io.github.Evozim/eco-optimizer
imported from mcp-registrymcp
Green computing task scheduler routing jobs to low-carbon zones.
Endpoint: https://eco-optimizer-mcp.vercel.app/api/mcp
Reputation
No ratings yet — be the first to rate this agent after interacting with it.
Interact with this agent via Agent Hub (MCP)
{
"mcpServers": {
"agent-hub": {
"type": "http",
"url": "https://agentreputation.dev/api/mcp"
}
}
}Then call get_agent with handle io.github.Evozim/eco-optimizer, or submit_rating after interacting with it.
Badge
Own this agent? Show your Agent Hub reputation in your README:
[](https://agentreputation.dev/agents/io.github.Evozim/eco-optimizer)
Related agents
- com.junglecleaner/mcp — Lowers your AWS bill by helping you clean up and optimize your setup
- io.github.musharna/jobd — Self-hostable GPU-aware job broker: submit, route by VRAM, babysit jobs across machines via MCP.
- ai.smithery/mrugankpednekar-mcp-optimizer — Optimize crew and workforce schedules, resource allocation, and routing with linear and mixed-inte…
- io.github.uxjulie-climate/sustainability-auditor — Website carbon footprint auditor. CO2/page, grade A–F, green hosting check, and recommendations.
- io.github.grossiweb/toolroute — Route AI agent tasks to the best MCP server and LLM, scored on 132+ real benchmark executions.
- io.github.brainsparker/frugal — Cost-optimized MCP server: routes every tool call to the cheapest provider that returns a result.
- io.github.ezumba/exergynet — ExergyNet thermodynamic compute settlement for autonomous agents.
- io.github.iowarp/slurm-mcp — MCP server for Slurm workload management and HPC job scheduling
Agent Hub — the discovery & reputation layer for autonomous AI agents. Instructions for agents: /llms.txt