Home » Manual and Automation Testing
Unlock the power of software testing by mastering both manual and automation testing. This course provides an in-depth understanding of essential testing techniques, enabling you to excel in real-world scenarios. From foundational manual testing concepts to advanced automation skills, our expert instructors guide you every step of the way. Enroll now to enhance your career and become a versatile software tester.
In today’s fast-paced tech industry, the ability to perform both manual and automated testing is a highly sought-after skill. Software testing plays a critical role in ensuring the quality, functionality, and usability of applications before they reach users. By enrolling in a manual and automation testing course, you can equip yourself with a comprehensive toolkit to handle all types of testing scenarios, from manual exploration to automated regression testing. This blend of manual and automation testing knowledge will make you a valuable asset to any development team.
Manual testing focuses on the hands-on process of evaluating an application’s functionality by following a set of predefined steps. Automation testing, on the other hand, leverages tools and scripts to run repetitive tests, saving time and improving accuracy. Combining these two testing methods allows for a more robust and thorough testing process, ensuring that software is both functionally sound and user-friendly.
Whether you’re just starting your career in software testing or looking to advance your skills, a manual and automation testing course offers a holistic approach to software quality assurance. As a professional tester, having the ability to conduct both manual and automated tests will allow you to cover a wider range of testing scenarios, increasing your value in the job market. Here are some key reasons why this course is the perfect choice for aspiring QA professionals:
Our manual and automation testing course provides a balanced curriculum that covers the fundamental concepts of manual testing as well as the intricacies of automation tools. You'll learn how to write test cases, design test strategies, and execute tests manually, followed by an introduction to various automation frameworks like Selenium and JUnit. This comprehensive approach ensures that you're well-prepared to handle different testing environments. By the end of the course, you’ll understand how to apply both manual and automated testing techniques, enabling you to select the right method based on project requirements. Manual testing allows for in-depth exploration of user interfaces, while automation testing enhances efficiency by automating repetitive tasks.
This course emphasizes practical learning through hands-on projects that mimic real-world scenarios. You’ll work on projects that involve both manual and automated testing, providing you with valuable experience in executing tests, logging bugs, and writing automation scripts. By working through these projects, you'll gain the confidence and skills necessary to thrive in actual QA environments. You'll also learn how to integrate manual and automation testing within the same testing cycle, ensuring a seamless transition between the two. This will allow you to cover both exploratory testing needs with manual methods and long-term, repetitive tests through automation.
The manual and automation testing course covers a wide range of industry-standard testing tools and frameworks, ensuring that you are up-to-date with the latest technologies used by top companies. For manual testing, you'll learn how to work with bug-tracking tools like JIRA and TestRail. In automation testing, you’ll get hands-on experience with popular automation tools such as Selenium, Appium, and TestNG. Learning these tools not only strengthens your testing skills but also makes you more marketable in the industry. Whether you're testing web applications or mobile platforms, the tools and techniques covered in this course will prepare you to handle the challenges of real-world software development projects.
Throughout the course, you will be guided by experienced professionals who bring their real-world expertise into the classroom. These instructors will not only teach you testing techniques but will also share insights on industry best practices, common challenges, and emerging trends in software testing. Their mentorship ensures that you gain a deeper understanding of how manual and automation testing complement each other in the software development lifecycle. With their guidance, you’ll learn how to troubleshoot issues, optimize test automation scripts, and apply manual testing skills in complex testing environments.
We understand the importance of balancing learning with personal and professional commitments. That's why this manual and automation testing course offers flexible learning options, allowing you to choose between online classes, evening sessions, or weekend batches. This flexibility makes it easier for working professionals and students alike to complete the course at their own pace without compromising on other responsibilities. The flexibility also ensures that you can revisit key concepts and practice hands-on exercises until you're confident in your testing abilities.
The curriculum of the manual and automation testing course is designed to cover every essential aspect of testing, ensuring that you gain a solid foundation in both manual and automated approaches. Below are the core topics you will explore during the course:
One of the key benefits of mastering both manual and automation testing is the ability to integrate the two methods into a single, efficient testing process. This course will teach you how to:
After completing the manual and automation testing course, you will be prepared for a wide range of roles in the software development and quality assurance fields. Some of the career opportunities include:
Companies across industries rely on skilled testers to ensure that their software products meet high-quality standards. With the ability to perform both manual and automated testing, you’ll have the competitive edge needed to advance your career in the tech industry.
Enrolling in this manual and automation testing course gives you the flexibility, knowledge, and hands-on experience required to excel in the software testing field. Whether you’re interested in manual testing for detailed exploration or automation testing for speed and efficiency, this course covers it all. Don’t miss the opportunity to enhance your testing skills—sign up today and take the next step in your QA career!
Master the essentials of software quality assurance with our Manual Software Testing course. Let’s get into the details of the course and explore how it can enhance your skills in manual software testing.
Course Name | Hours | Duration | Skills & Tools | Eligible Job roles |
---|---|---|---|---|
Manual Software Testing | 50 | 8 Weeks | 1. Various Types of Testing Techniques 2. Test case writing in Excel & TestRail 3. Bug Reporting in Mantis BT & JIRA 4. Manual Testing Projects on multiple domains 5. Agile Methodology | Manual Tester Test Engineer QA Engineer Functional Tester Game Tester |
Course Name | Hours | Duration | Skills & Tools | Eligible Job roles |
---|---|---|---|---|
Automation Software Testing | 85 | 12 Weeks | 1. Java / Python Programming 2. Selenium Webdriver 3. Web Automation Test Script writing 4. Framework Design 5. TestNG / Pytest 6. Automation Testing Projects on multiple domains | Automation Test Engineer SDET QA Engineer QA Automation |
Don’t miss your chance to join our upcoming batches and start your journey toward becoming a proficient software tester. Secure your spot today! Here is a sneak peek into the upcoming batches:
Course Name | Batch | Timing | Commencement Date | Tentative end Date |
---|---|---|---|---|
Automation Testing | Weekdays | 07:00am to 09:00am | 23rd September | [after 8 weeks] |
Automation Testing | Weekdays | 07:00pm to 09:00pm | 30th September | [after 8 weeks] |
Automation Testing | Weekdays | 10:00am to 01:00pm | 7th October | [after 8 weeks] |
Automation Testing | Weekdays | 03:00pm to 06:00pm | 14th October | [after 8 weeks] |
Get to know the expert behind the course—here’s a sneak peek into the trainer’s profile. With years of industry experience and a passion for teaching, our trainer brings practical insights and hands-on expertise to every session.
Head - Learning and Development & Sr. Automation Test Engineer
With a career spanning over 14 years, Shoeb Shaikh has established himself as a dynamic and solutions-driven professional in the fields of software testing, data science, and educational technology. His journey, marked by a series of executive and managerial roles, has honed his skills and shaped him into a leader who thrives on challenges and excels in finding innovative solutions. Currently serving as the Head of Learning & Development at Cinute Digital Private Limited and as a Senior Automation Test Engineer at TESTRIQ QA Lab LLP. His technical expertise, particularly in Agile processes and automation testing frameworks, has driven quality and efficiency in the IT industry. Shoeb’s leadership at Cinute Digital has led to prestigious accreditations, establishing the company as an official ISTQB exam center.
Domain Head - Data Science
Esha Prakash is the Domain Head of Data Science at Cinute Digital Private Limited, dedicated to disseminating Machine Learning (ML) and Business Intelligence (BI) skills. With a strong foundation in data science, Esha has served in various training roles, including at the Bombay Stock Exchange and Imarticus Learning. She has expertise in tools such as Tableau, PowerBI, SQL, Python, and Big Data Analytics. Esha’s contributions extend to content creation, data science consultancy, and mentoring aspiring data scientists. Her certifications in PowerBI, Tableau, and Machine Learning underscore her commitment to continuous learning. Esha has also authored research papers and worked on significant projects in AI and Big Data.
Senior Automation Trainer
Teshoo Rai is a Senior Trainer specializing in Java Automation with Selenium, with over 5 years of experience. Her career focuses on educating professionals in software testing and automation, leading to significant contributions in the field. Teshoo holds a Bachelor of Science in Information Technology and has served as an Assistant Professor and Corporate Trainer. Her expertise includes Agile testing methodologies, automation frameworks, and quality assurance. Teshoo’s leadership at Cinute Digital and TESTRIQ QA Lab LLP has earned the organizations prestigious accreditations and established them as ISTQB exam centers. She is recognized for her ability to mentor and develop tailored corporate training programs.
Senior QA Engineer
Pooja is an ISTQB-certified tester with over 8 years of experience in software testing, including manual and automation testing. She has served as a Corporate Trainer, providing training on Manual Testing, API Testing, Selenium Automation, and more. Pooja has experience working on various projects across industries like finance, education, real estate, and more, with roles in testing, bug tracking, and documentation. She is currently a Corporate Trainer at Cinute Digital Pvt Ltd and has previously worked as a Software Test Engineer at HDFC Pvt Ltd and Testriq QA Labs. Pooja is proficient in using tools like JIRA, Mantis, TFS, and Trello for bug tracking and has strong skills in testing across multiple platforms, including desktop and mobile applications.
Senior Software Test Engineer
Vaibhav Kakade is a Manual Tester at TESTRIQ QA Lab LLP and a Corporate Trainer with Cinute Digital Private Limited. With a background in teaching and training since 2017, Vaibhav has transitioned into IT training, specializing in Manual Software Testing, DBMS with MySQL, and Java Automation with Selenium. He holds certifications from AAA and ISTQB, and an MBA in Project Management. Vaibhav is also involved in grooming participants, resume building, and interview assistance, playing a crucial role in placement activities. His dedication to teaching and training has made him an integral part of both Testriq and CDPL.
Data Science Trainer
Rehmat Shaikh is a visionary data scientist committed to unlocking the potential of data to drive informed decision-making. Her expertise as a Data Science Trainer at Cinute Digital Private Limited reflects her dedication to empowering learners and enabling them to solve real-world problems using data science techniques.
Data Science Trainer
Khan Cezzane is a Dynamic Data Science Trainer, with a Bachelor’s in Artificial Intelligence & Data Science Engineering. Cezzane has experience as a Data Analyst and Data Manager, and has worked on impactful projects, including developing a CV and machine learning system for the hearing-impaired. He is dedicated to empowering others through data science education and solving real-world problems.
Cinute Digital stands out due to our unique partnership with Testriq, a leading independent software testing company. This collaboration allows us to offer:
Curriculum infused with real-world industry experience
Practical exercises that mirror actual testing scenarios
Expert mentors with current industry insights
Up-to-date skills aligned with what top companies need
Strong industry connections for internships and job placements
Moreover, we offer a comprehensive learning experience with hands-on projects, certifications, and a guaranteed paid internship, ensuring you're truly job-ready upon completion.
To become an API tester, you can follow these steps:
By following these steps and continuously improving your skills and knowledge, you can become a proficient API tester ready to tackle the challenges of testing modern software applications.
Learning database management systems (DBMS) can be an enriching journey, and here's a step-by-step guide to get started:
Becoming an expert in manual testing requires dedication, continuous learning, and practical experience. Here are steps to help you on your journey:
By following these steps and consistently striving for excellence, you can become an expert in manual testing and make significant contributions to the quality and success of software projects.
Determining the "best" type of automation testing depends on various factors such as project requirements, technology stack, team expertise, and budget constraints. Different types of automation testing have their strengths and are suitable for different scenarios. Here are some popular types of automation testing and their respective advantages:
Ultimately, the "best" type of automation testing depends on the specific goals and requirements of your project. It's essential to consider factors such as the type of application, testing objectives, available resources, and the expertise of your team when selecting the appropriate type of automation testing. In many cases, a combination of different types of automation testing may be necessary to achieve comprehensive test coverage and ensure the quality and reliability of the software.
Determining the "best" institute for manual testing depends on various factors such as your location, budget, preferred mode of learning (online or offline), curriculum quality, faculty expertise, industry reputation, and alumni feedback. Here are some considerations to help you find the right institute for manual testing:
Some reputable institutes for manual testing include:
Ultimately, choose an institute that best fits your learning goals, budget, and career aspirations. It's also beneficial to network with professionals in the industry and seek their recommendations for reputable training programs.
The maximum salary for an automation tester in India can vary depending on several factors including experience, skills, location, company size, industry, and educational background. However, experienced automation testers with advanced skills and expertise can command high salaries in the Indian job market.
As of my last update in January 2022, the maximum salary for an automation tester in India could range anywhere from ₹10 lakhs to ₹30 lakhs per annum or even higher in some cases, particularly for professionals with extensive experience, leadership roles, or specialized skills in high-demand technologies such as Selenium, Appium, or API testing.
It's important to note that salary figures may differ based on the city or region. For instance, metropolitan cities like Bangalore, Hyderabad, Pune, and Chennai often offer higher salaries compared to other cities due to the presence of a thriving IT industry and increased demand for skilled professionals.
Moreover, factors such as certifications (e.g., ISTQB, CSTE, CSQA), additional skills in programming languages (e.g., Java, Python), experience with specific automation tools and frameworks, and domain knowledge (e.g., finance, healthcare, e-commerce) can also influence salary levels.
To get a more accurate estimate of the maximum salary for automation testers in India, it's recommended to research recent job listings, consult salary surveys specific to the IT industry, and consider factors such as market demand and economic conditions at the time of your job search. Additionally, networking with professionals in the field and leveraging online resources can provide valuable insights into salary trends and negotiation strategies.
Comparing the fields of AI (Artificial Intelligence), ML (Machine Learning), and data science is akin to comparing apples, oranges, and bananas—they're related but serve different purposes and have distinct areas of focus. However, each field contributes to advancing technology and solving complex problems in unique ways. Here's a breakdown of each:
So, which is better—AI, ML, or data science? It's not a matter of one being better than the other but rather about understanding their roles and how they complement each other:
Data Science is concerned with extracting insights and knowledge from data, often using statistical methods and tools. It encompasses a broader range of techniques beyond machine learning, including data mining, data cleaning, and data visualization.
Machine Learning is a subset of AI that focuses specifically on developing algorithms and models that enable computers to learn from data. It's a crucial tool in the data scientist's toolkit for building predictive models and making sense of complex datasets.
Artificial Intelligence is the overarching field that encompasses both data science and machine learning, as well as other techniques and methodologies aimed at replicating human intelligence in machines.
In conclusion, the choice between AI, ML, and data science depends on the problem you're trying to solve and the tools and techniques best suited to address that problem. Each field has its own strengths and applications, and practitioners often draw from all three to tackle complex challenges and drive innovation in technology and beyond.
Machine learning is a subset of artificial intelligence (AI) that focuses on developing algorithms and statistical models that enable computers to learn from and make predictions or decisions based on data, without being explicitly programmed to do so. In essence, it's about creating systems that can automatically learn and improve from experience.
At its core, machine learning involves feeding data into algorithms to allow them to recognize patterns, make predictions, or generate insights. These algorithms are trained using large datasets, where they learn to identify correlations, trends, and relationships within the data. Through a process of iteration and adjustment, the algorithms improve their performance over time, becoming more accurate and effective at the tasks they're designed for.
There are several types of machine learning approaches, including supervised learning, unsupervised learning, semi-supervised learning, and reinforcement learning, each suited for different types of tasks and data. Supervised learning involves training algorithms on labeled data, where the correct answers are provided alongside the input data. Unsupervised learning, on the other hand, involves training algorithms on unlabeled data, allowing them to discover hidden patterns or structures within the data. Semi-supervised learning combines elements of both supervised and unsupervised learning, while reinforcement learning involves training algorithms to make sequences of decisions through trial and error, with the goal of maximizing cumulative rewards.
Overall, machine learning has become increasingly important in various fields, from finance and healthcare to marketing and cybersecurity, revolutionizing how businesses and organizations leverage data to make informed decisions and automate processes.