Alexandra Waldherr
Getting Started with Machine Learning
#1about 3 minutes
The origins and evolution of machine learning
Machine learning evolved from modeling brain cells to powerful algorithms with the invention of backpropagation, large datasets like ImageNet, and the use of GPUs.
#2about 2 minutes
Core concepts of machine learning models
Machine learning is a subset of AI that uses statistics to find patterns, employing models like regression for numerical prediction and classification for assigning categories.
#3about 7 minutes
Building a model to predict CO2 emissions
A live coding demo shows how to use Pandas and Scikit-learn to train a random forest regressor on a Kaggle dataset for predicting vehicle CO2 emissions.
#4about 1 minute
Supervised, unsupervised, and reinforcement learning explained
The three main types of machine learning are explained, with reinforcement learning compared to getting a driver's license through environmental feedback.
#5about 3 minutes
Understanding deep neural networks and their challenges
Deep neural networks model the brain with layers and activation functions to handle complex data, but face challenges like overfitting, underfitting, and data bias.
#6about 5 minutes
Classifying images with noisy data using FastAI
This demo uses the FastAI framework to build an image classifier, demonstrating how to handle noisy data from web scrapes and interpret a confusion matrix.
#7about 1 minute
A look at advanced neural network architectures
An overview of specialized architectures includes Recurrent Neural Networks (RNNs) for sequential data, Transformers for language, and Autoencoders for data compression.
#8about 2 minutes
Applying machine learning in the automotive industry
Machine learning is used in the automotive sector for image segmentation in autonomous driving, predictive maintenance, and processing various sensor data.
#9about 2 minutes
The future of ML in quantum computing and biology
Exciting new applications for machine learning include optimizing quantum circuits with TensorFlow Quantum and predicting protein structures with AlphaFold.
#10about 5 minutes
Q&A on model reliability and explainable AI
The discussion addresses how to provide guarantees for model performance in the real world and the critical need for explainable AI to understand model failures.
#11about 9 minutes
Q&A on data, privacy, and model selection
This Q&A covers strategies for collecting diverse datasets, the impact of privacy regulations like GDPR, and how to choose the right model for a given task.
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Matching moments
19:37 MIN
A live demo of an interactive AI workshop for kids
aa
03:05 MIN
Inspiring real-world applications of AI and machine learning
Machine Learning for Software Developers (and Knitters)
24:31 MIN
Real-world applications and key takeaways
Machine learning 101: Where to begin?
46:04 MIN
Exploring the future of AI in FinTech
OpenAI for FinTech: Building a Stock Market Advisor Chatbot
00:17 MIN
Tracing a 20-year journey through AI's evolution
Google Gemma and Open Source AI Models - Clement Farabet
24:40 MIN
Global expansion and AI-powered learning platforms
Behind the Scenes: Putting HR and Tech on the Same Stage
01:37 MIN
The exciting and overwhelming pace of AI development
How to Avoid LLM Pitfalls - Mete Atamel and Guillaume Laforge
25:29 MIN
Lightning round on future skills and AI trends
The AI-Ready Stack: Rethinking the Engineering Org of the Future
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