IBM
IBM GenAI Engineering with PyTorch, LangChain & Hugging Face Certificat Professionnel
IBM

IBM GenAI Engineering with PyTorch, LangChain & Hugging Face Certificat Professionnel

Develop job-ready gen AI skills employers need. Build highly sought-after gen AI engineering skills and practical experience in just 6 months. No prior experience required.

IBM Skills Network Team
Sina Nazeri
Abhishek Gagneja

Instructeurs : IBM Skills Network Team

Inclus avec Coursera Plus

Obtenez une qualification professionnelle qui traduit votre expertise

(2,954 avis)

niveau Débutant

Expérience recommandée

6 mois à raison de 6 heures par semaine
Planning flexible
Obtenir une qualification professionnelle
Partagez votre expertise avec les employeurs
Obtenez une qualification professionnelle qui traduit votre expertise

(2,954 avis)

niveau Débutant

Expérience recommandée

6 mois à raison de 6 heures par semaine
Planning flexible
Obtenir une qualification professionnelle
Partagez votre expertise avec les employeurs

Ce que vous apprendrez

  • Job-ready skills employers are crying out for in gen AI, machine learning, deep learning, NLP apps, and large language models in just 6 months.

  • Build and deploy generative AI applications, agents and chatbots using Python libraries like Flask, SciPy and ScikitLearn, Keras, and PyTorch.

  • Key gen AI architectures and NLP models, and how to apply techniques like prompt engineering, model training, and fine-tuning.

  • Apply transformers like BERT and LLMs like GPT for NLP tasks, with frameworks like RAG and LangChain.

Vue d'ensemble

Ce qui est inclus

Certificat partageable

Ajouter à votre profil LinkedIn

Enseigné en Anglais
124 exercices pratiques

Faites progresser votre carrière avec des compétences recherchées

  • Recevez une formation professionnelle par IBM
  • Démontrez vos compétences techniques
  • Obtenez un certificat reconnu par les employeurs auprès de IBM

Certificat professionnel - série de 16 cours

Ce que vous apprendrez

  • Explain the fundamental concepts and applications of AI in various domains.

  • Describe the core principles of machine learning, deep learning, and neural networks, and apply them to real-world scenarios.

  • Analyze the role of generative AI in transforming business operations, identifying opportunities for innovation and process improvement.

  • Design a generative AI solution for an organizational challenge, integrating ethical considerations.

Compétences que vous acquerrez

Generative AI, Natural Language Processing, LLM Application, Responsible AI et Market Opportunities

Ce que vous apprendrez

  • Describe generative AI and distinguish it from discriminative AI.

  • Describe the capabilities of generative AI and its use cases in the real world.

  • Identify the applications of generative AI in different sectors and industries.

  • Explore common generative AI models and tools for text, code, image, audio, and video generation.

Compétences que vous acquerrez

Generative AI, ChatGPT, Deep Learning, Artificial Intelligence and Machine Learning (AI/ML), Machine Learning et AI Product Strategy

Ce que vous apprendrez

  • Explain the concept and relevance of prompt engineering in generative AI models. 

  • Apply the best practices for creating prompts.

  • Assess commonly used tools for prompt engineering.

  • Apply common prompt engineering techniques and approaches for writing effective prompts.

Compétences que vous acquerrez

Prompt Engineering, Prompt Patterns, Generative AI et ChatGPT

Ce que vous apprendrez

  • Develop a foundational understanding of Python programming by learning basic syntax, data types, expressions, variables, and string operations.

  • Apply Python programming logic using data structures, conditions and branching, loops, functions, exception handling, objects, and classes.

  • Demonstrate proficiency in using Python libraries such as Pandas and Numpy and developing code using Jupyter Notebooks.

  • Access and extract web-based data by working with REST APIs using requests and performing web scraping with BeautifulSoup.

Compétences que vous acquerrez

Python Programming, Pandas (Python Package), NumPy, Data Structures, Web Scraping, Object Oriented Programming (OOP), Data Manipulation, Application Programming Interface (API), JSON, Jupyter, Data Import/Export, Restful API, Programming Principles, Automation, Computer Programming, Data Processing, Data Analysis et Scripting

Ce que vous apprendrez

  • Describe the steps and processes involved in creating a Python application including the application development lifecycle

  • Create Python modules, run unit tests, and package applications while ensuring the PEP8 coding best practices

  • Build and deploy web applications using Flask, including routing, error handling, and CRUD operations.

  • Create and deploy an AI-based application onto a web server using IBM Watson AI Libraries and Flask

Compétences que vous acquerrez

Application Programming Interface (API), Flask (Web Framework), Restful API, Python Programming, Unit Testing, Software Development Life Cycle, Artificial Intelligence, Web Applications, Programming Principles, Integrated Development Environments et Application Deployment

Ce que vous apprendrez

  • Explain the core concepts of generative AI, including large language models, speech technologies, and platforms such as IBM watsonX, and Hugging Face

  • Build generative AI-powered applications and chatbots using LLMs, retrieval-augmented generation(RAG), and foundational Python frameworks

  • Integrate speech-to-text (STT) and text-to-speech (TTS) technologies to enable voice interfaces in generative AI applications

  • Develop web-based AI applications using Python libraries, such as Flask and Gradio, along with basic front-end tools like HTML, CSS, and JavaScript

Compétences que vous acquerrez

Generative AI, Large Language Modeling, Natural Language Processing, Flask (Web Framework), Prompt Engineering, LangChain, LLM Application, Python Programming, Image Analysis, Front-End Web Development, OpenAI, Web Applications et Application Development

Ce que vous apprendrez

  • Construct Python programs to clean and prepare data for analysis by addressing missing values, formatting inconsistencies, normalization, and binning

  • Analyze real-world datasets through exploratory data analysis (EDA) using libraries such as Pandas, NumPy, and SciPy to uncover patterns and insights

  • Apply data operation techniques using dataframes to organize, summarize, and interpret data distributions, correlation analysis, and data pipelines

  • Develop and evaluate regression models using Scikit-learn, and use these models to generate predictions and support data-driven decision-making

Compétences que vous acquerrez

Regression Analysis, Pandas (Python Package), Scikit Learn (Machine Learning Library), Exploratory Data Analysis, Data Cleansing, NumPy, Data Transformation, Data Wrangling, Data Manipulation, Data Pipelines, Data Import/Export, Data Analysis, Predictive Modeling, Data Visualization, Data-Driven Decision-Making, Statistical Analysis, Python Programming, Matplotlib et Feature Engineering

Ce que vous apprendrez

  • Explain key concepts, tools, and roles involved in machine learning, including supervised and unsupervised learning techniques.

  • Apply core machine learning algorithms such as regression, classification, clustering, and dimensionality reduction using Python and scikit-learn.

  • Evaluate model performance using appropriate metrics, validation strategies, and optimization techniques.

  • Build and assess end-to-end machine learning solutions on real-world datasets through hands-on labs, projects, and practical evaluations.

Compétences que vous acquerrez

Supervised Learning, Machine Learning, Regression Analysis, Unsupervised Learning, Dimensionality Reduction, Applied Machine Learning, Decision Tree Learning, Scikit Learn (Machine Learning Library), Predictive Modeling, Feature Engineering, Classification And Regression Tree (CART) et Statistical Modeling

Ce que vous apprendrez

  • Describe the foundational concepts of deep learning, neurons, and artificial neural networks to solve real-world problems

  • Explain the core concepts and components of neural networks and the challenges of training deep networks

  • Build deep learning models for regression and classification using the Keras library, interpreting model performance metrics effectively.

  • Design advanced architectures, such as CNNs, RNNs, and transformers, for solving specific problems like image classification and language modeling

Compétences que vous acquerrez

Deep Learning, Artificial Neural Networks, Keras (Neural Network Library), Network Architecture, Regression Analysis, Image Analysis, Machine Learning Algorithms, Tensorflow, PyTorch (Machine Learning Library), Natural Language Processing, Machine Learning et Computer Vision

Ce que vous apprendrez

  • Differentiate between generative AI architectures and models, such as RNNs, transformers, VAEs, GANs, and diffusion models

  • Describe how LLMs, such as GPT, BERT, BART, and T5, are applied in natural language processing tasks

  • Implement tokenization to preprocess raw text using NLP libraries like NLTK, spaCy, BertTokenizer, and XLNetTokenizer

  • Create an NLP data loader in PyTorch that handles tokenization, numericalization, and padding for text datasets

Compétences que vous acquerrez

Large Language Modeling, Data Processing, Natural Language Processing, Generative AI, Prompt Engineering, Deep Learning, Text Mining, Data Pipelines, Artificial Intelligence et PyTorch (Machine Learning Library)

Ce que vous apprendrez

  • Explain how one-hot encoding, bag-of-words, embeddings, and embedding bags transform text into numerical features for NLP models

  • Implement Word2Vec models using CBOW and Skip-gram architectures to generate contextual word embeddings

  • Develop and train neural network-based language models using statistical N-Grams and feedforward architectures

  • Build sequence-to-sequence models with encoder–decoder RNNs for tasks such as machine translation and sequence transformation

Compétences que vous acquerrez

Natural Language Processing, Artificial Neural Networks, PyTorch (Machine Learning Library), Generative AI, Deep Learning, Large Language Modeling, Data Ethics, Text Mining, Feature Engineering et Statistical Methods

Ce que vous apprendrez

  • Explain the role of attention mechanisms in transformer models for capturing contextual relationships in text

  • Describe the differences in language modeling approaches between decoder-based models like GPT and encoder-based models like BERT

  • Implement key components of transformer models, including positional encoding, attention mechanisms, and masking, using PyTorch

  • Apply transformer-based models for real-world NLP tasks, such as text classification and language translation, using PyTorch and Hugging Face tools

Compétences que vous acquerrez

PyTorch (Machine Learning Library), Large Language Modeling, Natural Language Processing, Applied Machine Learning, Text Mining et Generative AI

Ce que vous apprendrez

  • Sought-after, job-ready skills businesses need for working with transformer-based LLMs in generative AI engineering

  • How to perform parameter-efficient fine-tuning (PEFT) using methods like LoRA and QLoRA to optimize model training

  • How to use pretrained transformer models for language tasks and fine-tune them for specific downstream applications

  • How to load models, run inference, and train models using the Hugging Face and PyTorch frameworks

Compétences que vous acquerrez

Generative AI, Performance Tuning, PyTorch (Machine Learning Library), Natural Language Processing, Prompt Engineering et Large Language Modeling

Ce que vous apprendrez

  • In-demand generative AI engineering skills in fine-tuning LLMs that employers are actively seeking

  • Instruction tuning and reward modeling using Hugging Face, plus understanding LLMs as policies and applying RLHF techniques

  • Direct preference optimization (DPO) with partition function and Hugging Face, including how to define optimal solutions to DPO problems

  • Using proximal policy optimization (PPO) with Hugging Face to build scoring functions and tokenize datasets for fine-tuning

Compétences que vous acquerrez

Large Language Modeling, Generative AI, Reinforcement Learning, Prompt Engineering, Natural Language Processing et Performance Tuning

Ce que vous apprendrez

  • In-demand, job-ready skills businesses seek for building AI agents using RAG and LangChain in just 8 hours

  • How tapply the fundamentals of in-context learning and advanced prompt engineering timprove prompt design

  • Key LangChain concepts, including tools, components, chat models, chains, and agents

  • How tbuild AI applications by integrating RAG, PyTorch, Hugging Face, LLMs, and LangChain technologies

Compétences que vous acquerrez

Natural Language Processing, Prompt Engineering, Generative AI, Generative AI Agents, Large Language Modeling, LLM Application et Artificial Intelligence

Ce que vous apprendrez

  • Gain practical experience building your own real-world generative AI application to showcase in interviews

  • Create and configure a vector database to store document embeddings and develop a retriever to fetch relevant segments based on user queries

  • Set up a simple Gradio interface for user interaction and build a question-answering bot using LangChain and a large language model (LLM)

Compétences que vous acquerrez

User Interface (UI), Generative AI, Database Management Systems, Data Storage Technologies, Prompt Engineering, Document Management, Natural Language Processing et LLM Application

Obtenez un certificat professionnel

Ajoutez ce titre à votre profil LinkedIn, à votre curriculum vitae ou à votre CV. Partagez-le sur les médias sociaux et dans votre évaluation des performances.

Instructeurs

IBM Skills Network Team
84 Cours1 579 717 apprenants
Sina Nazeri
IBM
2 Cours53 299 apprenants
Abhishek Gagneja
IBM
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Fateme Akbari
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Wojciech 'Victor' Fulmyk
IBM
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Kang Wang
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Ashutosh Sagar
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Joseph Santarcangelo
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Alex Aklson
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Rav Ahuja
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Antonio Cangiano
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Roodra Pratap Kanwar
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Ramesh Sannareddy
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Jeff Grossman
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3 Cours675 711 apprenants

Offert par

IBM

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