Udemy

Mastering DeepScaleR: Build & Deploy AI Models with Ollama

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  • 18,338 Students
  • Updated 2/2025
4.4
(76 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
1 Hour(s) 25 Minute(s)
Language
English
Taught by
School of AI
Rating
4.4
(76 Ratings)
4 views

Course Overview

Mastering DeepScaleR: Build & Deploy AI Models with Ollama

Build AI Chatbots, Deploy Local AI Models, and Create AI-Powered Apps Without Cloud APIs using DeepScaleR-1.5B AI Model

Mastering DeepScaler and Ollama is your gateway to building, fine-tuning, and deploying AI models locally without relying on expensive cloud APIs. This hands-on course will teach you how to harness the power of open-source AI to create intelligent applications that run on your own machine. You will learn how to work with DeepScaler, a fine-tuned version of DeepSeek-R1-Distilled-Qwen-1.5B, optimized for math reasoning, code generation, and AI automation, while Ollama enables seamless local AI model deployment for efficient and cost-effective AI applications. (AI)

This course is designed to take you from beginner to advanced AI development. You will start by setting up DeepScaler and Ollama on Mac, Windows (WSL), or Linux. From there, you will learn how to run AI models locally, eliminating the need for cloud-based APIs. You will build a fully functional AI chatbot using DeepScaler and deploy it via FastAPI. You will also develop an AI-powered Math Solver that can solve complex equations in real time.

A major focus of the course is fine-tuning DeepScaler using LoRA and QLoRA. You will train DeepScaler on custom datasets to improve responses and adapt the model to domain-specific tasks such as finance, healthcare, and legal analysis. The course will also guide you through building an AI-powered Code Assistant, which can generate, debug, and explain code efficiently.

One of the most important aspects of working with AI models is optimization for low-latency responses. You will learn how to improve AI inference speed and compare DeepScaler’s performance against OpenAI’s o1-preview. The course will also introduce Gradio, a tool that allows you to create interactive AI-powered web applications, making it easier to deploy and test AI models in a user-friendly interface.

This course is ideal for AI developers, software engineers, data scientists, and tech enthusiasts who want to learn how to deploy AI models without cloud dependencies. It is also a great choice for students and beginners who want to get started with local AI model development without requiring prior deep learning experience.

Unlike traditional AI development, local AI deployment provides greater privacy, security, and control. With DeepScaler and Ollama, you will be able to run AI models on your device without incurring API costs or depending on third-party cloud services. This enables real-time AI-powered applications with faster response times and better efficiency.

By the end of this course, you will have multiple AI-powered applications running locally with models fine-tuned for specific use cases. Whether you are building a chatbot, a math solver, a code assistant, or an AI-powered automation tool, this course will provide you with the knowledge and hands-on experience needed to develop, fine-tune, and deploy AI models effectively.

No prior AI experience is required. If you are interested in LLM fine-tuning, AI chatbot development, code generation, AI-powered automation, and local AI model deployment, this course will give you the tools and expertise to master these skills.

Course Content

  • 2 section(s)
  • 6 lecture(s)
  • Section 1 Introduction to DeepScaler & Ollama
  • Section 2 Building AI Applications with DeepScaler

What You’ll Learn

  • Set up DeepScaler & Ollama for local AI model execution.
  • Run AI models locally without relying on cloud APIs.
  • Build an AI-powered chatbot using DeepScaler & FastAPI.
  • Develop an AI Math Solver that handles complex equations.
  • Deploy DeepScaler models via REST APIs for real-world use.
  • Integrate DeepScaler with Gradio for web-based AI tools.
  • Benchmark DeepScaler vs OpenAI models in performance tests.


Reviews

  • L
    Lubuto Chabusha
    4.0

    THANKS I REALLY NEEDED THIS FOR MY PROJECT

  • E
    Emmanuel Akerele
    4.5

    It is detailed and have an amazing explanation.

  • S
    Sakthi Coder
    5.0

    Excellent.

  • L
    Luthfia Cucu Aminah
    5.0

    So clear and easy to understand for beginner. You explained well for crazy thing became easy pizzy thing.

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