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A newer version of the Gradio SDK is available: 6.20.0

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metadata
title: Slipstream
emoji: 📈
colorFrom: blue
colorTo: indigo
sdk: gradio
sdk_version: 6.16.0
app_file: app.py
pinned: false
license: cc-by-4.0
tags:
  - track:backyard
  - sponsor:openbmb
  - sponsor:nvidia
  - sponsor:modal
  - achievement:welltuned
  - achievement:offbrand
  - achievement:sharing
  - achievement:fieldnotes

Slipstream

This space provides an interactive presentation and live demo of the Slipstream project-controls forecasting benchmark: a new benchmark for forecasting a project's final cost (EAC) and finish period from mid-flight Earned Value data, an agentic layer that reconciles the forecasting tools, and the distillation of that agent into small models for edge, air-gapped, and on-device forecasting.

The application is built with a buildless Preact frontend served by a Gradio Server (gr.Server), which also exposes the benchmark results through typed API endpoints. The headline edge agent is openbmb/MiniCPM5-1B distilled into a project-controls forecasting agent (slipstream-minicpm5-1b-evm). Off the shelf, the 1B base model returns a usable forecast less than 2% of the time; after distillation, it reaches ~99% validity with a median cost error of roughly 2.7%, matching the traditional Earned Schedule baseline. It serves as the default model in the live demo. We also distilled nvidia/NVIDIA-Nemotron-3-Nano-4B-BF16, a hybrid Mamba-2 + attention model, into slipstream-nemotron3-nano-4b-evm - our strongest student model, achieving about 2.37% cost error and a 0.61-period finish error. It was trained on its dedicated CUDA stack on Modal and is selectable in the live demo.

DEMO: https://youtu.be/v-k7lxXskTA

Try it live

The final slide runs a real held-out project through the agentic layer live on Modal, next to Earned Schedule, TimesFM and TabPFN, and compares every forecast against the true outcome. Each run cold-starts a GPU, so expect roughly 5-7 minutes; the methods stream in as they finish.

Social post

Hackathon social post: https://x.com/NZXW63TF/status/2066647669540360315

Disclaimer: I do not really use social media. This X / Twitter account exists only so I can scrape tweets from lists.

Links

The dataset is CC-BY-4.0; each model inherits its base model's licence. Everything was trained, evaluated and benchmarked on Modal including the live demo in this space.

Run locally

pip install -r requirements.txt
python app.py     # http://localhost:7860

The live-demo backend is a separate deployed Modal app (pipeline/agent/demo_modal.py); set SLIPSTREAM_DEMO_URL to point the Space at your own deployment if you redeploy it.