Creative Practicing. By Jimmy Wyble edited by David Oakes

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1 Cretve Prctcng By Jy Wyble edted by Dvd Okes Edtors Note: Ths terl s n excert fro Jy s lecture tht he resented t Muscns Insttute on Arl, 008. Ths s the thrd eek of ten-eek qurter. In the revous eeks, he hd been orkng th chord scles nd other bsc concets th ths ne grou of students. When I rrved t the clss tody, Jy hd orked out soe oves tht he nted to shre th the students. I ended u trnscrbng these des nd nottng the on the bord for h. Jy s thnkng n ters of tryng to srk the cretvty nd gnton n ther (GIT students) rctcng. Ths cket ll outlne hs thought rocess. Fngerng exlnton: Here e ll use stndrd clsscl gutr notton: Nubers round the note heds reresent left hnd fngerng Crcled nubers re the strng tht the note s lyed one. Rght hnd fngerng: thub, I ndex fnger, ddle fnger, rng fnger. Let s begn by lookng t the G7(b) chord. Ths vocng s jzz gutr stndby tht s used over nd over gn. Wht f e chnged ths vocng round. Frst let s ove the root fro the 6 th strng to the st strng. We hve to lter our left hnd fngerng slghtly to do ths. (Exle ). å G7(b) G7(b) We cn brek don ths vocng nto to note grous. Reet orkng crefully on the rght hnd fngerng. Ths s not nturl ove tht needs uch rctce to erfect. Lft your fngers but kee the voces connected. (Exle ) G 7(b ) å á Ö b l { { Cretve Prctcng by Jy Wyble 008 Jy Wyble - All Rghts Reserved

2 Wht f e exnded ths de bck don to the 6 th strng th to note grous. (Exle ) G 7(b ) å ᫈ «bˆ Ö ˆ «««á b«ˆ Ö ˆ_ á Ö á l { ˆ { Exle s V I de bsed off of our ne G7(b) vocng. Alys try to fnd lnes nd voce oveent nsde of your chord shes. ==== á å b Ö n # á l á # Ö n = l Ö Lets lso look t tht C6/9 vocng fro exle. Tht vocng hs soe nterestng eleents. The frst roble n lyng tht chord s not lyng on the rd strng nd slttng the chord vocng beteen your thub nd ndex lyng the loer notes nd your ddle nd rng fnger lyng the uer notes. Brek the chord u nto to note voces. (see Exle ) C å ˆ_«6/9 á ˆ_«l { Ö { Cretve Prctcng by Jy Wyble 008 Jy Wyble - All Rghts Reserved

3 Try lyng ths vocng s chord scle. Use four fngers for four notes. (.e. no brs). 7 0 C 6/9 G 6/9 D 6/9 A b6/9 E (b6/b9) B b6/b9 8 F 6/9 ==== l _ l l l l C 6/9 ==== l l l l The nterestng chord here s the E nor vocng. Wht f e ove the root don ½ ste. The chord vocng tkes on ore of Eb do. she. (see exle 6) 6å Eb (no 7th) 6 Cretve Prctcng by Jy Wyble 008 Jy Wyble - All Rghts Reserved

4 _ Wht f e broke u the chord nto to note voces. (see exle 7) E b 7å á ˆ_ «ˆ_«l { b Ö { Lets crete lne bsed off of ths she. (see exle 8) E b ( b ) A á _«b j 7 b Ö á b l Ö l b_ö 8å «6 Edtors Note: Exle 8 s n de tht Jy lso used n etude 7 fro the book Art of To Lne Irovston. Wht f e connected exles nd 8 together. (see exle 9) E b ( 9å «b ) «««ˆ bˆ Ö _ áb Ö A á ˆ_ bˆ á ˆ_«b j 7 l Ö á Ö _ l b_ö Cretve Prctcng by Jy Wyble 008 Jy Wyble - All Rghts Reserved

5 _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ Edtors Note: In Jy s frst senr t Muscns Insttute n Februry 007, he sd tht hs uscl groth hd lys conssted of uscl questons tht lys begn th Wht f. Wht f I ly ths jor scle th loered rd scle degree? Wht f I ly jor scle nd rse the th degree? Jy ce before uch of the conventonl jzz noenclture tht e use tody n educton. There s no one ho bck n the 90 s nd erly 90 s could tell h tht ths sound s elodc nor or tht ths sound s lydn nd ths s ho they re used. Jy hd to dscover ll of these sounds by skng ht f nd chllengng hself to lys contnue lernng. Ths lesson s gret exle of ths thought rocess tht strted fro one chord nd contnued to develo n very cretve y. Reeber tht ll of these des strted th G7(b) vocng nd ent fro there. I hoe tht ths lesson ll nsre you to sk the ht f queston n your on lyng. Belo s y rrngeent of Green Dolhn Street (frst 6 brs) usng des fro ths lesson ln. Enjoy! Mesures,, nd use concets fro the chord scle on ge. Don t ly on the rd strng. Mesure 8 uses n de fro the Contruntl Concets cket. (g. exle ) Mesures 9 nd 0 use the conteront de slr to exle on ge of ths cket. Mesures nd trnsoses the se de u nor rd. Br 6 uses the de on ge exle 8. C 6/9 _ _«Œ Ö J Ö ˆ_«á C Ó b_ _ 7 Œ _ Ö Ö J Œ b l l l l b J l 6 D (dd) /C _ Œ Ö á D b (dd)/c bˆ_ «C Ö b 6/9 A 7(b 9) J á _ŒÓ_ Ö b Œ Ö J Ñ««««b_ ˆ ሠbˆö áˆ á «««# bˆ Ö nˆ á #ˆ l l l l #_ Ö l D BV «Ö á á Ö G7 Ö b Ö á bˆ_ «bˆ_ «C 6/9 Ö Ö # Ö J l l l l J l F b _ «B Ö á bb b ˆ_ «b 7 bˆ_ «nˆ_ «b #ˆ_ «E b 6/9 G+ 7 # # b_ b b _ J Ó_ á bˆ_ Œ á # «l l l l Ö Ö b Ö_ Cretve Prctcng by Jy Wyble 008 Jy Wyble - All Rghts Reserved

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