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c89b420 | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 | import gradio as gr
import json
# Import all tool functions
# (Inlined for Space simplicity)
MODELS = [
{"Model": "SmolLM2-135M-Instruct-mobile", "Params": "135M", "Size_MB": 270, "RAM_MB": 400, "Task": "Chat", "Quant": "FP16", "Speed_tps": 25.5},
{"Model": "SmolLM2-360M-Instruct-mobile", "Params": "360M", "Size_MB": 720, "RAM_MB": 700, "Task": "Chat", "Quant": "FP16", "Speed_tps": 21.0},
{"Model": "Qwen2.5-0.5B-Instruct-mobile-int4", "Params": "500M", "Size_MB": 350, "RAM_MB": 550, "Task": "Chat", "Quant": "INT4", "Speed_tps": 20.0},
{"Model": "Llama-3.2-1B-Instruct-Q4-mobile", "Params": "1B", "Size_MB": 700, "RAM_MB": 1100, "Task": "Chat", "Quant": "Q4", "Speed_tps": 18.2},
{"Model": "Llama-3.2-3B-Instruct-Q5-mobile", "Params": "3B", "Size_MB": 2100, "RAM_MB": 2700, "Task": "Chat", "Quant": "Q5", "Speed_tps": 8.5},
{"Model": "Gemma-2B-Arabic-mobile", "Params": "2B", "Size_MB": 5000, "RAM_MB": 5500, "Task": "Arabic", "Quant": "FP16", "Speed_tps": 8.0},
{"Model": "Llama-3.2-1B-FunctionCall-mobile", "Params": "1B", "Size_MB": 2500, "RAM_MB": 3000, "Task": "Function Call", "Quant": "FP16", "Speed_tps": 12.0},
]
LATENCY_DB = {
"135M": {"FP16": 25.5, "Q4_K_M": 32.0, "Q8_0": 28.2},
"500M": {"FP16": 20.0, "Q4_K_M": 26.8, "INT4": 20.0},
"1B": {"FP16": 12.0, "Q4_K_M": 18.2, "Q5_K_M": 17.5},
"2B": {"FP16": 8.0, "Q5_K_M": 12.0, "Q4_K_M": 12.8},
"3B": {"FP16": 5.5, "Q5_K_M": 8.5, "Q4_K_M": 9.0},
}
def recommend_model(ram_mb: int, task: str = "Any") -> str:
"""Recommend the best dispatchAI mobile model for a given RAM budget and task.
Args:
ram_mb: Available RAM in MB
task: Task type (Chat, Code, Math, Arabic, Function Call, Vision, Embedding, Any)
Returns:
JSON with recommended model
"""
filtered = [m for m in MODELS if m["RAM_MB"] <= ram_mb]
if task != "Any":
filtered = [m for m in filtered if m["Task"] == task]
if not filtered:
return json.dumps({"error": f"No models fit in {ram_mb}MB"})
best = sorted(filtered, key=lambda x: x["Size_MB"])[0]
return json.dumps({
"recommended": best["Model"],
"url": f"https://huggingface.co/dispatchAI/{best['Model']}",
"size_mb": best["Size_MB"],
"ram_mb": best["RAM_MB"],
"speed_tps": best["Speed_tps"],
}, indent=2)
def estimate_latency(params: str, quant: str = "Q4_K_M") -> str:
"""Estimate inference latency on Snapdragon 865.
Args:
params: Model size (e.g., "135M", "1B", "3B")
quant: Quantization (FP16, Q4_K_M, Q5_K_M, Q8_0, INT4)
Returns:
JSON with speed and RAM estimates
"""
params = params.upper()
if params not in LATENCY_DB:
return json.dumps({"error": f"Unknown: {params}. Valid: {list(LATENCY_DB.keys())}"})
tps = LATENCY_DB[params].get(quant.upper(), 10.0)
return json.dumps({
"params": params,
"quant": quant,
"tokens_per_sec": tps,
"ms_per_token": round(1000/tps, 0),
"hardware": "Snapdragon 865",
}, indent=2)
def calculate_savings(daily_queries: int, cloud_cost_per_1k: float) -> str:
"""Calculate savings from on-device vs cloud inference.
Args:
daily_queries: Queries per day
cloud_cost_per_1k: Cloud cost per 1000 queries
Returns:
JSON with cost comparison
"""
annual_cloud = daily_queries * 365 * cloud_cost_per_1k / 1000
annual_device = 0.5
return json.dumps({
"cloud_annual": round(annual_cloud, 2),
"device_annual": round(annual_device, 2),
"savings": round(annual_cloud - annual_device, 2),
"savings_pct": round((1 - annual_device/annual_cloud)*100, 1) if annual_cloud > 0 else 0,
}, indent=2)
def search_models(query: str) -> str:
"""Search dispatchAI models by keyword.
Args:
query: Search term (e.g., "arabic", "coder", "1B", "quantized")
Returns:
JSON with matching models
"""
q = query.lower()
matches = [m for m in MODELS if q in m["Model"].lower() or q in m["Task"].lower() or q in m["Quant"].lower()]
return json.dumps({"query": query, "matches": len(matches), "models": matches}, indent=2)
with gr.Blocks(title="dispatchAI MCP Hub") as demo:
gr.Markdown("""
# 🧰 dispatchAI MCP Tool Hub
**One Space, four tools.** Add to Claude Desktop / Cursor / any MCP client.
| Tool | Description |
|------|-------------|
| `recommend_model` | Find best model for your phone |
| `estimate_latency` | Predict inference speed |
| `calculate_savings` | Cloud vs on-device cost |
| `search_models` | Search dispatchAI catalog |
""")
with gr.Tab("Recommend"):
r_ram = gr.Slider(512, 8192, value=2048, label="RAM (MB)")
r_task = gr.Dropdown(["Any", "Chat", "Arabic", "Function Call"], value="Any", label="Task")
r_btn = gr.Button("Recommend")
r_out = gr.Textbox(label="Result", lines=10)
r_btn.click(fn=recommend_model, inputs=[r_ram, r_task], outputs=r_out)
with gr.Tab("Latency"):
l_p = gr.Dropdown(list(LATENCY_DB.keys()), value="1B", label="Params")
l_q = gr.Dropdown(["FP16", "Q4_K_M", "Q5_K_M", "Q8_0", "INT4"], value="Q4_K_M", label="Quant")
l_btn = gr.Button("Estimate")
l_out = gr.Textbox(label="Result", lines=8)
l_btn.click(fn=estimate_latency, inputs=[l_p, l_q], outputs=l_out)
with gr.Tab("Cost"):
c_dq = gr.Slider(100, 100000, value=10000, label="Daily Queries")
c_cc = gr.Slider(0.1, 10, value=0.5, label="Cloud $/1K")
c_btn = gr.Button("Calculate")
c_out = gr.Textbox(label="Result", lines=8)
c_btn.click(fn=calculate_savings, inputs=[c_dq, c_cc], outputs=c_out)
with gr.Tab("Search"):
s_q = gr.Textbox(label="Search Query", placeholder="arabic, coder, 1B...")
s_btn = gr.Button("Search")
s_out = gr.Textbox(label="Results", lines=10)
s_btn.click(fn=search_models, inputs=s_q, outputs=s_out)
demo.launch(mcp_server=True)
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