ºÝºÝߣ

ºÝºÝߣShare a Scribd company logo
Herambeshwar Pendyala
hpend001@odu.edu | linkedin.com/in/Heramb-Pendyala | github.com/Heramb001 | 732-476-9255
Computer Science Graduate student. Actively looking for internship opportunities in an organization where I can apply data science skills to
solve complex problems and develop business models driven by technology. 2 years of experience working in Natural Language Processing,
big data technology, agile software development environment.
EDUCATION
Master of Science - Computer Science - Old Dominion University (ODU) (GPA:3.92/4.00) (Jan 2019 ¨C Dec 2020)
Bachelor of Technology - ECE - Lovely Professional University (LPU) (GPA:3.42/4.00) (Aug 2012 ¨C May 2016)
TECHNICAL SKILLS
Programming Languages : Java, Python, C, C++, UNIX Shell Script
Big Data Ecosystem : Spark, Hadoop, MapReduce, HDFS
Frameworks & Libraries : Numpy, Pandas, Matplotlib, Scipy, NLTK, Scikit-learn, Tensorflow, Keras, Django, OpenCV
Web technologies : HTML5, CSS3, Bootstrap, JavaScript, JSON, XML, PHP, Node JS, Express
Databases : Oracle 12c, SQL, MySQL, Mongodb
Tools & IDEs : Eclipse, Microsoft Visual Studio code, WinSCP, PuTTY, Postman, SoapUI, Oracle SQL Developer, Toad, GIT
PROFESSIONAL EXPERIENCE
Graduate Research Assistant, Information Technology Services, Old Dominion University (May 2019 ¨C Present)
¡ñ Diva - Chatbot | Virtual Assistant: Developed FAQ chatbot for Instruction Technologies course, to provide students with automated
responses to course related queries such as assignment deadlines, module details; augmented with a closed loop feedback system to improve
chatbot performance. Technologies: Google DialogFlow, Node JS, MySQL.
Graduate Research Assistant, Old Dominion University (May 2019 - Aug 2019)
¡ñ Parallel and distributed computing using raspberry pi cluster: Built a 4 node Raspberry Pi cluster to analyze parallel and distributed
computing. Implemented different algorithms on multiple nodes to reduce execution time by 50% in applications such as face detection,
Homographic encryption on images, Log mining. Technologies: mpi4py, opencv, slurm.
Graduate Teaching Assistant, Old Dominion University (Jan 2019 ¨C May 2019)
¡ñ Created a virtual Snakes and Ladders board game applying object oriented concepts in C++ taught in the course; TA duties also included
developing engaging and challenging programming quizzes and assignments. Technologies: C++
Software Engineer ¨C Tech Mahindra, Noida, India. (Jul 2016 ¨C Dec 2018)
Successfully completed several Proof of Concepts leveraging Machine learning techniques to speed up deliverables, including:
¡ñ Skill Sphere | Data Analytics: Using information retrieval tools, improved performance of model that ranked users based on technical
skills parsed from resumes, and created a supporting webservice. Technologies: SOLR, Kibana, ElasticSearch, Python, Django.
¡ñ Customer Query Clustering | Data Science: Built a k-means clustering model with 95% accuracy to categorize user queries for feature
engineering on text data using Natural Language Processing techniques like TF-IDF. Technologies: python, NLTK, Scikit Learn
¡ñ EDGE - Dispatch and Scheduling Engine | Java: Automated webservices and microservices testing processes using Maven based
framework. Web scraping using selenium to perform UI validations. Technologies: Java, Maven, Unix Shell Scripting, Postman, SOAPUI.
GRADUATE EXPERIENCE
Learning Analytics - Predict Students at risk | Data Mining: Achieved 85% test accuracy in predicting student course failure rate,
evaluated model performance using ROC curve. Built machine learning model such as Random forest, Decision Tree, naive bayes classifier
through Exploratory data analysis, data cleaning and data preprocessing. Technologies: Python, Scikit-Learn, Weka.
Automatic Hand Sign Detection | Deep Learning: Applied techniques of hyperparameter tuning, regularization, adam optimization to
build a sign language recognizer using CNN (Convolution Neural Network) model from scratch, achieving 85% accuracy on a test set.
Technologies: Python, Tensorflow
Happy House Challenge | Deep Learning : Built a CNN (Convolution Neural Network) model to detect happy faces in images using
adam optimizer, achieving 95% test accuracy (and 99% train accuracy). Technologies: Python, Keras
Chatbot | Deep Learning : Developed a chatbot with Natural Language Processing techniques by building a Seq2Seq model using RNN
(Recurrent Neural Network) on a Cornell movie database to generates phrases which can be used as replies. Technologies: Python, tensorflow.
ACHIEVEMENTS
Runner up LPU Project Expo, 2016, Project AVI (Assistant for Visually impaired) - developed an IOT device that uses data collected from
sensors to give feedback to visually challenged users about their surroundings.

More Related Content

What's hot (15)

SUHAS_CHANDRASHEKAR_CV_M
SUHAS_CHANDRASHEKAR_CV_MSUHAS_CHANDRASHEKAR_CV_M
SUHAS_CHANDRASHEKAR_CV_M
Suhas Chandrashekar
?
Kd resume pro
Kd resume proKd resume pro
Kd resume pro
Kunal Dargan
?
RESUME
RESUMERESUME
RESUME
Brt Ravi
?
Evan Oman Resume
Evan Oman ResumeEvan Oman Resume
Evan Oman Resume
Evan Oman
?
Dhrumit Sheth_Resume
Dhrumit Sheth_Resume Dhrumit Sheth_Resume
Dhrumit Sheth_Resume
Dhrumit Sheth
?
Resume
ResumeResume
Resume
Gautam Mehta
?
Chaithanya resume ruby on rails
Chaithanya resume ruby on rails Chaithanya resume ruby on rails
Chaithanya resume ruby on rails
Chaithanya A
?
Jyoti Prakash
Jyoti PrakashJyoti Prakash
Jyoti Prakash
Jyoti Prakash Baunthiyal, CCIE
?
TARAFDAR_ARNAB_CV
TARAFDAR_ARNAB_CVTARAFDAR_ARNAB_CV
TARAFDAR_ARNAB_CV
Arnab Tarafdar
?
RINTU JOSEPH
RINTU JOSEPHRINTU JOSEPH
RINTU JOSEPH
Rintu Joseph
?
Divya Full Time Resume
Divya Full Time ResumeDivya Full Time Resume
Divya Full Time Resume
Meenu Swaminathan
?
BrijeshChoudhary_cv
BrijeshChoudhary_cvBrijeshChoudhary_cv
BrijeshChoudhary_cv
Brijesh Choudhary
?
Mohit-Resume
Mohit-ResumeMohit-Resume
Mohit-Resume
Mohit Prabhushankar
?
buragadda srikar
buragadda srikarburagadda srikar
buragadda srikar
srikar b
?
Lacey Liu SDE II Resume
Lacey Liu SDE II ResumeLacey Liu SDE II Resume
Lacey Liu SDE II Resume
Lacey (Xi) Liu
?

Similar to HP resume (20)

Nishant_Paliwal
Nishant_PaliwalNishant_Paliwal
Nishant_Paliwal
paliwalnishant001
?
Hussien ezzat Cv
Hussien ezzat CvHussien ezzat Cv
Hussien ezzat Cv
Hussien ezzat
?
Resume dilip kumar_gangwar
Resume dilip kumar_gangwarResume dilip kumar_gangwar
Resume dilip kumar_gangwar
Dilip Kumar Gangwar
?
Resume - Adeel Naeem
Resume - Adeel NaeemResume - Adeel Naeem
Resume - Adeel Naeem
Adeel Naeem
?
Resume dilip kumar_gangwar
Resume dilip kumar_gangwarResume dilip kumar_gangwar
Resume dilip kumar_gangwar
Dilip Kumar Gangwar
?
Resume
ResumeResume
Resume
Sahil Jain
?
Chayma ben nacer
Chayma ben nacerChayma ben nacer
Chayma ben nacer
ChaymaBennacer
?
Kunal lalwani
Kunal lalwaniKunal lalwani
Kunal lalwani
kunal lalwani
?
Resume dilip kumar_gangwar
Resume dilip kumar_gangwarResume dilip kumar_gangwar
Resume dilip kumar_gangwar
Dilip Kumar Gangwar
?
Resume june'20
Resume june'20Resume june'20
Resume june'20
Kshitij Patil
?
Hemanth.Resume
Hemanth.ResumeHemanth.Resume
Hemanth.Resume
HEMANTH PV
?
Hemanth.Resume
Hemanth.ResumeHemanth.Resume
Hemanth.Resume
HEMANTH PV
?
Resume dilip kumar_gangwar
Resume dilip kumar_gangwarResume dilip kumar_gangwar
Resume dilip kumar_gangwar
Dilip Kumar Gangwar
?
Resume dilip kumar_gangwar
Resume dilip kumar_gangwarResume dilip kumar_gangwar
Resume dilip kumar_gangwar
Dilip Kumar Gangwar
?
Python developer 5 + years experience
Python developer 5 + years experiencePython developer 5 + years experience
Python developer 5 + years experience
Aneesh Mohan
?
Python Developer_5 + years Experience
Python Developer_5 + years ExperiencePython Developer_5 + years Experience
Python Developer_5 + years Experience
Aneesh Mohan
?
Resume_General
Resume_GeneralResume_General
Resume_General
NISPAND MEHTA
?
RiteshKasatResume
RiteshKasatResumeRiteshKasatResume
RiteshKasatResume
Ritesh Kasat
?
ADARSHLAL S
ADARSHLAL SADARSHLAL S
ADARSHLAL S
Adarsh Lal
?
Rushin shah resume 2016
Rushin shah resume 2016Rushin shah resume 2016
Rushin shah resume 2016
Rushin Shah
?

Recently uploaded (20)

DevNexus - Building 10x Development Organizations.pdf
DevNexus - Building 10x Development Organizations.pdfDevNexus - Building 10x Development Organizations.pdf
DevNexus - Building 10x Development Organizations.pdf
Justin Reock
?
Understanding Traditional AI with Custom Vision & MuleSoft.pptx
Understanding Traditional AI with Custom Vision & MuleSoft.pptxUnderstanding Traditional AI with Custom Vision & MuleSoft.pptx
Understanding Traditional AI with Custom Vision & MuleSoft.pptx
shyamraj55
?
UiPath Document Understanding - Generative AI and Active learning capabilities
UiPath Document Understanding - Generative AI and Active learning capabilitiesUiPath Document Understanding - Generative AI and Active learning capabilities
UiPath Document Understanding - Generative AI and Active learning capabilities
DianaGray10
?
What Makes "Deep Research"? A Dive into AI Agents
What Makes "Deep Research"? A Dive into AI AgentsWhat Makes "Deep Research"? A Dive into AI Agents
What Makes "Deep Research"? A Dive into AI Agents
Zilliz
?
Replacing RocksDB with ScyllaDB in Kafka Streams by Almog Gavra
Replacing RocksDB with ScyllaDB in Kafka Streams by Almog GavraReplacing RocksDB with ScyllaDB in Kafka Streams by Almog Gavra
Replacing RocksDB with ScyllaDB in Kafka Streams by Almog Gavra
ScyllaDB
?
DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)
DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)
DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)
Tsuyoshi Hirayama
?
30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...
30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...
30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...
ScyllaDB
?
Fl studio crack version 12.9 Free Download
Fl studio crack version 12.9 Free DownloadFl studio crack version 12.9 Free Download
Fl studio crack version 12.9 Free Download
kherorpacca127
?
Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]
Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]
Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]
Jonathan Bowen
?
Backstage Software Templates for Java Developers
Backstage Software Templates for Java DevelopersBackstage Software Templates for Java Developers
Backstage Software Templates for Java Developers
Markus Eisele
?
EaseUS Partition Master Crack 2025 + Serial Key
EaseUS Partition Master Crack 2025 + Serial KeyEaseUS Partition Master Crack 2025 + Serial Key
EaseUS Partition Master Crack 2025 + Serial Key
kherorpacca127
?
Endpoint Backup: 3 Reasons MSPs Ignore It
Endpoint Backup: 3 Reasons MSPs Ignore ItEndpoint Backup: 3 Reasons MSPs Ignore It
Endpoint Backup: 3 Reasons MSPs Ignore It
MSP360
?
UiPath Automation Developer Associate Training Series 2025 - Session 2
UiPath Automation Developer Associate Training Series 2025 - Session 2UiPath Automation Developer Associate Training Series 2025 - Session 2
UiPath Automation Developer Associate Training Series 2025 - Session 2
DianaGray10
?
Inside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar Patturaj
Inside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar PatturajInside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar Patturaj
Inside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar Patturaj
ScyllaDB
?
[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps
[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps
[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps
Safe Software
?
Build with AI on Google Cloud Session #4
Build with AI on Google Cloud Session #4Build with AI on Google Cloud Session #4
Build with AI on Google Cloud Session #4
Margaret Maynard-Reid
?
Early Adopter's Guide to AI Moderation (Preview)
Early Adopter's Guide to AI Moderation (Preview)Early Adopter's Guide to AI Moderation (Preview)
Early Adopter's Guide to AI Moderation (Preview)
nick896721
?
How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...
How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...
How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...
ScyllaDB
?
Q4 2024 Earnings and Investor Presentation
Q4 2024 Earnings and Investor PresentationQ4 2024 Earnings and Investor Presentation
Q4 2024 Earnings and Investor Presentation
Dropbox
?
Computational Photography: How Technology is Changing Way We Capture the World
Computational Photography: How Technology is Changing Way We Capture the WorldComputational Photography: How Technology is Changing Way We Capture the World
Computational Photography: How Technology is Changing Way We Capture the World
HusseinMalikMammadli
?
DevNexus - Building 10x Development Organizations.pdf
DevNexus - Building 10x Development Organizations.pdfDevNexus - Building 10x Development Organizations.pdf
DevNexus - Building 10x Development Organizations.pdf
Justin Reock
?
Understanding Traditional AI with Custom Vision & MuleSoft.pptx
Understanding Traditional AI with Custom Vision & MuleSoft.pptxUnderstanding Traditional AI with Custom Vision & MuleSoft.pptx
Understanding Traditional AI with Custom Vision & MuleSoft.pptx
shyamraj55
?
UiPath Document Understanding - Generative AI and Active learning capabilities
UiPath Document Understanding - Generative AI and Active learning capabilitiesUiPath Document Understanding - Generative AI and Active learning capabilities
UiPath Document Understanding - Generative AI and Active learning capabilities
DianaGray10
?
What Makes "Deep Research"? A Dive into AI Agents
What Makes "Deep Research"? A Dive into AI AgentsWhat Makes "Deep Research"? A Dive into AI Agents
What Makes "Deep Research"? A Dive into AI Agents
Zilliz
?
Replacing RocksDB with ScyllaDB in Kafka Streams by Almog Gavra
Replacing RocksDB with ScyllaDB in Kafka Streams by Almog GavraReplacing RocksDB with ScyllaDB in Kafka Streams by Almog Gavra
Replacing RocksDB with ScyllaDB in Kafka Streams by Almog Gavra
ScyllaDB
?
DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)
DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)
DAO UTokyo 2025 DLT mass adoption case studies IBM Tsuyoshi Hirayama (ƽɽÒã)
Tsuyoshi Hirayama
?
30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...
30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...
30B Images and Counting: Scaling Canva's Content-Understanding Pipelines by K...
ScyllaDB
?
Fl studio crack version 12.9 Free Download
Fl studio crack version 12.9 Free DownloadFl studio crack version 12.9 Free Download
Fl studio crack version 12.9 Free Download
kherorpacca127
?
Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]
Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]
Formal Methods: Whence and Whither? [Martin Fr?nzle Festkolloquium, 2025]
Jonathan Bowen
?
Backstage Software Templates for Java Developers
Backstage Software Templates for Java DevelopersBackstage Software Templates for Java Developers
Backstage Software Templates for Java Developers
Markus Eisele
?
EaseUS Partition Master Crack 2025 + Serial Key
EaseUS Partition Master Crack 2025 + Serial KeyEaseUS Partition Master Crack 2025 + Serial Key
EaseUS Partition Master Crack 2025 + Serial Key
kherorpacca127
?
Endpoint Backup: 3 Reasons MSPs Ignore It
Endpoint Backup: 3 Reasons MSPs Ignore ItEndpoint Backup: 3 Reasons MSPs Ignore It
Endpoint Backup: 3 Reasons MSPs Ignore It
MSP360
?
UiPath Automation Developer Associate Training Series 2025 - Session 2
UiPath Automation Developer Associate Training Series 2025 - Session 2UiPath Automation Developer Associate Training Series 2025 - Session 2
UiPath Automation Developer Associate Training Series 2025 - Session 2
DianaGray10
?
Inside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar Patturaj
Inside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar PatturajInside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar Patturaj
Inside Freshworks' Migration from Cassandra to ScyllaDB by Premkumar Patturaj
ScyllaDB
?
[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps
[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps
[Webinar] Scaling Made Simple: Getting Started with No-Code Web Apps
Safe Software
?
Build with AI on Google Cloud Session #4
Build with AI on Google Cloud Session #4Build with AI on Google Cloud Session #4
Build with AI on Google Cloud Session #4
Margaret Maynard-Reid
?
Early Adopter's Guide to AI Moderation (Preview)
Early Adopter's Guide to AI Moderation (Preview)Early Adopter's Guide to AI Moderation (Preview)
Early Adopter's Guide to AI Moderation (Preview)
nick896721
?
How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...
How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...
How Discord Indexes Trillions of Messages: Scaling Search Infrastructure by V...
ScyllaDB
?
Q4 2024 Earnings and Investor Presentation
Q4 2024 Earnings and Investor PresentationQ4 2024 Earnings and Investor Presentation
Q4 2024 Earnings and Investor Presentation
Dropbox
?
Computational Photography: How Technology is Changing Way We Capture the World
Computational Photography: How Technology is Changing Way We Capture the WorldComputational Photography: How Technology is Changing Way We Capture the World
Computational Photography: How Technology is Changing Way We Capture the World
HusseinMalikMammadli
?

HP resume

  • 1. Herambeshwar Pendyala hpend001@odu.edu | linkedin.com/in/Heramb-Pendyala | github.com/Heramb001 | 732-476-9255 Computer Science Graduate student. Actively looking for internship opportunities in an organization where I can apply data science skills to solve complex problems and develop business models driven by technology. 2 years of experience working in Natural Language Processing, big data technology, agile software development environment. EDUCATION Master of Science - Computer Science - Old Dominion University (ODU) (GPA:3.92/4.00) (Jan 2019 ¨C Dec 2020) Bachelor of Technology - ECE - Lovely Professional University (LPU) (GPA:3.42/4.00) (Aug 2012 ¨C May 2016) TECHNICAL SKILLS Programming Languages : Java, Python, C, C++, UNIX Shell Script Big Data Ecosystem : Spark, Hadoop, MapReduce, HDFS Frameworks & Libraries : Numpy, Pandas, Matplotlib, Scipy, NLTK, Scikit-learn, Tensorflow, Keras, Django, OpenCV Web technologies : HTML5, CSS3, Bootstrap, JavaScript, JSON, XML, PHP, Node JS, Express Databases : Oracle 12c, SQL, MySQL, Mongodb Tools & IDEs : Eclipse, Microsoft Visual Studio code, WinSCP, PuTTY, Postman, SoapUI, Oracle SQL Developer, Toad, GIT PROFESSIONAL EXPERIENCE Graduate Research Assistant, Information Technology Services, Old Dominion University (May 2019 ¨C Present) ¡ñ Diva - Chatbot | Virtual Assistant: Developed FAQ chatbot for Instruction Technologies course, to provide students with automated responses to course related queries such as assignment deadlines, module details; augmented with a closed loop feedback system to improve chatbot performance. Technologies: Google DialogFlow, Node JS, MySQL. Graduate Research Assistant, Old Dominion University (May 2019 - Aug 2019) ¡ñ Parallel and distributed computing using raspberry pi cluster: Built a 4 node Raspberry Pi cluster to analyze parallel and distributed computing. Implemented different algorithms on multiple nodes to reduce execution time by 50% in applications such as face detection, Homographic encryption on images, Log mining. Technologies: mpi4py, opencv, slurm. Graduate Teaching Assistant, Old Dominion University (Jan 2019 ¨C May 2019) ¡ñ Created a virtual Snakes and Ladders board game applying object oriented concepts in C++ taught in the course; TA duties also included developing engaging and challenging programming quizzes and assignments. Technologies: C++ Software Engineer ¨C Tech Mahindra, Noida, India. (Jul 2016 ¨C Dec 2018) Successfully completed several Proof of Concepts leveraging Machine learning techniques to speed up deliverables, including: ¡ñ Skill Sphere | Data Analytics: Using information retrieval tools, improved performance of model that ranked users based on technical skills parsed from resumes, and created a supporting webservice. Technologies: SOLR, Kibana, ElasticSearch, Python, Django. ¡ñ Customer Query Clustering | Data Science: Built a k-means clustering model with 95% accuracy to categorize user queries for feature engineering on text data using Natural Language Processing techniques like TF-IDF. Technologies: python, NLTK, Scikit Learn ¡ñ EDGE - Dispatch and Scheduling Engine | Java: Automated webservices and microservices testing processes using Maven based framework. Web scraping using selenium to perform UI validations. Technologies: Java, Maven, Unix Shell Scripting, Postman, SOAPUI. GRADUATE EXPERIENCE Learning Analytics - Predict Students at risk | Data Mining: Achieved 85% test accuracy in predicting student course failure rate, evaluated model performance using ROC curve. Built machine learning model such as Random forest, Decision Tree, naive bayes classifier through Exploratory data analysis, data cleaning and data preprocessing. Technologies: Python, Scikit-Learn, Weka. Automatic Hand Sign Detection | Deep Learning: Applied techniques of hyperparameter tuning, regularization, adam optimization to build a sign language recognizer using CNN (Convolution Neural Network) model from scratch, achieving 85% accuracy on a test set. Technologies: Python, Tensorflow Happy House Challenge | Deep Learning : Built a CNN (Convolution Neural Network) model to detect happy faces in images using adam optimizer, achieving 95% test accuracy (and 99% train accuracy). Technologies: Python, Keras Chatbot | Deep Learning : Developed a chatbot with Natural Language Processing techniques by building a Seq2Seq model using RNN (Recurrent Neural Network) on a Cornell movie database to generates phrases which can be used as replies. Technologies: Python, tensorflow. ACHIEVEMENTS Runner up LPU Project Expo, 2016, Project AVI (Assistant for Visually impaired) - developed an IOT device that uses data collected from sensors to give feedback to visually challenged users about their surroundings.