{"podcast":{"title":"Practical AI","slug":"practical-ai","podcast_index_feed_id":444526,"rss_url":"https://feeds.transistor.fm/practical-ai-machine-learning-data-science-llm","website_url":"https://practicalai.fm","image_url":"https://img.transistorcdn.com/WMlp2ug34XB6LDJ3-vnzti_-_y144LUlFW0Xzzn3fss/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS8wMTZi/ZWJmNWIwNDdmYTcw/NGJjMTExZjNjZmYy/M2ZjNS5wbmc.jpg","author":"Practical AI LLC","episode_count":357,"summary":"Making artificial intelligence practical, productive & accessible to everyone. Practical AI is a show in which technology professionals, business people, students, enthusiasts, and expert guests engage in lively discussions about Artificial Intelligence and related topics (Machine Learning, Deep Learning, Neural Networks, GANs, MLOps, AIOps, LLMs & more). The focus is on productive implementations and real-world scenarios that are accessible to everyone. If you want to keep up with the latest advances in AI, while keeping one foot in the real world, then this is the show for you!","last_synced_at":null,"page_url":"https://stenobird.com/podcast/practical-ai"},"episode":{"title":"Tiny Recursive Networks","slug":"tiny-recursive-networks","published_at":"2025-10-24T15:17:53+00:00","page_url":"https://stenobird.com/podcast/practical-ai/tiny-recursive-networks","show_page_url":"https://stenobird.com/podcast/practical-ai","url":"https://share.transistor.fm/s/e568790b","audio_url":"https://pscrb.fm/rss/p/dts.podtrac.com/redirect.mp3/media.transistor.fm/e568790b/ebe47dbc.mp3","summary":"Explore the shift from massive transformer models to tiny recursive networks that use iterative refinement to solve complex reasoning tasks. The discussion also addresses the ethical risks of emotional manipulation in AI-driven engagement loops.","meta_description":"Discover how tiny recursive networks use iterative processing to match large LLMs on reasoning tasks and the ethics of AI emotional manipulation.","key_points":["Main idea: Tiny recursive networks use a looping mechanism to refine an initial guess, allowing small models to tackle complex logic","Practical takeaway: Small-scale models with few parameters can run on commodity hardware while maintaining high reasoning performance","Technical distinction: Unlike the single forward pass in transformers, recursive networks use iterative updates to reach a structured answer","Failure mode: Relying on engagement-based algorithms can lead to AI systems using manipulative emotional tactics to prolong user interaction","Core tension: The trade-off between the efficiency of small, specialized models and the massive scale of general-purpose LLMs"],"chapters":[{"start_ms":60000,"title":"Modern Data Exploration","summary":"A look at moving away from fragmented data tools like spreadsheets and SQL toward integrated, AI-assisted analytics environments."},{"start_ms":260000,"title":"The Rise of Tiny Networks","summary":"An introduction to new research in small-scale models that challenge the dominance of massive transformer-based architectures."},{"start_ms":500000,"title":"Efficiency and Hardware","summary":"Discussing the potential for models with millions—rather than billions—of parameters to run effectively on accessible hardware."},{"start_ms":705000,"title":"Transformer vs. Recursive Logic","summary":"Comparing the token-based forward pass of transformers to the iterative processing used in recursive architectures."},{"start_ms":925000,"title":"Hierarchical Reasoning","summary":"Analyzing the relationship between hierarchical reasoning models and the emerging class of tiny recursive networks."},{"start_ms":1380000,"title":"Structured Problem Solving","summary":"How encoding problems like Sudoku into numerical representations allows small models to perform complex reasoning."},{"start_ms":1600000,"title":"Iterative Refinement","summary":"Deep dive into the 'internal scratchpad' concept where recursive networks loop to refine an initial output."},{"start_ms":2255000,"title":"The Ethics of AI Engagement","summary":"Addressing the psychological risks of AI systems designed to manipulate human emotions for increased user retention."}],"topics":["Recursive Neural Networks","Transformer Models","AI Ethics","Machine Learning Research","Algorithmic Manipulation","Edge Computing","Data Science","Reasoning Architectures"],"duration_seconds":2903,"processing_state":"processed","actions":[{"name":"request_transcript","method":"POST","url":"https://stenobird.com/v1/public/podcasts/practical-ai/episodes/tiny-recursive-networks/transcription-requests","description":"Idempotently request low-priority transcript generation for this episode."},{"name":"read_markdown","method":"GET","url":"https://stenobird.com/podcast/practical-ai/tiny-recursive-networks.md","description":"Read the agent-friendly Markdown representation of this episode resource."}]}}