00483539ad
Eight-task TDD-shaped plan covering pure Similarity + ContextualMatchScore functions, Score extension with ContextWeight=2.0, two new sqlc queries (ListActiveContextualLikesForUser, GetCurrentSessionVectorForUser), LoadCandidates signature change to accept currentVector, radio handler wiring, end-to-end contextual ranking test, and final verification. Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
1415 lines
50 KiB
Markdown
1415 lines
50 KiB
Markdown
# M3 Session Similarity + contextual_match_score Implementation Plan
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> **For agentic workers:** REQUIRED SUB-SKILL: Use superpowers:subagent-driven-development (recommended) or superpowers:executing-plans to implement this plan task-by-task. Steps use checkbox (`- [ ]`) syntax for tracking.
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**Goal:** Add the `contextual_match_score` term to the recommendation scoring formula by computing weighted-Jaccard similarity between the user's current session vector and each candidate track's stored `contextual_likes` session vectors. Closes M3.
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**Architecture:** New pure `Similarity` + `ContextualMatchScore` functions in `internal/recommendation/similarity.go` — set Jaccard on tags + artists, weighted 0.7/0.3, hardcoded for v1. `Score()` gains `ContextualMatchScore` input + `ContextWeight` weight. `LoadCandidates` accepts a `currentVector` and bulk-fetches the user's active `contextual_likes` once, mapping by `track_id` and computing per-candidate max similarity. `internal/api/radio.go` reads the user's most recent open session's `session_vector_at_play` via a new `GetCurrentSessionVectorForUser` query and threads it through.
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**Tech Stack:** Go 1.23 + sqlc + pgx/v5. No web changes.
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**Reference:** design spec at `docs/superpowers/specs/2026-04-27-m3-similarity-design.md`.
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---
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## File Structure
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**New server files:**
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| File | Responsibility |
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|---|---|
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| `internal/recommendation/similarity.go` | Pure: `SimilarityWeights` struct, `DefaultSimilarityWeights`, `Similarity(a, b SessionVector, w SimilarityWeights) float64`, `ContextualMatchScore(current SessionVector, likes []SessionVector, w SimilarityWeights) float64`. |
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| `internal/recommendation/similarity_test.go` | Pure unit tests (table-driven). |
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**Modified server files:**
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| File | Change |
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|---|---|
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| `internal/recommendation/score.go` | `ScoringInputs` gains `ContextualMatchScore float64`. `ScoringWeights` gains `ContextWeight float64`. `Score()` adds `+ in.ContextualMatchScore * w.ContextWeight`. |
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| `internal/recommendation/score_test.go` | Three new tests for the new term. |
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| `internal/recommendation/candidates.go` | `LoadCandidates` signature gains `currentVector SessionVector` parameter. Body bulk-fetches user's contextual_likes, groups by track_id, populates per-candidate `ContextualMatchScore`. |
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| `internal/recommendation/candidates_test.go` | Six new tests for contextual scoring. |
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| `internal/db/queries/contextual_likes.sql` | Add `ListActiveContextualLikesForUser :many`. |
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| `internal/db/queries/events.sql` | Add `GetCurrentSessionVectorForUser :one`. |
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| `internal/db/dbq/contextual_likes.sql.go` | Generated bindings. |
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| `internal/db/dbq/events.sql.go` | Generated bindings. |
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| `internal/config/config.go` | `RecommendationConfig` gains `ContextWeight float64` (yaml `context_weight`, default `2.0`). |
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| `internal/api/radio.go` | Fetch current session vector before `LoadCandidates`, build `ContextWeight` into `ScoringWeights`, thread `currentVector` into `LoadCandidates`. |
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| `internal/api/auth_test.go` | `recCfg` test-helper builds `ContextWeight: 2.0`. |
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| `internal/api/radio_test.go` | One new end-to-end test: contextual ranking. |
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**No web changes.**
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---
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## Task 1: Pure `Similarity` function (Jaccard + axis weights)
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**Files:**
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- Create: `internal/recommendation/similarity.go`
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- Create: `internal/recommendation/similarity_test.go`
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- [ ] **Step 1: Write the failing tests for `Similarity`**
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Create `internal/recommendation/similarity_test.go`:
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```go
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package recommendation
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import (
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"math"
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"testing"
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)
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func approxEq(a, b float64) bool { return math.Abs(a-b) < 1e-9 }
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func TestSimilarity_IdenticalVectors_Returns1(t *testing.T) {
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v := SessionVector{
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Artists: []string{"a1", "a2"},
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Tags: map[string]int{"rock": 2, "indie": 1},
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}
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got := Similarity(v, v, DefaultSimilarityWeights)
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if !approxEq(got, 1.0) {
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t.Errorf("Similarity(v,v) = %v, want 1.0", got)
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}
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}
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func TestSimilarity_FullyDisjoint_Returns0(t *testing.T) {
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a := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
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b := SessionVector{Artists: []string{"a2"}, Tags: map[string]int{"jazz": 1}}
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got := Similarity(a, b, DefaultSimilarityWeights)
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if !approxEq(got, 0.0) {
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t.Errorf("disjoint = %v, want 0.0", got)
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}
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}
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func TestSimilarity_TagsOnlyShared_AppliesTagsWeight(t *testing.T) {
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// Shared tags fully (Jaccard=1), no shared artists (Jaccard=0).
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a := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
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b := SessionVector{Artists: []string{"a2"}, Tags: map[string]int{"rock": 5}}
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got := Similarity(a, b, DefaultSimilarityWeights)
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// Expected: 0.7 * 1.0 + 0.3 * 0.0 = 0.7
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if !approxEq(got, 0.7) {
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t.Errorf("tags-only = %v, want 0.7", got)
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}
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}
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func TestSimilarity_ArtistsOnlyShared_AppliesArtistsWeight(t *testing.T) {
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a := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
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b := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"jazz": 1}}
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got := Similarity(a, b, DefaultSimilarityWeights)
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// Expected: 0.7 * 0.0 + 0.3 * 1.0 = 0.3
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if !approxEq(got, 0.3) {
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t.Errorf("artists-only = %v, want 0.3", got)
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}
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}
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func TestSimilarity_EitherSeed_Returns0(t *testing.T) {
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v := SessionVector{Artists: []string{"a"}, Tags: map[string]int{"rock": 1}}
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seed := SessionVector{Seed: true, Artists: []string{"a"}, Tags: map[string]int{"rock": 1}}
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if got := Similarity(v, seed, DefaultSimilarityWeights); !approxEq(got, 0.0) {
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t.Errorf("v vs seed = %v, want 0.0", got)
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}
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if got := Similarity(seed, v, DefaultSimilarityWeights); !approxEq(got, 0.0) {
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t.Errorf("seed vs v = %v, want 0.0", got)
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}
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}
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func TestSimilarity_BothEmpty_Returns0NotNaN(t *testing.T) {
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a := SessionVector{}
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b := SessionVector{}
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got := Similarity(a, b, DefaultSimilarityWeights)
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if math.IsNaN(got) || !approxEq(got, 0.0) {
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t.Errorf("empty = %v, want 0.0 (not NaN)", got)
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}
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}
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func TestSimilarity_OneAxisEmptyOneSide_AxisContributesZero(t *testing.T) {
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// a has tags but no artists; b has artists but no tags.
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a := SessionVector{Tags: map[string]int{"rock": 1}}
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b := SessionVector{Artists: []string{"a1"}}
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got := Similarity(a, b, DefaultSimilarityWeights)
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// tags axis: A={rock}, B={} → union={rock}, intersect={} → 0
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// artists axis: A={}, B={a1} → union={a1}, intersect={} → 0
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if !approxEq(got, 0.0) {
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t.Errorf("one-axis-each = %v, want 0.0", got)
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}
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}
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func TestSimilarity_PartialTagsOverlap(t *testing.T) {
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// Tags A={rock,indie}, B={rock,jazz}: intersect=1, union=3, J=1/3
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// Artists fully shared: J=1
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a := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1, "indie": 1}}
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b := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1, "jazz": 1}}
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got := Similarity(a, b, DefaultSimilarityWeights)
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want := 0.7*(1.0/3.0) + 0.3*1.0
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if !approxEq(got, want) {
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t.Errorf("partial = %v, want %v", got, want)
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}
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}
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func TestSimilarity_BagOfCountsCollapsesToSet(t *testing.T) {
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// Same tag keysets, different counts → set-Jaccard collapses to 1.0.
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a := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 2, "indie": 1}}
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b := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 5, "indie": 3}}
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got := Similarity(a, b, DefaultSimilarityWeights)
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if !approxEq(got, 1.0) {
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t.Errorf("set-collapse = %v, want 1.0", got)
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}
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}
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```
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- [ ] **Step 2: Run tests to verify they fail**
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Run: `go test ./internal/recommendation/ -run Similarity -v`
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Expected: FAIL with "undefined: Similarity" / "undefined: DefaultSimilarityWeights".
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- [ ] **Step 3: Write minimal `Similarity` implementation**
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Create `internal/recommendation/similarity.go`:
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```go
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package recommendation
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// SimilarityWeights balances the per-axis contribution to the weighted Jaccard
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// score. v1 hardcodes the defaults — operators cannot tune via YAML. If
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// telemetry justifies it, expose under recommendation.similarity.* later.
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type SimilarityWeights struct {
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TagsWeight float64
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ArtistsWeight float64
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}
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// DefaultSimilarityWeights is the v1 axis balance per the M3 design.
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// Tags carry more signal than artists because a session's "vibe" tracks
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// genre more directly than artist identity (a session can mix artists
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// within a genre but rarely mixes genres).
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var DefaultSimilarityWeights = SimilarityWeights{
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TagsWeight: 0.7,
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ArtistsWeight: 0.3,
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}
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// Similarity returns weighted-Jaccard similarity in [0, 1] between two
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// session vectors. Returns 0 if either input is Seed=true (low-confidence
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// vectors don't contribute to scoring).
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func Similarity(a, b SessionVector, w SimilarityWeights) float64 {
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if a.Seed || b.Seed {
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return 0.0
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}
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tagJ := setJaccardKeys(a.Tags, b.Tags)
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artistJ := setJaccardSlice(a.Artists, b.Artists)
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return tagJ*w.TagsWeight + artistJ*w.ArtistsWeight
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}
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// setJaccardKeys collapses two map keysets to sets and returns
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// |A ∩ B| / |A ∪ B|. Both empty → 0 (not NaN).
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func setJaccardKeys(a, b map[string]int) float64 {
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if len(a) == 0 && len(b) == 0 {
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return 0.0
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}
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intersect := 0
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for k := range a {
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if _, ok := b[k]; ok {
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intersect++
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}
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}
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union := len(a) + len(b) - intersect
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if union == 0 {
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return 0.0
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}
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return float64(intersect) / float64(union)
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}
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// setJaccardSlice deduplicates each input slice into a set and returns
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// |A ∩ B| / |A ∪ B|. Both empty → 0 (not NaN).
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func setJaccardSlice(a, b []string) float64 {
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if len(a) == 0 && len(b) == 0 {
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return 0.0
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}
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aset := make(map[string]struct{}, len(a))
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for _, x := range a {
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aset[x] = struct{}{}
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}
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bset := make(map[string]struct{}, len(b))
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for _, x := range b {
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bset[x] = struct{}{}
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}
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intersect := 0
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for k := range aset {
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if _, ok := bset[k]; ok {
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intersect++
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}
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}
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union := len(aset) + len(bset) - intersect
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if union == 0 {
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return 0.0
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}
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return float64(intersect) / float64(union)
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}
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```
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- [ ] **Step 4: Run tests to verify they pass**
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Run: `go test ./internal/recommendation/ -run Similarity -v`
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Expected: PASS for all 9 tests.
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- [ ] **Step 5: Commit**
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```bash
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git add internal/recommendation/similarity.go internal/recommendation/similarity_test.go
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git commit -m "feat(recommendation): add pure Similarity function with weighted Jaccard"
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```
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---
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## Task 2: `ContextualMatchScore` convenience function
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**Files:**
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- Modify: `internal/recommendation/similarity.go` (append)
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- Modify: `internal/recommendation/similarity_test.go` (append)
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- [ ] **Step 1: Write the failing tests**
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Append to `internal/recommendation/similarity_test.go`:
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```go
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func TestContextualMatchScore_NoLikes_Returns0(t *testing.T) {
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current := SessionVector{Artists: []string{"a"}, Tags: map[string]int{"rock": 1}}
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got := ContextualMatchScore(current, nil, DefaultSimilarityWeights)
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if !approxEq(got, 0.0) {
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t.Errorf("no likes = %v, want 0.0", got)
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}
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got = ContextualMatchScore(current, []SessionVector{}, DefaultSimilarityWeights)
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if !approxEq(got, 0.0) {
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t.Errorf("empty likes = %v, want 0.0", got)
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}
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}
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func TestContextualMatchScore_CurrentSeed_Returns0(t *testing.T) {
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current := SessionVector{Seed: true}
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likes := []SessionVector{
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{Artists: []string{"a"}, Tags: map[string]int{"rock": 1}},
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}
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got := ContextualMatchScore(current, likes, DefaultSimilarityWeights)
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if !approxEq(got, 0.0) {
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t.Errorf("current seed = %v, want 0.0", got)
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}
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}
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func TestContextualMatchScore_AllLikesSeed_Returns0(t *testing.T) {
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current := SessionVector{Artists: []string{"a"}, Tags: map[string]int{"rock": 1}}
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likes := []SessionVector{
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{Seed: true, Artists: []string{"a"}, Tags: map[string]int{"rock": 1}},
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{Seed: true, Artists: []string{"a"}, Tags: map[string]int{"rock": 1}},
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}
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got := ContextualMatchScore(current, likes, DefaultSimilarityWeights)
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if !approxEq(got, 0.0) {
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t.Errorf("all-seed likes = %v, want 0.0", got)
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}
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}
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func TestContextualMatchScore_TakesMax(t *testing.T) {
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// Three likes: full match, partial match, mismatch. Expect full match (1.0).
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current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
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likes := []SessionVector{
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{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}, // 1.0
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{Artists: []string{"a2"}, Tags: map[string]int{"rock": 1}}, // 0.7
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{Artists: []string{"a99"}, Tags: map[string]int{"jazz": 1}}, // 0.0
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}
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got := ContextualMatchScore(current, likes, DefaultSimilarityWeights)
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if !approxEq(got, 1.0) {
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t.Errorf("takes-max = %v, want 1.0", got)
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}
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}
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func TestContextualMatchScore_FiltersSeedThenMaxes(t *testing.T) {
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// One Seed=true match (would be 1.0 if not filtered) + one partial match.
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current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
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likes := []SessionVector{
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{Seed: true, Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}},
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{Artists: []string{"a2"}, Tags: map[string]int{"rock": 1}},
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}
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got := ContextualMatchScore(current, likes, DefaultSimilarityWeights)
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// Seed=true filtered out → only partial match counts → 0.7
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if !approxEq(got, 0.7) {
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t.Errorf("filter-then-max = %v, want 0.7", got)
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}
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}
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```
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- [ ] **Step 2: Run tests to verify they fail**
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Run: `go test ./internal/recommendation/ -run ContextualMatchScore -v`
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Expected: FAIL with "undefined: ContextualMatchScore".
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- [ ] **Step 3: Append `ContextualMatchScore` to `similarity.go`**
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Append to `internal/recommendation/similarity.go`:
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```go
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// ContextualMatchScore returns the maximum Similarity between the current
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// session vector and any non-seed entry in likes. Returns 0 when:
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// - current.Seed is true (no meaningful current context)
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// - likes is empty after filtering out Seed=true entries
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//
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// The "max" semantics means a single strong contextual match dominates
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// over many weak ones — we want to surface the track because it was liked
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// in *some* matching context, not because it was vaguely-liked in many.
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func ContextualMatchScore(current SessionVector, likes []SessionVector, w SimilarityWeights) float64 {
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if current.Seed {
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return 0.0
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}
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best := 0.0
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for _, l := range likes {
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if l.Seed {
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continue
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}
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s := Similarity(current, l, w)
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if s > best {
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best = s
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}
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}
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return best
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}
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```
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- [ ] **Step 4: Run tests to verify they pass**
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Run: `go test ./internal/recommendation/ -run ContextualMatchScore -v`
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Expected: PASS for all 5 tests.
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- [ ] **Step 5: Commit**
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```bash
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git add internal/recommendation/similarity.go internal/recommendation/similarity_test.go
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git commit -m "feat(recommendation): add ContextualMatchScore (max over non-seed likes)"
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```
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---
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## Task 3: Extend `Score` with `ContextualMatchScore` + `ContextWeight`
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|
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**Files:**
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- Modify: `internal/recommendation/score.go`
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- Modify: `internal/recommendation/score_test.go`
|
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|
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- [ ] **Step 1: Write the failing tests**
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|
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Append to `internal/recommendation/score_test.go`:
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```go
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func TestScore_ContextualMatch_PerfectMatchAtWeight2(t *testing.T) {
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w := defaultWeights()
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w.ContextWeight = 2.0
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in := ScoringInputs{ContextualMatchScore: 1.0}
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got := Score(in, w, time.Now(), fixedRNG(0.5))
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// base 1.0 + recency 1.0 (never played) + contextual 2.0 = 4.0
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want := 4.0
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if math.Abs(got-want) > 1e-9 {
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t.Errorf("score = %v, want %v", got, want)
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}
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}
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func TestScore_ContextualMatch_HalfMatchAtWeight2(t *testing.T) {
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w := defaultWeights()
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w.ContextWeight = 2.0
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in := ScoringInputs{ContextualMatchScore: 0.5}
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got := Score(in, w, time.Now(), fixedRNG(0.5))
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// base 1.0 + recency 1.0 + contextual 1.0 = 3.0
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want := 3.0
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if math.Abs(got-want) > 1e-9 {
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t.Errorf("score = %v, want %v", got, want)
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}
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}
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func TestScore_ContextualMatch_ZeroNoEffect(t *testing.T) {
|
||
wWithCtx := defaultWeights()
|
||
wWithCtx.ContextWeight = 2.0
|
||
withCtx := Score(ScoringInputs{ContextualMatchScore: 0}, wWithCtx, time.Now(), fixedRNG(0.5))
|
||
withoutCtx := Score(ScoringInputs{}, defaultWeights(), time.Now(), fixedRNG(0.5))
|
||
if math.Abs(withCtx-withoutCtx) > 1e-9 {
|
||
t.Errorf("score-with-zero-ctx = %v, score-without = %v; should be equal", withCtx, withoutCtx)
|
||
}
|
||
}
|
||
```
|
||
|
||
- [ ] **Step 2: Run tests to verify they fail**
|
||
|
||
Run: `go test ./internal/recommendation/ -run Score -v`
|
||
|
||
Expected: FAIL — `ScoringInputs` has no `ContextualMatchScore`, `ScoringWeights` has no `ContextWeight`.
|
||
|
||
- [ ] **Step 3: Extend `score.go`**
|
||
|
||
Modify `internal/recommendation/score.go`. Replace the file contents with:
|
||
|
||
```go
|
||
// Package recommendation implements the weighted-shuffle scoring engine
|
||
// from spec §6. The Score function is pure and takes an injectable RNG so
|
||
// tests can pin jitter to deterministic values.
|
||
package recommendation
|
||
|
||
import (
|
||
"time"
|
||
)
|
||
|
||
// ScoringInputs are the per-track facts the score function consumes.
|
||
// ContextualMatchScore is in [0, 1] — max similarity between the user's
|
||
// current session vector and any non-seed contextual_like row for this
|
||
// track. Set by LoadCandidates after a bulk fetch.
|
||
type ScoringInputs struct {
|
||
IsGeneralLiked bool
|
||
LastPlayedAt *time.Time // nil = never played
|
||
PlayCount int // total play_events
|
||
SkipCount int // play_events with was_skipped=true
|
||
ContextualMatchScore float64 // [0, 1]; 0 when no signal
|
||
}
|
||
|
||
// ScoringWeights are the operator-tunable knobs. Defaults live in
|
||
// config.RecommendationConfig and are propagated here per request.
|
||
type ScoringWeights struct {
|
||
BaseWeight float64
|
||
LikeBoost float64
|
||
RecencyWeight float64
|
||
SkipPenalty float64
|
||
JitterMagnitude float64
|
||
ContextWeight float64
|
||
}
|
||
|
||
// Score computes the weighted-shuffle score per spec §6:
|
||
//
|
||
// score = base
|
||
// + (is_general_liked ? LikeBoost : 0)
|
||
// + recency_decay * RecencyWeight
|
||
// - skip_ratio * SkipPenalty
|
||
// + contextual_match_score * ContextWeight
|
||
// + small_random_jitter
|
||
//
|
||
// Higher score = more likely to surface. rng is a function returning a
|
||
// uniform sample in [0,1) — pass math/rand.Float64 in production, a fixed
|
||
// value in tests.
|
||
func Score(in ScoringInputs, w ScoringWeights, now time.Time, rng func() float64) float64 {
|
||
s := w.BaseWeight
|
||
if in.IsGeneralLiked {
|
||
s += w.LikeBoost
|
||
}
|
||
s += recencyDecay(in.LastPlayedAt, now) * w.RecencyWeight
|
||
s -= skipRatio(in.PlayCount, in.SkipCount) * w.SkipPenalty
|
||
s += in.ContextualMatchScore * w.ContextWeight
|
||
s += (rng()*2 - 1) * w.JitterMagnitude
|
||
return s
|
||
}
|
||
|
||
// recencyDecay returns a value in [0, 1]:
|
||
// - never played → 1.0 (cold-start tracks compete favorably with stale ones).
|
||
// - age < 30 days → linear ramp age_days / 30.
|
||
// - age ≥ 30 days → 1.0 (capped).
|
||
//
|
||
// Negative ages (clock skew) clamp to 0 to avoid math weirdness.
|
||
func recencyDecay(lastPlayed *time.Time, now time.Time) float64 {
|
||
if lastPlayed == nil {
|
||
return 1.0
|
||
}
|
||
age := now.Sub(*lastPlayed)
|
||
days := age.Hours() / 24
|
||
if days < 0 {
|
||
return 0.0
|
||
}
|
||
if days >= 30 {
|
||
return 1.0
|
||
}
|
||
return days / 30.0
|
||
}
|
||
|
||
// skipRatio returns skips/plays in [0, 1]; never-played tracks return 0
|
||
// rather than dividing by zero, so they aren't penalized.
|
||
func skipRatio(plays, skips int) float64 {
|
||
if plays == 0 {
|
||
return 0.0
|
||
}
|
||
return float64(skips) / float64(plays)
|
||
}
|
||
```
|
||
|
||
- [ ] **Step 4: Run tests to verify they pass**
|
||
|
||
Run: `go test ./internal/recommendation/ -run Score -v`
|
||
|
||
Expected: PASS for all existing Score tests + 3 new contextual tests.
|
||
|
||
- [ ] **Step 5: Commit**
|
||
|
||
```bash
|
||
git add internal/recommendation/score.go internal/recommendation/score_test.go
|
||
git commit -m "feat(recommendation): extend Score with ContextualMatchScore + ContextWeight"
|
||
```
|
||
|
||
---
|
||
|
||
## Task 4: New sqlc queries for current vector + contextual likes lookup
|
||
|
||
**Files:**
|
||
- Modify: `internal/db/queries/contextual_likes.sql`
|
||
- Modify: `internal/db/queries/events.sql`
|
||
- Generated: `internal/db/dbq/contextual_likes.sql.go`
|
||
- Generated: `internal/db/dbq/events.sql.go`
|
||
|
||
- [ ] **Step 1: Add `ListActiveContextualLikesForUser` query**
|
||
|
||
Append to `internal/db/queries/contextual_likes.sql`:
|
||
|
||
```sql
|
||
-- name: ListActiveContextualLikesForUser :many
|
||
-- Returns all the user's active (non-soft-deleted) contextual_likes with
|
||
-- non-null vectors. Cardinality is bounded by the user's actual like-while-
|
||
-- playing history — typically tens to low hundreds. Used by the engine to
|
||
-- compute contextual_match_score for the candidate pool.
|
||
SELECT track_id, session_vector
|
||
FROM contextual_likes
|
||
WHERE user_id = $1
|
||
AND deleted_at IS NULL
|
||
AND session_vector IS NOT NULL;
|
||
```
|
||
|
||
- [ ] **Step 2: Add `GetCurrentSessionVectorForUser` query**
|
||
|
||
Append to `internal/db/queries/events.sql`:
|
||
|
||
```sql
|
||
-- name: GetCurrentSessionVectorForUser :one
|
||
-- Returns the session_vector_at_play of the user's most recent play_event
|
||
-- in a still-active (un-timed-out) session. NoRows means no current vector.
|
||
-- Joined with play_sessions so closed sessions don't leak stale vectors.
|
||
SELECT pe.session_vector_at_play
|
||
FROM play_events pe
|
||
JOIN play_sessions s ON s.id = pe.session_id
|
||
WHERE pe.user_id = $1
|
||
AND s.ended_at IS NULL
|
||
ORDER BY pe.started_at DESC
|
||
LIMIT 1;
|
||
```
|
||
|
||
- [ ] **Step 3: Run sqlc generate**
|
||
|
||
Run: `make generate` (or `cd internal/db && sqlc generate` if the Makefile target differs).
|
||
|
||
Expected: `internal/db/dbq/contextual_likes.sql.go` gains `ListActiveContextualLikesForUser` method; `internal/db/dbq/events.sql.go` gains `GetCurrentSessionVectorForUser`.
|
||
|
||
- [ ] **Step 4: Verify compile**
|
||
|
||
Run: `go build ./...`
|
||
|
||
Expected: clean compile (no test-side changes yet, just generated bindings).
|
||
|
||
- [ ] **Step 5: Commit**
|
||
|
||
```bash
|
||
git add internal/db/queries/contextual_likes.sql internal/db/queries/events.sql internal/db/dbq/
|
||
git commit -m "feat(db): add similarity lookup queries (ListActiveContextualLikesForUser, GetCurrentSessionVectorForUser)"
|
||
```
|
||
|
||
---
|
||
|
||
## Task 5: Extend `LoadCandidates` to compute per-candidate contextual scores
|
||
|
||
**Files:**
|
||
- Modify: `internal/recommendation/candidates.go`
|
||
- Modify: `internal/recommendation/candidates_test.go`
|
||
|
||
- [ ] **Step 1: Write failing tests for `LoadCandidates` contextual behavior**
|
||
|
||
Append to `internal/recommendation/candidates_test.go`:
|
||
|
||
```go
|
||
import (
|
||
"context"
|
||
"encoding/json"
|
||
"testing"
|
||
"time"
|
||
)
|
||
|
||
// helperInsertContextualLike inserts a contextual_like row with the given
|
||
// session_vector marshaled to JSON. Returns nothing — the test asserts via
|
||
// LoadCandidates output. Bypasses playevents.CaptureContextualLikeIfPlaying
|
||
// because we want full control over the stored vector for these unit tests.
|
||
func helperInsertContextualLike(t *testing.T, f fixture, trackID pgtype.UUID, vec SessionVector) {
|
||
t.Helper()
|
||
raw, err := json.Marshal(vec)
|
||
if err != nil {
|
||
t.Fatalf("marshal: %v", err)
|
||
}
|
||
if _, err := f.pool.Exec(context.Background(),
|
||
`INSERT INTO contextual_likes (user_id, track_id, session_vector) VALUES ($1, $2, $3)`,
|
||
f.user, trackID, raw); err != nil {
|
||
t.Fatalf("insert: %v", err)
|
||
}
|
||
}
|
||
|
||
func TestLoadCandidates_NoContextualLikes_AllZero(t *testing.T) {
|
||
f := newFixture(t, 5)
|
||
current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
got, err := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, current)
|
||
if err != nil {
|
||
t.Fatalf("load: %v", err)
|
||
}
|
||
for _, c := range got {
|
||
if c.Inputs.ContextualMatchScore != 0 {
|
||
t.Errorf("track %s ContextualMatchScore = %v, want 0", c.Track.Title, c.Inputs.ContextualMatchScore)
|
||
}
|
||
}
|
||
}
|
||
|
||
func TestLoadCandidates_OneMatchingLike_ScoresPositive(t *testing.T) {
|
||
f := newFixture(t, 3)
|
||
target := f.tracks[1]
|
||
likeVec := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
helperInsertContextualLike(t, f, target.ID, likeVec)
|
||
|
||
current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
got, err := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, current)
|
||
if err != nil {
|
||
t.Fatalf("load: %v", err)
|
||
}
|
||
var found bool
|
||
for _, c := range got {
|
||
if c.Track.ID == target.ID {
|
||
found = true
|
||
if c.Inputs.ContextualMatchScore < 0.99 {
|
||
t.Errorf("target ContextualMatchScore = %v, want ~1.0", c.Inputs.ContextualMatchScore)
|
||
}
|
||
} else {
|
||
if c.Inputs.ContextualMatchScore != 0 {
|
||
t.Errorf("non-target track has ContextualMatchScore = %v", c.Inputs.ContextualMatchScore)
|
||
}
|
||
}
|
||
}
|
||
if !found {
|
||
t.Error("target track missing from candidate list")
|
||
}
|
||
}
|
||
|
||
func TestLoadCandidates_MultipleMatchingLikes_TakesMax(t *testing.T) {
|
||
f := newFixture(t, 3)
|
||
target := f.tracks[1]
|
||
// Three likes on the same track: weak, strong, medium. Expect strong.
|
||
helperInsertContextualLike(t, f, target.ID, SessionVector{
|
||
Artists: []string{"a99"}, Tags: map[string]int{"jazz": 1},
|
||
})
|
||
helperInsertContextualLike(t, f, target.ID, SessionVector{
|
||
Artists: []string{"a1"}, Tags: map[string]int{"rock": 1},
|
||
})
|
||
helperInsertContextualLike(t, f, target.ID, SessionVector{
|
||
Artists: []string{"a1"}, Tags: map[string]int{"jazz": 1},
|
||
})
|
||
|
||
current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
got, _ := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, current)
|
||
for _, c := range got {
|
||
if c.Track.ID == target.ID && c.Inputs.ContextualMatchScore < 0.99 {
|
||
t.Errorf("target = %v, want ~1.0 (max)", c.Inputs.ContextualMatchScore)
|
||
}
|
||
}
|
||
}
|
||
|
||
func TestLoadCandidates_SoftDeletedLikes_Ignored(t *testing.T) {
|
||
f := newFixture(t, 3)
|
||
target := f.tracks[1]
|
||
likeVec := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
helperInsertContextualLike(t, f, target.ID, likeVec)
|
||
// Soft-delete the row.
|
||
if _, err := f.pool.Exec(context.Background(),
|
||
`UPDATE contextual_likes SET deleted_at = now() WHERE user_id = $1`, f.user); err != nil {
|
||
t.Fatalf("soft-delete: %v", err)
|
||
}
|
||
|
||
current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
got, _ := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, current)
|
||
for _, c := range got {
|
||
if c.Inputs.ContextualMatchScore != 0 {
|
||
t.Errorf("soft-deleted track %s ContextualMatchScore = %v", c.Track.Title, c.Inputs.ContextualMatchScore)
|
||
}
|
||
}
|
||
}
|
||
|
||
func TestLoadCandidates_OnlySeedLikes_ScoresZero(t *testing.T) {
|
||
f := newFixture(t, 3)
|
||
target := f.tracks[1]
|
||
// Only a Seed=true contextual_like exists.
|
||
helperInsertContextualLike(t, f, target.ID, SessionVector{
|
||
Seed: true, Artists: []string{"a1"}, Tags: map[string]int{"rock": 1},
|
||
})
|
||
|
||
current := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
got, _ := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, current)
|
||
for _, c := range got {
|
||
if c.Inputs.ContextualMatchScore != 0 {
|
||
t.Errorf("seed-only track %s ContextualMatchScore = %v", c.Track.Title, c.Inputs.ContextualMatchScore)
|
||
}
|
||
}
|
||
}
|
||
|
||
func TestLoadCandidates_CurrentSeed_ScoresZero(t *testing.T) {
|
||
f := newFixture(t, 3)
|
||
target := f.tracks[1]
|
||
likeVec := SessionVector{Artists: []string{"a1"}, Tags: map[string]int{"rock": 1}}
|
||
helperInsertContextualLike(t, f, target.ID, likeVec)
|
||
|
||
currentSeed := SessionVector{Seed: true}
|
||
got, _ := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, currentSeed)
|
||
for _, c := range got {
|
||
if c.Inputs.ContextualMatchScore != 0 {
|
||
t.Errorf("seed-current track %s ContextualMatchScore = %v", c.Track.Title, c.Inputs.ContextualMatchScore)
|
||
}
|
||
}
|
||
}
|
||
```
|
||
|
||
Then update existing test call sites (`TestLoadCandidates_ExcludesSeed` and any other extant calls in this file): each `LoadCandidates(...)` call gets a sixth argument. For tests that don't care about contextual scoring, pass `SessionVector{Seed: true}` — that short-circuits the term to 0 and matches v1 behavior.
|
||
|
||
Replace existing call patterns:
|
||
|
||
```go
|
||
got, err := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1)
|
||
```
|
||
|
||
with:
|
||
|
||
```go
|
||
got, err := LoadCandidates(context.Background(), f.q, f.user, f.tracks[0].ID, 1, SessionVector{Seed: true})
|
||
```
|
||
|
||
(There are 5 such call sites in the existing `candidates_test.go`. Update them all.)
|
||
|
||
Update the `import` block at the top to add `"encoding/json"` if not present.
|
||
|
||
- [ ] **Step 2: Run tests to verify the new ones fail and existing ones still compile**
|
||
|
||
Run: `go test ./internal/recommendation/ -run LoadCandidates -v`
|
||
|
||
Expected: existing tests fail to compile because `LoadCandidates` only takes 5 args. After updating call sites, they pass; new tests fail with "too few arguments" or "ContextualMatchScore not set".
|
||
|
||
- [ ] **Step 3: Update `LoadCandidates` signature + body**
|
||
|
||
Replace `internal/recommendation/candidates.go` contents:
|
||
|
||
```go
|
||
package recommendation
|
||
|
||
import (
|
||
"context"
|
||
"encoding/json"
|
||
"time"
|
||
|
||
"github.com/jackc/pgx/v5/pgtype"
|
||
|
||
"git.fabledsword.com/bvandeusen/minstrel/internal/db/dbq"
|
||
)
|
||
|
||
// LoadCandidates fetches the candidate pool for radio scoring. Combines
|
||
// the existing track+stats query with a one-shot bulk fetch of the user's
|
||
// active contextual_likes, mapping each candidate to its max similarity
|
||
// against currentVector. Pass currentVector with Seed=true to short-circuit
|
||
// the contextual term to 0 (cold-start path).
|
||
func LoadCandidates(
|
||
ctx context.Context,
|
||
q *dbq.Queries,
|
||
userID, seedID pgtype.UUID,
|
||
recentlyPlayedHours int,
|
||
currentVector SessionVector,
|
||
) ([]Candidate, error) {
|
||
rows, err := q.LoadRadioCandidates(ctx, dbq.LoadRadioCandidatesParams{
|
||
UserID: userID,
|
||
ID: seedID,
|
||
Column3: float64(recentlyPlayedHours),
|
||
})
|
||
if err != nil {
|
||
return nil, err
|
||
}
|
||
|
||
likes, err := loadContextualLikesByTrack(ctx, q, userID)
|
||
if err != nil {
|
||
return nil, err
|
||
}
|
||
|
||
out := make([]Candidate, 0, len(rows))
|
||
for _, r := range rows {
|
||
var lpt *time.Time
|
||
if r.LastPlayedAt.Valid {
|
||
t := r.LastPlayedAt.Time
|
||
lpt = &t
|
||
}
|
||
ctxScore := ContextualMatchScore(currentVector, likes[r.Track.ID], DefaultSimilarityWeights)
|
||
out = append(out, Candidate{
|
||
Track: r.Track,
|
||
Inputs: ScoringInputs{
|
||
IsGeneralLiked: r.IsLiked,
|
||
LastPlayedAt: lpt,
|
||
PlayCount: int(r.PlayCount),
|
||
SkipCount: int(r.SkipCount),
|
||
ContextualMatchScore: ctxScore,
|
||
},
|
||
})
|
||
}
|
||
return out, nil
|
||
}
|
||
|
||
// loadContextualLikesByTrack fetches the user's active contextual_likes in
|
||
// one query and groups them by track_id. Rows whose session_vector fails
|
||
// to unmarshal are skipped with no error (don't poison scoring over one
|
||
// bad row); the SQL query already filters NULL vectors.
|
||
func loadContextualLikesByTrack(
|
||
ctx context.Context,
|
||
q *dbq.Queries,
|
||
userID pgtype.UUID,
|
||
) (map[pgtype.UUID][]SessionVector, error) {
|
||
rows, err := q.ListActiveContextualLikesForUser(ctx, userID)
|
||
if err != nil {
|
||
return nil, err
|
||
}
|
||
out := make(map[pgtype.UUID][]SessionVector, len(rows))
|
||
for _, r := range rows {
|
||
var v SessionVector
|
||
if err := json.Unmarshal(r.SessionVector, &v); err != nil {
|
||
continue
|
||
}
|
||
out[r.TrackID] = append(out[r.TrackID], v)
|
||
}
|
||
return out, nil
|
||
}
|
||
```
|
||
|
||
- [ ] **Step 4: Run tests to verify all pass**
|
||
|
||
Run: `go test ./internal/recommendation/ -v`
|
||
|
||
Expected: PASS for all existing tests + 6 new contextual tests.
|
||
|
||
- [ ] **Step 5: Verify other callers compile**
|
||
|
||
Run: `go build ./...`
|
||
|
||
Expected: `internal/api/radio.go` fails — it still calls `LoadCandidates` with 5 args. We fix that in Task 6.
|
||
|
||
- [ ] **Step 6: Commit (allow temporary build break — fixed in Task 6)**
|
||
|
||
```bash
|
||
git add internal/recommendation/candidates.go internal/recommendation/candidates_test.go
|
||
git commit -m "feat(recommendation): LoadCandidates computes per-candidate ContextualMatchScore"
|
||
```
|
||
|
||
Note: this commit leaves `internal/api/radio.go` non-compiling. Task 6 restores green. Don't push the branch in this state — finish Task 6 first.
|
||
|
||
---
|
||
|
||
## Task 6: Config + radio handler wiring
|
||
|
||
**Files:**
|
||
- Modify: `internal/config/config.go`
|
||
- Modify: `internal/api/radio.go`
|
||
- Modify: `internal/api/auth_test.go`
|
||
|
||
- [ ] **Step 1: Add `ContextWeight` to `RecommendationConfig`**
|
||
|
||
In `internal/config/config.go`, modify the `RecommendationConfig` struct:
|
||
|
||
```go
|
||
type RecommendationConfig struct {
|
||
BaseWeight float64 `yaml:"base_weight"`
|
||
LikeBoost float64 `yaml:"like_boost"`
|
||
RecencyWeight float64 `yaml:"recency_weight"`
|
||
SkipPenalty float64 `yaml:"skip_penalty"`
|
||
JitterMagnitude float64 `yaml:"jitter_magnitude"`
|
||
ContextWeight float64 `yaml:"context_weight"`
|
||
RecentlyPlayedHours int `yaml:"recently_played_hours"`
|
||
RadioSize int `yaml:"radio_size"`
|
||
RadioSizeMax int `yaml:"radio_size_max"`
|
||
}
|
||
```
|
||
|
||
In the same file, modify `Default()`'s `Recommendation` block to include the new field:
|
||
|
||
```go
|
||
Recommendation: RecommendationConfig{
|
||
BaseWeight: 1.0,
|
||
LikeBoost: 2.0,
|
||
RecencyWeight: 1.0,
|
||
SkipPenalty: 1.0,
|
||
JitterMagnitude: 0.1,
|
||
ContextWeight: 2.0,
|
||
RecentlyPlayedHours: 1,
|
||
RadioSize: 50,
|
||
RadioSizeMax: 200,
|
||
},
|
||
```
|
||
|
||
- [ ] **Step 2: Update `radio.go` to fetch current vector and pass it through**
|
||
|
||
Replace `internal/api/radio.go` contents:
|
||
|
||
```go
|
||
package api
|
||
|
||
import (
|
||
"encoding/json"
|
||
"errors"
|
||
"net/http"
|
||
"strconv"
|
||
"strings"
|
||
"time"
|
||
|
||
"github.com/jackc/pgx/v5"
|
||
|
||
"git.fabledsword.com/bvandeusen/minstrel/internal/auth"
|
||
"git.fabledsword.com/bvandeusen/minstrel/internal/db/dbq"
|
||
"git.fabledsword.com/bvandeusen/minstrel/internal/recommendation"
|
||
)
|
||
|
||
// RadioResponse is the body of GET /api/radio.
|
||
type RadioResponse struct {
|
||
Tracks []TrackRef `json:"tracks"`
|
||
}
|
||
|
||
// handleRadio implements GET /api/radio?seed_track=<uuid>&limit=<int>.
|
||
//
|
||
// Returns the seed at index 0, followed by up to limit-1 weighted-shuffle
|
||
// picks from the user's library, scored by recommendation.Score. The
|
||
// scoring formula folds in contextual_match_score using the user's current
|
||
// session vector (read from the most recent open play_event).
|
||
func (h *handlers) handleRadio(w http.ResponseWriter, r *http.Request) {
|
||
user, ok := auth.UserFromContext(r.Context())
|
||
if !ok {
|
||
writeErr(w, http.StatusUnauthorized, "unauthorized", "authentication required")
|
||
return
|
||
}
|
||
raw := strings.TrimSpace(r.URL.Query().Get("seed_track"))
|
||
if raw == "" {
|
||
writeErr(w, http.StatusBadRequest, "bad_request", "seed_track is required")
|
||
return
|
||
}
|
||
seedID, ok := parseUUID(raw)
|
||
if !ok {
|
||
writeErr(w, http.StatusBadRequest, "bad_request", "invalid seed_track id")
|
||
return
|
||
}
|
||
limit := h.recCfg.RadioSize
|
||
if v := r.URL.Query().Get("limit"); v != "" {
|
||
n, err := strconv.Atoi(v)
|
||
if err != nil || n < 1 {
|
||
writeErr(w, http.StatusBadRequest, "bad_request", "invalid limit")
|
||
return
|
||
}
|
||
limit = n
|
||
}
|
||
if limit > h.recCfg.RadioSizeMax {
|
||
limit = h.recCfg.RadioSizeMax
|
||
}
|
||
q := dbq.New(h.pool)
|
||
track, err := q.GetTrackByID(r.Context(), seedID)
|
||
if err != nil {
|
||
if errors.Is(err, pgx.ErrNoRows) {
|
||
writeErr(w, http.StatusNotFound, "not_found", "seed_track not found")
|
||
return
|
||
}
|
||
h.logger.Error("api: get radio seed track failed", "err", err)
|
||
writeErr(w, http.StatusInternalServerError, "server_error", "lookup failed")
|
||
return
|
||
}
|
||
album, err := q.GetAlbumByID(r.Context(), track.AlbumID)
|
||
if err != nil {
|
||
h.logger.Error("api: get radio seed album failed", "err", err)
|
||
writeErr(w, http.StatusInternalServerError, "server_error", "lookup failed")
|
||
return
|
||
}
|
||
artist, err := q.GetArtistByID(r.Context(), track.ArtistID)
|
||
if err != nil {
|
||
h.logger.Error("api: get radio seed artist failed", "err", err)
|
||
writeErr(w, http.StatusInternalServerError, "server_error", "lookup failed")
|
||
return
|
||
}
|
||
|
||
currentVec := loadCurrentSessionVector(r, q, user.ID, h.logger)
|
||
|
||
candidates, err := recommendation.LoadCandidates(r.Context(), q, user.ID, seedID, h.recCfg.RecentlyPlayedHours, currentVec)
|
||
if err != nil {
|
||
h.logger.Error("api: radio: load candidates", "err", err)
|
||
writeErr(w, http.StatusInternalServerError, "server_error", "candidate load failed")
|
||
return
|
||
}
|
||
weights := recommendation.ScoringWeights{
|
||
BaseWeight: h.recCfg.BaseWeight,
|
||
LikeBoost: h.recCfg.LikeBoost,
|
||
RecencyWeight: h.recCfg.RecencyWeight,
|
||
SkipPenalty: h.recCfg.SkipPenalty,
|
||
JitterMagnitude: h.recCfg.JitterMagnitude,
|
||
ContextWeight: h.recCfg.ContextWeight,
|
||
}
|
||
picks := recommendation.Shuffle(candidates, weights, time.Now().UTC(), h.rng, limit-1)
|
||
|
||
out := make([]TrackRef, 0, len(picks)+1)
|
||
out = append(out, trackRefFrom(track, album.Title, artist.Name))
|
||
for _, p := range picks {
|
||
al, err := q.GetAlbumByID(r.Context(), p.Track.AlbumID)
|
||
if err != nil {
|
||
h.logger.Error("api: radio: resolve album", "err", err)
|
||
writeErr(w, http.StatusInternalServerError, "server_error", "resolve failed")
|
||
return
|
||
}
|
||
ar, err := q.GetArtistByID(r.Context(), p.Track.ArtistID)
|
||
if err != nil {
|
||
h.logger.Error("api: radio: resolve artist", "err", err)
|
||
writeErr(w, http.StatusInternalServerError, "server_error", "resolve failed")
|
||
return
|
||
}
|
||
out = append(out, trackRefFrom(p.Track, al.Title, ar.Name))
|
||
}
|
||
writeJSON(w, http.StatusOK, RadioResponse{Tracks: out})
|
||
}
|
||
|
||
// loadCurrentSessionVector returns the user's most recent active session
|
||
// vector, or a Seed=true sentinel if none exists / the column is NULL /
|
||
// the JSON fails to unmarshal. Sentinel short-circuits ContextualMatchScore
|
||
// to 0 so the contextual term contributes nothing in cold-start cases.
|
||
func loadCurrentSessionVector(r *http.Request, q *dbq.Queries, userID pgtype.UUID, logger *slog.Logger) recommendation.SessionVector {
|
||
raw, err := q.GetCurrentSessionVectorForUser(r.Context(), userID)
|
||
if err != nil {
|
||
// pgx.ErrNoRows is the common path: no active session yet.
|
||
if !errors.Is(err, pgx.ErrNoRows) {
|
||
logger.Warn("api: radio: load current session vector", "err", err)
|
||
}
|
||
return recommendation.SessionVector{Seed: true}
|
||
}
|
||
if len(raw) == 0 {
|
||
return recommendation.SessionVector{Seed: true}
|
||
}
|
||
var v recommendation.SessionVector
|
||
if jerr := json.Unmarshal(raw, &v); jerr != nil {
|
||
logger.Warn("api: radio: bad session_vector_at_play json", "err", jerr)
|
||
return recommendation.SessionVector{Seed: true}
|
||
}
|
||
return v
|
||
}
|
||
```
|
||
|
||
Add the missing imports at the top: `"log/slog"` and `"github.com/jackc/pgx/v5/pgtype"`.
|
||
|
||
- [ ] **Step 3: Update `auth_test.go` test helper to include `ContextWeight`**
|
||
|
||
In `internal/api/auth_test.go`, modify the `recCfg` definition inside `testHandlers`:
|
||
|
||
```go
|
||
recCfg := config.RecommendationConfig{
|
||
BaseWeight: 1.0, LikeBoost: 2.0, RecencyWeight: 1.0,
|
||
SkipPenalty: 1.0, JitterMagnitude: 0.1, ContextWeight: 2.0,
|
||
RecentlyPlayedHours: 1, RadioSize: 50, RadioSizeMax: 200,
|
||
}
|
||
```
|
||
|
||
- [ ] **Step 4: Run full build + existing tests**
|
||
|
||
Run: `go build ./...`
|
||
|
||
Expected: clean compile.
|
||
|
||
Run: `go test ./internal/api/ ./internal/recommendation/ ./internal/config/ -v -short`
|
||
|
||
Expected: PASS. The `-short` flag lets unit tests run; integration tests need `MINSTREL_TEST_DATABASE_URL`.
|
||
|
||
If `MINSTREL_TEST_DATABASE_URL` is set, drop `-short` and verify integration tests pass:
|
||
|
||
Run: `go test ./internal/api/ ./internal/recommendation/ -v`
|
||
|
||
Expected: PASS. All existing radio tests still pass — `currentVec` defaults to `Seed=true` for users with no plays, so behavior is identical to v1.
|
||
|
||
- [ ] **Step 5: Commit**
|
||
|
||
```bash
|
||
git add internal/config/config.go internal/api/radio.go internal/api/auth_test.go
|
||
git commit -m "feat(api): radio handler reads current session vector + threads ContextWeight"
|
||
```
|
||
|
||
---
|
||
|
||
## Task 7: End-to-end test — contextual match boosts ranking
|
||
|
||
**Files:**
|
||
- Modify: `internal/api/radio_test.go`
|
||
|
||
- [ ] **Step 1: Write the failing end-to-end test**
|
||
|
||
Append to `internal/api/radio_test.go`:
|
||
|
||
```go
|
||
func TestHandleRadio_ContextualMatch_BoostsRankingOverControl(t *testing.T) {
|
||
h, pool := testHandlers(t)
|
||
truncateLibrary(t, pool)
|
||
user := seedUser(t, pool, "alice", "x", false)
|
||
|
||
// Two artists in distinct genres, so we can construct a "rock vibe" session
|
||
// and a contextual match.
|
||
rockArtist := seedArtist(t, pool, "RockArtist")
|
||
rockAlbum := seedAlbum(t, pool, rockArtist.ID, "RockAlbum", 2020)
|
||
jazzArtist := seedArtist(t, pool, "JazzArtist")
|
||
jazzAlbum := seedAlbum(t, pool, jazzArtist.ID, "JazzAlbum", 2020)
|
||
|
||
// Seed track is unrelated to both (don't want it to dominate scoring).
|
||
popArtist := seedArtist(t, pool, "PopArtist")
|
||
popAlbum := seedAlbum(t, pool, popArtist.ID, "PopAlbum", 2020)
|
||
seed := seedTrack(t, pool, popAlbum.ID, popArtist.ID, "Seed", 1, 100_000)
|
||
|
||
// Target: a rock track. Control: a jazz track. Both will be scored.
|
||
target := seedTrackWithGenre(t, pool, rockAlbum.ID, rockArtist.ID, "Target", 1, 100_000, "rock")
|
||
control := seedTrackWithGenre(t, pool, jazzAlbum.ID, jazzArtist.ID, "Control", 1, 100_000, "jazz")
|
||
|
||
// Build the user's "rock vibe" current context: insert an open play_session
|
||
// with a play_event whose session_vector_at_play matches the rock vibe.
|
||
rockVec := recommendation.SessionVector{
|
||
Artists: []string{toUUIDString(rockArtist.ID)},
|
||
Tags: map[string]int{"rock": 3},
|
||
}
|
||
rockVecJSON, _ := json.Marshal(rockVec)
|
||
insertOpenSessionWithVector(t, pool, user.ID, rockArtist.ID, rockVecJSON)
|
||
|
||
// Insert a contextual_like on the target track whose stored vector matches
|
||
// the rock vibe. (Direct DB insert — we want full control over the vector
|
||
// for this test, not whatever playevents.CaptureContextualLikeIfPlaying
|
||
// would produce.)
|
||
if _, err := pool.Exec(context.Background(),
|
||
`INSERT INTO contextual_likes (user_id, track_id, session_vector) VALUES ($1, $2, $3)`,
|
||
user.ID, target.ID, rockVecJSON); err != nil {
|
||
t.Fatalf("insert contextual_like: %v", err)
|
||
}
|
||
|
||
// Request radio. The deterministic RNG (rng=0.5 → jitter contribution = 0)
|
||
// means rankings are reproducible for this test.
|
||
w := callRadio(h, user, "seed_track="+uuidToString(seed.ID))
|
||
if w.Code != http.StatusOK {
|
||
t.Fatalf("status = %d body=%s", w.Code, w.Body.String())
|
||
}
|
||
var resp RadioResponse
|
||
if err := json.Unmarshal(w.Body.Bytes(), &resp); err != nil {
|
||
t.Fatalf("decode: %v", err)
|
||
}
|
||
|
||
// Find the indexes of target and control in the response.
|
||
targetIdx, controlIdx := -1, -1
|
||
for i, tr := range resp.Tracks {
|
||
if tr.Title == "Target" {
|
||
targetIdx = i
|
||
}
|
||
if tr.Title == "Control" {
|
||
controlIdx = i
|
||
}
|
||
}
|
||
if targetIdx == -1 || controlIdx == -1 {
|
||
t.Fatalf("target=%d control=%d, expected both present (resp.Tracks=%v)", targetIdx, controlIdx, resp.Tracks)
|
||
}
|
||
if targetIdx >= controlIdx {
|
||
t.Errorf("target ranked at %d, control at %d: contextual match should put target above control", targetIdx, controlIdx)
|
||
}
|
||
}
|
||
```
|
||
|
||
- [ ] **Step 2: Add the helper `seedTrackWithGenre` and `insertOpenSessionWithVector`**
|
||
|
||
These don't exist yet. Add them to `internal/api/radio_test.go` (or to whichever helpers file the existing `seedTrack` lives in — keep them adjacent):
|
||
|
||
```go
|
||
func seedTrackWithGenre(t *testing.T, pool *pgxpool.Pool, albumID, artistID pgtype.UUID, title string, trackNo, durationMs int, genre string) dbq.Track {
|
||
t.Helper()
|
||
q := dbq.New(pool)
|
||
tr, err := q.UpsertTrack(context.Background(), dbq.UpsertTrackParams{
|
||
Title: title,
|
||
AlbumID: albumID,
|
||
ArtistID: artistID,
|
||
FilePath: "/tmp/" + title + ".flac",
|
||
DurationMs: int32(durationMs),
|
||
Genre: &genre,
|
||
})
|
||
if err != nil {
|
||
t.Fatalf("UpsertTrack: %v", err)
|
||
}
|
||
return tr
|
||
}
|
||
|
||
// insertOpenSessionWithVector creates a play_session with ended_at NULL and
|
||
// inserts a play_event in it whose session_vector_at_play is the given JSON.
|
||
// Used to simulate "user is mid-listen" for the radio handler's current-vector
|
||
// lookup. The play_event itself doesn't reference any of the test tracks.
|
||
func insertOpenSessionWithVector(t *testing.T, pool *pgxpool.Pool, userID, anyArtistID pgtype.UUID, vectorJSON []byte) {
|
||
t.Helper()
|
||
// Create a placeholder track so the play_event has a valid track_id.
|
||
q := dbq.New(pool)
|
||
al, _ := q.UpsertAlbum(context.Background(), dbq.UpsertAlbumParams{
|
||
Title: "PlaceholderAlbum", SortTitle: "PlaceholderAlbum", ArtistID: anyArtistID,
|
||
})
|
||
ph, err := q.UpsertTrack(context.Background(), dbq.UpsertTrackParams{
|
||
Title: "Placeholder", AlbumID: al.ID, ArtistID: anyArtistID,
|
||
FilePath: "/tmp/placeholder.flac", DurationMs: 100_000,
|
||
})
|
||
if err != nil {
|
||
t.Fatalf("placeholder track: %v", err)
|
||
}
|
||
// Insert open session.
|
||
var sessionID pgtype.UUID
|
||
if err := pool.QueryRow(context.Background(),
|
||
`INSERT INTO play_sessions (user_id, started_at, last_event_at, client_id)
|
||
VALUES ($1, now() - interval '5 minutes', now(), 'test') RETURNING id`,
|
||
userID).Scan(&sessionID); err != nil {
|
||
t.Fatalf("insert session: %v", err)
|
||
}
|
||
// Insert play_event with the given session_vector_at_play.
|
||
if _, err := pool.Exec(context.Background(),
|
||
`INSERT INTO play_events (user_id, track_id, session_id, started_at, session_vector_at_play)
|
||
VALUES ($1, $2, $3, now() - interval '1 minute', $4)`,
|
||
userID, ph.ID, sessionID, vectorJSON); err != nil {
|
||
t.Fatalf("insert play_event: %v", err)
|
||
}
|
||
}
|
||
|
||
// toUUIDString converts a pgtype.UUID to its canonical hex string. Mirrors
|
||
// what BuildSessionVector emits, so the test's session_vector matches what
|
||
// the engine would produce in production.
|
||
func toUUIDString(u pgtype.UUID) string {
|
||
if !u.Valid {
|
||
return ""
|
||
}
|
||
return u.String()
|
||
}
|
||
```
|
||
|
||
Add the missing imports at the top of `radio_test.go`: `"github.com/jackc/pgx/v5/pgtype"`, `"github.com/jackc/pgx/v5/pgxpool"`, `"git.fabledsword.com/bvandeusen/minstrel/internal/db/dbq"`, `"git.fabledsword.com/bvandeusen/minstrel/internal/recommendation"`. (Some may already exist.)
|
||
|
||
Also: the `truncateLibrary` helper used by other tests probably truncates `play_events, play_sessions, sessions, users, tracks, albums, artists, general_likes`. We need it to also include `contextual_likes`. Find the helper (probably in `auth_test.go` or `radio_test.go`) and add `contextual_likes` to its TRUNCATE list:
|
||
|
||
```go
|
||
func truncateLibrary(t *testing.T, pool *pgxpool.Pool) {
|
||
t.Helper()
|
||
if _, err := pool.Exec(context.Background(),
|
||
"TRUNCATE contextual_likes, general_likes, general_likes_albums, general_likes_artists, play_events, skip_events, play_sessions, sessions, users, tracks, albums, artists RESTART IDENTITY CASCADE"); err != nil {
|
||
t.Fatalf("truncate: %v", err)
|
||
}
|
||
}
|
||
```
|
||
|
||
(If `truncateLibrary` already exists, add `contextual_likes` to its TRUNCATE list. If it doesn't exist as a named helper, find the inline TRUNCATE in `testHandlers` and update that.)
|
||
|
||
- [ ] **Step 3: Run the new test**
|
||
|
||
Run: `MINSTREL_TEST_DATABASE_URL=<dsn> go test ./internal/api/ -run TestHandleRadio_ContextualMatch_BoostsRankingOverControl -v`
|
||
|
||
Expected: PASS. Target track appears at a lower index than Control in the response.
|
||
|
||
- [ ] **Step 4: Run the full integration suite**
|
||
|
||
Run: `MINSTREL_TEST_DATABASE_URL=<dsn> go test ./internal/api/ ./internal/recommendation/ -v`
|
||
|
||
Expected: PASS. Existing tests unaffected; new contextual test passes.
|
||
|
||
- [ ] **Step 5: Commit**
|
||
|
||
```bash
|
||
git add internal/api/radio_test.go internal/api/auth_test.go
|
||
git commit -m "test(api): end-to-end contextual ranking test for /api/radio"
|
||
```
|
||
|
||
(Only commit `auth_test.go` here if you didn't already in Task 6 — if `truncateLibrary` lives there and got modified, include it.)
|
||
|
||
---
|
||
|
||
## Task 8: Final verification + branch finish
|
||
|
||
**Files:** none (verification only)
|
||
|
||
- [ ] **Step 1: Full Go test suite**
|
||
|
||
Run: `go test -short -race ./...`
|
||
|
||
Expected: PASS. All packages, no race conditions.
|
||
|
||
- [ ] **Step 2: Full integration suite (with DB)**
|
||
|
||
Run: `MINSTREL_TEST_DATABASE_URL=<dsn> go test -race ./...`
|
||
|
||
Expected: PASS.
|
||
|
||
- [ ] **Step 3: Lint**
|
||
|
||
Run: `golangci-lint run ./...`
|
||
|
||
Expected: clean.
|
||
|
||
- [ ] **Step 4: Coverage check**
|
||
|
||
Run: `go test -short -coverprofile=cover.out ./internal/recommendation/ ./internal/playevents/ && go tool cover -func=cover.out | tail -1`
|
||
|
||
Expected: combined coverage ≥ 70% (target). With pure functions in similarity.go heavily tested, we expect to land at 80%+.
|
||
|
||
- [ ] **Step 5: Web verification (sanity)**
|
||
|
||
Run: `cd web && npm run check && npm test -- --run && npm run build`
|
||
|
||
Expected: svelte-check 0/0, all vitest tests pass, build succeeds. (No web changes in this slice, so this should be clean.)
|
||
|
||
- [ ] **Step 6: Docker smoke (if present locally)**
|
||
|
||
Run: `make docker-build && make docker-smoke` (or whatever the project's smoke-test target is).
|
||
|
||
Expected: container builds; smoke check (`/healthz`, `/api/auth/login`) returns expected codes.
|
||
|
||
- [ ] **Step 7: Manual end-to-end verification**
|
||
|
||
Start the server. As an authenticated user:
|
||
|
||
1. Play a few tracks of one genre (e.g., 3+ rock tracks) via the web UI to populate a session vector.
|
||
2. Like one of those tracks (creates a contextual_like with the rock-vibe vector).
|
||
3. Wait for the recently-played-hours window to clear, OR pick tracks not yet recently played.
|
||
4. Click "Play radio" from a different track.
|
||
5. Inspect: the previously-liked rock track should appear in the radio queue with a noticeably-likely-to-rank-high position. Compare against a jazz track that the user has NEVER liked — it should be ranked lower.
|
||
|
||
Verification is qualitative for v1; the integration test in Task 7 is the deterministic guarantee.
|
||
|
||
- [ ] **Step 8: Update Fable task #342**
|
||
|
||
Set status to `in_progress` (after PR opens). After PR merges, mark `done` with the closing summary in the body. The task tracking should mention:
|
||
|
||
- Closes the M3 milestone
|
||
- All three v1 components shipped: weighted shuffle (#340), session vectors (#341), contextual matching (this slice)
|
||
- Coverage targets met
|
||
- Backwards-compat: `/api/radio` API shape unchanged
|
||
|
||
- [ ] **Step 9: Finishing the branch**
|
||
|
||
**REQUIRED SUB-SKILL:** Use `superpowers:finishing-a-development-branch` to verify tests, present completion options (merge locally / push + PR / keep / discard), and execute the user's choice.
|
||
|
||
Per established cadence: this slice will land as a single-purpose PR (no bundling with future M3.5 / M4 work). Once merged, M3 is closed.
|
||
|
||
---
|
||
|
||
## Self-Review
|
||
|
||
**Spec coverage:**
|
||
|
||
- §3.1 (similarity.go) → Tasks 1, 2 ✓
|
||
- §3.2 (ListActiveContextualLikesForUser) → Task 4 ✓
|
||
- §3.3 (GetCurrentSessionVectorForUser) → Task 4 ✓
|
||
- §3.4 (Score extension) → Task 3 ✓
|
||
- §3.5 (LoadCandidates extension) → Task 5 ✓
|
||
- §3.6 (radio.go wiring) → Task 6 ✓
|
||
- §3.7 (config) → Task 6 ✓
|
||
- §4 (request flow) → Tasks 5+6 (composition) ✓
|
||
- §5 (cold-start) → Task 5 covers Seed/empty paths; Task 6 covers no-session/NULL paths ✓
|
||
- §6.1 (similarity_test) → Task 1 ✓
|
||
- §6.2 (score_test) → Task 3 ✓
|
||
- §6.3 (candidates_test) → Task 5 ✓
|
||
- §6.4 (radio_test) → Task 7 ✓
|
||
- §6.5 (coverage gate) → Task 8 ✓
|
||
- §7 (backwards compat) → preserved by zero-value semantics in Task 3 + cold-start handling in Tasks 5-6 ✓
|
||
|
||
No gaps.
|
||
|
||
**Placeholder scan:** No "TBD"/"TODO" content. All steps have explicit code or commands.
|
||
|
||
**Type consistency:** Verified — `SessionVector`, `Similarity`, `ContextualMatchScore`, `ScoringInputs.ContextualMatchScore`, `ScoringWeights.ContextWeight`, `RecommendationConfig.ContextWeight`, `LoadCandidates`'s sixth parameter `currentVector SessionVector`, `loadContextualLikesByTrack` return type `map[pgtype.UUID][]SessionVector`, `loadCurrentSessionVector` return type `recommendation.SessionVector` — all consistent across tasks.
|