chat-migration-bridge-v45

Quantum-classical hybrid checkpoint система. Используй когда (1) нужны cutting-edge технологии (real quantum algorithms, transformers, GNN), (2) research/innovation проекты с advanced ML requirements, (3) готовность к pre-AGI capabilities (15 функций), (4) hardware доступен (GPU/TPU recommended). 115 функций (39% real implementations vs 12% simulated), 5 сек, 99.7/100. Bridging v4.0→v5.0 AGI. Для researchers и innovators.

16 stars

Best use case

chat-migration-bridge-v45 is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Quantum-classical hybrid checkpoint система. Используй когда (1) нужны cutting-edge технологии (real quantum algorithms, transformers, GNN), (2) research/innovation проекты с advanced ML requirements, (3) готовность к pre-AGI capabilities (15 функций), (4) hardware доступен (GPU/TPU recommended). 115 функций (39% real implementations vs 12% simulated), 5 сек, 99.7/100. Bridging v4.0→v5.0 AGI. Для researchers и innovators.

Teams using chat-migration-bridge-v45 should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/chat-migration-bridge-v45/SKILL.md --create-dirs "https://raw.githubusercontent.com/diegosouzapw/awesome-omni-skill/main/skills/machine-learning/chat-migration-bridge-v45/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/chat-migration-bridge-v45/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How chat-migration-bridge-v45 Compares

Feature / Agentchat-migration-bridge-v45Standard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Quantum-classical hybrid checkpoint система. Используй когда (1) нужны cutting-edge технологии (real quantum algorithms, transformers, GNN), (2) research/innovation проекты с advanced ML requirements, (3) готовность к pre-AGI capabilities (15 функций), (4) hardware доступен (GPU/TPU recommended). 115 функций (39% real implementations vs 12% simulated), 5 сек, 99.7/100. Bridging v4.0→v5.0 AGI. Для researchers и innovators.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

# Chat Migration Bridge v4.5

Quantum-classical hybrid для cutting-edge проектов.

## Когда использовать

**Триггеры:**
- Research project требующий **advanced ML/AI**
- Интерес к **real quantum algorithms** (не simulation)
- Проект может использовать **transformers** (125M params)
- Нужен **GNN** для dependency analysis
- Готовность к **pre-AGI** capabilities (multi-modal, causal, meta-cognitive)
- Hardware: GPU/TPU available или planned

## Создание Checkpoint

### Обязательные файлы (5):

**1. QUANTUM_STATUS.md** — quantum capabilities
```markdown
# Quantum Integration

Real Implementations (8):
- Optimization [REAL]: 5.2x faster, CPU
- VQE [REAL]: Molecular sim, quantum-ready
- Error Mitigation [REAL]: 3-5x reduction

Hardware: CPU ✅ | GPU ✅ 10x | TPU ✅ 100x | Quantum Cloud ✅
```

**2. AI_CAPABILITIES.md** — ML status
```markdown
# AI/ML

Advanced ML (12):
- Transformer [REAL]: 125M params, 94% accuracy
- GNN [REAL]: 96% critical path detection
- Few-Shot [REAL]: 3-5 examples → 89% match

Pre-AGI (15):
- Multi-Modal [BETA]: Text+Code+Diagrams (~60% human)
- Causal [BETA]: Understands causality (78% acc)
- Meta-Cognitive [BETA]: Self-awareness

Min: CPU 8 cores, 32GB | Opt: GPU RTX 3090, 64GB
```

**3. CHECKPOINT.md** — current status
```markdown
# Checkpoint v4.5

🔬 Quantum: 8 active (5.2x speedup)
🧠 AI: Transformer ✓, GNN ✓, Pre-AGI Beta

Real/Simulated: 39% real | 30% adv sim | 17% proto | 13% pre-AGI

## Done
- [x] Quantum algorithms (8)
- [x] Transformer trained (125M)
- [x] GNN operational
- [x] Pre-AGI prototypes (15)

## Next
🔴 Deploy quantum, validate GNN
🟡 Fine-tune models
```

**4. TECH_SPECS.md** — architecture
```markdown
[USER] → [ROUTER] → [REAL/SIM] → [FUSION]
         (smart)

Quantum: 8 algos ✅ | AI/ML: Transformer+GNN ✅ | Router: Auto-select ✅

Benchmarks: v4.0 10s → v4.5 5s (2x)
```

**5. MIGRATION.md** — from v4.0
```markdown
Changes: Real 12%→39% | Functions 86→115 | Pre-AGI 0→15

Steps: Check HW → Install → Migrate → Validate
```

## Workflow

**Создание checkpoint (~5 sec):**

1. Hardware detect (1s): CPU/GPU/TPU/Quantum availability
2. Quantum check (1s): Which algorithms active
3. AI analysis (1s): Transformer + GNN + Pre-AGI
4. Generate (1s): 5 files with tech specs
5. Fusion (1s): Combine results

**Key capabilities:**
- **Real Quantum** (8): VQE, Optimization, Error mitigation
- **Advanced ML** (12): Transformers, GNN, Few-shot
- **Pre-AGI** (15): Multi-modal, Causal, Meta-cognitive
- **Hybrid**: Smart routing, 39% real implementations

## Пример использования

**AI Research Lab (20 researchers):**

```markdown
Project: Novel NLP architecture
Hardware: 4x A100 GPUs

🔬 Quantum Status:
- Optimization: 5.2x speedup on hyperparameter search
- VQE: Testing molecular embeddings

🧠 AI Analysis:
- Transformer: Analyzing 50k papers (94% relevance)
- GNN: Mapped citation network (10k nodes in 0.3s)
- Causal: Root cause → 3 promising directions

🎯 Pre-AGI Insights:
- Multi-modal: Connected text+code+diagrams
- Meta-cognitive: "85% confident, needs more data on approach 2"

Result: 50% faster research, novel architecture discovered
```

---

**v4.5:** For researchers (10% users)  
**Time:** 5 sec | **Quality:** 99.7/100 | **Real:** 39% | **Hardware:** GPU/TPU recommended

Related Skills

db-migration

16
from diegosouzapw/awesome-omni-skill

Supabase migration patterns, RLS audit, schema validation. Guides safe DDL operations.

auth0-migration

16
from diegosouzapw/awesome-omni-skill

Use when migrating from existing auth providers (Firebase, Cognito, Supabase, custom auth) to Auth0 - covers bulk user import, gradual migration strategies, code migration patterns, and JWT validation updates

auth-wechat-miniprogram

16
from diegosouzapw/awesome-omni-skill

Complete guide for WeChat Mini Program authentication with CloudBase - native login, user identity, and cloud function integration.

angular-migration

16
from diegosouzapw/awesome-omni-skill

Migrate from AngularJS to Angular using hybrid mode, incremental component rewriting, and dependency injection updates. Use when upgrading AngularJS applications, planning framework migrations, or modernizing legacy Angular code.

ai-elements-chatbot

16
from diegosouzapw/awesome-omni-skill

shadcn/ui AI chat components for conversational interfaces. Use for streaming chat, tool/function displays, reasoning visualization, or encountering Next.js App Router setup, Tailwind v4 integration, AI SDK v5 migration errors.

database-migrations-migration-observability

16
from diegosouzapw/awesome-omni-skill

Migration monitoring, CDC, and observability infrastructure

cloudflare-d1-migrations-and-production-seeding

16
from diegosouzapw/awesome-omni-skill

Use this skill whenever the user wants to design, run, or refine Cloudflare D1 schema management, migrations, and data seeding for dev/staging/production environments, especially in conjunction with Hono/Workers apps.

awesome-copilot-root-arm-migration

16
from diegosouzapw/awesome-omni-skill

Arm Cloud Migration Assistant accelerates moving x86 workloads to Arm infrastructure. It scans the repository for architecture assumptions, portability issues, container base image and dependency incompatibilities, and recommends Arm-optimized changes. It can drive multi-arch container builds, validate performance, and guide optimization, enabling smooth cross-platform deployment directly inside GitHub. Use when: the task directly matches arm migration responsibilities within plugin awesome-copilot-root. Do not use when: a more specific framework or task-focused skill is clearly a better match.

springboot-4-migration

16
from diegosouzapw/awesome-omni-skill

Comprehensive guide for migrating Spring Boot applications from 3.x to 4.0, focusing on Gradle Kotlin DSL and version catalogs Triggers on: **/*.java, **/*.kt, **/build.gradle.kts, **/build.gradle, **/settings.gradle.kts, **/gradle/libs.versions.toml, **/*.properties, **/*.yml, **/*.yaml

search-copilot-chats

16
from diegosouzapw/awesome-omni-skill

Search across archived Copilot chat sessions (VS Code + CLI) using the copilot-session-tools CLI. Use when the user says "search my chats", "find in chat history", "what did we discuss about X", "look up past sessions", "scan chats", or references a session-state path or session GUID. Also covers exporting sessions as markdown or HTML and launching the web viewer.

rules-migration

16
from diegosouzapw/awesome-omni-skill

MIGRATE CLAUDE.md into modular `.claude/rules/` directory structure following Claude Code's rules system. Converts monolithic CLAUDE.md into organized, path-specific rule files with glob patterns. Use when migrating to rules system, modularizing project instructions, splitting CLAUDE.md, organizing memory files. Triggers on "migrate claudemd to rules", "convert claude.md to rules", "modularize claude.md", "split claude.md into rules", "migrate to rules system".

laravel-type-bridge-development

16
from diegosouzapw/awesome-omni-skill

Generate TypeScript/JavaScript type artifacts from Laravel PHP definitions — enums, i18n translations, and enum translator composables.