MUMBAI · FULLTIME
Senior Solutions Engineer

Straive
Mumbai · onsite · Posted 6d ago
Sourced from
Undisclosed7–7 yrsfulltimeMumbai
Your match
?
Sign in to see your match score, skill gaps & tailored resume.
Section · 01
About this role
Roles & Responsibilities:
- Design, build, and operate production-grade software and data solutions end-to-end, from problem definition and architecture through implementation, deployment, monitoring, and continuous improvement.
- Design and implement reliable, scalable, secure, and well-governed data pipelines and data products using AWS and Snowflake across structured, semi-structured, and unstructured data sources.
- Model, curate, and optimise Snowflake datasets, schemas, and data structures in line with enterprise platform standards, ensuring performance, quality, consistency, and usability for downstream consumers.
- Apply strong software engineering practices, including clean code, modular design, automated testing, CI/CD, observability, secure development, and maintainable architecture.
- Partner with business and technical stakeholders to translate requirements into robust data solutions, prioritise delivery, and identify opportunities to enable advanced analytics and AI use cases.
- Use AI-assisted engineering as a standard part of daily development work to accelerate coding, refactoring, documentation, testing, debugging, and solution exploration while maintaining strong engineering judgement and quality standards.
- Build cloud-native integrations and automation on AWS, making effective use of services such as compute, storage, networking, security, orchestration, event-driven architectures, and managed AI services where appropriate.
- Own deployment, release, and production operations, including troubleshooting, root-cause analysis, performance tuning, incident resolution, peer code reviews, pair programming, and reuse of proven engineering patterns.
You will have the following qualifications:
- Bachelor or Masters degree in Computer Science, Software Engineering, Data Science, Artificial
- Intelligence / Machine Learning, or a related technical discipline.
- 7+ years of professional experience in a hands-on software engineering, solution engineering, or data
- engineering role, with a proven track record of delivering production-grade systems in enterprise environments.
- Demonstrated ability to build and operate data products, cloud services, or AI-enabled solutions with measurable business outcomes and clear operational ownership.
- Deep hands-on AWS experience is required, including practical knowledge of core services for compute, storage, networking, identity and access management, security, orchestration, monitoring, and serverless or event-driven architectures. AWS certification is preferred, ideally AWS Certified
- Solutions Architect – Associate, AWS Certified Data Engineer – Associate, or AWS Certified Machine Learning Engineer – Associate.
- Deep hands-on Snowflake experience is required, including data modelling, SQL performance tuning, pipeline integration, access control, cost/performance optimisation, data sharing, and platform governance. SnowPro® Core Certification or advanced Snowflake certifications are a plus.
- Strong proficiency in Python and/or Java, with solid understanding of software design principles, APIs, automated testing, packaging, dependency management, and production maintainability.
- Experience with AWS AI services, including Amazon Bedrock, and familiarity with agent-based AI solution patterns, retrieval-augmented generation, model evaluation, guardrails, and responsible AI practices is preferred.
- Demonstrated habit of using AI-assisted engineering tools such as GitHub Copilot, Claude, Cursor, or similar tools as part of everyday development to improve productivity, code quality, testing, documentation, and delivery speed.
- Familiarity with harness engineering or similar AI-assisted development concepts, including structuring prompts, evaluation loops, reusable development workflows, automated checks, and feedback mechanisms to improve reliability, repeatability, and engineering quality.
- Strong hands-on engineering mindset, with a focus on code quality, sound design decisions, maintainability, and effective collaboration in team-based environments.
- Strong familiarity with the software development lifecycle, Git-based workflows, CI/CD,
- infrastructure-as-code concepts, automated testing, DevOps practices, and production support.
- Ability to translate ambiguous business problems into clear technical scopes, iterative delivery plans, and measurable success criteria.
- Comfortable working with sensitive and confidential data, and partnering with governance, risk, and security stakeholders to embed controls from the start.
- Strong collaboration and communication skills, with the ability to work closely with business stakeholders and cross-functional technology teams.
- Preferred: background in the financial industry, with an understanding of financial markets, data sensitivity, regulatory expectations, and enterprise risk controls.
Sourced from linkedin · view original
Let the agent run this one for you.
Tailored resume, auto-apply, and referral lookup — in under 2 minutes.
Section · 02
Skills
PythonJavaSnowflakeData PipelineGITCi/CdArtificial IntelligenceDevopsAgentic AiobservabilityRetrieval Augmented GenerationBedrockapisautomated testingamazon web servicesinfrastructure as codeGithub CopilotcursorEthical Aiclaudemodel evaluationLarge Language Models (LLMs)guardrailsAI-assisted Engineeringagent-based AI
Section · Company
About Straive

Straive
IT Services & Consulting
10.7k+
employees
1980
46 years old
Singapore
Singapore
About
Straive is a market leading Content, Data and e-learning/Ed-Tech solutions company.
Industries
IT Services & Consulting
Employee ratings
2,321 reviews
3.3/ 5
Culture
3.3
Career growth
2.5
Work-life
3.4
Employees rate it well for
Salary388Appraisal233Work Environment227Work Life Balance207Senior Management155
Find them on