Decision-tree leaf outcomes are now cached on the main thread keyed by
their full 12-course assignment. Pin operations filter the cache and
re-derive top-K + per-set ceilings instantly with no worker spawn. Unpin
operations show the cached subset immediately and stream improvements as
a background worker fills in the missing leaves. Cache survives pin,
unpin, and adopt-plan; only ranking or mode changes invalidate it.
Solver / worker:
- searchDecisionTree accepts skipKeys (Set<string>) and pinnedAssignments
(Record<setId,courseId>). Leaves are emitted with their full 12-set
assignment so cache keys are stable across pin/unpin operations.
- evaluateLeaf short-circuits when the leaf's assignmentKey is in
skipKeys: increments iterations + emits progress, but skips the
optimizer call and all callbacks. Keeps progress percentage honest
(counts whole tree, not just delta).
- New deriveFromLeaves pure helper produces {topK, setAnalyses} from a
leaf collection; used by the main-thread cache filter and gives a
reusable derivation primitive for tests.
- Worker request gains skipKeys and pinnedAssignments fields. Worker
response gains a leafEvaluated event so the main thread can populate
its cache as the search streams.
App state:
- leafCacheRef holds Map<assignmentKey, PlanOutcome> scoped to the
current (ranking, mode) pair. The search effect now: invalidates on
ranking/mode change; computes the orderedCourses + expectedTotal;
filters the cache against the current pinned/excluded state; calls
deriveFromLeaves to render immediately; spawns the worker only when
filtered.length < expectedTotal, passing skipKeys.
- Cache cap of 500,000 leaves with full clear on overflow. Bounds
worst-case memory at ~150 MB.
UI (TopPlans):
- Course blocks in the per-plan row are now interactive buttons. Click
pins (or unpins, if the course is currently pinned) the course in
that set. Pinned blocks render in a selected blue color.
- Each plan row now shows the FULL 12-set sequence including pinned
courses (interleaved with the search's recommended choices for the
remaining open sets) so the displayed plan is always complete.
- Spec qualification tags removed from per-block display (kept the
set-label + course-name treatment for clarity).
Tests:
- New app/src/solver/__tests__/leafCache.test.ts with 4 tests:
skipKeys parity (second-pass run with skipKeys evaluates zero
leaves), deriveFromLeaves parity (matches a fresh search), cache
filter on pinned assignments, cache filter on excluded courses.
- All 78 prior tests continue to pass; 82 total.
Browser-verified: pin click on a Top Plans block from the cached
8-open-set scenario completes instantly with no spinner; unpin restores
the original cached subset (also instant when the prior space was
already cached); mode toggle correctly invalidates and re-runs the
search.
4.8 KiB
ADDED Requirements
Requirement: Persistent leaf cache across pin and unpin operations
The application SHALL maintain a main-thread cache of evaluated decision-tree leaves keyed by the leaf's assignmentKey (the deterministic sorted setId:courseId join already used as the comparator tiebreaker). The cache SHALL persist across pin, unpin, and adopt-plan operations as long as state.ranking and state.mode are unchanged. Each cache entry SHALL store the full PlanOutcome (courseAssignments, achievedSpecs, priorityScore).
Scenario: Pin operation hits cache fully
- WHEN the user has completed a search with no pins on a small scenario, then pins a course
- THEN the new top-K and per-set ceilings are derived entirely from the cache without spawning a worker
- AND no "searching" indicators appear in the UI
Scenario: Cache survives consecutive pin clicks
- WHEN the user pins multiple courses one after another (or via "Adopt plan")
- THEN every pin produces an instant UI update sourced from the existing cache
Scenario: Unpin gets immediate cached subset and streams improvements
- WHEN the user unpins a course after a search has populated the cache
- THEN the UI immediately renders top-K and per-set ceilings derived from the cache subset matching the new state
- AND a worker spawns to compute the missing leaves
- AND as the worker streams new leaves, the UI's top-K and ceilings improve monotonically
Requirement: skipKeys worker contract
The worker request SHALL accept an optional skipKeys: string[] field. The worker SHALL convert this list to a Set<string> and pass it to searchDecisionTree. Inside evaluateLeaf, leaves whose assignmentKey is in skipKeys SHALL be skipped: the optimizer SHALL NOT be invoked, no topKUpdate or choiceUpdate event SHALL be emitted for them, and the leaf SHALL NOT mutate per-set evaluated flags. Skipped leaves SHALL still increment the iteration counter so that throttled progress events report the total tree size, not just the delta.
Scenario: Worker bypasses optimizer for cached leaves
- WHEN the worker receives a request with
skipKeyscontaining the keys of N cached leaves - THEN the worker performs at most
(iterationsTotal − N)optimizer evaluations
Scenario: Progress reports total tree size
- WHEN the worker is processing a request with
skipKeyscontaining 50,000 keys out of aniterationsTotalof 200,000 - THEN progress events include
iterationscounting up to 200,000 (not 150,000) so the displayed percentage reflects whole-tree progress
Requirement: Cache invalidation on ranking, mode, or data change
The leaf cache SHALL be cleared when state.ranking changes, when state.mode changes, or when the underlying course/specialization data is changed (e.g., a course is marked cancelled). Pin/unpin operations SHALL NOT trigger cache invalidation.
Scenario: Mode toggle clears cache
- WHEN the user toggles between maximize-count and priority-order
- THEN the cache is emptied and the next search runs as a full recomputation
Scenario: Ranking re-order clears cache
- WHEN the user reorders the specialization ranking
- THEN the cache is emptied and the next search runs as a full recomputation
Scenario: Pin does not clear cache
- WHEN the user pins or unpins a course
- THEN the cache retains all previously evaluated leaves
Requirement: Cache size cap
The leaf cache SHALL be cleared when its size exceeds 500,000 entries. Subsequent searches SHALL repopulate the cache from scratch.
Scenario: Cap clears cache when exceeded
- WHEN the cache is at 500,000 entries and a new search would add at least one more entry
- THEN the cache is emptied before the next entry is inserted, and the new search proceeds without
skipKeys
Requirement: deriveFromLeaves shared helper
The decision-tree module SHALL export a pure function deriveFromLeaves(leaves, K, mode, ranking, openSetIds, excludedCourseIds): { topK, setAnalyses } that produces the top-K plan list and per-set ceiling table from a collection of leaf outcomes. This helper SHALL be used both by the worker at allComplete and by the main thread when rendering filtered cache results.
Scenario: Helper output matches a fresh search
- WHEN
deriveFromLeavesis called with the complete leaf set from a finishedsearchDecisionTreerun - THEN the returned
topKandsetAnalysesmatch the values that the search itself returned (modulo deterministic tiebreaker stability)
Scenario: Helper output is correct for filtered subsets
- WHEN
deriveFromLeavesis called with a strict subset of cached leaves matching the user's current pinned/excluded state - THEN the returned top-K and ceilings reflect only those leaves and never reference courses outside the filter