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A PyTorch library of modern embedding strategies missing from torch.nn

Project description

torchembed

Modern embedding strategies for PyTorch — the ones missing from torch.nn.

PyPI version Python 3.9+ License: MIT

torch.nn gives you nn.Embedding (a lookup table). That's it. The moment you work with continuous inputs, modern transformer architectures, coordinates, time, or tabular data, you're on your own — copy-pasting RoPE implementations across projects.

torchembed is a single, well-tested, pip-installable home for all of them.


Table of Contents


Installation

pip install torchembed

Requires Python ≥ 3.9 and PyTorch ≥ 2.0. No other required dependencies.


What's included

Module Class Use case
positional RotaryEmbedding Modern LLMs (LLaMA, Mistral, Falcon)
positional ALiBiEmbedding Long-context models (BLOOM, MPT)
positional SinusoidalEmbedding Classic Transformers
positional LearnedPositionalEmbedding BERT, GPT-2
fourier RandomFourierFeatures Kernel approximation, coordinate encoding
fourier LearnedFourierFeatures Trainable frequency decomposition
fourier GaussianFourierProjection Diffusion models (timestep embedding)
categorical EntityEmbedding Tabular categorical features
categorical MultiCategoricalEmbedding Multiple categorical columns at once
patch PatchEmbedding Vision Transformers (ViT)
patch TubeletEmbedding Video Transformers (VideoMAE, ViViT)
temporal CyclicEmbedding Hour, day, month (cyclic features)
temporal TimestampEmbedding Continuous timestamps
temporal FrequencyEmbedding Time series, periodic signals

Quick start

Import from submodules:

from torchembed.positional import RotaryEmbedding, ALiBiEmbedding, SinusoidalEmbedding, LearnedPositionalEmbedding
from torchembed.fourier import RandomFourierFeatures, LearnedFourierFeatures, GaussianFourierProjection
from torchembed.categorical import EntityEmbedding, MultiCategoricalEmbedding
from torchembed.patch import PatchEmbedding, TubeletEmbedding
from torchembed.temporal import CyclicEmbedding, TimestampEmbedding, FrequencyEmbedding

Or import individual classes directly:

from torchembed.positional import RotaryEmbedding
from torchembed.fourier import GaussianFourierProjection
from torchembed.patch import PatchEmbedding

Examples

Rotary Embedding (RoPE) — LLaMA / Mistral style

import torch
from torchembed.positional import RotaryEmbedding

rope = RotaryEmbedding(dim=64)  # head_dim

# Inside your attention layer:
q = torch.randn(batch, heads, seq_len, 64)
k = torch.randn(batch, heads, seq_len, 64)
q, k = rope(q, k)  # apply rotation in-place

RoPE has no trainable parameters and preserves vector norms (it's a pure rotation). The default base of 10,000 matches the original paper; use base=500_000 for LLaMA 3.


ALiBi — long context with length extrapolation

from torchembed.positional import ALiBiEmbedding

alibi = ALiBiEmbedding(num_heads=8)

# After computing raw attention scores:
attn_scores = q @ k.transpose(-2, -1) / math.sqrt(head_dim)
attn_scores = alibi(attn_scores)   # adds learned distance penalty
attn_weights = attn_scores.softmax(-1)

Gaussian Fourier Projection — diffusion model timestep embedding

from torchembed.fourier import GaussianFourierProjection
import torch.nn as nn

class DiffusionTimeEmbedding(nn.Module):
    def __init__(self, embed_dim):
        super().__init__()
        self.fourier = GaussianFourierProjection(embed_dim=embed_dim, scale=16)
        self.mlp = nn.Sequential(
            nn.Linear(embed_dim, embed_dim * 4),
            nn.SiLU(),
            nn.Linear(embed_dim * 4, embed_dim),
        )

    def forward(self, t):
        return self.mlp(self.fourier(t))

t_emb = DiffusionTimeEmbedding(embed_dim=256)
t = torch.rand(32)   # normalized timesteps
emb = t_emb(t)       # (32, 256) — condition your UNet on this

ViT Patch Embedding

from torchembed.patch import PatchEmbedding

patch_emb = PatchEmbedding(
    image_size=224,
    patch_size=16,
    embed_dim=768,
)

images = torch.randn(4, 3, 224, 224)
tokens = patch_emb(images)    # (4, 196, 768)
print(patch_emb.num_patches)  # 196

Tubelet Embedding — Video Transformers

from torchembed.patch import TubeletEmbedding

tubelet_emb = TubeletEmbedding(
    image_size=224,
    patch_size=16,
    tubelet_size=2,
    embed_dim=768,
)

video = torch.randn(2, 3, 16, 224, 224)   # (B, C, T, H, W)
tokens = tubelet_emb(video)                # (2, 1568, 768)
# 1568 = (16/2) * (224/16) * (224/16) = 8 * 14 * 14

Tabular categorical features

from torchembed.categorical import MultiCategoricalEmbedding

# A tabular dataset with 3 categorical columns:
# country (50 unique values), day of week (7), product category (120)
emb = MultiCategoricalEmbedding(cardinalities=[50, 7, 120])
print(emb.output_dim)   # sum of auto-sized embed dims

x = torch.stack([country_ids, dow_ids, category_ids], dim=1)   # (batch, 3)
features = emb(x)   # (batch, output_dim)

Cyclic time features

from torchembed.temporal import CyclicEmbedding
import torch

hour_enc  = CyclicEmbedding(period=24)
dow_enc   = CyclicEmbedding(period=7)
month_enc = CyclicEmbedding(period=12)

hour   = torch.tensor([0.0, 6.0, 12.0, 18.0])
dow    = torch.tensor([0.0, 1.0, 2.0, 3.0])
month  = torch.tensor([1.0, 4.0, 7.0, 10.0])

time_features = torch.cat([
    hour_enc(hour),    # (4, 2)
    dow_enc(dow),      # (4, 2)
    month_enc(month),  # (4, 2)
], dim=-1)             # (4, 6)

Random Fourier Features for coordinate encoding

from torchembed.fourier import RandomFourierFeatures

# Encode 2D spatial coordinates for a neural field / NeRF-style model
rff = RandomFourierFeatures(in_features=2, out_features=256, sigma=1.0)

coords = torch.rand(1024, 2)   # (x, y) pairs in [0, 1]
features = rff(coords)          # (1024, 256)

Frequency Embedding — learnable periodic decomposition

from torchembed.temporal import FrequencyEmbedding

# Discover periodic structure in time series automatically
freq_emb = FrequencyEmbedding(embed_dim=32)

t = torch.linspace(0, 100, 512).unsqueeze(0)   # (1, 512) time steps
out = freq_emb(t)                               # (1, 512, 33)
# 33 = 1 linear trend + 32 sinusoidal components

Design principles

Everything is an nn.Module. You can use any embedding as a layer in a larger model, save/load it with state_dict, move it across devices, and wrap it with torch.compile.

No required dependencies beyond PyTorch. torchembed has exactly one required dependency: PyTorch itself. We don't pull in transformers, numpy, or anything else.

Device-agnostic. No .cuda() calls inside the library. Move your model to whatever device you want — the embeddings follow.

Bring just what you need. Every embedding class is independent. Use one, use all, use none — no framework lock-in.


Running tests

pip install torchembed[dev]
pytest

Contributing

Contributions welcome! If there's an embedding strategy you find yourself copy-pasting into projects, open a PR. Please include:

  • The module with a clear docstring and paper reference
  • Tests covering shape, gradients, and key mathematical properties
  • An example in the README

License

MIT

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