Data Science at Scale using Spark and Hadoop Training in United States of America

  • Learn via: Online Instructor-Led / Classroom Based / Onsite
  • Duration: 3 Days
  • Price: Please contact for booking options
  • Upcoming Date:
  • UK Based Global Training Provider

Data scientists build information platforms to provide deep insight and answer previously unimaginable questions. Spark and Hadoop are transforming how data scientists work by allowing interactive and iterative data analysis at scale.

Learn how Spark and Hadoop enable data scientists to help companies reduce costs, increase profits, improve products, retain customers, and identify new opportunities.

Cloudera University’s three-day course helps participants understand what data scientists do, the problems they solve, and the tools and techniques they use. Through in-class simulations, participants apply data science methods to real-world challenges in different industries and, ultimately, prepare for data scientist roles in the field.

We can organize this training at your preferred date and location. Contact Us!

Prerequisites

There are no prerequisites for this course.

Who Should Attend

This course is suitable for developers, data analysts, and statisticians with basic knowledge  of Apache Hadoop: HDFS, MapReduce, Hadoop Streaming, and Apache Hive as well as experience working in Linux environments. Students should have proficiency in a scripting language; Python is strongly preferred, but familiarity with Perl or Ruby is sufficient

What You Will Learn

Through instructor-led discussion and interactive, hands-on exercises, participants will navigate the Hadoop ecosystem, and develop concrete skills such as:

  • How to identify potential business use cases where data science can provide impactful results
  • How to obtain, clean and combine disparate data sources to create a coherent picture for analysis
  • What statistical methods to leverage for data exploration that will provide critical insight into your data
  • Where and when to leverage Hadoop streaming and Apache Spark for data science pipelines
  • What machine learning technique to use for a particular data science project
  • How to implement and manage recommenders using Spark’s MLlib, and how to set up and evaluate data experiments
  • What are the pitfalls of deploying new analytics projects to production, at scale

Training Outline

Introduction

  • About This Course
  • About Cloudera
  • Course Logistics
  • Introductions

Data Science Overview

  • What Is Data Science?
  • The Growing Need for Data Science
  • The Role of a Data Scientist

Use Cases

  • Finance
  • Retail
  • Advertising
  • Defense and Intelligence
  • Telecommunications and Utilities
  • Healthcare and Pharmaceuticals

Project Lifecycle

  • Steps in the Project Lifecycle
  • Lab Scenario Explanation

Data Acquisition

  • Where to Source Data
  • Acquisition Techniques

Evaluating Input Data

  • Data Formats
  • Data Quantity
  • Data Quality

Data Transformation

  • File Format Conversion
  • Joining Data Sets
  • Anonymization

Data Analysis and Statistical Methods

  • Relationship Between Statistics and Probability
  • Descriptive Statistics
  • Inferential Statistics
  • Vectors and Matrices

Fundamentals of Machine Learning

  • Overview
  • The Three C’s of Machine Learning
  • Importance of Data and Algorithms
  • Spotlight: Naive Bayes Classifiers

Recommender Overview

  • What is a Recommender System?
  • Types of Collaborative Filtering
  • Limitations of Recommender Systems
  • Fundamental Concepts

Introduction to Apache Spark and MLlib

  • What is Apache Spark?
  • Comparison to MapReduce
  • Fundamentals of Apache Spark
  • Spark’s MLlib Package

Implementing Recommenders with MLlib

  • Overview of ALS Method for

Latent Factor Recommenders

  • Hyperparameters for ALS Recommenders
  • Building a Recommender in MLlib
  • Tuning Hyperparameters
  • Weighting

Experimentation and Evaluation

  • Designing Effective Experiments
  • Conducting an Effective Experiment
  • User Interfaces for Recommenders

Production Deployment and Beyond

  • Deploying to Production
  • Tips and Techniques for Working at Scale
  • Summarizing and Visualizing Results
  • Considerations for Improvement
  • Next Steps for Recommenders

Conclusion

Why Choose Us

Experience live, interactive learning from the comfort of your home or office with Bilginç IT Academy's Online Instructor-Led Data Science at Scale using Spark and Hadoop Training in United States of America. Engage directly with expert trainers in a virtual environment that mirrors the energy and schedule of a physical classroom.

  • Live Sessions: Join scheduled classes with a live instructor and other delegates in real-time.
  • Interactive Experience: Engage in group activities, hands-on labs, and direct Q&A sessions with your trainer and peers.
  • Global Expert Trainers: Learn from a handpicked global pool of expert trainers with deep industry experience.
  • Proven Expertise: Benefit from over 30 years of quality training experience, equipping you with lasting skills for success.
  • Scalable Delivery: Accessible worldwide, including United States of America, with flexible scheduling to meet your professional needs.

Immerse yourself in our most sought-after learning style for Data Science at Scale using Spark and Hadoop Training in United States of America. Our hand-picked classroom venues in United States of America offer an invaluable human touch, providing a focused and interactive environment for professional growth.

  • Highly Experienced Trainers: Boost your skills with trainers boasting 10-20+ years of real-world experience.
  • State-of-the-Art Venues: Learn in high-standard facilities designed to ensure a comfortable and distraction-free experience.
  • Small Class Sizes: Our limited class sizes foster meaningful discussions and a personalized learning journey.
  • Best Value: Achieve your certification with high-quality training and competitive pricing.

Streamline your organization's training requirements with Bilginç IT Academy’s Onsite Data Science at Scale using Spark and Hadoop Training in United States of America. Experience expert-led learning at your own business premises, tailored to your corporate goals.

  • Tailored Learning Experience: Customize the training content to fit your unique business projects or specific technical needs.
  • Maximize Training Budget: Eliminate travel and accommodation costs, focusing your entire budget on the training itself.
  • Team Building Opportunity: Enhance team bonding and collaboration through shared learning experiences in your workspace.
  • Progress Monitoring: Track and evaluate your employees' progression and performance with relative ease and direct oversight.


Contact us for more detail about our trainings and for all other enquiries!

Data Science at Scale using Spark and Hadoop Training Course in United States of America Schedule

Join our public courses in our United States of America facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

We can organize this training at your preferred date and location.
26 April 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
19 May 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
03 June 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
17 June 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
24 June 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
02 July 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
04 July 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago
06 July 2026 (3 Days)
New York, San Francisco, Austin, Seattle, Chicago

The United States continues to define the global frontier of technology and innovation, serving as the home to the world's most influential tech titans. From the legendary Silicon Valley and San Francisco Bay Area to emerging hubs like Austin, Seattle, and the Silicon Alley in New York, the US ecosystem remains unparalleled. Top-tier institutions such as MIT, Stanford, and Carnegie Mellon provide the research backbone for breakthroughs in Artificial Intelligence, Quantum Computing, and Cybersecurity. Our training programs are meticulously aligned with these industry-leading standards, ensuring that professionals can navigate the complexities of the modern digital landscape. We bridge the gap between academic theory and high-stakes corporate execution in the most competitive tech market on Earth.

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