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Author SHA1 Message Date
ViperEkura c7158418dd perf: add BFD bin-packing and custom attention mask to IFD batch scoring 2026-07-04 18:58:13 +08:00
ViperEkura 4d3c9341c1 refactor: rewrite IFD evaluation with clean three-layer architecture 2026-07-04 18:33:51 +08:00
ViperEkura 4e508afa2d fix : SFT pipeline position_ids default & doc boundary preservation
- change position_ids_mode default from "none" to "doc_reset" so SFT preprocessing always generates position_ids (was causing dataset load KeyError)
- generate per-doc position_ids before packing (doc_reset mode), preserving document boundaries for BFD packing (cross-doc attention leak fix)
- change _align_bucket padding from [1] to [0] to avoid accidentally training on loss_mask padding
2026-07-04 15:59:11 +08:00
4 changed files with 248 additions and 221 deletions

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@ -268,7 +268,7 @@ When `sources` is set, `sections` is ignored.
| `storage_format` | str | `"bin"` | `"bin"` (mmap) or `"h5"` |
| `max_tokens_per_shard` | int | `100000000` | Flush threshold in cumulative tokens |
| `dtype` | dict[str, str] | `{}` | Per-key tensor dtype override (e.g. `{"loss_mask": "bool"}`) |
| `position_ids_mode` | str | `"none"` | How to compute position_ids: `"none"`, `"doc_reset"`, `"continuous"` |
| `position_ids_mode` | str | `"doc_reset"` | How to compute position_ids: `"none"`, `"doc_reset"`, `"continuous"` |
---

View File

@ -96,7 +96,7 @@ class OutputConfig(BaseConfig):
storage_format: str = "bin"
max_tokens_per_shard: int = 100_000_000
dtype: Dict[str, str] = field(default_factory=dict)
position_ids_mode: str = "none"
position_ids_mode: str = "doc_reset"
@dataclass

View File

@ -144,7 +144,7 @@ class Pipeline:
for key in list(bucket.keys()):
if key in result:
continue
bucket[key].append([1] * len(ids))
bucket[key].append([0] * len(ids))
def _iter_items(self):
for path in self.paths:
@ -160,6 +160,12 @@ class Pipeline:
idx = shard_idx[domain]
pp = self.config.preprocessing
original_sequences = keys.get("sequence", [])
mode = self.config.output.position_ids_mode
if mode == "doc_reset" and original_sequences:
keys["position_ids"] = [list(range(len(s))) for s in original_sequences]
keys = self._packer.apply(dict(keys), pp.max_packed_len, pp.truncation_mode)
tensors: Dict[str, List[torch.Tensor]] = {}
@ -171,6 +177,7 @@ class Pipeline:
torch.tensor(list(chain.from_iterable(ids_list)), dtype=dt)
]
if mode == "continuous" and original_sequences:
pos_ids = self._position_id.generate(keys.get("sequence", []))
if pos_ids:
tensors["position_ids"] = [torch.tensor(pos_ids, dtype=torch.int32)]

View File

@ -1,31 +1,14 @@
"""IFD (Instruction Following Difficulty) data quality scoring.
Computes IFD scores for instruction-response pairs to guide data selection.
IFD = conditional_NLL / unconditional_NLL, where:
IFD = conditional_NLL / unconditional_NLL
- conditional_NLL: average CE loss on response tokens given instruction context
- unconditional_NLL: average CE loss on response tokens alone
Higher IFD (close to 1) = instruction provides less help = harder sample.
Lower IFD (close to 0) = instruction provides strong guidance = easy sample.
IFD > 1 = instruction misleads the model = likely low-quality data.
Usage::
python scripts/eval/ifd.py --param_path ./params \
--input data.jsonl --output data_with_ifd.jsonl \
--instr_key instruction --resp_key response
Disable chat template::
python scripts/eval/ifd.py --param_path ./params \
--input data.jsonl --output data_with_ifd.jsonl \
--instr_key instruction --resp_key response \
--no_chat_template
- Messages format: plain text concatenation (no chat template)
- Plain format: raw instr_key + resp_key fields
"""
import argparse
import json
import statistics
import torch
import torch.nn.functional as F
@ -35,217 +18,223 @@ from astrai.model import AutoModel
from astrai.tokenize import AutoTokenizer
def compute_ifd(
model,
tokenizer,
instruction: str,
response: str,
device: str,
max_len: int = 2048,
use_chat_template: bool = False,
) -> dict:
if use_chat_template:
return _compute_ifd_with_template(
model, tokenizer, instruction, response, device, max_len
)
return _compute_ifd_raw(model, tokenizer, instruction, response, device, max_len)
def _compute_ifd_raw(model, tokenizer, instruction, response, device, max_len) -> dict:
instr_ids = tokenizer.encode(instruction, add_special_tokens=False)
resp_ids = tokenizer.encode(response, add_special_tokens=False)
if len(resp_ids) > max_len:
resp_ids = resp_ids[:max_len]
if not resp_ids:
return {
"L_cond": None,
"L_uncond": None,
"ifd": None,
"error": "empty response",
}
qa_len = len(instr_ids) + len(resp_ids)
if qa_len > max_len:
overflow = qa_len - max_len
if overflow >= len(instr_ids):
resp_ids = resp_ids[:max_len]
instr_ids = []
def _pack_bins(pairs, max_len):
"""BFD bin packing: pack (c+r) into bins of max total length."""
indexed = sorted(enumerate(pairs), key=lambda x: -(len(x[1][0]) + len(x[1][1])))
bins = [] # each bin: list of (orig_idx, ctx_ids, resp_ids)
lengths = []
for orig_idx, (c, r) in indexed:
size = len(c) + len(r)
best_bin = -1
for bi, rem in enumerate(lengths):
if rem >= size:
if best_bin < 0 or rem < lengths[best_bin]:
best_bin = bi
if best_bin >= 0:
bins[best_bin].append((orig_idx, c, r))
lengths[best_bin] -= size
else:
instr_ids = instr_ids[overflow:]
bins.append([(orig_idx, c, r)])
lengths.append(max_len - size)
return bins
if not instr_ids:
return {
"L_cond": None,
"L_uncond": None,
"ifd": None,
"error": "response too long for context",
}
instr_len = len(instr_ids)
resp_len = len(resp_ids)
@torch.inference_mode()
def _score_batch(pairs, model, device, max_len=2048):
"""BFD-packed IFD: pack items into bins, one forward pass per bin."""
if not pairs:
return []
bins = _pack_bins(pairs, max_len)
qa_ids = instr_ids + resp_ids
result = [None] * len(pairs)
with torch.inference_mode():
logits_qa = model(torch.tensor([qa_ids], device=device, dtype=torch.long))[
"logits"
][0]
logits_resp = model(torch.tensor([resp_ids], device=device, dtype=torch.long))[
for bin_items in bins:
seq_ids = []
global_pos = [] # doc-reset position IDs for RoPE
doc_ids = [] # document index for attention mask
doc_offsets = []
for di, (orig_idx, c, r) in enumerate(bin_items):
ctx_len = len(c)
start = len(seq_ids)
item_len = len(c) + len(r)
seq_ids.extend(c)
seq_ids.extend(r)
end = len(seq_ids)
global_pos.extend(range(item_len))
doc_ids.extend([di] * item_len)
doc_offsets.append((start, end, orig_idx, ctx_len))
full_ids = torch.tensor([seq_ids], device=device, dtype=torch.long)
pos_ids = torch.tensor([global_pos], device=device, dtype=torch.long)
T = len(seq_ids)
causal = torch.tril(torch.ones(T, T, dtype=torch.bool, device=device))
doc_t = torch.tensor([doc_ids], device=device)
doc_mask = doc_t.unsqueeze(-1) == doc_t.unsqueeze(-2)
attn_mask = (causal & doc_mask[0]).unsqueeze(0).unsqueeze(0)
logits_full = model(full_ids, position_ids=pos_ids, input_mask=attn_mask)[
"logits"
][0]
resp_logits = logits_qa[instr_len - 1 : -1]
resp_targets = logits_resp.new_tensor(resp_ids, dtype=torch.long)
for start, end, orig_idx, ctx_len in doc_offsets:
rl = end - start - ctx_len
if rl < 2:
continue
resp_start = start + ctx_len - 1
resp_logits = logits_full[resp_start : end - 1]
resp_targets = torch.tensor(
seq_ids[start + ctx_len : end], device=device, dtype=torch.long
)
L_cond = F.cross_entropy(resp_logits, resp_targets, reduction="mean").item()
result[orig_idx] = (L_cond, rl)
unp_logits = logits_resp[:-1]
unp_targets = logits_resp.new_tensor(resp_ids[1:], dtype=torch.long)
# unconditional pass: batch all responses separately (sorted by length)
resp_seqs = [
(i, result[i][1], pairs[i][1])
for i in range(len(pairs))
if result[i] is not None
]
if resp_seqs:
resp_seqs.sort(key=lambda x: -x[1])
r_batch = torch.zeros(
len(resp_seqs),
max(len(r) for _, _, r in resp_seqs),
dtype=torch.long,
device=device,
)
for ri, (_, rl, r_ids) in enumerate(resp_seqs):
r_batch[ri, :rl] = torch.tensor(r_ids, dtype=torch.long)
logits_resp = model(r_batch)["logits"]
for ri, (orig_idx, rl, _) in enumerate(resp_seqs):
L_cond = result[orig_idx][0]
unp_logits = logits_resp[ri, : rl - 1]
unp_targets = r_batch[ri, 1:rl]
L_uncond = F.cross_entropy(unp_logits, unp_targets, reduction="mean").item()
ifd = L_cond / L_uncond if L_uncond > 0 else None
return {
result[orig_idx] = {
"L_cond": round(L_cond, 6),
"L_uncond": round(L_uncond, 6),
"ifd": round(ifd, 6) if ifd is not None else None,
"instr_len": instr_len,
"resp_len": resp_len,
"error": None,
"resp_len": rl,
}
return result
def _compute_ifd_with_template(
model, tokenizer, instruction, response, device, max_len
) -> dict:
instr_prefix = tokenizer.apply_chat_template(
[{"role": "user", "content": instruction}],
tokenize=False,
add_generation_prompt=True,
)
full_text = tokenizer.apply_chat_template(
[
{"role": "user", "content": instruction},
{"role": "assistant", "content": response},
],
tokenize=False,
add_generation_prompt=False,
)
full_ids = tokenizer.encode(full_text)
prefix_ids = tokenizer.encode(instr_prefix)
resp_ids = tokenizer.encode(response)
if not resp_ids:
return {
"L_cond": None,
"L_uncond": None,
"ifd": None,
"error": "empty response",
}
if len(full_ids) > max_len:
def _trim(context_ids, resp_ids, max_len):
"""Truncate to fit max_len, keeping response intact if possible."""
if len(resp_ids) > max_len // 2:
resp_ids = resp_ids[: max_len // 2]
full_ids = context_ids + resp_ids
if len(full_ids) <= max_len:
return context_ids, resp_ids
overflow = len(full_ids) - max_len
full_ids = full_ids[overflow:]
prefix_len = len(prefix_ids) - overflow
prefix_len = max(0, prefix_len)
else:
prefix_len = len(prefix_ids)
if overflow >= len(context_ids):
return [], resp_ids[:max_len]
return context_ids[overflow:], resp_ids
cond_tensor = torch.tensor([full_ids], device=device, dtype=torch.long)
with torch.inference_mode():
logits_qa = model(cond_tensor)["logits"][0]
def score_plain(model, tokenizer, instruction, response, device, max_len=2048):
"""Compute IFD for a single instruction-response pair (plain format)."""
ctx_ids = tokenizer.encode(instruction, add_special_tokens=False)
resp_ids = tokenizer.encode(response, add_special_tokens=False)
ctx_ids, resp_ids = _trim(ctx_ids, resp_ids, max_len)
if not ctx_ids or not resp_ids:
return {"L_cond": None, "L_uncond": None, "ifd": None, "error": "empty"}
return _score_batch([(ctx_ids, resp_ids)], model, device, max_len)[0]
resp_start = prefix_len - 1
resp_end = len(full_ids) - 1
if resp_end <= resp_start:
def score_messages(model, tokenizer, messages, device, max_len=2048):
"""Compute IFD for each assistant turn in a messages array."""
turns = []
for i, msg in enumerate(messages):
if msg.get("role") != "assistant":
continue
ctx_text = "\n\n".join(m["content"] for m in messages[:i])
ctx_ids = tokenizer.encode(ctx_text)
resp_ids = tokenizer.encode(msg["content"], add_special_tokens=False)
ctx_ids, resp_ids = _trim(ctx_ids, resp_ids, max_len)
if ctx_ids and resp_ids:
turns.append((ctx_ids, resp_ids))
if not turns:
return None
raw_scores = _score_batch(turns, model, device, max_len)
valid = [s for s in raw_scores if s is not None and s["ifd"] is not None]
if not valid:
return {"ifd": None, "ifd_turns": raw_scores}
avg = sum(s["ifd"] for s in valid) / len(valid)
return {
"L_cond": None,
"L_uncond": None,
"ifd": None,
"error": "response truncated entirely",
}
resp_logits = logits_qa[resp_start:resp_end]
resp_targets = torch.tensor(full_ids[prefix_len:], device=device, dtype=torch.long)
L_cond = F.cross_entropy(resp_logits, resp_targets, reduction="mean").item()
resp_tensor = torch.tensor([resp_ids], device=device, dtype=torch.long)
with torch.inference_mode():
logits_resp = model(resp_tensor)["logits"][0]
unp_logits = logits_resp[:-1]
unp_targets = resp_tensor[0, 1:]
L_uncond = F.cross_entropy(unp_logits, unp_targets, reduction="mean").item()
ifd = L_cond / L_uncond if L_uncond > 0 else None
return {
"L_cond": round(L_cond, 6),
"L_uncond": round(L_uncond, 6),
"ifd": round(ifd, 6) if ifd is not None else None,
"instr_len": prefix_len,
"resp_len": len(resp_ids),
"error": None,
"ifd": avg,
"ifd_detail": valid[0] if len(valid) == 1 else None,
"ifd_turns": raw_scores,
}
def process_file(
param_path: str,
input_file: str,
output_file: str,
instr_key: str,
resp_key: str,
max_len: int = 2048,
use_chat_template: bool = False,
param_path,
input_file,
output_file,
instr_key,
resp_key,
max_len=2048,
data_format="plain",
batch_size=1,
device=None,
):
if device is None:
device = "cuda" if torch.cuda.is_available() else "cpu"
dtype = torch.bfloat16 if device == "cuda" else torch.float32
dtype = torch.bfloat16 if "cuda" in device else torch.float32
model = AutoModel.from_pretrained(param_path)
tokenizer = AutoTokenizer.from_pretrained(param_path)
model.to(device=device, dtype=dtype)
model.eval()
if use_chat_template and tokenizer._chat_template is None:
raise RuntimeError(
"--use_chat_template specified but tokenizer has no chat template. "
"Add a chat_template to tokenizer_config.json or omit the flag."
)
with open(input_file, "r", encoding="utf-8") as f:
with open(input_file, encoding="utf-8") as f:
data = [json.loads(line) for line in f if line.strip()]
results = []
ifd_values = []
all_ifds = []
buffer = []
with torch.inference_mode():
for item in tqdm.tqdm(data, desc="Computing IFD", unit="sample"):
instruction = item[instr_key]
response = item[resp_key]
scores = compute_ifd(
model,
tokenizer,
instruction,
response,
device,
max_len,
use_chat_template=use_chat_template,
)
ifd_values.append(scores["ifd"])
results.append({**item, "ifd": scores["ifd"], "ifd_detail": scores})
if data_format == "messages":
turns = []
for i, msg in enumerate(item.get("messages", [])):
if msg.get("role") != "assistant":
continue
ctx_text = "\n\n".join(m["content"] for m in item["messages"][:i])
ctx_ids = tokenizer.encode(ctx_text)
resp_ids = tokenizer.encode(msg["content"], add_special_tokens=False)
ctx_ids, resp_ids = _trim(ctx_ids, resp_ids, max_len)
if ctx_ids and resp_ids:
turns.append((ctx_ids, resp_ids))
if not turns:
results.append({**item, "ifd": None, "ifd_turns": []})
continue
buffer.append((item, turns, "messages"))
else:
ctx_ids = tokenizer.encode(item[instr_key], add_special_tokens=False)
resp_ids = tokenizer.encode(item[resp_key], add_special_tokens=False)
ctx_ids, resp_ids = _trim(ctx_ids, resp_ids, max_len)
if not ctx_ids or not resp_ids:
results.append({**item, "ifd": None, "ifd_detail": {"error": "empty"}})
continue
buffer.append((item, [(ctx_ids, resp_ids)], "plain"))
if len(buffer) >= batch_size:
_flush_buffer(buffer, results, all_ifds, model, device, max_len)
if buffer:
_flush_buffer(buffer, results, all_ifds, model, device, max_len)
with open(output_file, "w", encoding="utf-8") as f:
for item in results:
f.write(json.dumps(item, ensure_ascii=False) + "\n")
valid_ifd = [v for v in ifd_values if v is not None]
valid_ifd = [v for v in all_ifds if v is not None]
if valid_ifd:
import statistics
print(f"\n{'=' * 50}")
print(f" Samples: {len(data)}")
print(f" Valid IFD: {len(valid_ifd)}")
@ -259,6 +248,41 @@ def process_file(
print(f"Results saved to {output_file}")
def _flush_buffer(buffer, results, all_ifds, model, device, max_len=2048):
all_pairs = []
indices = []
for item, turns, fmt in buffer:
start = len(all_pairs)
all_pairs.extend(turns)
indices.append((item, turns, fmt, start, len(all_pairs)))
raw = _score_batch(all_pairs, model, device, max_len)
for item, turns, fmt, start, end in indices:
turn_scores = raw[start:end]
if fmt == "messages":
valid = [s for s in turn_scores if s is not None and s["ifd"] is not None]
if not valid:
results.append({**item, "ifd": None, "ifd_turns": turn_scores})
else:
avg = sum(s["ifd"] for s in valid) / len(valid)
all_ifds.append(avg)
results.append(
{
**item,
"ifd": avg,
"ifd_detail": valid[0] if len(valid) == 1 else None,
"ifd_turns": turn_scores,
}
)
else:
score = turn_scores[0]
all_ifds.append(score["ifd"])
results.append({**item, "ifd": score["ifd"], "ifd_detail": score})
buffer.clear()
def main():
parser = argparse.ArgumentParser(
description="Compute IFD scores for instruction-response data"
@ -266,30 +290,24 @@ def main():
parser.add_argument("--param_path", type=str, required=True, help="Model directory")
parser.add_argument("--input", type=str, required=True, help="Input JSONL file")
parser.add_argument("--output", type=str, required=True, help="Output JSONL file")
parser.add_argument("--max_len", type=int, default=2048, help="Max token length")
parser.add_argument(
"--instr_key",
"--format",
type=str,
default="instruction",
help="Key for instruction field",
default="plain",
choices=["plain", "messages"],
help="Input format",
)
parser.add_argument(
"--resp_key",
type=str,
default="response",
help="Key for response field",
"--instr_key", type=str, default="instruction", help="Key for instruction field"
)
parser.add_argument(
"--max_len",
type=int,
default=2048,
help="Max token length (instruction truncated to fit)",
"--resp_key", type=str, default="response", help="Key for response field"
)
parser.add_argument(
"--no_chat_template",
action="store_true",
default=False,
help="Disable chat template, use raw text concatenation",
"--batch_size", type=int, default=8, help="Batch size for model forward passes"
)
parser.add_argument("--device", type=str, default=None, help="Device (e.g. cuda:0)")
args = parser.parse_args()
process_file(
@ -299,7 +317,9 @@ def main():
args.instr_key,
args.resp_key,
args.max_len,
use_chat_template=not args.no_chat_template,
data_format=args.format,
batch_size=args.batch_size,
device=args.device,
)