loader image

Advanced Data Analytics

Wishlist Share
Share Course
Page Link
Share On Social Media

About Course

The TekkyBench Advanced Data Analytics Course + Internship is an in-depth and transformative program designed to equip aspiring data analysts with the advanced skills needed in today’s data-driven world. Whether you’re an experienced analyst aiming to deepen your expertise or someone looking to break into the field, this course offers a rigorous blend of theoretical knowledge and practical, hands-on experience.

Program Overview:

  • Duration: 15 weeks
  • Start Date: 15 Sept 2024
  • Stipend: Subject to project approval
  • Mode: Hybrid

What Makes This Program Unique?

  • Deep Dive into Data Analytics: Master advanced analytics techniques, including machine learning, predictive modeling, and big data technologies. Gain proficiency in tools like Python, R, SQL, and Tableau, and learn how to apply these in real-world scenarios.
  • Hands-on Learning: Engage in real-world projects that simulate the challenges faced by data professionals, enhancing your analytical, problem-solving, and data visualization skills.
  • Expert Guidance: Receive mentorship from industry experts who will guide you through complex analytics processes, ensuring you develop the skills required to excel in the field.
  • Collaborative Projects: Work on team projects that mimic a professional analytics environment, sharpening your collaborative and communication skills.
  • Community Engagement: Participate in live sessions, challenges, quizzes, and reflection activities that foster a strong learning community.
  • Recognition and Career Opportunities: Earn a certificate of completion, along with letters of recommendation and appreciation. There’s also potential for a stipend-based extended internship.

Perks:

  • Completion Certificate
  • Letter of Recommendation
  • Letter of Appreciation
  • Flexible Work Hours

The TekkyBench Advanced Data Analytics Course + Internship is more than just a course; it’s a journey to becoming a proficient, innovative, and industry-ready data analyst. Join this program and take a significant step forward in your data analytics career!

Show More

What Will You Learn?

  • Advanced Data Analytics
  • Data Analytics Fundamentals:
  • Basics of Data Analytics: Understanding data types, data structures, and basic analytics techniques.
  • Data Manipulation and Cleaning: Techniques for preparing data for analysis using tools like Python and R.
  • Advanced Data Types: Working with time-series, spatial data, and complex data structures.
  • Analytics Tools and Platforms:
  • Overview of Analytics Evolution: Key changes and advancements in data analytics tools and platforms.
  • Modern Tools: Mastering tools like Microsoft Power BI, Tableau, and Google Data Studio for data visualization and business intelligence.
  • Tool Integration: Best practices for integrating multiple analytics tools for comprehensive analysis.
  • Data Modeling:
  • Fundamentals of Data Modeling: Creating and understanding data models for analytical purposes.
  • Advanced Data Models: Implementing predictive models, regression analysis, and clustering techniques.
  • Real-time Data Modeling: Techniques for handling and modeling real-time data.
  • Real-time Data Analytics:
  • Integrating Real-time Analytics: Utilizing streaming data and real-time data pipelines with tools like Apache Kafka and Spark.
  • Real-time Dashboards: Building interactive dashboards that update in real-time with Power BI and Tableau.
  • Real-time Data Visualization: Techniques for visualizing streaming data effectively.
  • Data Visualization with Power BI:
  • Introduction to Power BI: Setting up and using Microsoft Power BI in analytics projects.
  • Customizing Visualizations: Creating and styling custom visualizations in Power BI.
  • Advanced Dashboards: Building complex dashboards with drill-down features and real-time data integration.
  • Data Analysis Lifecycle:
  • Understanding the Data Analysis Process: Data collection, cleaning, exploration, modeling, and interpretation.
  • Lifecycle Management: Best practices for managing the entire data analysis lifecycle.
  • Data Binding and Transformation:
  • Data Transformation Techniques: Advanced techniques for transforming and reshaping data.
  • Custom Transformation Pipelines: Creating custom pipelines for specific analytics needs.
  • Two-way Data Binding: Implementing data binding techniques in analytics tools.
  • Machine Learning and Predictive Analytics:
  • Introduction to Machine Learning: Basics of machine learning algorithms and their applications in analytics.
  • Advanced Machine Learning Techniques: Using tools like TensorFlow and Scikit-learn for predictive modeling.
  • Real-world Applications: Implementing machine learning in complex data analytics projects.
  • Data Sharing and Collaboration:
  • Collaborative Data Analysis: Using tools like Jupyter Notebooks, Google Colab, and Git for collaborative analytics.
  • Service-based Data Sharing: Implementing RESTful APIs and other services for data sharing.
  • Data Security and Privacy: Best practices for ensuring data security and compliance in shared environments.
  • Formulation of Analytics Strategy:
  • Developing an Analytics Strategy: Steps for creating a robust data analytics strategy aligned with business goals.
  • Performance Metrics: Defining and measuring key performance indicators (KPIs) in analytics projects.
  • Strategic Decision Making: Leveraging analytics to inform business decisions and strategies.
  • Power BI and Advanced Visualization Techniques:
  • Creating Advanced Reports: Designing complex reports with Power BI’s advanced features.
  • Data Storytelling: Techniques for effective data storytelling using visualizations.
  • Optimizing Dashboards: Strategies for improving dashboard performance and responsiveness.
  • Shared Service Creation and Management:
  • Creating Reusable Analytics Services: Best practices for building and managing shared analytics services.
  • Scalability in Analytics: Structuring services and pipelines for scalability and maintainability.
  • Advanced Dependency Management: Techniques for managing dependencies in complex analytics environments.
  • Note: Learning content may be further refined by experts during training.

Student Ratings & Reviews

No Review Yet
No Review Yet