Using Compaction to Expand the Curriculum and Extend Learning

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1 Usig Compcio o Expd he Curricuum d Exed Lerig Preseed by: Wedy Pese & Meiss Pese Mechicsburg Are Schoo Disric hps://goo.g/tjpyqe

2 Bri Wrm-UP C you me he foowig fmous fces?

3 Cssroom The Aswer? Scerio Gifed Suppor Scerio Afer dys of procrsiig, you c void i y Summer is quickycommuicio, comig o ed d fer weeks oger. You pu ou your cseod iformio from of icipio, your Cooperio, offici css d roser hs rrived s yer d begi o hu dow he peope d i your ibox. You ook Compcio! i over wih boh pperwork h wi e you which cssrooms ech excieme d ie bi of fer. Oh o wh s of your sudes wi be i his yer. How my his? There re wo gifed sudes i your css his differe echers wi you be workig wih? Which yer Now wh? Wh re your resposibiiies, of hese echers re ew his gifed hig? Wh do you eed o do? Whe you hve sudes How re you goig o work hd i hd wih his i eed of erig suppor, youdoe kow excy wh Esier sid h my differe echers wih such diverse echig o expec, bu gifed sudes Now wh? righ? syes?

4 i y o u B. d e f i G d d g e i p e u T c s s d e e s m e g s i h r r o p r C o c e i d r s o d Your su e e. w ' o u r r o Y o. m g o. i. p. g u c i s r s s me p o s s e y i d io your

5 Coborio d Compcio my be your swer!

6 Cheges Fidig he ime Fidig he meris Awreess of he curricuum bewee he Gifed Educio (GE)Techer d Regur Educio (RE) Techer Lck of suppor from oher echers or dmiisrio Growig gifed sude beyod cery defied grde eve expecios (Techers kow heir grde-eve coe, bu o ecessriy sever grdes bove) hvig o reive he whee s my gifed ides re becomig more commo i he geer cssroom such s STEM, Progrmig, d Performce-bsed sks

7 I Mechicsburg Are Schoo Disric, we hve foud wy o cke hese probems.here s wh works for us

8 COMPACTION A Differeiio sregy: Compcs wh sudes eed o er d frees up ime o exed/cceere coe bsed o pre-ssessme resus Differeiio Sudes my redy kow much of he coe hey re bou o er. Promoes idepedece d biiy o work ow pce wih ess prcice d repeiio

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10 Compcio Wh re he bsic seps? preesed prior o he sr of ech ui Typicy i mh cosuio bewee gifed echer d geer educio echer Record specific essos sudes re pr of d which hey shoud op ou Logged o fro cover pge or o erig corc Compee Mos Difficu Firs Sudes use ered ime o work o Compcio projec exeds curre opic cceeres curre opic Re-word Ierdiscipiry No-compced essos mii esso Mos Difficu Firs Move io compcio projec

11 Cssroom Mgeme Fir is wys equ Jus righ fi Wh I eed Fexibiiy! Commuicio Sude, pre, Gifed echer d geer educio echer Purposefu pig of isrucio Pre-ssessig Groupig/Pirig Mii-essos Beded or fipped isrucio Cer expecios Sude Schedue Workig zoe Behvior Lerig Corcs/Meus Choice/Sef-seeced iemized direcios due de

12 Eemery Schedues/Meus/Corcs

13 Eemery Smpes 1s Grde Exmpes 2d Grde Exmpes 3rd Grde Exmpes Addiio/Subrcio & Gyph Addiio & Legos Are/Perimeer & Prk Desig Addiio/subrcio Codes Moey & Vedig Mchie Addiio/Subrcio & Abcus

14 Eemery Smpes 4h Grde Exmpes Geomery & Nvjo Rugs Pce Vue/Coversios & Mesure of Thigs Frcios & Bes Chips 5h Grde Exmpes Surfce Are/Voume & Cookie Coier Divisio/Muipicio & McDod's Where c I ge ides? hp:// /ResourceCoecio/Preview /59 hp://mp.mhshe.org/sk s.php hps:// sks/ hps:// m/ Whe wi McDods se is riioh hmburger? hp:// s/mhmomes/browsemom es?c= hp://frcfoudio.org/

15 Midde Schoo Corc

16 Midde Schoo Smpes.co/PHyAqhNri

17 Hepfu his Check i quicky whe kig sudes Pos-is o sude s foder Googe drive shrig & commes Emis Before/fer schoo/pig pre-ssessme - compcio cover shee/corc Addiio ides?

18 Shrig Shrig ides d meris mkes us beer echers d heps us o chieve he uime go of hepig ech sude rech heir grees poei.

19 Thks for shrig your ides! Meiss Pese Eemery Gifed Suppor Techer Wedy Pese Midde Schoo Gifed Suppor Techer Smpe 2d Grde Projec Smpe 5h Grde Projec Compcio Bsics Compcio Corc

20 KEEP CALM d COMPACT

Reinforcement Learning

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