Torronto, Cananda (PinionNewswire) — LazAI, the pioneering AI-native blockchain ecosystem, today announced the launch of its Alpha Mainnet, marking the world’s Torronto, Cananda (PinionNewswire) — LazAI, the pioneering AI-native blockchain ecosystem, today announced the launch of its Alpha Mainnet, marking the world’s

LazAl Unveils Alpha Mainnet, Enabling Trustless and Verifiable Al Data to the Blockchain

LazAI, the pioneering AI-native blockchain ecosystem, today announced the launch of its Alpha Mainnet, marking the world’s first live deployment of onchain-verifiable AI data assetization and agent execution powered by $METIS settlement.
With Alpha Mainnet now live, every user interaction with LazAI’s flagship AI Agents including Lazbubu and SoulTarot , generates permanent, traceable Data Anchoring Tokens (DATs), transforming AI data into real, ownable digital assets for the first time.

This is the moment AI data becomes provably owned and economically meaningful onchain,” said Ming Guo, Cofounder of LazAI. “Alpha Mainnet moves us from simulation to reality: interactions are no longer ephemeral, they are anchored forever, verifiable by anyone, and carry real value.”

Industry observers say the launch could signal a shift toward tokenized, verifiable AI data as Web3 teams explore new frameworks for AI accountability and ownership. Alpha Mainnet moves from simulation to reality: interactions are no longer ephemeral, they are anchored forever, verifiable by anyone, and carry real value.

A New Stage for Aligned AI Data Ownership

With Alpha Mainnet now live, conversations with popular agents such as Lazbubu and SoulTarot automatically mint Data Anchoring Tokens (DATs) — cryptographically provable records that are permanently anchored, traceable, and economically valuable.
Key highlights of the launch:

  • Real economic alignment: User-generated AI data transitions from ephemeral to permanently owned on-chain assets
  • METIS-powered access: Users bridge METIS from Ethereum or Andromeda to participate, ensuring all activity carries authentic economic weight
  • Seamless user experience: The LazPad interface remains unchanged while every interaction now triggers live on-chain incentives
  • Production-ready for developers: Builders can immediately deploy applications, mint DATs, and integrate verifiable inference pipelines on the QBFT consensus network

Developer Capabilities and Integration

  • PoS validator staking to secure AI data pipelines
  • DAT minting and revenue-sharing for tokenized models/datasets
  • iDAO governance toolchain for decentralized AI collectives
  • Full Alith SDK and documentation for custom on-chain AI agents
  • Native cross-chain $METIS settlement across LazAI, Hyperion, and the broader Metis ecosystem

This Alpha phase establishes the foundation for a verifiable AI economy, enabling developers, data providers, and external iDAOs to build on LazAI’s infrastructure and bring trust, transparency, and efficiency to AI data validation and execution.

LazAI Developer Incentive Program

The LazAI Developer Incentive Program launches with a total pool of 10,000 METIS distributed across gas sponsorships and ecosystem growth initiatives.

Ignition Grants (500 METIS total): Early-stage developers receive up to 20 METIS per project to kickstart their applications and onboard their first wave of users. Grants are awarded on a first-come, first-served basis.

Builder Grants (4,000 METIS total): Established projects with innovative DAT implementations and 50+ Daily Active Users receive gas credits for up to 1,000,000 free transactions during their first three months.

Builder Grant winners also receive premier support including connections to infrastructure providers, whitelisting on the official LazAI DAT Marketplace, potential launch support on LazPad, official promotion from LazAI & Metis social channels, and access to a 5,500 METIS user growth pool.

Apply for Ignition Grants here, and Builder Grants here.

Looking Ahead: 2025–2026 Roadmap

Throughout 2025, LazAI has been expanding its high-performance AI data layer. Phase One introduces Alith, the AI agent framework for decentralized data processing. Later stages bring the DAT-based economy, PoS + QBFT consensus, and iDAO arbitration.
In 2026, upgrades will enable ZK-based privacy, decentralized computing markets, and multimodal data evaluation. These milestones converge toward a cross-chain AI asset network where digital agents, avatars, and datasets are all onchain, tradable, and governed transparently.

About LazAI

LazAI is a Web3-native AI infrastructure protocol designed to enable full-lifecycle assetization and incentive models for building value-aligned, personalized AI agents. By offering advanced blockchain infrastructure and toolkits, LazAI paves the way for the next generation of personalized AI solutions.

For more information, visit  https://lazai.network/ or follow @LazAINetwork on X.

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Summarize Any Stock’s Earnings Call in Seconds Using FMP API

Summarize Any Stock’s Earnings Call in Seconds Using FMP API

Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. Whether you’re tracking Apple, NVIDIA, or your favorite growth stock, the process works the same — fast, accurate, and ready whenever you are. Fetching Earnings Transcripts with FMP API The first step is to pull the raw transcript data. FMP makes this simple with dedicated endpoints for earnings calls. If you want the latest transcripts across the market, you can use the stable endpoint /stable/earning-call-transcript-latest. For a specific stock, the v3 endpoint lets you request transcripts by symbol, quarter, and year using the pattern: https://financialmodelingprep.com/api/v3/earning_call_transcript/{symbol}?quarter={q}&year={y}&apikey=YOUR_API_KEY here’s how you can fetch NVIDIA’s transcript for a given quarter: import requestsAPI_KEY = "your_api_key"symbol = "NVDA"quarter = 2year = 2024url = f"https://financialmodelingprep.com/api/v3/earning_call_transcript/{symbol}?quarter={quarter}&year={year}&apikey={API_KEY}"response = requests.get(url)data = response.json()# Inspect the keysprint(data.keys())# Access transcript contentif "content" in data[0]: transcript_text = data[0]["content"] print(transcript_text[:500]) # preview first 500 characters The response typically includes details like the company symbol, quarter, year, and the full transcript text. If you aren’t sure which quarter to query, the “latest transcripts” endpoint is the quickest way to always stay up to date. Cleaning and Preparing Transcript Data Raw transcripts from the API often include long paragraphs, speaker tags, and formatting artifacts. Before sending them to an LLM, it helps to organize the text into a cleaner structure. Most transcripts follow a pattern: prepared remarks from executives first, followed by a Q&A session with analysts. Separating these sections gives better control when prompting the model. In Python, you can parse the transcript and strip out unnecessary characters. A simple way is to split by markers such as “Operator” or “Question-and-Answer.” Once separated, you can create two blocks — Prepared Remarks and Q&A — that will later be summarized independently. This ensures the model handles each section within context and avoids missing important details. Here’s a small example of how you might start preparing the data: import re# Example: using the transcript_text we fetched earliertext = transcript_text# Remove extra spaces and line breaksclean_text = re.sub(r'\s+', ' ', text).strip()# Split sections (this is a heuristic; real-world transcripts vary slightly)if "Question-and-Answer" in clean_text: prepared, qna = clean_text.split("Question-and-Answer", 1)else: prepared, qna = clean_text, ""print("Prepared Remarks Preview:\n", prepared[:500])print("\nQ&A Preview:\n", qna[:500]) With the transcript cleaned and divided, you’re ready to feed it into Groq’s LLM. Chunking may be necessary if the text is very long. A good approach is to break it into segments of a few thousand tokens, summarize each part, and then merge the summaries in a final pass. Summarizing with Groq LLM Now that the transcript is clean and split into Prepared Remarks and Q&A, we’ll use Groq to generate a crisp one-pager. The idea is simple: summarize each section separately (for focus and accuracy), then synthesize a final brief. Prompt design (concise and factual) Use a short, repeatable template that pushes for neutral, investor-ready language: You are an equity research analyst. Summarize the following earnings call sectionfor {symbol} ({quarter} {year}). Be factual and concise.Return:1) TL;DR (3–5 bullets)2) Results vs. guidance (what improved/worsened)3) Forward outlook (specific statements)4) Risks / watch-outs5) Q&A takeaways (if present)Text:<<<{section_text}>>> Python: calling Groq and getting a clean summary Groq provides an OpenAI-compatible API. Set your GROQ_API_KEY and pick a fast, high-quality model (e.g., a Llama-3.1 70B variant). We’ll write a helper to summarize any text block, then run it for both sections and merge. import osimport textwrapimport requestsGROQ_API_KEY = os.environ.get("GROQ_API_KEY") or "your_groq_api_key"GROQ_BASE_URL = "https://api.groq.com/openai/v1" # OpenAI-compatibleMODEL = "llama-3.1-70b" # choose your preferred Groq modeldef call_groq(prompt, temperature=0.2, max_tokens=1200): url = f"{GROQ_BASE_URL}/chat/completions" headers = { "Authorization": f"Bearer {GROQ_API_KEY}", "Content-Type": "application/json", } payload = { "model": MODEL, "messages": [ {"role": "system", "content": "You are a precise, neutral equity research analyst."}, {"role": "user", "content": prompt}, ], "temperature": temperature, "max_tokens": max_tokens, } r = requests.post(url, headers=headers, json=payload, timeout=60) r.raise_for_status() return r.json()["choices"][0]["message"]["content"].strip()def build_prompt(section_text, symbol, quarter, year): template = """ You are an equity research analyst. Summarize the following earnings call section for {symbol} ({quarter} {year}). Be factual and concise. Return: 1) TL;DR (3–5 bullets) 2) Results vs. guidance (what improved/worsened) 3) Forward outlook (specific statements) 4) Risks / watch-outs 5) Q&A takeaways (if present) Text: <<< {section_text} >>> """ return textwrap.dedent(template).format( symbol=symbol, quarter=quarter, year=year, section_text=section_text )def summarize_section(section_text, symbol="NVDA", quarter="Q2", year="2024"): if not section_text or section_text.strip() == "": return "(No content found for this section.)" prompt = build_prompt(section_text, symbol, quarter, year) return call_groq(prompt)# Example usage with the cleaned splits from Section 3prepared_summary = summarize_section(prepared, symbol="NVDA", quarter="Q2", year="2024")qna_summary = summarize_section(qna, symbol="NVDA", quarter="Q2", year="2024")final_one_pager = f"""# {symbol} Earnings One-Pager — {quarter} {year}## Prepared Remarks — Key Points{prepared_summary}## Q&A Highlights{qna_summary}""".strip()print(final_one_pager[:1200]) # preview Tips that keep quality high: Keep temperature low (≈0.2) for factual tone. If a section is extremely long, chunk at ~5–8k tokens, summarize each chunk with the same prompt, then ask the model to merge chunk summaries into one section summary before producing the final one-pager. If you also fetched headline numbers (EPS/revenue, guidance) earlier, prepend them to the prompt as brief context to help the model anchor on the right outcomes. Building the End-to-End Pipeline At this point, we have all the building blocks: the FMP API to fetch transcripts, a cleaning step to structure the data, and Groq LLM to generate concise summaries. The final step is to connect everything into a single workflow that can take any ticker and return a one-page earnings call summary. The flow looks like this: Input a stock ticker (for example, NVDA). Use FMP to fetch the latest transcript. Clean and split the text into Prepared Remarks and Q&A. Send each section to Groq for summarization. Merge the outputs into a neatly formatted earnings one-pager. Here’s how it comes together in Python: def summarize_earnings_call(symbol, quarter, year, api_key, groq_key): # Step 1: Fetch transcript from FMP url = f"https://financialmodelingprep.com/api/v3/earning_call_transcript/{symbol}?quarter={quarter}&year={year}&apikey={api_key}" resp = requests.get(url) resp.raise_for_status() data = resp.json() if not data or "content" not in data[0]: return f"No transcript found for {symbol} {quarter} {year}" text = data[0]["content"] # Step 2: Clean and split clean_text = re.sub(r'\s+', ' ', text).strip() if "Question-and-Answer" in clean_text: prepared, qna = clean_text.split("Question-and-Answer", 1) else: prepared, qna = clean_text, "" # Step 3: Summarize with Groq prepared_summary = summarize_section(prepared, symbol, quarter, year) qna_summary = summarize_section(qna, symbol, quarter, year) # Step 4: Merge into final one-pager return f"""# {symbol} Earnings One-Pager — {quarter} {year}## Prepared Remarks{prepared_summary}## Q&A Highlights{qna_summary}""".strip()# Example runprint(summarize_earnings_call("NVDA", 2, 2024, API_KEY, GROQ_API_KEY)) With this setup, generating a summary becomes as simple as calling one function with a ticker and date. You can run it inside a notebook, integrate it into a research workflow, or even schedule it to trigger after each new earnings release. Free Stock Market API and Financial Statements API... Conclusion Earnings calls no longer need to feel overwhelming. With the Financial Modeling Prep API, you can instantly access any company’s transcript, and with Groq LLM, you can turn that raw text into a sharp, actionable summary in seconds. This pipeline saves hours of reading and ensures you never miss the key results, guidance, or risks hidden in lengthy remarks. Whether you track tech giants like NVIDIA or smaller growth stocks, the process is the same — fast, reliable, and powered by the flexibility of FMP’s data. Summarize Any Stock’s Earnings Call in Seconds Using FMP API was originally published in Coinmonks on Medium, where people are continuing the conversation by highlighting and responding to this story
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Medium2025/09/18 14:40