Voyage 4 vs Kanon 2

Detailed comparison between Voyage 4 and Kanon 2. See which embedding best meets your accuracy and performance needs. If you want to compare these models on your data, try Agentset.

Model Comparison

Voyage 4 takes the lead.

Both Voyage 4 and Kanon 2 are powerful embedding models designed to improve retrieval quality in RAG applications. However, their performance characteristics differ in important ways.

Why Voyage 4:

  • Voyage 4 has 140 higher ELO rating
  • Voyage 4 delivers better accuracy (nDCG@10: 0.624 vs 0.484)
  • Kanon 2 is 89ms faster on average
  • Voyage 4 has a 23.6% higher win rate

Overview

Key metrics

ELO Rating

Overall ranking quality

Voyage 4

1589

Kanon 2

1450

Win Rate

Head-to-head performance

Voyage 4

57.0%

Kanon 2

33.5%

Accuracy (nDCG@10)

Ranking quality metric

Voyage 4

0.624

Kanon 2

0.484

Average Latency

Response time

Voyage 4

339ms

Kanon 2

250ms

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Visual Performance Analysis

Performance

ELO Rating Comparison

Win/Loss/Tie Breakdown

Accuracy Across Datasets (nDCG@10)

Latency Distribution (ms)

Breakdown

How the models stack up

MetricVoyage 4Kanon 2Description
Overall Performance
ELO Rating
1589
1450
Overall ranking quality based on pairwise comparisons
Win Rate
57.0%
33.5%
Percentage of comparisons won against other models
Pricing & Availability
Price per 1M tokens
$0.060
$0.350
Cost per million tokens processed
Dimensions
1024
1792
Vector embedding dimensions (lower is more efficient)
Release Date
2026-01-15
2025-10-16
Model release date
Accuracy Metrics
Avg nDCG@10
0.624
0.484
Normalized discounted cumulative gain at position 10
Performance Metrics
Avg Latency
339ms
250ms
Average response time across all datasets

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Agentset gives you a complete RAG API with top-ranked embedding models and smart retrieval built in. Upload your data, call the API, and get accurate results from day one.

import { Agentset } from "agentset";

const agentset = new Agentset();
const ns = agentset.namespace("ns_1234");

const results = await ns.search(
  "What is multi-head attention?"
);

for (const result of results) {
  console.log(result.text);
}

Dataset Performance

By field

Comprehensive comparison of accuracy metrics (nDCG, Recall) and latency percentiles for each benchmark dataset.

PG

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.000
0.000
Ranking quality at top 5 results
nDCG@10
0.000
0.000
Ranking quality at top 10 results
Recall@5
0.000
0.000
% of relevant docs in top 5
Recall@10
0.000
0.000
% of relevant docs in top 10
Latency Metrics
Mean
311ms
250ms
Average response time
P50
309ms
250ms
50th percentile (median)
P90
321ms
250ms
90th percentile

business reports

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.000
0.000
Ranking quality at top 5 results
nDCG@10
0.000
0.000
Ranking quality at top 10 results
Recall@5
0.000
0.000
% of relevant docs in top 5
Recall@10
0.000
0.000
% of relevant docs in top 10
Latency Metrics
Mean
309ms
250ms
Average response time
P50
310ms
250ms
50th percentile (median)
P90
325ms
250ms
90th percentile

DBPedia

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.815
0.806
Ranking quality at top 5 results
nDCG@10
0.811
0.777
Ranking quality at top 10 results
Recall@5
0.062
0.062
% of relevant docs in top 5
Recall@10
0.122
0.120
% of relevant docs in top 10
Latency Metrics
Mean
327ms
250ms
Average response time
P50
312ms
250ms
50th percentile (median)
P90
357ms
250ms
90th percentile

FiQa

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.873
0.839
Ranking quality at top 5 results
nDCG@10
0.859
0.836
Ranking quality at top 10 results
Recall@5
0.763
0.689
% of relevant docs in top 5
Recall@10
0.840
0.763
% of relevant docs in top 10
Latency Metrics
Mean
310ms
250ms
Average response time
P50
311ms
250ms
50th percentile (median)
P90
324ms
250ms
90th percentile

SciFact

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.737
0.718
Ranking quality at top 5 results
nDCG@10
0.758
0.744
Ranking quality at top 10 results
Recall@5
0.804
0.772
% of relevant docs in top 5
Recall@10
0.878
0.861
% of relevant docs in top 10
Latency Metrics
Mean
321ms
250ms
Average response time
P50
311ms
250ms
50th percentile (median)
P90
331ms
250ms
90th percentile

MSMARCO

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.941
0.941
Ranking quality at top 5 results
nDCG@10
0.931
0.931
Ranking quality at top 10 results
Recall@5
0.123
0.117
% of relevant docs in top 5
Recall@10
0.221
0.223
% of relevant docs in top 10
Latency Metrics
Mean
317ms
250ms
Average response time
P50
307ms
250ms
50th percentile (median)
P90
323ms
250ms
90th percentile

ARCD

MetricVoyage 4Kanon 2Description
Accuracy Metrics
nDCG@5
0.916
0.009
Ranking quality at top 5 results
nDCG@10
0.916
0.009
Ranking quality at top 10 results
Recall@5
0.980
0.020
% of relevant docs in top 5
Recall@10
0.980
0.020
% of relevant docs in top 10
Latency Metrics
Mean
477ms
250ms
Average response time
P50
310ms
250ms
50th percentile (median)
P90
331ms
250ms
90th percentile

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