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authorPaul Buetow <paul@buetow.org>2026-05-24 12:24:01 +0300
committerPaul Buetow <paul@buetow.org>2026-05-24 12:24:01 +0300
commitc11db6e8f92fc818a87d18998bec6e478a33a824 (patch)
tree32d7e8cd57c9fcfd4782cbb7735d980d390fd89f /hyperstack-vm.toml
parent5465aada302974be4977a2186db7053f884ade47 (diff)
cleanup
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diff --git a/hyperstack-vm.toml b/hyperstack-vm.toml
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-[auth]
-api_key_file = "~/.hyperstack"
-
-[hyperstack]
-base_url = "https://infrahub-api.nexgencloud.com/v1"
-
-[state]
-file = ".hyperstack-vm-state.json"
-
-[vm]
-name_prefix = "hyperstack"
-hostname = "hyperstack"
-environment_name = "snonux-ollama"
-
-# A100-80GB is the cost-first default for gpt-oss-120b inference.
-# Switch this to n3-H100x1 if you want safer throughput and compatibility headroom.
-flavor_name = "n3-A100x1"
-image_name = "Ubuntu Server 24.04 LTS R570 CUDA 12.8 with Docker"
-assign_floating_ip = true
-create_bootable_volume = false
-enable_port_randomization = false
-labels = ["gpt-oss-120b", "wireguard"]
-
-[ssh]
-username = "ubuntu"
-private_key_path = "~/.ssh/id_rsa"
-hyperstack_key_name = "earth"
-port = 22
-connect_timeout_sec = 10
-
-[network]
-wireguard_udp_port = 56710
-wireguard_subnet = "192.168.3.0/24"
-# Secure default: "auto" resolves your current public egress IP to /32 at runtime.
-# Override with explicit CIDRs if you deploy from multiple networks or want broader access.
-allowed_ssh_cidrs = ["auto"]
-allowed_wireguard_cidrs = ["auto"]
-# Port 11434 is shared by both Ollama and vLLM for firewall compatibility.
-ollama_port = 11434
-
-[bootstrap]
-enable_guest_bootstrap = true
-install_wireguard = true
-configure_ufw = true
-configure_ollama_host = false
-
-[ollama]
-# Disabled in favour of vLLM; set install = true to switch back to Ollama.
-install = false
-models_dir = "/ephemeral/ollama/models"
-listen_host = "0.0.0.0:11434"
-gpu_overhead_mb = 2000
-num_parallel = 1
-context_length = 32768
-pull_models = ["qwen3-coder-next", "qwen3-coder:30b", "gpt-oss:20b", "gpt-oss:120b", "nemotron-3-super"]
-
-# vLLM serves one model via Docker on the OpenAI-compatible API.
-# Use --vllm / --no-vllm CLI flags to override install at runtime.
-[vllm]
-install = true
-model = "openai/gpt-oss-120b"
-# HuggingFace model cache on ephemeral NVMe (fast; survives reboots on most providers).
-hug_cache_dir = "/ephemeral/hug"
-container_name = "vllm_gpt_oss_120b"
-# Hard architecture limit: max_position_embeddings=131072 in model config.json.
-max_model_len = 131072
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-# tool_call_parser="" disables --enable-auto-tool-choice; the llama3_json parser crashes
-# on gpt-oss responses (vLLM 0.17.1 adds token_ids to responses, breaking the parser API).
-tool_call_parser = ""
-
-# Named model presets for 'ruby hyperstack.rb model switch <name>'.
-# Each preset overrides the matching [vllm] field; unset fields fall back to [vllm] defaults.
-# Switch examples:
-# ruby hyperstack.rb model switch qwen3-coder-next # fast coding, 256k context
-# ruby hyperstack.rb model switch nemotron-super # extended analysis, 131k context
-
-[vllm.presets.qwen3-coder-next]
-model = "bullpoint/Qwen3-Coder-Next-AWQ-4bit"
-container_name = "vllm_qwen3"
-max_model_len = 262144
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = "qwen3_coder"
-
-# NVIDIA Nemotron-3-Super-120B-A12B AWQ 4-bit — hybrid Mamba+MoE (12B active / 120B total).
-# ~60 GB weights on A100 80GB. Uses NoPE (no positional embeddings) so context can be set to
-# 1M by just raising max_model_len; no YaRN needed. May OOM above 256K on A100 80GB.
-# Requires trust_remote_code=true for the nemotron_h architecture.
-# Note: cyankiwi AWQ has model_type="nemotron_nas" (underscore); vLLM keys on "nemotron-nas"
-# (hyphen), so vLLM may not recognise it without trust_remote_code and latest vLLM.
-# NVIDIA Nemotron-3-Super uses the same XML tool call format as Qwen3 XML:
-# <tool_call><function=name><parameter=p>value</parameter></function></tool_call>
-# qwen3_xml handles this format and is compatible with Nemotron's chat template.
-[vllm.presets.nemotron-super]
-model = "cyankiwi/NVIDIA-Nemotron-3-Super-120B-A12B-AWQ-4bit"
-container_name = "vllm_nemotron_super"
-max_model_len = 262144
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = "qwen3_xml"
-trust_remote_code = true
-# nemotron_v3 reasoning parser exposes <think> tokens as reasoning_content in the API.
-extra_vllm_args = ["--reasoning-parser", "nemotron_v3"]
-
-# OpenAI GPT-OSS 20B — ultra-fast MoE (3.6B active / 20B total, MXFP4), ~14 GB on A100.
-# Native MXFP4 quantization; vLLM auto-detects it (no --quantization flag needed).
-# With only 14 GB weights, most of the 80 GB is available for KV cache (64K+ context).
-# tool_call_parser = "" disables --enable-auto-tool-choice: the llama3_json parser crashes
-# on gpt-oss responses (vLLM 0.17.1 adds token_ids to responses, breaking the parser API).
-[vllm.presets.gpt-oss-20b]
-model = "openai/gpt-oss-20b"
-container_name = "vllm_gpt_oss_20b"
-max_model_len = 65536
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = ""
-
-# OpenAI GPT-OSS 120B — powerful MoE (5.1B active / 117B total, MXFP4), ~65 GB on A100.
-# Hard architecture limit: max_position_embeddings=131072 in model config.json.
-# 131072 is the absolute ceiling — exceeding it causes NaN or CUDA OOB errors.
-# For sessions approaching this limit, start a fresh Pi conversation.
-# tool_call_parser = "" disables --enable-auto-tool-choice (same reason as gpt-oss-20b).
-[vllm.presets.gpt-oss-120b]
-model = "openai/gpt-oss-120b"
-container_name = "vllm_gpt_oss_120b"
-max_model_len = 131072
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = ""
-
-# Qwen2.5-Coder-32B-Instruct AWQ — best-in-class open coding model at 32B, ~18 GB on A100.
-# Official Qwen AWQ release; max_position_embeddings=32768 per model config.json.
-[vllm.presets.qwen25-coder-32b]
-model = "Qwen/Qwen2.5-Coder-32B-Instruct-AWQ"
-container_name = "vllm_qwen25_coder32b"
-max_model_len = 32768
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = "hermes"
-
-# Qwen3-Coder-30B-A3B AWQ — Qwen3 generation coding MoE (3B active / 30B total), ~18 GB.
-# Note: model card warns of significant quality loss at 4-bit for this MoE architecture.
-[vllm.presets.qwen3-coder-30b]
-model = "QuantTrio/Qwen3-Coder-30B-A3B-Instruct-AWQ"
-container_name = "vllm_qwen3_coder30b"
-max_model_len = 65536
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = "qwen3_coder"
-
-# DeepSeek-R1-Distill-Qwen-32B AWQ — R1 reasoning distillation of Qwen 32B, ~18 GB on A100.
-# Generates <think> reasoning tokens; --reasoning-parser deepseek_r1 exposes them in the API.
-# tool_call_parser="" disables tool calling (reasoning models don't support it reliably).
-[vllm.presets.deepseek-r1-32b]
-model = "casperhansen/deepseek-r1-distill-qwen-32b-awq"
-container_name = "vllm_deepseek_r1_32b"
-max_model_len = 32768
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = ""
-extra_vllm_args = ["--reasoning-parser", "deepseek_r1"]
-
-# Qwen3-32B AWQ — dense 32B reasoning model with extended context, ~18 GB on A100.
-# Native thinking mode; --reasoning-parser deepseek_r1 is compatible with Qwen3 thinking format.
-# tool_call_parser="" disables tool calling (reasoning models don't support it reliably).
-[vllm.presets.qwen3-32b]
-model = "Qwen/Qwen3-32B-AWQ"
-container_name = "vllm_qwen3_32b"
-max_model_len = 32768
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = ""
-extra_vllm_args = ["--reasoning-parser", "deepseek_r1"]
-
-# Devstral-Small-2507 AWQ — Mistral's coding agent model (~15 GB on A100).
-# Uses HF safetensors weights but Mistral tokenizer (tekken.json) and config (params.json).
-# --load_format mistral is NOT used: AWQ weights are in standard HF safetensors format.
-# --tokenizer_mode mistral and --config_format mistral handle the Mistral-native files.
-[vllm.presets.devstral]
-model = "cyankiwi/Devstral-Small-2507-AWQ-4bit"
-container_name = "vllm_devstral"
-max_model_len = 32768
-gpu_memory_utilization = 0.92
-tensor_parallel_size = 1
-tool_call_parser = "mistral"
-extra_vllm_args = ["--tokenizer_mode", "mistral", "--config_format", "mistral"]
-
-[wireguard]
-auto_setup = true
-setup_script = "./wg1-setup.sh"
-
-[local_client]
-check_wg1_service = true
-interface_name = "wg1"
-config_path = "/etc/wireguard/wg1.conf"