Machine Learning Engineer, Chakra
Location
Bengaluru, Karnataka, India
Job Type
Full-Time
Experience Level
Associate level (1-3 Years)
Salary Range
Not disclosed
Job Description
About the role The developer's job is shifting from writing code to directing AI agents, and hiring needs to catch up. HackerRank has shaped how 3000+ companies identify engineering talent, with 30M+ developers assessed on our platform. Chakra is our bet on what the next generation of that looks like: an AI interviewer built for a world where the interview itself has to be as intelligent as the candidates it is evaluating. Open Problem An interview that thinks, listens and gets it right every time. Running an interview is easy. Running a good one is hard. Chakra is an AI interviewer. It holds a conversation with a candidate, asks follow-up questions, evaluates how they think, and produces a report a hiring manager can actually act on. It is to conduct interviews that are more consistent, more probing, and more fair than most human interviewers manage in practice. Here is the problem. A great human interviewer can do this. They read the candidate. They push on the right things. They know when an answer is shallow and when it just sounds shallow. Getting a model to do that reliably is genuinely difficult. Not because the technology cannot hold a conversation. It can. The gap is in judgment. Knowing what to probe. Knowing what the answer actually reveals about the candidate. Knowing when to move on. Now do that 200,000 times. With candidates who speak differently, think differently, and approach problems differently. Without the model drifting. Without it being gamed. Without every report reading like it was written by the same template. That is where the field currently falls short. Closing that gap is the work. What you'll do Architect and develop Chakra end to end: the agent design, conversation management, real-time response evaluation, scoring methodology, and report generation. Build the systems that ensure interview consistency at scale. Not just model capability, but the infrastructure that makes the 200,000th interview as coherent as the first. Design evaluation and benchmarking pipelines that measure interview quality, candidate experience consistency, and report defensibility. Build fine-tuning and RLHF workflows to push model judgment past what off-the-shelf models deliver for this specific task. Own the quality bar. Define what a good interview looks like, instrument how well the system meets that bar, and close the gap systematically. Work across the full stack: data pipelines, model serving, latency constraints, and the product experience the candidate actually encounters. Who you are You have built and shipped agentic or conversational AI systems in production, not just prototypes. You have a strong intuition for where LLM behavior breaks down under real-world conditions and how to address it systematically. You think in systems. The conversation architecture, the evaluation model, the serving infrastructure, and the candidate experience are one problem to you. You care about the quality bar at the level of a user who depends on the output, not just a researcher measuring aggregate metrics. Even better if you have Experience building multi-turn conversational agents or interview-style AI systems. Worked with RLHF, Constitutional AI, or preference-based fine-tuning methods. Background in dialogue systems, conversational evaluation, or rubric-based scoring. Publications or contributions in agentic AI, LLM reliability, or evaluation of generative systems. You will thrive in this role if You are energized by the full scope of a hard product problem, from model architecture through the conversation a candidate actually has. You hold the product bar as high as the technical bar. You want to build something that works extraordinarily well for every single person who uses it.
About HackerRank
HackerRank is a technology hiring platform that is the standard for assessing developer skills for 2500+ companies around the world. HackerRank helps companies hire skilled developers and innovate faster by enabling tech recruiters and hiring managers to objectively evaluate talent at every stage of the recruiting process.
Connections
Sai Charan
Senior Developer
Kalpana Sharma
Team Lead
Rahul Patel
Full Stack Developer
Priya Singh
Frontend Developer
Connect with professionals in your network
Skill Match Analysis
??% skills matched (?? of 19 skills)
💡 This is keyword matching for reference only. Your actual match score uses AI semantic analysis.
Login to see your score