AI Engineer
Complete preparation guide for AI Engineer
Feat Systems is hiring for AI Engineer (Full-time) in Mumbai, Maharashtra, India, targeting candidates from the Any batch with 1-2 Years experience. The listed compensation is 10 - 18 LPA. Key skills mentioned in the listing include AI, ML, NLP, LLMs. This page goes beyond the raw listing so students can understand what Feat Systems usually expects for this role, how to prepare for their screening process, and how to apply more thoughtfully instead of forwarding a generic resume.
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Role Preparation Guide
CampusToCareer EditorialThis page is built as a career preparation guide for AI Engineer at Feat Systems. Read the editorial sections below for company context, skill breakdowns, interview preparation, and salary insights. The original employer job description is preserved at the bottom of this page for reference.
💡 Editor's Comprehensive Career Guide for this Role
🏢 About Feat Systems & Culture
Feat Systems is a leading organization in the technology and services industry, committed to driving innovation and digital transformation. They provide a dynamic and supportive environment for early-career professionals to learn, collaborate, and build solutions at scale. Freshers at Feat Systems are integrated into production teams with structured onboarding and mentorship.
📈 Career Progression Pathway
Software Engineers can quickly transition from SDE 1 to SDE 2, Tech Lead, Principal Engineer, or Software Architect, directing product architecture and mentoring junior developers.
💰 Salary & Compensation Insights
Software development remains one of the highest-paying entry domains, with stipends and packages scaling rapidly depending on backend mastery and problem-solving capability.
⚡ Recruitment & Selection Process
CampusToCareer Analysis
🎯 Should You Apply?
✓ Suitable for:
- ✓ Computer Science graduates
- ✓ Self-taught coders with strong portfolios
- ✓ Students interested in software development
✗ Not ideal if:
- ✗ Seeking non-technical support roles
- ✗ Comfortable only with drag-and-drop tool designs
⚡ Difficulty Level
🎓 What You Will Learn
Skills you may develop through this role:
- AI/ML
- NLP
- LLMs
- Production-grade software construction
📝 How to Prepare
- Practice medium-level coding questions (arrays, strings, trees) on LeetCode
- Build fullstack projects demonstrating standard backend/frontend interfaces
- Understand database indexes, joins, and normalizations
- Be ready to draw and explain your project system designs
📄 Resume Match Tips
Highlight these on your resume to stand out:
- ✓ List your GitHub profile link with pinned project repositories
- ✓ Highlight competitive programming ratings or coding certificates
- ✓ Clearly list tech stacks (e.g. React, Express) next to each project description
Reality Check
This is a high-intensity software coding role. Technical assessment rounds can be demanding, and you will be expected to learn large codebases quickly.
❓ Frequently Asked Questions
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Original Job Description
The text below is preserved from the employer's listing for verification. CampusToCareer editorial content above is the primary guide for preparing your application.
Job Description
About the job
We are looking for AI Engineers with 1-2 years of strong hands-on experience to work on foundation model systems across language, multimodal, and speech AI. The role is focused on building sovereign AI capabilities for enterprise and client use cases, where control over data, models, infrastructure, deployment, and governance is critical.
This is a builder role for candidates who understand modern AI systems conceptually and technically, and can convert fast-moving model developments into reliable working solutions.
Key Responsibilities
● Build and evaluate solutions using open-source and enterprise-grade LLMs, multimodal models, speech models, embedding models, and retrieval systems.
● Work on model adaptation, fine-tuning, LoRA/QLoRA, prompt optimization, RAG pipelines, agentic workflows, and evaluation frameworks.
● Compare models across quality, latency, cost, accuracy, safety, deployment constraints, and client-specific requirements.
● Develop AI applications that can run in controlled environments, including private cloud, on-premise, or client-owned infrastructure.
● Create and maintain clean experimentation workflows for datasets, model benchmarks, inference behavior, and failure analysis.
● Collaborate with engineering and product teams to convert AI prototypes into deployable systems.
● Track relevant model releases, architecture improvements, benchmarks, and tooling changes in the AI ecosystem.
Required Skills
● 1-2 years of practical experience in AI/ML, NLP, LLMs, speech AI, computer vision, or multimodal AI.
● Strong Python programming skills and comfort building production-oriented AI workflows.
● Hands-on experience with PyTorch, Hugging Face, vector databases, embedding models, model APIs, or inference frameworks.
● Strong conceptual understanding of transformers, tokenization, embeddings, attention, fine-tuning, RAG, context windows, hallucination, and model evaluation.
● Ability to debug model behavior, analyze outputs, improve prompts or pipelines, and identify practical limitations.
● Familiarity with APIs, Git, Docker, cloud platforms, GPU environments, and basic MLOps practices.
● Clear communication skills and the ability to explain technical tradeoffs to both engineering and business teams.
Good To Have
● Experience with ASR, TTS, voice agents, diarization, or speech-to-speech systems.
● Experience with multimodal models for image, video, document, or visual reasoning use cases.
● Exposure to vLLM, TensorRT-LLM, ONNX, quantization, Triton, CUDA, or inference optimization.
● Experience deploying AI systems in private, secure, or regulated environments.
● Strong GitHub, open-source work, serious personal projects, or prior AI product experience.
Ideal Candidate Profile
The ideal candidate is technically curious, execution-focused, and comfortable working in a fast-changing AI landscape. They should not simply use AI tools; they should understand how modern models work, where they fail, how to evaluate them, and how to integrate them into real systems.
We are looking for people who can think deeply, build quickly, question assumptions, and take ownership of complex AI problems.
Screening Expectations
Candidates should be able to demonstrate at least one meaningful AI project involving model evaluation, fine-tuning, RAG, speech AI, multimodal AI, or deployment. They should be prepared to explain their technical choices, tradeoffs, failure cases, and how they would improve the system.
… more
Requirements added by the job poster
• Bachelor's Degree
• 1+ years of work experience with Large Language Model Operations (LLMOps)
• 1+ years of work experience with Deterministic LLM Programming
• 2+ years of work experience with Large Language Models (LLM)
• 2+ years of Software Development experience