Associate Software Engineer β AI/ML
Posted
Jul 11, 2026 (4d ago)
Seniority
Junior
Work Model
Not Specified
Type
Not Specified
Category
Salary
Not specified
Skills
Description
π Why This Opportunity Is Different Unlike traditional entry-level software engineering roles that focus only on development tasks, this position provides direct exposure to emerging AI technologies, intelligent automation systems, and machine learning workflows that are transforming enterprise operations worldwide. Candidates will have the opportunity to work alongside experienced engineers and architects while developing practical skills in AI-powered application development. The role is ideal for graduates who are curious about Generative AI, large language models, data-driven decision-making, and intelligent software systems. Instead of limiting responsibilities to maintenance work, Magnit encourages new engineers to actively participate in solution design, experimentation, and continuous learning. π§ Technologies You Will Explore As part of the AI/ML engineering team, candidates can expect exposure to several modern technologies and frameworks. Python TensorFlow PyTorch Scikit-Learn OpenAI Claude Gemini Key Technical Areas Include Machine Learning model development and evaluation Natural Language Processing applications Prompt Engineering techniques Retrieval-Augmented Generation (RAG) OCR-based document processing systems API development and integration Data preprocessing and feature engineering Cloud-native AI deployments Enterprise workflow automation This combination of technologies provides a strong foundation for long-term careers in Artificial Intelligence, Machine Learning Engineering, Data Science, and Intelligent Automation. π Real Business Problems You'll Help Solve Magnit's AI team focuses on building practical solutions rather than experimental prototypes. Engineers joining this role may contribute to systems that automate document processing, improve workforce management operations, extract intelligence from large datasets, streamline enterprise workflows, and enhance decision-making through machine learning models. Modern AI engineering is not only about training models; it is about creating reliable systems that deliver measurable business value. Candidates will gain an understanding of how AI solutions move from concept to production environments and how they integrate with existing enterprise platforms. π€ Working Environment and Team Collaboration This role provides significant collaboration opportunities with senior engineers, solution architects, product teams, and business stakeholders. Engineers Will Participate In Agile development sprints Technical discussions Code reviews Brainstorming sessions Knowledge-sharing initiatives AI experimentation projects The company specifically highlights a learner-focused culture where fresh graduates are encouraged to ask questions, explore new technologies, and continuously improve their technical capabilities. Strong collaboration skills are highly valued Communication and teamwork will play an important role alongside technical expertise. π What Recruiters May Evaluate While the role is open to freshers, recruiters are likely to focus on the following areas during the selection process: Technical Area Expected Knowledge Python Strong fundamentals and coding skills Data Structures Arrays, Linked Lists, Trees, Hashing Algorithms Problem-solving and optimization Machine Learning Basic supervised and unsupervised concepts APIs REST fundamentals Databases SQL basics and data handling NLP Understanding of text processing concepts Cloud Computing Basic awareness of AWS, Azure, or GCP Candidates with academic projects involving AI, Machine Learning, Data Analytics, NLP, Computer Vision, or Automation may have an advantage during the screening process. π Skills Worth Learning Before Applying Candidates can strengthen their profile by improving knowledge in the following areas: Python programming NumPy and Pandas Machine Learning fundamentals Prompt Engineering REST API development SQL and database concepts Git and version control Cloud fundamentals Retrieval-Augmented Generation (RAG) LLM application development Relevant certifications from platforms such as Coursera, Udemy, NPTEL, AWS, Microsoft Azure, or Google Cloud can further strengthen a candidate's profile. π Hiring Process Overview Application Resume Screening Technical Assessment Technical Interview HR Discussion Final Selection The interview process may assess both theoretical understanding and practical problem-solving abilities. Candidates should be prepared to discuss academic projects, coding fundamentals, and their interest in AI-related technologies. π Keywords for Resume Python Machine Learning Artificial Intelligence NLP Large Language Models OpenAI Claude Gemini TensorFlow PyTorch Scikit-Learn REST APIs SQL Data Structures Algorithms Cloud Computing AWS Azure GCP Prompt Engineering RAG OCR Agile Development Git Backend Development π‘ Final Perspective For graduates interested in building careers around Artificial Intelligence and Machine Learning, this role offers exposure to modern AI technologies within a large enterprise environment. The combination of software engineering fundamentals, machine learning workflows, cloud technologies, and intelligent automation makes this position particularly valuable for candidates seeking practical experience in one of the fastest-growing areas of technology.
Similar Jobs
Sr. Solutions Architect - Agencies
Databricks Β· USA
Senior Software Engineer - Data Platform
Samsara Β· USA
Software Developer Sr. - AI-Native .NET/ Azure (Cloud Platform)
Dayforce Β· USA
Staff Software Engineer, Backend (Lake Analytics Platform)
Affirm Β· USA