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Awesome GitHub RepositoriesTensorFlow Model Development

The process of designing, building, and training machine learning models specifically using the TensorFlow ecosystem.

Distinct from TensorFlow Frameworks: Focuses on the general development process using TensorFlow, whereas candidates were limited to specific model types like normalizing flows.

Explore 42 awesome GitHub repositories matching artificial intelligence & ml · TensorFlow Model Development. Refine with filters or upvote what's useful.

Awesome TensorFlow Model Development GitHub Repositories

Găsește cele mai bune repo-uri cu AI.Vom căuta cele mai potrivite repository-uri folosind AI.
  • matterport/mask_rcnnAvatar matterport

    matterport/Mask_RCNN

    25,564Vezi pe GitHub↗

    This project is a TensorFlow and Keras implementation of the Mask R-CNN architecture. It provides a framework for performing simultaneous object detection and instance segmentation, transforming raw images into segmented masks and bounding boxes for individual object identification. The toolset enables custom computer vision training through fine-tuning pre-trained weights and integrating user-provided datasets. It includes capabilities for distributed GPU training to accelerate the optimization of large vision models. The framework covers model evaluation using standard precision metrics an

    Offers a framework for designing and training instance segmentation models using the TensorFlow ecosystem.

    Pythoninstance-segmentationkerasmask-rcnn
    Vezi pe GitHub↗25,564
  • open-source-for-science/tensorflow-courseAvatar open-source-for-science

    open-source-for-science/TensorFlow-Course

    16,285Vezi pe GitHub↗

    This is a TensorFlow learning course and machine learning education resource. It is a notebook-based interactive course that provides a deep learning tutorial series and a guide to the Keras API through executable Python code and formatted text. The material focuses on deep learning education, covering the implementation of TensorFlow models and the design of neural network architectures such as multilayer perceptrons and convolutional networks. It includes instructional content on constructing custom training loops and dataset generators for data pipeline engineering. The course covers mach

    Guides the design, building, and training of predictive models using the TensorFlow ecosystem.

    Jupyter Notebook
    Vezi pe GitHub↗16,285
  • instillai/tensorflow-courseAvatar instillai

    instillai/TensorFlow-Course

    16,285Vezi pe GitHub↗

    This project is a TensorFlow learning course consisting of a deep learning tutorial series and guided modules. It provides the source code and documentation necessary to build and train neural network architectures and machine learning algorithms. The repository serves as a machine learning deployment guide, providing practical examples for moving trained models from development environments into production. It includes templates and guided tutorials for model development and prototyping. The course covers AI model education through a structured curriculum focused on tensor-based computation

    Teaches the design, building, and training of deep learning architectures specifically within the TensorFlow ecosystem.

    Jupyter Notebookdeep-learningdeep-learning-tutorialpython
    Vezi pe GitHub↗16,285
  • dragen1860/deep-learning-with-tensorflow-bookAvatar dragen1860

    dragen1860/Deep-Learning-with-TensorFlow-book

    13,237Vezi pe GitHub↗

    This project is an open source deep learning textbook and educational resource. It provides a structured curriculum of theory and practical examples designed for mastering the training of regression, classification, and generative models using the TensorFlow framework. The repository functions as a machine learning code collection, utilizing interactive notebooks and source code to demonstrate neural network implementation and tensor operations. It covers the development of deep learning models and the study of reinforcement learning. The material employs a case-study driven pedagogy, combin

    Teaches how to build and train classification and regression models using the TensorFlow 2.0 framework.

    Jupyter Notebookbookdeeplearningmachinelearning
    Vezi pe GitHub↗13,237
  • tensorflow/playgroundAvatar tensorflow

    tensorflow/playground

    12,939Vezi pe GitHub↗

    This project is a browser-based machine learning education tool and neural network sandbox. It provides an interactive environment for experimenting with network architectures and hyperparameters to understand deep learning concepts. The tool functions as a visualizer for TensorFlow neural networks, allowing users to see how models learn and classify data in real time. It enables the prototyping of model architectures to observe how different hidden layers and neurons affect a network's ability to solve specific data patterns. The system covers neural network architecture and operation visua

    Utilizes the TensorFlow.js runtime to execute machine learning operations directly in the browser via WebGL.

    TypeScript
    Vezi pe GitHub↗12,939
  • lengstrom/fast-style-transferAvatar lengstrom

    lengstrom/fast-style-transfer

    10,963Vezi pe GitHub↗

    This project is a TensorFlow-based neural style transfer framework designed to apply the artistic textures and colors of a painting to images and videos. It utilizes a feed-forward image stylizer that transforms visual appearance in a single pass, avoiding the need for iterative optimization. The system includes a deep learning training pipeline that teaches convolutional neural networks to replicate specific styles using perceptual loss functions. It also features a video frame processor that decomposes video files into individual images for sequential stylization and reassembly. The softwa

    Leverages the TensorFlow ecosystem for developing and executing the style transfer model.

    Pythondeep-learningneural-networksneural-style
    Vezi pe GitHub↗10,963
  • chiphuyen/stanford-tensorflow-tutorialsAvatar chiphuyen

    chiphuyen/stanford-tensorflow-tutorials

    10,377Vezi pe GitHub↗

    This project is a collection of deep learning tutorials and practical implementations using TensorFlow. It provides a neural network implementation guide through code examples designed for research-oriented deep learning. The repository covers supervised and unsupervised learning workflows, including the development of sequence models for language processing and chatbots. It includes specific examples for image style transfer and the use of autoencoders for feature extraction. The project also provides demonstrations for managing large-scale datasets using binary record formats and streaming

    Provides practical examples of dataset management and streaming within the TensorFlow ecosystem.

    Pythonchatbotcourse-materialsdeep-learning
    Vezi pe GitHub↗10,377
  • chiphuyen/tf-stanford-tutorialsAvatar chiphuyen

    chiphuyen/tf-stanford-tutorials

    10,377Vezi pe GitHub↗

    This project is a deep learning educational resource providing a collection of TensorFlow tutorials and programming exercises. It serves as a set of machine learning code samples designed for university-level courses on machine learning research. The repository focuses on machine learning education and deep learning research, providing practical examples for implementing neural networks from scratch. It supports neural network prototyping and the development of TensorFlow models to help users apply deep learning theory to software implementations.

    Guides the process of building and training deep learning models from scratch using the TensorFlow ecosystem.

    Python
    Vezi pe GitHub↗10,377
  • lyhue1991/eat_tensorflow2_in_30_daysAvatar lyhue1991

    lyhue1991/eat_tensorflow2_in_30_days

    9,933Vezi pe GitHub↗

    This project is a structured learning curriculum and technical reference for mastering deep learning with TensorFlow. It provides a comprehensive guide for building, training, and deploying neural networks, combining theoretical fundamentals with practical implementation examples. The repository distinguishes itself by covering the end-to-end machine learning workflow, from low-level tensor mathematics and linear algebra to the creation of complex model architectures. It includes specific guidance on developing data pipelines for diverse data types, such as images, text, and time-series seque

    Guides the design, construction, and training of neural networks for classification and regression using TensorFlow.

    Pythontensorflowtensorflow-examplestensorflow-tutorial
    Vezi pe GitHub↗9,933
  • deepmind/sonnetAvatar deepmind

    deepmind/sonnet

    9,920Vezi pe GitHub↗

    Sonnet is a modular machine learning framework and TensorFlow library used for building, training, and managing deep learning models. It functions as a system for composing neural networks from reusable modules and layers that encapsulate their own parameters and internal states. The project provides specialized tools for distributed model training, enabling the synchronization of gradients across multiple hardware devices. It also serves as a model state management system, allowing for the persistence of neural network weights and the export of portable models that separate the computation g

    Provides a framework for designing and building deep learning models specifically using the TensorFlow ecosystem.

    Python
    Vezi pe GitHub↗9,920
  • google-deepmind/sonnetAvatar google-deepmind

    google-deepmind/sonnet

    9,920Vezi pe GitHub↗

    Sonnet is a modular machine learning framework and TensorFlow neural network library designed for building composable deep learning architectures. It functions as a model orchestrator that manages parameters, state serialization, and graph exports during the training process. The framework provides a distributed training system to synchronize gradients and spread workloads across multiple GPUs or hardware devices. It enables the design of reusable research components through high-level abstractions and subclassing. The library covers neural network architecture design through sequential laye

    Provides a framework for designing and building deep learning architectures specifically within the TensorFlow ecosystem.

    Pythonartificial-intelligencedeep-learningmachine-learning
    Vezi pe GitHub↗9,920
  • tflearn/tflearnAvatar tflearn

    tflearn/tflearn

    9,579Vezi pe GitHub↗

    tflearn is a deep learning framework and high-level API wrapper for TensorFlow. It provides a toolkit for designing neural network architectures and a system for executing training loops and optimizing model weights across CPUs and GPUs. The project simplifies the process of building and training models through a modular interface and a high-level API for prototyping. It includes specialized utilities for deep learning visualization, allowing for the generation of graphical diagrams to analyze network structures, weights, gradients, and activations. The framework covers a broad range of capa

    Simplifies the process of quickly building and testing deep learning architectures using the TensorFlow ecosystem.

    Pythondata-sciencedeep-learningmachine-learning
    Vezi pe GitHub↗9,579
  • hvass-labs/tensorflow-tutorialsAvatar Hvass-Labs

    Hvass-Labs/TensorFlow-Tutorials

    9,266Vezi pe GitHub↗

    TensorFlow-Tutorials is a collection of educational resources and guided tutorials for implementing machine learning models using the TensorFlow framework. It provides instructional material and videos for building deep learning architectures across diverse domains, including computer vision, natural language processing, and time-series prediction. The project offers practical guides for developing specific applications such as image captioning, style transfer, and machine translation. It emphasizes a structured approach to learning, ranging from simple linear models to complex reinforcement

    Guides the design, building, and training of machine learning models specifically using the TensorFlow ecosystem.

    Jupyter Notebook
    Vezi pe GitHub↗9,266
  • vahidk/effectivetensorflowAvatar vahidk

    vahidk/EffectiveTensorflow

    8,589Vezi pe GitHub↗

    EffectiveTensorflow is a deep learning tutorial suite and learning resource designed for building models within the TensorFlow framework. It serves as a practical implementation guide and development manual for creating neural network architectures. The project provides curated instructions for prototyping custom operations and implementing conditional logic for recurrent and deep learning structures. It focuses on the transition from imperative prototyping to the optimization of symbolic execution graphs for hardware accelerators. The resource covers numerical stability management to preven

    Offers a comprehensive guide to best practices and standardized patterns for building models in TensorFlow.

    Vezi pe GitHub↗8,589
  • tensorflow/cleverhansAvatar tensorflow

    tensorflow/cleverhans

    6,443Vezi pe GitHub↗

    Cleverhans este o bibliotecă TensorFlow pentru machine learning adversar, care servește drept framework de atac, benchmark de robustețe și bibliotecă de apărare. Oferă o colecție de instrumente pentru a genera exemple adverse, a testa securitatea rețelelor neuronale și a implementa mecanisme de protecție pentru a crește reziliența modelelor împotriva input-urilor malițioase. Proiectul se concentrează pe crearea de input-uri perturbate, concepute pentru a induce în eroare modelele de machine learning să facă predicții incorecte. Permite evaluarea stabilității și acurateței modelelor de deep learning atunci când sunt supuse zgomotului advers, oferind implementări de referință ale metodelor de atac cunoscute pentru a identifica vulnerabilitățile de securitate. Toolkit-ul acoperă generarea de exemple adverse, apărarea modelelor de machine learning și benchmarking-ul robusteții rețelelor neuronale. Utilizează o interfață agnostică față de model și implementări de atac diferențiabile pentru a executa perturbări bazate pe gradient și bucle de optimizare iterativă.

    Uses reference attack implementations to identify and fix security weaknesses in TensorFlow-based networks.

    Jupyter Notebook
    Vezi pe GitHub↗6,443
  • tensorflow/docsAvatar tensorflow

    tensorflow/docs

    6,320Vezi pe GitHub↗

    This repository is the official documentation for TensorFlow, a machine learning framework. It provides comprehensive guides, tutorials, and API references for building, training, and deploying machine learning models. The documentation covers the full lifecycle of machine learning projects, from constructing data pipelines and building neural networks with high-level APIs to customizing training loops and deploying trained models in production, on edge devices, or in browsers. The documentation includes step-by-step tutorials for a range of tasks, including reinforcement learning, ranking mo

    Provides step-by-step tutorials for neural networks, reinforcement learning, and ranking models.

    Jupyter Notebookdeep-learningdeep-neural-networksdocumentation
    Vezi pe GitHub↗6,320
  • tensorpack/tensorpackAvatar tensorpack

    tensorpack/tensorpack

    6,287Vezi pe GitHub↗

    Tensorpack este un framework de rețele neuronale TensorFlow de nivel înalt și o bibliotecă de cercetare concepută pentru construirea și antrenarea modelelor de deep learning. Oferă o colecție de arhitecturi de rețele neuronale reproductibile pentru viziune artificială, sarcini generative, învățare prin consolidare și procesarea limbajului natural. Proiectul se distinge printr-un pipeline de date de deep learning specializat care utilizează Python pur pentru încărcarea și streaming-ul datelor în paralel. Include un orchestrator de antrenare multi-GPU pentru distribuirea sarcinilor de lucru prin strategii de paralelizare a datelor și un toolkit de interpretabilitate dedicat pentru vizualizarea hărților de activare și saliency ale modelului. Framework-ul acoperă o gamă largă de capabilități, inclusiv pipeline-uri de viziune artificială pentru detectarea obiectelor și segmentarea semantică, modelarea secvențială pentru vorbire și text, și dezvoltarea de agenți de învățare prin consolidare. Oferă, de asemenea, instrumente de optimizare a modelelor pentru cuantizarea ponderilor și antrenarea pe biți puțini, alături de utilitare pentru reproducerea lucrărilor de cercetare academică și conversia ponderilor modelelor Caffe legacy.

    Provides a high-level framework for designing, building, and training deep learning models within the TensorFlow ecosystem.

    Python
    Vezi pe GitHub↗6,287
  • nfmcclure/tensorflow_cookbookAvatar nfmcclure

    nfmcclure/tensorflow_cookbook

    6,239Vezi pe GitHub↗

    The TensorFlow Cookbook is a collection of code examples and recipes for building, training, and deploying machine learning models using TensorFlow. It covers the full model lifecycle, from constructing neural networks and training them with configurable parameters to packaging trained models for production deployment with unit tests and multi-device support. The project also integrates TensorBoard for logging and visualizing computational graphs, scalar summaries, and histograms during training. The cookbook demonstrates a wide range of machine learning techniques, including convolutional ne

    Builds, trains, and deploys machine learning models using TensorFlow's computation graph and session-based execution.

    Jupyter Notebookclassificationcnngenetic-algorithm
    Vezi pe GitHub↗6,239
  • tensorflow/swiftAvatar tensorflow

    tensorflow/swift

    6,131Vezi pe GitHub↗

    Swift for TensorFlow is a custom toolchain that extends the Swift language with first-class automatic differentiation and differentiable types, enabling gradient-based computation directly within the compiler. It integrates the Swift compiler with TensorFlow runtime and XLA backends, allowing tensor operations to be compiled and executed on hardware-accelerated hardware for high-performance machine learning. The project distinguishes itself through compiler-integrated automatic differentiation that computes gradients of user-defined functions and types during compilation, eliminating the need

    Provides a custom Swift toolchain for building and training TensorFlow models with automatic differentiation.

    Jupyter Notebook
    Vezi pe GitHub↗6,131
  • nlintz/tensorflow-tutorialsAvatar nlintz

    nlintz/TensorFlow-Tutorials

    6,026Vezi pe GitHub↗

    This repository is a collection of guided tutorials for building and training machine learning models using the TensorFlow framework. It provides practical walkthroughs and examples for implementing a variety of model architectures to solve data prediction and analysis problems. The guides cover the construction of feedforward, convolutional, and recurrent neural networks to analyze complex data patterns. It includes specific tutorials for unsupervised learning, such as denoising autoencoders and word-to-vec embeddings, as well as examples for training generative adversarial networks to synth

    Explains how to save and restore network weights to reuse trained models across sessions.

    Jupyter Notebook
    Vezi pe GitHub↗6,026
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Explorează sub-etichetele

  • API ReferencesAuto-generated documentation covering all TensorFlow Python APIs. **Distinct from TensorFlow Model Development:** Distinct from TensorFlow Model Development: focuses on the API reference documentation, not the model development process itself.
  • Audio Model TrainingThe development and optimization of deep neural networks for audio tasks using the TensorFlow ecosystem. **Distinct from TensorFlow Model Development:** Specializes TensorFlow model development for audio processing and multi-GPU training.
  • Containerized Framework BuildsBuilding and packaging machine learning frameworks from source into optimized containers. **Distinct from TensorFlow Model Development:** Focuses on the build and packaging process of the framework into a container rather than model development.
  • Learning GuidesStructured educational resources for mastering the development and deployment process of machine learning models. **Distinct from TensorFlow Model Development:** Distinct from general model development as it focuses on the educational pedagogy and structured learning path.
  • Model State ManagementTechniques for saving and restoring model weights and parameters to maintain training progress. **Distinct from TensorFlow Model Development:** Focuses specifically on the persistence and restoration of weights, whereas model development covers the broader design and training process
  • Model Weight PersistenceTechniques for saving and loading trained parameters within the TensorFlow ecosystem. **Distinct from TensorFlow Model Development:** Specifically targets the persistence of weights rather than the general development process.
  • Production DeploymentsPackaging trained TensorFlow models with unit tests, multi-device execution, and distributed computing for production use. **Distinct from TensorFlow Model Development:** Distinct from TensorFlow Model Development: focuses on deployment and packaging, not development.
  • Security TestingApplying adversarial attacks to identify and fix security weaknesses in models. **Distinct from TensorFlow Model Development:** Focuses on security vulnerability identification rather than general model development.
  • Swift DevelopmentBuilding and training machine learning models using Swift with automatic differentiation and Python interoperability. **Distinct from TensorFlow Model Development:** Distinct from TensorFlow Model Development: focuses on Swift as the development language for TensorFlow models, not general TensorFlow model development.
  • TensorFlow NLP ModelsPre-trained neural network models for natural language processing built with the TensorFlow framework. **Distinct from TensorFlow Model Development:** Distinct from TensorFlow Model Development: focuses on the collection of pre-trained NLP models rather than the general development process.
  • Text Classification ModelsMachine learning models built with TensorFlow specifically for text categorization tasks. **Distinct from TensorFlow Model Development:** Focuses on the model's application to text classification rather than general TF development
  • TutorialsStep-by-step guides for building neural networks, reinforcement learning agents, and ranking models. **Distinct from TensorFlow Model Development:** Distinct from TensorFlow Model Development: focuses on the tutorial collection, not the general development process.
  • Visual Intuition ToolsTools designed to provide a visual understanding of framework-specific training and optimization processes. **Distinct from TensorFlow Model Development:** Distinct from general model development: focuses specifically on the pedagogical use of visualization to understand TensorFlow concepts.
  • Voice Synthesis DevelopmentThe process of designing and building voice synthesis models using TensorFlow. **Distinct from TensorFlow Model Development:** Specifically targets the synthesis of voice waveforms rather than general NLP or model inference.