Skip to main content
ClaudeWave
Skill67 repo starsupdated 17d ago

pinecone:quickstart

Interactive Pinecone quickstart for new developers. Choose between two paths - Database (create an integrated index, upsert data, and query using Pinecone MCP + Python) or Assistant (create a Pinecone Assistant for document Q&A). Use when a user wants to get started with Pinecone for the first time or wants a guided tour of Pinecone's tools.

Install in Claude Code
Copy
git clone --depth 1 https://github.com/pinecone-io/pinecone-claude-code-plugin /tmp/pinecone-quickstart && cp -r /tmp/pinecone-quickstart/skills/quickstart ~/.claude/skills/pinecone-quickstart
Then start a new Claude Code session; the skill loads automatically.

SKILL.md

# Pinecone Quickstart

Welcome! This skill walks you through your first Pinecone experience using the tools available to you. In this quickstart,
you will learn how to do a simple form of semantic search over some example data.

## Prerequisites

Before starting either path, verify the API key works by calling `list-indexes` via the Pinecone MCP. If it succeeds, proceed. If it fails, ask the user to set their key:

```bash
export PINECONE_API_KEY="your-key"
```

Then retry `list-indexes` to confirm.

## Step 0: Choose Your Path

Use AskUserQuestion to let the user choose their path:

- **Database** – Build a vector search index. Best for developers who want to store and search embeddings. Uses the Pinecone MCP + a Python upsert script.
- **Assistant** – Build a document Q&A assistant. Best for users who want to upload files and ask questions with cited answers. No code required.

---

## Path A: Database Quickstart

For each step, explain to the user what will happen. An overview is here:

1. Check if MCP is set
2. Create an integrated index with MCP
3. Upsert sample data using the bundled script (9 sentences across productivity, health, and nature themes)
4. Run a semantic search query and explore further queries
5. Optionally try reranking
6. Offer the complete standalone script

### Step 1 – Verify MCP is Available

The prerequisite check already called `list-indexes`. If it succeeded, the MCP is working — proceed to Step 2.

If it failed because MCP tools were unavailable (not an auth error):
- Tell the user the MCP server needs to be configured
- Point them to: https://docs.pinecone.io/reference/tools/mcp

### Step 2 – Create an Integrated Index

Use the MCP `create-index-for-model` tool to create a serverless index with integrated embeddings:

```
name: quickstart-skills
cloud: aws
region: us-east-1
embed:
  model: llama-text-embed-v2
  fieldMap:
    text: chunk_text
```

**Explain to the user what's happening:**
- An *integrated index* uses a built-in Pinecone embedding model (`llama-text-embed-v2`)
- This means you send plain text and Pinecone handles the embedding automatically
- The `field_map` tells Pinecone which field in your records contains the text to embed

Wait for the index to become ready before proceeding. Waiting a few seconds is sufficient.

### Step 3 – Upsert Sample Data

Run the bundled upsert script to seed the index with sample records:

```bash
uv run scripts/upsert.py --index quickstart-skills
```

**Explain to the user what's happening:**
- The script uploads 9 sample records across three themes: **productivity** (getting work done), **health** (feeling unwell), and **nature** (outdoors/wildlife)
- The dataset is intentionally varied so semantic search can show its value — the queries below use completely different words than the records, but the right ones still surface
- Each record has an `_id`, a `chunk_text` field (the text that gets embedded), and a `category` field
- This is the same structure you'd use for your own data — just replace the records

### Step 4 – Query with the MCP

Use the MCP `search-records` tool to run the first semantic search:

```
index: quickstart-skills
namespace: example-namespace
query:
  topK: 3
  inputs:
    text: "getting things done efficiently"
```

Display the results in a clean table: ID, score, and `chunk_text`.

**Explain to the user what's happening:**
- Notice the query shares no keywords with the records — but it surfaces the productivity sentences
- That's semantic search: it finds meaning, not just matching words
- You sent plain text — Pinecone embedded the query using the same model as the index

**Offer to explore further:** Use AskUserQuestion to ask if they'd like to try another query:
- Option A: `"feeling under the weather"` — should surface the health records
- Option B: `"wildlife spotting outside"` — should surface the nature records
- Option C: No thanks, move on

Run whichever query they choose and display the results the same way. If they want to try both, do both. After each result, point out which theme surfaced and why.

If they decline or are done exploring, proceed to Step 5 or offer to skip ahead to the complete script.

### Step 5 – Try Reranking (Optional)

Use AskUserQuestion to ask if the user wants to try reranking.

If yes, use `search-records` again with reranking enabled:

```
rerank:
  model: bge-reranker-v2-m3
  rankFields: [chunk_text]
  topN: 3
```

**Explain**: Reranking runs a second-pass model over the results to improve relevance ordering.

### Step 6 – Wrap Up

Congratulate the user on completing the quickstart. Use AskUserQuestion to ask if they'd like a standalone Python script that does everything in one go — create index, upsert, query, and rerank.

If yes, copy it to their working directory:

```bash
cp scripts/quickstart_complete.py ./pinecone_quickstart.py
```

Tell the user:
- The script is at `./pinecone_quickstart.py`
- Run it with: `uv run pinecone_quickstart.py`
- It uses `uv` inline dependencies — no separate install needed
- They can swap in their own `records` list to build something real

---

## Path B: Assistant Quickstart

Guide the user through the Pinecone Assistant workflow using the existing assistant skills:

### Step 1 – Check for Documents

Before anything else, use AskUserQuestion to ask if the user has files to upload. Pinecone Assistant accepts `.pdf`, `.md`, `.txt`, and `.docx` files — a single file or a folder of files both work.

**If they have files:** ask for the path and proceed to Step 2.

**If they don't have files:** use AskUserQuestion to offer two options:
- **Generate sample docs** — create a few short markdown files in `./sample-docs/` so they can complete the quickstart right now. Ask what topics they'd like (or default to: a product FAQ, a short how-to guide, and a brief company overview). Write 3 files, each 150–250 words.
- **Come back later** — let them know they can return once they have documents and pick up from Step 2.

###
join-discordSlash Command

Opens a link to join the Pinecone Discord, allowing users to learn from each other, contact the Pinecone team, and get help in our dedicated help channel.

pinecone:assistantSkill

Create, manage, and chat with Pinecone Assistants for document Q&A with citations. Handles all assistant operations - create, upload, sync, chat, context retrieval, and list. Recognizes natural language like "create an assistant from my docs", "ask my assistant about X", or "upload my docs to Pinecone".

pinecone:cliSkill

Guide for using the Pinecone CLI (pc) to manage Pinecone resources from the terminal. The CLI supports ALL index types (standard, integrated, sparse) and all vector operations — unlike the MCP which only supports integrated indexes. Use for batch operations, vector management, backups, namespaces, CI/CD automation, and full control over Pinecone resources.

pinecone:docsSkill

Curated documentation reference for developers building with Pinecone. Contains links to official docs organized by topic and data format references. Use when writing Pinecone code, looking up API parameters, or needing the correct format for vectors or records.

pinecone:full-text-searchSkill

Create, ingest into, and query a Pinecone full-text-search (FTS) index using the preview API (2026-01.alpha, public preview). Use when the user or agent asks to build a text search index on Pinecone, add dense or sparse vector fields, ingest documents, construct score_by clauses (text / query_string / dense_vector / sparse_vector), or compose with text-match filters ($match_phrase / $match_all / $match_any). Ships `scripts/ingest.py` for safe bulk ingestion (batch_upsert + error inspection + readiness polling); query construction is documented inline in this skill — write `documents.search(...)` calls directly, validated against `pc.preview.indexes.describe(...)` output.

pinecone:helpSkill

Overview of all available Pinecone skills and what a user needs to get started. Invoke when a user asks what skills are available, how to get started with Pinecone, or what they need to set up before using any Pinecone skill.

pinecone:mcpSkill

Reference for the Pinecone MCP server tools. Documents all available tools - list-indexes, describe-index, describe-index-stats, create-index-for-model, upsert-records, search-records, cascading-search, and rerank-documents. Use when an agent needs to understand what Pinecone MCP tools are available, how to use them, or what parameters they accept.

pinecone:n8nSkill

Build n8n workflows using the Pinecone Assistant node or Pinecone Vector Store node. Use when building RAG pipelines, chat-with-docs workflows, configuring Pinecone nodes in n8n, troubleshooting Pinecone n8n nodes, or asking about best practices for Pinecone in n8n.