RamKumar Manoharan

RamKumar Manoharan

Mentor
5.0
(7 reviews)
US$20.00
For every 15 mins
30
Sessions/Jobs
ABOUT ME
Generative A.I Engineer
Generative A.I Engineer

As a Generative AI Engineer, I am responsible for developing, designing, and maintaining cutting-edge AI-based systems to ensure smooth and engaging user experiences.

My role involves creating and developing generative models that have the ability to generate new content, such as images, text, and audio, based on patterns. I work across client teams to develop and architect Generative AI solutions using machine learning and other AI technologies.

Additionally, I participate in activities which includes refining and optimizing prompts to improve the outcome of Large Language Models (LLMs). I also evaluate and select appropriate AI tools and machine learning models for tasks, as well as build and train working versions of those models using Python and other open-source technologies.

English
Chennai (+05:30)
Joined October 2019
EXPERTISE
7 years experience
7 years experience
5 years experience
3 years experience
2 years experience

REVIEWS FROM CLIENTS

5.0
(7 reviews)
Santiago Buch
Santiago Buch
June 2021
Request completed on time and with high quality
edithc2010
edithc2010
December 2019
Ram explained concepts really well and discussed the reasons why he chose to go with a certain process. Great session!
Sara
Sara
December 2019
Ram is very knowledgeable and helpful as he is one of the best mentors
Sara
Sara
November 2019
great
Simileoluwa Ajayi
Simileoluwa Ajayi
November 2019
Ram was kind, polite and understanding throughout the course of the project. He completed my project more than five days before the actual deadline I set and did a really good job as well. I would definitely recommend him to a friend or anyone who needs help with any machine learning project.
EMPLOYMENTS
Senior AI Engineer
TensorLearners
2021-05-01-2023-11-01

Senior Manager at TensorLearners, a consulting startup that helps organizations adopt and effectively use advanced machine learning an...

Senior Manager at TensorLearners, a consulting startup that helps organizations adopt and effectively use advanced machine learning and artificial intelligence technologies

Product Management and Solution Architecture - Generative A.I

Graph DB Integration with Gen A.I product

My role and responsibilities services include consulting clients on MLOps adoption, advanced machine learning approaches, AI technology architecture design, intelligent response system development, and corporate training. Worked on integrating LLM models for workflow using packages such as langchain, LLamaIndex

Python
SQL
PyTorch
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Python
SQL
PyTorch
OpenAI
Generative AI
Large Language Models
GPT-4
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Senior Data Scientist and Machine Learning Engineer
Anheuser-Busch InBev
2019-04-01-2021-04-01
Senior Data Scientist , with demonstrated history of handling and building end to end Machine Learning Models for Business Problems acros...
Senior Data Scientist , with demonstrated history of handling and building end to end Machine Learning Models for Business Problems across Industry. Currently part of Anheuser-Busch InBev Data Science Team, working on strategic initiatives driven by data.
Python
MySQL
Azure
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Python
MySQL
Azure
Machine Learning
Data Science
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Data Scientist
Infosys
2011-05-01-2019-05-01
Data Scientist Managed end to end Data Science , Machine Learning Projects
Data Scientist Managed end to end Data Science , Machine Learning Projects
Python
Machine Learning
Computer Vision
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Python
Machine Learning
Computer Vision
Deep Learning
TensorFlow
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PROJECTS
Clustering Customer Complaint Data for a Manufacturing Company
2019
Idea is to Analyze the unstructured data and identify the critical clauses / Phrases which point the complaint issues, where companies ca...
Idea is to Analyze the unstructured data and identify the critical clauses / Phrases which point the complaint issues, where companies can pinpoint and rectify the issues or use Preventive Mechanism. Techniques Used: • Vectorization method used: TF – IDF (term frequency, inverse document frequency) 3 • Clustering Method – TF IDF Clustering. We cannot directly visualize TD IDF since the data is in sparse matrix and require dimension reduction, as TF IDF clustering is not a common clustering method. • Conversion of the TF-IDF score into format which has (X, Y) coordinates. Truncated SVD - which is linear dimension reduction by Singular Value Decomposition - Sparse matrix into A dense matrix. - Still we cannot visualize since it has higher dimension with random Probability of occurrence. In simple words, the data is Stochastic. - We need to use t-SNE method. (t – distributed Stochastic Network Embedding) - From this analyze, we can identify some of phrases which can have impact - Used K Mean Clustering as secondary method.
Machine Learning
Nltk
Python 3
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Machine Learning
Nltk
Python 3
Clustering
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Using Machine Learning to Optimize Customer Remediation Process
US based Finance Company
2019
Large Multinational Financial Company wants to optimize its customer remediation process by incorporating Machine learning. The company n...
Large Multinational Financial Company wants to optimize its customer remediation process by incorporating Machine learning. The company needs to identify the impacted customers on a regular basis for a given issue and to predict the appropriate remediation amount to be paid. As part of the project, I built a Machine learning model using ensemble techniques on random forest and gradient descent methods to identify the impacted population and to predict remediation amount range. This model on subsequent training and tuning yielded 91 % accuracy in predicting the amount range and was fully incorporated in the client process.
Python
Azure
Machine Learning
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Python
Azure
Machine Learning
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