Guidelines for a Good Presentation

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1 Guidelies for a Good Presetatio Luis M. Correia Istituto de Telecomuicações / Istituto Suerior Técico Techical Uiversity of Lisbo, Portugal (00/06/, revised 006/0/03)

2 Outlie Basic riciles. Structure. Sizes ad cotrast. Style. Examles. Coclusios.

3 Basic Priciles () The resetatio of a wor is iteded to show oly its major asects, ad ot the whole of it. Oe should choose the most imortat results for the resetatio. The resetatio should be structured i the same way as the wor. The umber of ages should be such that age corresods to available miute. 3

4 Basic Priciles () A aer coy of the resetatio should be distributed to the audiece at the begiig, amely i the format of 3 ages of resetatio by A4 age, with commet lies o the side. 4

5 Structure 5 The structure should be as follows: Cover Outlie Itroductio/Motivatio/Objectives Develomet Coclusios

6 Cover The cover age should cotai (i geeral): the title of the wor; the ames of the authors; the istitutios to which the authors belog to. 6

7 Develomet Develomet should cotai (i geeral): exlaatio o models/algorithms; descritio of models/algorithms imlemetatio; assessmet of models/algorithms; aalysis of results; idetificatio of the mai results. 7

8 Sizes ad Cotrasts 8 Each age should cotai a few short seteces. Headers should be writte i Times New Roma 44 t (or equivalet). The text should be writte i Times New Roma 3 t (or equivalet), or slightly lower. The colour of the text should mae a clear cotrast with the bacgroud, i order to mae readig easy. The size of text i equatios, tables i figures should be similar to the geeral oe.

9 Style () 9 The style of the resetatio should be coheret ad uiform. Oe should write comlete hrases, with well defied ideas. Oe should avoid usig acroyms with ot well ow meaig. I geeral, oe should ot reset refereces from the wor. Do ot reset very comlex equatios, with a difficult descritio.

10 Style () Each age should cotai a secific title related to its cotets. Do ot reeat the titles. I case it is eeded, iclude umberig after it, so that they ca be differetiated. Iclude a referece to the source whe usig figures from other authors. 0

11 A Good Examle for Equatios The roblem ca be exressed by a Marov chai: where () is the robability of the system beig i state ad = U B b P ) ( ) ( ) ( λ λ β α λ + = ) (

12 A Bad Examle for Equatios The loss ca be calculated via oe of the followig equatios ( ) ( ) ( )!, I! = = = = = N N N N N N e C Q β α σ ( ) + Φ Φ + Δ = π λ π b h b d b Q base [ ] = = 0,! q q N q c I j g q N Q π 0.0, < < + = g g g g Q

13 A Good Examle for Tables 3 System NAMTS NMT AMPS C TACS R000 RMTS GSM PDC cdmaoe UMTS Lauch Coutry J N, S, SF USA D UK F I EU J USA EU, J

14 A Bad Examle for Tables Alicatio Abbreviatio Average Data rate [b/s] Burstiess duratio [mi] UP DOWN UP DOWN HD Video-telehoy HVT ISDN-Videocoferece IVC Mobile Video Surveillace MVS HDTV Outside Broadcast HOB Wireless LAN Itercoect. WLI Data File Trasfer (FTP) FTP Professioal Images PIM Desto Multimedia DMM Mobile Emergecy Serv. MES Mobile Reair Assistace MRA M obile Tele-worig M TW Freight & Fleet Maagemt. FFM Electroic Mailbox Service EMB for Multimedia E-commerce ECO Multimedia Library MML Tourist Iformatio TIN Remote Procedure Call RPC Urba Guidace UGD Assistace i Travel ATR TV Programme Distribut. TVD E-ewsaer E-NP

15 5 A Good Examle for Figures ()

16 Log Growth Log Growth A Good Examle for Figures () x/3-6mo M 0 00 WAN/MAN Badwidth Processor Performace 000x x/8mo Courtesy Greg Paadooulos, Su Microsystems

17 A Bad Examle for Figures The comariso betwee theory ad measuremets shows that the model is reasoable. 7 Pr [dbm] (theo.) (ex.) d_via [m]

18 Coclusios 8 This resetatio describes some basic riciles for a good resetatio of a wor. The structure should be similar to the oe of the wor. Fots should be large eough, so that it is easy to read text, grahics, tables, ad so o. Seteces should be short ad comlete, with well defied ideas. Each age should corresod to miute resetatio.

Guidelines for a Good Presentation. Luis M. Correia

Guidelines for a Good Presentation. Luis M. Correia Guidelies for a Good Presetatio Luis M. Correia Outlie Basic riciles. Structure. Sizes ad cotrast. Style. Examles. Coclusios. Basic Priciles The resetatio of a work is iteded to show oly its major asects,

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