slipcore / assets /analysis.json
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Deploy Slipstream paper Space with Live Quantizer
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{
"schema_version": "paper_analysis_v1",
"pdf": {
"path": "D:\\Development\\slipcore\\private\\zenodo\\slipstream-paper.pdf",
"filename": "slipstream-paper.pdf",
"sha256": "e91b687dbbe2aa4fe01ec0ae3c5475fda9ad2a5107ea8e81927028c575c707f7",
"page_count": 7,
"text_pages_extracted": 7,
"extracted_chars": 11939
},
"paper": {
"title": "Slipstream: Semantic Quantization for Efficient Multi-Agent Coordination",
"authors": [
"Anthony Maio"
],
"abstract": "As multi-agent LLM systems scale,coordination bandwidthbecomes a primary cost\ndriver: every token spent on routing, intent framing, and redundant context is paid repeat-\nedly across agents and turns. Current approaches waste 40–60% of compute on coordination\noverhead, with communication costs scalingO(n2)as agent counts increase.\nThis paper introducesSlipstream, a protocol that performssemantic quantization:\nmapping free-form messages onto a sharedUniversal Concept Reference (UCR)and\ntransmitting compactmnemonic anchorsthat identify structured intents. Unlike syn-\ntactic compression (which fails due to BPE tokenizer fragmentation), Slipstream transmits\nnatural-language mnemonics that tokenize efficiently across model architectures.\nSlipstream combines (1) a symbolic4D semantic manifold—Action, Polarity, Domain,\nUrgency—with (2) a data-drivenvector engine(embeddings + nearest-centroid retrieval)\nplus anevolutionary extension layerthat learns new anchors from low-confidence traf-\nfic. Results show82% token reduction(41.9→7.4 tokens average) while maintaining\nsemantic fidelity, making large-scale multi-agent deployments economically viable."
},
"artifacts": {
"urls": [
"https://github.com/anthony-maio/slipcore",
"https://modelcontextprotocol.io/,",
"https://www.linuxfoundation."
],
"hf_models": [],
"hf_datasets": [],
"hf_spaces": [],
"possible_hf_repo_ids": [
"Edge/embedded",
"Msg/Day",
"REQ/TSK",
"messages/day",
"org/press"
],
"github_repos": [
"anthony-maio/slipcore"
],
"arxiv_ids": [
"1982.10564",
"2690.17728"
],
"dois": [
"10.1109/TIT.1982.1056489",
"10.1145/1772690.1772862",
"10.18653/v1/D19-1410"
]
},
"suggested": {
"space_slug": "slipstream-semantic-quantization-for-efficient-m",
"space_title": "Slipstream: Semantic Quantization for Efficient Multi-Agent Coordination",
"tags": [
"semantic-quantization",
"multi-agent-systems",
"protocol-standards",
"token-ef-"
],
"emoji": "📄",
"colorFrom": "blue",
"colorTo": "indigo"
},
"outputs": {
"context_txt": "paper_context.txt",
"chunks_jsonl": "paper_chunks.jsonl",
"rendered_pages": [
{
"page": 1,
"path": "pages\\page_01.png"
},
{
"page": 2,
"path": "pages\\page_02.png"
}
],
"extracted_images": []
}
}