بنقرة واحدة
generating-dataflow-pipeline
Reasoning-guided pipeline planner that generates standard DataFlow pipeline code
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Reasoning-guided pipeline planner that generates standard DataFlow pipeline code
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
DataFlow 开发专家上下文加载器。当用户在 DataFlow 仓库中进行开发时触发, 涵盖:新建算子/Pipeline/Prompt、诊断报错、规范审查、 以及感知仓库变更并建议更新知识库。 Trigger: user is developing in DataFlow repo, asks to create operator/pipeline/prompt, encounters errors, wants code review, or asks about operators.
Reference documentation for the BenchDatasetEvaluatorQuestion operator. Extended version of BenchDatasetEvaluator with question and subquestion support. Use when: evaluating answers with question context or multiple subquestions.
Reference documentation for the BenchDatasetEvaluator operator. Covers the constructor, two comparison modes (match/semantic), and pipeline usage. Use when: comparing predicted answers against ground truth answers in benchmark evaluation.
Reference documentation for the PromptedEvaluator operator. Use when: scoring text quality with LLM without filtering rows.
Reference documentation for the Text2QASampleEvaluator operator. Use when: evaluating QA pair quality across multiple dimensions.
Reference documentation for the UnifiedBenchDatasetEvaluator operator. Use when: evaluating model answers on benchmark datasets.
| name | generating-dataflow-pipeline |
| description | Reasoning-guided pipeline planner that generates standard DataFlow pipeline code |
| version | 1.0.0 |
This skill is used when users provide:
The skill must:
first_entry_file_name set to the user-provided file pathUsers provide:
Target: [Clear task description]
Sample file: [Path to JSONL file, e.g., ./data/input.jsonl]
Expected outputs: [Optional field list]
Important: The sample file is a JSONL file (one JSON object per line), not a JSON array.
Six Core Primitives (high-coverage operators for most data science tasks):
PromptedGenerator - Single-field LLM generationFormatStrPromptedGenerator - Multi-field template generationText2MultiHopQAGenerator - Multi-hop QA pair constructionPromptedFilter - LLM-based quality filteringGeneralFilter - Rule-based filteringFileOrURLToMarkdownConverterFlash → KBCChunkGenerator → KBCTextCleanerThese are preferred primitives, not fixed workflows. They can be used repeatedly and combined flexibly.
When a specialized operator exists for the task, it MUST be used over generic operators. Do NOT use PromptedGenerator to replicate functionality that a dedicated operator already provides.
Decision table (check in order, use the first match):
| Task / Scenario | Required Operator | Do NOT use |
|---|---|---|
| Generate QA pairs from text | Text2MultiHopQAGenerator | PromptedGenerator with QA prompt |
| Convert file path / URL to text | KBC trio (FileOrURLToMarkdownConverterFlash → KBCChunkGenerator → KBCTextCleaner) | PromptedGenerator to summarize files |
| Score / evaluate using multiple fields | FormatStrPromptedGenerator + GeneralFilter | PromptedFilter (single input_key only) |
| Filter by deterministic rule on existing fields | GeneralFilter | PromptedFilter |
| Generate new content from a single field | PromptedGenerator | — |
| Generate new content from multiple fields | FormatStrPromptedGenerator | Multiple PromptedGenerator steps |
Key principle: PromptedGenerator is the fallback for generic single-field generation. If the target mentions "QA", "question-answer", "问答" — always reach for Text2MultiHopQAGenerator first.
PromptedGenerator or FormatStrPromptedGenerator to create missing semantic fields✗ WRONG: Filter by "quality_score" before generating it
✓ CORRECT: Generate "quality_score" first, then filter by it
The KBC trio must always be used in this exact order:
FileOrURLToMarkdownConverterFlash — converts file path / URL → Markdown text (field: text_path)KBCChunkGenerator — splits Markdown into chunks (field: raw_chunk)KBCTextCleaner — LLM-cleans each chunk (field: cleaned_chunk)Rules:
output_key becomes the next step's input_key.text_path, raw_chunk, cleaned_chunk) unless explicitly requested otherwise.GeneralFilter lambda rules must ONLY reference fields that exist in sample data or are produced by upstream steps.
PromptedFilter only accepts a single input_key. For multi-field evaluation (e.g., scoring QA pairs), use FormatStrPromptedGenerator to score + GeneralFilter to filter.
Important caveat for Text2MultiHopQAGenerator output: The QA_pairs column is a nested list of dicts, not separate question/answer columns. You cannot directly pass question or answer as kwargs to FormatStrPromptedGenerator after Text2MultiHopQAGenerator. To score or filter individual QA pairs, use post-processing (explode the list into rows, then optionally score/filter in a second pipeline or in Python code).
Two-stage output required:
Output this first:
{
"ops": ["OperatorA", "OperatorB", "OperatorC"],
"field_flow": "field_a -> field_b -> field_c",
"reason": "Why this ordered operator chain satisfies the target, how field dependencies are satisfied, and why prompted operators are or are not used."
}
All generated Python code must follow the standard pipeline organization shown in the examples/ folder of this skill package.
Input Data Format:
first_entry_file_name MUST be set to the user-provided file path (the JSONL sample file).jsonl (one JSON object per line, NOT an array)Required structure: __init__ (storage + llm_serving + operators) → forward (sequential operator.run(storage=self.storage.step(), ...)) → if __name__ == "__main__" entry point.
DO NOT: generate custom runtime executors, forward(plan) style frameworks, or dynamic dispatch engines.
Use repository-valid constructor/run signatures only. Never invent parameter names.
FileStorage
FileStorage(
first_entry_file_name="...jsonl",
cache_path="./cache",
file_name_prefix="dataflow_cache_step",
cache_type="jsonl"
)
APILLMServing_request
APILLMServing_request(
api_url="...",
key_name_of_api_key="DF_API_KEY", # defaults to DF_API_KEY; set to e.g. "OPENAI_API_KEY" if needed
model_name="gpt-4o",
max_workers=10
)
1) PromptedGenerator
PromptedGenerator(llm_serving, system_prompt="You are a helpful agent.", user_prompt="", json_schema=None)run(storage=self.storage.step(), input_key="raw_content", output_key="generated_content")input_key column must exist. Generated rows written to output_key.2) FormatStrPromptedGenerator
FormatStrPromptedGenerator(llm_serving, system_prompt="You are a helpful agent.", prompt_template=FormatStrPrompt(...), json_schema=None)run(storage=self.storage.step(), output_key="generated_content", **input_keys)**input_keys: each kwarg maps a template variable name (key) to a dataframe column name (value). Internally does row[input_keys[key]] per row, then prompt_template.build_prompt(need_fields, **key_dict).{placeholder} names in FormatStrPrompt.f_str_template. Kwarg values must be existing dataframe columns.prompt_template cannot be None (raises ValueError). Must pass an instantiated FormatStrPrompt(f_str_template="...").from dataflow.prompts.core_text import FormatStrPrompt3) Text2MultiHopQAGenerator
Text2MultiHopQAGenerator(llm_serving=self.llm_serving, seed=0, lang="en", prompt_template=None, num_q=5)
llm_serving — LLM serving instance (required)seed (int, default 0) — random seed for reproducibilitylang (str, default "en") — language for generation prompt; controls sentence splitting ("." for "en", "。" for "zh")prompt_template — custom DIYPromptABC instance; pass None to use default Text2MultiHopQAGeneratorPromptnum_q (int, default 5) — maximum number of QA pairs to keep per input row (truncates the generated list; actual generation count depends on sentence triples in the text)run(storage, input_key="cleaned_chunk", output_key="QA_pairs", output_meta_key="QA_metadata")
input_key must exist (cleaned text chunk column)output_key — column containing a nested list of QA dicts per row. Each dict has keys: question (str), reasoning_steps (list of {step: str}), answer (str), supporting_facts (list of str), type (str)output_meta_key — column containing metadata dict per row with keys: source, timestamp, complexityoutput_key / output_meta_key must NOT pre-exist.output_key column. The list items are dicts — question, answer, etc. are NOT separate dataframe columns. Downstream operators like FormatStrPromptedGenerator cannot directly reference question or answer as column names. To use individual QA pairs downstream, you must post-process (explode the list into separate rows) outside the operator chain.qa_pairs: []):
. or 2+ 。)4) PromptedFilter
PromptedFilter(llm_serving, system_prompt="...", min_score=1, max_score=5)run(storage=self.storage.step(), input_key="raw_content", output_key="eval")input_key must exist. output_key is numeric score column; rows outside [min_score, max_score] are filtered out.5) GeneralFilter
GeneralFilter([lambda df: df["score"] >= 4, ...])run(storage=self.storage.step())pd.Series. Referenced fields must already exist.6) KBC Trio (always used in this order)
Step 1 — FileOrURLToMarkdownConverterFlash
FileOrURLToMarkdownConverterFlash(intermediate_dir="../example_data/KBCleaningPipeline/flash/", mineru_model_path="opendatalab/MinerU2.5-2509-1.2B", batch_size=4, replicas=1, num_gpus_per_replica=1.0, engine_gpu_util_rate_to_ray_cap=0.9)llm_serving — this operator has no LLM dependency.mineru_model_path is required — passing None raises ValueError. Use a HuggingFace model ID or local path.run(storage=self.storage.step(), input_key="source", output_key="text_path").pdf, .png, .jpg, .jpeg, .webp, .gif, .html, .xml, .txt, .md).Step 2 — KBCChunkGenerator
KBCChunkGenerator(chunk_size=512, chunk_overlap=50, split_method="token", min_tokens_per_chunk=100, tokenizer_name="bert-base-uncased")run(storage=self.storage.step(), input_key="text_path", output_key="raw_chunk")split_method options: "token", "sentence", "semantic", "recursive".Step 3 — KBCTextCleaner
KBCTextCleaner(llm_serving, lang="en")run(storage=self.storage.step(), input_key="raw_chunk", output_key="cleaned_chunk")# Base components
from dataflow.utils.storage import FileStorage
from dataflow.serving import APILLMServing_request
# Operators
from dataflow.operators.core_text import PromptedGenerator, FormatStrPromptedGenerator, Text2MultiHopQAGenerator, PromptedFilter, GeneralFilter
from dataflow.operators.knowledge_cleaning import FileOrURLToMarkdownConverterFlash, KBCChunkGenerator, KBCTextCleaner
The sibling skill core_text (located at ../core_text/) provides detailed per-operator API documentation that supplements the summary signatures above.
Each operator directory contains:
SKILL.md — Full English reference: constructor signature, run() signature, execution logic, mandatory rules, return value semanticsSKILL_zh.md — Chinese translation of the referenceexamples/good.md — Best-practice pipeline exampleexamples/bad.md — Common mistakes and failure casesWhen to consult core_text:
BenchAnswerGenerator, ChunkedPromptedGenerator, EmbeddingGenerator, RetrievalGenerator, RandomDomainKnowledgeRowGenerator)bad.md examples document the most frequent mistakesNote: The 6 core primitives documented above in "Operator Parameter Signature Rule" remain the primary reference for standard pipeline generation. The core_text skill provides deeper detail and covers additional operators not in the core set.
Path: ../core_text/generate/
Available operator references (8 operators):
| Operator | Subdirectory | Description |
|---|---|---|
PromptedGenerator | prompted-generator/ | Single-field LLM generation — full execution logic, skip-falsy rules |
FormatStrPromptedGenerator | format-str-prompted-generator/ | Multi-field template generation — placeholder-to-column mapping details,@prompt_restrict validation |
Text2MultiHopQAGenerator | text2multihopqa-generator/ | Multi-hop QA pair construction — text filtering thresholds (100–200k chars), output structure, row-count behavior |
BenchAnswerGenerator | bench-answer-generator/ | Benchmark answer generation —eval_type variants, conditional field requirements |
ChunkedPromptedGenerator | chunked-prompted-generator/ | Long document chunk-by-chunk processing — token-based splitting, file I/O conventions |
EmbeddingGenerator | embedding-generator/ | Text vectorization — supported serving backends,/v1/embeddings endpoint usage |
RandomDomainKnowledgeRowGenerator | random-domain-knowledge-row-generator/ | Domain-specific row generation — seed dataframe requirements,generation_num constraints |
RetrievalGenerator | retrieval-generator/ | Async RAG generation —LightRAGServing.create() async initialization, await run() requirement |
Path: ../core_text/eval/
Available operator references (5 operators):
| Operator | Subdirectory | Description |
|---|---|---|
BenchDatasetEvaluator | bench-dataset-evaluator/ | Benchmark answer comparison —match (math verification) and semantic (LLM-based) modes |
BenchDatasetEvaluatorQuestion | bench-dataset-evaluator-question/ | Extended benchmark evaluator — adds question context and subquestion support over BenchDatasetEvaluator |
PromptedEvaluator | prompted-evaluator/ | LLM-based row scoring — writes score into new column without removing rows |
Text2QASampleEvaluator | text2qa-sample-evaluator/ | QA pair quality evaluation — 4 dimensions, 8 output columns (grades + feedbacks per dimension) |
UnifiedBenchDatasetEvaluator | unified-bench-dataset-evaluator/ | Unified benchmark evaluation — 6 eval_type variants, writes 4 output columns |
Path: ../core_text/filter/
Available operator references (3 operators):
| Operator | Subdirectory | Description |
|---|---|---|
GeneralFilter | general-filter/ | Rule-based row filtering — lambda conditions combined with AND, removes rows only, adds no new columns |
KCenterGreedyFilter | kcentergreedy-filter/ | Diversity-based downsampling — K-Center Greedy algorithm, requires pre-computed embedding vectors |
PromptedFilter | prompted-filter/ | LLM semantic filtering — internally uses PromptedEvaluator, retains rows with scores in [min_score, max_score] |
Path: ../core_text/refine/
Available operator references (2 operators):
| Operator | Subdirectory | Description |
|---|---|---|
PandasOperator | pandas-operator/ | Custom DataFrame transformation — applies a sequential list of functions, no LLM calls |
PromptedRefiner | prompted-refiner/ | LLM text refinement — rewrites text in-place, overwrites original column with refined results |
Analyze sample data content to determine task nature:
File path fields (e.g., pdf_path, image_path, doc_path):
FileOrURLToMarkdownConverterFlash → KBCChunkGenerator → KBCTextCleaner (supports .pdf, .png, .jpg, .jpeg, .webp, .gif, .html, .xml, .txt, .md)Plain text fields (e.g., text, content, review_text):
PromptedGenerator, PromptedFilter, Text2MultiHopQAGenerator, FormatStrPromptedGenerator, GeneralFilterMultiple semantic fields (e.g., instruction, output, question, answer):
FormatStrPromptedGenerator for combining fieldsGeneralFilter for field-based rulesSee examples/ folder for complete workflows:
examples/basic_generate_and_filter.md — PromptedGenerator + PromptedFilter (simplest pattern)examples/multifield_scoring.md — FormatStrPromptedGenerator with multi-field scoringexamples/multi_stage_pipeline.md — Multiple PromptedGenerator stages + GeneralFilterexamples/kbc_pdf_to_qa.md — KBC trio (FileOrURLToMarkdownConverterFlash + KBCChunkGenerator + KBCTextCleaner) + Text2MultiHopQAGenerator + PromptedFilter (scores nested QA_pairs column per chunk)These are strategy guidance, not templates to copy blindly. Generated code must follow standard pipeline structure.