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chapter 3  introduction to game design

Chapter 15  introduction to the design of electric machinery

Chapter 15 introduction to the design of electric machinery

Điện - Điện tử

... similar to the stator backiron The inert region (radii from rrs to rri) mechanically transfers torque from the rotor backiron to the shaft It is often just a continuation of the rotor Stator Backiron ... radius, rrb—the rotor backiron radius, rrg—the rotor air-gap radius, rst—the stator tooth inner radius, rsb—the stator backiron inner radius, and rss—the stator shell radius A stator shell, if present, ... of design, it will be convenient to introduce the tooth fraction αt and tooth tip fraction αtt The tooth fraction is defined as the angular fraction of the slot/tooth region occupied by the tooth...
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Data Mining: Exploring Data Lecture Notes for Chapter 3 Introduction to Data Mining potx

Data Mining: Exploring Data Lecture Notes for Chapter 3 Introduction to Data Mining potx

Cơ sở dữ liệu

... data to better understand its characteristics Key motivations of data exploration include – Helping to select the right tool for preprocessing or analysis – Making use of humans’ abilities to recognize ... patterns not captured by data analysis tools Related to the area of Exploratory Data Analysis (EDA) – Created by statistician John Tukey – Seminal book is Exploratory Data Analysis by Tukey – A nice ... so many points – Can sample, but want to preserve points in 14 © Tan,Steinbach, Kumar Introduction to Data Mining Visualization Techniques: Histograms Histogram – Usually shows the distribution...
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Introduction to Optimum Design phần 3 pptx

Introduction to Optimum Design phần 3 pptx

Kỹ thuật lập trình

... select ej > 144 INTRODUCTION TO OPTIMUM DESIGN in Eq (4.53) When a constraint is relaxed, the feasible set for the design problem expands We allow more feasible designs to be candidate minimum points ... force due to load W in Bar (N) F2 = force due to load W in Bar (N) Total volume of the bracket is to be minimized Problem Formulation The cross-sectional areas A1 and A2 are the two design variables ... of design variables In the general optimum design problem formulation, the number of independent equality constraints must be “£” to the number of design variables In the general optimum design...
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Real-Time Digital Signal Processing - Chapter 1: Introduction to Real-Time Digital Signal Processing

Real-Time Digital Signal Processing - Chapter 1: Introduction to Real-Time Digital Signal Processing

Hóa học - Dầu khí

... limitations may be virtually ignored in a design using floating-point DSP chips This is in contrast to fixedpoint designs, where the designer has to apply scaling factors to prevent arithmetic overflow, ... breakpoint The command to enable a breakpoint can be given from the Toggle Breakpoint hot button on the project toolbar or by clicking the right mouse button and choosing toggle breakpoint The ... the integrator output voltage to get back to zero is directly proportional to the input voltage This technique is very precise and can produce ADCs with high resolution Since the integrator is used...
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Real-Time Digital Signal Processing - Chapter 2: Introduction to TMS320C55x Digital Signal Processor

Real-Time Digital Signal Processing - Chapter 2: Introduction to TMS320C55x Digital Signal Processor

Hóa học - Dầu khí

... programs In order to execute the designed DSP algorithms on the target system, the C or assembly programs must first be translated into binary machine code and then linked together to form an executable ... data that can be loaded into memory space Assembler directives are used to control the assembly process and to enter data into the program Assembly directives can be used to initialize memory, define ... breakpoints to be set at a particular point in a program to examine the registers and the memory locations in order to evaluate the real-time results using a DSP board Emulators allow the DSP software to...
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Tài liệu Module 3: Introduction to COM+ pdf

Tài liệu Module 3: Introduction to COM+ pdf

Quản trị mạng

... how to add components to the application you have created ! Create a COM+ application Start the Component Services tool • On the Start menu, point to Programs, then point to Administrative Tools, ... the comment Find out the Total value of the order b Assign a value to curTotal by passing rsOrderDetails to the GetTotal function Use the private Authorize function to authorize the order and ... learn how to manage and administer COM+ applications and components You will learn how to use the Component Services administration tool to create COM+ applications and add components to applications...
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Chapter 4 Introduction to Portfolio Theory

Chapter 4 Introduction to Portfolio Theory

Chuyên ngành kinh tế

... investments in the two stocks The investor s problem is to decide how much wealth to put in asset A and how much to put in asset B Let xA denote the share of wealth invested in stock A and xB denote ... simple way to solve this problem is to substitute the restriction (7) into the function (6) and reduce the problem to a minimization over one variable To illustrate, use the restriction (7) to solve ... very risk tolerant investor may actually borrow at the risk free rate and use these funds to leverage her investment in the tangency portfolio For example, suppose the risk tolerant investor borrows...
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Module 3Introduction to Information and Communication Technologies (ICTs) pdf

Module 3 Introduction to Information and Communication Technologies (ICTs) pdf

Cao đẳng - Đại học

... The objective of Module • To improve the library staff to know about how to use ICts as computer including using internet … The level of student • Students who will come to study might have basic ... Module Introduction to Information and Communication Technologies (ICTs) - Lesson 1: Why librarians need to know about ICTs and acquire skill in their use? -...
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Chapter 1 Introduction to Routing and Packet ForwardingRouting Protocols and Concepts quangkien@gmail.com.Topicsl Inside the Router Ÿ Routers are computers Ÿ Router CPU and Memory Ÿ Internetwork Operating System Ÿ Router Bootup Process Ÿ Router Ports doc

Chapter 1 Introduction to Routing and Packet ForwardingRouting Protocols and Concepts quangkien@gmail.com.Topicsl Inside the Router Ÿ Routers are computers Ÿ Router CPU and Memory Ÿ Internetwork Operating System Ÿ Router Bootup Process Ÿ Router Ports doc

Quản trị mạng

... Dynamic Routing Protocols: RIP and OSPF l RIP uses hop count Ÿ R1 to R3 Ÿ Fewer links but much slower l OSPF uses bandwidth Ÿ R1 to R2 to R3 Ÿ More routers but much faster links 31 To reach the 192.168.1.0/24 ... the following steps to connect a terminal to the console port on the router: l Connect the terminal using the RJ-45 to RJ-45 rollover cable and an RJ-45 to DB-9 or RJ-45 to DB-25 adapter l Configure ... the IOS stored? ROM Where is IOS permanently stored before it is copied into RAM? FLASH Where are the bootsystem commands stored which are used to locate the IOS? NVRAM running-config IOS (running)...
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Chapter 1 – Introduction to Computers and C++ Programming pot

Chapter 1 – Introduction to Computers and C++ Programming pot

Kỹ thuật lập trình

... (stream extraction operator) • Used with std::cin • Waits for user to input value, then press Enter (Return) key • Stores value in variable to right of operator – Converts value to variable data type ... std::cout – “Connected” to screen –
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Data Mining: Introduction Lecture Notes for Chapter 1 Introduction to Data Mining ppt

Data Mining: Introduction Lecture Notes for Chapter 1 Introduction to Data Mining ppt

Cơ sở dữ liệu

... whether a customer is likely to be lost to a competitor – Approach: • Use detailed record of transactions with each of the past and present customers, to find attributes – How often the customer calls, ... © Tan,Steinbach, Kumar Total Articles 555 354 278 Introduction to Data Mining 19 Clustering of S&P 500 Stock Data Observe Stock Movements every day Clustering points: Stock-{UP/DOWN} Similarity ... {Bagels, … } > {Potato Chips} – Potato Chips as consequent => Can be used to determine what should be done to boost its sales – Bagels in the antecedent => Can be used to see which products...
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Data Mining: Data Lecture Notes for Chapter 2 Introduction to Data Mining potx

Data Mining: Data Lecture Notes for Chapter 2 Introduction to Data Mining potx

Cơ sở dữ liệu

... Introduction to Data Mining Attribute Values Attribute values are numbers or symbols assigned to an attribute Distinction between attributes and attribute values – Same attribute can be mapped to different ... © Tan,Steinbach, Kumar Introduction to Data Mining 13 Document Data Each document becomes a `term' vector, – each term is a component (attribute) of the vector, – the value of each component is ... – duplicate data © Tan,Steinbach, Kumar Introduction to Data Mining 21 Noise Noise refers to modification of original values – Examples: distortion of a person’s voice when talking on a poor phone...
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Data Mining Classification: Basic Concepts, Decision Trees, and Model Evaluation Lecture Notes for Chapter 4 Introduction to Data Mining pptx

Data Mining Classification: Basic Concepts, Decision Trees, and Model Evaluation Lecture Notes for Chapter 4 Introduction to Data Mining pptx

Cơ sở dữ liệu

... Determine how to split the records • How to specify the attribute test condition? • How to determine the best split? – Determine when to stop splitting © Tan,Steinbach, Kumar Introduction to Data Mining ... Determine how to split the records • How to specify the attribute test condition? • How to determine the best split? – Determine when to stop splitting © Tan,Steinbach, Kumar Introduction to Data Mining ... condition? • How to determine the best split? – Determine when to stop splitting © Tan,Steinbach, Kumar Introduction to Data Mining 46 Stopping Criteria for Tree Induction Stop expanding a node...
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Data Mining Classification: Alternative Techniques - Lecture Notes for Chapter 5 Introduction to Data Mining pdf

Data Mining Classification: Alternative Techniques - Lecture Notes for Chapter 5 Introduction to Data Mining pdf

Cơ sở dữ liệu

... according to distance • weight factor, w = 1/d2 © Tan,Steinbach, Kumar Introduction to Data Mining 41 Nearest Neighbor Classification… Choosing the value of k: – If k is too small, sensitive to noise ... Introduction to Data Mining 34 Instance-Based Classifiers • Store the training records • Use training records to predict the class label of unseen cases © Tan,Steinbach, Kumar Introduction to Data ... nearest neighbors to retrieve To classify an unknown record: – Compute distance to other training records – Identify k nearest neighbors – Use class labels of nearest neighbors to determine the...
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Data Mining Association Analysis: Basic Concepts and Algorithms Lecture Notes for Chapter 6 Introduction to Data Mining pdf

Data Mining Association Analysis: Basic Concepts and Algorithms Lecture Notes for Chapter 6 Introduction to Data Mining pdf

Cơ sở dữ liệu

... Use efficient data structures to store the candidates or transactions – No need to match every candidate against every transaction © Tan,Steinbach, Kumar Introduction to Data Mining 11 Reducing ... Pointer to projected database of its ancestor node – Bitvector containing information about which transactions in the projected database contain the itemset © Tan,Steinbach, Kumar Introduction to ... Tan,Steinbach, Kumar Introduction to Data Mining 12 Illustrating Apriori Principle Found to be Infrequent Pruned supersets © Tan,Steinbach, Kumar Introduction to Data Mining 13 Illustrating Apriori...
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Data Mining Association Rules: Advanced Concepts and Algorithms Lecture Notes for Chapter 7 Introduction to Data Mining docx

Data Mining Association Rules: Advanced Concepts and Algorithms Lecture Notes for Chapter 7 Introduction to Data Mining docx

Cơ sở dữ liệu

... Introduction to Data Mining 26 Examples of Sequence Data Sequence Database Sequence Element (Transaction) Event (Item) Customer Purchase history of a given customer A set of items bought by a customer ... Introduction to Data Mining 20 Multi-level Association Rules Food Electronics Bread Computers Milk Wheat Skim White Foremost © Tan,Steinbach, Kumar 2% Desktop Kemps Introduction to Data Mining Home Laptop ... Tan,Steinbach, Kumar Introduction to Data Mining 15 Min-Apriori (Han et al) Document-term matrix: TID W1 W2 W3 W4 W5 D1 2 0 D2 0 2 D3 0 D4 0 1 D5 1 Example: W1 and W2 tends to appear together in the same...
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Data Mining Cluster Analysis: Basic Concepts and Algorithms Lecture Notes for Chapter 8 Introduction to Data Mining pot

Data Mining Cluster Analysis: Basic Concepts and Algorithms Lecture Notes for Chapter 8 Introduction to Data Mining pot

Cơ sở dữ liệu

... Original Points K-means Clusters One solution is to use many clusters Find parts of clusters, but need to put together © Tan,Steinbach, Kumar Introduction to Data Mining 43 Overcoming K-means Limitations ... is closer (or more similar) to one or more other points in the cluster than to any point not in the cluster contiguous clusters © Tan,Steinbach, Kumar Introduction to Data Mining 13 Types of Clusters: ... the proximities between points – Clustering is equivalent to breaking the graph into connected components, one for each cluster – Want to minimize the edge weight between clusters and maximize...
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Data Mining Cluster Analysis: Advanced Concepts and Algorithms Lecture Notes for Chapter 9 Introduction to Data Mining pot

Data Mining Cluster Analysis: Advanced Concepts and Algorithms Lecture Notes for Chapter 9 Introduction to Data Mining pot

Cơ sở dữ liệu

... Rastogi, Shim © Tan,Steinbach, Kumar Introduction to Data Mining Experimental Results: CURE (centroid) (single link) Picture from CURE, Guha, Rastogi, Shim © Tan,Steinbach, Kumar Introduction to ... keep the connections to the most similar (nearest) neighbors of a point while breaking the connections to less similar points The nearest neighbors of a point tend to belong to the same class as ... (d) Introduction to Data Mining 13 Chameleon: Clustering Using Dynamic Modeling Adapt to the characteristics of the data set to find the natural clusters Use a dynamic model to measure the similarity...
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