> continue-claude-work
Recover actionable context from local `.claude` session artifacts and continue interrupted work without running `claude --resume`. This skill should be used when the user provides a Claude session ID, asks to continue prior work from local history, or wants to inspect `.claude` files before resuming implementation.
curl "https://skillshub.wtf/daymade/claude-code-skills/continue-claude-work?format=md"Continue Claude Work
Overview
Recover actionable context from a prior Claude Code session and continue execution in the current conversation. Use local session files as the source of truth, then continue with concrete edits and checks — not just summarizing.
Why this exists instead of claude --resume: claude --resume replays the full session transcript into the context window. For long sessions this wastes tokens on resolved issues and stale state. This skill selectively reconstructs only actionable context — the latest compact summary, pending work, known errors, and current workspace state — giving a fresh start with prior knowledge.
File Structure Reference
For directory layout, JSONL schemas, and compaction block format, see references/file_structure.md.
Workflow
Step 1: Extract Context (single script call)
Run the bundled extraction script. It handles session discovery, compact-boundary parsing, noise filtering, and workspace state in one call:
# Latest session for current project
python3 scripts/extract_resume_context.py
# Specific session by ID
python3 scripts/extract_resume_context.py --session <SESSION_ID>
# Search by topic
python3 scripts/extract_resume_context.py --query "auth feature"
# List recent sessions
python3 scripts/extract_resume_context.py --list
The script outputs a structured Markdown briefing containing:
- Session metadata from
sessions-index.json - Compact summary — Claude's own distilled summary from the last compaction boundary (highest-signal context)
- Last user requests — the most recent explicit asks
- Last assistant responses — what was claimed done
- Errors encountered — tool failures and error outputs
- Unresolved tool calls — indicates interrupted session
- Subagent workflow state — which subagents completed, which were interrupted, their last outputs
- Session end reason — clean exit, interrupted (ctrl-c), error cascade, or abandoned
- Files touched — files created/edited/read during the session
- MEMORY.md — persistent cross-session notes
- Git state — current status, branch, recent log
The script automatically skips the currently active session (modified < 60s ago) to avoid self-extraction.
Step 2: Branch by Session End Reason
The briefing includes a Session end reason. Use it to choose the right continuation strategy:
| End Reason | Strategy |
|---|---|
| Clean exit | Session completed normally. Read the last user request that was addressed. Continue from pending work if any. |
| Interrupted | Tool calls were dispatched but never got results (likely ctrl-c or timeout). Retry the interrupted tool calls or assess whether they are still needed. |
| Error cascade | Multiple API errors caused the session to fail. Do not retry blindly — diagnose the root cause first. |
| Abandoned | User sent a message but got no response. Treat the last user message as the current request. |
If the briefing has a Subagent Workflow section with interrupted subagents, check what each was doing and whether to retry or skip.
Step 3: Reconcile and Continue
Before making changes:
- Confirm the current directory matches the session's project.
- If the git branch has changed from the session's branch, note this and decide whether to switch.
- Inspect files related to pending work — verify old claims still hold.
- Do not assume old claims are valid without checking.
Then:
- Implement the next concrete step aligned with the latest user request.
- Run deterministic verification (tests, type-checks, build).
- If blocked, state the exact blocker and propose one next action.
Step 4: Report
Respond concisely:
- Context recovered: which session, key findings from the briefing
- Work executed: files changed, commands run, test results
- Remaining: pending tasks, if any
How the Script Works
Compact-Boundary-Aware Extraction
The script finds the last compact boundary in the session JSONL and extracts its summary. This is the single highest-signal piece of context in any long session -- Claude's own distilled understanding of the entire conversation up to that point. For details on compaction format and JSONL schemas, see references/file_structure.md.
Size-Adaptive Strategy
| Session size | Strategy |
|---|---|
| Has compactions | Read last compact summary + all post-compact messages |
| < 500 KB, no compactions | Read last 60% of messages |
| 500 KB - 5 MB | Read last 30% of messages |
| > 5 MB | Read last 15% of messages |
Subagent Context Extraction
When a session has subagent directories (<session-id>/subagents/), the script parses each subagent's JSONL to extract agent type, completion status, and last text output. This enables recovery of multi-agent workflows -- e.g., if a 32-subagent evaluation pipeline was interrupted, the briefing shows which agents completed and which need retry.
Session End Reason Detection
The script classifies how the session ended:
- completed -- assistant had the last word (clean exit)
- interrupted -- unresolved tool calls (ctrl-c or timeout)
- error_cascade -- 3+ API errors
- abandoned -- user sent a message with no response
Noise Filtering
These message types are skipped (37-53% of lines in real sessions):
progress,queue-operation,file-history-snapshot-- operational noiseapi_error,turn_duration,stop_hook_summary-- system subtypes<task-notification>,<system-reminder>-- filtered from user text extraction
Guardrails
- Do not run
claude --resumeorclaude --continue— this skill provides context recovery within the current session. - Do not treat compact summaries as complete truth — they are lossy. Always verify claims against current workspace.
- Do not overwrite unrelated working-tree changes.
- Do not load the full session file into context — always use the script.
Limitations
- Cannot recover sessions whose
.jsonlfiles have been deleted from~/.claude/projects/. - Cannot access sessions from other machines (files are local only).
- Edit tool operations show deltas, not full file content — use
claude-code-history-files-finderfor full file recovery. - Compact summaries are lossy — early conversation details may be missing.
sessions-index.jsoncan be stale (entries pointing to deleted files). The script falls back to filesystem-based discovery.
Example Trigger Phrases
- "continue work from session
abc123-..." - "don't resume, just read the .claude files and continue"
- "check what I was working on in the last session and keep going"
- "search my sessions for the PR review work"
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