What is forecastEval?

53/100
Trust Score (D)
⚠️ Use Caution

forecastEval is a AI tool that A lightweight Python framework for rigorous and statistically grounded forecast evaluation, with baseline comparison, horizon-stratified analysis, and Diebold–Mariano testing.. It has a Nerq Trust Score of 53/100 (D). 0 GitHub stars. Published by unknown. Last analyzed April 2026.

Why This Score

Trust & Safety Overview

53
TRUST SCORE
D
GRADE
0
STARS
0
DOWNLOADS

What forecastEval Does

forecastEval is a model in the AI tool category. A lightweight Python framework for rigorous and statistically grounded forecast evaluation, with baseline comparison, horizon-stratified analysis, and Diebold–Mariano testing.. It is published by unknown and has no specified license. With 0 GitHub stars and 0 downloads, it has a small community of users and contributors.

Who Should Use forecastEval

forecastEval is suitable for evaluation and non-critical use. Review the trust score breakdown before using in production.

Details

Authorunknown
CategoryAI tool
LicenseNot specified
Typemodel
SourceView on GitHub
Security Score0/100
Activity Score0/100

How to Get Started

Check the trust score before installing:

curl nerq.ai/v1/preflight?target=forecasteval

Setup guide · Full safety report · Production review · Is it safe?

Safer Alternatives

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Frequently Asked Questions

What is forecastEval used for?
forecastEval is a AI tool tool. A lightweight Python framework for rigorous and statistically grounded forecast evaluation, with baseline comparison, horizon-stratified analysis, and Diebold–Mariano testing..
Is forecastEval free?
License: Check project page. forecastEval has 0 GitHub stars.
Is forecastEval safe?
forecastEval has a Nerq Trust Score of 53/100 (D). Use with caution.
What are alternatives to forecastEval?
Top alternatives: openclaw, tensorflow, AutoGPT. See full comparison.

Last updated April 2026. Trust scores based on automated analysis of public data.

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