> langsmith-dataset
INVOKE THIS SKILL when creating evaluation datasets, uploading datasets to LangSmith, or managing existing datasets. Covers dataset types (final_response, single_step, trajectory, RAG), CLI management commands, SDK-based creation, and example management. Uses the langsmith CLI tool.
curl "https://skillshub.wtf/Harmeet10000/skills/langsmith-dataset?format=md"LANGSMITH_API_KEY=lsv2_pt_your_api_key_here # Required
LANGSMITH_PROJECT=your-project-name # Check this to know which project has traces
LANGSMITH_WORKSPACE_ID=your-workspace-id # Optional: for org-scoped keys
IMPORTANT: Always check the environment variables or .env file for LANGSMITH_PROJECT before querying or interacting with LangSmith. This tells you which project contains the relevant traces and data. If the LangSmith project is not available, use your best judgement to identify the right one.
Python Dependencies
pip install langsmith
JavaScript Dependencies
npm install langsmith
CLI Tool
curl -sSL https://raw.githubusercontent.com/langchain-ai/langsmith-cli/main/scripts/install.sh | sh
</setup>
<usage>
Use the `langsmith` CLI to manage datasets and examples.
Dataset Commands
langsmith dataset list- List datasets in LangSmithlangsmith dataset get <name-or-id>- View dataset detailslangsmith dataset create --name <name>- Create a new empty datasetlangsmith dataset delete <name-or-id>- Delete a datasetlangsmith dataset export <name-or-id> <output-file>- Export dataset to local JSON filelangsmith dataset upload <file> --name <name>- Upload a local JSON file as a dataset
Example Commands
langsmith example list --dataset <name>- List examples in a datasetlangsmith example create --dataset <name> --inputs <json>- Add an example to a datasetlangsmith example delete <example-id>- Delete an example
Experiment Commands
langsmith experiment list --dataset <name>- List experiments for a datasetlangsmith experiment get <name>- View experiment results
Common Flags
--limit N- Limit number of results--yes- Skip confirmation prompts (use with caution)
IMPORTANT - Safety Prompts:
- The CLI prompts for confirmation before destructive operations (delete, overwrite)
- If you are running with user input: ALWAYS wait for user input; NEVER use
--yesunless the user explicitly requests it - If you are running non-interactively: Use
--yesto skip confirmation prompts </usage>
<dataset_types_overview> Common evaluation dataset types:
- final_response - Full conversation with expected output. Tests complete agent behavior.
- single_step - Single node inputs/outputs. Tests specific node behavior (e.g., one LLM call or tool).
- trajectory - Tool call sequence. Tests execution path (ordered list of tool names).
- rag - Question/chunks/answer/citations. Tests retrieval quality. </dataset_types_overview>
<creating_datasets>
Creating Datasets
Datasets are JSON files with an array of examples. Each example has inputs and outputs.
From Exported Traces (Programmatic)
Export traces first, then process them into dataset format using code:
# 1. Export traces to JSONL files
langsmith trace export ./traces --project my-project --limit 20 --full
<python>
```python
import json
from pathlib import Path
from langsmith import Client
client = Client()
2. Process traces into dataset examples
examples = [] for jsonl_file in Path("./traces").glob("*.jsonl"): runs = [json.loads(line) for line in jsonl_file.read_text().strip().split("\n")] root = next((r for r in runs if r.get("parent_run_id") is None), None) if root and root.get("inputs") and root.get("outputs"): examples.append({ "trace_id": root.get("trace_id"), "inputs": root["inputs"], "outputs": root["outputs"] })
3. Save locally
with open("/tmp/dataset.json", "w") as f: json.dump(examples, f, indent=2)
</python>
<typescript>
```typescript
import { Client } from "langsmith";
import { readFileSync, writeFileSync, readdirSync } from "fs";
import { join } from "path";
const client = new Client();
// 2. Process traces into dataset examples
const examples: Array<{trace_id?: string, inputs: Record<string, any>, outputs: Record<string, any>}> = [];
const files = readdirSync("./traces").filter(f => f.endsWith(".jsonl"));
for (const file of files) {
const lines = readFileSync(join("./traces", file), "utf-8").trim().split("\n");
const runs = lines.map(line => JSON.parse(line));
const root = runs.find(r => r.parent_run_id == null);
if (root?.inputs && root?.outputs) {
examples.push({ trace_id: root.trace_id, inputs: root.inputs, outputs: root.outputs });
}
}
// 3. Save locally
writeFileSync("/tmp/dataset.json", JSON.stringify(examples, null, 2));
</typescript>
Upload to LangSmith
# Upload local JSON file as a dataset
langsmith dataset upload /tmp/dataset.json --name "My Evaluation Dataset"
Using the SDK Directly
<python> ```python from langsmith import Clientclient = Client()
Create dataset and add examples in one step
dataset = client.create_dataset("My Dataset", description="Evaluation dataset")
client.create_examples( inputs=[{"query": "What is AI?"}, {"query": "Explain RAG"}], outputs=[{"answer": "AI is..."}, {"answer": "RAG is..."}], dataset_name="My Dataset", )
</python>
<typescript>
```typescript
import { Client } from "langsmith";
const client = new Client();
// Create dataset and add examples
const dataset = await client.createDataset("My Dataset", {
description: "Evaluation dataset",
});
await client.createExamples({
inputs: [{ query: "What is AI?" }, { query: "Explain RAG" }],
outputs: [{ answer: "AI is..." }, { answer: "RAG is..." }],
datasetName: "My Dataset",
});
</typescript>
</creating_datasets>
<dataset_structures>
Dataset Structures by Type
Final Response
{"trace_id": "...", "inputs": {"query": "What are the top genres?"}, "outputs": {"response": "The top genres are..."}}
Single Step
{"trace_id": "...", "inputs": {"messages": [...]}, "outputs": {"content": "..."}, "metadata": {"node_name": "model"}}
Trajectory
{"trace_id": "...", "inputs": {"query": "..."}, "outputs": {"expected_trajectory": ["tool_a", "tool_b", "tool_c"]}}
RAG
{"trace_id": "...", "inputs": {"question": "How do I..."}, "outputs": {"answer": "...", "retrieved_chunks": ["..."], "cited_chunks": ["..."]}}
</dataset_structures>
<script_usage>
CLI Usage
# List all datasets
langsmith dataset list
# Get dataset details
langsmith dataset get "My Dataset"
# Create an empty dataset
langsmith dataset create --name "New Dataset" --description "For evaluation"
# Upload a local JSON file
langsmith dataset upload /tmp/dataset.json --name "My Dataset"
# Export a dataset to local file
langsmith dataset export "My Dataset" /tmp/exported.json --limit 100
# Delete a dataset
langsmith dataset delete "My Dataset"
# List examples in a dataset
langsmith example list --dataset "My Dataset" --limit 10
# Add an example
langsmith example create --dataset "My Dataset" \
--inputs '{"query": "test"}' \
--outputs '{"answer": "result"}'
# List experiments
langsmith experiment list --dataset "My Dataset"
langsmith experiment get "eval-v1"
</script_usage>
<example_workflow> Complete workflow from traces to uploaded LangSmith dataset:
# 1. Export traces from LangSmith
langsmith trace export ./traces --project my-project --limit 20 --full
# 2. Process traces into dataset format (using Python/JS code)
# See "Creating Datasets" section above
# 3. Upload to LangSmith
langsmith dataset upload /tmp/final_response.json --name "Skills: Final Response"
langsmith dataset upload /tmp/trajectory.json --name "Skills: Trajectory"
# 4. Verify upload
langsmith dataset list
langsmith dataset get "Skills: Final Response"
langsmith example list --dataset "Skills: Final Response" --limit 3
# 5. Run experiments
langsmith experiment list --dataset "Skills: Final Response"
</example_workflow>
<troubleshooting> **Dataset upload fails:** - Verify LANGSMITH_API_KEY is set - Check JSON file is valid: each element needs `inputs` (and optionally `outputs`) - Dataset name must be unique, or delete existing first with `langsmith dataset delete`Empty dataset after upload:
- Verify JSON file contains an array of objects with
inputskey - Check file isn't empty:
langsmith example list --dataset "Name"
Export has no data:
- Ensure traces were exported with
--fullflag to include inputs/outputs - Verify traces have both
inputsandoutputspopulated
Example count mismatch:
- Use
langsmith dataset get "Name"to check remote count - Compare with local file to verify upload completeness </troubleshooting>
> related_skills --same-repo
> vibe-ppt
Convert this into a web based slide deck using reveal.js. Use the following brand colour and logo. Primary colour: #EE4822 Theme: Light Logo: https://media.licdn.com/dms/image/v2/D560BAQFeaNrDEATcKQ/company-logo_200_200/company-logo_200_200/0/1709465010800/100xengineers_logo?e=2147483647&v=beta&t=qKncqAfB_j9ckDOxOx1eN9EEPocLTbNqliLnAU3sP6c Slide Content: Vibe Coding with Gemini Canvas Slide 1: Vibe Coding with Gemini Canvas Slide 2: What is Vibe Coding? Vibe Coding: Use natural language pro
> upwork-scrape-apply
# Upwork Job Scrape & Apply Pipeline Scrape Upwork jobs matching AI/automation keywords, generate personalized cover letters and proposals, and output to a Google Sheet with one-click apply links. ## Inputs - **Keywords**: List of search terms (default: automation, ai agent, n8n, gpt, workflow, api integration, scraping, ai consultant) - **Limit**: Max jobs to fetch (default: 50) - **Days**: Only jobs from last N days (default: 1 = last 24 hours) - **Filters**: - `--verified-payment`: Only
> ui-ux-pro-max
UI/UX design intelligence. 50 styles, 21 palettes, 50 font pairings, 20 charts, 9 stacks (React, Next.js, Vue, Svelte, SwiftUI, React Native, Flutter, Tailwind, shadcn/ui). Actions: plan, build, create, design, implement, review, fix, improve, optimize, enhance, refactor, check UI/UX code. Projects: website, landing page, dashboard, admin panel, e-commerce, SaaS, portfolio, blog, mobile app, .html, .tsx, .vue, .svelte. Elements: button, modal, navbar, sidebar, card, table, form, chart. Styles: g
> typescript-magician
Designs complex generic types, refactors `any` types to strict alternatives, creates type guards and utility types, and resolves TypeScript compiler errors. Use when the user asks about TypeScript (TS) types, generics, type inference, type guards, removing `any` types, strict typing, type errors, `infer`, `extends`, conditional types, mapped types, template literal types, branded/opaque types, or utility types like `Partial`, `Record`, `ReturnType`, and `Awaited`.