Spaces:
Running
Running
| from __future__ import annotations | |
| import gradio as gr | |
| from layout import cell | |
| def render_wrap_up_cell() -> None: | |
| """Render a closing cell that ties the core demos back to the full Aileen 3 stack.""" | |
| with cell("π Conclusion & wrap-up"): | |
| gr.Markdown( | |
| """ | |
| ### π©π»βπ« What you have seen | |
| This notebook-style Space walked through the core building blocks that **Aileen 3 Core** provides: | |
| - A problem statement cell that made Automatic Speech Recognition (ASR) hallucinations tangible. | |
| - A contextual transcription demo that showed how lightweight priors can already steer ASR models. | |
| - An expectation-driven media analysis cell that turns conference video consumption into surprise hunting using rich priors. | |
| - A slide translation cell that lets you selectively translate only the most informative artefacts. | |
| Together, these pieces form a small but robust MCP server for **information foraging**: instead of passively consuming hours of conference | |
| talks, you provide expectations and questions, and Aileen 3 Core helps you jump straight to the meaningful surprises and exportable assets. | |
| ### π Where this goes next | |
| This Space only shows the core MCP tools in isolation. The full **Aileen 3 Agent** project builds on Aileen 3 Core with the aim to: | |
| - orchestrate retrieval, analysis and follow-up questions, | |
| - plug expectation-driven analysis into agent workflows and memory banks, | |
| - and expose Aileen as a long-running assistant that keeps track of what you already know. | |
| If you are interested in going beyond this demo, the next step is to explore Aileen 3 Agent - our [capstone project](https://ndurner.de/links/aileen3-kaggle-writeup) for the | |
| [*AI Agents Intensive Course with Google*](https://www.kaggle.com/learn-guide/5-day-agents) - and wire Aileen 3 Core into your | |
| own MCP-capable client or agent stack. | |
| """ | |
| ) | |