4.9 • 848 Ratings
🗓️ 30 May 2025
⏱️ 66 minutes
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Auto encoders are neural networks that compress data into a smaller "code," enabling dimensionality reduction, data cleaning, and lossy compression by reconstructing original inputs from this code. Advanced auto encoder types, such as denoising, sparse, and variational auto encoders, extend these concepts for applications in generative modeling, interpretability, and synthetic data generation.
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0:00.0 | Welcome back to Machine Learning Guide. Today's episode is Auto Encoders. And it's actually a guest |
0:06.1 | lesson by a colleague. The stars just happened to align. My colleague was interested in being |
0:10.8 | involved on the podcast, and he is an expert in auto encoders. And I had started the episode on |
0:17.7 | diffusion models, which comes next, and didn't realize the level to which diffusion |
0:22.2 | models depends historically and to an extent in modern times on auto encoders, specifically |
0:28.5 | variational auto encoders. So T.J. Wilder is going to teach today's episode. T.J. Wilder is a |
0:35.2 | machine learning engineer and data scientist working on synthetic data for healthcare. |
0:40.3 | His company, Entrepeo, I-T-R-E-P-I-O, works with healthcare providers, insurers, and actuaries to seamlessly augment their data sets. |
0:52.3 | By augmenting your real data with realistic synthetic data, |
0:57.1 | Intrepio lets you train better machine learning models without needing to change your model or data |
1:02.4 | engineering at all. You can find more information and contact them at INTREP.io to hear how they can |
1:09.9 | help your team. Hello, I'm T-J Wilder. |
1:12.8 | I'm a machine learning engineer and data scientist specialized in generative AI, |
1:16.8 | but most of the things I work on are not the kind of generative AI you're probably thinking of. |
1:22.4 | Most of my work over the last few years centers on the idea of using machine learning |
1:26.5 | to generate synthetic data |
1:28.0 | for healthcare. And this doesn't use large language models at all, though there are aspects |
1:33.0 | that could. And I'll actually talk more about this kind of generative AI for synthetic data |
1:37.5 | later on. But for now, I want to focus on the foundations. Specifically, I'm going to talk about |
1:43.8 | auto encoders. |
1:45.0 | They are a specific type of neural network, which is surprisingly simple, but has a lot of power and flexibility in its usages. |
1:52.0 | Now, most machine learning tasks are called supervised learning tasks, which means you have some input data, which has a correct output. |
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