Enviar búsqueda
Cargar
Basic stats
•
Descargar como PPT, PDF
•
0 recomendaciones
•
1,313 vistas
Pensil Dan Pemadam
Seguir
Tecnología
Empresariales
Denunciar
Compartir
Denunciar
Compartir
1 de 22
Descargar ahora
Recomendados
Training needs analysis depicts the systematic process of conducting a training needs analysis in the organization.
Training Needs Analysis
Training Needs Analysis
sany26
7 steps to identifying your organizations training needs
7 steps to identifying your organizations training needs white paper - Sept 2010
7 steps to identifying your organizations training needs white paper - Sept 2010
The Blockchain Academy
Management Training requires Assessment and Analysis which is explained in Effective HR. This presentation explains the significance of ‘needs analyses’ in training. Understand various types of training needs and the processes involved in Training Analysis, know the components of a training Needs Assessment and the methods for collecting data. For more such innovative content on management studies, join WeSchool PGDM-DLP Program: http://bit.ly/SlideShareEffectHR Join us on Facebook: http://www.facebook.com/welearnindia Follow us on Twitter: https://twitter.com/WeLearnIndia Read our latest blog at: http://welearnindia.wordpress.com Subscribe to our Slideshare Channel: http://www.slideshare.net/welingkarDLP
Training Needs Assessment & Analysis
Training Needs Assessment & Analysis
We Learn - A Continuous Learning Forum from Welingkar's Distance Learning Program.
" The Difference Between Who You Are and Who You Want to Be, is What You Do..."
Training Need Assessment
Training Need Assessment
Seta Wicaksana
Talk for Computer Graphics on the Web
Visualising Data with Code
Visualising Data with Code
Ri Liu
An immersive workshop at General Assembly, SF. I typically teach this workshop at General Assembly, San Francisco. To see a list of my upcoming classes, visit https://generalassemb.ly/instructors/seth-familian/4813 I also teach this workshop as a private lunch-and-learn or half-day immersive session for corporate clients. To learn more about pricing and availability, please contact me at http://familian1.com
Visual Design with Data
Visual Design with Data
Seth Familian
Levels of measurements nominal scale ordinal scale interval scale ratio scale
Scale of measurement
Scale of measurement
HennaAnsari
Data Management
11. data management
11. data management
Ashok Kulkarni
Recomendados
Training needs analysis depicts the systematic process of conducting a training needs analysis in the organization.
Training Needs Analysis
Training Needs Analysis
sany26
7 steps to identifying your organizations training needs
7 steps to identifying your organizations training needs white paper - Sept 2010
7 steps to identifying your organizations training needs white paper - Sept 2010
The Blockchain Academy
Management Training requires Assessment and Analysis which is explained in Effective HR. This presentation explains the significance of ‘needs analyses’ in training. Understand various types of training needs and the processes involved in Training Analysis, know the components of a training Needs Assessment and the methods for collecting data. For more such innovative content on management studies, join WeSchool PGDM-DLP Program: http://bit.ly/SlideShareEffectHR Join us on Facebook: http://www.facebook.com/welearnindia Follow us on Twitter: https://twitter.com/WeLearnIndia Read our latest blog at: http://welearnindia.wordpress.com Subscribe to our Slideshare Channel: http://www.slideshare.net/welingkarDLP
Training Needs Assessment & Analysis
Training Needs Assessment & Analysis
We Learn - A Continuous Learning Forum from Welingkar's Distance Learning Program.
" The Difference Between Who You Are and Who You Want to Be, is What You Do..."
Training Need Assessment
Training Need Assessment
Seta Wicaksana
Talk for Computer Graphics on the Web
Visualising Data with Code
Visualising Data with Code
Ri Liu
An immersive workshop at General Assembly, SF. I typically teach this workshop at General Assembly, San Francisco. To see a list of my upcoming classes, visit https://generalassemb.ly/instructors/seth-familian/4813 I also teach this workshop as a private lunch-and-learn or half-day immersive session for corporate clients. To learn more about pricing and availability, please contact me at http://familian1.com
Visual Design with Data
Visual Design with Data
Seth Familian
Levels of measurements nominal scale ordinal scale interval scale ratio scale
Scale of measurement
Scale of measurement
HennaAnsari
Data Management
11. data management
11. data management
Ashok Kulkarni
basic concept of statistic
statistic
statistic
Pwalmiki
Department of Community Medicine, BMC, Sagar
Overview of different statistical tests used in epidemiological
Overview of different statistical tests used in epidemiological
shefali jain
Basics in Epidemiology & Biostatistics 2 RSS6 2014
Basics in Epidemiology & Biostatistics 2 RSS6 2014
RSS6
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Reko Kemo
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Reko Kemo
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Reko Kemo
Segunda parte del Curso de Perfeccionamiento Profesional no Conducente a Grado Académico: Inglés Técnico para Profesionales de Ciencias de la Salud. DEPARTAMENTO ADMINISTRATIVO SOCIAL. Escuela de Enfermería. ULA. Mérida. Venezuela. Se oferta en la modalidad presencial de 3 ó 4 unidades crédito y los costos son solidarios y dependen de la zona del país que lo solicite. El inglés técnico se basa en el tipo de vocabulario que va a manejar y el objetivo para el que va a estudiar inglés. En general en inglés técnico se busca poder comprender textos, y principalmente, textos técnicos de las disciplinas de salud en este caso que esté buscando, por ejemplo, si estas estudiando algo que tenga que ver con Medicina o Enfermería, empezara a ver nombres de enfermedades, enfoques epidemiológicos, entre otros. A diferencia del inglés normal que es mayormente comunicación diaria y gramática. Durante las sesiones de aprendizaje se presentan las nociones generales acerca de la gramática de escritura inglesa y su transferencia en nuestra lengua española. En este módulo, se inicia la experiencia práctica eligiendo textos para observar los elementos facilitados. Seguidamente, los participantes las ideas que se encuentran alrededor de fuentes en línea para profundizar en el aprendizaje en materia de inglés técnico.
Statistics and Public Health. Curso de Inglés Técnico para profesionales de S...
Statistics and Public Health. Curso de Inglés Técnico para profesionales de S...
Universidad Particular de Loja
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES
There are hundreds of statistics terms in the world. But here we have discussed the major statistics terms that is quite helpful for the students.
Major types of statistics terms that you should know
Major types of statistics terms that you should know
Stat Analytica
use for BAMS students
Medical Statistics.pptx
Medical Statistics.pptx
Siddanna B Chougala C
Stat topics
Stat topics
Notre Dame of Midsayap College
its a useful presentation of bio statististics for health care professionals
bio statistics for clinical research
bio statistics for clinical research
Ranjith Paravannoor
Analysis Of Medical Data
Analysis Of Medical Data
Minh Dat Ton That
mbb,t
BIOSTATISTICS (MPT) 11 (1).pptx
BIOSTATISTICS (MPT) 11 (1).pptx
VaishnaviElumalai
This presentation will give perfect understanding of data, data types, level of measurements, exploratory data analysis and more importantly, when to use which type of summary statistics and graphs
Exploratory Data Analysis for Biotechnology and Pharmaceutical Sciences
Exploratory Data Analysis for Biotechnology and Pharmaceutical Sciences
Parag Shah
POPULAR LECTURE
Research methods 2 operationalization & measurement
Research methods 2 operationalization & measurement
attique1960
Bgy5901
Bgy5901
Noor Lela Yahaya
Statistics: What you Need to Know Introduction Often, when people begin a statistics course, they worry about doing advanced mathematics or their math phobias kick in. Understanding that statistics as addressed in this course is not a math course at all is important. The only math you will do is addition, subtraction, multiplication, and division. In these days of computer capability, you generally don't even have to do that much, since Excel is set up to do basic statistics for you. The key elements for the student in this course is to understand the various types of statistics, what their requirements are, what they do, and how you can use and interpret the results. Referring back to the basic components of a valid research study, which statistic a researcher uses depends on several things: The research question itself The sample size The type of data you have collected The type of statistic called for by the design All quantitative studies require a data set. Qualitative studies may use a data set or may use observations with no numerical data at all. For the purposes of the next modules, our focus will be on quantitative studies. Types of Statistics There are several types of statistics available to the researcher. Descriptive statistics provide a basic description of the data set. This includes the measures of central tendency: means, medians, and modes, and the measures of dispersion, including variances and standard deviations. Descriptive statistics also include the sample size, or "N", and the frequency with which each data point occurs in the data set. Inferential statistics allow the researcher to make predictions, estimations, and generalizations about the data set, the sample, and the population from which the sample was drawn. They allow you to draw inferences, generalizations, and possibilities regarding the relationship between the independent variable and the dependent variable to indicate how those inferences answer the research question. Researchers can make predictions and estimations about how the results will fit the overall population. Statistics can also be described in terms of the types of data they can analyze. Non-parametric statistics can be used with nominal or ordinal data, while parametric statistics can be used with interval and ratio data types. Types of Data There are four types of data that a researcher may collect. Nominal Data Sets The Nominal data set includes simple classifications of data into categories which are all of equal weight and value. Examples of categories that are equal to each other include gender (male, female), state of birth (Arizona, Wyoming, etc.), membership in a group (yes, no). Each of these categories is equivalent to the other, without value judgments. Ordinal Data Sets Ordinal data sets also have data classified into categories, but these categories have some form or order or ranking attached, often of some sort of value / val.
Statistics What you Need to KnowIntroductionOften, when peop.docx
Statistics What you Need to KnowIntroductionOften, when peop.docx
dessiechisomjj4
Presentation on introductory statistics
Introductory Statistics
Introductory Statistics
Brian Wells, MD, MS, MPH
hypothesis
Steps in hypothesis.pptx
Steps in hypothesis.pptx
Yashwanth Rm
Soalan akhir tahun dunia muzik tahun 2
Soalan akhir tahun dunia muzik tahun 2
Pensil Dan Pemadam
Ujian bulanan ogos dunia muzik
Ujian bulanan ogos dunia muzik
Pensil Dan Pemadam
Más contenido relacionado
Similar a Basic stats
basic concept of statistic
statistic
statistic
Pwalmiki
Department of Community Medicine, BMC, Sagar
Overview of different statistical tests used in epidemiological
Overview of different statistical tests used in epidemiological
shefali jain
Basics in Epidemiology & Biostatistics 2 RSS6 2014
Basics in Epidemiology & Biostatistics 2 RSS6 2014
RSS6
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Reko Kemo
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Reko Kemo
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Reko Kemo
Segunda parte del Curso de Perfeccionamiento Profesional no Conducente a Grado Académico: Inglés Técnico para Profesionales de Ciencias de la Salud. DEPARTAMENTO ADMINISTRATIVO SOCIAL. Escuela de Enfermería. ULA. Mérida. Venezuela. Se oferta en la modalidad presencial de 3 ó 4 unidades crédito y los costos son solidarios y dependen de la zona del país que lo solicite. El inglés técnico se basa en el tipo de vocabulario que va a manejar y el objetivo para el que va a estudiar inglés. En general en inglés técnico se busca poder comprender textos, y principalmente, textos técnicos de las disciplinas de salud en este caso que esté buscando, por ejemplo, si estas estudiando algo que tenga que ver con Medicina o Enfermería, empezara a ver nombres de enfermedades, enfoques epidemiológicos, entre otros. A diferencia del inglés normal que es mayormente comunicación diaria y gramática. Durante las sesiones de aprendizaje se presentan las nociones generales acerca de la gramática de escritura inglesa y su transferencia en nuestra lengua española. En este módulo, se inicia la experiencia práctica eligiendo textos para observar los elementos facilitados. Seguidamente, los participantes las ideas que se encuentran alrededor de fuentes en línea para profundizar en el aprendizaje en materia de inglés técnico.
Statistics and Public Health. Curso de Inglés Técnico para profesionales de S...
Statistics and Public Health. Curso de Inglés Técnico para profesionales de S...
Universidad Particular de Loja
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES
There are hundreds of statistics terms in the world. But here we have discussed the major statistics terms that is quite helpful for the students.
Major types of statistics terms that you should know
Major types of statistics terms that you should know
Stat Analytica
use for BAMS students
Medical Statistics.pptx
Medical Statistics.pptx
Siddanna B Chougala C
Stat topics
Stat topics
Notre Dame of Midsayap College
its a useful presentation of bio statististics for health care professionals
bio statistics for clinical research
bio statistics for clinical research
Ranjith Paravannoor
Analysis Of Medical Data
Analysis Of Medical Data
Minh Dat Ton That
mbb,t
BIOSTATISTICS (MPT) 11 (1).pptx
BIOSTATISTICS (MPT) 11 (1).pptx
VaishnaviElumalai
This presentation will give perfect understanding of data, data types, level of measurements, exploratory data analysis and more importantly, when to use which type of summary statistics and graphs
Exploratory Data Analysis for Biotechnology and Pharmaceutical Sciences
Exploratory Data Analysis for Biotechnology and Pharmaceutical Sciences
Parag Shah
POPULAR LECTURE
Research methods 2 operationalization & measurement
Research methods 2 operationalization & measurement
attique1960
Bgy5901
Bgy5901
Noor Lela Yahaya
Statistics: What you Need to Know Introduction Often, when people begin a statistics course, they worry about doing advanced mathematics or their math phobias kick in. Understanding that statistics as addressed in this course is not a math course at all is important. The only math you will do is addition, subtraction, multiplication, and division. In these days of computer capability, you generally don't even have to do that much, since Excel is set up to do basic statistics for you. The key elements for the student in this course is to understand the various types of statistics, what their requirements are, what they do, and how you can use and interpret the results. Referring back to the basic components of a valid research study, which statistic a researcher uses depends on several things: The research question itself The sample size The type of data you have collected The type of statistic called for by the design All quantitative studies require a data set. Qualitative studies may use a data set or may use observations with no numerical data at all. For the purposes of the next modules, our focus will be on quantitative studies. Types of Statistics There are several types of statistics available to the researcher. Descriptive statistics provide a basic description of the data set. This includes the measures of central tendency: means, medians, and modes, and the measures of dispersion, including variances and standard deviations. Descriptive statistics also include the sample size, or "N", and the frequency with which each data point occurs in the data set. Inferential statistics allow the researcher to make predictions, estimations, and generalizations about the data set, the sample, and the population from which the sample was drawn. They allow you to draw inferences, generalizations, and possibilities regarding the relationship between the independent variable and the dependent variable to indicate how those inferences answer the research question. Researchers can make predictions and estimations about how the results will fit the overall population. Statistics can also be described in terms of the types of data they can analyze. Non-parametric statistics can be used with nominal or ordinal data, while parametric statistics can be used with interval and ratio data types. Types of Data There are four types of data that a researcher may collect. Nominal Data Sets The Nominal data set includes simple classifications of data into categories which are all of equal weight and value. Examples of categories that are equal to each other include gender (male, female), state of birth (Arizona, Wyoming, etc.), membership in a group (yes, no). Each of these categories is equivalent to the other, without value judgments. Ordinal Data Sets Ordinal data sets also have data classified into categories, but these categories have some form or order or ranking attached, often of some sort of value / val.
Statistics What you Need to KnowIntroductionOften, when peop.docx
Statistics What you Need to KnowIntroductionOften, when peop.docx
dessiechisomjj4
Presentation on introductory statistics
Introductory Statistics
Introductory Statistics
Brian Wells, MD, MS, MPH
hypothesis
Steps in hypothesis.pptx
Steps in hypothesis.pptx
Yashwanth Rm
Similar a Basic stats
(20)
statistic
statistic
Overview of different statistical tests used in epidemiological
Overview of different statistical tests used in epidemiological
Basics in Epidemiology & Biostatistics 2 RSS6 2014
Basics in Epidemiology & Biostatistics 2 RSS6 2014
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Ebd1 lecture 3 2010
Statistics and Public Health. Curso de Inglés Técnico para profesionales de S...
Statistics and Public Health. Curso de Inglés Técnico para profesionales de S...
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
MELJUN CORTES research lectures_evaluating_data_statistical_treatment
Major types of statistics terms that you should know
Major types of statistics terms that you should know
Medical Statistics.pptx
Medical Statistics.pptx
Stat topics
Stat topics
bio statistics for clinical research
bio statistics for clinical research
Analysis Of Medical Data
Analysis Of Medical Data
BIOSTATISTICS (MPT) 11 (1).pptx
BIOSTATISTICS (MPT) 11 (1).pptx
Exploratory Data Analysis for Biotechnology and Pharmaceutical Sciences
Exploratory Data Analysis for Biotechnology and Pharmaceutical Sciences
Research methods 2 operationalization & measurement
Research methods 2 operationalization & measurement
Bgy5901
Bgy5901
Statistics What you Need to KnowIntroductionOften, when peop.docx
Statistics What you Need to KnowIntroductionOften, when peop.docx
Introductory Statistics
Introductory Statistics
Steps in hypothesis.pptx
Steps in hypothesis.pptx
Más de Pensil Dan Pemadam
Soalan akhir tahun dunia muzik tahun 2
Soalan akhir tahun dunia muzik tahun 2
Pensil Dan Pemadam
Ujian bulanan ogos dunia muzik
Ujian bulanan ogos dunia muzik
Pensil Dan Pemadam
Ujian dst ogos
Ujian dst ogos
Pensil Dan Pemadam
Soalan akhir tahun dst tahun 2
Soalan akhir tahun dst tahun 2
Pensil Dan Pemadam
Yr 5 p1 09
Yr 5 p1 09
Pensil Dan Pemadam
Ujian mt tahun 5 k2 kssr mac 2014
Ujian mt tahun 5 k2 kssr mac 2014
Pensil Dan Pemadam
Ujian mt tahun 5 k1 kssr mac 2014
Ujian mt tahun 5 k1 kssr mac 2014
Pensil Dan Pemadam
Ujian bulanan ogos
Ujian bulanan ogos
Pensil Dan Pemadam
Ujian mt tahun 2 kssr mac 2014
Ujian mt tahun 2 kssr mac 2014
Pensil Dan Pemadam
Ujian bulan mac 2015 matematik tahun2
Ujian bulan mac 2015 matematik tahun2
Pensil Dan Pemadam
Soalan mt tahun 2 kssr sept 2014
Soalan mt tahun 2 kssr sept 2014
Pensil Dan Pemadam
Soalan mt tahun 2 kssr ppt 2014
Soalan mt tahun 2 kssr ppt 2014
Pensil Dan Pemadam
Selaras1y2p1 150301012508-conversion-gate02
Selaras1y2p1 150301012508-conversion-gate02
Pensil Dan Pemadam
Soalan pjpk t3 ppt2013
Soalan pjpk t3 ppt2013
Pensil Dan Pemadam
Soalanpsvtahun123456 120522053115-phpapp01
Soalanpsvtahun123456 120522053115-phpapp01
Pensil Dan Pemadam
Soalanpsvtahun456siapskema1 130623012404-phpapp02
Soalanpsvtahun456siapskema1 130623012404-phpapp02
Pensil Dan Pemadam
Sampul duit raya
Sampul duit raya
Pensil Dan Pemadam
Rpt pendidikan-seni-visual-tahun-4
Rpt pendidikan-seni-visual-tahun-4
Pensil Dan Pemadam
Psv
Psv
Pensil Dan Pemadam
Ujian pj
Ujian pj
Pensil Dan Pemadam
Más de Pensil Dan Pemadam
(20)
Soalan akhir tahun dunia muzik tahun 2
Soalan akhir tahun dunia muzik tahun 2
Ujian bulanan ogos dunia muzik
Ujian bulanan ogos dunia muzik
Ujian dst ogos
Ujian dst ogos
Soalan akhir tahun dst tahun 2
Soalan akhir tahun dst tahun 2
Yr 5 p1 09
Yr 5 p1 09
Ujian mt tahun 5 k2 kssr mac 2014
Ujian mt tahun 5 k2 kssr mac 2014
Ujian mt tahun 5 k1 kssr mac 2014
Ujian mt tahun 5 k1 kssr mac 2014
Ujian bulanan ogos
Ujian bulanan ogos
Ujian mt tahun 2 kssr mac 2014
Ujian mt tahun 2 kssr mac 2014
Ujian bulan mac 2015 matematik tahun2
Ujian bulan mac 2015 matematik tahun2
Soalan mt tahun 2 kssr sept 2014
Soalan mt tahun 2 kssr sept 2014
Soalan mt tahun 2 kssr ppt 2014
Soalan mt tahun 2 kssr ppt 2014
Selaras1y2p1 150301012508-conversion-gate02
Selaras1y2p1 150301012508-conversion-gate02
Soalan pjpk t3 ppt2013
Soalan pjpk t3 ppt2013
Soalanpsvtahun123456 120522053115-phpapp01
Soalanpsvtahun123456 120522053115-phpapp01
Soalanpsvtahun456siapskema1 130623012404-phpapp02
Soalanpsvtahun456siapskema1 130623012404-phpapp02
Sampul duit raya
Sampul duit raya
Rpt pendidikan-seni-visual-tahun-4
Rpt pendidikan-seni-visual-tahun-4
Psv
Psv
Ujian pj
Ujian pj
Último
Workshop Build With AI - Google Developers Group Rio Verde
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
Sandro Moreira
MINDCTI Revenue Release Quarter 1 2024
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
MIND CTI
The microservices honeymoon is over. When starting a new project or revamping a legacy monolith, teams started looking for alternatives to microservices. The Modular Monolith, or 'Modulith', is an architecture that reaps the benefits of (vertical) functional decoupling without the high costs associated with separate deployments. This talk will delve into the advantages and challenges of this progressive architecture, beginning with exploring the concept of a 'module', its internal structure, public API, and inter-module communication patterns. Supported by spring-modulith, the talk provides practical guidance on addressing the main challenges of a Modultith Architecture: finding and guarding module boundaries, data decoupling, and integration module-testing. You should not miss this talk if you are a software architect or tech lead seeking practical, scalable solutions. About the author With two decades of experience, Victor is a Java Champion working as a trainer for top companies in Europe. Five thousands developers in 120 companies attended his workshops, so he gets to debate every week the challenges that various projects struggle with. In return, Victor summarizes key points from these workshops in conference talks and online meetups for the European Software Crafters, the world’s largest developer community around architecture, refactoring, and testing. Discover how Victor can help you on victorrentea.ro : company training catalog, consultancy and YouTube playlists.
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
Whatsapp Number Escorts Call girls 8617370543 Available 24x7 Mcleodganj Call Girls Service Offer Genuine VIP Model Escorts Call Girls in Your Budget. Mcleodganj Call Girls Service Provide Real Call Girls Number. Make Your Sexual Pleasure Memorable with Our Mcleodganj Call Girls at Affordable Price. Top VIP Escorts Call Girls, High Profile Independent Escorts Call Girls, Housewife Women Escorts Call Girl, College Girls Escorts Call Girls, Russian Escorts Call girls Service in Your Budget.
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Deepika Singh
Uncertainty, Acting under uncertainty, Basic probability notation, Bayes’ Rule,
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
Khushali Kathiriya
The value of a flexible API Management solution for Open Banking Steve Melan, Manager for IT Innovation and Architecture - State's and Saving's Bank of Luxembourg Apidays New York 2024: The API Economy in the AI Era (April 30 & May 1, 2024) ------ Check out our conferences at https://www.apidays.global/ Do you want to sponsor or talk at one of our conferences? https://apidays.typeform.com/to/ILJeAaV8 Learn more on APIscene, the global media made by the community for the community: https://www.apiscene.io Explore the API ecosystem with the API Landscape: https://apilandscape.apiscene.io/
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
apidays
Following the popularity of "Cloud Revolution: Exploring the New Wave of Serverless Spatial Data," we're thrilled to announce this much-anticipated encore webinar. In this sequel, we'll dive deeper into the Cloud-Native realm by uncovering practical applications and FME support for these new formats, including COGs, COPC, FlatGeoBuf, GeoParquet, STAC, and ZARR. Building on the foundation laid by industry leaders Michelle Roby of Radiant Earth and Chris Holmes of Planet in the first webinar, this second part offers an in-depth look at the real-world application and behind-the-scenes dynamics of these cutting-edge formats. We will spotlight specific use-cases and workflows, showcasing their efficiency and relevance in practical scenarios. Discover the vast possibilities each format holds, highlighted through detailed discussions and demonstrations. Our expert speakers will dissect the key aspects and provide critical takeaways for effective use, ensuring attendees leave with a thorough understanding of how to apply these formats in their own projects. Elevate your understanding of how FME supports these cutting-edge technologies, enhancing your ability to manage, share, and analyze spatial data. Whether you're building on knowledge from our initial session or are new to the serverless spatial data landscape, this webinar is your gateway to mastering cloud-native formats in your workflows.
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
ICT role in 21 century education. How to ICT help in education
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
jfdjdjcjdnsjd
Tracing the root cause of a performance issue requires a lot of patience, experience, and focus. It’s so hard that we sometimes attempt to guess by trying out tentative fixes, but that usually results in frustration, messy code, and a considerable waste of time and money. This talk explains how to correctly zoom in on a performance bottleneck using three levels of profiling: distributed tracing, metrics, and method profiling. After we learn to read the JVM profiler output as a flame graph, we explore a series of bottlenecks typical for backend systems, like connection/thread pool starvation, invisible aspects, blocking code, hot CPU methods, lock contention, and Virtual Thread pinning, and we learn to trace them even if they occur in library code you are not familiar with. Attend this talk and prepare for the performance issues that will eventually hit any successful system. About authorWith two decades of experience, Victor is a Java Champion working as a trainer for top companies in Europe. Five thousands developers in 120 companies attended his workshops, so he gets to debate every week the challenges that various projects struggle with. In return, Victor summarizes key points from these workshops in conference talks and online meetups for the European Software Crafters, the world’s largest developer community around architecture, refactoring, and testing. Discover how Victor can help you on victorrentea.ro : company training catalog, consultancy and YouTube playlists.
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
Scaling API-first – The story of a global engineering organization Ian Reasor, Senior Computer Scientist - Adobe Radu Cotescu, Senior Computer Scientist - Adobe Apidays New York 2024: The API Economy in the AI Era (April 30 & May 1, 2024) ------ Check out our conferences at https://www.apidays.global/ Do you want to sponsor or talk at one of our conferences? https://apidays.typeform.com/to/ILJeAaV8 Learn more on APIscene, the global media made by the community for the community: https://www.apiscene.io Explore the API ecosystem with the API Landscape: https://apilandscape.apiscene.io/
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
apidays
Dubai, often portrayed as a shimmering oasis in the desert, faces its own set of challenges, including the occasional threat of flooding. Despite its reputation for opulence and modernity, the emirate is not immune to the forces of nature. In recent years, Dubai has experienced sporadic but significant floods, testing the resilience of its infrastructure and communities. Among the critical lifelines in this bustling metropolis is the Dubai International Airport, a bustling hub that connects the city to the world. This article explores the intersection of Dubai flood events and the resilience demonstrated by the Dubai International Airport in the face of such challenges.
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Orbitshub
Webinar Recording: https://www.panagenda.com/webinars/why-teams-call-analytics-is-critical-to-your-entire-business Nothing is as frustrating and noticeable as being in an important call and being unable to see or hear the other person. Not surprising then, that issues with Teams calls are among the most common problems users call their helpdesk for. Having in depth insight into everything relevant going on at the user’s device, local network, ISP and Microsoft itself during the call is crucial for good Microsoft Teams Call quality support. To ensure a quick and adequate solution and to ensure your users get the most out of their Microsoft 365. But did you know that ‘bad calls’ are also an excellent indicator of other problems arising? Precisely because it is so noticeable!? Like the canary in the mine, bad calls can be early indicators of problems. Problems that might otherwise not have been noticed for a while but can have a big impact on productivity and satisfaction. Join this session by Christoph Adler to learn how true Microsoft Teams call quality analytics helped other organizations troubleshoot bad calls and identify and fix problems that impacted Teams calls or the use of Microsoft365 in general. See what it can do to keep your users happy and productive! In this session we will cover - Why CQD data alone is not enough to troubleshoot call problems - The importance of attributing call problems to the right call participant - What call quality analytics can do to help you quickly find, fix-, and prevent problems - Why having retrospective detailed insights matters - Real life examples of how others have used Microsoft Teams call quality monitoring to problem shoot problems with their ISP, network, device health and more.
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
The Digital Insurer
We present an architecture of embedding models, vector databases, LLMs, and narrow ML for tracking global news narratives across a variety of countries/languages/news sources. As an example, we explore the real-time application of this architecture for tracking the news narrative surrounding the death of Russian opposition leader Alexei Navalny coming from Russian, French, and English sources.
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Zilliz
Six common myths about ontology engineering, knowledge graphs, and knowledge representation.
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
johnbeverley2021
In this keynote, Asanka Abeysinghe, CTO,WSO2 will explore the shift towards platformless technology ecosystems and their importance in driving digital adaptability and innovation. We will discuss strategies for leveraging decentralized architectures and integrating diverse technologies, with a focus on building resilient, flexible, and future-ready IT infrastructures. We will also highlight WSO2's roadmap, emphasizing our commitment to supporting this transformative journey with our evolving product suite.
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
WSO2
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
Nanddeep Nachan
Following the popularity of “Cloud Revolution: Exploring the New Wave of Serverless Spatial Data,” we’re thrilled to announce this much-anticipated encore webinar. In this sequel, we’ll dive deeper into the Cloud-Native realm by uncovering practical applications and FME support for these new formats, including COGs, COPC, FlatGeoBuf, GeoParquet, STAC, and ZARR. Building on the foundation laid by industry leaders Michelle Roby of Radiant Earth and Chris Holmes of Planet in the first webinar, this second part offers an in-depth look at the real-world application and behind-the-scenes dynamics of these cutting-edge formats. We will spotlight specific use-cases and workflows, showcasing their efficiency and relevance in practical scenarios. Discover the vast possibilities each format holds, highlighted through detailed discussions and demonstrations. Our expert speakers will dissect the key aspects and provide critical takeaways for effective use, ensuring attendees leave with a thorough understanding of how to apply these formats in their own projects. Elevate your understanding of how FME supports these cutting-edge technologies, enhancing your ability to manage, share, and analyze spatial data. Whether you’re building on knowledge from our initial session or are new to the serverless spatial data landscape, this webinar is your gateway to mastering cloud-native formats in your workflows.
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
ICT role in education and it's challenges. In which we learn about ICT, it's impact, benefits and challenges.
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
rafiqahmad00786416
Angeliki Cooney has spent over twenty years at the forefront of the life sciences industry, working out of Wynantskill, NY. She is highly regarded for her dedication to advancing the development and accessibility of innovative treatments for chronic diseases, rare disorders, and cancer. Her professional journey has centered on strategic consulting for biopharmaceutical companies, facilitating digital transformation, enhancing omnichannel engagement, and refining strategic commercial practices. Angeliki's innovative contributions include pioneering several software-as-a-service (SaaS) products for the life sciences sector, earning her three patents. As the Senior Vice President of Life Sciences at Avenga, Angeliki orchestrated the firm's strategic entry into the U.S. market. Avenga, a renowned digital engineering and consulting firm, partners with significant entities in the pharmaceutical and biotechnology fields. Her leadership was instrumental in expanding Avenga's client base and establishing its presence in the competitive U.S. market.
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Angeliki Cooney
Último
(20)
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Basic stats
1.
Basic Statistics A
Brief Introduction Allison Titcomb, Ph.D. ICYF, SFCR, U of A
2.
3.
4.
5.
6.
7.
8.
9.
10.
11.
12.
13.
14.
15.
16.
17.
18.
19.
20.
21.
22.
Descargar ahora