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Built for the Claude Code community with Claude Code by @mertduzgun

Independent project, not affiliated with Anthropic

Prism Mcp

dcostenco/prism-mcp
144authSTDIOregistry active
Summary

Gives Claude persistent memory across sessions through a local SQLite store with vector search and cognitive routing. Exposes tools for semantic search over conversation history, session state management, and proactive drift detection that alerts when your agent veers off task. Ships with the prism-coder LLM fleet (1.7B to 32B parameters) for offline tool routing via Ollama, plus optional Brave Search and Gemini integration. Includes a knowledge ingestion pipeline that indexes your codebase into the graph via MCP tools, GitHub webhooks, or REST API. The local tier runs entirely on device with no API keys. Reach for this when you want your AI to remember decisions across weeks without re-explaining context, or when you need tool calling that works offline at zero cost per query.

CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →
CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →

Prism Coder

Give your AI agent memory that lasts. Persistent sessions, knowledge graphs, and offline tool-routing — fully local and free.

npm MCP Registry License: AGPL-3.0 Models on HuggingFace

Prism Coder — Mind Palace Dashboard with Knowledge Graph and Multi-Agent Hivemind

Prism Coder is an MCP server that gives Claude, Cursor, and other AI tools long-term memory that survives across sessions. It ships with the open-weight prism-coder model fleet (2B–27B) for fast, offline tool-routing — no cloud required.

No account needed. No API keys. Runs on your machine.
A paid subscription adds cloud sync, higher model tiers, and team features through the Synalux portal.


Quickstart

The free tier needs no account, no API key, and no cloud. Add the server to your MCP client:

{
  "mcpServers": {
    "prism": {
      "command": "npx",
      "args": ["-y", "prism-mcp-server"]
    }
  }
}

Open Claude Desktop or Cursor and your agent now has memory backed by a local SQLite database (~/.prism-mcp/data.db).

Optional — local model fleet for offline tool-routing. Pull whichever fits your hardware:

ollama pull dcostenco/prism-coder:2b    # 2.3 GB · mobile / lightweight (99.1% routing accuracy)
ollama pull dcostenco/prism-coder:4b    # 3.4 GB · verifier (100% accuracy)
ollama pull dcostenco/prism-coder:9b    # 5.8 GB · default router (100% accuracy, Qwen3.5)
ollama pull dcostenco/prism-coder:27b   # 16 GB  · complex tasks (100% accuracy)

Prism detects both the namespaced (dcostenco/prism-coder:9b) and bare (prism-coder:9b) Ollama tags automatically.


What it does

Your AI agent forgets everything between sessions. Prism fixes that — and adds verification, drift detection, and multi-agent coordination on top.

Mind Palace — persistent memory that survives across sessions

Every conversation feeds a persistent store. The next session loads the right context automatically — no re-explaining.

Mind Palace Dashboard — project state, neural graph, pending TODOs

The dashboard shows your current project state, pending TODOs, intent health, and a neural knowledge graph — all built automatically from your agent sessions.

Knowledge Graph — semantic + keyword + graph search

Ask "what did I decide about the auth flow last month?" and get an answer with citations, combining vector similarity, full-text search, and graph traversal.

Knowledge Graph — 190 keywords, 47 edges, 12 projects visualized

Session History — immutable audit trail

Every session is logged with files changed, decisions made, and TODOs. Search, filter, and replay any past session.

Session Ledger — 93 sessions, 847 decisions logged across 12 projects

Inference Metrics — see where your tokens go

Every prism_infer call tracks which model handled it (local Ollama vs cloud) and how many tokens were consumed. When you save a session, Prism shows a summary:

📊 Inference Metrics (this session):
  Total calls: 12 — Local: 10 (83%) | Cloud: 2 (17%)
  Tokens: 8,420 in + 3,150 out = 11,570 total
  Avg latency: 1,240ms
  By model:
    prism-coder:27b: 6 calls, 7,200 tokens, avg 1,800ms
    prism-coder:9b: 4 calls, 2,870 tokens, avg 620ms
    synalux-27b: 2 calls, 1,500 tokens, avg 1,100ms

Local calls use actual Ollama token counts (prompt_eval_count / eval_count from Ollama); cloud calls use char/4 estimates. Metrics are tracked locally — no portal dependency, no env vars, works offline. Per-call data is also forwarded to the Synalux portal as best-effort analytics (independent of the display).

Session Drift Detection

Long agent sessions can wander from their original goal. session_detect_drift compares current work against the stated goal and returns on_track / minor_drift / major_drift so the agent can self-correct.

Behavioral Verification — catch bad edits before they happen

AI agents apply patterns from checklists without understanding the real-world impact. The verify_behavior tool challenges the agent with a scenario it must answer before editing — forcing it to think through what the end user will experience.

Agent: "I'll revert this kitchen display change"
Prism: "⚠️ Scenario: A cook sees a 3-item ticket. One item is voided.
        What should the cook see after the void?"
Agent: "The ticket stays visible with the remaining 2 items."
Prism: "Correct — your revert would hide the ticket entirely."

17 built-in domains (billing, auth, ordering, clinical, HR, and more). Custom domains per workspace on Enterprise. No hooks needed — works in any MCP client.

Time Travel

Roll back to any previous session state. Compare diffs between versions. Restore a known-good state with one click.

Time Travel — version timeline with diff view and one-click restore

Cognitive Routing

Three memory types, automatically sorted: episodic (what happened — session logs, decisions), semantic (what's true — facts, architecture), and procedural (how to do X — workflows, patterns). When you search, the router picks the right store instead of dumping everything.

Multi-Agent Hivemind

Coordinate multiple AI agents working on the same project. Each agent has its own session, but they share memory through the knowledge graph. The Hivemind Radar shows real-time agent status, tasks, and activity.

Hivemind Radar — 5 agents with real-time status, tasks, and activity feed

Neural Search

Search across all memories with highlighted results, knowledge graph editing, and memory density metrics.

Neural Search with Knowledge Graph Editor and Memory Density


Local-first and privacy

The free tier runs entirely on your machine. Paid tiers add cloud sync through the Synalux portal, which is what enables cross-device memory and team sharing.

Local tier (free)Cloud tier (paid)
Memory storageLocal SQLiteSynalux portal (Supabase-backed)
InferenceLocal Ollama modelsLocal models + cloud fallback
API keys requiredNoneSynalux subscription key
Web search / scrapeNot includedVia Synalux portal (provider keys server-side)
What leaves your machineNothingMemory text + file paths + search queries, sent to the portal over TLS (PHI-redacted before transit)
Works offline✅Local features yes; sync/cloud no

Handling sensitive data. All cloud writes pass through automatic redaction (SSNs, dates of birth, medical record numbers, phone numbers, emails, and clinical identifiers are stripped before transit). For regulated workloads, run the local tier for full air-gap, or use Enterprise which includes a HIPAA Business Associate Agreement.


Models

The prism-coder fleet uses Qwen3.5 for MCP tool-routing AND general inference. The 9B and 27B are fine-tuned with LoRA (r=128, all 64 layers including DeltaNet); the 2B and 4B use stock Qwen3.5-4B at different quantization levels. The 27B scored 100% on BFCL function-calling and 100% on an internal 15-problem coding eval at $0 inference cost.

prism_infer supports three modes: route (tool routing, fast, nothink), chat (conversation with thinking), and code (code generation with thinking). In chat/code modes, the model uses <think> blocks for chain-of-thought reasoning, which are stripped before the response is served. If the local model fails a quality gate (empty, think-only, or truncated), paid tiers automatically escalate to Claude via the Synalux portal.

ModelOllama tagSizeBFCL AccuracyRoleTier
Qwen3.5-4B Q3_K_Mprism-coder:2b2.3 GB99.1% × 3 seedsiPhone / mobile first gateFree
Qwen3.5-4B Q4_K_Mprism-coder:4b3.4 GB100% × 3 seedsVerifierFree
Qwen3.5-9B (LoRA)prism-coder:9b5.8 GB100% × 3 seedsDefault routerStandard+
Qwen3.5-27B (LoRA)prism-coder:27b16 GB100% × 3 seedsQuality tier (DeltaNet, 28.5 tok/s)Advanced+

Weights: huggingface.co/dcostenco (public GGUF). Latency depends on model size and hardware — see Benchmarks to measure it on your own machine rather than trusting a printed number.

Cascade

query → prism-coder:9b (local router, default)
      → prism-coder:4b (grounding verifier)
      → prism-coder:2b (iPhone / mobile, auto-selected by RAM)
      → prism-coder:27b (complex tasks, on demand)
      → cloud fallback (paid tiers, for max quality)

Multi-Layer Verification

Every tool-grounded answer on paid tiers passes through deterministic L3 routing rules and an NLI grounding verifier before reaching the user. Free-tier users get the deterministic gates (L1, L3-Tool, L3-Tier0) without the model-based NLI check.

LayerWhatModelCost
L1Crisis/medical safety gateNone (regex)0 ms
L3-ToolTool name remap + false-positive rejectionNone (deterministic)0 ms
L3-Tier0Integer grounding (set membership)None (deterministic)0 ms
L3-Tier2NLI verifier (claim → ENTAILED/NEUTRAL/CONTRADICTED)prism-coder:2b~200 ms
L4Hallucination judge (opt-out for clinical)prism-coder:4b~500 ms

Fail-closed on the verified path: when the grounding verifier runs (Standard tier and up), timeout, ambiguity, or missing evidence yields a refusal, not pass-through. Free-tier users get the deterministic L1/L3-Tool gates but not the NLI verifier.


Benchmarks

Reproduce every number yourself. All evals are open-source and self-contained:

git clone https://github.com/dcostenco/prism-coder && cd prism-coder
pip install anthropic requests
python3 tests/benchmarks/prism-routing-100/benchmark.py --models 2b 4b 9b 27b

Routing eval (115 cases, 12 categories, 3-seed mean). Routing accuracy includes the deterministic L3 correction layer — the same rules that run in production. On this narrow tool-routing task all fleet models achieve near-perfect accuracy. Be honest with yourself about what that means: the eval is near-saturated for this taxonomy — it measures whether the right one of a small set of MCP tools is selected, not general capability. The useful takeaway is offline routing reliability at zero cost, not that a 2.3 GB model rivals a frontier model in general.

ModelRouting accuracyNotes
prism-coder:2b (Q3_K_M)99.1% × 3 seeds1 failure: regex→knowledge_search
prism-coder:4b / 9b / 27b100% × 3 seedsPerfect on all 115 cases
Claude (frontier, same eval)~98%Stronger everywhere outside this narrow task

Memory uplift (LoCoMo-Plus, self-published). A separate long-context dialogue benchmark (dcostenco/Locomo-Plus) measures how much structured memory helps a base model retain multi-day context. Results show large gains when a model is paired with Prism memory versus running raw. Note this benchmark is authored, run, and LLM-judged by this project — treat it as a reproducible demonstration, not an independent third-party result, and run it yourself with the commands in that repo.

Code Generation Quality (27B vs Claude Opus)

Three progressively harder Python tasks run through prism_infer(mode:"code", think:true) on the local 27B and compared with Claude Opus. Both produce correct, production-quality code. The 27B is slightly more verbose (docstrings, examples); Opus is slightly tighter (__slots__, early-exit DFS). On routine coding the 27B at $0 replaces cloud calls entirely.

TaskLocal 27BClaude OpusVerdict
Fibonacci with memoization@lru_cache, ValueError on negative, docstringNested _fib to keep cache privateBoth correct, equivalent
LRU Cache (OrderedDict, O(1))Any keys, isinstance capacity check, __repr__Hashable key type (more precise), same opsBoth correct, Opus marginally tighter
Trie with autocomplete.lower() normalization, collect+sort+slice__slots__ on TrieNode, early-exit DFS at limitBoth correct, Opus slightly more optimized
Local 27B output — Trie with autocomplete (hardest task)
class TrieNode:
    def __init__(self):
        self.children: dict[str, 'TrieNode'] = {}
        self.is_end_of_word: bool = False

class Trie:
    def __init__(self):
        self.root: TrieNode = TrieNode()

    def insert(self, word: str) -> None:
        node = self.root
        for char in word.lower():
            if char not in node.children:
                node.children[char] = TrieNode()
            node = node.children[char]
        node.is_end_of_word = True

    def search(self, word: str) -> bool:
        node = self._get_node(word.lower())
        return node is not None and node.is_end_of_word

    def starts_with(self, prefix: str) -> bool:
        return self._get_node(prefix.lower()) is not None

    def autocomplete(self, prefix: str, limit: int = 5) -> list[str]:
        node = self._get_node(prefix.lower())
        if node is None:
            return []
        results: list[str] = []
        self._collect_words(node, prefix.lower(), results)
        results.sort()
        return results[:limit]

    def _get_node(self, key: str) -> 'TrieNode | None':
        node = self.root
        for char in key:
            if char not in node.children:
                return None
            node = node.children[char]
        return node

    def _collect_words(self, node: TrieNode, prefix: str, results: list[str]) -> None:
        if node.is_end_of_word:
            results.append(prefix)
        for char, child in sorted(node.children.items()):
            self._collect_words(child, prefix + char, results)
MetricLocal 27BCloud (Opus)
Latency (Trie task)~30s~8s
Cost$0~$0.05
Think modeEnabled (stripped before serving)N/A
Quality gatePassed (no escalation needed)N/A

Cloud Escalation in Practice (cloud_fallback: true)

The same three tasks with cloud_fallback: true — the quality gate decides whether local output is good enough or needs cloud escalation.

Taskused_cloudQuality GateLatencyWhat happened
Fibonacci (simple)noPassed11s27B served directly, $0
LRU Cache (medium)noPassed21s27B served directly, $0
Trie (hard)yesloop_detected55s27B looped → gate caught it → escalated to cloud 27B

The quality gate detected repeated sentences (≥3 of the same sentence in ≥6 total) in the 27B's Trie output and escalated automatically. The cloud fallback returned clean code. On a second run of the same prompt, the 27B produced clean output without escalation — the loop is stochastic, not systematic.

Takeaway: for ~80–90% of coding tasks, the 27B handles everything locally at $0. The quality gate + cloud escalation exists as a safety net for the remaining cases where the local model loops, truncates, or produces empty output. Paid tiers get automatic escalation; free tier gets the local result with a warning.


Why Prism Coder

vs AI coding assistants

These tables are the maintainer's assessment as of June 2026. Verify claims that matter to you — products change fast.

FeaturePrism CoderGitHub CopilotCursorWindsurfAmazon QDevin
Local inference (open-weight)✅❌❌❌❌❌
Works fully offline✅ (free tier)❌❌❌❌❌
Persistent cross-session memory✅✅❌❌❌❌
Session drift detection✅❌❌❌❌❌
L3 grounding verifier✅❌❌❌❌❌
Behavioral verification (pre-edit)✅❌❌❌❌❌
MCP server (tools + memory)✅❌❌❌❌❌
Web IDE✅✅❌❌✅✅
VS Code extension✅✅——✅❌
Flat-rate team pricing✅❌ (per-seat)❌ (per-seat)❌❌❌
HIPAA BAA available✅ (Enterprise)❌❌❌❌❌

vs local AI / memory tools

FeaturePrism CoderOllamaLM StudioMem0Zep
Local inference cascade✅✅✅❌❌
Cloud fallback✅❌❌❌❌
Persistent cross-session memory✅❌❌✅✅
Knowledge ingestion (MCP + webhook)✅❌❌❌❌
Cognitive routing (3-store)✅❌❌❌❌
Session drift detection✅❌❌❌❌
Native MCP server✅❌❌❌❌
Web IDE + VS Code extension✅❌❌❌❌

Pricing — flat-rate, not per-seat

Prism CoderGitHub CopilotCursorAmazon Q
Individual$19/mo$10/mo$20/mo$19/mo
Team (5 devs)$49/mo flat$95/mo$200/mo$95/mo
Enterprise (25 devs)$99/mo flat$195/mo$1,000/moCustom

Plans

All on-device models are free to run locally via Ollama on every tier. A subscription gates cloud features, higher model ceilings, and increased limits. Local model ceilings are advisory — on-device models run on your Ollama regardless of plan; the ceiling gates cloud inference and prism_infer routing.

FreeStandard $19/moAdvanced $49/moEnterprise $99/mo
Seats11up to 5up to 25
Local model ceilingup to 4bup to 9bup to 27bup to 27b
Daily cloud inference--2002,000100,000
Cloud Coder (Web IDE)--100/day1,000/day100,000/day
Cloud search--50/day500/day100,000/day
Max output tokens5121,0242,0484,096
Cloud fallback--Claude Opus 4.7Claude Opus 4.7Priority + Opus 4.7
Grounding verifier (fact-check AI output)--✅✅✅
Memory sync (cloud)--✅✅✅
Knowledge / session memorylimitedunlimitedunlimitedunlimited
Analytics dashboard--✅✅✅
HIPAA BAA------✅

14-day free trial on paid plans. 25+ seats: contact sales


How agents use it

Prism exposes 40+ MCP tools. The core memory loop:

ToolWhat it does
session_load_contextRecover the prior session's state on boot
session_save_ledgerAppend an immutable session log entry
session_save_handoffSave live state for the next session
knowledge_searchSemantic + keyword search over all memories
query_memory_naturalNatural-language Q&A over the memory store
session_detect_driftDetect when a session has drifted from its goal
verify_behaviorPre-edit scenario challenge — catch bad changes before they happen
knowledge_ingestTeach Prism a codebase or document
prism_inferLocal-first inference (route/chat/code modes, thinking, cloud escalation)
inference_metricsSession delegation stats on demand (call count, tokens, local/cloud split)

prism_infer — local-first inference with cloud escalation

prism_infer({
    prompt: "Write a binary search in Python",
    mode: "code",        // "route" | "chat" | "code"
    think: true,          // enable <think> reasoning (default: true for chat/code)
    model_ceiling: "27b", // use the quality tier
})
// → 27B generates code locally ($0), with thinking for quality
// → If quality gate fails + paid tier → auto-escalate to Claude
ModeThinkModelUse case
routeOff (fast)9B defaultMCP tool routing
chatOn27B preferredConversation, reasoning
codeOn27B preferredCode generation, debugging

Full TypeScript signatures live in src/tools/; architecture in docs/ARCHITECTURE.md.

inference_metrics — see your local-model usage on demand

Call inference_metrics anytime mid-session to see how many prism_infer calls ran locally vs cloud, with actual token counts:

📊 Inference Metrics — local-model delegation (this session):
  Total calls: 5 — Local: 5 (100%) | Cloud: 0 (0%)
  Tokens: 1,240 in + 380 out = 1,620 total
  Avg latency: 420ms
  By model:
    prism-coder:27b: 3 calls, 1,100 tokens, avg 520ms
    prism-coder:9b: 2 calls, 520 tokens, avg 270ms

The same block also appears automatically in session_save_ledger and session_save_handoff responses at session end.

Note: This tracks prism_infer delegation only — not your host model's (Claude's) own token spend. For that, use Claude Code's /cost command.

Local-model delegation (opt-in)

By default, your AI agent (Claude, Cursor, etc.) handles everything itself. You can optionally enable delegation so the agent offloads cheap, verifiable sub-tasks to local Ollama models at $0:

# Enable via Prism config
prism config set delegation_enabled true

When enabled, the agent's task router may delegate qualifying work — bulk classification, field extraction, mechanical formatting — to prism_infer instead of using cloud tokens. The agent always verifies the result and redoes it itself if quality is degraded.

Guardrails:

  • Off by default — enforced in code, not just convention
  • Never delegates: code/text that ships to the user, security/safety logic, planning/reasoning, anything where a silent quality drop isn't obvious
  • Always verifies: checks quality_gate_failed and used_cloud before trusting local output
How Prism survives context compaction

The LLM context window is treated as ephemeral scratch space; durable state lives in the persistent store (SQLite locally, the portal in the cloud). Every session begins with a mandatory session_load_context call, so the agent is oriented before it writes a response. When a project exceeds a threshold (default 50 entries), session_compact_ledger summarizes old entries into a rollup, soft-archives the originals, and links them in the graph. See docs/COMPACTION.md


CLI

prism load <project>      # load session context
prism save                # save ledger + handoff
prism search <query>      # search code across repos (exact / regex / symbol / semantic)
prism review <files...>   # AI code review — security, performance, style
prism scan <files...>     # security scan — secrets, licenses, Dockerfile
prism push                # push local SQLite to the cloud backend
prism register-models     # alias dcostenco/prism-coder:* -> prism-coder:*

prism search — semantic code search

prism search — semantic code search with relevance scores

prism review — AI code review with HIPAA checks

prism review — AI code review with security and HIPAA findings

prism scan — security scanner for secrets, Dockerfiles, licenses

prism scan — security scan finding secrets and container issues


Companions

Prism works alongside these tools — use whichever fits your workflow.

Web IDE — Prism Coder

A browser-based IDE at synalux.ai/coder. Import any GitHub repo and get:

  • Monaco editor with multi-tab, split view, syntax highlighting, and VS Code keybindings
  • In-browser Node.js via WebContainer (your code runs in the browser sandbox, not on a server)
  • Integrated terminal — WebContainer shell in-browser; optional server PTY via WebSocket when connected to a dev server
  • AI Agent Mode — describe a task and the agent creates files, runs type-checks, and verifies
  • Source control — commit, branch, push/pull, stash, blame, tag management
  • Live Share — real-time collaborative editing with session links
  • Node.js debugger via Chrome DevTools Protocol
  • Tasks runner (VS Code tasks.json compatible), Problems panel (Monaco diagnostics)
  • 12-language i18n — full UI localization

Prism Coder IDE — Agent Mode creating a component with auto-fix and type-checking

Prism Coder IDE — Live Share with team members and real-time cursor tracking

Standard+ plans get cloud AI and higher rate limits. Free tier works with local Ollama. Code execution uses the in-browser WebContainer by default; Live Share and the optional PTY terminal connect to external servers when explicitly enabled.

VS Code Extension — Synalux

Memory-augmented AI inside VS Code with clinical practice management features. Install from the marketplace:

code --install-extension synalux-ai.synalux

VS Marketplace

AI chat, voice input, SOAP note generator, team collaboration, and video calls — all inside VS Code. Routes through local Ollama by default; cloud on paid tiers.

Feature details
  • AI: Chat participant (@synalux), multi-agent pipeline, voice input, model switching, 10 tones
  • Clinical: SOAP note generator, role-based access, document signing, patient board
  • Collaboration: Team chat, DMs, video calls, customer board, visual builder, DevContainers
  • Privacy: Local Ollama by default. preferLocal=true tries local first. Enterprise BAA available.

Prism AAC

Communication app for non-speaking users, powered by the on-device prism-coder fleet for phrase prediction. macOS / iOS / web.

See github.com/dcostenco/prism-aac


Git Hooks (Portable)

Pre-commit and pre-push security hooks that work with any editor, any AI tool, and direct CLI. No Claude Code dependency.

# Install in all repos (one-time)
bash synalux-private/scripts/install-git-hooks.sh

# Or install manually in a single repo
cp hooks/pre-commit .git/hooks/pre-commit && chmod +x .git/hooks/pre-commit
cp hooks/pre-push .git/hooks/pre-push && chmod +x .git/hooks/pre-push
HookWhat it checksMode
pre-commitDead code, orphan services, scaffold code, missing authPRECOMMIT_MODE=advisory|block|off
pre-push19-rule security audit (SSRF, SQL injection, secrets, IDOR, etc.)PREPUSH_MODE=advisory|block|off

Default mode is advisory (warn but allow). Set *_MODE=block for hard enforcement. Hooks look for full audit scripts in the repo first (hooks/lib/), then ~/.claude/hooks/ fallback, then minimal inline checks.


Self-hosting (Enterprise)

Run the full model stack on your own hardware — no cloud, full data sovereignty.

Requirements: Mac M2 Pro+ (48 GB recommended) or Linux + NVIDIA GPU, plus Ollama.

ollama pull dcostenco/prism-coder:9b       # default router
export LOCAL_LLM_URL=http://localhost:11434

Routing is automatic: 9b → 4b → cloud fallback on desktop/server, 2b → cloud fallback on mobile/iPhone. For iOS or another machine on the same network, run OLLAMA_HOST=0.0.0.0 ollama serve and point LOCAL_LLM_URL at the host's IP.


Configuration reference

VariablePurposeDefault
PRISM_STORAGElocal / synalux / supabase / autoauto
PRISM_SYNALUX_API_KEYPaid-tier portal key (synalux_sk_...)-- (local if unset)
LOCAL_LLM_URLOllama endpointhttp://localhost:11434
PRISM_FORCE_LOCALForce local SQLite regardless of credentialsfalse
TELEMETRY_WRITE_TOKENPortal analytics token (optional — metrics display works without it)--

With no variables set, Prism runs fully local. Set PRISM_SYNALUX_API_KEY (and leave PRISM_STORAGE=auto) to use the cloud backend.


Testing

npm test                 # full suite (vitest) — 95 files, 2841 tests
npm test -- --coverage   # coverage report

Coverage spans HRR retrieval, knowledge ingestion, the inference cascade and grounding verifier, inference metrics, telemetry allowlist, delegation gate, compaction, the model picker, and storage round-trips.


Migration: local to cloud

To move free-tier history into the paid portal:

node scripts/migrate-local-to-portal.mjs --dry-run        # preview, no network
PRISM_SYNALUX_API_KEY=synalux_sk_... \
  node scripts/migrate-local-to-portal.mjs                # push ledger + handoffs

It reads ~/.prism-mcp/data.db and POSTs entries to the portal. Ledger entries are append-only and de-duped server-side; handoffs use last-write-wins per project. Re-running on the same DB is safe. This is a one-shot migration, not a sync daemon — after it, set PRISM_STORAGE=synalux (or leave it on auto).


License

ProductLicense
prism-mcp-server (this repo)AGPL-3.0
VS Code extension (synalux-ai.synalux)BSL-1.1
Web IDE (synalux.ai/coder)Synalux Terms of Service
Prism AACAGPL-3.0

The AGPL-3.0 license covers the MCP server and its source code. The VS Code extension and Web IDE are separate products with their own licenses. Commercial hosted/managed deployment of the MCP server is available via the Synalux subscription.

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Configuration

BRAVE_API_KEYsecret

Brave Search API key for web search tools

GEMINI_API_KEYsecret

Google Gemini API key for AI-powered summarization and embeddings

SUPABASE_URL

Supabase project URL for session memory and knowledge persistence

SUPABASE_KEYsecret

Supabase service role key for database access

PRISM_USER_ID

User ID for multi-tenant row-level security isolation (defaults to 'default')

GCP_PROJECT_ID

Google Cloud project ID for Vertex AI Discovery Engine integration

VERTEX_LOCATION

Vertex AI location/region (defaults to 'global')

VERTEX_DATA_STORE_ID

Vertex AI Discovery Engine data store ID for enterprise search

Categories
Documents & KnowledgeSearch & Web Crawling
Registryactive
Packageprism-mcp-server
TransportSTDIO
AuthRequired
UpdatedMar 20, 2026
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