Engineer - A2 (AI Hub - GTS)

Hyderabad, Telangana, India

KPMG India

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Roles & responsibilities

Here are some of the key responsibilities of a Software Engineer (A2) :
 

1.Design and develop AI-driven data ingestion frameworks and real-time processing solutions that enhance data analysis and machine learning capabilities across the full technology stack. 2.Deploy, maintain, and support application codes and machine learning models in production environments, ensuring seamless integration with front-end and back-end systems. 3.Create and enhance AI solutions that facilitate seamless integration and flow of data across the data ecosystem, enabling advanced analytics and insights for end users. 4.Conduct business analysis to gather requirements and develop ETL processes, scripts, and machine learning pipelines that meet technical specifications and business needs, utilizing both server-side and client-side technologies. 5.Develop real-time data ingestion and stream-analytic solutions utilizing technologies such as Kafka, Apache Spark (SQL, Scala, Java), Python, and cloud platforms to support AI applications. Utilize multiple programming languages and tools, including Python, Spark, Hive, Presto, Java, and JavaScript frameworks (e.g., React, Angular) to build prototypes for AI models and evaluate their effectiveness and feasibility. 6.Develop application systems that adhere to standard software development methodologies, ensuring robust design, programming, backup, and recovery processes to deliver high-performance AI solutions across the full stack. 7.Provide system support as part of a team rotation, collaborating with other engineers to resolve issues and enhance system performance, including both front-end and back-end components. 8.Operationalize open-source AI and data-analytic tools for enterprise-scale applications, ensuring they align with organizational needs and user interfaces. 9.Ensure compliance with data governance policies by implementing and validating data lineage, quality checks, and data classification in AI projects. 10.Understand and follow the company’s software development lifecycle to effectively develop, deploy, and deliver AI solutions. 11.Design and develop AI frameworks leveraging open-source tools and advanced data processing frameworks, integrating them with user-facing applications. Lead the design and execution of complex AI projects, ensuring alignment with ethical guidelines and principles under the guidance of senior team members.

Mandatory  technical & functional skills

•Technical Skills: Strong proficiency in on Python, Java, C++ and , as well as familiarity with machine learning frameworks (e.g., TensorFlow, PyTorch). •In depth knowledge on ML, Deep Learning and NLP algorithms. •Strong programming skills hands on experience in building backend services with frameworks like FastAPI, Flask, Django, etc. •Full-Stack Development: Proficiency in front-end and back-end technologies, including JavaScript frameworks (e.g., React, Angular), to build and integrate user interfaces with AI models and data solutions. •Data Integration: Develop and maintain data pipelines for AI applications, ensuring efficient data extraction, transformation, and loading (ETL) processes •Strong oral and written communication skills with the ability to communicate technical and non-technical concepts to peers and stakeholders

Preferred technical & functional skills

•Big Data Processing: Utilize big data technologies such as Azure Databricks and Apache Spark to handle, analyze, and process large datasets for machine learning and AI applications. •Develop real-time data ingestion and stream-analytic solutions leveraging technologies such as Kafka, Apache Spark (SQL, Scala, Java), Python and Hadoop Platform and any Cloud Data Platform.  •Certifications: Relevant certifications such as Microsoft Certified: Azure Data Engineer Associate, Azure AI Engineer or any other cloud certification are a plus.

Key behavioral attributes/requirements

•Collaborative Learning: Open to learning and working with others. •Project Responsibility: Able to manage project components beyond individual tasks.

Business Acumen: Strive to understand business objectives driving data needs.

Roles & responsibilities

Here are some of the key responsibilities of a Software Engineer (A2) :
 

1.Design and develop AI-driven data ingestion frameworks and real-time processing solutions that enhance data analysis and machine learning capabilities across the full technology stack.2.Deploy, maintain, and support application codes and machine learning models in production environments, ensuring seamless integration with front-end and back-end systems.3.Create and enhance AI solutions that facilitate seamless integration and flow of data across the data ecosystem, enabling advanced analytics and insights for end users.4.Conduct business analysis to gather requirements and develop ETL processes, scripts, and machine learning pipelines that meet technical specifications and business needs, utilizing both server-side and client-side technologies.5.Develop real-time data ingestion and stream-analytic solutions utilizing technologies such as Kafka, Apache Spark (SQL, Scala, Java), Python, and cloud platforms to support AI applications. Utilize multiple programming languages and tools, including Python, Spark, Hive, Presto, Java, and JavaScript frameworks (e.g., React, Angular) to build prototypes for AI models and evaluate their effectiveness and feasibility.6.Develop application systems that adhere to standard software development methodologies, ensuring robust design, programming, backup, and recovery processes to deliver high-performance AI solutions across the full stack.7.Provide system support as part of a team rotation, collaborating with other engineers to resolve issues and enhance system performance, including both front-end and back-end components.8.Operationalize open-source AI and data-analytic tools for enterprise-scale applications, ensuring they align with organizational needs and user interfaces.9.Ensure compliance with data governance policies by implementing and validating data lineage, quality checks, and data classification in AI projects.10.Understand and follow the company’s software development lifecycle to effectively develop, deploy, and deliver AI solutions.11.Design and develop AI frameworks leveraging open-source tools and advanced data processing frameworks, integrating them with user-facing applications. Lead the design and execution of complex AI projects, ensuring alignment with ethical guidelines and principles under the guidance of senior team members.

Mandatory  technical & functional skills

•Technical Skills: Strong proficiency in on Python, Java, C++ and , as well as familiarity with machine learning frameworks (e.g., TensorFlow, PyTorch).•In depth knowledge on ML, Deep Learning and NLP algorithms.•Strong programming skills hands on experience in building backend services with frameworks like FastAPI, Flask, Django, etc.•Full-Stack Development: Proficiency in front-end and back-end technologies, including JavaScript frameworks (e.g., React, Angular), to build and integrate user interfaces with AI models and data solutions.•Data Integration: Develop and maintain data pipelines for AI applications, ensuring efficient data extraction, transformation, and loading (ETL) processes•Strong oral and written communication skills with the ability to communicate technical and non-technical concepts to peers and stakeholders

Preferred technical & functional skills

•Big Data Processing: Utilize big data technologies such as Azure Databricks and Apache Spark to handle, analyze, and process large datasets for machine learning and AI applications.•Develop real-time data ingestion and stream-analytic solutions leveraging technologies such as Kafka, Apache Spark (SQL, Scala, Java), Python and Hadoop Platform and any Cloud Data Platform. •Certifications: Relevant certifications such as Microsoft Certified: Azure Data Engineer Associate, Azure AI Engineer or any other cloud certification are a plus.

Key behavioral attributes/requirements

•Collaborative Learning: Open to learning and working with others.•Project Responsibility: Able to manage project components beyond individual tasks.

Business Acumen: Strive to understand business objectives driving data needs.

This role is for you if you have  the below

Educational qualifications

-Bachelor’s / Master’s degree in Computer Science

Work experience

2 to 4 years of Software Engineering experience

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* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

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Tags: Angular Azure Big Data Classification Computer Science Data analysis Databricks Data governance Data pipelines Deep Learning Django Engineering ETL FastAPI Flask Hadoop Java JavaScript Kafka Machine Learning ML models NLP Open Source Pipelines Python PyTorch React Scala Spark SQL TensorFlow

Region: Asia/Pacific
Country: India

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