-=====
-
-trategies for upscaling
-From 25K to 25M : in 1000 chunks of 25K
-Reference values :
- K 0 = 200 super consumers (SC)
- K ∗ = 15 nal clusters
-1st strategy
- Do 1000 times ONLY Energycon's 1st-step strategy on 25K clients
- With the 1000 × K 0 SC perform a 2-step run leading to K ∗ clusters
-
---> il faut s'arranger pour que
-
-2nd strategy
- Do 1000 times Energycon's 2-step strategy on 25K clients leading to
- 1000 × K ∗ intermediate clusters
- Treat the intermediate clusters as individual curves and perform a
- single 2-step run to get K ∗ nal clusters
+#point avec Jairo:
+#rentrer dans code C cwt continue Rwave
+#passer partie sowas à C
+#fct qui pour deux series (ID, medoides) renvoie distance WER (Rwave ou à moi)
+#transformee croisee , smoothing lissage 3 composantes , + calcul pour WER
+#determiner nvoice noctave (entre octave + petit et + grand)
+
+#TODO: load some dataset ASCII CSV
+#data_bin_file <<- "/tmp/epclust_test.bin"
+#unlink(data_bin_file)
+
+#https://stat.ethz.ch/pipermail/r-help/2011-June/280133.html
+#randCov = function(d)
+#{
+# x <- matrix(rnorm(d*d), nrow=d)
+# x <- x / sqrt(rowSums(x^2))
+# x %*% t(x)
+#}
+
+#TODO: soften condition clustering.R line 37 ?
+#regarder mapply et mcmapply pour le // (pas OK pour Windows ou GUI... mais ?)
+#TODO: map-reduce more appropriate R/clustering.R ligne 88
+#Alternative: use bigmemory to share series when CSV or matrix(...)
+
+#' @importFrom synchronicity boost.mutex lock unlock
+
+subtree: epclust, shared. This root folder should remain private