What is servers?
78/100
Trust Score (B)
✅ Safe
servers is a infrastructure that Model Context Protocol Servers. It has a Nerq Trust Score of 78/100 (B). 79.0K GitHub stars. Published by modelcontextprotocol. Last analyzed April 2026.
Why This Score
- ⚠️ Security: 0/100 — Some security concerns
- ⚠️ Maintenance: 0/100 — Maintenance activity is low
- ✅ Community: 79.0K stars, 0 downloads — Large community
- ✅ Transparency: License: NOASSERTION — Clear licensing
Trust & Safety Overview
78
TRUST SCORE
B
GRADE
79.0K
STARS
0
DOWNLOADS
What servers Does
servers is a tool in the infrastructure category. Model Context Protocol Servers. It is published by modelcontextprotocol and is open source. With 79.0K GitHub stars and 0 downloads, it has a large and active community of users and contributors.
Who Should Use servers
servers is well-suited for production use given its strong trust score and active community.
Details
| Author | modelcontextprotocol |
|---|---|
| Category | infrastructure |
| License | NOASSERTION |
| Type | tool |
| Source | View on GitHub |
| Security Score | 0/100 |
| Activity Score | 0/100 |
How to Get Started
Check the trust score before installing:
curl nerq.ai/v1/preflight?target=modelcontextprotocol-servers
Setup guide · Full safety report · Production review · Is it safe?
Safer Alternatives
| Tool | Trust | Stars |
|---|---|---|
| n8n | 78 | 177.3K |
| langflow | 88 | 145.4K |
| dify | 79 | 130.8K |
| open-webui | 75 | 124.5K |
| gemini-cli | 72 | 99.5K |
Frequently Asked Questions
What is servers used for?
servers is a infrastructure tool. Model Context Protocol Servers.
Is servers free?
License: NOASSERTION. servers has 79.0K GitHub stars.
Is servers safe?
servers has a Nerq Trust Score of 78/100 (B). Safe for production use.
What are alternatives to servers?
Top alternatives: n8n, langflow, dify. See full comparison.
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Last updated April 2026. Trust scores based on automated analysis of public data.