Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Problem Solving Strategies: Math Word Problems
Graph Chatbot
Related lectures (29)
Analyse 1: Introduction
Introduces the EPFL MOOC Analyse 1, emphasizing understanding over memorization.
Presenting using a board
Covers presenting using a board to explain concepts clearly and avoid contributing to problematic beliefs.
Visual Intelligence: Machines and Minds
Explores visual intelligence, image formation, computer vision, and representation understanding in machines and minds.
Answering questions with questions
Discusses the strategy of answering every question with a question as a teaching method.
Getting Help in Exercise Sessions
Emphasizes self-preparation, effective communication, and critical thinking in exercise sessions.
Improving Models of the Ventral Visual Pathway
Explores computational models of the ventral visual system, focusing on optimizing networks for real-world tasks and comparing to brain data.
Machine Learning Fundamentals
Covers the fundamental concepts of machine learning, including classification, algorithms, optimization, supervised learning, reinforcement learning, and various tasks like image recognition and text generation.
Generalization in Deep Learning
Explores generalization in deep learning, covering model complexity, implicit bias, and the double descent phenomenon.
Document Segmentation: dhSegment
Explores the development and improvements of dhSegment, an open-source document segmentation package using PyTorch.
A Method for Solving Complex Problems
Introduces a method for solving complex problems, emphasizing the importance of understanding the problem statement accurately.
Discriminant Analysis: Bayes Rule
Covers the Bayes discriminant rule for allocating individuals to populations based on measurements and prior probabilities.
Variance Reduction Techniques
Covers variance reduction techniques in optimization, focusing on gradient descent and stochastic gradient descent methods.
Computer Engineering Career Insights
Emphasizes the importance of computer programming and system architecture in engineering careers.
Exam Preparation Strategies
Provides exam preparation strategies emphasizing problem-solving approaches and critical thinking in physics.
Computer Vision History Recap
Offers a historical overview of computer vision, exploring key developments and influential figures in the field.
The Art of Brainstorming: Techniques and Principles
Explores the art of brainstorming, emphasizing diverse ideas and problem-solving efficiency through group thinking.
Deep Learning Building Blocks
Covers tensors, loss functions, autograd, and convolutional layers in deep learning.
Environmental Image Analysis
Explores Valérie's project on automating land area statistics using deep learning algorithms and aerial images.
Unsupervised Learning: Clustering
Explores unsupervised learning through clustering techniques, algorithms, applications, and challenges in various fields.
Integration Techniques: Fundamental Theorems and Methods
Discusses integration techniques, focusing on integration by parts and substitution methods, with practical examples and theoretical insights.
Previous
Page 1 of 2
Next