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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.

Time Series Analysis for Financial Markets and Economic Forecasting

18 Lessons
Beginner

Embark on a journey of unravelling the complexities of “Time …

What you'll learn
Introduction to Time Series Analysis in Finance and Economics: Gain an overview of time series analysis, focusing on its applications in financial markets and economic forecasting, setting the stage for specialized learning.
Understanding Financial and Economic Time Series Data: Explore the unique characteristics of financial and economic time series data, including the presence of trends, seasonality, and volatility.
Exploratory Data Analysis for Financial Time Series: Master techniques for visualizing and understanding financial time series data, including identifying trends, seasonality, and potential anomalies.
Volatility Modelling and GARCH Models: Learn to model and forecast volatility using Generalized Autoregressive Conditional Heteroskedasticity (GARCH) models, a crucial skill for risk assessment in financial markets.
Predicting Stock Prices using Time Series Analysis: Delve into the complexities of predicting stock prices using time series analysis, applying advanced techniques to uncover patterns and potential future movements.

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.

Mastering Data Preprocessing Techniques

17 Lessons
Intermediate

Embark on a transformative learning journey through the advanced and …

What you'll learn
Advanced Data Quality Assessment: Dive into sophisticated techniques for assessing and diagnosing data quality issues, ensuring that your analyses are based on reliable and trustworthy data.
Imputing Missing Values with Precision: Explore advanced methods to impute missing values, including machine learning-based imputation and domain-specific techniques that enhance the accuracy of your analyses.
Handling Categorical Data and Feature Encoding: Master techniques to handle categorical variables, including advanced encoding methods such as target encoding, impact encoding, and frequency-based encoding.
Addressing Skewed and Unbalanced Datasets: Learn techniques to tackle imbalanced datasets, including oversampling, undersampling, and advanced resampling strategies that lead to better model performance.
Text and NLP Data Preprocessing: Delve into the intricacies of preprocessing text and NLP data, covering techniques such as tokenization, stemming, lemmatization, and sentiment analysis.