Technical Architect

JOB DESCRIPTION

As a Solution Architect, he/she must have a profound knowledge of available technologies to suggest the best solution according to the incoming requirements and existing environment. He/she makes solution-level decisions and analysis of their impact on the overall business goals and outcomes. After developing a strategic technical vision of the projects, the solution architect is involved in estimating the budget and presenting it to the stakeholders. Once everything is agreed upon, he or she monitors the process of development and keeps stakeholders informed about the progress.
 
A solution architect’s responsibilities directly derive from processes in practice:
Communicate and consult with clients and internal stakeholders to develop appropriate solutions.
Analyzing the technology environment, documenting requirements
Creating a solution prototype
Controlling solution development
Verify the correctness and effectiveness of implementations
Work closely with cross-functional teams to develop and delivery projects
Maintain the security and confidentiality of the projects under development
Supporting project management 

JOB REQUIREMENT

 Must have:
Bachelor's degree or equivalent with focus on information technology, engineering or a related field.
Have at least 10 years of experience in a technological role.
Have at least 5 years of experience of Solution Architect role.
Experience as Software Architect in designing, documenting, and implementing of Software Architectures including Cloud (Azure/AWS), especially very strong at Azure.
Engineering and software architecture design.
Deep analytical skills.
Ability to mentor and develop technical team.
Excellent understanding of customer behavior, and keen insights regarding technology trends.
Excellent communication and presentation of technical matter to customers, as well as influence and negotiation skills.
Supervise system infrastructure to ensure functionality and efficiency.
Experience with agile software development, Scrum, Kanban, SAFe
Good spoken and written command of English. 
Nice to have:
Certified MS Azure Solution Architect.
AWS Certified Solutions Architect
Speaking and writing in German

WHAT'S ON OFFER

Competitive salary and bonuses: You don’t have to pay for your medical – social - unemployment insurance and your personal income tax. We will cover all for you.
Guaranteed 13th month salary.
Loyalty bonus equal to 50% of your monthly NET salary each year after the first working year.
Monthly lunch allowance, free daily fruit – snack – coffee, and sponsored sport clubs.
Premium health insurance & Free annual medical check.
14 days annual leave, add 1 day biennial.
Very clear career path for Engineers so that our client can offer you many online/in-house training courses, not only hard skills/technical skills, but also soft skills. We also sponsor to get technical certificates that you can use for your qualifications.
Enjoy English speaking environment. You will be more confident in your English skills because we offer tuition fee sponsor and English proficiency bonus.
Regular parties & gifts in yearly special days: Team dinners, End Year Party, company trip, team building activities, Christmas, Tet holiday, etc.…
Chance to work with top talents from Switzerland, Germany, Greece, and challenges with latest technologies (microservices, CI/CD, latest version of .NET Core, Angular…), as well as with different business domains (ecommerce, automotive, logistics, insurance, healthcare).
Professional Agile software development.
Exchanging knowledge with 20 internal communities (Java, .NET, PHP, Cloud Computing, Mobile Development, IoT, Cryptocurrencies).

CONTACT

PEGASI – IT Recruitment Consultancy | Email: recruit@pegasi.com.vn | Tel: +84 28 3622 8666
We are PEGASI – IT Recruitment Consultancy in Vietnam. If you are looking for new opportunity for your career path, kindly visit our website www.pegasi.com.vn for your reference. Thank you!

Job Summary

Company Type:

Outsource

Technical Skills:

Azure, .NET

Location:

Ho Chi Minh - Viet Nam

Working Policy:

Salary:

Negotiation

Job ID:

J01015

Status:

Close

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