8f5f3e3a2b
* Add read-only coli doctor diagnostics * Fix doctor JSON output assertion
151 lines
7.7 KiB
Python
151 lines
7.7 KiB
Python
#!/usr/bin/env python3
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"""Read-only installation diagnostics for colibri."""
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import os
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import json
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import subprocess
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from pathlib import Path
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from resource_plan import GB, build_plan, discover_gpus, format_plan, memory_available
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def _check(identifier, status, summary, **details):
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item = {"id": identifier, "status": status, "summary": summary}
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if details:
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item["details"] = details
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return item
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def cuda_linkage(engine_path):
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"""Return CUDA linkage state without loading the executable or CUDA runtime."""
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if not Path(engine_path).is_file() or os.name != "posix":
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return {"linked": False, "missing": False}
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try:
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result = subprocess.run(["ldd", str(engine_path)], capture_output=True, text=True,
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timeout=3, check=False)
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except (OSError, subprocess.SubprocessError):
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return {"linked": False, "missing": False}
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lines = [line for line in result.stdout.splitlines() if "libcudart" in line]
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return {"linked": any("not found" not in line for line in lines),
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"missing": any("not found" in line for line in lines)}
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def run_doctor(model, ram_gb=0, context=4096, gpu_indices=None, vram_gb=0, *,
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engine_path, available_memory=None, available_disk=None, gpus=None,
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linkage=None):
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"""Collect a complete report. No model payload, engine, or CUDA context is loaded."""
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model = Path(model).expanduser().resolve()
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checks = []
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plan = None
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if model.is_dir() and os.access(model, os.R_OK):
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checks.append(_check("model.path", "pass", "model directory is readable", path=str(model)))
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elif model.is_dir():
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checks.append(_check("model.path", "fail", "model directory is not readable", path=str(model)))
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else:
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checks.append(_check("model.path", "fail", "model directory does not exist", path=str(model)))
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config = model / "config.json"
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try:
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valid_config = isinstance(json.loads(config.read_text()), dict)
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except (OSError, ValueError):
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valid_config = False
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checks.append(_check("model.config", "pass" if valid_config else "fail",
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"config.json is valid" if valid_config else "config.json is missing or invalid"))
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tokenizer = model / "tokenizer.json"
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checks.append(_check("model.tokenizer", "pass" if tokenizer.is_file() else "fail",
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"tokenizer.json found" if tokenizer.is_file() else "tokenizer.json is missing"))
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if model.is_dir() and os.access(model, os.W_OK):
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checks.append(_check("storage.persistence", "pass", "model directory can store usage and KV state"))
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elif model.is_dir():
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checks.append(_check("storage.persistence", "warn", "model directory is read-only; disable persistence or change permissions"))
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else:
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checks.append(_check("storage.persistence", "skip", "persistence requires a model directory"))
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engine = Path(engine_path)
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if engine.is_file() and os.access(engine, os.X_OK):
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checks.append(_check("engine.binary", "pass", "engine executable is ready", path=str(engine)))
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elif engine.is_file():
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checks.append(_check("engine.binary", "fail", "engine exists but is not executable", path=str(engine)))
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else:
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checks.append(_check("engine.binary", "fail", "engine is not built", path=str(engine)))
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available_memory = memory_available() if available_memory is None else available_memory
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detected_gpus = discover_gpus() if gpus is None else list(gpus)
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linkage = cuda_linkage(engine) if linkage is None else linkage
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selected_gpus = detected_gpus
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if gpu_indices is not None:
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wanted = set(gpu_indices)
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selected_gpus = [gpu for gpu in detected_gpus if gpu["index"] in wanted]
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if gpu_indices == []:
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checks.append(_check("accelerator.cuda", "skip", "GPU use was explicitly disabled"))
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elif gpu_indices is not None and len(selected_gpus) != len(set(gpu_indices)):
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checks.append(_check("accelerator.cuda", "fail", "one or more requested GPUs were not detected",
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requested=gpu_indices, detected=[gpu["index"] for gpu in detected_gpus]))
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elif selected_gpus and linkage.get("missing"):
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checks.append(_check("accelerator.cuda", "fail", "CUDA runtime library is missing"))
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elif selected_gpus and linkage.get("linked"):
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checks.append(_check("accelerator.cuda", "pass", "CUDA engine and devices are available",
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devices=[gpu["index"] for gpu in selected_gpus]))
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elif selected_gpus:
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checks.append(_check("accelerator.cuda", "warn", "NVIDIA GPU detected but the engine is CPU-only",
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devices=[gpu["index"] for gpu in selected_gpus]))
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else:
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checks.append(_check("accelerator.cuda", "skip", "no NVIDIA GPU detected; CPU path is available"))
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try:
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plan = build_plan(model, ram_gb, context, gpu_indices, vram_gb,
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available_memory=available_memory, available_disk=available_disk,
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gpus=detected_gpus)
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model_info = plan["model"]
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checks.append(_check("model.shards", "pass", "safetensors headers are valid",
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shards=model_info["shards"], model_bytes=model_info["model_bytes"]))
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disk = plan["tiers"]["disk"]
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disk_status = "warn" if disk["available_bytes"] < GB else "pass"
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disk_summary = ("less than 1 GB is free for runtime state" if disk_status == "warn" else
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"model backing store is available")
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checks.append(_check("storage.disk", disk_status, disk_summary,
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available_bytes=disk["available_bytes"], model_bytes=disk["model_bytes"]))
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ram = plan["tiers"]["ram"]
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if not available_memory:
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ram_status, ram_summary = "warn", "available RAM could not be measured"
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elif ram["budget_bytes"] > available_memory:
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ram_status, ram_summary = "fail", "planned RAM budget exceeds available memory"
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elif ram["cache_slots_per_layer"] < 1:
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ram_status, ram_summary = "fail", "RAM budget cannot hold one expert slot per sparse layer"
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else:
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ram_status, ram_summary = "pass", "RAM budget is viable"
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checks.append(_check("memory.ram", ram_status, ram_summary,
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available_bytes=available_memory, budget_bytes=ram["budget_bytes"],
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cache_slots_per_layer=ram["cache_slots_per_layer"]))
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if plan["warnings"]:
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checks.append(_check("placement.plan", "warn", "; ".join(plan["warnings"])))
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else:
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checks.append(_check("placement.plan", "pass", "tier placement has no warnings"))
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except (OSError, ValueError, KeyError) as error:
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checks.append(_check("model.shards", "fail", str(error)))
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checks.append(_check("storage.disk", "skip", "storage check requires a valid model"))
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checks.append(_check("memory.ram", "skip", "RAM projection requires a valid model"))
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checks.append(_check("placement.plan", "skip", "placement requires a valid model"))
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statuses = {item["status"] for item in checks}
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status = "error" if "fail" in statuses else "warning" if "warn" in statuses else "ok"
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return {"schema_version": 1, "status": status, "model": str(model),
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"checks": checks, "plan": plan}
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def format_doctor(report):
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icons = {"pass": "ok", "warn": "warn", "fail": "fail", "skip": "skip"}
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lines = [f"colibri doctor · {report['model']}"]
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for check in report["checks"]:
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lines.append(f"[{icons[check['status']]:>4}] {check['id']:<18} {check['summary']}")
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if report["plan"]:
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lines.extend(["", format_plan(report["plan"])])
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lines.extend(["", f"result {report['status']}"])
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return "\n".join(lines)
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def exit_code(report):
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return 1 if report["status"] == "error" else 0
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