STRING ORCHESTRA INTERMEDIATE LEVEL. From the Broadway Show. Chitty Chitty Bang Bang. Preview Only. Featuring Chitty Chitty Bang Bang,

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1 STRN ORHESTRA NTERMEATE LEVEL rom the roaday Sho hitty hitty ag ag eaturig hitty hitty ag ag, chu-chi ace, You To ad Me Ol am-oo y Richard M Sherma ad Robert Sherma Arraged by victor lopez NSTRUMENTATON oductor 8 st Violi 8 d Violi 5 3rd Violi (Viola T) 5 Viola 5 ello 5 Strig ass Accompaimet program otes aste your seatbelts! Havig bee omiated or three Olivier Aards, icludig est Musical, ad iig est Musical i the 003 Variety lub Aards, hitty hitty ag ag is a amazig spectacle, complete ith breathtakig sets ad hi-tech izardry illed as the logest-ruig sho i the history o the Lodo Palladium theatre, hitty hitty ag ag has bee called the most phatasmagorical musical o all time Victor Lopez has arraged a medley o the classic 968 ilm soudtrack or itermediate strigs, eaturig the the Oscar-omiated title sog, hu-hi ace, You To ad Me Ol am-oo Note rom the editor All eli strig parts have bee careully boed ad igered appropriately by level The Yello Very egiig series icludes may boigs as ell as remider igerigs or irst-time readers The Red egiig series icludes requet boigs to assist youger players igerigs or altered pitches are ote marked The ree termediate series icludes appropriately placed boigs or middle-level studets igerigs ad positios are marked or otes beyod irst positio The lue ocert series icludes boigs appropriate or the experieced high school player igerigs ad positio markigs are idicated or diicult passages ob Phillips eli/pop Strig Editor Please ote: Our bad ad orchestra music is o beig collated by a automatic high-speed system The eclosed parts are o sorted by page cout, rather tha score order We hope this ill ot preset ay diiculty or you i distributig the parts Thak you or your uderstadig rade Level: ½

2 ONUTOR SORE uratio - 3:5 Violis Viola (Violi ) ello Strig ass Accompaimet (Vl ) ello rightly {h = } rightly {h = } 7 8 rom the roaday sho hitty hitty ag ag eaturig: hitty hitty ag ag, hu-hi ace, You To, ad Me Ol am-oo hitty hitty ag ag 0 5 Richard M Sherma ad Robert Sherma Arr by Victor Lopez 6 b b b dim7 b (Reeed) EM UNART ATALO N (Publishig) ad ALRE PULSHN O, N (Prit) This Arragemet 006 EM UNART ATALO N All Rights Reserved icludig Public Perormace To purchase a ull-legth recordig o this piece, go to alredcom/doloads

3 3 (Vl ) ello (Vl ) ello 3 A mi o b - 6 dim7 b Ami7 - V - / Emi o A mi

4 (Vl ) ello (Vl ) ello,, 5 hu-hi ace 30 Moderately {h = q } 30 o b Moderately {h = q } b - dim7 b 6 To oda 3 V - / To oda E7-3 J J P J P J A mi , -3 b Ami 3, 9 7 b mi b Ami 7

5 5 (Vl ) ello (Vl ) ello 35 3 Ami 36 P P dim7 37, Ami 7 A o 3 b Ami mi 7 b 39 3, / Lo 5,,,, 508 7

6 6 (Vl ) ello (Vl ) ello 6-7,,, 6 5 Moderately / b 6 dim7 b Ami Ami/ 53 mi Viola ue: mi 9 55,, mi You To Viola ue: / 56 mi7 + 5 Ami Ami/ 57,, 508

7 7 (Vl ) ello (Vl ) ello b dim7 b / 3 3 A N mi Viola ue: / 6 67 Ami 6 mi7(b 5) Ami/ 68 J J J J E7 b 6 dim7 b 63 Ami mi7

8 8 (Vl ) ello (Vl ) ello 70 Viola ue: mi 76 3 mi7 7 mi mi7 + b, / 7/E b b dim7 b b dim7 b b / mi6/ b A b b / A mi7

9 9 (Vl ) ello (Vl ) ello 8,,,, 8 {q = h } 8 {q = h } 87 b b b b A b b rightly 88 Lo 83 b b b b 89 A b b b b b b A b b b b b b A b Me Ol am-oo b 9 b b

10 0 (Vl ) ello (Vl ) ello ,,, A7 b Oe, to, b to, b Oe, Oe, to, b Oe, to, b b b b 99 9 three, our, our, three, three, our, three, our, ive, six, ive, six, ive, six, ive, six, 0 96 b seve, eight! b seve, eight! b seve, b seve, eight! eight! b b b b

11 (Vl ) ello (Vl ) ello 0 05, i E7 0 i oda oda A mi7, 6,, A7 3 b 06 + b ƒ ƒ ƒ ƒ ƒ ƒ 5 E al oda,,,,, al oda A ~~~~~ liss

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