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5 Commits
0.2.4 ... 0.2.9

Author SHA1 Message Date
d85c32247e packets, 2
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2025-02-12 18:48:37 +01:00
ba7b86e527 packets
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2025-02-12 18:42:27 +01:00
c93ae4067e more graphs, 5
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2025-02-12 13:38:26 +01:00
1bbfdf65fb more graphs, 3
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2025-02-12 13:28:29 +01:00
315ad9998b more graphs, 2
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2025-02-12 13:18:41 +01:00

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@ -195,11 +195,11 @@ def ntpserver():
) )
graph_html_1 = fig.to_html(full_html=False, default_height='30%') graph_html_1 = fig.to_html(full_html=False, default_height='30%')
query = """ query = """
select tiem_bucket('5 minutes', time) as bucket, select time_bucket('5 minutes', time) as bucket,
device, device,
avg(cast(values->'lan-out'->>'value' as int)) as outOctetsPerSeconds, avg(cast(values->'lan-in-pkts'->>'value' as float)) as packets
avg(cast(values->'lan-in'->>'value' as int)) as inOctetsPerSeconds
from measurements from measurements
where time >= date_trunc('day', now()) AND time < date_trunc('day', now()) + '1 day'::interval and where time >= date_trunc('day', now()) AND time < date_trunc('day', now()) + '1 day'::interval and
application = 'SNMP' and attributes->>'Label' = 'david' application = 'SNMP' and attributes->>'Label' = 'david'
@ -207,18 +207,18 @@ def ntpserver():
order by bucket, device order by bucket, device
""" """
df = pd.read_sql(query, con=engine) df = pd.read_sql(query, con=engine)
fig_2 = px.line(df, x='bucket', y=['outOctetsPerSeconds', 'inOctetsPerSeconds']) fig_2 = px.line(df, x='bucket', y='packets')
fig_2.update_layout(
xaxis_title="", xaxis_title="",
yaxis_title="", yaxis_title="",
title=f"Network Load", title=f"Packets"
yaxis=dict(ticksuffix=" KiB/s")
) )
graph_html_2 = fig_2.to_html(full_html=False, default_height='30%') graph_html_2 = fig_2.to_html(full_html=False, default_height='30%')
query = """ query = """
select tiem_bucket('5 minutes', time) as bucket, select time_bucket('5 minutes', time) as bucket,
device, device,
avg(cast(values->'local'->>'value' as float)) as loadAverage1Min avg(cast(values->'local'->>'value' as float)) as loadaverage1min
from measurements from measurements
where time >= date_trunc('day', now()) AND time < date_trunc('day', now()) + '1 day'::interval and where time >= date_trunc('day', now()) AND time < date_trunc('day', now()) + '1 day'::interval and
application = 'SNMP' and attributes->>'Label' = 'david' application = 'SNMP' and attributes->>'Label' = 'david'
@ -226,7 +226,7 @@ def ntpserver():
order by bucket, device order by bucket, device
""" """
df = pd.read_sql(query, con=engine) df = pd.read_sql(query, con=engine)
fig_3 = px.line(df, x='bucket', y='loadAverage1Min') fig_3 = px.line(df, x='bucket', y='loadaverage1min')
fig_3.update_layout( fig_3.update_layout(
xaxis_title="", xaxis_title="",
yaxis_title="", yaxis_title="",