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Llama 4 Scout benchmarks & scores

Meta Llama Proprietary Released Apr 2025 Official website
6.1
Vibe Coding Index · #96 of 100

Independent Llama 4 Scout AI coding benchmark results Intelligence 10, Coding 8, Agentic 1, with a Vibe Coding Index of 6.1. Compare its overall rank, token price, context window, and practical agentic workflow strengths below.

Quality #96/100
6.1
VCI
Price #17/105
$0.15
$/M blended

Evidence confidence

Medium confidence

100% core coverage

Complete core scores supported by one current verified source.

3/3
Core scores
1
Evidence sources
Jul 16
Last measured

Catalog capabilities

What the model supports

10M context
Frequency penalty Logit bias Max tokens Min p Presence penalty Repetition penalty Response format Seed Stop Structured outputs
Input
Text, Image
Output
Text
Knowledge cutoff
2024-08-31
Cache read price
— per million tokens

Suite radar

Intelligence Coding Agentic

Suite scores

Intelligence
General reasoning & knowledge (Intelligence Index)
10.0
Coding
Code generation & software tasks (Coding Index)
8.2
Agentic
Multi-step tool use & agentic workflows (Agentic Index)
1.1

Source record

Source. Artificial Analysis (artificialanalysis.ai) via OpenRouter (openrouter.ai/rankings).

TheVibeFather rankings

Llama 4 Scout practical agentic coding scorecard

This is our algorithmic assessment of where Llama 4 Scout ranks for common vibe coding and agentic engineering workflows. Every stable 0–10 score is calculated consistently from the sourced Intelligence, Coding, and Agentic signals above—never from an unsourced opinion score.

Overall VibeFather rating
0.6 /10
#96 of 100 models
Practical area

Small, well-defined code changes

Precision on scoped edits, fixes, and implementation tasks.

Developing 0.9/10
Field rank #96 / 100

UI and CSS iteration

Front-end implementation with iterative tool-driven refinement.

Developing 0.7/10
Field rank #97 / 101

Routine debugging

Diagnosing failures and turning reasoning into correct code changes.

Developing 0.9/10
Field rank #94 / 100

Repository-wide refactors

Coordinating larger edits across files while preserving intent.

Developing 0.7/10
Field rank #95 / 100

Architecture decisions

Reasoning through tradeoffs, constraints, and system-level choices.

Developing 0.7/10
Field rank #91 / 100

Tool use and workflow execution

Planning and completing multi-step work with tools and feedback loops.

Developing 0.3/10
Field rank #96 / 101

Long autonomous coding tasks

Sustaining coherent progress across longer agentic engineering runs.

Developing 0.3/10
Field rank #91 / 100

Overall VibeFather rating

Our complete Vibe Coding Index, expressed on the same 0–10 practical scale.

Developing 0.6/10
Field rank #96 / 100
1 · Sourced signals

We start with Intelligence, Coding, Agentic benchmark evidence, and preserve missing values as unverified.

2 · Practical lenses

Our code-controlled algorithm blends the native 0–100 signals by workflow and expresses the result on a stable 0–10 scale. Every required input must be present.

3 · Field ranking

Each workflow score is ranked against every model with comparable evidence, so positions update when the benchmark field changes.

The Vibe Coding Index is TheVibeFather’s code-controlled 0–100 composite for practical coding and agentic capability. Price and adoption are reported independently and never alter quality. Exact weighting remains proprietary, inputs, missing-data behavior, and per-category ranks are disclosed here. Read the benchmark methodology →

Recorded score history

How Llama 4 Scout has moved

All benchmark history →
9.0 6.5 4.0
Jul 16, 2026 6 PM CT
6.1 rank 96

Baseline snapshot recorded.

Focused category evidence

Current Design Arena results

Review the source →
dataviz
933
#121
39.3% win rate
uicomponent
814
#125
25.5% win rate
gamedev
831
#128
27.4% win rate
codecategories
829
#131
26.6% win rate
website
783
#140
22.7% win rate

Where Llama 4 Scout sits

Its logo stays full-color and highlighted while the rest of the field recedes for quick comparison.

Efficient frontier Alibaba Amazon Anthropic Cohere DeepSeek Google Inclusionai Kwaipilot Meta Meta Llama MiniMax Mistral Moonshot NVIDIA Nex Agi OpenAI Stepfun Tencent Upstage Xiaomi Zhipu xAI Hover, tap or focus a model for axis guides · resting dashed lines = medians 27 model(s) hidden — data not yet verified

Model benchmark FAQ

Llama 4 Scout for vibe coding and agentic engineering

Answers update from this model’s current sourced scores, practical rankings, and verified pricing.

What is Llama 4 Scout's Vibe Coding Index?

Llama 4 Scout has a Vibe Coding Index of 6.1/100 and is #96 of 100 in the current field. The index is TheVibeFather's stable composite for practical AI coding, combining independently sourced Intelligence, Coding, and Agentic benchmark signals. Price and adoption are compared separately and never inflate the quality score.

How does Llama 4 Scout rank for vibe coding?

For vibe coding, Llama 4 Scout's strongest practical area is Small, well-defined code changes at 0.9/10, ranking #96 of 100 models in TheVibeFather rankings.

Is Llama 4 Scout good for agentic coding and autonomous tasks?

Llama 4 Scout scores 0.3/10 for tool use and workflow execution and 0.3/10 for long autonomous coding tasks. Those categories emphasize the Agentic benchmark signal used for multi-step planning, tool calls, edits, tests, and feedback loops.

What coding benchmark scores does Llama 4 Scout have?

The current sourced benchmark profile for Llama 4 Scout is Intelligence 10/100, Coding 8/100, Agentic 1/100. TheVibeFather converts those 0–100 signals into consistent practical 0–10 workflow scores so models can be compared for real agentic engineering work.

How much does Llama 4 Scout cost for agentic engineering?

The current benchmark uses a 3 to 1 input-to-output blend of $0.15 per million blended tokens. That places it #17 of 105 by price, where a lower rank number means less expensive.

Are vibe coding, agentic coding, and agentic engineering the same?

They describe overlapping AI-assisted software workflows. Vibe coding emphasizes directing software through intent and iteration, agentic coding emphasizes a model planning and executing multi-step work with tools, agentic engineering is the broader discipline of designing, supervising, and validating those workflows. TheVibeFather benchmarks the shared capabilities behind all three terms on every model page, including Llama 4 Scout.