Ship three fully-wired admin areas end-to-end with APIs, seeds, tests and docs. Backend (new `encoach_lms_api` addon + existing addons): - Institutional: academic years/terms, departments, admission registers & admissions, courses/batches, lessons, fees (terms + student fees + invoicing with income-account auto-wiring), gradebook (assignments/grades), library, facilities (encoach.asset), student leave, result templates + marksheets (incl. delete-with-cascade). - Support: `encoach.ticket` model + CRUD/assignee routes; payment records derived from `op.student.fees.details` and `account.move`; platform settings backed by `encoach.code` and `ir.config_parameter` (packages + grading config). - Training: `encoach.vocab.item` + `encoach.grammar.rule` (plus progress models) with CRUD, pagination, search/level filters, and upsert-style progress endpoints. Odoo 19 compatibility: `_sql_constraints` replaced with `@api.constrains`; `ValidationError`/`UserError` mapped to HTTP 400. Frontend: - Rewire institutional admin pages (Academic Year Manager, Admissions, Courses, Lessons, Fees, Gradebook, Library, Facilities, Student Leave, Marksheets, Taxonomy, Resources) to real APIs with React Query invalidation and dialogs. - New typed services: `payments.service.ts`, `platformSettings.service.ts`, `training.service.ts`. Updated `fees/gradebook/lms/courseware/taxonomy/ resources/student-progress/generation` services + related types. - Rewrite `VocabularyPage`, `GrammarPage`, `PaymentRecordPage`, `SettingsPage`, `TicketsPage` to consume live data with search/filter/progress/CRUD flows. - New shared components: `TaxonomyCascade`, `MaterialViewer`, `teacher/TeacherLibrary`. - Favicons/branding assets and misc. UX polish across teacher/student pages. Tooling & QA: - Seeders: `seed_demo.py`, `seed_demo_data.py`, `seed_institutional.py` (idempotent, covers institutional + support + training fixtures incl. income-account wiring). - API write-flow test suites: `test_write_flows.py` (institutional), `test_support_flows.py` (support), `test_training_flows.py` (training), `test_ai_full.py`. All suites pass end-to-end. - Docs: add `docs/PROJECT_SUMMARY.md` with per-section scope, artifacts and QA. - `.gitignore`: ignore `pgdata_bak_*/`, `frontend/.vite/`, `frontend/dist/`, `frontend/node_modules/`. Made-with: Cursor
135 lines
3.8 KiB
Python
135 lines
3.8 KiB
Python
"""Indexer — batch-indexes existing Odoo records into the vector store."""
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import logging
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_logger = logging.getLogger(__name__)
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MODEL_CONFIG = [
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{
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'model': 'op.course',
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'content_type': 'course',
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'text_field': 'name',
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'description_field': 'description',
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'metadata_fields': [],
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},
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{
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'model': 'encoach.resource',
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'content_type': 'resource',
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'text_field': 'name',
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'description_field': 'content',
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'metadata_fields': ['type', 'cefr_level', 'difficulty'],
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},
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{
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'model': 'encoach.question',
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'content_type': 'question',
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'text_field': 'name',
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'description_field': None,
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'metadata_fields': ['question_type', 'difficulty', 'skill'],
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},
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{
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'model': 'encoach.course.module',
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'content_type': 'module',
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'text_field': 'name',
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'description_field': 'description',
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'metadata_fields': ['skill'],
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},
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{
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'model': 'encoach.ai.generation.log',
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'content_type': 'generation_log',
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'text_field': 'brief',
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'description_field': 'generated_content',
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'metadata_fields': ['course_type', 'status'],
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},
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{
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'model': 'encoach.chapter.material',
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'content_type': 'material',
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'text_field': 'name',
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'description_field': 'description',
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'metadata_fields': ['type'],
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},
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]
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def _get_text(record, config):
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"""Extract indexable text from a record."""
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parts = []
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text_field = config.get('text_field', 'name')
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if hasattr(record, text_field):
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val = getattr(record, text_field)
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if val:
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parts.append(str(val))
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desc_field = config.get('description_field')
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if desc_field and hasattr(record, desc_field):
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val = getattr(record, desc_field)
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if val:
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parts.append(str(val)[:2000])
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return ' '.join(parts).strip()
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def _get_metadata(record, config):
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"""Extract metadata dict from a record."""
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meta = {}
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for f in config.get('metadata_fields', []):
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if hasattr(record, f):
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val = getattr(record, f)
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if val:
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meta[f] = str(val) if not isinstance(val, (int, float, bool)) else val
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return meta
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def index_model(env, config, batch_size=100):
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"""Index all records of a single model."""
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model_name = config['model']
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Model = env.get(model_name)
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if Model is None:
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_logger.warning("Model %s not found, skipping", model_name)
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return 0
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Model = Model.sudo()
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from .embedding_service import EmbeddingService
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svc = EmbeddingService(env)
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total = Model.search_count([])
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indexed = 0
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offset = 0
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while offset < total:
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records = Model.search([], limit=batch_size, offset=offset, order='id')
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batch_data = []
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for rec in records:
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text = _get_text(rec, config)
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if text:
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batch_data.append({
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'id': rec.id,
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'text': text,
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'metadata': _get_metadata(rec, config),
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})
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if batch_data:
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indexed += svc.bulk_index(config['content_type'], batch_data)
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offset += batch_size
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env.cr.commit()
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_logger.info("Indexed %d/%d records for %s", indexed, total, model_name)
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return indexed
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def index_all(env, batch_size=100):
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"""Index all configured models."""
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total = 0
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for config in MODEL_CONFIG:
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try:
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total += index_model(env, config, batch_size)
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except Exception:
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_logger.exception("Failed to index %s", config['model'])
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_logger.info("Total records indexed: %d", total)
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return total
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def cron_reindex(env):
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"""Cron entry point for periodic re-indexing."""
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_logger.info("Starting scheduled vector re-index")
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return index_all(env)
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