Columbian Exchange/Conquistador Web Activity

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1 NAME: Assgnment # DATE: Columban ExchangeConqustador Web Actvty Drectons: Please follow the drectons to each webste and answer the questons for each completely usng COMPLETESENTENCESThs assgnment wll help better prepare you for your DBQ on the Downfall of the Natve Amercans TASK 1: Columban Exchange Go to answer the followng questons Use ths webste to help 1 What was the Columban Exchange? 2 What were 4 techncal effects of the Columban Exchange? Explan the effect each had on the Natve Amercan 1 populaton n what ways dd anmals effect the New World?

2 4 What plants were consdered most sgnfcant to the New and old Worlds? LSTthe plants AND the sgnfcance (mportance) NEXT: Go to wwwscholastccomteachersartclecolumban-exchange-overvew 5 Lst 4 tems EUROPESHAREDwth the AMERCAS Lst 4 tems THE AMERCAS SHAREDwth EUROPE NEXT: Go to Clck on "Dseases" and answer the followng questons 7 What dsease were spread to the Natve Amercans- LSTALL 8 Whch dsease caused the destructon (demse) of 80-90% of Natve Amercan populaton?

3 NEXT: Go back and clck on "Corporate Structure" and answer the followng questons 9 Name the 5 MOST powerful European natons who fought over resources of the Amercas for over 400 years of the Columban 1 Exchange Name 4 companes that formed what were ther commodtes (products they soldpurchased) and Afflatons and where ther center was located Recreate ths nformaton nto chart form on the space provded

4 NEXT: Go to %20Exchangeshtm 11 Lst 5 dseases ntroduced to the Amercas by the Spansh What % of Natve populaton des from due to these dsease and others? 13 How dd the ntroducton of horses change lfe n Amerca? 14 What NEGATVE MPACT dd non-natve anmals have on the New World? 15 Whch non-natve plant mpacted (harmedchanged) lfe n Amerca the most? How? Why? Explan 16 n YOUR OPNON what were the 5 most mportant "technologes" ntroduced to the Amercas by Europeans? Lst them n order from 1 (made the GREATESTMPACT) to 5 and gve a bref explanaton for each rankng

5 17 COMPARE and CONTRAST the nformaton you obtaned from each of the webstes Gve at least 2 examples of how t was smlar and at least 2 examples of how t was dfferent TASK 2: Conqustadors For ths task you wll be usng the followng webste and lnks from that ste to fll n the worksheets and map provded Go to and answer the followng questons 18 Fll n the worksheets for: Hernando Cortes - Francsco Pzzaro - Vasco Nunez de Balboa 19 Usng the Map from your packet Map the routes for: Cortes - Pzzaro - De Soto - Coronado - Narvaez - Da Vacca Draw the routes on the map provded - Create a Map Key- Use dfferent colors to represent each Conqustador

6 - Use the Lnks provded for Enchanted Learnng and Explorers 20 Usng the Same Map locate and label the areas settled by the: Mayans - Aztecs - ncas - Label the colors used for those cvlzaton n the Map Key Based on the nformaton you have gathered n the research exercse explan n 2 well developed paragraphs how the Columban Exchange and the exploraton and conquest of the Conqustadors led to the downfall of the Natve Amercans

7 Hernando Cortes (1Opts) 1 What part of the new world dd Cortes clam for Span? 2 Where and when was Cortes born? 3 Cortes's frst trp to the new world was to what locaton? 4 What was hs reward for the good work done n Cuba? 5 What dd Cuba's governor ask Cortes to do? 6 Gve the name of the Aztec captal Who s ther leader? 7 Explan what happened when Cortes found the Aztecs? Gve specfcs 8 Who dd Cortes leave n charge when he went back to Cuba? What happened? 9 What were two other places that Cortes explored? When dd he do ths? 10When and where dd Cortes de?

8 Vasco Nunez de Balboa (10 pts) 1 de Balboa was the frst European to do what? 2 n 1500 who dd de Balboa set sal wth? Where were they headed? 3 He went n search of what? When ths ddn't work out what dd he do? 4 Who s Leoncco? 5 What dd he do n 1511? 6 Who was Careta? 7 When and from where dd de Balboa see the Pacfc Ocean? 8 What other famous explorer was wth de Balboa on hs trp across Panama? 9 What crme was de Balboa charged wth? Explan 10How dd he de?

9 Francsco Pzarro (10ptsl 1 _What part of the New World dd Pzarro clam for Span? 2 Where and when was Pzarro born? 3 What area dd Pzarro focus hs exploraton? 4 Who dd Pzarro take hostage and what dd he ask for n return for lettng ths hostage go? 5 Gve specfc detals on Pzarro's conquerng

10 Name _ Date _ Amercas -- _-_ :; q;-;::-::;' :' '::J::-----_ Vf;? : A-? O "7 0-;_- a V -: v> ''" -< ' " -<:T' - ' ;:><9 RCTC70CEAN) -: -: A' -" -c ''' ' -c -c " l t ':"' ' PJ0"" ;l ; -l- '- ' j j '<o> NORTH - f : ; 10"S-----l---'"- " :30'5'-"' AO $#' " _ J "1= - 1 '< _ ----T - 4- D ' Carbbean Sea ' '< " m 0 160'W 500 1S0'W _Lw+ E--L 140'W ' 130'W S ' ' 90'W SO'W ; 70'W 60-W s--t'----t-_t--f_:-l Outlne Maps Copyrght C Houghton Mffln Company All rghts reserved SO'W '-"1-7-- JO'W r--:«; 1-- '--- - ' 40'W " <:r too'w ;' --L --- rr=: 110'W SOUTH r ATLANTC OCEAN ;;' f t t: 12:r'w 1000 N ' 1 ' - L 50'5'-' 1000 ' " -1 Natonalboundary km 0 : W " l '--" _ -:::'::::l ("7--"r?-:' _--- - L ; -'------t---- ' A--+--r t---- ' -- SOUTH ---PACFC 20(5--- OCEAN '1" -' : NORTH 1 ---t r--- -r- qualor : ; ----"T' ' L ' " ""- ' -10 N-_+---_-+ o 1 (_ f' A "") GUlf of Mexco -- J ' ' -s-: -"--- '1 : 2'1 W- --t;- j '4f'fu ::l -----f--1 _'-' g--l '--- -PACFC OCEAN 20'W 10'W "x AWJaton 'laae lt wwweduplacecom

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