fix: minor cleanups and improvements
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+37
-8
@@ -27,6 +27,12 @@ device_map = "auto"
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# Maximum memory to allocate per device.
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# max_memory = { "0" = "20GB", "cpu" = "64GB" }
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# Whether to move intermediate analysis tensors (such as residuals and logprobs)
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# to CPU memory as soon as possible to reduce peak VRAM usage.
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# This lowers peak VRAM usage during residual analysis and evaluation,
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# but may slightly reduce performance due to host/device transfers.
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offload_outputs_to_cpu = true
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# Number of input sequences to process in parallel (0 = auto).
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batch_size = 0 # auto
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@@ -36,6 +42,32 @@ max_batch_size = 128
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# Maximum number of tokens to generate for each response.
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max_response_length = 100
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# List of pairs of the form [cot_initializer, closed_cot_block] used to skip
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# the Chain-of-Thought block in responses, so that evaluation happens
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# at the start of the actual response.
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chain_of_thought_skips = [
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# Most thinking models.
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[
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"<think>",
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"<think></think>",
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],
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# gpt-oss.
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[
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"<|channel|>analysis<|message|>",
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"<|channel|>analysis<|message|><|end|><|start|>assistant<|channel|>final<|message|>",
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],
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# Unknown, suggested by user.
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[
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"<thought>",
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"<thought></thought>",
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],
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# Unknown, suggested by user.
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[
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"[THINK]",
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"[THINK][/THINK]",
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],
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]
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# Whether to print prompt/response pairs when counting refusals.
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print_responses = false
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@@ -64,13 +96,13 @@ kl_divergence_target = 0.01
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# Whether to adjust the refusal directions so that only the component that is
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# orthogonal to the good direction is subtracted during abliteration.
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orthogonalize_direction = false
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orthogonalize_direction = true
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# How to apply row normalization of the weights. Options:
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# "none" (no normalization),
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# "pre" (compute LoRA adapter relative to row-normalized weights),
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# "full" (like "pre", but renormalizes to preserve original row magnitudes).
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row_normalization = "none"
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row_normalization = "full"
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# The rank of the LoRA adapter to use when "full" row normalization is used.
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# Row magnitude preservation is approximate due to non-linear effects,
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@@ -98,6 +130,9 @@ n_startup_trials = 60
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# Directory to save and load study progress to/from.
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study_checkpoint_dir = "checkpoints"
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# Maximum size for individual safetensors files generated when exporting a model.
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max_shard_size = "5GB"
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# Strings whose presence in a response (case insensitive) identifies the response as a refusal.
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refusal_markers = [
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"sorry",
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@@ -137,12 +172,6 @@ refusal_markers = [
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# System prompt to use when prompting the model.
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system_prompt = "You are a helpful assistant."
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# Move intermediate analysis tensors (such as residuals and logprobs)
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# to CPU memory as soon as possible to reduce peak VRAM usage.
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# This lowers peak VRAM usage during residual analysis and evaluation,
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# but may slightly reduce performance due to host/device transfers.
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offload_outputs_to_cpu = true
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# Dataset of prompts that tend to not result in refusals (used for calculating refusal directions).
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[good_prompts]
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dataset = "mlabonne/harmless_alpaca"
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+12
-10
@@ -141,6 +141,16 @@ class Settings(BaseSettings):
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description='Maximum memory to allocate per device (e.g., { "0" = "20GB", "cpu" = "64GB" }).',
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)
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offload_outputs_to_cpu: bool = Field(
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default=True,
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description=(
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"Whether to move intermediate analysis tensors (such as residuals and logprobs) "
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"to CPU memory as soon as possible to reduce peak VRAM usage. "
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"This lowers peak VRAM usage during residual analysis and evaluation, "
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"but may slightly reduce performance due to host/device transfers."
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),
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)
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trust_remote_code: bool | None = Field(
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default=None,
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description="Whether to trust remote code when loading the model.",
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@@ -261,7 +271,7 @@ class Settings(BaseSettings):
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)
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orthogonalize_direction: bool = Field(
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default=False,
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default=True,
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description=(
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"Whether to adjust the refusal directions so that only the component that is "
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"orthogonal to the good direction is subtracted during abliteration."
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@@ -269,7 +279,7 @@ class Settings(BaseSettings):
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)
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row_normalization: RowNormalization = Field(
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default=RowNormalization.NONE,
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default=RowNormalization.FULL,
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description=(
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"How to apply row normalization of the weights. Options: "
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'"none" (no normalization), '
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@@ -433,14 +443,6 @@ class Settings(BaseSettings):
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description="System prompt to use when prompting the model.",
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)
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offload_outputs_to_cpu: bool = Field(
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default=True,
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description=(
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"Whether to move intermediate analysis tensors (such as residuals and logprobs) "
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"to CPU memory as soon as possible to reduce peak VRAM usage."
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),
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)
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good_prompts: DatasetSpecification = Field(
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default=DatasetSpecification(
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dataset="mlabonne/harmless_alpaca",
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+3
-2
@@ -688,8 +688,9 @@ def run():
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(
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"The following trials resulted in Pareto optimal combinations of refusals and KL divergence. "
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"After selecting a trial, you will be able to save the model, upload it to Hugging Face, "
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"or chat with it to test how well it works. You can return to this menu later to select a different trial. "
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"[yellow]Note that KL divergence values above 1 usually indicate significant damage to the original model's capabilities.[/]"
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"chat with it to test how well it works, or run standard benchmarks on it. "
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"You can return to this menu later to select a different trial. "
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"[yellow]Note that KL divergence values above 0.5 usually indicate significant damage to the original model's capabilities.[/]"
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)
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)
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@@ -9,6 +9,7 @@ import random
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import tempfile
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from dataclasses import dataclass
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from datetime import datetime, timezone
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from importlib.metadata import version
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from pathlib import Path
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from typing import Any, TypeVar
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@@ -283,8 +284,6 @@ def get_readme_intro(
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# Hide the path, which may contain private information.
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model_link = "a model"
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version_info = get_heretic_version_info()
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if contains_reproducibility_information:
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reproducibility_instructions = """
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> [!TIP]
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@@ -297,7 +296,7 @@ def get_readme_intro(
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return f"""# This is a decensored version of {
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model_link
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}, made using [Heretic](https://github.com/p-e-w/heretic) v{version_info.version}
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}, made using [Heretic](https://github.com/p-e-w/heretic) v{version("heretic-llm")}
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{reproducibility_instructions}
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## Abliteration parameters
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