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Compaction replaces the active model context from an older part of a session with a generated checkpoint. The checkpoint contains a structured summary and a serialized tail of recent context, so the agent can continue with more room in the model’s context window. Compaction is lossy, but it does not delete the earlier durable session messages. After a successful compaction, V2 builds model requests from the latest completed checkpoint and the messages that follow it.

Automatic compaction

Automatic compaction is enabled by default. Before a model call, V2 estimates the size of the final system prompt, messages, and advertised tools. It starts compaction when:
estimated tokens > context limit - max(requested output tokens, buffer)
The estimate is approximate: V2 JSON-serializes the request and assumes four characters per token. When compaction succeeds, V2 rebuilds the request from the new checkpoint and retries the step without promoting the input again. V2 also recognizes provider errors classified as context overflow. If an overflow occurs before the provider produces assistant output or other retry evidence, V2 can compact and retry that step once. This recovery is attempted even when auto is false; auto controls only the preflight size check. A second overflow after recovery is returned as an error.

Manual compaction

In the TUI, run:
/compact
/summarize is an alias. The default keybind is <leader>c, configured as session_compact. A manual request is durably admitted and wakes the session runner. It can compact short histories that would not trigger automatic compaction. If the session is busy, compaction runs at the next safe drain boundary before later steered or queued prompts are promoted. Repeated requests while one is pending coalesce into that pending request. Whether compaction completes or fails, the barrier is then settled so later prompts can proceed. The CLI has no separate compact subcommand. Use the TUI command or the server API. For example:
opencode2 api v2.session.compact \
  --param sessionID=ses_example \
  --data '{}'
The equivalent raw request is:
opencode2 api post /api/session/ses_example/compact --data '{}'
POST /api/session/:sessionID/compact returns the admitted compaction input; it does not wait for summary generation. Clients can call client.session.compact({ sessionID }) and then wait for the session or follow the session.compaction.* events. Supplying an optional message id makes an exact retry idempotent, but reusing an ID owned by another record returns a conflict.

Configuration

Add compaction to any OpenCode configuration file:
opencode.jsonc
{
  "$schema": "https://opencode.ai/config.json",
  "compaction": {
    "auto": true,
    "prune": false,
    "keep": {
      "tokens": 8000
    },
    "buffer": 20000
  }
}
FieldDefaultV2 behavior
autotrueRuns the preflight context-size check. It does not disable manual compaction or one-shot provider-overflow recovery.
pruneNoneAccepted by the V2 schema, but currently has no runtime effect. V2 does not prune old tool outputs in place.
keep.tokens8000Approximate number of tokens from the newest serialized conversation context to retain beside the summary.
buffer20000Token reserve used by the automatic threshold. The requested model output allowance wins when it is larger.
keep.tokens and buffer accept non-negative integers. Larger keep.tokens preserves more recent detail but leaves less room for future work. Larger buffer triggers preflight compaction earlier.

Checkpoint contents

V2 uses the session’s selected or default model to generate the summary, with tools disabled and at most 4096 output tokens. The summary records the objective, important details, completed and active work, blockers, next moves, and relevant files. The newest serialized context up to keep.tokens is retained separately. This is not a byte-for-byte transcript: tool output is limited to 2000 characters, and file or media attachments become textual descriptors rather than embedded data. On later compactions, V2 updates the previous summary and carries forward its retained recent context before selecting a new tail. The completed checkpoint is presented to the model as historical conversation context, explicitly not as new instructions. Running and failed compactions are not included in model context.

Instructions and checkpoints

Conversation compaction and the durable instruction checkpoint are separate. Before each model step, V2 compares live instruction sources with what that session’s model was last told. Ordinary changes are durable chronological system updates and do not rewrite the established instruction baseline. After a completed compaction, the next model step creates a fresh instruction baseline from current sources. If a source is temporarily unavailable, V2 restates the last-applied value instead of treating it as removed. Session movement and a committed revert reset the instruction checkpoint as well. See Instructions for source ordering and update behavior.

Current limitations

  • prune is reserved configuration; V1-style in-place tool-output pruning is not implemented in V2.
  • Compaction requires a resolvable model with a positive catalog context limit. There is no separate compaction-model setting or fallback model.
  • Summary generation can fail if the summary prompt itself cannot fit beside its output allowance, the model returns no summary, or the provider fails.
  • Automatic and overflow compaction need older conversation context that can be replaced. A provider overflow can still surface when there is no compressible head or fixed instructions and tool schemas dominate the request.
  • Overflow recovery retries only once per step. Token estimation is heuristic, so it cannot prevent every provider-specific overflow.
  • Earlier durable messages remain stored even though they are no longer in the active model context.
V1 used additional tail-turn and pruning behavior. Those V1 details are only migration context; the settings and behavior on this page describe V2.