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Track experiments, log metrics and artifacts, and compare runs with Weights & Biases
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
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Track experiments, log metrics and artifacts, and compare runs with Weights & Biases
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
Inspect and analyze codebases using pygount for LOC counting, language breakdown, and code-vs-comment ratios. Use when asked to check lines of code, repo size, language composition, or codebase stats.
Set up GitHub authentication for the agent using git (universally available) or the gh CLI. Covers HTTPS tokens, SSH keys, credential helpers, and gh auth — with a detection flow to pick the right method automatically.
Production-grade PR review with execution-verified suggestions. Reads repository conventions, history, and security surfaces before reviewing. For every suggested fix, attempts to compile and test it in the sandbox — the comment includes proof. Modelled on GitHub Copilot's agentic architecture with one critical advantage: the sandbox is already running.
Create, manage, triage, and close GitHub issues. Search existing issues, add labels, assign people, and link to PRs. Works with gh CLI or falls back to git + GitHub REST API via curl.
Open and manage GitHub pull requests through Kai MCP tools — propose changes, monitor CI, iterate on failures, and merge. No git tokens are shared to the sandbox; every GitHub operation goes through the backend via the workspace's GitHub App installation.
Clone, create, fork, configure, and manage GitHub repositories. Manage remotes, secrets, releases, and workflows. Works with gh CLI or falls back to git + GitHub REST API via curl.
SOC 職業分類に基づく
| name | wandb |
| description | Track experiments, log metrics and artifacts, and compare runs with Weights & Biases |
| version | 1.0.0 |
| author | kai-agent |
| metadata | {"kai":{"tags":["kai","compute","wandb","experiment-tracking","metrics","artifacts","ml"]}} |
Skill for experiment tracking, metric logging, artifact management, and run comparison using Weights & Biases.
This skill uses the WANDB_API_KEY environment variable. If it is not set, ask your admin
to add it in Agent Settings. You can generate a key at https://wandb.ai/authorize.
pip install wandb
import wandb
run = wandb.init(
project="inference-optimization",
name="vllm-llama3-benchmark",
config={
"model": "meta-llama/Llama-3.1-8B-Instruct",
"quantization": "awq",
"tensor_parallel": 2,
"max_batch_size": 64,
},
)
run = wandb.init(
entity="your-team",
project="inference-optimization",
name="run-name",
)
for step in range(100):
wandb.log({
"throughput_tokens_per_sec": throughput,
"latency_p50_ms": p50,
"latency_p99_ms": p99,
"gpu_utilization": gpu_util,
"memory_used_gb": mem_gb,
})
wandb.log({"loss": 0.42, "accuracy": 0.91}, step=500)
run.summary["best_throughput"] = 1250.0
run.summary["best_latency_p99"] = 45.2
Useful for comparing model outputs or benchmark results:
table = wandb.Table(columns=["model", "quantization", "throughput", "latency_p99"])
table.add_data("Llama-3.1-8B", "fp16", 850, 62.1)
table.add_data("Llama-3.1-8B", "awq-int4", 1340, 38.5)
table.add_data("Llama-3.1-8B", "gptq-int4", 1280, 41.2)
wandb.log({"benchmark_results": table})
artifact = wandb.Artifact(
name="llama3-optimized",
type="model",
description="AWQ quantized Llama 3.1 8B with custom calibration",
)
artifact.add_dir("./model-checkpoint/")
run.log_artifact(artifact)
artifact = wandb.Artifact(name="calibration-data", type="dataset")
artifact.add_file("./calibration_prompts.jsonl")
run.log_artifact(artifact)
api = wandb.Api()
artifact = api.artifact("your-team/inference-optimization/llama3-optimized:latest")
local_path = artifact.download(root="./downloaded-model/")
api = wandb.Api()
runs = api.runs(
path="your-team/inference-optimization",
filters={"config.quantization": "awq"},
order="-summary_metrics.best_throughput",
)
for run in runs:
print(f"{run.name}: throughput={run.summary.get('best_throughput')}")
run = api.run("your-team/inference-optimization/run-id-here")
print(run.config)
print(run.summary)
history_df = run.history()
print(history_df[["_step", "throughput_tokens_per_sec", "latency_p99_ms"]])
runs = api.runs("your-team/inference-optimization")
for run in runs:
print(
f"{run.name} | "
f"quant={run.config.get('quantization')} | "
f"throughput={run.summary.get('best_throughput', 'N/A')} | "
f"p99={run.summary.get('best_latency_p99', 'N/A')}"
)
wandb.alert(
title="Latency regression detected",
text=f"p99 latency increased to {p99}ms, exceeding 50ms threshold",
level=wandb.AlertLevel.WARN,
)
sweep_config = {
"method": "bayes",
"metric": {"name": "throughput_tokens_per_sec", "goal": "maximize"},
"parameters": {
"max_batch_size": {"values": [16, 32, 64, 128]},
"gpu_memory_utilization": {"min": 0.7, "max": 0.95},
"quantization": {"values": ["awq", "gptq", "fp16"]},
},
}
sweep_id = wandb.sweep(sweep_config, project="inference-optimization")
def train():
run = wandb.init()
config = wandb.config
# Run your benchmark with config params...
wandb.log({"throughput_tokens_per_sec": result_throughput})
wandb.agent(sweep_id, function=train, count=20)
Always finish the run when done to ensure all data is flushed:
wandb.finish()
Or use a context manager:
with wandb.init(project="inference-optimization") as run:
wandb.log({"metric": value})
# Automatically finished
max_batch_size, gpu_memory_utilization, and max_num_seqs for vLLM/TGI.wandb.finish() or use a context manager to avoid orphaned runswandb.log with file paths