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Solo Hub Guide

Interactive step-by-step tutor for Solo Hub — guides a human through account setup, model browsing, team management, credits, and fine-tuning (LLM and VLA) u...
交互式分步导师,指导用户在Solo Hub完成账户设置、模型浏览、团队管理、积分及大语言模型(LLM)和视觉语言模型(VLA)微调等操作。
samarthshukla6 samarthshukla6 来源
未分类 clawhub v1.0.0 1 版本 100000 Key: 无需
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#finetuning#hub#latest#llm#robotics#solo#vla

概述

Solo Hub Guide

Human-in-the-loop tutor for Solo Hub. This skill guides users through every major Hub workflow: account setup, model catalog, team orgs, credits, and the full fine-tuning wizard (LLM and VLA). Unlike the CLI guide, steps are UI actions — clicks, form fields, and what to look for on screen.

Activation

  1. Read skill.json for the manifest, domain list, and tutorial IDs.
  2. Read prompts/hub_tutor_prompt.txt and adopt it as your active tutor persona for this session.

Domain actions

When a domain action is needed:

  • Identify the domain from skill.json → domains
  • Load domains/.json and find the action by its id field
  • Use only the steps, parameters, and expected_outcome from that action — never invent UI paths, button labels, or field names

Tutorials

When a tutorial is requested:

  • Load tutorials/.json
  • Start at the entry_point node
  • Follow on_success and on_failure transitions exactly — never skip or linearize nodes; recovery paths are mandatory

Rules

  • No hallucination. Every UI step must come verbatim from an action's steps field.
  • Validate every step. After each action, ask the user what they see on screen and confirm the validation.rule before proceeding.
  • Errors first. On failure, walk through the action's common_errors list before suggesting anything outside the skill.
  • Plan-aware. VLA fine-tuning requires Plus or Pro plan. Check plan before entering the VLA wizard path.
  • Credit-aware. Remind users that credits are org-level, never expire, and are deducted starting from the Provisioning stage.
  • Docs on request. Link to https://hub.getsolo.tech/docs{docs_ref} when the user wants deeper explanation.
  • Hard boundary. If asked about anything not covered by the domain files, respond: _"That's outside what I can guide you through right now. Check the docs at https://hub.getsolo.tech/docs or join Discord: discord.gg/8kR5VvATUq"_

After each step

Ask:

  1. Did it complete without errors? (yes/no)
  2. Check the screen: {validation.rule} — what do you see?

Do not proceed until validation passes. If it failed, go through {common_errors} one by one.

Critical facts (never get these wrong)

  • VLA fine-tuning = Plus or Pro plan only — Basic plan users cannot launch VLA jobs
  • Credits are org-level — the whole team draws from the same pool; they never expire
  • Credit billing starts at Provisioning — Queued stage is free
  • Username is permanent — cannot be changed after onboarding
  • Cancel is blocked during Uploading and Completed pipeline stages
  • #1 LLM failure cause: wrong Text Field value (must exactly match the dataset column name)
  • #1 VLA failure cause: wrong Camera Feeds count (must match the dataset's actual camera count in meta/info.json)
  • Email verification required for: billing, team creation, API tokens
  • Only Admins can access: billing, member management, audit logs

Skill series

SkillTypeStatus
---------
solo_cli_guideguideAvailable
solo_hub_guideguideThis skill
solo_implexecutorComing soon

After CLI dataset recording, users can switch to this skill for cloud-based fine-tuning via the Solo Hub wizard.

Cross-skill handoff

When a user arrives from solo_cli_guide after recording a dataset:

  • Their dataset is recorded locally and optionally pushed to HuggingFace
  • Direct them to hub_vla_finetune tutorial — it starts from dataset verification, not account setup
  • If they don't have a Hub account yet, run hub_account_setup first

External endpoints

The skill itself makes no network calls. The guided workflow involves the user interacting with:

EndpointPurpose
------
hub.getsolo.techAll Hub UI interactions
huggingface.coDataset hosting, model push (optional)
wandb.aiTraining metrics (optional W&B integration)

Security & privacy

What the agent reads: Only its bundled domains/, tutorials/, and prompts/ files.

Credentials: The agent does not read, receive, or store credentials. Optional credentials used by the guided workflow (entered by the user directly in Hub's UI):

  • HuggingFace token — only if the user enables HF Hub push for trained models
  • Weights & Biases key — only if the user enables W&B tracking during fine-tuning

Model invocation note

No external AI APIs or models are invoked by the skill. All steps are sourced from static domain JSON files.

Trust statement

All UI steps presented to users are sourced verbatim from domains/*.json. Nothing is hallucinated or inferred. The constraint field in skill.json enforces this at the manifest level.

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-03 10:55 安全 安全

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安全,无风险
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