Hunter Bown 033fef6cb2 fix(tui): force clean redraw on resize / bound sidebar labels (closes #65)
After v0.6.1's light-theme removal exposed it more visibly, rapid resizes
left stale glyphs in the right column (sidebar fragments, mid-character
title truncation, duplicated transcript timestamps). Three small fixes:

- Coalesce queued `Event::Resize` events, run a single `terminal.clear()`,
  and immediately draw the new frame instead of waiting for the next event
  loop iteration. Previously the cleared screen could sit blank between
  the resize handler's `continue` and the next draw, so any other event
  arriving in that window would be processed before the repaint.
- `truncate_line_to_width` for budgets `<= 3` was counting codepoints
  instead of display widths, overrunning the cell budget for any
  double-width grapheme. Fix by accumulating display widths consistently.
- Add a `tracing::debug!` log to the resize handler so users hitting this
  in the wild can confirm whether crossterm is delivering the event.

Adds two regression tests in `tui/widgets` (resize cycle + cache
invalidation on width change) and one in `tui/ui` (truncate semantics).

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-04-26 14:42:42 -05:00
2026-04-25 07:59:01 -05:00
2026-04-24 16:29:01 -05:00
2026-01-20 08:57:35 -06:00

DeepSeek TUI

A terminal-native coding agent for DeepSeek V4 models — with 1M-token context, thinking-mode reasoning, and full tool-use.

npm i -g deepseek-tui

CI npm

DeepSeek TUI screenshot


What is it?

DeepSeek TUI is a coding agent that runs entirely in your terminal. It gives DeepSeek's frontier models direct access to your workspace — reading and editing files, running shell commands, searching the web, managing git, and orchestrating sub-agents — all through a fast, keyboard-driven TUI.

Built for DeepSeek V4 (deepseek-v4-pro / deepseek-v4-flash) with 1M-token context windows and native thinking-mode (chain-of-thought) streaming. See the model's reasoning unfold in real time as it works through your tasks.

Key Features

  • Native RLM (rlm_query tool) — fans out 116 cheap deepseek-v4-flash children in parallel against the existing DeepSeek client for batched analysis, decomposition, or parallel reasoning
  • Thinking-mode streaming — shows DeepSeek's chain-of-thought as it reasons about your code
  • Full tool suite — file ops, shell execution, git, web search/browse, apply-patch, sub-agents, MCP servers
  • 1M-token context — automatic intelligent compaction when context fills up
  • Three interaction modes — Plan (read-only explore), Agent (interactive with approval), YOLO (auto-approved). Decomposition-first system prompts teach the model to todo_write, update_plan, and spawn sub-agents before acting
  • Reasoning-effort tiers — cycle through off → high → max with Shift+Tab
  • Session save/resume — checkpoint and resume long sessions
  • HTTP/SSE runtime APIdeepseek serve --http for headless agent workflows
  • MCP protocol — connect to Model Context Protocol servers for extended tooling
  • Live cost tracking — per-turn and session-level token usage and cost estimates
  • Dark theme — DeepSeek-blue palette

Quickstart

npm install -g deepseek-tui
deepseek

On first launch you'll be prompted for your DeepSeek API key. You can also set it ahead of time:

# via CLI
deepseek login --api-key "YOUR_DEEPSEEK_API_KEY"

# via env var
export DEEPSEEK_API_KEY="YOUR_DEEPSEEK_API_KEY"
deepseek

Using NVIDIA NIM

deepseek auth set --provider nvidia-nim --api-key "YOUR_NVIDIA_API_KEY"
deepseek --provider nvidia-nim

# or per-process:
DEEPSEEK_PROVIDER=nvidia-nim NVIDIA_API_KEY="..." deepseek
Install from source
git clone https://github.com/Hmbown/DeepSeek-TUI.git
cd DeepSeek-TUI
cargo install --path crates/tui --bin deepseek-tui --locked   # requires Rust 1.85+
cargo install --path crates/cli --bin deepseek --locked

What's new in v0.6.0

🌊 rlm_query — recursive language models as a first-class tool

The model now has direct access to a native recursive-LLM primitive. Inspired by Alex Zhang's RLM work and Sakana AI's published research on novelty search, but trimmed to what an agent loop actually needs: one tool, structured args, no DSL.

// Single child:
rlm_query({ "prompt": "Summarise this 4k-line log: ..." })

// 8 parallel children, indexed result:
rlm_query({
  "prompts": [
    "Review src/foo.rs for race conditions: ...",
    "Review src/foo.rs for input validation: ...",
    "Review src/foo.rs for error-handling gaps: ...",
    "..."
  ]
})

// Promote one call to Pro:
rlm_query({ "prompt": "Hard reasoning here", "model": "deepseek-v4-pro" })

Children run concurrently against the existing DeepSeek client via tokio — no external binary, no Python sandbox, no fenced-block DSL. Returns a single string for one prompt or [i] ... indexed blocks for many. Available in Plan / Agent / YOLO. The cost is folded into the session's running total automatically.

Other changes

  • Scroll position survives content rewrites — anchor fallback now clamps to the nearest surviving cell instead of teleporting to the bottom (#56)
  • Looser command-safety chainscargo build && cargo test is no longer blocked outright; chains of known-safe commands escalate to RequiresApproval instead of Dangerous (#57)
  • Multi-turn tool calls no longer 400 on thinking-mode modelsreasoning_content is replayed across user-message boundaries with a safe placeholder when the round produced none

Full history: CHANGELOG.md.


Models & Pricing

DeepSeek TUI targets DeepSeek V4 models with 1M-token context windows by default.

Model Context Input (cache hit) Input (cache miss) Output
deepseek-v4-pro 1M $0.003625 / 1M* $0.435 / 1M* $0.87 / 1M*
deepseek-v4-flash 1M $0.0028 / 1M $0.14 / 1M $0.28 / 1M

Legacy aliases deepseek-chat and deepseek-reasoner silently map to deepseek-v4-flash.

NVIDIA NIM hosted variants (deepseek-ai/deepseek-v4-pro, deepseek-ai/deepseek-v4-flash) use your NVIDIA account terms — no DeepSeek platform billing.

*DeepSeek lists the Pro rates above as a limited-time 75% discount valid until 2026-05-05 15:59 UTC; the TUI cost estimator falls back to base Pro rates after that timestamp.


Usage

deepseek                                      # interactive TUI
deepseek "explain this function"              # one-shot prompt
deepseek --model deepseek-v4-flash "summarize" # model override
deepseek --yolo                               # YOLO mode (auto-approve tools)
deepseek login --api-key "..."                # save API key
deepseek doctor                               # check setup & connectivity
deepseek models                               # list live API models
deepseek sessions                             # list saved sessions
deepseek resume --last                        # resume latest session
deepseek serve --http                         # HTTP/SSE API server

Keyboard shortcuts

Key Action
Tab Cycle mode: Plan → Agent → YOLO
Shift+Tab Cycle reasoning-effort: off → high → max
F1 Help
Esc Back / dismiss
Ctrl+K Command palette
@path Attach file/directory context in composer
/attach <path> Attach image/video media references

Modes

Mode Behavior
Plan 🔍 Read-only investigation — model explores and proposes a decomposition plan (update_plan + todo_write) before making changes
Agent 🤖 Default interactive mode — multi-step tool use with approval gates; model outlines work via todo_write before requesting writes
YOLO Auto-approve all tools in a trusted workspace; model still creates todo_write/update_plan to keep work visible and trackable

Configuration

~/.deepseek/config.toml — see config.example.toml for every option.

Key environment overrides:

Variable Purpose
DEEPSEEK_API_KEY API key
DEEPSEEK_BASE_URL API base URL
DEEPSEEK_MODEL Default model
DEEPSEEK_PROVIDER Provider: deepseek (default) or nvidia-nim
DEEPSEEK_PROFILE Config profile name
NVIDIA_API_KEY NVIDIA NIM API key

Quick diagnostics:

deepseek-tui setup --status    # read-only status check (API key, MCP, sandbox, .env)
deepseek-tui doctor --json     # machine-readable doctor output for CI
deepseek-tui setup --tools --plugins  # scaffold tools/ and plugins/ directories

DeepSeek context caching is automatic — when the API returns cache hit/miss token fields, the TUI includes them in usage and cost tracking.

Full reference: docs/CONFIGURATION.md


Documentation

Doc Topic
ARCHITECTURE.md Codebase internals
CONFIGURATION.md Full config reference
MODES.md Plan / Agent / YOLO modes
MCP.md Model Context Protocol integration
RUNTIME_API.md HTTP/SSE API server
RELEASE_RUNBOOK.md Release process
OPERATIONS_RUNBOOK.md Ops & recovery

Contributing

See CONTRIBUTING.md. Pull requests welcome!

Not affiliated with DeepSeek Inc.

License

MIT

S
Description
No description provided
Readme 24 MiB
Languages
Rust 94%
TypeScript 2.6%
JavaScript 1.6%
Shell 0.8%
Python 0.6%
Other 0.1%