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EddieCunningham
GitHub クリエイタープロフィール

EddieCunningham

2 件の GitHub リポジトリにある 27 件の収集済み skills をリポジトリ単位で表示します。

収集済み skills
27
リポジトリ
2
更新
2026-05-27
リポジトリエクスプローラー

リポジトリと代表的な skills

brainstorm
プロジェクト管理専門家

Iterate on an idea with the user, challenging their viewpoint in constructive ways until both parties are content with the outcome. Use when the user wants to develop an idea, refine a half-formed concept, pressure-test their thinking, or mentions "brainstorm".

2026-05-27
compute-curvature
ソフトウェア開発者

Computes the Levi-Civita connection, Christoffel symbols, Riemann curvature tensor, Ricci tensor, and scalar curvature from a Riemannian metric using the local_coordinates JAX library. Use when the user works with curvature quantities, parallel transport, Koszul formula, Bianchi identities, or needs to verify that a metric is flat or that curvature tensor symmetries hold.

2026-05-27
compute-geodesics
ソフトウェア開発者

Solves the geodesic equation and computes exponential and logarithmic maps on Riemannian manifolds using the local_coordinates JAX library. Use when the user works with geodesics, parallel transport along a curve, Taylor expansions of the exponential map in Riemann normal coordinates, injectivity radius, or ODE integration of the geodesic system.

2026-05-27
create-riemannian-metric
ソフトウェア開発者

Builds RiemannianMetric objects in the local_coordinates JAX library from metric component functions, including raising and lowering indices, changing basis, and constructing the inverse metric. Use when the user defines a metric tensor, needs to convert between coordinate and orthonormal bases, or wants to verify symmetry and positive definiteness.

2026-05-27
grill-me
プロジェクト管理専門家

Interview the user relentlessly about a plan or design until reaching shared understanding, resolving each branch of the decision tree. Use when user wants to stress-test a plan, get grilled on their design, or mentions "grill me".

2026-05-27
jax-conformal-frame
データサイエンティスト

Use this skill when constructing, training, evaluating, saving, loading, or documenting the JAX plus Equinox conformal coordinate frame field for disentanglement, a noise-conditional model that learns a local conformal frame J(x) = lambda(x) U(x) from data through score matching, integrability, and independence losses.

2026-05-27
jax-orthogonal-matrix
データサイエンティスト

Use this skill when constructing, applying, training, saving, loading, or documenting a standalone learnable orthogonal matrix in JAX plus Equinox, parameterized by the matrix exponential of a skew-symmetric matrix, the Cayley transform, or a QR factorization.

2026-05-27
jax-orthogonal-net
データサイエンティスト

Use this skill when constructing, applying, training, saving, loading, or documenting a network-predicted orthogonal transformation on vectors in JAX plus Equinox, where a small residual MLP predicts the parameters of an orthogonal matrix from an input, using the matrix exponential, the Cayley transform, or a QR factorization.

2026-05-27
このリポジトリの収集済み skills 20 件中、上位 8 件を表示しています。
linsdex
データサイエンティスト

A JAX-based library for linear stochastic differential equations, state-space models, and Gaussian inference. Use when working with time series interpolation, diffusion models, Kalman filtering, or probabilistic modeling with linear-Gaussian systems.

2026-01-31
probability-paths
データサイエンティスト

Work with probability path distributions for diffusion models, including bridge path marginals, memoryless sampling, and efficient batch computation. Use when you need to sample from or evaluate the distribution p(x_t | y_1) at intermediate times.

2026-01-31
crf-inference
データサイエンティスト

Perform inference in chain-structured Gaussian Conditional Random Fields using efficient message passing. Use for discrete-time probabilistic modeling, computing marginals, sampling joint distributions, or Kalman-style filtering and smoothing.

2026-01-31
diffusion-conversions
データサイエンティスト

Convert between diffusion model representations including clean data predictions (y1), scores, probability flows, and drifts. Use when building or training diffusion-based generative models.

2026-01-31
gaussian-distributions
データサイエンティスト

Work with Gaussian distributions in three parameterizations for numerical stability and efficiency. Use when you need to sample, combine distributions, or convert between mean/covariance and precision/natural forms.

2026-01-31
matrix-operations
データサイエンティスト

Use specialized matrix types with symbolic tags for efficient linear algebra. Use when working with diagonal, block, or tagged matrices to avoid unnecessary dense computations.

2026-01-31
sde-conditioning
データサイエンティスト

Condition Linear SDEs on observations to interpolate sparse data, perform Bayesian inference on time series, or create bridges between boundary conditions. Use when working with time series interpolation, state estimation, or posterior sampling.

2026-01-31
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