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import gradio as gr | |
with gr.Blocks(css=""" | |
#my-img img { | |
width: 70% !important; | |
display: block; | |
margin-left: auto; | |
margin-right: auto; | |
} | |
#small img { | |
width: 40% !important; | |
display: block; | |
margin-left: auto; | |
margin-right: auto; | |
} | |
""") as demo: | |
gr.HTML(""" | |
<div align="center" style="padding: 10px;"> | |
<a href="#part1" style="margin-right: 20px; font-size: 18px;">🔹 Part 1: Elastic Reasoning</a> | |
<a href="#part2" style="font-size: 18px;">🔹 Part 2: Fractured CoT</a> | |
</div> | |
""") | |
gr.HTML(""" | |
<div align="center"> | |
<h1 id="top">Efficient Reasoning</h1> | |
<p> | |
This demo is structured in two parts, each showcasing a recent advancement in scalable and efficient reasoning with large language models: | |
<br><br> | |
<b>Part 1:</b> <i>Elastic Reasoning</i> focuses on budget-aware generation by explicitly separating thinking and solution stages. | |
<br> | |
<b>Part 2:</b> <i>Fractured Chain-of-Thought</i> explores sampling efficiency by fragmenting the reasoning process along multiple dimensions. | |
</p> | |
<br> | |
</div> | |
""") | |
gr.HTML(""" | |
<div align="center"> | |
<h3 id="part1">Part 1: Elastic Reasoning 🌟</h3> | |
<br> | |
</div> | |
""") | |
gr.HTML(""" | |
<div style="display: flex; justify-content: center; gap: 8px; flex-wrap: wrap;"> | |
<a href="https://arxiv.org/pdf/2505.05315"> | |
<img src="https://img.shields.io/badge/paper-A42C25?style=for-the-badge&logo=arxiv&logoColor=white" /> | |
</a> | |
<a href="https://huggingface.co/collections/Salesforce/elastic-reasoning-682b4bba108d6ea0a8bab275"> | |
<img src="https://img.shields.io/badge/E1-fcd022?style=for-the-badge&logo=huggingface&logoColor=000&labelColor" /> | |
</a> | |
<a href="https://github.com/SalesforceAIResearch/Elastic-Reasoning"> | |
<img src="https://img.shields.io/badge/Elastic_Reasoning-000000?style=for-the-badge&logo=github&logoColor=white" /> | |
</a> | |
</div> | |
""") | |
gr.Markdown( | |
""" | |
## Introduction | |
We propose **Elastic Reasoning**, a novel framework for scalable chain of thoughts | |
that explicitly separates reasoning into two phases—`thinking and solution`—with | |
independently allocated budgets. At test time, Elastic Reasoning prioritize that | |
completeness of solution segments, significantly improving reliability under tight | |
resource constraints. To train models that are robust to truncated thinking, we | |
introduce a lightweight `budget-constrained rollout` strategy, integrated into GRPO, | |
which teaches the model to reason adaptively when the thinking process is cut | |
short and generalizes effectively to unseen budget constraints without additional | |
training. | |
""") | |
gr.Image("figs/framework.png", label="Framework", show_label=False, elem_id="my-img") | |
gr.Markdown( | |
""" | |
**Main Takeaways** | |
1. ✂️ Thinking + Solution are explicitly separated with independent budgets — boosting reliability under tight compute constraints. | |
2. 🧠 Budget-Constrained Rollout: We train models to handle truncated reasoning using GRPO. | |
3. 📈 Flexible scalability: Robust performance across diverse inference budgets on reasoning benchmarks like AIME and LiveCodeBench. | |
4. ⚙️ Better performance with fewer tokens: Our trained model generates outputs that are 30% shorter while maintaining (or even improving) accuracy. | |
""") | |
with gr.Row(): | |
gr.Image("figs/aime.png", label="Framework", show_label=False, elem_id="small") | |
gr.Image("figs/livecode.png", label="Framework", show_label=False, elem_id="small") | |
gr.Image("figs/codetable.png", label="Framework", show_label=False, elem_id="my-img") | |
gr.HTML(""" | |
<div align="center"> | |
<h3 id="part2">Part 2: Fractured Chain-of-Thought 🌟</h3> | |
<br> | |
</div> | |
""") | |
gr.HTML(""" | |
<div style="display: flex; justify-content: center; gap: 8px; flex-wrap: wrap;"> | |
<a href="https://arxiv.org/pdf/2505.12992"> | |
<img src="https://img.shields.io/badge/paper-A42C25?style=for-the-badge&logo=arxiv&logoColor=white" /> | |
</a> | |
<a href="https://github.com/BaohaoLiao/frac-cot"> | |
<img src="https://img.shields.io/badge/frac-cot-000000?style=for-the-badge&logo=github&logoColor=white" /> | |
</a> | |
</div> | |
""") | |
gr.Image("figs/frac_cot.gif", label="Framework", show_label=False, elem_id="my-img") | |
gr.Markdown( | |
""" | |
## Introduction | |
Building upon the same core insight as **Elastic Reasoning**—that correct answers can often be derived without waiting for a full chain-of-thought (CoT)—**Fractured Sampling** shifts focus to the **sampling strategy** of reasoning. | |
Instead of relying on complete, uninterrupted reasoning sequences, Fractured Sampling **breaks the CoT along the temporal dimension**, exploring whether it's possible to "get the right answer without thinking all the way through." | |
This method introduces sampling control along three key dimensions: | |
- **Solution Diversity (m) — sampling multiple final outputs from a single reasoning trace. | |
- **Trajectory Diversity (n) — sampling multiple independent reasoning traces with different seeds (vanilla CoT sampling). | |
- **Reasoning Depth Diversity (H) — sampling at different intermediate stages of a single reasoning trace. | |
Among these, the novel **reasoning depth `H`** plays a critical role: by sampling outputs at different depths of partially completed reasoning chains, the model creates multiple sets of "fragmented thoughts + solutions," which are then jointly evaluated to select the most trustworthy outcome. | |
""") | |
gr.Image("figs/frac-frame.png", label="Framework", show_label=False, elem_id="my-img") | |
gr.Markdown( | |
""" | |
### 🔍 Scaling Analysis of *n*, *m*, and *H* in DeepSeek-R1 Models | |
A detailed test-time scaling analysis on the DeepSeek-R1 series reveals the individual impact of the three sampling dimensions: `n` (number of reasoning paths), `m` (number of answers per path), and `H` (depth-wise reasoning samples). | |
Across multiple reasoning benchmarks, the results show that increasing **`H` — sampling across reasoning depths — yields the highest cost-effectiveness**. That is, sampling more intermediate answers along the depth of a single reasoning path leads to **greater accuracy improvements with fewer additional tokens**, compared to simply increasing the number of paths (`n`) or answers (`m`). | |
""") | |
gr.Image("figs/single.png", label="Framework", show_label=False, elem_id="my-img") | |
gr.Markdown( | |
""" | |
### 🔄 Joint Sampling of *n*, *m*, and *H* for Enhanced Accuracy | |
In practical scenarios, the sampling dimensions `n`, `m`, and `H` can be **jointly optimized** rather than tuned in isolation. By **dynamically allocating the sampling budget across these dimensions**, the model can significantly enhance its reasoning accuracy. | |
This joint sampling strategy leverages the complementary strengths of each dimension—diversity (`n`), redundancy (`m`), and depth-awareness (`H`)—to achieve robust performance under a fixed token budget. | |
""") | |
gr.Image("figs/combine.png", label="Framework", show_label=False, elem_id="my-img") | |
gr.Markdown( | |
""" | |
## Citation | |
```bibtex | |
@article{xu2025scalable, | |
title={Scalable Chain of Thoughts via Elastic Reasoning}, | |
author={Xu, Yuhui and Dong, Hanze and Wang, Lei and Sahoo, Doyen and Li, Junnan and Xiong, Caiming}, | |
journal={arXiv preprint arXiv:2505.05315}, | |
year={2025} | |
} | |
@misc{liao2025fracturedchainofthoughtreasoning, | |
title={Fractured Chain-of-Thought Reasoning}, | |
author={Baohao Liao and Hanze Dong and Yuhui Xu and Doyen Sahoo and Christof Monz and Junnan Li and Caiming Xiong}, | |
year={2025}, | |
eprint={2505.12992}, | |
archivePrefix={arXiv}, | |
primaryClass={cs.LG}, | |
url={https://arxiv.org/abs/2505.12992}, | |
} | |
``` | |
""") | |
gr.HTML(""" | |
<div align="center" style="margin-top: 30px;"> | |
<a href="#top" style="font-size: 16px;">⬆️ Back to Top</a> | |
</div> | |
""") | |
if __name__ == "__main__": | |
demo.launch() | |