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Text-Embedding-3-Small API-veiledning - Guide til OpenAI Embedding-modell

Text-Embedding-3-Small API-veiledning - Guide til OpenAI Embedding-modell

C
Crazyrouter Team
January 26, 2026
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Bygger du en semantisk søkemotor eller et RAG-system (Retrieval-Augmented Generation)? Text-embedding-3-small er OpenAIs nyeste embedding-modell som konverterer tekst til numeriske vektorer, og muliggjør kraftige likhetssøk og innhenting av relevant innhold.

I denne veiledningen lærer du:

  • Hva tekst-embeddings er og hvorfor de er viktige
  • Hvordan bruke text-embedding-3-small API
  • Komplette kodeeksempler i Python og Node.js
  • Egendefinerte dimensjoner for optimalisert lagring
  • Pris­sammenligning og kostnadsoptimalisering

What is Text-Embedding-3-Small?#

Text-embedding-3-small er OpenAIs kompakte embedding-modell lansert i januar 2024. Den konverterer tekst til 1536-dimensjonale vektorer som fanger semantisk mening, og muliggjør:

  • Semantisk søk: Finn relevante dokumenter basert på betydning, ikke bare nøkkelord
  • RAG-systemer: Hent kontekst for LLM-svar
  • Similarity Matching: Sammenlign tekstlikhet for anbefalinger
  • Clustering: Grupper lignende dokumenter
  • Klassifisering: Kategoriser tekst basert på innhold

Model Specifications#

SpecificationValue
Model Nametext-embedding-3-small
Default Dimensions1536
Custom Dimensions256, 512, 1024, 1536
Max Input Tokens8,191
OutputNormalized vector

Quick Start#

Prerequisites#

  1. Registrer deg på Crazyrouter
  2. Hent API-nøkkelen din fra dashbordet
  3. Python 3.8+ eller Node.js 16+

Python Example#

python
from openai import OpenAI

client = OpenAI(
    api_key="your-crazyrouter-api-key",
    base_url="https://crazyrouter.com/v1"
)

# Generate embedding for a single text
response = client.embeddings.create(
    model="text-embedding-3-small",
    input="Machine learning is transforming industries worldwide."
)

embedding = response.data[0].embedding
print(f"Dimensions: {len(embedding)}")  # Output: 1536
print(f"First 5 values: {embedding[:5]}")

Node.js Example#

javascript
import OpenAI from 'openai';

const client = new OpenAI({
    apiKey: 'your-crazyrouter-api-key',
    baseURL: 'https://crazyrouter.com/v1'
});

async function getEmbedding(text) {
    const response = await client.embeddings.create({
        model: 'text-embedding-3-small',
        input: text
    });

    return response.data[0].embedding;
}

// Usage
const embedding = await getEmbedding('Machine learning is amazing');
console.log(`Dimensions: ${embedding.length}`);  // Output: 1536

cURL Example#

bash
curl -X POST https://crazyrouter.com/v1/embeddings \
  -H "Authorization: Bearer your-api-key" \
  -H "Content-Type: application/json" \
  -d '{
    "model": "text-embedding-3-small",
    "input": "Hello world"
  }'

Response:

json
{
  "object": "list",
  "model": "text-embedding-3-small",
  "usage": {
    "prompt_tokens": 2,
    "total_tokens": 2
  },
  "data": [
    {
      "object": "embedding",
      "index": 0,
      "embedding": [-0.0020785425, -0.049085874, 0.02094679, ...]
    }
  ]
}

Batch Embedding#

Prosesser flere tekster i én enkelt API-kall for bedre effektivitet:

python
from openai import OpenAI

client = OpenAI(
    api_key="your-crazyrouter-api-key",
    base_url="https://crazyrouter.com/v1"
)

# Batch embedding - multiple texts at once
texts = [
    "Python is a programming language",
    "JavaScript runs in browsers",
    "Machine learning uses neural networks"
]

response = client.embeddings.create(
    model="text-embedding-3-small",
    input=texts
)

# Access each embedding
for i, data in enumerate(response.data):
    print(f"Text {i}: {len(data.embedding)} dimensions")

# Output:
# Text 0: 1536 dimensions
# Text 1: 1536 dimensions
# Text 2: 1536 dimensions

Custom Dimensions#

Reduser lagringskostnader ved å bruke færre dimensjoner. Modellen støtter dimensjonsreduksjon samtidig som kvaliteten opprettholdes:

python
# Use 512 dimensions instead of 1536
response = client.embeddings.create(
    model="text-embedding-3-small",
    input="Your text here",
    dimensions=512  # Options: 256, 512, 1024, 1536
)

embedding = response.data[0].embedding
print(f"Dimensions: {len(embedding)}")  # Output: 512

Dimension Comparison#

DimensionsStorage (per vector)Use Case
2561 KBMobilapper, begrenset lagring
5122 KBBalansert ytelse
10244 KBBehov for høy nøyaktighet
15366 KBMaksimal nøyaktighet

Building a Semantic Search System#

Her er et komplett eksempel på hvordan du bygger et semantisk søkesystem:

python
import numpy as np
from openai import OpenAI

client = OpenAI(
    api_key="your-crazyrouter-api-key",
    base_url="https://crazyrouter.com/v1"
)

def get_embedding(text):
    """Get embedding for a single text"""
    response = client.embeddings.create(
        model="text-embedding-3-small",
        input=text
    )
    return response.data[0].embedding

def cosine_similarity(a, b):
    """Calculate cosine similarity between two vectors"""
    return np.dot(a, b) / (np.linalg.norm(a) * np.linalg.norm(b))

# Document database
documents = [
    "Python is great for data science and machine learning",
    "JavaScript is essential for web development",
    "Docker containers simplify deployment",
    "Kubernetes orchestrates container workloads",
    "PostgreSQL is a powerful relational database"
]

# Pre-compute embeddings for all documents
doc_embeddings = [get_embedding(doc) for doc in documents]

# Search function
def search(query, top_k=3):
    query_embedding = get_embedding(query)

    # Calculate similarities
    similarities = [
        cosine_similarity(query_embedding, doc_emb)
        for doc_emb in doc_embeddings
    ]

    # Get top results
    results = sorted(
        zip(documents, similarities),
        key=lambda x: x[1],
        reverse=True
    )[:top_k]

    return results

# Example search
results = search("How to deploy applications?")
for doc, score in results:
    print(f"Score: {score:.4f} - {doc}")

# Output:
# Score: 0.8234 - Docker containers simplify deployment
# Score: 0.7891 - Kubernetes orchestrates container workloads
# Score: 0.6543 - PostgreSQL is a powerful relational database

Integration with Vector Databases#

Pinecone Integration#

python
import pinecone
from openai import OpenAI

# Initialize clients
client = OpenAI(
    api_key="your-crazyrouter-api-key",
    base_url="https://crazyrouter.com/v1"
)

pinecone.init(api_key="your-pinecone-key")
index = pinecone.Index("your-index")

def embed_and_upsert(texts, ids):
    """Embed texts and store in Pinecone"""
    response = client.embeddings.create(
        model="text-embedding-3-small",
        input=texts
    )

    vectors = [
        (id, data.embedding)
        for id, data in zip(ids, response.data)
    ]

    index.upsert(vectors=vectors)

def search_pinecone(query, top_k=5):
    """Search Pinecone with query embedding"""
    response = client.embeddings.create(
        model="text-embedding-3-small",
        input=query
    )

    results = index.query(
        vector=response.data[0].embedding,
        top_k=top_k
    )

    return results

ChromaDB Integration#

python
import chromadb
from openai import OpenAI

client = OpenAI(
    api_key="your-crazyrouter-api-key",
    base_url="https://crazyrouter.com/v1"
)

# Initialize ChromaDB
chroma_client = chromadb.Client()
collection = chroma_client.create_collection("documents")

def get_embeddings(texts):
    """Get embeddings for multiple texts"""
    response = client.embeddings.create(
        model="text-embedding-3-small",
        input=texts
    )
    return [data.embedding for data in response.data]

# Add documents
documents = ["doc1 content", "doc2 content", "doc3 content"]
embeddings = get_embeddings(documents)

collection.add(
    embeddings=embeddings,
    documents=documents,
    ids=["doc1", "doc2", "doc3"]
)

# Query
query_embedding = get_embeddings(["search query"])[0]
results = collection.query(
    query_embeddings=[query_embedding],
    n_results=3
)

Available Embedding Models#

Crazyrouter gir tilgang til flere OpenAI embedding-modeller:

ModelDimensionsPrice RatioBest For
text-embedding-3-small15360.01Generell bruk, beste verdi
text-embedding-3-large30720.065Behov for høy presisjon
text-embedding-ada-00215360.05Legacy-kompatibilitet

Pricing Comparison#

ProviderModelPrice per 1M tokens
OpenAI Officialtext-embedding-3-small$0.020
Crazyroutertext-embedding-3-small$0.002
OpenAI Officialtext-embedding-3-large$0.130
Crazyroutertext-embedding-3-large$0.013

Pricing Disclaimer: Prisene som vises er til demonstrasjonsformål og kan endres. Faktisk fakturering baseres på sanntidspriser på tidspunktet for forespørselen.

Cost Savings Example:

For et RAG-system som prosesserer 10M tokens/måned:

  • OpenAI Official: $200/måned
  • Crazyrouter: $20/måned
  • Besparelse: 90%

Best Practices#

1. Batch Your Requests#

python
# Good - single API call for multiple texts
response = client.embeddings.create(
    model="text-embedding-3-small",
    input=["text1", "text2", "text3"]  # Up to 2048 texts
)

# Bad - multiple API calls
for text in texts:
    response = client.embeddings.create(
        model="text-embedding-3-small",
        input=text
    )

2. Cache Embeddings#

python
import hashlib
import json

embedding_cache = {}

def get_embedding_cached(text):
    # Create cache key
    cache_key = hashlib.md5(text.encode()).hexdigest()

    if cache_key in embedding_cache:
        return embedding_cache[cache_key]

    response = client.embeddings.create(
        model="text-embedding-3-small",
        input=text
    )

    embedding = response.data[0].embedding
    embedding_cache[cache_key] = embedding

    return embedding

3. Use Appropriate Dimensions#

  • 256 dimensions: Mobilapper, IoT-enheter
  • 512 dimensions: Nettapplikasjoner med lagringsbegrensninger
  • 1024 dimensions: Standardapplikasjoner
  • 1536 dimensions: Maksimale krav til nøyaktighet

Frequently Asked Questions#

What's the difference between text-embedding-3-small and text-embedding-3-large?#

Text-embedding-3-small produserer 1536-dimensjonale vektorer og er optimalisert for kostnadseffektivitet. Text-embedding-3-large produserer 3072-dimensjonale vektorer med høyere nøyaktighet, men til 6,5 ganger kostnaden. For de fleste bruksområder gir text-embedding-3-small utmerkede resultater.

Can I reduce dimensions after generating embeddings?#

Ja, du kan bruke dimensions-parameteren for å generere mindre vektorer direkte. Dette er mer effektivt enn å generere fulle vektorer og deretter kutte dem ned.

How many texts can I embed in one request?#

Du kan embedde opptil 2048 tekster i én enkelt API-forespørsel. For store datasett bør du batch-e forespørslene dine i grupper på 2048.

Are the embeddings normalized?#

Ja, text-embedding-3-small returnerer normaliserte vektorer (enhetslengde), slik at du kan bruke prikkprodukt (dot product) i stedet for cosinuslikhet for raskere beregning.

Getting Started#

  1. Registrer degCrazyrouter
  2. Hent API-nøkkelen din fra dashbordet
  3. Installer SDK-en: pip install openai eller npm install openai
  4. Start med embeddings ved å bruke kodeeksemplene over

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