Full Stack Data Analytics Career Path For Banking and Finance
You Are Here Because…
Your Career Path To Full Stack Data Analyst
SkillCamper’s hiring partners
NSDC-backed placements
Leading platforms like LinkedIn and Naukri
- Predictive modeling for categorical outcomes.
- Ensemble Machine Learning Techniques.
- Statistical modeling.
- Advanced Machine Learning.
- Time Series Forecasting.
- Data Visualization and Storytelling
- Clarity in presenting findings, insights, and recommendations through reports or presentations.
- Ability to convey complex technical concepts to non-technical stakeholders.
- Proficiency in data visualization techniques to communicate information effectively.
- Precision in documenting processes, methodologies, and findings.
- Vigilance in spotting errors or discrepancies within datasets.
- Ability to break down complex problems into manageable components.
- Ability to approach problems objectively and evaluate evidence logically.
- Capacity to assess data quality, identify biases, and challenge assumptions.
- Skill in formulating hypotheses and designing experiments to test them.
- Proficiency in interpreting data and drawing meaningful insights.
- Capacity to identify trends, patterns, and outliers within datasets.
- Understanding of statistical methods and probability theory.
- Capability to perform calculations, statistical analysis, and modeling.
- Thoroughness in examining data for accuracy, completeness, and consistency.
Discover the power of Python for analyzing data and SQL for managing databases. Get ready to start your own data analysis journey with Python's versatile tools and SQL's database querying capabilities.
- 1.1 Python Basics:
- Understanding Python syntax and data types.
- 1.2 Object-Oriented Programming (OOPs):
- Implementing classes and objects.
- 1.3 Control Structures and Functions:
- Using conditional statements and functions.
- 1.4 Data Structures:
- Manipulating lists, tuples, dictionaries, and sets.
- 1.5 Python Libraries for Data Science:
- Utilizing Numpy, Pandas, Matplotlib, and Seaborn for data analysis.
- 1.6 SQL:
- Database design, creation, and querying using MySQL Workbench.
Uncover hidden insights in data and automate tasks with ease. Learn how to explore and clean data effectively while automating tasks using shell scripting. Gain practical skills to kickstart your data analysis projects.
- 2.1 Exploratory Data Analysis (EDA):
- Data sourcing, cleaning, univariate, bivariate, and multivariate analysis.
- 2.2 Unix and Shell Scripting:
- Basic shell scripting for automating tasks.
- 2.3 Basic Excel:
- Data manipulation and analysis using Microsoft Excel.
Understand the stories behind the numbers and make informed decisions. Learn essential statistical concepts and hypothesis testing techniques to draw meaningful conclusions from data. Get ready to interpret data with confidence.
- 3.1 Descriptive and Inferential Statistics:
- Understanding data distributions and making inferences.
- 3.2 Probability:
- Probability theory and its applications.
- 3.3 Distributions:
- Discrete and continuous probability distributions.
- 3.4 Central Limit Theorem:
- Understanding the behavior of sample means.
- 3.5 Linear Algebra and Calculus:
- Basic concepts for machine learning.
- 3.6 Hypothesis Testing:
- A/B testing, Chi-squared test, ANOVA.
Harness the power of machine learning to uncover patterns and tell compelling stories with data. Dive into predictive modeling, time series analysis, and data visualization techniques. Equip yourself to create impactful data-driven narratives.
- 4.1 Machine Learning:
- Supervised and unsupervised learning.
- 4.2 Linear Regression:
- Predictive modeling for continuous variables.
- 4.3 Logistic Regression:
- Predicting categorical outcomes.
- 4.4 Clustering:
- Unsupervised learning for grouping similar data points.
- 4.5 Advanced Machine Learning:
- Tree models, decision trees, ensembles, random forests.
- 4.6 Time Series Forecasting:
- Techniques for analyzing and forecasting time series data.
- 4.7 Data Visualization and Storytelling:
- Communicating insights using Tableau or PowerBI, Excel, and structured problem-solving frameworks.
- 4.8 Structured Problem Solving and Frameworks:
- Business problem-solving methodologies like 5Ws, 5 Whys, Business Model Canvas, Issue Tree Frameworks, and Operations Research using Pyomo.
Enhance your professional toolkit with essential business communication and soft skills. Learn how to communicate effectively and collaborate with others in a business setting. Get ready to excel in your professional journey.
- 5.1 Business Communication:
- Effective communication in a business context.
- 5.2 Soft Skills:
- Interpersonal skills crucial for professional success.
Learn Essential Skills & Tools




















Data Analytics is the Career of the Future
Industry Specialization -
Why You Need It & How We Deliver


An Intelligent Learning Platform That Feels Like A Personal Mentor

.avif)

.avif)


Meet Your Instructors
Is This Program Right For You?
Land Your Dream Job With

How is SkillCamper Different from Other Online Courses?
Learner Reviews
.avif)




Invest In Yourself
Get Certified


Frequently Asked Questions
Explore Career Paths

Ready to become a Data Scientist that industry loves to hire? Apply Now.
