aisamdasu commited on
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Keep checkpoint folders dataset-only

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checkpoints/checkpoint_20260611_104104_bundle01_20g/BALANCE_REPORT.md DELETED
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- # Balance Report
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-
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checkpoints/checkpoint_20260611_104104_bundle01_20g/PREPROCESSING_GUIDE.md DELETED
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- # Preprocessing Guide
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-
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- ## Required JSONL Contract
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-
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- Each line is one JSON object. The training string is `text`. Metadata should include at least domain, difficulty, language, source, repository/path when available, and FIM mode.
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-
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- ## FIM Format
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-
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- Preferred format:
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-
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- ```text
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- <|fim_prefix|>{prefix}<|fim_suffix|>{suffix}<|fim_middle|>{middle}
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- ```
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-
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- Append `<|endoftext|>` in the training loader if the record does not already include it.
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-
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- ## Quality Filters
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-
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- - Remove empty or malformed JSON.
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- - Remove null bytes.
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- - Remove obvious secrets and private keys.
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- - Keep license/source metadata.
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- - Keep line endings stable.
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- - Do not dedup on metadata; dedup on normalized `text`.
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-
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- ## Dedup
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-
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- Use out-of-core SQLite or DuckDB. Do not hold all hashes in RAM. Hash normalized text with blake2b-16 or stronger. Commit in bounded batches.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/UPLOAD_READY.md DELETED
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- # Upload Ready
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-
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- This checkpoint is ready for Google Drive upload.
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-
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- - Path: `/Users/kimtaekyu/Documents/클로드작업폴더/데이터셋/checkpoints/upload_ready/checkpoint_20260611_104104_bundle01_20g.inprogress`
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- - Size: 19.04 GiB
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- - Format: JSONL
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- - Validation: PASS
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- - In-bundle duplicate records: 0
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-
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- After Google Drive upload is confirmed, this whole directory can be deleted locally to reclaim SSD space. The JSONL files were moved from `data/curated_upload`, not copied, so this bundle is the local owner of those data blocks.
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/dense_architecture/BASELINE_COMPARISON.md DELETED
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- # Baseline Comparison
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-
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- ## Compare Against MoE
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-
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- Use the same tokenizer and data bundle. Report:
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-
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- - Active parameters
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- - Total parameters
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- - Tokens/sec
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- - Validation loss
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- - FIM exact match
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- - Edit distance
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- - Memory footprint
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-
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- ## Interpretation
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-
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- Dense wins on simplicity and predictable routing. MoE should win when the dataset is diverse enough across languages, repositories, and completion patterns.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/dense_architecture/DENSE_ARCHITECTURE.md DELETED
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- # Dense Architecture
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-
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- ## Purpose
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-
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- The Dense model is the control baseline. It should share tokenizer, data order, context length, optimizer, and evaluation with MoE so differences are attributable to architecture.
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-
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- ## Recommended Structure
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-
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- - Decoder-only Transformer
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- - RMSNorm
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- - RoPE
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- - GQA
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- - SwiGLU
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- - Tied embedding/head if quality does not regress
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- - Native FIM special-token support
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-
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- ## Why Keep It
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-
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- - Easier debugging than MoE.
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- - Stable loss reference.
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- - Useful for small-device inference.
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- - Helps detect whether data or router is causing a regression.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/dense_architecture/TRAINING_PLAN.md DELETED
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- # Dense Training Plan
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-
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- ## Setup
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-
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- Use exactly the same checkpoint bundles as MoE. Keep seed, batch token target, LR schedule, and validation split aligned.
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-
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- ## Evaluation
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-
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- - Next-token validation loss
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- - FIM middle exact match
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- - FIM edit distance
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- - Syntax parse rate for Python/JS when available
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- - Completion latency
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-
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- ## Improvement Path
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-
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- Tune Dense before scaling MoE. If Dense cannot learn the bundle cleanly, the problem is usually data schema, tokenizer, or objective mix rather than MoE routing.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/moe_architecture/MOE_ARCHITECTURE.md DELETED
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- # MoE Architecture
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-
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- ## Recommended Structure
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-
5
- Use a decoder-only Transformer with shared attention and sparse FFN experts.
6
-
7
- - RMSNorm before attention and FFN
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- - RoPE position embeddings
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- - GQA attention for lower KV-cache cost
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- - SwiGLU experts
11
- - MoE layers every other block
12
- - Top-2 routing by default
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- - Optional shared expert for common syntax and indentation patterns
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-
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- ## Best Current Direction
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-
17
- The strongest path for this dataset is MoE + MTP:
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-
19
- - MoE captures language/domain specialization.
20
- - Multi-token prediction improves autocomplete latency and teaches continuation shape.
21
- - Dense baseline remains necessary for ablation and debugging.
22
-
23
- ## Layer Plan
24
-
25
- - Early layers: mostly dense or shared expert heavy for lexical/syntax grounding.
26
- - Middle layers: sparse MoE for language and pattern specialization.
27
- - Final layers: keep routing stable; avoid excessive expert collapse.
28
-
29
- ## Failure Modes
30
-
31
- - Expert collapse: one expert receives most tokens.
32
- - Router churn: expert assignment changes wildly across adjacent steps.
33
- - Domain overfitting: synthetic Python dominates real multi-language code.
34
- - MTP instability: auxiliary heads improve speed but hurt next-token loss if overweighted.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/moe_architecture/ROUTING_AND_LOAD_BALANCE.md DELETED
@@ -1,25 +0,0 @@
1
- # Routing And Load Balance
2
-
3
- ## Router
4
-
5
- Use top-2 routing with capacity factor 1.25 for training. Keep top-1 only as an inference ablation.
6
-
7
- ## Losses
8
-
9
- - Main next-token loss
10
- - MoE auxiliary load-balancing loss
11
- - Router z-loss
12
- - Optional MTP loss with a small coefficient
13
-
14
- ## Metrics To Log
15
-
16
- - Per-layer expert load
17
- - Per-expert token fraction
18
- - Dropped token count
19
- - Router entropy
20
- - Auxiliary loss
21
- - Domain to expert correlation
22
-
23
- ## Guardrails
24
-
25
- If any expert exceeds 35% load for sustained windows, increase aux loss or add shared expert capacity. If dropped tokens exceed 1%, increase capacity or lower batch token count.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/moe_architecture/TRAINING_PLAN.md DELETED
@@ -1,26 +0,0 @@
1
- # MoE Training Plan
2
-
3
- ## Data Mix
4
-
5
- Start with balanced 20 GiB checkpoints. Do not feed raw source directories directly during training; use manifest-verified JSONL bundles.
6
-
7
- ## Curriculum
8
-
9
- 1. Warm up on short and medium FIM examples.
10
- 2. Add long repository-context examples.
11
- 3. Add code_gen as auxiliary continuation training.
12
- 4. Fine-tune with real-code FIM weighted higher than synthetic FIM.
13
-
14
- ## Hyperparameter Defaults
15
-
16
- - Context: 2048 first, then 4096 ablation
17
- - Optimizer: AdamW
18
- - Precision: bf16 on H100, fp16 fallback only if stable
19
- - Grad clipping: enabled
20
- - Aux loss: start 0.01 and tune from router load
21
-
22
- ## Stop Conditions
23
-
24
- - Validation loss diverges twice after LR reduction.
25
- - Expert load collapse persists for more than one eval window.
26
- - FIM exact-match and edit-distance metrics regress while train loss improves.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/tokenizer/PREPROCESSING_FOR_TOKENIZER.md DELETED
@@ -1,26 +0,0 @@
1
- # Preprocessing For Tokenizer
2
-
3
- ## Input Rules
4
-
5
- - UTF-8 only, with invalid bytes replaced during inspection but not silently introduced during generation.
6
- - LF line endings.
7
- - Preserve indentation and blank lines.
8
- - Remove null bytes.
9
- - Keep repository path, language, license, source, and FIM mode in metadata.
10
-
11
- ## Filtering
12
-
13
- - Drop empty `text`.
14
- - Drop records with obvious credential strings.
15
- - Drop records with fewer than 20 useful characters.
16
- - Route extremely long records to a long-context bucket instead of truncating blindly.
17
-
18
- ## Sampling
19
-
20
- Tokenizer training should sample across:
21
-
22
- - code_fim
23
- - code_gen
24
- - Python / Java / C++ / Rust / JavaScript
25
- - synthetic and real-code sources
26
- - short, medium, and long files
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/tokenizer/TOKENIZER_DESIGN.md DELETED
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1
- # Tokenizer Design
2
-
3
- ## Decision
4
-
5
- Use a code-first byte-level BPE tokenizer with explicit FIM tokens. The current 16k BPE is usable for smoke training, but the recommended next production tokenizer is 64k vocab with byte fallback and fixed special-token IDs.
6
-
7
- ## Required Tokens
8
-
9
- - `<|fim_prefix|>`
10
- - `<|fim_suffix|>`
11
- - `<|fim_middle|>`
12
- - `<|fim_pad|>`
13
- - `<|repo|>`
14
- - `<|file|>`
15
- - `<|lang|>`
16
- - `<|endoftext|>`
17
-
18
- ## Improvements To Keep
19
-
20
- - Preserve indentation, tabs, newlines, comments, Korean text, and mixed English/Korean identifiers.
21
- - Do not lowercase.
22
- - Do not normalize whitespace inside code.
23
- - Keep FIM tokens atomic and never split them into subpieces.
24
- - Reserve stable IDs for FIM tokens before training.
25
- - Prefer 64k vocab for the next run; compare 32k and 96k only as ablations.
26
-
27
- ## Acceptance Criteria
28
-
29
- - FIM special tokens round-trip exactly.
30
- - Python, Java, C++, Rust, JavaScript, Markdown comments, and Korean comments decode without byte loss.
31
- - Median chars/token on code improves versus the current 16k tokenizer without making identifiers unreadable.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
checkpoints/checkpoint_20260611_104104_bundle01_20g/tokenizer/TOKENIZER_USAGE.md DELETED
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1
- # Tokenizer Usage
2
-
3
- ## Training String
4
-
5
- Each JSONL record must expose one canonical training string in `text`. FIM records use:
6
-
7
- ```text
8
- <|fim_prefix|>{prefix}<|fim_suffix|>{suffix}<|fim_middle|>{middle}<|endoftext|>
9
- ```
10
-
11
- ## Loading
12
-
13
- Use the Hugging Face `tokenizers` JSON format already present in `tokenizer/tokenizer.json`. When decoding examples for QA, use `skip_special_tokens=False`; otherwise FIM markers disappear and the sample cannot be audited.
14
-
15
- ## Batch Rules
16
-
17
- - Pack examples by token length bucket, not raw byte length.
18
- - Keep validation examples unshuffled and checksum-stable.
19
- - Reject records that exceed the model context after tokenization unless the training loader supports chunking.
20
-
21
- ## FIM Use
22
-
23
- For Cursor Tab style completion, train mostly on PSM order:
24
-
25
- ```text
26
- prefix + suffix + middle
27
- ```
28
-
29
- Keep a smaller SPM slice for robustness:
30
-
31
- ```text
32
- suffix + prefix + middle
33
- ```