Why enroll for Data Science with Python Certification Course in Seattle?
Python is the preferred language for new technologies such as Data Science and Machine Learning.
Data Science and Analytics (DSA) job listings is projected to grow by nearly 364,000 listings in 2020 - IBM
According to the TIOBE index, Python is one of the most popular programming languages in the world.
Data Science with Python Certification Course Benefits in Seattle
Data Science with Python training covers industry-relevant skills for the fast-growing worldwide job market. The worldwide datasphere is expected to reach 181 zettabytes by 2025, driving the need for Python experts. Data science jobs are predicted to grow by 35–36%, creating 21,000 new positions annually, making this training a gateway to high-value, future-proof careers.
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Why Data Science with Python Certification Course from edureka in Seattle
Live Interactive Learning
World-Class Instructors
Expert-Led Mentoring Sessions
Instant doubt clearing
Lifetime Access
Course Access Never Expires
Free Access to Future Updates
Unlimited Access to Course Content
24x7 Support
One-On-One Learning Assistance
Help Desk Support
Resolve Doubts in Real-time
Hands-On Project Based Learning
Industry-Relevant Projects
Course Demo Dataset & Files
Quizzes & Assignments
Industry Recognised Certification
Edureka Training Certificate
Graded Performance Certificate
Certificate of Completion
About your Data Science with Python Certification Course
Data Science with Python Skills Covered in Seattle
Python Programming
Statistical Analysis
Data Analysis and Visualization
Machine Learning
No Code Data Science
Machine Learning on Cloud
Data Science with Python Tools Covered in Seattle
Data Science with Python Course Syllabus in Seattle
Curriculum Designed by Experts
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Edureka’s Data Science with Python Training in Seattle will provide hands-on experience in Python programming. We offer live-instructor-led sessions which will help you in mastering the concepts involved in Python. With Edureka’s Data Science Python training in Seattle, you will learn the essential concepts of Python programming such as Data Structure, Data types, Strings, tuples, lists, basic operators and functions, GUIs, Multi-threading, Data Manipulation, Expressions, Networking, Lambda expressions and much more. Also, in this Data Science Python course, you will gain a thorough knowledge of Python OOPS concepts, modules, Django framework, Database programming, and connectivity to multiple data sources.
Introduction to Python for Data Science
10 Topics
Topics
Python scripting
Variables & types
Conditions & loops
Function basics
Lambda usage
Lists & tuples
Dictionaries
File reading
Error handling
Jupyter setup
Hands-on
Writing a “Hello World” script
Manipulating lists and dictionaries
Reading a CSV file
Skills
Core Python programming
Data science environment setup
Working with Python Programming
8 Topics
Topics
Set operations
List comprehensions
Generator functions
Using modules
Regex patterns
Special collections
Map & filter
Custom exceptions
Hands-on
Using regex for data cleaning
Creating a generator
Building a custom module
Skills
Intermediate Python techniques
Efficient code structures
Advanced Python Programming for Data Science
10 Topics
Topics
OOP concepts
Class inheritance
Context managers
Unit testing
API requests
Code profiling
Logging basics
JSON handling
Project packaging
Type hints
Hands-on
Building a preprocessing class
Fetching API data
Writing a unit test
Skills
Advanced Python programming
Modular code development
Data Analysis with NumPy and Pandas
10 Topics
Topics
NumPy arrays
Vector operations
Math functions
Series handling
DataFrames
Dataset merging
Missing values
Pivot tables
Data summaries
Memory tuning
Hands-on
NumPy array calculations
Cleaning data with Pandas
Creating a pivot table
Skills
Data manipulation
Basic statistical analysis
Data Visualization and Preprocessing Techniques
9 Topics
Topics
Matplotlib Plotting
Seaborn Visualization Styles
Line and Bar Charts
Histogram Analysis
Web Scraping Basics
Missing Data Treatment
Feature Scaling Techniques
Encoding Categorical Data
Data Storytelling Approaches
Hands-on
Creating Seaborn plots
Scraping website data
Normalizing a dataset
Skills
Data visualization
Data preprocessing
Statistical Methods for Data Science
10 Topics
Topics
Descriptive stats
Variance, standard deviation
Probability
Normal distribution
Hypothesis testing: t-tests
Correlation: Pearson coefficient
Outlier detection: z-score
Sampling: random sampling
Statistical visualization
P-values: significance
Hands-on
Conducting a t-test
Visualizing correlations
Detecting outliers
Skills
Statistical analysis
Result interpretation
Fundamentals of Machine Learning
9 Topics
Topics
CRISP-DM process
ML categories
Python for ML
ML tools
Data lifecycle
Evaluation
Feature basics
AI ethics
Industry insights
Hands-on
Setting up an ML project
Exploring a dataset
Skills
ML workflows
Industry trends
Supervised Learning – Regression Analysis
10 Topics
Topics
Linear regression
Gradient descent
Polynomial regression
Ridge regression
Error metrics
R-squared
Cross-validation
Residual analysis
Feature selection
Overfitting mitigation
Hands-on
Building a linear regression model
Evaluating with RMSE
Skills
Regression modeling
Model evaluation
Supervised Learning – Classification Fundamentals
10 Topics
Topics
Logistic regression
Binary labels
Decision trees
Confusion matrix
Precision & recall
ROC curve
Overfitting
Feature ranking
Model validation
Class imbalance
Hands-on
Logistic regression model
Decision tree visualization
Skills
Binary classification
Evaluation metrics
Supervised Learning – Advanced Classification
11 Topics
Topics
Random forests
SVM
XGBoost
Grid search
Random search
SHAP values
SMOTE
Model stacking
Association rules
Recommendation engines
Model evaluation
Hands-on
Random Forest model
Using SHAP for insights
Building Apriori rules
Skills
Advanced classification
Interpretability, recommendations
Unsupervised Learning and Clustering Techniques
9 Topics
Topics
K-Means clusters
Elbow method
Hierarchical clustering
DBSCAN logic
PCA reduction
Anomaly detection
Silhouette score
Segmentation use
Cluster visuals
Hands-on
K-Means clustering
Applying PCA
Detecting anomalies
Skills
Unsupervised learning
Dimensionality reduction
AutoML and No-Code Data Science Solutions
7 Topics
Topics
AutoML tools
DataRobot
KNIME workflows
H2O.ai models
Synthetic data
Rapid prototyping
AI fairness
Hands-on
DataRobot model building
KNIME workflow creation
Generating synthetic data
Skills
AutoML prototyping
No Code workflows
Reinforcement Learning Essentials (Self-paced)
10 Topics
Topics
Agent-Environment Interaction
OpenAI Gym Setup
Markov Decision Process
Q-Learning Fundamentals
Exploration-Exploitation Tradeoff
Epsilon-Greedy Strategy
Reward Shaping Concepts
Reinforcement Learning Applications
Q-Table Implementation
Reinforcement Learning Limitations
Hands-on
Q-Learning in a game
OpenAI Gym experiment
Skills
RL algorithms
Practical applications
Time Series Analysis and Forecasting Methods (Self-paced)
10 Topics
Topics
Time Series Components
Stationarity Testing (ADF)
ARIMA Model Parameters
Forecasting with Prophet
Forecast Error Metrics
Backtesting Techniques
Trend Visualization Methods
Confidence Interval Analysis
External Variable Integration
Model Selection Strategies
Hands-on
ARIMA model
Prophet forecasting
Visualizing trends
Skills
Time series analysis
Forecasting
Machine Learning on Cloud Platforms (Self-paced)
8 Topics
Topics
Cloud ML Introduction
AWS SageMaker
Google Cloud AI
Azure ML
Cloud storage
Serverless ML
Model deployment
Scalability
Hands-on
Training a model in SageMaker
Deploying with Google Cloud AI
Using S3 for data storage
Skills
Cloud-based ML
Scalable model deployment
MLOps Fundamentals (Self-paced)
7 Topics
Topics
MLOps Introduction
CI/CD for ML
Flask API Deployment
MLflow Model Tracking
Docker Containerization
Model Drift Monitoring
Model Lifecycle Management
Hands-on
Deploying with Flask
MLflow pipeline setup
Skills
MLOps practices
Data Science Python Training in Seattle Description
Edureka provides extensive Data Science with Python training in Seattle to assist you in mastering basics with sophisticated theoretical ideas such as writing scripts, sequence, and file procedures in Python while gaining practical experience with functional apps. This Data Science training is combined with hands-on tasks and live projects. Python is a common high-level, open-source programming language with a broad spectrum of apps for games and web applications in automation, big data, data science, and information analytics development. It's a versatile, powerful, object-oriented and interpreted language that you will learn during this Data Science with Python course in Seattle.
About Data Science with Python Certification Course
Our Data Science with Python Certification Course gives you all the skills you need, from basic Python programming and data processing with NumPy and Pandas to making detailed visualizations with Matplotlib and Seaborn. You will learn how to do statistical analysis, test hypotheses, and preprocess data. Then you will develop and test machine learning models (regression, classification, clustering) using projects that are like real business situations.
You can improve your skills even more by looking into AutoML platforms like H2O.ai and DataRobot. You'll have lifetime access to the materials, community support, and a recognized certification.
Why Learn Data Science using Python?
Python is popular for learning data science because of its clean, accessible syntax, which allows you to focus on analysis rather than boilerplate coding. With an extensive ecosystem that includes NumPy for rapid arrays, Pandas for DataFrames, Matplotlib/Seaborn for graphs, scikit-learn for machine learning, and TensorFlow/PyTorch for deep learning, there's little need to recreate everything from scratch.
Python operates on Windows, macOS, and Linux, connects seamlessly with databases, Excel, business intelligence tools, and cloud platforms, and is scalable from simple scripts to production pipelines. Finally, a large, engaged community ensures ongoing library enhancements and an abundance of learning resources.
Why do we need Python for data science?
One of the primary advantages of Python is its straightforward syntax and intelligibility. It reduces the time that data analysts would otherwise spend acquainting themselves with a programming language.
Why do we need to learn data science?
Data science is a modern field that continues to affect how industries behave. Learning this skill may help you keep up with trends in the industry you work in and provide important insights.
Why learn Machine Learning using Python?
Data science is a set of techniques that enables computers to learn the desired behavior from data without being explicitly programmed. It employs techniques and theories drawn from many fields within the broad areas of mathematics, statistics, information science, and computer science. This certification training exposes you to different classes of machine learning algorithms, like supervised, unsupervised, and reinforcement learning algorithms.
This Data Science with Python Training imparts the necessary skills like data pre-processing, dimensional reduction, and model evaluation, and also exposes you to different machine learning algorithms like regression, clustering, decision trees, random forests, Naive Bayes, and many more.
What are the objectives of our Data Science with Python Training?
The primary goals of our Python-based Data Science training programme are to:
Enable learners to write clear, efficient code for any data task by providing them with a \ comprehensive understanding of core and advanced Python skills.
Educate learners about the practical application of NumPy and Pandas for the purpose of cleansing, transforming, and summarizing datasets, as well as Matplotlib/Seaborn for the purpose of generating visually appealing charts and dashboards.
Build and evaluate regression, classification, clustering, and recommendation models with scikit-learn (and deep learning frameworks), and perform hypothesis testing.
Interpret metrics such as RMSE, F1, and ROC.
Deploy models on cloud, implement CI/CD pipelines, containerization (Docker), and model monitoring (MLflow) to ensure production readiness.
Provide End-to-End Data Solutions Guide learners through real-world projects.
Who should go for this Python Data Science and ML online course?
Developers aspiring to be a ‘Machine Learning Engineer'
Analytics Managers who are leading a team of analysts
Business Analysts who want to understand Machine Learning (ML) Techniques
Information Architects who want to gain expertise in Predictive Analytics
Professionals who want to design automatic predictive models
What are the prerequisites for this Data Science with Python Training?
The prerequisites for Edureka's Python Data Science and ML course training include the fundamental understanding of Computer Programming Languages.
How will I execute the practicals in this online Python course?
You will do your assignments and case studies using Jupyter Notebook, which is already installed on your Cloud LAB environment (access it from a browser). The access credentials are available on your LMS. Should you have any queries, the 24*7 Support Team will promptly assist you.
Data Science with Python Course Projects in Seattle
Domain: Retail
A big retail chain keeps track of what customers buy, how often they buy it, and their demographics, such as their age and where they live. The marketing team wants to put custom....
Domain: BFSI
A regional bank sees that more and more clients are closing their accounts. The bank aims to guess which customers are most likely to depart based on things like their account ba....
Domain: Real Estate
A real estate agency wishes to give people who are looking to buy a property realistic pricing projections. You need to make a regression model that can estimate house values bas....
Domain: Aviation
An airline has to predict how many passengers it will have each month in order to make the best use of its flight schedules, crew assignments, and fuel planning. You need to use ....
Domain: Finance
A credit card firm loses money because of fake transactions. They want a system that can find strange things in transaction data, including spending patterns that don't make sens....
Domain: Manufacturing
A manufacturing plant uses heavy machinery that sometimes breaks down, which costs a lot of time and money. The plant wants to know when equipment is likely to break down by look....
Domain: Finance
An investment company wants to use machine learning to guess the stock prices of a certain company so they can make better trading choices. You need to use past stock prices and ....
Domain: Supply Chain/Retail
A retail company is having trouble keeping its inventory levels balanced, which means it either runs out of stock (losing revenues) or has too much stock (raising costs). You nee....
Data Science with Python Certification in Seattle
To unlock the Edureka’s Data Science with Python Training course completion certificate, you must ensure the following:
Completely participate in this Edureka’s Data Science with Python Training Course.
Evaluation and completion of the quizzes and projects listed.
Yes, Data Scientist is a good career option for those interested in working with data and extracting insights from it. With the explosive growth of data in recent years, the demand for skilled data scientists has increased significantly. As a Data Scientist, one can work in a variety of industries such as healthcare, finance, marketing, and more. The job typically requires a strong foundation in statistics, machine learning, and programming skills, as well as a good understanding of business and domain knowledge. Data Scientist is responsible for collecting, analyzing, and interpreting large and complex data sets to inform business decisions and strategies. Overall, data science is a challenging and rewarding career option with a promising outlook for the future.
Yes, Machine Learning Engineer is a good career option for those interested in working with machine learning algorithms and implementing them in real-world applications. Machine learning is a rapidly growing field with increasing demand for professionals who can build and deploy machine learning models to automate tasks and extract insights from large amounts of data. As a Machine Learning Engineer, one can work in a variety of industries such as healthcare, finance, e-commerce, and more. The job typically requires a strong foundation in machine learning, programming skills, and a good understanding of software engineering principles. Overall, machine learning engineering can be a challenging and rewarding career option with a promising outlook for the future.
To learn data science and machine learning as a beginner, one can start by learning Python programming and then move on to data analysis. After understanding data analysis, one can learn the basics of machine learning, and apply machine learning algorithms to real-world problems. Edureka’s Data Science with Python Certification Training provides a structured learning experience that helps beginners gain practical experience and develop the skills necessary to become proficient in data science and machine learning.
Data Science with Python Certification provides a strong foundation in data science, machine learning, and Python programming. This certification is valuable for several reasons:
Demonstrates Mastery of Key Skills: Certification indicates that an individual has a strong understanding of data science concepts, machine learning techniques, and Python programming skills.
Improves Job Prospects: Data science and machine learning are high-growth industries, and certification can improve job prospects by demonstrating expertise in these areas.
Increases Earning Potential: Certified data scientists and machine learning engineers often earn higher salaries compared to their non-certified peers.
Enhances Credibility: Certification is a recognized indicator of expertise and can enhance an individual's credibility in the field.
Keeps Skills Up-to-Date: Data science and machine learning are constantly evolving fields, and certification requires individuals to stay up-to-date with the latest technologies and techniques.
Enables Career Advancement: Certification can enable individuals to advance their careers by demonstrating mastery of key skills and increasing their value to their organization.
Data Science with Python Certification can open up various job roles in the field of data science and machine learning. Some of the common job roles available after completing this certification include:
Data Analyst: A data analyst collects, analyzes, and interprets large datasets to help businesses make informed decisions.
Machine Learning Engineer: A Machine Learning Engineer is responsible for designing, building, and deploying machine learning models that can automate certain tasks.
Data Scientist: A Data Scientist is responsible for analyzing and interpreting complex data to extract insights and build predictive models.
Business Intelligence Analyst: A Business Intelligence Analyst is responsible for analyzing data to provide insights that can help businesses make informed decisions.
AI Architect: An AI Architect is responsible for designing and implementing AI systems, including machine learning algorithms and neural networks.
Research Scientist: A Research Scientist is responsible for conducting research and experiments to develop new machine learning algorithms and techniques.
You do not need a coding background to enroll in this Data Science with Python course. The course begins with basic modules in which we cover the fundamentals of Python coding. In fact, you do not need prior knowledge in data science or machine learning either. All relevant topics are a part of this course from scratch.
Please visit the following pages, which will guide you through the top interview questions:
Karunakar ReddySenior System Analyst at Santander UK
★★★★☆
Edureka has very good instructors and technical support team, I have completed the course BIG DATA & AWS through web training, and it was very good training, helped me to learn very swiftly. When I stuck up in installation and in writing map reduce programming technical support resolved very quickly and I was very happy with their response in time. As well as they providing life time access for our completed course videos so it will be useful in real time projects. I feel very happy to recommend Edureka for my friends on big data course.
December 09, 2017
Praveen KonkisaBI Architect & Hadoop Specialist at Teradata
★★★★★
I have taken Informatica, Hadoop, R-programming, Spark and Scala and several other training's from past 3 years. There is no way to say that these courses are bad.. this is the exceptional institute with so many senior people who spend lot of their efforts for a cause. Because i know the pain as a trainer as well. Hats off to to team and the person who started edureka. I'm posting my personal experience and i do lot of social service. Good luck to others.
December 09, 2017
Sidhartha MitraIBM MDM COE Head @ CTS, Kolkata Area, India
★★★★★
Edureka has been an unique and fulfilling experience. The course contents are up-to-date and the instructors are industry trained and extremely hard working. The support is always willing to help you out in various ways as promptly as possible. Edureka redefines the way online training is conducted by making it as futuristic as possible, with utmost care and minute detailing, packaged into the a unique virtual classrooms. Thank you Edureka!
December 09, 2017
Eric ArnaudPhD candidate in computer engineering speciality applied cryptography at Korea University of Technology and Education
★★★★★
I would like to recommend any one who wants to be a Data Scientist just one place: Edureka. Explanations are clean, clear, easy to understand. Their support team works very well such any time you have an issue they reply and help you solving the issue. I took the Data Science course and I'm going to take Machine Learning with Mahout and then Big Data and Hadoop and after that since I'm still hungry I will take the Python class and so on because for me Edureka is the place to learn, people are really kind, every question receives the right answer. Thank you Edureka to make me a Data Scientist.
December 09, 2017
Gagan Maheshwari
★★★★★
Thanks a lot for your Android course. Right from the point of the start of the demo class, until the end of the complete course, the ride has been truly joyous and full of learning . I had no insight into Android development but with the help of your excellent instructor, I now stand a chance to explore wider into this. The webinars were truly awesome. Live Online sessions were highly interactive. The edureka! methodology for Online classes has changed the way I look at webinars now. Plus point is the knowledgeable course material. I am falling short of words describing the great experience of my Android training at edureka!. Thanks Team edureka!
December 09, 2017
Dheerendra YadavProject Lead at HCL Technologies, Ghaziabad, Uttar Pradesh, India
★★★★★
Earlier I had taken training in different technologies from other institutes and companies but no doubt Edureka is completely different, First time in my carrier I have received such kind of training and support. They have really awesome instructors. The support persons are technically sound and I would like to appreciate their 24 x 7 support. I never seen such kind of support by other companies in India till now. When I had started training on Hadoop I do not have any idea of Java but their training structure is marvelous and they taught Java in very easy way and build up confidence in it. My training is still going on and it is about to finish and I would like to thanks Edureka to help me to find robust path of carrier with such a new and emerging technology of Big Data.
December 09, 2017
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Python Data Science Training in Seattle FAQs
What is the main purpose of using Python?
Python is designed to be a high-level, versatile programming language that is suitable for a diverse array of applications, such as web development, software development, data analysis, and automation. It is powerful for complex tasks and accessible to novices due to its extensive libraries and simple syntax.
How much Python is required for data science?
You don't need to be a Python specialist to work in data science, but you do need to know about the basics and essential libraries.
Is Python enough to become a data scientist?
Python is an important and commonly used language in data science, but it's not enough on its own to make you a data scientist. Python is excellent because it has a lot of libraries, like as Pandas, NumPy, and Scikit-learn, which are essential to interacting with data, analyzing it, and learning how to use machines. However, data science needs a wider range of abilities, including statistical concepts, data visualization, communication, and domain expertise.
What is the use of data science?
Data science is the process that extracts useful information and insights from data so that clients may make better decisions and solve problems in numerous domains.
Does data science have scope in the future?
Yes, the future of data science is extremely bright. Data is becoming more and more common, and businesses need people who can make decisions based on data. This is causing the area to grow rapidly and to need skilled employees.
What is the role of a data scientist?
A data scientist's job is to look at and understand complicated data in order to find useful information that can help businesses make decisions. They use a mix of computer science, machine learning, and statistical analysis abilities to connect raw data with strategies that can be put into action.
What is the cycle of data science?
The data science cycle, or data science lifecycle, is a way to solve problems with data that is organized. There are several processes that are repeated, such as describing the problem, gathering and preparing data, exploring and modeling the data, evaluating the model, and sharing the results. The cycle isn't a straight line; it's an iterative process where new information learned at one level may cause you to go back to prior phases.
What are the five steps of the data science process?
Defining the problem, obtaining the data, exploring the data, modeling the data, and communicating the results are the five stages of the data science process.
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