mirror of
https://github.com/katanemo/plano.git
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295 lines
11 KiB
Python
295 lines
11 KiB
Python
import json
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import os
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from jinja2 import Environment, FileSystemLoader
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import yaml
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from jsonschema import validate
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from urllib.parse import urlparse
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SUPPORTED_PROVIDERS = [
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"arch",
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"claude",
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"deepseek",
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"groq",
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"mistral",
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"openai",
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"gemini",
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]
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def get_endpoint_and_port(endpoint, protocol):
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endpoint_tokens = endpoint.split(":")
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if len(endpoint_tokens) > 1:
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endpoint = endpoint_tokens[0]
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port = int(endpoint_tokens[1])
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return endpoint, port
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else:
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if protocol == "http":
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port = 80
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else:
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port = 443
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return endpoint, port
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def validate_and_render_schema():
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ENVOY_CONFIG_TEMPLATE_FILE = os.getenv(
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"ENVOY_CONFIG_TEMPLATE_FILE", "envoy.template.yaml"
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)
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ARCH_CONFIG_FILE = os.getenv("ARCH_CONFIG_FILE", "/app/arch_config.yaml")
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ARCH_CONFIG_FILE_RENDERED = os.getenv(
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"ARCH_CONFIG_FILE_RENDERED", "/app/arch_config_rendered.yaml"
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)
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ENVOY_CONFIG_FILE_RENDERED = os.getenv(
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"ENVOY_CONFIG_FILE_RENDERED", "/etc/envoy/envoy.yaml"
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)
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ARCH_CONFIG_SCHEMA_FILE = os.getenv(
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"ARCH_CONFIG_SCHEMA_FILE", "arch_config_schema.yaml"
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)
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env = Environment(loader=FileSystemLoader(os.getenv("TEMPLATE_ROOT", "./")))
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template = env.get_template(ENVOY_CONFIG_TEMPLATE_FILE)
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try:
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validate_prompt_config(ARCH_CONFIG_FILE, ARCH_CONFIG_SCHEMA_FILE)
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except Exception as e:
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print(str(e))
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exit(1) # validate_prompt_config failed. Exit
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with open(ARCH_CONFIG_FILE, "r") as file:
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arch_config = file.read()
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with open(ARCH_CONFIG_SCHEMA_FILE, "r") as file:
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arch_config_schema = file.read()
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config_yaml = yaml.safe_load(arch_config)
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_ = yaml.safe_load(arch_config_schema)
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inferred_clusters = {}
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endpoints = config_yaml.get("endpoints", {})
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# override the inferred clusters with the ones defined in the config
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for name, endpoint_details in endpoints.items():
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inferred_clusters[name] = endpoint_details
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endpoint = inferred_clusters[name]["endpoint"]
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protocol = inferred_clusters[name].get("protocol", "http")
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(
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inferred_clusters[name]["endpoint"],
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inferred_clusters[name]["port"],
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) = get_endpoint_and_port(endpoint, protocol)
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print("defined clusters from arch_config.yaml: ", json.dumps(inferred_clusters))
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if "prompt_targets" in config_yaml:
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for prompt_target in config_yaml["prompt_targets"]:
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name = prompt_target.get("endpoint", {}).get("name", None)
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if not name:
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continue
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if name not in inferred_clusters:
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raise Exception(
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f"Unknown endpoint {name}, please add it in endpoints section in your arch_config.yaml file"
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)
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arch_tracing = config_yaml.get("tracing", {})
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llms_with_endpoint = []
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updated_llm_providers = []
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llm_provider_name_set = set()
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llms_with_usage = []
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model_name_keys = set()
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model_usage_name_keys = set()
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for llm_provider in config_yaml["llm_providers"]:
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if llm_provider.get("usage", None):
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llms_with_usage.append(llm_provider["name"])
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if llm_provider.get("name") in llm_provider_name_set:
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raise Exception(
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f"Duplicate llm_provider name {llm_provider.get('name')}, please provide unique name for each llm_provider"
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)
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model_name = llm_provider.get("model")
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if model_name in model_name_keys:
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raise Exception(
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f"Duplicate model name {model_name}, please provide unique model name for each llm_provider"
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)
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model_name_keys.add(model_name)
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if llm_provider.get("name") is None:
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llm_provider["name"] = model_name
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model_name_tokens = model_name.split("/")
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if len(model_name_tokens) < 2:
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raise Exception(
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f"Invalid model name {model_name}. Please provide model name in the format <provider>/<model_id>."
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)
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provider = model_name_tokens[0]
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model_id = "/".join(model_name_tokens[1:])
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if provider not in SUPPORTED_PROVIDERS:
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if (
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llm_provider.get("base_url", None) is None
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or llm_provider.get("provider_interface", None) is None
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):
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raise Exception(
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f"Must provide base_url and provider_interface for unsupported provider {provider} for model {model_name}. Supported providers are: {', '.join(SUPPORTED_PROVIDERS)}"
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)
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provider = llm_provider.get("provider_interface", None)
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elif llm_provider.get("provider_interface", None) is not None:
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raise Exception(
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f"Please provide provider interface as part of model name {model_name} using the format <provider>/<model_id>. For example, use 'openai/gpt-3.5-turbo' instead of 'gpt-3.5-turbo' "
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)
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if model_id in model_name_keys:
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raise Exception(
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f"Duplicate model_id {model_id}, please provide unique model_id for each llm_provider"
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)
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model_name_keys.add(model_id)
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for routing_preference in llm_provider.get("routing_preferences", []):
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if routing_preference.get("name") in model_usage_name_keys:
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raise Exception(
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f"Duplicate routing preference name \"{routing_preference.get('name')}\", please provide unique name for each routing preference"
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)
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model_usage_name_keys.add(routing_preference.get("name"))
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llm_provider["model"] = model_id
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llm_provider["provider_interface"] = provider
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llm_provider_name_set.add(llm_provider.get("name"))
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provider = None
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if llm_provider.get("provider") and llm_provider.get("provider_interface"):
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raise Exception(
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"Please provide either provider or provider_interface, not both"
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)
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if llm_provider.get("provider"):
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provider = llm_provider["provider"]
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llm_provider["provider_interface"] = provider
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del llm_provider["provider"]
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updated_llm_providers.append(llm_provider)
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if llm_provider.get("base_url", None):
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base_url = llm_provider["base_url"]
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urlparse_result = urlparse(base_url)
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url_path = urlparse_result.path
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if url_path and url_path != "/":
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raise Exception(
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f"Please provide base_url without path, got {base_url}. Use base_url like 'http://example.com' instead of 'http://example.com/path'."
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)
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if urlparse_result.scheme == "" or urlparse_result.scheme not in [
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"http",
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"https",
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]:
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raise Exception(
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"Please provide a valid URL with scheme (http/https) in base_url"
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)
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protocol = urlparse_result.scheme
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port = urlparse_result.port
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if port is None:
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if protocol == "http":
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port = 80
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else:
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port = 443
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endpoint = urlparse_result.hostname
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llm_provider["endpoint"] = endpoint
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llm_provider["port"] = port
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llm_provider["protocol"] = protocol
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llms_with_endpoint.append(llm_provider)
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if len(model_usage_name_keys) > 0:
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routing_llm_provider = config_yaml.get("routing", {}).get("llm_provider", None)
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if routing_llm_provider and routing_llm_provider not in llm_provider_name_set:
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raise Exception(
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f"Routing llm_provider {routing_llm_provider} is not defined in llm_providers"
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)
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if routing_llm_provider is None and "arch-router" not in llm_provider_name_set:
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updated_llm_providers.append(
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{
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"name": "arch-router",
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"provider_interface": "arch",
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"model": config_yaml.get("routing", {}).get("model", "Arch-Router"),
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}
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)
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config_yaml["llm_providers"] = updated_llm_providers
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arch_config_string = yaml.dump(config_yaml)
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arch_llm_config_string = yaml.dump(config_yaml)
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prompt_gateway_listener = config_yaml.get("listeners", {}).get(
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"ingress_traffic", {}
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)
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if prompt_gateway_listener.get("port") == None:
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prompt_gateway_listener["port"] = 10000 # default port for prompt gateway
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if prompt_gateway_listener.get("address") == None:
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prompt_gateway_listener["address"] = "127.0.0.1"
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if prompt_gateway_listener.get("timeout") == None:
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prompt_gateway_listener["timeout"] = "10s"
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llm_gateway_listener = config_yaml.get("listeners", {}).get("egress_traffic", {})
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if llm_gateway_listener.get("port") == None:
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llm_gateway_listener["port"] = 12000 # default port for llm gateway
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if llm_gateway_listener.get("address") == None:
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llm_gateway_listener["address"] = "127.0.0.1"
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if llm_gateway_listener.get("timeout") == None:
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llm_gateway_listener["timeout"] = "10s"
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use_agent_orchestrator = config_yaml.get("overrides", {}).get(
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"use_agent_orchestrator", False
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)
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agent_orchestrator = None
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if use_agent_orchestrator:
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print("Using agent orchestrator")
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if len(endpoints) == 0:
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raise Exception(
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"Please provide agent orchestrator in the endpoints section in your arch_config.yaml file"
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)
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elif len(endpoints) > 1:
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raise Exception(
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"Please provide single agent orchestrator in the endpoints section in your arch_config.yaml file"
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)
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else:
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agent_orchestrator = list(endpoints.keys())[0]
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print("agent_orchestrator: ", agent_orchestrator)
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data = {
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"prompt_gateway_listener": prompt_gateway_listener,
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"llm_gateway_listener": llm_gateway_listener,
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"arch_config": arch_config_string,
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"arch_llm_config": arch_llm_config_string,
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"arch_clusters": inferred_clusters,
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"arch_llm_providers": config_yaml["llm_providers"],
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"arch_tracing": arch_tracing,
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"local_llms": llms_with_endpoint,
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"agent_orchestrator": agent_orchestrator,
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}
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rendered = template.render(data)
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print(ENVOY_CONFIG_FILE_RENDERED)
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print(rendered)
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with open(ENVOY_CONFIG_FILE_RENDERED, "w") as file:
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file.write(rendered)
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with open(ARCH_CONFIG_FILE_RENDERED, "w") as file:
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file.write(arch_config_string)
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def validate_prompt_config(arch_config_file, arch_config_schema_file):
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with open(arch_config_file, "r") as file:
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arch_config = file.read()
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with open(arch_config_schema_file, "r") as file:
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arch_config_schema = file.read()
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config_yaml = yaml.safe_load(arch_config)
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config_schema_yaml = yaml.safe_load(arch_config_schema)
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try:
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validate(config_yaml, config_schema_yaml)
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except Exception as e:
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print(
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f"Error validating arch_config file: {arch_config_file}, schema file: {arch_config_schema_file}, error: {e}"
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)
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raise e
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if __name__ == "__main__":
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validate_and_render_schema()
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