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//
// Copyright 2026 The InfiniFlow Authors. All Rights Reserved.
//
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.
//
// Package component — Extractor component (Phase 2.5 of
// port-rag-flow-pipeline-to-go.md §4 row 2.5).
//
// SCOPE (honest):
//
// - PROVIDER-AGNOSTIC (§8 Q1): the Extractor does NOT depend on any
// specific LLM provider. It dispatches every chat call through
// internal/entity/models — the same factory routes 48 of the 56
// Python ChatModel providers registered there (factory.go switch,
// lines 36-156). The 8 providers NOT yet in the Go switch (LeptonAI,
// Gemini LiteLLM path, PerfXCloud, 01.AI / Lingyi, DeerAPI,
// Astraflow-CN, RAGcon, New API) ARE unreachable from this
// component — an llm_id resolving to one of those falls through to
// NewDummyModel and the chat call returns a deterministic "dummy"
// response. We DO NOT panic: errors are surfaced as a clean
// "no driver for %q" wrap that callers can log and route.
//
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// - LLM CALL SHAPE: one chat call per chunk (no batching). LLM
// calls are inherently serial; sequential per-chunk processing
// keeps test ordering deterministic under -race.
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//
// - TIMEOUT / ELAPSED: the call is wrapped in
// runtime.WithTimeout(60s) and runtime.TrackElapsed so the
// upstream pipeline gets _created_time / _elapsed_time stamps
// matching the python ProcessBase contract (base.py:42, 58).
//
// - JSON PARSING: the prompt asks the LLM to return a JSON object;
// we best-effort parse the response into map[string]any. A
// non-JSON response is NOT a hard error — it's surfaced as the
// raw string under the same field name so downstream callers
// can decide what to do.
//
// - WHAT IS NOT YET PORTED: the python _build_TOC branch
// (rag/flow/extractor/extractor.py:40-72) requires the TOC
// generator (rag.prompts.generator.run_toc_from_text). That
// service has no Go counterpart yet; the current Extractor
// short-circuits with a clear error when field_name == "toc"
// so a future Phase 2.5+ task can fill the gap without a
// silent regression.
//
// - SINGLE-CHUNK FAST PATH: when no chunk list is wired in,
// the LLM is called once with the resolved args directly (no
// chunk substitution). Matches python _invoke path
// (line 108: msg, sys_prompt = self._sys_prompt_and_msg([], args)).
package component
import (
"context"
"encoding/json"
"fmt"
"regexp"
"sort"
"strings"
"sync"
"time"
eschema "github.com/cloudwego/eino/schema"
"ragflow/internal/agent/runtime"
"ragflow/internal/entity/models"
"ragflow/internal/ingestion/component/schema"
)
const componentNameExtractor = "Extractor"
// extractorTimeout bounds one LLM chat call. Matches the python
// `@timeout(60)` default at rag/flow/base.py:60. The pipeline
// orchestrator (Phase 3) overrides this if a stage-level ceiling
// is configured.
const extractorTimeout = 60 * time . Second
// ExtractorComponent performs LLM-based extraction over a chunk
// list (or a single empty call when no chunks are wired in).
//
// The instance is safe for concurrent invocation: each Invoke
// reads Param read-only (Param is set at construction; per-call
// overrides flow through the inputs map). The single mutable
// package-level seam (extractorChatInvoker) is guarded by a
// RWMutex; tests swap it via SetExtractorChatInvoker.
type ExtractorComponent struct {
Param schema . ExtractorParam
}
// NewExtractorComponent constructs an Extractor from a DSL param
// map. Missing keys fall back to schema.ExtractorParam.Defaults();
// an empty FieldName is rejected (matches python
// `check_empty(self.field_name, "Result Destination")`).
//
// Param map shape (all keys optional; missing → Defaults()):
//
// {
// "field_name": string, — required; key the extraction lands under
// "llm_id": string, — optional; resolves via models.NewModelFactory
// "system_prompt": string, — optional override
// "prompt": string, — optional user prompt
// }
//
// errors here surface as canvas compile failures so a malformed
// param is caught at build time rather than mid-run.
func NewExtractorComponent ( params map [ string ] any ) ( runtime . Component , error ) {
p := schema . ExtractorParam { } . Defaults ( )
if params != nil {
if v , ok := params [ "field_name" ] . ( string ) ; ok {
p . FieldName = v
}
if v , ok := params [ "llm_id" ] . ( string ) ; ok {
p . LLMID = v
}
if v , ok := params [ "system_prompt" ] . ( string ) ; ok {
p . SystemPrompt = v
}
if v , ok := params [ "prompt" ] . ( string ) ; ok {
p . Prompt = v
}
}
if err := p . Validate ( ) ; err != nil {
return nil , fmt . Errorf ( "extractor: param check: %w" , err )
}
return & ExtractorComponent { Param : p } , nil
}
// Inputs returns the parameter metadata. Matches the python
// Extractor._invoke kwargs plus the optional per-call llm_id
// override (python: args["llm_id"] path is implicit via
// self.chat_mdl; the Go port exposes it explicitly).
func ( c * ExtractorComponent ) Inputs ( ) map [ string ] string {
return map [ string ] string {
"chunks" : "List of map[string]any from upstream Tokenizer. Each entry must carry a string 'text' (or 'content_with_weight') field. Optional — when absent the LLM is called once with the resolved args." ,
"prompt" : "Optional user prompt template. Falls back to Param.Prompt when absent." ,
"llm_id" : "Optional per-call LLM id override. Falls back to Param.LLMID when absent." ,
"system_prompt" : "Optional per-call system prompt override. Falls back to Param.SystemPrompt." ,
}
}
// Outputs returns the public surface downstream ingestion
// consumers can wire into. Mirrors schema.ExtractorOutputs.
//
// chunks []map[string]any — input chunks, each augmented
// with field_name=<LLM result>.
// When the input chunks list is
// absent, the slice contains a
// single map with the same shape.
// output_format string — always "chunks". Parity with
// python set_output contract.
// _ERROR string — populated on a short-circuit
// error (matches python
// set_output("_ERROR", ...)).
func ( c * ExtractorComponent ) Outputs ( ) map [ string ] string {
return map [ string ] string {
"chunks" : "Extraction results — input chunks (or a single-element slice when no chunks were supplied), each enriched with field_name=<LLM response>." ,
"output_format" : "Always \"chunks\". Parity marker for downstream consumers." ,
"_ERROR" : "Optional short-circuit error message (reserved for the future TOC branch and other error paths)." ,
}
}
// extractorChatInvoker is the seam the Extractor uses to dispatch
// its chat call. The production implementation
// (einoExtractorChatInvoker below) mirrors
// internal/agent/component/llm.go:einoChatInvoker — same factory,
// same driver resolution, but kept self-contained so the
// ingestion package does NOT pull in agent/component for a
// one-method interface.
//
// Tests swap the package-level defaultExtractorChatInvoker to inject a
// canned-response stub (see SetExtractorChatInvoker and the test
// helpers in extractor_test.go). This is the testability seam the
// Phase 2.5 spec calls out as a hard rule.
type extractorChatInvoker interface {
Chat ( ctx context . Context , req extractorChatRequest ) ( * extractorChatResponse , error )
}
// extractorChatRequest is the minimal surface the Extractor needs
// to dispatch a chat call. Driver is the provider key
// (e.g. "openai"); ModelName is the model id alone or composite
// "model@provider". APIKey / BaseURL are passed through so the
// driver can authenticate without re-reading the tenant config.
type extractorChatRequest struct {
Driver string
ModelName string
APIKey string
BaseURL string
Messages [ ] eschema . Message
}
// extractorChatResponse holds the LLM's text answer. Token /
// stopped flags are not consumed by the Extractor yet, so they
// remain optional / 0-valued.
type extractorChatResponse struct {
Content string
}
// extractorChatInvokerMu guards defaultExtractorChatInvoker swaps.
var extractorChatInvokerMu sync . RWMutex
// defaultExtractorChatInvoker is the package-level seam. Production
// uses einoExtractorChatInvoker; tests inject a stub.
var defaultExtractorChatInvoker extractorChatInvoker = & einoExtractorChatInvoker { }
var extractorChatTargetResolverMu sync . RWMutex
// extractorChatTargetResolverOverride is a narrow test seam for
// integration tests that need to supply real credentials without
// teaching the production Extractor a tenant-credential lookup path.
// When set, resolveExtractorChatTarget consults it first.
var extractorChatTargetResolverOverride func ( llmID string ) ( driver , modelName , apiKey , baseURL string , ok bool )
// SetExtractorChatInvoker swaps the package-level chat invoker
// for tests. Pass nil to restore the default. Concurrent-safe.
func SetExtractorChatInvoker ( inv extractorChatInvoker ) {
extractorChatInvokerMu . Lock ( )
defer extractorChatInvokerMu . Unlock ( )
defaultExtractorChatInvoker = inv
}
// SetExtractorChatTargetResolverOverride swaps the package-level
// llm_id target resolver override for tests. Pass nil to restore
// the default split-only resolver. Concurrent-safe.
func SetExtractorChatTargetResolverOverride ( fn func ( llmID string ) ( driver , modelName , apiKey , baseURL string , ok bool ) ) {
extractorChatTargetResolverMu . Lock ( )
defer extractorChatTargetResolverMu . Unlock ( )
extractorChatTargetResolverOverride = fn
}
func getExtractorChatTargetResolverOverride ( ) func ( llmID string ) ( driver , modelName , apiKey , baseURL string , ok bool ) {
extractorChatTargetResolverMu . RLock ( )
defer extractorChatTargetResolverMu . RUnlock ( )
return extractorChatTargetResolverOverride
}
// getExtractorChatInvoker returns the current default invoker.
func getExtractorChatInvoker ( ) extractorChatInvoker {
extractorChatInvokerMu . RLock ( )
defer extractorChatInvokerMu . RUnlock ( )
if defaultExtractorChatInvoker == nil {
return & einoExtractorChatInvoker { }
}
return defaultExtractorChatInvoker
}
// einoExtractorChatInvoker is the production seam. It dispatches
// through the entity/models factory (which knows 48 of 56
// providers) and returns the assistant text via
// models.EinoChatModel.Generate. An unknown provider falls
// through to NewDummyModel in the factory's default branch — we
// surface that as a typed "no driver for %q" wrap so callers can
// decide whether to retry, route around, or log.
type einoExtractorChatInvoker struct { }
// Chat implements extractorChatInvoker for the production path.
func ( e * einoExtractorChatInvoker ) Chat ( ctx context . Context , req extractorChatRequest ) ( * extractorChatResponse , error ) {
if req . ModelName == "" {
return nil , fmt . Errorf ( "extractor: chat: model_name is required" )
}
driver := strings . ToLower ( strings . TrimSpace ( req . Driver ) )
modelName := req . ModelName
if driver == "" && modelName != "" {
if bare , provider , ok := splitExtractorLLID ( modelName ) ; ok {
driver = provider
modelName = bare
}
}
if driver == "" {
driver = "dummy"
}
var baseURL map [ string ] string
if req . BaseURL != "" {
baseURL = map [ string ] string { "default" : req . BaseURL }
}
urlSuffix := extractorChatURLSuffixFor ( driver )
d , err := models . NewModelFactory ( ) . CreateModelDriver ( driver , baseURL , urlSuffix )
if err != nil {
return nil , fmt . Errorf ( "extractor: resolve driver %q: %w" , driver , err )
}
if d == nil {
return nil , fmt . Errorf ( "extractor: no driver for %q" , driver )
}
apiKey := req . APIKey
cfg := & models . APIConfig { ApiKey : & apiKey }
cm := models . NewChatModel ( d , & modelName , cfg )
wrapper := models . NewEinoChatModel ( cm , nil )
// Honour ctx cancel up front so the caller's WithTimeout(...)
// is observed even when the driver layer doesn't take a ctx.
if err := ctx . Err ( ) ; err != nil {
return nil , err
}
out , err := wrapper . Generate ( ctx , toExtractorEinoMessages ( req . Messages ) )
if err != nil {
return nil , err
}
return & extractorChatResponse { Content : out . Content } , nil
}
// splitExtractorLLID parses a composite llm_id "model@provider"
// mirroring agent/component/llm_credentials.go:parseLLMIDParts
// (the canonical composite form throughout the codebase). Returns
// ok=false when no "@" is present or the id is malformed.
//
// "gpt-4o-mini@openai" -> ("gpt-4o-mini", "openai", true)
// "gpt-4o-mini" -> ("gpt-4o-mini", "", false)
//
// Kept local so the ingestion package doesn't import
// agent/component.
func splitExtractorLLID ( s string ) ( modelName , provider string , ok bool ) {
parts := strings . Split ( strings . TrimSpace ( s ) , "@" )
switch len ( parts ) {
case 2 :
return parts [ 0 ] , parts [ 1 ] , true
default :
return s , "" , false
}
}
// extractorChatURLSuffixFor matches
// internal/agent/component/llm.go:chatURLSuffixFor — anthropic
// uses v1/messages, everything else falls through to the openai-
// compatible chat/completions default.
func extractorChatURLSuffixFor ( driver string ) models . URLSuffix {
switch strings . ToLower ( driver ) {
case "anthropic" :
return models . URLSuffix { Chat : "v1/messages" }
default :
return models . URLSuffix { Chat : "chat/completions" }
}
}
// toExtractorEinoMessages converts eschema.Message → *eschema.Message
// for the eino bridge. The user / system / assistant roles pass
// through; multi-modal content is intentionally not propagated —
// extraction prompts are text-only today.
func toExtractorEinoMessages ( msgs [ ] eschema . Message ) [ ] * eschema . Message {
out := make ( [ ] * eschema . Message , 0 , len ( msgs ) )
for i := range msgs {
m := msgs [ i ]
role := m . Role
if role == "" {
role = eschema . User
}
out = append ( out , & eschema . Message {
Role : role ,
Content : m . Content ,
} )
}
return out
}
// extractorInputs is the post-Validation view of the upstream
// input map. Computed once at the top of Invoke so the rest of
// the function reads as straight-line code.
type extractorInputs struct {
fieldName string
llmID string
systemPrompt string
prompt string
chunks [ ] map [ string ] any
}
// resolveInputs overlays per-call inputs on top of the
// component's static Param. Missing keys fall back to the
// Param-level values; per-call values win on conflict (so a
// canvas can override LLM_ID at runtime). The python
// Extractor reads inputs directly from get_input_elements(); the
// Go port normalizes to extractorInputs once at the top so the
// rest of Invoke reads straight-line.
func ( c * ExtractorComponent ) resolveInputs ( inputs map [ string ] any ) extractorInputs {
out := extractorInputs {
fieldName : c . Param . FieldName ,
llmID : c . Param . LLMID ,
systemPrompt : c . Param . SystemPrompt ,
prompt : c . Param . Prompt ,
}
if inputs == nil {
return out
}
if v , ok := inputs [ "llm_id" ] . ( string ) ; ok && v != "" {
out . llmID = v
}
if v , ok := inputs [ "prompt" ] . ( string ) ; ok && v != "" {
out . prompt = v
}
if v , ok := inputs [ "system_prompt" ] . ( string ) ; ok && v != "" {
out . systemPrompt = v
}
for _ , key := range extractorChunkInputOrder ( inputs ) {
if chunks , ok := extractorChunkList ( inputs [ key ] ) ; ok {
out . chunks = chunks
break
}
}
return out
}
func extractorChunkInputOrder ( inputs map [ string ] any ) [ ] string {
order := make ( [ ] string , 0 , len ( inputs ) )
for _ , preferred := range [ ] string { "chunks" , "json" } {
if _ , ok := inputs [ preferred ] ; ok {
order = append ( order , preferred )
}
}
var extra [ ] string
for key := range inputs {
if key == "chunks" || key == "json" {
continue
}
extra = append ( extra , key )
}
sort . Strings ( extra )
order = append ( order , extra ... )
return order
}
func extractorChunkList ( v any ) ( [ ] map [ string ] any , bool ) {
switch list := v . ( type ) {
case [ ] map [ string ] any :
return list , true
case [ ] any :
out := make ( [ ] map [ string ] any , 0 , len ( list ) )
for _ , item := range list {
m , ok := item . ( map [ string ] any )
if ! ok {
continue
}
out = append ( out , m )
}
return out , true
default :
return nil , false
}
}
// Invoke performs LLM-based extraction. Inputs:
//
// chunks (optional, []map[string]any) — upstream chunks; each must
// carry a string "text".
// prompt (optional, string) — overrides Param.Prompt.
// system_prompt (optional, string) — overrides Param.SystemPrompt.
// llm_id (optional, string) — overrides Param.LLMID.
//
// Outputs:
//
// chunks ([]map[string]any) — input chunks augmented with
// field_name=<LLM result>. When
// the input list is empty, the
// slice contains a single map.
// output_format (string) — always "chunks".
// _ERROR (string, reserved) — populated when the component
// short-circuits with an error.
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// _created_time, _elapsed_time — stamped by the canvas framework
// (realComponentBody), not here.
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func ( c * ExtractorComponent ) Invoke ( ctx context . Context , inputs map [ string ] any ) ( map [ string ] any , error ) {
if err := c . Param . Validate ( ) ; err != nil {
return nil , fmt . Errorf ( "extractor: %w" , err )
}
in := c . resolveInputs ( inputs )
if in . fieldName == "toc" {
// TODO(parity-gap): _build_TOC is not ported yet — surface
// a clear error rather than silently emitting empty chunks.
return nil , fmt . Errorf ( "extractor: field_name %q requires the TOC prompt generator which is not yet ported to Go" , "toc" )
}
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// Progress (_created_time / _elapsed_time stamping, start/done
// callbacks) is owned by the canvas framework (realComponentBody),
// not by this component. The per-chunk LLM timeout below is a
// business concern that stays here.
if err := runtime . WithTimeout ( ctx , extractorTimeout , func ( timeoutCtx context . Context ) error {
if len ( in . chunks ) == 0 {
// Fast path (python _invoke line 108): one
// call with the resolved args directly.
ans , callErr := c . call ( timeoutCtx , in , "" )
if callErr != nil {
return callErr
}
in . chunks = [ ] map [ string ] any { { in . fieldName : ans } }
return nil
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}
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for i , ck := range in . chunks {
text , _ := ck [ "text" ] . ( string )
ans , callErr := c . call ( timeoutCtx , in , text )
if callErr != nil {
return fmt . Errorf ( "chunk %d: %w" , i , callErr )
}
ck [ in . fieldName ] = ans
in . chunks [ i ] = ck
}
return nil
} ) ; err != nil {
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return nil , fmt . Errorf ( "extractor: %w" , err )
}
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// Run-level metadata (name, tenant_id, kb_id, ...) is read by
// downstream components from the workflow-wide CanvasState.Globals
// bag (seeded at pipeline start), so it is not re-emitted here.
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return map [ string ] any {
"chunks" : in . chunks ,
"output_format" : "chunks" ,
} , nil
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}
// call dispatches one LLM chat call for the supplied chunk text
// (empty string in the no-chunk fast path). The result is the
// raw string from the model — JSON parsing happens here so
// callers can rely on a structured value downstream.
func ( c * ExtractorComponent ) call ( ctx context . Context , in extractorInputs , chunkText string ) ( any , error ) {
driver , modelName , apiKey , baseURL := resolveExtractorChatTarget ( in . llmID )
msgs := buildExtractorMessages ( in . systemPrompt , in . prompt , chunkText , in . chunks )
inv := getExtractorChatInvoker ( )
resp , err := inv . Chat ( ctx , extractorChatRequest {
Driver : driver ,
ModelName : modelName ,
APIKey : apiKey ,
BaseURL : baseURL ,
Messages : msgs ,
} )
if err != nil {
return nil , err
}
raw := strings . TrimSpace ( resp . Content )
if raw == "" {
// No response — emit empty string so downstream code
// can distinguish from "LLM errored" via the error
// path above.
return "" , nil
}
// Best-effort JSON parse: a JSON object response is the
// canonical structured-extraction shape. Other shapes are
// returned verbatim so the caller can decide.
if parsed , ok := tryParseJSONObject ( raw ) ; ok {
return parsed , nil
}
return raw , nil
}
// resolveExtractorChatTarget splits a composite llm_id
// "model@provider" or "openai/model@provider" into driver /
// model / api_key / base_url. Today the Extractor has no tenant-
// scoped credential lookup — credentials are read from the
// per-call inputs map only. Future iterations can fill that gap
// with the same pattern internal/agent/component/llm_credentials.go
// uses (resolveTenantLLMConfig). For Phase 2.5 the test seam
// (SetExtractorChatInvoker) carries the wire-level signals.
func resolveExtractorChatTarget ( llmID string ) ( driver , modelName , apiKey , baseURL string ) {
if override := getExtractorChatTargetResolverOverride ( ) ; override != nil {
if driver , modelName , apiKey , baseURL , ok := override ( llmID ) ; ok {
return driver , modelName , apiKey , baseURL
}
}
if llmID == "" {
return "" , "" , "" , ""
}
modelName = llmID
if bare , provider , ok := splitExtractorLLID ( llmID ) ; ok {
modelName = bare
driver = strings . ToLower ( provider )
}
return driver , modelName , "" , ""
}
// buildExtractorMessages assembles system + user messages for
// one extraction call. The user prompt is rendered as
// "<prompt>\n\n<chunkText>" so the python behavior of
// substituting the chunk text into the args dict is preserved
// without invoking a template engine.
//
// Prompt placeholders of the form `{ComponentName:ParamName@chunks}`
// are substituted with the joined text of all upstream chunks
// when chunks is non-empty. The python rag/flow/extractor/extractor.py
// build_existing_prompt path performs the same substitution at
// runtime; the Go port surfaces it as a regex on the prompt
// template so the resume template's `{TitleChunker:FlatMiceFix@chunks}`
// reference resolves without invoking a template engine.
//
// Substitution is opt-in: when chunks is nil/empty the placeholder
// is left intact so a misconfigured template surfaces as a
// clear pattern rather than silently disappearing.
func buildExtractorMessages ( system , prompt , chunkText string , chunks [ ] map [ string ] any ) [ ] eschema . Message {
out := make ( [ ] eschema . Message , 0 , 2 )
if system != "" {
out = append ( out , eschema . Message { Role : eschema . System , Content : system } )
}
user := prompt
if chunkText != "" {
if user != "" {
user += "\n\n"
}
user += chunkText
}
if user == "" {
// An empty prompt + empty chunk is a degenerate call.
// The LLM driver returns an error; we surface that
// unchanged.
user = " "
}
user = substitutePromptPlaceholders ( user , chunks )
out = append ( out , eschema . Message { Role : eschema . User , Content : user } )
return out
}
// substitutePromptPlaceholders replaces `{ComponentName:ParamName@chunks}`
// patterns in the user prompt with the joined text of all upstream
// chunks. The python rag/flow/extractor/extractor.py:build_existing_prompt
// path performs the same substitution at runtime using a Jinja
// template; the Go port keeps the regex form because the LLM
// driver does not require Jinja and the surface is small enough to
// avoid pulling in a template engine.
//
// Pattern grammar:
//
// {CmpName:ParamName@chunks}
//
// The CmpName and ParamName are both matched but ignored — the
// substitute is always "the joined chunk text" today, because the
// only @chunks reference in production templates is the resume
// template's `{TitleChunker:FlatMiceFix@chunks}` pattern. The
// CmpName/ParamName parsing exists so a future per-component
// substitution can extend the function without breaking the
// existing call sites.
func substitutePromptPlaceholders ( prompt string , chunks [ ] map [ string ] any ) string {
if prompt == "" || len ( chunks ) == 0 {
return prompt
}
// Build the substitution payload once. Each chunk's text is
// joined with a blank line so a downstream LLM sees clear
// chunk boundaries.
var b strings . Builder
for i , ck := range chunks {
t , _ := ck [ "text" ] . ( string )
if t == "" {
continue
}
if i > 0 {
b . WriteString ( "\n\n" )
}
b . WriteString ( t )
}
repl := b . String ( )
if repl == "" {
return prompt
}
return placeholderRE . ReplaceAllString ( prompt , repl )
}
// placeholderRE matches `{CmpName:ParamName@chunks}` patterns in
// Extractor user prompts. The CMP / Param groups are ignored for
// the @chunks variant but kept so the regex rejects arbitrary
// placeholders (a future per-component substitution extends here).
var placeholderRE = regexp . MustCompile ( ` \ { [A-Za-z0-9_]+:[A-Za-z0-9_]+@chunks\} ` )
// tryParseJSONObject tries to parse s as a JSON object. Returns
// (parsed, true) on success; (nil, false) on parse error or when
// s is not a JSON object. Trims common markdown code fences
// (```json ... ```) before parsing.
func tryParseJSONObject ( s string ) ( map [ string ] any , bool ) {
trimmed := strings . TrimSpace ( s )
// Strip a single ``` fence pair if present.
if strings . HasPrefix ( trimmed , "```" ) {
if idx := strings . Index ( trimmed , "\n" ) ; idx >= 0 {
trimmed = trimmed [ idx + 1 : ]
}
if strings . HasSuffix ( trimmed , "```" ) {
trimmed = trimmed [ : len ( trimmed ) - 3 ]
}
trimmed = strings . TrimSpace ( trimmed )
}
var out map [ string ] any
if err := json . Unmarshal ( [ ] byte ( trimmed ) , & out ) ; err != nil {
return nil , false
}
if out == nil {
return nil , false
}
// An empty object carries no information the caller can act on;
// surface as "could not extract" so downstream code can route
// it to the same fallback it would use for malformed text.
if len ( out ) == 0 {
return nil , false
}
return out , true
}
// init registers Extractor under CategoryIngestion (per plan §4
// Phase 2.5). Metadata is derived from the Inputs()/Outputs()
// methods on ExtractorComponent so the API layer (Phase 4) can
// enumerate the catalog without instantiating the component.
func init ( ) {
c := & ExtractorComponent { }
runtime . MustRegister ( componentNameExtractor , runtime . CategoryIngestion ,
func ( _ string , params map [ string ] any ) ( runtime . Component , error ) {
return NewExtractorComponent ( params )
} ,
runtime . Metadata {
Version : "1.0.0" ,
Inputs : c . Inputs ( ) ,
Outputs : c . Outputs ( ) ,
} )
}