Today will explore the Deepgram API for converting voice to text [transcription]. Whether building a voice assistant, transcribing meetings or creating a voice-controlled app, Deepgram makes it easier than ever to get started.
Deepgram is a powerful speech recognition platform that uses advanced machine learning models to transcribe audio in real-time. It offers an easy-to-use API that developers can integrate into their applications for tasks like transcribing phone calls, converting meetings into text, or even analyzing customer interactions.
Accuracy: Deepgram boasts high accuracy rates thanks to its deep learning algorithms trained on vast datasets.
Real-Time Transcription: Get instant results as you speak, perfect for live applications.
Multiple Languages: Supports several languages and accents, making it versatile for global applications.
Install - pip install httpx
import httpx import asyncio import logging import traceback
#recording_url: The URL of the audio file to be transcribed. #callback_url: The URL to which Deepgram will send the #transcription results (optional). #api_key: Your Deepgram API key. async def transcribe_audio(recording_url: str, callback_url: str, api_key: str): url = "https://api.deepgram.com/v1/listen" # Define headers headers = { "Authorization": f"Token {api_key}" } # Define query parameters query_params = { "callback_method": "post", "callback": callback_url } # Define body parameters body_params = { "url": recording_url }
logger.info(f"Sending request to {url} with headers: {headers}, query: {query_params}, body: {body_params}") async with httpx.AsyncClient(timeout=60.0) as client: try: # Make a POST request with query parameters and body response = await client.post(url, headers=headers, params=query_params, json=body_params) response.raise_for_status() # Raise an error for HTTP error responses result = response.json() logger.info(f"Response received: {result}") return result
We create an instance of httpx.AsyncClient with a timeout of 60 seconds. Using async with ensures that the client is properly closed after the block is executed.
If the request is successful, we parse the JSON response and log it, then return the result.
You can use for sample call back URL for testing.
This structured approach highlights how to utilize asynchronous programming in Python to interact with the Deepgram API efficiently. By breaking the code into blocks and explaining each part, readers can better understand the implementation and how to adapt it to their own needs.
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