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Applied Scientist I

Amazon
|Remote / Karnataka|19 May 2026
Experience Required
1-3 Years
Employment Type
Full-time
Target Batch
Any
Role Category
Data Science
How to Apply
Apply on the company portal
Skills Recommended
Machine LearningReinforcement LearningDeep LearningComputer VisionNatural Language ProcessingAI/ML technologiesLarge scale distributed systemsSparkHadoopLarge Language Model fundamentals
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About the job

Job Description

Amazon is looking for a passionate, talented, and inventive Applied Scientists with machine learning background to help build industry-leading Speech and Language technology.

Our mission is to provide a delightful experience to Amazon’s customers by pushing the envelope in Automatic Speech Recognition (ASR), Natural Language Understanding (NLU), Machine Learning (ML) and Computer Vision (CV).

As part of our AI team in Amazon AWS, you will work alongside internationally recognized experts to develop novel algorithms and modeling techniques to advance the state-of-the-art in human language technology. Your work will directly impact millions of our customers in the form of products and services that make use of speech and language technology. You will gain hands on experience with Amazon’s heterogeneous speech, text, and structured data sources, and large-scale computing resources to accelerate advances in spoken language understanding.

We are hiring in all areas of human language technology: ASR, MT, NLU, text-to-speech (TTS), and Dialog Management, in addition to Computer Vision. We are also looking for talents with experiences/expertise in building large-scale, high-performing systems.

A day in the life

Basic Qualifications

  • Experience with one of the following areas: machine learning technologies, Reinforcement Learning, Deep Learning, Computer Vision, Natural Language Processing (NLP) or related applications

  • Experience programming with at least one software programming language, or experience with Machine Learning and Large Language Model fundamentals, including architecture, training/inference lifecycles, and optimization of model execution

Preferred Qualifications

  • Experience with AI/ML technologies

  • Knowledge of large scale distributed systems (e.g., Spark, Hadoop)

  • Do you have publications in top-tier conferences or journals in AI/ML (NeurIPS, ICML, ICLR, ACL, EMNLP, ICASSP, etc.)?

Our inclusive culture empowers Amazonians to deliver the best results for our customers. If you have a disability and need a workplace accommodation or adjustment during the application and hiring process, including support for the interview or onboarding process, please visit https://amazon.jobs/content/en/how-we-hire/accommodations for more information. If the country/region you’re applying in isn’t listed, please contact your Recruiting Partner.

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Candidate Guide

More than a copied JD: use this page to prepare before you apply.

Amazon is hiring for Applied Scientist I in Remote / Karnataka. This page goes beyond the raw listing so students can understand what the role usually expects, how to prepare for screening, and how to apply more thoughtfully instead of forwarding a resume blindly.

Machine LearningReinforcement LearningDeep LearningComputer VisionNatural Language ProcessingAIML technologiesLarge scale distributed systems

Company overview

Amazon appears on Campus to Career because the opportunity is relevant for students and early-career candidates who want a clearer view of real hiring demand. When evaluating any employer, students should look beyond the brand name and focus on work quality, reporting structure, product maturity, mentorship, and the kind of ownership the team is likely to trust a new hire with.

A fresher or internship role at Amazon can be valuable when the candidate understands what the business is solving and how the team contributes to that larger outcome. Even before the interview, students should try to learn the company domain, customer type, pace of execution, and whether the role sits close to product, platform, support, data, or delivery.

What this role usually means in practice

Applied Scientist I is likely not just a keyword match. In real hiring, titles often compress multiple expectations into one label. This means the student should read the listing as a signal of day-to-day problem solving, team collaboration, deadline discipline, and the ability to learn new workflows quickly.

The current role is listed as Full-time in Remote / Karnataka, with 1-3 Years mentioned on the page. For freshers, the most useful interpretation is: what kind of output will the team expect in the first 30 to 90 days, and what proof can the candidate show that they are ready to deliver it?

  • Understand the business problem the role supports
  • Map your projects to likely day-to-day work
  • Prepare one story about fast learning and one about ownership

Required skills and how to interpret them

The listing highlights skills such as Machine Learning, Reinforcement Learning, Deep Learning, Computer Vision, Natural Language Processing, AI, ML technologies, Large scale distributed systems. Students should not panic if they are not equally strong in every item. Companies often list an ideal stack, but interviewers usually look for transferable understanding, clarity of fundamentals, and a believable proof-of-work story.

A better preparation strategy is to sort skills into three buckets: already strong, interview-ready but shallow, and currently weak. This prevents overconfidence and also stops students from wasting time revising topics that are unlikely to matter during the first screening round.

  • Be ready to explain where you used Machine Learning in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used Reinforcement Learning in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used Deep Learning in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used Computer Vision in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used Natural Language Processing in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used AI in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used ML technologies in a project, coursework, internship, or self-study build.
  • Be ready to explain where you used Large scale distributed systems in a project, coursework, internship, or self-study build.

Eligibility and application readiness

Students should treat eligibility as more than just degree, batch, or marks. Real readiness also includes whether the resume supports the role clearly, whether your GitHub or portfolio can survive a quick recruiter scan, and whether your self-introduction makes logical sense for Applied Scientist I.

If the listing mentions a batch requirement, relocation, internship-to-full-time path, or communication expectations, make sure those details are reflected consistently in your resume, application form, and outreach message. Consistency is a major trust signal in early-stage screening.

  • Resume aligned to the role and keywords
  • Portfolio or GitHub links working correctly
  • Projects chosen based on role relevance, not just recency
  • Clear answer prepared for “Why this role?”

Salary insight and offer evaluation

The listing does not clearly publish compensation, which is common for fresher and early-career openings. Candidates should use peer benchmarks, city cost, and recruiter conversations to understand likely salary range before final acceptance.

For freshers, salary should be interpreted together with learning quality, tech exposure, mentorship, workload, location, and conversion or growth path. A slightly smaller offer with stronger ownership and cleaner learning loops may outperform a bigger offer that provides weak role fit or no meaningful skill depth.

Interview preparation tips for this job

Candidates applying for Applied Scientist I should prepare in layers. The first layer is role fit: why this company, why this role, and what proof supports your application. The second layer is technical or functional depth: the tools, concepts, or workflows most likely to appear in screening. The third layer is behavior and communication: clear explanations, honest ownership, and calm thinking when details are incomplete.

A strong practice method is to prepare a short project walk-through, a role-fit introduction, one debugging or challenge story, and a realistic answer to what you still want to learn. That combination usually performs better than memorizing long theoretical scripts.

  • Review two strongest projects deeply, not ten projects weakly
  • Prepare role-specific terminology and examples
  • Practice concise answers for HR and recruiter rounds
  • Revise fundamentals likely connected to the listed skills

Application strategy for better conversion

The best candidates do not just click apply. They adapt. Before submitting, update the top section of your resume, reorder projects if needed, and make sure your strongest evidence matches the narrative for Applied Scientist I. If the company uses an external portal, take form fields seriously because ATS filters often read those signals separately from the PDF.

If the route is recruiter email or a direct apply link, use that path professionally. Submit complete information, avoid spammy follow-up, and if you choose to reach out on LinkedIn, mention the role, one or two fit points, and a respectful ask. The goal is to make your application easier to trust, not louder.