Clawdemy

Clawdemy Lessons

Free AI literacy for everyday users. Bite-size narrated lessons that turn fear into fluency, one topic at a time.

Author

Clawdemy

Category

Education

Podcast website

clawdemy.org

Latest episode

Jul 6, 2026

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Episodes

Vision and language: brief 25.05.2026

Orientation for the vision-language lesson: what CLIP's joint embedding space unlocks, the prerequisites, the math level, plus read and practice time.

Video understanding: brief 25.05.2026

A walkthrough of the video architecture ladder, from the single-frame baseline through 3D convolutions and two-stream networks to video transformers.

Sequence tools for vision: brief 25.05.2026

Scope, prerequisites, and outcomes for the vision sequence-tools lesson: recurrence and attention, captioning, video, and the Vision Transformer.

Self-supervised vision, in brief 25.05.2026

An overview of self-supervised vision: why labels are scarce, the pretext-to-contrastive-to-masked-modeling arc, and the pre-train-then-transfer workflow.

Neural networks and backprop: brief 25.05.2026

What you'll learn from the neural networks and backprop lesson: why a ReLU adds capacity, how hidden layers learn features, and what backprop does.

Loss and optimization: brief 25.05.2026

A walkthrough of the training loop: the two standard losses, regularization, the gradient descent update rule, and mini-batch SGD, plus what to expect.

Linear classifiers, in brief 25.05.2026

Orientation for the linear classifier lesson: what you will learn, how the score function s = W x + b fits the track, prerequisites, math needed, and timing.

Human-centered computer vision, in brief 25.05.2026

What this lesson on deployed vision systems covers: the failure-mode catalog, bias as a measurable engineering property, and the trustworthiness gap.

GANs and VAEs: brief 25.05.2026

Overview of the GANs and VAEs lesson: what you will learn, prerequisites, the reparameterization math, time and difficulty, and where it fits in this track.

Diffusion models: brief 25.05.2026

What the diffusion lesson covers: the two-direction noising setup, the MSE training objective, inference speed-ups, and text-to-image conditioning.

Detection, segmentation, visualization: brief 25.05.2026

A roadmap to going beyond image classification: what detection, segmentation, and visualization add, the IoU metric, prerequisites, and time and difficulty.

Convolution and CNNs: brief 25.05.2026

Overview of the convolution lesson: the conv operation, weight sharing, output-size and parameter formulas, plus prerequisites, math level, and time needed.

CNN architectures, in brief 25.05.2026

Preview of the CNN architectures lesson: the four landmarks you'll meet, the ImageNet numbers cited, prerequisites, and the training-at-scale subsection.

Recovering 3D vision, in brief 25.05.2026

A roadmap to the 3D vision lesson: what you will learn, the depth cues and methods covered, prerequisites, the stereo-depth math, and timing.

t-SNE: brief 25.05.2026

What this t-SNE lesson covers: reading 2D cluster plots, what the method preserves and distorts, the perplexity dial, plus prerequisites and time to budget.

PCA, in brief 25.05.2026

A map of the PCA lesson: what you'll learn about principal components, scree plots and loadings, plus prerequisites and where it fits in unsupervised learning.

Train, test, cross-validation: brief 25.05.2026

Overview of the cross-validation lesson: learning outcomes, prerequisites, and time for train/validation/test splits, k-fold CV, and data-leakage traps.

Classification metrics: brief 25.05.2026

Overview of the classification metrics lesson: what you'll learn about the confusion matrix, precision, recall, ROC and AUC, plus prerequisites and read time.

Bias-variance tradeoff: brief 25.05.2026

Overview of the bias-variance lesson: what you will learn, where it fits, the prerequisite to have first, and the time and difficulty before you start.

Scaling laws, in brief 25.05.2026

What the scaling-laws lesson covers: the power-law form, the Kaplan to Chinchilla shift, computing an optimal budget split, prerequisites, and read time.

Reasoning and RLVR, in brief 25.05.2026

Learning outcomes, prerequisites, and scope for the reasoning and RLVR lesson: the RLVR loop, GRPO, and how it caps the build-an-LLM pipeline.

Post-training, SFT and RLHF: brief 25.05.2026

Orientation for the post-training lesson: what SFT and preference tuning (RLHF, DPO) do, the prerequisites, and the technical-primer scope you can expect.

Parallelism, in brief 25.05.2026

What the parallelism lesson covers: the three classic schemes, FSDP/ZeRO sharding, placement rules, and how 3D parallelism scales frontier training.

Kernels, Triton and XLA: brief 25.05.2026

What this lesson covers: GPU kernels, why fusion is the single biggest performance lever, the Triton and XLA paths, and the FlashAttention case study.

Inference: brief 25.05.2026

Overview of what makes LLM inference expensive: the prefill/decode split, the KV cache, and the batching and quantization techniques, with prerequisites.

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