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Awesome GitHub RepositoriesPositional Encoding Techniques

Methods for injecting sequence order information into attention-based models.

Distinguishing note: Focuses on preserving order in non-recurrent architectures.

Explore 9 awesome GitHub repositories matching artificial intelligence & ml · Positional Encoding Techniques. Refine with filters or upvote what's useful.

Awesome Positional Encoding Techniques GitHub Repositories

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  • d2l-ai/d2l-enالصورة الرمزية لـ d2l-ai

    d2l-ai/d2l-en

    29,001عرض على GitHub↗

    This project is an educational platform and research toolkit designed to teach deep learning through a combination of mathematical theory, visual diagrams, and executable code. It provides a comprehensive environment for building, training, and evaluating neural networks, grounding complex concepts in interactive computational notebooks that allow for hands-on experimentation. The framework distinguishes itself by interleaving theoretical foundations—including linear algebra, calculus, and probability—with practical implementations across multiple industry-standard libraries. It supports flex

    Adds learnable vectors to image patch representations to preserve spatial information in transformer encoders.

    Pythonbookcomputer-visiondata-science
    عرض على GitHub↗29,001
  • lucidrains/denoising-diffusion-pytorchالصورة الرمزية لـ lucidrains

    lucidrains/denoising-diffusion-pytorch

    10,614عرض على GitHub↗

    Implementation of Denoising Diffusion Probabilistic Model in Pytorch

    Injects sinusoidal positional encodings of the diffusion step to condition predictions on noise level.

    Pythonartificial-intelligencedeep-learninggenerative-model
    عرض على GitHub↗10,614
  • datawhalechina/so-large-lmالصورة الرمزية لـ datawhalechina

    datawhalechina/so-large-lm

    7,400عرض على GitHub↗

    This project is a comprehensive educational curriculum and structured learning path covering the full lifecycle of large language models. It provides a guided progression through the theory, architecture, training, and deployment of these models. The curriculum includes specialized guides on transformer architecture, model training tutorials, and frameworks for designing autonomous agents. It also provides dedicated resources for studying model safety and ethics. The material covers a wide range of technical capabilities, including distributed training strategies, parameter-efficient fine-tu

    Explains the use of fixed sine and cosine functions to encode sequence order in transformer models.

    عرض على GitHub↗7,400
  • harvardnlp/annotated-transformerالصورة الرمزية لـ harvardnlp

    harvardnlp/annotated-transformer

    7,325عرض على GitHub↗

    The Annotated Transformer is an educational resource that provides annotated code implementations of the Transformer architecture for sequence-to-sequence tasks, built with PyTorch. It serves as a learning tool for understanding attention mechanisms, multi-head parallel attention, and scaled dot-product attention through executable examples that walk through each component of the model. The project covers the full Transformer pipeline, including stacked encoder-decoder layers with residual connections and layer normalization, sinusoidal positional encoding for order-aware representation, and

    Injects fixed sinusoidal signals into token embeddings to encode absolute and relative position information.

    Jupyter Notebookannotatednotebookpython
    عرض على GitHub↗7,325
  • ai-dawang/plugnplay-modulesالصورة الرمزية لـ ai-dawang

    ai-dawang/PlugNPlay-Modules

    4,968عرض على GitHub↗

    PlugNPlay-Modules is a collection of reusable PyTorch computer vision modules and deep learning architectural components. It provides a library of standardized building blocks for constructing neural networks, focusing on attention mechanisms, signal processing layers, and feature fusion modules. The project is distinguished by its extensive variety of attention primitives, covering spatial, channel, and temporal weighting, as well as specialized variants like deformable, frequency-enhanced, and linear-complexity attention. It also implements advanced signal processing tools within the neural

    Creates sine and cosine positional encodings to provide spatial or sequential awareness to network layers.

    Python
    عرض على GitHub↗4,968
  • hyunwoongko/transformerالصورة الرمزية لـ hyunwoongko

    hyunwoongko/transformer

    4,601عرض على GitHub↗

    This project is a PyTorch implementation of an attention-based neural network designed for sequence-to-sequence deep learning tasks. It serves as a library for constructing deep learning sequence models that utilize encoder and decoder structures to process natural language and sequential data. The implementation centers on a multi-head attention mechanism to capture diverse relationships between tokens without using recurrence. It includes sinusoidal positional encoding to maintain sequence order and point-wise feed-forward networks to transform token positions independently. The architectu

    Implements sinusoidal encodings to inject absolute position information into token embeddings.

    Pythonattentiondatasetpytorch
    عرض على GitHub↗4,601
  • datawhalechina/tiny-universeالصورة الرمزية لـ datawhalechina

    datawhalechina/tiny-universe

    4,505عرض على GitHub↗

    Tiny Universe is an educational monorepo that delivers multiple independent implementations of core AI subsystems as self-contained Jupyter notebooks. It provides from-scratch constructions of foundational architectures including a complete Transformer model built from the original paper specification, a denoising diffusion probabilistic model for image generation, and a ReAct-style autonomous agent framework that equips an LLM with tools for planning and multi-step task execution. The project distinguishes itself by covering the full lifecycle of modern AI systems through hands-on implementa

    Adds sinusoidal position encodings to token embeddings for sequence order awareness.

    Jupyter Notebookagentdiffusionevaluation-metrics
    عرض على GitHub↗4,505
  • facebookresearch/deitالصورة الرمزية لـ facebookresearch

    facebookresearch/deit

    4,348عرض على GitHub↗

    DeiT هو إطار عمل محول رؤية (vision transformer) لـ PyTorch مصمم لتصنيف الصور. ينفذ معمارية قائمة على المحولات تعالج الصور كتسلسلات من الرقع المسطحة باستخدام طبقات الانتباه الذاتي ونمذجة التسلسل الواعية بالموقع بدلاً من المرشحات التلافيفية. يركز المشروع على التدريب الفعال للبيانات من خلال إطار عمل لتقطير المعرفة. يسمح هذا النظام لنموذج الطالب بتقليد التسميات اللينة لنموذج معلم عالي الأداء لتحسين الدقة والتعميم، خاصة عند التدريب على مجموعات بيانات أصغر. تغطي المكتبة دورة حياة التطوير الكاملة، بما في ذلك تدريب تصنيف الصور، وتحسين فقدان الإنتروبيا المتقاطعة، ونشر الأوزان المدربة مسبقاً للاستنتاج. كما تتضمن أداة قياس لتقييم أداء النموذج ودقته مقابل مجموعات البيانات القياسية.

    Injects learnable positional embeddings into image patch sequences to preserve spatial arrangement.

    Python
    عرض على GitHub↗4,348
  • neuraloperator/neuraloperatorالصورة الرمزية لـ neuraloperator

    neuraloperator/neuraloperator

    3,710عرض على GitHub↗

    Neuraloperator is a library for learning mappings between infinite-dimensional function spaces, serving as a tool to accelerate physics simulations and partial differential equation solving. It implements resolution-invariant models and spectral neural networks that can produce consistent predictions regardless of the input grid resolution or spatial discretization. The framework incorporates physics-informed neural networks that enforce physical constraints and differential equations through specialized loss functions. It utilizes Fourier transforms and spectral projections to process multid

    Adds spectral or grid-based positional information to coordinate inputs as additional data channels.

    Pythonfnofourier-neural-operatorneural-operator
    عرض على GitHub↗3,710
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  3. Positional Encoding Techniques

استكشف الوسوم الفرعية

  • Positional Embedding Layers1 وسم فرعيLayers that inject learnable spatial information into image patch sequences. **Distinct from Positional Encoding Techniques:** Focuses on the implementation of positional embeddings for image patches, whereas the parent covers general positional encoding techniques.
  • Sinusoidal EncodingsFixed periodic functions used to encode token positions in a sequence. **Distinct from Positional Encoding Techniques:** Distinct from general techniques by focusing specifically on the fixed sinusoidal signal method rather than learnable or rotary embeddings.