Enviar pesquisa
Carregar
MIL - Operating Leasing - Ausgabe 05.97
•
0 gostou
•
253 visualizações
Oliver van Dijk
Seguir
Denunciar
Compartilhar
Denunciar
Compartilhar
1 de 15
Baixar agora
Baixar para ler offline
Recomendados
stephan crockett update resume
stephan crockett update resume
Stephan Crockett
Presentación día del idioma
Presentación día del idioma
colegionusefa
จดหมายอิเล็กทรอนิกส์
จดหมายอิเล็กทรอนิกส์1
จดหมายอิเล็กทรอนิกส์1
faitrkk
Culture
Culture
Arti prakash
laminas maria, stefanie e Ismar
Marcel presentacion
Marcel presentacion
materanooo
Presentación1
Presentación1
bchr
A session by Andy Tattersall at the MmIT National Conference 2015
MmIT 2015: Blog's not dead
MmIT 2015: Blog's not dead
scharrlibrary
Twitter for Academics 1. @Andy_tattersall 2. Image used under a Creative Commons: Attribution 2.0 Generic (CC BY 2.0) Todd Ryburn 3. Administering Twitter • You need to understand why you are taking it • You need to understand the benefits • You need to understand the side-effects • You need to understand that the benefits may take time in coming • You may need two courses Do not feel pressured to use it - as it won’t work 4. Navigating Twitter 5. Twitter Myth #1 You can’t say much in 140 characters “Insanity: doing the same thing over and over again and expecting different results.” “Our scientific power has outrun our spiritual power. We have guided missiles and misguided men.” “Education is the most powerful weapon which you can use to change the world.” 6. The make up of a Tweet 7. Lingo • RT – Retweet • MT – Modified Tweet • Reply – a conversation in Twitter • @ A mention of someone/organisation • # Tag – A stream of topic • DM – Direct Message • Block – To block a user • Favourite – To mark for later reference • URL Shortener - www.bit.ly • Follow – To follow someone’s Tweets 8. Following 9. Lists 10. Twitter Myth #2 Twitter is only used by sports people and celebs 11. Netiquette • Watch what you say (10 second rule) - What goes on the web stays on the Web 12. What to Tweet? • Publication (book, report, paper, proceedings) • Presentation • Idea • Resource • Conversation (ice breaker) • Funding Bid • Professional achievement • Link • Automate (Twentyfeet, Paper.li) 13. Who to follow? • @EmergencyMedBMJ 11k followers • @trishgreenhalgh 7k followers • @NICEcomms 28k followers • @EM_Journal 5k followers • @wellcometrust 40k followers • @LSEimpactBlog 10k followers • @richardhorton1 (Lancet) 7k followers 14. Conference Tweeting • Use the # tag • Create a filter to follow the proceedings • Advertise your presentation • Introduce yourself to others – ‘Tweetup’ • Get involved in the conversation • Carry the conversation on beyond the conference 15. Twitter Myth #4 “Twitter is a time sinkhole” Not if you want it to be 16. Tweeting Tools 17. Find something interesting? Tweet it 18. Altmetric it 19. Go Mobile 20. Go Tweet
Twitter for academics
Twitter for academics
scharrlibrary
Recomendados
stephan crockett update resume
stephan crockett update resume
Stephan Crockett
Presentación día del idioma
Presentación día del idioma
colegionusefa
จดหมายอิเล็กทรอนิกส์
จดหมายอิเล็กทรอนิกส์1
จดหมายอิเล็กทรอนิกส์1
faitrkk
Culture
Culture
Arti prakash
laminas maria, stefanie e Ismar
Marcel presentacion
Marcel presentacion
materanooo
Presentación1
Presentación1
bchr
A session by Andy Tattersall at the MmIT National Conference 2015
MmIT 2015: Blog's not dead
MmIT 2015: Blog's not dead
scharrlibrary
Twitter for Academics 1. @Andy_tattersall 2. Image used under a Creative Commons: Attribution 2.0 Generic (CC BY 2.0) Todd Ryburn 3. Administering Twitter • You need to understand why you are taking it • You need to understand the benefits • You need to understand the side-effects • You need to understand that the benefits may take time in coming • You may need two courses Do not feel pressured to use it - as it won’t work 4. Navigating Twitter 5. Twitter Myth #1 You can’t say much in 140 characters “Insanity: doing the same thing over and over again and expecting different results.” “Our scientific power has outrun our spiritual power. We have guided missiles and misguided men.” “Education is the most powerful weapon which you can use to change the world.” 6. The make up of a Tweet 7. Lingo • RT – Retweet • MT – Modified Tweet • Reply – a conversation in Twitter • @ A mention of someone/organisation • # Tag – A stream of topic • DM – Direct Message • Block – To block a user • Favourite – To mark for later reference • URL Shortener - www.bit.ly • Follow – To follow someone’s Tweets 8. Following 9. Lists 10. Twitter Myth #2 Twitter is only used by sports people and celebs 11. Netiquette • Watch what you say (10 second rule) - What goes on the web stays on the Web 12. What to Tweet? • Publication (book, report, paper, proceedings) • Presentation • Idea • Resource • Conversation (ice breaker) • Funding Bid • Professional achievement • Link • Automate (Twentyfeet, Paper.li) 13. Who to follow? • @EmergencyMedBMJ 11k followers • @trishgreenhalgh 7k followers • @NICEcomms 28k followers • @EM_Journal 5k followers • @wellcometrust 40k followers • @LSEimpactBlog 10k followers • @richardhorton1 (Lancet) 7k followers 14. Conference Tweeting • Use the # tag • Create a filter to follow the proceedings • Advertise your presentation • Introduce yourself to others – ‘Tweetup’ • Get involved in the conversation • Carry the conversation on beyond the conference 15. Twitter Myth #4 “Twitter is a time sinkhole” Not if you want it to be 16. Tweeting Tools 17. Find something interesting? Tweet it 18. Altmetric it 19. Go Mobile 20. Go Tweet
Twitter for academics
Twitter for academics
scharrlibrary
Obra de António Mota
A aldeia das flores
A aldeia das flores
Risoleta Montez
analysis of my questionnaire
Target audience questionnaire analysis
Target audience questionnaire analysis
katiemccreesh
In this study, we have to project the airline travel for the next 12 months .The dataset used here is SASHELP.AIR which is Airline data and contains two variables – DATE and AIR( labeled as International Airline Travel).It contains the data from JAN 1949 to DEC 1960.
Time Series Analysis - Modeling and Forecasting
Time Series Analysis - Modeling and Forecasting
Maruthi Nataraj K
Apache Hadoop MapReduce has undergone a complete re-haul to emerge as Apache Hadoop YARN, a generic compute fabric to support MapReduce and other application paradigms. This really changes the game to recast Hadoop as a much more powerful data-processing system. As a result Hadoop looks very different from itself 12 months ago. Now, ever wonder what it might look like in 12 months or 24 months or longer? This talk will take you through some ideas for YARN itself and the many myriad ways it`s really moving the needle for MapReduce, Pig, Hive, Cascading and other data-processing tools in the Hadoop ecosystem.
Past Present and Future of Data Processing in Apache Hadoop
Past Present and Future of Data Processing in Apache Hadoop
DataWorks Summit
presentation given at the ISACA EuroCACS 2015 conference in Copenhagen on why organisations should apply Privacy by Design in their Internet of Everything solutions.
Advantages of privacy by design in IoE
Advantages of privacy by design in IoE
Marc Vael
hands on: Text Mining With R
hands on: Text Mining With R
hands on: Text Mining With R
Jahnab Kumar Deka
Do you know great britain
Do you know great britain
Do you know great britain
Sergey70
Presented by: James Taylor, Salesforce.com
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
Cloudera, Inc.
Mais conteúdo relacionado
Destaque
Obra de António Mota
A aldeia das flores
A aldeia das flores
Risoleta Montez
analysis of my questionnaire
Target audience questionnaire analysis
Target audience questionnaire analysis
katiemccreesh
In this study, we have to project the airline travel for the next 12 months .The dataset used here is SASHELP.AIR which is Airline data and contains two variables – DATE and AIR( labeled as International Airline Travel).It contains the data from JAN 1949 to DEC 1960.
Time Series Analysis - Modeling and Forecasting
Time Series Analysis - Modeling and Forecasting
Maruthi Nataraj K
Apache Hadoop MapReduce has undergone a complete re-haul to emerge as Apache Hadoop YARN, a generic compute fabric to support MapReduce and other application paradigms. This really changes the game to recast Hadoop as a much more powerful data-processing system. As a result Hadoop looks very different from itself 12 months ago. Now, ever wonder what it might look like in 12 months or 24 months or longer? This talk will take you through some ideas for YARN itself and the many myriad ways it`s really moving the needle for MapReduce, Pig, Hive, Cascading and other data-processing tools in the Hadoop ecosystem.
Past Present and Future of Data Processing in Apache Hadoop
Past Present and Future of Data Processing in Apache Hadoop
DataWorks Summit
presentation given at the ISACA EuroCACS 2015 conference in Copenhagen on why organisations should apply Privacy by Design in their Internet of Everything solutions.
Advantages of privacy by design in IoE
Advantages of privacy by design in IoE
Marc Vael
hands on: Text Mining With R
hands on: Text Mining With R
hands on: Text Mining With R
Jahnab Kumar Deka
Do you know great britain
Do you know great britain
Do you know great britain
Sergey70
Presented by: James Taylor, Salesforce.com
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
Cloudera, Inc.
Destaque
(8)
A aldeia das flores
A aldeia das flores
Target audience questionnaire analysis
Target audience questionnaire analysis
Time Series Analysis - Modeling and Forecasting
Time Series Analysis - Modeling and Forecasting
Past Present and Future of Data Processing in Apache Hadoop
Past Present and Future of Data Processing in Apache Hadoop
Advantages of privacy by design in IoE
Advantages of privacy by design in IoE
hands on: Text Mining With R
hands on: Text Mining With R
Do you know great britain
Do you know great britain
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
Baixar agora