Gearing up for Machine Learning Trends in 2020

Sanam Malhotra | 3rd January 2020

Artificial intelligence (AI) is all set to enter the new year 2020 with greater might. The new year heralds a paradigm shift for global business infrastructures with AI development services and emerging machine learning (ML) technologies. At Oodles, we are looking forward to deploying machine learning techniques across wider business applications and processes. Here are the upcoming machine-learning trends for 2020 encompassing on-premise and cloud machine learning solutions to augment global business infrastructures.

 

1) Machine Learning Algorithms bond with IoT

From interconnected computing devices to smart home appliances, the Internet of Things (IoT) has garnered mainstream adoption with expansive technological advancements.

While IoT is analogous to machinery, AI and machine learning algorithms are touted as the brain-power to capitalize on this machinery.

It is possible by channelizing the high volumes of data collected by IoT devices to extract actionable insights. In 2020, machine learning will be used to process, analyze and use everyday data collected and stored in information and communication devices such as-

a) Using electricity consumption data from smart appliances such as air conditioners and refrigerators to make more energy-efficient and sustainable products.

b) Analyzing on-road sensors, CCTV cameras, and driving patterns to build secure autonomous vehicles.

c) Integrating wearable gadgets with machine learning techniques to design a more personalized and user-centric experience.

Also read- Real-time Applications of Machine Learning with Apache Kafka

 

2) Conversational Analytics

The last decade saw a paradigm shift in the way businesses interact with their customers. Natural language processing (NLP) based conversational interfaces with text and voice-enabled communication windows are steadily gaining momentum across industries. The new year is set to generate greater value from the unstructured data collected through voice-controlled channels.

Conversational analytics is an AI-powered technology that curates the data from conversational interfaces and chatbots to extract audience insights.

machine learning trends conversational analytics

Machine learning constitutes the building blocks of conversational analytics wherein ML algorithms extract contextual details of the target audience. eCommerce, marketing, and banking businesses are most likely to benefit from conversational analytics to improve customer services efficiently.

Also read- Enhancing Customer Engagement with Conversational AI Chatbots

 

3) Augmented Data Management

Since massive digitization, businesses have been struggling with complex data management systems to administrate critical databases and formulate effective business strategies. More so, the traditional data management systems require manual intervention leading to unreliable, insecure, and unscalable data processing.

Machine learning is projected to become the driving force for data-centric businesses in the new year. Augmented data management is the upcoming AI-based technique that combines machine learning algorithms to monitor and large data volumes for critical decision-making. With augmented data management systems, businesses can essentially integrate automation into their existing data management models to accelerate decision-making efforts.

machine learning 2020 augmented analytics

The process incorporates both ML-based structured and unstructured techniques to identify, process, link, and classify raw databases. Though, organizations need to carefully analyze their information architecture and objectives before capitalizing on automated data management systems.

Also read- Mobilizing Big Data for Cloud-based Predictive Analytics

 

Watching for Machine Learning Trends 2020 with Oodles AI

Technology is making remarkable strides with each passing year. At Oodles, we are entering the new year equipped with better and more diversified AI solutions to optimize business outputs. We are constantly exploring new AI, machine learning, and deep learning applications to amplify business operations significantly.

Our machine learning development capabilities extend to computer vision, chatbot development, deep analytics, natural language processing, and RPA services. Our machine learning development services are available for both on-premise and cloud-based business infrastructures. Under our cloud-based ML services, we offer AWS, Google, IBM Watson, and Microsoft Azure consulting services.

Reach out to our AI development team to know more about our artificial intelligence and machine learning services.

About Author

Sanam Malhotra

Sanam is a technical writer at Oodles who is currently covering Artificial Intelligence and its underlying disruptive technologies. Fascinated by the transformative potential of AI, Sanam explores how global businesses can harness AI-powered growth. Her writings aim at contributing the multidimensional values of AI, IoT, and machine learning to the digital landscape.

No Comments Yet.


Leave a Comment

Name is required

Comment is required




Request For Proposal

[contact-form-7 404 "Not Found"]

Ready to innovate ? Let's get in touch

Chat With Us