MLG 034 Large Language Models 1

MLG 034 Large Language Models 1

Explains language models (LLMs) advancements. Scaling laws - the relationships among model size, data size, and compute - and how emergent abilities such as in-context learning, multi-step reasoning, and instruction following arise once certain scaling thresholds are crossed. The evolution of the transformer architecture with Mixture of Experts (MoE), describes the three-phase training process culminating in Reinforcement Learning from Human Feedback (RLHF) for model alignment, and explores advanced reasoning techniques such as chain-of-thought prompting which significantly improve complex task performance.

Links Transformer Foundations and Scaling Laws
  • Transformers: Introduced by the 2017 "Attention is All You Need" paper, transformers allow for parallel training and inference of sequences using self-attention, in contrast to the sequential nature of RNNs.
  • Scaling Laws:
    • Empirical research revealed that LLM performance improves predictably as model size (parameters), data size (training tokens), and compute are increased together, with diminishing returns if only one variable is scaled disproportionately.
    • The "Chinchilla scaling law" (DeepMind, 2022) established the optimal model/data/compute ratio for efficient model performance: earlier large models like GPT-3 were undertrained relative to their size, whereas right-sized models with more training data (e.g., Chinchilla, LLaMA series) proved more compute and inference efficient.
Emergent Abilities in LLMs
  • Emergence: When trained beyond a certain scale, LLMs display abilities not present in smaller models, including:
    • In-Context Learning (ICL): Performing new tasks based solely on prompt examples at inference time.
    • Instruction Following: Executing natural language tasks not seen during training.
    • Multi-Step Reasoning & Chain of Thought (CoT): Solving arithmetic, logic, or symbolic reasoning by generating intermediate reasoning steps.
  • Discontinuity & Debate: These abilities appear abruptly in larger models, though recent research suggests that this could result from non-linearities in evaluation metrics rather than innate model properties.
Architectural Evolutions: Mixture of Experts (MoE)
  • MoE Layers: Modern LLMs often replace standard feed-forward layers with MoE structures.
    • Composed of many independent "expert" networks specializing in different subdomains or latent structures.
    • A gating network routes tokens to the most relevant experts per input, activating only a subset of parameters—this is called "sparse activation."
    • Enables much larger overall models without proportional increases in compute per inference, but requires the entire model in memory and introduces new challenges like load balancing and communication overhead.
  • Specialization & Efficiency: Experts learn different data/knowledge types, boosting model specialization and throughput, though care is needed to avoid overfitting and underutilization of specialists.
The Three-Phase Training Process
  • 1. Unsupervised Pre-Training: Next-token prediction on massive datasets—builds a foundation model capturing general language patterns.
  • 2. Supervised Fine Tuning (SFT): Training on labeled prompt-response pairs to teach the model how to perform specific tasks (e.g., question answering, summarization, code generation). Overfitting and "catastrophic forgetting" are risks if not carefully managed.
  • 3. Reinforcement Learning from Human Feedback (RLHF):
    • Collects human preference data by generating multiple responses to prompts and then having annotators rank them.
    • Builds a reward model (often PPO) based on these rankings, then updates the LLM to maximize alignment with human preferences (helpfulness, harmlessness, truthfulness).
    • Introduces complexity and risk of reward hacking (specification gaming), where the model may exploit the reward system in unanticipated ways.
Advanced Reasoning Techniques
  • Prompt Engineering: The art/science of crafting prompts that elicit better model responses, shown to dramatically affect model output quality.
  • Chain of Thought (CoT) Prompting: Guides models to elaborate step-by-step reasoning before arriving at final answers—demonstrably improves results on complex tasks.
    • Variants include zero-shot CoT ("let's think step by step"), few-shot CoT with worked examples, self-consistency (voting among multiple reasoning chains), and Tree of Thought (explores multiple reasoning branches in parallel).
  • Automated Reasoning Optimization: Frontier models selectively apply these advanced reasoning techniques, balancing compute costs with gains in accuracy and transparency.
Optimization for Training and Inference
  • Tradeoffs: The optimal balance between model size, data, and compute is determined not only for pretraining but also for inference efficiency, as lifetime inference costs may exceed initial training costs.
  • Current Trends: Efficient scaling, model specialization (MoE), careful fine-tuning, RLHF alignment, and automated reasoning techniques define state-of-the-art LLM development.

Tämä jakso on lisätty Podme-palveluun avoimen RSS-syötteen kautta eikä se ole Podmen omaa tuotantoa. Siksi jakso saattaa sisältää mainontaa.

Jaksot(60)

MLA 030 AI Job Displacement & ML Careers

MLA 030 AI Job Displacement & ML Careers

ML engineering demand remains high with a 3.2 to 1 job-to-candidate ratio, but entry-level hiring is collapsing as AI automates routine programming and data tasks. Career longevity requires shifting f...

26 Helmi 42min

MLA 029 OpenClaw

MLA 029 OpenClaw

OpenClaw is a self-hosted AI agent daemon that executes autonomous tasks through messaging apps like WhatsApp and Telegram using persistent memory. It integrates with Claude Code to enable software de...

22 Helmi 51min

MLA 028 AI Agents

MLA 028 AI Agents

AI agents differ from chatbots by pursuing autonomous goals through the ReACT loop rather than responding to turn-based prompts. While coding agents are currently the most reliable due to verifiable f...

22 Helmi 37min

MLA 027 AI Video End-to-End Workflow

MLA 027 AI Video End-to-End Workflow

How to maintain character consistency, style consistency, etc in an AI video. Prosumers can use Google Veo 3's "High-Quality Chaining" for fast social media content. Indie filmmakers can achieve narra...

14 Heinä 20251h 11min

MLA 026 AI Video Generation: Veo 3 vs Sora, Kling, Runway, Stable Video Diffusion

MLA 026 AI Video Generation: Veo 3 vs Sora, Kling, Runway, Stable Video Diffusion

Google Veo leads the generative video market with superior 4K photorealism and integrated audio, an advantage derived from its YouTube training data. OpenAI Sora is the top tool for narrative storytel...

12 Heinä 202540min

MLA 025 AI Image Generation: Midjourney vs Stable Diffusion, GPT-4o, Imagen & Firefly

MLA 025 AI Image Generation: Midjourney vs Stable Diffusion, GPT-4o, Imagen & Firefly

The AI image market has split: Midjourney creates the highest quality artistic images but fails at text and precision. For business use, OpenAI's GPT-4o offers the best conversational control, while A...

9 Heinä 20251h 12min

MLG 036 Autoencoders

MLG 036 Autoencoders

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. Ad...

30 Touko 20251h 5min

MLG 035 Large Language Models 2

MLG 035 Large Language Models 2

At inference, large language models use in-context learning with zero-, one-, or few-shot examples to perform new tasks without weight updates, and can be grounded with Retrieval Augmented Generation ...

8 Touko 202545min

Suosittua kategoriassa Koulutus

rss-murhan-anatomia
psykopodiaa-podcast
voi-hyvin-meditaatiot-2
rss-narsisti
rss-liian-kuuma-peruna
kesken
rss-valo-minussa-2
psykologia
rss-hereilla
rss-niinku-asia-on
rss-rahamania
aamukahvilla
rss-mentalrace
puhutaan-koiraa
rss-duodecim-lehti
rss-koira-haudattuna
rss-vapaudu-voimaasi
rss-arkea-ja-aurinkoa-podcast-espanjasta
rss-positiivisesti-vittumainen
rss-keskeneraiset-aidit