DSS AUSTIN | Schedule
Wednesday, Feburary 18
8:30 – 9:55am ET
Registration Opens
9:55 – 10:00am ET
Anna Anisin - Founder, Data Science Salon
10:00 – 10:30am ET
Shamindra Peiris - Senior AI Product Manager at Visa, Inc
10:30 – 11:00am ET
Dushyanth Sekhar - Head of Data Platforms & AI, Enterprise Data Organization at S&P Global
The rapid evolution of Large Language Models (LLMs) has opened new possibilities for automating data extraction tasks from unstructured sources. However, individual LLMs may exhibit variability in accuracy, consistency, and bias. To address these limitations, organizations are increasingly adopting multi-LLM architectures, complemented by an LLM Judge framework to ensure optimal results.
**Multi-LLM Data Extraction Approach**
In this paradigm, multiple LLMs (e.g., GPT-4, Claude, Llama) are deployed in parallel to extract data from the same input. Each model independently processes the input and generates its own extraction output. This redundancy aims to:
– Increase reliability by cross-verifying outputs.
– Mitigate model-specific biases.
– Capture a wider range of interpretations, especially for ambiguous data.
**Benefits**
– **Enhanced Accuracy:** Aggregating outputs and adjudicating them improves the likelihood of extracting correct data.
– **Reduced Bias:** Multiple perspectives help neutralize individual model biases.
– **Scalability:** Automated judging enables large-scale data extraction with minimal manual intervention.
**Challenges**
– **Resource Intensity:** Running multiple LLMs in parallel increases computational costs.
– **Complexity:** Designing effective judging criteria and workflows requires careful engineering.
– **Latency:** Additional processing steps may introduce delays.
11:00 – 11:20am ET
Session Title Coming Soon
Speaker Coming Soon - Aerospike
Solve the last-mile optimization of AI agents by integrating swift, cost-effective LLM judges to evaluate their steps and decisions at scale. This session tackles the challenge of making frequent, high-quality evaluations affordable by framing it as a semantic optimization problem, the practise known as EvalOps. Through practical examples, learn how to optimize speed, semantic virtues and cost of your judges, in order to then optimize your agents, to make aligned, informed decisions without breaking the bank.
11:20 – 11:40am ET
Coffee Break
11:40 – 12:40pm ET
Preetham Kaukuntla - Staff Data Scientist at Glassdoor/Indeed
12:40 – 1:10pm ET
Hamed Alikhani - Senior AI Engineer & Data Scientist at McGraw Hill
Unstructured to Structured Data – Learn how to extract entities and relationships from complex, text-heavy files, automatically constructing a robust knowledge graph for better data connectivity and visibility.
Enhanced Retrieval and Insights – See how advanced search capabilities unlock semantic similarity searches and aggregate community insights through flexible global and local queries.
These containerized services combine graph, document, key-value, full-text, and vector search capabilities, offering unparalleled efficiency in data retrieval and knowledge extraction. Don’t miss this opportunity to see how modern data technologies can streamline your approach to complex datasets.
1:10 – 1:30pm ET
Session Title Coming Soon
Speaker coming soon
Abstract coming soon
1:30 – 2:30pm ET
Lunch
2:30 – 3:15pm ET
Panel Title Coming Soon
Cal Al-Dhubaib - Responsible AI & ML Executive at Further
3:15 – 3:45pm ET
Dippu Kumar Singh - Leader Of Emerging Data Technologies at Fujitsu North America Inc.
3:45 – 4:05pm ET
Reema Gill - Senior Consultant - AI Governance, Compliance and Oversight at CIBC
4:05 – 4:25pm ET
Coffee Break
4:25 – 4:55pm ET
Hari Kishan - Director of Cloud Engineering at Manulife John Hancock Retirement
4:55 – 5:15pm ET
Session Title Coming Soon
Speaker Coming Soon
Abstract coming soon
5:15 – 5:45pm ET
Preetham Kaukuntla - Staff Data Scientist at Glassdoor/Indeed
5:45 – 5:55pm ET
6:00 – 8:00pm ET
Networking Reception
