Overview of Synthetic Data and Simulations | AISC

Published on ● Video Link: https://www.youtube.com/watch?v=6M6fzUgJaUs



Duration: 52:16
508 views
15


For slides and more information on the paper, visit https://ai.science/e/synthetic-data-overview-of-synthetic-data-and-simulations--NzZU0mIiYAYv73XZstjR

Host: Serena McDonnell; Speaker: Chenda Bunkasem

Motivation:
More recently, it has been noted by the machine learning community that training data and access to rich datasets serve as a large factor to the improvement of AI algorithms.

“Bias”, as some would call it, is currently being researched by ethicists and engineers alike; it has been seen that some of this can be eradicated by enhanced data labelling, as well as preprocessing. In many cases however, not any available training data will suffice. What if one could capture the required data in novel states, further improving metrics in specific cases? If you could not find the data, why not just make it?

A burgeoning solution to this problem has been the usage of simulations, and the creation of synthetic data thereafter, as seen in companies such as Unity, who has partnered with DeepMind to help them build graphical environments to train self driving cars. Uber, Ascent Robotics, and NVIDIA join the list of companies that utilize internal simulators to improve how their algorithms work.




Other Videos By LLMs Explained - Aggregate Intellect - AI.SCIENCE


2020-09-02Principal Neighbourhood Aggregation for Graph Nets | AISC
2020-09-01DeepFakes & Explainable AI Applications in NLP, Biomedical & Malware Classification
2020-08-28AI Ethics Then & Now: A Look Back on the Last Five Years | AISC
2020-08-27Beyond Accuracy: Behavioral Testing of NLP Models with CheckList | AISC
2020-08-27The Summary Loop: Learning to Write Abstractive Summaries Without Examples + Demo | AISC
2020-08-26[MEM] Learning Permutation Invariant Representations using Memory Networks | AISC
2020-08-26AI for Fun!
2020-08-25[T-Fixup] Improving Transformer Optimization Through Better Initialization | AISC
2020-08-25A review of ML for aerospace systems health management | AISC
2020-08-21An Efficient Neighborhood-based Interaction Model for Recommendation on Heterogeneous Graph | AISC
2020-08-20Overview of Synthetic Data and Simulations | AISC
2020-08-19Discovering Symbolic Inductive Biases | AISC
2020-08-19Product Ideation - Art of Finding the Right Problem to Work on! | AISC
2020-08-19Pink Diamond - Data Driven Prediction of Venture Success | Workshop Capstone
2020-08-19Review Nuggets - Mining Insight from Consumer Product Reviews | Workshop Capstone
2020-08-19Fast Film - Emotionally Aware Movie Recommender | Workshop Capstone
2020-08-19Acetock - Stock Prediction Tool for Amateur Investors | Workshop Capstone
2020-08-19Saramsh - Patent Document Summarization using BART | Workshop Capstone
2020-08-19MindfulZen - Data Driven Stress Buster | Workshop Capstone
2020-08-14Machine Learning and the Earth: Applying AI to address some of the world’s greatest challenges
2020-08-13Xun Wang (GEICO): 7 Job Profiles to Demystify the Data Science Career Landscape