zembed-1 vs Kanon 2

Detailed comparison between zembed-1 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

zembed-1 takes the lead.

Both zembed-1 and Kanon 2 are powerful embedding models designed to improve retrieval quality in RAG applications. However, their performance characteristics differ in important ways.

Why zembed-1:

  • zembed-1 has 145 higher ELO rating
  • zembed-1 delivers better accuracy (nDCG@10: 0.619 vs 0.484)
  • zembed-1 has a 25.7% higher win rate

Overview

Key metrics

ELO Rating

Overall ranking quality

zembed-1

1595

Kanon 2

1450

Win Rate

Head-to-head performance

zembed-1

59.2%

Kanon 2

33.5%

Accuracy (nDCG@10)

Ranking quality metric

zembed-1

0.619

Kanon 2

0.484

Average Latency

Response time

zembed-1

250ms

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

Metriczembed-1Kanon 2Description
Overall Performance
ELO Rating
1595
1450
Overall ranking quality based on pairwise comparisons
Win Rate
59.2%
33.5%
Percentage of comparisons won against other models
Pricing & Availability
Price per 1M tokens
$0.050
$0.350
Cost per million tokens processed
Dimensions
2048
1792
Vector embedding dimensions (lower is more efficient)
Release Date
2026-03-02
2025-10-16
Model release date
Accuracy Metrics
Avg nDCG@10
0.619
0.484
Normalized discounted cumulative gain at position 10
Performance Metrics
Avg Latency
250ms
250ms
Average response time across all datasets

Build RAG in Minutes, Not Months

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

Metriczembed-1Kanon 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
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

business reports

Metriczembed-1Kanon 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
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

DBPedia

Metriczembed-1Kanon 2Description
Accuracy Metrics
nDCG@5
0.832
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
0.121
0.120
% of relevant docs in top 10
Latency Metrics
Mean
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

FiQa

Metriczembed-1Kanon 2Description
Accuracy Metrics
nDCG@5
0.862
0.839
Ranking quality at top 5 results
nDCG@10
0.855
0.836
Ranking quality at top 10 results
Recall@5
0.668
0.689
% of relevant docs in top 5
Recall@10
0.712
0.763
% of relevant docs in top 10
Latency Metrics
Mean
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

SciFact

Metriczembed-1Kanon 2Description
Accuracy Metrics
nDCG@5
0.767
0.718
Ranking quality at top 5 results
nDCG@10
0.777
0.744
Ranking quality at top 10 results
Recall@5
0.888
0.772
% of relevant docs in top 5
Recall@10
0.929
0.861
% of relevant docs in top 10
Latency Metrics
Mean
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

MSMARCO

Metriczembed-1Kanon 2Description
Accuracy Metrics
nDCG@5
0.955
0.941
Ranking quality at top 5 results
nDCG@10
0.946
0.931
Ranking quality at top 10 results
Recall@5
0.123
0.117
% of relevant docs in top 5
Recall@10
0.223
0.223
% of relevant docs in top 10
Latency Metrics
Mean
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

ARCD

Metriczembed-1Kanon 2Description
Accuracy Metrics
nDCG@5
0.851
0.009
Ranking quality at top 5 results
nDCG@10
0.858
0.009
Ranking quality at top 10 results
Recall@5
0.920
0.020
% of relevant docs in top 5
Recall@10
0.940
0.020
% of relevant docs in top 10
Latency Metrics
Mean
250ms
250ms
Average response time
P50
250ms
250ms
50th percentile (median)
P90
250ms
250ms
90th percentile

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