annotate-source-files
Über
Diese Fähigkeit fügt automatisch PUT-Workflow-Annotationen zu Quelldateien hinzu, indem sie sprachspezifische Kommentarsyntax über 30+ Sprachen hinweg verwendet. Sie übernimmt die Annotation-Generierung, mehrzeilige Formatierung, .interne Variablen und Validierung durch automatische Erkennung von Kommentarpräfixen. Verwenden Sie sie, wenn Sie Workflows in bestehenden Codebasen, Datenpipelines oder mehrstufigen Berechnungen dokumentieren, nachdem Sie einen Annotationsplan erstellt haben.
Schnellinstallation
Claude Code
Empfohlennpx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/annotate-source-filesKopieren Sie diesen Befehl und fügen Sie ihn in Claude Code ein, um diese Fähigkeit zu installieren
Dokumentation
Annotate Source Files
Add PUT workflow annotations → putior extracts structured workflow data + generates Mermaid diagrams.
Use When
- After
analyze-codebase-workflow+ annotation plan - Add workflow docs new/existing src
- Enrich auto-detected w/ manual labels + connections
- Doc data pipelines, ETL, multi-step computations
In
- Required: Src files to annotate
- Required: Annotation plan or workflow steps knowledge
- Optional: Style — single-line or multiline (default: single-line)
- Optional: Use
put_generate()skeletons? (default: yes)
Do
Step 1: Determine Comment Prefix
Each lang has specific prefix. get_comment_prefix() → correct one.
library(putior)
# Common prefixes
get_comment_prefix("R") # "#"
get_comment_prefix("py") # "#"
get_comment_prefix("sql") # "--"
get_comment_prefix("js") # "//"
get_comment_prefix("ts") # "//"
get_comment_prefix("go") # "//"
get_comment_prefix("rs") # "//"
get_comment_prefix("m") # "%"
get_comment_prefix("lua") # "--"
→ String like "#", "--", "//", or "%".
Line + block comments: putior detects annotations in both line comments (
//,#,--) + C-style block comments (/* */,/** */). JS/TS both//+/* */scanned. Python triple-quote strings (''' ''') not detected — use#for Python.
If err: Ext not recognized → lang may not be supported. Check get_supported_extensions(). Unsupported langs → use # conventional default.
Step 2: Generate Skeletons
put_generate() → annotation templates based on auto-detected I/O.
# Print suggestions to console
put_generate("./src/etl/")
# Single-line style (default)
put_generate("./src/etl/", style = "single")
# Multiline style for complex annotations
put_generate("./src/etl/", style = "multiline")
# Copy to clipboard for pasting
put_generate("./src/etl/", output = "clipboard")
Example out for R file:
# put id:'extract_data', label:'Extract Customer Data', input:'customers.csv', output:'raw_data.internal'
Example out for SQL:
-- put id:'load_data', label:'Load Customer Table', output:'customers'
→ 1+ annotation comment lines per file, pre-filled w/ detected fn names + I/O.
If err: No suggestions → file may not have recognizable I/O patterns. Write annotations manually.
Step 3: Refine Annotations
Edit generated skeletons → accurate labels, connections, metadata.
Annotation syntax:
<prefix> put id:'unique_id', label:'Human Readable Label', input:'file1.csv, file2.rds', output:'result.parquet, summary.internal'
Fields:
id(required): Unique ID, for node connectionslabel(required): Human-readable desc shown diagraminput: Comma-separated insoutput: Comma-separated outs.internalext: Marks in-memory vars (not persisted between scripts)node_type: Mermaid shape + class styling. Values:"input"— stadium shape([...])data srcs + config"output"— subroutine shape[[...]]generated artifacts"process"— rectangle[...]processing steps (default)"decision"— diamond{...}conditional logic"start"/"end"— stadium shape([...])entry/terminal
Example w/ node_type:
# put id:'config', label:'Load Config', node_type:'input', output:'config.internal'
# put id:'transform', label:'Apply Rules', node_type:'process', input:'config.internal', output:'result.rds'
# put id:'report', label:'Generate Report', node_type:'output', input:'result.rds'
Multiline syntax (complex):
# put id:'complex_step', \
# label:'Multi-line Label', \
# input:'data.csv, config.yaml', \
# output:'result.parquet'
Block comment syntax (//-prefix langs only: JS, TS, Go, Rust, C, C++, Java, etc.):
Langs w/ // line comments also support PUT in /* */ + /** */ blocks. Use * put as line prefix inside block body:
/* put id:'init', label:'Initialize Config', output:'config.internal' */
/**
* put id:'process', \
* label:'Process Records', \
* input:'config.internal, records.json', \
* output:'results.json'
*/
function processRecords(config, records) {
// ...
}
JSDoc annotations useful documenting workflow + API docs:
/**
* Transform raw sensor data into normalized readings.
* put id:'normalize', label:'Normalize Sensor Data', input:'raw_readings.json', output:'normalized.parquet'
*/
export function normalizeSensorData(readings: SensorReading[]): NormalizedData {
// ...
}
Note: Block comment annotations not supported for
#-prefix (R, Python, Shell) or---prefix (SQL, Lua). Line comments only those. Block-originated no backslash continuation across lines.
Cross-file data flow (connect scripts via file-based I/O):
# Script 1: extract.R
# put id:'extract', label:'Extract Data', output:'raw_data.internal, raw_data.rds'
data <- read.csv("source.csv")
saveRDS(data, "raw_data.rds")
# Script 2: transform.R
# put id:'transform', label:'Transform Data', input:'raw_data.rds', output:'clean_data.parquet'
data <- readRDS("raw_data.rds")
arrow::write_parquet(clean, "clean_data.parquet")
→ Annotations refined w/ accurate IDs, labels, I/O reflecting actual data flow.
If err: Unsure I/O → .internal ext for in-memory intermediates + explicit file names for persisted.
Step 4: Insert Annotations
Place at top of file or immediately above relevant code block.
Placement conventions:
- File-level: Top after shebang or header comment
- Block-level: Immediately above code block it describes
- Multi per file: Distinct workflow phases
Example in R:
#!/usr/bin/env Rscript
# ETL Extract Script
#
# put id:'read_source', label:'Read Source Data', input:'raw_data.csv', output:'df.internal'
df <- read.csv("raw_data.csv")
# put id:'clean_data', label:'Clean and Validate', input:'df.internal', output:'clean.rds'
df_clean <- df[complete.cases(df), ]
saveRDS(df_clean, "clean.rds")
Edit tool → insert into existing files no disturb surrounding.
→ Annotations inserted at appropriate locations per file.
If err: Break syntax highlighting → verify prefix correct for lang. PUT = std comments + should not affect exec.
Step 5: Validate
Run putior validation → syntax + connectivity.
# Scan annotated files
workflow <- put("./src/", validate = TRUE)
# Check for validation issues
print(workflow)
cat(sprintf("Total nodes: %d\n", nrow(workflow)))
# Verify connections by checking input/output overlap
inputs <- unlist(strsplit(workflow$input, ",\\s*"))
outputs <- unlist(strsplit(workflow$output, ",\\s*"))
connected <- intersect(inputs, outputs)
cat(sprintf("Connected data flows: %d\n", length(connected)))
# Generate diagram to visually inspect
cat(put_diagram(workflow, theme = "github", show_source_info = TRUE))
# Merge with auto-detected for maximum coverage
merged <- put_merge("./src/", merge_strategy = "supplement")
cat(put_diagram(merged, theme = "github"))
→ All annotations parse no err. Diagram shows connected workflow. put_merge() fills gaps from auto-detection.
If err: Common issues:
- Missing close quote:
id:'name→id:'name' - Double quotes inside:
id:"name"→id:'name' - Duplicate IDs across files: each
idmust be unique across entire scanned dir - Backslash continuation wrong line:
\must be last char before newline
Check
- Every annotated file has syntactically valid PUT annotations
-
put("./src/")returns df w/ expected node count - No duplicate
idvalues across scanned dir -
put_diagram()produces connected flowchart (not all isolated) - Multiline annotations (if used) parse correct w/ backslash continuation
-
.internalvars appear only outputs, never cross-file ins - Files excluded via
excludeno appear in workflow (e.g.,put("./src/", exclude = "test_")skips test helpers)
Traps
- Quote nesting: PUT uses single quotes:
id:'name'. Double quotes → parsing issues when annotation in string ctx. - Duplicate IDs: Every
idmust be globally unique within scanned scope. Naming:<script>_<step>(e.g.,extract_read,transform_clean). - .internal as cross-file in:
.internalexists only during script exec. Pass data between scripts → persisted file format (.rds,.csv,.parquet) as out of one + in of next. - Missing connections: Disconnected nodes → check out filenames in 1 annotation exactly match in filenames in another (including exts).
- Wrong prefix:
#in SQL or//in Python → annotation treated as code not comment. Always verifyget_comment_prefix(). - Forget multiline continuation: Every continued line must end
\+ next line must start w/ comment prefix. - Python triple-quote strings: putior no scan (
''' ''',""" """). Always#for Python PUT. - Meta-pipeline annotations: Annotate build script that also scans for annotations (e.g., script calling
put()+put_diagram()) → script's own annotations appear in generated diagram. Exclude file from scanning (seegenerate-workflow-diagramTraps) or no PUT in build script itself.
→
analyze-codebase-workflow— prereq: produces annotation plan this followsgenerate-workflow-diagram— next: generate final from annotationsinstall-putior— putior installed before annotatingconfigure-putior-mcp— MCP tools interactive annotation assistance
GitHub Repository
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