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unslothai--unsloth/studio/backend/core/inference/pricing.py
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chore: import upstream snapshot with attribution
2026-07-13 12:59:56 +08:00

279 lines
12 KiB
Python

# SPDX-License-Identifier: AGPL-3.0-only
# Copyright 2026-present the Unsloth AI Inc. team. All rights reserved. See /studio/LICENSE.AGPL-3.0
"""Per-MTok pricing tables and ``calculate_cost`` (usage block -> USD).
Sources: Anthropic prompt-caching docs (5m write 1.25x, 1h write 2x,
read 0.1x), web search ($10/1000), code execution; OpenAI pricing page.
"""
from __future__ import annotations
from typing import Any, Optional
# Per-MTok base USD. Cache multipliers apply to `input_per_mtok`
# (not absolute prices), per Anthropic docs.
ANTHROPIC_PRICING: dict[str, dict[str, float]] = {
"claude-opus-4-7": {"input_per_mtok": 5.0, "output_per_mtok": 25.0},
"claude-opus-4-6": {"input_per_mtok": 5.0, "output_per_mtok": 25.0},
# Alias bare + dated id: backend defaults use the bare form, which
# won't prefix-match the dated key.
"claude-opus-4-5": {"input_per_mtok": 5.0, "output_per_mtok": 25.0},
"claude-opus-4-5-20251101": {"input_per_mtok": 5.0, "output_per_mtok": 25.0},
"claude-opus-4-1": {"input_per_mtok": 15.0, "output_per_mtok": 75.0},
"claude-opus-4-1-20250805": {"input_per_mtok": 15.0, "output_per_mtok": 75.0},
"claude-opus-4-20250514": {"input_per_mtok": 15.0, "output_per_mtok": 75.0},
"claude-sonnet-4-6": {"input_per_mtok": 3.0, "output_per_mtok": 15.0},
"claude-sonnet-4-5": {"input_per_mtok": 3.0, "output_per_mtok": 15.0},
"claude-sonnet-4-5-20250929": {"input_per_mtok": 3.0, "output_per_mtok": 15.0},
"claude-sonnet-4-20250514": {"input_per_mtok": 3.0, "output_per_mtok": 15.0},
"claude-haiku-4-5": {"input_per_mtok": 1.0, "output_per_mtok": 5.0},
"claude-haiku-4-5-20251001": {"input_per_mtok": 1.0, "output_per_mtok": 5.0},
}
OPENAI_PRICING: dict[str, dict[str, float]] = {
# Verified against developers.openai.com/api/docs/pricing.
# `long_context_*` keys apply past the threshold (gpt-5.5/5.4: 272k);
# families without them ship a single rate.
"gpt-5.5": {
"input_per_mtok": 5.0,
"output_per_mtok": 30.0,
"long_context_threshold": 272_000,
"long_context_input_per_mtok": 10.0,
"long_context_output_per_mtok": 45.0,
},
"gpt-5.5-pro": {"input_per_mtok": 30.0, "output_per_mtok": 180.0},
"gpt-5.4": {
"input_per_mtok": 2.5,
"output_per_mtok": 15.0,
"long_context_threshold": 272_000,
"long_context_input_per_mtok": 5.0,
"long_context_output_per_mtok": 22.5,
},
"gpt-5.4-pro": {"input_per_mtok": 30.0, "output_per_mtok": 180.0},
"gpt-5.4-mini": {"input_per_mtok": 0.75, "output_per_mtok": 4.5},
"gpt-5.4-nano": {"input_per_mtok": 0.20, "output_per_mtok": 1.25},
"gpt-5.3-codex": {"input_per_mtok": 1.75, "output_per_mtok": 14.0},
# chat-latest aliases gpt-5.5.
"gpt-5.3-chat-latest": {"input_per_mtok": 5.0, "output_per_mtok": 30.0},
"chat-latest": {"input_per_mtok": 5.0, "output_per_mtok": 30.0},
# o-series / gpt-4.5 left off the pricing page: omit so calculate_cost
# returns priced=False instead of silently $0.
}
# Shared multipliers (all Anthropic models).
ANTHROPIC_CACHE_5M_WRITE_MULT = 1.25
ANTHROPIC_CACHE_1H_WRITE_MULT = 2.0
ANTHROPIC_CACHE_READ_MULT = 0.1
# Anthropic fast-mode (Opus 4.6/4.7 only): 6x on input + output.
# https://platform.claude.com/docs/en/build-with-claude/fast-mode#pricing
ANTHROPIC_FAST_MODE_MULT = 6.0
# OpenAI: cache reads 0.1x; cache writes pay input price.
OPENAI_CACHE_READ_MULT = 0.1
# Server-tool surcharges. Anthropic code_exec: $0.05/hr marginal
# (50 free hours/day per org, not shown here).
ANTHROPIC_WEB_SEARCH_USD_PER_1K = 10.0
ANTHROPIC_CODE_EXEC_USD_PER_HOUR = 0.05
# OpenAI container bills per memory tier; report the 1g default
# ($0.09/hr) since the tier isn't surfaced to the ledger.
OPENAI_WEB_SEARCH_USD_PER_1K = 10.0
OPENAI_CONTAINER_USD_PER_HOUR = 0.09 # 1g default tier
def _lookup(provider: str, model: str) -> Optional[dict[str, float]]:
table = (
ANTHROPIC_PRICING
if provider == "anthropic"
else OPENAI_PRICING
if provider == "openai"
else None
)
if table is None:
return None
if model in table:
return table[model]
# Longest-prefix match on a dash boundary: dated snapshots inherit
# canonical prices, but "claude-opus-4-15" won't match "claude-opus-4-1".
for key in sorted(table, key = len, reverse = True):
if model.startswith(key) and (len(model) == len(key) or model[len(key)] == "-"):
return table[key]
return None
def calculate_cost(provider: str, model: str, usage: dict[str, Any]) -> dict[str, float]:
"""Return a per-turn USD cost breakdown (per-bucket + total).
Unknown model -> ``priced`` False and USD fields 0.0 (token counts still report).
"""
prices = _lookup(provider, model)
out: dict[str, float] = {
"input_usd": 0.0,
"output_usd": 0.0,
"cache_write_usd": 0.0,
"cache_read_usd": 0.0,
"server_tools_usd": 0.0,
"total_usd": 0.0,
"billable_input_tokens": 0,
"billable_output_tokens": 0,
"model_priced": model if prices else "",
"priced": bool(prices),
}
# Accept raw (input_tokens/output_tokens) and Studio chat-style
# (prompt_tokens/completion_tokens) envelopes. Cache buckets differ:
# raw Anthropic: input_tokens EXCLUDES cache buckets
# raw OpenAI: input_tokens INCLUDES cache_read
# Studio Anthropic: prompt_tokens INCLUDES cache_creation + cache_read
# Studio OpenAI: prompt_tokens == raw input_tokens
# Clamp >=0 so corrupted payloads can't produce a negative bill.
cache_creation = max(0, int(usage.get("cache_creation_input_tokens") or 0))
cache_read_native_present = (
"cache_read_input_tokens" in usage and usage.get("cache_read_input_tokens") is not None
)
cache_read = max(0, int(usage.get("cache_read_input_tokens") or 0))
# Fall back to mirrored prompt_tokens_details only when native
# cache_read_input_tokens is absent; an explicit native 0 is
# authoritative, so a stale proxy mirror can't inflate cache_read.
if not cache_read_native_present:
details = usage.get("prompt_tokens_details") or {}
if isinstance(details, dict):
cache_read = max(0, int(details.get("cached_tokens") or 0))
has_input_tokens = "input_tokens" in usage and usage.get("input_tokens") is not None
if has_input_tokens:
input_tokens = max(0, int(usage.get("input_tokens") or 0))
else:
# Chat-style: peel cache buckets back out for Anthropic to get
# the raw uncached prompt count.
prompt_tokens = max(0, int(usage.get("prompt_tokens") or 0))
if provider == "anthropic":
input_tokens = max(0, prompt_tokens - cache_creation - cache_read)
else:
input_tokens = prompt_tokens
# Prefer raw output_tokens even when 0 (an `or` would pick a stale
# completion_tokens).
if "output_tokens" in usage and usage.get("output_tokens") is not None:
output_tokens = max(0, int(usage.get("output_tokens") or 0))
else:
output_tokens = max(0, int(usage.get("completion_tokens") or 0))
if provider == "openai":
# Cached tokens land on input_tokens_details (raw Responses) or
# prompt_tokens_details (Studio chat-style).
for key in ("input_tokens_details", "prompt_tokens_details"):
details = usage.get(key) or {}
if isinstance(details, dict):
cache_read = max(cache_read, int(details.get("cached_tokens") or 0))
# OpenAI input_tokens already counts cache_read.
out["billable_input_tokens"] = input_tokens + cache_creation
else:
# Anthropic input_tokens excludes cache buckets; add them back.
out["billable_input_tokens"] = input_tokens + cache_creation + cache_read
out["billable_output_tokens"] = output_tokens
if not prices:
return out
# Long-context tier: whole-turn flip (not per-token blend) once
# billable_input_tokens crosses the threshold.
lc_thresh = prices.get("long_context_threshold")
in_long_context_tier = (
lc_thresh is not None
and out["billable_input_tokens"] >= int(lc_thresh)
and "long_context_input_per_mtok" in prices
and "long_context_output_per_mtok" in prices
)
if in_long_context_tier:
base = prices["long_context_input_per_mtok"]
out_per = prices["long_context_output_per_mtok"]
out["model_priced"] = f"{model} (long-context >{lc_thresh})"
else:
base = prices["input_per_mtok"]
out_per = prices["output_per_mtok"]
# Anthropic fast-mode: 6x on input + output. Cache multipliers stack
# on top, so applying once to (base, out_per) flows into the
# cache_*_usd buckets below.
if provider == "anthropic" and usage.get("speed") == "fast":
base *= ANTHROPIC_FAST_MODE_MULT
out_per *= ANTHROPIC_FAST_MODE_MULT
if out["model_priced"]:
out["model_priced"] = f"{out['model_priced']} (fast)"
out["input_usd"] = (input_tokens / 1_000_000.0) * base
out["output_usd"] = (output_tokens / 1_000_000.0) * out_per
if provider == "anthropic":
# Split cache_creation into 5m / 1h buckets when surfaced.
# Tolerate non-dict (some proxies fold to an int total).
cc_raw = usage.get("cache_creation")
cc_breakdown = cc_raw if isinstance(cc_raw, dict) else {}
cc_5m = max(0, int(cc_breakdown.get("ephemeral_5m_input_tokens") or 0))
cc_1h = max(0, int(cc_breakdown.get("ephemeral_1h_input_tokens") or 0))
if cc_5m + cc_1h == 0 and cache_creation > 0:
# No breakdown -- assume default 5m pool.
cc_5m = cache_creation
out["cache_write_usd"] = (cc_5m / 1_000_000.0) * base * ANTHROPIC_CACHE_5M_WRITE_MULT + (
cc_1h / 1_000_000.0
) * base * ANTHROPIC_CACHE_1H_WRITE_MULT
out["cache_read_usd"] = (cache_read / 1_000_000.0) * base * ANTHROPIC_CACHE_READ_MULT
# Server-tool surcharges.
srv = usage.get("server_tool_use") or {}
if isinstance(srv, dict):
web_searches = int(srv.get("web_search_requests") or 0)
code_exec_hours = float(srv.get("code_execution_hours") or 0.0)
out["server_tools_usd"] = (
web_searches / 1_000.0 * ANTHROPIC_WEB_SEARCH_USD_PER_1K
+ code_exec_hours * ANTHROPIC_CODE_EXEC_USD_PER_HOUR
)
else:
# OpenAI: cache writes pay base input, only reads get 0.1x.
# Subtract cached from already-counted input_usd to avoid
# double-billing (OpenAI folds cache into input_tokens).
if cache_read > 0:
non_cached_input = max(0, input_tokens - cache_read)
out["input_usd"] = (non_cached_input / 1_000_000.0) * base
out["cache_read_usd"] = (cache_read / 1_000_000.0) * base * OPENAI_CACHE_READ_MULT
# OpenAI server-tool surcharges arrive under `openai_tool_use`
# (normalised by the SSE finaliser from output items).
srv = usage.get("openai_tool_use") or {}
if isinstance(srv, dict):
web_searches = int(srv.get("web_search_requests") or 0)
container_hours = float(srv.get("container_hours") or 0.0)
out["server_tools_usd"] = (
web_searches / 1_000.0 * OPENAI_WEB_SEARCH_USD_PER_1K
+ container_hours * OPENAI_CONTAINER_USD_PER_HOUR
)
out["total_usd"] = round(
out["input_usd"]
+ out["output_usd"]
+ out["cache_write_usd"]
+ out["cache_read_usd"]
+ out["server_tools_usd"],
6,
)
return out
def pricing_snapshot() -> dict[str, Any]:
"""Whole pricing table for the /api/providers/pricing endpoint."""
return {
"anthropic": {
"models": dict(ANTHROPIC_PRICING),
"cache_5m_write_mult": ANTHROPIC_CACHE_5M_WRITE_MULT,
"cache_1h_write_mult": ANTHROPIC_CACHE_1H_WRITE_MULT,
"cache_read_mult": ANTHROPIC_CACHE_READ_MULT,
"fast_mode_mult": ANTHROPIC_FAST_MODE_MULT,
"web_search_usd_per_1k": ANTHROPIC_WEB_SEARCH_USD_PER_1K,
"code_execution_usd_per_hour": ANTHROPIC_CODE_EXEC_USD_PER_HOUR,
},
"openai": {
"models": dict(OPENAI_PRICING),
"cache_read_mult": OPENAI_CACHE_READ_MULT,
"web_search_usd_per_1k": OPENAI_WEB_SEARCH_USD_PER_1K,
"container_usd_per_hour": OPENAI_CONTAINER_USD_PER_HOUR,
},
}