Dividing Algebraic Fractions

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1 Leig Eheme Tem Model Awe: Mlilig d Diidig Algei Fio Mlilig d Diidig Algei Fio d gide ) Yo e he me mehod o mlil lgei io o wold o mlil meil io. To id he meo o he we o mlil he meo o he io i he eio. Simill o id he deomio o he we o mlil he deomio o he io i he eio. Yo e he SNALPHABET em o hel o hee (ee d gide: SNALPHABET). Ae hi o hold imli o we, i o, ideiig d ellig dow ommo o i o meo d deomio. I o he diil idig ommo o, he d gide: Simle Foiio hel. ) Thi we o e imliied he he meo d deomio do o he ommo o. ) Thi we o e imliied he he meo d deomio do o he ommo o. ) k k Thi we o e imliied he he meo d deomio do o he ommo o.

2 d) I hi eio i i el o e ke o kee he deomio ogehe d hel o o ellig eo. Thi we o e imliied he he meo d deomio do o he ommo o. Yo m e emed o el dow he i he meo i i iide he ke. Rememe ellig dow i o diidig d o o ee he om he ddiio o. ) ) Thi we o e imliied he he meo d deomio do o he ommo o. ) I i ommo o mlil oh meo d deomio i eio like hi. Howee hi wold e ioe. Yo eed o ee he me io (/) d mlil he io ogehe i he l w. Yo hold elie h hi eio i ideil o he eio eio. Thi we o e imliied he he meo d deomio do o he ommo o. ) Thi we o e imliied he he meo d deomio do o he ommo o. d) Thi we o e imliied he he meo d deomio do o he ommo o.

3 ) ) Thee i ommo o o i he meo d deomio whih e elled dow o gie: ) Thee i ommo o o i he meo d deomio whih e elled dow o gie: ) Thee i ommo o o i he meo d deomio whih e elled dow o gie: d) Thee i ommo o o i he meo d deomio whih e elled dow o gie:

4 e) 8 m m m Thee i ommo o o i he meo d deomio whih e elled dow o gie: m m m m ) 8 8 Hee he meo d deomio e ideil d o he we i. g) ) ( ) ( Thee i ommo o o i he meo d deomio whih e elled dow o gie: h) 8 Thee i ommo o o i he meo d deomio whih e elled dow o gie: 8 i) ) ( Thee i ommo o o i he meo d deomio whih e elled dow o gie:

5 j) Yo oe he ke i he meo o eloe whehe o he ommo o o el dow: So hee e o ommo o o el dow. k) ) ( Thee look like hee e o ommo o o el dow o oie he meo d eel o whih i ommo o he meo d deomio: l) Thee look like hee e o ommo o o el dow o oie he meo d eel o whih i ommo o he meo d deomio: m) / g Thi i ie omlied eio d o o m w o ek i dow io mlle. Fil eom he mliliio d e ke o hel kee hig ogehe: / / / g g g Now le emie he meo i moe deil: /

6 Uig hi el, h he meo i el o hee o ee h: / g g Thi we o e imliied he he meo d deomio do o he ommo o. ) Yo e he me mehod o diide lgei io o wold o diide meil io. Fil ie ( ide dow) he eod io d he mlil ied o diide. Yo e he me mehod elied i eio o hi hee o mlil he io. Ae hi o hold imli o we, i o, ideiig d ellig dow ommo o i o meo d deomio. I o he diil idig ommo o, he d gide: Simle Foiio hel. ) Thi we o e imliied he he meo d deomio do o he ommo o. ) Thi we o e imliied he he meo d deomio do o he ommo o. ) Thi we o e imliied he he meo d deomio do o he ommo o. d) Thi we o e imliied he he meo d deomio do o he ommo o.

7 e) Thee i ommo o o i he meo d deomio whih e elled dow o gie: ) A A A A A A A he meo d he deomio e he me, he el dow o gie. g) Thi we o e imliied he he meo d deomio do o he ommo o. h) 8 Thi we o e imliied he he meo d deomio do o he ommo o. i) The ddiio o ke hel o o ee whih ellio e llowed d whih e o. Hee hee i ommo o o i he meo d deomio d o: ) I weig hi eio i i el o o o ememe h io i j ohe w o wiig diiio o he meo he deomio. )

8 ) whih i he me he eio eio d o he we i. ) Fom he eio eio o ee h d o: d) Thi e ewie (o he me o whih e i he eio d i ewiig o hel o ee) whih i he me he eio eio d o he we i. e) Gie he eio eio o m o oie e emegig whih lik h me o oe i me owe o hi e d he el. Howee o lo e he he o eio eio o hel. I o look d o will oie h owe wih hee oe oe e eled wih. Uig hi, d he el om : Rele wih Rele wih Ad o me owe o hi e wih i i iml.

9 ) Uig he el om he eio eio, h me owe o hi e wih i i el o o id h: Rele wih g) (). Coeig o he ide, : ( ) I () i lw whe i odd me ( o ee wh?). h) (). Coeig o he ide, : ( ) I () i lw whe i ee me ( o ee wh?). Thee model we e oe o eie o mhemi oded he Leig Eheme Tem. S he QR-ode wih mhoe o moe eoe.

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