use std::collections::HashMap;
use crate::load_balancer::tasks::TaskDefinition;
use crate::providers::instances::{LlmInstance, BaseInstance};
use crate::providers::types::{LlmRequest, LlmResponse, LlmStream, StreamChunk, TokenUsage, Message};
use crate::providers::streaming::OpenAIStreamChunk;
use crate::errors::{LlmError, LlmResult};
use crate::constants;
use async_trait::async_trait;
use reqwest::header;
use serde::{Serialize, Deserialize};
use futures::StreamExt;
pub struct GroqInstance {
base: BaseInstance,
}
#[derive(Serialize)]
struct GroqRequest {
model: String,
messages: Vec<Message>,
#[serde(skip_serializing_if = "Option::is_none")]
max_tokens: Option<u32>,
#[serde(skip_serializing_if = "Option::is_none")]
temperature: Option<f32>,
stream: bool,
}
#[derive(Deserialize)]
struct GroqResponse {
choices: Vec<GroqChoice>,
model: String,
usage: Option<GroqUsage>,
}
#[derive(Deserialize)]
struct GroqChoice {
message: Message,
}
#[derive(Deserialize)]
struct GroqUsage {
prompt_tokens: u32,
completion_tokens: u32,
total_tokens: u32,
}
impl GroqInstance {
pub fn new(
api_key: String,
model: String,
supported_tasks: HashMap<String, TaskDefinition>,
enabled: bool,
) -> Self {
let base = BaseInstance::new("groq".to_string(), api_key, model, supported_tasks, enabled);
Self { base }
}
fn build_headers(&self) -> Result<header::HeaderMap, LlmError> {
let mut headers = header::HeaderMap::new();
headers.insert(
header::AUTHORIZATION,
header::HeaderValue::from_str(&format!("Bearer {}", self.base.api_key()))
.map_err(|e| LlmError::ConfigError(format!("Invalid API key format: {}", e)))?,
);
headers.insert(
header::CONTENT_TYPE,
header::HeaderValue::from_static("application/json"),
);
Ok(headers)
}
}
#[async_trait]
impl LlmInstance for GroqInstance {
async fn generate(&self, request: &LlmRequest) -> LlmResult<LlmResponse> {
if !self.base.is_enabled() {
return Err(LlmError::ProviderDisabled("Groq".to_string()));
}
let headers = self.build_headers()?;
let model = request.model.clone().unwrap_or_else(|| self.base.model().to_string());
let groq_request = GroqRequest {
model,
messages: request.messages.clone(),
max_tokens: request.max_tokens,
temperature: request.temperature,
stream: false,
};
let response = self.base.client()
.post(constants::GROQ_API_ENDPOINT)
.headers(headers)
.json(&groq_request)
.send()
.await?;
let response_status = response.status();
if response_status.as_u16() == 429 {
let error_text = response.text().await
.unwrap_or_else(|_| "Rate limit exceeded".to_string());
return Err(LlmError::RateLimit(format!("Groq rate limit: {}", error_text)));
}
if !response_status.is_success() {
let error_text = response.text().await
.unwrap_or_else(|_| format!("Unknown error. Status: {}", response_status));
return Err(LlmError::ApiError(format!("Groq API error: {}", error_text)));
}
let groq_response: GroqResponse = response.json().await?;
if groq_response.choices.is_empty() {
return Err(LlmError::ApiError("No response from Groq".to_string()));
}
let usage = groq_response.usage.map(|u| TokenUsage {
prompt_tokens: u.prompt_tokens,
completion_tokens: u.completion_tokens,
total_tokens: u.total_tokens,
});
Ok(LlmResponse {
content: groq_response.choices[0].message.content.clone(),
model: groq_response.model,
usage,
})
}
async fn generate_stream(&self, request: &LlmRequest) -> LlmResult<LlmStream> {
if !self.base.is_enabled() {
return Err(LlmError::ProviderDisabled("Groq".to_string()));
}
let headers = self.build_headers()?;
let model = request.model.clone().unwrap_or_else(|| self.base.model().to_string());
let groq_request = GroqRequest {
model,
messages: request.messages.clone(),
max_tokens: request.max_tokens,
temperature: request.temperature,
stream: true,
};
let response = self.base.client()
.post(constants::GROQ_API_ENDPOINT)
.headers(headers)
.json(&groq_request)
.send()
.await?;
let response_status = response.status();
if response_status.as_u16() == 429 {
let error_text = response.text().await
.unwrap_or_else(|_| "Rate limit exceeded".to_string());
return Err(LlmError::RateLimit(format!("Groq rate limit: {}", error_text)));
}
if !response_status.is_success() {
let error_text = response.text().await
.unwrap_or_else(|_| format!("Unknown error. Status: {}", response_status));
return Err(LlmError::ApiError(format!("Groq API error: {}", error_text)));
}
let byte_stream = response.bytes_stream();
let chunk_stream = byte_stream
.map(|result| result.map_err(|e| LlmError::RequestError(e)))
.flat_map(|result| {
match result {
Ok(bytes) => {
let text = String::from_utf8_lossy(&bytes);
let chunks: Vec<Result<StreamChunk, LlmError>> = text
.lines()
.filter_map(|line| {
let line = line.trim();
if line.starts_with("data: ") {
let data = &line[6..];
if data == "[DONE]" {
return None;
}
match serde_json::from_str::<OpenAIStreamChunk>(data) {
Ok(chunk) => chunk.to_stream_chunk().map(Ok),
Err(e) => Some(Err(LlmError::ParseError(
format!("Failed to parse streaming chunk: {}", e)
))),
}
} else {
None
}
})
.collect();
futures::stream::iter(chunks)
}
Err(e) => futures::stream::iter(vec![Err(e)])
}
});
Ok(Box::pin(chunk_stream))
}
fn supports_streaming(&self) -> bool {
true
}
fn get_name(&self) -> &str {
self.base.name()
}
fn get_model(&self) -> &str {
self.base.model()
}
fn get_supported_tasks(&self) -> &HashMap<String, TaskDefinition> {
self.base.supported_tasks()
}
fn is_enabled(&self) -> bool {
self.base.is_enabled()
}
}