Courses

Course categories

We found 332 courses available for you
See

Statistical Analysis for Data Science: Fundamentals and Applications

18 Lessons
Intermediate

Embark on a transformative journey into the world of “Statistical …

What you'll learn
Introduction to Statistical Analysis: Understand the fundamental concepts of statistical analysis and its role in extracting insights from data.
Exploratory Data Analysis: Learn techniques to summarise and visualise data, identifying patterns, trends, and potential outliers.
Probability and Probability Distributions: Gain proficiency in understanding and working with probability concepts and various probability distributions.
Sampling Techniques and Distributions: Explore different sampling methods and understand the properties of sampling distributions.
Statistical Inference and Hypothesis Testing: Master the art of drawing conclusions about a population using sample data through hypothesis testing.

Advanced Statistical Methods in Data Science: Techniques and Insights

16 Lessons
Intermediate

Embark on an enlightening journey into the realm of “Advanced …

What you'll learn
Multivariate Analysis and Dimensionality Reduction: Master techniques to explore relationships between multiple variables and reduce the complexity of high-dimensional data.
Time Series Analysis and Forecasting Techniques: Gain proficiency in analysing time-dependent data and predicting future trends using advanced time series models.
Advanced Non-linear Regression Models: Explore non-linear regression models to capture complex relationships between variables, enabling accurate predictions.
Bayesian Statistical Methods and Inference: Understand Bayesian techniques for probabilistic reasoning, updating beliefs, and making informed decisions under uncertainty.
Machine Learning Integration for Advanced Analytics: Learn how to integrate machine learning algorithms into advanced statistical analyses for predictive and prescriptive insights.

Natural Language Processing Fundamentals: From Basics to Applications

18 Lessons
Intermediate

Embark on a transformative journey into the captivating world of …

What you'll learn
Introduction to Natural Language Processing (NLP): Understand the significance of NLP, its applications, and its role in transforming unstructured text data.
Language Processing Basics: Tokenization and Text Preprocessing: Learn to break down text into tokens, remove noise, and preprocess text for analysis.
Syntactic Analysis and Part-of-Speech Tagging: Explore the structure of sentences and understand the roles of different words in sentences using part-of-speech tagging.
Sentiment Analysis and Opinion Mining: Acquire the skills to determine sentiment and opinions expressed in text, enabling you to gauge sentiment polarity.

Advanced Techniques in Natural Language Processing: Text Analytics and Beyond

17 Lessons
Intermediate

Embark on an illuminating journey into the realm of “Advanced …

What you'll learn
Deep Learning for Text Classification and Sentiment Analysis: Master advanced deep learning methods for classifying and analysing sentiment in text, enabling accurate sentiment identification and classification.
Natural Language Generation: Techniques and Applications: Explore techniques to generate human-like text, including automatic summarisation, content generation, and creative writing.
Advanced Named Entity Recognition and Entity Linking: Gain expertise in identifying and linking named entities, such as people, locations, and organizations, in text for enhanced information retrieval.
Text Summarization: Extractive and Abstractive Approaches: Learn both extractive and abstractive text summarisation methods, condensing large volumes of text into concise summaries.

Mastering NLP: Deep Learning for Natural Language Understanding

16 Lessons
Intermediate

Embark on a transformative journey into the realm of “Mastering …

What you'll learn
Introduction to Deep Learning for Natural Language Processing (NLP): Grasp the fundamental concepts of deep learning and its transformative role in enhancing language understanding and generation.
Word Embeddings and Distributed Representations: Understand how to represent words as dense vectors using techniques like Word2Vec and GloVe for improved language analysis.
Recurrent Neural Networks (RNNs) for Sequence Modelling: Dive into the architecture of RNNs, a foundational deep learning model for processing sequential data like text.
Long Short-Term Memory (LSTM) Networks: Gain proficiency in LSTMs, a type of RNN designed to overcome the vanishing gradient problem and effectively model long-range dependencies in text.
Gated Recurrent Units (GRUs) and Their Applications: Explore GRUs, an alternative to LSTMs, and their use cases in sequence modelling and text analysis.

Mastering Time Series Analysis: Foundations and Forecasting Techniques

19 Lessons
Intermediate

Immerse yourself in the world of “Mastering Time Series Analysis: …

What you'll learn
Introduction to Time Series Analysis: Grasp the fundamentals of time series data, its characteristics, and its significance in various fields.
Characteristics of Time Series Data: Understand the distinctive traits of time series data, including trends, seasonality, and noise, and their impact on analysis.
Time Series Components: Trend, Seasonality, and Noise: Delve into the identification and interpretation of trend patterns, seasonal variations, and stochastic noise within time series data.
Stationarity and its Importance in Time Series Analysis: Learn the concept of stationarity and its crucial role in making time series data suitable for analysis.
Autocorrelation and Partial Autocorrelation Functions: Master the use of autocorrelation and partial autocorrelation functions to detect patterns and relationships in sequential data.

Advanced Time Series Analysis: Modelling and Predictive Analytics

19 Lessons
Intermediate

Embark on a transformative journey into the realm of “Advanced …

What you'll learn
Advanced ARIMA Models: SARIMA and Beyond: Master the techniques of Seasonal ARIMA (SARIMA) models and delve into advanced ARIMA variations to model complex time series data with both trend and seasonality components.
State-Space Models for Complex Time Series: Understand and apply state-space models, enabling you to represent time series data as a combination of unobserved states and observed measurements for more accurate modelling.
Multivariate Time Series Analysis and Vector Autoregression (VAR) Models: Explore the complexities of multivariate time series data, learning to model dynamic relationships among variables using Vector Autoregression (VAR) models.
Nonlinear Time Series Models: Challenges and Solutions: Discover nonlinear time series modelling techniques to capture intricate relationships beyond linear trends, and learn how to tackle challenges associated with such models.
Machine Learning for Time Series: Techniques and Applications: Dive into the world of machine learning applied to time series data, including techniques like Random Forests, Support Vector Machines, and more for improved predictions.

German for Kids: Fun and Interactive Language Learning

22 Lessons
Intermediate

Welcome to an exciting language learning adventure tailored specifically for …

What you'll learn
Language skills through interactive games, quizzes, and challenges.
Creativity and communication through storytelling and role-playing.
Pronunciation practice and mastering German sounds.
Cultural appreciation through German traditions and celebrations.
Counting and basic math concepts in German.
Simple conversations and dialogues in a relaxed setting.
Creativity and imagination through German-inspired arts and crafts.
Language retention with catchy German songs and rhymes.