartphones.\n* [Performance measurement](https://www.tensorflow.org/lite/performance/measurement) - How to measure model performance on Android and iOS.\n* [Material design guidelines for ML](https://material.io/collections/machine-learning/patterns-for-machine-learning-powered-features.html) - How to design machine learning powered features. A good example: [ML Kit Showcase App](https://github.com/firebase/mlkit-material-android).\n* [The People + AI Guide book](https://pair.withgoogle.com/) - Learn how to design human-centered AI products.\n* [Adventures in TensorFlow Lite](https://github.com/sayakpaul/Adventures-in-TensorFlow-Lite) - A repository showing non-trivial conversion processes and general explorations in TensorFlow Lite.\n* [TFProfiler](https://github.com/iglaweb/TFProfiler) - An Android-based app to profile TensorFlow Lite models and measure its performance on smartphone.\n* [TensorFlow Lite for Microcontrollers](https://www.tensorflow.org/lite/microcontrollers)\n* [TensorFlow Lite Examples - Android](https://github.com/dailystudio/tensorflow-lite-examples-android) - A repository refactors and rewrites all the TensorFlow Lite Android examples which are included in the TensorFlow official website. \n* [Tensorflow-lite-kotlin-samples](https://github.com/SunitRoy2703/Tensorflow-lite-kotlin-samples) - A collection of Tensorflow Lite Android example Apps in Kotlin, to show different kinds of kotlin implementation of the [example apps](https://www.tensorflow.org/lite/examples)\n\n\n## Learning resources\nInterested but not sure how to get started? Here are some learning resources that will help you whether you are a beginner or a practitioner in the field for a while.\n\n### Blog posts\n\n* 2021-11-09 [On-device training in TensorFlow Lite](https://blog.tensorflow.org/2021/11/on-device-training-in-tensorflow-lite.html)\n* 2021-09-27 [Optical character recognition with TensorFlow Lite: A new example app](https://blog.tensorflow.org/2021/09/blog.tensorflow.org202109optical-character-recognition.html)\n* 2021-06-16 [https://blog.tensorflow.org/2021/06/easier-object-detection-on-mobile-with-tf-lite.html](https://blog.tensorflow.org/2021/11/on-device-training-in-tensorflow-lite.html)\n* 2020-12-29 [YOLOv3 to TensorFlow Lite Conversion](https://medium.com/analytics-vidhya/yolov3-to-tensorflow-lite-conversion-4602cec5c239) - By Nitin Tiwari.\n* 2020-04-20 [What is new in TensorFlow Lite](https://blog.tensorflow.org/2020/04/whats-new-in-tensorflow-lite-from-devsummit-2020.html) - By Khanh LeViet.\n* 2020-04-17 [Optimizing style transfer to run on mobile with TFLite](https://blog.tensorflow.org/2020/04/optimizing-style-transfer-to-run-on-mobile-with-tflite.html) - By Khanh LeViet and Luiz Gustavo Martins.\n* 2020-04-14 [How TensorFlow Lite helps you from prototype to product](https://blog.tensorflow.org/2020/04/how-tensorflow-lite-helps-you-from-prototype-to-product.html) -  By Khanh LeViet.\n* 2019-11-08 [Getting  Started with ML on MCUs with TensorFlow](https://blog.particle.io/2019/11/08/particle-machine-learning-101/) -  By Brandon Satrom.\n* 2019-08-05 [TensorFlow Model Optimization Toolkit — float16 quantization halves model size](https://blog.tensorflow.org/2019/08/tensorflow-model-optimization-toolkit_5.html) - By the TensorFlow team.\n* 2018-07-13 [Training and serving a real-time mobile object detector in 30 minutes with Cloud TPUs](https://blog.tensorflow.org/2018/07/training-and-serving-realtime-mobile-object-detector-cloud-tpus.html) - By Sara Robinson, Aakanksha Chowdhery, and Jonathan Huang.\n* 2018-06-11 - [Why the Future of Machine Learning is Tiny](https://petewarden.com/2018/06/11/why-the-future-of-machine-learning-is-tiny/) - By Pete Warden.\n* 2018-03-30 - [Using TensorFlow Lite on Android](https://blog.tensorflow.org/2018/03/using-tensorflow-lite-on-android.html)) - By Laurence Moroney.\n\n### Books\n* 2021-12-01 [AI and Machine Learning On-Device Development](https://learning.oreilly.com/library/view/ai-and-machine/9781098101732/) (early access) - By Laurence Moroney ([@lmoroney](https://twitter.com/lmoroney)).\n* 2020-10-01 [AI and Machine Learning for Coders](https://learning.oreilly.com/library/view/ai-and-machine/9781492078180/) - By Laurence Moroney ([@lmoroney](https://twitter.com/lmoroney)).\n* 2020-04-06 [Mobile Deep Learning with TensorFlow Lite, ML Kit and Flutter](https://www.packtpub.com/product/mobile-deep-learning-with-tensorflow-lite-ml-kit-and-flutter/9781789611212): Build scalable real-world projects to implement end-to-end neural networks on Android and iOS ([GitHub](https://github.com/PacktPublishing/Mobile-Deep-Learning-Projects)) - By Anubhav Singh ([@xprilion](https://github.com/xprilion)) and Rimjhim Bhadani ([@Rimjhim28](https://github.com/Rimjhim28)).\n* 2020-03-01 Raspberry Pi for Computer Vision ([Complete Bundle](https://www.pyimagesearch.com/raspberry-pi-for-computer-vision) | [TOC](https://www.pyimagesearch.com/2019/04/05/table-of-contents-raspberry-pi-for-computer-vision/)) - By the PyImageSearch Team: Adrian Rosebrock ([@PyImageSearch](https://twitter.com/PyImageSearch)), David Hoffman, Asbhishek Thanki, Sayak Paul ([@RisingSayak](https://twitter.com/RisingSayak)), and David Mcduffee.\n* 2019-12-01 [TinyML](http://shop.oreilly.com/product/0636920254508.do) - By Pete Warden ([@petewarden](https://twitter.com/petewarden)) and Daniel Situnayake ([@dansitu](https://twitter.com/dansitu)).\n* 2019-10-01 [Practical Deep Learning for Cloud, Mobile, and Edge](https://www.practicaldeeplearning.ai/) - By Anirudh Koul ([@AnirudhKoul](https://twitter.com/AnirudhKoul)), Siddha Ganju ([@SiddhaGanju](https://twitter.com/SiddhaGanju)), and Meher Kasam ([@MeherKasam](https://twitter.com/MeherKasam)).\n\n### Videos\n* 2021-10-06 [Contributing to TensorFlow Lite with Sunit Roy](https://youtu.be/sZayUoWW6nE) (Hacktoberfest 2021)\n* 2020-07-25 [Android ML by Hoi Lam](https://youtu.be/m_bEh8YifnQ) (GDG Kolkata meetup).\n* 2020-04-01 [Easy on-device ML from prototype to production](https://youtu.be/ALxWJoh_BHw) (TF Dev Summit 2020).\n* 2020-03-11 [TensorFlow Lite: ML for mobile and IoT devices](https://youtu.be/27Zx-4GOQA8) (TF Dev Summit 2020).\n* 2019-10-31 [Keynote - TensorFlow Lite: ML for mobile and IoT devices](https://youtu.be/zjDGAiLqGk8).\n* 2019-10-31 [TensorFlow Lite: Solution for running ML on-device](https://youtu.be/0SpZy7iouFU).\n* 2019-10-31 [TensorFlow model optimization: Quantization and pruning](https://youtu.be/3JWRVx1OKQQ).\n* 2019-10-29 [Inside TensorFlow: TensorFlow Lite](https://youtu.be/gHN0jDbJz8E).\n* 2018-04-18 [TensorFlow Lite for Android (Coding TensorFlow)](https://youtu.be/JnhW5tQ_7Vo).\n\n### Podcasts\n* 2020-08-08 [Talking Machine Learning with Hoi Lam](https://anchor.fm/talkingwithapples/episodes/Talking-Machine-Learning-with-Hoi-Lam-eiaj7v).\n\n### MOOCs\n* [Introduction to TensorFlow Lite](https://www.udacity.com/course/intro-to-tensorflow-lite--ud190) - Udacity course by Daniel Situnayake (@dansitu), Paige Bailey ([@DynamicWebPaige](https://twitter.com/DynamicWebPaige)), and Juan Delgado.\n* [Device-based Models with TensorFlow Lite](https://www.coursera.org/learn/device-based-models-tensorflow) - Coursera course by Laurence Moroney ([@lmoroney](https://twitter.com/lmoroney)).\n* [The Future of ML is Tiny and Bright](https://www.edx.org/professional-certificate/harvardx-tiny-machine-learning) - A series of edX courses created by Harvard in collaboration with Google. Instructors - Vijay Janapa Reddi, Laurence Moroney, and Pete Warden.\n","project_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Fmargaretmz%2Fawesome-tensorflow-lite","html_url":"https://awesome.ecosyste.ms/projects/github.com%2Fmargaretmz%2Fawesome-tensorflow-lite","lists_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Fmargaretmz%2Fawesome-tensorflow-lite/lists"}