Heavy Artillery (Artillerie Lourde) (track)
by Django Reinhardt
Year: 1961
From the album Djangology (track #5)
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Heavy Artillery (Artillerie Lourde) appears on the following album(s) by Django Reinhardt:
- Djangology (track #5) (this album) (compilation) (1961)

Listen to Heavy Artillery (Artillerie Lourde) on YouTube
Heavy Artillery (Artillerie Lourde) ratings
Average Rating = (n ÷ (n + m)) × av + (m ÷ (n + m)) × AVwhere:
av = trimmed mean average rating an item has currently received.
n = number of ratings an item has currently received.
m = minimum number of ratings required for an item to appear in a 'top-rated' chart (currently 10).
AV = the site mean average rating.
Showing latest 5 ratings for this track. | Show all 15 ratings for this track.
| Rating | Date updated | Member | Track ratings | Avg. track rating |
|---|---|---|---|---|
| 12/10/2025 01:19 | Exist-en-ciel | 102,559 | 71/100 | |
| 08/06/2022 10:29 | byuzak | 32,905 | 78/100 | |
| 11/14/2021 05:57 | 34,164 | 76/100 | ||
| 08/27/2021 16:43 | 6,851 | 90/100 | ||
| 06/28/2021 00:28 | vinichelsea | 4,388 | 74/100 |
Rating metrics:
Outliers can be removed when calculating a mean average to dampen the effects of ratings outside the normal distribution. This figure is provided as the trimmed mean. A high standard deviation can be legitimate, but can sometimes indicate 'gaming' is occurring. Consider a simplified example* of an item receiving ratings of 100, 50, & 0. The mean average rating would be 50. However, ratings of 55, 50 & 45 could also result in the same average. The second average might be more trusted because there is more consensus around a particular rating (a lower deviation).
(*In practice, some tracks can have several thousand ratings)
This track has a Bayesian average rating of 76.6/100, a mean average of 77.0/100, and a trimmed mean (excluding outliers) of 77.0/100. The standard deviation for this track is 8.9.
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