Ideas2IT Technologies

Let's Innovate

5.0 2 Reviews
Visit website
Write a Review
Verified Profile

Ideas2IT: We bring your bold new ideas to life

We are a high-end product engineering firm. We work with innovators in enterprises like Microsoft, Facebook, Oracle, Devero (now Netsmart), Medtronic Labs, Zynga, Air Asia, and several startups. We offer expertise in Architecture, AI-ML, Cloud Application Development, Data Platforms & Visualization, and the implementation of Snowflake & Salesforce. 

Product co-creation

Startup founders were our first customers. They wanted a company that had a product and innovation mindset. And an ability to think in their shoes. They wanted Ideas2IT to take a broad vision and build a product with very little help. One customer led to another and we have so far successfully helped over 75+ startups. We have also incubated three venture-funded product companies - IdeaRX, PipeCandy, and element5.

Innovation for Enterprises

Seeing our work with startups, many Enterprises come to us. They come to us for similar reasons. They want help with their innovation initiatives. These often involve bleeding-edge technologies. They tell us that their current software partners don’t have the DNA for innovation. That is where they often find a perfect match with Ideas2IT. They come to us for the balance but are blown away by the technical expertise and creativity.

So, here are a few questions to help you firm up your next steps:

  • Are you looking to build a great product or service?
  • Do you foresee technical challenges?
  • Is just good enough, not okay for you?
  • Do you want to work with world-class software engineers?
  • Do you want a passionate, committed, and creative team?

If you answered yes to the above questions, then you must talk to us. We take up only those projects that are in our area of expertise. So, if we think we cannot excel at what you are looking for, then we will tell you right away. Also, we will not bother you later on with pesky phone calls or emails.

Certifications

ISO 27001
$25 - $49/hr
250 - 999
2009
Locations
United States
5717 Legacy Drive, Suite 250, Plano, Texas 75024
+1 408 625 7580
India
33A, RR Towers 5, 8th Floor, Lazer Street, TVK Industrial Estate, Guindy, Chennai, Tamil Nadu 600032
+91 88057 14747

Focus Areas

Service Focus

30%
30%
20%
10%
10%
  • Software Development
  • Big Data & BI
  • Artificial Intelligence
  • Mobile App Development
  • Testing Services

Client Focus

50%
30%
20%
  • Small Business
  • Medium Business
  • Large Business

Industry Focus

25%
20%
20%
15%
10%
10%
  • Healthcare & Medical
  • Startups
  • Enterprise

Ideas2IT Technologies Clients & Portfolios

Facebook: MLFlow - Torchserve Deployment Plugin
View Portfolio
Facebook: MLFlow - Torchserve Deployment Plugin
  • Facebook: MLFlow - Torchserve Deployment Plugin screenshot 1
Not Disclosed
10 weeks
Information Technology

We worked on an experimental version of the MLflow-TorchServe deployment plugin (MLflow-TorchServe 0.0.1.dev0), which would enable developers to use MLflow to deploy models built and trained in the MLflow pipeline into TorchServe without any additional effort.

To see more of our featured work, log on to https://www.ideas2it.com/work/

Facebook: Enhanced MLFlow - Pytorch Integration
View Portfolio
Facebook: Enhanced MLFlow - Pytorch Integration
  • Facebook: Enhanced MLFlow - Pytorch Integration screenshot 1
  • Facebook: Enhanced MLFlow - Pytorch Integration screenshot 2
Not Disclosed
10 weeks
Information Technology

MLflow is a popular MLOps tool to manage a machine learning lifecycle but lacked support for Autologging parameters, metrics, and artifacts related to a PyTorch deep learning workflow. We worked closely with the Facebook AI Research (FAIR) team to add Autologging and provided support to load the native TorchScript models. We thereby enabled the saving of extra files and additional artifacts. These features were released in MLFlow version 1.12.0.

To see more featured works, visit https://www.ideas2it.com/clients

NeedleNine: Automating Flight Operations with MEAN
View Portfolio
NeedleNine: Automating Flight Operations with MEAN
  • NeedleNine: Automating Flight Operations with MEAN screenshot 1
$100001 to $500000
100 weeks
Education

Problem: Our client wanted the end to end automation of flight operations.

Solution: End to end flight operations automation was developed using MEAN stack. Includes booking, planning crew, pilot reports and reports. A modern, flexible UI was implemented using Angular to capture a large set of information on Pilot reports and dynamic display of the crew schedule.

[email protected] to bring your bold new ideas to life.

Leveraging Machine Learning to analyze Social Media and pick the right Job Applicants: Confidential Client
View Portfolio
Leveraging Machine Learning to analyze Social Media and pick the right Job Applicants: Confidential Client
  • Leveraging Machine Learning to analyze Social Media and pick the right Job Applicants: Confidential Client screenshot 1
Not Disclosed
10 weeks
Education

Problem: Recruiters have to go through thousands of resumes to match candidates for a specific job. It is time consuming and tiring.

Solution: We built a Machine Learning model that matches the right candidates to the right job using not just their resumes, but also social data and a number of other parameters such as GitHub activity, LinkedIn recommendations, etc. The same matching algorithm is also used to find the ideal jobs for good candidates.

The applications was completely responsive across Desktops, Tablets and Mobile devices. React (Virtual DOM, Partial Rendering, One Direction Data Flow etc.) was used to mitigate the latency issues with third party data sources.

[email protected] to bring your bold new ideas to life.

Accelerating the GTM of new products (Credit Cars, Auto Loan, Mobile App) for a leading US FinTech: Confidential Client
View Portfolio
Accelerating the GTM of new products (Credit Cars, Auto Loan, Mobile App) for a leading US FinTech: Confidential Client
  • Accelerating the GTM of new products (Credit Cars, Auto Loan, Mobile App) for a leading US FinTech: Confidential Client screenshot 1
Not Disclosed
25 weeks
Financial & Payments

Problem: An innovative finance company in the US wanted to launch a new Credit Card and Automotive Loans to low income individuals. They wanted origination and servicing applications. Rapid Go-To-Market (GTM) was of essence.

Solution:Our in-house design studio worked with client’s marketing team to design an intuitive system  for maximizing lead conversions.  We used the latest tech stack (Angular 8, Ionic) to develop a Progressive Web Application that was responsive, personalized and supported English & Spanish. A highly scalable, cloud based, microservices solution was built on a DevOps environment that aided quick iterations to market.

[email protected] to bring your bold new ideas to life.

Building a Distributed Super Computer for IoT and dApps that leverages ML and Blockchain: Confidential Client
View Portfolio
Building a Distributed Super Computer for IoT and dApps that leverages ML and Blockchain: Confidential Client
  • Building a Distributed Super Computer for IoT and dApps that leverages ML and Blockchain: Confidential Client screenshot 1
Not Disclosed
10 weeks
Financial & Payments

Problem: Build a distributed supercomputer such that the user who provides the hardware for computation gets paid without risk of fraud.


Solution: We built a distributed supercomputer where any computer on the internet running Windows, Mac or Linux could serve as a node.The nodes that are used for distributed computing are clustered using the Expectation Maximization algorithm which buckets similar nodes into a cluster. Assignment of a node for doing a computational task is done using a multi-arm bandit simulation. Financial settlements are done using Nebulas, a third generation blockchain. For managing jobs, three different schedulers were considered - Kubernetes, Nomad and Docker Swarm. Finally Nomad was chosen as it requires no external services for saving its state and stores it instead on the master node. Additionally, it is a single binary that acts both as the master node and the client.

[email protected] to bring your bold new ideas to life.

Kisscam: A whole new Product Strategy for higher User Engagement
View Portfolio
Kisscam: A whole new Product Strategy for higher User Engagement
  • Kisscam: A whole new Product Strategy for higher User Engagement screenshot 1
Not Disclosed
10 weeks
Social

Problem: Kisscam’s previous mobile app was not getting enough engagement with users. The app allowed users to capture photos and apply overlays on them to resemble Kisscam segments in stadium sports events in the US.

Solution: We felt that the app was missing out on several potential use cases and approaches that would boost their engagement with users and grow their base.We brainstormed with the client to come up with multiple use cases; ultimately narrowing it down to the following -

  • Event listing and contest feature,

  • Family Friendly portrayal of Kisscam 

  • Voting on their favorite entries

  • Event notifications

[email protected] to bring your bold new ideas to life.

Chilasa: Mobile App to enhance the economics of semi-literate carpenters
View Portfolio
Chilasa: Mobile App to enhance the economics of semi-literate carpenters
  • Chilasa: Mobile App to enhance the economics of semi-literate carpenters screenshot 1
Not Disclosed
10 weeks
Business Services

Summary:Using conversational UX and human centered design for the bottom of the pyramid

Problem: Chilasa, a non-profit organization wanted a mobile app to help rural carpenters negotiate quotes and receive orders from city-based merchants. The catch? The carpenters were semi-literate and had only used messaging apps like WhatsApp.

Solution: We used Conversational UX to solve the problem. Carpenters received work enquiries as chat conversations where pricing could be negotiated, orders could be accepted or rejected, and progress updates could be shared effortlessly.

[email protected] to bring your bold new ideas to life.

Helping a giant MNC optimize pricing and enhance Order Wins
View Portfolio
Helping a giant MNC optimize pricing and enhance Order Wins
  • Helping a giant MNC optimize pricing and enhance Order Wins screenshot 1
  • Helping a giant MNC optimize pricing and enhance Order Wins screenshot 2
Not Disclosed
100 weeks
Automotive

Problem: A large B2B manufacturer was losing sales because the price analytics and discount approval process requires human intervention and took about seven days.

Solution: Started delivering instant quotes using AI without human intervention that reduced discounts and increased quote conversion by about 20%.  Used historical CRM data,  Decision Trees, co-occurence matrix,Prediction engine, neural nets and deep learning. 

Enterprise, Logistic regression, SVM (Support Vector Machine), XGBooster, Decision Tree, Neural nets/ deep learning, R, Pandas, Numpy, Scikit-learn, Keras, Matplotlib, Angular.js, D3.js (Dashboard),Python (ML), Node.js, Amazon RDS, Amazon Redshift, Swagger

[email protected] to bring your bold new ideas to life.

Slashing report gen. time from 15 minutes to just 10 seconds: Health Tech Client
View Portfolio
Slashing report gen. time from 15 minutes to just 10 seconds: Health Tech Client
  • Slashing report gen. time from 15 minutes to just 10 seconds: Health Tech Client screenshot 1
Not Disclosed
50 weeks
Healthcare & Medical

Problem: A healthcare technology provider  found that  their report generation time using Amazon RDS was averaging about 15 minutes because of the massive amounts of data(8B+ records). This was directly impacting their customer satisfaction.


Solution: We reduced the average report generation time to 10 seconds, a 90X performance improvement despite reducing the number of RDS instances by 20%. To do this, we first identified the performance bottlenecks in their current system using Appdynamics. Then we re-architected the data replication strategy. Then we optimized encryption/decryption strategy without compromising HIPAA compliance. We made several other improvements and also implemented real-time data syncing feature using Kinesis, SQS & MySQL binlog reader

[email protected] to bring your bold new ideas to life.

Lead Tracking even in 2G Networks: Automotive Manufacturer Client
View Portfolio
Lead Tracking even in 2G Networks: Automotive Manufacturer Client
  • Lead Tracking even in 2G Networks: Automotive Manufacturer Client screenshot 1
Not Disclosed
10 weeks
Manufacturing

Problem: An automobile manufacturer wanted to track leads and conversion across manufacturer, dealer and financier at various stages through the sales.

Technical challenge: Some of the dealers were in  rural areas in the developing world and had very poor internet and mobile connectivity. 

Solution: A mobile app was developed for the dealer in React Native while the manufacturer and financier web applications were developed in React. Isolation of component rendering from API calls to  ensure fault-tolerance even in bad networks such as 2G. Multi-language support provided through Internationalization (i18n)

[email protected] to bring your bold new ideas to life.

Kisscam: Delivering Extreme App Performance amidst Load Spikes
View Portfolio
Kisscam: Delivering Extreme App Performance amidst Load Spikes
  • Kisscam: Delivering Extreme App Performance amidst Load Spikes screenshot 1
Not Disclosed
10 weeks
Social

Summary: Gamified platform that delivers extreme performance and scalability requirements using microservices architecture

Problem: Kisscam wanted to build a highly engaging and gamified platform for conducting photo contests in sports arenas and at huge events during breaks. Users can take photos & videos and quickly add one of the many frames available in the app and post to social media. People can vote and winners are selected via voting. 

Technical challenges:  Since the action happens suddenly in just a few minutes of a game the server-side needed extreme performance and scalability.

Solution: Android and iOS apps used image optimization and resolution based photo upload. Microservices are used to scale each service individually. Implemented auto-scaling in AWS ECS to scale the application without any downtime. Performance tuning was done for scaling the application to handle huge and sudden loads. We also built a cloud storage platform for KissCam users to store media files and scaled the application to support huge arenas to the tune of 50k concurrent users.

[email protected] to bring your bold new ideas to life.

Pipecandy: A data-driven platform to get insights on 30 million e-Commerce and D2C Cos
View Portfolio
Pipecandy: A data-driven platform to get insights on 30 million e-Commerce and D2C Cos
  • Pipecandy: A data-driven platform to get insights on 30 million e-Commerce and D2C Cos screenshot 1
Not Disclosed
15 weeks
Startups

Problem: There has been an explosion of retail companies built around products like Shopify. However, it is very hard to sell to these companies as there is no public data available around these companies.

Solution: The system we have built has collected over 5 million company names and 8 million contacts and adding 10000 data daily and we are looking to reach 1 billion data points which are about 30 million companies in the next 6 months. Firm-specific data from several disparate sources is collected. ETL process with NLP techniques is used to normalize the data to a unified company and person profile. A recommendation algorithm predicts and recommends the appropriate company to target. To get sales folks to use it, the UI needs to be simple, powerful, and fast. We chose to React + Flux. We introduced messaging-based interactions instead of forms where appropriate.

[email protected] to bring your bold new ideas to life.

Yatoba: Trading Platform to Propose Fund and Settle Transactions
View Portfolio
Yatoba: Trading Platform to Propose Fund and Settle Transactions
  • Yatoba: Trading Platform to Propose Fund and Settle Transactions screenshot 1
Not Disclosed
10 weeks
Financial & Payments

A supply chain financing platform with complex user and company on-boarding process, trading platform to propose fund and settle transactions. On-boarding widgets were implemented using Angular.js.

[email protected] to bring your bold new ideas to life.

Keeping Track of a Field Team with Angular.js, jQuery and OpenStreetMap
View Portfolio
Keeping Track of a Field Team with Angular.js, jQuery and OpenStreetMap
  • Keeping Track of a Field Team with Angular.js, jQuery and OpenStreetMap screenshot 1
Not Disclosed
20 weeks
Healthcare & Medical

This tracks the exact location of service rendered for fraud prevention. We implemented a responsive UI, so that field folks can use it on a tab using Angular.js, jQuery, OpenStreetMap for mapping core data and Leaflet for mapping UI.

For mobile-friendly interactive maps, we chose Leaflet as it offers light-weight and fast. For Mapping core data we chose OpenStreetMap (OSM) because it’s free and is used by the likes of Foursquare and Evernote which is good validation.

[email protected] to bring your bold new ideas to life.

SnapMap: Aggregating Daily Deals from Retail Outlets, Restaurants, Multiplexes and More
View Portfolio
SnapMap: Aggregating Daily Deals from Retail Outlets, Restaurants, Multiplexes and More
  • SnapMap: Aggregating Daily Deals from Retail Outlets, Restaurants, Multiplexes and More screenshot 1
Not Disclosed
12 weeks
Retail

Never miss out on a striking deal, as SnapMap brings you daily deals from retail outlets, restaurants, multiplexes and more. Once you’ve made the deal and enjoyed the service, you can rate and share it with anyone. If you’re a service provider, lead users directly to your deals with SnapMap and drive sales like never before.

[email protected] to bring your bold new ideas to life.

Power 20: Mobile-delivered HIT Workouts that are Short and Quick!
View Portfolio
Power 20: Mobile-delivered HIT Workouts that are Short and Quick!
  • Power 20: Mobile-delivered HIT Workouts that are Short and Quick! screenshot 1
Not Disclosed
20 weeks
Travel & Lifestyle

Problem: Build a platform that allows both iOS and Android apps with minimal changes.

Solution: Power20 follows a single pattern across its 14 different applications. The application has been built from ground-up to work with data from the server without any local setting. A single codebase/package is compiled and deployed with different configurations to enable 14 applications per platform for a total of 28 applications on iOS and Android. Any new applications can be added by only including a configuration file on the server and making the configuration change on the app. Images and media explain the routines and are widely used across the applications. SDWebImage on iOS and Picassa on Android are used for efficient and intelligent media consumption to ensure the least runtime memory footprint. This, along with AF-Networking on iOS and Volley on Android, provide a robust HTTP request mechanism

[email protected] to bring your bold new ideas to life.

Streaming Live Events from Audiences’ Mobile Cameras: EventStream
View Portfolio
Streaming Live Events from Audiences’ Mobile Cameras: EventStream
  • Streaming Live Events from Audiences’ Mobile Cameras: EventStream screenshot 1
Not Disclosed
10 weeks
Art, Entertainment & Music

Problem: The client wanted the ability for the audience to stream specific camera feeds from live events so that they can watch the event from unique angles

Solution: The project had several challenges. 

  • Choosing the right backend server for streaming and rendering engine for Android platform.
  • Rigorous memory management techniques to ensure best possible stream quality.
  • Working on bare metal android canvas code to efficiently handle the incoming video feed.
  • Intelligent switching between supported protocols (RTSP, RDP and HTTP/HTTPS) based on the connection type (LAN, WAN).
  • Handling network switching scenarios and high latency use cases.
  • Some video feeds had four videos stitched together. Slicing of individual videos in such cases had to be done quickly and efficiently.

After researching on many of the available streaming content rendering engines, we finally fixed our implementation on Android Streaming API. The API had a plethora of features and had support for both Android SurfaceView and bare metal OpenGL rending canvas for future scaling.

We also built a robust asynchronous HTTP request component based on the Android Volley library to achieve reliable communication between EventStream REST services and the mobile endpoint.

[email protected] to bring your bold new ideas to life.

Confidential: Productivity and Event Scheduling App
View Portfolio
Confidential: Productivity and Event Scheduling App
  • Confidential: Productivity and Event Scheduling App screenshot 1
Not Disclosed
10 weeks
Productivity

This app gives users the options to schedule their day, share daily plans, organize events like birthday and promotion parties, invite friends, conduct polls and chat within a group. They can also sync their entire list of Google, Yahoo and Group Agendas calendars and keep a tab on all future events.

[email protected] to bring your bold new ideas to life.

Win-win by Connecting Tournament Organizers and Sports Facility Managers: GameDay
View Portfolio
Win-win by Connecting Tournament Organizers and Sports Facility Managers: GameDay
  • Win-win by Connecting Tournament Organizers and Sports Facility Managers: GameDay screenshot 1
Not Disclosed
6 weeks
Other Industries

Gameday is a social network for sports enthusiasts which enables tournament organizers, Sports Facility Owners and Players to collaborate. We contributed ideas to break the initial chicken-egg problem that marketplace apps have.

[email protected] to bring your bold new ideas to life.

Leveraging NLP to discover new Clinical Events: Confidential Client
View Portfolio
Leveraging NLP to discover new Clinical Events: Confidential Client
  • Leveraging NLP to discover new Clinical Events: Confidential Client screenshot 1
Not Disclosed
4 weeks
Healthcare & Medical

Interesting enterprise events happening all across your IT ecosystem are converted into a live stream of events organized around Topics. Real-time analytics engine to take actions on these events like intelligent routing. For UX, we leveraged the principle of 20% of actions are performed 80% of the time. We enable this 80% via messaging. Built a Slack like front-end using Angular.js and jQuery.

[email protected] to bring your bold new ideas to life.

Audience Analytics for a multi-channel YouTube Network: Confidential Client
View Portfolio
Audience Analytics for a multi-channel YouTube Network: Confidential Client
  • Audience Analytics for a multi-channel YouTube Network: Confidential Client screenshot 1
Not Disclosed
12 weeks
Art, Entertainment & Music

Problem: Our client had around 200 YouTube channels that covered 3 brands. They wanted to track over 2000 such brands for which only shallow data was available. 


Solution: We crawled millions of records to fetch data on audience analytics, along with cross-linked data from G+ & Facebook. We then used Coefficient Correlation and Linear Regression and provided the required analytics for 2000+ brands, using videos that covered just 3 brands!

[email protected] to bring your bold new ideas to life.

Python and D3.js for to view Credit Default Swaps and Interest Rate Swaps
View Portfolio
Python and D3.js for to view Credit Default Swaps and Interest Rate Swaps
  • Python and D3.js for to view Credit Default Swaps and Interest Rate Swaps screenshot 1
Not Disclosed
10 weeks
Financial & Payments

Problem: The client wanted one single place to view Swap Analytics for Credit Default Swaps and Interest Rate Swaps. 

Solution: We extracted, translated and loaded the data from three different sources. We built custom models using Python which was then applied to the crunched data. The resulting predictions were visualized using D3.js.

[email protected] to bring your bold new ideas to life.

Using NLP to track Clinical Events from Doctors’ notes: Confidential Client
View Portfolio
Using NLP to track Clinical Events from Doctors’ notes: Confidential Client
  • Using NLP to track Clinical Events from Doctors’ notes: Confidential Client screenshot 1
Not Disclosed
6 weeks
Healthcare & Medical

Problem: Many medical events are buried in the notes made by the doctors in multiple documents and many of them have only partial descriptions. As a result, the timeline of significant clinical events is not easily discoverable. 


Solution: We identified medically significant events like ‘infections’, ‘antibiotics’, ‘surgery’, ‘x-ray’, ‘lab test’ etc. We then used NLP to arrive at the occurrence time of significant events by identifying temporal expressions like ‘today’, ‘two weeks ago’ etc. extracted from the multiple documents and correlated them with the date of document creation. We then stored this data in a structured repository for easy retrieval to construct the timeline graph of the significant clinical events.

[email protected] to bring your bold new ideas to life.

Predicting Mortgage Delinquency Losses with Machine Learning and Augmenting Customer Data: Confidential Client
View Portfolio
Predicting Mortgage Delinquency Losses with Machine Learning and Augmenting Customer Data: Confidential Client
  • Predicting Mortgage Delinquency Losses with Machine Learning and Augmenting Customer Data: Confidential Client screenshot 1
Not Disclosed
8 weeks
Financial & Payments

Problem: Accurately predict losses due to mortgage delinquency.

Solution: A popular short term lending portal empowers Mortgage brokers to compete with banks and large retail lenders by providing Predictive Technology and Tools. Its CoreLogic model predicts pre-payments and loan defaults. We did the segmentation to increase the accuracy to predict delinquency of a loan using the Credit Bureau, customer transactions and customer behavior data.GBM model was built to predict Front End Debt to Income ratio (FEDT), which is key for predictive delinquency.  Further, we experimented with 160 variations of GBM models with Machine learning techniques using the caret package. Various visualizations were also done to compare the actual data set and the predicted data set.

[email protected] to bring your bold new ideas to life.

Delivering patient-friendly Clinical Narratives with Natural Language Processing (NLP): Confidential Client
View Portfolio
Delivering patient-friendly Clinical Narratives with Natural Language Processing (NLP): Confidential Client
  • Delivering patient-friendly Clinical Narratives with Natural Language Processing (NLP): Confidential Client screenshot 1
Not Disclosed
4 weeks
Healthcare & Medical

Problem: Medical doctors and other practitioners need to use very technical words and domain-specific vocabulary to ensure preciseness. This precision is needed so that other practitioners understand the narrative accurately.  Patients want to understand their health conditions, diagnosis and prognosis but find the clinical narratives intimidating and very difficult to understand. 


Solution: We created a dictionary of medical terms and abbreviations from existing documentation for specific domains in healthcare. Parsed the clinical narratives, and used Natural Language Processing to ensure the grammatical correctness of the simplified narrative.

[email protected] to bring your bold new ideas to life.

ShopJam: Helping Shoppers compare deals from Neighbourhood Stores with Deep Learning
View Portfolio
ShopJam: Helping Shoppers compare deals from Neighbourhood Stores with Deep Learning
  • ShopJam: Helping Shoppers compare deals from Neighbourhood Stores with Deep Learning screenshot 1
Not Disclosed
4 weeks
Retail

Problem: It is very hard for consumers to find a product at the best price from online and physical stores. Even if a retail chain is chosen, different stores price the same product differently. 

Solution: Data Science was used to track, predict and forecast prices based on various factors. We built an application in Ruby on Rails that lets shoppers pick the best prices for products from highly popular Australian stores such as Coles and Woolworths. Great user experience through React for the web and React-Native for mobile.  Designed a search algorithm to scan product catalogs using Word2Vec deep-learning neural network and identified the cheapest product by geo-location.

Further, we simplified purchase decisions by comparing prices across brands, regions & retail branches by predicting the prospective price(using Logical Regression Models) of a product in a store for the next 30 days and presented actionable insights using D3.js for Visualization.

[email protected] to bring your bold new ideas to life.

Minimizing Patient Readmission Risk with Machine Learning: Confidential Client
View Portfolio
Minimizing Patient Readmission Risk with Machine Learning: Confidential Client
  • Minimizing Patient Readmission Risk with Machine Learning: Confidential Client screenshot 1
Not Disclosed
2 weeks
Healthcare & Medical

Problem: Hospitals are liable for penalties if the 30-day re-admission rate crosses a pre-specified threshold for a particular clinical condition


Solution: We analyzed the past patient history of readmissions. Then, we clustered patients based on clinical, social and behavioral factors like associated clinical conditions, age, gender, weight, lifestyle, ethnicity, economic indicators, geography, etc. With this data, we derived a model based on the training set to predict the risk of readmission for a patient. Finally, we tested the model on the testing data set, fine-tuned it for accuracy and ran it across the new patients to predict the readmission risk.

[email protected] to bring your bold new ideas to life.

Avid Secure: Leveraging Machine Learning for Cloud Security
View Portfolio
Avid Secure: Leveraging Machine Learning for Cloud Security
  • Avid Secure: Leveraging Machine Learning for Cloud Security screenshot 1
Not Disclosed
10 weeks
Information Technology

Problem: A cloud security provider wanted to detect anomalies and abnormal peaks in outbound traffic using event logs. 

Solution: We set up a continuous feed of raw data logs, using AWS Kinesis from AWS Cloud-Trail. Data was then grouped by Time, Usertype and Logtype into multiple batches. From these batches, variables were generated to feed in to the Machine Learning model that finally predicted if the data entry was an anomaly using logistic regression.

[email protected] to bring your bold new ideas to life.

AssertID: Identification of Fake Social Profiles with Algorithm on Hadoop
View Portfolio
AssertID: Identification of Fake Social Profiles with Algorithm on Hadoop
  • AssertID: Identification of Fake Social Profiles with Algorithm on Hadoop screenshot 1
Not Disclosed
6 weeks
Social

Problem: It is hard to detect if a social profile is genuine or fake.

Solution: The client provides a social identifier that is a free web identity credential controlled by the user. We designed and implemented an algorithm (based on research out of Stanford University) on Hadoop using PIG to evaluate the authenticity of an individual’s profile attributes using terabytes of social networking data. We also implemented various fraud detection and prevention solutions alongside viral social features to enable users to leverage their social graph to add to their assert score.

[email protected] to bring your bold new ideas to life.

Ideas2IT Technologies Reviews

5.0 2 Reviews
  • All Services
  • Big Data & BI
  • Relevance
  • Most Recent
  • Rating: high to low
  • Rating: low to high
Write a Review
Gordon Alvord

Very happy with the services provided by them!

Rating Breakdown

  • Quality
  • Schedule & Timing
  • Communication
  • Overall Rating

Project Detail

$200000+
In Progress

Share it on

Review Summary

What was the project name that you have worked with Ideas2IT Technologies?

NeedleNine: Flight School Management System

What service was provided as part of the project?

Web Development, Software Development, Big Data & BI

Resources

Patient Appointment No-Shows Prediction by Machine Learning
View eBook
Web Application Security Standards Ready Reckoner
View eBook
Face Mask Detector using Deep Learning (PyTorch) and Computer Vision (OpenCV)
View eBook
DocSearch: A Natural Language Processing (NLP) based Answering System
View eBook
Intensive Care Unit (ICU) Readmission Prediction by Machine Learning
View eBook
Angular vs. ReactJS vs. VueJS: Our Evaluation of UI Frameworks, Tools & Tech
View eBook
Predicting the Early Onset of Sepsis by leveraging Artificial Intelligence (AI)
View eBook