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Data Science with Python Course in Kolkata

(4.9) 9564 Ratings
  • Join the Data Science with Python Training in Kolkata to master data analysis and machine learning using Python.
  • Learn Python, NumPy, Pandas, Matplotlib, machine learning algorithms and predictive modeling techniques.
  • Gain hands-on experience through real-time datasets, case studies, and practical projects.
  • Ideal for Students, Analysts, IT Professionals aiming for data science careers.
  • Choose flexible batches: Weekday, Weekend, or Fast-Track Data Science with Python training in Kolkata.
  • Benefit from placement support, interview preparation and expert career guidance.

Course Duration

55+ Hrs

Live Project

3 Project

Certification Pass

Guaranteed

Training Format

Live Online (Expert Trainers)
Quality Training With Affordable Fee

⭐ Fees Starts From

INR 38,000
INR 18,500

12462+

Professionals Trained

11+

Batches every month

3692+

Placed Students

261+

Corporate Served

What You'll Learn

Build strong Python foundations for data cleaning, preprocessing, and exploratory data analysis.

Join the Data Science with Python Course in Kolkata to understand core statistics and analytics concepts.

Implement machine learning algorithms using real-world datasets and practical business scenarios.

Gain hands-on experience in data visualization with Python libraries and interactive dashboards.

Work on complete data science projects, from data acquisition to model deployment.

Get ready for Data Science with Python Training in Kolkata through expert-guided, practice-focused sessions.

Comprehensive Overview of Data Science with Python Course

The Data Science with Python Course in Kolkata is structured to strengthen analytical thinking and programming expertise for today’s data-centric careers. This program emphasizes Python-driven data analysis, machine learning, and visualization using practical, real-world datasets. Through Data Science with Python Training in Kolkata, participants gain hands-on experience with industry tools, business challenges, and project-based assignments. The course also supports career advancement with Data Science with Python Certification, validating industry-ready competencies. With expert mentorship and applied projects, this Data Science with Python Course with Placement prepares learners for opportunities in analytics, artificial intelligence, and data-informed decision-making roles across diverse sectors.

Additional Info

Future Trends in Data Science with Python Training

  • AI Driven Automation: Artificial intelligence is increasingly automating data science workflows in Python, from data cleaning to model selection. Future training will focus on using AutoML libraries, intelligent feature engineering, and automated pipelines that reduce manual effort. Learners will be trained to supervise, fine-tune, and validate automated models rather than building everything from scratch. This trend helps professionals deliver faster insights while maintaining accuracy and ethical standards in real-world business environments.
  • Advanced Machine Learning: Data Science with Python training will move deeper into advanced machine learning techniques such as ensemble models, reinforcement learning, and hybrid algorithms. Learners will gain exposure to optimizing model performance, handling complex datasets, and solving industry-specific problems. Python libraries like scikit-learn, XGBoost, and LightGBM will be used extensively. The focus will be on building scalable, production-ready models that align with business goals.
  • Deep Learning Expansion: Deep learning continues to grow rapidly, and Python remains the primary language driving this trend. Training programs will emphasize neural networks, CNNs, RNNs, and transformer-based models using TensorFlow and PyTorch. Learners will work on image recognition, speech processing, and text analytics projects. This trend prepares professionals to work in AI-driven sectors such as healthcare, fintech, and autonomous systems with confidence.
  • Real Time Analytics: Future data science training will highlight real-time data processing and streaming analytics using Python. Learners will explore tools that handle live data from IoT devices, applications, and online platforms. The ability to analyze data instantly and generate actionable insights will be critical for businesses. Python-based frameworks and integrations will help learners design solutions that support rapid decision-making and continuous monitoring.
  • Cloud Based Data: Cloud platforms are transforming how data science projects are developed and deployed. Python training will increasingly integrate cloud-based tools for storage, processing, and model deployment. Learners will understand how to build scalable analytics solutions using cloud environments while managing costs and performance. This trend ensures data scientists can collaborate efficiently and deploy models seamlessly across global teams.
  • Data Engineering Skills: Modern data scientists are expected to handle data pipelines alongside analytics. Future training will combine Python data science with data engineering concepts such as ETL processes, data warehousing, and workflow automation. Learners will gain skills to manage large, complex datasets efficiently. This trend bridges the gap between raw data collection and advanced analytics, making professionals more versatile and industry-ready.
  • Explainable AI Models: As AI adoption grows, transparency and trust become critical. Data Science with Python training will emphasize explainable AI techniques that help interpret model decisions. Learners will use Python tools to visualize model behavior, reduce bias, and ensure compliance with regulations. This trend prepares professionals to build ethical and accountable AI systems that stakeholders can understand and trust.
  • Domain Focused Analytics: Future training programs will tailor Python data science skills to specific industries such as healthcare, finance, retail, and manufacturing. Learners will work on domain-focused case studies and datasets to understand industry challenges. This trend ensures professionals can apply analytics effectively in real business contexts rather than relying only on generic examples.
  • Big Data Integration: Handling massive datasets is becoming standard in data science roles. Python training will increasingly integrate big data technologies and distributed computing concepts. Learners will focus on optimizing performance while analyzing large-scale data. This trend prepares data scientists to work with enterprise-level data systems and deliver insights from complex, high-volume data sources.
  • Career Oriented Learning: Future Data Science with Python training will strongly align with career outcomes. Programs will include portfolio projects, interview-focused problem solving, and real-world simulations. Learners will gain practical exposure that reflects actual job roles and expectations. This trend ensures training is not just theoretical but directly supports employability and long-term career growth in data science.

Essential Tools and Technologies in Data Science with Python

  • Python Core Libraries: Python forms the foundation of data science, and core libraries are essential for efficient analysis. Tools like NumPy and Pandas enable fast data manipulation, numerical computing, and structured data handling. These libraries help professionals clean, transform, and analyze large datasets with ease. Training focuses on writing optimized, readable code and understanding data structures that support advanced analytics, machine learning workflows, and seamless integration with other technologies.
  • Data Visualization: Visualization plays a key role in interpreting insights and communicating results. Python tools such as Matplotlib, Seaborn, and Plotly help create clear charts, dashboards, and interactive visuals. Learners understand how to choose the right visual for different data types and business needs. These tools help transform complex datasets into meaningful stories that support data-driven decision-making across organizations.
  • Machine Learning Frameworks: Machine learning frameworks are central to predictive analytics in Python. Libraries like scikit-learn provide algorithms for classification, regression, clustering, and model evaluation. Training emphasizes selecting the right models, tuning hyperparameters, and validating results. These frameworks allow data scientists to build reliable predictive solutions that scale well and deliver consistent performance in real-world scenarios.
  • Deep Learning Platforms: Deep learning platforms extend Python’s capabilities into advanced AI applications. TensorFlow and PyTorch support neural network development for tasks such as image recognition and natural language processing. Learners gain hands-on experience designing, training, and optimizing deep learning models. These technologies are essential for building intelligent systems that handle complex, unstructured data at scale.
  • Big Data Tools: Handling massive datasets requires specialized tools that integrate well with Python. Technologies like Apache Spark enable distributed data processing and faster analytics. Training focuses on managing large volumes of data efficiently without sacrificing accuracy. These tools help data scientists work with enterprise-scale data and deliver insights from complex and high-velocity data sources.
  • Database Technologies: Databases are crucial for storing and retrieving structured and unstructured data. Python integrates seamlessly with SQL and NoSQL databases for querying and analysis. Learners understand how to connect Python applications to databases, perform efficient queries, and manage data pipelines. These technologies ensure reliable data access for analytics and machine learning tasks.
  • Cloud Analytics Platforms: Cloud-based tools support scalable data science solutions using Python. Learners explore cloud environments for data storage, processing, and model deployment. Training highlights collaboration, performance optimization, and cost efficiency. Cloud analytics platforms allow teams to build flexible, production-ready solutions that can grow with business demands and global operations.
  • Version Control Systems: Version control is essential for managing code, collaboration, and project tracking. Tools like Git help data scientists maintain clean codebases and collaborate efficiently. Training covers best practices for branching, merging, and documentation. These systems ensure transparency, reproducibility, and smooth teamwork in data science projects.
  • Model Deployment Tools: Deploying models is a critical step in delivering business value. Python-based deployment tools help integrate machine learning models into applications and workflows. Learners understand how to package models, monitor performance, and update solutions. These tools ensure analytics models remain reliable and effective in production environments.
  • Automation Workflow Tools: Automation tools streamline repetitive tasks in data science projects. Python supports workflow automation for data collection, processing, and reporting. Training emphasizes building automated pipelines that reduce manual effort and improve consistency. These technologies help professionals focus on analysis and innovation while maintaining efficiency across data science operations.

Roles and Responsibilities of Data Science with Python

  • Data Collection Management: Data scientists using Python are responsible for gathering data from multiple sources such as databases, APIs, sensors, and web platforms. They ensure data relevance, accuracy, and completeness before analysis. This role includes identifying reliable data sources, automating data extraction, and maintaining proper data documentation. Effective data collection lays the foundation for meaningful analysis, predictive modeling, and business insights that support informed decision-making.
  • Data Cleaning Preparation: One of the core responsibilities is cleaning and preparing raw data for analysis. This involves handling missing values, correcting inconsistencies, removing duplicates, and standardizing formats using Python libraries. Data scientists ensure datasets are analysis-ready and trustworthy. Proper data preparation improves model accuracy, reduces bias, and ensures reliable outputs across analytics and machine learning workflows.
  • Exploratory Data Analysis: Exploratory data analysis helps uncover patterns, trends, and anomalies within datasets. Using Python, data scientists analyze data distributions, correlations, and outliers to gain initial insights. This responsibility supports hypothesis generation and guides feature selection. Effective exploration enables teams to understand business problems deeply and decide the best analytical or predictive approach.
  • Feature Engineering Design: Feature engineering is the process of transforming raw data into meaningful inputs for machine learning models. Data scientists use Python to create, modify, and select features that improve model performance. This role requires strong analytical thinking and domain understanding. Well-designed features enhance prediction accuracy and help models capture real-world relationships more effectively.
  • Model Development Training: Building and training machine learning models is a key responsibility. Data scientists select appropriate algorithms, train models using Python frameworks, and evaluate performance metrics. They fine-tune parameters to improve accuracy and reliability. This role ensures predictive models are robust, scalable, and aligned with business objectives across various use cases.
  • Model Evaluation Validation: Evaluating and validating models ensures they perform well on unseen data. Data scientists use Python to test models, compare results, and prevent overfitting. This responsibility includes cross-validation and performance monitoring. Proper evaluation builds trust in model predictions and supports confident deployment in real-world environments.
  • Visualization Insight Reporting: Communicating insights is as important as analysis itself. Data scientists create visual reports and dashboards using Python visualization tools. They translate complex findings into clear, actionable insights for stakeholders. Effective visualization supports decision-making and helps non-technical teams understand trends, risks, and opportunities revealed by data.
  • Deployment Integration Support: Data scientists assist in deploying models into production systems. Using Python, they work with engineering teams to integrate models into applications and workflows. This responsibility ensures smooth implementation, performance monitoring, and regular updates. Successful deployment turns analytical work into practical, business-ready solutions.
  • Automation Workflow Optimization: Automation improves efficiency in data science projects. Data scientists use Python to automate data pipelines, model training, and reporting processes. This role reduces manual effort and minimizes errors. Automated workflows ensure consistency, scalability, and faster turnaround times for analytics and machine learning tasks.
  • Ethical Data Governance: Maintaining ethical standards is a growing responsibility. Data scientists ensure data privacy, security, and fairness in models. Using Python, they implement checks to reduce bias and comply with regulations. Ethical data practices build organizational trust and ensure responsible use of data-driven technologies across industries.

Top Companies Hiring for Data Science with Python Professionals

  • Google Technologies: Google hires Data Science with Python professionals to work on large-scale data processing, AI research, and product optimization. Professionals analyze massive datasets to improve search algorithms, ad targeting, cloud services, and user experience. Python is widely used for machine learning, automation, and experimentation. Google values strong analytical thinking, statistical knowledge, and the ability to turn data into scalable, real-world solutions that impact billions of users globally.
  • Amazon: Amazon recruits Python data scientists to drive insights across e-commerce, cloud computing, logistics, and customer behavior analytics. Roles involve predictive modeling, demand forecasting, recommendation systems, and operational optimization. Professionals work with big data tools and machine learning pipelines. Data Science with Python plays a critical role in enhancing efficiency, personalization, and decision-making across Amazon’s diverse business units.
  • Microsoft Corporation: Microsoft employs Data Science with Python experts to support cloud platforms, enterprise software, and AI-driven solutions. Professionals analyze usage data, build predictive models, and enhance products like Azure, Office, and Dynamics. Python is used for analytics, automation, and machine learning research. Microsoft values innovation, problem-solving skills, and the ability to apply data insights to improve business performance and customer satisfaction.
  • IBM: IBM hires Python data scientists to work on AI, consulting, and enterprise analytics solutions. Professionals handle data modeling, predictive analytics, and advanced statistical analysis for global clients. Python is essential for machine learning, data visualization, and automation tasks. IBM focuses on industry-driven use cases, helping organizations leverage data for digital transformation and smarter business strategies.
  • Accenture: Accenture recruits Data Science with Python professionals for analytics consulting and digital transformation projects. Roles involve analyzing complex datasets, building predictive models, and delivering insights for clients across industries. Python is used extensively for data processing and machine learning solutions. Accenture values professionals who can combine technical expertise with business understanding to solve real-world challenges.
  • Deloitte: Deloitte hires Python data scientists to support advisory, risk, and analytics services. Professionals work on data-driven decision-making, forecasting, and performance optimization projects. Python helps in handling large datasets and building analytical models. Deloitte emphasizes strong problem-solving skills and the ability to translate analytics into strategic recommendations for enterprises and government organizations.
  • Infosys: Infosys employs Data Science with Python professionals to support global clients in analytics, AI, and automation initiatives. Roles include data analysis, model development, and insight generation for business optimization. Python is widely used for data processing and machine learning. Infosys offers exposure to diverse domains, helping professionals build strong analytical and technical expertise.
  • Tata Consultancy Services: TCS hires Python data scientists to work on analytics, AI, and digital transformation projects. Professionals analyze business data, build predictive models, and support decision-making across industries. Python is used for automation, visualization, and machine learning solutions. TCS provides large-scale project exposure and opportunities to work with global clients and emerging technologies.
  • Wipro Analytics: Wipro recruits Data Science with Python experts to deliver analytics-driven solutions for enterprise clients. Professionals handle data mining, predictive modeling, and performance analysis. Python supports end-to-end analytics workflows and AI development. Wipro focuses on innovation, efficiency, and data-led transformation, offering strong career growth in analytics and data science roles.
  • Capgemini Engineering: Capgemini hires Python data scientists to work on advanced analytics, AI, and digital engineering solutions. Roles involve data exploration, model building, and insight delivery for complex business problems. Python is a core tool for analytics and machine learning tasks. Capgemini values professionals who can bridge data science with business and technology to deliver measurable impact.
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Data Science with Python Course Objectives

Learners are encouraged to have a basic understanding of mathematics and logical reasoning. Prior exposure to programming or statistics is helpful but not mandatory. The course is structured to support beginners and working professionals alike.
The training provides practical exposure to real-world datasets, tools, and techniques. Learners gain strong analytical, Python programming, and machine learning skills. It prepares candidates for industry-relevant roles with confidence.
  • High industry demand
  • Global career opportunities
  • Attractive salary growth
  • Cross-domain applications
  • Long-term career stability
Data-driven decision-making is critical across all industries today. Data Science with Python training equips professionals with skills employers actively seek. It plays a key role in securing competitive roles in analytics, AI, and machine learning domains.
  • Python programming
  • Data analysis
  • Statistics fundamentals
  • Machine learning
  • Data visualization
Yes, learners work on industry-relevant projects using real datasets. These projects help bridge the gap between theory and practice. Hands-on experience improves problem-solving skills and job readiness.
  • IT services
  • Finance sector
  • Healthcare industry
  • E-commerce platforms
  • Manufacturing companies
While job placement depends on individual effort, the training significantly boosts employability. It prepares learners with practical skills, projects, and interview readiness. Placement support further enhances job prospects.
  • Practical skill development
  • Industry exposure
  • Career transition support
  • High earning potential
  • Strong job demand
Students gain hands-on experience with industry-standard tools used in data analysis and machine learning. These tools enable efficient data processing, visualization, and model development. Tool proficiency helps learners perform confidently in real-world job roles.
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Data Science with Python Course Benefits

The Data Science with Python Certification Course in Kolkata offers practical, hands-on learning in data analysis, machine learning, and predictive modeling using Python tools and techniques. Participants gain real-world experience through live projects, industry case studies, and guidance from experienced mentors. With dedicated placement support, this Data Science with Python Course equips professionals for in-demand careers in analytics, artificial intelligence, and data-driven business environments.

  • Designation
  • Annual Salary
    Hiring Companies
  • 5.44L
    Min
  • 9.8L
    Average
  • 19.3L
    Max
  • 5.0L
    Min
  • 8.6L
    Average
  • 18.45L
    Max
  • 4.9L
    Min
  • 9.5L
    Average
  • 16.7L
    Max
  • 5.84L
    Min
  • 8.4L
    Average
  • 16.7L
    Max

Data Science with Python Certification Training

Our Data Science with Python Training in Kolkata provides comprehensive instruction in data analysis, machine learning, and Python-driven modeling techniques. Participants develop practical expertise through real-world projects and industry-focused case studies. With structured placement assistance, this program prepares learners for successful careers in data analytics, artificial intelligence, and business intelligence domains.

Top Skills You Will Gain
  • Data Analysis
  • Statistical Thinking
  • Python Programming
  • Machine Learning
  • Data Visualization
  • Predictive Modeling
  • Problem Solving
  • Business Insights

12+ Data Science with Python Tools

Online Classroom Batches Preferred

Weekdays (Mon - Fri)
27 - Apr - 2026
08:00 AM (IST)
Weekdays (Mon - Fri)
29 - Apr - 2026
08:00 AM (IST)
Weekend (Sat)
2 - May - 2026
11:00 AM (IST)
Weekend (Sun)
3 - May - 2026
11:00 AM (IST)
Can't find a batch you were looking for?
₹38,000 ₹18,500 10% OFF Expires in

No Interest Financing start at ₹ 5000 / month

Corporate Training

  • Customized Learning
  • Enterprise Grade Learning Management System (LMS)
  • 24x7 Support
  • Enterprise Grade Reporting

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We’re Doing Much More!

Empowering Learning Through Real Experiences and Innovation

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Data Science with Python Course Curriculam

Trainers Profile

Our Data Science with Python Course in Kolkata is delivered by expert trainers with deep industry experience in data analytics, machine learning, statistical modelling, and Python development. We provide high-quality study materials, practical assignments, and Data Science with Python Internship opportunities to strengthen hands-on expertise. Learners gain real-world exposure through projects, case studies, and guided exercises. These learning resources help candidates build strong analytical thinking, problem-solving abilities, and technical skills required for high-growth data science careers.

Syllabus for Data Science with Python Course in Kolkata Download syllabus

  • Data science fundamentals
  • Analytics lifecycle overview
  • Python environment setup
  • Industry applications understanding
  • Data roles exploration
  • Problem solving mindset
  • Python syntax basics
  • Variables data types
  • Conditional statements logic
  • Functions programming concepts
  • Loop structures practice
  • Error handling techniques
  • Data cleaning methods
  • Exploratory data analysis
  • Data manipulation techniques
  • Statistical analysis basics
  • Pattern recognition concepts
  • Insight generation strategies
  • Visualization principles basics
  • Chart selection techniques
  • Dashboard design fundamentals
  • Storytelling with data
  • Visual analytics techniques
  • Reporting best practices
  • Probability concepts understanding
  • Hypothesis testing techniques
  • Regression analysis fundamentals
  • Descriptive statistics principles
  • Sampling methods overview
  • Statistical interpretation skills
  • Machine learning concepts
  • Supervised learning techniques
  • Unsupervised learning methods
  • Model evaluation metrics
  • Feature engineering basics
  • Algorithm selection strategies
  • Predictive analytics concepts
  • Forecasting methods understanding
  • Classification model techniques
  • Regression model building
  • Model optimization strategies
  • Performance improvement methods
  • NumPy operations fundamentals
  • Pandas data manipulation
  • Matplotlib visualization basics
  • Scikit learn usage
  • Data processing workflows
  • Library integration techniques
  • Business problem analysis
  • Dataset evaluation techniques
  • Model development lifecycle
  • Insight presentation methods
  • Case study discussions
  • Practical implementation strategies
  • Resume building techniques
  • Portfolio development guidance
  • Interview preparation sessions
  • Industry skill requirements
  • Job role understanding
  • Professional growth strategies
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Industry Projects

Project 1
Customer Churn Analysis

Analyze customer behavior using Python to predict churn rates, identify key risk factors, and deliver data-driven retention strategies with clear visual insights.

Project 2
Sales Forecasting Model

Build a predictive model using historical sales data to forecast future demand, helping businesses optimize inventory planning and revenue decisions.

Project 3
Sentiment Analysis System

Develop a text analytics solution to classify customer reviews and social media data, extracting sentiment trends to support smarter marketing strategies.

Our Hiring Partner

Exam & Data Science with Python Certification

Data Science with Python certification validates your analytical, programming, and problem-solving skills. It builds credibility with employers and demonstrates hands-on expertise in real-world data handling. Certified professionals often gain better job visibility, salary growth, and career advancement opportunities across industries.
  • Basic mathematics knowledge
  • Understanding of statistics
  • Logical thinking ability
  • Interest in data analysis
  • Basic computer skills
While no certification guarantees a job, Data Science with Python certification significantly improves employability. It strengthens your resume and demonstrates practical expertise to recruiters. When combined with projects and internships, it increases your chances of securing high-demand data roles.
  • Data Analyst
  • Data Scientist
  • Machine Learning Engineer
  • Business Analyst
  • Python Developer
This certification equips you with in-demand technical and analytical skills required across industries. It enables career transitions into data-driven roles and supports faster professional growth. Certified professionals often gain access to higher-level responsibilities and leadership opportunities.

Our learners
transformed their careers

35 Laks
Highest Salary Offered
50%
Average Salary Hike
30K+
Placed in MNC's
15+
Year's in Training
Our Alumni
Alumni

A majority of our alumni

fast-tracked into managerial careers.

Get inspired by their progress in the Career Growth Report.

Our Student Successful Story

checkimage Regular 1:1 Mentorship From Industry Experts checkimage Live Classes checkimage Career Support

How are the Data Science with Python Course with LearnoVita Different?

Feature

LearnoVita

Other Institutes

Affordable Fees

Competitive Pricing With Flexible Payment Options.

Higher Data Science with Python Fees With Limited Payment Options.

Live Class From ( Industry Expert)

Well Experienced Trainer From a Relevant Field With Practical Data Science with Python Training

Theoretical Class With Limited Practical

Updated Syllabus

Updated and Industry-relevant Data Science with Python Course Curriculum With Hands-on Learning.

Outdated Curriculum With Limited Practical Training.

Hands-on projects

Real-world Data Science with Python Project With Live Case Studies and Collaboration With Companies.

Basic Projects With Limited Real-world Application.

Certification

Industry-recognized Data Science with Python Certifications With Global Validity.

Basic Data Science with Python Certifications With Limited Recognition.

Placement Support

Strong Placement Support With Tie-ups With Top Companies and Mock Interviews.

Basic Placement Support

Industry Partnerships

Strong Ties With Top Tech Companies for Internships and Placements

No Partnerships, Limited Opportunities

Batch Size

Small Batch Sizes for Personalized Attention.

Large Batch Sizes With Limited Individual Focus.

Additional Features

Lifetime Access to Data Science with Python Course Materials, Alumni Network, and Hackathons.

No Additional Features or Perks.

Training Support

Dedicated Mentors, 24/7 Doubt Resolution, and Personalized Guidance.

Limited Mentor Support and No After-hours Assistance.

Data Science with Python Course FAQ's

Certainly, you are welcome to join the demo session. However, due to our commitment to maintaining high-quality standards, we limit the number of participants in live sessions. Therefore, participation in a live class without enrollment is not feasible. If you're unable to attend, you can review our pre-recorded session featuring the same trainer. This will provide you with a comprehensive understanding of our class structure, instructor quality, and level of interaction.
All of our instructors are employed professionals in the industry who work for prestigious companies and have a minimum of 9 to 12 years of significant IT field experience. A great learning experience is provided by all of these knowledgeable people at LearnoVita.
  • LearnoVita is dedicated to assisting job seekers in seeking, connecting, and achieving success, while also ensuring employers are delighted with the ideal candidates.
  • Upon successful completion of a career course with LearnoVita, you may qualify for job placement assistance. We offer 100% placement assistance and maintain strong relationships with over 650 top MNCs.
  • Our Placement Cell aids students in securing interviews with major companies such as Oracle, HP, Wipro, Accenture, Google, IBM, Tech Mahindra, Amazon, CTS, TCS, Sports One , Infosys, MindTree, and MPhasis, among others.
  • LearnoVita has a legendary reputation for placing students, as evidenced by our Placed Students' List on our website. Last year alone, over 5400 students were placed in India and globally.
  • We conduct development sessions, including mock interviews and presentation skills training, to prepare students for challenging interview situations with confidence. With an 85% placement record, our Placement Cell continues to support you until you secure a position with a better MNC.
  • Please visit your student's portal for free access to job openings, study materials, videos, recorded sections, and top MNC interview questions.
LearnoVita Certification is awarded upon course completion and is recognized by all of the world's leading global corporations. LearnoVita are the exclusive authorized Oracle, Microsoft, Pearson Vue, and Data Science with Python. I exam centers, as well as an authorized partner of Data Science with Python. Additionally, those who want to pass the National Authorized Certificate in a specialized IT domain can get assistance from LearnoVita's technical experts.
As part of the training program, LearnoVita provides you with the most recent, pertinent, and valuable real-world projects. Every program includes several projects that rigorously assess your knowledge, abilities, and real-world experience to ensure you are fully prepared for the workforce. Your abilities will be equivalent to six months of demanding industry experience once the tasks are completed.
At LearnoVita, participants can choose from instructor-led online training, self-paced training, classroom sessions, one-to-one training, fast-track programs, customized training, and online training options. Each mode is designed to provide flexibility and convenience to learners, allowing them to select the format that best suits their needs. With a range of training options available, participants can select the mode that aligns with their learning style, schedule, and career goals to excel in Data Science with Python.
LearnoVita guarantees that you won't miss any topics or modules. You have three options to catch up: we'll reschedule classes to suit your schedule within the course duration, provide access to online class presentations and recordings, or allow you to attend the missed session in another live batch.
Please don't hesitate to reach out to us at contact@learnovita.com if you have any questions or need further clarification.
To enroll in the Data Science with Python at LearnoVita, you can conveniently register through our website or visit any of our branches in India for direct assistance.
Yes, after you've enrolled, you will have lifetime access to the student portal's study materials, videos, and top MNC interview questions.
At LearnoVita, we prioritize individual attention for students, ensuring they can clarify doubts on complex topics and gain a richer understanding through interactions with instructors and peers. To facilitate this, we limit the size of each Data Science with Python Service batch to 5 or 6 members.
The average annual salary for Data Science with Python Professionals in India is 6 LPA to 8 LPA.
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