AI Agents: Predictions for 2024

February 16, 2024

Introduction

Artificial Intelligence (AI) agents have emerged as a transformative technology with immense potential. These intelligent software programs can interpret instructions, make decisions, and take actions to accomplish tasks. As we look ahead to 2024, it is crucial to explore the predictions and trends surrounding AI agents. 

The Dawn of AI Agents

The year 2023 witnessed a surge in generative AI and large-language models (LLMs). LLMs, such as ChatGPT, demonstrated their capabilities in generating text, images, and code. However, the true potential lies in leveraging LLMs as the foundation for AI agents. These agents can not only generate content but also make decisions and take actions. By combining LLMs with specialized tools and up-to-date information, AI agents have the power to accomplish complex tasks and yield valuable outcomes.

The groundwork for AI agents has already been laid. Existing software programs and real-world functions serve as the infrastructure for AI agents. The availability of data further fuels the development of AI agent technology. Although there are challenges in integrating these pieces seamlessly, businesses are recognizing the value and need for implementing AI agents, leading to rapid progress and innovation.

Technical Design and Implementation

Developers face the task of designing AI agents that can effectively interact with program tools and data. They must decide the prompts AI agents will use and also decide which LLMs to leverage. Determining the output utilization and evaluating agent performance are crucial aspects of technical design. On the business side, assembling the right expertise within product teams is essential. This requires a mix of domain understanding, product experience, software development, and AI proficiency. Experimentation and proofs-of-concept pave the way for the successful implementation of AI agents in production applications.

AI Agents in Action

In 2024, we can expect AI agents to transition from novelty toys to performing simple, routine tasks. Updating documents, scheduling, auditing, and other mundane activities will be delegated to AI agents. These initial use cases will demonstrate the tangible benefits of AI agents and solidify their position in the business landscape. Furthermore, specialized AI models, tools, and datasets tailored for AI agent use will emerge. This specialization will enhance the capabilities and efficiency of AI agents, enabling them to tackle more complex tasks.

Collaboration and Multi-Agent Frameworks

The evolution of AI agents will not be limited to standalone entities. Specialized agents will collaborate to accomplish intricate tasks that surpass the capabilities of individual agents. Multi-agent frameworks will leverage hierarchies, with some agents focusing on high-level objectives and others handling task-specific work. This collaborative approach will lead to synergistic outcomes and enable AI agents to tackle multifaceted challenges effectively.

AI Agents As Consumers

As AI agents consume more content and utilize various tools, it raises questions about the optimization of websites and APIs for AI agent discovery and usage. Currently, most software tools and platforms are designed primarily for human consumption. However, with the increasing presence of AI agents, there will be a shift towards catering to their unique requirements. This shift will prompt the development of AI agent-centric interfaces and functionalities, enabling seamless interaction and utilization.

Trust and Empowerment

As AI agents gain experience and demonstrate their capabilities, businesses will develop trust in their decision-making abilities. AI agents will progress from making simple choices to more impactful decisions, possibly even being entrusted with budgets and monetary transactions. For instance, AI agents could be empowered to purchase stocks or negotiate personalized deals with customers. This level of trust and empowerment will require robust evaluation frameworks and safeguards to ensure responsible and ethical AI agent behavior.

Examples of Simple, Routine Tasks That AI Agents Can Perform in 2024

In 2024, AI agents are expected to handle a wide range of simple, routine tasks, automating processes and freeing up human resources for more complex and strategic endeavors. Some examples of these tasks include:

  • Document Processing

AI agents can assist with document creation, formatting, and editing. They can automatically generate reports, memos, and presentations based on predefined templates and input data. AI agents can also proofread and suggest improvements to ensure accurate and polished documents.

  • Data Entry and Management

AI agents can extract information from various sources and enter it into databases or spreadsheets. This includes tasks like data cleansing, data categorization, and data validation. AI agents can efficiently handle large volumes of data, reducing manual effort and minimizing errors.

  • Scheduling and Calendar Management

AI agents can assist in managing schedules and appointments. They can coordinate meetings, send out invitations, and handle rescheduling requests. AI agents can also consider multiple factors such as availability, time zones, and preferences to optimize scheduling efficiency.

  • Customer Support and Chatbots

AI agents can handle customer inquiries and provide basic support through chatbots. They can understand customer queries, provide relevant information, and resolve common issues. AI agents can improve response times and deliver consistent support across multiple channels.

  • Data Analysis and Reporting

AI agents can analyze large datasets, extract insights, and generate reports. They can identify patterns, trends, and anomalies, providing valuable information for decision-making. AI agents can automate repetitive analysis tasks, enabling faster and more accurate reporting.

  • Social Media Management

AI agents can assist in managing social media accounts by scheduling posts, analyzing engagement metrics, and suggesting content ideas. They can monitor keywords and trends, identify potential influencers, and provide recommendations for optimizing social media strategies.

  • Email Management

AI agents can help prioritize and categorize emails, filtering out spam and organizing messages based on relevance. They can draft responses, suggest appropriate actions, and flag urgent communications. AI agents can improve email efficiency and enhance productivity.

  • Expense Tracking and Management

AI agents can automate expense tracking and management processes. They can scan receipts, extract relevant information, and categorize expenses. AI agents can generate expense reports, identify cost-saving opportunities, and ensure compliance with financial policies.

  • Travel Planning

AI agents can assist in planning business trips, including flight bookings, hotel reservations, and itinerary management. They can consider preferences, budgets, and travel policies to provide optimized travel options. AI agents can save time and streamline the travel planning process.

  • IT Support and Troubleshooting

AI agents can provide basic IT support by diagnosing and resolving common technical issues. They can guide users through troubleshooting steps, offer solutions, and escalate complex problems to human experts when necessary. AI agents can reduce downtime and improve user satisfaction.

Can AI Agents Handle More Complex Tasks Beyond Routine Ones?

Here are some examples of more complex tasks that AI agents can handle:

  • Data Analysis and Predictive Modeling

AI agents can leverage machine learning algorithms to analyze large datasets, identify patterns, and make predictions. They can perform tasks such as predictive maintenance, demand forecasting, fraud detection, and risk assessment. AI agents can provide valuable insights for strategic decision-making and optimize business processes.

  • Natural Language Processing and Understanding

AI agents can understand and interpret natural language, enabling them to engage in sophisticated conversation and comprehend complex instructions. They can answer complex questions, provide detailed explanations, and assist with research tasks. AI agents can analyze unstructured data, such as documents and articles, extracting relevant information and summarizing key points.

  • Personalized Recommendations and Targeted Marketing

AI agents can analyze user preferences, behavior, and historical data to provide personalized recommendations and targeted marketing campaigns. 

  • Complex Workflow Automation

AI agents can handle complex workflows that involve multiple steps, dependencies, and decision-making processes. They can orchestrate and automate the execution of tasks across different systems and departments, ensuring efficient and seamless workflow management. AI agents can optimize resource allocation, prioritize tasks, and handle exceptions or escalations.

  • Strategic Planning and Decision Support

AI agents can assist in strategic planning by analyzing data, market trends, and competitive landscape. They can provide insights and recommendations for business strategies, investment decisions, and product development. AI agents can simulate scenarios, perform risk analysis, and assist in evaluating the potential outcomes of different strategies.

  • Creative Content Generation

AI agents can generate creative content such as articles, stories, and product descriptions. They can leverage language models and generate text that mimics human writing style and tone. AI agents can assist content creators by providing suggestions, generating drafts, and automating parts of the content creation process.

  • Healthcare Diagnosis and Treatment Planning

AI agents can assist in healthcare by analyzing patient data, medical records, and symptoms. They can help with diagnosis, treatment planning, and suggesting personalized care plans. AI agents can provide decision support to healthcare professionals and improve the accuracy and efficiency of medical assessments.

  • Financial Analysis and Investment Strategies

AI agents can analyze financial data, market trends, and historical performance to assist in financial analysis and investment strategies. They can identify investment opportunities, perform portfolio analysis, and provide recommendations for asset allocation. AI agents can help investors make informed decisions and optimize their financial portfolios.

Conclusion

The year 2024 holds significant promise for AI agents. With advancements in LLMs, specialized tools, and datasets, AI agents will prove their worth by performing routine tasks and driving tangible business outcomes. Collaboration between specialized agents and the optimization of interfaces for AI agents will further enhance their capabilities. 

As businesses gain confidence in the decision-making abilities of AI agents, we can expect to witness their increased involvement in more complex and impactful endeavors. The era of AI agents is upon us, and harnessing their potential will undoubtedly shape the future of industries and society as a whole.

Latest Blogs
This is a decorative image for: A Complete Guide To Customer Acquisition For Startups
October 18, 2022

A Complete Guide To Customer Acquisition For Startups

Any business is enlivened by its customers. Therefore, a strategy to constantly bring in new clients is an ongoing requirement. In this regard, having a proper customer acquisition strategy can be of great importance.

So, if you are just starting your business, or planning to expand it, read on to learn more about this concept.

The problem with customer acquisition

As an organization, when working in a diverse and competitive market like India, you need to have a well-defined customer acquisition strategy to attain success. However, this is where most startups struggle. Now, you may have a great product or service, but if you are not in the right place targeting the right demographic, you are not likely to get the results you want.

To resolve this, typically, companies invest, but if that is not channelized properly, it will be futile.

So, the best way out of this dilemma is to have a clear customer acquisition strategy in place.

How can you create the ideal customer acquisition strategy for your business?

  • Define what your goals are

You need to define your goals so that you can meet the revenue expectations you have for the current fiscal year. You need to find a value for the metrics –

  • MRR – Monthly recurring revenue, which tells you all the income that can be generated from all your income channels.
  • CLV – Customer lifetime value tells you how much a customer is willing to spend on your business during your mutual relationship duration.  
  • CAC – Customer acquisition costs, which tells how much your organization needs to spend to acquire customers constantly.
  • Churn rate – It tells you the rate at which customers stop doing business.

All these metrics tell you how well you will be able to grow your business and revenue.

  • Identify your ideal customers

You need to understand who your current customers are and who your target customers are. Once you are aware of your customer base, you can focus your energies in that direction and get the maximum sale of your products or services. You can also understand what your customers require through various analytics and markers and address them to leverage your products/services towards them.

  • Choose your channels for customer acquisition

How will you acquire customers who will eventually tell at what scale and at what rate you need to expand your business? You could market and sell your products on social media channels like Instagram, Facebook and YouTube, or invest in paid marketing like Google Ads. You need to develop a unique strategy for each of these channels. 

  • Communicate with your customers

If you know exactly what your customers have in mind, then you will be able to develop your customer strategy with a clear perspective in mind. You can do it through surveys or customer opinion forms, email contact forms, blog posts and social media posts. After that, you just need to measure the analytics, clearly understand the insights, and improve your strategy accordingly.

Combining these strategies with your long-term business plan will bring results. However, there will be challenges on the way, where you need to adapt as per the requirements to make the most of it. At the same time, introducing new technologies like AI and ML can also solve such issues easily. To learn more about the use of AI and ML and how they are transforming businesses, keep referring to the blog section of E2E Networks.

Reference Links

https://www.helpscout.com/customer-acquisition/

https://www.cloudways.com/blog/customer-acquisition-strategy-for-startups/

https://blog.hubspot.com/service/customer-acquisition

This is a decorative image for: Constructing 3D objects through Deep Learning
October 18, 2022

Image-based 3D Object Reconstruction State-of-the-Art and trends in the Deep Learning Era

3D reconstruction is one of the most complex issues of deep learning systems. There have been multiple types of research in this field, and almost everything has been tried on it — computer vision, computer graphics and machine learning, but to no avail. However, that has resulted in CNN or convolutional neural networks foraying into this field, which has yielded some success.

The Main Objective of the 3D Object Reconstruction

Developing this deep learning technology aims to infer the shape of 3D objects from 2D images. So, to conduct the experiment, you need the following:

  • Highly calibrated cameras that take a photograph of the image from various angles.
  • Large training datasets can predict the geometry of the object whose 3D image reconstruction needs to be done. These datasets can be collected from a database of images, or they can be collected and sampled from a video.

By using the apparatus and datasets, you will be able to proceed with the 3D reconstruction from 2D datasets.

State-of-the-art Technology Used by the Datasets for the Reconstruction of 3D Objects

The technology used for this purpose needs to stick to the following parameters:

  • Input

Training with the help of one or multiple RGB images, where the segmentation of the 3D ground truth needs to be done. It could be one image, multiple images or even a video stream.

The testing will also be done on the same parameters, which will also help to create a uniform, cluttered background, or both.

  • Output

The volumetric output will be done in both high and low resolution, and the surface output will be generated through parameterisation, template deformation and point cloud. Moreover, the direct and intermediate outputs will be calculated this way.

  • Network architecture used

The architecture used in training is 3D-VAE-GAN, which has an encoder and a decoder, with TL-Net and conditional GAN. At the same time, the testing architecture is 3D-VAE, which has an encoder and a decoder.

  • Training used

The degree of supervision used in 2D vs 3D supervision, weak supervision along with loss functions have to be included in this system. The training procedure is adversarial training with joint 2D and 3D embeddings. Also, the network architecture is extremely important for the speed and processing quality of the output images.

  • Practical applications and use cases

Volumetric representations and surface representations can do the reconstruction. Powerful computer systems need to be used for reconstruction.

Given below are some of the places where 3D Object Reconstruction Deep Learning Systems are used:

  • 3D reconstruction technology can be used in the Police Department for drawing the faces of criminals whose images have been procured from a crime site where their faces are not completely revealed.
  • It can be used for re-modelling ruins at ancient architectural sites. The rubble or the debris stubs of structures can be used to recreate the entire building structure and get an idea of how it looked in the past.
  • They can be used in plastic surgery where the organs, face, limbs or any other portion of the body has been damaged and needs to be rebuilt.
  • It can be used in airport security, where concealed shapes can be used for guessing whether a person is armed or is carrying explosives or not.
  • It can also help in completing DNA sequences.

So, if you are planning to implement this technology, then you can rent the required infrastructure from E2E Networks and avoid investing in it. And if you plan to learn more about such topics, then keep a tab on the blog section of the website

Reference Links

https://tongtianta.site/paper/68922

https://github.com/natowi/3D-Reconstruction-with-Deep-Learning-Methods

This is a decorative image for: Comprehensive Guide to Deep Q-Learning for Data Science Enthusiasts
October 18, 2022

A Comprehensive Guide To Deep Q-Learning For Data Science Enthusiasts

For all data science enthusiasts who would love to dig deep, we have composed a write-up about Q-Learning specifically for you all. Deep Q-Learning and Reinforcement learning (RL) are extremely popular these days. These two data science methodologies use Python libraries like TensorFlow 2 and openAI’s Gym environment.

So, read on to know more.

What is Deep Q-Learning?

Deep Q-Learning utilizes the principles of Q-learning, but instead of using the Q-table, it uses the neural network. The algorithm of deep Q-Learning uses the states as input and the optimal Q-value of every action possible as the output. The agent gathers and stores all the previous experiences in the memory of the trained tuple in the following order:

State> Next state> Action> Reward

The neural network training stability increases using a random batch of previous data by using the experience replay. Experience replay also means the previous experiences stocking, and the target network uses it for training and calculation of the Q-network and the predicted Q-Value. This neural network uses openAI Gym, which is provided by taxi-v3 environments.

Now, any understanding of Deep Q-Learning   is incomplete without talking about Reinforcement Learning.

What is Reinforcement Learning?

Reinforcement is a subsection of ML. This part of ML is related to the action in which an environmental agent participates in a reward-based system and uses Reinforcement Learning to maximize the rewards. Reinforcement Learning is a different technique from unsupervised learning or supervised learning because it does not require a supervised input/output pair. The number of corrections is also less, so it is a highly efficient technique.

Now, the understanding of reinforcement learning is incomplete without knowing about Markov Decision Process (MDP). MDP is involved with each state that has been presented in the results of the environment, derived from the state previously there. The information which composes both states is gathered and transferred to the decision process. The task of the chosen agent is to maximize the awards. The MDP optimizes the actions and helps construct the optimal policy.

For developing the MDP, you need to follow the Q-Learning Algorithm, which is an extremely important part of data science and machine learning.

What is Q-Learning Algorithm?

The process of Q-Learning is important for understanding the data from scratch. It involves defining the parameters, choosing the actions from the current state and also choosing the actions from the previous state and then developing a Q-table for maximizing the results or output rewards.

The 4 steps that are involved in Q-Learning:

  1. Initializing parameters – The RL (reinforcement learning) model learns the set of actions that the agent requires in the state, environment and time.
  2. Identifying current state – The model stores the prior records for optimal action definition for maximizing the results. For acting in the present state, the state needs to be identified and perform an action combination for it.
  3. Choosing the optimal action set and gaining the relevant experience – A Q-table is generated from the data with a set of specific states and actions, and the weight of this data is calculated for updating the Q-Table to the following step.
  4. Updating Q-table rewards and next state determination – After the relevant experience is gained and agents start getting environmental records. The reward amplitude helps to present the subsequent step.  

In case the Q-table size is huge, then the generation of the model is a time-consuming process. This situation requires Deep Q-learning.

Hopefully, this write-up has provided an outline of Deep Q-Learning and its related concepts. If you wish to learn more about such topics, then keep a tab on the blog section of the E2E Networks website.

Reference Links

https://analyticsindiamag.com/comprehensive-guide-to-deep-q-learning-for-data-science-enthusiasts/

https://medium.com/@jereminuerofficial/a-comprehensive-guide-to-deep-q-learning-8aeed632f52f

This is a decorative image for: GAUDI: A Neural Architect for Immersive 3D Scene Generation
October 13, 2022

GAUDI: A Neural Architect for Immersive 3D Scene Generation

The evolution of artificial intelligence in the past decade has been staggering, and now the focus is shifting towards AI and ML systems to understand and generate 3D spaces. As a result, there has been extensive research on manipulating 3D generative models. In this regard, Apple’s AI and ML scientists have developed GAUDI, a method specifically for this job.

An introduction to GAUDI

The GAUDI 3D immersive technique founders named it after the famous architect Antoni Gaudi. This AI model takes the help of a camera pose decoder, which enables it to guess the possible camera angles of a scene. Hence, the decoder then makes it possible to predict the 3D canvas from almost every angle.

What does GAUDI do?

GAUDI can perform multiple functions –

  • The extensions of these generative models have a tremendous effect on ML and computer vision. Pragmatically, such models are highly useful. They are applied in model-based reinforcement learning and planning world models, SLAM is s, or 3D content creation.
  • Generative modelling for 3D objects has been used for generating scenes using graf, pigan, and gsn, which incorporate a GAN (Generative Adversarial Network). The generator codes radiance fields exclusively. Using the 3D space in the scene along with the camera pose generates the 3D image from that point. This point has a density scalar and RGB value for that specific point in 3D space. This can be done from a 2D camera view. It does this by imposing 3D datasets on those 2D shots. It isolates various objects and scenes and combines them to render a new scene altogether.
  • GAUDI also removes GANs pathologies like mode collapse and improved GAN.
  • GAUDI also uses this to train data on a canonical coordinate system. You can compare it by looking at the trajectory of the scenes.

How is GAUDI applied to the content?

The steps of application for GAUDI have been given below:

  • Each trajectory is created, which consists of a sequence of posed images (These images are from a 3D scene) encoded into a latent representation. This representation which has a radiance field or what we refer to as the 3D scene and the camera path is created in a disentangled way. The results are interpreted as free parameters. The problem is optimized by and formulation of a reconstruction objective.
  • This simple training process is then scaled to trajectories, thousands of them creating a large number of views. The model samples the radiance fields totally from the previous distribution that the model has learned.
  • The scenes are thus synthesized by interpolation within the hidden space.
  • The scaling of 3D scenes generates many scenes that contain thousands of images. During training, there is no issue related to canonical orientation or mode collapse.
  • A novel de-noising optimization technique is used to find hidden representations that collaborate in modelling the camera poses and the radiance field to create multiple datasets with state-of-the-art performance in generating 3D scenes by building a setup that uses images and text.

To conclude, GAUDI has more capabilities and can also be used for sampling various images and video datasets. Furthermore, this will make a foray into AR (augmented reality) and VR (virtual reality). With GAUDI in hand, the sky is only the limit in the field of media creation. So, if you enjoy reading about the latest development in the field of AI and ML, then keep a tab on the blog section of the E2E Networks website.

Reference Links

https://www.researchgate.net/publication/362323995_GAUDI_A_Neural_Architect_for_Immersive_3D_Scene_Generation

https://www.technology.org/2022/07/31/gaudi-a-neural-architect-for-immersive-3d-scene-generation/ 

https://www.patentlyapple.com/2022/08/apple-has-unveiled-gaudi-a-neural-architect-for-immersive-3d-scene-generation.html

Build on the most powerful infrastructure cloud

A vector illustration of a tech city using latest cloud technologies & infrastructure