Data entry and Data management

Slides:



Advertisements
Similar presentations
1. Online hiring cost calculation Recruitment function control Recruitment performance & hiring management analysis Recruitment function operations optimization.
Advertisements

School of Computing Clemson University Mathematical Reasoning  Goal: To prove correctness  Method: Use a reasoning table  Prove correctness on all valid.
Starting Out with C++, 3 rd Edition 1 Chapter 1. Introduction to Computers and Programming.
Chapter 10 Collecting Quantitative Data. SURVEY QUESTIONNAIRES Establishing Procedures to Collect Survey Data Recording Survey Data Establishing the Reliability.
1 times table 2 times table 3 times table 4 times table 5 times table
Mean, median and mode from a frequency table.
Statistics: Displaying and Analyzing Data. Line Plot Frequency: the number of times something occurs. Use an “x” to show the number of times each data.
Statistics using a Casio fx-83GT
Topics Covered: Data preparation Data preparation Data capturing Data capturing Data verification and validation Data verification and validation Data.
computer
Household Surveying Traci Watts State of Louisiana Office of Community Development.
Mean and Standard Deviation of Grouped Data Make a frequency table Compute the midpoint (x) for each class. Count the number of entries in each class (f).
Examples of Computing Uses for Statisticians Data management : data entry, data extraction, data cleaning, data storage, data manipulation, data distribution.
Inference Round Table Linda Puckett J. Frank Dobie High School Houston, Texas.
What have we learned?. What is a database? An organized collection of related data.
Qualitative Data: consists of attributes, labels or non-numerical entries Examples: Quantitative Data: consists of numerical measurements or counts Examples:
Week 1 Theory 2 B usiness I nformation S ystems Batch Processing Assignment 6 - Batch Processing 1 Batch Processing Method.
UNIDO- key facts  Established in 1966 & UN Specialized Agency since 1986  Lead role within UN system on industrial development  172 Member States 
Copyright 2010, The World Bank Group. All Rights Reserved. Managing Data Processing Section B.
1 Topic iii supporting papers Dan Hedlin Statistics Sweden.
What are they? T-Accounts. T accounts are what ledger accounts might look like if they were kept on paper (as opposed to using computer software). help.
Independent Office of Evaluation IFAD’s Approach to Evaluation of Agriculture programmes Presentation at ECD Workshop, Addis Ababa, 6 November 2015.
1 2 Concepts of Database Management, 4 th Edition, Pratt & Adamski Chapter 2 The Relational Model 1: Introduction, QBE, and Relational Algebra.
SPC (Statistical Process Control)
$100 $200 $300 $400 $500 $100 $200 $300 $400 $500 $100 $200 $300 $400 $500 $100 $200 $300 $400 $500 $100 $200 $300 $400 $500 $100 $200 $300.
HISP activities are all about moving people from providing services, to also using information to manage services.
Copyright 2010, The World Bank Group. All Rights Reserved. Agricultural Coding and Data Processing Section A 1.
Learning Objectives Understand the concepts of Information systems.
ICON-Institute Public Sector1 Important aspects of data processing and presenting format Vilnius, 5-6 September 2007 Transition Facility Statistical Cooperation.
Tables Learning Support
Main results from UNSD-UNECE survey on 2010 Census Programme Paolo Valente United Nations Economic Commission for Europe Statistical Division.
1 Handbook on Population and Housing Census Editing Department of Economic and Social Development United Nations Statistics Division Studies in Methods,
PPI Quality Assessment Framework
TAIEX Workshop: Improving data collection and the Use of the Farm Accountancy Data Network (FADN) Communication in process of data collection and data.
Chi-Square hypothesis testing
International Studies and Data Collection as an Agenda of the CSI
Chapter 1. Introduction to Computers and Programming
Times Tables.
State of play – Urban Audit data collection
MATH 2311 Section 8.2.
Private Education Validation Guide
NSE 723 Enthusiastic Studysnaptutorial.com
An Overview Microsoft Office.
Agenda point 7 Next steps – Roadmap
Introduction on Institutional Setting Istanbul, September 2007
Physics-based simulation for visual computing applications
Recipe for any Hypothesis Test
Household situation indicators – french approach (DGEFP)
Data review MILK VALIDATION
FINAL REPORT PLAN PILOT PROJECT: Transition Facility Multi-Beneficiary
You and your lab partner independently determine the concentration of Ca2+ in a water sample. The results are: You Lab partner 350 ppm
PHARE and TF Missions: main findings
A paired-samples t-test compares the means of two related sets of data to see if they differ statistically. IQ Example We may want to compare the IQ scores.
Data availability in the Candidate Countries: results and conclusions
Unit 3 Review (Calculator)
Transition Facility 2004 (Experience of Slovakia)
ENCODING TOOL DEVELOPED BY HUNGARY Márta Záhonyi
Lot 2: Agricultural and Environmental Statistics
Collecting Data Online
GUIDELINES FOR THE COLLECTION OF PESTICIDE USAGE STATISTICS A summary
CHAPTER 6 ELECTRONIC DATA PROCESSING SYSTEMS
2nd Joint Workshop Pesticides Statistics 2005 Transition Facility Statistical Cooperation Programme Phare Programme Further steps.
Magic Capsules Lab.
3 times tables.
6 times tables.
Calculate 9 x 81 = x 3 3 x 3 x 3 x 3 3 x 3 x 3 x 3 x 3 x 3 x =
Unit 5 – Testing The mark scheme
Databases WOW!! A database is a collection of related data.
SPC (Statistical Process Control)
Complete the family of four
Presentation transcript:

Data entry and Data management Multi-Beneficiary Transition Fascility and Statistical Cooperation programme 2005

Data processing process Multi-Beneficiary Transition Fascility and Statistical Cooperation programme 2005

Paper Collection Visual Validation Manual Correction Entry Computer Validation Computer Calculation Publication Multi-Beneficiary Transition Fascility and Statistical Cooperation programme 2005

Computer Collection/ Data Entry IACS Computer Collection/ Data Entry FR PPP Computer Validation Computer Correction Standard tables Computer Calculation Special tables Publication Multi-Beneficiary Transition Fascility and Statistical Cooperation programme 2005

Data entry and Data management Multi-Beneficiary Transition Fascility and Statistical Cooperation programme 2005