Forsidebilde av showet AI-ML Decoded: From Fundamentals to Future

AI-ML Decoded: From Fundamentals to Future

Podkast av Elius Etienne

engelsk

Teknologi og vitenskap

Deretter 99 kr / Måned. Avslutt når som helst.

  • 20 timer lydbøker i måneden
  • Eksklusive podkaster
  • Gratis podkaster

Les mer AI-ML Decoded: From Fundamentals to Future

The world of AI moves fast. This podcast bridges the gap between simple overviews and dense technicality. Whether you are a Data Scientist prepping for interviews, a student navigating the math, a business leader, or just a curious soul, this is your roadmap. We skip the hype to provide a rigorous, practical guide to the "how" and "why" of Machine Learning. Note: In the spirit of the topic, this show uses AI-generated voices and scripts. However, accuracy is our priority: all content is rigorously verified by a human expert with a PhD in Engineering and professional ML experience.

Alle episoder

15 Episoder

episode E14. An Overview of MLOps cover

E14. An Overview of MLOps

Episode 14: An Overview of MLOps In our season finale, we answer the most practical question of all: What happens after the model is trained? We explore MLOps—the critical "assembly line" practices that take a model from a laptop experiment to a production-ready system. In this episode, we cover: * The Origin: How the concept of "Technical Debt" led to merging ML with DevOps. * The Pipeline: A tour of the 5 key components, including Feature Stores, Deployment, and Monitoring. * The Enemy: Understanding Data Drift and Model Drift (why models get worse over time). * LLMOps: The new challenges of managing Large Language Models and "Hallucinations." * Maturity Levels: The journey from Level 0 (Manual) to Level 3 (Fully Automated). Series Conclusion: This wraps up our "Fundamentals" series. Stay tuned for our next season where we delve deeper into specific algorithms!

11. jan. 2026 - 9 min
episode E13. An Overview of Machine Learning Libraries cover

E13. An Overview of Machine Learning Libraries

Episode 13: An Overview of Machine Learning Libraries Developers don't build AI from scratch. In this episode, we open the toolbox to explore the essential Machine Learning Libraries and frameworks that power the industry. In this episode, we cover: * The Foundation: Why NumPy and its "tensors" are the bedrock of all ML code. * The Core Frameworks: * TensorFlow: Google's powerhouse for production and scaling. * Keras: The user-friendly interface for deep learning. * PyTorch: Meta's flexible favorite for researchers. * Scikit-learn: The standard for traditional algorithms (Regression/Clustering). * Specialized Tools: Pandas for data analysis, Matplotlib for visualization, Hugging Face for pre-trained models, and MLflow for experiment tracking. Next Episode: We wrap up the season by discussing how to manage these models in the real world with ML Ops.

11. jan. 2026 - 6 min
episode E12. An Overview of Model Training cover

E12. An Overview of Model Training

Episode 12: An Overview of Model Training We've used the word "training" in every episode. Now, we break down exactly what it means. In this episode, we explore the step-by-step workflow of how a model actually "learns" from data. In this episode, we cover: * The Core Concept: How "learning" is really just adjusting mathematical Weights and Biases to minimize a Loss Function. * Model vs. Algorithm: Why these terms aren't interchangeable (Recipe vs. Meal). * The 3 Paradigms Recap: A quick look at how Supervised, Unsupervised, and Reinforcement learning differ in their goals (Accuracy vs. Pattern Finding vs. Reward Maximization). * The 8-Step Workflow: From Data Collection and Hyper-parameter Selection to Back-propagation and Optimization. * Evaluation: Why we split data into Training, Validation, and Test sets to avoid the twin traps of Overfitting and Underfitting. Next Episode: We look at the tools of the trade in Machine Learning Libraries.

11. jan. 2026 - 8 min
episode E11. An Overview of Generative AI cover

E11. An Overview of Generative AI

Episode 11: An Overview of Generative AI It’s the topic everyone is talking about. In this episode, we broaden our scope from NLP to the entire field of Generative AI—the technology that creates original text, images, code, and audio from a simple prompt. In this episode, we cover: * The Surge: How ChatGPT thrust AI into the headlines and what analysts predict for 2026. * The 3 Phases: * Training: Building massive Foundation Models on petabytes of data. * Tuning: Customizing via Fine-Tuning and RLHF (Human Feedback). * Generation: Using RAG (Retrieval Augmented Generation) to access live data. * The Architectures: A history of VAEs, GANs, Diffusion Models (like DALL-E), and the game-changing Transformers. * The Risks: Tackling Hallucinations, Deepfakes, and the "Black Box" problem. Next Episode: We drill down into the mechanics of Model Training.

11. jan. 2026 - 12 min
episode E10. An Overview of Natural Language Processing cover

E10. An Overview of Natural Language Processing

Episode 10: An Overview of Natural Language Processing If Computer Vision allows machines to "see," Natural Language Processing (NLP) allows them to "understand." In this episode, we explore the science behind how computers communicate, from old-school spellcheckers to the Transformers powering ChatGPT. In this episode, we cover: * The Evolution: From rigid Rules-Based systems to Statistical N-Grams and today’s Deep Learning models. * The Pipeline: How raw text is transformed via Tokenization, Lemmatization, and Word Embeddings (like Word2Vec). * Key Tasks: * Named Entity Recognition (NER): Identifying people and places. * Sentiment Analysis: Reading emotions and sarcasm. * Coreference Resolution: Figuring out who "she" refers to. * The Hurdles: Why Ambiguity, Slang, and Tone of Voice remain difficult for AI to master. Next Episode: We take the next logical step into the world of Generative AI.

11. jan. 2026 - 8 min
Enkelt å finne frem nye favoritter og lett å navigere seg gjennom innholdet i appen
Enkelt å finne frem nye favoritter og lett å navigere seg gjennom innholdet i appen
Liker at det er både Podcaster (godt utvalg) og lydbøker i samme app, pluss at man kan holde Podcaster og lydbøker atskilt i biblioteket.
Bra app. Oversiktlig og ryddig. MYE bra innhold⭐️⭐️⭐️

Velg abonnementet ditt

Mest populær

Tidsbegrenset tilbud

Premium

20 timer lydbøker

  • Eksklusive podkaster

  • Ingen annonser i Podimo shows

  • Avslutt når som helst

2 Måneder for 19 kr
Deretter 99 kr / Måned

Kom i gang

Premium Plus

100 timer lydbøker

  • Eksklusive podkaster

  • Ingen annonser i Podimo shows

  • Avslutt når som helst

Prøv gratis i 14 dager
Deretter 169 kr / måned

Prøv gratis

Bare på Podimo

Populære lydbøker

Ofte stilte spørsmål

Flere spørsmål og svar
Kom i gang

2 Måneder for 19 kr. Deretter 99 kr / Måned. Avslutt når som helst.