ktx/packages/cli/src/context/project/config.ts

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chore(workspace): gate dead-code with knip production mode (#196) * refactor(workspace): relocate @ktx/llm source into packages/cli/src/llm * refactor(workspace): rewrite @ktx/llm imports to relative paths * refactor(workspace): fold internal packages into cli * chore(workspace): gate dead-code with knip production mode Turn on production-mode knip plus an autofix run in pre-commit and the `pnpm dead-code` script, document the `/** @internal */` convention for test-only exports in AGENTS.md, annotate test-only exports across the CLI with that JSDoc, and drop dead exports/wrappers the new gate surfaced (e.g. `cli-project.ts`, `lookerRuntimeSourceToFileAdapterSource`, `createLocalScanEnrichmentProvidersFromConfig`, `PGLITE_OWNER_PROCESS_BACKEND_CAPABILITIES`, stale type re-exports). Replace the loose `ignoreIssues` allowlist in `knip.json` with explicit production entries so cross-package barrel leaks are caught. * refactor(cli): delete internal barrel index.ts files The 34 `index.ts` re-export barrels inside `packages/cli/src/` were holdovers from the pre-fold multi-workspace structure. Post-fold-in they served no production purpose: external consumers go through the single package main entry, and in-repo callers mostly imported through them only because the path was short. Internally, knip flagged most barrel re-exports as production-dead (only reached via tests). This change: - Deletes every internal barrel except `packages/cli/src/index.ts` (the published package entry). - Rewrites ~270 source/test files to import each name directly from the file that defines it. - Moves `tools/warehouse-verification/index.ts` to `create-warehouse-verification-tools.ts` (the function it defined locally) and updates its single consumer. - Renames `search/backend-conformance.ts` → `.test-utils.ts` to match the existing test-helper file convention. - Deletes 13 dead test-only chains (dbt-descriptions/*, live-database/extracted-schema, live-database/structural-sync, relationship-* feedback/review chain) plus their tests and a cascading orphan integration test. - Updates test mocks that pointed at deleted barrel paths (notion-client, connector barrels in scan/local-scan-connectors tests) to mock the source files instead. - Points the maintainer benchmark script (`scripts/relationship-benchmark-report.mjs`) at source files instead of `dist/context/scan/index.js`. - Drops the barrel `!` entries from `knip.json`; adds explicit production entries only for the benchmark code reached via dist by the maintainer script. Net: 413 files changed, ~1.2k insertions, ~9.4k deletions. `pnpm run dead-code` (Biome + knip default + knip production) and `pnpm run type-check` are clean; 2277 tests pass. * refactor(workspace): rename @ktx/cli to @kaelio/ktx and pack it directly Promote the CLI workspace package to the public name `@kaelio/ktx` and drop the separate `scripts/build-public-npm-package.mjs` wrapper. The CLI package is now publishable in place (`publishConfig.access: public`, `provenance: true`), so artifact packing uses `pnpm pack` against `packages/cli/` instead of assembling a parallel package tree. Updates all workspace filter invocations, docs, tests, and release readiness checks to reference the new package name, and folds the tarball-name helper into `scripts/public-npm-release-metadata.mjs`. * docs: align "agent clients" and "data agents" terminology Replace "client agents" with "agent clients" and "database agents" with "data agents" across AGENTS.md, README.md, the docs-site copy, and the matching setup-agents test description, matching the canonical vocabulary in docs/terminology.md. Also moves packages/cli/tsconfig.json's tsBuildInfoFile from node_modules/.cache/ to dist/.tsbuildinfo so incremental builds survive node_modules reinstalls. * refactor(release): single source of truth for package version Make packages/cli/package.json the single source of truth for the @kaelio/ktx version. publicNpmPackageVersion() now reads it directly, so artifact filenames, release-readiness checks, and the Python wheel version all derive from one field. The duplicate release-policy.json.publicNpmPackageVersion is removed. Previously the two fields could drift: tarballs were named kaelio-ktx-0.4.1.tgz while internally containing @kaelio/ktx@0.0.0-private. - update-public-release-version.mjs rewrites both Python pyproject.toml files (ktx-daemon, ktx-sl) alongside the npm package.jsons, normalizing the version for PEP 440 (e.g. 0.1.0-rc.2 -> 0.1.0rc2). - semantic-release-config.cjs adds the two pyproject.toml files to @semantic-release/git assets so the release commit back to main carries every version source in lockstep. - The six "?? '0.0.0-private'" fallback literals across the CLI are replaced with "?? getKtxCliPackageInfo().version", and createDefaultKtxMcpServer makes its version arg required. - docs/release.md describes the actual commit-back model: the dev tree always reflects the most recent release; no sentinel pin to maintain. Verified: pnpm run artifacts:build now produces kaelio-ktx-0.4.1.tgz and kaelio_ktx-0.4.1-py3-none-any.whl with @kaelio/ktx@0.4.1 inside. Full type-check, dead-code, and 2287 vitests + 173 script tests pass. * refactor(cli): inject embedding provider resolution and detect sentence-transformers runtime Make resolveProjectEmbeddingProvider and runtimeIo injectable in ingest and scan command entrypoints so tests can stub them, and teach resolvePublicIngestRuntimeRequirements to flag the local-embeddings runtime feature when ktx.yaml selects sentence-transformers. * chore(cli): mark buildLocalStatsStatus and LocalStatsStatus as @internal Both symbols are consumed only by status-project.test.ts. Annotating with /** @internal */ keeps knip's production-mode check clean without changing runtime behavior. * fix(cli): use real package metadata in print-command-tree The stubbed package name embedded a forbidden product identifier that tripped the boundary check in CI. Read the metadata from package.json instead — keeps the rendered tree unchanged and removes a duplicate source of truth. * feat(cli): show embedding coverage in `ktx status`, drop duplicate disk counts Inline `(N embedded)` next to the Wiki scope counts and Semantic-layer source counts, computed with `SUM(embedding_json IS NOT NULL)` over `knowledge_pages` and `local_sl_sources`. Rename the "Knowledge" label to "Wiki" (canonical per `docs/terminology.md`) and rename the matching `localStats.knowledgePages` field to `localStats.wikiPages`. Drop `wiki=N md` and `semantic-layer=N yaml` from the Disk row — those duplicated the per-surface rows above. Disk now reports only actual byte usage (db, cache, raw-sources). The unused `wikiGlobalMarkdownCount` / `semanticLayerYamlCount` fields, the `isMarkdownEntry` / `isYamlEntry` helpers, and the `filter` arg on `summarizeDir` are removed.
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import { KTX_MODEL_ROLES } from '../../llm/types.js';
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import YAML from 'yaml';
import * as z from 'zod';
import { connectionConfigSchema } from './driver-schemas.js';
feat: add codex llm backend for ktx runtime work (#253) * feat: add codex sdk runner foundation * feat: parse codex runtime events * feat: expose codex runtime mcp tools * feat: add codex llm runtime * feat: wire codex llm backend * test: avoid Array.fromAsync in codex runner test * docs: document codex llm backend * fix: tighten codex runtime config ownership * fix: use codex sdk env and thread options * fix: parse codex sdk event shapes * test: add codex backend live smoke * docs: clarify codex backend isolation * fix: drive codex loop metrics from mcp events * fix: enforce codex local step budget * docs: disclose codex isolation limits * fix: count all codex agent steps and stream step callbacks live The agent-loop step budget only counted completed mcp_tool_call items, so built-in command_execution steps (which the public Codex SDK/CLI surface can still expose) never decremented the budget, letting ingest/reconciliation run past stepBudget until Codex stopped on its own. onStepFinish was also replayed only after the whole stream drained, so live work_unit_step / reconciliation progress appeared stuck until the Codex process exited. collectEvents is now the single live step accumulator: it counts every completed agent-action item via a shared isCompletedAgentStep predicate (command_execution, mcp_tool_call, file_change, web_search), fires onStepFinish as each step completes, and enforces the budget on that broader count. A no-tool turn still counts as one step. toolFailures stays MCP-specific, since a non-zero command exit is normal agent exploration, not a loop failure. * test: align ingest llm-guard assertions with codex backend The skip-llm ingest guard message now lists codex as a valid backend and mentions a Claude Code/Codex session plus a codex setup hint, but this slow suite test still asserted the pre-codex wording. Update it to match the production message (already covered by the local-bundle-runtime unit test) and add the codex setup-line assertion. * fix: treat codex error:null tool calls as success The Codex SDK serializes error: null on successful mcp_tool_call items, so the failure check (item.error !== undefined) flagged every successful tool call as failed with the empty-payload default "Codex turn failed". This killed every ingest work unit under the codex backend before it could produce a patch. Key on status === 'failed' (authoritative, always set) and only treat a populated error object as a failure. Add a regression test built from a verbatim real-SDK event capture. * fix: default codex backend to gpt-5.5 and report real probe errors The previous default gpt-5.3-codex is an API-key-only model that the OpenAI API rejects under ChatGPT-account (subscription) auth, so codex status/setup failed with a misleading "authentication is not usable" message even though auth was fine. - Default codex model is now gpt-5.5 (works on both subscription and API-key auth); the curated setup picker offers gpt-5.5 / gpt-5.4 / gpt-5.4-mini and keeps free-form entry for account-specific ids (e.g. gpt-5.3-codex-spark). - runCodexAuthProbe now distinguishes "model not available" from an auth failure and surfaces the real API error: collectEvents retains stream events when the SDK throws on a non-zero exit, and the API error JSON envelope is unwrapped to its human-readable message. - The Codex isolation warning now renders inside the clack setup frame. - Docs updated to gpt-5.5 with a note that *-codex ids require API-key auth. * fix: require llm.models.default in status and match codex probe remediation Status reported a project ready when a non-none LLM backend was configured without llm.models.default, but the runtime (resolveModelSlots) hard-requires it, so ingest/scan/memory threw after `ktx status` said the project was usable. buildLlmStatus now fails for any non-none backend missing models.default and no longer invents a fallback model for claude-code/codex. Codex probe failures now carry a category-matched fix: a model-access failure steers the user at llm.models.default instead of the auth/install remediation. runCodexAuthProbe returns the fix and status consumes it; the message stays self-sufficient so setup output is unchanged. Docs: README now lists the codex backend and local Codex auth; ktx-setup.mdx states --llm-model only accepts codex/default or gpt-*/codex-* ids. Repaired four doctor fixtures that configured a backend without models.default (the now-correctly-blocked config) and added coverage for the new behavior.
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const KTX_LLM_BACKENDS = ['none', 'anthropic', 'vertex', 'gateway', 'claude-code', 'codex'] as const;
const KTX_EMBEDDING_BACKENDS = ['none', 'openai', 'sentence-transformers'] as const;
const KTX_PROMPT_CACHE_TTLS = ['5m', '1h'] as const;
const KTX_ENRICHMENT_MODES = ['none', 'deterministic', 'llm'] as const;
const KTX_WORK_UNIT_FAILURE_MODES = ['abort', 'continue'] as const;
const KTX_STORAGE_STATES = ['sqlite', 'postgres'] as const;
const KTX_SEARCH_BACKENDS = ['sqlite-fts5', 'postgres-hybrid'] as const;
const apiCredentialsSchema = z
.strictObject({
api_key: z.string().min(1).optional().describe('API key for the provider. Read from this value or the provider-specific environment variable.'),
base_url: z.string().min(1).optional().describe('Override the provider\'s default API base URL (e.g. a proxy or self-hosted gateway).'),
})
.describe('API credentials block: optional key and base URL for an LLM or embedding provider.');
const vertexProviderSchema = z
.strictObject({
project: z.string().min(1).optional().describe('Google Cloud project ID hosting the Vertex AI endpoint.'),
location: z.string().min(1).describe('Vertex AI region (e.g. "us-east5"). Required whenever the vertex provider block is present.'),
})
.describe('Google Vertex AI provider configuration.');
const sentenceTransformersSchema = z
.strictObject({
base_url: z.string().default('').describe('Base URL of the sentence-transformers HTTP server. Leave empty (or omit) when the `ktx` CLI is expected to start and manage a local daemon for this project; programmatic consumers must populate it explicitly.'),
pathPrefix: z.string().optional().describe('Optional URL path prefix prepended to embedding requests.'),
})
.describe('Sentence-transformers embedding server configuration.');
const llmProviderSchema = z
.strictObject({
backend: z
.enum(KTX_LLM_BACKENDS)
.default('none')
feat: add claude-code llm backend with runtime port (#115) * docs: revise claude-code ingest backend spec * docs: keep claude-code spec focused on ingest * docs: expand claude-code spec to full llm parity * Refine claude-code backend spec after adversarial review iteration 1 * Refine claude-code backend spec after adversarial review iteration 2 * Refine claude-code backend spec after adversarial review iteration 3 * feat: recognize claude-code llm backend * feat: add ktx llm runtime port * feat: add claude-code llm runtime * feat: route non-agent llm calls through runtime * feat: run ingest agents through llm runtime * feat: support claude-code setup and status * test: verify claude-code backend runtime * docs: add claude-code backend v1 runtime plan * fix: close claude-code runtime isolation checks * fix: warn on claude-code prompt caching during setup * chore: verify claude-code v1 closure * docs: add claude-code backend v1 isolation closure plan * fix: update claude-code ingest setup guidance * docs: add claude-code backend v1 ingest guidance closure plan * docs: align claude-code isolation spec with sdk metadata * test: cover claude-code host discovery metadata * fix: tolerate claude-code host discovery metadata * docs: clarify claude-code host discovery metadata * docs: add claude-code auth-probe isolation fix plan * chore: prepare kaelio ktx rc1 release * chore: add semantic release workflow * fix: unblock ci checks * chore(release): 0.1.0-rc.1 * feat: add Claude Code model selection to setup * fix: keep git maintenance attached in local repos
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.describe(
feat: add codex llm backend for ktx runtime work (#253) * feat: add codex sdk runner foundation * feat: parse codex runtime events * feat: expose codex runtime mcp tools * feat: add codex llm runtime * feat: wire codex llm backend * test: avoid Array.fromAsync in codex runner test * docs: document codex llm backend * fix: tighten codex runtime config ownership * fix: use codex sdk env and thread options * fix: parse codex sdk event shapes * test: add codex backend live smoke * docs: clarify codex backend isolation * fix: drive codex loop metrics from mcp events * fix: enforce codex local step budget * docs: disclose codex isolation limits * fix: count all codex agent steps and stream step callbacks live The agent-loop step budget only counted completed mcp_tool_call items, so built-in command_execution steps (which the public Codex SDK/CLI surface can still expose) never decremented the budget, letting ingest/reconciliation run past stepBudget until Codex stopped on its own. onStepFinish was also replayed only after the whole stream drained, so live work_unit_step / reconciliation progress appeared stuck until the Codex process exited. collectEvents is now the single live step accumulator: it counts every completed agent-action item via a shared isCompletedAgentStep predicate (command_execution, mcp_tool_call, file_change, web_search), fires onStepFinish as each step completes, and enforces the budget on that broader count. A no-tool turn still counts as one step. toolFailures stays MCP-specific, since a non-zero command exit is normal agent exploration, not a loop failure. * test: align ingest llm-guard assertions with codex backend The skip-llm ingest guard message now lists codex as a valid backend and mentions a Claude Code/Codex session plus a codex setup hint, but this slow suite test still asserted the pre-codex wording. Update it to match the production message (already covered by the local-bundle-runtime unit test) and add the codex setup-line assertion. * fix: treat codex error:null tool calls as success The Codex SDK serializes error: null on successful mcp_tool_call items, so the failure check (item.error !== undefined) flagged every successful tool call as failed with the empty-payload default "Codex turn failed". This killed every ingest work unit under the codex backend before it could produce a patch. Key on status === 'failed' (authoritative, always set) and only treat a populated error object as a failure. Add a regression test built from a verbatim real-SDK event capture. * fix: default codex backend to gpt-5.5 and report real probe errors The previous default gpt-5.3-codex is an API-key-only model that the OpenAI API rejects under ChatGPT-account (subscription) auth, so codex status/setup failed with a misleading "authentication is not usable" message even though auth was fine. - Default codex model is now gpt-5.5 (works on both subscription and API-key auth); the curated setup picker offers gpt-5.5 / gpt-5.4 / gpt-5.4-mini and keeps free-form entry for account-specific ids (e.g. gpt-5.3-codex-spark). - runCodexAuthProbe now distinguishes "model not available" from an auth failure and surfaces the real API error: collectEvents retains stream events when the SDK throws on a non-zero exit, and the API error JSON envelope is unwrapped to its human-readable message. - The Codex isolation warning now renders inside the clack setup frame. - Docs updated to gpt-5.5 with a note that *-codex ids require API-key auth. * fix: require llm.models.default in status and match codex probe remediation Status reported a project ready when a non-none LLM backend was configured without llm.models.default, but the runtime (resolveModelSlots) hard-requires it, so ingest/scan/memory threw after `ktx status` said the project was usable. buildLlmStatus now fails for any non-none backend missing models.default and no longer invents a fallback model for claude-code/codex. Codex probe failures now carry a category-matched fix: a model-access failure steers the user at llm.models.default instead of the auth/install remediation. runCodexAuthProbe returns the fix and status consumes it; the message stays self-sufficient so setup output is unchanged. Docs: README now lists the codex backend and local Codex auth; ktx-setup.mdx states --llm-model only accepts codex/default or gpt-*/codex-* ids. Repaired four doctor fixtures that configured a backend without models.default (the now-correctly-blocked config) and added coverage for the new behavior.
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'LLM provider backend. "none" disables LLM features; "anthropic" / "vertex" / "gateway" require the matching nested credentials block; "claude-code" uses the local Claude Code session; "codex" uses the local Codex session.',
feat: add claude-code llm backend with runtime port (#115) * docs: revise claude-code ingest backend spec * docs: keep claude-code spec focused on ingest * docs: expand claude-code spec to full llm parity * Refine claude-code backend spec after adversarial review iteration 1 * Refine claude-code backend spec after adversarial review iteration 2 * Refine claude-code backend spec after adversarial review iteration 3 * feat: recognize claude-code llm backend * feat: add ktx llm runtime port * feat: add claude-code llm runtime * feat: route non-agent llm calls through runtime * feat: run ingest agents through llm runtime * feat: support claude-code setup and status * test: verify claude-code backend runtime * docs: add claude-code backend v1 runtime plan * fix: close claude-code runtime isolation checks * fix: warn on claude-code prompt caching during setup * chore: verify claude-code v1 closure * docs: add claude-code backend v1 isolation closure plan * fix: update claude-code ingest setup guidance * docs: add claude-code backend v1 ingest guidance closure plan * docs: align claude-code isolation spec with sdk metadata * test: cover claude-code host discovery metadata * fix: tolerate claude-code host discovery metadata * docs: clarify claude-code host discovery metadata * docs: add claude-code auth-probe isolation fix plan * chore: prepare kaelio ktx rc1 release * chore: add semantic release workflow * fix: unblock ci checks * chore(release): 0.1.0-rc.1 * feat: add Claude Code model selection to setup * fix: keep git maintenance attached in local repos
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),
vertex: vertexProviderSchema.optional().describe('Vertex AI credentials, used when backend is "vertex".'),
anthropic: apiCredentialsSchema.optional().describe('Anthropic API credentials, used when backend is "anthropic".'),
gateway: apiCredentialsSchema.optional().describe('AI Gateway credentials, used when backend is "gateway".'),
})
.describe('LLM provider selection and credentials.');
const promptCachingSchema = z
.strictObject({
enabled: z.boolean().optional().describe('Master switch for Anthropic-style prompt caching. When omitted, the backend\'s default applies.'),
systemTtl: z.enum(KTX_PROMPT_CACHE_TTLS).optional().describe('Cache TTL for the system prompt segment ("5m" or "1h").'),
toolsTtl: z.enum(KTX_PROMPT_CACHE_TTLS).optional().describe('Cache TTL for the tools/schema segment ("5m" or "1h").'),
historyTtl: z.enum(KTX_PROMPT_CACHE_TTLS).optional().describe('Cache TTL for conversation-history cache breakpoints ("5m" or "1h").'),
vertexFallbackTo5m: z.boolean().optional().describe('When true, transparently downgrade 1h TTLs to 5m on Vertex, which does not support 1h caching.'),
})
.describe('Prompt-caching tunables for Anthropic-compatible providers.');
const llmSchema = z
.strictObject({
provider: llmProviderSchema.prefault({}).describe('LLM provider backend and credentials.'),
models: z
.partialRecord(z.enum(KTX_MODEL_ROLES), z.string().min(1))
.default({})
.describe('Per-role model overrides keyed by ktx model role (e.g. "default", "triage"). Values are provider-specific model identifiers.'),
promptCaching: promptCachingSchema.optional().describe('Optional prompt-caching tunables.'),
})
.describe('LLM provider, per-role model overrides, and prompt-caching tunables.');
const embeddingSchema = z
.strictObject({
backend: z
.enum(KTX_EMBEDDING_BACKENDS)
.default('none')
.describe('Embedding backend. "openai" and "sentence-transformers" call out to those providers; "none" disables embeddings.'),
model: z.string().min(1).optional().describe('Provider-specific embedding model identifier (e.g. "text-embedding-3-small").'),
dimensions: z
.int()
.positive()
.default(8)
.describe(
'Embedding vector dimensionality. The default value 8 is a placeholder that is only valid alongside backend: none; ' +
'before switching backend to openai/sentence-transformers, set this explicitly to match the chosen model ' +
'(e.g. 384 for all-MiniLM-L6-v2, 1536 for text-embedding-3-small).',
),
openai: apiCredentialsSchema.optional().describe('OpenAI credentials, used when backend is "openai".'),
sentenceTransformers: sentenceTransformersSchema.optional().describe('Sentence-transformers server config, used when backend is "sentence-transformers".'),
batchSize: z.int().positive().optional().describe('Number of texts per embedding API call. Omit to use the backend default.'),
})
.describe('Embedding backend, model, and provider credentials.');
const workUnitsSchema = z
.strictObject({
stepBudget: z.int().positive().default(40).describe('Maximum number of agent steps allowed per work unit before it is force-terminated.'),
maxConcurrency: z.int().positive().default(1).describe('Maximum number of work units run concurrently during ingest.'),
failureMode: z
.enum(KTX_WORK_UNIT_FAILURE_MODES)
.default('continue')
.describe('Behavior when a work unit fails: "abort" stops the whole ingest run; "continue" records the failure and keeps going.'),
})
.describe('Concurrency and failure handling for ingest work units.');
feat(cli): add ingest LLM rate-limit governor with paced retries (#261) * feat(cli): add ingest rate limit governor * feat(cli): wire ingest rate-limit config * feat(cli): report provider rate-limit signals * feat(cli): show ingest rate-limit waits * fix(cli): complete rate-limit event coverage * fix(cli): abort ingest provider calls cleanly * fix(cli): propagate ingest cancellation * fix(cli): reject pre-aborted ingest rate-limit waits * fix(cli): honor Claude rate-limit reset waits * fix(cli): retry thrown Codex rate-limit failures * fix(cli): type Claude rate-limit result details * fix(cli): emit ingest rate-limit countdowns from rejected signals * fix(cli): report ai sdk rate-limit header utilization * fix(cli): gate LLM rate-limit retries on the governor budget The AI SDK and Codex runtimes retried 429 / opaque rate-limit failures up to 6-7 times with no backoff when constructed without a RateLimitGovernor (scan, memory, setup) or with pacing disabled, ignoring Retry-After and worsening the limit. The outer retry loop only cooperates with the governor's pause, so without active pacing there is no backoff to apply. Route the retry bound through a single source: RateLimitGovernor .maxRetryAttempts(), which returns retry.maxAttempts when enabled and 1 (no outer retry) when absent or disabled. All three runtimes (ai-sdk, codex, claude-code) now use it, so ingest.rateLimit.retry.maxAttempts genuinely controls attempts and the hard-coded 6 (plus Codex's off-by-one extra attempt) is gone. Backend-native retry (e.g. the AI SDK's maxRetries) still handles transient 429s. Also correct the ktx.yaml docs for maxWaitMs (caps each wait, not the whole run) and maxAttempts, and sync uv.lock ktx-sl/ktx-daemon to 0.9.0.
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const ingestRateLimitRetrySchema = z
.strictObject({
maxAttempts: z
.int()
.positive()
.default(6)
.describe(
'Maximum attempts for a single rate-limited LLM call before the failure surfaces, counting the first try. Also bounds how far opaque backoff grows for providers that do not expose a reset time.',
),
baseDelayMs: z.int().positive().default(1_000).describe('Initial opaque retry delay in milliseconds.'),
maxDelayMs: z.int().positive().default(60_000).describe('Maximum opaque retry delay in milliseconds.'),
jitter: z.boolean().default(true).describe('When true, apply bounded jitter to opaque retry delays.'),
})
.describe('Retry policy for rate-limit responses that do not include a reset time or retry-after value.');
const ingestRateLimitSchema = z
.strictObject({
enabled: z.boolean().default(true).describe('Master switch for ingest LLM rate-limit pacing and visible waits.'),
throttleThreshold: z
.number()
.min(0)
.max(1)
.default(0.8)
.describe('Provider utilization at or above which ingest throttles new work-unit starts.'),
minConcurrencyUnderPressure: z
.int()
.positive()
.default(1)
.describe('Effective work-unit concurrency while a provider is under rate-limit pressure.'),
maxWaitMs: z
.int()
.positive()
.optional()
.describe('Optional cap on a single provider reset wait. Omit to wait indefinitely until the provider reset time.'),
retry: ingestRateLimitRetrySchema.prefault({}).describe('Opaque retry policy for providers without reset hints.'),
})
.describe('Rate-limit pacing and wait policy for ingest LLM calls.');
const ingestSchema = z
.strictObject({
adapters: z
.array(z.string().min(1))
.default([])
.describe('Ingest adapter identifiers to run (e.g. "metabase", "looker", "historic-sql"). Empty array means no adapters are run.'),
embeddings: embeddingSchema
.prefault({ backend: 'none' })
.describe('Embedding configuration used when ingest adapters need to embed documents.'),
workUnits: workUnitsSchema.prefault({}).describe('Concurrency and failure handling for ingest work units.'),
feat(cli): add ingest LLM rate-limit governor with paced retries (#261) * feat(cli): add ingest rate limit governor * feat(cli): wire ingest rate-limit config * feat(cli): report provider rate-limit signals * feat(cli): show ingest rate-limit waits * fix(cli): complete rate-limit event coverage * fix(cli): abort ingest provider calls cleanly * fix(cli): propagate ingest cancellation * fix(cli): reject pre-aborted ingest rate-limit waits * fix(cli): honor Claude rate-limit reset waits * fix(cli): retry thrown Codex rate-limit failures * fix(cli): type Claude rate-limit result details * fix(cli): emit ingest rate-limit countdowns from rejected signals * fix(cli): report ai sdk rate-limit header utilization * fix(cli): gate LLM rate-limit retries on the governor budget The AI SDK and Codex runtimes retried 429 / opaque rate-limit failures up to 6-7 times with no backoff when constructed without a RateLimitGovernor (scan, memory, setup) or with pacing disabled, ignoring Retry-After and worsening the limit. The outer retry loop only cooperates with the governor's pause, so without active pacing there is no backoff to apply. Route the retry bound through a single source: RateLimitGovernor .maxRetryAttempts(), which returns retry.maxAttempts when enabled and 1 (no outer retry) when absent or disabled. All three runtimes (ai-sdk, codex, claude-code) now use it, so ingest.rateLimit.retry.maxAttempts genuinely controls attempts and the hard-coded 6 (plus Codex's off-by-one extra attempt) is gone. Backend-native retry (e.g. the AI SDK's maxRetries) still handles transient 429s. Also correct the ktx.yaml docs for maxWaitMs (caps each wait, not the whole run) and maxAttempts, and sync uv.lock ktx-sl/ktx-daemon to 0.9.0.
2026-06-05 12:10:27 +02:00
rateLimit: ingestRateLimitSchema.prefault({}).describe('LLM rate-limit pacing and visible-wait policy for ingest.'),
feat(cli): profile ingest runs and split model vs tool time (#249) * feat(cli): profile ingest runs to find where wall-clock time goes Add opt-in profiling for `ktx ingest`. Each timed phase, work unit, and agent loop now records durationMs / step count / token usage in the trace, and a post-run aggregator rolls them up into a "where did the time go" report printed to stderr. Enable per run with KTX_PROFILE_INGEST (1/true -> human table, json -> raw structured profile) or persistently via `ingest.profile` in ktx.yaml. The json form emits raw milliseconds, token counts, and a summary.headline one-line diagnosis so coding agents can parse it directly; json wins when both env and config request profiling. - runtime-port: RunLoopMetrics (totalMs, usage, stepCount, stepBoundariesMs) plus onMetrics callbacks on text/object generation - ai-sdk + claude-code runtimes: capture per-loop timing and token usage - work-unit-executor and stages 3/4: thread metrics into trace events - ingest-bundle.runner: time worktree / triage / clustering / index / reconcile / squash phases and emit the profile in a finally block (best-effort; never affects the run outcome) - ingest-profile: new trace+transcript aggregator with table/json formatters - config: ingest.profile flag; docs: profiling section in ktx-ingest.mdx * fix(cli): flush tool-call logs before reading ingest profile Tool transcripts are appended fire-and-forget so the agent hot path never blocks on logging. The ingest profiler read them before the writes settled, so per-work-unit toolMs (and the model-vs-tool split derived from it) could be incomplete. Track in-flight appends and expose flushToolCallLogs() — bounded by a timeout so it can never hang — and flush before the profiler reads the transcript.
2026-06-01 15:49:17 +02:00
profile: z
.union([z.boolean(), z.literal('json')])
.default(false)
.describe(
'Print a timing breakdown to stderr at the end of each ingest run. `true` prints a human table; `"json"` prints the raw structured profile for coding agents; `false` disables it. Equivalent to the KTX_PROFILE_INGEST environment variable (`1`/`true`/`json`).',
),
})
.describe('Ingest pipeline configuration: adapters, embeddings, and work-unit policy.');
const scanEnrichmentSchema = z
.strictObject({
mode: z
.enum(KTX_ENRICHMENT_MODES)
.default('none')
.describe('Column/table enrichment mode. "none" disables enrichment; "deterministic" uses local heuristics; "llm" calls the configured LLM provider.'),
embeddings: embeddingSchema.optional().describe('Optional embedding override for enrichment-time vectorization. Falls back to ingest.embeddings when omitted.'),
})
.describe('Schema-scan enrichment: how columns and tables are described.');
const scanRelationshipsSchema = z
.strictObject({
enabled: z.boolean().default(true).describe('Master switch for relationship discovery during scan.'),
llmProposals: z.boolean().default(true).describe('When true, propose relationships using the configured LLM in addition to deterministic candidates.'),
validationRequiredForManifest: z
.boolean()
.default(true)
.describe('When true, only relationships that pass database-side validation are written to the manifest.'),
acceptThreshold: z
.number()
.min(0)
.max(1)
.default(0.85)
.describe('Confidence score (01) at or above which an LLM-proposed relationship is auto-accepted into the manifest.'),
reviewThreshold: z
.number()
.min(0)
.max(1)
.default(0.55)
.describe('Confidence score (01) at or above which a proposal is surfaced for human review (but not auto-accepted).'),
maxLlmTablesPerBatch: z
.int()
.positive()
.default(40)
.describe('Maximum number of tables included in a single LLM relationship-proposal batch.'),
maxCandidatesPerColumn: z
.int()
.positive()
.default(25)
.describe('Maximum number of candidate join partners considered per column during relationship discovery.'),
profileSampleRows: z.int().positive().default(10000).describe('Number of rows sampled per table when profiling values for relationship inference.'),
fix(snowflake): unblock multi-schema ingest and relationship discovery (#204) * feat(setup): drop redundant Snowflake schema prompt; fall back to free-text on listSchemas failure Snowflake setup previously asked for a single schema as free text, then ran a multiselect against the discovered schemas — two schema questions back-to-back, with the first being only a session bootstrap. The SDK's `schema` is optional, so the bootstrap step is unnecessary. - Remove the free-text Snowflake schema prompt; only pass `schema` to snowflake-sdk when one is configured. - When `listSchemas()` fails (e.g. role lacks SHOW SCHEMAS), prompt the user for a comma-separated list, persist it as `schema_names`, and use it as both the table-list filter and the multiselect default. Applies to every driver with a scope-discovery spec, not just Snowflake. - Update docs to lead with `schema_names`; keep `schema_name` as a documented single-schema shorthand. * fix(snowflake): keep introspecting when primary-key discovery is denied The PK query joins INFORMATION_SCHEMA.TABLE_CONSTRAINTS and INFORMATION_SCHEMA.KEY_COLUMN_USAGE, which require grants the connection role may not have. Previously a 'SQL compilation error: Object ANALYTICS.INFORMATION_SCHEMA.KEY_COLUMN_USAGE does not exist or not authorized' aborted the entire introspect — schemas, columns, and row counts were all discarded over a missing nice-to-have. Wrap the constraint query in try/catch, log a one-line warning per schema, and return an empty PK map. Columns end up with primaryKey=false; relationship inference still has FK and profiling to fall back on. * fix(scan): unblock relationship discovery on Snowflake Two adjacent bugs prevented the scan's relationship pipeline from producing any joins on a Snowflake warehouse: - relationship-profiling.ts fell through to a default `GROUP_CONCAT` branch for unknown drivers. Snowflake has no GROUP_CONCAT, so every per-table profile query failed with "Unknown function GROUP_CONCAT". Add an explicit Snowflake branch that uses LISTAGG with a literal '\x1f' delimiter (Snowflake requires the delimiter to be a constant, so CHR(31) is rejected). - description-generation.ts destructured `connector.sampleTable` and `connector.sampleColumn` into bare locals, losing the `this` binding when the class-method connectors (Snowflake, Postgres, MySQL) were invoked. Every sample call threw "Cannot read properties of undefined (reading 'assertConnection')" and degraded LLM descriptions to metadata-only prompts. Call the methods through the connector instead. Without these, even after the primary-key probe is allowed to fail softly, the scan ends up with 0 validated relationships and an empty `joins:` block in every shard YAML. * test(scan): cover table-ref helpers * feat(scan): plumb tableScope through live-database introspection port * feat(scan): apply tableScope during metadata fetch * feat(scan): enforce table scope at fetch boundary * feat(scan): pool Snowflake sessions and batch enrichment for faster ingest (#206) * feat(cli): add RSA key-pair auth option to Snowflake setup wizard Extends the interactive Snowflake setup flow with an authentication-method prompt (password vs RSA/JWT key-pair). The RSA branch collects a private-key path (env/file/absolute) and an optional passphrase; the resulting connection config records `authMethod: 'rsa'` with `privateKey` and `passphrase` instead of `password`. * feat(scan): pool Snowflake sessions * fix(scan): reuse structural snapshots and cleanup connectors * feat(scan): parallelize relationship profiling * feat(scan): batch table description generation * docs: document Snowflake ingest concurrency knobs * fix(scan): close Snowflake ingest perf verification gaps * fix(scan): keep batched description failure bounded * feat(scan): dispatch query-history probes by connection driver Extract historic-sql dialect resolution into a shared helper so the status-project readiness check and the local ingest factory agree on which connections enable query history and which probe to run. The status command now picks the postgres/snowflake/bigquery probe based on the connection's driver instead of always reporting against postgres, which previously caused snowflake connections with queryHistory.enabled to surface a misleading "driver is snowflake" failure. Also drops a noisy console.warn from Snowflake primary-key discovery — INFORMATION_SCHEMA.KEY_COLUMN_USAGE is commonly ungranted for read-only roles and the FK + profiling paths handle the empty PK map already. * fix(llm): allow StructuredOutput tool and raise maxTurns for generateObject The Claude Code agent SDK announces an internal pseudo-tool named StructuredOutput in the system/init message whenever outputFormat is set to { type: 'json_schema' }. The runtime's isolation check built its allowedToolIds set only from MCP tool ids and treated StructuredOutput as an unexpected host-injected tool, so every generateObject call threw "Claude Code runtime isolation failed: tools=StructuredOutput ..." and the table-descriptions and relationship-LLM-proposal enrichment stages recorded null output across the board. Whitelist StructuredOutput specifically in generateObject's allowedToolIds — the check also enforces missing_tools symmetry, so generateText and runAgentLoop, which do not see StructuredOutput, must not require it. generateObject also ran with maxTurns: 1, which the model intermittently breached when it emitted thinking text before the structured response. Raised to 5 to give the schema-bound call enough headroom without allowing unbounded loops. The existing tests now exercise the path with an init message that announces StructuredOutput so the regression cannot slip back in. * chore(scripts): add ktx-reset.sh project-cleanup helper Convenience script for repeatable ingest testing: takes a project directory and prunes everything except ktx.yaml and .ktx/secrets/, so the next ktx setup or ktx ingest run starts from a known-clean state.
2026-05-23 10:41:30 +02:00
profileConcurrency: z
.int()
.positive()
.default(4)
.describe('Parallel relationship-profile queries run against the database during scan.'),
validationConcurrency: z.int().positive().default(4).describe('Number of relationship validation queries run in parallel against the database.'),
validationBudget: z
.union([z.literal('all'), z.int().nonnegative()])
.optional()
.describe('Cap on validation queries per scan run. Use "all" for unlimited, an integer for a hard cap, or omit for the runtime default.'),
feat: ktx batch — scan resilience, analytics SQL craft, connector hardening (#312) * docs: add spider2-specs handoff directory for benchmark-driven feature specs * feat(cli): connection-scoped wiki pages Add an optional `connections` frontmatter field so database-specific wiki knowledge can be scoped to a connection without polluting searches about other databases, while page keys stay a flat, globally-unique namespace. - connections: single string or list; absent/empty ⇒ unscoped (applies to all) - wiki_search (MCP) and `ktx wiki --connection` return unscoped ∪ matching pages, filtered at the disk-load seam so all three search lanes draw their candidate pool from the already-scoped set (not a post-filter) - wiki_write accepts connections with REPLACE semantics and rejects a connection-scoped write whose key collides with a disjoint-connection page (data-loss guard; hard error, no silent clobber) - explicit connection-id args (wiki_search, memory_ingest, ktx wiki) are validated against ktx.yaml via a shared assertConfiguredConnectionId, which also closes the prior gap where memory_ingest's connectionId was unvalidated; persisted ids absent from config warn (not fail) in `ktx status` - prompt guidance in the wiki_capture skill and external-ingest prompt; the session connectionId is surfaced to the memory agent and ingest work units Implements spider2-specs/specs/01-connection-scoped-wiki.md; intake draft moved to spider2-specs/done/. * docs(spider2-specs): add specs/ refinement stage and composite-key join spec Describe the todo/ → specs/ → done/ pipeline in the README (refined specs are the durable artifact; intake drafts move to done/ on ship) and add a MEDIUM-priority spec for multi-column composite-key join detection found during the first sqlite smoke test. * feat(cli): add --verbatim ingest mode for authoritative documents Store each --text/--file document body unchanged as a GLOBAL wiki page instead of routing it through the memory agent, which may rewrite, condense, or re-title it. The LLM derives only metadata (summary, tags, sl_refs) and only for frontmatter fields the document does not already set; the stored body is written by code and never edited. - Deterministic page key: files derive it from the filename, inline text from its leading Markdown heading (headless inline text is rejected — pass it as --file instead). - Idempotent: re-running the same body is a no-op; a different body at the same key fails loudly rather than overwriting. - Works with llm.provider.backend: none, deriving a degraded summary from the heading or first sentence. - Existing frontmatter (including unmodeled fields like effective_date) passes through untouched; --connection-id scopes the page. * feat(cli): SQL-authoring craft and per-dialect notes tool for the analytics skill Spec 07: add a dialect-agnostic <sql_craft> block to the ktx-analytics skill (schema discovery, composition, window-function correctness, numeric precision, answer completeness) with one worked window-then-filter example. Workflow steps gain pointers into it; existing guidance is unchanged. Spec 08: add a read-only sql_dialect_notes MCP tool returning a connection's engine SQL conventions (FQTN form, identifier quoting/case, date/time, top-N idiom, JSON access), resolved through the existing sqlAnalysisDialectForDriver path. Notes are per-dialect markdown files under context/sql-analysis/dialects, served by the tool and copied to dist (package-internal, never installed). Non-SQL connections return a clear KtxExpectedError. The flat skill gains a one-line pointer to the tool. Both spider2-specs intake drafts move to done/ with implementation notes. * feat(cli): tolerate objects that fail introspection during scan Isolate per-object introspection failures so one broken or inaccessible object no longer zeroes out a connection's whole semantic layer: the sqlite and bigquery connectors introspect each object defensively (tryIntrospectObject), the live-database adapter records a scan outcome and fetch report, and enabled_tables accepts catalog.db.name, db.name, or bare names with a clear no-match error. Includes matching ktx-daemon introspection changes, docs, and tests. * docs(spider2-specs): add 06-scan-tolerate-broken-objects spec * feat(cli): generalize analytics fan-out rule to multi-hop join chains The ktx-analytics skill's fan-out rule only reliably caught single-hop inflation; agents still silently fanned out on multi-hop chains where the offending one-to-many join sits several hops below the SUM/COUNT and is easy to miss. Rewrite the Composition rule so the danger reads as cumulative across the whole chain (pre-aggregate per measure-owning table), add an affirmative grain-verification habit (default: pre-aggregate to grain; escape hatch: COUNT(DISTINCT key) for pure counts only; SUM/AVG of a fanned-out measure must pre-aggregate), and add one generic wrong-vs-right worked example. Content-only and dialect-agnostic; no new tool, flag, or config. Implements spider2-specs/specs/09 and annotates spec 07's one-example constraint as superseded. * feat(cli): add panel-completeness, time-series window, and text-encoded numeric SQL craft Extend the analytics skill's <sql_craft> with three correctness habits and route the dialect-specific halves through sql_dialect_notes: - Panel completeness (spec 10): full-domain spine -> LEFT JOIN -> COALESCE for "each/every/all/per" questions, defaulted by measure additivity. - Time-series windows (spec 11): explicit cumulative frames, calendar-range rolling windows with minimum-periods guards, and period-over-period via LAG. - Text-encoded numerics (spec 12): sample distinct values, strip/scale/cast in one early CTE, and confirm coverage with a failure-detecting cast. Add per-dialect Series, Rolling window, and Safe cast notes to all seven dialect files so the skill stays dialect-agnostic while the engine-specific syntax lives in sql_dialect_notes. Tests updated and passing (19). * docs(spider2-specs): add specs 10-12 for analytics SQL-craft additions Refined specs and completion records for the panel-completeness spine (10), time-series window recipes (11), and text-encoded numeric parsing (12) implemented in the preceding commit. * docs(spider2-specs): add backlog intake drafts 13-14 - 13: canonical authoritative-source measures - 14: output-completeness final check * skill(analytics): spec 14 output-completeness + iter1 (active column planning) Bundles two changes (entangled in SKILL.md; future spider2 iterations land as separate commits): - spec 14 (output-completeness): multi-part "answer every requested output" rule + a "Final completeness check" in workflow Step 6 and <sql_craft>; analytics skill-content test updated; intake draft -> done/, refined spec added. - iter1 experiment: spec 14's passive end-check did not change behavior on the benchmark's output-completeness failures, so (a) the Plan step now writes the exact output-column list UP FRONT as a contract the final SELECT must match, and (b) "expose identity" -> "project BOTH the entity id and its name" (covers both omission directions). All generic craft. Driven by the Spider 2.0-Lite failure analysis (incomplete output was the largest failure bucket); benchmark only as motivation. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * skill(analytics): iter2 — deterministic order in string/array aggregation GROUP_CONCAT/string_agg/array_agg element order is undefined without an explicit ORDER BY; also note SQLite's default text sort is binary/case-sensitive (uppercase before lowercase) vs case-insensitive (COLLATE NOCASE). Generic SQLite craft. Spider 2.0-Lite motivation: an ordered-ingredient-list question failed only on the within-string element order (right elements, wrong order); benchmark as motivation only. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * feat(mcp): structured, leveled logging for the MCP server Add one synchronous pino logger per MCP server process, written through the io.stderr sink: plain JSON when stderr is not a TTY, colorized pino-pretty (sync, in-process) when it is. Every tool call logs tool.start with its raw params BEFORE the handler runs and tool.end after (info / warn past KTX_MCP_SLOW_TOOL_MS / error), correlated by callId plus sessionId, so a runaway sql_execution leaves a recoverable start line with its exact SQL and no matching end. HTTP logs session.open/close and wires the previously-dead transport.onerror to transport.error; stdio routes its transport error through the logger. Level via KTX_MCP_LOG_LEVEL (default info). Existing mcp_request_completed telemetry and registerParsedTool are unchanged; no worker/async transport and no redaction in v1 (logs are local-only). Implements spider2-specs/specs/15-mcp-server-structured-logging.md and moves the intake draft to done/. * feat(mcp): report uptimeMs in MCP server /health The /health endpoint now includes uptimeMs (monotonic elapsed time since the server started), mirroring the Python daemon's uptime_ms telemetry field. * feat(cli): bound read-query execution with a per-connection deadline Enforce one shared query deadline (default 30s, overridable per connection via query_timeout_ms) on every executeReadOnly path, so an accidentally-expensive LLM-authored query returns a fast "query exceeded Ns" KtxQueryError instead of hanging the MCP server. - New shared contract context/connections/query-deadline.ts (resolveQueryDeadlineMs, queryDeadlineExceededError); query_timeout_ms added to the shared warehouse schema; BigQuery's job_timeout_ms removed. - SQLite runs the read query in a short-lived forked child process and enforces the deadline with SIGKILL. worker_threads + terminate() was tried first but cannot interrupt a synchronous better-sqlite3 scan (the native loop never yields); SIGKILL reclaims the process in ~2ms and keeps the event loop free. - Remote connectors apply a real server-side statement timeout and re-wrap their own timeout signal as KtxQueryError: Postgres statement_timeout/57014, MySQL max_execution_time/3024, Snowflake STATEMENT_TIMEOUT_IN_SECONDS/604, ClickHouse max_execution_time + aligned request_timeout/159, SQL Server requestTimeout/ ETIMEOUT, BigQuery jobTimeoutMs. - Relationship validation skips a candidate to review on a deadline timeout instead of aborting the pass; the deadline surfaces through the existing MCP pino logger as a matched tool.start/tool.end(error) pair (no new logging code). Also fixes a pre-existing, unrelated invalid cast in mcp-server-factory.test.ts that was breaking tsc -p tsconfig.test.json. * docs(spider2-specs): mark spec 16 (bounded query execution) done Append Implementation notes to the refined spec (what shipped, where, and the worker-thread -> child-process+SIGKILL deviation with its evidence) and move the intake draft from todo/ to done/. * skill(analytics): iter3 — measure-as-amount, inter-event gap, top-per-metric career Three generic interpretation rules: a named business measure (sales/revenue/spend) means its amount not a row count; "inter-event duration/gap" is LAG/LEAD time-between events not a magnitude column; "highest across several achievements" aggregates per metric over the whole history. All three demonstrably FIRE (verified on local008/003/152 SQL). local008 flips to correct (mechanism-aligned). 003/152 still fail on a different axis (source-column / grouping). Generic craft; benchmark only as motivation. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * skill(analytics): spine-for-extreme-selection + aggregate-over-selected-set Two generic answer-completeness refinements: - Selecting the extreme group (lowest/highest count over a period/category domain) must rank over the COMPLETE spine, not only groups with fact rows — an empty period is a genuine 0 and often the true minimum. - An aggregate scoped to a per-entity selected set ('avg revenue per actor in those top-3 films') is computed ACROSS that set, distinct from the per-item value; project both. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * skill(analytics): iter2 — sharpen extreme-selection spine + top-N ranking-measure - spine-for-extreme: concrete cue that a zero-row period never appears in a GROUP BY of the facts; generate the full calendar, LEFT JOIN, COALESCE, then rank. - aggregate-over-selected-set: top-N selection ranks by the named ranking measure (the item's own revenue), independent of the per-item share that feeds the aggregate. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * skill(analytics): iter3 — comparison-between-two-extremes is one wide row Distinguishes a cross-item comparison ('the difference between the highest and lowest month' -> single wide row, both extremes side by side + the comparison column) from 'report a metric for each group' (-> stays long). Generic, question- derived; targets the wide-vs-long shape gap without affecting per-group long output. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * skill(analytics): iter4 — anchor a period bucket to the named lifecycle event When a record carries multiple lifecycle timestamps (created/placed, approved, shipped, delivered, completed, settled) and the question counts/measures records in a named *completed state* by period ("delivered orders by month", "shipped items per week"), bucket the period by that named event's own timestamp, not the record-creation timestamp; the state value is the qualifying filter, the matching timestamp is the time anchor. Wording priority is explicit — purchased/placed/ created/submitted/ordered keep the start-event timestamp — and a non-temporal state filter (counts by customer/city/seller with no period) introduces no anchor. Generic analytics craft: counting completed-state records by their creation date silently answers "records that later reached that state, grouped by when they started" instead of the question asked. Surfaced via the spider2-autofix loop; FAIR_PRODUCT (adversary-screened, restatable from question wording + schema/ semantic-layer lifecycle descriptions, no gold dependency). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * skill(analytics): iter5 — canonicalize observed URL-path variants before page-level analysis When a question groups/filters/sequences web pages by a path/url column, sample its distinct values; if the data itself shows /route and /route/ variants for the same page context, canonicalize in an early CTE (preserve / as root, strip trailing slashes from non-root paths, map an observed empty path to / only when the column is a URL path with blank root-page events) and use the canonical path everywhere above. Explicitly forbids inventing aliases the data doesn't show: no merging different route names, no stripping query/fragment/host/scheme, no lowercasing, and no canonicalization when the question asks for raw URL/path or slash-vs-no-slash diffs. Generic web-analytics craft: raw request logs routinely store the same user-visible page with and without a trailing slash, so grouping raw labels silently splits one page into several. Surfaced via the spider2-autofix loop (Codex runner, round r2); FAIR_PRODUCT (adversary-screened, restatable from URL-path semantics + page-grain question wording + solver-observed distinct values, no gold dependency). The rule fired mechanism-aligned on both targets; flipped local330 (landing/exit page counts), local331 residual is a separate sequence-semantics axis beyond canonicalization. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * skill(analytics): iter6 — coverage over a selected group is a set-membership aggregate When a question first selects a group of entities ("the top 5 actors", "these products") and then asks what count/share/percentage of a DIFFERENT subject domain relates to *these* selected entities ("what % of customers rented films featuring these actors"), the subject set is the UNION across the whole group: count DISTINCT subject ids once across the selected entities and return one collective value at the subject-domain grain — not one row per selected entity (which double-counts subjects related to more than one entity and answers a different question). Narrowly guarded: emit one row per entity only when the wording says "for each / per / by / list" or asks for each entity's own metric ("top 5 players and their batting averages"). The collective-coverage cousin of the existing per-entity selected-set rule. Generic analytics craft (per-entity metric vs set-level coverage). Surfaced via the spider2-autofix loop (Codex runner, round r3); FAIR_PRODUCT (adversary-screened, restatable from wording alone, no gold dependency). Flipped local195 mechanism-aligned (union COUNT(DISTINCT customer)/total, one scalar); 0 regression across 5 passing per-entity top-N guards (local023/024/029/212/221 stayed long). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * skill(analytics): label-only joins must LEFT JOIN — incomplete dims silently drop fact rows Mirror of the existing fan-out rule for the DROP direction: an inner JOIN to a dimension table used only to attach a display attribute silently discards every fact row whose key has no parent when the dimension is incomplete (trimmed catalogs, late-arriving / SCD-gap rows), shrinking counts/sums and the universe over which shares/averages/medians are computed. Guidance: LEFT JOIN pure enrichment; inner-join a dimension only when intended as a filter; key the aggregate/GROUP BY on the fact column, not the dimension column. Spider2 autofix round 'joindim': flips complex_oracle local050 (FAIL->PASS, official scorer) — solver dropped the gratuitous products inner-join and recovered the exact gold. local060/063 also adopt LEFT JOIN (rule fires) but remain gold-convention-blocked. Guards local061/067 held. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * docs(spider2-specs): add todo/17 — lifecycle-event metrics (semantic-layer) Draft intake spec surfaced by the spider2-autofix loop (round r1): the model-layer form of the shipped iter4 lifecycle-date-anchoring skill rule — infer per-state lifecycle-event metrics (e.g. delivered_orders with defaultTimeDimension = the delivery timestamp) during enrichment so the correct time anchor is the default for any consumer, not only an agent that loaded the skill. Generic; FAIR_PRODUCT. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * fix(connectors): accept leading underscore in connection/identifier ids The safe-identifier validator regex /^[a-zA-Z0-9][a-zA-Z0-9_-]*$/ allowed an underscore everywhere except the first character, so a connection id / database name that legitimately starts with '_' (valid in Snowflake, e.g. _1000_GENOMES) could never be ingested or queried. Allow a leading underscore across all 16 duplicated validators (connection ids, source ids, page/wiki keys, warehouse- verification tool schemas). Path-safety is unaffected — '.' and '/' remain excluded, and assertSafePathToken still blocks traversal. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * feat(analytics): generic geospatial query guidance Add a Snowflake ST_* dialect note (ST_MAKEPOINT lon-first, ST_DWITHIN/ST_CONTAINS/ ST_WITHIN/ST_INTERSECTS, bbox->polygon via ST_MAKEPOLYGON/ST_MAKELINE) and a dialect-agnostic 'Spatial predicates' recipe in the analytics skill (resolve the entity geometry, build an area-of-interest polygon, test with the engine's containment/proximity/overlap predicate; mind lon/lat argument order). Steers the solver off hand-rolled lat/lon BETWEEN boxes toward correct, index-assisted geospatial predicates. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * feat(analytics): parse code/dependency text by language grammar Add two generic <sql_craft> rules: (1) parse imported/required/loaded packages by the language or manifest format (Java import keep-package-path allowing underscores/ mixed-case; Python import/from + alias stripping; R library/require; .ipynb parse JSON cell source before language rules; JSON manifests flatten the dependency object keys), stripping comments/prose and splitting multi-import lines; (2) on a de-duplicated table with a documented copy/occurrence count, choose COUNT(*) vs the weight column from the population the question names, not silently. Steers off one broad regex that drops valid identifiers and matches prose. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * feat(analytics): source filters/dates/measures from the owning fact grain Add a <sql_craft> rule for joined fact tables at different grains (parent order vs child line item): read each predicate, calendar bucket, and measure from the table whose grain the question names, not whichever is in scope post-join. An order-grain filter ("orders that are Complete", "the order's creation date") must come from the parent even though the child carries its own status/created_at; line price/cost come from the child. Mirror at metric grain: don't combine a parent-grain count with child rows (num_of_item * SUM(line_price) per line) — aggregate each measure at its own grain before combining. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * feat(analytics): collapse multi-valued classes to one representative per entity before counting/concentration When an entity carries a multi-valued classification array (IPC/CPC codes, tags) and the methodology counts entities-per-class or a concentration/diversity metric (HHI, originality, share), pick ONE representative per entity first (the array's main/primary/first flag, else a defined fallback like most-frequent), then aggregate; and use COUNT(DISTINCT entity) when the denominator is defined as a count of entities. Unnesting the array otherwise multiplies an entity's weight by its code count, inflating per-class frequencies and skewing the ranking/score. Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * feat(connectors): introspect BigQuery datasets hosted in foreign projects A dataset_ids/dataset_id entry may now be written `project.dataset` to introspect a dataset hosted in another project while query jobs still bill to credentials.project_id. Entries are parsed once at the config boundary into canonical {project, dataset} pairs; introspection, primary-key discovery, testConnection, getTableRowCount, and listTables (grouped per project) all resolve in the dataset's own project, and scanned tables are labeled with that project so sampling, distinct-value, and read queries resolve. Bare entries are unchanged. Implements spider2-specs/specs/18-bigquery-cross-project-datasets.md. * feat(scan): durable, resumable, bounded relationship detection during enrichment Move the enrichment persistence boundary to the cost boundary and bound the open-ended relationship stage (spec 19). - Checkpoint descriptions + embeddings into the queryable `_schema` manifest (and the raw enrichment artifacts) before relationship detection runs, via a new `onCheckpoint` hook + `writeLocalScanEnrichmentCheckpoint`. An interrupted, budget-truncated, or failed relationship stage now degrades to "no joins", never "no descriptions". - Resume the enrichment cache by content identity: re-key the SQLite stage store on `(connection_id, stage, input_hash)` so a re-run with a fresh runId resumes finished descriptions/embeddings instead of re-paying for LLM work. The disposable cache recreates its table if the on-disk key shape differs. - Make the relationship stage observable and bounded: a sticky wall-clock budget (`scan.relationships.detectionBudgetMs`, default 600000 ms) + per-unit progress + honored `ctx.signal`, threaded through profiling, validation, and composite detection. On exhaustion/abort it stops scheduling, finalizes, and returns a partial result instead of throwing or hanging. - Mark a budget/abort-truncated result partial (diagnostics `partial`/`partialReason` + recoverable `relationship_detection_partial` warning). A graceful partial saves as a completed stage and resumes cheaply; raising the budget changes inputHash and forces a fresh, fuller run. A process killed mid-stage saves nothing. Document `detectionBudgetMs` in the ktx.yaml reference. Append implementation notes to specs/19 and move the intake draft to done/. Also carries the in-tree per-table enrichment LLM timeout work it builds on (`description-generation.ts` + the `enrichment_timeout` warning code), which is intertwined in `local-enrichment.ts`/`types.ts` and cannot be split into a separately-building commit. * feat(scan): bound + retry the per-table enrichment LLM call The batched table-description call had no retry (sampleTable retried 3x, this did not), so a single transient backend error (e.g. an overloaded/burst rejection when many tables enrich concurrently) silently nulled a whole table's descriptions — observed dropping ~70% of a db's tables during a bad window despite ample quota. - Wrap generateObject in retryAsync (3 attempts + backoff; KTX_ENRICH_LLM_ATTEMPTS). - Fresh per-attempt timeout (KTX_ENRICH_LLM_TIMEOUT_MS, default 120s) still bounds a wedged wide table; a timeout is surfaced as KtxAbortedError so it is NOT retried (one wedge stays one timeout, not 3x). - Granular per-table progress + start/done/retry/timeout logging. Composes with spec 19 (its non-goal #1): spec 19 makes completed descriptions durable; this makes more of them complete. * feat(scan): survive a hung LLM enrichment backend and resume descriptions Two compounding failure modes on the per-table description-enrichment path (spec 20): Enforced per-table timeout for subprocess backends. The runtime declares whether it owns an SDK subprocess (subprocessForkSpec on KtxLlmRuntimePort); codex/claude-code calls run behind a ktx-owned detached child that is tree-killed (SIGKILL of the process group on POSIX, taskkill /T on Windows) on the deadline or ctx.signal, reaping the wedged model grandchild. HTTP backends keep native fetch abort. Default stays 120s, one-wedge-one-timeout. Incremental, resumable descriptions persistence. generateDescriptions flushes enriched tables per batch to an inputHash-tagged durable record (at a stable, non-syncId path) plus only the changed manifest shards, skips already-enriched tables on resume, and never lets one table's failure discard the stage (a skipped table costs one missing description, not the whole stage's output). Spec 20 refined + intake draft moved to done/. * feat(scan): selective enrichment stages (--stages) + per-stage cache keys Split the single coarse enrichment cache key into per-stage hashes (descriptions <- snapshot + LLM identity; embeddings <- snapshot + embedding identity + description digest; relationships <- snapshot + relationship settings + LLM identity), so changing one stage's inputs invalidates only that stage and never throws away the expensive per-table descriptions on an unrelated edit. Add `ktx ingest --stages <list>` to force-re-run a chosen subset on an already-ingested connection: a named stage bypasses the completed-stage short-circuit while the per-table descriptions resume record still skips already-enriched tables, and unselected stages are left untouched on disk. Feed embeddings + relationships their description context from the on-disk _schema when descriptions do not run this invocation, and carry descriptions into the llmProposals evidence packet (closing a latent gap on the full-run path too). Surface an enrichment_stage_stale warning when an unselected stage's inputs have drifted, rather than silently cascading the work. Implements spider2-specs/specs/21-selective-enrichment-stages.md. * test(analytics): realign SKILL.md acceptance test with the evolved skill Three assertions in analytics-skill-content.test.ts drifted from the analytics SKILL.md as later iterations edited the skill without updating the test: - the sub-heading was renamed Window functions -> Ordering & aggregation determinism (iter2), so follow the source name; - the rule "Expose identity, not just the label" was renamed to "Project BOTH identity and label" (spec 14), so match the new wording; - the dialect-FQTN guard false-positived on the Java package example com.planet_ink.coffee_mud, whose backticks made a 3-segment package path read as a BigQuery/Snowflake `a.b.c` table reference. Drop the backticks so the guard stays at full strength without weakening it. * fix(scan): --stages subset must not delete unselected stages' on-disk artifacts A --stages subset that omitted descriptions wiped all on-disk ai/db descriptions from the written _schema. runLocalScan writes the structural manifest shard from the bare snapshot BEFORE enrichment runs, and the shard merge treats ai/db as scan-managed and overwrites them with whatever the run emits — none, on a subset that skips descriptions. Enrichment then read the already-wiped shard via loadPriorDescriptions and had nothing to restore. runLocalScanEnrichment now returns the best-available descriptions (fresh-this-run if descriptions ran, else loaded from the on-disk _schema) instead of [], and runLocalScan captures the prior descriptions before the structural write and feeds them to both the structural write and enrichment, so an unselected stage's artifacts survive. Joins were already preserved for --stages descriptions via the manual/inferred preservedJoins path. Tests: a full runLocalScan --stages relationships path test (RED without the fix, GREEN with it — the earlier unit test missed the structural-pre-write ordering), plus enrichment-layer contract tests for both directions. Validated live on northwind: --stages relationships keeps all 110 descriptions + 22 joins (was wiping to 0); --stages descriptions restores descriptions from the spec-20 resume record (no LLM calls) while keeping joins. * feat(dialects): bigquery nested-data (ARRAY/STRUCT/UNNEST), geospatial (GEOGRAPHY), SAFE_DIVIDE bigquery.md lacked the two sections that define BigQuery analytics (present in snowflake.md): - Nested & repeated data: UNNEST to flatten arrays of STRUCTs (GA360 hits, GA4 event_params), dot-notation field access, key-value param scalar-subquery extraction, fan-out/COUNT(DISTINCT) guard. - Geospatial (GEOGRAPHY): ST_GEOGPOINT (lon-first), containment/proximity/distance/intersection predicates, areal allocation via ST_AREA(ST_INTERSECTION()). - SAFE_DIVIDE for zero-denominator-safe rates; sharded-table shard-presence note. Generic BigQuery craft surfaced by sql_dialect_notes; product-completeness (any BQ analyst benefits). * feat(dialects): sqlite ROUND half-up FP-underflow note (+1e-9 before ROUND) SQLite ROUND(x,n) rounds half-away-from-zero, but binary FP stores an exact half-way value just below it, so ROUND(6.475,2) returns 6.47 not 6.48. Add a dialect note: nudge by a tiny epsilon (1e-9) below display precision before rounding for deterministic half-up, leaving non-boundary values unchanged. Generic SQLite craft surfaced by sql_dialect_notes (any analyst rounding a displayed average/rate/price benefits). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com> * docs(analytics): list-as-delimited-string, answer-literally, drop free-text columns Add SKILL.md guidance to emit list-valued answer cells as delimited STRING (not ARRAY/repeated column), answer the literal ask without unrequested transformations (HAVING for aggregate bounds), and avoid projecting unrequested free-text columns that corrupt row-delimited output. * fix(scan,mcp): gitignore runtime logs, budget-guard LLM proposal, validate enrich timeout - gitignore `.ktx/logs/` in both scaffold + setup-merge lists: the managed MCP daemon writes raw tool params (SQL, memory_ingest content) to mcp.log under a version-controlled `.ktx/`, and snowflake.log already sat there unprotected. - gate the LLM relationship proposal on the detection budget/abort signal so an exhausted or aborted stage cannot start a fresh LLM call; document the boundary. - validate KTX_ENRICH_LLM_TIMEOUT_MS (NaN/0 → 120s default) like enrichAttempts, so a bad value no longer times out every table immediately. - daemon introspection now warns on malformed column/FK rows instead of dropping them silently, matching the table-row path and the "surface broken objects" goal. - docs: document `ktx wiki -c/--connection`; fix the SQLite query-deadline schema doc (forked-subprocess SIGKILL, not worker-thread termination). * fix(scan,wiki,mcp): address PR #312 review findings - scan: key the description pipeline (resume map, enriched-schema and embedding-text lookups, manifest write/read) by full table identity via tableRefKey/buildTableRef, so two same-named tables in different schemas no longer cross-assign descriptions or skip a sibling on resume - scan: re-throw a genuine context cancel during the batched description LLM call so Ctrl-C resumes the stage instead of nulling tables and recording it completed; per-table timeouts still degrade (context.signal not aborted) - scan: report statisticalValidation 'skipped' (not 'completed') when a budget/abort stop leaves relationship profiling partial - wiki: sync the full page corpus into the sqlite index and filter only the candidate/result set, so a connection-scoped search no longer prunes other connections' pages and cached embeddings from the shared index - wiki: route verbatim ingest through the canonical writePageAndSync so contentHash is set and later syncs can short-circuit - mcp: drop the as-unknown-as cast in serializeMcpError - dialects/analytics: document the integer-division trap on postgres/sqlite/tsql Adds regression tests for each behavior change. * fix(wiki): scope connection filter before SQLite lane limit Connection-scoped wiki search applied the connectionId allowlist after the lexical/semantic lanes had already truncated to laneCandidatePoolLimit over the full (connection-agnostic) corpus. When the requested connection was a minority of a large corpus, its pages were crowded out of the candidate pool before filtering, so a semantic-only match could be missed outright and lexical hits under-ranked. Push the path allowlist into searchLexicalCandidates/searchSemanticCandidates so LIMIT applies to in-scope rows, matching what the token lane already did, and drop the now-redundant post-limit JS filters. --------- Co-authored-by: Claude Opus 4.8 <noreply@anthropic.com>
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detectionBudgetMs: z
.int()
.positive()
.default(600_000)
.describe('Wall-clock budget (ms) for the whole relationship-detection stage. Checked at table-profile, LLM-proposal, candidate-validation, and composite-probe boundaries; above the per-query deadline. On exhaustion the stage stops scheduling new work and returns the relationships found so far, marked partial. Raise it to trigger a fresher, fuller run.'),
})
.describe('Schema-scan relationship discovery and validation tunables.');
const scanSchema = z
.strictObject({
enrichment: scanEnrichmentSchema.prefault({}).describe('Column/table enrichment configuration.'),
relationships: scanRelationshipsSchema.prefault({}).describe('Relationship discovery and validation configuration.'),
})
.describe('Schema-scan configuration: enrichment and relationship discovery.');
const setupSchema = z
.strictObject({
database_connection_ids: z
.array(z.string().min(1))
.default([])
.describe('Connection IDs (keys of the top-level `connections` map) that the setup wizard treats as the project\'s primary databases.'),
})
.describe('Setup-wizard state captured during `ktx setup`.');
const storageGitSchema = z
.strictObject({
author: z
.string()
.min(1)
.default('ktx <ktx@example.com>')
fix(cli): isolate ktx-owned project repositories (#283) * fix(cli): isolate ktx project git repos * fix(cli): remove inert auto commit config * test(cli): drop stale auto commit fixtures * docs: document isolated ktx project repos * test(cli): keep stale config grep clean * fix(cli): guide setup away from foreign repos at the project dir ktx owns the git repo rooted at the project dir and refuses to adopt one it did not create (the Finding 3 isolation invariant). But setup steered users straight into that failure: the interactive menu offers "Current directory" first, and `--no-input --yes --project-dir <repo-root>` created directly in place — both then threw a generic "Failed to initialize git repository:" wrapper from deep in GitService.initialize(). Extract the ownership rule into a shared `classifyKtxRepoOwnership(dir)` used by both GitService.initialize() (the invariant) and the setup wizard (pre-flight guidance), so the decision derives from one rule. Setup now detects a foreign repo before constructing GitService and: interactively re-prompts (the user picks the existing `ktx-project` subfolder), or non-interactively returns a clean missing-input with the actionable message. The typed foreign-repo error is also surfaced verbatim instead of being buried under the generic wrapper. Empty/non-repo current directories still work — only foreign repos are blocked. * fix(cli): keep classifyKtxRepoOwnership total for non-directory paths The setup ownership guard runs before the existing not-a-directory check, so pointing a custom/--project-dir path at a file made classifyKtxRepoOwnership lstat `<file>/.git`, hit ENOTDIR, and throw — crashing the setup step instead of returning the friendly "path exists and is not a directory" result. A path that is a file (or missing) holds no git repo for ktx to avoid, so treat ENOTDIR like ENOENT and return 'unowned'. The downstream existingFolderState check still rejects a non-directory with its friendly message, and the classifier no longer throws raw errno for any caller.
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.describe('Git author identity used for commits, in standard "Name <email>" form.'),
})
fix(cli): isolate ktx-owned project repositories (#283) * fix(cli): isolate ktx project git repos * fix(cli): remove inert auto commit config * test(cli): drop stale auto commit fixtures * docs: document isolated ktx project repos * test(cli): keep stale config grep clean * fix(cli): guide setup away from foreign repos at the project dir ktx owns the git repo rooted at the project dir and refuses to adopt one it did not create (the Finding 3 isolation invariant). But setup steered users straight into that failure: the interactive menu offers "Current directory" first, and `--no-input --yes --project-dir <repo-root>` created directly in place — both then threw a generic "Failed to initialize git repository:" wrapper from deep in GitService.initialize(). Extract the ownership rule into a shared `classifyKtxRepoOwnership(dir)` used by both GitService.initialize() (the invariant) and the setup wizard (pre-flight guidance), so the decision derives from one rule. Setup now detects a foreign repo before constructing GitService and: interactively re-prompts (the user picks the existing `ktx-project` subfolder), or non-interactively returns a clean missing-input with the actionable message. The typed foreign-repo error is also surfaced verbatim instead of being buried under the generic wrapper. Empty/non-repo current directories still work — only foreign repos are blocked. * fix(cli): keep classifyKtxRepoOwnership total for non-directory paths The setup ownership guard runs before the existing not-a-directory check, so pointing a custom/--project-dir path at a file made classifyKtxRepoOwnership lstat `<file>/.git`, hit ENOTDIR, and throw — crashing the setup step instead of returning the friendly "path exists and is not a directory" result. A path that is a file (or missing) holds no git repo for ktx to avoid, so treat ENOTDIR like ENOENT and return 'unowned'. The downstream existingFolderState check still rejects a non-directory with its friendly message, and the classifier no longer throws raw errno for any caller.
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.describe('Git-backed storage author policy.');
const storageSchema = z
.strictObject({
state: z
.enum(KTX_STORAGE_STATES)
.default('sqlite')
.describe('Backend for ktx state storage. "sqlite" uses .ktx/db.sqlite; "postgres" expects a configured Postgres connection.'),
search: z
.enum(KTX_SEARCH_BACKENDS)
.default('sqlite-fts5')
.describe('Backend for search indexes. "sqlite-fts5" uses SQLite FTS5; "postgres-hybrid" uses Postgres lexical + vector hybrid search.'),
git: storageGitSchema.prefault({}).describe('Git-backed storage commit policy.'),
})
.describe('Storage backends and commit policy for ktx state and search indexes.');
const connectionSchema = connectionConfigSchema;
const agentSchema = z
.strictObject({
run_research: z
.strictObject({
enabled: z.boolean().default(false).describe('Master switch for the research agent.'),
max_iterations: z
.number()
.int()
.nonnegative()
.default(20)
.describe('Maximum number of tool-call iterations the research agent may take per run.'),
default_toolset: z
.array(z.string().min(1))
.default(['sl_query', 'wiki_search', 'sl_read_source'])
.describe('Default list of tool identifiers exposed to the research agent.'),
})
.prefault({})
.describe('Research-agent configuration.'),
})
.describe('Agent feature configuration.');
const ktxProjectConfigSchema = z
.strictObject({
setup: setupSchema.optional().describe('Setup-wizard state. Written by `ktx setup`; may be omitted.'),
connections: z
.record(z.string(), connectionSchema)
.default({})
.describe('Map of connection ID to connector configuration. Keys are user-chosen names referenced elsewhere in the config.'),
storage: storageSchema.prefault({}).describe('Storage backends and commit policy for ktx state and search indexes.'),
llm: llmSchema.prefault({}).describe('LLM provider, per-role model overrides, and prompt-caching tunables.'),
ingest: ingestSchema.prefault({}).describe('Ingest pipeline configuration.'),
agent: agentSchema.prefault({}).describe('Agent feature configuration.'),
scan: scanSchema.prefault({}).describe('Schema-scan configuration: enrichment and relationship discovery.'),
})
.describe('Configuration schema for ktx project files (ktx.yaml).');
export type KtxProjectConfig = z.infer<typeof ktxProjectConfigSchema>;
export type KtxProjectLlmConfig = z.infer<typeof llmSchema>;
export type KtxProjectEmbeddingConfig = z.infer<typeof embeddingSchema>;
export type KtxScanEnrichmentConfig = z.infer<typeof scanEnrichmentSchema>;
export type KtxScanRelationshipConfig = z.infer<typeof scanRelationshipsSchema>;
export type KtxProjectConnectionConfig = z.infer<typeof connectionSchema>;
export interface KtxConfigIssue {
path: string;
message: string;
fix?: string;
/**
* 'error' blocks the project (bad value on a recognized field); 'warning' is
* a condition the loader recovers from on its own (an ignored unknown key).
*/
severity: 'error' | 'warning';
}
export interface KtxConfigValidation {
ok: boolean;
issues: KtxConfigIssue[];
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}
function isRecord(value: unknown): value is Record<string, unknown> {
return typeof value === 'object' && value !== null && !Array.isArray(value);
}
function dottedPath(path: ReadonlyArray<PropertyKey>): string {
return path.map((segment) => String(segment)).join('.');
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}
function valueAtPath(root: unknown, path: ReadonlyArray<PropertyKey>): unknown {
let cursor: unknown = root;
for (const segment of path) {
if (cursor === null || typeof cursor !== 'object') return undefined;
cursor = (cursor as Record<PropertyKey, unknown>)[segment];
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}
return cursor;
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}
interface UnknownKeyLocation {
containerPath: ReadonlyArray<PropertyKey>;
key: string;
}
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/**
* Zod reports unknown keys in two shapes: strict objects emit
* `unrecognized_keys` (path container, `keys` offenders), enum-keyed
* records (`llm.models`) emit one `invalid_key` per offender (path ends with
* the key). Normalize both so the warning report and the strip always agree.
*/
function unknownKeyLocations(issue: z.core.$ZodIssue): UnknownKeyLocation[] {
if (issue.code === 'unrecognized_keys') {
return issue.keys.map((key) => ({ containerPath: issue.path, key }));
}
if (issue.code === 'invalid_key' && issue.path.length > 0) {
return [
{
containerPath: issue.path.slice(0, -1),
key: String(issue.path[issue.path.length - 1]),
},
];
}
return [];
}
function formatIssue(issue: z.core.$ZodIssue, input: unknown): KtxConfigIssue[] {
const unknownKeys = unknownKeyLocations(issue);
if (unknownKeys.length > 0) {
return unknownKeys.map(({ containerPath, key }) => {
const base = dottedPath(containerPath);
const fullPath = base.length > 0 ? `${base}.${key}` : key;
return {
path: fullPath,
message: `Unsupported ${fullPath}: unknown field (ignored)`,
fix: 'Unknown to this ktx version; it is ignored. Delete it from ktx.yaml when convenient.',
severity: 'warning',
};
});
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}
const basePath = dottedPath(issue.path);
const lastSegment = issue.path[issue.path.length - 1];
if (lastSegment === 'backend' && (issue.code === 'invalid_value' || issue.code === 'invalid_type')) {
const value = valueAtPath(input, issue.path);
return [{ path: basePath, message: `Unsupported ${basePath}: ${String(value)}`, severity: 'error' }];
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}
return [
{
path: basePath,
message: basePath.length > 0 ? `${basePath}: ${issue.message}` : issue.message,
severity: 'error',
},
];
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}
function collectIssues(error: z.ZodError, input: unknown): KtxConfigIssue[] {
return error.issues.flatMap((issue) => formatIssue(issue, input));
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}
function formatZodError(error: z.ZodError, input: unknown): string {
return collectIssues(error, input)
.map((issue) => issue.message)
.join('\n');
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}
export function buildDefaultKtxProjectConfig(): KtxProjectConfig {
return ktxProjectConfigSchema.parse({});
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}
function stripUnrecognizedKeys(input: Record<string, unknown>): Record<string, unknown> {
const result = ktxProjectConfigSchema.safeParse(input);
if (result.success) {
return input;
}
const unknownKeys = result.error.issues.flatMap(unknownKeyLocations);
if (unknownKeys.length === 0) {
return input;
}
const value = structuredClone(input);
for (const { containerPath, key } of unknownKeys) {
const container = valueAtPath(value, containerPath);
if (container === null || typeof container !== 'object') continue;
delete (container as Record<string, unknown>)[key];
}
return value;
}
function parseTolerant(input: Record<string, unknown>): KtxProjectConfig {
const value = stripUnrecognizedKeys(input);
const result = ktxProjectConfigSchema.safeParse(value);
if (!result.success) {
throw new Error(formatZodError(result.error, value));
}
return result.data;
}
/**
* Parse and validate a ktx.yaml document. Keys this ktx version does not
* recognize are stripped from the returned config never from the file, which
* a load must not rewrite so a config written by a different ktx version
* still loads. Malformed values on recognized fields still throw.
*/
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export function parseKtxProjectConfig(raw: string): KtxProjectConfig {
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const parsed = YAML.parse(raw) as unknown;
if (!isRecord(parsed)) {
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throw new Error('ktx.yaml must contain a YAML object');
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}
return parseTolerant(parsed);
}
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export function validateKtxProjectConfig(raw: string): KtxConfigValidation {
let parsed: unknown;
try {
parsed = YAML.parse(raw);
} catch (error) {
const message = error instanceof Error ? error.message : String(error);
return { ok: false, issues: [{ path: '', message: `ktx.yaml parse error: ${message}`, severity: 'error' }] };
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}
if (!isRecord(parsed)) {
return { ok: false, issues: [{ path: '', message: 'ktx.yaml must contain a YAML object', severity: 'error' }] };
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}
const result = ktxProjectConfigSchema.safeParse(parsed);
if (result.success) {
return { ok: true, issues: [] };
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}
const issues = collectIssues(result.error, parsed);
const ok = !issues.some((issue) => issue.severity === 'error');
return { ok, issues };
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}
export function generateKtxProjectConfigJsonSchema(): Record<string, unknown> {
const schema = z.toJSONSchema(ktxProjectConfigSchema, {
target: 'draft-7',
io: 'input',
}) as Record<string, unknown>;
return {
$schema: 'http://json-schema.org/draft-07/schema#',
$id: 'https://ktx.dev/schemas/ktx-project-config.json',
title: 'ktx.yaml',
...schema,
};
}
2026-05-10 23:51:24 +02:00
export function serializeKtxProjectConfig(config: KtxProjectConfig): string {
feat: merge ingest and scan * docs: add CLI component reuse guidance * docs: add unified ingest ux design * Refine unified ingest UX design after adversarial review iteration 1 * Refine unified ingest UX design after adversarial review iteration 2 * Refine unified ingest UX design after adversarial review iteration 3 * feat(cli): route public connection ingest command * feat(cli): hide standalone scan from public help * feat(cli): plan public ingest depth and query history * feat(cli): execute public database ingest facets * feat(ingest): read connection query history config * fix(cli): use public ingest wording * fix(config): stop generating ingest adapter allow lists * docs: document public ingest command * test: align ingest surface expectations * docs: add unified ingest public CLI surface plan * feat(cli): preflight deep public ingest readiness * feat(setup): store query history in connection context * feat(setup): store database context depth * feat(setup): verify context readiness by database depth * fix(setup): keep context build foreground only * fix(config): reject reserved ingest connection ids * test: close unified ingest v1 expectations * docs: add unified ingest v1 closure plan * fix(ingest): bypass adapter allow-list for public source ingest * fix(ingest): honor query history window intent * fix(ingest): hide scan internals from public database ingest * feat(ingest): use foreground view for interactive public ingest * fix(setup): use schema context and query history wording * test(cli): verify unified ingest public output * docs: add unified ingest v1 public output closure plan * fix(setup): forward query history flags * fix(setup): prompt for postgres query history * fix(status): report query history readiness * fix(ingest): remove legacy public guidance * fix(ingest): polish foreground retry copy * docs(examples): use unified query history wording * chore(ingest): finish public query history cleanup * docs: add unified ingest v1 query history status cleanup plan * test(docs): cover unified ingest public docs * docs: align ingest CLI reference with unified UX * docs: update context build guides for unified ingest * docs: update setup and primary source ingest wording * docs: stop advertising adapter-backed example ingest * docs: close unified ingest public docs gaps * docs: add unified ingest v1 docs site closure plan * fix: render unified ingest foreground warnings * fix: explain query history schema order * fix: add public ingest retry guidance * fix: align setup next steps with unified ingest * fix: remove scan wording from demo progress * test: verify unified ingest ux closure * docs: add unified ingest v1 foreground and retry closure plan * fix(cli): preserve query-history pull config in public ingest * fix(cli): omit hidden commands from docs command tree * test(cli): close unified ingest final public surface checks * docs: add unified ingest v1 final public surface closure plan * fix(cli): use public source labels in ingest reports * fix(cli): suppress low-level public ingest output * test(cli): verify unified ingest public plain output * docs: add unified ingest v1 public plain output closure plan * fix(cli): add public ingest copy sanitizers * fix(cli): sanitize public ingest progress copy * fix(cli): rename setup schema scope prompt * docs(plan): add progress copy closure; test: align setup back-nav fixture Adds the iter9 plan and updates the setup back-navigation test fixture to pass disableQueryHistory plus listSchemas/listTables stubs that the unified ingest setup step now requires. * docs(plan): add final ux labels plan with narrowed label scans * fix(cli): aggregate unsupported query-history warnings * fix(cli): align setup database labels * test(cli): fix setup database test type-check * fix(cli): remove primary-source wording from setup output * test(cli): verify unified ingest setup closure * docs(plan): add unified ingest v1 verification copy closure plan * fix(cli): remove top-level scan command * fix(cli): remove legacy ingest and wiki commands * Merge scan into ingest flow * feat(cli): split ingest progress into per-phase rows, rename work units to tasks Each database target in the unified ingest dashboard now renders one row per real subprocess (Schema, then Query history when enabled) instead of a single combined bar. Each phase has its own monotonic 0-100% bar so the progress never snaps back to zero when historic-sql starts after scan completes. Completed phases keep their final bar, summary, and elapsed time visible as an inline audit trail; queued and skipped phases are shown explicitly. Also rename user-facing "work units" / "Failed work units" to "tasks" / "Failed tasks" in ingest output and parseIngestSummary. The parser still accepts the legacy "Work units:" wording in captured output for backward compat. Internal memory-flow event names and type fields are left alone. * Fix test harness failures * Fix CI smoke checks --------- Co-authored-by: Andrey Avtomonov <7889985+andreybavt@users.noreply.github.com>
2026-05-14 01:43:06 +02:00
const serializedConfig =
config.ingest.adapters.length === 0
? {
...config,
ingest: {
embeddings: config.ingest.embeddings,
workUnits: config.ingest.workUnits,
},
}
: config;
return `${YAML.stringify(serializedConfig, { indent: 2, lineWidth: 0 }).trimEnd()}\n`;
2026-05-10 23:12:26 +02:00
}