What are the differences?

Between the Starling LM 7B Beta and GPT-4 LLM models, which follows best instructions?

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Berkeley Nest logo

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OpenAI logo
Berkeley Nest logo

Starling LM 7B Beta

Berkeley Nest

OpenAI logo

GPT-4

OpenAI

Overview

Berkeley Nest logo

Starling LM 7B Beta

OpenAI logo

GPT-4

Provider

Organization responsible for this model.

Berkeley Nest logo

Berkeley Nest

OpenAI logo

OpenAI

Input Context Window

The total number of tokens that the input context window can accommodate.

3.1K
8.2K

Maximum Output Tokens

The maximum number of tokens this model can produce in one operation.

4.1K
8.2K

Release Date

The initial release date of the model.

November 15, 2023

24 months ago

March 14, 2023

32 months ago

Knowledge Cutoff

The latest date for which the information provided is considered reliable and current.

2024/3

2021/9

Pricing

Berkeley Nest logo

Starling LM 7B Beta

OpenAI logo

GPT-4

Input

Costs associated with the data input to the model.

Not specified.

$0.03

Output

Costs associated with the tokens produced by the model.

Not specified.

$0.06

Benchmark

Berkeley Nest logo

Starling LM 7B Beta

OpenAI logo

GPT-4

MMLU

Assesses LLMs' ability to acquire knowledge in zero-shot and few-shot scenarios.

63.9
86.4

MMMU

Comprehensive benchmark covering multiple disciplines and modalities.

34.9

HellaSwag

A demanding benchmark for sentence completion tasks.

95.3

Arena Elo

Ranking metric for LMSYS Chatbot Arena.

1119

5000+ teams use Lunary to build reliable AI applications

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Building an AI chatbot?

Open-source GenAI monitoring, prompt management, and magic.

Open Source

Self Hostable

1-line Integration

Prompt Templates

Chat Replays

Analytics

Topic Classification

Agent Tracing

Custom Dashboards

Score LLM responses

PII Masking

Feedback Tracking

Open Source

Self Hostable

1-line Integration

Prompt Templates

Chat Replays

Analytics

Topic Classification

Agent Tracing

Custom Dashboards

Score LLM responses

PII Masking

Feedback Tracking