Pydantic
- use Pydantic for input & output for models - update ToolAgent to utilize new model definitions - improve test cases for consistency
This commit is contained in:
@@ -1,81 +1,51 @@
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import json
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from enum import Enum
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from app.markets.base import ProductInfo
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from pydantic import BaseModel, Field
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class PredictorStyle(Enum):
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CONSERVATIVE = "Conservativo"
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AGGRESSIVE = "Aggressivo"
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# TODO (?) Change sentiment to a more structured format or merge it with data analysis (change then also the prompt)
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def prepare_inputs(data: list[ProductInfo], style: PredictorStyle, sentiment: str) -> str:
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return json.dumps({
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"data": [(product.symbol, f"{product.price:.2f}") for product in data],
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"style": style.value,
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"sentiment": sentiment
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})
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class PredictorInput(BaseModel):
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data: list[ProductInfo] = Field(..., description="Market data as a list of ProductInfo")
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style: PredictorStyle = Field(..., description="Prediction style")
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sentiment: str = Field(..., description="Aggregated sentiment from news and social analysis")
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def instructions() -> str:
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return """
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You are an **Allocation Algorithm (Crypto-Algo)**. Your sole objective is to process the input data and generate a strictly structured output, as specified. **You must not provide any explanations, conclusions, introductions, preambles, or comments that are not strictly required by the final format.**
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class ItemPortfolio(BaseModel):
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asset: str = Field(..., description="Name of the asset")
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percentage: float = Field(..., description="Percentage allocation to the asset")
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motivation: str = Field(..., description="Motivation for the allocation")
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**CRITICAL INSTRUCTION: The final output MUST be a valid JSON object written entirely in Italian, following the structure below.**
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class PredictorOutput(BaseModel):
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strategy: str = Field(..., description="Concise operational strategy in Italian")
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portfolio: list[ItemPortfolio] = Field(..., description="List of portfolio items with allocations")
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PREDICTOR_INSTRUCTIONS = """
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You are an **Allocation Algorithm (Crypto-Algo)** specialized in analyzing market data and sentiment to generate an investment strategy and a target portfolio.
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Your sole objective is to process the input data and generate the strictly structured output as required by the response format. **You MUST NOT provide introductions, preambles, explanations, conclusions, or any additional comments that are not strictly required.**
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## Processing Instructions (Absolute Rule)
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Analyze the Input provided in JSON format and generate the Output in two distinct sections. Your allocation strategy must be **derived exclusively from the "Logic Rule" corresponding to the requested *style*** and the *data* provided. **DO NOT** use external knowledge.
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The allocation strategy must be **derived exclusively from the "Allocation Logic" corresponding to the requested *style*** and the provided market/sentiment data. **DO NOT** use external or historical knowledge.
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## Data Input (JSON Format)
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The input will be a single JSON block containing the following mandatory fields:
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1. **"data":** *Array of Arrays*. Market data. Format: `[[Asset_Name: String, Current_Price: String], ...]`
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* *Example:* `[["BTC", "60000.00"], ["ETH", "3500.00"], ["SOL", "150.00"]]`
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2. **"style":** *ENUM String (only "conservativo" or "aggressivo")*. Defines the risk approach.
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3. **"sentiment":** *Descriptive String*. Summarizes market sentiment.
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## Allocation Logic Rules
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## Allocation Logic
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### "Aggressivo" Style (Aggressive)
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* **Priority:** Maximum return (High Volatility accepted).
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* **Priority:** Maximizing return (high volatility accepted).
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* **Focus:** Higher allocation to **non-BTC/ETH assets** with high momentum potential (Altcoins, mid/low-cap assets).
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* **BTC/ETH:** Must form a base (anchor), but their allocation **must not exceed 50%** of the total portfolio.
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* **Sentiment:** Use positive sentiment to increase allocation to high-risk assets.
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* **BTC/ETH:** Must serve as a base (anchor), but their allocation **must not exceed 50%** of the total portfolio.
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* **Sentiment:** Use positive sentiment to increase exposure to high-risk assets.
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### "Conservativo" Style (Conservative)
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* **Priority:** Capital preservation (Volatility minimized).
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* **Priority:** Capital preservation (volatility minimized).
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* **Focus:** Major allocation to **BTC and/or ETH (Large-Cap Assets)**.
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* **BTC/ETH:** Their allocation **must be at least 70%** of the total portfolio.
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* **Altcoins:** Any allocations to non-BTC/ETH assets must be minimal (max 30% combined) and for assets that minimize speculative risk.
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* **Sentiment:** Use positive sentiment only as confirmation for exposure, avoiding reactions to excessive "FOMO" signals.
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## Output Format Requirements (Strict JSON)
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## Output Requirements (Content MUST be in Italian)
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The Output **must be a single JSON object** with two keys: `"strategia"` and `"portafoglio"`.
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1. **"strategia":** *Stringa (massimo 5 frasi in Italiano)*. Una descrizione operativa concisa.
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2. **"portafoglio":** *Array di Oggetti JSON*. La somma delle percentuali deve essere **esattamente 100%**. Ogni oggetto nell'array deve avere i seguenti campi (valori in Italiano):
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* `"asset"`: Nome dell'Asset (es. "BTC").
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* `"percentuale"`: Percentuale di Allocazione (come numero intero o decimale, es. 45.0).
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* `"motivazione"`: Stringa (massimo una frase) che giustifica l'allocazione.
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**THE OUTPUT MUST BE GENERATED BY FAITHFULLY COPYING THE FOLLOWING STRUCTURAL TEMPLATE (IN ITALIAN CONTENT, JSON FORMAT):**
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{
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"strategia": "[Strategia sintetico-operativa in massimo 5 frasi...]",
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"portafoglio": [
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{
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"asset": "Asset_1",
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"percentuale": X,
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"motivazione": "[Massimo una frase chiara in Italiano]"
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},
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{
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"asset": "Asset_2",
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"percentuale": Y,
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"motivazione": "[Massimo una frase chiara in Italiano]"
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},
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{
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"asset": "Asset_3",
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"percentuale": Z,
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"motivazione": "[Massimo una frase chiara in Italiano]"
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}
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]
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}
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1. **Strategy (strategy):** Must be a concise operational description **in Italian ("in Italiano")**, with a maximum of 5 sentences.
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2. **Portfolio (portfolio):** The sum of all percentages must be **exactly 100%**. The justification (motivation) for each asset must be a single clear sentence **in Italian ("in Italiano")**.
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"""
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@@ -1,5 +1,5 @@
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from coinbase.rest.types.product_types import Candle, GetProductResponse
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from pydantic import BaseModel
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class BaseWrapper:
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"""
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@@ -15,17 +15,17 @@ class BaseWrapper:
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def get_historical_prices(self, asset_id: str = "BTC") -> list['Price']:
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raise NotImplementedError
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class ProductInfo:
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class ProductInfo(BaseModel):
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"""
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Informazioni sul prodotto, come ottenute dalle API di mercato.
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Implementa i metodi di conversione dai dati grezzi delle API.
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"""
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id: str
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symbol: str
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price: float
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volume_24h: float
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status: str
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quote_currency: str
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id: str = ""
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symbol: str = ""
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price: float = 0.0
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volume_24h: float = 0.0
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status: str = ""
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quote_currency: str = ""
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def from_coinbase(product_data: GetProductResponse) -> 'ProductInfo':
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product = ProductInfo()
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@@ -46,17 +46,17 @@ class ProductInfo:
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product.status = "" # Cryptocompare does not provide status
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return product
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class Price:
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class Price(BaseModel):
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"""
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Rappresenta i dati di prezzo per un asset, come ottenuti dalle API di mercato.
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Implementa i metodi di conversione dai dati grezzi delle API.
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"""
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high: float
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low: float
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open: float
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close: float
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volume: float
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time: str
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high: float = 0.0
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low: float = 0.0
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open: float = 0.0
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close: float = 0.0
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volume: float = 0.0
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time: str = ""
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def from_coinbase(candle_data: Candle) -> 'Price':
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price = Price()
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@@ -1,14 +1,15 @@
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import os
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import requests
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from enum import Enum
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from pydantic import BaseModel
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from agno.agent import Agent
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from agno.models.base import BaseModel
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from agno.models.base import Model
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from agno.models.google import Gemini
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from agno.models.ollama import Ollama
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from agno.utils.log import log_warning
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class Models(Enum):
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class AppModels(Enum):
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"""
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Enum per i modelli supportati.
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Aggiungere nuovi modelli qui se necessario.
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@@ -21,7 +22,7 @@ class Models(Enum):
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OLLAMA_QWEN = "qwen3:latest" # + good + fast (8b)
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@staticmethod
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def availables_local() -> list['Models']:
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def availables_local() -> list['AppModels']:
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"""
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Controlla quali provider di modelli LLM locali sono disponibili.
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Ritorna una lista di provider disponibili.
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@@ -34,13 +35,13 @@ class Models(Enum):
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availables = []
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result = result.text
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if Models.OLLAMA_GPT.value in result:
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availables.append(Models.OLLAMA_GPT)
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if Models.OLLAMA_QWEN.value in result:
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availables.append(Models.OLLAMA_QWEN)
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if AppModels.OLLAMA_GPT.value in result:
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availables.append(AppModels.OLLAMA_GPT)
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if AppModels.OLLAMA_QWEN.value in result:
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availables.append(AppModels.OLLAMA_QWEN)
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return availables
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def availables_online() -> list['Models']:
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def availables_online() -> list['AppModels']:
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"""
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Controlla quali provider di modelli LLM online hanno le loro API keys disponibili
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come variabili d'ambiente e ritorna una lista di provider disponibili.
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@@ -49,12 +50,12 @@ class Models(Enum):
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log_warning("No GOOGLE_API_KEY set in environment variables.")
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return []
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availables = []
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availables.append(Models.GEMINI)
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availables.append(Models.GEMINI_PRO)
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availables.append(AppModels.GEMINI)
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availables.append(AppModels.GEMINI_PRO)
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return availables
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@staticmethod
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def availables() -> list['Models']:
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def availables() -> list['AppModels']:
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"""
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Controlla quali provider di modelli LLM locali sono disponibili e quali
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provider di modelli LLM online hanno le loro API keys disponibili come variabili
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@@ -64,8 +65,8 @@ class Models(Enum):
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2. Ollama (locale)
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"""
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availables = [
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*Models.availables_online(),
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*Models.availables_local()
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*AppModels.availables_online(),
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*AppModels.availables_local()
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]
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assert availables, "No valid model API keys set in environment variables."
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return availables
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@@ -94,7 +95,7 @@ class Models(Enum):
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return response[start:end + 1].strip()
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def get_model(self, instructions:str) -> BaseModel:
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def get_model(self, instructions:str) -> Model:
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"""
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Restituisce un'istanza del modello specificato.
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instructions: istruzioni da passare al modello (system prompt).
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@@ -102,14 +103,14 @@ class Models(Enum):
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Raise ValueError se il modello non è supportato.
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"""
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name = self.value
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if self in {Models.GEMINI, Models.GEMINI_PRO}:
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if self in {AppModels.GEMINI, AppModels.GEMINI_PRO}:
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return Gemini(name, instructions=[instructions])
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elif self in {Models.OLLAMA_GPT, Models.OLLAMA_QWEN}:
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elif self in {AppModels.OLLAMA_GPT, AppModels.OLLAMA_QWEN}:
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return Ollama(name, instructions=[instructions])
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raise ValueError(f"Modello non supportato: {self}")
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def get_agent(self, instructions: str, name: str = "") -> Agent:
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def get_agent(self, instructions: str, name: str = "", output: BaseModel | None = None) -> Agent:
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"""
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Costruisce un agente con il modello e le istruzioni specificate.
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instructions: istruzioni da passare al modello (system prompt).
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@@ -120,6 +121,6 @@ class Models(Enum):
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name=name,
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retries=2,
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delay_between_retries=5, # seconds
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use_json_mode=True, # utile per fare in modo che l'agente risponda in JSON (anche se sembra essere solo placebo)
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output_schema=output # se si usa uno schema di output, lo si passa qui
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# TODO Eventuali altri parametri da mettere all'agente anche se si possono comunque assegnare dopo la creazione
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)
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@@ -1,9 +1,8 @@
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from app.agents.news_agent import NewsAgent
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from app.agents.social_agent import SocialAgent
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from app.agents.predictor import PredictorStyle
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from app.agents import predictor
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from app.agents.predictor import PredictorStyle, PredictorInput, PredictorOutput, PREDICTOR_INSTRUCTIONS
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from app.markets import MarketAPIs
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from app.models import Models
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from app.models import AppModels
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from agno.utils.log import log_info
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class ToolAgent:
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@@ -15,7 +14,7 @@ class ToolAgent:
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"""
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Inizializza l'agente con i modelli disponibili, gli stili e l'API di mercato.
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"""
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self.available_models = Models.availables()
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self.available_models = AppModels.availables()
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self.all_styles = list(PredictorStyle)
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self.style = self.all_styles[0] # Default to the first style
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@@ -31,7 +30,7 @@ class ToolAgent:
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# TODO https://docs.agno.com/introduction
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# Inoltre permette di creare dei team e workflow di agenti più facilmente
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self.chosen_model = self.available_models[index]
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self.predictor = self.chosen_model.get_agent(predictor.instructions())
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self.predictor = self.chosen_model.get_agent(PREDICTOR_INSTRUCTIONS, output=PredictorOutput)
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self.news_agent = NewsAgent()
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self.social_agent = SocialAgent()
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@@ -64,18 +63,17 @@ class ToolAgent:
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sentiment = f"{news_sentiment}\n{social_sentiment}"
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# Step 3: previsione
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inputs = predictor.prepare_inputs(
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data=market_data,
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style=self.style,
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sentiment=sentiment
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)
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prediction = self.predictor.run(inputs)
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output = Models.extract_json_str_from_response(prediction.content)
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inputs = PredictorInput(data=market_data, style=self.style, sentiment=sentiment)
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result = self.predictor.run(inputs)
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prediction: PredictorOutput = result.content
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log_info(f"End of prediction")
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market_data = "\n".join([f"{product.symbol}: {product.price}" for product in market_data])
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return f"{market_data}\n{sentiment}\n\n📈 Consiglio finale:\n{output}"
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output = f"[{prediction.strategy}]\nPortafoglio:\n" + "\n".join(
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[f"{item.asset} ({item.percentage}%): {item.motivation}" for item in prediction.portfolio]
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)
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return f"INPUT:\n{market_data}\n{sentiment}\n\n\nOUTPUT:\n{output}"
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def list_providers(self) -> list[str]:
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"""
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@@ -1,19 +1,29 @@
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import json
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import pytest
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from app.agents import predictor
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from app.models import Models
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from app.agents.predictor import PREDICTOR_INSTRUCTIONS, PredictorInput, PredictorOutput, PredictorStyle
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from app.markets.base import ProductInfo
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from app.models import AppModels
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def unified_checks(model: Models, input):
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llm = model.get_agent(predictor.instructions())
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def unified_checks(model: AppModels, input):
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llm = model.get_agent(PREDICTOR_INSTRUCTIONS, output=PredictorOutput)
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result = llm.run(input)
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content = result.content
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print(result.content)
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potential_json = Models.extract_json_str_from_response(result.content)
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content = json.loads(potential_json) # Verifica che l'output sia un JSON valido
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assert content['strategia'] is not None
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assert isinstance(content['portafoglio'], list)
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assert abs(sum(item['percentuale'] for item in content['portafoglio']) - 100) < 0.01 # La somma deve essere esattamente 100
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assert isinstance(content, PredictorOutput)
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assert content.strategy not in (None, "", "null")
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assert isinstance(content.strategy, str)
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assert isinstance(content.portfolio, list)
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assert len(content.portfolio) > 0
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for item in content.portfolio:
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assert item.asset not in (None, "", "null")
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assert isinstance(item.asset, str)
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assert item.percentage > 0
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assert item.percentage <= 100
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assert isinstance(item.percentage, (int, float))
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assert item.motivation not in (None, "", "null")
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assert isinstance(item.motivation, str)
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# La somma delle percentuali deve essere esattamente 100
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total_percentage = sum(item.percentage for item in content.portfolio)
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assert abs(total_percentage - 100) < 0.01 # Permette una piccola tolleranza per errori di arrotondamento
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class TestPredictor:
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@@ -21,23 +31,19 @@ class TestPredictor:
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def inputs(self):
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data = []
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for symbol, price in [("BTC", 60000.00), ("ETH", 3500.00), ("SOL", 150.00)]:
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product_info = predictor.ProductInfo()
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product_info = ProductInfo()
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product_info.symbol = symbol
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product_info.price = price
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data.append(product_info)
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return predictor.prepare_inputs(
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data=data,
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style=predictor.PredictorStyle.AGGRESSIVE,
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sentiment="positivo"
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)
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return PredictorInput(data=data, style=PredictorStyle.AGGRESSIVE, sentiment="positivo")
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def test_gemini_model_output(self, inputs):
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unified_checks(Models.GEMINI, inputs)
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unified_checks(AppModels.GEMINI, inputs)
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def test_ollama_qwen_model_output(self, inputs):
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unified_checks(AppModels.OLLAMA_QWEN, inputs)
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@pytest.mark.slow
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def test_ollama_gpt_oss_model_output(self, inputs):
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unified_checks(Models.OLLAMA_GPT, inputs)
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def test_ollama_qwen_model_output(self, inputs):
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unified_checks(Models.OLLAMA_QWEN, inputs)
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unified_checks(AppModels.OLLAMA_GPT, inputs)
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