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@@ -13,11 +13,11 @@ license: apache-2.0
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  library_name: transformers
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  ---
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- # Laxo Pro
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  ## Model Description
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- Laxo Pro is a high-quality Large Language Model (LLM) designed to excel in a wide range of tasks, including:
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  * **Mathematics:** Solving mathematical problems, performing calculations, and providing mathematical explanations.
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  * **Coding:** Generating code snippets, debugging code, and answering programming-related questions.
@@ -25,27 +25,27 @@ Laxo Pro is a high-quality Large Language Model (LLM) designed to excel in a wid
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  * **Science Questions:** Providing information and explanations on various scientific topics.
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  * **Daily Tasks:** Assisting with everyday tasks, such as writing emails, setting reminders, generating to-do lists, and more.
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- Laxo Pro employs the **CA (Combine Architectures)** method, which enables it to effectively address diverse queries and tasks. This model surpasses its predecessors, Loxa-4B and Loxa-3B, in terms of accuracy and performance.
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  ## Key Features
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- * **High Accuracy:** Laxo Pro demonstrates superior accuracy compared to Loxa-4B and Loxa-3B, providing more reliable and precise responses.
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- * **Broad Capabilities:** Handles a diverse range of tasks, from complex mathematical problems and coding challenges to general knowledge and everyday tasks.
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  * **Optimized for Efficiency:** The model is well-optimized to run efficiently even on smaller GPUs, making it accessible for users with limited computational resources.
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  * **CA (Combine Architectures) Method:** Leverages the CA method to effectively combine different architectural strengths, enhancing overall performance.
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  ## Intended Use
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- Laxo Pro is intended for a wide range of applications, including:
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- * **Research:** As a tool for research in natural language processing, artificial intelligence, and related fields.
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  * **Education:** As an educational aid for students and educators in various subjects.
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  * **Development:** As a component in building intelligent applications, chatbots, and virtual assistants.
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  * **Personal Use:** As a versatile tool to assist with daily tasks, answer questions, and provide information.
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  ## Limitations
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- * **Potential Biases:** Like all LLMs, Laxo Pro may reflect biases present in its training data.
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  * **Factual Accuracy:** While highly accurate, the model may occasionally generate incorrect or misleading information. It is always recommended to verify information from multiple sources.
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  * **Resource Requirements:** Although optimized, the model still requires a certain level of computational resources to run effectively.
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@@ -57,9 +57,8 @@ Laxo Pro is intended for a wide range of applications, including:
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  from transformers import pipeline
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  messages = [
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- {"role": "user", "content": "You are alex, a helpful assistant"},
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- {"role": "user", "content": "Who are you?"},
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  ]
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- pipe = pipeline("text-generation", model="explorewithai/LaxoPro", device_map = "cuda")
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  pipe(messages)
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  ```
 
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  library_name: transformers
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  ---
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+ # Loxa Pro
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  ## Model Description
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+ Loxa Pro is a high-quality Large Language Model (LLM) designed to excel in a wide range of tasks, including:
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  * **Mathematics:** Solving mathematical problems, performing calculations, and providing mathematical explanations.
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  * **Coding:** Generating code snippets, debugging code, and answering programming-related questions.
 
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  * **Science Questions:** Providing information and explanations on various scientific topics.
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  * **Daily Tasks:** Assisting with everyday tasks, such as writing emails, setting reminders, generating to-do lists, and more.
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+ Loxa Pro employs the **CA (Combine Architectures)** method, which enables it to effectively address diverse queries and tasks. This model surpasses its predecessors, Loxa-4B and Loxa-3B, in terms of accuracy and performance.
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  ## Key Features
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+ * **High Accuracy:** Loxa Pro demonstrates superior accuracy compared to Loxa-4B and Loxa-3B, providing more reliable and precise responses.
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+ * **Broad Capabilities:** Handles a diverse range of tasks, from complex mathematical problems and coding challenges to general knowledge and everyday tasks.
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  * **Optimized for Efficiency:** The model is well-optimized to run efficiently even on smaller GPUs, making it accessible for users with limited computational resources.
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  * **CA (Combine Architectures) Method:** Leverages the CA method to effectively combine different architectural strengths, enhancing overall performance.
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  ## Intended Use
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+ Loxa Pro is intended for a wide range of applications, including:
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+ * **Research:** As a tool for research in natural language processing, artificial intelligence, and related fields.
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  * **Education:** As an educational aid for students and educators in various subjects.
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  * **Development:** As a component in building intelligent applications, chatbots, and virtual assistants.
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  * **Personal Use:** As a versatile tool to assist with daily tasks, answer questions, and provide information.
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  ## Limitations
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+ * **Potential Biases:** Like all LLMs, Loxa Pro may reflect biases present in its training data.
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  * **Factual Accuracy:** While highly accurate, the model may occasionally generate incorrect or misleading information. It is always recommended to verify information from multiple sources.
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  * **Resource Requirements:** Although optimized, the model still requires a certain level of computational resources to run effectively.
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  from transformers import pipeline
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  messages = [
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+ {"role": "user", "content": "Write softmax formula in math style for me"},
 
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  ]
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+ pipe = pipeline("text-generation", model="explorewithai/LoxaPro", device_map = "cuda")
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  pipe(messages)
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  ```