Agent skill

telnyx-ai-inference-ruby

Access Telnyx LLM inference APIs, embeddings, and AI analytics for call insights and summaries. This skill provides Ruby SDK examples.

Stars 167
Forks 6

Install this agent skill to your Project

npx add-skill https://github.com/team-telnyx/ai/tree/main/providers/claude/plugin/skills/telnyx-ai-inference-ruby

Metadata

Additional technical details for this skill

author
telnyx
product
ai-inference
language
ruby
generated by
telnyx-ext-skills-generator

SKILL.md

Telnyx Ai Inference - Ruby

Installation

bash
gem install telnyx

Setup

ruby
require "telnyx"

client = Telnyx::Client.new(
  api_key: ENV["TELNYX_API_KEY"], # This is the default and can be omitted
)

All examples below assume client is already initialized as shown above.

Error Handling

All API calls can fail with network errors, rate limits (429), validation errors (422), or authentication errors (401). Always handle errors in production code:

ruby
begin
  result = client.messages.send_(to: "+13125550001", from: "+13125550002", text: "Hello")
rescue Telnyx::Errors::APIConnectionError
  puts "Network error — check connectivity and retry"
rescue Telnyx::Errors::RateLimitError
  # 429: rate limited — wait and retry with exponential backoff
  sleep(1) # Check Retry-After header for actual delay
rescue Telnyx::Errors::APIStatusError => e
  puts "API error #{e.status}: #{e.message}"
  if e.status == 422
    puts "Validation error — check required fields and formats"
  end
end

Common error codes: 401 invalid API key, 403 insufficient permissions, 404 resource not found, 422 validation error (check field formats), 429 rate limited (retry with exponential backoff).

Important Notes

  • Pagination: Use .auto_paging_each for automatic iteration: page.auto_paging_each { |item| puts item.id }.

Transcribe speech to text

Transcribe speech to text. This endpoint is consistent with the OpenAI Transcription API and may be used with the OpenAI JS or Python SDK.

POST /ai/audio/transcriptions

ruby
response = client.ai.audio.transcribe(model: :"distil-whisper/distil-large-v2")

puts(response)

Returns: duration (number), segments (array[object]), text (string)

Create a chat completion

Chat with a language model. This endpoint is consistent with the OpenAI Chat Completions API and may be used with the OpenAI JS or Python SDK.

POST /ai/chat/completions — Required: messages

Optional: api_key_ref (string), best_of (integer), early_stopping (boolean), enable_thinking (boolean), frequency_penalty (number), guided_choice (array[string]), guided_json (object), guided_regex (string), length_penalty (number), logprobs (boolean), max_tokens (integer), min_p (number), model (string), n (number), presence_penalty (number), response_format (object), stream (boolean), temperature (number), tool_choice (enum: none, auto, required), tools (array[object]), top_logprobs (integer), top_p (number), use_beam_search (boolean)

ruby
response = client.ai.chat.create_completion(
  messages: [{content: "You are a friendly chatbot.", role: :system}, {content: "Hello, world!", role: :user}]
)

puts(response)

List conversations

Retrieve a list of all AI conversations configured by the user. Supports PostgREST-style query parameters for filtering. Examples are included for the standard metadata fields, but you can filter on any field in the metadata JSON object.

GET /ai/conversations

ruby
conversations = client.ai.conversations.list

puts(conversations)

Returns: created_at (date-time), id (uuid), last_message_at (date-time), metadata (object), name (string)

Create a conversation

Create a new AI Conversation.

POST /ai/conversations

Optional: metadata (object), name (string)

ruby
conversation = client.ai.conversations.create

puts(conversation)

Returns: created_at (date-time), id (uuid), last_message_at (date-time), metadata (object), name (string)

Get Insight Template Groups

Get all insight groups

GET /ai/conversations/insight-groups

ruby
page = client.ai.conversations.insight_groups.retrieve_insight_groups

puts(page)

Returns: created_at (date-time), description (string), id (uuid), insights (array[object]), name (string), webhook (string)

Create Insight Template Group

Create a new insight group

POST /ai/conversations/insight-groups — Required: name

Optional: description (string), webhook (string)

ruby
insight_template_group_detail = client.ai.conversations.insight_groups.insight_groups(name: "my-resource")

puts(insight_template_group_detail)

Returns: created_at (date-time), description (string), id (uuid), insights (array[object]), name (string), webhook (string)

Get Insight Template Group

Get insight group by ID

GET /ai/conversations/insight-groups/{group_id}

ruby
insight_template_group_detail = client.ai.conversations.insight_groups.retrieve("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(insight_template_group_detail)

Returns: created_at (date-time), description (string), id (uuid), insights (array[object]), name (string), webhook (string)

Update Insight Template Group

Update an insight template group

PUT /ai/conversations/insight-groups/{group_id}

Optional: description (string), name (string), webhook (string)

ruby
insight_template_group_detail = client.ai.conversations.insight_groups.update("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(insight_template_group_detail)

Returns: created_at (date-time), description (string), id (uuid), insights (array[object]), name (string), webhook (string)

Delete Insight Template Group

Delete insight group by ID

DELETE /ai/conversations/insight-groups/{group_id}

ruby
result = client.ai.conversations.insight_groups.delete("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(result)

Assign Insight Template To Group

Assign an insight to a group

POST /ai/conversations/insight-groups/{group_id}/insights/{insight_id}/assign

ruby
result = client.ai.conversations.insight_groups.insights.assign(
  "182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e",
  group_id: "182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e"
)

puts(result)

Unassign Insight Template From Group

Remove an insight from a group

DELETE /ai/conversations/insight-groups/{group_id}/insights/{insight_id}/unassign

ruby
result = client.ai.conversations.insight_groups.insights.delete_unassign(
  "182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e",
  group_id: "182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e"
)

puts(result)

Get Insight Templates

Get all insights

GET /ai/conversations/insights

ruby
page = client.ai.conversations.insights.list

puts(page)

Returns: created_at (date-time), id (uuid), insight_type (enum: custom, default), instructions (string), json_schema (object), name (string), webhook (string)

Create Insight Template

Create a new insight

POST /ai/conversations/insights — Required: instructions, name

Optional: json_schema (object), webhook (string)

ruby
insight_template_detail = client.ai.conversations.insights.create(instructions: "You are a helpful assistant.", name: "my-resource")

puts(insight_template_detail)

Returns: created_at (date-time), id (uuid), insight_type (enum: custom, default), instructions (string), json_schema (object), name (string), webhook (string)

Get Insight Template

Get insight by ID

GET /ai/conversations/insights/{insight_id}

ruby
insight_template_detail = client.ai.conversations.insights.retrieve("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(insight_template_detail)

Returns: created_at (date-time), id (uuid), insight_type (enum: custom, default), instructions (string), json_schema (object), name (string), webhook (string)

Update Insight Template

Update an insight template

PUT /ai/conversations/insights/{insight_id}

Optional: instructions (string), json_schema (object), name (string), webhook (string)

ruby
insight_template_detail = client.ai.conversations.insights.update("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(insight_template_detail)

Returns: created_at (date-time), id (uuid), insight_type (enum: custom, default), instructions (string), json_schema (object), name (string), webhook (string)

Delete Insight Template

Delete insight by ID

DELETE /ai/conversations/insights/{insight_id}

ruby
result = client.ai.conversations.insights.delete("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(result)

Get a conversation

Retrieve a specific AI conversation by its ID.

GET /ai/conversations/{conversation_id}

ruby
conversation = client.ai.conversations.retrieve("550e8400-e29b-41d4-a716-446655440000")

puts(conversation)

Returns: created_at (date-time), id (uuid), last_message_at (date-time), metadata (object), name (string)

Update conversation metadata

Update metadata for a specific conversation.

PUT /ai/conversations/{conversation_id}

Optional: metadata (object)

ruby
conversation = client.ai.conversations.update("550e8400-e29b-41d4-a716-446655440000")

puts(conversation)

Returns: created_at (date-time), id (uuid), last_message_at (date-time), metadata (object), name (string)

Delete a conversation

Delete a specific conversation by its ID.

DELETE /ai/conversations/{conversation_id}

ruby
result = client.ai.conversations.delete("550e8400-e29b-41d4-a716-446655440000")

puts(result)

Get insights for a conversation

Retrieve insights for a specific conversation

GET /ai/conversations/{conversation_id}/conversations-insights

ruby
response = client.ai.conversations.retrieve_conversations_insights("550e8400-e29b-41d4-a716-446655440000")

puts(response)

Returns: conversation_insights (array[object]), created_at (date-time), id (string), status (enum: pending, in_progress, completed, failed)

Create Message

Add a new message to the conversation. Used to insert a new messages to a conversation manually ( without using chat endpoint )

POST /ai/conversations/{conversation_id}/message — Required: role

Optional: content (string), metadata (object), name (string), sent_at (date-time), tool_call_id (string), tool_calls (array[object]), tool_choice (object)

ruby
result = client.ai.conversations.add_message("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e", role: "user")

puts(result)

Get conversation messages

Retrieve messages for a specific conversation, including tool calls made by the assistant.

GET /ai/conversations/{conversation_id}/messages

ruby
messages = client.ai.conversations.messages.list("550e8400-e29b-41d4-a716-446655440000")

puts(messages)

Returns: created_at (date-time), role (enum: user, assistant, tool), sent_at (date-time), text (string), tool_calls (array[object])

Get Tasks by Status

Retrieve tasks for the user that are either queued, processing, failed, success or partial_success based on the query string. Defaults to queued and processing.

GET /ai/embeddings

ruby
embeddings = client.ai.embeddings.list

puts(embeddings)

Returns: bucket (string), created_at (date-time), finished_at (date-time), status (enum: queued, processing, success, failure, partial_success), task_id (string), task_name (string), user_id (string)

Embed documents

Perform embedding on a Telnyx Storage Bucket using an embedding model. The current supported file types are:

  • PDF
  • HTML
  • txt/unstructured text files
  • json
  • csv
  • audio / video (mp3, mp4, mpeg, mpga, m4a, wav, or webm ) - Max of 100mb file size. Any files not matching the above types will be attempted to be embedded as unstructured text.

POST /ai/embeddings — Required: bucket_name

Optional: document_chunk_overlap_size (integer), document_chunk_size (integer), embedding_model (object), loader (object)

ruby
embedding_response = client.ai.embeddings.create(bucket_name: "my-bucket")

puts(embedding_response)

Returns: created_at (string), finished_at (string | null), status (string), task_id (uuid), task_name (string), user_id (uuid)

List embedded buckets

Get all embedding buckets for a user.

GET /ai/embeddings/buckets

ruby
buckets = client.ai.embeddings.buckets.list

puts(buckets)

Returns: buckets (array[string])

Get file-level embedding statuses for a bucket

Get all embedded files for a given user bucket, including their processing status.

GET /ai/embeddings/buckets/{bucket_name}

ruby
bucket = client.ai.embeddings.buckets.retrieve("bucket_name")

puts(bucket)

Returns: created_at (date-time), error_reason (string), filename (string), last_embedded_at (date-time), status (string), updated_at (date-time)

Disable AI for an Embedded Bucket

Deletes an entire bucket's embeddings and disables the bucket for AI-use, returning it to normal storage pricing.

DELETE /ai/embeddings/buckets/{bucket_name}

ruby
result = client.ai.embeddings.buckets.delete("bucket_name")

puts(result)

Search for documents

Perform a similarity search on a Telnyx Storage Bucket, returning the most similar num_docs document chunks to the query. Currently the only available distance metric is cosine similarity which will return a distance between 0 and 1. The lower the distance, the more similar the returned document chunks are to the query.

POST /ai/embeddings/similarity-search — Required: bucket_name, query

Optional: num_of_docs (integer)

ruby
response = client.ai.embeddings.similarity_search(bucket_name: "my-bucket", query: "What is Telnyx?")

puts(response)

Returns: distance (number), document_chunk (string), metadata (object)

Embed URL content

Embed website content from a specified URL, including child pages up to 5 levels deep within the same domain. The process crawls and loads content from the main URL and its linked pages into a Telnyx Cloud Storage bucket.

POST /ai/embeddings/url — Required: url, bucket_name

ruby
embedding_response = client.ai.embeddings.url(bucket_name: "my-bucket", url: "https://example.com/resource")

puts(embedding_response)

Returns: created_at (string), finished_at (string | null), status (string), task_id (uuid), task_name (string), user_id (uuid)

Get an embedding task's status

Check the status of a current embedding task. Will be one of the following:

  • queued - Task is waiting to be picked up by a worker
  • processing - The embedding task is running
  • success - Task completed successfully and the bucket is embedded
  • failure - Task failed and no files were embedded successfully
  • partial_success - Some files were embedded successfully, but at least one failed

GET /ai/embeddings/{task_id}

ruby
embedding = client.ai.embeddings.retrieve("task_id")

puts(embedding)

Returns: created_at (string), finished_at (string), status (enum: queued, processing, success, failure, partial_success), task_id (uuid), task_name (string)

List fine tuning jobs

Retrieve a list of all fine tuning jobs created by the user.

GET /ai/fine_tuning/jobs

ruby
jobs = client.ai.fine_tuning.jobs.list

puts(jobs)

Returns: created_at (integer), finished_at (integer | null), hyperparameters (object), id (string), model (string), organization_id (string), status (enum: queued, running, succeeded, failed, cancelled), trained_tokens (integer | null), training_file (string)

Create a fine tuning job

Create a new fine tuning job.

POST /ai/fine_tuning/jobs — Required: model, training_file

Optional: hyperparameters (object), suffix (string)

ruby
fine_tuning_job = client.ai.fine_tuning.jobs.create(model: "openai/gpt-4o", training_file: "training-data.jsonl")

puts(fine_tuning_job)

Returns: created_at (integer), finished_at (integer | null), hyperparameters (object), id (string), model (string), organization_id (string), status (enum: queued, running, succeeded, failed, cancelled), trained_tokens (integer | null), training_file (string)

Get a fine tuning job

Retrieve a fine tuning job by job_id.

GET /ai/fine_tuning/jobs/{job_id}

ruby
fine_tuning_job = client.ai.fine_tuning.jobs.retrieve("job_id")

puts(fine_tuning_job)

Returns: created_at (integer), finished_at (integer | null), hyperparameters (object), id (string), model (string), organization_id (string), status (enum: queued, running, succeeded, failed, cancelled), trained_tokens (integer | null), training_file (string)

Cancel a fine tuning job

Cancel a fine tuning job.

POST /ai/fine_tuning/jobs/{job_id}/cancel

ruby
fine_tuning_job = client.ai.fine_tuning.jobs.cancel("job_id")

puts(fine_tuning_job)

Returns: created_at (integer), finished_at (integer | null), hyperparameters (object), id (string), model (string), organization_id (string), status (enum: queued, running, succeeded, failed, cancelled), trained_tokens (integer | null), training_file (string)

Get available models

This endpoint returns a list of Open Source and OpenAI models that are available for use. Note: Model id's will be in the form {source}/{model_name}. For example openai/gpt-4 or mistralai/Mistral-7B-Instruct-v0.1 consistent with HuggingFace naming conventions.

GET /ai/models

ruby
response = client.ai.retrieve_models

puts(response)

Returns: created (integer), id (string), object (string), owned_by (string)

Create embeddings

Creates an embedding vector representing the input text. This endpoint is compatible with the OpenAI Embeddings API and may be used with the OpenAI JS or Python SDK by setting the base URL to https://api.telnyx.com/v2/ai/openai.

POST /ai/openai/embeddings — Required: input, model

Optional: dimensions (integer), encoding_format (enum: float, base64), user (string)

ruby
response = client.ai.openai.embeddings.create_embeddings(
  input: "The quick brown fox jumps over the lazy dog",
  model: "thenlper/gte-large"
)

puts(response)

Returns: data (array[object]), model (string), object (string), usage (object)

List embedding models

Returns a list of available embedding models. This endpoint is compatible with the OpenAI Models API format.

GET /ai/openai/embeddings/models

ruby
response = client.ai.openai.embeddings.list_embedding_models

puts(response)

Returns: created (integer), id (string), object (string), owned_by (string)

Summarize file content

Generate a summary of a file's contents. Supports the following text formats:

  • PDF, HTML, txt, json, csv

Supports the following media formats (billed for both the transcription and summary):

  • flac, mp3, mp4, mpeg, mpga, m4a, ogg, wav, or webm
  • Up to 100 MB

POST /ai/summarize — Required: bucket, filename

Optional: system_prompt (string)

ruby
response = client.ai.summarize(bucket: "my-bucket", filename: "data.csv")

puts(response)

Returns: summary (string)

Get all Speech to Text batch report requests

Retrieves all Speech to Text batch report requests for the authenticated user

GET /legacy/reporting/batch_detail_records/speech_to_text

ruby
speech_to_texts = client.legacy.reporting.batch_detail_records.speech_to_text.list

puts(speech_to_texts)

Returns: created_at (date-time), download_link (string), end_date (date-time), id (string), record_type (string), start_date (date-time), status (enum: PENDING, COMPLETE, FAILED, EXPIRED)

Create a new Speech to Text batch report request

Creates a new Speech to Text batch report request with the specified filters

POST /legacy/reporting/batch_detail_records/speech_to_text — Required: start_date, end_date

ruby
speech_to_text = client.legacy.reporting.batch_detail_records.speech_to_text.create(
  end_date: "2020-07-01T00:00:00-06:00",
  start_date: "2020-07-01T00:00:00-06:00"
)

puts(speech_to_text)

Returns: created_at (date-time), download_link (string), end_date (date-time), id (string), record_type (string), start_date (date-time), status (enum: PENDING, COMPLETE, FAILED, EXPIRED)

Get a specific Speech to Text batch report request

Retrieves a specific Speech to Text batch report request by ID

GET /legacy/reporting/batch_detail_records/speech_to_text/{id}

ruby
speech_to_text = client.legacy.reporting.batch_detail_records.speech_to_text.retrieve(
  "182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e"
)

puts(speech_to_text)

Returns: created_at (date-time), download_link (string), end_date (date-time), id (string), record_type (string), start_date (date-time), status (enum: PENDING, COMPLETE, FAILED, EXPIRED)

Delete a Speech to Text batch report request

Deletes a specific Speech to Text batch report request by ID

DELETE /legacy/reporting/batch_detail_records/speech_to_text/{id}

ruby
speech_to_text = client.legacy.reporting.batch_detail_records.speech_to_text.delete("182bd5e5-6e1a-4fe4-a799-aa6d9a6ab26e")

puts(speech_to_text)

Returns: created_at (date-time), download_link (string), end_date (date-time), id (string), record_type (string), start_date (date-time), status (enum: PENDING, COMPLETE, FAILED, EXPIRED)

Get speech to text usage report

Generate and fetch speech to text usage report synchronously. This endpoint will both generate and fetch the speech to text report over a specified time period.

GET /legacy/reporting/usage_reports/speech_to_text

ruby
response = client.legacy.reporting.usage_reports.retrieve_speech_to_text

puts(response)

Returns: data (object)

Generate speech from text

Generate synthesized speech audio from text input. Returns audio in the requested format (binary audio stream, base64-encoded JSON, or an audio URL for later retrieval). Authentication is provided via the standard Authorization: Bearer header.

POST /text-to-speech/speech

Optional: aws (object), azure (object), disable_cache (boolean), elevenlabs (object), language (string), minimax (object), output_type (enum: binary_output, base64_output), provider (enum: aws, telnyx, azure, elevenlabs, minimax, rime, resemble), resemble (object), rime (object), telnyx (object), text (string), text_type (enum: text, ssml), voice (string), voice_settings (object)

ruby
response = client.text_to_speech.generate

puts(response)

Returns: base64_audio (string)

List available voices

Retrieve a list of available voices from one or all TTS providers. When provider is specified, returns voices for that provider only. Otherwise, returns voices from all providers.

GET /text-to-speech/voices

ruby
response = client.text_to_speech.list_voices

puts(response)

Returns: voices (array[object])

Expand your agent's capabilities with these related and highly-rated skills.

Didn't find tool you were looking for?

Be as detailed as possible for better results