Agent Skillssynthetic-sciences/openscience › speculative-decoding

speculative-decoding

GitHub

利用投机解码、Medusa多头和前瞻解码技术加速LLM推理,实现1.5-3.6倍提速并降低延迟。适用于实时应用、高吞吐量服务及受限硬件部署,涵盖草稿模型、树注意力及生产策略。

backend/cli/skills/ml-inference/speculative-decoding/SKILL.md synthetic-sciences/openscience

Trigger Scenarios

需要加速LLM推理速度 降低实时应用的延迟 优化高吞吐量服务的性能 在计算资源有限的硬件上部署模型

Install

npx skills add synthetic-sciences/openscience --skill speculative-decoding -g -y
More Options

Non-standard path

npx skills add https://github.com/synthetic-sciences/openscience/tree/main/backend/cli/skills/ml-inference/speculative-decoding -g -y

Use without installing

npx skills use synthetic-sciences/openscience@speculative-decoding

指定 Agent (Claude Code)

npx skills add synthetic-sciences/openscience --skill speculative-decoding -a claude-code -g -y

安装 repo 全部 skill

npx skills add synthetic-sciences/openscience --all -g -y

预览 repo 内 skill

npx skills add synthetic-sciences/openscience --list

SKILL.md

Frontmatter
{
    "name": "speculative-decoding",
    "tags": [
        "Emerging Techniques",
        "Speculative Decoding",
        "Medusa",
        "Lookahead Decoding",
        "Fast Inference",
        "Draft Models",
        "Tree Attention",
        "Parallel Generation",
        "Latency Reduction",
        "Inference Optimization"
    ],
    "author": "Synthetic Sciences",
    "license": "MIT",
    "version": "1.0.0",
    "category": "ml-inference",
    "description": "Accelerate LLM inference using speculative decoding, Medusa multiple heads, and lookahead decoding techniques. Use when optimizing inference speed (1.5-3.6× speedup), reducing latency for real-time applications, or deploying models with limited compute. Covers draft models, tree-based attention, Jacobi iteration, parallel token generation, and production deployment strategies.",
    "dependencies": [
        "transformers",
        "torch"
    ]
}

Speculative Decoding: Accelerating LLM Inference

When to Use This Skill

Use Speculative Decoding when you need to:

  • Speed up inference by 1.5-3.6× without quality loss
  • Reduce latency for real-time applications (chatbots, code generation)
  • Optimize throughput for high-volume serving
  • Deploy efficiently on limited hardware
  • Generate faster without changing model architecture

Key Techniques: Draft model speculative decoding, Medusa (multiple heads), Lookahead Decoding (Jacobi iteration)

Papers: Medusa (arXiv 2401.10774), Lookahead Decoding (ICML 2024), Speculative Decoding Survey (ACL 2024)

Installation

# Standard speculative decoding (transformers)
pip install transformers accelerate

# Medusa (multiple decoding heads)
git clone https://github.com/FasterDecoding/Medusa
cd Medusa
pip install -e .

# Lookahead Decoding
git clone https://github.com/hao-ai-lab/LookaheadDecoding
cd LookaheadDecoding
pip install -e .

# Optional: vLLM with speculative decoding
pip install vllm

Quick Start

Basic Speculative Decoding (Draft Model)

from transformers import AutoModelForCausalLM, AutoTokenizer

# Load target model (large, slow)
target_model = AutoModelForCausalLM.from_pretrained(
    "meta-llama/Llama-2-70b-hf",
    device_map="auto",
    torch_dtype=torch.float16
)

# Load draft model (small, fast)
draft_model = AutoModelForCausalLM.from_pretrained(
    "meta-llama/Llama-2-7b-hf",
    device_map="auto",
    torch_dtype=torch.float16
)

tokenizer = AutoTokenizer.from_pretrained("meta-llama/Llama-2-70b-hf")

# Generate with speculative decoding
prompt = "Explain quantum computing in simple terms:"
inputs = tokenizer(prompt, return_tensors="pt").to("cuda")

# Transformers 4.36+ supports assisted generation
outputs = target_model.generate(
    **inputs,
    assistant_model=draft_model,  # Enable speculative decoding
    max_new_tokens=256,
    do_sample=True,
    temperature=0.7,
)

response = tokenizer.decode(outputs[0], skip_special_tokens=True)
print(response)

Medusa (Multiple Decoding Heads)

from medusa.model.medusa_model import MedusaModel

# Load Medusa-enhanced model
model = MedusaModel.from_pretrained(
    "FasterDecoding/medusa-vicuna-7b-v1.3",  # Pre-trained with Medusa heads
    torch_dtype=torch.float16,
    device_map="auto"
)

tokenizer = AutoTokenizer.from_pretrained("FasterDecoding/medusa-vicuna-7b-v1.3")

# Generate with Medusa (2-3× speedup)
prompt = "Write a Python function to calculate fibonacci numbers:"
inputs = tokenizer(prompt, return_tensors="pt").to("cuda")

outputs = model.medusa_generate(
    **inputs,
    max_new_tokens=256,
    temperature=0.7,
    posterior_threshold=0.09,  # Acceptance threshold
    posterior_alpha=0.3,       # Tree construction parameter
)

response = tokenizer.decode(outputs[0], skip_special_tokens=True)

Lookahead Decoding (Jacobi Iteration)

from lookahead.lookahead_decoding import LookaheadDecoding

# Load model
model = AutoModelForCausalLM.from_pretrained(
    "meta-llama/Llama-2-7b-hf",
    torch_dtype=torch.float16,
    device_map="auto"
)
tokenizer = AutoTokenizer.from_pretrained("meta-llama/Llama-2-7b-hf")

# Initialize lookahead decoding
lookahead = LookaheadDecoding(
    model=model,
    tokenizer=tokenizer,
    window_size=15,    # Lookahead window (W)
    ngram_size=5,      # N-gram size (N)
    guess_size=5       # Number of parallel guesses
)

# Generate (1.5-2.3× speedup)
prompt = "Implement quicksort in Python:"
output = lookahead.generate(prompt, max_new_tokens=256)
print(output)

Core Concepts

1. Speculative Decoding (Draft Model)

Idea: Use small draft model to generate candidates, large target model to verify in parallel.

Algorithm:

  1. Draft model generates K tokens speculatively
  2. Target model evaluates all K tokens in parallel (single forward pass)
  3. Accept tokens where draft and target agree
  4. Reject first disagreement, continue from there
def speculative_decode(target_model, draft_model, prompt, K=4):
    """Speculative decoding algorithm."""
    # 1. Generate K draft tokens
    draft_tokens = draft_model.generate(prompt, max_new_tokens=K)

    # 2. Target model evaluates all K tokens in one forward pass
    target_logits = target_model(draft_tokens)  # Parallel!

    # 3. Accept/reject based on probability match
    accepted = []
    for i in range(K):
        p_draft = softmax(draft_model.logits[i])
        p_target = softmax(target_logits[i])

        # Acceptance probability
        if random.random() < min(1, p_target[draft_tokens[i]] / p_draft[draft_tokens[i]]):
            accepted.append(draft_tokens[i])
        else:
            break  # Reject, resample from target

    return accepted

Performance:

  • Speedup: 1.5-2× with good draft model
  • Zero quality loss (mathematically equivalent to target model)
  • Best when draft model is 5-10× smaller than target

2. Medusa (Multiple Decoding Heads)

Source: arXiv 2401.10774 (2024)

Innovation: Add multiple prediction heads to existing model, predict future tokens without separate draft model.

Architecture:

Input → Base LLM (frozen) → Hidden State
                                ├→ Head 1 (predicts token t+1)
                                ├→ Head 2 (predicts token t+2)
                                ├→ Head 3 (predicts token t+3)
                                └→ Head 4 (predicts token t+4)

Training:

  • Medusa-1: Freeze base LLM, train only heads
    • 2.2× speedup, lossless
  • Medusa-2: Fine-tune base LLM + heads together
    • 2.3-3.6× speedup, better quality

Tree-based Attention:

# Medusa constructs tree of candidates
# Example: Predict 2 steps ahead with top-2 per step

#         Root
#        /    \
#      T1a    T1b  (Step 1: 2 candidates)
#     /  \    / \
#  T2a  T2b T2c T2d  (Step 2: 4 candidates total)

# Single forward pass evaluates entire tree!

Advantages:

  • No separate draft model needed
  • Minimal training (only heads)
  • Compatible with any LLM

3. Lookahead Decoding (Jacobi Iteration)

Source: ICML 2024

Core idea: Reformulate autoregressive decoding as solving system of equations, solve in parallel using Jacobi iteration.

Mathematical formulation:

Traditional:  y_t = f(x, y_1, ..., y_{t-1})  (sequential)
Jacobi:       y_t^{(k+1)} = f(x, y_1^{(k)}, ..., y_{t-1}^{(k)})  (parallel)

Two branches:

  1. Lookahead Branch: Generate n-grams in parallel

    • Window size W: How many steps to look ahead
    • N-gram size N: How many past tokens to use
  2. Verification Branch: Verify promising n-grams

    • Match n-grams with generated tokens
    • Accept if first token matches
class LookaheadDecoding:
    def __init__(self, model, window_size=15, ngram_size=5):
        self.model = model
        self.W = window_size  # Lookahead window
        self.N = ngram_size   # N-gram size

    def generate_step(self, tokens):
        # Lookahead branch: Generate W × N candidates
        candidates = {}
        for w in range(1, self.W + 1):
            for n in range(1, self.N + 1):
                # Generate n-gram starting at position w
                ngram = self.generate_ngram(tokens, start=w, length=n)
                candidates[(w, n)] = ngram

        # Verification branch: Find matching n-grams
        verified = []
        for ngram in candidates.values():
            if ngram[0] == tokens[-1]:  # First token matches last input
                if self.verify(tokens, ngram):
                    verified.append(ngram)

        # Accept longest verified n-gram
        return max(verified, key=len) if verified else [self.model.generate_next(tokens)]

Performance:

  • Speedup: 1.5-2.3× (up to 3.6× for code generation)
  • No draft model or training needed
  • Works out-of-the-box with any model

Method Comparison

Method Speedup Training Needed Draft Model Quality Loss
Draft Model Speculative 1.5-2× No Yes (external) None
Medusa 2-3.6× Minimal (heads only) No (built-in heads) None
Lookahead 1.5-2.3× None No None
Naive Batching 1.2-1.5× No No None

Advanced Patterns

Training Medusa Heads

from medusa.model.medusa_model import MedusaModel
from medusa.model.kv_cache import initialize_past_key_values
import torch.nn as nn

# 1. Load base model
base_model = AutoModelForCausalLM.from_pretrained(
    "lmsys/vicuna-7b-v1.3",
    torch_dtype=torch.float16
)

# 2. Add Medusa heads
num_heads = 4
medusa_heads = nn.ModuleList([
    nn.Linear(base_model.config.hidden_size, base_model.config.vocab_size, bias=False)
    for _ in range(num_heads)
])

# 3. Training loop (freeze base model for Medusa-1)
for param in base_model.parameters():
    param.requires_grad = False  # Freeze base

optimizer = torch.optim.Adam(medusa_heads.parameters(), lr=1e-3)

for batch in dataloader:
    # Forward pass
    hidden_states = base_model(**batch, output_hidden_states=True).hidden_states[-1]

    # Predict future tokens with each head
    loss = 0
    for i, head in enumerate(medusa_heads):
        logits = head(hidden_states)
        # Target: tokens shifted by (i+1) positions
        target = batch['input_ids'][:, i+1:]
        loss += F.cross_entropy(logits[:, :-i-1], target)

    # Backward
    optimizer.zero_grad()
    loss.backward()
    optimizer.step()

Hybrid: Speculative + Medusa

# Use Medusa as draft model for speculative decoding
draft_medusa = MedusaModel.from_pretrained("medusa-vicuna-7b")
target_model = AutoModelForCausalLM.from_pretrained("vicuna-33b")

# Draft generates multiple candidates with Medusa
draft_tokens = draft_medusa.medusa_generate(prompt, max_new_tokens=5)

# Target verifies in single forward pass
outputs = target_model.generate(
    prompt,
    assistant_model=draft_medusa,  # Use Medusa as draft
    max_new_tokens=256
)

# Combines benefits: Medusa speed + large model quality

Optimal Draft Model Selection

def select_draft_model(target_model_size, target):
    """Select optimal draft model for speculative decoding."""
    # Rule: Draft should be 5-10× smaller
    if target_model_size == "70B":
        return "7B"  # 10× smaller
    elif target_model_size == "33B":
        return "7B"  # 5× smaller
    elif target_model_size == "13B":
        return "1B"  # 13× smaller
    else:
        return None  # Target too small, use Medusa/Lookahead instead

# Example
draft = select_draft_model("70B", target_model)
# Returns "7B" → Use Llama-2-7b as draft for Llama-2-70b

Best Practices

1. Choose the Right Method

# New deployment → Medusa (best overall speedup, no draft model)
if deploying_new_model:
    use_method = "Medusa"

# Existing deployment with small model available → Draft speculative
elif have_small_version_of_model:
    use_method = "Draft Model Speculative"

# Want zero training/setup → Lookahead
elif want_plug_and_play:
    use_method = "Lookahead Decoding"

2. Hyperparameter Tuning

Draft Model Speculative:

# K = number of speculative tokens
K = 4  # Good default
K = 2  # Conservative (higher acceptance)
K = 8  # Aggressive (lower acceptance, but more when accepted)

# Rule: Larger K → more speedup IF draft model is good

Medusa:

# Posterior threshold (acceptance confidence)
posterior_threshold = 0.09  # Standard (from paper)
posterior_threshold = 0.05  # More conservative (slower, higher quality)
posterior_threshold = 0.15  # More aggressive (faster, may degrade quality)

# Tree depth (how many steps ahead)
medusa_choices = [[0], [0, 0], [0, 1], [0, 0, 0]]  # Depth 3 (standard)

Lookahead:

# Window size W (lookahead distance)
# N-gram size N (context for generation)

# 7B model (more resources)
W, N = 15, 5

# 13B model (moderate)
W, N = 10, 5

# 33B+ model (limited resources)
W, N = 7, 5

3. Production Deployment

# vLLM with speculative decoding
from vllm import LLM, SamplingParams

# Initialize with draft model
llm = LLM(
    model="meta-llama/Llama-2-70b-hf",
    speculative_model="meta-llama/Llama-2-7b-hf",  # Draft model
    num_speculative_tokens=5,
    use_v2_block_manager=True,
)

# Generate
prompts = ["Tell me about AI:", "Explain quantum physics:"]
sampling_params = SamplingParams(temperature=0.7, max_tokens=256)

outputs = llm.generate(prompts, sampling_params)
for output in outputs:
    print(output.outputs[0].text)

Resources

See Also

  • references/draft_model.md - Draft model selection and training
  • references/medusa.md - Medusa architecture and training
  • references/lookahead.md - Lookahead decoding implementation details

Version History

  • e9844a4 Current 2026-07-11 17:28

Dependencies

Same Skill Collection

.openscience/skill/bun-file-io/SKILL.md
backend/cli/skills/biology/anndata/SKILL.md
backend/cli/skills/biology/benchling-integration/SKILL.md
backend/cli/skills/biology/bioimage-analysis/SKILL.md
backend/cli/skills/biology/bioservices/SKILL.md
backend/cli/skills/biology/cancer-genomics-analysis/SKILL.md
backend/cli/skills/biology/clinical-imaging/SKILL.md
backend/cli/skills/biology/clinical-reports/SKILL.md
backend/cli/skills/biology/cobrapy/SKILL.md
backend/cli/skills/biology/curated-bio-datasets/SKILL.md
backend/cli/skills/biology/deeptools/SKILL.md
backend/cli/skills/biology/dnanexus-integration/SKILL.md
backend/cli/skills/biology/etetoolkit/SKILL.md
backend/cli/skills/biology/flow-cytometry-analysis/SKILL.md
backend/cli/skills/biology/flowio/SKILL.md
backend/cli/skills/biology/gget/SKILL.md
backend/cli/skills/biology/glycobiology/SKILL.md
backend/cli/skills/biology/histolab/SKILL.md
backend/cli/skills/biology/immunology-assays/SKILL.md
backend/cli/skills/biology/latchbio-integration/SKILL.md
backend/cli/skills/biology/microbial-dynamics/SKILL.md
backend/cli/skills/biology/molecular-cloning/SKILL.md
backend/cli/skills/biology/neurokit2/SKILL.md
backend/cli/skills/biology/neuropixels-analysis/SKILL.md
backend/cli/skills/biology/omero-integration/SKILL.md
backend/cli/skills/biology/opentrons-integration/SKILL.md
backend/cli/skills/biology/pathml/SKILL.md
backend/cli/skills/biology/pharmacology-wetlab/SKILL.md
backend/cli/skills/biology/protocolsio-integration/SKILL.md
backend/cli/skills/biology/pydeseq2/SKILL.md
backend/cli/skills/biology/pyhealth/SKILL.md
backend/cli/skills/biology/pylabrobot/SKILL.md
backend/cli/skills/biology/pysam/SKILL.md
backend/cli/skills/biology/scanpy/SKILL.md
backend/cli/skills/biology/scikit-bio/SKILL.md
backend/cli/skills/biology/scikit-survival/SKILL.md
backend/cli/skills/biology/scvi-tools/SKILL.md
backend/cli/skills/biology/synthetic-biology/SKILL.md
backend/cli/skills/biology/treatment-plans/SKILL.md
backend/cli/skills/chemistry/admet-prediction/SKILL.md
backend/cli/skills/chemistry/admet-reasoning/SKILL.md
backend/cli/skills/chemistry/binding-affinity/SKILL.md
backend/cli/skills/chemistry/datamol/SKILL.md
backend/cli/skills/chemistry/deepchem/SKILL.md
backend/cli/skills/chemistry/denovo-design/SKILL.md
backend/cli/skills/chemistry/diffdock/SKILL.md
backend/cli/skills/chemistry/drug-design/SKILL.md
backend/cli/skills/chemistry/hypogenic/SKILL.md
backend/cli/skills/chemistry/matchms/SKILL.md
backend/cli/skills/chemistry/medchem/SKILL.md
backend/cli/skills/chemistry/molecular-docking/SKILL.md
backend/cli/skills/chemistry/molecular-optimization/SKILL.md
backend/cli/skills/chemistry/molecular-rag/SKILL.md
backend/cli/skills/chemistry/molecule-visualization/SKILL.md
backend/cli/skills/chemistry/molfeat/SKILL.md
backend/cli/skills/chemistry/pocket-detection/SKILL.md
backend/cli/skills/chemistry/pyopenms/SKILL.md
backend/cli/skills/chemistry/pytdc/SKILL.md
backend/cli/skills/chemistry/rdkit/SKILL.md
backend/cli/skills/chemistry/smiles-validation/SKILL.md
backend/cli/skills/chemistry/structure-prediction/SKILL.md
backend/cli/skills/chemistry/torchdrug/SKILL.md
backend/cli/skills/cloud-compute/fireworks-ai/SKILL.md
backend/cli/skills/cloud-compute/lambda-labs/SKILL.md
backend/cli/skills/cloud-compute/modal-ml-training/SKILL.md
backend/cli/skills/cloud-compute/modal-research-gpu/SKILL.md
backend/cli/skills/cloud-compute/modal/SKILL.md
backend/cli/skills/cloud-compute/skypilot/SKILL.md
backend/cli/skills/cloud-compute/tensorpool/SKILL.md
backend/cli/skills/cloud-compute/tinker-training-cost/SKILL.md
backend/cli/skills/cloud-compute/tinker/SKILL.md
backend/cli/skills/cloud-compute/together-ai/SKILL.md
backend/cli/skills/coding/arboreto/SKILL.md
backend/cli/skills/coding/audiocraft/SKILL.md
backend/cli/skills/coding/denario/SKILL.md
backend/cli/skills/coding/gtars/SKILL.md
backend/cli/skills/coding/multi-objective-optimization/SKILL.md
backend/cli/skills/coding/networkx/SKILL.md
backend/cli/skills/coding/pymc/SKILL.md
backend/cli/skills/coding/pymoo/SKILL.md
backend/cli/skills/coding/scikit-learn/SKILL.md
backend/cli/skills/coding/simpy/SKILL.md
backend/cli/skills/coding/slime/SKILL.md
backend/cli/skills/coding/statistical-analysis/SKILL.md
backend/cli/skills/coding/statsmodels/SKILL.md
backend/cli/skills/coding/torch_geometric/SKILL.md
backend/cli/skills/coding/umap-learn/SKILL.md
backend/cli/skills/data-engineering/aeon/SKILL.md
backend/cli/skills/data-engineering/dask/SKILL.md
backend/cli/skills/data-engineering/hdf5-pde-data-loading/SKILL.md
backend/cli/skills/data-engineering/hugging-face-datasets/SKILL.md
backend/cli/skills/data-engineering/polars/SKILL.md
backend/cli/skills/data-engineering/vaex/SKILL.md
backend/cli/skills/data-engineering/zarr-python/SKILL.md
backend/cli/skills/databases/alphafold-database/SKILL.md
backend/cli/skills/databases/biorxiv-database/SKILL.md
backend/cli/skills/databases/brenda-database/SKILL.md
backend/cli/skills/databases/cellxgene-census/SKILL.md
backend/cli/skills/databases/chembl-database/SKILL.md
backend/cli/skills/databases/clinicaltrials-database/SKILL.md
backend/cli/skills/databases/clinpgx-database/SKILL.md
backend/cli/skills/databases/clinvar-database/SKILL.md
backend/cli/skills/databases/cosmic-database/SKILL.md
backend/cli/skills/databases/datacommons-client/SKILL.md
backend/cli/skills/databases/drugbank-database/SKILL.md
backend/cli/skills/databases/ena-database/SKILL.md
backend/cli/skills/databases/ensembl-database/SKILL.md
backend/cli/skills/databases/fda-database/SKILL.md
backend/cli/skills/databases/gene-database/SKILL.md
backend/cli/skills/databases/gwas-database/SKILL.md
backend/cli/skills/databases/hmdb-database/SKILL.md
backend/cli/skills/databases/imaging-data-commons/SKILL.md
backend/cli/skills/databases/kegg-database/SKILL.md
backend/cli/skills/databases/metabolomics-workbench-database/SKILL.md
backend/cli/skills/databases/openalex-database/SKILL.md
backend/cli/skills/databases/opentargets-database/SKILL.md
backend/cli/skills/databases/pdb-database/SKILL.md
backend/cli/skills/databases/pubchem-database/SKILL.md
backend/cli/skills/databases/pubmed-database/SKILL.md
backend/cli/skills/databases/reactome-database/SKILL.md
backend/cli/skills/databases/string-database/SKILL.md
backend/cli/skills/databases/uniprot-database/SKILL.md
backend/cli/skills/databases/zinc-database/SKILL.md
backend/cli/skills/document-parsing/liteparse/SKILL.md
backend/cli/skills/llm-tools/autogpt/SKILL.md
backend/cli/skills/llm-tools/blip-2/SKILL.md
backend/cli/skills/llm-tools/chroma/SKILL.md
backend/cli/skills/llm-tools/clip/SKILL.md
backend/cli/skills/llm-tools/constitutional-ai/SKILL.md
backend/cli/skills/llm-tools/crewai/SKILL.md
backend/cli/skills/llm-tools/dspy/SKILL.md
backend/cli/skills/llm-tools/faiss/SKILL.md
backend/cli/skills/llm-tools/guidance/SKILL.md
backend/cli/skills/llm-tools/hugging-face-cli/SKILL.md
backend/cli/skills/llm-tools/hugging-face-tool-builder/SKILL.md
backend/cli/skills/llm-tools/huggingface-tokenizers/SKILL.md
backend/cli/skills/llm-tools/instructor/SKILL.md
backend/cli/skills/llm-tools/langchain/SKILL.md
backend/cli/skills/llm-tools/langsmith/SKILL.md
backend/cli/skills/llm-tools/llamaguard/SKILL.md
backend/cli/skills/llm-tools/llamaindex/SKILL.md
backend/cli/skills/llm-tools/llava/SKILL.md
backend/cli/skills/llm-tools/llm-as-judge-evaluation/SKILL.md
backend/cli/skills/llm-tools/long-context/SKILL.md
backend/cli/skills/llm-tools/nemo-guardrails/SKILL.md
backend/cli/skills/llm-tools/outlines/SKILL.md
backend/cli/skills/llm-tools/pinecone/SKILL.md
backend/cli/skills/llm-tools/qdrant/SKILL.md
backend/cli/skills/llm-tools/segment-anything/SKILL.md
backend/cli/skills/llm-tools/sentence-transformers/SKILL.md
backend/cli/skills/llm-tools/sentencepiece/SKILL.md
backend/cli/skills/llm-tools/stable-diffusion/SKILL.md
backend/cli/skills/llm-tools/transformers/SKILL.md
backend/cli/skills/llm-tools/whisper/SKILL.md
backend/cli/skills/ml-inference/gguf/SKILL.md
backend/cli/skills/ml-inference/groq/SKILL.md
backend/cli/skills/ml-inference/llama-cpp/SKILL.md
backend/cli/skills/ml-inference/miles/SKILL.md
backend/cli/skills/ml-inference/phoenix/SKILL.md
backend/cli/skills/ml-inference/sglang/SKILL.md
backend/cli/skills/ml-inference/tensorrt-llm/SKILL.md
backend/cli/skills/ml-inference/vllm/SKILL.md
backend/cli/skills/ml-training/accelerate/SKILL.md
backend/cli/skills/ml-training/awq/SKILL.md
backend/cli/skills/ml-training/axolotl/SKILL.md
backend/cli/skills/ml-training/bigcode-evaluation-harness/SKILL.md
backend/cli/skills/ml-training/bitsandbytes/SKILL.md
backend/cli/skills/ml-training/colab-finetuning/SKILL.md
backend/cli/skills/ml-training/deepspeed/SKILL.md
backend/cli/skills/ml-training/flash-attention/SKILL.md
backend/cli/skills/ml-training/geniml/SKILL.md
backend/cli/skills/ml-training/gptq/SKILL.md
backend/cli/skills/ml-training/grpo-rl-training/SKILL.md
backend/cli/skills/ml-training/hqq/SKILL.md
backend/cli/skills/ml-training/hugging-face-evaluation/SKILL.md
backend/cli/skills/ml-training/knowledge-distillation/SKILL.md
backend/cli/skills/ml-training/litgpt/SKILL.md
backend/cli/skills/ml-training/llama-factory/SKILL.md
backend/cli/skills/ml-training/lm-evaluation-harness/SKILL.md
backend/cli/skills/ml-training/mamba/SKILL.md
backend/cli/skills/ml-training/megatron-core/SKILL.md
backend/cli/skills/ml-training/ml-benchmark-evaluation/SKILL.md
backend/cli/skills/ml-training/mlflow/SKILL.md
backend/cli/skills/ml-training/model-economics/SKILL.md
backend/cli/skills/ml-training/model-merging/SKILL.md
backend/cli/skills/ml-training/model-pruning/SKILL.md
backend/cli/skills/ml-training/moe-training/SKILL.md
backend/cli/skills/ml-training/nanogpt/SKILL.md
backend/cli/skills/ml-training/nemo-curator/SKILL.md
backend/cli/skills/ml-training/nnsight/SKILL.md
backend/cli/skills/ml-training/openrlhf/SKILL.md
backend/cli/skills/ml-training/peft/SKILL.md
backend/cli/skills/ml-training/prime-intellect-lab/SKILL.md
backend/cli/skills/ml-training/pufferlib/SKILL.md
backend/cli/skills/ml-training/pytorch-fsdp/SKILL.md
backend/cli/skills/ml-training/pytorch-lightning/SKILL.md
backend/cli/skills/ml-training/pyvene/SKILL.md
backend/cli/skills/ml-training/rwkv/SKILL.md
backend/cli/skills/ml-training/saelens/SKILL.md
backend/cli/skills/ml-training/simpo/SKILL.md
backend/cli/skills/ml-training/stable-baselines3/SKILL.md
backend/cli/skills/ml-training/tensorboard/SKILL.md
backend/cli/skills/ml-training/torchforge/SKILL.md
backend/cli/skills/ml-training/torchtitan/SKILL.md
backend/cli/skills/ml-training/training-data-pipeline/SKILL.md
backend/cli/skills/ml-training/transformer-lens/SKILL.md
backend/cli/skills/ml-training/trl-fine-tuning/SKILL.md
backend/cli/skills/ml-training/unsloth/SKILL.md
backend/cli/skills/ml-training/verl/SKILL.md
backend/cli/skills/other/hugging-face-trackio/SKILL.md
backend/cli/skills/other/labarchive-integration/SKILL.md
backend/cli/skills/other/skill-installer/SKILL.md
backend/cli/skills/physics/astropy/SKILL.md
backend/cli/skills/physics/autoregressive-neural-pde-solver/SKILL.md
backend/cli/skills/physics/bayesian-inference/SKILL.md
backend/cli/skills/physics/conservation-law-discovery/SKILL.md
backend/cli/skills/physics/dimensional-analysis/SKILL.md
backend/cli/skills/physics/dynamical-systems/SKILL.md
backend/cli/skills/physics/fluid-dynamics/SKILL.md
backend/cli/skills/physics/fluidsim/SKILL.md
backend/cli/skills/physics/hamiltonian-mechanics/SKILL.md
backend/cli/skills/physics/neural-operator/SKILL.md
backend/cli/skills/physics/ode-solver/SKILL.md
backend/cli/skills/physics/pde-solver/SKILL.md
backend/cli/skills/physics/physics-databases/SKILL.md
backend/cli/skills/physics/physics-fitting/SKILL.md
backend/cli/skills/physics/physics-visualization/SKILL.md
backend/cli/skills/physics/pinn-training/SKILL.md
backend/cli/skills/physics/shock-capturing-neural-operators/SKILL.md
backend/cli/skills/physics/sindy-identification/SKILL.md
backend/cli/skills/physics/spectral-analysis/SKILL.md
backend/cli/skills/physics/statistical-mechanics/SKILL.md
backend/cli/skills/physics/symbolic-regression/SKILL.md
backend/cli/skills/physics/wave-propagation/SKILL.md
backend/cli/skills/quantum/cirq/SKILL.md
backend/cli/skills/quantum/pennylane/SKILL.md
backend/cli/skills/quantum/qiskit/SKILL.md
backend/cli/skills/quantum/qutip/SKILL.md
backend/cli/skills/research/hypothesis-generation/SKILL.md
backend/cli/skills/research/initialize-atlas-graph/SKILL.md
backend/cli/skills/research/market-research-reports/SKILL.md
backend/cli/skills/research/peer-review/SKILL.md
backend/cli/skills/research/research-grants/SKILL.md
backend/cli/skills/research/research-lookup/SKILL.md
backend/cli/skills/research/scientific-brainstorming/SKILL.md
backend/cli/skills/research/scientific-critical-thinking/SKILL.md
backend/cli/skills/visualization/dna-visualization/SKILL.md
backend/cli/skills/visualization/matplotlib/SKILL.md
backend/cli/skills/visualization/plotly/SKILL.md
backend/cli/skills/visualization/protein-diagram/SKILL.md
backend/cli/skills/visualization/scientific-visualization/SKILL.md
backend/cli/skills/visualization/seaborn/SKILL.md
backend/cli/skills/writing/citation-management/SKILL.md
backend/cli/skills/writing/hugging-face-paper-publisher/SKILL.md
backend/cli/skills/writing/latex-posters/SKILL.md
backend/cli/skills/writing/literature-review/SKILL.md
backend/cli/skills/writing/ml-paper-writing/SKILL.md
backend/cli/skills/writing/pptx-posters/SKILL.md
backend/cli/skills/writing/scientific-writing/SKILL.md
backend/cli/skills/writing/venue-templates/SKILL.md
backend/cli/skills/biology/clinical-decision-support/SKILL.md
backend/cli/skills/biology/esm/SKILL.md
backend/cli/skills/biology/lamindb/SKILL.md
backend/cli/skills/biology/pydicom/SKILL.md
backend/cli/skills/coding/exploratory-data-analysis/SKILL.md
backend/cli/skills/coding/matlab/SKILL.md
backend/cli/skills/coding/shap/SKILL.md
backend/cli/skills/coding/sympy/SKILL.md
backend/cli/skills/data-engineering/geopandas/SKILL.md
backend/cli/skills/ml-training/hugging-face-model-trainer/SKILL.md
backend/cli/skills/other/get-available-resources/SKILL.md
backend/cli/skills/other/hugging-face-jobs/SKILL.md
backend/cli/skills/other/iso-13485-certification/SKILL.md

Metadata

Files
0
Version
e9844a4
Hash
46865174
Indexed
2026-07-11 17:28

Home - Wiki
Copyright © 2011-2026 iteam. Current version is 2.155.2. UTC+08:00, 2026-07-14 14:11
浙ICP备14020137号-1 $Map of visitor$