Files
unslothai--unsloth/unsloth_cli/commands/chat.py
T
wehub-resource-sync e93507a09c
Lockfile supply-chain audit / lockfile supply-chain audit (push) Has been cancelled
Windows Studio GGUF CI / GPU prebuilt resolves without Visual Studio (push) Has been cancelled
Windows Studio GGUF CI / setup.ps1 unit tests (VS 2026 / CMake guard) (push) Has been cancelled
Windows Studio GGUF CI / real-VS detection (VS 2022) (push) Has been cancelled
Windows Studio GGUF CI / real-VS detection (VS 2026) (push) Has been cancelled
Windows Studio GGUF CI / VC++ runtime detect + install round-trip (windows-2025-vs2026) (push) Has been cancelled
Windows Studio GGUF CI / VC++ runtime detect + install round-trip (windows-latest) (push) Has been cancelled
Windows Studio Update CI / Studio Updating Tests (push) Has been cancelled
Wheel CI / Wheel build + content sanity + import smoke (push) Has been cancelled
Lint CI / Source lint (Python + shell + YAML + JSON + safety nets) (push) Has been cancelled
MLX CI on Mac M1 / dispatch (push) Has been cancelled
Security audit / advisory audit (pip + npm + cargo) (push) Has been cancelled
Security audit / pip scan-packages :: extras (push) Has been cancelled
Security audit / pip scan-packages :: studio (push) Has been cancelled
Security audit / pip scan-packages :: hf-stack (push) Has been cancelled
Security audit / npm scan-packages (Studio frontend tarballs) (push) Has been cancelled
Security audit / workflow-trigger lint (pull_request_target / cache-poisoning) (push) Has been cancelled
Security audit / pytest tests/security (push) Has been cancelled
Security audit / npm provenance + new install-script diff (push) Has been cancelled
Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Backend CI / (Python 3.10) (push) Has been cancelled
Backend CI / (Python 3.11) (push) Has been cancelled
Backend CI / (Python 3.12) (push) Has been cancelled
Backend CI / (Python 3.13) (push) Has been cancelled
Backend CI / Repo tests (CPU) (push) Has been cancelled
Frontend CI / Frontend build + bundle sanity (push) Has been cancelled
Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Studio GGUF CI / JSON, images (push) Has been cancelled
Mac Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Mac Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Mac Studio GGUF CI / JSON, images (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-14) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-15) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-26) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-15-intel) (push) Has been cancelled
Mac Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-26-intel) (push) Has been cancelled
Mac Studio UI CI / Chat UI Tests (push) Has been cancelled
Studio Tauri CI / Tauri Linux debug build (no codesign) (push) Has been cancelled
Mac Studio Update CI / Studio Updating Tests (push) Has been cancelled
Studio UI CI / Chat UI Tests (push) Has been cancelled
Windows Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Windows Studio UI CI / Chat UI Tests (push) Has been cancelled
Studio Update CI / Studio Updating Tests (push) Has been cancelled
Core / Core (HF=default + TRL=default) (push) Has been cancelled
Core / Core (HF=4.57.6 + TRL<1) (push) Has been cancelled
Core / Core (HF=latest + TRL=latest) (push) Has been cancelled
Core / llama.cpp build + smoke (push) Has been cancelled
Windows Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Windows Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Windows Studio GGUF CI / JSON, images (push) Has been cancelled
Windows Studio GGUF CI / Studio install + inference without Visual Studio (push) Has been cancelled
Studio export capability / capability (macos-latest) (push) Has been cancelled
Studio export capability / capability (ubuntu-latest) (push) Has been cancelled
Studio export capability / capability (windows-latest) (push) Has been cancelled
Cross-platform parity / parity (macos-latest) (push) Has been cancelled
Cross-platform parity / parity (windows-latest) (push) Has been cancelled
Scorecard supply-chain security / Scorecard analysis (push) Has been cancelled
Studio load-orchestrator CI / test (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:59:56 +08:00

457 lines
17 KiB
Python

# SPDX-License-Identifier: AGPL-3.0-only
# Copyright 2026-present the Unsloth AI Inc. team. All rights reserved. See /studio/LICENSE.AGPL-3.0
import sys
from typing import List, Optional
import typer
from rich.console import Console
from unsloth_cli._inference import (
collect_stream,
configure_quiet_logging,
connect_studio_server,
ensure_studio_backend_path,
load_chat_backend,
mlx_distributed_info,
mlx_distributed_uses_mpi,
quiet_if_nonzero_mlx_rank,
raise_on_streamed_error,
render_columns,
resolve_model_config,
stream_markdown,
visible_text,
)
_HELP = (
"Commands: /exit (quit), /reset (clear history), "
"/think (toggle reasoning), /compare (base vs tuned), /help"
)
def _you_prompt(colors: bool) -> str:
# The prompt must go through input(), not a separate print — readline
# redraws erase anything they didn't draw, eating the label. GNU readline
# wants colors wrapped in \001/\002; libedit (macOS) prints those
# literally, so it gets raw ANSI.
try:
import readline
except ImportError:
return "\n\x1b[1;36mYou: \x1b[0m" if colors else "\nYou: "
libedit = (
"libedit" in (readline.__doc__ or "") or getattr(readline, "backend", "") == "editline"
)
if not colors:
return "\nYou: "
if libedit:
return "\n\x1b[1;36mYou: \x1b[0m"
return "\n\001\x1b[1;36m\002You: \001\x1b[0m\002"
def _compare_blocked_reason(model_config) -> Optional[str]:
if model_config.is_gguf:
return (
"GGUF models can't toggle adapters — load a LoRA fine-tune "
"(transformers backend) to compare base vs tuned."
)
if not model_config.is_lora:
return (
"this isn't a LoRA adapter — compare turns the adapter off for the "
"'base' column, so there's nothing to compare against."
)
return None
def _get_base_load_in_4bit(model_config) -> bool:
"""Determine load_in_4bit for base model based on tuned adapter precision."""
if not model_config.is_lora or not model_config.path:
# Fallback to default if not a LoRA or no path
return True
try:
import json
from pathlib import Path
adapter_cfg_path = Path(model_config.path) / "adapter_config.json"
if not adapter_cfg_path.exists():
return True
with open(adapter_cfg_path, encoding = "utf-8") as f:
adapter_cfg = json.load(f)
training_method = adapter_cfg.get("unsloth_training_method")
if training_method == "lora":
return False
elif training_method == "qlora":
return True
elif not training_method:
# Fallback: check base model name for -bnb-4bit suffix
if model_config.base_model and "-bnb-4bit" not in model_config.base_model.lower():
return False
return True
return True
except Exception:
return True
def _compare_needs_second_model() -> bool:
# MLX can't toggle the adapter off, so compare loads the base separately.
# detect_hardware() would print into the chat (and import torch), so
# probe its MLX condition quietly: Apple Silicon with mlx installed.
try:
from studio.backend.utils.hardware import hardware as hw
if hw.DEVICE is not None:
return hw.DEVICE == hw.DeviceType.MLX
if not hw.is_apple_silicon():
return False
import mlx.core # noqa: F401
return True
except Exception:
return False
def _drain_available_stdin() -> None:
"""Drain already-buffered launcher stdin on nonzero distributed ranks."""
try:
import os
from select import select
fd = sys.stdin.fileno()
while select([fd], [], [], 0)[0]:
if not os.read(fd, 8192):
break
except Exception:
return
def _pick_trained_model(console) -> str:
ensure_studio_backend_path()
from utils.models import scan_trained_models
trained = scan_trained_models()
if not trained:
typer.echo(
"No trained models found in your outputs folder. "
"Pass a model id or path: `unsloth chat <model>`.",
err = True,
)
raise typer.Exit(code = 1)
console.print("Your trained models (newest first):", style = "bold")
for i, (display_name, _, model_type) in enumerate(trained, 1):
console.print(f" {i}. {display_name} ({model_type})", markup = False)
while True:
try:
raw = input(f"Chat with [1-{len(trained)}, Enter = 1]: ").strip()
except (EOFError, KeyboardInterrupt):
raise typer.Exit(code = 1)
if not raw:
return trained[0][1]
if raw.isdigit() and 1 <= int(raw) <= len(trained):
return trained[int(raw) - 1][1]
console.print(f"Pick a number between 1 and {len(trained)}.", style = "yellow")
def chat(
model: Optional[str] = typer.Argument(
None, help = "HF model id or local path. Omit to pick one of your trained models."
),
hf_token: Optional[str] = typer.Option(
None, "--hf-token", envvar = "HF_TOKEN", help = "Hugging Face token if needed."
),
temperature: float = typer.Option(0.7, "--temperature"),
top_p: float = typer.Option(0.9, "--top-p"),
top_k: int = typer.Option(40, "--top-k"),
max_new_tokens: int = typer.Option(512, "--max-new-tokens"),
repetition_penalty: float = typer.Option(1.1, "--repetition-penalty"),
system_prompt: str = typer.Option(
"", "--system-prompt", help = "Optional system prompt for the conversation."
),
max_seq_length: int = typer.Option(4096, "--max-seq-length"),
load_in_4bit: bool = typer.Option(True, "--load-in-4bit/--no-load-in-4bit"),
tensor_parallel: bool = typer.Option(
False,
"--tensor-parallel/--no-tensor-parallel",
help = (
"Split a GGUF across GPUs by tensor (--split-mode tensor) instead "
"of by layer. Under non-MPI mlx.launch, select MLX tensor "
"parallel mode instead of pipeline mode."
),
),
llama_extra_args: Optional[List[str]] = typer.Option(
None,
"--llama-extra-arg",
help = (
"Extra llama-server arg for GGUF models. Repeat for multiple "
"tokens, e.g. --llama-extra-arg=--top-k --llama-extra-arg 20."
),
),
think: bool = typer.Option(
False,
"--think/--no-think",
help = "Start with the model's <think> reasoning shown. Toggle live with /think.",
),
compare: bool = typer.Option(
False,
"--compare/--no-compare",
help = "Answer each prompt twice — base vs fine-tuned — side by side. "
"Needs a LoRA adapter. Toggle live with /compare.",
),
verbose: bool = typer.Option(
False, "--verbose", "-v", help = "Show backend and llama-server logs."
),
no_server: bool = typer.Option(
False,
"--no-server",
help = "Load the model in-process even if a Studio server is running.",
),
):
"""Start an interactive chat with a model (loads once, stays warm)."""
if not verbose:
configure_quiet_logging()
console = Console()
err = Console(stderr = True)
is_mlx_distributed, rank, _world_size = mlx_distributed_info()
should_print = rank == 0
if is_mlx_distributed and mlx_distributed_uses_mpi():
if should_print:
err.print(
"Distributed `unsloth chat` with MPI needs rank-0 prompt broadcast, "
"which is not enabled yet. Use a non-MPI MLX launcher backend "
"such as ring/JACCL for now.",
style = "red",
markup = False,
)
raise typer.Exit(code = 1)
if model is None:
if is_mlx_distributed:
if should_print:
err.print(
"Distributed `unsloth chat` requires an explicit model id or path.",
style = "red",
markup = False,
)
raise typer.Exit(code = 1)
model = _pick_trained_model(console)
# Resolve first so --compare can be rejected before the slow load.
with quiet_if_nonzero_mlx_rank():
model_config = resolve_model_config(model, hf_token = hf_token)
compare_blocked = _compare_blocked_reason(model_config)
if is_mlx_distributed:
compare_blocked = (
"distributed MLX chat does not support compare mode yet because it "
"would need a second distributed worker group on the same ranks"
)
if compare and compare_blocked:
if should_print:
err.print(f"--compare unavailable: {compare_blocked}", style = "red", markup = False)
raise typer.Exit(code = 1)
load_opts = dict(
hf_token = hf_token,
max_seq_length = max_seq_length,
load_in_4bit = load_in_4bit,
tensor_parallel = tensor_parallel,
llama_extra_args = llama_extra_args,
)
# Prefer a running Studio server: instant starts, model shared with the UI.
chat_backend = (
None if (no_server or is_mlx_distributed) else connect_studio_server(model, **load_opts)
)
server_mode = chat_backend is not None
if server_mode and should_print:
console.print(
"(Studio server connected — model stays warm after /exit)",
style = "bright_black",
)
else:
chat_backend = load_chat_backend(model, model_config = model_config, **load_opts)
name = model_config.display_name or model
show_thinking = think
compare_mode = compare
messages = []
# Compare's base column: server mode keeps the tuned model remote and
# loads the base locally; local MLX (no adapter toggle) does the same;
# local CUDA just toggles the adapter on the one loaded model.
dual_compare = compare_blocked is None and (server_mode or _compare_needs_second_model())
base_backend = None
def load_base_for_compare():
nonlocal base_backend
if base_backend is not None:
return True
base_id = model_config.base_model
if not base_id:
if should_print:
console.print(
"(compare unavailable: this adapter doesn't record its base model)",
style = "yellow",
)
return False
if should_print:
console.print(
f"(loading base model {base_id} for compare — keeps two models in memory)",
style = "bright_black",
markup = False,
)
try:
# Use the same precision as the tuned model for fair comparison
base_load_opts = dict(load_opts) # Copy original options
base_load_opts["load_in_4bit"] = _get_base_load_in_4bit(model_config)
base_backend = load_chat_backend(base_id, fresh_backend = True, **base_load_opts)
except Exception as exc:
if should_print:
err.print(f"(base model load failed: {exc})", style = "red", markup = False)
return False
return True
if compare and dual_compare and not load_base_for_compare():
raise typer.Exit(code = 1)
def generate(backend = None, use_adapter = None):
# Reads messages and show_thinking live, so /reset and /think apply.
stream = (backend or chat_backend).stream(
messages,
system_prompt = system_prompt,
temperature = temperature,
top_p = top_p,
top_k = top_k,
max_new_tokens = max_new_tokens,
repetition_penalty = repetition_penalty,
enable_thinking = show_thinking,
use_adapter = use_adapter,
)
return raise_on_streamed_error(stream) if is_mlx_distributed else stream
if should_print:
console.print()
console.print(f"Chatting with {name}", style = "bold green", markup = False)
console.print(_HELP, style = "bright_black")
# legacy_windows: pre-VT consoles print raw ANSI as ←[1;36m garbage.
you_prompt = (
_you_prompt(console.is_terminal and not console.legacy_windows) if should_print else ""
)
assistant_label = "[bold magenta]Assistant:[/bold magenta]"
try:
while True:
if should_print:
try:
user = input(you_prompt).strip()
except (EOFError, KeyboardInterrupt):
if should_print:
console.print()
user = "/exit"
turn = {"type": "turn", "text": user}
else:
turn = None
if is_mlx_distributed:
try:
turn = chat_backend.share_distributed_object(turn, timeout = None)
if not should_print:
_drain_available_stdin()
except Exception as exc:
if should_print:
err.print(
f"\n(error sharing chat turn: {exc})",
style = "red",
markup = False,
)
raise typer.Exit(code = 1)
if not turn:
continue
user = str(turn.get("text", "")).strip()
if not user:
continue
if user in ("/exit", "/quit"):
break
if user == "/reset":
messages = []
if should_print:
console.print("(history cleared)", style = "bright_black")
continue
if user == "/think":
show_thinking = not show_thinking
if should_print:
state = "on" if show_thinking else "off"
console.print(f"(thinking {state})", style = "bright_black")
continue
if user == "/compare":
if compare_blocked:
if should_print:
console.print(f"(compare unavailable: {compare_blocked})", style = "yellow")
continue
if not compare_mode and dual_compare and not load_base_for_compare():
continue
compare_mode = not compare_mode
if should_print:
state = "on" if compare_mode else "off"
console.print(f"(compare {state})", style = "bright_black")
continue
if user in ("/help", "/?"):
if should_print:
console.print(_HELP, style = "bright_black")
continue
messages.append({"role": "user", "content": user})
try:
if compare_mode:
if should_print:
console.print("(comparing base vs tuned…)", style = "bright_black")
if dual_compare:
base_text = collect_stream(generate(backend = base_backend), show_thinking)
tuned_text = collect_stream(generate(), show_thinking)
else:
base_text = collect_stream(generate(use_adapter = False), show_thinking)
tuned_text = collect_stream(generate(use_adapter = True), show_thinking)
if should_print:
console.print()
render_columns(
"base", base_text, f"{name} (tuned)", tuned_text, console = console
)
# History continues as the tuned model; base is just the reference.
answer = tuned_text
else:
if should_print:
console.print(assistant_label)
answer = stream_markdown(generate(), show_thinking, console = console)
else:
answer = collect_stream(generate(), show_thinking)
except KeyboardInterrupt:
# Ctrl-C aborts this answer only; drop the unanswered turn.
if should_print:
console.print("\n(interrupted)", style = "bright_black")
messages.pop()
continue
except Exception as exc:
if should_print:
err.print(f"\n(error: {exc})", style = "red", markup = False)
messages.pop()
if is_mlx_distributed:
raise typer.Exit(code = 1)
continue
messages.append(
{"role": "assistant", "content": visible_text(answer, show_thinking = False)}
)
finally:
chat_backend.close()
if base_backend is not None:
base_backend.close()
if should_print:
err.print("\nBye.", style = "bright_black")