Search Results - (((((((kant OR wanting) OR mantis) OR wien) OR cantor) OR anne) OR shape) OR hints) algorithms.
Suggested Topics within your search.
Suggested Topics within your search.
- Data processing 35
- Artificial intelligence 26
- Mathematics 26
- Machine learning 25
- Mathematical models 22
- Algorithms 15
- artificial intelligence 15
- Data mining 14
- Technological innovations 13
- Mathematical optimization 12
- algorithms 12
- Artificial Intelligence 11
- Digital techniques 11
- History 11
- Image processing 11
- Python (Computer program language) 11
- Computer networks 10
- Neural networks (Computer science) 10
- Social aspects 10
- Application software 9
- Development 9
- methods 9
- Computer graphics 8
- Data Mining 7
- Engineering 7
- Machine Learning 7
- computer graphics 7
- digital imaging 7
- Automation 6
- Computer algorithms 6
Search alternatives:
- kant »
- wanting »
- mantis »
- wien »
-
301
Chemical engineering and material properties III : selected, peer reviewed papers from the 2014 4th International Symposium on Chemical Engineering and Material Properties (ISCEMP...
Published 2014Full text (MFA users only)
Electronic Conference Proceeding eBook -
302
The image-interface : graphical supports for visual information
Published 2017Full text (MFA users only)
Electronic eBook -
303
Atlas of AI : power, politics, and the planetary costs of artificial intelligence
Published 2021Full text (MFA users only)
Electronic eBook -
304
Microwave and millimeter wave circuits and systems : emerging design, technologies, and applications
Published 2012Table of Contents: “…1.1.7 MBF Model -- the Memoryless PA Behavioural Model of ChoiceAcknowledgements; References; 2 Artificial Neural Network in Microwave Cavity Filter Tuning; 2.1 Introduction; 2.2 Artificial Neural Networks Filter Tuning; 2.2.1 The Inverse Model of the Filter; 2.2.2 Sequential Method; 2.2.3 Parallel Method; 2.2.4 Discussion on the ANN's Input Data; 2.3 Practical Implementation -- Tuning Experiments; 2.3.1 Sequential Method; 2.3.2 Parallel Method; 2.4 Influence of the Filter Characteristic Domain on Algorithm Efficiency; 2.5 Robots in the Microwave Filter Tuning; 2.6 Conclusions; Acknowledgement…”
Full text (MFA users only)
Electronic eBook -
305
-
306
Exact methods in low-dimensional statistical physics and quantum computing : École d'été de physique des Houches, session LXXXIX, 30 June-1 August 2008, École thématique du CNRS...
Published 2010Table of Contents: “…7.11 The Legendre transform of the free energy7.12 The limit shape phenomenon -- 7.13 Semiclassical limits -- 7.14 The free-fermionic point and dimer models -- 7.A Appendix -- References -- 8 Mathematical aspects of 2D phase transitions -- PART II: SHORT LECTURES -- 9 Numerical simulations of quantum statistical mechanical models -- 9.1 Introduction -- 9.2 A rapid survey of methods -- 9.3 Path integral and related methods -- 9.4 Classical worm algorithm -- 9.5 Projection methods -- 9.6 Valence bond projection method -- References…”
Full text (MFA users only)
Electronic Conference Proceeding eBook -
307
Uncertainty, expectations, and financial instability : reviving Allais's lost theory of psychological time
Published 2014Full text (MFA users only)
Electronic eBook -
308
-
309
Swift 2 design patterns : build robust and scalable iOS and Mac OS X game applications
Published 2015Full text (MFA users only)
Electronic eBook -
310
Spatial control of vibration : theory and experiments
Published 2003Table of Contents: “…System Identification for Spatially Distributed Systems; 7.1 Introduction; 7.2 Modeling; 7.3 Spatial sampling; 7.4 Identifying the system matrix; 7.5 Identifying the mode shapes and feed-through function; 7.6 Experimental results; 7.7 Conclusions; Appendix A Frequency domain subspace system identification; A.1 Introduction; A.2 Frequency Domain Subspace Algorithm; Bibliography; Index.…”
Full text (MFA users only)
Electronic eBook -
311
Kotlin standard library cookbook : master the powerful Kotlin standard library through practical code examples
Published 2018Table of Contents: “…. ; See also; Applying sequences to solve algorithmic problems; Getting ready; How to do it ... ; How it works ... ; Chapter 2: Expressive Functions and Adjustable Interfaces; Introduction; Declaring adjustable functions with default parameters; How to do it ... ; How it works ... ; See also; Declaring interfaces containing default implementations; Getting ready…”
Full text (MFA users only)
Electronic eBook -
312
The bitcoin big bang : how alternative currencies are about to change the world
Published 2014Table of Contents: “…; 8 Building the Nautiluscoin Economy; Dynamic Proof-of-Stake; Nautiluscoin Gross Domestic Product Target; Algorithmic Monetary Policy.…”
Full text (MFA users only)
Electronic eBook -
313
What to Do When Machines Do Everything : Five Ways Your Business Can Thrive in an Economy of Bots, AI, and Data.
Published 2017Table of Contents: “…What to Do When Machines Do Everything: How to Get Ahead in a World of AI, Algorithms, Bots, and Big Data; Contents; Preface; 1: When Machines Do Everything; Like It or Not, This Is Happening; Digital That Matters; Playing the New Game; But Will I Be Automated Away?…”
Full text (MFA users only)
Electronic eBook -
314
Pediatric incontinence : evaluation and clinical management
Published 2015Full text (MFA users only)
Electronic eBook -
315
Digital wealth : an automatic way to invest successfully
Published 2016Full text (MFA users only)
Electronic eBook -
316
Remote Sensing Digital Image Analysis : an Introduction
Published 1993Table of Contents: “…More Advanced Considerations -- 8.8 Context Classification -- 8.8.1 The Concept of Spatial Context -- 8.8.2 Context Classification by Image Pre-Processing -- 8.8.3 Post Classification Filtering -- 8.8.4 Probabilistic Label Relaxation -- 8.8.4.1 The Basic Algorithm -- 8.8.4.2 The Neighbourhood Function -- 8.8.4.3 Determining the Compatibility Coefficients -- 8.8.4.4 The Final Step -- Stopping the Process -- 8.8.4.5 Examples -- 8.9 Classification of Mixed Image Data -- 8.9.1 The Stacked Vector Approach -- 8.9.2 Statistical Methods -- 8.9.3 The Theory of Evidence -- 8.9.3.1 The Concept of Evidential Mass -- 8.9.3.2 Combining Evidence -- the Orthogonal Sum -- 8.9.3.3 Decision Rule -- 8.10 Classification Using Neural Networks -- 8.10.1 Linear Discrimination -- 8.10.1.1 Concept of a Weight Vector -- 8.10.1.2 Testing Class Membership -- 8.10.1.3 Training -- 8.10.1.4 Setting the Correction Increment -- 8.10.1.5 Classification -- The Threshold Logic Unit -- 8.10.1.6 Multicategory Classification -- 8.10.2 Networks of Classifiers -- Solutions of Nonlinear Problems -- 8.10.3 The Neural Network Approach -- 8.10.3.1 The Processing Element -- 8.10.3.2 Training the Neural Network -- Backpropagation -- 8.10.3.3 Choosing the Network Parameters -- 8.10.3.4 Examples -- References for Chapter 8 -- Problems -- 9 -- Clustering and Unsupervised Classification -- 9.1 Delineation of Spectral Classes -- 9.2 Similarity Metrics and Clustering Criteria -- 9.3 The Iterative Optimization (Migrating Means) Clustering Algorithm -- 9.3.1 The Basic.…”
Full text (MFA users only)
Electronic eBook -
317
Introduction to numerical electrostatics using MATLAB
Published 2014Full text (MFA users only)
Electronic eBook -
318
Tracking with particle filter for high-dimensional observation and state spaces
Published 2015Table of Contents: “…Application to tracking shapes; 3.4. Conjoint estimation of dynamic and static parameters; 3.5. …”
Full text (MFA users only)
Electronic eBook -
319
Diatoms : ecology and life cycle
Published 2011Table of Contents: “…""DIATOMS: ECOLOGY AND LIFE CYCLE""; ""DIATOMS: ECOLOGY AND LIFE CYCLE""; ""Contents""; ""Preface""; ""The Role of Environmental Factors in Shaping Diatom Frustule: Morphological Plasticity and Teratological Forms""; ""Abstract""; ""1. …”
Full text (MFA users only)
Electronic eBook -
320
Clinical simulation : operations, engineering and management
Published 2008Table of Contents: “…; 3.5 The Systems Approach to Training; 3.6 Defining the Performance Requirement; 3.7 Cost Versus Value Added; 3.8 Operations Cost; 3.9 Standardization: What is it, and who Wants it?; 3.10 Patients as Training Conditions; 3.11 Equipment as Training Conditions; 3.12 Increase in Training System Cost; 3.13 You as the Leader-Manager; 3.14 Conclusion; Endnotes; Topic II What's In It For Me.…”
Full text (MFA users only)
Electronic eBook