Advanced Machine Learning with Python Training Course
In this instructor-led, live training, participants will learn the most relevant and cutting-edge machine learning techniques in Python as they build a series of demo applications involving image, music, text, and financial data.
By the end of this training, participants will be able to:
- Implement machine learning algorithms and techniques for solving complex problems.
- Apply deep learning and semi-supervised learning to applications involving image, music, text, and financial data.
- Push Python algorithms to their maximum potential.
- Use libraries and packages such as NumPy and Theano.
Format of the course
- Part lecture, part discussion, exercises and heavy hands-on practice
Course Outline
Introduction
Describing the Structure of Unlabled Data
- Unsupervised Machine Learning
Recognizing, Clustering and Generating Images, Video Sequences and Motion-capture Data
- Deep Belief Networks (DBNs)
Reconstructing the Original Input Data from a Corrupted (Noisy) Version
- Feature Selection and Extraction
- Stacked Denoising Auto-encoders
Analyzing Visual Images
- Convolutional Neural Networks
Gaining a Better Understanding of the Structure of Data
- Semi-Supervised Learning
Understanding Text Data
- Text Feature Extraction
Building Highly Accurate Predictive Models
- Improving Machine Learning Results
- Ensemble Methods
Summary and Conclusion
Requirements
- Python programming experience
- An understanding of basic principles of machine learning
Audience
- Developers
- Analysts
- Data scientists
Open Training Courses require 5+ participants.
Advanced Machine Learning with Python Training Course - Booking
Advanced Machine Learning with Python Training Course - Enquiry
Advanced Machine Learning with Python - Consultancy Enquiry
Testimonials (1)
In-depth coverage of machine learning topics, particularly neural networks. Demystified a lot of the topic.
Sacha Nandlall
Course - Python for Advanced Machine Learning
Upcoming Courses
Related Courses
Artificial Intelligence (AI) in Automotive
14 HoursThis course explores the application of AI—specifically focusing on Machine Learning and Deep Learning—within the automotive industry. It guides learners in identifying which technologies can be effectively (or potentially) deployed across various automotive scenarios, ranging from basic automation and image recognition to complex autonomous decision-making processes.
Artificial Intelligence (AI) Overview
7 HoursAn exploration of artificial intelligence fundamentals demonstrates how intelligent technologies are transforming digital strategy, automation, and decision-making within enterprise operations. This course examines core concepts, including the history of AI, problem-solving frameworks, knowledge representation, reasoning under uncertainty, and machine learning paradigms, while also addressing communication, perception, and autonomous action. It provides executives and architects with the guidance needed to evaluate AI-driven transformation opportunities, assess emerging technology trends, and implement practical intelligent solutions to enhance business agility.
AlphaFold: AI-Driven Protein Structure Prediction and Interpretation
7 HoursThis instructor-led live training in Brazil (online or onsite) is aimed at biologists who wish to understand how AlphaFold works and use AlphaFold models as guides in their experimental studies.
By the end of this training, participants will be able to:
- Understand the basic principles of AlphaFold.
- Learn how AlphaFold works.
- Learn how to interpret AlphaFold predictions and results.
Artificial Neural Networks, Machine Learning, Deep Thinking
21 HoursArtificial Neural Networks are computational data models utilized in creating Artificial Intelligence (AI) systems that can execute "intelligent" tasks. These networks are frequently employed in Machine Learning (ML) applications, which represent one implementation of AI. Deep Learning constitutes a specialized subset of Machine Learning.
Applied AI from Scratch in Python
28 HoursPractical AI Development from the Ground Up in Python empowers developers and data analysts with essential techniques for constructing machine learning solutions entirely from scratch using Python. The course covers fundamental concepts such as supervised learning (classification and regression), unsupervised learning (clustering and anomaly detection), and complex neural network architectures. It explores effective strategies for leveraging scikit-learn, Apache Spark MLlib, and Jupyter notebooks to facilitate hands-on AI development. Participants will learn to deploy functional ML models, assess algorithm constraints, and execute applied projects designed to address real-world challenges.
Deep Learning Neural Networks with Chainer
14 HoursThis instructor-led live training in Brazil (online or onsite) is designed for researchers and developers who wish to use Chainer to build and train neural networks in Python, while making the code easy to debug.
By the end of this training, participants will be able to:
- Set up the necessary development environment to begin creating neural network models.
- Define and implement neural network models using clear and understandable source code.
- Execute examples and modify existing algorithms to optimize deep learning training models, leveraging GPUs for high performance.
Computer Vision with Google Colab and TensorFlow
21 HoursThis instructor-led live training in Brazil (online or onsite) targets advanced professionals seeking to deepen their understanding of computer vision and explore TensorFlow's capabilities for developing sophisticated vision models using Google Colab.
By the end of this training, participants will be able to:
- Build and train convolutional neural networks (CNNs) using TensorFlow.
- Leverage Google Colab for scalable and efficient cloud-based model development.
- Implement image preprocessing techniques for computer vision tasks.
- Deploy computer vision models for real-world applications.
- Use transfer learning to enhance the performance of CNN models.
- Visualize and interpret the results of image classification models.
Pattern Recognition
21 HoursThis instructor-led, live training in Brazil (online or onsite) offers an introduction to the fields of pattern recognition and machine learning. It covers practical applications in statistics, computer science, signal processing, computer vision, data mining, and bioinformatics.
Upon completion of this training, participants will be able to:
- Apply fundamental statistical methods to pattern recognition.
- Utilize essential models, such as neural networks and kernel methods, for data analysis.
- Implement advanced techniques to solve complex problems.
- Enhance prediction accuracy by integrating various models.
Deep Reinforcement Learning with Python
21 HoursDeep Reinforcement Learning (DRL) merges the principles of reinforcement learning with deep learning architectures, empowering agents to make decisions through their interaction with various environments. This technology drives numerous modern AI innovations, including self-driving cars, robotic control systems, algorithmic trading, and adaptive recommendation engines. DRL enables artificial agents to learn optimal strategies, refine policies, and execute autonomous decisions via trial-and-error processes driven by reward signals.
This live training session, led by an instructor and available both online and in-person, is designed for intermediate-level developers and data scientists eager to master and apply Deep Reinforcement Learning techniques. The goal is to help participants build intelligent agents capable of making autonomous decisions within complex environments.
Upon completing this training, participants will be equipped to:
- Grasp the theoretical foundations and mathematical underpinnings of Reinforcement Learning.
- Implement core RL algorithms such as Q-Learning, Policy Gradients, and Actor-Critic methods.
- Construct and train Deep Reinforcement Learning agents utilizing TensorFlow or PyTorch.
- Apply DRL techniques to real-world scenarios like gaming, robotics, and decision optimization.
- Debug, visualize, and enhance training performance using contemporary tools.
Format of the Course
- Interactive lectures combined with guided discussions.
- Practical, hands-on exercises and real-world implementations.
- Live coding demonstrations alongside project-based applications.
Course Customization Options
- For requests to tailor this course (for instance, utilizing PyTorch in place of TensorFlow), please contact us to coordinate the arrangement.
Edge AI with TensorFlow Lite
14 HoursThis instructor-led live training in Brazil (online or onsite) targets intermediate developers, data scientists, and AI practitioners who aim to utilize TensorFlow Lite for Edge AI applications.
By the conclusion of this training, participants will be able to:
- Understand the fundamentals of TensorFlow Lite and its role in Edge AI.
- Develop and optimize AI models using TensorFlow Lite.
- Deploy TensorFlow Lite models on various edge devices.
- Utilize tools and techniques for model conversion and optimization.
- Implement practical Edge AI applications using TensorFlow Lite.
Accelerating Deep Learning with FPGA and OpenVINO
35 HoursThis instructor-led, live training in Brazil (online or onsite) is aimed at data scientists who wish to accelerate real-time machine learning applications and deploy them at scale.
Upon completion of this training, participants will be able to:
- Install the OpenVINO toolkit.
- Accelerate a computer vision application using an FPGA.
- Execute different CNN layers on the FPGA.
- Scale the application across multiple nodes in a Kubernetes cluster.
Distributed Deep Learning with Horovod
7 HoursThis instructor-led, live training in Brazil (online or onsite) is aimed at developers or data scientists who wish to use Horovod to run distributed deep learning trainings and scale it up to run across multiple GPUs in parallel.
By the end of this training, participants will be able to:
- Set up the necessary development environment to start running deep learning trainings.
- Install and configure Horovod to train models with TensorFlow, Keras, PyTorch, and Apache MXNet.
- Scale deep learning training with Horovod to run on multiple GPUs.
Understanding Deep Neural Networks
35 HoursThis course provides foundational conceptual knowledge of neural networks, machine learning algorithms, and deep learning (including both algorithms and their practical applications).
Part 1 (40% of the training) focuses heavily on fundamentals, helping you select the appropriate technology stack, such as TensorFlow, Caffe, Theano, DeepDrive, Keras, and others.
Part 2 (20% of the training) introduces Theano, a Python library designed to simplify the creation of deep learning models.
Part 3 (40% of the training) is extensively centered on TensorFlow, the API for Google's open-source deep learning software library. All examples and hands-on exercises will be conducted within TensorFlow.
Audience
This course is designed for engineers who intend to utilize TensorFlow for their deep learning projects.
Upon completion of this course, participants will:
- gain a solid understanding of deep neural networks (DNN), CNNs, and RNNs
- comprehend the structure and deployment mechanisms of TensorFlow
- possess the ability to handle installation, production environment setup, architecture tasks, and configuration
- be capable of assessing code quality, performing debugging, and monitoring
- implement advanced production-level tasks, such as training models, building graphs, and logging
Explainability in Deep Learning: Demystifying Black-Box Models
21 HoursThis instructor-led, live training in Brazil (online or onsite) is intended for advanced professionals seeking to explore state-of-the-art XAI techniques for deep learning models, focusing on the development of interpretable AI systems.
By the end of this training, participants will be able to:
- Understand the challenges of explainability in deep learning.
- Implement advanced XAI techniques for neural networks.
- Interpret decisions made by deep learning models.
- Evaluate the trade-offs between performance and transparency.