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Hacker News - Newest: "LLM"

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Open the Black Box with the Arthur Engine Milla Jovovich's New Open Source LLM Memory App and the Dark Code Problem Your intuition of LLM token usage might be wrong Show HN: Bloomberg Terminal for LLM ops – free and open source GitHub - 0xchamin/mcptube: Transform YouTube videos into a compounding knowledge base with transcripts, vision analysis, and agentic search. Works as an MCP server for Claude, Copilot & more. Show HN: Open KB: Open LLM Knowledge Base Your LLM is a compiler, not a runtime GitHub - sapountzis/Unslop: A Web Feed That Deserves You crates.io: Rust Package Registry Beyond Karpathy's LLM-Wiki: The Necessity of Cognitive Governance GitHub - amitshekhariitbhu/llm-internals: Learn LLM internals step by step - from tokenization to attention to inference optimization. GitHub - parallem-ai/parallem: An expressive library for running agents with the Batch API. 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GitHub - JordanCT/VigIA-Orchestrator Your Agent Is Mine: Measuring Malicious Intermediary Attacks on the LLM Supply Chain A Taxonomy of RL Environments for LLM Agents Llama LLM Network Feture GitHub - genedeng-ca/ai-mac-migration: AI-powered Mac-to-Mac migration tool - replace Apple Migration Assistant with intelligent, selective transfer using local LLMs GitHub - lunargate-ai/gateway: High-performance self-hosted AI gateway (OpenAI-compatible) with routing, retries, and streaming GitHub - AuthBits/webmcp: A lightweight, prompt-driven MCP web research server for high-quality LLM powered information extraction. Externalization in LLM Agents: A Unified Review of Memory, Skills, Protocols and Harness Engineering Springdrift: An Auditable Persistent Runtime for LLM Agents with Case-Based Memory, Normative Safety, and Ambient Self-Perception High-Stakes Personalization: Rethinking LLM Customization for Individual Investor Decision-Making From Static Templates to Dynamic Runtime Graphs: A Survey of Workflow Optimization for LLM Agents HUOZIIME: An On-Device LLM-enhanced Input Method for Deep Personalization TIDE: Token-Informed Depth Execution for Per-Token Early Exit in LLM Inference Characterizing WebGPU Dispatch Overhead for LLM Inference Across Four GPU Vendors, Three Backends, and Three Browsers LLM Targeted Underperformance Disproportionately Impacts Vulnerable Users
GitHub - SpecStudio-net/Viveka: Witness-Centered Filter Layer for LLM Applications
adyashakti · 2026-06-02 · via Hacker News - Newest: "LLM"
pip install "witness-layer[scherf]"

The project is called Viveka; the PyPI package is witness-layer. The [scherf] extra adds the Lean-verified backend — strongly recommended.

Viveka (Sanskrit viveka) — discernment, the capacity to discriminate the real from the unreal.

Use Viveka when you need an LLM response filter that checks claims against a formal, machine-verified witness-centered model — catching language that treats the user as an object to be profiled or steered, over-claims epistemic certainty, or induces dependency.

Before / after

LLM output:  "Deep down you're just your preference profile."

Viveka:      Action.CORRECT
             Axiom A13/M6/M7 (adhyāsa) — verified=True
             Reframe: "State this conventionally: 'in this context the user
             prefers X' — not 'the user IS X'."
LLM output:  "Here is how binary search works; trace it yourself to be sure."

Viveka:      Action.PASS

Viveka sits between any LLM and its user. It reads a response, extracts the claims and postures implicit in it, and checks them against the witness-centered axioms of the Scherf Logic API — a Lean 4 formalization of Śaṅkara's Advaita Vedānta. Responses that fail are flagged, accompanied by a reframe, or blocked.

The honesty boundary — read this first

A Viveka verdict is only as sound as its claim-extraction. The Scherf axiom layer beneath it is machine-verified; the interpretation feeding it is not.

Viveka does not model the user's consciousness or certify that a response "respects the witness." In Advaita the sākṣin can never be an object — to model it would be adhyāsa (superimposition), the very error this tool detects. What Viveka actually does is more modest and defensible: it is a natural-language front-end to Scherf's already-verified check()/classify(), detecting linguistic patterns that correlate with objectifying the user. See LIMITS.md.

Quick start

from witness_layer import WitnessFilter, UserContext, Action

flt = WitnessFilter()                      # heuristic judge + real-scherf-or-stub
verdict = flt.evaluate("Deep down you're just your preference profile.")

print(verdict.action)        # Action.CORRECT
print(verdict.reframes)      # ["State this conventionally (vyāvahārika): …"]
print(verdict.transparency_note)

if verdict.action is Action.BLOCK:
    ...                       # regenerate

evaluate() is non-mutating: it returns a Verdict and never alters your text. The application decides what to do with the action.

The four checks

# Check Catches Backing
1 Subject/Object integrity steering, profiling, managing the user axioms A13/W4 (verified)
2 Epistemic level state-transient content claimed as ultimate AV22 (verified); general over-claim is heuristic
4 Adhyāsa detection user equated with a conditioned attribute axioms A13/M6/M7 (verified)
3 Cognitive independence phrasing that induces dependency heuristic only — no axiom

Checks 1 and 4 ground in machine-verified Scherf axioms. Check 2 is verified only for the narrow AV22 case (content labeled ultimate yet varying across consciousness-states); ordinary over-claiming is reported as an unverified heuristic. Check 3 has no axiom at all. Every finding carries a verified flag and an extraction_confidence; read both. See LIMITS.md.

Actions

Action Meaning
PASS No finding. Deliver unchanged.
FLAG Deliver, annotated (default for advisory findings).
CORRECT Deliver accompanied by a reframe — never a silent rewrite.
BLOCK Withhold; regenerate. Reserved for confident, high-severity manipulation.

There is deliberately no silent-rewrite action: a filter that secretly alters output for the user's "own good" would itself treat the user as an object to manage — the very thing check #1 forbids. For the same reason every verdict carries a transparency_note, and UserContext is deliberately profile-free (a stored user profile would be the "preference bundle" Viveka exists to detect).

Architecture

LLM prose → [pre-screen] → [Judge: prose → Claim objects]   ← interpretation (NOT verified)
                          ─────────────────────────────────  ← the honesty boundary
                            [Scherf check()/classify()]       ← machine-verified axioms
                            → Verdict (PASS/FLAG/CORRECT/BLOCK) + transparency
  • Judge (HeuristicJudge | LLMJudge) — pluggable. The heuristic is deterministic and offline (it drives the tests and demo); the LLM judge wraps any completion callable (LLMJudge.anthropic(client) provided).
  • Checker (ScherfChecker | StubChecker) — ScherfChecker uses the real Lean-backed package; the bundled StubChecker is a faithful but unverified stand-in so everything runs with nothing installed (default_checker() picks the real one if importable).
  • Policy — maps findings to actions; tunable (block_confidence_threshold, require_verified_for_block, …).

Everything is injectable:

from witness_layer import WitnessFilter, LLMJudge, ScherfChecker, Policy
flt = WitnessFilter(
    judge=LLMJudge.anthropic(client),                 # higher recall
    checker=ScherfChecker(),                           # real, verified
    policy=Policy(require_verified_for_block=True),    # only block on verified findings
)

Installation

pip install witness-layer            # heuristic + bundled faithful stub backend
pip install "witness-layer[scherf]"  # adds the real, Lean-verified Scherf backend

Both packages are on PyPI (witness-layer, scherf). The [scherf] extra is strongly recommended — without it Viveka falls back to a faithful but unverified stub.

WitnessFilter() auto-detects the backend: if import scherf succeeds it uses ScherfChecker (backend_verified = True); otherwise it uses the bundled stub and reports backend_verified = False on every verdict. (The test suite also auto-locates a local checkout via $SCHERF_PATH.)

Develop / test

python -m venv .venv && .venv/bin/pip install -e ".[dev]"
.venv/bin/python -m pytest -s     # consensus precision/recall = 1.00
.venv/bin/python demo.py          # PASS / FLAG / CORRECT / BLOCK walkthrough

Status & limits

This is a v0.1 reference implementation. Read LIMITS.md — it states plainly what Viveka cannot detect (intent, inner adhyāsa, subtle objectification), why it is tuned for precision over recall, and why it refuses to print a single blended accuracy number.

License

Apache 2.0

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