Role models - PowerPoint PPT Presentation


Recent Advances in Large Language Models: A Comprehensive Overview

Large Language Models (LLMs) are sophisticated deep learning algorithms capable of understanding and generating human language. These models, trained on massive datasets, excel at various natural language processing tasks such as sentiment analysis, text classification, natural language inference, s

2 views • 83 slides


Global Climate Models

Scientists simulate the climate system and project future scenarios by observing, measuring, and applying knowledge to computer models. These models represent Earth's surface and atmosphere using mathematical equations, which are converted to computer code. Supercomputers solve these equations to pr

3 views • 15 slides



System Models in Software Engineering: A Comprehensive Overview

System models play a crucial role in software engineering, aiding in understanding system functionality and communicating with customers. They include context models, behavioural models, data models, object models, and more, each offering unique perspectives on the system. Different types of system

2 views • 33 slides


Understanding Deep Generative Models in Probabilistic Machine Learning

This content explores various deep generative models such as Variational Autoencoders and Generative Adversarial Networks used in Probabilistic Machine Learning. It discusses the construction of generative models using neural networks and Gaussian processes, with a focus on techniques like VAEs and

9 views • 18 slides


Understanding Input-Output Models in Economics

Input-Output models, pioneered by Wassily Leontief, depict inter-industry relationships within an economy. These models analyze the dependencies between different sectors and have been utilized for studying agricultural production distribution, economic development planning, and impact analysis of i

8 views • 7 slides


Overview of Distributed Systems: Characteristics, Classification, Computation, Communication, and Fault Models

Characterizing Distributed Systems: Multiple autonomous computers with CPUs, memory, storage, and I/O paths, interconnected geographically, shared state, global invariants. Classifying Distributed Systems: Based on synchrony, communication medium, fault models like crash and Byzantine failures. Comp

9 views • 126 slides


Exploring Physical Geography Models and Theories

Engage in an active discussion concerning the teaching and learning of physical geography, focusing on various models, including the Bradshaw model. Learn about the importance and usage of models in physical geography education, their impact on student learning, and the essence of models in teaching

8 views • 22 slides


Model evaluation strategy impacts the interpretation and performance of machine learning models

The evaluation strategy used for machine learning models significantly impacts their interpretation and performance. This study explores different evaluation methods and their implications for understanding climate-crop dynamics using explainable machine learning approaches. The strategy involves tr

6 views • 16 slides


Understanding Models of Teaching in Education

Exploring different models of teaching, such as Carroll's model, Proctor's model, and others, that guide educational activities and environments. These models specify learning outcomes, environmental conditions, performance criteria, and more to shape effective teaching practices. Functions of teach

2 views • 20 slides


Understanding Models of Teaching for Effective Learning

Models of teaching serve as instructional designs to facilitate students in acquiring knowledge, skills, and values by creating specific learning environments. Bruce Joyce and Marsha Weil classified teaching models into four families: Information Processing Models, Personal Models, Social Interactio

1 views • 28 slides


Comparing Logit and Probit Coefficients between Models

Richard Williams, with assistance from Cheng Wang, discusses the comparison of logit and probit coefficients in regression models. The essence of estimating models with continuous independent variables is explored, emphasizing the impact of adding explanatory variables on explained and residual vari

1 views • 43 slides


Understanding Probability Rules and Models

Probability rules and models explain how to calculate the likelihood of different outcomes in a chance process by utilizing sample spaces, probability models, events, and basic rules of probability. Learn about the importance of sample space, probability models, calculating probabilities, mutually e

0 views • 17 slides


Significance of Models in Agricultural Geography

Models play a crucial role in various disciplines, including agricultural geography, by offering a simplified and hypothetical representation of complex phenomena. When used correctly, models help in understanding reality and empirical investigations, but misuse can lead to dangerous outcomes. Longm

0 views • 8 slides


Understanding CGE and DSGE Models: A Comparative Analysis

Explore the similarities between Computable General Equilibrium (CGE) models and Dynamic Stochastic General Equilibrium (DSGE) models, their equilibrium concepts, and the use of descriptive equilibria in empirical modeling. Learn how CGE and DSGE models simulate the operation of commodity and factor

4 views • 15 slides


Enhancing Information Retrieval with Augmented Generation Models

Augmented generation models, such as REALM and RAG, integrate retrieval and generation tasks to improve information retrieval processes. These models leverage background knowledge and language models to enhance recall and candidate generation. REALM focuses on concatenation and retrieval operations,

1 views • 9 slides


Understanding Item Response Theory in Measurement Models

Item Response Theory (IRT) is a statistical measurement model used to describe the relationship between responses on a given item and the underlying trait being measured. It allows for indirectly measuring unobservable variables using indicators and provides advantages such as independent ability es

2 views • 32 slides


Exploring Business Models in Entrepreneurship for Computer Science

Today's lecture covered the fundamentals of business models in entrepreneurship, emphasizing the importance of value creation and value capture. It discussed various types of business models, including the Up-Front Charge Model and the Transaction Fee Model, highlighting their respective features an

0 views • 18 slides


Panel Stochastic Frontier Models with Endogeneity in Stata

Introducing xtsfkk, a new Stata command for fitting panel stochastic frontier models with endogeneity, offering better control for endogenous variables in the frontier and/or the inefficiency term in longitudinal settings compared to standard estimators. Learn about the significance of stochastic fr

0 views • 13 slides


Understanding Discrete Optimization in Mathematical Modeling

Discrete Optimization is a field of applied mathematics that uses techniques from combinatorics, graph theory, linear programming, and algorithms to solve optimization problems over discrete structures. This involves creating mathematical models, defining objective functions, decision variables, and

0 views • 12 slides


Understanding Basic Concepts in Statistics

This content covers fundamental concepts in statistics such as populations, samples, models, and probability distributions. It explains the differences between populations and samples, the importance of models in describing populations, and discusses various distributions like the normal and Poisson

0 views • 42 slides


Foundations of Probabilistic Models for Classification in Machine Learning

This content delves into the principles and applications of probabilistic models for binary classification problems, focusing on algorithms and machine learning concepts. It covers topics such as generative models, conditional probabilities, Gaussian distributions, and logistic functions in the cont

0 views • 32 slides


Understanding Energy Distribution System Line Models

This presentation delves into the various line models used in energy distribution systems, including exact line segment models and their derivation from Kirchhoff's voltage and current laws. The discussion covers three line segment models, the computation of phase impedance and admittance matrices,

0 views • 44 slides


Observational Constraints on Viable f(R) Gravity Models Analysis

Investigating f(R) gravity models by extending the Einstein-Hilbert action with an arbitrary function f(R). Conditions for viable models include positive gravitational constants, stable cosmological perturbations, asymptotic behavior towards the ΛCDM model, stability of late-time de Sitter point, a

1 views • 12 slides


Understanding Wireless Propagation Models: Challenges and Applications

Wireless propagation models play a crucial role in characterizing the wireless channel and understanding how signals are affected by environmental conditions. This article explores the different propagation mechanisms like reflection, diffraction, and scattering, along with the challenges and applic

1 views • 14 slides


Floor Plan Extraction from Digital Building Models: State of the Map 2022

Explore the innovative project LevelOut extracting indoor data from digital building models in IFC format to produce 2.5D floor plans. Discover the necessity of indoor mapping for gaining profound insights, enhancing navigation services, and enriching city models. Learn about the target formats incl

0 views • 7 slides


Models for On-line Control of Polymerization Processes: A Thesis Presentation

This presentation delves into developing models for on-line control of polymerization processes, focusing on reactors for similar systems. The work aims to extend existing knowledge on semi-batch emulsion copolymerization models, with a goal of formulating models for tubular reactors. Strategies, ba

0 views • 16 slides


Understanding N-Gram Models in Language Modelling

N-gram models play a crucial role in language modelling by predicting the next word in a sequence based on the probability of previous words. This technology is used in various applications such as word prediction, speech recognition, and spelling correction. By analyzing history and probabilities,

0 views • 101 slides


Understanding Information Retrieval Models and Processes

Delve into the world of information retrieval models with a focus on traditional approaches, main processes like indexing and retrieval, cases of one-term and multi-term queries, and the evolution of IR models from boolean to probabilistic and vector space models. Explore the concept of IR models, r

0 views • 65 slides


Understanding Antiemetic Screening Models in Pharmaceutical Science

Explore the fascinating world of antiemetic screening models in pharmaceutical science, covering topics such as the pathogenesis of vomiting, choice of emetogens, commonly used animals, parameters assessed, screening models, and more. Learn about drug-induced emesis models and the critical parameter

0 views • 25 slides


Understanding Cross-Classified Models in Multilevel Modelling

Cross-classified models in multilevel modelling involve non-hierarchical data structures where entities are classified within multiple categories. These models extend traditional nested multilevel models by accounting for complex relationships among data levels. Professor William Browne from the Uni

0 views • 13 slides


Exact Correlation Models in Biscalar Fishnet Theory

In the study of biscalar fishnet models, various operators and spectra were explored, leading to findings on exact correlation functions, strong coupling regimes, Regge limits, and more in arbitrary dimensions. The investigation delves into Lagrangian formulations, graph-building operators, conforma

0 views • 15 slides


Understanding General Equilibrium Models and Social Accounting Matrices

General Equilibrium Models (CGE) and Social Accounting Matrices (SAM) provide a comprehensive framework for analyzing economies and policies. This analysis delves into how CGE models help simulate various economic scenarios and their link to SAM, which serves as a key data input for the models. The

0 views • 50 slides


NOAA Hurricane Forecasting Models Overview

The NOAA hurricane forecasting models include HWRF, POM, HYCOM, HMON, covering regions like the Pacific, Indian Ocean, North Atlantic, and Gulf of Mexico. These models utilize a combination of climatology data, feature models, and real-time RTOFS inputs for initialization and forecasting. Various co

0 views • 14 slides


Overview of Synthetic Models in Transcriptional Data Analysis

This content showcases various synthetic models for analyzing transcriptome data, including integrative models, trait prediction, and deep Boltzmann machines. It explores the generation of synthetic transcriptome data and the training processes involved in these models. The use of Restricted Boltzma

0 views • 14 slides


Understanding Retrieval Models in Information Retrieval

Retrieval models play a crucial role in defining the search process, with various assumptions and ranking algorithms. Relevance, a complex concept, is central to these models, though subject to disagreement. An overview of different retrieval models like Boolean, Vector Space, and Probabilistic Mode

0 views • 56 slides


Graphical Models and Belief Propagation in Computer Vision

Identical local evidence can lead to different interpretations in computer vision, highlighting the importance of propagating information effectively. Probabilistic graphical models serve as a powerful tool for this purpose, enabling the propagation of local information within an image. This lecture

0 views • 50 slides


Understanding Scientific Models and Their Applications

Explore the world of scientific models through this informative content covering physical, mathematical, and conceptual models. Discover why models are used in science, their types, and potential limitations. Delve into the importance of utilizing models to comprehend complex concepts effectively.

0 views • 21 slides


Understanding Composite Models in Building Complex Systems

Composite models are essential in representing complex entities by combining different types of models, such as resource allocation, transport, and assembly models. Gluing these models together allows for a comprehensive representation of systems like the milk industry, where raw materials are trans

0 views • 27 slides


Understanding Latent Variable Models in Machine Learning

Latent variable models play a crucial role in machine learning, especially in unsupervised learning tasks like clustering, dimensionality reduction, and probability density estimation. These models involve hidden variables that encode latent properties of observations, allowing for a deeper insight

0 views • 10 slides


Overview of Color Models in Computer Graphics

Color models in computer graphics play a crucial role in creating a wide range of colors using a limited set of primary colors. There are two main types of color models - additive and subtractive, with RGB being common for displays and CMYK for printing. RGB is additive, combining red, green, and bl

0 views • 16 slides