Commit Graph

68 Commits

Author SHA1 Message Date
RaymondVerhoef
9fb22b8090 feat: update getQuizResult to handle no records gracefully by using getList 2026-05-27 20:27:08 +02:00
RaymondVerhoef
6309ae716b feat: implement snapshot restore functionality and enhance graph state management
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2026-05-27 17:43:18 +02:00
RaymondVerhoef
7b6a5b4bf0 feat: add GraphControls component and useGraphData hook for knowledge graph management 2026-05-27 15:05:26 +02:00
RaymondVerhoef
3aa32c383e feat: implement quiz results tracking and caching for user tests
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2026-05-27 10:05:56 +02:00
RaymondVerhoef
7066f881f9 feat: implement onboarding process and enrollment status tracking for users 2026-05-26 21:33:20 +02:00
RaymondVerhoef
84e7468841 feat: drop reflection_prompt type and flag cached micro-learnings
Remove the reflection_prompt micro-learning format end-to-end: type
config, tool definition, container case, selector tile, and the
ReflectionPrompt component file. The format wasn't pulling its weight as
a learning surface.

Add a Beschikbaar badge to selector tiles whose topic already has a
published micro-learning of that type, so users know which formats open
instantly instead of triggering a fresh generation. Cached records are
fetched once per topic via the new getExistingTypesForTopic helper, and
re-fetched after a generation returns so newly-created formats light up
without a manual refresh.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-26 13:41:20 +02:00
RaymondVerhoef
9ea5d5444d fix: generate weekly quiz in a single batch LLM call
The weekly quiz path made up to six sequential LLM calls (one per topic)
with three retries each, blowing past the 30s budget. Worse, the
quiz_banks collection has been dropped, so getQuizBank/setQuizBank are
no-ops and every generated batch was thrown away — the assembled quiz
ended up empty and surfaced as "Could not assemble enough questions."

Replace the per-topic loop with a single batched call on the fast tier
that emits all five questions in one round-trip, using the review topics
as prompt context instead of separate calls.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-26 13:22:44 +02:00
RaymondVerhoef
a653812cd8 feat: implement micro-learning generation service and UI components for interactive topic-based learning
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2026-05-25 22:17:26 +02:00
RaymondVerhoef
f16438c1bc feat: implement micro learning generation service with cached LLM content delivery and UI components
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2026-05-25 22:14:00 +02:00
RaymondVerhoef
7164317908 feat: implement quiz generation service with topic selection, LLM integration, and question bank management 2026-05-25 22:08:18 +02:00
RaymondVerhoef
3c04bab1b9 fix
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2026-05-25 21:38:53 +02:00
RaymondVerhoef
80532b6d1b fix 2026-05-25 20:51:11 +02:00
RaymondVerhoef
7d1fe83f72 fix 2026-05-25 19:41:20 +02:00
RaymondVerhoef
b24ddc5490 fix
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2026-05-25 19:35:52 +02:00
RaymondVerhoef
9ba9ec94ad fix 2026-05-25 19:18:24 +02:00
RaymondVerhoef
8291a52ba9 fix test 2026-05-25 19:09:17 +02:00
RaymondVerhoef
d4066a8f61 fix 2026-05-25 18:39:21 +02:00
RaymondVerhoef
042dfb2d92 Feat: microlearning implementation 2026-05-25 18:32:45 +02:00
RaymondVerhoef
f55ec950aa feat: implement curriculum service for auto-generating, validating, and managing 26-week learning schedules
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2026-05-24 23:16:01 +02:00
RaymondVerhoef
967c68d27d feat: add curriculum management admin dashboard with AI generation and draft approval workflows 2026-05-24 23:09:58 +02:00
RaymondVerhoef
b07c4808a6 feat: implement knowledge extraction pipeline and centralized LLM client service
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2026-05-24 22:38:46 +02:00
RaymondVerhoef
e9f37056b6 feat: implement text extraction pipeline and centralized LLM interface for knowledge graph generation 2026-05-24 22:26:13 +02:00
RaymondVerhoef
10d5066be8 feat: add curriculum management service and database integration for 26-week schedule generation
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2026-05-24 19:58:18 +02:00
RaymondVerhoef
c5e23c77cd feat: implement curriculum management system including automated generation, enrichment, and versioning workflows 2026-05-24 19:50:20 +02:00
RaymondVerhoef
8e01b21a50 feat: implement RAG-enabled chat hook and admin file upload component 2026-05-24 16:59:11 +02:00
RaymondVerhoef
881148357e refactor: remove Diagnostics component and related LLM call telemetry
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2026-05-22 20:00:47 +02:00
RaymondVerhoef
7b6ae265db feat: implement pbUpsert helper for streamlined database operations and update related functions 2026-05-22 19:56:23 +02:00
RaymondVerhoef
ca8945ea5b refactor: remove handbook sync state and related functionality
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2026-05-22 19:45:14 +02:00
RaymondVerhoef
3626cc0525 feat: add "Reset for Smoke Test" button in admin settings
Truncates sources, curriculum, content, quiz banks/results/cache, topics
and relations in dependency order so AI-generated state can be wiped
between smoke runs without leaving dangling references. Handbook sync
state is cleared by default (otherwise re-sync is a no-op); user
progress and leaderboard are opt-in. Team members, settings, and LLM
telemetry are preserved.

UI lives in Admin → Settings → Danger Zone and requires typing RESET
before the button enables. Per-collection deletion counts are reported.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-22 16:42:54 +02:00
RaymondVerhoef
25cae2fea9 fix: speed up handbook sync and stop llm_calls 404 noise
Handbook sync ran files sequentially under a 5 req/min limiter with a
hardcoded 60s LLM timeout, causing long syncs and AbortError timeouts on
large files. Now: limiter at 20 req/min, files processed with concurrency
4, handbook extraction timeout raised to 180s, and near-empty files skip
the LLM call.

callLLM gains a timeoutMs option; passing a signal no longer silently
disables the per-request timeout.

llm_calls telemetry self-disables after the first 404 so deploys without
the migration applied don't spam the console.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-22 16:35:56 +02:00
RaymondVerhoef
229246f7b6 feat: phase 5 of AI pipeline hardening — R42 retrieval & telemetry
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- Add dependency-free TF-IDF retrieval (src/lib/retrieval.js) with NL+EN
  stopwords and a WeakMap-cached index.
- Rewrite buildKbContext to ship the top-K relevant topics + verbatim-
  mentioned ids only, filter relations to the included set, and append a
  [kb_hash: <8 hex>] suffix so the ephemeral prompt cache busts when the
  graph changes. Returns { context, retrievedTopics, allTopics }.
- Add LOOKUP_TOPIC_TOOL and drive useChat through callLLM directly with a
  multi-hop tool_result loop capped at 3 hops; preserve Anthropic-provided
  tool_use ids through callLLM so the loop can echo correct tool_use_id.
- Truncate R42 history to the last 12 turns and prepend a single
  "(earlier conversation truncated)" assistant message.
- Set R42 chat defaults: temperature 0.3, maxTokens 2048.
- Add pb_migrations/1780500002_created_llm_calls.js (the best-effort
  logger in callLLM was already wired) and a new Admin → Diagnostics
  view showing the last 100 calls with token usage, cache-hit rate, and
  USD cost from a local Anthropic price table.
- Finalize AI_PIPELINE_HARDENING_PLAN.md: mark Phases 1–5 shipped and
  Phase 6 (eval harness) explicitly out of scope.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 21:36:40 +02:00
RaymondVerhoef
66e0c275da feat: phase 4 of AI pipeline hardening — quiz & content quality
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- src/lib/random.js: Fisher–Yates shuffle/sample/pickInt; replace every
  biased .sort(() => 0.5 - Math.random()) site in testService.
- testService: debias correctIndex via prompt + runtime re-roll (up to 2x
  when one position holds >50%); quality gate rejecting <4 distinct
  options, banned filler ("all of the above" etc) and explanations
  shorter than 20 chars; dedup new questions against the existing bank
  via normalised question text.
- Quiz schema/tool/prompt require difficulty ('easy'|'medium'|'hard');
  db.getQuizBank defaults legacy records to 'medium' on read.
- learningService.generateCustomTopic: kebab-case slug ID from the
  polished label with collision suffixes; default learning_relevance
  'standard' when the model omits it.
- Tests for random helpers, dedup/quality-gate behaviour and the
  extended quiz schema.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 19:22:10 +02:00
RaymondVerhoef
c82e4fc3a1 feat: reduce initial question batch size for a topic to 5
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When a topic's quiz bank is empty (or below the requested count), we
previously seeded it with a fresh batch of 10 questions. That meant the
first weekly quiz for any new topic triggered a 10-question LLM call —
heavy for what's ultimately a 1-question sample for review topics, and
overkill for the typical 5-question primary topic.

- forceGenerateTopicQuestions default count: 10 → 5
- getOrGenerateTopicQuestions seed amount: 10 → 5
- TestManager "Generate" defaults + empty-state button copy: 10 → 5
- QUIZ_SYSTEM difficulty hint: rewritten for a 5-question batch (2 easy
  / 2 medium / 1 hard) with explicit "scale proportionally for larger
  batches" so admins can still generate 10+ via TestManager when they
  want more depth.

Tests 61/61 pass, lint clean (0 errors), build clean.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 19:12:16 +02:00
RaymondVerhoef
aeb197d5f4 feat: phase 3 of AI pipeline hardening — extraction quality
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Replace stateless one-shot extraction with a stateful, paced, cancellable
pipeline. Six subtasks:

- 3.1 Sentence-aware chunking with 800-char overlap (was paragraph-only
  at 4000 chars). Hard-split fallback for runaway sentences.
- 3.2 Stateful extraction: chunks 2+ receive an "already-extracted topic
  IDs" hint capped at 200 IDs, so the model reuses IDs instead of
  inventing variants like software-developer vs software-engineer.
- 3.3 Token-bucket limiter in llmRetry.js (extractionLimiter, 5 req/min).
  callLLM awaits the limiter before fetch; 429+Retry-After calls
  pauseUntil. Replaces hard setTimeout(12000) and setTimeout(15000).
- 3.4 relevance_locked column on topics — admin edits to relevance are
  sticky across re-extraction. Migration + merge respects the flag +
  unlock checkbox in KnowledgeGraph edit form.
- 3.5 Unify relation vocabulary — handbook prompt no longer mentions
  legacy "executes"; one-shot migration rewrites existing executes rows
  to executed_by with source/target swapped.
- 3.6 Cancellation — Cancel button on UploadZone wired to an
  AbortController threaded into callLLM; aborted runs persist status =
  "cancelled" rather than "failed".

Tests: 16 new unit tests for chunkText, buildKnownIdsHint, and
createLimiter. All 61 tests pass, 0 lint errors, build clean.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 17:56:45 +02:00
RaymondVerhoef
40eff976b4 Fix: exclude temperature parameter for reasoning-tier models
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Anthropic has deprecated the temperature parameter for their reasoning
models (claude-opus-4-7). This was causing a 400 error when analyzeGraph
called callLLM with tier: 'reasoning'.

Solution: conditionally exclude temperature from the request body when
tier === 'reasoning'. Fast and standard tiers retain their temperature
parameter.

This unblocks the "Analyse and Optimize" button in the Knowledge Graph
admin panel post-Phase-2 deployment.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 17:14:17 +02:00
RaymondVerhoef
f838755991 feat: phase 2 of AI pipeline hardening — tool-based structured outputs + prompt caching
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Every structured-output call now uses an Anthropic tool instead of
parsing JSON out of free-form prose, and stable system prompts are
sent as cacheable blocks. Behaviour-equivalent to phase 1 from the
caller's point of view; the savings show up in token usage and in the
absence of "AI returned non-JSON response" failure modes.

* src/lib/llmTools.js — single source of truth for tool definitions:
  emit_knowledge_graph, emit_handbook_delta, emit_learning_article /
  _slides / _infographic / _all, emit_custom_topic, emit_quiz_questions,
  emit_graph_actions, plus five article-patch tools (set_intro,
  set_section, add_section, remove_section, replace_takeaways).
* src/lib/articlePatches.js — pure applyArticlePatches +
  applyAndValidate; rebuilds the article from a sequence of patch tool
  calls and re-validates against learningArticleSchema. set_section
  falls back to appending when no matching heading exists so the
  model's intent is preserved rather than silently dropped.
* src/lib/llmSchemas.js — Zod schemas for the five patch ops,
  registered in toolSchemaRegistry so callLLM validates them
  automatically.
* src/lib/llm.js — simulation mode now returns a tool_use stub matching
  toolChoice.name, so the UI keeps working with Simulation Mode on
  after the structured-output migration.
* src/lib/extractionPipeline.js — processSourceText and
  analyzeHandbookDelta migrated to callLLM + tool use. System prompts
  sent as { cache_control: ephemeral } blocks. Handbook results pass
  through normalizeHandbookResult to collapse legacy "executes"
  relations into executed_by with swapped source/target.
* src/lib/learningService.js — generateLearningContent picks the right
  tool per selectedType; generateCustomTopic uses emit_custom_topic;
  refineLearningContent now drives the five patch tools with
  toolChoice 'any' and rejects the whole turn if the patched article
  fails validation. Article-only refinement is intentional for phase 2;
  refining a topic without an article surfaces a clear error.
* src/lib/testService.js — quiz generation via emit_quiz_questions.
* src/components/admin/KnowledgeGraph.jsx — analyzeGraph routed through
  the reasoning tier (Opus) since graph-wide consolidation benefits
  from a stronger reasoner.
* src/components/chat/prompts.js — buildSystemPrompt now returns three
  text blocks: stable preamble (cached), KB context (cached, hash-bust
  deferred to phase 5), per-turn user/admin tail (uncached).
* src/lib/__tests__/ — 13 new tests covering each patch op, multi-op
  sequencing, post-patch validation failure, and tool/registry shape.

Acceptance: lint and 45/45 tests green; build succeeds; no
`match(/\{[\s\S]*\}/)` JSON extraction left in src/. Live verification
of cache hits on a second extraction within 5 minutes is deferred to
manual smoke testing — needs real `/api/anthropic` traffic.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 15:47:20 +02:00
RaymondVerhoef
4a8dbee7df feat: phase 1 of AI pipeline hardening — single LLM client + tier-aware models
Implements phase 1 of AI_PIPELINE_HARDENING_PLAN.md. Every Anthropic call
now goes through one module that owns retry, timeout, abort, structured-
output parsing, schema validation, and best-effort call telemetry.

* src/lib/llm.js — single callLLM entry point. Resolves model per tier
  (fast / standard / reasoning) with admin:model legacy fallback for the
  standard tier; 60s default timeout via AbortController; balanced-brace
  JSON extraction; LLMHttpError, LLMTruncatedError, LLMOutputError, and
  LLMValidationError surface clearly distinct failure modes.
* src/lib/llmRetry.js — exponential backoff with full jitter, retries
  only on transient HTTP statuses, honours Retry-After up to 60s, never
  retries on AbortError.
* src/lib/llmSchemas.js — Zod schemas for every structured task plus
  normalizeHandbookResult (collapses legacy "executes" relations into
  the canonical "executed_by" vocabulary).
* src/lib/api.js — thin shim over callLLM so existing callers (extraction
  pipeline, learning, quiz, R42, knowledge graph) keep working unchanged.
* src/lib/__tests__/ — 32 Vitest cases covering parse paths, error
  surfaces, simulation mode, model resolution, and schema validation.
* src/pages/Admin/index.jsx — three model inputs (fast / standard /
  reasoning) replacing the single legacy field; legacy value falls back
  for the standard tier so existing overrides survive.

Adds Zod and Vitest, plus an "npm run test" script.

Also cleans up the pre-existing repo-wide ESLint failures so phase 1's
"npm run lint passes" acceptance criterion can be checked: drops unused
React imports across the JSX tree (React 19 JSX runtime auto-imports),
attaches cause to rethrown errors in the service modules, ignores
pb_migrations in the ESLint config (PocketBase JSVM globals), and
removes one dead handleCreateCustom function in Leren.jsx. A real
behaviour bug surfaced in Testen.jsx — the quiz timer captured a stale
finishQuiz via setInterval closure; now updated via finishQuizRef so the
timer always invokes the latest callback.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 13:50:09 +02:00
RaymondVerhoef
db5bb854c3 docs: add AI pipeline hardening plan; rename giteaService to githubService
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Adds AI_PIPELINE_HARDENING_PLAN.md — a phased, self-contained plan an AI
agent can execute to harden the Anthropic integration (central LLM
client, tool-based structured outputs, prompt caching, retrieval-based
R42 context, eval harness).

Renames src/lib/giteaService.js to src/lib/githubService.js. The module
calls api.github.com and raw.githubusercontent.com; the previous name
was misleading. No behaviour change. Updates the single import site in
src/components/admin/KnowledgeGraph.jsx.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 12:03:25 +02:00
RaymondVerhoef
6fe66bbd93 feat: implement curriculum service and learning automation infrastructure
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2026-05-20 11:44:58 +02:00
RaymondVerhoef
2752fb95d9 feat: implement AI-driven knowledge extraction pipeline for company documentation
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2026-05-20 09:35:57 +02:00
RaymondVerhoef
caaf2b9eba feat: implement extraction pipeline for knowledge graph generation from text and handbook updates 2026-05-20 09:29:21 +02:00
RaymondVerhoef
d6c1813f75 feat: add extractionPipeline to process source text and handbook updates into a structured knowledge graph 2026-05-20 09:29:16 +02:00
RaymondVerhoef
d5655d2232 feat: implement automated knowledge graph extraction pipeline and visualization component 2026-05-20 08:55:27 +02:00
RaymondVerhoef
8529def748 feat: add UploadZone component and database utility for file processing
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2026-05-19 12:00:14 +02:00
RaymondVerhoef
d23b0b6b16 feat: add learning_relevance field to topics and implement KnowledgeGraph UI with handbook synchronization capabilities
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2026-05-19 08:40:52 +02:00
RaymondVerhoef
d71caa41f6 feat: implement interactive Knowledge Graph visualization with AI-driven content analysis and handbook synchronization tools 2026-05-18 21:30:05 +02:00
RaymondVerhoef
f68d76e3d2 feat: add giteaService for fetching files and content from GitHub repositories 2026-05-18 21:25:18 +02:00
RaymondVerhoef
f35550f270 feat: add knowledge graph component and persistent handbook sync state collection 2026-05-18 21:13:17 +02:00
RaymondVerhoef
08f5b1fe18 feat: implement 52-week annual curriculum system with admin management and automated topic progression 2026-05-18 19:49:05 +02:00
RaymondVerhoef
06eb974825 feat: add Anthropic API client and knowledge graph extraction pipeline
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2026-05-17 18:20:29 +02:00