Premium Essay

Why DWI Is Important Essay

Submitted By
Words 561
Pages 3
If you've recently made the mistake of committing a DWI (Driving While Intoxicated), you might feel a certain amount of worry regarding your predicament. Fortunately for you, there are certain ways to get back on your feet after an instance of such magnitude and one of the best ways is to hire a seasoned DWI attorney who is knowledgeable about the relevant laws and regulations. There may be many choices out there for legal representatives who focus on DWI cases in your area, so it's imperative for you to do a certain amount of research on the lawyers you'll be choosing among. To help you with the search, here are a couple tips that could be useful.

You could ask for recommendations from any friends or a family member who have had DWI cases before who they would suggest you retain for legal representation. When they have your best interest in mind, most people that care about you will offer only the sound advice and recommendations. Write down the names of the lawyers they mention and once you have compiled a reasonably good list, research each possibly. This is a good way to start, because otherwise you'll be searching blindly in the beginning. Plus you will be getting information from people you are accustomed to that you can rely on.

To do the research on each …show more content…
The best way to do this is to simply call each attorney that you're considering going with to talk about your case with them. Don't be afraid to ask questions regarding your particular case; ask about things such as fees, as well as how they've managed previous cases that have been much like yours. Getting as much information as you possibly can before making a decision is your goal here, so ensuring that you have enough to go with will be vital to ensure you make a knowledgeable

Similar Documents

Free Essay

First Chimurenga

..."CHII"IURENGA II 1896 - 1897: A REVISIONIST STUDY THESIS Submitted in Fulfilment of the Requirements for the Degree of MASTER OF ARTS of Rhodes University I by MARK PHILLIP MALCOLM HORN January 1986 The following typog~aphical co~~ections attention since submission of this thesis. have come to my p.i line 8, "Phillip" should ~ead Philip. p.vi, li.ne 11, "Risings" should ~ead Rising. p.Vll, line 12, "~esponce" should ~ead ~esponse. p.3, line 17, "wa~f-io~" should read warriors. p.5, line 4, "96" should read 1896. p .. 8, line 3, IILomangLlndi should read LomagLlndi. p.9, line 2, " (inve~ted comma) missing after "role". p.19, line 9, "triatises" should read treatises. p.28, line 18, "analysis" should ~ead analyses. p.30, line 10, "the and" should ~ead "and the". p.42, line 28, "Histo~ians" should ~ead Histo~ian's. p.47, line 13, "Lomangundi" should ~ead Lomagundi. p.48, line 12, ~ sign missing befo~e the figu~e of 121 000. p.52, line 5, 1. ~5ign missing before the figure of 3. p.55, line 1, ~ sign missing befo~e the figu~es 10 to 60. p.55, line 3, -£ sign missing befo~e the figu~e of 100. p.56, lines 7 - 10, quote to be indented. p.b2, li.ne 1tJ, "dela" should be separated out to read "de la". p.tI4, line 4, "assisthim" should be sepa~ated out to ~ead "assist him"~· p.b"?, line 11, "inte~nicine" should t-ead intet-necine. p.83, line 17, "Ma~ch 1895" should ~ead Ma~ch 1894. p.89, line 5, "faction" should ~ead fl~action. p.95, line 29, fn. 12, "lNA" should ~ead NAZ...

Words: 104376 - Pages: 418

Premium Essay

Data Mining Practical Machine Learning Tools and Techniques - Weka

...Data Mining Practical Machine Learning Tools and Techniques The Morgan Kaufmann Series in Data Management Systems Series Editor: Jim Gray, Microsoft Research Data Mining: Practical Machine Learning Tools and Techniques, Second Edition Ian H. Witten and Eibe Frank Fuzzy Modeling and Genetic Algorithms for Data Mining and Exploration Earl Cox Data Modeling Essentials, Third Edition Graeme C. Simsion and Graham C. Witt Location-Based Services Jochen Schiller and Agnès Voisard Database Modeling with Microsoft® Visio for Enterprise Architects Terry Halpin, Ken Evans, Patrick Hallock, and Bill Maclean Designing Data-Intensive Web Applications Stefano Ceri, Piero Fraternali, Aldo Bongio, Marco Brambilla, Sara Comai, and Maristella Matera Mining the Web: Discovering Knowledge from Hypertext Data Soumen Chakrabarti Understanding SQL and Java Together: A Guide to SQLJ, JDBC, and Related Technologies Jim Melton and Andrew Eisenberg Database: Principles, Programming, and Performance, Second Edition Patrick O’Neil and Elizabeth O’Neil The Object Data Standard: ODMG 3.0 Edited by R. G. G. Cattell, Douglas K. Barry, Mark Berler, Jeff Eastman, David Jordan, Craig Russell, Olaf Schadow, Torsten Stanienda, and Fernando Velez Data on the Web: From Relations to Semistructured Data and XML Serge Abiteboul, Peter Buneman, and Dan Suciu Data Mining: Practical Machine Learning Tools and Techniques with Java Implementations Ian H. Witten and Eibe Frank ...

Words: 191947 - Pages: 768

Premium Essay

The Advent of Social Progress Index to Measure Competitiveness

...Report by the Commission on the Measurement of Economic Performance and Social Progress Professor Joseph E. STIGLITZ, Chair, Columbia University Professor Amartya SEN, Chair Adviser, Harvard University Professor Jean-Paul FITOUSSI, Coordinator of the Commission, IEP www.stiglitz-sen-fitoussi.fr Other Members Bina AGARWAL Kenneth J. ARROW Anthony B. ATKINSON François BOURGUIGNON Jean-Philippe COTIS Angus S. DEATON Kemal DERVIS Marc FLEURBAEY Nancy FOLBRE Jean GADREY Enrico GIOVANNINI Roger GUESNERIE James J. HECKMAN Geoffrey HEAL Claude HENRY Daniel KAHNEMAN Alan B. KRUEGER Andrew J. OSWALD Robert D. PUTNAM Nick STERN Cass SUNSTEIN Philippe WEIL University of Delhi StanfordUniversity Warden of Nuffield College School of Economics, Insee, Princeton University UNPD Université Paris 5 University of Massachussets Université Lille OECD Collège de France Chicago University Columbia University Sciences-Po/Columbia University Princeton University Princeton University University of Warwick Harvard University London School of Economics University of Chicago Sciences Po Rapporteurs Jean-Etienne CHAPRON General Rapporteur Didier BLANCHET Jacques LE CACHEUX Marco MIRA D’ERCOLE Pierre-Alain PIONNIER Laurence RIOUX Paul SCHREYER Xavier TIMBEAU Vincent MARCUS INSEE INSEE OFCE OCDE INSEE INSEE/CREST OCDE OFCE INSEE Table of contents EXECUTIVE SUMMARY I. SHORT NARRATIVE ON THE CONTENT OF THE REPORT Chapter 1: Classical GDP Issues . . . . . . . . . . . . . . . . . ....

Words: 147885 - Pages: 592

Free Essay

Cardinalist

...HAL R. VARIAN 1 NORTON To my parents Copyright @ 1992, 1984, 1978 by W. W. Norton & Company, Inc. All rights reserved Printed in the United States of America THIRD EDITION Library o Congress Cataloging-in-Publication Data f Varian, Hal R. Mlcroeconon~lc analysis / Hal R. Varian. -- 3rd ed. p. an Includes blbllographlcal references and index. 1. Mlcroeconomlcs. 1. Title. HB172.V35 1992 338.5--dc20 ISBN 0-393-95735-7 W. W. Norton & Company, Inc., 500 Fifth Avenue, New York, N.Y. 10110 W. W. Norton & Company, Ltd., 10 Coptic Street, London WClA 1PU CONTENTS PREFACE 1 Technology Measurement of inputs and outputs 1 Specification of technology 2 Example: Input requzrement set Example: Isoquant Example: Shortrun productzon posszbzlztzes set Example: Pt-oductzon functzon Example: Transformatzon functzon Example: Cobb-Douglas technology Example: Leontzef technology Activity analysis 5 Monotonic technologies 6 Convex technologies 7 Regular technologies 9 Parametric representations of technology 10 The technical rate of substitution 11 Example: T R S for a Cobb-Douglas technology The elasticity of substitution 13 Example: The elastzczty of substztutzon for the Cobb-Douglas productzon functzon Returns to scale 14 Example: Returns to scale and the Cobb-Douglas technology Homogeneous and homothetic technologies 17 Example: The CES productzon functzon Exercises 21 2 Profit Maximization . Profit maximization 25 Difficulties 28 Example:...

Words: 149960 - Pages: 600

Free Essay

Test2

...62118 0/nm 1/n1 2/nm 3/nm 4/nm 5/nm 6/nm 7/nm 8/nm 9/nm 1990s 0th/pt 1st/p 1th/tc 2nd/p 2th/tc 3rd/p 3th/tc 4th/pt 5th/pt 6th/pt 7th/pt 8th/pt 9th/pt 0s/pt a A AA AAA Aachen/M aardvark/SM Aaren/M Aarhus/M Aarika/M Aaron/M AB aback abacus/SM abaft Abagael/M Abagail/M abalone/SM abandoner/M abandon/LGDRS abandonment/SM abase/LGDSR abasement/S abaser/M abashed/UY abashment/MS abash/SDLG abate/DSRLG abated/U abatement/MS abater/M abattoir/SM Abba/M Abbe/M abbé/S abbess/SM Abbey/M abbey/MS Abbie/M Abbi/M Abbot/M abbot/MS Abbott/M abbr abbrev abbreviated/UA abbreviates/A abbreviate/XDSNG abbreviating/A abbreviation/M Abbye/M Abby/M ABC/M Abdel/M abdicate/NGDSX abdication/M abdomen/SM abdominal/YS abduct/DGS abduction/SM abductor/SM Abdul/M ab/DY abeam Abelard/M Abel/M Abelson/M Abe/M Aberdeen/M Abernathy/M aberrant/YS aberrational aberration/SM abet/S abetted abetting abettor/SM Abeu/M abeyance/MS abeyant Abey/M abhorred abhorrence/MS abhorrent/Y abhorrer/M abhorring abhor/S abidance/MS abide/JGSR abider/M abiding/Y Abidjan/M Abie/M Abigael/M Abigail/M Abigale/M Abilene/M ability/IMES abjection/MS abjectness/SM abject/SGPDY abjuration/SM abjuratory abjurer/M abjure/ZGSRD ablate/VGNSDX ablation/M ablative/SY ablaze abler/E ables/E ablest able/U abloom ablution/MS Ab/M ABM/S abnegate/NGSDX abnegation/M Abner/M abnormality/SM abnormal/SY aboard ...

Words: 113589 - Pages: 455