Skip to main content

A trivial set of API bindings for AI models, because I'd like them to be easy to use.

Project description

TrivialAI

(A set of httpx-based, trivial bindings for AI models — now with optional streaming)

Install

pip install pytrivialai
# Optional: HTTP/2 for OpenAI/Anthropic
# pip install "pytrivialai[http2]"
  • Requires Python ≥ 3.9.
  • Uses httpx (no more requests).

Quick start

>>> from trivialai import claude, gcp, ollama, chatgpt

Synchronous usage (unchanged ergonomics)

Ollama

>>> client = ollama.Ollama("gemma2:2b", "http://localhost:11434/")
# or ollama.Ollama("deepseek-coder-v2:latest", "http://localhost:11434/")
# or ollama.Ollama("mannix/llama3.1-8b-abliterated:latest", "http://localhost:11434/")
>>> client.generate("sys msg", "Say hi with 'platypus'.").content
"Hi there—platypus!"
>>> client.generate_json("sys msg", "Return {'name': 'Platypus'} as JSON").content
{'name': 'Platypus'}

Claude

>>> client = claude.Claude("claude-3-5-sonnet-20240620", os.environ["ANTHROPIC_API_KEY"])
>>> client.generate("sys msg", "Say hi with 'platypus'.").content
"Hello, platypus!"

GCP (Vertex AI)

>>> client = gcp.GCP("gemini-1.5-flash-001", "/path/to/gcp_creds.json", "us-central1")
>>> client.generate("sys msg", "Say hi with 'platypus'.").content
"Hello, platypus!"

ChatGPT

>>> client = chatgpt.ChatGPT("gpt-4o-mini", os.environ["OPENAI_API_KEY"])
>>> client.generate("sys msg", "Say hi with 'platypus'.").content
"Hello, platypus!"

Streaming (NDJSON-style events)

All providers expose a common streaming shape via stream(...) (sync iterator) and astream(...) (async):

Event schema

  • {"type":"start", "provider": "<ollama|openai|anthropic|gcp>", "model": "..."}

  • {"type":"delta", "text":"...", "scratchpad":"..."}

    • For Ollama, scratchpad contains model “thinking” extracted from <think>…</think>.
    • For ChatGPT/Claude, scratchpad is "" (empty).
  • {"type":"end", "content":"...", "scratchpad": <str|None>, "tokens": <int>}

  • {"type":"error", "message":"..."}

Example: streaming Ollama (sync)

>>> client = ollama.Ollama("gemma2:2b", "http://localhost:11434/")
>>> for ev in client.stream("sys", "Explain, think step-by-step."):
...     if ev["type"] == "delta":
...         # show model output live
...         print(ev["text"], end="")
...     elif ev["type"] == "end":
...         print("\n-- scratchpad --")
...         print(ev["scratchpad"])

Example: parse-at-end streaming

If you want incremental updates and a structured parse at the end:

from trivialai.util import stream_checked, loadch

for ev in client.stream("sys", "Return a JSON object gradually."):
    # pass-through for UI
    if ev["type"] in {"start","delta"}:
        print(ev)
    elif ev["type"] == "end":
        # now emit the final parsed event
        for final_ev in stream_checked(iter([ev]), loadch):
            print(final_ev)  # {"type":"final","ok":True,"parsed":{...}}

Shortcut: stream_json(system, prompt) yields the same stream and a final parsed event using loadch.

Async flavor

async for ev in client.astream("sys", "Stream something."):
    ...

Tool Calls

Use Tools to register Python functions, describe them to the model, and safely execute the model’s chosen call.

1) Define tools

You can register functions directly or with a decorator. Docstring = description. Type hints become the argument schema.

from typing import Optional, List
from trivialai.tools import Tools

tools = Tools()  # or Tools(extras={"api_key": "..."}), see below

@tools.define()
def screenshot(url: str, selectors: Optional[List[str]] = None) -> None:
    """Take a screenshot of a page; optionally highlight CSS selectors."""
    print("shot", url, selectors)

# Or:
def search(query: str, top_k: int = 5) -> List[str]:
    """Search and return top results."""
    return [f"res{i}" for i in range(top_k)]
tools.define(search)

2) Show tools to the model

tools.list() returns LLM-friendly metadata:

>>> tools.list()
[{
  "name": "screenshot",
  "description": "Take a screenshot of a page; optionally highlight CSS selectors.",
  "type": {"url": <class 'str'>, "selectors": typing.Optional[typing.List[str]]},
  "args": {
    "url": {"type": "string"},
    "selectors": {"type": "array", "items": {"type": "string"}, "nullable": True}
  }
},
{
  "name": "search",
  "description": "Search and return top results.",
  "type": {"query": <class 'str'>, "top_k": <class 'int'>},
  "args": {
    "query": {"type": "string"},
    "top_k": {"type": "int"}
  }
}]

3) Ask the model to choose a tool

All LLM clients support a helper that prompts for a tool call and validates it:

from trivialai import ollama
client = ollama.Ollama("gemma2:2b", "http://localhost:11434/")

res = client.generate_tool_call(
    tools,
    system="You are a tool-use router.",
    prompt="Take a screenshot of https://example.com and highlight the search box."
)

# Validated, parsed dict:
>>> res.content
{'functionName': 'screenshot', 'args': {'url': 'https://example.com', 'selectors': ['#search']}}

Multiple calls? Use generate_many_tool_calls(...):

multi = client.generate_many_tool_calls(
    tools,
    prompt="Search for 'platypus', then screenshot the first result."
)
# -> [{'functionName': 'search', ...}, {'functionName': 'screenshot', ...}]

4) Validate/execute (with robust errors)

  • Validation rules: all required params present; optional params may be omitted; unknown params are rejected.
  • On invalid input, methods raise TransformError (no None returns).
from trivialai.util import TransformError

tool_call = res.content  # {'functionName': 'screenshot', 'args': {...}}

# Validate explicitly (optional; call() validates too)
assert tools.validate(tool_call)

# Execute
try:
    tools.call(tool_call)
except TransformError as e:
    print("Tool call failed:", e.message, e.raw)

If you already have a raw JSON string from a model and want to validate+parse:

parsed = tools.transform('{"functionName":"search","args":{"query":"platypus"}}')
# or for a list of calls:
calls = tools.transform_multi('[{"functionName":"search","args":{"query":"platypus"}}]')

5) Extras / environment defaults

Attach fixed kwargs (e.g., tokens, org IDs) that merge into every call:

tools = Tools(extras={"api_key": "SECRET"})  # extras override user args by default
tools.call(tool_call)

# Per-call control:
tools.call_with_extras({"api_key": "OTHER"}, tool_call, override=True)   # extras win
tools.call_with_extras({"api_key": "OTHER"}, tool_call, override=False)  # user args win

Notes

  • Return values are whatever your function returns—side effects are on you. Keep tools small and deterministic when possible.
  • tools.list() keeps the original type hints for backward compatibility and adds a normalized args schema that’s friendlier for prompts.
  • Safety: only register functions you actually want the model to invoke.

Embeddings

The embeddings module uses httpx and supports Ollama embeddings:

from trivialai.embedding import OllamaEmbedder
embed = OllamaEmbedder(model="nomic-embed-text", server="http://localhost:11434")
vec = embed("hello world")

Notes & compatibility

  • Dependencies: httpx replaces requests. Use httpx[http2] if you want HTTP/2 for OpenAI/Anthropic.
  • Python: ≥ 3.9 (we use asyncio.to_thread).
  • Scratchpad: only Ollama surfaces <think> content; others emit scratchpad as "" in deltas and None in the final event.
  • GCP/Vertex AI: primarily for setup/auth. No native provider streaming; astream falls back to a single final chunk unless you override.

Changelog (highlights)

  • 0.3.0

    • Switched to httpx; removed requests.
    • Added streaming interface (stream, astream) with a unified event schema.
    • Exposed Ollama <think> content live via scratchpad in deltas.
    • Added stream_checked / astream_checked helpers to parse the final output while preserving deltas.
    • Tightened typing across modules; added tests.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

trivialai-0.3.1.tar.gz (29.8 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

trivialai-0.3.1-py3-none-any.whl (24.7 kB view details)

Uploaded Python 3

File details

Details for the file trivialai-0.3.1.tar.gz.

File metadata

  • Download URL: trivialai-0.3.1.tar.gz
  • Upload date:
  • Size: 29.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.9.24

File hashes

Hashes for trivialai-0.3.1.tar.gz
Algorithm Hash digest
SHA256 858c5bbf81c3753626bc3f45ef17d76825db4b79470efa9628564dc806ae6c6a
MD5 49512bf1feafe20602a49dd88d09e0b3
BLAKE2b-256 8c1602f0a329872e279a9c38a6fdfd10dcb59111bb069fdfb8cb2728c165123c

See more details on using hashes here.

File details

Details for the file trivialai-0.3.1-py3-none-any.whl.

File metadata

  • Download URL: trivialai-0.3.1-py3-none-any.whl
  • Upload date:
  • Size: 24.7 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.9.24

File hashes

Hashes for trivialai-0.3.1-py3-none-any.whl
Algorithm Hash digest
SHA256 20442f6133c38e80a40ee1b018d122a512028938e14e4473202d93070d416551
MD5 335d9597c45a8edacd9b532d498c3a51
BLAKE2b-256 baadcae03f59883ecccced6d8977e9a226bb8efdeb4f02ffcc97a3892b1fa9c1

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page