A toolkit for designing multiagent systems
Project description
Agentbyte
Agentbyte is an observability-first agentic AI framework for building and studying multiagent systems with a learning-first, implementation-oriented workflow.
Current release: 0.4.5
Repository: gitlab.com/pyninja/aiengineering/agentbyte
What's New in 0.4.5
- Added a new
agentbyte.presetspackage with provider-awarebuild_chat_client()plus defaultget_*builders for agents, orchestrators, and workflows. - Added a review-gated plan-based preset flow so reviewer feedback now triggers writer revision loops until explicit
APPROVED. - Added the
notebooks/usecases/08.1-default-presets.ipynbuse-case notebook to demonstrate preset agents, orchestrators, workflows, and streaming.
What's New in 0.4.4
- Corrected the release after
v0.4.3published0.4.2artifacts in CI. - Added a mandatory release guardrail to clean
dist/, rebuild, and verify artifact filenames before tagging.
What's New in 0.4.3
- Added a new
agentbyte-plan-based-orchestrationCopilot skill for Chapter 7.5 plan-based orchestration. - Updated the
agentbyte-llm-clientskill to documentEmbeddingResult.embeddingversusEmbeddingResult.embeddings.
What's New in 0.4.2
- Rebased the WebUI source frontend on the picoagents frontend snapshot copied into
src/agentbyte/webui/frontend/. - Added the packaged picoagents-style
agent_framework_devuiassets undersrc/agentbyte/webui/for parity/reference work. - Fixed wheel packaging so the bundled WebUI assets are included once, unblocking PyPI publish.
What's New in 0.4.1
- Extended
EmbeddingResultwith a single-vectorembeddingfield while preservingembeddings,usage,model, andmetadata. - Updated OpenAI and Azure embedding clients so single-input calls are easier to consume without losing batch compatibility.
- Added and validated focused embedding client coverage for the new dual-field result contract.
What's New in 0.4.0
- Added multi-agent orchestration foundations with
BaseOrchestrator. - Added
RoundRobinOrchestrator,AIOrchestrator, andPlanBasedOrchestrator. - Added a full termination system for autonomous orchestration flows.
- Added plan-based orchestration examples, tests, and study/tutorial docs.
- Expanded OpenTelemetry coverage across agents, workflows, and orchestration roots with aggregate usage summaries.
- Added a packaged Chapter 8 WebUI with FastAPI + SSE, session handling, discovery, and a browser UI for agents, workflows, and orchestrators.
What's New in 0.3.5
- Added first-class async embeddings clients in
agentbyte.llmfor OpenAI and Azure OpenAI. - Added separate single/batch embedding methods:
create(input_text: str) -> list[float]create_batch(input_texts: list[str]) -> list[list[float]]
- Added Azure embedding deployment setting support:
AZURE_OPENAI_EMBEDDING_DEPLOYMENT_NAME.
What's New in 0.3.2
- Python baseline lowered: package runtime requirement is now Python 3.11+.
- CI release pipeline now builds/tests/publishes with Python 3.11.
What's New in 0.3.1
- Interactive CLI wizard: running
agentbytewith no arguments launches a guided numbered menu — choose a command, then choose a provider (github-copilot/claude), then confirm before any files are written. - Non-interactive path (
agentbyte create-skills --provider=github-copilot) is fully preserved for scripting and CI.
What's New in 0.3.0
- Breaking:
BaseAgentno longer stores context.self.context,reset_context(),clear_messages(),window_messages(), andreset()are removed.Agent.__init__no longer accepts acontext=kwarg. Agent.run(task=None, context=None, ...)andAgent.run_stream(task=None, context=None, ...)accept a per-callAgentContext. A fresh context is created automatically whenNone.AgentResponse.contextreturns the fully-populated working context to the caller — enables clean multi-turn patterns without agent-side state.AgentAsTool.execute()andexecute_stream()thread the caller-supplied context through to the underlying agent.- Notebooks, study docs (
topic_agents.md,topic_approval.md), and OTel span guide (topic_otel_spans.md) updated to the caller-owned context pattern.
See CHANGELOG.md for the complete release history.
Current Capabilities
- Agent execution loop with
run()andrun_stream()APIs. - Tooling system (function tools + core tools + memory tool).
- Middleware chain for request/response/error handling.
- Built-in middleware: logging, security, rate limiting, approval, telemetry.
- Memory abstractions: list memory, file memory, context injection.
- OpenAI and Azure OpenAI model client support.
- OpenTelemetry-first tracing with model-call and task-level usage telemetry.
Observability-First Telemetry
Agentbyte exposes two complementary telemetry layers:
- Per-call middleware spans (
chat ...,tool ...) for model/tool-level diagnostics. - Task-level root span attributes (
agent ...) for final aggregated usage and outcome.
Enable telemetry:
export AGENTBYTE_ENABLE_OTEL=true
Per-call span attributes emitted by OTelMiddleware:
gen_ai.usage.input_tokens,gen_ai.usage.output_tokens,gen_ai.usage.total_tokensgen_ai.usage.cost_estimate_usdgen_ai.response.finish_reasongen_ai.request.modelgen_ai.tool.name,gen_ai.tool.success
Degugging Traces without UI
details can be found in the OTel spans guide.
Practical interpretation:
chat gpt-4.1-minispans show per-call usage/cost/finish reason.agent <name>span shows final accumulated usage and final task outcome.
Installation
Python requirement: 3.11+
uv sync --all-groups
Optional extras:
uv sync --extra openai
uv sync --extra azureopenai
uv sync --extra otel
uv sync --extra webui
Install in another project (pip / uv add)
Use extras to enable provider + telemetry support:
pip install "agentbyte[azureopenai,otel]"
uv add "agentbyte[azureopenai,otel]"
For the browser WebUI:
pip install "agentbyte[webui]"
# or
uv add "agentbyte[webui]"
Install all optional features:
pip install "agentbyte[all]"
# or
uv add "agentbyte[all]"
Note: the Azure extra is azureopenai.
Quick Start
from agentbyte.agents import Agent
from agentbyte.middleware import LoggingMiddleware
# model_client = OpenAIChatCompletionClient(...) or AzureOpenAIChatCompletionClient(...)
def quick_faq_lookup(topic: str) -> str:
faq = {
"middleware": "Middleware handles cross-cutting runtime concerns.",
"memory": "Memory helps agents keep useful context across interactions.",
}
return faq.get(topic.lower(), "No FAQ found.")
agent = Agent(
name="helpful-assistant",
description="Helpful assistant with middleware",
instructions="Answer clearly and use tools when needed.",
model_client=model_client,
tools=[quick_faq_lookup],
middlewares=[LoggingMiddleware()],
)
Run The WebUI
Option 1: Run the included demo app
This is the easiest way to see the WebUI working end to end with:
- one demo agent
- one demo workflow
- one demo orchestrator
Step 1. Install the WebUI extra:
uv sync --extra webui
Step 2. Start the demo app:
uv run python examples/webui/basic_webui.py
Step 3. Open the browser:
http://127.0.0.1:8080
If auto-open is enabled in your environment, the browser may open automatically.
Option 2: Run the WebUI against your current project directory
Use this when you want Agentbyte to scan a directory for exported agent, workflow, or orchestrator objects.
Important: discovery is convention-based. The scanned directory must contain Python modules that expose top-level variables literally named agent, workflow, or orchestrator. If you point --dir at a folder that does not export those names, the UI will load but show No entities found.
Step 1. Install the WebUI extra:
uv sync --extra webui
Step 2. Launch the WebUI and scan the current directory:
uv run agentbyte webui --dir .
Step 3. Open the browser:
http://127.0.0.1:8080
Useful variants:
uv run agentbyte webui --dir . --port 8080 --host 127.0.0.1 --no-open
uv run agentbyte webui --dir examples --port 8090
For this repository, the most reliable first-run path is still the bundled demo:
uv run python examples/webui/basic_webui.py
Use agentbyte webui --dir ... when you have a directory of exportable demo modules, for example:
# my_entities.py
agent = ...
workflow = ...
orchestrator = ...
Option 3: Run it programmatically
Use this when you want to serve in-memory entities directly from Python.
from agentbyte.webui import serve
serve(entities=[agent], port=8080, auto_open=True)
Quick Troubleshooting
If the app does not start:
uv sync --extra webui
If port 8080 is already in use:
uv run agentbyte webui --dir . --port 8090
If you do not want the browser to open automatically:
uv run agentbyte webui --dir . --no-open
Project Layout
src/agentbyte/
agents/
llm/
memory/
middleware/
tools/
messages.py
context.py
types.py
Development
uv run ruff check src tests
uv run pytest tests -v
License
MIT — see LICENSE.
References
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