Skip to main content

Fast univariate time series models that run in Pyodide

Project description

skaters (demo,docs)

One univariate time-series model to rule them all? For non-price economic series, near enough and you can watch Laplace here.

Documentation and live demos Python and JavaScript

Laplace beats (almost) everything.

Accuracy vs. speed on 894 non-price FRED series: laplace has both the highest held-out log-likelihood and the highest forecasts-per-second, alone in the top-right, while AutoARIMA, AutoETS, SARIMAX, GARCH-t, conformal and NeuralForecast trade accuracy for far more compute.

Laplace is fast, dependency-free, online univariate distributional forecasting in Python and JavaScript (identical to 1e-6, browser-ready via Pyodide). It's a general-purpose forecaster for non-price economic series: on 5,402 continuous non-price FRED change-series Laplace wins the per-series held-out log-likelihood race against eleven of twelve baselines — AutoARIMA, AutoETS, the reference R forecasters (auto.arima, thetaf, ADAM, nnetar), conformal, and zero-shot foundation models — typically on 82–98% of series. The lone exception is GARCH-t, a 50/50 coin-flip that the paper resolves by martingality: Laplace wins decisively on series with mean structure, GARCH-t on near-random-walks.

Not for price/return series: We recommend GARCH-t there instead.

When CRPS is the target: A scoring rule is a settlement rule — match it to what you actually want. skaters defaults to held-out log-likelihood because it ranks reusable densities, and on CRPS laplace still beats most of the competition. But if your target really is CDF shape or threshold behaviour, CRPS is a reasonable contract and a method like conformal prediction may suit — just know it is a different contract, not a better density. (Why skaters ranks by likelihood, by default →)

Install

pip install skaters

Quick start

from skaters import laplace

f = laplace(k=3)
state = None
for y in observations:
    dists, state = f(y, state)
    dists[0].mean              # point forecast
    dists[0].std               # uncertainty
    dists[0].quantile(0.975)   # 95th percentile
    dists[0].logpdf(y)         # log-likelihood
    dists[0].cdf(y)            # CDF at y

Every skater returns list[Dist] — a weighted Gaussian mixture for each horizon $h = 1, \ldots, k$. Point forecasts, uncertainty, density evaluation, and quantiles are all aspects of the same object.

laplace — the general forecaster

skaters exposes exactly one forecaster, laplace. Everything else is a building block (transforms, leaves, ensembles) you can compose. ("skater" is the concept — any (y, state) -> ([Dist], state) function, borrowed from the old timemachines package.) At multi-step horizons (k>1) it is multi-scale by default (below).

from skaters import laplace

f = laplace(k=1)

A likelihood-weighted Bayesian ensemble over a large candidate population (EMA, differencing, drift, Holt, AR, fractional differencing, seasonal, a Yeo-Johnson coordinate grid, a fast/slow two-systems block, and — at multi-step horizons (k>1) — an Ornstein–Uhlenbeck mean-reversion group). Three things are on by default, each a free or near-free win:

  • model first, conform last — the trunk is weighted by likelihood (honest modelling); the terminal leaf is fit by CRPS (objective="crps"). On a 2,500-series FRED study this matches a CRPS specialist on CRPS and lifts likelihood on real data. Switch back with objective="likelihood".
  • lattice projection (sticky=True) — near-Dirac atoms on the exact values a series revisits. Free on continuous data (it vanishes), a large win on grid/repeating series (policy rates, posted prices).
  • coordinate learning — a Yeo-Johnson λ-grid lets the ensemble learn whether the series is simple in a log/multiplicative, sqrt, or linear coordinate.
f = laplace(k=1)                          # CRPS leaf + lattice, both on
f = laplace(k=1, objective="likelihood")  # pure-likelihood leaf
f = laplace(k=1, sticky=False)            # no lattice projection

Calibration state, free. Every arriving point is resolved against the forecasts previously made for it: state["pit"][m-1] is its probability integral transform under the m-step-ahead predictive issued m steps ago (roughly Uniform(0,1) when calibrated) and state["z"][m-1] the same through the standard-normal quantile (roughly N(0,1) — so abs(z) > 4 is an anomaly detector with no extra compute; z is clamped to ±7.03, never infinite). See the anomaly-detection skill.

Price/return series (garch_leaf). The default terminal leaf tracks its scale with an EWMA (RiskMetrics/IGARCH — no variance mean-reversion). For series with volatility clustering and reversion (equity/fx/commodity returns), swap in a GARCH(1,1)-t terminal leaf:

from skaters import laplace, garch_leaf
f = laplace(k=1, leaf=garch_leaf)         # GARCH(1,1) conditional variance + Student-t tails

Not for price/returns, though — there a fitted GARCH-t still wins

Multi-step horizons are multi-scale by default

Natively, laplace(k) reaches horizon h by fanning its one-step model out, and on long horizons the fan-out can inflate the predictive variance. A model on a decimated clock (every s-th observation) reaches the same horizon in round(h/s) of its own steps and stays tight — but is blind to the skipped points. At k>1, laplace runs a full instance per scale (default strides {1, ceil(sqrt(k)), k}) and mixes their predictive Dists per horizon with likelihood softmax weights, so each horizon selects its effective granularity online. At k=1 it is laplace(1); on a 150-series multi-step pilot it is the only variant to win the likelihood race against AutoARIMA, AutoETS, GARCH-t and Prophet at every horizon in {1, 5, 20}.

f = laplace(k=20)                      # scales {1, 5, 20}, mixed by likelihood
f = laplace(k=20, scales=[1, 4, 20])   # or pick the clock grid yourself
f = laplace(k=20, scales=[1])          # opt out: single-scale native fan-out

Specialist behaviour by composition

The named forecasters are thin wrappers; the building blocks compose into specialists when you have a strong prior. Mean reversion (e.g. pairs-trading spreads): the ou_transform reverts to a running mean and its edge grows with the horizon, so feed it k>1

from skaters.conjugate import conjugate
from skaters.leaf import leaf
from skaters.transform import ou_transform, yeo_johnson

f = conjugate(leaf(k=10), ou_transform(kappa=0.1), k=10)                       # linear (spreads)
f = conjugate(conjugate(leaf(k=10), ou_transform(0.1), k=10), yeo_johnson(0.5), k=10)  # positive (vol/rates)

laplace(k>1) already carries an OU group in its pool, so the general forecaster picks up reversion automatically at multi-step horizons. The OU-on-a-coordinate math (the CIR reading) is in papers/tweedie-note.md.

Architecture

Everything is transforms all the way down, with a distributional leaf at the bottom:

$$y ;\xrightarrow{T_1}; y' ;\xrightarrow{T_2}; y'' ;\xrightarrow{\cdots}; \text{leaf} ;\rightarrow; \hat{D}$$

The leaf estimates $\hat{D} = \mathcal{N}(0, \hat\sigma^2)$ from residuals via Welford's algorithm. The prediction in the original space is obtained by inverting the transform chain:

$$\hat{D}_{\text{original}} = T_1^{-1}\bigl(T_2^{-1}\bigl(\cdots\bigl(\hat{D}\bigr)\bigr)\bigr)$$

Every node returns list[Dist]. There is no separate "point forecast" vs "uncertainty" — both are aspects of the same $\hat{D}$.

The key insight

Every "model" is really a transform. An EMA doesn't "predict" — it subtracts a running level $\ell_t$, leaving simpler residuals $\varepsilon_t = y_t - \ell_t$. The prediction comes from inverting the transform chain applied to the leaf's distributional estimate.

The Dist type

A weighted mixture of Gaussians $\sum_{i} w_i ,\mathcal{N}(\mu_i, \sigma_i^2)$. Pure Python (math.erf, math.exp).

from skaters import Dist

d = Dist.gaussian(5.0, 2.0)
d.mean                  # 5.0
d.std                   # 2.0
d.pdf(5.0)              # density at x
d.cdf(3.0)              # P(X <= 3)
d.logpdf(5.0)           # log-likelihood
d.quantile(0.975)       # inverse CDF

# Exact mixture combination (for ensembles)
mix = Dist.combine([d1, d2, d3], weights=[0.5, 0.3, 0.2])

# Propagate through transform inverses
d.shift(10.0)           # translate: mu -> mu + 10
d.scale(2.0)            # scale: mu -> 2*mu, sigma -> 2*sigma
d.affine(2.0, 3.0)      # x -> 2x + 3

# Bound component growth
d.prune(max_components=10)

Transforms

Online bijective maps. Each has a forward (scalar in, scalar out) and an inverse_k that propagates $\text{Dist}$ objects back through the inverse.

Transform Forward Inverse Use case
ema_transform($\alpha$) $y'_t = y_t - \ell_t$ $D \mapsto D + \ell_t$ Remove level
difference() $y't = y_t - y{t-1}$ Cumsum with $\text{Var}$ growing as $\sum \sigma_h^2$ Random walk
drift($\alpha, \lambda$) $y'_t = \Delta y_t - \hat\mu_t$ $y_t + h\hat\mu + \sum\varepsilon$ Random walk + drift
holt_linear($\alpha, \beta$) $y'_t = y_t - (\ell_t + b_t)$ $\ell_t + h \cdot b_t + \varepsilon$ Level + trend (Holt 1957)
ar($p$) $y't = y_t - \sum \hat\phi_j y{t-j}$ AR reconstruction with variance propagation Autoregression (online RLS)
grouped_ar($L$) Same, grouped coefficients Same Long-lag AR with $O(\log L)$ params
fractional_difference($d$) $y'_t = (1-B)^d , y_t$ $(1-B)^{-d}$ Long memory
standardize($\alpha$) $y'_t = (y_t - \hat\mu_t) / \hat\sigma_t$ $D \mapsto \hat\sigma_t \cdot D + \hat\mu_t$ Remove scale
garch($\omega, \alpha, \beta$) $y'_t = y_t / \hat\sigma_t$ $D \mapsto \hat\sigma_t \cdot D$ Volatility clustering
seasonal_difference($s$) $y't = y_t - y{t-s}$ Shift by lagged value Periodicity
power_transform($p$) $y'_t = \text{sign}(y_t)|y_t|^p$ Delta method Tail compression
theta($\alpha$) $y'_t = y_t - \text{SES}_t$ Shift by smoothed level + drift Theta method (M3 winner)
yeo_johnson($\lambda$) Signed Box–Cox to coordinate $\lambda$ Component-wise delta method Coordinate learning (log/root/linear)
ou_transform($\kappa$) Deviation from running mean, OU speed $\kappa$ Exact OU moments (scale + shift) Mean reversion

Conjugation

Transforms compose via conjugation. Given a transform $T$ and a skater $f$:

$$f_{\text{conjugated}}(y) = T^{-1}!\bigl(f\bigl(T(y)\bigr)\bigr)$$

The pipe | notation reads left-to-right (outermost transform first):

from skaters import conjugate, ema, difference, standardize

# diff removes trend, EMA predicts the differenced series
f = conjugate(ema(alpha=0.1, k=3), difference(), k=3)

# Chain: standardize, then difference, then EMA
f = conjugate(
    conjugate(ema(alpha=0.1, k=3), difference(), k=3),
    standardize(),
    k=3,
)
# canonical name: std|diff|ema_t|leaf

Ensembles

Precision-weighted (MSE)

Weights by $w_i \propto 1/\text{MSE}_i$ where $\text{MSE} = \text{bias}^2 + \text{variance}$.

from skaters import precision_weighted_ensemble, ema

f = precision_weighted_ensemble([
    ema(alpha=0.05, k=1),
    ema(alpha=0.2, k=1),
], k=1)

Bayesian (log-likelihood, XGBoost-inspired regularization)

Each model $i$ accumulates a log-weight updated at every observation:

$$\log w_i ;\mathrel{+}=; \eta \cdot \log p_i(y_t) ;-; \lambda \cdot d_i$$

where $\eta$ is the learning rate (shrinkage), $\lambda$ is the complexity penalty, and $d_i$ is the model's depth. Predictions are combined via $\text{Dist.combine}$ with softmax weights.

from skaters import bayesian_ensemble, ema

f = bayesian_ensemble(
    [ema(alpha=0.05, k=1), ema(alpha=0.2, k=1)],
    k=1,
    learning_rate=0.5,       # eta: prevents over-concentrating
    complexity_penalty=0.02, # lambda: penalizes deeper chains
    depths=[1, 1],
)

Adaptive search (beam search over transform grammar)

Grows the candidate population online: expand top performers with new transforms, replay recent history to warm-start, prune losers.

from skaters import search

f = search(
    k=1,
    expand_interval=100,  # expand top performers every 100 obs
    max_depth=3,          # maximum transform chain depth
    replay_buffer=500,    # warm-start new candidates on recent history
    max_pool=30,          # cap active candidates
)

Heavy tails: the scale-mixture leaf

Everything here is judged by predictive log-likelihood. A plain Gaussian leaf gets the location and scale right but the shape wrong on heavy-tailed residuals (returns, macro data), and — crucially — Bayesian model averaging preserves the mean and variance but washes the kurtosis out, so adding heavy leaves to the candidate pool doesn't help.

The fix is the scale-mixture leaf: a fixed dictionary of zero-mean Gaussians N(0, aᵢ·σ) with weights learned online (a Student-t is a Gaussian scale mixture, so this approximates it). It's a plain Dist; the weights are the "discrepancy from N(0,1)" — all on a=1 is Gaussian, mass on larger a is fat tails. It matches the Gaussian leaf on Gaussian data and beats it as tails fatten.

from skaters import scale_mixture_leaf, terminal_leaf_ensemble, leaf

Because mixing washes out shape, the named policies use a terminal-leaf ensemble: the candidates are combined for the mean, then one terminal scale-mixture leaf models the combined residual — so the leaf's shape reaches the output undiluted. On Student-t₃ this takes laplace from a logpdf of ≈ −2.07 (Gaussian-collapsed) to ≈ −1.93, with no cost on Gaussian data.

Dist.crps(y) (closed-form CRPS) is also available as a proper score for benchmarking.

Spec system

Serialize and rebuild any pipeline:

from skaters import (
    build, spec_name, to_json, from_json,
    ema_spec, conjugate_spec, ensemble_spec, diff_spec,
)

spec = ensemble_spec(
    conjugate_spec(ema_spec(0.1, k=1), diff_spec()),
    ema_spec(0.3, k=1),
    k=1,
)

spec_name(spec)     # "ensemble(diff|ema(0.1),ema(0.3))"
j = to_json(spec)   # JSON string
f = build(from_json(j))  # live skater

Writing a custom transform

Any $(T, T^{-1})$ pair where forward is scalar and inverse_k maps list[Dist]:

def my_transform():
    def forward(y, state):
        if state is None:
            return 0.0, {"anchor": y}
        transformed = y - state["anchor"]
        return transformed, {"anchor": y}

    def inverse_k(dists, state):
        return [d.shift(state["anchor"]) for d in dists]

    return forward, inverse_k

JavaScript & the browser

The whole library is also a zero-dependency JavaScript port (docs/js/skaters/) — every transform, ensemble, and named policy. It is verified against the Python reference by a parity suite that checks roughly 100,000 values to 1e-6 (parity/, run in the test suite via tests/test_js_parity.py).

<script type="module">
  import { laplace } from "https://skaters.microprediction.org/js/skaters/index.mjs";
  const f = laplace(1);
  let state = null;
  for (const y of observations) {
    const [dists, st] = f(y, state); state = st;
    dists[0].mean;            // point forecast
    dists[0].quantile(0.975); // 97.5th percentile
  }
</script>

Interactive demos (forecasting playground in native JS, and the real Python package running in Pyodide) live at skaters.microprediction.org/demos.

Design

  • Online only — $O(1)$ per observation, no batch recomputation
  • Distributional — every prediction is a $\text{Dist}$, not a point estimate
  • Composable — transforms chain, ensembles nest, everything returns $\text{Dist}$
  • Pure Python — zero dependencies, only math.erf and math.exp
  • Pyodide compatible — works in the browser via WebAssembly

Theoretical context

The online recursions here are score-driven updates with a Bayesian reading. The EMA level update $\mu_t = \mu_{t-1} + \alpha,(y_t - \mu_{t-1})$ and the GARCH variance update $h_t = h_{t-1} + (1-\delta)(y_t^2 - h_{t-1})$ — the ema_transform and garch/garch_leaf building blocks — are both inverse-Fisher-scaled conditional-score corrections. Via Tweedie's formula, Hansen & Tong (2026, arXiv:2605.15902) show these are the exact Bayesian posterior-mean corrections under a conjugate prior with local precision discounting (with the smoothing factor identified as $\alpha = 1-\delta$, the Gaussian-location case recovering the Kalman filter), and tractable local approximations otherwise. So the volatility transforms are (approximate) Bayesian filters rather than ad-hoc heuristics. See also Creal, Koopman & Lucas (2013) and Harvey (2013) for the score-driven / GAS framework.

The same identity is the backbone of modern denoising / score-based diffusion models: the posterior mean of a clean signal given a noisy observation is "observation $+\ \sigma^2 \times$ score of the marginal density," which is what lets a diffusion denoiser be read as a score estimator (Efron 2011; Vincent 2011; Song & Ermon 2019). Each forecast step here is the time-series analogue — denoising the next observation toward the latent level or variance. A short essay on this — Kalman, empirical Bayes, and diffusion as one identity — is in papers/tweedie-note.md.

Lineage

This package distills ideas from timemachines, which provided a common skater interface for dozens of time series packages. This is a from-scratch rewrite focused on speed, distributional predictions, and browser compatibility.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

skaters-0.12.0.tar.gz (47.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

skaters-0.12.0-py3-none-any.whl (58.0 kB view details)

Uploaded Python 3

File details

Details for the file skaters-0.12.0.tar.gz.

File metadata

  • Download URL: skaters-0.12.0.tar.gz
  • Upload date:
  • Size: 47.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for skaters-0.12.0.tar.gz
Algorithm Hash digest
SHA256 4d106afa44d568d78e63bf569cb0affe3ae9c568cdfab0792801e125ccfb37bf
MD5 6bb1a50c0d541737f53b6faef989ed33
BLAKE2b-256 e007d5e21c5e8b08f4c144eaedd455d811f7566258348225bcb89f06754236b3

See more details on using hashes here.

File details

Details for the file skaters-0.12.0-py3-none-any.whl.

File metadata

  • Download URL: skaters-0.12.0-py3-none-any.whl
  • Upload date:
  • Size: 58.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for skaters-0.12.0-py3-none-any.whl
Algorithm Hash digest
SHA256 9d68cdd8710b3744daef62d26bec49abb77f4994a0007b85a6086100740e090b
MD5 99e020411fb6bc2402235d934deed6fa
BLAKE2b-256 c88753addad8706fec776c89e34e67b68110d1e680411d462bc530e2e0065709

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page