Grok 4 Fast vs GLM 4.6

Detailed comparison between Grok 4 Fast and GLM 4.6 for RAG applications. See which LLM best meets your accuracy, performance, and cost needs.

Model Comparison

Grok 4 Fast takes the lead.

Both Grok 4 Fast and GLM 4.6 are powerful language models designed for RAG applications. However, their performance characteristics differ in important ways.

Why Grok 4 Fast:

  • Grok 4 Fast has 168 higher ELO rating
  • Grok 4 Fast delivers better overall quality (4.96 vs 4.81)
  • Grok 4 Fast is 27.3s faster on average
  • Grok 4 Fast has a 17.4% higher win rate

Overview

Key metrics

ELO Rating

Overall ranking quality

Grok 4 Fast

1657

GLM 4.6

1489

Win Rate

Head-to-head performance

Grok 4 Fast

60.1%

GLM 4.6

42.7%

Quality Score

Overall quality metric

Grok 4 Fast

4.96

GLM 4.6

4.81

Average Latency

Response time

Grok 4 Fast

5851ms

GLM 4.6

33116ms

Visual Performance Analysis

Performance

ELO Rating Comparison

Win/Loss/Tie Breakdown

Quality Across Datasets (Overall Score)

Latency Distribution (ms)

Breakdown

How the models stack up

MetricGrok 4 FastGLM 4.6Description
Overall Performance
ELO Rating
1657
1489
Overall ranking quality based on pairwise comparisons
Win Rate
60.1%
42.7%
Percentage of comparisons won against other models
Quality Score
4.96
4.81
Average quality across all RAG metrics
Pricing & Context
Input Price per 1M
$0.20
$0.40
Cost per million input tokens
Output Price per 1M
$0.50
$1.75
Cost per million output tokens
Context Window
2000K
203K
Maximum context window size
Release Date
2025-09-19
2025-09-30
Model release date
Performance Metrics
Avg Latency
5.9s
33.1s
Average response time across all datasets

Dataset Performance

By benchmark

Comprehensive comparison of RAG quality metrics (correctness, faithfulness, grounding, relevance, completeness) and latency for each benchmark dataset.

MSMARCO

MetricGrok 4 FastGLM 4.6Description
Quality Metrics
Correctness
4.90
4.80
Factual accuracy of responses
Faithfulness
4.90
4.77
Adherence to source material
Grounding
4.90
4.77
Citations and context usage
Relevance
5.00
4.83
Query alignment and focus
Completeness
4.83
4.70
Coverage of all aspects
Overall
4.91
4.77
Average across all metrics
Latency Metrics
Mean
3894ms
34694ms
Average response time
Min1742ms9198msFastest response time
Max6649ms69527msSlowest response time

PG

MetricGrok 4 FastGLM 4.6Description
Quality Metrics
Correctness
5.00
4.87
Factual accuracy of responses
Faithfulness
5.00
4.87
Adherence to source material
Grounding
5.00
4.83
Citations and context usage
Relevance
5.00
4.90
Query alignment and focus
Completeness
4.93
4.57
Coverage of all aspects
Overall
4.99
4.81
Average across all metrics
Latency Metrics
Mean
9142ms
36774ms
Average response time
Min4767ms9584msFastest response time
Max17055ms104257msSlowest response time

SciFact

MetricGrok 4 FastGLM 4.6Description
Quality Metrics
Correctness
5.00
4.63
Factual accuracy of responses
Faithfulness
5.00
4.87
Adherence to source material
Grounding
5.00
4.87
Citations and context usage
Relevance
5.00
4.90
Query alignment and focus
Completeness
4.83
4.57
Coverage of all aspects
Overall
4.97
4.77
Average across all metrics
Latency Metrics
Mean
4516ms
27880ms
Average response time
Min2358ms3248msFastest response time
Max14942ms68513msSlowest response time

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