fail-early-pattern
关于
This skill teaches developers to implement the fail-fast pattern by validating inputs and reporting errors immediately using guard clauses and assertions. It provides practical examples in R with cross-language principles for writing robust functions that handle invalid arguments. Use it when hardening APIs, refactoring silent failures, or adding validation to catch errors early.
快速安装
Claude Code
推荐npx 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/fail-early-pattern在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
早敗
物將敗則宜早敗、高敗、富境敗。此技定早敗模:於系界驗入、以守護條早拒壞態、書答何敗、何處、何以、何修之誤信。
用
- 書或閱納外入之函(用數、API 答、文容)
- CRAN 提前加包函入驗
- 重構默產誤果之碼
- 閱 PR 察誤處質
- 強內 API 抗誤參
入
- 必:施此模之函或模
- 必:信界之識(外數入處)
- 可:欲重構之舊誤處碼
- 可:標語(默:R;亦適 Python、TypeScript、Rust)
行
一:識信界
映外數入系之處。此為須驗之點:
- 公 API 函(R 包之出函)
- 用者面參
- 文 I/O(讀組、數文、用傳)
- 網答(API 呼、庫詢)
- 環境變與系組
僅自己已驗碼所呼之內助函常無須重驗。
得:不信數入碼之入點列。
敗:界不明→自日或蟲報之誤反追至壞數首入處。
二:於入點加守護
各公函首驗入,工前。
R(base):
calculate_summary <- function(data, method = c("mean", "median", "trim"), trim_pct = 0.1) {
# Guard: type check
if (!is.data.frame(data)) {
stop("'data' must be a data frame, not ", class(data)[[1]], call. = FALSE)
}
# Guard: non-empty
if (nrow(data) == 0L) {
stop("'data' must have at least one row", call. = FALSE)
}
# Guard: argument matching
method <- match.arg(method)
# Guard: range check
if (!is.numeric(trim_pct) || trim_pct < 0 || trim_pct > 0.5) {
stop("'trim_pct' must be a number between 0 and 0.5, got: ", trim_pct, call. = FALSE)
}
# --- All guards passed, begin real work ---
# ...
}
R(rlang/cli — 包宜):
calculate_summary <- function(data, method = c("mean", "median", "trim"), trim_pct = 0.1) {
rlang::check_required(data)
if (!is.data.frame(data)) {
cli::cli_abort("{.arg data} must be a data frame, not {.cls {class(data)}}.")
}
if (nrow(data) == 0L) {
cli::cli_abort("{.arg data} must have at least one row.")
}
method <- rlang::arg_match(method)
if (!is.numeric(trim_pct) || trim_pct < 0 || trim_pct > 0.5) {
cli::cli_abort("{.arg trim_pct} must be between 0 and 0.5, not {.val {trim_pct}}.")
}
# ...
}
通(TypeScript):
function calculateSummary(data: DataFrame, method: Method, trimPct: number): Summary {
if (data.rows.length === 0) {
throw new Error(`data must have at least one row`);
}
if (trimPct < 0 || trimPct > 0.5) {
throw new RangeError(`trimPct must be between 0 and 0.5, got: ${trimPct}`);
}
// ...
}
得:每公函以守護始,於副作用或算前拒誤入。
敗:驗邏過長(>15 行)→抽 validate_* 助函或以 stopifnot() 為簡類斷。
三:書有義誤信
每誤信宜答四問:
- 何敗——何參或作
- 何處——函名或境(
cli::cli_abort自動) - 何以——所期對所得
- 何修——非顯時
佳信:
# What + Why (expected vs. actual)
stop("'n' must be a positive integer, got: ", n, call. = FALSE)
# What + Why + How to fix
cli::cli_abort(c(
"{.arg config_path} does not exist: {.file {config_path}}",
"i" = "Create it with {.run create_config({.file {config_path}})}."
))
# What + context
cli::cli_abort(c(
"Column {.val {col_name}} not found in {.arg data}.",
"i" = "Available columns: {.val {names(data)}}"
))
劣信:
stop("Error") # What failed? No idea
stop("Invalid input") # Which input? What's wrong with it?
stop(paste("Error in step", i)) # No actionable information
得:誤信自述——初見者可不讀源而診修。
敗:閱末三蟲報。若任須讀源解→其誤信宜改。
四:偏 stop() 於 warning()
函不能產正果→用 stop()(或 cli::cli_abort())。函仍能產有意果而呼者宜知憂→用 warning()。
規:若用者或默得誤答→stop(),非 warning()。
# CORRECT: stop when result would be wrong
read_config <- function(path) {
if (!file.exists(path)) {
stop("Config file not found: ", path, call. = FALSE)
}
yaml::read_yaml(path)
}
# CORRECT: warn when result is still usable
summarize_data <- function(data) {
if (any(is.na(data$value))) {
warning(sum(is.na(data$value)), " NA values dropped from 'value' column", call. = FALSE)
data <- data[!is.na(data$value), ]
}
# proceed with valid data
}
得:stop() 用於產誤果之條件;warning() 留於退化而有效之果。
敗:察舊 warning() 呼。若函於警後返荒→改為 stop()。
五:內不變用斷
對「正碼中不應發生」之條件用斷。此於發期捕程者誤:
# R: stopifnot for internal invariants
process_chunk <- function(chunk, total_size) {
stopifnot(
is.list(chunk),
length(chunk) > 0,
total_size > 0
)
# ...
}
# R: explicit assertion with context
merge_results <- function(left, right) {
if (ncol(left) != ncol(right)) {
stop("Internal error: column count mismatch (", ncol(left), " vs ", ncol(right),
"). This is a bug — please report it.", call. = FALSE)
}
# ...
}
得:內不變已斷,蟲立於違處現,非三呼後以隱信現。
敗:stopifnot() 信過隱→改為顯 if/stop 含境。
六:重構反模
識並修此常反模:
反模一:空 tryCatch(吞誤)
# BEFORE: Error silently disappears
result <- tryCatch(
parse_data(input),
error = function(e) NULL
)
# AFTER: Log, re-throw, or return a typed error
result <- tryCatch(
parse_data(input),
error = function(e) {
cli::cli_abort("Failed to parse input: {e$message}", parent = e)
}
)
反模二:默值掩壞入
# BEFORE: Caller never knows their input was ignored
process <- function(x = 10) {
if (!is.numeric(x)) x <- 10 # silently replaces bad input
x * 2
}
# AFTER: Tell the caller about the problem
process <- function(x = 10) {
if (!is.numeric(x)) {
stop("'x' must be numeric, got ", class(x)[[1]], call. = FALSE)
}
x * 2
}
反模三:以 suppressWarnings 為修
# BEFORE: Hiding the symptom instead of fixing the cause
result <- suppressWarnings(as.numeric(user_input))
# AFTER: Validate explicitly, handle the expected case
if (!grepl("^-?\\d+\\.?\\d*$", user_input)) {
stop("Expected a number, got: '", user_input, "'", call. = FALSE)
}
result <- as.numeric(user_input)
反模四:catch-all 異處
# BEFORE: Every error treated the same
tryCatch(
complex_operation(),
error = function(e) message("Something went wrong")
)
# AFTER: Handle specific conditions, let unexpected ones propagate
tryCatch(
complex_operation(),
custom_validation_error = function(e) {
cli::cli_warn("Validation issue: {e$message}")
fallback_value
}
# Unexpected errors propagate naturally
)
得:反模以顯驗或特誤處代。
敗:去 tryCatch 致連崩→上碼有驗隙。修源,非症。
七:驗早敗重構
行試套以確誤路:
# Verify error messages are triggered
testthat::expect_error(calculate_summary("not_a_df"), "must be a data frame")
testthat::expect_error(calculate_summary(data.frame()), "at least one row")
testthat::expect_error(calculate_summary(mtcars, trim_pct = 2), "between 0 and 0.5")
# Verify valid inputs still work
testthat::expect_no_error(calculate_summary(mtcars, method = "mean"))
# Run full test suite
Rscript -e "devtools::test()"
得:諸試過。誤路試確壞入觸期誤信。
敗:舊試依默敗(如壞入返 NULL)→更之期新誤。
驗
- 每公函行前驗其入
- 誤信答:何敗、何處、何以、何修
-
stop()用於產誤果條件 -
warning()僅用於退化而有效之果 - 無空
tryCatch默吞誤 - 無以
suppressWarnings()代正驗 - 無默值默掩誤入
- 內不變用
stopifnot()或顯斷 - 各驗守有誤路試
- 重構後試套過
忌
- 驗過深:於信界(公 API)驗,非每內助。過驗加噪損性
- 無境誤信:
"Invalid input"迫呼者猜。必含參名、期類/域、所得值 - 本 stop 而用 warning:若函於警後返荒→呼者默得誤。用
stop()令呼者定處 - tryCatch 吞誤:
tryCatch(..., error = function(e) NULL)隱蟲。若必捕→記或加境再擲 - 忘 call. = FALSE:R 中
stop("msg")默含呼,於末用者嘈。用者面函用call. = FALSE。cli::cli_abort()自行此 - 於試而非碼中驗:試驗行而不護產呼者。驗屬函本身
- 混雜系上誤 R 二:WSL 或 Docker 中
Rscript或解為跨平包而非原 R。以which Rscript && Rscript --version察。為可靠宜用原 R 二(如 Linux/WSL 上/usr/local/bin/Rscript)。R 徑設見 Setting Up Your Environment
參
write-testthat-tests- 書驗誤路之試review-pull-request- 閱碼察缺驗與默敗review-software-architecture- 系級誤處策估create-skill- 循 agentskills.io 標造新技security-audit-codebase- 與入驗重之安焦閱
GitHub 仓库
相关推荐技能
evaluating-llms-harness
测试该Skill通过60+个学术基准测试(如MMLU、GSM8K等)评估大语言模型质量,适用于模型对比、学术研究及训练进度追踪。它支持HuggingFace、vLLM和API接口,被EleutherAI等行业领先机构广泛采用。开发者可通过简单命令行快速对模型进行多任务批量评估。
cloudflare-cron-triggers
测试这个Claude Skill提供了关于Cloudflare Cron Triggers的完整知识库,用于通过cron表达式定时执行Workers。它支持配置周期性任务、维护作业和自动化工作流,并能处理常见的cron触发错误。开发者可以用它来设置定时任务、测试cron处理器,并集成Workflows和Green Compute功能。
webapp-testing
测试该Skill为开发者提供了基于Playwright的本地Web应用测试工具集,支持自动化测试前端功能、调试UI行为、捕获屏幕截图和查看浏览器日志。它包含管理服务器生命周期的辅助脚本,可直接作为黑盒工具运行而无需阅读源码。适用于需要快速验证本地Web应用界面和交互功能的开发场景。
finishing-a-development-branch
测试这个Skill用于开发分支完成后的集成决策,当代码实现完成且测试通过时,它会引导开发者选择合适的工作流。它首先验证测试状态,然后提供合并、创建PR或清理等结构化选项。核心价值在于确保代码质量的同时,标准化分支收尾流程。
