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課程簡介
Complete AI Engineer Training: Python, NLP, Transformers, LLMs, LangChain, Hugging Face, APIs
The Problem
AI Engineers are best suited to thrive in the age of AI. It helps businesses utilize Generative AI by building AI-driven applications on top of their existing websites, apps, and databases. Therefore, it’s no surprise that the demand for AI Engineers has been surging in the job marketplace.
Supply, however, has been minimal, and acquiring the skills necessary to be hired as an AI Engineer can be challenging.
So, how is this achievable?
Universities have been slow to create specialized programs focused on practical AI Engineering skills. The few attempts that exist tend to be costly and time-consuming.
Most online courses offer ChatGPT hacks and isolated technical skills, yet integrating these skills remains challenging.
The Solution
AI Engineering is a multidisciplinary field covering:
AI principles and practical applications
Python programming
Natural Language Processing in Python
Large Language Models and Transformers
Developing apps with orchestration tools like LangChain
Vector databases using PineCone
Creating AI-driven applications
Each topic builds on the previous one, and skipping steps can lead to confusion. For instance, applying large language models requires familiarity with Langchain—just as studying natural language processing can be overwhelming without basic Python coding skills.
So, we created the AI Engineer Bootcamp 2024 to provide the most effective, time-efficient, and structured AI engineering training available online.
This pioneering training program overcomes the most significant barrier to entering the AI Engineering field by consolidating all essential resources in one place.
Our course is designed to teach interconnected topics seamlessly—providing all you need to become an AI Engineer at a significantly lower cost and time investment than traditional programs.
The Skills
1. Intro to Artificial Intelligence
Structured and unstructured data, supervised and unsupervised machine learning, Generative AI, and foundational models—these familiar AI buzzwords; what exactly do they mean?
Why study AI? Gain deep insights into the field through a guided exploration that covers AI fundamentals, the significance of quality data, essential techniques, Generative AI, and the development of advanced models like GPT, Llama, Gemini, and Claude.
2. Python Programming
Mastering Python programming is essential to becoming a skilled AI developer—no-code tools are insufficient.
Python is a modern, general-purpose programming language suited for creating web applications, computer games, and data science tasks. Its extensive library ecosystem makes it ideal for developing AI models.
Why study Python programming?
Python programming will become your essential tool for communicating with AI models and integrating their capabilities into your products.
3. Intro to NLP in Python
Explore Natural Language Processing (NLP) and learn techniques that empower computers to comprehend, generate, and categorize human language.
Why study NLP?
NLP forms the basis of cutting-edge Generative AI models. This program equips you with essential skills to develop AI systems that meaningfully interact with human language.
4. Introduction to Large Language Models
This program section enhances your natural language processing skills by teaching you to utilize the powerful capabilities of Large Language Models (LLMs). Learn critical tools like Transformers Architecture, GPT, Langchain, HuggingFace, BERT, and XLNet.
Why study LLMs?
This module is your gateway to understanding how large language models work and how they can be applied to solve complex language-related tasks that require deep contextual understanding.
5. Building Applications with LangChain
LangChain is a framework that allows for seamless development of AI-driven applications by chaining interoperable components.
Why study LangChain?
Learn how to create applications that can reason. LangChain facilitates the creation of systems where individual pieces—such as language models, databases, and reasoning algorithms—can be interconnected to enhance overall functionality.
6. Vector Databases
With emerging AI technologies, the importance of vectorization and vector databases is set to increase significantly. In this Vector Databases with Pinecone module, you’ll have the opportunity to explore the Pinecone database—a leading vector database solution.
Why study vector databases?
Learning about vector databases is crucial because it equips you to efficiently manage and query large volumes of high-dimensional data—typical in machine learning and AI applications. These technical skills allow you to deploy performance-optimized AI-driven applications.
7. Speech Recognition with Python
Dive into the fascinating field of Speech Recognition and discover how AI systems transform spoken language into actionable insights. This module covers foundational concepts such as audio processing, acoustic modeling, and advanced techniques for building speech-to-text applications using Python.
Why study speech recognition?
Speech Recognition is at the core of voice assistants, automated transcription tools, and voice-driven interfaces. Mastering this skill enables you to create applications that interact with users naturally and unlock the full potential of audio data in AI solutions.
What You Get
$1,250 AI Engineering training program
Active Q&A support
Essential skills for AI engineering employment
AI learner community access
Completion certificate
Future updates
Real-world business case solutions for job readiness
We're excited to help you become an AI Engineer from scratch—offering an unconditional 30-day full money-back guarantee.
With excellent course content and no risk involved, we're confident you'll love it.
Why delay? Each day is a lost opportunity. Click the ‘Buy Now’ button and join our AI Engineer program today.
課程章節
- 76 個章節
- 436 堂課
- 第 1 章 Intro to AI Module: Getting started
- 第 2 章 Intro to AI Module: Data is essential for building AI
- 第 3 章 Intro to AI Module: Key AI techniques
- 第 4 章 Intro to AI Module: Important AI branches
- 第 5 章 Intro to AI Module: Understanding Generative AI
- 第 6 章 Intro to AI Module: Practical challenges in Generative AI
- 第 7 章 Intro to AI Module: The AI tech stack
- 第 8 章 Intro to AI Module: AI job positions
- 第 9 章 Intro to AI Module: Looking ahead
- 第 10 章 Python Module: Why Python?
- 第 11 章 Python Module: Setting Up the Environment
- 第 12 章 Python Module: Python Variables and Data Types
- 第 13 章 Python Module: Basic Python Syntax
- 第 14 章 Python Module: More on Operators
- 第 15 章 Python Module: Conditional Statements
- 第 16 章 Python Module: Functions
- 第 17 章 Python Module: Sequences
- 第 18 章 Python Module: Iteration
- 第 19 章 Python Module: A Few Important Python Concepts and Terms
- 第 20 章 NLP Module: Introduction
- 第 21 章 NLP Module: Text Preprocessing
- 第 22 章 NLP Module: Identifying Parts of Speech and Named Entities
- 第 23 章 NLP Module: Sentiment Analysis
- 第 24 章 NLP Module: Vectorizing Text
- 第 25 章 NLP Module: Topic Modelling
- 第 26 章 NLP Module: Building Your Own Text Classifier
- 第 27 章 NLP Module: Categorizing Fake News (Case Study)
- 第 28 章 NLP Module: The Future of NLP
- 第 29 章 LLMs Module: Introduction to Large Language Models
- 第 30 章 LLMs Module: The Transformer Architecture
- 第 31 章 LLMs Module: Getting Started With GPT Models
- 第 32 章 LLMs Module: Hugging Face Transformers
- 第 33 章 LLMs Module: Question and Answer Models With BERT
- 第 34 章 LLMs Module: Text Classification With XLNet
- 第 35 章 LangChain Module: Introduction
- 第 36 章 LangChain Module: Tokens, Models, and Prices
- 第 37 章 LangChain Module: Setting Up the Environment
- 第 38 章 LangChain Module: The OpenAI API
- 第 39 章 LangChain Module: Model Inputs
- 第 40 章 LangChain Module: Output Parsers
- 第 41 章 LangChain Module: LangChain Expression Language (LCEL)
- 第 42 章 LangChain Module: Retrieval Augmented Generation (RAG)
- 第 43 章 LangGraph Module: Introduction
- 第 44 章 LangGraph Module: Setting Up the Environment
- 第 45 章 LangGraph Module: Graph Components and Implementation
- 第 46 章 LangGraph Module: Message Management
- 第 47 章 LangGraph Module: Thread-Level Persistence
- 第 48 章 Vector Databases Module: Introduction
- 第 49 章 Vector Databases Module: Basics of Vector Space and High-Dimensional Data
- 第 50 章 Vector Databases Module: Introduction to The Pinecone Vector Database
- 第 51 章 Vector Databases Module: Semantic Search with Pinecone and Custom (Case Study)
- 第 52 章 Speech Recognition Module: Introduction
- 第 53 章 Speech Recognition Module: Sound and Speech Basics
- 第 54 章 Speech Recognition Module: Analog to Digital Conversion
- 第 55 章 Speech Recognition Module: Audio Feature Extraction for AI Applications
- 第 56 章 Speech Recognition Module: Technology Mechanics
- 第 57 章 Speech Recognition Module: Setting Up the Environment
- 第 58 章 Speech Recognition Module: Transcribing Audio with Google Web Speech API
- 第 59 章 Speech Recognition Module: Background Noise and Spectrograms
- 第 60 章 Speech Recognition Module: Transcribing Audio with OpenAI's Whisper
- 第 61 章 Speech Recognition Module: Final Discussion and Future Directions
- 第 62 章 LLM Engineering Module: Introduction
- 第 63 章 LLM Engineering Module: Planning stage
- 第 64 章 LLM Engineering Module: Crafting and Testing AI Prompts
- 第 65 章 LLM Engineering Module: Getting to Know Streamlit
- 第 66 章 LLM Engineering Module: Developing the prototype
- 第 67 章 LLM Engineering Module: Solving Real-World AI Challenges
- 第 68 章 AI Ethics Module: Introduction to AI and Data Ethics
- 第 69 章 AI Ethics Module: The Core Principles of AI Ethics
- 第 70 章 AI Ethics Module: Ethical Data Collection
- 第 71 章 AI Ethics Module: Ethical AI Development
- 第 72 章 AI Ethics Module: Ethical AI Deployment
- 第 73 章 AI Ethics Module: Ethical AI for End-Users: Businesses
- 第 74 章 AI Ethics Module: Ethical AI for End-Users: Individuals
- 第 75 章 AI Ethics Module: ChatGPT Ethics
- 第 76 章 AI Ethics Module: Data and AI Regulatory Frameworks
課程內容
- The course provides the entire toolbox you need to become an AI Engineer
- Understand key Artificial Intelligence concepts and build a solid foundation
- Start coding in Python and learn how to use it for NLP and AI
- Impress interviewers by showing an understanding of the AI field
- Apply your skills to real-life business cases
- Harness the power of Large Language Models
- Leverage LangChain for seamless development of AI-driven applications by chaining interoperable components
- Become familiar with Hugging Face and the AI tools it offers
- Use APIs and connect to powerful foundation models
- Utilize Transformers for advanced speech-to-text
此課程所涵蓋的技能
評價
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JJojo Padlan
I learned a lot from this course, and it gave me a solid foundation in AI engineering. I'm confident this knowledge will support on my journey to becoming an AI engineer.
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AAlex Ghajar
8 individual and very useful, detailed Courses are packed into this awesome A.I Bootcamp as the greatest value I have ever seen in education. Thank you for teaching these great online courses with all the Resources (Jupyter Notebooks, PDFs, CSVs, .py python and Text files, etc. ) included. I leaned a lot more than I expected.
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PPetar Statev
This course serves as a great introduction to some AI engineering concepts, but I wished it would go more in depth. As an already experienced data professional the information often felt a bit too basic for me and across sections some introductory concepts were repeated multiple times. Other than that the production quality of the course is great.
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PPranaw Kumar
Outstanding course — well planned, crystal clear, and packed with valuable insights into the world of AI!