Skip to main content

Managing Full Stack Developer

We will develop and execute user story as below in Scrum as mentioned in the diagram (green arrow), but we need individual developers for UI Layer, Controller, Business Logic, Database, External Interface.

Managing them will be difficult, when we have one Full Stack Developer he/she can develop application for all the layers.

The Full Stack Developer is highly desirable, because she understands web development as a holistic science. He/ She can move anywhere within the application, from interface to data models, and contribute. A Full Stack Developer is a generalist.

Project manager need to understand the project and architecture, allowing Full Stack Developers to understand all aspects of the project or product they are directing development on. 

Involve from development and deployment to design and communication, and has the experience and skill set to intelligently contribute to those discussions.

As a PM when you understand role and responsibilities of a Full Stack Developer, you will contribute to any aspect of the project.


You will be a strong advocate for both the client and the project team and  able to highlight technical challenges before the development team encounters them.


Comments

Popular posts from this blog

New way of product development

Today is the era of fast-paced world and competitive world. Companies are realizing that the old sequential approach to developing new products won’t get the job done and product can’t be reached to market when compared to competitors. The 4 stages of product development are as follows – R&D, Growth, Maturation, and Decline. Instead of sequential approach, companies are using holistic approach – as in rugby game, the ball gets passed within the team as it moves as a unit up the field. This holistic approach has six characteristics: 1)     Build-in-instability 2)   Self-organizing project teams 3)   Overlapping development phases 4)   Multi-learning 5)   Subtle (very clear and strong) control 6)   Organizational change to explore and learning The above six characteristics forming a fast and flexible process for new product development with advantage of act as a change agent, creative, market driven ideas, flexi...

Product Manager vs Product Owner

Both the product manager and the product owner work towards a common goal, to build and improve products that create meaningful value for customers and all stakeholders within the company. This usually happens by delivering and optimizing product features. Product Manager Product Owner The product manager discovers what users need, prioritizes what to build next, and rallies the team around a product roadmap. The product owner is responsible for maximizing the value of the product by creating and managing the product backlog. This person creates user stories for the development team and communicates the voice of the customer in the Scrum process.      Product Manager and Product Owner's work on below vacuum. Product manager focus on: Business Strategy Long term Product Vision Long term Product Strategy Product Roadmap Alignment with Product Owner Product owner focus on: Release Plan (Product Backlog ie: ...

Data & Analytics

Data and analytics is the management of data for all uses and the analysis of data to drive business processes and improve business outcomes through more effective decision making and enhanced customer experiences. Four Types of data analytics: 1.         Predictive data analysis Predictive analytics may be the most commonly used category of data analytics. Businesses use predictive analytics to identify trends, connections between data, and relationship between data. 2.        Prescriptive data analytics Prescriptive analytics is where AI and big data combine to help predict outcomes and identify what actions to take. Prescriptive analytics can help answer questions such as “What if we try this?” and “What is the best action?” You can test the correct variables and even suggest new variables that offer a higher chance of generating a positive outcome. 3.        Diagnostic data analyti...