Mathematical Optimization + Machine Learning
Mathematical Optimization and Machine Learning (ML) are different but complementary technologies. Simply put – Mixed Integer Programming (MIP) answers questions that ML cannot. Machine learning makes predictions while MIP makes decisions. In this latest Data Science Central webinar, you will hear the results of the 2019 Mathematical Optimization Survey commissioned by Gurobi and conducted by Forrester and insights on how Data Scientists can use tools such as MIP to make complex decisions. -- Learn more about Gurobi Optimization here: https://www.gurobi.com/ Check out our Optimization Application Demos here: https://www.gurobi.com/resources/?cat... Check out our 2,400 customers: https://www.gurobi.com/customers/exam... -- Our Mission Gurobi strives to help companies make better decisions through the use of prescriptive analytics. We provide the best math programming solver, tools for distributed optimization, optimization in the cloud, and outstanding support. We are committed to improving our solver performance and developing tools to help you use Gurobi with more ease. Founded in 2008 by arguably the most experienced and respected team in optimization circles, we have successfully expanded to serving over 2,400 companies from a wide range of industries, by way of providing the right mix of advanced developments and technologies, world-class support and flexible licensing. -- Like Us: / gurobioptimization Follow Us: / gurobi Connect with Us: / gurobi-optimization #optimization #datascience #dataanalytics #machinelearning #analytics #research #operationsresearch #Gurobi #gurobipy #AI #artificialintelligence #algorithms #mathematicaloptimization #jupyternotebook #heuristics #MIP #mixedintegerprogramming #MIQP

RL for Agents Workshop - Deep Dive on Training Agents with RL and Open Source

Tech Talk – Converting Weak to Strong MIP Formulations

What is SonarQube | Introduction SonarQube | SonarQube Tutorial | SonarQube Basics | Intellipaat

Gurobi Academic Webinar with Dr. Daniel Bienstock discussing the AC Optimal Power Flow Problem

ML ain’t your only hammer: adding mathematical optimisation to the data scientist’s toolbox

Applications of Machine Learning in the Supply Chain

AI 최후의 승자 이래서 구글입니다 (KAIST 전자및전기공학부 김정호 교수)

Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

Don't learn AI Agents without Learning these Fundamentals

기업이 꼭 알아야 할 '온톨로지'의 모든 것 (김학래 중앙대 교수)

Python I webinar: Introduction to Modeling with Python

Mathematical optimization for supply chain - Lecture 4.3

Python Variables | Python Operators | Python Tutorial For Beginners | Intellipaat

"A.I. and Our Economic Future," Professor Chad Jones

747: Technical Intro to Transformers and LLMs — with Kirill Eremenko

1: Introduction to Neural Networks and Deep Learning; Training Deep NNs

AlphaFold - The Most Useful Thing AI Has Ever Done

Academic webinar: Life-saving Optimization

Machine Learning and Robust Optimization, Fengqi You, Cornell University

