Resource Utilization

CPU, memory, disk I/O, and network throughput analysis for PQ Devnet clients.

This notebook examines container-level resource usage using cAdvisor metrics:

  • CPU usage (cores) per client
  • Memory working set and RSS per client
  • Disk read/write throughput
  • Disk usage over time
  • Network receive/transmit throughput
Show code
import json
from pathlib import Path

import pandas as pd
import plotly.express as px
import plotly.graph_objects as go
from plotly.subplots import make_subplots
from IPython.display import HTML, display

# Set default renderer for static HTML output
import plotly.io as pio
pio.renderers.default = "notebook"
Show code
# Resolve devnet_id
DATA_DIR = Path("../data")

if devnet_id is None:
    # Use latest devnet from manifest
    devnets_path = DATA_DIR / "devnets.json"
    if devnets_path.exists():
        with open(devnets_path) as f:
            devnets = json.load(f).get("devnets", [])
        if devnets:
            devnet_id = devnets[-1]["id"]  # Latest
            print(f"Using latest devnet: {devnet_id}")
    else:
        raise ValueError("No devnets.json found. Run 'just detect-devnets' first.")

DEVNET_DIR = DATA_DIR / devnet_id
print(f"Loading data from: {DEVNET_DIR}")
Loading data from: ../data/pqdevnet-20260701T1044Z
Show code
# Load devnet metadata
with open(DATA_DIR / "devnets.json") as f:
    devnets_data = json.load(f)
    devnet_info = next((d for d in devnets_data["devnets"] if d["id"] == devnet_id), None)

if devnet_info:
    print(f"Devnet: {devnet_info['id']}")
    print(f"Duration: {devnet_info['duration_hours']:.1f} hours")
    print(f"Time: {devnet_info['start_time']} to {devnet_info['end_time']}")
    print(f"Slots: {devnet_info['start_slot']} \u2192 {devnet_info['end_slot']}")
    print(f"Clients: {', '.join(devnet_info['clients'])}")
Devnet: pqdevnet-20260701T1044Z
Duration: 0.7 hours
Time: 2026-07-01T10:44:40+00:00 to 2026-07-01T11:24:59+00:00
Slots: 0 β†’ 16885
Clients: buildx_buildkit_multiarch0, ethlambda_0, ethlambda_1, ethlambda_10, ethlambda_2, ethlambda_3, ethlambda_4, ethlambda_5, ethlambda_6, ethlambda_7, ethlambda_8, ethlambda_9, gean_0, gean_1, gean_2, gean_3, grandine_0, grandine_1, grandine_2, grandine_3, grandine_4, grandine_5, grandine_6, lantern_0, lantern_1, lantern_2, lantern_3, ream_0, ream_1, ream_2, ream_3, ream_4, ream_5, ream_6, zeam_0, zeam_1, zeam_2, zeam_4, zeam_5, zeam_6
Show code
def format_bytes(val: float) -> str:
    """Format bytes to human-readable units."""
    for unit in ["B", "KB", "MB", "GB", "TB"]:
        if abs(val) < 1024:
            return f"{val:.1f} {unit}"
        val /= 1024
    return f"{val:.1f} PB"


def format_bytes_per_sec(val: float) -> str:
    """Format bytes/s to human-readable units."""
    return format_bytes(val) + "/s"

Load DataΒΆ

Show code
# Load container resource data
data_files = {
    "cpu": "container_cpu.parquet",
    "memory": "container_memory.parquet",
    "disk_io": "container_disk_io.parquet",
    "network": "container_network.parquet",
}

# Infrastructure containers irrelevant to devnet client analysis
EXCLUDED_CONTAINERS = {"unknown", "cadvisor", "prometheus", "promtail", "node-exporter", "node_exporter", "grafana"}

# Aggregation strategy per data type:
# - cpu/memory: max (gauge-like, take the active container's value)
# - disk_io/network: sum (per-device/interface rates should be summed)
AGG_STRATEGY = {"cpu": "max", "memory": "max", "disk_io": "sum", "network": "sum"}

# Group-by columns per data type (all have container+timestamp, some have metric)
GROUP_COLS = {
    "cpu": ["container", "timestamp"],
    "memory": ["container", "metric", "timestamp"],
    "disk_io": ["container", "metric", "timestamp"],
    "network": ["container", "metric", "timestamp"],
}

dfs = {}
for key, filename in data_files.items():
    path = DEVNET_DIR / filename
    if path.exists():
        df = pd.read_parquet(path)
        df = df[~df["container"].isin(EXCLUDED_CONTAINERS)]
        # Deduplicate: multiple Prometheus series (interfaces, devices, container
        # IDs after restarts) can produce duplicate rows per container+timestamp.
        df = df.groupby(GROUP_COLS[key], as_index=False)["value"].agg(AGG_STRATEGY[key])
        dfs[key] = df
        print(f"{key}: {len(df)} records, containers: {df['container'].nunique()}")
    else:
        dfs[key] = pd.DataFrame()
        print(f"{key}: no data (file not found)")

# Unified container list: use devnet_info["clients"] which already contains
# full names with instance suffixes (e.g., "ream_0", "ream_1").
all_containers = sorted(devnet_info["clients"])
n_cols = min(len(all_containers), 2)
n_rows = -(-len(all_containers) // n_cols)
print(f"\nAll containers ({len(all_containers)}): {all_containers}")
cpu: 247 records, containers: 33
memory: 2310 records, containers: 34
disk_io: 392 records, containers: 26
network: 494 records, containers: 33

All containers (40): ['buildx_buildkit_multiarch0', 'ethlambda_0', 'ethlambda_1', 'ethlambda_10', 'ethlambda_2', 'ethlambda_3', 'ethlambda_4', 'ethlambda_5', 'ethlambda_6', 'ethlambda_7', 'ethlambda_8', 'ethlambda_9', 'gean_0', 'gean_1', 'gean_2', 'gean_3', 'grandine_0', 'grandine_1', 'grandine_2', 'grandine_3', 'grandine_4', 'grandine_5', 'grandine_6', 'lantern_0', 'lantern_1', 'lantern_2', 'lantern_3', 'ream_0', 'ream_1', 'ream_2', 'ream_3', 'ream_4', 'ream_5', 'ream_6', 'zeam_0', 'zeam_1', 'zeam_2', 'zeam_4', 'zeam_5', 'zeam_6']

CPU UsageΒΆ

CPU cores used per container over time, derived from rate(container_cpu_usage_seconds_total[5m]).

Show code
cpu_df = dfs["cpu"]

if cpu_df.empty:
    print("No CPU data available")
else:
    fig = make_subplots(
        rows=n_rows, cols=n_cols,
        subplot_titles=all_containers,
        vertical_spacing=0.12 / max(n_rows - 1, 1) * 2,
        horizontal_spacing=0.08,
    )

    for i, container in enumerate(all_containers):
        row = i // n_cols + 1
        col = i % n_cols + 1
        cdf = cpu_df[cpu_df["container"] == container].sort_values("timestamp")
        if not cdf.empty:
            fig.add_trace(
                go.Scatter(
                    x=cdf["timestamp"], y=cdf["value"],
                    name=container, showlegend=False,
                    line=dict(color="#636EFA"),
                ),
                row=row, col=col,
            )
        else:
            fig.add_trace(
                go.Scatter(x=[None], y=[None], showlegend=False, hoverinfo='skip'),
                row=row, col=col,
            )
            _n = (row - 1) * n_cols + col
            _s = "" if _n == 1 else str(_n)
            fig.add_annotation(
                text="No data available",
                xref=f"x{_s} domain", yref=f"y{_s} domain",
                x=0.5, y=0.5,
                showarrow=False,
                font=dict(size=12, color="#999"),
            )
        fig.update_yaxes(title_text="CPU (cores)", row=row, col=col)

    fig.update_layout(
        title="CPU Usage per Container",
        height=270 * n_rows,
    )
    fig.show()
Show code
# CPU summary statistics
if not cpu_df.empty:
    cpu_summary = cpu_df.groupby("container")["value"].agg(
        ["mean", "max", "min", "std"]
    ).round(3)
    cpu_summary.columns = ["Mean (cores)", "Max (cores)", "Min (cores)", "Std Dev"]
    cpu_summary = cpu_summary.sort_index()
    display(cpu_summary)
Mean (cores) Max (cores) Min (cores) Std Dev
container
buildx_buildkit_multiarch0 0.003 0.004 0.002 0.001
ethlambda_0 0.707 2.006 0.033 0.680
ethlambda_1 0.917 1.873 0.464 0.447
ethlambda_10 0.174 0.226 0.107 0.046
ethlambda_2 0.180 0.309 0.097 0.075
ethlambda_3 0.520 0.804 0.197 0.235
ethlambda_4 0.155 0.218 0.119 0.042
ethlambda_5 0.496 1.015 0.069 0.313
ethlambda_6 1.070 1.604 0.112 0.580
ethlambda_7 0.164 0.270 0.089 0.075
ethlambda_8 0.163 0.281 0.072 0.086
ethlambda_9 0.501 0.817 0.113 0.265
gean_1 0.591 1.765 0.022 0.637
grandine_0 2.967 5.898 0.457 1.953
grandine_1 1.050 1.444 0.635 0.359
grandine_2 2.912 5.136 0.564 1.627
grandine_3 2.383 4.327 0.535 1.406
grandine_4 2.501 4.248 0.635 1.436
grandine_5 2.446 3.524 0.671 0.947
grandine_6 1.419 2.245 0.371 0.603
ream_0 0.578 2.138 0.026 0.753
ream_1 0.522 1.646 0.037 0.591
ream_2 0.502 1.567 0.029 0.559
ream_3 0.485 1.404 0.021 0.504
ream_4 0.503 1.443 0.027 0.515
ream_5 2.028 2.814 1.043 0.645
ream_6 0.531 1.599 0.027 0.564
zeam_0 1.636 1.969 0.719 0.489
zeam_1 1.666 2.037 0.701 0.508
zeam_2 2.293 2.923 0.720 0.743
zeam_4 1.529 1.926 0.578 0.481
zeam_5 1.635 2.162 0.628 0.518
zeam_6 1.591 2.040 0.602 0.491

Memory UsageΒΆ

Memory consumption per container, including working set (total usage minus inactive file cache) and RSS (Resident Set Size -- anonymous memory only, excluding file-backed pages). The gap between the two shows active file cache usage.

Show code
mem_df = dfs["memory"]

if mem_df.empty:
    print("No memory data available")
else:
    # Combine working_set and rss for per-container comparison
    mem_plot_df = mem_df[mem_df["metric"].isin(["working_set", "rss"])].copy()
    if not mem_plot_df.empty:
        mem_plot_df["value_mb"] = mem_plot_df["value"] / (1024 * 1024)

        fig = make_subplots(
            rows=n_rows, cols=n_cols,
            subplot_titles=all_containers,
            vertical_spacing=0.12 / max(n_rows - 1, 1) * 2,
            horizontal_spacing=0.08,
        )

        colors = {"working_set": "#636EFA", "rss": "#EF553B"}
        legend_added = set()

        for i, container in enumerate(all_containers):
            row = i // n_cols + 1
            col = i % n_cols + 1
            cdf = mem_plot_df[mem_plot_df["container"] == container]
            if not cdf.empty:
                for metric in ["working_set", "rss"]:
                    mdf = cdf[cdf["metric"] == metric].sort_values("timestamp")
                    if mdf.empty:
                        continue
                    show_legend = metric not in legend_added
                    legend_added.add(metric)
                    fig.add_trace(
                        go.Scatter(
                            x=mdf["timestamp"], y=mdf["value_mb"],
                            name=metric, legendgroup=metric,
                            showlegend=show_legend,
                            line=dict(color=colors[metric]),
                        ),
                        row=row, col=col,
                    )
            else:
                fig.add_trace(
                    go.Scatter(x=[None], y=[None], showlegend=False, hoverinfo='skip'),
                    row=row, col=col,
                )
                _n = (row - 1) * n_cols + col
                _s = "" if _n == 1 else str(_n)
                fig.add_annotation(
                    text="No data available",
                    xref=f"x{_s} domain", yref=f"y{_s} domain",
                    x=0.5, y=0.5,
                    showarrow=False,
                    font=dict(size=12, color="#999"),
                )
            fig.update_yaxes(title_text="MB", row=row, col=col)

        fig.update_layout(
            title="Memory Usage per Container (Working Set vs RSS)",
            height=270 * n_rows,
        )
        fig.show()
Show code
# Memory summary
if not mem_df.empty:
    ws_df = mem_df[mem_df["metric"] == "working_set"]
    if not ws_df.empty:
        mem_summary = ws_df.groupby("container")["value"].agg(["mean", "max"]).reset_index()
        mem_summary["Mean"] = mem_summary["mean"].apply(format_bytes)
        mem_summary["Peak"] = mem_summary["max"].apply(format_bytes)
        mem_summary = mem_summary.rename(columns={"container": "Container"})[["Container", "Mean", "Peak"]]
        mem_summary = mem_summary.sort_values("Container")
        display(mem_summary.set_index("Container"))
Mean Peak
Container
buildx_buildkit_multiarch0 647.1 MB 647.8 MB
ethlambda_0 426.5 MB 1.3 GB
ethlambda_1 1.2 GB 1.8 GB
ethlambda_10 307.9 MB 525.3 MB
ethlambda_2 380.0 MB 532.5 MB
ethlambda_3 920.0 MB 1.3 GB
ethlambda_4 312.0 MB 475.0 MB
ethlambda_5 1.0 GB 1.9 GB
ethlambda_6 1018.6 MB 1.5 GB
ethlambda_7 325.0 MB 605.9 MB
ethlambda_8 347.0 MB 538.4 MB
ethlambda_9 894.9 MB 1.4 GB
gean_1 1.6 GB 3.2 GB
gean_3 2.3 MB 2.3 MB
grandine_0 2.0 GB 3.4 GB
grandine_1 2.1 GB 2.4 GB
grandine_2 2.0 GB 3.0 GB
grandine_3 1.6 GB 3.4 GB
grandine_4 1.8 GB 5.3 GB
grandine_5 1.8 GB 3.6 GB
grandine_6 1.5 GB 2.3 GB
ream_0 4.3 GB 14.9 GB
ream_1 2.2 GB 6.9 GB
ream_2 2.2 GB 6.5 GB
ream_3 2.3 GB 7.3 GB
ream_4 2.4 GB 7.5 GB
ream_5 4.3 GB 6.2 GB
ream_6 2.3 GB 7.3 GB
zeam_0 2.1 GB 3.1 GB
zeam_1 2.4 GB 3.5 GB
zeam_2 2.1 GB 3.4 GB
zeam_4 2.1 GB 3.0 GB
zeam_5 2.3 GB 4.0 GB
zeam_6 2.1 GB 2.8 GB

Disk I/OΒΆ

Disk read/write throughput per container.

Show code
disk_df = dfs["disk_io"]

if disk_df.empty:
    print("No disk I/O data available")
else:
    # Read/write throughput per container
    throughput_df = disk_df[disk_df["metric"].isin(["read_throughput", "write_throughput"])].copy()
    if not throughput_df.empty:
        throughput_df["value_mb"] = throughput_df["value"] / (1024 * 1024)

        fig = make_subplots(
            rows=n_rows, cols=n_cols,
            subplot_titles=all_containers,
            vertical_spacing=0.12 / max(n_rows - 1, 1) * 2,
            horizontal_spacing=0.08,
        )

        colors = {"read_throughput": "#636EFA", "write_throughput": "#EF553B"}
        legend_added = set()

        for i, container in enumerate(all_containers):
            row = i // n_cols + 1
            col = i % n_cols + 1
            cdf = throughput_df[throughput_df["container"] == container]
            if not cdf.empty:
                for metric in ["read_throughput", "write_throughput"]:
                    mdf = cdf[cdf["metric"] == metric].sort_values("timestamp")
                    if mdf.empty:
                        continue
                    label = metric.replace("_throughput", "")
                    show_legend = metric not in legend_added
                    legend_added.add(metric)
                    fig.add_trace(
                        go.Scatter(
                            x=mdf["timestamp"], y=mdf["value_mb"],
                            name=label, legendgroup=metric,
                            showlegend=show_legend,
                            line=dict(color=colors[metric]),
                        ),
                        row=row, col=col,
                    )
            else:
                fig.add_trace(
                    go.Scatter(x=[None], y=[None], showlegend=False, hoverinfo='skip'),
                    row=row, col=col,
                )
                _n = (row - 1) * n_cols + col
                _s = "" if _n == 1 else str(_n)
                fig.add_annotation(
                    text="No data available",
                    xref=f"x{_s} domain", yref=f"y{_s} domain",
                    x=0.5, y=0.5,
                    showarrow=False,
                    font=dict(size=12, color="#999"),
                )
            fig.update_yaxes(title_text="MB/s", row=row, col=col)

        fig.update_layout(
            title="Disk I/O Throughput per Container (Read vs Write)",
            height=270 * n_rows,
        )
        fig.show()

Disk UsageΒΆ

Total disk space used per container over time.

Show code
# Disk usage uses the 'client' column (container is 'unknown' for this metric)
disk_io_path = DEVNET_DIR / "container_disk_io.parquet"
if disk_io_path.exists():
    raw_disk = pd.read_parquet(disk_io_path)
    usage_df = raw_disk[raw_disk["metric"] == "disk_usage"].copy()
    usage_df = usage_df.groupby(["client", "timestamp"], as_index=False)["value"].max()
else:
    usage_df = pd.DataFrame()

if usage_df.empty:
    print("No disk usage data available")
else:
    usage_df["value_gb"] = usage_df["value"] / (1024 * 1024 * 1024)

    # Use client names from devnet metadata
    all_clients_sorted = sorted(devnet_info["clients"])
    n_cols_du = min(len(all_clients_sorted), 2)
    n_rows_du = -(-len(all_clients_sorted) // n_cols_du)

    fig = make_subplots(
        rows=n_rows_du, cols=n_cols_du,
        subplot_titles=all_clients_sorted,
        vertical_spacing=0.12 / max(n_rows_du - 1, 1) * 2,
        horizontal_spacing=0.08,
    )

    for i, client in enumerate(all_clients_sorted):
        row = i // n_cols_du + 1
        col = i % n_cols_du + 1
        cdf = usage_df[usage_df["client"] == client].sort_values("timestamp")
        if not cdf.empty and cdf["value"].max() > 0:
            fig.add_trace(
                go.Scatter(
                    x=cdf["timestamp"], y=cdf["value_gb"],
                    name=client, showlegend=False,
                    line=dict(color="#636EFA"),
                ),
                row=row, col=col,
            )
        else:
            fig.add_trace(
                go.Scatter(x=[None], y=[None], showlegend=False, hoverinfo='skip'),
                row=row, col=col,
            )
            _n = (row - 1) * n_cols_du + col
            _s = "" if _n == 1 else str(_n)
            fig.add_annotation(
                text="No data available",
                xref=f"x{_s} domain", yref=f"y{_s} domain",
                x=0.5, y=0.5,
                showarrow=False,
                font=dict(size=12, color="#999"),
            )
        fig.update_yaxes(title_text="GB", row=row, col=col)

    fig.update_layout(
        title="Disk Usage per Client",
        height=270 * n_rows_du,
    )
    fig.show()

Network ThroughputΒΆ

Network receive (rx) and transmit (tx) throughput per container.

Show code
net_df = dfs["network"]

if net_df.empty:
    print("No network data available")
else:
    net_df["value_mb"] = net_df["value"] / (1024 * 1024)

    fig = make_subplots(
        rows=n_rows, cols=n_cols,
        subplot_titles=all_containers,
        vertical_spacing=0.12 / max(n_rows - 1, 1) * 2,
        horizontal_spacing=0.08,
    )

    colors = {"rx": "#636EFA", "tx": "#EF553B"}
    legend_added = set()

    for i, container in enumerate(all_containers):
        row = i // n_cols + 1
        col = i % n_cols + 1
        cdf = net_df[net_df["container"] == container]
        if not cdf.empty:
            for metric in ["rx", "tx"]:
                mdf = cdf[cdf["metric"] == metric].sort_values("timestamp")
                if mdf.empty:
                    continue
                show_legend = metric not in legend_added
                legend_added.add(metric)
                fig.add_trace(
                    go.Scatter(
                        x=mdf["timestamp"], y=mdf["value_mb"],
                        name=metric, legendgroup=metric,
                        showlegend=show_legend,
                        line=dict(color=colors[metric]),
                    ),
                    row=row, col=col,
                )
        else:
            fig.add_trace(
                go.Scatter(x=[None], y=[None], showlegend=False, hoverinfo='skip'),
                row=row, col=col,
            )
            _n = (row - 1) * n_cols + col
            _s = "" if _n == 1 else str(_n)
            fig.add_annotation(
                text="No data available",
                xref=f"x{_s} domain", yref=f"y{_s} domain",
                x=0.5, y=0.5,
                showarrow=False,
                font=dict(size=12, color="#999"),
            )
        fig.update_yaxes(title_text="MB/s", row=row, col=col)

    fig.update_layout(
        title="Network Throughput per Container (RX vs TX)",
        height=270 * n_rows,
    )
    fig.show()

SummaryΒΆ

Peak and average resource usage per container across the devnet.

Show code
# Build summary table across all resource types
summary_rows = []

# CPU
if not cpu_df.empty:
    for container, group in cpu_df.groupby("container"):
        summary_rows.append({
            "Container": container,
            "Avg CPU (cores)": f"{group['value'].mean():.3f}",
            "Peak CPU (cores)": f"{group['value'].max():.3f}",
        })

# Memory
if not mem_df.empty:
    ws_df = mem_df[mem_df["metric"] == "working_set"]
    for container, group in ws_df.groupby("container"):
        existing = next((r for r in summary_rows if r["Container"] == container), None)
        if existing is None:
            existing = {"Container": container}
            summary_rows.append(existing)
        existing["Avg Memory"] = format_bytes(group["value"].mean())
        existing["Peak Memory"] = format_bytes(group["value"].max())

# Network
if not net_df.empty:
    for container, group in net_df.groupby("container"):
        existing = next((r for r in summary_rows if r["Container"] == container), None)
        if existing is None:
            existing = {"Container": container}
            summary_rows.append(existing)
        rx = group[group["metric"] == "rx"]["value"]
        tx = group[group["metric"] == "tx"]["value"]
        if not rx.empty:
            existing["Avg RX"] = format_bytes_per_sec(rx.mean())
        if not tx.empty:
            existing["Avg TX"] = format_bytes_per_sec(tx.mean())

if summary_rows:
    summary_df = pd.DataFrame(summary_rows).set_index("Container").sort_index().fillna("-")
    display(summary_df)
else:
    print("No resource data available for summary.")
Avg CPU (cores) Peak CPU (cores) Avg Memory Peak Memory Avg RX Avg TX
Container
buildx_buildkit_multiarch0 0.003 0.004 647.1 MB 647.8 MB 0.0 B/s 0.0 B/s
ethlambda_0 0.707 2.006 426.5 MB 1.3 GB 1.9 MB/s 3.3 MB/s
ethlambda_1 0.917 1.873 1.2 GB 1.8 GB 1.1 MB/s 37.2 MB/s
ethlambda_10 0.174 0.226 307.9 MB 525.3 MB 3.2 MB/s 1.6 MB/s
ethlambda_2 0.180 0.309 380.0 MB 532.5 MB 1.8 MB/s 2.2 MB/s
ethlambda_3 0.520 0.804 920.0 MB 1.3 GB 1.1 MB/s 21.2 MB/s
ethlambda_4 0.155 0.218 312.0 MB 475.0 MB 2.9 MB/s 1.9 MB/s
ethlambda_5 0.496 1.015 1.0 GB 1.9 GB 1.2 MB/s 28.5 MB/s
ethlambda_6 1.070 1.604 1018.6 MB 1.5 GB 1.2 MB/s 66.9 MB/s
ethlambda_7 0.164 0.270 325.0 MB 605.9 MB 2.8 MB/s 1.7 MB/s
ethlambda_8 0.163 0.281 347.0 MB 538.4 MB 3.0 MB/s 1.7 MB/s
ethlambda_9 0.501 0.817 894.9 MB 1.4 GB 1.4 MB/s 22.8 MB/s
gean_1 0.591 1.765 1.6 GB 3.2 GB 1.1 MB/s 4.3 MB/s
gean_3 - - 2.3 MB 2.3 MB - -
grandine_0 2.967 5.898 2.0 GB 3.4 GB 34.7 MB/s 4.5 MB/s
grandine_1 1.050 1.444 2.1 GB 2.4 GB 1.3 MB/s 4.7 MB/s
grandine_2 2.912 5.136 2.0 GB 3.0 GB 43.1 MB/s 4.2 MB/s
grandine_3 2.383 4.327 1.6 GB 3.4 GB 26.1 MB/s 2.4 MB/s
grandine_4 2.501 4.248 1.8 GB 5.3 GB 34.3 MB/s 3.0 MB/s
grandine_5 2.446 3.524 1.8 GB 3.6 GB 90.9 MB/s 3.2 MB/s
grandine_6 1.419 2.245 1.5 GB 2.3 GB 31.5 MB/s 2.6 MB/s
ream_0 0.578 2.138 4.3 GB 14.9 GB 745.7 KB/s 1.5 MB/s
ream_1 0.522 1.646 2.2 GB 6.9 GB 1004.8 KB/s 492.5 KB/s
ream_2 0.502 1.567 2.2 GB 6.5 GB 1.5 MB/s 1.4 MB/s
ream_3 0.485 1.404 2.3 GB 7.3 GB 977.0 KB/s 730.7 KB/s
ream_4 0.503 1.443 2.4 GB 7.5 GB 1.3 MB/s 46.3 KB/s
ream_5 2.028 2.814 4.3 GB 6.2 GB 1.4 MB/s 48.4 MB/s
ream_6 0.531 1.599 2.3 GB 7.3 GB 1.2 MB/s 89.4 KB/s
zeam_0 1.636 1.969 2.1 GB 3.1 GB 6.6 MB/s 2.6 MB/s
zeam_1 1.666 2.037 2.4 GB 3.5 GB 7.3 MB/s 2.8 MB/s
zeam_2 2.293 2.923 2.1 GB 3.4 GB 11.8 MB/s 2.6 MB/s
zeam_4 1.529 1.926 2.1 GB 3.0 GB 10.7 MB/s 2.8 MB/s
zeam_5 1.635 2.162 2.3 GB 4.0 GB 11.7 MB/s 3.3 MB/s
zeam_6 1.591 2.040 2.1 GB 2.8 GB 11.4 MB/s 2.9 MB/s
Show code
print(f"Devnet: {devnet_id}")
if devnet_info:
    print(f"Duration: {devnet_info['duration_hours']:.1f} hours")
print(f"Containers analyzed: {cpu_df['container'].nunique() if not cpu_df.empty else 0}")
Devnet: pqdevnet-20260701T1044Z
Duration: 0.7 hours
Containers analyzed: 33