New ops: CumSum, Sort, Argsort, Greater, MaxAxis — all bound to mlx-c. TopP (nucleus) sampling now fully implemented: sorts probabilities descending, computes cumulative sum, masks tokens beyond the threshold, and scatters the mask back to original positions via argsort. MinP sampling now fully implemented: computes softmax, finds max probability, masks tokens below min_p * max_prob. Both were previously stubs that passed through logits unchanged. 10 new tests (CumSum variants, Sort, Argsort, Greater, MaxAxis, TopP, MinP). 176 total tests passing. Co-Authored-By: Virgil <virgil@lethean.io>
132 lines
3.2 KiB
Go
132 lines
3.2 KiB
Go
//go:build darwin && arm64
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package metal
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import (
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"math"
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)
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// Sampler transforms logits into a sampled token index.
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type Sampler interface {
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Sample(logits *Array) *Array
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}
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// newSampler creates a composable sampler chain from the given parameters.
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// Order: TopP -> MinP -> TopK -> Temperature -> categorical sample.
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func newSampler(temp, topP, minP float32, topK int) Sampler {
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if temp == 0 {
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return greedy{}
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}
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var samplers []Sampler
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if topP > 0 && topP < 1 {
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samplers = append(samplers, TopP(topP))
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}
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if minP > 0 {
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samplers = append(samplers, MinPSampler(minP))
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}
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if topK > 0 {
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samplers = append(samplers, TopKSampler(topK))
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}
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samplers = append(samplers, Temperature(temp))
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return chain(samplers)
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}
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// chain applies a sequence of samplers, then samples from the result.
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type chain []Sampler
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func (c chain) Sample(logits *Array) *Array {
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for _, s := range c {
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logits = s.Sample(logits)
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}
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// Final categorical sample from log-probabilities
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return RandomCategorical(logits)
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}
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// greedy returns the argmax token.
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type greedy struct{}
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func (greedy) Sample(logits *Array) *Array {
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return Argmax(logits, -1, false)
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}
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// Temperature scales logits by 1/temp.
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type Temperature float32
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func (t Temperature) Sample(logits *Array) *Array {
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return MulScalar(logits, 1.0/float32(t))
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}
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// TopKSampler masks all but the top-k logits.
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type TopKSampler int
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func (k TopKSampler) Sample(logits *Array) *Array {
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neg := Negative(logits)
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mask := Argpartition(neg, int(k)-1, -1)
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// Slice the indices beyond top-k
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mask = SliceAxis(mask, -1, int32(k), int32(logits.Dim(-1)))
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return PutAlongAxis(logits, mask, FromValue(float32(math.Inf(-1))), -1)
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}
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// TopP implements nucleus (top-p) sampling.
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// Keeps the smallest set of tokens whose cumulative probability exceeds p.
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type TopP float32
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func (p TopP) Sample(logits *Array) *Array {
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// Convert logits to probabilities
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probs := Softmax(logits)
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// Sort descending via argsort of negated probs
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neg := Negative(probs)
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sortIdx := Argsort(neg, -1)
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sortedProbs := TakeAlongAxis(probs, sortIdx, -1)
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// Cumulative sum of sorted probabilities
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cumProbs := CumSum(sortedProbs, -1, false, true)
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// Mask in sorted space: keep tokens where cumprob (excluding current) <= threshold
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shiftedCum := Subtract(cumProbs, sortedProbs)
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threshold := FromValue(float32(p))
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sortedMask := Where(
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Greater(shiftedCum, threshold),
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FromValue(float32(math.Inf(-1))),
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FromValue(float32(0)),
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)
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// Scatter mask back to original positions
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mask := PutAlongAxis(
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Zeros(logits.Shape(), DTypeFloat32),
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sortIdx,
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sortedMask,
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-1,
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)
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// Apply mask: -inf where excluded, original logit where kept
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return Where(
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Greater(FromValue(float32(0)), mask),
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FromValue(float32(math.Inf(-1))),
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logits,
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)
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}
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// MinPSampler masks tokens whose probability is below min_p * max_prob.
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type MinPSampler float32
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func (p MinPSampler) Sample(logits *Array) *Array {
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// Convert logits to probabilities
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probs := Softmax(logits)
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// Find the maximum probability
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maxProb := MaxAxis(probs, -1, true)
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// Threshold = min_p * max_prob
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threshold := MulScalar(maxProb, float32(p))
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// Mask tokens below threshold
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mask := Where(
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Greater(threshold, probs),
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FromValue(float32(math.Inf(-1))),
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logits,
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)
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return mask
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}
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