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Universal context drift monitor for AI agent sessions

Project description

radogast

Radogast — Context Drift Monitor

Universal static analyzer for AI agent sessions.

Why Radogast

In Slavic mythology, Radogast is the solar deity of the Polabian Slavs — god of hospitality and protection, guardian of travelers and merchants on their journeys. He is depicted in helmet and chainmail, a prophetic bird upon his head, the head of an aurochs on his chest. The prophetic bird watches without sleep; the sun he carries lights the path forward.

We named this tool after him because that is exactly what it does: it illuminates the path of an AI agent through a task. A conversation has a direction — a goal stated at the start. Radogast measures how far the current context has drifted from that origin, whether the key ideas are present and defined, and whether the work is still moving toward the answer. The sun does not bend. If the path has curved away, Radogast will say so.

Universal static analyzer for AI agent sessions. Monitors context drift from a target, measures term coverage, detects process stage via marker words, and warns when a conversation has left the task space.

Works with: 1bcoder, Claude, OpenCode, Codex, aider, Continue.dev, Gemini, pi, nanocoder — any tool that can export message history as JSON.

Install

pip install radogast
# with embedding support (recommended):
pip install "radogast[embed]"

For development:

pip install -e .
pip install -e ".[embed]"

Dependencies

radogast works standalone — the only required dependencies are click, numpy, pyyaml, and rouge-score. Embedding-based drift detection requires the [embed] extra (sentence-transformers, ~500 MB); without it, radogast falls back to marker-word analysis only. If drift detection is unavailable, the output shows the install command directly.

yasna is strongly recommended. Without it, radogast can still analyze sessions — but you have to know the exact path to each session file yourself. Every agent stores sessions in a different place and format. yasna solves this: it indexes sessions from all agents into one searchable store and radogast reads from there automatically.

pip install yasna

Without yasna, radogast is a scalpel. With yasna, it becomes part of a workflow.

Quick start

With yasna (recommended)

# 1. Index sessions from all agents (Claude, 1bcoder, aider, Gemini, opencode, ...)
yasna index

# 2. Define the task you are working on
radogast init

# 3. Watch — yasna index runs automatically before each cycle
radogast watch

radogast will pick up sessions from Claude Code, 1bcoder, aider, Gemini CLI, opencode, Continue.dev, and any other agent yasna supports — no paths needed.

Without yasna

# 1. Define the task
radogast init

# 2. Point radogast at the session file directly
radogast analyze --input ~/.claude/projects/my-project/session.jsonl

# 3. Or watch a specific agent's directory
radogast watch --dir ~/.continue/history/
radogast watch --dir ~/.aider/
radogast watch --dir ~/.1bcoder/autosave/

Target YAML format

goal: "develop REST API for visitor tracking at a café"

key_terms: [REST, API, tracking, session, timestamp, visitor]

milestones:
  - name: domain_understood
    markers: [visitor, establishment, entry, exit, timestamp]
    evidence: "definition of visitor as an entry+exit event pair"
  - name: api_designed
    markers: [endpoint, POST, GET, response]
    evidence: "at least one endpoint with schema"

verification: [visitor, REST, endpoint]

out_of_scope: [authorization, billing, UI]

Config (.radogast.yaml)

windows: [1, 3, 5]           # message window sizes
drift_threshold_deg: 40       # alert above this angle
bias_threshold: 3.0           # term imbalance alert
embedding_model: "BAAI/bge-small-en-v1.5"   # fast, 22MB
hybrid: true                  # marker words + embeddings both
trend_segments: 7             # sparkline bars per term

MCP tools

Tool Description
analyze_context(messages_json, target_yaml) Full report as JSON
get_drift_score(messages_json, goal, key_terms) Quick angle check
suggest_refocus(messages_json, target_yaml) Actionable suggestions

Output example

[radogast] target: develop REST API for visitor tracking

DRIFT:     23.4°  on_track
STAGE:     api_designed  votes={'api_designed': 3}

TERM COVERAGE  (4/6 defined)  ROUGE-1=0.71
  ✓ REST                  ████████████  defined
  ✓ API                   ██████████░░  defined
  ~ visitor               ████░░░░░░░░  mentioned
  ✗ average time          ░░░░░░░░░░░░  absent
  ✓ timestamp             ██████░░░░░░  defined
  ✓ session               ████████░░░░  defined

BALANCE:  bias=2.1x toward 'REST'

GLOSSARY (3/6 terms):
  REST: architectural style for web services using HTTP...
  session: pair of entry and exit events for one visitor...
  timestamp: Unix epoch in milliseconds, recorded at device level

SUGGESTED:
  → missing from context: average time — add definitions or examples
  → mentioned but not defined: visitor — add explicit definitions

Part of the SIMARGL toolkit

radogast is one of seven tools that together form an intellectual development support system:

Tool Role
simargl Task-to-code retrieval — given a task description, finds which files and modules are likely affected, using semantic similarity over git history
svitovyd Project map — scans any codebase and produces a structural map of definitions and cross-file dependencies; exposes it as an MCP server
1bcoder AI coding assistant for small local models — surgical context management, agents, parallel inference, proc scripts
yasna Session memory — indexes conversations from all AI agents so you can find what was discussed, when, and where
radogast Context drift monitor — measures how far an AI agent's conversation has drifted from the original task
vyrii Local AI web UI — chat, translate, web research, RAG, and file management via Gradio; powered by Ollama or any OpenAI-compatible backend
syryn Bluetooth identity beacon — returns hostname, mDNS, and active network interfaces for headless devices
  • simargl answers: what code is related to this task?
  • svitovyd answers: how is the code structured and what depends on what?
  • 1bcoder answers: how do I work with local models efficiently?
  • yasna answers: where did I already discuss this?
  • radogast answers: is the AI agent still on track toward the goal?
  • vyrii answers: how do I access all of this through a browser?
  • syryn answers: what is the address of this headless device?

Together they cover the full development loop: understand the codebase, find relevant history, work with AI locally, remember what was decided, and verify the context stays on target.


About

(c) 2026 Stanislav Zholobetskyi
Institute for Information Recording, National Academy of Sciences of Ukraine, Kyiv
PhD research: «Intelligent Technology for Software Development and Maintenance Support»

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