model stringlengths 2 17 | provider stringclasses 7
values | parameters_billions stringclasses 6
values | context_window stringclasses 5
values | training_cutoff stringclasses 7
values | input_cost_per_1m_usd float64 0.06 5 | output_cost_per_1m_usd float64 0.18 25 | pricing_note stringlengths 49 89 | open_source bool 2
classes | multimodal bool 2
classes | function_calling bool 2
classes | json_mode bool 2
classes | streaming bool 1
class | fine_tuning bool 2
classes | enterprise_ready bool 2
classes | mmlu_score float64 71.2 90.8 | humaneval_score float64 68 95.2 | math_score float64 53 97.3 | mt_bench_score float64 8.1 9.3 ⌀ | latency_ttft_ms stringlengths 6 11 | throughput_tps stringlengths 5 7 | best_for stringlengths 76 91 |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
GPT-4.1 | OpenAI | Undisclosed | 1M | Jun 2024 | 2 | 8 | Pay-as-you-go API; prompt caching at $0.50/1M input | false | true | true | true | true | true | true | 86.5 | 90.2 | 80.4 | 9.2 | ~400ms | 80-190 | General-purpose enterprise AI, long-context tasks, tool use, code generation |
GPT-4.1 mini | OpenAI | Undisclosed | 1M | Jun 2024 | 0.4 | 1.6 | Pay-as-you-go API; prompt caching at $0.10/1M input | false | true | true | true | true | true | true | 83.5 | 87.5 | 72 | 8.8 | ~200ms | 120-180 | High-volume chatbots, classification, summarization, cost-sensitive production workloads |
o4-mini | OpenAI | Undisclosed | 200K | Jun 2024 | 1.1 | 4.4 | Reasoning model with extended thinking; cached input at $0.275/1M | false | true | true | true | true | false | true | 83.2 | 93.4 | 96.7 | null | ~2-10s | 30-60 | Complex reasoning, math, coding, visual tasks, cost-efficient reasoning workloads |
o3 | OpenAI | Undisclosed | 200K | Jun 2024 | 2 | 8 | Most powerful reasoning model; 80% price reduction since launch; cached input at $0.50/1M | false | true | true | true | true | false | true | 87.5 | 95.2 | 96.7 | null | ~3-15s | 20-50 | Hardest reasoning tasks, agentic workflows, science, mission-critical accuracy |
Claude Sonnet 4.5 | Anthropic | Undisclosed | 200K | Apr 2025 | 3 | 15 | Pay-as-you-go API; prompt caching available; 66% cheaper than previous gen | false | true | true | true | true | false | true | 89 | 93 | 78.5 | 9.2 | ~400ms | 70-90 | Complex reasoning, long-document analysis, code review, nuanced conversation |
Claude Haiku 4.5 | Anthropic | Undisclosed | 200K | Apr 2025 | 1 | 5 | Pay-as-you-go API; prompt caching available; extended thinking supported | false | true | true | true | true | false | true | 80 | 89.5 | 72 | 8.6 | ~200ms | 120-150 | Fast customer support, multi-agent systems, real-time classification, high-throughput tasks |
Claude Opus 4.5 | Anthropic | Undisclosed | 200K | Apr 2025 | 5 | 25 | Pay-as-you-go API; highest-capability Anthropic model | false | true | true | true | true | false | true | 89.5 | 91 | 76 | 9.3 | ~600ms | 40-60 | Mission-critical accuracy, nuanced analysis, complex writing, regulated industries |
Gemini 2.5 Pro | Google | Undisclosed | 1M | Jan 2025 | 1.25 | 10 | Pay-as-you-go API; tiered pricing above 200K context ($2.50/$15.00) | false | true | true | true | true | true | true | 87.2 | 84 | 78 | 9 | ~500ms | 60-80 | Long-context RAG, document processing, video/audio analysis, agentic applications |
Gemini 2.5 Flash | Google | Undisclosed | 1M | Jan 2025 | 0.3 | 2.5 | Pay-as-you-go API; free tier available; hybrid reasoning with thinking budgets | false | true | true | true | true | false | true | 83.6 | 82 | 73.1 | 8.6 | ~150ms | 150-200 | Cost-efficient production workloads, large context tasks, multimodal processing |
Llama 4 Scout | Meta | 17B active (16 experts) | 10M | Dec 2024 | 0.11 | 0.34 | Open source; pricing via Groq/DeepInfra. Fits on a single H100 GPU | true | true | true | true | true | true | false | 79.6 | 82 | 70.5 | 8.3 | ~200-600ms | 100-600 | Massive context (10M tokens), multimodal, on-premises deployment, cost optimization |
Llama 4 Maverick | Meta | 17B active (128 experts) | 10M | Dec 2024 | 0.2 | 0.6 | Open source; pricing via Groq/DeepInfra/Together AI | true | true | true | true | true | true | false | 85.5 | 88 | 78.5 | 8.7 | ~300-1000ms | 50-560 | Best open-source all-around performance, data sovereignty, custom fine-tuning |
DeepSeek V3 | DeepSeek | 671 (37B active) | 128K | Dec 2024 | 0.25 | 1.1 | Open source (MIT); pricing via DeepSeek API and inference providers | true | false | true | true | true | true | false | 88.5 | 82.6 | 90.2 | 8.8 | ~300-1000ms | 50-100 | Cost-efficient reasoning, math-heavy tasks, code generation, open-source GPT-4 alternative |
DeepSeek R1 | DeepSeek | 671 (37B active) | 128K | Dec 2024 | 0.55 | 2.19 | Open source (MIT); reasoning model with chain-of-thought | true | false | false | false | true | false | false | 90.8 | 85.3 | 97.3 | null | ~2-15s | 20-50 | Advanced reasoning, mathematical proofs, scientific analysis, research tasks |
Mistral Large 3 | Mistral AI | 675 (41B active) | 256K | Jun 2025 | 0.5 | 1.5 | Open source (Apache 2.0); EU-hosted option; MoE architecture | true | true | true | true | true | true | true | 85.5 | 90.2 | 83.5 | 8.5 | ~350ms | 60-80 | European data residency, multilingual enterprise, coding, open-source frontier model |
Mistral Small 3.2 | Mistral AI | 24 | 128K | Mar 2025 | 0.06 | 0.18 | Open source; EU-hosted; ultra-efficient 24B model | true | false | true | true | true | true | true | 72.2 | 75 | 60 | 8.1 | ~100ms | 150-200 | Ultra-low-cost classification, routing, edge deployment, cost-efficient European workloads |
Command A | Cohere | Undisclosed | 256K | Mar 2024 | 2.5 | 10 | Pay-as-you-go API; RAG-optimized with grounded generation | false | false | true | true | true | true | true | 71.2 | 68 | 53 | 8.2 | ~280ms | 60-80 | Enterprise RAG, grounded generation with citations, multilingual search, agentic workflows |
YAML Metadata Warning:empty or missing yaml metadata in repo card
Check out the documentation for more information.
LLM Model Comparison 2026
Which LLM should you use for enterprise AI in 2026? This open dataset compares 16 large language models from 7 providers across 22 fields: pricing, benchmark scores, context windows, latency, API features, and recommended use cases.
Published and maintained by Salt Technologies AI, the AI engineering division of Salt Technologies (14+ years, 800+ projects delivered).
Quick Links
- Interactive dataset page: salttechno.ai/datasets/llm-model-comparison-2026
- Download JSON: llm-model-comparison-2026.json
- Download CSV: llm-model-comparison-2026.csv
What's Inside
Pricing Comparison (per 1M tokens)
| Model | Provider | Input | Output | Context | Open Source |
|---|---|---|---|---|---|
| GPT-4.1 | OpenAI | $2.00 | $8.00 | 1M | No |
| GPT-4.1 mini | OpenAI | $0.40 | $1.60 | 1M | No |
| o4-mini | OpenAI | $1.10 | $4.40 | 200K | No |
| o3 | OpenAI | $2.00 | $8.00 | 200K | No |
| Claude Sonnet 4.5 | Anthropic | $3.00 | $15.00 | 200K | No |
| Claude Haiku 4.5 | Anthropic | $1.00 | $5.00 | 200K | No |
| Claude Opus 4.5 | Anthropic | $5.00 | $25.00 | 200K | No |
| Gemini 2.5 Pro | $1.25 | $10.00 | 1M | No | |
| Gemini 2.5 Flash | $0.30 | $2.50 | 1M | No | |
| Llama 4 Scout | Meta | $0.11 | $0.34 | 10M | Yes |
| Llama 4 Maverick | Meta | $0.20 | $0.60 | 10M | Yes |
| DeepSeek V3 | DeepSeek | $0.25 | $1.10 | 128K | Yes |
| DeepSeek R1 | DeepSeek | $0.55 | $2.19 | 128K | Yes |
| Mistral Large 3 | Mistral AI | $0.50 | $1.50 | 256K | Yes |
| Mistral Small 3.2 | Mistral AI | $0.06 | $0.18 | 128K | Yes |
| Command A | Cohere | $2.50 | $10.00 | 256K | No |
Benchmark Scores
| Model | MMLU | HumanEval | MATH | MT-Bench |
|---|---|---|---|---|
| DeepSeek R1 | 90.8 | 85.3 | 97.3 | - |
| Claude Opus 4.5 | 89.5 | 91.0 | 76.0 | 9.3 |
| Claude Sonnet 4.5 | 89.0 | 93.0 | 78.5 | 9.2 |
| DeepSeek V3 | 88.5 | 82.6 | 90.2 | 8.8 |
| o3 | 87.5 | 95.2 | 96.7 | - |
| o4-mini | 83.2 | 93.4 | 96.7 | - |
| Gemini 2.5 Pro | 87.2 | 84.0 | 78.0 | 9.0 |
| GPT-4.1 | 86.5 | 90.2 | 80.4 | 9.2 |
Data Files
data/
llm-model-comparison-2026.csv # 16 records, 22 fields
llm-model-comparison-2026.json # Same data with schema + metadata
Schema (22 fields)
| Field | Type | Description |
|---|---|---|
model |
string | Model name |
provider |
string | Company that created/offers the model |
parametersBillions |
string | Parameter count in billions, or "Undisclosed" |
contextWindow |
string | Maximum context window (tokens) |
trainingCutoff |
string | Training data cutoff date |
inputCostPer1M |
number (USD) | Cost per 1M input tokens |
outputCostPer1M |
number (USD) | Cost per 1M output tokens |
pricingNote |
string | Additional pricing context |
openSource |
boolean | Model weights publicly available |
multimodal |
boolean | Supports image/video/audio input |
functionCalling |
boolean | Supports structured tool calling |
jsonMode |
boolean | Guaranteed JSON output |
streaming |
boolean | Streaming token output |
fineTuning |
boolean | Fine-tuning support |
enterpriseReady |
boolean | Enterprise SLAs, SOC2, support |
mmluScore |
number|null | MMLU score (0-100) |
humanEvalScore |
number|null | HumanEval code gen score (0-100) |
mathScore |
number|null | MATH score (0-100) |
mtBenchScore |
number|null | MT-Bench score (0-10) |
latencyTTFTMs |
string | Time-to-first-token latency |
throughputTPS |
string | Tokens per second range |
bestFor |
string | Recommended use cases |
Providers Covered (7)
- OpenAI (GPT-4.1, GPT-4.1 mini, o3, o4-mini)
- Anthropic (Claude Sonnet 4.5, Claude Haiku 4.5, Claude Opus 4.5)
- Google (Gemini 2.5 Pro, Gemini 2.5 Flash)
- Meta (Llama 4 Scout, Llama 4 Maverick)
- DeepSeek (DeepSeek V3, DeepSeek R1)
- Mistral AI (Mistral Large 3, Mistral Small 3.2)
- Cohere (Command A)
Usage Examples
Python (pandas)
import pandas as pd
df = pd.read_csv("data/llm-model-comparison-2026.csv")
# Cheapest models by output cost
print(df.sort_values("output_cost_per_1m_usd")[["model", "provider", "input_cost_per_1m_usd", "output_cost_per_1m_usd"]].head(5))
# Open-source models only
open_source = df[df["open_source"] == True]
print(open_source[["model", "provider", "mmlu_score", "input_cost_per_1m_usd"]])
# Models with 1M+ context window
big_context = df[df["context_window"].isin(["1M", "10M"])]
print(big_context[["model", "context_window", "input_cost_per_1m_usd"]])
JavaScript / Node.js
import data from "./data/llm-model-comparison-2026.json" assert { type: "json" };
// Find cheapest model with function calling
const withTools = data.records
.filter(r => r.functionCalling)
.sort((a, b) => a.inputCostPer1M - b.inputCostPer1M);
console.log(`Cheapest with tools: ${withTools[0].model} ($${withTools[0].inputCostPer1M}/1M)`);
// Compare benchmark scores
data.records
.filter(r => r.mmluScore !== null)
.sort((a, b) => b.mmluScore - a.mmluScore)
.forEach(r => console.log(`${r.model}: MMLU ${r.mmluScore}`));
R
library(readr)
df <- read_csv("data/llm-model-comparison-2026.csv")
# Cost per million tokens by provider
aggregate(cbind(input_cost_per_1m_usd, output_cost_per_1m_usd) ~ provider, data = df, FUN = mean)
# Highest benchmark scores
df[order(-df$mmlu_score), c("model", "mmlu_score", "humaneval_score", "math_score")]
Methodology
This dataset combines three categories of data:
Specifications and pricing: Sourced from official provider documentation and API pricing pages as of February 2026. Pricing reflects pay-as-you-go rates in USD. Open-source model pricing reflects median costs across inference providers (Together AI, Groq, Fireworks AI, DeepInfra).
Benchmark scores: MMLU, HumanEval, MATH, and MT-Bench scores from original model papers, provider technical reports, or verified third-party evaluations (LMSYS Chatbot Arena, Stanford HELM, Artificial Analysis). Null values indicate no verified score published.
Latency and throughput: TTFT and tokens-per-second measured with standardized prompts (500-token input, 200-token output) against production API endpoints from US-East. Median of 100 sequential requests during off-peak hours.
See METHODOLOGY.md for full details.
Update Schedule
This comparison is updated quarterly to reflect new model releases, pricing changes, and benchmark updates. The current version is Q1 2026 v2, last updated February 18, 2026.
See CHANGELOG.md for version history.
Citation
If you use this dataset in your research, article, or product, please cite:
Salt Technologies AI. (2026). LLM Model Comparison for Enterprise Use Cases (2026) [Dataset].
https://www.salttechno.ai/datasets/llm-model-comparison-2026/
BibTeX:
@dataset{salttechnologiesai_2026_llm_comparison,
title = {LLM Model Comparison for Enterprise Use Cases (2026)},
author = {{Salt Technologies AI}},
year = {2026},
publisher = {Salt Technologies AI},
url = {https://www.salttechno.ai/datasets/llm-model-comparison-2026/},
license = {CC BY 4.0}
}
A CITATION.cff file is included for automated citation tools.
License
This dataset is released under the Creative Commons Attribution 4.0 International License (CC BY 4.0).
You are free to:
- Share — copy and redistribute the data in any medium or format
- Adapt — remix, transform, and build upon the data for any purpose, including commercial
As long as you:
- Give attribution — credit Salt Technologies AI and link to the dataset page
About the Publisher
Salt Technologies AI is the AI engineering division of Salt Technologies, a software development company with 14+ years of experience, 800+ projects delivered, and a team of 100+ engineers. Rated 4.9 on Clutch.
We build AI chatbots, RAG systems, AI agents, and workflow automation for SaaS, healthcare, fintech, and e-commerce companies.
- Website: Custom AI Development Company
- Datasets: www.salttechno.ai/datasets
- Service: AI Readyness Audit
- Service: AI Chatbot Development
- Contact: www.salttechno.ai/contact
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