PPT-A Basic Introduction to Machine Learning

Author : danika-pritchard | Published Date : 2018-01-31

and Data Analytics Yolanda Gil University of Southern California gilisiedu Last Updated September 2016 ACI1355475 CCBY Attribution http wwwdatascience4allorg Introduction

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A Basic Introduction to Machine Learning: Transcript


and Data Analytics Yolanda Gil University of Southern California gilisiedu Last Updated September 2016 ACI1355475 CCBY Attribution http wwwdatascience4allorg Introduction . Spring . 2013. Rong. Jin. 2. CSE847 Machine Learning. Instructor: . Rong. Jin. Office Hour: . Tuesday 4:00pm-5:00pm. TA, . Qiaozi. . Gao. , . Thursday 4:00pm-5:00pm. Textbook. Machine Learning. The Elements of Statistical Learning. Jimmy Lin and Alek . Kolcz. Twitter, Inc.. Presented by: Yishuang Geng and Kexin Liu. 2. Outline. •Is twitter big data? . •How . can machine learning help twitter?. •Existing challenges?. •Existing literature of large-scale learning. http://hunch.net/~mltf. John Langford. Microsoft Research. Machine Learning in the present. Get a large amount of labeled data . . where . . Learn a predictor . Use the predictor.. The Foundation: Samples + Representation + Optimization. COS 518: Advanced Computer Systems. Lecture . 13. Daniel Suo. Outline. 2. What is machine learning?. Why is machine learning hard in parallel / distributed systems?. A brief history of what people have done. CS539. Prof. Carolina Ruiz. Department of Computer Science . (CS). & Bioinformatics and Computational Biology (BCB) Program. & Data Science (DS) Program. WPI. Most figures and images in this presentation were obtained from Google Images. Dan Roth. University of Illinois, Urbana-Champaign. danr@illinois.edu. http://L2R.cs.uiuc.edu/~danr. 3322 SC. 1. CS446: Machine Learning. Tuesday, Thursday: . 17:00pm-18:15pm . 1404 SC. . Office hours: . Bahrudin Hrnjica, MVP. Agenda. Intro to ML. Types of ML. dotNET and ML-tools and libraries. Demo01: ANN with C#. Demo02: GP with C#. .NET Tools – Acord.NET, GPdotNET. Summary. Machine Learning?. method of teaching computers to make predictions based on data.. Page 46 L istening to the voice of customers plays a prominent role in a customer-centric business strategy. But with the business environment’s increased complexity and dynamism for a customer- The Desired Brand Effect Stand Out in a Saturated Market with a Timeless Brand Yonggang Cui. 1. , Zoe N. Gastelum. 2. , Ray Ren. 1. , Michael R. Smith. 2. , . Yuewei. Lin. 1. , Maikael A. Thomas. 2. , . Shinjae. Yoo. 1. , Warren Stern. 1. 1 . Brookhaven National Laboratory, Upton, USA. (CS725). Autumn 2011. Instructor: . Prof. . Ganesh. . Ramakrishnan. TAs: . Ajay Nagesh, Amrita . Saha. , . Kedharnath. . Narahari. The grand goal. From the movie . 2001: A Space Odyssey. (1968). Outline. Nicolas . Borisov. . 1,. *, Victor . Tkachev. . 2,3. , Maxim Sorokin . 2,3. , and Anton . Buzdin. . 2,3,4. . 1. Moscow . Institute of Physics and Technology, 141701 Moscow Oblast, Russia. 2. OmicsWayCorp. Dr. Alex Vakanski. Lecture 1. Introduction to Adversarial Machine Learning. . Lecture Outline. Machine Learning (ML). Adversarial ML (AML). Adversarial examples. Attack taxonomy. Common adversarial attacks. Ryan Ma . Background and Purpose of the Project. Aerodynamic analysis is one of the most crucial traits of a vehicle. It affects the fuel consumption of a car. . The shape of the car significantly affects the aerodynamic performances, which includes the lift and the drag. .

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