riversongs Posted November 23, 2024 Report Share Posted November 23, 2024 Free Download The AI Engineer Course 2024 - Complete AI Engineer BootcampLast updated 10/2024MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHzLanguage: English | Size: 9.48 GB | Duration: 17h 47mComplete AI Engineer Training: Python, NLP, Transformers, LLMs, LangChain, Hugging Face, APIsWhat you'll learnThe course provides the entire toolbox you need to become an AI EngineerUnderstand key Artificial Intelligence concepts and build a solid foundationStart coding in Python and learn how to use it for NLP and AIImpress interviewers by showing an understanding of the AI fieldApply your skills to real-life business casesHarness the power of Large Language ModelsLeverage LangChain for seamless development of AI-driven applications by chaining interoperable componentsBecome familiar with Hugging Face and the AI tools it offersUse APIs and connect to powerful foundation modelsRequirementsNo prior experience is required. We will start from the very basicsYou'll need to install Anaconda. We will show you how to do that step by stepDescriptionThe ProblemAI 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 SolutionAI Engineering is a multidisciplinary field covering:AI principles and practical applicationsPython programmingNatural Language Processing in PythonLarge Language Models and TransformersDeveloping apps with orchestration tools like LangChainVector databases using PineConeCreating AI-driven applicationsEach 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 Skills1. Intro to Artificial IntelligenceStructured 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 ProgrammingMastering 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 PythonExplore 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 ModelsThis 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 LangChainLangChain 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 DatabasesWith 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.What You Get$1,250 AI Engineering training programActive Q&A supportEssential skills for AI engineering employmentAI learner community accessCompletion certificateFuture updatesReal-world business case solutions for job readinessWe'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.OverviewSection 1: Intro to AI Module: Getting startedLecture 1 What does the course coverLecture 2 Natural vs Artificial IntelligenceLecture 3 Brief history of AILecture 4 Demystifying AI, Data science, Machine learning, and Deep learningLecture 5 Weak vs Strong AISection 2: Intro to AI Module: Data is essential for building AILecture 6 Structured vs unstructured dataLecture 7 How we collect dataLecture 8 Labelled and unlabelled dataLecture 9 Metadata: Data that describes dataSection 3: Intro to AI Module: Key AI techniquesLecture 10 Machine learningLecture 11 Supervised, Unsupervised, and Reinforcement learningLecture 12 Deep learningSection 4: Intro to AI Module: Important AI branchesLecture 13 RoboticsLecture 14 Computer visionLecture 15 Traditional MLLecture 16 Generative AISection 5: Intro to AI Module: Understanding Generative AILecture 17 The rise of Gen AI: Introducing ChatGPTLecture 18 Early approaches to Natural Language Processing (NLP)Lecture 19 Recent NLP advancementsLecture 20 From Language Models to Large Language Models (LLMs)Lecture 21 The efficiency of LLM training. Supervised vs Semi-supervised learningLecture 22 From N-Grams to RNNs to Transformers: The Evolution of NLPLecture 23 Phases in building LLMsLecture 24 Prompt engineering vs Fine-tuning vs RAG: Techniques for AI optimizationLecture 25 The importance of foundation modelsLecture 26 Buy vs Make: foundation models vs private modelsSection 6: Intro to AI Module: Practical challenges in Generative AILecture 27 Inconsistency and hallucinationLecture 28 Budgeting and API costsLecture 29 LatencyLecture 30 Running out of dataSection 7: Intro to AI Module: The AI tech stackLecture 31 Python programmingLecture 32 Working with APIsLecture 33 Vector databasesLecture 34 The importance of open sourceLecture 35 Hugging FaceLecture 36 LangChainLecture 37 AI evaluation toolsSection 8: AI job positionsLecture 38 AI strategistLecture 39 AI developerLecture 40 AI engineerSection 9: Looking aheadLecture 41 AI ethicsLecture 42 Future of AISection 10: Python Module: Why Python?Lecture 43 Programming Explained in a Few MinutesLecture 44 Why PythonSection 11: Python Module: Setting Up the EnvironmentLecture 45 Jupyter - IntroductionLecture 46 Jupyter - Installing AnacondaLecture 47 Jupyter - Introduction to Using JupyterLecture 48 Jupyter - Working with Notebook FilesLecture 49 Jupyter - Using ShortcutsLecture 50 Jupyter - Handling Error MessagesLecture 51 Jupyter - Restarting the KernelSection 12: Python Module: Python Variables and Data TypesLecture 52 Python VariablesLecture 53 Types of Data - Numbers and Boolean ValuesLecture 54 Types of Data - StringsSection 13: Python Module: Basic Python SyntaxLecture 55 Basic Python Syntax - Arithmetic OperatorsLecture 56 Basic Python Syntax - The Double Equality SignLecture 57 Basic Python Syntax - Reassign ValuesLecture 58 Basic Python Syntax - Add CommentsLecture 59 Basic Python Syntax - Line ContinuationLecture 60 Basic Python Syntax - Indexing ElementsLecture 61 Basic Python Syntax - IndentationSection 14: Python Module: More on OperatorsLecture 62 Operators - Comparison OperatorsLecture 63 Operators - Logical and Identity OperatorsSection 15: Python Module: Conditional StatementsLecture 64 Conditional Statements - The IF StatementLecture 65 Conditional Statements - The ELSE StatementLecture 66 Conditional Statements - The ELIF StatementLecture 67 Conditional Statements - A Note on Boolean ValuesSection 16: Python Module: FunctionsLecture 68 Functions - Defining a Function in PythonLecture 69 Functions - Creating a Function with a ParameterLecture 70 Functions - Another Way to Define a FunctionLecture 71 Functions - Using a Function in Another FunctionLecture 72 Functions - Combining Conditional Statements and FunctionsLecture 73 Functions - Creating Functions Containing a Few ArgumentsLecture 74 Functions - Notable Built-in Functions in PythonSection 17: Python Module: SequencesLecture 75 Sequences - ListsLecture 76 Sequences - Using MethodsLecture 77 Sequences - List SlicingLecture 78 Sequences - TuplesLecture 79 Sequences - DictionariesSection 18: Python Module: IterationLecture 80 Iteration - For LoopsLecture 81 Iteration - While Loops and IncrementingLecture 82 Iteration - Creatie Lists with the range() FunctionLecture 83 Iteraion - Use Conditional Statements and Loops TogetherLecture 84 Iteration - Conditional Statements, Functions, and LoopsLecture 85 Iteration - Iterating over DictionariesSection 19: Python Module: A Few Important Python Concepts and TermsLecture 86 Introduction to Object Oriented Programming (OOP)Lecture 87 Modules, Packages, and the Python Standard LibraryLecture 88 Importing ModulesLecture 89 What is Software DocumentationLecture 90 The Python DocumentationSection 20: NLP Module: IntroductionLecture 91 Introduction to the courseLecture 92 Course materials and notebooksLecture 93 Introduction to NLPLecture 94 NLP in everyday lifeLecture 95 Supervised vs unsupervised NLPSection 21: NLP Module: Text PreprocessingLecture 96 The importance of data preparationLecture 97 LowercaseLecture 98 Removing stop wordsLecture 99 Regular expressionsLecture 100 TokenizationLecture 101 StemmingLecture 102 LemmatizationLecture 103 N-gramsLecture 104 Practical taskSection 22: NLP Module: Identifying Parts of Speech and Named EntitiesLecture 105 Text taggingLecture 106 Parts of Speech (POS) taggingLecture 107 Named Entity Recognition (NER)Lecture 108 Practical taskSection 23: NLP Module: Sentiment AnalysisLecture 109 What is sentiment analysis?Lecture 110 Rule-based sentiment analysisLecture 111 Pre-trained transformer modelsLecture 112 Practical taskSection 24: NLP Module: Vectorizing TextLecture 113 Numerical representation of textLecture 114 Bag of Words modelLecture 115 TF-IDFSection 25: NLP Module: Topic ModellingLecture 116 What is topic modelling?Lecture 117 When to use topic modelling?Lecture 118 Latent Dirichlet Allocation (LDA)Lecture 119 LDA in PythonLecture 120 Latent Semantic Analysis (LSA)Lecture 121 LSA in PythonLecture 122 How many topics?Section 26: NLP Module: Building Your Own Text ClassifierLecture 123 Building a custom text classifierLecture 124 Logistic regressionLecture 125 Naive BayesLecture 126 Linear support vector machineSection 27: NLP Module: Categorizing Fake News (Case Study)Lecture 127 Introducing the projectLecture 128 Exploring our data through POS tagsLecture 129 Extracting named entitiesLecture 130 Processing the textLecture 131 Does sentiment differ between news types?Lecture 132 What topics appear in fake news? (Part 1)Lecture 133 What topics appear in fake news? (Part 2)Lecture 134 Categorizing fake news with a custom classifierSection 28: NLP Module: The Future of NLPLecture 135 What is deep learning?Lecture 136 Deep learning for NLPLecture 137 Non-English NLPLecture 138 What's next for NLP?Section 29: LLMs Module: Introduction to Large Language ModelsLecture 139 Introduction to the courseLecture 140 Course materials and notebooksLecture 141 What are LLMs?Lecture 142 How large is an LLM?Lecture 143 General purpose modelsLecture 144 Pre-training and fine tuningLecture 145 What can LLMs be used for?Section 30: LLMs Module: The Transformer ArchitectureLecture 146 Deep learning recapLecture 147 The problem with RNNsLecture 148 The solution: attention is all you needLecture 149 The transformer architectureLecture 150 Input embeddingsLecture 151 Multi-headed attentionLecture 152 Feed-forward layerLecture 153 Masked multihead attentionLecture 154 Predicting the final outputsSection 31: LLMs Module: Getting Started With GPT ModelsLecture 155 What does GPT mean?Lecture 156 The development of ChatGPTLecture 157 OpenAI APILecture 158 Generating textLecture 159 Customizing GPT outputLecture 160 Key word text summarizationLecture 161 Coding a simple chatbotLecture 162 Introduction to LangChain in PythonLecture 163 LangChainLecture 164 Adding custom data to our chatbotSection 32: LLMs Module: Hugging Face TransformersLecture 165 Hugging Face packageLecture 166 The transformer pipelineLecture 167 Pre-trained tokenizersLecture 168 Special tokensLecture 169 Hugging Face and PyTorch/TensorFlowLecture 170 Saving and loading modelsSection 33: LLMs Module: Question and Answer Models With BERTLecture 171 GPT vs BERTLecture 172 BERT architectureLecture 173 Loading the model and tokenizerLecture 174 BERT embeddingsLecture 175 Calculating the responseLecture 176 Creating a QA botLecture 177 BERT, RoBERTa, DistilBERTSection 34: LLMs Module: Text Classification With XLNetLecture 178 GPT vs BERT vs XLNETLecture 179 Preprocessing our dataLecture 180 XLNet EmbeddingsLecture 181 Fine tuning XLNetLecture 182 Evaluating our modelSection 35: LangChain Module: IntroductionLecture 183 Introduction to the courseLecture 184 Business applications of LangChainLecture 185 What makes LangChain powerful?Lecture 186 What does the course cover?Section 36: LangChain Module: Tokens, Models, and PricesLecture 187 TokensLecture 188 Models and PricesSection 37: LangChain Module: Setting Up the EnvironmentLecture 189 Setting up a custom anaconda environment for Jupyter integrationLecture 190 Obtaining an OpenAI API keyLecture 191 Setting the API key as an environment variableSection 38: LangChain Module: The OpenAI APILecture 192 First stepsLecture 193 System, user, and assistant rolesLecture 194 Creating a sarcastic chatbotLecture 195 Temperature, max tokens, and streamingSection 39: LangChain Module: Model InputsLecture 196 The LangChain frameworkLecture 197 ChatOpenAILecture 198 System and human messagesLecture 199 AI messagesLecture 200 Prompt templates and prompt valuesLecture 201 Chat prompt templates and chat prompt valuesLecture 202 Few-shot chat message prompt templatesLecture 203 LLMChainSection 40: LangChain Module: Message History and Chatbot MemoryLecture 204 Chat message historyLecture 205 Conversation buffer memory: Implementing the setupLecture 206 Conversation buffer memory: Configuring the chainLecture 207 Conversation buffer window memoryLecture 208 Conversation summary memoryLecture 209 Combined memorySection 41: LangChain Module: Output ParsersLecture 210 String output parserLecture 211 Comma-separated list output parserLecture 212 Datetime output parserSection 42: LangChain Module: LangChain Expression Language (LCEL)Lecture 213 Piping a prompt, model, and an output parserLecture 214 BatchingLecture 215 StreamingLecture 216 The Runnable and RunnableSequence classesLecture 217 Piping chains and the RunnablePassthrough classLecture 218 Graphing RunnablesLecture 219 RunnableParallelLecture 220 Piping a RunnableParallel with other RunnablesLecture 221 RunnableLambdaLecture 222 The @chain decoratorLecture 223 Adding memory to a chain (Part 1): Implementing the setupLecture 224 RunnablePassthrough with additional keysLecture 225 ItemgetterLecture 226 Adding memory to a chain (Part 2): Creating the chainSection 43: LangChain Module: Retrieval Augmented Generation (RAG)Lecture 227 How to integrate custom data into an LLMLecture 228 Introduction to RAGLecture 229 Introduction to document loading and splittingLecture 230 Introduction to document embeddingLecture 231 Introduction to document storing, retrieval, and generationLecture 232 Indexing: Document loading with PyPDFLoaderLecture 233 Indexing: Document loading with Docx2txtLoaderLecture 234 Indexing: Document splitting with character text splitter (Theory)Lecture 235 Indexing: Document splitting with character text splitter (Code along)Lecture 236 Indexing: Document splitting with Markdown header text splitterLecture 237 Indexing: Text embedding with OpenAILecture 238 Indexing: Creating a Chroma vectorstoreLecture 239 Indexing: Inspecting and managing documents in a vectorstoreLecture 240 Retrieval: Similarity searchLecture 241 Retrieval: Maximal Marginal Relevance (MMR) searchLecture 242 Retrieval: Vectorstore-backed retrieverLecture 243 Generation: Stuffing documentsLecture 244 Generation: Generating a responseSection 44: LangChain Module: Tools and AgentsLecture 245 Introduction to reasoning chatbotsLecture 246 Tools, toolkits, agents, and agent executorsLecture 247 Fixing the GuessedAtParserWarningLecture 248 Creating a Wikipedia tool and piping it to a chainLecture 249 Creating a retriever and a custom toolLecture 250 LangChain hubLecture 251 Creating a tool calling agent and an agent executorLecture 252 AgentAction and AgentFinishSection 45: Vector Databases Module: IntroductionLecture 253 Introduction to the courseLecture 254 Database comparison: SQL, NoSQL, and VectorLecture 255 Understanding vector databasesSection 46: Vector Databases Module: Basics of Vector Space and High-Dimensional DataLecture 256 Introduction to vector spaceLecture 257 Distance metrics in vector spaceLecture 258 Vector embeddings walkthroughSection 47: Vector Databases Module: Introduction to The Pinecone Vector DatabaseLecture 259 Vector databases, comparisonLecture 260 Pinecone registration, walkthrough and creating an IndexLecture 261 Connecting to Pinecone using PythonLecture 262 AssignmentLecture 263 Creating and deleting a Pinecone index using PythonLecture 264 Upserting data to a pinecone vector databaseLecture 265 Getting to know the fine web data set and loading it to JupyterLecture 266 Upserting data from a text file and using an embedding algorithmSection 48: Vector Databases Module: Semantic Search with Pinecone and Custom (Case Study)Lecture 267 Introduction to semantic searchLecture 268 Introduction to the case study - smart search for data science coursesLecture 269 Getting to know the data for the case studyLecture 270 Data loading and preprocessingLecture 271 Pinecone Python APIs and connecting to the Pinecone serverLecture 272 Embedding AlgorithmsLecture 273 Embedding the data and upserting the files to PineconeLecture 274 Similarity search and querying the dataLecture 275 How to update and change your vector databaseLecture 276 Data preprocessing and embedding for courses with section dataLecture 277 Assignment 2Lecture 278 Upserting the new updated files to PineconeLecture 279 Similarity search and querying courses and sections dataLecture 280 Assignment 3Lecture 281 Using the BERT embedding algorithmLecture 282 Vector database for recommendation enginesLecture 283 Vector database for semantic image searchLecture 284 Vector database for biomedical researchYou should take this course if you want to become an AI Engineer or if you want to learn about the field,This course is for you if you want a great career,The course is also ideal for beginners, as it starts from the fundamentals and gradually builds up your skillsHomepagehttps://www.udemy.com/course/the-ai-engineer-course-complete-ai-engineer-bootcamp/Download ( Rapidgator 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