Streaming sends Claude’s response token by token as it’s generated, instead of waiting for the full completion before showing anything. For a chat UI this is the difference between a user staring at a spinner for several seconds and seeing the first words appear within a few hundred milliseconds. The Claude API Tutorial introduces the basic stream.text_stream helper — this guide covers the full picture: the raw event stream, async streaming, error handling, and a complete FastAPI endpoint that streams Claude’s output to a browser.
Prerequisites
pip install anthropic
# for the API endpoint example later:
pip install fastapi uvicornThe Simple Way: text_stream
For the common case — print or display text as it arrives — use the messages.stream() context manager and iterate stream.text_stream. It yields plain text chunks, already de-noised from the underlying event protocol:
from anthropic import Anthropic
client = Anthropic()
with client.messages.stream(
model="claude-sonnet-4-6",
max_tokens=1024,
messages=[{"role": "user", "content": "Write a haiku about debugging."}],
) as stream:
for text in stream.text_stream:
print(text, end="", flush=True)
final_message = stream.get_final_message()
print(f"\n\nstop_reason: {final_message.stop_reason}")
print(f"output tokens: {final_message.usage.output_tokens}")stream.get_final_message() must be called inside (or after) the with block, after the iteration finishes. It returns the same Message object you’d get from a non-streaming call — complete content, stop_reason, and usage — without you having to reassemble it from chunks.
The Raw Event Stream
text_stream is built on top of a lower-level stream of typed events. Iterate the stream object directly to see all of them:
with client.messages.stream(
model="claude-sonnet-4-6",
max_tokens=1024,
messages=[{"role": "user", "content": "Write a haiku about debugging."}],
) as stream:
for event in stream:
print(event.type)The event types you’ll see, in order:
message_start— the initialMessageshell: emptycontent, role, model, andusage.input_tokenscontent_block_start— a new content block begins;event.indexandevent.content_blockshow its type (text,tool_use, etc.)content_block_delta— incremental content;event.delta.typeistext_delta(has.text),input_json_delta(has.partial_json, for tool inputs), orthinking_delta(extended thinking)content_block_stop— the block atevent.indexis completemessage_delta— top-level changes:event.delta.stop_reasonand updatedevent.usage.output_tokensmessage_stop— the stream is finished
Handling text manually looks like this — useful if you need to react to message_delta (e.g. update a token counter live) while still streaming text:
with client.messages.stream(
model="claude-sonnet-4-6",
max_tokens=1024,
messages=[{"role": "user", "content": "Write a haiku about debugging."}],
) as stream:
for event in stream:
if event.type == "content_block_delta" and event.delta.type == "text_delta":
print(event.delta.text, end="", flush=True)
elif event.type == "message_delta":
print(f"\n[tokens so far: {event.usage.output_tokens}]", end="")Async Streaming
For web backends, use AsyncAnthropic so the stream doesn’t block the event loop. The interface is identical, just with async with / async for:
import asyncio
from anthropic import AsyncAnthropic
client = AsyncAnthropic()
async def main():
async with client.messages.stream(
model="claude-sonnet-4-6",
max_tokens=1024,
messages=[{"role": "user", "content": "Write a haiku about debugging."}],
) as stream:
async for text in stream.text_stream:
print(text, end="", flush=True)
asyncio.run(main())Building a Streaming API Endpoint (FastAPI + SSE)
To stream Claude’s output to a browser, forward each text chunk as a Server-Sent Event. FastAPI’s StreamingResponse accepts an async generator — wrap the Claude stream directly:
from fastapi import FastAPI
from fastapi.responses import StreamingResponse
from anthropic import AsyncAnthropic
app = FastAPI()
client = AsyncAnthropic()
@app.get("/chat")
async def chat(message: str):
async def event_stream():
async with client.messages.stream(
model="claude-sonnet-4-6",
max_tokens=1024,
messages=[{"role": "user", "content": message}],
) as stream:
async for text in stream.text_stream:
yield f"data: {text}\n\n"
yield "event: done\ndata: {}\n\n"
return StreamingResponse(
event_stream(),
media_type="text/event-stream",
headers={"Cache-Control": "no-cache", "X-Accel-Buffering": "no"},
)X-Accel-Buffering: no stops nginx from buffering the whole response before sending it — without it, “streaming” arrives in one burst at the end. On the frontend, read the stream with fetch and a ReadableStream reader, or use the browser’s EventSource for GET-only endpoints. Each data: ... line is one text chunk; append it to the UI as it arrives.
Handling Errors and Interruptions
Streaming requests can fail mid-stream — rate limits, network drops, or overload errors. Wrap the stream in a try/except and decide how to surface a partial response:
import anthropic
try:
with client.messages.stream(
model="claude-sonnet-4-6",
max_tokens=1024,
messages=[{"role": "user", "content": "Write a haiku about debugging."}],
) as stream:
for text in stream.text_stream:
print(text, end="", flush=True)
except anthropic.APIConnectionError:
print("\n[connection lost — showing partial response]")
except anthropic.RateLimitError:
print("\n[rate limited — retry shortly]")
except anthropic.APIStatusError as e:
print(f"\n[API error {e.status_code}]")If the client disconnects (e.g. the user closes the browser tab mid-response), exit the FastAPI generator early so the SDK calls stream.close() via the async with block — this stops billing for output tokens you’d otherwise generate into the void. FastAPI handles this automatically when the underlying connection drops and the generator is garbage-collected, but for long generations consider checking await request.is_disconnected() periodically inside the loop and breaking if true.
Streaming with Tool Use
Streaming works the same way when tools are provided — text still arrives via text_delta events, and tool arguments arrive incrementally via input_json_delta events on the relevant content block. stream.get_final_message() gives you fully-parsed tool_use blocks once the stream ends, exactly like a non-streaming response. See Claude API Function Calling for the complete tool-use loop, which works unchanged whether the underlying calls are streamed or not.
Best Practices
- Use
stream.get_final_message()forstop_reasonandusageinstead of manually accumulatingmessage_deltaevents - For web backends, use
AsyncAnthropic— a synchronous stream blocks the event loop for the entire generation - Set
Cache-Control: no-cacheandX-Accel-Buffering: noso proxies don’t buffer SSE responses - Detect client disconnects and stop the generation early — half-finished output you discard still consumes output tokens
- Streaming doesn’t change pricing — total input/output tokens are billed the same whether streamed or not
- Wrap streams in try/except for
APIConnectionError,RateLimitError, andAPIStatusError; decide whether to show a partial response or retry
Summary
stream.text_streamyields plain text chunks — the simplest way to display output as it’s generated- The raw event stream exposes
message_start,content_block_start,content_block_delta(text_delta/input_json_delta/thinking_delta),content_block_stop,message_delta, andmessage_stop stream.get_final_message()returns the completeMessagewithstop_reasonandusageafter streaming finishes- Use
AsyncAnthropicwithasync with/async forfor non-blocking streaming in web backends - FastAPI’s
StreamingResponse+ an async generator turns Claude’s stream into Server-Sent Events for the browser - Tool use streams the same way — text via
text_delta, tool arguments viainput_json_delta - Handle disconnects and API errors explicitly — streaming adds new failure modes mid-response that a single blocking call doesn’t have
Further reading: Claude API Tutorial for the full Messages API, and Claude API Function Calling for multi-step tool-use loops.
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