Career Development in AI, ML & Data Science Training Course

Introduction

The rapid expansion of artificial intelligence, machine learning, and data science has created a high-demand for skilled professionals across virtually every industry. Our "Career Development in AI, ML & Data Science Training Course" is a comprehensive program designed to equip individuals with the technical expertise and strategic insights needed to build a successful career in this dynamic field. This course not only covers the core concepts and practical tools but also focuses on the crucial soft skills and professional strategies that are essential for long-term career growth, including resume building, interview preparation, and effective communication.

This training is tailored for both aspiring newcomers and seasoned professionals looking to pivot into the AI, ML, and data science domain. Participants will gain a holistic understanding of the entire data science lifecycle, from data collection and cleaning to model deployment and interpretation. By combining theoretical knowledge with hands-on projects and career-focused workshops, this course provides a clear roadmap to navigating the job market, identifying the right opportunities, and establishing yourself as a valuable contributor in the world of data-driven innovation.

Duration

5 days

Target Audience

  • Career changers and recent graduates
  • IT professionals and software developers
  • Business analysts and data analysts
  • Managers and team leads
  • Aspiring data scientists and machine learning engineers

Objectives

Upon completion of this course, you will be able to:

  1. Understand the foundational concepts of AI, ML, and data science.
  2. Identify the various career paths and roles within the ecosystem.
  3. Master the essential programming languages and tools for data science.
  4. Develop a strong portfolio of projects to showcase skills.
  5. Learn best practices for data collection, cleaning, and preprocessing.
  6. Apply machine learning algorithms to solve real-world problems.
  7. Understand the principles of model evaluation and deployment.
  8. Develop effective communication and presentation skills for technical concepts.
  9. Craft a compelling resume and LinkedIn profile tailored for the field.
  10. Strategize and prepare for job interviews, including technical and behavioral questions.

Course Modules

Module 1: The AI/ML/Data Science Landscape

  • Defining AI, Machine Learning, and Data Science
  • The data science lifecycle
  • Key roles and responsibilities in the field
  • Industry trends and future outlook
  • Identifying your ideal career path

Module 2: Foundational Skills & Tools

  • Python for Data Science (NumPy, Pandas)
  • Introduction to SQL and database management
  • Statistical fundamentals for data analysis
  • Version control with Git and GitHub
  • Setting up your development environment

Module 3: Data Collection & Wrangling

  • Web scraping and API data extraction
  • Data cleaning and handling missing values
  • Feature engineering techniques
  • Data normalization and scaling
  • Managing large datasets

Module 4: Exploratory Data Analysis (EDA)

  • Visualizing data with Matplotlib and Seaborn
  • Statistical analysis of data distributions
  • Identifying patterns and relationships
  • Creating compelling data narratives
  • Tools for interactive dashboards

Module 5: Machine Learning Fundamentals

  • Supervised vs. Unsupervised Learning
  • Regression and classification models
  • Clustering and dimensionality reduction
  • Model training and evaluation metrics
  • Introduction to the Scikit-learn library

Module 6: Supervised Learning Deep Dive

  • Linear and Logistic Regression
  • Decision Trees and Random Forests
  • Support Vector Machines (SVM)
  • Cross-validation and hyperparameter tuning
  • Practical application of various algorithms

Module 7: Unsupervised Learning & NLP Basics

  • K-Means clustering
  • Principal Component Analysis (PCA)
  • Introduction to Natural Language Processing (NLP)
  • Text preprocessing and tokenization
  • Bag-of-Words and TF-IDF

Module 8: Deep Learning Essentials

  • Introduction to neural networks
  • Activation functions and backpropagation
  • Building a simple neural network with Keras/TensorFlow
  • Convolutional Neural Networks (CNNs) for image data
  • Recurrent Neural Networks (RNNs) for sequential data

Module 9: Model Deployment & MLOps

  • Saving and loading trained models
  • Creating a simple API for model inference
  • Introduction to MLOps principles
  • Monitoring model performance in production
  • Containerization with Docker

Module 10: Building a Data Science Portfolio

  • Selecting impactful project ideas
  • Structuring a project from start to finish
  • Writing clear and concise project reports
  • Showcasing your work on GitHub and personal websites
  • Collaborative projects and open-source contributions

Module 11: The Job Search Strategy

  • Identifying target companies and roles
  • Networking strategies for the industry
  • Leveraging LinkedIn and other professional platforms
  • Crafting a standout resume and cover letter
  • Connecting with recruiters and hiring managers

Module 12: Interview Preparation: Technical Skills

  • Common data science interview questions
  • SQL and Python coding challenges
  • Live coding and whiteboard exercises
  • Understanding model bias and ethics
  • Preparing for machine learning system design questions

Module 13: Interview Preparation: Behavioral & Case Studies

  • Answering behavioral questions effectively (STAR method)
  • Solving business case studies
  • Demonstrating problem-solving skills
  • Asking insightful questions to the interviewer
  • Negotiating salary and offers

Module 14: Communication & Leadership Skills

  • Explaining complex technical concepts to non-technical audiences
  • Data storytelling and visualization
  • Presenting project outcomes to stakeholders
  • Leading data-driven projects and teams
  • The importance of continuous learning and upskilling

 

CERTIFICATION

  • Upon successful completion of this training, participants will be issued with Macskills Training and Development Institute Certificate

TRAINING VENUE

  • Training will be held at Macskills Training Centre. We also tailor make the training upon request at different locations across the world.

AIRPORT PICK UP AND ACCOMMODATION

  • Airport Pick Up is provided by the institute. Accommodation is arranged upon request

TERMS OF PAYMENT

Payment should be made to Macskills Development Institute bank account before the start of the training and receipts sent to info@macskillsdevelopment.com

For More Details call: +254-114-087-180

 

 

 

Career Development In Ai, Ml & Data Science Training Course in Russian Federation
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