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Generative AI • April 29, 2024

How Generative AI is Transforming Telecom?

Following its trend in 2023, Generative AI continues to captivate industries in 2024 with promising advancements and novel applications. Yet, what makes Gen AI particularly captivating within the telecom realm? The answer lies in its potential to revolutionize every facet of the telecom landscape. From streamlining operations and enhancing efficiency to delivering unparalleled customer experiences and catalyzing the development of pioneering products and services, Gen AI in telecom holds the promise of transformative change.

Generative AI's impact on telecom and potential use cases

Imagine AI assistants that understand your needs, self-optimizing networks that anticipate problems, and personalized experiences that feel like magic. Gen AI is making these visions a reality and rapidly becoming a game-changer for telcos, fueling a wave of groundbreaking projects.

Major telecommunications firms have realized significant success in their Gen AI endeavors by utilizing Retrieval-Augmented Generation (RAGs) to streamline Gen AI adoption and drive innovation. Their partnership with Quantiphi sets the stage for telecom companies to utilize Gen AI's potential and introduce a new era of customer-centric services. A few Generative AI use cases that are in focus are as follows:

  1. AI Curated Semantic Workflows: Customer-focused contextual data insights and automation
    Imagine an AI that analyzes your queries and scours through mountains of data to deliver personalized insights and automate tasks. Gen AI can create AI-curated workflows that understand your speech and respond with contextual information, making customer service experiences faster, easier, and more efficient.

  2. Contextual Video Analysis: To monitor network infrastructure
    Thanks to advancements in AI, video analysis is becoming a superhero tool. Gen AI in the form of LLMs and multimodal models can analyze video feeds to monitor network infrastructure, identify potential issues before they erupt, and optimize network performance proactively. This not only keeps your connection smooth but also saves telcos valuable resources.

And while Large Language Models (LLMs) are a powerful force in Generative AI, they come with their fair share of limitations. Here's a glimpse into some key challenges and potential solutions, which were discussed in detail at the NVIDIA GTC session "Generative AI as an Innovative Accelerator in Telcos":

Generative AI challenges & resolutions

Challenge 1: Hallucinations

  • Issue: LLMs can sometimes fabricate information, leading to factual errors or straying from user instructions.
  • Resolution: Grounding the LLM with relevant context through Retrieval-Augmented Generation (RAGs) helps steer responses in the right direction. In complex scenarios, further fine-tuning the LLM might be required.

Challenge 2: Production-Grade Scaling

  • Issue: Balancing user demands with resource efficiency is crucial for real-world deployments. High user volume can lead to increased latency and computational strain.
  • Resolution:  SDKs like TensorRT-LLM (TRT-LLM) optimize LLM models, offering significant improvements in latency and throughput. Additional optimizations like dynamic batching and in-flight batching further enhance efficiency.

Challenge 3: Retriever Performance

  • Issue: Retrieval accuracy and efficiency are critical for effective LLM performance. Inaccurate retrievals can lead to irrelevant information, while inefficient retrieval processes can slow down responses.
  • Resolution: Utilizing metadata filtering helps narrow down the search space for the retrieval algorithm, leading to faster and more accurate results. Fine-tuning the retrieval algorithm itself can further enhance performance, though it may require more effort.

Challenge 4: Out-of-Topic Conversations

  • Issue: LLMs can sometimes veer off topic, generating responses irrelevant to the user's intent.
  • Resolution: Implementing guardrails within the application helps keep LLMs focused. Solutions like NeMo guardrails can determine if a query is on-topic before sending it to the LLM. Additionally, custom logic can be employed to check LLM responses for signs of derailing from the intended domain.

Unlocking Success: your Generative AI journey essentials

Embarking on a successful Generative AI (Gen AI) journey within your business requires meticulous planning and strategic foresight. First and foremost, establishing a clear business case is essential to align Gen AI initiatives with organizational objectives. Additionally, having a robust information security (infosec) team within the organization is crucial to safeguard sensitive data and mitigate potential risks. Ensuring data integrity and quality is another pivotal aspect, as accurate and reliable data is fundamental for effective Gen AI implementation. Furthermore, assigning a point of contact (POC) from the change management team, who is well-connected with end users in the areas targeted for change, facilitates seamless integration and user adoption of Gen AI solutions. By prioritizing these considerations, businesses can navigate their Gen AI journey with confidence and maximize its transformative potential.

Telecom's Generative AI Revolution: don't miss out!

Generative AI is no longer a waiting game for the telecom industry. It's here, and it's transforming businesses at an unprecedented pace. Don't miss the opportunity to be at the forefront of innovation. You can schedule a call with Quantiphi to learn how we can help you integrate Gen AI seamlessly into your business and unlock its full potential.

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Navin Laddagi

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Navin Laddagi

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